class Stream(Reference): name = Enum(('stdout', 'stderr'), default_value='stdout') text = Unicode()
class TerminalInteractiveShell(InteractiveShell): mime_renderers = Dict().tag(config=True) space_for_menu = Integer(6, help='Number of line at the bottom of the screen ' 'to reserve for the tab completion menu, ' 'search history, ...etc, the height of ' 'these menus will at most this value. ' 'Increase it is you prefer long and skinny ' 'menus, decrease for short and wide.' ).tag(config=True) pt_app = None debugger_history = None simple_prompt = Bool(_use_simple_prompt, help="""Use `raw_input` for the REPL, without completion and prompt colors. Useful when controlling IPython as a subprocess, and piping STDIN/OUT/ERR. Known usage are: IPython own testing machinery, and emacs inferior-shell integration through elpy. This mode default to `True` if the `IPY_TEST_SIMPLE_PROMPT` environment variable is set, or the current terminal is not a tty.""" ).tag(config=True) @property def debugger_cls(self): return Pdb if self.simple_prompt else TerminalPdb confirm_exit = Bool(True, help=""" Set to confirm when you try to exit IPython with an EOF (Control-D in Unix, Control-Z/Enter in Windows). By typing 'exit' or 'quit', you can force a direct exit without any confirmation.""", ).tag(config=True) editing_mode = Unicode('emacs', help="Shortcut style to use at the prompt. 'vi' or 'emacs'.", ).tag(config=True) autoformatter = Unicode(None, help="Autoformatter to reformat Terminal code. Can be `'black'` or `None`", allow_none=True ).tag(config=True) mouse_support = Bool(False, help="Enable mouse support in the prompt\n(Note: prevents selecting text with the mouse)" ).tag(config=True) # We don't load the list of styles for the help string, because loading # Pygments plugins takes time and can cause unexpected errors. highlighting_style = Union([Unicode('legacy'), Type(klass=Style)], help="""The name or class of a Pygments style to use for syntax highlighting. To see available styles, run `pygmentize -L styles`.""" ).tag(config=True) @validate('editing_mode') def _validate_editing_mode(self, proposal): if proposal['value'].lower() == 'vim': proposal['value']= 'vi' elif proposal['value'].lower() == 'default': proposal['value']= 'emacs' if hasattr(EditingMode, proposal['value'].upper()): return proposal['value'].lower() return self.editing_mode @observe('editing_mode') def _editing_mode(self, change): u_mode = change.new.upper() if self.pt_app: self.pt_app.editing_mode = u_mode @observe('autoformatter') def _autoformatter_changed(self, change): formatter = change.new if formatter is None: self.reformat_handler = lambda x:x elif formatter == 'black': self.reformat_handler = black_reformat_handler else: raise ValueError @observe('highlighting_style') @observe('colors') def _highlighting_style_changed(self, change): self.refresh_style() def refresh_style(self): self._style = self._make_style_from_name_or_cls(self.highlighting_style) highlighting_style_overrides = Dict( help="Override highlighting format for specific tokens" ).tag(config=True) true_color = Bool(False, help=("Use 24bit colors instead of 256 colors in prompt highlighting. " "If your terminal supports true color, the following command " "should print 'TRUECOLOR' in orange: " "printf \"\\x1b[38;2;255;100;0mTRUECOLOR\\x1b[0m\\n\"") ).tag(config=True) editor = Unicode(get_default_editor(), help="Set the editor used by IPython (default to $EDITOR/vi/notepad)." ).tag(config=True) prompts_class = Type(Prompts, help='Class used to generate Prompt token for prompt_toolkit').tag(config=True) prompts = Instance(Prompts) @default('prompts') def _prompts_default(self): return self.prompts_class(self) # @observe('prompts') # def _(self, change): # self._update_layout() @default('displayhook_class') def _displayhook_class_default(self): return RichPromptDisplayHook term_title = Bool(True, help="Automatically set the terminal title" ).tag(config=True) term_title_format = Unicode("IPython: {cwd}", help="Customize the terminal title format. This is a python format string. " + "Available substitutions are: {cwd}." ).tag(config=True) display_completions = Enum(('column', 'multicolumn','readlinelike'), help= ( "Options for displaying tab completions, 'column', 'multicolumn', and " "'readlinelike'. These options are for `prompt_toolkit`, see " "`prompt_toolkit` documentation for more information." ), default_value='multicolumn').tag(config=True) highlight_matching_brackets = Bool(True, help="Highlight matching brackets.", ).tag(config=True) extra_open_editor_shortcuts = Bool(False, help="Enable vi (v) or Emacs (C-X C-E) shortcuts to open an external editor. " "This is in addition to the F2 binding, which is always enabled." ).tag(config=True) handle_return = Any(None, help="Provide an alternative handler to be called when the user presses " "Return. This is an advanced option intended for debugging, which " "may be changed or removed in later releases." ).tag(config=True) enable_history_search = Bool(True, help="Allows to enable/disable the prompt toolkit history search" ).tag(config=True) prompt_includes_vi_mode = Bool(True, help="Display the current vi mode (when using vi editing mode)." ).tag(config=True) @observe('term_title') def init_term_title(self, change=None): # Enable or disable the terminal title. if self.term_title: toggle_set_term_title(True) set_term_title(self.term_title_format.format(cwd=abbrev_cwd())) else: toggle_set_term_title(False) def restore_term_title(self): if self.term_title: restore_term_title() def init_display_formatter(self): super(TerminalInteractiveShell, self).init_display_formatter() # terminal only supports plain text self.display_formatter.active_types = ['text/plain'] # disable `_ipython_display_` self.display_formatter.ipython_display_formatter.enabled = False def init_prompt_toolkit_cli(self): if self.simple_prompt: # Fall back to plain non-interactive output for tests. # This is very limited. def prompt(): prompt_text = "".join(x[1] for x in self.prompts.in_prompt_tokens()) lines = [input(prompt_text)] prompt_continuation = "".join(x[1] for x in self.prompts.continuation_prompt_tokens()) while self.check_complete('\n'.join(lines))[0] == 'incomplete': lines.append( input(prompt_continuation) ) return '\n'.join(lines) self.prompt_for_code = prompt return # Set up keyboard shortcuts key_bindings = create_ipython_shortcuts(self) # Pre-populate history from IPython's history database history = InMemoryHistory() last_cell = u"" for __, ___, cell in self.history_manager.get_tail(self.history_load_length, include_latest=True): # Ignore blank lines and consecutive duplicates cell = cell.rstrip() if cell and (cell != last_cell): history.append_string(cell) last_cell = cell self._style = self._make_style_from_name_or_cls(self.highlighting_style) self.style = DynamicStyle(lambda: self._style) editing_mode = getattr(EditingMode, self.editing_mode.upper()) self.pt_loop = asyncio.new_event_loop() self.pt_app = PromptSession( editing_mode=editing_mode, key_bindings=key_bindings, history=history, completer=IPythonPTCompleter(shell=self), enable_history_search = self.enable_history_search, style=self.style, include_default_pygments_style=False, mouse_support=self.mouse_support, enable_open_in_editor=self.extra_open_editor_shortcuts, color_depth=self.color_depth, tempfile_suffix=".py", **self._extra_prompt_options()) def _make_style_from_name_or_cls(self, name_or_cls): """ Small wrapper that make an IPython compatible style from a style name We need that to add style for prompt ... etc. """ style_overrides = {} if name_or_cls == 'legacy': legacy = self.colors.lower() if legacy == 'linux': style_cls = get_style_by_name('monokai') style_overrides = _style_overrides_linux elif legacy == 'lightbg': style_overrides = _style_overrides_light_bg style_cls = get_style_by_name('pastie') elif legacy == 'neutral': # The default theme needs to be visible on both a dark background # and a light background, because we can't tell what the terminal # looks like. These tweaks to the default theme help with that. style_cls = get_style_by_name('default') style_overrides.update({ Token.Number: '#ansigreen', Token.Operator: 'noinherit', Token.String: '#ansiyellow', Token.Name.Function: '#ansiblue', Token.Name.Class: 'bold #ansiblue', Token.Name.Namespace: 'bold #ansiblue', Token.Name.Variable.Magic: '#ansiblue', Token.Prompt: '#ansigreen', Token.PromptNum: '#ansibrightgreen bold', Token.OutPrompt: '#ansired', Token.OutPromptNum: '#ansibrightred bold', }) # Hack: Due to limited color support on the Windows console # the prompt colors will be wrong without this if os.name == 'nt': style_overrides.update({ Token.Prompt: '#ansidarkgreen', Token.PromptNum: '#ansigreen bold', Token.OutPrompt: '#ansidarkred', Token.OutPromptNum: '#ansired bold', }) elif legacy =='nocolor': style_cls=_NoStyle style_overrides = {} else : raise ValueError('Got unknown colors: ', legacy) else : if isinstance(name_or_cls, str): style_cls = get_style_by_name(name_or_cls) else: style_cls = name_or_cls style_overrides = { Token.Prompt: '#ansigreen', Token.PromptNum: '#ansibrightgreen bold', Token.OutPrompt: '#ansired', Token.OutPromptNum: '#ansibrightred bold', } style_overrides.update(self.highlighting_style_overrides) style = merge_styles([ style_from_pygments_cls(style_cls), style_from_pygments_dict(style_overrides), ]) return style @property def pt_complete_style(self): return { 'multicolumn': CompleteStyle.MULTI_COLUMN, 'column': CompleteStyle.COLUMN, 'readlinelike': CompleteStyle.READLINE_LIKE, }[self.display_completions] @property def color_depth(self): return (ColorDepth.TRUE_COLOR if self.true_color else None) def _extra_prompt_options(self): """ Return the current layout option for the current Terminal InteractiveShell """ def get_message(): return PygmentsTokens(self.prompts.in_prompt_tokens()) if self.editing_mode == 'emacs': # with emacs mode the prompt is (usually) static, so we call only # the function once. With VI mode it can toggle between [ins] and # [nor] so we can't precompute. # here I'm going to favor the default keybinding which almost # everybody uses to decrease CPU usage. # if we have issues with users with custom Prompts we can see how to # work around this. get_message = get_message() options = { 'complete_in_thread': False, 'lexer':IPythonPTLexer(), 'reserve_space_for_menu':self.space_for_menu, 'message': get_message, 'prompt_continuation': ( lambda width, lineno, is_soft_wrap: PygmentsTokens(self.prompts.continuation_prompt_tokens(width))), 'multiline': True, 'complete_style': self.pt_complete_style, # Highlight matching brackets, but only when this setting is # enabled, and only when the DEFAULT_BUFFER has the focus. 'input_processors': [ConditionalProcessor( processor=HighlightMatchingBracketProcessor(chars='[](){}'), filter=HasFocus(DEFAULT_BUFFER) & ~IsDone() & Condition(lambda: self.highlight_matching_brackets))], } if not PTK3: options['inputhook'] = self.inputhook return options def prompt_for_code(self): if self.rl_next_input: default = self.rl_next_input self.rl_next_input = None else: default = '' # In order to make sure that asyncio code written in the # interactive shell doesn't interfere with the prompt, we run the # prompt in a different event loop. # If we don't do this, people could spawn coroutine with a # while/true inside which will freeze the prompt. try: old_loop = asyncio.get_event_loop() except RuntimeError: # This happens when the user used `asyncio.run()`. old_loop = None asyncio.set_event_loop(self.pt_loop) try: with patch_stdout(raw=True): text = self.pt_app.prompt( default=default, **self._extra_prompt_options()) finally: # Restore the original event loop. asyncio.set_event_loop(old_loop) return text def enable_win_unicode_console(self): # Since IPython 7.10 doesn't support python < 3.6 and PEP 528, Python uses the unicode APIs for the Windows # console by default, so WUC shouldn't be needed. from warnings import warn warn("`enable_win_unicode_console` is deprecated since IPython 7.10, does not do anything and will be removed in the future", DeprecationWarning, stacklevel=2) def init_io(self): if sys.platform not in {'win32', 'cli'}: return import colorama colorama.init() # For some reason we make these wrappers around stdout/stderr. # For now, we need to reset them so all output gets coloured. # https://github.com/ipython/ipython/issues/8669 # io.std* are deprecated, but don't show our own deprecation warnings # during initialization of the deprecated API. with warnings.catch_warnings(): warnings.simplefilter('ignore', DeprecationWarning) io.stdout = io.IOStream(sys.stdout) io.stderr = io.IOStream(sys.stderr) def init_magics(self): super(TerminalInteractiveShell, self).init_magics() self.register_magics(TerminalMagics) def init_alias(self): # The parent class defines aliases that can be safely used with any # frontend. super(TerminalInteractiveShell, self).init_alias() # Now define aliases that only make sense on the terminal, because they # need direct access to the console in a way that we can't emulate in # GUI or web frontend if os.name == 'posix': for cmd in ('clear', 'more', 'less', 'man'): self.alias_manager.soft_define_alias(cmd, cmd) def __init__(self, *args, **kwargs): super(TerminalInteractiveShell, self).__init__(*args, **kwargs) self.init_prompt_toolkit_cli() self.init_term_title() self.keep_running = True self.debugger_history = InMemoryHistory() def ask_exit(self): self.keep_running = False rl_next_input = None def interact(self, display_banner=DISPLAY_BANNER_DEPRECATED): if display_banner is not DISPLAY_BANNER_DEPRECATED: warn('interact `display_banner` argument is deprecated since IPython 5.0. Call `show_banner()` if needed.', DeprecationWarning, stacklevel=2) self.keep_running = True while self.keep_running: print(self.separate_in, end='') try: code = self.prompt_for_code() except EOFError: if (not self.confirm_exit) \ or self.ask_yes_no('Do you really want to exit ([y]/n)?','y','n'): self.ask_exit() else: if code: self.run_cell(code, store_history=True) def mainloop(self, display_banner=DISPLAY_BANNER_DEPRECATED): # An extra layer of protection in case someone mashing Ctrl-C breaks # out of our internal code. if display_banner is not DISPLAY_BANNER_DEPRECATED: warn('mainloop `display_banner` argument is deprecated since IPython 5.0. Call `show_banner()` if needed.', DeprecationWarning, stacklevel=2) while True: try: self.interact() break except KeyboardInterrupt as e: print("\n%s escaped interact()\n" % type(e).__name__) finally: # An interrupt during the eventloop will mess up the # internal state of the prompt_toolkit library. # Stopping the eventloop fixes this, see # https://github.com/ipython/ipython/pull/9867 if hasattr(self, '_eventloop'): self._eventloop.stop() self.restore_term_title() _inputhook = None def inputhook(self, context): if self._inputhook is not None: self._inputhook(context) active_eventloop = None def enable_gui(self, gui=None): if gui and (gui != 'inline') : self.active_eventloop, self._inputhook =\ get_inputhook_name_and_func(gui) else: self.active_eventloop = self._inputhook = None # For prompt_toolkit 3.0. We have to create an asyncio event loop with # this inputhook. if PTK3: import asyncio from prompt_toolkit.eventloop import new_eventloop_with_inputhook if gui == 'asyncio': # When we integrate the asyncio event loop, run the UI in the # same event loop as the rest of the code. don't use an actual # input hook. (Asyncio is not made for nesting event loops.) self.pt_loop = asyncio.get_event_loop() elif self._inputhook: # If an inputhook was set, create a new asyncio event loop with # this inputhook for the prompt. self.pt_loop = new_eventloop_with_inputhook(self._inputhook) else: # When there's no inputhook, run the prompt in a separate # asyncio event loop. self.pt_loop = asyncio.new_event_loop() # Run !system commands directly, not through pipes, so terminal programs # work correctly. system = InteractiveShell.system_raw def auto_rewrite_input(self, cmd): """Overridden from the parent class to use fancy rewriting prompt""" if not self.show_rewritten_input: return tokens = self.prompts.rewrite_prompt_tokens() if self.pt_app: print_formatted_text(PygmentsTokens(tokens), end='', style=self.pt_app.app.style) print(cmd) else: prompt = ''.join(s for t, s in tokens) print(prompt, cmd, sep='') _prompts_before = None def switch_doctest_mode(self, mode): """Switch prompts to classic for %doctest_mode""" if mode: self._prompts_before = self.prompts self.prompts = ClassicPrompts(self) elif self._prompts_before: self.prompts = self._prompts_before self._prompts_before = None
class IPCompleter(Completer): """Extension of the completer class with IPython-specific features""" @observe('greedy') def _greedy_changed(self, change): """update the splitter and readline delims when greedy is changed""" if change['new']: self.splitter.delims = GREEDY_DELIMS else: self.splitter.delims = DELIMS if self.readline: self.readline.set_completer_delims(self.splitter.delims) merge_completions = Bool(True, help="""Whether to merge completion results into a single list If False, only the completion results from the first non-empty completer will be returned. """ ).tag(config=True) omit__names = Enum((0,1,2), default_value=2, help="""Instruct the completer to omit private method names Specifically, when completing on ``object.<tab>``. When 2 [default]: all names that start with '_' will be excluded. When 1: all 'magic' names (``__foo__``) will be excluded. When 0: nothing will be excluded. """ ).tag(config=True) limit_to__all__ = Bool(False, help=""" DEPRECATED as of version 5.0. Instruct the completer to use __all__ for the completion Specifically, when completing on ``object.<tab>``. When True: only those names in obj.__all__ will be included. When False [default]: the __all__ attribute is ignored """, ).tag(config=True) def __init__(self, shell=None, namespace=None, global_namespace=None, use_readline=True, config=None, **kwargs): """IPCompleter() -> completer Return a completer object suitable for use by the readline library via readline.set_completer(). Inputs: - shell: a pointer to the ipython shell itself. This is needed because this completer knows about magic functions, and those can only be accessed via the ipython instance. - namespace: an optional dict where completions are performed. - global_namespace: secondary optional dict for completions, to handle cases (such as IPython embedded inside functions) where both Python scopes are visible. use_readline : bool, optional If true, use the readline library. This completer can still function without readline, though in that case callers must provide some extra information on each call about the current line.""" self.magic_escape = ESC_MAGIC self.splitter = CompletionSplitter() # Readline configuration, only used by the rlcompleter method. if use_readline: # We store the right version of readline so that later code import IPython.utils.rlineimpl as readline self.readline = readline else: self.readline = None # _greedy_changed() depends on splitter and readline being defined: Completer.__init__(self, namespace=namespace, global_namespace=global_namespace, config=config, **kwargs) # List where completion matches will be stored self.matches = [] self.shell = shell # Regexp to split filenames with spaces in them self.space_name_re = re.compile(r'([^\\] )') # Hold a local ref. to glob.glob for speed self.glob = glob.glob # Determine if we are running on 'dumb' terminals, like (X)Emacs # buffers, to avoid completion problems. term = os.environ.get('TERM','xterm') self.dumb_terminal = term in ['dumb','emacs'] # Special handling of backslashes needed in win32 platforms if sys.platform == "win32": self.clean_glob = self._clean_glob_win32 else: self.clean_glob = self._clean_glob #regexp to parse docstring for function signature self.docstring_sig_re = re.compile(r'^[\w|\s.]+\(([^)]*)\).*') self.docstring_kwd_re = re.compile(r'[\s|\[]*(\w+)(?:\s*=\s*.*)') #use this if positional argument name is also needed #= re.compile(r'[\s|\[]*(\w+)(?:\s*=?\s*.*)') # All active matcher routines for completion self.matchers = [ self.python_matches, self.file_matches, self.magic_matches, self.python_func_kw_matches, self.dict_key_matches, ] # This is set externally by InteractiveShell self.custom_completers = None def all_completions(self, text): """ Wrapper around the complete method for the benefit of emacs. """ return self.complete(text)[1] def _clean_glob(self, text): return self.glob("%s*" % text) def _clean_glob_win32(self,text): return [f.replace("\\","/") for f in self.glob("%s*" % text)] def file_matches(self, text): """Match filenames, expanding ~USER type strings. Most of the seemingly convoluted logic in this completer is an attempt to handle filenames with spaces in them. And yet it's not quite perfect, because Python's readline doesn't expose all of the GNU readline details needed for this to be done correctly. For a filename with a space in it, the printed completions will be only the parts after what's already been typed (instead of the full completions, as is normally done). I don't think with the current (as of Python 2.3) Python readline it's possible to do better.""" # chars that require escaping with backslash - i.e. chars # that readline treats incorrectly as delimiters, but we # don't want to treat as delimiters in filename matching # when escaped with backslash if text.startswith('!'): text = text[1:] text_prefix = u'!' else: text_prefix = u'' text_until_cursor = self.text_until_cursor # track strings with open quotes open_quotes = has_open_quotes(text_until_cursor) if '(' in text_until_cursor or '[' in text_until_cursor: lsplit = text else: try: # arg_split ~ shlex.split, but with unicode bugs fixed by us lsplit = arg_split(text_until_cursor)[-1] except ValueError: # typically an unmatched ", or backslash without escaped char. if open_quotes: lsplit = text_until_cursor.split(open_quotes)[-1] else: return [] except IndexError: # tab pressed on empty line lsplit = "" if not open_quotes and lsplit != protect_filename(lsplit): # if protectables are found, do matching on the whole escaped name has_protectables = True text0,text = text,lsplit else: has_protectables = False text = os.path.expanduser(text) if text == "": return [text_prefix + cast_unicode_py2(protect_filename(f)) for f in self.glob("*")] # Compute the matches from the filesystem if sys.platform == 'win32': m0 = self.clean_glob(text) else: m0 = self.clean_glob(text.replace('\\', '')) if has_protectables: # If we had protectables, we need to revert our changes to the # beginning of filename so that we don't double-write the part # of the filename we have so far len_lsplit = len(lsplit) matches = [text_prefix + text0 + protect_filename(f[len_lsplit:]) for f in m0] else: if open_quotes: # if we have a string with an open quote, we don't need to # protect the names at all (and we _shouldn't_, as it # would cause bugs when the filesystem call is made). matches = m0 else: matches = [text_prefix + protect_filename(f) for f in m0] # Mark directories in input list by appending '/' to their names. return [cast_unicode_py2(x+'/') if os.path.isdir(x) else x for x in matches] def magic_matches(self, text): """Match magics""" # Get all shell magics now rather than statically, so magics loaded at # runtime show up too. lsm = self.shell.magics_manager.lsmagic() line_magics = lsm['line'] cell_magics = lsm['cell'] pre = self.magic_escape pre2 = pre+pre # Completion logic: # - user gives %%: only do cell magics # - user gives %: do both line and cell magics # - no prefix: do both # In other words, line magics are skipped if the user gives %% explicitly bare_text = text.lstrip(pre) comp = [ pre2+m for m in cell_magics if m.startswith(bare_text)] if not text.startswith(pre2): comp += [ pre+m for m in line_magics if m.startswith(bare_text)] return [cast_unicode_py2(c) for c in comp] def python_matches(self, text): """Match attributes or global python names""" if "." in text: try: matches = self.attr_matches(text) if text.endswith('.') and self.omit__names: if self.omit__names == 1: # true if txt is _not_ a __ name, false otherwise: no__name = (lambda txt: re.match(r'.*\.__.*?__',txt) is None) else: # true if txt is _not_ a _ name, false otherwise: no__name = (lambda txt: re.match(r'\._.*?',txt[txt.rindex('.'):]) is None) matches = filter(no__name, matches) except NameError: # catches <undefined attributes>.<tab> matches = [] else: matches = self.global_matches(text) return matches def _default_arguments_from_docstring(self, doc): """Parse the first line of docstring for call signature. Docstring should be of the form 'min(iterable[, key=func])\n'. It can also parse cython docstring of the form 'Minuit.migrad(self, int ncall=10000, resume=True, int nsplit=1)'. """ if doc is None: return [] #care only the firstline line = doc.lstrip().splitlines()[0] #p = re.compile(r'^[\w|\s.]+\(([^)]*)\).*') #'min(iterable[, key=func])\n' -> 'iterable[, key=func]' sig = self.docstring_sig_re.search(line) if sig is None: return [] # iterable[, key=func]' -> ['iterable[' ,' key=func]'] sig = sig.groups()[0].split(',') ret = [] for s in sig: #re.compile(r'[\s|\[]*(\w+)(?:\s*=\s*.*)') ret += self.docstring_kwd_re.findall(s) return ret def _default_arguments(self, obj): """Return the list of default arguments of obj if it is callable, or empty list otherwise.""" call_obj = obj ret = [] if inspect.isbuiltin(obj): pass elif not (inspect.isfunction(obj) or inspect.ismethod(obj)): if inspect.isclass(obj): #for cython embededsignature=True the constructor docstring #belongs to the object itself not __init__ ret += self._default_arguments_from_docstring( getattr(obj, '__doc__', '')) # for classes, check for __init__,__new__ call_obj = (getattr(obj, '__init__', None) or getattr(obj, '__new__', None)) # for all others, check if they are __call__able elif hasattr(obj, '__call__'): call_obj = obj.__call__ ret += self._default_arguments_from_docstring( getattr(call_obj, '__doc__', '')) if PY3: _keeps = (inspect.Parameter.KEYWORD_ONLY, inspect.Parameter.POSITIONAL_OR_KEYWORD) signature = inspect.signature else: import IPython.utils.signatures _keeps = (IPython.utils.signatures.Parameter.KEYWORD_ONLY, IPython.utils.signatures.Parameter.POSITIONAL_OR_KEYWORD) signature = IPython.utils.signatures.signature try: sig = signature(call_obj) ret.extend(k for k, v in sig.parameters.items() if v.kind in _keeps) except ValueError: pass return list(set(ret)) def python_func_kw_matches(self,text): """Match named parameters (kwargs) of the last open function""" if "." in text: # a parameter cannot be dotted return [] try: regexp = self.__funcParamsRegex except AttributeError: regexp = self.__funcParamsRegex = re.compile(r''' '.*?(?<!\\)' | # single quoted strings or ".*?(?<!\\)" | # double quoted strings or \w+ | # identifier \S # other characters ''', re.VERBOSE | re.DOTALL) # 1. find the nearest identifier that comes before an unclosed # parenthesis before the cursor # e.g. for "foo (1+bar(x), pa<cursor>,a=1)", the candidate is "foo" tokens = regexp.findall(self.text_until_cursor) tokens.reverse() iterTokens = iter(tokens); openPar = 0 for token in iterTokens: if token == ')': openPar -= 1 elif token == '(': openPar += 1 if openPar > 0: # found the last unclosed parenthesis break else: return [] # 2. Concatenate dotted names ("foo.bar" for "foo.bar(x, pa" ) ids = [] isId = re.compile(r'\w+$').match while True: try: ids.append(next(iterTokens)) if not isId(ids[-1]): ids.pop(); break if not next(iterTokens) == '.': break except StopIteration: break # lookup the candidate callable matches either using global_matches # or attr_matches for dotted names if len(ids) == 1: callableMatches = self.global_matches(ids[0]) else: callableMatches = self.attr_matches('.'.join(ids[::-1])) argMatches = [] for callableMatch in callableMatches: try: namedArgs = self._default_arguments(eval(callableMatch, self.namespace)) except: continue for namedArg in namedArgs: if namedArg.startswith(text): argMatches.append(u"%s=" %namedArg) return argMatches def dict_key_matches(self, text): "Match string keys in a dictionary, after e.g. 'foo[' " def get_keys(obj): # Objects can define their own completions by defining an # _ipy_key_completions_() method. method = get_real_method(obj, '_ipython_key_completions_') if method is not None: return method() # Special case some common in-memory dict-like types if isinstance(obj, dict) or\ _safe_isinstance(obj, 'pandas', 'DataFrame'): try: return list(obj.keys()) except Exception: return [] elif _safe_isinstance(obj, 'numpy', 'ndarray') or\ _safe_isinstance(obj, 'numpy', 'void'): return obj.dtype.names or [] return [] try: regexps = self.__dict_key_regexps except AttributeError: dict_key_re_fmt = r'''(?x) ( # match dict-referring expression wrt greedy setting %s ) \[ # open bracket \s* # and optional whitespace ([uUbB]? # string prefix (r not handled) (?: # unclosed string '(?:[^']|(?<!\\)\\')* | "(?:[^"]|(?<!\\)\\")* ) )? $ ''' regexps = self.__dict_key_regexps = { False: re.compile(dict_key_re_fmt % ''' # identifiers separated by . (?!\d)\w+ (?:\.(?!\d)\w+)* '''), True: re.compile(dict_key_re_fmt % ''' .+ ''') } match = regexps[self.greedy].search(self.text_until_cursor) if match is None: return [] expr, prefix = match.groups() try: obj = eval(expr, self.namespace) except Exception: try: obj = eval(expr, self.global_namespace) except Exception: return [] keys = get_keys(obj) if not keys: return keys closing_quote, token_offset, matches = match_dict_keys(keys, prefix, self.splitter.delims) if not matches: return matches # get the cursor position of # - the text being completed # - the start of the key text # - the start of the completion text_start = len(self.text_until_cursor) - len(text) if prefix: key_start = match.start(2) completion_start = key_start + token_offset else: key_start = completion_start = match.end() # grab the leading prefix, to make sure all completions start with `text` if text_start > key_start: leading = '' else: leading = text[text_start:completion_start] # the index of the `[` character bracket_idx = match.end(1) # append closing quote and bracket as appropriate # this is *not* appropriate if the opening quote or bracket is outside # the text given to this method suf = '' continuation = self.line_buffer[len(self.text_until_cursor):] if key_start > text_start and closing_quote: # quotes were opened inside text, maybe close them if continuation.startswith(closing_quote): continuation = continuation[len(closing_quote):] else: suf += closing_quote if bracket_idx > text_start: # brackets were opened inside text, maybe close them if not continuation.startswith(']'): suf += ']' return [leading + k + suf for k in matches] def unicode_name_matches(self, text): u"""Match Latex-like syntax for unicode characters base on the name of the character. This does \\GREEK SMALL LETTER ETA -> η Works only on valid python 3 identifier, or on combining characters that will combine to form a valid identifier. Used on Python 3 only. """ slashpos = text.rfind('\\') if slashpos > -1: s = text[slashpos+1:] try : unic = unicodedata.lookup(s) # allow combining chars if ('a'+unic).isidentifier(): return '\\'+s,[unic] except KeyError: pass return u'', [] def latex_matches(self, text): u"""Match Latex syntax for unicode characters. This does both \\alp -> \\alpha and \\alpha -> α Used on Python 3 only. """ slashpos = text.rfind('\\') if slashpos > -1: s = text[slashpos:] if s in latex_symbols: # Try to complete a full latex symbol to unicode # \\alpha -> α return s, [latex_symbols[s]] else: # If a user has partially typed a latex symbol, give them # a full list of options \al -> [\aleph, \alpha] matches = [k for k in latex_symbols if k.startswith(s)] return s, matches return u'', [] def dispatch_custom_completer(self, text): if not self.custom_completers: return line = self.line_buffer if not line.strip(): return None # Create a little structure to pass all the relevant information about # the current completion to any custom completer. event = Bunch() event.line = line event.symbol = text cmd = line.split(None,1)[0] event.command = cmd event.text_until_cursor = self.text_until_cursor # for foo etc, try also to find completer for %foo if not cmd.startswith(self.magic_escape): try_magic = self.custom_completers.s_matches( self.magic_escape + cmd) else: try_magic = [] for c in itertools.chain(self.custom_completers.s_matches(cmd), try_magic, self.custom_completers.flat_matches(self.text_until_cursor)): try: res = c(event) if res: # first, try case sensitive match withcase = [cast_unicode_py2(r) for r in res if r.startswith(text)] if withcase: return withcase # if none, then case insensitive ones are ok too text_low = text.lower() return [cast_unicode_py2(r) for r in res if r.lower().startswith(text_low)] except TryNext: pass return None @_strip_single_trailing_space def complete(self, text=None, line_buffer=None, cursor_pos=None): """Find completions for the given text and line context. Note that both the text and the line_buffer are optional, but at least one of them must be given. Parameters ---------- text : string, optional Text to perform the completion on. If not given, the line buffer is split using the instance's CompletionSplitter object. line_buffer : string, optional If not given, the completer attempts to obtain the current line buffer via readline. This keyword allows clients which are requesting for text completions in non-readline contexts to inform the completer of the entire text. cursor_pos : int, optional Index of the cursor in the full line buffer. Should be provided by remote frontends where kernel has no access to frontend state. Returns ------- text : str Text that was actually used in the completion. matches : list A list of completion matches. """ # if the cursor position isn't given, the only sane assumption we can # make is that it's at the end of the line (the common case) if cursor_pos is None: cursor_pos = len(line_buffer) if text is None else len(text) if self.use_main_ns: self.namespace = __main__.__dict__ if PY3: base_text = text if not line_buffer else line_buffer[:cursor_pos] latex_text, latex_matches = self.latex_matches(base_text) if latex_matches: return latex_text, latex_matches name_text = '' name_matches = [] for meth in (self.unicode_name_matches, back_latex_name_matches, back_unicode_name_matches): name_text, name_matches = meth(base_text) if name_text: return name_text, name_matches # if text is either None or an empty string, rely on the line buffer if not text: text = self.splitter.split_line(line_buffer, cursor_pos) # If no line buffer is given, assume the input text is all there was if line_buffer is None: line_buffer = text self.line_buffer = line_buffer self.text_until_cursor = self.line_buffer[:cursor_pos] # Start with a clean slate of completions self.matches[:] = [] custom_res = self.dispatch_custom_completer(text) if custom_res is not None: # did custom completers produce something? self.matches = custom_res else: # Extend the list of completions with the results of each # matcher, so we return results to the user from all # namespaces. if self.merge_completions: self.matches = [] for matcher in self.matchers: try: self.matches.extend(matcher(text)) except: # Show the ugly traceback if the matcher causes an # exception, but do NOT crash the kernel! sys.excepthook(*sys.exc_info()) else: for matcher in self.matchers: self.matches = matcher(text) if self.matches: break # FIXME: we should extend our api to return a dict with completions for # different types of objects. The rlcomplete() method could then # simply collapse the dict into a list for readline, but we'd have # richer completion semantics in other evironments. self.matches = sorted(set(self.matches), key=completions_sorting_key) return text, self.matches
class TerminalInteractiveShell(InteractiveShell): space_for_menu = Integer( 6, help='Number of line at the bottom of the screen ' 'to reserve for the completion menu').tag(config=True) def _space_for_menu_changed(self, old, new): self._update_layout() pt_cli = None debugger_history = None _pt_app = None simple_prompt = Bool( _use_simple_prompt, help= """Use `raw_input` for the REPL, without completion and prompt colors. Useful when controlling IPython as a subprocess, and piping STDIN/OUT/ERR. Known usage are: IPython own testing machinery, and emacs inferior-shell integration through elpy. This mode default to `True` if the `IPY_TEST_SIMPLE_PROMPT` environment variable is set, or the current terminal is not a tty.""" ).tag(config=True) @property def debugger_cls(self): return Pdb if self.simple_prompt else TerminalPdb confirm_exit = Bool( True, help=""" Set to confirm when you try to exit IPython with an EOF (Control-D in Unix, Control-Z/Enter in Windows). By typing 'exit' or 'quit', you can force a direct exit without any confirmation.""", ).tag(config=True) editing_mode = Unicode( 'emacs', help="Shortcut style to use at the prompt. 'vi' or 'emacs'.", ).tag(config=True) mouse_support = Bool( False, help= "Enable mouse support in the prompt\n(Note: prevents selecting text with the mouse)" ).tag(config=True) # We don't load the list of styles for the help string, because loading # Pygments plugins takes time and can cause unexpected errors. highlighting_style = Union( [Unicode('legacy'), Type(klass=Style)], help="""The name or class of a Pygments style to use for syntax highlighting. To see available styles, run `pygmentize -L styles`.""" ).tag(config=True) @observe('highlighting_style') @observe('colors') def _highlighting_style_changed(self, change): self.refresh_style() def refresh_style(self): self._style = self._make_style_from_name_or_cls( self.highlighting_style) highlighting_style_overrides = Dict( help="Override highlighting format for specific tokens").tag( config=True) true_color = Bool( False, help=("Use 24bit colors instead of 256 colors in prompt highlighting. " "If your terminal supports true color, the following command " "should print 'TRUECOLOR' in orange: " "printf \"\\x1b[38;2;255;100;0mTRUECOLOR\\x1b[0m\\n\"")).tag( config=True) editor = Unicode( get_default_editor(), help="Set the editor used by IPython (default to $EDITOR/vi/notepad)." ).tag(config=True) prompts_class = Type( Prompts, help='Class used to generate Prompt token for prompt_toolkit').tag( config=True) prompts = Instance(Prompts) @default('prompts') def _prompts_default(self): return self.prompts_class(self) @observe('prompts') def _(self, change): self._update_layout() @default('displayhook_class') def _displayhook_class_default(self): return RichPromptDisplayHook term_title = Bool( True, help="Automatically set the terminal title").tag(config=True) term_title_format = Unicode( "IPython: {cwd}", help= "Customize the terminal title format. This is a python format string. " + "Available substitutions are: {cwd}.").tag(config=True) display_completions = Enum( ('column', 'multicolumn', 'readlinelike'), help= ("Options for displaying tab completions, 'column', 'multicolumn', and " "'readlinelike'. These options are for `prompt_toolkit`, see " "`prompt_toolkit` documentation for more information."), default_value='multicolumn').tag(config=True) highlight_matching_brackets = Bool( True, help="Highlight matching brackets.", ).tag(config=True) extra_open_editor_shortcuts = Bool( False, help= "Enable vi (v) or Emacs (C-X C-E) shortcuts to open an external editor. " "This is in addition to the F2 binding, which is always enabled.").tag( config=True) handle_return = Any( None, help="Provide an alternative handler to be called when the user presses " "Return. This is an advanced option intended for debugging, which " "may be changed or removed in later releases.").tag(config=True) @observe('term_title') def init_term_title(self, change=None): # Enable or disable the terminal title. if self.term_title: toggle_set_term_title(True) set_term_title(self.term_title_format.format(cwd=abbrev_cwd())) else: toggle_set_term_title(False) def init_display_formatter(self): super(TerminalInteractiveShell, self).init_display_formatter() # terminal only supports plain text self.display_formatter.active_types = ['text/plain'] # disable `_ipython_display_` self.display_formatter.ipython_display_formatter.enabled = False def init_prompt_toolkit_cli(self): if self.simple_prompt: # Fall back to plain non-interactive output for tests. # This is very limited, and only accepts a single line. def prompt(): isp = self.input_splitter prompt_text = "".join(x[1] for x in self.prompts.in_prompt_tokens()) prompt_continuation = "".join( x[1] for x in self.prompts.continuation_prompt_tokens()) while isp.push_accepts_more(): line = cast_unicode_py2(input(prompt_text)) isp.push(line) prompt_text = prompt_continuation return isp.source_reset() self.prompt_for_code = prompt return # Set up keyboard shortcuts kbmanager = KeyBindingManager.for_prompt( enable_open_in_editor=self.extra_open_editor_shortcuts, ) register_ipython_shortcuts(kbmanager.registry, self) # Pre-populate history from IPython's history database history = InMemoryHistory() last_cell = u"" for __, ___, cell in self.history_manager.get_tail( self.history_load_length, include_latest=True): # Ignore blank lines and consecutive duplicates cell = cell.rstrip() if cell and (cell != last_cell): history.append(cell) last_cell = cell self._style = self._make_style_from_name_or_cls( self.highlighting_style) self.style = DynamicStyle(lambda: self._style) editing_mode = getattr(EditingMode, self.editing_mode.upper()) def patch_stdout(**kwargs): return self.pt_cli.patch_stdout_context(**kwargs) self._pt_app = create_prompt_application( editing_mode=editing_mode, key_bindings_registry=kbmanager.registry, history=history, completer=IPythonPTCompleter(shell=self, patch_stdout=patch_stdout), enable_history_search=True, style=self.style, mouse_support=self.mouse_support, **self._layout_options()) self._eventloop = create_eventloop(self.inputhook) self.pt_cli = CommandLineInterface( self._pt_app, eventloop=self._eventloop, output=create_output(true_color=self.true_color)) def _make_style_from_name_or_cls(self, name_or_cls): """ Small wrapper that make an IPython compatible style from a style name We need that to add style for prompt ... etc. """ style_overrides = {} if name_or_cls == 'legacy': legacy = self.colors.lower() if legacy == 'linux': style_cls = get_style_by_name('monokai') style_overrides = _style_overrides_linux elif legacy == 'lightbg': style_overrides = _style_overrides_light_bg style_cls = get_style_by_name('pastie') elif legacy == 'neutral': # The default theme needs to be visible on both a dark background # and a light background, because we can't tell what the terminal # looks like. These tweaks to the default theme help with that. style_cls = get_style_by_name('default') style_overrides.update({ Token.Number: '#007700', Token.Operator: 'noinherit', Token.String: '#BB6622', Token.Name.Function: '#2080D0', Token.Name.Class: 'bold #2080D0', Token.Name.Namespace: 'bold #2080D0', Token.Prompt: '#009900', Token.PromptNum: '#00ff00 bold', Token.OutPrompt: '#990000', Token.OutPromptNum: '#ff0000 bold', }) # Hack: Due to limited color support on the Windows console # the prompt colors will be wrong without this if os.name == 'nt': style_overrides.update({ Token.Prompt: '#ansidarkgreen', Token.PromptNum: '#ansigreen bold', Token.OutPrompt: '#ansidarkred', Token.OutPromptNum: '#ansired bold', }) elif legacy == 'nocolor': style_cls = _NoStyle style_overrides = {} else: raise ValueError('Got unknown colors: ', legacy) else: if isinstance(name_or_cls, str): style_cls = get_style_by_name(name_or_cls) else: style_cls = name_or_cls style_overrides = { Token.Prompt: '#009900', Token.PromptNum: '#00ff00 bold', Token.OutPrompt: '#990000', Token.OutPromptNum: '#ff0000 bold', } style_overrides.update(self.highlighting_style_overrides) style = PygmentsStyle.from_defaults(pygments_style_cls=style_cls, style_dict=style_overrides) return style def _layout_options(self): """ Return the current layout option for the current Terminal InteractiveShell """ return { 'lexer': IPythonPTLexer(), 'reserve_space_for_menu': self.space_for_menu, 'get_prompt_tokens': self.prompts.in_prompt_tokens, 'get_continuation_tokens': self.prompts.continuation_prompt_tokens, 'multiline': True, 'display_completions_in_columns': (self.display_completions == 'multicolumn'), # Highlight matching brackets, but only when this setting is # enabled, and only when the DEFAULT_BUFFER has the focus. 'extra_input_processors': [ ConditionalProcessor( processor=HighlightMatchingBracketProcessor( chars='[](){}'), filter=HasFocus(DEFAULT_BUFFER) & ~IsDone() & Condition(lambda cli: self.highlight_matching_brackets)) ], } def _update_layout(self): """ Ask for a re computation of the application layout, if for example , some configuration options have changed. """ if self._pt_app: self._pt_app.layout = create_prompt_layout( **self._layout_options()) def prompt_for_code(self): with self.pt_cli.patch_stdout_context(raw=True): document = self.pt_cli.run(pre_run=self.pre_prompt, reset_current_buffer=True) return document.text def enable_win_unicode_console(self): if sys.version_info >= (3, 6): # Since PEP 528, Python uses the unicode APIs for the Windows # console by default, so WUC shouldn't be needed. return import win_unicode_console win_unicode_console.enable() def init_io(self): if sys.platform not in {'win32', 'cli'}: return self.enable_win_unicode_console() import colorama colorama.init() # For some reason we make these wrappers around stdout/stderr. # For now, we need to reset them so all output gets coloured. # https://github.com/ipython/ipython/issues/8669 # io.std* are deprecated, but don't show our own deprecation warnings # during initialization of the deprecated API. with warnings.catch_warnings(): warnings.simplefilter('ignore', DeprecationWarning) io.stdout = io.IOStream(sys.stdout) io.stderr = io.IOStream(sys.stderr) def init_magics(self): super(TerminalInteractiveShell, self).init_magics() self.register_magics(TerminalMagics) def init_alias(self): # The parent class defines aliases that can be safely used with any # frontend. super(TerminalInteractiveShell, self).init_alias() # Now define aliases that only make sense on the terminal, because they # need direct access to the console in a way that we can't emulate in # GUI or web frontend if os.name == 'posix': for cmd in ['clear', 'more', 'less', 'man']: self.alias_manager.soft_define_alias(cmd, cmd) def __init__(self, *args, **kwargs): super(TerminalInteractiveShell, self).__init__(*args, **kwargs) self.init_prompt_toolkit_cli() self.init_term_title() self.keep_running = True self.debugger_history = InMemoryHistory() def ask_exit(self): self.keep_running = False rl_next_input = None def pre_prompt(self): if self.rl_next_input: # We can't set the buffer here, because it will be reset just after # this. Adding a callable to pre_run_callables does what we need # after the buffer is reset. s = self.rl_next_input def set_doc(): self.pt_cli.application.buffer.document = Document(s) if hasattr(self.pt_cli, 'pre_run_callables'): self.pt_cli.pre_run_callables.append(set_doc) else: # Older version of prompt_toolkit; it's OK to set the document # directly here. set_doc() self.rl_next_input = None def interact(self, display_banner=DISPLAY_BANNER_DEPRECATED): if display_banner is not DISPLAY_BANNER_DEPRECATED: warn( 'interact `display_banner` argument is deprecated since IPython 5.0. Call `show_banner()` if needed.', DeprecationWarning, stacklevel=2) self.keep_running = True while self.keep_running: print(self.separate_in, end='') try: code = self.prompt_for_code() except EOFError: if (not self.confirm_exit) \ or self.ask_yes_no('Do you really want to exit ([y]/n)?','y','n'): self.ask_exit() else: if code: self.run_cell(code, store_history=True) def mainloop(self, display_banner=DISPLAY_BANNER_DEPRECATED): # An extra layer of protection in case someone mashing Ctrl-C breaks # out of our internal code. if display_banner is not DISPLAY_BANNER_DEPRECATED: warn( 'mainloop `display_banner` argument is deprecated since IPython 5.0. Call `show_banner()` if needed.', DeprecationWarning, stacklevel=2) while True: try: self.interact() break except KeyboardInterrupt as e: print("\n%s escaped interact()\n" % type(e).__name__) finally: # An interrupt during the eventloop will mess up the # internal state of the prompt_toolkit library. # Stopping the eventloop fixes this, see # https://github.com/ipython/ipython/pull/9867 if hasattr(self, '_eventloop'): self._eventloop.stop() _inputhook = None def inputhook(self, context): if self._inputhook is not None: self._inputhook(context) active_eventloop = None def enable_gui(self, gui=None): if gui: self.active_eventloop, self._inputhook =\ get_inputhook_name_and_func(gui) else: self.active_eventloop = self._inputhook = None # Run !system commands directly, not through pipes, so terminal programs # work correctly. system = InteractiveShell.system_raw def auto_rewrite_input(self, cmd): """Overridden from the parent class to use fancy rewriting prompt""" if not self.show_rewritten_input: return tokens = self.prompts.rewrite_prompt_tokens() if self.pt_cli: self.pt_cli.print_tokens(tokens) print(cmd) else: prompt = ''.join(s for t, s in tokens) print(prompt, cmd, sep='') _prompts_before = None def switch_doctest_mode(self, mode): """Switch prompts to classic for %doctest_mode""" if mode: self._prompts_before = self.prompts self.prompts = ClassicPrompts(self) elif self._prompts_before: self.prompts = self._prompts_before self._prompts_before = None self._update_layout()
class NotebookNotary(LoggingConfigurable): """A class for computing and verifying notebook signatures.""" data_dir = Unicode( help="""The storage directory for notary secret and database.""").tag( config=True) @default('data_dir') def _data_dir_default(self): app = None try: if JupyterApp.initialized(): app = JupyterApp.instance() except MultipleInstanceError: pass if app is None: # create an app, without the global instance app = JupyterApp() app.initialize(argv=[]) return app.data_dir store_factory = Callable( help="""A callable returning the storage backend for notebook signatures. The default uses an SQLite database.""").tag(config=True) @default('store_factory') def _store_factory_default(self): def factory(): if sqlite3 is None: self.log.warning( "Missing SQLite3, all notebooks will be untrusted!") return MemorySignatureStore() return SQLiteSignatureStore(self.db_file) return factory db_file = Unicode( help="""The sqlite file in which to store notebook signatures. By default, this will be in your Jupyter data directory. You can set it to ':memory:' to disable sqlite writing to the filesystem. """).tag(config=True) @default('db_file') def _db_file_default(self): if not self.data_dir: return ':memory:' return os.path.join(self.data_dir, u'nbsignatures.db') algorithm = Enum( algorithms, default_value='sha256', help="""The hashing algorithm used to sign notebooks.""").tag( config=True) @observe('algorithm') def _algorithm_changed(self, change): self.digestmod = getattr(hashlib, change.new) digestmod = Any() @default('digestmod') def _digestmod_default(self): return getattr(hashlib, self.algorithm) secret_file = Unicode( help="""The file where the secret key is stored.""").tag(config=True) @default('secret_file') def _secret_file_default(self): if not self.data_dir: return '' return os.path.join(self.data_dir, 'notebook_secret') secret = Bytes( help="""The secret key with which notebooks are signed.""").tag( config=True) @default('secret') def _secret_default(self): # note : this assumes an Application is running if os.path.exists(self.secret_file): with io.open(self.secret_file, 'rb') as f: return f.read() else: secret = encodebytes(os.urandom(1024)) self._write_secret_file(secret) return secret def __init__(self, **kwargs): super(NotebookNotary, self).__init__(**kwargs) self.store = self.store_factory() def _write_secret_file(self, secret): """write my secret to my secret_file""" self.log.info("Writing notebook-signing key to %s", self.secret_file) with io.open(self.secret_file, 'wb') as f: f.write(secret) try: os.chmod(self.secret_file, 0o600) except OSError: self.log.warning("Could not set permissions on %s", self.secret_file) return secret def compute_signature(self, nb): """Compute a notebook's signature by hashing the entire contents of the notebook via HMAC digest. """ hmac = HMAC(self.secret, digestmod=self.digestmod) # don't include the previous hash in the content to hash with signature_removed(nb): # sign the whole thing for b in yield_everything(nb): hmac.update(b) return hmac.hexdigest() def check_signature(self, nb): """Check a notebook's stored signature If a signature is stored in the notebook's metadata, a new signature is computed and compared with the stored value. Returns True if the signature is found and matches, False otherwise. The following conditions must all be met for a notebook to be trusted: - a signature is stored in the form 'scheme:hexdigest' - the stored scheme matches the requested scheme - the requested scheme is available from hashlib - the computed hash from notebook_signature matches the stored hash """ if nb.nbformat < 3: return False signature = self.compute_signature(nb) return self.store.check_signature(signature, self.algorithm) def sign(self, nb): """Sign a notebook, indicating that its output is trusted on this machine Stores hash algorithm and hmac digest in a local database of trusted notebooks. """ if nb.nbformat < 3: return signature = self.compute_signature(nb) self.store.store_signature(signature, self.algorithm) def unsign(self, nb): """Ensure that a notebook is untrusted by removing its signature from the trusted database, if present. """ signature = self.compute_signature(nb) self.store.remove_signature(signature, self.algorithm) def mark_cells(self, nb, trusted): """Mark cells as trusted if the notebook's signature can be verified Sets ``cell.metadata.trusted = True | False`` on all code cells, depending on the *trusted* parameter. This will typically be the return value from ``self.check_signature(nb)``. This function is the inverse of check_cells """ if nb.nbformat < 3: return for cell in yield_code_cells(nb): cell['metadata']['trusted'] = trusted def _check_cell(self, cell, nbformat_version): """Do we trust an individual cell? Return True if: - cell is explicitly trusted - cell has no potentially unsafe rich output If a cell has no output, or only simple print statements, it will always be trusted. """ # explicitly trusted if cell['metadata'].pop("trusted", False): return True # explicitly safe output if nbformat_version >= 4: unsafe_output_types = ['execute_result', 'display_data'] safe_keys = {"output_type", "execution_count", "metadata"} else: # v3 unsafe_output_types = ['pyout', 'display_data'] safe_keys = {"output_type", "prompt_number", "metadata"} for output in cell['outputs']: output_type = output['output_type'] if output_type in unsafe_output_types: # if there are any data keys not in the safe whitelist output_keys = set(output) if output_keys.difference(safe_keys): return False return True def check_cells(self, nb): """Return whether all code cells are trusted. A cell is trusted if the 'trusted' field in its metadata is truthy, or if it has no potentially unsafe outputs. If there are no code cells, return True. This function is the inverse of mark_cells. """ if nb.nbformat < 3: return False trusted = True for cell in yield_code_cells(nb): # only distrust a cell if it actually has some output to distrust if not self._check_cell(cell, nb.nbformat): trusted = False return trusted
class JupytextContentsManager(base_contents_manager_class, Configurable): """ A FileContentsManager Class that reads and stores notebooks to classical Jupyter notebooks (.ipynb), R Markdown notebooks (.Rmd), Julia (.jl), Python (.py) or R scripts (.R) """ # Dictionary: notebook path => (fmt, formats) where fmt is the current format, and formats the paired formats. paired_notebooks = dict() def all_nb_extensions(self): """All extensions that should be classified as notebooks""" return [ext if ext.startswith('.') else '.' + ext for ext in self.notebook_extensions.split(',')] default_jupytext_formats = Unicode( u'', help='Save notebooks to these file extensions. ' 'Can be any of ipynb,Rmd,md,jl,py,R,nb.jl,nb.py,nb.R ' 'comma separated. If you want another format than the ' 'default one, append the format name to the extension, ' 'e.g. ipynb,py:percent to save the notebook to ' 'hydrogen/spyder/vscode compatible scripts', config=True) preferred_jupytext_formats_save = Unicode( u'', help='Preferred format when saving notebooks as text, per extension. ' 'Use "jl:percent,py:percent,R:percent" if you want to save ' 'Julia, Python and R scripts in the double percent format and ' 'only write "jupytext_formats": "py" in the notebook metadata.', config=True) preferred_jupytext_formats_read = Unicode( u'', help='Preferred format when reading notebooks from text, per ' 'extension. Use "py:sphinx" if you want to read all python ' 'scripts as Sphinx gallery scripts.', config=True) default_notebook_metadata_filter = Unicode( u'', help="Cell metadata that should be save in the text representations. " "Examples: 'all', '-all', 'widgets,nteract', 'kernelspec,jupytext-all'", config=True) default_cell_metadata_filter = Unicode( u'', help="Notebook metadata that should be saved in the text representations. " "Examples: 'all', 'hide_input,hide_output'", config=True) comment_magics = Enum( values=[True, False], allow_none=True, help='Should Jupyter magic commands be commented out in the text representation?', config=True) split_at_heading = Bool( False, help='Split markdown cells on headings (Markdown and R Markdown formats only)', config=True) sphinx_convert_rst2md = Bool( False, help='When opening a Sphinx Gallery script, convert the reStructuredText to markdown', config=True) outdated_text_notebook_margin = Float( 1.0, help='Refuse to overwrite inputs of a ipynb notebooks with those of a ' 'text notebook when the text notebook plus margin is older than ' 'the ipynb notebook', config=True) default_cell_markers = Unicode( u'', help='Start and end cell markers for the light format, comma separated. Use "{{{,}}}" to mark cells' 'as foldable regions in Vim, and "region,endregion" to mark cells as Vscode/PyCharm regions', config=True) notebook_extensions = Unicode( u','.join(NOTEBOOK_EXTENSIONS), help='A comma separated list of notebook extensions', config=True) def drop_paired_notebook(self, path): """Remove the current notebook from the list of paired notebooks""" if path not in self.paired_notebooks: return fmt, formats = self.paired_notebooks.pop(path) prev_paired_paths = paired_paths(path, fmt, formats) for alt_path, _ in prev_paired_paths: if alt_path in self.paired_notebooks: self.drop_paired_notebook(alt_path) def update_paired_notebooks(self, path, fmt, formats): """Update the list of paired notebooks to include/update the current pair""" if not formats: self.drop_paired_notebook(path) return new_paired_paths = paired_paths(path, fmt, formats) for alt_path, _ in new_paired_paths: self.drop_paired_notebook(alt_path) long_formats = long_form_multiple_formats(formats) if len(long_formats) == 1 and set(long_formats[0]) <= {'extension'}: return short_formats = short_form_multiple_formats(formats) for alt_path, alt_fmt in new_paired_paths: self.paired_notebooks[alt_path] = short_form_one_format(alt_fmt), short_formats def set_default_format_options(self, format_options, read=False): """Set default format option""" if self.default_notebook_metadata_filter: format_options.setdefault('notebook_metadata_filter', self.default_notebook_metadata_filter) if self.default_cell_metadata_filter: format_options.setdefault('cell_metadata_filter', self.default_cell_metadata_filter) if self.comment_magics is not None: format_options.setdefault('comment_magics', self.comment_magics) if self.split_at_heading: format_options.setdefault('split_at_heading', self.split_at_heading) if not read and self.default_cell_markers: format_options.setdefault('cell_markers', self.default_cell_markers) if read and self.sphinx_convert_rst2md: format_options.setdefault('rst2md', self.sphinx_convert_rst2md) def default_formats(self, path): """Return the default formats, if they apply to the current path #157""" formats = long_form_multiple_formats(self.default_jupytext_formats) for fmt in formats: try: base_path(path, fmt) return self.default_jupytext_formats except InconsistentPath: continue return None def create_prefix_dir(self, path, fmt): """Create the prefix dir, if missing""" create_prefix_dir_from_path(self._get_os_path(path.strip('/')), fmt) def save(self, model, path=''): """Save the file model and return the model with no content.""" if model['type'] != 'notebook': return super(JupytextContentsManager, self).save(model, path) nbk = model['content'] try: metadata = nbk.get('metadata') rearrange_jupytext_metadata(metadata) jupytext_metadata = metadata.setdefault('jupytext', {}) jupytext_formats = jupytext_metadata.get('formats') or self.default_formats(path) if not jupytext_formats: text_representation = jupytext_metadata.get('text_representation', {}) ext = os.path.splitext(path)[1] fmt = {'extension': ext} if ext == text_representation.get('extension') and text_representation.get('format_name'): fmt['format_name'] = text_representation.get('format_name') jupytext_formats = [fmt] jupytext_formats = long_form_multiple_formats(jupytext_formats, metadata, auto_ext_requires_language_info=False) # Set preferred formats if not format name is given yet jupytext_formats = [preferred_format(f, self.preferred_jupytext_formats_save) for f in jupytext_formats] base, fmt = find_base_path_and_format(path, jupytext_formats) self.update_paired_notebooks(path, fmt, jupytext_formats) self.set_default_format_options(jupytext_metadata) if not jupytext_metadata: metadata.pop('jupytext') # Save as ipynb first return_value = None value = None for fmt in jupytext_formats[::-1]: if fmt['extension'] != '.ipynb': continue alt_path = full_path(base, fmt) self.create_prefix_dir(alt_path, fmt) self.log.info("Saving %s", os.path.basename(alt_path)) value = super(JupytextContentsManager, self).save(model, alt_path) if alt_path == path: return_value = value # And then to the other formats, in reverse order so that # the first format is the most recent for fmt in jupytext_formats[::-1]: if fmt['extension'] == '.ipynb': continue alt_path = full_path(base, fmt) self.create_prefix_dir(alt_path, fmt) if 'format_name' in fmt and fmt['extension'] not in ['.md', '.markdown', '.Rmd']: self.log.info("Saving %s in format %s:%s", os.path.basename(alt_path), fmt['extension'][1:], fmt['format_name']) else: self.log.info("Saving %s", os.path.basename(alt_path)) with mock.patch('nbformat.writes', _jupytext_writes(fmt)): value = super(JupytextContentsManager, self).save(model, alt_path) if alt_path == path: return_value = value # Update modified timestamp to match that of the pair #207 return_value['last_modified'] = value['last_modified'] return return_value except Exception as err: raise HTTPError(400, str(err)) def get(self, path, content=True, type=None, format=None, load_alternative_format=True): """ Takes a path for an entity and returns its model""" os_path = self._get_os_path(path.strip('/')) ext = os.path.splitext(path)[1] # Not a notebook? if (not self.exists(path) or os.path.isdir(os_path) or (type != 'notebook' if type else ext not in self.all_nb_extensions())): return super(JupytextContentsManager, self).get(path, content, type, format) fmt = preferred_format(ext, self.preferred_jupytext_formats_read) if ext == '.ipynb': model = self._notebook_model(path, content=content) else: self.set_default_format_options(fmt, read=True) with mock.patch('nbformat.reads', _jupytext_reads(fmt)): model = self._notebook_model(path, content=content) if not load_alternative_format: return model if not content: # Modification time of a paired notebook, in this context - Jupyter is checking timestamp # before saving - is the most recent among all representations #118 if path not in self.paired_notebooks: return model fmt, formats = self.paired_notebooks.get(path) for alt_path, _ in paired_paths(path, fmt, formats): if alt_path != path and self.exists(alt_path): alt_model = self._notebook_model(alt_path, content=False) if alt_model['last_modified'] > model['last_modified']: model['last_modified'] = alt_model['last_modified'] return model # We will now read a second file if this is a paired notebooks. nbk = model['content'] jupytext_formats = nbk.metadata.get('jupytext', {}).get('formats') or self.default_formats(path) jupytext_formats = long_form_multiple_formats(jupytext_formats, nbk.metadata, auto_ext_requires_language_info=False) # Compute paired notebooks from formats alt_paths = [(path, fmt)] if jupytext_formats: try: _, fmt = find_base_path_and_format(path, jupytext_formats) alt_paths = paired_paths(path, fmt, jupytext_formats) self.update_paired_notebooks(path, fmt, jupytext_formats) except InconsistentPath as err: self.log.info("Unable to read paired notebook: %s", str(err)) else: if path in self.paired_notebooks: fmt, formats = self.paired_notebooks.get(path) alt_paths = paired_paths(path, fmt, formats) if len(alt_paths) > 1 and ext == '.ipynb': # Apply default options (like saving and reloading would do) jupytext_metadata = model['content']['metadata'].get('jupytext', {}) self.set_default_format_options(jupytext_metadata, read=True) if jupytext_metadata: model['content']['metadata']['jupytext'] = jupytext_metadata org_model = model fmt_inputs = fmt path_inputs = path_outputs = path model_outputs = None # Source format is first non ipynb format found on disk if path.endswith('.ipynb'): for alt_path, alt_fmt in alt_paths: if not alt_path.endswith('.ipynb') and self.exists(alt_path): self.log.info(u'Reading SOURCE from {}'.format(alt_path)) path_inputs = alt_path fmt_inputs = alt_fmt model_outputs = model model = self.get(alt_path, content=content, type='notebook', format=format, load_alternative_format=False) break # Outputs taken from ipynb if in group, if file exists else: for alt_path, _ in alt_paths: if alt_path.endswith('.ipynb') and self.exists(alt_path): self.log.info(u'Reading OUTPUTS from {}'.format(alt_path)) path_outputs = alt_path model_outputs = self.get(alt_path, content=content, type='notebook', format=format, load_alternative_format=False) break try: check_file_version(model['content'], path_inputs, path_outputs) except Exception as err: raise HTTPError(400, str(err)) # Before we combine the two files, we make sure we're not overwriting ipynb cells # with an outdated text file try: if model_outputs and model_outputs['last_modified'] > model['last_modified'] + \ timedelta(seconds=self.outdated_text_notebook_margin): raise HTTPError( 400, '''{out} (last modified {out_last}) seems more recent than {src} (last modified {src_last}) Please either: - open {src} in a text editor, make sure it is up to date, and save it, - or delete {src} if not up to date, - or increase check margin by adding, say, c.ContentsManager.outdated_text_notebook_margin = 5 # in seconds # or float("inf") to your .jupyter/jupyter_notebook_config.py file '''.format(src=path_inputs, src_last=model['last_modified'], out=path_outputs, out_last=model_outputs['last_modified'])) except OverflowError: pass if model_outputs: combine_inputs_with_outputs(model['content'], model_outputs['content'], fmt_inputs) elif not path.endswith('.ipynb'): set_kernelspec_from_language(model['content']) # Trust code cells when they have no output for cell in model['content'].cells: if cell.cell_type == 'code' and not cell.outputs and cell.metadata.get('trusted') is False: cell.metadata['trusted'] = True # Path and name of the notebook is the one of the original path model['path'] = org_model['path'] model['name'] = org_model['name'] return model def trust_notebook(self, path): """Trust the current notebook""" if path.endswith('.ipynb') or path not in self.paired_notebooks: super(JupytextContentsManager, self).trust_notebook(path) return fmt, formats = self.paired_notebooks[path] for alt_path, alt_fmt in paired_paths(path, fmt, formats): if alt_fmt['extension'] == '.ipynb': super(JupytextContentsManager, self).trust_notebook(alt_path) def rename_file(self, old_path, new_path): """Rename the current notebook, as well as its alternative representations""" if old_path not in self.paired_notebooks: try: # we do not know yet if this is a paired notebook (#190) # -> to get this information we open the notebook self.get(old_path, content=True) except Exception: pass if old_path not in self.paired_notebooks: super(JupytextContentsManager, self).rename_file(old_path, new_path) return fmt, formats = self.paired_notebooks.get(old_path) old_alt_paths = paired_paths(old_path, fmt, formats) # Is the new file name consistent with suffix? try: new_base = base_path(new_path, fmt) except Exception as err: raise HTTPError(400, str(err)) for old_alt_path, alt_fmt in old_alt_paths: new_alt_path = full_path(new_base, alt_fmt) if self.exists(old_alt_path): super(JupytextContentsManager, self).rename_file(old_alt_path, new_alt_path) self.drop_paired_notebook(old_path) self.update_paired_notebooks(new_path, fmt, formats)
class DisplayIntegrator(Tool): name = "ctapipe-display-integration" description = __doc__ event_index = Int(0, help="Event index to view.").tag(config=True) use_event_id = Bool( False, help="event_index will obtain an event using event_id instead of index.", ).tag(config=True) telescope = Int( None, allow_none=True, help="Telescope to view. Set to None to display the first" "telescope with data.", ).tag(config=True) channel = Enum([0, 1], 0, help="Channel to view").tag(config=True) extractor_product = traits.enum_trait( ImageExtractor, default="NeighborPeakWindowSum" ) aliases = Dict( dict( f="EventSource.input_url", max_events="EventSource.max_events", extractor="DisplayIntegrator.extractor_product", E="DisplayIntegrator.event_index", T="DisplayIntegrator.telescope", C="DisplayIntegrator.channel", ) ) flags = Dict( dict( id=( {"DisplayDL1Calib": {"use_event_index": True}}, "event_index will obtain an event using event_id instead of index.", ) ) ) classes = List([EventSource] + traits.classes_with_traits(ImageExtractor)) def __init__(self, **kwargs): super().__init__(**kwargs) # make sure gzip files are seekable self.config.SimTelEventSource.back_seekable = True self.eventseeker = None self.extractor = None self.calibrator = None def setup(self): self.log_format = "%(levelname)s: %(message)s [%(name)s.%(funcName)s]" event_source = self.add_component(EventSource.from_config(parent=self)) self.eventseeker = self.add_component(EventSeeker(event_source, parent=self)) self.extractor = self.add_component( ImageExtractor.from_name(self.extractor_product, parent=self) ) self.calibrate = self.add_component( CameraCalibrator(parent=self, image_extractor=self.extractor) ) def start(self): event_num = self.event_index if self.use_event_id: event_num = str(event_num) event = self.eventseeker[event_num] # Calibrate self.calibrate(event) # Select telescope tels = list(event.r0.tels_with_data) telid = self.telescope if telid is None: telid = tels[0] if telid not in tels: self.log.error( "[event] please specify one of the following " "telescopes for this event: {}".format(tels) ) exit() extractor_name = self.extractor.__class__.__name__ plot(event, telid, self.channel, extractor_name) def finish(self): pass
class MeasureControl(Control): _view_name = Unicode('LeafletMeasureControlView').tag(sync=True) _model_name = Unicode('LeafletMeasureControlModel').tag(sync=True) _length_units = ['feet', 'meters', 'miles', 'kilometers'] _area_units = ['acres', 'hectares', 'sqfeet', 'sqmeters', 'sqmiles'] _custom_units_dict = {} _custom_units = Dict().tag(sync=True) position = Enum(['topright', 'topleft', 'bottomright', 'bottomleft'], default_value='topright', help="""Possible values are topleft, topright, bottomleft or bottomright""").tag(sync=True, o=True) primary_length_unit = Enum( values=_length_units, default_value='feet', help="""Possible values are feet, meters, miles, kilometers or any user defined unit""").tag(sync=True, o=True) secondary_length_unit = Enum( values=_length_units, default_value=None, allow_none=True, help="""Possible values are feet, meters, miles, kilometers or any user defined unit""").tag(sync=True, o=True) primary_area_unit = Enum( values=_area_units, default_value='acres', help="""Possible values are acres, hectares, sqfeet, sqmeters, sqmiles or any user defined unit""").tag(sync=True, o=True) secondary_area_unit = Enum( values=_area_units, default_value=None, allow_none=True, help="""Possible values are acres, hectares, sqfeet, sqmeters, sqmiles or any user defined unit""").tag(sync=True, o=True) active_color = Color('#ABE67E').tag(sync=True, o=True) completed_color = Color('#C8F2BE').tag(sync=True, o=True) popup_options = Dict({ 'className': 'leaflet-measure-resultpopup', 'autoPanPadding': [10, 10] }).tag(sync=True, o=True) capture_z_index = Int(10000).tag(sync=True, o=True) def add_length_unit(self, name, factor, decimals=0): self._length_units.append(name) self._add_unit(name, factor, decimals) def add_area_unit(self, name, factor, decimals=0): self._area_units.append(name) self._add_unit(name, factor, decimals) def _add_unit(self, name, factor, decimals): self._custom_units_dict[name] = { 'factor': factor, 'display': name, 'decimals': decimals } self._custom_units = dict(**self._custom_units_dict)
class DisplayIntegrator(Tool): name = "DisplayIntegrator" description = "Calibrate dl0 data to dl1, and plot the various camera " \ "images that characterise the event and calibration. Also " \ "plot some examples of waveforms with the " \ "integration window." event_index = Int(0, help='Event index to view.').tag(config=True) use_event_id = Bool(False, help='event_index will obtain an event using' 'event_id instead of ' 'index.').tag(config=True) telescope = Int(None, allow_none=True, help='Telescope to view. Set to None to display the first' 'telescope with data.').tag(config=True) channel = Enum([0, 1], 0, help='Channel to view').tag(config=True) aliases = Dict( dict(r='EventFileReaderFactory.reader', f='EventFileReaderFactory.input_path', max_events='EventFileReaderFactory.max_events', extractor='ChargeExtractorFactory.extractor', window_width='ChargeExtractorFactory.window_width', window_shift='ChargeExtractorFactory.window_shift', sig_amp_cut_HG='ChargeExtractorFactory.sig_amp_cut_HG', sig_amp_cut_LG='ChargeExtractorFactory.sig_amp_cut_LG', lwt='ChargeExtractorFactory.lwt', clip_amplitude='CameraDL1Calibrator.clip_amplitude', radius='CameraDL1Calibrator.radius', E='DisplayIntegrator.event_index', T='DisplayIntegrator.telescope', C='DisplayIntegrator.channel', O='IntegratorPlotter.output_dir')) flags = Dict( dict(id=({ 'DisplayDL1Calib': { 'use_event_index': True } }, 'event_index will obtain an event using ' 'event_id instead of index.'))) classes = List([ EventFileReaderFactory, ChargeExtractorFactory, CameraDL1Calibrator, IntegratorPlotter ]) def __init__(self, **kwargs): super().__init__(**kwargs) self.file_reader = None self.r1 = None self.dl0 = None self.extractor = None self.dl1 = None self.plotter = None def setup(self): self.log_format = "%(levelname)s: %(message)s [%(name)s.%(funcName)s]" kwargs = dict(config=self.config, tool=self) reader_factory = EventFileReaderFactory(**kwargs) reader_class = reader_factory.get_class() self.file_reader = reader_class(**kwargs) extractor_factory = ChargeExtractorFactory(**kwargs) extractor_class = extractor_factory.get_class() self.extractor = extractor_class(**kwargs) r1_factory = CameraR1CalibratorFactory(origin=self.file_reader.origin, **kwargs) r1_class = r1_factory.get_class() self.r1 = r1_class(**kwargs) self.dl0 = CameraDL0Reducer(**kwargs) self.dl1 = CameraDL1Calibrator(extractor=self.extractor, **kwargs) self.plotter = IntegratorPlotter(**kwargs) def start(self): event = self.file_reader.get_event(self.event_index, self.use_event_id) # Calibrate self.r1.calibrate(event) self.dl0.reduce(event) self.dl1.calibrate(event) # Select telescope tels = list(event.r0.tels_with_data) telid = self.telescope if telid is None: telid = tels[0] if telid not in tels: self.log.error("[event] please specify one of the following " "telescopes for this event: {}".format(tels)) exit() extractor_name = self.extractor.name self.plotter.plot(self.file_reader, event, telid, self.channel, extractor_name) def finish(self): pass
class Line(Mesh): # don't need a custom model since we aren't introducing new custom serialized properties, # just making the material property a more specific instance _view_name = Unicode('LineView', sync=True) type = Enum(['LineStrip', 'LinePieces'], 'LineStrip', sync=True) material = Instance(_LineMaterial, sync=True, **widget_serialization)
class ExecutePreprocessor(Preprocessor): """ Executes all the cells in a notebook """ timeout = Integer(30, allow_none=True, help=dedent(""" The time to wait (in seconds) for output from executions. If a cell execution takes longer, an exception (TimeoutError on python 3+, RuntimeError on python 2) is raised. `None` or `-1` will disable the timeout. If `timeout_func` is set, it overrides `timeout`. """)).tag(config=True) timeout_func = Any(default_value=None, allow_none=True, help=dedent(""" A callable which, when given the cell source as input, returns the time to wait (in seconds) for output from cell executions. If a cell execution takes longer, an exception (TimeoutError on python 3+, RuntimeError on python 2) is raised. Returning `None` or `-1` will disable the timeout for the cell. Not setting `timeout_func` will cause the preprocessor to default to using the `timeout` trait for all cells. The `timeout_func` trait overrides `timeout` if it is not `None`. """)).tag(config=True) interrupt_on_timeout = Bool(False, help=dedent(""" If execution of a cell times out, interrupt the kernel and continue executing other cells rather than throwing an error and stopping. """)).tag(config=True) startup_timeout = Integer(60, help=dedent(""" The time to wait (in seconds) for the kernel to start. If kernel startup takes longer, a RuntimeError is raised. """)).tag(config=True) allow_errors = Bool(False, help=dedent(""" If `False` (default), when a cell raises an error the execution is stopped and a `CellExecutionError` is raised. If `True`, execution errors are ignored and the execution is continued until the end of the notebook. Output from exceptions is included in the cell output in both cases. """)).tag(config=True) force_raise_errors = Bool(False, help=dedent(""" If False (default), errors from executing the notebook can be allowed with a `raises-exception` tag on a single cell, or the `allow_errors` configurable option for all cells. An allowed error will be recorded in notebook output, and execution will continue. If an error occurs when it is not explicitly allowed, a `CellExecutionError` will be raised. If True, `CellExecutionError` will be raised for any error that occurs while executing the notebook. This overrides both the `allow_errors` option and the `raises-exception` cell tag. """)).tag(config=True) extra_arguments = List(Unicode()) kernel_name = Unicode('', help=dedent(""" Name of kernel to use to execute the cells. If not set, use the kernel_spec embedded in the notebook. """)).tag(config=True) raise_on_iopub_timeout = Bool(False, help=dedent(""" If `False` (default), then the kernel will continue waiting for iopub messages until it receives a kernel idle message, or until a timeout occurs, at which point the currently executing cell will be skipped. If `True`, then an error will be raised after the first timeout. This option generally does not need to be used, but may be useful in contexts where there is the possibility of executing notebooks with memory-consuming infinite loops. """)).tag(config=True) store_widget_state = Bool(True, help=dedent(""" If `True` (default), then the state of the Jupyter widgets created at the kernel will be stored in the metadata of the notebook. """)).tag(config=True) iopub_timeout = Integer(4, allow_none=False, help=dedent(""" The time to wait (in seconds) for IOPub output. This generally doesn't need to be set, but on some slow networks (such as CI systems) the default timeout might not be long enough to get all messages. """)).tag(config=True) shutdown_kernel = Enum(['graceful', 'immediate'], default_value='graceful', help=dedent(""" If `graceful` (default), then the kernel is given time to clean up after executing all cells, e.g., to execute its `atexit` hooks. If `immediate`, then the kernel is signaled to immediately terminate. """)).tag(config=True) kernel_manager_class = Type(config=True, help='The kernel manager class to use.') @default('kernel_manager_class') def _kernel_manager_class_default(self): """Use a dynamic default to avoid importing jupyter_client at startup""" try: from jupyter_client import KernelManager except ImportError: raise ImportError( "`nbconvert --execute` requires the jupyter_client package: `pip install jupyter_client`" ) return KernelManager _display_id_map = Dict(help=dedent(""" mapping of locations of outputs with a given display_id tracks cell index and output index within cell.outputs for each appearance of the display_id { 'display_id': { cell_idx: [output_idx,] } } """)) def start_new_kernel(self, **kwargs): """Creates a new kernel manager and kernel client. Parameters ---------- kwargs : Any options for `self.kernel_manager_class.start_kernel()`. Because that defaults to KernelManager, this will likely include options accepted by `KernelManager.start_kernel()``, which includes `cwd`. Returns ------- km : KernelManager A kernel manager as created by self.kernel_manager_class. kc : KernelClient Kernel client as created by the kernel manager `km`. """ if not self.kernel_name: self.kernel_name = self.nb.metadata.get('kernelspec', {}).get('name', 'python') km = self.kernel_manager_class(kernel_name=self.kernel_name, config=self.config) km.start_kernel(extra_arguments=self.extra_arguments, **kwargs) kc = km.client() kc.start_channels() try: kc.wait_for_ready(timeout=self.startup_timeout) except RuntimeError: kc.stop_channels() km.shutdown_kernel() raise kc.allow_stdin = False return km, kc @contextmanager def setup_preprocessor(self, nb, resources, km=None, **kwargs): """ Context manager for setting up the class to execute a notebook. The assigns `nb` to `self.nb` where it will be modified in-place. It also creates and assigns the Kernel Manager (`self.km`) and Kernel Client(`self.kc`). It is intended to yield to a block that will execute codeself. When control returns from the yield it stops the client's zmq channels, shuts down the kernel, and removes the now unused attributes. Parameters ---------- nb : NotebookNode Notebook being executed. resources : dictionary Additional resources used in the conversion process. For example, passing ``{'metadata': {'path': run_path}}`` sets the execution path to ``run_path``. km : KernerlManager (optional) Optional kernel manaher. If none is provided, a kernel manager will be created. Returns ------- nb : NotebookNode The executed notebook. resources : dictionary Additional resources used in the conversion process. """ path = resources.get('metadata', {}).get('path', '') or None self.nb = nb # clear display_id map self._display_id_map = {} self.widget_state = {} self.widget_buffers = {} if km is None: kwargs["cwd"] = path self.km, self.kc = self.start_new_kernel(**kwargs) try: # Yielding unbound args for more easier understanding and downstream consumption yield nb, self.km, self.kc finally: self.kc.stop_channels() self.km.shutdown_kernel( now=self.shutdown_kernel == 'immediate') for attr in ['nb', 'km', 'kc']: delattr(self, attr) else: self.km = km if not km.has_kernel: km.start_kernel(extra_arguments=self.extra_arguments, **kwargs) self.kc = km.client() self.kc.start_channels() try: self.kc.wait_for_ready(timeout=self.startup_timeout) except RuntimeError: self.kc.stop_channels() raise self.kc.allow_stdin = False try: yield nb, self.km, self.kc finally: for attr in ['nb', 'km', 'kc']: delattr(self, attr) def preprocess(self, nb, resources, km=None): """ Preprocess notebook executing each code cell. The input argument `nb` is modified in-place. Parameters ---------- nb : NotebookNode Notebook being executed. resources : dictionary Additional resources used in the conversion process. For example, passing ``{'metadata': {'path': run_path}}`` sets the execution path to ``run_path``. km: KernelManager (optional) Optional kernel manager. If none is provided, a kernel manager will be created. Returns ------- nb : NotebookNode The executed notebook. resources : dictionary Additional resources used in the conversion process. """ with self.setup_preprocessor(nb, resources, km=km): self.log.info("Executing notebook with kernel: %s" % self.kernel_name) nb, resources = super(ExecutePreprocessor, self).preprocess(nb, resources) info_msg = self._wait_for_reply(self.kc.kernel_info()) nb.metadata['language_info'] = info_msg['content']['language_info'] self.set_widgets_metadata() return nb, resources def set_widgets_metadata(self): if self.widget_state: self.nb.metadata.widgets = { 'application/vnd.jupyter.widget-state+json': { 'state': { model_id: _serialize_widget_state(state) for model_id, state in self.widget_state.items() if '_model_name' in state }, 'version_major': 2, 'version_minor': 0, } } for key, widget in self.nb.metadata.widgets[ 'application/vnd.jupyter.widget-state+json'][ 'state'].items(): buffers = self.widget_buffers.get(key) if buffers: widget['buffers'] = buffers def preprocess_cell(self, cell, resources, cell_index): """ Executes a single code cell. See base.py for details. To execute all cells see :meth:`preprocess`. """ if cell.cell_type != 'code' or not cell.source.strip(): return cell, resources reply, outputs = self.run_cell(cell, cell_index) # Backwards compatability for processes that wrap run_cell cell.outputs = outputs cell_allows_errors = (self.allow_errors or "raises-exception" in cell.metadata.get( "tags", [])) if self.force_raise_errors or not cell_allows_errors: for out in cell.outputs: if out.output_type == 'error': raise CellExecutionError.from_cell_and_msg(cell, out) if (reply is not None) and reply['content']['status'] == 'error': raise CellExecutionError.from_cell_and_msg( cell, reply['content']) return cell, resources def _update_display_id(self, display_id, msg): """Update outputs with a given display_id""" if display_id not in self._display_id_map: self.log.debug("display id %r not in %s", display_id, self._display_id_map) return if msg['header']['msg_type'] == 'update_display_data': msg['header']['msg_type'] = 'display_data' try: out = output_from_msg(msg) except ValueError: self.log.error("unhandled iopub msg: " + msg['msg_type']) return for cell_idx, output_indices in self._display_id_map[display_id].items( ): cell = self.nb['cells'][cell_idx] outputs = cell['outputs'] for output_idx in output_indices: outputs[output_idx]['data'] = out['data'] outputs[output_idx]['metadata'] = out['metadata'] def _poll_for_reply(self, msg_id, cell=None, timeout=None): try: # check with timeout if kernel is still alive msg = self.kc.shell_channel.get_msg(timeout=timeout) if msg['parent_header'].get('msg_id') == msg_id: return msg except Empty: # received no message, check if kernel is still alive self._check_alive() # kernel still alive, wait for a message def _get_timeout(self, cell): if self.timeout_func is not None and cell is not None: timeout = self.timeout_func(cell) else: timeout = self.timeout if not timeout or timeout < 0: timeout = None return timeout def _handle_timeout(self): self.log.error("Timeout waiting for execute reply (%is)." % self.timeout) if self.interrupt_on_timeout: self.log.error("Interrupting kernel") self.km.interrupt_kernel() else: raise TimeoutError("Cell execution timed out") def _check_alive(self): if not self.kc.is_alive(): self.log.error("Kernel died while waiting for execute reply.") raise DeadKernelError("Kernel died") def _wait_for_reply(self, msg_id, cell=None): # wait for finish, with timeout timeout = self._get_timeout(cell) cummulative_time = 0 timeout_interval = 5 while True: try: msg = self.kc.shell_channel.get_msg(timeout=timeout_interval) except Empty: self._check_alive() cummulative_time += timeout_interval if timeout and cummulative_time > timeout: self._handle_timeout() break else: if msg['parent_header'].get('msg_id') == msg_id: return msg def _timeout_with_deadline(self, timeout, deadline): if deadline is not None and deadline - monotonic() < timeout: timeout = deadline - monotonic() if timeout < 0: timeout = 0 return timeout def _passed_deadline(self, deadline): if deadline is not None and deadline - monotonic() <= 0: self._handle_timeout() return True return False def run_cell(self, cell, cell_index=0): parent_msg_id = self.kc.execute(cell.source) self.log.debug("Executing cell:\n%s", cell.source) exec_timeout = self._get_timeout(cell) deadline = None if exec_timeout is not None: deadline = monotonic() + exec_timeout cell.outputs = [] self.clear_before_next_output = False # This loop resolves #659. By polling iopub_channel's and shell_channel's # output we avoid dropping output and important signals (like idle) from # iopub_channel. Prior to this change, iopub_channel wasn't polled until # after exec_reply was obtained from shell_channel, leading to the # aforementioned dropped data. # These two variables are used to track what still needs polling: # more_output=true => continue to poll the iopub_channel more_output = True # polling_exec_reply=true => continue to poll the shell_channel polling_exec_reply = True while more_output or polling_exec_reply: if polling_exec_reply: if self._passed_deadline(deadline): polling_exec_reply = False continue # Avoid exceeding the execution timeout (deadline), but stop # after at most 1s so we can poll output from iopub_channel. timeout = self._timeout_with_deadline(1, deadline) exec_reply = self._poll_for_reply(parent_msg_id, cell, timeout) if exec_reply is not None: polling_exec_reply = False if more_output: try: timeout = self.iopub_timeout if polling_exec_reply: # Avoid exceeding the execution timeout (deadline) while # polling for output. timeout = self._timeout_with_deadline( timeout, deadline) msg = self.kc.iopub_channel.get_msg(timeout=timeout) except Empty: if polling_exec_reply: # Still waiting for execution to finish so we expect that # output may not always be produced yet. continue if self.raise_on_iopub_timeout: raise TimeoutError("Timeout waiting for IOPub output") else: self.log.warning("Timeout waiting for IOPub output") more_output = False continue if msg['parent_header'].get('msg_id') != parent_msg_id: # not an output from our execution continue try: # Will raise CellExecutionComplete when completed self.process_message(msg, cell, cell_index) except CellExecutionComplete: more_output = False # Return cell.outputs still for backwards compatability return exec_reply, cell.outputs def process_message(self, msg, cell, cell_index): """ Processes a kernel message, updates cell state, and returns the resulting output object that was appended to cell.outputs. The input argument `cell` is modified in-place. Parameters ---------- msg : dict The kernel message being processed. cell : nbformat.NotebookNode The cell which is currently being processed. cell_index : int The position of the cell within the notebook object. Returns ------- output : dict The execution output payload (or None for no output). Raises ------ CellExecutionComplete Once a message arrives which indicates computation completeness. """ msg_type = msg['msg_type'] self.log.debug("msg_type: %s", msg_type) content = msg['content'] self.log.debug("content: %s", content) display_id = content.get('transient', {}).get('display_id', None) if display_id and msg_type in { 'execute_result', 'display_data', 'update_display_data' }: self._update_display_id(display_id, msg) # set the prompt number for the input and the output if 'execution_count' in content: cell['execution_count'] = content['execution_count'] if msg_type == 'status': if content['execution_state'] == 'idle': raise CellExecutionComplete() elif msg_type == 'clear_output': self.clear_output(cell.outputs, msg, cell_index) elif msg_type.startswith('comm'): self.handle_comm_msg(cell.outputs, msg, cell_index) # Check for remaining messages we don't process elif msg_type not in ['execute_input', 'update_display_data']: # Assign output as our processed "result" return self.output(cell.outputs, msg, display_id, cell_index) def output(self, outs, msg, display_id, cell_index): msg_type = msg['msg_type'] try: out = output_from_msg(msg) except ValueError: self.log.error("unhandled iopub msg: " + msg_type) return if self.clear_before_next_output: self.log.debug('Executing delayed clear_output') outs[:] = [] self.clear_display_id_mapping(cell_index) self.clear_before_next_output = False if display_id: # record output index in: # _display_id_map[display_id][cell_idx] cell_map = self._display_id_map.setdefault(display_id, {}) output_idx_list = cell_map.setdefault(cell_index, []) output_idx_list.append(len(outs)) outs.append(out) return out def clear_output(self, outs, msg, cell_index): content = msg['content'] if content.get('wait'): self.log.debug('Wait to clear output') self.clear_before_next_output = True else: self.log.debug('Immediate clear output') outs[:] = [] self.clear_display_id_mapping(cell_index) def clear_display_id_mapping(self, cell_index): for display_id, cell_map in self._display_id_map.items(): if cell_index in cell_map: cell_map[cell_index] = [] def handle_comm_msg(self, outs, msg, cell_index): content = msg['content'] data = content['data'] if self.store_widget_state and 'state' in data: # ignore custom msg'es self.widget_state.setdefault(content['comm_id'], {}).update(data['state']) if 'buffer_paths' in data and data['buffer_paths']: self.widget_buffers[content['comm_id']] = _get_buffer_data(msg)
class Directions(GMapsWidgetMixin, widgets.Widget): """ Directions layer. Add this to a :class:`gmaps.Figure` instance to draw directions. Use the :func:`gmaps.directions_layer` factory function to instantiate this class, rather than the constructor. :Examples: {examples} {params} """ has_bounds = True _view_name = Unicode('DirectionsLayerView').tag(sync=True) _model_name = Unicode('DirectionsLayerModel').tag(sync=True) start = geotraitlets.Point().tag(sync=True) end = geotraitlets.Point().tag(sync=True) waypoints = geotraitlets.LocationArray().tag(sync=True) data = List(minlen=2, allow_none=True, default_value=None) data_bounds = List().tag(sync=True) avoid_ferries = Bool(default_value=False).tag(sync=True) avoid_highways = Bool(default_value=False).tag(sync=True) avoid_tolls = Bool(default_value=False).tag(sync=True) optimize_waypoints = Bool(default_value=False).tag(sync=True) travel_mode = Enum(ALLOWED_TRAVEL_MODES, default_value=DEFAULT_TRAVEL_MODE).tag(sync=True) show_markers = Bool(default_value=True).tag(sync=True) show_route = Bool(default_value=True).tag(sync=True) stroke_color = geotraitlets.ColorAlpha(default_value=DEFAULT_STROKE_COLOR, allow_none=False).tag(sync=True) stroke_opacity = geotraitlets.Opacity(default_value=0.6, allow_none=False).tag(sync=True) stroke_weight = Float(min=0.0, allow_none=False, default_value=6.0).tag(sync=True) layer_status = CUnicode().tag(sync=True) def __init__(self, start=None, end=None, waypoints=None, **kwargs): if kwargs.get('data') is not None: _warn_obsolete_data() # Keep for backwards compatibility with data argument data = kwargs['data'] waypoints = kwargs.get('waypoints') if start is None and end is None and waypoints is None: start, end, waypoints = Directions._destructure_data(data) kwargs.update( dict(start=start, end=end, waypoints=waypoints, data=None)) else: raise ValueError( 'Cannot set both data and one of "start", "end"' 'or "waypoints".') else: if waypoints is None: waypoints = [] kwargs.update(dict(start=start, end=end, waypoints=waypoints)) super(Directions, self).__init__(**kwargs) @staticmethod def _destructure_data(data): start = data[0] end = data[-1] waypoints = data[1:-1] return start, end, waypoints @validate('waypoints') def _valid_waypoints(self, proposal): if proposal['value'] is None: _warn_obsolete_waypoints() proposal['value'] = [] return proposal['value'] @observe('data') def _on_data_change(self, change): data = change['new'] if data is not None: _warn_obsolete_data() with self.hold_trait_notifications(): self.start, self.end, self.waypoints = \ self._destructure_data(data) @observe('start', 'end', 'waypoints') def _calc_bounds(self, change): all_data = [self.start] + self.waypoints + [self.end] min_latitude = min(row[0] for row in all_data) min_longitude = min(row[1] for row in all_data) max_latitude = max(row[0] for row in all_data) max_longitude = max(row[1] for row in all_data) self.data_bounds = [(min_latitude, min_longitude), (max_latitude, max_longitude)]
class Thermostat(ipw.HBox): state = Enum(['Off', "Heating", "Cooling"], default_value="Off").tag(sync=True) hsp = Float(70.0).tag(sync=True) csp = Float(73.0).tag(sync=True) temp = Float(72.0).tag(sync=True) oat = Float(0).tag(sync=True) occupied = Bool(False).tag(sync=True) def __init__(self): img_path = os.path.join(os.path.dirname(os.path.abspath(__file__)), "") img_tstat = os.path.join(img_path, "thermostat.png") self._img_tstat_open = open(img_tstat, "rb").read() self._tstat = ipw.Image( value=self._img_tstat_open, format='png', width=240, height=240, ) form_item_layout = ipw.Layout(display='flex', flex_flow='row', width='100%', justify_content='flex-start') self.observe(self._updateslider, 'hsp') self.observe(self._updateslider, 'csp') self.spslider = ipw.FloatRangeSlider(min=60, max=85, step=1.0, value=[self.hsp, self.csp], continuous_update=True, orientation='horizontal') self.spslider.observe(self._updatesetpoints, 'value') self.tempsensor = ipw.Label(value='{0:.2f}'.format(self.temp)) self.observe(self._updatetemp, 'temp') self.oatsensor = ipw.Label(value='{0:.2f}'.format(self.oat)) self.statedisplay = ipw.Label(value=self.state) self.observe(self._updatestate, 'state') self.statedisplay.observe(self._updatestatedisplay, 'value') self.occupiedisplay = ipw.Label(value='{0}'.format(self.occupied)) self.observe(self._update_occupancy, 'occupied') def occupancy_square_wave(): i = 0 while True: i = (i + 1) % 20 time.sleep(1) self.occupied = i > 10 occthread = threading.Thread(target=occupancy_square_wave) occthread.start() def thermostat_temp_wave(): i = 0 while True: i = (i + 1) % 180 time.sleep(1) adjust = -.2 if self.state == 'Cooling' else .2 if self.state == 'Heating' else 0 self.oat = 80 + 20 * math.sin(math.radians(i)) self.temp = self.temp + adjust + (self.oat - self.temp) * .01 tempthread = threading.Thread(target=thermostat_temp_wave) tempthread.start() form_items = [ ipw.VBox([self._tstat]), ipw.VBox([ ipw.Box( [ipw.Label(value='Outside Temperature: '), self.oatsensor], layout=form_item_layout), ipw.Box( [ipw.Label(value='Inside Temperature: '), self.tempsensor], layout=form_item_layout), ipw.Box([ipw.Label(value='Setpoints: '), self.spslider], layout=form_item_layout), ipw.Box([ipw.Label(value='State: '), self.statedisplay], layout=form_item_layout), ipw.Box([ipw.Label(value='Occupied? '), self.occupiedisplay], layout=form_item_layout), ]), ] super(Thermostat, self).__init__() self.layout.display = 'flex' self.layout.flex_flow = 'row' self.layout.border = 'solid 2px' #self.layout.align_items = 'center' #self.width = '50%' self.children = form_items def _controlloop(self): # use hysteresis if self.state == 'Heating': hyst_hsp = self.hsp + 1 else: hyst_hsp = self.hsp if self.state == 'Cooling': hyst_csp = self.csp - 1 else: hyst_csp = self.csp if self.temp < hyst_hsp: self.state = 'Heating' elif self.temp > hyst_csp: self.state = 'Cooling' else: self.state = 'Off' def update_setpoints(self, hsp, csp): self.hsp, self.csp = hsp, csp self._controlloop() def update_temperature(self, newtemp): self.temp = newtemp self._controlloop() def _updatesetpoints(self, change): self.hsp, self.csp = change['new'] self._controlloop() def _updatestate(self, change): self.statedisplay.value = self.state def _updatetemp(self, change): self.tempsensor.value = '{0:.2f}'.format(change['new']) self.oatsensor.value = '{0:.2f}'.format(self.oat) self._controlloop() def _update_occupancy(self, change): self.occupiedisplay.value = '{0}'.format(change['new']) def _updatestatedisplay(self, change): self.state = change['new'] def _updateslider(self, change): if change['name'] == 'csp': old = self.spslider.value[0] self.spslider.value = (old, change['new']) elif change['name'] == 'hsp': old = self.spslider.value[1] self.spslider.value = (change['new'], old) self._controlloop()
class FixtureConfig(Global): log_level = Enum( ('DEBUG', 'INFO', 'WARN', 'ERROR', 'CRITICAL'), 'WARN', ).tag(config=True)
class FourExitsFixedPlacing(MultiAgentSimulation): size_leaders = Int( default_value=4, min=4, max=4, help='Amount of active agents') size_herding = Int( default_value=100, min=0, help='Amount of herding agents') agent_type = Enum( default_value=Circular, values=(Circular, ThreeCircle)) body_type = Enum( default_value='adult', values=('adult',)) exit_width = Float( default_value=1.25, min=0, max=10) def attributes(self, target: int = NO_TARGET, is_follower: bool=False): def wrapper(): orientation = np.random.uniform(-np.pi, np.pi) d = dict( target=target, is_leader=not is_follower, is_follower=is_follower, body_type=self.body_type, orientation=orientation, velocity=np.zeros(2), angular_velocity=0.0, target_direction=np.zeros(2), target_orientation=orientation, familiar_exit=np.random.randint(0, len(self.field.targets))) return d return wrapper @default('logic') def _default_logic(self): return Reset(self) << \ InsideDomain(self) << ( Integrator(self) << ( Fluctuation(self), Adjusting(self) << ( Navigation(self) << ExitDetection(self) << LeaderFollower(self), Orientation(self)), AgentAgentInteractions(self), AgentObstacleInteractions(self))) @default('field') def _default_field(self): return fields.FourExitsField(exit_width=self.exit_width) @default('agents') def _default_agents(self): agents = Agents(agent_type=self.agent_type) obstacles = geom_to_linear_obstacles(self.field.obstacles) # Add new spawns to the field for the leaders self.field.spawns.extend([ rectangle(25, 45, 10, 10), rectangle(80, 65, 10, 10), rectangle(75, 35, 10, 10), rectangle(35, 5, 10, 10), ]) for i in range(self.size_leaders): group_leader = AgentGroup( agent_type=self.agent_type, size=1, attributes=self.attributes(target=i, is_follower=False)) agents.add_non_overlapping_group( group_leader, position_gen=self.field.sample_spawn(i + 1), obstacles=obstacles) group_herding = AgentGroup( agent_type=self.agent_type, size=self.size_herding, attributes=self.attributes(target=NO_TARGET, is_follower=True)) agents.add_non_overlapping_group( group_herding, position_gen=self.field.sample_spawn(0), obstacles=obstacles) return agents
class ExecutePreprocessor(Preprocessor): """ Executes all the cells in a notebook """ timeout = Integer(30, allow_none=True, help=dedent(""" The time to wait (in seconds) for output from executions. If a cell execution takes longer, an exception (TimeoutError on python 3+, RuntimeError on python 2) is raised. `None` or `-1` will disable the timeout. If `timeout_func` is set, it overrides `timeout`. """)).tag(config=True) timeout_func = Any(default_value=None, allow_none=True, help=dedent(""" A callable which, when given the cell source as input, returns the time to wait (in seconds) for output from cell executions. If a cell execution takes longer, an exception (TimeoutError on python 3+, RuntimeError on python 2) is raised. Returning `None` or `-1` will disable the timeout for the cell. Not setting `timeout_func` will cause the preprocessor to default to using the `timeout` trait for all cells. The `timeout_func` trait overrides `timeout` if it is not `None`. """)).tag(config=True) interrupt_on_timeout = Bool(False, help=dedent(""" If execution of a cell times out, interrupt the kernel and continue executing other cells rather than throwing an error and stopping. """)).tag(config=True) startup_timeout = Integer(60, help=dedent(""" The time to wait (in seconds) for the kernel to start. If kernel startup takes longer, a RuntimeError is raised. """)).tag(config=True) allow_errors = Bool(False, help=dedent(""" If `False` (default), when a cell raises an error the execution is stopped and a `CellExecutionError` is raised. If `True`, execution errors are ignored and the execution is continued until the end of the notebook. Output from exceptions is included in the cell output in both cases. """)).tag(config=True) extra_arguments = List(Unicode()) kernel_name = Unicode('', help=dedent(""" Name of kernel to use to execute the cells. If not set, use the kernel_spec embedded in the notebook. """)).tag(config=True) raise_on_iopub_timeout = Bool(False, help=dedent(""" If `False` (default), then the kernel will continue waiting for iopub messages until it receives a kernel idle message, or until a timeout occurs, at which point the currently executing cell will be skipped. If `True`, then an error will be raised after the first timeout. This option generally does not need to be used, but may be useful in contexts where there is the possibility of executing notebooks with memory-consuming infinite loops. """)).tag(config=True) iopub_timeout = Integer(4, allow_none=False, help=dedent(""" The time to wait (in seconds) for IOPub output. This generally doesn't need to be set, but on some slow networks (such as CI systems) the default timeout might not be long enough to get all messages. """)).tag(config=True) shutdown_kernel = Enum(['graceful', 'immediate'], default_value='graceful', help=dedent(""" If `graceful` (default), then the kernel is given time to clean up after executing all cells, e.g., to execute its `atexit` hooks. If `immediate`, then the kernel is signaled to immediately terminate. """)).tag(config=True) kernel_manager_class = Type(config=True, help='The kernel manager class to use.') @default('kernel_manager_class') def _km_default(self): """Use a dynamic default to avoid importing jupyter_client at startup""" try: from jupyter_client import KernelManager except ImportError: raise ImportError( "`nbconvert --execute` requires the jupyter_client package: `pip install jupyter_client`" ) return KernelManager # mapping of locations of outputs with a given display_id # tracks cell index and output index within cell.outputs for # each appearance of the display_id # { # 'display_id': { # cell_idx: [output_idx,] # } # } _display_id_map = Dict() def preprocess(self, nb, resources): """ Preprocess notebook executing each code cell. The input argument `nb` is modified in-place. Parameters ---------- nb : NotebookNode Notebook being executed. resources : dictionary Additional resources used in the conversion process. For example, passing ``{'metadata': {'path': run_path}}`` sets the execution path to ``run_path``. Returns ------- nb : NotebookNode The executed notebook. resources : dictionary Additional resources used in the conversion process. """ path = resources.get('metadata', {}).get('path', '') if path == '': path = None # clear display_id map self._display_id_map = {} # from jupyter_client.manager import start_new_kernel def start_new_kernel(startup_timeout=60, kernel_name='python', **kwargs): km = self.kernel_manager_class(kernel_name=kernel_name) km.start_kernel(**kwargs) kc = km.client() kc.start_channels() try: kc.wait_for_ready(timeout=startup_timeout) except RuntimeError: kc.stop_channels() km.shutdown_kernel() raise return km, kc kernel_name = nb.metadata.get('kernelspec', {}).get('name', 'python') if self.kernel_name: kernel_name = self.kernel_name self.log.info("Executing notebook with kernel: %s" % kernel_name) self.km, self.kc = start_new_kernel( startup_timeout=self.startup_timeout, kernel_name=kernel_name, extra_arguments=self.extra_arguments, cwd=path) self.kc.allow_stdin = False self.nb = nb try: nb, resources = super(ExecutePreprocessor, self).preprocess(nb, resources) finally: self.kc.stop_channels() self.km.shutdown_kernel(now=self.shutdown_kernel == 'immediate') delattr(self, 'nb') return nb, resources def preprocess_cell(self, cell, resources, cell_index): """ Executes a single code cell. See base.py for details. To execute all cells see :meth:`preprocess`. """ if cell.cell_type != 'code': return cell, resources outputs = self.run_cell(cell, cell_index) cell.outputs = outputs if not self.allow_errors: for out in outputs: if out.output_type == 'error': pattern = u"""\ An error occurred while executing the following cell: ------------------ {cell.source} ------------------ {out.ename}: {out.evalue} """ msg = dedent(pattern).format(out=out, cell=cell) raise CellExecutionError(msg) return cell, resources def _update_display_id(self, display_id, msg): """Update outputs with a given display_id""" if display_id not in self._display_id_map: self.log.debug("display id %r not in %s", display_id, self._display_id_map) return if msg['header']['msg_type'] == 'update_display_data': msg['header']['msg_type'] = 'display_data' try: out = output_from_msg(msg) except ValueError: self.log.error("unhandled iopub msg: " + msg['msg_type']) return for cell_idx, output_indices in self._display_id_map[display_id].items( ): cell = self.nb['cells'][cell_idx] outputs = cell['outputs'] for output_idx in output_indices: outputs[output_idx]['data'] = out['data'] outputs[output_idx]['metadata'] = out['metadata'] def run_cell(self, cell, cell_index=0): msg_id = self.kc.execute(cell.source) self.log.debug("Executing cell:\n%s", cell.source) # wait for finish, with timeout while True: try: if self.timeout_func is not None: timeout = self.timeout_func(cell) else: timeout = self.timeout if not timeout or timeout < 0: timeout = None msg = self.kc.shell_channel.get_msg(timeout=timeout) except Empty: self.log.error("Timeout waiting for execute reply (%is)." % self.timeout) if self.interrupt_on_timeout: self.log.error("Interrupting kernel") self.km.interrupt_kernel() break else: try: exception = TimeoutError except NameError: exception = RuntimeError raise exception("Cell execution timed out") if msg['parent_header'].get('msg_id') == msg_id: break else: # not our reply continue outs = cell.outputs = [] while True: try: # We've already waited for execute_reply, so all output # should already be waiting. However, on slow networks, like # in certain CI systems, waiting < 1 second might miss messages. # So long as the kernel sends a status:idle message when it # finishes, we won't actually have to wait this long, anyway. msg = self.kc.iopub_channel.get_msg(timeout=self.iopub_timeout) except Empty: self.log.warn("Timeout waiting for IOPub output") if self.raise_on_iopub_timeout: raise RuntimeError("Timeout waiting for IOPub output") else: break if msg['parent_header'].get('msg_id') != msg_id: # not an output from our execution continue msg_type = msg['msg_type'] self.log.debug("output: %s", msg_type) content = msg['content'] # set the prompt number for the input and the output if 'execution_count' in content: cell['execution_count'] = content['execution_count'] if msg_type == 'status': if content['execution_state'] == 'idle': break else: continue elif msg_type == 'execute_input': continue elif msg_type == 'clear_output': outs[:] = [] # clear display_id mapping for this cell for display_id, cell_map in self._display_id_map.items(): if cell_index in cell_map: cell_map[cell_index] = [] continue elif msg_type.startswith('comm'): continue display_id = None if msg_type in { 'execute_result', 'display_data', 'update_display_data' }: display_id = msg['content'].get('transient', {}).get('display_id', None) if display_id: self._update_display_id(display_id, msg) if msg_type == 'update_display_data': # update_display_data doesn't get recorded continue try: out = output_from_msg(msg) except ValueError: self.log.error("unhandled iopub msg: " + msg_type) continue if display_id: # record output index in: # _display_id_map[display_id][cell_idx] cell_map = self._display_id_map.setdefault(display_id, {}) output_idx_list = cell_map.setdefault(cell_index, []) output_idx_list.append(len(outs)) outs.append(out) return outs
class NotebookClient(LoggingConfigurable): """ Encompasses a Client for executing cells in a notebook """ timeout: int = Integer( None, allow_none=True, help=dedent(""" The time to wait (in seconds) for output from executions. If a cell execution takes longer, a TimeoutError is raised. ``None`` or ``-1`` will disable the timeout. If ``timeout_func`` is set, it overrides ``timeout``. """), ).tag(config=True) timeout_func: t.Any = Any( default_value=None, allow_none=True, help=dedent(""" A callable which, when given the cell source as input, returns the time to wait (in seconds) for output from cell executions. If a cell execution takes longer, a TimeoutError is raised. Returning ``None`` or ``-1`` will disable the timeout for the cell. Not setting ``timeout_func`` will cause the client to default to using the ``timeout`` trait for all cells. The ``timeout_func`` trait overrides ``timeout`` if it is not ``None``. """), ).tag(config=True) interrupt_on_timeout: bool = Bool( False, help=dedent(""" If execution of a cell times out, interrupt the kernel and continue executing other cells rather than throwing an error and stopping. """), ).tag(config=True) startup_timeout: int = Integer( 60, help=dedent(""" The time to wait (in seconds) for the kernel to start. If kernel startup takes longer, a RuntimeError is raised. """), ).tag(config=True) allow_errors: bool = Bool( False, help=dedent(""" If ``False`` (default), when a cell raises an error the execution is stopped and a `CellExecutionError` is raised, except if the error name is in ``allow_error_names``. If ``True``, execution errors are ignored and the execution is continued until the end of the notebook. Output from exceptions is included in the cell output in both cases. """), ).tag(config=True) allow_error_names: t.List[str] = List( Unicode(), help=dedent(""" List of error names which won't stop the execution. Use this if the ``allow_errors`` option it too general and you want to allow only specific kinds of errors. """), ).tag(config=True) force_raise_errors: bool = Bool( False, help=dedent(""" If False (default), errors from executing the notebook can be allowed with a ``raises-exception`` tag on a single cell, or the ``allow_errors`` or ``allow_error_names`` configurable options for all cells. An allowed error will be recorded in notebook output, and execution will continue. If an error occurs when it is not explicitly allowed, a `CellExecutionError` will be raised. If True, `CellExecutionError` will be raised for any error that occurs while executing the notebook. This overrides the ``allow_errors`` and ``allow_error_names`` options and the ``raises-exception`` cell tag. """), ).tag(config=True) skip_cells_with_tag: str = Unicode( 'skip-execution', help=dedent(""" Name of the cell tag to use to denote a cell that should be skipped. """), ).tag(config=True) extra_arguments: t.List = List(Unicode()).tag(config=True) kernel_name: str = Unicode( '', help=dedent(""" Name of kernel to use to execute the cells. If not set, use the kernel_spec embedded in the notebook. """), ).tag(config=True) raise_on_iopub_timeout: bool = Bool( False, help=dedent(""" If ``False`` (default), then the kernel will continue waiting for iopub messages until it receives a kernel idle message, or until a timeout occurs, at which point the currently executing cell will be skipped. If ``True``, then an error will be raised after the first timeout. This option generally does not need to be used, but may be useful in contexts where there is the possibility of executing notebooks with memory-consuming infinite loops. """), ).tag(config=True) store_widget_state: bool = Bool( True, help=dedent(""" If ``True`` (default), then the state of the Jupyter widgets created at the kernel will be stored in the metadata of the notebook. """), ).tag(config=True) record_timing: bool = Bool( True, help=dedent(""" If ``True`` (default), then the execution timings of each cell will be stored in the metadata of the notebook. """), ).tag(config=True) iopub_timeout: int = Integer( 4, allow_none=False, help=dedent(""" The time to wait (in seconds) for IOPub output. This generally doesn't need to be set, but on some slow networks (such as CI systems) the default timeout might not be long enough to get all messages. """), ).tag(config=True) shell_timeout_interval: int = Integer( 5, allow_none=False, help=dedent(""" The time to wait (in seconds) for Shell output before retrying. This generally doesn't need to be set, but if one needs to check for dead kernels at a faster rate this can help. """), ).tag(config=True) shutdown_kernel = Enum( ['graceful', 'immediate'], default_value='graceful', help=dedent(""" If ``graceful`` (default), then the kernel is given time to clean up after executing all cells, e.g., to execute its ``atexit`` hooks. If ``immediate``, then the kernel is signaled to immediately terminate. """), ).tag(config=True) ipython_hist_file: str = Unicode( default_value=':memory:', help= """Path to file to use for SQLite history database for an IPython kernel. The specific value ``:memory:`` (including the colon at both end but not the back ticks), avoids creating a history file. Otherwise, IPython will create a history file for each kernel. When running kernels simultaneously (e.g. via multiprocessing) saving history a single SQLite file can result in database errors, so using ``:memory:`` is recommended in non-interactive contexts. """, ).tag(config=True) kernel_manager_class: KernelManager = Type( config=True, help='The kernel manager class to use.') @default('kernel_manager_class') def _kernel_manager_class_default(self) -> KernelManager: """Use a dynamic default to avoid importing jupyter_client at startup""" from jupyter_client import AsyncKernelManager return AsyncKernelManager _display_id_map: t.Dict[str, t.Dict] = Dict(help=dedent(""" mapping of locations of outputs with a given display_id tracks cell index and output index within cell.outputs for each appearance of the display_id { 'display_id': { cell_idx: [output_idx,] } } """)) display_data_priority: t.List = List( [ 'text/html', 'application/pdf', 'text/latex', 'image/svg+xml', 'image/png', 'image/jpeg', 'text/markdown', 'text/plain', ], help=""" An ordered list of preferred output type, the first encountered will usually be used when converting discarding the others. """, ).tag(config=True) resources: t.Dict = Dict(help=dedent(""" Additional resources used in the conversion process. For example, passing ``{'metadata': {'path': run_path}}`` sets the execution path to ``run_path``. """)) def __init__(self, nb: NotebookNode, km: t.Optional[KernelManager] = None, **kw) -> None: """Initializes the execution manager. Parameters ---------- nb : NotebookNode Notebook being executed. km : KernelManager (optional) Optional kernel manager. If none is provided, a kernel manager will be created. """ super().__init__(**kw) self.nb: NotebookNode = nb self.km: t.Optional[KernelManager] = km self.owns_km: bool = km is None # whether the NotebookClient owns the kernel manager self.kc: t.Optional[KernelClient] = None self.reset_execution_trackers() self.widget_registry: t.Dict[str, t.Dict] = { '@jupyter-widgets/output': { 'OutputModel': OutputWidget } } # comm_open_handlers should return an object with a .handle_msg(msg) method or None self.comm_open_handlers: t.Dict[str, t.Any] = { 'jupyter.widget': self.on_comm_open_jupyter_widget } def reset_execution_trackers(self) -> None: """Resets any per-execution trackers.""" self.task_poll_for_reply: t.Optional[asyncio.Future] = None self.code_cells_executed = 0 self._display_id_map = {} self.widget_state: t.Dict[str, t.Dict] = {} self.widget_buffers: t.Dict[str, t.Dict[t.Tuple[str, ...], t.Dict[str, str]]] = {} # maps to list of hooks, where the last is used, this is used # to support nested use of output widgets. self.output_hook_stack: t.Any = collections.defaultdict(list) # our front-end mimicking Output widgets self.comm_objects: t.Dict[str, t.Any] = {} def create_kernel_manager(self) -> KernelManager: """Creates a new kernel manager. Returns ------- km : KernelManager Kernel manager whose client class is asynchronous. """ if not self.kernel_name: kn = self.nb.metadata.get('kernelspec', {}).get('name') if kn is not None: self.kernel_name = kn if not self.kernel_name: self.km = self.kernel_manager_class(config=self.config) else: self.km = self.kernel_manager_class(kernel_name=self.kernel_name, config=self.config) # If the current kernel manager is still using the default (synchronous) KernelClient class, # switch to the async version since that's what NBClient prefers. if self.km.client_class == 'jupyter_client.client.KernelClient': self.km.client_class = 'jupyter_client.asynchronous.AsyncKernelClient' return self.km async def _async_cleanup_kernel(self) -> None: assert self.km is not None now = self.shutdown_kernel == "immediate" try: # Queue the manager to kill the process, and recover gracefully if it's already dead. if await ensure_async(self.km.is_alive()): await ensure_async(self.km.shutdown_kernel(now=now)) except RuntimeError as e: # The error isn't specialized, so we have to check the message if 'No kernel is running!' not in str(e): raise finally: # Remove any state left over even if we failed to stop the kernel await ensure_async(self.km.cleanup_resources()) if getattr(self, "kc") and self.kc is not None: await ensure_async(self.kc.stop_channels()) self.kc = None self.km = None _cleanup_kernel = run_sync(_async_cleanup_kernel) async def async_start_new_kernel(self, **kwargs) -> None: """Creates a new kernel. Parameters ---------- kwargs : Any options for ``self.kernel_manager_class.start_kernel()``. Because that defaults to AsyncKernelManager, this will likely include options accepted by ``AsyncKernelManager.start_kernel()``, which includes ``cwd``. """ assert self.km is not None resource_path = self.resources.get('metadata', {}).get('path') or None if resource_path and 'cwd' not in kwargs: kwargs["cwd"] = resource_path has_history_manager_arg = any( arg.startswith('--HistoryManager.hist_file') for arg in self.extra_arguments) if (hasattr(self.km, 'ipykernel') and self.km.ipykernel and self.ipython_hist_file and not has_history_manager_arg): self.extra_arguments += [ f'--HistoryManager.hist_file={self.ipython_hist_file}' ] await ensure_async( self.km.start_kernel(extra_arguments=self.extra_arguments, **kwargs)) start_new_kernel = run_sync(async_start_new_kernel) async def async_start_new_kernel_client(self) -> KernelClient: """Creates a new kernel client. Returns ------- kc : KernelClient Kernel client as created by the kernel manager ``km``. """ assert self.km is not None self.kc = self.km.client() await ensure_async(self.kc.start_channels()) try: await ensure_async( self.kc.wait_for_ready(timeout=self.startup_timeout)) except RuntimeError: await self._async_cleanup_kernel() raise self.kc.allow_stdin = False return self.kc start_new_kernel_client = run_sync(async_start_new_kernel_client) @contextmanager def setup_kernel(self, **kwargs) -> t.Generator: """ Context manager for setting up the kernel to execute a notebook. The assigns the Kernel Manager (``self.km``) if missing and Kernel Client(``self.kc``). When control returns from the yield it stops the client's zmq channels, and shuts down the kernel. """ # by default, cleanup the kernel client if we own the kernel manager # and keep it alive if we don't cleanup_kc = kwargs.pop('cleanup_kc', self.owns_km) # Can't use run_until_complete on an asynccontextmanager function :( if self.km is None: self.km = self.create_kernel_manager() if not self.km.has_kernel: self.start_new_kernel(**kwargs) self.start_new_kernel_client() try: yield finally: if cleanup_kc: self._cleanup_kernel() @asynccontextmanager async def async_setup_kernel(self, **kwargs) -> t.AsyncGenerator: """ Context manager for setting up the kernel to execute a notebook. This assigns the Kernel Manager (``self.km``) if missing and Kernel Client(``self.kc``). When control returns from the yield it stops the client's zmq channels, and shuts down the kernel. Handlers for SIGINT and SIGTERM are also added to cleanup in case of unexpected shutdown. """ # by default, cleanup the kernel client if we own the kernel manager # and keep it alive if we don't cleanup_kc = kwargs.pop('cleanup_kc', self.owns_km) if self.km is None: self.km = self.create_kernel_manager() # self._cleanup_kernel uses run_async, which ensures the ioloop is running again. # This is necessary as the ioloop has stopped once atexit fires. atexit.register(self._cleanup_kernel) def on_signal(): asyncio.ensure_future(self._async_cleanup_kernel()) atexit.unregister(self._cleanup_kernel) loop = asyncio.get_event_loop() try: loop.add_signal_handler(signal.SIGINT, on_signal) loop.add_signal_handler(signal.SIGTERM, on_signal) except (NotImplementedError, RuntimeError): # NotImplementedError: Windows does not support signals. # RuntimeError: Raised when add_signal_handler is called outside the main thread pass if not self.km.has_kernel: await self.async_start_new_kernel(**kwargs) await self.async_start_new_kernel_client() try: yield finally: if cleanup_kc: await self._async_cleanup_kernel() atexit.unregister(self._cleanup_kernel) try: loop.remove_signal_handler(signal.SIGINT) loop.remove_signal_handler(signal.SIGTERM) except (NotImplementedError, RuntimeError): pass async def async_execute(self, reset_kc: bool = False, **kwargs) -> NotebookNode: """ Executes each code cell. Parameters ---------- kwargs : Any option for ``self.kernel_manager_class.start_kernel()``. Because that defaults to AsyncKernelManager, this will likely include options accepted by ``jupyter_client.AsyncKernelManager.start_kernel()``, which includes ``cwd``. ``reset_kc`` if True, the kernel client will be reset and a new one will be created (default: False). Returns ------- nb : NotebookNode The executed notebook. """ if reset_kc and self.owns_km: await self._async_cleanup_kernel() self.reset_execution_trackers() async with self.async_setup_kernel(**kwargs): assert self.kc is not None self.log.info("Executing notebook with kernel: %s" % self.kernel_name) msg_id = await ensure_async(self.kc.kernel_info()) info_msg = await self.async_wait_for_reply(msg_id) if info_msg is not None: if 'language_info' in info_msg['content']: self.nb.metadata['language_info'] = info_msg['content'][ 'language_info'] else: raise RuntimeError( 'Kernel info received message content has no "language_info" key. ' 'Content is:\n' + str(info_msg['content'])) for index, cell in enumerate(self.nb.cells): # Ignore `'execution_count' in content` as it's always 1 # when store_history is False await self.async_execute_cell( cell, index, execution_count=self.code_cells_executed + 1) self.set_widgets_metadata() return self.nb execute = run_sync(async_execute) def set_widgets_metadata(self) -> None: if self.widget_state: self.nb.metadata.widgets = { 'application/vnd.jupyter.widget-state+json': { 'state': { model_id: self._serialize_widget_state(state) for model_id, state in self.widget_state.items() if '_model_name' in state }, 'version_major': 2, 'version_minor': 0, } } for key, widget in self.nb.metadata.widgets[ 'application/vnd.jupyter.widget-state+json'][ 'state'].items(): buffers = self.widget_buffers.get(key) if buffers: widget['buffers'] = list(buffers.values()) def _update_display_id(self, display_id: str, msg: t.Dict) -> None: """Update outputs with a given display_id""" if display_id not in self._display_id_map: self.log.debug("display id %r not in %s", display_id, self._display_id_map) return if msg['header']['msg_type'] == 'update_display_data': msg['header']['msg_type'] = 'display_data' try: out = output_from_msg(msg) except ValueError: self.log.error("unhandled iopub msg: " + msg['msg_type']) return for cell_idx, output_indices in self._display_id_map[display_id].items( ): cell = self.nb['cells'][cell_idx] outputs = cell['outputs'] for output_idx in output_indices: outputs[output_idx]['data'] = out['data'] outputs[output_idx]['metadata'] = out['metadata'] async def _async_poll_for_reply( self, msg_id: str, cell: NotebookNode, timeout: t.Optional[int], task_poll_output_msg: asyncio.Future, task_poll_kernel_alive: asyncio.Future, ) -> t.Dict: assert self.kc is not None new_timeout: t.Optional[float] = None if timeout is not None: deadline = monotonic() + timeout new_timeout = float(timeout) while True: try: msg = await ensure_async( self.kc.shell_channel.get_msg(timeout=new_timeout)) if msg['parent_header'].get('msg_id') == msg_id: if self.record_timing: cell['metadata']['execution'][ 'shell.execute_reply'] = timestamp() try: await asyncio.wait_for(task_poll_output_msg, self.iopub_timeout) except (asyncio.TimeoutError, Empty): if self.raise_on_iopub_timeout: task_poll_kernel_alive.cancel() raise CellTimeoutError.error_from_timeout_and_cell( "Timeout waiting for IOPub output", self.iopub_timeout, cell) else: self.log.warning( "Timeout waiting for IOPub output") task_poll_kernel_alive.cancel() return msg else: if new_timeout is not None: new_timeout = max(0, deadline - monotonic()) except Empty: # received no message, check if kernel is still alive assert timeout is not None task_poll_kernel_alive.cancel() await self._async_check_alive() await self._async_handle_timeout(timeout, cell) async def _async_poll_output_msg(self, parent_msg_id: str, cell: NotebookNode, cell_index: int) -> None: assert self.kc is not None while True: msg = await ensure_async( self.kc.iopub_channel.get_msg(timeout=None)) if msg['parent_header'].get('msg_id') == parent_msg_id: try: # Will raise CellExecutionComplete when completed self.process_message(msg, cell, cell_index) except CellExecutionComplete: return async def _async_poll_kernel_alive(self) -> None: while True: await asyncio.sleep(1) try: await self._async_check_alive() except DeadKernelError: assert self.task_poll_for_reply is not None self.task_poll_for_reply.cancel() return def _get_timeout(self, cell: t.Optional[NotebookNode]) -> int: if self.timeout_func is not None and cell is not None: timeout = self.timeout_func(cell) else: timeout = self.timeout if not timeout or timeout < 0: timeout = None return timeout async def _async_handle_timeout(self, timeout: int, cell: t.Optional[NotebookNode] = None ) -> None: self.log.error("Timeout waiting for execute reply (%is)." % timeout) if self.interrupt_on_timeout: self.log.error("Interrupting kernel") assert self.km is not None await ensure_async(self.km.interrupt_kernel()) else: raise CellTimeoutError.error_from_timeout_and_cell( "Cell execution timed out", timeout, cell) async def _async_check_alive(self) -> None: assert self.kc is not None if not await ensure_async(self.kc.is_alive()): self.log.error("Kernel died while waiting for execute reply.") raise DeadKernelError("Kernel died") async def async_wait_for_reply( self, msg_id: str, cell: t.Optional[NotebookNode] = None) -> t.Optional[t.Dict]: assert self.kc is not None # wait for finish, with timeout timeout = self._get_timeout(cell) cummulative_time = 0 while True: try: msg = await ensure_async( self.kc.shell_channel.get_msg( timeout=self.shell_timeout_interval)) except Empty: await self._async_check_alive() cummulative_time += self.shell_timeout_interval if timeout and cummulative_time > timeout: await self._async_async_handle_timeout(timeout, cell) break else: if msg['parent_header'].get('msg_id') == msg_id: return msg return None wait_for_reply = run_sync(async_wait_for_reply) # Backwards compatibility naming for papermill _wait_for_reply = wait_for_reply def _passed_deadline(self, deadline: int) -> bool: if deadline is not None and deadline - monotonic() <= 0: return True return False def _check_raise_for_error(self, cell: NotebookNode, exec_reply: t.Optional[t.Dict]) -> None: if exec_reply is None: return None exec_reply_content = exec_reply['content'] if exec_reply_content['status'] != 'error': return None cell_allows_errors = (not self.force_raise_errors) and ( self.allow_errors or exec_reply_content.get('ename') in self.allow_error_names or "raises-exception" in cell.metadata.get("tags", [])) if not cell_allows_errors: raise CellExecutionError.from_cell_and_msg(cell, exec_reply_content) async def async_execute_cell( self, cell: NotebookNode, cell_index: int, execution_count: t.Optional[int] = None, store_history: bool = True, ) -> NotebookNode: """ Executes a single code cell. To execute all cells see :meth:`execute`. Parameters ---------- cell : nbformat.NotebookNode The cell which is currently being processed. cell_index : int The position of the cell within the notebook object. execution_count : int The execution count to be assigned to the cell (default: Use kernel response) store_history : bool Determines if history should be stored in the kernel (default: False). Specific to ipython kernels, which can store command histories. Returns ------- output : dict The execution output payload (or None for no output). Raises ------ CellExecutionError If execution failed and should raise an exception, this will be raised with defaults about the failure. Returns ------- cell : NotebookNode The cell which was just processed. """ assert self.kc is not None if cell.cell_type != 'code' or not cell.source.strip(): self.log.debug("Skipping non-executing cell %s", cell_index) return cell if self.skip_cells_with_tag in cell.metadata.get("tags", []): self.log.debug("Skipping tagged cell %s", cell_index) return cell if self.record_timing and 'execution' not in cell['metadata']: cell['metadata']['execution'] = {} self.log.debug("Executing cell:\n%s", cell.source) cell_allows_errors = (not self.force_raise_errors) and ( self.allow_errors or "raises-exception" in cell.metadata.get("tags", [])) parent_msg_id = await ensure_async( self.kc.execute(cell.source, store_history=store_history, stop_on_error=not cell_allows_errors)) # We launched a code cell to execute self.code_cells_executed += 1 exec_timeout = self._get_timeout(cell) cell.outputs = [] self.clear_before_next_output = False task_poll_kernel_alive = asyncio.ensure_future( self._async_poll_kernel_alive()) task_poll_output_msg = asyncio.ensure_future( self._async_poll_output_msg(parent_msg_id, cell, cell_index)) self.task_poll_for_reply = asyncio.ensure_future( self._async_poll_for_reply(parent_msg_id, cell, exec_timeout, task_poll_output_msg, task_poll_kernel_alive)) try: exec_reply = await self.task_poll_for_reply except asyncio.CancelledError: # can only be cancelled by task_poll_kernel_alive when the kernel is dead task_poll_output_msg.cancel() raise DeadKernelError("Kernel died") except Exception as e: # Best effort to cancel request if it hasn't been resolved try: # Check if the task_poll_output is doing the raising for us if not isinstance(e, CellControlSignal): task_poll_output_msg.cancel() finally: raise if execution_count: cell['execution_count'] = execution_count self._check_raise_for_error(cell, exec_reply) self.nb['cells'][cell_index] = cell return cell execute_cell = run_sync(async_execute_cell) def process_message(self, msg: t.Dict, cell: NotebookNode, cell_index: int) -> t.Optional[t.List]: """ Processes a kernel message, updates cell state, and returns the resulting output object that was appended to cell.outputs. The input argument *cell* is modified in-place. Parameters ---------- msg : dict The kernel message being processed. cell : nbformat.NotebookNode The cell which is currently being processed. cell_index : int The position of the cell within the notebook object. Returns ------- output : dict The execution output payload (or None for no output). Raises ------ CellExecutionComplete Once a message arrives which indicates computation completeness. """ msg_type = msg['msg_type'] self.log.debug("msg_type: %s", msg_type) content = msg['content'] self.log.debug("content: %s", content) display_id = content.get('transient', {}).get('display_id', None) if display_id and msg_type in { 'execute_result', 'display_data', 'update_display_data' }: self._update_display_id(display_id, msg) # set the prompt number for the input and the output if 'execution_count' in content: cell['execution_count'] = content['execution_count'] if self.record_timing: if msg_type == 'status': if content['execution_state'] == 'idle': cell['metadata']['execution'][ 'iopub.status.idle'] = timestamp() elif content['execution_state'] == 'busy': cell['metadata']['execution'][ 'iopub.status.busy'] = timestamp() elif msg_type == 'execute_input': cell['metadata']['execution'][ 'iopub.execute_input'] = timestamp() if msg_type == 'status': if content['execution_state'] == 'idle': raise CellExecutionComplete() elif msg_type == 'clear_output': self.clear_output(cell.outputs, msg, cell_index) elif msg_type.startswith('comm'): self.handle_comm_msg(cell.outputs, msg, cell_index) # Check for remaining messages we don't process elif msg_type not in ['execute_input', 'update_display_data']: # Assign output as our processed "result" return self.output(cell.outputs, msg, display_id, cell_index) return None def output(self, outs: t.List, msg: t.Dict, display_id: str, cell_index: int) -> t.Optional[t.List]: msg_type = msg['msg_type'] parent_msg_id = msg['parent_header'].get('msg_id') if self.output_hook_stack[parent_msg_id]: # if we have a hook registered, it will override our # default output behaviour (e.g. OutputWidget) hook = self.output_hook_stack[parent_msg_id][-1] hook.output(outs, msg, display_id, cell_index) return None try: out = output_from_msg(msg) except ValueError: self.log.error("unhandled iopub msg: " + msg_type) return None if self.clear_before_next_output: self.log.debug('Executing delayed clear_output') outs[:] = [] self.clear_display_id_mapping(cell_index) self.clear_before_next_output = False if display_id: # record output index in: # _display_id_map[display_id][cell_idx] cell_map = self._display_id_map.setdefault(display_id, {}) output_idx_list = cell_map.setdefault(cell_index, []) output_idx_list.append(len(outs)) outs.append(out) return out def clear_output(self, outs: t.List, msg: t.Dict, cell_index: int) -> None: content = msg['content'] parent_msg_id = msg['parent_header'].get('msg_id') if self.output_hook_stack[parent_msg_id]: # if we have a hook registered, it will override our # default clear_output behaviour (e.g. OutputWidget) hook = self.output_hook_stack[parent_msg_id][-1] hook.clear_output(outs, msg, cell_index) return if content.get('wait'): self.log.debug('Wait to clear output') self.clear_before_next_output = True else: self.log.debug('Immediate clear output') outs[:] = [] self.clear_display_id_mapping(cell_index) def clear_display_id_mapping(self, cell_index: int) -> None: for display_id, cell_map in self._display_id_map.items(): if cell_index in cell_map: cell_map[cell_index] = [] def handle_comm_msg(self, outs: t.List, msg: t.Dict, cell_index: int) -> None: content = msg['content'] data = content['data'] if self.store_widget_state and 'state' in data: # ignore custom msg'es self.widget_state.setdefault(content['comm_id'], {}).update(data['state']) if 'buffer_paths' in data and data['buffer_paths']: comm_id = content['comm_id'] if comm_id not in self.widget_buffers: self.widget_buffers[comm_id] = {} # for each comm, the path uniquely identifies a buffer new_buffers: t.Dict[t.Tuple[str, ...], t.Dict[str, str]] = { tuple(k["path"]): k for k in self._get_buffer_data(msg) } self.widget_buffers[comm_id].update(new_buffers) # There are cases where we need to mimic a frontend, to get similar behaviour as # when using the Output widget from Jupyter lab/notebook if msg['msg_type'] == 'comm_open': target = msg['content'].get('target_name') handler = self.comm_open_handlers.get(target) if handler: comm_id = msg['content']['comm_id'] comm_object = handler(msg) if comm_object: self.comm_objects[comm_id] = comm_object else: self.log.warning( f'No handler found for comm target {target!r}') elif msg['msg_type'] == 'comm_msg': content = msg['content'] comm_id = msg['content']['comm_id'] if comm_id in self.comm_objects: self.comm_objects[comm_id].handle_msg(msg) def _serialize_widget_state(self, state: t.Dict) -> t.Dict[str, t.Any]: """Serialize a widget state, following format in @jupyter-widgets/schema.""" return { 'model_name': state.get('_model_name'), 'model_module': state.get('_model_module'), 'model_module_version': state.get('_model_module_version'), 'state': state, } def _get_buffer_data(self, msg: t.Dict) -> t.List[t.Dict[str, str]]: encoded_buffers = [] paths = msg['content']['data']['buffer_paths'] buffers = msg['buffers'] for path, buffer in zip(paths, buffers): encoded_buffers.append({ 'data': base64.b64encode(buffer).decode('utf-8'), 'encoding': 'base64', 'path': path, }) return encoded_buffers def register_output_hook(self, msg_id: str, hook: OutputWidget) -> None: """Registers an override object that handles output/clear_output instead. Multiple hooks can be registered, where the last one will be used (stack based) """ # mimics # https://jupyterlab.github.io/jupyterlab/services/interfaces/kernel.ikernelconnection.html#registermessagehook self.output_hook_stack[msg_id].append(hook) def remove_output_hook(self, msg_id: str, hook: OutputWidget) -> None: """Unregisters an override object that handles output/clear_output instead""" # mimics # https://jupyterlab.github.io/jupyterlab/services/interfaces/kernel.ikernelconnection.html#removemessagehook removed_hook = self.output_hook_stack[msg_id].pop() assert removed_hook == hook def on_comm_open_jupyter_widget(self, msg: t.Dict): content = msg['content'] data = content['data'] state = data['state'] comm_id = msg['content']['comm_id'] module = self.widget_registry.get(state['_model_module']) if module: widget_class = module.get(state['_model_name']) if widget_class: return widget_class(comm_id, state, self.kc, self)
class NotebookNotary(LoggingConfigurable): """A class for computing and verifying notebook signatures.""" data_dir = Unicode() @default('data_dir') def _data_dir_default(self): app = None try: if JupyterApp.initialized(): app = JupyterApp.instance() except MultipleInstanceError: pass if app is None: # create an app, without the global instance app = JupyterApp() app.initialize(argv=[]) return app.data_dir db_file = Unicode( help="""The sqlite file in which to store notebook signatures. By default, this will be in your Jupyter data directory. You can set it to ':memory:' to disable sqlite writing to the filesystem. """).tag(config=True) @default('db_file') def _db_file_default(self): if not self.data_dir: return ':memory:' return os.path.join(self.data_dir, u'nbsignatures.db') # 64k entries ~ 12MB cache_size = Integer(65535, help="""The number of notebook signatures to cache. When the number of signatures exceeds this value, the oldest 25% of signatures will be culled. """ ).tag(config=True) db = Any() @default('db') def _db_default(self): if sqlite3 is None: self.log.warn("Missing SQLite3, all notebooks will be untrusted!") return kwargs = dict(detect_types=sqlite3.PARSE_DECLTYPES|sqlite3.PARSE_COLNAMES) try: db = sqlite3.connect(self.db_file, **kwargs) self.init_db(db) except (sqlite3.DatabaseError, sqlite3.OperationalError): if self.db_file != ':memory:': old_db_location = os.path.join(self.data_dir, self.db_file + ".bak") self.log.warn("""The signatures database cannot be opened; maybe it is corrupted or encrypted. You may need to rerun your notebooks to ensure that they are trusted to run Javascript. The old signatures database has been renamed to %s and a new one has been created.""", old_db_location) try: os.rename(self.db_file, self.db_file + u'.bak') db = sqlite3.connect(self.db_file, **kwargs) self.init_db(db) except (sqlite3.DatabaseError, sqlite3.OperationalError): self.log.warn("""Failed commiting signatures database to disk. You may need to move the database file to a non-networked file system, using config option `NotebookNotary.db_file`. Using in-memory signatures database for the remainder of this session.""") self.db_file = ':memory:' db = sqlite3.connect(self.db_file, **kwargs) self.init_db(db) else: raise return db def init_db(self, db): db.execute(""" CREATE TABLE IF NOT EXISTS nbsignatures ( id integer PRIMARY KEY AUTOINCREMENT, algorithm text, signature text, path text, last_seen timestamp )""") db.execute(""" CREATE INDEX IF NOT EXISTS algosig ON nbsignatures(algorithm, signature) """) db.commit() algorithm = Enum(algorithms, default_value='sha256', help="""The hashing algorithm used to sign notebooks.""" ).tag(config=True) @observe('algorithm') def _algorithm_changed(self, change): self.digestmod = getattr(hashlib, change.new) digestmod = Any() @default('digestmod') def _digestmod_default(self): return getattr(hashlib, self.algorithm) secret_file = Unicode( help="""The file where the secret key is stored.""" ).tag(config=True) @default('secret_file') def _secret_file_default(self): if not self.data_dir: return '' return os.path.join(self.data_dir, 'notebook_secret') secret = Bytes( help="""The secret key with which notebooks are signed.""" ).tag(config=True) @default('secret') def _secret_default(self): # note : this assumes an Application is running if os.path.exists(self.secret_file): with io.open(self.secret_file, 'rb') as f: return f.read() else: secret = base64.encodestring(os.urandom(1024)) self._write_secret_file(secret) return secret def _write_secret_file(self, secret): """write my secret to my secret_file""" self.log.info("Writing notebook-signing key to %s", self.secret_file) with io.open(self.secret_file, 'wb') as f: f.write(secret) try: os.chmod(self.secret_file, 0o600) except OSError: self.log.warn( "Could not set permissions on %s", self.secret_file ) return secret def compute_signature(self, nb): """Compute a notebook's signature by hashing the entire contents of the notebook via HMAC digest. """ hmac = HMAC(self.secret, digestmod=self.digestmod) # don't include the previous hash in the content to hash with signature_removed(nb): # sign the whole thing for b in yield_everything(nb): hmac.update(b) return hmac.hexdigest() def check_signature(self, nb): """Check a notebook's stored signature If a signature is stored in the notebook's metadata, a new signature is computed and compared with the stored value. Returns True if the signature is found and matches, False otherwise. The following conditions must all be met for a notebook to be trusted: - a signature is stored in the form 'scheme:hexdigest' - the stored scheme matches the requested scheme - the requested scheme is available from hashlib - the computed hash from notebook_signature matches the stored hash """ if nb.nbformat < 3: return False if self.db is None: return False signature = self.compute_signature(nb) r = self.db.execute("""SELECT id FROM nbsignatures WHERE algorithm = ? AND signature = ?; """, (self.algorithm, signature)).fetchone() if r is None: return False self.db.execute("""UPDATE nbsignatures SET last_seen = ? WHERE algorithm = ? AND signature = ?; """, (datetime.utcnow(), self.algorithm, signature), ) self.db.commit() return True def sign(self, nb): """Sign a notebook, indicating that its output is trusted on this machine Stores hash algorithm and hmac digest in a local database of trusted notebooks. """ if nb.nbformat < 3: return signature = self.compute_signature(nb) self.store_signature(signature, nb) def store_signature(self, signature, nb): if self.db is None: return self.db.execute("""INSERT OR IGNORE INTO nbsignatures (algorithm, signature, last_seen) VALUES (?, ?, ?)""", (self.algorithm, signature, datetime.utcnow()) ) self.db.execute("""UPDATE nbsignatures SET last_seen = ? WHERE algorithm = ? AND signature = ?; """, (datetime.utcnow(), self.algorithm, signature), ) self.db.commit() n, = self.db.execute("SELECT Count(*) FROM nbsignatures").fetchone() if n > self.cache_size: self.cull_db() def unsign(self, nb): """Ensure that a notebook is untrusted by removing its signature from the trusted database, if present. """ signature = self.compute_signature(nb) self.db.execute("""DELETE FROM nbsignatures WHERE algorithm = ? AND signature = ?; """, (self.algorithm, signature) ) self.db.commit() def cull_db(self): """Cull oldest 25% of the trusted signatures when the size limit is reached""" self.db.execute("""DELETE FROM nbsignatures WHERE id IN ( SELECT id FROM nbsignatures ORDER BY last_seen DESC LIMIT -1 OFFSET ? ); """, (max(int(0.75 * self.cache_size), 1),)) def mark_cells(self, nb, trusted): """Mark cells as trusted if the notebook's signature can be verified Sets ``cell.metadata.trusted = True | False`` on all code cells, depending on whether the stored signature can be verified. This function is the inverse of check_cells """ if nb.nbformat < 3: return for cell in yield_code_cells(nb): cell['metadata']['trusted'] = trusted def _check_cell(self, cell, nbformat_version): """Do we trust an individual cell? Return True if: - cell is explicitly trusted - cell has no potentially unsafe rich output If a cell has no output, or only simple print statements, it will always be trusted. """ # explicitly trusted if cell['metadata'].pop("trusted", False): return True # explicitly safe output if nbformat_version >= 4: unsafe_output_types = ['execute_result', 'display_data'] safe_keys = {"output_type", "execution_count", "metadata"} else: # v3 unsafe_output_types = ['pyout', 'display_data'] safe_keys = {"output_type", "prompt_number", "metadata"} for output in cell['outputs']: output_type = output['output_type'] if output_type in unsafe_output_types: # if there are any data keys not in the safe whitelist output_keys = set(output) if output_keys.difference(safe_keys): return False return True def check_cells(self, nb): """Return whether all code cells are trusted If there are no code cells, return True. This function is the inverse of mark_cells. """ if nb.nbformat < 3: return False trusted = True for cell in yield_code_cells(nb): # only distrust a cell if it actually has some output to distrust if not self._check_cell(cell, nb.nbformat): trusted = False return trusted
class DisplayIntegrator(Tool): name = "ctapipe-display-integration" description = __doc__ event_index = Int(0, help='Event index to view.').tag(config=True) use_event_id = Bool( False, help='event_index will obtain an event using event_id instead of ' 'index.').tag(config=True) telescope = Int(None, allow_none=True, help='Telescope to view. Set to None to display the first' 'telescope with data.').tag(config=True) channel = Enum([0, 1], 0, help='Channel to view').tag(config=True) extractor_product = tool_utils.enum_trait( ChargeExtractor, default='NeighbourPeakIntegrator') aliases = Dict( dict( f='EventSource.input_url', max_events='EventSource.max_events', extractor='DisplayIntegrator.extractor_product', E='DisplayIntegrator.event_index', T='DisplayIntegrator.telescope', C='DisplayIntegrator.channel', )) flags = Dict( dict(id=({ 'DisplayDL1Calib': { 'use_event_index': True } }, 'event_index will obtain an event using ' 'event_id instead of index.'))) classes = List([ EventSource, CameraDL1Calibrator, ] + tool_utils.classes_with_traits(ChargeExtractor)) def __init__(self, **kwargs): super().__init__(**kwargs) self.eventseeker = None self.r1 = None self.dl0 = None self.extractor = None self.dl1 = None def setup(self): self.log_format = "%(levelname)s: %(message)s [%(name)s.%(funcName)s]" event_source = EventSource.from_config(parent=self) self.eventseeker = EventSeeker(event_source, parent=self) self.extractor = ChargeExtractor.from_name( self.extractor_product, parent=self, ) self.r1 = CameraR1Calibrator.from_eventsource( eventsource=event_source, parent=self, ) self.dl0 = CameraDL0Reducer(parent=self) self.dl1 = CameraDL1Calibrator(extractor=self.extractor, parent=self) def start(self): event_num = self.event_index if self.use_event_id: event_num = str(event_num) event = self.eventseeker[event_num] # Calibrate self.r1.calibrate(event) self.dl0.reduce(event) self.dl1.calibrate(event) # Select telescope tels = list(event.r0.tels_with_data) telid = self.telescope if telid is None: telid = tels[0] if telid not in tels: self.log.error("[event] please specify one of the following " "telescopes for this event: {}".format(tels)) exit() extractor_name = self.extractor.__class__.__name__ plot(event, telid, self.channel, extractor_name) def finish(self): pass
class Canvas(DOMWidget, FigureCanvasWebAggCore): _model_module = Unicode('jupyter-matplotlib').tag(sync=True) _model_module_version = Unicode(js_semver).tag(sync=True) _model_name = Unicode('MPLCanvasModel').tag(sync=True) _view_module = Unicode('jupyter-matplotlib').tag(sync=True) _view_module_version = Unicode(js_semver).tag(sync=True) _view_name = Unicode('MPLCanvasView').tag(sync=True) toolbar = Instance(Toolbar, allow_none=True).tag(sync=True, **widget_serialization) toolbar_visible = Bool(True).tag(sync=True) toolbar_position = Enum(['top', 'bottom', 'left', 'right'], default_value='left').tag(sync=True) header_visible = Bool(True).tag(sync=True) footer_visible = Bool(True).tag(sync=True) resizable = Bool(True).tag(sync=True) capture_scroll = Bool(False).tag(sync=True) _width = CInt().tag(sync=True) _height = CInt().tag(sync=True) _figure_label = Unicode('Figure').tag(sync=True) _message = Unicode().tag(sync=True) _cursor = Unicode('pointer').tag(sync=True) _image_mode = Unicode('full').tag(sync=True) _rubberband_x = CInt(0).tag(sync=True) _rubberband_y = CInt(0).tag(sync=True) _rubberband_width = CInt(0).tag(sync=True) _rubberband_height = CInt(0).tag(sync=True) _closed = Bool(True) # Must declare the superclass private members. _png_is_old = Bool() _force_full = Bool() _current_image_mode = Unicode() _dpi_ratio = Float(1.0) def __init__(self, figure, *args, **kwargs): DOMWidget.__init__(self, *args, **kwargs) FigureCanvasWebAggCore.__init__(self, figure, *args, **kwargs) self.on_msg(self._handle_message) def _handle_message(self, object, content, buffers): # Every content has a "type". if content['type'] == 'closing': self._closed = True elif content['type'] == 'initialized': _, _, w, h = self.figure.bbox.bounds self.manager.resize(w, h) else: self.manager.handle_json(content) def send_json(self, content): # Change in the widget state? if content['type'] == 'cursor': self._cursor = cursors_str[content['cursor']] elif content['type'] == 'message': self._message = content['message'] elif content['type'] == 'figure_label': self._figure_label = content['label'] elif content['type'] == 'resize': self._width = content['size'][0] self._height = content['size'][1] # Send resize message anyway self.send({'data': json.dumps(content)}) elif content['type'] == 'image_mode': self._image_mode = content['mode'] else: # Default: send the message to the front-end self.send({'data': json.dumps(content)}) def send_binary(self, data): self.send({'data': '{"type": "binary"}'}, buffers=[data]) def new_timer(self, *args, **kwargs): return TimerTornado(*args, **kwargs)
class Map(DOMWidget, InteractMixin): _view_name = Unicode('LeafletMapView').tag(sync=True) _model_name = Unicode('LeafletMapModel').tag(sync=True) _view_module = Unicode('jupyter-leaflet').tag(sync=True) _model_module = Unicode('jupyter-leaflet').tag(sync=True) _view_module_version = Unicode(EXTENSION_VERSION).tag(sync=True) _model_module_version = Unicode(EXTENSION_VERSION).tag(sync=True) # Map options center = List(def_loc).tag(sync=True, o=True) zoom_start = Int(12).tag(sync=True, o=True) zoom = Int(12).tag(sync=True, o=True) max_zoom = Int(18).tag(sync=True, o=True) min_zoom = Int(1).tag(sync=True, o=True) interpolation = Unicode('bilinear').tag(sync=True, o=True) crs = Enum(values=allowed_crs, default_value='EPSG3857').tag(sync=True) # Specification of the basemap basemap = Union( (Dict(), Instance(TileLayer)), default_value=dict( url='https://{s}.tile.openstreetmap.org/{z}/{x}/{y}.png', max_zoom=19, attribution= 'Map data (c) <a href="https://openstreetmap.org">OpenStreetMap</a> contributors' )) modisdate = Unicode('yesterday').tag(sync=True) # Interaction options dragging = Bool(True).tag(sync=True, o=True) touch_zoom = Bool(True).tag(sync=True, o=True) scroll_wheel_zoom = Bool(False).tag(sync=True, o=True) double_click_zoom = Bool(True).tag(sync=True, o=True) box_zoom = Bool(True).tag(sync=True, o=True) tap = Bool(True).tag(sync=True, o=True) tap_tolerance = Int(15).tag(sync=True, o=True) world_copy_jump = Bool(False).tag(sync=True, o=True) close_popup_on_click = Bool(True).tag(sync=True, o=True) bounce_at_zoom_limits = Bool(True).tag(sync=True, o=True) keyboard = Bool(True).tag(sync=True, o=True) keyboard_pan_offset = Int(80).tag(sync=True, o=True) keyboard_zoom_offset = Int(1).tag(sync=True, o=True) inertia = Bool(True).tag(sync=True, o=True) inertia_deceleration = Int(3000).tag(sync=True, o=True) inertia_max_speed = Int(1500).tag(sync=True, o=True) # inertia_threshold = Int(?, o=True).tag(sync=True) # fade_animation = Bool(?).tag(sync=True, o=True) # zoom_animation = Bool(?).tag(sync=True, o=True) zoom_animation_threshold = Int(4).tag(sync=True, o=True) # marker_zoom_animation = Bool(?).tag(sync=True, o=True) fullscreen = Bool(False).tag(sync=True, o=True) options = List(trait=Unicode()).tag(sync=True) style = InstanceDict(MapStyle).tag(sync=True, **widget_serialization) default_style = InstanceDict(MapStyle).tag(sync=True, **widget_serialization) dragging_style = InstanceDict(MapStyle).tag(sync=True, **widget_serialization) zoom_control = Bool(True) attribution_control = Bool(True) @default('dragging_style') def _default_dragging_style(self): return {'cursor': 'move'} @default('options') def _default_options(self): return [name for name in self.traits(o=True)] south = Float(def_loc[0], read_only=True).tag(sync=True) north = Float(def_loc[0], read_only=True).tag(sync=True) east = Float(def_loc[1], read_only=True).tag(sync=True) west = Float(def_loc[1], read_only=True).tag(sync=True) layers = Tuple().tag(trait=Instance(Layer), sync=True, **widget_serialization) @default('layers') def _default_layers(self): basemap = self.basemap if isinstance(self.basemap, TileLayer) else basemap_to_tiles( self.basemap, self.modisdate) basemap.base = True return (basemap, ) bounds = Tuple(read_only=True) bounds_polygon = Tuple(read_only=True) @observe('south', 'north', 'east', 'west') def _observe_bounds(self, change): self.set_trait('bounds', ((self.south, self.west), (self.north, self.east))) self.set_trait('bounds_polygon', ((self.north, self.west), (self.north, self.east), (self.south, self.east), (self.south, self.west))) def __init__(self, **kwargs): self.zoom_control_instance = None self.attribution_control_instance = None super(Map, self).__init__(**kwargs) self.on_msg(self._handle_leaflet_event) if self.zoom_control: self.zoom_control_instance = ZoomControl() self.add_control(self.zoom_control_instance) if self.attribution_control: self.attribution_control_instance = AttributionControl( position='bottomright') self.add_control(self.attribution_control_instance) @observe('zoom_control') def observe_zoom_control(self, change): if change['new']: self.zoom_control_instance = ZoomControl() self.add_control(self.zoom_control_instance) else: if self.zoom_control_instance is not None and self.zoom_control_instance in self.controls: self.remove_control(self.zoom_control_instance) @observe('attribution_control') def observe_attribution_control(self, change): if change['new']: self.attribution_control_instance = AttributionControl( position='bottomright') self.add_control(self.attribution_control_instance) else: if self.attribution_control_instance is not None and self.attribution_control_instance in self.controls: self.remove_control(self.attribution_control_instance) _layer_ids = List() @validate('layers') def _validate_layers(self, proposal): '''Validate layers list. Makes sure only one instance of any given layer can exist in the layers list. ''' self._layer_ids = [l.model_id for l in proposal.value] if len(set(self._layer_ids)) != len(self._layer_ids): raise LayerException( 'duplicate layer detected, only use each layer once') return proposal.value def add_layer(self, layer): if isinstance(layer, dict): layer = basemap_to_tiles(layer) if layer.model_id in self._layer_ids: raise LayerException('layer already on map: %r' % layer) self.layers = tuple([l for l in self.layers] + [layer]) def remove_layer(self, layer): if layer.model_id not in self._layer_ids: raise LayerException('layer not on map: %r' % layer) self.layers = tuple( [l for l in self.layers if l.model_id != layer.model_id]) def substitute_layer(self, old, new): if isinstance(new, dict): new = basemap_to_tiles(new) if old.model_id not in self._layer_ids: raise LayerException( 'Could not substitute layer: layer not on map.') self.layers = tuple( [new if l.model_id == old.model_id else l for l in self.layers]) def clear_layers(self): self.layers = () controls = Tuple().tag(trait=Instance(Control), sync=True, **widget_serialization) _control_ids = List() @validate('controls') def _validate_controls(self, proposal): '''Validate controls list. Makes sure only one instance of any given layer can exist in the controls list. ''' self._control_ids = [c.model_id for c in proposal.value] if len(set(self._control_ids)) != len(self._control_ids): raise ControlException( 'duplicate control detected, only use each control once') return proposal.value def add_control(self, control): if control.model_id in self._control_ids: raise ControlException('control already on map: %r' % control) self.controls = tuple([c for c in self.controls] + [control]) def remove_control(self, control): if control.model_id not in self._control_ids: raise ControlException('control not on map: %r' % control) self.controls = tuple( [c for c in self.controls if c.model_id != control.model_id]) def clear_controls(self): self.controls = () def __iadd__(self, item): if isinstance(item, Layer): self.add_layer(item) elif isinstance(item, Control): self.add_control(item) return self def __isub__(self, item): if isinstance(item, Layer): self.remove_layer(item) elif isinstance(item, Control): self.remove_control(item) return self def __add__(self, item): if isinstance(item, Layer): self.add_layer(item) elif isinstance(item, Control): self.add_control(item) return self # Event handling _interaction_callbacks = Instance(CallbackDispatcher, ()) def _handle_leaflet_event(self, _, content, buffers): if content.get('event', '') == 'interaction': self._interaction_callbacks(**content) def on_interaction(self, callback, remove=False): self._interaction_callbacks.register_callback(callback, remove=remove)
class Toolbar(DOMWidget, NavigationToolbar2WebAgg): _model_module = Unicode('jupyter-matplotlib').tag(sync=True) _model_module_version = Unicode(js_semver).tag(sync=True) _model_name = Unicode('ToolbarModel').tag(sync=True) _view_module = Unicode('jupyter-matplotlib').tag(sync=True) _view_module_version = Unicode(js_semver).tag(sync=True) _view_name = Unicode('ToolbarView').tag(sync=True) toolitems = List().tag(sync=True) orientation = Enum(['horizontal', 'vertical'], default_value='vertical').tag(sync=True) button_style = CaselessStrEnum( values=['primary', 'success', 'info', 'warning', 'danger', ''], default_value='', help="""Use a predefined styling for the button.""").tag(sync=True) collapsed = Bool(True).tag(sync=True) _current_action = Enum(values=['pan', 'zoom', ''], default_value='').tag(sync=True) def __init__(self, canvas, *args, **kwargs): DOMWidget.__init__(self, *args, **kwargs) NavigationToolbar2WebAgg.__init__(self, canvas, *args, **kwargs) self.on_msg(self.canvas._handle_message) def export(self): buf = io.BytesIO() self.canvas.figure.savefig(buf, format='png', dpi='figure') # Figure width in pixels pwidth = (self.canvas.figure.get_figwidth() * self.canvas.figure.get_dpi()) # Scale size to match widget on HiPD monitors width = pwidth / self.canvas._dpi_ratio data = "<img src='data:image/png;base64,{0}' width={1}/>" data = data.format(b64encode(buf.getvalue()).decode('utf-8'), width) display(HTML(data)) @default('toolitems') def _default_toolitems(self): icons = { 'home': 'home', 'back': 'arrow-left', 'forward': 'arrow-right', 'zoom_to_rect': 'square-o', 'move': 'arrows', 'download': 'floppy-o', 'export': 'file-picture-o' } download_item = ('Download', 'Download plot', 'download', 'save_figure') toolitems = (NavigationToolbar2.toolitems + (download_item,)) return [(text, tooltip, icons[icon_name], method_name) for text, tooltip, icon_name, method_name in toolitems if icon_name in icons]
class NbGraderAPI(LoggingConfigurable): """A high-level API for using nbgrader.""" coursedir = Instance(CourseDirectory, allow_none=True) authenticator = Instance(Authenticator, allow_none=True) exchange = Instance(ExchangeFactory, allow_none=True) # The log level for the application log_level = Enum( (0, 10, 20, 30, 40, 50, 'DEBUG', 'INFO', 'WARN', 'ERROR', 'CRITICAL'), default_value=logging.INFO, help="Set the log level by value or name.").tag(config=True) timezone = Unicode( "UTC", help="Timezone for displaying timestamps").tag(config=True) timestamp_format = Unicode( "%Y-%m-%d %H:%M:%S %Z", help="Format string for displaying timestamps").tag(config=True) @observe('log_level') def _log_level_changed(self, change): """Adjust the log level when log_level is set.""" new = change.new if isinstance(new, str): new = getattr(logging, new) self.log_level = new self.log.setLevel(new) def __init__(self, coursedir=None, authenticator=None, exchange=None, **kwargs): """Initialize the API. Arguments --------- coursedir: :class:`nbgrader.coursedir.CourseDirectory` (Optional) A course directory object. authenticator : :class:~`nbgrader.auth.BaseAuthenticator` (Optional) An authenticator instance for communicating with an external database. kwargs: Additional keyword arguments (e.g. ``parent``, ``config``) """ self.log.setLevel(self.log_level) super(NbGraderAPI, self).__init__(**kwargs) if coursedir is None: self.coursedir = CourseDirectory(parent=self) else: self.coursedir = coursedir if authenticator is None: self.authenticator = Authenticator(parent=self) else: self.authenticator = authenticator if exchange is None: self.exchange = ExchangeFactory(parent=self) else: self.exchange = exchange if sys.platform != 'win32': lister = self.exchange.List(coursedir=self.coursedir, authenticator=self.authenticator, parent=self) self.course_id = self.coursedir.course_id if hasattr(lister, "root"): self.exchange_root = lister.root else: # For non-fs based exchanges self.exchange_root = '' try: lister.start() except ExchangeError: self.exchange_missing = True else: self.exchange_missing = False else: self.course_id = '' self.exchange_root = '' self.exchange_missing = True @property def exchange_is_functional(self): return self.course_id and not self.exchange_missing and sys.platform != 'win32' @property def gradebook(self): """An instance of :class:`nbgrader.api.Gradebook`. Note that each time this property is accessed, a new gradebook is created. The user is responsible for destroying the gradebook through :func:`~nbgrader.api.Gradebook.close`. """ return Gradebook(self.coursedir.db_url, self.course_id) def get_source_assignments(self): """Get the names of all assignments in the `source` directory. Returns ------- assignments: set A set of assignment names """ filenames = glob.glob( self.coursedir.format_path(self.coursedir.source_directory, student_id='.', assignment_id='*')) assignments = set([]) for filename in filenames: # skip files that aren't directories if not os.path.isdir(filename): continue # parse out the assignment name regex = self.coursedir.format_path( self.coursedir.source_directory, student_id='.', assignment_id='(?P<assignment_id>.*)', escape=True) matches = re.match(regex, filename) if matches: assignments.add(matches.groupdict()['assignment_id']) return assignments def get_released_assignments(self): """Get the names of all assignments that have been released to the exchange directory. If the course id is blank, this returns an empty set. Returns ------- assignments: set A set of assignment names """ if self.exchange_is_functional: lister = self.exchange.List(coursedir=self.coursedir, authenticator=self.authenticator, parent=self) released = set([x['assignment_id'] for x in lister.start()]) else: released = set([]) return released def get_submitted_students(self, assignment_id): """Get the ids of students that have submitted a given assignment (determined by whether or not a submission exists in the `submitted` directory). Arguments --------- assignment_id: string The name of the assignment. May be * to select for all assignments. Returns ------- students: set A set of student ids """ # get the names of all student submissions in the `submitted` directory filenames = glob.glob( self.coursedir.format_path(self.coursedir.submitted_directory, student_id='*', assignment_id=assignment_id)) students = set([]) for filename in filenames: # skip files that aren't directories if not os.path.isdir(filename): continue # parse out the student id if assignment_id == "*": assignment_id = ".*" regex = self.coursedir.format_path( self.coursedir.submitted_directory, student_id='(?P<student_id>.*)', assignment_id=assignment_id, escape=True) matches = re.match(regex, filename) if matches: students.add(matches.groupdict()['student_id']) return students def get_submitted_timestamp(self, assignment_id, student_id): """Gets the timestamp of a submitted assignment. Arguments --------- assignment_id: string The assignment name student_id: string The student id Returns ------- timestamp: datetime.datetime or None The timestamp of the submission, or None if the timestamp does not exist """ assignment_dir = os.path.abspath( self.coursedir.format_path(self.coursedir.submitted_directory, student_id, assignment_id)) timestamp_pth = os.path.join(assignment_dir, 'timestamp.txt') if os.path.exists(timestamp_pth): with open(timestamp_pth, 'r') as fh: return parse_utc(fh.read().strip()) def get_autograded_students(self, assignment_id): """Get the ids of students whose submission for a given assignment has been autograded. This is determined based on satisfying all of the following criteria: 1. There is a directory present in the `autograded` directory. 2. The submission is present in the database. 3. The timestamp of the autograded submission is the same as the timestamp of the original submission (in the `submitted` directory). Returns ------- students: set A set of student ids """ # get all autograded submissions with self.gradebook as gb: ag_timestamps = dict(gb.db\ .query(Student.id, SubmittedAssignment.timestamp)\ .join(SubmittedAssignment)\ .filter(SubmittedAssignment.name == assignment_id)\ .all()) ag_students = set(ag_timestamps.keys()) students = set([]) for student_id in ag_students: # skip files that aren't directories filename = self.coursedir.format_path( self.coursedir.autograded_directory, student_id=student_id, assignment_id=assignment_id) if not os.path.isdir(filename): continue # get the timestamps and check whether the submitted timestamp is # newer than the autograded timestamp submitted_timestamp = self.get_submitted_timestamp( assignment_id, student_id) autograded_timestamp = ag_timestamps[student_id] if submitted_timestamp != autograded_timestamp: continue students.add(student_id) return students def get_assignment(self, assignment_id, released=None): """Get information about an assignment given its name. Arguments --------- assignment_id: string The name of the assignment released: list (Optional) A set of names of released assignments, obtained via self.get_released_assignments(). Returns ------- assignment: dict A dictionary containing information about the assignment """ # get the set of released assignments if not given if not released: released = self.get_released_assignments() # check whether there is a source version of the assignment sourcedir = os.path.abspath( self.coursedir.format_path(self.coursedir.source_directory, student_id='.', assignment_id=assignment_id)) if not os.path.isdir(sourcedir): return # see if there is information about the assignment in the database try: with self.gradebook as gb: db_assignment = gb.find_assignment(assignment_id) assignment = db_assignment.to_dict() if db_assignment.duedate: ts = as_timezone(db_assignment.duedate, self.timezone) assignment["display_duedate"] = ts.strftime( self.timestamp_format) assignment["duedate_notimezone"] = ts.replace( tzinfo=None).isoformat() else: assignment["display_duedate"] = None assignment["duedate_notimezone"] = None assignment["duedate_timezone"] = to_numeric_tz(self.timezone) assignment["average_score"] = gb.average_assignment_score( assignment_id) assignment[ "average_code_score"] = gb.average_assignment_code_score( assignment_id) assignment[ "average_written_score"] = gb.average_assignment_written_score( assignment_id) assignment[ "average_task_score"] = gb.average_assignment_task_score( assignment_id) except MissingEntry: assignment = { "id": None, "name": assignment_id, "duedate": None, "display_duedate": None, "duedate_notimezone": None, "duedate_timezone": to_numeric_tz(self.timezone), "average_score": 0, "average_code_score": 0, "average_written_score": 0, "average_task_score": 0, "max_score": 0, "max_code_score": 0, "max_written_score": 0, "max_task_score": 0 } # get released status if not self.exchange_is_functional: assignment["releaseable"] = False assignment["status"] = "draft" else: assignment["releaseable"] = True if assignment_id in released: assignment["status"] = "released" else: assignment["status"] = "draft" # get source directory assignment["source_path"] = os.path.relpath(sourcedir, self.coursedir.root) # get release directory releasedir = os.path.abspath( self.coursedir.format_path(self.coursedir.release_directory, student_id='.', assignment_id=assignment_id)) if os.path.exists(releasedir): assignment["release_path"] = os.path.relpath( releasedir, self.coursedir.root) else: assignment["release_path"] = None # number of submissions assignment["num_submissions"] = len( self.get_submitted_students(assignment_id)) return assignment def get_assignments(self): """Get a list of information about all assignments. Returns ------- assignments: list A list of dictionaries containing information about each assignment """ released = self.get_released_assignments() assignments = [] for x in self.get_source_assignments(): assignments.append(self.get_assignment(x, released=released)) assignments.sort(key=lambda x: (x["duedate"] if x["duedate"] is not None else "None", x["name"])) return assignments def get_notebooks(self, assignment_id): """Get a list of notebooks in an assignment. Arguments --------- assignment_id: string The name of the assignment Returns ------- notebooks: list A list of dictionaries containing information about each notebook """ with self.gradebook as gb: try: assignment = gb.find_assignment(assignment_id) except MissingEntry: assignment = None # if the assignment exists in the database if assignment and assignment.notebooks: notebooks = [] for notebook in assignment.notebooks: x = notebook.to_dict() x["average_score"] = gb.average_notebook_score( notebook.name, assignment.name) x["average_code_score"] = gb.average_notebook_code_score( notebook.name, assignment.name) x["average_written_score"] = gb.average_notebook_written_score( notebook.name, assignment.name) x["average_task_score"] = gb.average_notebook_task_score( notebook.name, assignment.name) notebooks.append(x) # if it doesn't exist in the database else: sourcedir = self.coursedir.format_path( self.coursedir.source_directory, student_id='.', assignment_id=assignment_id) escaped_sourcedir = self.coursedir.format_path( self.coursedir.source_directory, student_id='.', assignment_id=assignment_id, escape=True) notebooks = [] for filename in glob.glob(os.path.join(sourcedir, "*.ipynb")): regex = re.escape(os.path.sep).join( [escaped_sourcedir, "(?P<notebook_id>.*).ipynb"]) matches = re.match(regex, filename) notebook_id = matches.groupdict()['notebook_id'] notebooks.append({ "name": notebook_id, "id": None, "average_score": 0, "average_code_score": 0, "average_written_score": 0, "average_task_score": 0, "max_score": 0, "max_code_score": 0, "max_written_score": 0, "max_task_score": 0, "needs_manual_grade": False, "num_submissions": 0 }) return notebooks def get_submission(self, assignment_id, student_id, ungraded=None, students=None): """Get information about a student's submission of an assignment. Arguments --------- assignment_id: string The name of the assignment student_id: string The student's id ungraded: set (Optional) A set of student ids corresponding to students whose submissions have not yet been autograded. students: dict (Optional) A dictionary of dictionaries, keyed by student id, containing information about students. Returns ------- submission: dict A dictionary containing information about the submission """ if ungraded is None: autograded = self.get_autograded_students(assignment_id) ungraded = self.get_submitted_students(assignment_id) - autograded if students is None: students = {x['id']: x for x in self.get_students()} if student_id in ungraded: ts = self.get_submitted_timestamp(assignment_id, student_id) if ts: timestamp = ts.isoformat() display_timestamp = as_timezone(ts, self.timezone).strftime( self.timestamp_format) else: timestamp = None display_timestamp = None submission = { "id": None, "name": assignment_id, "timestamp": timestamp, "display_timestamp": display_timestamp, "score": 0.0, "max_score": 0.0, "code_score": 0.0, "max_code_score": 0.0, "written_score": 0.0, "max_written_score": 0.0, "task_score": 0.0, "max_task_score": 0.0, "needs_manual_grade": False, "autograded": False, "submitted": True, "student": student_id, } if student_id not in students: submission["last_name"] = None submission["first_name"] = None else: submission["last_name"] = students[student_id]["last_name"] submission["first_name"] = students[student_id]["first_name"] elif student_id in autograded: with self.gradebook as gb: try: db_submission = gb.find_submission(assignment_id, student_id) submission = db_submission.to_dict() if db_submission.timestamp: submission["display_timestamp"] = as_timezone( db_submission.timestamp, self.timezone).strftime(self.timestamp_format) else: submission["display_timestamp"] = None except MissingEntry: return None submission["autograded"] = True submission["submitted"] = True else: submission = { "id": None, "name": assignment_id, "timestamp": None, "display_timestamp": None, "score": 0.0, "max_score": 0.0, "code_score": 0.0, "max_code_score": 0.0, "written_score": 0.0, "max_written_score": 0.0, "task_score": 0.0, "max_task_score": 0.0, "needs_manual_grade": False, "autograded": False, "submitted": False, "student": student_id, } if student_id not in students: submission["last_name"] = None submission["first_name"] = None else: submission["last_name"] = students[student_id]["last_name"] submission["first_name"] = students[student_id]["first_name"] return submission def get_submissions(self, assignment_id): """Get a list of submissions of an assignment. Each submission corresponds to a student. Arguments --------- assignment_id: string The name of the assignment Returns ------- notebooks: list A list of dictionaries containing information about each submission """ with self.gradebook as gb: db_submissions = gb.submission_dicts(assignment_id) ungraded = self.get_submitted_students( assignment_id) - self.get_autograded_students(assignment_id) students = {x['id']: x for x in self.get_students()} submissions = [] for submission in db_submissions: if submission["student"] in ungraded: continue ts = submission["timestamp"] if ts: submission["timestamp"] = ts.isoformat() submission["display_timestamp"] = as_timezone( ts, self.timezone).strftime(self.timestamp_format) else: submission["timestamp"] = None submission["display_timestamp"] = None submission["autograded"] = True submission["submitted"] = True submissions.append(submission) for student_id in ungraded: submission = self.get_submission(assignment_id, student_id, ungraded=ungraded, students=students) submissions.append(submission) submissions.sort(key=lambda x: x["student"]) return submissions def _filter_existing_notebooks(self, assignment_id, notebooks): """Filters a list of notebooks so that it only includes those notebooks which actually exist on disk. This functionality is necessary for cases where student delete or rename on or more notebooks in their assignment, but still submit the assignment. Arguments --------- assignment_id: string The name of the assignment notebooks: list List of :class:`~nbgrader.api.SubmittedNotebook` objects Returns ------- submissions: list List of :class:`~nbgrader.api.SubmittedNotebook` objects """ # Making a filesystem call for every notebook in the assignment # can be very slow on certain setups, such as using NFS, see # https://github.com/jupyter/nbgrader/issues/929 # # If students are using the exchange and submitting with # ExchangeSubmit.strict == True, then all the notebooks we expect # should be here already so we don't need to filter for only # existing notebooks in that case. if self.exchange_is_functional: app = self.exchange.Submit(coursedir=self.coursedir, authenticator=self.authenticator, parent=self) if app.strict: return sorted(notebooks, key=lambda x: x.id) submissions = list() for nb in notebooks: filename = os.path.join( os.path.abspath( self.coursedir.format_path( self.coursedir.autograded_directory, student_id=nb.student.id, assignment_id=assignment_id)), "{}.ipynb".format(nb.name)) if os.path.exists(filename): submissions.append(nb) return sorted(submissions, key=lambda x: x.id) def get_notebook_submission_indices(self, assignment_id, notebook_id): """Get a dictionary mapping unique submission ids to indices of the submissions relative to the full list of submissions. Arguments --------- assignment_id: string The name of the assignment notebook_id: string The name of the notebook Returns ------- indices: dict A dictionary mapping submission ids to the index of each submission """ with self.gradebook as gb: notebooks = gb.notebook_submissions(notebook_id, assignment_id) submissions = self._filter_existing_notebooks( assignment_id, notebooks) return dict([(x.id, i) for i, x in enumerate(submissions)]) def get_notebook_submissions(self, assignment_id, notebook_id): """Get a list of submissions for a particular notebook in an assignment. Arguments --------- assignment_id: string The name of the assignment notebook_id: string The name of the notebook Returns ------- submissions: list A list of dictionaries containing information about each submission. """ with self.gradebook as gb: try: gb.find_notebook(notebook_id, assignment_id) except MissingEntry: return [] submissions = gb.notebook_submission_dicts(notebook_id, assignment_id) indices = self.get_notebook_submission_indices(assignment_id, notebook_id) for nb in submissions: nb['index'] = indices.get(nb['id'], None) submissions = [x for x in submissions if x['index'] is not None] submissions.sort(key=lambda x: x["id"]) return submissions def get_student(self, student_id, submitted=None): """Get a dictionary containing information about the given student. Arguments --------- student_id: string The unique id of the student submitted: set (Optional) A set of unique ids of students who have submitted an assignment Returns ------- student: dictionary A dictionary containing information about the student, or None if the student does not exist """ if submitted is None: submitted = self.get_submitted_students("*") try: with self.gradebook as gb: student = gb.find_student(student_id).to_dict() except MissingEntry: if student_id in submitted: student = { "id": student_id, "last_name": None, "first_name": None, "email": None, "lms_user_id": None, "score": 0.0, "max_score": 0.0 } else: return None return student def get_students(self): """Get a list containing information about all the students in class. Returns ------- students: list A list of dictionaries containing information about all the students """ with self.gradebook as gb: in_db = set([x.id for x in gb.students]) students = gb.student_dicts() submitted = self.get_submitted_students("*") for student_id in (submitted - in_db): students.append({ "id": student_id, "last_name": None, "first_name": None, "email": None, "lms_user_id": None, "score": 0.0, "max_score": 0.0 }) students.sort(key=lambda x: (x["last_name"] or "None", x["first_name"] or "None", x["id"])) return students def get_student_submissions(self, student_id): """Get information about all submissions from a particular student. Arguments --------- student_id: string The unique id of the student Returns ------- submissions: list A list of dictionaries containing information about all the student's submissions """ # return just an empty list if the student doesn't exist submissions = [] for assignment_id in self.get_source_assignments(): submission = self.get_submission(assignment_id, student_id) submissions.append(submission) submissions.sort(key=lambda x: x["name"]) return submissions def get_student_notebook_submissions(self, student_id, assignment_id): """Gets information about all notebooks within a submitted assignment. Arguments --------- student_id: string The unique id of the student assignment_id: string The name of the assignment Returns ------- submissions: list A list of dictionaries containing information about the submissions """ with self.gradebook as gb: try: assignment = gb.find_submission(assignment_id, student_id) student = assignment.student except MissingEntry: return [] submissions = [] for notebook in assignment.notebooks: filename = os.path.join( os.path.abspath( self.coursedir.format_path( self.coursedir.autograded_directory, student_id=student_id, assignment_id=assignment_id)), "{}.ipynb".format(notebook.name)) if os.path.exists(filename): submissions.append(notebook.to_dict()) else: submissions.append({ "id": None, "name": notebook.name, "student": student_id, "last_name": student.last_name, "first_name": student.first_name, "score": 0, "max_score": notebook.max_score, "code_score": 0, "max_code_score": notebook.max_code_score, "written_score": 0, "max_written_score": notebook.max_written_score, "task_score": 0, "max_task_score": notebook.max_task_score, "needs_manual_grade": False, "failed_tests": False, "flagged": False }) submissions.sort(key=lambda x: x["name"]) return submissions def assign(self, *args, **kwargs): """Deprecated, please use `generate_assignment` instead.""" msg = ( "The `assign` method is deprecated, please use `generate_assignment` " "instead. This method will be removed in a future version of nbgrader." ) warnings.warn(msg, DeprecationWarning) self.log.warning(msg) return self.generate_assignment(*args, **kwargs) def generate_assignment(self, assignment_id, force=True, create=True): """Run ``nbgrader generate_assignment`` for a particular assignment. Arguments --------- assignment_id: string The name of the assignment force: bool Whether to force creating the student version, even if it already exists. create: bool Whether to create the assignment in the database, if it doesn't already exist. Returns ------- result: dict A dictionary with the following keys (error and log may or may not be present): - success (bool): whether or not the operation completed successfully - error (string): formatted traceback - log (string): captured log output """ with temp_attrs(self.coursedir, assignment_id=assignment_id): app = GenerateAssignment(coursedir=self.coursedir, parent=self) app.force = force app.create_assignment = create return capture_log(app) def unrelease(self, assignment_id): """Run ``nbgrader list --remove`` for a particular assignment. Arguments --------- assignment_id: string The name of the assignment Returns ------- result: dict A dictionary with the following keys (error and log may or may not be present): - success (bool): whether or not the operation completed successfully - error (string): formatted traceback - log (string): captured log output """ if sys.platform != 'win32': with temp_attrs(self.coursedir, assignment_id=assignment_id): app = self.exchange.List(coursedir=self.coursedir, authenticator=self.authenticator, parent=self) app.remove = True return capture_log(app) def release(self, *args, **kwargs): """Deprecated, please use `release_assignment` instead.""" msg = ( "The `release` method is deprecated, please use `release_assignment` " "instead. This method will be removed in a future version of nbgrader." ) warnings.warn(msg, DeprecationWarning) self.log.warning(msg) return self.release_assignment(*args, **kwargs) def release_assignment(self, assignment_id): """Run ``nbgrader release_assignment`` for a particular assignment. Arguments --------- assignment_id: string The name of the assignment Returns ------- result: dict A dictionary with the following keys (error and log may or may not be present): - success (bool): whether or not the operation completed successfully - error (string): formatted traceback - log (string): captured log output """ if sys.platform != 'win32': with temp_attrs(self.coursedir, assignment_id=assignment_id): app = self.exchange.ReleaseAssignment( coursedir=self.coursedir, authenticator=self.authenticator, parent=self) return capture_log(app) def collect(self, assignment_id, update=True): """Run ``nbgrader collect`` for a particular assignment. Arguments --------- assignment_id: string The name of the assignment update: bool Whether to update already-collected assignments with newer submissions, if they exist Returns ------- result: dict A dictionary with the following keys (error and log may or may not be present): - success (bool): whether or not the operation completed successfully - error (string): formatted traceback - log (string): captured log output """ if sys.platform != 'win32': with temp_attrs(self.coursedir, assignment_id=assignment_id): app = self.exchange.Collect(coursedir=self.coursedir, authenticator=self.authenticator, parent=self) app.update = update return capture_log(app) def autograde(self, assignment_id, student_id, force=True, create=True): """Run ``nbgrader autograde`` for a particular assignment and student. Arguments --------- assignment_id: string The name of the assignment student_id: string The unique id of the student force: bool Whether to autograde the submission, even if it's already been autograded create: bool Whether to create students in the database if they don't already exist Returns ------- result: dict A dictionary with the following keys (error and log may or may not be present): - success (bool): whether or not the operation completed successfully - error (string): formatted traceback - log (string): captured log output """ with temp_attrs(self.coursedir, assignment_id=assignment_id, student_id=student_id): app = Autograde(coursedir=self.coursedir, parent=self) app.force = force app.create_student = create return capture_log(app) def generate_feedback(self, assignment_id, student_id=None, force=True): """Run ``nbgrader generate_feedback`` for a particular assignment and student. Arguments --------- assignment_id: string The name of the assignment student_id: string The name of the student (optional). If not provided, then generate feedback from autograded submissions. force: bool Whether to force generating feedback, even if it already exists. Returns ------- result: dict A dictionary with the following keys (error and log may or may not be present): - success (bool): whether or not the operation completed successfully - error (string): formatted traceback - log (string): captured log output """ # Because we may be using HTMLExporter.template_file in other # parts of the the UI, we need to make sure that the template # is explicitply 'feedback.tpl` here: c = Config() c.HTMLExporter.template_file = 'feedback.tpl' if student_id is not None: with temp_attrs(self.coursedir, assignment_id=assignment_id, student_id=student_id): app = GenerateFeedback(coursedir=self.coursedir, parent=self) app.update_config(c) app.force = force return capture_log(app) else: with temp_attrs(self.coursedir, assignment_id=assignment_id): app = GenerateFeedback(coursedir=self.coursedir, parent=self) app.update_config(c) app.force = force return capture_log(app) def release_feedback(self, assignment_id, student_id=None): """Run ``nbgrader release_feedback`` for a particular assignment/student. Arguments --------- assignment_id: string The name of the assignment assignment_id: string The name of the student (optional). If not provided, then release all generated feedback. Returns ------- result: dict A dictionary with the following keys (error and log may or may not be present): - success (bool): whether or not the operation completed successfully - error (string): formatted traceback - log (string): captured log output """ if student_id is not None: with temp_attrs(self.coursedir, assignment_id=assignment_id, student_id=student_id): app = self.exchange.ReleaseFeedback( coursedir=self.coursedir, authentictor=self.authenticator, parent=self) return capture_log(app) else: with temp_attrs(self.coursedir, assignment_id=assignment_id, student_id='*'): app = self.exchange.ReleaseFeedback( coursedir=self.coursedir, authentictor=self.authenticator, parent=self) return capture_log(app) def fetch_feedback(self, assignment_id, student_id): """Run ``nbgrader fetch_feedback`` for a particular assignment/student. Arguments --------- assignment_id: string The name of the assignment student_id: string The name of the student. Returns ------- result: dict A dictionary with the following keys (error and log may or may not be present): - success (bool): whether or not the operation completed successfully - error (string): formatted traceback - log (string): captured log output - value (list of dict): all submitted assignments """ with temp_attrs(self.coursedir, assignment_id=assignment_id, student_id=student_id): app = self.exchange.FetchFeedback(coursedir=self.coursedir, authentictor=self.authenticator, parent=self) ret_dic = capture_log(app) # assignment tab needs a 'value' field with the info needed to repopulate # the tables. with temp_attrs(self.coursedir, assignment_id='*', student_id=student_id): lister_rel = self.exchange.List(inbound=False, cached=True, coursedir=self.coursedir, authenticator=self.authenticator, config=self.config) assignments = lister_rel.start() ret_dic["value"] = sorted(assignments, key=lambda x: (x['course_id'], x['assignment_id'])) return ret_dic
class Figure(DOMWidget): """Main canvas for drawing a chart. The Figure object holds the list of Marks and Axes. It also holds an optional Interaction object that is responsible for figure-level mouse interactions, the "interaction layer". Besides, the Figure object has two reference scales, for positioning items in an absolute fashion in the figure canvas. Attributes ---------- title: string (default: '') title of the figure axes: List of Axes (default: []) list containing the instances of the axes for the figure marks: List of Marks (default: []) list containing the marks which are to be appended to the figure interaction: Interaction or None (default: ) optional interaction layer for the figure scale_x: Scale Scale representing the x values of the figure scale_y: Scale Scale representing the y values of the figure padding_x: Float (default: 0.0) Padding to be applied in the horizontal direction of the figure around the data points, proportion of the horizontal length padding_y: Float (default: 0.025) Padding to be applied in the vertical direction of the figure around the data points, proportion of the vertical length legend_location: {'top-right', 'top', 'top-left', 'left', 'bottom-left', 'bottom', 'bottom-right', 'right'} location of the legend relative to the center of the figure background_style: Dict (default: {}) CSS style to be applied to the background of the figure title_style: Dict (default: {}) CSS style to be applied to the title of the figure animation_duration: nonnegative int (default: 0) Duration of transition on change of data attributes, in milliseconds. Layout Attributes fig_margin: dict (default: {top=60, bottom=60, left=60, right=60}) Dictionary containing the top, bottom, left and right margins. The user is responsible for making sure that the width and height are greater than the sum of the margins. min_aspect_ratio: float minimum width / height ratio of the figure max_aspect_ratio: float maximum width / height ratio of the figure Methods ------- save_png: Saves the figure as a png file Note ---- The aspect ratios stand for width / height ratios. - If the available space is within bounds in terms of min and max aspect ratio, we use the entire available space. - If the available space is too oblong horizontally, we use the client height and the width that corresponds max_aspect_ratio (maximize width under the constraints). - If the available space is too oblong vertically, we use the client width and the height that corresponds to min_aspect_ratio (maximize height under the constraint). This corresponds to maximizing the area under the constraints. Default min and max aspect ratio are both equal to 16 / 9. """ title = Unicode().tag(sync=True, display_name='Title') axes = List(Instance(Axis)).tag(sync=True, **widget_serialization) marks = List(Instance(Mark)).tag(sync=True, **widget_serialization) interaction = Instance(Interaction, default_value=None, allow_none=True).tag(sync=True, **widget_serialization) scale_x = Instance(Scale).tag(sync=True, **widget_serialization) scale_y = Instance(Scale).tag(sync=True, **widget_serialization) title_style = Dict(trait=Unicode()).tag(sync=True) background_style = Dict().tag(sync=True) # min width is based on hardcoded padding values layout = Instance(Layout, kw={ 'min_width': '125px' }, allow_none=True).tag(sync=True, **widget_serialization) min_aspect_ratio = Float(1.0).tag(sync=True) # Max aspect ratio is such that we can have 3 charts stacked vertically # on a 16:9 monitor: 16/9*3 ~ 5.333 max_aspect_ratio = Float(6.0).tag(sync=True) fig_margin = Dict(dict(top=60, bottom=60, left=60, right=60)).tag(sync=True) padding_x = Float(0.0, min=0.0, max=1.0).tag(sync=True) padding_y = Float(0.025, min=0.0, max=1.0).tag(sync=True) legend_location = Enum(['top-right', 'top', 'top-left', 'left', 'bottom-left', 'bottom', 'bottom-right', 'right'], default_value='top-right').tag(sync=True, display_name='Legend position') animation_duration = Int().tag(sync=True, display_name='Animation duration') @default('scale_x') def _default_scale_x(self): return LinearScale(min=0, max=1, allow_padding=False) @default('scale_y') def _default_scale_y(self): return LinearScale(min=0, max=1, allow_padding=False) def save_png(self): self.send({"type": "save_png"}) @validate('min_aspect_ratio', 'max_aspect_ratio') def _validate_aspect_ratio(self, proposal): value = proposal['value'] if proposal['trait'].name == 'min_aspect_ratio' and value > self.max_aspect_ratio: raise TraitError('setting min_aspect_ratio > max_aspect_ratio') if proposal['trait'].name == 'max_aspect_ratio' and value < self.min_aspect_ratio: raise TraitError('setting max_aspect_ratio < min_aspect_ratio') return value _view_name = Unicode('Figure').tag(sync=True) _model_name = Unicode('FigureModel').tag(sync=True) _view_module = Unicode('bqplot').tag(sync=True) _model_module = Unicode('bqplot').tag(sync=True)
class Main(MLflowExperiment): # # Resume previous run parameters. # resume_path = Unicode( u"/dccstor/faceid/results/train_coco_resnet/0198_968f3cd/1174695/190117_081837/", config=True, help= "Resume from checkpoint file (requires using also '--resume_epoch'.") resume_epoch = Int( 49, config=True, help="Epoch to resume (requires using also '--resume_path'.") coco_path = Unicode(u"/tmp/aa/coco", config=True, help="path to local coco dataset path") init_inception = Bool( False, config=True, help="Initialize the inception networks using ALFASSY's network.") # # Network hyper parameters # base_network_name = Unicode("resnet50", config=True, help="Name of base network to use.") avgpool_kernel = Int( 7, config=True, help= "Size of the last avgpool layer in the Resnet. Should match the cropsize." ) classifier_name = Unicode("Inception3Classifier", config=True, help="Name of classifier to use.") sets_network_name = Unicode("SetOpsResModule", config=True, help="Name of setops module to use.") sets_block_name = Unicode("SetopResBlock_v1", config=True, help="Name of setops network to use.") sets_basic_block_name = Unicode( "SetopResBasicBlock", config=True, help="Name of the basic setops block to use (where applicable).") ops_layer_num = Int(1, config=True, help="Ops Module layer num.") ops_latent_dim = Int(8092, config=True, help="Ops Module latent dim.") setops_dropout = Float(0, config=True, help="Dropout ratio of setops module.") crop_size = Int(224, config=True, help="Size of input crop (Resnet 224, inception 299).") # # Run setup # batch_size = Int(16, config=True, help="Batch size.") num_workers = Int(8, config=True, help="Number of workers to use for data loading.") device = Unicode("cuda", config=True, help="Use `cuda` backend.") # # Training hyper parameters. # random_angle = Float(10, config=True, help="Angle of random augmentation.") random_scale = Float(0.3, config=True, help="Scale of radnom augmentation.") train_base = Bool( True, config=True, help="Whether to train also the base model.").tag(parameter=True) train_classifier = Bool(False, config=True, help="Whether to train also the classifier.") epochs = Int(50, config=True, help="Number of epochs to run.") optimizer_cls = Unicode("SGD", config=True, help="Type of optimizer to use.") focal_loss = Bool(False, config=True, help="Use Focal Loss.") recon_loss = Enum(("mse", "l1"), config=True, default_value="mse", help="Type of reconstruction (embedding) loss: mse/l1.") lr1 = Float(0.0001, config=True, help="Learning rate start.") lr2 = Float(0.002, config=True, help="Learning rate end.") warmup_epochs = Int(3, config=True, help="Length (in epochs) of the LR warmup.") weight_decay = Float( 0.0001, config=True, help="Weight decay (L2 regularization).").tag(parameter=True) recon_loss_weight = Float( 1., config=True, help="Weight of reconstruction (embedding) loss.").tag(parameter=True) class_fake_loss_weight = Float( 1., config=True, help="Weight of fake classification loss.").tag(parameter=True) class_S_loss_weight = Float( 1., config=True, help="Weight of Substraction classification loss.").tag(parameter=True) class_U_loss_weight = Float( 1., config=True, help="Weight of Union classification loss.").tag(parameter=True) class_I_loss_weight = Float( 1., config=True, help="Weight of Intersection classification loss.").tag(parameter=True) # loss sym_class_toggle = Bool( True, config=True, help="Should we use symmetric classification loss?") sym_recon_toggle = Bool( True, config=True, help="Should we use symmetric reconstruction loss?") mc_toggle = Bool(True, config=True, help="Should we use anti mode collapse loss?") tautology_recon_toggle = Bool( True, config=True, help="Should we use tautology reconstruction loss?") tautology_class_toggle = Bool( True, config=True, help="Should we use tautology classification loss?") dataset_size_ratio = Int( 4, config=True, help="Multiplier of training dataset.").tag(parameter=True) def run(self): # TODO: comment out if you don't want to copy coco to /tmp/aa # copy_coco_data() # # create model # base_model, classifier, setops_model = self.setup_model() # # Create ignite trainers and evalators. # Note: # I use "two" evaluators, the first is used for evaluating the model on the training data. # This separation is done so as that checkpoint will be done according to the results of # the validation evaluator. # trainer, train_loader = self.setup_training(base_model, classifier, setops_model) # # kick everything off # trainer.run(train_loader, max_epochs=self.epochs) def setup_training(self, base_model, classifier, setops_model): # # Create the train and test dataset. # train_loader, train_subset_loader, val_loader = self.setup_datasets() logging.info("Setup logging and controls.") # # Setup metrics plotters. # mlflow_logger = MlflowLogger() # # Setup the optimizer. # logging.info("Setup optimizers and losses.") parameters = list(base_model.parameters()) parameters += list(setops_model.parameters()) if self.train_classifier: parameters += list(classifier.parameters()) if self.optimizer_cls == "SGD": optimizer = torch.optim.SGD(parameters, lr=self.lr1, momentum=0.9, weight_decay=self.weight_decay) else: optimizer = torch.optim.Adam(parameters, lr=self.lr1, weight_decay=self.weight_decay) if self.focal_loss: attr_loss = FocalLoss().cuda() else: attr_loss = torch.nn.MultiLabelSoftMarginLoss().cuda() recon_loss = torch.nn.MSELoss( ) if self.recon_loss == "mse" else torch.nn.L1Loss() # # Setup the trainer object and its logging. # logging.info("Setup trainer") trainer = create_setops_trainer(base_model, classifier, setops_model, optimizer, criterion1=attr_loss, criterion2=recon_loss.cuda(), params_object=self, device=self.device) ProgressBar(bar_format=None).attach(trainer) mlflow_logger.attach(engine=trainer, prefix="Train ", plot_event=Events.ITERATION_COMPLETED, update_period=LOG_INTERVAL, output_transform=lambda x: x) # # Define the evaluation metrics. # logging.info("Setup evaluator") evaluation_losses = { 'real class loss': Loss(torch.nn.MultiLabelSoftMarginLoss().cuda(), lambda o: (o["outputs"]["real class a"], o["targets"]["class a"])) + \ Loss(torch.nn.MultiLabelSoftMarginLoss().cuda(), lambda o: (o["outputs"]["real class b"], o["targets"]["class b"])), 'fake class loss': Loss(torch.nn.MultiLabelSoftMarginLoss().cuda(), lambda o: (o["outputs"]["fake class a"], o["targets"]["class a"])) + \ Loss(torch.nn.MultiLabelSoftMarginLoss().cuda(), lambda o: (o["outputs"]["fake class b"], o["targets"]["class b"])), '{} fake loss'.format(self.recon_loss): (Loss(recon_loss.cuda(), lambda o: (o["outputs"]["fake embed a"], o["targets"]["embed a"])) + Loss(recon_loss.cuda(), lambda o: (o["outputs"]["fake embed b"], o["targets"]["embed b"]))) / 2, } labels_list = train_loader.dataset.labels_list mask = labels_list_to_1hot(labels_list, labels_list).astype(np.bool) evaluation_accuracies = { 'real class acc': (MultiLabelSoftMarginIOUaccuracy(lambda o: (o["outputs"][ "real class a"], o["targets"]["class a"])) + MultiLabelSoftMarginIOUaccuracy(lambda o: (o["outputs"][ "real class b"], o["targets"]["class b"]))) / 2, 'fake class acc': (MultiLabelSoftMarginIOUaccuracy(lambda o: (o["outputs"][ "fake class a"], o["targets"]["class a"])) + MultiLabelSoftMarginIOUaccuracy(lambda o: (o["outputs"][ "fake class b"], o["targets"]["class b"]))) / 2, 'S class acc': (MultiLabelSoftMarginIOUaccuracy(lambda o: (o["outputs"][ "a_S_b class"], o["targets"]["a_S_b class"])) + MultiLabelSoftMarginIOUaccuracy(lambda o: (o["outputs"][ "b_S_a class"], o["targets"]["b_S_a class"]))) / 2, 'I class acc': (MultiLabelSoftMarginIOUaccuracy(lambda o: (o["outputs"][ "a_I_b class"], o["targets"]["a_I_b class"])) + MultiLabelSoftMarginIOUaccuracy(lambda o: (o["outputs"][ "b_I_a class"], o["targets"]["a_I_b class"]))) / 2, 'U class acc': (MultiLabelSoftMarginIOUaccuracy(lambda o: (o["outputs"][ "a_U_b class"], o["targets"]["a_U_b class"])) + MultiLabelSoftMarginIOUaccuracy(lambda o: (o["outputs"][ "b_U_a class"], o["targets"]["a_U_b class"]))) / 2, 'MSE fake acc': (EWMeanSquaredError(lambda o: (o["outputs"]["fake embed a"], o[ "targets"]["embed a"])) + EWMeanSquaredError(lambda o: (o[ "outputs"]["fake embed b"], o["targets"]["embed b"]))) / 2, 'real mAP': mAP(mask=mask, output_transform=lambda o: (o["outputs"]["real class a"], o["targets"]["class a"])), 'fake mAP': mAP(mask=mask, output_transform=lambda o: (o["outputs"]["fake class a"], o["targets"]["class a"])), 'S mAP': mAP(mask=mask, output_transform=lambda o: (o["outputs"]["a_S_b class"], o["targets"]["a_S_b class"])), 'I mAP': mAP(mask=mask, output_transform=lambda o: (o["outputs"]["a_I_b class"], o["targets"]["a_I_b class"])), 'U mAP': mAP(mask=mask, output_transform=lambda o: (o["outputs"]["a_U_b class"], o["targets"]["a_U_b class"])), } # # Setup the training evaluator object and its logging. # train_evaluator = create_setops_evaluator( base_model, classifier, setops_model, metrics=evaluation_accuracies.copy(), device=self.device) mlflow_logger.attach(engine=train_evaluator, prefix="Train Eval ", plot_event=Events.EPOCH_COMPLETED, metric_names=list(evaluation_accuracies.keys())) ProgressBar(bar_format=None).attach(train_evaluator) # # Setup the evaluator object and its logging. # evaluator = create_setops_evaluator(base_model, classifier, setops_model, metrics={ **evaluation_losses, **evaluation_accuracies }, device=self.device) mlflow_logger.attach(engine=evaluator, prefix="Eval ", plot_event=Events.EPOCH_COMPLETED, metric_names=list({ **evaluation_losses, **evaluation_accuracies }.keys())) ProgressBar(bar_format=None).attach(evaluator) # # Checkpoint of the model # self.setup_checkpoint(base_model, classifier, setops_model, evaluator) logging.info("Setup schedulers.") # # Update learning rate manually using the Visdom interface. # one_cycle_size = len(train_loader) * self.warmup_epochs * 2 scheduler_1 = LinearCyclicalScheduler(optimizer, "lr", start_value=self.lr1, end_value=self.lr2, cycle_size=one_cycle_size) scheduler_2 = ReduceLROnPlateau(optimizer, factor=0.5, patience=4 * len(train_loader), cooldown=len(train_loader), output_transform=lambda x: x["main"]) lr_scheduler = ConcatScheduler(schedulers=[scheduler_1, scheduler_2], durations=[one_cycle_size // 2], save_history=True) trainer.add_event_handler(Events.ITERATION_COMPLETED, lr_scheduler) # # Evaluation # @trainer.on(Events.EPOCH_COMPLETED) def epoch_completed(engine): # # Re-randomize the indices of the training dataset. # train_loader.dataset.calc_indices() # # Run the evaluator on a subset of the training dataset. # logging.info("Evaluation on a subset of the training data.") train_evaluator.run(train_subset_loader) # # Run the evaluator on the validation set. # logging.info("Evaluation on the eval data.") evaluator.run(val_loader) return trainer, train_loader def setup_checkpoint(self, base_model, classifier, setops_model, evaluator): """Save checkpoints of the models.""" checkpoint_handler_acc = ModelCheckpoint( self.results_path, CKPT_PREFIX, score_function=lambda eng: round( (eng.state.metrics["fake class acc"] + eng.state.metrics[ "S class acc"] + eng.state.metrics["I class acc"] + eng. state.metrics["U class acc"]) / 4, 3), score_name="val_acc", n_saved=2, require_empty=False) checkpoint_handler_last = ModelCheckpoint(self.results_path, CKPT_PREFIX, save_interval=2, n_saved=2, require_empty=False) evaluator.add_event_handler(event_name=Events.EPOCH_COMPLETED, handler=checkpoint_handler_acc, to_save={ 'base_model': base_model.state_dict(), 'classifier': classifier.state_dict(), 'setops_model': setops_model.state_dict(), }) evaluator.add_event_handler(event_name=Events.EPOCH_COMPLETED, handler=checkpoint_handler_last, to_save={ 'base_model': base_model.state_dict(), 'classifier': classifier.state_dict(), 'setops_model': setops_model.state_dict(), }) def setup_model(self): """Create or resume the models.""" logging.info("Setup the models.") logging.info("{} model".format(self.base_network_name)) if self.base_network_name.lower().startswith("resnet"): base_model, classifier = getattr( setops_models, self.base_network_name)(num_classes=80, avgpool_kernel=self.avgpool_kernel) else: base_model = getattr(setops_models, self.base_network_name)() classifier = getattr(setops_models, self.classifier_name)(num_classes=80) if self.init_inception: logging.info( "Initialize inception model using Amit's networks.") checkpoint = torch.load(self.resume_path) base_model = Inception3(aux_logits=False, transform_input=True) base_model.load_state_dict({ k: v for k, v in checkpoint["state_dict"].items() if k in base_model.state_dict() }) classifier.load_state_dict({ k: v for k, v in checkpoint["state_dict"].items() if k in classifier.state_dict() }) setops_model_cls = getattr(setops_models, self.sets_network_name) setops_model = setops_model_cls( input_dim=2048, S_latent_dim=self.ops_latent_dim, S_layers_num=self.ops_layer_num, I_latent_dim=self.ops_latent_dim, I_layers_num=self.ops_layer_num, U_latent_dim=self.ops_latent_dim, U_layers_num=self.ops_layer_num, block_cls_name=self.sets_block_name, basic_block_cls_name=self.sets_basic_block_name, dropout_ratio=self.setops_dropout, ) if self.resume_path: logging.info("Resuming the models.") models_path = Path(self.resume_path) if self.base_network_name.lower().startswith("resnet"): base_model.load_state_dict( torch.load( sorted( models_path.glob( "networks_base_model_{}*.pth".format( self.resume_epoch)))[-1])) classifier.load_state_dict( torch.load( sorted( models_path.glob( "networks_classifier_{}*.pth".format( self.resume_epoch)))[-1])) setops_models_paths = sorted( models_path.glob("networks_setops_model_{}*.pth".format( self.resume_epoch))) if len(setops_models_paths) > 0: setops_model.load_state_dict( torch.load(setops_models_paths[-1]).state_dict()) return base_model, classifier, setops_model def setup_datasets(self): """Load the training datasets.""" train_transform = transforms.Compose([ transforms.Resize(self.crop_size), transforms.RandomRotation(degrees=self.random_angle, resample=Image.BILINEAR), transforms.RandomResizedCrop(size=self.crop_size, scale=(1 - self.random_scale, 1 + self.random_scale), ratio=(1, 1)), transforms.RandomHorizontalFlip(), transforms.ToTensor(), transforms.Normalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225]) ]) val_transform = transforms.Compose([ transforms.Resize(self.crop_size), transforms.CenterCrop(self.crop_size), transforms.ToTensor(), transforms.Normalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225]) ]) train_dataset = CocoDatasetPairs( root_dir=self.coco_path, set_name='train2014', transform=train_transform, dataset_size_ratio=self.dataset_size_ratio) train_subset_dataset = Subset( train_dataset, range(0, len(train_dataset), 5 * self.dataset_size_ratio)) val_dataset = CocoDatasetPairs( root_dir=self.coco_path, set_name='val2014', transform=val_transform, ) train_loader = DataLoader(train_dataset, batch_size=self.batch_size, shuffle=True, num_workers=self.num_workers) train_subset_loader = DataLoader(train_subset_dataset, batch_size=self.batch_size, shuffle=False, num_workers=self.num_workers) val_loader = DataLoader(val_dataset, batch_size=self.batch_size, shuffle=False, num_workers=self.num_workers) return train_loader, train_subset_loader, val_loader
class ClosedRoom(MultiAgentSimulation): r"""Simulation for visualizing collision avoidance.""" size_leaders = Int( default_value=0, min=0, help='Amount of active agents') size_herding = Int( default_value=150, min=0, help='Amount of herding agents') agent_type = Enum( default_value=Circular, values=(Circular, ThreeCircle)) body_type = Enum( default_value='adult', values=('adult',)) width = Float( default_value=20.0, min=0) height = Float( default_value=20.0, min=0) def attributes(self, is_leader): def wrapper(): orientation = np.random.uniform(-np.pi, np.pi) d = dict( is_leader=is_leader, is_follower=not is_leader, body_type=self.body_type, orientation=orientation, velocity=1.0 * unit_vector(orientation), angular_velocity=0.0, target_direction=unit_vector(orientation), target_orientation=orientation) return d return wrapper @default('logic') def _default_logic(self): return Reset(self) << ( Integrator(self) << ( Fluctuation(self), Adjusting(self) << ( LeaderFollowerWithHerding(self), Orientation(self),), AgentAgentInteractions(self), AgentObstacleInteractions(self))) @default('field') def _default_field(self): return fields.ClosedRoom(width=self.width, height=self.height) @default('agents') def _default_agents(self): agents = Agents(agent_type=self.agent_type) group_leader = AgentGroup( agent_type=self.agent_type, size=self.size_leaders, attributes=self.attributes(is_leader=True)) agents.add_non_overlapping_group( group_leader, position_gen=self.field.sample_spawn(0)) group_herding = AgentGroup( agent_type=self.agent_type, size=self.size_herding, attributes=self.attributes(is_leader=False)) agents.add_non_overlapping_group( group_herding, position_gen=self.field.sample_spawn(0)) return agents
class Figure(DOMWidget): """Main canvas for drawing a chart. The Figure object holds the list of Marks and Axes. It also holds an optional Interaction object that is responsible for figure-level mouse interactions, the "interaction layer". Besides, the Figure object has two reference scales, for positioning items in an absolute fashion in the figure canvas. Attributes ---------- title: string (default: '') title of the figure axes: List of Axes (default: []) list containing the instances of the axes for the figure marks: List of Marks (default: []) list containing the marks which are to be appended to the figure interaction: Interaction or None (default: ) optional interaction layer for the figure scale_x: Scale Scale representing the x values of the figure scale_y: Scale Scale representing the y values of the figure padding_x: Float (default: 0.0) Padding to be applied in the horizontal direction of the figure around the data points, proportion of the horizontal length padding_y: Float (default: 0.025) Padding to be applied in the vertical direction of the figure around the data points, proportion of the vertical length legend_location: {'top-right', 'top', 'top-left', 'left', 'bottom-left', 'bottom', 'bottom-right', 'right'} location of the legend relative to the center of the figure fig_color: Color (default: None) background color of the figure animation_duration: nonnegative int (default: 0) Duration of transition on change of data attributes, in milliseconds. Layout Attributes min_width: CFloat (default: 800.0) minimum width of the figure including the figure margins min_height: CFloat (default: 600.0) minimum height of the figure including the figure margins preserve_aspect: bool (default: False) Determines whether the aspect ratio for the figure specified by min_width and min_height is preserved during resizing. This does not guarantee that the data coordinates will have any specific aspect ratio. fig_margin: dict (default: {top=60, bottom=60, left=60, right=60}) Dictionary containing the top, bottom, left and right margins. The user is responsible for making sure that the width and height are greater than the sum of the margins. """ title = Unicode(sync=True, display_name='Title') axes = List(Instance(Axis), sync=True, **widget_serialization) marks = List(Instance(Mark), sync=True, **widget_serialization) interaction = Instance(Interaction, allow_none=True, sync=True, **widget_serialization) scale_x = Instance(Scale, sync=True, **widget_serialization) scale_y = Instance(Scale, sync=True, **widget_serialization) fig_color = Color(None, allow_none=True, sync=True) min_width = CFloat(800.0, sync=True) min_height = CFloat(500.0, sync=True) preserve_aspect = Bool(False, sync=True, display_name='Preserve aspect ratio') fig_margin = Dict(dict(top=60, bottom=60, left=60, right=60), sync=True) padding_x = Float(default_value=0.0, min=0.0, max=1.0, sync=True) padding_y = Float(default_value=0.025, min=0.0, max=1.0, sync=True) legend_location = Enum([ 'top-right', 'top', 'top-left', 'left', 'bottom-left', 'bottom', 'bottom-right', 'right' ], default_value='top-right', sync=True, display_name='Legend position') animation_duration = Int(0, sync=True, display_name='Animation duration') def save(self): self.send({'type': 'save'}) def _scale_x_default(self): return LinearScale(min=0, max=1) def _scale_y_default(self): return LinearScale(min=0, max=1) _view_name = Unicode('Figure', sync=True) _view_module = Unicode('nbextensions/bqplot/Figure', sync=True) _model_name = Unicode('FigureModel', sync=True) _model_module = Unicode('nbextensions/bqplot/FigureModel', sync=True)
class FourExitsRandomPlacing(MultiAgentSimulation): size_leaders = Int( default_value=4, min=0, help='Amount of active agents') size_herding = Int( default_value=100, min=0, help='Amount of herding agents') agent_type = Enum( default_value=Circular, values=(Circular, ThreeCircle)) body_type = Enum( default_value='adult', values=('adult',)) exit_width = Float( default_value=1.25, min=0, max=10) def attributes(self, has_target: bool=True, is_follower: bool=False): def wrapper(): rand_target = np.random.randint(0, len(self.field.targets)) target = rand_target if has_target else NO_TARGET orientation = np.random.uniform(-np.pi, np.pi) d = dict( target=target, is_leader=not is_follower, is_follower=is_follower, body_type=self.body_type, orientation=orientation, velocity=np.zeros(2), angular_velocity=0.0, target_direction=np.zeros(2), target_orientation=orientation, familiar_exit=np.random.randint(0, len(self.field.targets))) return d return wrapper @default('logic') def _default_logic(self): return Reset(self) << \ InsideDomain(self) << ( Integrator(self) << ( Fluctuation(self), Adjusting(self) << ( Navigation(self) << ExitDetection(self) << LeaderFollower(self), Orientation(self)), AgentAgentInteractions(self), AgentObstacleInteractions(self))) @default('field') def _default_field(self): return fields.FourExitsField(exit_width=self.exit_width) @default('agents') def _default_agents(self): agents = Agents(agent_type=self.agent_type) group_active = AgentGroup( agent_type=self.agent_type, size=self.size_leaders, attributes=self.attributes(has_target=True, is_follower=False)) group_herding = AgentGroup( agent_type=self.agent_type, size=self.size_herding, attributes=self.attributes(has_target=False, is_follower=True)) for group in (group_active, group_herding): agents.add_non_overlapping_group( group, position_gen=self.field.sample_spawn(0), obstacles=geom_to_linear_obstacles(self.field.obstacles)) return agents
class NotebookClient(LoggingConfigurable): """ Encompasses a Client for executing cells in a notebook """ timeout = Integer( None, allow_none=True, help=dedent(""" The time to wait (in seconds) for output from executions. If a cell execution takes longer, a TimeoutError is raised. `None` or `-1` will disable the timeout. If `timeout_func` is set, it overrides `timeout`. """), ).tag(config=True) timeout_func = Any( default_value=None, allow_none=True, help=dedent(""" A callable which, when given the cell source as input, returns the time to wait (in seconds) for output from cell executions. If a cell execution takes longer, a TimeoutError is raised. Returning `None` or `-1` will disable the timeout for the cell. Not setting `timeout_func` will cause the preprocessor to default to using the `timeout` trait for all cells. The `timeout_func` trait overrides `timeout` if it is not `None`. """), ).tag(config=True) interrupt_on_timeout = Bool( False, help=dedent(""" If execution of a cell times out, interrupt the kernel and continue executing other cells rather than throwing an error and stopping. """), ).tag(config=True) startup_timeout = Integer( 60, help=dedent(""" The time to wait (in seconds) for the kernel to start. If kernel startup takes longer, a RuntimeError is raised. """), ).tag(config=True) allow_errors = Bool( False, help=dedent(""" If `False` (default), when a cell raises an error the execution is stopped and a `CellExecutionError` is raised. If `True`, execution errors are ignored and the execution is continued until the end of the notebook. Output from exceptions is included in the cell output in both cases. """), ).tag(config=True) nest_asyncio = Bool( False, help=dedent(""" If False (default), then blocking functions such as `execute` assume that no event loop is already running. These functions run their async counterparts (e.g. `async_execute`) in an event loop with `asyncio.run_until_complete`, which will fail if an event loop is already running. This can be the case if nbclient is used e.g. in a Jupyter Notebook. In that case, `nest_asyncio` should be set to True. """), ).tag(config=True) force_raise_errors = Bool( False, help=dedent(""" If False (default), errors from executing the notebook can be allowed with a `raises-exception` tag on a single cell, or the `allow_errors` configurable option for all cells. An allowed error will be recorded in notebook output, and execution will continue. If an error occurs when it is not explicitly allowed, a `CellExecutionError` will be raised. If True, `CellExecutionError` will be raised for any error that occurs while executing the notebook. This overrides both the `allow_errors` option and the `raises-exception` cell tag. """), ).tag(config=True) extra_arguments = List(Unicode()) kernel_name = Unicode( '', help=dedent(""" Name of kernel to use to execute the cells. If not set, use the kernel_spec embedded in the notebook. """), ).tag(config=True) raise_on_iopub_timeout = Bool( False, help=dedent(""" If `False` (default), then the kernel will continue waiting for iopub messages until it receives a kernel idle message, or until a timeout occurs, at which point the currently executing cell will be skipped. If `True`, then an error will be raised after the first timeout. This option generally does not need to be used, but may be useful in contexts where there is the possibility of executing notebooks with memory-consuming infinite loops. """), ).tag(config=True) store_widget_state = Bool( True, help=dedent(""" If `True` (default), then the state of the Jupyter widgets created at the kernel will be stored in the metadata of the notebook. """), ).tag(config=True) record_timing = Bool( True, help=dedent(""" If `True` (default), then the execution timings of each cell will be stored in the metadata of the notebook. """), ).tag(config=True) iopub_timeout = Integer( 4, allow_none=False, help=dedent(""" The time to wait (in seconds) for IOPub output. This generally doesn't need to be set, but on some slow networks (such as CI systems) the default timeout might not be long enough to get all messages. """), ).tag(config=True) shell_timeout_interval = Integer( 5, allow_none=False, help=dedent(""" The time to wait (in seconds) for Shell output before retrying. This generally doesn't need to be set, but if one needs to check for dead kernels at a faster rate this can help. """), ).tag(config=True) shutdown_kernel = Enum( ['graceful', 'immediate'], default_value='graceful', help=dedent(""" If `graceful` (default), then the kernel is given time to clean up after executing all cells, e.g., to execute its `atexit` hooks. If `immediate`, then the kernel is signaled to immediately terminate. """), ).tag(config=True) ipython_hist_file = Unicode( default_value=':memory:', help= """Path to file to use for SQLite history database for an IPython kernel. The specific value `:memory:` (including the colon at both end but not the back ticks), avoids creating a history file. Otherwise, IPython will create a history file for each kernel. When running kernels simultaneously (e.g. via multiprocessing) saving history a single SQLite file can result in database errors, so using `:memory:` is recommended in non-interactive contexts. """, ).tag(config=True) kernel_manager_class = Type(config=True, help='The kernel manager class to use.') @default('kernel_manager_class') def _kernel_manager_class_default(self): """Use a dynamic default to avoid importing jupyter_client at startup""" from jupyter_client import AsyncKernelManager return AsyncKernelManager _display_id_map = Dict(help=dedent(""" mapping of locations of outputs with a given display_id tracks cell index and output index within cell.outputs for each appearance of the display_id { 'display_id': { cell_idx: [output_idx,] } } """)) display_data_priority = List( [ 'text/html', 'application/pdf', 'text/latex', 'image/svg+xml', 'image/png', 'image/jpeg', 'text/markdown', 'text/plain', ], help=""" An ordered list of preferred output type, the first encountered will usually be used when converting discarding the others. """, ).tag(config=True) resources = Dict(help=dedent(""" Additional resources used in the conversion process. For example, passing ``{'metadata': {'path': run_path}}`` sets the execution path to ``run_path``. """)) def __init__(self, nb, km=None, **kw): """Initializes the execution manager. Parameters ---------- nb : NotebookNode Notebook being executed. km : KernerlManager (optional) Optional kernel manager. If none is provided, a kernel manager will be created. """ super().__init__(**kw) self.nb = nb self.km = km self.reset_execution_trackers() def reset_execution_trackers(self): """Resets any per-execution trackers. """ self.code_cells_executed = 0 self._display_id_map = {} self.widget_state = {} self.widget_buffers = {} def start_kernel_manager(self): """Creates a new kernel manager. Returns ------- kc : KernelClient Kernel client as created by the kernel manager `km`. """ if not self.kernel_name: kn = self.nb.metadata.get('kernelspec', {}).get('name') if kn is not None: self.kernel_name = kn if not self.kernel_name: self.km = self.kernel_manager_class(config=self.config) else: self.km = self.kernel_manager_class(kernel_name=self.kernel_name, config=self.config) self.km.client_class = 'jupyter_client.asynchronous.AsyncKernelClient' return self.km async def _async_cleanup_kernel(self): try: # Send a polite shutdown request await ensure_async(self.kc.shutdown()) try: # Queue the manager to kill the process, sometimes the built-in and above # shutdowns have not been successful or called yet, so give a direct kill # call here and recover gracefully if it's already dead. await ensure_async(self.km.shutdown_kernel(now=True)) except RuntimeError as e: # The error isn't specialized, so we have to check the message if 'No kernel is running!' not in str(e): raise finally: # Remove any state left over even if we failed to stop the kernel await ensure_async(self.km.cleanup()) await ensure_async(self.kc.stop_channels()) self.kc = None _cleanup_kernel = run_sync(_async_cleanup_kernel) async def async_start_new_kernel_client(self, **kwargs): """Creates a new kernel client. Parameters ---------- kwargs : Any options for `self.kernel_manager_class.start_kernel()`. Because that defaults to AsyncKernelManager, this will likely include options accepted by `AsyncKernelManager.start_kernel()``, which includes `cwd`. Returns ------- kc : KernelClient Kernel client as created by the kernel manager `km`. """ resource_path = self.resources.get('metadata', {}).get('path') or None if resource_path and 'cwd' not in kwargs: kwargs["cwd"] = resource_path if self.km.ipykernel and self.ipython_hist_file: self.extra_arguments += [ '--HistoryManager.hist_file={}'.format(self.ipython_hist_file) ] await ensure_async( self.km.start_kernel(extra_arguments=self.extra_arguments, **kwargs)) self.kc = self.km.client() await ensure_async(self.kc.start_channels()) try: await ensure_async( self.kc.wait_for_ready(timeout=self.startup_timeout)) except RuntimeError: await self._async_cleanup_kernel() raise self.kc.allow_stdin = False return self.kc start_new_kernel_client = run_sync(async_start_new_kernel_client) @contextmanager def setup_kernel(self, **kwargs): """ Context manager for setting up the kernel to execute a notebook. The assigns the Kernel Manager (`self.km`) if missing and Kernel Client(`self.kc`). When control returns from the yield it stops the client's zmq channels, and shuts down the kernel. """ # Can't use run_until_complete on an asynccontextmanager function :( if self.km is None: self.start_kernel_manager() if not self.km.has_kernel: self.start_new_kernel_client(**kwargs) try: yield finally: self._cleanup_kernel() @asynccontextmanager async def async_setup_kernel(self, **kwargs): """ Context manager for setting up the kernel to execute a notebook. This assigns the Kernel Manager (`self.km`) if missing and Kernel Client(`self.kc`). When control returns from the yield it stops the client's zmq channels, and shuts down the kernel. """ reset_kc = kwargs.pop('reset_kc', False) if self.km is None: self.start_kernel_manager() if not self.km.has_kernel: await self.async_start_new_kernel_client(**kwargs) try: yield finally: if reset_kc: await self._async_cleanup_kernel() async def async_execute(self, **kwargs): """ Executes each code cell. Parameters ---------- kwargs : Any option for `self.kernel_manager_class.start_kernel()`. Because that defaults to AsyncKernelManager, this will likely include options accepted by `AsyncKernelManager.start_kernel()``, which includes `cwd`. If present, `reset_kc` is passed to `self.async_setup_kernel`: if True, the kernel client will be reset and a new one will be created and cleaned up after execution (default: False). Returns ------- nb : NotebookNode The executed notebook. """ reset_kc = kwargs.get('reset_kc', False) if reset_kc: await self._async_cleanup_kernel() self.reset_execution_trackers() async with self.async_setup_kernel(**kwargs): self.log.info("Executing notebook with kernel: %s" % self.kernel_name) for index, cell in enumerate(self.nb.cells): # Ignore `'execution_count' in content` as it's always 1 # when store_history is False await self.async_execute_cell( cell, index, execution_count=self.code_cells_executed + 1) msg_id = await ensure_async(self.kc.kernel_info()) info_msg = await self.async_wait_for_reply(msg_id) self.nb.metadata['language_info'] = info_msg['content'][ 'language_info'] self.set_widgets_metadata() return self.nb execute = run_sync(async_execute) def set_widgets_metadata(self): if self.widget_state: self.nb.metadata.widgets = { 'application/vnd.jupyter.widget-state+json': { 'state': { model_id: self._serialize_widget_state(state) for model_id, state in self.widget_state.items() if '_model_name' in state }, 'version_major': 2, 'version_minor': 0, } } for key, widget in self.nb.metadata.widgets[ 'application/vnd.jupyter.widget-state+json'][ 'state'].items(): buffers = self.widget_buffers.get(key) if buffers: widget['buffers'] = buffers def _update_display_id(self, display_id, msg): """Update outputs with a given display_id""" if display_id not in self._display_id_map: self.log.debug("display id %r not in %s", display_id, self._display_id_map) return if msg['header']['msg_type'] == 'update_display_data': msg['header']['msg_type'] = 'display_data' try: out = output_from_msg(msg) except ValueError: self.log.error("unhandled iopub msg: " + msg['msg_type']) return for cell_idx, output_indices in self._display_id_map[display_id].items( ): cell = self.nb['cells'][cell_idx] outputs = cell['outputs'] for output_idx in output_indices: outputs[output_idx]['data'] = out['data'] outputs[output_idx]['metadata'] = out['metadata'] async def _async_poll_for_reply(self, msg_id, cell, timeout, task_poll_output_msg): if timeout is not None: deadline = monotonic() + timeout while True: try: msg = await ensure_async( self.kc.shell_channel.get_msg(timeout=timeout)) if msg['parent_header'].get('msg_id') == msg_id: if self.record_timing: cell['metadata']['execution'][ 'shell.execute_reply'] = timestamp() try: await asyncio.wait_for(task_poll_output_msg, self.iopub_timeout) except (asyncio.TimeoutError, Empty): if self.raise_on_iopub_timeout: raise CellTimeoutError.error_from_timeout_and_cell( "Timeout waiting for IOPub output", self.iopub_timeout, cell) else: self.log.warning( "Timeout waiting for IOPub output") return msg else: if timeout is not None: timeout = max(0, deadline - monotonic()) except Empty: # received no message, check if kernel is still alive await self._async_check_alive() await self._async_handle_timeout(timeout, cell) async def _async_poll_output_msg(self, parent_msg_id, cell, cell_index): while True: msg = await ensure_async( self.kc.iopub_channel.get_msg(timeout=None)) if msg['parent_header'].get('msg_id') == parent_msg_id: try: # Will raise CellExecutionComplete when completed self.process_message(msg, cell, cell_index) except CellExecutionComplete: return def _get_timeout(self, cell): if self.timeout_func is not None and cell is not None: timeout = self.timeout_func(cell) else: timeout = self.timeout if not timeout or timeout < 0: timeout = None return timeout async def _async_handle_timeout(self, timeout, cell=None): self.log.error("Timeout waiting for execute reply (%is)." % timeout) if self.interrupt_on_timeout: self.log.error("Interrupting kernel") await ensure_async(self.km.interrupt_kernel()) else: raise CellTimeoutError.error_from_timeout_and_cell( "Cell execution timed out", timeout, cell) async def _async_check_alive(self): if not await ensure_async(self.kc.is_alive()): self.log.error("Kernel died while waiting for execute reply.") raise DeadKernelError("Kernel died") async def async_wait_for_reply(self, msg_id, cell=None): # wait for finish, with timeout timeout = self._get_timeout(cell) cummulative_time = 0 while True: try: msg = await ensure_async( self.kc.shell_channel.get_msg( timeout=self.shell_timeout_interval)) except Empty: await self._async_check_alive() cummulative_time += self.shell_timeout_interval if timeout and cummulative_time > timeout: await self._async_async_handle_timeout(timeout, cell) break else: if msg['parent_header'].get('msg_id') == msg_id: return msg wait_for_reply = run_sync(async_wait_for_reply) # Backwards compatability naming for papermill _wait_for_reply = wait_for_reply def _timeout_with_deadline(self, timeout, deadline): if deadline is not None and deadline - monotonic() < timeout: timeout = deadline - monotonic() if timeout < 0: timeout = 0 return timeout def _passed_deadline(self, deadline): if deadline is not None and deadline - monotonic() <= 0: return True return False def _check_raise_for_error(self, cell, exec_reply): cell_allows_errors = self.allow_errors or "raises-exception" in cell.metadata.get( "tags", []) if self.force_raise_errors or not cell_allows_errors: if (exec_reply is not None ) and exec_reply['content']['status'] == 'error': raise CellExecutionError.from_cell_and_msg( cell, exec_reply['content']) async def async_execute_cell(self, cell, cell_index, execution_count=None, store_history=True): """ Executes a single code cell. To execute all cells see :meth:`execute`. Parameters ---------- cell : nbformat.NotebookNode The cell which is currently being processed. cell_index : int The position of the cell within the notebook object. execution_count : int The execution count to be assigned to the cell (default: Use kernel response) store_history : bool Determines if history should be stored in the kernel (default: False). Specific to ipython kernels, which can store command histories. Returns ------- output : dict The execution output payload (or None for no output). Raises ------ CellExecutionError If execution failed and should raise an exception, this will be raised with defaults about the failure. Returns ------- cell : NotebookNode The cell which was just processed. """ if cell.cell_type != 'code' or not cell.source.strip(): self.log.debug("Skipping non-executing cell %s", cell_index) return cell if self.record_timing and 'execution' not in cell['metadata']: cell['metadata']['execution'] = {} self.log.debug("Executing cell:\n%s", cell.source) parent_msg_id = await ensure_async( self.kc.execute(cell.source, store_history=store_history, stop_on_error=not self.allow_errors)) # We launched a code cell to execute self.code_cells_executed += 1 exec_timeout = self._get_timeout(cell) cell.outputs = [] self.clear_before_next_output = False task_poll_output_msg = asyncio.ensure_future( self._async_poll_output_msg(parent_msg_id, cell, cell_index)) try: exec_reply = await self._async_poll_for_reply( parent_msg_id, cell, exec_timeout, task_poll_output_msg) except Exception as e: # Best effort to cancel request if it hasn't been resolved try: # Check if the task_poll_output is doing the raising for us if not isinstance(e, CellControlSignal): task_poll_output_msg.cancel() finally: raise if execution_count: cell['execution_count'] = execution_count self._check_raise_for_error(cell, exec_reply) self.nb['cells'][cell_index] = cell return cell execute_cell = run_sync(async_execute_cell) def process_message(self, msg, cell, cell_index): """ Processes a kernel message, updates cell state, and returns the resulting output object that was appended to cell.outputs. The input argument `cell` is modified in-place. Parameters ---------- msg : dict The kernel message being processed. cell : nbformat.NotebookNode The cell which is currently being processed. cell_index : int The position of the cell within the notebook object. Returns ------- output : dict The execution output payload (or None for no output). Raises ------ CellExecutionComplete Once a message arrives which indicates computation completeness. """ msg_type = msg['msg_type'] self.log.debug("msg_type: %s", msg_type) content = msg['content'] self.log.debug("content: %s", content) display_id = content.get('transient', {}).get('display_id', None) if display_id and msg_type in { 'execute_result', 'display_data', 'update_display_data' }: self._update_display_id(display_id, msg) # set the prompt number for the input and the output if 'execution_count' in content: cell['execution_count'] = content['execution_count'] if self.record_timing: if msg_type == 'status': if content['execution_state'] == 'idle': cell['metadata']['execution'][ 'iopub.status.idle'] = timestamp() elif content['execution_state'] == 'busy': cell['metadata']['execution'][ 'iopub.status.busy'] = timestamp() elif msg_type == 'execute_input': cell['metadata']['execution'][ 'iopub.execute_input'] = timestamp() if msg_type == 'status': if content['execution_state'] == 'idle': raise CellExecutionComplete() elif msg_type == 'clear_output': self.clear_output(cell.outputs, msg, cell_index) elif msg_type.startswith('comm'): self.handle_comm_msg(cell.outputs, msg, cell_index) # Check for remaining messages we don't process elif msg_type not in ['execute_input', 'update_display_data']: # Assign output as our processed "result" return self.output(cell.outputs, msg, display_id, cell_index) def output(self, outs, msg, display_id, cell_index): msg_type = msg['msg_type'] try: out = output_from_msg(msg) except ValueError: self.log.error("unhandled iopub msg: " + msg_type) return if self.clear_before_next_output: self.log.debug('Executing delayed clear_output') outs[:] = [] self.clear_display_id_mapping(cell_index) self.clear_before_next_output = False if display_id: # record output index in: # _display_id_map[display_id][cell_idx] cell_map = self._display_id_map.setdefault(display_id, {}) output_idx_list = cell_map.setdefault(cell_index, []) output_idx_list.append(len(outs)) outs.append(out) return out def clear_output(self, outs, msg, cell_index): content = msg['content'] if content.get('wait'): self.log.debug('Wait to clear output') self.clear_before_next_output = True else: self.log.debug('Immediate clear output') outs[:] = [] self.clear_display_id_mapping(cell_index) def clear_display_id_mapping(self, cell_index): for display_id, cell_map in self._display_id_map.items(): if cell_index in cell_map: cell_map[cell_index] = [] def handle_comm_msg(self, outs, msg, cell_index): content = msg['content'] data = content['data'] if self.store_widget_state and 'state' in data: # ignore custom msg'es self.widget_state.setdefault(content['comm_id'], {}).update(data['state']) if 'buffer_paths' in data and data['buffer_paths']: self.widget_buffers[ content['comm_id']] = self._get_buffer_data(msg) def _serialize_widget_state(self, state): """Serialize a widget state, following format in @jupyter-widgets/schema.""" return { 'model_name': state.get('_model_name'), 'model_module': state.get('_model_module'), 'model_module_version': state.get('_model_module_version'), 'state': state, } def _get_buffer_data(self, msg): encoded_buffers = [] paths = msg['content']['data']['buffer_paths'] buffers = msg['buffers'] for path, buffer in zip(paths, buffers): encoded_buffers.append({ 'data': base64.b64encode(buffer).decode('utf-8'), 'encoding': 'base64', 'path': path, }) return encoded_buffers
class Status(Reference): execution_state = Enum(('busy', 'idle', 'starting'), default_value='busy')