def test_bts_simulation_dt(self): code = """ def initialize(context): pass """ algo = TradingAlgorithm( script=code, sim_params=self.sim_params, env=self.env, metrics=metrics.load('none'), ) algo.metrics_tracker = algo._create_metrics_tracker() benchmark_source = algo._create_benchmark_source() algo.metrics_tracker.handle_start_of_simulation(benchmark_source) dt = pd.Timestamp("2016-08-04 9:13:14", tz='US/Eastern') algo_simulator = AlgorithmSimulator( algo, self.sim_params, self.data_portal, BeforeTradingStartsOnlyClock(dt), benchmark_source, NoRestrictions(), None ) # run through the algo's simulation list(algo_simulator.transform()) # since the clock only ever emitted a single before_trading_start # event, we can check that the simulation_dt was properly set self.assertEqual(dt, algo_simulator.simulation_dt)
def test_bts_simulation_dt(self): code = """ def initialize(context): pass """ algo = self.make_algo(script=code, metrics=metrics.load("none")) algo.metrics_tracker = algo._create_metrics_tracker() benchmark_source = algo._create_benchmark_source() algo.metrics_tracker.handle_start_of_simulation(benchmark_source) dt = pd.Timestamp("2016-08-04 9:13:14", tz="US/Eastern") algo_simulator = AlgorithmSimulator( algo, self.sim_params, self.data_portal, BeforeTradingStartsOnlyClock(dt), benchmark_source, NoRestrictions(), None, ) # run through the algo's simulation list(algo_simulator.transform()) # since the clock only ever emitted a single before_trading_start # event, we can check that the simulation_dt was properly set assert dt == algo_simulator.simulation_dt
def _run(handle_data, initialize, before_trading_start, analyze, algofile, algotext, defines, data_frequency, capital_base, data, bundle, bundle_timestamp, start, end, output, trading_calendar, print_algo, metrics_set, local_namespace, environ, bm_symbol): """Run a backtest for the given algorithm. This is shared between the cli and :func:`zipline.run_algo`. """ if algotext is not None: if local_namespace: ip = get_ipython() # noqa namespace = ip.user_ns else: namespace = {} for assign in defines: try: name, value = assign.split('=', 2) except ValueError: raise ValueError( 'invalid define %r, should be of the form name=value' % assign, ) try: # evaluate in the same namespace so names may refer to # eachother namespace[name] = eval(value, namespace) except Exception as e: raise ValueError( 'failed to execute definition for name %r: %s' % (name, e), ) elif defines: raise _RunAlgoError( 'cannot pass define without `algotext`', "cannot pass '-D' / '--define' without '-t' / '--algotext'", ) else: namespace = {} if algofile is not None: algotext = algofile.read() if print_algo: if PYGMENTS: highlight( algotext, PythonLexer(), TerminalFormatter(), outfile=sys.stdout, ) else: click.echo(algotext) if trading_calendar is None: trading_calendar = get_calendar('SZSH') if trading_calendar.session_distance(start, end) < 1: raise _RunAlgoError( 'There are no trading days between %s and %s' % ( start.date(), end.date(), ), ) if bundle is not None: bundle_data = bundles.load( bundle, environ, bundle_timestamp, ) prefix, connstr = re.split( r'sqlite:///', str(bundle_data.asset_finder.engine.url), maxsplit=1, ) if prefix: raise ValueError( "invalid url %r, must begin with 'sqlite:///'" % str(bundle_data.asset_finder.engine.url), ) env = TradingEnvironment( asset_db_path=connstr, trading_calendar=trading_calendar, # 构造使用字符串格式 exchange_tz=trading_calendar.tz.zone, bm_symbol=bm_symbol, environ=environ) first_trading_day = bundle_data.equity_minute_bar_reader.first_trading_day data = DataPortal( env.asset_finder, trading_calendar=trading_calendar, first_trading_day=first_trading_day, equity_minute_reader=bundle_data.equity_minute_bar_reader, equity_daily_reader=bundle_data.equity_daily_bar_reader, adjustment_reader=bundle_data.adjustment_reader, ) pipeline_loader = USEquityPricingLoader( bundle_data.equity_daily_bar_reader, bundle_data.adjustment_reader, ) def choose_loader(column): if column in USEquityPricing.columns: return pipeline_loader # # 简单处理 elif type(column) == BoundColumn: return global_loader raise ValueError("No PipelineLoader registered for column %s." % column) else: env = TradingEnvironment(environ=environ) choose_loader = None if isinstance(metrics_set, six.string_types): try: metrics_set = metrics.load(metrics_set) except ValueError as e: raise _RunAlgoError(str(e)) perf = TradingAlgorithm( namespace=namespace, env=env, get_pipeline_loader=choose_loader, trading_calendar=trading_calendar, sim_params=create_simulation_parameters( start=start, end=end, capital_base=capital_base, data_frequency=data_frequency, trading_calendar=trading_calendar, ), metrics_set=metrics_set, **{ 'initialize': initialize, 'handle_data': handle_data, 'before_trading_start': before_trading_start, 'analyze': analyze, } if algotext is None else { 'algo_filename': getattr(algofile, 'name', '<algorithm>'), 'script': algotext, }).run( data, overwrite_sim_params=False, ) if output == '-': click.echo(str(perf)) elif output != os.devnull: # make the zipline magic not write any data perf.to_pickle(output) return perf
def _run(handle_data, initialize, before_trading_start, analyze, algofile, algotext, defines, data_frequency, capital_base, bundle, bundle_timestamp, custom_data_portal, start, end, output, trading_calendar, print_algo, metrics_set, local_namespace, environ, blotter, benchmark_returns): """Run a backtest for the given algorithm. This is shared between the cli and :func:`zipline.run_algo`. """ if benchmark_returns is None: benchmark_returns, _ = load_market_data(environ=environ) if algotext is not None: if local_namespace: ip = get_ipython() # noqa namespace = ip.user_ns else: namespace = {} for assign in defines: try: name, value = assign.split('=', 2) except ValueError: raise ValueError( 'invalid define %r, should be of the form name=value' % assign, ) try: # evaluate in the same namespace so names may refer to # eachother namespace[name] = eval(value, namespace) except Exception as e: raise ValueError( 'failed to execute definition for name %r: %s' % (name, e), ) elif defines: raise _RunAlgoError( 'cannot pass define without `algotext`', "cannot pass '-D' / '--define' without '-t' / '--algotext'", ) else: namespace = {} if algofile is not None: algotext = algofile.read() if print_algo: if PYGMENTS: highlight( algotext, PythonLexer(), TerminalFormatter(), outfile=sys.stdout, ) else: click.echo(algotext) if trading_calendar is None: trading_calendar = get_calendar('XNYS') # date parameter validation if trading_calendar.session_distance(start, end) < 1: raise _RunAlgoError( 'There are no trading days between %s and %s' % ( start.date(), end.date(), ), ) bundle_data = bundles.load( bundle, environ, bundle_timestamp, ) # TODO: Fix this for the custom DataPortal case. first_trading_day = \ bundle_data.equity_minute_bar_reader.first_trading_day if custom_data_portal is None: data = DataPortal( bundle_data.asset_finder, trading_calendar=trading_calendar, first_trading_day=first_trading_day, equity_minute_reader=bundle_data.equity_minute_bar_reader, equity_daily_reader=bundle_data.equity_daily_bar_reader, adjustment_reader=bundle_data.adjustment_reader, ) else: data = custom_data_portal # TODO: Fix this for the custom DataPortal case. pipeline_loader = USEquityPricingLoader( bundle_data.equity_daily_bar_reader, bundle_data.adjustment_reader, ) def choose_loader(column): if column in USEquityPricing.columns: return pipeline_loader raise ValueError( "No PipelineLoader registered for column %s." % column ) if isinstance(metrics_set, six.string_types): try: metrics_set = metrics.load(metrics_set) except ValueError as e: raise _RunAlgoError(str(e)) if isinstance(blotter, six.string_types): try: blotter = load(Blotter, blotter) except ValueError as e: raise _RunAlgoError(str(e)) perf = TradingAlgorithm( namespace=namespace, data_portal=data, get_pipeline_loader=choose_loader, trading_calendar=trading_calendar, sim_params=SimulationParameters( start_session=start, end_session=end, trading_calendar=trading_calendar, capital_base=capital_base, data_frequency=data_frequency, ), metrics_set=metrics_set, blotter=blotter, benchmark_returns=benchmark_returns, **{ 'initialize': initialize, 'handle_data': handle_data, 'before_trading_start': before_trading_start, 'analyze': analyze, } if algotext is None else { 'algo_filename': getattr(algofile, 'name', '<algorithm>'), 'script': algotext, } ).run() if output == '-': click.echo(str(perf)) elif output != os.devnull: # make the zipline magic not write any data perf.to_pickle(output) return perf
def _run(handle_data, initialize, before_trading_start, analyze, algofile, algotext, defines, data_frequency, capital_base, bundle, bundle_timestamp, start, end, output, trading_calendar, print_algo, metrics_set, local_namespace, environ, blotter, benchmark_symbol, broker, state_filename): """Run a backtest for the given algorithm. This is shared between the cli and :func:`zipline.run_algo`. additions useful for live trading: broker - wrapper to connect to a real broker state_filename - saving the context of the algo to be able to restart """ log.info("Using bundle '%s'." % bundle) if trading_calendar is None: trading_calendar = get_calendar('XNYS') bundle_data = load_sharadar_bundle(bundle) now = pd.Timestamp.utcnow() if start is None: start = bundle_data.equity_daily_bar_reader.first_trading_day if not broker else now if not trading_calendar.is_session(start.date()): start = trading_calendar.next_open(start) if end is None: end = bundle_data.equity_daily_bar_reader.last_available_dt if not broker else start # date parameter validation if trading_calendar.session_distance(start, end) < 0: raise _RunAlgoError( 'There are no trading days between %s and %s' % ( start.date(), end.date(), ), ) if broker: log.info("Live Trading on %s." % start.date()) else: log.info("Backtest from %s to %s." % (start.date(), end.date())) if benchmark_symbol: benchmark = symbol(benchmark_symbol) benchmark_sid = benchmark.sid benchmark_returns = load_benchmark_data_bundle( bundle_data.equity_daily_bar_reader, benchmark) else: benchmark_sid = None benchmark_returns = pd.Series(index=pd.date_range(start, end, tz='utc'), data=0.0) # emission_rate is a string representing the smallest frequency at which metrics should be reported. # emission_rate will be either minute or daily. When emission_rate is daily, end_of_bar will not be called at all. emission_rate = 'daily' if algotext is not None: if local_namespace: # noinspection PyUnresolvedReferences ip = get_ipython() # noqa namespace = ip.user_ns else: namespace = {} for assign in defines: try: name, value = assign.split('=', 2) except ValueError: raise ValueError( 'invalid define %r, should be of the form name=value' % assign, ) try: # evaluate in the same namespace so names may refer to # eachother namespace[name] = eval(value, namespace) except Exception as e: raise ValueError( 'failed to execute definition for name %r: %s' % (name, e), ) elif defines: raise _RunAlgoError( 'cannot pass define without `algotext`', "cannot pass '-D' / '--define' without '-t' / '--algotext'", ) else: namespace = {} if algofile is not None: algotext = algofile.read() if print_algo: if PYGMENTS: highlight( algotext, PythonLexer(), TerminalFormatter(), outfile=sys.stdout, ) else: click.echo(algotext) first_trading_day = \ bundle_data.equity_daily_bar_reader.first_trading_day if isinstance(metrics_set, six.string_types): try: metrics_set = metrics.load(metrics_set) except ValueError as e: raise _RunAlgoError(str(e)) if isinstance(blotter, six.string_types): try: blotter = load(Blotter, blotter) except ValueError as e: raise _RunAlgoError(str(e)) # Special defaults for live trading if broker: data_frequency = 'minute' # No benchmark benchmark_sid = None benchmark_returns = pd.Series(index=pd.date_range(start, end, tz='utc'), data=0.0) broker.daily_bar_reader = bundle_data.equity_daily_bar_reader if start.date() < now.date(): backtest_start = start backtest_end = bundle_data.equity_daily_bar_reader.last_available_dt if not os.path.exists(state_filename): log.info("Backtest from %s to %s." % (backtest_start.date(), backtest_end.date())) backtest_data = DataPortal( bundle_data.asset_finder, trading_calendar=trading_calendar, first_trading_day=first_trading_day, equity_minute_reader=bundle_data.equity_minute_bar_reader, equity_daily_reader=bundle_data.equity_daily_bar_reader, adjustment_reader=bundle_data.adjustment_reader, ) backtest = create_algo_class( TradingAlgorithm, backtest_start, backtest_end, algofile, algotext, analyze, before_trading_start, benchmark_returns, benchmark_sid, blotter, bundle_data, capital_base, backtest_data, 'daily', emission_rate, handle_data, initialize, metrics_set, namespace, trading_calendar) ctx_blacklist = ['trading_client'] ctx_whitelist = ['perf_tracker'] ctx_excludes = ctx_blacklist + [ e for e in backtest.__dict__.keys() if e not in ctx_whitelist ] backtest.run() #TODO better logic for the checksumq checksum = getattr(algofile, 'name', '<algorithm>') store_context(state_filename, context=backtest, checksum=checksum, exclude_list=ctx_excludes) else: log.warn("State file already exists. Do not run the backtest.") # Set start and end to now for live trading start = pd.Timestamp.utcnow() if not trading_calendar.is_session(start.date()): start = trading_calendar.next_open(start) end = start # TODO inizia qui per creare un prerun dell'algo prima del live trading # usare store_context prima di passare da TradingAlgorithm a LiveTradingAlgorithm TradingAlgorithmClass = (partial( LiveTradingAlgorithm, broker=broker, state_filename=state_filename) if broker else TradingAlgorithm) DataPortalClass = (partial(DataPortalLive, broker) if broker else DataPortal) data = DataPortalClass( bundle_data.asset_finder, trading_calendar=trading_calendar, first_trading_day=first_trading_day, equity_minute_reader=bundle_data.equity_minute_bar_reader, equity_daily_reader=bundle_data.equity_daily_bar_reader, adjustment_reader=bundle_data.adjustment_reader, ) algo = create_algo_class(TradingAlgorithmClass, start, end, algofile, algotext, analyze, before_trading_start, benchmark_returns, benchmark_sid, blotter, bundle_data, capital_base, data, data_frequency, emission_rate, handle_data, initialize, metrics_set, namespace, trading_calendar) perf = algo.run() if output == '-': click.echo(str(perf)) elif output != os.devnull: # make the zipline magic not write any data perf.to_pickle(output) return perf
def _run(handle_data, initialize, before_trading_start, analyze, algofile, algotext, defines, data_frequency, capital_base, bundle, bundle_timestamp, start, end, output, trading_calendar, print_algo, metrics_set, local_namespace, environ, blotter, benchmark_returns): """Run a backtest for the given algorithm. This is shared between the cli and :func:`zipline.run_algo`. """ if benchmark_returns is None: benchmark_returns, _ = load_market_data(environ=environ) if algotext is not None: if local_namespace: ip = get_ipython() # noqa namespace = ip.user_ns else: namespace = {} for assign in defines: try: name, value = assign.split('=', 2) except ValueError: raise ValueError( 'invalid define %r, should be of the form name=value' % assign, ) try: # evaluate in the same namespace so names may refer to # eachother namespace[name] = eval(value, namespace) except Exception as e: raise ValueError( 'failed to execute definition for name %r: %s' % (name, e), ) elif defines: raise _RunAlgoError( 'cannot pass define without `algotext`', "cannot pass '-D' / '--define' without '-t' / '--algotext'", ) else: namespace = {} if algofile is not None: algotext = algofile.read() if print_algo: if PYGMENTS: highlight( algotext, PythonLexer(), TerminalFormatter(), outfile=sys.stdout, ) else: click.echo(algotext) if trading_calendar is None: trading_calendar = get_calendar('XSHG') # date parameter validation if trading_calendar.session_distance(start, end) < 1: raise _RunAlgoError( 'There are no trading days between %s and %s' % ( start.date(), end.date(), ), ) bundle_data = bundles.load( bundle, environ, bundle_timestamp, ) first_trading_day = \ bundle_data.equity_minute_bar_reader.first_trading_day data = DataPortal( bundle_data.asset_finder, trading_calendar=trading_calendar, first_trading_day=first_trading_day, equity_minute_reader=bundle_data.equity_minute_bar_reader, equity_daily_reader=bundle_data.equity_daily_bar_reader, adjustment_reader=bundle_data.adjustment_reader, ) pipeline_loader = CNEquityPricingLoader( bundle_data.equity_daily_bar_reader, bundle_data.adjustment_reader, ) def choose_loader(column): if column in CNEquityPricing.columns: return pipeline_loader # # 简单处理 elif type(column) == BoundColumn: # # 使用实例才能避免KeyError return global_loader raise ValueError( "No PipelineLoader registered for column %s." % column ) if isinstance(metrics_set, six.string_types): try: metrics_set = metrics.load(metrics_set) except ValueError as e: raise _RunAlgoError(str(e)) if isinstance(blotter, six.string_types): try: blotter = load(Blotter, blotter) except ValueError as e: raise _RunAlgoError(str(e)) perf = TradingAlgorithm( namespace=namespace, data_portal=data, get_pipeline_loader=choose_loader, trading_calendar=trading_calendar, sim_params=SimulationParameters( start_session=start, end_session=end, trading_calendar=trading_calendar, capital_base=capital_base, data_frequency=data_frequency, ), metrics_set=metrics_set, blotter=blotter, benchmark_returns=benchmark_returns, **{ 'initialize': initialize, 'handle_data': handle_data, 'before_trading_start': before_trading_start, 'analyze': analyze, } if algotext is None else { 'algo_filename': getattr(algofile, 'name', '<algorithm>'), 'script': algotext, } ).run() if output == '-': click.echo(str(perf)) elif output != os.devnull: # make the zipline magic not write any data perf.to_pickle(output) return perf
def _run(handle_data, initialize, before_trading_start, analyze, algofile, algotext, defines, data_frequency, capital_base, bundle, bundle_timestamp, start, end, output, trading_calendar, print_algo, metrics_set, local_namespace, environ, blotter, benchmark_returns, broker, state_filename, realtime_bar_target, performance_callback, stop_execution_callback, teardown, execution_id): """ Run a backtest for the given algorithm. This is shared between the cli and :func:`zipline.run_algo`. zipline-live additions: broker - wrapper to connect to a real broker state_filename - saving the context of the algo to be able to restart performance_callback - a callback to send performance results everyday and not only at the end of the backtest. this allows to run live, and monitor the performance of the algorithm stop_execution_callback - A callback to check if execution should be stopped. it is used to be able to stop live trading (also simulation could be stopped using this) execution. if the callback returns True, then algo execution will be aborted. teardown - algo method like handle_data() or before_trading_start() that is called when the algo execution stops execution_id - unique id to identify this execution (backtest or live instance) """ if benchmark_returns is None: benchmark_returns, _ = load_market_data(environ=environ) emission_rate = 'daily' if broker: emission_rate = 'minute' # if we run zipline as a command line tool, these will probably not be initiated if not start: start = pd.Timestamp.utcnow() if not end: # in cli mode, sessions are 1 day only. and it will be re-ran each day by user end = start + pd.Timedelta('1 day') if algotext is not None: if local_namespace: ip = get_ipython() # noqa namespace = ip.user_ns else: namespace = {} for assign in defines: try: name, value = assign.split('=', 2) except ValueError: raise ValueError( 'invalid define %r, should be of the form name=value' % assign, ) try: # evaluate in the same namespace so names may refer to # eachother namespace[name] = eval(value, namespace) except Exception as e: raise ValueError( 'failed to execute definition for name %r: %s' % (name, e), ) elif defines: raise _RunAlgoError( 'cannot pass define without `algotext`', "cannot pass '-D' / '--define' without '-t' / '--algotext'", ) else: namespace = {} if algofile is not None: algotext = algofile.read() if print_algo: if PYGMENTS: highlight( algotext, PythonLexer(), TerminalFormatter(), outfile=sys.stdout, ) else: click.echo(algotext) if trading_calendar is None: trading_calendar = get_calendar('NYSE') # date parameter validation if trading_calendar.session_distance(start, end) < 1: raise _RunAlgoError( 'There are no trading days between %s and %s' % ( start.date(), end.date(), ), ) bundle_data = bundles.load( bundle, environ, bundle_timestamp, ) first_trading_day = \ bundle_data.equity_minute_bar_reader.first_trading_day DataPortalClass = (partial(DataPortalLive, broker) if broker else DataPortal) data = DataPortalClass( bundle_data.asset_finder, trading_calendar=trading_calendar, first_trading_day=first_trading_day, equity_minute_reader=bundle_data.equity_minute_bar_reader, equity_daily_reader=bundle_data.equity_daily_bar_reader, adjustment_reader=bundle_data.adjustment_reader, ) pipeline_loader = USEquityPricingLoader( bundle_data.equity_daily_bar_reader, bundle_data.adjustment_reader, ) def choose_loader(column): if column in USEquityPricing.columns: return pipeline_loader raise ValueError("No PipelineLoader registered for column %s." % column) if isinstance(metrics_set, six.string_types): try: metrics_set = metrics.load(metrics_set) except ValueError as e: raise _RunAlgoError(str(e)) if isinstance(blotter, six.string_types): try: blotter = load(Blotter, blotter) except ValueError as e: raise _RunAlgoError(str(e)) TradingAlgorithmClass = (partial(LiveTradingAlgorithm, broker=broker, state_filename=state_filename, realtime_bar_target=realtime_bar_target) if broker else TradingAlgorithm) perf = TradingAlgorithmClass( namespace=namespace, data_portal=data, get_pipeline_loader=choose_loader, trading_calendar=trading_calendar, sim_params=SimulationParameters(start_session=start, end_session=end, trading_calendar=trading_calendar, capital_base=capital_base, emission_rate=emission_rate, data_frequency=data_frequency, execution_id=execution_id), metrics_set=metrics_set, blotter=blotter, benchmark_returns=benchmark_returns, performance_callback=performance_callback, stop_execution_callback=stop_execution_callback, **{ 'initialize': initialize, 'handle_data': handle_data, 'before_trading_start': before_trading_start, 'analyze': analyze, 'teardown': teardown, } if algotext is None else { 'algo_filename': getattr(algofile, 'name', '<algorithm>'), 'script': algotext, }).run() if output == '-': click.echo(str(perf)) elif output != os.devnull: # make the zipline magic not write any data perf.to_pickle(output) return perf
def _run( handle_data, initialize, before_trading_start, analyze, algofile, algotext, defines, data_frequency, capital_base, bundle, bundle_timestamp, start, end, output, trading_calendar, print_algo, metrics_set, local_namespace, environ, blotter, custom_loader, benchmark_spec, ): """Run a backtest for the given algorithm. This is shared between the cli and :func:`zipline.run_algo`. """ bundle_data = bundles.load( bundle, environ, bundle_timestamp, ) if trading_calendar is None: trading_calendar = get_calendar("XNYS") # date parameter validation if trading_calendar.session_distance(start, end) < 1: raise _RunAlgoError( "There are no trading days between %s and %s" % ( start.date(), end.date(), ), ) benchmark_sid, benchmark_returns = benchmark_spec.resolve( asset_finder=bundle_data.asset_finder, start_date=start, end_date=end, ) if algotext is not None: if local_namespace: ip = get_ipython() # noqa namespace = ip.user_ns else: namespace = {} for assign in defines: try: name, value = assign.split("=", 2) except ValueError: raise ValueError( "invalid define %r, should be of the form name=value" % assign, ) try: # evaluate in the same namespace so names may refer to # eachother namespace[name] = eval(value, namespace) except Exception as e: raise ValueError( "failed to execute definition for name %r: %s" % (name, e), ) elif defines: raise _RunAlgoError( "cannot pass define without `algotext`", "cannot pass '-D' / '--define' without '-t' / '--algotext'", ) else: namespace = {} if algofile is not None: algotext = algofile.read() if print_algo: if PYGMENTS: highlight( algotext, PythonLexer(), TerminalFormatter(), outfile=sys.stdout, ) else: click.echo(algotext) first_trading_day = bundle_data.equity_minute_bar_reader.first_trading_day data = DataPortal( bundle_data.asset_finder, trading_calendar=trading_calendar, first_trading_day=first_trading_day, equity_minute_reader=bundle_data.equity_minute_bar_reader, equity_daily_reader=bundle_data.equity_daily_bar_reader, adjustment_reader=bundle_data.adjustment_reader, future_minute_reader=bundle_data.equity_minute_bar_reader, future_daily_reader=bundle_data.equity_daily_bar_reader, ) pipeline_loader = USEquityPricingLoader.without_fx( bundle_data.equity_daily_bar_reader, bundle_data.adjustment_reader, ) def choose_loader(column): if column in USEquityPricing.columns: return pipeline_loader try: return custom_loader.get(column) except KeyError: raise ValueError("No PipelineLoader registered for column %s." % column) if isinstance(metrics_set, str): try: metrics_set = metrics.load(metrics_set) except ValueError as e: raise _RunAlgoError(str(e)) if isinstance(blotter, str): try: blotter = load(Blotter, blotter) except ValueError as e: raise _RunAlgoError(str(e)) try: perf = TradingAlgorithm( namespace=namespace, data_portal=data, get_pipeline_loader=choose_loader, trading_calendar=trading_calendar, sim_params=SimulationParameters( start_session=start, end_session=end, trading_calendar=trading_calendar, capital_base=capital_base, data_frequency=data_frequency, ), metrics_set=metrics_set, blotter=blotter, benchmark_returns=benchmark_returns, benchmark_sid=benchmark_sid, **{ "initialize": initialize, "handle_data": handle_data, "before_trading_start": before_trading_start, "analyze": analyze, } if algotext is None else { "algo_filename": getattr(algofile, "name", "<algorithm>"), "script": algotext, }, ).run() except NoBenchmark: raise _RunAlgoError( ("No ``benchmark_spec`` was provided, and" " ``zipline.api.set_benchmark`` was not called in" " ``initialize``."), ("Neither '--benchmark-symbol' nor '--benchmark-sid' was" " provided, and ``zipline.api.set_benchmark`` was not called" " in ``initialize``. Did you mean to pass '--no-benchmark'?"), ) if output == "-": click.echo(str(perf)) elif output != os.devnull: # make the zipline magic not write any data perf.to_pickle(output) return perf
def _run(handle_data, initialize, before_trading_start, analyze, algofile, algotext, defines, data_frequency, capital_base, data, bundle, bundle_timestamp, start, end, output, trading_calendar, print_algo, metrics_set, local_namespace, environ): """Run a backtest for the given algorithm. This is shared between the cli and :func:`zipline.run_algo`. """ if algotext is not None: if local_namespace: ip = get_ipython() # noqa namespace = ip.user_ns else: namespace = {} for assign in defines: try: name, value = assign.split('=', 2) except ValueError: raise ValueError( 'invalid define %r, should be of the form name=value' % assign, ) try: # evaluate in the same namespace so names may refer to # eachother namespace[name] = eval(value, namespace) except Exception as e: raise ValueError( 'failed to execute definition for name %r: %s' % (name, e), ) elif defines: raise _RunAlgoError( 'cannot pass define without `algotext`', "cannot pass '-D' / '--define' without '-t' / '--algotext'", ) else: namespace = {} if algofile is not None: algotext = algofile.read() if print_algo: if PYGMENTS: highlight( algotext, PythonLexer(), TerminalFormatter(), outfile=sys.stdout, ) else: click.echo(algotext) if trading_calendar is None: trading_calendar = get_calendar('NYSE') if trading_calendar.session_distance(start, end) < 1: raise _RunAlgoError( 'There are no trading days between %s and %s' % ( start.date(), end.date(), ), ) if bundle is not None: bundle_data = bundles.load( bundle, environ, bundle_timestamp, ) prefix, connstr = re.split( r'sqlite:///', str(bundle_data.asset_finder.engine.url), maxsplit=1, ) if prefix: raise ValueError( "invalid url %r, must begin with 'sqlite:///'" % str(bundle_data.asset_finder.engine.url), ) env = TradingEnvironment(asset_db_path=connstr, environ=environ) first_trading_day =\ bundle_data.equity_minute_bar_reader.first_trading_day data = DataPortal( env.asset_finder, trading_calendar=trading_calendar, first_trading_day=first_trading_day, equity_minute_reader=bundle_data.equity_minute_bar_reader, equity_daily_reader=bundle_data.equity_daily_bar_reader, adjustment_reader=bundle_data.adjustment_reader, ) pipeline_loader = USEquityPricingLoader( bundle_data.equity_daily_bar_reader, bundle_data.adjustment_reader, ) def choose_loader(column): if column in USEquityPricing.columns: return pipeline_loader raise ValueError( "No PipelineLoader registered for column %s." % column ) else: env = TradingEnvironment(environ=environ) choose_loader = None if isinstance(metrics_set, six.string_types): try: metrics_set = metrics.load(metrics_set) except ValueError as e: raise _RunAlgoError(str(e)) perf = TradingAlgorithm( namespace=namespace, env=env, get_pipeline_loader=choose_loader, trading_calendar=trading_calendar, sim_params=create_simulation_parameters( start=start, end=end, capital_base=capital_base, data_frequency=data_frequency, trading_calendar=trading_calendar, ), metrics_set=metrics_set, **{ 'initialize': initialize, 'handle_data': handle_data, 'before_trading_start': before_trading_start, 'analyze': analyze, } if algotext is None else { 'algo_filename': getattr(algofile, 'name', '<algorithm>'), 'script': algotext, } ).run( data, overwrite_sim_params=False, ) if output == '-': click.echo(str(perf)) elif output != os.devnull: # make the zipline magic not write any data perf.to_pickle(output) return perf