Exemplo n.º 1
0
    def _get_flattener(self, obj):

        if PY2 and isinstance(obj, file):
            return self._flatten_file

        if util.is_primitive(obj):
            return lambda obj: obj

        if util.is_bytes(obj):
            return self._flatten_bytestring

        list_recurse = self._list_recurse

        if util.is_list(obj):
            if self._mkref(obj):
                return list_recurse
            else:
                self._push()
                return self._getref

        # We handle tuples and sets by encoding them in a "(tuple|set)dict"
        if util.is_tuple(obj):
            if not self.unpicklable:
                return list_recurse
            return lambda obj: {tags.TUPLE: [self._flatten(v) for v in obj]}

        if util.is_set(obj):
            if not self.unpicklable:
                return list_recurse
            return lambda obj: {tags.SET: [self._flatten(v) for v in obj]}

        if util.is_dictionary(obj):
            return self._flatten_dict_obj

        if util.is_type(obj):
            return _mktyperef

        if util.is_object(obj):
            return self._ref_obj_instance

        if util.is_module_function(obj):
            return self._flatten_function

        # instance methods, lambdas, old style classes...
        self._pickle_warning(obj)
        return None
Exemplo n.º 2
0
    def _get_flattener(self, obj):

        if PY2 and isinstance(obj, file):
            return self._flatten_file

        if util.is_primitive(obj):
            return lambda obj: obj

        if util.is_bytes(obj):
            return self._flatten_bytestring

        list_recurse = self._list_recurse

        if util.is_list(obj):
            if self._mkref(obj):
                return list_recurse
            else:
                self._push()
                return self._getref

        # We handle tuples and sets by encoding them in a "(tuple|set)dict"
        if util.is_tuple(obj):
            if not self.unpicklable:
                return list_recurse
            return lambda obj: {tags.TUPLE: [self._flatten(v) for v in obj]}

        if util.is_set(obj):
            if not self.unpicklable:
                return list_recurse
            return lambda obj: {tags.SET: [self._flatten(v) for v in obj]}

        if util.is_dictionary(obj):
            return self._flatten_dict_obj

        if util.is_type(obj):
            return _mktyperef

        if util.is_object(obj):
            return self._ref_obj_instance

        if util.is_module_function(obj):
            return self._flatten_function

        # instance methods, lambdas, old style classes...
        self._pickle_warning(obj)
        return None
Exemplo n.º 3
0
    def _get_flattener(self, obj):

        if util.is_primitive(obj):
            return lambda obj: obj

        list_recurse = self._list_recurse

        if util.is_list(obj):
            if self._mkref(obj):
                return list_recurse
            else:
                self._push()
                return self._getref

        # We handle tuples and sets by encoding them in a "(tuple|set)dict"
        if util.is_tuple(obj):
            if not self.unpicklable:
                return list_recurse
            return lambda obj: {tags.TUPLE: [self._flatten(v) for v in obj]}

        if util.is_set(obj):
            if not self.unpicklable:
                return list_recurse
            return lambda obj: {tags.SET: [self._flatten(v) for v in obj]}

        if util.is_dictionary(obj):
            return self._flatten_dict_obj

        if util.is_type(obj):
            return _mktyperef

        if util.is_object(obj):
            return self._ref_obj_instance

        # else, what else? (methods, functions, old style classes...)
        return None
Exemplo n.º 4
0
    def _get_flattener(self, obj):

        if util.is_primitive(obj):
            return lambda obj: obj

        list_recurse = self._list_recurse

        if util.is_list(obj):
            if self._mkref(obj):
                return list_recurse
            else:
                self._push()
                return self._getref

        # We handle tuples and sets by encoding them in a "(tuple|set)dict"
        if util.is_tuple(obj):
            if not self.unpicklable:
                return list_recurse
            return lambda obj: {tags.TUPLE: [self._flatten(v) for v in obj]}

        if util.is_set(obj):
            if not self.unpicklable:
                return list_recurse
            return lambda obj: {tags.SET: [self._flatten(v) for v in obj]}

        if util.is_dictionary(obj):
            return self._flatten_dict_obj

        if util.is_type(obj):
            return _mktyperef

        if util.is_object(obj):
            return self._ref_obj_instance

        # else, what else? (methods, functions, old style classes...)
        return None
Exemplo n.º 5
0
    def flatten(self, obj):
        """Takes an object and returns a JSON-safe representation of it.

        Simply returns any of the basic builtin datatypes

        >>> p = Pickler()
        >>> p.flatten('hello world')
        'hello world'
        >>> p.flatten(u'hello world')
        u'hello world'
        >>> p.flatten(49)
        49
        >>> p.flatten(350.0)
        350.0
        >>> p.flatten(True)
        True
        >>> p.flatten(False)
        False
        >>> r = p.flatten(None)
        >>> r is None
        True
        >>> p.flatten(False)
        False
        >>> p.flatten([1, 2, 3, 4])
        [1, 2, 3, 4]
        >>> p.flatten((1,2,))[tags.TUPLE]
        [1, 2]
        >>> p.flatten({'key': 'value'})
        {'key': 'value'}
        """

        self._push()

        if self._depth == self._max_depth:
            return self._pop(repr(obj))

        if util.is_primitive(obj):
            return self._pop(obj)

        if util.is_list(obj):
            return self._pop([ self.flatten(v) for v in obj ])

        # We handle tuples and sets by encoding them in a "(tuple|set)dict"
        if util.is_tuple(obj):
            return self._pop({tags.TUPLE: [ self.flatten(v) for v in obj ]})

        if util.is_set(obj):
            return self._pop({tags.SET: [ self.flatten(v) for v in obj ]})

        if util.is_dictionary(obj):
            return self._pop(self._flatten_dict_obj(obj, obj.__class__()))

        if util.is_type(obj):
            return self._pop(_mktyperef(obj))

        if util.is_object(obj):
            if self._mkref(obj):
                # We've never seen this object so return its
                # json representation.
                return self._pop(self._flatten_obj_instance(obj))
            else:
                # We've seen this object before so place an object
                # reference tag in the data. This avoids infinite recursion
                # when processing cyclical objects.
                return self._pop(self._getref(obj))

            return self._pop(data)
Exemplo n.º 6
0
    def flatten(self, obj):
        """Takes an object and returns a JSON-safe representation of it.

        Simply returns any of the basic builtin datatypes

        >>> p = Pickler()
        >>> p.flatten('hello world')
        'hello world'
        >>> p.flatten(u'hello world')
        u'hello world'
        >>> p.flatten(49)
        49
        >>> p.flatten(350.0)
        350.0
        >>> p.flatten(True)
        True
        >>> p.flatten(False)
        False
        >>> r = p.flatten(None)
        >>> r is None
        True
        >>> p.flatten(False)
        False
        >>> p.flatten([1, 2, 3, 4])
        [1, 2, 3, 4]
        >>> p.flatten((1,2,))[tags.TUPLE]
        [1, 2]
        >>> p.flatten({'key': 'value'})
        {'key': 'value'}
        """
        self._push()

        if self._depth == self._max_depth:
            return self._pop(repr(obj))

        if util.is_primitive(obj):
            return self._pop(obj)

        if util.is_list(obj):
            if self._mkref(obj):
                return self._pop([self.flatten(v) for v in obj])
            else:
                return self._getref(obj)

        # We handle tuples and sets by encoding them in a "(tuple|set)dict"
        if util.is_tuple(obj):
            if self.unpicklable:
                return self._pop({tags.TUPLE: [self.flatten(v) for v in obj]})
            else:
                return self._pop([self.flatten(v) for v in obj])

        if util.is_set(obj):
            if self.unpicklable:
                return self._pop({tags.SET: [self.flatten(v) for v in obj]})
            else:
                return self._pop([self.flatten(v) for v in obj])

        if util.is_dictionary(obj):
            return self._pop(self._flatten_dict_obj(obj, obj.__class__()))

        if util.is_type(obj):
            return self._pop(_mktyperef(obj))

        if util.is_object(obj):
            if self._mkref(obj):
                # We've never seen this object so return its
                # json representation.
                return self._pop(self._flatten_obj_instance(obj))
            else:
                # We've seen this object before so place an object
                # reference tag in the data. This avoids infinite recursion
                # when processing cyclical objects.
                return self._pop(self._getref(obj))
        # else, what else? (methods, functions, old style classes...)
        return None
Exemplo n.º 7
0
 def test_is_list_other(self):
     self.assertFalse(is_list(1))
     self.assertFalse(is_set(1))
     self.assertFalse(is_tuple(1))
Exemplo n.º 8
0
 def test_is_list_dict(self):
     self.assertFalse(is_list({'key':'value'}))
     self.assertFalse(is_set({'key':'value'}))
     self.assertFalse(is_tuple({'key':'value'}))
Exemplo n.º 9
0
 def test_is_list_tuple(self):
     self.assertTrue(is_tuple((1, 2)))
Exemplo n.º 10
0
    def flatten(self, obj):
        """Takes an object and returns a JSON-safe representation of it.
        
        Simply returns any of the basic builtin datatypes
        
        >>> p = Pickler()
        >>> p.flatten('hello world')
        'hello world'
        >>> p.flatten(u'hello world')
        u'hello world'
        >>> p.flatten(49)
        49
        >>> p.flatten(350.0)
        350.0
        >>> p.flatten(True)
        True
        >>> p.flatten(False)
        False
        >>> r = p.flatten(None)
        >>> r is None
        True
        >>> p.flatten(False)
        False
        >>> p.flatten([1, 2, 3, 4])
        [1, 2, 3, 4]
        >>> p.flatten((1,2,))[tags.TUPLE]
        [1, 2]
        >>> p.flatten({'key': 'value'})
        {'key': 'value'}
        """

        self._push()

        if self._depth == self._max_depth:
            return self._pop(repr(obj))

        if util.is_primitive(obj):
            return self._pop(obj)

        if util.is_list(obj):
            return self._pop([self.flatten(v) for v in obj])

        # We handle tuples and sets by encoding them in a "(tuple|set)dict"
        if util.is_tuple(obj):
            return self._pop({tags.TUPLE: [self.flatten(v) for v in obj]})

        if util.is_set(obj):
            return self._pop({tags.SET: [self.flatten(v) for v in obj]})

        if util.is_dictionary(obj):
            return self._pop(self._flatten_dict_obj(obj, obj.__class__()))

        if util.is_type(obj):
            return self._pop(_mktyperef(obj))

        if util.is_object(obj):
            data = {}
            has_class = hasattr(obj, '__class__')
            has_dict = hasattr(obj, '__dict__')
            if self._mkref(obj):
                if has_class and not util.is_repr(obj):
                    module, name = _getclassdetail(obj)
                    if self.unpicklable is True:
                        data[tags.OBJECT] = '%s.%s' % (module, name)

                if util.is_repr(obj):
                    if self.unpicklable is True:
                        data[tags.REPR] = '%s/%s' % (obj.__class__.__module__,
                                                     repr(obj))
                    else:
                        data = unicode(obj)
                    return self._pop(data)

                if util.is_dictionary_subclass(obj):
                    return self._pop(self._flatten_dict_obj(obj, data))

                if util.is_noncomplex(obj):
                    return self._pop([self.flatten(v) for v in obj])

                if has_dict:
                    return self._pop(self._flatten_dict_obj(
                        obj.__dict__, data))
            else:
                # We've seen this object before so place an object
                # reference tag in the data. This avoids infinite recursion
                # when processing cyclical objects.
                return self._pop(self._getref(obj))

            return self._pop(data)
Exemplo n.º 11
0
    def flatten(self, obj):
        """Takes an object and returns a JSON-safe representation of it.
        
        Simply returns any of the basic builtin datatypes
        
        >>> p = Pickler()
        >>> p.flatten('hello world')
        'hello world'
        >>> p.flatten(u'hello world')
        u'hello world'
        >>> p.flatten(49)
        49
        >>> p.flatten(350.0)
        350.0
        >>> p.flatten(True)
        True
        >>> p.flatten(False)
        False
        >>> r = p.flatten(None)
        >>> r is None
        True
        >>> p.flatten(False)
        False
        >>> p.flatten([1, 2, 3, 4])
        [1, 2, 3, 4]
        >>> p.flatten((1,2,))[tags.TUPLE]
        [1, 2]
        >>> p.flatten({'key': 'value'})
        {'key': 'value'}
        """

        self._push()
        
        if self._depth == self._max_depth:
            return self._pop(repr(obj))

        if util.is_primitive(obj):
            return self._pop(obj)

        if util.is_list(obj):
            return self._pop([ self.flatten(v) for v in obj ])

        # We handle tuples and sets by encoding them in a "(tuple|set)dict"
        if util.is_tuple(obj):
            return self._pop({tags.TUPLE: [ self.flatten(v) for v in obj ]})

        if util.is_set(obj):
            return self._pop({tags.SET: [ self.flatten(v) for v in obj ]})

        if util.is_dictionary(obj):
            return self._pop(self._flatten_dict_obj(obj, obj.__class__()))

        if util.is_type(obj):
            return self._pop(_mktyperef(obj))

        if util.is_object(obj):
            data = {}
            has_class = hasattr(obj, '__class__')
            has_dict = hasattr(obj, '__dict__')
            if self._mkref(obj):
                if has_class and not util.is_repr(obj):
                    module, name = _getclassdetail(obj)
                    if self.unpicklable is True:
                        data[tags.OBJECT] = '%s.%s' % (module, name)

                if util.is_repr(obj):
                    if self.unpicklable is True:
                        data[tags.REPR] = '%s/%s' % (obj.__class__.__module__,
                                                     repr(obj))
                    else:
                        data = unicode(obj)
                    return self._pop(data)

                if util.is_dictionary_subclass(obj):
                    return self._pop(self._flatten_dict_obj(obj, data))

                if util.is_noncomplex(obj):
                    return self._pop([self.flatten(v) for v in obj])

                if has_dict:
                    return self._pop(self._flatten_dict_obj(obj.__dict__, data))
            else:
                # We've seen this object before so place an object
                # reference tag in the data. This avoids infinite recursion
                # when processing cyclical objects.
                return self._pop(self._getref(obj))

            return self._pop(data)
Exemplo n.º 12
0
 def test_is_list_other(self):
     self.assertFalse(util.is_list(1))
     self.assertFalse(util.is_set(1))
     self.assertFalse(util.is_tuple(1))
Exemplo n.º 13
0
 def test_is_list_dict(self):
     self.assertFalse(util.is_list({'key': 'value'}))
     self.assertFalse(util.is_set({'key': 'value'}))
     self.assertFalse(util.is_tuple({'key': 'value'}))
Exemplo n.º 14
0
 def test_is_list_tuple(self):
     self.assertTrue(util.is_tuple((1, 2)))
Exemplo n.º 15
0
 def test_is_list_dict(self):
     self.assertFalse(is_list({"key": "value"}))
     self.assertFalse(is_set({"key": "value"}))
     self.assertFalse(is_tuple({"key": "value"}))