Buckets:
| import re | |
| import sys | |
| import copy | |
| import types | |
| import inspect | |
| import keyword | |
| import builtins | |
| import functools | |
| import abc | |
| import _thread | |
| from types import FunctionType, GenericAlias | |
| __all__ = ['dataclass', | |
| 'field', | |
| 'Field', | |
| 'FrozenInstanceError', | |
| 'InitVar', | |
| 'KW_ONLY', | |
| 'MISSING', | |
| # Helper functions. | |
| 'fields', | |
| 'asdict', | |
| 'astuple', | |
| 'make_dataclass', | |
| 'replace', | |
| 'is_dataclass', | |
| ] | |
| # Conditions for adding methods. The boxes indicate what action the | |
| # dataclass decorator takes. For all of these tables, when I talk | |
| # about init=, repr=, eq=, order=, unsafe_hash=, or frozen=, I'm | |
| # referring to the arguments to the @dataclass decorator. When | |
| # checking if a dunder method already exists, I mean check for an | |
| # entry in the class's __dict__. I never check to see if an attribute | |
| # is defined in a base class. | |
| # Key: | |
| # +=========+=========================================+ | |
| # + Value | Meaning | | |
| # +=========+=========================================+ | |
| # | <blank> | No action: no method is added. | | |
| # +---------+-----------------------------------------+ | |
| # | add | Generated method is added. | | |
| # +---------+-----------------------------------------+ | |
| # | raise | TypeError is raised. | | |
| # +---------+-----------------------------------------+ | |
| # | None | Attribute is set to None. | | |
| # +=========+=========================================+ | |
| # __init__ | |
| # | |
| # +--- init= parameter | |
| # | | |
| # v | | | | |
| # | no | yes | <--- class has __init__ in __dict__? | |
| # +=======+=======+=======+ | |
| # | False | | | | |
| # +-------+-------+-------+ | |
| # | True | add | | <- the default | |
| # +=======+=======+=======+ | |
| # __repr__ | |
| # | |
| # +--- repr= parameter | |
| # | | |
| # v | | | | |
| # | no | yes | <--- class has __repr__ in __dict__? | |
| # +=======+=======+=======+ | |
| # | False | | | | |
| # +-------+-------+-------+ | |
| # | True | add | | <- the default | |
| # +=======+=======+=======+ | |
| # __setattr__ | |
| # __delattr__ | |
| # | |
| # +--- frozen= parameter | |
| # | | |
| # v | | | | |
| # | no | yes | <--- class has __setattr__ or __delattr__ in __dict__? | |
| # +=======+=======+=======+ | |
| # | False | | | <- the default | |
| # +-------+-------+-------+ | |
| # | True | add | raise | | |
| # +=======+=======+=======+ | |
| # Raise because not adding these methods would break the "frozen-ness" | |
| # of the class. | |
| # __eq__ | |
| # | |
| # +--- eq= parameter | |
| # | | |
| # v | | | | |
| # | no | yes | <--- class has __eq__ in __dict__? | |
| # +=======+=======+=======+ | |
| # | False | | | | |
| # +-------+-------+-------+ | |
| # | True | add | | <- the default | |
| # +=======+=======+=======+ | |
| # __lt__ | |
| # __le__ | |
| # __gt__ | |
| # __ge__ | |
| # | |
| # +--- order= parameter | |
| # | | |
| # v | | | | |
| # | no | yes | <--- class has any comparison method in __dict__? | |
| # +=======+=======+=======+ | |
| # | False | | | <- the default | |
| # +-------+-------+-------+ | |
| # | True | add | raise | | |
| # +=======+=======+=======+ | |
| # Raise because to allow this case would interfere with using | |
| # functools.total_ordering. | |
| # __hash__ | |
| # +------------------- unsafe_hash= parameter | |
| # | +----------- eq= parameter | |
| # | | +--- frozen= parameter | |
| # | | | | |
| # v v v | | | | |
| # | no | yes | <--- class has explicitly defined __hash__ | |
| # +=======+=======+=======+========+========+ | |
| # | False | False | False | | | No __eq__, use the base class __hash__ | |
| # +-------+-------+-------+--------+--------+ | |
| # | False | False | True | | | No __eq__, use the base class __hash__ | |
| # +-------+-------+-------+--------+--------+ | |
| # | False | True | False | None | | <-- the default, not hashable | |
| # +-------+-------+-------+--------+--------+ | |
| # | False | True | True | add | | Frozen, so hashable, allows override | |
| # +-------+-------+-------+--------+--------+ | |
| # | True | False | False | add | raise | Has no __eq__, but hashable | |
| # +-------+-------+-------+--------+--------+ | |
| # | True | False | True | add | raise | Has no __eq__, but hashable | |
| # +-------+-------+-------+--------+--------+ | |
| # | True | True | False | add | raise | Not frozen, but hashable | |
| # +-------+-------+-------+--------+--------+ | |
| # | True | True | True | add | raise | Frozen, so hashable | |
| # +=======+=======+=======+========+========+ | |
| # For boxes that are blank, __hash__ is untouched and therefore | |
| # inherited from the base class. If the base is object, then | |
| # id-based hashing is used. | |
| # | |
| # Note that a class may already have __hash__=None if it specified an | |
| # __eq__ method in the class body (not one that was created by | |
| # @dataclass). | |
| # | |
| # See _hash_action (below) for a coded version of this table. | |
| # __match_args__ | |
| # | |
| # +--- match_args= parameter | |
| # | | |
| # v | | | | |
| # | no | yes | <--- class has __match_args__ in __dict__? | |
| # +=======+=======+=======+ | |
| # | False | | | | |
| # +-------+-------+-------+ | |
| # | True | add | | <- the default | |
| # +=======+=======+=======+ | |
| # __match_args__ is always added unless the class already defines it. It is a | |
| # tuple of __init__ parameter names; non-init fields must be matched by keyword. | |
| # Raised when an attempt is made to modify a frozen class. | |
| class FrozenInstanceError(AttributeError): pass | |
| # A sentinel object for default values to signal that a default | |
| # factory will be used. This is given a nice repr() which will appear | |
| # in the function signature of dataclasses' constructors. | |
| class _HAS_DEFAULT_FACTORY_CLASS: | |
| def __repr__(self): | |
| return '<factory>' | |
| _HAS_DEFAULT_FACTORY = _HAS_DEFAULT_FACTORY_CLASS() | |
| # A sentinel object to detect if a parameter is supplied or not. Use | |
| # a class to give it a better repr. | |
| class _MISSING_TYPE: | |
| pass | |
| MISSING = _MISSING_TYPE() | |
| # A sentinel object to indicate that following fields are keyword-only by | |
| # default. Use a class to give it a better repr. | |
| class _KW_ONLY_TYPE: | |
| pass | |
| KW_ONLY = _KW_ONLY_TYPE() | |
| # Since most per-field metadata will be unused, create an empty | |
| # read-only proxy that can be shared among all fields. | |
| _EMPTY_METADATA = types.MappingProxyType({}) | |
| # Markers for the various kinds of fields and pseudo-fields. | |
| class _FIELD_BASE: | |
| def __init__(self, name): | |
| self.name = name | |
| def __repr__(self): | |
| return self.name | |
| _FIELD = _FIELD_BASE('_FIELD') | |
| _FIELD_CLASSVAR = _FIELD_BASE('_FIELD_CLASSVAR') | |
| _FIELD_INITVAR = _FIELD_BASE('_FIELD_INITVAR') | |
| # The name of an attribute on the class where we store the Field | |
| # objects. Also used to check if a class is a Data Class. | |
| _FIELDS = '__dataclass_fields__' | |
| # The name of an attribute on the class that stores the parameters to | |
| # @dataclass. | |
| _PARAMS = '__dataclass_params__' | |
| # The name of the function, that if it exists, is called at the end of | |
| # __init__. | |
| _POST_INIT_NAME = '__post_init__' | |
| # String regex that string annotations for ClassVar or InitVar must match. | |
| # Allows "identifier.identifier[" or "identifier[". | |
| # https://bugs.python.org/issue33453 for details. | |
| _MODULE_IDENTIFIER_RE = re.compile(r'^(?:\s*(\w+)\s*\.)?\s*(\w+)') | |
| # This function's logic is copied from "recursive_repr" function in | |
| # reprlib module to avoid dependency. | |
| def _recursive_repr(user_function): | |
| # Decorator to make a repr function return "..." for a recursive | |
| # call. | |
| repr_running = set() | |
| def wrapper(self): | |
| key = id(self), _thread.get_ident() | |
| if key in repr_running: | |
| return '...' | |
| repr_running.add(key) | |
| try: | |
| result = user_function(self) | |
| finally: | |
| repr_running.discard(key) | |
| return result | |
| return wrapper | |
| class InitVar: | |
| __slots__ = ('type', ) | |
| def __init__(self, type): | |
| self.type = type | |
| def __repr__(self): | |
| if isinstance(self.type, type) and not isinstance(self.type, GenericAlias): | |
| type_name = self.type.__name__ | |
| else: | |
| # typing objects, e.g. List[int] | |
| type_name = repr(self.type) | |
| return f'dataclasses.InitVar[{type_name}]' | |
| def __class_getitem__(cls, type): | |
| return InitVar(type) | |
| # Instances of Field are only ever created from within this module, | |
| # and only from the field() function, although Field instances are | |
| # exposed externally as (conceptually) read-only objects. | |
| # | |
| # name and type are filled in after the fact, not in __init__. | |
| # They're not known at the time this class is instantiated, but it's | |
| # convenient if they're available later. | |
| # | |
| # When cls._FIELDS is filled in with a list of Field objects, the name | |
| # and type fields will have been populated. | |
| class Field: | |
| __slots__ = ('name', | |
| 'type', | |
| 'default', | |
| 'default_factory', | |
| 'repr', | |
| 'hash', | |
| 'init', | |
| 'compare', | |
| 'metadata', | |
| 'kw_only', | |
| '_field_type', # Private: not to be used by user code. | |
| ) | |
| def __init__(self, default, default_factory, init, repr, hash, compare, | |
| metadata, kw_only): | |
| self.name = None | |
| self.type = None | |
| self.default = default | |
| self.default_factory = default_factory | |
| self.init = init | |
| self.repr = repr | |
| self.hash = hash | |
| self.compare = compare | |
| self.metadata = (_EMPTY_METADATA | |
| if metadata is None else | |
| types.MappingProxyType(metadata)) | |
| self.kw_only = kw_only | |
| self._field_type = None | |
| def __repr__(self): | |
| return ('Field(' | |
| f'name={self.name!r},' | |
| f'type={self.type!r},' | |
| f'default={self.default!r},' | |
| f'default_factory={self.default_factory!r},' | |
| f'init={self.init!r},' | |
| f'repr={self.repr!r},' | |
| f'hash={self.hash!r},' | |
| f'compare={self.compare!r},' | |
| f'metadata={self.metadata!r},' | |
| f'kw_only={self.kw_only!r},' | |
| f'_field_type={self._field_type}' | |
| ')') | |
| # This is used to support the PEP 487 __set_name__ protocol in the | |
| # case where we're using a field that contains a descriptor as a | |
| # default value. For details on __set_name__, see | |
| # https://www.python.org/dev/peps/pep-0487/#implementation-details. | |
| # | |
| # Note that in _process_class, this Field object is overwritten | |
| # with the default value, so the end result is a descriptor that | |
| # had __set_name__ called on it at the right time. | |
| def __set_name__(self, owner, name): | |
| func = getattr(type(self.default), '__set_name__', None) | |
| if func: | |
| # There is a __set_name__ method on the descriptor, call | |
| # it. | |
| func(self.default, owner, name) | |
| __class_getitem__ = classmethod(GenericAlias) | |
| class _DataclassParams: | |
| __slots__ = ('init', | |
| 'repr', | |
| 'eq', | |
| 'order', | |
| 'unsafe_hash', | |
| 'frozen', | |
| ) | |
| def __init__(self, init, repr, eq, order, unsafe_hash, frozen): | |
| self.init = init | |
| self.repr = repr | |
| self.eq = eq | |
| self.order = order | |
| self.unsafe_hash = unsafe_hash | |
| self.frozen = frozen | |
| def __repr__(self): | |
| return ('_DataclassParams(' | |
| f'init={self.init!r},' | |
| f'repr={self.repr!r},' | |
| f'eq={self.eq!r},' | |
| f'order={self.order!r},' | |
| f'unsafe_hash={self.unsafe_hash!r},' | |
| f'frozen={self.frozen!r}' | |
| ')') | |
| # This function is used instead of exposing Field creation directly, | |
| # so that a type checker can be told (via overloads) that this is a | |
| # function whose type depends on its parameters. | |
| def field(*, default=MISSING, default_factory=MISSING, init=True, repr=True, | |
| hash=None, compare=True, metadata=None, kw_only=MISSING): | |
| """Return an object to identify dataclass fields. | |
| default is the default value of the field. default_factory is a | |
| 0-argument function called to initialize a field's value. If init | |
| is true, the field will be a parameter to the class's __init__() | |
| function. If repr is true, the field will be included in the | |
| object's repr(). If hash is true, the field will be included in the | |
| object's hash(). If compare is true, the field will be used in | |
| comparison functions. metadata, if specified, must be a mapping | |
| which is stored but not otherwise examined by dataclass. If kw_only | |
| is true, the field will become a keyword-only parameter to | |
| __init__(). | |
| It is an error to specify both default and default_factory. | |
| """ | |
| if default is not MISSING and default_factory is not MISSING: | |
| raise ValueError('cannot specify both default and default_factory') | |
| return Field(default, default_factory, init, repr, hash, compare, | |
| metadata, kw_only) | |
| def _fields_in_init_order(fields): | |
| # Returns the fields as __init__ will output them. It returns 2 tuples: | |
| # the first for normal args, and the second for keyword args. | |
| return (tuple(f for f in fields if f.init and not f.kw_only), | |
| tuple(f for f in fields if f.init and f.kw_only) | |
| ) | |
| def _tuple_str(obj_name, fields): | |
| # Return a string representing each field of obj_name as a tuple | |
| # member. So, if fields is ['x', 'y'] and obj_name is "self", | |
| # return "(self.x,self.y)". | |
| # Special case for the 0-tuple. | |
| if not fields: | |
| return '()' | |
| # Note the trailing comma, needed if this turns out to be a 1-tuple. | |
| return f'({",".join([f"{obj_name}.{f.name}" for f in fields])},)' | |
| def _create_fn(name, args, body, *, globals=None, locals=None, | |
| return_type=MISSING): | |
| # Note that we may mutate locals. Callers beware! | |
| # The only callers are internal to this module, so no | |
| # worries about external callers. | |
| if locals is None: | |
| locals = {} | |
| return_annotation = '' | |
| if return_type is not MISSING: | |
| locals['_return_type'] = return_type | |
| return_annotation = '->_return_type' | |
| args = ','.join(args) | |
| body = '\n'.join(f' {b}' for b in body) | |
| # Compute the text of the entire function. | |
| txt = f' def {name}({args}){return_annotation}:\n{body}' | |
| local_vars = ', '.join(locals.keys()) | |
| txt = f"def __create_fn__({local_vars}):\n{txt}\n return {name}" | |
| ns = {} | |
| exec(txt, globals, ns) | |
| return ns['__create_fn__'](**locals) | |
| def _field_assign(frozen, name, value, self_name): | |
| # If we're a frozen class, then assign to our fields in __init__ | |
| # via object.__setattr__. Otherwise, just use a simple | |
| # assignment. | |
| # | |
| # self_name is what "self" is called in this function: don't | |
| # hard-code "self", since that might be a field name. | |
| if frozen: | |
| return f'__dataclass_builtins_object__.__setattr__({self_name},{name!r},{value})' | |
| return f'{self_name}.{name}={value}' | |
| def _field_init(f, frozen, globals, self_name, slots): | |
| # Return the text of the line in the body of __init__ that will | |
| # initialize this field. | |
| default_name = f'_dflt_{f.name}' | |
| if f.default_factory is not MISSING: | |
| if f.init: | |
| # This field has a default factory. If a parameter is | |
| # given, use it. If not, call the factory. | |
| globals[default_name] = f.default_factory | |
| value = (f'{default_name}() ' | |
| f'if {f.name} is _HAS_DEFAULT_FACTORY ' | |
| f'else {f.name}') | |
| else: | |
| # This is a field that's not in the __init__ params, but | |
| # has a default factory function. It needs to be | |
| # initialized here by calling the factory function, | |
| # because there's no other way to initialize it. | |
| # For a field initialized with a default=defaultvalue, the | |
| # class dict just has the default value | |
| # (cls.fieldname=defaultvalue). But that won't work for a | |
| # default factory, the factory must be called in __init__ | |
| # and we must assign that to self.fieldname. We can't | |
| # fall back to the class dict's value, both because it's | |
| # not set, and because it might be different per-class | |
| # (which, after all, is why we have a factory function!). | |
| globals[default_name] = f.default_factory | |
| value = f'{default_name}()' | |
| else: | |
| # No default factory. | |
| if f.init: | |
| if f.default is MISSING: | |
| # There's no default, just do an assignment. | |
| value = f.name | |
| elif f.default is not MISSING: | |
| globals[default_name] = f.default | |
| value = f.name | |
| else: | |
| # If the class has slots, then initialize this field. | |
| if slots and f.default is not MISSING: | |
| globals[default_name] = f.default | |
| value = default_name | |
| else: | |
| # This field does not need initialization: reading from it will | |
| # just use the class attribute that contains the default. | |
| # Signify that to the caller by returning None. | |
| return None | |
| # Only test this now, so that we can create variables for the | |
| # default. However, return None to signify that we're not going | |
| # to actually do the assignment statement for InitVars. | |
| if f._field_type is _FIELD_INITVAR: | |
| return None | |
| # Now, actually generate the field assignment. | |
| return _field_assign(frozen, f.name, value, self_name) | |
| def _init_param(f): | |
| # Return the __init__ parameter string for this field. For | |
| # example, the equivalent of 'x:int=3' (except instead of 'int', | |
| # reference a variable set to int, and instead of '3', reference a | |
| # variable set to 3). | |
| if f.default is MISSING and f.default_factory is MISSING: | |
| # There's no default, and no default_factory, just output the | |
| # variable name and type. | |
| default = '' | |
| elif f.default is not MISSING: | |
| # There's a default, this will be the name that's used to look | |
| # it up. | |
| default = f'=_dflt_{f.name}' | |
| elif f.default_factory is not MISSING: | |
| # There's a factory function. Set a marker. | |
| default = '=_HAS_DEFAULT_FACTORY' | |
| return f'{f.name}:_type_{f.name}{default}' | |
| def _init_fn(fields, std_fields, kw_only_fields, frozen, has_post_init, | |
| self_name, globals, slots): | |
| # fields contains both real fields and InitVar pseudo-fields. | |
| # Make sure we don't have fields without defaults following fields | |
| # with defaults. This actually would be caught when exec-ing the | |
| # function source code, but catching it here gives a better error | |
| # message, and future-proofs us in case we build up the function | |
| # using ast. | |
| seen_default = False | |
| for f in std_fields: | |
| # Only consider the non-kw-only fields in the __init__ call. | |
| if f.init: | |
| if not (f.default is MISSING and f.default_factory is MISSING): | |
| seen_default = True | |
| elif seen_default: | |
| raise TypeError(f'non-default argument {f.name!r} ' | |
| 'follows default argument') | |
| locals = {f'_type_{f.name}': f.type for f in fields} | |
| locals.update({ | |
| 'MISSING': MISSING, | |
| '_HAS_DEFAULT_FACTORY': _HAS_DEFAULT_FACTORY, | |
| '__dataclass_builtins_object__': object, | |
| }) | |
| body_lines = [] | |
| for f in fields: | |
| line = _field_init(f, frozen, locals, self_name, slots) | |
| # line is None means that this field doesn't require | |
| # initialization (it's a pseudo-field). Just skip it. | |
| if line: | |
| body_lines.append(line) | |
| # Does this class have a post-init function? | |
| if has_post_init: | |
| params_str = ','.join(f.name for f in fields | |
| if f._field_type is _FIELD_INITVAR) | |
| body_lines.append(f'{self_name}.{_POST_INIT_NAME}({params_str})') | |
| # If no body lines, use 'pass'. | |
| if not body_lines: | |
| body_lines = ['pass'] | |
| _init_params = [_init_param(f) for f in std_fields] | |
| if kw_only_fields: | |
| # Add the keyword-only args. Because the * can only be added if | |
| # there's at least one keyword-only arg, there needs to be a test here | |
| # (instead of just concatenting the lists together). | |
| _init_params += ['*'] | |
| _init_params += [_init_param(f) for f in kw_only_fields] | |
| return _create_fn('__init__', | |
| [self_name] + _init_params, | |
| body_lines, | |
| locals=locals, | |
| globals=globals, | |
| return_type=None) | |
| def _repr_fn(fields, globals): | |
| fn = _create_fn('__repr__', | |
| ('self',), | |
| ['return self.__class__.__qualname__ + f"(' + | |
| ', '.join([f"{f.name}={{self.{f.name}!r}}" | |
| for f in fields]) + | |
| ')"'], | |
| globals=globals) | |
| return _recursive_repr(fn) | |
| def _frozen_get_del_attr(cls, fields, globals): | |
| locals = {'cls': cls, | |
| 'FrozenInstanceError': FrozenInstanceError} | |
| if fields: | |
| fields_str = '(' + ','.join(repr(f.name) for f in fields) + ',)' | |
| else: | |
| # Special case for the zero-length tuple. | |
| fields_str = '()' | |
| return (_create_fn('__setattr__', | |
| ('self', 'name', 'value'), | |
| (f'if type(self) is cls or name in {fields_str}:', | |
| ' raise FrozenInstanceError(f"cannot assign to field {name!r}")', | |
| f'super(cls, self).__setattr__(name, value)'), | |
| locals=locals, | |
| globals=globals), | |
| _create_fn('__delattr__', | |
| ('self', 'name'), | |
| (f'if type(self) is cls or name in {fields_str}:', | |
| ' raise FrozenInstanceError(f"cannot delete field {name!r}")', | |
| f'super(cls, self).__delattr__(name)'), | |
| locals=locals, | |
| globals=globals), | |
| ) | |
| def _cmp_fn(name, op, self_tuple, other_tuple, globals): | |
| # Create a comparison function. If the fields in the object are | |
| # named 'x' and 'y', then self_tuple is the string | |
| # '(self.x,self.y)' and other_tuple is the string | |
| # '(other.x,other.y)'. | |
| return _create_fn(name, | |
| ('self', 'other'), | |
| [ 'if other.__class__ is self.__class__:', | |
| f' return {self_tuple}{op}{other_tuple}', | |
| 'return NotImplemented'], | |
| globals=globals) | |
| def _hash_fn(fields, globals): | |
| self_tuple = _tuple_str('self', fields) | |
| return _create_fn('__hash__', | |
| ('self',), | |
| [f'return hash({self_tuple})'], | |
| globals=globals) | |
| def _is_classvar(a_type, typing): | |
| # This test uses a typing internal class, but it's the best way to | |
| # test if this is a ClassVar. | |
| return (a_type is typing.ClassVar | |
| or (type(a_type) is typing._GenericAlias | |
| and a_type.__origin__ is typing.ClassVar)) | |
| def _is_initvar(a_type, dataclasses): | |
| # The module we're checking against is the module we're | |
| # currently in (dataclasses.py). | |
| return (a_type is dataclasses.InitVar | |
| or type(a_type) is dataclasses.InitVar) | |
| def _is_kw_only(a_type, dataclasses): | |
| return a_type is dataclasses.KW_ONLY | |
| def _is_type(annotation, cls, a_module, a_type, is_type_predicate): | |
| # Given a type annotation string, does it refer to a_type in | |
| # a_module? For example, when checking that annotation denotes a | |
| # ClassVar, then a_module is typing, and a_type is | |
| # typing.ClassVar. | |
| # It's possible to look up a_module given a_type, but it involves | |
| # looking in sys.modules (again!), and seems like a waste since | |
| # the caller already knows a_module. | |
| # - annotation is a string type annotation | |
| # - cls is the class that this annotation was found in | |
| # - a_module is the module we want to match | |
| # - a_type is the type in that module we want to match | |
| # - is_type_predicate is a function called with (obj, a_module) | |
| # that determines if obj is of the desired type. | |
| # Since this test does not do a local namespace lookup (and | |
| # instead only a module (global) lookup), there are some things it | |
| # gets wrong. | |
| # With string annotations, cv0 will be detected as a ClassVar: | |
| # CV = ClassVar | |
| # @dataclass | |
| # class C0: | |
| # cv0: CV | |
| # But in this example cv1 will not be detected as a ClassVar: | |
| # @dataclass | |
| # class C1: | |
| # CV = ClassVar | |
| # cv1: CV | |
| # In C1, the code in this function (_is_type) will look up "CV" in | |
| # the module and not find it, so it will not consider cv1 as a | |
| # ClassVar. This is a fairly obscure corner case, and the best | |
| # way to fix it would be to eval() the string "CV" with the | |
| # correct global and local namespaces. However that would involve | |
| # a eval() penalty for every single field of every dataclass | |
| # that's defined. It was judged not worth it. | |
| match = _MODULE_IDENTIFIER_RE.match(annotation) | |
| if match: | |
| ns = None | |
| module_name = match.group(1) | |
| if not module_name: | |
| # No module name, assume the class's module did | |
| # "from dataclasses import InitVar". | |
| ns = sys.modules.get(cls.__module__).__dict__ | |
| else: | |
| # Look up module_name in the class's module. | |
| module = sys.modules.get(cls.__module__) | |
| if module and module.__dict__.get(module_name) is a_module: | |
| ns = sys.modules.get(a_type.__module__).__dict__ | |
| if ns and is_type_predicate(ns.get(match.group(2)), a_module): | |
| return True | |
| return False | |
| def _get_field(cls, a_name, a_type, default_kw_only): | |
| # Return a Field object for this field name and type. ClassVars and | |
| # InitVars are also returned, but marked as such (see f._field_type). | |
| # default_kw_only is the value of kw_only to use if there isn't a field() | |
| # that defines it. | |
| # If the default value isn't derived from Field, then it's only a | |
| # normal default value. Convert it to a Field(). | |
| default = getattr(cls, a_name, MISSING) | |
| if isinstance(default, Field): | |
| f = default | |
| else: | |
| if isinstance(default, types.MemberDescriptorType): | |
| # This is a field in __slots__, so it has no default value. | |
| default = MISSING | |
| f = field(default=default) | |
| # Only at this point do we know the name and the type. Set them. | |
| f.name = a_name | |
| f.type = a_type | |
| # Assume it's a normal field until proven otherwise. We're next | |
| # going to decide if it's a ClassVar or InitVar, everything else | |
| # is just a normal field. | |
| f._field_type = _FIELD | |
| # In addition to checking for actual types here, also check for | |
| # string annotations. get_type_hints() won't always work for us | |
| # (see https://github.com/python/typing/issues/508 for example), | |
| # plus it's expensive and would require an eval for every string | |
| # annotation. So, make a best effort to see if this is a ClassVar | |
| # or InitVar using regex's and checking that the thing referenced | |
| # is actually of the correct type. | |
| # For the complete discussion, see https://bugs.python.org/issue33453 | |
| # If typing has not been imported, then it's impossible for any | |
| # annotation to be a ClassVar. So, only look for ClassVar if | |
| # typing has been imported by any module (not necessarily cls's | |
| # module). | |
| typing = sys.modules.get('typing') | |
| if typing: | |
| if (_is_classvar(a_type, typing) | |
| or (isinstance(f.type, str) | |
| and _is_type(f.type, cls, typing, typing.ClassVar, | |
| _is_classvar))): | |
| f._field_type = _FIELD_CLASSVAR | |
| # If the type is InitVar, or if it's a matching string annotation, | |
| # then it's an InitVar. | |
| if f._field_type is _FIELD: | |
| # The module we're checking against is the module we're | |
| # currently in (dataclasses.py). | |
| dataclasses = sys.modules[__name__] | |
| if (_is_initvar(a_type, dataclasses) | |
| or (isinstance(f.type, str) | |
| and _is_type(f.type, cls, dataclasses, dataclasses.InitVar, | |
| _is_initvar))): | |
| f._field_type = _FIELD_INITVAR | |
| # Validations for individual fields. This is delayed until now, | |
| # instead of in the Field() constructor, since only here do we | |
| # know the field name, which allows for better error reporting. | |
| # Special restrictions for ClassVar and InitVar. | |
| if f._field_type in (_FIELD_CLASSVAR, _FIELD_INITVAR): | |
| if f.default_factory is not MISSING: | |
| raise TypeError(f'field {f.name} cannot have a ' | |
| 'default factory') | |
| # Should I check for other field settings? default_factory | |
| # seems the most serious to check for. Maybe add others. For | |
| # example, how about init=False (or really, | |
| # init=<not-the-default-init-value>)? It makes no sense for | |
| # ClassVar and InitVar to specify init=<anything>. | |
| # kw_only validation and assignment. | |
| if f._field_type in (_FIELD, _FIELD_INITVAR): | |
| # For real and InitVar fields, if kw_only wasn't specified use the | |
| # default value. | |
| if f.kw_only is MISSING: | |
| f.kw_only = default_kw_only | |
| else: | |
| # Make sure kw_only isn't set for ClassVars | |
| assert f._field_type is _FIELD_CLASSVAR | |
| if f.kw_only is not MISSING: | |
| raise TypeError(f'field {f.name} is a ClassVar but specifies ' | |
| 'kw_only') | |
| # For real fields, disallow mutable defaults for known types. | |
| if f._field_type is _FIELD and isinstance(f.default, (list, dict, set)): | |
| raise ValueError(f'mutable default {type(f.default)} for field ' | |
| f'{f.name} is not allowed: use default_factory') | |
| return f | |
| def _set_qualname(cls, value): | |
| # Ensure that the functions returned from _create_fn uses the proper | |
| # __qualname__ (the class they belong to). | |
| if isinstance(value, FunctionType): | |
| value.__qualname__ = f"{cls.__qualname__}.{value.__name__}" | |
| return value | |
| def _set_new_attribute(cls, name, value): | |
| # Never overwrites an existing attribute. Returns True if the | |
| # attribute already exists. | |
| if name in cls.__dict__: | |
| return True | |
| _set_qualname(cls, value) | |
| setattr(cls, name, value) | |
| return False | |
| # Decide if/how we're going to create a hash function. Key is | |
| # (unsafe_hash, eq, frozen, does-hash-exist). Value is the action to | |
| # take. The common case is to do nothing, so instead of providing a | |
| # function that is a no-op, use None to signify that. | |
| def _hash_set_none(cls, fields, globals): | |
| return None | |
| def _hash_add(cls, fields, globals): | |
| flds = [f for f in fields if (f.compare if f.hash is None else f.hash)] | |
| return _set_qualname(cls, _hash_fn(flds, globals)) | |
| def _hash_exception(cls, fields, globals): | |
| # Raise an exception. | |
| raise TypeError(f'Cannot overwrite attribute __hash__ ' | |
| f'in class {cls.__name__}') | |
| # | |
| # +-------------------------------------- unsafe_hash? | |
| # | +------------------------------- eq? | |
| # | | +------------------------ frozen? | |
| # | | | +---------------- has-explicit-hash? | |
| # | | | | | |
| # | | | | +------- action | |
| # | | | | | | |
| # v v v v v | |
| _hash_action = {(False, False, False, False): None, | |
| (False, False, False, True ): None, | |
| (False, False, True, False): None, | |
| (False, False, True, True ): None, | |
| (False, True, False, False): _hash_set_none, | |
| (False, True, False, True ): None, | |
| (False, True, True, False): _hash_add, | |
| (False, True, True, True ): None, | |
| (True, False, False, False): _hash_add, | |
| (True, False, False, True ): _hash_exception, | |
| (True, False, True, False): _hash_add, | |
| (True, False, True, True ): _hash_exception, | |
| (True, True, False, False): _hash_add, | |
| (True, True, False, True ): _hash_exception, | |
| (True, True, True, False): _hash_add, | |
| (True, True, True, True ): _hash_exception, | |
| } | |
| # See https://bugs.python.org/issue32929#msg312829 for an if-statement | |
| # version of this table. | |
| def _process_class(cls, init, repr, eq, order, unsafe_hash, frozen, | |
| match_args, kw_only, slots): | |
| # Now that dicts retain insertion order, there's no reason to use | |
| # an ordered dict. I am leveraging that ordering here, because | |
| # derived class fields overwrite base class fields, but the order | |
| # is defined by the base class, which is found first. | |
| fields = {} | |
| if cls.__module__ in sys.modules: | |
| globals = sys.modules[cls.__module__].__dict__ | |
| else: | |
| # Theoretically this can happen if someone writes | |
| # a custom string to cls.__module__. In which case | |
| # such dataclass won't be fully introspectable | |
| # (w.r.t. typing.get_type_hints) but will still function | |
| # correctly. | |
| globals = {} | |
| setattr(cls, _PARAMS, _DataclassParams(init, repr, eq, order, | |
| unsafe_hash, frozen)) | |
| # Find our base classes in reverse MRO order, and exclude | |
| # ourselves. In reversed order so that more derived classes | |
| # override earlier field definitions in base classes. As long as | |
| # we're iterating over them, see if any are frozen. | |
| any_frozen_base = False | |
| has_dataclass_bases = False | |
| for b in cls.__mro__[-1:0:-1]: | |
| # Only process classes that have been processed by our | |
| # decorator. That is, they have a _FIELDS attribute. | |
| base_fields = getattr(b, _FIELDS, None) | |
| if base_fields is not None: | |
| has_dataclass_bases = True | |
| for f in base_fields.values(): | |
| fields[f.name] = f | |
| if getattr(b, _PARAMS).frozen: | |
| any_frozen_base = True | |
| # Annotations that are defined in this class (not in base | |
| # classes). If __annotations__ isn't present, then this class | |
| # adds no new annotations. We use this to compute fields that are | |
| # added by this class. | |
| # | |
| # Fields are found from cls_annotations, which is guaranteed to be | |
| # ordered. Default values are from class attributes, if a field | |
| # has a default. If the default value is a Field(), then it | |
| # contains additional info beyond (and possibly including) the | |
| # actual default value. Pseudo-fields ClassVars and InitVars are | |
| # included, despite the fact that they're not real fields. That's | |
| # dealt with later. | |
| cls_annotations = cls.__dict__.get('__annotations__', {}) | |
| # Now find fields in our class. While doing so, validate some | |
| # things, and set the default values (as class attributes) where | |
| # we can. | |
| cls_fields = [] | |
| # Get a reference to this module for the _is_kw_only() test. | |
| KW_ONLY_seen = False | |
| dataclasses = sys.modules[__name__] | |
| for name, type in cls_annotations.items(): | |
| # See if this is a marker to change the value of kw_only. | |
| if (_is_kw_only(type, dataclasses) | |
| or (isinstance(type, str) | |
| and _is_type(type, cls, dataclasses, dataclasses.KW_ONLY, | |
| _is_kw_only))): | |
| # Switch the default to kw_only=True, and ignore this | |
| # annotation: it's not a real field. | |
| if KW_ONLY_seen: | |
| raise TypeError(f'{name!r} is KW_ONLY, but KW_ONLY ' | |
| 'has already been specified') | |
| KW_ONLY_seen = True | |
| kw_only = True | |
| else: | |
| # Otherwise it's a field of some type. | |
| cls_fields.append(_get_field(cls, name, type, kw_only)) | |
| for f in cls_fields: | |
| fields[f.name] = f | |
| # If the class attribute (which is the default value for this | |
| # field) exists and is of type 'Field', replace it with the | |
| # real default. This is so that normal class introspection | |
| # sees a real default value, not a Field. | |
| if isinstance(getattr(cls, f.name, None), Field): | |
| if f.default is MISSING: | |
| # If there's no default, delete the class attribute. | |
| # This happens if we specify field(repr=False), for | |
| # example (that is, we specified a field object, but | |
| # no default value). Also if we're using a default | |
| # factory. The class attribute should not be set at | |
| # all in the post-processed class. | |
| delattr(cls, f.name) | |
| else: | |
| setattr(cls, f.name, f.default) | |
| # Do we have any Field members that don't also have annotations? | |
| for name, value in cls.__dict__.items(): | |
| if isinstance(value, Field) and not name in cls_annotations: | |
| raise TypeError(f'{name!r} is a field but has no type annotation') | |
| # Check rules that apply if we are derived from any dataclasses. | |
| if has_dataclass_bases: | |
| # Raise an exception if any of our bases are frozen, but we're not. | |
| if any_frozen_base and not frozen: | |
| raise TypeError('cannot inherit non-frozen dataclass from a ' | |
| 'frozen one') | |
| # Raise an exception if we're frozen, but none of our bases are. | |
| if not any_frozen_base and frozen: | |
| raise TypeError('cannot inherit frozen dataclass from a ' | |
| 'non-frozen one') | |
| # Remember all of the fields on our class (including bases). This | |
| # also marks this class as being a dataclass. | |
| setattr(cls, _FIELDS, fields) | |
| # Was this class defined with an explicit __hash__? Note that if | |
| # __eq__ is defined in this class, then python will automatically | |
| # set __hash__ to None. This is a heuristic, as it's possible | |
| # that such a __hash__ == None was not auto-generated, but it | |
| # close enough. | |
| class_hash = cls.__dict__.get('__hash__', MISSING) | |
| has_explicit_hash = not (class_hash is MISSING or | |
| (class_hash is None and '__eq__' in cls.__dict__)) | |
| # If we're generating ordering methods, we must be generating the | |
| # eq methods. | |
| if order and not eq: | |
| raise ValueError('eq must be true if order is true') | |
| # Include InitVars and regular fields (so, not ClassVars). This is | |
| # initialized here, outside of the "if init:" test, because std_init_fields | |
| # is used with match_args, below. | |
| all_init_fields = [f for f in fields.values() | |
| if f._field_type in (_FIELD, _FIELD_INITVAR)] | |
| (std_init_fields, | |
| kw_only_init_fields) = _fields_in_init_order(all_init_fields) | |
| if init: | |
| # Does this class have a post-init function? | |
| has_post_init = hasattr(cls, _POST_INIT_NAME) | |
| _set_new_attribute(cls, '__init__', | |
| _init_fn(all_init_fields, | |
| std_init_fields, | |
| kw_only_init_fields, | |
| frozen, | |
| has_post_init, | |
| # The name to use for the "self" | |
| # param in __init__. Use "self" | |
| # if possible. | |
| '__dataclass_self__' if 'self' in fields | |
| else 'self', | |
| globals, | |
| slots, | |
| )) | |
| # Get the fields as a list, and include only real fields. This is | |
| # used in all of the following methods. | |
| field_list = [f for f in fields.values() if f._field_type is _FIELD] | |
| if repr: | |
| flds = [f for f in field_list if f.repr] | |
| _set_new_attribute(cls, '__repr__', _repr_fn(flds, globals)) | |
| if eq: | |
| # Create __eq__ method. There's no need for a __ne__ method, | |
| # since python will call __eq__ and negate it. | |
| flds = [f for f in field_list if f.compare] | |
| self_tuple = _tuple_str('self', flds) | |
| other_tuple = _tuple_str('other', flds) | |
| _set_new_attribute(cls, '__eq__', | |
| _cmp_fn('__eq__', '==', | |
| self_tuple, other_tuple, | |
| globals=globals)) | |
| if order: | |
| # Create and set the ordering methods. | |
| flds = [f for f in field_list if f.compare] | |
| self_tuple = _tuple_str('self', flds) | |
| other_tuple = _tuple_str('other', flds) | |
| for name, op in [('__lt__', '<'), | |
| ('__le__', '<='), | |
| ('__gt__', '>'), | |
| ('__ge__', '>='), | |
| ]: | |
| if _set_new_attribute(cls, name, | |
| _cmp_fn(name, op, self_tuple, other_tuple, | |
| globals=globals)): | |
| raise TypeError(f'Cannot overwrite attribute {name} ' | |
| f'in class {cls.__name__}. Consider using ' | |
| 'functools.total_ordering') | |
| if frozen: | |
| for fn in _frozen_get_del_attr(cls, field_list, globals): | |
| if _set_new_attribute(cls, fn.__name__, fn): | |
| raise TypeError(f'Cannot overwrite attribute {fn.__name__} ' | |
| f'in class {cls.__name__}') | |
| # Decide if/how we're going to create a hash function. | |
| hash_action = _hash_action[bool(unsafe_hash), | |
| bool(eq), | |
| bool(frozen), | |
| has_explicit_hash] | |
| if hash_action: | |
| # No need to call _set_new_attribute here, since by the time | |
| # we're here the overwriting is unconditional. | |
| cls.__hash__ = hash_action(cls, field_list, globals) | |
| if not getattr(cls, '__doc__'): | |
| # Create a class doc-string. | |
| cls.__doc__ = (cls.__name__ + | |
| str(inspect.signature(cls)).replace(' -> None', '')) | |
| if match_args: | |
| # I could probably compute this once | |
| _set_new_attribute(cls, '__match_args__', | |
| tuple(f.name for f in std_init_fields)) | |
| if slots: | |
| cls = _add_slots(cls, frozen) | |
| abc.update_abstractmethods(cls) | |
| return cls | |
| # _dataclass_getstate and _dataclass_setstate are needed for pickling frozen | |
| # classes with slots. These could be slighly more performant if we generated | |
| # the code instead of iterating over fields. But that can be a project for | |
| # another day, if performance becomes an issue. | |
| def _dataclass_getstate(self): | |
| return [getattr(self, f.name) for f in fields(self)] | |
| def _dataclass_setstate(self, state): | |
| for field, value in zip(fields(self), state): | |
| # use setattr because dataclass may be frozen | |
| object.__setattr__(self, field.name, value) | |
| def _add_slots(cls, is_frozen): | |
| # Need to create a new class, since we can't set __slots__ | |
| # after a class has been created. | |
| # Make sure __slots__ isn't already set. | |
| if '__slots__' in cls.__dict__: | |
| raise TypeError(f'{cls.__name__} already specifies __slots__') | |
| # Create a new dict for our new class. | |
| cls_dict = dict(cls.__dict__) | |
| field_names = tuple(f.name for f in fields(cls)) | |
| cls_dict['__slots__'] = field_names | |
| for field_name in field_names: | |
| # Remove our attributes, if present. They'll still be | |
| # available in _MARKER. | |
| cls_dict.pop(field_name, None) | |
| # Remove __dict__ itself. | |
| cls_dict.pop('__dict__', None) | |
| # And finally create the class. | |
| qualname = getattr(cls, '__qualname__', None) | |
| cls = type(cls)(cls.__name__, cls.__bases__, cls_dict) | |
| if qualname is not None: | |
| cls.__qualname__ = qualname | |
| if is_frozen: | |
| # Need this for pickling frozen classes with slots. | |
| cls.__getstate__ = _dataclass_getstate | |
| cls.__setstate__ = _dataclass_setstate | |
| return cls | |
| def dataclass(cls=None, /, *, init=True, repr=True, eq=True, order=False, | |
| unsafe_hash=False, frozen=False, match_args=True, | |
| kw_only=False, slots=False): | |
| """Returns the same class as was passed in, with dunder methods | |
| added based on the fields defined in the class. | |
| Examines PEP 526 __annotations__ to determine fields. | |
| If init is true, an __init__() method is added to the class. If | |
| repr is true, a __repr__() method is added. If order is true, rich | |
| comparison dunder methods are added. If unsafe_hash is true, a | |
| __hash__() method function is added. If frozen is true, fields may | |
| not be assigned to after instance creation. If match_args is true, | |
| the __match_args__ tuple is added. If kw_only is true, then by | |
| default all fields are keyword-only. If slots is true, an | |
| __slots__ attribute is added. | |
| """ | |
| def wrap(cls): | |
| return _process_class(cls, init, repr, eq, order, unsafe_hash, | |
| frozen, match_args, kw_only, slots) | |
| # See if we're being called as @dataclass or @dataclass(). | |
| if cls is None: | |
| # We're called with parens. | |
| return wrap | |
| # We're called as @dataclass without parens. | |
| return wrap(cls) | |
| def fields(class_or_instance): | |
| """Return a tuple describing the fields of this dataclass. | |
| Accepts a dataclass or an instance of one. Tuple elements are of | |
| type Field. | |
| """ | |
| # Might it be worth caching this, per class? | |
| try: | |
| fields = getattr(class_or_instance, _FIELDS) | |
| except AttributeError: | |
| raise TypeError('must be called with a dataclass type or instance') from None | |
| # Exclude pseudo-fields. Note that fields is sorted by insertion | |
| # order, so the order of the tuple is as the fields were defined. | |
| return tuple(f for f in fields.values() if f._field_type is _FIELD) | |
| def _is_dataclass_instance(obj): | |
| """Returns True if obj is an instance of a dataclass.""" | |
| return hasattr(type(obj), _FIELDS) | |
| def is_dataclass(obj): | |
| """Returns True if obj is a dataclass or an instance of a | |
| dataclass.""" | |
| cls = obj if isinstance(obj, type) and not isinstance(obj, GenericAlias) else type(obj) | |
| return hasattr(cls, _FIELDS) | |
| def asdict(obj, *, dict_factory=dict): | |
| """Return the fields of a dataclass instance as a new dictionary mapping | |
| field names to field values. | |
| Example usage: | |
| @dataclass | |
| class C: | |
| x: int | |
| y: int | |
| c = C(1, 2) | |
| assert asdict(c) == {'x': 1, 'y': 2} | |
| If given, 'dict_factory' will be used instead of built-in dict. | |
| The function applies recursively to field values that are | |
| dataclass instances. This will also look into built-in containers: | |
| tuples, lists, and dicts. | |
| """ | |
| if not _is_dataclass_instance(obj): | |
| raise TypeError("asdict() should be called on dataclass instances") | |
| return _asdict_inner(obj, dict_factory) | |
| def _asdict_inner(obj, dict_factory): | |
| if _is_dataclass_instance(obj): | |
| result = [] | |
| for f in fields(obj): | |
| value = _asdict_inner(getattr(obj, f.name), dict_factory) | |
| result.append((f.name, value)) | |
| return dict_factory(result) | |
| elif isinstance(obj, tuple) and hasattr(obj, '_fields'): | |
| # obj is a namedtuple. Recurse into it, but the returned | |
| # object is another namedtuple of the same type. This is | |
| # similar to how other list- or tuple-derived classes are | |
| # treated (see below), but we just need to create them | |
| # differently because a namedtuple's __init__ needs to be | |
| # called differently (see bpo-34363). | |
| # I'm not using namedtuple's _asdict() | |
| # method, because: | |
| # - it does not recurse in to the namedtuple fields and | |
| # convert them to dicts (using dict_factory). | |
| # - I don't actually want to return a dict here. The main | |
| # use case here is json.dumps, and it handles converting | |
| # namedtuples to lists. Admittedly we're losing some | |
| # information here when we produce a json list instead of a | |
| # dict. Note that if we returned dicts here instead of | |
| # namedtuples, we could no longer call asdict() on a data | |
| # structure where a namedtuple was used as a dict key. | |
| return type(obj)(*[_asdict_inner(v, dict_factory) for v in obj]) | |
| elif isinstance(obj, (list, tuple)): | |
| # Assume we can create an object of this type by passing in a | |
| # generator (which is not true for namedtuples, handled | |
| # above). | |
| return type(obj)(_asdict_inner(v, dict_factory) for v in obj) | |
| elif isinstance(obj, dict): | |
| return type(obj)((_asdict_inner(k, dict_factory), | |
| _asdict_inner(v, dict_factory)) | |
| for k, v in obj.items()) | |
| else: | |
| return copy.deepcopy(obj) | |
| def astuple(obj, *, tuple_factory=tuple): | |
| """Return the fields of a dataclass instance as a new tuple of field values. | |
| Example usage:: | |
| @dataclass | |
| class C: | |
| x: int | |
| y: int | |
| c = C(1, 2) | |
| assert astuple(c) == (1, 2) | |
| If given, 'tuple_factory' will be used instead of built-in tuple. | |
| The function applies recursively to field values that are | |
| dataclass instances. This will also look into built-in containers: | |
| tuples, lists, and dicts. | |
| """ | |
| if not _is_dataclass_instance(obj): | |
| raise TypeError("astuple() should be called on dataclass instances") | |
| return _astuple_inner(obj, tuple_factory) | |
| def _astuple_inner(obj, tuple_factory): | |
| if _is_dataclass_instance(obj): | |
| result = [] | |
| for f in fields(obj): | |
| value = _astuple_inner(getattr(obj, f.name), tuple_factory) | |
| result.append(value) | |
| return tuple_factory(result) | |
| elif isinstance(obj, tuple) and hasattr(obj, '_fields'): | |
| # obj is a namedtuple. Recurse into it, but the returned | |
| # object is another namedtuple of the same type. This is | |
| # similar to how other list- or tuple-derived classes are | |
| # treated (see below), but we just need to create them | |
| # differently because a namedtuple's __init__ needs to be | |
| # called differently (see bpo-34363). | |
| return type(obj)(*[_astuple_inner(v, tuple_factory) for v in obj]) | |
| elif isinstance(obj, (list, tuple)): | |
| # Assume we can create an object of this type by passing in a | |
| # generator (which is not true for namedtuples, handled | |
| # above). | |
| return type(obj)(_astuple_inner(v, tuple_factory) for v in obj) | |
| elif isinstance(obj, dict): | |
| return type(obj)((_astuple_inner(k, tuple_factory), _astuple_inner(v, tuple_factory)) | |
| for k, v in obj.items()) | |
| else: | |
| return copy.deepcopy(obj) | |
| def make_dataclass(cls_name, fields, *, bases=(), namespace=None, init=True, | |
| repr=True, eq=True, order=False, unsafe_hash=False, | |
| frozen=False, match_args=True, kw_only=False, slots=False): | |
| """Return a new dynamically created dataclass. | |
| The dataclass name will be 'cls_name'. 'fields' is an iterable | |
| of either (name), (name, type) or (name, type, Field) objects. If type is | |
| omitted, use the string 'typing.Any'. Field objects are created by | |
| the equivalent of calling 'field(name, type [, Field-info])'. | |
| C = make_dataclass('C', ['x', ('y', int), ('z', int, field(init=False))], bases=(Base,)) | |
| is equivalent to: | |
| @dataclass | |
| class C(Base): | |
| x: 'typing.Any' | |
| y: int | |
| z: int = field(init=False) | |
| For the bases and namespace parameters, see the builtin type() function. | |
| The parameters init, repr, eq, order, unsafe_hash, and frozen are passed to | |
| dataclass(). | |
| """ | |
| if namespace is None: | |
| namespace = {} | |
| # While we're looking through the field names, validate that they | |
| # are identifiers, are not keywords, and not duplicates. | |
| seen = set() | |
| annotations = {} | |
| defaults = {} | |
| for item in fields: | |
| if isinstance(item, str): | |
| name = item | |
| tp = 'typing.Any' | |
| elif len(item) == 2: | |
| name, tp, = item | |
| elif len(item) == 3: | |
| name, tp, spec = item | |
| defaults[name] = spec | |
| else: | |
| raise TypeError(f'Invalid field: {item!r}') | |
| if not isinstance(name, str) or not name.isidentifier(): | |
| raise TypeError(f'Field names must be valid identifiers: {name!r}') | |
| if keyword.iskeyword(name): | |
| raise TypeError(f'Field names must not be keywords: {name!r}') | |
| if name in seen: | |
| raise TypeError(f'Field name duplicated: {name!r}') | |
| seen.add(name) | |
| annotations[name] = tp | |
| # Update 'ns' with the user-supplied namespace plus our calculated values. | |
| def exec_body_callback(ns): | |
| ns.update(namespace) | |
| ns.update(defaults) | |
| ns['__annotations__'] = annotations | |
| # We use `types.new_class()` instead of simply `type()` to allow dynamic creation | |
| # of generic dataclasses. | |
| cls = types.new_class(cls_name, bases, {}, exec_body_callback) | |
| # Apply the normal decorator. | |
| return dataclass(cls, init=init, repr=repr, eq=eq, order=order, | |
| unsafe_hash=unsafe_hash, frozen=frozen, | |
| match_args=match_args, kw_only=kw_only, slots=slots) | |
| def replace(obj, /, **changes): | |
| """Return a new object replacing specified fields with new values. | |
| This is especially useful for frozen classes. Example usage: | |
| @dataclass(frozen=True) | |
| class C: | |
| x: int | |
| y: int | |
| c = C(1, 2) | |
| c1 = replace(c, x=3) | |
| assert c1.x == 3 and c1.y == 2 | |
| """ | |
| # We're going to mutate 'changes', but that's okay because it's a | |
| # new dict, even if called with 'replace(obj, **my_changes)'. | |
| if not _is_dataclass_instance(obj): | |
| raise TypeError("replace() should be called on dataclass instances") | |
| # It's an error to have init=False fields in 'changes'. | |
| # If a field is not in 'changes', read its value from the provided obj. | |
| for f in getattr(obj, _FIELDS).values(): | |
| # Only consider normal fields or InitVars. | |
| if f._field_type is _FIELD_CLASSVAR: | |
| continue | |
| if not f.init: | |
| # Error if this field is specified in changes. | |
| if f.name in changes: | |
| raise ValueError(f'field {f.name} is declared with ' | |
| 'init=False, it cannot be specified with ' | |
| 'replace()') | |
| continue | |
| if f.name not in changes: | |
| if f._field_type is _FIELD_INITVAR and f.default is MISSING: | |
| raise ValueError(f"InitVar {f.name!r} " | |
| 'must be specified with replace()') | |
| changes[f.name] = getattr(obj, f.name) | |
| # Create the new object, which calls __init__() and | |
| # __post_init__() (if defined), using all of the init fields we've | |
| # added and/or left in 'changes'. If there are values supplied in | |
| # changes that aren't fields, this will correctly raise a | |
| # TypeError. | |
| return obj.__class__(**changes) | |
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