I have a class MyClass, which contains two member variables foo and bar:

class MyClass:
    def __init__(self, foo, bar):
        self.foo = foo
        self.bar = bar

I have two instances of this class, each of which has identical values for foo and bar:

x = MyClass('foo', 'bar')
y = MyClass('foo', 'bar')

However, when I compare them for equality, Python returns False:

>>> x == y

How can I make python consider these two objects equal?


16 Answers 16


You should implement the method __eq__:

class MyClass:
    def __init__(self, foo, bar):
        self.foo = foo
        self.bar = bar

    def __eq__(self, other): 
        if not isinstance(other, MyClass):
            # don't attempt to compare against unrelated types
            return NotImplemented

        return self.foo == other.foo and self.bar == other.bar

Now it outputs:

>>> x == y

Note that implementing __eq__ will automatically make instances of your class unhashable, which means they can't be stored in sets and dicts. If you're not modelling an immutable type (i.e. if the attributes foo and bar may change value within the lifetime of your object), then it's recommend to just leave your instances as unhashable.

If you are modelling an immutable type, you should also implement the datamodel hook __hash__:

class MyClass:

    def __hash__(self):
        # necessary for instances to behave sanely in dicts and sets.
        return hash((self.foo, self.bar))

A general solution, like the idea of looping through __dict__ and comparing values, is not advisable - it can never be truly general because the __dict__ may have uncomparable or unhashable types contained within.

N.B.: be aware that before Python 3, you may need to use __cmp__ instead of __eq__. Python 2 users may also want to implement __ne__, since a sensible default behaviour for inequality (i.e. inverting the equality result) will not be automatically created in Python 2.


You override the rich comparison operators in your object.

class MyClass:
 def __lt__(self, other):
      # return comparison
 def __le__(self, other):
      # return comparison
 def __eq__(self, other):
      # return comparison
 def __ne__(self, other):
      # return comparison
 def __gt__(self, other):
      # return comparison
 def __ge__(self, other):
      # return comparison

Like this:

    def __eq__(self, other):
        return self._id == other._id
  • 4
    Note that in Python 2.5 and onwards, the class must define __eq__(), but only one of __lt__(), __le__(), __gt__(), or __ge__() is needed in addition to that. From that, Python can infer the other methods. See functools for more information. – kba Nov 19 '13 at 1:42
  • 1
    @kba, I don't think that's true. This may work for the functools module, but does not work for standard comparators: MyObj1 != Myobj2 will only work if the __ne__() method is implemented. – Arel May 10 '15 at 22:43
  • 6
    the specific tip about functools should be to use the @functools.total_ordering decorator on your class, then as above you can define just __eq__ and one other and the rest will be derived – Anentropic Sep 8 '17 at 10:34

Implement the __eq__ method in your class; something like this:

def __eq__(self, other):
    return self.path == other.path and self.title == other.title

Edit: if you want your objects to compare equal if and only if they have equal instance dictionaries:

def __eq__(self, other):
    return self.__dict__ == other.__dict__
  • Perhaps you mean self is other to see if they are the same object. – S.Lott Aug 4 '09 at 13:56
  • 2
    -1. Even if this is two dictionary instance, Python will compare them by keys / values automatically. This is not Java... – e-satis Aug 4 '09 at 16:32
  • The first solution can raise an AttributeError. You have to insert the line if hasattr(other, "path") and hasattr(other, "title"): (like this nice example in the Python documentation). – Maggyero Jun 11 '18 at 5:54

If you're dealing with one or more classes which you can't change from the inside, there are generic and simple ways to do this that also don't depend on a diff-specific library:

Easiest, unsafe-for-very-complex-objects method

pickle.dumps(a) == pickle.dumps(b)

pickle is a very common serialization lib for Python objects, and will thus be able to serialize pretty much anything, really. In the above snippet I'm comparing the str from serialized a with the one from b. Unlike the next method, this one has the advantage of also type checking custom classes.

The biggest hassle: due to specific ordering and [de/en]coding methods, pickle may not yield the same result for equal objects, specially when dealing with more complex ones (e.g. lists of nested custom-class instances) like you'll frequently find in some third-party libs. For those cases, I'd recommend a different approach:

Thorough, safe-for-any-object method

You could write a recursive reflection that'll give you serializable objects, and then compare results

from collections.abc import Iterable

BASE_TYPES = [str, int, float, bool, type(None)]

def base_typed(obj):
    """Recursive reflection method to convert any object property into a comparable form.
    T = type(obj)
    from_numpy = T.__module__ == 'numpy'

    if T in BASE_TYPES or callable(obj) or (from_numpy and not isinstance(T, Iterable)):
        return obj

    if isinstance(obj, Iterable):
        base_items = [base_typed(item) for item in obj]
        return base_items if from_numpy else T(base_items)

    d = obj if T is dict else obj.__dict__

    return {k: base_typed(v) for k, v in d.items()}

def deep_equals(*args):
    return all(base_typed(args[0]) == base_typed(other) for other in args[1:])

Now it doesn't matter what your objects are, deep equality is assured to work

>>> from sklearn.ensemble import RandomForestClassifier
>>> a = RandomForestClassifier(max_depth=2, random_state=42)
>>> b = RandomForestClassifier(max_depth=2, random_state=42)
>>> deep_equals(a, b)

The number of comparables doesn't matter as well

>>> c = RandomForestClassifier(max_depth=2, random_state=1000)
>>> deep_equals(a, b, c)

My use case for this was checking deep equality among a diverse set of already trained Machine Learning models inside BDD tests. The models belonged to a diverse set of third-party libs. Certainly implementing __eq__ like other answers here suggest wasn't an option for me.

Covering all the bases

You may be in a scenario where one or more of the custom classes being compared do not have a __dict__ implementation. That's not common by any means, but it is the case of a subtype within sklearn's Random Forest classifier: <type 'sklearn.tree._tree.Tree'>. Treat these situations in a case by case basis - e.g. specifically, I decided to replace the content of the afflicted type with the content of a method that gives me representative information on the instance (in this case, the __getstate__ method). For such, the second-to-last row in base_typed became

d = obj if T is dict else obj.__dict__ if '__dict__' in dir(obj) else obj.__getstate__()

Edit: for the sake of organization, I replaced the hideous oneliner above with return dict_from(obj). Here, dict_from is a really generic reflection made to accommodate more obscure libs (I'm looking at you, Doc2Vec)

def isproperty(prop, obj):
    return not callable(getattr(obj, prop)) and not prop.startswith('_')

def dict_from(obj):
    """Converts dict-like objects into dicts
    if isinstance(obj, dict):
        # Dict and subtypes are directly converted
        d = dict(obj)

    elif '__dict__' in dir(obj):
        # Use standard dict representation when available
        d = obj.__dict__

    elif str(type(obj)) == 'sklearn.tree._tree.Tree':
        # Replaces sklearn trees with their state metadata
        d = obj.__getstate__()

        # Extract non-callable, non-private attributes with reflection
        kv = [(p, getattr(obj, p)) for p in dir(obj) if isproperty(p, obj)]
        d = {k: v for k, v in kv}

    return {k: base_typed(v) for k, v in d.items()}

Do mind none of the above methods yield True for objects with the same key-value pairs in differing order, as in

>>> a = {'foo':[], 'bar':{}}
>>> b = {'bar':{}, 'foo':[]}
>>> pickle.dumps(a) == pickle.dumps(b)

But if you want that you could use Python's built-in sorted method beforehand anyway.


As a summary :

  1. It's advised to implement __eq__ rather than __cmp__, except if you run python <= 2.0 (__eq__ has been added in 2.1)
  2. Don't forget to also implement __ne__ (should be something like return not self.__eq__(other) or return not self == other except very special case)
  3. Don`t forget that the operator must be implemented in each custom class you want to compare (see example below).
  4. If you want to compare with object that can be None, you must implement it. The interpreter cannot guess it ... (see example below)

    class B(object):
      def __init__(self):
        self.name = "toto"
      def __eq__(self, other):
        if other is None:
          return False
        return self.name == other.name
    class A(object):
      def __init__(self):
        self.toto = "titi"
        self.b_inst = B()
      def __eq__(self, other):
        if other is None:
          return False
        return (self.toto, self.b_inst) == (other.toto, other.b_inst)

Depending on your specific case, you could do:

>>> vars(x) == vars(y)

See Python dictionary from an object's fields

  • Also interesting, while vars returns a dict, unittest's assertDictEqual doesn't seem to work, even though visual review shows that they are, in fact, equal. I got around this by turning the dicts into strings & comparing those: self.assertEqual(str(vars(tbl0)), str(vars(local_tbl0))) – Ben Jun 7 '20 at 23:33
  • Excellent solution for my case, where I can't change the class itself. – IFink Dec 9 '20 at 17:59

With Dataclasses in Python 3.7 (and above), a comparison of object instances for equality is an inbuilt feature.

A backport for Dataclasses is available for Python 3.6.

(Py37) nsc@nsc-vbox:~$ python
Python 3.7.5 (default, Nov  7 2019, 10:50:52) 
[GCC 8.3.0] on linux
Type "help", "copyright", "credits" or "license" for more information.
>>> from dataclasses import dataclass
>>> @dataclass
... class MyClass():
...     foo: str
...     bar: str
>>> x = MyClass(foo="foo", bar="bar")
>>> y = MyClass(foo="foo", bar="bar")
>>> x == y

When comparing instances of objects, the __cmp__ function is called.

If the == operator is not working for you by default, you can always redefine the __cmp__ function for the object.


As has been pointed out, the __cmp__ function is deprecated since 3.0. Instead you should use the “rich comparison” methods.

  • 2
    The cmp function is deprecated for 3.0+ – Christopher Aug 4 '09 at 12:17

I wrote this and placed it in a test/utils module in my project. For cases when its not a class, just plan ol' dict, this will traverse both objects and ensure

  1. every attribute is equal to its counterpart
  2. No dangling attributes exist (attrs that only exist on one object)

Its big... its not sexy... but oh boi does it work!

def assertObjectsEqual(obj_a, obj_b):

    def _assert(a, b):
        if a == b:
        raise AssertionError(f'{a} !== {b} inside assertObjectsEqual')

    def _check(a, b):
        if a is None or b is None:
            _assert(a, b)
        for k,v in a.items():
            if isinstance(v, dict):
                assertObjectsEqual(v, b[k])
                _assert(v, b[k])

    # Asserting both directions is more work
    # but it ensures no dangling values on
    # on either object
    _check(obj_a, obj_b)
    _check(obj_b, obj_a)

You can clean it up a little by removing the _assert and just using plain ol' assert but then the message you get when it fails is very unhelpful.


You should implement the method __eq__:

 class MyClass:
      def __init__(self, foo, bar, name):
           self.foo = foo
           self.bar = bar
           self.name = name

      def __eq__(self,other):
           if not isinstance(other,MyClass):
                return NotImplemented
                #string lists of all method names and properties of each of these objects
                prop_names1 = list(self.__dict__)
                prop_names2 = list(other.__dict__)

                n = len(prop_names1) #number of properties
                for i in range(n):
                     if getattr(self,prop_names1[i]) != getattr(other,prop_names2[i]):
                          return False

                return True
  • 2
    Please edit your answer and add further explanation to your code, explaining why it is different from the ten other answers. This question is ten years old, and already has an accepted answer and several very high-quality ones. Without additional details, your answer is of much lower quality compared to the others, and will most likely be downvoted or deleted. – Das_Geek Nov 12 '19 at 18:39

Below works (in my limited testing) by doing deep compare between two object hierarchies. In handles various cases including the cases when objects themselves or their attributes are dictionaries.

def deep_comp(o1:Any, o2:Any)->bool:
    # NOTE: dict don't have __dict__
    o1d = getattr(o1, '__dict__', None)
    o2d = getattr(o2, '__dict__', None)

    # if both are objects
    if o1d is not None and o2d is not None:
        # we will compare their dictionaries
        o1, o2 = o1.__dict__, o2.__dict__

    if o1 is not None and o2 is not None:
        # if both are dictionaries, we will compare each key
        if isinstance(o1, dict) and isinstance(o2, dict):
            for k in set().union(o1.keys() ,o2.keys()):
                if k in o1 and k in o2:
                    if not deep_comp(o1[k], o2[k]):
                        return False
                    return False # some key missing
            return True
    # mismatched object types or both are scalers, or one or both None
    return o1 == o2

This is a very tricky code so please add any cases that might not work for you in comments.


Use the setattr function. You might want to use this when you can't add something inside the class itself, say, when you are importing the class.

setattr(MyClass, "__eq__", lambda x, y: x.foo == y.foo and x.bar == y.bar)

If you want to get an attribute-by-attribute comparison, and see if and where it fails, you can use the following list comprehension:

[i for i,j in 
 zip([getattr(obj_1, attr) for attr in dir(obj_1)],
     [getattr(obj_2, attr) for attr in dir(obj_2)]) 
 if not i==j]

The extra advantage here is that you can squeeze it one line and enter in the "Evaluate Expression" window when debugging in PyCharm.

class Node:
    def __init__(self, value):
        self.value = value
        self.next = None

    def __repr__(self):
        return str(self.value)

    def __eq__(self,other):
        return self.value == other.value

node1 = Node(1)
node2 = Node(1)

print(f'node1 id:{id(node1)}')
print(f'node2 id:{id(node2)}')
print(node1 == node2)
>>> node1 id:4396696848
>>> node2 id:4396698000
>>> True

I tried the initial example (see 7 above) and it did not work in ipython. Note that cmp(obj1,obj2) returns a "1" when implemented using two identical object instances. Oddly enough when I modify one of the attribute values and recompare, using cmp(obj1,obj2) the object continues to return a "1". (sigh...)

Ok, so what you need to do is iterate two objects and compare each attribute using the == sign.

  • In Python 2.7 at least, objects are compared by identity by default. That means for CPython in practical words they compare by they memory address. That's why cmp(o1, o2) returns 0 only when "o1 is o2" and consistently 1 or -1 depending upon the values of id(o1) and id(o2) – yacc143 Dec 1 '14 at 10:15

Instance of a class when compared with == comes to non-equal. The best way is to ass the cmp function to your class which will do the stuff.

If you want to do comparison by the content you can simply use cmp(obj1,obj2)

In your case cmp(doc1,doc2) It will return -1 if the content wise they are same.


Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.