My editor warns me when I compare my_var == None, but no warning when I use my_var is None.

I did a test in the Python shell and determined both are valid syntax, but my editor seems to be saying that my_var is None is preferred.

Is this the case, and if so, why?

  • 8
    PEP 8 says somewhere that you should compare to singletons using is - python.org/dev/peps/pep-0008/#programming-recommendations
    – Volatility
    Jan 9, 2013 at 22:11
  • 2
    That poster is talking about Python 3, and my question is about Python 2.x. I am not sure if this is a big enough difference to warrant both remaining but I edited the question to include that just in case. Jan 9, 2013 at 22:30
  • 3
    I don't think this question is really a duplicate. The other was about == vs is in general, this one is about None in particular. May 4, 2014 at 21:47

6 Answers 6



Use is when you want to check against an object's identity (e.g. checking to see if var is None). Use == when you want to check equality (e.g. Is var equal to 3?).


You can have custom classes where my_var == None will return True


class Negator(object):
    def __eq__(self,other):
        return not other

thing = Negator()
print thing == None    #True
print thing is None    #False

is checks for object identity. There is only 1 object None, so when you do my_var is None, you're checking whether they actually are the same object (not just equivalent objects)

In other words, == is a check for equivalence (which is defined from object to object) whereas is checks for object identity:

lst = [1,2,3]
lst == lst[:]  # This is True since the lists are "equivalent"
lst is lst[:]  # This is False since they're actually different objects
  • 42
    When does is None differ from == None?
    – Blender
    Jan 9, 2013 at 22:09
  • 21
    @Blender In the case mentioned. __eq__ can be defined in any way, but the behavior of is can't be changed so easily. Jan 9, 2013 at 22:10
  • 8
    @LevLevitsky: One of the example uses of Mython was "extending the protocols so any operator can be overloaded, even is". After a comment on the lists, he changed that to, "… even is (but only if you're insane)."
    – abarnert
    Jan 9, 2013 at 22:19
  • 1
    +1, but it would be even better if this answer included the PEP 8 reference that the others do (as well as explaining why the decision behind PEP 8 makes sense, which it already does).
    – abarnert
    Jan 9, 2013 at 22:20
  • 3
    @abarnert -- I wasn't even aware that PEP 8 made a recommendation here. The point is that they're different operators that do different things. There might be cases where object == None actually is the correct idiom (though I can't think of any off the top of my head). You just need to know what you're doing.
    – mgilson
    Jan 9, 2013 at 22:24

is is generally preferred when comparing arbitrary objects to singletons like None because it is faster and more predictable. is always compares by object identity, whereas what == will do depends on the exact type of the operands and even on their ordering.

This recommendation is supported by PEP 8, which explicitly states that "comparisons to singletons like None should always be done with is or is not, never the equality operators."

  • 16
    Thanks for posting this; the accepted answer makes some interesting points, but yours responds to the question much more directly.
    – Luke Davis
    Apr 26, 2017 at 19:09
  • It seems weird to rely on what is essentially an implementation detail. Why should I care how many instances of NoneType there are? Jan 17, 2019 at 18:44
  • @BallpointBen Because it's not an implementation detail - there is only one None object under the global constant None. If anything, the NoneType is an implementation detail because the None singleton must have some type. (The fact that you cannot create instances of this type is a good indication that its one instance is intended to be a singleton.) Jan 17, 2019 at 18:48
  • 1
    @BallpointBen I think the key point is that Python possesses a strong concept of object identity. If you want to check whether an object compares equal to None, by all means use obj == None. If you want to check whether an object is None, use obj is None. The point of the PEP 8 recommendation (and of this answer) is that most people want the latter when they want to check for None, and it also happens to be faster and clearer. Jan 22, 2019 at 13:24
  • None is also different than cached objects like 0 and other small integers, where the caching really is an implementation detail. The difference there is that an integer has intrinsic value which gives its properties and it can be calculated. On the other hand, None has no state whatsoever, it's only its identity that matters and makes it special. Jan 22, 2019 at 13:26

PEP 8 defines that it is better to use the is operator when comparing singletons.


I recently encountered where this can go wrong.

import numpy as np
nparray = np.arange(4)

# Works
def foo_is(x=None):
    if x is not None:


# Code below raises 
# ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all()
def foo_eq(x=None):
    if x != None:


I created a function that optionally takes a numpy array as argument and changes if it is included. If I test for its inclusion using inequality operators !=, this raises a ValueError (see code above). If I use is not none, the code works correctly.

  • 2
    Based on the error you're getting.. this has nothing to do with None. It has to do with the fact that you're comparing an array to none. Its the array causing your problem, not None.
    – B T
    Jul 8, 2022 at 21:30
  • I'm not sure what you are trying to say? That's the whole point? That if you just want to check whether it is (exactly) None, it will always work out with is even if the provided value is of a completely different type (e.g. an array). Whereas the equality operators are only defined for the same type.
    – Danferno
    Jul 11, 2022 at 17:20

A useful tidbit to add to people's understanding.

The reason that we check for identity with None is because Python only ever stores the value None in one place in memory, and every object which equals None has its value stored in this same location. There are a handful of "special values" which get this treatment, and None is just one of them.

But most values do not get this special treatment! For example, the float 1.25 can be stored in different locations in memory:

a = None
b = None
a is b


a = 1.25
b = 1.25
a is b


It just so happens that None is among the handful of values which are always stored in one place in memory. Another example is any integer between -5 and 256... since these integers are used often, they are always stored in memory, and every integer with that value is stored in the same place in your computer's memory! Try it out:

a = 256
b = 256
a is b


a = 257
b = 257
a is b


So you can think of None as being part of a special class of values which always have a constant memory address. That is why we can use is to check whether two variables are both None... it just checks whether the memory address is the same.

Edit: Joooeey makes the good point that which integers are stored in memory is specific to your python implementation, and the example of numbers from -5 to 256 is specific to CPython. If you don't know what you're running, it's probably CPython, which is the most common implementation. But for this reason (and others) it is better practice to compare equality between these numbers with a == 2 and not with a is 2. As for None, it is specified to be the sole instance of the NoneType type according to the Python Documentation itself, so regardless of implementation you can always compare it using a is None.


Another instance where "==" differs from "is". When you pull information from a database and check if a value exists, the result will be either a value or None.

Look at the if and else below. Only "is" works when the database returns "None". If you put == instead, the if statement won't work, it will go straight to else, even though the result is "None". Hopefully, I am making myself clear.

conn = sqlite3.connect('test.db')
c = conn.cursor()
row = itemID_box.get()

# pull data to be logged so that the deletion is recorded
query = "SELECT itemID, item, description FROM items WHERE itemID LIKE '%" + row + "%'"
result = c.fetchone()

if result is None:
    # log the deletion in the app.log file
    logging = logger('Error')
    logging.info(f'The deletion of {row} failed.')
    messagebox.showwarning("Warning", "The record number is invalid")
    # execute the deletion
    c.execute("DELETE from items WHERE itemID = " + row)
    itemID_box.delete(0, tk.END)
    messagebox.showinfo("Warning", "The record has been deleted")

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