I often use python's assert statement to check user input and fail-fast if we're in a corrupt state. I'm aware that assert gets removed when python with the -o(optimized) flag. I personally don't run any of my apps in optimized mode, but it feels like I should stay away from assert just in-case.

It feels much cleaner to write

assert filename.endswith('.jpg')


if not filename.endswith('.jpg'):
    raise RuntimeError

Is this a valid use case for assert? If not, what would a valid use-case for python's assert statement be?

  • 3
    FYI, your two snippets contradict each other (as far as I can tell). There should be a not in one of them. – Will McCutchen Jan 26 '10 at 20:22
  • @will thank you, I fixed it – Gattster Jan 26 '10 at 20:27

Assertions should be used for expressing invariants, or preconditions.
In your example, you are using them for checking unexpected input - and that's a completely different class of exceptions.

Depending on the requirements, it may be perfectly OK to raise an exception on wrong input, and stop the application; however the code should always be tailored for expressiveness, and raising an AssertionError is not that explicit.
Much better would be to raise your own exception, or a ValueError.

  • 2
    Right. As I get better at programming, I find I understand more deeply why my code works, what the assumptions are, and I see more and more opportunities to use assert in this way. – Jason Orendorff Jan 26 '10 at 20:25
  • @Gattster: if expr: raise ValueError is a totally valid single line of code. Open a separate question if you have problems. – S.Lott Jan 26 '10 at 22:32
  • Totally unconvincing. Valid input is a precondition alright. I totally can't see why I can't use a concise and elegant stement specifically designed to check validity to, well, check validity. The "expressiveness" clause... don't make me laugh, what's more expressive on the purpose of the code than assert <condition>,"invalid argument value: <details>"? – ivan_pozdeev Nov 11 '16 at 22:11
  • 1
    Neither in my 15+ yr programming experience did I see a single sanity check that only makes sense while debugging and not in production - or saw one is anyone else's code, for that matter. – ivan_pozdeev Nov 11 '16 at 22:12
  • The point is more about the intent of the check. If you want to express that this is a possible, but wrong value, then you should be raising your own exception. Conversely, if you want to express some prerequisite for your algorithm -- something that should never be broken -- then you should be using assert. – rob Nov 16 '16 at 9:20

If being graceful is impossible, be dramatic

Here is the correct version of your code:

if filename.endswith('.jpg'):
    # convert it to the PNG we want
        filename = convert_jpg_to_png_tmpfile(filename)
    except PNGCreateError:
        # Tell the user their jpg was crap
        print "Your jpg was crap!"

It is a valid case, IMHO when:

  1. The error is totally, 100% fatal, and dealing with it would be too grim to comprehend
  2. The assert should only fail if something causes the laws of logic to change

Otherwise, deal with the eventuality because you can see it coming.

ASSERT == "This should never occur in reality, and if it does, we give up"

Of course, this isn't the same as

#control should never get here

But I always do

#control should never get here
#but i'm not 100% putting my money where my mouth

That way I get a nice error. In your example, I would use the if version and convert the file to jpg!

  • 3
    I liked your opening line and nice trick with the assert False, it felt like your post could have closed with "only a fool deals in absolutes". – Adam Dec 19 '12 at 19:10
  • 1
    Note: In the last block of code it should be assert False instead of assert(False) since assert is a statement, not a function (in both Python 2 and 3) – kratenko Nov 28 '16 at 16:19

Totally valid. The assertion is a formal claim about the state of your program.

You should use them for things which can't be proven. However, they're handy for things you think you can prove as a check on your logic.

Another example.

def fastExp( a, b ):
    assert isinstance(b,(int,long)), "This algorithm raises to an integer power"

Yet another. The final assertion is a bit silly, since it should be provable.

# Not provable, essential.
assert len(someList) > 0, "Can't work with an empty list."
x = someList[]
while len(x) != 0:
    startingSize= len(x)
    ... some processing ...
    # Provable.  May be Redundant.
    assert len(x) < startingSize, "Design Flaw of the worst kind."

Yet another.

def sqrt( x ):
    # This may not be provable and is essential.
    assert x >= 0, "Can't cope with non-positive numbers"
    # This is provable and may be redundant.
    assert abs( n*n - x ) < 0.00001 
    return n

There are lots and lots of reasons for making formal assertions.

  • Thanks for providing examples of valid use-cases. I hope to see more up-votes on your answer to help validate that others share our opinion. – Gattster Jan 26 '10 at 22:16
  • +1, for a well thought out answer. – Aiden Bell Jan 26 '10 at 22:28
  • 3
    @Gattster: It's a minority opinion. Many folks claim that formal proof methods either (a) don't work or (b) don't apply to real-world problems. You won't see much validation for this position. – S.Lott Jan 26 '10 at 22:31
  • in the 2nd example, couldn't you just "assert someList"? – Steven Sproat Jan 26 '10 at 22:50
  • 2
    why wouldn't these be raise ValueErrors, which I thought was meant for invalid arguments? – Demis Jan 4 '16 at 19:42

assert is best used for code that should be active during testing when you are surely going to run without -o

You may personally never run with -o but what happens if your code ends up in a larger system and the admin wants to run it with -o?

It's possible that the system will appear to run fine, but there are subtle bugs which have been switched on by running with -o


Personally, I use assert for unexpected errors, or things you don't expect to happen in real world usage. Exceptions should be used whenever dealing with input from a user or file, as they can be caught and you can tell the user "Hey, I was expecting a .jpg file!!"

  • But AssertionError is an exception... (moreover, is an Exception ;-) ) – ivan_pozdeev Nov 11 '16 at 22:42

The Python Wiki has a great guide on using Assertion effectively.

The answers above don't necessary clarify the -O objection when running Python. The quote the above page:

If Python is started with the -O option, then assertions will be stripped out and not evaluated.


S.Lott's answer is the best one. But this was too long to just add to a comment on his, so I put it here. Anyways, it's how I think about assert, which is basically that it's just a shorthand way to do #ifdef DEBUG.

Anyways, there are two schools of thought about input checking. You can do it at the target, or you can do it at the source.

Doing it at the target is inside the code:

def sqrt(x):
    if x<0:
        raise ValueError, 'sqrt requires positive numbers'
    root = <do stuff>
    return root

def some_func(x):
    y = float(raw_input('Type a number:'))
        print 'Square root is %f'%sqrt(y)
    except ValueError:
        # User did not type valid input
        print '%f must be a positive number!'%y

Now, this has a lot of advantages. Probably, the guy who wrote sqrt knows the most about what are valid values for his algorithm. In the above, I have no idea if the value I got from the user is valid or not. Someone has to check it, and it makes sense to do it in the code that knows the most about what's valid - the sqrt algorithm itself.

However, there is a performance penalty. Imagine code like this:

def sqrt(x):
    if x<=0:
        raise ValueError, 'sqrt requires positive numbers'
    root = <do stuff>
    return root

def some_func(maxx=100000):
    all_sqrts = [sqrt(x) for x in range(maxx)]
    i = sqrt(-1.0)

Now, this function is going to call sqrt 100k times. And every time, sqrt is going to check to see if the value is >= 0. But we already know it's valid, because of how we generate those numbers - those extra valid checks are just wasted execution time. Wouldn't it be nice to get rid of them? And then there's one, that will throw a ValueError, and so we'll catch it, and realize we made a mistake. I write my program relying on the subfunction to check me, and so I just worry about recovering when it doesn't work.

The second school of thought is that, instead of the target function checking inputs, you add constraints to the definition, and require the caller to ensure that it's calling with valid data. The function promises that with good data, it will return what its contract says. This avoids all those checks, because the caller knows a lot more about the data it's sending than the target function, where it came from and what constraints it has inherently. The end result of these is code contracts and similar structures, but originally this was just by convention, i.e. in the design, like the comment below:

# This function valid if x > 0
def sqrt(x):
    root = <do stuff>
    return root

def long_function(maxx=100000):
    # This is a valid function call - every x i pass to sqrt is valid
    sqrtlist1 = [sqrt(x) for x in range(maxx)]
    # This one is a program error - calling function with incorrect arguments
    # But one that can't be statically determined
    # It will throw an exception somewhere in the sqrt code above
    i = sqrt(-1.0)

Of course, bugs happens, and the contract might get violations. But so far, the result is about the same - in both cases, if I call sqrt(-1.0), i will get an exception inside the sqrt code itself, can walk up the exception stack, and figure out where my bug is.

However, there are much more insidious cases...suppose, for instance, my code generates a list index, stores it, later looks up the list index, extracts a value, and does some processing. and let's say we get a -1 list index by accident. all those steps may actually complete without any errors, but we have wrong data at the end of the test, and we have no idea why.

So why assert? It would be nice to have something with which we could get closer-to-the-failure debug information while we are in testing and proving our contracts. This is pretty much exactly the same as the first form - after all, it's doing the exact same comparison, but it is syntactically neater, and slightly more specialized towards verify a contract. A side benefit is that once you are reasonably sure your program works, and are optimizating and looking for higher performance vs. debuggability, all these now-redundant checks can be removed.

  • This doesn't make a case for assert in Python. More like, it makes a case that it was relevant in languages before Python that cared for code performance above possible correctness, so in Python, its original use case has become vestigial. – ivan_pozdeev Nov 12 '16 at 0:00

Botton line:

  • assert and its semantics are a heritage from earlier languages.
  • Python's drastic shift of focus has proven to make the traditional use case irrelevant.
  • No other use cases have been officially proposed as of this writing, though there are ideas out there to reform it into a general-purpose check.
  • It can be used (and is indeed used) as a general-purpose check as it is now if you're okay with the limitations.

The intended use case which ASSERT statements were originally created in mind with is:

  • to make sanity checks that are relevant but considered too expensive or unnecessary for production use.
    • E.g. these can be input checks for internal functions, checks that free() is passed a pointer that was previously got from malloc() and such, internal structure integrity checks after non-trivial operations with them etc.

This was a big deal in older days and still is in environments designed for performance. That's the entire reason for its semantics in, say, C++/C#:

  1. Being cut out in a release build
  2. Terminating a program immediately, ungracefully and as loudly as possible.

Python, however, consciously and intentionally sacrifices code performance for programmer's performance (believe it or not, I recently got a 100x speedup by porting some code from Python to Cython - without even disabling boundary checks!). Python code runs in a "safe" environment in that you cannot utterly "break" your process (or an entire system) to an untraceable segfault/BSoD/bricking - the worst you'll get is an unhandled exception with a load of debugging information attached, all gracefully presented to you in a readable form.

  • Which implies that runtime and library code should include all kinds of checks at appropriate moments - at all times, whether it's "debug mode" or not.

In addition, Python's strong impact on providing the sources at all times (transparent compilation, source lines in traceback, the stock debugger expecting them alongside .pyc's to be of any use) very much blurs the line between "development" and "use" (that's one reason why setuptools' self-contained .eggs created a backlash - and why pip always installs them unpacked: if one is installed packed, the source is no longer readily available and problemes with it - diagnosable).

Combined, these properties all but destroy any use cases for "debug-only" code.

And, you guessed it, an idea about repurposing assert as a general-purpose check eventually surfaced.

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