444
  1. Is there a performance or code maintenance issue with using assert as part of the standard code instead of using it just for debugging purposes?

    Is

    assert x >= 0, 'x is less than zero'
    

    better or worse than

    if x < 0:
        raise Exception, 'x is less than zero'
    
  2. Also, is there any way to set a business rule like if x < 0 raise error that is always checked without the try/except/finally so, if at anytime throughout the code x is less than 0 an error is raised, like if you set assert x < 0 at the start of a function, anywhere within the function where x becomes less then 0 an exception is raised?

13 Answers 13

139

To be able to automatically throw an error when x become less than zero throughout the function. You can use class descriptors. Here is an example:

class LessThanZeroException(Exception):
    pass

class variable(object):
    def __init__(self, value=0):
        self.__x = value

    def __set__(self, obj, value):
        if value < 0:
            raise LessThanZeroException('x is less than zero')

        self.__x  = value

    def __get__(self, obj, objType):
        return self.__x

class MyClass(object):
    x = variable()

>>> m = MyClass()
>>> m.x = 10
>>> m.x -= 20
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
  File "my.py", line 7, in __set__
    raise LessThanZeroException('x is less than zero')
LessThanZeroException: x is less than zero
  • 10
    Although properties are implemented as descriptors, I wouldn't call this an example of using them. This is more an example of properties in and of themselves: docs.python.org/library/functions.html#property – Jason Baker Jun 3 '09 at 13:43
  • 3
    The properties should be used within MyClass when setting x. This solution is too general. – Rudolf Olah Dec 18 '10 at 21:57
  • 99
    Pretty nice answer, like it, but has to do NOTHING with the question... Cannot we mark Deestan or John Mee's answer as the valid response? – Vajk Hermecz Aug 8 '13 at 11:27
  • 3
    This doesn't appear to answer the question's title. Also, this is a poor alternative to Python's class property feature. – Dooms101 Jul 14 '14 at 17:18
  • 9
    @VajkHermecz: Actually, if you reread the question, this is two questions in one. People only looking at the title are only familiar with the first question, which this answer doesn't answer. This answer actually contains an answer to the second question. – ArtOfWarfare Mar 16 '15 at 15:04
703

Asserts should be used to test conditions that should never happen. The purpose is to crash early in the case of a corrupt program state.

Exceptions should be used for errors that can conceivably happen, and you should almost always create your own Exception classes.


For example, if you're writing a function to read from a configuration file into a dict, improper formatting in the file should raise a ConfigurationSyntaxError, while you can assert that you're not about to return None.


In your example, if x is a value set via a user interface or from an external source, an exception is best.

If x is only set by your own code in the same program, go with an assertion.

  • 120
    This is the right way to use asserts. They shouldn't be used to control program flow. – Thane Brimhall Oct 5 '12 at 22:08
  • 37
    +1 for the last paragraph - though you should explicitly mention that assert contains an implicit if __debug__ and may be optimized away - as John Mee's answer states – Tobias Kienzler Apr 9 '13 at 5:47
  • 3
    Rereading your answer I think you probably didn't mean conditions that should never happen to be meant as a rule, but rather the purpose is to crash early in the case of a corrupt program state which usually coincides with a condition you don't expect to ever happen. – Bentley4 Jan 5 '14 at 11:19
  • 10
    assert should only be used to catch problems with no known recovery; almost always code bugs (not bad inputs). when an assert is triggered, it should mean that the program is in a state that may be dangerous to continue in, as it may start talking to the network or writing to disk. robust code moves 'atomically' from valid state to valid state in the face of bad (or malicious) input. the top level of every thread should have a fault barrier. fault barriers that consume input from the outside world generally fail for just one iteration of the barrier (while/try), rollback/log on error. – Rob Jan 31 '14 at 18:13
  • 9
    "Asserts should be used to test conditions that should never happen." Yes. And the meaning of the second "should" is: If this happens, the program code is incorrect. – Lutz Prechelt Sep 16 '14 at 12:59
341

"assert" statements are removed when the compilation is optimized. So, yes, there are both performance and functional differences.

The current code generator emits no code for an assert statement when optimization is requested at compile time. - Python 2.6.4 Docs

If you use assert to implement application functionality, then optimize the deployment to production, you will be plagued by "but-it-works-in-dev" defects.

See PYTHONOPTIMIZE and -O -OO

  • 24
    Wow! Super important note that is! I had been planning on using asserts to check a few things which should never fail, whose failure would indicate that someone was very carefully manipulating my the data they were sending in an attempt to gain access to data they shouldn't have access to. It wouldn't work, but I want to swiftly shut down their attempt with an assert, so having that optimized away in production would defeat the purpose. I guess I'll just raise an Exception instead. Oh - I just discovered an aptly named SuspiciousOperation Exception with subclasses in Django! Perfect! – ArtOfWarfare Jul 1 '14 at 1:00
118

The four purposes of assert

Assume you work on 200,000 lines of code with four colleagues Alice, Bernd, Carl, and Daphne. They call your code, you call their code.

Then assert has four roles:

  1. Inform Alice, Bernd, Carl, and Daphne what your code expects.
    Assume you have a method that processes a list of tuples and the program logic can break if those tuples are not immutable:

    def mymethod(listOfTuples):
        assert(all(type(tp)==tuple for tp in listOfTuples))
    

    This is more trustworthy than equivalent information in the documentation and much easier to maintain.

  2. Inform the computer what your code expects.
    assert enforces proper behavior from the callers of your code. If your code calls Alices's and Bernd's code calls yours, then without the assert, if the program crashes in Alices code, Bernd might assume it was Alice's fault, Alice investigates and might assume it was your fault, you investigate and tell Bernd it was in fact his. Lots of work lost.
    With asserts, whoever gets a call wrong, they will quickly be able to see it was their fault, not yours. Alice, Bernd, and you all benefit. Saves immense amounts of time.

  3. Inform the readers of your code (including yourself) what your code has achieved at some point.
    Assume you have a list of entries and each of them can be clean (which is good) or it can be smorsh, trale, gullup, or twinkled (which are all not acceptable). If it's smorsh it must be unsmorshed; if it's trale it must be baludoed; if it's gullup it must be trotted (and then possibly paced, too); if it's twinkled it must be twinkled again except on Thursdays. You get the idea: It's complicated stuff. But the end result is (or ought to be) that all entries are clean. The Right Thing(TM) to do is to summarize the effect of your cleaning loop as

    assert(all(entry.isClean() for entry in mylist))
    

    This statements saves a headache for everybody trying to understand what exactly it is that the wonderful loop is achieving. And the most frequent of these people will likely be yourself.

  4. Inform the computer what your code has achieved at some point.
    Should you ever forget to pace an entry needing it after trotting, the assert will save your day and avoid that your code breaks dear Daphne's much later.

In my mind, assert's two purposes of documentation (1 and 3) and safeguard (2 and 4) are equally valuable.
Informing the people may even be more valuable than informing the computer because it can prevent the very mistakes the assert aims to catch (in case 1) and plenty of subsequent mistakes in any case.

  • 29
    5. assert isinstance() help PyCharm (python IDE) to know type of variable, it is used for autocomplete. – Cjkjvfnby Jan 24 '14 at 15:43
  • 1
    Asserts self-document code assumptions for what is true at the current execution time. It's an assumption comment, which gets checked. – MtRoad Oct 19 '14 at 3:57
  • 8
    Regarding 2 and 4: You should be very careful that your asserts are not too strict. Else the asserts themselves may be the only thing keeping your program to be used in a more general setting. Especially asserting types goes against python's duck-typing. – zwirbeltier Mar 18 '15 at 15:36
  • 9
    @Cjkjvfnby Be careful about an overuse of isinstance() as described in this blog entry: "isinstance() considered harmful". You can now use docstrings to specify types in Pycharm. – binarysubstrate Nov 5 '15 at 22:04
  • 2
    Using asserts in one way of ensuring contract. More info about Design by Contract en.wikipedia.org/wiki/Design_by_contract – Leszek Zarna Nov 17 '15 at 10:17
21

In addition to the other answers, asserts themselves throw exceptions, but only AssertionErrors. From a utilitarian standpoint, assertions aren't suitable for when you need fine grain control over which exceptions you catch.

  • 3
    Right. It would seem silly to catch assertion error exceptions in the caller. – Raffi Khatchadourian Oct 13 '11 at 20:11
  • Very good point. A nuance that can be easily overlooked when just looking at the original questions from a macro level. Even if it weren't for the issue with assertions being dropped when optimizing, losing the specific details of what kind of error occurred would make debugging much more challenging. Cheers, outis! – cfwschmidt Sep 26 '17 at 17:00
18

The only thing that's really wrong with this approach is that it's hard to make a very descriptive exception using assert statements. If you're looking for the simpler syntax, remember you can also do something like this:

class XLessThanZeroException(Exception):
    pass

def CheckX(x):
    if x < 0:
        raise XLessThanZeroException()

def foo(x):
    CheckX(x)
    #do stuff here

Another problem is that using assert for normal condition-checking is that it makes it difficult to disable the debugging asserts using the -O flag.

  • 24
    You can append an error message to an assertion. It's the second parameter. That will make it descriptive. – Raffi Khatchadourian Oct 13 '11 at 20:10
7

As has been said previously, assertions should be used when your code SHOULD NOT ever reach a point, meaning there is a bug there. Probably the most useful reason I can see to use an assertion is an invariant/pre/postcondition. These are something that must be true at the start or end of each iteration of a loop or a function.

For example, a recursive function (2 seperate functions so 1 handles bad input and the other handles bad code, cause it's hard to distinguish with recursion). This would make it obvious if I forgot to write the if statement, what had gone wrong.

def SumToN(n):
    if n <= 0:
        raise ValueError, "N must be greater than or equal to 0"
    else:
        return RecursiveSum(n)

def RecursiveSum(n):
    #precondition: n >= 0
    assert(n >= 0)
    if n == 0:
        return 0
    return RecursiveSum(n - 1) + n
    #postcondition: returned sum of 1 to n

These loop invariants often can be represented with an assertion.

  • 2
    This is best done with decorators (@precondition and @postcondition ) – Caridorc Jul 19 '15 at 8:35
  • @Caridorc what is the concrete benefit of that? – Chiel ten Brinke Feb 6 '16 at 16:20
  • @ChieltenBrinke self documenting code, instead of #precondition: n >= 0 and an assert, he can just write @precondition(lambda n: n >= 0) – Caridorc Feb 6 '16 at 19:55
  • @Caridorc Are those builtin decorators then? And how does one generate documention from that? – Chiel ten Brinke Feb 6 '16 at 20:32
  • @ChieltenBrinke not built-in but easy to implement stackoverflow.com/questions/12151182/… . For documentation just patch the __doc__ attribute by giving an additional string – Caridorc Feb 6 '16 at 20:47
6

The English language word assert here is used in the sense of swear, affirm, avow. It doesn't mean "check" or "should be". It means that you as a coder are making a sworn statement here:

# I solemnly swear that here I will tell the truth, the whole truth, 
# and nothing but the truth, under pains and penalties of perjury, so help me FSM
assert answer == 42

If the code is correct, barring Single-event upsets, hardware failures and such, no assert will ever fail. That is why the behaviour of the program to an end user must not be affected. Especially, an assert cannot fail even under exceptional programmatic conditions. It just doesn't ever happen. If it happens, the programmer should be zapped for it.

3

Is there a performance issue?

  • Please remember to "make it work first before you make it work fast".
    Very few percent of any program are usually relevant for its speed. You can always kick out or simplify an assert if it ever proves to be a performance problem -- and most of them never will.

  • Be pragmatic:
    Assume you have a method that processes a non-empty list of tuples and the program logic will break if those tuples are not immutable. You should write:

    def mymethod(listOfTuples):
        assert(all(type(tp)==tuple for tp in listOfTuples))
    

    This is probably fine if your lists tend to be ten entries long, but it can become a problem if they have a million entries. But rather than discarding this valuable check entirely you could simply downgrade it to

    def mymethod(listOfTuples):
        assert(type(listOfTuples[0])==tuple)  # in fact _all_ must be tuples!
    

    which is cheap but will likely catch most of the actual program errors anyway.

  • 2
    Should be assert(len(listOfTuples)==0 or type(listOfTyples[0])==tuple). – osa Nov 11 '14 at 4:41
  • No, it should not. That would be a much weaker test, because it no longer checks the 'non-empty' property, which the second assert checks. (The first does not, although it should.) – Lutz Prechelt Oct 1 '15 at 8:00
  • 1
    The second assert does not explicitly check the non-empty property; it's more of a side effect. If it were to raise an exception due to the list being empty, the person working with the code (somebody else or the author, a year after writing it) would stare at it, trying to figure out if the assert was really meant to catch the empty list situation, or if that's an error in the assert itself. Furthermore, I don't see how not checking for the empty case is "much weaker", whereas only checking the first element is "97% correct". – osa Oct 24 '15 at 1:33
1

There's a framework called JBoss Drools for java that does runtime monitoring to assert business rules, which answers the second part of your question. However, I am unsure if there is such a framework for python.

1

An Assert is to check -
1. the valid condition,
2. the valid statement,
3. true logic;
of source code. Instead of failing the whole project it gives an alarm that something is not appropriate in your source file.

In example 1, since variable 'str' is not nul. So no any assert or exception get raised.

Example 1:

#!/usr/bin/python

str = 'hello Pyhton!'
strNull = 'string is Null'

if __debug__:
    if not str: raise AssertionError(strNull)
print str

if __debug__:
    print 'FileName '.ljust(30,'.'),(__name__)
    print 'FilePath '.ljust(30,'.'),(__file__)


------------------------------------------------------

Output:
hello Pyhton!
FileName ..................... hello
FilePath ..................... C:/Python\hello.py

In example 2, var 'str' is nul. So we are saving the user from going ahead of faulty program by assert statement.

Example 2:

#!/usr/bin/python

str = ''
strNull = 'NULL String'

if __debug__:
    if not str: raise AssertionError(strNull)
print str

if __debug__:
    print 'FileName '.ljust(30,'.'),(__name__)
    print 'FilePath '.ljust(30,'.'),(__file__)


------------------------------------------------------

Output:
AssertionError: NULL String

The moment we don't want debug and realized the assertion issue in the source code. Disable the optimization flag

python -O assertStatement.py
nothing will get print

0

In IDE's such as PTVS, PyCharm, Wing assert isinstance() statements can be used to enable code completion for some unclear objects.

-2

If you're dealing with legacy code which relies on assert to function properly, even though it should not, then adding the following code is a quick fix until you find time to refactor:

try:
    assert False
    raise Exception('Python Assertions are not working. This tool relies on Python Assertions to do its job. Possible causes are running with the "-O" flag or running a precompiled (".pyo" or ".pyc") module.')
except AssertionError:
    pass
  • 1
    This doesn't answer OP's question which is about best practices. – codeforester Jun 11 '18 at 19:15

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