I have been reading some source code and in several places I have seen the usage of
What does it mean exactly? What is its usage?
assert statement exists in almost every programming language. It helps detect problems early in your program, where the cause is clear, rather than later as a side-effect of some other operation.
When you do...
... you're telling the program to test that condition, and immediately trigger an error if the condition is false.
In Python, it's roughly equivalent to this:
if not condition: raise AssertionError()
Try it in the Python shell:
>>> assert True # nothing happens >>> assert False Traceback (most recent call last): File "<stdin>", line 1, in <module> AssertionError
Assertions can include an optional message, and you can disable them when running the interpreter.
To print a message if the assertion fails:
assert False, "Oh no! This assertion failed!"
Do not use parenthesis to call
assert like a function. It is a statement. If you do
assert(condition, message) you'll be running the
assert with a
(condition, message) tuple as first parameter.
As for disabling them, when running
python in optimized mode, where
False, assert statements will be ignored. Just pass the
python -O script.py
See here for the relevant documentation.
Watch out for the parentheses. As has been pointed out above, in Python 3,
assert is still a statement, so by analogy with
print(..), one may extrapolate the same to
raise(..) but you shouldn't.
This is important because:
assert(2 + 2 == 5, "Houston we've got a problem")
won't work, unlike
assert 2 + 2 == 5, "Houston we've got a problem"
The reason the first one will not work is that
bool( (False, "Houston we've got a problem") ) evaluates to
In the statement
assert(False), these are just redundant parentheses around
False, which evaluate to their contents. But with
assert(False,) the parentheses are now a tuple, and a non-empty tuple evaluates to
True in a boolean context.
As other answers have noted,
assert is similar to throwing an exception if a given condition isn't true. An important difference is that assert statements get ignored if you compile your code with the optimization option
-O. The documentation says that
assert expression can better be described as being equivalent to
if __debug__: if not expression: raise AssertionError
This can be useful if you want to thoroughly test your code, then release an optimized version when you're happy that none of your assertion cases fail - when optimization is on, the
__debug__ variable becomes False and the conditions will stop getting evaluated. This feature can also catch you out if you're relying on the asserts and don't realize they've disappeared.
The goal of an assertion in Python is to inform developers about unrecoverable errors in a program.
Assertions are not intended to signal expected error conditions, like “file not found”, where a user can take corrective action (or just try again).
Another way to look at it is to say that assertions are internal self-checks in your code. They work by declaring some conditions as impossible in your code. If these conditions don’t hold that means there’s a bug in the program.
If your program is bug-free, these conditions will never occur. But if one of them does occur the program will crash with an assertion error telling you exactly which “impossible” condition was triggered. This makes it much easier to track down and fix bugs in your programs.
Here’s a summary from a tutorial on Python’s assertions I wrote:
Python’s assert statement is a debugging aid, not a mechanism for handling run-time errors. The goal of using assertions is to let developers find the likely root cause of a bug more quickly. An assertion error should never be raised unless there’s a bug in your program.
Others have already given you links to documentation.
You can try the following in a interactive shell:
>>> assert 5 > 2 >>> assert 2 > 5 Traceback (most recent call last): File "<string>", line 1, in <fragment> builtins.AssertionError:
The first statement does nothing, while the second raises an exception. This is the first hint: asserts are useful to check conditions that should be true in a given position of your code (usually, the beginning (preconditions) and the end of a function (postconditions)).
Asserts are actually highly tied to programming by contract, which is a very useful engineering practice:
Assert statements are a convenient way to insert debugging assertions into a program
Here you can read more: http://docs.python.org/release/2.5.2/ref/assert.html
Assertions are a systematic way to check that the internal state of a program is as the programmer expected, with the goal of catching bugs. See the example below.
>>> number = input('Enter a positive number:') Enter a positive number:-1 >>> assert (number > 0), 'Only positive numbers are allowed!' Traceback (most recent call last): File "<stdin>", line 1, in <module> AssertionError: Only positive numbers are allowed! >>>
Here is a simple example, save this in file (let's say b.py)
def chkassert(num): assert type(num) == int chkassert('a')
and the result when
Traceback (most recent call last): File "b.py", line 5, in <module> chkassert('a') File "b.py", line 2, in chkassert assert type(num) == int AssertionError
if the statement after assert is true then the program continues , but if the statement after assert is false then the program gives an error. Simple as that.
assert 1>0 #normal execution assert 0>1 #Traceback (most recent call last): #File "<pyshell#11>", line 1, in <module> #assert 0>1 #AssertionError
assert statement exists in almost every programming language. It helps detect problems early in your program, where the cause is clear, rather than later as a side-effect of some other operation. They always expect a
When you do something like:
You're telling the program to test that condition and immediately trigger an error if it is false.
assert expression, is equivalent to:
if __debug__: if not <expression>: raise AssertionError
You can use the extended expression to pass an optional message:
if __debug__: if not (expression_1): raise AssertionError(expression_2)
Try it in the Python interpreter:
>>> assert True # Nothing happens because the condition returns a True value. >>> assert False # A traceback is triggered because this evaluation did not yield an expected value. Traceback (most recent call last): File "<stdin>", line 1, in <module> AssertionError
There are some caveats to seen before using them mainly for those who deem to toggles between the
if statements. The aim to use
assert is on occasions when the program verifies a condition and return a value that should stop the program immediately instead of taking some alternative way to bypass the error:
As you may have noticed, the
assert statement uses two conditions. Hence, do not use parentheses to englobe them as one for obvious advice. If you do such as:
assert (condition, message)
>>> assert (1==2, 1==1) <stdin>:1: SyntaxWarning: assertion is always true, perhaps remove parentheses?
You will be running the
assert with a
(condition, message) which represents a tuple as the first parameter, and this happens cause non-empty tuple in Python is always
True. However, you can do separately without problem:
assert (condition), "message"
>>> assert (1==2), ("This condition returns a %s value.") % "False" Traceback (most recent call last): File "<stdin>", line 1, in <module> AssertionError: This condition returns a False value.
If you are wondering regarding when use
assert statement. Take an example used in real life:
* When your program tends to control each parameter entered by the user or whatever else:
def loremipsum(**kwargs): kwargs.pop('bar') # return 0 if "bar" isn't in parameter kwargs.setdefault('foo', type(self)) # returns `type(self)` value by default assert (len(kwargs) == 0), "unrecognized parameter passed in %s" % ', '.join(kwargs.keys())
* Another case is on math when 0 or non-positive as a coefficient or constant on a certain equation:
def discount(item, percent): price = int(item['price'] * (1.0 - percent)) print(price) assert (0 <= price <= item['price']),\ "Discounted prices cannot be lower than 0 "\ "and they cannot be higher than the original price." return price
* or even a simple example of a boolean implementation:
def true(a, b): assert (a == b), "False" return 1 def false(a, b): assert (a != b), "True" return 0
The utmost importance is to not rely on the
assert statement to execute data processing or data validation because this statement can be turned off on the Python initialization with
-OO flag – meaning value 1, 2, and 0 (as default), respectively – or
PYTHONOPTIMIZE environment variable.
* asserts are disabled;
* bytecode files are generated using
.pyo extension instead of
sys.flags.optimize is set to 1 (
__debug__ is set to
Value 2: disables one more stuff
* docstrings are disabled;
Therefore, using the
assert statement to validate a sort of expected data is extremely dangerous, implying even to some security issues. Then, if you need to validate some permission I recommend you
raise AuthError instead. As a preconditional effective, an
assert is commonly used by programmers on libraries or modules that do not have a user interact directly.
As summarized concisely on the C2 Wiki:
An assertion is a boolean expression at a specific point in a program which will be true unless there is a bug in the program.
You can use an
assert statement to document your understanding of the code at a particular program point. For example, you can document assumptions or guarantees about inputs (preconditions), program state (invariants), or outputs (postconditions).
Should your assertion ever fail, this is an alert for you (or your successor) that your understanding of the program was wrong when you wrote it, and that it likely contains a bug.
For more information, John Regehr has a wonderful blog post on the Use of Assertions, which applies to the Python
assert statement as well.
Python assert is basically a debugging aid which test condition for internal self-check of your code. Assert makes debugging really easy when your code gets into impossible edge cases. Assert check those impossible cases.
Let's say there is a function to calculate price of item after discount :
def calculate_discount(price, discount): discounted_price = price - [discount*price] assert 0 <= discounted_price <= price return discounted_price
here, discounted_price can never be less than 0 and greater than actual price. So, in case the above condition is violated assert raises an Assertion Error, which helps the developer to identify that something impossible had happened.
Hope it helps :)
My short explanation is:
AssertionErrorif expression is false, otherwise just continues the code, and if there's a comma whatever it is it will be
AssertionError: whatever after comma, and to code is like:
raise AssertionError(whatever after comma)
A related tutorial about this:
In Pycharm, if you use
assert along with
isinstance to declare an object's type, it will let you access the methods and attributes of the parent object while you are coding, it will auto-complete automatically.
For example, let's say
self.object1.object2 is a
import MyClasss def code_it(self): testObject = self.object1.object2 # at this point, program doesn't know that testObject is a MyClass object yet assert isinstance(testObject , MyClasss) # now the program knows testObject is a MyClass object testObject.do_it() # from this point on, PyCharm will be able to auto-complete when you are working on testObject
As written in other answers,
assert statements are used to check the state of
the program at a given point.
I won't repeat what was said about associated
message, parentheses, or
-O option and
__debug__ constant. Check also the
doc for first
hand information. I will focus on your question: what is the use of
More precisely, when (and when not) should one use
assert statements are useful to debug a program, but discouraged to check user
input. I use the following rule of thumb: keep assertions to detect a this
should not happen situation. A user
input may be incorrect, e.g. a password too short, but this is not a this
should not happen case. If the diameter of a circle is not twice as large as its
radius, you are in a this should not happen case.
The most interesting, in my mind, use of
assert is inspired by the
programming by contract as
described by B. Meyer in [Object-Oriented Software Construction](
) and implemented in the [Eiffel programming language](
https://en.wikipedia.org/wiki/Eiffel_(programming_language)). You can't fully
emulate programming by contract using the
assert statement, but it's
interesting to keep the intent.
Here's an example. Imagine you have to write a
head function (like the
head function in Haskell](
specification you are given is: "if the list is not empty, return the
first item of a list". Look at the following implementations:
>>> def head1(xs): return xs
>>> def head2(xs): ... if len(xs) > 0: ... return xs ... else: ... return None
(Yes, this can be written as
return xs if xs else None, but that's not the point).
If the list is not empty, both functions have the same result and this result is correct:
>>> head1([1, 2, 3]) == head2([1, 2, 3]) == 1 True
Hence, both implementations are (I hope) correct. They differ when you try to take the head item of an empty list:
>>> head1() Traceback (most recent call last): ... IndexError: list index out of range
>>> head2() is None True
Again, both implementations are correct, because no one should pass an empty
list to these functions (we are out of the specification). That's an
incorrect call, but if you do such a call, anything can happen.
One function raises an exception, the other returns a special value.
The most important is: we can't rely on this behavior. If
xs is empty,
this will work:
But this will crash the program:
To avoid some surprises, I would like to know when I'm passing some unexpected argument to a function. In other words: I would like to know when the observable behavior is not reliable, because it depends on the implementation, not on the specification. Of course, I can read the specification, but programmers do not always read carefully the docs.
Imagine if I had a way to insert the specification into the code to get the
following effect: when I violate the specification, e.g by passing an empty
head, I get a warning. That would be a great help to write a correct
(i.e. compliant with the specification) program. And that's where
enters on the scene:
>>> def head1(xs): ... assert len(xs) > 0, "The list must not be empty" ... return xs
>>> def head2(xs): ... assert len(xs) > 0, "The list must not be empty" ... if len(xs) > 0: ... return xs ... else: ... return None
Now, we have:
>>> head1() Traceback (most recent call last): ... AssertionError: The list must not be empty
>>> head2() Traceback (most recent call last): ... AssertionError: The list must not be empty
head1 throws an
AssertionError, not an
important because an
AssertionError is not any runtime error: it signals a
violation of the specification. I wanted a warning, but I get an error.
Fortunately, I can disable the check (using the
but at my own risks. I will do it a crash is really expensive, and hope for the
best. Imagine my program is embedded in a spaceship that travels through a
black hole. I will disable assertions and hope the program is robust enough
to not crash as long as possible.
This example was only about preconditions, be you can use
assert to check
postconditions (the return value and/or the state) and invariants (state of a
class). Note that checking postconditions and invariants with
assert can be
You won't have something as sophisticated as Eiffel, but you can however improve the overall quality of a program.
To summarize, the
assert statement is a convenient way to detect a this
should not happen situation. Violations of the specification (e.g. passing
an empty list to
head) are first class this should not happen situations.
Hence, while the
assert statement may be used to detect any unexpected situation,
it is a privilegied way to ensure that the specification is fulfilled.
Once you have inserted
assert statements into the code to represent the
specification, we can hope you have improved the quality of the program because
incorrect arguments, incorrect return values, incorrect states of a class...,
will be reported.
format : assert Expression[,arguments] When assert encounters a statement,Python evaluates the expression.If the statement is not true,an exception is raised(assertionError). If the assertion fails, Python uses ArgumentExpression as the argument for the AssertionError. AssertionError exceptions can be caught and handled like any other exception using the try-except statement, but if not handled, they will terminate the program and produce a traceback. Example:
def KelvinToFahrenheit(Temperature): assert (Temperature >= 0),"Colder than absolute zero!" return ((Temperature-273)*1.8)+32 print KelvinToFahrenheit(273) print int(KelvinToFahrenheit(505.78)) print KelvinToFahrenheit(-5)
When the above code is executed, it produces the following result:
32.0 451 Traceback (most recent call last): File "test.py", line 9, in <module> print KelvinToFahrenheit(-5) File "test.py", line 4, in KelvinToFahrenheit assert (Temperature >= 0),"Colder than absolute zero!" AssertionError: Colder than absolute zero!
>>>this_is_very_complex_function_result = 9 >>>c = this_is_very_complex_function_result >>>test_us = (c < 4) >>> #first we try without assert >>>if test_us == True: print("YES! I am right!") else: print("I am Wrong, but the program still RUNS!") I am Wrong, but the program still RUNS! >>> #now we try with assert >>> assert test_us Traceback (most recent call last): File "<pyshell#52>", line 1, in <module> assert test_us AssertionError >>>