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wtfpython |
README.md
What the f*ck Python? 🐍
A collection of interesting and tricky Python examples.
Python, being awesome by design high-level and interpreter-based programming language, provides us with many features for the programmer's comfort. But sometimes, the outcomes of a Python snippet may not seem obvious to a regular user at first sight.
Here is a fun project attempting to collect such classic and tricky examples of unexpected behaviors in Python and discuss what exactly is happening under the hood!
While some of the examples you see below may not be WTFs in the truest sense, but they'll reveal some of the interesting parts of Python that you might be unaware of. I find it a nice way to learn the internals of a programming language, and I think you'll find them interesting as well!
If you're an experienced Python programmer, you might be familiar with most of these examples, and I might be able to revive some sweet old memories of yours being bitten by these gotchas 😅
So, here ya go...
Table of Contents
- Structure of the Examples
- Usage
- 👀 Examples
- Skipping lines?
- Well, something is fishy...
- Time for some hash brownies!
- Evaluation time disperancy
- Modifying a dictionary while iterating over it
- Deleting a list item while iterating over it
- Backslashes at the end of string
- Let's make a giant string!
- String concatenation interpreter optimizations.
- Yes, it exists!
is
is not what it is!is not ...
is different fromis (not ...)
- The function inside loop sticks to the same output
- Loop variables leaking out of local scope!
- A tic-tac-toe where X wins in the first attempt!
- Beware of default mutable arguments!
- Same operands, different story!
- Mutating the immutable!
- Using a variable not defined in scope
- The disappearing variable from outer scope
- Return return everywhere!
- When True is actually False
- Be careful with chained operations
- Name resolution ignoring class scope
- From filled to None in one instruction...
- Explicit typecast of strings
- Class attributes and instance attributes
- Catching the Exceptions!
- Midnight time doesn't exist?
- Needle in a Haystack
- Minor Ones
- TODO: Hell of an example!
- Contributing
- Acknowledgements - Some nice Links!
- 🎓 License
Structure of the Examples
All the examples are structured like below:
Some fancy Title
# Setting up the code.
# Preparation for the magic...
Output (Python version):
>>> triggering_statement
Probably unexpected output
(Optional): One line describing the unexpected output.
Note: All the examples mentioned below are run on Python 3.5.2 interactive interpreter unless explicitly specified.
💡 Explanation:
- Brief explanation of what's happening and why is it happening.
Outupt:Setting up examples for clarification (if necessary)
>>> trigger # some example that makes it easy to unveil the magic # some justified output
Usage
A good way to get the most out of these examples, in my opinion, will be just to read the examples chronologically, and for every example:
- Carefully read the initial code for setting up the example. If you're an experienced Python programmer, most of the times you will successfully anticipate what's gonna happen next.
- Read the output snippets and
- Check if the outputs are the same as you'd expect.
- Make sure know the exact reason behind the output being the way it is.
- If no, read the explanation (and if you still don't understand, shout out! and create an issue here).
- If yes, give a gentle pat on your back, and you may skip to the next example.
PS: You can also read these examples at the command line. First install the npm package wtfpython
,
$ npm install -g wtfpython
Now, just run wtfpython
at the command line which will open this collection in your selected $PAGER
.
#TODO: Add pypi package for reading via command line
👀 Examples
Skipping lines?
>>> value = 11
>>> valuе = 32
>>> value
11
Wut?
Explanation
Some Unicode characters look identical to ASCII ones, but are considered distinct by the interpreter.
>>> value = 42 #ascii e
>>> valuе = 23 #cyrillic e, Python 2.x interpreter would raise a `SyntaxError` here
>>> value
42
Well, something is fishy...
def square(x):
"""
A simple function to calculate square of a number by addition.
"""
sum_so_far = 0
for counter in range(x):
sum_so_far = sum_so_far + x
return sum_so_far
Output (Python 2.x):
>>> square(10)
10
Shouldn't that be 100?
Note: If you're not able to reproduce this, try running the file mixed_tabs_and_spaces.py via the shell.
Explanation
-
Don't mix tabs and spaces! The character just preceding return is a "tab", and the code is indented by multiple of "4 spaces" elsewhere in the example.
-
This is how Python handles tabs:
First, tabs are replaced (from left to right) by one to eight spaces such that the total number of characters up to and including the replacement is a multiple of eight <...>
-
So the "tab" at the last line of
square
function is replaced with eight spaces, and it gets into the loop. -
Python 3 is nice enough to automatically throw an error for such cases.
Output (Python 3.x):
TabError: inconsistent use of tabs and spaces in indentation
Time for some hash brownies!
some_dict = {}
some_dict[5.5] = "Ruby"
some_dict[5.0] = "JavaScript"
some_dict[5] = "Python"
Output:
>>> some_dict[5.5]
"Ruby"
>>> some_dict[5.0]
"Python"
>>> some_dict[5]
"Python"
"Python" destroyed the existence of "JavaScript"?
Explanation
5
(anint
type) is implicitly converted to5.0
(afloat
type) before calculating the hash in Python.>>> hash(5) == hash(5.0) True
- This StackOverflow answer explains beautifully the rationale behind it.
Evaluation time disperancy
array = [1, 8, 15]
g = (x for x in array if array.count(x) > 0)
array = [2, 8, 22]
Output:
>>> print(list(g))
[8]
💡 Explanation
- In a generator expression, the
in
clause is evaluated at declaration time, but the conditional clause is evaluated at run time. - So before run time,
array
is re-assigned to the list[2, 8, 22]
, and since out of1
,8
and15
, only the count of8
is greater than0
, the generator only yields8
.
Modifying a dictionary while iterating over it
x = {0: None}
for i in x:
del x[i]
x[i+1] = None
print(i)
Output:
0
1
2
3
4
5
6
7
Yes, it runs for exactly eight times and stops.
Explanation:
- Iteration over a dictionary that you edit at the same time is not supported.
- It runs eight times because that's the point at which the dictionary resizes to hold more keys (we have eight deletion entries, so a resize is needed). This is actually an implementation detail.
- Refer to this StackOverflow thread explaining a similar example.
Deleting a list item while iterating over it
list_1 = [1, 2, 3, 4]
list_2 = [1, 2, 3, 4]
list_3 = [1, 2, 3, 4]
list_4 = [1, 2, 3, 4]
for idx, item in enumerate(list_1):
del item
for idx, item in enumerate(list_2):
list_2.remove(item)
for idx, item in enumerate(list_3[:]):
list_3.remove(item)
for idx, item in enumerate(list_4):
list_4.pop(idx)
Output:
>>> list_1
[1, 2, 3, 4]
>>> list_2
[2, 4]
>>> list_3
[]
>>> list_4
[2, 4]
Can you guess why the output is [2, 4]
?
💡 Explanation:
-
It's never a good idea to change the object you're iterating over. The correct way to do so is to iterate over a copy of the object instead, and
list_3[:]
does just that.>>> some_list = [1, 2, 3, 4] >>> id(some_list) 139798789457608 >>> id(some_list[:]) # Notice that python creates new object for sliced list. 139798779601192
Difference between del
, remove
, and pop
:
remove
removes the first matching value, not a specific index, raisesValueError
if the value is not found.del
removes a specific index (That's why firstlist_1
was unaffected), raisesIndexError
if an invalid index is specified.pop
removes element at a specific index and returns it, raisesIndexError
if an invalid index is specified.
Why the output is [2, 4]
?
- The list iteration is done index by index, and when we remove
1
fromlist_2
orlist_4
, the contents of the lists are now[2, 3, 4]
. The remaining elements are shifted down, i.e.2
is at index 0, and3
is at index 1. Since the next iteration is going to look at index 1 (which is the3
), the2
gets skipped entirely. A similar thing will happen with every alternate element in the list sequence.
- See this nice StackOverflow thread for a similar example related to dictionaries in Python.
Backslashes at the end of string
Output:
>>> print("\\ some string \\")
>>> print(r"\ some string")
>>> print(r"\ some string \")
File "<stdin>", line 1
print(r"\ some string \")
^
SyntaxError: EOL while scanning string literal
Explanation
- In a raw string literal, as indicated by the prefix
r
, the backslash doesn't have the special meaning. - What the interpreter actually does, though, is simply change the behavior of backslashes, so they pass themselves and the following character through. That's why backslashes don't work at the end of a raw string.
Let's make a giant string!
This is not a WTF at all, just some nice things to be aware of :)
def add_string_with_plus(iters):
s = ""
for i in range(iters):
s += "xyz"
assert len(s) == 3*iters
def add_string_with_format(iters):
fs = "{}"*iters
s = fs.format(*(["xyz"]*iters))
assert len(s) == 3*iters
def add_string_with_join(iters):
l = []
for i in range(iters):
l.append("xyz")
s = "".join(l)
assert len(s) == 3*iters
def convert_list_to_string(l, iters):
s = "".join(l)
assert len(s) == 3*iters
Output:
>>> timeit(add_string_with_plus(10000))
100 loops, best of 3: 9.73 ms per loop
>>> timeit(add_string_with_format(10000))
100 loops, best of 3: 5.47 ms per loop
>>> timeit(add_string_with_join(10000))
100 loops, best of 3: 10.1 ms per loop
>>> l = ["xyz"]*10000
>>> timeit(convert_list_to_string(l, 10000))
10000 loops, best of 3: 75.3 µs per loop
Explanation
- You can read more about timeit from here. It is generally used to measure the execution time of snippets.
- Don't use
+
for generating long strings — In Python,str
is immutable, so the left and right strings have to be copied into the new string for every pair of concatenations. If you concatenate four strings of length 10, you'll be copying (10+10) + ((10+10)+10) + (((10+10)+10)+10) = 90 characters instead of just 40 characters. Things get quadratically worse as the number and size of the string increases. - Therefore, it's advised to use
.format.
or%
syntax (however, they are slightly slower than+
for short strings). - Or better, if already you've contents available in the form of an iterable object, then use
''.join(iterable_object)
which is much faster.
String concatenation interpreter optimizations.
>>> a = "some_string"
140420665652016
>>> id(a)
>>> id("some" + "_" + "string") # Notice that both the ids are same.
140420665652016
# using "+", three strings:
>>> timeit.timeit("s1 = s1 + s2 + s3", setup="s1 = ' ' * 100000; s2 = ' ' * 100000; s3 = ' ' * 100000", number=100)
0.25748300552368164
# using "+=", three strings:
>>> timeit.timeit("s1 += s2 + s3", setup="s1 = ' ' * 100000; s2 = ' ' * 100000; s3 = ' ' * 100000", number=100)
0.012188911437988281
💡 Explanation:
+=
is faster than+
for concatenating more than two strings because the first string (example,s1
fors1 += s2 + s3
) is not destroyed while calculating the complete string.- Both the strings refer to the same object because of CPython optimization hat tries to use existing immutable objects in some cases (implementation specific) rather than creating a new object every time. You can read more about this here
Yes, it exists!
The else
clause for loops. One typical example might be:
def does_exists_num(l, to_find):
for num in l:
if num == to_find:
print("Exists!")
break
else:
print("Does not exist")
Output:
>>> some_list = [1, 2, 3, 4, 5]
>>> does_exists_num(some_list, 4)
Exists!
>>> does_exists_num(some_list, -1)
Does not exist
The else
clause in exception handling. An example,
try:
pass
except:
print("Exception occurred!!!")
else:
print("Try block executed successfully...")
Output:
Try block executed successfully...
💡 Explanation:
- The
else
clause after a loop is executed only when there's no explicitbreak
after all the iterations. else
clause after try block is also called "completion clause" as reaching theelse
clause in atry
statement means that the try block actually completed successfully.
is
is not what it is!
The following is a very famous example present all over the internet.
>>> a = 256
>>> b = 256
>>> a is b
True
>>> a = 257
>>> b = 257
>>> a is b
False
>>> a = 257; b = 257
>>> a is b
True
💡 Explanation:
The difference between is
and ==
is
operator checks if both the operands refer to the same object (i.e. it checks if the identity of the operands matches or not).==
operator compares the values of both the operands and checks if they are the same.- So if the
is
operator returnsTrue
then the equality is definitelyTrue
, but the opposite may or may not be True.
256
is an existing object but 257
isn't
When you start up python the numbers from -5
to 256
will be allocated. These numbers are used a lot, so it makes sense just to have them ready.
Quoting from https://docs.python.org/3/c-api/long.html
The current implementation keeps an array of integer objects for all integers between -5 and 256, when you create an int in that range you just get back a reference to the existing object. So it should be possible to change the value of 1. I suspect the behavior of Python, in this case, is undefined. :-)
>>> id(256)
10922528
>>> a = 256
>>> b = 256
>>> id(a)
10922528
>>> id(b)
10922528
>>> id(257)
140084850247312
>>> x = 257
>>> y = 257
>>> id(x)
140084850247440
>>> id(y)
140084850247344
Here the interpreter isn't smart enough while executing y = 257
to recognize that we've already created an integer of the value 257 ,
and so it goes on to create another object in the memory.
Both a
and b
refer to the same object, when initialized with same value in the same line.
>>> a, b = 257, 257
>>> id(a)
140640774013296
>>> id(b)
140640774013296
>>> a = 257
>>> b = 257
>>> id(a)
140640774013392
>>> id(b)
140640774013488
- When a and b are set to
257
in the same line, the Python interpreter creates a new object, then references the second variable at the same time. If you do it on separate lines, it doesn't "know" that there's already257
as an object. - It's a compiler optimization and specifically applies to the interactive environment. When you enter two lines in a live interpreter, they're compiled separately, therefore optimized separately. If you were to try this example in a
.py
file, you would not see the same behavior, because the file is compiled all at once.
is not ...
is different from is (not ...)
>>> 'something' is not None
True
>>> 'something' is (not None)
False
Explanation
is not
is a single binary operator, and has behavior different than usingis
andnot
separated.is not
evaluates toFalse
if the variables on either side of the operator point to the same object andTrue
otherwise.
The function inside loop sticks to the same output
funcs = []
results = []
for x in range(7):
def some_func():
return x
funcs.append(some_func)
results.append(some_func())
funcs_results = [func() for func in funcs]
Output:
>>> results
[0, 1, 2, 3, 4, 5, 6]
>>> funcs_results
[6, 6, 6, 6, 6, 6, 6]
Even when the values of x
were different in every iteration prior to appending some_func
to funcs
, all the functions return 6.
//OR
>>> powers_of_x = [lambda x: x**i for i in range(10)]
>>> [f(2) for f in powers_of_x]
[512, 512, 512, 512, 512, 512, 512, 512, 512, 512]
Explanation
-
When defining a function inside a loop that uses the loop variable in its body, the loop function's closure is bound to the variable, not its value. So all of the functions use the latest value assigned to the variable for computation.
-
To get the desired behavior you can pass in the loop variable as a named variable to the function. Why this works? Because this will define the variable again within the function's scope.
funcs = [] for x in range(7): def some_func(x=x): return x funcs.append(some_func)
Output:
>>> funcs_results = [func() for func in funcs] >>> funcs_results [0, 1, 2, 3, 4, 5, 6]
Loop variables leaking out of local scope!
1.
for x in range(7):
if x == 6:
print(x, ': for x inside loop')
print(x, ': x in global')
Output:
6 : for x inside loop
6 : x in global
But x
was never defined outside the scope of for loop...
2.
# This time let's initialize x first
x = -1
for x in range(7):
if x == 6:
print(x, ': for x inside loop')
print(x, ': x in global')
Output:
6 : for x inside loop
6 : x in global
3.
x = 1
print([x for x in range(5)])
print(x, ': x in global')
Output (on Python 2.x):
[0, 1, 2, 3, 4]
(4, ': x in global')
Output (on Python 3.x):
[0, 1, 2, 3, 4]
1 : x in global
💡 Explanation:
-
In Python, for-loops use the scope they exist in and leave their defined loop-variable behind. This also applies if we explicitly defined the for-loop variable in the global namespace before. In this case, it will rebind the existing variable.
-
The differences in the output of Python 2.x and Python 3.x interpreters for list comprehension example can be explained by following change documented in What’s New In Python 3.0 documentation:
"List comprehensions no longer support the syntactic form
[... for var in item1, item2, ...]
. Use[... for var in (item1, item2, ...)]
instead. Also, note that list comprehensions have different semantics: they are closer to syntactic sugar for a generator expression inside alist()
constructor, and in particular the loop control variables are no longer leaked into the surrounding scope."
A tic-tac-toe where X wins in the first attempt!
# Let's initialize a row
row = [""]*3 #row i['', '', '']
# Let's make a bord
board = [row]*3
Output:
>>> board
[['', '', ''], ['', '', ''], ['', '', '']]
>>> board[0]
['', '', '']
>>> board[0][0]
''
>>> board[0][0] = "X"
>>> board
[['X', '', ''], ['X', '', ''], ['X', '', '']]
We didn't assigned 3 "X"s or did we?
💡 Explanation:
When we initialize row
variable, this visualization explains what happens in the memory
And when the board
is initialized by multiplying the row
, this is what happens inside the memory (each of the elements board[0]
, board[1]
and board[2]
is a reference to the same list referred by row
)
Beware of default mutable arguments!
def some_func(default_arg=[]):
default_arg.append("some_string")
return default_arg
Output:
>>> some_func()
['some_string']
>>> some_func()
['some_string', 'some_string']
>>> some_func([])
['some_string']
>>> some_func()
['some_string', 'some_string', 'some_string']
💡 Explanation:
-
The default mutable arguments of functions in Python aren't really initialized every time you call the function. Instead, the recently assigned value to them is used as the default value. When we explicitly passed
[]
tosome_func
as the argument, the default value of thedefault_arg
variable was not used, so the function returned as expected.def some_func(default_arg=[]): default_arg.append("some_string") return default_arg
Output:
>>> some_func.__defaults__ #This will show the default argument values for the function ([],) >>> some_func() >>> some_func.__defaults__ (['some_string'],) >>> some)func() >>> some_func.__defaults__ (['some_string', 'some_string'],) >>> some_func([]) >>> some_func.__defaults__ (['some_string', 'some_string'],)
-
A common practice to avoid bugs due to mutable arguments is to assign
None
as the default value and later check if any value is passed to the function corresponding to that argument. Examlple:def some_func(default_arg=None): if not default_arg: default_arg = [] default_arg.append("some_string") return default_arg
Same operands, different story!
1.
a = [1, 2, 3, 4]
b = a
a = a + [5, 6, 7, 8]
Output:
>>> a
[1, 2, 3, 4, 5, 6, 7, 8]
>>> b
[1, 2, 3, 4]
2.
a = [1, 2, 3, 4]
b = a
a += [5, 6, 7, 8]
Output:
>>> a
[1, 2, 3, 4, 5, 6, 7, 8]
>>> b
[1, 2, 3, 4, 5, 6, 7, 8]
💡 Explanation:
-
a += b doesn't behave the same way as a = a + b
-
The expression
a = a + [5,6,7,8]
generates a new object and setsa
's reference to that new object, leavingb
unchanged. -
The expression
a + =[5,6,7,8]
is actually mapped to an "extend" function that operates on the object such thata
andb
still point to the same object that has been modified in-place.
Mutating the immutable!
some_tuple = ("A", "tuple", "with", "values")
another_tuple = ([1, 2], [3, 4], [5, 6])
Output:
>>> some_tuple[2] = "change this"
TypeError: 'tuple' object does not support item assignment
>>> another_tuple[2].append(1000) #This throws no error
>>> another_tuple
([1, 2], [3, 4], [5, 6, 1000])
>>> another_tuple[2] += [99, 999]
TypeError: 'tuple' object does not support item assignment
>>> another_tuple
([1, 2], [3, 4], [5, 6, 1000, 99, 999])
But I thought tuples were immutable...
💡 Explanation:
-
Quoting from https://docs.python.org/2/reference/datamodel.html
Immutable sequences An object of an immutable sequence type cannot change once it is created. (If the object contains references to other objects, these other objects may be mutable and may be modified; however, the collection of objects directly referenced by an immutable object cannot change.)
-
+=
operator changes the list in-place. The item assignment doesn't work, but when the exception occurs, the item has already been changed in place.
Using a variable not defined in scope
a = 1
def some_func():
return a
def another_func():
a += 1
return a
Output:
>>> some_func()
1
>>> another_func()
UnboundLocalError: local variable 'a' referenced before assignment
💡 Explanation:
-
When you make an assignment to a variable in a scope, it becomes local to that scope. So
a
becomes local to the scope ofanother_func
, but it has not been initialized previously in the same scope which throws an error. -
Read this short but an awesome guide to learn more about how namespaces and scope resolution works in Python.
-
To modify the outer scope variable
a
inanother_func
, useglobal
keyword.def another_func() global a a += 1 return a
Output:
>>> another_func() 2
The disappearing variable from outer scope
e = 7
try:
raise Exception()
except Exception as e:
pass
Output (Python 2.x):
>>> print(e)
# prints nothing
Output (Python 3.x):
>>> print(e)
NameError: name 'e' is not defined
💡 Explanation:
-
Source: https://docs.python.org/3/reference/compound_stmts.html#except
When an exception has been assigned using
as
target, it is cleared at the end of the except clause. This is as ifexcept E as N: foo
was translated to
except E as N: try: foo finally: del N
This means the exception must be assigned to a different name to be able to refer to it after the except clause. Exceptions are cleared because, with the traceback attached to them, they form a reference cycle with the stack frame, keeping all locals in that frame alive until the next garbage collection occurs.
-
The clauses are not scoped in Python. Everything in the example is present in the same scope, and the variable
e
got removed due to the execution of theexcept
clause. The same is not the case with functions which have their separate inner-scopes. The example below illustrates this:def f(x): del(x) print(x) x = 5 y = [5, 4, 3]
Output:
>>>f(x) UnboundLocalError: local variable 'x' referenced before assignment >>>f(y) UnboundLocalError: local variable 'x' referenced before assignment >>> x 5 >>> y [5, 4, 3]
-
In Python 2.x the variable name
e
gets assigned toException()
instance, so when you try to print, it prints nothing.Output (Python 2.x):
>>> e Exception() >>> print e # Nothing is printed!
Return return everywhere!
def some_func():
try:
return 'from_try'
finally:
return 'from_finally'
Output:
>>> some_func()
'from_finally'
💡 Explanation:
- When a
return
,break
orcontinue
statement is executed in thetry
suite of a "try…finally" statement, thefinally
clause is also executed ‘on the way out. - The return value of a function is determined by the last
return
statement executed. Since thefinally
clause always executes, areturn
statement executed in thefinally
clause will always be the last one executed.
When True is actually False
True == False
if True == False:
print("I've lost faith in truth!")
Output:
I've lost faith in truth!
💡 Explanation:
- Initially, Python used to have no
bool
type (people used 0 for false and non-zero value like 1 for true). Then they addedTrue
,False
, and abool
type, but, for backward compatibility, they couldn't makeTrue
andFalse
constants- they just were built-in variables. - Python 3 was backwards-incompatible, so it was now finally possible to fix that, and so this example won't work with Python 3.x!
Be careful with chained operations
>>> True is False == False
False
>>> False is False is False
True
>>> 1 > 0 < 1
True
>>> (1 > 0) < 1
False
>>> 1 > (0 < 1)
False
💡 Explanation:
As per https://docs.python.org/2/reference/expressions.html#not-in
Formally, if a, b, c, ..., y, z are expressions and op1, op2, ..., opN are comparison operators, then a op1 b op2 c ... y opN z is equivalent to a op1 b and b op2 c and ... y opN z, except that each expression is evaluated at most once.
While such behavior might seem silly to you in the above examples, it's fantastic with stuff like a == b == c
and 0 <= x <= 100
.
False is False is False
is equivalent to(False is False) and (False is False)
True is False == False
is equivalent toTrue is False and False == False
and since the first part of the statement (True is False
) evaluates toFalse
, the overall expression evaluates toFalse
.1 > 0 < 1
is equivalent to1 > 0 and 0 < 1
which evaluates toTrue
.- The expression
(1 > 0) < 1
is equivalent toTrue < 1
and
So,>>> int(True) 1 >>> True + 1 #not relevant for this example, but just for fun 2
1 < 1
evaluates toFalse
Name resolution ignoring class scope
1.
x = 5
class SomeClass:
x = 17
y = (x for i in range(10))
Output:
>>> list(SomeClass.y)[0]
5
2.
x = 5
class SomeClass:
x = 17
y = [x for i in range(10)]
Output (Python 2.x):
>>> SomeClass.y[0]
17
Output (Python 3.x):
>>> SomeClass.y[0]
5
💡 Explanation
- Scopes nested inside class definition ignore names bound at the class level.
- A generator expression has its own scope.
- Starting from Python 3.X, list comprehensions also have their own scope.
From filled to None in one instruction...
some_list = [1, 2, 3]
some_dict = {
"key_1": 1,
"key_2": 2,
"key_3": 3
}
some_list = some_list.append(4)
some_dict = some_dict.update({"key_4": 4})
Output:
>>> print(some_list)
None
>>> print(some_dict)
None
💡 Explanation
Most methods that modify the items of sequence/mapping objects like list.append
, dict.update
, list.sort
, etc. modify the objects in-place and return None
. The rationale behind this is to improve performance by avoiding making a copy of the object if the operation can be done in-place (Referred from here)
Explicit typecast of strings
This is not a WTF at all, but it took me so long to realize such things existed in Python. So sharing it here for the beginners.
a = float('inf')
b = float('nan')
c = float('-iNf') #These strings are case-insensitive
d = float('nan')
Output:
>>> a
inf
>>> b
nan
>>> c
-inf
>>> float('some_other_string')
ValueError: could not convert string to float: some_other_string
>>> a == -c #inf==inf
True
>>> b == d #but nan!=nan
False
>>> 50/a
0
>>> a/a
nan
>>> 23 + b
nan
💡 Explanation:
'inf'
and 'nan'
are special strings (case-insensitive), which when explicitly type casted to float
type, are used to represent mathematical "infinity" and "not a number" respectively.
Class attributes and instance attributes
1.
class A:
x = 1
class B(A):
pass
class C(A):
pass
Ouptut:
>>> A.x, B.x, C.x
(1, 1, 1)
>>> B.x = [2]
>>> A.x, B.x, C.x
(1, 2, 1)
>>> A.x = 3
>>> A.x, B.x, C.x
(3, 2, 3)
>>> a = A()
>>> a.x, A.x
(3, 3)
>>> a.x += 1
>>> a.x, A.x
(4, 3)
2.
class SomeClass:
some_var = 15
some_list = [5]
another_list = [5]
def __init__(self, x):
self.some_var = x + 1
self.some_list = self.some_list + [x]
self.another_list += [x]
Output:
>>> some_obj = SomeClass(420)
>>> some_obj.some_list
[5, 420]
>>> some_obj.another_list
[5, 420]
>>> another_obj = SomeClass(111)
>>> another_obj.some_list
[5, 111]
>>> another_obj.another_list
[5, 420, 111]
>>> another_obj.another_list is SomeClass.another_list
True
>>> another_obj.another_list is some_obj.another_list
True
Explanation:
- Class variables and variables in class instances are internally handled as dictionaries of a class object. If a variable name is not found in the dictionary of the current class, the parent classes are searched for it.
- The
+=
operator modifies the mutable object in-place without creating a new object. So changing the attribute of one instance affects the other instances and the class attribute as well.
Catching the Exceptions!
some_list = [1, 2, 3]
try:
# This should raise an ``IndexError``
print(some_list[4])
except IndexError, ValueError:
print("Caught!")
try:
# This should raise a ``ValueError``
some_list.remove(4)
except IndexError, ValueError:
print("Caught again!")
Output (Python 2.x):
Caught!
ValueError: list.remove(x): x not in list
Output (Python 3.x):
File "<input>", line 3
except IndexError, ValueError:
^
SyntaxError: invalid syntax
Explanation
-
To add multiple Exceptions to the except clause, you need to pass them as parenthesized tuple as the first argument. The second argument is an optional name, which when supplied will bind the Exception instance that has been raised. Example,
some_list = [1, 2, 3] try: # This should raise a ``ValueError`` some_list.remove(4) except (IndexError, ValueError), e: print("Caught again!") print(e)
Output (Python 2.x):
Caught again! list.remove(x): x not in list
Output (Python 3.x):
File "<input>", line 4 except (IndexError, ValueError), e: ^ IndentationError: unindent does not match any outer indentation level
-
Separating the exception from the variable with a comma is deprecated and does not work in Python 3; the correct way is to use
as
. Example,some_list = [1, 2, 3] try: some_list.remove(4) except (IndexError, ValueError) as e: print("Caught again!") print(e)
Output:
Caught again! list.remove(x): x not in list
Midnight time doesn't exist?
from datetime import datetime
midnight = datetime(2018, 1, 1, 0, 0)
midnight_time = midnight.time()
noon = datetime(2018, 1, 1, 12, 0)
noon_time = noon.time()
if midnight_time:
print("Time at midnight is", midnight_time)
if noon_time:
print("Time at noon is", noon_time)
Output:
('Time at noon is', datetime.time(12, 0))
The midnight time is not printed.
💡 Explanation:
Before Python 3.5, the boolean value fo datetime.time
object was considered to be False
if it represented midnight in UTC. It is error-prone when using the if obj:
syntax to check if the obj
is null or some equivalent of "empty."
Needle in a Haystack
Almost every Python programmer would have faced this situation.
t = ('one', 'two')
for i in t:
print(i)
t = ('one')
for i in t:
print(i)
t = ()
print(t)
Output:
one
two
o
n
e
tuple()
💡 Explanation:
- The correct statement for expected behavior is
t = ('one',)
ort = 'one',
(missing comma) otherwise the interpreter considerst
to be astr
and iterates over it character by character. ()
is a special token and denotes emptytuple
.
Minor Ones
-
join()
is a string operation instead of list operation. (sort of counter-intuitive at first usage)💡 Explanation: If
join()
is a method on a string then it can operate on any iterable (list, tuple, iterators). If it were a method on a list, it'd have to be implemented separately by every type. Also, it doesn't make much sense to put a string-specific method on a generic list.Also, it's string specific, and it sounds wrong to put a string-specific method on a generic list.
-
Few weird looking but semantically correct statements:
[] = ()
is a semantically correct statement (unpacking an emptytuple
into an emptylist
)'a'[0][0][0][0][0]
is also a semantically correct statement as strings are iterable in Python.3 --0-- 5 == 8
and--5 == 5
are both semantically correct statments and evalute toTrue
.
-
Booleans are a subclass of
int
>>> isinstance(True, int) True >>> isinstance(False, float) True
-
Python uses 2 bytes for local variable storage in functions. In theory, this means that only 65536 variables can be defined in a function. However, python has a handy solution built in that can be used to store more than 2^16 variable names. The following code demonstrates what happens in the stack when more than 65536 local variables are defined (Warning: This code prints around 2^18 lines of text, so be prepared!):
import dis exec(""" def f():* """ + """ """.join(["X"+str(x)+"=" + str(x) for x in range(65539)])) f() print(dis.dis(f))
-
Multiple Python threads don't run concurrently (yes you heard it right!). It may seem intuitive to spawn several threads and let them execute concurrently, but, because of the Global Interpreter Lock in Python, all you're doing is making your threads execute on the same core turn by turn. To achieve actual parallelization in Python, you might want to use the Python multiprocessing module.
-
List slicing with out of the bounds indices throws no errors
>>> some_list = [1, 2, 3, 4, 5] >>> some_list[111:] []
TODO: Hell of an example!
Trying to come up with an example that combines multiple examples discussed above, making it difficult for the reader to guess the output correctly 😅.
Contributing
All patches are Welcome! Filing an issue first before submitting a patch will be appreciated :)
Acknowledgements
The idea and design for this collection are inspired by Denys Dovhan's awesome project wtfjs.
Some nice Links!
- https://www.youtube.com/watch?v=sH4XF6pKKmk
- https://www.reddit.com/r/Python/comments/3cu6ej/what_are_some_wtf_things_about_python
- https://sopython.com/wiki/Common_Gotchas_In_Python
- https://stackoverflow.com/questions/530530/python-2-x-gotchas-and-landmines
- https://stackoverflow.com/questions/1011431/common-pitfalls-in-python (This StackOverflow thread has some DOs and DONTs which are worth reading.)