# How does functools partial do what it does?

I am not able to get my head on how the partial works in functools. I have the following code from here:

``````>>> sum = lambda x, y : x + y
>>> sum(1, 2)
3
>>> incr = lambda y : sum(1, y)
>>> incr(2)
3
>>> def sum2(x, y):
return x + y

>>> incr2 = functools.partial(sum2, 1)
>>> incr2(4)
5
``````

Now in the line

``````incr = lambda y : sum(1, y)
``````

I get that whatever argument I pass to `incr` it will be passed as `y` to `lambda` which will return `sum(1, y)` i.e `1 + y`.

I understand that. But I didn't understand this `incr2(4)`.

How does the `4` gets passed as `x` in partial function? To me, `4` should replace the `sum2`. What is the relation between `x` and `4`?

Roughly, `partial` does something like this (apart from keyword args support etc):

``````def partial(func, *part_args):
def wrapper(*extra_args):
args = list(part_args)
args.extend(extra_args)
return func(*args)

return wrapper
``````

So, by calling `partial(sum2, 4)` you create a new function (a callable, to be precise) that behaves like `sum2`, but has one positional argument less. That missing argument is always substituted by `4`, so that `partial(sum2, 4)(2) == sum2(4, 2)`

As for why it's needed, there's a variety of cases. Just for one, suppose you have to pass a function somewhere where it's expected to have 2 arguments:

``````class EventNotifier(object):
def __init__(self):
self._listeners = []

''' callback should accept two positional arguments, event and params '''
self._listeners.append(callback)
# ...

def notify(self, event, *params):
for f in self._listeners:
f(event, params)
``````

But a function you already have needs access to some third `context` object to do its job:

``````def log_event(context, event, params):
context.log_event("Something happened %s, %s", event, params)
``````

So, there are several solutions:

A custom object:

``````class Listener(object):
def __init__(self, context):
self._context = context

def __call__(self, event, params):
self._context.log_event("Something happened %s, %s", event, params)

``````

Lambda:

``````log_listener = lambda event, params: log_event(context, event, params)
``````

With partials:

``````context = get_context()  # whatever
``````

Of those three, `partial` is the shortest and the fastest. (For a more complex case you might want a custom object though).

• from where did u get the `extra_args` variable – user1865341 Mar 11 '13 at 5:40
• `extra_args` is something that passed by the partial caller, in the example with `p = partial(func, 1); f(2, 3, 4)` it is `(2, 3, 4)`. – bereal Mar 11 '13 at 5:42
• but why we would do that , any special use case where something has to be done by partial only and can't be done with other thing – user1865341 Mar 11 '13 at 5:43
• @user1865341 I added an example to the answer. – bereal Mar 11 '13 at 5:52
• with your example , what is the relation between `callback` and `my_callback` – user1865341 Mar 11 '13 at 6:06

partials are incredibly useful.

For instance, in a 'pipe-lined' sequence of function calls (in which the returned value from one function is the argument passed to the next).

Sometimes a function in such a pipeline requires a single argument, but the function immediately upstream from it returns two values.

In this scenario, `functools.partial` might allow you to keep this function pipeline intact.

Here's a specific, isolated example: suppose you want to sort some data by each data point's distance from some target:

``````# create some data
import random as RND
fnx = lambda: RND.randint(0, 10)
data = [ (fnx(), fnx()) for c in range(10) ]
target = (2, 4)

import math
def euclid_dist(v1, v2):
x1, y1 = v1
x2, y2 = v2
return math.sqrt((x2 - x1)**2 + (y2 - y1)**2)
``````

To sort this data by distance from the target, what you would like to do of course is this:

``````data.sort(key=euclid_dist)
``````

but you can't--the sort method's key parameter only accepts functions that take a single argument.

so re-write `euclid_dist` as a function taking a single parameter:

``````from functools import partial

p_euclid_dist = partial(euclid_dist, target)
``````

`p_euclid_dist` now accepts a single argument,

``````>>> p_euclid_dist((3, 3))
1.4142135623730951
``````

so now you can sort your data by passing in the partial function for the sort method's key argument:

``````data.sort(key=p_euclid_dist)

# verify that it works:
for p in data:
print(round(p_euclid_dist(p), 3))

1.0
2.236
2.236
3.606
4.243
5.0
5.831
6.325
7.071
8.602
``````

Or for instance, one of the function's arguments changes in an outer loop but is fixed during iteration in the inner loop. By using a partial, you don't have to pass in the additional parameter during iteration of the inner loop, because the modified (partial) function doesn't require it.

``````>>> from functools import partial

>>> def fnx(a, b, c):
return a + b + c

>>> fnx(3, 4, 5)
12
``````

create a partial function (using keyword arg)

``````>>> pfnx = partial(fnx, a=12)

>>> pfnx(b=4, c=5)
21
``````

you can also create a partial function with a positional argument

``````>>> pfnx = partial(fnx, 12)

>>> pfnx(4, 5)
21
``````

but this will throw (e.g., creating partial with keyword argument then calling using positional arguments)

``````>>> pfnx = partial(fnx, a=12)

>>> pfnx(4, 5)
Traceback (most recent call last):
File "<pyshell#80>", line 1, in <module>
pfnx(4, 5)
TypeError: fnx() got multiple values for keyword argument 'a'
``````

another use case: writing distributed code using python's `multiprocessing` library. A pool of processes is created using the Pool method:

``````>>> import multiprocessing as MP

>>> # create a process pool:
>>> ppool = MP.Pool()
``````

`Pool` has a map method, but it only takes a single iterable, so if you need to pass in a function with a longer parameter list, re-define the function as a partial, to fix all but one:

``````>>> ppool.map(pfnx, [4, 6, 7, 8])
``````
• is there any practical use of this function somewher – user1865341 Mar 11 '13 at 5:53
• @user1865341 added two exemplarly use cases to my answer – doug Mar 11 '13 at 6:18

Partials can be used to make new derived functions that have some input parameters pre-assigned

To see some real world usage of partials, refer to this really good blog post:
http://chriskiehl.com/article/Cleaner-coding-through-partially-applied-functions/

A simple but neat beginner's example from the blog, covers how one might use `partial` on `re.search` to make code more readable. `re.search` method's signature is:

``````search(pattern, string, flags=0)
``````

By applying `partial` we can create multiple versions of the regular expression `search` to suit our requirements, so for example:

``````is_spaced_apart = partial(re.search, '[a-zA-Z]\s\=')
is_grouped_together = partial(re.search, '[a-zA-Z]\=')
``````

Now `is_spaced_apart` and `is_grouped_together` are two new functions derived from `re.search` that have the `pattern` argument applied(since `pattern` is the first argument in the `re.search` method's signature).

The signature of these two new functions(callable) is:

``````is_spaced_apart(string, flags=0)     # pattern '[a-zA-Z]\s\=' applied
is_grouped_together(string, flags=0) # pattern '[a-zA-Z]\=' applied
``````

This is how you could then use these partial functions on some text:

``````for text in lines:
if is_grouped_together(text):
some_action(text)
elif is_spaced_apart(text):
some_other_action(text)
else:
some_default_action()
``````

You can refer the link above to get a more in depth understanding of the subject, as it covers this specific example and much more..

short answer, `partial` gives default values to the parameters of a function that would otherwise not have default values.

``````from functools import partial

def foo(a,b):
return a+b

bar = partial(foo, a=1) # equivalent to: foo(a=1, b)
bar(b=10)
#11 = 1+10
bar(a=101, b=10)
#111=101+10
``````
• this is half true because we can override default values, we can even override overriden parameters by subsequent `partial` and so on – Azat Ibrakov Oct 12 '18 at 3:39

In my opinion, it's a way to implement currying in python.

``````from functools import partial
return a + b

return x + y + z

if __name__ == "__main__":
``````

The result is 3 and 4.

Also worth to mention, that when partial function passed another function where we want to "hard code" some parameters, that should be rightmost parameter

``````def func(a,b):
return a*b
prt = partial(func, b=7)
print(prt(4))
#return 28
``````

but if we do the same, but changing a parameter instead

``````def func(a,b):
return a*b
prt = partial(func, a=7)
print(prt(4))
``````

it will throw error, "TypeError: func() got multiple values for argument 'a'"

• Huh? You do the leftmost parameter like this: `prt=partial(func, 7)` – DylanYoung Oct 25 at 14:00