**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])
```