# Compute pairwise differences between two vectors in numpy?

I have two vectors and I would like to construct a matrix of their pairwise differences. Currently I do this:

``````import numpy as np
a = np.array([1,2,3,4])
b = np.array([3,2,1])
M = a.reshape((-1,1)) - b.reshape((1,-1))
``````

This certainly works, but I wonder if it's really the intended way of doing things. The readability of the line is suboptimal; one has to think a while what the `reshape`s are doing. Can this be improved? Is there another "cleaner" way of achieving the same?

• Maybe ask this at Code Review as it may dangerously lead to an opinion base question. Commented Jan 22, 2021 at 19:01
• although you can use `outer` to subtract, you can also use `M=a-b[:,None]` if it makes it more readable. Commented Jan 22, 2021 at 20:32
• @Ehsan this gives `M.T` instead of `M`
– Stef
Commented Jan 22, 2021 at 21:32

There's an efficient way to do this that doesn't require you to manually reshape, using `numpy`'s `ufunc` (universal function) features. Each `ufunc`, including `np.subtract`, has a method called `outer`, which does what you want. (documentation)

`outer` applies the computation (in this case, `np.subtract`) to all pairs.

``````>>> import numpy as np
>>> a = np.array([1,2,3,4])
>>> b = np.array([3,2,1])
>>> M = np.subtract.outer(a, b)
>>> M
array([[-2, -1,  0],
[-1,  0,  1],
[ 0,  1,  2],
[ 1,  2,  3]])
>>>
``````

Let's confirm that it matches your intended result.

``````>>> # This is how `M` was defined in the question:
>>> M = a.reshape((-1,1)) - b.reshape((1,-1))
>>> M
array([[-2, -1,  0],
[-1,  0,  1],
[ 0,  1,  2],
[ 1,  2,  3]])
``````
• Lovely, thanks! I really didn't know about this but I was suspecting there should be a better solution. So much more readable. Great! Commented Jan 23, 2021 at 19:49