Let `A,B`

be `((day,observation,dim))`

arrays. Each array contains for a given day the same number of observations, an observation being a point with dim dimensions (that is dim floats). For every day, I want to compute the spatial distances between all observations in `A`

and `B`

that day.

For example:

```
import numpy as np
from scipy.spatial.distance import cdist
A, B = np.random.rand(50,1000,10), np.random.rand(50,1000,10)
output = []
for day in range(50):
output.append(cdist(A[day],B[day]))
```

where I use `scipy.spatial.distance.cdist`

.

Is there a faster way to do this? Ideally, I would like to get for `output`

a `((day,observation,observation))`

array that contains for every day the pairwise distances between observations in `A`

and `B`

that day, whilst somehow avoid the loop over days.

`cdist`

calculations.