I am trying to figure out the best way to do leave one out indexing with numpy, this is the desired behaviour:

```
import numpy as np
a = np.random.randint(0,10,size=10)
print(a)
def fun(x, xs):
print(x,xs) #do some stuff
for i in range(a.shape[0]):
fun(a[i], a[np.arange(a.shape[0]) != i]) #this is all I can think of, but its horrid!
```

is there a nicer, more efficient way to do this?

EDIT: To clarify, a question that is hopefully a bit clearer:

I have an array and I want a view that has 1 or more elements missing in the *middle* e.g. `a = [1,2,3,4,5,...]`

to `a = [1,2,4,5,...]`

. According to here fancy indexing / masking makes a copy of the array, I want to avoid this, and avoid creating a large index array. Thanks in advance for the help!

`fun`

does. You might get away with setting the element to`nan`

for a sum/average – roganjosh Nov 8 at 17:00`a[np.arange(a.shape[0]) != i]`

. Can you slice and work in two stages -`a[:i]`

and`a[i+1:]`

? These would be views and hence could be better. – Divakar Nov 8 at 17:00`views`

. There's no way of making one`view`

with a gap in the middle. – hpaulj Nov 8 at 18:11`view`

differs from the original in just 2 parameters,`shape`

and`strides`

(ok there may be a data buffer pointer difference as well). You may need to read up on`strides`

, and how those are used to iterate (in C code) through the array. Your gap case cannot be expressed as a stride. scipy-lectures.org/advanced/advanced_numpy/… – hpaulj Nov 8 at 18:55