Consider the following `numpy`

code:

```
A[start:end] = B[mask]
```

Here:

`A`

and`B`

are 2D arrays with the same number of columns;`start`

and`end`

are scalars;`mask`

is a 1D boolean array;`(end - start) == sum(mask)`

.

In principle, the above operation can be carried out using `O(1)`

temporary storage, by copying elements of `B`

directly into `A`

.

Is this what actually happens in practice, or does `numpy`

construct a temporary array for `B[mask]`

? If the latter, is there a way to avoid this by rewriting the statement?