I'm looking for the most memory-efficient way to compute the absolute squared value of a complex numpy ndarray

```
arr = np.empty((250000, 150), dtype='complex128') # common size
```

I haven't found a ufunc that would do exactly `np.abs()**2`

.

As an array of that size and type takes up around half a GB, I'm looking for a primarily memory-efficient way.

I would also like it to be portable, so ideally some combination of ufuncs.

So far my understanding is that this should be about the best

```
result = np.abs(arr)
result **= 2
```

It will needlessly compute `(**0.5)**2`

, but should compute `**2`

in-place. Altogether the peak memory requirement is only the original array size + result array size, which should be 1.5 * original array size as the result is real.

If I wanted to get rid of the useless `**2`

call I'd have to do something like this

```
result = arr.real**2
result += arr.imag**2
```

but if I'm not mistaken, this means I'll have to allocate memory for **both** the real and imaginary part calculation, so the peak memory usage would be 2.0 * original array size. The `arr.real`

properties also return a non-contiguous array (but that is of lesser concern).

Is there anything I'm missing? Are there any better ways to do this?

*EDIT 1*:
I'm sorry for not making it clear, I don't want to overwrite arr, so I can't use it as out.