Is it possible to perform min/max in-place assignment with NumPy multi-dimensional arrays without an extra copy?

Say, `a`

and `b`

are two 2D numpy arrays and I would like to have `a[i,j] = min(a[i,j], b[i,j])`

for all `i`

and `j`

.

One way to do this is:

```
a = numpy.minimum(a, b)
```

But according to the documentation, `numpy.minimum`

creates and returns a new array:

numpy.minimum(x1, x2[, out])

Element-wise minimum of array elements.

Compare two arrays and returnsa new arraycontaining the element-wise minima.

So in the code above, it will create a new temporary array (min of `a`

and `b`

), then assign it to `a`

and dispose it, right?

Is there any way to do something like `a.min_with(b)`

so that the min-result is assigned back to `a`

in-place?