I am running a very simple example -

```
a = np.array([1,2,3,4,5])
mask= np.array([True, False])
a[mask]
```

This produces `IndexError: boolean index did not match indexed array along dimension 0; dimension is 5 but corresponding boolean dimension is 2`

.

The confusion arises from my understanding (or lack thereof) of this part of Numpy doc: -

If

`obj.ndim == x.ndim, x[obj]`

returns a 1-dimensional array filled with the elements of`x`

corresponding to the`True`

values of`obj`

. The search order will be row-major, C-style. If`obj`

has`True`

values at entries that are outside of the bounds of`x`

, then an index error will be raised.If. (emphasis mine)`obj`

is smaller than`x`

it is identical to filling it with`False`

I thought the `mask`

array would be transformed to `[True, False, False, False, False]`

but seemingly that is not the case. Also, both `a`

and `mask`

have same `ndim`

value, so why would error message say `a`

has dimension 5 but boolean dimension is 2.

What am I missing? How do I interpret the doc?

dimensioninconsistently. I can't remember a time when this would have been correct.2more comments