I would recommend `numpy.putmask()`

. Since we're converting from type `bool`

to `int64`

, we need to do some conversions first.

First, initialization:

```
truths = np.array([ True, False, False, False, True, True])
nums = np.array([1, 2, 3])
```

Then we convert and replace based on our mask (if element of `truth`

is True):

```
truths = truths.astype('int64') # implicitly changes all the "False" values to 0
numpy.putmask(truths, truths, nums)
```

The end result:

```
>>> truths
array([1, 0, 0, 0, 2, 3])
```

Note that we just pass in `truths`

into the "mask" argument of `numpy.putmask()`

. This will simply check to see if each element of array `truths`

is truthy; since we converted the array to type `int64`

, it will replace only elements that are NOT 0, as required.

If we wanted to be more pedantic, or needed to replace some arbitrary value, we would need `numpy.putmask(truths, truths==<value we want to replace>, nums)`

instead.

If we want to go EVEN more pedantic and not make the assumption that we can easily convert types (as we can from `bool`

to `int64`

), as far as I'm aware, we'd either need to make some sort of mapping to a different `numpy.array`

where we could make that conversion. The way I'd personally do that is to convert my `numpy.array`

into some boolean array where I can do this easy conversion, but there may be a better way.

`Trues`

in`truths`

than numbers in`nums`

?