I have a bit of code that attempts to find the contents of an array at indices specified by another, that may specify indices that are out of range of the former array.

```
input = np.arange(0, 5)
indices = np.array([0, 1, 2, 99])
```

What I want to do is this: print input[indices] and get [0 1 2]

But this yields an exception (as expected):

```
IndexError: index 99 out of bounds 0<=index<5
```

So I thought I could use masked arrays to hide the out of bounds indices:

```
indices = np.ma.masked_greater_equal(indices, 5)
```

But still:

```
>print input[indices]
IndexError: index 99 out of bounds 0<=index<5
```

Even though:

```
>np.max(indices)
2
```

So I'm having to fill the masked array first, which is annoying, since I don't know what fill value I could use to not select any indices for those that are out of range:

print input[np.ma.filled(indices, 0)]

```
[0 1 2 0]
```

So my question is: how can you use numpy efficiently to select indices safely from an array without overstepping the bounds of the input array?