I prefer to use *NP.where* for indexing tasks of this sort (rather than *NP.ix_*)

What is not mentioned in the OP is whether the result is selected by location (row/col in the source array) or by some condition (e.g., m >= 5). In any event, the code snippet below covers both scenarios.

Three steps:

create the *condition array*;

generate an *index array* by calling *NP.where*, passing in this
condition array; and

*apply* this index array against the source array

```
>>> import numpy as NP
>>> cnd = (m==1) | (m==5) | (m==7) | (m==6)
>>> cnd
matrix([[ True, False],
[False, True],
[ True, False],
[ True, False]], dtype=bool)
>>> # generate the index array/matrix
>>> # by calling NP.where, passing in the condition (cnd)
>>> ndx = NP.where(cnd)
>>> ndx
(matrix([[0, 1, 2, 3]]), matrix([[0, 1, 0, 0]]))
>>> # now apply it against the source array
>>> m[ndx]
matrix([[1, 5, 7, 6]])
```

The argument passed to NP.where, *cnd*, is a boolean array, which in this case, is the result from a single expression comprised of compound conditional expressions (first line above)

If constructing such a value filter doesn't apply to your particular use case, that's fine, you just need to generate the actual boolean matrix (the value of *cnd*) some other way (or create it directly).