You can simply use **indexing** here:

`vertices`**[edges]**
# ^ ^ indexing

If you **index with a list**, then numpy will reshuffle the original matrix such that the highest dimension here follows the indices as specified by `edges`

.

like:

```
>>> vertices = np.array([[ 1.25, 4.321, -4], [2, -5, 3.32], [23.3, 43, 12], [32, 4, -23]])
>>> edges = [1, 3, 2, 0]
>>> vertices[edges]
array([[ 2. , -5. , 3.32 ],
[ 32. , 4. , -23. ],
[ 23.3 , 43. , 12. ],
[ 1.25 , 4.321, -4. ]])
>>> vertices[edges].base is None
True
```

The fact that `base`

is `None`

means that this does **not generate a view**, it makes a copy of the matrix (with filtered/reordered rows). Changes you thus later make to the *elements* of `vertices`

will not change the elements of the result of `vertices[edges]`

(given you make the copy before altering `vertices`

of course).

`[ 1.25, 4,321, -4]`

, could be`4.321`

? – Divakar Jun 13 '17 at 21:07`[2, -5, 3.32]`

? – user2357112 supports Monica Jun 13 '17 at 21:08