`numpy.take(array, indices)`

and `numpy.choose(indices, array)`

behave similarly on 1-D arrays, but this is just coincidence. As pointed out by jonrsharpe, they behave differently on higher-dimensional arrays.

## numpy.take

`numpy.take(array, indices)`

picks out elements from a flattened version of `array`

. (The resulting elements are of course not necessarily from the same row.)

For example,

```
numpy.take([[1, 2], [3, 4]], [0, 3])
```

returns

```
array([1, 4])
```

## numpy.choose

`numpy.choose(indices, set_of_arrays)`

plucks out element 0 from array `indices[0]`

, element 1 from array `indices[1]`

, element 2 from array `indices[2]`

, and so on. (Here, `array`

is actually a set of arrays.)

For example

```
numpy.choose([0, 1, 0, 0], [[1, 2, 3, 4], [4, 5, 6, 7]])
```

returns

```
array([1, 5, 3, 4])
```

because element 0 comes from array 0, element 1 comes from array 1, element 2 comes from array 0, and element 3 comes from array 0.

## More Information

These descriptions are simplified – full descriptions can be found here: numpy.take, numpy.choose. For example, `numpy.take`

and `numpy.choose`

behave similarly when `indices`

and `array`

are 1-D because `numpy.choose`

first broadcasts `array`

.