Is there an efficient numpy mechanism to generate an array of values from a 2D array given a list of indexes into that array?

Specifically, I have a list of 2D coordinates that represent interesting values in a 2D `numpy`

array. I calculate those coordinates as follows:

```
nonzeroValidIndices = numpy.where((array2d != noDataValue) & (array2d != 0))
nonzeroValidCoordinates = zip(nonzeroValidIndices[0],nonzeroValidIndices[1])
```

From there, I'm building a map by looping over the coordinates and indexing into the numpy array one at a time similarly to this simplified example:

```
for coord in nonzeroValidCoordinates:
map[coord] = array2d[coord]
```

I have several massive datasets I'm iterating this algorithm over so I'm interested in an efficient solution. Through profiling, I suspect that `array2d[coord]`

line is causing some pain. Is there a better vector form to generate an entire vector of values from `array2d`

or am I stuck with indexing one at a time?