I have a two arrays of integers

```
a = numpy.array([1109830922873, 2838383, 839839393, ..., 29839933982])
b = numpy.array([2838383, 555555555, 2839474582, ..., 29839933982])
```

where `len(a)`

~ 15,000 and `len(b)`

~ 2 million.

What I want is to find the indices of array b elements which match those in array a. Now, I'm using list comprehension and `numpy.argwhere()`

to achieve this:

```
bInds = [ numpy.argwhere(b == c)[0] for c in a ]
```

however, obviously, it is taking a long time to complete this. And array a will become larger too, so this is not a sensible route to take.

Is there a better way to achieve this result, considering the large arrays I'm dealing with here? It currently takes around ~5 minutes to do this. Any speed up is needed!

More info: I want the indices to match the order of array a too. (Thanks Charles)

`a`

to their respective index. Then you just have to look them up in the map. – tobias_k Jul 3 '14 at 14:29