# Filter an array in Python3 / Numpy and return indices

Is there any built-in function in Python3/Numpy which filters an array and returns indices of the elements which are left? Something similar to numpy.argsort for sorting. The filter I have is setting both min and max thresholds - all values below/above min/max have to be filtered out.

I've seen Python's function filter, but I don't see a way to extract indices using it.

EDITED: Lots of usefull information in the answers, thank you!

As @SvenMarnach pointed out, mask is enough:

``````mask = (min_value < a) & (a < max_value)
``````

Now I have to apply this mask to other arrays of the same shape as `a`, but not sure what is the best way to do it...

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You can get the indices of the elements in the one-dimensional array `a` that are greater than `min_value` and les than `max_value` with

``````indices = ((min_value < a) & (a < max_value)).nonzero()[0]
``````

Usually you don't need those indices, though, but you can work more efficiently with the mask

``````mask = (min_value < a) & (a < max_value)
``````

This mask is an Boolean array with the same shape as `a`.

Edit: If you have an array `b` of the same shape as `a`, you can extract the elements of `b` corresponding to the `True` entries in `mask` with

``````b[mask]
``````
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Great! Thank you for a quick reply. Indeed, mask is sufficient - but how do I apply this mask to some other array of the same shape as 'a'? –  Katya Mar 27 '12 at 14:59
@Katya what would that mean? If you had a 5x5 array with a particular mask, could you define what that would mean to apply over a 4x3 or 6x6 array? –  Hooked Mar 27 '12 at 15:38
@Katya: What do you mean by "applying this mask"? Extract the corresponding elements? I added a sentence to my answer to that end. –  Sven Marnach Mar 27 '12 at 15:53
@Hooked, By applying a mask I mean exactly "extract the elements of b corresponding to the True entries in mask", and proposed solution b[mask] works. I actually tried that but for some reason used a vector of 0s and 1s (the output of print(mask)), and not the original mask with True and False values - that gives wrong result. Thanks again, problem solved! –  Katya Mar 27 '12 at 16:13

The command `numpy.where` will return the indices of an array after you've applied a mask over them. For example:

``````import numpy as np
A = np.array([1,2,3,6,2])
np.where(A>2)
``````

gives:

``````(array([2, 3]),)
``````

A more complicated example:

``````A = np.arange(27).reshape(3,3,3)
np.where( (A>10) & (A<15) )
``````

gives:

``````(array([1, 1, 1, 1]), array([0, 1, 1, 1]), array([2, 0, 1, 2]))
``````

I'll agree with @SvenMarnach, usually you don't need the indices.

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I had just created my own version of `where` when I saw this. Sigh. –  senderle Mar 27 '12 at 14:50
@senderle it's probably slower too. Every time I think I know the full power of `numpy/scipy`, this site shows me I'm wrong. –  Hooked Mar 27 '12 at 14:53

Not directly related to your question, but `filter()` is part of a set of three functions, `map()`, `filter()`, and `reduce()`, which allow functional-style list processing in Python.

• `map(mapping_function, input_list)` takes in a function of one argument and a list, applies the function to each element of the list in turn, and returns an output list as the result. It's more or less equivalent to the list comprehension `[mapping_function(item) for item in input_list]`.

• `filter(filter_function, input_list)` returns a list of elements from `input_list` for which the `filter_function` returned `True`. The list comprehension equivalent is `[item for item in items if filter_function(item)]`.

• `reduce(combining_function, input_list)` repeatedly combines adjacent pairs of elements in the input list until only one value is left. For example the sum of a list of numbers could be expressed as `reduce(operator.add, numbers)`.

The functionality of `map()` and `filter()` is provided by list comprehensions in Python (which is why the `map` and `filter` functions aren't used very often.)

`reduce()` is one of those things which doesn't suggest itself as an intuitive answer to... anything. It's almost always clearer to write a loop, which explains why you don't see it often.

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I like Sven's answer a lot, and in fact, `numpy.where` does exactly what you want, as Hooked reminded me. But mostly because I already wrote it out, here's another approach, just to illustrate a few tricks. `my_filter` can be any function returning a boolean array of the same shape as the input:

``````def my_filter(a):
return (10 < a) & (a < 40)

indices = [ind[a_mask] for ind in numpy.indices(a.shape)]
``````

For example:

``````>>> a = numpy.arange(100).reshape((10, 10))
>>> def my_filter(a):
...     return (min_value < a) & (a < max_value)
...