# Speed up NumPy's where function

I am trying to extract the indices of all values of a 1D array of numbers that exceed some threshold. The array is on the order of `1e9` long.

My approach is the following in `NumPy`:

``````idxs = where(data>threshold)
``````

This takes something upwards of 20 mins, which is unacceptable. How can I speed this function up? Or, are there faster alternatives?

(To be specific, it takes that long on a Mac OS X running 10.6.7, 1.86 GHz Intel, 4GB RAM doing nothing else.)

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It takes 20 minutes to run the np.where or to deleted the values below the threshold? –  Pyson Feb 9 '13 at 22:00
It takes 20 mins to run np.where –  mac389 Feb 9 '13 at 22:19
Does it matter that I am calling each variable from a dictionary? I.e. `data` is really `data['timeseries']` and threshold is really `data[threshold][spikes]`. I am sure the second variable is a scalar. –  mac389 Feb 9 '13 at 22:21
remember when I said the threshold was definitely a scalar. It's really `array(array([[ 99.48158966]]), dtype=object)`. It now takes about 2 mins. –  mac389 Feb 9 '13 at 22:36
Why do the singleton dimensions gum everything up? –  mac389 Feb 9 '13 at 22:38

Try a mask array. This creates a view of the same data.

So the syntax would be:

`````` b=a[a>threshold]
``````

b is not a new array (unlike where) but a view of a where the elements meet the boolean in the index.

Example:

``````import numpy as np
import time

a=np.random.random_sample(int(1e9))

t1=time.time()
b=a[a>0.5]
print(time.time()-t1,'seconds')
``````

On my machine, that prints `22.389815092086792 seconds`

edit

I tried the same with np.where, and it is just as fast. I am suspicious: are you deleting these values from the array?

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If I am doing so, it is unintentional. My syntax is the same as yours. How could I be deleting something? I agree it would explain the slower time. –  mac389 Feb 9 '13 at 22:19