# How to delete the same random items from multiple arrays of equal length?

I have several arrays of size (20000,1) with different contents. I'd like to randomly delete 25% of all rows per array in such a way that for each array the same row is deleted. A rather tedious way I found is the following:

``````import numpy as np

a=np.array(range(1000))
b=np.array(np.random.rand(1000))
seed=np.random.randint(0,100000000)     #picking a random seed
np.random.seed(seed)      #Setting the same seed for each deletion
a[np.random.rand(*a.shape) < .25] = 0
np.random.seed(seed)
b[np.random.rand(*b.shape) < .25] = 0
a=a[a !=0]
b=b[b !=0]
``````

There are several problems with this approach, such as what if an array already contains zeros? Is there a better way of doing this?

-

based on and extended from Joel Cornett's solution:

``````import numpy as np

length = 20000
limit = int(0.75*length)
keep = np.random.permutation(length)[:limit]

newArray = oldArray[keep]
``````
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Thanks this is exactly what I was looking for. –  masterod Aug 4 '12 at 19:41

Here is a non-numpy solution in very general terms:

``````import random
to_keep = set(random.sample(range(total_rows), keep_ratio * total_rows))

#do this for each array:
new_array = np.array(item for index, item in enumerate(old_array) if index in to_keep)
``````
• `total_rows` is the number of rows in each array (I think you said this was 20,000)

• `keep_ratio` is the percentage of rows to keep, which according to you is `1 - 0.25 = 0.75`

EDIT

You can also use numpy's `compress()` method.

``````import random
to_keep = set(random.sample(range(total_rows), keep_ratio * total_rows))
kompressor = (1 if i in to_keep else 0 for i in xrange(total_rows))

new_array = numpy.compress(kompressor, old_array, axis=1)
kompressor
``````
-

Similar to Theodros's answer, but preserves the original ordering of elements:

``````import numpy as np

``````
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I have no idea how well this works with `numpy`, but this is what I'd use in pure Python:
``````total = len(a)