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I have a numpy array of tuples:

trainY = np.array([('php', 'image-processing', 'file-upload', 'upload', 'mime-types'),
                   ('firefox',), ('r', 'matlab', 'machine-learning'),
                   ('c#', 'url', 'encoding'), ('php', 'api', 'file-get-contents'),
                   ('proxy', 'active-directory', 'jmeter'), ('core-plot',),
                   ('c#', 'asp.net', 'windows-phone-7'),
                   ('.net', 'javascript', 'code-generation'),
                   ('sql', 'variables', 'parameters', 'procedure', 'calls')], dtype=object)

I am given list of indices which subsets this np.array:

x = [0, 4]

and a string:

label = 'php'

I want to count the number of times the label 'php' occurs in this subset of the np.array. In this case, the answer would be 2.


1) A label will only appear at most ONCE in a tuple and

2) The tuple can have length from 1 to 5.

3) Length of the list x is typically 7-50.

4) Length of trainY is approx 0.8mil

My current code to do this is:

sum([1 for n in x if label in trainY[n]])

This is currently a performance bottleneck of my program and I'm looking for a way to make it much faster. I think we can skip the loop over x and just do a vectorised looking up trainY like trainY[x] but I couldn't get something that worked.

Thank you.

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Are you making this calculation a lot of times for the same trainY? You might consider doing some preprocessing on trainY –  lev Dec 11 '13 at 14:40
Yes it's the same trainY. The things that are changing is label and the indices x –  mchangun Dec 11 '13 at 14:41
Shorter version of your current code: sum(label in words for words in trainY[x]). (I don't know if that will make much difference in performance.) –  Warren Weckesser Dec 11 '13 at 14:47
length of x is small. The sum should compute instantly. If it is a bottleneck in your program; it means you compute the sum many many times. Please, provide context for the code. You might find an optimization opportunity there. How much faster does your program get if you remove the sum() call and replace it with a dummy constant? –  J.F. Sebastian Dec 11 '13 at 15:36

3 Answers 3

up vote 3 down vote accepted

I think using Counters may be a good option in this case.

from collections import Counter

c = Counter([i for j in trainY for i in j])

print c['php'] # Returns 2
print c.most_common(5) # Print the 5 most common items.
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good answer, just adding: to print the OP's desired item you can do c['php'] –  Saullo Castro Dec 11 '13 at 15:34
it would also be faster to do c=Counter([i for j in trainY for i in j]) instead of the for loop... –  Saullo Castro Dec 11 '13 at 15:35
Yes of course that would be much better. I'll edit the code now with your suggestions. Thanks. –  Ffisegydd Dec 11 '13 at 15:41

You can use np.in1d after flattening your array with a list comprehension:

trainY = np.array([i for j in trainY for i in j])
ans = np.in1d(trainY, 'php').sum()
# 2
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Consider building a dictionary of the form:

{'string1': (1,2,5),
 'string2': (3,4,5),

for every word, hold a sorted list of the indices it appeared in the tuples. hope it makes sense...

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