# Counting positive elements in a list with Python list comprehensions

I have a list of integers and I need to count how many of them are > 0.
I'm currently doing it with a list comprehension that looks like this:

``````sum([1 for x in frequencies if x > 0])
``````

It seems like a decent comprehension but I don't really like the "1"; it seems like a bit of a magic number. Is there a more Pythonish way to do this?

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counting nonzero elements is not the same as counting elements > 0. The title should be modified accordingly –  joaquin May 24 '10 at 20:51
I updated the title of your question so that it reflects its contents. I hope this is fine with you. –  EOL May 26 '10 at 7:28

If you want to reduce the amount of memory, you can avoid generating a temporary list by using a generator:

``````sum(x > 0 for x in frequencies)
``````

This works because `bool` is a subclass of `int`:

``````>>> isinstance(True,int)
True
``````

and `True`'s value is 1:

``````>>> True==1
True
``````

However, as Joe Golton points out in the comments, this solution is not very fast. If you have enough memory to use a intermediate temporary list, then sth's solution may be faster. Here are some timings comparing various solutions:

``````>>> frequencies = [random.randint(0,2) for i in range(10**5)]

>>> %timeit len([x for x in frequencies if x > 0])   # sth
100 loops, best of 3: 3.93 ms per loop

>>> %timeit sum([1 for x in frequencies if x > 0])
100 loops, best of 3: 4.45 ms per loop

>>> %timeit sum(1 for x in frequencies if x > 0)
100 loops, best of 3: 6.17 ms per loop

>>> %timeit sum(x > 0 for x in frequencies)
100 loops, best of 3: 8.57 ms per loop
``````

Beware that timeit results may vary depending on version of Python, OS, or hardware.

Of course, if you are doing math on a large list of numbers, you should probably be using NumPy:

``````>>> frequencies = np.random.randint(3, size=10**5)
>>> %timeit (frequencies > 0).sum()
1000 loops, best of 3: 669 us per loop
``````

The NumPy array requires less memory than the equivalent Python list, and the calculation can be performed much faster than any pure Python solution.

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A variation: [x > 0 for x in frequencies].count(True) –  Peter Jaric May 24 '10 at 20:38
@Peter: note that your suggestion loops twice over the data; once to build the output list, and twice to count True values. –  tzot Jun 24 '10 at 19:16
@ΤΖΩΤΖΙΟΥ: Yes, of course, thanks for the info! –  Peter Jaric Jun 24 '10 at 19:20
Relying on the boolean evaluation to be interpreted as 1 is a) arguably poor practice, and B) much slower. –  Adam Parkin Jul 18 '12 at 23:07
+1 for slightly more readable. However, I found it takes about 52% longer (the function I tested counted the number of factors in large numbers). So only use for comprehensions with few iterations ( < 10,000? ). –  Joe Golton Jul 9 '13 at 15:08

If the array only contains elements >= 0 (i.e. all elements are either 0 or a positive integer) then you could just count the zeros and subtract this number form the length of the array:

``````len(arr) - arr.count(0)
``````
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`reduce(lambda x, y: x+1 if y > 0 else x, frequencies)`

EDIT: With inspiration from the accepted answer from @~unutbu:

`reduce(lambda x, y: x + (y > 0), frequencies)`

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I wish I had got a comment to go with that down vote to learn by my mistakes. Please? –  Peter Jaric May 24 '10 at 20:39
There seems to be a trend away from lambda functions toward list comprehensions. –  fairfieldt May 28 '10 at 23:31
I wasn't one to downvote you; however I would gather that people tend to frown upon `reduce`, it being phased out etc (by Guido proclamation). I like `reduce`, but I too frown upon its use in this case, since the `sum(x > 0…)` variant seems more straightforward to me. –  tzot Jun 24 '10 at 19:20

This works, but adding `bool`s as `int`s may be dangerous. Please take this code with a grain of salt (maintainability goes first):

``````sum(k>0 for k in x)
``````
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Adding booleans as integers is guaranteed to work in Python 2 and 3: stackoverflow.com/questions/2764017/… –  EOL May 26 '10 at 7:30
+1 for the warning, though. :) –  EOL May 26 '10 at 7:31

A slightly more Pythonic way would be to use a generator instead:

``````sum(1 for x in frequencies if x > 0)
``````

This avoids generating the whole list before calling `sum()`.

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+1 because this is a commonly overlooked way of doing a comprehension. If you're evaluating a list comprehension from within a function call, you can omit the `[]`. –  jathanism May 24 '10 at 20:43
Breaks if none of the elements match the criteria. –  FogleBird Aug 8 '11 at 20:04
@FogleBird: the `sum()` of an empty generator returns 0. –  Greg Hewgill Aug 8 '11 at 20:20
You're right. I got confused and was thinking of `min()` and `max()` –  FogleBird Aug 8 '11 at 20:59
And slower too: gist.github.com/3139645 –  Adam Parkin Jul 18 '12 at 23:20

You could use `len()` on the filtered list:

``````len([x for x in frequencies if x > 0])
``````
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even better, to use a generator (strip [ and ]) –  Valentin Golev May 24 '10 at 20:34
You could use filter with this to make it look more clear. len(filter(lambda x: x > 0, frequencies)) –  Jonathan Sternberg May 24 '10 at 20:35
@valya: That won't work with a generator –  sth May 24 '10 at 20:50
@Jonathan: I'd say it's a matter of taste if you prefer `filter()` or a list comprehension, but usually list comprehensions are preferred to functional programming style. (And the OP asked for a list comprehension.) –  sth May 24 '10 at 20:53
the OP actually only said (s)he is using a decent list comprehension right now, but didn't specifically ask for one. But your main point still holds, of course. –  Peter Jaric May 24 '10 at 21:02