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.