# Count all values in a matrix greater than a value

I have to count all the values in a matrix (2-d array) that are greater than 200.

The code I wrote down for this is:

``````za=0
p31 = numpy.asarray(o31)
for i in range(o31.size[0]):
for j in range(o32.size[1]):
if p31[i,j]<200:
za=za+1
print za
``````

`o31` is an image and I am converting it into a matrix and then finding the values.

My question is, is there a simpler way to do this?

-
Doesn't this just print the number of values that are less than 200, and not the actual values? – Burhan Khalid Oct 21 '12 at 7:46
Yes.. I just need the total of all the values instead of the actual values themselves. – gran_profaci Oct 21 '12 at 8:20
You aren't getting the total here either. Set `za` to an empty list `za = []`, then `za.append(p31[i,j])`, finally out of your for loop, `print sum(za)`; but I'm sure there is a better way since you are using numpy. – Burhan Khalid Oct 21 '12 at 8:25
I updated your question title, to make your problem clearer (as I understand it from the comments and the answers. You can reedit it, if it is wrong. – bmu Oct 21 '12 at 9:27

The `numpy.where` function is your friend. Because it's implemented to take full advantage of the array datatype, for large images you should notice a speed improvement over the pure python solution you provide.

Using numpy.where directly will yield a boolean mask indicating whether certain values match your conditions:

``````>>> data
array([[1, 8],
[3, 4]])
>>> numpy.where( data > 3 )
(array([0, 1]), array([1, 1]))
``````

And the mask can be used to index the array directly to get the actual values:

``````>>> data[ numpy.where( data > 3 ) ]
array([8, 4])
``````

Exactly where you take it from there will depend on what form you'd like the results in.

-
Thanks... But I need the total number of values, not the values themselves.. should I do sum(numpy.where(data<200))? – gran_profaci Oct 21 '12 at 8:21

This is very straightforward with boolean arrays:

``````p31 = numpy.asarray(o31)
za = (p31 < 200).sum() # p31<200 is a boolean array, so `sum` counts the number of True elements
``````
-

There are many ways to achieve this, like flatten-and-filter or simply enumerate, but I think using Boolean/mask array is the easiest one (and iirc a much faster one):

``````>>> y = np.array([[123,24123,32432], [234,24,23]])
array([[  123, 24123, 32432],
[  234,    24,    23]])
>>> b = y > 200
>>> b
array([[False,  True,  True],
[ True, False, False]], dtype=bool)
>>> y[b]
array([24123, 32432,   234])
>>> len(y[b])
3
>>>> y[b].sum()
56789
``````

Update:

As nneonneo has answered, if all you want is the number of elements that passes threshold, you can simply do:

``````>>>> (y>200).sum()
3
``````

which is a simpler solution.

Speed comparison with `filter`:

``````### use boolean/mask array ###

b = y > 200

%timeit y[b]
100000 loops, best of 3: 3.31 us per loop

%timeit y[y>200]
100000 loops, best of 3: 7.57 us per loop

### use filter ###

x = y.ravel()
%timeit filter(lambda x:x>200, x)
100000 loops, best of 3: 9.33 us per loop

%timeit np.array(filter(lambda x:x>200, x))
10000 loops, best of 3: 21.7 us per loop

%timeit filter(lambda x:x>200, y.ravel())
100000 loops, best of 3: 11.2 us per loop

%timeit np.array(filter(lambda x:x>200, y.ravel()))
10000 loops, best of 3: 22.9 us per loop

*** use numpy.where ***

nb = np.where(y>200)
%timeit y[nb]
100000 loops, best of 3: 2.42 us per loop

%timeit y[np.where(y>200)]
100000 loops, best of 3: 10.3 us per loop
``````
-
I really need to spend some time with numpy. Nice one +1 – Burhan Khalid Oct 21 '12 at 8:27
`timeit y[b]` omits half the code from the computation done in filter. `%timeit y[y>200]` is equivalent-ish. – Mad Physicist Apr 6 at 18:14

Here's a variant that uses fancy indexing and has the actual values as an intermediate:

``````p31 = numpy.asarray(o31)
values = p31[p31<200]
za = len(values)
``````
-
This is just regular boolean indexing. – Mad Physicist Apr 6 at 18:16