# counting non-zero elements within each row and within each column of a 2D numpy array

I have a numpy matrix that contains mostly nonzero values, but that occasionally will contain a zero value. I need to be able to:
1.) count the non-zero values in each row, and put that count into a variable that I can use in subsequent operations, perhaps by iterating through row indices and performing the calculations during the iterative process
2.) count the non-zero values in each column, and put that count into a variable that I can use in subsequent operations, perhaps by iterating through column indices and performing the calculations during the iterative process

For example, one thing I need to do is to sum each row and then divide each row sum by the number of non-zero values in each row, reporting a separate result for each row index. And then I need to sum each column and then divide the column sum by the number of non-zero values in the column, also reporting a separate result for each column index. I need to do other things as well, but they should be easy after I figure out how to do the things that I am listing here.

The code I am working with is below. You can see that I am creating an array of zeros and then populating it from a csv file. Some of the rows will contain values for all the columns, but other rows will still have some zeros remaining in some of the last columns, thus creating the problem described above.

The last 5 lines of code below are from another posting on this forum, and those last 5 lines of code return a printed list of row/column indices for the zeros. But I do not know how to use that resulting information to create the nonzero row counts and nonzero column counts described above. Can anyone help me with this?

``````ANOVAInputMatrixValuesArray=zeros([len(TestIDs),9],float)
j=0
for j in range(0,len(TestIDs)):
TestID=str(TestIDs[j])
fileName=inputFileName
directory=GetCurrentDirectory(arguments that return correct directory)
inputfile=open(directory,'r')
m=0
if m<9:
if row[0]!='TestID':
ANOVAInputMatrixValuesArray[(j-1),m]=row[2]
m+=1
inputfile.close()

IndicesOfZeros = indices(ANOVAInputMatrixValuesArray.shape)
locs = IndicesOfZeros[:,ANOVAInputMatrixValuesArray == 0]
pts = hsplit(locs, len(locs[0]))
for pt in pts:
print(', '.join(str(p[0]) for p in pt))
``````
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``````import numpy as np

a = np.array([[1, 0, 1],
[2, 3, 4],
[0, 0, 7]])

columns = (a != 0).sum(0)
rows    = (a != 0).sum(1)
``````

The variable `(a != 0)` is an array of the same shape as original `a` and it contains `True` for all non-zero elements.

The `.sum(x)` function sums the elements over the axis `x`. Sum of `True/False` elements is the number of `True` elements.

The variables `columns` and `rows` contain the number of non-zero (element != 0) values in each column/row of your original array:

``````columns = np.array([2, 1, 3])
rows    = np.array([2, 3, 1])
``````

EDIT: The whole code could look like this (with a few simplifications in your original code):

``````ANOVAInputMatrixValuesArray = zeros([len(TestIDs), 9], float)
for j, TestID in enumerate(TestIDs):
fileName = inputFileName
directory = GetCurrentDirectory(arguments that return correct directory)
# use directory or filename to get the CSV file?
with open(directory, 'r') as csvfile:

nonZeroCols = (ANOVAInputMatrixValuesArray != 0).sum(0)
nonZeroRows = (ANOVAInputMatrixValuesArray != 0).sum(1)
``````

EDIT 2:

To get the mean value of all columns/rows, use the following:

``````colMean = a.sum(0) / (a != 0).sum(0)
rowMean = a.sum(1) / (a != 0).sum(1)
``````

What do you want to do if there are no non-zero elements in a column/row? Then we can adapt the code to solve such a problem.

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`a.astype(bool)` will work faster (at least on ints) than `a != 0` –  joeln May 6 '13 at 3:48

(a != 0) does not work for sparse matrices (scipy.sparse.lil_matrix) in my present version of scipy.

For sparse matrices I did:

``````    (i,j) = X.nonzero()
column_sums = np.zeros(X.shape[1])
for n in np.asarray(j).ravel():
column_sums[n] += 1.
``````

I wonder if there is a more elegant way.

-

The faster way is to clone your matrix with ones instead of real values. Then just sum up by rows or columns:

``````X_clone = X.tocsc()
X_clone.data = np.ones( X_clone.data.shape )
NumNonZeroElementsByColumn = X_clone.sum(0)
NumNonZeroElementsByRow = X_clone.sum(1)
``````

That worked 50 times faster for me than Finn Årup Nielsen's solution (1 second against 53)

edit: Perhaps you will need to translate NumNonZeroElementsByColumn into 1-dimensional array by

``````np.array(NumNonZeroElementsByColumn)[0]
``````
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A fast way to count nonzero elements per row in a scipy sparse matrix `m` is:

``````np.diff(m.tocsr().indptr)
``````

The `indptr` attribute of a CSR matrix indicates the indices within the data corresponding to the boundaries between rows. So calculating the difference between each entry will provide the number of non-zero elements in each row.

Similarly, for the number of nonzero elements in each column, use:

``````np.diff(m.tocsc().indptr)
``````

If the data is already in the appropriate form, these will run in O(`m.shape[0]`) and O(`m.shape[1]`) respectively, rather than O(`m.getnnz()`) in Marat and Finn's solutions.

If you need both row and column nozero counts, and, say, `m` is already a CSR, you might use:

``````row_nonzeros = np.diff(m.indptr)
col_nonzeros = np.bincount(m.indices)
``````

which is not asymptotically faster than first converting to CSC (which is O(`m.getnnz()`)) to get `col_nonzeros`, but is faster because of implementation details.

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