I am trying to do a very simple operation on an MxN matrix. If one of the elements in the matrix contains a zero, I would like to zero out that entire row in which the element resides. I implemented possibly the clunkiest and least pythonic solution which my untrained mind could devise. I know there must be a way using list comprehensions and or calls to map() but I cannot conceive of anything cleaner than my brutish attempt that follows:

```
def has_zero(row):
for i in row:
if not i:
return True
return False
def make_row_of_zeros(numColumns):
row = []
for i in range(numColumns):
row.append(0)
return row
def zeroify_if_has_zero(matrix):
columns = len(matrix[0])
for i in range(len(matrix)): #making all you experts cringe! Sorry!
if has_zero(matrix[i]):
matrix[i] = make_row_of_zeros(columns)
return matrix
```

`a=numpy.array(...)`

, then`a[~a.all(1)!=0]`

. No clue how to assign zeros to that block. With some more numpy-fu, it will be a one-liner. – eudoxos Apr 23 '13 at 7:04