In python if a define:
a = arange(9).reshape(3,3)
as a 3x3 matrix and iterate:
for i in a:
It'll iterate over the matrix's rows. Is there any way to iterate over columns?
How about
for i in a.transpose():
or, shorter:
for i in a.T:
This may look expensive but is in fact very cheap (it returns a view onto the same data, but with the shape and stride attributes permuted).
Assuming that a
is a well formed matrix, you could try something like:
b = zip(*a)
for index in b:
...
zip
is very expensive compared to a.T
. For example if a
is 100x100, then zip is 5000x slower than taking the transpose. For the 3x3 case it's still 10x slower. It's generally a good idea to use numpy built-ins rather than treating ndarrays like python lists.
for index, row in enumerate(a):