Edit: From your question, it appears like you want to iterate over every row of m2
, multiply it with matrix m3
elementwise and the store the column sums of those matrices in corresponding rows of m1
. So I am assuming these dimensions: m1: (n, m), m2: (n, m), m3: (n1, m)
. In general, n1 != n
but the column dimension m
is same for all.
In numpy
m1 = numpy.matrix(map(lambda a: (a * m3).sum(axis=0), m2))
This one line takes every row of m2
, multiplies it by m3
(elementswise, not matrix-matrix multiplication, since your original R code has a *
) and then takes colsums by passing axis=0
to sum
. Here m1, m2, m3
are standard numpy arrays or matrices.
In pandas, you can use apply
to do similar thing
m1 = m2.apply(lambda a: (a * m3).sum(axis=0))
m3
? Can you provide the shapes of these matrices? – Phillip Cloud Mar 17 at 19:35