# Matrix Multiplication in pure Python?

I'm trying to multiply two matrices together using pure Python. Input (`X1` is a 3x3 and `Xt` is a 3x2):

``````X1 =  [[1.0016, 0.0, -16.0514],
[0.0, 10000.0, -40000.0],
[-16.0514, -40000.0, 160513.6437]]
Xt =  [(1.0, 1.0),
(0.0, 0.25),
(0.0, 0.0625)]
``````

where Xt is the zip transpose of another matrix. Now here is the code:

``````def matrixmult (A, B):
C = [[0 for row in range(len(A))] for col in range(len(B[0]))]
for i in range(len(A)):
for j in range(len(B[0])):
for k in range(len(B)):
C[i][j] += A[i][k]*B[k][j]
return C
``````

The error that python gives me is this:

IndexError: list index out of range.

Now I'm not sure if `Xt` is recognised as an matrix and is still a list object, but technically this should work.

• @ulmangt: "using pure python". He/she wants to do it without downloadable modules, probably for the challenge. May 8, 2012 at 23:55
• @ulmangt, not all implementations of Python can use numpy/scipy May 9, 2012 at 0:44
• Yeah...the challenge...Thanks @beary605. May 9, 2012 at 7:27
• By the way, from Python 3.5 a special operator '@' can be used for matrix multiplication (such as X @ W + b). legacy.python.org/dev/peps/pep-0465 Jul 21, 2017 at 7:16
• @quant But it wasn't when I posted that.
– agf
Nov 17, 2018 at 23:39

## 12 Answers

If you really don't want to use `numpy` you can do something like this:

``````def matmult(a,b):
zip_b = zip(*b)
# uncomment next line if python 3 :
# zip_b = list(zip_b)
return [[sum(ele_a*ele_b for ele_a, ele_b in zip(row_a, col_b))
for col_b in zip_b] for row_a in a]

x = [[1,2,3],[4,5,6],[7,8,9],[10,11,12]]
y = [[1,2],[1,2],[3,4]]

import numpy as np # I want to check my solution with numpy

mx = np.matrix(x)
my = np.matrix(y)
``````

Result:

``````>>> matmult(x,y)
[[12, 18], [27, 42], [42, 66], [57, 90]]
>>> mx * my
matrix([[12, 18],
[27, 42],
[42, 66],
[57, 90]])
``````
• You can easily improve this by only computing `zip(*b)` once May 9, 2012 at 0:26
• @gnibbler, that's a good point, thank you. I edited the code to reflect your suggestion. May 9, 2012 at 0:34
• I think you can replace the whole summation with `sum(map(mul, row_a, col_b))` (after doing `from operator import mul`, if you don't want to import, `sum(map(lambda x, y: x * y, row_a, col_b))`. Dec 10, 2017 at 16:39

This is incorrect initialization. You interchanged row with col!

``````C = [[0 for row in range(len(A))] for col in range(len(B[0]))]
``````

Correct initialization would be

``````C = [[0 for col in range(len(B[0]))] for row in range(len(A))]
``````

Also I would suggest using better naming conventions. Will help you a lot in debugging. For example:

``````def matrixmult (A, B):
rows_A = len(A)
cols_A = len(A[0])
rows_B = len(B)
cols_B = len(B[0])

if cols_A != rows_B:
print "Cannot multiply the two matrices. Incorrect dimensions."
return

# Create the result matrix
# Dimensions would be rows_A x cols_B
C = [[0 for row in range(cols_B)] for col in range(rows_A)]
print C

for i in range(rows_A):
for j in range(cols_B):
for k in range(cols_A):
C[i][j] += A[i][k] * B[k][j]
return C
``````

You can do a lot more, but you get the idea...

Here's some short and simple code for matrix/vector routines in pure Python that I wrote many years ago:

``````'''Basic Table, Matrix and Vector functions for Python 2.2
Author:   Raymond Hettinger
'''

Version = 'File MATFUNC.PY, Ver 183, Date 12-Dec-2002,14:33:42'

import operator, math, random
NPRE, NPOST = 0, 0                    # Disables pre and post condition checks

def iszero(z):  return abs(z) < .000001
def getreal(z):
try:
return z.real
except AttributeError:
return z
def getimag(z):
try:
return z.imag
except AttributeError:
return 0
def getconj(z):
try:
return z.conjugate()
except AttributeError:
return z

separator = [ '', '\t', '\n', '\n----------\n', '\n===========\n' ]

class Table(list):
dim = 1
concat = list.__add__      # A substitute for the overridden __add__ method
def __getslice__( self, i, j ):
return self.__class__( list.__getslice__(self,i,j) )
def __init__( self, elems ):
list.__init__( self, elems )
if len(elems) and hasattr(elems[0], 'dim'): self.dim = elems[0].dim + 1
def __str__( self ):
return separator[self.dim].join( map(str, self) )
def map( self, op, rhs=None ):
'''Apply a unary operator to every element in the matrix or a binary operator to corresponding
elements in two arrays.  If the dimensions are different, broadcast the smaller dimension over
the larger (i.e. match a scalar to every element in a vector or a vector to a matrix).'''
if rhs is None:                                                 # Unary case
return self.dim==1 and self.__class__( map(op, self) ) or self.__class__( [elem.map(op) for elem in self] )
elif not hasattr(rhs,'dim'):                                    # List / Scalar op
return self.__class__( [op(e,rhs) for e in self] )
elif self.dim == rhs.dim:                                       # Same level Vec / Vec or Matrix / Matrix
assert NPRE or len(self) == len(rhs), 'Table operation requires len sizes to agree'
return self.__class__( map(op, self, rhs) )
elif self.dim < rhs.dim:                                        # Vec / Matrix
return self.__class__( [op(self,e) for e in rhs]  )
return self.__class__( [op(e,rhs) for e in self] )         # Matrix / Vec
def __mul__( self, rhs ):  return self.map( operator.mul, rhs )
def __div__( self, rhs ):  return self.map( operator.div, rhs )
def __sub__( self, rhs ):  return self.map( operator.sub, rhs )
def __add__( self, rhs ):  return self.map( operator.add, rhs )
def __rmul__( self, lhs ):  return self*lhs
def __rdiv__( self, lhs ):  return self*(1.0/lhs)
def __rsub__( self, lhs ):  return -(self-lhs)
def __radd__( self, lhs ):  return self+lhs
def __abs__( self ): return self.map( abs )
def __neg__( self ): return self.map( operator.neg )
def conjugate( self ): return self.map( getconj )
def real( self ): return self.map( getreal  )
def imag( self ): return self.map( getimag )
def flatten( self ):
if self.dim == 1: return self
return reduce( lambda cum, e: e.flatten().concat(cum), self, [] )
def prod( self ):  return reduce(operator.mul, self.flatten(), 1.0)
def sum( self ):  return reduce(operator.add, self.flatten(), 0.0)
def exists( self, predicate ):
for elem in self.flatten():
if predicate(elem):
return 1
return 0
def forall( self, predicate ):
for elem in self.flatten():
if not predicate(elem):
return 0
return 1
def __eq__( self, rhs ):  return (self - rhs).forall( iszero )

class Vec(Table):
def dot( self, otherVec ):  return reduce(operator.add, map(operator.mul, self, otherVec), 0.0)
def norm( self ):  return math.sqrt(abs( self.dot(self.conjugate()) ))
def normalize( self ):  return self / self.norm()
def outer( self, otherVec ):  return Mat([otherVec*x for x in self])
def cross( self, otherVec ):
'Compute a Vector or Cross Product with another vector'
assert len(self) == len(otherVec) == 3, 'Cross product only defined for 3-D vectors'
u, v = self, otherVec
return Vec([ u[1]*v[2]-u[2]*v[1], u[2]*v[0]-u[0]*v[2], u[0]*v[1]-u[1]*v[0] ])
def house( self, index ):
'Compute a Householder vector which zeroes all but the index element after a reflection'
v = Vec( Table([0]*index).concat(self[index:]) ).normalize()
t = v[index]
sigma = 1.0 - t**2
if sigma != 0.0:
t = v[index] = t<=0 and t-1.0 or -sigma / (t + 1.0)
v /= t
return v, 2.0 * t**2 / (sigma + t**2)
def polyval( self, x ):
'Vec([6,3,4]).polyval(5) evaluates to 6*x**2 + 3*x + 4 at x=5'
return reduce( lambda cum,c: cum*x+c, self, 0.0 )
def ratval( self, x ):
'Vec([10,20,30,40,50]).ratfit(5) evaluates to (10*x**2 + 20*x + 30) / (40*x**2 + 50*x + 1) at x=5.'
degree = len(self) / 2
num, den = self[:degree+1], self[degree+1:] + [1]
return num.polyval(x) / den.polyval(x)

class Matrix(Table):
__slots__ = ['size', 'rows', 'cols']
def __init__( self, elems ):
'Form a matrix from a list of lists or a list of Vecs'
Table.__init__( self, hasattr(elems[0], 'dot') and elems or map(Vec,map(tuple,elems)) )
self.size = self.rows, self.cols = len(elems), len(elems[0])
def tr( self ):
'Tranpose elements so that Transposed[i][j] = Original[j][i]'
return Mat(zip(*self))
def star( self ):
'Return the Hermetian adjoint so that Star[i][j] = Original[j][i].conjugate()'
return self.tr().conjugate()
def diag( self ):
'Return a vector composed of elements on the matrix diagonal'
return Vec( [self[i][i] for i in range(min(self.size))] )
def trace( self ): return self.diag().sum()
def mmul( self, other ):
'Matrix multiply by another matrix or a column vector '
if other.dim==2: return Mat( map(self.mmul, other.tr()) ).tr()
assert NPRE or self.cols == len(other)
return Vec( map(other.dot, self) )
def augment( self, otherMat ):
'Make a new matrix with the two original matrices laid side by side'
assert self.rows == otherMat.rows, 'Size mismatch: %s * %s' % (`self.size`, `otherMat.size`)
return Mat( map(Table.concat, self, otherMat) )
def qr( self, ROnly=0 ):
'QR decomposition using Householder reflections: Q*R==self, Q.tr()*Q==I(n), R upper triangular'
R = self
m, n = R.size
for i in range(min(m,n)):
v, beta = R.tr()[i].house(i)
R -= v.outer( R.tr().mmul(v)*beta )
for i in range(1,min(n,m)): R[i][:i] = [0] * i
R = Mat(R[:n])
if ROnly: return R
Q = R.tr().solve(self.tr()).tr()       # Rt Qt = At    nn  nm  = nm
self.qr = lambda r=0, c=`self`: not r and c==`self` and (Q,R) or Matrix.qr(self,r) #Cache result
assert NPOST or m>=n and Q.size==(m,n) and isinstance(R,UpperTri) or m<n and Q.size==(m,m) and R.size==(m,n)
assert NPOST or Q.mmul(R)==self and Q.tr().mmul(Q)==eye(min(m,n))
return Q, R
def _solve( self, b ):
'''General matrices (incuding) are solved using the QR composition.
For inconsistent cases, returns the least squares solution'''
Q, R = self.qr()
return R.solve( Q.tr().mmul(b) )
def solve( self, b ):
'Divide matrix into a column vector or matrix and iterate to improve the solution'
if b.dim==2: return Mat( map(self.solve, b.tr()) ).tr()
assert NPRE or self.rows == len(b), 'Matrix row count %d must match vector length %d' % (self.rows, len(b))
x = self._solve( b )
diff = b - self.mmul(x)
maxdiff = diff.dot(diff)
for i in range(10):
xnew = x + self._solve( diff )
diffnew = b - self.mmul(xnew)
maxdiffnew = diffnew.dot(diffnew)
if maxdiffnew >= maxdiff:  break
x, diff, maxdiff = xnew, diffnew, maxdiffnew
#print >> sys.stderr, i+1, maxdiff
assert NPOST or self.rows!=self.cols or self.mmul(x) == b
return x
def rank( self ):  return Vec([ not row.forall(iszero) for row in self.qr(ROnly=1) ]).sum()

class Square(Matrix):
def lu( self ):
'Factor a square matrix into lower and upper triangular form such that L.mmul(U)==A'
n = self.rows
L, U = eye(n), Mat(self[:])
for i in range(n):
for j in range(i+1,U.rows):
assert U[i][i] != 0.0, 'LU requires non-zero elements on the diagonal'
L[j][i] = m = 1.0 * U[j][i] / U[i][i]
U[j] -= U[i] * m
assert NPOST or isinstance(L,LowerTri) and isinstance(U,UpperTri) and L*U==self
return L, U
def __pow__( self, exp ):
'Raise a square matrix to an integer power (i.e. A**3 is the same as A.mmul(A.mmul(A))'
assert NPRE or exp==int(exp) and exp>0, 'Matrix powers only defined for positive integers not %s' % exp
if exp == 1: return self
if exp&1: return self.mmul(self ** (exp-1))
sqrme = self ** (exp/2)
return sqrme.mmul(sqrme)
def det( self ):  return self.qr( ROnly=1 ).det()
def inverse( self ):  return self.solve( eye(self.rows) )
def hessenberg( self ):
'''Householder reduction to Hessenberg Form (zeroes below the diagonal)
while keeping the same eigenvalues as self.'''
for i in range(self.cols-2):
v, beta = self.tr()[i].house(i+1)
self -= v.outer( self.tr().mmul(v)*beta )
self -= self.mmul(v).outer(v*beta)
return self
def eigs( self ):
'Estimate principal eigenvalues using the QR with shifts method'
origTrace, origDet = self.trace(), self.det()
self = self.hessenberg()
eigvals = Vec([])
for i in range(self.rows-1,0,-1):
while not self[i][:i].forall(iszero):
shift = eye(i+1) * self[i][i]
q, r = (self - shift).qr()
self = r.mmul(q) + shift
eigvals.append( self[i][i] )
self = Mat( [self[r][:i] for r in range(i)] )
eigvals.append( self[0][0] )
assert NPOST or iszero( (abs(origDet) - abs(eigvals.prod())) / 1000.0 )
assert NPOST or iszero( origTrace - eigvals.sum() )
return Vec(eigvals)

class Triangular(Square):
def eigs( self ):  return self.diag()
def det( self ):  return self.diag().prod()

class UpperTri(Triangular):
def _solve( self, b ):
'Solve an upper triangular matrix using backward substitution'
x = Vec([])
for i in range(self.rows-1, -1, -1):
assert NPRE or self[i][i], 'Backsub requires non-zero elements on the diagonal'
x.insert(0, (b[i] - x.dot(self[i][i+1:])) / self[i][i] )
return x

class LowerTri(Triangular):
def _solve( self, b ):
'Solve a lower triangular matrix using forward substitution'
x = Vec([])
for i in range(self.rows):
assert NPRE or self[i][i], 'Forward sub requires non-zero elements on the diagonal'
x.append( (b[i] - x.dot(self[i][:i])) / self[i][i] )
return x

def Mat( elems ):
'Factory function to create a new matrix.'
m, n = len(elems), len(elems[0])
if m != n: return Matrix(elems)
if n <= 1: return Square(elems)
for i in range(1, len(elems)):
if not iszero( max(map(abs, elems[i][:i])) ):
break
else: return UpperTri(elems)
for i in range(0, len(elems)-1):
if not iszero( max(map(abs, elems[i][i+1:])) ):
return Square(elems)
return LowerTri(elems)

def funToVec( tgtfun, low=-1, high=1, steps=40, EqualSpacing=0 ):
'''Compute x,y points from evaluating a target function over an interval (low to high)
at evenly spaces points or with Chebyshev abscissa spacing (default) '''
if EqualSpacing:
h = (0.0+high-low)/steps
xvec = [low+h/2.0+h*i for i in range(steps)]
else:
scale, base = (0.0+high-low)/2.0, (0.0+high+low)/2.0
xvec = [base+scale*math.cos(((2*steps-1-2*i)*math.pi)/(2*steps)) for i in range(steps)]
yvec = map(tgtfun, xvec)
return Mat( [xvec, yvec] )

def funfit( (xvec, yvec), basisfuns ):
'Solves design matrix for approximating to basis functions'
return Mat([ map(form,xvec) for form in basisfuns ]).tr().solve(Vec(yvec))

def polyfit( (xvec, yvec), degree=2 ):
'Solves Vandermonde design matrix for approximating polynomial coefficients'
return Mat([ [x**n for n in range(degree,-1,-1)] for x in xvec ]).solve(Vec(yvec))

def ratfit( (xvec, yvec), degree=2 ):
'Solves design matrix for approximating rational polynomial coefficients (a*x**2 + b*x + c)/(d*x**2 + e*x + 1)'
return Mat([[x**n for n in range(degree,-1,-1)]+[-y*x**n for n in range(degree,0,-1)] for x,y in zip(xvec,yvec)]).solve(Vec(yvec))

def genmat(m, n, func):
if not n: n=m
return Mat([ [func(i,j) for i in range(n)] for j in range(m) ])

def zeroes(m=1, n=None):
'Zero matrix with side length m-by-m or m-by-n.'
return genmat(m,n, lambda i,j: 0)

def eye(m=1, n=None):
'Identity matrix with side length m-by-m or m-by-n'
return genmat(m,n, lambda i,j: i==j)

def hilb(m=1, n=None):
'Hilbert matrix with side length m-by-m or m-by-n.  Elem[i][j]=1/(i+j+1)'
return genmat(m,n, lambda i,j: 1.0/(i+j+1.0))

def rand(m=1, n=None):
'Random matrix with side length m-by-m or m-by-n'
return genmat(m,n, lambda i,j: random.random())

if __name__ == '__main__':
import cmath
a = Table([1+2j,2,3,4])
b = Table([5,6,7,8])
C = Table([a,b])
print 'a+b', a+b
print '2+a', 2+a
print 'a/5.0', a/5.0
print '2*a+3*b', 2*a+3*b
print 'a+C', a+C
print '3+C', 3+C
print 'C+b', C+b
print 'C.sum()', C.sum()
print 'C.map(math.cos)', C.map(cmath.cos)
print 'C.conjugate()', C.conjugate()
print 'C.real()', C.real()

print zeroes(3)
print eye(4)
print hilb(3,5)

C = Mat( [[1,2,3], [4,5,1,], [7,8,9]] )
print C.mmul( C.tr()), '\n'
print C ** 5, '\n'
print C + C.tr(), '\n'

A = C.tr().augment( Mat([[10,11,13]]).tr() ).tr()
q, r = A.qr()
assert q.mmul(r) == A
assert q.tr().mmul(q)==eye(3)
print 'q:\n', q, '\nr:\n', r, '\nQ.tr()&Q:\n', q.tr().mmul(q), '\nQ*R\n', q.mmul(r), '\n'
b = Vec([50, 100, 220, 321])
x = A.solve(b)
print 'x:  ', x
print 'b:  ', b
print 'Ax: ', A.mmul(x)

inv = C.inverse()
print '\ninverse C:\n', inv, '\nC * inv(C):\n', C.mmul(inv)
assert C.mmul(inv) == eye(3)

points = (xvec,yvec) = funToVec(lambda x: math.sin(x)+2*math.cos(.7*x+.1), low=0, high=3, EqualSpacing=1)
basis = [lambda x: math.sin(x), lambda x: math.exp(x), lambda x: x**2]
print 'Func coeffs:', funfit( points, basis )
print 'Poly coeffs:', polyfit( points, degree=5 )
points = (xvec,yvec) = funToVec(lambda x: math.sin(x)+2*math.cos(.7*x+.1), low=0, high=3)
print 'Rational coeffs:', ratfit( points )

print polyfit(([1,2,3,4], [1,4,9,16]), 2)

mtable = Vec([1,2,3]).outer(Vec([1,2]))
print mtable, mtable.size

A = Mat([ [2,0,3], [1,5,1], [18,0,6] ])
print 'A:'
print A
print 'eigs:'
print A.eigs()
print 'Should be:', Vec([11.6158, 5.0000, -3.6158])
print 'det(A)'
print A.det()

c = Mat( [[1,2,30],[4,5,10],[10,80,9]] )     # Failed example from Konrad Hinsen
print 'C:\n', c
print c.eigs()
print 'Should be:', Vec([-8.9554, 43.2497, -19.2943])

A = Mat([ [1,2,3,4], [4,5,6,7], [2,1,5,0], [4,2,1,0] ] )    # Kincaid and Cheney p.326
print 'A:\n', A
print A.eigs()
print 'Should be:', Vec([3.5736, 0.1765, 11.1055, -3.8556])

A = rand(3)
q,r = A.qr()
s,t = A.qr()
print q is s                # Test caching
print r is t
A[1][1] = 1.1               # Invalidate the cache
u,v = A.qr()
print q is u                # Verify old result not used
print r is v
print u.mmul(v) == A        # Verify new result

print 'Test qr on 3x5 matrix'
a = rand(3,5)
q,r = a.qr()
print q.mmul(r) == a
print q.tr().mmul(q) == eye(3)
``````

One liner:

``````def dot(m1, m2):
return [
[sum(x * y for x, y in zip(m1_r, m2_c)) for m2_c in zip(*m2)] for m1_r in m1
]
``````

Explanation:

zip(*m2) - gets a column from the second matrix

zip(m1_r, m2_c) - creates tuple from m1 row and m2 column

sum(...) - sums multiplication row * col

Test:

``````m1 = [[1, 2, 3], [4, 5, 6]]
m2 = [[7, 8], [9, 10], [11, 12]]
result = dot(m1, m2)
assert result == [[58, 64], [139, 154]]
``````

When I had to do some matrix arithmetic I defined a new class to help. Within such a class you can define magic methods like `__add__`, or, in your use-case, `__matmul__`, allowing you to define `x = a @ b` or `a @= b` rather than `matrixMult(a,b)`. `__matmul__` was added in Python 3.5 per PEP 465.

I have included some code which implements this below (I excluded the prohibitively long `__init__` method, which essentially creates a two-dimensional list `self.mat` and a tuple `self.order` according to what is passed to it)

``````class Matrix:
def __matmul__(self, multiplier):
if self.order[1] != multiplier.order[0]:
raise ValueError("The multiplier was non-conformable under multiplication.")
return [[sum(a*b for a,b in zip(srow,mcol)) for mcol in zip(*multiplier.mat)] for srow in self.mat]

def __imatmul__(self, multiplier):
self.mat = self @ multiplier
return self.mat

def __rmatmul__(self, multiplicand):
if multiplicand.order[1] != self.order[0]:
raise ValueError("The multiplier was non-conformable under multiplication.")
return [[sum(a*b for a,b in zip(mrow,scol)) for scol in zip(*self.mat)] for mrow in multiplicand.mat]
``````

Note:

• `__rmatmul__` is used if `b @ a` is called and `b` does not implement `__matmul__` (e.g. if I wanted to implement premultiplying by a 2D list)
• `__imatmul__` is required for `a @= b` to work correctly;
• If a matrix is non-conformable under multiplication it means that it cannot be multiplied, usually because it has more or less rows than there are columns in the multiplicand
• For those not always working with the latest versions of Python: this matrix multiplication operator was added in Python 3.5. Nov 30, 2017 at 15:30
• For details on the Python 3.5 addition, see "PEP 465 -- A dedicated infix operator for matrix multiplication" python.org/dev/peps/pep-0465 Jun 4, 2018 at 18:06

Matrix Multiplication in pure python.

``````def matmult(m1,m2):
r=[]
m=[]
for i in range(len(m1)):
for j in range(len(m2[0])):
sums=0
for k in range(len(m2)):
sums=sums+(m1[i][k]*m2[k][j])
r.append(sums)
m.append(r)
r=[]
return m
``````

The fault occurs here:

``````C[i][j]+=A[i][k]*B[k][j]
``````

It crashes when k=2. This is because the tuple `A[i]` has only 2 values, and therefore you can only call it up to A[i][1] before it errors.

EDIT: Listen to Gerard's answer too, your C is wrong. It should be `C=[[0 for row in range(len(A))] for col in range(len(A[0]))]`.

Just a tip: you could replace the first loop with a multiplication, so it would be `C=[[0]*len(A) for col in range(len(A[0]))]`

• True if matrixMult(Xt,X1) is evaluated May 8, 2012 at 23:56

The shape of your matrix `C` is wrong; it's the transpose of what you actually want it to be. (But I agree with ulmangt: the Right Thing is almost certainly to use numpy, really.)

All the below answers would return you the list.Your need to convert it to matrix

``````def MATMUL(X, Y):
rows_A = len(X)
cols_A = len(X[0])
rows_B = len(Y)
cols_B = len(Y[0])

if cols_A != rows_B:
print "Matrices are not compatible to Multiply. Check condition C1==R2"
return

# Create the result matrix
# Dimensions would be rows_A x cols_B
C = [[0 for row in range(cols_B)] for col in range(rows_A)]
print C

for i in range(rows_A):
for j in range(cols_B):
for k in range(cols_A):
C[i][j] += A[i][k] * B[k][j]

C = numpy.matrix(C).reshape(len(A),len(B[0]))

return C
``````
``````def matrixmult (A, B):
C = [[0 for row in range(len(A))] for col in range(len(B[0]))]
for i in range(len(A)):
for j in range(len(B[0])):
for k in range(len(B)):
C[i][j] += A[i][k]*B[k][j]
return C
``````

at second line you should change

``````C = [[0 for row in range(len(B[0]))] for col in range(len(A))]
``````
``````m=input("row")
n=input("col")
X=[]
for i in range (m):
m1=[]
for j in range (n):
m1.append(input("num"))
X.append(m1)
Y=[]
for i in range (m):
n1=[]
for j in range (n):
n1.append(input("num"))
Y.append(n1)

# result is 3x3
result = [[0,0,0],
[0,0,0],
[0,0,0]]

# iterate through rows of X
for i in range(len(X)):
# iterate through columns of Y
for j in range(len(Y[0])):
# iterate through rows of Y
for k in range(len(Y)):
result[i][j] += X[i][k] * Y[k][j]

for r in result:
print(r)
``````

Had to delete the first post because I noticed an error but this should work fine for multiplying two matrixes.

``````from numpy import*

A = matrix([[1.0016, 0.0, -16.0514],[0.0, 10000.0, -40000.0],[-16.0514, -40000.0, 160513.6437]])
B = matrix([(1.0, 1.0),(0.0, 0.25),(0.0, 0.0625)])

n,m = shape(B)
C = ones((n,m*n))
index=0
matrixA=ones(shape(A))

for i in range(n):
if (i==1):
for y in range(n):
for z in range(n):
matrixA[y,z]=matrixA[y,z]*A[y,z]
elif(i>1):
matrixA=matrixA*A
if (i==0):
result=B
else:
result = matrixA * B
for x in range (n):
for y in range(m):
C[x,index] = result[x,y]
index+=1
index=index-m
index=index+m

print(C)
``````