# Replacing values in numpy array

I two numpy arrays, both M by N. X contains random values. Y contains true/false. Array A contains indices for rows in X that need replacement, with the value -1. I want to only replace values where Y is true.

Here is some code to do that:

``````M=30
N=40
X = np.zeros((M,N))  # random values, but 0s work too
Y = np.where(np.random.rand(M,N) > .5, True, False)
A=np.array([ 7,  8, 10, 13]), # in my setting, it's (1,4), not (4,)
for i in A[0]:
X[i][Y[A][i]==True]=-1
``````

However, what I actually want is only replace some of the entries. List B contains how many need to be replaced for each index in A. It's already ordered so A[0][0] corresponds to B[0], etc. Also, it's true that if A[i] = k, then the corresponding row in Y has at least k trues.

``````B = [1,2,1,1]
``````

Then for each index i (in loop),

``````X[i][Y[A][i]==True][0:B[i]] = -1
``````

This doesn't work. Any ideas on a fix?

-

Unfortunately, I don't have an elegant answer; however, this works:

``````M=30
N=40
X = np.zeros((M,N))  # random values, but 0s work too
Y = np.where(np.random.rand(M,N) > .5, True, False)
A=np.array([ 7,  8, 10, 13]), # in my setting, it's (1,4), not (4,)
B = [1,2,1,1]

# position in row where X should equal - 1, i.e. X[7,a0], X[8,a1], etc
a0=np.where(Y[7]==True)[0][0]
a1=np.where(Y[8]==True)[0][0]
a2=np.where(Y[8]==True)[0][1]
a3=np.where(Y[10]==True)[0][0]
a4=np.where(Y[13]==True)[0][0]

# For each row (i) indexed by A, take only B[i] entries where Y[i]==True.  Assume these indices in X = -1
for i in range(len(A[0])):
X[A[0][i]][(Y[A][i]==True).nonzero()[0][0:B[i]]]=-1

np.sum(X) # should be -5
X[7,a0]+X[8,a1]+X[8,a2]+X[10,a3]+X[13,a4] # should be -5
``````
-
This code would look a bit better if A was (k,) instead of (1,k). Any ideas for speed improvement? –  Kevin Sep 8 '13 at 13:54
``````import numpy as np