# Find given row in a scipy sparse matrix?

Question is very simple: Let's say I have a given row r from scipy sparse matrix M (100,000X500,000), I want to find its location/index in the M matrix? How can I accomplish this in an efficient way?

Currently I am trying the following way, but it is horribly slow.

``````offset = 500
begin = 0
end  = begin + offset
row = row.todense() #convert sparse to dense
while 1:
sub_M = M[begin:end,:].todense() #M matrix is too big that its dense cannot fit memory
labels=np.all(row == sub_M, axis=1) # here we find row in the sub set of M, but in a dense representation
begin = end
end = end + offset
if (end - offset) == M.shape[0]:
break
elif end > M.shape[0]:
end = M.shape[0]
``````
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Unless you want to dig into the internals of one or more sparse matrix types, you should use CSR format for your matrix and:

• Calculate the length (L2 norm) of each matrix row; in other words: `sum(multiply(M, M), 2)`
• Normalize r to (L2) length 1
• Matrix multiply `M*r` (where r is treated as a column vector)

If an entry of `M*r` matches the length of the corresponding row, then you have a match.

Note that the default `ord` for `numpy.linalg.norm` is L2 norm.

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Thanks for the great tip. I am trying to norm my data but I keep getting ValueError: dimension mismatch. You have any advice? – TsendeeMTS Dec 21 '12 at 4:42
If I convert my CSR row vector to dense format I it works. – TsendeeMTS Dec 21 '12 at 4:44
@TsendeeMTS Check the `.shape()` of the objects that are being multiplied together. Also, please tell us what operation gives you the error. – jrennie Mar 15 '14 at 19:00

Finally, I came up with a very simple but much time efficient solution. Each row in the sparse matrix is converted to string and put into a dictionary along with its index/location. Then the row needs to be found is the key of the dictionary and dic[str(row)] gives me its index.

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