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I am creating a matrix from a Pandas dataframe as follows:

dense_matrix = np.array(df.as_matrix(columns = None), dtype=bool).astype(np.int)

And then into a sparse matrix with:

sparse_matrix = scipy.sparse.csr_matrix(dense_matrix)

Is there any way to go from a df straight to a sparse matrix?

Thanks in advance.

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up vote 12 down vote accepted

df.values is a numpy array, and accessing values that way is always faster than np.array.

scipy.sparse.csr_matrix(df.values)

You might need to take the transpose first, like df.values.T. In DataFrames, the columns are axis 0.

share|improve this answer
    
But this is suppose to generate a memory copy, isn't it? As df.values is essentially returning a dense matrix, and cast to csr_matrix handle. It doesn't work for large matrix. – Jake0x32 Jun 27 '15 at 3:44
    
No, if I understand correctly df.values does not make a copy. – Dan Allan Jul 2 '15 at 19:05
    
Another way would be to do e.g. df.replace(0, np.nan).to_sparse(), which results to a sparse DataFrame though, not a scipy.sparse.csr_matrix ... – ntg Apr 22 at 3:06

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