I noticed Pandas now has support for Sparse Matrices and Arrays. Currently, I create DataFrame()s like this:

return DataFrame(matrix.toarray(), columns=features, index=observations)

Is there a way to create a SparseDataFrame() with a scipy.sparse.csc_matrix() or csr_matrix()? Converting to dense format kills RAM badly. Thanks!


A direct conversion is not supported ATM. Contributions are welcome!

Try this, should be ok on memory as the SpareSeries is much like a csc_matrix (for 1 column) and pretty space efficient

In [37]: col = np.array([0,0,1,2,2,2])

In [38]: data = np.array([1,2,3,4,5,6],dtype='float64')

In [39]: m = csc_matrix( (data,(row,col)), shape=(3,3) )

In [40]: m
<3x3 sparse matrix of type '<type 'numpy.float64'>'
        with 6 stored elements in Compressed Sparse Column format>

In [46]: pd.SparseDataFrame([ pd.SparseSeries(m[i].toarray().ravel()) 
                              for i in np.arange(m.shape[0]) ])
   0  1  2
0  1  0  4
1  0  0  5
2  2  3  6

In [47]: df = pd.SparseDataFrame([ pd.SparseSeries(m[i].toarray().ravel()) 
                                   for i in np.arange(m.shape[0]) ])

In [48]: type(df)
Out[48]: pandas.sparse.frame.SparseDataFrame
  • Awesome, thanks! Just thinking aloud here, but since the SciPy Sparse formats are really just an array of data and two arrays of indices, could we somehow just pupulate the SparseDataFrame with that? – Will Jul 23 '13 at 23:33
  • 4
    its best (in the current implementation) to populate per series (column); which then basically creates an internal index (called an int index) or a block index (sort of like bsr/csr) to locate the values. What kinds of operations are you thinking of doing? – Jeff Jul 23 '13 at 23:35
  • Would this be different for a csr matrix or is this still the recommended way? – Sid Nov 3 '15 at 17:27
  • 1
    Jeff, using this method doesn't save memory in my case, calling df.memory_usage().sum() is the same if I just created the dataframe like so: pd.DataFrame(mtx.todense()) . If I however add the to_sparse method here pd.DataFrame(mtx.todense()).to_sparse(fill_value=0) and call df.memory_usage().sum() once again it is less. Maybe this is easy to answer but I'm kinda stuck. – Timothy Dalton Mar 22 '16 at 13:12
  • 1
    not really sure what you are doing, this was on a quite old version. Try with newer pandas, if not pls open an issue/SO question. – Jeff Mar 22 '16 at 13:22

As of pandas v 0.20.0 you can use the SparseDataFrame constructor.

An example from the pandas docs:

import numpy as np
import pandas as pd
from scipy.sparse import csr_matrix

arr = np.random.random(size=(1000, 5))
arr[arr < .9] = 0
sp_arr = csr_matrix(arr)
sdf = pd.SparseDataFrame(sp_arr)

A much shorter version:

df = pd.DataFrame(m.toarray())
  • 10
    Unfortunately, toarray() converts a sparse matrix into a dense matrix, and uses ridiculous amounts of memory. – Will Nov 5 '15 at 4:24
  • 1
    It's simple and short code and for my relatively small dataset the memory consumption was an acceptable tradeoff. – DaReal Aug 27 '19 at 9:46

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