How can I create a sparse matrix in the format of COO and have the pandas dataframe not unnest to a dense layout but keep the COO format for row,column,data?

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

a = np.eye(7)
a_csr = csr_matrix(a)
a_coo = a_csr.tocoo()
  (0, 0)    1.0
  (1, 1)    1.0
  (2, 2)    1.0
  (3, 3)    1.0
  (4, 4)    1.0
  (5, 5)    1.0
  (6, 6)    1.0

I.e. how can I obtain a pandas dataframe from this that does not unnest this to


enter image description here

but keeps the row,column,data format as also visualized in the print operation?

  • Basically I want to get the pandas dataframe in the Matrix Market format (MTX). Commented Aug 6, 2021 at 10:52
  • 1
    a_coo.row, a_coo.col, a_coo.data
    – hpaulj
    Commented Aug 6, 2021 at 14:55
  • really ;) ok this could have been so easy. Certainly nicer than the mmwrite workaround. Do you want to write this as an answer? Commented Aug 6, 2021 at 14:56

2 Answers 2


The values you want to put in the dataframe are available as

a_coo.row, a_coo.col, a_coo.data

one possible workaround could be to use mtx serialization and interpreting the data as a CSV.

from scipy import io
io.mmwrite('sparse_thing', a_csr)
!cat sparse_thing.mtx

sparse_mtx_mm_df = pd.read_csv('sparse_thing.mtx', sep=' ', skiprows=3, header=None)
sparse_mtx_mm_df.columns = ['row', 'column', 'data_value']

Is there a better (native, non serialization-baased) solution?

re_sparsed = coo_matrix((sparse_mtx_mm_df['data_value'].values, (sparse_mtx_mm_df.numpy_row.values, sparse_mtx_mm_df.numpy_column.values)))

would then give back the initial numpy array

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.