http://pandas.pydata.org/pandas-docs/stable/sparse.html#interaction-with-scipy-sparse

A convenience method SparseSeries.from_coo() is implemented for creating a SparseSeries from a scipy.sparse.coo_matrix.

Within `scipy.sparse`

there are methods that convert the data forms to each other. `.tocoo`

, `.tocsc`

, etc. So you can use which ever form is best for a particular operation.

For going the other way, I've answered

Pandas sparse dataFrame to sparse matrix, without generating a dense matrix in memory

Your linked answer from 2013 iterates by row - using `toarray`

to make the row dense. I haven't looked at what the pandas `from_coo`

does.

A more recent SO question on pandas sparse

non-NDFFrame object error using pandas.SparseSeries.from_coo() function

From https://github.com/pydata/pandas/blob/master/pandas/sparse/scipy_sparse.py

```
def _coo_to_sparse_series(A, dense_index=False):
""" Convert a scipy.sparse.coo_matrix to a SparseSeries.
Use the defaults given in the SparseSeries constructor. """
s = Series(A.data, MultiIndex.from_arrays((A.row, A.col)))
s = s.sort_index()
s = s.to_sparse() # TODO: specify kind?
# ...
return s
```

In effect it takes the same `data`

, `i`

, `j`

used to build a `coo`

matrix, makes a series, sorts it, and turns it into a sparse series.