dask DataFrame equivalent of pandas DataFrame sort_values

femibyte picture femibyte · Nov 2, 2016 · Viewed 9.1k times · Source

What would be the equivalent of sort_values in pandas for a dask DataFrame ? I am trying to scale some Pandas code which has memory issues to use a dask DataFrame instead.

Would the equivalent be :

ddf.set_index([col1, col2], sorted=True)

?

Answer

MRocklin picture MRocklin · Nov 2, 2016

Sorting in parallel is hard. You have two options in Dask.dataframe

set_index

As now, you can call set_index with a single column index:

In [1]: import pandas as pd

In [2]: import dask.dataframe as dd

In [3]: df = pd.DataFrame({'x': [3, 2, 1], 'y': ['a', 'b', 'c']})

In [4]: ddf = dd.from_pandas(df, npartitions=2)

In [5]: ddf.set_index('x').compute()
Out[5]: 
   y
x   
1  c
2  b
3  a

Unfortunately dask.dataframe does not (as of November 2016) support multi-column indexes

In [6]: ddf.set_index(['x', 'y']).compute()
NotImplementedError: Dask dataframe does not yet support multi-indexes.
You tried to index with this index: ['x', 'y']
Indexes must be single columns only.

nlargest

Given how you phrased your question I suspect that this doesn't apply to you, but often cases that use sorting can get by with the much cheaper solution nlargest.

In [7]: ddf.x.nlargest(2).compute()
Out[7]: 
0    3
1    2
Name: x, dtype: int64

In [8]: ddf.nlargest(2, 'x').compute()
Out[8]: 
   x  y
0  3  a
1  2  b