Given a 1.5 Gb list of pandas dataframes, which format is fastest for loading compressed data: pickle (via cPickle), hdf5, or something else in Python?

  • I only care about fastest speed to load the data into memory
  • I don't care about dumping the data, it's slow but I only do this once.
  • I don't care about file size on disk
  • 8
    Have you tried measuring this, in your specific conditions?
    – pvg
    Jun 20, 2016 at 17:52
  • 2
    I'm guessing that pickle will be one of the worst ways to dump this data :-). Of course, that's just a guess. I don't have any hard data to back it up. Speaking of hard data, why not do an experiment and find out?
    – mgilson
    Jun 20, 2016 at 17:52
  • 2
    You may want to check this comparison... Jun 20, 2016 at 17:56
  • 4
    you can profile this yourself and if you are phishing for recommendations as your comment suggests, then that is explicitly off-topic : Questions asking us to recommend or find a book, tool, software library, tutorial or other off-site resource are off-topic for Stack Overflow as they tend to attract opinionated answers and spam. Instead, describe the problem and what has been done so far to solve it.
    – user177800
    Jun 20, 2016 at 18:01
  • 1
    @TadhgMcDonald-Jensen "If one was wholly better then the other then you would have found the answer before posting your question." is just generally a strange logic. Jun 20, 2016 at 18:30

1 Answer 1


UPDATE: nowadays I would choose between Parquet, Feather (Apache Arrow), HDF5 and Pickle.

Pro's and Contra's:

  • Parquet
    • pros
      • one of the fastest and widely supported binary storage formats
      • supports very fast compression methods (for example Snappy codec)
      • de-facto standard storage format for Data Lakes / BigData
    • contras
      • the whole dataset must be read into memory. You can't read a smaller subset. One way to overcome this problem is to use partitioning and to read only required partitions.
        • no support for indexing. you can't read a specific row or a range of rows - you always have to read the whole Parquet file
      • Parquet files are immutable - you can't change them (no way to append, update, delete), one can only either write or overwrite to Parquet file. Well this "limitation" comes from the BigData and would be considered as one of the huge "pros" there.
  • HDF5
    • pros
      • supports data slicing - ability to read a portion of the whole dataset (we can work with datasets that wouldn't fit completely into RAM).
      • relatively fast binary storage format
      • supports compression (though the compression is slower compared to Snappy codec (Parquet) )
      • supports appending rows (mutable)
    • contras
  • Pickle
    • pros
      • very fast
    • contras
      • requires much space on disk
      • for a long term storage one might experience compatibility problems. You might need to specify the Pickle version for reading old Pickle files.

OLD Answer:

I would consider only two storage formats: HDF5 (PyTables) and Feather

Here are results of my read and write comparison for the DF (shape: 4000000 x 6, size in memory 183.1 MB, size of uncompressed CSV - 492 MB).

Comparison for the following storage formats: (CSV, CSV.gzip, Pickle, HDF5 [various compression]):

                  read_s  write_s  size_ratio_to_CSV
CSV               17.900    69.00              1.000
CSV.gzip          18.900   186.00              0.047
Pickle             0.173     1.77              0.374
HDF_fixed          0.196     2.03              0.435
HDF_tab            0.230     2.60              0.437
HDF_tab_zlib_c5    0.845     5.44              0.035
HDF_tab_zlib_c9    0.860     5.95              0.035
HDF_tab_bzip2_c5   2.500    36.50              0.011
HDF_tab_bzip2_c9   2.500    36.50              0.011

But it might be different for you, because all my data was of the datetime dtype, so it's always better to make such a comparison with your real data or at least with the similar data...

  • 3
    Why do you only consider HDF5 and Feather, but not Pickle? Your result shows that it's quite good, there is also compressed pickle. Isn't it a good standard choice?
    – THN
    Jan 31, 2018 at 3:31
  • 1
    @THN, If i recall correctly I saw some bugs in the past - I'm not sure though whether it's still the case... Jan 31, 2018 at 21:29
  • 1
    @PirateApp, multiple readers shouldn't be problem per se (IO might suffer off course). I don't know what will happen if single/multiple readers will try to read the data that is being written in the same time. It should be thoroughly tested. I would consider using one of RDBMS (Oracle, MySQL, PostgreSQL, etc.) or Hive, Spark, etc. for multi-user environments. Jun 27, 2018 at 7:50
  • 4
    @LegitStack, currently I would use either HDF5 or Parquet format - both of them are: 1) binary format 2) support compression 3) longterm storage 4) very fast compared to other formats Jul 6, 2019 at 22:16
  • 2
    @PirateApp the h5py package describes your use case here; they call it Single Writer Multiple Reader (SWMR).
    – Kyle
    Aug 9, 2019 at 18:30

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