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 '16 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 '16 at 17:52
  • 1
    You may want to check this comparison...
    – MaxU
    Jun 20 '16 at 17:56
  • 3
    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 '16 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.
    – denvar
    Jun 20 '16 at 18:30

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 '18 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...
    – MaxU
    Jan 31 '18 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.
    – MaxU
    Jun 27 '18 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
    – MaxU
    Jul 6 '19 at 22:16
  • 2
    @PirateApp the h5py package describes your use case here; they call it Single Writer Multiple Reader (SWMR).
    – Kyle
    Aug 9 '19 at 18:30

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