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Is there a fast way to do serialization of a DataFrame?

I have a grid system which can run pandas analysis in parallel. In the end, I want to collect all the results (as a DataFrame) from each grid job and aggregate them into a giant DataFrame.

How can I save data frame in a binary format that can be loaded rapidly?

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See related question stackoverflow.com/questions/12772498/… – user1929959 Jun 6 '13 at 20:44
up vote 7 down vote accepted

The easiest way is just to use to_pickle (as a pickle), see pickling from the docs api page:

df.to_pickle(file_name)

Another option is to use HDF5, slightly more work to get started but much richer for querying.

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Their docs seem to need some work. The .save() method has absolutely no description. – voithos Jun 6 '13 at 20:48
    
@voithos I realised that as I was looking for a link... :( – Andy Hayden Jun 6 '13 at 20:49
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This seems to be the best out there... – Andy Hayden Jun 6 '13 at 20:52
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FWIW save will be changed to to_pickle in pandas 0.12. – Andy Hayden Jun 6 '13 at 21:08

DataFrame.to_msgpack is experimental and not without some issues e.g. with Unicode, but it is much faster than pickling. It serialized a dataframe with 5 million rows that was taking 2-3 Gb of memory in about 2 seconds, and the resulting file was about 750 Mb. Loading is somewhat slower, but still way faster than unpickling.

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Have to timed the available io functions? Binary is not automatically faster and HDF5 should be quite fast to my knowledge.

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