13

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?

12

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.

5

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.

1

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

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.