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Brand new to Pandas and a novice with Python. Right now I'm importing a fairly large CSV as a dataframe every time I run the script. Is there a good solution for keeping that dataframe constantly available in between runs so I don't have to spend all that time waiting for the script to run?

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2 Answers 2

up vote 22 down vote accepted

The easiest way is to pickle it using save:

df.save(file_name)  # where to save it, usually as a .pkl

Then you can load it back using:

df = pd.load(file_name)

Note: from 0.11.1 to_pickle and read_pickle will be the preferred way to do this.

Another popular choice is to use HDF5 (pytables) which offers very fast access times for large datasets:

store = HDFStore('store.h5')

store['df'] = df  # save it
store['df']  # load it

More advanced strategies are discussed in the cookbook.

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If I understand correctly, you're already using pandas.read_csv() but would like to speed up the development process so that you don't have to load the file in every time you edit your script, is that right? I have a few recommendations:

  1. you could load in only part of the CSV file using pandas.read_csv(..., nrows=1000) to only load the top bit of the table, while you're doing the development

  2. use ipython for an interactive session, such that you keep the pandas table in memory as you edit and reload your script.

  3. convert the csv to an HDF5 table

You might also be interested in this answer on stackoverflow.

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