How to reversibly store and load a Pandas dataframe to/from disk
Solution 1:
The easiest way is to pickle it using to_pickle
:
df.to_pickle(file_name) # where to save it, usually as a .pkl
Then you can load it back using:
df = pd.read_pickle(file_name)
Note: before 0.11.1 save
and load
were the only way to do this (they are now deprecated in favor of to_pickle
and read_pickle
respectively).
Another popular choice is to use HDF5 (pytables) which offers very fast access times for large datasets:
import pandas as pd
store = pd.HDFStore('store.h5')
store['df'] = df # save it
store['df'] # load it
More advanced strategies are discussed in the cookbook.
Since 0.13 there's also msgpack which may be be better for interoperability, as a faster alternative to JSON, or if you have python object/text-heavy data (see this question).
Solution 2:
Although there are already some answers I found a nice comparison in which they tried several ways to serialize Pandas DataFrames: Efficiently Store Pandas DataFrames.
They compare:
- pickle: original ASCII data format
- cPickle, a C library
- pickle-p2: uses the newer binary format
- json: standardlib json library
- json-no-index: like json, but without index
- msgpack: binary JSON alternative
- CSV
- hdfstore: HDF5 storage format
In their experiment, they serialize a DataFrame of 1,000,000 rows with the two columns tested separately: one with text data, the other with numbers. Their disclaimer says:
You should not trust that what follows generalizes to your data. You should look at your own data and run benchmarks yourself
The source code for the test which they refer to is available online. Since this code did not work directly I made some minor changes, which you can get here: serialize.py I got the following results:
They also mention that with the conversion of text data to categorical data the serialization is much faster. In their test about 10 times as fast (also see the test code).
Edit: The higher times for pickle than CSV can be explained by the data format used. By default pickle
uses a printable ASCII representation, which generates larger data sets. As can be seen from the graph however, pickle using the newer binary data format (version 2, pickle-p2
) has much lower load times.
Some other references:
- In the question Fastest Python library to read a CSV file there is a very detailed answer which compares different libraries to read csv files with a benchmark. The result is that for reading csv files
numpy.fromfile
is the fastest. - Another serialization test shows msgpack, ujson, and cPickle to be the quickest in serializing.
Solution 3:
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:
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 developmentuse ipython for an interactive session, such that you keep the pandas table in memory as you edit and reload your script.
convert the csv to an HDF5 table
updated use
DataFrame.to_feather()
andpd.read_feather()
to store data in the R-compatible feather binary format that is super fast (in my hands, slightly faster thanpandas.to_pickle()
on numeric data and much faster on string data).
You might also be interested in this answer on stackoverflow.