Iteratively writing to HDF5 Stores in Pandas Iteratively writing to HDF5 Stores in Pandas python python

Iteratively writing to HDF5 Stores in Pandas


  1. As soon as the statement is exectued, eg store['df'] = df. The close just closes the actual file (which will be closed for you if the process exists, but will print a warning message)

  2. Read the section http://pandas.pydata.org/pandas-docs/dev/io.html#storing-in-table-format

    It is generally not a good idea to put a LOT of nodes in an .h5 file. You probably want to append and create a smaller number of nodes.

    You can just iterate thru your .csv and store/append them one by one. Something like:

    for f in files:  df = pd.read_csv(f)  df.to_hdf('file.h5',f,df)

    Would be one way (creating a separate node for each file)

  3. Not appendable - once you write it, you can only retrieve it all at once, e.g. you cannot select a sub-section

    If you have a table, then you can do things like:

    pd.read_hdf('my_store.h5','a_table_node',['index>100'])

    which is like a database query, only getting part of the data

    Thus, a store is not appendable, nor queryable, while a table is both.


Answering question 2, with pandas 0.18.0 you can do:

store = pd.HDFStore('compiled_measurements.h5')for filepath in file_iterator:    raw = pd.read_csv(filepath)    store.append('measurements', raw, index=False)store.create_table_index('measurements', columns=['a', 'b', 'c'], optlevel=9, kind='full')store.close()

Based on this part of the docs.

Depending on how much data you have, the index creation can consume enormous amounts of memory. The PyTables docs describes the values of optlevel.