I am storing timeseries data in HDF5 format within pandas, Because I want to be able to access the data directly on disk I am using the PyTable format with
table=True when writing.
It appears that I then loose frequency information on my TimeSeries objects after writing them to HDF5.
This can be seen by toggling
is_table value in script below:
import pandas as pd is_table = False times = pd.date_range('2000-1-1', periods=3, freq='H') series = pd.Series(xrange(3), index=times) print 'frequency before =', series.index.freq frame = pd.DataFrame(series) with pd.get_store('data/simple.h5') as store: store.put('data', frame, table=is_table) with pd.get_store('data/simple.h5') as store: x = store['data'] print 'frequency after =', x.index.freq
is_table = False:
frequency before = <1 Hour> frequency after = <1 Hour>
is_table = True:
frequency before = <1 Hour> frequency after = None
It would seem to me that PyTables provides a much richer storage mechanism and that this would not be the case.
Is there a fundamental reason that PyTables cannot store, or reproduce, this information? Or is this a possible bug pandas?