I have a large number of data frames exported to a series of HDFStore files through Pandas. I need to be able to quickly pull in the most recent record, for each of these dataframes on demand.
The setup:
<class 'pandas.io.pytables.HDFStore'>
File path: /data/storage_X100.hdf
/X1 frame_table (typ->appendable,nrows->2652,ncols->1,indexers->[index])
/XX frame_table (typ->appendable,nrows->2652,ncols->3,indexers->[index])
/Y1 frame_table (typ->appendable,nrows->2652,ncols->2,indexers->[index])
/YY frame_table (typ->appendable,nrows->2652,ncols->3,indexers->[index])
I am storing roughly 100 data frames in each HDF file, and have around 5000 files to run through. Each of the data frames in the HDFStore are indexed with a DateTimeIndex.
For a single file, I'm currently looping through the HDFStore.keys()
, and then querying the dataframe with a tail(1)
like so:
store = pandas.HDFStore(filename)
lastrecs = {}
for key in store.keys():
last = store[key].tail(1)
lastrecs[key] = last
Is there a better way of doing this, perhaps with HDFStore.select_as_multiple
? Even selecting the last record without pulling the entire data frame for a tail would probably speed things up tremendously. How can this be done?