How can I retrieve specific columns from a pandas HDFStore? I regularly work with very large data sets that are too big to manipulate in memory. I would like to read in a csv file iteratively, append each chunk into HDFStore object, and then work with subsets of the data. I have read in a simple csv file and loaded it into an HDFStore with the following code:
tmp = pd.HDFStore('test.h5') chunker = pd.read_csv('cars.csv', iterator=True, chunksize=10, names=['make','model','drop']) tmp.append('df', pd.concat([chunk for chunk in chunker], ignore_index=True))
And the output:
In : tmp Out: <class 'pandas.io.pytables.HDFStore'> File path: test.h5 /df frame_table (typ->appendable,nrows->1930,indexers->[index])
My Question is how do I access specific columns from
tmp['df']? The documenation makes mention of a
select() method and some
Term objects. The examples provided are applied to Panel data; however, and I'm too much of a novice to extend it to the simpler data frame case. My guess is that I have to create an index of the columns somehow. Thanks!