1

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?

1 Answer 1

4

use start and/or stop to specify a range of rows. You still need to iterate over the keys, but this will just select the last row of a table, so should be very fast.

In [1]: df = DataFrame(np.random.randn(10,5))

In [2]: df.to_hdf('test.h5','df',mode='w',format='table')

In [3]: store = pd.HDFStore('test.h5')

In [4]: store
Out[4]: 
<class 'pandas.io.pytables.HDFStore'>
File path: test.h5
/df            frame_table  (typ->appendable,nrows->10,ncols->5,indexers->[index])

In [5]: nrows = store.get_storer('df').nrows

In [6]: nrows
Out[6]: 10

In [7]: store.select('df',start=nrows-1,stop=nrows)
Out[7]: 
          0        1         2         3         4
9  0.221869 -0.47866  1.456073  0.093266 -0.456778

In [8]: store.close()

Here's a question using nrows (for a different purpose) here

0

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.