Question: How can I create a generator that allows for iteration over multiple columns in a pandas HDFStore object?
I am trying to create a wrapper class for a pandas HDFStore object. One of the features I am trying to implement is the ability to iterate over groups of columns in the HDFStore by a given chunksize. Many machine learning algorithms can operate
on-line and don't need all of the data at once.
My first attempt was to create a generator function and pass start and stop arguments to the select method of the HDFStore:
def iterate(self, key, chunksize=50000): node = self.store.get_node(key) nrows = node.table.nrows current = 0 while current < nrows: yield self.store.select(key, start=current, stop=current+chunksize) current += chunksize
This works fine, and I am able to iterate over a single stored column in the store. Note, that for testing I am storing every column in its own table.
My next step was to extend this concept to multiple columns from multiple tables using
HDFStore.select_as_multiple. While not in the docstring,
select_as_multiple appears to accept the start and stop arguments as well:
>>> store.select_as_multiple(keys='MachineID', start=0, stop=50000) <class 'pandas.core.frame.DataFrame'> Int64Index: 50000 entries, 0 to 49999 Data columns: MachineID 50000 non-null values dtypes: int64(1)
Only 50,000 rows were returned, as requested. However, when I pass more than 1 key/column the method pulls back ALL of the rows:
>>> store.select_as_multiple(keys=['MachineID','YearMade'], start=0, stop=50000) <class 'pandas.core.frame.DataFrame'> Int64Index: 401125 entries, 0 to 1124 Data columns: MachineID 401125 non-null values YearMade 401125 non-null values dtypes: int64(2)
Is it possible to use
select_as_multiple to pull back a specified range of rows instead of ALL rows?
>>> pd.__version__ '0.10.1' >>> tables.__version__ '2.4.0'