I have a large pandas dataframe (size = 3 GB):
x = read.table('big_table.txt', sep='\t', header=0, index_col=0)
Because I'm working under memory constraints, I subset the dataframe:
rows = calculate_rows() # a function that calculates what rows I need
cols = calculate_cols() # a function that calculates what cols I need
x = x.ix[rows, cols]
The functions that calculate the rows and columns are not important, but they are DEFINITELY a smaller subset of the original rows and columns. However, when I do this operation, memory usage increases by a lot! The original goal was to shrink the memory footprint to less than 3GB, but instead, memory usage goes well over 6GB.
I'm guessing this is because Python creates a local copy of the dataframe in memory, but doesn't clean it up. There may also be other things that are happening... So my question is how do I subset a large dataframe and clean up the space? I can't find a function that selects rows/cols in place.
I have read a lot of Stack Overflow, but can't find much on this topic. It could be I'm not using the right keywords, so if you have suggestions, that could also help. Thanks!