I'm iterating in chunks through a very large CSV file (10 GB) with pandas read_csv function. Also, I'm using multiprocessing to run things in parallel for better performance. An undesired side-effect is that I have to run multiple Python processes (Windows O/S), all with the same large TextFileReader object, and therefore drain my memory capacity.
Is it possible to gradually reduce the TextFileReader object as I iterate through it?
I've tried to access individual items of the TextFileReader object, but it fails when I use a numerical index: "object does not support indexing".
I had something like this in mind:
for df in TextFileReader: TextFileReader.remove(df)
I expect that if I can remove finished items from the TextFileReader object, the total memory use will drop significantly. How do you guys advise to handle this?