I solved the following problem in bash, but I feel it's quite inefficient and very slow given the size of files I need to reduce. Was hoping somebody has an idea how to do the same in Python and hopefully speed things up.
The original problem was to reduce very large text files (50-60 million lines, tab delimited columns). One of the columns is being treated as a key, i.e. we determine how many lines with a unique key are in the file and then randomly select a percentage of them (for example a quarter of total number if reducing by 75%) to append to a new file that will keep our results. We continue to go through the rest of the keys, randomizing and then reducing all lines containing each unique key by the same percentage. In case the reduction can't be done - we simply carry all the lines over to the resulting file.
As I said, my bash script works quite well, but it is slow and strings together various awk and grep constructs. By all accounts, Python should deal with this in a much more elegant way and without compromising memory too much (again, we are dealing with 50+ million lines files in this case). Any suggestions/tricks would be helpful! Thanks!