I have a table of the form:
source ||| target ||| s1 s2 s3 s4 s5 ||| ||| c1 c2 .
There are two files of this form, with 90 million and 50 million rows respectively. I want to process them to generate a new file. But, as I am making mistakes each time, it is too time-taking to load the files and generate dicts out of it. And if I use marshal to dump and load them each time, it still takes quite a bit of time. Is there a faster way? Code attached for both cases.
htEnPT = defaultdict(list) for phrase in open(phraseTable,'r'): parts = phrase.split(' ||| ') sourcePhrase = removePunctuations(parts) htEnPT[sourcePhrase].append(removePunctuations(parts),parts,parts)
This loads the dict each time and takes a long long time.
And if I do this after doing the above,
Then, doing this:
still takes a really long time.
So, is there a faster way of dealing with such large files when prototyping? Thanks.