Problem: Given a set of ~250000 integer user IDs, and about a terabyte of JSON-formatted one-per-line records, load the records in which the user ID matches to a database.
Only about 1% of all the records will match the 250000 user IDs. Rather than JSON decode each record, which takes a long time, I am trying to use string matching to determine if the user ID is in the raw JSON; if it matches, then the JSON is decoded and the record checked and then inserted.
The problem is that matching one string of raw JSON against a set containing ~250k string entries is slow.
Here's the code so far:
// get the list of integer user IDs cur.execute('select distinct user_id from users') // load them as text into a set users = set() for result in cur.fetchall(): users.add(str(result)) // start working on f, the one-json-record-per-line text file for line in f: scanned += 1 if any(user in line for user in users): print "got one!" // decode json // check for correct decoded user ID match // do insert
I am approaching this the right way? What's a faster method of matching these strings? At present, when looking for so many user IDs, this manages ~2 entries a second on a 3ghz machine (not so good). When the list of user IDs is very short, it manages ~200000 entries/second.