You could try reversing the lookup depending if "A" fits into memory and sequentially scan "B".
Otherwise, load the log files into a SQLite3 database with two tables (log_a, log_b) containing (timestamp, uniq_id, rest_of_line), then execute an SQL join on
uniq_id, and do any processing you require on the results from that. This will keep the memory overhead low, enables the SQL engine to do the join, but of course does require effectively duplicating the log files on-disk (but that's generally not an issue on most systems)
from datetime import datetime
db = sqlite3.connect(':memory:')
db.execute('create table log_a (timestamp, uniq_id, filesize)')
a = ['[2012-09-12 12:23:33] SOME_UNIQ_ID filesize']
for line in a:
timestamp, uniq_id, filesize = line.rsplit(' ', 2)
db.execute('insert into log_a values(?, ?, ?)', (timestamp, uniq_id, filesize))
db.execute('create table log_b (timestamp, uniq_id)')
b = ['[2012-09-12 13:23:33] SOME_UNIQ_ID']
for line in b:
timestamp, uniq_id = line.rsplit(' ', 1)
db.execute('insert into log_b values(?, ?)', (timestamp, uniq_id))
TIME_FORMAT = '[%Y-%m-%d %H:%M:%S]'
for matches in db.execute('select * from log_a join log_b using (uniq_id)'):
log_a_ts = datetime.strptime(matches, TIME_FORMAT)
log_b_ts = datetime.strptime(matches, TIME_FORMAT)
print matches, 'has a difference of', abs(log_a_ts - log_b_ts)
# 'SOME_UNIQ_ID has a difference of 1:00:00'
# '1:00:00' == datetime.timedelta(0, 3600)
.connect on sqlite3 should be a filename
b should be your files