This question recurs frequently on StackOverflow, but I have read all the previous relevant answers, and have a slight twist on the question.
I have a 23Gb file containing 475 million lines of equal size, with each line consisting of a 40-character hash code followed by an identifier (an integer).
I have a stream of incoming hash codes - billions of them in total - and for each incoming hash code I need to locate it and print out corresponding identifier. This job, while large, only needs to be done once.
The file is too large for me to read into memory and so I have been trying to usemmap in the following way:
codes = (char *) mmap(0,statbuf.st_size,PROT_READ,MAP_SHARED,codefile,0);
Then I just do a binary search using address arithmetic based on the address in codes.
This seems to start working beautifully and produces a few million identifiers in a few seconds, using 100% of the cpu, but then after some, seemingly random, amount of time it slows down to a crawl. When I look at the process using ps, it has changed from status "R" using 100% of the cpu, to status "D" (diskbound) using 1% of the cpu.
This is not repeatable - I can start the process off again on the same data, and it might run for 5 seconds or 10 seconds before the "slow to crawl" happens. Once last night, I got nearly a minute out of it before this happened.
Everything is read only, I am not attempting any writes to the file, and I have stopped all other processes (that I control) on the machine. It is a modern Red Hat Enterprise Linux 64-bit machine.
Does anyone know why the process becomes disk-bound and how to stop it?
Thanks to everyone for answering, and for your ideas; I had not previously tried all the various improvements before because I was wondering if I was somehow using mmap incorrectly. But the gist of the answers seemed to be that unless I could squeeze everything into memory, I would inevitable run into problems. So I squashed the size of the hash code to the size of the leading prefix that did not create any duplicates - the first 15 characters were enough. Then I pulled the resulting file into memory, and ran the incoming hash codes in batches of about 2 billion each.