I want to implement URL filtering for the distributed crawling system on top of Redis database (e.g. don't visit the same URL twice, so I need somehow to keep tracking all of them with the minimal memory fingerprint, there is no need to store full URLs, just check if some particular URL has been visited or not). Bloom filters sounds right in this case, and I saw a native module for Redis implementing the Bloom filters. But it also has the built-in HyperLogLog data structure, so I'm wondering which one is a better choice in my scenario.

  • If you use a Bloom filter, then you get false positives, so it appears a URL was visited while it wasn't. Is that fine for your use case? (HyperLogLog can't be used by the way) – Thomas Mueller Mar 1 at 9:35
  • @ThomasMueller sure, anyway I can customize this rate for a bloom filter as far as I know – d-d Mar 11 at 10:19

Bloom filter is totally different from HyperLogLog. Bloom filter is used for checking if there're some duplicated items, while HyperLogLog is used for distinct counting. In your case, you should use Bloom filter.

Also see this question for their differences.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.