Bloom filters are
						space-efficient probablistic data structures used to test whether an element
						is a member of a set.
						They're surprisingly simple: take an array of m
						bits, and for up to n different elements, either test or set
						k bits using positions chosen using hash functions. If all
						bits are set, the element probably already exists, with a false positive
						rate of p; if any of the bits are not set, the element
						certainly does not exist.
						Bloom filters find a wide range of uses, including tracking which
						articles you've read,
						speeding up Bitcoin clients,
						detecting malicious web sites,
						and improving the performance of caches.
						This page will help you choose an optimal size for your filter, or explore
						how the different parameters interact.