gecko-dev/servo/components/util/bloom.rs

339 строки
7.9 KiB
Rust

/* This Source Code Form is subject to the terms of the Mozilla Public
* License, v. 2.0. If a copy of the MPL was not distributed with this
* file, You can obtain one at http://mozilla.org/MPL/2.0/. */
//! Simple counting bloom filters.
use string_cache::{Atom, Namespace};
const KEY_SIZE: uint = 12;
const ARRAY_SIZE: uint = 1 << KEY_SIZE;
const KEY_MASK: u32 = (1 << KEY_SIZE) - 1;
const KEY_SHIFT: uint = 16;
/// A counting Bloom filter with 8-bit counters. For now we assume
/// that having two hash functions is enough, but we may revisit that
/// decision later.
///
/// The filter uses an array with 2**KeySize entries.
///
/// Assuming a well-distributed hash function, a Bloom filter with
/// array size M containing N elements and
/// using k hash function has expected false positive rate exactly
///
/// $ (1 - (1 - 1/M)^{kN})^k $
///
/// because each array slot has a
///
/// $ (1 - 1/M)^{kN} $
///
/// chance of being 0, and the expected false positive rate is the
/// probability that all of the k hash functions will hit a nonzero
/// slot.
///
/// For reasonable assumptions (M large, kN large, which should both
/// hold if we're worried about false positives) about M and kN this
/// becomes approximately
///
/// $$ (1 - \exp(-kN/M))^k $$
///
/// For our special case of k == 2, that's $(1 - \exp(-2N/M))^2$,
/// or in other words
///
/// $$ N/M = -0.5 * \ln(1 - \sqrt(r)) $$
///
/// where r is the false positive rate. This can be used to compute
/// the desired KeySize for a given load N and false positive rate r.
///
/// If N/M is assumed small, then the false positive rate can
/// further be approximated as 4*N^2/M^2. So increasing KeySize by
/// 1, which doubles M, reduces the false positive rate by about a
/// factor of 4, and a false positive rate of 1% corresponds to
/// about M/N == 20.
///
/// What this means in practice is that for a few hundred keys using a
/// KeySize of 12 gives false positive rates on the order of 0.25-4%.
///
/// Similarly, using a KeySize of 10 would lead to a 4% false
/// positive rate for N == 100 and to quite bad false positive
/// rates for larger N.
pub struct BloomFilter {
counters: [u8, ..ARRAY_SIZE],
}
impl Clone for BloomFilter {
#[inline]
fn clone(&self) -> BloomFilter {
BloomFilter {
counters: self.counters,
}
}
}
impl BloomFilter {
/// Creates a new bloom filter.
#[inline]
pub fn new() -> BloomFilter {
BloomFilter {
counters: [0, ..ARRAY_SIZE],
}
}
#[inline]
fn first_slot(&self, hash: u32) -> &u8 {
&self.counters[hash1(hash) as uint]
}
#[inline]
fn first_mut_slot(&mut self, hash: u32) -> &mut u8 {
&mut self.counters[hash1(hash) as uint]
}
#[inline]
fn second_slot(&self, hash: u32) -> &u8 {
&self.counters[hash2(hash) as uint]
}
#[inline]
fn second_mut_slot(&mut self, hash: u32) -> &mut u8 {
&mut self.counters[hash2(hash) as uint]
}
#[inline]
pub fn clear(&mut self) {
self.counters = [0, ..ARRAY_SIZE]
}
#[inline]
fn insert_hash(&mut self, hash: u32) {
{
let slot1 = self.first_mut_slot(hash);
if !full(slot1) {
*slot1 += 1
}
}
{
let slot2 = self.second_mut_slot(hash);
if !full(slot2) {
*slot2 += 1
}
}
}
/// Inserts an item into the bloom filter.
#[inline]
pub fn insert<T:BloomHash>(&mut self, elem: &T) {
self.insert_hash(elem.bloom_hash())
}
#[inline]
fn remove_hash(&mut self, hash: u32) {
{
let slot1 = self.first_mut_slot(hash);
if !full(slot1) {
*slot1 -= 1
}
}
{
let slot2 = self.second_mut_slot(hash);
if !full(slot2) {
*slot2 -= 1
}
}
}
/// Removes an item from the bloom filter.
#[inline]
pub fn remove<T:BloomHash>(&mut self, elem: &T) {
self.remove_hash(elem.bloom_hash())
}
#[inline]
fn might_contain_hash(&self, hash: u32) -> bool {
*self.first_slot(hash) != 0 && *self.second_slot(hash) != 0
}
/// Check whether the filter might contain an item. This can
/// sometimes return true even if the item is not in the filter,
/// but will never return false for items that are actually in the
/// filter.
#[inline]
pub fn might_contain<T:BloomHash>(&self, elem: &T) -> bool {
self.might_contain_hash(elem.bloom_hash())
}
}
pub trait BloomHash {
fn bloom_hash(&self) -> u32;
}
impl BloomHash for int {
#[allow(exceeding_bitshifts)]
#[inline]
fn bloom_hash(&self) -> u32 {
((*self >> 32) ^ *self) as u32
}
}
impl BloomHash for uint {
#[allow(exceeding_bitshifts)]
#[inline]
fn bloom_hash(&self) -> u32 {
((*self >> 32) ^ *self) as u32
}
}
impl BloomHash for Atom {
#[inline]
fn bloom_hash(&self) -> u32 {
((self.data >> 32) ^ self.data) as u32
}
}
impl BloomHash for Namespace {
#[inline]
fn bloom_hash(&self) -> u32 {
let Namespace(ref atom) = *self;
atom.bloom_hash()
}
}
#[inline]
fn full(slot: &u8) -> bool {
*slot == 0xff
}
#[inline]
fn hash1(hash: u32) -> u32 {
hash & KEY_MASK
}
#[inline]
fn hash2(hash: u32) -> u32 {
(hash >> KEY_SHIFT) & KEY_MASK
}
#[test]
fn create_and_insert_some_stuff() {
use std::iter::range;
let mut bf = BloomFilter::new();
for i in range(0u, 1000) {
bf.insert(&i);
}
for i in range(0u, 1000) {
assert!(bf.might_contain(&i));
}
let false_positives =
range(1001u, 2000).filter(|i| bf.might_contain(i)).count();
assert!(false_positives < 10) // 1%.
for i in range(0u, 100) {
bf.remove(&i);
}
for i in range(100u, 1000) {
assert!(bf.might_contain(&i));
}
let false_positives = range(0u, 100).filter(|i| bf.might_contain(i)).count();
assert!(false_positives < 2); // 2%.
bf.clear();
for i in range(0u, 2000) {
assert!(!bf.might_contain(&i));
}
}
#[cfg(test)]
mod bench {
extern crate test;
use std::hash::hash;
use std::iter;
use super::BloomFilter;
#[bench]
fn create_insert_1000_remove_100_lookup_100(b: &mut test::Bencher) {
b.iter(|| {
let mut bf = BloomFilter::new();
for i in iter::range(0u, 1000) {
bf.insert(&i);
}
for i in iter::range(0u, 100) {
bf.remove(&i);
}
for i in iter::range(100u, 200) {
test::black_box(bf.might_contain(&i));
}
});
}
#[bench]
fn might_contain(b: &mut test::Bencher) {
let mut bf = BloomFilter::new();
for i in iter::range(0u, 1000) {
bf.insert(&i);
}
let mut i = 0u;
b.bench_n(1000, |b| {
b.iter(|| {
test::black_box(bf.might_contain(&i));
i += 1;
});
});
}
#[bench]
fn insert(b: &mut test::Bencher) {
let mut bf = BloomFilter::new();
b.bench_n(1000, |b| {
let mut i = 0u;
b.iter(|| {
test::black_box(bf.insert(&i));
i += 1;
});
});
}
#[bench]
fn remove(b: &mut test::Bencher) {
let mut bf = BloomFilter::new();
for i in range(0u, 1000) {
bf.insert(&i);
}
b.bench_n(1000, |b| {
let mut i = 0u;
b.iter(|| {
bf.remove(&i);
i += 1;
});
});
test::black_box(bf.might_contain(&0u));
}
#[bench]
fn hash_a_uint(b: &mut test::Bencher) {
let mut i = 0u;
b.iter(|| {
test::black_box(hash(&i));
i += 1;
})
}
}