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Source code and validation tests for "wide odd regenerative multiplication," or "worm hashing"

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wormhashing

Source code and validation tests for "worm hashing"

What is worm hashing?

"Worm hashing" is short for "wide odd regenerative multiplication," a fast, effective, and flexible solution to the problem of mapping stock hash function results to values needed by hashed data structures, such as Bloom filters. The approach generalizes Lemire's fastrange to generating many ranged hash values from a single stock hash function result.

The key idea is making dual-use of "wide" multiplication, in which the product is twice as wide as each multiplicand. If we multiply a word-size stock hash function result by a range size, the "upper" word of the wide product is a hash value uniformly in that range. If that range size is odd, then the "lower" word of the wide product is a re-mixed hash value (Knuth multiplicative hash) suitable for generating more hash values.

Actual code (64-bit word size, Bloom filter add using k values over range m_odd, C++ with __uint128_t):

uint64_t h = XXH64(p, len, /*seed*/0);
for (unsigned i = 0; i < k; ++i) {
  __uint128_t wide_product = __uint128_t{h} * m_odd;
  uint64_t bit_index = (uint64_t)(wide_product >> 64);
  table[bit_index >> 6] |= (uint64_t{1} << (bit_index & 63));
  h = (uint64_t)wide_product;
}

Word size

We recommend using 64 bit a stock hash function that returns a 64-bit result, like xxhash64. This is fast to compute and a single value is accurate enough for practically all non-cryptographic applications.

And multiplying two 64-bit scalars to a 128-bit scalar is quite fast on newer 64-bit processors, including Intel x86 and ARM. Worm hashing is almost as fast as double hashing with bit masking, which only works for power-of-two range sizes. It is similar to or faster than adapting alternative techniques such as double hashing with fastrange, and much faster than anything using modulus. (See bloom_simulation_tests)

TODO: cycle hazard with 32 bit worm hashing (in addition to inherent accuracy hazard)

Odd range size

For this simple approach to be regenerative, the range sizes must be odd. (Each multiplication by an even value would stack zeros in the lowest bits.) We recommend simply subtracting one whenever the desired range size would be even. This should have negligible or minor impact in almost all applications. For example, leaving one bit unused at the end of a Bloom filter would only have noticeable impact for extremely small Bloom filters.

It is also common to want a b-bit hash value excluding the all-zeros value. This is easy with worm hashing by using range (2^b) - 1, which is odd, and then adding one to the result.

For Bloom filters

Worm hashing should be considered a new standard construction for Bloom filters, vs. using independent hash functions or double hashing variants. As yet, we have not detected (using bloom_simulation_tests) any significant, repeatable deviation from what you would get with independent hash functions by using 64-bit worm hashing. (The loss from double hashing and variants is quite detectable for some configurations.)

A key usability advantage of worm hashing over e.g. double hashing is never wasting hash entropy when it could have been used. It is relatively easy to prove that any contiguous sequence of worm-generated values have maximal entropy from the original hash: the maximum of either the combined sizes of the generated values or the size of the original hash. The top mistake in efficient hashing is leaving quality hash information unused (or severely under-utilized); worm hashing is a simple and clear recipe for avoiding that top mistake.

Aside from getting wide multiplication results, the code is very simple. In fact, being able to pass around a 64-bit hash as a complete input descriptor can simplify some code.

But be aware: Bloom filter alternatives such as cuckoo filters are generally superior (in speed and accuracy) when memory per added element is greater than about 8 bits. And in many applications, cache-friendly Bloom filters are much faster than standard Bloom filters because of locality, with minor accuracy loss.

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