bitvec: Space-efficient bit vectors

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A newtype over Bool with a better Vector instance: 8x less memory, up to 1000x faster.

The vector package represents unboxed arrays of Bools spending 1 byte (8 bits) per boolean. This library provides a newtype wrapper Bit and a custom instance of an unboxed Vector, which packs bits densely, achieving an 8x smaller memory footprint. The performance stays mostly the same; the most significant degradation happens for random writes (up to 10% slower). On the other hand, for certain bulk bit operations Vector Bit is up to 1000x faster than Vector Bool.

Thread safety

  • Data.Bit is faster, but writes and flips are thread-unsafe. This is because naive updates are not atomic: they read the whole word from memory, then modify a bit, then write the whole word back.

  • Data.Bit.ThreadSafe is slower (usually 10-20%), but writes and flips are thread-safe.

Similar packages

  • bv and bv-little do not offer mutable vectors.

  • array is memory-efficient for Bool, but lacks a handy Vector interface and is not thread-safe.


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Flags

Manual Flags

NameDescriptionDefault
libgmp

Link against the GMP library for the ultimate performance of zipBits, invertBits and countBits. Users are strongly encouraged to enable this flag whenever possible.

Disabled

Use -f <flag> to enable a flag, or -f -<flag> to disable that flag. More info

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Versions [RSS] 0.1, 0.1.0.1, 0.1.0.2, 0.1.1.0, 0.2.0.0, 0.2.0.1, 1.0.0.0, 1.0.0.1, 1.0.1.0, 1.0.1.1, 1.0.1.2, 1.0.2.0, 1.0.3.0, 1.1.0.0, 1.1.1.0, 1.1.2.0, 1.1.3.0, 1.1.4.0, 1.1.5.0 (info)
Change log changelog.md
Dependencies base (>=4.11 && <5), bytestring (>=0.10 && <0.12), deepseq (<1.5), ghc-bignum, integer-gmp, primitive (>=0.5), vector (>=0.11 && <0.14) [details]
Tested with ghc ==8.4.4, ghc ==8.6.5, ghc ==8.8.1, ghc ==8.8.2, ghc ==8.8.4, ghc ==8.10.7, ghc ==9.0.2, ghc ==9.2.7, ghc ==9.4.4, ghc ==9.6.1
License BSD-3-Clause
Copyright 2019-2022 Andrew Lelechenko, 2012-2016 James Cook
Author Andrew Lelechenko <andrew.lelechenko@gmail.com>, James Cook <mokus@deepbondi.net>
Maintainer Andrew Lelechenko <andrew.lelechenko@gmail.com>
Category Data, Bit Vectors
Home page https://github.com/Bodigrim/bitvec
Source repo head: git clone git://github.com/Bodigrim/bitvec.git
Uploaded by Bodigrim at 2023-03-20T22:35:27Z
Distributions Arch:1.1.3.0, Fedora:1.1.4.0, LTSHaskell:1.1.5.0, NixOS:1.1.5.0, Stackage:1.1.5.0, openSUSE:1.1.5.0
Reverse Dependencies 16 direct, 5007 indirect [details]
Downloads 16201 total (367 in the last 30 days)
Rating 2.25 (votes: 2) [estimated by Bayesian average]
Your Rating
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Status Docs available [build log]
Last success reported on 2023-03-21 [all 1 reports]

Readme for bitvec-1.1.4.0

[back to package description]

bitvec Hackage Stackage LTS Stackage Nightly

A newtype over Bool with a better Vector instance: 8x less memory, up to 1000x faster.

The vector package represents unboxed arrays of Bools spending 1 byte (8 bits) per boolean. This library provides a newtype wrapper Bit and a custom instance of an unboxed Vector, which packs bits densely, achieving an 8x smaller memory footprint. The performance stays mostly the same; the most significant degradation happens for random writes (up to 10% slower). On the other hand, for certain bulk bit operations Vector Bit is up to 1000x faster than Vector Bool.

Thread safety

  • Data.Bit is faster, but writes and flips are thread-unsafe. This is because naive updates are not atomic: they read the whole word from memory, then modify a bit, then write the whole word back.
  • Data.Bit.ThreadSafe is slower (usually 10-20%), but writes and flips are thread-safe.

Quick start

Consider the following (very naive) implementation of the sieve of Eratosthenes. It returns a vector with True at prime indices and False at composite indices.

import Control.Monad
import Control.Monad.ST
import qualified Data.Vector.Unboxed as U
import qualified Data.Vector.Unboxed.Mutable as MU

eratosthenes :: U.Vector Bool
eratosthenes = runST $ do
  let len = 100
  sieve <- MU.replicate len True
  MU.write sieve 0 False
  MU.write sieve 1 False
  forM_ [2 .. floor (sqrt (fromIntegral len))] $ \p -> do
    isPrime <- MU.read sieve p
    when isPrime $
      forM_ [2 * p, 3 * p .. len - 1] $ \i ->
        MU.write sieve i False
  U.unsafeFreeze sieve

We can switch from Bool to Bit just by adding newtype constructors:

import Data.Bit

import Control.Monad
import Control.Monad.ST
import qualified Data.Vector.Unboxed as U
import qualified Data.Vector.Unboxed.Mutable as MU

eratosthenes :: U.Vector Bit
eratosthenes = runST $ do
  let len = 100
  sieve <- MU.replicate len (Bit True)
  MU.write sieve 0 (Bit False)
  MU.write sieve 1 (Bit False)
  forM_ [2 .. floor (sqrt (fromIntegral len))] $ \p -> do
    Bit isPrime <- MU.read sieve p
    when isPrime $
      forM_ [2 * p, 3 * p .. len - 1] $ \i ->
        MU.write sieve i (Bit False)
  U.unsafeFreeze sieve

The Bit-based implementation requires 8x less memory to store the vector. For large sizes it allows to crunch more data in RAM without swapping. For smaller arrays it helps to fit into CPU caches.

> listBits eratosthenes
[2,3,5,7,11,13,17,19,23,29,31,37,41,43,47,53,59,61,67,71,73,79,83,89,97]

There are several high-level helpers, digesting bits in bulk, which makes them up to 64x faster than the respective counterparts for Vector Bool. One can query the population count (popcount) of a vector (giving us the prime-counting function):

> countBits eratosthenes
25

And vice versa, query an address of the n-th set bit (which corresponds to the n-th prime number here):

> nthBitIndex (Bit True) 10 eratosthenes
Just 29

One may notice that the order of the inner traversal by i does not matter and get tempted to run it in several parallel threads. In this case it is vital to switch from Data.Bit to Data.Bit.ThreadSafe, because the former is thread-unsafe with regards to writes. There is a moderate performance penalty (usually 10-20%) for using the thread-safe interface.

Sets

Bit vectors can be used as a blazingly fast representation of sets, as long as their elements are Enumeratable and sufficiently dense, leaving IntSet far behind.

For example, consider three possible representations of a set of Word16:

  • As an IntSet with a readily available union function.
  • As a 64k-long unboxed Vector Bool, implementing union as zipWith (||).
  • As a 64k-long unboxed Vector Bit, implementing union as zipBits (.|.).

When the libgmp flag is enabled, according to our benchmarks (see bench folder), the union of Vector Bit evaluates 24x-36x faster than the union of not-too-sparse IntSets and stunningly outperforms Vector Bool by 500x-1000x.

Binary polynomials

Binary polynomials are polynomials with coefficients modulo 2. Their applications include coding theory and cryptography. While one can successfully implement them with the poly package, operating on UPoly Bit, this package provides even faster arithmetic routines exposed via the F2Poly data type and its instances.

> :set -XBinaryLiterals
> -- (1 + x) * (1 + x + x^2) = 1 + x^3 (mod 2)
> 0b11 * 0b111 :: F2Poly
F2Poly {unF2Poly = [1,0,0,1]}

Use fromInteger / toInteger to convert binary polynomials from Integer to F2Poly and back.

Package flags

Similar packages

  • bv and bv-little do not offer mutable vectors.

  • array is memory-efficient for Bool, but lacks a handy Vector interface and is not thread-safe.

Additional resources

  • Bit vectors without compromises, Haskell Love, 31.07.2020: slides, video.