pcg-random-0.1.3.6: Haskell bindings to the PCG random number generator.

CopyrightCopyright (c) 2015 Christopher Chalmers <c.chalmers@me.com>
LicenseBSD3
MaintainerChristopher Chalmers <c.chalmers@me.com>
Stabilityexperimental
PortabilityCPP
Safe HaskellNone
LanguageHaskell2010

System.Random.PCG.Fast.Pure

Contents

Description

Experimental pure haskell version of the fast variant of the PCG random number generator. This module can perform faster than the c bindings version, especially for parallel code.

See http://www.pcg-random.org for details.

import Control.Monad.ST
import System.Random.PCG.Fast.Pure

three :: [Double]
three = runST $ do
  g <- create
  a <- uniform g
  b <- uniform g
  c <- uniform g
  return [a,b,c]
Synopsis

Gen

data Gen s Source #

State of the random number generator.

Instances
(PrimMonad m, s ~ PrimState m) => Generator (Gen s) m Source # 
Instance details

Defined in System.Random.PCG.Fast.Pure

Methods

uniform1 :: (Word32 -> a) -> Gen s -> m a Source #

uniform2 :: (Word32 -> Word32 -> a) -> Gen s -> m a Source #

uniform1B :: Integral a => (Word32 -> a) -> Word32 -> Gen s -> m a Source #

type GenST = Gen Source #

create :: PrimMonad m => m (Gen (PrimState m)) Source #

Create a Gen from a fixed initial seed.

createSystemRandom :: IO GenIO Source #

Seed a PRNG with data from the system's fast source of pseudo-random numbers. All the caveats of withSystemRandom apply here as well.

initialize :: PrimMonad m => Word64 -> m (Gen (PrimState m)) Source #

Initialize a generator a single word.

>>> initialize 0 >>= save
F 1

withSystemRandom :: (GenIO -> IO a) -> IO a Source #

Seed with system random number. ("/dev/urandom" on Unix-like systems, time otherwise).

Getting random numbers

class Variate a where Source #

Methods

uniform :: Generator g m => g -> m a Source #

Generate a uniformly distributed random vairate.

  • Use entire range for integral types.
  • Use (0,1] range for floating types.

uniformR :: Generator g m => (a, a) -> g -> m a Source #

Generate a uniformly distributed random vairate in the given range.

  • Use inclusive range for integral types.
  • Use (a,b] range for floating types.

uniformB :: Generator g m => a -> g -> m a Source #

Generate a uniformly distributed random vairate in the range [0,b). For integral types the bound must be less than the max bound of Word32 (4294967295). Behaviour is undefined for negative bounds.

Instances
Variate Bool Source # 
Instance details

Defined in System.Random.PCG.Class

Methods

uniform :: Generator g m => g -> m Bool Source #

uniformR :: Generator g m => (Bool, Bool) -> g -> m Bool Source #

uniformB :: Generator g m => Bool -> g -> m Bool Source #

Variate Double Source # 
Instance details

Defined in System.Random.PCG.Class

Methods

uniform :: Generator g m => g -> m Double Source #

uniformR :: Generator g m => (Double, Double) -> g -> m Double Source #

uniformB :: Generator g m => Double -> g -> m Double Source #

Variate Float Source # 
Instance details

Defined in System.Random.PCG.Class

Methods

uniform :: Generator g m => g -> m Float Source #

uniformR :: Generator g m => (Float, Float) -> g -> m Float Source #

uniformB :: Generator g m => Float -> g -> m Float Source #

Variate Int Source # 
Instance details

Defined in System.Random.PCG.Class

Methods

uniform :: Generator g m => g -> m Int Source #

uniformR :: Generator g m => (Int, Int) -> g -> m Int Source #

uniformB :: Generator g m => Int -> g -> m Int Source #

Variate Int8 Source # 
Instance details

Defined in System.Random.PCG.Class

Methods

uniform :: Generator g m => g -> m Int8 Source #

uniformR :: Generator g m => (Int8, Int8) -> g -> m Int8 Source #

uniformB :: Generator g m => Int8 -> g -> m Int8 Source #

Variate Int16 Source # 
Instance details

Defined in System.Random.PCG.Class

Methods

uniform :: Generator g m => g -> m Int16 Source #

uniformR :: Generator g m => (Int16, Int16) -> g -> m Int16 Source #

uniformB :: Generator g m => Int16 -> g -> m Int16 Source #

Variate Int32 Source # 
Instance details

Defined in System.Random.PCG.Class

Methods

uniform :: Generator g m => g -> m Int32 Source #

uniformR :: Generator g m => (Int32, Int32) -> g -> m Int32 Source #

uniformB :: Generator g m => Int32 -> g -> m Int32 Source #

Variate Int64 Source # 
Instance details

Defined in System.Random.PCG.Class

Methods

uniform :: Generator g m => g -> m Int64 Source #

uniformR :: Generator g m => (Int64, Int64) -> g -> m Int64 Source #

uniformB :: Generator g m => Int64 -> g -> m Int64 Source #

Variate Word Source # 
Instance details

Defined in System.Random.PCG.Class

Methods

uniform :: Generator g m => g -> m Word Source #

uniformR :: Generator g m => (Word, Word) -> g -> m Word Source #

uniformB :: Generator g m => Word -> g -> m Word Source #

Variate Word8 Source # 
Instance details

Defined in System.Random.PCG.Class

Methods

uniform :: Generator g m => g -> m Word8 Source #

uniformR :: Generator g m => (Word8, Word8) -> g -> m Word8 Source #

uniformB :: Generator g m => Word8 -> g -> m Word8 Source #

Variate Word16 Source # 
Instance details

Defined in System.Random.PCG.Class

Methods

uniform :: Generator g m => g -> m Word16 Source #

uniformR :: Generator g m => (Word16, Word16) -> g -> m Word16 Source #

uniformB :: Generator g m => Word16 -> g -> m Word16 Source #

Variate Word32 Source # 
Instance details

Defined in System.Random.PCG.Class

Methods

uniform :: Generator g m => g -> m Word32 Source #

uniformR :: Generator g m => (Word32, Word32) -> g -> m Word32 Source #

uniformB :: Generator g m => Word32 -> g -> m Word32 Source #

Variate Word64 Source # 
Instance details

Defined in System.Random.PCG.Class

Methods

uniform :: Generator g m => g -> m Word64 Source #

uniformR :: Generator g m => (Word64, Word64) -> g -> m Word64 Source #

uniformB :: Generator g m => Word64 -> g -> m Word64 Source #

(Variate a, Variate b) => Variate (a, b) Source # 
Instance details

Defined in System.Random.PCG.Class

Methods

uniform :: Generator g m => g -> m (a, b) Source #

uniformR :: Generator g m => ((a, b), (a, b)) -> g -> m (a, b) Source #

uniformB :: Generator g m => (a, b) -> g -> m (a, b) Source #

(Variate a, Variate b, Variate c) => Variate (a, b, c) Source # 
Instance details

Defined in System.Random.PCG.Class

Methods

uniform :: Generator g m => g -> m (a, b, c) Source #

uniformR :: Generator g m => ((a, b, c), (a, b, c)) -> g -> m (a, b, c) Source #

uniformB :: Generator g m => (a, b, c) -> g -> m (a, b, c) Source #

(Variate a, Variate b, Variate c, Variate d) => Variate (a, b, c, d) Source # 
Instance details

Defined in System.Random.PCG.Class

Methods

uniform :: Generator g m => g -> m (a, b, c, d) Source #

uniformR :: Generator g m => ((a, b, c, d), (a, b, c, d)) -> g -> m (a, b, c, d) Source #

uniformB :: Generator g m => (a, b, c, d) -> g -> m (a, b, c, d) Source #

advance :: PrimMonad m => Word64 -> Gen (PrimState m) -> m () Source #

Advance the given generator n steps in log(n) time. (Note that a "step" is a single random 32-bit (or less) Variate. Data types such as Double or Word64 require two "steps".)

>>> create >>= \g -> replicateM_ 1000 (uniformW32 g) >> uniformW32 g
3725702568
>>> create >>= \g -> replicateM_ 500 (uniformD g) >> uniformW32 g
3725702568
>>> create >>= \g -> advance 1000 g >> uniformW32 g
3725702568

retract :: PrimMonad m => Word64 -> Gen (PrimState m) -> m () Source #

Retract the given generator n steps in log(2^64-n) time. This is just advance (-n).

>>> create >>= \g -> replicateM 3 (uniformW32 g)
[2951688802,2698927131,361549788]
>>> create >>= \g -> retract 1 g >> replicateM 3 (uniformW32 g)
[954135925,2951688802,2698927131]

Seeds

data FrozenGen Source #

Instances
Eq FrozenGen Source # 
Instance details

Defined in System.Random.PCG.Fast.Pure

Data FrozenGen Source # 
Instance details

Defined in System.Random.PCG.Fast.Pure

Methods

gfoldl :: (forall d b. Data d => c (d -> b) -> d -> c b) -> (forall g. g -> c g) -> FrozenGen -> c FrozenGen #

gunfold :: (forall b r. Data b => c (b -> r) -> c r) -> (forall r. r -> c r) -> Constr -> c FrozenGen #

toConstr :: FrozenGen -> Constr #

dataTypeOf :: FrozenGen -> DataType #

dataCast1 :: Typeable t => (forall d. Data d => c (t d)) -> Maybe (c FrozenGen) #

dataCast2 :: Typeable t => (forall d e. (Data d, Data e) => c (t d e)) -> Maybe (c FrozenGen) #

gmapT :: (forall b. Data b => b -> b) -> FrozenGen -> FrozenGen #

gmapQl :: (r -> r' -> r) -> r -> (forall d. Data d => d -> r') -> FrozenGen -> r #

gmapQr :: (r' -> r -> r) -> r -> (forall d. Data d => d -> r') -> FrozenGen -> r #

gmapQ :: (forall d. Data d => d -> u) -> FrozenGen -> [u] #

gmapQi :: Int -> (forall d. Data d => d -> u) -> FrozenGen -> u #

gmapM :: Monad m => (forall d. Data d => d -> m d) -> FrozenGen -> m FrozenGen #

gmapMp :: MonadPlus m => (forall d. Data d => d -> m d) -> FrozenGen -> m FrozenGen #

gmapMo :: MonadPlus m => (forall d. Data d => d -> m d) -> FrozenGen -> m FrozenGen #

Ord FrozenGen Source # 
Instance details

Defined in System.Random.PCG.Fast.Pure

Show FrozenGen Source # 
Instance details

Defined in System.Random.PCG.Fast.Pure

Generic FrozenGen Source # 
Instance details

Defined in System.Random.PCG.Fast.Pure

Associated Types

type Rep FrozenGen :: Type -> Type #

RandomGen FrozenGen Source # 
Instance details

Defined in System.Random.PCG.Fast.Pure

Prim FrozenGen Source # 
Instance details

Defined in System.Random.PCG.Fast.Pure

type Rep FrozenGen Source # 
Instance details

Defined in System.Random.PCG.Fast.Pure

type Rep FrozenGen = D1 (MetaData "FrozenGen" "System.Random.PCG.Fast.Pure" "pcg-random-0.1.3.6-inplace" True) (C1 (MetaCons "F" PrefixI False) (S1 (MetaSel (Nothing :: Maybe Symbol) NoSourceUnpackedness NoSourceStrictness DecidedLazy) (Rec0 Word64)))

save :: PrimMonad m => Gen (PrimState m) -> m FrozenGen Source #

Save the state of a Gen in a Seed.

restore :: PrimMonad m => FrozenGen -> m (Gen (PrimState m)) Source #

Restore a Gen from a Seed.

seed :: FrozenGen Source #

Standard initial seed.

initFrozen :: Word64 -> FrozenGen Source #

Generate a new seed using single Word64.

>>> initFrozen 0
F 1

Type restricted versions

uniform

uniformW8 :: Generator g m => g -> m Word8 Source #

uniformI8 :: Generator g m => g -> m Int8 Source #

uniformI16 :: Generator g m => g -> m Int16 Source #

uniformI32 :: Generator g m => g -> m Int32 Source #

uniformI64 :: Generator g m => g -> m Int64 Source #

uniformF :: Generator g m => g -> m Float Source #

uniformD :: Generator g m => g -> m Double Source #

uniformBool :: Generator g m => g -> m Bool Source #

uniformR

uniformRW8 :: Generator g m => (Word8, Word8) -> g -> m Word8 Source #

uniformRI8 :: Generator g m => (Int8, Int8) -> g -> m Int8 Source #

uniformRI16 :: Generator g m => (Int16, Int16) -> g -> m Int16 Source #

uniformRI32 :: Generator g m => (Int32, Int32) -> g -> m Int32 Source #

uniformRI64 :: Generator g m => (Int64, Int64) -> g -> m Int64 Source #

uniformRF :: Generator g m => (Float, Float) -> g -> m Float Source #

uniformRD :: Generator g m => (Double, Double) -> g -> m Double Source #

uniformRBool :: Generator g m => (Bool, Bool) -> g -> m Bool Source #

uniformB

uniformBW8 :: Generator g m => Word8 -> g -> m Word8 Source #

uniformBI8 :: Generator g m => Int8 -> g -> m Int8 Source #

uniformBI16 :: Generator g m => Int16 -> g -> m Int16 Source #

uniformBI32 :: Generator g m => Int32 -> g -> m Int32 Source #

uniformBI64 :: Generator g m => Int64 -> g -> m Int64 Source #

uniformBF :: Generator g m => Float -> g -> m Float Source #

uniformBD :: Generator g m => Double -> g -> m Double Source #

uniformBBool :: Generator g m => Bool -> g -> m Bool Source #