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Name: ghc-random | Distribution: SUSE Linux Enterprise 15 |
Version: 1.2.1.1 | Vendor: SUSE LLC <https://www.suse.com/> |
Release: 150500.3.3.2 | Build date: Mon Jan 29 15:50:28 2024 |
Group: Unspecified | Build host: xinomavro |
Size: 1671422 | Source RPM: ghc-random-1.2.1.1-150500.3.3.2.src.rpm |
Packager: https://www.suse.com/ | |
Url: https://hackage.haskell.org/package/random | |
Summary: Pseudo-random number generation |
This package provides basic pseudo-random number generation, including the ability to split random number generators. == "System.Random": pure pseudo-random number interface In pure code, use 'System.Random.uniform' and 'System.Random.uniformR' from "System.Random" to generate pseudo-random numbers with a pure pseudo-random number generator like 'System.Random.StdGen'. As an example, here is how you can simulate rolls of a six-sided die using 'System.Random.uniformR': >>> let roll = uniformR (1, 6) :: RandomGen g => g -> (Word, g) >>> let rolls = unfoldr (Just . roll) :: RandomGen g => g -> [Word] >>> let pureGen = mkStdGen 42 >>> take 10 (rolls pureGen) :: [Word] [1,1,3,2,4,5,3,4,6,2] See "System.Random" for more details. == "System.Random.Stateful": monadic pseudo-random number interface In monadic code, use 'System.Random.Stateful.uniformM' and 'System.Random.Stateful.uniformRM' from "System.Random.Stateful" to generate pseudo-random numbers with a monadic pseudo-random number generator, or using a monadic adapter. As an example, here is how you can simulate rolls of a six-sided die using 'System.Random.Stateful.uniformRM': >>> let rollM = uniformRM (1, 6) :: StatefulGen g m => g -> m Word >>> let pureGen = mkStdGen 42 >>> runStateGen_ pureGen (replicateM 10 . rollM) :: [Word] [1,1,3,2,4,5,3,4,6,2] The monadic adapter 'System.Random.Stateful.runStateGen_' is used here to lift the pure pseudo-random number generator 'pureGen' into the 'System.Random.Stateful.StatefulGen' context. The monadic interface can also be used with existing monadic pseudo-random number generators. In this example, we use the one provided in the <https://hackage.haskell.org/package/mwc-random mwc-random> package: >>> import System.Random.MWC as MWC >>> let rollM = uniformRM (1, 6) :: StatefulGen g m => g -> m Word >>> monadicGen <- MWC.create >>> replicateM 10 (rollM monadicGen) :: IO [Word] [2,3,6,6,4,4,3,1,5,4] See "System.Random.Stateful" for more details.
BSD-3-Clause
* Sat Sep 30 2023 [email protected] - Update random to version 1.2.1.1 revision 1. Upstream has revised the Cabal build instructions on Hackage. * Mon May 09 2022 [email protected] - Update random to version 1.2.1.1. Upstream has not updated the file "CHANGELOG.md" since the last release. * Mon Sep 20 2021 [email protected] - Update random to version 1.2.1. [#] 1.2.1 * Fix support for ghc-9.2 [#99](https://github.com/haskell/random/pull/99) * Fix performance regression for ghc-9.0 [#101](https://github.com/haskell/random/pull/101) * Add `uniformEnumM` and `uniformEnumRM` * Add `initStdGen` [#103](https://github.com/haskell/random/pull/103) * Add `globalStdGen` [#117](https://github.com/haskell/random/pull/117) * Add `runStateGenST_` * Ensure that default implementation of `ShortByteString` generation uses unpinned memory. [#116](https://github.com/haskell/random/pull/116) * Fix [#54](https://github.com/haskell/random/issues/54) with [#68](https://github.com/haskell/random/pull/68) - if exactly one value in the range of floating point is infinite, then `uniformRM`/`randomR` returns that value. * Add default implementation of `uniformM` that uses `Generic` [#70](https://github.com/haskell/random/pull/70) * `Random` instance for `CBool` [#77](https://github.com/haskell/random/pull/77) * Addition of `TGen` and `TGenM` [#95](https://github.com/haskell/random/pull/95) * Addition of tuple instances for `Random` up to 7-tuple [#72](https://github.com/haskell/random/pull/72) * Thu Jul 15 2021 [email protected] - Update random to version 1.2.0 revision 6. Upstream has revised the Cabal build instructions on Hackage. * Sat Jul 10 2021 [email protected] - Update random to version 1.2.0 revision 5. [#] 1.2.0 1. Breaking change which mostly maintains backwards compatibility, see "Breaking Changes" below. 2. Support for monadic generators e.g. [mwc-random](https://hackage.haskell.org/package/mwc-random). 3. Monadic adapters for pure generators (providing a uniform monadic interface to pure and monadic generators). 4. Faster in all cases except one by more than x18 (N.B. x18 not 18%) and some cases (depending on the type) faster by more than x1000 - see below for benchmarks. 5. Passes a large number of random number test suites: * [dieharder](http://webhome.phy.duke.edu/~rgb/General/dieharder.php "venerable") * [TestU01 (SmallCrush, Crush, BigCrush)](http://simul.iro.umontreal.ca/testu01/tu01.html "venerable") * [PractRand](http://pracrand.sourceforge.net/ "active") * [gjrand](http://gjrand.sourceforge.net/ "active") * See [random-quality](https://github.com/tweag/random-quality) for details on how to do this yourself. 6. Better quality split as judged by these [tests](https://www.cambridge.org/core/journals/journal-of-functional-programming/article/evaluation-of-splittable-pseudorandom-generators/3EBAA9F14939C5BB5560E32D1A132637). Again see [random-quality](https://github.com/tweag/random-quality) for details on how to do this yourself. 7. Unbiased generation of ranges. 8. Updated tests and benchmarks. 9. [Continuous integration](https://travis-ci.org/github/haskell/random). [#]## Breaking Changes Version 1.2.0 introduces these breaking changes: * requires `base >= 4.8` (GHC-7.10) * `StdGen` is no longer an instance of `Read` * `randomIO` and `randomRIO` were extracted from the `Random` class into separate functions In addition, there may be import clashes with new functions, e.g. `uniform` and `uniformR`. [#]## Deprecations Version 1.2.0 introduces `genWord64`, `genWord32` and similar methods to the `RandomGen` class. The significantly slower method `next` and its companion `genRange` are now deprecated. [#]## Issues Addressed Issue Number | Description | Comment - -------------|-------------|-------- [25](https://github.com/haskell/random/issues/25) | The seeds generated by split are not independent | Fixed: changed algorithm to SplitMix, which provides a robust split operation [26](https://github.com/haskell/random/issues/26) | Add Random instances for tuples | Addressed: added `Uniform` instances for up to 6-tuples [44](https://github.com/haskell/random/issues/44) | Add Random instance for Natural | Addressed: added UniformRange instance for Natural [51](https://github.com/haskell/random/issues/51) | Very low throughput | Fixed: see benchmarks below [53](https://github.com/haskell/random/issues/53) | incorrect distribution of randomR for floating-point numbers | (\*) [55](https://github.com/haskell/random/issues/55) | System/Random.hs:43:1: warning: [-Wtabs] | Fixed: No more tabs [58](https://github.com/haskell/random/issues/58) | Why does random for Float and Double produce exactly 24 or 53 bits? | (\*) [59](https://github.com/haskell/random/issues/59) | read :: StdGen fails for strings longer than 6 | Addressed: StdGen is no longer an instance of Read [#]### Comments (\*) 1.2 samples more bits but does not sample every `Float` or `Double`. There are methods to do this but they have some downsides; see [here](https://github.com/idontgetoutmuch/random/issues/105) for a fuller discussion. [#]# Benchmarks Here are some benchmarks run on a 3.1 GHz Intel Core i7. The full benchmarks can be run using e.g. `stack bench`. The benchmarks are measured in milliseconds per 100,000 generations. In some cases, the performance is over x1000 times better; the minimum performance increase for the types listed below is more than x36. Name | 1.1 Mean | 1.2 Mean - -----------|----------|---------- Float | 27.819 | 0.305 Double | 50.644 | 0.328 Integer | 42.332 | 0.332 Word | 40.739 | 0.027 Int | 43.847 | 0.028 Char | 17.009 | 0.462 Bool | 17.542 | 0.027 * Thu Dec 17 2020 [email protected] - disable %{ix86} build * Mon Aug 31 2020 [email protected] - Update random to version 1.1 revision 1. Upstream has revised the Cabal build instructions on Hackage. * Tue Aug 18 2020 [email protected] - Replace %setup -q with the more modern %autosetup macro. * Tue Jun 16 2020 [email protected] - Re-generate file with latest version of spec-cleaner. * Fri Nov 08 2019 [email protected] - Drop obsolete group attributes. * Sat Oct 20 2018 [email protected] - Use https URL to refer to bugs.opensuse.org. * Wed Jul 18 2018 [email protected] - Cosmetic: replace tabs with blanks, strip trailing white space, and update copyright headers with spec-cleaner. * Wed May 16 2018 [email protected] - Prefer the new %license attribute over %doc. * Thu Aug 03 2017 [email protected] - Updated with latest spec-cleaner version 0.9.8-8-geadfbbf. * Thu Jan 26 2017 [email protected] - Update to version 1.1 revision 1 with cabal2obs. * Sun Jul 10 2016 [email protected] - Update to version 1.1 revision 0 with cabal2obs. * Thu Apr 09 2015 [email protected] - update to 1.1 * breaking change to `randomIValInteger` to improve RNG quality and performance * correct documentation about generated range of Int32 sized values of type Int * fix memory leaks by using strict fields and strict atomicModifyIORef' * support for base < 4.6 (which doesnt provide strict atomicModifyIORef') * fix C type in test suite https://github.com/haskell/random/pull/9
/usr/lib64/ghc-8.10.7/random-1.2.1.1 /usr/lib64/ghc-8.10.7/random-1.2.1.1/libHSrandom-1.2.1.1-9f2WqozEL1a6Li1yjXx21b-ghc8.10.7.so /usr/share/licenses/ghc-random /usr/share/licenses/ghc-random/LICENSE
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