This is an automated email from the ASF dual-hosted git repository. aherbert pushed a commit to branch master in repository https://gitbox.apache.org/repos/asf/commons-rng.git
commit 4041757bc60cdf20dc9617c1f717a89ecf500aa9 Author: aherbert <aherb...@apache.org> AuthorDate: Mon Nov 11 13:24:04 2019 +0000 Update release notes using the 1.3-release branch. --- RELEASE-NOTES.txt | 205 +++++++++++++++++ .../resources/release-notes/RELEASE-NOTES-1.3.txt | 251 +++++++++++++++++++++ 2 files changed, 456 insertions(+) diff --git a/RELEASE-NOTES.txt b/RELEASE-NOTES.txt index a6a99a0..b429d75 100644 --- a/RELEASE-NOTES.txt +++ b/RELEASE-NOTES.txt @@ -1,4 +1,125 @@ + Apache Commons RNG 1.3 RELEASE NOTES + +The Apache Commons RNG team is pleased to announce the release of Apache Commons RNG 1.3 + +The Apache Commons RNG project provides pure-Java implementation of pseudo-random generators. + +This is a minor release of Apache Commons RNG, containing a few new features and performance improvements. Apache Commons RNG 1.3 contains the following library modules: + commons-rng-client-api (requires Java 6) + commons-rng-core (requires Java 6) + commons-rng-simple (requires Java 6) + commons-rng-sampling (requires Java 6) The code in module 'commons-rng-core' should not be accessed directly by applications as a future release might make use of the JPMS modularization feature available in Java 9+. +Additional code is provided in the following module: + commons-rng-examples (requires Java 9) It is however not part of the official API and no compatibility should be expected in subsequent releases. +It must be noted that, due to the nature of random number generation, some of unit tests are bound to fail with some probability. +The 'maven-surefire-plugin' is configured to re-run tests that fail, and pass the build if they succeed within the allotted number of reruns (the test will be marked as 'flaky' in the report). + +Changes in this version include: + +New features: +o RNG-117: Additional "XorShiRo" family generators. This adds 4 PlusPlus general purpose variants + of existing generators and 3 variants of a large state (1024-bit) generator. +o RNG-117: "RandomSource": Support creating a byte[] seed suitable for the implementing + generator class. +o RNG-116: "RandomSource": Expose interfaces supported by the implementing generator class + with methods isJumpable() and isLongJumpable(). +o RNG-111: New "JenkinsSmallFast32" and "JenkinsSmallFast64" generators. +o RNG-19: "JDKRandomWrapper": Wraps an instance of java.util.Random for use as a + UniformRandomProvider. Can wrap a SecureRandom to use functionality + provided by the JDK for cryptographic random numbers and platform dependent + features such as reading /dev/urandom on Linux. +o RNG-112: New "DotyHumphreySmallFastCounting32" and "DotyHumphreySmallFastCounting64" generators. +o RNG-85: New "MiddleSquareWeylSequence" generator. +o RNG-110: Factory methods for Discrete and Continuous distribution samplers. The factory method + can choose the optimal implementation for the distribution parameters. +o RNG-84: New Permuted Congruential Generators (PCG) from the PCG family. + Added the LCG and MCG 32 bit output versions of the XSH-RS and XSH-RR operations, + along with the 64 bit RXS-M-XS edition. Thanks to Abhishek Singh Dhadwal. +o RNG-102: New "SharedStateSampler" interface to allow a sampler to create a new instance with + a new source of randomness. Any pre-computed state can be shared between the samplers. +o RNG-108: Update "SeedFactory" to improve performance. +o RNG-99: New "AliasMethodDiscreteSampler" that can sample from any discrete distribution defined + by an array of probabilities. Set-up is O(n) time and sampling is O(1) time. +o RNG-100: New "GuideTableDiscreteSampler" that can sample from any discrete distribution defined + by an array of probabilities. +o RNG-98: New "LongJumpableUniformRandomProvider" interface extends JumpableUniformRandomProvider + with a long jump method. +o RNG-97: New "JumpableUniformRandomProvider" interface provides a jump method that advances + the generator a large number of steps of the output sequence in a single operation. A + copy is returned allowing repeat invocations to create a series of generators + for use in parallel computations. +o RNG-101: New "MarsagliaTsangWangDiscreteSampler" that provides samples from a discrete + distribution stored as a look-up table using a single random integer deviate. Computes + tables for the Poisson or Binomial distributions, and generically any provided discrete + probability distribution. +o RNG-91: New "KempSmallMeanPoissonSampler" that provides Poisson samples using only 1 random + deviate per sample. This algorithm outperforms the SmallMeanPoissonSampler + when the generator is slow. +o RNG-70: New "XorShiRo" family of generators. This adds 6 new general purpose generators with + different periods and 4 related generators with improved performance for floating-point + generation. +o RNG-82: New "XorShift1024StarPhi" generator. This is a modified implementation of XorShift1024Star + that improves randomness of the output sequence. The XOR_SHIFT_1024_S enum has been marked + deprecated as a note to users to switch to the new XOR_SHIFT_1024_S_PHI version. +o RNG-78: New "ThreadLocalRandomSource" class provides thread safe access to random generators. +o RNG-79: Benchmark methods for producing nextDouble and nextFloat. +o RNG-72: Add new JMH benchmark ConstructionPerformance. +o RNG-71: Validate parameters for the distribution samplers. +o RNG-67: Instructions for how to build and run the examples-stress code. +o RNG-69: New "GeometricSampler" class. + +Fixed Bugs: +o RNG-115: "JDKRandom": Fixed the restore state method to function when the instance has not + previously been used to save state. +o RNG-96: "AhrensDieterMarsagliaTsangGammaSampler": Fix parameter interpretation so that alpha + is a 'shape' parameter and theta is a 'scale' parameter. This reverses the functionality + of the constructor parameters from previous versions. Dependent code should be checked + and parameters reversed to ensure existing functionality is maintained. +o RNG-93: "SmallMeanPoissonSampler": Requires the Poisson probability for p(x=0) to be positive + setting an upper bound on the mean of approximately 744.44. +o RNG-92: "LargeMeanPoissonSampler": Requires mean >= 1. + +Changes: +o RNG-122: "SeedFactory": Use XoRoShiRo1024PlusPlus as the default source of randomness. +o RNG-121: "ChengBetaSampler": Algorithms for different distribution parameters have + been delegated to specialised classes. +o RNG-120: Update security of serialization code for java.util.Random instances. Implement + look-ahead deserialization or remove the use of ObjectInputStream.readObject(). +o RNG-76: "SplitMix64": Added primitive long constructor. +o RNG-119: Add LongJumpable support to XoShiRo generators previously only supporting Jumpable. +o RNG-114: "ListSampler": Select the shuffle algorithm based on the list type. This improves + performance for non-RandomAccess lists such as LinkedList. +o RNG-109: "DiscreteProbabilityCollectionSampler": Use a faster enumerated probability + distribution sampler to replace the binary search algorithm. +o RNG-90: "BaseProvider": Updated to use faster algorithm for nextInt(int). +o RNG-95: "DiscreteUniformSampler": Updated to use faster algorithms for generation of ranges. +o RNG-106: Ensure SeedFactory produces non-zero seed arrays. This avoids invalid seeding of + generators that cannot recover from a seed of zeros. +o RNG-103: "LargeMeanPoissonSampler: Switch from SmallMeanPoissonSampler to use + KempSmallMeanPoissonSampler for the fractional mean sample. +o RNG-75: "RandomSource.create(...)": Refactor internal components to allow custom seeding routines + per random source. Improvements were made to the speed of creating generators with small + seeds. +o RNG-77: "NumberFactory": Improve performance of int and long array to/from byte array conversions. +o RNG-88: Update the generation performance JMH benchmarks to have a reference baseline. +o RNG-87: "MultiplyWithCarry256": Performance improvement by advancing state one step per sample. +o RNG-81: "NumberFactory": Evenly sample all dyadic rationals between 0 and 1. +o RNG-73: Add the methods used from UniformRandomProvider to each sampler in the sampling module. +o RNG-74: "DiscreteUniformSampler": Algorithms for small and large integer ranges have + been delegated to specialised classes. +o RNG-68: "AhrensDieterMarsagliaTsangGammaSampler": Algorithms for small and large theta have + been delegated to specialised classes. + + +For complete information on Apache Commons RNG, including instructions on how to submit bug reports, +patches, or suggestions for improvement, see the Apache Commons RNG website: + +https://commons.apache.org/proper/commons-rng/ + + +============================================================================= + Apache Commons RNG 1.2 RELEASE NOTES The Apache Commons RNG team is pleased to announce the release of Apache Commons RNG 1.2 @@ -44,3 +165,87 @@ patches, or suggestions for improvement, see the Apache Commons RNG website: https://commons.apache.org/proper/commons-rng/ +============================================================================= + + Apache Commons RNG 1.1 RELEASE NOTES + +The Apache Commons RNG team is pleased to announce the release of Apache Commons RNG 1.1 + +The Apache Commons RNG project provides pure-Java implementation of pseudo-random generators. + +This is a minor release of Apache Commons RNG, containing a few new features and performance improvements. +Apache Commons RNG 1.1 contains the following library modules: + commons-rng-client-api (requires Java 6) + commons-rng-core (requires Java 6) + commons-rng-simple (requires Java 6) + commons-rng-sampling (requires Java 6) +The code in module 'commons-rng-core' should not be accessed directly by applications as a future release might make use of the JPMS modularization feature available in Java 9+. +Additional code is provided in the following module: + commons-rng-examples (requires Java 9) It is however not part of the official API and no compatibility should be expected in subsequent releases. +We would like to also note that unit tests in module 'commons-rng-sampling' are bound to fail with some probability; this is expected due to the nature of random number generation. +The 'maven-surefire-plugin' can be configured to re-run tests that fail and pass the build if they succeed (the test will be marked as 'flaky' in the report). + +Changes in this version include: + +New features: +o RNG-37: Implementation of the "Ziggurat" algorithm for Gaussian sampling. +o RNG-47: "DiscreteProbabilityCollectionSampler": Sampling from a collection of items + with user-defined probabilities (feature ported from "Commons Math"). +o RNG-43: "LogNormalSampler" with user-defined underlying "NormalizedGaussianSampler". +o RNG-39: "UnitSphereSampler": generate random vectors isotropically located + on the surface of a sphere (feature ported from "Commons Math"). +o RNG-36: "MarsagliaNormalizedGaussianSampler": Faster variation of the + Box-Muller algorithm. + This version is used within "AhrensDieterMarsagliaTsangGammaSampler" + "MarsagliaLogNormalSampler" and "PoissonSampler" (generated sequences + will thus differ from those generated by version 1.0 of the library). +o RNG-35: New generic "GaussianSampler" based on "NormalizedGaussianSampler" + marker interface. + Implementation of "BoxMullerNormalizedGaussianSampler" deprecates + "BoxMullerGaussianSampler". + +Fixed Bugs: +o RNG-53: Class "SamplerBase" has been deprecated. It was meant for internal use + only but, through inheritance, it allows incorrect usage of the sampler + classes. + +Changes: +o RNG-50: "PoissonSampler": Algorithms for small mean and large mean have + been separated into dedicated classes. Cache precomputation has + been disabled as it is only marginally used and is a performance + hit for small sampling sets. Thanks to Alex D. Herbert. +o RNG-42: Use "ZigguratNormalizedGaussianSampler" within the library. +o RNG-46: Following RNG-43, "BoxMullerLogNormalSampler" has been deprecated. + + +For complete information on Apache Commons RNG, including instructions on how to submit bug reports, +patches, or suggestions for improvement, see the Apache Commons RNG website: + +https://commons.apache.org/proper/commons-rng/ + + +============================================================================= + + Apache Commons RNG 1.0 RELEASE NOTES + +The Apache Commons RNG team is pleased to announce the release of Apache Commons RNG 1.0 + +The Apache Commons RNG project provides pure-Java implementation of pseudo-random generators. + +This is the first release of Apache Commons RNG. +Apache Commons RNG 1.0 contains the following modules: + commons-rng-client-api (requires Java 6) + commons-rng-core (requires Java 6) + commons-rng-simple (requires Java 6) + commons-rng-sampling (requires Java 6) + commons-rng-jmh (requires Java 6) + commons-rng-examples (requires Java 7) + +No changes defined in this version. + +For complete information on Apache Commons RNG, including instructions on how to submit bug reports, +patches, or suggestions for improvement, see the Apache Commons RNG website: + +https://commons.apache.org/proper/commons-rng/ + + diff --git a/src/site/resources/release-notes/RELEASE-NOTES-1.3.txt b/src/site/resources/release-notes/RELEASE-NOTES-1.3.txt new file mode 100644 index 0000000..b429d75 --- /dev/null +++ b/src/site/resources/release-notes/RELEASE-NOTES-1.3.txt @@ -0,0 +1,251 @@ + + Apache Commons RNG 1.3 RELEASE NOTES + +The Apache Commons RNG team is pleased to announce the release of Apache Commons RNG 1.3 + +The Apache Commons RNG project provides pure-Java implementation of pseudo-random generators. + +This is a minor release of Apache Commons RNG, containing a few new features and performance improvements. Apache Commons RNG 1.3 contains the following library modules: + commons-rng-client-api (requires Java 6) + commons-rng-core (requires Java 6) + commons-rng-simple (requires Java 6) + commons-rng-sampling (requires Java 6) The code in module 'commons-rng-core' should not be accessed directly by applications as a future release might make use of the JPMS modularization feature available in Java 9+. +Additional code is provided in the following module: + commons-rng-examples (requires Java 9) It is however not part of the official API and no compatibility should be expected in subsequent releases. +It must be noted that, due to the nature of random number generation, some of unit tests are bound to fail with some probability. +The 'maven-surefire-plugin' is configured to re-run tests that fail, and pass the build if they succeed within the allotted number of reruns (the test will be marked as 'flaky' in the report). + +Changes in this version include: + +New features: +o RNG-117: Additional "XorShiRo" family generators. This adds 4 PlusPlus general purpose variants + of existing generators and 3 variants of a large state (1024-bit) generator. +o RNG-117: "RandomSource": Support creating a byte[] seed suitable for the implementing + generator class. +o RNG-116: "RandomSource": Expose interfaces supported by the implementing generator class + with methods isJumpable() and isLongJumpable(). +o RNG-111: New "JenkinsSmallFast32" and "JenkinsSmallFast64" generators. +o RNG-19: "JDKRandomWrapper": Wraps an instance of java.util.Random for use as a + UniformRandomProvider. Can wrap a SecureRandom to use functionality + provided by the JDK for cryptographic random numbers and platform dependent + features such as reading /dev/urandom on Linux. +o RNG-112: New "DotyHumphreySmallFastCounting32" and "DotyHumphreySmallFastCounting64" generators. +o RNG-85: New "MiddleSquareWeylSequence" generator. +o RNG-110: Factory methods for Discrete and Continuous distribution samplers. The factory method + can choose the optimal implementation for the distribution parameters. +o RNG-84: New Permuted Congruential Generators (PCG) from the PCG family. + Added the LCG and MCG 32 bit output versions of the XSH-RS and XSH-RR operations, + along with the 64 bit RXS-M-XS edition. Thanks to Abhishek Singh Dhadwal. +o RNG-102: New "SharedStateSampler" interface to allow a sampler to create a new instance with + a new source of randomness. Any pre-computed state can be shared between the samplers. +o RNG-108: Update "SeedFactory" to improve performance. +o RNG-99: New "AliasMethodDiscreteSampler" that can sample from any discrete distribution defined + by an array of probabilities. Set-up is O(n) time and sampling is O(1) time. +o RNG-100: New "GuideTableDiscreteSampler" that can sample from any discrete distribution defined + by an array of probabilities. +o RNG-98: New "LongJumpableUniformRandomProvider" interface extends JumpableUniformRandomProvider + with a long jump method. +o RNG-97: New "JumpableUniformRandomProvider" interface provides a jump method that advances + the generator a large number of steps of the output sequence in a single operation. A + copy is returned allowing repeat invocations to create a series of generators + for use in parallel computations. +o RNG-101: New "MarsagliaTsangWangDiscreteSampler" that provides samples from a discrete + distribution stored as a look-up table using a single random integer deviate. Computes + tables for the Poisson or Binomial distributions, and generically any provided discrete + probability distribution. +o RNG-91: New "KempSmallMeanPoissonSampler" that provides Poisson samples using only 1 random + deviate per sample. This algorithm outperforms the SmallMeanPoissonSampler + when the generator is slow. +o RNG-70: New "XorShiRo" family of generators. This adds 6 new general purpose generators with + different periods and 4 related generators with improved performance for floating-point + generation. +o RNG-82: New "XorShift1024StarPhi" generator. This is a modified implementation of XorShift1024Star + that improves randomness of the output sequence. The XOR_SHIFT_1024_S enum has been marked + deprecated as a note to users to switch to the new XOR_SHIFT_1024_S_PHI version. +o RNG-78: New "ThreadLocalRandomSource" class provides thread safe access to random generators. +o RNG-79: Benchmark methods for producing nextDouble and nextFloat. +o RNG-72: Add new JMH benchmark ConstructionPerformance. +o RNG-71: Validate parameters for the distribution samplers. +o RNG-67: Instructions for how to build and run the examples-stress code. +o RNG-69: New "GeometricSampler" class. + +Fixed Bugs: +o RNG-115: "JDKRandom": Fixed the restore state method to function when the instance has not + previously been used to save state. +o RNG-96: "AhrensDieterMarsagliaTsangGammaSampler": Fix parameter interpretation so that alpha + is a 'shape' parameter and theta is a 'scale' parameter. This reverses the functionality + of the constructor parameters from previous versions. Dependent code should be checked + and parameters reversed to ensure existing functionality is maintained. +o RNG-93: "SmallMeanPoissonSampler": Requires the Poisson probability for p(x=0) to be positive + setting an upper bound on the mean of approximately 744.44. +o RNG-92: "LargeMeanPoissonSampler": Requires mean >= 1. + +Changes: +o RNG-122: "SeedFactory": Use XoRoShiRo1024PlusPlus as the default source of randomness. +o RNG-121: "ChengBetaSampler": Algorithms for different distribution parameters have + been delegated to specialised classes. +o RNG-120: Update security of serialization code for java.util.Random instances. Implement + look-ahead deserialization or remove the use of ObjectInputStream.readObject(). +o RNG-76: "SplitMix64": Added primitive long constructor. +o RNG-119: Add LongJumpable support to XoShiRo generators previously only supporting Jumpable. +o RNG-114: "ListSampler": Select the shuffle algorithm based on the list type. This improves + performance for non-RandomAccess lists such as LinkedList. +o RNG-109: "DiscreteProbabilityCollectionSampler": Use a faster enumerated probability + distribution sampler to replace the binary search algorithm. +o RNG-90: "BaseProvider": Updated to use faster algorithm for nextInt(int). +o RNG-95: "DiscreteUniformSampler": Updated to use faster algorithms for generation of ranges. +o RNG-106: Ensure SeedFactory produces non-zero seed arrays. This avoids invalid seeding of + generators that cannot recover from a seed of zeros. +o RNG-103: "LargeMeanPoissonSampler: Switch from SmallMeanPoissonSampler to use + KempSmallMeanPoissonSampler for the fractional mean sample. +o RNG-75: "RandomSource.create(...)": Refactor internal components to allow custom seeding routines + per random source. Improvements were made to the speed of creating generators with small + seeds. +o RNG-77: "NumberFactory": Improve performance of int and long array to/from byte array conversions. +o RNG-88: Update the generation performance JMH benchmarks to have a reference baseline. +o RNG-87: "MultiplyWithCarry256": Performance improvement by advancing state one step per sample. +o RNG-81: "NumberFactory": Evenly sample all dyadic rationals between 0 and 1. +o RNG-73: Add the methods used from UniformRandomProvider to each sampler in the sampling module. +o RNG-74: "DiscreteUniformSampler": Algorithms for small and large integer ranges have + been delegated to specialised classes. +o RNG-68: "AhrensDieterMarsagliaTsangGammaSampler": Algorithms for small and large theta have + been delegated to specialised classes. + + +For complete information on Apache Commons RNG, including instructions on how to submit bug reports, +patches, or suggestions for improvement, see the Apache Commons RNG website: + +https://commons.apache.org/proper/commons-rng/ + + +============================================================================= + + Apache Commons RNG 1.2 RELEASE NOTES + +The Apache Commons RNG team is pleased to announce the release of Apache Commons RNG 1.2 + +The Apache Commons RNG project provides pure-Java implementation of pseudo-random generators. + +This is a minor release of Apache Commons RNG, containing a few new features and performance improvements. Apache Commons RNG 1.2 contains the following library modules: + commons-rng-client-api (requires Java 6) + commons-rng-core (requires Java 6) + commons-rng-simple (requires Java 6) + commons-rng-sampling (requires Java 6) The code in module 'commons-rng-core' should not be accessed directly by applications as a future release might make use of the JPMS modularization feature available in Java 9+. +Additional code is provided in the following module: + commons-rng-examples (requires Java 9) It is however not part of the official API and no compatibility should be expected in subsequent releases. +It must be noted that, due to the nature of random number generation, some of unit tests are bound to fail with some probability. +The 'maven-surefire-plugin' is configured to re-run tests that fail, and pass the build if they succeed within the allotted number of reruns (the test will be marked as 'flaky' in the report). + +Changes in this version include: + +New features: +o RNG-62: New "CombinationSampler" class. Thanks to Alex D. Herbert. + +Fixed Bugs: +o RNG-59: Use JDK's "SecureRandom" to seed the "SeedFactory". +o RNG-56: "ZigguratNormalizedGaussianSampler": Missing statements in least used branch. +o RNG-55: "UnitSphereSampler": Prevent returning NaN components and forbid + negative dimension. Thanks to Alex D. Herbert. + +Changes: +o RNG-63: "NumberFactory": Some methods have become obsolete following RNG-57. +o RNG-64: "PermutationSampler" and "CombinationSampler" shared code moved to a utility class. Thanks to Alex D. Herbert. +o RNG-61: "PermutationSampler": Performance improvement. Thanks to Alex D. Herbert. +o RNG-57: Cache for using up all the bits provided by the underlying source of randomness. Thanks to Alex D. Herbert. +o RNG-60: Use random seeds for unit testing. +o RNG-52: Set conservative upper bound in "LargePoissonSampler" to avoid truncation. +o RNG-58: Allow part of RNG state to be contained in base classes, e.g. to enable + caching in common code (see RNG-57). +o RNG-51: "PoissonSampler": Performance improvement. Thanks to Alex D. Herbert. + + +For complete information on Apache Commons RNG, including instructions on how to submit bug reports, +patches, or suggestions for improvement, see the Apache Commons RNG website: + +https://commons.apache.org/proper/commons-rng/ + + +============================================================================= + + Apache Commons RNG 1.1 RELEASE NOTES + +The Apache Commons RNG team is pleased to announce the release of Apache Commons RNG 1.1 + +The Apache Commons RNG project provides pure-Java implementation of pseudo-random generators. + +This is a minor release of Apache Commons RNG, containing a few new features and performance improvements. +Apache Commons RNG 1.1 contains the following library modules: + commons-rng-client-api (requires Java 6) + commons-rng-core (requires Java 6) + commons-rng-simple (requires Java 6) + commons-rng-sampling (requires Java 6) +The code in module 'commons-rng-core' should not be accessed directly by applications as a future release might make use of the JPMS modularization feature available in Java 9+. +Additional code is provided in the following module: + commons-rng-examples (requires Java 9) It is however not part of the official API and no compatibility should be expected in subsequent releases. +We would like to also note that unit tests in module 'commons-rng-sampling' are bound to fail with some probability; this is expected due to the nature of random number generation. +The 'maven-surefire-plugin' can be configured to re-run tests that fail and pass the build if they succeed (the test will be marked as 'flaky' in the report). + +Changes in this version include: + +New features: +o RNG-37: Implementation of the "Ziggurat" algorithm for Gaussian sampling. +o RNG-47: "DiscreteProbabilityCollectionSampler": Sampling from a collection of items + with user-defined probabilities (feature ported from "Commons Math"). +o RNG-43: "LogNormalSampler" with user-defined underlying "NormalizedGaussianSampler". +o RNG-39: "UnitSphereSampler": generate random vectors isotropically located + on the surface of a sphere (feature ported from "Commons Math"). +o RNG-36: "MarsagliaNormalizedGaussianSampler": Faster variation of the + Box-Muller algorithm. + This version is used within "AhrensDieterMarsagliaTsangGammaSampler" + "MarsagliaLogNormalSampler" and "PoissonSampler" (generated sequences + will thus differ from those generated by version 1.0 of the library). +o RNG-35: New generic "GaussianSampler" based on "NormalizedGaussianSampler" + marker interface. + Implementation of "BoxMullerNormalizedGaussianSampler" deprecates + "BoxMullerGaussianSampler". + +Fixed Bugs: +o RNG-53: Class "SamplerBase" has been deprecated. It was meant for internal use + only but, through inheritance, it allows incorrect usage of the sampler + classes. + +Changes: +o RNG-50: "PoissonSampler": Algorithms for small mean and large mean have + been separated into dedicated classes. Cache precomputation has + been disabled as it is only marginally used and is a performance + hit for small sampling sets. Thanks to Alex D. Herbert. +o RNG-42: Use "ZigguratNormalizedGaussianSampler" within the library. +o RNG-46: Following RNG-43, "BoxMullerLogNormalSampler" has been deprecated. + + +For complete information on Apache Commons RNG, including instructions on how to submit bug reports, +patches, or suggestions for improvement, see the Apache Commons RNG website: + +https://commons.apache.org/proper/commons-rng/ + + +============================================================================= + + Apache Commons RNG 1.0 RELEASE NOTES + +The Apache Commons RNG team is pleased to announce the release of Apache Commons RNG 1.0 + +The Apache Commons RNG project provides pure-Java implementation of pseudo-random generators. + +This is the first release of Apache Commons RNG. +Apache Commons RNG 1.0 contains the following modules: + commons-rng-client-api (requires Java 6) + commons-rng-core (requires Java 6) + commons-rng-simple (requires Java 6) + commons-rng-sampling (requires Java 6) + commons-rng-jmh (requires Java 6) + commons-rng-examples (requires Java 7) + +No changes defined in this version. + +For complete information on Apache Commons RNG, including instructions on how to submit bug reports, +patches, or suggestions for improvement, see the Apache Commons RNG website: + +https://commons.apache.org/proper/commons-rng/ + +