mgo
Genetic algorithm library
A software library for purely functional genetic algorithms with an emphasis on multi-objective optimization and robustness to noisy fitness functions
Purely functional genetic algorithms for multi-objective optimisation
72 stars
14 watching
4 forks
Language: Scala
last commit: 2 months ago functional-programminggenetic-algorithmhyperparameter-optimizationhyperparameter-tuninghyperparametersoptimisationparameter-tuningscala
Related projects:
Repository | Description | Stars |
---|---|---|
| A Python library implementing a genetic algorithm for optimizing machine learning algorithms and neural networks. | 1,905 |
| An implementation of evolutionary optimization algorithms in Common Lisp | 63 |
| A Golang library implementing a genetic algorithm with configurable simulator, selector, and mating components. | 220 |
| An implementation of a genetic algorithm in MATLAB to optimize solutions to optimization problems. | 196 |
| A library that implements a genetic algorithm optimization tool | 200 |
| A collection of stochastic optimization algorithms for large-scale machine learning problems | 221 |
| A Matlab implementation of a genetic algorithm to find optimal solutions to optimization problems | 422 |
| A comprehensive Java library of local search algorithms with customization and hybridization capabilities | 60 |
| A collection of unconstrained optimization algorithms implemented in MATLAB | 67 |
| A library that provides an implementation of a genetic algorithm in Ada | 2 |
| An evolutionary optimization library that provides multiple algorithms and interfaces to solve complex optimization problems using genetic and other optimization techniques. | 890 |
| A C# library for solving optimization problems using genetic algorithms | 1,290 |
| A demonstration of a simple genetic algorithm in Ruby for solving optimization problems | 9 |
| A framework for executing genetic algorithms in Rust | 75 |
| A Rust-based framework for implementing genetic algorithms in optimization and search problems. | 176 |