Genetic.js
Advanced genetic and evolutionary algorithm library written in Javascript by Sub Protocol.
Fork
This fork by framp removes the automatic spinning of a new web worker.
I believe spinning a new web worker should be responsibility of the user and coupling it to an optimisation library just worsen the experience for developers. This fork is perfectly compatible with web workers - you just need to manage it yourself.
Rational
The existing Javascript GA/EP library landscape could collectively be summed up as, meh. All that I required to take over the world was a lightweight, performant, feature-rich, nodejs + browser compatible, unit tested, and easily hackable GA/EP library.
Until now, no such thing existed. Now you can have my cake, and optimize it too. Is it perfect? Probably. Regardless, this library is my gift to you.
Have fun optimizing all your optimizations!
Examples
Install
npm install genetic-js
Population Functions
The genetic-js interface exposes a few simple concepts and primitives, you just fill in the details/features you want to use.
Function | Return Type | Required | Description |
---|---|---|---|
seed() | Individual | Yes | Called to create an individual, can be of any type (int, float, string, array, object) |
fitness(individual) | Float | Yes | Computes a fitness score for an individual |
mutate(individual) | Individual | Optional | Called when an individual has been selected for mutation |
crossover(mother, father) | [Son, Daughter] | Optional | Called when two individuals are selected for mating. Two children should always returned |
optimize(fitness, fitness) | Boolean | Yes | Determines if the first fitness score is better than the second. See Optimizer section below |
select1(population) | Individual | Yes | See Selection section below |
select2(population) | Individual | Optional | Selects a pair of individuals from a population. Selection |
generation(pop, gen, stats) | Boolean | Optional | Called for each generation. Return false to terminate end algorithm (ie- if goal state is reached) |
notification(pop, gen, stats, isFinished) | Void | Optional | Runs in the calling context. |
Optimizer
The optimizer specifies how to rank individuals against each other based on an arbitrary fitness score. For example, minimizing the sum of squared error for a regression curve Genetic.Optimize.Minimize
would be used, as a smaller fitness score is indicative of better fit.
Optimizer | Description |
---|---|
Genetic.Optimize.Minimizer | The smaller fitness score of two individuals is best |
Genetic.Optimize.Maximizer | The greater fitness score of two individuals is best |
Selection
An algorithm can be either genetic or evolutionary depending on which selection operations are used. An algorithm is evolutionary if it only uses a Single (select1) operator. If both Single and Pair-wise operations are used (and if crossover is implemented) it is genetic.
Select Type | Required | Description |
---|---|---|
select1 (Single) | Yes | Selects a single individual for survival from a population |
select2 (Pair-wise) | Optional | Selects two individuals from a population for mating/crossover |
Selection Operators
Single Selectors | Description |
---|---|
Genetic.Select1.Tournament2 | Fittest of two random individuals |
Genetic.Select1.Tournament3 | Fittest of three random individuals |
Genetic.Select1.Fittest | Always selects the Fittest individual |
Genetic.Select1.Random | Randomly selects an individual |
Genetic.Select1.RandomLinearRank | Select random individual where probability is a linear function of rank |
Genetic.Select1.Sequential | Sequentially selects an individual |
Pair-wise Selectors | Description |
---|---|
Genetic.Select2.Tournament2 | Pairs two individuals, each the best from a random pair |
Genetic.Select2.Tournament3 | Pairs two individuals, each the best from a random triplett |
Genetic.Select2.Random | Randomly pairs two individuals |
Genetic.Select2.RandomLinearRank | Pairs two individuals, each randomly selected from a linear rank |
Genetic.Select2.Sequential | Selects adjacent pairs |
Genetic.Select2.FittestRandom | Pairs the most fit individual with random individuals |
var genetic = Genetic; // more likely allows the most fit individuals to survive between generationsgeneticselect1 = GeneticSelect1RandomLinearRank; // always mates the most fit individual with random individualsgeneticselect2 = GeneticSelect2FittestRandom; // ...
Configuration Parameters
Parameter | Default | Range/Type | Description |
---|---|---|---|
size | 250 | Real Number | Population size |
crossover | 0.9 | [0.0, 1.0] | Probability of crossover |
mutation | 0.2 | [0.0, 1.0] | Probability of mutation |
iterations | 100 | Real Number | Maximum number of iterations before finishing |
fittestAlwaysSurvives | true | Boolean | Prevents losing the best fit between generations |
maxResults | 100 | Real Number | The maximum number of best-fit results that will be sent per notification |
skip | 0 | Real Number | Setting this higher throttles back how frequently genetic.notification gets called in the main thread. |
Building
To clone, build, and test Genetic.js issue the following command:
git clone git@github.com:subprotocol/genetic-js.git && make distcheck
Command | Description |
---|---|
make | Automatically install dev-dependencies, builds project, places library to js/ folder |
make check | Runs test cases |
make clean | Removes files from js/ library |
make distclean | Removes both files from js/ library and dev-dependencies |
make distcheck | Equivlant to running make distclean && make && check |
Contributing
Feel free to open issues and send pull-requests.