neat

Crates.ioneat
lib.rsneat
version0.5.1
sourcesrc
created_at2017-08-17 01:54:35.260491
updated_at2024-04-16 14:52:07.184313
descriptionCrate for working with NEAT in rust
homepagehttps://github.com/inflectrix/neat
repositoryhttps://github.com/inflectrix/neat
max_upload_size
id27798
size56,539
Tristan Murphy (HyperCodec)

documentation

README

neat

github crates.io docs.rs

Implementation of the NEAT algorithm using genetic-rs.

Features

  • rayon - Uses parallelization on the NeuralNetwork struct and adds the rayon feature to the genetic-rs re-export.
  • serde - Adds the NNTSerde struct and allows for serialization of NeuralNetworkTopology
  • crossover - Implements the CrossoverReproduction trait on NeuralNetworkTopology and adds the crossover feature to the genetic-rs re-export.

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How To Use

When working with this crate, you'll want to use the NeuralNetworkTopology struct in your agent's DNA and the use NeuralNetwork::from when you finally want to test its performance. The genetic-rs crate is also re-exported with the rest of this crate.

Here's an example of how one might use this crate:

use neat::*;

#[derive(Clone, RandomlyMutable, DivisionReproduction)]
struct MyAgentDNA {
    network: NeuralNetworkTopology<1, 2>,
}

impl GenerateRandom for MyAgentDNA {
    fn gen_random(rng: &mut impl rand::Rng) -> Self {
        Self {
            network: NeuralNetworkTopology::new(0.01, 3, rng),
        }
    }
}

struct MyAgent {
    network: NeuralNetwork<1, 2>,
    // ... other state
}

impl From<&MyAgentDNA> for MyAgent {
    fn from(value: &MyAgentDNA) -> Self {
        Self {
            network: NeuralNetwork::from(&value.network),
        }
    }
}

fn fitness(dna: &MyAgentDNA) -> f32 {
    // agent will simply try to predict whether a number is greater than 0.5
    let mut agent = MyAgent::from(dna);
    let mut rng = rand::thread_rng();
    let mut fitness = 0;

    // use repeated tests to avoid situational bias and some local maximums, overall providing more accurate score
    for _ in 0..10 {
        let n = rng.gen::<f32>();
        let above = n > 0.5;

        let res = agent.network.predict([n]);
        let resi = res.iter().max_index();

        if resi == 0 ^ above {
            // agent did not guess correctly, punish slightly (too much will hinder exploration)
            fitness -= 0.5;

            continue;
        }

        // agent guessed correctly, they become more fit.
        fitness += 3.;
    }

    fitness
}

fn main() {
    let mut rng = rand::thread_rng();

    let mut sim = GeneticSim::new(
        Vec::gen_random(&mut rng, 100),
        fitness,
        division_pruning_nextgen,
    );

    // simulate 100 generations
    for _ in 0..100 {
        sim.next_generation();
    }

    // display fitness results
    let fits: Vec<_> = sim.entities
        .iter()
        .map(fitness)
        .collect();

    dbg!(&fits, fits.iter().max());
}

License

This crate falls under the MIT license

Commit count: 115

cargo fmt