Skip to main content

A modular framework for evolutionary strategies and neuroevolution.

Project description

EvoLib – A Modular Framework for Evolutionary Computation

Docs Status Code Quality & Tests License: MIT PyPI version Project Status: Beta

EvoLib Logo

EvoLib is a lightweight and transparent framework for evolutionary computation, focusing on simplicity, modularity, and clarity — aimed at experimentation, teaching, and small-scale research rather than industrial-scale applications.


Key Features

  • Transparent design: configuration via YAML, type-checked validation, and clear module boundaries.
  • Modularity: mutation, selection, crossover, and parameter representations can be freely combined.
  • Educational value: examples and a clean API make it practical for illustrating evolutionary concepts.
  • Neuroevolution support: structural mutations (adding/removing neurons and connections) and evolvable networks via EvoNet.
  • Gymnasium integration: run Gymnasium benchmarks (e.g. CartPole, LunarLander) via a simple wrapper.
  • Parallel evaluation (optional): basic support for Ray to speed up fitness evaluations.
  • HELI (Hierarchical Evolution with Lineage Incubation)
    Runs short micro-evolutions ("incubations") for structure-mutated individuals, allowing new topologies to stabilize before rejoining the main population.
  • Type-checked: PEP8 compliant, and consistent code style.

EvoLib is currently in beta. The core API and configuration format are stable, but some features are still under development.


Sample Plot


Installation

pip install evolib

Requirements: Python 3.10+ and packages in requirements.txt.


Example Usage

from evolib import Pop

def my_fitness(indiv):
    # Custom fitness function (example: sum of vector)
    indiv.fitness = sum(indiv.para["main"].vector)

pop = Pop(config_path="config/my_experiment.yaml",
          fitness_function=my_fitness)

# Run the evolutionary process
pop.run()

For full examples, see 📁examples/ – including adaptive mutation, controller evolution, and network approximation.


Configuration Example (YAML)

A core idea of EvoLib is that experiments are defined entirely through YAML configuration files. This makes runs explicit, reproducible, and easy to adapt. The example below demonstrates different modules (vector + EvoNet) with mutation, structural growth, and stopping criteria.

parent_pool_size: 20
offspring_pool_size: 60
max_generations: 100
num_elites: 2
max_indiv_age: 0

stopping:
  target_fitness: 0.01
  patience: 20
  min_delta: 0.0001
  minimize: true

evolution:
  strategy: mu_comma_lambda

modules:
  controller:
    type: vector
    dim: 8
    initializer: normal_vector
    bounds: [-1.0, 1.0]
    mutation:
      strategy: adaptive_individual
      probability: 1.0
      strength: 0.1

  brain:
    type: evonet
    dim: [4, 6, 2]
    activation: [linear, tanh, tanh]
    initializer: normal_evonet
    mutation:
      strategy: constant
      probability: 1.0
      strength: 0.05

      # Optional fine-grained control
      activations:
        probability: 0.01
        allowed: [tanh, relu, sigmoid]

      structural:
        add_neuron: 0.01
        add_connection: 0.05
        remove_connection: 0.02
        recurrent: local  # none | direct | local | all
        keep_connected: true

ℹ️ Multiple parameter types (e.g. vector + evonet) can be combined in a single individual. Each component evolves independently, using its own configuration.


Documentation

Documentation for EvoLib is available at: 👉 https://evolib.readthedocs.io/en/latest/


Use Cases

EvoLib is developed for clarity, modularity, and exploration in evolutionary computation.
It can be applied to:

  • Illustrating concepts: simple, transparent examples for teaching and learning.
  • Neuroevolution: evolve weights and network structures using EvoNet.
  • Multi-module evolution: combine different parameter types (e.g. controller + brain).
  • Strategy comparison: benchmark and visualize mutation, selection, and crossover operators.
  • Function optimization: test behavior on benchmark functions (Sphere, Ackley, …).
  • Showcases: structural XOR, image approximation, and other demo tasks.
  • Rapid prototyping: experiment with new evolutionary ideas in a lightweight environment.

Gymnasium Integration

EvoLib provides a lightweight wrapper for Gymnasium environments. This allows you to evaluate evolutionary agents directly on well-known benchmarks such as CartPole, LunarLander, or Pendulum.

  • Headless evaluation: returns total episode reward as fitness.
  • Visualization: render episodes and save them as GIFs.
  • Discrete & continuous action spaces are both supported.

👉 Examples

from evolib import GymEnv

env = GymEnv("CartPole-v1", max_steps=500)
fitness = env.evaluate(indiv)         # run one episode
gif = env.visualize(indiv, gen=10)    # render & save as GIF

Preview: Pygame Integration

Early prototypes demonstrate how evolutionary algorithms can evolve both neural networks and sensor properties such as number, range, and orientation for agents in 2D worlds built with pygame. This illustrates how networks and sensors co-adapt to dynamic environments with collisions and feedback.

Ant/Food Prototype

In this video, agents use simple sensors to learn how to collect food while avoiding collisions with the environment.

Pygame Integration Preview

Flappy Bird–style Prototype

Another prototype uses a Flappy Bird–like 2D world, where agents must pass through moving gaps. Both the neural controller and the sensors (number, length, angle) are evolved, allowing perception and action to adapt together. This illustrates how EvoLib can be applied to simple game-like environments, making the joint evolution of sensing and control directly observable.

Pygame Integration Preview

This video shows the best agent from the final generation rather than the full evolutionary process.


Learn EvoLib in 5 Steps

EvoLib includes a small set of examples that illustrate the core concepts step by step:

  1. Hello Evolution – minimal run with a custom fitness function and visible improvement over generations.
  2. Strategies in Action – (μ + λ) evolution step by step.
  3. Function Approximation – evolve support points to match a sine curve.
  4. Evolution as Control – evolve a controller in an environment.
  5. Neuroevolution with Structural Growth – evolve networks with growing topology.

For deeper exploration, see the full examples directory


Roadmap

  • Adaptive Mutation (global, individual, per-parameter)
  • Flexible Crossover Strategies (BLX, intermediate, none)
  • Structured Neural Representations (EvoNet)
  • Composite Parameters (multi-module individuals)
  • Neuroevolution
  • Topological Evolution (neurons, edges)
  • Ray Support for Parallel Evaluation (early prototypes)
  • OpenAI Gymnasium / Gym Wrapper
  • Advanced Visualization
  • Game Environment Integration (pygame, PettingZoo - early prototypes)

License

MIT License – see MIT License.

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

evolib-0.2.0b3.dev16.tar.gz (142.8 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

evolib-0.2.0b3.dev16-py3-none-any.whl (171.1 kB view details)

Uploaded Python 3

File details

Details for the file evolib-0.2.0b3.dev16.tar.gz.

File metadata

  • Download URL: evolib-0.2.0b3.dev16.tar.gz
  • Upload date:
  • Size: 142.8 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.12.7

File hashes

Hashes for evolib-0.2.0b3.dev16.tar.gz
Algorithm Hash digest
SHA256 ddeb1e0b0c78604fb16a40802746a91ec525ef1007a5f586450315b66f3b52a5
MD5 e7b2b73fc333bafd6c2d76d521259aa6
BLAKE2b-256 57894274b62513747f524e1bb89abdef2c320818592e1bc179c0bb79c071c599

See more details on using hashes here.

File details

Details for the file evolib-0.2.0b3.dev16-py3-none-any.whl.

File metadata

  • Download URL: evolib-0.2.0b3.dev16-py3-none-any.whl
  • Upload date:
  • Size: 171.1 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.12.7

File hashes

Hashes for evolib-0.2.0b3.dev16-py3-none-any.whl
Algorithm Hash digest
SHA256 6ee78fdbb9849fee8de5b1b29cc6f17380a20a6567acd1093e76bba2a409ad11
MD5 59dff3ad63b9548279f6f1754a524bab
BLAKE2b-256 4fb784da834a3a4aebadd525bf7b276b9edb8391641e985641853e43588f83c9

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page