LLaMEA is a Python framework for automatically generating and refining metaheuristic optimization algorithms using large language models, featuring optional in-the-loop hyper-parameter optimization.
Project description
LLaMEA: Large Language Model Evolutionary Algorithm
⭐ If you like this, please give the repo a star – it helps!
The fully-open successor to Google DeepMind’s AlphaEvolve for automated algorithm discovery. First released 📅 Nov 2024 • MIT License • 100 % reproducible.
LLaMEA couples large-language-model reasoning with an evolutionary loop to invent, mutate and benchmark algorithms fully autonomously.
Table of Contents
Introduction
LLaMEA (Large Language Model Evolutionary Algorithm) is an innovative framework that leverages the power of large language models (LLMs) such as GPT-4 for the automated generation and refinement of metaheuristic optimization algorithms. The framework utilizes a novel approach to evolve and optimize algorithms iteratively based on performance metrics and runtime evaluations without requiring extensive prior algorithmic knowledge. This makes LLaMEA an ideal tool for both research and practical applications in fields where optimization is crucial.
Key Features:
- Automated Algorithm Generation: Automatically generates and refines algorithms using GPT-based or similar LLM models.
- Performance Evaluation: Integrates seamlessly with the IOHexperimenter for real-time performance feedback, guiding the evolutionary process.
- LLaMEA-HPO: Provides an in-the-loop hyper-parameter optimization mechanism (via SMAC) to offload numerical tuning, so that LLM queries focus on novel structural improvements.
- Extensible & Modular: You can easily integrate additional models and evaluation tools.
Example use-cases:
- Problem specific optimization algorithms: Easily generate and fine-tune optimization algorithms to work on your specific problem. By leveraging problem knowledge in the prompt the generated optimized algorithms can perform even better.
- Efficient new Bayesian Optimization algorithms: Generate optimized and novel Bayesian optimization algorithms, specifically for optimizing very expensive problems such as auto-motive crash worthiness or car shape design optimization tasks.
- Machine Learning Pipelines: Without any ML knowledge, you can use LLaMEA to generate optimized machine learning pipelines for any task. Just insert the task description and provide the dataset and evaluation metric and start LLaMEA.
🔥 News
-
2025.06 🎉🎉 "LLaMEA-BO: A Large Language Model Evolutionary Algorithm for Automatically Generating Bayesian Optimization Algorithms" published on Arxiv!
-
2025.05 🎉🎉 "Optimizing Photonic Structures with Large Language Model Driven Algorithm Discovery" accepted as workshop paper at GECCO 2025!
-
2025.05 🎉🎉 "BLADE: Benchmark Suite for LLM-Driven Automated Design and Evolution of iterative optimisation heuristics" accepted as workshop paper at GECCO 2025!
-
2025.04 🎉🎉 "Code Evolution Graphs" accepted as full paper at GECCO 2025!
-
2025.03 🎉🎉 LLaMEA v1.0.0 released!
-
2025.01 🎉🎉 LLaMEA paper accepted in IEEE TEVC “Llamea: A large language model evolutionary algorithm for automatically generating metaheuristics"!
🎁 Installation
It is the easiest to use LLaMEA from the pypi package.
pip install llamea
[!Important] The Python version must be larger or equal to Python 3.10, 3.11 is advised. You need an OpenAI/Gemini/Ollama API key for using LLM models.
You can also install the package from source using Poetry (1.8.5).
- Clone the repository:
git clone https://github.com/XAI-liacs/LLaMEA.git cd LLaMEA
- Install the required dependencies via Poetry:
poetry install
💻 Quick Start
[!TIP] See also the getting started demo:
-
Set up an OpenAI API key:
- Obtain an API key from OpenAI.
- Set the API key in your environment variables:
export OPENAI_API_KEY='your_api_key_here'
-
Running an Experiment
To run an optimization experiment using LLaMEA:
from llamea import LLaMEA # Define your evaluation function def your_evaluation_function(solution): # Implementation of your function # return feedback, quality score, error information return "feedback for LLM", 0.1, "" # Initialize LLaMEA with your API key and other parameters optimizer = LLaMEA(f=your_evaluation_function, api_key="your_api_key_here") # Run the optimizer best_solution, best_fitness = optimizer.run() print(f"Best Solution: {best_solution}, Fitness: {best_fitness}")
💻 Examples
Below are two example scripts demonstrating LLaMEA in action for black-box optimization with a BBOB (24 noiseless) function suite. One script (example.py) runs basic LLaMEA, while the other (example_HPO.py) incorporates a hyper-parameter optimization pipeline—known as LLaMEA-HPO—that employs SMAC to tune the algorithm’s parameters in the loop.
Running example.py
example.py showcases a straightforward use-case of LLaMEA. It:
- Defines an evaluation function
evaluateBBOBthat runs generated algorithms on a standard set of BBOB problems (24 functions). - Initializes LLaMEA with a specific model (e.g., GPT-4, GPT-3.5) and prompts the LLM to generate metaheuristic code.
- Iterates over a
(1+1)-style evolutionary loop, refining the code until a certain budget is reached.
How to run:
python example.py
The script will:
- Query the specified LLM with a prompt describing the black-box optimization task.
- Dynamically execute each generated algorithm on BBOB problems.
- Log performance data such as AOCC (Area Over the Convergence Curve).
- Iteratively refine the best-so-far algorithms.
Running example_HPO.py (LLaMEA-HPO)
example_HPO.py extends LLaMEA with in-the-loop hyper-parameter optimization—termed LLaMEA-HPO. Instead of having the LLM guess or refine hyper-parameters directly, the code:
- Allows the LLM to generate a Python class representing the metaheuristic plus a ConfigSpace dictionary describing hyper-parameters.
- Passes these hyper-parameters to SMAC, which then searches for good parameter settings on a BBOB training set.
- Evaluates the best hyper-parameters found by SMAC on the full BBOB suite.
- Feeds back the final performance (and errors) to the LLM, prompting it to mutate the algorithm’s structure (rather than simply numeric settings).
Why LLaMEA-HPO?
Offloading hyper-parameter search to SMAC significantly reduces LLM query overhead and encourages the LLM to focus on novel structural improvements.
How to run:
python example_HPO.py
Script outline:
- Prompt & Generation: Script sets up a role/task prompt, along with hyper-parameter config space templates.
- HPO Step: For each newly generated algorithm, SMAC tries different parameter values within a budget.
- Evaluation: The final best configuration from SMAC is tested across BBOB instances.
- Refinement: The script returns the performance to LLaMEA, prompting the LLM to mutate the algorithm design.
[!Note] Adjust the model name (
ai_model) or API key as needed in the script. Changingbudgetor the HPO budget can drastically affect runtime and cost. Additional arguments (e.g., logging directories) can be set if desired.
Running example_AutoML.py
example_AutoML.py uses LLaMEA to showcase that it can not only evolve and generate metaheuristics but also all kind of other algorithms, such as Machine Learning pipelines.
In this example, a basic classification task on the breast-cancer dataset from sklearn is solved by generating and evolving open-ended ML pipelines.
- We define the evaluate function (accuracy score on a hold-out test set)
- We provide a very basic example code to get the algorithm started.
- We run a few iterations and observe the excellent performance of our completely automatic ML pipeline.
How to run:
python example_AutoML.py
[!Note] Adjust the model name (
ai_model) or API key as needed in the script.
Viewing conversation logs
The repository provides a minimal Flask app in logreader/app.py to explore
conversation logs stored as JSON Lines files. Start the server with a log file
path:
python logreader/app.py --logfile path/to/conversationlog.jsonl
You can also set the environment variable CONVERSATION_LOG instead of passing
--logfile. If neither is given, the app defaults to conversationlog.jsonl in
the current working directory. Navigate to http://localhost:5001 to browse the
messages.
🤖 Contributing
Contributions to LLaMEA are welcome! Here are a few ways you can help:
- Report Bugs: Use GitHub Issues to report bugs.
- Feature Requests: Suggest new features or improvements.
- Pull Requests: Submit PRs for bug fixes or feature additions.
Please refer to CONTRIBUTING.md for more details on contributing guidelines.
🪪 License
Distributed under the MIT License. See LICENSE for more information.
🤖 Reproducability
Each paper we published also has an accompanying Zenodo repository for full reproducability of all our results.
- van Stein, N. (2025). BLADE - Code and Results for the paper [Data set]. Zenodo. https://doi.org/10.5281/zenodo.15119985
- van Stein, N., Vermetten, D., & Bäck, T. (2025). LLaMEA-HPO: code, generated algorithms and IOH logging data. https://doi.org/10.5281/zenodo.14917719
- van Stein, N., Kononova, A. V., Kotthoff, L., & Bäck, T. (2025). Figures and code for Code Evolution Graphs. Zenodo. https://doi.org/10.5281/zenodo.14770672
- van Stein, N., & Bäck, T. (2024). LLaMEA. Zenodo. https://doi.org/10.5281/zenodo.13842144
✨ Citation
If you use LLaMEA in your research, please consider citing the associated paper:
@ARTICLE{van2025llamea,
author={Stein, Niki van and Bäck, Thomas},
journal={IEEE Transactions on Evolutionary Computation},
title={LLaMEA: A Large Language Model Evolutionary Algorithm for Automatically Generating Metaheuristics},
year={2025},
volume={29},
number={2},
pages={331-345},
keywords={Benchmark testing;Evolutionary computation;Metaheuristics;Codes;Large language models;Closed box;Heuristic algorithms;Mathematical models;Vectors;Systematics;Automated code generation;evolutionary computation (EC);large language models (LLMs);metaheuristics;optimization},
doi={10.1109/TEVC.2024.3497793}
}
If you only want to cite the LLaMEA-HPO variant use the folllowing:
@article{van2024intheloop,
author = {van Stein, Niki and Vermetten, Diederick and B\"{a}ck, Thomas},
title = {In-the-loop Hyper-Parameter Optimization for LLM-Based Automated Design of Heuristics},
year = {2025},
publisher = {Association for Computing Machinery},
address = {New York, NY, USA},
url = {https://doi.org/10.1145/3731567},
doi = {10.1145/3731567},
note = {Just Accepted},
journal = {ACM Trans. Evol. Learn. Optim.},
month = apr,
keywords = {Code Generation, Heuristic Optimization, Large Language Models, Evolutionary Computation, Black-Box Optimization, Traveling Salesperson Problems}
}
Other works about extensions or integrations of LLaMEA:
@InProceedings{yin2024controlling,
author="Yin, Haoran and Kononova, Anna V. and B{\"a}ck, Thomas and van Stein, Niki",
editor="Garc{\'i}a-S{\'a}nchez, Pablo and Hart, Emma and Thomson, Sarah L.",
title="Controlling the Mutation in Large Language Models for the Efficient Evolution of Algorithms",
booktitle="Applications of Evolutionary Computation",
year="2025",
publisher="Springer Nature Switzerland",
address="Cham",
pages="403--417",
isbn="978-3-031-90065-5"
}
For more details, please refer to the documentation and tutorials available in the repository.
flowchart LR
A[Initialization] -->|Starting prompt| B{Stop? fa:fa-hand}
B -->|No| C(Generate Algorithm - LLM )
B --> |Yes| G{{Return best so far fa:fa-code}}
C --> |fa:fa-code|D(Evaluate)
D -->|errors, scores| E[Store session history fa:fa-database]
E --> F(Construct Refinement Prompt)
F --> B
CodeCov test coverage
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
Built Distribution
Filter files by name, interpreter, ABI, and platform.
If you're not sure about the file name format, learn more about wheel file names.
Copy a direct link to the current filters
File details
Details for the file llamea-1.0.6.tar.gz.
File metadata
- Download URL: llamea-1.0.6.tar.gz
- Upload date:
- Size: 24.8 kB
- Tags: Source
- Uploaded using Trusted Publishing? Yes
- Uploaded via: twine/6.1.0 CPython/3.12.9
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
d94fc30d2a3960e947b9ec9f6960dcf744c374c3e568caec20ebf2f1fc464657
|
|
| MD5 |
0887f1b374ec9cc58fd47aec6a457891
|
|
| BLAKE2b-256 |
caf791aff30dded11e060b913ecf380983e301bfd6bc6511f204d771dfb8d9b5
|
Provenance
The following attestation bundles were made for llamea-1.0.6.tar.gz:
Publisher:
publish.yml on XAI-liacs/LLaMEA
-
Statement:
-
Statement type:
https://in-toto.io/Statement/v1 -
Predicate type:
https://docs.pypi.org/attestations/publish/v1 -
Subject name:
llamea-1.0.6.tar.gz -
Subject digest:
d94fc30d2a3960e947b9ec9f6960dcf744c374c3e568caec20ebf2f1fc464657 - Sigstore transparency entry: 241123006
- Sigstore integration time:
-
Permalink:
XAI-liacs/LLaMEA@f7a1ccb4c4eb218049acff82bd14108a9eb2accf -
Branch / Tag:
refs/tags/v1.0.6 - Owner: https://github.com/XAI-liacs
-
Access:
public
-
Token Issuer:
https://token.actions.githubusercontent.com -
Runner Environment:
github-hosted -
Publication workflow:
publish.yml@f7a1ccb4c4eb218049acff82bd14108a9eb2accf -
Trigger Event:
release
-
Statement type:
File details
Details for the file llamea-1.0.6-py3-none-any.whl.
File metadata
- Download URL: llamea-1.0.6-py3-none-any.whl
- Upload date:
- Size: 21.5 kB
- Tags: Python 3
- Uploaded using Trusted Publishing? Yes
- Uploaded via: twine/6.1.0 CPython/3.12.9
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
a1f8f5ee5d19000b93e689e34bcb575c2f47e6810d34c14fdc2c420f6eb9e5bc
|
|
| MD5 |
53ba85742e2d5a5c6103c502182ad9ed
|
|
| BLAKE2b-256 |
9fb5c8fccc11aa53a0f897cb234474ffa33d4fcafc681e9aa5a1c911227820ab
|
Provenance
The following attestation bundles were made for llamea-1.0.6-py3-none-any.whl:
Publisher:
publish.yml on XAI-liacs/LLaMEA
-
Statement:
-
Statement type:
https://in-toto.io/Statement/v1 -
Predicate type:
https://docs.pypi.org/attestations/publish/v1 -
Subject name:
llamea-1.0.6-py3-none-any.whl -
Subject digest:
a1f8f5ee5d19000b93e689e34bcb575c2f47e6810d34c14fdc2c420f6eb9e5bc - Sigstore transparency entry: 241123013
- Sigstore integration time:
-
Permalink:
XAI-liacs/LLaMEA@f7a1ccb4c4eb218049acff82bd14108a9eb2accf -
Branch / Tag:
refs/tags/v1.0.6 - Owner: https://github.com/XAI-liacs
-
Access:
public
-
Token Issuer:
https://token.actions.githubusercontent.com -
Runner Environment:
github-hosted -
Publication workflow:
publish.yml@f7a1ccb4c4eb218049acff82bd14108a9eb2accf -
Trigger Event:
release
-
Statement type: