Awesome
LMEA
Code for paper: Large Language Models as Evolutionary Optimizers
Quick Start
Setup Environment
# clone the repo
git clone https://github.com/cschen1205/LMEA.git
# Go to directory
cd LEMA
# create a new environment and activated it
python -m venv venv
source ./venv/bin/activate
# pyconcorde installation and steup
pip install 'pyconcorde @ git+https://github.com/jvkersch/pyconcorde'
# install dependent pacakges
pip install -r requirements.txt
Setup OpenAI Key
In the src/utils.py file, line 14, place the openai keys in array "open_ai_keys"
# place your openai key in this array. You can put multiple keys if you want to run multiple threads
open_ai_keys = [""]
Dataset
The TSP problems used in experiments of this page are located in Folder data/tsp
Generate TSP problem files
run src/problem.py to generate TSP problems files
python scr/problem.py -name "tsp" -t "rue" -d "tsp" -nc 10,15 -pc 10
Run experiment
You can run the experiment.py python script for experiments. For example:
python src/executor.py -n rue,clu -nc 10,15 -pi 1 -al ec
The above command will run "LLM-EC" experiments on the these problem files:
clu_10_1.tsp (clu type, 10 nodes, 1st problem instance)
clu_15_1.tsp (clu type, 15 nodes, 1st problem instance)
rue_10_1.tsp (rue type, 10 nodes, 1st problem instance)
rue_15_1.tsp (rue type, 15 nodes, 1st problem instance)
The log files of the experiments will be saved in folder "data/logs"
Issues and FAQ
Coming soon!
- Plese feel free to contact @cschen if you encounter issues on the project.