gaetanserre / L2RPN-2022_PPO-Baseline
This repository contains the code to train the baseline agent provided in the 2022 edition of Learning to Run a Power Network and to recreate the experiments (as well as the figures) of the paper Reinforcement learning for Energies of the future and carbon neutrality: a Challenge Design.
☆13Updated 2 years ago
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