sac_agent.py
andsac_lstm_agent.py
contains the agent training codeenv.py
contains thegymnasium
supported integrated Kubernetes/OpenFaaS environment for interaction and feedback loop--train
&--test
flags for respective train and test actions of the agentrequirements.txt
contains the project requirements
Note:
- To successfully run the agent please update the relevent placeholders marked with
$PLACEHOLDER
. - Code Reference:
@misc{rlalgorithms,
author = {Zihan Ding},
title = {Popular-RL-Algorithms},
year = {2019},
publisher = {GitHub},
journal = {GitHub repository},
howpublished = {\url{https://github.com/quantumiracle/Popular-RL-Algorithms}},
}