Launch basic training with command:
python cg_runner.py --policy <policy> --env <env>
.
Progress logging and checkpoints can be found in the /save
directory.
For other argument options, look into args.py
, env_maker.py
and policy_maker.py
.
Currently available <policy>
:
de
(decentralized)dicg_ce
(DICG-CE)proximal_cg
(proximity-based coordination graph)
Currently available <env>
:
meet
(meeting in the grid world)predprey
(predator-prey)traffic
(hard mode traffic junction)