Docker containers of baseline agents for the Crafter environment

Overview
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Comments
  • Remove redundant files and codes from rnd folder

    Remove redundant files and codes from rnd folder

    Summary of changes:

    • Change Common and Brain folders to python packages.
    • Remove play.py as that was not needed.
    • Remove Montezuma's Revenge environment wrappers as they were not needed.
    • Replace clip_grad_norm_ method with the official torch.clip_grad_norm_.
    opened by alirezakazemipour 2
  • Code for dreamerv2 baseline doesn't work

    Code for dreamerv2 baseline doesn't work

    Hello,

    First thanks for making this awesome lightweight environment! I'm trying to run the dreamerv2 baseline in this repo but the code doesn't work. Clearly, it is because dv2.configs is a dict so dv2.configs.crafter would cause error.

    When I looked at the dreamerv2 code and tried to fix it, I got a bit confused about how configurations are handled (e.g., there is a crafter entry in configs.yaml but the --configs flag doesn't seem to do anything...). Also, I saw your reply to an issue that indicates the right hyperparameters for Crafter, but these are not present in this repo (i.e. main.py), nor in the dreamerv2 repo.

    So I wonder if you can point out what's the exact way to reproduce the dreamerv2 results on crafter with the right hyperparameters? It would be even better if you could just provide a runnable version in this baseline repo. Many thanks!

    opened by zhixuan-lin 1
Owner
Danijar Hafner
I'm trying to build unsupervised intelligent machines and evaluate them in complex environments.
Danijar Hafner
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