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We have scaled up our second position approach in the official challenge. We now reach a max of 23.6 floors on the test seeds and consistently above 20. Good news is that there is more work to do, as it does seem to plateau with the current method. The entire code and trained policies will be available soon.
[If there is a better place to put this let me and delete it]
The text was updated successfully, but these errors were encountered:
This is great work to see, and I have no problem keeping this issue open so it can be discovered. The work is relevant to helping others who might want to get started doing research with Obstacle Tower.
giadefa
changed the title
NAPPO: Modular and scalable reinforcement learning in pytorch reaching new high in obstacle tower challenge
PyTorchRL: Modular and scalable reinforcement learning in pytorch reaching new high in obstacle tower challenge
Feb 11, 2021
I think that this is relevant for people who would like to try multiple algorithms or scale it up. We would be happy to work with people who are keen on this.
Hi,
don't know if it is the right place, but it is probably relevant for anyone interested in obstacle-tower-env.
https://arxiv.org/abs/2007.02622
We have scaled up our second position approach in the official challenge. We now reach a max of 23.6 floors on the test seeds and consistently above 20. Good news is that there is more work to do, as it does seem to plateau with the current method. The entire code and trained policies will be available soon.
[If there is a better place to put this let me and delete it]
The text was updated successfully, but these errors were encountered: