policy

Reinforced-learning-decision-system

kondeatharva10 · PyTorch

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Overview

Name
Reinforced-learning-decision-system
Author
kondeatharva10
Framework
PyTorch
License
unknown
Skill type
other
Evidence level
untested
Task description
This multi-agent RL system enables multiple agents to privately observe a problem, share encoded messages during a discussion phase, then collectively average their Q-values to reach a single final decision, trained via DQN to maximize decision correctness.

Spaces

Action space
other · 0-dim · 0Hz
Observation space
  • type: other

Links

HuggingFace repo
null
Paper (arXiv)
null

Compatible robots

20

Compatible environments

0

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Datasets that reference this policy

0

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