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Learning to Survive using Reinforcement Learning with MLAgents
2022
International Journal for Research in Applied Science and Engineering Technology
Abstract: Simulations have been there for a long time, in different versions and level of complexity. Training a Reinforcement Learning model in a 3D environment lets us understand a lot of new insights from the inference. There have been some examples where the AI learns to Feed Itself, Learns to Start walking, jumping etc. The reason one trains an entire model from the agent knowing nothing to being a perfect task achiever is that during the process, new behavioral patterns can be recorded.
doi:10.22214/ijraset.2022.45526
fatcat:6si6nbygffe4lbnxh6544xud44