Reinforcement Learning in the Real World (with Professor Matthew Taylor)
Host: Amir Feizpour, Co-founder at Aggregate Intellect
Speaker: Professor Matthew E. Taylor, University of Alberta, Intelligent Robot Learning Lab
Abstract: Professor Matt walks us through Human and AI collobarations with a focus on autonomy and teaching AI Custom Behaviours.
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Tags: deep learning
machine learning
AI
Artificial Intelligence
RL
reinforcement learning
agents
models
production
neural networks
intelligent agents
reward
human collaboration