6min chapter

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Harri Valpola: System 2 AI and Planning in Model-Based Reinforcement Learning

Machine Learning Street Talk (MLST)

CHAPTER

Reinforcement Learning

Wean we incode so much prior information into these architectures. And i don't think the problem is having good representations for the system state. The thibnoral networks have made a break through in how little domain knowledge we actually need to develop efficient and functioning systems. But just taking pretty much vanilla elistium networks, applying that to whatever industrial process is has worked surprisingly well. We really are not experts in process control. I can tell you about these depneral networks, they are great at extracting the relevant knowledge we need to understand a little bit about the processes. Is e, well, i guess it's really impossible. But we can collect data from that system humans are

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