5min chapter

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#114 - Secrets of Deep Reinforcement Learning (Minqi Jiang)

Machine Learning Street Talk (MLST)

CHAPTER

The Limits of Reinforcement Learning

You said that current simulators predominantly mirror the limitations of static finite data sets such as unsupervised learning. And so one motivation around these automatic curriculum learning methods is if you can use them to essentially create these open-ended learning systems. If you can make the design space rich enough, you can then conceivably have the teacher essentially guide the student through an endless multitude of environmental challenges by designing different variations of possible environments.

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