📕 subnode [[@KGBicheno/reinforcement_learning_(rl)]]
in 📚 node [[reinforcement_learning_(rl)]]
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garden/KGBicheno/Artificial Intelligence/Introduction to AI/Week 3 - Introduction/Definitions/Reinforcement_Learning_(Rl).md by @KGBicheno
reinforcement learning (RL)
Go back to the [[AI Glossary]]
#rl
A family of algorithms that learn an optimal policy, whose goal is to maximize return when interacting with an environment. For example, the ultimate reward of most games is victory. Reinforcement learning systems can become expert at playing complex games by evaluating sequences of previous game moves that ultimately led to wins and sequences that ultimately led to losses.
📖 stoas
- public document at doc.anagora.org/reinforcement_learning_(rl)
- video call at meet.jit.si/reinforcement_learning_(rl)