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Reinforcement Learning in Machine Learning

Reinforcement Learning (RL) ek Machine Learning technique hai jisme Agent environment ke saath interact karke trial and error se seekhta hai. Is article me RL ka concept, components, working, types, algorithms, advantages, disadvantages aur real-life applications cover kiye gaye hain.

Gracy TyagiJul 2, 2026 4 min padhne ka time 17 views
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