From Classical To Quantum Reinforcement Learning And Its Applications In Quantum Control: A Beginner's Tutorial
2026 Β· Abhijit Sen, Sonali Panda, Mahima Arya, et al.
Abstract
This tutorial is designed to make reinforcement learning (RL) more accessible to undergraduate students by offering clear, example-driven explanations. It focuses on bridging the gap between RL theory and practical coding applications, addressing common challenges that students face when transitioning from conceptual understanding to implementation. Through hands-on examples and approachable explanations, the tutorial aims to equip students with the foundational skills needed to confidently apply RL techniques in real-world scenarios.
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