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"RLVR - Reinforcement Learning via Rust" draws its inspiration from Richard S. Sutton and Andrew G. Barto's foundational work, "Reinforcement Learning: An Introduction," and integrates the comprehensive curriculum of Stanford University's renowned [CS234: Reinforcement Learning course](https://web.stanford.edu/class/cs234/), which is celebrated for its in-depth exploration of RL concepts and applications. Our goal is to build upon these classics by presenting a modern approach that leverages Generative AI (GenAI) to balance the theoretical foundations with practical implementations of reinforcement learning using the Rust programming language. We recognize the pivotal role that reinforcement learning plays in developing sophisticated AI/ML systems and believe that mastering these concepts is essential for contributing to the next wave of technological innovation. By promoting Rust for reinforcement learning implementations, we aim to cultivate a vibrant community of developers and researchers who can harness Rust's efficiency, safety, and performance to push the boundaries of AI. Through RLVR, we provide a comprehensive resource that accelerates the development of reinforcement learning, encourages the adoption of Rust, and ultimately contributes to the growth and evolution of the field. By incorporating the structured lectures, practical assignments, and cutting-edge research insights from Stanford's CS234, RLVR ensures that learners gain both theoretical knowledge and hands-on experience, effectively bridging the gap between academic study and real-world application.