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Explore a Stanford seminar on incorporating sample-efficient monitoring into learned autonomy for robotics applications. Discover how warning systems can be designed to detect unsafe situations and distribution shifts in high-stakes robotics scenarios. Learn about a real-time framework that guarantees low false negative rates with minimal samples, and a method for identifying distribution shifts up to 11 times faster than previous approaches. Gain insights into the importance of statistical guarantees, sample efficiency, and the balance between false positive and false negative rates in warning systems. Understand the crucial role of these monitoring techniques in ensuring safe deployment of machine learning models in robotics.