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design and reinforcement learning algorithms. We combine statistical methods with online reinforcement learning algorithms to provide inferential tools. The successful applicant will be expected to develop
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Program is a transformational award for early career researchers who show exceptional promise of becoming outstanding leaders in academic science, making foundational discoveries while building an inclusive
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, computer science, architecture, and engineering to develop scalable, data-informed solutions in sustainable design, construction, and energy management. The Cluster aims to modernize—and ultimately revolutionize
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computational methods and tools, including prior experience with algorithms relevant to computational biology, is a plus. ● Ability to work independently as well as part of an interdisciplinary team in a
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satisfactory job performance. The position will be instrumental in supporting the computational needs of Harvard faculty-led projects supported by the Harvard Data Science Initiative (HDSI). The position resides
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The Postdoctoral Diversity Enrichment Program (PDEP) provides $60,000 over three years to support the career development activities and success of underrepresented postdoctoral fellows in a degree
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the analyst on any tasks that the Senior Data Scientist assigns to them. Serves as a resource to the team for computer programming and statistics. Occasionally, group training on specific tools or models
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The Dean's Postdoctoral Fellowship The Dean's Postdoctoral Fellowship Program is administered through Harvard Medical School Office for Diversity Inclusion and Community Partnership whose mission
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to Contact With Questions Focus Areas Explore All Focus Areas Arctic and Antarctic Astronomy and Space Biology Chemistry Computing Creating a STEM Workforce Earth and Environment Education and Training
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and Machine Learning, with a focus on studying geometric structures in data and models and how to leverage such structure for the design of efficient machine learning algorithms with provable guarantees