37 machine-learning-"https:"-"https:"-"https:"-"https:"-"U.S" Fellowship positions at Harvard University in United States
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, protected veteran status, disability, genetic information, military service, pregnancy and pregnancy-related conditions, or other protected status. Additional Qualifications Special Instructions Application
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to continue with (and submit) your application). Learn More About OI’s Predoctoral Fellowship On Wednesday, January 21, 2026, at 1:00 pm ET, we will host a virtual information session (via Zoom) to provide more
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postdoctoral fellow in Professor Susan Murphy’s Statistical Reinforcement Learning Group. Our research concerns sequential decision making in digital health, including experimental design and reinforcement
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We highly recommend reviewing our department website’s Faculty pages to learn more about our faculty, their labs, and their research interest before applying. Please apply through the ARIeS portal
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Harvard department of their choosing, but otherwise are expected to conduct independent research. They may not take courses for credit or teach more than one course per year, and they are expected to be in
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. in electrical engineering, applied mathematics, or related field. Candidates who have a strong mathematical background in reinforcement learning and/or control (e.g., optimal control, decentralized
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. Along with access to Harvard’s library and other resources, the fellowship includes the requirement to teach one course per year, to participate in a fellowship program conference each spring, and an
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MPlus. Acquires Specialized Training. Attends trainings and skill development workshops as necessary to acquire new statistical skills. Reporting Results. Submits periodic reports of project status
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and physics-informed learning algorithms for scalable energy management and control Engagement with industry stakeholders to guide practical implementation and scale-up strategies Ideal candidates will
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their appointment in a Harvard department of their choosing, but otherwise are expected to conduct independent research. They may not take courses for credit or teach more than one course per year, and they