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field. The postdoc will be based at the Northwest Laboratories of Harvard University and have access to all the resources available through the Organismic and Evolutionary Biology Department. The position
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the range of $67,600 per year, depending on whether a recently defended graduate or already with 1 year of postdoc experience in the Ph.D. lab. The position offers full Harvard benefits. Basic Qualifications
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from graduate student to postdoc, and we always welcome individuals who are interested in applying their unique expertise to study interactions between cells, tissues, organs, and organisms. Basic
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environment, and participate in discussions and present results to Dr. Regehr and other members of the lab on a regular basis. Additionally, postdocs will prepare presentations or posters to discuss results in
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behaving animals, high resolution behavioral tracking, optogenetics, and data analysi.. All candidates must have received a Ph.D. in a relevant field. The postdoc will be based at the Northwest Laboratories
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-photonic computing architectures; Silicon-photonic network architectures Machine Learning Algorithms/Systems: Experience in design and use of ML algorithms; Experience in using ML for designing computing
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) Fellowships Maintain ETSAGP Fellowship CalendarCompose and distribute weekly announcements. Schedule fellow journal clubs, research seminars, and all fellow meetings. Ensure that rooms and zoom meetings
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populations and biobanks for risk prediction, genetic discovery, and genomic medicine. Federated and transfer learning for distributed and privacy-preserving data integration. AI and Deep learning approaches
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Ph.D. in a relevant field by the time of appointment. The postdoc will be based at the Harvard University Herbaria (HUH) and will have access to all the resources available through the Department of OEB
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transfer learning for distributed and privacy-preserving data integration. AI and Deep learning approaches to high-dimensional and multi-modal biomedical data. Causal Inference, Fairness, and Trustworthy AI