527 embedded-system-"https:"-"https:"-"https:"-"https:"-"IFM"-"IFM" positions at Harvard University
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and Benefits This position is salaried and benefits eligible. Information regarding postdoctoral fellow salary, which is determined by the number of years post PhD, and benefits can be found at https
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education. Established in 1636, Harvard is the oldest institution of higher education in the United States. Connections working at Harvard University More Jobs from This Employer https://main.hercjobs.org
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. https://pai.seas.harvard.edu The postdoc is intended for one year but we anticipate there will be funding to potentially extend it to a second year. The postdoc will receive a generous salary as
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, Harvard is the oldest institution of higher education in the United States. Connections working at Harvard University More Jobs from This Employer https://main.hercjobs.org/jobs/22098205/postdoctoral-fellow
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Qualifications Interest in the development and translation of rehabilitation technologies is strongly preferred. Prior experience with embedded systems or biomechanical evaluation in wearable devices is desired
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Details Title Postdoctoral Fellow in Systems Biology School Harvard Medical School Department/Area Systems Biology Position Description We invite applicants for a postdoctoral fellow position in
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the development and translation of rehabilitation technologies is strongly preferred. Prior experience with embedded systems or biomechanical evaluation in wearable devices is desired. Special Instructions Contact
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Visiting Postdoctoral Research Fellow in the Black Hole Initiative (BHI) at Harvard University and the Smithsonian Astrophysical Observatory (SAO). This is a term-limited, three-month appointment running
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leverages nationwide Medicare claims data for older adults in the United States, linked with rich contextual information, including census, weather, and air pollution data. The overarching goal is to develop
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Experience with finetuning embedding models and tuning vector databases to improve performance of semantic search and retrieval systems Experience operationalizing end-to-end machine learning applications