27 development "https:" "https:" "https:" "U.S" Postdoctoral positions at University of Washington
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The Department of Biostatistics at the University of Washington has an outstanding opportunity for a postdoctoral scholar. The postdoctoral scholar will develop statistical machine learning and artificial
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reports, keep records, write manuscripts, prepare presentations, etc. The ideal candidate will have post-graduation experience in bacterial genomics and have published (or under review) several papers in
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institutions. · Support for professional development, conference travel, and dissemination. Instructions All applications should be submitted through Interfolio. https://apply.interfolio.com/180524
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-time Postdoctoral Scholar position is available on an annual 12- month appointment in the Wang Lab at the Department of Pharmaceutics at the University of Washington (https://sop.washington.edu
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the formation of the isthmus of Panama and its impact on the evolution of plants in rivers). This collaborative project will integrate genomic, paleontological, and geological data to unveil how riverweeds
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and analysis, and academic and community dissemination. There will be opportunities to develop independent projects that align with the research interests of ADAPT. Other responsibilities will involve
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systems large and small, colleagues from low- and middle-income countries (LMIC), paraprofessionals, and individuals invested in developing creative technologies to improve population mental health, in our
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Position Details Position Description Dr. Juming Tang’s group at the University of Washington has launched a new research program focused on developing novel sensors and AI tools to enhance the transparency
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Harbor Laboratories (FHL) at the University of Washington is seeking 2 full-time (100% FTE) postdoctoral scholars. We seek outstanding marine scientists who will develop research activities that make use
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, atmospheric signals), data fusion across sensing modalities, and development of scalable machine learning pipelines. Work will be entirely computational and based in Seattle, with no field deployment