59 developer-"https:" "https:" "https:" Postdoctoral research jobs at University of Washington
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St. Louis can be found at https://postdoc.wustl.edu/prospective-postdocs-2/ . Trains under the supervision of a faculty mentor including (but not limited to): To foster a passion for scientific
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Professor Ben Williams on software development for the Roman Space Telescope and help in the development and testing of the definitive crowded field photometry routine for the Roman Space Telescope. This work
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at https://postdoc.wustl.edu/prospective-postdocs-2/ . Trains under the supervision of a faculty mentor including (but not limited to): Conduct research to collect and analyze data on biological rhythms and
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agreement, unless agreed exclusion criteria apply. For more information, please visit the University of Washington Labor Relations website . General Duties: Lead the development and application of next
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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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, collaborating on other projects as necessary. Ideal candidates will be enthusiastically seeking a position that fosters their own scientific growth and development as well as ability to contribute to both
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results from junior staff, formulate conclusions and inform team leaders. Develop, quality check, and distribute complex HIV data sets to be used in epidemiological and statistical analyses. Develop and
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collaborate on developing curricular resources to support K-12 and college-level weather and climate education in St. Louis and the broader Midwest. There may be opportunities to pursue additional research
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efficiency. Develop and implement strategies to enhance program accessibility, engagement, and impact across the postdoctoral community. Data Management Maintain and reconcile postdoctoral data in Workday and
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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