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for high and low Reynolds numbers. Optimize device performance: throughput, sorting efficiency; stay up-to-date on emerging trends, materials, and fabrication techniques in MEMS and microfluidics. Essential
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associates of the Center to provide timely and creative support for research and computing. The successful candidate will create analytic datasets and perform complex statistical analyses of data, using
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catalysis, and/or plasma-assisted catalysis is of significant value to participate in other ongoing projects in the lab. Experience with the design, construction, and operation of high-vacuum instruments and
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particle sorting experiments, analyze fluorescence image data and evaluate performance metrics for high and low Reynolds numbers. Optimize device performance: throughput, sorting efficiency; stay up-to-date
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with researchers, understand research problems, and build the skillset to contribute to computational research through code. If you have an interest in scientific programming, high performance computing
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interested in computational materials design and discovery. The successful candidate will develop new, openly accessible datasets and machine learning models for modeling redox-active solid-state materials
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business needs and implement efficient, scalable HRIS solutions. Maintain high standards of data integrity and accuracy, overseeing regular audits and clean-up procedures. Develop, run, and analyze reports
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development as well as co-authorship on high-impact research articles. This is a 1-year term position, with opportunity for renewal depending on good performance and successful funding of the next phase of
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at the rank of Associate Professional Specialist or more senior. The successful candidate will support and lead research related to high-precision U-Pb geochronology by ID-TIMS. Duties will include laboratory
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datasets, including numerical model output, field campaign data, reanalysis, and both remote and in-situ observations. Experience with model development and high-performance computing is desirable but not