17 software-defined-network-postdoc Postdoctoral positions at University of California
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positions depends on years of experience post-degree. Salary range: The monthly salary range for this position is $6,573 - $8,921 and is expected to start at $6,573 or above. Postdoc positions are paid on a
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Skip to main content Recruit Home Open Recruitments Postdoc-UCSB Physics Dept. (Experimental High Energy Physics on CMS Experiment)/Richman Research Group (JPF02921) Postdoc-UCSB Physics Dept
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Skip to main content Recruit Home Open Recruitments Postdoc - UCSB Physics Department (Exoplanets)/Bowler Research Group (JPF02906) Postdoc - UCSB Physics Department (Exoplanets)/Bowler Research
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set the minimum pay based on prior months of postdoc service (both domestic and international) before the start of appointment. See Table 23 and 23N (Hourly) for experience level minimums. A reasonable
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records of all research performed. Adhere with EH&S and ETA safety guidelines. Additional Responsibilities as needed: Pursue funding for additional research of mutual interest to the postdoc and an LBL PI
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to define novel questions and methods for leveraging available economic, biological, and environmental data, and communicating the research through publications. The Postdoctoral Researcher will have
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oral communication with a record of leading and reporting results. Desired Qualifications: Knowledge of quantum computing algorithms. Familiarity with tensor network methods. Experience programming GPUs
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resources, and the DOE ESNET network. Develop and apply advanced workflow capabilities that improve performance, portability, and productivity. Perform performance analysis and optimization across end-to-end
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such as TEM, HAADF-STEM, 4D-STEM, and EELS. The postdoc will develop expertise in low-temperature studies, assist staff and users with the liquid helium holder, and carry out independent research
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, under the joint supervision of Prof. Alex Cloninger and Prof. Gal Mishne at UC San Diego. This NSF-funded research focuses on a geometric understanding of training in deep neural networks. The position