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: image processing, statistical signal processing, information geometry, sparse signal processing, generative AI, unsupervised and meta learning, radar, GPU and FPGA, Arm processor. Research Group • ENSTA
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, health data science, health economics, psychology, health service research, computer science, signal processing, mathematics and/or statistics), with an excellent working knowledge of research methods in
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of the results. To achieve this, you will need, among other things, expertise in advanced statistical methods and handling of complex and extensive datasets. The work includes data from medical records and the
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with small animal husbandry and use in experimentation Ability to effectively utilize a computer and applicable software to create databases, perform statistical analyses Ability to communicate
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with the Jeanne Clery Disclosure of Campus Security Policy and Campus Crime Statistics Act (Clery Act), each year the University of Arizona releases an Annual Security Report (ASR) for each
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education to enable regions to expand quickly and sustainably. In fact, the future is made here. The department of Economics at Umeå School of Business, Economics and Statistics is looking for a post-doctoral
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statistical and graphing programs. FLSA Exempt Full Time/Part Time Full Time Number of Hours Worked per Week 40 Job FTE 1.0 Work Calendar Fiscal Job Category Research Benefits Eligible Yes - Full Benefits Rate
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and inclusiveness. Notice of Availability of the Annual Security and Fire Safety Report In compliance with the Jeanne Clery Disclosure of Campus Security Policy and Campus Crime Statistics Act (Clery
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candidate will be located at DES. Certifications/Licenses Required Knowledge, Skills, and Abilities Experience on statistical and/or numerical modeling of soil systems is relevant for this position. Strong
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breeding programmes to promote drought tolerance (by them using microbes more effectively). The candidate in this position will be responsible for applying statistical learning approaches on barley genome