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: • Expertise in metabolic research. • Experience with in vivo mouse models. • Proficiency in bioinformatics, proteomics, metabolomics, or other large-scale data analysis. • A track record of presenting
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or more of the following: ● Experience with urban watershed modeling or lake systems modeling ● Experience with limnological or aquatic field methods ● Experience with statistical methods for making
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based in the Kennedy Lab in the Plant and Microbial Biology Department at the University of Minnesota. Funding for this position is expected to run for up to 24 months. Support for professional
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skills in R programming - Working knowledge of Python - Experience with basic analyses to characterize gut microbiomes, including diversity analysis, differential abundance analysis, modeling microbial and
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, protein purification, enzymatic assays and proteomic sample preparation. 15%, Design experiments. Design the routine experiments based on existing protocols or with slight modification from existing
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Vision: A department that is an inclusive community creating, discovering, and sharing conservation knowledge; A diverse natural world based on evolving knowledge, sustainable use, and equitable practices
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to: Understand basic principles of brain functioning across development (i.e. figure out how the brain works). Learn about how neuropsychiatric and other brain-based disorders develop and progress over time
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equity within our organization. As part of our commitment to fair and equitable compensation, please be aware that the salary offered to incoming candidates will be based on their individual credentials
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to: Understand basic principles of brain functioning across development (i.e. figure out how the brain works). Learn about how neuropsychiatric and other brain-based disorders develop and progress over time
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computational modeling of behavior to identify the underlying circuit computations. Current projects in our laboratory emphasize task-structured behavior assays, including set shifting, reversal learning