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-based model for implementing similar changes more broadly. The position target start date is no later than June 1, 2026 with preference for a candidate who can start in Fall 2025 or Spring 2026
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modeling, LLM and/or NLP, behavioral coding, and/or psychophysiological monitoring. For consideration, please click the link below to apply and submit all required application materials: https
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, particularly of non-model organisms Computer programming and experience with the solution of numerical problems, machine vision, and analysis of next-generation sequencing data High-throughput screening
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Ph.D. in molecular biology, cell biology, biochemistry or neuroscience. Prior research experience in mouse models, and/or membrane trafficking and lysosome biology will be a plus. Interested candidates
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prior experience doing so is not required. Additional beneficial but optional experience and skills include multi-level modeling, LLM and/or NLP, behavioral coding, and/or psychophysiological monitoring
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appreciation of others will help ensure the lab operates smoothly and remains a space for meaningful scientific discovery. Prior research experience in neuronal and immune cell model systems, the fields
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and sizes are altered by polyploidy in response to stress; be able to collaborate with teams working on other organisms (yeast, Drosophila , duckweed, Chlamydomonas , and Arabidopsis) and modelers
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. This information will be used to develop risk assessment models for mitigating insecticide resistance. This position will require collaboration with other entomologists, plant breeders, extension educators
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to develop and optimize protocols for various ‘omic techniques (single cell transcriptomics, proteomics, etc.) and other techniques for assaying protein function in non-model organisms at different life stages
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for R and Echoview, and statistical modeling. Interest in fisheries, fisheries acoustics, aquatic ecology, and spatial ecology. Evidence of ability to work collaboratively as well as independently