384 machine-learning-"https:" "https:" "https:" "https:" "https:" "https:" "UCL" positions at Nature Careers in United States
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and Computer Engineering (ECE) at Colorado State University (CSU) invites applications and nominations for a tenure track faculty position to start in Fall 2026. Candidates are sought with interests
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learning. We are proud to be part of progress, working together with the communities we serve to share knowledge and bring greater understanding to the world. For more information, please visit
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(BBE). Learn more about BBE here: https:///www.youtube.com/watch?v=3fy54CWYWEk . The department also leads a newly awarded NIEHS Training Grant in Environmental Neuroscience, in collaboration with
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meaningful and competitive benefits. Visit us at https://www.northwestern.edu/hr/benefits/index.html to learn more. When applying, please upload a CV and cover letter describing your interest and alignment
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at https://policy.psu.edu/policies/ac21 Interested candidates must submit an online application at Penn State's Job Posting Board , and should upload the following application materials: a cover letter
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at https://policy.psu.edu/policies/ac21 Interested candidates must submit an online application at Penn State's Job Posting Board , and should upload the following application materials: a cover letter
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Molecular Mechanisms and Translational Cancer Research A postdoctoral fellow position is available in the Brugarolas lab (https://brugarolaslab.com/research-summary/ ) Research in the lab spans
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cells 4. Roles of retinoic acid and its receptor in regulation of the immune system, focusing on T and DC regulation 5. Immunotherapies and chimeric antigen receptor (CAR) therapies Lab website: https
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determined by rank and step at appointment. See [Table 5](https://www.ucop.edu/academic-personnel-programs/_files/2025-26/policy-covered-october-2025-scales/t5-summary.pdf ). The minimum base salary range
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of novel mechanistic insights is gained through the application of novel probabilistic deep-learning models that automatically extract biological and statistical knowledge from your in vivo perturbational