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Position Details Position Information Recruitment/Posting Title Post Doctoral Associate- Gliniak Lab Department Nutritional Sciences Salary Details $63,968 Offer Information The final salary offer
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(PI). The scope of the work is primarily as a member of the Singson Lab research time. However scientific interactions at the Waksman Institute, Department of Genetics, and other relevant units will be
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). The candidate should have strong interests in exploring novel immune cells and the mechanisms of human health and disease. In addition, the Postdoc(s) will participate in lab meetings, research in progress
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. Under the direction of the Principal Investigator, the Postdoctoral Associate will assist in multiple aspects of the lab's research, including study design, data collection, study management, data
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office environment and lab environment. Moderate noise and foot traffic. Posting Number: 26ST0686 Create a Job Match for Similar Jobs About Rutgers University Rutgers, The State University of New Jersey
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Segment Care image labels; shape active-learning loops and QC. Productionize models with PyTorch, Docker/Kubernetes, and AWS/SageMaker Prepares manuscripts for publications. Ensure all members of the lab
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savings options Employee and dependent educational benefits (when applicable) Life insurance coverage Employee discount programs Posting Summary The Izgu research lab in Department of Chemistry and Chemical
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on independent laboratory research under the guidance of the Principal Investigator. The lab primarily investigates DNA damage repair mechanisms and cancer development. Key research areas include exploring
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contribution plans and voluntary tax-deferred savings options Employee and dependent educational benefits (when applicable) Life insurance coverage Employee discount programs Posting Summary The Kaelber lab is
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programs Posting Summary Prof. Kaelber is recruiting a “dry lab” scientist for methods development in evolutionary biology. The postdoctoral associate will develop and benchmark methods for evolutionary