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Previous Job Job Title Post-Doctoral Associate - Data-Driven Literacy Lab Next Job Apply for Job Job ID 368178 Location Twin Cities Job Family Academic Full/Part Time Full-Time Regular/Temporary
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applications from diverse candidates and are committed to creating an inclusive and supportive research environment. Job Responsibilities Data Analysis and Publication (50%) Test hypothesis around developmental
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Preferred Qualifications: • Demonstrated productivity through first-author and collaborative publications in immunology • Strong background in experimental design, statistical data analysis, and data
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extraction and RT-PCR. Prepare samples for next generation sequencing (NGS) and analysis of NGS data. Assist in projects involving bacteria and bacteriophages. Work after hours and on weekends as needed. Use
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of Biochemistry, Molecular Biology, and Biophysics (BMBB) and the Department of Genetics, Cell Biology and Development (GCD). Salary will be according to NIH scale. For more information, please visit our lab
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flexibility in schedule and/or work location. Please note that 100% remote work requires approval prior to offer. Job Responsibilities Data management and analysis (40%) Establish data management infrastructure
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-dimensional/multicolor panel design, immune phenotyping, and data analysis • Skilled in molecular biology techniques including RNA/DNA isolation, qPCR, ELISA, gene knockdown, and magnetic-assisted cell sorting
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) Qualifications Essential Qualifications PhD in forestry or closely related field such as land resources Preferred Qualifications Have experience with bark beetles, tree defenses, and climate data Have experience
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generation • Experience with RNA-seq data analysis • Strong written and verbal communication skills, demonstrated through peer-reviewed publications and conference presentations Preferred Qualifications
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Class Acad Prof and Admin Add to My Favorite Jobs Email this Job About the Job Duties: 1) Conduct research and provide technical assistance to the PI, students, and trainees on data analyses related