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About the Opportunity Job Summary The Copos Group works on computational and mathematical theoretical models with direct applications to several open problems in cell biology. We are specifically
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, Training, and Experience: Ph.D. in Immunology, Cell Biology, Bioengineering, or a related field. Minimum of 2-3 years of research experience in a relevant area, preferably including postdoctoral work. Proven
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and written communication skills. -Attention to detail and training in research methodology and quantitative data analysis. -Recent or upcoming Ph.D., or equivalent degree, in Cell Biology, Molecular
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. or equivalent degree in a relevant field Preferred Qualifications · Education: Recent or upcoming Ph.D. in Cell Biology, Molecular Biology, Neurobiology/Neuroscience, Biochemistry, Microbiology, or related
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. Additional background in renewable energy, surface science, catalysis, and/or machine learning. Strong programming skills in Python and some exposure to machine learning. Ph.D. in Materials Science, Physics
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there and in the greater Boston area. Key Responsibilities The Postdoc will have the opportunity to develop self-directed research within the scope of existing lab projects on the ecological genomics
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. Additional background in renewable energy, surface science, catalysis, and/or machine learning. Strong programming skills in Python and some exposure to machine learning. Ph.D. in Materials Science, Physics
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at professional conferences, and career development resources through Northeastern University and the Greater Boston area. Opportunities may also exist for the research associate to coordinate one or more ongoing
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functional theory) and high-performance computing. Additional background in renewable energy, surface science, catalysis, and/or machine learning. Strong programming skills in Python and some exposure to
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); darobactin (Imai et al., Nature 2019; Hundeep et al., Nature 2021), hygromycin A (Leimer et al., Cell 2021). We recently developed a microfluidics-based platform for antibiotic discovery that identifies