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Postdoctoral Associate in Optimization Modeling The School of Civil and Environmental Engineering at Cornell University seeks a postdoctoral associate. The positions can be remote (but the home
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molecular biology techniques such as DNA extraction, PCR, or qPCR. Experience analyzing biological data using command line tools, R, SAS, or similar analytical software. Familiarity with bioinformatic
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transferring ideas and technology – to advance knowledge and improve the human condition. Explore how we are tackling critical challenges at the forefront of biology and medicine, and shaping a healthier, more
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. Behind every breakthrough is a dedicated community of scientists, support staff, and students asking bold questions, undertaking cutting-edge research, and transferring ideas and technology – to advance
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within an interactive research group consisting of Cornell and agency scientist. Specifically, the individual will: 1) Analyze acoustic data with existing software (Echoview, R, Python). 2) Collaborate
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across multiple ecologically relevant scales to inspire and inform the conservation of wildlife and habitats. Our highly interdisciplinary team of scientists, educators, engineers, students, and research
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development economics. Faculty members in the Dyson School frequently collaborate with colleagues in Computer and Information Sciences, Economics, Engineering, Natural Resources, and other units on campus
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community of scientists, support staff, and students asking bold questions, undertaking cutting-edge research, and transferring ideas and technology – to advance knowledge and improve the human condition
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, or field settings. Experience with molecular biology techniques such as DNA extraction, PCR, or qPCR. Experience analyzing biological data using command line tools, R, SAS, or similar analytical software
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their impact on gene expression. Contribute to large-scale modeling of engineered traits to predict performance and optimize design. Required Qualifications: PhD in the field of genomics, evolution, population