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would be joining a growing department with several leaders in clinical AI, bioinformatics, and population health (see https://dbmi.hms.harvard.edu/faculty ). DBMI faculty lead or participate in multiple
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sequencing; (ii) real-time PCR; (iii) DNA/RNA extraction and analysis; (iv) molecular cloning; (v) immunoprecipitation, (vi) bioinformatics and (vii) yeast strain construction (viii) mammalian cell culture and
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with the possibility of extension. Basic Qualifications - MS or PhD in bioinformatics, computational biology, data science, computer science, or a related quantitative field - 2+ years of work experience
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/bioinformatics, implementation science, health economics, clinical psychology, or epidemiology. Additional Qualifications • Record of scholarly publication, including first-authored scientific journal articles
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machine learning for efficacy in bipolar disorder models. Contribute to the design, execution, and analysis of experiments in collaboration with bioinformatics and engineering teams in a fast-paced, team
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experience in AI/ML approaches to computational science, bioinformatics or a related field in your cover letter. A curriculum vitae. A teaching statement. The teaching statement is an opportunity to describe
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imaging, proteomics, genomics, and bioinformatics as well as access to multiple supporting institutions including the Museum of Comparative Zoology, Harvard University Herbaria, Harvard Forest, and the
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participate in the specification, design, and implementation of tools that integrate, search, and display the data, working closely with other data curators, and the software engineering and bioinformatics
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sequencing data. The initial appointment period is funded for one year. Basic Qualifications Candidates should have a PhD in computer science, physics, bioinformatics or a related field, and an interest in
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Postdoctoral Fellow with Assistant Professor Tracy Ke. Assistant Professor Ke’s lab focuses on research in high-dimensional data analysis, machine learning, social network analysis, text mining, bioinformatics