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, CV, and contact information for three references to: gordon_freeman@dfci.harvard.edu Pay Transparency Statement The hiring range is based on market pay structures, with individual salaries determined
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signaling. Use advanced techniques such as CRISPR/Cas9 gene editing, protein biochemistry, mass spectrometry, and live-cell imaging. Analyze data, interpret results, and present findings at internal and
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laboratory research scientists. For more information, please see the laboratory website . The Project As a Postdoctoral Fellow, you will contribute to a cutting edge project investigating the fundamental
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, gender identity or expression, national origin, sexual orientation, genetic information, disability, age, ancestry, military service, protected veteran status, or other characteristics protected by law.
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experiments, including developing pipelines for data analysis. They will be an integral part of the team comprised of the PI and PGR students, and will assist with the training and mentoring of the students
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& molecular biology technique, and mouse studies. • Demonstrates strong proficiency in computer software applications, including databases, spreadsheets, and word processing tools. • Demonstrates high levels
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generating unbiased, systematic data can give new and unexpected insights into biology. That has been at the core of our work ranging from genome-scale RNAi screens to systematic mapping of genetic
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, viability, cytokine readouts), and imaging/flow cytometry. Maintain rigorous records, QC, and SOP adherence for human biospecimens. Analyze/interpret data with basic scripting skills (R/Python) and
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integrating molecular data. Pay Transparency Statement The hiring range is based on market pay structures, with individual salaries determined by factors such as business needs, market conditions, internal
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interception studies aimed at identifying biological and behavioral targets for preventing progression from premalignant to invasive disease Integration of lifestyle, metabolic, and genomic data to refine early