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Computational Biologist, Single Cell Genomics, Satija Lab

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New York Genome Center

New York, NY (In Person)

Full-Time

Posted 1 week ago (Updated 1 week ago) • Actively hiring

Expires 6/22/2026

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Job Description

The Satija lab at the New York Genome Center is looking for an enthusiastic and highly motivated computational biologist. We encourage applications from talented scientists, who are interested in gaining experience in a multidisciplinary, international, and dynamic research environment. The successful candidate will work closely to PhD students, postdoctoral fellows, and computational biologists in the lab to develop new statistical methods and software for the analysis of single cell datasets. This is an exciting opportunity to learn about the latest developments in the growing space of single cell genomics while contributing to new research in cancer immunology and developmental neuroscience.
Job duties will include:
Develop computational methods to analyze single-cell genomics datasets Contribute to the codebase, development, and support of open-source software packages Assist in data analysis and interpretation for diverse research projects Help to manage lab servers and computational infrastructure Document and present results in written or oral reports to other lab members About the Satija Lab Dr. Satija's lab studies the causes and consequences of cellular heterogeneity in complex biological systems. His group is particularly interested in single cell genomics, with active development in both the dry and wet lab. The lab integrates novel statistical and machine learning-based methods with experimental analysis in order to better understand how cells work together to drive biological processes and behaviors.