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Assistant Professor of Biology (Tenure-Track) - Comparative or Quantitative Genomics
CUNY
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New York, United States
Location
New York
Posted
June 12, 2026
Commute
Local Area
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Job Description
Assistant Professor of Biology (Tenure-Track) - Comparative or Quantitative Genomics
**FACULTY VACANCY ANNOUNCEMENT**
The Department of Biology at The City College of New York (CCNY) seeks a full-time tenure-track Assistant Professor whose research program incorporates Comparative or Quantitative Genomics. The successful candidate will develop a productive research program in genomics, broadly defined, bridging biological disciplines and working across levels of biological systems. The candidate should use cutting edge genomic approaches to address fundamental questions in biology, which may include immunology, bacterial pathogenesis, neurobiology, developmental biology, disease ecology, or evolutionary biology across any system including non-model organisms (animals, plants, or microbes). Preference will be given to candidates who develop modern genomic tools and statistical approaches that leverage artificial intelligence/machine learning to investigate the forces shaping biolo...
**FACULTY VACANCY ANNOUNCEMENT**
The Department of Biology at The City College of New York (CCNY) seeks a full-time tenure-track Assistant Professor whose research program incorporates Comparative or Quantitative Genomics. The successful candidate will develop a productive research program in genomics, broadly defined, bridging biological disciplines and working across levels of biological systems. The candidate should use cutting edge genomic approaches to address fundamental questions in biology, which may include immunology, bacterial pathogenesis, neurobiology, developmental biology, disease ecology, or evolutionary biology across any system including non-model organisms (animals, plants, or microbes). Preference will be given to candidates who develop modern genomic tools and statistical approaches that leverage artificial intelligence/machine learning to investigate the forces shaping biolo...