Postdoc Research Associate, Genome Sciences
Virginia Department of Human Resource Management - Charlottesville, VA
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Postdoctoral Research Associate, Genome Sciences The Laboratory of Dr. Chongzhi Zang in the Department of Genome Sciences at the University of Virginia (UVA) is seeking to fill multiple Postdoctoral Research Associate positions in the broad field of bioinformatics and computational biology. The lab's research program focuses on developing computational methods for high-throughput genomics technologies and integrating data science and experimental approaches to study chromatin and gene regulation in mammalian cells and human disease systems. Current ongoing projects include: statistical modeling and advanced machine learning/AI method development for predicting transcriptional regulation from multi-omics data; computational method development for single-cell epigenomic sequencing and image-based spatial-omics data analysis; computational and experimental studies on chromatin regulation, transcriptional condensates, and liquid-liquid phase separation; and research on epigenetics and transcriptional regulation in human cancer and immune systems. The PI, Dr. Chongzhi Zang, is the inaugural Director of Computational Genomics at the UVA Comprehensive Cancer Center and a tenured Associate Professor in the Departments of Genome Sciences, Biochemistry and Molecular Genetics, and Biomedical Engineering at the UVA School of Medicine. Dr. Zang is an accomplished computational biologist who has made significant contributions to high-throughput sequencing bioinformatics, ChIP-seq data analysis, epigenetics and transcriptional regulation. Minimum Qualifications: A Ph.D. or equivalent degree in any quantitative science, including but not limited to Bioinformatics, Computational Biology, Applied Mathematics, Statistics, Physics, Chemistry, Computer Science, Data Science, Engineering, or a related field is required by the start date. Preferred Qualifications: Proficient in Python (or C/C++) & R programming. Strong quantitative background (e.g., statistical modeling, machine learning, computational or theoretical physics, etc.) or computational genomics experience (e.g., high-throughput sequencing data analysis, etc.). At least one peer-reviewed publication written in English in the previous area of research (not necessarily related to biology) with submitted, accepted, or published status at the time of application. This is a 12-month appointment with the possibility of renewal contingent upon satisfactory performance and the availability of funding. Salary is commensurate with education and experience. This is an Exempt level, benefited position. For more information on the benefits at UVA, visit . This position will sponsor applicants for work visa who meet the qualifications. This position will remain open until filled. The University will perform background checks on all new hires prior to employment. A completed pre-employment health screen is required for this position prior to employment. To Apply: Please apply through Careers at UVA, and search for R0066281. Complete an application online with the following documents: CV Cover letter Contact information for 3 references. Upload all materials into the resume submission field, multiple documents can be submitted into this one field. Alternatively, merge all documents into one PDF for submission. Applications that do not contain all required documents will not receive full consideration. Internal applicants: Search and apply for jobs on the UVA Internal Careers website. For questions about the application process, please contact Jessica Russo, Academic Recruiter at sxv9zv@. For more information about UVA and the Charlottesville community please see and . Job Profile J0267 - Research Associate - 12 Month The University of Virginia is an equal opportunity employer. All interested persons are encouraged to apply, including veterans and individuals with disabilities. Learn more about UVA's commitment to non-discrimination and equal opportunity employment.
Created: 2026-03-06