Postdoc Research Associate in Bioinformatics/Computational Biology, University of Virginia (UVA)

The laboratory of Chongzhi Zang at the Center for Public Health Genomics, University of Virginia (UVA) is seeking to fill multiple Postdoctoral Research Associate positions in the broad field of bioinformatics and computational biology. The research program in the lab focuses on developing computational methodologies and designing integrative data science approaches to study chromatin epigenomics and gene regulation. Current ongoing projects include: multi-omics integration-based algorithm development for transcriptional regulation prediction; model-based algorithm development for single-cell epigenomics and spatial multi-omics data analysis; statistical and computational modeling of phase-separated transcriptional condensation; global epigenetic and transcriptional regulation in T-cell immunity and various human cancer systems, etc. More information on research directions and previous publications can be found at the lab websitezanglab.org.

The Zang Lab is well funded by NIH and other agencies. Each postdoctoral scientist in the lab will receive comprehensive and personalized training in research and career development, and will have extensive opportunities for independent and collaborative research. Based at the Center for Public Health Genomics in UVA’s School of Medicine, the lab has established close collaborations with multiple labs both within and outside the university, including departments of Biochemistry and Molecular Genetics, Biomedical Engineering, Statistics, UVA Cancer Center and the new founded School of Data Science, as well as several other universities and research institutes.

Founded by Thomas Jefferson, University of Virginia is the first public university and one of the most reputable research universities in the United States. The university continues in its mission to develop tomorrow’s leaders who are well prepared to help shape the future of the nation and the world.

Requirements

1. To qualify for the positions, 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 start date;

2. Proficient in Python (or C/C++) & R programming;

3. Excellent communication and teamwork skills;

4. Strong quantitative background (e.g., statistical modeling, machine learning, computational or theoretical physics, etc.) or computational genomics experience (e.g., next-generation sequencing analysis, etc.);

5. 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.

The University of Virginia is an equal opportunity and affirmative action employer. Women, minorities, veterans and persons with disabilities are strongly encouraged to apply.

Application Process

All positions are restricted and contingent on the continuation of funding. Please direct any questions or inquiries to zang@virginia.edu. The positions will remain open until filled.

For further information regarding the application process, please contact: Greg Haskins at gph3z@virginia.edu.

To apply please visit UVA job board https://uva.wd1.myworkdayjobs.com/UVAJobs, and search for “R0013309”. Complete the application and see below for documents to attach.

Required Application Materials:

  • CV
  • Cover Letter
  • Contact information for 3 references

Please note multiple documents can be submitted in the CV/Resume Box. Applications that do not contain all of the required documents will not receive full consideration.

The selected candidate will be required to complete a background check at time of offer per University Policy.

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