Overview
The Manager, Bioinformatician, will lead data science and computational research operations within a multidisciplinary research environment at the intersection of biomedical science, systems biology, and translational health care research. This position requires deep expertise in multimodal biomedical data integration and advanced quantitative and computational approaches for analyzing large-scale biological data. The Mgr, Bioinformatician will oversee complex research projects, ensure rigor and reproducibility of data pipelines, collaborate with external foundations and industry partners for data analysis, and provide mentorship and leadership to a team of bioinformaticians, data scientists, and trainees.
This position is designed to recognize and formalize advanced contributions beyond senior bioinformatics responsibilities, with an emphasis on research program leadership, cross-disciplinary collaboration, and data stewardship for high-impact publications, grants, and translational partnerships.
Responsibilities
Responsibilities
Data & Research Leadership
Direct design, implementation, and maintenance of computational pipelines for large-scale biological and multi-omic data.
Lead the application of advanced statistical, computational, and machine learning approaches to analyze complex biological systems.
Manage integration of multi-modal data types (e.g., genomic, metabolomic, transcriptomic, and clinical datasets) using appropriate quantitative methods..
Oversee quality control, reproducibility, and compliance with institutional and federal data management standards.
Support and advise principal investigators, collaborators, and external partners to conceptualize new projects, write grants, and publish findings in high-impact journals.
Management & Supervision
Provide day-to-day management of bioinformatics and data analysis staff, including task assignment, workflow prioritization, and performance review.
Mentor PhD students, postdoctoral researchers, and junior staff in advanced computational methods and best practices.
Foster a collaborative team culture that bridges computational and experimental scientists.
Strategic & Translational Impact
Ensure data pipelines and models are adaptable for clinical and translational applications across a range of health-related research areas.
Drive innovation in computational methods, including scalable data processing, and advanced analytical frameworks..
Contribute to intellectual property development, external collaborations, and industry partnerships where relevant.
Qualifications
REQUIRED QUALIFICATIONS:
PREFERRED QUALIFICATIONS:
Additional Information
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