Lead bioinformatic and data science efforts focused on single‑cell RNA‑seq (scRNA‑seq) data, including experimental design support, data processing, quality control, and downstream analysis. Apply advanced statistical, machine learning, and AI methods to single‑cell transcriptomic data to identify cell states, trajectories, biomarkers, and mechanistic insights relevant to clinical outcomes. Integrate scRNA‑seq data with complementary data types (e.g., bulk RNA‑seq, genomics, clinical metadata) to support translational and clinical decision‑making. Analyze and interpret single‑cell TCR sequencing (scTCR‑seq) data to characterize T‑cell clonality, diversity, and clonal dynamics in clinical cell therapy studies. Integrate scRNA‑seq and scTCR‑seq data to link T‑cell receptor repertoire features with transcriptional states, phenotypes, and clinical outcomes. Design and implement custom analytical tools and models tailored to cell therapy and immunology research questions. Collaborate closely with biologists, clinicians, and cross‑functional teams to translate single‑cell analytics into actionable insights for ongoing clinical programs. Contribute to the development of analytical models for clinical NGS and single‑cell data in regulated environments. Establish and maintain reproducible, scalable data architectures using cloud platforms and/or high‑performance computing resources. Build and manage code repositories, documentation, and best practices for single‑cell data analysis. Communicate complex analytical methods and findings through clear reports, visualizations, presentations, and collaborative discussions. Stay current with emerging single‑cell technologies, methods, and tools, and proactively incorporate them to improve analytical approaches.
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Job Type
Full-time
Career Level
Senior