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Senior Computational Biologist

LinkedIn Parallel Bio San Francisco, CA
Not Applicable Posted March 13, 2026 Job link
Responsibilities

On the Modeling & Methods Development team at Parallel Bio, you'll invent and refine statistical and computational approaches for immune organoid data, shared representations, and multi-omics integration to answer key biological questions. You will own immune profiling analyses across diverse assays, characterize response signatures and donor variability, guide experimental design and statistical best practices, and ensure data quality, standards, and robust analytical infrastructure in collaboration with scientists and engineers. You will also produce clear visualizations and documentation, and communicate assumptions, limitations, and findings to scientific, engineering, and leadership stakeholders.

Commitments

Parallel Bio is committed to being an equal opportunity employer and to maintaining an inclusive, respectful workplace for all employees.

Not Met Priorities
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Requirements
  • Strong quantitative foundation (statistics, applied math, CS, engineering, or equivalent) and a track record of solving ambiguous modeling and data analysis problems
  • Experience analyzing high-dimensional biological data (single-cell, cytometry, proteomics, functional assays, or similar)
  • Immunology knowledge through formal training or hands-on research - you understand what biological questions matter and what the data represents
  • Proficiency in Python and/or R for rapid, readable prototyping, with version control as standard practice
  • Ability to translate across disciplines and drive work to completion in a fast-moving environment
  • Bayesian/hierarchical modeling, causal inference, mechanistic-statistical hybrids, or ML approaches for biological data
Preferred Skills
  • Bayesian/hierarchical modeling, causal inference, mechanistic-statistical hybrids, or ML approaches for biological data
  • Experience with organoid systems or primary human tissue models
  • Experience partnering with engineers to productionize data products (data contracts, validation checks, reference datasets)
  • Track record training and stress-testing models on large biological datasets, with attention to generalization, robustness to distribution shift, and reusable representations
  • Familiarity with cloud/cluster computing for scaling analyses