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Staff Computational Biologist

Recursion
Full-time
Remote friendly (Salt Lake City, UT)
United States
$200,600 - $238,400 USD yearly
Clinical Research and Development

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Role Summary

Staff Computational Biologist at Recursion. Lead computational efforts across early-stage drug discovery programs, define research strategy using platform data, and collaborate with biology, chemistry, and engineering teams to translate large-scale data into therapeutic programs.

Responsibilities

  • Evaluate molecular evidence for therapeutic hypotheses and accelerate drug program progression into the clinic
  • Architect quantitative analyses and experiment cascades that combine diverse datasets to drive key program decisions
  • Pilot novel methods for patient stratification and indication selection or expansion
  • Deliver biological insights on therapeutic candidates and disease biology from high-dimensional datasets (phenomics, transcriptomics, patient-derived) to support proof-of-concept model selection and asset prioritization
  • Present data analysis to decision makers and stakeholders in a clear and compelling way to drive toward getting medicines to patients
  • Industrialize analysis approaches to solve current projects and accelerate future projects, scaling impact
  • Collaborate cross-functionally with data science, platform, ML, and clinical teams to translate large-scale data assets into therapeutic programs

Qualifications

  • PhD in computational biology, systems biology, bioinformatics, cancer biology, immuno-oncology, or related field with strong computational focus and 5+ years in biotech/pharma, or MS with 7+ years in biotech/pharma solving fundamental problems in oncology/drug discovery
  • Experience with two or more disease indications; strong understanding of patient genetics and druggability of relevant pathways
  • Experience in early target discovery, hit identification and hit-to-lead stage gates
  • Experience applying computational methods (probabilistic, statistical, machine learning) to analyze and integrate complex biological/human clinical data in Python or R
  • Deep expertise in two or more omics modalities (phenomics, transcriptomics, proteomics, genomics) including matched clinical and molecular patient data
  • Exceptional data visualization skills
  • Excellent cross-functional communication, able to explain complex scientific concepts to diverse audiences using plots, documents, and presentations

Nice To Have

  • Experience analyzing imaging-based data
  • Experience prioritizing compounds during SAR and lead optimization cycles

Education

  • PhD or MS in a relevant field with strong computational focus as described above
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