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Computational Biologist

LinkedIn Proxima Greater Boston
Not Applicable Posted March 3, 2026 Job link
Responsibilities

On the Proxima team in Greater Boston, you'll build pilot capabilities and large-scale data pipelines from the ground up, integrating biological insights into next-generation AI/ML models for drug discovery. You will collaborate with cross-functional teams at Proxima and partner organizations, contributing code, analyses, benchmarks, optimizations, and ideas to research-driven projects. You will also work closely with experimentalists to validate and interpret computational predictions.

Commitments

Proxima offers an inviting workplace with in-office lunch provided five days per week, 18 weeks of fully paid maternity leave and 6 weeks of paternity leave, and country-specific benefits for US-based full-time employees located outside the US.

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Requirements
  • Hold an MSc or PhD degree in computational biology, bioinformatics or a related field
  • Possess mixed academic and/or industrial experience, preferably in the biotech industry
  • Have a strong background in computational structural or systems biology
  • Demonstrate strong programming skills in Python, R and/or other languages
  • Experience building reproducible and scalable computational biology workflows
  • Experience designing and applying machine learning models
Preferred Skills
  • Experience with geometric deep learning, graph neural networks, protein language models, transformers and representation learning is a plus
  • Preferably have prior exposure to drug discovery problems
  • Experience working with cloud-based infrastructure
  • Agile project management
Education
  • (Not required) – Hold an MSc or PhD degree in computational biology, bioinformatics or a related field
  • (Not required) – Possess mixed academic and/or industrial experience, preferably in the biotech industry
  • (Not required) – Have a strong background in computational structural or systems biology