Research Scientist, Molecular Dynamics
Recursion(26 days ago)
About this role
A scientist position on Recursion’s Computational Physics team working within a TechBio platform that combines AI, automation, and large-scale computation to accelerate drug discovery. The role contributes to the company’s efforts to generate molecular-level insights that support discovery and lead optimization. The team focuses on building accurate, automated atomistic models and scalable pipelines to advance drug candidates.
Required Skills
- Computational Physics
- Python
- Molecular Simulations
- Method Development
- Cloud Computing
- Compute Clusters
- Drug Discovery
- Collaboration
- Scientific Communication
- Quantum Mechanics
Qualifications
- PhD in Chemistry, Physics, Computational Chemistry, Computational Physics, or Related Field
About Recursion
recursion.comRecursion is a TechBio company that combines high-throughput experimental biology, automated imaging, and machine learning to decode biology and accelerate drug discovery. Its platform integrates large-scale biological datasets, AI models, and laboratory automation to identify and advance therapeutic candidates across multiple modalities and disease areas. Recursion develops an internal pipeline of programs and partners with biopharma and investors to translate discoveries into clinical-stage medicines. The company emphasizes a platform-first, scalable approach to make drug discovery faster, more reproducible, and more data-driven.
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