Job Description
Generate:Biomedicines is a clinical-stage generative biology company pioneering the AI revolution in drug design and development. They are seeking a Computational Scientist to join their Model-Driven Design team, where the role involves developing and optimizing de novo protein generation protocols while collaborating with cross-functional teams to advance therapeutic development. Responsibilities Develop, validate, and productionize de novo protein generation protocols and optimization techniques on our experimental platform, using measured data in-the-loop to iteratively refine models across modalities and therapeutic applications Design, interpret, and implement biophysical and functional metrics for evaluating generated designs, leveraging existing literature, adapting known metrics to new contexts, and performing original research to benchmark and deploy new scoring approaches Rigorously evaluate new models and tools and provide quantitative conclusions on where they are best applied to generate new therapeutics, including designing systematic internal benchmarks and discovering how to expand model capabilities to prosecute new therapeutic targets in novel ways and to maximize reuse across targets and programs Identify and implement solutions to create new therapeutics through mechanisms of action unlocked by de novo tools and modalities Work closely with experimental colleagues, biologists, and clinical scientists to define design objectives, interpret experimental readouts, and guide iterative design-build-test-learn cycles that advance programs Push forward sequence–structure–function understanding with a focus on reusable platform capabilities and model-informed feedback loops Leverage agentic AI tools to rapidly iterate on models, benchmarks, scores, critics, and other analysis tools, accelerating the pace of discovery Develop robust, production-ready code in a collaborative team setting and present scientific progress in regular research meetings Skills PhD in Computational Biology, Biophysics, Computer Science, or a related field, with demonstrated experience in protein design applications 0–2 years of experience applying computational and/or ML methods to protein design, modeling, or prediction Hands-on experience with machine learning and generative modeling for protein design, including familiarity with modern methods such as RFDiffusion, ProteinMPNN, BindCraft, BoltzDesign, or equivalent approaches and how to deploy or evaluate them in practice Strong structural intuition and understanding of protein biophysics with the ability to quickly assess and adapt design methods and metrics to new problems Familiarity with protein therapeutic modalities such as antibodies, mini-proteins, VHHs, peptides, or enzymes, and an eagerness to deepen expertise across these within de novo design workflows Proficiency in Python and scientific computing; comfort working in a production codebase Experience designing, running, or interpreting benchmarks for computational or generative methods and drawing quantitative conclusions about model applicability and limitations Experience designing, executing, and interpreting experiments and experimental data (e.g., binding assays, stability measurements, structural characterization) and using those readouts to inform computational design iterations Familiarity with agentic AI tools and their integration into scientific workflows Exposure to structure-based design techniques and computational tools for modeling protein-protein interactions Track record of translating research ideas into working software or reusable platform components used across multiple projects or applications Benefits Annual bonus Equity compensation Competitive benefits package Company Overview Pioneering generative biology to create breakthrough therapeutics. It was founded in 2018, and is headquartered in Somerville, Massachusetts, USA, with a workforce of 201-500 employees. Its website is Company H1B Sponsorship Generate:Biomedicines has a track record of offering H1B sponsorships, with 1 in 2026, 7 in 2025, 12 in 2024, 9 in 2023, 3 in 2022, 2 in 2021, 1 in 2020. Please note that this does not guarantee sponsorship for this specific role.