Research Scientific Director, Molecule AI Development
Listed on 2026-01-12
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IT/Tech
AI Engineer, Machine Learning/ ML Engineer, Data Scientist
Research Scientific Director, Large Molecule AI Development
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Base pay range$/yr - $/yr
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Job DescriptionAt Takeda, we are a forward‑looking, world‑class R&D organization that unlocks innovation and delivers transformative therapies to patients. By focusing R&D efforts on three therapeutic areas and other targeted investments, we push the boundaries of what is possible to bring life‑changing therapies to patients worldwide.
We are seeking a strategic, visionary Research Scientific Director to lead the next generation of AI/ML‑enabled biologics discovery s senior leadership role has two primary mandates:
Drive AI/ML application to accelerate and de‑risk large‑molecule pipeline projects. Build and scale AI/ML platform capabilities as a core competitive advantage for biologics discovery.
You will be a key leader within the AI/ML organization, setting strategy, building partnerships across R&D, and delivering measurable impact on our biologics portfolio. You will be accountable for converting state‑of‑the‑art AI/ML science into validated, production‑grade decision tools that change how Takeda discovers, designs, and optimizes large‑molecule therapeutics.
This role requires a leader who can operate at multiple altitudes, defining long‑term vision and roadmaps while also ensuring scientific rigor, technical depth, and operational excellence in execution.
Key Responsibilities- Drive the AI/ML strategy for antibody and other large‑molecule discovery programs from target assessment through lead optimization.
- Ensure AI/ML activities are aligned with program and portfolio goals, with clear milestones, timelines, and success criteria.
- Deliver production‑grade decision tools (for example, variant ranking, develop ability risk flagging, zero‑shot design) that are seamlessly integrated into discovery workflows.
- Act as a hands‑on technical leader across multiple programs
- Define modeling strategies and architectures
- Prioritize methods and experiments
- Review and challenge scientific output for quality and robustness
- Partner with Discovery Platform Heads and project leaders to embed AI/ML milestones into program plans, stage‑gates, and decision forums (discovery, engineering, mult‑specifics).
- Define and own a multi‑year platform roadmap for large‑molecule AI/ML capabilities, including models, tools, data assets, and infrastructure.
- Lead the development and deployment of foundational models for antibody and protein sequence, structure, and function prediction.
- Drive integration of physics‑based methods (for example, MD, FEP, docking) with machine learning approaches to create hybrid models with improved accuracy and generalization.
- Own data strategy for large‑molecule AI/ML (data requirement, quality standard, governance).
- Partner closely with engineering, computational, and laboratory teams to ensure the platform is usable, reliable, and scalable across programs and sites.
- Build, mentor, and retain a high‑performing, multidisciplinary team of scientists and engineers.
- Provide clear goals, expectations, and development paths and ensure high standards of scientific excellence and reproducibility.
- Champion an inclusive, collaborative, and learning‑oriented culture that values curiosity, rapid iteration, and rigorous validation.
- Communicate complex AI/ML concepts and results clearly to non‑experts, including project teams and senior leadership, enabling data‑driven decision‑making.
- PhD degree in Computational Biology, Bioinformatics, Computer Science, or a related field with 10+ years relevant experience.
- Proven track record of leading AI‑driven projects in a research…
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