Research Scientist, AI/ML Foundational Models
応募 後で応募 求人ID R0172622 掲載日 01/16/2026 Location:Boston, MassachusettsBy clicking the “Apply” button, I understand that my employment application process with Takeda will commence and that the information I provide in my application will be processed in line with Takeda’s Privacy Notice and Terms of Use. I further attest that all information I submit in my employment application is true to the best of my knowledge.
Job Description
Title: Scientist, AI/ML – Foundational Models
Position Overview
We are seeking Scientists to develop and deploy foundational AI models that will transform drug discovery across Takeda. As part of the AI/ML Foundation team, you will build large-scale models including large language models (LLMs), diffusion models, and multimodal architectures that integrate diverse data types—omics, biomedical imaging, protein 3D structures, and molecular representations. This role requires deep expertise in modern deep learning architectures combined with foundational knowledge of biology, chemistry, and disease biology to ensure models are scientifically grounded and impactful. You will train models from scratch, fine-tune pre-trained models for Takeda-specific applications, and deploy foundation model capabilities that accelerate discovery across all therapeutic platforms.
Key Responsibilities
- Develop and train foundational AI models (LLMs, diffusion models, flow-matching architectures) for drug discovery applications, with capability to pre-train on large-scale scientific corpora and molecular datasets.
- Fine-tune and adapt pre-trained foundation models (protein language models, chemical LLMs, vision transformers) for Takeda-specific applications in target identification, disease modeling, and molecular design and discovery.
- Build multimodal foundation models integrating diverse data types including omics (genomics, transcriptomics, proteomics), biomedical imaging, protein 3D structures, and molecular representations.
- Apply and extend state-of-the-art approaches including graph neural networks, transformer-based protein language models, and multimodal learning frameworks.
- Apply domain expertise in biology, chemistry, and/or disease biology to guide model architecture decisions, training data curation, and evaluation strategies ensuring scientific validity.
- Implement state-of-the-art generative architectures (diffusion, score-based models, autoregressive transformers) for molecular generation, protein design, and multi-objective optimization.
- Collaborate with computational scientists across domains to deploy foundation models that address diverse discovery needs across small molecules, biologics, and emerging modalities.
- Stay current with advances in foundation models, generative AI, and multimodal learning; contribute to internal knowledge sharing and external publications.
Qualifications
Required:
- PhD degree in a scientific discipline (or equivalent), or
- MS with 6+ years relevant experience, or BS with 8+ years relevant experience Deep expertise in modern deep learning architectures including transformers, diffusion models, and/or generative models.
- Strong experience training large-scale models with proficiency in PyTorch and distributed training frameworks.
- Foundational knowledge of biology, chemistry, or disease biology sufficient to guide scientifically meaningful model development.
- Experience with at least one of: protein language models (ESM, ProtTrans), molecular generative models, or biomedical vision models.
- Experience with cloud computing (AWS, GCP) and GPU cluster training at scale.
Preferred:
- Experience building or fine-tuning foundation models in pharmaceutical or life sciences settings.
- Expertise in multimodal learning integrating text, images, and structured molecular data.
- Experience with omics data analysis (genomics, transcriptomics, proteomics) and knowledge graph
- Familiarity with protein structure prediction and 3D molecular representations.
- Publications in top-tier ML venues (NeurIPS, ICML, ICLR) or computational biology journals.
- Experience with model compression, efficient inference, or production deployment of large models.
- Strong background in large-scale data integration and multimodal modeling for biological systems.
- Proficiency in Python and ML libraries (PyTorch, TensorFlow, scikit-learn); familiarity with Unix tools.
- Excellent collaboration and communication skills.
Additional Competencies Common in Strong Candidates
- Ability to lead cross-functional initiatives and mentor junior scientists.
- Experience in translating computational insights into experimental strategies.
- Strong publication record or demonstrated thought leadership in AI for biology and molecular design.
- Comfort working in fast-paced, innovation-driven environments with evolving priorities.
ADDITIONAL INFORMATION
The position will be based in Cambridge, MA.This position is currently classified as “hybrid” by Takeda’s Hybrid and Remote Work policy
Takeda Compensation and Benefits Summary
We understand compensation is an important factor as you consider the next step in your career. We are committed to equitable pay for all employees, and we strive to be more transparent with our pay practices.
For Location:
Boston, MAU.S. Base Salary Range:
$111,800.00 - $175,670.00
The estimated salary range reflects an anticipated range for this position. The actual base salary offered may depend on a variety of factors, including the qualifications of the individual applicant for the position, years of relevant experience, specific and unique skills, level of education attained, certifications or other professional licenses held, and the location in which the applicant lives and/or from which they will be performing the job. The actual base salary offered will be in accordance with state or local minimum wage requirements for the job location.
U.S. based employees may be eligible for short-term and/ or long-term incentives. U.S. based employees may be eligible to participate in medical, dental, vision insurance, a 401(k) plan and company match, short-term and long-term disability coverage, basic life insurance, a tuition reimbursement program, paid volunteer time off, company holidays, and well-being benefits, among others. U.S. based employees are also eligible to receive, per calendar year, up to 80 hours of sick time, and new hires are eligible to accrue up to 120 hours of paid vacation.
EEO Statement
Takeda is proud in its commitment to creating a diverse workforce and providing equal employment opportunities to all employees and applicants for employment without regard to race, color, religion, sex, sexual orientation, gender identity, gender expression, parental status, national origin, age, disability, citizenship status, genetic information or characteristics, marital status, status as a Vietnam era veteran, special disabled veteran, or other protected veteran in accordance with applicable federal, state and local laws, and any other characteristic protected by law.
Locations
Boston, MAWorker Type
EmployeeWorker Sub-Type
RegularTime Type
Job Exempt
YesIt is unlawful in Massachusetts to require or administer a lie detector test as a condition of employment or continued employment. An employer who violates this law shall be subject to criminal penalties and civil liability.