Research Scientist, AI/ML Biologics - Methods Development - Method
Company: Takeda
Location: Boston
Posted on: January 8, 2026
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Job Description:
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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 At 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. The AI/ML
organization at Takeda is building a team to transform how
medicines are discovered. Our goal is to apply AI and machine
learning across the entire drug discovery process, not just
isolated steps, but as an integrated approach from target
identification through development. This requires discernment:
knowing which models and methods fit each problem, and the
creativity to adapt when they don't. We work with foundational
models, generative approaches, and autonomous systems, but the
tools only matter when paired with people who understand the
science deeply enough to use them well. Our team brings together
computational scientists, biologists, engineers, and drug hunters.
If you want to contribute your expertise to hard problems alongside
colleagues with different perspectives and help shape how AI
delivers real impact in drug discovery, we'd like to hear from you.
Objective / Purpose: We are seeking a skilled and motivated
Scientist to join our Large Molecule AI/ML team within
Computational Sciences. This role focuses on developing and
applying machine learning methods to accelerate antibody discovery
and optimization on active pipeline projects. You will work closely
with protein engineers, computational scientists, and experimental
teams to deliver predictive models that directly impact candidate
selection and developability assessment. The ideal candidate
combines strong ML fundamentals with an interest in biologics and
thrives in a fast-paced, collaborative R&D environment.
Accountabilities: Develop and implement machine learning models for
antibody property prediction, including developability attributes
(stability, aggregation, immunogenicity, viscosity) to support
active discovery programs. Build predictive tools that rank
antibody candidates, flag potential liabilities, and suggest
sequence modifications for improved properties. Benchmark and
evaluate external computational methods and commercial AI
platforms; recommend best-in-class tools for integration into
internal workflows. Innovate, develop, and apply predictive models
for protein design and developability engineering, utilizing
large-scale NGS, in vitro, in vivo and other proprietary in-house
and external data sources. Investigate transfer learning and
few-shot learning approaches to enable rapid model deployment on
new antibody formats (multi-specifics, VHH, ADCs) with limited
training data. Collaborate with experimental teams to validate
predictions against assay data, iterate on model development, and
integrate AI/ML outputs into Design-Predict-Make-Confirm cycles.
Establish and maintain AI performance dashboards and KPIs to track
prediction accuracy, model reliability, and impact on project
timelines. Stay current with advances in machine learning for
protein science and contribute to internal knowledge sharing.
Education & Competencies (Technical and Behavioral): Required: PhD
in Computational Biology, Bioinformatics, Computer Science, or
related field, OR MS with 6 years relevant experience, OR BS with
10 years relevant experience. Proven track record in developing
machine learning models for biological or chemical data.
Proficiency in Python and machine learning frameworks (PyTorch,
TensorFlow, or scikit-learn). Experience with protein sequence
analysis and understanding of antibody structure-function
relationships. Strong analytical and problem-solving skills with
demonstrated ability to work both independently and
collaboratively. Excellent communication skills to convey complex
computational concepts to diverse scientific audiences. Preferred:
Experience with protein language models (ESM, ProtTrans) or other
deep learning architectures for protein property prediction.
Familiarity with antibody developability assessment (stability,
aggregation, immunogenicity). Experience with transfer learning or
active learning approaches. Prior experience in pharmaceutical or
biotech R&D environment. Experience with cloud computing (AWS,
GCP) and version-controlled ML pipelines. 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. 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,
MA U.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, MA Worker Type
Employee Worker Sub-Type Regular Time Type Full time Job Exempt Yes
It 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.
Keywords: Takeda, Hartford , Research Scientist, AI/ML Biologics - Methods Development - Method, Science, Research & Development , Boston, Connecticut