Advisor - Scientific Machine Learning Scientist - Drug Delivery Device Development
Company: Eli Lilly and Company
Location: Indianapolis
Posted on: March 3, 2026
|
|
|
Job Description:
At Lilly, we unite caring with discovery to make life better for
people around the world. We are a global healthcare leader
headquartered in Indianapolis, Indiana. Our employees around the
world work to discover and bring life-changing medicines to those
who need them, improve the understanding and management of disease,
and give back to our communities through philanthropy and
volunteerism. We give our best effort to our work, and we put
people first. We’re looking for people who are determined to make
life better for people around the world. Organization Overview: At
Lilly, we serve an extraordinary purpose. We make a difference for
people around the globe by discovering, developing and delivering
medicines that help them live longer, healthier, more active lives.
Not only do we deliver breakthrough medications, but you also can
count on us to develop creative solutions to support communities
through philanthropy and volunteerism. Position Overview: Delivery,
Devices, and Connected Solutions (DDCS) sits within Eli Lilly’s
Product Research & Development organization. We are a diverse team
of scientists and engineers responsible for discovering, designing,
and developing patient-centric drug delivery solutions across a
broad range of modalities — from injection devices to novel routes
of administration and nanomedicines. DDCS drives the drug delivery
innovation agenda across early and late development to meet the
needs of an expanding portfolio that spans small molecules,
biologics, and nucleic acid therapeutics. DDCS is organized around
a matrix model with strong disciplinary and functional horizontals
supporting innovation and commercialization verticals. Our vision
is to get our medicines to more patients faster by accelerating
reach and scale, guided by three strategic pillars: Delivery
Systems, Robust & Sustainable, and Patient Experience Outcomes. The
Modeling & Simulation team within DDCS advances predictive modeling
capabilities across molecular-to-system scales and
single-to-multi-physics domains, integrating scientific machine
learning (SciML) and AI to accelerate design, de-risk development,
and deepen mechanistic understanding for drug delivery systems. We
are seeking an innovative Advisor - Scientific Machine Learning
Scientist to join the Modeling & Simulation team. This role
uniquely combines deep domain expertise in physics and engineering
with cutting-edge machine learning techniques to solve complex
scientific problems that traditional approaches cannot address. You
will develop physics-informed neural networks, hybrid models, and
multi-scale modeling solutions that accelerate device innovation,
optimize formulations, and enhance patient outcomes — while
communicating insights to senior leadership to drive strategic
decisions. This is a hands-on technical role that combines model
development, capability building, and cross-functional
collaboration to inform decisions from molecular interactions and
material behavior to fluid/solid mechanics, device performance, and
patient-use conditions. Responsibilities: Scientific Model
Development & Deployment Design & Build Physics-Informed Models:
Develop physics-informed neural networks (PINNs), operator learning
architectures (DeepONets, FNOs, GNOs), and hybrid modeling
approaches that combine mechanistic/first-principles models with
data-driven ML components to capture complex phenomena in device
performance, drug release kinetics, and patient interactions.
Multi-Scale & Multi-Physics Integration: Build models that
integrate information from molecular to device to patient levels,
incorporating temporal dynamics and heterogeneous data sources;
create surrogate models that efficiently approximate expensive
computational simulations (FEM, CFD) to enable rapid design space
exploration. Uncertainty Quantification & Decision Support:
Implement Bayesian approaches, ensemble techniques, Gaussian
processes, and active learning to provide confidence bounds
critical for medical device safety decisions and regulatory
submissions. Deploy & Scale on Modern Compute: Leverage HPC/GPU
clusters and cloud infrastructure to develop, test, and deploy
models; champion software engineering best practices (version
control, CI/CD, testing, reproducibility, MLOps). Use Case
Identification & Solution Architecture Partner Across Disciplines:
Collaborate with drug delivery scientists, device engineers,
formulation scientists, CAE/CFD specialists, and product
development teams to understand technical challenges and identify
high-impact opportunities for scientific ML applications. Translate
Science to Solutions: Convert complex scientific problems into
appropriate mathematical formulations; select optimal modeling
paradigms; evaluate trade-offs between model complexity,
interpretability, computational cost, and predictive accuracy.
Design End-to-End Workflows: Architect modeling solutions for
device optimization, formulation development, quality prediction,
failure mode analysis, and personalized dosing; integrate
scientific ML models into broader analytics workflows and decision
support systems. Decision Support, Leadership Communication &
Strategic Impact Embed Modeling in the Business: Ensure modeling is
tightly coupled to program milestones, risk assessments, and
regulatory strategy by partnering with engineering, device design,
materials, formulation, human factors, clinical, and quality teams.
Communicate & Influence: Translate complex scientific ML findings
into clear, compelling narratives for both technical experts and
business leaders; present modeling insights and recommendations to
senior leadership to influence device design, formulation
strategies, and development priorities. Quantify Value: Develop
quantitative business cases demonstrating the value of scientific
ML investments in reducing development time, improving product
performance, and mitigating risks; create visualizations that
effectively communicate model predictions, uncertainties, and
actionable recommendations. Research Excellence & Continuous
Innovation Advance State-of-the-Art: Stay current with emerging
techniques in scientific ML, physics-informed learning, and
computational science; establish a technology roadmap for digital
twins, reduced-order models, and multifidelity frameworks. Publish
& Lead Externally: Publish research findings in peer-reviewed
journals and present at scientific conferences to establish thought
leadership; drive external collaboration that amplifies internal
capabilities and impact. Mentor & Raise the Bar: Mentor team
members on scientific computing and hybrid modeling approaches;
contribute to intellectual property development and competitive
differentiation through novel modeling methodologies. Basic
Requirements: PhD in Computational Science/Engineering, Applied
Mathematics, Physics, Chemical/Mechanical/Biomedical Engineering,
or Computer Science (with scientific computing focus) 2 years of
experience conducting independent research on applying expertise in
both domain physics and machine learning toward technical or
business problem solving. Expertise in strategic thinking and
problem framing Experience promoting cross-functional collaboration
in a matrix organization A growth mindset with a passion for
learning, emerging technologies, and working across disciplines.
Additional Preferences: Expert-level proficiency in theory and
application of at least one physics-based method (e.g., molecular
dynamics, CFD, FEA) and foundational knowledge of machine learning
/ deep learning frameworks. Proficiency with Python and scientific
computing libraries (NumPy, SciPy, PyTorch/TensorFlow/JAX);
experience with HPC environments (MPI, GPU/CUDA). Experience in
pharmaceutical, medical device, biotechnology, or healthcare
industries. Understanding of drug delivery mechanisms,
pharmacokinetics/pharmacodynamics, transport phenomena, or
materials science. Breadth across scientific machine learning (ML)
methods: PINNs, operator learning (DeepONets, FNOs, GNOs),
multifidelity surrogates, Gaussian processes, active learning, and
Bayesian UQ/calibration for parameter inference and decision
support. Experience with ASME V&V 40 and model risk
classification Familiarity with verification, validation, and
regulatory submissions for modeling evidence. Hands-on experience
with common tools (illustrative, not prescriptive) in the following
areas: MD tools (LAMMPS, GROMACS, OpenMM); CFD/FEA tools (OpenFOAM,
COMSOL, Abaqus, Ansys); ML frameworks (PyTorch, TensorFlow, JAX,
scikit-learn); workflow/computing (MATLAB, Julia, CUDA, Slurm,
Azure/AWS, Git, containers, CI/CD); data tools (Pandas, MLflow,
DVC). Evidence of linking modeling to business value — portfolio
decisions, design tradeoffs, robustness/DFM, cost/schedule risk
reductions. Excellent communication (visualization, scientific
storytelling) and a record of peer-reviewed publications and
conference presentations. Other Information Travel up to 10%
Position: Indianapolis, IN; Lilly Technology Center – North (LTC-N)
Lilly is dedicated to helping individuals with disabilities to
actively engage in the workforce, ensuring equal opportunities when
vying for positions. If you require accommodation to submit a
resume for a position at Lilly, please complete the accommodation
request form (
https://careers.lilly.com/us/en/workplace-accommodation ) for
further assistance. Please note this is for individuals to request
an accommodation as part of the application process and any other
correspondence will not receive a response. Lilly is proud to be an
EEO Employer and does not discriminate on the basis of age, race,
color, religion, gender identity, sex, gender expression, sexual
orientation, genetic information, ancestry, national origin,
protected veteran status, disability, or any other legally
protected status. Our employee resource groups (ERGs) offer strong
support networks for their members and are open to all employees.
Our current groups include: Africa, Middle East, Central Asia
Network, Black Employees at Lilly, Chinese Culture Network,
Japanese International Leadership Network (JILN), Lilly India
Network, Organization of Latinx at Lilly (OLA), PRIDE (LGBTQ
Allies), Veterans Leadership Network (VLN), Women’s Initiative for
Leading at Lilly (WILL), enAble (for people with disabilities).
Learn more about all of our groups. Actual compensation will depend
on a candidate’s education, experience, skills, and geographic
location. The anticipated wage for this position is $126,000 -
$204,600 Full-time equivalent employees also will be eligible for a
company bonus (depending, in part, on company and individual
performance). In addition, Lilly offers a comprehensive benefit
program to eligible employees, including eligibility to participate
in a company-sponsored 401(k); pension; vacation benefits;
eligibility for medical, dental, vision and prescription drug
benefits; flexible benefits (e.g., healthcare and/or dependent day
care flexible spending accounts); life insurance and death
benefits; certain time off and leave of absence benefits; and
well-being benefits (e.g., employee assistance program, fitness
benefits, and employee clubs and activities).Lilly reserves the
right to amend, modify, or terminate its compensation and benefit
programs in its sole discretion and Lilly’s compensation practices
and guidelines will apply regarding the details of any promotion or
transfer of Lilly employees. WeAreLilly
Keywords: Eli Lilly and Company, Indianapolis , Advisor - Scientific Machine Learning Scientist - Drug Delivery Device Development, Science, Research & Development , Indianapolis, Indiana