Engineer - MLOps & Scientific Platforms - Data Foundry
Company: Eli Lilly and Company
Location: San Francisco
Posted on: March 20, 2026
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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. Location: San Diego, CA;
San Francisco, CA; Boston, MA; Louisville, CO; Indianapolis, IN
Reports to: Lead, Scientific Software Engineering (R7–R9),
Architecture4InsightOrganization 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. Overview Lilly Small Molecule
Discovery is purpose-built to create molecules that make life
better for people. Discovery Technology and Platforms (DTP)
accelerates molecule discovery by building optimized foundational
platforms, streamlining lab operations through advanced
technologies and data connectivity, and investing in novel
capabilities. Data Foundry is a multidisciplinary team within DTP
that enables AI-native drug discovery through four integrated
pillars: Architecture4Insight (data infrastructure and scientific
software), Methods4Insight (analytical and computational methods),
Automation & Scale4Insight (lab automation and agentic workflows),
and Preparedness4Insight (data governance and readiness). These
pillars empower every Lilly scientist to make optimal decisions by
providing seamless access to data, insights, and AI-driven
capabilities—serving both human scientists and autonomous AI
agents. Position Summary We are seeking an Engineer - MLOps &
Scientific Platforms - Data Foundry to operationalize Data
Foundry’s scientific tools and analytical methods into
actionable-prototypes. You will build the ML deployment pipelines,
model serving infrastructure, API layers, and observability
guardrails that make our scientific discovery methods and tools
reliable, scalable, and consumable, both by discovery scientists
and by the Frontier AI group’s autonomous agents. This role sits at
the interface between Methods4Insight (which develops analytical
methods) and Architecture4Insight (which provides the agile data
infrastructure). Your job is to ensure every scientific tool Data
Foundry produces are analytics-ready, well-monitored, and exposed
through APIs with the response-time guarantees and error handling
that both human users and AI agents require. Responsibilities MLOps
& Model Lifecycle Management Build and maintain end-to-end ML
deployment pipelines: experiment tracking, model versioning
(MLflow, Weights & Biases), containerized model serving, and
automated retraining triggers. Develop model registry
infrastructure and feature engineering pipelines that enable
computational scientists to access models. Implement monitoring and
alerting for data pipelines, APIs, ML models, and agentic systems
(LLMOps) to ensure system reliability and performance at scale.
Build dashboards and metrics tracking for pipeline execution, API
latency, token usage, model prediction quality, and system health
Establish structured logging and tracing infrastructure for
debugging and performance optimization across scientific data
systems Scientific Tool Agile Deployment Deploy predictive and
analytical methods from Methods4Insight (e.g. cheminformatics,
structural biology, bioinformatics, reaction informatics) with
versioning, structured error handling, and response-time guarantees
that enable insight generation in agile manner. Productionize when
and where needed in partnerships with Tech@Lilly. Build serving
infrastructure supporting both synchronous (interactive scientist
queries) and asynchronous (batch and agent-invoked) workloads in
partnership with Tech@Lilly and Frontier AI. Define and implement
API contracts, documentation standards, and testing frameworks that
ensure scientific tools are analysis ready, robust and consumable
by external teams including Frontier AI. Platform Engineering &
Integration Build and operate cloud-native model serving
infrastructure (AWS, Azure, or GCP) using containers, Kubernetes,
and infrastructure-as-code. Develop CI/CD pipelines for ML models:
automated validation, A/B testing, canary deployments, and rollback
procedures. Integrate model serving with Data Foundry’s data
pipelines, ensuring models have access to properly formatted,
versioned training and inference data. Frontier AI Interface &
Collaboration Partner with the Frontier AI team and Tech@Lilly to
ensure Data Foundry’s scientific tools are exposed via well-defined
interfaces (REST APIs, MCP-compatible endpoints) that agents can
invoke programmatically. Collaborate on API performance
requirements: latency targets, throughput guarantees, and graceful
degradation under load. Work with Methods4Insight scientists to
ensure deployed models include appropriate uncertainty
quantification and confidence metrics. Basic Requirements B.S. or
M.S. in Computer Science, Data Science, Machine Learning,
Bioinformatics, Computational Biology, or related field. 3 years of
experience in MLOps, ML engineering, or scientific platform d
evelopment Qualified applicants must be authorized to work in the
United States on a full-time basis. Lilly will not provide support
for or sponsor work authorization or visas for this role, including
but not limited to F-1 CPT, F-1 OPT, F-1 STEM OPT, J-1, H-1B, TN,
O-1, E-3, H-1B1, or L-1. Preferred Qualifications Pharmaceutical or
biotech research industry experience. Strong Python skills;
experience with ML frameworks (PyTorch, TensorFlow, scikit-learn)
and ML lifecycle tools (MLflow, W&B, Kubeflow, or similar).
Proven track record building and deploying production model serving
infrastructure — containerized endpoints, RESTful/gRPC APIs, and
operational monitoring Working knowledge of cloud platforms (AWS,
Azure, or GCP), Kubernetes, and CI/CD automation. Strong
communication skills with ability to collaborate across
computational scientists, software engineers, and partner teams.
Experience operationalizing scientific or computational models
(cheminformatics, bioinformatics, structural biology, QSAR,
molecular simulations, PK/PD, systems biology, or ODE-based
models). Hands-on experience with model monitoring, drift
detection, and automated retraining systems. Familiarity with API
gateway patterns, event-driven architectures, and service mesh
technologies. Experience with feature stores, data versioning
(DVC), or experiment tracking at scale. Exposure to AI agent
frameworks (MCP, LangChain) or building APIs that AI systems invoke
programmatically. Experience with C, C++, CUDA, or GPU-accelerated
computing for optimizing model training/inference performance;
familiarity with containerizing HPC workloads
(Singularity/Apptainer). 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 $ - $ 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, Cupertino , Engineer - MLOps & Scientific Platforms - Data Foundry, Science, Research & Development , San Francisco, California