Senior Principal AI/ML Engineer - Research Sovereign AI
Company: Mayo Clinic
Location: Rochester
Posted on: March 23, 2026
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Job Description:
Mayo Clinic is top-ranked in more specialties than any other
care provider according to U.S. News & World Report. As we work
together to put the needs of the patient first, we are also
dedicated to our employees, investing in competitive compensation
and comprehensive benefit plans – to take care of you and your
family, now and in the future. And with continuing education and
advancement opportunities at every turn, you can build a long,
successful career with Mayo Clinic. Benefits Highlights • Medical:
Multiple plan options. • Dental: Delta Dental or reimbursement
account for flexible coverage. • Vision: Affordable plan with
national network. • Pre-Tax Savings: HSA and FSAs for eligible
expenses. • Retirement: Competitive retirement package to secure
your future. Position Summary The Senior Principal AI/ML Engineer
for AI Representation & EMR Vectorization is the senior technical
leader and lead scientist responsible for architecting Mayo
Clinic’s unified multimodal EMR representation layer. This role
defines and builds the scientific substrate used by foundational
models, clinical agents, and research applications. The individual
serves as a hands-on expert and player-coach, guiding technical
strategy while contributing directly to model development, graph
construction, and representation science. Over time, this position
will build and lead a specialized team. Key Responsibilities
Scientific & Technical Leadership • Design and implement Mayo’s
multimodal EMR representation AI architecture, including text,
imaging, waveform, structured data, temporal sequences, and
multi-visit trajectories. • Develop graph-based representations and
knowledge graphs linking patients, events, attributes, clinical
concepts, and embeddings. • Integrate graph reasoning, vector
similarity search, and hybrid vector–graph pipelines for
retrieval-augmented models and agentic reasoning. • Define
standards for temporal modeling, drift-aware embeddings, and
sequence alignment across encounters. Hands-On Modeling &
Engineering • Build large-scale embedding pipelines using
transformer-based models, contrastive learning, graph neural
networks, and hybrid architectures. • Implement efficient query
layers using vector stores and graph databases. • Develop
interpretable embedding diagnostics, attribution tools, and
graph-based audits to enable safe clinical use. • Explore and
implement methods for explaining similarity, graph traversals,
temporal evolution, and patient-neighborhood reasoning.
Cross-functional Collaboration • Work with AI researchers on
specialty-specific embeddings, representation refinement, and
research prototypes. • Collaborate with clinicians to
operationalize clinically meaningful features, phenotypes, and
longitudinal concepts. • Provide scientific input to the
Foundational Model Science Program to ensure alignment between
representations and model architectures. Team Leadership • Serve as
founding technical lead of the Reasoning EMR Representation team. •
Mentor junior scientists and engineers; build a future team
specializing in representation learning and graph-based reasoning.
Qualifications Required • Master’s in Computer Science, Machine
Learning, Biomedical Engineering, or related field.9 years of
relevant experience, or a bachelor’s degree with 11 years of
relevant experience. • Extensive (9 years) experience applying AI
and machine learning in production healthcare environments or
similar highly regulated or technology focused industries,
showcasing an acute understanding of healthcare technology. •
Hands-on expertise with graph databases, and knowledge graph
construction. • Strong experience with transformer-based models,
contrastive learning, and temporal modeling. • Experience designing
or deploying vector search systems and hybrid vector–graph
reasoning pipelines. Preferred • PhD or Master’s in Computer
Science, Machine Learning, Biomedical Engineering, or related
field. • 10 years experience building production ML systems,
including multimodal architectures and representation learning. •
Experience with EMR data, healthcare multimodality, or clinical
data integration. • Experience building patient similarity models,
temporal embedding systems, or phenotype discovery pipelines. •
Strong background in explainability, causality, or interpretable
ML. • Prior experience in a player–coach or team-lead role.
Keywords: Mayo Clinic, Minneapolis , Senior Principal AI/ML Engineer - Research Sovereign AI, Engineering , Rochester, Minnesota