Scientific Lead - Forward Deployed AI Engineer, Applied Intelligence for Discovery
Company: Eli Lilly and Company
Location: San Francisco
Posted on: March 2, 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. The Opportunity We are
building something unprecedented — an AI foundation that will push
the frontier on what is possible today across drug discovery
research, from target identification and disease biology through
translational science. The Applied Intelligence for Discovery
(AI4D) team is a newly formed group within Lilly Research
Laboratories that operates at the intersection of scientific
delivery and core platform development. AI4D’s mission is to
connect scientists to petabyte-scale data through natural language
interfaces, automated analysis workflows, and intelligent search —
and to convert early deployments into repeatable system standards
and evaluation practices that scale across therapeutic areas. The
Forward Deployed AI Engineer is the connective tissue between what
AI can do and what discovery scientists need it to do. You will
embed directly with research teams across therapeutic areas
translating real-world data, infrastructure, and scientific
constraints into production systems that collapse the time from
question to answer from days or weeks to minutes. You will measure
success through production adoption, measurable workflow impact,
and eval-driven feedback loops that inform platform and model
roadmaps. This is not a traditional software engineering or data
science role. You will sit with biologists, geneticists, and
computational scientists working with petabytes of multi-omics
data, leading end-to-end deployments from scoping through sustained
production use. Key Responsibilities Embed with computational
biology and disease biology teams in your assigned therapeutic area
to develop deep understanding of their workflows, data, tools, and
bottlenecks Translate use-cases into concrete, testable prototypes
with clear success criteria. Rapidly turn ideas into a working
demo, complete with evaluation benchmarks that tighten acceptance
criteria over time Design and ship production systems quickly that
solve specific scientific problems; owning integrations, data
provenance, reliability, and on-call readiness Apply LLM,
retrieval-augmented generation (RAG), text-to-SQL, agentic AI
frameworks, and other emerging approaches to drug discovery
challenges including target identification, biomarker
prioritization, mechanism of action studies, and extraction of
insight from large-scale multi-omics datasets Run evaluation loops
that measure model and system quality against workflow-specific
scientific benchmarks; use results to drive model selection,
product changes, and iterative evidence generation that tightens
acceptance criteria over time Distill deployment learnings into
hardened primitives, reference architectures, validation templates,
and benchmark harnesses that scale across therapeutic areas and
accelerate future development Partner closely with AI/LLMOps
engineers on the AI4D team to ensure your field-tested solutions
feed back into the platform as reusable components, not one-off
builds Contribute to a culture of experimentation, speed, and
evidence-based impact measurement within the AI4D group and the
broader LRL research community Basic Qualifications PhD in
computational biology, bioinformatics, data science, computer
science, or a related field, with 3 years of software/ML
engineering or technical deployment experience; or equivalent
demonstrated experience building and deploying AI/ML tools for
scientific applications in biotech, pharma, or scientific software;
MSin computational biology, bioinformatics, data science, computer
science, or a related field, with 5 years of software/ML
engineering or technical deployment experience; or equivalent
demonstrated experience building and deploying AI/ML tools for
scientific applications in biotech, pharma, or scientific software
Additional Skills/Preferences Strong programming skills in Python
and familiarity with the modern AI/ML ecosystem, including
experience with LLMs (API usage, prompt engineering, fine-tuning),
and common frameworks (PyTorch, HuggingFace, LangChain/LlamaIndex,
or similar) Have owned AI deployments end-to-end from scoping
through production adoption, and improved them through evaluation
design, error analysis, and iterative evidence generation
Sufficient biological knowledge to have productive conversations
with computational scientists and understand the research context
behind their problems; prior experience working with multi-omics
data (RNA-seq, proteomics, GWAS, spatial transcriptomics, or
similar) is strongly preferred Experience building data-driven
applications including interactive dashboards, natural language
interfaces, or automated analysis pipelines Communicate clearly
across scientific, computational, technical, and executive
audiences, translating technical tradeoffs into decision quality
and measurable outcomes; you build trust with scientists who have
deep domain expertise and make complex technology approachable
without being condescending Familiarity with cloud computing
environments (AWS preferred) and version control (Git) Experience
in pharmaceutical, biotech, or life sciences R&D environments
Familiarity with agentic AI frameworks and building AI-powered
workflows that chain multiple models or tools together Experience
with biological foundation models (e.g., scGPT, Geneformer for
single-cell; ESM for proteins; AlphaFold) or their application to
research problems Knowledge of biomedical ontologies, knowledge
graphs, or experience integrating heterogeneous biological data
sources Track record of driving adoption of technical tools among
non-engineering users Contributions to open-source projects or a
public portfolio of applied AI work 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 $166,500 -
$266,200 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, San Francisco , Scientific Lead - Forward Deployed AI Engineer, Applied Intelligence for Discovery, Science, Research & Development , San Francisco, California