Advisor - Agent Research
Job Description
Position Summary
We are rebuilding the Design-Make-Test-Analyze (DMTA) cycle, infusing scientific automation with foundation models, multi-agent systems, and robotics to make scientific discovery intelligent, autonomous, and fast.
We're seeking a scientist-engineer hybrid to deploy AI-driven discovery platforms directly with portfolio research teams. You'll bridge the gap between cutting-edge agentic AI systems and real-world drug discovery workflows.
Responsibilities
Research & Innovation
- Partner with chemists and biologists to translate scientific workflows into agentic systems.
- Deploy and integrate Agentic AI systems into active research programs.
- Design and implement cloud-native data pipelines connecting lab instruments, databases, and AI models.
- Support model deployment, inference services, and experiment tracking (e.g., MLflow).
- Integrate LLM reasoning with domain tools (RDKit, molecular graph ML, ELN/LIMS APIs, instrument drivers) to build composite agents that plan, simulate, and execute DMTA tasks.
- Prototype and iterate rapidly on agent planning strategies, memory systems, and human-in-the-loop patterns.
External Engagement
- Represent Frontier AI in the broader AI@Lilly and external AI research community: publish, give talks, review papers, and scout emerging trends.
- Evaluate external vendors, open-source projects, and academic collaborations for strategic fit.
What Success Looks Like
- Measurable reduction in DMTA turnaround through autonomous planning and execution.
- Seamless transition from prototype to production-deployed AI systems.
Basic Qualifications
- PhD (or MS + 2 yrs / BS + 4 yrs equivalent experience) in Bioinformatics, Cheminformatics, Computer Science, or related discipline with demonstrated wet-lab collaboration or experience.
- Approximately 1-2 years of demonstrated experience of applying AI/ML in scientific discipline such as biology, chemistry, neuroscience, or a related field (industry postdoc counts).
Additional Preferences
- Proficiency in Python and deep experience with ML/Deep Learning frameworks (e.g., PyTorch, Tensorflow, JAX, HuggingFace).
- Hands-on experience building agentic AI systems (e.g., LangChain, OpenAI Agents SDK).
- Experience designing and shipping end-to-end systems in cloud environments (backend APIs, lightweight frontends, and agentic platforms) — GitHub portfolio a plus.
- Strong DevOps/engineering skills: version control (git), containerization (docker, kubernetes), GitOps + CI/CD practices, data systems (Redis, SQL/NoSQL), unit testing, frontend (streamlit, flask).
- Working knowledge of cloud-native (AWS/Azure) pipeline architectures including Nextflow, Argo on Kubernetes.
- Familiarity with MLOps, including model versioning, data versioning, and continuous integration/continuous deployment for ML systems.
- Experience with LLM post-training, fine-tuning, or RLHF.
- Demonstrable research experience, evidenced by contributions to projects, and ideally through publications in relevant ML/NLP venues (e.g., NeurIPS, ICML, ICLR, ACL, EMNLP).
- Experience mentoring and guiding junior researchers or engineers.
Compensation: $151,500 – $244,200 (actual compensation depends on candidate education, experience, skills, and geographic location). Full-time equivalent employees are also eligible for a company bonus and a comprehensive benefits program (401(k), pension, medical/dental/vision, life insurance, time off, well-being benefits, etc.).
Requisition: R-99124 · Available in 8 US locations.
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