We're looking for a Senior AI Research Engineer to drive applied research and production implementation of work ontology and agent intelligence systems at a U.S.-based AI-powered workforce platform. You'll operate at the intersection of research and engineering — evolving how real-world work is structured, modeled, and automated, and building the systems that generate agent recommendations, blueprints, and workflows.
This is a role for someone who knows when to iterate quickly, when to dig deeper, and when to ship.
About You
You have 5+ years of experience in ML or LLM engineering with production ownership and know how to take research from ideation to deployed systems.
You're hands-on with LLMs, prompt engineering, RAG systems, and agent architectures — not just familiar with the concepts, but battle-tested in production.
You translate ambiguous research problems into clear hypotheses, defined success criteria, and shippable outcomes.
You work independently in fast-moving environments with high accountability and low hand-holding.
You care about data quality, observability, and building systems that are reliable and measurable.
What You'll Be Doing
Research and evolve work ontology and agent intelligence systems, including task and workflow modeling, agent capabilities, and agent blueprints grounded in real-world constraints.
Define and implement evaluation frameworks, benchmarks, and success metrics for ontology quality, agent recommendations, and LLM outputs.
Identify, collect, and curate data to support ontology evolution, agent modeling, and LLM systems.
Design and build reliable, reproducible data and LLM pipelines for ingestion, enrichment, retrieval (RAG), and generation.
Build observability into LLM and data pipelines — logging, tracing, evaluations, and quality monitoring.
Continuously ship improvements and iterate based on metrics and real-world feedback.
What We're Looking For
A rigorous research mindset balanced with a strong bias toward shipping — you know when results are good enough to move into implementation.
Comfort operating with ambiguity and full ownership from research through production.
Clear, direct communication and early escalation when blockers arise.
A genuine interest in how work is structured, automated, and evolved in the AI era.
Technical Requirements
Must-Haves
:
5+ years in ML or LLM engineering with end-to-end production ownership.
Strong hands-on experience with LLMs, prompt engineering, RAG systems, and agent architectures.
Solid Python skills and experience with ML/LLM frameworks (LangChain, PyTorch).
Strong data engineering fundamentals: ETL, pipeline design, and data curation.
Experience translating research or experimentation into reliable production systems.
Nice-to-Haves
:
Experience with work ontology modeling (roles, tasks, skills, workflows).
Background in knowledge graphs or semantic modeling.
Familiarity with AWS and event-driven architectures.
Experience with FastAPI, Redis, MySQL, Terraform, or EKS.