About The Position

We’re seeking a Senior AI Engineer / Data Scientist to lead the design, deployment, and scaling of enterprise AI capabilities—specifically large language model (LLM) solutions, LLMOps practices, and the development of a healthcare ontology/knowledge graph to enhance a complex data environment.

Requirements

  • Education/Experience: 10+ years with BS/BA; 8+ years with MS/MA; 5+ years with PhD in Computer Science, Data Science, or related field.
  • Hands-on experience with LLMs and GenAI solutions, including prompt engineering, RAG architecture, and LLMOps practices.
  • Proven experience in ontology design and knowledge graph development for complex data-driven systems.
  • Experience with Databricks, Snowflake, and AWS Cloud Services.
  • Proficiency in Python and SQL (Snowflake SQL).
  • Experience with CI/CD workflows and automated deployments.
  • Familiarity with Scaled Agile Framework (SAFe).
  • Excellent communication skills and ability to work independently.
  • US Citizenship required.

Nice To Haves

  • Experience with Databricks E2 components (Unity Catalog, Feature Store).
  • Knowledge of CMS systems and Medicare/Medicaid data.
  • Familiarity with LLM/GenAI tooling (LangChain, LlamaIndex, Hugging Face, AWS Bedrock).
  • Experience with vector databases and RAG orchestration.
  • Knowledge graph tools: Neo4j, TigerGraph, AWS Neptune, RDF/OWL, SPARQL, Gremlin, Cypher, Protégé.
  • Model lifecycle & governance: MLflow, Model Registry, feature stores, LLM safety testing.
  • Observability & automation: GitHub Actions/Jenkins, Terraform, Docker/Kubernetes, Prometheus/Grafana.

Responsibilities

  • Ontology & Knowledge Graph
  • Design and maintain a healthcare ontology to normalize CMS data across claims, providers, and workflows.
  • Build and manage knowledge graphs (RDF/OWL or property graph) to support semantic search, inference, and RAG augmentation.
  • Develop graph data pipelines for ingestion, transformation, and entity resolution aligned with governance standards.
  • Collaborate with SMEs to define controlled vocabularies and create reusable semantic APIs for analytics and AI.
  • GenAI & LLMOps
  • Architect and operationalize LLMs for production use cases including RAG, agentic workflows, and MCP tools.
  • Build LLM evaluation and safety frameworks (prompt quality, grounding, hallucination detection, bias checks) with automated testing and human-in-the-loop reviews.
  • Design cost- and latency-aware pipelines with observability for performance and reliability.
  • Implement LLMOps best practices: prompt versioning, CI/CD for artifacts, rollout strategies, and A/B testing.
  • Integrate vector databases and optimize chunking, embeddings, and retrieval for high-quality responses.
  • Platform & System Architecture
  • Support productionalization of AI/ML workflows with automated quality checks and lifecycle orchestration.
  • Ensure data security, governance, and CMS compliance.
  • Contribute to high-level system design for integrating new AI capabilities into a cloud-based analytics platform.
  • Maintain documentation and acceptance criteria for system changes.
© 2024 Teal Labs, Inc
Privacy PolicyTerms of Service