Agentic AI Engineer — Healthcare AI

Deloitte is building agentic AI systems for the healthcare industry, focusing on reasoning, orchestration, retrieval, memory, and control layers for complex decisions like clinical reasoning and prior authorization. The role involves designing, building, and operationalizing these LLM- and SLM-powered systems end-to-end, with a strong emphasis on reliability, grounding, evaluation, and safety in a regulated environment.

What you'd actually do

  1. Design and implement agentic systems capable of multi-step reasoning, planning, tool use, and workflow execution against complex, regulated operational processes.
  2. Develop end-to-end Retrieval-Augmented Generation (RAG) pipelines: ingestion, chunking, embeddings, vector and hybrid retrieval, reranking, contextual compression, and grounding strategies.
  3. Implement observability and tracing for prompts, tool calls, retrieval quality, agent traces, failures, drift, latency, and production behavior.
  4. Build integrations with internal and external tools, APIs, enterprise systems, databases, and model providers so agents operate safely within

Skills

Required

  • Agent architecture & orchestration
  • Stateful workflows using frameworks such as LangGraph and LangChain
  • Long-horizon reliability
  • Retrieval-Augmented Generation (RAG) pipelines
  • Memory and context management
  • Modern context-delivery patterns
  • Observability and tracing for LLM systems
  • Guardrails, safety controls, and failure-handling
  • Evaluation of agents at trajectory and task level
  • Healthcare-grade safety implementation
  • Integrations with internal and external tools, APIs, enterprise systems, databases, and model providers

Nice to have

  • Healthcare background

What the JD emphasized

  • AI-first effort
  • backed by $1B in committed investment
  • own agent systems end to end
  • work ships into live clinical and operational settings within your first months
  • not a prompt-only role
  • builders who think deeply about system behavior, grounding, and reliability where a wrong action has real consequences for patients and the clinicians who serve them
  • healthcare-grade safety
  • deployment eval gates
  • human-oversight and escalation models
  • auditability and traceability for regulated decisions
  • PHI/HIPAA-aware data handling

Other signals

  • AI-first effort
  • backed by $1B in committed investment
  • early, well-funded build
  • own agent systems end to end
  • work ships into live clinical and operational settings within your first months