Agentic AI Engineer

Booz Allen HamiltonWashington, DC
Remote

About The Position

Agentic AI Engineer The Opportunity: We are looking for a highly skilled Agentic AI Engineer to join our team, specializing in building autonomous, goal-oriented AI systems. You will play a crucial role in shifting our AI strategy from passive LLM chatbots to proactive, multi-agent orchestrations. In this role, you will utilize deep experience in agent orchestration frameworks, RAG, knowledge graphs, and fine-tuning Small Language Models (SLMs) for edge deployment.

Requirements

  • 5+ years of experience in software development
  • 3+ years of experience with GenAI, LLMs, and agentic workflows
  • 3+ years of experience with LangChain, LangGraph, AutoGen, or LlamaIndex
  • Experience with MCP for tool integration and A2A for agent-to-agent collaboration
  • Experience with RAG architecture and KG, including Neo4j or NebulaGraph
  • Experience fine-tuning LLMs or SLMs using Hugging Face, PEFT, or LoRA
  • Knowledge of modern software design patterns, including microservice design or edge computing
  • Ability to obtain a Secret clearance
  • Bachelor’s degree in a CS or AI field

Nice To Haves

  • Experience deploying agentic systems in a production environment
  • Experience deploying agents on edge devices such as Android or local models
  • Experience integrating coding agents such as Cursor or Windsurf, into an efficient development pipeline with measured results
  • Master’s degree in a CS or AI field preferred; Doctorate degree in CS or Statistics a plus

Responsibilities

  • Design and implement intelligent agent architectures that can reason, plan, and take actions using LangChain, LangGraph, and AutoGen.
  • Develop and deploy multi-agent systems using Model Context Protocol (MCP) and Agent-to-Agent (A2A) protocols to facilitate communication, tool usage, and collaborative task solving.
  • Build advanced RAG pipelines integrating unstructured data with Knowledge Graphs (KG) to enhance reasoning accuracy and context retention.
  • Fine-tune SLMs for specific domains and optimize them for edge device performance, including ONNX, GGML, or Ollama.
  • Develop evaluation frameworks to test agent reliability, safety, and performance, moving from prototype to production, including ReAct loops and human-in-the-loop.

Benefits

  • health
  • life
  • disability
  • financial
  • retirement benefits
  • paid leave
  • professional development
  • tuition assistance
  • work-life programs
  • dependent care
  • recognition awards program
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