12+ Years
Location: Atlanta, GA- 5days Onsite
Duration: Long term
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ROLE OVERVIEW
We are seeking an experienced Lead Agentic AI Engineer to design, build, and scale agentic AI workflows for enterprise platforms, intelligent processes, and AI-driven client solutions. In this hands-on leadership role, you will architect multi-agent systems, integrate enterprise-grade LLM capabilities across Azure AI Foundry, OpenAI, and Anthropic Claude, and deliver production-ready AI solutions that meet the strict compliance and reliability standards of the insurance and financial services industry.
This is a highly hands-on technical leadership role where you will influence architecture, engineering practices, platform direction, and delivery execution.
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KEY RESPONSIBILITIES
Agentic Workflow Design & Development
• Architect and implement multi-agent systems using frameworks such as LangGraph, Semantic Kernel, AutoGen, or CrewAI
• Design agent orchestration patterns including task decomposition, tool use, context management, memory, and human-in-the-loop (HITL) flows
• Build reliable agentic pipelines handling document extraction, reasoning, routing, and structured output generation
• Implement emerging agentic protocols including MCP (Model Context Protocol), Agent-to-Agent (A2A), AG-UI, and CodeAct Code Interpreter patterns
• Design and evaluate agent skills, manage agent harnesses, and maintain agent capability registries
• Design AI solutions capable of leveraging multiple LLM ecosystems including Azure OpenAI, OpenAI, Anthropic Claude, and open-source models based on workload characteristics, governance requirements, and cost/performance considerations
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Full-Stack AIÂ Application Engineering
• Build full-stack AI-native applications using React with streaming agent interactions, AG-UI components, and HITL design patterns
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Azure AIÂ Platform Engineering
• Deploy and manage AI workloads on Azure AI Foundry, Azure OpenAI Service, Azure Machine Learning, and AKS
• Design event-driven and serverless architectures leveraging Azure Functions, Event Grid, Service Bus, and Azure API Management
• Build scalable, resilient, cost-efficient cloud architectures aligned with Azure Solutions Architecture best practices
• Implement Infrastructure as Code (IaC) using Terraform; establish pipeline-as-code and policy-as-code practices across CI/CD workflows
• Containerize AI workloads using Docker and Kubernetes for portable, scalable deployment
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LLM Integration & Enterprise Reliability
• Lead prompt engineering, evaluation, and optimization strategies for OpenAI GPT models, Anthropic Claude, and Azure-hosted models
• Implement RAG architectures using vector databases (Azure AI Search, PostgreSQL pgvector, Cosmos DB) and design extensible, evolvable schema and ontology models
• Focus on making enterprise AI systems reliable, accurate, controllable, and production-ready — especially when working with LLMs like OpenAI GPT models or Anthropic Claude models
• Design guardrails, output validation layers, and hallucination mitigation patterns for high-stakes enterprise workflows
Data Architecture — Relational, NoSQL & Graph
• Design and work across relational databases (PostgreSQL, SQL Server), NoSQL stores (Cosmos DB, MongoDB), and graph databases for knowledge graph and ontology-driven AI use cases
• Model extensible, evolvable schemas and domain ontologies that support AI reasoning, entity resolution, and semantic retrieval
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Security & Identity
• Implement enterprise-grade security across AI systems: OAuth 2.0, Azure IAM, role-based and fine-grained access control (FGAC), managed identities, and credentials management
• Apply Azure security policies, RBAC, and least-privilege principles to AI platform components and agentic workflows
• Ensure secure handling of credentials, API keys, and secrets using Azure Key Vault and secure secrets management practices
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AI-Native Engineering Practices
• Drive AI-assisted software engineering practices across the SDLC using copilots, autonomous coding agents, spec-driven development, and reusable engineering skills
• Leverage coding agents effectively across all SDLC phases — from requirements and design through development, testing, and deployment
• Help establish AI fluency standards and engineering productivity patterns across teams
• Contribute to internal AI accelerators, engineering frameworks, and delivery automation capabilities
• Enable engineering teams to effectively collaborate with AI systems while maintaining quality, governance, and reliability
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Enterprise Governance & Responsible AI
• Implement responsible AI controls including observability, auditability, security, prompt protection, PII handling, and human oversight mechanisms
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Technical Leadership & Modern Delivery
• Define AI engineering standards, design patterns, and best practices across the engineering organization
• Lead architecture reviews, code reviews, and technical roadmap planning for AI platform capabilities
• Mentor mid-level and junior engineers; foster a culture of AI-native engineering excellence
• Operate effectively in fast-moving, iterative AI delivery environments where experimentation, rapid prototyping, and production hardening coexist
• Balance innovation speed with engineering rigor, scalability, and maintainability
• Communicate complex AI concepts clearly to both engineering and business stakeholders
• Engage confidently with enterprise clients, architecture teams, and delivery leadership to shape AI solution direction
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REQUIRED QUALIFICATIONS
Agentic AI & LLM Engineering
• 7+ years of software engineering experience with 3+ years in AI/ML or LLM-based systems
• Hands-on experience building production-grade agentic or multi-agent AI workflows
• Proficiency with GenAI agentic frameworks: LangGraph, Semantic Kernel, AutoGen, CrewAI, or LangChain
• Working knowledge of agentic protocols: MCP (Model Context Protocol), A2A (Agent-to-Agent), AG-UI, and CodeAct/Code Interpreter patterns
• Strong experience with context management strategies, agent skill design, agent evaluation, and agent harness construction
• Proficiency with OpenAI APIs (GPT-4o, function calling, Assistants API) and Anthropic Claude APIs
• RAG pipeline design: vector databases (Azure AI Search, PostgreSQL pgvector, Cosmos DB), chunking, embedding, and retrieval strategies
• Ability to pivot across agentic framework approaches and managed agent platforms as the ecosystem evolves
Full-Stack & API Engineering
• Full-stack experience with React; ability to build streaming agent interaction UIs, AG-UI components, and HITL design patterns
• Strong REST API and webhook design and implementation skills
• Proficiency in Python (intermediate level) and TypeScript for AI application and backend development
Cloud, Infrastructure & Architecture
• Strong Azure platform experience: Azure AI Foundry, Azure OpenAI, Azure ML, AKS, Azure Functions, API Management, Event Grid, Service Bus
• Infrastructure as Code using Terraform; pipeline-as-code and policy-as-code practices in CI/CD workflows
• Proficiency with containers (Docker, Kubernetes) for scalable AI workload deployment
• Ability to design and implement scalable, resilient, cost-efficient architectures on Azure
• Event-driven architecture and serverless architecture design and implementation
• Azure Solutions Architecture understanding across compute, networking, storage, security, and AI tiers
Data & Schema Design
• Experience with relational databases (PostgreSQL, SQL Server), NoSQL (Cosmos DB, MongoDB), and graph databases
• Ability to design extensible, evolvable schemas and domain ontologies that support AI reasoning and semantic retrieval
Security & Identity
• OAuth 2.0 implementation and Azure IAM/RBAC: permissions, policies, managed identities, and fine-grained access control (FGAC)
• Secure credentials management using Azure Key Vault and secrets management best practices
• Security-first mindset for AI systems: prompt protection, PII handling, data boundary enforcement
Engineering Practices
• Demonstrated ability to leverage coding agents and spec-driven development across all SDLC phases
• Strong GitHub Copilot and AI-assisted development tooling proficiency
• Experience leading technical teams and influencing engineering practices at an organizational level
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NICE TO HAVE
• Experience designing and deploying Engineering Agent Skills that work alongside domain SMEs in human-AI collaborative workflows
• Wholesale insurance domain understanding: submission processing, broker/carrier workflows, market access, and underwriting operations
• Hands-on experience transitioning from custom agentic frameworks to managed agent platforms (Azure AI Agent Service, OpenAI Assistants, etc.)
• Experience with Databricks, MLflow, or Azure Databricks for data and model pipelines
• Prior work on document intelligence platforms (OCR, extraction, classification, IDP pipelines)
• Azure certifications (AI-102, DP-100, AZ-305) or relevant cloud AI credentials
• Contributions to open-source AI frameworks or published technical writing
• Experience working in startup or high-growth engineering environments
• Passion for AI-native engineering transformation and modern software delivery practices
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Regards,
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Sr. Talent Acquisition Specialist
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