Design & Implement Agentic AI systems using agent frameworks (AutoGen, LangGraph, CrewAI, etc.) to build multi-agent and goal-oriented systems
Develop and promote reusable architectural patterns, best practices, and governance frameworks for GenAI development.
Lead the end-to-end architectural design of Generative AI applications, ensuring scalability, performance, security, cost-effectiveness, and maintainability.
Collaborate with Data Scientists, Product Owners, and Business SMEs to translate business problems into AI-powered solutions.
Expertise You'll Bring:
15+ years in software/solution architecture, proven experience as a Data Scientist or ML Engineer with exposure to agent-based AI systems.
Proficiency in Prompt Engineering, few-shot prompting, chain-of-thought reasoning, and prompt templates.
Familiarity with cloud-native AI platforms from AWS, Azure, or GCP (e.g., Bedrock, Azure OpenAI, Vertex AI).
Experience on AI for Engineering & working with AI Code Assist tools (e.g., Copilot, Windsurf, Cursor)
Experience working with Vector databases & design & deploy RAG pipelines, MCP Servers & A2A Implement robust LLMOPs - for continuous integration, deployment, monitoring, logging, and troubleshooting mechanisms for GenAI applications.
Proficiency in containerization technologies (Docker, Kubernetes) and CI/CD pipelines.
Must have experience working with Microservice architecture using Spring Boot Rest APIs & know API Security, Versioning
Must have experience designing CloudNative applications on any cloud such as AWS, Azure, GCP, Spring Cloud, PCF
Programming proficiency in Python (preferred), and optionally Java/Node.js for integration.
Exceptional communication and presentation skills, with the ability to articulate complex technical concepts to both technical and non-technical audiences