Jatin Chaudhary

Jatin Chaudhary

Senior Manager

About

Jatin Chaudhary is a Senior Manager at Cisco Systems, where he leads initiatives at the intersection of Generative AI, data platforms, and enterprise systems architecture. With over 15 years of experience spanning data science and software engineering, he specializes in building production-grade AI systems that drive automation, operational efficiency, and decision intelligence at scale. His recent work focuses on Agentic AI architectures, designing multi-agent systems powered by LLMs that operate on enterprise data with strong guardrails, traceability, and governance. He has led the development of AI-driven solutions for complex enterprise workflows, including compliance automation and intelligent decisioning systems. Beyond his industry role, Jatin serves as an Adjunct Faculty at International Institute of Information Technology Bangalore, where he teaches and mentors professionals in data science and AI. He is a frequent speaker, workshop facilitator, and technical mentor, passionate about bridging the gap between cutting-edge AI capabilities and real-world enterprise adoption.

As enterprises move beyond GenAI experimentation, the real challenge is no longer "what models to use," but how to build systems where AI can reliably operate on enterprise data, make decisions, and remain auditable.

This session presents a practitioner's perspective on designing and deploying Agentic AI systems grounded in enterprise data platforms. Drawing from real-world implementations, it will walk through how foundational data systems (structured, semi-structured, and unstructured) can be made AI-ready, and how multi-agent architectures can be layered on top to enable intelligent decision-making workflows.

The session will cover:

• Designing AI-ready data platforms that support retrieval, reasoning, and traceability

• Building multi-agent systems (classification, retrieval, critique, and orchestration layers) using frameworks like LangChain and      LangGraph

• Applying RAG + critique loops + routing architectures for enterprise use cases such as compliance and policy enforcement

• Ensuring auditability and governance through traceable pipelines and custom observability/visualization layers

• Key lessons from production environments (including failure modes, guardrails, and scaling considerations)

Rather than a theoretical overview, this will be a deep dive into how Agentic AI systems are actually engineered, deployed, and governed in enterprise settings, with architecture patterns and walkthroughs that attendees can adapt to their own organizations.

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