Skip to content

Details

The Emerging Enterprise Agent Ecosystem

What : Toronto Data Professionals Community (Virtual)
When : Wednesday, 17th June, 2026
Time : 06:00 PM EST

Agenda:

  • 06:00 PM Networking and Introduction
  • 06:05 PM Topic: The Emerging Enterprise Agent Ecosystem With Eric Broda
  • 07:30 PM End

Where: Online via Microsoft team

Session Details:
🤖 The Emerging Enterprise Agent Ecosystem
Enterprises will soon operate with thousands, and eventually millions of AI agents. The question is no longer how to build a single agent, but how to build and manage the ecosystem that supports them at scale.

In this session, you will learn:

  • Enterprise-Grade Agents What attributes agents need to operate safely in production including identity, security, discoverability, observability, and trust.
  • The Agent Ecosystem at Scale What shared services agents require to function effectively across the enterprise rather than as isolated tools.
  • Agentic Knowledge Fabric A new class of data service that gives agents the business knowledge and context they need when conventional RAG approaches fall short.
  • Agentic Process Automation A new orchestration model that treats business processes as the organizing structure for agents, making them full participants in execution.

Join us for a practical framework on how enterprise agent systems will be built, governed, and scaled.

Speaker Bio:
Mr. Broda is an expert in agent and data ecosystems. He is the author of several books including O’Reilly’s “Agentic Mesh” (Feb 2026) about the evolving agent ecosystem and O’Reilly’s “Implementing Data Mesh” book (Oct 2024). Eric has over 35 years experience in banking, insurance, and payments as a senior executive and global chief architect. Eric is the Founder of Broda Group Software and Co-Founder of The Agentic Mesh Company that helps firms accelerate their agent journey.

Related topics

Artificial Intelligence Machine Learning Robotics
Microsoft Azure
Data Engineering
Database Professionals
Data Lakes

You may also like