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August 08, 2025

In Part 3, we shift from theory to practice — exploring how to build the infrastructure needed to support agentic AI at scale. We’ll look at orchestration, governance, and modular architecture as key enablers of enterprise-ready, trustworthy AI systems.

Arun Sahu

Arun Sahu

CTO for Data & AI, Sogeti

To fully leverage agentic design patterns, organizations need to build infrastructure that supports the following capabilities:

Orchestration & planning

A central orchestrator or “manager agent” is often needed to assign tasks, monitor execution, and ensure agents work toward a shared goal. This layer also enables dynamic task reallocation, workflow control, and error handling.

Governance & guardrails

Agents must operate within defined limits. This includes:

  • Predefined rules and policy frameworks
  • Mechanisms to log actions, decisions, and outcomes
  • Intervention points for human-in-the-loop validation or rollback

Such governance mechanisms ensure that while agents operate autonomously, they do so within a responsible, transparent framework.

Composable & interoperable architecture

Agentic systems benefit from modularity. Each agent or component should be:

  • Replaceable and reusable across use cases
  • Designed with standardized interfaces
  • Capable of working with external systems and services

This architecture accelerates development, testing, and deployment, while also reducing technical debt.

Unlocking enterprise-grade AI

Organizations that adopt agentic patterns unlock several strategic advantages:

  • Faster time-to-value through reusable, adaptive agents that can be deployed quickly across domains
  • Greater agility and resilience as systems self-adjust to new information or conditions
  • Improved governance and compliance via built-in oversight, audit trails, and transparent agent decision-making
  • Enhanced collaboration between AI systems, tools, and human teams — creating a truly hybrid workforce

Agentic design patterns offer a powerful new lens through which to build and scale intelligent systems. They allow us to move beyond rule-based automation or stateless LLM responses, into a world where AI can think, plan, adapt, and collaborate — all while maintaining alignment with enterprise goals.

These patterns are the foundation of agentic intelligence — the design language for the AI-native enterprise.

By adopting these patterns, organizations can architect AI systems that are not only technically advanced but also trustworthy, modular, and strategically aligned.

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