From Direct Classification to Agentic Routing: When to Use Local Models vs Azure AI
In many enterprise workflows, classification sounds simple. An email arrives. A ticket is created. A request needs to be routed. At first glance, it feels like a straightforward model problem: clas...

Source: DEV Community
In many enterprise workflows, classification sounds simple. An email arrives. A ticket is created. A request needs to be routed. At first glance, it feels like a straightforward model problem: classify the input assign a category trigger the next step But in practice, enterprise classification is rarely just about model accuracy. It is also about: latency cost governance data sensitivity operational fit fallback behavior That is where the architecture becomes more important than the model itself. In this post, I want to share a practical way to think about classification systems in enterprise environments: when local or department-level models make sense when Azure AI / cloud models are the better fit and how an agentic routing layer changes the design entirely The Classification Problem Is Everywhere Classification appears in more places than we often realize: support ticket categorization email triage incident prioritization request type detection business workflow routing document t