Accelerated Innovation

Iteratively Tuning Your GenAI Solutions

Optimizing Your Natural Language Understanding & Intent Classification

Workshop
Are intent misclassifications and ambiguous inputs quietly degrading your GenAI user experience?

As GenAI systems handle more complex, conversational interactions, intent and entity understanding becomes harder to stabilize. Small errors compound across turns, leading to misrouted workflows and frustrated users.

To win, your GenAI solutions must accurately interpret intent, handle ambiguity gracefully, and continuously validate NLU improvements with real feedback.

The Challenge

When NLU optimization is inconsistent, GenAI interactions break down in subtle but costly ways:

  • Intent accuracy: Struggle to improve intent and entity recognition models across diverse inputs and edge cases.
  • Ambiguity handling: Rely on brittle guesses instead of structured clarification flows when user intent is unclear.
  • Multi-turn understanding: Lose or misinterpret intent as conversations evolve across multiple turns.

These gaps lead to incorrect actions, poor user trust, and unreliable conversational experiences.

Our Solution

In this hands-on workshop, your team systematically improves and validates NLU behavior using proven patterns and real interaction signals.

  • Improve intent and entity recognition models using targeted evaluation and refinement techniques.
  • Reduce misclassification rates through effective prompt patterns and intent-scoped instructions.
  • Design and apply clarification flows to safely handle ambiguous user inputs.
  • Support accurate intent interpretation across multi-turn conversations.
  • Validate NLU improvements using live or near-real-time feedback signals.
Area of Focus
  • Improving Intent and Entity Recognition Models
  • Reducing Misclassification Through Prompt Patterns
  • Handling Ambiguity with Clarification Flows
  • Supporting Multi-Turn Intent Interpretation
  • Validating NLU Improvements with Live Feedback
Participants Will
  • Increase intent and entity recognition accuracy across real-world inputs.
  • Apply prompt patterns that measurably reduce misclassification.
  • Design clarification strategies that improve reliability without harming UX.
  • Maintain intent fidelity across multi-turn conversational flows.
  • Validate NLU changes using feedback tied directly to user interactions.

Who Should Attend:

Backend DevelopersTechnical Product ManagersSolution ArchitectsML EngineersGenAI Engineers

Solution Essentials

Format

Facilitated workshop (in-person or virtual) 

Duration

4 hours 

Skill Level

Intermediate 

Tools

NLU components, prompt patterns, conversational flows, and feedback-driven validation exercises

Is your GenAI system interpreting user intent as reliably as you think?