Enhancing conversational ai with the Rasa framework: intent understanding and NLU pipeline optimization Cover Image

Enhancing conversational ai with the Rasa framework: intent understanding and NLU pipeline optimization
Enhancing conversational ai with the Rasa framework: intent understanding and NLU pipeline optimization

Author(s): Tomasz Smutek, Ewa Golec, Paweł Rymarczyk, Michał Jarmuł, Adam Hernas
Subject(s): Economy
Published by: Wydawnictwo Akademii Nauk Stosowanych WSGE im. A. De Gasperi w Józefowie
Keywords: Intent understanding; Rasa framework; Natural language processing; Artificial intelligence; Entity extraction; Intent classification

Summary/Abstract: Implementing the Rasa NLU pipeline allowed intent detection and entity recognition, particularly in complex scenarios with multi-intent queries. Communication within the Rasa NLU pipeline was effectively managed, ensuring seamless data flow between components, which preserved context and enhanced interpretability. The voice assistant developed with STT and TTS capabilities demonstrated robust real-time natural language processing, handling spoken queries efficiently. This confirmed the practical viability of using the Rasa framework for scalable and customizable conversational AI applications. Discussing: The findings underscore the robustness of the Rasa NLU pipeline in handling diverse conversational demands and the flexibility of its components to adapt to different linguistic contexts. The research discusses the potential of integrating sophisticated NLU techniques to create more intuitive and responsive conversational agents, highlighting the critical role of context-aware processing in improving user interaction with AI systems.

  • Issue Year: 57/2024
  • Issue No: 3
  • Page Range: 531-548
  • Page Count: 18
  • Language: English
Toggle Accessibility Mode