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Beginnt 5 June 2026 07:02

Endet 5 June 2026

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Relevance in the Age of Generative Search - Haystack US 2023 Keynote

Explore the integration of generative AI in search, covering strategies, code examples, and the balance between AI capabilities and traditional relevance techniques for accurate results.
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6076 Kurse


56 minutes

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Übersicht

Explore the integration of generative AI in search, covering strategies, code examples, and the balance between AI capabilities and traditional relevance techniques for accurate results.

Lehrplan

  • Introduction to Generative Search
  • Overview of Generative AI
    Evolution of Search Technologies
    Relevance in the Context of AI
  • Core Concepts of Generative AI in Search
  • Understanding Generative Models
    Natural Language Processing (NLP) Fundamentals
    Differences Between Generative and Traditional Search Techniques
  • Integration of Generative AI
  • Identifying Opportunities for Integration
    Tools and Platforms for Generative Search
    Real-World Applications and Use Cases
  • Design and Development Strategies
  • Best Practices for Implementing Generative AI in Search
    Balancing Generative Capabilities with Traditional Techniques
    Code Examples and Demonstrations
  • Enhancing Relevance and Accuracy
  • Techniques for Improving Search Relevance
    Leveraging AI to Handle Ambiguity and Context
    Evaluating the Effectiveness of Search Results
  • Challenges and Considerations
  • Ethical Considerations in Generative AI
    Addressing Bias and Fairness
    Scalability and Performance Concerns
  • Future Trends in Generative Search
  • Emerging Technologies and Innovations
    Long-term Impacts on Search and Information Retrieval
    Preparing for the Future of Search
  • Conclusion and Q&A
  • Recap of Key Points
    Open Floor for Questions and Discussion

Fachgebiete

Data Science