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Generative AI on Google Cloud with LangChain

You're reading from   Generative AI on Google Cloud with LangChain Design scalable generative AI solutions with Python, LangChain, and Vertex AI on Google Cloud

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Product type Paperback
Published in Dec 2024
Publisher Packt
ISBN-13 9781835889329
Length 306 pages
Edition 1st Edition
Concepts
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Author (1):
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Leonid Kuligin Leonid Kuligin
Author Profile Icon Leonid Kuligin
Leonid Kuligin
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Table of Contents (22) Chapters Close

Preface 1. Part 1: Intro to LangChain and Generative AI on Google Cloud
2. Chapter 1: Using LangChain with Google Cloud FREE CHAPTER 3. Chapter 2: Foundational Models on Google Cloud 4. Part 2: Hallucinations and Grounding Responses
5. Chapter 3: Grounding Responses 6. Chapter 4: Vector Search on Google Cloud 7. Chapter 5: Ingesting Documents 8. Chapter 6: Multimodality 9. Part 3: Common Generative AI Architectures
10. Chapter 7: Working with Long Context 11. Chapter 8: Building Chatbots 12. Chapter 9: Tools and Function Calling 13. Chapter 10: Agents 14. Chapter 11: Agentic Workflows 15. Part 4: Designing Generative AI Applications
16. Chapter 12: Evaluating GenAI Applications 17. Chapter 13: Generative AI System Design 18. Index 19. Other Books You May Enjoy Appendix 1: Overview of Generative AI 1. Appendix 2: Google Cloud Foundations

What is vector search?

Vector search is a technique for finding similar items within vast amounts of unstructured data. As shown in Figure 4.1, both the data and the search query are transformed into mathematical representations known as vectors, often referred to as embeddings in the context of machine learning applications.

Embeddings are fixed-length sequences of real numbers that encapsulate the meaning and relationships present within the data. This enables searches to be performed based on semantic similarity, going beyond simple keyword matching.

Figure 4.1: Embedding of unstructured data

Figure 4.1: Embedding of unstructured data

The similarity between two embeddings is calculated using a distance metric, such as Euclidean distance or cosine similarity. Embeddings that are more similar have a smaller distance between them – in other words, they’re closer together in the embedding space.

Now that you know what vector search is, let’s see different types of architectures...

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