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Building Data-Driven Applications with LlamaIndex

You're reading from   Building Data-Driven Applications with LlamaIndex A practical guide to retrieval-augmented generation (RAG) to enhance LLM applications

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Product type Paperback
Published in May 2024
Publisher Packt
ISBN-13 9781835089507
Length 368 pages
Edition 1st Edition
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Author (1):
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Andrei Gheorghiu Andrei Gheorghiu
Author Profile Icon Andrei Gheorghiu
Andrei Gheorghiu
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Table of Contents (18) Chapters Close

Preface 1. Part 1:Introduction to Generative AI and LlamaIndex FREE CHAPTER
2. Chapter 1: Understanding Large Language Models 3. Chapter 2: LlamaIndex: The Hidden Jewel - An Introduction to the LlamaIndex Ecosystem 4. Part 2: Starting Your First LlamaIndex Project
5. Chapter 3: Kickstarting Your Journey with LlamaIndex 6. Chapter 4: Ingesting Data into Our RAG Workflow 7. Chapter 5: Indexing with LlamaIndex 8. Part 3: Retrieving and Working with Indexed Data
9. Chapter 6: Querying Our Data, Part 1 – Context Retrieval 10. Chapter 7: Querying Our Data, Part 2 – Postprocessing and Response Synthesis 11. Chapter 8: Building Chatbots and Agents with LlamaIndex 12. Part 4: Customization, Prompt Engineering, and Final Words
13. Chapter 9: Customizing and Deploying Our LlamaIndex Project 14. Chapter 10: Prompt Engineering Guidelines and Best Practices 15. Chapter 11: Conclusion and Additional Resources 16. Index 17. Other Books You May Enjoy

Estimating the potential cost of using metadata extractors

A key consideration when utilizing the various metadata extractors in LlamaIndex is the associated LLM compute costs. As mentioned earlier, most of these extractors rely on LLMs under the hood to analyze text and generate descriptive metadata.

Repeatedly calling LLMs to process large volumes of text can quickly add up in charges. For example, if you are extracting summaries and keywords from thousands of document nodes using SummaryExtractor and KeywordExtractor, those constant LLM invocations will carry a significant cost.

Follow these simple best practices to minimize your costs

Let’s talk about some common best practices for minimizing your LLM costs:

  • Batch content into fewer LLM calls instead of individual calls per node. This amortizes the overhead because you consume fewer tokens compared to multiple separate calls. Using the Pydantic extractor is very useful for this purpose since it generates...
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