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Building LLM Powered  Applications

You're reading from   Building LLM Powered Applications Create intelligent apps and agents with large language models

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Product type Paperback
Published in May 2024
Publisher Packt
ISBN-13 9781835462317
Length 342 pages
Edition 1st Edition
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Author (1):
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Valentina Alto Valentina Alto
Author Profile Icon Valentina Alto
Valentina Alto
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Table of Contents (16) Chapters Close

Preface 1. Introduction to Large Language Models 2. LLMs for AI-Powered Applications FREE CHAPTER 3. Choosing an LLM for Your Application 4. Prompt Engineering 5. Embedding LLMs within Your Applications 6. Building Conversational Applications 7. Search and Recommendation Engines with LLMs 8. Using LLMs with Structured Data 9. Working with Code 10. Building Multimodal Applications with LLMs 11. Fine-Tuning Large Language Models 12. Responsible AI 13. Emerging Trends and Innovations 14. Other Books You May Enjoy
15. Index

What is Responsible AI and why do we need it?

Responsible AI refers to the ethical and accountable development, deployment, and use of AI systems. It involves ensuring fairness, transparency, privacy, and avoiding biases in AI algorithms. Responsible AI also encompasses considerations for the social impact and consequences of AI technologies, promoting accountability and human-centric design. Responsible AI plays a crucial role in steering decisions toward positive and fair results. This involves prioritizing people and their objectives in the design of systems while upholding enduring values such as fairness, reliability, and transparency.

Some ethical implications of Responsible AI are:

  • Bias: AI systems can inherit biases present in their training data. These biases can lead to discriminatory outcomes, reinforcing existing inequalities.
  • Explainability: Black-box models (such as LLMs) lack interpretability. Efforts are being made to create more interpretable...
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