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Coding with ChatGPT and Other LLMs

You're reading from   Coding with ChatGPT and Other LLMs Navigate LLMs for effective coding, debugging, and AI-driven development

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Product type Paperback
Published in Nov 2024
Publisher Packt
ISBN-13 9781805125051
Length 304 pages
Edition 1st Edition
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Concepts
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Authors (2):
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Dr. Vincent Austin Hall Dr. Vincent Austin Hall
Author Profile Icon Dr. Vincent Austin Hall
Dr. Vincent Austin Hall
Chigbo Uzokwelu Chigbo Uzokwelu
Author Profile Icon Chigbo Uzokwelu
Chigbo Uzokwelu
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Toc

Table of Contents (19) Chapters Close

Preface 1. Part 1: Introduction to LLMs and Their Applications
2. Chapter 1: What is ChatGPT and What are LLMs? FREE CHAPTER 3. Chapter 2: Unleashing the Power of LLMs for Coding: A Paradigm Shift 4. Chapter 3: Code Refactoring, Debugging, and Optimization: A Practical Guide 5. Part 2: Be Wary of the Dark Side of LLM-Powered Coding
6. Chapter 4: Demystifying Generated Code for Readability 7. Chapter 5: Addressing Bias and Ethical Concerns in LLM-Generated Code 8. Chapter 6: Navigating the Legal Landscape of LLM-Generated Code 9. Chapter 7: Security Considerations and Measures 10. Part 3: Explainability, Shareability, and the Future of LLM-Powered Coding
11. Chapter 8: Limitations of Coding with LLMs 12. Chapter 9: Cultivating Collaboration in LLM-Enhanced Coding 13. Chapter 10: Expanding the LLM Toolkit for Coders: Beyond LLMs 14. Part 4: Maximizing Your Potential with LLMs: Beyond the Basics
15. Chapter 11: Helping Others and Maximizing Your Career with LLMs 16. Chapter 12: The Future of LLMs in Software Development 17. Index 18. Other Books You May Enjoy

How Transformers work

Moving on to the general transformers, Figure 1.8 shows the structure of a Transformer:

Figure 1.8: Architecture of a Transformer: an encoder for the inputs and a decoder for the outputs (reproduced from Zahere)

Figure 1.8: Architecture of a Transformer: an encoder for the inputs and a decoder for the outputs (reproduced from Zahere)

You can see that it has an encoder and a decoder. The encoder learns the patterns in the data and the decoder tries to recreate them.

The encoder has multiple neural network layers. In transformers, each layer uses self-attention, allowing the encoder to understand how the different parts of the sentence fit together and understand the context.

Here is a quick version of the transformer process:

  1. Encoder network:

    Uses multiple layers of neural networks.

    Each layer employs self-attention to understand relationships between sentence parts and context.

    Creates a compressed representation of the input.

  2. Decoder network:

    Utilizes the encoder’s representation for generating new outputs.

    Employs multiple layers...

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Coding with ChatGPT and Other LLMs
Published in: Nov 2024
Publisher: Packt
ISBN-13: 9781805125051
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