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Book Overview & Buying
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Table Of Contents
Essential Guide to LLMOps
By :
Essential Guide to LLMOps
By:
Overview of this book
The rapid advancements in large language models (LLMs) bring significant challenges in deployment, maintenance, and scalability. This Essential Guide to LLMOps provides practical solutions and strategies to overcome these challenges, ensuring seamless integration and the optimization of LLMs in real-world applications.
This book takes you through the historical background, core concepts, and essential tools for data analysis, model development, deployment, maintenance, and governance. You’ll learn how to streamline workflows, enhance efficiency in LLMOps processes, employ LLMOps tools for precise model fine-tuning, and address the critical aspects of model review and governance. You’ll also get to grips with the practices and performance considerations that are necessary for the responsible development and deployment of LLMs. The book equips you with insights into model inference, scalability, and continuous improvement, and shows you how to implement these in real-world applications.
By the end of this book, you’ll have learned the nuances of LLMOps, including effective deployment strategies, scalability solutions, and continuous improvement techniques, equipping you to stay ahead in the dynamic world of AI.
Table of Contents (14 chapters)
Preface
Chapter 1: Introduction to LLMs and LLMOps
Chapter 2: Reviewing LLMOps Components
Part 2: Tools and Strategies in LLMOps
Chapter 3: Processing Data in LLMOps Tools
Chapter 4: Developing Models via LLMOps
Chapter 5: LLMOps Review and Compliance
Part 3: Advanced LLMOps Applications and Future Outlook
Chapter 6: LLMOps Strategies for Inference, Serving, and Scalability
Chapter 7: LLMOps Monitoring and Continuous Improvement
Chapter 8: The Future of LLMOps and Emerging Technologies
Index