Free Download LLMs in Enterprise: Design strategies for large language model development, design patterns and best practices by Ahmed Menshawy, Mahmoud Fahmy
English | May 9, 2025 | ISBN: 1836203071 | 484 pages | EPUB | 10 Mb
Integrate large language models to transform your Enterprise Applications with Advanced LLM Strategies.
Purchase of the print or Kindle book includes a free PDF eBook.
Key FeaturesDesign patterns for LLMs and how they can be applied to solve real-world enterprise problemsStrategies for effectively scaling and deploying LLMs in complex enterprise environmentsFine-tuning and optimizing LLMs to achieve better performance and more relevant results.Staying ahead of the curve by exploring emerging trends and advancements in LLM technologies.Book Description
The integration of Large Language Models (LLMs) into enterprise applications marks a significant advancement in how businesses leverage AI for enhanced decision-making and operational efficiency. This book is an essential guide for professionals seeking to integrate LLMs within their enterprise applications. "LLMs in Enterprise" not only demystifies the complexity behind LLM deployment but also provides a structured approach to enhancing decision-making and operational efficiency with AI.
Starting with an introduction to the foundational concepts of LLMs, the book swiftly moves to practical applications, emphasizing real-world challenges and solutions. It covers a range of topics from data strategies. We explore various design patterns that are particularly effective in optimizing and deploying LLMs in enterprise environments. From fine-tuning strategies to advanced inferencing patterns, the book provides a toolkit for harnessing the power of LLMs to solve complex challenges and drive innovation in business processes.
By the end of this book, you will have a deep understanding of various design patterns for LLMs and how to implement these patterns to enhance the performance and scalability of their Generative AI solutions.
What you will learnDesign patterns for integrating LLMs into enterprise applications, enhancing both efficiency and scalabilityOvercome common scaling and deployment challenges associated with LLMsFine-tuning techniques and RAG approaches to improve the effectiveness and efficiency of LLMsEmerging trends and advancements including multimodality and beyondOptimize LLM performance through customized contextual models, advanced inferencing engines, and robust evaluation patternsEnsure fairness, transparency, and accountability in AI applicationsWho this book is for
This book targets a diverse group of professionals who are interested in understanding and implementing advanced design patterns for Large Language Models (LLMs) within their enterprise applications, including:
AI and ML Researchers who are looking into practical applications of LLMs
Data Scientists and ML Engineers who design and implement large-scale Generative AI solutions
Enterprise Architects and Technical Leaders who oversee the integration of AI technologies into business processes
Software Developers who work on developing scalable Generative AI-powered applications.
Table of ContentsIntroduction to Large Language Models (LLMs)LLMs in Enterprise: Applications, Challenges, and Design PatternsData and Training in Foundation ModelsFine-Tuning and Retrieval-Augmented Generation (RAG) PatternsCustomizing Contextual LLMs PatternsEvaluation PatternsData Strategy for LLMsModel DeploymentAccelerated and Optimized Inferencing PatternsLLMs in ProductionRAG 2.0: Beyond Mainstream RAGConnected LLMs PatternResponsible AI in LLMsEmerging Trends and Multimodality
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