
Large Language Models: Integrating Theoretical Foundations with Practical Applications
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PDF 30,70 MB • Pages: 496
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Large Language Models (LLMs) have rapidly become foundational technologies, fundamentally reshaping how we interact with information and expanding the frontiers of artificial intelligence. With their exceptional capabilities to comprehend, generate, and engage with human language, LLMs are driving innovation across domains such as content generation, conversational agents, intelligent search systems, and scientific research. However, the sophisticated mechanisms behind these models—their architectures, training paradigms, and associated ethical considerations—demand a deep and structured exploration.
This book offers a definitive and in-depth examination of LLMs, covering their conceptual foundations, design principles, training methodologies, and real-world applications. It opens with a comprehensive overview of pre-trained language models and Transformer architectures, setting the stage for understanding prompt-based learning. Subsequent chapters delve into advanced topics including fine-tuning strategies, reinforcement learning for value alignment, and the integration of LLMs with other modalities such as computer vision, robotics, and speech technologies.
With a strong focus on practical implementation, the book illustrates real-world use cases including conversational AI, Retrieval-Augmented Generation (RAG), and program synthesis. These examples highlight the versatility and impact of LLMs across industries.
Readers will gain valuable insights into deploying and operationalizing LLMs using modern tools and frameworks, while also learning to navigate key challenges such as model bias, ethical risks, and responsible AI deployment. The book also explores the frontier of multimodal LLMs capable of processing and reasoning over text, audio, images, video, and robotic data streams. Practical tutorials provide hands-on experience in applying LLMs to diverse natural language processing tasks, bridging theory with implementation.
This comprehensive volume is designed for a broad audience, including students, researchers, AI professionals, and data scientists seeking a deep understanding of the theory and practice underpinning large language models.
Key Features:
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100+ advanced techniques covering pre-training, prompt-based and instruction tuning, parameter-efficient fine-tuning, and end-user prompt engineering, as well as design and optimization of RAG systems and reinforcement learning for human-aligned LLM behavior.
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200+ curated datasets spanning pre-training to multimodal tuning, offering a rich foundation for developing and evaluating diverse LLM applications.
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50+ ethical strategies addressing critical concerns such as hallucination, toxicity, bias, fairness, and privacy—complete with tools and methodologies for evaluation and mitigation.
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200+ benchmarks and 50+ evaluation metrics assessing model performance, ethical robustness, and multimodal capabilities across the LLM lifecycle.
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9 comprehensive tutorials guiding readers through every stage—from model pre-training and fine-tuning to bias mitigation, alignment, multimodal integration, and deployment using accessible platforms like Google Colab.
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100+ practical tips for practitioners and data scientists, offering actionable insights, implementation tricks, and best practices to streamline the development and deployment of LLMs.
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