"Applied LLaMA: Systems, Methods, and Implementations"
"Applied LLaMA: Systems, Methods, and Implementations" offers a comprehensive and authoritative guide to the design, deployment, and responsible use of the LLaMA family of large language models. Beginning with a detailed exploration of LLaMA's architectural innovations, the book expertly covers foundational principles, advancements in tokenization and attention mechanisms, and the evolution of efficient training and inference techniques. Readers are introduced to modern approaches for parameter initialization, normalization, and model variations, setting a strong foundation for both academic study and practical engineering.
Through in-depth chapters on dataset engineering, distributed training, and scalable serving patterns, the book addresses the full machine learning lifecycle of LLaMA-from curating high-quality datasets and constructing robust preprocessing pipelines to orchestrating large-scale training with cutting-edge parallelism and resource optimization strategies. Implementation professionals will find actionable insights on monitoring, quantization, deployment to specialized hardware, and multi-tenancy, as well as on ensuring resilience and reliability during production. Special attention is paid to responsible practices, ethics, compliance, and robust evaluation, providing the rigor essential for safety-critical and highly regulated domains.
The text culminates with practical use cases and a survey of community-driven resources, illustrating LLaMA's applications in conversational AI, retrieval-augmented generation, code synthesis, healthcare, and beyond. Advanced topics highlight the latest research frontiers, such as federated learning, distributional robustness, and interpretability challenges. Drawing on real-world case studies and collaborative ecosystem practices, "Applied LLaMA" is an indispensable resource for machine learning engineers, researchers, and organizational leaders aiming to harness LLaMA's full potential in both open-source and enterprise environments.
Sprache
Editions-Typ
Produkt-Hinweis
Dateigröße
EAN
Schweitzer Klassifikation