Mastering Machine Learning Architecture and Solutions: From Design to Deployment
暫譯: 掌握機器學習架構與解決方案:從設計到部署
Mahdiani, Mohammad Reza
- 出版商: Apress
- 出版日期: 2026-05-02
- 售價: $2,410
- 貴賓價: 9.5 折 $2,289
- 語言: 英文
- 頁數: 382
- 裝訂: Quality Paper - also called trade paper
- ISBN: 9798868825262
- ISBN-13: 9798868825262
-
相關分類:
Machine Learning
海外代購書籍(需單獨結帳)
商品描述
Mastering Machine Learning Architecture and Solutions is a comprehensive guide to designing and deploying end-to-end ML systems. Ideal for data scientists, machine learning engineers, and architects, this book bridges theoretical foundations with practical applications to help you navigate the complexities of modern ML development.
The book begins with the exploration of ML architecture, it introduces the core concepts and lifecycle stages necessary for successful implementation. It delves into designing robust data pipelines, emphasizing data cleaning, feature engineering, and scaling techniques to support high-performance ML systems. It further discusses model selection and optimization, covering advanced techniques for hyperparameter tuning and managing imbalanced datasets. Readers are introduced to scalable architectural patterns that ensure adaptability and performance, including modular designs and microservices. Infrastructure considerations, such as leveraging cloud solutions and hardware accelerators, are also examined to optimize costs and resources. It also discusses deployment strategies with detailed guidance on containerization, orchestration, and automation. Post-deployment challenges are addressed through chapters on managing, updating, and monitoring live models. Additional topics include rigorous testing, debugging, and ensuring explainability and fairness in models, critical for building trustworthy systems. The book concludes with insights into future trends and ethical considerations shaping the ML landscape.
In the end, this book provides professionals with the tools to build effective and sustainable ML systems, helping them solve modern AI challenges.
What you will learn:
- Gain foundational knowledge of machine learning architecture, lifecycle, and implementation strategies.
- How to design robust data pipelines with feature engineering and scaling techniques for high-performance systems.
- Explore scalable ML system designs, including modular architectures, microservices, and cloud infrastructure optimization.
- Understand deployment, monitoring, and ethical considerations to build trustworthy, adaptable, and cost-efficient ML solutions
Who this book is for:
Data scientists, machine learning engineers, AI professionals, and technical professionals aiming to enhance their expertise in ML system architecture and deployment.
商品描述(中文翻譯)
《掌握機器學習架構與解決方案》是一本全面的指南,旨在設計和部署端到端的機器學習(ML)系統。這本書非常適合數據科學家、機器學習工程師和架構師,將理論基礎與實際應用相結合,幫助您應對現代機器學習開發的複雜性。
本書首先探討機器學習架構,介紹成功實施所需的核心概念和生命周期階段。它深入探討設計穩健的數據管道,強調數據清理、特徵工程和擴展技術,以支持高性能的機器學習系統。接著討論模型選擇和優化,涵蓋超參數調整和管理不平衡數據集的先進技術。讀者將了解可擴展的架構模式,以確保適應性和性能,包括模組化設計和微服務。基礎設施考量,如利用雲解決方案和硬體加速器,也將被檢視,以優化成本和資源。此外,還討論了部署策略,提供有關容器化、編排和自動化的詳細指導。後部署挑戰通過管理、更新和監控實時模型的章節進行探討。其他主題包括嚴謹的測試、除錯,以及確保模型的可解釋性和公平性,這對於建立可信的系統至關重要。本書最後提供了對未來趨勢和影響機器學習領域的倫理考量的見解。
最終,本書為專業人士提供了構建有效且可持續的機器學習系統的工具,幫助他們解決現代人工智慧的挑戰。
您將學到的內容:
- 獲得機器學習架構、生命周期和實施策略的基礎知識。
- 如何設計穩健的數據管道,並使用特徵工程和擴展技術來構建高性能系統。
- 探索可擴展的機器學習系統設計,包括模組化架構、微服務和雲基礎設施優化。
- 理解部署、監控和倫理考量,以構建可信、可適應且具成本效益的機器學習解決方案。
本書適合的讀者:
數據科學家、機器學習工程師、人工智慧專業人士以及希望提升其在機器學習系統架構和部署方面專業知識的技術專業人士。
作者簡介
作者簡介(中文翻譯)
穆罕默德·雷扎·馬赫迪亞尼(Mohammad Reza Mahdiani)博士,是一位技術領導者和軟體架構師,擁有在大型人工智慧(AI)系統和智能自動化方面的深厚經驗。他的工作將先進研究與工業級執行相結合,專注於工程系統,提供可衡量且持久的商業價值。他專長於設定明確的技術方向,並設計強調架構清晰性、性能和可靠性的生產就緒解決方案。