Learning Automl: Automating ML Pipelines with Autogluon, Leading Frameworks, and Real-World Integration
暫譯: 學習 AutoML:使用 Autogluon、自動化機器學習管道、主要框架及實際整合

Tomak, Kerem

  • 出版商: O'Reilly
  • 出版日期: 2026-05-12
  • 售價: $2,730
  • 貴賓價: 9.8$2,675
  • 語言: 英文
  • 頁數: 590
  • 裝訂: Quality Paper - also called trade paper
  • ISBN: 9798341643185
  • ISBN-13: 9798341643185
  • 相關分類: Machine Learning
  • 海外代購書籍(需單獨結帳)

商品描述

Learning AutoML is your practical guide to applying automated machine learning in real-world environments. Whether you're a data scientist, ML engineer, or AI researcher, this book helps you move beyond experimentation to build and deploy high-performing models with less manual tuning and more automation. Using AutoGluon as a primary toolkit, you'll learn how to build, evaluate, and deploy AutoML models that reduce complexity and accelerate innovation.

Author Kerem Tomak shares insights on how to integrate models into end-to-end deployment workflows using popular tools like Kubeflow, MLflow, and Airflow, while exploring cross-platform approaches with Vertex AI, SageMaker Autopilot, Azure AutoML, Auto-sklearn, and H2O.ai. Real-world case studies highlight applications across finance, healthcare, and retail, while chapters on ethics, governance, and agentic AI help future-proof your knowledge.

  • Build AutoML pipelines for tabular, text, image, and time series data
  • Deploy models with fast, scalable workflows using MLOps best practices
  • Compare and navigate today's leading AutoML platforms
  • Interpret model results and make informed decisions with explainability tools
  • Explore how AutoML leads into next-gen agentic AI systems

商品描述(中文翻譯)

《學習 AutoML》是您在實際環境中應用自動化機器學習的實用指南。無論您是數據科學家、機器學習工程師還是人工智慧研究人員,本書都能幫助您超越實驗,構建和部署高效能模型,減少手動調整並增加自動化。使用 AutoGluon 作為主要工具包,您將學習如何構建、評估和部署 AutoML 模型,以降低複雜性並加速創新。

作者 Kerem Tomak 分享了如何使用流行工具如 Kubeflow、MLflow 和 Airflow 將模型整合到端到端的部署工作流程中的見解,同時探索使用 Vertex AI、SageMaker Autopilot、Azure AutoML、Auto-sklearn 和 H2O.ai 的跨平台方法。真實案例研究突顯了在金融、醫療保健和零售等領域的應用,而有關倫理、治理和代理人工智慧的章節則幫助您未來-proof 您的知識。

- 為表格、文本、圖像和時間序列數據構建 AutoML 管道
- 使用 MLOps 最佳實踐以快速、可擴展的工作流程部署模型
- 比較和導航當今領先的 AutoML 平台
- 解釋模型結果並使用可解釋性工具做出明智決策
- 探索 AutoML 如何引領下一代代理人工智慧系統