Machine Learning for Data Streams: With Practical Examples in MOA

Machine Learning for Data Streams: With Practical Examples in MOA

尚無評分
Mar 2, 2018 · 英語 · 精裝書 (288 頁數)
加入書架

評價這本書


出口書籍日誌

書籍詳情

格式 精裝書
頁數 288
語言 英語
已出版 Mar 2, 2018
出版商 The MIT Press
ISBN-10 0262037793
ISBN-13 9780262037792

描述

This comprehensive guide introduces readers to the fascinating world of data stream mining and real-time analytics, unraveling complex concepts in a practical and accessible manner. The authors, experts in machine learning, provide valuable insights into the rapidly evolving landscape of data-driven applications, emphasizing the importance of adapting traditional techniques to continuously flowing data.

With a focus on the Mining Open Source (MOA) framework, readers are guided through a series of practical examples that illustrate the effective implementation of cutting-edge algorithms. Each chapter bridges theory and practice, allowing readers to develop a robust understanding of how to manage, analyze, and derive meaningful insights from data streams.

Throughout the book, the collaborative efforts of the authors shine through, making complex topics relatable and engaging. Their expertise not only highlights the current state of machine learning but also prepares readers for the challenges and opportunities that lie ahead in the dynamic realm of data analytics.
加入書架

評價這本書


出口書籍日誌