Practical machine learning for streaming data with Python : design, develop, and validate online learning models / Sayan Putatunda.
2021
Q325.5
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Title
Practical machine learning for streaming data with Python : design, develop, and validate online learning models / Sayan Putatunda.
Author
ISBN
9781484268674 (electronic bk.)
1484268679 (electronic bk.)
9781484268667
1484268660
1484268679 (electronic bk.)
9781484268667
1484268660
Published
[Berkeley] : Apress, [2021]
Language
English
Description
1 online resource
Item Number
10.1007/978-1-4842-6867-4 doi
Call Number
Q325.5
Dewey Decimal Classification
006.3/1
Summary
Design, develop, and validate machine learning models with streaming data using the Scikit-Multiflow framework. This book is a quick start guide for data scientists and machine learning engineers looking to implement machine learning models for streaming data with Python to generate real-time insights. You'll start with an introduction to streaming data, the various challenges associated with it, some of its real-world business applications, and various windowing techniques. You'll then examine incremental and online learning algorithms, and the concept of model evaluation with streaming data and get introduced to the Scikit-Multiflow framework in Python. This is followed by a review of the various change detection/concept drift detection algorithms and the implementation of various datasets using Scikit-Multiflow. Introduction to the various supervised and unsupervised algorithms for streaming data, and their implementation on various datasets using Python are also covered. The book concludes by briefly covering other open-source tools available for streaming data such as Spark, MOA (Massive Online Analysis), Kafka, and more. You will: Understand machine learning with streaming data concepts Review incremental and online learning Develop models for detecting concept drift Explore techniques for classification, regression, and ensemble learning in streaming data contexts Apply best practices for debugging and validating machine learning models in streaming data context Get introduced to other open-source frameworks for handling streaming data.
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Source of Description
Online resource; title from PDF title page (SpringerLink, viewed April 16, 2021).
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Print version: 9781484268667
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Table of Contents
Chapter 1: An Introduction to Streaming Data
Chapter 2: Concept Drift Detection in Data Streams
Chapter 3: Supervised Learning for Streaming Data
Chapter 4: Unsupervised Learning and Other Tools for Data Stream Mining.
Chapter 2: Concept Drift Detection in Data Streams
Chapter 3: Supervised Learning for Streaming Data
Chapter 4: Unsupervised Learning and Other Tools for Data Stream Mining.