Book Image

Machine Learning for Streaming Data with Python

By : Joos Korstanje
Book Image

Machine Learning for Streaming Data with Python

By: Joos Korstanje

Overview of this book

Streaming data is the new top technology to watch out for in the field of data science and machine learning. As business needs become more demanding, many use cases require real-time analysis as well as real-time machine learning. This book will help you to get up to speed with data analytics for streaming data and focus strongly on adapting machine learning and other analytics to the case of streaming data. You will first learn about the architecture for streaming and real-time machine learning. Next, you will look at the state-of-the-art frameworks for streaming data like River. Later chapters will focus on various industrial use cases for streaming data like Online Anomaly Detection and others. As you progress, you will discover various challenges and learn how to mitigate them. In addition to this, you will learn best practices that will help you use streaming data to generate real-time insights. By the end of this book, you will have gained the confidence you need to stream data in your machine learning models.
Table of Contents (17 chapters)
1
Part 1: Introduction and Core Concepts of Streaming Data
5
Part 2: Exploring Use Cases for Data Streaming
11
Part 3: Advanced Concepts and Best Practices around Streaming Data
15
Chapter 12: Conclusion and Best Practices

Overview of classification algorithms in River

There is a large number of online classification models available in the River online machine learning package.

A selection of relevant ones is as follows:

  • LogisticRegression
  • Perceptron
  • AdaptiveRandomForestClassifier
  • ALMAClassifier
  • PAClassifier

Classification algorithm 1 – LogisticRegression

Logistic regression is one of the most basic statistical classification models. It models a dependent variable (target variable) that has two classes (1 or 0) and can use multiple independent variables to make the prediction.

The model combines each of the independent variables as log-odds; you can see this as the coefficients in linear regression, except that they are log-odds for each variable. The split in the model is based on the logistic function.

You can see a simplified schematic of the idea as follows:

Figure 6.4 – The logistic curve

Logistic regression in River...