Book Image

Time Series Indexing

By : Mihalis Tsoukalos
Book Image

Time Series Indexing

By: Mihalis Tsoukalos

Overview of this book

Time series are everywhere, ranging from financial data and system metrics to weather stations and medical records. Being able to access, search, and compare time series data quickly is essential, and this comprehensive guide enables you to do just that by helping you explore SAX representation and the most effective time series index, iSAX. The book begins by teaching you about the implementation of SAX representation in Python as well as the iSAX index, along with the required theory sourced from academic research papers. The chapters are filled with figures and plots to help you follow the presented topics and understand key concepts easily. But what makes this book really great is that it contains the right amount of knowledge about time series indexing using the right amount of theory and practice so that you can work with time series and develop time series indexes successfully. Additionally, the presented code can be easily ported to any other modern programming language, such as Swift, Java, C, C++, Ruby, Kotlin, Go, Rust, and JavaScript. By the end of this book, you'll have learned how to harness the power of iSAX and SAX representation to efficiently index and analyze time series data and will be equipped to develop your own time series indexes and effectively work with time series data.
Table of Contents (11 chapters)

To get the most out of this book

This book requires a UNIX machine with a relatively recent Python 3 installation and the ability to install Python packages locally. This includes any machine running recent versions of macOS and Linux. All the code has been tested on a Microsoft Windows machine.

We propose that you use software for Python package, dependency, and environment management to have a stable Python 3 environment. We use Anaconda, but any similar tool is going to work fine.

Last, if you really want to make the best use of the book, then you need to experiment as much as you can with the presented Python code, create your own iSAX indexes and visualizations, and maybe port the code into a different programming language.