Book Image

Analytics for the Internet of Things (IoT)

By : Andrew Minteer
5 (1)
Book Image

Analytics for the Internet of Things (IoT)

5 (1)
By: Andrew Minteer

Overview of this book

We start with the perplexing task of extracting value from huge amounts of barely intelligible data. The data takes a convoluted route just to be on the servers for analysis, but insights can emerge through visualization and statistical modeling techniques. You will learn to extract value from IoT big data using multiple analytic techniques. Next we review how IoT devices generate data and how the information travels over networks. You’ll get to know strategies to collect and store the data to optimize the potential for analytics, and strategies to handle data quality concerns. Cloud resources are a great match for IoT analytics, so Amazon Web Services, Microsoft Azure, and PTC ThingWorx are reviewed in detail next. Geospatial analytics is then introduced as a way to leverage location information. Combining IoT data with environmental data is also discussed as a way to enhance predictive capability. We’ll also review the economics of IoT analytics and you’ll discover ways to optimize business value. By the end of the book, you’ll know how to handle scale for both data storage and analytics, how Apache Spark can be leveraged to handle scalability, and how R and Python can be used for analytic modeling.
Table of Contents (20 chapters)
Title Page
Credits
About the Author
About the Reviewer
www.PacktPub.com
Customer Feedback
Preface

Adding internal datasets


IoT data by itself is only part of the story. There is a multitude of useful data already available to you that could be a store of hidden value. Internal datasets can be overlooked as a way to quickly enhance IoT data. They are an excellent place to start. IoT data should not be viewed in isolation; think of it as a continuation of data already stored about your company's products, customers, and processes.

Data should be combined into a 360-degree view of your business to maximize the opportunity of finding new value in it. The fastest and easiest place to start is usually (but not always) the internal datasets that you already have available.

The reason it may not always be the fastest and easiest comes from internal data security and legacy system hurdles; which can sometimes make it difficult to extract internal data to combine with IoT data. This may be a stumbling block for internal datasets, which, perhaps counter-intuitively, is not the case with external...