Book Image

Artificial Intelligence for IoT Cookbook

By : Michael Roshak
Book Image

Artificial Intelligence for IoT Cookbook

By: Michael Roshak

Overview of this book

Artificial intelligence (AI) is rapidly finding practical applications across a wide variety of industry verticals, and the Internet of Things (IoT) is one of them. Developers are looking for ways to make IoT devices smarter and to make users’ lives easier. With this AI cookbook, you’ll be able to implement smart analytics using IoT data to gain insights, predict outcomes, and make informed decisions, along with covering advanced AI techniques that facilitate analytics and learning in various IoT applications. Using a recipe-based approach, the book will take you through essential processes such as data collection, data analysis, modeling, statistics and monitoring, and deployment. You’ll use real-life datasets from smart homes, industrial IoT, and smart devices to train and evaluate simple to complex models and make predictions using trained models. Later chapters will take you through the key challenges faced while implementing machine learning, deep learning, and other AI techniques, such as natural language processing (NLP), computer vision, and embedded machine learning for building smart IoT systems. In addition to this, you’ll learn how to deploy models and improve their performance with ease. By the end of this book, you’ll be able to package and deploy end-to-end AI apps and apply best practice solutions to common IoT problems.
Table of Contents (11 chapters)

Analyzing chemical sensors with anomaly detection

Accurate predictive models require a large number of devices in the field to have failed so that they have enough fail data to use for predictions. For some well-crafted industrial devices, failures on this scale can take years. Anomaly detection can identify devices that are not behaving like the other devices in the fleet. It can also be used to wade through thousands of similar messages and pinpoint the messages that are not like the others.

Anomaly detection in machine learning can be unsupervised, supervised, or semi-supervised. Usually, it starts by using an unsupervised machine learning algorithm to cluster data into patterns of behavior or groups. This presents a series of data in buckets. When the machines are examined, some of the buckets identify behavior while some identify an issue with the device. The device may have exhibited different patterns of behavior in a resting state, an in-use state, a cold state, or something that...