Sign In Start Free Trial
Account

Add to playlist

Create a Playlist

Modal Close icon
You need to login to use this feature.
  • Book Overview & Buying Hands-On Artificial Intelligence for IoT
  • Table Of Contents Toc
Hands-On Artificial Intelligence for IoT

Hands-On Artificial Intelligence for IoT

By : Amita Kapoor, Hector Duran Lopez-Velarde
5 (4)
close
close
Hands-On Artificial Intelligence for IoT

Hands-On Artificial Intelligence for IoT

5 (4)
By: Amita Kapoor, Hector Duran Lopez-Velarde

Overview of this book

There are many applications that use data science and analytics to gain insights from terabytes of data. These apps, however, do not address the challenge of continually discovering patterns for IoT data. In Hands-On Artificial Intelligence for IoT, we cover various aspects of artificial intelligence (AI) and its implementation to make your IoT solutions smarter. This book starts by covering the process of gathering and preprocessing IoT data gathered from distributed sources. You will learn different AI techniques such as machine learning, deep learning, reinforcement learning, and natural language processing to build smart IoT systems. You will also leverage the power of AI to handle real-time data coming from wearable devices. As you progress through the book, techniques for building models that work with different kinds of data generated and consumed by IoT devices such as time series, images, and audio will be covered. Useful case studies on four major application areas of IoT solutions are a key focal point of this book. In the concluding chapters, you will leverage the power of widely used Python libraries, TensorFlow and Keras, to build different kinds of smart AI models. By the end of this book, you will be able to build smart AI-powered IoT apps with confidence.
Table of Contents (14 chapters)
close
close

Introduction


Generative models are an exciting new branch of deep learning models that learn through unsupervised learning. The main idea is to generate new samples having the same distribution as the given training data; for example, a network trained on handwritten digits can create new digits that aren't in the dataset but are similar to them. Formally, we can say that if the training data follows the distribution Pdata(x), then the goal of generative models is to estimate the probability density function Pmodel(x), which is similar to Pdata(x).

Generative models can be classified into two types: 

  • Explicit generative models: Here, the probability density function Pmodel(x) is explicitly defined and solved. The density function may be tractable as in the case of PixelRNN/CNN, or an approximation of the density function as in the case of VAE.
  • Implicit generative models: In these, the network learns to generate a sample from Pmodel(x) without explicitly defining it. GANs are an example of this...
CONTINUE READING
83
Tech Concepts
36
Programming languages
73
Tech Tools
Icon Unlimited access to the largest independent learning library in tech of over 8,000 expert-authored tech books and videos.
Icon Innovative learning tools, including AI book assistants, code context explainers, and text-to-speech.
Icon 50+ new titles added per month and exclusive early access to books as they are being written.
Hands-On Artificial Intelligence for IoT
notes
bookmark Notes and Bookmarks search Search in title playlist Add to playlist download Download options font-size Font size

Change the font size

margin-width Margin width

Change margin width

day-mode Day/Sepia/Night Modes

Change background colour

Close icon Search
Country selected

Close icon Your notes and bookmarks

Confirmation

Modal Close icon
claim successful

Buy this book with your credits?

Modal Close icon
Are you sure you want to buy this book with one of your credits?
Close
YES, BUY

Submit Your Feedback

Modal Close icon
Modal Close icon
Modal Close icon