Book Image

AI Blueprints

By : Dr. Joshua Eckroth, Eric Schoen
Book Image

AI Blueprints

By: Dr. Joshua Eckroth, Eric Schoen

Overview of this book

AI Blueprints gives you a working framework and the techniques to build your own successful AI business applications. You’ll learn across six business scenarios how AI can solve critical challenges with state-of-the-art AI software libraries and a well thought out workflow. Along the way you’ll discover the practical techniques to build AI business applications from first design to full coding and deployment. The AI blueprints in this book solve key business scenarios. The first blueprint uses AI to find solutions for building plans for cloud computing that are on-time and under budget. The second blueprint involves an AI system that continuously monitors social media to gauge public feeling about a topic of interest - such as self-driving cars. You’ll learn how to approach AI business problems and apply blueprints that can ensure success. The next AI scenario shows you how to approach the problem of creating a recommendation engine and monitoring how those recommendations perform. The fourth blueprint shows you how to use deep learning to find your business logo in social media photos and assess how people interact with your products. Learn the practical techniques involved and how to apply these blueprints intelligently. The fifth blueprint is about how to best design a ‘trending now’ section on your website, much like the one we know from Twitter. The sixth blueprint shows how to create helpful chatbots so that an AI system can understand customers’ questions and answer them with relevant responses. This book continuously demonstrates a working framework and strategy for building AI business applications. Along the way, you’ll also learn how to prepare for future advances in AI. You’ll gain a workflow and a toolbox of patterns and techniques so that you can create your own smart code.
Table of Contents (14 chapters)
AI Blueprints
Foreword
Contributors
Preface
Other Books You May Enjoy
Index

Chapter 5. A Blueprint for Detecting Your Logo in Social Media

For much of the history of AI research and applications, working with images was particularly difficult. In the early days, machines could barely hold images in their small memories, let alone process them. Computer vision as a subfield of AI and ML made significant strides throughout the 1990s and 2000s with the proliferation of cheap hardware, webcams and new and improved processing-intensive algorithms such as feature detection and optical flow, dimensionality reduction, and 3D reconstruction from stereo images. Through this entire time, extracting good features from images required a bit of cleverness and luck. A face recognition algorithm, for example, could not do its job if the image features provided to the algorithm were insufficiently distinctive. Computer vision techniques for feature extraction included convolutions (such as blurring, dilation, edge detection, and so on); principal component analysis to reduce the...