Book Image

Hands-On Artificial Intelligence for Beginners

By : Patrick D. Smith, David Dindi
Book Image

Hands-On Artificial Intelligence for Beginners

By: Patrick D. Smith, David Dindi

Overview of this book

Virtual Assistants, such as Alexa and Siri, process our requests, Google's cars have started to read addresses, and Amazon's prices and Netflix's recommended videos are decided by AI. Artificial Intelligence is one of the most exciting technologies and is becoming increasingly significant in the modern world. Hands-On Artificial Intelligence for Beginners will teach you what Artificial Intelligence is and how to design and build intelligent applications. This book will teach you to harness packages such as TensorFlow in order to create powerful AI systems. You will begin with reviewing the recent changes in AI and learning how artificial neural networks (ANNs) have enabled more intelligent AI. You'll explore feedforward, recurrent, convolutional, and generative neural networks (FFNNs, RNNs, CNNs, and GNNs), as well as reinforcement learning methods. In the concluding chapters, you'll learn how to implement these methods for a variety of tasks, such as generating text for chatbots, and playing board and video games. By the end of this book, you will be able to understand exactly what you need to consider when optimizing ANNs and how to deploy and maintain AI applications.
Table of Contents (15 chapters)

Deploying your applications

So, what does it mean to deploy a model? Deployment is an all-encompassing term that covers the process of taking a tested and validated model from your local computer, and setting it up in a sustainable environment where it's accessible. Deployment can be handled in a myriad of ways; in this chapter, we'll focus on the knowledge and best practices that you should know about to get your models up into production.

Your choice of deployment architecture depends on a few things:

  • Is your model being trained in one environment and productionalized in another?
  • How many times are you expecting your model to be called predictions to be made from it?
  • Is your data changing over time or is it static? Will you need to handle large inflows of data?

Each of these questions can be answered by breaking down our model selection options into two buckets...