-
Book Overview & Buying
-
Table Of Contents
-
Feedback & Rating

Power Platform and the AI Revolution
By :

In the last few years, the field of artificial intelligence (AI) has undergone remarkable advancements, revolutionizing various domains and reshaping the way we think about and interact with technology. One particularly fascinating branch of AI that has gained significant attention recently is Generative AI. By enabling machines to exhibit creativity (or, more specifically, the appearance of creativity), Generative AI has opened up new frontiers in areas such as art, music, design, and storytelling, in addition to chat and human interaction.
Before we get too ahead of ourselves, let’s talk about some core concepts to help shed some light on how all this works.
What do all these AI terms mean? Generative AI, in particular, refers to a class of algorithms and models that can autonomously generate new and (somewhat) original content. Unlike traditional AI systems, which rely on pre-defined rules or explicit instructions, Generative AI systems are designed to learn from patterns and existing data to produce novel outputs. These systems leverage deep learning techniques, such as generative adversarial networks (GANs), variational autoencoders (VAEs), and recurrent neural networks (RNNs), to emulate the creative processes of the human mind.
As you’ll see, AI has a lexicon all its own. What do we mean when we say things such as generative adversarial networks and variational autoencoders? Let’s make a quick detour and define some of the terms that we’re going to use:
There are many more complex concepts (including many more types of neural networks and AI models) behind deep learning and AI systems.
In addition to Generative AI, many types of AI models are currently in use today, such as those designed to do the following:
Each of these different types of models depends on vast quantities of existing data and purpose-built algorithms, combined with training procedures to help the models “learn” how to predict or identify things.
Throughout this book, we’ll be using a variety of AI technologies – from prebuilt, purpose-oriented models to Generative AI. By the time you reach the final examples and exercises, I hope you’ll have some exciting ideas on how you can accelerate your team, organization, or even personal life with AI.