Essentials of Generative AI

· Springer Nature
E-knjiga
232
Broj stranica
Ocjene i recenzije nisu potvrđene  Saznajte više

O ovoj e-knjizi

This book provides a concise yet comprehensive introduction to generative artificial intelligence.

The first part explains the foundational technologies and architectures that support the realization of generative models. It covers evolved and deepened elements, word embeddings as a representative example of representation learning, and the Transformer as a network foundation, along with its underlying attention mechanism. Reinforcement learning, which became essential for elevating large-scale language models to language generation models, is also discussed in detail, focusing on essential aspects.

The second part deals with language generation. It starts by elucidating language models

and introduces large-scale language models with broad applications as the foundational architecture of language processing, further discussing language generation models as their evolution. Though not common terminology, in this book, models such as ChatGPT and Llama 2, which are large-scale language models fine-tuned using reinforcement learning, are referred to as generative language models.

The third part addresses image generation, discussing variational autoencoders and the remarkable diffusion models. Additionally, it explains Generative Adversarial Networks(GAN). Although GAN poses challenges due to unstable learning, their conceptual framework is widely applicable, especially Wasserstein GAN seems suitable for introducing optimal trans- port distance, which is utilized in various scenarios.

This book primarily serves as a companion for researchers or graduate students in machine learning, aiming to help them understand the essence of generative AI and lay the groundwork for advancing their own research.

O autoru

Takeshi Okadome is a Japanese computer scientist. He is a Professor of Artificial Intelligent and Mechanical Engineering at Kwansei Gakuin University and a director of
the Artificial Intelligent Center of Kwansei Gakuin University.

He obtained a Bachelor and Master of degrees of Computer Science, and later a PhD in computer science from the University of Tokyo supervised by Hisao Yamada. After obtaining his PhD In 1988, he became a researcher at NTT. He conducts research in the field of machine learning. He is a member of ACM.

Ocijenite ovu e-knjigu

Recite nam šta mislite.

Informacije o čitanju

Pametni telefoni i tableti
Instalirajte aplikaciju Google Play Knjige za Android i iPad/iPhone uređaje. Aplikacija se automatski sinhronizira s vašim računom i omogućava vam čitanje na mreži ili van nje gdje god da se nalazite.
Laptopi i računari
Audio knjige koje su kupljene na Google Playu možete slušati pomoću web preglednika na vašem računaru.
Elektronički čitači i ostali uređaji
Da čitate na e-ink uređajima kao što su Kobo e-čitači, morat ćete preuzeti fajl i prenijeti ga na uređaj. Pratite detaljne upute Centra za pomoć da prenesete fajlove na podržane e-čitače.