| 000 | 00000cam u2200205 a 4500 | |
| 001 | 000046209422 | |
| 005 | 20251014100517 | |
| 008 | 251013s2024 sz ad b 001 eng | |
| 020 | ▼a 9783031640865 (hard cover) | |
| 020 | ▼z 9783031640872 (eBook) | |
| 035 | ▼a (KERIS)BIB000017132611 | |
| 040 | ▼a 244009 ▼c 244009 ▼d 211009 | |
| 050 | 4 | ▼a QA76.624 ▼b .T66 2024 |
| 082 | 0 4 | ▼a 005.1/1 ▼2 23 |
| 084 | ▼a 005.11 ▼2 DDCK | |
| 090 | ▼a 005.11 ▼b T656d2 | |
| 100 | 1 | ▼a Tomczak, Jakub M., ▼e author. |
| 245 | 1 0 | ▼a Deep generative modeling / ▼c Jakub M. Tomczak. |
| 250 | ▼a 2nd ed. | |
| 260 | ▼a Cham : ▼b Springer, ▼c 2024. | |
| 300 | ▼a xxiii, 313 p. : ▼b col. ill., charts ; ▼c 25 cm. | |
| 504 | ▼a Includes bibliographical references and index. | |
| 650 | 0 | ▼a Generative programming (Computer science). |
| 650 | 0 | ▼a Deep learning (Machine learning). |
| 650 | 0 | ▼a Probabilities ▼x Mathematical models. |
| 945 | ▼a ITMT |
소장정보
| No. | 소장처 | 청구기호 | 등록번호 | 도서상태 | 반납예정일 | 예약 | 서비스 |
|---|---|---|---|---|---|---|---|
| No. 1 | 소장처 과학도서관/Sci-Info(2층서고)/ | 청구기호 005.11 T656d2 | 등록번호 121270404 | 도서상태 대출가능 | 반납예정일 | 예약 | 서비스 |
컨텐츠정보
책소개
This first comprehensive book on models behind Generative AI has been thoroughly revised to cover all major classes of deep generative models: mixture models, Probabilistic Circuits, Autoregressive Models, Flow-based Models, Latent Variable Models, GANs, Hybrid Models, Score-based Generative Models, Energy-based Models, and Large Language Models. In addition, Generative AI Systems are discussed, demonstrating how deep generative models can be used for neural compression, among others.
Deep Generative Modeling is designed to appeal to curious students, engineers, and researchers with a modest mathematical background in undergraduate calculus, linear algebra, probability theory, and the basics of machine learning, deep learning, and programming in Python and PyTorch (or other deep learning libraries). It should find interest among students and researchers from a variety of backgrounds, including computer science, engineering, data science, physics, and bioinformatics who wish to get familiar with deep generative modeling.
In order to engage with a reader, the book introduces fundamental concepts with specific examples and code snippets. The full code accompanying the book is available on the author's GitHub site: github.com/jmtomczak/intro_dgm
The ultimate aim of the book is to outline the most important techniques in deep generative modeling and, eventually, enable readers to formulate new models and implement them.
?
?
?
정보제공 :
목차
Chapter 1 Why Deep Generative Modeling?.- Chapter 2 Probabilistic modeling: From Mixture Models to Probabilistic Circuits.- Chapter 3 Autoregressive Models.- Chapter 4 Flow-based Models.- Chapter 5 Latent Variable Models.- Chapter 6 Hybrid Modeling.- Chapter 7 Energy-based Models.- Chapter 8 Generative Adversarial Networks.- Chapter 9 Score-based Generative Models.- Chapter 10 Deep Generative Modeling for Neural Compression.- Chapter 11 From Large Language Models to Generative AI.
