GPU-Accelerated Deep Learning
von APRESS
GPU-Accelerated Deep Learning
von APRESS
inkl. Ust.
65,99 €
Lieferung
Lieferung am Do. 30.04.2026
Händler*in
BMS
Der*die Händler*in gewährt für dieses Produkt eine Widerrufsfrist von 30 Tagen. Für Details lies bitte die Widerrufsbelehrung und das -formular sowie die jeweiligen Händler-AGB.
Produktdetails
Explore the convergence of deep learning and GPU technology. This book is a complete guide for those wishing to use GPUs to accelerate AI workflows. The book is meant to make complex concepts understandable, with step-by-step instructions on how to set up and use GPUs in deep learning applications. Starting with an introduction to the fundamentals, you'll dive into progressive topics like Convolutional Neural Networks (CNNs) and sequence models, exploring how GPU optimization boosts performance. Further, you will learn the power of generative models, and take your skills by deploying AI models on edge devices. Finally, you will master the art of scaling and distributed training to handle large datasets and complex tasks efficiently. This book is your roadmap to becoming proficient in deep learning and harnessing the full potential of GPUs. What You Will Learn: How to apply deep learning techniques on GPUs to solve challenging AI problems. Optimizing neural networks for faster training and inference on GPUs Integration of GPUs with Microsoft Copilots Implementing VAEs (Variational Autoencoders) with TensorFlow and PyTorch Who This Book Is For: Industry IT professionals in AI. Students pursuing undergraduate and postgraduate degrees in Engineering, Computer Science, Data Science.
Infotabelle
Produktspezifikationen
| Autor | Pallavi Vijay Chavan |
| Format | gebundene Ausgabe |
| Sprachfassung | Englisch |
| Seiten | 146 |
| Erscheinungsdatum | 2026-01-03 |
| Verlag | APRESS |
Produktkennung
| Artikelnummer | m0000RX7IM |
| EAN | 9798868820823 |
| GTIN | 09798868820823 |
Zusatzinfo und Downloads
Details zur Produktsicherheit
| Herstellerinformationen |
| Verantwortliche Person für die EU |
| Entsorgungshinweise |
Produktdetails
Explore the convergence of deep learning and GPU technology. This book is a complete guide for those wishing to use GPUs to accelerate AI workflows. The book is meant to make complex concepts understandable, with step-by-step instructions on how to set up and use GPUs in deep learning applications. Starting with an introduction to the fundamentals, you'll dive into progressive topics like Convolutional Neural Networks (CNNs) and sequence models, exploring how GPU optimization boosts performance. Further, you will learn the power of generative models, and take your skills by deploying AI models on edge devices. Finally, you will master the art of scaling and distributed training to handle large datasets and complex tasks efficiently. This book is your roadmap to becoming proficient in deep learning and harnessing the full potential of GPUs. What You Will Learn: How to apply deep learning techniques on GPUs to solve challenging AI problems. Optimizing neural networks for faster training and inference on GPUs Integration of GPUs with Microsoft Copilots Implementing VAEs (Variational Autoencoders) with TensorFlow and PyTorch Who This Book Is For: Industry IT professionals in AI. Students pursuing undergraduate and postgraduate degrees in Engineering, Computer Science, Data Science.
Infotabelle
Produktspezifikationen
| Autor | Pallavi Vijay Chavan |
| Format | gebundene Ausgabe |
| Sprachfassung | Englisch |
| Seiten | 146 |
| Erscheinungsdatum | 2026-01-03 |
| Verlag | APRESS |
Produktkennung
| Artikelnummer | m0000RX7IM |
| EAN | 9798868820823 |
| GTIN | 09798868820823 |
Zusatzinfo und Downloads
Details zur Produktsicherheit
| Herstellerinformationen |
| Verantwortliche Person für die EU |
| Entsorgungshinweise |
Top Produkte der Kategorie
Weitere Kategorien
Bücher, Musik & Filme Bücher Fachbücher Informatik Geschichtswissenschaft Recht Theologie Psychologie Politikwissenschaft Wirtschaft Medienwissenschaft Ethnologie Philosophie Technik Sozialwissenschaft Pädagogik Sprach- & Literaturwissenschaft Mathematik Biowissenschaften Allgemeine Naturwissenschaften Allgemeine Geisteswissenschaften Physik Geowissenschaften Musikwissenschaft Kunstwissenschaft Chemie Medizin











