Mastering CUDA 13 with Python : GPU Programming, AI Acceleration, and High-Performance Computing with PyTorch, CuPy, Numba, and cuda.core
Overview
Are you looking to move beyond CPU limitations and take full advantage of GPU acceleration using Python? Have you ever wondered how modern systems handle massive data processing, complex simulations, or large-scale machine learning tasks efficiently?
This book is written to answer those questions with clarity and precision.
Mastering CUDA 13 with Python: GPU Programming, AI Acceleration, and High-Performance Computing provides a practical, in-depth guide to building high-performance applications using GPU computing. It focuses on how Python can be used as a powerful interface for developing efficient parallel programs, handling large datasets, and accelerating computation-heavy workloads.
Instead of abstract explanations, the book walks through real implementation strategies-covering memory management, kernel design, parallel algorithms, and performance tuning. It explains how to write efficient GPU code, how to avoid common bottlenecks, and how to scale applications across multiple devices. You will also learn how to integrate GPU workflows into data analysis pipelines and machine learning systems without unnecessary complexity.
Are you working with large datasets that take too long to process? Trying to train models faster or optimize computational performance? Or looking to understand how modern high-performance systems are built?
This book is structured to guide you from foundational concepts to advanced techniques, with a strong focus on practical application. Each chapter builds technical depth, helping you not just use GPU acceleration, but understand how and why it works.
If your goal is to write faster, more efficient Python code that fully utilizes modern hardware, this book gives you the knowledge and structure to do it with confidence.
This item is Non-Returnable
Customers Also Bought
Details
- ISBN-13: 9798254917564
- ISBN-10: 9798254917564
- Publisher: Independently Published
- Publish Date: April 2026
- Dimensions: 11 x 8.5 x 0.46 inches
- Shipping Weight: 1.15 pounds
- Page Count: 220
Related Categories
