¡Seguimos de Cyberdays! Hasta 40% OFF + 3 cuotas sin interés con MP  Ver más

Enviar a
C.A.B.A., Ciudad Autónoma de Buenos Aires
0
  • argentina
  • chile
  • colombia
  • españa
  • méxico
  • perú
  • estados unidos
  • internacional

Selecciona tu país

América

Europa

Resto del mundo

portada GPU-Accelerated Computing with Python 3 and CUDA. From low-level kernels to real-world applications in scientific computing and machine learning (en Inglés)
Formato
Libro Físico
Año
2026
Idioma
Inglés
N° páginas
534
Encuadernación
Tapa Blanda
Dimensiones
23.50 x 19.10 x 2.70 cm
ISBN13
9781803245423

GPU-Accelerated Computing with Python 3 and CUDA. From low-level kernels to real-world applications in scientific computing and machine learning (en Inglés)

Niels Cautaerts;Hossein Ghorbanfekr (Autor) · Packt Publishing · Tapa Blanda

GPU-Accelerated Computing with Python 3 and CUDA. From low-level kernels to real-world applications in scientific computing and machine learning (en Inglés) - Niels Cautaerts;Hossein Ghorbanfekr

Libro Nuevo Importado
Envío: 15 a 20 días háb.
$ 200.108$ 100.054
-50%
Costos de importación incluídos en el precio ✅
Libro Nuevo

Quedan más de 100 unidades

$ 100.054
Llega entre el 03 Ago y el 10 Ago a C.A.B.A., Ciudad Autónoma de Buenos Aires. Seleccionar ubicación

Reseña del libro "GPU-Accelerated Computing with Python 3 and CUDA. From low-level kernels to real-world applications in scientific computing and machine learning (en Inglés)"

Accelerate your Python code on the GPU using CUDA, Numba, and modern libraries to solve real-world problems faster and more efficiently.

Key Features:

- Build a solid foundation in CUDA with Python, from kernel design to execution and debugging

- Optimize GPU performance with efficient memory access, CUDA streams, and multi-GPU scaling

- Use JAX, CuPy, RAPIDS, and Numba to accelerate numerical computing and machine learning

- Create practical GPU applications, from PDE solvers to image processing and transformers

Book Description:

Writing high-performance Python code doesn't have to mean switching to C++. This book shows you how to accelerate Python applications using NVIDIA's CUDA platform and a modern ecosystem of Python tools and libraries. Aimed at researchers, engineers, and data scientists, it offers a practical yet deep understanding of GPU programming and how to fully exploit modern GPU hardware.

You'll begin with the fundamentals of CUDA programming in Python using Numba-CUDA, learning how GPUs work and how to write, execute, and debug custom GPU kernels. Building on this foundation, the book explores memory access optimization, asynchronous execution with CUDA streams, and multi-GPU scaling using Dask-CUDA. Performance analysis and tuning are emphasized throughout, using NVIDIA Nsight profilers.

You'll also learn to use high-level GPU libraries such as JAX, CuPy, and RAPIDS to accelerate numerical Python workflows with minimal code changes. These techniques are applied to real-world examples, including PDE solvers, image processing, physical simulations, and transformer models.

Written by experienced GPU practitioners, this hands-on guide emphasizes reproducible workflows using Python 3.10+, CUDA 12.3+, and tools like the Pixi package manager. By the end, you'll have future-ready skills for building scalable GPU applications in Python.

What You Will Learn:

- Understand GPU execution, parallelism, and the CUDA programming model

- Write, launch, and debug custom CUDA kernels in Python with CUDA

- Profile GPU code with NVIDIA Nsight and optimize memory access

- Use CUDA streams and async execution to overlap compute and transfers

- Apply JAX, CuPy, and RAPIDS to numerical computing and machine learning

- Scale GPU workloads across devices using Dask and multi-GPU strategies

- Accelerate PDE solvers, simulations, and image processing on the GPU

- Build, train, and run a transformer model from scratch on the GPU

Who this book is for:

Python developers, (data) scientists, engineers, and researchers looking to accelerate numerical computations without switching to low-level languages. This book is ideal for those with experience in scientific Python (NumPy, Pandas, SciPy) and a basic understanding of computing fundamentals who want deeper control over performance in GPU environments.

Table of Contents

- Why GPU programming with CUDA in Python 3?

- Setting up a GPU programming environment locally and in the cloud

- Writing and executing a CUDA kernel with numba

- Profiling and debugging CUDA code

- Optimize memory access patterns and other tricks

- Using CUDA Streams for Asynchronous Data Transfers

- Scaling to multiple GPUs

- Bringing NumPy and SciPy to the GPU with CuPy

- Bringing Pandas and Scikit-learn to the GPU with Rapids

- Solving Optimization Problems on the GPU with JAX

- Solving the heat equation on the GPU

- Image processing on the GPU

- Simulating Atomic Interactions on the GPU

- Implementing your own transformer based language model from scratch

- Expanding and Deepening your GPU Programming Knowledge

Opiniones del libro

Preguntas frecuentes sobre el libro

Todos los libros de nuestro catálogo son Originales.
El libro está escrito en Inglés.
La encuadernación de esta edición es Tapa Blanda.

Preguntas y respuestas sobre el libro

¿Tienes una pregunta sobre el libro? Inicia sesión para poder agregar tu propia pregunta.

Opiniones sobre Buscalibre

Ver más opiniones de clientes