GPU Computing
No se pudo agregar al carrito
Solo puedes tener X títulos en el carrito para realizar el pago.
Add to Cart failed.
Por favor prueba de nuevo más tarde
Error al Agregar a Lista de Deseos.
Por favor prueba de nuevo más tarde
Error al eliminar de la lista de deseos.
Por favor prueba de nuevo más tarde
Error al añadir a tu biblioteca
Por favor intenta de nuevo
Error al seguir el podcast
Intenta nuevamente
Error al dejar de seguir el podcast
Intenta nuevamente
Prueba gratis de 30 días de Audible Standard
Selecciona 1 audiolibro al mes de nuestra colección completa de más de 1 millón de títulos.
Es tuyo mientras seas miembro.
Obtén acceso ilimitado a los podcasts con mayor demanda.
Plan Standard se renueva automáticamente por $8.99 al mes después de 30 días. Cancela en cualquier momento.
Compra ahora por $9.80
-
Narrado por:
-
Virtual Voice
-
De:
-
Ajit Singh
Este título utiliza narración de voz virtual
Voz Virtual es una narración generada por computadora para audiolibros..
Philosophy: From Theory to Implementation
The core philosophy of GPU Computing is "learning by doing." The field of parallel programming is inherently practical. While understanding the theory of parallel architectures is important, true mastery comes from the hands-on process of designing, writing, debugging, and optimizing parallel code. This book is engineered to facilitate that active learning process.
Key Features
1. Strictly Practical Focus: Heavily prioritizes implementation, coding, and application development over abstract theory.
2. Beginner to Advanced Path: The structure supports those with no parallel programming experience while also providing advanced chapters on optimization, profiling, and multi-GPU systems for more experienced learners.
3. CUDA-Oriented: Focuses on NVIDIA's CUDA, the most mature and widely-used platform for general-purpose GPU computing in both industry and academia.
5. Ten-Chapter Structure: A concise and focused structure that covers all essential topics without unnecessary filler, making it ideal for a semester-long course.
6. Complete Capstone Project: Includes a live, do-it-yourself project with fully explained, working code to provide a portfolio-worthy development experience.
7. Latest and Updated Content: Covers modern GPU architectures, relevant CUDA features, and current best practices in the field.
Key Takeaways
Upon completing this book, you will be able to:
1. Understand GPU Architecture: Explain the fundamental design of a modern GPU, including its streaming multiprocessors, cores, and memory hierarchy.
2. Write and Launch CUDA Kernels: Develop parallel programs in CUDA C++ and execute them on the GPU.
3. Manage GPU Memory: Efficiently allocate and transfer data between the CPU (host) and GPU (device) and utilize different memory spaces (global, shared, constant) for optimal performance.
4. Implement Parallel Algorithms: Convert sequential algorithms into their parallel counterparts using common patterns like reduction, scan, and parallel sorting.
5. Optimize and Debug Code: Use profiling tools to identify performance bottlenecks and apply standard optimization techniques. Debug complex parallel code effectively.
6. Utilize CUDA Libraries: Leverage powerful, pre-built NVIDIA libraries (e.g., cuBLAS, cuFFT) to accelerate common computational tasks.
7. Build a Complete GPU-Accelerated Application: Design, implement, and deploy a functional application that effectively harnesses the power of the GPU from start to finish.
Disclaimer: Earnest request from the Author.
Kindly go through the table of contents and refer kindle edition for a glance on the related contents.
Thank you for your kind consideration!
Todavía no hay opiniones