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- Title: CUDA C++ Optimization: Coding Faster GPU Kernels
- Author(s) David Spuler
- Publisher: Aussie AI Labs (2024)
- Paperback: 184 pages
- eBook: PDF
- Language: English
- ISBN-10/ASIN: B0DK21QQYD
- ISBN-13: 979-8343076516
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Increase the efficiency of CUDA C++ kernels for AI and high-performance computing on the powerful NVIDIA GPUs. Leverage your GPU investment with the power of an efficient software layer.
About the Authors- Dr. David Spuler is an AI researcher and proficient C++ programmer.
- Parallel, Concurrent Computing and Programming
- Computer Graphics and GPU Programming
- The C++ Programming Language
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