News

Not every developer who might like to learn CUDA has access to an NVIDIA GPU, so by expanding the hardware that CUDA can target to include x86, you'll be able to get your feet wet with CUDA on ...
Huawei makes its CANN AI GPU toolkit open source to challenge Nvidia’s proprietary CUDA platform CUDA’s near 20-year dominance has locked developers into Nvidia’s hardware ecosystem exclusively CANN ...
A hands-on introduction to parallel programming and optimizations for 1000+ core GPU processors, their architecture, the CUDA programming model, and performance analysis. Students implement various ...
When used correctly, atomic operations can help implement a wide range of generic data structures and algorithms in the massively threaded GPU programming environment.
What you’ll learn: Differences between CUDA and ROCm. What are the strengths of each platform? Graphics processing units (GPUs) are traditionally designed to handle graphics computational tasks ...
Nvidia has unveiled a new compiler source code to add new languages to its parallel programming and boost the adoption of GPUs.
Graphics processing units from Nvidia are too hard to program, including with Nvidia's own programming tool, CUDA, according to artificial intelligence research firm OpenAI. The San Francisco ...
In addition, Nvidia announced that more than 20 universities around the world have adopted CUDA for multicore and parallel processing programming, with several more also exploring CUDA for inclusion ...
A hands-on introduction to parallel programming and optimizations for 1000+ core GPU processors, their architecture, the CUDA programming model, and performance analysis. Students implement various ...