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amd/HPCTrainingExamples

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What it does

This is a collection of learning examples created by AMD to help software engineers write programs that run on AMD's graphics cards (GPUs), which are increasingly used for heavy computing tasks like scientific simulations and AI workloads. Think of it as an official training kit that shows developers how to get the most out of AMD's hardware, including how to convert existing code written for rival Nvidia GPUs over to AMD's platform.

Why it matters

As companies look to reduce dependence on Nvidia's dominant GPU ecosystem, AMD is actively courting developers by lowering the barrier to switch — and this repository is part of that strategy. For investors and founders, it signals that AMD is investing in developer mindshare, which is often the deciding factor in which hardware platform wins long-term adoption in the booming high-performance computing and AI infrastructure market.

28Active

On the radar — signal detected

Stars
154
Forks
74
Contributors
39
Language
C++

Score updated Feb 28, 2026

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