Amplifier.NET
Application accelerator
A .NET library that enables developers to run complex applications on various hardware platforms without writing additional C kernel code.
Amplifier allows .NET developers to easily run complex applications with intensive mathematical computation on Intel CPU/GPU, NVIDIA, AMD without writing any additional C kernel code. Write your function in .NET and Amplifier will take care of running it on your favorite hardware.
177 stars
14 watching
21 forks
Language: C#
last commit: over 2 years ago
Linked from 2 awesome lists
compilercuda-kernelsgpgpugpgpu-computinggpgpu-simopenclopencl-kernelssimd
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