Looking for an accelerated numerical computing library for .NET - eviltoast

Hi!

I’m looking for a C# library for matrix operations and preferably some linear algebra or optimization routines. Basically a NumPy/SciPy or PyTorch.

Ideally there’d be support for various backends (e.g. CPU, CUDA, OpenCL) for operations where possible.

As far as I can tell, there’s Math.NET Numerics, Numpy.NET (which binds to Python’s numpy), and NumSharp (which hasn’t had commits since 2021), which seem to fit the bill mostly, though none are accelerated.

Otherwise, there are some libraries I’ve forgotten that seem to specifically target CUDA, which is too selective for my purpose. Maybe it was Hybridizer, which seems like its own compiler, which I’m not sure would work for me either.

There’s also ComputeSharp which lets you write shaders directly in C#, though targets DirectX if I understand well.

The closest thing I’ve found is ILGPU, which seems brilliant since it JIT compiles kernels to CPU, CUDA, and OpenCL. The problem is I believe I’d need to write my own operations and kernels and essentially implement my own matrix compute library, though there seems to be some work on it, so maybe what I’m looking for is supported out of the box, minus optimization algorithms and so on.

Basically, does anyone have any pointers?

  • Turun@feddit.de
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    1 year ago

    Numpy.NET library as far as I know uses its own embedded Python + numpy,

    Wtf, this is so absurd I find it hard to believe. They ship a python interpreter just to get numpy? And then wrote bindings to python instead of writing c# bindings for numpy?

    Edit: wtf they really do.

    Rust numpy seems to do something similar though. They have ndarray, which is independent from numpy, as a number crunching backend though. This is the part that can use blas.