• Mirrors the geohotz rants about AMD at the time, though as others point out this - 2024 - is ancient news in AI world and not quite sure what value it adds to the current discussions
    • Has this changed, If I want to go hands on with development using pytorch or whatever is used now, would you recommend an AMD card?

      Genuine question, I have not followed this topic closely for years :)

      • Still rocking a 3090 so can't speak from experience but general vibe around simple at home inference seems like it has improved (esp since both vulkan and rocm are now viable paths on newer cards).

        >development using pytorch

        Would probably still play it nvidia safe for more adventurous stuff than token generation even if it has improved

  • Please just get everything in PyTorch to work, and work well (and across all graphics cards too). This is the starting point and it doesn't matter how you do it. But the fact you cannot even do some very basic stuff on AMD is going to mean you are left unused by researchers, so getting further up the stack is going to be almost impossible.
    • Does PyTorch not work on AMD cards? I remain very nervous about returning to the AMD ecosystem. On paper AMD has been a compelling choice for GPGPU work for years, up until it turns out the hardware can't actually do what it claims. But the PyTorch problem seemed to be largely solved years. The issues weren't on the application layer, it was crippling firmware bugs that they didn't seem interested in getting a handle on. PyTorch ran fine until the computer kernel paniced or whatever, but that isn't a PyTorch problem.
    • The problem is "just". "Just" getting pytorch to work and to work well is a huge undertaking.
      • Just here means at minimum or first and foremost, no excuses. I obviously understand this is a huge undertaking. Nobody said attempting to be competitive with NVIDIA in AI would be a walk in the park.
      • for a trillion dollars, they should be able to figure it out.
  • > AMD’s software experience is riddled with bugs [...] AMD’s weaker-than-expected software Quality Assurance (QA) culture and its challenging out of the box experience.

    This has anecdotally been true since forever. Back in the day, OpenCL implementations were passing conformance test but performance was poor. They could not turn hardware capabilities into performance for compute users. Drivers were buggy. Documentation was poor compared to NVidia's docs and forum. Offerings were inconsistent (look up Sycl from Codeplay) and ownership of what it is like to develop for AMD was unclear. The notion that it might not have improved or is only now improving is puzzling. It can't be for the lack of recognizing the problem. Intuitively it does not seem so difficult. I'm curious what the reasons are.

    • FWIW Back in 2015 OpenCL 2.0 performance was quite good on then-current AMD GPUs (IMO), but the problem was that 1. You had to implement everything yourself, from scratch, since AMD's GPU BLAS was barely compilable, and 2. They abandoned OpenCL that year, and switched to HIP (or whatever their copy of CUDA was called) which didn't even compile (in practice) for quite some time, and 3. Even with HIP, you were on your own when it comes for any BLAS and other standard library implementations because AMD provided nothing of the sorts for a long time.

      All in all, it's not that the drivers performance was poor per se, but AMD did nothing about providing a software ecosystem, which amount to its hardware wasn't realistically usable unless your pockets were so big that you can do AMD's job and fund the re-development of the whole ecosystem from scratch.

      In other words, it made MUCH better ROI to just use Nvidia, pay a little bit more for the hardware, and save millions on software :)

  • Correction: Why wasn't it competitive 2 years ago; basically half the AI summer ago.
  • Please amend the title, this is a December 2024 article and the conclusions are misleading in 2026
  • If AMD's betting the company on their AI compute, they had best follow the advice in the article because the only way to compete with NVIDIA is to meet/exceed not just the performance but also the DevX.
    • These days it's for sure the dev environment that is lacking, hardware is okay (potentially great?!), software abysmal. To run a local llm in a stable manner implies using Vulkan.. any attempt at ROCm is totally hamstrung by haphazard support of hardware alongside with an online presence poisoned by people primarily discussing work-arounds rather than work when it comes to AMD as a platform. Argh.
    • You can't have good performance without good DevX. There's a reason why we get a new python dsl for nvidia GPUs every week.
  • NVIDIA has such a big moat around their CUDA architecture such that I don't think AMD will ever be able to outcompete them in AI compute unless they somehow find 2-3 nobel prize level breakthroughs today.
  • I love how they just butcher that article.

    I remember when it came out a little over a year ago, and its just as wrong as it is today as it was then.

  • Nvidia had the first movers advantage. Nvidia spent so many years perfecting CUDA to work well with PyTorch. Before ROCM, there was only CUDA. There were so many developers building their use cases on top of PyTorch+CUDA, and bringing all that feedback to PyTorch, this made CUDA battle ready and stable. AMD can get there, especially now with demand for compute, but as someone already said here, the biggest focus needs to be on PyTorch
  • The important part of Hardware, is Software

    After all, if the Software does not work, its just a Paperweight

  • AMD just doesn't seem to be that good at software.
  • [2024]