Pascal’s Architecture: What Follows Maxwell

With the launch of a new generation of GPUs we’ll start things off where we always do: the architecture.

Discrete GPUs occupy an interesting space when it comes to the relationship between architecture and manufacturing processes. Whereas CPUs have architecture and manufacturing process decoupled – leading to Intel’s aptly named (former) tick-tock design methodology – GPUs have aligned architectures with manufacturing processes, with a new architecture premiering alongside a new process. Or rather, GPU traditionally did. Maxwell threw a necessary spanner into all of this, and in its own way Pascal follows this break from tradition.

As the follow-up to their Kepler architecture, with Maxwell NVIDIA introduced a significantly altered architecture, one that broke a lot of assumptions Kepler earlier made and in the process vaulted NVIDIA far forward on energy efficiency. What made Maxwell especially important from a development perspective is that it came not on a new manufacturing process, but rather on the same 28nm process used for Kepler two years earlier, and this is something NVIDIA had never done before. With the 20nm planar process proving unsuitable for GPUs and only barely suitable for SoCs – the leakage from planar transistors this small was just too high – NVIDIA had to go forward with 28nm for another two years. It would come down to their architecture team to make the best of the situation and come up with a way to bring a generational increase in performance without the traditional process node shrink.

Now in 2016 we finally have new manufacturing nodes with the 14nm/16nm FinFET processes, giving GPU manufacturers a long-awaited (and much needed) opportunity to bring down power consumption and reduce chip size through improved manufacturing technology. The fact that it has taken an extra two years to get here, and what NVIDIA did in the interim with Maxwell, has opened up a lot of questions about what would follow for NVIDIA. The GPU development process is not so binary or straightforward that NVIDIA designed Maxwell solely because they were going to be stuck on the 28nm process – NVIDIA would have done Maxwell either way – but it certainly was good timing to have such a major architectural update fall when it did.

So how does NVIDIA follow-up on Maxwell then? The answer comes in Pascal, NVIDIA’s first architecture for the FinFET generation. Designed to be built on TSMC’s 16nm process, Pascal is the latest and the greatest, and like every architecture before it is intended to further push the envelope on GPU performance, and ultimately push the envelope on the true bottleneck for GPU performance, energy efficiency.

HPC vs. Consumer: Divergence

Pascal is an architecture that I’m not sure has any real parallel on a historical basis. And a big part of that is because to different groups within NVIDIA, Pascal means different things and brings different things, despite the shared architecture. On the one side is the consumer market, which is looking for a faster still successor to what Maxwell delivered in 2014 and 2015. Meanwhile on the high performance compute side, Pascal is the long-awaited update to the Kepler architecture (Maxwell never had an HPC part), combining the lessons of Maxwell with the specific needs of the HPC market.

The result is that there’s an interesting divergence going on between the HPC side and its GP100 GPU, and the consumer side and the GP104 GPU underlying GTX 1080. Even as far back as Fermi there was a distinct line separating HPC-class GPUs (GF100) from consumer/general compute GPUs (GF104), but with Pascal this divergence is wider than ever before. Ultimately the HPC market and GP100 is beyond the scope of this article and I’ll pick it up in detail another time, but because NVIDIA announced GP100 before GP104, it does require a bit of addressing to help sort out what’s going on and what NVIDA’s design goals were with GP104.

Pascal as an overarching architecture contains a number of new features, however not all of those features are present in all SKUs. If you were to draw a Venn diagram of Pascal, what you would find is that the largest collection of features are found in GP100, whereas GP104, like the previous Maxwell architecture before it, is stripped down for speed and efficiency. As a result while GP100 has some notable feature/design elements for HPC – things such faster FP64 & FP16 performance, ECC, and significantly greater amounts of shared memory and register file capacity per CUDA core – these elements aren’t present in GP104 (and presumably, future Pascal consumer-focused GPUs).

Ultimately what we’re seeing in this divergence is a greater level of customization between NVIDIA’s HPC and consumer markets. The HPC side of NVIDIA is finally growing up, and it’s growing fast. The long term plan at NVIDIA has been to push GPU technology beyond consumer and professional graphics, and while it has taken years longer than NVIDIA originally wanted, thanks in big part to success in the deep learning market, NVIDIA is finally achieving their goals.

This means that although GP100 is a fully graphics capable GPU, it doesn’t necessarily have to be put into video cards to make sense for NVIDIA to manufacture, and as a result NVIDIA can make it even more compute focused than prior-generation parts like GK110 and GF110. And that in turn means that although this divergence is driven by the needs of the HPC market – what features need to be added to make a GPU more suitable for HPC use cases – from the perspective of the consumer market there is a tendency to perceive that consumer parts are falling behind. Especially with how GP100 and GP104’s SMs are differently partitioned.

This is a subject I’ll revisit in much greater detail in the future when we focus on GP100. But for now, especially for the dozen of you who’ve emailed over the past month asking about why the two are so different, the short answer is that the market needs for HPC are different from graphics, and the difference in how GP100 and GP104 are partitioned reflect this. GP100 and GP104 are both unequivocally Pascal, but GP100 gets smaller SM partitions in order to increase the number of registers and the amount of shared memory available per CUDA core. Shared memory and register contention on graphics workloads isn’t nearly as great as with HPC tasks – pixel shader threads are relatively short and independent from each other – which means that while the increased ratios benefit HPC workloads, for graphics the gains would be minimal. And the costs to power and die space would, in turn, far outweigh any benefits.

The GTX 1080 & GTX 1070 Review GP104: The Heart of GTX 1080
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  • TestKing123 - Wednesday, July 20, 2016 - link

    Sorry, too little too late. Waited this long, and the first review was Tomb Raider DX11?! Not 12?

    This review is both late AND rushed at the same time.
  • Mat3 - Wednesday, July 20, 2016 - link

    Testing Tomb Raider in DX11 is inexcusable.

    http://www.extremetech.com/gaming/231481-rise-of-t...
  • TheJian - Friday, July 22, 2016 - link

    Furyx still loses to 980ti until 4K at which point the avg for both cards is under 30fps, and the mins are both below 20fps. IE, neither is playable. Even in AMD's case here we're looking at 7% gain (75.3 to 80.9). Looking at NV's new cards shows dx12 netting NV cards ~6% while AMD gets ~12% (time spy). This is pretty much a sneeze and will as noted here and elsewhere, it will depend on the game and how the gpu works. It won't be a blanket win for either side. Async won't be saving AMD, they'll have to actually make faster stuff. There is no point in even reporting victory at under 30fps...LOL.

    Also note in that link, while they are saying maxwell gained nothing, it's not exactly true. Only avg gained nothing (suggesting maybe limited by something else?), while min fps jumped pretty much exactly what AMD did. IE Nv 980ti min went from 56fps to 65fps. So while avg didn't jump, the min went way up giving a much smoother experience (amd gained 11fps on mins from 51 to 62). I'm more worried about mins than avgs. Tomb on AMD still loses by more than 10% so who cares? Sort of blows a hole in the theory that AMD will be faster in all dx12 stuff...LOL. Well maybe when you force the cards into territory nobody can play at (4k in Tomb Raiders case).

    It would appear NV isn't spending much time yet on dx12, and they shouldn't. Even with 10-20% on windows 10 (I don't believe netmarketshare's numbers as they are a msft partner), most of those are NOT gamers. You can count dx12 games on ONE hand. Most of those OS's are either forced upgrades due to incorrect update settings (waking up to win10...LOL), or FREE on machine's under $200 etc. Even if 1/4 of them are dx12 capable gpus, that would be NV programming for 2.5%-5% of the PC market. Unlike AMD they were not forced to move on to dx12 due to lack of funding. AMD placed a bet that we'd move on, be forced by MSFT or get console help from xbox1 (didn't work, ps4 winning 2-1) so they could ignore dx11. Nvidia will move when needed, until then they're dominating where most of us are, which is 1080p or less, and DX11. It's comic when people point to AMD winning at 4k when it is usually a case where both sides can't hit 30fps even before maxing details. AMD management keeps aiming at stuff we are either not doing at all (4k less than 2%), or won't be doing for ages such as dx12 games being more than dx11 in your OS+your GPU being dx12 capable.

    What is more important? Testing the use case that describes 99.9% of the current games (dx11 or below, win7/8/vista/xp/etc), or games that can be counted on ONE hand and run in an OS most of us hate. No hate isn't a strong word here when the OS has been FREE for a freaking year and still can't hit 20% even by a microsoft partner's likely BS numbers...LOL. Testing dx12 is a waste of time. I'd rather see 3-4 more dx11 games tested for a wider variety although I just read a dozen reviews to see 30+ games tested anyway.
  • ajlueke - Friday, July 22, 2016 - link

    That would be fine if it was only dx12. Doesn't look like Nvidia is investing much time in Vulkan either, especially not on older hardware.

    http://www.pcgamer.com/doom-benchmarks-return-vulk...
  • Cygni - Wednesday, July 20, 2016 - link

    Cool attention troll. Nobody cares what free reviews you choose to read or why.
  • AndrewJacksonZA - Wednesday, July 20, 2016 - link

    Typo on page 18: "The Test"
    "Core i7-4960X hosed in an NZXT Phantom 630 Windowed Edition" Hosed -> Housed
  • Michael Bay - Thursday, July 21, 2016 - link

    I`d sure hose me a Core i7-4960X.
  • AndrewJacksonZA - Wednesday, July 20, 2016 - link

    @Ryan & team: What was your reasoning for not including the new Doom in your 2016 GPU Bench game list? AFAIK it's the first indication of Vulkan performance for graphics cards.

    Thank you! :-)
  • Ryan Smith - Wednesday, July 20, 2016 - link

    We cooked up the list and locked in the games before Doom came out. It wasn't out until May 13th. GTX 1080 came out May 14th, by which point we had already started this article (and had published the preview).
  • AndrewJacksonZA - Wednesday, July 20, 2016 - link

    OK, thank you. Any chance of adding it to the list please?

    I'm a Windows gamer, so my personal interest in the cross-platform Vulkan is pretty meh right now (only one title right now, hooray! /s) but there are probably going to be some devs are going to choose it over DX12 for that very reason, plus I'm sure that you have readers who are quite interested in it.

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