Designing GP104: Running Up the Clocks

So if GP104’s per-unit throughput is identical to GM204, and the SM count has only been increased from 2048 to 2560 (25%), then what makes GTX 1080 60-70% faster than GTX 980? The answer there is that instead of vastly increasing the number of functional units for GP104 or increasing per-unit throughput, NVIDIA has instead opted to significantly raise the GPU clockspeed. And this in turn goes back to the earlier discussion on TSMC’s 16nm FinFET process.

With every advancement in fab technology, chip designers have been able to increase their clockspeeds thanks to the basic physics at play. However because TSMC’s 16nm node adds FinFETs for the first time, it’s extra special. What’s happening here is a confluence of multiple factors, but at the most basic level the introduction of FinFETs means that the entire voltage/frequency curve gets shifted. The reduced leakage and overall “stronger” FinFET transistors can run at higher clockspeeds at lower voltages, allowing for higher overall clockspeeds at the same (or similar) power consumption. We see this effect to some degree with every node shift, but it’s especially potent when making the shift from planar to FinFET, as has been the case for the jump from 28nm to 16nm.

Given the already significant one-off benefits of such a large jump in the voltage/frequency curve, for Pascal NVIDIA has decided to fully embrace the idea and run up the clocks as much as is reasonably possible. At an architectural level this meant going through the design to identify bottlenecks in the critical paths – logic sections that couldn’t run at as high a frequency as NVIDIA would have liked – and reworking them to operate at higher frequencies. As GPUs typically (and still are) relatively low clocked, there’s not as much of a need to optimize critical paths in this matter, but with NVIDIA’s loftier clockspeed goals for Pascal, this changed things.

From an implementation point of view this isn’t the first time that NVIDIA has pushed for high clockspeeds, as most recently the 40nm Fermi architecture incorporated a double-pumped shader clock. However this is the first time NVIDIA has attempted something similar since they reined in their power consumption with Kepler (and later Maxwell). Having learned their lesson the hard way with Fermi, I’m told a lot more care went into matters with Pascal in order to avoid the power penalties NVIDIA paid with Fermi, exemplified by things such as only adding flip-flops where truly necessary.

Meanwhile when it comes to the architectural impact of designing for high clockspeeds, the results seem minimal. While NVIDIA does not divulge full information on the pipeline of a CUDA core, all of the testing I’ve run indicates that the latency (in clock cycles) of the CUDA cores is identical to Maxwell. Which goes hand in hand with earlier observations about throughput. So although optimizations were made to the architecture to improve clockspeeds, it doesn’t look like NVIDIA has made any more extreme optimizations (e.g. pipeline lengthening) that detectably reduces Pascal’s per-clock performance.

Beyond3D Suite - Estimated MADD Latency

Finally, more broadly speaking, while this is essentially a one-time trick for NVIDIA, it’s an interesting route for them to go. By cranking up their clockspeeds in this fashion, they avoid any real scale-out issues, at least for the time being. Although graphics are the traditional embarrassingly parallel problem, even a graphical workload is subject to some degree of diminishing returns as GPUs scale farther out. A larger number of SMs is more difficult to fill, not every aspect of the rendering process is massively parallel (shadow maps being a good example), and ever-increasing pixel shader lengths compound the problem. Admittedly NVIDIA’s not seeing significant scale-out issues quite yet, but this is why GTX 980 isn’t quite twice as fast as GTX 960, for example.

Just increasing the clockspeed, comparatively speaking, means that the entire GPU gets proportionally faster without shifting the resource balance; the CUDA cores are 43% faster, the geometry frontends are 43% faster, the ROPs are 43% faster, etc. The only real limitation in this regard isn’t the GPU itself, but whether you can adequately feed it. And this is where GDDR5X comes into play.

FP16 Throughput on GP104: Good for Compatibility (and Not Much Else) Feeding Pascal: GDDR5X
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  • Eidigean - Wednesday, July 20, 2016 - link

    Excellent article Ryan.

    Will you be writing a followup article with tests of two GTX 1080's in SLI with the new high-bandwidth dual bridge?

    Looking specifically for these tests in SLI:
    3840x2160
    2560x1440
    3x 2560x1440 (7680x1440)
    3x 1920x1080 (5760x1080)

    Hoping the latter two tests would include with and without multi-projection optimizations.
    Thanks!
  • Ryan Smith - Wednesday, July 20, 2016 - link

    "Will you be writing a followup article with tests of two GTX 1080's in SLI with the new high-bandwidth dual bridge?"

    It's on the schedule. But not in the near term, unfortunately. GPU Silly Season is in full swing right now.
  • big dom - Wednesday, July 20, 2016 - link

    I agree with the previous reviewers. It's fine and dandy to be a "day one" breakthrough reviewer and believe me I read and enjoyed 20 of those other day 1 reviews as well. But... IMO no one writes such an in depth, technical, and layman-enjoyable review like Anandtech. Excellent review fellas!

    This is coming from a GTX 1070 FE owner, and I am also the other of the original Battleship Mtron SSD article.

    Regards,
    Dominick
  • big dom - Wednesday, July 20, 2016 - link

    *author
  • jase240 - Wednesday, July 20, 2016 - link

    I don't understand why in your benchmarks the framerates are so low. For example I have a 1070 and am able to play GTAV at very high settings and achieve 60fps constant at 4K.(No MSAA obviously)

    Even other reviewers have noted much higher framerates. Listing the 1080 as a true 4K card and the 1070 as a capable 4K card too.
  • Ryan Smith - Wednesday, July 20, 2016 - link

    It depends on the settings.

    The way I craft these tests is settings centric. I pick the settings and see where the cards fall. Some other sites have said that they see what settings a card performs well at (e.g. where it gets 60fps) and then calibrate around that.

    The end result is that the quality settings I test are most likely higher than the sites you're comparing this article to.
  • jase240 - Wednesday, July 20, 2016 - link

    Ah now I see why, you have the advanced graphics settings turned up also. These are not turned on by default in GTAV since they cause great performance loss.

    Extended Distance Scaling, Extended Shadows Distance, Long Shadows, High Resolution Shadows, High Detail Streaming While Flying.

    They eat a lot of VRAM and perform terribly at higher resolutions.
  • sonicmerlin - Thursday, July 21, 2016 - link

    And I'm guessing add very little to overall picture quality.
  • Mat3 - Wednesday, July 20, 2016 - link

    I think there's something wrong with your Fury X in a couple of your compute tests. How's it losing to a Nano?
  • masouth - Wednesday, July 20, 2016 - link

    I know the article was posted today but when was it actually written? NewEgg has been having the dual fan Gigabyte GTX 1070 at $399 for a couple weeks now. Yes, it's still $20 over the MSRP and frequently sells out as quick as they show up but it's still a fair deal cheaper than $429.

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