The Kepler Architecture: Efficiency & Scheduling

So far we’ve covered how NVIDIA has improved upon Fermi for; now let’s talk about why.

Mentioned quickly in our introduction, NVIDIA’s big push with Kepler is efficiency. Of course Kepler needs to be faster (it always needs to be faster), but at the same time the market is making a gradual shift towards higher efficiency products. On the desktop side of matters GPUs have more or less reached their limits as far as total power consumption goes, while in the mobile space products such as Ultrabooks demand GPUs that can match the low power consumption and heat dissipation levels these devices were built around. And while strictly speaking NVIDIA’s GPUs haven’t been inefficient, AMD has held an edge on performance per mm2 for quite some time, so there’s clear room for improvement.

In keeping with that ideal, for Kepler NVIDIA has chosen to focus on ways they can improve Fermi’s efficiency. As NVIDIA's VP of GPU Engineering, Jonah Alben puts it, “[we’ve] already built it, now let's build it better.”

There are numerous small changes in Kepler that reflect that goal, but of course the biggest change there was the removal of the shader clock in favor of wider functional units in order to execute a whole warp over a single clock cycle. The rationale for which is actually rather straightforward: a shader clock made sense when clockspeeds were low and die space was at a premium, but now with increasingly small fabrication processes this has flipped. As we have become familiar with in the CPU space over the last decade, higher clockspeeds become increasingly expensive until you reach a point where they’re too expensive – a point where just distributing that clock takes a fair bit of power on its own, not to mention the difficulty and expense of building functional units that will operate at those speeds.

With Kepler the cost of having a shader clock has finally become too much, leading NVIDIA to make the shift to a single clock. By NVIDIA’s own numbers, Kepler’s design shift saves power even if NVIDIA has to operate functional units that are twice as large. 2 Kepler CUDA cores consume 90% of the power of a single Fermi CUDA core, while the reduction in power consumption for the clock itself is far more dramatic, with clock power consumption having been reduced by 50%.

Of course as NVIDIA’s own slide clearly points out, this is a true tradeoff. NVIDIA gains on power efficiency, but they lose on area efficiency as 2 Kepler CUDA cores take up more space than a single Fermi CUDA core even though the individual Kepler CUDA cores are smaller. So how did NVIDIA pay for their new die size penalty?

Obviously 28nm plays a significant part of that, but even then the reduction in feature size from moving to TSMC’s 28nm process is less than 50%; this isn’t enough to pack 1536 CUDA cores into less space than what previously held 384. As it turns out not only did NVIDIA need to work on power efficiency to make Kepler work, but they needed to work on area efficiency. There are a few small design choices that save space, such as using 8 SMXes instead of 16 smaller SMXes, but along with dropping the shader clock NVIDIA made one other change to improve both power and area efficiency: scheduling.

GF114, owing to its heritage as a compute GPU, had a rather complex scheduler. Fermi GPUs not only did basic scheduling in hardware such as register scoreboarding (keeping track of warps waiting on memory accesses and other long latency operations) and choosing the next warp from the pool to execute, but Fermi was also responsible for scheduling instructions within the warps themselves. While hardware scheduling of this nature is not difficult, it is relatively expensive on both a power and area efficiency basis as it requires implementing a complex hardware block to do dependency checking and prevent other types of data hazards. And since GK104 was to have 32 of these complex hardware schedulers, the scheduling system was reevaluated based on area and power efficiency, and eventually stripped down.

The end result is an interesting one, if only because by conventional standards it’s going in reverse. With GK104 NVIDIA is going back to static scheduling. Traditionally, processors have started with static scheduling and then moved to hardware scheduling as both software and hardware complexity has increased. Hardware instruction scheduling allows the processor to schedule instructions in the most efficient manner in real time as conditions permit, as opposed to strictly following the order of the code itself regardless of the code’s efficiency. This in turn improves the performance of the processor.

However based on their own internal research and simulations, in their search for efficiency NVIDIA found that hardware scheduling was consuming a fair bit of power and area for few benefits. In particular, since Kepler’s math pipeline has a fixed latency, hardware scheduling of the instruction inside of a warp was redundant since the compiler already knew the latency of each math instruction it issued. So NVIDIA has replaced Fermi’s complex scheduler with a far simpler scheduler that still uses scoreboarding and other methods for inter-warp scheduling, but moves the scheduling of instructions in a warp into NVIDIA’s compiler. In essence it’s a return to static scheduling.

Ultimately it remains to be seen just what the impact of this move will be. Hardware scheduling makes all the sense in the world for complex compute applications, which is a big reason why Fermi had hardware scheduling in the first place, and for that matter why AMD moved to hardware scheduling with GCN. At the same time however when it comes to graphics workloads even complex shader programs are simple relative to complex compute applications, so it’s not at all clear that this will have a significant impact on graphics performance, and indeed if it did have a significant impact on graphics performance we can’t imagine NVIDIA would go this way.

What is clear at this time though is that NVIDIA is pitching GTX 680 specifically for consumer graphics while downplaying compute, which says a lot right there. Given their call for efficiency and how some of Fermi’s compute capabilities were already stripped for GF114, this does read like an attempt to further strip compute capabilities from their consumer GPUs in order to boost efficiency. Amusingly, whereas AMD seems to have moved closer to Fermi with GCN by adding compute performance, NVIDIA seems to have moved closer to Cayman with Kepler by taking it away.

With that said, in discussing Kepler with NVIDIA’s Jonah Alben, one thing that was made clear is that NVIDIA does consider this the better way to go. They’re pleased with the performance and efficiency they’re getting out of software scheduling, going so far to say that had they known what they know now about software versus hardware scheduling, they would have done Fermi differently. But whether this only applies to consumer GPUs or if it will apply to Big Kepler too remains to be seen.

The Kepler Architecture: Fermi Distilled GPU Boost: Turbo For GPUs
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  • Jamahl - Thursday, March 22, 2012 - link

    And you were all too willing to do so without evening-up the initial crime. Don't insult our intelligence Ryan.
  • SlyNine - Thursday, March 22, 2012 - link

    You need to open your mind alittle bit. It's easy to see what would happen in Anand did something that actually limited out of the box performance.

    Why are you even suggesting they do such a thing. This is how the card ships, and thats how you will be getting it.

    Maybe they should lower the memory clock on AMD cards to make it fair. Or wait, their are different number of shaders. Maybe Anand should somehow limit that.

    It just doesn't make any sense.
  • MattM_Super - Friday, March 23, 2012 - link

    Yeah you can't please all the people even some of the time when it comes to GPU reviews. This seems like a through enough review of the card as it comes out of the box. Overclocking is also important, but considering the hassle, increase in temps and noise, and possible voiding of the warranty, it seems unreasonable to demand that the OC scores be treated as more important than the stock scores.
  • Scott314159 - Thursday, March 22, 2012 - link

    Any chance of running FAH on the 680... it will only take a few minutes and would give us folders a view into its relative performance compared to the outgoing 580 (and the Radeons).

    I'm looking to buy a new card in the short term and FAH performance is a factor.

    Thanks in advance!
  • Ryan Smith - Thursday, March 22, 2012 - link

    Tried it. It wouldn't run.
  • cudanator - Thursday, March 22, 2012 - link

    C'mon guys, why isn't there a single CUDA-Test? And don't say "cause AMD doesn't support it" :P For me most interesting would be the CUDA-Speed compared to other nVidia-Models.
  • Wreckage - Thursday, March 22, 2012 - link

    Not to mention PhysX. Sadly there are a lot of features AMD does not support and so they don't get benchmarked often enough. h.264 encoding is another one.
  • CeriseCogburn - Thursday, March 22, 2012 - link

    On other sites they turn on full PhysX in Batman on the 680 and keep it off on the 7970, and the 680 still wins.
    LOL
    If you watched the release video they show PhysX now has dynamic on the fly unique in game destruction that is not repeatable - things break apart with unique shatters and cracks. I say "it's a bout time!" to that.
    My 7970 needs to go fast, in facts it's almost gone as we speak. No way am I taking the shortbus.
  • SlyNine - Thursday, March 22, 2012 - link

    Umm, the GNC (7xxxHD) has a fixed function H.264 encoder. Afaik the 680GTX doesn't even have a fixed function h.264 encoder. So I'm pretty sure it would mop the floor with cuda H.264 encoding.
  • Ryan Smith - Thursday, March 22, 2012 - link

    We have the data, although it's not exactly a great test (a lot of CUDA applications have no idea what to do with Kepler right now). It will be up later today.

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