SPEC - Multi-Core Performance Scaling

I did mention the L3 cache of the Graviton2 was shared amongst all its cores, and we also discovered how only 8-16 cores were able to saturate the memory controllers of the system. To put those aspects into better context, I ran the SPEC suites at rate instance numbers, ranging from 16, 32, 48 and the full 64 cores, and normalised the results relative to the per-thread performance showcased in the rate-1 single-threaded runs.

What this attempts to showcase is the performance scaling of the full SoC across varying loads of the different workload types. Scaling linearly across cores might be easy for some workloads, but for anything that even remotely has some kind of memory pressure should see greater slowdowns given that all the threads are competing for the shared L3 and DRAM resources.

The testing here for all figures were done on a 16xlarge instance with 64 vCPUs to avoid the possibility of noisy neighbours, and give better reliability in the lower core count results.

SPECint2006 Speed Graviton2 Core Performance Scaling

As expected, we’re seeing a quite wide range of results here, and it’s also a good showcase of which SPEC workloads are memory and cache intensive and which are not. Workloads such as 445.gobmk and 456.hmmer aren’t surprising in their near linear scaling as they don’t have too much cache pressure, and the Graviton2’s 1MB L2 per core is also more than enough for 464.h264ref.

On the other hand, well known memory intensive workloads such as 462.libquantum absolutely crater in terms of per-thread performance. This memory bandwidth demanding workload is fully saturating the bandwidth of the system early on with very few cores, meaning that performance barely increases the more threads and cores we throw at it. Such a scaling more or less is mimicked in other workloads of varying cache and memory pressure.

The most worrying result though is 403.gcc. Code compilation should have been one of the bigger use-cases for a platform such as Graviton2, but the platform is having issues scaling well with core count, undoubtedly a result of higher cache pressure of the system. In a single-thread scenario in the system a core would have access to 33MB L2+L3, but when having 64 cores doing the same thing at once you’d end up with only 1.5MB per core, assuming things are evenly competitively shared.

SPECfp2006(C/C++) Speed Graviton2 Core Performance Scaling

In SPECfp2006, again, we see the well-known memory intensive workloads such as 433.milc and 470.lbm crater in their per-thread performance the more threads you throw at the system, while other workloads are able to scale near linearly with cores.

SPECint2017 Rate Graviton2 Core Performance Scaling

In SPECint2017, we see the workload changes I referred to previously on the single-threaded page. The new gcc and mcf tests are actually scaling better than their 2006 counterparts due to actually reduced memory pressure on the new tests. It does beg the question of which variant of the test is actually more representative of most workloads of these types.

SPECfp2017 Rate Graviton2 Core Performance Scaling

Compared to the int2017 suite, the fp2017 suite scales significantly worse for a larger number of workloads. When Ampere last week talked about its Altra processor, and that it was “designed for integer workloads”, that didn't make too much sense other than in the context that the N1 cores are missing wider SIMD execution units. What does make sense though is that the floating-point suite of SPEC is a lot more memory intensive and SoCs like the Graviton2 don’t fare as well at higher loaded core-counts.

It will be interesting to see where the Arm chip designers are heading to in regards to this general memory bottleneck. If your workload isn’t too memory intensive then scaling up to such huge core counts is an easy way to scale performance as well. On the opposite end of the spectrum on memory hungry workloads, these chips will just be memory starved. Arm had envisioned 64 core Neoverse N1 systems to have 64-128MB of L3 cache, and the CMN-600 scales up to 256MB total in a 128-core system, which seem like more sensible and balanced targets.

SPEC - Single Threaded Performance SPEC - MT Performance (16xlarge 64vCPU)
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  • anonomouse - Tuesday, March 10, 2020 - link

    Will there be more articles on this, covering other workloads than SPEC? You see lots of academic and industry papers talking about how real cloud/hyperscaler/server workloads have deep software stacks with large instruction-side footprints and static branch footprints, whereas SPEC is really... not that. Those workloads tend to have lower IPC on all platforms, and it would be interesting to see how Graviton2 performs on those from the instruction-supply side of things (1 core) as well as how I-side bandwidth scales horizontally with thread counts given the coherent I-Cache.
  • Andrei Frumusanu - Tuesday, March 10, 2020 - link

    Concrete suggestions in terms of workloads too look at and can be reasonably deployed are welcome- we currently don't have a well defined test suite for such things.
  • FunBunny2 - Tuesday, March 10, 2020 - link

    "Concrete suggestions in terms of workloads"

    OLTP on RDBMS?? real one, of course, not MySql. :)
  • Andrei Frumusanu - Tuesday, March 10, 2020 - link

    I mean an actual concrete example of such a structured benchmark, me going around doing random DB operations just opens up more criticism on why we didn't use test framework XYZ.
  • FunBunny2 - Tuesday, March 10, 2020 - link

    here's one: https://hammerdb.com/ don't know, perhaps likely, that you can get the source and compile for any db/OS of interest. didn't say it was simple. :)
  • Andrei Frumusanu - Wednesday, March 11, 2020 - link

    It's just I'm hearing a lot of "we want something specific" without actually specifying anything, me doing some random workload myself that isn't validated in terms of characterisation isn't in my view any better than the well understood nature of SPEC.
  • anonomouse - Wednesday, March 11, 2020 - link

    Have you looked at the benchmarks in GCP PerfKitBenchmarker (https://github.com/GoogleCloudPlatform/PerfKitBenc... It includes benchmark versions of various popular benchmarks including variants of ycsb on different databases, oltp, cloudsuite, hadoop, and a bunch of wrapper infrastructure around running the tests on cloud providers.
  • anonomouse - Wednesday, March 11, 2020 - link

    Okay so maybe the comment system doesn't have well with links:

    https://github.com/GoogleCloudPlatform/PerfKitBenc...
    http://googlecloudplatform.github.io/PerfKitBenchm...
  • yeeeeman - Tuesday, March 10, 2020 - link

    Ok, now imagine this chip with apple custom cores. Even Zen wouldn't stand a chance.
  • HStewart - Tuesday, March 10, 2020 - link

    You can't truly say that. Keep in mind both Apple and Amazon are aim at there own custom environments - things are like different in real world.

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