CPU Tests: Science

In this version of our test suite, all the science focused tests that aren’t ‘simulation’ work are now in our science section. This includes Brownian Motion, calculating digits of Pi, molecular dynamics, and for the first time, we’re trialing an artificial intelligence benchmark, both inference and training, that works under Windows using python and TensorFlow.  Where possible these benchmarks have been optimized with the latest in vector instructions, except for the AI test – we were told that while it uses Intel’s Math Kernel Libraries, they’re optimized more for Linux than for Windows, and so it gives an interesting result when unoptimized software is used.

3D Particle Movement v2.1: Non-AVX and AVX2/AVX512

This is the latest version of the benchmark designed to simulate semi-optimized scientific algorithms taken directly from my doctorate thesis. This involves randomly moving particles in a 3D space using a set of algorithms that define random movement. Version 2.1 improves over 2.0 by passing the main particle structs by reference rather than by value, and decreasing the amount of double->float->double recasts the compiler was adding in.

The initial version of v2.1 is a custom C++ binary of my own code, flags are in place to allow for multiple loops of the code with a custom benchmark length. By default this version runs six times and outputs the average score to the console, which we capture with a redirection operator that writes to file.

For v2.1, we also have a fully optimized AVX2/AVX512 version, which uses intrinsics to get the best performance out of the software. This was done by a former Intel AVX-512 engineer who now works elsewhere. According to Jim Keller, there are only a couple dozen or so people who understand how to extract the best performance out of a CPU, and this guy is one of them. To keep things honest, AMD also has a copy of the code, but has not proposed any changes.

The final result is a table that looks like this:

(2-1) 3D Particle Movement v2.1 (non-AVX)(2-2) 3D Particle Movement v2.1 (Peak AVX)

The 3DPM test is set to output millions of movements per second, rather than time to complete a fixed number of movements. This way the data represented becomes a linear when performance scales and easier to read as a result.

y-Cruncher 0.78.9506: www.numberworld.org/y-cruncher

If you ask anyone what sort of computer holds the world record for calculating the most digits of pi, I can guarantee that a good portion of those answers might point to some colossus super computer built into a mountain by a super-villain. Fortunately nothing could be further from the truth – the computer with the record is a quad socket Ivy Bridge server with 300 TB of storage. The software that was run to get that was y-cruncher.

Built by Alex Yee over the last part of a decade and some more, y-Cruncher is the software of choice for calculating billions and trillions of digits of the most popular mathematical constants. The software has held the world record for Pi since August 2010, and has broken the record a total of 7 times since. It also holds records for e, the Golden Ratio, and others. According to Alex, the program runs around 500,000 lines of code, and he has multiple binaries each optimized for different families of processors, such as Zen, Ice Lake, Sky Lake, all the way back to Nehalem, using the latest SSE/AVX2/AVX512 instructions where they fit in, and then further optimized for how each core is built.

For our purposes, we’re calculating Pi, as it is more compute bound than memory bound. In single thread mode we calculate 250 million digits, while in multithreaded mode we go for 2.5 billion digits. That 2.5 billion digit value requires ~12 GB of DRAM, so for systems that do not have that much, we also have a separate table for slower CPUs and 250 million digits.

(2-3) yCruncher 0.78.9506 ST (250m Pi)(2-4) yCruncher 0.78.9506 MT (2.5b Pi)

y-Cruncher is also affected by memory bandwidth, even in ST mode, which is why we're seeing the Xeons score very highly despite the lower single thread frequency.

Personally I have held a few of the records that y-Cruncher keeps track of, and my latest attempt at a record was to compute 600 billion digits of the Euler-Mascheroni constant, using a Xeon 8280 and 768 GB of DRAM. It took over 100 days (!).

NAMD 2.13 (ApoA1): Molecular Dynamics

One of the popular science fields is modelling the dynamics of proteins. By looking at how the energy of active sites within a large protein structure over time, scientists behind the research can calculate required activation energies for potential interactions. This becomes very important in drug discovery. Molecular dynamics also plays a large role in protein folding, and in understanding what happens when proteins misfold, and what can be done to prevent it. Two of the most popular molecular dynamics packages in use today are NAMD and GROMACS.

NAMD, or Nanoscale Molecular Dynamics, has already been used in extensive Coronavirus research on the Frontier supercomputer. Typical simulations using the package are measured in how many nanoseconds per day can be calculated with the given hardware, and the ApoA1 protein (92,224 atoms) has been the standard model for molecular dynamics simulation.

Luckily the compute can home in on a typical ‘nanoseconds-per-day’ rate after only 60 seconds of simulation, however we stretch that out to 10 minutes to take a more sustained value, as by that time most turbo limits should be surpassed. The simulation itself works with 2 femtosecond timesteps.

(2-5) NAMD ApoA1 Simulation

How NAMD is going to scale in our testing is going to be interesting, as the software has been developed to go across large supercomputers while taking advantage of fast communications and MPI.

AI Benchmark 0.1.2 using TensorFlow: Link

Finding an appropriate artificial intelligence benchmark for Windows has been a holy grail of mine for quite a while. The problem is that AI is such a fast moving, fast paced word that whatever I compute this quarter will no longer be relevant in the next, and one of the key metrics in this benchmarking suite is being able to keep data over a long period of time. We’ve had AI benchmarks on smartphones for a while, given that smartphones are a better target for AI workloads, but it also makes some sense that everything on PC is geared towards Linux as well.

Thankfully however, the good folks over at ETH Zurich in Switzerland have converted their smartphone AI benchmark into something that’s useable in Windows. It uses TensorFlow, and for our benchmark purposes we’ve locked our testing down to TensorFlow 2.10, AI Benchmark 0.1.2, while using Python 3.7.6 – this was the only combination of versions we could get to work, because Python 3.8 has some quirks.

The benchmark runs through 19 different networks including MobileNet-V2, ResNet-V2, VGG-19 Super-Res, NVIDIA-SPADE, PSPNet, DeepLab, Pixel-RNN, and GNMT-Translation. All the tests probe both the inference and the training at various input sizes and batch sizes, except the translation that only does inference. It measures the time taken to do a given amount of work, and spits out a value at the end.

There is one big caveat for all of this, however. Speaking with the folks over at ETH, they use Intel’s Math Kernel Libraries (MKL) for Windows, and they’re seeing some incredible drawbacks. I was told that MKL for Windows doesn’t play well with multiple threads, and as a result any Windows results are going to perform a lot worse than Linux results. On top of that, after a given number of threads (~16), MKL kind of gives up and performance drops of quite substantially.

So why test it at all? Firstly, because we need an AI benchmark, and a bad one is still better than not having one at all. Secondly, if MKL on Windows is the problem, then by publicizing the test, it might just put a boot somewhere for MKL to get fixed. To that end, we’ll stay with the benchmark as long as it remains feasible.

(2-6) AI Benchmark 0.1.2 Total

As you can see, we’re already seeing it perform really badly with the big chips. Somewhere around the Ryzen 7  is probably where the peak is. Our Xeon chips didn't really work at all.

CPU Tests: Office CPU Tests: Simulation
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  • jebo - Wednesday, July 22, 2020 - link

    Can we get a rundown of the underlying systems being used? RAM etc.

    Thanks for this!
  • GeoffreyA - Wednesday, July 22, 2020 - link

    Astounding work, Ian! All the best on the project.
  • Kdam - Wednesday, July 22, 2020 - link

    Thanks for the effort. I was wondering if it was possible to include a cam benchmark (mastercam or other)
  • nathanddrews - Thursday, July 23, 2020 - link

    Would it be possible to add a sort or filter to see 95th percentile frame rates only? A filter by quality level? It would make reading the data much easier. QOL
  • OldTech920 - Thursday, July 23, 2020 - link

    Your CPU table (on page 2) is weirdly incomplete for Nehalem and Westmere CPUs. Specifically, it's missing the whole 1st generation Nehalem HEDT parts (aka "Bloomfield" 45 nm chips using the X58 chipset), such as i7-920, i7-940, through i7-975 EE . Combined with a recent GPU, these are still amazingly viable 4-core/8-thread CPUs.
  • Robberbaron12 - Monday, July 27, 2020 - link

    THere is no support for X58 and skt 1366 anymore in the latest version of Win 10, so its not possible to install the test suite. I know it still works if you had a 3-4 year old version on Win 10 but you can to clean install now, and I'm pretty sure skt 1156 is going the same way.
  • Oxford Guy - Tuesday, July 28, 2020 - link

    Windows 10 is a disgrace.
  • juraj2 - Friday, July 24, 2020 - link

    That is a great project. I would like to see as performance per watt has been changing during the years. Also, current benchmarks show for example CPU with 105W, but that is completely false because during the test CPU was consuming much more power. This makes results confusing and mostly in favour of Intel. Intel is cheating a lot in this regard.
  • Oxford Guy - Tuesday, July 28, 2020 - link

    Real power consumption is definitely more interesting than the "let's pretend" TDP numbers.
  • alpha754293 - Monday, July 27, 2020 - link

    This is fantastic!!!

    I was the person who asked for the OpenSSL benchmark because I was moving a lot of data around and needed SHA256 to ensure the data transfers completed successfully.

    Thank you for putting this together.

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