Machine Learning Inference Performance

The new SoC generations also bring with them new AI capabilities, however things are quite different in terms of their capabilities. We saw the Snapdragon 865 add to the table a whole lot of new Tensor core performance which should accelerate ML workloads, but the software still plays a big role in being able to extract that capability out of the hardware.

Samsung’s Exynos 990 is quite odd here in this regard, the company quoted the SoC’s NPU and DSP being able to deliver a 10TOPs but it’s not clear how this figure is broken down. SLSI has also been able to take advantage of the new Mali-G77 GPU and its ML abilities, exposing them through NNAPI.

We’re skipping AIMark for today’s test as the benchmark couldn’t support hardware acceleration for either device, lacking updated support for neither Qualcomm’s or SLSI’s ML SDK’s. We thus fall back to AIBenchmark 3, which uses NNAPI acceleration.

AIBenchmark 3

AIBenchmark takes a different approach to benchmarking. Here the test uses the hardware agnostic NNAPI in order to accelerate inferencing, meaning it doesn’t use any proprietary aspects of a given hardware except for the drivers that actually enable the abstraction between software and hardware. This approach is more apples-to-apples, but also means that we can’t do cross-platform comparisons, like testing iPhones.

We’re publishing one-shot inference times. The difference here to sustained performance inference times is that these figures have more timing overhead on the part of the software stack from initializing the test to actually executing the computation.

AIBenchmark 3 - NNAPI CPU

We’re segregating the AIBenchmark scores by execution block, starting off with the regular CPU workloads that simply use TensorFlow libraries and do not attempt to run on specialized hardware blocks.

AIBenchmark 3 - 1 - The Life - CPU/FP AIBenchmark 3 - 2 - Zoo - CPU/FP AIBenchmark 3 - 3 - Pioneers - CPU/INT AIBenchmark 3 - 4 - Let's Play - CPU/FP AIBenchmark 3 - 7 - Ms. Universe - CPU/FP AIBenchmark 3 - 7 - Ms. Universe - CPU/INT AIBenchmark 3 - 8 - Blur iT! - CPU/FP

In the purely CPU accelerated workloads, we’re seeing both phones performing very well, but the Snapdragon 865’s A77 cores here are evidently in the lead by a good margin. It’s to be noted that the scores are also updated for the S10 phones – I noted a big performance boost with the Android 10 updates and the newer NNAPI versions of the test.

AIBenchmark 3 - NNAPI INT8

AIBenchmark 3 - 1 - The Life - INT8 AIBenchmark 3 - 2 - Zoo - Int8 AIBenchmark 3 - 3 - Pioneers - INT8 AIBenchmark 3 - 5 - Masterpiece - INT8 AIBenchmark 3 - 6 - Cartoons - INT8

Integer ML workloads on both phones is good, but because the Snapdragon 865 leverages the Hexagon DSP cores for such workload types, it’s much in lead ahead of the Exynos 990 S20. This latter variant however also showcases some very big performance improvements compared to its predecessor. I still think that Samsung here is only exposing the GPU of the SoC for NNAPI, but because of the new microarchitecture being able to accelerate ML workloads, we’re seeing a big performance improvement compared to the Exynos 9820.

AIBenchmark 3 - NNAPI FP16

AIBenchmark 3 - 1 - The Life - FP16 AIBenchmark 3 - 2 - Zoo - FP16 AIBenchmark 3 - 3 - Pioneers - FP16 AIBenchmark 3 - 5 - Masterpiece - FP16 AIBenchmark 3 - 6 - Cartoons - FP16 AIBenchmark 3 - 9 - Berlin Driving - FP16 AIBenchmark 3 - 10 - WESPE-dn - FP16

In FP16 workloads, the Exynos 990’s GPU actually manages to more often outperform the Snapdragon 865’s Adreno unit. In workloads that allow it, HiSilicon’s NPU still is far in the lead in workloads as it support FP16 acceleration which isn’t present on either the Snapdragon or Exynos SoCs – both falling back to their GPUs.

AIBenchmark 3 - NNAPI FP32

AIBenchmark 3 - 10 - WESPE-dn - FP32

Finally, FP32 also again uses the GPU of each SoC, and again the Exynos 990 presents quite a large performance lead ahead of the Snapdragon 865 unit.

It’s certainly encouraging to see the Samsung SoC keep up with the Snapdragon variant of the S20, pointing out that other vendors now finally are paying better attention to their ML capabilities. We don’t know much at all about the DSP or the NPU of the Exynos 990 as Samsung’s EDEN AI SDK is still not public – I hope that they finally open up more and allow third-party developers to take advantage of the available hardware.

System Performance: 120Hz Winner GPU Performance & Power
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  • Danish_92 - Tuesday, April 7, 2020 - link

    why are these big brands suddenly focusing on big cameras?
  • surt - Tuesday, April 7, 2020 - link

    I'd say they're focusing on camera GPU performance, which are the two areas of the phone where performance is not yet 'good enough'. Everything else just ... works.
  • s.yu - Tuesday, April 7, 2020 - link

    They're focusing on anything that makes a selling point that people could care about. They also focused on the haptic motors and most mid-high tier phones should vibrate better than those 3-4 years ago.
  • watzupken - Wednesday, April 8, 2020 - link

    Big brands are focusing on big cameras because they see Chinese phones, in particular Huawei, making a lot of waves in this area. Since it is very difficult to differentiate their products especially for Android phones, thus, whatever seems to rock with the consumer, every manufacturer will double down on the same features. First it was SOC, then they start spamming ram, follow by cameras, higher screen to body ratio, and now high refresh rate screen. You can tell Samsung is purely focusing on these areas I have mentioned as well.
  • colonelclaw - Tuesday, April 7, 2020 - link

    A slightly unfortunate time to launch such an expensive product. I don't know about you all, but right now I'm saving every penny I can.
  • peevee - Wednesday, April 8, 2020 - link

    "Why Samsung is able to call this a 3x telephoto module is that when cropping a 1:1 12MP picture out of it, it does end up at a 3x magnification in relation to the main camera sensor."

    3x magnification by the sensor would crop 8 out of 9 pixels. For 64MP original, it would be 7.1MP, not 12.
  • flyingpants265 - Thursday, April 9, 2020 - link

    No front speakers = no buy.

    Crappy smartphone OS with no proper multitasking, on a phone with 16 gigs of RAM = no buy.

    Can't turn off Google phoning home in software = no buy.

    $999 = DEFINITELY no buy. Pay about $300 for a used S10. Don't be a sucker.
  • StrangerGuy - Thursday, April 9, 2020 - link

    I just ordered a brand new SD845 Note 9 for $350 to replace my current Exynos Note 9 with OLED black banding issues out-of-warranty. Replacing the screen aftermarket would cost $250 alone.

    Anyway, I have no idea why anybody would want to pay $1000+ of IQ deficiency taxes for the current breed of half-baked Samsung phones. Even their home appliances and TVs are also rubbish in terms of value per dollar.
  • helloworld_chip - Sunday, April 12, 2020 - link

    Do we have 990 kirin 5G GPU efficiency data for comparison? Would be glad to see if it also shows big efficiency improvements over the 4G version.
  • snarfbot - Sunday, April 12, 2020 - link

    How does the 855+ stack up

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