CPU Performance

We’ll begin our Kirin 960 performance evaluation by investigating the A73’s integer and floating-point IPC with some synthetic tests. Then we’ll see how the changes to its memory system affect memory latency and bandwidth. Finally, after completing the lower-level tests, we’ll see how Huawei’s Mate 9 and its Kirin 960 SoC perform when running some real-world workloads.

Our first look at the A73’s integer performance comes from SPECint2000, the integer component of the SPEC CPU2000 benchmark developed by the Standard Performance Evaluation Corporation. This collection of single-threaded tests allows us to compare IPC for competing CPU microarchitectures. The scores below are not officially validated numbers, which requires the test to be supervised by SPEC, but we’ve done our best to choose appropriate compiler flags and to get the tests to pass internal validation.

SPECint2000 - Estimated Scores
ARMv8 / AArch64
  Kirin 960 Kirin 950
(% Advantage)
Exynos 7420
(% Advantage)
Snapdragon 821
(% Advantage)
164.zip 1217 1094
(11.3%)
940
(29.5%)
 1273
(-4.4%)
175.vpr 4118 3889
(5.9%)
2857
(44.1%)
1687
(144.1%)
176.gcc 2157 1864
(15.7%)
1294
(66.7%)
 1746
(23.5%)
181.mcf 1118 664
(68.3%)
928
(20.5%)
 1200
(-6.8%)
186.crafty 2222 2083
(6.7%)
1176
(88.9%)
 1613
(37.8%)
197.parser 1395 1208
(15.5%)
933
(49.5%)
1059
(31.8%)
252.eon 3421 3333
(2.6%)
2453
(39.5%)
3714
(-7.9%)
253.perlmk 1748 1651
(5.8%)
1216
(43.8%)
 1513
(15.5%)
254.gap 1930 1667
(15.8%)
1264
(52.6%)
 1594
(21.1%)
255.vortex 2111 1863
(13.3%)
1473
(43.3%)
 1712
(23.3%)
256.bzip2 1402 1220
(15.0%)
1079
(29.9%)
 1172
(19.6%)
300.twolf 2479 2521
(-1.7%)
1887
(31.4%)
 847
(192.6%)

The Kirin 960’s A73 CPU is about 11% faster on average than the Kirin 950’s A72. In addition to the front-end changes discussed on the previous page and the changes to the memory system discussed in the next section, the A73’s integer pipelines have undergone a few tweaks as well. Where the A72 had 3 integer ALUs—2 simple ALUs for basic operations such as addition and shifting and 1 dedicated multi-cycle ALU for complex operations such as multiplication, division, and multiply-accumulate—the A73 only has 2 integer ALUs that are capable of performing both basic and complex operations. This affects performance in different ways. For example, because only one of the A73’s ALUs can handle multiplication while the other handles division, the time to execute multiply or division operations sees no change; however, while an ALU is occupied with a multi-cycle instruction, it cannot execute simple instructions like the A72’s dedicated pipelines can, leading to a potential performance loss. Multiply-accumulate operations, which require both of the A73’s pipelines, incur a similar penalty. It’s not all bad, however. Workloads that perform parallel arithmetic or use certain other complex instructions can see double the execution throughput on A73 versus A72.

Note that the table above does not account for differences in CPU frequency. The Kirin 960’s frequency advantage over the Kirin 950 and Snapdragon 821 is less than 3%, making these numbers easier to compare, but its advantage over the Exynos 7420 is a little over 12%. The chart below accounts for this by dividing the estimated SPECint2000 ratio score by CPU frequency, making IPC comparisons easier.

SPECint2000 64b/32b Estimated Ratio/MHz

Despite the substantial microarchitectural differences between the A73 and A72, the A73’s integer IPC is only 11% higher than the A72’s. This is likely the result of improvements in one area being partially offset by regressions in another. Still, assuming ARM’s power reduction claims hold true, this is not a bad result.

The gap between the A73 and A57 increases to 29%. The integer performance for Qualcomm’s custom Kryo core is well behind ARM’s A73 and A72 cores, essentially matching the A57’s IPC.

Geekbench 4 - Integer Performance
Single Threaded
  Kirin 960 Kirin 950
(% Advantage)
Exynos 7420
(% Advantage)
Snapdragon 821
(% Advantage)
AES 911.3 MB/s 935.6 MB/s
(-2.59%)
795.8 MB/s
(14.52%)
559.1 MB/s
(63.00%)
LZMA 3.03 MB/s 2.87 MB/s
(5.69%)
2.28 MB/s
(33.33%)
2.20 MB/s
(38.09%)
JPEG 16.1 Mpixels/s 15.5 Mpixels/s
(3.66%)
14.1 Mpixels/s
(13.95%)
21.6 Mpixels/s
(-25.62%)
Canny 22.5 Mpixels/s 26.8 Mpixels/s
(-16.06%)
23.6 Mpixels/s
(-4.80%)
30.3 Mpixels/s
(-25.77%)
Lua 1.70 MB/s 1.55 MB/s
(10.13%)
1.20 MB/s
(41.94%)
1.47 MB/s
(16.14%)
Dijkstra 1.53 MTE/s 1.14 MTE/s
(33.53%)
0.92 MTE/s
(65.12%)
1.39 MTE/s
(9.57%)
SQLite 51.6 Krows/s 43.5 Krows/s
(18.62%)
34.0 Krows/s
(51.99%)
36.7 Krows/s
(40.73%)
HTML5 Parse 8.30 MB/s 6.79 MB/s
(22.19%)
6.37 MB/s
(30.25%)
7.61 MB/s
(9.02%)
HTML5 DOM 2.17 Melems/s 1.92 Melems/s
(12.82%)
1.26 Melems/s
(72.91%)
0.37 Melems/s
(489.09%)
Histogram Equalization 48.7 Mpixels/s 57.0 Mpixels/s
(-14.56%)
50.6 Mpixels/s
(-3.66%)
51.2 Mpixels/s
(-4.82%)
PDF Rendering 44.8 Mpixels/s 45.5 Mpixels/s
(-1.47%)
39.7 Mpixels/s
(12.93%)
53.0 Mpixels/s
(-15.36%)
LLVM 194.4 functions/s 167.9 functions/s
(15.76%)
128.6 functions/s
(51.14%)
113.5 functions/s
(71.20%)
Camera 5.45 images/s 5.45 images/s
(0.00%)
4.95 images/s
(10.17%)
7.19 images/s
(-24.12%)

The updated Geekbench 4 workloads give us a second look at integer IPC. Similar to the SPECint2000 results, we see Kirin 960 showing 5% to 15% gains over Kirin 950 in several of the tests, but there’s a bit more variation overall. The Kirin 960 is actually slower than Kirin 950 in some tests, and, in the case of Canny and Histogram Equalization, its A73 is even slower than the Exynos 7420’s A57. It also falls behind Qualcomm’s Kryo in the JPEG, PDF Rendering, and Camera tests. The tests where the Kirin 960 does well—HTML5 Parse, HTML5 DOM, and SQLite—are very common workloads, though, which should translate into better real-world performance.

Geekbench 4  (Single Threaded) Integer Score/MHz

The chart above accounts for differences in CPU frequency, making it easier to directly compare IPC. Overall the A73 shows only about a 4% improvement over the A72 and about a 12% improvement over the A57 in this group of workloads, considerably less than what we saw in SPECint2000; however, with margins ranging from 33.5% in Dijkstra to -16.1% in Canny, it’s impossible to make any sweeping statements about the A73’s integer performance being better or worse than the A72’s.

Qualcomm’s Kryo CPU falls just behind the A57 once again despite posting better results in many of the Geekbench integer tests. Its poor performance in LLVM and HTML5 DOM weighs heavily on its overall score.

I’ve also included results for ARM’s in-order A53 companion core. The A73’s integer IPC is 1.7x to 2x higher overall, which illustrates why octa-core A53 SoCs are so much slower, particularly in Web browsing, than designs that use 2-4 big cores (A73/A72/A57) instead of 4 additional A53s.

Geekbench 4 - Floating Point Performance
Single Threaded
  Kirin 960 Kirin 950
(% Advantage)
Exynos 7420
(% Advantage)
Snapdragon 821
(% Advantage)
SGEMM 10.7 GFLOPS 13.9 GFLOPS
(-23.44%)
11.9 GFLOPS
(-10.36%)
12.2 GFLOPS
(-12.57%)
SFFT 2.89 GFLOPS 2.26 GFLOPS
(27.73%)
2.62 GFLOPS
(10.39%)
3.21 GFLOPS
(-10.07%)
N-Body Physics 838.4 Kpairs/s 896.9 Kpairs/s
(-6.52%)
634.5 Kpairs/s
(32.14%)
1156.7 Kpairs/s
(-27.51%)
Rigid Body Physics 5891.4 FPS 6497.4 FPS
(-9.33%)
4662.7 FPS
(26.35%)
7171.3 FPS
(-17.85%)
Ray Tracing 221.9 Kpixels/s 216.9 Kpixels/s
(2.30%)
136.1 Kpixels/s
(63.07%)
298.3 Kpixels/s
(-25.59%)
HDR 7.46 Mpixels/s 7.57 Mpixels/s
(-1.45%)
7.17 Mpixels/s
(4.09%)
10.8 Mpixels/s
(-30.90%)
Gaussian Blur 23.6 Mpixels/s 28.6 Mpixels/s
(-17.37%)
24.4 Mpixels/s
(-2.94%)
48.5 Mpixels/s
(-51.27%)
Speech Recognition 12.8 Words/s 8.9 Words/s
(44.14%)
10.2 Words/s
(25.49%)
10.9 Words/s
(17.43%)
Face Detection 501.2 Ksubs/s 518.9 Ksubs/s
(-3.42%)
435.5 Ksubs/s
(15.09%)
685.0 Ksubs/s
(-26.83%)

With the exception of SFFT and Speech Recognition, the Kirin 960 is generally a little slower than the Kirin 950 in Geekbench 4’s floating-point workloads. This is a bit of a surprise considering that the A73’s NEON execution units are relatively unchanged from the A72’s design, with reduced latency for specific instructions improving NEON performance by 5%, according to ARM. These results are even harder to interpret after factoring in the A73’s lower-latency front end and improvements to its fetch block and memory subsystems. It’s possible that some of these tests are limited by the A73’s narrower decode stage, but given the variation in workloads, this is probably not true for every case. It will be interesting to see if A73 implementations from other SoC vendors show similar results.

Geekbench 4 (Single Threaded) Floating Point Score/MHz

After accounting for the differences in CPU frequency, floating-point IPC for the Kirin 960’s A73 is 3% to 5% lower overall than the A72 but about 3% higher than the older A57. These results, which are a geometric mean of the floating-point subtest scores, are certainly closer to what I would expect, but hide the large performance variation from one workload to the next.

It’s pretty obvious that floating-point performance was Qualcomm’s focus for its custom Kryo core. While integer IPC was no better than ARM’s A57, Kryo’s floating-point IPC is 23% higher than the A72 in Geekbench 4, with particularly strong results in the Gaussian Blur and HDR tests.

Introduction Memory and System Performance
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  • nikhilmaurya10 - Friday, July 21, 2017 - link

    Believe me I bought the honor 8 pro with kirin 960 at 466 USD(india 30k RS), so they have achieved their goal of making a flagship level chip for below flagship price. After reading this review and finding that 8W power of that GPU i am worried about the VR content on this 2k display. One thing is good that this phone is huge metallic slab, that should keep it somewhat cool.
  • socalbigmike - Thursday, March 16, 2017 - link

    They ARE sponsored by Huawei.
  • Meteor2 - Wednesday, March 15, 2017 - link

    This. This is a great article but what's missing is the A10 (and Core M and Atom for comparison).

    I'm less interested in the deeper technical stuff, tbh. But I'm very interested in the performance, power consumption, and resulting efficiency. So I'd love to see this test battery for the A10 and Core too.

    Mind you, why don't you do SPi2000 and GB4 against power consumption, rather than only PCMark?
  • jjj - Tuesday, March 14, 2017 - link

    ARM was comparing A73 on 10nm vs A72 on 16nm in efficiency ,not peak power for both on same process.
    Likely the memory controller and the interconnect have an impact too in increasing the differences between the 950 and 960.
  • Matt Humrick - Tuesday, March 14, 2017 - link

    ARM's power comparison was for the same process and same frequency.
  • jjj - Tuesday, March 14, 2017 - link

    On a per same task basis not peak load. http://images.anandtech.com/doci/10347/11.PNG

    In this slide it's 10nm vs 16nm http://images.anandtech.com/doci/10347/1_575px.PNG
  • degasus - Tuesday, March 14, 2017 - link

    > I cannot think of any CPU-centric workloads for a phone that would load two big cores for anywhere near this long

    You haven't run an emulator, have you? With a bit improved GPU drivers (here, EXT_buffer_storage), this will be a very good device for playing Gamecube and Wii games. This will stress two threads, and a bit the GPU.
  • tuxRoller - Friday, March 17, 2017 - link

    You're joking.
    Dolphin doesn't run on my pixel c at anything resembling a useful frame rate (even when it actually works).
  • MajGenRelativity - Tuesday, March 14, 2017 - link

    I'm not read up on all the lingo, but what does 16FFC stand for, and how does it differ from 16FF+?
  • Ian Cutress - Tuesday, March 14, 2017 - link

    Page 4:

    The Kirin 950 uses TSMC’s 16FF+ FinFET process, but HiSilicon switches to TSMC’s 16FFC FinFET process for the Kirin 960. The newer 16FFC process reduces manufacturing costs and die area to make it competitive in mid- to low-end markets, giving SoC vendors a migration path from 28nm. It also claims to reduce leakage and dynamic power by being able to run below 0.6V, making it suitable for wearable devices and IoT applications. Devices targeting price-sensitive markets, along with ultra low-power wearable devices, tend to run at lower frequencies, however, not 2.36GHz like Kirin 960. It’s possible that pushing the less performance-oriented 16FFC process, which targets lower voltages/frequencies, to higher frequencies that lay beyond its peak efficiency point may partially explain the higher power consumption relative to 16FF+.

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