Custom Code to Understand a Custom Core

Section by Anand Shimpi

All Computer Engineers at NCSU had to take mandatory programming courses. Given that my dad is a Computer Science professor, I always had exposure to programming, but I never considered it my strong suit - perhaps me gravitating towards hardware was some passive rebellious thing. Either way I knew that in order to really understand Swift, I'd have to do some coding on my own. The only problem? I have zero experience writing Objective-C code for iOS, and not enough time to go through a crash course.

I had code that I wanted to time/execute in C, but I needed it ported to a format that I could easily run/monitor on an iPhone. I enlisted the help of a talented developer friend who graduated around the same time I did from NCSU, Nirdhar Khazanie. Nirdhar has been working on mobile development for years now, and he quickly made the garbled C code I wanted to run into something that executed beautifully on the iPhone. He gave me a framework where I could vary instructions as well as data set sizes, which made this next set of experiments possible. It's always helpful to know a good programmer.

So what did Nirdhar's app let me do? Let's start at the beginning. ARM's Cortex A9 has two independent integer ALUs, does Swift have more? To test this theory I created a loop of independent integer adds. The variables are all independent of one another, which should allow for some great instruction level parallelism. The code loops many times, which should make for some easily predictable branches. My code is hardly optimal but I did keep track of how many millions of adds were executed per second. I also reported how long each iteration of the loop took, on average.

Integer Add Code
  Apple A5 (2 x Cortex A9 @ 800MHz Apple A5 Scaled (2 x Cortex A9 @ 1300MHz Apple A6 (2 x Swift @ 1300MHz Swift / A9 Perf Advantage @ 1300MHz
Integer Add Test 207 MIPS 336 MIPS 369 MIPS 9.8%
Integer Add Latency in Clocks 23 clocks   21 clocks  

The code here should be fairly bound by the integer execution path. We're showing a 9.8% increase in performance. Average latency is improved slightly by 2 clocks, but we're not seeing the sort of ILP increase that would come from having a third ALU that can easily be populated. The slight improvement in performance here could be due to a number of things. A quick look at some of Apple's own documentation confirms what we've seen here: Swift has two integer ALUs and can issue 3 operations per cycle (implying a 3-wide decoder as well). I don't know if the third decoder is responsible for the slight gains in performance here or not.

What about floating point performance? ARM's Cortex A9 only has a single issue port for FP operations which seriously hampers FP performance. Here I modified the code from earlier to do a bunch of single and double precision FP multiplies:

FP Add Code
  Apple A5 (2 x Cortex A9 @ 800MHz Apple A5 Scaled (2 x Cortex A9 @ 1300MHz Apple A6 (2 x Swift @ 1300MHz Swift / A9 Perf Advantage @ 1300MHz
FP Mul Test (single precision) 94 MFLOPS 153 MFLOPS 143 MFLOPS -7%
FP Mul Test (double precision) 87 MFLOPS 141 MFLOPS 315 MFLOPS 123%

There's actually a slight regression in performance if we look at single precision FP multiply performance, likely due to the fact that performance wouldn't scale perfectly linearly from 800MHz to 1.3GHz. Notice what happens when we double up the size of our FP multiplies though, performance goes up on Swift but remains unchanged on the Cortex A9. Given the support for ARM's VFPv4 extensions, Apple likely has a second FP unit in Swift that can help with FMAs or to improve double precision FP performance. It's also possible that Swift is a 128-bit wide NEON machine and my DP test compiles down to NEON code which enjoys the benefits of a wider engine. I ran the same test with FP adds and didn't notice any changes to the data above.

Sanity Check with Linpack & Passmark

Section by Anand Shimpi

Not completely trusting my own code, I wanted some additional data points to help understand the Swift architecture. I first turned to the iOS port of Linpack and graphed FP performance vs. problem size:

Even though I ran the benchmark for hundreds of iterations at each data point, the curves didn't come out as smooth as I would've liked them to. Regardless there's a clear trend. Swift maintains a huge performance advantage, even at small problem sizes which supports the theory of having two ports to dedicated FP hardware. There's also a much smaller relative drop in performance when going out to main memory. If you do the math on the original unscaled 4S scores you get the following data:

Linpack Throughput: Cycles per Operation
  Apple Swift @ 1300MHz (iPhone 5) ARM Cortex A9 @ 800MHz (iPhone 4S)
~300KB Problem Size 1.45 cycles 3.55 cycles
~8MB Problem Size 2.08 cycles 6.75 cycles
Increase 43% 90%

Swift is simply able to hide memory latency better than the Cortex A9. Concurrent FP/memory operations seem to do very well on Swift...

As the last sanity check I used Passmark, another general purpose iOS microbenchmark.

Passmark CPU Performance
  Apple A5 (2 x Cortex A9 @ 800MHz Apple A5 Scaled (2 x Cortex A9 @ 1300MHz Apple A6 (2 x Swift @ 1300MHz Swift / A9 Perf Advantage @ 1300MHz
Integer 257 418 614 47.0%
FP 230 374 813 118%
Primality 54 87 183 109%
String qsort 1065 1730 2126 22.8%
Encryption 38.1 61.9 93.5 51.0%
Compression 1.18 1.92 2.26 17.9%

The integer math test uses a large dataset and performs a number of add, subtract, multiply and divide operations on the values. The dataset measures 240KB per core, which is enough to stress the L2 cache of these processors. Note the 47% increase in performance over a scaled Cortex A9.

The FP test is identical to the integer test (including size) but it works on 32 and 64-bit floating point values. The performance increase here despite facing the same workload lends credibility to the theory that there are multiple FP pipelines in Swift.

The Primality benchmark is branch heavy and features a lot of FP math and compares. Once again we see huge scaling compared to the Cortex A9.

The qsort test features integer math and is very branch heavy. The memory footprint of the test is around 5MB, but the gains here aren't as large as we've seen elsewhere. It's possible that Swift features a much larger branch mispredict penalty than the A9.

The Encryption test works on a very small dataset that can easily fit in the L1 cache but is very heavy on the math. Performance scales very well here, almost mirroring the integer benchmark results.

Finally the compression test shows us the smallest gains once you take into account Swift's higher operating frequency. There's not much more to conclude here other than we won't always see greater than generational scaling from Swift over the previous Cortex A9.

Decoding Swift Apple's Swift: Visualized
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  • TrackSmart - Wednesday, October 17, 2012 - link

    Shouldn't the battery life on the Verizon Galaxy SIII with LTE be higher than shown? That result bunches up with the 3G scores rather than the LTE scores. I wonder if the "LTE" listing is a typo.

    It's also a bit surprising how much of a difference the connection speed makes (3G vs 4G LTE) for the battery life tests. Are you guys really testing differences in power efficiency under typical use? Or have you, inadvertently, created a strange test of air interface throughput/watt - which would vary based on signal strength and network speed, but not based on the main device power draw under typical browsing (i.e. screen + intermittent CPU usage spikes).

    I would have guessed that that screen power draw would be the largest cause for differences between handsets, not the air interfaces on the new devices, now that LTE is no longer a power hog.
  • phillyry - Sunday, October 21, 2012 - link

    If it's anything like the Telus GS3 up here in Canada than it's not likely a typo. My brother has it and it tanks so bad on LTE that he keeps it turned off. Same thing with NFC btw. Two major selling features of the GS3 that went down the tubes in reality.
  • Skidmarks - Wednesday, October 17, 2012 - link

    I've got to hand it to Apple, if nothing else they sure know to market their rubbish.
  • Freakie - Wednesday, October 17, 2012 - link

    I haven't seen the 5 in person, but every time I see a picture of the front of it, I swear its design echos Samsung devices quite a bit. If any light hits it directly then it looks off-black, at least in the pictures, to the point of looking like Samsung's Pebble Blue color back when it was a bit darker (Samsung Impression).

    They got rid of the band around the phone and just have a slanted surface which when looking at pictures taken 8 inches away from the phone, has it's sharp "edges" that it slants to become one smooth transition. Reminds me a lot of the GSII's front.

    Now I'm not a fan of any design litigations going either way, but I've never seen a Samsung device echo the looks of Apple's devices quite as much as the iPhone 5 echos a number of Samsung's design flairs that they've been using for a while.

    Just my two cents xP
  • kmmatney - Wednesday, October 17, 2012 - link

    Are you kidding me. Look at how much the original; Samsung Galaxy copies the iPhone 3G. Same with the Galaxy SII.

    See for yourself

    3G versus SGI

    https://encrypted-tbn1.gstatic.com/images?q=tbn:AN...

    and 4S versus SGII

    http://www.gizmowatch.com/entry/comparing-mights-i...
  • medi01 - Wednesday, October 17, 2012 - link

    Wow, SGII and 4S have the same screen ratio, you shameless iScum...
  • Freakie - Wednesday, October 17, 2012 - link

    Oh I never said that Samsung hasn't produced a phone similar to an iPhone, though your second picture is pretty ridiculous (that's the SGI not SGII) which came out several months before the 4. Not only that but the picture its self is most definitely shot/edited in a way to make them as similar as possible.

    My complaint is just Apple doing something very different than normal, and echoing someone else for a change. Usually they seem to go for something different than the rest and the iPhone 5 most definitely does not come anywhere near that.
  • steven75 - Wednesday, October 17, 2012 - link

    This is probably the most silly comment I've read among any iPhone reviews. iPhones have always been similar overall since the revolution if 2007 and now you are seriously making the claim this looks more like a Samsung device?

    /smh
  • MNSoils - Wednesday, October 17, 2012 - link

    Apple has an interesting story here and your group did a wonderful job telling it.

    On the 2 graph of the "Increased Dynamic Range" page, the idle power for the Tegra 3 SOC after finishing the Kraken benchmark seems awfully high for just the companion core. Does more time have to elapse before Android reverts to the companion core? Is the companion core not that power efficient (power-gated, etc.)? Does Android revert to the companion core?
  • colonelclaw - Wednesday, October 17, 2012 - link

    Thanks for a terrific article. It's just a shame that about 75% of the comments will be by people who either love the device or hate it, and nothing in this carefully researched and written appraisal will make them change their minds either way.

    How did we get to this? Actually, don't answer, that would turn into an irrelevant pissing match too.

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