Decoding Swift

Section by Anand Shimpi

Apple's A6 provided a unique challenge. Typically we learn about a new CPU through an architecture disclosure by its manufacturer, tons of testing on our part and circling back with the manufacturer to better understand our findings. With the A6 there was no chance Apple was going to give us a pretty block diagram or an ISSCC paper on its architecture. And on the benchmarking side, our capabilities there are frustratingly limited as there are almost no good smartphone benchmarks. Understanding the A6 however is key to understanding the iPhone 5, and it also gives us a lot of insight into where Apple may go from here. A review of the iPhone 5 without a deep investigation into the A6 just wasn't an option.

The first task was to know its name. There's the old fantasy that knowing something's name gives you power over it, and the reality that it's just cool to know a secret code name. A tip from a reader across the globe pointed us in the right direction (thanks R!). Working backwards through some other iOS 6 code on the iPhone 5 confirmed the name. Apple's first fully custom ARM CPU core is called Swift.

Next we needed to confirm clock speed. Swift's operating frequency would give us an idea of how much IPC has improved over the Cortex A9 architecture. Geekbench was updated after our original iPhone 5 performance preview to more accurately report clock speed (previously we had to get one thread running in the background then launch Geekbench to get a somewhat accurate frequency reading). At 1.3GHz, Swift clearly ran at a higher frequency than the 800MHz Cortex A9 in Apple's A5 but not nearly as high as solutions from Qualcomm, NVIDIA, Samsung or TI. Despite the only 62.5% increase in frequency, Apple was promising up to a 2x increase in performance. It's clear Swift would have to be more than just a clock bumped Cortex A9. Also, as Swift must remain relevant through the end of 2013 before the next iPhone comes out, it had to be somewhat competitive with Qualcomm's Krait and ARM's Cortex A15. Although Apple is often talked about as not being concerned with performance and specs, the truth couldn't be farther from it. Shipping a Cortex A9 based SoC in its flagship smartphone through the end of 2013 just wouldn't cut it. Similarly, none of the SoC vendors would have something A15-based ready in time for volume production in Q3 2012 which helped force Apple's hand in designing its own core.

With a codename and clock speed in our hands, we went about filling in the blanks.

Some great work on behalf of Chipworks gave us a look at the cores themselves, which Chipworks estimated to be around 50% larger than the Cortex A9 cores used in the A5.


Two Apple Swift CPU cores, photo courtesy Chipworks, annotations ours


Two ARM Cortex A9 cores , photo courtesy Chipworks, annotations ours

Looking at the die shots you see a much greater logic to cache ratio in Swift compared to ARM's Cortex A9. We know that L1/L2 cache sizes haven't changed (32KB/1MB, respectively) so it's everything else that has grown in size and complexity.

The first thing I wanted to understand was how much low level compute performance has changed. Thankfully we have a number of microbenchmarks available that show us just this. There are two variables that make comparisons to ARM's Cortex A9 difficult: Swift presumably has a new architecture, and it runs at a much higher clock speed than the Cortex A9 in Apple's A5 SoC. For the tables below you'll see me compare directly to the 800MHz Cortex A9 used in the iPhone 4S, as well as a hypothetical 1300MHz Cortex A9 (1300/800 * iPhone 4S result). The point here is to give me an indication of how much performance has improved if we take clock speed out of the equation. Granted the Cortex A9 won't see perfect scaling going from 800MHz to 1300MHz, however most of the benchmarks we're looking at here are small enough to fit in processor caches and should scale relatively well with frequency.

Our investigation begins with Geekbench 2, which ends up being a great tool for looking at low level math performance. The suite is broken up into integer, floating point and memory workloads. We'll start with the integer tests. I don't have access to Geekbench source but I did my best to map the benchmarks to the type of instructions and parts of the CPU core they'd be stressing in the descriptions below.

Geekbench 2
Integer Tests 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
Blowfish 10.7 MB/s 17.4 MB/s 23.4 MB/s 34.6%
Blowfish MT 20.7 MB/s 33.6 MB/s 45.6 MB/s 35.6%
Text Compression 1.21 MB/s 1.97 MB/s 2.79 MB/s 41.9%
Text Compression MP 2.28 MB/s 3.71 MB/s 5.19 MB/s 40.1%
Text Decompression 1.71 MB/s 2.78 MB/s 3.82 MB/s 37.5%
Text Decompression MP 2.84 MB/s 4.62 MB/s 5.88 MB/s 27.3%
Image Compression 3.32 Mpixels/s 5.40 Mpixels/s 7.31 Mpixels/s 35.5%
Image Compression MP 6.59 Mpixels/s 10.7 Mpixels/s 14.2 Mpixels/s 32.6%
Image Decompression 5.32 Mpixels/s 8.65 Mpixels/s 12.4 Mpixels/s 43.4%
Image Decompression MP 10.5 Mpixels/s 17.1 Mpixels/s 23.0 Mpixels/s 34.8%
LUA 215.4 Knodes/s 350.0 Knodes/s 455.0 Knodes/s 30.0%
LUA MP 425.6 Knodes/s 691.6 Knodes/s 887.0 Knodes/s 28.3%
Average - - - 37.2%

The Blowfish test is an encryption/decryption test that implements the Blowfish algorithm. The algorithm itself is fairly cache intensive and features a good amount of integer math and bitwise logical operations. Here we see the hypothetical 1.3GHz Cortex A9 would be outpaced by Swift by around 35%. In fact you'll see this similar ~30% increase in integer performance across the board.

The text compression/decompression tests use bzip2 to compress/decompress text files. As text files compress very well, these tests become great low level CPU benchmarks. The bzip2 front end does a lot of sorting, and is thus very branch as well as heavy on logical operations (integer ALUs used here). We don't know much about the size of the data set here but I think it's safe to assume that given the short run times we're not talking about compressing/decompressing all of the text in Wikipedia. It's safe to assume that these tests run mostly out of cache. Here we see a 38 - 40% advantage over a perfectly scaled Cortex A9. The MP text compression test shows the worst scaling out of the group at only 27.3% for Swift over a hypothetical 1.3GHz Cortex A9. It is entirely possible we're hitting some upper bound to simultaneous L2 cache accesses or some other memory limitation here.

The image compression/decompression tests are particularly useful as they just show JPEG compression/decompression performance, a very real world use case that's often seen in many applications (web browsing, photo viewer, etc...). The code here is once again very integer math heavy (adds, divs and muls), with some light branching. Performance gains in these tests, once again, span the 33 - 43% range compared to a perfectly scaled Cortex A9.

The final set of integer tests are scripted LUA benchmarks that find all of the prime numbers below 200,000. As with most primality tests, the LUA benchmarks here are heavy on adds/muls with a fair amount of branching. Performance gains are around 30% for the LUA tests.

On average, we see gains of around 37% over a hypothetical 1.3GHz Cortex A9. The Cortex A9 has two integer ALUs already, so it's possible (albeit unlikely) that Apple added a third integer ALU to see these gains. Another potential explanation is that the 3-wide front end allowed for better utilization of the existing two ALUs, although it's also unlikely that we see better than perfect scaling simply due to the addition of an extra decoder. If it's not more data being worked on in parallel, it's entirely possible that the data is simply getting to the execution units faster.

Let's keep digging.

MP

Geekbench 2
FP Tests 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
Mandlebrot 223 MFLOPS 362 MFLOPS 397 MFLOPS 9.6%
Mandlebrot MP 438 MFLOPS 712 MFLOPS 766 MFLOPS 7.6%
Dot Product 177 MFLOPS 288 MFLOPS 322 MFLOPS 12.0%
Dot Product MP 353 MFLOPS 574 MFLOPS 627 MFLOPS 9.3%
LU Decomposition 171 MFLOPS 278 MFLOPS 387 MFLOPS 39.3%
LU Decomposition MP 348 MFLOPS 566 MFLOPS 767 MFLOPS 35.6%
Primality 142 MFLOPS 231 MFLOPS 370 MFLOPS 60.3%
Primality MP 260 MFLOPS 423 MFLOPS 676 MFLOPS 60.0%
Sharpen Image 1.35 Mpixels/s 2.19 Mpixels/s 4.85 Mpixels/s 121%
Sharpen Image MP 2.67 Mpixels/s 4.34 Mpixels/s 9.28 Mpixels/s 114%
Blur Image 0.53 Mpixels/s 0.86 Mpixels/s 1.96 Mpixels/s 128%
Blur Image MP 1.06 Mpixels/s 1.72 Mpixels/s 3.78 Mpixels/s 119%
Average - - - 61.6%

The FP tests for Geekbench 2 provide some very interesting data. While we saw consistent gains of 30 - 40% over our hypothetical 1.3GHz Cortex A9, Swift behaves much more unpredictably here. Let's see if we can make sense of it.

The Mandlebrot benchmark simply renders iterations of the Mandlebrot set. Here there's a lot of floating point math (adds/muls) combined with a fair amount of branching as the algorithm determines whether or not values are contained within the Mandlebrot set. It's curious that we don't see huge performance scaling here. Obviously Swift is faster than the 800MHz Cortex A9 in Apple's A5, but if the A5 were clocked at the same 1.3GHz and scaled perfectly we only see a 9.6% increase in performance from the new architecture. The Cortex A9 only has a single issue port to its floating point hardware that's also shared by its load/store hardware - this data alone would normally indicate that nothing has changed here when it comes to Swift. That would be a bit premature though...

The Dot Product test is simple enough, it computes the dot product of two FP vectors. Once again there are a lot of FP adds and muls here as the dot product is calculated. Overall performance gains are similarly timid if we scale up the Cortex A9's performance: 9 - 12% increase at the same frequency doesn't sound like a whole lot for a brand new architecture.

The LU Decomposition tests factorize a 128 x 128 matrix into a product of two matrices. The sheer size of the source matrix guarantees that this test has to hit the 1MB L2 cache in both of the architectures that we're talking about. The math involved are once again FP adds/muls, but the big change here appears to be the size of the dataset. The performance scales up comparatively. The LU Decomposition tests show 35 - 40% gains over our hypothetical 1.3GHz Cortex A9.

The Primality benchmarks perform the first few iterations of the Lucas-Lehmar test on a specific Mersenne number to determine whether or not it's prime. The math here is very heavy on FP adds, multiplies and sqrt functions. The data set shouldn't be large enough to require trips out to main memory, but we're seeing scaling that's even better than what we saw in the LU Decomposition tests. The Cortex A9 only has a single port for FP operations, it's very possible that Apple has added a second here in Swift. Why we wouldn't see similar speedups in the Mandlebrot and Dot Product tests however could boil down to the particular instruction mix used in the Primarily benchmark. The Geekbench folks also don't specify whether we're looking at FP32 or FP64 values, which could also be handled at different performance levels by the Swift architecture vs. Cortex A9.

The next two tests show the biggest gains of the FP suite. Both the sharpen and blur tests apply a convolution filter to an image stored in memory. The application of the filter itself is a combination of matrix multiplies, adds, divides and branches. The size of the data set likely hits the data cache a good amount.

We still haven't gained too much at this point. Simple FP operations don't see a huge improvement in performance over a perfectly scaled Cortex A9, while some others show tremendous gains. There seems to be a correlation with memory accesses which makes sense given what we know about Swift's memory performance. Improved memory performance also lends some credibility to the earlier theory about why integer performance goes up by so much: data cache access latency could be significantly improved.

The A6 SoC Custom Code to Understand a Custom Core
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  • Calista - Sunday, October 21, 2012 - link

    English is not my native language (as I'm sure you have noticed) and so the flow in the language is far from flawless. But I still believe my opinions are valid and that the review was too long-winded.
  • Teknobug - Wednesday, October 17, 2012 - link

    I live in a big city and I don't know a single person that went and got the iPhone 5, most are happy with the iPhone 4 or whatever phone they're using, I don't see what's so great about the iPhone 5 other than it being built better than the iPhone 4's double sided glass structure (I've seen people drop their's on the train or sidewalk and it shattering on both sides!).

    And what now? iPad mini? I thought Apple wasn't interested in the 6-7" tablet market, Steve Jobs said 9" is small enough. I know Apple tried a 6" tablet a decade ago but the market wasn't read for it back then.
  • name99 - Wednesday, October 17, 2012 - link

    You know what AnandTech REALLY needs now?
    A comment moderation system like Ars Technica, so that low-content comments and commenters (like the above) can be suppressed.

    Teknobug is a PERFECT example of Ars' Troll Type #1: "Son of the "I don't even own a TV" guy: "

    This is the poster who thinks other people will find it interesting that he cares nothing about their discussion or their interests, and in fact judges himself as somehow morally superior as a result. The morphology of this on Ars Technica includes people popping into threads about Windows 8 to proclaim how they will never use Windows, people popping into threads about iOS 6 to proclaim that they never have and never will buy an Apple product, and people popping into Android related threads and claiming that they will never purchase "crappy plastic phones." In these cases, the posters have failed to understand that no one really cares what their personal disposition is on something, if they have nothing to add to the discussion.
  • ratte - Wednesday, October 17, 2012 - link

    yeah, my thoughts exactly.
  • worldbfree4me - Wednesday, October 17, 2012 - link

    I finished reading the review a few moments ago. Kudos again for a very thorough review, however I do a have a few questions and points that I would like to ask and make.

    Am I wrong to say, Great Job on Apple finally catching up to the Android Pack in terms of overall performance? The GS3, HTC X debuted about 6 months ago yes?

    Have these benchmark scores from the competing phones been updated to reflect the latest OS updates from GOOG such as OS 4.1.X aka Jelly Bean?

    Clearly the LG Optimus G is a preview of the Nexus 4,complete with a modern GPU In Adreno 320 and 2GB ram. I think based on history, the Nexus 4 will again serve as a foundation for all future Androids to follow. But again, good Job on Apple finally catching up to Android with the caveat being, iOS only has to push its performance to a 4inch screen akin to a 1080p LCD monitor verses a true gamers 1440p LCD Home PC setup. Ciao
  • Zinthar - Thursday, October 18, 2012 - link

    Caught up and passed, actually (if you were actually reading the review). As far as graphics are concerned, no smartphone has yet to eclipse the 4S's 543MP2 other than, of course, the iPhone 5.

    I have no idea what you're going on about with the Adreno 320, because that only gets graphics performance up to about the level of the PowerVR SGX 543MP2. Please see Anand's preview: http://www.anandtech.com/show/6112/qualcomms-quadc...
  • yottabit - Wednesday, October 17, 2012 - link

    Anand, as a Mech-E, I think somewhere the anodization facts in this article got very wonky

    I didn't have time to read thoroughly but I saw something about the anodized layer equaling half the material thickness? The idea of having half a millimeter anodized is way off the mark

    Typically there are two types of anodizing I use: regular, and "hard coat anodize" which is much more expensive

    If the iPhone is scuffing then it's definitely using regular anodizing, and the thickness of that layer is likely much less than .001" or one thousandth of an inch. More on the order of a ten-thousandth of an inch, actually. The thickness of traditional anodizing is so negligible that in fact most engineers don't even need to compensate for it when designing parts.

    Hard-coat anodize is a much more expensive process and can only result in a few darker colors, whereas normal anodizing has a pretty wide spectrum. Hard-coat thicknesses can be substantial, in the range of .001" to .003". This usually must be compensated for in the design process. Hard coat anodize results in a much flatter looking finish than typical anodize, and is also pretty much immune to scratches of any sort.

    Aluminum oxide is actually a ceramic which is harder than steel. So having a sufficient thickness of anodize can pretty much guarantee it won't be scratched under normal operating conditions. However it's much cheaper and allows more colors to do a "regular" anodize

    When I heard about scuffgate I immediately thought one solution would be to have a hardcoat anodize, but it would probably be cost prohibitive, and would alter the appearance significantly
  • guy007 - Wednesday, October 17, 2012 - link

    A little late to the party with the review, the iPhone 6 is almost out now...
  • jameskatt - Wednesday, October 17, 2012 - link

    Anand is pessimistic about Apple's ability to keep creating its own CPUs every year. But realize that the top two smartphone manufacturers (Apple and Samsung) are CRUSHING the competition. And BOTH create their own CPUs.

    Apple has ALWAYS created custom chips for its computers - except for a few years when Steve Jobs accidentally let their chip engineers go when they switched to Intel and Intel's motherboard designs.

    Apple SAVES a lot of money by designing its own chips because it doesn't have to pay the 3rd party profit on each chip.

    Apple PREVENTS Samsung from spying on its chip designs and giving the data to its own chip division to add to its own designs. This is a HUGE win given Samsung's copycat mentality.

    Apple can now always be a step ahead of the competition by designing its own chips. Realize that others will create copies of the ARM A15. But only Apple can greatly improve on the design. Apple, for example, greatly improved the memory subsystem on its own ARM chips. This is a huge weakness on otherARM chips. Apple can now custom design the power control as well - prolonging battery life even more. Etc. etc.
  • phillyry - Sunday, October 21, 2012 - link

    Good points re: copycat and profit margin savings.

    I've always been baffled by the fact that Apple outsources their part manufacturing to the competition. I know that Samsung is a huge OEM player but they are stealing Apple's ideas. They are doing a very good job of it and now improving on those ideas and techs, which is good for the consumer but still seems completely illogical to me from Apple's perspective. Must be the 20/20 hindsight kicking in again.

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