Common SIMD techniques - arm

Where can I find information about common SIMD tricks? I have an instruction set and know, how to write non-tricky SIMD code, but I know, SIMD now is much more powerful. It can hold complex conditional branchless code.
For example (ARMv6), the following sequence of instructions sets each byte of Rd equal to the unsigned minimum of the corresponding bytes of Ra and Rb:
USUB8 Rd, Ra, Rb
SEL Rd, Rb, Ra
Links to tutorials / uncommon SIMD techniques are good too :) ARMv6 is the most interesting for me, but x86(SSE,...)/Neon(in ARMv7)/others are good too.

One of the best SIMD resources ever was the old AltiVec mailing list. Although PowerPC/AltiVec-specific I suspect that a lot of the material on this list would be of general interest to anyone working with other SIMD architectures. Sadly this list seems now to be defunct after being moved to a forum on power.org, but you may be able to find archived versions of it. (If not then let me know - I have pretty much all the posts from 2000 - 2007.)
There is also a lot of potentially useful info on AltiVec, SSE, SIMD vectorization and performance in general at http://developer.apple.com/hardwaredrivers/ve/index.html, a good deal of which may be transferable to other SIMD architectures.

Try AMD's SSEPlus project on sourceforge

Related

Instructions conversion from SSE to ARM Neon

I'm trying to convert a piece of code in from SSE to ARM Neon for optimization. For most of the SSE instructions of the code I found some clearly equivalent Neon ones. I've got some problems with these though:
result1_shifted = _mm_srli_si128 (result1, 1);
result=_mm_packus_epi16 (res1,res2);
_mm_storeu_si128 (p_dest, result);
Could you please help me?
I agree with the comments that it's probably a good idea to go back to a "C" (or anything really) reference design and maybe start from scratch. In particular you will find that perhaps NEON has some more optimal ways of doing things in some cases. But if you find that you need to do nearly identical things, here are some hints:
_mm_srli_si128 (result1, 1); Try VEXT.S8 Qdst, Qsrc, Qsrc2, #1, where src2 has been cleared to 0.
_mm_packus_epi16 (res1,res2); Try VQMOVN.S16 Ddst, Qsrc. The key word when looking for alternatives is "narrow." You are moving with narrowing. "Q" is NEON nomenclature for saturation. You may have an issue because you are doing signed to unsigned, which I'm not sure NEON supports, but your use case may be okay, but that's why having reference and tests is good!
_mm_storeu_si128 (__m128i *p, __m128i a); Obviously there is VSTM and there are lots of options here. You probably want to look at this in some detail.

What is the limit of optimization using SIMD?

I need to optimize some C code, which does lots of physics computations, using SIMD extensions on the SPE of the Cell Processor. Each vector operator can process 4 floats at the same time. So ideally I would expect a 4x speedup in the most optimistic case.
Do you think the use of vector operators could give bigger speedups?
Thanks
The best optimization occurs in rethinking the algorithm. Eliminate unnecessary steps. Find more a direct way of accomplishing the same result. Compute the solution in a domain more relevant to the problem.
For example, if the vector array is a list of n which are all on the same line, then it is sufficient to transform the end points only and interpolate the intermediate points.
It CAN give better speeds up than 4 times over straight floating point as the SIMD instructions could be less exact (Not so much as to give too many problems though) and so take fewer cycles to execute. It really depends.
Best plan is to learn as much about the processor you are optimising for as possible. You may find it can give you far better than 4x improvements. You may find out you can't. We can't say though without knowing more about the algorithm you are optimising and what CPU you are targetting.
On their own, no. But if the process of re-writing your algorithms to support them also happens to improve, say, cache locality or branching behaviour, then you could find unrelated speed-ups. However, this is true of any re-write...
This is entirely possible.
You can do more clever instruction-level micro optimizations than a compiler, if you know what you're doing.
Most SIMD instruction sets offers several powerful operations that don't have any equivalent in normal scalar FPU/ALU code (e.g. PAVG/PMIN etc. in SSE2). Even if these don't fit your problem exactly, you can often combine these instructions for great effect.
Not sure about Cell, but most SIMD instruction sets have features to optimize memory access, for example to prefetch data into cache. I've had very good results with these.
Now this isn't Cell or PPC at all, but a simple image convolution filter of mine got a 20x speedup (C vs. SSE2) on Atom, which is higher than the level of parallelity (16 pixels at a time).
It depends on the architecture.. For the moment I assume x86 architecture (aka SSE).
You can get factor four on tight loops easily. Just replace your existing math with SSE instruction and you're done.
You can even get a little more than that because if you use SSE you do the math in registers which are usually not used by the compiler. This frees up the general purpose register for other task such as loop control and address calculation. In short the code that surrounds the SSE instruction will be more compact and execute faster.
And then there is the option to hint the memory controller how you want to access the memory, e.g. if you want to store data in a way that it bypasses the cache or not. For bandwidth hungry algorithms that may give you some more extra speed ontop of that.

Practical use of automatic vectorization?

Has anyone taken advantage of the automatic vectorization that gcc can do? In the real world (as opposed to example code)? Does it take restructuring of existing code to take advantage? Are there a significant number of cases in any production code that can be vectorized this way?
I have yet to see either GCC or Intel C++ automatically vectorize anything but very simple loops, even when given the code of algorithms that can (and were, after I manually rewrote them using SSE intrinsics) be vectorized.
Part of this is being conservative - especially when faced with possible pointer aliasing, it can be very difficult for a C/C++ compiler to 'prove' to itself that a vectorization would be safe, even if you as the programmer know that it is. Most compilers (sensibly) prefer to not optimize code rather than risking miscompiling it. This is one area where higher level languages have a real advantage over C, at least in theory (I say in theory since I'm not actually aware of any automatically vectorizing ML or Haskell compilers).
Another part of it is simply analytical limitations - most research in vectorization, I understand, is related to optimizing classical numerical problems (fluid dynamics, say) which was the bread and butter of most vector machines before a few years ago (when, between CUDA/OpenCL, Altivec/SSE, and the STI Cell, vector programming in various forms became widely available in commercial systems).
It's fairly unlikely that code written for a scalar processor in mind will be easy for a compiler to vectorize. Happily, many things you can do to make it easier for a compiler to understand how to vectorize it, like loop tiling and partial loop unrolling, also (tend to) help performance on modern processors even if the compiler doesn't figure out how to vectorize it.
It is hard to use in any business logic, but gives speed ups when you are processing volumes of data in the same way.
Good example is sound/video processing where you apply the same operation to every sample/pixel.
I have used VisualDSP for this, and you had to check the results after compiling - if it is really used where it should.
Vectorized instructions are not limited to Cell processors - most modern workstations-like CPU have them (PPC, x86 since pentium 3, Sparc, etc...). When used well for floating points operations, it can help quite a lot for very computing intensive tasks (filters, etc...). In my experience, automatic vectorization does not work so well.
You may have noticed that pretty much no-one actually knows how to make good use of GCC's Automatic Vectorization. If you search around the web to see people's comments, it always come to the idea that GCC allows you to enable automatic vectorization, but it extremely rarely makes actual use of it, and so if you want to use SIMD acceleration (eg: MMX, SSE, AVX, NEON, AltiVec), then you basically haveto figure out how to write it using compiler intrinsics or Assembly language code.
But the problem with intrinsics is that you effectively need to understand the Assembly language side of it and then also learn the Intrinsics method of describing what you want, which is likely to result in much less efficient code than if you wrote it in Assembly code (such as by a factor of 10x), because the compiler is still going to have trouble making good use of your intrinsic instructions!
For example, you might be using SIMD Intrinsics so that many operations can be performed in parallel at the same time, but your compiler will probably generate Assembly code that transfers the data between the SIMD registers and the normal CPU registers and back, effectively making your SIMD code run at a similar speed (or even slower) than normal code!
So basically:
If you want upto 100% speedups (2x
speed), then either buy the
official Intel/ARM compilers or convert some of your code to use SIMD C/C++ Intrinsics.
If you
want 1000% speedups (10x speed), then
write it in Assembly code using SIMD instructions by hand. Or if available on your hardware, use GPU acceleration instead such as OpenCL or Nvidia's CUDA SDK, since they can provide similar speedups in the GPU as SIMD does in the CPU.

When is assembly faster than C? [closed]

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One of the stated reasons for knowing assembler is that, on occasion, it can be employed to write code that will be more performant than writing that code in a higher-level language, C in particular. However, I've also heard it stated many times that although that's not entirely false, the cases where assembler can actually be used to generate more performant code are both extremely rare and require expert knowledge of and experience with assembly.
This question doesn't even get into the fact that assembler instructions will be machine-specific and non-portable, or any of the other aspects of assembler. There are plenty of good reasons for knowing assembly besides this one, of course, but this is meant to be a specific question soliciting examples and data, not an extended discourse on assembler versus higher-level languages.
Can anyone provide some specific examples of cases where assembly will be faster than well-written C code using a modern compiler, and can you support that claim with profiling evidence? I am pretty confident these cases exist, but I really want to know exactly how esoteric these cases are, since it seems to be a point of some contention.
Here is a real world example: Fixed point multiplies on old compilers.
These don't only come handy on devices without floating point, they shine when it comes to precision as they give you 32 bits of precision with a predictable error (float only has 23 bit and it's harder to predict precision loss). i.e. uniform absolute precision over the entire range, instead of close-to-uniform relative precision (float).
Modern compilers optimize this fixed-point example nicely, so for more modern examples that still need compiler-specific code, see
Getting the high part of 64 bit integer multiplication: A portable version using uint64_t for 32x32 => 64-bit multiplies fails to optimize on a 64-bit CPU, so you need intrinsics or __int128 for efficient code on 64-bit systems.
_umul128 on Windows 32 bits: MSVC doesn't always do a good job when multiplying 32-bit integers cast to 64, so intrinsics helped a lot.
C doesn't have a full-multiplication operator (2N-bit result from N-bit inputs). The usual way to express it in C is to cast the inputs to the wider type and hope the compiler recognizes that the upper bits of the inputs aren't interesting:
// on a 32-bit machine, int can hold 32-bit fixed-point integers.
int inline FixedPointMul (int a, int b)
{
long long a_long = a; // cast to 64 bit.
long long product = a_long * b; // perform multiplication
return (int) (product >> 16); // shift by the fixed point bias
}
The problem with this code is that we do something that can't be directly expressed in the C-language. We want to multiply two 32 bit numbers and get a 64 bit result of which we return the middle 32 bit. However, in C this multiply does not exist. All you can do is to promote the integers to 64 bit and do a 64*64 = 64 multiply.
x86 (and ARM, MIPS and others) can however do the multiply in a single instruction. Some compilers used to ignore this fact and generate code that calls a runtime library function to do the multiply. The shift by 16 is also often done by a library routine (also the x86 can do such shifts).
So we're left with one or two library calls just for a multiply. This has serious consequences. Not only is the shift slower, registers must be preserved across the function calls and it does not help inlining and code-unrolling either.
If you rewrite the same code in (inline) assembler you can gain a significant speed boost.
In addition to this: using ASM is not the best way to solve the problem. Most compilers allow you to use some assembler instructions in intrinsic form if you can't express them in C. The VS.NET2008 compiler for example exposes the 32*32=64 bit mul as __emul and the 64 bit shift as __ll_rshift.
Using intrinsics you can rewrite the function in a way that the C-compiler has a chance to understand what's going on. This allows the code to be inlined, register allocated, common subexpression elimination and constant propagation can be done as well. You'll get a huge performance improvement over the hand-written assembler code that way.
For reference: The end-result for the fixed-point mul for the VS.NET compiler is:
int inline FixedPointMul (int a, int b)
{
return (int) __ll_rshift(__emul(a,b),16);
}
The performance difference of fixed point divides is even bigger. I had improvements up to factor 10 for division heavy fixed point code by writing a couple of asm-lines.
Using Visual C++ 2013 gives the same assembly code for both ways.
gcc4.1 from 2007 also optimizes the pure C version nicely. (The Godbolt compiler explorer doesn't have any earlier versions of gcc installed, but presumably even older GCC versions could do this without intrinsics.)
See source + asm for x86 (32-bit) and ARM on the Godbolt compiler explorer. (Unfortunately it doesn't have any compilers old enough to produce bad code from the simple pure C version.)
Modern CPUs can do things C doesn't have operators for at all, like popcnt or bit-scan to find the first or last set bit. (POSIX has a ffs() function, but its semantics don't match x86 bsf / bsr. See https://en.wikipedia.org/wiki/Find_first_set).
Some compilers can sometimes recognize a loop that counts the number of set bits in an integer and compile it to a popcnt instruction (if enabled at compile time), but it's much more reliable to use __builtin_popcnt in GNU C, or on x86 if you're only targeting hardware with SSE4.2: _mm_popcnt_u32 from <immintrin.h>.
Or in C++, assign to a std::bitset<32> and use .count(). (This is a case where the language has found a way to portably expose an optimized implementation of popcount through the standard library, in a way that will always compile to something correct, and can take advantage of whatever the target supports.) See also https://en.wikipedia.org/wiki/Hamming_weight#Language_support.
Similarly, ntohl can compile to bswap (x86 32-bit byte swap for endian conversion) on some C implementations that have it.
Another major area for intrinsics or hand-written asm is manual vectorization with SIMD instructions. Compilers are not bad with simple loops like dst[i] += src[i] * 10.0;, but often do badly or don't auto-vectorize at all when things get more complicated. For example, you're unlikely to get anything like How to implement atoi using SIMD? generated automatically by the compiler from scalar code.
Many years ago I was teaching someone to program in C. The exercise was to rotate a graphic through 90 degrees. He came back with a solution that took several minutes to complete, mainly because he was using multiplies and divides etc.
I showed him how to recast the problem using bit shifts, and the time to process came down to about 30 seconds on the non-optimizing compiler he had.
I had just got an optimizing compiler and the same code rotated the graphic in < 5 seconds. I looked at the assembly code that the compiler was generating, and from what I saw decided there and then that my days of writing assembler were over.
Pretty much anytime the compiler sees floating point code, a hand written version will be quicker if you're using an old bad compiler. (2019 update: This is not true in general for modern compilers. Especially when compiling for anything other than x87; compilers have an easier time with SSE2 or AVX for scalar math, or any non-x86 with a flat FP register set, unlike x87's register stack.)
The primary reason is that the compiler can't perform any robust optimisations. See this article from MSDN for a discussion on the subject. Here's an example where the assembly version is twice the speed as the C version (compiled with VS2K5):
#include "stdafx.h"
#include <windows.h>
float KahanSum(const float *data, int n)
{
float sum = 0.0f, C = 0.0f, Y, T;
for (int i = 0 ; i < n ; ++i) {
Y = *data++ - C;
T = sum + Y;
C = T - sum - Y;
sum = T;
}
return sum;
}
float AsmSum(const float *data, int n)
{
float result = 0.0f;
_asm
{
mov esi,data
mov ecx,n
fldz
fldz
l1:
fsubr [esi]
add esi,4
fld st(0)
fadd st(0),st(2)
fld st(0)
fsub st(0),st(3)
fsub st(0),st(2)
fstp st(2)
fstp st(2)
loop l1
fstp result
fstp result
}
return result;
}
int main (int, char **)
{
int count = 1000000;
float *source = new float [count];
for (int i = 0 ; i < count ; ++i) {
source [i] = static_cast <float> (rand ()) / static_cast <float> (RAND_MAX);
}
LARGE_INTEGER start, mid, end;
float sum1 = 0.0f, sum2 = 0.0f;
QueryPerformanceCounter (&start);
sum1 = KahanSum (source, count);
QueryPerformanceCounter (&mid);
sum2 = AsmSum (source, count);
QueryPerformanceCounter (&end);
cout << " C code: " << sum1 << " in " << (mid.QuadPart - start.QuadPart) << endl;
cout << "asm code: " << sum2 << " in " << (end.QuadPart - mid.QuadPart) << endl;
return 0;
}
And some numbers from my PC running a default release build*:
C code: 500137 in 103884668
asm code: 500137 in 52129147
Out of interest, I swapped the loop with a dec/jnz and it made no difference to the timings - sometimes quicker, sometimes slower. I guess the memory limited aspect dwarfs other optimisations. (Editor's note: more likely the FP latency bottleneck is enough to hide the extra cost of loop. Doing two Kahan summations in parallel for the odd/even elements, and adding those at the end, could maybe speed this up by a factor of 2.)
Whoops, I was running a slightly different version of the code and it outputted the numbers the wrong way round (i.e. C was faster!). Fixed and updated the results.
Without giving any specific example or profiler evidence, you can write better assembler than the compiler when you know more than the compiler.
In the general case, a modern C compiler knows much more about how to optimize the code in question: it knows how the processor pipeline works, it can try to reorder instructions quicker than a human can, and so on - it's basically the same as a computer being as good as or better than the best human player for boardgames, etc. simply because it can make searches within the problem space faster than most humans. Although you theoretically can perform as well as the computer in a specific case, you certainly can't do it at the same speed, making it infeasible for more than a few cases (i.e. the compiler will most certainly outperform you if you try to write more than a few routines in assembler).
On the other hand, there are cases where the compiler does not have as much information - I'd say primarily when working with different forms of external hardware, of which the compiler has no knowledge. The primary example probably being device drivers, where assembler combined with a human's intimate knowledge of the hardware in question can yield better results than a C compiler could do.
Others have mentioned special purpose instructions, which is what I'm talking in the paragraph above - instructions of which the compiler might have limited or no knowledge at all, making it possible for a human to write faster code.
In my job, there are three reasons for me to know and use assembly. In order of importance:
Debugging - I often get library code that has bugs or incomplete documentation. I figure out what it's doing by stepping in at the assembly level. I have to do this about once a week. I also use it as a tool to debug problems in which my eyes don't spot the idiomatic error in C/C++/C#. Looking at the assembly gets past that.
Optimizing - the compiler does fairly well in optimizing, but I play in a different ballpark than most. I write image processing code that usually starts with code that looks like this:
for (int y=0; y < imageHeight; y++) {
for (int x=0; x < imageWidth; x++) {
// do something
}
}
the "do something part" typically happens on the order of several million times (ie, between 3 and 30). By scraping cycles in that "do something" phase, the performance gains are hugely magnified. I don't usually start there - I usually start by writing the code to work first, then do my best to refactor the C to be naturally better (better algorithm, less load in the loop etc). I usually need to read assembly to see what's going on and rarely need to write it. I do this maybe every two or three months.
doing something the language won't let me. These include - getting the processor architecture and specific processor features, accessing flags not in the CPU (man, I really wish C gave you access to the carry flag), etc. I do this maybe once a year or two years.
Only when using some special purpose instruction sets the compiler doesn't support.
To maximize the computing power of a modern CPU with multiple pipelines and predictive branching you need to structure the assembly program in a way that makes it a) almost impossible for a human to write b) even more impossible to maintain.
Also, better algorithms, data structures and memory management will give you at least an order of magnitude more performance than the micro-optimizations you can do in assembly.
Although C is "close" to the low-level manipulation of 8-bit, 16-bit, 32-bit, 64-bit data, there are a few mathematical operations not supported by C which can often be performed elegantly in certain assembly instruction sets:
Fixed-point multiplication: The product of two 16-bit numbers is a 32-bit number. But the rules in C says that the product of two 16-bit numbers is a 16-bit number, and the product of two 32-bit numbers is a 32-bit number -- the bottom half in both cases. If you want the top half of a 16x16 multiply or a 32x32 multiply, you have to play games with the compiler. The general method is to cast to a larger-than-necessary bit width, multiply, shift down, and cast back:
int16_t x, y;
// int16_t is a typedef for "short"
// set x and y to something
int16_t prod = (int16_t)(((int32_t)x*y)>>16);`
In this case the compiler may be smart enough to know that you're really just trying to get the top half of a 16x16 multiply and do the right thing with the machine's native 16x16multiply. Or it may be stupid and require a library call to do the 32x32 multiply that's way overkill because you only need 16 bits of the product -- but the C standard doesn't give you any way to express yourself.
Certain bitshifting operations (rotation/carries):
// 256-bit array shifted right in its entirety:
uint8_t x[32];
for (int i = 32; --i > 0; )
{
x[i] = (x[i] >> 1) | (x[i-1] << 7);
}
x[0] >>= 1;
This is not too inelegant in C, but again, unless the compiler is smart enough to realize what you are doing, it's going to do a lot of "unnecessary" work. Many assembly instruction sets allow you to rotate or shift left/right with the result in the carry register, so you could accomplish the above in 34 instructions: load a pointer to the beginning of the array, clear the carry, and perform 32 8-bit right-shifts, using auto-increment on the pointer.
For another example, there are linear feedback shift registers (LFSR) that are elegantly performed in assembly: Take a chunk of N bits (8, 16, 32, 64, 128, etc), shift the whole thing right by 1 (see above algorithm), then if the resulting carry is 1 then you XOR in a bit pattern that represents the polynomial.
Having said that, I wouldn't resort to these techniques unless I had serious performance constraints. As others have said, assembly is much harder to document/debug/test/maintain than C code: the performance gain comes with some serious costs.
edit: 3. Overflow detection is possible in assembly (can't really do it in C), this makes some algorithms much easier.
Short answer? Sometimes.
Technically every abstraction has a cost and a programming language is an abstraction for how the CPU works. C however is very close. Years ago I remember laughing out loud when I logged onto my UNIX account and got the following fortune message (when such things were popular):
The C Programming Language -- A
language which combines the
flexibility of assembly language with
the power of assembly language.
It's funny because it's true: C is like portable assembly language.
It's worth noting that assembly language just runs however you write it. There is however a compiler in between C and the assembly language it generates and that is extremely important because how fast your C code is has an awful lot to do with how good your compiler is.
When gcc came on the scene one of the things that made it so popular was that it was often so much better than the C compilers that shipped with many commercial UNIX flavours. Not only was it ANSI C (none of this K&R C rubbish), was more robust and typically produced better (faster) code. Not always but often.
I tell you all this because there is no blanket rule about the speed of C and assembler because there is no objective standard for C.
Likewise, assembler varies a lot depending on what processor you're running, your system spec, what instruction set you're using and so on. Historically there have been two CPU architecture families: CISC and RISC. The biggest player in CISC was and still is the Intel x86 architecture (and instruction set). RISC dominated the UNIX world (MIPS6000, Alpha, Sparc and so on). CISC won the battle for the hearts and minds.
Anyway, the popular wisdom when I was a younger developer was that hand-written x86 could often be much faster than C because the way the architecture worked, it had a complexity that benefitted from a human doing it. RISC on the other hand seemed designed for compilers so noone (I knew) wrote say Sparc assembler. I'm sure such people existed but no doubt they've both gone insane and been institutionalized by now.
Instruction sets are an important point even in the same family of processors. Certain Intel processors have extensions like SSE through SSE4. AMD had their own SIMD instructions. The benefit of a programming language like C was someone could write their library so it was optimized for whichever processor you were running on. That was hard work in assembler.
There are still optimizations you can make in assembler that no compiler could make and a well written assembler algoirthm will be as fast or faster than it's C equivalent. The bigger question is: is it worth it?
Ultimately though assembler was a product of its time and was more popular at a time when CPU cycles were expensive. Nowadays a CPU that costs $5-10 to manufacture (Intel Atom) can do pretty much anything anyone could want. The only real reason to write assembler these days is for low level things like some parts of an operating system (even so the vast majority of the Linux kernel is written in C), device drivers, possibly embedded devices (although C tends to dominate there too) and so on. Or just for kicks (which is somewhat masochistic).
I'm surprised no one said this. The strlen() function is much faster if written in assembly! In C, the best thing you can do is
int c;
for(c = 0; str[c] != '\0'; c++) {}
while in assembly you can speed it up considerably:
mov esi, offset string
mov edi, esi
xor ecx, ecx
lp:
mov ax, byte ptr [esi]
cmp al, cl
je end_1
cmp ah, cl
je end_2
mov bx, byte ptr [esi + 2]
cmp bl, cl
je end_3
cmp bh, cl
je end_4
add esi, 4
jmp lp
end_4:
inc esi
end_3:
inc esi
end_2:
inc esi
end_1:
inc esi
mov ecx, esi
sub ecx, edi
the length is in ecx. This compares 4 characters at time, so it's 4 times faster. And think using the high order word of eax and ebx, it will become 8 times faster that the previous C routine!
A use case which might not apply anymore but for your nerd pleasure: On the Amiga, the CPU and the graphics/audio chips would fight for accessing a certain area of RAM (the first 2MB of RAM to be specific). So when you had only 2MB RAM (or less), displaying complex graphics plus playing sound would kill the performance of the CPU.
In assembler, you could interleave your code in such a clever way that the CPU would only try to access the RAM when the graphics/audio chips were busy internally (i.e. when the bus was free). So by reordering your instructions, clever use of the CPU cache, the bus timing, you could achieve some effects which were simply not possible using any higher level language because you had to time every command, even insert NOPs here and there to keep the various chips out of each others radar.
Which is another reason why the NOP (No Operation - do nothing) instruction of the CPU can actually make your whole application run faster.
[EDIT] Of course, the technique depends on a specific hardware setup. Which was the main reason why many Amiga games couldn't cope with faster CPUs: The timing of the instructions was off.
Point one which is not the answer.
Even if you never program in it, I find it useful to know at least one assembler instruction set. This is part of the programmers never-ending quest to know more and therefore be better. Also useful when stepping into frameworks you don't have the source code to and having at least a rough idea what is going on. It also helps you to understand JavaByteCode and .Net IL as they are both similar to assembler.
To answer the question when you have a small amount of code or a large amount of time. Most useful for use in embedded chips, where low chip complexity and poor competition in compilers targeting these chips can tip the balance in favour of humans. Also for restricted devices you are often trading off code size/memory size/performance in a way that would be hard to instruct a compiler to do. e.g. I know this user action is not called often so I will have small code size and poor performance, but this other function that look similar is used every second so I will have a larger code size and faster performance. That is the sort of trade off a skilled assembly programmer can use.
I would also like to add there is a lot of middle ground where you can code in C compile and examine the Assembly produced, then either change you C code or tweak and maintain as assembly.
My friend works on micro controllers, currently chips for controlling small electric motors. He works in a combination of low level c and Assembly. He once told me of a good day at work where he reduced the main loop from 48 instructions to 43. He is also faced with choices like the code has grown to fill the 256k chip and the business is wanting a new feature, do you
Remove an existing feature
Reduce the size of some or all of the existing features maybe at the cost of performance.
Advocate moving to a larger chip with a higher cost, higher power consumption and larger form factor.
I would like to add as a commercial developer with quite a portfolio or languages, platforms, types of applications I have never once felt the need to dive into writing assembly. I have how ever always appreciated the knowledge I gained about it. And sometimes debugged into it.
I know I have far more answered the question "why should I learn assembler" but I feel it is a more important question then when is it faster.
so lets try once more
You should be thinking about assembly
working on low level operating system function
Working on a compiler.
Working on an extremely limited chip, embedded system etc
Remember to compare your assembly to compiler generated to see which is faster/smaller/better.
David.
Matrix operations using SIMD instructions is probably faster than compiler generated code.
A few examples from my experience:
Access to instructions that are not accessible from C. For instance, many architectures (like x86-64, IA-64, DEC Alpha, and 64-bit MIPS or PowerPC) support a 64 bit by 64 bit multiplication producing a 128 bit result. GCC recently added an extension providing access to such instructions, but before that assembly was required. And access to this instruction can make a huge difference on 64-bit CPUs when implementing something like RSA - sometimes as much as a factor of 4 improvement in performance.
Access to CPU-specific flags. The one that has bitten me a lot is the carry flag; when doing a multiple-precision addition, if you don't have access to the CPU carry bit one must instead compare the result to see if it overflowed, which takes 3-5 more instructions per limb; and worse, which are quite serial in terms of data accesses, which kills performance on modern superscalar processors. When processing thousands of such integers in a row, being able to use addc is a huge win (there are superscalar issues with contention on the carry bit as well, but modern CPUs deal pretty well with it).
SIMD. Even autovectorizing compilers can only do relatively simple cases, so if you want good SIMD performance it's unfortunately often necessary to write the code directly. Of course you can use intrinsics instead of assembly but once you're at the intrinsics level you're basically writing assembly anyway, just using the compiler as a register allocator and (nominally) instruction scheduler. (I tend to use intrinsics for SIMD simply because the compiler can generate the function prologues and whatnot for me so I can use the same code on Linux, OS X, and Windows without having to deal with ABI issues like function calling conventions, but other than that the SSE intrinsics really aren't very nice - the Altivec ones seem better though I don't have much experience with them). As examples of things a (current day) vectorizing compiler can't figure out, read about bitslicing AES or SIMD error correction - one could imagine a compiler that could analyze algorithms and generate such code, but it feels to me like such a smart compiler is at least 30 years away from existing (at best).
On the other hand, multicore machines and distributed systems have shifted many of the biggest performance wins in the other direction - get an extra 20% speedup writing your inner loops in assembly, or 300% by running them across multiple cores, or 10000% by running them across a cluster of machines. And of course high level optimizations (things like futures, memoization, etc) are often much easier to do in a higher level language like ML or Scala than C or asm, and often can provide a much bigger performance win. So, as always, there are tradeoffs to be made.
I can't give the specific examples because it was too many years ago, but there were plenty of cases where hand-written assembler could out-perform any compiler. Reasons why:
You could deviate from calling conventions, passing arguments in registers.
You could carefully consider how to use registers, and avoid storing variables in memory.
For things like jump tables, you could avoid having to bounds-check the index.
Basically, compilers do a pretty good job of optimizing, and that is nearly always "good enough", but in some situations (like graphics rendering) where you're paying dearly for every single cycle, you can take shortcuts because you know the code, where a compiler could not because it has to be on the safe side.
In fact, I have heard of some graphics rendering code where a routine, like a line-draw or polygon-fill routine, actually generated a small block of machine code on the stack and executed it there, so as to avoid continual decision-making about line style, width, pattern, etc.
That said, what I want a compiler to do is generate good assembly code for me but not be too clever, and they mostly do that. In fact, one of the things I hate about Fortran is its scrambling the code in an attempt to "optimize" it, usually to no significant purpose.
Usually, when apps have performance problems, it is due to wasteful design. These days, I would never recommend assembler for performance unless the overall app had already been tuned within an inch of its life, still was not fast enough, and was spending all its time in tight inner loops.
Added: I've seen plenty of apps written in assembly language, and the main speed advantage over a language like C, Pascal, Fortran, etc. was because the programmer was far more careful when coding in assembler. He or she is going to write roughly 100 lines of code a day, regardless of language, and in a compiler language that's going to equal 3 or 400 instructions.
More often than you think, C needs to do things that seem to be unneccessary from an Assembly coder's point of view just because the C standards say so.
Integer promotion, for example. If you want to shift a char variable in C, one would usually expect that the code would do in fact just that, a single bit shift.
The standards, however, enforce the compiler to do a sign extend to int before the shift and truncate the result to char afterwards which might complicate code depending on the target processor's architecture.
You don't actually know whether your well-written C code is really fast if you haven't looked at the disassembly of what compiler produces. Many times you look at it and see that "well-written" was subjective.
So it's not necessary to write in assembler to get fastest code ever, but it's certainly worth to know assembler for the very same reason.
Tight loops, like when playing with images, since an image may cosist of millions of pixels. Sitting down and figuring out how to make best use of the limited number of processor registers can make a difference. Here's a real life sample:
http://danbystrom.se/2008/12/22/optimizing-away-ii/
Then often processors have some esoteric instructions which are too specialized for a compiler to bother with, but on occasion an assembler programmer can make good use of them. Take the XLAT instruction for example. Really great if you need to do table look-ups in a loop and the table is limited to 256 bytes!
Updated: Oh, just come to think of what's most crucial when we speak of loops in general: the compiler has often no clue on how many iterations that will be the common case! Only the programmer know that a loop will be iterated MANY times and that it therefore will be beneficial to prepare for the loop with some extra work, or if it will be iterated so few times that the set-up actually will take longer than the iterations expected.
I have read all the answers (more than 30) and didn't find a simple reason: assembler is faster than C if you have read and practiced the Intel® 64 and IA-32 Architectures Optimization Reference Manual, so the reason why assembly may be slower is that people who write such slower assembly didn't read the Optimization Manual.
In the good old days of Intel 80286, each instruction was executed at a fixed count of CPU cycles. Still, since Pentium Pro, released in 1995, Intel processors became superscalar, utilizing Complex Pipelining: Out-of-Order Execution & Register Renaming. Before that, on Pentium, produced in 1993, there were U and V pipelines. Therefore, Pentium introduced dual pipelines that could execute two simple instructions at one clock cycle if they didn't depend on one another. However, this was nothing compared with the Out-of-Order Execution & Register Renaming that appeared in Pentium Pro. This approach introduced in Pentium Pro is practically the same nowadays on most recent Intel processors.
Let me explain the Out-of-Order Execution in a few words. The fastest code is where instructions do not depend on previous results, e.g., you should always clear whole registers (by movzx) to remove dependency from previous values of the registers you are working with, so they may be renamed internally by the CPU to allow instruction execute in parallel or in a different order. Or, on some processors, false dependency may exist that may also slow things down, like false dependency on Pentium 4 for inc/dec, so you may wish to use add eax, 1 instead or inc eax to remove dependency on the previous state of the flags.
You can read more on Out-of-Order Execution & Register Renaming if time permits. There is plenty of information available on the Internet.
There are also many other essential issues like branch prediction, number of load and store units, number of gates that execute micro-ops, memory cache coherence protocols, etc., but the crucial thing to consider is the Out-of-Order Execution.
Most people are simply not aware of the Out-of-Order Execution. Therefore, they write their assembly programs like for 80286, expecting their instructions will take a fixed time to execute regardless of the context. At the same time, C compilers are aware of the Out-of-Order Execution and generate the code correctly. That's why the code of such uninformed people is slower, but if you become knowledgeable, your code will be faster.
There are also lots of optimization tips and tricks besides the Out-of-Order Execution. Just read the Optimization Manual above mentioned :-)
However, assembly language has its own drawbacks when it comes to optimization. According to Peter Cordes (see the comment below), some of the optimizations compilers do would be unmaintainable for large code-bases in hand-written assembly. For example, suppose you write in assembly. In that case, you need to completely change an inline function (an assembly macro) when it inlines into a function that calls it with some arguments being constants. At the same time, a C compiler makes its job a lot simpler—and inlining the same code in different ways into different call sites. There is a limit to what you can do with assembly macros. So to get the same benefit, you'd have to manually optimize the same logic in each place to match the constants and available registers you have.
I think the general case when assembler is faster is when a smart assembly programmer looks at the compiler's output and says "this is a critical path for performance and I can write this to be more efficient" and then that person tweaks that assembler or rewrites it from scratch.
It all depends on your workload.
For day-to-day operations, C and C++ are just fine, but there are certain workloads (any transforms involving video (compression, decompression, image effects, etc)) that pretty much require assembly to be performant.
They also usually involve using CPU specific chipset extensions (MME/MMX/SSE/whatever) that are tuned for those kinds of operation.
It might be worth looking at Optimizing Immutable and Purity by Walter Bright it's not a profiled test but shows you one good example of a difference between handwritten and compiler generated ASM. Walter Bright writes optimising compilers so it might be worth looking at his other blog posts.
LInux assembly howto, asks this question and gives the pros and cons of using assembly.
I have an operation of transposition of bits that needs to be done, on 192 or 256 bits every interrupt, that happens every 50 microseconds.
It happens by a fixed map(hardware constraints). Using C, it took around 10 microseconds to make. When I translated this to Assembler, taking into account the specific features of this map, specific register caching, and using bit oriented operations; it took less than 3.5 microsecond to perform.
The simple answer... One who knows assembly well (aka has the reference beside him, and is taking advantage of every little processor cache and pipeline feature etc) is guaranteed to be capable of producing much faster code than any compiler.
However the difference these days just doesn't matter in the typical application.
http://cr.yp.to/qhasm.html has many examples.
One of the posibilities to the CP/M-86 version of PolyPascal (sibling to Turbo Pascal) was to replace the "use-bios-to-output-characters-to-the-screen" facility with a machine language routine which in essense was given the x, and y, and the string to put there.
This allowed to update the screen much, much faster than before!
There was room in the binary to embed machine code (a few hundred bytes) and there was other stuff there too, so it was essential to squeeze as much as possible.
It turnes out that since the screen was 80x25 both coordinates could fit in a byte each, so both could fit in a two-byte word. This allowed to do the calculations needed in fewer bytes since a single add could manipulate both values simultaneously.
To my knowledge there is no C compilers which can merge multiple values in a register, do SIMD instructions on them and split them out again later (and I don't think the machine instructions will be shorter anyway).
One of the more famous snippets of assembly is from Michael Abrash's texture mapping loop (expained in detail here):
add edx,[DeltaVFrac] ; add in dVFrac
sbb ebp,ebp ; store carry
mov [edi],al ; write pixel n
mov al,[esi] ; fetch pixel n+1
add ecx,ebx ; add in dUFrac
adc esi,[4*ebp + UVStepVCarry]; add in steps
Nowadays most compilers express advanced CPU specific instructions as intrinsics, i.e., functions that get compiled down to the actual instruction. MS Visual C++ supports intrinsics for MMX, SSE, SSE2, SSE3, and SSE4, so you have to worry less about dropping down to assembly to take advantage of platform specific instructions. Visual C++ can also take advantage of the actual architecture you are targetting with the appropriate /ARCH setting.
Given the right programmer, Assembler programs can always be made faster than their C counterparts (at least marginally). It would be difficult to create a C program where you couldn't take out at least one instruction of the Assembler.
gcc has become a widely used compiler. Its optimizations in general are not that good. Far better than the average programmer writing assembler, but for real performance, not that good. There are compilers that are simply incredible in the code they produce. So as a general answer there are going to be many places where you can go into the output of the compiler and tweak the assembler for performance, and/or simply re-write the routine from scratch.
Longpoke, there is just one limitation: time. When you don't have the resources to optimize every single change to code and spend your time allocating registers, optimize few spills away and what not, the compiler will win every single time. You do your modification to the code, recompile and measure. Repeat if necessary.
Also, you can do a lot in the high-level side. Also, inspecting the resulting assembly may give the IMPRESSION that the code is crap, but in practice it will run faster than what you think would be quicker. Example:
int y = data[i];
// do some stuff here..
call_function(y, ...);
The compiler will read the data, push it to stack (spill) and later read from stack and pass as argument. Sounds shite? It might actually be very effective latency compensation and result in faster runtime.
// optimized version
call_function(data[i], ...); // not so optimized after all..
The idea with the optimized version was, that we have reduced register pressure and avoid spilling. But in truth, the "shitty" version was faster!
Looking at the assembly code, just looking at the instructions and concluding: more instructions, slower, would be a misjudgment.
The thing here to pay attention is: many assembly experts think they know a lot, but know very little. The rules change from architecture to next, too. There is no silver-bullet x86 code, for example, which is always the fastest. These days is better to go by rules-of-thumb:
memory is slow
cache is fast
try to use cached better
how often you going to miss? do you have latency compensation strategy?
you can execute 10-100 ALU/FPU/SSE instructions for one single cache miss
application architecture is important..
.. but it does't help when the problem isn't in the architecture
Also, trusting too much into compiler magically transforming poorly-thought-out C/C++ code into "theoretically optimum" code is wishful thinking. You have to know the compiler and tool chain you use if you care about "performance" at this low-level.
Compilers in C/C++ are generally not very good at re-ordering sub-expressions because the functions have side effects, for starters. Functional languages don't suffer from this caveat but don't fit the current ecosystem that well. There are compiler options to allow relaxed precision rules which allow order of operations to be changed by the compiler/linker/code generator.
This topic is a bit of a dead-end; for most it's not relevant, and the rest, they know what they are doing already anyway.
It all boils down to this: "to understand what you are doing", it's a bit different from knowing what you are doing.

Best resource for learning about prefetching a buffer in C on Intel/AMD 64 bit

I am interested in mastering prefetch-related functions such as
_mm_prefetch(...)
so when I perform operations that loop over arrays, the memory bandwidth is fully utilized. What are the best resources for learning about this?
I am doing this work in C using GCC 4 series on an intel linux platform.
There is also an excellent paper by Ulrich Drepper, What Every Programmer Should Know About Memory. He covers prefetching, plus many other topics dealing with memory performance optimization. It was released in Nov 2007, and is extremely relevant for today's processors. If you're performing operations on very large arrays and believe your bottleneck is getting to memory, you should read it.
This site contains details on gcc prefetch support including prefetch options and functions and includes details on several architectures including Intel. The gcc manual contains details on the __builtin_prefetch built-in function in section 5.46.

Resources