Array access taking O(1) time improvable? - arrays

I've been reading a book assigned for class and it mentions that array access takes O(1) time. I realize that this is very fast (maybe as fast as possible), but if you have a loop that has to refer to this a few times, is there any advantage to assigning a temporary variable to have the value looked up in the array? Or would using the temporary variable still be O(1) to use as well?
I'm assuming this question is language independent. Also I realize that even if the answer is yes that the advantage is tiny, I'm just curious.

Note that O(1) doesn't mean "instantaneous." It just means "at most some constant." This means that both 1 and 101000 are both O(1), even though the second of these is bigger than the number of atoms in the universe.
If you are repeatedly accessing the same array element multiple times, it will take O(1) time for each access. Storing that array element in a local variable also gives O(1) lookup time, but the constants might not be the same. It might be better to pick one option over the other, but you'd really have to profile the program to be sure.
In practice, this sort of microoptimization is unlikely to have a measurable effect on program time unless the code you're running accounts for a huge fraction of the program's running time. I would be shocked to find an example where this change would make a noticeable impact in any real code.
Modern architectures probably might make this change a bit faster, but not dramatically so. If you keep accessing the same array element multiple times, the processor will probably keep that part of the array in cache, making lookups really fast. Also, a good optimizing compiler might already turn the non-local-copy code into the local copy code for you.
Hope this helps!

If I understand, you're asking if
for (int i=0; i<len; i++) {
int temp = ar[i];
foo += temp;
bar -= temp;
}
is any better than:
for (int i=0; i<len; i++) {
foo += ar[i];
bar -= ar[i];
}
I wouldn't worry about it:
If the code in the body of your loop is going to access the same array entry, say ar[i] multiple times, any halfway decent compiler (at a nonzero optimization level) will keep that value in a register for quick re-use. In other words, the compiler will probably generate the exact same assembly given the either of the above code samples.
Note that either of these is still O(1) (accessing one thing one time). Don't confuse big-O notation of algorithms with instruction-level optimizations.
Edit
I just compiled a sample program with two functions, containing the above two samples, and at -O2 gcc 4.7.2 generated the exact same machine code; byte-for-byte.

The only way you can perform better than O(1) time is to not have to do anything in the first place. That would be O(0) time.
Or with fewer words: No.

There are already things built into modern CPU hardware (cache lines for example) that do something like what you describe but better in a way that a temporary variable cannot do. Even better than that, no source modification is needed.

No. Array access is not some magical zero-footprint thing made out of sparkles and love. The algorithm to determine address from array indices in C can be seen here. The more dimensions you have on your array, the slower it gets to access, as additional operations (primarily muls and conditionals, in terms of cost) are required to arrive at the final, 1D memory address. Even if your array has just one dimension, you still have to calculate the offset on the base address, which is a single add operation, hence O(1).

Related

Is there "compiler-friendly" code / convention [duplicate]

Many years ago, C compilers were not particularly smart. As a workaround K&R invented the register keyword, to hint to the compiler, that maybe it would be a good idea to keep this variable in an internal register. They also made the tertiary operator to help generate better code.
As time passed, the compilers matured. They became very smart in that their flow analysis allowing them to make better decisions about what values to hold in registers than you could possibly do. The register keyword became unimportant.
FORTRAN can be faster than C for some sorts of operations, due to alias issues. In theory with careful coding, one can get around this restriction to enable the optimizer to generate faster code.
What coding practices are available that may enable the compiler/optimizer to generate faster code?
Identifying the platform and compiler you use, would be appreciated.
Why does the technique seem to work?
Sample code is encouraged.
Here is a related question
[Edit] This question is not about the overall process to profile, and optimize. Assume that the program has been written correctly, compiled with full optimization, tested and put into production. There may be constructs in your code that prohibit the optimizer from doing the best job that it can. What can you do to refactor that will remove these prohibitions, and allow the optimizer to generate even faster code?
[Edit] Offset related link
Here's a coding practice to help the compiler create fast code—any language, any platform, any compiler, any problem:
Do not use any clever tricks which force, or even encourage, the compiler to lay variables out in memory (including cache and registers) as you think best. First write a program which is correct and maintainable.
Next, profile your code.
Then, and only then, you might want to start investigating the effects of telling the compiler how to use memory. Make 1 change at a time and measure its impact.
Expect to be disappointed and to have to work very hard indeed for small performance improvements. Modern compilers for mature languages such as Fortran and C are very, very good. If you read an account of a 'trick' to get better performance out of code, bear in mind that the compiler writers have also read about it and, if it is worth doing, probably implemented it. They probably wrote what you read in the first place.
Write to local variables and not output arguments! This can be a huge help for getting around aliasing slowdowns. For example, if your code looks like
void DoSomething(const Foo& foo1, const Foo* foo2, int numFoo, Foo& barOut)
{
for (int i=0; i<numFoo, i++)
{
barOut.munge(foo1, foo2[i]);
}
}
the compiler doesn't know that foo1 != barOut, and thus has to reload foo1 each time through the loop. It also can't read foo2[i] until the write to barOut is finished. You could start messing around with restricted pointers, but it's just as effective (and much clearer) to do this:
void DoSomethingFaster(const Foo& foo1, const Foo* foo2, int numFoo, Foo& barOut)
{
Foo barTemp = barOut;
for (int i=0; i<numFoo, i++)
{
barTemp.munge(foo1, foo2[i]);
}
barOut = barTemp;
}
It sounds silly, but the compiler can be much smarter dealing with the local variable, since it can't possibly overlap in memory with any of the arguments. This can help you avoid the dreaded load-hit-store (mentioned by Francis Boivin in this thread).
The order you traverse memory can have profound impacts on performance and compilers aren't really good at figuring that out and fixing it. You have to be conscientious of cache locality concerns when you write code if you care about performance. For example two-dimensional arrays in C are allocated in row-major format. Traversing arrays in column major format will tend to make you have more cache misses and make your program more memory bound than processor bound:
#define N 1000000;
int matrix[N][N] = { ... };
//awesomely fast
long sum = 0;
for(int i = 0; i < N; i++){
for(int j = 0; j < N; j++){
sum += matrix[i][j];
}
}
//painfully slow
long sum = 0;
for(int i = 0; i < N; i++){
for(int j = 0; j < N; j++){
sum += matrix[j][i];
}
}
Generic Optimizations
Here as some of my favorite optimizations. I have actually increased execution times and reduced program sizes by using these.
Declare small functions as inline or macros
Each call to a function (or method) incurs overhead, such as pushing variables onto the stack. Some functions may incur an overhead on return as well. An inefficient function or method has fewer statements in its content than the combined overhead. These are good candidates for inlining, whether it be as #define macros or inline functions. (Yes, I know inline is only a suggestion, but in this case I consider it as a reminder to the compiler.)
Remove dead and redundant code
If the code isn't used or does not contribute to the program's result, get rid of it.
Simplify design of algorithms
I once removed a lot of assembly code and execution time from a program by writing down the algebraic equation it was calculating and then simplified the algebraic expression. The implementation of the simplified algebraic expression took up less room and time than the original function.
Loop Unrolling
Each loop has an overhead of incrementing and termination checking. To get an estimate of the performance factor, count the number of instructions in the overhead (minimum 3: increment, check, goto start of loop) and divide by the number of statements inside the loop. The lower the number the better.
Edit: provide an example of loop unrolling
Before:
unsigned int sum = 0;
for (size_t i; i < BYTES_TO_CHECKSUM; ++i)
{
sum += *buffer++;
}
After unrolling:
unsigned int sum = 0;
size_t i = 0;
**const size_t STATEMENTS_PER_LOOP = 8;**
for (i = 0; i < BYTES_TO_CHECKSUM; **i = i / STATEMENTS_PER_LOOP**)
{
sum += *buffer++; // 1
sum += *buffer++; // 2
sum += *buffer++; // 3
sum += *buffer++; // 4
sum += *buffer++; // 5
sum += *buffer++; // 6
sum += *buffer++; // 7
sum += *buffer++; // 8
}
// Handle the remainder:
for (; i < BYTES_TO_CHECKSUM; ++i)
{
sum += *buffer++;
}
In this advantage, a secondary benefit is gained: more statements are executed before the processor has to reload the instruction cache.
I've had amazing results when I unrolled a loop to 32 statements. This was one of the bottlenecks since the program had to calculate a checksum on a 2GB file. This optimization combined with block reading improved performance from 1 hour to 5 minutes. Loop unrolling provided excellent performance in assembly language too, my memcpy was a lot faster than the compiler's memcpy. -- T.M.
Reduction of if statements
Processors hate branches, or jumps, since it forces the processor to reload its queue of instructions.
Boolean Arithmetic (Edited: applied code format to code fragment, added example)
Convert if statements into boolean assignments. Some processors can conditionally execute instructions without branching:
bool status = true;
status = status && /* first test */;
status = status && /* second test */;
The short circuiting of the Logical AND operator (&&) prevents execution of the tests if the status is false.
Example:
struct Reader_Interface
{
virtual bool write(unsigned int value) = 0;
};
struct Rectangle
{
unsigned int origin_x;
unsigned int origin_y;
unsigned int height;
unsigned int width;
bool write(Reader_Interface * p_reader)
{
bool status = false;
if (p_reader)
{
status = p_reader->write(origin_x);
status = status && p_reader->write(origin_y);
status = status && p_reader->write(height);
status = status && p_reader->write(width);
}
return status;
};
Factor Variable Allocation outside of loops
If a variable is created on the fly inside a loop, move the creation / allocation to before the loop. In most instances, the variable doesn't need to be allocated during each iteration.
Factor constant expressions outside of loops
If a calculation or variable value does not depend on the loop index, move it outside (before) the loop.
I/O in blocks
Read and write data in large chunks (blocks). The bigger the better. For example, reading one octect at a time is less efficient than reading 1024 octets with one read.
Example:
static const char Menu_Text[] = "\n"
"1) Print\n"
"2) Insert new customer\n"
"3) Destroy\n"
"4) Launch Nasal Demons\n"
"Enter selection: ";
static const size_t Menu_Text_Length = sizeof(Menu_Text) - sizeof('\0');
//...
std::cout.write(Menu_Text, Menu_Text_Length);
The efficiency of this technique can be visually demonstrated. :-)
Don't use printf family for constant data
Constant data can be output using a block write. Formatted write will waste time scanning the text for formatting characters or processing formatting commands. See above code example.
Format to memory, then write
Format to a char array using multiple sprintf, then use fwrite. This also allows the data layout to be broken up into "constant sections" and variable sections. Think of mail-merge.
Declare constant text (string literals) as static const
When variables are declared without the static, some compilers may allocate space on the stack and copy the data from ROM. These are two unnecessary operations. This can be fixed by using the static prefix.
Lastly, Code like the compiler would
Sometimes, the compiler can optimize several small statements better than one complicated version. Also, writing code to help the compiler optimize helps too. If I want the compiler to use special block transfer instructions, I will write code that looks like it should use the special instructions.
The optimizer isn't really in control of the performance of your program, you are. Use appropriate algorithms and structures and profile, profile, profile.
That said, you shouldn't inner-loop on a small function from one file in another file, as that stops it from being inlined.
Avoid taking the address of a variable if possible. Asking for a pointer isn't "free" as it means the variable needs to be kept in memory. Even an array can be kept in registers if you avoid pointers — this is essential for vectorizing.
Which leads to the next point, read the ^#$# manual! GCC can vectorize plain C code if you sprinkle a __restrict__ here and an __attribute__( __aligned__ ) there. If you want something very specific from the optimizer, you might have to be specific.
On most modern processors, the biggest bottleneck is memory.
Aliasing: Load-Hit-Store can be devastating in a tight loop. If you're reading one memory location and writing to another and know that they are disjoint, carefully putting an alias keyword on the function parameters can really help the compiler generate faster code. However if the memory regions do overlap and you used 'alias', you're in for a good debugging session of undefined behaviors!
Cache-miss: Not really sure how you can help the compiler since it's mostly algorithmic, but there are intrinsics to prefetch memory.
Also don't try to convert floating point values to int and vice versa too much since they use different registers and converting from one type to another means calling the actual conversion instruction, writing the value to memory and reading it back in the proper register set.
The vast majority of code that people write will be I/O bound (I believe all the code I have written for money in the last 30 years has been so bound), so the activities of the optimiser for most folks will be academic.
However, I would remind people that for the code to be optimised you have to tell the compiler to to optimise it - lots of people (including me when I forget) post C++ benchmarks here that are meaningless without the optimiser being enabled.
use const correctness as much as possible in your code. It allows the compiler to optimize much better.
In this document are loads of other optimization tips: CPP optimizations (a bit old document though)
highlights:
use constructor initialization lists
use prefix operators
use explicit constructors
inline functions
avoid temporary objects
be aware of the cost of virtual functions
return objects via reference parameters
consider per class allocation
consider stl container allocators
the 'empty member' optimization
etc
Attempt to program using static single assignment as much as possible. SSA is exactly the same as what you end up with in most functional programming languages, and that's what most compilers convert your code to to do their optimizations because it's easier to work with. By doing this places where the compiler might get confused are brought to light. It also makes all but the worst register allocators work as good as the best register allocators, and allows you to debug more easily because you almost never have to wonder where a variable got it's value from as there was only one place it was assigned.
Avoid global variables.
When working with data by reference or pointer pull that into local variables, do your work, and then copy it back. (unless you have a good reason not to)
Make use of the almost free comparison against 0 that most processors give you when doing math or logic operations. You almost always get a flag for ==0 and <0, from which you can easily get 3 conditions:
x= f();
if(!x){
a();
} else if (x<0){
b();
} else {
c();
}
is almost always cheaper than testing for other constants.
Another trick is to use subtraction to eliminate one compare in range testing.
#define FOO_MIN 8
#define FOO_MAX 199
int good_foo(int foo) {
unsigned int bar = foo-FOO_MIN;
int rc = ((FOO_MAX-FOO_MIN) < bar) ? 1 : 0;
return rc;
}
This can very often avoid a jump in languages that do short circuiting on boolean expressions and avoids the compiler having to try to figure out how to handle keeping
up with the result of the first comparison while doing the second and then combining them.
This may look like it has the potential to use up an extra register, but it almost never does. Often you don't need foo anymore anyway, and if you do rc isn't used yet so it can go there.
When using the string functions in c (strcpy, memcpy, ...) remember what they return -- the destination! You can often get better code by 'forgetting' your copy of the pointer to destination and just grab it back from the return of these functions.
Never overlook the oppurtunity to return exactly the same thing the last function you called returned. Compilers are not so great at picking up that:
foo_t * make_foo(int a, int b, int c) {
foo_t * x = malloc(sizeof(foo));
if (!x) {
// return NULL;
return x; // x is NULL, already in the register used for returns, so duh
}
x->a= a;
x->b = b;
x->c = c;
return x;
}
Of course, you could reverse the logic on that if and only have one return point.
(tricks I recalled later)
Declaring functions as static when you can is always a good idea. If the compiler can prove to itself that it has accounted for every caller of a particular function then it can break the calling conventions for that function in the name of optimization. Compilers can often avoid moving parameters into registers or stack positions that called functions usually expect their parameters to be in (it has to deviate in both the called function and the location of all callers to do this). The compiler can also often take advantage of knowing what memory and registers the called function will need and avoid generating code to preserve variable values that are in registers or memory locations that the called function doesn't disturb. This works particularly well when there are few calls to a function. This gets much of the benifit of inlining code, but without actually inlining.
I wrote an optimizing C compiler and here are some very useful things to consider:
Make most functions static. This allows interprocedural constant propagation and alias analysis to do its job, otherwise the compiler needs to presume that the function can be called from outside the translation unit with completely unknown values for the paramters. If you look at the well-known open-source libraries they all mark functions static except the ones that really need to be extern.
If global variables are used, mark them static and constant if possible. If they are initialized once (read-only), it's better to use an initializer list like static const int VAL[] = {1,2,3,4}, otherwise the compiler might not discover that the variables are actually initialized constants and will fail to replace loads from the variable with the constants.
NEVER use a goto to the inside of a loop, the loop will not be recognized anymore by most compilers and none of the most important optimizations will be applied.
Use pointer parameters only if necessary, and mark them restrict if possible. This helps alias analysis a lot because the programmer guarantees there is no alias (the interprocedural alias analysis is usually very primitive). Very small struct objects should be passed by value, not by reference.
Use arrays instead of pointers whenever possible, especially inside loops (a[i]). An array usually offers more information for alias analysis and after some optimizations the same code will be generated anyway (search for loop strength reduction if curious). This also increases the chance for loop-invariant code motion to be applied.
Try to hoist outside the loop calls to large functions or external functions that don't have side-effects (don't depend on the current loop iteration). Small functions are in many cases inlined or converted to intrinsics that are easy to hoist, but large functions might seem for the compiler to have side-effects when they actually don't. Side-effects for external functions are completely unknown, with the exception of some functions from the standard library which are sometimes modeled by some compilers, making loop-invariant code motion possible.
When writing tests with multiple conditions place the most likely one first. if(a || b || c) should be if(b || a || c) if b is more likely to be true than the others. Compilers usually don't know anything about the possible values of the conditions and which branches are taken more (they could be known by using profile information, but few programmers use it).
Using a switch is faster than doing a test like if(a || b || ... || z). Check first if your compiler does this automatically, some do and it's more readable to have the if though.
In the case of embedded systems and code written in C/C++, I try and avoid dynamic memory allocation as much as possible. The main reason I do this is not necessarily performance but this rule of thumb does have performance implications.
Algorithms used to manage the heap are notoriously slow in some platforms (e.g., vxworks). Even worse, the time that it takes to return from a call to malloc is highly dependent on the current state of the heap. Therefore, any function that calls malloc is going to take a performance hit that cannot be easily accounted for. That performance hit may be minimal if the heap is still clean but after that device runs for a while the heap can become fragmented. The calls are going to take longer and you cannot easily calculate how performance will degrade over time. You cannot really produce a worse case estimate. The optimizer cannot provide you with any help in this case either. To make matters even worse, if the heap becomes too heavily fragmented, the calls will start failing altogether. The solution is to use memory pools (e.g., glib slices ) instead of the heap. The allocation calls are going to be much faster and deterministic if you do it right.
A dumb little tip, but one that will save you some microscopic amounts of speed and code.
Always pass function arguments in the same order.
If you have f_1(x, y, z) which calls f_2, declare f_2 as f_2(x, y, z). Do not declare it as f_2(x, z, y).
The reason for this is that C/C++ platform ABI (AKA calling convention) promises to pass arguments in particular registers and stack locations. When the arguments are already in the correct registers then it does not have to move them around.
While reading disassembled code I've seen some ridiculous register shuffling because people didn't follow this rule.
Two coding technics I didn't saw in the above list:
Bypass linker by writing code as an unique source
While separate compilation is really nice for compiling time, it is very bad when you speak of optimization. Basically the compiler can't optimize beyond compilation unit, that is linker reserved domain.
But if you design well your program you can can also compile it through an unique common source. That is instead of compiling unit1.c and unit2.c then link both objects, compile all.c that merely #include unit1.c and unit2.c. Thus you will benefit from all the compiler optimizations.
It's very like writing headers only programs in C++ (and even easier to do in C).
This technique is easy enough if you write your program to enable it from the beginning, but you must also be aware it change part of C semantic and you can meet some problems like static variables or macro collision. For most programs it's easy enough to overcome the small problems that occurs. Also be aware that compiling as an unique source is way slower and may takes huge amount of memory (usually not a problem with modern systems).
Using this simple technique I happened to make some programs I wrote ten times faster!
Like the register keyword, this trick could also become obsolete soon. Optimizing through linker begin to be supported by compilers gcc: Link time optimization.
Separate atomic tasks in loops
This one is more tricky. It's about interaction between algorithm design and the way optimizer manage cache and register allocation. Quite often programs have to loop over some data structure and for each item perform some actions. Quite often the actions performed can be splitted between two logically independent tasks. If that is the case you can write exactly the same program with two loops on the same boundary performing exactly one task. In some case writing it this way can be faster than the unique loop (details are more complex, but an explanation can be that with the simple task case all variables can be kept in processor registers and with the more complex one it's not possible and some registers must be written to memory and read back later and the cost is higher than additional flow control).
Be careful with this one (profile performances using this trick or not) as like using register it may as well give lesser performances than improved ones.
I've actually seen this done in SQLite and they claim it results in performance boosts ~5%: Put all your code in one file or use the preprocessor to do the equivalent to this. This way the optimizer will have access to the entire program and can do more interprocedural optimizations.
Most modern compilers should do a good job speeding up tail recursion, because the function calls can be optimized out.
Example:
int fac2(int x, int cur) {
if (x == 1) return cur;
return fac2(x - 1, cur * x);
}
int fac(int x) {
return fac2(x, 1);
}
Of course this example doesn't have any bounds checking.
Late Edit
While I have no direct knowledge of the code; it seems clear that the requirements of using CTEs on SQL Server were specifically designed so that it can optimize via tail-end recursion.
Don't do the same work over and over again!
A common antipattern that I see goes along these lines:
void Function()
{
MySingleton::GetInstance()->GetAggregatedObject()->DoSomething();
MySingleton::GetInstance()->GetAggregatedObject()->DoSomethingElse();
MySingleton::GetInstance()->GetAggregatedObject()->DoSomethingCool();
MySingleton::GetInstance()->GetAggregatedObject()->DoSomethingReallyNeat();
MySingleton::GetInstance()->GetAggregatedObject()->DoSomethingYetAgain();
}
The compiler actually has to call all of those functions all of the time. Assuming you, the programmer, knows that the aggregated object isn't changing over the course of these calls, for the love of all that is holy...
void Function()
{
MySingleton* s = MySingleton::GetInstance();
AggregatedObject* ao = s->GetAggregatedObject();
ao->DoSomething();
ao->DoSomethingElse();
ao->DoSomethingCool();
ao->DoSomethingReallyNeat();
ao->DoSomethingYetAgain();
}
In the case of the singleton getter the calls may not be too costly, but it is certainly a cost (typically, "check to see if the object has been created, if it hasn't, create it, then return it). The more complicated this chain of getters becomes, the more wasted time we'll have.
Use the most local scope possible for all variable declarations.
Use const whenever possible
Dont use register unless you plan to profile both with and without it
The first 2 of these, especially #1 one help the optimizer analyze the code. It will especially help it to make good choices about what variables to keep in registers.
Blindly using the register keyword is as likely to help as hurt your optimization, It's just too hard to know what will matter until you look at the assembly output or profile.
There are other things that matter to getting good performance out of code; designing your data structures to maximize cache coherency for instance. But the question was about the optimizer.
Align your data to native/natural boundaries.
I was reminded of something that I encountered once, where the symptom was simply that we were running out of memory, but the result was substantially increased performance (as well as huge reductions in memory footprint).
The problem in this case was that the software we were using made tons of little allocations. Like, allocating four bytes here, six bytes there, etc. A lot of little objects, too, running in the 8-12 byte range. The problem wasn't so much that the program needed lots of little things, it's that it allocated lots of little things individually, which bloated each allocation out to (on this particular platform) 32 bytes.
Part of the solution was to put together an Alexandrescu-style small object pool, but extend it so I could allocate arrays of small objects as well as individual items. This helped immensely in performance as well since more items fit in the cache at any one time.
The other part of the solution was to replace the rampant use of manually-managed char* members with an SSO (small-string optimization) string. The minimum allocation being 32 bytes, I built a string class that had an embedded 28-character buffer behind a char*, so 95% of our strings didn't need to do an additional allocation (and then I manually replaced almost every appearance of char* in this library with this new class, that was fun or not). This helped a ton with memory fragmentation as well, which then increased the locality of reference for other pointed-to objects, and similarly there were performance gains.
A neat technique I learned from #MSalters comment on this answer allows compilers to do copy elision even when returning different objects according to some condition:
// before
BigObject a, b;
if(condition)
return a;
else
return b;
// after
BigObject a, b;
if(condition)
swap(a,b);
return a;
If you've got small functions you call repeatedly, i have in the past got large gains by putting them in headers as "static inline". Function calls on the ix86 are surprisingly expensive.
Reimplementing recursive functions in a non-recursive way using an explicit stack can also gain a lot, but then you really are in the realm of development time vs gain.
Here's my second piece of optimisation advice. As with my first piece of advice this is general purpose, not language or processor specific.
Read the compiler manual thoroughly and understand what it is telling you. Use the compiler to its utmost.
I agree with one or two of the other respondents who have identified selecting the right algorithm as critical to squeezing performance out of a program. Beyond that the rate of return (measured in code execution improvement) on the time you invest in using the compiler is far higher than the rate of return in tweaking the code.
Yes, compiler writers are not from a race of coding giants and compilers contain mistakes and what should, according to the manual and according to compiler theory, make things faster sometimes makes things slower. That's why you have to take one step at a time and measure before- and after-tweak performance.
And yes, ultimately, you might be faced with a combinatorial explosion of compiler flags so you need to have a script or two to run make with various compiler flags, queue the jobs on the large cluster and gather the run time statistics. If it's just you and Visual Studio on a PC you will run out of interest long before you have tried enough combinations of enough compiler flags.
Regards
Mark
When I first pick up a piece of code I can usually get a factor of 1.4 -- 2.0 times more performance (ie the new version of the code runs in 1/1.4 or 1/2 of the time of the old version) within a day or two by fiddling with compiler flags. Granted, that may be a comment on the lack of compiler savvy among the scientists who originate much of the code I work on, rather than a symptom of my excellence. Having set the compiler flags to max (and it's rarely just -O3) it can take months of hard work to get another factor of 1.05 or 1.1
When DEC came out with its alpha processors, there was a recommendation to keep the number of arguments to a function under 7, as the compiler would always try to put up to 6 arguments in registers automatically.
For performance, focus first on writing maintenable code - componentized, loosely coupled, etc, so when you have to isolate a part either to rewrite, optimize or simply profile, you can do it without much effort.
Optimizer will help your program's performance marginally.
You're getting good answers here, but they assume your program is pretty close to optimal to begin with, and you say
Assume that the program has been
written correctly, compiled with full
optimization, tested and put into
production.
In my experience, a program may be written correctly, but that does not mean it is near optimal. It takes extra work to get to that point.
If I can give an example, this answer shows how a perfectly reasonable-looking program was made over 40 times faster by macro-optimization. Big speedups can't be done in every program as first written, but in many (except for very small programs), it can, in my experience.
After that is done, micro-optimization (of the hot-spots) can give you a good payoff.
i use intel compiler. on both Windows and Linux.
when more or less done i profile the code. then hang on the hotspots and trying to change the code to allow compiler make a better job.
if a code is a computational one and contain a lot of loops - vectorization report in intel compiler is very helpful - look for 'vec-report' in help.
so the main idea - polish the performance critical code. as for the rest - priority to be correct and maintainable - short functions, clear code that could be understood 1 year later.
One optimization i have used in C++ is creating a constructor that does nothing. One must manually call an init() in order to put the object into a working state.
This has benefit in the case where I need a large vector of these classes.
I call reserve() to allocate the space for the vector, but the constructor does not actually touch the page of memory the object is on. So I have spent some address space, but not actually consumed a lot of physical memory. I avoid the page faults associated the associated construction costs.
As i generate objects to fill the vector, I set them using init(). This limits my total page faults, and avoids the need to resize() the vector while filling it.
One thing I've done is try to keep expensive actions to places where the user might expect the program to delay a bit. Overall performance is related to responsiveness, but isn't quite the same, and for many things responsiveness is the more important part of performance.
The last time I really had to do improvements in overall performance, I kept an eye out for suboptimal algorithms, and looked for places that were likely to have cache problems. I profiled and measured performance first, and again after each change. Then the company collapsed, but it was interesting and instructive work anyway.
I have long suspected, but never proved that declaring arrays so that they hold a power of 2, as the number of elements, enables the optimizer to do a strength reduction by replacing a multiply by a shift by a number of bits, when looking up individual elements.
Put small and/or frequently called functions at the top of the source file. That makes it easier for the compiler to find opportunities for inlining.

Counting FLOPs and size of data and check whether function is memory-bound or cpu-bound

I am going to analyse and optimize some C-Code and therefore I first have to check, whether the functions I want to optimize are memory-bound or cpu-bound. In general I know, how to do this, but I have some questions about counting Floating Point Operations and analysing the size of data, which is used. Look at the following for-loop, which I want to analyse. The values of the array are doubles (that means 8 Byte each):
for(int j=0 ;j<N;j++){
for(int i=1 ;i<Nt;i++){
matrix[j*Nt+i] = matrix[j*Nt+i-1] * mu + matrix[j*Nt+i]*sigma;
}
}
1) How many floating point operations do you count? I thought about 3*(Nt-1)*N... but do I have to count the operations within the arrays, too (matrix[j*Nt+i], which are 2 more FLOP for this array)?
2)How much data is transfered? 2* ((Nt-1)*N)8Byte or 3 ((Nt-1)*N)*8Byte. I mean, every entry of the matrix has to be loaded. After the calculation, the new values is saved to that index of the array (now these is 1load and 1 store). But this value is used for the next calculation. Is another load operations needed therefore, or is this value (matrix[j*Nt+i-1]) already available without a load operation?
Thx a lot!!!
With this type of code, the direct sort of analysis you are proposing to do can be almost completely misleading. The only meaningful information about the performance of the code is actually measuring how fast it runs in practice (benchmarking).
This is because modern compilers and processors are very clever about optimizing code like this, and it will end up executing in a way which is nothing like your straightforward analysis. The compiler will optimize the code, rearranging the individual operations. The processor will itself try to execute the individual sub-operations in parallel and/or pipelined, so that for example computation is occurring while data is being fetched from memory.
It's useful to think about algorithmic complexity, to distinguish between O(n) and O(n²) and so on, but constant factors (like you ask about 2*... or 3*...) are completely moot because they vary in practice depending on lots of details.

How much efficiency would be lost if a hash table is implemented with a 2d array but the second dimension of the array is never accessed?

I need to make a hash table that can eventually be used to write a full assembler.
Basically I will have something like:
foo 100,
and I will need to hash foo and then store the 100 (the address of the command). I was thinking I should just use a 2d array. The second dimension of the array would only be accessed when recording the address (just an int) or when returning the address. There would be no searching done in the second dimension.
If I implement the hash table this way, would it be inefficient? If it is very inefficient, what would be a better way to implement the table?
Edit: I haven't written any code yet. In fact I don't even know what language I'm going to use yet. I want to write it in C so it will be more of a challenge, but I might write it in Java if I feel pressured for time.
If you have every other int in the array unused then in addition to memory waste you're going to use the cache poorly as the cache lines will be underused.
But normally I wouldn't worry about such things when writing an assembler as it's not something very performance demanding as say graphics or heavy computations. At least, I wouldn't rush into optimizing too early.
It is, however, important to keep in mind that once you start assembling large pieces of code (~100,000 lines of assembly) generated automatically (say, from C/C++ code by a compiler), performance will become more and more important as the user experience (wait times) degrades. At that point there will be many candidates for optimization: I/O, parsing, symbol look up, generation of as short as possible jump instructions if they can have multiple encodings for shorter and longer jumps. Expressions and macros will contribute too. You may even consider minimizing white space and comments in the input assembly code in the first place.
Without being able to see any code, there is no reason that this would have to be inefficient. The only reason that it could be is if you pre allocated a bunch of memory that you did not end up using, however without seeing your algorithm you had in mind it is impossible to tell.

Array access/write performance differences?

This is probably going to language dependent, but in general, what is the performance difference between accessing and writing to an array?
For example, if I am trying to write a prime sieve and am representing the primes as a boolean array.
Upon finding a prime, I can say
for(int i = 2; n * i < end; i++)
{
prime[n * i] = false;
}
or
for(int i = 2; n * i < end; i++)
{
if(prime[n * i])
{
prime[n * i] = false;
}
}
The intent in the latter case is to check the value before writing it to avoid having to rewrite many values that have already been checked. Is there any realistic gain in performance here, or are access and write mostly equivalent in speed?
Impossible to answer such a generic question without the specifics of the machine/OS this is running on, but in general the latter is going to be slower because:
The second example you have to get the value from RAM to L2/L1 cache and read it to a register, make a chance on the value and write it back. In the first case you might very well get away with simply writing a value to the L1/L2 caches. It can written to RAM from the caches later while your program is doing something else.
The second form has much more code to execute per iteration. For large enough number of iterations, the difference gets big real fast.
In general this depends much more on the machine than the programing language. The writes often will take a few more clock cycles because, depending on the machine, more cache values need to be updated in memory.
However, your second segment of code will be WAY slower, and it's not just because there's "more code". The big reason is that anytime you use an if-statement on most machines the CPU uses a branch predictor. The CPU literally predicts which way the if-statement will run ahead of time, and if it's wrong it has to backtrack. See http://en.wikipedia.org/wiki/Pipeline_%28computing%29 and http://en.wikipedia.org/wiki/Branch_predictor to understand why.
If you want to do some optimization, I would recommend the following:
Profile! See what's really taking up time.
Multiplication is much harder than addition. Try rewriting the loop so that i += n, and use this for your array index.
The loop condition "should" be totally reevaluated at every iteration unless the compiler optimizes it away. So try avoiding multiplication in there.
Use -O2 or -O3 as a compiler option
You might find that some values of n are faster than others because of cache locality. You might think of some clever ways to rewrite your code to take advantage of this.
Disassemble the code and look at what it's actually doing on your processor
It's a hard question and it heavily depends on your hardware, OS and complier. But for sake of theory, you should consider two things: branching and memory access. As branching is generally evil, you want to avoid it. I wouldn't even surprise if some compiler optimization took place and your second snippet would be reduced to the first one (compilers love avoiding branches, they probably consider it as a hobby, but they have a reason). So in these terms the first example is much cleaner and easier to deal with.
There're also CPU caches and other memory related issues. I believe that in both examples you have to actually load the memory into the CPU cache, so you can either read it or update. While reading is not a problem, writing have to propagate the changes up. I wouldn't be worried if you use the function in a single thread (as #gby pointed out, OS can push the changes a little bit later).
There is only one scenario I can come up with, that would make me consider solution from your second example. If I shared the table between threads to work on it in parallel (without locking) and had separate caches for different CPUs. Then, every time you amend the cache line from one thread, the other thread have to update it's copy before reading or writing to the same memory block. It's known as a cache coherence and it actually may hurt your performance badly; in such a case I could consider conditional writes. But wait, it's probably far away from your question...

How to best sort a portion of a circular buffer?

I have a circular, statically allocated buffer in C, which I'm using as a queue for a depth breadth first search. I'd like have the top N elements in the queue sorted. It would be easy to just use a regular qsort() - except it's a circular buffer, and the top N elements might wrap around. I could, of course, write my own sorting implementation that uses modular arithmetic and knows how to wrap around the array, but I've always thought that writing sorting functions is a good exercise, but something better left to libraries.
I thought of several approaches:
Use a separate linear buffer - first copy the elements from the circular buffer, then apply qsort, then copy them back. Using an additional buffer means an additional O(N) space requirement, which brings me to
Sort the "top" and "bottom" halve using qsort, and then merge them using the additional buffer
Same as 2. but do the final merge in-place (I haven't found much on in-place merging, but the implementations I've seen don't seem worth the reduced space complexity)
On the other hand, spending an hour contemplating how to elegantly avoid writing my own quicksort, instead of adding those 25 (or so) lines might not be the most productive either...
Correction: Made a stupid mistake of switching DFS and BFS (I prefer writing a DFS, but in this particular case I have to use a BFS), sorry for the confusion.
Further description of the original problem:
I'm implementing a breadth first search (for something not unlike the fifteen puzzle, just more complicated, with about O(n^2) possible expansions in each state, instead of 4). The "bruteforce" algorithm is done, but it's "stupid" - at each point, it expands all valid states, in a hard-coded order. The queue is implemented as a circular buffer (unsigned queue[MAXLENGTH]), and it stores integer indices into a table of states. Apart from two simple functions to queue and dequeue an index, it has no encapsulation - it's just a simple, statically allocated array of unsigned's.
Now I want to add some heuristics. The first thing I want to try is to sort the expanded child states after expansion ("expand them in a better order") - just like I would if I were programming a simple best-first DFS. For this, I want to take part of the queue (representing the most recent expanded states), and sort them using some kind of heuristic. I could also expand the states in a different order (so in this case, it's not really important if I break the FIFO properties of the queue).
My goal is not to implement A*, or a depth first search based algorithm (I can't afford to expand all states, but if I don't, I'll start having problems with infinite cycles in the state space, so I'd have to use something like iterative deepening).
I think you need to take a big step back from the problem and try to solve it as a whole - chances are good that the semi-sorted circular buffer is not the best way to store your data. If it is, then you're already committed and you will have to write the buffer to sort the elements - whether that means performing an occasional sort with an outside library, or doing it when elements are inserted I don't know. But at the end of the day it's going to be ugly because a FIFO and sorted buffer are fundamentally different.
Previous answer, which assumes your sort library has a robust and feature filled API (as requested in your question, this does not require you to write your own mod sort or anything - it depends on the library supporting arbitrary located data, usually through a callback function. If your sort doesn't support linked lists, it can't handle this):
The circular buffer has already solved this problem using % (mod) arithmetic. QSort, etc don't care about the locations in memory - they just need a scheme to address the data in a linear manner.
They work as well for linked lists (which are not linear in memory) as they do for 'real' linear non circular arrays.
So if you have a circular array with 100 entries, and you find you need to sort the top 10, and the top ten happen to wrap in half at the top, then you feed the sort the following two bits of information:
The function to locate an array item is (x % 100)
The items to be sorted are at locations 95 to 105
The function will convert the addresses the sort uses into an index used in the real array, and the fact that the array wraps around is hidden, although it may look weird to sort an array past its bounds, a circular array, by definition, has no bounds. The % operator handles that for you, and you might as well be referring to the part of the array as 1295 to 1305 for all it cares.
Bonus points for having an array with 2^n elements.
Additional points of consideration:
It sounds to me that you're using a sorting library which is incapable of sorting anything other than a linear array - so it can't sort linked lists, or arrays with anything other than simple ordering. You really only have three choices:
You can re-write the library to be more flexible (ie, when you call it you give it a set of function pointers for comparison operations, and data access operations)
You can re-write your array so it somehow fits your existing libraries
You can write custom sorts for your particular solution.
Now, for my part I'd re-write the sort code so it was more flexible (or duplicate it and edit the new copy so you have sorts which are fast for linear arrays, and sorts which are flexible for non-linear arrays)
But the reality is that right now your sort library is so simple you can't even tell it how to access data that is non linearly stored.
If it's that simple, there should be no hesitation to adapting the library itself to your particular needs, or adapting your buffer to the library.
Trying an ugly kludge, like somehow turning your buffer into a linear array, sorting it, and then putting it back in is just that - an ugly kludge that you're going to have to understand and maintain later. You're going to 'break' into your FIFO and fiddle with the innards.
-Adam
I'm not seeing exactly the solution you asked for in c. You might consider one of these ideas:
If you have access to the source for your libc's qsort(), you might copy it and simply replace all the array access and indexing code with appropriately generalized equivalents. This gives you some modest assurance that the underling sort is efficient and has few bugs. No help with the risk of introducing your own bugs, of course. Big O like the system qsort, but possibly with a worse multiplier.
If the region to be sorted is small compared to the size of the buffer, you could use the straight ahead linear sort, guarding the call with a test-for-wrap and doing the copy-to-linear-buffer-sort-then-copy-back routine only if needed. Introduces an extra O(n) operation in the cases that trip the guard (for n the size of the region to be sorted), which makes the average O(n^2/N) < O(n).
I see that C++ is not an option for you. ::sigh:: I will leave this here in case someone else can use it.
If C++ is an option you could (subclass the buffer if needed and) overload the [] operator to make the standard sort algorithms work. Again, should work like the standard sort with a multiplier penalty.
Perhaps a priority queue could be adapted to solve your issue.'
You could rotate the circular queue until the subset in question no longer wraps around. Then just pass that subset to qsort like normal. This might be expensive if you need to sort frequently or if the array element size is very large. But if your array elements are just pointers to other objects then rotating the queue may be fast enough. And in fact if they are just pointers then your first approach might also be fast enough: making a separate linear copy of a subset, sorting it, and writing the results back.
Do you know about the rules regarding optimization? You can google them (you'll find a few versions, but they all say pretty much the same thing, DON'T).
It sounds like you are optimizing without testing. That's a huge no-no. On the other hand, you're using straight C, so you are probably on a restricted platform that requires some level of attention to speed, so I expect you need to skip the first two rules because I assume you have no choice:
Rules of optimization:
Don't optimize.
If you know what you are doing, see rule #1
You can go to the more advanced rules:
Rules of optimization (cont):
If you have a spec that requires a certain level of performance, write the code unoptimized and write a test to see if it meets that spec. If it meets it, you're done. NEVER write code taking performance into consideration until you have reached this point.
If you complete step 3 and your code does not meet the specs, recode it leaving your original "most obvious" code in there as comments and retest. If it does not meet the requirements, throw it away and use the unoptimized code.
If your improvements made the tests pass, ensure that the tests remain in the codebase and are re-run, and that your original code remains in there as comments.
Note: that should be 3. 4. 5. Something is screwed up--I'm not even using any markup tags.
Okay, so finally--I'm not saying this because I read it somewhere. I've spent DAYS trying to untangle some god-awful messes that other people coded because it was "Optimized"--and the really funny part is that 9 times out of 10, the compiler could have optimized it better than they did.
I realize that there are times when you will NEED to optimize, all I'm saying is write it unoptimized, test and recode it. It really won't take you much longer--might even make writing the optimized code easier.
The only reason I'm posting this is because almost every line you've written concerns performance, and I'm worried that the next person to see your code is going to be some poor sap like me.
How about somthing like this example here. This example easely sorts a part or whatever you want without having to redefine a lot of extra memory.
It takes inly two pointers a status bit and a counter for the for loop.
#define _PRINT_PROGRESS
#define N 10
BYTE buff[N]={4,5,2,1,3,5,8,6,4,3};
BYTE *a = buff;
BYTE *b = buff;
BYTE changed = 0;
int main(void)
{
BYTE n=0;
do
{
b++;
changed = 0;
for(n=0;n<(N-1);n++)
{
if(*a > *b)
{
*a ^= *b;
*b ^= *a;
*a ^= *b;
changed = 1;
}
a++;
b++;
}
a = buff;
b = buff;
#ifdef _PRINT_PROGRESS
for(n=0;n<N;n++)
printf("%d",buff[n]);
printf("\n");
}
#endif
while(changed);
system( "pause" );
}

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