# How to write more efficient code

Question of the century? I basically want to know which would be more efficient if I wrote this code as several different variables or if I used small arrays.

``````int x = 34;
int y = 28;
int z = 293;
``````

vs

``````double coordinate[3] = {34, 28, 293};
``````

I have a coordinate struct which I will use in the following way:

``````typedef struct coordinates_t {
double x = 0.0;
double y = 0.0;
double z = 0.0;

} coordinates;

typedef struct car_t {
coordinates start; // car starting point
coordinates location; // car current Location
coordinates targCarVector; // Vector to car from target
coordinates altitude; // Altitude of car
coordinates distance; // Distance from car start to current position
} car;
``````

I'll need to do things like:

``````distance = car1.location - car1.start;
``````

If I don't use an array I'll have to have a lot of lines of code, but if I use an array I'll have to use loops. Are arrays and loops more memory/cpu intensive? I am basically trying to see which is the most efficient way of writing this code.

Thanks, DemiSheep

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Benchmarks benchmarks benchmarks! –  Daenyth Aug 27 '10 at 17:24
@Daenyth - spot on! Or, don't even bother benchmarking 'til you've got your app. written and 'it's slow' - then optimize the few places where the slowness is occurring and your done. It doesn't usually pay to worry too much about efficient upfront - you can rarely anticipate where the real slow parts of your program are going to be - nor is it worth the extra thought much of the time. –  Will A Aug 27 '10 at 17:27
I agree with the Benchmarks comment, but at the same time, my opinion on the matter is variables. It's always better to have something to give an idea of what it being grabbed. For example, your coordinates[] array could be x, y, z but someone else may think they're z, y, x. Having variables x, y and z, there's no confusion. –  XstreamINsanity Aug 27 '10 at 17:28
My suspicion is that since structs are just arrays internally(more or less), it won't make the faintest difference after it goes into an intermediate representation. –  Paul Nathan Aug 27 '10 at 17:28
Question from the previous century. –  Hans Passant Aug 27 '10 at 18:24
show 1 more comment

The first question is: Do you want to optimize it? Most probably, you don't want to. At least not if you "always code as if the guy who ends up maintaining your code will be a violent psychopath who knows where you live." Readability, clarity of intent and maintainability always come first.

The second question is: Is it worth optimizing? In 97% it isn't, according to Donald Knuth - and you don't question Knuth, do you? Another common rule-of-thumb is the 80/20 rule, i.e. 80% of execution time is spent in 20% of the code. If you optimize at all, first profile to know where to optimize. If you guess, you're wrong. Period.

The third question is: CAN you optimize it? No you can't, at least not this easily. You think you're smarter than the hundreds of programmers who wrote your compiler over many decades? You aren't. If the actual implementation of your algorithm and data structures can be optimized, you can assume your compiler can do that on its own. The compiler can do loop unrolling, instruction reordering, combining variables with non-overlapping lifetime, struct layout optimization, and much much more - and in this era, it's even better than most assembly programmers in most cases. And even if there's a bit of potential, you better focus on implementing a better algorithm. No compiler can turn O(n^2) into O(n log n), but maybe a smart computer scientist did it and you can implement his algorithm to get much better performance than any microoptimization can yield.

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The third question gets very arguable in many languages that aren't, say C. E.g., BASIC. :-) /pedantic –  Paul Nathan Aug 27 '10 at 17:39
Yeah, but you can always sit and wait for a sufficently smart compiler :) If one cares so much about about speed that not even optimized algorithms (which are known to have more influence than, well, micro-optimization) are enough, you should propably rewrite it in C or similar anyway. –  delnan Aug 27 '10 at 17:42
@delnan: Technically, yes, but there might be, hmm, pointy haired type externalities that prevent you from selecting a different language. –  Paul Nathan Aug 27 '10 at 17:58
@DemiSheep: Wow, this got accepted over Philip's +19 post? –  delnan Aug 29 '10 at 20:04
"you don't question Knuth, do you?". I would say, always question "authority". Knuth puts on his shoes one at a time, just like the rest of us. –  Mike Dunlavey Aug 29 '10 at 21:11

Is efficiency more important that maintainability and readability? The answer is no. Even if you have a time-critical application, you will spend 90% of the time in under 10% of the code, and so only that 10% needs to be coded as efficiently as possible.

If you haven't measured and found which 10% is the culprit, you almost certainly will be optimising code which doesn't take much runtime in the first place. This is a waste of time.

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+1 Spot on. Premature optimization is the root of all evil. –  Carl Manaster Aug 27 '10 at 17:29
We should forget about small efficiencies, say about 97% of the time: premature optimization is the root of all evil. Yet we should not pass up our opportunities in that critical 3%.A good programmer will not be lulled into complacency by such reasoning, he will be wise to look carefully at the critical code; but only after that code has been identified -- Donald Knuth –  Paul Nathan Aug 27 '10 at 17:36
@Paul Nathan: The master always says it better than I could. –  Philip Potter Aug 27 '10 at 17:38
@Paul: You're more-or-less right, but these ideas drive me nuts, with blithe aphorisms about 10% and 3%. It seems that's what people say because they've heard other people say it. Maybe it makes sense in little 1-page academic algorithms where the call stack never gets deeper than 2. In real-world mega-liners, more than 90% of the time (in my experience) the problem is 1-line function call sites invoking massive trunks of call tree, needlessly, due to over-general data structure design. –  Mike Dunlavey Aug 29 '10 at 21:52
@Mike: that's a problem of data structure and algorithm design, not a problem of code optimisation such as this question is talking about. (I'm sure Knuth picked the number 97% out of thin air - the actual number is not important. And I'm sure Knuth knows about mega-liners.) –  Philip Potter Aug 29 '10 at 22:07

You would have to measure for each platform you want to do this one.

However I don't think this would make any noticeable difference at all. (Maybe except for some embedded platforms. That's an area I don't know much about.) So first write the code in the way that's easiest to read and understand. Then measure whether your code is to slow, and use a profiler to find the exact spots where the program spends to much time. Then try to improve those, measuring after each change to see which effect it had.

Improving the speed of an easy to understand codebase is much easier than understanding a codebase that's riddled with premature and unneeded "optimization".

Measurable run-time improvements usually come from algorithmic changes, not from micro-optimizations like this one. Spend your time trying to find better algorithms.

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"use a profiler to find the exact spots where the program spends too much time" Too many people think this means just "where the program counter spends too much time, thereby missing poorly-justified function calls and I/O which, in big software in my experience, are dominant by far. –  Mike Dunlavey Aug 29 '10 at 23:34
@Mike: Hence my "Measurable run-time improvements usually come from algorithmic changes". –  sbi Aug 30 '10 at 11:26
Problem is, when people think algorithmic changes, they think searching, sorting, linear, binary, hash, etc. They don't think of what you wouldn't think of, such as: needlessly internationalized character constants being loaded from resources at startup causing much hidden I/O, or simply loading things into a tree control causing much ripple effect creating and destroying windows & other data structure, or modifying column name/type in a grid control causing a ripple thoughout much data structure. That's why talking about "algorithms" leaves me uneasy. –  Mike Dunlavey Aug 30 '10 at 13:33
@Mike: Yeah, see my comment to the other answer. Pre-loading an index of the data instead of loading the actual data... to me that's an algorithmic change. –  sbi Aug 30 '10 at 21:56

If you really want to micro-optimize this, use the SIMD instruction capabilities of your CPU. If you are using an x86 platform, you can use MMX or SSE instructions to do vector arithmetic instead of adding each part of the coordinate individually (your compiler may not generate these without special command-line switches or inline assembly). This will probably amount to a larger speedup than switching between individual variables and an array. I say "probably" because there is no way to tell for sure without trying it both ways and measuring the execution time.

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Use an array, compile with -funroll-loops. You get the benefits of both.

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Compilers can "unroll" loops if they think it will help. So the compiler might quietly replace the following code:

``````for (i = 0; i < 3; ++i) {
c[i] = a[i] - b[i];
}
``````

with:

``````c[0] = a[0] - b[0];
c[1] = a[1] - b[1];
c[2] = a[2] - b[2];
``````

The compiler will take its best guess as to whether it's worth doing this, taking into account the costs of the operations involved and the optimisation flags you provide.

There is no simple answer to "which one will be faster?", but if there was you can be sure that with maximum optimisation, your compiler would use it.

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When in doubt, code up prototypes for each and profile them. For stuff at this level, I will predict that any differences in performance will be down in the noise. Use what makes sense and most clearly conveys the intent of the design.

In descending order of importance, code must be

1. Correct - it doesn't matter how fast your code is if it gives you the wrong answer or does the wrong thing;
2. Maintainable - it doesn't matter how fast your code is if you can't fix it or modify it to accomodate new requirements;
3. Robust - it doesn't matter how fast your code is if it core dumps on the first hint of dodgy input;

Somewhere after this you can start worrying about performance.

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The answer of the century is

Don't put the cart before the horse.

In other words, profile first.

Everybody "knows" this, but a large category of questions on SO are of the form "Which is faster, X or Y?"

This elicits guesses, and when you're concerned about performance, guesses aren't worth much, because if you have a performance problem, it is probably somewhere else entirely.

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+1. It's better to learn how to measure performance for yourself, than to ask for performance rules of thumb from others. –  Philip Potter Aug 30 '10 at 16:20
@Philip: Thx. I'm afraid I've made myself a pain in the neck discoursing on this subject, as in: stackoverflow.com/questions/1777556/alternatives-to-gprof/… –  Mike Dunlavey Aug 30 '10 at 16:44

As always, you'll need to profile your code to be sure.

Having said that, I'd suggest going for an array and loops - you code should be more concise/maintainable and the compiler should be able to do a good job at optimising out / unrolling all the little constant-sized loops which is effectively what you would be doing by hand if you used x,y,z co-ordinates for every vector.

On a completely unrelated note I see you car has altitude. Is it a flying car? If so then definitely +1 for the cool application.

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