# sin and cos are slow, is there an alternatve?

My game needs to move by a certain angle. To do this I get the vector of the angle via sin and cos. Unfortunately sin and cos are my bottleneck. I'm sure I do not need this much precision. Is there an alternative to a C sin & cos and look-up table that is decently precise but very fast?

I had found this:

``````float Skeleton::fastSin( float x )
{
const float B = 4.0f/pi;
const float C = -4.0f/(pi*pi);

float y = B * x + C * x * abs(x);

const float P = 0.225f;

return P * (y * abs(y) - y) + y;
}
``````

Unfortunately, this does not seem to work. I get significantly different behavior when I use this sin rather than C sin.

Thanks

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Where does the deviation from the standard sine function start? – James McLeod May 23 '11 at 1:26
If the C sin and cos functions are genuinely too slow for your game, how often per frame do you need to call them? Are you sure you aren't calculating the sine and cosine of the same angle repeatedly? – Steve314 May 23 '11 at 4:15

## 8 Answers

For your `fastSin()`, you should check its documentation to see what range it's valid on. The units you're using for your game could be too big or too small and scaling them to fit within that function's expected range could make it work better.

EDIT:

Someone else mentioned getting it into the desired range by subtracting PI, but apparently there's a function called `fmod` for doing modulus division on floats/doubles, so this should do it:

``````#include <iostream>
#include <cmath>

float fastSin( float x ){
x = fmod(x + M_PI, M_PI * 2) - M_PI; // restrict x so that -M_PI < x < M_PI
const float B = 4.0f/M_PI;
const float C = -4.0f/(M_PI*M_PI);

float y = B * x + C * x * std::abs(x);

const float P = 0.225f;

return P * (y * std::abs(y) - y) + y;
}

int main() {
std::cout << fastSin(100.0) << '\n' << std::sin(100.0) << std::endl;
}
``````

I have no idea how expensive `fmod` is though, so I'm going to try a quick benchmark next.

Benchmark Results

I compiled this with `-O2` and ran the result with the Unix `time` program:

``````int main() {
float a = 0;
for(int i = 0; i < REPETITIONS; i++) {
a += sin(i); // or fastSin(i);
}
std::cout << a << std::endl;
}
``````

The result is that `sin` is about 1.8x slower (if `fastSin` takes 5 seconds, `sin` takes 9). The accuracy also seemed to be pretty good.

If you chose to go this route, make sure to compile with optimization on (`-O2` in gcc).

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Indeed, running this little program on my calculator, I found it gives decent enough results between 0 and 3.2, but much beyond that and it goes very wrong very fast. :) – sarnold May 23 '11 at 0:59
That fastsin fucntion is only valid for +/-pi. I use a version of it in fixed point (16 bit integers) and get about 10 bits precision over a full circle. It has perfect symmetry and hits 0 and 1 exactly which is important to my app. – phkahler May 23 '11 at 14:25
The constant `0.225f` is not exact, so I don't think `fastSin` can hit anything exactly... – R.. May 24 '11 at 1:37
@R, plug it in and compile it yourself. phkahler's comment is correct. – Brendan Long May 24 '11 at 2:01
sinf() function works around 1.6x faster than fastSin here is the code i did benchmark ` float a = 0.0f; for(int j =0;j < 10;j++) { DWORD start = timeGetTime(); for(int i = 0; i < 10000000;i++) { a = // sinf(a); fastSin(a);; a+=0.107f; } cout<<timeGetTime()-start << endl; }` – hevi Oct 17 '12 at 14:16

A lookup table is the standard solution. You could Also use two lookup tables on for degrees and one for tenths of degrees and utilize sin(A + B) = sin(a)cos(b) + cos(A)sin(b)

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How could I do this in an object oriented way? Would a singleton be a good idea here? – Milo May 23 '11 at 1:00
Almost never a good idea. Static methods on MathUtils would be fine. – duffymo May 23 '11 at 1:05
The idea of a Singleton being object orientated is a joke. More importantly, what on earth would the object be in the case? – Puppy May 23 '11 at 1:22
I also wonder how can a global variable(Singleton) be OO? Anyway, if something as calling a sin/cos function is not being fast enough, I wonder if you really want something OO.. – devoured elysium May 23 '11 at 1:54
There is nothing oo about sin – rerun May 23 '11 at 2:05

I know this is already an old topic, but for people who have the same question, here is a tip.

A lot of times in 2D and 3D rotation, all vectors are rotated with a fixed angle. In stead of calling the `cos()` or `sin()` every cycle of the loop, create variable before the loop which contains the value of `cos(angle)` or `sin(angle)` already. You can use this variable in your loop. This way the function only has to be called once.

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any compiler will already do this optimization for you... – Dredok May 30 '14 at 11:14
Not every compiler will optimize this. Some image manipulation functions I used took over ten seconds in debug mode and only a fraction a second in release mode. It was very inconvenient if you use that function a lot. Try not to rely too much on a compiler optimizing your code when you can easily do it yourself. – JMRC Oct 5 at 15:56
Are you kidding? So you are complaining because a compiler does not make optimization a in debug mode? so what? Learn about strength reduction and common subexpressions... Seriously, you will not use a debug compilation in production or will you ? – Dredok Oct 5 at 21:51
No, but I'd rather spend one hour of debugging instead of 10 or 1 day of debugging instead of a week. Especially if rewriting the code takes less than a minute. There's nothing wrong with keeping you're code clean. It's good practice. – JMRC Oct 6 at 11:59

You can compute a table S of 256 values, from sin(0) to sin(2 * pi). Then, to pick sin(x), bring back x in [0, 2 * pi], you can pick 2 values S[a], S[b] from the table, such as a < x < b. From this, linear interpolation, and you should have a fair approximation

• memory saving trick : you actually need to store only from [0, pi / 2], and use symmetries of sin(x)
• enhancement trick : linear interpolation can be a problem because of non-smooth derivatives, humans eyes is good at spotting such glitches in animation and graphics. Use cubic interpolation then.
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But the sine and cosine functions are infinitely differentiable, so there's no such thing as a non-smooth derivative with these functions. – duffymo May 23 '11 at 13:13
@duffymo - I'm guessing it means that the piecewise-linear-interpolated approximation of the sine has a non-smooth derivative, with sudden changes at the points where one line joins ends and the next starts. One way to get a smooth interpolation is to use a cubic rather than linear interpolation, derived so that the end-points have the correct derivatives. The principle is similar to smooth Bezier points in vector graphics, but the math is probably simpler (I seem to remember Bezier math being a pain). – Steve314 May 23 '11 at 18:21
Steve314 got it right ^^ – Monkey May 24 '11 at 1:55

If you rephrase the return in fastSin as

``````return (1-P)*y + P*(y*abs(y))
``````

And rewrite y as (for x>0 )

``````y = 4*x*(pi-x)/pi*pi
``````

you can see that y is a parabolic first order approximation to `sin(x)` chosen so that it passes through (0,0), (pi/2,1) and (pi,0). The `y*abs(y)` is a "correction term" which also passes through those points.

This form of overall approximation function guarantees that the function (1-P)*y + P * y*y will also pass through (0,0), (pi/2,1) and (pi,0).

One question is "How was P chosen?". Personally I'd choes the P that produced least RMS error over the 0,pi/2 interval. (I'm not sure thats how this P was chosen though)

Minimizing this wrt. P gives

This can be rearanged and solved for p

Not sure if this comes out to P=0.225 or not. If not then that value of P is likely to be an improvement. (Unless the other value of P was chosen to preserve some other undocumented property).

You can raise the accuracy by adding an additional correction term. giving a form something like `return (1-a-b)*y + a y * abs(y) + b y * y * abs(y)`. I would find `a` and `b` by in the same way as above, this time giving a system of two linear equations in `a` and `b` to solve, rather than a single equation in `p`. I'm not going to do the derivation as its tedious and the conversion to latex images is painful... ;)

NOTE: When answering another question I thought of another valid choice for P. The problem is that using reflection to extend the curve into (-pi,0) leaves a kink in the curve at x=0. However I suspect we can choose P such that the kink becomes smooth. To do this take the left and right derivatives at x=0 and ensure they are equal. This gives an equation for P.

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Implemented this for the improved version over the 0-pi range, with comparison to the existing fast_sin approximation. code here: gist.github.com/988459 , live version here: ideone.com/oWdkW . Looks like it gets two more decimal places of accuracy at the cost of one additional mult and add. – Michael Anderson May 24 '11 at 10:09

What about

`x*(0.0174532925199433-8.650935142277599*10^-7*x^2)`

for deg and

`x*(1-0.162716259904269*x^2)`

for rad on -45, 45 and `-pi/4` , `pi/4` respectively?

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This (i.e. the fastsin function) is approximating the sine function using a parabola. I suspect it's only good for values between -π and +π. Fortunately, you can keep adding or subtracting 2π until you get into this range. (Edited to specify what is approximating the sine function using a parabola.)

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Hah! I meant that the quoted function is a parabola. Two parabolas, actually. – James McLeod May 23 '11 at 1:16
And whether it is a good idea or not depends on whether it provides sufficient accuracy and speed for the given application - it is difficult for anyone but the OP to determine this. – James McLeod May 23 '11 at 1:20
I have made no recommendation, sir. I have pointed out that the suggested function (fastSin) uses a parabola, and hence it likely has only a limited range. – James McLeod May 23 '11 at 13:33
@duffymo Taylor series is not necessarily the best approximation over a range of values. For that you need something more sophisticated. And for `sin(x)` over the range 0-pi/2 the parabola `4*x*(pi-x)/pi*pi` does a very good job. – Michael Anderson May 24 '11 at 0:33
Actually the function specified seems to be a specially chosen quartic ( y is quadratic, so y^2 is quartic ). Its chosen to preserve certain properties of the sin, in particular passing through (0,0), (pi/2,1), (pi,0) and reduce approximation error at the same time. This means it should give good values over [0,pi]. The use of abs(x) and abs(y) is to extend the region of validity to [-pi,pi] using the symmetry of sin. I suspect though that differentiability of the curve may fail at x=0. (Unless P was specifically chosen to maintain that property, rather than reduce global error). – Michael Anderson May 24 '11 at 1:02

you can use this aproximation.

this solution use a quadratic curve :

http://www.starming.com/index.php?action=plugin&v=wave&ajax=iframe&iframe=fullviewonepost&mid=56&tid=4825

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