# An efficient way to compute mathematical constant e

The standard representation of constant e as the sum of the infinite series is very inefficient for computation, because of many division operations. So are there any alternative ways to compute the constant efficiently?

Thanks!

EDIT

After following some of your links, I believe that efficiency comes from a technique called binary splitting (while the representation is still mentioned series), which I was not familiar with. If someone is familiar with it, feel free to contribute.

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For what reason do you want to calculate it instead of using a constant expression? – tur1ng Jun 12 '10 at 10:22
It sounds like you are going to continuously compute it rather than just compute it once to the required precision. – dreamlax Jun 12 '10 at 10:54
Factorials grow very fast. Taylor is not inefficient. – Hans Passant Jun 12 '10 at 13:41
Try calculating `exp(2)` then - Taylor is only efficient for the special case `exp(1)` because pow(1,N) == 1. – MSalters Jun 14 '10 at 12:28

Since it's not possible to calculate every digit of 'e', you're going to have to pick a stopping point.

## double precision: 16 decimal digits

For practical applications, "the 64-bit double precision floating point value that is as close as possible to the true value of 'e' -- approximately 16 decimal digits" is more than adequate.

As KennyTM said, that value has already been pre-calculated for you in the math library. If you want to calculate it yourself, as Hans Passant pointed out, factorial already grows very fast. The first 22 terms in the series is already overkill for calculating to that precision -- adding further terms from the series won't change the result if it's stored in a 64 bit double-precision floating point variable. I think it will take you longer to blink than for your computer to do 22 divides. So I don't see any reason to optimize this further.

## thousands, millions, or billions of decimal digits

As Matthieu M. pointed out, this value has already been calculated, and you can download it from Yee's web site.

If you want to calculate it yourself, that many digits won't fit in a standard double-precision floating-point number. You need a "bignum" library. As always, you can either use one of the many free bignum libraries already available, or re-invent the wheel by building your own yet another bignum library with its own special quirks.

The result -- a long file of digits -- is not terribly useful, but programs to calculate it are sometimes used as benchmarks to test the performance and accuracy of "bignum" library software, and as stress tests to check the stability and cooling capacity of new machine hardware.

One page very briefly describes the algorithms Yee uses to calculate mathematical constants.

The Wikipedia "binary splitting" article goes into much more detail. I think the part you are looking for is the number representation: instead of internally storing all numbers as a long series of digits before and after the decimal point (or a binary point), Yee stores each term and each partial sum as a rational number -- as two integers, each of which is a long series of digits. For example, say one of the worker CPUs was assigned the partial sum,

``````... 1/4! + 1/5! + 1/6! + ... .
``````

Instead of doing the division first for each term, and then adding, and then returning a single million-digit fixed-point result to the manager CPU:

``````// extended to a million digits
1/24 + 1/120 + 1/720 => 0.0416666 + 0.0083333 + 0.00138888
``````

that CPU can add all the terms in the series together first with rational arithmetic, and return the rational result to the manager CPU: two integers of perhaps a few hundred digits each:

``````// faster
1/24 + 1/120 + 1/720 => 1/24 + 840/86400 => 106560/2073600
``````

After thousands of terms have been added together in this way, the manager CPU does the one and only division at the very end to get the decimal digits after the decimal point.

Remember to avoid PrematureOptimization, and always ProfileBeforeOptimizing.

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That's exactly what I was looking for (the part on binary splitting). Cheers! – Cinnamon Jun 13 '10 at 10:27
@Cinnamon I came across this question while searching for links from SO to my website. I joined SO quite a while after this question was asked and I thought I'd leave a comment confirming that the Binary Splitting approach is in fact the key algorithm. It reduces the computational complexity of summing the series from polynomial to quasi-linear. – Mysticial Apr 3 '13 at 2:22

If you're using `double` or `float`, there is an `M_E` constant in `math.h` already.

``````#define M_E         2.71828182845904523536028747135266250   /* e */
``````

There are other representions of `e` in http://en.wikipedia.org/wiki/Representations_of_e#As_an_infinite_series; all the them will involve division.

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I guess the point of the question is to find an efficient algorithm to compute e (just for the sake of doing it, if you want), so using a predefined constant wouldn't be a solution. Otherwise see the link in my answer to have all the precision you need... – nico Jun 12 '10 at 11:08

I'm not aware of any "faster" computation than the Taylor expansion of the series, i.e.:

e = 1/0! + 1/1! + 1/2! + ...

or

1/e = 1/0! - 1/1! + 1/2! - 1/3! + ...

Considering that these were used by A. Yee, who calculated the first 500 billion digits of e, I guess that there's not much optimising to do (or better, it could be optimised, but nobody yet found a way, AFAIK)

EDIT

A very rough implementation

``````#include <iostream>
#include <iomanip>

using namespace std;

double gete(int nsteps)
{
// Let's skip the first two terms
double res = 2.0;
double fact = 1;

for (int i=2; i<nsteps; i++)
{
fact *= i;
res += 1/fact;
}

return res;
}

int main()
{
cout << setprecision(50) << gete(10) << endl;
cout << setprecision(50) << gete(50) << endl;
}
``````

Outputs

``````2.71828152557319224769116772222332656383514404296875
2.71828182845904553488480814849026501178741455078125
``````
-
Note that in order to calculate x!, you have to calculate (x-1)! first. So this representation is perfectly suitable for dynamic programming. – Dave O. Jun 12 '10 at 12:19
@Dave: Yes, I guess you can store the result of the previous denominator and reuse it for the next sum. See updated answer – nico Jun 12 '10 at 12:35
`setprecision(50)`? `double` is only precise up to 16 digits. – kennytm Jun 12 '10 at 18:24
@KennyTM: yeah, was just to put a big number, I didn't remember the precision of `double` on top of my mind :P – nico Jun 12 '10 at 18:47
@KennyTM: The number of steps doesn't correspond to number of valid decimal digits calculated in each step at all. Sure 50 may be an overkill here but estimating the number of resulting valid decimal places per iteration seems like a much harder task than calculating the iteration itself. – SF. Jun 22 '10 at 16:15

This is a tiny C program from Xavier Gourdon to compute 9000 decimal digits of e on your computer. A program of the same kind exists for π and for some other constants defined by mean of hypergeometric series.

[degolfed version from http://codereview.stackexchange.com/a/33019 ]

``````#include <stdio.h>
int main() {
int N = 9009, a[9009], x;
for (int n = N - 1; n > 0; --n) {
a[n] = 1;
}
a[1] = 2;
while (N > 9) {
int n = N--;
while (--n) {
a[n] = x % n;
x = 10 * a[n-1] + x/n;
}
printf("%d", x);
}
return 0;
}
``````

This program [when code-golfed] has 117 characters. It can be changed to compute more digits (change the value 9009 to more) and to be faster (change the constant 10 to another power of 10 and the printf command). A not so obvious question is to find the algorithm used.

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+1. Very informative link. – Aryabhatta Jun 12 '10 at 13:11
I edited in the quote from codereview.stackexchange.com/a/33019/31087, since link-only answers are (nowadays) strongly discouraged – Tobias Kienzler Oct 22 '13 at 8:10

I gave this answer at CodeReviews on the question regarding computing e by its definition via Taylor series (so, other methods were not an option). The cross-post here was suggested in the comments. I've removed my remarks relevant to that other topic; Those interested in further explanations migth want to check the original post.

The solution in C (should be easy enough to adapt to adapt to C++):

``````#include <stdio.h>
#include <math.h>

int main ()
{
long double n = 0, f = 1;
int i;
for (i = 28; i >= 1; i--) {
f *= i;  // f = 28*27*...*i = 28! / (i-1)!
n += f;  // n = 28 + 28*27 + ... + 28! / (i-1)!
}  // n = 28! * (1/0! + 1/1! + ... + 1/28!), f = 28!
n /= f;
printf("%.64llf\n", n);
printf("%.64llf\n", expl(1));
printf("%llg\n", n - expl(1));
printf("%d\n", n == expl(1));
}
``````

Output:

``````2.7182818284590452354281681079939403389289509505033493041992187500
2.7182818284590452354281681079939403389289509505033493041992187500
0
1
``````

There are two important points:

1. This code doesn't compute 1, 1*2, 1*2*3,... which is O(n^2), but computes 1*2*3*... in one pass (which is O(n)).

2. It starts from smaller numbers. If we tried to compute

1/1 + 1/2 + 1/6 + ... + 1/20!

1/21! = 1/51090942171709440000 = 2E-20,

to 2.something, which has no effect on the result (`double` holds about 16 significant digits). This effect is called underflow.

However, when we start with these numbers, i.e., if we compute 1/32!+1/31!+... they all have some impact.

This solution seems in accordance to what C computes with its `expl` function, on my 64bit machine, compiled with gcc 4.7.2 20120921.

-

You may be able to gain some efficiency. Since each term involves the next factorial, some efficiency may be obtained by remembering the last value of the factorial.

``````e = 1 + 1/1! + 1/2! + 1/3! ...
``````

Expanding the equation:

``````e = 1 + 1/(1 * 1) + 1/(1 * 1 * 2) + 1/(1 * 2 * 3) ...
``````

Instead of computing each factorial, the denominator is multiplied by the next increment. So keeping the denominator as a variable and multiplying it will produce some optimization.

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Indeed, this answer basically implements that (plus dropping anything after `1/28!` and iterating backwards for even better performance) – Tobias Kienzler Oct 22 '13 at 8:18

If you're ok with an approximation up to seven digits, use

``````3-sqrt(5/63)
2.7182819
``````

If you want the exact value:

``````e = (-1)^(1/(j*pi))
``````

where j is the imaginary unit and pi the well-known mathematical constant (Euler's Identity)

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12 chars to code a 9 char number (1+7 digits plus decimal point)? Hm... – Tobias Kienzler Oct 22 '13 at 7:58

From my point of view, the most efficient way to compute e up to a desired precision is to use the following representation:

`e := lim (n -> inf): (1 + (1/n))^n`

Especially if you choose `n = 2^x`, you can compute the potency with just x multiplications, since:

`a^n = (a^2)^(n/2), if n % 2 = 0`

-

The binary splitting method lends itself nicely to a template metaprogram which produces a type which represents a rational corresponding to an approximation of e. 13 iterations seems to be the maximum - any higher will produce a "integral constant overflow" error.

``````#include <iostream>
#include <iomanip>

template<int NUMER = 0, int DENOM = 1>
struct Rational
{
enum {NUMERATOR = NUMER};
enum {DENOMINATOR = DENOM};

static double value;
};

template<int NUMER, int DENOM>
double Rational<NUMER, DENOM>::value = static_cast<double> (NUMER) / DENOM;

template<int ITERS, class APPROX = Rational<2, 1>, int I = 2>
struct CalcE
{
typedef Rational<APPROX::NUMERATOR * I + 1, APPROX::DENOMINATOR * I> NewApprox;
typedef typename CalcE<ITERS, NewApprox, I + 1>::Result Result;
};

template<int ITERS, class APPROX>
struct CalcE<ITERS, APPROX, ITERS>
{
typedef APPROX Result;
};

int test (int argc, char* argv[])
{
std::cout << std::setprecision (9);

// ExpType is the type containing our approximation to e.
typedef CalcE<13>::Result ExpType;

// Call result() to produce the double value.
std::cout << "e ~ " << ExpType::value << std::endl;

return 0;
}
``````

Another (non-metaprogram) templated variation will, at compile-time, calculate a double approximating e. This one doesn't have the limit on the number of iterations.

``````#include <iostream>
#include <iomanip>

template<int ITERS, long long NUMERATOR = 2, long long DENOMINATOR = 1, int I = 2>
struct CalcE
{
static double result ()
{
return CalcE<ITERS, NUMERATOR * I + 1, DENOMINATOR * I, I + 1>::result ();
}
};

template<int ITERS, long long NUMERATOR, long long DENOMINATOR>
struct CalcE<ITERS, NUMERATOR, DENOMINATOR, ITERS>
{
static double result ()
{
return (double)NUMERATOR / DENOMINATOR;
}
};

int main (int argc, char* argv[])
{
std::cout << std::setprecision (16);

std::cout << "e ~ " <<  CalcE<16>::result () << std::endl;

return 0;
}
``````

In an optimised build the expression `CalcE<16>::result ()` will be replaced by the actual double value.

Both are arguably quite efficient since they calculate e at compile time :-)

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OVERKILL...Don't need to be this complex – Unit978 Sep 5 '13 at 19:50
It's just for fun... – jon-hanson Sep 7 '13 at 18:02

From wikipedia replace x with 1

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"The standard representation of constant e as the sum of the infinite series is very inefficient for computation, because of many division operations." – tur1ng Jun 12 '10 at 10:37
@tur1ng : you can work with precision ... – Hannoun Yassir Jun 12 '10 at 10:38
But inefficiency remains.... – duffymo Jun 12 '10 at 15:31
@duffymo : What would be a better solution ? – Hannoun Yassir Jun 12 '10 at 20:30
didn't say I had a better solution. I'm responding to tur1ng's comment. – duffymo Jun 13 '10 at 0:22