# Calculate Conway's Constant

I found a code golf challenge that requires you to calculate Conway's Constant to the first 1000 digits. The problem is I couldn't find any place that tells how to calculate this, just websites showing polynomials with a variable x that I do not know what is. I calculated the first 30 numbers in the Look-and-say sequence with this code:

``````const nums = ["1"],

trailingSequences = seq => {
const num = seq[0];
let counter = 1;
let idx = 0;
for (let i = 1; i < seq; i++) {
if (num == seq[i]) {
counter++
idx = i;
} else {
break
};
}
return [`\${counter}\${num}`, idx + 1];
},

getNext = previous => {
let next = "";
while (true) {
if (previous == "") {
break
};
const part = trailingSequences(previous);
next += part[0];
previous = previous.slice(part[1]);
}
return next;
}

for (let i = 0; i < 30; i++)
nums.push(getNext(nums[nums.length - 1]))

console.log(nums.join("\n\n\n"));``````

But I still do not know how to extract Conway's constant regardless.

So, how to calculate Conway's Constant to a modifiable precision in JavaScript?

Conway's Constant is the unique real positive root of an order-71 polynomial. As you might expect it is irrational1, and cannot be expressed as a finite continued fraction.

One of the easiest, and generally speaking most efficient methods to compute polynomial roots is with Newton's method:

$x_{n+1}=x_n-\frac{f(x_n)}{f'(x_n)}$

where xn is the current guess and f(xn) is a function that evaluates the target polynomial at xn.

In the case that arbitrary precision reals/rationals are not available, the result can instead be scaled by a large power of 10 to compute the desired precision. The implementation below uses V8's `BigInt`s to compute Conway's Constant to 1000 places.

``````/**
* Evaluates a polynomial given by coeffs at x,
* or the derivative thereof, scaled by a factor.
*/
function evalpoly(x, coeffs, scale, deriv) {
let ret = 0n;
const d = deriv ? 1 : 0;
for(let i = coeffs.length - 1; i >= d; i--) {
ret = x*ret / scale + BigInt(coeffs[i] * [1, i][d]) * scale;
}
return ret;
}

const poly = [
-6, 3, -6, 12, -4, 7, -7, 1, 0, 5, -2, -4, -12, 2, 7, 12, -7, -10,
-4, 3, 9, -7, 0, -8, 14, -3, 9, 2, -3, -10, -2, -6, 1, 10, -3, 1,
7, -7, 7, -12, -5, 8, 6, 10, -8, -8, -7, -3, 9, 1, 6, 6, -2, -3,
-10, -2, 3, 5, 2, -1, -1, -1, -1, -1, 1, 2, 2, -1, -2, -1, 0, 1]

const scale = 10n**1000n

// initial guess 1.333333...
let x = scale * 4n / 3n

for(let i = 0; i < 14; i++) {
x -= evalpoly(x, poly, scale, 0) * scale / evalpoly(x, poly, scale, 1)
}

x
``````

1 Finch, Steven R., Mathematical Constants, pp. 642, Cambridge University Press, 2003.

The Conway Constant is the ratio between the length of digits of n and n-1 as n approaches inf.

``````const nums = ["1"],

trailingSequences = seq => {
const num = seq[0];
let counter = 1;
let idx = 0;
for (let i = 1; i < seq; i++) {
if (num == seq[i]) {
counter++
idx = i;
} else {
break
};
}
return [`\${counter}\${num}`, idx + 1];
},

getNext = previous => {
let next = "";
while (true) {
if (previous == "") {
break
};
const part = trailingSequences(previous);
next += part[0];
previous = previous.slice(part[1]);
}
return next;
}

for (let i = 0; i < 30; i++){
let prev = (nums[nums.length - 1] + '').length;
let current = (getNext(nums[nums.length - 1]) + '').length;
nums.push(getNext(nums[nums.length - 1]))
// ratio of n / n-1, this is the approx of Conway's Constant
console.log(current / prev);
}
//console.log(nums.join("\n\n\n"));``````

• Floating point arithmetic is limited to about 16 digits of precision. This will not work to get 1000 digits of precision. Commented Feb 22, 2021 at 18:07
• Great answer, but could you possibly show a way to get the answer to a certain precision (for example, if you plug in a number "1000" somewhere it will give Conway's constant to the 1000th decimal place?) Commented Feb 22, 2021 at 18:08
• This will also take far far too long to converge Commented Mar 6, 2021 at 11:55
• For sure. I was aiming to use their code to get to that answer. Commented Mar 7, 2021 at 13:26