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I've written a program that attempts to find Amicable Pairs. This requires finding the sums of the proper divisors of numbers.

Here is my current sumOfDivisors() method:

int sumOfDivisors(int n)
    int sum = 1;
    int bound = (int) sqrt(n);
    for(int i = 2; i <= 1 + bound; i++)
        if (n % i == 0)
            sum = sum + i + n / i;
    return sum;

So I need to do lots of factorization and that is starting to become the real bottleneck in my application. I typed a huge number into MAPLE and it factored it insanely fast.

What is one of the faster factorization algorithms?

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Don't forget to check whether the number is a true square. If it is, and you don't take it into account, you'll be adding the square root to the sum twice (as both i AND n/i). Take a look at Project Euler - there's all sorts of things on there covering this type of optimisation. – Trevor Tippins Feb 15 '10 at 16:16
I'm surprised that you can factor even one such number by the method above. – Steve Jessop Feb 15 '10 at 16:22
So a 25 digit number about 4 hours? – Steve Jessop Feb 15 '10 at 16:32
I'm guessing? Hence the point of this question. – Mithrax Feb 15 '10 at 16:33
Did you check – Luka Rahne Feb 15 '10 at 22:01

7 Answers 7

Pulled directly from my answer to this other question.

The method will work, but will be slow. "How big are your numbers?" determines the method to use:

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Nice list. Lenstra's elliptic curve method should be good for numbers a lot larger than 10^20, though. (Even for numbers larger than 10^100, if you're just looking for smallish factors.) – Mark Dickinson Feb 16 '10 at 17:33
@Mark Dickinson: perhaps, but if you're working with numbers over 10^100, you're generally working with numbers that don't have small(ish) factors. – Sam Harwell Feb 16 '10 at 17:40
Perhaps. It depends on where the numbers are coming from: a 'random' number > 10^100 could well have small factors. Of course, this wouldn't be true for an RSA modulus. Anyway, that 10^20 should be increased to 10^50 or so (perhaps more). Note that in the article you link to, it's talking about divisors of 20 to 25 digits: the number being factored will typically be a lot larger than that. – Mark Dickinson Feb 16 '10 at 18:00
Isn't 2^70 about the same as 10^20? – xan Feb 24 '10 at 0:48
@Mark Dickinson, Thanks for catching this. – Sam Harwell Feb 22 '12 at 5:54

The question in the title (and the last line) seems to have little to do with the actual body of the question. If you're trying to find amicable pairs, or computing the sum of divisors for many numbers, then separately factorising each number (even with the fastest possible algorithm) is absolutely an inefficient way to do it.

The sum-of-divisors function, σ(n) = (sum of divisors of n), is a multiplicative function: for relatively prime m and n, we have σ(mn) = σ(m)σ(n), so

σ(p1k1…prkr) = [(p1k1+1-1)/(p1-1)]…[(prkr+1-1)/(pr-1)].

So you would use any simple sieve (e.g. an augmented version of the Sieve of Eratosthenes) to find the primes up to n, and, in the process, the factorisation of all numbers up to n. (For example, as you do your sieve, store the smallest prime factor of each n. Then you can later factorize any number n by iterating.) This would be faster (overall) than using any separate factorization algorithm several times.

BTW: several known lists of amicable pairs already exist (see e.g. here and the links at MathWorld) – so are you trying to extend the record, or doing it just for fun?

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I would suggest starting from the same algorithm used in Maple, the Quadratic Sieve.

  1. Choose your odd number n to factorize,
  2. Choose a natural number k,
  3. Search all p <= k so that k^2 is not congruent to (n mod p) to obtain a factor base B = p1, p2, ..., pt,
  4. Starting from r > floor(n) search at least t+1 values so that y^2 = r^2 - n all have just factors in B,
  5. For every y1, y2, ..., y(t+1) just calculated you generate a vector v(yi) = (e1, e2, ..., et) where ei is calculated by reducing over modulo 2 the exponent pi in yi,
  6. Use Gaussian Elimination to find some of the vectors that added together give a null vector
  7. Set x as the product of ri related to yi found in the previous step and set y as p1^a * p2^b * p3^c * .. * pt^z where exponents are the half of the exponents found in the factorization of yi
  8. Calculate d = mcd(x-y, n), if 1 < d < n then d is a non-trivial factor of n, otherwise start from step 2 choosing a bigger k.

The problem about these algorithms is that they really imply a lot of theory in numerical calculus..

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Shor's Algorithm:

Of course you need a quantum computer though :D

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This is a paper of the Integer Factorization in Maple.

"Starting from some very simple instructions—“make integer factorization faster in Maple” — we have implemented the Quadratic Sieve factoring algorithm in a combination of Maple and C..."

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Depends how big your numbers are. If you're searching for amicable pairs you're doing a lot of factorisations, so the key may not be to factor as quickly as possible, but to share as much work as possible between different calls. To speed up trial division you could look at memoization, and/or precalculating primes up to the square root of the biggest number you care about. It's quicker to get the prime factorisation, then calculate the sum of all factors from that, than it is to loop all the way up to sqrt(n) for every number.

If you're looking for really big amicable pairs, say bigger than 2^64, then on a small number of machines you can't do it by factorising every single number no matter how fast your factorisation is. The short-cuts which you're using to find candidates might help you factor them.

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A more 2015 C++ version 2^27 lookup table implementation for 1GB memory:

#include <iostream.h> // cerr, cout, and NULL
#include <string.h>   // memcpy()
#define uint unsigned __int32
uint *factors;
const uint MAX_F=134217728; // 2^27

void buildFactors(){
   factors=new (nothrow) uint [(MAX_F+1)*2]; // 4 * 2 * 2^27 = 2^30 = 1GB
   if(factors==NULL)return; // not able to allocate enough free memory
   int i;

   //Sieve of Eratosthenese
      for(;factors[i*2] && i*i<=MAX_F;i++);
      for(int j=2;i*j<=MAX_F;j++){
      for(;i<=MAX_F && factors[i*2];i++);

uint * factor(uint x, int &factorCount){
   if(x > MAX_F){factorCount=-1;return NULL;}
   uint tmp[70], at=x; int i=0;
      cout<<"at:"<<at<<" tmp:"<<tmp[i-1]<<endl;
      cout<<"at:"<<x<<" tmp:1"<<endl;
      cout<<"at:"<<at<<" tmp:1"<<endl;
   uint *ret=new (nothrow) uint [factorCount];
      memcpy(ret, tmp, sizeof(uint)*factorCount);
   return ret;

void main(){
   cout<<"Loading factors lookup table"<<endl;
   buildFactors(); if(factors==NULL){cerr<<"Need 1GB block of free memory"<<endl;return;}
   int size;
   uint x=30030;
   cout<<"\nFactoring: "<<x<<endl;
   uint *f=factor(x,size);
   if(size<0){cerr<<x<<" is too big to factor. Choose a number between 1 and "<<MAX_F<<endl;return;}
   else if(f==NULL){cerr<<"ran out of memory trying to factor "<<x<<endl;return;}

   cout<<"\nThe factors of: "<<x<<" {"<<f[0];
   for(int i=1;i<size;i++)
      cout<<", "<<f[i];
   delete [] f;

   cout<<"\nFactoring: "<<x<<endl;
   cout<<"\nThe factors of: "<<x<<" {"<<f[0];
   for(int i=1;i<size;i++)
      cout<<", "<<f[i];
   delete [] f;
   delete [] factors;
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