Gabriel Lame's Theorem bounds the number of steps by log(1/sqrt(5)*(a+1/2))-2, where the base of the log is (1+sqrt(5))/2. This is for the the worst case scenerio for the algorithm and it occurs when the inputs are consecutive Fibanocci numbers.

A slightly more liberal bound is: log a, where the base of the log is (sqrt(2)) is implied by Koblitz.

For cryptographic purposes we usually consider the bitwise complexity of the algorithms, taking into account that the bit size is given approximately by k=loga.

Here is a detailed analysis of the bitwise complexity of Euclid Algorith:

Although in most references the bitwise complexity of Euclid Algorithm is given by O(loga)^3 there exists a tighter bound which is O(loga)^2.

Consider; r0=a, r1=b, r0=q1.r1+r2 . . . ,ri-1=qi.ri+ri+1, . . . ,rm-2=qm-1.rm-1+rm rm-1=qm.rm

observe that: a=r0>=b=r1>r2>r3...>rm-1>rm>0 ..........(1)

and rm is the greatest common divisor of a and b.

By a Claim in Koblitz's book( A course in number Theory and Cryptography) is can be proven that: ri+1<(ri-1)/2 .................(2)

Again in Koblitz the number of bit operations required to divide a k-bit positive integer by an l-bit positive integer (assuming k>=l) is given as: (k-l+1).l ...................(3)

By (1) and (2) the number of divisons is O(loga) and so by (3) the total complexity is O(loga)^3.

Now this may be reduced to O(loga)^2 by a remark in Koblitz.

consider ki= logri +1

by (1) and (2) we have: ki+1<=ki for i=0,1,...,m-2,m-1 and ki+2<=(ki)-1 for i=0,1,...,m-2

and by (3) the total cost of the m divisons is bounded by: SUM [(ki-1)-((ki)-1))]*ki for i=0,1,2,..,m

rearranging this: SUM [(ki-1)-((ki)-1))]*ki<=4*k0^2

So the bitwise complexity of Euclid's Algorithm is O(loga)^2.

extensivecoverage. Just FWIW, a couple of tidbits: it's not proportional to`a%b`

. The worst case is when`a`

and`b`

are consecutive Fibonacci numbers. – Jerry Coffin Oct 20 '10 at 17:10