Is there any algorithm to compute the nth fibonacci number in sub linear time?

The
where
Assuming that the primitive mathematical operations ( In C#:



Following from Pillsy's reference to matrix exponentiation, such that for the matrix M = [1 1] [1 0] then fib(n) = M^{n}_{1,2} Raising matrices to powers using repeated multiplication is not very efficient. Two approaches to matrix exponentiation are divide and conquer which yields M^{n} in O(ln n) steps, or eigenvalue decomposition which is constant time, but may introduce errors due to limited floating point precision. If you want an exact value greater than the precision of your floating point implementation, you have to use the O ( ln n ) approach based on this relation: M^{n} = (M^{n/2})^{2} if n even = M·M^{n1} if n is odd The eigenvalue decomposition on M finds two matrices U and Λ such that Λ is diagonal and M = U Λ U^{1} M^{n} = ( U Λ U^{1}) ^{n} = U Λ U^{1} U Λ U^{1} U Λ U^{1} ... n times = U Λ Λ Λ ... U^{1} = U Λ ^{n} U^{1}Raising a the diagonal matrix Λ to the nth power is a simple matter of raising each element in Λ to the nth, so this gives an O(1) method of raising M to the nth power. However, the values in Λ are not likely to be integers, so some error will occur. Defining Λ for our 2x2 matrix as Λ = [ λ_{1} 0 ] = [ 0 λ_{2} ] To find each λ, we solve M  λI = 0 which gives M  λI = λ ( 1  λ )  1 λ²  λ  1 = 0 using the quadratic formula λ = ( b ± √ ( b²  4ac ) ) / 2a = ( 1 ± √5 ) / 2 { λ_{1}, λ_{2} } = { Φ, 1Φ } where Φ = ( 1 + √5 ) / 2 If you've read Jason's answer, you can see where this is going to go. Solving for the eigenvectors X_{1} and X_{2}: if X_{1} = [ X_{1,1}, X_{1,2} ] M.X_{1 1} = λ_{1}X_{1} X_{1,1} + X_{1,2} = λ_{1} X_{1,1} X_{1,1} = λ_{1} X_{1,2} => X_{1} = [ Φ, 1 ] X_{2} = [ 1Φ, 1 ] These vectors give U: U = [ X_{1,1}, X_{2,2} ] [ X_{1,1}, X_{2,2} ] = [ Φ, 1Φ ] [ 1, 1 ] Inverting U using A = [ a b ] [ c d ] => A^{1} = ( 1 / A ) [ d b ] [ c a ] so U^{1} is given by U^{1} = ( 1 / ( Φ  ( 1  Φ ) ) [ 1 Φ1 ] [ 1 Φ ] U^{1} = ( √5 )^{1} [ 1 Φ1 ] [ 1 Φ ] Sanity check: UΛU^{1} = ( √5 )^{1} [ Φ 1Φ ] . [ Φ 0 ] . [ 1 Φ1 ] [ 1 1 ] [ 0 1Φ ] [ 1 Φ ] let Ψ = 1Φ, the other eigenvalue as Φ is a root of λ²λ1=0 so ΨΦ = Φ²Φ = 1 and Ψ+Φ = 1 UΛU^{1} = ( √5 )^{1} [ Φ Ψ ] . [ Φ 0 ] . [ 1 Ψ ] [ 1 1 ] [ 0 Ψ ] [ 1 Φ ] = ( √5 )^{1} [ Φ Ψ ] . [ Φ ΨΦ ] [ 1 1 ] [ Ψ ΨΦ ] = ( √5 )^{1} [ Φ Ψ ] . [ Φ 1 ] [ 1 1 ] [ Ψ 1 ] = ( √5 )^{1} [ Φ²Ψ² ΦΨ ] [ ΦΨ 0 ] = [ Φ+Ψ 1 ] [ 1 0 ] = [ 1 1 ] [ 1 0 ] = M So the sanity check holds. Now we have everything we need to calculate M^{n}_{1,2}: M^{n} = UΛ^{n}U^{1} = ( √5 )^{1} [ Φ Ψ ] . [ Φ^{n} 0 ] . [ 1 Ψ ] [ 1 1 ] [ 0 Ψ^{n} ] [ 1 Φ ] = ( √5 )^{1} [ Φ Ψ ] . [ Φ^{n} ΨΦ^{n} ] [ 1 1 ] [ Ψ^{n} Ψ^{n}Φ ] = ( √5 )^{1} [ Φ Ψ ] . [ Φ^{n} Φ^{n1} ] [ 1 1 ] [ Ψ^{n} Ψ^{n1} ] as ΨΦ = 1 = ( √5 )^{1} [ Φ^{n+1}Ψ^{n+1} Φ^{n}Ψ^{n} ] [ Φ^{n}Ψ^{n} Φ^{n1}Ψ^{n1} ] so fib(n) = M^{n}_{1,2} = ( Φ^{n}  (1Φ)^{n} ) / √5 Which agrees with the formula given elsewhere. You can derive it from a recurrance relation, but in engineering computing and simulation calculating the eigenvalues and eigenvectors of large matrices is an important activity, as it gives stability and harmonics of systems of equations, as well as allowing raising matrices to high powers efficiently. 


If you want the exact number (which is a "bignum", rather than an int/float), then I'm afraid that It's impossible! As stated above, the formula for Fibonacci numbers is:
How many digits is
Since the requested result is of O(n), it can't be calculated in less than O(n) time. If you only want the lower digits of the answer, then it is possible to calculate in sublinear time using the matrix exponentiation method. 


One of the exercises in SICP is about this, which has the answer described here. In the imperative style, the program would look something like Function Fib(count) a ← 1 b ← 0 p ← 0 q ← 1 While count > 0 Do If Even(count) Then p ← p² + q² q ← 2pq + q² count ← count ÷ 2 Else a ← bq + aq + ap b ← bp + aq count ← count  1 End If End While Return b End Function 


You can do it by exponentiating a matrix of integers as well. If you have the matrix
then EDIT: Of course, depending on the type of answer you want, you may be able to get away with a constanttime algorithm. Like the other formulas show, the SECOND EDIT: Doing the matrix exponential with an eigendecomposition first is exactly equivalent to JDunkerly's solution below. The eigenvalues of this matrix are the 


Wikipedia has a closed form solution http://en.wikipedia.org/wiki/Fibonacci_number Or in c#:



For really big ones, this recursive function works. It uses the following equations:
You need a library that lets you work with big integers. I use the BigInteger library from https://mattmccutchen.net/bigint/. Start with an array of of fibonacci numbers. Use fibs[0]=0, fibs[1]=1, fibs[2]=1, fibs[3]=2, fibs[4]=3, etc. In this example, I use an array of the first 501 (counting 0). You can find the first 500 nonzero Fibonacci numbers here: http://home.hiwaay.net/~jalison/Fib500.html. It takes a little editing to put it in the right format, but that is not too hard. Then you can find any Fibonacci number using this function (in C):
I've tested this for the 25,000th Fibonacci number and the like. 


Here's my recursive version that recurses log(n) times. I think that it's easiest to read in the recursive form:
It works because you can compute The base case and the odd case are simple. To derive the even case, start with a,b,c as consecutive fibonacci values (eg, 8,5,3) and write them in a matrix, with a = b+c. Notice:
From that, we see that a matrix of the first three fibonacci numbers, times a matrix of any three consecutive fibonacci numbers, equals the next. So we know that:
So:
Simplifying the right hand side leads to the even case. 


using R



see divide and conquer algorithm here The link has pseudocode for the matrix exponentiation mentioned in some of the other answers for this question. 


Fixed point arithmetic is inaccurate. Jason's C# code gives incorrect answer for n = 71 (308061521170130 instead of 308061521170129) and beyond. For correct answer, use a computational algebra system. Sympy is such a library for Python. There's an interactive console at http://live.sympy.org/ . Copy and paste this function
Then calculate
You might like to try inspecting 

