This bc
uses the math algorithms below:
This bc
uses brute force addition, which is linear (O(n)
) in the number of digits.
This bc
uses brute force subtraction, which is linear (O(n)
) in the number of digits.
This bc
uses two algorithms: Karatsuba and brute force.
Karatsuba is used for “large” numbers. (“Large” numbers are defined as any number with BC_NUM_KARATSUBA_LEN
digits or larger. BC_NUM_KARATSUBA_LEN
has a sane default, but may be configured by the user.) Karatsuba, as implemented in this bc
, is superlinear but subpolynomial (bounded by O(n^log_2(3))
).
Brute force multiplication is used below BC_NUM_KARATSUBA_LEN
digits. It is polynomial (O(n^2)
), but since Karatsuba requires both more intermediate values (which translate to memory allocations) and a few more additions, there is a “break even” point in the number of digits where brute force multiplication is faster than Karatsuba. There is a script ($ROOT/scripts/karatsuba.py
) that will find the break even point on a particular machine.
WARNING: The Karatsuba script requires Python 3.
This bc
uses Algorithm D (long division). Long division is polynomial (O(n^2)
), but unlike Karatsuba, any division “divide and conquer” algorithm reaches its “break even” point with significantly larger numbers. “Fast” algorithms become less attractive with division as this operation typically reduces the problem size.
While the implementation of long division may appear to use the subtractive chunking method, it only uses subtraction to find a quotient digit. It avoids unnecessary work by aligning digits prior to performing subtraction and finding a starting guess for the quotient.
Subtraction was used instead of multiplication for two reasons:
bc
is small code).Using multiplication would make division have the even worse algorithmic complexity of O(n^(2*log_2(3)))
(best case) and O(n^3)
(worst case).
This bc
implements Exponentiation by Squaring, which (via Karatsuba) has a complexity of O((n*log(n))^log_2(3))
which is favorable to the O((n*log(n))^2)
without Karatsuba.
This bc
implements the fast algorithm Newton's Method (also known as the Newton-Raphson Method, or the Babylonian Method) to perform the square root operation.
Its complexity is O(log(n)*n^2)
as it requires one division per iteration, and it doubles the amount of correct digits per iteration.
bc
Math Library Only)This bc
uses the series
x - x^3/3! + x^5/5! - x^7/7! + ...
to calculate sin(x)
and cos(x)
. It also uses the relation
cos(x) = sin(x + pi/2)
to calculate cos(x)
. It has a complexity of O(n^3)
.
Note: this series has a tendency to occasionally produce an error of 1 ULP. (It is an unfortunate side effect of the algorithm, and there isn't any way around it; this article explains why calculating sine and cosine, and the other transcendental functions below, within less than 1 ULP is nearly impossible and unnecessary.) Therefore, I recommend that users do their calculations with the precision (scale
) set to at least 1 greater than is needed.
bc
Math Library Only)This bc
uses the series
1 + x + x^2/2! + x^3/3! + ...
to calculate e^x
. Since this only works when x
is small, it uses
e^x = (e^(x/2))^2
to reduce x
.
It has a complexity of O(n^3)
.
Note: this series can also produce errors of 1 ULP, so I recommend users do their calculations with the precision (scale
) set to at least 1 greater than is needed.
bc
Math Library Only)This bc
uses the series
a + a^3/3 + a^5/5 + ...
(where a
is equal to (x - 1)/(x + 1)
) to calculate ln(x)
when x
is small and uses the relation
ln(x^2) = 2 * ln(x)
to sufficiently reduce x
.
It has a complexity of O(n^3)
.
Note: this series can also produce errors of 1 ULP, so I recommend users do their calculations with the precision (scale
) set to at least 1 greater than is needed.
bc
Math Library Only)This bc
uses the series
x - x^3/3 + x^5/5 - x^7/7 + ...
to calculate atan(x)
for small x
and the relation
atan(x) = atan(c) + atan((x - c)/(1 + x * c))
to reduce x
to small enough. It has a complexity of O(n^3)
.
Note: this series can also produce errors of 1 ULP, so I recommend users do their calculations with the precision (scale
) set to at least 1 greater than is needed.
bc
Math Library Only)This bc
uses the series
x^n/(2^n * n!) * (1 - x^2 * 2 * 1! * (n + 1)) + x^4/(2^4 * 2! * (n + 1) * (n + 2)) - ...
to calculate the bessel function (integer order only).
It also uses the relation
j(-n,x) = (-1)^n * j(n,x)
to calculate the bessel when x < 0
, It has a complexity of O(n^3)
.
Note: this series can also produce errors of 1 ULP, so I recommend users do their calculations with the precision (scale
) set to at least 1 greater than is needed.
dc
Only)This dc
uses the Memory-efficient method to compute modular exponentiation. The complexity is O(e*n^2)
, which may initially seem inefficient, but n
is kept small by maintaining small numbers. In practice, it is extremely fast.
bc
Math Library 2 Only)This is implemented in the function p(x,y)
.
The algorithm used is to use the formula e(y*l(x))
.
It has a complexity of O(n^3)
because both e()
and l()
do.
bc
Math Library 2 Only)This is implemented in the function r(x,p)
.
The algorithm is a simple method to check if rounding away from zero is necessary, and if so, adds 1e10^p
.
It has a complexity of O(n)
because of add.
bc
Math Library 2 Only)This is implemented in the function ceil(x,p)
.
The algorithm is a simple add of one less decimal place than p
.
It has a complexity of O(n)
because of add.
bc
Math Library 2 Only)This is implemented in the function f(n)
.
The algorithm is a simple multiplication loop.
It has a complexity of O(n^3)
because of linear amount of O(n^2)
multiplications.
bc
Math Library 2 Only)This is implemented in the function perm(n,k)
.
The algorithm is to use the formula n!/(n-k)!
.
It has a complexity of O(n^3)
because of the division and factorials.
bc
Math Library 2 Only)This is implemented in the function comb(n,r)
.
The algorithm is to use the formula n!/r!*(n-r)!
.
It has a complexity of O(n^3)
because of the division and factorials.
bc
Math Library 2 Only)This is implemented in the function log(x,b)
.
The algorithm is to use the formula l(x)/l(b)
with double the scale
because there is no good way of knowing how many digits of precision are needed when switching bases.
It has a complexity of O(n^3)
because of the division and l()
.
bc
Math Library 2 Only)This is implemented in the function l2(x)
.
This is a convenience wrapper around log(x,2)
.
bc
Math Library 2 Only)This is implemented in the function l10(x)
.
This is a convenience wrapper around log(x,10)
.
bc
Math Library 2 Only)This is implemented in the function root(x,n)
.
The algorithm is Newton's method. The initial guess is calculated as 10^ceil(length(x)/n)
.
Like square root, its complexity is O(log(n)*n^2)
as it requires one division per iteration, and it doubles the amount of correct digits per iteration.
bc
Math Library 2 Only)This is implemented in the function cbrt(x)
.
This is a convenience wrapper around root(x,3)
.
bc
Math Library 2 Only)This is implemented in the function gcd(a,b)
.
The algorithm is an iterative version of the Euclidean Algorithm.
It has a complexity of O(n^4)
because it has a linear number of divisions.
This function ensures that a
is always bigger than b
before starting the algorithm.
bc
Math Library 2 Only)This is implemented in the function lcm(a,b)
.
The algorithm uses the formula a*b/gcd(a,b)
.
It has a complexity of O(n^4)
because of gcd()
.
bc
Math Library 2 Only)This is implemented in the function pi(s)
.
The algorithm uses the formula 4*a(1)
.
It has a complexity of O(n^3)
because of arctangent.
bc
Math Library 2 Only)This is implemented in the function t(x)
.
The algorithm uses the formula s(x)/c(x)
.
It has a complexity of O(n^3)
because of sine, cosine, and division.
bc
Math Library 2 Only)This is implemented in the function a2(y,x)
.
The algorithm uses the standard formulas.
It has a complexity of O(n^3)
because of arctangent.