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Sparse dynamic representation of multivariate polynomials that can be used with MultivariatePolynomials (see the documentation there for more information). Both commutative and non-commutative variables are supported. The following types are defined:
Variable{V,M}: A variable which is commutative with*whenV<:Commutative. Commutative variables are created using the@polyvarmacro, e.g.@polyvar x y,@polyvar x[1:8]and non-commutative variables are created likewise using the@ncpolyvarmacro. The type parameterMis the monomial ordering.Monomial{V,M}: A product of variables: e.g.x*y^2.MultivariatePolynomials.Term{T,Monomial{V,M}}: A product between an element of typeTand aMonomial{V,M}, e.g2x,3.0x*y^2.Polynomial{V,M,T}: A sum ofTerm{T,Monomial{V,M}}, e.g.2x + 3.0x*y^2 + y.
All common algebraic operations between those types are designed to be as efficient as possible without doing any assumption on T.
Typically, one imagine T to be a subtype of Number but it can be anything.
This is useful for example in the package PolyJuMP where T is often an affine expression of JuMP decision variables.
The commutativity of T with * is not assumed, even if it is the coefficient of a monomial of commutative variables.
However, commutativity of T and of the variables + is always assumed.
This allows to keep the terms sorted (Graded Lexicographic order is used) in polynomial and measure which enables more efficient operations.
Below is a simple usage example
julia> using DynamicPolynomials
julia> @polyvar x y # assigns x (resp. y) to a variable of name x (resp. y)
(x, y)
julia> p = 2x + 3.0x*y^2 + y # define a polynomial in variables x and y
y + 2.0x + 3.0xy²
julia> differentiate(p, x) # compute the derivative of p with respect to x
2.0 + 3.0y²
julia> differentiate.(p, (x, y)) # compute the gradient of p
(2.0 + 3.0y², 1.0 + 6.0xy)
julia> p((x, y)=>(y, x)) # replace any x by y and y by x
2.0y + x + 3.0x²y
julia> subs(p, y=>x^2) # replace any occurence of y by x^2
2.0x + x² + 3.0x⁵
julia> p(x=>1, y=>2) # evaluate p at [1, 2]
16.0Below is an example with @polyvar x[1:n]
julia> n = 3;
julia> @polyvar x[1:n] # assign x to a tuple of variables x1, x2, x3
(Variable{DynamicPolynomials.Commutative{DynamicPolynomials.CreationOrder}, Graded{LexOrder}}[x₁, x₂, x₃],)
julia> p = sum(x .* x) # compute the sum of squares
x₃² + x₂² + x₁²
julia> subs(p, x[1]=>2, x[3]=>3) # make a partial substitution
13 + x₂²
julia> A = reshape(1:9, 3, 3);
julia> p(x => A * vec(x)) # corresponds to dot(A*x, A*x), need vec to convert the tuple to a vector
194x₃² + 244x₂x₃ + 77x₂² + 100x₁x₃ + 64x₁x₂ + 14x₁²The terms of a polynomial are ordered in increasing monomial order. The default
ordering is the graded lex order but it can be modified using the
monomial_order keyword argument of the @polyvar macro.
We illustrate this below by borrowing the example p. 59 of "Ideals, Varieties and Algorithms"
of Cox, Little and O'Shea:
julia> p(x, y, z) = 4x*y^2*z + 4z^2 - 5x^3 + 7x^2*z^2
p (generic function with 1 method)
julia> @polyvar x y z monomial_order = LexOrder
(x, y, z)
julia> p(x, y, z)
4z² + 4xy²z + 7x²z² - 5x³
julia> @polyvar x y z
(x, y, z)
julia> p(x, y, z)
4z² - 5x³ + 4xy²z + 7x²z²
julia> @polyvar x y z monomial_order = Graded{Reverse{InverseLexOrder}}
(x, y, z)
julia> p(x, y, z)
4z² - 5x³ + 7x²z² + 4xy²zNote that, when doing substitution, it is required to give the Variable ordering that is meant.
Indeed, the ordering between the Variable is not alphabetical but rather by order of creation
which can be undeterministic with parallel computing.
Therefore, this order cannot be used for substitution, even as a default (see here for a discussion about this).