Crates.io | ark-poly |
lib.rs | ark-poly |
version | 0.5.0 |
source | src |
created_at | 2021-03-24 21:37:57.815241 |
updated_at | 2024-10-28 11:03:02.601735 |
description | A library for efficient polynomial arithmetic via FFTs over finite fields |
homepage | https://arkworks.rs |
repository | https://github.com/arkworks-rs/algebra |
max_upload_size | |
id | 373069 |
size | 249,451 |
This crate implements traits and implementations for polynomials, FFT-friendly subsets of a field (dubbed "domains"), and FFTs for these domains.
The polynomial
module provides the following traits for defining polynomials in coefficient form:
Polynomial
:
Requires implementors to support common operations on polynomials,
such as Add
, Sub
, Zero
, evaluation at a point, degree, etc,
and defines methods to serialize to and from the coefficient representation of the polynomial.DenseUVPolynomial
:
Specifies that a Polynomial
is actually a univariate polynomial.DenseMVPolynomial
:
Specifies that a Polynomial
is actually a multivariate polynomial.This crate also provides the following data structures that implement these traits:
univariate/DensePolynomial
:
Represents degree d
univariate polynomials via a list of d + 1
coefficients.
This struct implements the DenseUVPolynomial
trait.univariate/SparsePolynomial
:
Represents degree d
univariate polynomials via a list containing all non-zero monomials.
This should only be used when most coefficients of the polynomial are zero.
This struct implements the Polynomial
trait
(but not the DenseUVPolynomial
trait).multivariate/SparsePolynomial
:
Represents multivariate polynomials via a list containing all non-zero monomials.This crate also provides the univariate/DenseOrSparsePolynomial
enum, which allows the user to abstract over the type of underlying univariate polynomial (dense or sparse).
use ark_poly::{
polynomial::multivariate::{SparsePolynomial, SparseTerm, Term},
DenseMVPolynomial, Polynomial,
};
use ark_test_curves::bls12_381::Fq;
// Create a multivariate polynomial in 3 variables, with 4 terms:
// f(x_0, x_1, x_2) = 2*x_0^3 + x_0*x_2 + x_1*x_2 + 5
let poly = SparsePolynomial::from_coefficients_vec(
3,
vec![
(Fq::from(2), SparseTerm::new(vec![(0, 3)])),
(Fq::from(1), SparseTerm::new(vec![(0, 1), (2, 1)])),
(Fq::from(1), SparseTerm::new(vec![(1, 1), (2, 1)])),
(Fq::from(5), SparseTerm::new(vec![])),
],
);
assert_eq!(poly.evaluate(&vec![Fq::from(2), Fq::from(3), Fq::from(6)]), Fq::from(51));
The evaluations
module provides data structures to represent univariate polynomials in lagrange form.
univariate/Evaluations
Represents a univariate polynomial in evaluation form, which can be used for FFT.The evaluations
module also provides the following traits for defining multivariate polynomials in lagrange form:
multivariate/multilinear/MultilinearExtension
Specifies a multilinear polynomial evaluated over boolean hypercube.This crate provides some data structures to implement these traits.
multivariate/multilinear/DenseMultilinearExtension
Represents multilinear extension via a list of evaluations over boolean hypercube.
multivariate/multilinear/SparseMultilinearExtension
Represents multilinear extension via a list of non-zero evaluations over boolean hypercube.
use ark_test_curves::bls12_381::Fq;
use ark_poly::{DenseMultilinearExtension, MultilinearExtension, SparseMultilinearExtension};
use ark_poly::{
polynomial::multivariate::{SparsePolynomial, SparseTerm, Term},
DenseMVPolynomial, Polynomial,
};
use ark_std::One;
// Create a multivariate polynomial in 3 variables:
// f(x_0, x_1, x_2) = 2*x_0^3 + x_0*x_2 + x_1*x_2
let f = SparsePolynomial::from_coefficients_vec(
3,
vec![
(Fq::from(2), SparseTerm::new(vec![(0, 3)])),
(Fq::from(1), SparseTerm::new(vec![(0, 1), (2, 1)])),
(Fq::from(1), SparseTerm::new(vec![(1, 1), (2, 1)])),
(Fq::from(0), SparseTerm::new(vec![])),
],
);
// g is the multilinear extension of f, defined by the evaluations of f on the Boolean hypercube:
// f(0, 0, 0) = 2*0^3 + 0*0 + 0*0 = 0
// f(1, 0, 0) = 2*1^3 + 0*0 + 0*0 = 2
// ...
// f(1, 1, 1) = 2*1^3 + 1*1 + 1*1 = 4
let g: DenseMultilinearExtension<Fq> = DenseMultilinearExtension::from_evaluations_vec(
3,
vec![
Fq::from(0),
Fq::from(2),
Fq::from(0),
Fq::from(2),
Fq::from(0),
Fq::from(3),
Fq::from(1),
Fq::from(4),
]
);
// when evaluated at any point within the Boolean hypercube, f and g should be equal
let point_within_hypercube = &vec![Fq::from(0), Fq::from(1), Fq::from(1)];
assert_eq!(f.evaluate(&point_within_hypercube), g.evaluate(&point_within_hypercube));
// We can also define a MLE g'(x_0, x_1, x_2) by providing the list of non-zero evaluations:
let g_prime: SparseMultilinearExtension<Fq> = SparseMultilinearExtension::from_evaluations(
3,
&vec![
(1, Fq::from(2)),
(3, Fq::from(2)),
(5, Fq::from(3)),
(6, Fq::from(1)),
(7, Fq::from(4)),
]
);
// at any random point (X0, X1, X2), g == g' with negligible probability, unless they are the same function
let random_point = &vec![Fq::from(123), Fq::from(456), Fq::from(789)];
assert_eq!(g_prime.evaluate(&random_point), g.evaluate(&random_point));
TODO