winter_air/air/coefficients.rs
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// Copyright (c) Facebook, Inc. and its affiliates.
//
// This source code is licensed under the MIT license found in the
// LICENSE file in the root directory of this source tree.
use alloc::vec::Vec;
use math::FieldElement;
// CONSTRAINT COMPOSITION COEFFICIENTS
// ================================================================================================
/// Coefficients used in construction of constraint composition polynomial.
///
/// These coefficients are created by the
/// [Air::get_constraint_composition_coefficients()](crate::Air::get_constraint_composition_coefficients)
/// function. In the interactive version of the protocol, the verifier draws these coefficients
/// uniformly at random from the extension field of the protocol.
///
/// There is one coefficient for each constraint so that we can compute a random linear
/// combination of constraints as:
/// $$
/// \sum_{i = 0}^k{\alpha_i \cdot C_i(x)}
/// $$
/// where:
/// * $\alpha_i$ is the coefficient for the $i$th constraint.
/// * $C_i(x)$ is an evaluation of the $i$th constraint at $x$.
///
/// The coefficients are separated into two lists: one for transition constraints and another one
/// for boundary constraints. This separation is done for convenience only.
#[derive(Debug, Clone)]
pub struct ConstraintCompositionCoefficients<E: FieldElement> {
pub transition: Vec<E>,
pub boundary: Vec<E>,
pub lagrange: Option<LagrangeConstraintsCompositionCoefficients<E>>,
}
/// Stores the constraint composition coefficients for the Lagrange kernel transition and boundary
/// constraints.
#[derive(Debug, Clone)]
pub struct LagrangeConstraintsCompositionCoefficients<E: FieldElement> {
pub transition: Vec<E>,
pub boundary: E,
}
// DEEP COMPOSITION COEFFICIENTS
// ================================================================================================
/// Coefficients used in construction of DEEP composition polynomial.
///
/// These coefficients are created by the
/// [Air::get_deep_composition_coefficients()](crate::Air::get_deep_composition_coefficients)
/// function. In the interactive version of the protocol, the verifier draws these coefficients
/// uniformly at random from the extension field of the protocol.
///
/// The coefficients are used in computing the DEEP composition polynomial as:
/// $$
/// Y(x) = \sum_{i=0}^k{(
/// \alpha_i \cdot (\frac{T_i(x) - T_i(z)}{x - z} +
/// \frac{T_i(x) - T_i(z \cdot g)}{x - z \cdot g})
/// )} + \sum_{j=0}^m{\beta_j \cdot \frac{H_j(x) - H_j(z)}{x - z}}
/// $$
/// where:
/// * $z$ is an out-of-domain point drawn randomly from the entire field. In the interactive
/// version of the protocol, $z$ is provided by the verifier.
/// * $g$ is the generator of the trace domain. This is the $n$th root of unity where
/// $n$ is the length of the execution trace.
/// * $T_i(x)$ is an evaluation of the $i$th trace polynomial at $x$, and $k$ is the total
/// number of trace polynomials (which is equal to the width of the execution trace).
/// * $H_i(x)$ is an evaluation of the $j$th constraint composition column polynomial at $x$,
/// and $m$ is the total number of column polynomials.
/// * $\alpha_i$ is a composition coefficient for the $i$th trace polynomial.
/// * $\beta_j$ is a composition coefficient for the $j$th constraint column polynomial.
///
/// The soundness of the resulting protocol with batching as above is given in Theorem 8 in
/// https://eprint.iacr.org/2022/1216 and it relies on two points:
///
/// 1. The evaluation proofs for each trace polynomial at $z$ and $g \cdot z$ can be batched using
/// the non-normalized Lagrange kernel over the set $\{z, g \cdot z\}$. This, however, requires
/// that the FRI protocol is run with a larger agreement parameter
/// $\alpha^{+} = (1 + 1/2m)\cdot\sqrt{\rho^{+}}$ where $\rho^{+} := \frac{\kappa + 2}{\nu}$,
/// $\kappa$ and $\nu$ are the length of the execution trace and the LDE domain size,
/// respectively.
/// 2. The resulting $Y(x)$ do not need to be degree adjusted but the soundness error of the
/// protocol needs to be updated. For most combinations of batching parameters, this leads to a
/// negligible increase in soundness error. The formula for the updated error can be found in
/// Theorem 8 of https://eprint.iacr.org/2022/1216.
///
/// In the case when the trace polynomials contain a trace polynomial corresponding to a Lagrange
/// kernel column, the above expression of $Y(x)$ includes the additional term given by
///
/// $$
/// \gamma \cdot \frac{T_l(x) - p_S(x)}{Z_S(x)}
/// $$
///
/// where:
///
/// 1. $\gamma$ is the composition coefficient for the Lagrange kernel trace polynomial.
/// 2. $T_l(x) is the evaluation of the Lagrange trace polynomial at $x$.
/// 3. $S$ is the set of opening points for the Lagrange kernel i.e.,
/// $S := {z, z.g, z.g^2, ..., z.g^{2^{log_2(\nu) - 1}}}$.
/// 4. $p_S(X)$ is the polynomial of minimal degree interpolating the set ${(a, T_l(a)): a \in S}$.
/// 5. $Z_S(X)$ is the polynomial of minimal degree vanishing over the set $S$.
///
/// Note that, if a Lagrange kernel trace polynomial is present, then $\rho^{+}$ from above should
/// be updated to be $\rho^{+} := \frac{\kappa + log_2(\nu) + 1}{\nu}$.
#[derive(Debug, Clone)]
pub struct DeepCompositionCoefficients<E: FieldElement> {
/// Trace polynomial composition coefficients $\alpha_i$.
pub trace: Vec<E>,
/// Constraint column polynomial composition coefficients $\beta_j$.
pub constraints: Vec<E>,
/// Lagrange kernel trace polynomial composition coefficient $\gamma$.
pub lagrange: Option<E>,
}