src/nalgebra_support.rs

Mon, 12 May 2025 22:48:16 -0500

author
Tuomo Valkonen <tuomov@iki.fi>
date
Mon, 12 May 2025 22:48:16 -0500
branch
dev
changeset 137
d5dfcb6abcf5
parent 136
22fd33834ab7
permissions
-rw-r--r--

instantiated-fubar

/*!
Integration with nalgebra.

This module mainly implements [`Euclidean`], [`Norm`], [`Linear`], etc. for [`nalgebra`]
matrices and vectors.
It also provides [`ToNalgebraRealField`] as a vomit-inducingly ugly workaround to nalgebra
force-feeding its own versions of the same basic mathematical methods on `f32` and `f64` as
[`num_traits`] does.
*/

use crate::euclidean::*;
use crate::instance::Instance;
use crate::linops::*;
use crate::mapping::{BasicDecomposition, Space};
use crate::norms::*;
use crate::types::Float;
use nalgebra::base::allocator::Allocator;
use nalgebra::base::constraint::{SameNumberOfColumns, SameNumberOfRows, ShapeConstraint};
use nalgebra::base::dimension::*;
use nalgebra::{
    ClosedAddAssign, ClosedMulAssign, DefaultAllocator, Dim, LpNorm, Matrix, OMatrix, OVector,
    RealField, Scalar, SimdComplexField, Storage, StorageMut, UniformNorm, Vector,
};
use num_traits::identities::{One, Zero};
use std::ops::Mul;

impl<SM, N, M, E> Space for Matrix<E, N, M, SM>
where
    SM: Storage<E, N, M> + Clone,
    N: Dim,
    M: Dim,
    E: Scalar + Zero + One + ClosedAddAssign + ClosedMulAssign,
    DefaultAllocator: Allocator<N, M>,
{
    type Decomp = BasicDecomposition;
}

impl<SM, SV, N, M, K, E> Mapping<Matrix<E, M, K, SV>> for Matrix<E, N, M, SM>
where
    SM: Storage<E, N, M>,
    SV: Storage<E, M, K> + Clone,
    N: Dim,
    M: Dim,
    K: Dim,
    E: Scalar + Zero + One + ClosedAddAssign + ClosedMulAssign,
    DefaultAllocator: Allocator<N, K>,
    DefaultAllocator: Allocator<M, K>,
    DefaultAllocator: Allocator<N, M>,
    DefaultAllocator: Allocator<M, N>,
{
    type Codomain = OMatrix<E, N, K>;

    #[inline]
    fn apply<I: Instance<Matrix<E, M, K, SV>>>(&self, x: I) -> Self::Codomain {
        x.either(|owned| self.mul(owned), |refr| self.mul(refr))
    }
}

impl<'a, SM, SV, N, M, K, E> Linear<Matrix<E, M, K, SV>> for Matrix<E, N, M, SM>
where
    SM: Storage<E, N, M>,
    SV: Storage<E, M, K> + Clone,
    N: Dim,
    M: Dim,
    K: Dim,
    E: Scalar + Zero + One + ClosedAddAssign + ClosedMulAssign,
    DefaultAllocator: Allocator<N, K>,
    DefaultAllocator: Allocator<M, K>,
    DefaultAllocator: Allocator<N, M>,
    DefaultAllocator: Allocator<M, N>,
{
}

impl<SM, SV1, SV2, N, M, K, E> GEMV<E, Matrix<E, M, K, SV1>, Matrix<E, N, K, SV2>>
    for Matrix<E, N, M, SM>
where
    SM: Storage<E, N, M>,
    SV1: Storage<E, M, K> + Clone,
    SV2: StorageMut<E, N, K>,
    N: Dim,
    M: Dim,
    K: Dim,
    E: Scalar + Zero + One + Float,
    DefaultAllocator: Allocator<N, K>,
    DefaultAllocator: Allocator<M, K>,
    DefaultAllocator: Allocator<N, M>,
    DefaultAllocator: Allocator<M, N>,
{
    #[inline]
    fn gemv<I: Instance<Matrix<E, M, K, SV1>>>(
        &self,
        y: &mut Matrix<E, N, K, SV2>,
        α: E,
        x: I,
        β: E,
    ) {
        x.eval(|x̃| Matrix::gemm(y, α, self, x̃, β))
    }

    #[inline]
    fn apply_mut<'a, I: Instance<Matrix<E, M, K, SV1>>>(&self, y: &mut Matrix<E, N, K, SV2>, x: I) {
        x.eval(|x̃| self.mul_to(x̃, y))
    }
}

impl<SM, SV1, M, E> AXPY<Vector<E, M, SV1>> for Vector<E, M, SM>
where
    SM: StorageMut<E, M> + Clone,
    SV1: Storage<E, M> + Clone,
    M: Dim,
    E: Scalar + Zero + One + Float,
    DefaultAllocator: Allocator<M>,
{
    type Field = E;
    type Owned = OVector<E, M>;

    #[inline]
    fn axpy<I: Instance<Vector<E, M, SV1>>>(&mut self, α: E, x: I, β: E) {
        x.eval(|x̃| Matrix::axpy(self, α, x̃, β))
    }

    #[inline]
    fn copy_from<I: Instance<Vector<E, M, SV1>>>(&mut self, y: I) {
        y.eval(|ỹ| Matrix::copy_from(self, ỹ))
    }

    #[inline]
    fn set_zero(&mut self) {
        self.iter_mut().for_each(|e| *e = E::ZERO);
    }

    #[inline]
    fn similar_origin(&self) -> Self::Owned {
        OVector::zeros_generic(M::from_usize(self.len()), Const)
    }
}

/* Implemented automatically as Euclidean.
impl<SM,M,E> Projection<E, L2> for Vector<E,M,SM>
where SM: StorageMut<E,M> + Clone,
      M : Dim, E : Scalar + Zero + One + Float + RealField,
      DefaultAllocator : Allocator<M> {
    #[inline]
    fn proj_ball_mut(&mut self, ρ : E, _ : L2) {
        let n = self.norm(L2);
        if n > ρ {
            self.iter_mut().for_each(|v| *v *= ρ/n)
        }
    }
}*/

impl<SM, M, E> Projection<E, Linfinity> for Vector<E, M, SM>
where
    SM: StorageMut<E, M> + Clone,
    M: Dim,
    E: Scalar + Zero + One + Float + RealField,
    DefaultAllocator: Allocator<M>,
{
    #[inline]
    fn proj_ball_mut(&mut self, ρ: E, _: Linfinity) {
        self.iter_mut()
            .for_each(|v| *v = num_traits::clamp(*v, -ρ, ρ))
    }
}

impl<'own, SV1, SV2, SM, N, M, K, E> Adjointable<Matrix<E, M, K, SV1>, Matrix<E, N, K, SV2>>
    for Matrix<E, N, M, SM>
where
    SM: Storage<E, N, M>,
    SV1: Storage<E, M, K> + Clone,
    SV2: Storage<E, N, K> + Clone,
    N: Dim,
    M: Dim,
    K: Dim,
    E: Scalar + Zero + One + SimdComplexField,
    DefaultAllocator: Allocator<N, K>,
    DefaultAllocator: Allocator<M, K>,
    DefaultAllocator: Allocator<N, M>,
    DefaultAllocator: Allocator<M, N>,
{
    type AdjointCodomain = OMatrix<E, M, K>;
    type Adjoint<'a>
        = OMatrix<E, M, N>
    where
        SM: 'a;

    #[inline]
    fn adjoint(&self) -> Self::Adjoint<'_> {
        Matrix::adjoint(self)
    }
}

/// This function is [`nalgebra::EuclideanNorm::metric_distance`] without the `sqrt`.
#[inline]
fn metric_distance_squared<T, R1, C1, S1, R2, C2, S2>(
    /*ed: &EuclideanNorm,*/
    m1: &Matrix<T, R1, C1, S1>,
    m2: &Matrix<T, R2, C2, S2>,
) -> T::SimdRealField
where
    T: SimdComplexField,
    R1: Dim,
    C1: Dim,
    S1: Storage<T, R1, C1>,
    R2: Dim,
    C2: Dim,
    S2: Storage<T, R2, C2>,
    ShapeConstraint: SameNumberOfRows<R1, R2> + SameNumberOfColumns<C1, C2>,
{
    m1.zip_fold(m2, T::SimdRealField::zero(), |acc, a, b| {
        let diff = a - b;
        acc + diff.simd_modulus_squared()
    })
}

// TODO: should allow different input storages in `Euclidean`.

impl<E, M, S> Euclidean<E> for Vector<E, M, S>
where
    M: Dim,
    S: StorageMut<E, M> + Clone,
    E: Float + Scalar + Zero + One + RealField,
    DefaultAllocator: Allocator<M>,
{
    #[inline]
    fn dot<I: Instance<Self>>(&self, other: I) -> E {
        other.eval(|r| Vector::<E, M, S>::dot(self, r))
    }

    #[inline]
    fn norm2_squared(&self) -> E {
        Vector::<E, M, S>::norm_squared(self)
    }

    #[inline]
    fn dist2_squared<I: Instance<Self>>(&self, other: I) -> E {
        other.eval(|r| metric_distance_squared(self, r))
    }
}

impl<E, M, S> StaticEuclidean<E> for Vector<E, M, S>
where
    M: DimName,
    S: StorageMut<E, M> + Clone,
    E: Float + Scalar + Zero + One + RealField,
    DefaultAllocator: Allocator<M>,
{
    #[inline]
    fn origin() -> OVector<E, M> {
        OVector::zeros()
    }
}

/// The default norm for `Vector` is [`L2`].
impl<E, M, S> Normed<E> for Vector<E, M, S>
where
    M: Dim,
    S: Storage<E, M> + Clone,
    E: Float + Scalar + Zero + One + RealField,
    DefaultAllocator: Allocator<M>,
{
    type NormExp = L2;

    #[inline]
    fn norm_exponent(&self) -> Self::NormExp {
        L2
    }

    #[inline]
    fn is_zero(&self) -> bool {
        Vector::<E, M, S>::norm_squared(self) == E::ZERO
    }
}

impl<E, M, S> HasDual<E> for Vector<E, M, S>
where
    M: Dim,
    S: Storage<E, M> + Clone,
    E: Float + Scalar + Zero + One + RealField,
    DefaultAllocator: Allocator<M>,
{
    // TODO: Doesn't work with different storage formats.
    type DualSpace = Self;
}

impl<E, M, S> Norm<L1, E> for Vector<E, M, S>
where
    M: Dim,
    S: Storage<E, M>,
    E: Float + Scalar + Zero + One + RealField,
    DefaultAllocator: Allocator<M>,
{
    #[inline]
    fn norm(&self, _: L1) -> E {
        nalgebra::Norm::norm(&LpNorm(1), self)
    }
}

impl<E, M, S> Dist<E, L1> for Vector<E, M, S>
where
    M: Dim,
    S: Storage<E, M> + Clone,
    E: Float + Scalar + Zero + One + RealField,
    DefaultAllocator: Allocator<M>,
{
    #[inline]
    fn dist<I: Instance<Self>>(&self, other: I, _: L1) -> E {
        other.eval(|r| nalgebra::Norm::metric_distance(&LpNorm(1), self, r))
    }
}

impl<E, M, S> Norm<L2, E> for Vector<E, M, S>
where
    M: Dim,
    S: Storage<E, M>,
    E: Float + Scalar + Zero + One + RealField,
    DefaultAllocator: Allocator<M>,
{
    #[inline]
    fn norm(&self, _: L2) -> E {
        nalgebra::Norm::norm(&LpNorm(2), self)
    }
}

impl<E, M, S> Dist<E, L2> for Vector<E, M, S>
where
    M: Dim,
    S: Storage<E, M> + Clone,
    E: Float + Scalar + Zero + One + RealField,
    DefaultAllocator: Allocator<M>,
{
    #[inline]
    fn dist<I: Instance<Self>>(&self, other: I, _: L2) -> E {
        other.eval(|r| nalgebra::Norm::metric_distance(&LpNorm(2), self, r))
    }
}

impl<E, M, S> Norm<Linfinity, E> for Vector<E, M, S>
where
    M: Dim,
    S: Storage<E, M>,
    E: Float + Scalar + Zero + One + RealField,
    DefaultAllocator: Allocator<M>,
{
    #[inline]
    fn norm(&self, _: Linfinity) -> E {
        nalgebra::Norm::norm(&UniformNorm, self)
    }
}

impl<E, M, S> Dist<E, Linfinity> for Vector<E, M, S>
where
    M: Dim,
    S: Storage<E, M> + Clone,
    E: Float + Scalar + Zero + One + RealField,
    DefaultAllocator: Allocator<M>,
{
    #[inline]
    fn dist<I: Instance<Self>>(&self, other: I, _: Linfinity) -> E {
        other.eval(|r| nalgebra::Norm::metric_distance(&UniformNorm, self, r))
    }
}

/// Helper trait to hide the symbols of [`nalgebra::RealField`].
///
/// By assuming `ToNalgebraRealField` intead of `nalgebra::RealField` as a trait bound,
/// functions can piggyback `nalgebra::RealField` without exponsing themselves to it.
/// Thus methods from [`num_traits`] can be used directly without similarly named methods
/// from [`nalgebra`] conflicting with them. Only when absolutely necessary to work with
/// nalgebra, one can convert to the nalgebra view of the same type using the methods of
/// this trait.
pub trait ToNalgebraRealField: Float {
    /// The nalgebra type corresponding to this type. Usually same as `Self`.
    ///
    /// This type only carries `nalgebra` traits.
    type NalgebraType: RealField;
    /// The “mixed” type corresponding to this type. Usually same as `Self`.
    ///
    /// This type carries both `num_traits` and `nalgebra` traits.
    type MixedType: RealField + Float;

    /// Convert to the nalgebra view of `self`.
    fn to_nalgebra(self) -> Self::NalgebraType;

    /// Convert to the mixed (nalgebra and num_traits) view of `self`.
    fn to_nalgebra_mixed(self) -> Self::MixedType;

    /// Convert from the nalgebra view of `self`.
    fn from_nalgebra(t: Self::NalgebraType) -> Self;

    /// Convert from the mixed (nalgebra and num_traits) view to `self`.
    fn from_nalgebra_mixed(t: Self::MixedType) -> Self;
}

impl ToNalgebraRealField for f32 {
    type NalgebraType = f32;
    type MixedType = f32;

    #[inline]
    fn to_nalgebra(self) -> Self::NalgebraType {
        self
    }

    #[inline]
    fn to_nalgebra_mixed(self) -> Self::MixedType {
        self
    }

    #[inline]
    fn from_nalgebra(t: Self::NalgebraType) -> Self {
        t
    }

    #[inline]
    fn from_nalgebra_mixed(t: Self::MixedType) -> Self {
        t
    }
}

impl ToNalgebraRealField for f64 {
    type NalgebraType = f64;
    type MixedType = f64;

    #[inline]
    fn to_nalgebra(self) -> Self::NalgebraType {
        self
    }

    #[inline]
    fn to_nalgebra_mixed(self) -> Self::MixedType {
        self
    }

    #[inline]
    fn from_nalgebra(t: Self::NalgebraType) -> Self {
        t
    }

    #[inline]
    fn from_nalgebra_mixed(t: Self::MixedType) -> Self {
        t
    }
}

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