Implement serde traits for all linalg structs.

This commit is contained in:
Sébastien Crozet 2017-08-13 19:53:04 +02:00 committed by Sébastien Crozet
parent e84b73c848
commit 3e349b80cf
29 changed files with 522 additions and 119 deletions

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@ -7,6 +7,9 @@ This project adheres to [Semantic Versioning](http://semver.org/).
## [0.13.0]
The **nalgebra-lapack** crate has been updated. This now includes a broad range
matrix decompositions using LAPACK bindings.
### Breaking semantic change
* The implementation of slicing with steps now matches the documentation.
Before, step identified the number to add to pass from one column/row index
@ -19,10 +22,13 @@ This project adheres to [Semantic Versioning](http://semver.org/).
* The trait `Axpy` takes one additional parameter for the type of `x`.
* The alias `MatrixNM` is now deprecated. Use `MatrixMN` instead (we
reordered M and N to be in alphabetical order).
* In-place componentwise multiplication and division
`.component_mul_mut(...)` and `.component_div_mut(...)` have bee deprecated
for a future renaming. Use `.component_mul_assign(...)` and
`.component_div_assign(...)` instead.
### Added
* `alga::general::Real` is now re-exported by nalgebra.
* `.trace()` that computes the trace of a matrix (the sum of its diagonal
elements.)
* `::zeros(...)` that creates a matrix filled with zeroes.
* `::from_partial_diagonal(...)` that creates a matrix from diagonal elements.
@ -39,16 +45,20 @@ This project adheres to [Semantic Versioning](http://semver.org/).
* Implements `IntoIterator` for `&Matrix`, `&mut Matrix` and `Matrix`.
* `.mul_to(...)` multiplies two matrices and stores the result to the given buffer.
* `.tr_mul_to(...)` left-multiplies `self.transpose()` to another matrix and stores the result to the given buffer.
* `.rows_range(...)` that retrieves a reference to a range of rows.
* `.rows_range_mut(...)` that retrieves a mutable reference to a range of rows.
* `.columns_range(...)` that retrieves a reference to a range of columns.
* `.columns_range_mut(...)` that retrieves a mutable reference to a range of columns.
* `.add_scalar(...)` that adds a scalar to each component of a matrix.
* `.add_scalar_mut(...)` that adds in-place a scalar to each component of a matrix.
* `.kronecker(a, b)` computes the kronecker product (i.e. matrix tensor
product) of two matrices.
* `.apply(f)` replaces each component of a matrix with the results of the
closure `f` called on each of them.
Matrix decompositions:
New slicing methods:
* `.rows_range(...)` that retrieves a reference to a range of rows.
* `.rows_range_mut(...)` that retrieves a mutable reference to a range of rows.
* `.columns_range(...)` that retrieves a reference to a range of columns.
* `.columns_range_mut(...)` that retrieves a mutable reference to a range of columns.
Matrix decompositions implemented in pure Rust:
* Cholesky, SVD, LU, QR, Hessenberg, Schur, Symmetric eigendecompositions,
Bidiagonal, Symmetric tridiagonal
* Computation of householder reflectors and givens rotations.

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@ -1,3 +1,6 @@
#[cfg(feature = "serde-serialize")]
use serde;
use num::Zero;
use num_complex::Complex;
@ -9,11 +12,25 @@ use na::allocator::Allocator;
use lapack::fortran as interface;
/// The cholesky decomposion of a symmetric-definite-positive matrix.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DefaultAllocator: Allocator<N, D>,
MatrixN<N, D>: serde::Serialize")))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(deserialize =
"DefaultAllocator: Allocator<N, D>,
MatrixN<N, D>: serde::Deserialize<'de>")))]
#[derive(Clone, Debug)]
pub struct Cholesky<N: Scalar, D: Dim>
where DefaultAllocator: Allocator<N, D, D> {
l: MatrixN<N, D>
}
impl<N: Scalar, D: Dim> Copy for Cholesky<N, D>
where DefaultAllocator: Allocator<N, D, D>,
MatrixN<N, D>: Copy { }
impl<N: CholeskyScalar + Zero, D: Dim> Cholesky<N, D>
where DefaultAllocator: Allocator<N, D, D> {

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@ -1,3 +1,6 @@
#[cfg(feature = "serde-serialize")]
use serde;
use num::Zero;
use num_complex::Complex;
@ -12,9 +15,21 @@ use na::allocator::Allocator;
use lapack::fortran as interface;
/// Eigendecomposition of a real square matrix with real eigenvalues.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DefaultAllocator: Allocator<N, D, D> + Allocator<N, D>,
VectorN<N, D>: serde::Serialize,
MatrixN<N, D>: serde::Serialize")))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(deserialize =
"DefaultAllocator: Allocator<N, D, D> + Allocator<N, D>,
VectorN<N, D>: serde::Serialize,
MatrixN<N, D>: serde::Deserialize<'de>")))]
#[derive(Clone, Debug)]
pub struct Eigen<N: Scalar, D: Dim>
where DefaultAllocator: Allocator<N, D> +
Allocator<N, D, D> {
Allocator<N, D, D> {
/// The eigenvalues of the decomposed matrix.
pub eigenvalues: VectorN<N, D>,
/// The (right) eigenvectors of the decomposed matrix.
@ -23,6 +38,12 @@ pub struct Eigen<N: Scalar, D: Dim>
pub left_eigenvectors: Option<MatrixN<N, D>>
}
impl<N: Scalar, D: Dim> Copy for Eigen<N, D>
where DefaultAllocator: Allocator<N, D> +
Allocator<N, D, D>,
VectorN<N, D>: Copy,
MatrixN<N, D>: Copy { }
impl<N: EigenScalar + Real, D: Dim> Eigen<N, D>
where DefaultAllocator: Allocator<N, D, D> +

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@ -11,6 +11,20 @@ use lapack::fortran as interface;
/// The Hessenberg decomposition of a general matrix.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DefaultAllocator: Allocator<N, D, D> +
Allocator<N, DimDiff<D, U1>>,
MatrixN<N, D>: serde::Serialize,
VectorN<N, DimDiff<D, U1>>: serde::Serialize")))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(deserialize =
"DefaultAllocator: Allocator<N, D, D> +
Allocator<N, DimDiff<D, U1>>,
MatrixN<N, D>: serde::Deserialize<'de>,
VectorN<N, DimDiff<D, U1>>: serde::Deserialize<'de>")))]
#[derive(Clone, Debug)]
pub struct Hessenberg<N: Scalar, D: DimSub<U1>>
where DefaultAllocator: Allocator<N, D, D> +
Allocator<N, DimDiff<D, U1>> {
@ -19,6 +33,12 @@ pub struct Hessenberg<N: Scalar, D: DimSub<U1>>
}
impl<N: Scalar, D: DimSub<U1>> Copy for Hessenberg<N, D>
where DefaultAllocator: Allocator<N, D, D> +
Allocator<N, DimDiff<D, U1>>,
MatrixN<N, D>: Copy,
VectorN<N, DimDiff<D, U1>>: Copy { }
impl<N: HessenbergScalar + Zero, D: DimSub<U1>> Hessenberg<N, D>
where DefaultAllocator: Allocator<N, D, D> +
Allocator<N, DimDiff<D, U1>> {

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@ -30,20 +30,24 @@
//! the system installation of netlib without LAPACKE (note the E) or
//! CBLAS:
//!
//! sudo apt-get install gfortran libblas3gf liblapack3gf
//! export CARGO_FEATURE_SYSTEM_NETLIB=1
//! export CARGO_FEATURE_EXCLUDE_LAPACKE=1
//! export CARGO_FEATURE_EXCLUDE_CBLAS=1
//! ```.ignore
//! sudo apt-get install gfortran libblas3gf liblapack3gf
//! export CARGO_FEATURE_SYSTEM_NETLIB=1
//! export CARGO_FEATURE_EXCLUDE_LAPACKE=1
//! export CARGO_FEATURE_EXCLUDE_CBLAS=1
//!
//! export CARGO_FEATURES='--no-default-features --features netlib'
//! cargo build ${CARGO_FEATURES}
//! export CARGO_FEATURES='--no-default-features --features netlib'
//! cargo build ${CARGO_FEATURES}
//! ```
//!
//! ### Mac OS X
//!
//! On Mac OS X, do this to use Apple's Accelerate framework:
//!
//! export CARGO_FEATURES='--no-default-features --features accelerate'
//! cargo build ${CARGO_FEATURES}
//! ```.ignore
//! export CARGO_FEATURES='--no-default-features --features accelerate'
//! cargo build ${CARGO_FEATURES}
//! ```
//!
//! [version-img]: https://img.shields.io/crates/v/nalgebra-lapack.svg
//! [version-url]: https://crates.io/crates/nalgebra-lapack

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@ -17,6 +17,20 @@ use lapack::fortran as interface;
/// * `P` which is a `m * m` permutation matrix.
///
/// Those are such that `M == P * L * U`.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DefaultAllocator: Allocator<N, R, C> +
Allocator<i32, DimMinimum<R, C>>,
MatrixMN<N, R, C>: serde::Serialize,
PermutationSequence<DimMinimum<R, C>>: serde::Serialize")))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(deserialize =
"DefaultAllocator: Allocator<N, R, C> +
Allocator<i32, DimMinimum<R, C>>,
MatrixMN<N, R, C>: serde::Deserialize<'de>,
PermutationSequence<DimMinimum<R, C>>: serde::Deserialize<'de>")))]
#[derive(Clone, Debug)]
pub struct LU<N: Scalar, R: DimMin<C>, C: Dim>
where DefaultAllocator: Allocator<i32, DimMinimum<R, C>> +
Allocator<N, R, C> {
@ -24,6 +38,12 @@ pub struct LU<N: Scalar, R: DimMin<C>, C: Dim>
p: VectorN<i32, DimMinimum<R, C>>
}
impl<N: Scalar, R: DimMin<C>, C: Dim> Copy for LU<N, R, C>
where DefaultAllocator: Allocator<N, R, C> +
Allocator<i32, DimMinimum<R, C>>,
MatrixMN<N, R, C>: Copy,
VectorN<i32, DimMinimum<R, C>>: Copy { }
impl<N: LUScalar, R: Dim, C: Dim> LU<N, R, C>
where N: Zero + One,
R: DimMin<C>,

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@ -1,3 +1,6 @@
#[cfg(feature = "serde-serialize")]
use serde;
use num_complex::Complex;
use num::Zero;
@ -11,6 +14,20 @@ use lapack::fortran as interface;
/// The QR decomposition of a general matrix.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DefaultAllocator: Allocator<N, R, C> +
Allocator<N, DimMinimum<R, C>>,
MatrixMN<N, R, C>: serde::Serialize,
VectorN<N, DimMinimum<R, C>>: serde::Serialize")))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(deserialize =
"DefaultAllocator: Allocator<N, R, C> +
Allocator<N, DimMinimum<R, C>>,
MatrixMN<N, R, C>: serde::Deserialize<'de>,
VectorN<N, DimMinimum<R, C>>: serde::Deserialize<'de>")))]
#[derive(Clone, Debug)]
pub struct QR<N: Scalar, R: DimMin<C>, C: Dim>
where DefaultAllocator: Allocator<N, R, C> +
Allocator<N, DimMinimum<R, C>> {
@ -18,6 +35,12 @@ pub struct QR<N: Scalar, R: DimMin<C>, C: Dim>
tau: VectorN<N, DimMinimum<R, C>>
}
impl<N: Scalar, R: DimMin<C>, C: Dim> Copy for QR<N, R, C>
where DefaultAllocator: Allocator<N, R, C> +
Allocator<N, DimMinimum<R, C>>,
MatrixMN<N, R, C>: Copy,
VectorN<N, DimMinimum<R, C>>: Copy { }
impl<N: QRScalar + Zero, R: DimMin<C>, C: Dim> QR<N, R, C>
where DefaultAllocator: Allocator<N, R, C> +
Allocator<N, R, DimMinimum<R, C>> +

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@ -1,3 +1,6 @@
#[cfg(feature = "serde-serialize")]
use serde;
use num::Zero;
use num_complex::Complex;
@ -12,9 +15,21 @@ use na::allocator::Allocator;
use lapack::fortran as interface;
/// Eigendecomposition of a real square matrix with real eigenvalues.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DefaultAllocator: Allocator<N, D, D> + Allocator<N, D>,
VectorN<N, D>: serde::Serialize,
MatrixN<N, D>: serde::Serialize")))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(deserialize =
"DefaultAllocator: Allocator<N, D, D> + Allocator<N, D>,
VectorN<N, D>: serde::Serialize,
MatrixN<N, D>: serde::Deserialize<'de>")))]
#[derive(Clone, Debug)]
pub struct RealSchur<N: Scalar, D: Dim>
where DefaultAllocator: Allocator<N, D> +
Allocator<N, D, D> {
Allocator<N, D, D> {
re: VectorN<N, D>,
im: VectorN<N, D>,
@ -22,6 +37,11 @@ pub struct RealSchur<N: Scalar, D: Dim>
q: MatrixN<N, D>
}
impl<N: Scalar, D: Dim> Copy for RealSchur<N, D>
where DefaultAllocator: Allocator<N, D, D> + Allocator<N, D>,
MatrixN<N, D>: Copy,
VectorN<N, D>: Copy { }
impl<N: RealSchurScalar + Real, D: Dim> RealSchur<N, D>
where DefaultAllocator: Allocator<N, D, D> +

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@ -1,3 +1,6 @@
#[cfg(feature = "serde-serialize")]
use serde;
use std::cmp;
use num::Signed;
@ -11,18 +14,43 @@ use lapack::fortran as interface;
/// The SVD decomposition of a general matrix.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DefaultAllocator: Allocator<N, DimMinimum<R, C>> +
Allocator<N, R, R> +
Allocator<N, C, C>,
MatrixN<N, R>: serde::Serialize,
MatrixN<N, C>: serde::Serialize,
VectorN<N, DimMinimum<R, C>>: serde::Serialize")))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DefaultAllocator: Allocator<N, DimMinimum<R, C>> +
Allocator<N, R, R> +
Allocator<N, C, C>,
MatrixN<N, R>: serde::Deserialize<'de>,
MatrixN<N, C>: serde::Deserialize<'de>,
VectorN<N, DimMinimum<R, C>>: serde::Deserialize<'de>")))]
#[derive(Clone, Debug)]
pub struct SVD<N: Scalar, R: DimMin<C>, C: Dim>
where DefaultAllocator: Allocator<N, R, R> +
Allocator<N, DimMinimum<R, C>> +
Allocator<N, C, C> {
/// The left-singular vectors `U` of this SVD.
pub u: MatrixN<N, R>,
pub u: MatrixN<N, R>, // FIXME: should be MatrixMN<N, R, DimMinimum<R, C>>
/// The right-singular vectors `V^t` of this SVD.
pub vt: MatrixN<N, C>,
pub vt: MatrixN<N, C>, // FIXME: should be MatrixMN<N, DimMinimum<R, C>, C>
/// The singular values of this SVD.
pub singular_values: VectorN<N, DimMinimum<R, C>>
}
impl<N: Scalar, R: DimMin<C>, C: Dim> Copy for SVD<N, R, C>
where DefaultAllocator: Allocator<N, C, C> +
Allocator<N, R, R> +
Allocator<N, DimMinimum<R, C>>,
MatrixMN<N, R, R>: Copy,
MatrixMN<N, C, C>: Copy,
VectorN<N, DimMinimum<R, C>>: Copy { }
/// Trait implemented by floats (`f32`, `f64`) and complex floats (`Complex<f32>`, `Complex<f64>`)
/// supported by the Singular Value Decompotition.

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@ -1,3 +1,6 @@
#[cfg(feature = "serde-serialize")]
use serde;
use num::Zero;
use std::ops::MulAssign;
@ -11,7 +14,21 @@ use na::allocator::Allocator;
use lapack::fortran as interface;
/// SymmetricEigendecomposition of a real square matrix with real eigenvalues.
/// Eigendecomposition of a real square symmetric matrix with real eigenvalues.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DefaultAllocator: Allocator<N, D, D> +
Allocator<N, D>,
VectorN<N, D>: serde::Serialize,
MatrixN<N, D>: serde::Serialize")))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(deserialize =
"DefaultAllocator: Allocator<N, D, D> +
Allocator<N, D>,
VectorN<N, D>: serde::Deserialize<'de>,
MatrixN<N, D>: serde::Deserialize<'de>")))]
#[derive(Clone, Debug)]
pub struct SymmetricEigen<N: Scalar, D: Dim>
where DefaultAllocator: Allocator<N, D> +
Allocator<N, D, D> {
@ -23,6 +40,12 @@ pub struct SymmetricEigen<N: Scalar, D: Dim>
}
impl<N: Scalar, D: Dim> Copy for SymmetricEigen<N, D>
where DefaultAllocator: Allocator<N, D, D> +
Allocator<N, D>,
MatrixN<N, D>: Copy,
VectorN<N, D>: Copy { }
impl<N: SymmetricEigenScalar + Real, D: Dim> SymmetricEigen<N, D>
where DefaultAllocator: Allocator<N, D, D> +
Allocator<N, D> {

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@ -5,10 +5,10 @@ quickcheck!{
fn svd(m: DMatrix<f64>) -> bool {
if m.nrows() != 0 && m.ncols() != 0 {
let svd = SVD::new(m.clone()).unwrap();
let sm = DMatrix::from_partial_diagonal(m.nrows(), m.ncols(), svd.s.as_slice());
let sm = DMatrix::from_partial_diagonal(m.nrows(), m.ncols(), svd.singular_values.as_slice());
let reconstructed_m = &svd.u * sm * &svd.vt;
let reconstructed_m2 = svd.matrix();
let reconstructed_m2 = svd.recompose();
relative_eq!(reconstructed_m, m, epsilon = 1.0e-7) &&
relative_eq!(reconstructed_m2, reconstructed_m, epsilon = 1.0e-7)
@ -20,10 +20,10 @@ quickcheck!{
fn svd_static(m: Matrix3x4<f64>) -> bool {
let svd = SVD::new(m).unwrap();
let sm = Matrix3x4::from_partial_diagonal(svd.s.as_slice());
let sm = Matrix3x4::from_partial_diagonal(svd.singular_values.as_slice());
let reconstructed_m = &svd.u * &sm * &svd.vt;
let reconstructed_m2 = svd.matrix();
let reconstructed_m2 = svd.recompose();
relative_eq!(reconstructed_m, m, epsilon = 1.0e-7) &&
relative_eq!(reconstructed_m2, m, epsilon = 1.0e-7)

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@ -33,7 +33,7 @@ impl<N: Scalar, R: Dim, C: Dim, S: Storage<N, R, C>> Matrix<N, R, C, S> {
}
macro_rules! component_binop_impl(
($($binop: ident, $binop_mut: ident, $Trait: ident . $binop_assign: ident, $desc:expr, $desc_mut:expr);* $(;)*) => {$(
($($binop: ident, $binop_mut: ident, $binop_assign: ident, $Trait: ident . $op_assign: ident, $desc:expr, $desc_mut:expr);* $(;)*) => {$(
impl<N: Scalar, R1: Dim, C1: Dim, SA: Storage<N, R1, C1>> Matrix<N, R1, C1, SA> {
#[doc = $desc]
#[inline]
@ -50,7 +50,7 @@ macro_rules! component_binop_impl(
for j in 0 .. res.ncols() {
for i in 0 .. res.nrows() {
unsafe {
res.get_unchecked_mut(i, j).$binop_assign(*rhs.get_unchecked(i, j));
res.get_unchecked_mut(i, j).$op_assign(*rhs.get_unchecked(i, j));
}
}
}
@ -62,7 +62,7 @@ macro_rules! component_binop_impl(
impl<N: Scalar, R1: Dim, C1: Dim, SA: StorageMut<N, R1, C1>> Matrix<N, R1, C1, SA> {
#[doc = $desc_mut]
#[inline]
pub fn $binop_mut<R2, C2, SB>(&mut self, rhs: &Matrix<N, R2, C2, SB>)
pub fn $binop_assign<R2, C2, SB>(&mut self, rhs: &Matrix<N, R2, C2, SB>)
where N: $Trait,
R2: Dim,
C2: Dim,
@ -74,19 +74,31 @@ macro_rules! component_binop_impl(
for j in 0 .. self.ncols() {
for i in 0 .. self.nrows() {
unsafe {
self.get_unchecked_mut(i, j).$binop_assign(*rhs.get_unchecked(i, j));
self.get_unchecked_mut(i, j).$op_assign(*rhs.get_unchecked(i, j));
}
}
}
}
#[doc = $desc_mut]
#[inline]
#[deprecated(note = "This is renamed using the `_assign` sufix instead of the `_mut` suffix.")]
pub fn $binop_mut<R2, C2, SB>(&mut self, rhs: &Matrix<N, R2, C2, SB>)
where N: $Trait,
R2: Dim,
C2: Dim,
SB: Storage<N, R2, C2>,
ShapeConstraint: SameNumberOfRows<R1, R2> + SameNumberOfColumns<C1, C2> {
self.$binop_assign(rhs)
}
}
)*}
);
component_binop_impl!(
component_mul, component_mul_mut, ClosedMul.mul_assign,
component_mul, component_mul_mut, component_mul_assign, ClosedMul.mul_assign,
"Componentwise matrix multiplication.", "Mutable, componentwise matrix multiplication.";
component_div, component_div_mut, ClosedDiv.div_assign,
component_div, component_div_mut, component_div_assign, ClosedDiv.div_assign,
"Componentwise matrix division.", "Mutable, componentwise matrix division.";
// FIXME: add other operators like bitshift, etc. ?
);

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@ -206,8 +206,8 @@ impl<N: Scalar, R: Dim, C: Dim, S: Storage<N, R, C>> Matrix<N, R, C, S> {
self.remove_fixed_columns::<U1>(i)
}
/// Removes a fixed number `D::dim()` of consecutive columns from this matrix, starting
/// with the `i`-th (included).
/// Removes `D::dim()` consecutive columns from this matrix, starting with the `i`-th
/// (included).
#[inline]
pub fn remove_fixed_columns<D>(self, i: usize) -> MatrixMN<N, R, DimDiff<C, D>>
where D: DimName,
@ -271,8 +271,7 @@ impl<N: Scalar, R: Dim, C: Dim, S: Storage<N, R, C>> Matrix<N, R, C, S> {
self.remove_fixed_rows::<U1>(i)
}
/// Removes a fixed number `D::dim()` of consecutive rows from this matrix, starting
/// with the `i`-th (included).
/// Removes `D::dim()` consecutive rows from this matrix, starting with the `i`-th (included).
#[inline]
pub fn remove_fixed_rows<D>(self, i: usize) -> MatrixMN<N, DimDiff<R, D>, C>
where D: DimName,
@ -328,7 +327,7 @@ impl<N: Scalar, R: Dim, C: Dim, S: Storage<N, R, C>> Matrix<N, R, C, S> {
self.insert_fixed_columns::<U1>(i, val)
}
/// Inserts `D` column filled with `val` at the `i-th` position.
/// Inserts `D::dim()` columns filled with `val` starting at the `i-th` position.
#[inline]
pub fn insert_fixed_columns<D>(self, i: usize, val: N) -> MatrixMN<N, R, DimSum<C, D>>
where D: DimName,
@ -339,7 +338,7 @@ impl<N: Scalar, R: Dim, C: Dim, S: Storage<N, R, C>> Matrix<N, R, C, S> {
res
}
/// Inserts `n` column filled with `val` at the `i-th` position.
/// Inserts `n` columns filled with `val` starting at the `i-th` position.
#[inline]
pub fn insert_columns(self, i: usize, n: usize, val: N) -> MatrixMN<N, R, Dynamic>
where C: DimAdd<Dynamic, Output = Dynamic>,
@ -349,7 +348,7 @@ impl<N: Scalar, R: Dim, C: Dim, S: Storage<N, R, C>> Matrix<N, R, C, S> {
res
}
/// Inserts `ninsert.value()` columns at the `i-th` place of this matrix.
/// Inserts `ninsert.value()` columns starting at the `i-th` place of this matrix.
///
/// The added column values are not initialized.
#[inline]
@ -388,7 +387,7 @@ impl<N: Scalar, R: Dim, C: Dim, S: Storage<N, R, C>> Matrix<N, R, C, S> {
self.insert_fixed_rows::<U1>(i, val)
}
/// Inserts `D` row filled with `val` at the `i-th` position.
/// Inserts `D::dim()` rows filled with `val` starting at the `i-th` position.
#[inline]
pub fn insert_fixed_rows<D>(self, i: usize, val: N) -> MatrixMN<N, DimSum<R, D>, C>
where D: DimName,
@ -399,7 +398,7 @@ impl<N: Scalar, R: Dim, C: Dim, S: Storage<N, R, C>> Matrix<N, R, C, S> {
res
}
/// Inserts `n` rows filled with `val` at the `i-th` position.
/// Inserts `n` rows filled with `val` starting at the `i-th` position.
#[inline]
pub fn insert_rows(self, i: usize, n: usize, val: N) -> MatrixMN<N, Dynamic, C>
where R: DimAdd<Dynamic, Output = Dynamic>,
@ -412,6 +411,8 @@ impl<N: Scalar, R: Dim, C: Dim, S: Storage<N, R, C>> Matrix<N, R, C, S> {
/// Inserts `ninsert.value()` rows at the `i-th` place of this matrix.
///
/// The added rows values are not initialized.
/// This is the generic implementation of `.insert_rows(...)` and
/// `.insert_fixed_rows(...)` which have nicer API interfaces.
#[inline]
pub unsafe fn insert_rows_generic_uninitialized<D>(self, i: usize, ninsert: D)
-> MatrixMN<N, DimSum<R, D>, C>

View File

@ -79,11 +79,9 @@ impl<N, R, C, S> Serialize for Matrix<N, R, C, S>
where N: Scalar,
R: Dim,
C: Dim,
S: Serialize,
{
S: Serialize, {
fn serialize<T>(&self, serializer: T) -> Result<T::Ok, T::Error>
where T: Serializer
{
where T: Serializer {
self.data.serialize(serializer)
}
}
@ -93,8 +91,7 @@ impl<'de, N, R, C, S> Deserialize<'de> for Matrix<N, R, C, S>
where N: Scalar,
R: Dim,
C: Dim,
S: Deserialize<'de>,
{
S: Deserialize<'de> {
fn deserialize<D>(deserializer: D) -> Result<Self, D::Error>
where D: Deserializer<'de>
{

View File

@ -50,7 +50,7 @@ an optimized set of tools for computer graphics and physics. Those features incl
* Matrices and vectors with compile-time sizes are statically allocated while dynamic ones are
allocated on the heap.
* Convenient aliases for low-dimensional matrices and vectors: `Vector1` to `Vector6` and
`Matrix1x1` to `Matrix6x6` (including rectangular matrices like `Matrix2x5`.
`Matrix1x1` to `Matrix6x6`, including rectangular matrices like `Matrix2x5`.
* Points sizes known at compile time, and convenience aliases: `Point1` to `Point6`.
* Translation (seen as a transformation that composes by multiplication): `Translation2`,
`Translation3`.
@ -66,7 +66,8 @@ an optimized set of tools for computer graphics and physics. Those features incl
* General transformations that does not have to be invertible, stored as an homogeneous matrix:
`Transform2`, `Transform3`.
* 3D projections for computer graphics: `Perspective3`, `Orthographic3`.
* Linear algebra decompositions: Cholesky, QR, LU, SVD, Schur, symmetric-eigendecomposition,.
* Matrix factorizations: `Cholesky`, `QR`, `LU`, `FullPivLU`, `SVD`, `RealSchur`, `Hessenberg`, `SymmetricEigen`.
* Insertion and removal of rows of columns of a matrix.
* Implements traits from the [alga](https://crates.io/crates/alga) crate for
generic programming.
*/

View File

@ -1,3 +1,6 @@
#[cfg(feature = "serde-serialize")]
use serde;
use alga::general::Real;
use core::{Unit, Matrix, MatrixN, MatrixMN, VectorN, DefaultAllocator};
use dimension::{Dim, DimMin, DimMinimum, DimSub, DimDiff, Dynamic, U1};
@ -10,6 +13,25 @@ use geometry::Reflection;
/// The bidiagonalization of a general matrix.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DimMinimum<R, C>: DimSub<U1>,
DefaultAllocator: Allocator<N, R, C> +
Allocator<N, DimMinimum<R, C>> +
Allocator<N, DimDiff<DimMinimum<R, C>, U1>>,
MatrixMN<N, R, C>: serde::Serialize,
VectorN<N, DimMinimum<R, C>>: serde::Serialize,
VectorN<N, DimDiff<DimMinimum<R, C>, U1>>: serde::Serialize")))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(deserialize =
"DimMinimum<R, C>: DimSub<U1>,
DefaultAllocator: Allocator<N, R, C> +
Allocator<N, DimMinimum<R, C>> +
Allocator<N, DimDiff<DimMinimum<R, C>, U1>>,
MatrixMN<N, R, C>: serde::Deserialize<'de>,
VectorN<N, DimMinimum<R, C>>: serde::Deserialize<'de>,
VectorN<N, DimDiff<DimMinimum<R, C>, U1>>: serde::Deserialize<'de>")))]
#[derive(Clone, Debug)]
pub struct Bidiagonal<N: Real, R: DimMin<C>, C: Dim>
where DimMinimum<R, C>: DimSub<U1>,
@ -35,6 +57,7 @@ impl<N: Real, R: DimMin<C>, C: Dim> Copy for Bidiagonal<N, R, C>
VectorN<N, DimMinimum<R, C>>: Copy,
VectorN<N, DimDiff<DimMinimum<R, C>, U1>>: Copy { }
impl<N: Real, R: DimMin<C>, C: Dim> Bidiagonal<N, R, C>
where DimMinimum<R, C>: DimSub<U1>,
DefaultAllocator: Allocator<N, R, C> +
@ -93,7 +116,7 @@ impl<N: Real, R: DimMin<C>, C: Dim> Bidiagonal<N, R, C>
}
}
/// Unpacks thi decomposition into its thrme matrix factors `(U, D, V^t)`.
/// Unpacks this decomposition into its three matrix factors `(U, D, V^t)`.
///
/// The decomposed matrix `M` is equal to `U * D * V^t`.
#[inline]

View File

@ -1,3 +1,6 @@
#[cfg(feature = "serde-serialize")]
use serde;
use alga::general::Real;
use core::{DefaultAllocator, MatrixN, MatrixMN, Matrix, SquareMatrix};
@ -6,7 +9,16 @@ use storage::{Storage, StorageMut};
use allocator::Allocator;
use dimension::{Dim, Dynamic, DimSub};
/// The cholesky decomposion of a symmetric-definite-positive matrix.
/// The Cholesky decomposion of a symmetric-definite-positive matrix.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DefaultAllocator: Allocator<N, D>,
MatrixN<N, D>: serde::Serialize")))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(deserialize =
"DefaultAllocator: Allocator<N, D>,
MatrixN<N, D>: serde::Deserialize<'de>")))]
#[derive(Clone, Debug)]
pub struct Cholesky<N: Real, D: Dim>
where DefaultAllocator: Allocator<N, D, D> {
@ -19,7 +31,7 @@ impl<N: Real, D: Dim> Copy for Cholesky<N, D>
impl<N: Real, D: DimSub<Dynamic>> Cholesky<N, D>
where DefaultAllocator: Allocator<N, D, D> {
/// Attempts to compute the sholesky decomposition of `matrix`.
/// Attempts to compute the Cholesky decomposition of `matrix`.
///
/// Returns `None` if the input matrix is not definite-positive. The intput matrix is assumed
/// to be symmetric and only the lower-triangular part is read.
@ -55,27 +67,29 @@ impl<N: Real, D: DimSub<Dynamic>> Cholesky<N, D>
Some(Cholesky { chol: matrix })
}
/// Retrieves the lower-triangular factor of the cholesky decomposition.
/// Retrieves the lower-triangular factor of the Cholesky decomposition with its strictly
/// upper-triangular part filled with zeros.
pub fn unpack(mut self) -> MatrixN<N, D> {
self.chol.fill_upper_triangle(N::zero(), 1);
self.chol
}
/// Retrieves the lower-triangular factor of che cholesky decomposition, without zeroing-out
/// Retrieves the lower-triangular factor of the Cholesky decomposition, without zeroing-out
/// its strict upper-triangular part.
///
/// This is an allocation-less version of `self.l()`. The values of the strict upper-triangular
/// part are garbage and should be ignored by further computations.
/// The values of the strict upper-triangular part are garbage and should be ignored by further
/// computations.
pub fn unpack_dirty(self) -> MatrixN<N, D> {
self.chol
}
/// Retrieves the lower-triangular factor of the cholesky decomposition.
/// Retrieves the lower-triangular factor of the Cholesky decomposition with its strictly
/// uppen-triangular part filled with zeros.
pub fn l(&self) -> MatrixN<N, D> {
self.chol.lower_triangle()
}
/// Retrieves the lower-triangular factor of the cholesky decomposition, without zeroing-out
/// Retrieves the lower-triangular factor of the Cholesky decomposition, without zeroing-out
/// its strict upper-triangular part.
///
/// This is an allocation-less version of `self.l()`. The values of the strict upper-triangular
@ -94,9 +108,8 @@ impl<N: Real, D: DimSub<Dynamic>> Cholesky<N, D>
self.chol.tr_solve_lower_triangular_mut(b);
}
/// Solves the system `self * x = b` where `self` is the decomposed matrix and `x` the unknown.
///
/// The result is stored on `b`.
/// Returns the solution of the system `self * x = b` where `self` is the decomposed matrix and
/// `x` the unknown.
pub fn solve<R2: Dim, C2: Dim, S2>(&self, b: &Matrix<N, R2, C2, S2>) -> MatrixMN<N, R2, C2>
where S2: StorageMut<N, R2, C2>,
DefaultAllocator: Allocator<N, R2, C2>,
@ -119,7 +132,7 @@ impl<N: Real, D: DimSub<Dynamic>> Cholesky<N, D>
impl<N: Real, D: DimSub<Dynamic>, S: Storage<N, D, D>> SquareMatrix<N, D, S>
where DefaultAllocator: Allocator<N, D, D> {
/// Attempts to compute the sholesky decomposition of this matrix.
/// Attempts to compute the Cholesky decomposition of this matrix.
///
/// Returns `None` if the input matrix is not definite-positive. The intput matrix is assumed
/// to be symmetric and only the lower-triangular part is read.

View File

@ -1,3 +1,6 @@
#[cfg(feature = "serde-serialize")]
use serde;
use std::fmt::Display;
use std::cmp;
use num_complex::Complex;
@ -15,7 +18,18 @@ use linalg::RealSchur;
use geometry::{Reflection, UnitComplex};
/// The eigendecomposition of a matrix with real eigenvalues.
/// Eigendecomposition of a matrix with real eigenvalues.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DefaultAllocator: Allocator<N, D>,
VectorN<N, D>: serde::Serialize,
MatrixN<N, D>: serde::Serialize")))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(deserialize =
"DefaultAllocator: Allocator<N, D>,
VectorN<N, D>: serde::Serialize,
MatrixN<N, D>: serde::Deserialize<'de>")))]
#[derive(Clone, Debug)]
pub struct RealEigen<N: Real, D: Dim>
where DefaultAllocator: Allocator<N, D, D> +

View File

@ -1,3 +1,6 @@
#[cfg(feature = "serde-serialize")]
use serde;
use alga::general::Real;
use core::{Matrix, MatrixN, MatrixMN, DefaultAllocator};
use dimension::{Dim, DimMin, DimMinimum};
@ -10,7 +13,20 @@ use linalg::PermutationSequence;
/// LU decomposition with full pivoting.
/// LU decomposition with full row and column pivoting.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DefaultAllocator: Allocator<N, R, C> +
Allocator<(usize, usize), DimMinimum<R, C>>,
MatrixMN<N, R, C>: serde::Serialize,
PermutationSequence<DimMinimum<R, C>>: serde::Serialize")))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(deserialize =
"DefaultAllocator: Allocator<N, R, C> +
Allocator<(usize, usize), DimMinimum<R, C>>,
MatrixMN<N, R, C>: serde::Deserialize<'de>,
PermutationSequence<DimMinimum<R, C>>: serde::Deserialize<'de>")))]
#[derive(Clone, Debug)]
pub struct FullPivLU<N: Real, R: DimMin<C>, C: Dim>
where DefaultAllocator: Allocator<N, R, C> +
@ -31,7 +47,7 @@ impl<N: Real, R: DimMin<C>, C: Dim> Copy for FullPivLU<N, R, C>
impl<N: Real, R: DimMin<C>, C: Dim> FullPivLU<N, R, C>
where DefaultAllocator: Allocator<N, R, C> +
Allocator<(usize, usize), DimMinimum<R, C>> {
/// Computes the LU decomposition with full-pivoting of `matrix`.
/// Computes the LU decomposition with full pivoting of `matrix`.
///
/// This effectively computes `P, L, U, Q` such that `P * matrix * Q = LU`.
pub fn new(mut matrix: MatrixMN<N, R, C>) -> Self {
@ -103,13 +119,13 @@ impl<N: Real, R: DimMin<C>, C: Dim> FullPivLU<N, R, C>
&self.p
}
/// The q permutations of this decomposition.
/// The column permutations of this decomposition.
#[inline]
pub fn q(&self) -> &PermutationSequence<DimMinimum<R, C>> {
&self.q
}
/// The two matrix of this decomposition and the permutation matrix: `(P, L, U, Q)`.
/// The two matrices of this decomposition and the row and column permutations: `(P, L, U, Q)`.
#[inline]
pub fn unpack(self) -> (PermutationSequence<DimMinimum<R, C>>,
MatrixMN<N, R, DimMinimum<R, C>>,
@ -148,8 +164,8 @@ impl<N: Real, D: DimMin<D, Output = D>> FullPivLU<N, D, D>
/// Solves the linear system `self * x = b`, where `x` is the unknown to be determined.
///
/// If the decomposed matrix is not invertible, this returns `false` and its input `b` is
/// left unchanged.
/// If the decomposed matrix is not invertible, this returns `false` and its input `b` may
/// be overwritten with garbage.
pub fn solve_mut<R2: Dim, C2: Dim, S2>(&self, b: &mut Matrix<N, R2, C2, S2>) -> bool
where S2: StorageMut<N, R2, C2>,
ShapeConstraint: SameNumberOfRows<R2, D> {
@ -217,7 +233,7 @@ impl<N: Real, D: DimMin<D, Output = D>> FullPivLU<N, D, D>
impl<N: Real, R: DimMin<C>, C: Dim, S: Storage<N, R, C>> Matrix<N, R, C, S>
where DefaultAllocator: Allocator<N, R, C> +
Allocator<(usize, usize), DimMinimum<R, C>> {
/// Computes the LU decomposition with full-pivoting of `matrix`.
/// Computes the LU decomposition with full pivoting of `matrix`.
///
/// This effectively computes `P, L, U, Q` such that `P * matrix * Q = LU`.
pub fn full_piv_lu(self) -> FullPivLU<N, R, C> {

View File

@ -1,3 +1,6 @@
#[cfg(feature = "serde-serialize")]
use serde;
use alga::general::Real;
use core::{SquareMatrix, MatrixN, MatrixMN, VectorN, DefaultAllocator};
use dimension::{DimSub, DimDiff, Dynamic, U1};
@ -7,7 +10,20 @@ use constraint::{ShapeConstraint, DimEq};
use linalg::householder;
/// The Hessenberg decomposition of a general matrix.
/// Hessenberg decomposition of a general matrix.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DefaultAllocator: Allocator<N, D, D> +
Allocator<N, DimDiff<D, U1>>,
MatrixN<N, D>: serde::Serialize,
VectorN<N, DimDiff<D, U1>>: serde::Serialize")))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(deserialize =
"DefaultAllocator: Allocator<N, D, D> +
Allocator<N, DimDiff<D, U1>>,
MatrixN<N, D>: serde::Deserialize<'de>,
VectorN<N, DimDiff<D, U1>>: serde::Deserialize<'de>")))]
#[derive(Clone, Debug)]
pub struct Hessenberg<N: Real, D: DimSub<U1>>
where DefaultAllocator: Allocator<N, D, D> +
@ -36,7 +52,8 @@ impl<N: Real, D: DimSub<U1>> Hessenberg<N, D>
/// Computes the Hessenberg decomposition using householder reflections.
///
/// The workspace containing `D` elements must be provided and may be uninitialized.
/// The workspace containing `D` elements must be provided but its content does not have to be
/// initialized.
pub fn new_with_workspace(mut hess: MatrixN<N, D>, work: &mut VectorN<N, D>) -> Self {
assert!(hess.is_square(), "Cannot compute the hessenberg decomposition of a non-square matrix.");
@ -81,7 +98,7 @@ impl<N: Real, D: DimSub<U1>> Hessenberg<N, D>
// FIXME: add a h that moves out of self.
/// Retrieves the upper trapezoidal submatrix `H` of this decomposition.
///
/// This is less efficient than `.unpack_h()`.
/// This is less efficient than `.unpack_h()` as it allocates a new matrix.
#[inline]
pub fn h(&self) -> MatrixN<N, D>
where ShapeConstraint: DimEq<Dynamic, DimDiff<D, U1>> {

View File

@ -1,4 +1,4 @@
//! Construction of transformations.
//! Construction of householder elementary reflections.
use alga::general::Real;
use core::{Unit, MatrixN, MatrixMN, Vector, VectorN, DefaultAllocator};

View File

@ -1,3 +1,6 @@
#[cfg(feature = "serde-serialize")]
use serde;
use std::mem;
use alga::general::{Field, Real};
use core::{Scalar, Matrix, MatrixN, MatrixMN, DefaultAllocator};
@ -11,6 +14,19 @@ use linalg::PermutationSequence;
/// LU decomposition with partial (row) pivoting.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DefaultAllocator: Allocator<N, R, C> +
Allocator<(usize, usize), DimMinimum<R, C>>,
MatrixMN<N, R, C>: serde::Serialize,
PermutationSequence<DimMinimum<R, C>>: serde::Serialize")))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(deserialize =
"DefaultAllocator: Allocator<N, R, C> +
Allocator<(usize, usize), DimMinimum<R, C>>,
MatrixMN<N, R, C>: serde::Deserialize<'de>,
PermutationSequence<DimMinimum<R, C>>: serde::Deserialize<'de>")))]
#[derive(Clone, Debug)]
pub struct LU<N: Real, R: DimMin<C>, C: Dim>
where DefaultAllocator: Allocator<N, R, C> +
@ -147,13 +163,13 @@ impl<N: Real, R: DimMin<C>, C: Dim> LU<N, R, C>
self.lu.rows_generic(0, nrows.min(ncols)).upper_triangle()
}
/// The row permutation matrix of this decomposition.
/// The row permutations of this decomposition.
#[inline]
pub fn p(&self) -> &PermutationSequence<DimMinimum<R, C>> {
&self.p
}
/// The two matrix of this decomposition and the permutation matrix: `(P, L, U)`.
/// The row permutations and two triangular matrices of this decomposition: `(P, L, U)`.
#[inline]
pub fn unpack(self) -> (PermutationSequence<DimMinimum<R, C>>,
MatrixMN<N, R, DimMinimum<R, C>>,
@ -190,8 +206,8 @@ impl<N: Real, D: DimMin<D, Output = D>> LU<N, D, D>
/// Solves the linear system `self * x = b`, where `x` is the unknown to be determined.
///
/// If the decomposed matrix is not invertible, this returns `false` and its input `b` is
/// overwritten with meaningless informations.
/// If the decomposed matrix is not invertible, this returns `false` and its input `b` may
/// be overwritten with garbage.
pub fn solve_mut<R2: Dim, C2: Dim, S2>(&self, b: &mut Matrix<N, R2, C2, S2>) -> bool
where S2: StorageMut<N, R2, C2>,
ShapeConstraint: SameNumberOfRows<R2, D> {
@ -206,7 +222,7 @@ impl<N: Real, D: DimMin<D, Output = D>> LU<N, D, D>
/// Computes the inverse of the decomposed matrix.
///
/// Returnrs `None` if the matrix is not invertible.
/// Returns `None` if the matrix is not invertible.
pub fn try_inverse(&self) -> Option<MatrixN<N, D>> {
assert!(self.lu.is_square(), "LU inverse: unable to compute the inverse of a non-square matrix.");
@ -222,8 +238,8 @@ impl<N: Real, D: DimMin<D, Output = D>> LU<N, D, D>
/// Computes the inverse of the decomposed matrix and outputs the result to `out`.
///
/// If the decomposed matrix is not invertible, this returns `false` and `out` may contain
/// meaninless informations.
/// If the decomposed matrix is not invertible, this returns `false` and `out` may be
/// overwritten with garbage.
pub fn try_inverse_to<S2: StorageMut<N, D, D>>(&self, out: &mut Matrix<N, D, D, S2>) -> bool {
assert!(self.lu.is_square(), "LU inverse: unable to compute the inverse of a non-square matrix.");
assert!(self.lu.shape() == out.shape(), "LU inverse: mismatched output shape.");

View File

@ -1,4 +1,4 @@
//! Linear algebra operators: decompositions, inversion, linear system resolution, etc.
//! Factorization of real matrices.
mod solve;
mod determinant;

View File

@ -1,13 +1,25 @@
#[cfg(feature = "serde-serialize")]
use serde;
use num::One;
use alga::general::ClosedNeg;
use core::{Scalar, Matrix, VectorN, DefaultAllocator};
use dimension::{Dim, U1};
use dimension::{Dim, DimName, Dynamic, U1};
use storage::StorageMut;
use allocator::Allocator;
/// A sequence of permutations.
/// A sequence of row or column permutations.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DefaultAllocator: Allocator<(usize, usize), D>,
VectorN<(usize, usize), D>: serde::Serialize")))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(deserialize =
"DefaultAllocator: Allocator<(usize, usize), D>,
VectorN<(usize, usize), D>: serde::Deserialize<'de>")))]
#[derive(Clone, Debug)]
pub struct PermutationSequence<D: Dim>
where DefaultAllocator: Allocator<(usize, usize), D> {
@ -19,10 +31,28 @@ impl<D: Dim> Copy for PermutationSequence<D>
where DefaultAllocator: Allocator<(usize, usize), D>,
VectorN<(usize, usize), D>: Copy { }
impl<D: Dim> PermutationSequence<D>
impl<D: DimName> PermutationSequence<D>
where DefaultAllocator: Allocator<(usize, usize), D> {
// XXX: Add non-generic constructors.
/// Creates a new statically-allocated sequence of `D` identity permutations.
#[inline]
pub fn identity() -> Self {
Self::identity_generic(D::name())
}
}
impl PermutationSequence<Dynamic>
where DefaultAllocator: Allocator<(usize, usize), Dynamic> {
/// Creates a new dynamically-allocated sequence of `n` identity permutations.
#[inline]
pub fn identity(n: usize) -> Self {
Self::identity_generic(Dynamic::new(n))
}
}
impl<D: Dim> PermutationSequence<D>
where DefaultAllocator: Allocator<(usize, usize), D> {
/// Creates a new sequence of D identity permutations.
#[inline]
pub fn identity_generic(dim: D) -> Self {
@ -34,7 +64,8 @@ impl<D: Dim> PermutationSequence<D>
}
}
/// Adds the interchange of the row `i` with the row `i2` to this sequence of permutations.
/// Adds the interchange of the row (or column) `i` with the row (or column) `i2` to this
/// sequence of permutations.
#[inline]
pub fn append_permutation(&mut self, i: usize, i2: usize) {
if i != i2 {
@ -44,8 +75,7 @@ impl<D: Dim> PermutationSequence<D>
}
}
/// Permutes the rows of `rhs`, applying a sequence of permutations from the 0-th row to the
/// last.
/// Applies this sequence of permutations to the rows of `rhs`.
#[inline]
pub fn permute_rows<N: Scalar, R2: Dim, C2: Dim, S2>(&self, rhs: &mut Matrix<N, R2, C2, S2>)
where S2: StorageMut<N, R2, C2> {
@ -55,7 +85,7 @@ impl<D: Dim> PermutationSequence<D>
}
}
/// Permutes the rows of `rhs` using the inverse permutation matrix of this LUP decomposition.
/// Applies this sequence of permutations in reverse to the rows of `rhs`.
#[inline]
pub fn inv_permute_rows<N: Scalar, R2: Dim, C2: Dim, S2>(&self, rhs: &mut Matrix<N, R2, C2, S2>)
where S2: StorageMut<N, R2, C2> {
@ -66,8 +96,7 @@ impl<D: Dim> PermutationSequence<D>
}
}
/// Permutes the columns of `rhs`, applying a sequence of permutations from the 0-th row to the
/// last.
/// Applies this sequence of permutations to the columns of `rhs`.
#[inline]
pub fn permute_columns<N: Scalar, R2: Dim, C2: Dim, S2>(&self, rhs: &mut Matrix<N, R2, C2, S2>)
where S2: StorageMut<N, R2, C2> {
@ -77,7 +106,7 @@ impl<D: Dim> PermutationSequence<D>
}
}
/// Permutes the columns of `rhs` using the inverse permutation matrix of this LUP decomposition.
/// Applies this sequence of permutations in reverse to the columns of `rhs`.
#[inline]
pub fn inv_permute_columns<N: Scalar, R2: Dim, C2: Dim, S2>(&self, rhs: &mut Matrix<N, R2, C2, S2>)
where S2: StorageMut<N, R2, C2> {
@ -88,7 +117,7 @@ impl<D: Dim> PermutationSequence<D>
}
}
/// The number of permutations applied by this matrix.
/// The number of non-identity permutations applied by this sequence.
pub fn len(&self) -> usize {
self.len
}

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@ -1,3 +1,6 @@
#[cfg(feature = "serde-serialize")]
use serde;
use alga::general::Real;
use core::{Unit, Matrix, MatrixN, MatrixMN, VectorN, DefaultAllocator};
use dimension::{Dim, DimMin, DimMinimum, U1};
@ -10,6 +13,19 @@ use geometry::Reflection;
/// The QR decomposition of a general matrix.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DefaultAllocator: Allocator<N, R, C> +
Allocator<N, DimMinimum<R, C>>,
MatrixMN<N, R, C>: serde::Serialize,
VectorN<N, DimMinimum<R, C>>: serde::Serialize")))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(deserialize =
"DefaultAllocator: Allocator<N, R, C> +
Allocator<N, DimMinimum<R, C>>,
MatrixMN<N, R, C>: serde::Deserialize<'de>,
VectorN<N, DimMinimum<R, C>>: serde::Deserialize<'de>")))]
#[derive(Clone, Debug)]
pub struct QR<N: Real, R: DimMin<C>, C: Dim>
where DefaultAllocator: Allocator<N, R, C> +
@ -150,7 +166,7 @@ impl<N: Real, D: DimMin<D, Output = D>> QR<N, D, D>
/// Solves the linear system `self * x = b`, where `x` is the unknown to be determined.
///
/// If the decomposed matrix is not invertible, this returns `false` and its input `b` is
/// overwritten with meaningless informations.
/// overwritten with garbage.
pub fn solve_mut<R2: Dim, C2: Dim, S2>(&self, b: &mut Matrix<N, R2, C2, S2>) -> bool
where S2: StorageMut<N, R2, C2>,
ShapeConstraint: SameNumberOfRows<R2, D> {

View File

@ -1,3 +1,6 @@
#[cfg(feature = "serde-serialize")]
use serde;
use std::cmp;
use num_complex::Complex;
use alga::general::Real;
@ -14,19 +17,26 @@ use geometry::{Reflection, UnitComplex};
/// Real RealSchur decomposition of a square matrix.
/// Real Schur decomposition of a square matrix.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DefaultAllocator: Allocator<N, D, D>,
MatrixN<N, D>: serde::Serialize")))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(deserialize =
"DefaultAllocator: Allocator<N, D, D>,
MatrixN<N, D>: serde::Deserialize<'de>")))]
#[derive(Clone, Debug)]
pub struct RealSchur<N: Real, D: Dim>
where DefaultAllocator: Allocator<N, D, D> +
Allocator<N, D> {
where DefaultAllocator: Allocator<N, D, D> {
q: MatrixN<N, D>,
t: MatrixN<N, D>
}
impl<N: Real, D: Dim> Copy for RealSchur<N, D>
where DefaultAllocator: Allocator<N, D, D> +
Allocator<N, D>,
where DefaultAllocator: Allocator<N, D, D>,
MatrixN<N, D>: Copy { }
impl<N: Real, D: Dim> RealSchur<N, D>
@ -37,12 +47,12 @@ impl<N: Real, D: Dim> RealSchur<N, D>
Allocator<N, D, D> +
Allocator<N, D> {
/// Computes the schur decomposition of a square matrix.
/// Computes the Schur decomposition of a square matrix.
pub fn new(m: MatrixN<N, D>) -> RealSchur<N, D> {
Self::try_new(m, N::default_epsilon(), 0).unwrap()
}
/// Attempts to compute the schur decomposition of a square matrix.
/// Attempts to compute the Schur decomposition of a square matrix.
///
/// If only eigenvalues are needed, it is more efficient to call the matrix method
/// `.eigenvalues()` instead.
@ -451,12 +461,12 @@ impl<N: Real, D: Dim, S: Storage<N, D, D>> SquareMatrix<N, D, S>
Allocator<N, DimDiff<D, U1>> + // For Hessenberg.
Allocator<N, D, D> +
Allocator<N, D> {
/// Computes the schur decomposition of a square matrix.
/// Computes the Schur decomposition of a square matrix.
pub fn real_schur(self) -> RealSchur<N, D> {
RealSchur::new(self.into_owned())
}
/// Attempts to compute the schur decomposition of a square matrix.
/// Attempts to compute the Schur decomposition of a square matrix.
///
/// If only eigenvalues are needed, it is more efficient to call the matrix method
/// `.eigenvalues()` instead.

View File

@ -1,3 +1,6 @@
#[cfg(feature = "serde-serialize")]
use serde;
use num_complex::Complex;
use std::ops::MulAssign;
@ -15,11 +18,29 @@ use geometry::UnitComplex;
/// The Singular Value Decomposition of a real matrix.
/// Singular Value Decomposition of a general matrix.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DefaultAllocator: Allocator<N, R, C> +
Allocator<N, DimMinimum<R, C>> +
Allocator<N, DimMinimum<R, C>, C> +
Allocator<N, R, DimMinimum<R, C>>,
MatrixMN<N, R, DimMinimum<R, C>>: serde::Serialize,
MatrixMN<N, DimMinimum<R, C>, C>: serde::Serialize,
VectorN<N, DimMinimum<R, C>>: serde::Serialize")))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(deserialize =
"DefaultAllocator: Allocator<N, R, C> +
Allocator<N, DimMinimum<R, C>> +
Allocator<N, DimMinimum<R, C>, C> +
Allocator<N, R, DimMinimum<R, C>>,
MatrixMN<N, R, DimMinimum<R, C>>: serde::Deserialize<'de>,
MatrixMN<N, DimMinimum<R, C>, C>: serde::Deserialize<'de>,
VectorN<N, DimMinimum<R, C>>: serde::Deserialize<'de>")))]
#[derive(Clone, Debug)]
pub struct SVD<N: Real, R: DimMin<C>, C: Dim>
where DefaultAllocator: Allocator<N, R, C> +
Allocator<N, DimMinimum<R, C>, C> +
where DefaultAllocator: Allocator<N, DimMinimum<R, C>, C> +
Allocator<N, R, DimMinimum<R, C>> +
Allocator<N, DimMinimum<R, C>> {
/// The left-singular vectors `U` of this SVD.
@ -31,9 +52,8 @@ pub struct SVD<N: Real, R: DimMin<C>, C: Dim>
}
impl<N: Real, R: DimMin<C>, C: Dim> SVD<N, R, C>
where DefaultAllocator: Allocator<N, R, C> +
Allocator<N, DimMinimum<R, C>, C> +
impl<N: Real, R: DimMin<C>, C: Dim> Copy for SVD<N, R, C>
where DefaultAllocator: Allocator<N, DimMinimum<R, C>, C> +
Allocator<N, R, DimMinimum<R, C>> +
Allocator<N, DimMinimum<R, C>>,
MatrixMN<N, R, DimMinimum<R, C>>: Copy,

View File

@ -1,3 +1,6 @@
#[cfg(feature = "serde-serialize")]
use serde;
use num_complex::Complex;
use std::ops::MulAssign;
@ -12,7 +15,20 @@ use linalg::SymmetricTridiagonal;
use geometry::UnitComplex;
/// The eigendecomposition of a symmetric matrix.
/// Eigendecomposition of a symmetric matrix.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DefaultAllocator: Allocator<N, D, D> +
Allocator<N, D>,
VectorN<N, D>: serde::Serialize,
MatrixN<N, D>: serde::Serialize")))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(deserialize =
"DefaultAllocator: Allocator<N, D, D> +
Allocator<N, D>,
VectorN<N, D>: serde::Deserialize<'de>,
MatrixN<N, D>: serde::Deserialize<'de>")))]
#[derive(Clone, Debug)]
pub struct SymmetricEigen<N: Real, D: Dim>
where DefaultAllocator: Allocator<N, D, D> +
@ -24,7 +40,7 @@ pub struct SymmetricEigen<N: Real, D: Dim>
pub eigenvalues: VectorN<N, D>
}
impl<N: Real, D: Dim> SymmetricEigen<N, D>
impl<N: Real, D: Dim> Copy for SymmetricEigen<N, D>
where DefaultAllocator: Allocator<N, D, D> +
Allocator<N, D>,
MatrixN<N, D>: Copy,
@ -35,7 +51,7 @@ impl<N: Real, D: Dim> SymmetricEigen<N, D>
Allocator<N, D> {
/// Computes the eigendecomposition of the given symmetric matrix.
///
/// Only the lower-triangular and diagonal parts of `m` are read.
/// Only the lower-triangular parts (including its diagonal) of `m` is read.
pub fn new(m: MatrixN<N, D>) -> Self
where D: DimSub<U1>,
DefaultAllocator: Allocator<N, DimDiff<D, U1>> {
@ -46,11 +62,11 @@ impl<N: Real, D: Dim> SymmetricEigen<N, D>
/// Computes the eigendecomposition of the given symmetric matrix with user-specified
/// convergence parameters.
///
/// Only the lower-triangular and diagonal parts of `m` are read.
/// Only the lower-triangular part (including its diagonal) of `m` is read.
///
/// # Arguments
///
/// * `eps` tolerence used to determine when a value converged to 0.
/// * `eps` tolerance used to determine when a value converged to 0.
/// * `max_niter` maximum total number of iterations performed by the algorithm. If this
/// number of iteration is exceeded, `None` is returned. If `niter == 0`, then the algorithm
/// continues indefinitely until convergence.
@ -277,7 +293,7 @@ impl<N: Real, D: DimSub<U1>, S: Storage<N, D, D>> SquareMatrix<N, D, S>
/// Computes the eigendecomposition of this symmetric matrix.
///
/// Only the lower-triangular part (including the diagonal) of `m` are read.
/// Only the lower-triangular part (including the diagonal) of `m` is read.
pub fn symmetric_eigen(self) -> SymmetricEigen<N, D> {
SymmetricEigen::new(self.into_owned())
}
@ -285,11 +301,11 @@ impl<N: Real, D: DimSub<U1>, S: Storage<N, D, D>> SquareMatrix<N, D, S>
/// Computes the eigendecomposition of the given symmetric matrix with user-specified
/// convergence parameters.
///
/// Only the lower-triangular and diagonal parts of `m` are read.
/// Only the lower-triangular part (including the diagonal) of `m` is read.
///
/// # Arguments
///
/// * `eps` tolerence used to determine when a value converged to 0.
/// * `eps` tolerance used to determine when a value converged to 0.
/// * `max_niter` maximum total number of iterations performed by the algorithm. If this
/// number of iteration is exceeded, `None` is returned. If `niter == 0`, then the algorithm
/// continues indefinitely until convergence.

View File

@ -1,3 +1,6 @@
#[cfg(feature = "serde-serialize")]
use serde;
use alga::general::Real;
use core::{SquareMatrix, MatrixN, MatrixMN, VectorN, DefaultAllocator};
use dimension::{DimSub, DimDiff, U1};
@ -7,7 +10,20 @@ use allocator::Allocator;
use linalg::householder;
/// The tridiagonalization of a symmetric matrix.
/// Tridiagonalization of a symmetric matrix.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(serialize =
"DefaultAllocator: Allocator<N, D, D> +
Allocator<N, DimDiff<D, U1>>,
MatrixN<N, D>: serde::Serialize,
VectorN<N, DimDiff<D, U1>>: serde::Serialize")))]
#[cfg_attr(feature = "serde-serialize",
serde(bound(deserialize =
"DefaultAllocator: Allocator<N, D, D> +
Allocator<N, DimDiff<D, U1>>,
MatrixN<N, D>: serde::Deserialize<'de>,
VectorN<N, DimDiff<D, U1>>: serde::Deserialize<'de>")))]
#[derive(Clone, Debug)]
pub struct SymmetricTridiagonal<N: Real, D: DimSub<U1>>
where DefaultAllocator: Allocator<N, D, D> +
@ -16,7 +32,7 @@ pub struct SymmetricTridiagonal<N: Real, D: DimSub<U1>>
off_diagonal: VectorN<N, DimDiff<D, U1>>
}
impl<N: Real, D: DimSub<U1>> SymmetricTridiagonal<N, D>
impl<N: Real, D: DimSub<U1>> Copy for SymmetricTridiagonal<N, D>
where DefaultAllocator: Allocator<N, D, D> +
Allocator<N, DimDiff<D, U1>>,
MatrixN<N, D>: Copy,
@ -28,7 +44,7 @@ impl<N: Real, D: DimSub<U1>> SymmetricTridiagonal<N, D>
/// Computes the tridiagonalization of the symmetric matrix `m`.
///
/// Only the lower-triangular and diagonal parts of `m` are read.
/// Only the lower-triangular part (including the diagonal) of `m` is read.
pub fn new(mut m: MatrixN<N, D>) -> Self {
let dim = m.data.shape().0;
@ -124,7 +140,7 @@ impl<N: Real, D: DimSub<U1>, S: Storage<N, D, D>> SquareMatrix<N, D, S>
/// Computes the tridiagonalization of this symmetric matrix.
///
/// Only the lower-triangular and diagonal parts of `self` are read.
/// Only the lower-triangular part (including the diagonal) of `m` is read.
pub fn symmetric_tridiagonalize(self) -> SymmetricTridiagonal<N, D> {
SymmetricTridiagonal::new(self.into_owned())
}