Rust numeric library contains linear algebra, numerical analysis, statistics and machine learning tools with R, MATLAB, Python like macros.
- Peroxide
Peroxide provides various features.
default- Pure Rust (No dependencies of architecture - Perfect cross compilation)O3- BLAS & LAPACK (Perfect performance but little bit hard to set-up - Strongly recommend to look Peroxide with BLAS)plot- With matplotlib of python, we can draw any plots.complex- With complex numbers (vector, matrix and integral)parallel- With some parallel functionsnc- To handle netcdf file format with DataFramecsv- To handle csv file format with Matrix or DataFrameparquet- To handle parquet file format with DataFrameserde- serialization with Serde.rkyv- serialization with rkyv.
If you want to do high performance computation and more linear algebra, then choose O3 feature.
If you don't want to depend C/C++ or Fortran libraries, then choose default feature.
If you want to draw plot with some great templates, then choose plot feature.
You can choose any features simultaneously.
Peroxide uses a 1D data structure to represent matrices, making it straightforward to integrate with BLAS (Basic Linear Algebra Subprograms). This means that Peroxide can guarantee excellent performance for linear algebraic computations by leveraging the optimized routines provided by BLAS.
For users familiar with numerical computing libraries like NumPy, MATLAB, or R, Rust's syntax might seem unfamiliar at first. This can make it more challenging to learn and use Rust libraries that heavily rely on Rust's unique features and syntax.
However, Peroxide aims to bridge this gap by providing a syntax that resembles the style of popular numerical computing environments. With Peroxide, you can perform complex computations using a syntax similar to that of R, NumPy, or MATLAB, making it easier for users from these backgrounds to adapt to Rust and take advantage of its performance benefits.
For example,
#[macro_use]
extern crate peroxide;
use peroxide::prelude::*;
fn main() {
// MATLAB like matrix constructor
let a = ml_matrix("1 2;3 4");
// R like matrix constructor (default)
let b = matrix(c!(1,2,3,4), 2, 2, Row);
// Or use zeros
let mut z = zeros(2, 2);
z[(0,0)] = 1.0;
z[(0,1)] = 2.0;
z[(1,0)] = 3.0;
z[(1,1)] = 4.0;
// Simple but effective operations
let c = a * b; // Matrix multiplication (BLAS integrated)
// Easy to pretty print
c.print();
// c[0] c[1]
// r[0] 1 3
// r[1] 2 4
// Easy to do linear algebra
c.det().print();
c.inv().print();
// and etc.
}In peroxide, there are two different options.
prelude: To simple use.fuga: To choose numerical algorithms explicitly.
For examples, let's see norm.
In prelude, use norm is simple: a.norm(). But it only uses L2 norm for Vec<f64>. (For Matrix, Frobenius norm.)
#[macro_use]
extern crate peroxide;
use peroxide::prelude::*;
fn main() {
let a = c!(1, 2, 3);
let l2 = a.norm(); // L2 is default vector norm
assert_eq!(l2, 14f64.sqrt());
}In fuga, use various norms. But you should write a little bit longer than prelude.
#[macro_use]
extern crate peroxide;
use peroxide::fuga::*;
fn main() {
let a = c!(1, 2, 3);
let l1 = a.norm(Norm::L1);
let l2 = a.norm(Norm::L2);
let l_inf = a.norm(Norm::LInf);
assert_eq!(l1, 6f64);
assert_eq!(l2, 14f64.sqrt());
assert_eq!(l_inf, 3f64);
}Peroxide can do many things.
- Linear Algebra
- Effective Matrix structure
- Transpose, Determinant, Diagonal
- LU Decomposition, Inverse matrix, Block partitioning
- QR Decomposition (
O3feature) - Singular Value Decomposition (SVD) (
O3feature) - Cholesky Decomposition (
O3feature) - Reduced Row Echelon form
- Column, Row operations
- Eigenvalue, Eigenvector
- Functional Programming
- Easier functional programming with
Vec<f64> - For matrix, there are three maps
fmap: map for all elementscol_map: map for column vectorsrow_map: map for row vectors
- Easier functional programming with
- Automatic Differentiation
- Const-generic
Jet<N>type for arbitrary-order forward AD - Type aliases:
Dual(1st order),HyperDual(2nd order) - Normalized Taylor coefficients (no binomial overhead)
#[ad_function]proc macro for automatic gradient/hessian generation- Exact Jacobian via
jacobian()function Realtrait to constrain forf64andJet<N>
- Const-generic
- Numerical Analysis
- Lagrange interpolation
- Splines
- Cubic Spline
- Cubic Hermite Spline
- Estimate slope via Akima
- Estimate slope via Quadratic interpolation
- B-Spline
- Non-linear regression
- Gradient Descent
- Levenberg Marquardt
- Ordinary Differential Equation (trait-based since
v0.36.0)- Explicit: Ralston 3rd / Runge-Kutta 4th / Ralston 4th / Runge-Kutta 5th
- Embedded: Bogacki-Shampine 3(2) / Runge-Kutta-Fehlberg 5(4) / Dormand-Prince 5(4) / Tsitouras 5(4) / Runge-Kutta-Fehlberg 8(7)
- Implicit: Gauss-Legendre 4th order
- Numerical Integration
- Newton-Cotes Quadrature
- Gauss-Legendre Quadrature (up to 30 order)
- Gauss-Kronrod Quadrature, adaptive: G7K15 / G10K21 / G15K31 / G20K41 / G25K51 / G30K61
- Gauss-Kronrod Quadrature, relative tolerance: G7K15R / G10K21R / G15K31R / G20K41R / G25K51R / G30K61R
- Root Finding (trait-based since
v0.37.0): Bisection / False Position / Secant / Newton / Broyden
- Statistics
- More easy random with
randcrate - Ordered Statistics
- Median
- Quantile (Matched with R quantile)
- Probability Distributions
- Bernoulli
- Uniform
- Binomial
- Normal
- Gamma
- Beta
- Student's-t
- Weighted Uniform
- LogNormal
- RNG algorithms
- Acceptance Rejection
- Marsaglia Polar
- Ziggurat
- Wrapper for
rand-distcrate - Piecewise Rejection Sampling
- Confusion Matrix & Metrics
- More easy random with
- Special functions
- Wrapper for
puruspecrate (pure rust)
- Wrapper for
- Utils
- R-like macro & functions
- Matlab-like macro & functions
- Numpy-like macro & functions
- Julia-like macro & functions
- Plotting
- With
pyo3&matplotlib
- With
- DataFrame
- Support various types simultaneously
- Read & Write
csvfiles (csvfeature) - Read & Write
netcdffiles (ncfeature) - Read & Write
parquetfiles (parquetfeature) - Shape & info:
nrow,ncol,shape,dtypes,is_empty,contains - Row operations:
head,tail,slice - Column operations:
select,rename,column_names,select_dtypes - Series statistics:
sum,mean,var,sd,min,max - DataFrame statistics:
describe,sum,mean
After 0.23.0, peroxide is compatible with mathematical structures.
Matrix, Vec<f64>, f64 are considered as inner product vector spaces.
And Matrix, Vec<f64> are linear operators - Vec<f64> to Vec<f64> and Vec<f64> to f64.
For future, peroxide will include more & more mathematical concepts. (But still practical.)
Rust provides a strong type system, ownership concepts, borrowing rules, and other features that enable developers to write safe and efficient code. It also offers modern programming techniques like trait-based abstraction and convenient error handling. Peroxide is developed to take full advantage of these strengths of Rust.
The example code demonstrates how Peroxide can be used to simulate the Lorenz attractor and visualize the results. It showcases some of the powerful features provided by Rust, such as the ? operator for streamlined error handling and the ODEProblem trait for abstracting ODE problems.
use peroxide::fuga::*;
fn main() -> Result<(), Box<dyn Error>> {
let initial_conditions = vec![10f64, 1f64, 1f64];
let rkf45 = RKF45::new(1e-4, 0.9, 1e-6, 1e-2, 100);
let basic_ode_solver = BasicODESolver::new(rkf45);
let (_, y_vec) = basic_ode_solver.solve(
&Lorenz,
(0f64, 100f64),
1e-2,
&initial_conditions,
)?; // Error handling with `?` - can check constraint violation and etc.
let y_mat = py_matrix(y_vec);
let y0 = y_mat.col(0);
let y2 = y_mat.col(2);
// Simple but effective plotting
let mut plt = Plot2D::new();
plt
.set_domain(y0)
.insert_image(y2)
.set_xlabel(r"$y_0$")
.set_ylabel(r"$y_2$")
.set_style(PlotStyle::Nature)
.tight_layout()
.set_dpi(600)
.set_path("example_data/lorenz_rkf45.png")
.savefig()?;
Ok(())
}
struct Lorenz;
impl ODEProblem for Lorenz {
fn rhs(&self, t: f64, y: &[f64], dy: &mut [f64]) -> anyhow::Result<()> {
dy[0] = 10f64 * (y[1] - y[0]);
dy[1] = 28f64 * y[0] - y[1] - y[0] * y[2];
dy[2] = -8f64 / 3f64 * y[2] + y[0] * y[1];
Ok(())
}
}Running the code produces the following visualization of the Lorenz attractor:
Peroxide strives to leverage the benefits of the Rust language while providing a user-friendly interface for numerical computing and scientific simulations.
Most features are pure Rust and require no system setup. The three groups below depend on external libraries or runtimes; install the relevant prerequisites before enabling the corresponding feature flag.
O3 enables hardware-accelerated linear algebra (LU, QR, SVD, Cholesky, GEMV/GEMM dispatch) through the blas and lapack FFI crates.
Those crates only provide function signatures, so the link backend that supplies the actual dgemv_ / dpotrf_ / ... symbols must be selected separately.
The simplest path is to enable one of the convenience flags below; each pulls in blas-src and lapack-src with the matching backend.
| Convenience flag | Backend | Typical platform / use case |
|---|---|---|
O3-openblas |
OpenBLAS | Linux, Windows, macOS via Homebrew |
O3-accelerate |
Apple Accelerate | macOS (no extra system install) |
O3-mkl |
Intel MKL | Intel CPUs, vendor-tuned performance |
O3-netlib |
Netlib reference | Portability, lowest performance |
If you need a backend not in the list above (for example BLIS or R's BLAS), enable the bare O3 flag and add blas-src / lapack-src to your downstream binary's Cargo.toml with the appropriate features yourself.
System libraries still need to be present on the host for O3-openblas and O3-netlib; install them with:
| Platform | Install |
|---|---|
| Debian / Ubuntu | sudo apt install libopenblas-dev liblapack-dev |
| Fedora / RHEL | sudo dnf install openblas-devel lapack-devel |
| Arch Linux | sudo pacman -S openblas lapack |
| macOS (Homebrew) | brew install openblas lapack |
O3-accelerate and O3-mkl ship their own backend (Apple's framework and Intel's redistributable, respectively), so they need no further system packages.
plot enables the high-level Plot2D API, which renders figures by delegating to matplotlib through pyo3.
Python 3 with development headers is required at build time, and matplotlib is required at runtime.
| Step | Command |
|---|---|
| Install Python 3 + dev headers (Debian) | sudo apt install python3 python3-dev |
| Install Python 3 + dev headers (Fedora) | sudo dnf install python3 python3-devel |
| Install matplotlib | pip install matplotlib |
| (Optional) Publication-quality styles | pip install scienceplots |
If you use a virtual environment, activate it before building so that pyo3 resolves to the intended interpreter (e.g. source .venv/bin/activate).
The plain pyo3 flag enables the Python interop layer without pulling in the Plot2D API.
nc (alias netcdf) enables NetCDF I/O for DataFrame via the netcdf crate, which links against the system HDF5 and netCDF-C libraries.
| Platform | Install |
|---|---|
| Debian / Ubuntu | sudo apt install libnetcdf-dev libhdf5-dev |
| Fedora / RHEL | sudo dnf install netcdf-devel hdf5-devel |
| Arch Linux | sudo pacman -S netcdf hdf5 |
| macOS (Homebrew) | brew install netcdf hdf5 |
Note: Peroxide currently pins
netcdf = "0.7", which transitively useshdf5-sys 0.8.x. Thathdf5-sysonly recognizes the HDF5 1.x version string and rejects HDF5 2.x withInvalid H5_VERSION. If your distribution ships HDF5 2.x (e.g. recent rolling-release Linux), install an HDF5 1.14.x package alongside (Debian/Ubuntu LTS releases still default to 1.10/1.14) or wait for the planned bump tonetcdf 0.12. Thencbuild will succeed against any HDF5 1.x.
Peroxide builds on stable Rust 1.91 or later. The default profile is pure Rust; system libraries are only needed for the features listed in the Pre-requisite section.
cargo add peroxide # default (pure Rust)
cargo add peroxide --features "<FEATURES>" # opt-in features| Goal | Command |
|---|---|
| Linear algebra on Linux / Windows | cargo add peroxide --features O3-openblas |
| Linear algebra on macOS | cargo add peroxide --features O3-accelerate |
| Plotting via Python / matplotlib | cargo add peroxide --features plot |
| DataFrame + Parquet I/O | cargo add peroxide --features parquet |
| Full Linux scientific stack | cargo add peroxide --features "O3-openblas plot nc csv parquet serde" |
| Full macOS scientific stack | cargo add peroxide --features "O3-accelerate plot nc csv parquet serde" |
#[macro_use]
extern crate peroxide;
use peroxide::fuga::*;
fn main() {
// R / MATLAB-style matrix literals
let a = ml_matrix("1 2; 3 4");
let b = c!(5, 6);
// matrix-vector product (BLAS-dispatched when an `O3-*` feature is on)
let c = &a * &b;
a.print(); // pretty-formatted matrix
c.print(); // [17, 39]
a.det().print();
a.inv().print();
}Most users only need the composite flags in the first table. The remaining single-crate flags exist so advanced users can pull in just one optional dependency without enabling the rest.
Composite flags (recommended)
| Flag | Requires | Purpose |
|---|---|---|
O3-openblas |
OpenBLAS | BLAS / LAPACK accelerated linear algebra (Linux / Windows) |
O3-accelerate |
Apple Accelerate | Same, using the Accelerate framework on macOS |
O3-mkl |
Intel MKL | Same, using Intel MKL |
O3-netlib |
Netlib | Same, using the reference Netlib BLAS |
plot |
Python 3 + matplotlib | High-level Plot2D API |
nc |
HDF5 + netCDF-C | NetCDF I/O for DataFrame |
parquet |
(pure Rust) | Parquet I/O for DataFrame (pulls in arrow, indexmap) |
complex |
(pure Rust) | Complex vectors / matrices + cgemm matmul |
parallel |
(pure Rust) | Parallel iterators on vectors / matrices |
csv |
(pure Rust) | CSV I/O for DataFrame |
json |
(pure Rust) | JSON I/O for DataFrame |
serde |
(pure Rust) | serde (de)serialization |
rkyv |
(pure Rust) | rkyv zero-copy (de)serialization |
Advanced: single-crate flags
These flags enable one optional dependency in isolation. Use them only if you want to depend on the underlying crate without the surrounding Peroxide API.
| Flag | Underlying crate | Notes |
|---|---|---|
O3 |
blas, lapack |
Bare BLAS / LAPACK FFI; bring your own blas-src / lapack-src |
blas |
blas |
Raw BLAS bindings only |
lapack |
lapack |
Raw LAPACK bindings only |
pyo3 |
pyo3 |
Python 3 interop without the Plot2D API |
netcdf |
netcdf |
Alias for nc |
num-complex |
num-complex |
Raw complex-number dependency only |
rayon |
rayon |
Raw rayon dependency only |
arrow |
arrow |
Raw arrow dependency only |
indexmap |
indexmap |
Raw indexmap dependency only |
Runnable programs covering every component live in examples/, with longer worked notebooks in the companion Peroxide_Gallery repository.
API reference and feature-specific guidance are published on docs.rs/peroxide.
See RELEASES.md.
See CONTRIBUTING.md.
Peroxide is licensed under dual licenses: Apache License 2.0 and MIT License.
Hey there! If you're using Peroxide in your research or project, you're not required to cite us. But if you do, we'd be really grateful! ๐
To make citing Peroxide easy, we've created a DOI through Zenodo. Just click on this badge:
This will take you to the Zenodo page for Peroxide. At the bottom, you'll find the citation information in various formats like BibTeX, RIS, and APA.
So, if you want to acknowledge the work we've put into Peroxide, citing us would be a great way to do it! Thanks for considering it, we appreciate your support! ๐
