0.0.1 • Published 4 years ago

loshu v0.0.1

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4 years ago

Loshu.js

Linear Algebra for Javascript

Online REPL | API Reference

Loshu.js is a linear algebra library for JavaScript. It not only provides convienient manipulation of matrices and vectors, but is also capable of more advanced operations such as matrix decompositions, eigenvalue and vectors, solution and approximation to linear systems, and many more!

(Optionally) accelerated using WebAssembly.

Features

  • Basic matrix and vector math: multiplication, inverse, norm, ...
  • Matrix factorizations: QR, SVD, Polar, LDL, Cholesky, LUP, ...
  • Solving linear systems: Gauss-Jordan elimination, Least squares approximation, ...
  • Miscellaneous utilities: affine transformation, n-dimensional point/line/plane distance, ...
  • Pretty print matrices
  • Simple to use, documented interface
  • Try it out in your browser with the online REPL
  • Additional WebAssembly implementation for certain matrix math (C++ → emscripten) for up to 100x speed boost

Quick Start

For Browser

To use the library, simply include the following to your html:

<script src="https://loshu.glitch.me/loshu.js"></script>

To enable Web Assembly acceleration of some functionalities such as eigen(), inv() and svd(), include the loshuwasm.js script before loshu.js, like so:

<script src="https://loshu.glitch.me/loshuwasm.js"></script>
<script src="https://loshu.glitch.me/loshu.js"></script>

You will see a web assembly backend initialized message in console if the wasm module is detected. Otherwise you can manually turn it on using lo.options.usewasm=true.

You can also download the scripts from the links above and host them yourself, but you'll also need to download here the .wasm binary and put it in the same folder.

For Node.js

To use the library with node.js, download and require it like so:

const lo = require("./loshu")

To enable Web Assembly acceleration of some functionalities such as eigen(), inv() and svd(), Download the wasm binary as well as the wrapper and put them under the same folder. You will see a web assembly backend initialized message in the console.

Examples

let A = [[1,2,3],[4,5,6],[7,8,9]];  // matrix is just JS array (row major)
let B = lo.rand(3,3);               // generate a 3x3 matrix of random values
let C = lo.mul(A,B)                 // array multiplication

let [U,S,V] = lo.svd(C);  // singular value decomposition
lo.print(U,S,V);          // pretty print the matrices

let l = lo.lsqfit([[0,0],[1,1],[2,1.9],[3,3.1]],{order:1}) // fit a line to data points
lo.print(`y = ${l[0].toFixed(2)} + ${l[1].toFixed(2)} x`); // display the line equation

let M = lo.affine('roty',Math.PI/4); // create a 45° rotation matrix around y axis
let u = [1,2,3];                     // some vector
let v = lo.transform(M,u);           // apply the transform

Function List

add()adj()affine()approx()
assert()blit()cholesky()clone()
cofactor()cond()cross()det()
diagonal()dist()dot()eigen()
gauss()gaussjordan()gerschgorin()gramschmidt()
hasinf()hasnan()hessenberg()householder()
hsplit()hstack()iden()inv()
ishermitian()ismat()isnum()isperm()
issquare()isunitary()isvec()ldl()
lsq()lsqfit()lup()magic()
map()matmul()minor()mul()
ncols()norm()normalize()nrows()
outer()pinv()polar()print()
proj()qr()rand()rank()
scale()size()slice()sub()
svd()tr()transform()transpose()
zeros()

References

The development of this library is largely inspired by the textbook, David Poole's Linear Algebra: A Modern Introduction.

Besides Wikipedia and Wolfram MathWorld, the following online resources have also been very helpful in explaining algorithms.