English

Armadillo: An Efficient Framework for Numerical Linear Algebra

Mathematical Software 2025-12-30 v5

Abstract

A major challenge in the deployment of scientific software solutions is the adaptation of research prototypes to production-grade code. While high-level languages like MATLAB are useful for rapid prototyping, they lack the resource efficiency required for scalable production applications, necessitating translation into lower level languages like C++. Further, for machine learning and signal processing applications, the underlying linear algebra primitives, generally provided by the standard BLAS and LAPACK libraries, are unwieldy and difficult to use, requiring manual memory management and other tedium. To address this challenge, the Armadillo C++ linear algebra library provides an intuitive interface for writing linear algebra expressions that are easily compiled into efficient production-grade implementations. We describe the expression optimisations we have implemented in Armadillo, exploiting template metaprogramming. We demonstrate that these optimisations result in considerable efficiency gains on a variety of benchmark linear algebra expressions.

Keywords

Cite

@article{arxiv.2502.03000,
  title  = {Armadillo: An Efficient Framework for Numerical Linear Algebra},
  author = {Conrad Sanderson and Ryan Curtin},
  journal= {arXiv preprint arXiv:2502.03000},
  year   = {2025}
}
R2 v1 2026-06-28T21:33:11.133Z