Home » MATLAB’s Array-Oriented Syntax

MATLAB’s Array-Oriented Syntax

1970
  • Cleve Moler
Computer workstation with MATLAB interface showcasing array-oriented syntax in numerical analysis.

MATLAB is a matrix-based language where the fundamental data type is the array, not requiring dimensioning. This allows for concise expression of matrix and vector operations. For instance, multiplying two matrices `A` and `B` is simply `C = A * B`, and element-wise multiplication is `C = A .* B`, abstracting away complex loop structures found in other languages.

The core design philosophy of MATLAB is that all data is treated as an array, with scalars being 1×1 arrays and vectors being 1xN or Nx1 arrays. This paradigm stems from its origin as a high-level interactive shell for the LINPACK and EISPACK Fortran libraries, which were designed for linear algebra. This array-centric syntax dramatically simplifies code for scientific and engineering problems, which are often expressed in terms of matrix and vector mathematics. Operations that would require nested loops and careful index management in languages like C or Java can be expressed in a single, readable line in MATLAB.

For example, solving the system of linear equations \(Ax = b\) is accomplished with the command `x = Ab`, which uses the backslash operator (mldivide). This operator does more than just calculate the inverse of A; it analyzes the matrix A to choose the most stable and computationally efficient algorithm, such as LU decomposition for square matrices or QR decomposition for rectangular systems. This high-level abstraction allows users to focus on the mathematical problem rather than the low-level implementation details. Furthermore, the language encourages ‘vectorization,’ the practice of replacing explicit loops with array expressions. This not only makes code more compact but also significantly faster, as MATLAB’s internal functions are highly optimized, multi-threaded C and Fortran code.

UNESCO Nomenclature: 1202
– Computer science

Type

Software/Algorithm

Disruption

Substancial

Usage

Widespread Use

Precursors

Applications

  • signal processing algorithms
  • image processing filters
  • control systems design
  • finite element analysis
  • computational fluid dynamics
  • machine learning model implementation

Patents:

NA

Potential Innovations Ideas

Professionals (100% free) Membership Required

You must be a Professionals (100% free) member to access this content.

Join Now

Already a member? Log in here
Related to: MATLAB, array programming, matrix laboratory, vectorization, numerical computing, linear algebra, syntax, data type, array-oriented, scientific computing.

Leave a Reply

Your email address will not be published. Required fields are marked *

AVAILABLE FOR NEW CHALLENGES
Mechanical Engineer, Project, Process Engineering or R&D Manager
Effective product development

Available for a new challenge on short notice.
Contact me on LinkedIn
Plastic metal electronics integration, Design-to-cost, GMP, Ergonomics, Medium to high-volume devices & consumables, Lean Manufacturing, Regulated industries, CE & FDA, CAD, Solidworks, Lean Sigma Black Belt, medical ISO 13485

We are looking for a new sponsor

 

Your company or institution is into technique, science or research ?
> send us a message <

Receive all new articles
Free, no spam, email not distributed nor resold

or you can get your full membership -for free- to access all restricted content >here<

Historical Context

(if date is unknown or not relevant, e.g. "fluid mechanics", a rounded estimation of its notable emergence is provided)

Related Invention, Innovation & Technical Principles

Scroll to Top

You May Also Like