Products
  • Wolfram|One

    The definitive Wolfram Language and notebook experience

  • Mathematica

    The original technical computing environment

  • Notebook Assistant + LLM Kit

    All-in-one AI assistance for your Wolfram experience

  • Compute Services
  • System Modeler
  • Finance Platform
  • Wolfram|Alpha Notebook Edition
  • Application Server
  • Enterprise Private Cloud
  • Wolfram Engine
  • Wolfram Player
  • Wolfram Cloud App
  • Wolfram Player App

More mobile apps

Core Technologies of Wolfram Products

  • Wolfram Language
  • Computable Data
  • Wolfram Notebooks
  • AI & Linguistic Understanding

Deployment Options

  • Wolfram Cloud
  • wolframscript
  • Wolfram Engine Community Edition
  • Wolfram LLM API
  • WSTPServer
  • Wolfram|Alpha APIs

From the Community

  • Function Repository
  • Community Paclet Repository
  • Example Repository
  • Neural Net Repository
  • Prompt Repository
  • Wolfram Demonstrations
  • Data Repository
  • Group & Organizational Licensing
  • All Products
Consulting & Solutions

We deliver solutions for the AI era—combining symbolic computation, data-driven insights and deep technical expertise

  • Data & Computational Intelligence
  • Model-Based Design
  • Algorithm Development
  • Wolfram|Alpha for Business
  • Blockchain Technology
  • Education Technology
  • Quantum Computation

Wolfram Consulting

Wolfram Solutions

  • Data Science
  • Artificial Intelligence
  • Biosciences
  • Healthcare Intelligence
  • Sustainable Energy
  • Control Systems
  • Enterprise Wolfram|Alpha
  • Blockchain Labs

More Wolfram Solutions

Wolfram Solutions For Education

  • Research Universities
  • Colleges & Teaching Universities
  • Junior & Community Colleges
  • High Schools
  • Educational Technology
  • Computer-Based Math

More Solutions for Education

  • Contact Us
Learning & Support

Get Started

  • Wolfram Language Introduction
  • Fast Intro for Programmers
  • Fast Intro for Math Students
  • Wolfram Language Documentation

More Learning

  • Highlighted Core Areas
  • Demonstrations
  • YouTube
  • Daily Study Groups
  • Wolfram Schools and Programs
  • Books

Grow Your Skills

  • Wolfram U

    Courses in computing, science, life and more

  • Community

    Learn, solve problems and share ideas.

  • Blog

    News, views and insights from Wolfram

  • Resources for

    Software Developers

Tech Support

  • Contact Us
  • Support FAQs
  • Support FAQs
  • Contact Us
Company
  • About Wolfram
  • Career Center
  • All Sites & Resources
  • Connect & Follow
  • Contact Us

Work with Us

  • Student Ambassador Initiative
  • Wolfram for Startups
  • Student Opportunities
  • Jobs Using Wolfram Language

Educational Programs for Adults

  • Summer School
  • Winter School

Educational Programs for Youth

  • Middle School Camp
  • High School Research Program
  • Computational Adventures

Read

  • Stephen Wolfram's Writings
  • Wolfram Blog
  • Wolfram Tech | Books
  • Wolfram Media
  • Complex Systems

Educational Resources

  • Wolfram MathWorld
  • Wolfram in STEM/STEAM
  • Wolfram Challenges
  • Wolfram Problem Generator

Wolfram Initiatives

  • Wolfram Science
  • Wolfram Foundation
  • History of Mathematics Project

Events

  • Stephen Wolfram Livestreams
  • Online & In-Person Events
  • Contact Us
  • Connect & Follow
Wolfram|Alpha
  • Your Account
  • User Portal
  • Wolfram Cloud
  • Products
    • Wolfram|One
    • Mathematica
    • Notebook Assistant + LLM Kit
    • Compute Services
    • System Modeler
    • Finance Platform
    • Wolfram|Alpha Notebook Edition
    • Application Server
    • Enterprise Private Cloud
    • Wolfram Engine
    • Wolfram Player
    • Wolfram Cloud App
    • Wolfram Player App

    More mobile apps

    • Core Technologies
      • Wolfram Language
      • Computable Data
      • Wolfram Notebooks
      • AI & Linguistic Understanding
    • Deployment Options
      • Wolfram Cloud
      • wolframscript
      • Wolfram Engine Community Edition
      • Wolfram LLM API
      • WSTPServer
      • Wolfram|Alpha APIs
    • From the Community
      • Function Repository
      • Community Paclet Repository
      • Example Repository
      • Neural Net Repository
      • Prompt Repository
      • Wolfram Demonstrations
      • Data Repository
    • Group & Organizational Licensing
    • All Products
  • Consulting & Solutions

    We deliver solutions for the AI era—combining symbolic computation, data-driven insights and deep technical expertise

    WolframConsulting.com

    Wolfram Solutions

    • Data Science
    • Artificial Intelligence
    • Biosciences
    • Healthcare Intelligence
    • Sustainable Energy
    • Control Systems
    • Enterprise Wolfram|Alpha
    • Blockchain Labs

    More Wolfram Solutions

    Wolfram Solutions For Education

    • Research Universities
    • Colleges & Teaching Universities
    • Junior & Community Colleges
    • High Schools
    • Educational Technology
    • Computer-Based Math

    More Solutions for Education

    • Contact Us
  • Learning & Support

    Get Started

    • Wolfram Language Introduction
    • Fast Intro for Programmers
    • Fast Intro for Math Students
    • Wolfram Language Documentation

    Grow Your Skills

    • Wolfram U

      Courses in computing, science, life and more

    • Community

      Learn, solve problems and share ideas.

    • Blog

      News, views and insights from Wolfram

    • Resources for

      Software Developers
    • Tech Support
      • Contact Us
      • Support FAQs
    • More Learning
      • Highlighted Core Areas
      • Demonstrations
      • YouTube
      • Daily Study Groups
      • Wolfram Schools and Programs
      • Books
    • Support FAQs
    • Contact Us
  • Company
    • About Wolfram
    • Career Center
    • All Sites & Resources
    • Connect & Follow
    • Contact Us

    Work with Us

    • Student Ambassador Initiative
    • Wolfram for Startups
    • Student Opportunities
    • Jobs Using Wolfram Language

    Educational Programs for Adults

    • Summer School
    • Winter School

    Educational Programs for Youth

    • Middle School Camp
    • High School Research Program
    • Computational Adventures

    Read

    • Stephen Wolfram's Writings
    • Wolfram Blog
    • Wolfram Tech | Books
    • Wolfram Media
    • Complex Systems
    • Educational Resources
      • Wolfram MathWorld
      • Wolfram in STEM/STEAM
      • Wolfram Challenges
      • Wolfram Problem Generator
    • Wolfram Initiatives
      • Wolfram Science
      • Wolfram Foundation
      • History of Mathematics Project
    • Events
      • Stephen Wolfram Livestreams
      • Online & In-Person Events
    • Contact Us
    • Connect & Follow
  • Wolfram|Alpha
  • Wolfram Cloud
  • Your Account
  • User Portal
Wolfram Language & System Documentation Center
Symmetrized Arrays
TECH NOTE

Symmetrized Arrays

Representation of Arrays with SymmetryAntisymmetric Arrays
Construction of Symmetrized Arrays
Symmetry plays a key role in the treatment of high-rank tensors. Most high-rank tensors of importance in physics and mathematics have symmetry, from the symmetric inertia tensors to the rank-4 stiffness and curvature tensors. Many of them have transposition symmetries, in some cases rather complicated. The Wolfram System implements a complete language for permutation symmetries of tensors of any rank or dimensions, and provides a specialized type of array that stores only the independent components with respect to symmetry. This frequently results in a substantial gain in storage space, though usually at the expense of slower manipulations, because more complex algorithms are required. See "Tensor Symmetries" for a description of the language of symmetries.
Representation of Arrays with Symmetry
SymmetrizedArray
construct an array storing only symmetry independent components
SymmetrizedArrayRules
list of rules of independent components of a symmetrized array
SymmetrizedReplacePart
replace independent components in a symmetrized array
Symmetrized arrays.
This is an array with symmetry:
That means that the array stays invariant under all permutations of its slots:
It can be stored a simpler way, which better reflects the fact that some elements are repeated several times:
The new representation contains the dimensions, the list of nonzero independent components, and the symmetry:
Its normal form coincides with the original array:
These are rules for the independent components of the array. The default rule at the end represents the fact that independent components not given here are taken to have value 0:
Symmetrized arrays offer a compact way to store some arrays with much symmetry. In particular, antisymmetry maximizes this gain. In the most extreme nonzero case, a fully antisymmetric rank- array in dimension has one independent component. Its sparse representation contains nonzero elements, and its normal form has entries. On the other hand, manipulation of symmetrized arrays is usually slower because it requires more complex algorithms.
LeviCivitaTensor offers a sparse representation by default:
LeviCivitaTensor offers a symmetrized and normal representation:
Compare sizes of the different representations:
There are other highly symmetric arrays in the Wolfram System.
SymmetrizedArray objects are treated as atomic. Their information can be accessed using functions.
A symmetrized array is atomic:
The information about the array can be obtained as follows:
Extract components of the array, irrespectively of whether they are independent or not:
Extract subarrays, keeping their symmetry if possible:
Individual elements can be changed. Note that the given rule is transformed into its corresponding independent component rule:
Construction of Symmetrized Arrays
It has been shown that SymmetrizedArray can be used to rewrite a normal array with symmetry in a more efficient form. Following SparseArray, SymmetrizedArray can also construct the same efficient representation from a list of rules and a symmetry specification.
SymmetrizedArray form of an antisymmetric matrix:
These are its independent components:
Reconstruct the array from these rules and the symmetry:
If the symmetry is not provided, then the identity symmetry is assumed. The result is effectively equivalent to using SparseArray with the same rules:
Rules that are incompatible with the symmetry are discarded:
General patterns in rules can be used in the first argument of SymmetrizedArray. These rules are meant to be rules for the independent components only, as given by SymmetrizedIndependentComponents, and not for all positions of the array, as SparseArray would do. In particular, this is useful to generate symmetrized arrays with random entries.
A random rank-3 antisymmetric array in dimension 4:
Use indexed expression as components of the array:
An alternative way to construct symmetrized arrays is by actual symmetrization of other arrays, using the function Symmetrize.
Symmetrize a general matrix:
Symmetrized with other symmetries:
Antisymmetric Arrays
The antisymmetric tensors play a fundamental role in exterior algebra. The Wolfram System provides the basic operations of the wedge product of antisymmetric tensors and Hodge duality.
Take two antisymmetric arrays in dimension 5:
Their wedge product is the antisymmetrized tensor product, except for a multiplicative factor given by the multinomial of the ranks:
When the total rank exceeds the dimension, the result vanishes:
The SymmetrizedArray representation allows working with high dimensions; that would not be possible otherwise with normal or sparse representations:
The result is more conveniently represented giving its Hodge dual:

Related Guides

    ▪
  • Symbolic Tensors

Related Tech Notes

    ▪
  • Tensor Symmetries
  • ▪
  • Symbolic Tensors
Top
Introduction for Programmers
Introductory Book
Wolfram Function Repository | Wolfram Data Repository | Wolfram Data Drop | Wolfram Language Products
Top
  • Products
  • Wolfram|One
  • Mathematica
  • Notebook Assistant + LLM Kit
  • Compute Services
  • System Modeler

  • Wolfram|Alpha Notebook Edition
  • Wolfram|Alpha Pro
  • Mobile Apps

  • Wolfram Engine
  • Wolfram Player

  • Volume & Site Licensing
  • Server Deployment Options
  • Consulting
  • Wolfram Consulting
  • Repositories
  • Data Repository
  • Function Repository
  • Community Paclet Repository
  • Neural Net Repository
  • Prompt Repository

  • Wolfram Language Example Repository
  • Notebook Archive
  • Wolfram GitHub
  • Learning
  • Wolfram U
  • Wolfram Language Documentation
  • Webinars & Training
  • Educational Programs

  • Wolfram Language Introduction
  • Fast Introduction for Programmers
  • Fast Introduction for Math Students
  • Books

  • Wolfram Community
  • Wolfram Blog
  • Public Resources
  • Wolfram|Alpha
  • Wolfram Problem Generator
  • Wolfram Challenges

  • Computer-Based Math
  • Computational Thinking
  • Computational Adventures

  • Demonstrations Project
  • Wolfram Data Drop
  • MathWorld
  • Wolfram Science
  • Wolfram Media Publishing
  • Customer Resources
  • Store
  • Product Downloads
  • User Portal
  • Your Account
  • Organization Access

  • Support FAQ
  • Contact Support
  • Company
  • About Wolfram
  • Careers
  • Contact
  • Events
Wolfram Community Wolfram Blog
Legal & Privacy Policy
WolframAlpha.com | WolframCloud.com
© 2026 Wolfram
© 2026 Wolfram | Legal & Privacy Policy |
English