SymPy-powered, Wolfram|Alpha-like answer engine totally in your browser, without backend computation

Overview

SymPy Beta

SymPy Beta is a fork of SymPy Gamma. The purpose of this project is to run a SymPy-powered, Wolfram|Alpha-like answer engine totally in your browser, without backend computation.

SymPy Beta = SymPy Gamma + (Pyodide - GAE - django) + (Vue + NaiveUI - jQuery)

SymPy Beta is NOT an official SymPy project.

Debug

npm i
npm run dev

Then open http://localhost:3000

Run

npm i
npm run build
cd dist
python -m http.server

Then open http://localhost:8000

License

AGPL 3.0 or later, with the exception of

  • kernel/gamma derived from SymPy Gamma, which remains 3-clause BSD License from SymPy Gamma
  • src/js/{factordiagram, plot}.js derived from SymPy Gamma, same above
Owner
Liumeo
Free and Open Source
Liumeo
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