A little software to generate and save Julia or Mandelbrot's Fractals.

Overview

Julia-Mandelbrot-s-Fractals

A little software to generate and save Julia or Mandelbrot's Fractals.

Dependencies :

  • Python 3.7 or more. (Also possible to run it on Python 2 but with outdated libraries or other libraries.)
  • PIP 21.3.1 or more.
  • Numpy 1.21.5
  • Pillow 8.4.0 (PIL for Python 2)

Some examples :

The main window :

Some Fractals :

Julia : c=-0,8+0,156i ; Color 3

Mandelbrot : Color 1

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