Simulation of the solar system using various nummerical methods

Overview

solar-system

Simulation of the solar system using various nummerical methods

  1. Download the repo
  2. Make shure matplotlib, scipy etc. are installed
  3. execute the code (there are defaults, just keep pressing enter)
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