Backend code to use MCPI's python API to make infinite worlds with custom generation

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Deep Learninginf-mcpi
Overview

inf-mcpi

Backend code to use MCPI's python API to make infinite worlds with custom generation

Does not save player-placed blocks!

Generation is still slow, but it does work and can be changed

Documentation to make custom generation is inside the file.

Demo requires perlin-noise to be installed.

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