CA-hash
seagull
CA-hash | seagull | |
---|---|---|
1 | 1 | |
3 | 173 | |
- | - | |
4.9 | 1.8 | |
10 months ago | over 3 years ago | |
Python | Python | |
GNU General Public License v3.0 only | MIT License |
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CA-hash
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Hash function based on Game of Life cellular automata
So, for *study purpose only (and fun obv)*, I tried to develop (in Python) a fixed length hash function based on the non-reversibility of Conway's Game of Life cellular automata (GitHub here :)).
seagull
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Which language do you use to code cellular automata?
Python! I even made a small library to do it: https://github.com/ljvmiranda921/seagull
What are some alternatives?
cellular-automata - 3D Cellular Automata plugin for Blender like Conway's Game of Life
OpenWorm - Repository for the main Dockerfile with the OpenWorm software stack and project-wide issues
gol.py - efficient Game of Life in Python
Cellular-Automatons - This repository focuses on studying and showcasing interesting patterns emerging from simple rules random motion algorithms. It contains a Conway's Game of life made in Python and a second algorithm for an animation of random walk algorithms on a 2D plane.
collisions - Hash collisions and exploitations
fdtd - A 3D electromagnetic FDTD simulator written in Python with optional GPU support
Loki - Loki - Simple IOC and YARA Scanner
Lenia - Lenia - Mathematical Life Forms
GameOfLife - The world's most expensive version of Conway's Game of Life - running on the Ethereum Blockchain
alien - ALIEN is a CUDA-powered artificial life simulation program.
cellpylib - A library for working with Cellular Automata, for Python.
ai-economist - Foundation is a flexible, modular, and composable framework to model socio-economic behaviors and dynamics with both agents and governments. This framework can be used in conjunction with reinforcement learning to learn optimal economic policies, as done by the AI Economist (https://www.einstein.ai/the-ai-economist).