tornado-cats
Mixing protocol guide
A book project teaching developers how to create a simple mixing protocol based on Tornado Cash for decentralized applications.
A book for learning zero-knowledge applications and decentralized mixing by creating a simple mixer protocol based on Tornado Cash (WIP)
268 stars
5 watching
17 forks
Language: Solidity
last commit: about 2 years ago zero-knowledge
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