Node for thenewboston digital currency network.

Overview

Project setup

For project setup see INSTALL.rst

Community

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Donate

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Coin Address
thenewboston Logo b6e21072b6ba2eae6f78bc3ade17f6a561fa4582d5494a5120617f2027d38797
Bitcoin Logo 3GZYi3w3BXQfyb868K2phHjrS4i8LooaHh
Ethereum Logo 0x0E38e2a838F0B20872E5Ff55c82c2EE7509e6d4A

License

thenewboston is MIT licensed

Owner
thenewboston
Developers for thenewboston digital currency.
thenewboston
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