Project Description
i want to build a hexchat plugin, so i can run a omemo-secured conversation over irc with someone who also has an omemo implementation
OMEMO is the cryptographic protocol which secured messaging on signal at least at one point and also is used on XMPP.
ideally i want to have a working prototype at the end of the week where to people can use the plugin to talk encrypted over IRC.
Goal for this Hackweek
Building a hexchat plugin (https://hexchat.readthedocs.io/en/latest/plugins.html) based on python-omemo (https://github.com/omemo/python-omemo) so people can talk with a current cryptographic protocol secure over IRC.
after a successfull prototype i would like to look how to package it, but first we need to have a working version :)
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Join the Gitter channel! https://gitter.im/uyuni-project/hackweek
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FUSS
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https://fuss.bz.it/
Seems to be a Debian 12 derivative, so adding it could be quite easy.
[W]
Reposync (this will require using spacewalk-common-channels and adding channels to the .ini file)[W]
Onboarding (salt minion from UI, salt minion from bootstrap script, and salt-ssh minion) (this will probably require adding OS to the bootstrap repository creator) --> Working for all 3 options (salt minion UI, salt minion bootstrap script and salt-ssh minion from the UI).[W]
Package management (install, remove, update...) --> Installing a new package works, needs to test the rest.[I]
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Applying any basic salt state (including a formula)[W]
Salt remote commands[ ]
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