Package compose and compose-switch to replace the python-docker-compose.
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Looking for hackers with the skills:
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Hack Week 21
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Comments
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over 2 years ago by rbranco | Reply
Is it really better than docker-compose-plugin that adds the "compose" subcommand to the docker command? https://docs.docker.com/compose/install/
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over 2 years ago by hennevogel | Reply
This is what I want to build from source and package. Instead of downloading a binary.
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over 2 years ago by hennevogel | Reply
As always the community is faster than me! https://build.opensuse.org/request/show/987334
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