• dotmatrix@lemmy.ftp.rip
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    1 year ago

    Honestly, at this point I’m running all my python environments in different docker containers. Much easier to maintain.

      • henfredemars@infosec.pub
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        1 year ago

        I wish I could do that, but my employer switches me around so much that I’d be out of disk space in no time.

      • Mikina@programming.dev
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        1 year ago

        How does the workflow works in practice? You just use the containers to compile your code, or do you actually have a whole dev environment with IDE and everything and work directly in the container? I can’t imagine how does the workflow looks. Or is it possible to set up i.e. a JetBrains Rider to always spin up a container to compile the code in it? But then, if all the requirements and libraries are only on the container, how would it be able to do syntax highlithing and Intelisense (or what’s the correct work for code completion), if it doesn’t have the libraries on the host?

        I’m probably missing something, but all the solutions I can figure out with my limited experience have issues - working on IDE in a VM sounds like a nightmare with moving files between VM and host, and the whole “spin up a VM, which takes time and it usually runs slower on the shitty company laptop, just to make a quick edit in one project”. And I feel like setting up an IDE to use environment that’s in a VM, but the IDE runs on a host sounds like a lot of work with linking and mounting folders. But maybe the IDEs do support it and it’s actually easy and automated? If that’s the case, then I’ll definitely check it out!

        • freo3579@lemmy.world
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          1 year ago

          Check out dev container in VSCode. Even better with Codespaces from Github. You can define the entire environment in code, including extensions, settings, and startup scripts along with a Docker container. Then it’s just one button click and 5 min wait until it’s built and running. Once you have built it you can start it up and suspend it in seconds, toss it out when you don’t need it, or spin up multiple at once and work on multiple branches simultaneously.