Future of tools supporting editors in dealing with particular languages is in my opinion in the LSP protocol. Therefore I look with a bit of worry on the fact that there is no good LSP server based on the top of rope. python-language-server uses it a bit internally, the Microsoft Language Server for Python is in C#, so it is completely something different.

The goal of this project is to write a very simple nucleus of the LSP server based solely on rope for the language analysis and actions, which would be at least able to do “jump to the definition of a symbol”.

Looking for hackers with the skills:

python language-server-protocol

This project is part of:

Hack Week 19

Activity

  • almost 6 years ago: mcepl started this project.
  • almost 6 years ago: mcepl added keyword "python" to this project.
  • almost 6 years ago: mcepl added keyword "language-server-protocol" to this project.
  • almost 6 years ago: mcepl originated this project.

  • Comments

    • mcepl
      about 3 years ago by mcepl | Reply

      Not needed to start from scratch, you can help with https://github.com/python-rope/pylsp-rope!

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