nvim
pyenv
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nvim
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You don't need to `source <venv>/bin/activate` before running neovim for LSP to pick the virtual environment.
I prefer to let this automaticlly handled inside neovim. For pyright, I made my nvim support these python venv: basic virtualenv in workspace (with pyvenv.cfg), pipenv and poetry. see https://github.com/younger-1/nvim/blob/one/lua/young/lang/python.lua
- Run Python venv from nvim
- Python virtual environment pyright
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Null-LS isn't recognizing my .luacheckrc
Thanks you! Here's my configuration: https://github.com/younger-1/nvim and my choice of modules of plugins https://github.com/younger-1/nvim/blob/b0d4b4ecd185537c2e3e28b55cb8171eef124ad2/lua/young/plugins.lua#L865-L881 The defer usage in your nvim config would definitely help me to try this magic which I failed to make it work in my nvim config when I first saw it in doom-nvim.
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Packer Initialization
My setup for packer with recompile and carefully design for first time bootstrap https://github.com/younger-1/nvim/blob/42efe08512145323d06c6b5f0877cf9a218f3da7/lua/young/plugin-loader.lua
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Comparing different approaches to packer
My neovim config: https://github.com/younger-1/nvim
pyenv
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Install Asdf: One Runtime Manager to Rule All Dev Environments
If you have a requirement for multiple, specific Python versions, why not just use pyenv?
https://github.com/pyenv/pyenv
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Setup and Use Pyenv in Python Applications
For more information visit: pyenv repository
- Pyenv – lets you easily switch between multiple versions of Python
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How to Create Virtual Environments in Python
Note that virtual environments assume you are using the same global version of Python. Often, this is not the case and additional tools like pyenv can be used alongside virtual environments when you need to switch between versions of Python itself on your local machine.
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How to debug Django inside a Docker container with VSCode
Python version manager pyenv
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Integrating GPT in Your Project: Create an API for Anything Using LangChain and FastAPI
First of all, install the Python virtual environment from these links: 1 and 2. I developed my GPT-based API in Python version 3.8.18. Pick any Python versions >= 3.7.
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Manage your Python Project End-to-End with PDM
Note: Most modern systems will probably have a system environment that meets this requirement, but if yours does not or if you prefer not to install anything in your system environment (even if it's just PDM) check out asdf or pyenv to help install and manage additional Python environments.
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Introducing Flama for Robust Machine Learning APIs
When dealing with software development, reproducibility is key. This is why we encourage you to use Python virtual environments to set up an isolated environment for your project. Virtual environments allow the isolation of dependencies, which plays a crucial role to avoid breaking compatibility between different projects. We cannot cover all the details about virtual environments in this post, but we encourage you to learn more about venv, pyenv or conda for a better understanding on how to create and manage virtual environments.
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Is KDE Desktop really snappier than XFCE these days as claimed?
For Python, with your use case I would avoid system packages, no matter the distro. It sounds like it would be worth setting up pyenv and working exclusively with virtual environments.
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Python Versions and Release Cycles
For OSX there is homebrew or pyenv (pyenv is another solution on Linux). As pyenv compiles from source it will require setting up XCode (the Apple IDE) tools to support this which can be pretty bulky. Windows users have chocolatey but the issue there is it works off the binaries. That means it won't have the latest security release available since those are source only. Conda is also another solution which can be picked up by Visual Studio Code as available versions of Python making development easier. In the end it might be best to consider using WSL on Windows for installing a Linux version and using that instead.
What are some alternatives?
neovhy - I had no better name for it I swear
Poetry - Python packaging and dependency management made easy
projectmgr.nvim - Quickly switch between projects and automate startup tasks.
asdf - Extendable version manager with support for Ruby, Node.js, Elixir, Erlang & more
Neovim-from-scratch - 📚 A Neovim config designed from scratch to be understandable
Pipenv - Python Development Workflow for Humans.
project-settings.nvim - Manage project local settings using a json file.
miniforge - A conda-forge distribution.
penvim - Project's root directory and documents Indentation detector with project based config loader
virtualenv - Virtual Python Environment builder
pyenv-virtualenv - a pyenv plugin to manage virtualenv (a.k.a. python-virtualenv)
Pew - A tool to manage multiple virtual environments written in pure python