This is a simple plugin for Vim that allows you to use OpenAI Codex.

Overview

🤖 Vim Codex

An AI plugin that does the work for you.

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This is a simple plugin for Vim that will allow you to use OpenAI Codex. To use this plugin you need to get access to OpenAI's Codex API.

Installation

The easiest way to install the plugin is to install it as a bundle. For example, using Pathogen:

  1. Get and install pathogen.vim. You can skip this step if you already have it installed.

  2. cd ~/.vim/bundle

  3. git clone [email protected]:tom-doerr/vim_codex.git

Bundle installs are known to work fine also when using Vundle. Other bundle managers are expected to work as well.

After installing the plugin, you need to install the openai package::

pip3 install openai

Finally add your OpenAI access information in ~/.vim/bundle/vim_codex/python/AUTH.py. You can find your authentication information on the website.

Usage

The plugin provides a CreateCompletion command which you can call by default using the mapping co . You can give the CreateCompletion command the number of tokens it should produce as an argument, e.g. CreateCompletion 1000. If you want to just complete the current line, run CreateCompletionLine.

To complete the current text from insert and normal mode using Ctrl+x, you can add the following lines to your .vimrc::

nnoremap  
   
     :CreateCompletion
    
     
inoremap  
      
      
       li
       
        u
        
         l:CreateCompletion
          
         
        
       
      
     
    
   

Updating

Manually

In order to update the plugin, go to its bundle directory and use Git to update it:

  1. cd ~/.vim/bundle/vim_codex

  2. git pull

With Vundle

Use the :BundleUpdate command provided by Vundle, for example invoking Vim like this::

% vim +BundleUpdate
Owner
Tom Dörr
Tom Dörr
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