Currently supports: Anthropic, Copilot, Gemini, Ollama, OpenAI, Azure OpenAI, HuggingFace and xAI adapters
New features are always announced here
Thank you to the following people:
- 💬 Copilot Chat meets Zed AI, in Neovim
- 🔌 Support for Anthropic, Copilot, Gemini, Ollama, OpenAI, Azure OpenAI, HuggingFace and xAI LLMs (or bring your own!)
- 🚀 Inline transformations, code creation and refactoring
- 🤖 Variables, Slash Commands, Agents/Tools and Workflows to improve LLM output
- ✨ Built in prompt library for common tasks like advice on LSP errors and code explanations
- 🏗️ Create your own custom prompts, Variables and Slash Commands
- 📚 Have multiple chats open at the same time
- 💪 Async execution for fast performance
What.s.new.in.v9.0.0.mp4
CodeCompanion.mp4
- The
curl
library - Neovim 0.10.0 or greater
- (Optional) An API key for your chosen LLM
Important
The plugin requires the markdown Tree-sitter parser to be installed with :TSInstall markdown
Install the plugin with your preferred package manager:
{
"olimorris/codecompanion.nvim",
dependencies = {
"nvim-lua/plenary.nvim",
"nvim-treesitter/nvim-treesitter",
},
config = true
}
use({
"olimorris/codecompanion.nvim",
config = function()
require("codecompanion").setup()
end,
requires = {
"nvim-lua/plenary.nvim",
"nvim-treesitter/nvim-treesitter",
}
})
call plug#begin()
Plug 'nvim-lua/plenary.nvim'
Plug 'nvim-treesitter/nvim-treesitter'
Plug 'olimorris/codecompanion.nvim'
call plug#end()
lua << EOF
require("codecompanion").setup()
EOF
Completion
When conversing with the LLM, you can leverage variables, slash commands and tools in the chat buffer. Out of the box, the plugin will display these to you via a native Neovim completion menu (which you'll need to trigger with <C-_>
). However, it also has support for nvim-cmp and blink.cmp. The former, requires no setup however to enable completions for blink.cmp
, please ensure you've enabled it in your config:
{
"saghen/blink.cmp",
---@module 'blink.cmp'
---@type blink.cmp.Config
opts = {
sources = {
default = { "codecompanion" },
providers = {
codecompanion = {
name = "CodeCompanion",
module = "codecompanion.providers.completion.blink",
enabled = true,
},
},
},
},
},
Slash Commands
To better utilise Slash Commands, Telescope.nvim, mini.pick or fzf lua can also be installed. Please refer to the Chat Buffer section for more information.
Pinned plugins
As per #377, if you pin your plugins to the latest releases, consider setting plenary.nvim to:
{ "nvim-lua/plenary.nvim", branch = "master" },
Prettify with render-markdown.nvim
Add the following to your dependencies:
{ "MeanderingProgrammer/render-markdown.nvim", ft = { "markdown", "codecompanion" } },
Note
Okay, okay...it's not quite a quickstart as you'll need to configure an adapter and I recommend starting from the configuration section to understand how the plugin works.
Chat Buffer
Run :CodeCompanionChat
to open the chat buffer. Type your prompt and press <CR>
. Or, run :CodeCompanionChat why are Lua and Neovim so perfect together?
to send a prompt directly to the chat buffer. Toggle the chat buffer with :CodeCompanionChat Toggle
.
You can add context from your code base by using Variables and Slash Commands in the chat buffer.
Variables, accessed via #
, contain data about the present state of Neovim:
#buffer
- Shares the current buffer's code. You can also specify line numbers with#buffer:8-20
#lsp
- Shares LSP information and code for the current buffer#viewport
- Shares the buffers and lines that you see in the Neovim viewport
Slash commands, accessed via /
, run commands to insert additional context into the chat buffer:
/buffer
- Insert open buffers/fetch
- Insert URL contents/file
- Insert a file/help
- Insert content from help tags/now
- Insert the current date and time/symbols
- Insert symbols from a selected file/terminal
- Insert terminal output
Tools, accessed via @
, allow the LLM to function as an agent and carry out actions:
@cmd_runner
- The LLM will run shell commands (subject to approval)@editor
- The LLM will edit code in a Neovim buffer@files
- The LLM will can work with files on the file system (subject to approval)@rag
- The LLM will browse and search the internet for real-time information to supplement its response
Tools can also be grouped together to form Agents, which are also accessed via @
in the chat buffer:
@full_stack_dev
- Contains thecmd_runner
,editor
andfiles
tools.
Important
These have been designed to work with native Neovim completions and also with nvim-cmp. To open the completion menu use <C-_>
in insert mode when in the chat buffer.
Inline Assistant
Note
The diff provider was selected as mini_pick
in the video above
Run :CodeCompanion <your prompt>
to call the inline assistant. The assistant will evaluate the prompt and either write code or open a chat buffer. You can also make a visual selection and call the assistant.
The assistant has knowledge of your last conversation from a chat buffer. A prompt such as :CodeCompanion add the new function here
will see the assistant add a code block directly into the current buffer.
For convenience, you can call prompts from the prompt library via the assistant such as :'<,'>CodeCompanion /buffer what does this file do?
. The prompt library comes with the following defaults:
/buffer
- Send the current buffer to the LLM alongside a prompt/commit
- Generate a commit message/explain
- Explain how selected code in a buffer works/fix
- Fix the selected code/lsp
- Explain the LSP diagnostics for the selected code/tests
- Generate unit tests for selected code
There are keymaps available to accept or reject edits from the LLM in the inline assistant section.
Commands
Use CodeCompanion to create Neovim commands in command-line mode (:h Command-line
) via :CodeCompanionCmd <your prompt>
.
Action Palette
Run :CodeCompanionActions
to open the action palette, which gives you access to all functionality of the plugin. By default the plugin uses vim.ui.select
, however, you can change the provider by altering the display.action_palette.provider
config value to be telescope
or mini_pick
. You can also call the Telescope extension with :Telescope codecompanion
.
Note
Some actions and prompts will only be visible if you're in Visual mode.
List of commands
The plugin has three core commands:
CodeCompanion
- Open the inline assistantCodeCompanionChat
- Open a chat bufferCodeCompanionCmd
- Generate a command in the command-liineCodeCompanionActions
- Open the Action Palette
However, there are multiple options available:
CodeCompanion <your prompt>
- Prompt the inline assistantCodeCompanion /<prompt library>
- Use the prompt library with the inline assistant e.g./commit
CodeCompanionChat <prompt>
- Send a prompt to the LLM via a chat bufferCodeCompanionChat <adapter>
- Open a chat buffer with a specific adapterCodeCompanionChat Toggle
- Toggle a chat bufferCodeCompanionChat Add
- Add visually selected chat to the current chat buffer
Suggested plugin workflow
For an optimum plugin workflow, I recommend the following:
vim.api.nvim_set_keymap("n", "<C-a>", "<cmd>CodeCompanionActions<cr>", { noremap = true, silent = true })
vim.api.nvim_set_keymap("v", "<C-a>", "<cmd>CodeCompanionActions<cr>", { noremap = true, silent = true })
vim.api.nvim_set_keymap("n", "<LocalLeader>a", "<cmd>CodeCompanionChat Toggle<cr>", { noremap = true, silent = true })
vim.api.nvim_set_keymap("v", "<LocalLeader>a", "<cmd>CodeCompanionChat Toggle<cr>", { noremap = true, silent = true })
vim.api.nvim_set_keymap("v", "ga", "<cmd>CodeCompanionChat Add<cr>", { noremap = true, silent = true })
-- Expand 'cc' into 'CodeCompanion' in the command line
vim.cmd([[cab cc CodeCompanion]])
Note
You can also assign prompts from the library to specific mappings. See the prompt library section for more information.
Before configuring the plugin, it's important to understand how it's structured.
The plugin uses adapters to connect to LLMs. Out of the box, the plugin supports:
- Anthropic (
anthropic
) - Requires an API key and supports prompt caching - Copilot (
copilot
) - Requires a token which is created via:Copilot setup
in Copilot.vim - Gemini (
gemini
) - Requires an API key - Ollama (
ollama
) - Both local and remotely hosted - OpenAI (
openai
) - Requires an API key - Azure OpenAI (
azure_openai
) - Requires an Azure OpenAI service with a model deployment - xAI (
xai
) - Requires an API key - HuggingFace (
huggingface
) - Requires a Serveless Inference API key from HuggingFace.co
The plugin utilises objects called Strategies. These are the different ways that a user can interact with the plugin. The chat strategy harnesses a buffer to allow direct conversation with the LLM. The inline strategy allows for output from the LLM to be written directly into a pre-existing Neovim buffer. The agent and workflow strategies are wrappers for the chat strategy, allowing for tool use and agentic workflows.
The plugin allows you to specify adapters for each strategy and also for each prompt library entry.
The default config can be found in the config.lua file and the defaults can be changed by calling the setup
function:
require("codecompanion").setup({
display = {
diff = {
provider = "mini_diff",
},
},
opts = {
log_level = "DEBUG",
},
})
Please refer to the adapter section below in order to configure adapters.
Changing the System Prompt
The default system prompt has been carefully curated to deliver responses which are similar to GitHub Copilot Chat, no matter which LLM you use. That is, you'll receive responses which are terse, professional and with expertise in coding. However, you can modify the opts.system_prompt
table in the config to suit your needs. You can also set it as a function which can receive the current chat buffer's adapter as a parameter, giving you the option of setting system prompts that are LLM or model specific:
require("codecompanion").setup({
opts = {
---@param adapter CodeCompanion.Adapter
---@return string
system_prompt = function(adapter)
if adapter.schema.model.default == "llama3.1:latest" then
return "My custom system prompt"
end
return "My default system prompt"
end
}
})
Changing the language
The plugin enables the language for non-code responses to be changed. You can configure this in your setup:
require('codecompanion').setup({
opts = {
language = "English" -- Default is "English"
}
})
Changing or adding to the default keymaps
The chat buffer comes with a number of pre-defined keymaps which you can customize:
require('codecompanion').setup({
strategies = {
chat = {
keymaps = {
send = {
modes = {
-- Only send a response to the LLM with <C-s>
n = { "<C-s>" },
},
},
}
}
}
})
You can also add your own keymaps:
require('codecompanion').setup({
strategies = {
chat = {
keymaps = {
hide = {
modes = {
n = "gh",
},
-- Add your own custom callback that receives the chat buffer object
callback = function(chat)
chat.ui:hide()
end,
description = "Hide the chat buffer",
},
}
}
}
})
Please refer to your chosen adapter to understand its configuration. You will need to set an API key for non-locally hosted LLMs.
Tip
To create your own adapter or better understand how they work, please refer to the ADAPTERS guide.
Changing the Default Adapter
To specify a different adapter to the default (openai
), simply change the strategies.*
table:
require("codecompanion").setup({
strategies = {
chat = {
adapter = "anthropic",
},
inline = {
adapter = "copilot",
},
},
})
Setting an API Key
require("codecompanion").setup({
adapters = {
anthropic = function()
return require("codecompanion.adapters").extend("anthropic", {
env = {
api_key = "MY_OTHER_ANTHROPIC_KEY"
},
})
end,
},
})
In the example above, we're using the base of the Anthropic adapter but changing the name of the default API key which it uses.
Setting an API Key Using a Command
Having API keys in plain text in your shell is not always safe. Thanks to this PR, you can run commands from within your config by prefixing them with cmd:
. In the example below, we're using the 1Password CLI to read an OpenAI credential.
require("codecompanion").setup({
adapters = {
openai = function()
return require("codecompanion.adapters").extend("openai", {
env = {
api_key = "cmd:op read op://personal/OpenAI/credential --no-newline",
},
})
end,
},
})
Using Ollama Remotely
To use Ollama remotely, change the URL in the env
table, set an API key and pass it via an "Authorization" header:
require("codecompanion").setup({
adapters = {
ollama = function()
return require("codecompanion.adapters").extend("ollama", {
env = {
url = "https://my_ollama_url",
api_key = "OLLAMA_API_KEY",
},
headers = {
["Content-Type"] = "application/json",
["Authorization"] = "Bearer ${api_key}",
},
parameters = {
sync = true,
},
})
end,
},
})
Using OpenAI compatible Models like LMStudio or self-hosted models
To use any other OpenAI compatible models, change the URL in the env
table, set an API key:
require("codecompanion").setup({
adapters = {
ollama = function()
return require("codecompanion.adapters").extend("openai_compatible", {
env = {
url = "http[s]://open_compatible_ai_url", -- optional: default value is ollama url http://127.0.0.1:11434
api_key = "OpenAI_API_KEY", -- optional: if your endpoint is authenticated
chat_url = "/v1/chat/completions", -- optional: default value, override if different
},
})
end,
},
})
Using Azure OpenAI
To use Azure OpenAI, you need to have an Azure OpenAI service, an API key, and a model deployment. Follow these steps to configure the adapter:
- Create an Azure OpenAI service in your Azure portal.
- Deploy a model in the Azure OpenAI service.
- Obtain the API key from the Azure portal.
Then, configure the adapter in your setup as follows:
require("codecompanion").setup({
strategies = {
chat = {
adapter = "azure_openai",
},
inline = {
adapter = "azure_openai",
},
},
adapters = {
azure_openai = function()
return require("codecompanion.adapters").extend("azure_openai", {
env = {
api_key = 'YOUR_AZURE_OPENAI_API_KEY',
endpoint = 'YOUR_AZURE_OPENAI_ENDPOINT',
},
schema = {
model = {
default = "YOUR_DEPLOYMENT_NAME",
}
},
})
end,
},
})
Connecting via a Proxy
You can also connect via a proxy:
require("codecompanion").setup({
adapters = {
opts = {
allow_insecure = true, -- Use if required
proxy = "socks5://127.0.0.1:9999"
}
},
})
Changing an Adapter's Default Model
A common ask is to change an adapter's default model. This can be done by altering the schema.model.default
table:
require("codecompanion").setup({
adapters = {
anthropic = function()
return require("codecompanion.adapters").extend("anthropic", {
schema = {
model = {
default = "claude-3-opus-20240229",
},
},
})
end,
},
})
Configuring Adapter Settings
LLMs have many settings such as model, temperature and max_tokens. In an adapter, these sit within a schema table and can be configured during setup:
require("codecompanion").setup({
adapters = {
llama3 = function()
return require("codecompanion.adapters").extend("ollama", {
name = "llama3", -- Give this adapter a different name to differentiate it from the default ollama adapter
schema = {
model = {
default = "llama3:latest",
},
num_ctx = {
default = 16384,
},
num_predict = {
default = -1,
},
},
})
end,
},
})
Set a Global Adapter with a Global Variable
In some cases, it may be helpful to set a global adapter across both the chat
and inline
strategies, on the fly. Perhaps, if your LLM of choice is down or you're without internet. This can be achieved by setting the vim.g.codecompanion_adapter
variable to the name of an adapter in the config. This also prevents you from having to go into every chat buffer that you have open to manually set the adapter.
The plugin comes with a number of pre-built prompts. As per the config, these can be called via keymaps or via the cmdline. These prompts have been carefully curated to mimic those in GitHub's Copilot Chat. Of course, you can create your own prompts and add them to the Action Palette or even to the slash command completion menu in the chat buffer. Please see the RECIPES guide for more information.
Using Keymaps
You can call a prompt from the library via a keymap using the prompt
helper:
vim.api.nvim_set_keymap("v", "<LocalLeader>ce", "", {
callback = function()
require("codecompanion").prompt("explain")
end,
noremap = true,
silent = true,
})
In the example above, we've set a visual keymap that will trigger the Explain prompt. Providing the short_name
of the prompt as an argument to the helper (e.g. "commit") will resolve the strategy down to an action.
The chat buffer is where you converse with an LLM from within Neovim. The chat buffer has been designed to be turn based, whereby you send a message and the LLM replies. Messages are segmented by H2 headers and once a message has been sent, it cannot be edited. You can also have multiple chat buffers open at the same.
The look and feel of the chat buffer can be customised as per the display.chat
table in the config. You can also add additional Variables and Slash Commands which can then be referenced in the chat buffer.
Slash Commands
As outlined in the Quickstart section, Slash Commands allow you to easily share additional context with your LLM from the chat buffer. Some of the commands also allow for multiple providers:
/buffer
- Hasdefault
,telescope
andfzf_lua
providers/files
- Hasdefault
,telescope
,mini_pick
andfzf_lua
providers/help
- Hastelescope
,mini_pick
andfzf_lua
providers/symbols
- Hasdefault
,telescope
,mini_pick
andfzf_lua
providers
Please refer to the config to see how to change the default provider.
References
When Slash Commands or Variables are used, a block quote is added to the chat buffer referencing what's been shared with the LLM. When a conversation becomes long, this allows you to keep track of what's been shared. You can modify these block quotes to remove references from being shared with the LLM which will alter the history of the conversation. This can be useful to minimize token consumption.
Keymaps
When in the chat buffer, press ?
to bring up a menu that lists the available keymaps, variables, slash commands and tools. Currently, the keymaps available to you in normal mode are:
<CR>|<C-s>
to send a message to the LLM<C-c>
to close the chat bufferq
to stop the current requestga
to change the adapter for the currentchatgc
to insert a codeblock in the chat buffergd
to view/debug the chat buffer's contentsgf
to fold any codeblocks in the chat buffergr
to regenerate the last responsegs
to toggle the system prompt on/offgx
to clear the chat buffer's contentsgy
to yank the last codeblock in the chat buffer[[
to move to the previous header]]
to move to the next header{
to move to the previous chat}
to move to the next chat
and in insert mode:
<C-_>
to open the completion menu (if nvim-cmp isn't installed)
Settings
You can display your selected adapter's schema at the top of the buffer, if display.chat.show_settings
is set to true
. This allows you to vary the response from the LLM.
Note
If you've set opts.send_code = false
in your config then the plugin will endeavour to ensure no code is sent to the LLM.
One of the challenges with inline editing is determining how the LLM's response should be handled in the buffer. If you've prompted the LLM to "create a table of 5 common text editors" then you may wish for the response to be placed at the cursor's position in the current buffer. However, if you asked the LLM to "refactor this function" then you'd expect the response to replace a visual selection. The plugin will use the inline LLM you've specified in your config to determine if the response should...
- replace - replace a visual selection you've made
- add - be added in the current buffer at the cursor position
- new - be placed in a new buffer
- chat - be placed in a chat buffer
By default, an inline assistant prompt will trigger the diff feature, showing differences between the original buffer and the changes from the LLM. This can be turned off in your config via the display.diff.provider
table. You can also choose to accept or reject the LLM's suggestions with the following keymaps:
ga
- Accept an inline editgr
- Reject an inline edit
As outlined by Andrew Ng in Agentic Design Patterns Part 3, Tool Use, LLMs can act as agents by leveraging external tools. Andrew notes some common examples such as web searching or code execution that have obvious benefits when using LLMs.
In the plugin, tools are simply context that's given to an LLM via a system
prompt and Agents are groupings of tools. These give LLM's knowledge and a defined schema which can be included in the response for the plugin to parse, execute and feedback on. Agents and tools can be added as a participant to the chat buffer by using the @
key.
More information on how agents and tools work and how you can create your own can be found in the TOOLS guide.
Agentic Workflows prompt an LLM multiple times, giving them the ability to build their answer step-by-step instead of at once. This leads to much better output as outlined by Andrew Ng. Infact, it's possible for older models like GPT 3.5 to outperform newer models (using traditional zero-shot inference).
Implementing Andrew's advice, at various stages of a pre-defined workflow, the plugin will automatically prompt the LLM without any input or triggering required from the user. The plugin contains a default Code workflow
, as part of the prompt library, which guides the LLM into writing better code.
Of course you can add new workflows by following the RECIPES guide.
Highlight Groups
The plugin sets the following highlight groups during setup:
CodeCompanionChatHeader
- The headers in the chat bufferCodeCompanionChatSeparator
- Separator between headings in the chat bufferCodeCompanionChatTokens
- Virtual text in the chat buffer showing the token countCodeCompanionChatAgent
- Agents in the chat bufferCodeCompanionChatTool
- Tools in the chat bufferCodeCompanionChatVariable
- Variables in the chat bufferCodeCompanionVirtualText
- All other virtual text in the plugin
Events/Hooks
The plugin fires many events during its lifecycle:
CodeCompanionChatOpened
- Fired after a chat has been openedCodeCompanionChatClosed
- Fired after a chat has been closedCodeCompanionChatAdapter
- Fired after the adapter has been set in the chatCodeCompanionChatModel
- Fired after the model has been set in the chatCodeCompanionToolAdded
- Fired when a tool has been added to a chatCodeCompanionAgentStarted
- Fired when an agent has been initiated in the chatCodeCompanionAgentFinished
- Fired when an agent has finished all tool executionsCodeCompanionInlineStarted
- Fired at the start of the Inline strategyCodeCompanionInlineFinished
- Fired at the end of the Inline strategyCodeCompanionRequestStarted
- Fired at the start of any API requestCodeCompanionRequestFinished
- Fired at the end of any API requestCodeCompanionDiffAttached
- Fired when in Diff modeCodeCompanionDiffDetached
- Fired when exiting Diff mode
Tip
Some events are sent with a data payload which can be leveraged.
Events can be hooked into as follows:
local group = vim.api.nvim_create_augroup("CodeCompanionHooks", {})
vim.api.nvim_create_autocmd({ "User" }, {
pattern = "CodeCompanionInline*",
group = group,
callback = function(request)
if request.match == "CodeCompanionInlineFinished" then
-- Format the buffer after the inline request has completed
require("conform").format({ bufnr = request.buf })
end
end,
})
Statuslines
You can incorporate a visual indication to show when the plugin is communicating with an LLM in your Neovim configuration. Below are examples for two popular statusline plugins.
lualine.nvim:
local M = require("lualine.component"):extend()
M.processing = false
M.spinner_index = 1
local spinner_symbols = {
"⠋",
"⠙",
"⠹",
"⠸",
"⠼",
"⠴",
"⠦",
"⠧",
"⠇",
"⠏",
}
local spinner_symbols_len = 10
-- Initializer
function M:init(options)
M.super.init(self, options)
local group = vim.api.nvim_create_augroup("CodeCompanionHooks", {})
vim.api.nvim_create_autocmd({ "User" }, {
pattern = "CodeCompanionRequest*",
group = group,
callback = function(request)
if request.match == "CodeCompanionRequestStarted" then
self.processing = true
elseif request.match == "CodeCompanionRequestFinished" then
self.processing = false
end
end,
})
end
-- Function that runs every time statusline is updated
function M:update_status()
if self.processing then
self.spinner_index = (self.spinner_index % spinner_symbols_len) + 1
return spinner_symbols[self.spinner_index]
else
return nil
end
end
return M
heirline.nvim:
local CodeCompanion = {
static = {
processing = false,
},
update = {
"User",
pattern = "CodeCompanionRequest*",
callback = function(self, args)
if args.match == "CodeCompanionRequestStarted" then
self.processing = true
elseif args.match == "CodeCompanionRequestFinished" then
self.processing = false
end
vim.cmd("redrawstatus")
end,
},
{
condition = function(self)
return self.processing
end,
provider = " ",
hl = { fg = "yellow" },
},
}
Legendary.nvim
The plugin also supports the amazing legendary.nvim plugin. Simply enable it in your config:
require('legendary').setup({
extensions = {
codecompanion = true,
},
})
Mini.Diff
If you're using mini.diff you can put an icon in the statusline to indicate which diff is currently in use in a buffer:
local function diff_source()
local bufnr, diff_source, icon
bufnr = vim.api.nvim_get_current_buf()
diff_source = vim.b[bufnr].diffCompGit
if not diff_source then
return ""
end
if diff_source == "git" then
icon = " "
elseif diff_source == "codecompanion" then
icon = " "
end
return string.format("%%#StatusLineLSP#%s", icon)
end
Before raising an issue, there are a number of steps you can take to troubleshoot a problem:
Checkhealth
Run :checkhealth codecompanion
and check all dependencies are installed correctly. Also take note of the log file path.
Turn on logging
Update your config and turn debug logging on:
opts = {
log_level = "DEBUG", -- or "TRACE"
}
and inspect the log file as per the location from the checkhealth command.
Try with a minimal.lua
file
A large proportion of issues which are raised in Neovim plugins are to do with a user's own config. That's why I always ask users to fill in a minimal.lua
file when they raise an issue. We can rule out their config being an issue and it allows me to recreate the problem.
For this purpose, I have included a minimal.lua file in the repository for you to test out if you're facing issues. Simply copy the file, edit it and run neovim with nvim --clean -u minimal.lua
.
I am open to contributions but they will be implemented at my discretion. Feel free to open up a discussion before embarking on a PR and please read the CONTRIBUTING.md guide.
- Steven Arcangeli for his genius creation of the chat buffer and his feedback early on
- Manoel Campos for the xml2lua library that's used in the tools implementation
- Dante.nvim for the beautifully simple diff implementation
- Wtf.nvim for the LSP assistant action
- CopilotChat.nvim for the rendering and usability of the chat buffer
- Aerial.nvim for the Tree-sitter parsing which inspired the symbols Slash Command