AI for the command line, built for pipelines.
Large Language Models (LLM) based AI is useful to ingest command output and format results in Markdown, JSON, and other text based formats. Mods is a tool to add a sprinkle of AI in your command line and make your pipelines artificially intelligent.
It works great with LLMs running locally through LocalAI. You can also use OpenAI, Cohere, Groq, or Azure OpenAI.
Use a package manager:
# macOS or Linux
brew install charmbracelet/tap/mods
# Windows (with Winget)
winget install charmbracelet.mods
# Arch Linux (btw)
yay -S mods
# Nix
nix-shell -p mods
Or, download it:
Or, just install it with go
:
go install github.com/charmbracelet/mods@latest
Mods works by reading standard in and prefacing it with a prompt supplied in
the mods
arguments. It sends the input text to an LLM and prints out the
result, optionally asking the LLM to format the response as Markdown. This
gives you a way to "question" the output of a command. Mods will also work on
standard in or an argument supplied prompt individually.
Be sure to check out the examples and a list of all the features.
Mods works with OpenAI compatible endpoints. By default, Mods is configured to
support OpenAI's official API and a LocalAI installation running on port 8080.
You can configure additional endpoints in your settings file by running
mods --settings
.
Conversations are saved locally by default. Each conversation has a SHA-1
identifier and a title (like git
!).
Check the ./features.md
for more details.
-m
, --model
: Specify Large Language Model to use.-f
, --format
: Ask the LLM to format the response in a given format.--format-as
: Specify the format for the output (used with --format
).-P
, --prompt
: Prompt should include stdin and args.-p
, --prompt-args
: Prompt should only include args.-q
, --quiet
: Only output errors to standard err.-r
, --raw
: Print raw response without syntax highlighting.--settings
: Open settings.-x
, --http-proxy
: Use HTTP proxy to connect to the API endpoints.--max-retries
: Maximum number of retries.--max-tokens
: Specify maximum tokens with which to respond.--no-limit
: Do not limit the response tokens.--role
: Specify the role to use (See custom roles).--word-wrap
: Wrap output at width (defaults to 80)--reset-settings
: Restore settings to default.-t
, --title
: Set the title for the conversation.-l
, --list
: List saved conversations.-c
, --continue
: Continue from last response or specific title or SHA-1.-C
, --continue-last
: Continue the last conversation.-s
, --show
: Show saved conversation for the given title or SHA-1.-S
, --show-last
: Show previous conversation.--delete-older-than=<duration>
: Deletes conversations older than given duration (10d
, 1mo
).--delete
: Deletes the saved conversation for the given title or SHA-1.--no-cache
: Do not save conversations.--fanciness
: Level of fanciness.--temp
: Sampling temperature.--topp
: Top P value.--topk
: Top K value.Roles allow you to set system prompts. Here is an example of a shell
role:
roles:
shell:
- you are a shell expert
- you do not explain anything
- you simply output one liners to solve the problems you're asked
- you do not provide any explanation whatsoever, ONLY the command
Then, use the custom role in mods
:
mods --role shell list files in the current directory
Mods uses GPT-4 by default. It will fall back to GPT-3.5 Turbo.
Set the OPENAI_API_KEY
environment variable. If you don't have one yet, you
can grab it the OpenAI website.
Alternatively, set the [AZURE_OPENAI_KEY
] environment variable to use Azure
OpenAI. Grab a key from Azure.
Cohere provides enterprise optimized models.
Set the COHERE_API_KEY
environment variable. If you don't have one yet, you can
get it from the Cohere dashboard.
Local AI allows you to run models locally. Mods works with the GPT4ALL-J model as setup in this tutorial.
Groq provides models powered by their LPU inference engine.
Set the GROQ_API_KEY
environment variable. If you don't have one yet, you can
get it from the Groq console.
We’d love to hear your thoughts on this project. Feel free to drop us a note.
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