A command-line productivity tool powered by AI large language models (LLM). This command-line tool offers streamlined generation of shell commands, code snippets, documentation, eliminating the need for external resources (like Google search). Supports Linux, macOS, Windows and compatible with all major Shells like PowerShell, CMD, Bash, Zsh, etc.
ShellGPT.mp4
pip install shell-gpt
By default, ShellGPT uses OpenAI's API and GPT-4 model. You'll need an API key, you can generate one here. You will be prompted for your key which will then be stored in ~/.config/shell_gpt/.sgptrc
. OpenAI API is not free of charge, please refer to the OpenAI pricing for more information.
Tip
Alternatively, you can use locally hosted open source models which are available for free. To use local models, you will need to run your own LLM backend server such as Ollama. To set up ShellGPT with Ollama, please follow this comprehensive guide.
❗️Note that ShellGPT is not optimized for local models and may not work as expected.
ShellGPT is designed to quickly analyse and retrieve information. It's useful for straightforward requests ranging from technical configurations to general knowledge.
sgpt "What is the fibonacci sequence"
# -> The Fibonacci sequence is a series of numbers where each number ...
ShellGPT accepts prompt from both stdin and command line argument. Whether you prefer piping input through the terminal or specifying it directly as arguments, sgpt
got you covered. For example, you can easily generate a git commit message based on a diff:
git diff | sgpt "Generate git commit message, for my changes"
# -> Added main feature details into README.md
You can analyze logs from various sources by passing them using stdin, along with a prompt. For instance, we can use it to quickly analyze logs, identify errors and get suggestions for possible solutions:
docker logs -n 20 my_app | sgpt "check logs, find errors, provide possible solutions"
Error Detected: Connection timeout at line 7.
Possible Solution: Check network connectivity and firewall settings.
Error Detected: Memory allocation failed at line 12.
Possible Solution: Consider increasing memory allocation or optimizing application memory usage.
You can also use all kind of redirection operators to pass input:
sgpt "summarise" < document.txt
# -> The document discusses the impact...
sgpt << EOF
What is the best way to lear Golang?
Provide simple hello world example.
EOF
# -> The best way to learn Golang...
sgpt <<< "What is the best way to learn shell redirects?"
# -> The best way to learn shell redirects is through...
Have you ever found yourself forgetting common shell commands, such as find
, and needing to look up the syntax online? With --shell
or shortcut -s
option, you can quickly generate and execute the commands you need right in the terminal.
sgpt --shell "find all json files in current folder"
# -> find . -type f -name "*.json"
# -> [E]xecute, [D]escribe, [A]bort: e
Shell GPT is aware of OS and $SHELL
you are using, it will provide shell command for specific system you have. For instance, if you ask sgpt
to update your system, it will return a command based on your OS. Here's an example using macOS:
sgpt -s "update my system"
# -> sudo softwareupdate -i -a
# -> [E]xecute, [D]escribe, [A]bort: e
The same prompt, when used on Ubuntu, will generate a different suggestion:
sgpt -s "update my system"
# -> sudo apt update && sudo apt upgrade -y
# -> [E]xecute, [D]escribe, [A]bort: e
Let's try it with Docker:
sgpt -s "start nginx container, mount ./index.html"
# -> docker run -d -p 80:80 -v $(pwd)/index.html:/usr/share/nginx/html/index.html nginx
# -> [E]xecute, [D]escribe, [A]bort: e
We can still use pipes to pass input to sgpt
and generate shell commands:
sgpt -s "POST localhost with" < data.json
# -> curl -X POST -H "Content-Type: application/json" -d '{"a": 1, "b": 2}' http://localhost
# -> [E]xecute, [D]escribe, [A]bort: e
Applying additional shell magic in our prompt, in this example passing file names to ffmpeg
:
ls
# -> 1.mp4 2.mp4 3.mp4
sgpt -s "ffmpeg combine $(ls -m) into one video file without audio."
# -> ffmpeg -i 1.mp4 -i 2.mp4 -i 3.mp4 -filter_complex "[0:v] [1:v] [2:v] concat=n=3:v=1 [v]" -map "[v]" out.mp4
# -> [E]xecute, [D]escribe, [A]bort: e
If you would like to pass generated shell command using pipe, you can use --no-interaction
option. This will disable interactive mode and will print generated command to stdout. In this example we are using pbcopy
to copy generated command to clipboard:
sgpt -s "find all json files in current folder" --no-interaction | pbcopy
This is a very handy feature, which allows you to use sgpt
shell completions directly in your terminal, without the need to type sgpt
with prompt and arguments. Shell integration enables the use of ShellGPT with hotkeys in your terminal, supported by both Bash and ZSH shells. This feature puts sgpt
completions directly into terminal buffer (input line), allowing for immediate editing of suggested commands.
Shell_GPT_Integration.mp4
To install shell integration, run sgpt --install-integration
and restart your terminal to apply changes. This will add few lines to your .bashrc
or .zshrc
file. After that, you can use Ctrl+l
(by default) to invoke ShellGPT. When you press Ctrl+l
it will replace you current input line (buffer) with suggested command. You can then edit it and just press Enter
to execute.
By using the --code
or -c
parameter, you can specifically request pure code output, for instance:
sgpt --code "solve fizz buzz problem using python"
for i in range(1, 101):
if i % 3 == 0 and i % 5 == 0:
print("FizzBuzz")
elif i % 3 == 0:
print("Fizz")
elif i % 5 == 0:
print("Buzz")
else:
print(i)
Since it is valid python code, we can redirect the output to a file:
sgpt --code "solve classic fizz buzz problem using Python" > fizz_buzz.py
python fizz_buzz.py
# 1
# 2
# Fizz
# 4
# Buzz
# ...
We can also use pipes to pass input:
cat fizz_buzz.py | sgpt --code "Generate comments for each line of my code"
# Loop through numbers 1 to 100
for i in range(1, 101):
# Check if number is divisible by both 3 and 5
if i % 3 == 0 and i % 5 == 0:
# Print "FizzBuzz" if number is divisible by both 3 and 5
print("FizzBuzz")
# Check if number is divisible by 3
elif i % 3 == 0:
# Print "Fizz" if number is divisible by 3
print("Fizz")
# Check if number is divisible by 5
elif i % 5 == 0:
# Print "Buzz" if number is divisible by 5
print("Buzz")
# If number is not divisible by 3 or 5, print the number itself
else:
print(i)
Often it is important to preserve and recall a conversation. sgpt
creates conversational dialogue with each LLM completion requested. The dialogue can develop one-by-one (chat mode) or interactively, in a REPL loop (REPL mode). Both ways rely on the same underlying object, called a chat session. The session is located at the configurable CHAT_CACHE_PATH
.
To start a conversation, use the --chat
option followed by a unique session name and a prompt.
sgpt --chat conversation_1 "please remember my favorite number: 4"
# -> I will remember that your favorite number is 4.
sgpt --chat conversation_1 "what would be my favorite number + 4?"
# -> Your favorite number is 4, so if we add 4 to it, the result would be 8.
You can use chat sessions to iteratively improve GPT suggestions by providing additional details. It is possible to use --code
or --shell
options to initiate --chat
:
sgpt --chat conversation_2 --code "make a request to localhost using python"
import requests
response = requests.get('http://localhost')
print(response.text)
Let's ask LLM to add caching to our request:
sgpt --chat conversation_2 --code "add caching"
import requests
from cachecontrol import CacheControl
sess = requests.session()
cached_sess = CacheControl(sess)
response = cached_sess.get('http://localhost')
print(response.text)
Same applies for shell commands:
sgpt --chat conversation_3 --shell "what is in current folder"
# -> ls
sgpt --chat conversation_3 "Sort by name"
# -> ls | sort
sgpt --chat conversation_3 "Concatenate them using FFMPEG"
# -> ffmpeg -i "concat:$(ls | sort | tr '\n' '|')" -codec copy output.mp4
sgpt --chat conversation_3 "Convert the resulting file into an MP3"
# -> ffmpeg -i output.mp4 -vn -acodec libmp3lame -ac 2 -ab 160k -ar 48000 final_output.mp3
To list all the sessions from either conversational mode, use the --list-chats
or -lc
option:
sgpt --list-chats
# .../shell_gpt/chat_cache/conversation_1
# .../shell_gpt/chat_cache/conversation_2
To show all the messages related to a specific conversation, use the --show-chat
option followed by the session name:
sgpt --show-chat conversation_1
# user: please remember my favorite number: 4
# assistant: I will remember that your favorite number is 4.
# user: what would be my favorite number + 4?
# assistant: Your favorite number is 4, so if we add 4 to it, the result would be 8.
There is very handy REPL (read–eval–print loop) mode, which allows you to interactively chat with GPT models. To start a chat session in REPL mode, use the --repl
option followed by a unique session name. You can also use "temp" as a session name to start a temporary REPL session. Note that --chat
and --repl
are using same underlying object, so you can use --chat
to start a chat session and then pick it up with --repl
to continue the conversation in REPL mode.
sgpt --repl temp
Entering REPL mode, press Ctrl+C to exit.
>>> What is REPL?
REPL stands for Read-Eval-Print Loop. It is a programming environment ...
>>> How can I use Python with REPL?
To use Python with REPL, you can simply open a terminal or command prompt ...
REPL mode can work with --shell
and --code
options, which makes it very handy for interactive shell commands and code generation:
sgpt --repl temp --shell
Entering shell REPL mode, type [e] to execute commands or press Ctrl+C to exit.
>>> What is in current folder?
ls
>>> Show file sizes
ls -lh
>>> Sort them by file sizes
ls -lhS
>>> e (enter just e to execute commands, or d to describe them)
To provide multiline prompt use triple quotes """
:
sgpt --repl temp
Entering REPL mode, press Ctrl+C to exit.
>>> """
... Explain following code:
... import random
... print(random.randint(1, 10))
... """
It is a Python script that uses the random module to generate and print a random integer.
You can also enter REPL mode with initial prompt by passing it as an argument or stdin or even both:
sgpt --repl temp < my_app.py
Entering REPL mode, press Ctrl+C to exit.
──────────────────────────────────── Input ────────────────────────────────────
name = input("What is your name?")
print(f"Hello {name}")
───────────────────────────────────────────────────────────────────────────────
>>> What is this code about?
The snippet of code you've provided is written in Python. It prompts the user...
>>> Follow up questions...
Function calls is a powerful feature OpenAI provides. It allows LLM to execute functions in your system, which can be used to accomplish a variety of tasks. To install default functions run:
sgpt --install-functions
ShellGPT has a convenient way to define functions and use them. In order to create your custom function, navigate to ~/.config/shell_gpt/functions
and create a new .py file with the function name. Inside this file, you can define your function using the following syntax:
# execute_shell_command.py
import subprocess
from pydantic import Field
from instructor import OpenAISchema
class Function(OpenAISchema):
"""
Executes a shell command and returns the output (result).
"""
shell_command: str = Field(..., example="ls -la", descriptions="Shell command to execute.")
class Config:
title = "execute_shell_command"
@classmethod
def execute(cls, shell_command: str) -> str:
result = subprocess.run(shell_command.split(), capture_output=True, text=True)
return f"Exit code: {result.returncode}, Output:\n{result.stdout}"
The docstring comment inside the class will be passed to OpenAI API as a description for the function, along with the title
attribute and parameters descriptions. The execute
function will be called if LLM decides to use your function. In this case we are allowing LLM to execute any Shell commands in our system. Since we are returning the output of the command, LLM will be able to analyze it and decide if it is a good fit for the prompt. Here is an example how the function might be executed by LLM:
sgpt "What are the files in /tmp folder?"
# -> @FunctionCall execute_shell_command(shell_command="ls /tmp")
# -> The /tmp folder contains the following files and directories:
# -> test.txt
# -> test.json
Note that if for some reason the function (execute_shell_command) will return an error, LLM might try to accomplish the task based on the output. Let's say we don't have installed jq
in our system, and we ask LLM to parse JSON file:
sgpt "parse /tmp/test.json file using jq and return only email value"
# -> @FunctionCall execute_shell_command(shell_command="jq -r '.email' /tmp/test.json")
# -> It appears that jq is not installed on the system. Let me try to install it using brew.
# -> @FunctionCall execute_shell_command(shell_command="brew install jq")
# -> jq has been successfully installed. Let me try to parse the file again.
# -> @FunctionCall execute_shell_command(shell_command="jq -r '.email' /tmp/test.json")
# -> The email value in /tmp/test.json is johndoe@example.
It is also possible to chain multiple function calls in the prompt:
sgpt "Play music and open hacker news"
# -> @FunctionCall play_music()
# -> @FunctionCall open_url(url="https://news.ycombinator.com")
# -> Music is now playing, and Hacker News has been opened in your browser. Enjoy!
This is just a simple example of how you can use function calls. It is truly a powerful feature that can be used to accomplish a variety of complex tasks. We have dedicated category in GitHub Discussions for sharing and discussing functions. LLM might execute destructive commands, so please use it at your own risk❗️
ShellGPT allows you to create custom roles, which can be utilized to generate code, shell commands, or to fulfill your specific needs. To create a new role, use the --create-role
option followed by the role name. You will be prompted to provide a description for the role, along with other details. This will create a JSON file in ~/.config/shell_gpt/roles
with the role name. Inside this directory, you can also edit default sgpt
roles, such as shell, code, and default. Use the --list-roles
option to list all available roles, and the --show-role
option to display the details of a specific role. Here's an example of a custom role:
sgpt --create-role json_generator
# Enter role description: Provide only valid json as response.
sgpt --role json_generator "random: user, password, email, address"
{
"user": "JohnDoe",
"password": "p@ssw0rd",
"email": "johndoe@example.com",
"address": {
"street": "123 Main St",
"city": "Anytown",
"state": "CA",
"zip": "12345"
}
}
If the description of the role contains the words "APPLY MARKDOWN" (case sensitive), then chats will be displayed using markdown formatting.
Control cache using --cache
(default) and --no-cache
options. This caching applies for all sgpt
requests to OpenAI API:
sgpt "what are the colors of a rainbow"
# -> The colors of a rainbow are red, orange, yellow, green, blue, indigo, and violet.
Next time, same exact query will get results from local cache instantly. Note that sgpt "what are the colors of a rainbow" --temperature 0.5
will make a new request, since we didn't provide --temperature
(same applies to --top-probability
) on previous request.
This is just some examples of what we can do using OpenAI GPT models, I'm sure you will find it useful for your specific use cases.
You can setup some parameters in runtime configuration file ~/.config/shell_gpt/.sgptrc
:
# API key, also it is possible to define OPENAI_API_KEY env.
OPENAI_API_KEY=your_api_key
# Base URL of the backend server. If "default" URL will be resolved based on --model.
API_BASE_URL=default
# Max amount of cached message per chat session.
CHAT_CACHE_LENGTH=100
# Chat cache folder.
CHAT_CACHE_PATH=/tmp/shell_gpt/chat_cache
# Request cache length (amount).
CACHE_LENGTH=100
# Request cache folder.
CACHE_PATH=/tmp/shell_gpt/cache
# Request timeout in seconds.
REQUEST_TIMEOUT=60
# Default OpenAI model to use.
DEFAULT_MODEL=gpt-4o
# Default color for shell and code completions.
DEFAULT_COLOR=magenta
# When in --shell mode, default to "Y" for no input.
DEFAULT_EXECUTE_SHELL_CMD=false
# Disable streaming of responses
DISABLE_STREAMING=false
# The pygment theme to view markdown (default/describe role).
CODE_THEME=default
# Path to a directory with functions.
OPENAI_FUNCTIONS_PATH=/Users/user/.config/shell_gpt/functions
# Print output of functions when LLM uses them.
SHOW_FUNCTIONS_OUTPUT=false
# Allows LLM to use functions.
OPENAI_USE_FUNCTIONS=true
# Enforce LiteLLM usage (for local LLMs).
USE_LITELLM=false
Possible options for DEFAULT_COLOR
: black, red, green, yellow, blue, magenta, cyan, white, bright_black, bright_red, bright_green, bright_yellow, bright_blue, bright_magenta, bright_cyan, bright_white.
Possible options for CODE_THEME
: https://pygments.org/styles/
╭─ Arguments ──────────────────────────────────────────────────────────────────────────────────────────────╮
│ prompt [PROMPT] The prompt to generate completions for. │
╰──────────────────────────────────────────────────────────────────────────────────────────────────────────╯
╭─ Options ────────────────────────────────────────────────────────────────────────────────────────────────╮
│ --model TEXT Large language model to use. [default: gpt-4o] │
│ --temperature FLOAT RANGE [0.0<=x<=2.0] Randomness of generated output. [default: 0.0] │
│ --top-p FLOAT RANGE [0.0<=x<=1.0] Limits highest probable tokens (words). [default: 1.0] │
│ --md --no-md Prettify markdown output. [default: md] │
│ --editor Open $EDITOR to provide a prompt. [default: no-editor] │
│ --cache Cache completion results. [default: cache] │
│ --version Show version. │
│ --help Show this message and exit. │
╰──────────────────────────────────────────────────────────────────────────────────────────────────────────╯
╭─ Assistance Options ─────────────────────────────────────────────────────────────────────────────────────╮
│ --shell -s Generate and execute shell commands. │
│ --interaction --no-interaction Interactive mode for --shell option. [default: interaction] │
│ --describe-shell -d Describe a shell command. │
│ --code -c Generate only code. │
│ --functions --no-functions Allow function calls. [default: functions] │
╰──────────────────────────────────────────────────────────────────────────────────────────────────────────╯
╭─ Chat Options ───────────────────────────────────────────────────────────────────────────────────────────╮
│ --chat TEXT Follow conversation with id, use "temp" for quick session. [default: None] │
│ --repl TEXT Start a REPL (Read–eval–print loop) session. [default: None] │
│ --show-chat TEXT Show all messages from provided chat id. [default: None] │
│ --list-chats -lc List all existing chat ids. │
╰──────────────────────────────────────────────────────────────────────────────────────────────────────────╯
╭─ Role Options ───────────────────────────────────────────────────────────────────────────────────────────╮
│ --role TEXT System role for GPT model. [default: None] │
│ --create-role TEXT Create role. [default: None] │
│ --show-role TEXT Show role. [default: None] │
│ --list-roles -lr List roles. │
╰──────────────────────────────────────────────────────────────────────────────────────────────────────────╯
Run the container using the OPENAI_API_KEY
environment variable, and a docker volume to store cache. Consider to set the environment variables OS_NAME
and SHELL_NAME
according to your preferences.
docker run --rm \
--env OPENAI_API_KEY=api_key \
--env OS_NAME=$(uname -s) \
--env SHELL_NAME=$(echo $SHELL) \
--volume gpt-cache:/tmp/shell_gpt \
ghcr.io/ther1d/shell_gpt -s "update my system"
Example of a conversation, using an alias and the OPENAI_API_KEY
environment variable:
alias sgpt="docker run --rm --volume gpt-cache:/tmp/shell_gpt --env OPENAI_API_KEY --env OS_NAME=$(uname -s) --env SHELL_NAME=$(echo $SHELL) ghcr.io/ther1d/shell_gpt"
export OPENAI_API_KEY="your OPENAI API key"
sgpt --chat rainbow "what are the colors of a rainbow"
sgpt --chat rainbow "inverse the list of your last answer"
sgpt --chat rainbow "translate your last answer in french"
You also can use the provided Dockerfile
to build your own image:
docker build -t sgpt .
If you want to send your requests to an Ollama instance and run ShellGPT inside a Docker container, you need to adjust the Dockerfile and build the container yourself: the litellm package is needed and env variables need to be set correctly.
Example Dockerfile:
FROM python:3-slim
ENV DEFAULT_MODEL=ollama/mistral:7b-instruct-v0.2-q4_K_M
ENV API_BASE_URL=http://10.10.10.10:11434
ENV USE_LITELLM=true
ENV OPENAI_API_KEY=bad_key
ENV SHELL_INTERACTION=false
ENV PRETTIFY_MARKDOWN=false
ENV OS_NAME="Arch Linux"
ENV SHELL_NAME=auto
WORKDIR /app
COPY . /app
RUN apt-get update && apt-get install -y gcc
RUN pip install --no-cache /app[litellm] && mkdir -p /tmp/shell_gpt
VOLUME /tmp/shell_gpt
ENTRYPOINT ["sgpt"]