A command line tool for chat conversations with LLMs
Project description
AlleyCat - A command line tool for AI text processing
Alleycat is a command-line text processing utility that transforms input text using Large Language Models (LLMs). Like traditional Unix tools such as awk or sed, alleycat reads from standard input or command arguments and writes transformed text to standard output. Instead of using pattern matching or scripted transformations, alleycat leverages AI to interpret and modify text based on natural language instructions.
For comprehensive documentation, see Alleycat Guide.
Quickstart
-
Install AlleyCat using pip:
pip install alleycat
-
Set up your configuration (you'll need an OpenAI API key):
alleycat-admin setup -
Run a basic prompt:
alleycat "What is the capital of France?"
-
Try using the knowledge base feature:
# Create a new knowledge base alleycat-admin kb create my_documents # Add files to the knowledge base alleycat-admin kb add my_documents ~/Documents/*.pdf # Ask questions based on your documents alleycat --kb my_documents "What are the key points in these documents?"
-
For interactive chat mode:
alleycat --chat
Warnings
This is primarily a test project for my working with AI tools. As such it is probably not suitable for production use.
There are other cool tools available:
- openai - if you install the sdk there is a command line which allows API calls to be made. This is works and is definitive but not very friendly.
- claude code - lots of features and integration with the terminal and machine, can be used as a pipe or interactively. But its main purpose is a coding assistant.
- warp terminal - not a cli an entire terminal with AI built in - great for asking for what you want.
You are responsible for any API credits required or used in using this tool. You should continue to monitor your OpenAI dashboard and remember that costs are associated with different models, number of tokens used and storage associated with vector stores.
Project Structure
The project follows a modern Python package structure with a src layout:
alleycat/
├── src/
├── alleycat_apps/ # Application code
└── cli/ # CLI interface
└── alleycat_core/ # Core functionality
├── tests/ # Test files
├── pyproject.toml # Project configuration
└── setup.py # Development installation
Package Organization
alleycat_apps: Contains application-specific codecli: Command-line interface implementation
alleycat_core: Core functionality and business logicconfig: Configuration managementllm: LLM integration and API handling
Installation
AlleyCat can be installed in several ways depending on your needs:
From PyPI (Recommended)
Install using pip with UV:
uv pip install alleycat
Or using pipx for isolated CLI tool installation (recommended for command-line tools):
pipx install alleycat
From Source
Install directly from the GitHub repository:
uv pip install git+https://github.com/avowkind/alleycat.git
Local Installation
If you've cloned the repository or downloaded the source:
cd alleycat
uv pip install .
After installation, you can run AlleyCat from anywhere with:
alleycat --help
Development Setup
This project uses uv as the package manager for faster and more reliable Python package management.
Prerequisites
- Python 3.12 or higher
- uv package manager
Installation
-
Clone the repository:
git clone <repository-url> cd alleycat
-
Create and activate a virtual environment with uv:
uv venv source .venv/bin/activate # On Unix/macOS # or .venv\Scripts\activate # On Windows
-
Install the package in development mode:
uv pip install -e .
-
Install development dependencies:
uv pip install -e ".[dev]"
Usage
After installation, you can run AlleyCat directly from the command line:
# Show help
alleycat --help
# Basic usage
alleycat "Your prompt here"
# With options
alleycat --mode markdown --temperature 0.7 "Your prompt here"
Note for developers: When working on the codebase, you can use
uv run alleycatduring development to ensure the correct Python environment is used. or usemake activateto setup the virtual environment (venv) and then run any of the make functions.
First-time Setup
When you run AlleyCat for the first time (or if no configuration file is found), you'll automatically be guided through an interactive setup process that will:
- Create necessary configuration directories following XDG standards
- Prompt for your OpenAI API key
- Let you select your preferred default model
- Configure other settings like temperature and web search defaults
You can revisit this setup at any time using:
# Run the setup wizard from the separate command
alleycat-admin setup
# Or use the --setup flag with the main command
alleycat --setup
To remove all AlleyCat configuration files:
# Remove config using the dedicated command
alleycat-admin setup --remove
# Or with the main command
alleycat --remove-config
Command Line Options
# Basic usage
alleycat "Your prompt here"
# note prompte does not need to be quoted
alleycat what is a cat
# Pipe input
echo "Your prompt" | alleycat
# With formatting options
alleycat --mode markdown --temperature 1.7 "invent a creative list of 2050 era programming languages"
# Using system instructions
alleycat -i "You are a helpful assistant" "Your prompt here"
alleycat -i prompts/custom-style.txt "Your prompt here"
# Initialize or reconfigure settings
alleycat --setup
# Remove configuration and data files
alleycat --remove-config
# Analyze a file
alleycat -f docs/alleyfacts.pdf "Summarize this document"
# Note: Currently only PDF files are supported
# Use knowledge bases
alleycat --kb my_project "What are the key components of our architecture?"
# Query multiple knowledge bases
alleycat --kb docs --kb code_examples "Compare our API design patterns"
# Use web search tool
alleycat --tool web "What is the latest news about Python?"
# Or use the simpler alias
alleycat --web "What is the latest news about Python?"
alleycat -w "What one new thing I should know about Python"
# Use file search with vector store
alleycat --tool file-search --vector-store alleycat_kb "Find information about neural networks"
# Or use the simpler aliases
alleycat --knowledge --vector-store alleycat_kb "Find information about neural networks"
alleycat -k --vector-store alleycat_kb "Find information about neural networks"
# Interactive chat mode
alleycat --chat "Hello, how are you today?"
# or start with no initial prompt
alleycat --chat
# or talk to dr johnson
alleycat --chat -i prompts/johnson.txt
## Schema based structured output in json
# Use a single schema
alleycat --schema schemas/person.schema.json "my name is andrew invent a profile for me"
# Chain multiple schemas for complex transformations - UNTESTED
# alleycat --schema-chain "extract.schema.json,transform.schema.json" "process this data"
Available options:
--model TEXT Model to use [env var: ALLEYCAT_MODEL] [default: None]
--temperature -t FLOAT RANGE [0.0<=x<=2.0] Sampling temperature [default: None]
--mode -m [text|markdown|json|schema] Output mode (text, markdown, json) [default: None]
--api-key TEXT OpenAI API key [env var: ALLEYCAT_OPENAI_API_KEY] [default: None]
--verbose -v Enable verbose debug output
--stream -s Stream the response as it's generated
--chat -c Interactive chat mode with continuous conversation
--instructions -i TEXT System instructions (either a string or path to a file) [default: None]
--file -f TEXT Path to a file to upload and reference in the conversation [default: None]
--tool -t TEXT Enable specific tools (web, file-search) [default: None]
--web -w Enable web search (alias for --tool web)
--setup Run the setup wizard to configure AlleyCat
--remove-config Remove AlleyCat configuration and data files
--kb TEXT Knowledge base name to use for search (can be repeated) [default: None]
--schema TEXT Path to JSON schema file for structured output [default: None]
--schema-chain TEXT Comma-separated paths to JSON schema files for chained processing [default: None]
--install-completion Install completion for the current shell.
--show-completion Show completion for the current shell, to copy it or customize the installation.
--help Show this message and exit.
Package Management
The project uses setuptools for package management, configured in pyproject.toml:
[build-system]
requires = ["setuptools>=61.0.0", "wheel"]
build-backend = "setuptools.build_meta"
[tool.setuptools]
package-dir = {"" = "src"}
packages = ["alleycat_apps", "alleycat_core"]
This configuration:
- Uses the
srclayout for better package isolation - Explicitly declares packages to include
- Supports development installation with
pip install -e .
Development Tools
-
Testing: pytest with async support
uv run pytest
-
Linting: ruff
uv run ruff check .
-
Type Checking: mypy
uv run mypy src
Continuous Integration and Deployment
AlleyCat uses GitHub Actions for automated testing and deployment:
CI Workflow
A CI workflow runs on all pull requests and pushes to the main branch:
- Runs tests on Python 3.12
- Lints code with Ruff
- Type checks with mypy
- Verifies the package builds correctly
Release Process
AlleyCat uses semantic versioning with a 2-step manual-bump and automated-release process:
-
Manual Version Bump (before creating PR):
- Run
make bump-versionto increment patch version (default) - Or specify version type:
make bump-version BUMP=minor - Commit the version change with your other changes
- Create a PR to main
- Run
-
Automated Release (after PR is merged):
- When the PR is merged, a GitHub Action:
- Reads the current version from pyproject.toml
- Creates a Git tag for the version
- Builds and publishes the package to PyPI
- Creates a GitHub release with release notes
- When the PR is merged, a GitHub Action:
This approach ensures compliance with branch protection rules while maintaining a streamlined release process.
License
MIT License - see LICENSE file for details.
Why "Alleycat"?
The name "Alleycat" draws inspiration from Unix tradition and the tool's nature:
- Like the classic Unix tools
catandtac, it processes text through standard I/O - Like an alley cat, it's agile and adaptable, transforming text in various ways
- It prowls through your text, hunting for meaning and responding with feline grace
Future Features - Coming Soon (perhaps)
- Support for multiple LLM providers beyond OpenAI
- Chat history management with local storage
- Custom prompt templates
- Context window management
- Model parameter presets
- Command completion for shells
Project details
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