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README.md
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Here's a video of RA.Aid adding a feature to itself:
👋 Pull requests are very welcome! As a technical founder with limited time (who uses RA.Aid to save time), I greatly appreciate any contributions to this repository. Don't be shy - your help makes a real difference!
💬 Join our Discord community: Click here to join
RA.Aid
RA.Aid (ReAct Aid) is a powerful AI-driven command-line tool that integrates aider (https://aider.chat/) within a LangChain ReAct agent loop. This unique combination allows developers to leverage aider's code editing capabilities while benefiting from LangChain's agent-based task execution framework. The tool provides an intelligent assistant that can help with research, planning, and implementation of development tasks.
⚠️ IMPORTANT: USE AT YOUR OWN RISK ⚠️
- This tool can and will automatically execute shell commands and make code changes
- The --cowboy-mode flag can be enabled to skip shell command approval prompts
- No warranty is provided, either express or implied
- Always use in version-controlled repositories
- Review proposed changes in your git diff before committing
Key Features
-
Multi-Step Task Planning: The agent breaks down complex tasks into discrete, manageable steps and executes them sequentially. This systematic approach ensures thorough implementation and reduces errors.
-
Automated Command Execution: The agent can run shell commands automatically to accomplish tasks. While this makes it powerful, it also means you should carefully review its actions.
-
Three-Stage Architecture:
- Research: Analyzes codebases and gathers context
- Planning: Breaks down tasks into specific, actionable steps
- Implementation: Executes each planned step sequentially
What sets RA.Aid apart is its ability to handle complex programming tasks that extend beyond single-shot code edits. By combining research, strategic planning, and implementation into a cohesive workflow, RA.Aid can:
- Break down and execute multi-step programming tasks
- Research and analyze complex codebases to answer architectural questions
- Plan and implement significant code changes across multiple files
- Provide detailed explanations of existing code structure and functionality
- Execute sophisticated refactoring operations with proper planning
Table of Contents
- Features
- Installation
- Usage
- Architecture
- Dependencies
- Development Setup
- Contributing
- License
- Contact
Features
-
Three-Stage Architecture: The workflow consists of three powerful stages:
- Research 🔍 - Gather and analyze information
- Planning 📋 - Develop execution strategy
- Implementation ⚡ - Execute the plan with AI assistance
Each stage is powered by dedicated AI agents and specialized toolsets.
-
Advanced AI Integration: Built on LangChain and leverages the latest LLMs for natural language understanding and generation.
-
Comprehensive Toolset:
- Shell command execution
- Expert querying system
- File operations and management
- Memory management
- Research and planning tools
- Code analysis capabilities
-
Interactive CLI Interface: Simple yet powerful command-line interface for seamless interaction
-
Modular Design: Structured as a Python package with specialized modules for console output, processing, text utilities, and tools
-
Git Integration: Built-in support for Git operations and repository management
Installation
RA.Aid can be installed directly using pip:
pip install ra-aid
Prerequisites
Before using RA.Aid, you'll need:
- Python package
aiderinstalled and available in your PATH:
pip install aider-chat
- API keys for the required AI services:
# Set up API keys based on your preferred provider:
# For Anthropic Claude models (recommended)
export ANTHROPIC_API_KEY=your_api_key_here
# For OpenAI models
export OPENAI_API_KEY=your_api_key_here
# For OpenRouter provider (optional)
export OPENROUTER_API_KEY=your_api_key_here
# For OpenAI-compatible providers (optional)
export OPENAI_API_BASE=your_api_base_url
Note: The programmer tool (aider) will automatically select its model based on your available API keys:
- If ANTHROPIC_API_KEY is set, it will use Claude models
- If only OPENAI_API_KEY is set, it will use OpenAI models
- You can set multiple API keys to enable different features
You can get your API keys from:
- Anthropic API key: https://console.anthropic.com/
- OpenAI API key: https://platform.openai.com/api-keys
- OpenRouter API key: https://openrouter.ai/keys
Usage
RA.Aid is designed to be simple yet powerful. Here's how to use it:
# Basic usage
ra-aid -m "Your task or query here"
# Research-only mode (no implementation)
ra-aid -m "Explain the authentication flow" --research-only
Command Line Options
-m, --message: The task or query to be executed (required)--research-only: Only perform research without implementation--cowboy-mode: Skip interactive approval for shell commands--provider: Specify the model provider (See Model Configuration section)--model: Specify the model name (See Model Configuration section)--expert-provider: Specify the provider for the expert tool (defaults to OpenAI)--expert-model: Specify the model name for the expert tool (defaults to o1-preview for OpenAI)
Model Configuration
RA.Aid supports multiple AI providers and models. The default model is Anthropic's Claude 3 Sonnet (claude-3-5-sonnet-20241022).
The programmer tool (aider) automatically selects its model based on your available API keys. It will use Claude models if ANTHROPIC_API_KEY is set, or fall back to OpenAI models if only OPENAI_API_KEY is available.
Note: The expert tool can be configured to use different providers (OpenAI, Anthropic, OpenRouter) using the --expert-provider flag along with the corresponding EXPERT_*API_KEY environment variables. Each provider requires its own API key set through the appropriate environment variable.
Environment Variables
RA.Aid supports multiple providers through environment variables:
ANTHROPIC_API_KEY: Required for the default Anthropic providerOPENAI_API_KEY: Required for OpenAI providerOPENROUTER_API_KEY: Required for OpenRouter providerOPENAI_API_BASE: Required for OpenAI-compatible providers along withOPENAI_API_KEY
Expert Tool Environment Variables:
EXPERT_OPENAI_API_KEY: API key for expert tool using OpenAI providerEXPERT_ANTHROPIC_API_KEY: API key for expert tool using Anthropic providerEXPERT_OPENROUTER_API_KEY: API key for expert tool using OpenRouter providerEXPERT_OPENAI_API_BASE: Base URL for expert tool using OpenAI-compatible provider
You can set these permanently in your shell's configuration file (e.g., ~/.bashrc or ~/.zshrc):
# Default provider (Anthropic)
export ANTHROPIC_API_KEY=your_api_key_here
# For OpenAI features and expert tool
export OPENAI_API_KEY=your_api_key_here
# For OpenRouter provider
export OPENROUTER_API_KEY=your_api_key_here
# For OpenAI-compatible providers
export OPENAI_API_BASE=your_api_base_url
Note: The expert tool defaults to OpenAI's o1-preview model with the OpenAI provider, but this can be configured using the --expert-provider flag along with the corresponding EXPERT_*_KEY environment variables.
Examples
-
Using Anthropic (Default)
# Uses default model (claude-3-5-sonnet-20241022) ra-aid -m "Your task" # Or explicitly specify: ra-aid -m "Your task" --provider anthropic --model claude-3-5-sonnet-20241022 -
Using OpenAI
ra-aid -m "Your task" --provider openai --model gpt-4o -
Using OpenRouter
ra-aid -m "Your task" --provider openrouter --model mistralai/mistral-large-2411 -
Configuring Expert Provider
The expert tool is used by the agent for complex logic and debugging tasks. It can be configured to use different providers (OpenAI, Anthropic, OpenRouter) using the --expert-provider flag along with the corresponding EXPERT_*API_KEY environment variables.
# Use Anthropic for expert tool export EXPERT_ANTHROPIC_API_KEY=your_anthropic_api_key ra-aid -m "Your task" --expert-provider anthropic --expert-model claude-3-5-sonnet-20241022 # Use OpenRouter for expert tool export OPENROUTER_API_KEY=your_openrouter_api_key ra-aid -m "Your task" --expert-provider openrouter --expert-model mistralai/mistral-large-2411 # Use default OpenAI for expert tool export EXPERT_OPENAI_API_KEY=your_openai_api_key ra-aid -m "Your task" --expert-provider openai --expert-model o1-preview
Important Notes:
- Performance varies between models. The default Claude 3 Sonnet model currently provides the best and most reliable results.
- Model configuration is done via command line arguments:
--providerand--model - The
--modelargument is required for all providers except Anthropic (which defaults toclaude-3-5-sonnet-20241022)
Example Tasks
-
Code Analysis:
ra-aid -m "Explain how the authentication middleware works" --research-only -
Complex Changes:
ra-aid -m "Refactor the database connection code to use connection pooling" --cowboy-mode -
Automated Updates:
ra-aid -m "Update deprecated API calls across the entire codebase" --cowboy-mode -
Code Research:
ra-aid -m "Analyze the current error handling patterns" --research-only -
Code Research:
ra-aid -m "Explain how the authentication middleware works" --research-only -
Refactoring:
ra-aid -m "Refactor the database connection code to use connection pooling" --cowboy-mode
Shell Command Automation with Cowboy Mode 🏇
The --cowboy-mode flag enables automated shell command execution without confirmation prompts. This is useful for:
- CI/CD pipelines
- Automated testing environments
- Batch processing operations
- Scripted workflows
ra-aid -m "Update all deprecated API calls" --cowboy-mode
⚠️ Important Safety Notes:
- Cowboy mode skips confirmation prompts for shell commands
- Always use in version-controlled repositories
- Ensure you have a clean working tree before running
- Review changes in git diff before committing
Environment Variables
See the Model Configuration section for details on provider-specific environment variables.
Architecture
RA.Aid implements a three-stage architecture for handling development and research tasks:
-
Research Stage:
- Gathers information and context
- Analyzes requirements
- Identifies key components and dependencies
-
Planning Stage:
- Develops detailed implementation plans
- Breaks down tasks into manageable steps
- Identifies potential challenges and solutions
-
Implementation Stage:
- Executes planned tasks
- Generates code or documentation
- Performs necessary system operations
Core Components
- Console Module (
console/): Handles console output formatting and user interaction - Processing Module (
proc/): Manages interactive processing and workflow control - Text Module (
text/): Provides text processing and manipulation utilities - Tools Module (
tools/): Contains various utility tools for file operations, search, and more
Dependencies
Core Dependencies
langchain-anthropic: LangChain integration with Anthropic's Claudelanggraph: Graph-based workflow managementrich>=13.0.0: Terminal formatting and outputGitPython==3.1.41: Git repository managementfuzzywuzzy==0.18.0: Fuzzy string matchingpython-Levenshtein==0.23.0: Fast string matchingpathspec>=0.11.0: Path specification utilities
Development Dependencies
pytest>=7.0.0: Testing frameworkpytest-timeout>=2.2.0: Test timeout management
Development Setup
- Clone the repository:
git clone https://github.com/ai-christianson/ra-aid.git
cd ra-aid
- Create and activate a virtual environment:
python -m venv venv
source venv/bin/activate # On Windows use `venv\Scripts\activate`
- Install development dependencies:
pip install -r requirements-dev.txt
- Run tests:
python -m pytest
Contributing
Contributions are welcome! Please follow these steps:
- Fork the repository
- Create a feature branch:
git checkout -b feature/your-feature-name
- Make your changes and commit:
git commit -m 'Add some feature'
- Push to your fork:
git push origin feature/your-feature-name
- Open a Pull Request
Guidelines
- Follow PEP 8 style guidelines
- Add tests for new features
- Update documentation as needed
- Keep commits focused and message clear
- Ensure all tests pass before submitting PR
License
This project is licensed under the Apache License 2.0 - see the LICENSE file for details.
Copyright (c) 2024 AI Christianson
Contact
- Issues: Please report bugs and feature requests on our Issue Tracker
- Repository: https://github.com/ai-christianson/ra-aid
- Documentation: https://github.com/ai-christianson/ra-aid#readme