Skip to main content

Add your description here

Project description

PilotRules - Get the most out of your coding agents 🚀

⚠️ Important: If you're using AI coding assistants without rules, you're not maximizing their potential!

This repository contains a collection of custom rules for AI-assisted development that significantly enhance your productivity and code quality. These rules provide structure, automation, and consistency to your development process, regardless of which AI assistant you use.

It also includes a small application that helps you scaffold such rules, optimize them for your use case, and even offers tools for Cursor/Copilot to expand their toolkit.

Quick Setup 🛠️ - No Installation

Requirements: uv

You can use everything pilot-rules has to offer without installing anything else — just make sure uv is available on your system.


Features

Scaffold Rules

# For Cursor AI
uvx pilot-rules --cursor

# For GitHub Copilot
uvx pilot-rules --copilot

Collect Code

# Collect all .py files in the current directory and subdirectories
# Writes output to code.md in the current directory

uvx pilot-rules --collect

# which is the same as
uvx pilot-rules --collect \
  --include "py:." \
  --output repository_analysis.md
# Collect multiple file types from multiple roots
# Excludes paths containing 'external'
# syntax
# <file extensions>:<folder>
# *:. 
# all files in all folders
# Writes output to .project/code.md
uvx pilot-rules --collect \
  --include "py,js:." \
  --exclude "*:external" \
  --include "md:docs" \
  --output .project/code.md

Use a Config File (Recommended for Complex Setups)

Instead of passing everything via CLI, you can define your sources and output in a simple .toml file.

Example pilot-rules.toml:

[[source]]
exts = ["py", "js"]
root = "."
exclude = ["external"]

[[source]]
exts = ["md"]
root = "docs"

output = ".project/code.md"

Then run:

uvx pilot-rules --collect --config pilot-rules.toml

Let your coding agents work with your rules — not against them.

Permanent Installation

# Install globally with pipx (recommended)
pipx install pilot-rules

# Then use from anywhere
pilot-rules --cursor
pilot-rules --copilot

The tool will:

  • Create the necessary directory structure
  • Set up initial configuration files
  • Add tool-specific templates
  • Display a getting started guide

The Future of Development is Here 🌟

AI is transforming software development, and these rules represent a significant leap forward in this evolution. This repository showcases a fundamental paradigm shift in how we build software:

From: Developers manually writing every line of code
To: Developers creating specifications that guide AI assistants to generate implementation

This approach fundamentally changes the developer's role from manual coding to:

  1. Defining clear specifications for what should be built
  2. Establishing technical requirements for how code should be written
  3. Supervising the AI as it implements solutions
  4. Reviewing and refining the output

By adopting this rules-based approach, developers can dramatically accelerate productivity while still maintaining control.

Core Principles 🧭

The AI-assisted development rules system is built on these foundational principles:

  • Task-driven Development: Every code implementation must be tied to a clearly defined Task, which is associated with a corresponding Specification.
  • No Untracked Implementations: No features should be implemented without a Task and Specification.
  • Automated Consistency: The system continuously verifies synchronization between code, tasks, and specifications.

Basic Workflow 🔄

The rules system introduces a streamlined workflow:

1. Project Initialization

Start by initializing your project structure:

  • Create the .project/specs directory for specifications
  • Initialize the SPECS.md index file for tracking specifications
  • Create the .project/tasks directory for task management
  • Initialize the TASKS.md index file for tracking tasks
  • Set up basic project structure according to best practices

2. Specification Creation

Create specifications based on your ideas or requirements that include:

  • Comprehensive specifications from your requirements
  • Structured specification files in .project/specs/
  • Proper specification IDs (SPEC-NN-descriptive-name)
  • Priority levels (HIGH/MEDIUM/LOW) for each requirement
  • Testing criteria for implementation validation
  • Progress tracking
  • Cross-checking with existing code

3. Task Generation

Generate tasks for your development schedule that:

  • Break down specifications into actionable tasks
  • Create task files in .project/tasks/ with unique IDs (TASK-YYYY-MM-DD-NN)
  • Define clear acceptance criteria for each task
  • Specify required tests for task completion
  • Link tasks to their corresponding specifications
  • Ensure tasks are properly sized (maximum 1 work day per task)
  • Update the task index for easy tracking

File Structure 📁

The rules system organizes your project with this structure:

project-root/
├── .project/
│   ├── specs/           # Specification files
│   │   └── SPEC-NN-*.md # Individual specification files
│   ├── SPECS.md         # Specification index and progress tracking
│   ├── tasks/           # Task files
│   │   └── TASK-*.md    # Individual task files
│   └── TASKS.md         # Task index and tracking
└── src/                 # Your source code

Specification Format 📝

Specifications follow a standardized format:

  • Unique ID and Title: Clear identification
  • Description: Detailed feature requirements
  • Requirements: Prioritized and checkable items
    - [ ] Requirement 1.1 [HIGH]: Authentication must use JWT
    - [ ] Requirement 1.2 [MEDIUM]: Token expiration after 15 minutes
    
  • Testing Criteria: How implementation will be validated
  • Acceptance Criteria: Clear success metrics
  • Metadata: Tracking information (creation date, status, etc.)

Task Format 📋

Tasks are structured for clarity and tracking:

  • Unique ID and Description: Clear identification
  • Relevant Specification: Link to corresponding spec
  • Acceptance Criteria: Clear completion requirements
  • Tests: Required test cases for verification
  • Metadata: Tracking data (dates, status, etc.)
  • Complexity: Assessment of difficulty
  • Learnings: Insights gained during implementation

Additional Features ✨

Beyond the core workflow, the rules system offers:

Automatic Commit Management

The system intelligently manages git commits:

  • Uses conventional commit format (type(scope): description)
  • Determines appropriate commit types based on changes
  • Manages README updates based on implementation changes
  • Ensures test-verified changes are properly committed

Benefits of AI-Assisted Development Rules 🌈

The rules system provides numerous advantages:

  • Structured Development Process - Follow a consistent path from idea to implementation
  • Accelerated Productivity - Skip boilerplate and focus on unique aspects of your project
  • Enhanced Quality - Generate comprehensive specs that drive high-quality implementation
  • Improved Planning - Create realistic task timelines with proper dependencies
  • Documentation-Driven - Maintain thorough documentation throughout the project lifecycle

Advanced Usage 🔧

Beyond the basic workflow, you can:

  • Refine specifications with additional details
  • Update priority levels as requirements evolve
  • Track progress through specification completion percentages
  • Regenerate tasks as priorities change
  • Capture learnings during implementation for future reference

Future Enhancements 🔮

The rules system is continuously evolving with planned additions:

  • Automated testing integration
  • Deployment workflow automation
  • Performance analytics
  • Integration with various project management tools
  • Support for additional AI coding assistants

Inspiration 💡

This structured AI development flow was inspired by Geoffrey Huntley's method of effectively using AI assistants. Huntley demonstrates how combining specifications with technical rules creates a powerful workflow that can dramatically increase development productivity.

As Huntley explains:

"When you use '/specs' method with the 'stdlib' method in conjunction with a programming language that provides compiler soundness (driven by good types) and compiler errors, the results are incredible. You can drive hands-free output of N factor (entire weeks' worth) of co-workers in hours."

Something Missing? 🤔

The rules system is designed to be extensible! You can create new rules that address your specific workflow needs. Check the tool-specific guides for details on how to implement custom rules with your chosen AI assistant.

License 📜

MIT License - See LICENSE for details.


"If you want to build a ship, don't drum up people to collect wood and don't assign them tasks and work, but rather teach them to long for the endless immensity of the sea." - Antoine de Saint-Exupéry

In the same way, effective AI systems don't just execute code, but operate within a framework of principles and specifications that guide them toward building solutions that fulfill the true vision of what we seek to create.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

copilot_toolkit-0.2.0.tar.gz (568.0 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

copilot_toolkit-0.2.0-py3-none-any.whl (58.2 kB view details)

Uploaded Python 3

File details

Details for the file copilot_toolkit-0.2.0.tar.gz.

File metadata

  • Download URL: copilot_toolkit-0.2.0.tar.gz
  • Upload date:
  • Size: 568.0 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: uv/0.6.10

File hashes

Hashes for copilot_toolkit-0.2.0.tar.gz
Algorithm Hash digest
SHA256 bc9decefa0ccef7b1de0794e940615e470355c4041b37219dc08a21901a88b29
MD5 f7b4498fe5547b3dc9514d2e9ad03e14
BLAKE2b-256 b758861d76655387a086b32f85f221703e8afa06145d970bf92fb399f51508f7

See more details on using hashes here.

File details

Details for the file copilot_toolkit-0.2.0-py3-none-any.whl.

File metadata

File hashes

Hashes for copilot_toolkit-0.2.0-py3-none-any.whl
Algorithm Hash digest
SHA256 c712d808d0a5184501109464a04d061e7457581493b70e753fe358d0f6d52fc7
MD5 848be55f632540706dc1284fe6db91c3
BLAKE2b-256 944692604511bf1c07e40dcc20ac831e07bd4ace0e33d79c2b1108e19a36b04f

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page