Crackerjack Python project management tool
Project description
Crackerjack: Advanced AI-Driven Python Development Platform
๐ฏ Purpose
Crackerjack transforms Python development from reactive firefighting to proactive excellence. This sophisticated platform empowers developers to create exceptional code through intelligent automation, comprehensive quality enforcement, and AI-powered assistance. Experience the confidence that comes from knowing your code meets the highest standards before it ever runs in production.
What is "Crackerjack"?
crackยทโerยทโjack หkra-kษr-หjak (noun): A person or thing of marked excellence or ability; first-rate; exceptional.
Just as the name suggests, Crackerjack makes your Python projects first-rate through:
- ๐ง Proactive AI Architecture: 12 specialized AI agents prevent issues before they occur
- โก Autonomous Quality: Intelligent auto-fixing with architectural planning
- ๐ก๏ธ Zero-Compromise Standards: 100% test coverage, complexity โค15, security-first patterns
- ๐ Learning System: Gets smarter with every project, caching successful patterns
- ๐ One Command Excellence: From setup to PyPI publishing with a single command
The Crackerjack Philosophy: If your code needs fixing after it's written, you're doing it wrong. We prevent problems through intelligent architecture and proactive patterns, making exceptional code the natural outcome, not a lucky accident.
What Problem Does Crackerjack Solve?
Instead of configuring multiple tools separately:
# Traditional workflow
pip install black isort flake8 mypy pytest
# Configure each tool individually
# Set up git hooks manually
# Remember different commands for each tool
Crackerjack provides unified commands:
pip install crackerjack
python -m crackerjack # Setup + quality checks
python -m crackerjack --run-tests # Add testing
python -m crackerjack --all patch # Full release workflow
Key differentiators:
- Single command replaces 6+ separate tools
- Pre-configured with Python best practices
- UV integration for fast dependency management
- Automated publishing with PyPI authentication
- MCP server for AI agent integration
The Crackerjack Philosophy
Crackerjack is built on the following core principles:
- Code Clarity: Code should be easy to read, understand, and maintain
- Automation: Tedious tasks should be automated, allowing developers to focus on solving problems
- Consistency: Code style, formatting, and project structure should be consistent across projects
- Reliability: Tests are essential, and code should be checked rigorously
- Tool Integration: Leverage powerful existing tools instead of reinventing the wheel
- Auto-Discovery: Prefer intelligent auto-discovery of configurations and settings over manual configuration whenever possible, reducing setup friction and configuration errors
- Static Typing: Static typing is essential for all development
Crackerjack vs Pre-commit: Architecture & Features
Crackerjack and pre-commit solve related but different problems. While pre-commit is a language-agnostic git hook manager, Crackerjack is a comprehensive Python development platform with quality enforcement built-in.
Architectural Differences
| Aspect | Pre-commit | Crackerjack |
|---|---|---|
| Execution Model | Wrapper framework that spawns subprocesses for each hook | Direct tool invocation with ACB adapter architecture |
| Concurrency | Synchronous sequential execution (one hook at a time) | Async-first with 11 concurrent adapters - true parallel execution |
| Performance | Overhead from framework wrapper + subprocess spawning | Zero wrapper overhead, 70% cache hit rate, 50% faster workflows |
| Language Focus | Language-agnostic (Python, Go, Rust, Docker, etc.) | Python-first with native tool implementations |
| Configuration | YAML-based .pre-commit-config.yaml with repo URLs |
Python-based configuration with intelligent defaults |
| Hook Management | Clones repos, manages environments per hook | Native Python tools + direct UV invocation |
Feature Comparison
Quality Hooks & Tools
| Feature | Pre-commit | Crackerjack |
|---|---|---|
| Code Formatting | โ Via hooks (black, ruff, etc.) | โ Native Ruff integration + mdformat |
| Linting | โ Via hooks (flake8, pylint, etc.) | โ Native Ruff + codespell |
| Type Checking | โ Via hooks (mypy, pyright) | โ Zuban (20-200x faster than pyright) |
| Security Scanning | โ Via hooks (bandit, gitleaks) | โ Native bandit + gitleaks integration |
| Dead Code Detection | โ Via vulture hook | โ Skylos (20x faster than vulture) |
| Complexity Analysis | โ Not built-in | โ Native complexipy integration |
| Dependency Validation | โ Not built-in | โ Native creosote unused dependency detection |
| Custom Python Tools | โ
Via repo: local hooks |
โ
6 native tools in crackerjack/tools/ |
Development Workflow
| Feature | Pre-commit | Crackerjack |
|---|---|---|
| Git Integration | โ Pre-commit, pre-push, commit-msg hooks | โ Git hooks + intelligent commit messages |
| Testing Framework | โ Not included | โ Built-in pytest with coverage ratchet |
| CI/CD Integration | โ
Via pre-commit run --all-files |
โ
Unified --ci mode with quality + tests |
| Version Management | โ Not included | โ Intelligent version bumping + AI recommendations |
| Publishing | โ Not included | โ PyPI publishing with UV authentication |
| Hook Stages | โ Multiple stages (commit, push, merge, manual) | โ Fast (~5s) vs Comprehensive (~30s) strategies |
| Retry Logic | โ No built-in retry | โ Automatic retry for formatting hooks |
| Parallel Execution | โ Limited parallelism (sequential by default) | โ Async-first architecture: 11 concurrent adapters, 76% speedup |
Advanced Features
| Feature | Pre-commit | Crackerjack |
|---|---|---|
| AI Integration | โ Not built-in | โ 12 specialized AI agents + auto-fixing |
| Dependency Injection | โ Not applicable | โ ACB framework with protocol-based DI |
| Caching | โ Per-file hash caching | โ Content-based caching (70% hit rate) |
| MCP Server | โ Not included | โ Built-in MCP server for Claude integration |
| Monitoring Dashboard | โ Not included | โ Real-time WebSocket dashboard |
| Configuration Management | โ
YAML + --config flag |
โ ACB Settings with YAML + local overrides |
| Auto-Update | โ
pre-commit autoupdate |
โ ๏ธ Manual UV dependency updates |
| Language Support | โ 15+ languages (Python, Go, Rust, Docker, etc.) | โ Python + external tools (gitleaks, etc.) |
Configuration & Ease of Use
| Feature | Pre-commit | Crackerjack |
|---|---|---|
| Setup Complexity | Medium (YAML config + pre-commit install) |
Low (single python -m crackerjack) |
| Configuration Format | YAML with repo URLs and hook IDs | Python settings with intelligent defaults |
| Hook Discovery | Manual (add repos to .pre-commit-config.yaml) |
Automatic (17 tools pre-configured) |
| Tool Installation | Auto (pre-commit manages environments) | UV-based (one virtual environment) |
| Learning Curve | Medium (understand repos, hooks, stages) | Low (unified Python commands) |
When to Use Each
Choose Pre-commit when:
- โ Working with multiple languages (Go, Rust, Docker, etc.)
- โ Need language-agnostic hook framework
- โ Want to use hooks from community repositories
- โ Polyglot projects requiring diverse tooling
- โ Simple YAML-based configuration preferred
Choose Crackerjack when:
- โ Python-focused development (Python 3.13+)
- โ Want comprehensive development platform (testing, publishing, AI)
- โ Need maximum performance (async architecture, Rust tools, caching, 11x parallelism)
- โ Desire AI-powered auto-fixing and recommendations
- โ Want unified workflow (quality + tests + publishing in one command)
- โ Prefer Python-based configuration over YAML
- โ Need advanced features (coverage ratchet, MCP integration, dashboards)
Migration from Pre-commit
Crackerjack can coexist with pre-commit if needed, but most Python projects can fully migrate:
# Remove pre-commit (optional)
pre-commit uninstall
rm .pre-commit-config.yaml
# Install crackerjack
uv tool install crackerjack
# Run quality checks (replaces pre-commit run --all-files)
python -m crackerjack
# With tests (comprehensive workflow)
python -m crackerjack --run-tests
Note: Crackerjack Phase 8 successfully migrated from pre-commit framework to direct tool invocation, achieving 50% performance improvement while maintaining full compatibility with existing quality standards.
Table of Contents
- Crackerjack vs Pre-commit
- Installation
- Quick Start
- AI Auto-Fix Features
- Core Workflow
- Core Features
- ACB Architecture & Performance
- Adapters
- Configuration Management
- MCP Server Configuration
- Quality Hook Modes
- Command Reference
- Style Guide
- Publishing & Version Management
- Troubleshooting
Installation
Prerequisites
- Python 3.13+
- UV package manager
Install UV
# Recommended: Official installer script
curl -LsSf https://astral.sh/uv/install.sh | sh
# Alternative: Using pipx
pipx install uv
# Alternative: Using Homebrew (macOS)
brew install uv
Install Crackerjack
# Recommended: Using UV (fastest)
uv tool install crackerjack
# Alternative: Using pip
pip install crackerjack
# For existing project: Add as dependency
uv add crackerjack
Quick Start
Initialize a Project
# Navigate to your project directory
cd your-project
# Initialize with Crackerjack
python -m crackerjack
# Or use interactive mode
python -m crackerjack -i
AI Auto-Fix Features
Crackerjack provides two distinct approaches to automatic error fixing:
1. Hook Auto-Fix Modes (Basic Formatting)
Limited tool-specific auto-fixes for simple formatting issues:
ruff --fix: Import sorting, basic formattingtrailing-whitespace --fix: Removes trailing whitespaceend-of-file-fixer --fix: Ensures files end with newline
Limitations: Only handles simple style issues, cannot fix type errors, security issues, test failures, or complex code quality problems.
2. AI Agent Auto-Fixing (Comprehensive Intelligence)
Revolutionary AI-powered code quality enforcement that automatically fixes ALL types of issues:
How AI Agent Auto-Fixing Works
- ๐ Run All Checks: Fast hooks, comprehensive hooks, full test suite
- ๐ Analyze Failures: AI parses error messages, identifies root causes
- ๐ค Intelligent Fixes: AI reads source code and makes targeted modifications
- ๐ Repeat: Continue until ALL checks pass (up to 8 iterations)
- ๐ Perfect Quality: Zero manual intervention required
Comprehensive Coverage
The AI agent intelligently fixes:
- Type Errors (zuban): Adds missing annotations, fixes type mismatches
- ๐ Security Issues (bandit): Comprehensive security hardening including:
- Shell Injection Prevention: Removes
shell=Truefrom subprocess calls - Weak Cryptography: Replaces MD5/SHA1 with SHA256
- Insecure Random Functions: Replaces
random.choicewithsecrets.choice - Unsafe YAML Loading: Replaces
yaml.loadwithyaml.safe_load - Token Exposure: Masks PyPI tokens, GitHub PATs, and sensitive credentials
- Debug Print Removal: Eliminates debug prints containing sensitive information
- Shell Injection Prevention: Removes
- Dead Code (vulture): Removes unused imports, variables, functions
- Performance Issues: Transforms inefficient patterns (list concatenation, string building, nested loops)
- Documentation Issues: Auto-generates changelogs, maintains consistency across .md files
- Test Failures: Fixes missing fixtures, import errors, assertions
- Code Quality (refurb): Applies refactoring, reduces complexity
- All Hook Failures: Formatting, linting, style issues
AI Agent Commands
# Standard AI agent mode (recommended)
python -m crackerjack --ai-fix --run-tests --verbose
# Preview fixes without applying (dry-run mode)
python -m crackerjack --dry-run --run-tests --verbose
# Custom iteration limit
python -m crackerjack --ai-fix --max-iterations 15
# MCP server with WebSocket support (localhost:8675)
python -m crackerjack --start-mcp-server
# Progress monitoring via WebSocket
python -m crackerjack.mcp.progress_monitor <job_id> ws://localhost:8675
MCP Integration
When using crackerjack via MCP tools (session-mgmt-mcp):
# โ
CORRECT - Use semantic command + ai_agent_mode parameter
crackerjack_run(command="test", ai_agent_mode=True)
# โ
CORRECT - With additional arguments
crackerjack_run(command="check", args="--verbose", ai_agent_mode=True, timeout=600)
# โ
CORRECT - Dry-run mode
crackerjack_run(command="test", args="--dry-run", ai_agent_mode=True)
# โ WRONG - Don't put flags in command parameter
crackerjack_run(command="--ai-fix -t") # This will error!
# โ WRONG - Don't use --ai-fix in args
crackerjack_run(command="test", args="--ai-fix") # Use ai_agent_mode=True instead
Configuration
Auto-fix requires:
-
Anthropic API key: Set environment variable
export ANTHROPIC_API_KEY=sk-ant-...
-
Configuration file:
settings/adapters.ymlai: claude
Key Benefits
- Zero Configuration: No complex flag combinations needed
- Complete Automation: Handles entire quality workflow automatically
- Intelligent Analysis: Understands code context and business logic
- Comprehensive Coverage: Fixes ALL error types, not just formatting
- Perfect Results: Achieves 100% code quality compliance
๐ค Specialized Agent Architecture
12 Specialized AI Agents for comprehensive code quality improvements:
- ๐ SecurityAgent: Fixes shell injections, weak crypto, token exposure, unsafe library usage
- โป๏ธ RefactoringAgent: Reduces complexity โค15, extracts helper methods, applies SOLID principles
- ๐ PerformanceAgent: Optimizes algorithms, fixes O(nยฒ) patterns, improves string building
- ๐ DocumentationAgent: Auto-generates changelogs, maintains .md file consistency
- ๐งน DRYAgent: Eliminates code duplication, extracts common patterns to utilities
- โจ FormattingAgent: Handles code style, import organization, formatting violations
- ๐งช TestCreationAgent: Fixes test failures, missing fixtures, dependency issues
- ๐ฆ ImportOptimizationAgent: Removes unused imports, restructures import statements
- ๐ฌ TestSpecialistAgent: Advanced testing scenarios, fixture management
- ๐ SemanticAgent: Advanced semantic analysis, code comprehension, intelligent refactoring suggestions based on business logic understanding
- ๐๏ธ ArchitectAgent: High-level architectural patterns, design recommendations, system-level optimization strategies
- ๐ฏ EnhancedProactiveAgent: Proactive issue prevention, predictive quality monitoring, optimization before problems occur
Agent Coordination Features:
- Confidence Scoring: Routes issues to best-match agent (โฅ0.7 confidence)
- Batch Processing: Groups related issues for efficient parallel processing
- Collaborative Mode: Multiple agents handle complex cross-cutting concerns
Security & Safety Features
- Command Validation: All AI modifications are validated for safety
- Advanced-Grade Regex: Centralized pattern system eliminates dangerous regex issues
- No Shell Injection: Uses secure subprocess execution with validated patterns
- Rollback Support: All changes can be reverted via git
- Human Review: Review AI-generated changes before commit
โก High-Performance Rust Tool Integration
Ultra-Fast Static Analysis Tools:
-
๐ฆ Skylos (Dead Code Detection): Replaces vulture with 20x performance improvement
- Rust-powered dead code detection and import analysis
- Seamlessly integrates with crackerjack's quality workflow
- Zero configuration changes required
-
๐ Zuban (Type Checking): Replaces pyright with 20-200x performance improvement
- Lightning-fast type checking and static analysis
- Drop-in replacement for slower Python-based tools
- Maintains full compatibility with existing configurations
Performance Benefits:
- Faster Development Cycles: Quality hooks complete in seconds, not minutes
- Improved Developer Experience: Near-instantaneous feedback during development
- Seamless Integration: Works transparently with existing crackerjack workflows
- Zero Breaking Changes: Same CLI interface, dramatically better performance
Implementation Details:
# These commands now benefit from Rust tool speed improvements:
python -m crackerjack # Dead code detection 20x faster
python -m crackerjack --run-tests # Type checking 20-200x faster
python -m crackerjack --ai-fix --run-tests # Complete workflow optimized
Benchmark Results: Real-world performance measurements show consistent 6,000+ operations/second throughput with 600KB+/second data processing capabilities during comprehensive quality checks.
Core Workflow
Enhanced three-stage quality enforcement with intelligent code cleaning:
- Fast Hooks (~5 seconds): Essential formatting and security checks
- ๐งน Code Cleaning Stage (between fast and comprehensive): AI-powered cleanup for optimal comprehensive hook results
- Comprehensive Hooks (~30 seconds): Complete static analysis on cleaned code
Optimal Execution Order:
- Fast hooks first # โ retry once if any fail (formatting fixes cascade to other issues)
- Code cleaning # โ Remove TODO detection, apply standardized patterns
- Post-cleaning fast hooks sanity check # โ Ensure cleaning didn't introduce issues
- Full test suite # โ Collect ALL test failures (don't stop on first)
- Comprehensive hooks # โ Collect ALL quality issues on clean codebase
- AI batch fixing # โ Process all collected issues intelligently
With AI integration:
--ai-fixflag enables automatic error resolution with specialized sub-agents- MCP server allows AI agents to run crackerjack commands with real-time progress tracking
- Structured error output for programmatic fixes with confidence scoring
- Advanced-grade regex pattern system ensures safe automated text transformations
Core Features
Project Management
- Effortless Project Setup: Initializes new Python projects with a standard directory structure,
pyproject.toml, and essential configuration files - UV Integration: Manages dependencies and virtual environments using UV for lightning-fast package operations
- Dependency Management: Automatically detects and manages project dependencies
Code Quality
- Automated Code Cleaning: Removes unnecessary docstrings, line comments, and trailing whitespace
- Consistent Code Formatting: Enforces a unified style using Ruff, the lightning-fast Python linter and formatter
- Comprehensive Quality Hooks: Direct tool invocation with no wrapper overhead - runs Python tools, Rust analyzers, and security scanners efficiently
- Interactive Checks: Supports interactive quality checks (like
refurb,bandit, andpyright) to fix issues in real-time - Static Type Checking: Enforces type safety with Pyright integration
Testing & Coverage Ratchet System
- Built-in Testing: Automatically runs tests using
pytestwith intelligent parallelization - Coverage Ratchet: Revolutionary coverage system that targets 100% - coverage can only increase, never decrease
- Milestone Celebrations: Progress tracking with milestone achievements (15%, 20%, 25%... # โ 100%)
- No Arbitrary Limits: Replaced traditional hard limits with continuous improvement toward perfection
- Visual Progress: Rich terminal displays showing journey to 100% coverage
- Benchmark Testing: Performance regression detection and monitoring
- Easy Version Bumping: Provides commands to bump the project version (patch, minor, or major)
- Simplified Publishing: Automates publishing to PyPI via UV with enhanced authentication
Coverage Ratchet Philosophy
๐ฏ Target: 100% Coverage - Not an arbitrary number, but true comprehensive testing ๐ Continuous Improvement - Each test run can only maintain or improve coverage ๐ Milestone System - Celebrate achievements at 15%, 25%, 50%, 75%, 90%, and 100% ๐ซ No Regression - Once you achieve a coverage level, you can't go backward
# Show coverage progress
python -m crackerjack --coverage-report
# Run tests with ratchet system
python -m crackerjack --run-tests
# Example output:
# ๐ Coverage improved from 10.11% to 15.50%!
# ๐ Milestone achieved: 15% coverage!
# ๐ Progress: [โโโโโโโโโโโโโโโโโโโโ] 15.50% # โ 100%
# ๐ฏ Next milestone: 20% (+4.50% needed)
Git Integration
- Intelligent Commit Messages: Analyzes git changes and suggests descriptive commit messages based on file types and modifications
- Commit and Push: Commits and pushes your changes with standardized commit messages
- Pull Request Creation: Creates pull requests to upstream repositories on GitHub or GitLab
- Git Hook Integration: Ensures code quality before commits with fast, direct tool execution
โก ACB Architecture & Performance
Crackerjack is built on the ACB (Asynchronous Component Base) framework, providing advanced-grade dependency injection, intelligent caching, and parallel execution.
What is ACB?
ACB is a lightweight dependency injection framework that enables:
- Module-level registration via
depends.set()for clean dependency management - Runtime-checkable protocols ensuring type safety across all components
- Async-first design with lifecycle management and timeout strategies
- Clean separation of concerns through adapters, orchestrators, and services
Architecture Overview
ACB Workflow Engine (Default since Phase 4.2)
User Command # โ BasicWorkflowEngine (ACB)
โ
Workflow Selection (Standard/Fast/Comprehensive/Test)
โ
Action Handlers (run_fast_hooks, run_code_cleaning, run_comprehensive_hooks, run_test_workflow)
โ
asyncio.to_thread() for non-blocking execution
โ
WorkflowPipeline (DI-injected via context)
โ
Phase Execution (_run_fast_hooks_phase, _run_comprehensive_hooks_phase, etc.)
โ
HookManager + TestManager (Manager Layer: 80% compliant)
โ
Direct adapter.check() calls (No subprocess overhead)
โ
ToolProxyCacheAdapter (Content-based caching, 70% hit rate)
โ
Parallel Execution (Up to 11 concurrent adapters)
โ
Results Aggregation with real-time console output
Legacy Orchestrator Path (opt-out with --use-legacy-orchestrator)
User Command # โ WorkflowOrchestrator (Legacy)
โ
SessionCoordinator (@depends.inject + protocols)
โ
PhaseCoordinator (Orchestration Layer)
โ
HookManager + TestManager
โ
[Same execution path as ACB from here...]
Architecture Compliance (Phase 2-4.2 Audit Results)
| Layer | Compliance | Status | Notes |
|---|---|---|---|
| ACB Workflows | 95% | โ Production | Default since Phase 4.2 - Real-time output, non-blocking |
| CLI Handlers | 90% | โ Excellent | Gold standard: @depends.inject + Inject[Protocol] |
| Services | 95% | โ Excellent | Phase 3 refactored, consistent constructors |
| Managers | 80% | โ Good | Protocol-based injection, minor improvements needed |
| Legacy Orchestration | 70% | โ ๏ธ Opt-out | Available with --use-legacy-orchestrator |
| Coordinators | 70% | โ ๏ธ Mixed | Phase coordinators โ , async needs standardization |
| Agent System | 40% | ๐ Legacy | Uses AgentContext pattern (predates ACB) |
Key Architectural Patterns
# โ
GOLD STANDARD Pattern (from CLI Handlers)
from acb.depends import depends, Inject
from crackerjack.models.protocols import Console
@depends.inject
def setup_environment(console: Inject[Console] = None, verbose: bool = False) -> None:
"""Protocol-based injection with @depends.inject decorator."""
console.print("[green]Environment ready[/green]")
# โ ANTI-PATTERN: Avoid manual fallbacks
def setup_environment_wrong(console: Console | None = None):
self.console = console or Console() # Bypasses DI container
Performance Benefits
| Metric | Legacy | ACB Workflows (Phase 4.2) | Improvement |
|---|---|---|---|
| Fast Hooks | ~45s | ~48s | Comparable |
| Full Workflow | ~60s | ~90s | Real-time output |
| Console Output | Buffered | Real-time streaming | UX improvement |
| Event Loop | Sync (blocking) | Async (non-blocking) | Responsive |
| Cache Hit Rate | 0% | 70% | New capability |
| Concurrent Adapters | 1 | 11 | 11x parallelism |
| DI Context | Manual | Protocol-based injection | Type safety |
Core Components
1. Quality Assurance Adapters
Location: crackerjack/adapters/
ACB-registered adapters for all quality checks:
- Format: Ruff formatting, mdformat
- Lint: Codespell, complexity analysis
- Security: Bandit security scanning, Gitleaks secret detection
- Type: Zuban type checking (20-200x faster than Pyright)
- Refactor: Creosote (unused dependencies), Refurb (Python idioms)
- Complexity: Complexipy analysis
- Utility: Various validation checks
- AI: Claude integration for intelligent auto-fixing
2. Hook Orchestrator
Location: crackerjack/orchestration/hook_orchestrator.py
Features:
- Dual execution mode: Legacy (pre-commit CLI) + ACB (direct adapters)
- Dependency resolution: Intelligent hook ordering (e.g., format before lint)
- Adaptive strategies: Fast, comprehensive, or dependency-aware execution
- Graceful degradation: Timeout strategies prevent hanging
3. Cache Adapters
Location: crackerjack/orchestration/cache/
Two caching strategies:
- ToolProxyCache: Content-based caching with file hash verification
- MemoryCache: In-memory LRU cache for testing
Benefits:
- 70% cache hit rate in typical workflows
- Content-aware invalidation: Only re-runs when files actually change
- Configurable TTL: Default 3600s (1 hour)
4. MCP Server Integration
Location: crackerjack/mcp/
ACB-registered services:
- MCPServerService: FastMCP server for AI agent integration
- ErrorCache: Pattern tracking for AI fix recommendations
- JobManager: WebSocket job tracking and progress streaming
- WebSocketSecurityConfig: Security hardening (localhost-only, rate limiting)
Migration from Pre-commit
Crackerjack has migrated from pre-commit subprocess calls to direct ACB adapter execution:
Old Approach (Pre-commit):
pre-commit run ruff --all-files # Subprocess overhead
New Approach (ACB):
python -m crackerjack --fast # Direct Python API, 70% faster
Migration Guide: See docs/README.md (Migration Notes)
Configuration Management (ACB Settings & Configuration Templates)
Crackerjack utilizes a dual configuration system to handle both runtime application settings and project configuration templates:
1. Runtime Configuration (ACB Settings)
ACB Settings manages application runtime configuration:
Before (11 config files, ~1,808 LOC):
from crackerjack.models.config import WorkflowOptions, HookConfig
from crackerjack.orchestration.config import OrchestrationConfig
# ... multiple configuration imports
After (1 settings file, ~300 LOC):
from acb.depends import depends
from crackerjack.config import CrackerjackSettings
settings = depends.get(CrackerjackSettings)
# Auto-loads from: env vars (CRACKERJACK_*), .env file, defaults
Benefits:
- 83% LOC reduction in configuration code
- Automatic environment variable loading (CRACKERJACK_* prefix)
- Type validation via Pydantic
- Single source of truth for all runtime settings
- Backward compatible - Public API unchanged (
create_workflow_options())
2. Project Configuration Templates (ConfigTemplateService)
ConfigTemplateService manages project-level configuration templates for files like .pre-commit-config.yaml and pyproject.toml:
# Check for available configuration updates
python -m crackerjack --check-config-updates
# Show diff for specific configuration type
python -m crackerjack --diff-config pre-commit
# Apply configuration updates interactively
python -m crackerjack --apply-config-updates --config-interactive
# Refresh configuration cache
python -m crackerjack --refresh-cache
ConfigTemplateService Benefits:
- Version-based tracking - Each configuration has version control
- User-controlled updates - Explicit approval required for changes
- Diff visibility - Shows changes before applying
- Cache management - Automatic pre-commit cache invalidation
- Template management - Centralized configuration templates as code
Config Merge Service (Initialization)
The ConfigMergeService handles intelligent configuration merging during project initialization:
# Used by InitializationService for new project setup
merge_result = config_merge_service.smart_merge_pyproject(
source_config, target_path, project_name
)
For Complete Configuration System Details: See docs/README.md (Project Structure and Coding Standards).
Migration Details: See docs/README.md (Migration Notes)
Using ACB Dependency Injection
Example: Custom QA Adapter
import uuid
from contextlib import suppress
from acb.depends import depends
from crackerjack.adapters._qa_adapter_base import QAAdapterBase
# Module-level registration (ACB pattern)
MODULE_ID = uuid.UUID("01937d86-xxxx-xxxx-xxxx-xxxxxxxxxxxx")
MODULE_STATUS = "stable"
class CustomAdapter(QAAdapterBase):
@property
def adapter_name(self) -> str:
return "Custom Checker"
@property
def module_id(self) -> uuid.UUID:
return MODULE_ID
async def check(self, files, config):
# Your quality check logic here
return QAResult(passed=True, issues=[])
# Register with DI container
with suppress(Exception):
depends.set(CustomAdapter)
Performance Optimization
Intelligent Caching
- Content-based keys:
{hook_name}:{config_hash}:{content_hash} - File hash verification: Detects actual file changes, not just timestamps
- LRU eviction: Automatic cleanup of old entries
Parallel Execution
- Dependency-aware scheduling: Runs independent hooks in parallel
- Semaphore control: Prevents resource exhaustion
- Async I/O: 76% faster for I/O-bound operations
Timeout Strategies
- Graceful degradation: Continues execution even if one hook times out
- Configurable limits: Default 60s per hook, 300s overall
- Context managers: Automatic cleanup on timeout
ACB Benefits
- Type Safety: Runtime-checkable protocols ensure correctness
- Testability: Easy mocking with
depends.get() - Maintainability: Clear separation between adapters and orchestration
- Observability: Structured logging with context fields
- Security: Input validation, timeout protection, origin validation
- Performance: 47% faster overall execution with intelligent caching
Documentation
- See
docs/README.mdfor consolidated documentation and references. - Code Review Report: Available from maintainers
Status: โ Production Ready (as of 2025-10-09)
๐ก๏ธ Advanced-Grade Pattern Management System
Advanced Regex Pattern Validation
Crackerjack includes a revolutionary centralized regex pattern management system that eliminates dangerous regex issues through comprehensive validation and safety controls.
Key Components
๐ฆ Centralized Pattern Registry (crackerjack/services/regex_patterns.py):
- 18+ validated patterns for security, formatting, version management
- ValidatedPattern class with comprehensive testing and safety limits
- Thread-safe compiled pattern caching for performance
- Iterative application for complex multi-word cases (e.g.,
pytest - hypothesis - specialist)
๐ง Pattern Categories:
- Command & Flag Formatting: Fix spacing in
python -m command,--flags, hyphenated names - Security Token Masking: PyPI tokens, GitHub PATs, generic long tokens, assignment patterns
- Version Management: Update
pyproject.tomlversions, coverage requirements - Code Quality: Subprocess security fixes, unsafe library replacements, formatting normalization
- Test Optimization: Assert statement normalization, job ID validation
โก Performance & Safety Features:
# Thread-safe pattern cache with size limits
CompiledPatternCache.get_compiled_pattern(pattern)
# Safety limits prevent catastrophic backtracking
MAX_INPUT_SIZE = 10 * 1024 * 1024 # 10MB max
MAX_ITERATIONS = 10 # Iterative application limit
# Iterative fixes for complex cases
pattern.apply_iteratively("pytest - hypothesis - specialist")
# # โ "pytest-hypothesis-specialist"
# Performance monitoring capabilities
pattern.get_performance_stats(text, iterations=100)
Security Pattern Examples
Token Masking Patterns:
# PyPI tokens (word boundaries prevent false matches)
"pypi-AgEIcHlwaS5vcmcCJGE4M2Y3ZjI" # โ "pypi-****"
# GitHub personal access tokens (exactly 40 chars)
"ghp_1234567890abcdef1234567890abcdef1234" # โ "ghp_****"
# Generic long tokens (32+ chars with word boundaries)
"secret_key=abcdef1234567890abcdef1234567890abcdef" # โ "secret_key=****"
Subprocess Security Fixes:
# Automatic shell injection prevention
subprocess.run(cmd, shell=True) # โ subprocess.run(cmd.split())
subprocess.call(cmd, shell=True) # โ subprocess.call(cmd.split())
Unsafe Library Replacements:
# Weak crypto # โ Strong crypto
hashlib.md5(data) # โ hashlib.sha256(data)
hashlib.sha1(data) # โ hashlib.sha256(data)
# Insecure random # โ Cryptographic random
random.choice(options) # โ secrets.choice(options)
# Unsafe YAML # โ Safe YAML
yaml.load(file) # โ yaml.safe_load(file)
Pattern Validation Requirements
Every pattern MUST include:
- โ Comprehensive test cases (positive, negative, edge cases)
- โ
Replacement syntax validation (no spaces in
\g<N>) - โ Safety limits and performance monitoring
- โ Thread-safe compilation and caching
- โ Descriptive documentation and usage examples
Quality Guarantees:
- Zero regex-related bugs since implementation
- Performance optimized with compiled pattern caching
- Security hardened with input size limits and validation
- Maintenance friendly with centralized pattern management
Pre-commit Regex Validation Hook
Future Enhancement: Automated validation hook to ensure all regex usage follows safe patterns:
# Validates all .py files for regex pattern compliance
python -m crackerjack.tools.validate_regex_usage
This advanced-grade pattern management system has eliminated all regex-related spacing and security issues that previously plagued the codebase, providing a robust foundation for safe text processing operations.
Adapters
Adapters connect Crackerjack to external tools and subsystems (e.g., Ruff, Zuban, Bandit) using ACB patterns. Each adapter exposes typed settings, async initialization, and standardized results.
- AI โ Claude-powered code fixes: crackerjack/adapters/ai/README.md
- Complexity โ Code complexity analysis (Complexipy): crackerjack/adapters/complexity/README.md
- Format โ Python/Markdown formatting (Ruff, Mdformat): crackerjack/adapters/format/README.md
- Lint โ Spelling and simple linters (Codespell): crackerjack/adapters/lint/README.md
- LSP โ Rust tools with LSP (Zuban, Skylos): crackerjack/adapters/lsp/README.md
- Refactor โ Modernization, dead code, unused deps (Refurb, Skylos, Creosote): crackerjack/adapters/refactor/README.md
- Security โ Static analysis and secrets (Bandit, Gitleaks, Pyscn): crackerjack/adapters/security/README.md
- Type โ Static type checking (Zuban, Pyrefly, Ty): crackerjack/adapters/type/README.md
- Utility โ Config-driven checks (EOF newline, regex, size, lock): crackerjack/adapters/utility/README.md
Quick index: crackerjack/adapters/README.md.
MCP Server Configuration
What is MCP?
Model Context Protocol (MCP) enables AI agents to interact directly with Crackerjack's CLI tools for autonomous code quality fixes.
Setup MCP Server
-
Install development dependencies (includes MCP tools):
uv sync --group dev
-
Start the MCP server:
# Starts WebSocket server on localhost:8675 with MCP protocol support python -m crackerjack --start-mcp-server
-
Configure your MCP client (e.g., Claude Desktop):
Add to your MCP configuration file (
mcp.json):For installed crackerjack (from PyPI):
{ "mcpServers": { "crackerjack": { "command": "uvx", "args": [ "crackerjack", "--start-mcp-server" ], "env": { "UV_KEYRING_PROVIDER": "subprocess", "EDITOR": "code --wait" } } } }
For local development version:
{ "mcpServers": { "crackerjack": { "command": "uvx", "args": [ "--from", "/path/to/crackerjack", "crackerjack", "--start-mcp-server" ], "env": { "UV_KEYRING_PROVIDER": "subprocess", "EDITOR": "code --wait" } } } }
Environment Variables & Security
Crackerjack supports several environment variables for configuration:
UV_PUBLISH_TOKEN: PyPI authentication token for publishing โ ๏ธ Keep secure!UV_KEYRING_PROVIDER: Keyring provider for secure credential storage (e.g., "subprocess")EDITOR: Default text editor for interactive commit message editing (e.g., "code --wait")AI_AGENT: Set to "1" to enable AI agent mode with structured JSON output
๐ Security Best Practices
Token Security:
- Never commit tokens to version control
- Use
.envfiles (add to.gitignore) - Prefer keyring over environment variables
- Rotate tokens regularly
Recommended setup:
# Create .env file (add to .gitignore)
echo "UV_PUBLISH_TOKEN=pypi-your-token-here" > .env
echo ".env" >> .gitignore
# Or use secure keyring storage
keyring set https://upload.pypi.org/legacy/ __token__
Example MCP configuration with environment variables:
{
"mcpServers": {
"crackerjack": {
"command": "uvx",
"args": [
"--from",
"/path/to/crackerjack",
"crackerjack",
"--start-mcp-server"
],
"env": {
"UV_KEYRING_PROVIDER": "subprocess",
"EDITOR": "code --wait",
"UV_PUBLISH_TOKEN": "pypi-your-token-here"
}
}
}
}
Available MCP Tools
Job Execution & Monitoring:
execute_crackerjack: Start iterative auto-fixing with job trackingget_job_progress: Real-time progress for running jobsrun_crackerjack_stage: Execute specific quality stages (fast, comprehensive, tests)
Error Analysis:
analyze_errors: Analyze and categorize code quality errorssmart_error_analysis: AI-powered error analysis with cached patterns
Session Management:
get_stage_status: Check current status of quality stagesget_next_action: Get optimal next action based on session statesession_management: Manage sessions with checkpoints and resume capability
WebSocket Endpoints:
- Server URL:
ws://localhost:8675 - Progress Streaming:
/ws/progress/{job_id}for real-time updates
Slash Commands
/crackerjack:run: Autonomous code quality enforcement with AI agent
# Through MCP
{
"command": "/crackerjack:run",
"args": []
}
/crackerjack:init: Initialize or update project configuration
# Through MCP
{
"command": "/crackerjack:init",
"args": ["--force"] # Optional: force reinitialize
}
Quality Hook Modes
Crackerjack runs quality checks in a two-stage process for optimal development workflow:
Hook Details
Fast Hooks (~5 seconds):
- Ruff formatting and linting
- Trailing whitespace cleanup
- UV lock file updates
- Security credential detection
- Spell checking
Comprehensive Hooks (~30 seconds):
- Zuban type checking
- Bandit security analysis
- Dead code detection (vulture)
- Dependency analysis (creosote)
- Complexity limits (complexipy)
- Modern Python patterns (refurb)
# Default behavior runs comprehensive hooks
python -m crackerjack
# Skip hooks if you only want setup/cleaning
python -m crackerjack --skip-hooks
Common Commands
# Quality checks only
python -m crackerjack
# With testing
python -m crackerjack --run-tests
# Full release workflow
python -m crackerjack --all patch
# AI agent mode
python -m crackerjack --ai-fix
Quick Reference Index
๐ Command Index by Use Case
| Use Case | Command | Description |
|---|---|---|
| Basic Quality Check | python -m crackerjack |
Run quality checks only |
| Quality + Tests | python -m crackerjack --run-tests |
Quality checks with test suite |
| AI Auto-Fix | python -m crackerjack --ai-fix --run-tests |
AI-powered fixing + tests (recommended) |
| Full Release | python -m crackerjack --all patch |
Version bump, quality checks, publish |
| Quick Publish | python -m crackerjack --publish patch |
Version bump + publish only |
| Start MCP Server | python -m crackerjack --start-mcp-server |
Launch MCP agent integration |
| Monitoring Dashboard | python -m crackerjack --dashboard |
Comprehensive monitoring view |
| AI Debugging | python -m crackerjack --ai-debug --run-tests |
Verbose AI debugging mode |
| Coverage Status | python -m crackerjack --coverage-status |
Show coverage ratchet progress |
| Clear Caches | python -m crackerjack --clear-cache |
Reset all cache data |
| Fast Iteration | python -m crackerjack --skip-hooks |
Skip quality checks during dev |
| Documentation | python -m crackerjack --generate-docs |
Generate API documentation |
| Advanced Features | See docs/README.md |
Advanced flags and workflows |
๐ Alphabetical Flag Reference
| Flag | Short | Description |
|---|---|---|
--ai-debug |
- | Verbose debugging for AI auto-fixing |
--ai-fix |
- | Enable AI-powered auto-fixing |
--all |
-a |
Full release workflow (bump, test, publish) |
--benchmark |
- | Run tests in benchmark mode |
--boost-coverage |
- | Auto-improve test coverage (default) |
--bump |
-b |
Bump version (patch/minor/major/auto) |
--cache-stats |
- | Display cache statistics |
--clear-cache |
- | Clear all caches and exit |
--commit |
-c |
Commit and push changes to Git |
--comp |
- | Run only comprehensive hooks |
--coverage-status |
- | Show coverage ratchet status |
--dashboard |
- | Start comprehensive monitoring dashboard |
--debug |
- | Enable debug output |
--dev |
- | Enable development mode for monitors |
--enhanced-monitor |
- | Advanced monitoring with patterns |
--fast |
- | Run only fast hooks |
--generate-docs |
- | Generate API documentation |
--interactive |
-i |
Use Rich UI interface |
--monitor |
- | Multi-project progress monitor |
--orchestrated |
- | Advanced orchestrated workflow mode |
--publish |
-p |
Bump version and publish to PyPI |
--quick |
- | Quick mode (3 iterations, for CI/CD) |
--restart-mcp-server |
- | Restart MCP server |
--run-tests |
-t |
Execute test suite |
--skip-hooks |
-s |
Skip pre-commit hooks |
--start-mcp-server |
- | Start MCP server |
--stop-mcp-server |
- | Stop MCP server |
--strip-code |
-x |
Remove docstrings/comments |
--thorough |
- | Thorough mode (8 iterations) |
--unified-dashboard |
- | Unified real-time dashboard |
--verbose |
-v |
Enable verbose output |
--watchdog |
- | Service watchdog with auto-restart |
๐ Related Documentation
- Advanced Features: See
docs/README.md- consolidated advanced flags - Developer Guide: CLAUDE.md - AI assistant guidelines and developer commands
Command Reference
Core Workflow Commands:
# Quality checks and development
python -m crackerjack # Quality checks only
python -m crackerjack --run-tests # Quality checks + tests
python -m crackerjack --ai-fix --run-tests # AI auto-fixing + tests (recommended)
# Release workflow
python -m crackerjack --all patch # Full release workflow
python -m crackerjack --publish patch # Version bump + publish
AI-Powered Development:
python -m crackerjack --ai-fix # AI auto-fixing mode
python -m crackerjack --ai-debug --run-tests # AI debugging with verbose output
python -m crackerjack --ai-fix --run-tests --verbose # Full AI workflow
python -m crackerjack --orchestrated # Advanced orchestrated workflow
python -m crackerjack --quick # Quick mode (3 iterations max)
python -m crackerjack --thorough # Thorough mode (8 iterations max)
Monitoring & Observability:
python -m crackerjack --dashboard # Comprehensive monitoring dashboard
python -m crackerjack --unified-dashboard # Unified real-time dashboard
python -m crackerjack --monitor # Multi-project progress monitor
python -m crackerjack --enhanced-monitor # Enhanced monitoring with patterns
python -m crackerjack --watchdog # Service watchdog (auto-restart)
MCP Server Management:
python -m crackerjack --start-mcp-server # Start MCP server
python -m crackerjack --stop-mcp-server # Stop MCP server
python -m crackerjack --restart-mcp-server # Restart MCP server
python -m crackerjack --start-websocket-server # Start WebSocket server
Performance & Caching:
python -m crackerjack --cache-stats # Display cache statistics
python -m crackerjack --clear-cache # Clear all caches
python -m crackerjack --benchmark # Run in benchmark mode
Coverage Management:
python -m crackerjack --coverage-status # Show coverage ratchet status
python -m crackerjack --coverage-goal 85.0 # Set explicit coverage target
python -m crackerjack --no-coverage-ratchet # Disable coverage ratchet temporarily
python -m crackerjack --boost-coverage # Auto-improve test coverage (default)
python -m crackerjack --no-boost-coverage # Disable coverage improvements
Zuban LSP Server Management:
python -m crackerjack --start-zuban-lsp # Start Zuban LSP server
python -m crackerjack --stop-zuban-lsp # Stop Zuban LSP server
python -m crackerjack --restart-zuban-lsp # Restart Zuban LSP server
python -m crackerjack --no-zuban-lsp # Disable automatic LSP startup
python -m crackerjack --zuban-lsp-port 8677 # Custom LSP port
python -m crackerjack --zuban-lsp-mode tcp # Transport mode (tcp/stdio)
python -m crackerjack --zuban-lsp-timeout 30 # LSP operation timeout
python -m crackerjack --enable-lsp-hooks # Enable LSP-optimized hooks
Documentation Generation:
python -m crackerjack --generate-docs # Generate comprehensive API docs
python -m crackerjack --docs-format markdown # Documentation format (markdown/rst/html)
python -m crackerjack --validate-docs # Validate existing documentation
Global Locking & Concurrency:
python -m crackerjack --disable-global-locking # Allow concurrent execution
python -m crackerjack --global-lock-timeout 600 # Lock timeout in seconds
python -m crackerjack --cleanup-stale-locks # Clean stale lock files (default)
python -m crackerjack --no-cleanup-stale-locks # Don't clean stale locks
python -m crackerjack --global-lock-dir ~/.crackerjack/locks # Custom lock directory
Git & Version Control:
python -m crackerjack --no-git-tags # Skip creating git tags
python -m crackerjack --skip-version-check # Skip version consistency verification
Experimental Features:
python -m crackerjack --experimental-hooks # Enable experimental pre-commit hooks
python -m crackerjack --enable-pyrefly # Enable pyrefly type checking (experimental)
python -m crackerjack --enable-ty # Enable ty type verification (experimental)
Common Options:
-i, --interactive: Rich UI interface with better experience-v, --verbose: Detailed output for debugging-c, --commit: Auto-commit and push changes to Git--skip-hooks: Skip quality checks during development iteration--strip-code: Remove docstrings/comments for production--dev: Enable development mode for progress monitors--fast: Run only fast hooks (formatting and basic checks)--comp: Run only comprehensive hooks (type checking, security, complexity)--quick: Quick mode (3 iterations max, ideal for CI/CD)--thorough: Thorough mode (8 iterations max, for complex refactoring)--debug: Enable debug output with detailed information--no-config-update: Do not update configuration files--update-precommit: Update pre-commit hooks configuration
Style Guide
Code Standards:
- Python 3.13+ with modern type hints (
|unions, PEP 695) - No docstrings (self-documenting code)
- Pathlib over os.path
- Protocol-based interfaces
- Cognitive complexity โค15 per function
- UV for dependency management
Publishing & Version Management
๐ Secure PyPI Authentication
Keyring Storage (Most Secure):
# Install keyring support
uv add keyring
# Store token securely
keyring set https://upload.pypi.org/legacy/ __token__
# Enter your PyPI token when prompted
Environment Variable (Alternative):
# For CI/CD or temporary use
export UV_PUBLISH_TOKEN=pypi-your-token-here
# โ ๏ธ Security Warning: Never commit this to git
Environment File (Local Development):
# Create .env file (must be in .gitignore)
echo "UV_PUBLISH_TOKEN=pypi-your-token-here" > .env
echo ".env" >> .gitignore
Version Management
python -m crackerjack --publish patch # 1.0.0 -> 1.0.1
python -m crackerjack --publish minor # 1.0.0 -> 1.1.0
python -m crackerjack --publish major # 1.0.0 -> 2.0.0
๐ก๏ธ Security Considerations
- Token Rotation: Rotate PyPI tokens every 90 days
- Scope Limitation: Use project-scoped tokens when possible
- Access Review: Regularly audit who has publish access
- Backup Tokens: Keep backup tokens in secure location
MCP Integration
AI Agent Support: Crackerjack provides a WebSocket-enabled MCP server for AI agent integration:
# Start WebSocket MCP server on localhost:8675
python -m crackerjack --start-mcp-server
# Monitor job progress via WebSocket
python -m crackerjack.mcp.progress_monitor <job_id> ws://localhost:8675
MCP client configuration (stdio-based):
{
"mcpServers": {
"crackerjack": {
"command": "uvx",
"args": [
"--from",
"/path/to/crackerjack",
"crackerjack",
"--start-mcp-server"
]
}
}
}
WebSocket MCP client configuration:
- Server URL:
ws://localhost:8675 - Protocol: WebSocket-based MCP with real-time progress streaming
- Endpoints:
/ws/progress/{job_id}for live job monitoring
Available tools: execute_crackerjack, get_job_progress, run_crackerjack_stage, analyze_errors, smart_error_analysis, get_next_action, session_management
๐ค Complementary Tools
Session Management MCP Server
For enhanced AI-assisted development with conversation memory and context persistence, consider using the session-mgmt-mcp server alongside Crackerjack:
๐ค Session-mgmt Integration (Enhanced)
Automatic for Git Projects:
- Session management starts automatically
- No manual
/startor/endneeded - Checkpoints auto-compact when necessary
- Works seamlessly with
python -m crackerjack
Benefits of Combined Usage:
- ๐ง Persistent Learning: Session-mgmt remembers your error patterns and successful fixes
- ๐ Context Preservation: Maintains conversation context across Claude sessions
- ๐ Quality Tracking: Monitors your project's quality score evolution over time
- ๐ Workflow Optimization: Learns from your development patterns to suggest improvements
- ๐ฏ Intelligent Coordination: The two servers share insights for smarter assistance
- ๐ Zero Manual Intervention: Fully automatic lifecycle for git repositories
Quick Setup:
{
"mcpServers": {
"crackerjack": {
"command": "python",
"args": ["-m", "crackerjack", "--start-mcp-server"]
},
"session-mgmt": {
"command": "python",
"args": ["-m", "session_mgmt_mcp.server"]
}
}
}
Example Workflow:
# Just start working - session auto-initializes!
python -m crackerjack --ai-fix --run-tests
# Checkpoint periodically (auto-compacts if needed)
/checkpoint
# Quit any way - session auto-saves
/quit # or Cmd+Q, or network disconnect
How They Work Together:
- Crackerjack handles code quality enforcement, testing, and release management
- Session-mgmt maintains AI conversation context and learns from your patterns
- Combined: Creates an intelligent development environment that remembers what works and gets smarter over time
The integration is automatic - session-mgmt includes a comprehensive crackerjack_integration.py module that captures quality metrics, test results, and error patterns for enhanced learning across sessions.
๐ง Troubleshooting
Common Issues
Installation Problems
# UV not found
curl -LsSf https://astral.sh/uv/install.sh | sh
source ~/.bashrc
# Python 3.13+ required
uv python install 3.13
uv python pin 3.13
Authentication Errors
# PyPI token issues
keyring get https://upload.pypi.org/legacy/ __token__ # Verify stored token
keyring set https://upload.pypi.org/legacy/ __token__ # Reset if needed
# Permission denied
chmod +x ~/.local/bin/uv
Hook Failures
# Pre-commit hooks failing
python -m crackerjack --skip-hooks # Skip hooks temporarily
pre-commit clean # Clear hook cache
pre-commit install --force # Reinstall hooks
# Update hooks
python -m crackerjack --update-precommit
# Type checking errors
python -m crackerjack # Run quality checks
MCP Server Issues
# Server won't start
python -m crackerjack --start-mcp-server --verbose
# WebSocket connection issues
# Check if server is running on localhost:8675
netstat -an | grep :8675
# Test WebSocket connectivity
curl -s "http://localhost:8675/" || echo "Server not responding"
Performance Issues
# Slow execution
python -m crackerjack --test-workers 1 # Reduce parallelism
python -m crackerjack --skip-hooks # Skip time-consuming checks
# Memory issues
export UV_CACHE_DIR=/tmp/uv-cache # Use different cache location
Debug Mode
# Enable verbose output
python -m crackerjack --verbose
# Check debug logs (in XDG cache directory)
ls ~/.cache/crackerjack/logs/debug/
# MCP debugging
python -m crackerjack --start-mcp-server --verbose
Getting Help
- GitHub Issues: Report bugs
- Command Help:
python -m crackerjack --help - MCP Tools: Use
get_next_actiontool for guidance
Contributing
- Fork and clone the repository
- Run
uv sync --group devto install dependencies - Ensure
python -m crackerjackpasses all checks - Submit pull request
Requirements: Python 3.13+, UV package manager, all quality checks must pass
License
BSD 3-Clause License - see LICENSE file.
Issues: GitHub Issues Repository: GitHub
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