ollama-style CLI for MLX models on Apple Silicon
Project description
MLX Knife
A lightweight, ollama-like CLI for managing and running MLX models on Apple Silicon. CLI-only tool designed for personal, local use - perfect for individual developers and researchers working with MLX models.
Note: MLX Knife is designed as a command-line interface tool only. While some internal functions are accessible via Python imports, only CLI usage is officially supported.
Current Version: 1.1.0-beta3 (August 2025)
- Issue #21: Fixed empty cache directory crash -
mlxk listnow works on fresh installations - Issue #22: Suppressed urllib3 LibreSSL warnings on macOS Python 3.9
- Issue #23: Fixed double execution requirement in
mlxk rmcommand with enhanced lock cleanup
Features
Core Functionality
- List & Manage Models: Browse your HuggingFace cache with MLX-specific filtering
- Model Information: Detailed model metadata including quantization info
- Download Models: Pull models from HuggingFace with progress tracking
- Run Models: Native MLX execution with streaming and chat modes
- Health Checks: Verify model integrity and completeness
- Cache Management: Clean up and organize your model storage
Local Server & Web Interface
- OpenAI-Compatible API: Local REST API with
/v1/chat/completions,/v1/completions,/v1/models - Web Chat Interface: Built-in HTML chat interface with markdown rendering
- Single-User Design: Optimized for personal use, not multi-user production environments
- Conversation Context: Full chat history maintained for follow-up questions
- Streaming Support: Real-time token streaming via Server-Sent Events
- Configurable Limits: Set default max tokens via
--max-tokensparameter - Model Hot-Swapping: Switch between models per conversation
- Tool Integration: Compatible with OpenAI-compatible clients (Cursor IDE, etc.)
Run Experience
- Direct MLX Integration: Models load and run natively without subprocess overhead
- Real-time Streaming: Watch tokens generate with proper spacing and formatting
- Interactive Chat: Full conversational mode with history tracking
- Memory Insights: See GPU memory usage after model loading and generation
- Dynamic Stop Tokens: Automatic detection and filtering of model-specific stop tokens
- Customizable Generation: Control temperature, max_tokens, top_p, and repetition penalty
- Context-Managed Memory: Context manager pattern ensures automatic cleanup and prevents memory leaks
- Exception-Safe: Robust error handling with guaranteed resource cleanup
Installation
Via PyPI (Recommended)
pip install mlx-knife
Requirements
- macOS with Apple Silicon (M1/M2/M3)
- Python 3.9+ (native macOS version or newer)
- 8GB+ RAM recommended + RAM to run LLM
Python Compatibility
MLX Knife has been comprehensively tested and verified on:
✅ Python 3.9.6 (native macOS) - Primary target
✅ Python 3.10-3.13 - Fully compatible
All versions include full MLX model execution testing with real models.
Install from Source
# Clone the repository
git clone https://github.com/mzau/mlx-knife.git
cd mlx-knife
# Install in development mode
pip install -e .
# Or install normally
pip install .
# Install with development tools (ruff, mypy, tests)
pip install -e ".[dev,test]"
Install Dependencies Only
pip install -r requirements.txt
Quick Start
CLI Usage
# List all MLX models in your cache
mlxk list
# Show detailed info about a model
mlxk show Phi-3-mini-4k-instruct-4bit
# Download a new model
mlxk pull mlx-community/Mistral-7B-Instruct-v0.3-4bit
# Run a model with a prompt
mlxk run Phi-3-mini "What is the capital of France?"
# Start interactive chat
mlxk run Phi-3-mini
# Check model health
mlxk health
Web Chat Interface
MLX Knife includes a built-in web interface for easy model interaction:
# Start the OpenAI-compatible API server
mlxk server --port 8000 --max-tokens 4000
# Get web chat interface from GitHub
curl -O https://raw.githubusercontent.com/mzau/mlx-knife/main/simple_chat.html
# Open web chat interface in your browser
open simple_chat.html
Features:
- No installation required - Pure HTML/CSS/JS
- Real-time streaming - Watch tokens appear as they're generated
- Model selection - Choose any MLX model from your cache
- Conversation history - Full context for follow-up questions
- Markdown rendering - Proper formatting for code, lists, tables
- Mobile-friendly - Responsive design works on all devices
Local API Server Integration
The MLX Knife server provides OpenAI-compatible endpoints for local development and personal use:
# Start local server (single-user, no authentication)
mlxk server --host 127.0.0.1 --port 8000
# Test with curl
curl -X POST "http://localhost:8000/v1/chat/completions" \
-H "Content-Type: application/json" \
-d '{"model": "Phi-3-mini-4k-instruct-4bit", "messages": [{"role": "user", "content": "Hello!"}]}'
# Integration with development tools (community-tested):
# - Cursor IDE: Set API URL to http://localhost:8000/v1
# - LibreChat: Configure as custom OpenAI endpoint
# - Open WebUI: Add as local OpenAI-compatible API
# - SillyTavern: Add as OpenAI API with custom URL
Note: Tool integrations are community-tested. Some tools may require specific configuration or have compatibility limitations. Please report issues via GitHub.
Command Reference
Available Commands
list - Browse Models
mlxk list # Show MLX models only (short names)
mlxk list --verbose # Show MLX models with full paths
mlxk list --all # Show all models with framework info
mlxk list --all --verbose # All models with full paths
mlxk list --health # Include health status
mlxk list Phi-3 # Filter by model name
mlxk list --verbose Phi-3 # Show detailed info (same as show)
show - Model Details
mlxk show <model> # Display model information
mlxk show <model> --files # Include file listing
mlxk show <model> --config # Show config.json content
pull - Download Models
mlxk pull <model> # Download from HuggingFace
mlxk pull <org>/<model> # Full model path
run - Execute Models
mlxk run <model> "prompt" # Single prompt (minimal output)
mlxk run <model> "prompt" --verbose # Show loading, memory, and stats
mlxk run <model> # Interactive chat
mlxk run <model> "prompt" --no-stream # Batch output
mlxk run <model> --max-tokens 1000 # Custom length
mlxk run <model> --temperature 0.9 # Higher creativity
mlxk run <model> --no-chat-template # Raw completion mode
rm - Remove Models
mlxk rm <model> # Delete model with cache cleanup confirmation
mlxk rm <model>@<hash> # Delete specific version (removes entire model)
mlxk rm <model> --force # Skip confirmations, auto-cleanup cache files
Features:
- Removes entire model directory (not just snapshots)
- Cleans up orphaned HuggingFace lock files
- Handles corrupted models gracefully
- Smart prompting (only asks about cache cleanup if needed)
health - Check Integrity
mlxk health # Check all models
mlxk health <model> # Check specific model
server - Start API Server
mlxk server # Start on localhost:8000
mlxk server --port 8001 # Custom port
mlxk server --host 0.0.0.0 --port 8000 # Allow external access
mlxk server --max-tokens 4000 # Set default max tokens (default: 2000)
mlxk server --reload # Development mode with auto-reload
Command Aliases
After installation, these commands are equivalent:
mlxk(recommended)mlx-knifemlx_knife
Configuration
Cache Location
By default, models are stored in ~/.cache/huggingface/hub. Configure with:
# Set custom cache location
export HF_HOME="/path/to/your/cache"
# Example: External SSD
export HF_HOME="/Volumes/ExternalSSD/models"
Model Name Expansion
Short names are automatically expanded for MLX models:
Phi-3-mini-4k-instruct-4bit→mlx-community/Phi-3-mini-4k-instruct-4bit- Models already containing
/are used as-is
Advanced Usage
Generation Parameters
# Creative writing (high temperature, diverse output)
mlxk run Mistral-7B "Write a story" --temperature 0.9 --top-p 0.95
# Precise tasks (low temperature, focused output)
mlxk run Phi-3-mini "Extract key points" --temperature 0.3 --top-p 0.9
# Long-form generation
mlxk run Mixtral-8x7B "Explain quantum computing" --max-tokens 2000
# Reduce repetition
mlxk run model "prompt" --repetition-penalty 1.2
Working with Specific Commits
# Use specific model version
mlxk show model@commit_hash
mlxk run model@commit_hash "prompt"
Non-MLX Model Handling
The tool automatically detects framework compatibility:
# Attempting to run PyTorch model
mlxk run bert-base-uncased
# Error: Model bert-base-uncased is not MLX-compatible (Framework: PyTorch)!
# Use MLX-Community models: https://huggingface.co/mlx-community
Troubleshooting
Model Not Found
# If model isn't found, try full path
mlxk pull mlx-community/Model-Name-4bit
# List available models
mlxk list --all
Performance Issues
- Ensure sufficient RAM for model size
- Close other applications to free memory
- Use smaller quantized models (4-bit recommended)
Streaming Issues
- Some models may have spacing issues - this is handled automatically
- Use
--no-streamfor batch output if needed
Contributing
Contributions are welcome! Please see CONTRIBUTING.md for development setup and guidelines.
Security
For security concerns, please see SECURITY.md or contact us at broke@gmx.eu.
MLX Knife runs entirely locally - no data is sent to external servers except when downloading models from HuggingFace.
License
MIT License - see LICENSE file for details
Copyright (c) 2025 The BROKE team 🦫
Acknowledgments
- Built for Apple Silicon using the MLX framework
- Models hosted by the MLX Community on HuggingFace
- Inspired by ollama's user experience
Made with ❤️ by The BROKE team
Version 1.1.0-beta3 | August 2025
🔮 Next: BROKE Cluster for multi-node deployments
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