Metadata-Version: 2.4
Name: mlx-knife
Version: 2.0.4b2
Summary: HuggingFace model management for MLX on Apple Silicon
Author-email: The BROKE team <broke@gmx.eu>
License: Apache-2.0
Project-URL: Homepage, https://github.com/mzau/mlx-knife
Project-URL: Repository, https://github.com/mzau/mlx-knife
Project-URL: Issues, https://github.com/mzau/mlx-knife/issues
Classifier: Development Status :: 4 - Beta
Classifier: Intended Audience :: Developers
Classifier: Topic :: Scientific/Engineering :: Artificial Intelligence
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.9
Classifier: Programming Language :: Python :: 3.10
Classifier: Programming Language :: Python :: 3.11
Classifier: Programming Language :: Python :: 3.12
Classifier: Programming Language :: Python :: 3.13
Classifier: Programming Language :: Python :: 3.14
Classifier: Operating System :: MacOS
Classifier: Environment :: Console
Classifier: License :: OSI Approved :: Apache Software License
Requires-Python: >=3.9
Description-Content-Type: text/markdown
License-File: LICENSE
License-File: mlxk2/NOTICE
Requires-Dist: huggingface-hub<1.0,>=0.34.0
Requires-Dist: requests>=2.32.0
Requires-Dist: mlx-lm>=0.28.4
Requires-Dist: mlx>=0.29.0
Requires-Dist: fastapi>=0.116.0
Requires-Dist: uvicorn>=0.35.0
Requires-Dist: pydantic>=2.11.0
Requires-Dist: httpx>=0.27.0
Provides-Extra: test
Requires-Dist: pytest>=7; extra == "test"
Requires-Dist: jsonschema>=4.20; extra == "test"
Provides-Extra: dev
Requires-Dist: ruff>=0.1.0; extra == "dev"
Requires-Dist: mypy>=1.5.0; extra == "dev"
Provides-Extra: vision
Requires-Dist: mlx-vlm>=0.3.9; extra == "vision"
Dynamic: license-file

# <img src="https://github.com/mzau/mlx-knife/raw/main/broke-logo.png" alt="BROKE Logo" width="60" align="middle"> MLX-Knife 2.0

<p align="center">
  <img src="https://github.com/mzau/mlx-knife/raw/main/mlxk-demo.gif" alt="MLX Knife Demo" width="900">
</p>

**Current Version: 2.0.4-beta.2** (Stable: 2.0.3)

[![GitHub Release](https://img.shields.io/badge/version-2.0.4--beta.2-blue.svg)](https://github.com/mzau/mlx-knife/releases)
[![License: Apache 2.0](https://img.shields.io/badge/License-Apache%202.0-blue.svg)](https://www.apache.org/licenses/LICENSE-2.0)
[![Python 3.9+](https://img.shields.io/badge/python-3.9+-blue.svg)](https://www.python.org/downloads/)
[![Apple Silicon](https://img.shields.io/badge/Apple%20Silicon-green.svg)](https://support.apple.com/en-us/HT211814)
[![MLX](https://img.shields.io/badge/MLX-Latest-orange.svg)](https://github.com/ml-explore/mlx)


## 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
- **Vision Models**: Image analysis (Python 3.10+, alpha)
- **Unix Pipes**: Chain models via stdin/stdout - no temp files (beta)
- **Health Checks**: Verify model integrity and MLX runtime compatibility
- **Cache Management**: Clean up and organize your model storage
- **Privacy & Network**: No background network or telemetry; only explicit Hugging Face interactions when you run pull or the experimental push.

### Unix Pipe Integration (Beta, 2.0.4)
Chain models with standard Unix pipes - no temp files needed:
```bash
export MLXK2_ENABLE_PIPES=1

# Model chaining
cat article.txt | mlx-run translator_model - | mlx-run summarizer_model - "3 bullets"

# Works with Unix tools
mlx-run chat_model "explain quicksort" | tee explanation.txt | head -20
```
Robust handling of SIGPIPE and early pipe termination (`| head`, `| grep -m1`).

### Requirements
- macOS with Apple Silicon
- Python 3.9+ (native macOS version or newer)
- 8GB+ RAM recommended + RAM to run LLM

## ⚖️ Model Usage and Licenses

`mlx-knife` is a **tooling layer** for running ML models (e.g. from Hugging Face) locally.
The project does **not** distribute any model weights and does **not** decide which models you use or how you use them.

Please note:

- Each model (weights, tokenizer, configuration, etc.) is governed by its **own license**.
- When `mlx-knife` downloads a model from a third-party service (e.g. Hugging Face), it does so **on your behalf**.
- **You** are responsible for:
  - reading and understanding the license of each model you use,
  - complying with any restrictions (e.g. *Non-Commercial*, *Research Only*, RAIL, etc.),
  - ensuring that your use of a given model (private, research, commercial, on-prem services, etc.) is legally permitted.

The `mlx-knife` source code itself is provided under the open-source license specified in this repository.
This license applies **only** to the `mlx-knife` code and **does not extend** to any external models.

> This is not legal advice. Always refer to the original model license text and, if necessary, seek professional legal counsel.

### Python Compatibility
MLX Knife has been comprehensively tested and verified on:

✅ **Python 3.9.6 - 3.14** - Text LLMs fully supported (mlx-lm 0.28.4+)
✅ **Python 3.10 - 3.14** - Vision models supported (mlx-vlm 0.3.9+)

**Note:** Vision features require Python 3.10+. Native macOS Python 3.9.6 users need to upgrade (e.g., via Homebrew).



## Installation

### Via PyPI (Recommended)

```bash
# Basic installation (Text models only, Python 3.9+)
pip install mlx-knife

# With Vision support (Python 3.10+ required)
pip install mlx-knife[vision]

# Verify installation
mlxk --version  # → mlxk 2.0.3 (stable) or 2.0.4-beta.2 (dev)
```

**Python Requirements:**
- **Text models:** Python 3.9-3.14
- **Vision models:** Python 3.10-3.14 (requires `mlx-vlm>=0.3.9`)

### Development Installation

```bash
# Clone and install from source
git clone https://github.com/mzau/mlx-knife.git
cd mlx-knife

# Install with all development dependencies (required for testing and code quality)
pip install -e ".[dev,test]"

# With Vision support (optional)
pip install -e ".[dev,test,vision]"

# Verify installation
mlxk --version  # → mlxk 2.0.4-beta.2

# Run tests and quality checks (before committing)
pytest -v
ruff check mlxk2/ --fix
mypy mlxk2/
```

**Note:** For minimal user installation without dev tools: `pip install -e .`

### Migrating from 1.x

If you're upgrading from MLX Knife 1.x, see [MIGRATION.md](MIGRATION.md) for important information about the license change (MIT → Apache 2.0) and behavior changes.


## Quick Start

```bash
# List models (human-readable)
mlxk list
mlxk list --health
mlxk list --verbose --health

# Check cache health
mlxk health

# Show model details
mlxk show "mlx-community/Phi-3-mini-4k-instruct-4bit"

# Pull a model
mlxk pull "mlx-community/Llama-3.2-3B-Instruct-4bit"

# Run interactive chat
mlxk run "Phi-3-mini" -c

# Start OpenAI-compatible server
mlxk serve --port 8080
```

## Web Interface

For a web-based chat UI, use **[nChat](https://github.com/mzau/broke-nchat)** - a lightweight web interface for the BROKE ecosystem:

```bash
# Clone once (local setup):
git clone https://github.com/mzau/broke-nchat.git
cd broke-nchat

# Start mlx-knife server:
mlxk serve

# Open web UI:
open index.html
```

**On-Prem:** Pure HTML/CSS/JS - runs entirely locally, zero dependencies.

**Note:** nChat is a separate project designed for the entire BROKE ecosystem (MLX Knife + BROKE Cluster). See [nChat README](https://github.com/mzau/broke-nchat/blob/main/README.md) for CORS configuration.


## Commands

| Command | Description |
|---------|-------------|
| `server`/`serve` | OpenAI-compatible API server; SIGINT-robust (Supervisor); SSE streaming |
| `run` | Interactive and single-shot model execution with streaming/batch modes |
| `list` | Model discovery with JSON output |
| `health` | Corruption detection and cache analysis |
| `show` | Detailed model information with --files, --config |
| `pull` | HuggingFace model downloads with corruption detection |
| `rm` | Model deletion with lock cleanup and fuzzy matching |
| 🔒 `push` | **Alpha feature** - Upload to HuggingFace Hub; requires `MLXK2_ENABLE_ALPHA_FEATURES=1` |
| 🔒 `clone` | **Alpha feature** - Model workspace cloning; requires `MLXK2_ENABLE_ALPHA_FEATURES=1` |
| 🔒 `pipe mode` | **Beta feature** - Unix pipes with `mlxk run <model> - ...`; requires `MLXK2_ENABLE_PIPES=1` |



## JSON API

> **📋 Complete API Specification**: See [JSON API Specification](docs/json-api-specification.md) for comprehensive schema, error codes, and examples.

All commands support both human-readable and JSON output (`--json` flag) for automation and scripting, enabling seamless integration with CI/CD pipelines and cluster management systems.

### Command Structure

All commands support JSON output via `--json` flag:

```bash
mlxk list --json | jq '.data.models[].name'
mlxk health --json | jq '.data.summary'
mlxk show "Phi-3-mini" --json | jq '.data.model'
```

**Response Format:**
```json
{
    "status": "success|error",
    "command": "list|health|show|pull|rm|clone|version|push|run|server",
    "data": { /* command-specific data */ },
    "error": null | { "type": "...", "message": "..." }
}
```

### Examples

#### Pipe mode (Alpha: set `MLXK2_ENABLE_PIPES=1`)

```bash
# Read prompt from stdin and append trailing text (auto batch in pipes)
echo "from stdin" | MLXK2_ENABLE_PIPES=1 mlxk run "<model>" - "append extra context"

# JSON interactive guard (no prompt) emits JSON error on stdout, exit!=0
MLXK2_ENABLE_PIPES=1 mlxk run "<model>" --json

# Pipe list JSON into run for summarization
MLXK2_ENABLE_PIPES=1 mlxk list --json \
  | MLXK2_ENABLE_PIPES=1 mlxk run "<model>" - "Summarize the model list as a concise table."

# Shortcut wrapper (same semantics)
MLXK2_ENABLE_PIPES=1 mlx-run "<model>" - "translate into german" < README.md
```

Notes:
- Stdin requires `MLXK2_ENABLE_PIPES=1` (alpha gate). Without it, `-` is rejected.
- When stdout is a pipe (non-TTY), streaming is disabled automatically to keep clean output.
- Use full model IDs in place of `<model>`; HF_HOME should point to your cache for live runs.

#### List Models
```bash
mlxk list --json
# Output:
{
  "status": "success",
  "command": "list",
  "data": {
    "models": [
      {
        "name": "mlx-community/Phi-3-mini-4k-instruct-4bit",
        "hash": "a5339a41b2e3abcdef1234567890ab12345678ef",
        "size_bytes": 4613734656,
        "last_modified": "2024-10-15T08:23:41Z",
        "framework": "MLX",
        "model_type": "chat",
        "capabilities": ["text-generation", "chat"],
        "health": "healthy",
        "runtime_compatible": true,
        "reason": null,
        "cached": true
      }
    ],
    "count": 1
  },
  "error": null
}
```

#### Health Check
```bash
mlxk health --json
# Output:
{
  "status": "success",
  "command": "health",
  "data": {
    "healthy": [
      {
        "name": "mlx-community/Phi-3-mini-4k-instruct-4bit",
        "status": "healthy",
        "reason": "Model is healthy"
      }
    ],
    "unhealthy": [],
    "summary": { "total": 1, "healthy_count": 1, "unhealthy_count": 0 }
  },
  "error": null
}
```

#### Show Model Details
```bash
mlxk show "Phi-3-mini" --json --files
# Output (simplified):
{
  "status": "success",
  "command": "show",
  "data": {
    "model": {
      "name": "mlx-community/Phi-3-mini-4k-instruct-4bit",
      "hash": "a5339a41b2e3abcdefgh1234567890ab12345678",
      "size_bytes": 4613734656,
      "framework": "MLX",
      "model_type": "chat",
      "capabilities": ["text-generation", "chat"],
      "last_modified": "2024-10-15T08:23:41Z",
      "health": "healthy",
      "runtime_compatible": true,
      "reason": null,
      "cached": true
    },
    "files": [
      {"name": "config.json", "size": "1.2KB", "type": "config"},
      {"name": "model.safetensors", "size": "2.3GB", "type": "weights"}
    ],
    "metadata": null
  },
  "error": null
}
```

### Hash Syntax Support

All commands support `@hash` syntax for specific model versions:

```bash
mlxk health "Qwen3@e96" --json     # Check specific hash
mlxk show "model@3df9bfd" --json   # Short hash matching
mlxk rm "Phi-3@e967" --json --force  # Delete specific version
```

### Integration Examples

#### Broke-Cluster Integration
```bash
# Get available model names for scheduling
MODELS=$(mlxk list --json | jq -r '.data.models[].name')

# Check cache health before deployment
HEALTH=$(mlxk health --json | jq '.data.summary.healthy_count')
if [ "$HEALTH" -eq 0 ]; then
    echo "No healthy models available"
    exit 1
fi

# Download required models
mlxk pull "mlx-community/Phi-3-mini-4k-instruct-4bit" --json
```

#### CI/CD Pipeline Usage
```bash
# Verify model integrity in CI
mlxk health --json | jq -e '.data.summary.unhealthy_count == 0'

# Clean up CI artifacts
mlxk rm "test-model-*" --json --force

# Pre-warm cache for deployment
mlxk pull "production-model" --json
```

#### Model Management Automation
```bash
# Find models by pattern
LARGE_MODELS=$(mlxk list --json | jq -r '.data.models[] | select(.name | contains("30B")) | .name')

# Show detailed info for analysis
for model in $LARGE_MODELS; do
    mlxk show "$model" --json --config | jq '.data.model_config'
done
```


## Human Output

MLX Knife provides rich human-readable output by default (without `--json` flag).

**Error Handling (2.0.3+):** Errors print to stderr for clean pipe workflows:
```bash
mlxk show badmodel | grep ...      # Errors don't contaminate stdout
mlxk pull badmodel > log 2> err    # Capture errors separately
```

### Basic Usage

```bash
mlxk list
mlxk list --health
mlxk health
mlxk show "mlx-community/Phi-3-mini-4k-instruct-4bit"
```

### List Filters

- `list`: Shows MLX chat models only (compact names, safe default)
- `list --verbose`: Shows all MLX models (chat + base) with full org/names and Framework column
- `list --all`: Shows all frameworks (MLX, GGUF, PyTorch)
- Flags are combinable: `--all --verbose`, `--all --health`, `--verbose --health`

### Health Status Display (--health flag)

The `--health` flag adds health status information to the output:

**Compact mode** (default, `--all`):
- Shows single "Health" column with values:
  - `healthy` - File integrity OK and MLX runtime compatible
  - `healthy*` - File integrity OK but not MLX runtime compatible (use `--verbose` for details)
  - `unhealthy` - File integrity failed or unknown format

**Verbose mode** (`--verbose --health`):
- Splits into "Integrity" and "Runtime" columns:
  - **Integrity:** `healthy` / `unhealthy`
  - **Runtime:** `yes` / `no` / `-` (dash = gate blocked by failed integrity)
  - **Reason:** Explanation when problems detected (wrapped at 26 chars for readability)

**Examples:**

```bash
# Compact health view
mlxk list --health
# Output:
# Name                    | Hash    | Size   | Modified | Type | Health
# Llama-3.2-3B-Instruct   | a1b2c3d | 2.1GB  | 2d ago   | chat | healthy
# Qwen2-7B-Instruct       | 1a2b3c4 | 4.8GB  | 3d ago   | chat | healthy*

# Verbose health view with details
mlxk list --verbose --health
# Output:
# Name                    | Hash    | Size   | Modified | Framework | Type | Integrity | Runtime | Reason
# Llama-3.2-3B-Instruct   | a1b2c3d | 2.1GB  | 2d ago   | MLX       | chat | healthy   | yes     | -
# Qwen2-7B-Instruct       | 1a2b3c4 | 4.8GB  | 3d ago   | PyTorch   | chat | healthy   | no      | Incompatible: PyTorch

# All frameworks with health status
mlxk list --all --health
# Output:
# Name                    | Hash    | Size   | Modified | Framework | Type    | Health
# Llama-3.2-3B-Instruct   | a1b2c3d | 2.1GB  | 2d ago   | MLX       | chat    | healthy
# llama-3.2-gguf-q4       | b2c3d4e | 1.8GB  | 3d ago   | GGUF      | unknown | healthy*
# broken-download         | -       | 500MB  | 1h ago   | Unknown   | unknown | unhealthy
```

**Design Philosophy:**
- `unhealthy` is a catch-all for anything not understood/supported (broken downloads, unknown formats, creative HuggingFace structures)
- `healthy` guarantees the model will work with `mlxk2 run`
- `healthy*` means files are intact but MLX runtime can't execute them (e.g., GGUF/PyTorch models, incompatible model_type, or mlx-lm version too old)

Note: JSON output is unaffected by these human-only filters and always includes full health/runtime data.


## Logging & Debugging

MLX Knife 2.0 provides structured logging with configurable output formats and levels.

### Log Levels

Control verbosity with `--log-level` (server mode):

```bash
# Default: Show startup, model loading, and errors
mlxk serve --log-level info

# Quiet: Only warnings and errors
mlxk serve --log-level warning

# Silent: Only errors
mlxk serve --log-level error

# Verbose: All logs including HTTP requests
mlxk serve --log-level debug
```

**Log Level Behavior:**
- `debug`: All logs + Uvicorn HTTP access logs (`GET /v1/models`, etc.)
- `info`: Application logs (startup, model switching, errors) + HTTP access logs
- `warning`: Only warnings and errors (no startup messages, no HTTP access logs)
- `error`: Only error messages

### JSON Logs (Machine-Readable)

Enable structured JSON output for log aggregation tools:

```bash
# JSON logs (recommended - CLI flag)
mlxk serve --log-json

# JSON logs (alternative - environment variable)
MLXK2_LOG_JSON=1 mlxk serve
```

**Note:** `--log-json` also formats Uvicorn access logs as JSON for consistent output.

**JSON Format:**
```json
{"ts": 1760830072.96, "level": "INFO", "msg": "MLX Knife Server 2.0 starting up..."}
{"ts": 1760830073.14, "level": "INFO", "msg": "Switching to model: mlx-community/...", "model": "..."}
{"ts": 1760830074.52, "level": "ERROR", "msg": "Model type bert not supported.", "logger": "root"}
```

**Fields:**
- `ts`: Unix timestamp
- `level`: Log level (INFO, WARN, ERROR, DEBUG)
- `msg`: Log message (HF tokens and user paths automatically redacted)
- `logger`: Source logger (`mlxk2` = application, `root` = external libraries like mlx-lm)
- Additional fields: `model`, `request_id`, `detail`, `duration_ms` (context-dependent)

### Security: Automatic Redaction

**Sensitive data is automatically removed from logs:**
- HuggingFace tokens (`hf_...`) → `[REDACTED_TOKEN]`
- User home paths (`/Users/john/...`) → `~/...`

**Example:**
```bash
# Original (unsafe):
Using token hf_AbCdEfGhIjKlMnOpQrStUvWxYz123456 from /Users/john/models

# Logged (safe):
Using token [REDACTED_TOKEN] from ~/models
```


## Configuration Reference

MLX Knife supports comprehensive runtime configuration via environment variables. All settings can be controlled without code changes.

### Feature Gates

Enable experimental and alpha features:

| Variable | Description | Default | Since |
|----------|-------------|---------|-------|
| `MLXK2_ENABLE_ALPHA_FEATURES` | Enable alpha commands (`clone`, `push`) | `0` (disabled) | 2.0.0 |
| `MLXK2_ENABLE_PIPES` | Enable Unix pipe integration (`mlxk run <model> -`) | `0` (disabled) | 2.0.4 |
| `MLXK2_EXIF_METADATA` | Extract EXIF metadata from images (Vision models) | `1` (enabled) | 2.0.4 |

**Examples:**
```bash
# Enable pipe mode for stdin processing
export MLXK2_ENABLE_PIPES=1
echo "Hello" | mlxk run model - "translate to Spanish"

# Disable EXIF extraction for privacy (enabled by default)
export MLXK2_EXIF_METADATA=0
mlxk run vision-model --image photo.jpg "describe this"

# Enable alpha features for development
export MLXK2_ENABLE_ALPHA_FEATURES=1
mlxk clone model-name ./workspace
mlxk push ./workspace org/model --private --create
```

### Server Configuration

Control server behavior without command-line flags:

| Variable | Description | Default | Since |
|----------|-------------|---------|-------|
| `MLXK2_HOST` | Server bind address | `127.0.0.1` | 2.0.0 |
| `MLXK2_PORT` | Server port | `8000` | 2.0.0 |
| `MLXK2_PRELOAD_MODEL` | Model to load at startup (set by `--model` flag) | (none) | 2.0.0-beta |
| `MLXK2_MAX_TOKENS` | Override default max_tokens for all requests | (auto) | 2.0.4 |
| `MLXK2_RELOAD` | Enable Uvicorn auto-reload (development only) | `0` (disabled) | 2.0.0 |

**Examples:**
```bash
# Custom host/port binding
MLXK2_HOST=0.0.0.0 MLXK2_PORT=9000 mlxk serve

# Preload model for faster first request
MLXK2_PRELOAD_MODEL="mlx-community/Qwen2.5-3B-Instruct-4bit" mlxk serve

# Override max_tokens for all requests
MLXK2_MAX_TOKENS=4096 mlxk serve

# Development mode with auto-reload
MLXK2_RELOAD=1 mlxk serve
```

### Logging Configuration

Control log output format and verbosity:

| Variable | Description | Default | Since |
|----------|-------------|---------|-------|
| `MLXK2_LOG_JSON` | Enable JSON log format | `0` (text) | 2.0.0 |
| `MLXK2_LOG_LEVEL` | Log level (`debug`, `info`, `warning`, `error`) | `info` | 2.0.0 |

**Examples:**
```bash
# JSON logs for log aggregation tools
MLXK2_LOG_JSON=1 mlxk serve

# Quiet mode (warnings and errors only)
MLXK2_LOG_LEVEL=warning mlxk serve

# Verbose debug output
MLXK2_LOG_LEVEL=debug mlxk serve
```

**Note:** CLI flags (`--log-json`, `--log-level`) take precedence over environment variables.

### HuggingFace Integration

Control HuggingFace Hub authentication and cache:

| Variable | Description | Default | Since |
|----------|-------------|---------|-------|
| `HF_HOME` | HuggingFace cache directory | `~/.cache/huggingface` | N/A |
| `HF_TOKEN` | HuggingFace API token (for private models, `push`) | (none) | N/A |
| `HUGGINGFACE_HUB_TOKEN` | Alternative token variable (fallback) | (none) | N/A |

**Examples:**
```bash
# Custom cache location
HF_HOME=/data/models mlxk list

# Authentication for private models
HF_TOKEN=hf_... mlxk pull org/private-model

# Upload to HuggingFace Hub (requires MLXK2_ENABLE_ALPHA_FEATURES=1)
HF_TOKEN=hf_... mlxk push ./workspace org/model --private
```

### Configuration Priority

When multiple sources define the same setting, precedence order is:

1. **CLI flags** (highest priority) - e.g., `--log-json`, `--port`
2. **Environment variables** - e.g., `MLXK2_LOG_JSON=1`
3. **Defaults** (lowest priority) - documented above

**Example:**
```bash
# CLI flag wins over environment variable
MLXK2_PORT=9000 mlxk serve --port 8080  # Uses port 8080, not 9000
```


## HuggingFace Cache Safety

MLX-Knife 2.0 respects standard HuggingFace cache structure and practices:

### Best Practices for Shared Environments
- **Read operations** (`list`, `health`, `show`) always safe with concurrent processes
- **Write operations** (`pull`, `rm`) coordinate during maintenance windows
- **Lock cleanup** automatic but avoid during active downloads
- **Your responsibility:** Coordinate with team, use good timing

### Example Safe Workflow
```bash
# Check what's in cache (always safe)
mlxk list --json | jq '.data.count'

# Maintenance window - coordinate with team
mlxk rm "corrupted-model" --json --force
mlxk pull "replacement-model" --json

# Back to normal operations
mlxk health --json | jq '.data.summary'
```


## Hidden Alpha Features: `clone`, `push`, and pipe mode

### `clone` - Model Workspace Creation

`mlxk clone` is a hidden alpha feature. Enable with `MLXK2_ENABLE_ALPHA_FEATURES=1`. It creates a local workspace from a cached model for modification and development.

- Creates isolated workspace from cached models
- Supports APFS copy-on-write optimization on same-volume scenarios
- Includes health check integration for workspace validation
- Use case: Fork-modify-push workflows

Example:
```bash
# Enable alpha features
export MLXK2_ENABLE_ALPHA_FEATURES=1

# Clone model to workspace
mlxk clone org/model ./workspace
```

### `push` - Upload to Hub

`mlxk push` is a hidden alpha feature. Enable with `MLXK2_ENABLE_ALPHA_FEATURES=1`. It uploads a local folder to a Hugging Face model repository using `huggingface_hub/upload_folder`.

- Requires `HF_TOKEN` (write-enabled).
- Default branch: `main` (explicitly override with `--branch`).
- Safety: `--private` is required to avoid accidental public uploads.
- No validation or manifests. Basic hard excludes are applied by default: `.git/**`, `.DS_Store`, `__pycache__/`, common virtualenv folders (`.venv/`, `venv/`), and `*.pyc`.
- `.hfignore` (gitignore-like) in the workspace is supported and merged with the defaults.
- Repo creation: use `--create` if the target repo does not exist; harmless on existing repos. Missing branches are created during upload.
- JSON output: includes `commit_sha`, `commit_url`, `no_changes`, `uploaded_files_count` (when available), `local_files_count` (approx), `change_summary` and a short `message`.
- Quiet JSON by default: with `--json` (without `--verbose`) progress bars/console logs are suppressed; hub logs are still captured in `data.hf_logs`.
- Human output: derived from JSON; add `--verbose` to include extras such as the commit URL or a short message variant. JSON schema is unchanged.
- Local workspace check: use `--check-only` to validate a workspace without uploading. Produces `workspace_health` in JSON (no token/network required).
- Dry-run planning: use `--dry-run` to compute a plan vs remote without uploading. Returns `dry_run: true`, `dry_run_summary {added, modified:null, deleted}`, and sample `added_files`/`deleted_files`.
- Testing: see TESTING.md ("Push Testing (2.0)") for offline tests and opt-in live checks with markers/env.
- Intended for early testers only. Carefully review the result on the Hub after pushing.
- Responsibility: **You are responsible for complying with Hugging Face Hub policies and applicable laws (e.g., copyright/licensing) for any uploaded content.**

Example:
```bash
# Enable alpha features
export MLXK2_ENABLE_ALPHA_FEATURES=1

# Use push command
mlxk push --private ./workspace org/model --create --commit "init"
```

These features are not final and may change or be removed in future releases.

### `pipe mode` - stdin for `run` (beta, `mlx-run` shorthand)

Pipe mode is beta (feature complete) and requires `MLXK2_ENABLE_PIPES=1`. It lets `mlxk run` (and `mlx-run`) read stdin when you pass `-` as the prompt.

- Gate: `MLXK2_ENABLE_PIPES=1` (will become default in a future stable release).
- Auto-batch: When stdout is a pipe (non-TTY), streaming is disabled automatically for clean output.
- Robust: Handles SIGPIPE and BrokenPipeError gracefully (`| head`, `| grep -m1` work correctly).
- Scope: Applies to `mlxk run` and `mlx-run`; other commands unchanged.
- Usage examples (replace `<model>` with a cached MLX chat model):

```bash
# stdin + trailing text (batch when piped)
MLXK2_ENABLE_PIPES=1 echo "from stdin" | mlxk run "<model>" - "append extra context"

# JSON interactive guard (no prompt) → JSON error on stdout, exit 1
MLXK2_ENABLE_PIPES=1 mlxk run "<model>" --json

# list → run summarization
MLXK2_ENABLE_PIPES=1 mlxk list --json \
  | MLXK2_ENABLE_PIPES=1 mlxk run "<model>" - "Summarize the model list as a concise table."

# Wrapper shorthand
MLXK2_ENABLE_PIPES=1 mlx-run "<model>" - "translate into german" < README.md
```

Pipe mode API is stable.

### `vision` - mlx-vlm (Python 3.10+, non-streaming)

- Install extras: `pip install -e .[vision]` (requires `mlx-vlm>=0.3.9` from PyPI, Python 3.10+).
- Backend: Uses `mlx-vlm` (vision); streaming is disabled for vision runs.
- Usage:
  - Text-only on a vision model: `mlxk run "mlx-community/Llama-3.2-11B-Vision-Instruct-4bit" "what is 2+2"`
  - Image + text: `mlxk run "<vision-model>" --image cat.jpg "describe the cat"`
  - Image-only (auto prompt): `mlxk run "<vision-model>" --image cat.jpg`


## Testing

The 2.0 test suite runs by default (pytest discovery points to `tests_2.0/`):

```bash
# Run 2.0 tests (default)
pytest -v

# Explicitly run legacy 1.x tests (not maintained on this branch)
pytest tests/ -v

# Test categories (2.0 example):
# - ADR-002 edge cases
# - Integration scenarios
# - Model naming logic
# - Robustness testing

# Current status: all current 2.0 tests pass (some optional schema tests may be skipped without extras)
```

**Test Architecture:**
- **Isolated Cache System** - Zero risk to user data
- **Atomic Context Switching** - Production/test cache separation
- **Mock Models** - Realistic test scenarios
- **Edge Case Coverage** - All documented failure modes tested


## Compatibility Notes

- Streaming note: Some UIs buffer SSE; verify real-time with `curl -N`. Server sends clear interrupt markers on abort.


## Contributing

This branch follows the established MLX-Knife development patterns:

```bash
# Run quality checks
python test-multi-python.sh  # Tests across Python 3.9-3.14
./run_linting.sh             # Code quality validation

# Key files:
mlxk2/                       # 2.0.0 implementation
tests_2.0/                   # 2.0 test suite
docs/ADR/                    # Architecture decision records
```

See [CONTRIBUTING.md](CONTRIBUTING.md) for detailed guidelines.


## Support & Feedback

- **Issues**: [GitHub Issues](https://github.com/mzau/mlx-knife/issues)
- **Discussions**: [GitHub Discussions](https://github.com/mzau/mlx-knife/discussions)
- **API Specification**: [JSON API Specification](docs/json-api-specification.md)
- **Documentation**: See `docs/` directory for technical details
- **Security Policy**: See [SECURITY.md](SECURITY.md)


## License

Apache License 2.0 — see `LICENSE` (root) and `mlxk2/NOTICE`.


## Acknowledgments

- Built for Apple Silicon using the [MLX framework](https://github.com/ml-explore/mlx)
- Models hosted by the [MLX Community](https://huggingface.co/mlx-community) on HuggingFace
- Inspired by [ollama](https://ollama.ai)'s user experience

---

<p align="center">
  <b>Made with ❤️ by The BROKE team <img src="broke-logo.png" alt="BROKE Logo" width="30" align="middle"></b><br>
  <i>Version 2.0.4-beta.2 | December 2025</i><br>
  <a href="https://github.com/mzau/broke-nchat">💬 Web UI: nChat - lightweight chat interface</a> •
  <a href="https://github.com/mzau/broke-cluster">🔮 Multi-node: BROKE Cluster</a>
</p>
