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Python toolkit for ML, CV, NLP and multimodal AI development

Project description

maque (麻雀)

Python toolkit for ML, CV, NLP and multimodal AI development

PyPI version License tests pypi downloads


Features

  • MLLM Processing - Batch image analysis with OpenAI/Gemini compatible APIs
  • LLM Server - Local LLM inference with Transformers backend
  • Model Quantization - Support auto-round, AWQ, GPTQ, BNB quantization methods
  • Embedding Service - Text/multimodal embedding API server
  • Clustering Pipeline - UMAP + HDBSCAN for vector clustering and visualization
  • Async Executor - Priority queue-based concurrent task execution with retry
  • Rich CLI - Modular command groups for various tasks

Installation

# Basic installation
pip install maque

# With specific feature sets
pip install maque[torch,nlp,cv]          # ML/NLP/CV features
pip install maque[clustering,embedding]  # ML pipeline features
pip install maque[quant]                 # Model quantization support
pip install maque[dev,test]              # Development setup

# From source
pip install -e .
pip install -e .[dev,test]

CLI Usage

Commands are organized into groups: maque <group> <command>. Short alias mq is also available.

Config Management

maque config show                 # Show current configuration
maque config edit                 # Open config in editor
maque config init                 # Initialize config file

MLLM (Multimodal LLM)

# Process images from a table
maque mllm call-table data.xlsx --image_col="image_path" --model="gpt-4o"

# Process images from a folder
maque mllm call-images ./photos --recursive=True --output_file="results.csv"

LLM Server

# Start LLM inference server
maque llm serve Qwen/Qwen2.5-7B-Instruct --port=8000

# With LoRA adapters
maque llm serve Qwen/Qwen2.5-7B-Instruct --lora_modules lora1=/path/to/lora1

# AWQ quantized model (requires: pip install maque[quant])
maque llm serve Qwen2.5-VL-3B-Instruct-AWQ

# Interactive chat
maque llm chat --model="gpt-4o"

Embedding Service

# Start embedding API server
maque embedding serve --model=BAAI/bge-m3 --port=8001

# Test embedding endpoint
maque embedding test --text="Hello world"

Data Processing

# Interactive table viewer (Streamlit)
maque data table-viewer data.csv --port=8501

# Convert between formats
maque data convert input.json output.csv

System Utilities

# Kill processes on ports
maque system kill 8000 8001

# Pack directory
maque system pack ./folder

# Split large file
maque system split large_file.dat --chunk_size=1GB

Claude Code Skill

# Install maque skill to Claude Code
maque install-skill

# Check installation status
maque skill-status

# Uninstall skill
maque uninstall-skill

After installation, use /maque in Claude Code to access maque documentation.

Git Helpers

# GitHub 镜像代理(国内加速)
maque git mirror-set                      # 设置全局镜像(默认 ghproxy)
maque git mirror-set --mirror=ghproxy-cdn # 使用 CDN 镜像
maque git mirror-status                   # 查看当前镜像配置
maque git mirror-unset                    # 移除镜像,恢复直连

# 设置后,原生 git 命令自动走镜像
git clone https://github.com/user/repo    # 自动使用镜像加速

# 可用镜像列表
maque git mirrors

# 单次使用镜像克隆(不修改全局配置)
maque git clone-mirror https://github.com/user/repo ./repo

Python API

IO Utilities

from maque import yaml_load, yaml_dump, json_load, json_dump, jsonl_load, jsonl_dump

# Load/save YAML
config = yaml_load("config.yaml")
yaml_dump(data, "output.yaml")

# Load/save JSONL
records = jsonl_load("data.jsonl")
jsonl_dump(records, "output.jsonl")

MLLM Client

from flexllm import MllmClient

client = MllmClient(
    base_url="https://api.openai.com/v1",
    api_key="your-api-key",
    model="gpt-4o"
)

# Single image
response = client.call("Describe this image", image_path="photo.jpg")

# Batch processing
from flexllm import MllmTableProcessor
processor = MllmTableProcessor(client)
results = processor.process("data.xlsx", image_col="image_path", prompt="Describe the image")

Async Executor

from flexllm.async_api import ConcurrentExecutor

async def process_item(item):
    # Your async processing logic
    return result

executor = ConcurrentExecutor(
    max_concurrent=10,
    max_qps=5,
    max_retries=3
)

results = await executor.run(
    process_item,
    items,
    progress=True
)

Embedding & Retrieval

from maque.embedding import TextEmbedding
from maque.retriever import ChromaRetriever, Document

# Initialize
embedding = TextEmbedding(base_url="http://localhost:8001/v1", model="bge-m3")
retriever = ChromaRetriever(
    embedding,
    persist_dir="./chroma_db",
    collection_name="my_data"
)

# Insert documents
documents = [Document(id="1", content="text...", metadata={"source": "file1"})]
retriever.upsert_batch(documents, batch_size=32, skip_existing=True)

# Search
results = retriever.search("query text", top_k=10)

Clustering Pipeline

from maque.clustering import ClusterAnalyzer

analyzer = ClusterAnalyzer(algorithm="hdbscan", min_cluster_size=15)

# Analyze from ChromaDB
result = analyzer.analyze_chroma(
    persist_dir="./chroma_db",
    collection_name="my_data",
    output_dir="./results",
    sample_size=10000,
    visualize=True
)

# Access results
print(f"Found {result.n_clusters} clusters")
print(result.labels)
print(result.cluster_stats)

Performance Measurement

from maque import MeasureTime

with MeasureTime("model inference", gpu=True):
    output = model(input)
# Prints: model inference took 0.123s (GPU: 0.089s)

Configuration

maque uses hierarchical configuration (highest priority first):

  1. ./maque_config.yaml (current directory)
  2. Project root config
  3. ~/.maque/config.yaml (user config)

Example configuration:

mllm:
  model: gpt-4o
  base_url: https://api.openai.com/v1
  api_key: ${OPENAI_API_KEY}

embedding:
  model: BAAI/bge-m3
  base_url: http://localhost:8001/v1

llm:
  default_port: 8000

Initialize config:

maque config init

Development

# Install development dependencies
pip install -e .[dev,test]

# Run tests
pytest
pytest -m "not slow"  # Skip slow tests

# Format code
black .
isort .

License

MIT License - see LICENSE for details.

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