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QuantLLM is a Python library designed for developers, researchers, and teams who want to fine-tune and deploy large language models (LLMs) efficiently using 4-bit and 8-bit quantization techniques.

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🧠 QuantLLM: Efficient GGUF Model Quantization and Deployment

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πŸ“Œ Overview

QuantLLM is a Python library designed for efficient model quantization using the GGUF (GGML Universal Format) method. It provides a robust framework for converting and deploying large language models with minimal memory footprint and optimal performance. Key capabilities include:

  • Memory-efficient GGUF quantization with multiple precision options (2-bit to 8-bit)
  • Chunk-based processing for handling large models
  • Comprehensive benchmarking tools
  • Detailed progress tracking with memory statistics
  • Easy model export and deployment

🎯 Key Features

Feature Description
βœ… Multiple GGUF Types Support for various GGUF quantization types (Q2_K to Q8_0) with different precision-size tradeoffs
βœ… Memory Optimization Chunk-based processing and CPU offloading for efficient handling of large models
βœ… Progress Tracking Detailed layer-wise progress with memory statistics and ETA
βœ… Benchmarking Tools Comprehensive benchmarking suite for performance evaluation
βœ… Hardware Optimization Automatic device selection and memory management
βœ… Easy Deployment Simple conversion to GGUF format for deployment
βœ… Flexible Configuration Customizable quantization parameters and processing options

πŸš€ Getting Started

Installation

Basic installation:

pip install quantllm

With GGUF support (recommended):

pip install quantllm[gguf]

Quick Example

from quantllm import QuantLLM
from transformers import AutoTokenizer

# Load tokenizer and prepare data
model_name = "facebook/opt-125m"
tokenizer = AutoTokenizer.from_pretrained(model_name)
calibration_text = ["Example text for calibration."] * 10
calibration_data = tokenizer(calibration_text, return_tensors="pt", padding=True)["input_ids"]

# Quantize model
quantized_model, benchmark_results = QuantLLM.quantize_from_pretrained(
    model_name_or_path=model_name,
    bits=4,                    # Quantization bits (2-8)
    group_size=32,            # Group size for quantization
    quant_type="Q4_K_M",      # GGUF quantization type
    calibration_data=calibration_data,
    benchmark=True,           # Run benchmarks
    benchmark_input_shape=(1, 32)
)

# Save and convert to GGUF
QuantLLM.save_quantized_model(model=quantized_model, output_path="quantized_model")
QuantLLM.convert_to_gguf(model=quantized_model, output_path="model.gguf")

For detailed usage examples and API documentation, please refer to our:

πŸ’» Hardware Requirements

Minimum Requirements

  • CPU: 4+ cores
  • RAM: 16GB+
  • Storage: 10GB+ free space
  • Python: 3.10+

Recommended for Large Models

  • CPU: 8+ cores
  • RAM: 32GB+
  • GPU: NVIDIA GPU with 8GB+ VRAM
  • CUDA: 11.7+
  • Storage: 20GB+ free space

GGUF Quantization Types

Type Bits Description Use Case
Q2_K 2 Extreme compression Size-critical deployment
Q3_K_S 3 Small size Limited storage
Q4_K_M 4 Balanced quality General use
Q5_K_M 5 Higher quality Quality-sensitive tasks
Q8_0 8 Best quality Accuracy-critical tasks

πŸ”„ Version Compatibility

QuantLLM Python PyTorch Transformers CUDA
1.2.0 β‰₯3.10 β‰₯2.0.0 β‰₯4.30.0 β‰₯11.7

πŸ—Ί Roadmap

  • Support for more GGUF model architectures
  • Enhanced benchmarking capabilities
  • Multi-GPU processing support
  • Advanced memory optimization techniques
  • Integration with more deployment platforms
  • Custom quantization kernels

🀝 Contributing

We welcome contributions! Please see our CONTRIBUTE.md for guidelines and setup instructions.

πŸ“ License

This project is licensed under the MIT License - see the LICENSE file for details.

πŸ™ Acknowledgments

πŸ“« Contact & Support

About

QuantLLM is a Python library designed for developers, researchers, and teams who want to fine-tune and deploy large language models (LLMs) efficiently using 4-bit and 8-bit quantization techniques.

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