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Intel® Neural Compressor (formerly known as Intel® Low Precision Optimization Tool), targeting to provide unified APIs for network compression technologies, such as low precision quantization, sparsity, pruning, knowledge distillation, across different deep learning frameworks to pursue optimal inference performance.

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Intel® Neural Compressor

An open-source Python library supporting popular model compression techniques on all mainstream deep learning frameworks (TensorFlow, PyTorch, ONNX Runtime, and MXNet)

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Intel® Neural Compressor, formerly known as Intel® Low Precision Optimization Tool, is an open-source Python library that runs on Intel CPUs and GPUs, which delivers unified interfaces across multiple deep-learning frameworks for popular network compression technologies such as quantization, pruning, and knowledge distillation. This tool supports automatic accuracy-driven tuning strategies to help the user quickly find out the best quantized model. It also implements different weight-pruning algorithms to generate a pruned model with predefined sparsity goal. It also supports knowledge distillation to distill the knowledge from the teacher model to the student model. Intel® Neural Compressor is a critical AI software component in the Intel® oneAPI AI Analytics Toolkit.

Visit the Intel® Neural Compressor online document website at: https://intel.github.io/neural-compressor.

Installation

Prerequisites

Python version: 3.7, 3.8, 3.9, 3.10

Install on Linux

  • Release binary install
    # install stable basic version from pypi
    pip install neural-compressor
    # or install stable full version from pypi (including GUI)
    pip install neural-compressor-full
  • Nightly binary install
    git clone https://github.com/intel/neural-compressor.git
    cd neural-compressor
    pip install -r requirements.txt
    # install nightly basic version from pypi
    pip install -i https://test.pypi.org/simple/ neural-compressor
    # or install nightly full version from pypi (including GUI)
    pip install -i https://test.pypi.org/simple/ neural-compressor-full

More installation methods can be found at Installation Guide. Please check out our FAQ for more details.

Getting Started

Quantization with Python API

# A TensorFlow Example
pip install tensorflow
# Prepare fp32 model
wget https://storage.googleapis.com/intel-optimized-tensorflow/models/v1_6/mobilenet_v1_1.0_224_frozen.pb
from neural_compressor.config import PostTrainingQuantConfig
from neural_compressor.data.dataloaders.dataloader import DataLoader
from neural_compressor.data import Datasets

dataset = Datasets('tensorflow')['dummy'](shape=(1, 224, 224, 3))
from neural_compressor.quantization import fit
config = PostTrainingQuantConfig()
fit(
  model="./mobilenet_v1_1.0_224_frozen.pb",
  conf=config,
  calib_dataloader=DataLoader(framework='tensorflow', dataset=dataset),
  eval_dataloader=DataLoader(framework='tensorflow', dataset=dataset))

Quantization with JupyterLab Extension

Search for jupyter-lab-neural-compressor in the Extension Manager in JupyterLab and install with one click:

Extension

Quantization with GUI

# An ONNX Example
pip install onnx==1.12.0 onnxruntime==1.12.1 onnxruntime-extensions
# Prepare fp32 model
wget https://github.com/onnx/models/raw/main/vision/classification/resnet/model/resnet50-v1-12.onnx
# Start GUI
inc_bench
Architecture

System Requirements

Validated Hardware Environment

Intel® Neural Compressor supports CPUs based on Intel 64 architecture or compatible processors:

  • Intel Xeon Scalable processor (formerly Skylake, Cascade Lake, Cooper Lake, Ice Lake, and Sapphire Rapids)
  • Intel Xeon CPU Max Series (formerly Sapphire Rapids HBM)

Intel® Neural Compressor supports GPUs built on Intel's Xe architecture:

  • Intel Data Center GPU Flex Series (formerly Arctic Sound-M)
  • Intel Data Center GPU Max Series (formerly Ponte Vecchio)

Intel® Neural Compressor quantized ONNX models support multiple hardware vendors through ONNX Runtime:

  • Intel CPU, AMD/ARM CPU, and NVidia GPU. Please refer to the validated model list.

Validated Software Environment

  • OS version: CentOS 8.4, Ubuntu 20.04
  • Python version: 3.7, 3.8, 3.9, 3.10
Framework TensorFlow Intel TensorFlow Intel® Extension for TensorFlow* PyTorch Intel® Extension for PyTorch* ONNX Runtime MXNet
Version 2.11.0
2.10.1
2.9.3
2.11.0
2.10.0
2.9.1
1.0.0 1.13.1+cpu
1.12.1+cpu
1.11.0+cpu
1.13.0
1.12.1
1.11.0
1.13.1
1.12.1
1.11.0
1.9.1
1.8.0
1.7.0

Note: Set the environment variable TF_ENABLE_ONEDNN_OPTS=1 to enable oneDNN optimizations if you are using TensorFlow v2.6 to v2.8. oneDNN is the default for TensorFlow v2.9.

Validated Models

Intel® Neural Compressor validated the quantization for 10K+ models from popular model hubs (e.g., HuggingFace Transformers, Torchvision, TensorFlow Model Hub, ONNX Model Zoo) with the performance speedup up to 4.2x on VNNI while minimizing the accuracy loss. Over 30 pruning and knowledge distillation samples are also available. More details for validated typical models are available here.

Documentation

Overview
Architecture Workflow APIs GUI
Notebook Examples Results Intel oneAPI AI Analytics Toolkit
Python-based APIs
Quantization Advanced Mixed Precision Pruning(Sparsity) Distillation
Orchestration Benchmarking Distributed Compression Model Export
Neural Coder (Zero-code Optimization)
Launcher JupyterLab Extension Visual Studio Code Extension Supported Matrix
Advanced Topics
Adaptor Strategy Distillation for Quantization SmoothQuant (Coming Soon)

Selected Publications/Events

View our full publication list.

Additional Content

Hiring

We are actively hiring. Send your resume to [email protected] if you are interested in model compression techniques.

About

Intel® Neural Compressor (formerly known as Intel® Low Precision Optimization Tool), targeting to provide unified APIs for network compression technologies, such as low precision quantization, sparsity, pruning, knowledge distillation, across different deep learning frameworks to pursue optimal inference performance.

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