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TorchEI is a high-speed toolbox around DNN Reliability's Research and Development

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TorchEI⚡

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Introduction

👋TorchEI, pronounced*/ˈtôrCHər/*(like torture), short for Pytorch Error Injection, is a high-speed toolbox for DNN Reliability's Research and Development. TorchEI enables you quickly and simply inject errors into DNN, collects information you needed, and harden your DNN.

Features

  • Full typing system supported
  • Implemented methods from papers
  • Highly customizable

Quick Example

Here we gonna show you a quick example, or you can try interactive demo and online editor.

Installing

Install public distribution using pip3 install torchei or download it.

Example

Init fault model

import torch
from torchvision import models
import torchei
model = models.resnet18(pretrained=True)
data = torch.load('data/ilsvrc_valid8.pt')
fault_model = torchei.fault_model(model,data)

Calc reliability using emat method

fault_model.emat_attack(10,1e-3)

Calc reliability using SERN

fault_model.sern_calc(output_class=1000)

Harden DNN by ODR

fault_model.outlierDR_protection()
fault_model.emat_attack(10,1e-3)

Contribution

contributors

If you found🧐 any bugs or have🖐️ any suggestions, please tell us.

This repo is open to everyone wants to maintain together.

You can helps us with follow things:

  • PR your implemented methods in your or others' papers
  • Complete our project
  • Translate our docs to your language
  • Other

We want to build TorchEI to best toolbox in DNN Reliability for bit flip, adversarial attack, and others.

📧 [email protected]

Citation

Our paper is under delivering.

License

MIT License. Copyright:copyright:2022/5/23-present, Hao Zheng.

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  • Jupyter Notebook 96.8%
  • Python 3.2%