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Code for "Learning Perceptually-Aligned Representations via Adversarial Robustness"
These are notebooks for reproducing our paper "Learning
Perceptually-Aligned Representations via Adversarial Robustness"
(preprint,
blog). Based on the robustness python library.
Running the notebooks
Steps to run the notebooks (for now, requires CUDA):
Make a models folder in the main repository folder, and save the
checkpoints there
Install all the required packages with pip install -r requirements.txt
Edit user_constants.py to point to PyTorch-formatted versions of the CIFAR and ImageNet datasets
Start a jupyter notebook server: jupyter notebook . --ip 0.0.0.0
Citation
@inproceedings{engstrom2019learning,
title={Learning Perceptually-Aligned Representations via Adversarial Robustness},
author={Logan Engstrom and Andrew Ilyas and Shibani Santurkar and Dimitris Tsipras and Brandon Tran and Aleksander Madry},
booktitle={ArXiv preprint arXiv:1906.00945},
year={2019}
}
About
Code for "Learning Perceptually-Aligned Representations via Adversarial Robustness"