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The Wayback Machine - https://web.archive.org/web/20200807044135/https://github.com/topics/adversarial-machine-learning
#
adversarial-machine-learning
Here are
163 public repositories
matching this topic...
Updated
Aug 5, 2020
Python
Adversarial Robustness Toolbox (ART) - Python Library for Machine Learning Security - Evasion, Poisoning, Extraction, Inference
Updated
Aug 6, 2020
Python
TextAttack 🐙 is a Python framework for adversarial attacks, data augmentation, and model training in NLP
Updated
Aug 6, 2020
Python
A Toolbox for Adversarial Robustness Research
Updated
Jul 21, 2020
Jupyter Notebook
T2F: text to face generation using Deep Learning
Updated
May 8, 2019
Python
ProGAN package implemented as an extension of PyTorch nn.Module
Updated
Jul 4, 2020
Python
A curated list of adversarial attacks and defenses papers on graph-structured data.
Provable adversarial robustness at ImageNet scale
Updated
May 20, 2019
Python
Code for our NeurIPS 2019 *spotlight* "Provably Robust Deep Learning via Adversarially Trained Smoothed Classifiers"
Updated
Nov 9, 2019
Python
MSG-GAN: Multi-Scale Gradients GAN (Architecture inspired from ProGAN but doesn't use layer-wise growing)
Updated
Apr 12, 2020
Python
Official TensorFlow Implementation of Adversarial Training for Free! which trains robust models at no extra cost compared to natural training.
Updated
Jun 8, 2019
Python
Adversarial Training for Neural Relation Extraction
Updated
Jun 3, 2018
Python
Physical adversarial attack for fooling the Faster R-CNN object detector
Updated
Jan 13, 2020
Jupyter Notebook
A PyTorch Toolbox for creating adversarial examples that fool neural networks.
Updated
Aug 7, 2019
Python
Plausible looking adversarial examples for text classification
Updated
Dec 16, 2018
Python
scratchai is a Deep Learning library that aims to store all Deep Learning algorithms. With easy calls to do all the common tasks in AI.
Updated
Aug 3, 2020
Python
SHIELD: Fast, Practical Defense and Vaccination for Deep Learning using JPEG Compression
Updated
Nov 27, 2018
Python
A simple GUI tool for generating adversarial poses of objects.
Updated
Feb 4, 2020
Python
Deflecting Adversarial Attacks with Pixel Deflection
Updated
Jun 21, 2018
Jupyter Notebook
A Python library for adversarial machine learning focusing on benchmarking adversarial robustness.
Updated
Jul 15, 2020
Python
Code repository for the paper "Adversarial Deep Learning for Robust Detection of Binary Encoded Malware"
Updated
Aug 31, 2018
Python
A library for running membership inference attacks against ML models
Updated
Nov 30, 2019
Python
Copy cat model for Proofpoint
Updated
Apr 30, 2020
Python
Robustness benchmark for DNN models.
Updated
Aug 6, 2020
Python
Implementation of the methods proposed in **Adversarial Training Methods for Semi-Supervised Text Classification** on IMDB dataset (without pre-training)
Updated
May 9, 2018
Jupyter Notebook
Feature Scattering Adversarial Training
Updated
Feb 18, 2020
Python
Generalized Data-free Universal Adversarial Perturbations
Updated
Oct 5, 2018
Python
Examples trained using the python pytorch package pro-gan-pth
Updated
Jan 31, 2019
Python
Library and experiments for attacking machine learning in discrete domains
Updated
Mar 31, 2020
Jupyter Notebook
A guided mutation-based fuzzer for ML-based Web Application Firewalls
Updated
May 26, 2020
Python
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