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evasion-attack

免杀,bypassav,免杀框架,nim,shellcode,使用nim编写的shellcode加载器

C
656
2 个月前

Artificially inflate a given binary to exceed common EDR file size limits. Can be used to bypass common EDR.

Python
120
3 年前

transmit cs beacon (shellcode) over self-made dns to avoid anti-kill and AV

C#
50
4 年前

Public Code for ICS Evasion Attack Generation

Jupyter Notebook
42
4 年前

📄 [Talk] OFFZONE 2022 / ODS Data Halloween 2022: Black-box attacks on ML models + with use of open-source tools

Jupyter Notebook
12
2 年前

Shadow Rebirth - An Aggressive Outbreak Anti-Debugging Technique

C++
11
5 个月前

This project compares the performance of K-Nearest Neighbors, Support Vector Machines, and Decision Trees models for detecting malicious PDF files, with an emphasis on optimizing model performance and analyzing evasion techniques. It provides a comprehensive overview of machine learning for malicious PDF detection and potential vulnerabilities.

Jupyter Notebook
6
2 年前

Generation of adversarial examples for ML-based malware detectors through the use of Genetic Algorithms.

Python
4
3 年前

The n-Values Time Series Attack (nVITA) is a sparse indirect black-box evasion attack that aims to achieve the adversarial goal (such as enforcing a certain output of the model) on TSF models by altering n values in an input time series. This repository is based on PyTorch. It also contains the implementations of FGSM and BIM for TSF models.

Jupyter Notebook
4
2 年前

An Evasion Attack against Stacked Capsule Autoencoder

Python
2
3 年前

Training, inference, and evaluate of the speaker identification and verification model are carried out, and evasion attacks (FGSM, PGD) are performed.

Python
1
4 年前

Two white-box evasion attacks– FGSM + PGD– on a LeNet-5 model trained on Fashion MNIST

Python
0
2 年前

The Machine Learning Security Evasion Competition (MLSEC) 2022 took place from August 12th to September 23th 2022 and was organized by Adversa AI, CUJO AI, and Robust Intelligence. I will explain here what I use as a method to bypass the machine learning models produced for this competition.

HTML
0
2 年前