smile's repositories

DeepTraffic

Deep Learning models for network traffic classification

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webServer_Proactor

This repository is based on the original version of tinywebserver by qinguoyi and includes bug fixes for some issues.

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Adversarially-Learned-Anomaly-Detection

ALAD (Proceedings of IEEE ICDM 2018) official code

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AE-IDS

Network Intrusion Detection System(Abnormal Detection)

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Autoencoders

Autoencoders for intrusion detection

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Awesome-Cybersecurity-Datasets

A curated list of amazingly awesome Cybersecurity datasets

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CADE

Code for our USENIX Security 2021 paper -- CADE: Detecting and Explaining Concept Drift Samples for Security Applications

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CIVIDS

Collaborative In-vehicle Intrusion Detection Systems

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Computer-Networking-Keith-Ross

计算机网络 自顶向下方法 **科学技术大学

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Cyberattack-Detection

Cyber Attack Detection thanks to Machine Learning Algorithms

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Efficient-GAN-based-method-for-cyber-intrusion

A GAN-based model focused on anomaly detection in discrete dataset

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LeetcodeRecord

the notebook of my leetcode.

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ML2022-Spring

**Official** 李宏毅 (Hung-yi Lee) 機器學習 Machine Learning 2022 Spring

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multi-distribution-representation-learning

This is the implementation code for multi-distribution representation learning

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nomaly-based-Intrusion-Detection-Technique-for-IoT-Enabled-Smart-Cities

This study proposes a two- level classification technique for the anomaly detection-based IDS architecture for fog-edge sides. Targeted for IoT-smart city networks, the upper layer network uses a gradient boosting classifier while the lower layer network employs deep learning (DL) based on the combination of a long-short-term memory and a convolutional neural network (CNN-LSTM).

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PFL-Non-IID

Personalized federated learning simulation platform with non-IID and unbalanced dataset

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PIO

Feature Selection using Pigeon Inspired Optimizer for Intrusion Detection System

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SGM-CNN

Our implementations of the flow-based network intrusion detection model (for the COMNET paper)

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siamese-triplet

Siamese and triplet networks with online pair/triplet mining in PyTorch

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yolov5

YOLOv5 🚀 in PyTorch > ONNX > CoreML > TFLite

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