17 matches found
SDNGuardStack: An Explainable Ensemble Learning Framework for High-Accuracy Intrusion Detection in Software-Defined Networks
Software-Defined Networking SDN is another technology that has been developing in the last few years as a relevant technique to improve network programmability and administration. Nonetheless, its centralized design presents a major security issue, which requires effective intrusion detection...
Many Hands Make Light Work: An LLM-Based Multi-Agent System for Detecting Malicious PyPI Packages
Malicious code in open-source repositories such as PyPI poses a growing threat to software supply chains. Traditional rule-based tools often overlook the semantic patterns in source code that are crucial for identifying adversarial components. Large language models LLMs show promise for software...
Malware Classification Using Diluted Convolutional Neural Network with Fast Gradient Sign Method
Android malware has become an increasingly critical threat to organizations, society and individuals, posing significant risks to privacy, data security and infrastructure. As malware continues to evolve in terms of complexity and sophistication, the mitigation and detection of these malicious...
Efficient Jailbreak Mitigation Using Semantic Linear Classification in a Multi-Staged Pipeline
Prompt injection and jailbreaking attacks pose persistent security challenges to large language model LLM-based systems. We present an efficient and systematically evaluated defense architecture that mitigates these threats through a lightweight, multi-stage pipeline. Its core component is a...
An Efficient Privacy-Preserving Intrusion Detection Scheme for UAV Swarm Networks
The rapid proliferation of unmanned aerial vehicles UAVs and their applications in diverse domains, such as surveillance, disaster management, agriculture, and defense, have revolutionized modern technology. While the potential benefits of swarm-based UAV networks are growing significantly, they...
Adaptive Dual-Layer Web Application Firewall (ADL-WAF) Leveraging Machine Learning for Enhanced Anomaly and Threat Detection
Web Application Firewalls are crucial for protecting web applications against a wide range of cyber threats. Traditional Web Application Firewalls often struggle to effectively distinguish between malicious and legitimate traffic, leading to limited efficacy in threat detection. To overcome these...
Smartphone User Fingerprinting on Wireless Traffic
Due to the openness of the wireless medium, smartphone users are susceptible to user privacy attacks, where user privacy information is inferred from encrypted Wi-Fi wireless traffic. Existing attacks are limited to recognizing mobile apps and their actions and cannot infer the smartphone user...
Quantum AI Algorithm Development for Enhanced Cybersecurity: a Hybrid Approach to Malware Detection
This study explores the application of quantum machine learning QML algorithms to enhance cybersecurity threat detection, particularly in the classification of malware and intrusion detection within high-dimensional datasets. Classical machine learning approaches encounter limitations when dealin...
VULSOVER: Vulnerability Detection Via LLM-Driven Constraint Solving
Traditional vulnerability detection methods rely heavily on predefined rule matching, which often fails to capture vulnerabilities accurately. With the rise of large language models LLMs, leveraging their ability to understand code semantics has emerged as a promising direction for achieving more...
Addressing Side-Channel Threats in Quantum Key Distribution Via Deep Anomaly Detection
Traditional countermeasures against security side channels in quantum key distribution QKD systems often suffer from poor compatibility with deployed infrastructure, the risk of introducing new vulnerabilities, and limited applicability to specific types of attacks. In this work, we propose an...
Enhance the Machine Learning Algorithm Performance in Phishing Detection with Keyword Features
Recently, we can observe a significant increase of the phishing attacks in the Internet. In a typical phishing attack, the attacker sets up a malicious website that looks similar to the legitimate website in order to obtain the end-users' information. This may cause the leakage of the sensitive...
PhishingHook: Catching Phishing Ethereum Smart Contracts Leveraging EVM Opcodes
The Ethereum Virtual Machine EVM is a decentralized computing engine. It enables the Ethereum blockchain to execute smart contracts and decentralized applications dApps. The increasing adoption of Ethereum sparked the rise of phishing activities. Phishing attacks often target users through...
LiteLMGuard: Seamless and Lightweight On-Device Prompt Filtering for Safeguarding Small Language Models against Quantization-Induced Risks and Vulnerabilities
The growing adoption of Large Language Models LLMs has influenced the development of their lighter counterparts-Small Language Models SLMs-to enable on-device deployment across smartphones and edge devices. These SLMs offer enhanced privacy, reduced latency, server-free functionality, and improve...
A Gradient-Optimized TSK Fuzzy Framework for Explainable Phishing Detection
Phishing attacks represent an increasingly sophisticated and pervasive threat to individuals and organizations, causing significant financial losses, identity theft, and severe damage to institutional reputations. Existing phishing detection methods often struggle to simultaneously achieve high...
Trivy - A Simple And Comprehensive Vulnerability Scanner For Containers, Suitable For CI
A Simple and Comprehensive Vulnerability Scanner for Containers, Suitable for CI. Abstract Trivy tri pronounced like tri gger, vy pronounced like envy is a simple and comprehensive vulnerability scanner for containers. A software vulnerability is a glitch, flaw, or weakness present in the softwar...
Nameles - Open Source Entropy Based Invalid Traffic Detection And Pre-Bid Filtering
Nameles provides an easy to deploy, scalable IVT detection and filtering solution that is proven to detect at a high level of accuracy ad fraud and other types of invalid traffic such as web scraping. For a high level overview you might want to check out the website If you have any questions or...
Seeker - Find GeoLocation With High Accuracy
Seeker utilizes HTML5, Javascript, JQuery and PHP to grab Device Information and GeoLocation with High Accuracy. Other tools and services offer IP Geolocation which is not very accurate and does not give location of user. Generally if a user accepts location permsission, Accuracy of the informati...