5 matches found
Explainable but Vulnerable: Adversarial Attacks on XAI Explanation in Cybersecurity Applications
Explainable Artificial Intelligence XAI has aided machine learning ML researchers with the power of scrutinizing the decisions of the black-box models. XAI methods enable looking deep inside the models' behavior, eventually generating explanations along with a perceived trust and transparency...
Next-Generation Quantum Neural Networks: Enhancing Efficiency, Security, and Privacy
This paper provides an integrated perspective on addressing key challenges in developing reliable and secure Quantum Neural Networks QNNs in the Noisy Intermediate-Scale Quantum NISQ era. In this paper, we present an integrated framework that leverages and combines existing approaches to enhance...
Large Language Models in Cybersecurity: Applications, Vulnerabilities, and Defense Techniques
Large Language Models LLMs are transforming cybersecurity by enabling intelligent, adaptive, and automated approaches to threat detection, vulnerability assessment, and incident response. With their advanced language understanding and contextual reasoning, LLMs surpass traditional methods in...
Analysing Safety Risks in LLMs Fine-Tuned with Pseudo-Malicious Cyber Security Data
The integration of large language models LLMs into cyber security applications presents significant opportunities, such as enhancing threat analysis and malware detection, but can also introduce critical risks and safety concerns, including personal data leakage and automated generation of new...
Exploit for Uncontrolled Resource Consumption in Siemens 6Bk1602-0Aa12-0Tp0_Firmware
Log4JExploitation-VulnerabiliyCVE-2021-44228. !Untitled...