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Autori principali: Joshi, Tejal, Kawalay, Aarya, Jamkhande, Anvi, Joshi, Amit
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2501.17123
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author Joshi, Tejal
Kawalay, Aarya
Jamkhande, Anvi
Joshi, Amit
author_facet Joshi, Tejal
Kawalay, Aarya
Jamkhande, Anvi
Joshi, Amit
contents Cache side channel attacks are a sophisticated and persistent threat that exploit vulnerabilities in modern processors to extract sensitive information. These attacks leverage weaknesses in shared computational resources, particularly the last level cache, to infer patterns in data access and execution flows, often bypassing traditional security defenses. Such attacks are especially dangerous as they can be executed remotely without requiring physical access to the victim's device. This study focuses on a specific class of these threats: fingerprinting attacks, where an adversary monitors and analyzes the behavior of co-located processes via cache side channels. This can potentially reveal confidential information, such as encryption keys or user activity patterns. A comprehensive threat model illustrates how attackers sharing computational resources with target systems exploit these side channels to compromise sensitive data. To mitigate such risks, a hybrid deep learning model is proposed for detecting cache side channel attacks. Its performance is compared with five widely used deep learning models: Multi-Layer Perceptron, Convolutional Neural Network, Simple Recurrent Neural Network, Long Short-Term Memory, and Gated Recurrent Unit. The experimental results demonstrate that the hybrid model achieves a detection rate of up to 99.96%. These findings highlight the limitations of existing models, the need for enhanced defensive mechanisms, and directions for future research to secure sensitive data against evolving side channel threats.
format Preprint
id arxiv_https___arxiv_org_abs_2501_17123
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publishDate 2025
record_format arxiv
spellingShingle Hybrid Deep Learning Model for Multiple Cache Side Channel Attacks Detection: A Comparative Analysis
Joshi, Tejal
Kawalay, Aarya
Jamkhande, Anvi
Joshi, Amit
Cryptography and Security
Neural and Evolutionary Computing
Cache side channel attacks are a sophisticated and persistent threat that exploit vulnerabilities in modern processors to extract sensitive information. These attacks leverage weaknesses in shared computational resources, particularly the last level cache, to infer patterns in data access and execution flows, often bypassing traditional security defenses. Such attacks are especially dangerous as they can be executed remotely without requiring physical access to the victim's device. This study focuses on a specific class of these threats: fingerprinting attacks, where an adversary monitors and analyzes the behavior of co-located processes via cache side channels. This can potentially reveal confidential information, such as encryption keys or user activity patterns. A comprehensive threat model illustrates how attackers sharing computational resources with target systems exploit these side channels to compromise sensitive data. To mitigate such risks, a hybrid deep learning model is proposed for detecting cache side channel attacks. Its performance is compared with five widely used deep learning models: Multi-Layer Perceptron, Convolutional Neural Network, Simple Recurrent Neural Network, Long Short-Term Memory, and Gated Recurrent Unit. The experimental results demonstrate that the hybrid model achieves a detection rate of up to 99.96%. These findings highlight the limitations of existing models, the need for enhanced defensive mechanisms, and directions for future research to secure sensitive data against evolving side channel threats.
title Hybrid Deep Learning Model for Multiple Cache Side Channel Attacks Detection: A Comparative Analysis
topic Cryptography and Security
Neural and Evolutionary Computing
url https://arxiv.org/abs/2501.17123