Securing On-Chip Learning: Navigating Vulnerabilities and Potential Safeguards in Spiking Neural Network Architectures | IEEE Conference Publication | IEEE Xplore

Securing On-Chip Learning: Navigating Vulnerabilities and Potential Safeguards in Spiking Neural Network Architectures


Abstract:

On-chip learning is the process of training or updating machine learning models directly on specialized hardware. This approach differs from traditional machine learning,...Show More

Abstract:

On-chip learning is the process of training or updating machine learning models directly on specialized hardware. This approach differs from traditional machine learning, which typically conducts training on external computing resources like Central Processing Units (CPUs) or Graphics Processing Units (GPUs). On-chip learning offers several advantages, including reduced latency, improved energy efficiency, enhanced privacy, and adaptability. Consequently, it holds great promise for enabling intelligent decision-making and adaptability in resource-constrained edge and IoT devices while addressing privacy concerns. In Spiking Neural Network (SNN), on-chip learning is enabled by adjusting synaptic weights, allowing the network’s behavior to dynamically align with desired outcomes. However, this adaptability may introduce potential security vulnerabilities. Unmitigated security risks in on-chip learning can lead to various threats, including data leaks, unauthorized access, and even adversarial manipulation of the learning process. This manuscript aims to provide a comprehensive overview of the security risks associated with on-chip learning, with a focus on potential vulnerabilities within the SNN architecture. We will explore real-world scenarios where these vulnerabilities can be exploited and outline protective measures and mitigation strategies to address these security concerns.
Date of Conference: 19-22 May 2024
Date Added to IEEE Xplore: 02 July 2024
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Conference Location: Singapore, Singapore

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