enpheeph: A Fault Injection Framework for Spiking and Compressed Deep Neural Networks
Alessio Colucci, Andreas Steininger, Muhammad Shafique

TL;DR
enpheeph is a flexible fault injection framework designed for evaluating the reliability of spiking and compressed deep neural networks, enabling efficient testing of fault tolerance with minimal overhead.
Contribution
It introduces a customizable fault injection tool that supports specialized hardware and various network models, addressing scalability and reliability analysis gaps in current methods.
Findings
DNNs show significant accuracy loss at very low fault rates.
enpheeph achieves at least 10x lower runtime overhead compared to existing tools.
Fault injection reveals vulnerabilities in compressed and spiking neural networks.
Abstract
Research on Deep Neural Networks (DNNs) has focused on improving performance and accuracy for real-world deployments, leading to new models, such as Spiking Neural Networks (SNNs), and optimization techniques, e.g., quantization and pruning for compressed networks. However, the deployment of these innovative models and optimization techniques introduces possible reliability issues, which is a pillar for DNNs to be widely used in safety-critical applications, e.g., autonomous driving. Moreover, scaling technology nodes have the associated risk of multiple faults happening at the same time, a possibility not addressed in state-of-the-art resiliency analyses. Towards better reliability analysis for DNNs, we present enpheeph, a Fault Injection Framework for Spiking and Compressed DNNs. The enpheeph framework enables optimized execution on specialized hardware devices, e.g., GPUs, while…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Ferroelectric and Negative Capacitance Devices · Age of Information Optimization
MethodsPruning
