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Main Authors: Rathnasuriya, Ravishka, Yang, Wei
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.17621
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author Rathnasuriya, Ravishka
Yang, Wei
author_facet Rathnasuriya, Ravishka
Yang, Wei
contents The growing deployment of deep learning models in real-world environments has intensified the need for efficient inference under strict latency and resource constraints. To meet these demands, dynamic deep learning systems (DDLSs) have emerged, offering input-adaptive computation to optimize runtime efficiency. While these systems succeed in reducing cost, their dynamic nature introduces subtle and underexplored security risks. In particular, input-dependent execution pathways create opportunities for adversaries to degrade efficiency, resulting in excessive latency, energy usage, and potential denial-of-service in time-sensitive deployments. This work investigates the security implications of dynamic behaviors in DDLSs and reveals how current systems expose efficiency vulnerabilities exploitable by adversarial inputs. Through a survey of existing attack strategies, we identify gaps in the coverage of emerging model architectures and limitations in current defense mechanisms. Building on these insights, we propose to examine the feasibility of efficiency attacks on modern DDLSs and develop targeted defenses to preserve robustness under adversarial conditions.
format Preprint
id arxiv_https___arxiv_org_abs_2506_17621
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Exploiting Efficiency Vulnerabilities in Dynamic Deep Learning Systems
Rathnasuriya, Ravishka
Yang, Wei
Machine Learning
Artificial Intelligence
Cryptography and Security
The growing deployment of deep learning models in real-world environments has intensified the need for efficient inference under strict latency and resource constraints. To meet these demands, dynamic deep learning systems (DDLSs) have emerged, offering input-adaptive computation to optimize runtime efficiency. While these systems succeed in reducing cost, their dynamic nature introduces subtle and underexplored security risks. In particular, input-dependent execution pathways create opportunities for adversaries to degrade efficiency, resulting in excessive latency, energy usage, and potential denial-of-service in time-sensitive deployments. This work investigates the security implications of dynamic behaviors in DDLSs and reveals how current systems expose efficiency vulnerabilities exploitable by adversarial inputs. Through a survey of existing attack strategies, we identify gaps in the coverage of emerging model architectures and limitations in current defense mechanisms. Building on these insights, we propose to examine the feasibility of efficiency attacks on modern DDLSs and develop targeted defenses to preserve robustness under adversarial conditions.
title Exploiting Efficiency Vulnerabilities in Dynamic Deep Learning Systems
topic Machine Learning
Artificial Intelligence
Cryptography and Security
url https://arxiv.org/abs/2506.17621