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Auteurs principaux: Fernandez, Nekane, Valdes, Ivan, Van Vaerenbergh, Steven, de la Iglesia, Idoia, Arratibel, Julen
Format: Preprint
Publié: 2026
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Accès en ligne:https://arxiv.org/abs/2604.14789
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author Fernandez, Nekane
Valdes, Ivan
Van Vaerenbergh, Steven
de la Iglesia, Idoia
Arratibel, Julen
author_facet Fernandez, Nekane
Valdes, Ivan
Van Vaerenbergh, Steven
de la Iglesia, Idoia
Arratibel, Julen
contents Deploying deep neural networks on edge devices requires balancing accuracy, latency, and resource constraints under realistic execution conditions. To fit models within these constraints, two broad strategies have emerged: static compression techniques such as pruning and quantization, which permanently reduce model size, and dynamic approaches such as early-exit mechanisms, which adapt computational cost at runtime. While both families are widely studied in isolation, they are rarely compared under identical conditions on physical hardware. This paper presents a unified deployment-oriented comparison of static compression and dynamic early-exit mechanisms, evaluated on real edge devices using ONNX based inference pipelines. Our results show that static and dynamic techniques offer fundamentally different trade-offs for edge deployment. While pruning and quantization deliver consistent memory footprint reduction, early-exit mechanisms enable input-adaptive computation savings that static methods cannot match. Their combination proves highly effective, simultaneously reducing inference latency and memory usage with minimal accuracy loss, expanding what is achievable at the edge.
format Preprint
id arxiv_https___arxiv_org_abs_2604_14789
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle A Comparative Study of CNN Optimization Methods for Edge AI: Exploring the Role of Early Exits
Fernandez, Nekane
Valdes, Ivan
Van Vaerenbergh, Steven
de la Iglesia, Idoia
Arratibel, Julen
Artificial Intelligence
Deploying deep neural networks on edge devices requires balancing accuracy, latency, and resource constraints under realistic execution conditions. To fit models within these constraints, two broad strategies have emerged: static compression techniques such as pruning and quantization, which permanently reduce model size, and dynamic approaches such as early-exit mechanisms, which adapt computational cost at runtime. While both families are widely studied in isolation, they are rarely compared under identical conditions on physical hardware. This paper presents a unified deployment-oriented comparison of static compression and dynamic early-exit mechanisms, evaluated on real edge devices using ONNX based inference pipelines. Our results show that static and dynamic techniques offer fundamentally different trade-offs for edge deployment. While pruning and quantization deliver consistent memory footprint reduction, early-exit mechanisms enable input-adaptive computation savings that static methods cannot match. Their combination proves highly effective, simultaneously reducing inference latency and memory usage with minimal accuracy loss, expanding what is achievable at the edge.
title A Comparative Study of CNN Optimization Methods for Edge AI: Exploring the Role of Early Exits
topic Artificial Intelligence
url https://arxiv.org/abs/2604.14789