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Autori principali: Pavel, Monirul Islam, Hu, Siyi, Pratama, Mahardhika, Kowalczyk, Ryszard
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2505.08793
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author Pavel, Monirul Islam
Hu, Siyi
Pratama, Mahardhika
Kowalczyk, Ryszard
author_facet Pavel, Monirul Islam
Hu, Siyi
Pratama, Mahardhika
Kowalczyk, Ryszard
contents Onboard learning is a transformative approach in edge AI, enabling real-time data processing, decision-making, and adaptive model training directly on resource-constrained devices without relying on centralized servers. This paradigm is crucial for applications demanding low latency, enhanced privacy, and energy efficiency. However, onboard learning faces challenges such as limited computational resources, high inference costs, and security vulnerabilities. This survey explores a comprehensive range of methodologies that address these challenges, focusing on techniques that optimize model efficiency, accelerate inference, and support collaborative learning across distributed devices. Approaches for reducing model complexity, improving inference speed, and ensuring privacy-preserving computation are examined alongside emerging strategies that enhance scalability and adaptability in dynamic environments. By bridging advancements in hardware-software co-design, model compression, and decentralized learning, this survey provides insights into the current state of onboard learning to enable robust, efficient, and secure AI deployment at the edge.
format Preprint
id arxiv_https___arxiv_org_abs_2505_08793
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Onboard Optimization and Learning: A Survey
Pavel, Monirul Islam
Hu, Siyi
Pratama, Mahardhika
Kowalczyk, Ryszard
Machine Learning
Hardware Architecture
Onboard learning is a transformative approach in edge AI, enabling real-time data processing, decision-making, and adaptive model training directly on resource-constrained devices without relying on centralized servers. This paradigm is crucial for applications demanding low latency, enhanced privacy, and energy efficiency. However, onboard learning faces challenges such as limited computational resources, high inference costs, and security vulnerabilities. This survey explores a comprehensive range of methodologies that address these challenges, focusing on techniques that optimize model efficiency, accelerate inference, and support collaborative learning across distributed devices. Approaches for reducing model complexity, improving inference speed, and ensuring privacy-preserving computation are examined alongside emerging strategies that enhance scalability and adaptability in dynamic environments. By bridging advancements in hardware-software co-design, model compression, and decentralized learning, this survey provides insights into the current state of onboard learning to enable robust, efficient, and secure AI deployment at the edge.
title Onboard Optimization and Learning: A Survey
topic Machine Learning
Hardware Architecture
url https://arxiv.org/abs/2505.08793