ECLM: Efficient Edge-Cloud Collaborative Learning with Continuous Environment Adaptation
Yan Zhuang, Zhenzhe Zheng, Yunfeng Shao, Bingshuai Li, Fan Wu, Guihai, Chen

TL;DR
ECLM is a collaborative edge-cloud learning framework that enables rapid adaptation of models to dynamic environments by decomposing large models into modules for efficient on-device and cloud collaboration.
Contribution
The paper introduces a novel block-level model decomposition technique for flexible, task-specific sub-model generation in edge-cloud collaborative learning.
Findings
Significantly improves model accuracy by up to 18.89%.
Reduces communication costs by 7.12 times.
Enhances resource efficiency in dynamic edge environments.
Abstract
Pervasive mobile AI applications primarily employ one of the two learning paradigms: cloud-based learning (with powerful large models) or on-device learning (with lightweight small models). Despite their own advantages, neither paradigm can effectively handle dynamic edge environments with frequent data distribution shifts and on-device resource fluctuations, inevitably suffering from performance degradation. In this paper, we propose ECLM, an edge-cloud collaborative learning framework for rapid model adaptation for dynamic edge environments. We first propose a novel block-level model decomposition design to decompose the original large cloud model into multiple combinable modules. By flexibly combining a subset of the modules, this design enables the derivation of compact, task-specific sub-models for heterogeneous edge devices from the large cloud model, and the seamless integration…
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Taxonomy
TopicsIoT and Edge/Fog Computing · Context-Aware Activity Recognition Systems · Machine Learning and ELM
