Design and Practice of Elastic Scaling Mechanism for Medical Cloud-Edge Collaborative Architecture
Zhengyang Qi
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Zhengyang Qi: University of California, Irvine, CA, 92697, US
Journal of Innovations in Medical Research, 2025, vol. 4, issue 5, 13-18
Abstract:
Medical test peaks can triple within a few minutes, while traditional threshold-based scaling lags by 10 minutes and incurs a 45% higher cost, resulting in report delays exceeding 6 hours. This study proposes an integrated mechanism of “edge preprocessing + cloud elasticity + prediction trigger.” The edge filters invalid data in real time and reports the load, while the cloud pool scales up within 5 minutes based on “CPU > 75%” or “Flu-Prophet seasonal prediction.” Docker NS ensures CLIA-compliant hard isolation for multi-tenants. The experiment, based on 41 million real orders, maintained 99.93% availability and stabilized report issuance time at 2.4 hours under a 3.2× peak on Black Friday, with a 22% reduction in cloud bills. This study is the first to embed medical seasonal events into a cloud-edge collaborative closed loop, achieving non-collapse during peaks, cost savings, and compliance for easy replication in grassroots medical clouds.
Keywords: cloud-edge collaboration; elastic scaling; medical peak prediction; multi-tenant isolation; CLIA compliance; edge preprocessing; seasonal event model; cost optimization (search for similar items in EconPapers)
Date: 2025
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Persistent link: https://EconPapers.repec.org/RePEc:bdz:joimer:v:4:y:2025:i:5:p:13-18
DOI: 10.63593/JIMR.2788-7022.2025.10.003
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