大型云计算平台中的策略性降级

Strategic Throttling in Large Cloud Computing Platforms

Information Systems Research · 2026
被引 0
人大 AFT50UTD24ABS 4*

中文导读

研究大型云服务商如何通过价格和服务质量(如处理速度、中断风险)对客户进行策略性降级,并分析跨区域资源池、透明中断政策和竞价型定价对利用率和需求分割的影响,为管理者、客户和政策制定者提供启示。

Abstract

Cloud platforms are critical infrastructure for digital economy. This study explains how large cloud providers use prices and service quality to allocate nonstorable computing time among customers with different willingness to pay and delay sensitivity. Pooling many uncorrelated workloads makes utilization predictable, reducing the need for idle backup capacity and improving operating efficiency. The predictability, however, allows providers to profitably throttle lower-tier customers through slower processing or higher interruption risk while keeping the whole market served. For cloud managers, the analysis shows how cross-region pooling, transparent interruption policies, and auction-based spot pricing can improve utilization, segment demand, and guide capacity planning. For customers and policymakers, the results identify why throttling persists: high switching costs and proprietary ecosystems weaken competitive pressure. Policies that improve workload portability, reduce data-egress frictions, and increase data interoperability can benefit the consumers and society without sacrificing the scale economies of large cloud networks. Structural remedies that reduce scale may curb market power but risk undermining operational efficiency.

云计算服务质量管理市场力量容量规划平台经济