基于微服务架构的云视频服务性能感知选择策略

Zhengjun Xu, Haitao Zhang, Han Huang
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引用次数: 0

摘要

云微服务架构提供了松散耦合的服务和高效的虚拟资源,成为大规模视频业务的解决方案。在微服务架构下,由于大量的微服务导致服务选择候选方案的数量呈指数级增长,因此难以有效地选择最优服务。此外,视频业务的时间敏感性增加了业务选择的复杂性,视频数据会影响业务选择的结果。然而,在微服务架构下,现有的视频服务选择策略没有全面考虑服务实例的资源波动和视频服务的特点,存在一定的不足。本文主要研究了微服务架构下的视频服务选择策略。首先,我们提出了一种基于显式因子分析和线性回归的QoS预测方法。QP可以根据视频数据和业务实例的特点准确预测QoS值。其次,提出了一种性能感知视频服务选择(PVSS)方法。为了降低计算复杂度,我们对候选服务进行剪接,然后基于果蝇优化算法(FFO)高效地选择最优解。最后,我们进行了大量的实验来评估我们的策略,结果证明了我们的策略的有效性。
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A Performance-Aware Selection Strategy for Cloud-based Video Services with Micro-Service Architecture
The cloud micro-service architecture provides loosely coupling services and efficient virtual resources, which becomes a promising solution for large-scale video services. It is difficult to efficiently select the optimal services under micro-service architecture, because the large number of micro-services leads to an exponential increase in the number of service selection candidate solutions. In addition, the time sensitivity of video services increases the complexity of service selection, and the video data can affects the service selection results. However, the current video service selection strategies are insufficient under micro-service architecture, because they do not take into account the resource fluctuation of the service instances and the features of the video service comprehensively. In this paper, we focus on the video service selection strategy under micro-service architecture. Firstly, we propose a QoS Prediction (QP) method using explicit factor analysis and linear regression. The QP can accurately predict the QoS values based on the features of video data and service instances. Secondly, we propose a Performance-Aware Video Service Selection (PVSS) method. We prune the candidate services to reduce computational complexity and then efficiently select the optimal solution based on Fruit Fly Optimization (FFO) algorithm. Finally, we conduct extensive experiments to evaluate our strategy, and the results demonstrate the effectiveness of our strategy.
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Session details: Vision in Multimedia Domain Specific and Idiom Adaptive Video Summarization Multi-Label Image Classification with Attention Mechanism and Graph Convolutional Networks Session details: Brave New Idea Self-balance Motion and Appearance Model for Multi-object Tracking in UAV
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