基于异构迁移学习的改进网络服务性能预测

Fernando García Sanz, M. Ebrahimi, A. Johnsson
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引用次数: 0

摘要

迁移学习被认为是一种在新环境中利用已有知识的方法,特别是在训练数据量有限的情况下。然而,由于未来网络和云基础设施的动态性,新环境可能与模型训练和转移的环境不同。在本文中,我们提出并评估了一种基于神经网络的异构迁移学习方法,该方法解决了具有不同输入特征集的环境之间的模型迁移问题,这是网络和云重新编排的自然结果。我们量化了转移增益,并且在大多数情况下经验显示了正增益。此外,我们研究了神经网络架构对转移增益的影响,为多种情况提供了权衡的见解。该方法的评估是使用从测试平台收集的数据跟踪来执行的,该测试平台在各种负载条件下运行视频点播服务和键值存储。
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On Heterogeneous Transfer Learning for Improved Network Service Performance Prediction
Transfer learning has been proposed as an approach for leveraging already learned knowledge in a new environment, especially when the amount of training data is limited. However, due to the dynamic nature of future networks and cloud infrastructures, a new environment may differ from the one the model is trained and transferred from. In this paper, we propose and evaluate an approach based on neural networks for heterogeneous transfer learning that addresses model transfer between environments with different input feature sets, which is a natural consequence of network and cloud re-orchestration. We quantify the transfer gain, and empirically show positive gain in a majority of cases. Further, we study the impact of neural-network architectures on the transfer gain, providing tradeoff insights for multiple cases. The evaluation of the approach is performed using data traces collected from a testbed that runs a Video-on-Demand service and a Key-Value Store under various load conditions.
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