Research on Heterogeneous Computation Resource Allocation based on Data-driven Method

Xirui Tang, Zeyu Wang, Xiaowei Cai, Honghua Su, Changsong Wei
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Abstract

The rapid development of the mobile Internet and the Internet of Things is leading to a diversification of user devices and the emergence of new mobile applications on a regular basis. Such applications include those that are computationally intensive, such as pattern recognition, interactive gaming, virtual reality, and augmented reality. However, the computing and energy resources available on the user's equipment are limited, which presents a challenge in effectively supporting such demanding applications. In this work, we propose a heterogeneous computing resource allocation model based on a data-driven approach. The model first collects and analyzes historical workload data at scale, extracts key features, and builds a detailed data set. Then, a data-driven deep neural network is used to predict future resource requirements. Based on the prediction results, the model adopts a dynamic adjustment and optimization resource allocation strategy. This strategy not only fully considers the characteristics of different computing resources, but also accurately matches the requirements of various tasks, and realizes dynamic and flexible resource allocation, thereby greatly improving the overall performance and resource utilization of the system. Experimental results show that the proposed method is significantly better than the traditional resource allocation method in a variety of scenarios, demonstrating its excellent accuracy and adaptability.
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基于数据驱动方法的异构计算资源分配研究
移动互联网和物联网的快速发展导致用户设备的多样化和新移动应用的不断涌现。这些应用包括模式识别、互动游戏、虚拟现实和增强现实等计算密集型应用。然而,用户设备上可用的计算和能源资源有限,这给有效支持此类高要求应用带来了挑战。在这项工作中,我们提出了一种基于数据驱动方法的异构计算资源分配模型。该模型首先大规模收集和分析历史工作负载数据,提取关键特征,建立详细的数据集。然后,使用数据驱动的深度神经网络预测未来的资源需求。根据预测结果,模型采用动态调整和优化资源分配策略。该策略不仅充分考虑了不同计算资源的特点,而且准确匹配了各种任务的需求,实现了动态灵活的资源分配,从而大大提高了系统的整体性能和资源利用率。实验结果表明,所提出的方法在各种场景下都明显优于传统的资源分配方法,证明了其出色的准确性和适应性。
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