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Autori principali: Tang, Xirui, Wang, Zeyu, Cai, Xiaowei, Su, Honghua, Wei, Changsong
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2408.05671
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author Tang, Xirui
Wang, Zeyu
Cai, Xiaowei
Su, Honghua
Wei, Changsong
author_facet Tang, Xirui
Wang, Zeyu
Cai, Xiaowei
Su, Honghua
Wei, Changsong
contents 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.
format Preprint
id arxiv_https___arxiv_org_abs_2408_05671
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Research on Heterogeneous Computation Resource Allocation based on Data-driven Method
Tang, Xirui
Wang, Zeyu
Cai, Xiaowei
Su, Honghua
Wei, Changsong
Computational Engineering, Finance, and Science
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.
title Research on Heterogeneous Computation Resource Allocation based on Data-driven Method
topic Computational Engineering, Finance, and Science
url https://arxiv.org/abs/2408.05671