• 微信
  • Facebook
  • 分享链接
ScholarMate
客服热线:400-1616-289
登录注册

Accurate Prediction of Required Virtual Resources via Deep Reinforcement Learning

Huang, Haojun*; Li, Zhaoxi; Tian, Jialin; Min, Geyong*; Miao, Wang; Wu, Dapeng Oliver
SCIE
华中科技大学

摘要

Resource provisioning for the ever-increasing applications to host the necessary network functions necessitates the efficient and accurate prediction of required resources. However, the current efforts fail to leverage the inherent features hidden in network traffic, such as temporal stability, service correlation and periodicity, to predict the required resources in an intelligent manner, incurring coarse-grain prediction accuracies. To tackle this problem, in this paper, we propose an Accurate Prediction of Required virtual Resources (APRR) approach via Deep Reinforcement Learning (DRL). We first confirm the resource requests have more similar features and identify the high-dimensional required resources in computing, storage and bandwidth can be effectively consolidated into a single standardized value. Built upon these observations, we then model the required resources as a time-variant network matrix, which includes a number of elements, obtained from the network measurements, and some missing elements needed to be inferred. To obtain accurately predicted results, DRL-based matrix factorization with a set of available rules has been introduced into APRR and alternately executed in agent to minimize the prediction errors. Moreover, the error-prioritized designed for model training with quicker convergence. Simulation experiments on real-world datasets illustrate that APRR can accurately predict the required virtual resources compared with the related approaches.

关键词

Predictive models Stability analysis Quality of service Correlation Computational modeling Bandwidth Reinforcement learning Virtual network functions virtual resources network matrix deep reinforcement learning

出版信息

论文状态
公开发表
期刊名称
IEEE/ACM Transactions on Networking
发表日期
2023-4
卷
31
期
2
页码
920-933
DOI
10.1109/TNET.2022.3204790

学科领域

-

产品服务

  • 科研之友
  • 创新城
  • 科创云

服务支持

  • 帮助中心
  • 隐私政策
  • 服务条款

联系方式

在线客服:【立即咨询】
客服热线:400-1616-289
电子邮箱:support@scholarmate.com

关注或下载科研之友

微信二维码
微信公众号
客户端下载二维码
下载客户端
科研成果科研人员 科研机构 科研动态爱瑞思软件

©2025 深圳市科研之友网络服务有限公司

公安备案图标粤公网安备 44030502000213
粤ICP备 16046710 号粤B2-20110417