期刊文献+
共找到1篇文章
< 1 >
每页显示 20 50 100
Adaptive VDI Session Placement via User Logoff Prediction
1
作者 Wenping Fan Puhui Meng +2 位作者 Yu Tian Min-Ling Zhang Yao Zhang 《Machine Intelligence Research》 2025年第1期189-200,共12页
After the global pandemic,DaaS(desktop as a service)has become the first choice of many companies’remote working solution.As the desktops are usually deployed in the public cloud when using DaaS,customers are more co... After the global pandemic,DaaS(desktop as a service)has become the first choice of many companies’remote working solution.As the desktops are usually deployed in the public cloud when using DaaS,customers are more cost-sensitive which boosts the requirement of proactive power management.Prior researches in this area focus on virtual desktop infrastructure(VDI)session logon behavior modeling,but for the remote desktop service host(RDSH)-shared desktop pools,logoff optimization is also important.Existing systems place sessions by round-robin or in a pre-defined order without considering their logoff time.However,these approaches usually suffer from the situation that few left sessions prevent RDSH servers from being powered-off which introduces cost waste.In this paper,we propose session placement via adaptive user logoff prediction(SODA),an innovative compound model towards proactive RDSH session placement.Specifically,an ensemble machine learning model that can predict session logoff time is combined with a statistical session placement bucket model to place RDSH sessions with similar logoff time in a more centralized manner on RDSH hosts.Consequently,the infrastructure cost-saving can be improved by reducing the resource waste introduced by those RDSH hosts with very few hanging sessions left for a long time.Experiments on real RDSH pool data demonstrate the effectiveness of the proposed proactive session placement approach against existing static placement techniques. 展开更多
关键词 virtual desktop infrastructure(VDI)resource management remote desktop service logoff prediction adaptive modeling session placement
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部