Today’s data centers are designed with multi-core CPUs where multiple virtual machines (VMs) can be co-located into one physical machine or distribute multiple computing tasks onto one physical machine. The result is co-tenancy, resource sharing and competition. Modeling and predicting such co-run interference becomes crucial for job scheduling and Quality of Service assurance. Co-locating interference can be characterized into two components, sensitivity and pressure, where sensitivity characterizes how an application’s own performance is affected by a co-run application, and pressure characterizes how much contentiousness an application exerts/brings onto the memory subsystem. Previous studies show that with simple models, sensitivity and...
Virtualized data centers are hosting virtual machines (VMs) running enterprise applications with tim...
Arbeit an der Bibliothek noch nicht eingelangt - Daten nicht geprüftAbweichender Titel nach Übersetz...
2016-2017 > Academic research: refereed > Refereed conference paper201804_a bcmaAccepted ManuscriptP...
Today’s data centers are designed with multi-core CPUs where multiple virtual machines (VMs) can be ...
Cloud computing has become a dominant computing paradigm to provide elastic, affordable computing re...
A multi-core machine allows executing several applications simultaneously. Those jobs are scheduled ...
Large-scale data centers leverage virtualization technology to achieve excellent resource utilizatio...
© 2015 IEEE.Despite their widespread adoption in cloud computing, multicore processors are heavily u...
While co-locating virtual machines improves utilization in resource shared environments, the resulti...
Abstract — In this study, we analyze interference trends when co-running multiple applications posse...
© 2015 IEEE.Virtual machine consolidation is attractive in cloud computing platforms for several rea...
Abstract—Interference between co-scheduled applications is one of the major reasons that causes mode...
Clouds are an irreplaceable part of many business applications. They provide tremendous flexibility ...
scheduling In this paper, we utilize a bandwidth-centric job communication model that captures the i...
We describe the design and implementation of Deep-Dive, a system for transparently identifying and m...
Virtualized data centers are hosting virtual machines (VMs) running enterprise applications with tim...
Arbeit an der Bibliothek noch nicht eingelangt - Daten nicht geprüftAbweichender Titel nach Übersetz...
2016-2017 > Academic research: refereed > Refereed conference paper201804_a bcmaAccepted ManuscriptP...
Today’s data centers are designed with multi-core CPUs where multiple virtual machines (VMs) can be ...
Cloud computing has become a dominant computing paradigm to provide elastic, affordable computing re...
A multi-core machine allows executing several applications simultaneously. Those jobs are scheduled ...
Large-scale data centers leverage virtualization technology to achieve excellent resource utilizatio...
© 2015 IEEE.Despite their widespread adoption in cloud computing, multicore processors are heavily u...
While co-locating virtual machines improves utilization in resource shared environments, the resulti...
Abstract — In this study, we analyze interference trends when co-running multiple applications posse...
© 2015 IEEE.Virtual machine consolidation is attractive in cloud computing platforms for several rea...
Abstract—Interference between co-scheduled applications is one of the major reasons that causes mode...
Clouds are an irreplaceable part of many business applications. They provide tremendous flexibility ...
scheduling In this paper, we utilize a bandwidth-centric job communication model that captures the i...
We describe the design and implementation of Deep-Dive, a system for transparently identifying and m...
Virtualized data centers are hosting virtual machines (VMs) running enterprise applications with tim...
Arbeit an der Bibliothek noch nicht eingelangt - Daten nicht geprüftAbweichender Titel nach Übersetz...
2016-2017 > Academic research: refereed > Refereed conference paper201804_a bcmaAccepted ManuscriptP...