Abstract This paper addresses the problem of efficient scheduling of large clusters under high load and heterogeneous workloads. A heterogeneous workload typically consists of many short jobs and a small number of large jobs that consume the bulk of the cluster's resources. Recent work advocates distributed scheduling to overcome the limitations of centralized schedulers for large clusters with many competing jobs. Such distributed schedulers are inherently scalable, but may make poor scheduling decisions because of limited visibility into the overall resource usage in the cluster. In particular, we demonstrate that under high load, short jobs can fare poorly with such a distributed scheduler. We propose instead a new hybrid centralize...
Ph.D. University of Hawaii at Manoa 2010.Includes bibliographical references.This research focuses o...
<p>Heterogeneity in modern datacenters is on the rise, in hardware resource characteristics, in work...
Abstract – Tasks in modern data-parallel clusters have highly di-verse resource requirements alongCP...
International audienceThis paper addresses the problem of efficient scheduling of large clusters und...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
Scheduling in large scale computing clusters is critical to job performance and resource utilization...
This dissertation presents a taxonomy and evaluation of three cluster scheduling architectures for s...
AbstractWith the accretion in use of Internet in everything, a prodigious influx of data is being ob...
Abstract—Next generation data centers will be composed of thousands of hybrid systems in an attempt ...
This paper presents a novel approach for scheduling the workloads in a Kubernetes cluster, which are...
Scheduling in datacenters is an important, yet challenging problem. Datacenters are composed of a la...
Distributed computing technologies, as popularized by Hadoop, have been proliferating in Cloud and e...
Scheduling diverse applications in large, shared clusters is particularly challenging. Recent resear...
With the growing business impact of distributed big data analytics jobs, it has become crucial to op...
Large-scale data centres are the growing trend for modern computing systems. Since a large-scale dat...
Ph.D. University of Hawaii at Manoa 2010.Includes bibliographical references.This research focuses o...
<p>Heterogeneity in modern datacenters is on the rise, in hardware resource characteristics, in work...
Abstract – Tasks in modern data-parallel clusters have highly di-verse resource requirements alongCP...
International audienceThis paper addresses the problem of efficient scheduling of large clusters und...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
Scheduling in large scale computing clusters is critical to job performance and resource utilization...
This dissertation presents a taxonomy and evaluation of three cluster scheduling architectures for s...
AbstractWith the accretion in use of Internet in everything, a prodigious influx of data is being ob...
Abstract—Next generation data centers will be composed of thousands of hybrid systems in an attempt ...
This paper presents a novel approach for scheduling the workloads in a Kubernetes cluster, which are...
Scheduling in datacenters is an important, yet challenging problem. Datacenters are composed of a la...
Distributed computing technologies, as popularized by Hadoop, have been proliferating in Cloud and e...
Scheduling diverse applications in large, shared clusters is particularly challenging. Recent resear...
With the growing business impact of distributed big data analytics jobs, it has become crucial to op...
Large-scale data centres are the growing trend for modern computing systems. Since a large-scale dat...
Ph.D. University of Hawaii at Manoa 2010.Includes bibliographical references.This research focuses o...
<p>Heterogeneity in modern datacenters is on the rise, in hardware resource characteristics, in work...
Abstract – Tasks in modern data-parallel clusters have highly di-verse resource requirements alongCP...