The ever-growing need to improve return-on-investment (ROI) for cluster infrastructure that processes data which is being continuously generated at a higher rate than ever before introduces new challenges for big-data processing frameworks. Highly complex mixed workload arriving at modern clusters along with a growing number of time-sensitive critical production jobs necessitates cluster management systems to evolve. Most big-data systems are not only required to guarantee that production jobs will complete before their deadline, but also minimize the latency for best-effort jobs to increase ROI. This research presents DARSS, a deadline-aware reservation-based scheduling system. DARSS addresses the above-stated problem by using a reservat...
MapReduce can speed up the execution of jobs operating over big data. A MapReduce job can be divided...
In the era of big data, many cluster platforms and resource management schemes are created to satisf...
Context: Hadoop, Spark, Storm, and Mesos are very well known frameworks in both research and industr...
The ever-growing need to improve return-on-investment (ROI) for cluster infrastructure that processe...
This paper presents Natjam, a system that supports arbitrary job priorities, hard real-time scheduli...
Scheduling in datacenters is an important, yet challenging problem. Datacenters are composed of a la...
In the past few years, we have envisioned an increasing number of businesses start driving by big da...
Scheduling and resource allocation in cloud systems is of fundamental importance to system efficienc...
To handle millions of user requests every second and process hundreds of terabytes of data each day,...
A process scheduler on a shared cluster, grid, or supercomputer that is informed which submitted tas...
In this research a scenario is assumed where periodic real-time jobs are being run on a heterogeneou...
In this research, a scenario is assumed where periodic real-time jobs are being run on a heterogeneo...
Parallel job scheduling on cluster computers involves the usage of several strategies to maximize bo...
Abstract — This study presents a soft deadline scheduler for distributed systems that aims of explor...
This study presents a soft deadline scheduler for distributed systems that aims of exploring data lo...
MapReduce can speed up the execution of jobs operating over big data. A MapReduce job can be divided...
In the era of big data, many cluster platforms and resource management schemes are created to satisf...
Context: Hadoop, Spark, Storm, and Mesos are very well known frameworks in both research and industr...
The ever-growing need to improve return-on-investment (ROI) for cluster infrastructure that processe...
This paper presents Natjam, a system that supports arbitrary job priorities, hard real-time scheduli...
Scheduling in datacenters is an important, yet challenging problem. Datacenters are composed of a la...
In the past few years, we have envisioned an increasing number of businesses start driving by big da...
Scheduling and resource allocation in cloud systems is of fundamental importance to system efficienc...
To handle millions of user requests every second and process hundreds of terabytes of data each day,...
A process scheduler on a shared cluster, grid, or supercomputer that is informed which submitted tas...
In this research a scenario is assumed where periodic real-time jobs are being run on a heterogeneou...
In this research, a scenario is assumed where periodic real-time jobs are being run on a heterogeneo...
Parallel job scheduling on cluster computers involves the usage of several strategies to maximize bo...
Abstract — This study presents a soft deadline scheduler for distributed systems that aims of explor...
This study presents a soft deadline scheduler for distributed systems that aims of exploring data lo...
MapReduce can speed up the execution of jobs operating over big data. A MapReduce job can be divided...
In the era of big data, many cluster platforms and resource management schemes are created to satisf...
Context: Hadoop, Spark, Storm, and Mesos are very well known frameworks in both research and industr...