Modern CPUs suffer from performance and power consumption variability due to the manufacturing process. As a result, systems that do not consider such variability caused by manufacturing issues lead to performance degradations and wasted power. In order to avoid such negative impact, users and system administrators must actively counteract any manufacturing variability. In this work we show that parallel systems benefit from taking into account the consequences of manufacturing variability when making scheduling decisions at the job scheduler level. We also show that it is possible to predict the impact of this variability on specific applications by using variability-aware power prediction models. Based on these power models, we propose t...
In multicore systems, shared resources such as caches or the memory subsystem can lead to contention...
peer reviewedThe scheduling of parallel tasks is a topic that has received a lot of attention in rec...
In this paper, we propose a power-aware parallel job scheduler assuming DVFS enabled clusters. A CPU...
Modern CPUs suffer from performance and power consumption variability due to the manufacturing proce...
Current large scale systems show increasing power demands, to the point that it has become a huge st...
Recently, power awareness in high performance computing (HPC) community has increased significantly....
High performance computing (HPC) systems are an important enabling tool for modern scientific discov...
Although the growth in the scale and complexity is the response of High Performance Computing (HPC) ...
Improving environmental sustainability and reducing energy cost are becoming central topics of decis...
This paper presents a power-aware scheduling algorithm based on efficient distribution of the comput...
In nanometer technology regime, process variation (PV) causes uncertainties in the processor frequen...
Although the growth in the scale and complexity is the response of High Performance Computing (HPC) ...
Never-ending striving for performance has resulted in a tremendous increase in power consumption of ...
The fast processing speeds of the current generation of supercomputers provide a great convenience t...
Manufacturing and environmental variations cause timing errors that are typically avoided by conserv...
In multicore systems, shared resources such as caches or the memory subsystem can lead to contention...
peer reviewedThe scheduling of parallel tasks is a topic that has received a lot of attention in rec...
In this paper, we propose a power-aware parallel job scheduler assuming DVFS enabled clusters. A CPU...
Modern CPUs suffer from performance and power consumption variability due to the manufacturing proce...
Current large scale systems show increasing power demands, to the point that it has become a huge st...
Recently, power awareness in high performance computing (HPC) community has increased significantly....
High performance computing (HPC) systems are an important enabling tool for modern scientific discov...
Although the growth in the scale and complexity is the response of High Performance Computing (HPC) ...
Improving environmental sustainability and reducing energy cost are becoming central topics of decis...
This paper presents a power-aware scheduling algorithm based on efficient distribution of the comput...
In nanometer technology regime, process variation (PV) causes uncertainties in the processor frequen...
Although the growth in the scale and complexity is the response of High Performance Computing (HPC) ...
Never-ending striving for performance has resulted in a tremendous increase in power consumption of ...
The fast processing speeds of the current generation of supercomputers provide a great convenience t...
Manufacturing and environmental variations cause timing errors that are typically avoided by conserv...
In multicore systems, shared resources such as caches or the memory subsystem can lead to contention...
peer reviewedThe scheduling of parallel tasks is a topic that has received a lot of attention in rec...
In this paper, we propose a power-aware parallel job scheduler assuming DVFS enabled clusters. A CPU...