Hardware in High Performance Computing environments in recent years have increasingly become more heterogeneous in order to improve computational performance. An additional aspect of such systems is the management of power and energy consumption. The increase in heterogeneity requires middleware and programming model abstractions to eliminate additional complexities that it brings, while also offering opportunities such as improved power management. In this paper, we explore application level self-adaptation including aspects such as automated configuration and deployment of applications to different heterogeneous infrastructure and for their redeployment. This therefore not only mitigates complexities associated with heterogeneous devices ...
The ICT sector consumes a large portion of the total energy supply in the world. The increasing numb...
Power and energy efficiency are important challenges for the High Performance Computing (HPC) commun...
Minimizing energy consumption of concurrent applications on heterogeneous multi-core platforms is ...
Hardware in High Performance Computing environments in recent years have increasingly become more he...
Hardware in HPC environments in recent years has become ever more heterogeneous in order to improve ...
The Transparent heterogeneous hardware Architecture deployment for eNergy Gain in Operation (TANGO) ...
ICT adoption rate boomed during the last decades as well as the power consumption footprint that gen...
The Transparent heterogeneous hardware Architecture deployment for eNergy Gain in Operation (TANGO) ...
Power consumption management in computing systems is gaining an increasing attention due to its envi...
Runtime resource management for heterogeneous computing systems is becoming more and more complex as...
Preprint arXiv:1603.01407The paper is concerned with the issue of how software systems actually use ...
Self-adaptation is an emerging requirement in parallel computing. It enables the dynamic selection o...
The ANTAREX 1 project aims at expressing the application selfadaptivity through a Domain Specific La...
To help shrink the programmability-performance efficiency gap, we discuss that adaptive runtime syst...
Nowadays, reducing energy consumption and improving the energy efficiency of computing systems becom...
The ICT sector consumes a large portion of the total energy supply in the world. The increasing numb...
Power and energy efficiency are important challenges for the High Performance Computing (HPC) commun...
Minimizing energy consumption of concurrent applications on heterogeneous multi-core platforms is ...
Hardware in High Performance Computing environments in recent years have increasingly become more he...
Hardware in HPC environments in recent years has become ever more heterogeneous in order to improve ...
The Transparent heterogeneous hardware Architecture deployment for eNergy Gain in Operation (TANGO) ...
ICT adoption rate boomed during the last decades as well as the power consumption footprint that gen...
The Transparent heterogeneous hardware Architecture deployment for eNergy Gain in Operation (TANGO) ...
Power consumption management in computing systems is gaining an increasing attention due to its envi...
Runtime resource management for heterogeneous computing systems is becoming more and more complex as...
Preprint arXiv:1603.01407The paper is concerned with the issue of how software systems actually use ...
Self-adaptation is an emerging requirement in parallel computing. It enables the dynamic selection o...
The ANTAREX 1 project aims at expressing the application selfadaptivity through a Domain Specific La...
To help shrink the programmability-performance efficiency gap, we discuss that adaptive runtime syst...
Nowadays, reducing energy consumption and improving the energy efficiency of computing systems becom...
The ICT sector consumes a large portion of the total energy supply in the world. The increasing numb...
Power and energy efficiency are important challenges for the High Performance Computing (HPC) commun...
Minimizing energy consumption of concurrent applications on heterogeneous multi-core platforms is ...