We propose an approach to estimate the power consumption of algorithms, as a function of the frequency and number of cores, using only a very reduced set of real power measures. In addition, we also provide the formulation of a method to select the voltage–frequency scaling–concurrency throttling configurations that should be tested in order to obtain accurate estimations of the power dissipation. The power models and selection methodology are verified using two real scientific application: the stencil-based 3D MPDATA algorithm and the conjugate gradient (CG) method for sparse linear systems. MPDATA is a crucial component of the EULAG model, which is widely used in weather forecast simulations. The CG algorithm is the keystone for iterative...
Sparse and irregular computations constitute a large fraction of applications in the data-intensive ...
This is the pre-peer reviewed version of the following article: Energy‐aware strategies for task‐par...
The High-Performance Computing (HPC) community is currently undergoingdisruptive technology changes ...
We propose an approach to estimate the power consumption of algorithms, as a function of the frequen...
The overarching goal of this thesis is to provide an algorithm-centric approach to analyzing the rel...
Nowadays, reducing energy consumption and improving the energy efficiency of computing systems becom...
Les changements technologiques dans la communauté du calcul hauteperformance (HPC) sont importants, ...
Achieving Exascale computing is one of the current leading challenges in High Performance Computing ...
Energy and power are the main design constraints for modern high-performance computing systems. Inde...
International audienceData centers play an important role on worldwide electrical energy consumption...
We analyze the efficiency of servers equipped with state-of-the-art general-purpose multicore proces...
We investigate the benefits that an energyaware implementation of the runtime in charge of the con...
In the exascale race where huge corporations are spending billions of dollars on designing highly ef...
The power wall asks for a holistic effort from the high performance and scientific communities to de...
The use of models to predict the power con- sumption of a system is an appealing alternative...
Sparse and irregular computations constitute a large fraction of applications in the data-intensive ...
This is the pre-peer reviewed version of the following article: Energy‐aware strategies for task‐par...
The High-Performance Computing (HPC) community is currently undergoingdisruptive technology changes ...
We propose an approach to estimate the power consumption of algorithms, as a function of the frequen...
The overarching goal of this thesis is to provide an algorithm-centric approach to analyzing the rel...
Nowadays, reducing energy consumption and improving the energy efficiency of computing systems becom...
Les changements technologiques dans la communauté du calcul hauteperformance (HPC) sont importants, ...
Achieving Exascale computing is one of the current leading challenges in High Performance Computing ...
Energy and power are the main design constraints for modern high-performance computing systems. Inde...
International audienceData centers play an important role on worldwide electrical energy consumption...
We analyze the efficiency of servers equipped with state-of-the-art general-purpose multicore proces...
We investigate the benefits that an energyaware implementation of the runtime in charge of the con...
In the exascale race where huge corporations are spending billions of dollars on designing highly ef...
The power wall asks for a holistic effort from the high performance and scientific communities to de...
The use of models to predict the power con- sumption of a system is an appealing alternative...
Sparse and irregular computations constitute a large fraction of applications in the data-intensive ...
This is the pre-peer reviewed version of the following article: Energy‐aware strategies for task‐par...
The High-Performance Computing (HPC) community is currently undergoingdisruptive technology changes ...