This paper investigates the power, energy, and performance characteristics of large-scale graph processing on hybrid (i.e., CPU and GPU) single-node systems. Graph processing can be accelerated on hybrid systems by properly mapping the graph-layout to processing units, such that the algorithmic tasks exer-cise each of the units where they perform best. However, the GPUs have much higher Thermal Design Power (TDP), thus their impact on the overall energy consumption is unclear. Our evaluation using large real-world graphs and synthetic graphs as large as 1 billion vertices and 16 billion edges shows that a hybrid system is efficient in terms of both time-to-solution and energy. Categories and Subject Descriptor
In this paper, we develop a highly scalable approach to constructing an efficient heterogeneous grap...
Abstract: Energy minimization is an important step in molecular modeling, with applications in molec...
Graphic processors are becoming faster and faster. Computational power within graphic processing uni...
Abstract Graphs are used to model many real objects such as social net-works and web graphs. Many re...
Recently, modern graphics processing unit (GPU) has gained the reputation of computational accelerat...
Graph processing is increasingly popular in a variety of scientific and engineering domains. Consequ...
Abstract — Graph processing has gained renewed attention. The increasing large scale and wealth of c...
Graph processing is increasingly used in a variety of domains, from engineering to logistics and fro...
A number of graph processing platforms have emerged recently as a result of the growing demand on gr...
Future high-performance computing systems will be hybrid; they will include processors optimized for...
Efficient processing of graph applications on heterogeneous CPU-GPU systems require effectively harn...
Parallel graph processing is central to analytical computer science applications, and GPUs have prov...
Data analysis is a rising field of interest for computer science research due to the growing amount ...
It is commonplace for graphics processing units or GPUs today to render extremely complex 3D scenes ...
The stagnant performance of single core processors, increasing size of data sets, and variety of str...
In this paper, we develop a highly scalable approach to constructing an efficient heterogeneous grap...
Abstract: Energy minimization is an important step in molecular modeling, with applications in molec...
Graphic processors are becoming faster and faster. Computational power within graphic processing uni...
Abstract Graphs are used to model many real objects such as social net-works and web graphs. Many re...
Recently, modern graphics processing unit (GPU) has gained the reputation of computational accelerat...
Graph processing is increasingly popular in a variety of scientific and engineering domains. Consequ...
Abstract — Graph processing has gained renewed attention. The increasing large scale and wealth of c...
Graph processing is increasingly used in a variety of domains, from engineering to logistics and fro...
A number of graph processing platforms have emerged recently as a result of the growing demand on gr...
Future high-performance computing systems will be hybrid; they will include processors optimized for...
Efficient processing of graph applications on heterogeneous CPU-GPU systems require effectively harn...
Parallel graph processing is central to analytical computer science applications, and GPUs have prov...
Data analysis is a rising field of interest for computer science research due to the growing amount ...
It is commonplace for graphics processing units or GPUs today to render extremely complex 3D scenes ...
The stagnant performance of single core processors, increasing size of data sets, and variety of str...
In this paper, we develop a highly scalable approach to constructing an efficient heterogeneous grap...
Abstract: Energy minimization is an important step in molecular modeling, with applications in molec...
Graphic processors are becoming faster and faster. Computational power within graphic processing uni...