Intelligent data analysis has become more important in the last decade especially because of the significant increase in the size and availability of data. In this paper, we focus on the common execution models and characteristics of iterative graph analytics applications. We show that the features that improve work efficiency can lead to significant overheads on existing systems. We identify the opportunities for custom hardware implementation, and outline the desired architectural features for energy efficient computation of graph analytics applications. © 2015 IEEE
As energy efficiency is becoming a subject of utter importance in today’s societies, the European Un...
Graph processing systems are used in a wide variety of fields, ranging from biology to social networ...
Graphs' versatile ability to represent diverse relationships, make them effective for a wide range o...
Hardware accelerators are known to be performance and power efficient. This article focuses on accel...
2018-10-16Graph analytics has drawn much research interest because of its broad applicability from m...
Cataloged from PDF version of article.Thesis (M.S.): Bilkent University, Department of Computer Engi...
A graph is a ubiquitous data structure that models entities and their interactions through the colle...
A number of graph processing platforms have emerged recently as a result of the growing demand on gr...
Distributed, shared-nothing architectures of commodity machines are a popular design choice for the ...
Graph analytics is fundamental in unlocking key insights by mining large volumes of highly connected...
Parallel graph processing is central to analytical computer science applications, and GPUs have prov...
In this paper, we develop a highly scalable approach to constructing an efficient heterogeneous grap...
We identify several factors that are critical to high-performance GPU graph analytics: efficient bui...
Graph applications have been gaining importance in the last decade due to emerging big data analytic...
In this thesis, we propose optimization techniques for distributed graph processing. First, we descr...
As energy efficiency is becoming a subject of utter importance in today’s societies, the European Un...
Graph processing systems are used in a wide variety of fields, ranging from biology to social networ...
Graphs' versatile ability to represent diverse relationships, make them effective for a wide range o...
Hardware accelerators are known to be performance and power efficient. This article focuses on accel...
2018-10-16Graph analytics has drawn much research interest because of its broad applicability from m...
Cataloged from PDF version of article.Thesis (M.S.): Bilkent University, Department of Computer Engi...
A graph is a ubiquitous data structure that models entities and their interactions through the colle...
A number of graph processing platforms have emerged recently as a result of the growing demand on gr...
Distributed, shared-nothing architectures of commodity machines are a popular design choice for the ...
Graph analytics is fundamental in unlocking key insights by mining large volumes of highly connected...
Parallel graph processing is central to analytical computer science applications, and GPUs have prov...
In this paper, we develop a highly scalable approach to constructing an efficient heterogeneous grap...
We identify several factors that are critical to high-performance GPU graph analytics: efficient bui...
Graph applications have been gaining importance in the last decade due to emerging big data analytic...
In this thesis, we propose optimization techniques for distributed graph processing. First, we descr...
As energy efficiency is becoming a subject of utter importance in today’s societies, the European Un...
Graph processing systems are used in a wide variety of fields, ranging from biology to social networ...
Graphs' versatile ability to represent diverse relationships, make them effective for a wide range o...