Graph-processing platforms are increasingly used in a variety of domains. Although both industry and academia are developing and tuning graph-processing algorithms and platforms, the performance of graph-processing platforms has never been explored or compared in-depth. Thus, users face the daunting challenge of selecting an appropriate platform for their specific application. To alleviate this challenge, we propose an empirical method for benchmarking graph-processing platforms. We define a comprehensive process, and a selection of representative metrics, datasets, and algorithmic classes. We implement a benchmarking suite of five classes of algorithms and seven diverse graphs. Our suite reports on basic (user-lever) performance, resource ...
Graph processing is one of the most important and ubiquitous classes of analytical workloads. To pro...
Graph processing is experiencing a surge of renewed interest as applications in social networks and ...
In the age of information our society generates data at an increasing and already alarming rate. To ...
Abstract—Graph-processing platforms are increasingly used in a variety of domains. Although both ind...
Processing graphs, especially at large scale, is an increasingly use-ful activity in a variety of bu...
Benchmarking is a process that informs the public about the capabilities of systems-under-test, focu...
Graphs are becoming more popular day by day. This has lead to the development of different graph-pro...
We present a graph processing benchmark suite with the goal of helping to standardize graph processi...
Graphs are increasingly used in industry, governance, and science. This has stimulated the appearanc...
Graphs are increasingly used in industry, governance, and science. This has stimulated the appearanc...
In this paper we introduce LDBC Graphalytics, a new industrial-grade benchmark for graph analysis pl...
Graph algorithms are becoming increasingly important for analyzing large datasets in many fields. Re...
Big data, the large-scale collection and analysis of data, has become ubiquitous in the modern, digi...
Distributed, shared-nothing architectures of commodity machines are a popular design choice for the ...
Graph algorithms are becoming increasingly important for analyz-ing large datasets in many fields. R...
Graph processing is one of the most important and ubiquitous classes of analytical workloads. To pro...
Graph processing is experiencing a surge of renewed interest as applications in social networks and ...
In the age of information our society generates data at an increasing and already alarming rate. To ...
Abstract—Graph-processing platforms are increasingly used in a variety of domains. Although both ind...
Processing graphs, especially at large scale, is an increasingly use-ful activity in a variety of bu...
Benchmarking is a process that informs the public about the capabilities of systems-under-test, focu...
Graphs are becoming more popular day by day. This has lead to the development of different graph-pro...
We present a graph processing benchmark suite with the goal of helping to standardize graph processi...
Graphs are increasingly used in industry, governance, and science. This has stimulated the appearanc...
Graphs are increasingly used in industry, governance, and science. This has stimulated the appearanc...
In this paper we introduce LDBC Graphalytics, a new industrial-grade benchmark for graph analysis pl...
Graph algorithms are becoming increasingly important for analyzing large datasets in many fields. Re...
Big data, the large-scale collection and analysis of data, has become ubiquitous in the modern, digi...
Distributed, shared-nothing architectures of commodity machines are a popular design choice for the ...
Graph algorithms are becoming increasingly important for analyz-ing large datasets in many fields. R...
Graph processing is one of the most important and ubiquitous classes of analytical workloads. To pro...
Graph processing is experiencing a surge of renewed interest as applications in social networks and ...
In the age of information our society generates data at an increasing and already alarming rate. To ...