WWW 2015: 24th International World Wide Web Conference, Florence, Italy, 18-22 May 2015Analyzing and processing large graphs is of fundamental importance for an ever-growing number of applications. Significant advancements in the last few years at both, systems and algorithmic side, let graph processing become increasingly scalable and efficient. Often, these advances are still not well-known and well-understood outside the systems and algorithms communities. In particular, there is very little understanding of the various trade-offs involved in the usage of particular combinations of algorithms, data structures, and systems. This tutorial will have a particular focus on this aspect, imparting theoretical knowledge intertwined with hands-on...
Efficiently processing large graphs is challenging, since parallel graph algorithms suffer from poor...
As graph data becomes ubiquitous in modern computing, developing systems to efficiently process larg...
Graph analytics is fundamental in unlocking key insights by mining large volumes of highly connected...
Graphs are very important parts of Big Data and widely used for modelling complex structured data wi...
Graph processing systems are used in a wide variety of fields, ranging from biology to social networ...
Graphs have become increasingly important to represent highly-interconnected structures and schema-l...
The world is becoming a more conjunct place and the number of data sources such as social networks, ...
The world is becoming a more conjunct place and the number of data sources such as social networks, ...
This article presents a comparison of the computing performance of the MapReduce tool Hadoop and Gir...
We are facing challenges at all levels ranging from infras-tructures to programming models for manag...
There has been significant recent interest in parallel graph processing due to the need to quickly a...
The last decade has seen an increased attention on large-scale data analysis, caused mainly by the a...
An ever-increasing amount of the humanity's information is being stored in large graphs. The world w...
Graph processing is increasingly popular in a variety of scientific and engineering domains. Consequ...
Although using graphs to represent networks and relationship is not new; the size of network has bee...
Efficiently processing large graphs is challenging, since parallel graph algorithms suffer from poor...
As graph data becomes ubiquitous in modern computing, developing systems to efficiently process larg...
Graph analytics is fundamental in unlocking key insights by mining large volumes of highly connected...
Graphs are very important parts of Big Data and widely used for modelling complex structured data wi...
Graph processing systems are used in a wide variety of fields, ranging from biology to social networ...
Graphs have become increasingly important to represent highly-interconnected structures and schema-l...
The world is becoming a more conjunct place and the number of data sources such as social networks, ...
The world is becoming a more conjunct place and the number of data sources such as social networks, ...
This article presents a comparison of the computing performance of the MapReduce tool Hadoop and Gir...
We are facing challenges at all levels ranging from infras-tructures to programming models for manag...
There has been significant recent interest in parallel graph processing due to the need to quickly a...
The last decade has seen an increased attention on large-scale data analysis, caused mainly by the a...
An ever-increasing amount of the humanity's information is being stored in large graphs. The world w...
Graph processing is increasingly popular in a variety of scientific and engineering domains. Consequ...
Although using graphs to represent networks and relationship is not new; the size of network has bee...
Efficiently processing large graphs is challenging, since parallel graph algorithms suffer from poor...
As graph data becomes ubiquitous in modern computing, developing systems to efficiently process larg...
Graph analytics is fundamental in unlocking key insights by mining large volumes of highly connected...