<p>With the proliferation of large irregular sparse relational datasets, new storage and analysis platforms have arisen to fill gaps in performance and capability left by conventional approaches built on traditional database technologies and query languages. Many of these platforms apply graph structures and analysis techniques to enable users to ingest, update, query and compute on the topological structure of these relationships represented as set(s) of edges between set(s) of vertices. To store and process Facebook-scale datasets, they must be able to support data sources with billions of edges, update rates of millions of updates per second, and complex analysis kernels. These platforms must provide intuitive interfaces that enable grap...
Part 3: StorageInternational audienceA growing number of applications store and analyze graph-struct...
We are witnessing an enormous growth in social networks as well as in the volume of data generated b...
The world is becoming a more conjunct place and the number of data sources such as social networks, ...
Part 1: Full Keynote and Invited PapersInternational audienceReal world data offers a lot of possibi...
Emerging applications face the need to store and query data that are naturally depicted as graphs. B...
Graph processing has become an important part of multiple areas of computer science, such as machine...
Data analysis, data management, and big data play a major role in both social and business perspecti...
We propose a new data structure, Parallel Adjacency Lists (PAL), for efficiently managing graphs wit...
The use of graphs in analytic environments is getting more and more widespread, with applications in...
International audienceWhen analyzing social networks, graph data structures are often used. Such gra...
How do we efficiently store an ever-growing amount of data? How do we retrieve and analyze relations...
Graph data is used in an increasing number of analytical data processing applications, ranging from ...
As graph data becomes ubiquitous in modern computing, developing systems to efficiently process larg...
From social networks to language modeling, the growing scale and importance of graph data has driven...
Abstract: For a long time, data has been typically stored in tabular form so as to increase the inde...
Part 3: StorageInternational audienceA growing number of applications store and analyze graph-struct...
We are witnessing an enormous growth in social networks as well as in the volume of data generated b...
The world is becoming a more conjunct place and the number of data sources such as social networks, ...
Part 1: Full Keynote and Invited PapersInternational audienceReal world data offers a lot of possibi...
Emerging applications face the need to store and query data that are naturally depicted as graphs. B...
Graph processing has become an important part of multiple areas of computer science, such as machine...
Data analysis, data management, and big data play a major role in both social and business perspecti...
We propose a new data structure, Parallel Adjacency Lists (PAL), for efficiently managing graphs wit...
The use of graphs in analytic environments is getting more and more widespread, with applications in...
International audienceWhen analyzing social networks, graph data structures are often used. Such gra...
How do we efficiently store an ever-growing amount of data? How do we retrieve and analyze relations...
Graph data is used in an increasing number of analytical data processing applications, ranging from ...
As graph data becomes ubiquitous in modern computing, developing systems to efficiently process larg...
From social networks to language modeling, the growing scale and importance of graph data has driven...
Abstract: For a long time, data has been typically stored in tabular form so as to increase the inde...
Part 3: StorageInternational audienceA growing number of applications store and analyze graph-struct...
We are witnessing an enormous growth in social networks as well as in the volume of data generated b...
The world is becoming a more conjunct place and the number of data sources such as social networks, ...