Abstract—Graphs are a key form of Big Data, and performing scalable analytics over them is invaluable to many domains. There is an emerging class of inter-connected data which accumulates or varies over time, and on which novel algorithms both over the network structure and across the time-variant attribute values is necessary. We formalize the notion of time-series graphs and propose a Temporally Iterative BSP programming abstraction to develop algorithms on such datasets using several design patterns. Our abstractions leverage a sub-graph centric programming model and extend it to the temporal dimension. We present three time-series graph algorithms based on these design patterns and abstractions, and analyze their performance using the G...
Edited by Renata Guizzardi, Anna Perini, Samira CherfiInternational audienceGraph data management sy...
The past few years have seen intensive research efforts carried out in some apparently unrelated are...
Recent years have witnessed a massive increase in the amount of data generated by the Internet of Th...
Graphs are a key form of Big Data, and performing scalable analytics over them is invaluable to many...
Graphs are a key form of Big Data, and performing scalable analytics over them is invaluable to many...
International audienceIn the last few years, we have seen that many applications or computer problem...
To efficiently process time-evolving graphs where new vertices and edges are inserted over time, an ...
Graph data structures model relations between entities in various domains. Graph processing systems ...
Large-scale temporal graphs are everywhere in our daily life. From online social networks, mobile ne...
Abstract: We introduce the idea of temporal graphs, a representation that encodes temporal data into...
International audienceTime series are commonly used to store temporal data, e.g., sensor measurement...
Many application domains involve monitoring the temporal evolution of large-scale graph data structu...
Recent years have witnessed a massive increase in the amount of data generated by the Internet of Th...
Modern analytics solutions succeed to understand and predict phenomenons in a large diversity of sof...
Edited by Renata Guizzardi, Anna Perini, Samira CherfiInternational audienceGraph data management sy...
The past few years have seen intensive research efforts carried out in some apparently unrelated are...
Recent years have witnessed a massive increase in the amount of data generated by the Internet of Th...
Graphs are a key form of Big Data, and performing scalable analytics over them is invaluable to many...
Graphs are a key form of Big Data, and performing scalable analytics over them is invaluable to many...
International audienceIn the last few years, we have seen that many applications or computer problem...
To efficiently process time-evolving graphs where new vertices and edges are inserted over time, an ...
Graph data structures model relations between entities in various domains. Graph processing systems ...
Large-scale temporal graphs are everywhere in our daily life. From online social networks, mobile ne...
Abstract: We introduce the idea of temporal graphs, a representation that encodes temporal data into...
International audienceTime series are commonly used to store temporal data, e.g., sensor measurement...
Many application domains involve monitoring the temporal evolution of large-scale graph data structu...
Recent years have witnessed a massive increase in the amount of data generated by the Internet of Th...
Modern analytics solutions succeed to understand and predict phenomenons in a large diversity of sof...
Edited by Renata Guizzardi, Anna Perini, Samira CherfiInternational audienceGraph data management sy...
The past few years have seen intensive research efforts carried out in some apparently unrelated are...
Recent years have witnessed a massive increase in the amount of data generated by the Internet of Th...