peer reviewedTime series are commonly used to store temporal data, e.g., sensor measurements. However, when it comes to complex analytics and learning tasks, these measurements have to be combined with structural context data. Temporal graphs, connecting multiple time- series, have proven to be very suitable to organize such data and ultimately empower analytic algorithms. Computationally intensive tasks often need to be distributed and parallelized among different workers. For tasks that cannot be split into independent parts, several workers have to concurrently read and update these shared temporal graphs. This leads to inconsistency risks, especially in the case of frequent updates. Distributed locks can mitigate these risks but come wi...
Abstract—Graphs are a key form of Big Data, and performing scalable analytics over them is invaluabl...
Ensuring suitable temporal flow for a given sequence of events is essential for many applications. O...
Today’s graph-based analytics tasks in domains such as blockchains, social networks, biological netw...
peer reviewedTime series are commonly used to store temporal data, e.g., sensor measurements. Howeve...
PhD Theses.Temporal graphs capture the development of relationships within data throughout time. Thi...
Modern analytics solutions succeed to understand and predict phenomenons in a large diversity of sof...
In this paper, we consider the problem of preserving acyclicity in a directed graph (for shared mem...
Large-scale temporal graphs are everywhere in our daily life. From online social networks, mobile ne...
Graphs are versatile data structures that allow the implementation of a variety of applications, suc...
International audienceIn the last few years, we have seen that many applications or computer problem...
This paper addresses the problem of efficiently updating a network of temporal constraints when cons...
International audienceIoT applications can be naturally modeled as a graph where the edges represent...
Concurrent programming has become popular in the recent years to facilitate exploitation of hardware...
Temporal graphs have been recently introduced to model changes to a given network that occur through...
Temporal graphs have been recently introduced to model changes to a given network that occur through...
Abstract—Graphs are a key form of Big Data, and performing scalable analytics over them is invaluabl...
Ensuring suitable temporal flow for a given sequence of events is essential for many applications. O...
Today’s graph-based analytics tasks in domains such as blockchains, social networks, biological netw...
peer reviewedTime series are commonly used to store temporal data, e.g., sensor measurements. Howeve...
PhD Theses.Temporal graphs capture the development of relationships within data throughout time. Thi...
Modern analytics solutions succeed to understand and predict phenomenons in a large diversity of sof...
In this paper, we consider the problem of preserving acyclicity in a directed graph (for shared mem...
Large-scale temporal graphs are everywhere in our daily life. From online social networks, mobile ne...
Graphs are versatile data structures that allow the implementation of a variety of applications, suc...
International audienceIn the last few years, we have seen that many applications or computer problem...
This paper addresses the problem of efficiently updating a network of temporal constraints when cons...
International audienceIoT applications can be naturally modeled as a graph where the edges represent...
Concurrent programming has become popular in the recent years to facilitate exploitation of hardware...
Temporal graphs have been recently introduced to model changes to a given network that occur through...
Temporal graphs have been recently introduced to model changes to a given network that occur through...
Abstract—Graphs are a key form of Big Data, and performing scalable analytics over them is invaluabl...
Ensuring suitable temporal flow for a given sequence of events is essential for many applications. O...
Today’s graph-based analytics tasks in domains such as blockchains, social networks, biological netw...