Recent years have witnessed a massive increase in the amount of data generated by the Internet of Things (IoT) and social media. Processing huge amounts of this data poses non-trivial challenges in terms of the hardware and performance requirements of modern-day applications. The data we are dealing with today is of massive scale, high intensity and comes in various forms. MapReduce was a popular and clever choice of handling big data using a distributed programming model, which made the processing of huge volumes of data possible using clusters of commodity machines. However, MapReduce was not a good fit for performing complex tasks, such as graph processing, iterative programs and machine learning. Modern data processing frameworks, that ...
Balanced graph partitioning in the streaming setting is a key problem to enable scalable and efficie...
Streaming data analysis has recently attracted at-tention in numerous applications including telepho...
This dissertation addresses the problem of dynamic graph partitioning in a streaming manner in the c...
Recent years have witnessed a massive increase in the amount of data generated by the Internet of Th...
In the last decade, real-time data processing has attracted much attention from both academic commun...
Struggling with the volume and velocity of Big Data has attracted lots of interest towards stream pr...
Large-scale graph-structured datasets are growing at an increasing rate. Social network graphs are a...
DoctorFast and Scalable graph processing is the key to realize the great potential of the graph data...
Extracting knowledge by performing computations on graphs is becoming increasingly challenging as gr...
Abstract — Big data is a recent term Appeared that has to define the vey large amount of data that s...
With the increasing availability and scale of graph data from Web 2.0, graph partitioning becomes on...
International audienceWe introduce a novel algorithm to perform graph clustering in the edge streami...
With the increasing availability and scale of graph data from Web 2.0, graph partitioning becomes on...
Large-scale temporal graphs are everywhere in our daily life. From online social networks, mobile ne...
Balanced graph partitioning in the streaming setting is a key problem to enable scalable and efficie...
Streaming data analysis has recently attracted at-tention in numerous applications including telepho...
This dissertation addresses the problem of dynamic graph partitioning in a streaming manner in the c...
Recent years have witnessed a massive increase in the amount of data generated by the Internet of Th...
In the last decade, real-time data processing has attracted much attention from both academic commun...
Struggling with the volume and velocity of Big Data has attracted lots of interest towards stream pr...
Large-scale graph-structured datasets are growing at an increasing rate. Social network graphs are a...
DoctorFast and Scalable graph processing is the key to realize the great potential of the graph data...
Extracting knowledge by performing computations on graphs is becoming increasingly challenging as gr...
Abstract — Big data is a recent term Appeared that has to define the vey large amount of data that s...
With the increasing availability and scale of graph data from Web 2.0, graph partitioning becomes on...
International audienceWe introduce a novel algorithm to perform graph clustering in the edge streami...
With the increasing availability and scale of graph data from Web 2.0, graph partitioning becomes on...
Large-scale temporal graphs are everywhere in our daily life. From online social networks, mobile ne...
Balanced graph partitioning in the streaming setting is a key problem to enable scalable and efficie...
Streaming data analysis has recently attracted at-tention in numerous applications including telepho...
This dissertation addresses the problem of dynamic graph partitioning in a streaming manner in the c...