Streaming analytics applications need to process massive volumes of data in a timely manner, in domains ranging from datacenter telemetry and geo-distributed log analytics to Internet-of-Things systems. Such applications suffer from significant network transfer costs to transport the data to a stream processor and compute costs to analyze the data in a timely manner. Pushing the computation closer to the data source by partitioning the analytics query is an effective strategy to reduce resource costs for the stream processor. However, the partitioning strategy depends on the nature of resource bottleneck and resource variability that is encountered at the compute resources near the data source. In this paper, we investigate different issues...
ABSTRACT Massive data analysis in cloud-scale data centers plays a crucial role in making critical b...
Streaming data analysis has recently attracted at-tention in numerous applications including telepho...
Recent advances in sensor technologies and instrumentation have led to an extraordinary growth of da...
Analytics are in the core of many emerging applications and can greatly benefit from the abundance o...
Struggling with the volume and velocity of Big Data has attracted lots of interest towards stream pr...
We present JetStream, a system that allows real-time analysis of large, widely-distributed changing ...
Abstract—Data streaming has become an important paradigm for the real-time processing of continuous ...
International audienceInfrastructure clouds revolutionized the way in which we approach resource pro...
In this tutorial we present the results of recent research about the cloud enablement of data stream...
Distributed Data Stream Management Systems (DSMS) are increasingly used for the processing of high-r...
In this thesis, our goal is to enable and achieve effective and efficient real-time stream processin...
The data from network cameras can be valuable for a wide range of scientific studies such as weather...
Many applications must ingest rapid streams of data and produce analytics results in near-real-...
In this tutorial we present the results of recent research about the cloud enablement of data stream...
With the increasing trend of using cloud computing resources, the efficient utilization of these res...
ABSTRACT Massive data analysis in cloud-scale data centers plays a crucial role in making critical b...
Streaming data analysis has recently attracted at-tention in numerous applications including telepho...
Recent advances in sensor technologies and instrumentation have led to an extraordinary growth of da...
Analytics are in the core of many emerging applications and can greatly benefit from the abundance o...
Struggling with the volume and velocity of Big Data has attracted lots of interest towards stream pr...
We present JetStream, a system that allows real-time analysis of large, widely-distributed changing ...
Abstract—Data streaming has become an important paradigm for the real-time processing of continuous ...
International audienceInfrastructure clouds revolutionized the way in which we approach resource pro...
In this tutorial we present the results of recent research about the cloud enablement of data stream...
Distributed Data Stream Management Systems (DSMS) are increasingly used for the processing of high-r...
In this thesis, our goal is to enable and achieve effective and efficient real-time stream processin...
The data from network cameras can be valuable for a wide range of scientific studies such as weather...
Many applications must ingest rapid streams of data and produce analytics results in near-real-...
In this tutorial we present the results of recent research about the cloud enablement of data stream...
With the increasing trend of using cloud computing resources, the efficient utilization of these res...
ABSTRACT Massive data analysis in cloud-scale data centers plays a crucial role in making critical b...
Streaming data analysis has recently attracted at-tention in numerous applications including telepho...
Recent advances in sensor technologies and instrumentation have led to an extraordinary growth of da...