Modern scientific collaborations have opened up the op-portunity of solving complex problems that involve multi-disciplinary expertise and large-scale computational experi-ments. These experiments usually involve large amounts of data that are located in distributed data repositories running various software systems, and managed by different organi-sations. A common strategy to make the experiments more manageable is executing the processing steps as a work-flow. In this paper, we look into the implementation of fine-grained data-flow between computational elements in a scientific workflow as streams. We model the distributed computation as a directed acyclic graph where the nodes rep-resent the processing elements that incrementally implem...
As more aspects of our daily lives are being computerized, ever larger amounts of data are being pro...
Abstract — The performance of intra-node parallel dataflow programs in the context of streaming syst...
Massive data sets are increasingly important in a wide range of applications, including observationa...
With the advancement in science and technology numerous complex scientific applications can be exec...
To facilitate data mining and integration (DMI) processes in a generic way, we investigate a paralle...
Large-scale data-intensive streaming applications in various science fields feature complex DAG-stru...
Abstract. Data streaming applications are becoming more and more common due to the rapid development...
Linking scientific instruments to exascale machines and analyzing the large volumes of data produced...
Stream processing is a special form of the dataflow execution model that offers extensive opportunit...
Processing big volumes of data generated on-line, implies needs to carry out computations on-the-fly...
Streaming applications transform possibly infinite streams of data and often have both high throughp...
Struggling with the volume and velocity of Big Data has attracted lots of interest towards stream pr...
Driven by advancements in computing and sensing technology, many scientific projects started to gene...
Abstract. Data streaming applications are becoming more and more common due to the rapid development...
In this tutorial paper we present the results of recent research findings in the area of data stream...
As more aspects of our daily lives are being computerized, ever larger amounts of data are being pro...
Abstract — The performance of intra-node parallel dataflow programs in the context of streaming syst...
Massive data sets are increasingly important in a wide range of applications, including observationa...
With the advancement in science and technology numerous complex scientific applications can be exec...
To facilitate data mining and integration (DMI) processes in a generic way, we investigate a paralle...
Large-scale data-intensive streaming applications in various science fields feature complex DAG-stru...
Abstract. Data streaming applications are becoming more and more common due to the rapid development...
Linking scientific instruments to exascale machines and analyzing the large volumes of data produced...
Stream processing is a special form of the dataflow execution model that offers extensive opportunit...
Processing big volumes of data generated on-line, implies needs to carry out computations on-the-fly...
Streaming applications transform possibly infinite streams of data and often have both high throughp...
Struggling with the volume and velocity of Big Data has attracted lots of interest towards stream pr...
Driven by advancements in computing and sensing technology, many scientific projects started to gene...
Abstract. Data streaming applications are becoming more and more common due to the rapid development...
In this tutorial paper we present the results of recent research findings in the area of data stream...
As more aspects of our daily lives are being computerized, ever larger amounts of data are being pro...
Abstract — The performance of intra-node parallel dataflow programs in the context of streaming syst...
Massive data sets are increasingly important in a wide range of applications, including observationa...