As users of big data applications expect fresh results, we witness a new breed of stream processing systems (SPS) that are designed to scale to large numbers of cloud-hosted machines. Such systems face new challenges: (i) to benefit from the pay-as-you-go model of cloud computing, they must scale out on demand, acquiring additional virtual machines (VMs) and parallelising operators when the workload increases; (ii) failures are common with deployments on hundreds of VMs - systems must be fault-tolerant with fast recovery times, yet low per-machine overheads. An open question is how to achieve these two goals when stream queries include stateful operators, which must be scaled out and recovered without affecting query results. Our key id...
In this tutorial we present the results of recent research about the cloud enablement of data stream...
Distributed Stream Processing systems are becoming an increasingly essential part of Big Data proces...
The continuously increasing volume of data has had a huge impact on information systems and business...
As users of “big data” applications expect fresh results, we witness a new breed of stream processin...
As users of "big data" applications expect fresh results, we witness a new breed of stream processin...
As users of “big data ” applications expect fresh results, we witness a new breed of stream processi...
As users of “big data ” applications expect fresh results, we witness a new breed of stream pro-cess...
© 2018 Dr. Xunyun LiuStream processing is an emerging in-memory computing paradigm that ingests dyna...
Fault tolerance is a key requirement in large-scale distributed stream processing engines (SPEs), es...
Event Stream Processing (ESP) is a well-established approach for low-latency data processing enablin...
Stream processing emerged as a paradigm to continuously process incoming live data streams, such as ...
Distributed Stream Processing systems are becoming an increasingly essential part of Big Data proces...
Major advances in the fault tolerance of distributed stream processing systems provided the systems ...
Present-day computing systems have to deal with a continuous growth of data rate and volume. Process...
This electronic version was submitted by the student author. The certified thesis is available in th...
In this tutorial we present the results of recent research about the cloud enablement of data stream...
Distributed Stream Processing systems are becoming an increasingly essential part of Big Data proces...
The continuously increasing volume of data has had a huge impact on information systems and business...
As users of “big data” applications expect fresh results, we witness a new breed of stream processin...
As users of "big data" applications expect fresh results, we witness a new breed of stream processin...
As users of “big data ” applications expect fresh results, we witness a new breed of stream processi...
As users of “big data ” applications expect fresh results, we witness a new breed of stream pro-cess...
© 2018 Dr. Xunyun LiuStream processing is an emerging in-memory computing paradigm that ingests dyna...
Fault tolerance is a key requirement in large-scale distributed stream processing engines (SPEs), es...
Event Stream Processing (ESP) is a well-established approach for low-latency data processing enablin...
Stream processing emerged as a paradigm to continuously process incoming live data streams, such as ...
Distributed Stream Processing systems are becoming an increasingly essential part of Big Data proces...
Major advances in the fault tolerance of distributed stream processing systems provided the systems ...
Present-day computing systems have to deal with a continuous growth of data rate and volume. Process...
This electronic version was submitted by the student author. The certified thesis is available in th...
In this tutorial we present the results of recent research about the cloud enablement of data stream...
Distributed Stream Processing systems are becoming an increasingly essential part of Big Data proces...
The continuously increasing volume of data has had a huge impact on information systems and business...