International audienceThere is increasing demand for handling massive amounts of data in a timely manner via Distributed Stream Processing (DSP). A DSP application is often structured as a directed graph whose vertices are operators that perform transformations over the incoming data and edges representing the data streams between operators. DSP applications are traditionally deployed on the Cloud in order to explore the virtually unlimited number of resources. Edge computing has emerged as a suitable paradigm for executing parts of DSP applications by offloading certain operators from the Cloud and placing them close to where the data is generated, hence minimising the overall time required to process data events (i.e., the end-to-end late...
International audienceData Stream Processing (DSP) is a widely used programming paradigm to process ...
International audienceData Stream Processing (DSP) is a widely used programming paradigm to process ...
International audienceThe interest in processing data events under stringent time constraints as the...
International audienceThere is increasing demand for handling massive amounts of data in a timely ma...
International audienceThere is increasing demand for handling massive amounts of data in a timely ma...
International audienceThere is increasing demand for handling massive amounts of data in a timely ma...
International audienceDistributed Stream Processing (DSP) applications are increasingly used in new ...
International audienceDistributed Stream Processing (DSP) applications are increasingly used in new ...
A key challenge in many IoT applications is to en-sure energy efficiency while processing large amou...
In the IoT era and with the advent of 5G networks, an enormous amount of data is generated, and new ...
A large part of this big data is most valuable when analysed quickly, as it is generated. Under seve...
A large part of this big data is most valuable when analysed quickly, as it is generated. Under seve...
A large part of this big data is most valuable when analysed quickly, as it is generated. Under seve...
A large part of this big data is most valuable when analysed quickly, as it is generated. Under seve...
A large part of this big data is most valuable when analysed quickly, as it is generated. Under seve...
International audienceData Stream Processing (DSP) is a widely used programming paradigm to process ...
International audienceData Stream Processing (DSP) is a widely used programming paradigm to process ...
International audienceThe interest in processing data events under stringent time constraints as the...
International audienceThere is increasing demand for handling massive amounts of data in a timely ma...
International audienceThere is increasing demand for handling massive amounts of data in a timely ma...
International audienceThere is increasing demand for handling massive amounts of data in a timely ma...
International audienceDistributed Stream Processing (DSP) applications are increasingly used in new ...
International audienceDistributed Stream Processing (DSP) applications are increasingly used in new ...
A key challenge in many IoT applications is to en-sure energy efficiency while processing large amou...
In the IoT era and with the advent of 5G networks, an enormous amount of data is generated, and new ...
A large part of this big data is most valuable when analysed quickly, as it is generated. Under seve...
A large part of this big data is most valuable when analysed quickly, as it is generated. Under seve...
A large part of this big data is most valuable when analysed quickly, as it is generated. Under seve...
A large part of this big data is most valuable when analysed quickly, as it is generated. Under seve...
A large part of this big data is most valuable when analysed quickly, as it is generated. Under seve...
International audienceData Stream Processing (DSP) is a widely used programming paradigm to process ...
International audienceData Stream Processing (DSP) is a widely used programming paradigm to process ...
International audienceThe interest in processing data events under stringent time constraints as the...