International audienceStream Processing (SP), i.e., the processing of data in motion, as soon as it becomes available, is a hot topic in cloud computing. Various SP stacks exist today, with applications ranging from IoT analytics to processing of payment transactions. The backbone of said stacks are Stream Processing Engines (SPEs), software packages offering a high-level programming model and scalable execution of data stream processing pipelines. SPEs have been traditionally developed to work inside a single datacenter, and optimised for speed. With the advent of Fog computing, however, the processing of data streams needs to be carried out over multiple geographically distributed computing sites: Data gets typically pre-processed close t...
The world of machine-to-machine (M2M) communication is gradually moving from vertical single purpose...
With more devices on-board the Internet every day, there is a constant drive to balance Quality of ...
Next generation real-time applications demand big-data infrastructures to process huge and continuou...
International audienceStream Processing (SP), i.e., the processing of data in motion, as soon as it ...
International audienceFog computing infrastructure aims to offload computing resources from cloud pr...
International audienceData stream processing is an attractive paradigm for analyzing IoT data at the...
International audienceToday's society faces an unprecedented deluge of data that requires processing...
Stream-oriented applications account for one of the major types of today\u27s computing practices. T...
Stream-oriented applications account for one of the major types of today's computing practices....
Stream-based distributed systems are specialized data processing systems, where a continuous stream ...
AbstractPervasive applications rely on increasingly complex streams of sensor data continuously capt...
International audienceThis paper focuses on SDN-based approaches for deploying stream processing wor...
Under the pressure of massive, exponentially increasing amounts ofheterogeneous data that are genera...
In lately years, data streaming is become more important day by day, considering technologies employ...
The world of machine-to-machine (M2M) communication is gradually moving from vertical single purpose...
With more devices on-board the Internet every day, there is a constant drive to balance Quality of ...
Next generation real-time applications demand big-data infrastructures to process huge and continuou...
International audienceStream Processing (SP), i.e., the processing of data in motion, as soon as it ...
International audienceFog computing infrastructure aims to offload computing resources from cloud pr...
International audienceData stream processing is an attractive paradigm for analyzing IoT data at the...
International audienceToday's society faces an unprecedented deluge of data that requires processing...
Stream-oriented applications account for one of the major types of today\u27s computing practices. T...
Stream-oriented applications account for one of the major types of today's computing practices....
Stream-based distributed systems are specialized data processing systems, where a continuous stream ...
AbstractPervasive applications rely on increasingly complex streams of sensor data continuously capt...
International audienceThis paper focuses on SDN-based approaches for deploying stream processing wor...
Under the pressure of massive, exponentially increasing amounts ofheterogeneous data that are genera...
In lately years, data streaming is become more important day by day, considering technologies employ...
The world of machine-to-machine (M2M) communication is gradually moving from vertical single purpose...
With more devices on-board the Internet every day, there is a constant drive to balance Quality of ...
Next generation real-time applications demand big-data infrastructures to process huge and continuou...