International audienceThe widespread use of social networks and applications such as IoT networks generates a continuous stream of data that companies and researchers want to process, ideally in real-time. Data stream processing systems (DSP) enable such continuous data analysis by implementing the set of operations to be performed on the stream as directed acyclic graph (DAG) of tasks. While these DSP systems embed mechanisms to ensure fault tolerance and message reliability, only few studies focus on the impact of these mechanisms on the performance of applications at runtime. In this paper, we demonstrate the impact of the message reliability mechanism on the performance of the application. We use an experimental approach, using the Stor...
Distributed Stream Processing Systems (DSPS) are ``Fast Data'' platforms that allow streaming applic...
Stream processing emerged as a paradigm to continuously process incoming live data streams, such as ...
The era of big data has led to the emergence of new systems for real-time distributed stream process...
Fog computing is rapidly changing the distributed computing landscape by extending the Cloud computi...
Systems enabling the continuous processing of large data streams have recently attracted the attenti...
In the era of big data, with streaming applications such as social media, surveillance monitoring an...
Applications characterized by the continuous processing of large data streams have recently attracte...
The velocity dimension of Big Data refers to the need to rapidly process data that arrives continuou...
Le traitement des flux de données (DSP) est un paradigme établi de Big Data qui permet de traiter et...
Data Stream Processing (DSP) is an established Big Data paradigm that allows to process and analyze ...
ii The era of big data has led to the emergence of new systems for real-time distributed stream proc...
Event Stream Processing (ESP) is a well-established approach for low-latency data processing enablin...
Today we are witnessing a dramatic shift toward a data-driven economy, where the ability to efficien...
Major advances in the fault tolerance of distributed stream processing systems provided the systems ...
Parallel and distributed computing is becoming essential to process in real time the increasingly ma...
Distributed Stream Processing Systems (DSPS) are ``Fast Data'' platforms that allow streaming applic...
Stream processing emerged as a paradigm to continuously process incoming live data streams, such as ...
The era of big data has led to the emergence of new systems for real-time distributed stream process...
Fog computing is rapidly changing the distributed computing landscape by extending the Cloud computi...
Systems enabling the continuous processing of large data streams have recently attracted the attenti...
In the era of big data, with streaming applications such as social media, surveillance monitoring an...
Applications characterized by the continuous processing of large data streams have recently attracte...
The velocity dimension of Big Data refers to the need to rapidly process data that arrives continuou...
Le traitement des flux de données (DSP) est un paradigme établi de Big Data qui permet de traiter et...
Data Stream Processing (DSP) is an established Big Data paradigm that allows to process and analyze ...
ii The era of big data has led to the emergence of new systems for real-time distributed stream proc...
Event Stream Processing (ESP) is a well-established approach for low-latency data processing enablin...
Today we are witnessing a dramatic shift toward a data-driven economy, where the ability to efficien...
Major advances in the fault tolerance of distributed stream processing systems provided the systems ...
Parallel and distributed computing is becoming essential to process in real time the increasingly ma...
Distributed Stream Processing Systems (DSPS) are ``Fast Data'' platforms that allow streaming applic...
Stream processing emerged as a paradigm to continuously process incoming live data streams, such as ...
The era of big data has led to the emergence of new systems for real-time distributed stream process...