Many applications in several domains such as telecommunications, network security, large scale sensor networks, require online processing of continuous data lows. They produce very high loads that requires aggregating the processing capacity of many nodes. Current Stream Processing Engines do not scale with the input load due to single-node bottlenecks. Additionally, they are based on static con?gurations that lead to either under or over-provisioning. In this paper, we present StreamCloud, a scalable and elastic stream processing engine for processing large data stream volumes. StreamCloud uses a novel parallelization technique that splits queries into subqueries that are allocated to independent sets of nodes in a way that minimizes the d...
Despite the established scientific knowledge on efficient parallel and elastic data stream processin...
Next generation real-time applications demand big-data infrastructures to process huge and continuou...
Distributed stream processing frameworks are designed to perform continuous computation on possibly ...
Many applications in several domains such as telecommunications, network security, large scale senso...
In recent years, applications in domains such as telecommunications, network security or large scale...
In recent years, applications in domains such as telecommunications, network security or large scale...
Abstract—Data streaming has become an important paradigm for the real-time processing of continuous ...
International audienceUnder several emerging application scenarios, such as in smart cities, operati...
In this tutorial we present the results of recent research about the cloud enablement of data stream...
This article addresses the profitability problem associated with auto-parallelization of general-pur...
Distributed stream processing frameworks are designed to perform continuous computation on possibly ...
Stream processing applications extract value from raw data through Directed Acyclic Graphs of data a...
In this tutorial we present the results of recent research about the cloud enablement of data stream...
More and more use cases require fast, accurate, and reliable processing of large volumes of data. To...
With its real-time capabilities, stream processing is popular for applications like anomaly detectio...
Despite the established scientific knowledge on efficient parallel and elastic data stream processin...
Next generation real-time applications demand big-data infrastructures to process huge and continuou...
Distributed stream processing frameworks are designed to perform continuous computation on possibly ...
Many applications in several domains such as telecommunications, network security, large scale senso...
In recent years, applications in domains such as telecommunications, network security or large scale...
In recent years, applications in domains such as telecommunications, network security or large scale...
Abstract—Data streaming has become an important paradigm for the real-time processing of continuous ...
International audienceUnder several emerging application scenarios, such as in smart cities, operati...
In this tutorial we present the results of recent research about the cloud enablement of data stream...
This article addresses the profitability problem associated with auto-parallelization of general-pur...
Distributed stream processing frameworks are designed to perform continuous computation on possibly ...
Stream processing applications extract value from raw data through Directed Acyclic Graphs of data a...
In this tutorial we present the results of recent research about the cloud enablement of data stream...
More and more use cases require fast, accurate, and reliable processing of large volumes of data. To...
With its real-time capabilities, stream processing is popular for applications like anomaly detectio...
Despite the established scientific knowledge on efficient parallel and elastic data stream processin...
Next generation real-time applications demand big-data infrastructures to process huge and continuou...
Distributed stream processing frameworks are designed to perform continuous computation on possibly ...