Summarization: While traditional data management systems focus on evaluating single, ad hoc queries over static data sets in a centralized setting, several emerging applications require (possibly, continuous) answers to queries on dynamic data that is widely distributed and constantly updated. Furthermore, such query answers often need to discount data that is “stale” and operate solely on a sliding window of recent data arrivals (e.g., data updates occurring over the last 24 h). Such distributed data streaming applications mandate novel algorithmic solutions that are both time and space efficient (to manage high-speed data streams) and also communication efficient (to deal with physical data distribution). In this paper, we consider the pr...
Summarization: While traditional database systems optimize for performance on one-shot query process...
Summarization: Emerging large-scale monitoring applications require continuous tracking of complex d...
In this paper we extend the study of algorithms for monitoring distributed data streams from whole d...
\u3cp\u3eWhile traditional data management systems focus on evaluating single, ad hoc queries over s...
While traditional data-management systems focus on evaluating single, ad-hoc queries over static dat...
International audienceEstimating the frequency of any piece of information in large-scale distribute...
International audienceEstimating the frequency of any piece of information in large-scale distribute...
International audienceEstimating the frequency of any piece of information in large-scale distribute...
Summarization: Traditional data management systems map information using centralized and static data...
GDD_HCERES2020Estimating the frequency of any piece of information in large-scale distributed data s...
GDD_HCERES2020Estimating the frequency of any piece of information in large-scale distributed data s...
Distributed data stream mining in a sliding window has emerged recently, due to its applications in ...
Traditional data management systems map information using centralized and static data structures. Mo...
Traditional data management systems map information using centralized and static data structures. Mo...
Traditional data management systems map information using centralized and static data structures. Mo...
Summarization: While traditional database systems optimize for performance on one-shot query process...
Summarization: Emerging large-scale monitoring applications require continuous tracking of complex d...
In this paper we extend the study of algorithms for monitoring distributed data streams from whole d...
\u3cp\u3eWhile traditional data management systems focus on evaluating single, ad hoc queries over s...
While traditional data-management systems focus on evaluating single, ad-hoc queries over static dat...
International audienceEstimating the frequency of any piece of information in large-scale distribute...
International audienceEstimating the frequency of any piece of information in large-scale distribute...
International audienceEstimating the frequency of any piece of information in large-scale distribute...
Summarization: Traditional data management systems map information using centralized and static data...
GDD_HCERES2020Estimating the frequency of any piece of information in large-scale distributed data s...
GDD_HCERES2020Estimating the frequency of any piece of information in large-scale distributed data s...
Distributed data stream mining in a sliding window has emerged recently, due to its applications in ...
Traditional data management systems map information using centralized and static data structures. Mo...
Traditional data management systems map information using centralized and static data structures. Mo...
Traditional data management systems map information using centralized and static data structures. Mo...
Summarization: While traditional database systems optimize for performance on one-shot query process...
Summarization: Emerging large-scale monitoring applications require continuous tracking of complex d...
In this paper we extend the study of algorithms for monitoring distributed data streams from whole d...