The topic of Data Stream Processing is a recent and highly active research area dealing with the in-memory, tuple-by-tuple analysis of streaming data. Continuous queries typically consume huge volumes of data received at a great velocity. Solutions that persistently store all the input tuples and then perform off-line computation are impractical. Rather, queries must be executed continuously as data cross the streams. The goal of this paper is to present parallel patterns for window-based stateful operators, which are the most representative class of stateful data stream operators. Parallel patterns are presented “à la” Algorithmic Skeleton, by explaining the rationale of each pattern, the preconditions to safely apply it, and the outcome i...
Sequential pattern mining in data streams environment is an interesting data mining problem. The pro...
Pattern-based frameworks for parallel programming provide a set of parallel patterns that solve recu...
Abstract. In this paper we show how parallel algorithms can be turned into efficient streaming algor...
The topic of Data Stream Processing is a recent and highly active research area dealing with the in-...
The topic of Data Stream Processing is a recent and highly active research area dealing with the in-...
We introduce a set of state access patterns suitable for managing accesses to state in parallel comp...
In the stream processing domain, applications are represented by graphs of operators arbitrarily con...
The emergence of the Internet of Things (IoT) data stream applications has posed a number of new cha...
Data stream processing is an emerging computational paradigm to process unbounded flows of data rece...
Streaming applications process possibly infinite streams of data and often have both high throughput...
Streaming applications transform possibly infinite streams of data and often have both high throughp...
Data Stream Processing is a paradigm enabling the real-time processing of live data streams coming f...
This work studies the issues related to dynamic memory management in Data Stream Processing, an emer...
In this paper we show how parallel algorithms can be turned into efficient streaming algorithms for ...
In this paper we show how parallel algorithms can be turned into efficient streaming algorithms for ...
Sequential pattern mining in data streams environment is an interesting data mining problem. The pro...
Pattern-based frameworks for parallel programming provide a set of parallel patterns that solve recu...
Abstract. In this paper we show how parallel algorithms can be turned into efficient streaming algor...
The topic of Data Stream Processing is a recent and highly active research area dealing with the in-...
The topic of Data Stream Processing is a recent and highly active research area dealing with the in-...
We introduce a set of state access patterns suitable for managing accesses to state in parallel comp...
In the stream processing domain, applications are represented by graphs of operators arbitrarily con...
The emergence of the Internet of Things (IoT) data stream applications has posed a number of new cha...
Data stream processing is an emerging computational paradigm to process unbounded flows of data rece...
Streaming applications process possibly infinite streams of data and often have both high throughput...
Streaming applications transform possibly infinite streams of data and often have both high throughp...
Data Stream Processing is a paradigm enabling the real-time processing of live data streams coming f...
This work studies the issues related to dynamic memory management in Data Stream Processing, an emer...
In this paper we show how parallel algorithms can be turned into efficient streaming algorithms for ...
In this paper we show how parallel algorithms can be turned into efficient streaming algorithms for ...
Sequential pattern mining in data streams environment is an interesting data mining problem. The pro...
Pattern-based frameworks for parallel programming provide a set of parallel patterns that solve recu...
Abstract. In this paper we show how parallel algorithms can be turned into efficient streaming algor...