Nowadays, modern Big Stream Processing Solutions (e.g. Spark, Flink) are working towards ultimate frameworks for streaming analytics. In order to achieve this goal, they started to offer extensions of SQL that incorporate stream-oriented primitives such as windowing and Complex Event Processing (CEP). The former enables stateful computation on infinite sequences of data items while the latter focuses on the detection of events pattern. In most of the cases, data items and events are considered instantaneous, i.e., they are single time points in a discrete temporal domain. Nevertheless, a point-based time semantics does not satisfy the requirements of a number of use-cases. For instance, it is not possible to detect the interval during which...
Processing streams of linked data has gained increased importance over the past years. In many cases...
In applications field such as business activity monitoring, telecommunications data management, web ...
In this paper we propose a formal model for characterizing latencies affecting the computation of a ...
Nowadays, modern Big Stream Processing Solutions (e.g. Spark, Flink) are working towards ultimate fr...
Current, data-driven applications have become more dynamic in nature, with the need to respond to ev...
The data streaming paradigm was introduced around the year 2000 to overcome the limitations of tradi...
There has been a rising need to handle and process streaming kind of data. It is continuous, unpred...
Cataloged from PDF version of article.Management and analysis of streaming data has become crucial w...
International audienceThe Big Data era requires new processing architectures, among which streaming ...
\u3cp\u3eThis paper address the problem of temporal pattern mining from multiple data streams contai...
Data stream management systems (DSMS) so far focus on event queries and hardly consider combined que...
This article proposes an approach to rely on the standard operators of relational algebra (including...
Continuous queries in a Data Stream Management System (DSMS) rely on time as a basis for win-dows on...
Event stream processing (ESP) has become increasingly important in modern applications. In this diss...
Recently there has been considerable research on Data Stream Management Systems (DSMS) to support a...
Processing streams of linked data has gained increased importance over the past years. In many cases...
In applications field such as business activity monitoring, telecommunications data management, web ...
In this paper we propose a formal model for characterizing latencies affecting the computation of a ...
Nowadays, modern Big Stream Processing Solutions (e.g. Spark, Flink) are working towards ultimate fr...
Current, data-driven applications have become more dynamic in nature, with the need to respond to ev...
The data streaming paradigm was introduced around the year 2000 to overcome the limitations of tradi...
There has been a rising need to handle and process streaming kind of data. It is continuous, unpred...
Cataloged from PDF version of article.Management and analysis of streaming data has become crucial w...
International audienceThe Big Data era requires new processing architectures, among which streaming ...
\u3cp\u3eThis paper address the problem of temporal pattern mining from multiple data streams contai...
Data stream management systems (DSMS) so far focus on event queries and hardly consider combined que...
This article proposes an approach to rely on the standard operators of relational algebra (including...
Continuous queries in a Data Stream Management System (DSMS) rely on time as a basis for win-dows on...
Event stream processing (ESP) has become increasingly important in modern applications. In this diss...
Recently there has been considerable research on Data Stream Management Systems (DSMS) to support a...
Processing streams of linked data has gained increased importance over the past years. In many cases...
In applications field such as business activity monitoring, telecommunications data management, web ...
In this paper we propose a formal model for characterizing latencies affecting the computation of a ...