The inherently large and varying volumes of data generated to facilitate autonomous functionality in large scale cyber-physical systems demand near real-time processing of data streams, often as close to the sensing devices as possible. In this context, data streaming is imperative for data intensive processing infrastructures. Stream joins, the streaming counterpart of database joins, compare tuples coming from different streams and constitute one of the most important and expensive data streaming operators. Dictated by the needs of big data streaming analytics, algorithmic implementations of stream joins have to be capable of efficiently processing bursty and rate-varying data streams in a deterministic and skew resilient fashion. To leve...
Multi-way stream joins with expensive join predicates lead to great challenge for real-time (or clos...
Summarization: Stream join is a fundamental and computationally expensive data mining operation for ...
The aim of this thesis is to address Data Stream Processing issues from the point of view of High Pe...
The inherently large and varying volumes of data generated to facilitate autonomous functionality in...
Motivated by the inherently high computational complexity of stream joins, a considerable research e...
Efficient and scalable stream joins play an important role in performing real-time analytics for man...
The problem of coping with the demands of determinism and meeting latency constraints is challenging...
In this work we present the design, implementation and evaluation of our approach to solve the DEBS ...
Summarization: Stream join is a fundamental operation that combines information from different high-...
Data Stream Processing (DaSP) is a paradigm characterized by on-line (often real-time) applications ...
Streaming analysis is widely used in a variety of environments, from cloud computing infrastructures...
Summarization: Stream join is one of the most fundamental operations to relate information from diff...
This article addresses the profitability problem associated with auto-parallelization of general-pur...
Scalable join processing in a parallel shared-nothing environment requires a partitioning policy tha...
Stream processing applications extract value from raw data through Directed Acyclic Graphs of data a...
Multi-way stream joins with expensive join predicates lead to great challenge for real-time (or clos...
Summarization: Stream join is a fundamental and computationally expensive data mining operation for ...
The aim of this thesis is to address Data Stream Processing issues from the point of view of High Pe...
The inherently large and varying volumes of data generated to facilitate autonomous functionality in...
Motivated by the inherently high computational complexity of stream joins, a considerable research e...
Efficient and scalable stream joins play an important role in performing real-time analytics for man...
The problem of coping with the demands of determinism and meeting latency constraints is challenging...
In this work we present the design, implementation and evaluation of our approach to solve the DEBS ...
Summarization: Stream join is a fundamental operation that combines information from different high-...
Data Stream Processing (DaSP) is a paradigm characterized by on-line (often real-time) applications ...
Streaming analysis is widely used in a variety of environments, from cloud computing infrastructures...
Summarization: Stream join is one of the most fundamental operations to relate information from diff...
This article addresses the profitability problem associated with auto-parallelization of general-pur...
Scalable join processing in a parallel shared-nothing environment requires a partitioning policy tha...
Stream processing applications extract value from raw data through Directed Acyclic Graphs of data a...
Multi-way stream joins with expensive join predicates lead to great challenge for real-time (or clos...
Summarization: Stream join is a fundamental and computationally expensive data mining operation for ...
The aim of this thesis is to address Data Stream Processing issues from the point of view of High Pe...