Detecting and recovering from errors in data streams is paramount to developing successful autonomous real-time streaming applications. In this paper, we devise a multi-modal data error detection and recovery architecture to enable automated recovery from data errors in streaming applications based on available redundancy. We formally define error signatures as a way to identify classes of abnormal conditions and mode likelihood vectors as a quantitative discriminator of data stream condition modes. Finally, we design an extension to our own declarative programming language, PILOTS, to include error correction code. We define performance metrics for our approach, and evaluate the impact of monitored data window size and mode likelihood chan...
This paper presents a literature review on data flow error detection and recovery techniques in embe...
Abstract—Many long-running network analytics applications impose a high-throughput and high reliabil...
The continuously increasing volume of data has had a huge impact on information systems and business...
AbstractDetecting and recovering from errors in data streams is paramount to developing successful a...
AbstractDynamic Data-Driven Avionics Systems (DDDAS) embody ideas from the Dynamic Data- Driven Appl...
Dynamic Data-Driven Avionics Systems (DDDAS) embody ideas from the Dynamic Data-Driven Application S...
Stream processing emerged as a paradigm to continuously process incoming live data streams, such as ...
143 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2010.Stream processing emerged as ...
Error data collected at runtime play a key role for dependability analysis and improvement of softwa...
Abstract—This overview is targeted at determining state-of-the-art on Error control mechanisms for v...
Mobile and pervasive applications frequently rely on devices such as RFID antennas or sensors (light...
One of the crucial tasks of an air traffic controller (ATCo) is to evaluate pilot readbacks and to r...
Software systems employed in critical scenarios are increasingly large and complex. The usage of man...
A dependable software system must contain two dependability components: (i) error detection mechanis...
The high-volume and velocity data stream generated from devices and applications from different doma...
This paper presents a literature review on data flow error detection and recovery techniques in embe...
Abstract—Many long-running network analytics applications impose a high-throughput and high reliabil...
The continuously increasing volume of data has had a huge impact on information systems and business...
AbstractDetecting and recovering from errors in data streams is paramount to developing successful a...
AbstractDynamic Data-Driven Avionics Systems (DDDAS) embody ideas from the Dynamic Data- Driven Appl...
Dynamic Data-Driven Avionics Systems (DDDAS) embody ideas from the Dynamic Data-Driven Application S...
Stream processing emerged as a paradigm to continuously process incoming live data streams, such as ...
143 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2010.Stream processing emerged as ...
Error data collected at runtime play a key role for dependability analysis and improvement of softwa...
Abstract—This overview is targeted at determining state-of-the-art on Error control mechanisms for v...
Mobile and pervasive applications frequently rely on devices such as RFID antennas or sensors (light...
One of the crucial tasks of an air traffic controller (ATCo) is to evaluate pilot readbacks and to r...
Software systems employed in critical scenarios are increasingly large and complex. The usage of man...
A dependable software system must contain two dependability components: (i) error detection mechanis...
The high-volume and velocity data stream generated from devices and applications from different doma...
This paper presents a literature review on data flow error detection and recovery techniques in embe...
Abstract—Many long-running network analytics applications impose a high-throughput and high reliabil...
The continuously increasing volume of data has had a huge impact on information systems and business...