Big data analytics platforms have played a critical role in the unprecedented success of data-driven applications. However, real-time and streaming data applications, and recent legislation, e.g., GDPR in Europe, have posed constraints on exchanging and analyzing data, especially personal data, across geographic regions. To address such constraints data has to be processed and analyzed in-situ and aggregated results have to be exchanged among the different sites for further processing. This introduces additional network delays due to the geographic distribution of the sites and potentially affecting the performance of analytics platforms that are designed to operate in datacenters with low network delays. In this paper, we show that the thr...
Distributed execution of real-time data analytics such as event stream processing is the key to scal...
As we inject more and more "smartness" into energy networks, it unfolds fine-grained data. Around 80...
In the last decade, real-time data processing has attracted much attention from both academic commun...
Big data analytics platforms have played a critical role in the unprecedented success of data-driven...
A variety of Internet applications rely on big data analytics frameworks to efficiently process larg...
Big Data is not a new challenge, and nowadays the focus has shifted from getting results to getting ...
Many applications must ingest rapid streams of data and produce analytics results in near-real-...
International audienceRecently, hybrid multi-site big data analytics (that combines on-premise with ...
Low latency analytics on geographically distributed dat-asets (across datacenters, edge clusters) is...
Global-scale data management(GSDM) empowers systems by providing higher levels of fault-tolerance, r...
University of Minnesota Ph.D. dissertation. December 2016. Major: Computer Science. Advisor: Abhishe...
Performance variability has been acknowledged as a problem for over a decade by cloud practitioners ...
Next generation real-time applications demand big-data infrastructures to process huge and continuou...
Struggling with the volume and velocity of Big Data has attracted lots of interest towards stream pr...
Distributed execution of real-time data analytics such as event stream processing is the key to scal...
As we inject more and more "smartness" into energy networks, it unfolds fine-grained data. Around 80...
In the last decade, real-time data processing has attracted much attention from both academic commun...
Big data analytics platforms have played a critical role in the unprecedented success of data-driven...
A variety of Internet applications rely on big data analytics frameworks to efficiently process larg...
Big Data is not a new challenge, and nowadays the focus has shifted from getting results to getting ...
Many applications must ingest rapid streams of data and produce analytics results in near-real-...
International audienceRecently, hybrid multi-site big data analytics (that combines on-premise with ...
Low latency analytics on geographically distributed dat-asets (across datacenters, edge clusters) is...
Global-scale data management(GSDM) empowers systems by providing higher levels of fault-tolerance, r...
University of Minnesota Ph.D. dissertation. December 2016. Major: Computer Science. Advisor: Abhishe...
Performance variability has been acknowledged as a problem for over a decade by cloud practitioners ...
Next generation real-time applications demand big-data infrastructures to process huge and continuou...
Struggling with the volume and velocity of Big Data has attracted lots of interest towards stream pr...
Distributed execution of real-time data analytics such as event stream processing is the key to scal...
As we inject more and more "smartness" into energy networks, it unfolds fine-grained data. Around 80...
In the last decade, real-time data processing has attracted much attention from both academic commun...