Struggling with the volume and velocity of Big Data has attracted lots of interest towards stream processing paradigm, a paradigm in the area of data-intensive computing that provides methods and solutions to process data in motion. Today's Big Data includes geo-distributed data sources.In addition, a major part of today's Big Data requires exploring complex and evolving relationships among data, which complicates any reasoning on the data. This thesis aims at challenges raised by geo-distributed streaming data, and the data with complex and evolving relationships. Many organizations provide global scale applications and services that are hosted on servers and data centers that are located in different parts of the world. Therefore, the dat...
Many applications must ingest rapid streams of data and produce analytics results in near-real-...
International audienceUnder several emerging application scenarios, such as in smart cities, operati...
Streaming analytics applications need to process massive volumes of data in a timely manner, in doma...
Struggling with the volume and velocity of Big Data has attracted lots of interest towards stream pr...
In this thesis, our goal is to enable and achieve effective and efficient real-time stream processin...
In stream processing, data is streamed as a continuous flow of data items, which are generated from ...
In the last decade, real-time data processing has attracted much attention from both academic commun...
Recent years have witnessed a massive increase in the amount of data generated by the Internet of Th...
Recent years have witnessed a massive increase in the amount of data generated by the Internet of Th...
Massive data sets are increasingly important in a wide range of applications, including observationa...
DoctorFast and Scalable graph processing is the key to realize the great potential of the graph data...
University of Minnesota Ph.D. dissertation. December 2016. Major: Computer Science. Advisor: Abhishe...
International audienceMuch of the "big data" generated today is received in near real-time and requi...
International audienceGraph processing is an emerging computation model for a wide range of applicat...
Next generation real-time applications demand big-data infrastructures to process huge and continuou...
Many applications must ingest rapid streams of data and produce analytics results in near-real-...
International audienceUnder several emerging application scenarios, such as in smart cities, operati...
Streaming analytics applications need to process massive volumes of data in a timely manner, in doma...
Struggling with the volume and velocity of Big Data has attracted lots of interest towards stream pr...
In this thesis, our goal is to enable and achieve effective and efficient real-time stream processin...
In stream processing, data is streamed as a continuous flow of data items, which are generated from ...
In the last decade, real-time data processing has attracted much attention from both academic commun...
Recent years have witnessed a massive increase in the amount of data generated by the Internet of Th...
Recent years have witnessed a massive increase in the amount of data generated by the Internet of Th...
Massive data sets are increasingly important in a wide range of applications, including observationa...
DoctorFast and Scalable graph processing is the key to realize the great potential of the graph data...
University of Minnesota Ph.D. dissertation. December 2016. Major: Computer Science. Advisor: Abhishe...
International audienceMuch of the "big data" generated today is received in near real-time and requi...
International audienceGraph processing is an emerging computation model for a wide range of applicat...
Next generation real-time applications demand big-data infrastructures to process huge and continuou...
Many applications must ingest rapid streams of data and produce analytics results in near-real-...
International audienceUnder several emerging application scenarios, such as in smart cities, operati...
Streaming analytics applications need to process massive volumes of data in a timely manner, in doma...