We are undeniably living in the era of big data, where people and machines generate information at an unprecedented rate. While processing such data can provide immense value, it can prove especially challenging because of the data\u27s Volume, Variety and Velocity. Velocity can be particularly important in environments that need to respond to incoming data in near real-time, such as cyber-physical systems. In such cases, the batch processing paradigm, which requires all data to be persistently stored and available, might not be appropriate. Instead, it can be desirable to perform stream processing, where unbounded datasets of streaming data are processed in an online manner, generating results quickly and thus significantly benefiting appl...
In modern Stream Processing Engines (SPEs), numerous diverse applications, which can differ in aspec...
Data-stream management systems have for long been considered as a promising architecture for fast da...
Includes bibliographical references.2015 Fall.Improvements in miniaturization and networking capabil...
In our era of big data, information is captured at unprecedented volumes and velocities, with techno...
The field of streaming algorithms has enjoyed a deal of focus from the theoretical computer science ...
Stream processing has a long history as a way of describing and implementing specific kinds of compu...
Data stream processing has gained increasing popularity in the last few years as an effective paradi...
International audienceTuning applications for multicore systems involve subtle concurrency concepts ...
Applications that operate over streaming data withhigh-volume and real-time processing requirements ...
Batch processing technologies (Such as MapReduce, Hive, Pig) have matured and been widely used in th...
Next generation real-time applications demand big-data infrastructures to process huge and continuou...
This tutorial starts with a survey of optimizations for streaming applications. The survey is organi...
Streaming algorithms must process a large quantity of small updates quickly to allow queries about t...
The sheer scale of today\u27s data processing needs has led to a new paradigm of software systems ce...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
In modern Stream Processing Engines (SPEs), numerous diverse applications, which can differ in aspec...
Data-stream management systems have for long been considered as a promising architecture for fast da...
Includes bibliographical references.2015 Fall.Improvements in miniaturization and networking capabil...
In our era of big data, information is captured at unprecedented volumes and velocities, with techno...
The field of streaming algorithms has enjoyed a deal of focus from the theoretical computer science ...
Stream processing has a long history as a way of describing and implementing specific kinds of compu...
Data stream processing has gained increasing popularity in the last few years as an effective paradi...
International audienceTuning applications for multicore systems involve subtle concurrency concepts ...
Applications that operate over streaming data withhigh-volume and real-time processing requirements ...
Batch processing technologies (Such as MapReduce, Hive, Pig) have matured and been widely used in th...
Next generation real-time applications demand big-data infrastructures to process huge and continuou...
This tutorial starts with a survey of optimizations for streaming applications. The survey is organi...
Streaming algorithms must process a large quantity of small updates quickly to allow queries about t...
The sheer scale of today\u27s data processing needs has led to a new paradigm of software systems ce...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
In modern Stream Processing Engines (SPEs), numerous diverse applications, which can differ in aspec...
Data-stream management systems have for long been considered as a promising architecture for fast da...
Includes bibliographical references.2015 Fall.Improvements in miniaturization and networking capabil...