With the upswing in the volume of data, information online, and magnanimous cloud applications, big data analytics becomes mainstream in the research communities in the industry as well as in the scholarly world. This prompted the emergence and development of real-time distributed stream processing frameworks, such as Flink, Storm, Spark, and Samza. These frameworks endorse complex queries on streaming data to be distributed across multiple worker nodes in a cluster. Few of these stream processing frameworks provides fundamental support for controlling the latency and throughput of the system as well as the correctness of the results. However, none has the ability to handle them on the fly at runtime. We present a well-informed and efficien...
As data permeates all disciplines, the role of big data becomes increasingly important. Sensors, IoT...
In today's world, stream processing systems have become important, as applications like media broadc...
More and more use cases require fast, accurate, and reliable processing of large volumes of data. To...
With the upswing in the volume of data, information online, and magnanimous cloud applications, big ...
The need for scalable and efficient stream analysis has led to the development of many open-source s...
Cloud computing has evolved the big data technologies to a consolidated paradigm with SPaaS (Streami...
Cloud computing has evolved the big data technologies to a consolidated paradigm with SPaaS (Streami...
This paper describes a benchmark for stream processing frameworks allowing accurate latency benchmar...
A growing number of applications require continuous pro-cessing of high-throughput data streams, e.g...
Over the past decade, the demand for real time processing of huge amount of streaming data has emerg...
Distributed Stream Processing systems have become an essential part of big data processing platforms...
The ability to process large volumes of data on the fly, as soon as they become available, is a fund...
This paper proposes a learned cost estimation model for Distributed Stream Processing Systems (DSPS)...
Present-day computing systems have to deal with a continuous growth of data rate and volume. Process...
© 2018 Dr. Xunyun LiuStream processing is an emerging in-memory computing paradigm that ingests dyna...
As data permeates all disciplines, the role of big data becomes increasingly important. Sensors, IoT...
In today's world, stream processing systems have become important, as applications like media broadc...
More and more use cases require fast, accurate, and reliable processing of large volumes of data. To...
With the upswing in the volume of data, information online, and magnanimous cloud applications, big ...
The need for scalable and efficient stream analysis has led to the development of many open-source s...
Cloud computing has evolved the big data technologies to a consolidated paradigm with SPaaS (Streami...
Cloud computing has evolved the big data technologies to a consolidated paradigm with SPaaS (Streami...
This paper describes a benchmark for stream processing frameworks allowing accurate latency benchmar...
A growing number of applications require continuous pro-cessing of high-throughput data streams, e.g...
Over the past decade, the demand for real time processing of huge amount of streaming data has emerg...
Distributed Stream Processing systems have become an essential part of big data processing platforms...
The ability to process large volumes of data on the fly, as soon as they become available, is a fund...
This paper proposes a learned cost estimation model for Distributed Stream Processing Systems (DSPS)...
Present-day computing systems have to deal with a continuous growth of data rate and volume. Process...
© 2018 Dr. Xunyun LiuStream processing is an emerging in-memory computing paradigm that ingests dyna...
As data permeates all disciplines, the role of big data becomes increasingly important. Sensors, IoT...
In today's world, stream processing systems have become important, as applications like media broadc...
More and more use cases require fast, accurate, and reliable processing of large volumes of data. To...