Chrome Extension
WeChat Mini Program
Use on ChatGLM

Using Paralleled-PEs Method to Resolve the Bursting Data in Distributed Stream Processing System

Computational Science and Engineering(2013)

Cited 3|Views0
No score
Abstract
The distributed stream processing applications (DSPA) are the applications which can process real-time data in the distributed environment. These applications contain processing elements (PE) and different kinds of streams in the cluster or cloud environment. However, this kind of applications maybe have hotspots and bursting data in a very short of time when they running in the cluster or cloud. Furthermore, the resources such as memory and CPU power in each node of an environment can lead to resources imbalance because these applications always run in a long time. Considering two problems above, in this paper, we proposed a paralleled-PEs method to relieve the hotspots and bursting data in DSPA. We also approach a dynamic and situational awareness method which can combine with paralleled-PEs method to relieve imbalance situations and improve the utilization of resource. We use some shell scripts and java packages to implement our methods. In our experiments, we deploy these two methods in the S4 system framework which is an open source stream computation platform. And in the experiments evaluation, the results show that our methods have a lower delay, better resources utilization. The results also show that our methods have higher throughput than other methods.
More
Translated text
Key words
open source stream computation,imbalance situation,resources imbalance,bursting data,real-time data,cloud environment,long time,better resources utilization,situational awareness method,experiments evaluation,paralleled-pes method,stream processing system,distributed processing,data handling,parallel processing
AI Read Science
Must-Reading Tree
Example
Generate MRT to find the research sequence of this paper
Chat Paper
Summary is being generated by the instructions you defined