Making a case for the on-demand multiple distributed message queue system in a Hadoop cluster

CN Nguyen, S Hwang, JS Kim - Cluster Computing, 2017 - Springer
CN Nguyen, S Hwang, JS Kim
Cluster Computing, 2017Springer
In this paper, we present a framework that can provide users with a simple, convenient and
powerful way to deploy multiple message queue system on demand in a Hadoop cluster.
Specifically, we are leveraging the Apache Kafka which is one of the state of art distributed
message queue systems that can achieve high throughput, low latency, and good load
balancing. Our framework provides automation of setting up and starting Kafka brokers on
the fly and users can leverage the framework to quickly adopt Kafka without spending much …
Abstract
In this paper, we present a framework that can provide users with a simple, convenient and powerful way to deploy multiple message queue system on demand in a Hadoop cluster. Specifically, we are leveraging the Apache Kafka which is one of the state of art distributed message queue systems that can achieve high throughput, low latency, and good load balancing. Our framework provides automation of setting up and starting Kafka brokers on the fly and users can leverage the framework to quickly adopt Kafka without spending much efforts on installation and configuration challenges. In addition, the framework supports users to run their Kafka-based applications without detailed knowledge about the Hadoop YARN APIs and underlying mechanisms. We present a use case of the framework to evaluate Kafka’s performance with various test cases and working scenarios. The experimental results allow Kafka’s potential users to perceive the influences of different settings on the queuing performance.
Springer
Showing the best result for this search. See all results