کد مقاله | کد نشریه | سال انتشار | مقاله انگلیسی | نسخه تمام متن |
---|---|---|---|---|
431452 | 688550 | 2015 | 12 صفحه PDF | دانلود رایگان |
• We describe a fault-tolerant data aggregation algorithm for dynamic networks.
• Experimental results show it outperforms previous averaging techniques.
• It self-adapts to churn and input value changes.
• It supports node crashes and high levels of message loss.
• It works in asynchronous settings.
Data aggregation is a fundamental building block of modern distributed systems. Averaging based approaches, commonly designated gossip-based, are an important class of aggregation algorithms as they allow all nodes to produce a result, converge to any required accuracy, and work independently from the network topology. However, existing approaches exhibit many dependability issues when used in faulty and dynamic environments. This paper describes and evaluates a fault tolerant distributed aggregation technique, Flow Updating, which overcomes the problems in previous averaging approaches and is able to operate on faulty dynamic networks. Experimental results show that this novel approach outperforms previous averaging algorithms; it self-adapts to churn and input value changes without requiring any periodic restart, supporting node crashes and high levels of message loss, and works in asynchronous networks. Realistic concerns have been taken into account in evaluating Flow Updating, like the use of unreliable failure detectors and asynchrony, targeting its application to realistic environments.
Journal: Journal of Parallel and Distributed Computing - Volume 78, April 2015, Pages 53–64