Improving I/O performance using virtual disk introspection
Vasily Tarasov, Deepak Jain, et al.
HotStorage 2013
The complexity of cloud-based analytics environments threatens to undermine their otherwise tremendous values. In particular, configuring such environments presents a great challenge. We propose to alleviate this issue with an engine that recommends configurations for a newly submitted analytics job in an intelligent and timely manner. The engine is rooted in a modified k-nearest neighbor algorithm, which finds desirable configurations from similar past jobs that have performed well. We apply the method to configuring an important class of analytics environments: Hadoop on container-driven clouds. Preliminary evaluation suggests up to 28% performance gain could result from our method.
Vasily Tarasov, Deepak Jain, et al.
HotStorage 2013
David M. Eyers, Ramani Routray, et al.
MGC - Middleware 2009
Ali Anwar, Anca Sailer, et al.
IC2E 2015
Rui Zhang, Reshu Jain, et al.
VLDB 2014