Skip to main content
SHARE
Publication

Quality-Aware Data Management for Large Scale Scientific Applications...

Publication Type
Conference Paper
Publication Date
Page Numbers
816 to 820
Conference Name
9th International Conference on Service Computing
Conference Location
Honolulu, Hawaii, United States of America
Conference Date
-

Increasingly larger scale simulations are generating an unprecedented amount of output data, causing researchers to explore new ‘data staging’ methods that buffer, use, and/or reduce such data online rather than simply pushing it to disk. Leveraging the capabilities of data staging, this study explores the potential for data reduction via online data compression, first using general compression techniques and then proposing usespecific methods that permit users to define simple data queries that cause only the data identified by those queries to be emitted. Using online methods for code generation and deployment, with such dynamic data queries, end users can precisely identify the quality of information (QoI) of their output data, by explicitly determining what data may be lost vs. retained, in contrast to general-purpose lossy compression methods that do not provide such levels of control. The paper also describes the key elements of a quality-aware data management system (QADMS) for highend machines enabled by this approach. Initial experimental
results demonstrate that QADMS can effectively reduce data movement cost and improve the QoS while meeting the QoI constraint stated by users.