Title :
A lightweight I/O scheme to facilitate spatial and temporal queries of scientific data analytics
Author :
Yuan Tian ; Zhuo Liu ; Klasky, Scott ; Bin Wang ; Abbasi, Hasan ; Shujia Zhou ; Podhorszki, Norbert ; Clune, Thomas ; Logan, J. ; Weikuan Yu
Abstract :
In the era of petascale computing, more scientific applications are being deployed on leadership scale computing platforms to enhance the scientific productivity. Many I/O techniques have been designed to address the growing I/O bottleneck on large-scale systems by handling massive scientific data in a holistic manner. While such techniques have been leveraged in a wide range of applications, they have not been shown as adequate for many mission critical applications, particularly in data postprocessing stage. One of the examples is that some scientific applications generate datasets composed of a vast amount of small data elements that are organized along many spatial and temporal dimensions but require sophisticated data analytics on one or more dimensions. Including such dimensional knowledge into data organization can be beneficial to the efficiency of data post-processing, which is often missing from exiting I/O techniques. In this study, we propose a novel I/O scheme named STAR (Spatial and Temporal AggRegation) to enable high performance data queries for scientific analytics. STAR is able to dive into the massive data, identify the spatial and temporal relationships among data variables, and accordingly organize them into an optimized multi-dimensional data structure before storing to the storage. This technique not only facilitates the common access patterns of data analytics, but also further reduces the application turnaround time. In particular, STAR is able to enable efficient data queries along the time dimension, a practice common in scientific analytics but not yet supported by existing I/O techniques. In our case study with a critical climate modeling application GEOS-5, the experimental results on Jaguar supercomputer demonstrate an improvement up to 73 times for the read performance compared to the original I/O method.
Keywords :
climate mitigation; data analysis; data structures; geophysics computing; input-output programs; parallel machines; query processing; scientific information systems; GEOS-5; I/O bottleneck; I/O method; I/O techniques; Jaguar supercomputer; STAR; common access patterns; critical climate modeling application; data elements; data organization; data post-processing; data postprocessing stage; data variables; dimensional knowledge; high performance data query; holistic manner; large-scale systems; leadership scale computing platforms; lightweight I/O scheme; many mission critical applications; massive data; massive scientific data; optimized multidimensional data structure; petascale computing; scientific analytics; scientific applications; scientific data analytics; scientific productivity; sophisticated data analytics; spatial and temporal aggregation; spatial dimensions; spatial query; spatial relationships; temporal dimensions; temporal query; temporal relationships; time dimension; turnaround time; Arrays; Computational modeling; Data models; Layout; Meteorology; Organizations; Spatial databases;
Conference_Titel :
Mass Storage Systems and Technologies (MSST), 2013 IEEE 29th Symposium on
Conference_Location :
Long Beach, CA
Print_ISBN :
978-1-4799-0217-0
DOI :
10.1109/MSST.2013.6558441