DocumentCode :
659512
Title :
Layout-aware I/O Scheduling for terabits data movement
Author :
Youngjae Kim ; Atchley, Scott ; Vallee, Geoffroy R. ; Shipman, Galen M.
Author_Institution :
Oak Ridge Nat. Lab., Oak Ridge, TN, USA
fYear :
2013
fDate :
6-9 Oct. 2013
Firstpage :
44
Lastpage :
51
Abstract :
Many science facilities, such as the Department of Energy´s Leadership Computing Facilities and experimental facilities including the Spallation Neutron Source, Stanford Linear Accelerator Center, and Advanced Photon Source, produce massive amounts of experimental and simulation data. These data are often shared among the facilities and with collaborating institutions. Moving large datasets over the wide-area network (WAN) is a major problem inhibiting collaboration. Next-generation, terabit-networks will help alleviate the problem, however, the parallel storage systems on the endsystem hosts at these institutions can become a bottleneck for terabit data movement. The parallel storage system (PFS) is shared by simulation systems, experimental systems, analysis and visualization clusters, in addition to wide-area data movers. These competing uses often induce temporary, but significant, I/O load imbalances on the storage system, which impact the performance of all the users. The problem is a serious concern because some resources are more expensive (e.g. super computers) or have time-critical deadlines (e.g. experimental data from a light source), but parallel file systems handle all requests fairly even if some storage servers are under heavy load. This paper investigates the problem of competing workloads accessing the parallel file system and how the performance of wide-area data movement can be improved in these environments. First, we study the I/O load imbalance problems using actual I/O performance data collected from the Spider storage system at the Oak Ridge Leadership Computing Facility. Second, we present I/O optimization solutions with layout-awareness on end-system hosts for bulk data movement. With our evaluation, we show that our I/O optimization techniques can avoid the I/O congested disk groups, improving storage I/O times on parallel storage systems for terabit data movement.
Keywords :
input-output programs; natural sciences computing; parallel databases; resource allocation; scheduling; wide area networks; IO congested disk groups; IO load imbalances; IO optimization solutions; IO performance data; Oak Ridge leadership computing facility; PFS; Stanford linear accelerator center; WAN; advanced photon source; bulk data movement; department of energy; end-system hosts; experimental facilities; layout-aware IO scheduling; layout-awareness; leadership computing facilities; next-generation terabit-networks; parallel file systems; parallel storage systems; science facilities; spallation neutron source; spider storage system; storage IO times; terabit data movement; terabits data movement; time-critical deadlines; visualization clusters; wide-area data movers; wide-area network; Algorithm design and analysis; Bandwidth; Instruction sets; Lead; Optimization; Servers; Standards; I/O Scheduling; Networking; Storage Systems;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Big Data, 2013 IEEE International Conference on
Conference_Location :
Silicon Valley, CA
Type :
conf
DOI :
10.1109/BigData.2013.6691661
Filename :
6691661
Link To Document :
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