• DocumentCode
    3124418
  • Title

    S-preconditioner for Multi-fold Data Reduction with Guaranteed User-Controlled Accuracy

  • Author

    Jin, Ye ; Lakshminarasimhan, Sriram ; Shah, Neil ; Gong, Zhenhuan ; Chang, C.S. ; Chen, Jackie ; Ethier, Stephane ; Kolla, Hemanth ; Ku, Seung-Hoe ; Klasky, Scott ; Latham, Robert ; Ross, Robert ; Schuchardt, Karen ; Samatova, Nagiza F.

  • Author_Institution
    North Carolina State Univ., Raleigh, NC, USA
  • fYear
    2011
  • fDate
    11-14 Dec. 2011
  • Firstpage
    290
  • Lastpage
    299
  • Abstract
    The growing gap between the massive amounts of data generated by petascale scientific simulation codes and the capability of system hardware and software to effectively analyze this data necessitates data reduction. Yet, the increasing data complexity challenges most, if not all, of the existing data compression methods. In fact, lossless compression techniques offer no more than 10% reduction on scientific data that we have experience with, which is widely regarded as effectively incompressible. To bridge this gap, in this paper, we advocate a transformative strategy that enables fast, accurate, and multi-fold reduction of double-precision floating-point scientific data. The intuition behind our method is inspired by an effective use of preconditioners for linear algebra solvers optimized for a particular class of computational "dwarfs" (e.g., dense or sparse matrices). Focusing on a commonly used multi-resolution wavelet compression technique as the underlying "solver" for data reduction we propose the S-preconditioner, which transforms scientific data into a form with high global regularity to ensure a significant decrease in the number of wavelet coefficients stored for a segment of data. Combined with the subsequent EQ-calibrator, our resultant method (called S-Preconditioned EQ-Calibrated Wavelets (SPEQC-Wavelets)), robustly achieved a 4- to 5-fold data reduction-while guaranteeing user-defined accuracy of reconstructed data to be within 1% point-by-point relative error, lower than 0.01 Normalized RMSE, and higher than 0.99 Pearson Correlation. In this paper, we show the results we obtained by testing our method on six petascale simulation codes including fusion, combustion, climate, astrophysics, and subsurface groundwater in addition to 13 publicly available scientific datasets. We also demonstrate that application-driven data mining tasks performed on decompressed variables or their derived quantities produce results of comparable quality with the ones for- the original data.
  • Keywords
    data analysis; data mining; data reduction; mean square error methods; wavelet transforms; Pearson correlation; S-preconditioner; application driven data mining; data analysis; data complexity; data reconstruction; double-precision floating-point scientific data; linear algebra solvers; lossless data compression techniques; multifold data reduction; multiresolution wavelet compression technique; petascale scientific simulation codes; system hardware capability; system software capability; transformative strategy; user-controlled accuracy; wavelet coefficients; Accuracy; Correlation; Data models; Indexes; Sparse matrices; Vectors; Wavelet transforms; data mining over decompressed data; data reduction; extreme-scale data analytics; in situ data analytics; preconditioners for data mining;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Data Mining (ICDM), 2011 IEEE 11th International Conference on
  • Conference_Location
    Vancouver,BC
  • ISSN
    1550-4786
  • Print_ISBN
    978-1-4577-2075-8
  • Type

    conf

  • DOI
    10.1109/ICDM.2011.138
  • Filename
    6137233