Inicio  /  Algorithms  /  Vol: 14 Par: 5 (2021)  /  Artículo
ARTÍCULO
TITULO

Accelerating In-Transit Co-Processing for Scientific Simulations Using Region-Based Data-Driven Analysis

Marcus Walldén    
Masao Okita    
Fumihiko Ino    
Dimitris Drikakis and Ioannis Kokkinakis    

Resumen

Increasing processing capabilities and input/output constraints of supercomputers have increased the use of co-processing approaches, i.e., visualizing and analyzing data sets of simulations on the fly. We present a method that evaluates the importance of different regions of simulation data and a data-driven approach that uses the proposed method to accelerate in-transit co-processing of large-scale simulations. We use the importance metrics to simultaneously employ multiple compression methods on different data regions to accelerate the in-transit co-processing. Our approach strives to adaptively compress data on the fly and uses load balancing to counteract memory imbalances. We demonstrate the method?s efficiency through a fluid mechanics application, a Richtmyer?Meshkov instability simulation, showing how to accelerate the in-transit co-processing of simulations. The results show that the proposed method expeditiously can identify regions of interest, even when using multiple metrics. Our approach achieved a speedup of 1.29×" role="presentation">1.29×1.29× 1.29 × in a lossless scenario. The data decompression time was sped up by 2×" role="presentation">2×2× 2 × compared to using a single compression method uniformly.

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