Redirigiendo al acceso original de articulo en 20 segundos...
ARTÍCULO
TITULO

Performance Evaluation of Runtime Data Exploration Framework based on In-Situ Particle Based Volume Rendering

Takuma Kawamura    
Tomoyuki Noda    
Yasuhiro Idomura    

Resumen

We examine the performance of the in-situ data exploration framework based on the in-situ Particle Based Volume Rendering (In-Situ PBVR) on the latest many-core platform. In-Situ PBVR converts extreme scale volume data into small rendering primitive particle data via parallel Monte-Carlo sampling without costly visibility ordering. This feature avoids severe bottlenecks such as limited memory size per node and significant performance gap between computation and inter-node communication. In addition, remote in-situ data exploration is enabled by asynchronous file-based control sequences, which transfer the small particle data to client PCs, generate view-independent volume rendering images on client PCs, and change visualization parameters at runtime.In-Situ PBVR shows excellent strong scaling with low memory usage up to ~100k cores on the Oakforest-PACS, which consists of 8,208 Intel Xeon Phi7250 (Knights Landing) processors. This performance is compatible with the remote in-situ data exploration capability.

 Artículos similares