Integrated Parallelization of Computations and Visualization for Large-scale Applications

Preeti Malakar, V. Natarajan, Sathish S. Vadhiyar
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引用次数: 4

Abstract

Critical applications like cyclone tracking and earthquake modeling require simultaneous high-performance simulations and online visualization for timely analysis. Faster simulations and simultaneous visualization enable scientists provide real-time guidance to decision makers. In this work, we have developed an integrated user-driven and automated steering framework that simultaneously performs numerical simulations and efficient online remote visualization of critical weather applications in resource-constrained environments. It considers application dynamics like the criticality of the application and resource dynamics like the storage space, network bandwidth and available number of processors to adapt various application and resource parameters like simulation resolution, simulation rate and the frequency of visualization. We formulate the problem of finding an optimal set of simulation parameters as a linear programming problem. This leads to 30% higher simulation rate and 25-50% lesser storage consumption than a naive greedy approach. The framework also provides the user control over various application parameters like region of interest and simulation resolution. We have also devised an adaptive algorithm to reduce the lag between the simulation and visualization times. Using experiments with different network bandwidths, we find that our adaptive algorithm is able to reduce lag as well as visualize the most representative frames.
大规模应用的集成并行化计算和可视化
飓风跟踪和地震建模等关键应用需要同时进行高性能仿真和在线可视化以进行及时分析。更快的模拟和同步可视化使科学家能够为决策者提供实时指导。在这项工作中,我们开发了一个集成的用户驱动和自动转向框架,可以同时执行资源受限环境中关键天气应用的数值模拟和有效的在线远程可视化。它考虑应用动态,如应用的关键性和资源动态,如存储空间、网络带宽和可用处理器数量,以适应各种应用和资源参数,如仿真分辨率、仿真速率和可视化频率。我们将寻找最优仿真参数集的问题表述为线性规划问题。与朴素的贪婪方法相比,这种方法的模拟速率提高了30%,存储消耗减少了25-50%。该框架还为用户提供了对各种应用程序参数的控制,如感兴趣的区域和仿真分辨率。我们还设计了一种自适应算法来减少模拟和可视化时间之间的滞后。通过不同网络带宽的实验,我们发现我们的自适应算法能够减少延迟,并且能够可视化最具代表性的帧。
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