Presentation

Libyt: A Tool for Parallel In Situ Analysis with yt, Python, and Jupyter
DescriptionIn the era of extreme-scale computing, large-scale data storage and analysis have become more critical and challenging. For post-processing, the simulation first needs to dump snapshots on a hard disk before processing any data. This becomes a bottleneck for high spatial and temporal resolution simulation. In situ analysis provides a viable solution for analyzing extreme scale simulations by processing data in memory, which skips the step of storing data on disk. We present libyt, an open-source C library that allows researchers to analyze and visualize data using yt or other Python packages in parallel computing during simulation runtime. We describe the code method for connecting simulation runtime data to Python, handling data transition and redistribution between Python and simulation processes with minimal memory overhead, and supporting interactive Python prompt and Jupyter Notebook for users to probe the ongoing simulation data at the current time step. We demonstrate how it solves the problem of visualizing large-scale astrophysical simulations, improving disk usage efficiency, and monitoring simulations closely. We conclude it with discussions and compare libyt to post-processing.
TimeMonday, June 317:30 - 18:00 CEST
LocationHG E 1.1
Session Chair
Event Type
Paper
Domains
Physics