Integrating the PanDA Workload Management System with the Vera C. Rubin Observatory
December 08, 2023 ยท Declared Dead ยท ๐ EPJ Web of Conferences
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Authors
Edward Karavakis, Wen Guan, Zhaoyu Yang, Tadashi Maeno, Torre Wenaus, Jennifer Adelman-McCarthy, Fernando Barreiro Megino, Kaushik De, Richard Dubois, Michelle Gower, Tim Jenness, Alexei Klimentov, Tatiana Korchuganova, Mikolaj Kowalik, Fa-Hui Lin, Paul Nilsson, Sergey Padolski, Wei Yang, Shuwei Ye
arXiv ID
2312.04921
Category
astro-ph.IM
Cross-listed
cs.DC
Citations
6
Venue
EPJ Web of Conferences
Last Checked
1 month ago
Abstract
The Vera C. Rubin Observatory will produce an unprecedented astronomical data set for studies of the deep and dynamic universe. Its Legacy Survey of Space and Time (LSST) will image the entire southern sky every three to four days and produce tens of petabytes of raw image data and associated calibration data over the course of the experiment's run. More than 20 terabytes of data must be stored every night, and annual campaigns to reprocess the entire dataset since the beginning of the survey will be conducted over ten years. The Production and Distributed Analysis (PanDA) system was evaluated by the Rubin Observatory Data Management team and selected to serve the Observatory's needs due to its demonstrated scalability and flexibility over the years, for its Directed Acyclic Graph (DAG) support, its support for multi-site processing, and its highly scalable complex workflows via the intelligent Data Delivery Service (iDDS). PanDA is also being evaluated for prompt processing where data must be processed within 60 seconds after image capture. This paper will briefly describe the Rubin Data Management system and its Data Facilities (DFs). Finally, it will describe in depth the work performed in order to integrate the PanDA system with the Rubin Observatory to be able to run the Rubin Science Pipelines using PanDA.
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