EPJ Web of Conferences (Jan 2024)

Massive Scale Data Analytics at LCLS-II

  • Thayer Jana,
  • Chen Zhantao,
  • Claus Richard,
  • Damiani Daniel,
  • Ford Christopher,
  • Dubrovin Mikhail,
  • Elmir Victor,
  • Kroeger Wilko,
  • Li Xiang,
  • Marchesini Stefano,
  • Mariani Valerio,
  • Melcchiori Riccardo,
  • Nelson Silke,
  • Peck Ariana,
  • Perazzo Amedeo,
  • Poitevin Frederic,
  • O’Grady Christopher Paul,
  • Otero Julieth,
  • Quijano Omar,
  • Shankar Murali,
  • Uervirojnangkoorn Monarin,
  • Veraldi Riccardo,
  • Weaver Matthew,
  • Weninger Clemens,
  • Yamajala Seshu,
  • Wang Cong,
  • Yoon Chun Hong

DOI
https://doi.org/10.1051/epjconf/202429513002
Journal volume & issue
Vol. 295
p. 13002

Abstract

Read online

The increasing volumes of data produced at light sources such as the Linac Coherent Light Source (LCLS) enable the direct observation of materials and molecular assemblies at the length and timescales of molecular and atomic motion. This exponential increase in the scale and speed of data production is prohibitive to traditional analysis workflows that rely on scientists tuning parameters during live experiments to adapt data collection and analysis. User facilities will increasingly rely on the automated delivery of actionable information in real time for rapid experiment adaptation which presents a considerable challenge for data acquisition, data processing, data management, and workflow orchestration. In addition, the desire from researchers to accelerate science requires rapid analysis, dynamic integration of experiment and theory, the ability to visualize results in near real-time, and the introduction of ML and AI techniques. We present the LCLS-II Data System architecture which is designed to address these challenges via an adaptable data reduction pipeline (DRP) to reduce data volume on-thefly, online monitoring analysis software for real-time data visualization and experiment feedback, and the ability to scale to computing needs by utilizing local and remote compute resources, such as the ASCR Leadership Class Facilities, to enable quasi-real-time data analysis in minutes. We discuss the overall challenges facing LCLS, our ongoing work to develop a system responsive to these challenges, and our vision for future developments.