Towards an Integrated Performance Framework for Fire Science and Management Workflows (2407.21231v1)
Abstract: Reliable performance metrics are necessary prerequisites to building large-scale end-to-end integrated workflows for collaborative scientific research, particularly within context of use-inspired decision making platforms with many concurrent users and when computing real-time and urgent results using large data. This work is a building block for the National Data Platform, which leverages multiple use-cases including the WIFIRE Data and Model Commons for wildfire behavior modeling and the EarthScope Consortium for collaborative geophysical research. This paper presents an artificial intelligence and machine learning (AI/ML) approach to performance assessment and optimization of scientific workflows. An associated early AI/ML framework spanning performance data collection, prediction and optimization is applied to wildfire science applications within the WIFIRE BurnPro3D (BP3D) platform for proactive fire management and mitigation.
- H. Ahmed (113 papers)
- R. Shende (1 paper)
- D. Crawl (1 paper)
- S. Purawat (1 paper)
- I. Altintas (1 paper)
- I. Perez (16 papers)