Reinforcement Learning for Data-Driven Workflows in Radio Interferometry. I. Principal Demonstration in Calibration
Brian M. Kirk, Urvashi Rau, Ramyaa Ramyaa

TL;DR
This paper presents a reinforcement learning approach to automate and optimize the data processing workflows in radio interferometry, aiming to improve calibration accuracy and efficiency.
Contribution
It introduces a data-driven decision system using objective metrics to automate the sequencing of calibration procedures in radio interferometry.
Findings
Demonstrated a prototype system for workflow automation
Achieved improved calibration accuracy with automated decision-making
Highlighted limitations of current automation methods
Abstract
Radio interferometry is an observational technique used to study astrophysical phenomena. Data gathered by an interferometer requires substantial processing before astronomers can extract the scientific information from it. Data processing consists of a sequence of calibration and analysis procedures where choices must be made about the sequence of procedures as well as the specific configuration of the procedure itself. These choices are typically based on a combination of measurable data characteristics, an understanding of the instrument itself, an appreciation of the trade-offs between compute cost and accuracy, and a learned understanding of what is considered "best practice". A metric of absolute correctness is not always available and validity is often subject to human judgment. The underlying principles and software configurations to discern a reasonable workflow for a given…
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Taxonomy
TopicsComputational Physics and Python Applications · Scientific Computing and Data Management
