VIPCALs: A fully automated calibration pipeline for very long baseline interferometry data
Diego \'Alvarez-Ortega, Carolina Casadio, Felix M. P\"otzl, Avinash Kumar, Michael Janssen

TL;DR
VIPCALs is an automated pipeline that calibrates VLBI data without human intervention, enabling scalable, efficient processing of large datasets for high-resolution radio astronomy.
Contribution
It introduces a fully automated, end-to-end VLBI calibration pipeline that operates without supervision, addressing scalability and reproducibility challenges.
Findings
Successfully calibrated 955 out of 1000 sources in validation.
Achieved median visibility ratio of 0.87 after calibration.
Processing time below 10 minutes per dataset.
Abstract
Very long baseline interferometry (VLBI) is a powerful technique that can achieve sub-milliarcsecond resolution. However, it requires complex and often manual post-correlation calibration to correct for instrumental, geometric, and propagation-related errors. Unlike connected-element interferometers, VLBI arrays typically provide raw visibilities rather than science-ready data, and existing pipelines are largely semi-automated and reliant on user supervision. We present VIPCALs, a fully automated, end-to-end calibration pipeline for continuum VLBI data that operates without human intervention or prior knowledge of the dataset. Designed for scalability to thousands of sources and heterogeneous archival observations, VIPCALs addresses the needs of initiatives such as the Search for Milli-Lenses (SMILE) project. Implemented in Python using ParselTongue, VIPCALs reproduces the standard AIPS…
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Taxonomy
TopicsAstronomical Observations and Instrumentation
