The Automatic Learning for the Rapid Classification of Events (ALeRCE) Alert Broker
F. F\"orster, G. Cabrera-Vives, E. Castillo-Navarrete, P. A., Est\'evez, P. S\'anchez-S\'aez, J. Arredondo, F. E. Bauer, R., Carrasco-Davis, M. Catelan, F. Elorrieta, S. Eyheramendy, P., Huijse, G. Pignata, E. Reyes, I. Reyes, D. Rodr\'iguez-Mancini, and D. Ruz-Mieres

TL;DR
The ALeRCE alert broker is a real-time, machine learning-based system that rapidly classifies astronomical alerts from large-scale surveys like ZTF and LSST, supporting follow-up observations and community engagement.
Contribution
It introduces a comprehensive, publicly accessible pipeline combining rapid and refined ML classifiers for large alert streams, advancing astronomical transient classification.
Findings
Processed 97 million alerts in real-time
Classified 19 million objects with a stamp-based classifier
Reported 3,088 supernova candidates
Abstract
We introduce the Automatic Learning for the Rapid Classification of Events (ALeRCE) broker, an astronomical alert broker designed to provide a rapid and self--consistent classification of large etendue telescope alert streams, such as that provided by the Zwicky Transient Facility (ZTF) and, in the future, the Vera C. Rubin Observatory Legacy Survey of Space and Time (LSST). ALeRCE is a Chilean--led broker run by an interdisciplinary team of astronomers and engineers, working to become intermediaries between survey and follow--up facilities. ALeRCE uses a pipeline which includes the real--time ingestion, aggregation, cross--matching, machine learning (ML) classification, and visualization of the ZTF alert stream. We use two classifiers: a stamp--based classifier, designed for rapid classification, and a light--curve--based classifier, which uses the multi--band flux evolution to achieve…
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