AMPEL workflows for LSST: Modular and reproducible real-time photometric classification
Jakob Nordin, Valery Brinnel, Jakob van Santen, Simeon Reusch, Marek Kowalski

TL;DR
The paper introduces AMPEL, a modular, reproducible platform for real-time classification of astronomical transients in LSST data, demonstrating high accuracy and flexibility for various scientific needs.
Contribution
It presents three new AMPEL workflows tailored for different transient detection and classification tasks, integrating future essential features for LSST alert stream analysis.
Findings
SNGuess correctly identifies 99% of young supernovae
FollowMe enables unbiased transient selection for follow-up
FinalBet achieves >80% classification success for extragalactic transients
Abstract
Modern time-domain astronomical surveys produce high throughput data streams which require tools for processing and analysis. This will be critical for programs making full use of the alert stream from the Vera Rubin Observatory (VRO), where spectroscopic labels will only be available for a small subset of all transients. In this context, the AMPEL toolset can work as a code-to-data platform for the development of efficient, reproducible and flexible workflows for real-time astronomical application. We here introduce three different AMPEL channels constructed to highlight different uses of alert streams: to rapidly find infant transients (SNGuess), to provide unbiased transient samples for follow-up (FollowMe) and to deliver final transient classifications (FinalBet). These pipelines already contain placeholders for mechanisms which will be essential for the optimal usage of VRO…
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