Alert Classification for the ALeRCE Broker System: The Real-time Stamp Classifier
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A. A. Mahabal | J. Arredondo | R. Carrasco-Davis | D. Ruz-Mieres | S. Eyheramendy | P. A. Estévez | I. Reyes | G. Cabrera-Vives | E. Castillo-Navarrete | M. Catelan | A. Moya | F. Förster | P. Sánchez-Sáez | E. Reyes | D. Rodríguez-Mancini | C. Valenzuela | C. Sepúlveda-Cobo | G. Pignata | F. E. Bauer | L. Sabatini-Gacitúa | J. Silva-Farfán | E. Camacho-Iñiguez | L. Galbany | A. Mahabal | M. Catelán | S. Eyheramendy | F. Förster | L. Galbany | P. Estévez | G. Pignata | G. Cabrera-Vives | R. Carrasco-Davis | I. Reyes | E. Castillo-Navarrete | P. Sánchez‐Sáez | J. Arredondo | E. Reyes | D. Rodríguez-Mancini | D. Ruz-Mieres | C. Valenzuela | A. Moya | L. Sabatini-Gacitúa | C. Sepúlveda-Cobo | J. Silva-Farfán | E. Camacho-Iñiguez
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