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NL.     ALUMNO      LYC1 MAT1 ECN1 ECS1 ET1       EA1   EF1 REL1   P1    INASIST    A%
  1 AGÜERO PÉREZ YETZABETH BELÉN
                     5.4   4.8    4.6   5.6 6.1   5.3   6.4   B    5.5       4      95%
  2 BARRA ALARCÓN JAVIERA ARLETH
                     5.2   4.7    4.9   4.9 5.7   5.8   6.5   S    5.4       4      95%
  3 BUSTOS ÁLVAREZ DYLAN 5.1
                     5.7          5.5   4.9 5.8   6.6   6.3  MB    5.7       3      97%
  4 BUSTOS VÁSQUEZ VALENTINA MONTSERRAT 5.5
                     5.7   4.9    4.8   6.0       5.0   6.6  MB    5.5      11      88%
  5 CAÑES CALFIMAN 6.1
                     SERGIO ANDRÉS 6.2
                           6.5    6.5       6.7   6.7   6.6  MB    6.5       1      99%
  6 CARVAJAL OBERG BASTIÁN4.3
                     5.5    ARIEL 5.4   5.0 5.9   6.1   6.3  MB    5.5       0     100%
  7 CID SANDOVAL DEBORA ANTONIA 3.9
                     5.0   3.9          4.7 5.6   5.7   6.2  MB    5.0       5      94%
  8 CIFUENTES TAPIA MICHELLE DOMINIQUE 5.5
                     5.7   4.9    5.5       6.1   4.8   6.4  MB    5.6       8      91%
  9 CONCHA ARAVENA JAVIERA ELENA
                     6.0   5.9    6.1   6.0 5.8   6.8   6.4  MB    6.1       1      99%
 10 CORTÉS CALFULÉN MARIO 5.3
                     4.9   IGNACIO4.8   5.1 5.2   5.6   6.3  MB    5.3       7      92%
 11 CORTÉS CERDA CONSTANZA SCARLETH 5.9
                     5.8   4.5    5.5       5.3   6.4   6.5  MB    5.7      10      89%
 12 CORTÉS FERNÁNDEZ JESSICA ALEJANDRA
                     5.9   4.3    6.3   5.5 5.7   6.7   6.6  MB    5.9       6      93%
 13 CUEVAS VALDEBENITO VALENTINA ISABEL
                     5.4   4.9    4.2   4.0 5.8   5.3   7.0   B    5.2      36      59%
 14 EPUL SOTO MISTICA6.1
                      BELÉN5.1    5.9   6.1 6.9   6.0   6.7  MB    6.1       9      90%
 15 FARÍAS ESCUDERO MARTÍN6.3
                     6.3    FELIPE DE JESÚS 5.9
                                  6.5             6.4   6.5  MB    6.3      13      85%
 16 FIGUEROA VARAS JAVIERA 5.2
                     6.3    CONSTANZA 5.2
                                  5.6       6.6   6.7   6.8  MB    6.1       0     100%
 17 FUENTEALBA NAVARRO ZOE ANAÍS
                     5.7   5.7    5.9   6.0 6.8   6.4   6.7  MB    6.2       0     100%
 18 FUENTES ZAMORANO ANTONIA CATALINA6.2
                     5.6   4.4    5.9       6.4   5.3   6.6  MB    5.8       7      92%
 19 GARRIDO VILLANUEVA FERNANDA5.0
                     6.1   4.4          5.4
                                  ANTONIA   5.9   6.5   6.3  MB    5.7       7      92%
 20 GONZÁLEZ CORNEJO MARCELO BENJAMÍN
                     5.9   4.3    4.7   5.3 6.5   5.7   6.2  MB    5.5      13      85%
 21 GONZÁLEZ GONZÁLEZ RODRIGO IGNACIO5.0
                     5.3   3.8    5.0       5.7   6.1   6.6  MB    5.4       3      97%
 22 GUZMÁN MELO CAMILA IGNACIA 4.5
                     5.8   5.1          5.5 6.0   5.7   6.5  MB    5.6       0     100%
 23 HERNÁNDEZ GARCÍA MATIAS IGNACIO 5.3
                     5.5   4.0    4.0       5.4   4.6   6.5   B    5.0       9      90%
 24 HUENCHUMIL ROMERO NAYADET MONSERRAT 5.6
                     5.0   4.2    5.2   4.4       5.5   6.3  MB    5.2       0     100%
 25 LADRÓN DE GUEVARA ZÚÑIGA LUCAS EDUARDO6.2
                     5.1   4.8    5.5   5.6       4.2   6.5   S    5.4       5      94%
 26 LARA CARVAJAL JORDÁN ANDRÉS4.4
                     4.9   4.4          4.7 5.7   5.7   6.4   B    5.2       4      95%
 27 LEAL COMPAYANTE 5.3
                     FABIOLA ARACELY 4.6
                           5.4    4.8       6.2   5.8   6.5  MB    5.5       0     100%
 28 MARDONES FIGUEROA GERARD ANDRÉS
                     5.7   5.9    5.4   5.4 6.2   5.6   6.8   B    5.9       4      95%
 29 MEJÍAS PEREDA DANIELA IGNACIA5.6
                     6.1   5.7          6.4
                                   LORETO   6.8   6.6   6.7   B    6.3       1      99%
 30 MEZA VERA IGNACIO ANDRÉS
                     4.6   3.7    4.8   4.7 5.0   5.7   6.7  MB    5.0       2      98%
 31 MORALES MÉNDEZ JAZMÍN4.3
                     5.2     ALEXANDRA 5.4
                                  5.4       6.8   5.4   6.4   S    5.6       0     100%
 32 MORENO MARAMBIO ERICKA DANIELA 6.4
                     6.0   5.1    6.6       6.0   6.5   6.9  MB    6.2      11      88%
 33 MOYA MIRANDA BIANCA CATALINA4.7
                     5.3   3.7          4.2 5.3   6.4   6.6  MB    5.2       0     100%
 34 MOYA SOTO CHISTIAN GABRIEL
                     6.2   6.6    6.9   6.5 6.1   6.6   6.8  MB    6.5       0     100%
 35 NAHUEL ARAYA JORDANO FRANCISCO
                     6.4   6.5    6.9   6.8 6.8   6.7   7.0  MB    6.7      10      89%
 36 QUEZADA LÓPEZ LAURA 3.9
                     5.5    FRANCISCA BESMIER E
                                  4.8   5.3 5.7   5.1   6.6  MB    5.3       5      94%
 37 ROMERO ARENAS 6.2 SOFÍA5.5
                            CAROLINA 5.6
                                  5.8       6.4   6.5   6.5  MB    6.1       0     100%
 38 SAN MARTÍN SAN MARTÍN ALEJANDRO IGNACIO
                     5.3   5.4    6.0   5.4 6.5   6.9   6.9  MB    6.1       4      95%
 39 SEGURA LEIVA RUBEN IGNACIO
                     6.1   5.2    6.3   5.2 6.0   6.7   6.4  MB    6.0       3      97%
 40 SUÁREZ CASTILLO6.2SEBASTIÁN 5.9
                           6.4    ALEJANDRO 7.0
                                        6.2       6.8   6.8  MB    6.5       2      98%

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  • 1. NL. ALUMNO LYC1 MAT1 ECN1 ECS1 ET1 EA1 EF1 REL1 P1 INASIST A% 1 AGÜERO PÉREZ YETZABETH BELÉN 5.4 4.8 4.6 5.6 6.1 5.3 6.4 B 5.5 4 95% 2 BARRA ALARCÓN JAVIERA ARLETH 5.2 4.7 4.9 4.9 5.7 5.8 6.5 S 5.4 4 95% 3 BUSTOS ÁLVAREZ DYLAN 5.1 5.7 5.5 4.9 5.8 6.6 6.3 MB 5.7 3 97% 4 BUSTOS VÁSQUEZ VALENTINA MONTSERRAT 5.5 5.7 4.9 4.8 6.0 5.0 6.6 MB 5.5 11 88% 5 CAÑES CALFIMAN 6.1 SERGIO ANDRÉS 6.2 6.5 6.5 6.7 6.7 6.6 MB 6.5 1 99% 6 CARVAJAL OBERG BASTIÁN4.3 5.5 ARIEL 5.4 5.0 5.9 6.1 6.3 MB 5.5 0 100% 7 CID SANDOVAL DEBORA ANTONIA 3.9 5.0 3.9 4.7 5.6 5.7 6.2 MB 5.0 5 94% 8 CIFUENTES TAPIA MICHELLE DOMINIQUE 5.5 5.7 4.9 5.5 6.1 4.8 6.4 MB 5.6 8 91% 9 CONCHA ARAVENA JAVIERA ELENA 6.0 5.9 6.1 6.0 5.8 6.8 6.4 MB 6.1 1 99% 10 CORTÉS CALFULÉN MARIO 5.3 4.9 IGNACIO4.8 5.1 5.2 5.6 6.3 MB 5.3 7 92% 11 CORTÉS CERDA CONSTANZA SCARLETH 5.9 5.8 4.5 5.5 5.3 6.4 6.5 MB 5.7 10 89% 12 CORTÉS FERNÁNDEZ JESSICA ALEJANDRA 5.9 4.3 6.3 5.5 5.7 6.7 6.6 MB 5.9 6 93% 13 CUEVAS VALDEBENITO VALENTINA ISABEL 5.4 4.9 4.2 4.0 5.8 5.3 7.0 B 5.2 36 59% 14 EPUL SOTO MISTICA6.1 BELÉN5.1 5.9 6.1 6.9 6.0 6.7 MB 6.1 9 90% 15 FARÍAS ESCUDERO MARTÍN6.3 6.3 FELIPE DE JESÚS 5.9 6.5 6.4 6.5 MB 6.3 13 85% 16 FIGUEROA VARAS JAVIERA 5.2 6.3 CONSTANZA 5.2 5.6 6.6 6.7 6.8 MB 6.1 0 100% 17 FUENTEALBA NAVARRO ZOE ANAÍS 5.7 5.7 5.9 6.0 6.8 6.4 6.7 MB 6.2 0 100% 18 FUENTES ZAMORANO ANTONIA CATALINA6.2 5.6 4.4 5.9 6.4 5.3 6.6 MB 5.8 7 92% 19 GARRIDO VILLANUEVA FERNANDA5.0 6.1 4.4 5.4 ANTONIA 5.9 6.5 6.3 MB 5.7 7 92% 20 GONZÁLEZ CORNEJO MARCELO BENJAMÍN 5.9 4.3 4.7 5.3 6.5 5.7 6.2 MB 5.5 13 85% 21 GONZÁLEZ GONZÁLEZ RODRIGO IGNACIO5.0 5.3 3.8 5.0 5.7 6.1 6.6 MB 5.4 3 97% 22 GUZMÁN MELO CAMILA IGNACIA 4.5 5.8 5.1 5.5 6.0 5.7 6.5 MB 5.6 0 100% 23 HERNÁNDEZ GARCÍA MATIAS IGNACIO 5.3 5.5 4.0 4.0 5.4 4.6 6.5 B 5.0 9 90% 24 HUENCHUMIL ROMERO NAYADET MONSERRAT 5.6 5.0 4.2 5.2 4.4 5.5 6.3 MB 5.2 0 100% 25 LADRÓN DE GUEVARA ZÚÑIGA LUCAS EDUARDO6.2 5.1 4.8 5.5 5.6 4.2 6.5 S 5.4 5 94% 26 LARA CARVAJAL JORDÁN ANDRÉS4.4 4.9 4.4 4.7 5.7 5.7 6.4 B 5.2 4 95% 27 LEAL COMPAYANTE 5.3 FABIOLA ARACELY 4.6 5.4 4.8 6.2 5.8 6.5 MB 5.5 0 100% 28 MARDONES FIGUEROA GERARD ANDRÉS 5.7 5.9 5.4 5.4 6.2 5.6 6.8 B 5.9 4 95% 29 MEJÍAS PEREDA DANIELA IGNACIA5.6 6.1 5.7 6.4 LORETO 6.8 6.6 6.7 B 6.3 1 99% 30 MEZA VERA IGNACIO ANDRÉS 4.6 3.7 4.8 4.7 5.0 5.7 6.7 MB 5.0 2 98% 31 MORALES MÉNDEZ JAZMÍN4.3 5.2 ALEXANDRA 5.4 5.4 6.8 5.4 6.4 S 5.6 0 100% 32 MORENO MARAMBIO ERICKA DANIELA 6.4 6.0 5.1 6.6 6.0 6.5 6.9 MB 6.2 11 88% 33 MOYA MIRANDA BIANCA CATALINA4.7 5.3 3.7 4.2 5.3 6.4 6.6 MB 5.2 0 100% 34 MOYA SOTO CHISTIAN GABRIEL 6.2 6.6 6.9 6.5 6.1 6.6 6.8 MB 6.5 0 100% 35 NAHUEL ARAYA JORDANO FRANCISCO 6.4 6.5 6.9 6.8 6.8 6.7 7.0 MB 6.7 10 89% 36 QUEZADA LÓPEZ LAURA 3.9 5.5 FRANCISCA BESMIER E 4.8 5.3 5.7 5.1 6.6 MB 5.3 5 94% 37 ROMERO ARENAS 6.2 SOFÍA5.5 CAROLINA 5.6 5.8 6.4 6.5 6.5 MB 6.1 0 100% 38 SAN MARTÍN SAN MARTÍN ALEJANDRO IGNACIO 5.3 5.4 6.0 5.4 6.5 6.9 6.9 MB 6.1 4 95% 39 SEGURA LEIVA RUBEN IGNACIO 6.1 5.2 6.3 5.2 6.0 6.7 6.4 MB 6.0 3 97% 40 SUÁREZ CASTILLO6.2SEBASTIÁN 5.9 6.4 ALEJANDRO 7.0 6.2 6.8 6.8 MB 6.5 2 98%