Propuesta de gestión educativa para el fortalecimiento de las competencias tic de los docentes de la Unidad Educativa Ernesto Albán Mosquera

Thesis Subjects > Education Ibero-american International University > Teaching > Final Master Projects
Ibero-american International University > Teaching > Master's Final Projects
Closed Spanish Para el desarrollo de la presente investigación de fin de trabajo master se ha tomado como tema principal la elaboración de una propuesta de gestión educativa para el fortalecimiento de las competencias TIC de los docentes de la Unidad Educativa Ernesto Albán Mosquera, mediante el cual se pretende dar solución a un determinado problema como es la carencia de una gestión educativa, que tenga como finalidad solventar las desigualdades de conocimiento durante la utilización de las diferentes herramientas tecnológicas, factor que influencia fundamentalmente en la motivación de los estudiantes, así como también de los docentes que se enfrentan a cambios repentinos y drásticos en la forma de enseñanza.Durante la investigación se abordan temas relacionados con la gestión educativa, enfocándose en sus cuatro dimensiones que son: Administrativa, pedagógica, de convivencia y seguridad escolar, las cuales posteriormente son analizadas para determinar un diagnóstico y poder desarrollar estrategias basadas en la realidad. De igual manera se analizan conceptos referentes a las diversas herramientas TIC utilizadas en el sistema educativo para mejorar la calidad de la enseñanza, las cuales deben ser adecuadamente gestionadas para que presenten los beneficios esperados, mostrando así la importancia de la formación del profesorado en temas referentes al uso de los diferentes espacios virtuales.Para la realización del presente trabajo se ha utilizado un enfoque metodológico no experimental con diseño transversal, ya que se basa en estudios reales de la institución, donde se determina el nivel de gestión de la comunidad educativa y el impacto de ésta en la calidad del servicio que presta, donde se utilizan diversos indicadores de gestión, y sobre los resultados obtenidos se procede a elaborar una propuesta que será recomendada para su aplicación. metadata Huertas Narvaez, Mery Eugenia mail mericita_h@hotmail.com (2022) Propuesta de gestión educativa para el fortalecimiento de las competencias tic de los docentes de la Unidad Educativa Ernesto Albán Mosquera. Master's thesis, Universidad Internacional Iberoamericana México.

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Abstract

Para el desarrollo de la presente investigación de fin de trabajo master se ha tomado como tema principal la elaboración de una propuesta de gestión educativa para el fortalecimiento de las competencias TIC de los docentes de la Unidad Educativa Ernesto Albán Mosquera, mediante el cual se pretende dar solución a un determinado problema como es la carencia de una gestión educativa, que tenga como finalidad solventar las desigualdades de conocimiento durante la utilización de las diferentes herramientas tecnológicas, factor que influencia fundamentalmente en la motivación de los estudiantes, así como también de los docentes que se enfrentan a cambios repentinos y drásticos en la forma de enseñanza.Durante la investigación se abordan temas relacionados con la gestión educativa, enfocándose en sus cuatro dimensiones que son: Administrativa, pedagógica, de convivencia y seguridad escolar, las cuales posteriormente son analizadas para determinar un diagnóstico y poder desarrollar estrategias basadas en la realidad. De igual manera se analizan conceptos referentes a las diversas herramientas TIC utilizadas en el sistema educativo para mejorar la calidad de la enseñanza, las cuales deben ser adecuadamente gestionadas para que presenten los beneficios esperados, mostrando así la importancia de la formación del profesorado en temas referentes al uso de los diferentes espacios virtuales.Para la realización del presente trabajo se ha utilizado un enfoque metodológico no experimental con diseño transversal, ya que se basa en estudios reales de la institución, donde se determina el nivel de gestión de la comunidad educativa y el impacto de ésta en la calidad del servicio que presta, donde se utilizan diversos indicadores de gestión, y sobre los resultados obtenidos se procede a elaborar una propuesta que será recomendada para su aplicación.

Document Type: Thesis (Master's)
Keywords: Gestión educativa, TIC en la educación, formación docente, Ernesto Albán Mosquera
Subject classification: Subjects > Education
Divisions: Ibero-american International University > Teaching > Final Master Projects
Ibero-american International University > Teaching > Master's Final Projects
Deposited: 20 Oct 2023 23:30
Last Modified: 20 Oct 2023 23:30
URI: https://repositorio.unib.org/id/eprint/1058

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