Elaborar un programa de capacitación sobre el manejo de plataforma Moodle con la finalidad de mejorar la calidad educativa en el sistema de teletrabajo de la Unidad Educativa “Isaac Acosta”

Tesis Materias > Educación Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana Puerto Rico > Docencia > Trabajos finales de Máster
Cerrado Español El presente trabajo investigativo abordó el problema de la inexistencia de programas de capacitación práctica sobre el manejo de plataformas Moodle como herramienta para el mejoramiento de la praxis docente en la modalidad de teletrabajo, en la Unidad Educativa “Isaac Acosta”. Poniendo énfasis en la importancia que adquirió esta herramienta debido a la interrupción forzada de la educación presencial. Para ello se ha tomado de referencia la experiencia existente en el uso de tecnologías de la información, y la incorporación de la Plataforma Moodle en el proceso educativo en la modalidad de teletrabajo, así como los aportes de los Modelos Pedagógicos que facilitan la integración de las TIC. En este contexto se planteó como objetivo general: “Elaborar un programa de capacitación sobre el manejo de plataformas Moodle con la finalidad de mejorar la calidad educativa en el sistema de teletrabajo de la Unidad Educativa “Isaac Acosta”, del Distrito de Educación 04D01, San Pedro de Huaca – Tulcán de la Provincia del Carchi, Ecuador”. Para este estudio se ha considerado la participación del personal docente que en un número de 40 profesionales de la educación, trabajan en ella, repartidos en los diferentes niveles y acciones educativas, es decir: Educación inicial, Preparatoria, Media, superior y Bachillerato Técnico. Para la recolección de la información, se utilizó como instrumento a la encuesta mediante la utilización de un cuestionario elaborado en la aplicación SurveyMonkey cuyo enlace se envió a los docentes por medios digitales. Los resultados obtenidos nos indican 55 % de los maestros consideran que la mayor dificultad para integrar las Tic en el desarrollo de sus actividades es la falta de capacitación; además el 57% de la población declara no conocer o conocer muy pocos recursos y actividades de la plataforma Moodle; lo que no permite el desarrollo de estrategias y actividades eficaces para dar continuidad al proceso educativo en la modalidad de teletrabajo, ante ello el 92,50 de la población sujeto de la presente investigación, afirman que es necesario contar con un programa de capacitación en manejo de plataformas Moodle, para mejorar el desarrollo del proceso educativo a través de la modalidad de teletrabajo y con ello elevar la calidad de la praxis docente lo cual abonará para alcanzar mejores resultados en la adquisición de destrezas por parte de los alumnos. metadata Rivadeneira Martinez, Alexis Ernesto mail alexisrivadeneira@ymail.com (2022) Elaborar un programa de capacitación sobre el manejo de plataforma Moodle con la finalidad de mejorar la calidad educativa en el sistema de teletrabajo de la Unidad Educativa “Isaac Acosta”. Masters thesis, SIN ESPECIFICAR.

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Resumen

El presente trabajo investigativo abordó el problema de la inexistencia de programas de capacitación práctica sobre el manejo de plataformas Moodle como herramienta para el mejoramiento de la praxis docente en la modalidad de teletrabajo, en la Unidad Educativa “Isaac Acosta”. Poniendo énfasis en la importancia que adquirió esta herramienta debido a la interrupción forzada de la educación presencial. Para ello se ha tomado de referencia la experiencia existente en el uso de tecnologías de la información, y la incorporación de la Plataforma Moodle en el proceso educativo en la modalidad de teletrabajo, así como los aportes de los Modelos Pedagógicos que facilitan la integración de las TIC. En este contexto se planteó como objetivo general: “Elaborar un programa de capacitación sobre el manejo de plataformas Moodle con la finalidad de mejorar la calidad educativa en el sistema de teletrabajo de la Unidad Educativa “Isaac Acosta”, del Distrito de Educación 04D01, San Pedro de Huaca – Tulcán de la Provincia del Carchi, Ecuador”. Para este estudio se ha considerado la participación del personal docente que en un número de 40 profesionales de la educación, trabajan en ella, repartidos en los diferentes niveles y acciones educativas, es decir: Educación inicial, Preparatoria, Media, superior y Bachillerato Técnico. Para la recolección de la información, se utilizó como instrumento a la encuesta mediante la utilización de un cuestionario elaborado en la aplicación SurveyMonkey cuyo enlace se envió a los docentes por medios digitales. Los resultados obtenidos nos indican 55 % de los maestros consideran que la mayor dificultad para integrar las Tic en el desarrollo de sus actividades es la falta de capacitación; además el 57% de la población declara no conocer o conocer muy pocos recursos y actividades de la plataforma Moodle; lo que no permite el desarrollo de estrategias y actividades eficaces para dar continuidad al proceso educativo en la modalidad de teletrabajo, ante ello el 92,50 de la población sujeto de la presente investigación, afirman que es necesario contar con un programa de capacitación en manejo de plataformas Moodle, para mejorar el desarrollo del proceso educativo a través de la modalidad de teletrabajo y con ello elevar la calidad de la praxis docente lo cual abonará para alcanzar mejores resultados en la adquisición de destrezas por parte de los alumnos.

Tipo de Documento: Tesis (Masters)
Palabras Clave: Pertinencia, capacitación, docente, plataforma Moodle, calidad educativa.
Clasificación temática: Materias > Educación
Divisiones: Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana Puerto Rico > Docencia > Trabajos finales de Máster
Depositado: 08 Nov 2023 23:30
Ultima Modificación: 08 Nov 2023 23:30
URI: https://repositorio.unini.edu.mx/id/eprint/1794

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