Evaluación del Proyecto “PodBosco”

Tesis Materias > Educación Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana Puerto Rico > Docencia > Trabajos finales de Máster
Cerrado Español En este trabajo de fin de Máster, se presentan los resultados arrojados del análisis de las evaluaciones realizadas a los alumnos participantes del proyecto PodBosco. El mismo fue aplicado bajo la metodología del Aprendizaje Basado en Proyectos (A.B.P.) en alumnos de 2do año de secundaria del Colegio y Liceo la Divina Providencia, ubicado en Montevideo, Uruguay. PodBosco buscó dar a conocer la vida de Don Bosco a través de la creación de episodios de podcast, trabajando en conjunto las asignaturas Formación Cristiana y Taller de Informática. El objetivo general de esta tesis es evaluar los aprendizajes generados a partir de dicho proyecto. Para llevar a cabo esta meta, se utilizó como metodología mixta (cuantitativa - cuantitativa), donde se analizó el impacto educativo que tuvo el proyecto en función de los aprendizajes logrados por los alumnos. La muestra de esta investigación coincide con los 38 estudiantes participantes del mismo. Para lograr dicho objetivo, se revisaron y sistematizaron las evaluaciones realizadas por los estudiantes a través de un instrumento elaborado en Formularios de Google que permitió el mejor análisis de las mismas. Además, se diseñó una estrategia de mejora en base a PodBosco, para tener en cuenta ante futuros trabajos enmarcados en la metodología ABP. Se podrá ver que, en los principales resultados arrojados, PodBosco generó un aprendizaje en los estudiantes, tanto a nivel de los conocimientos adquiridos propuestos por los docentes de las asignaturas involucradas, así como de competencias asociadas al trabajo en equipo. Además, se podrá observar en los resultados obtenidos que el podcast educativo puede ser una herramienta de aprendizaje a tener en cuenta, habiendo logrado gran aceptación en este proyecto y facilitando la adquisición de conocimientos y habilidades relacionadas al trabajo colaborativo. No se ha encontrado evidencia de trabajos con similares características en Uruguay, por lo que dicha investigación resulta promotora de nuevos conocimientos y experiencias, intentando ser generador de nuevos aportes de valor para la academia. metadata Novelli Argenzio, Sebastián Andres mail seannoar@gmail.com (2022) Evaluación del Proyecto “PodBosco”. Masters thesis, SIN ESPECIFICAR.

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Resumen

En este trabajo de fin de Máster, se presentan los resultados arrojados del análisis de las evaluaciones realizadas a los alumnos participantes del proyecto PodBosco. El mismo fue aplicado bajo la metodología del Aprendizaje Basado en Proyectos (A.B.P.) en alumnos de 2do año de secundaria del Colegio y Liceo la Divina Providencia, ubicado en Montevideo, Uruguay. PodBosco buscó dar a conocer la vida de Don Bosco a través de la creación de episodios de podcast, trabajando en conjunto las asignaturas Formación Cristiana y Taller de Informática. El objetivo general de esta tesis es evaluar los aprendizajes generados a partir de dicho proyecto. Para llevar a cabo esta meta, se utilizó como metodología mixta (cuantitativa - cuantitativa), donde se analizó el impacto educativo que tuvo el proyecto en función de los aprendizajes logrados por los alumnos. La muestra de esta investigación coincide con los 38 estudiantes participantes del mismo. Para lograr dicho objetivo, se revisaron y sistematizaron las evaluaciones realizadas por los estudiantes a través de un instrumento elaborado en Formularios de Google que permitió el mejor análisis de las mismas. Además, se diseñó una estrategia de mejora en base a PodBosco, para tener en cuenta ante futuros trabajos enmarcados en la metodología ABP. Se podrá ver que, en los principales resultados arrojados, PodBosco generó un aprendizaje en los estudiantes, tanto a nivel de los conocimientos adquiridos propuestos por los docentes de las asignaturas involucradas, así como de competencias asociadas al trabajo en equipo. Además, se podrá observar en los resultados obtenidos que el podcast educativo puede ser una herramienta de aprendizaje a tener en cuenta, habiendo logrado gran aceptación en este proyecto y facilitando la adquisición de conocimientos y habilidades relacionadas al trabajo colaborativo. No se ha encontrado evidencia de trabajos con similares características en Uruguay, por lo que dicha investigación resulta promotora de nuevos conocimientos y experiencias, intentando ser generador de nuevos aportes de valor para la academia.

Tipo de Documento: Tesis (Masters)
Palabras Clave: Evaluación de Aprendizajes, Aprendizaje Basado En Proyectos, Educación Secundaria, Podcast Educativo
Clasificación temática: Materias > Educación
Divisiones: Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana Puerto Rico > Docencia > Trabajos finales de Máster
Depositado: 07 Dic 2023 23:30
Ultima Modificación: 07 Dic 2023 23:30
URI: https://repositorio.unib.org/id/eprint/2524

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