Curso de capacitación sobre competencias para el trabajo y la vida para mejorar el bienestar personal y profesional de los alumnos de la carrera de medicina de la universidad estatal de Guayaquil, cantón Guayaquil, provincia de Guayas, Ecuador.
    
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    Materias > Educación
    Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster
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    El presente trabajo de fin de máster se presenta con el objetivo de proporcionar un curso de capacitación sobre competencias para el trabajo y la vida para mejorar el bienestar personal y profesional de los alumnos de la carrera de medicina de la universidad estatal de Guayaquil. Estableciendo en primera instancia que un curso de capacitación integra un proceso sistemático de formación donde está implícito la calidad de enseñanza en la adquisición de conocimientos destinados a generar beneficios en la vida del alumno. Se estableció una investigación de carácter cuantitativo cualitativo con enfoque descriptivo y exploratorio, mediante la aplicación de encuestas y la observación directa, para la correcta interpretación de datos destinados a definir la problemática, para ello se estableció una muestra de dos docentes y treinta alumnos de la carrera de medicina de la universidad estatal de Guayaquil. Obteniendo como resultados más relevantes el hecho de que el 56% de los estudiantes considera que la carrera de medicina no ofrece alternativas de competencias para mejorar el bienestar de los alumnos, 57% de encuestados afirma solo poseer conocimiento científico fundamental de la carrera,  60% de los estudiantes expresa que la carrera de medicina no genera conocimientos para mejorar el bienestar personal y profesional de los educandos, 100% de participantes considera adecuado incorporar el curso de capacitación propuesto. Concluyendo que el papel del estudiante en la educación no solo se centra a adquirir los conocimientos teóricos y prácticos sino a adquirir competencias para mejorar su bienestar personal y profesional.
    metadata
    Flores Luna, Jorge Vicente
    mail
    drjorgefloresl@gmail.com
    
      
        
    
    
    
(2022)
Curso de capacitación sobre competencias para el trabajo y la vida para mejorar el bienestar personal y profesional de los alumnos de la carrera de medicina de la universidad estatal de Guayaquil, cantón Guayaquil, provincia de Guayas, Ecuador.
    Masters thesis, Universidad Europea del Atlántico.
  
  
Resumen
El presente trabajo de fin de máster se presenta con el objetivo de proporcionar un curso de capacitación sobre competencias para el trabajo y la vida para mejorar el bienestar personal y profesional de los alumnos de la carrera de medicina de la universidad estatal de Guayaquil. Estableciendo en primera instancia que un curso de capacitación integra un proceso sistemático de formación donde está implícito la calidad de enseñanza en la adquisición de conocimientos destinados a generar beneficios en la vida del alumno. Se estableció una investigación de carácter cuantitativo cualitativo con enfoque descriptivo y exploratorio, mediante la aplicación de encuestas y la observación directa, para la correcta interpretación de datos destinados a definir la problemática, para ello se estableció una muestra de dos docentes y treinta alumnos de la carrera de medicina de la universidad estatal de Guayaquil. Obteniendo como resultados más relevantes el hecho de que el 56% de los estudiantes considera que la carrera de medicina no ofrece alternativas de competencias para mejorar el bienestar de los alumnos, 57% de encuestados afirma solo poseer conocimiento científico fundamental de la carrera, 60% de los estudiantes expresa que la carrera de medicina no genera conocimientos para mejorar el bienestar personal y profesional de los educandos, 100% de participantes considera adecuado incorporar el curso de capacitación propuesto. Concluyendo que el papel del estudiante en la educación no solo se centra a adquirir los conocimientos teóricos y prácticos sino a adquirir competencias para mejorar su bienestar personal y profesional.
| Tipo de Documento: | Tesis (Masters) | 
|---|---|
| Palabras Clave: | Competencias, carrera de medicina, curso, capacitación | 
| Clasificación temática: | Materias > Educación | 
| Divisiones: | Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster | 
| Depositado: | 24 Oct 2023 23:30 | 
| Ultima Modificación: | 24 Oct 2023 23:30 | 
| URI: | https://repositorio.uneatlantico.es/id/eprint/1313 | 
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Enzymatic treatment shapes in vitro digestion pattern of phenolic compounds in mulberry juice
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What works in financial education? Experimental evidence on program impact
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Detection and classification of brain tumor using a hybrid learning model in CT scan images
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