Plan de mejora en Prevención de Riesgos Laborales en el Centro Educativo Sol Solete de Extremadura
Tesis Materias > Educación Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster Cerrado Español Nos encontramos ante un Centro Escolar de Educación Infantil perteneciente a la Comunidad Autónoma de Extremadura que está compuesto por 8 docentes que no han adquirido formación alguna sobre Prevención en Riesgos Laborales y que se encuentran en una situación de inseguridad laboral que necesitan cambiar de forma inminente. Ante esta situación realizamos una reunión inicial a través de la cual recabamos información sobre la situación actual del centro mediante una encuesta anónima y gracias a la colaboración de los docentes, a la vez que insistimos en la necesidad de implantar un plan de Prevención en Riesgos Laborales en el centro que aporte formación y seguridad a todos y cada uno de los trabajadores.A través de la información adquirida, y con el consentimiento de la directiva del centro, procedemos a redactar dicho plan de actuación y una vez listo, le comunicamos a los docentes la situación en la que se encuentra el centro, así como las medidas que se llevarán a cabo para solventar dicha situación. Dicho plan de actuación contará con la formación del 100% del profesorado en todo lo que a Prevención en Riesgos Laborales se refiere (conceptos generales, riesgos en la seguridad laboral, riesgos ergonómicos, psicosociales, vigilancia de la salud, como actuar en caso de emergencias, hábitos saludables, etc.), así como el establecimiento de un protocolo de evacuación, la designación de un jefe de emergencias y de un referente en salud en el centro y la necesidad de las revisiones médicas de forma periódica. Gracias al desarrollo del Plan de Prevención en Riesgos Laborales podremos conseguir que todos los docentes del centro estén formados al 100% lo que conllevará que puedan sentirse seguros y motivados a la hora de poder afrontar cualquier situación de emergencia que se pueda ocasionar en el centro, a la vez que podrán realizar sus tareas de una manera mucho más segura y efectiva, lo que hará que vengan con muchas más ganas a trabajar. metadata Moreno Benet, Jéssica mail jessica.moreno.benet@gmail.com (2022) Plan de mejora en Prevención de Riesgos Laborales en el Centro Educativo Sol Solete de Extremadura. Masters thesis, SIN ESPECIFICAR.
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Nos encontramos ante un Centro Escolar de Educación Infantil perteneciente a la Comunidad Autónoma de Extremadura que está compuesto por 8 docentes que no han adquirido formación alguna sobre Prevención en Riesgos Laborales y que se encuentran en una situación de inseguridad laboral que necesitan cambiar de forma inminente. Ante esta situación realizamos una reunión inicial a través de la cual recabamos información sobre la situación actual del centro mediante una encuesta anónima y gracias a la colaboración de los docentes, a la vez que insistimos en la necesidad de implantar un plan de Prevención en Riesgos Laborales en el centro que aporte formación y seguridad a todos y cada uno de los trabajadores.A través de la información adquirida, y con el consentimiento de la directiva del centro, procedemos a redactar dicho plan de actuación y una vez listo, le comunicamos a los docentes la situación en la que se encuentra el centro, así como las medidas que se llevarán a cabo para solventar dicha situación. Dicho plan de actuación contará con la formación del 100% del profesorado en todo lo que a Prevención en Riesgos Laborales se refiere (conceptos generales, riesgos en la seguridad laboral, riesgos ergonómicos, psicosociales, vigilancia de la salud, como actuar en caso de emergencias, hábitos saludables, etc.), así como el establecimiento de un protocolo de evacuación, la designación de un jefe de emergencias y de un referente en salud en el centro y la necesidad de las revisiones médicas de forma periódica. Gracias al desarrollo del Plan de Prevención en Riesgos Laborales podremos conseguir que todos los docentes del centro estén formados al 100% lo que conllevará que puedan sentirse seguros y motivados a la hora de poder afrontar cualquier situación de emergencia que se pueda ocasionar en el centro, a la vez que podrán realizar sus tareas de una manera mucho más segura y efectiva, lo que hará que vengan con muchas más ganas a trabajar.
Tipo de Documento: | Tesis (Masters) |
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Palabras Clave: | Plan de mejora, profesorado, prevención de riesgos laborales, formación profesorado, colegio seguro |
Clasificación temática: | Materias > Educación |
Divisiones: | Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster |
Depositado: | 18 Oct 2023 23:30 |
Ultima Modificación: | 18 Oct 2023 23:30 |
URI: | https://repositorio.uneatlantico.es/id/eprint/802 |
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