Gestión de un sistema señalético en instituciones educativas, caso Colegio Fe y Esperanza, Cali, Colombia.

Tesis Materias > Comunicación Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster
Cerrado Español El presente trabajo hace referencia al tema de investigación que desea comprender el alcance de la gestión de un sistema señalético en las instituciones educativas, y para lograrlo se busca diseñar un sistema de señalética eficaz que permita a los usuarios de las instituciones educativas, generar apropiación de identidad y mejorar la orientación dentro de la entidad, caso en la ciudad de Cali. Dicha investigación se realiza con el objetivo principal de indagar las causas que generan malestar e inconformidad en los usuarios de una institución educativa de la ciudad de Cali, luego de ser instalada una señalética. Cada uno de los elementos abordados durante la investigación fueron trabajados bajo el hallazgo de los elementos que formen lazos con los usuarios y una identidad corporativa unificada, siendo necesario estudiar los antecedentes investigativos que hayan generado sistemas de información visual como aporte al marco conceptual, ya que esto, permite una adecuada identificación de las zonas con señalética a rediseñar o que carecen de ella en las instalaciones del colegio fe y esperanza de la ciudad de Cali.De acuerdo a la metodología el enfoque de esta investigación tiene un carácter mixto, ya que nos permite conocer a través de la observación directa la situación del problema como las señales existentes, símbolos y otros elementos con los que se contaba dentro de la institución educativa. Se aplicará a través del grupo focal una entrevista semiestructurada que permitirá poder conversar con personas que tengan algún vínculo con la institución educativa como funcionarios, docentes, proveedores y acudientes para poder comprender el contexto, opiniones y percepciones sobre el tema de investigación. metadata Cometa Fernandez, Luz Adriana mail nanacometa@hotmail.com (2022) Gestión de un sistema señalético en instituciones educativas, caso Colegio Fe y Esperanza, Cali, Colombia. Masters thesis, SIN ESPECIFICAR.

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Resumen

El presente trabajo hace referencia al tema de investigación que desea comprender el alcance de la gestión de un sistema señalético en las instituciones educativas, y para lograrlo se busca diseñar un sistema de señalética eficaz que permita a los usuarios de las instituciones educativas, generar apropiación de identidad y mejorar la orientación dentro de la entidad, caso en la ciudad de Cali. Dicha investigación se realiza con el objetivo principal de indagar las causas que generan malestar e inconformidad en los usuarios de una institución educativa de la ciudad de Cali, luego de ser instalada una señalética. Cada uno de los elementos abordados durante la investigación fueron trabajados bajo el hallazgo de los elementos que formen lazos con los usuarios y una identidad corporativa unificada, siendo necesario estudiar los antecedentes investigativos que hayan generado sistemas de información visual como aporte al marco conceptual, ya que esto, permite una adecuada identificación de las zonas con señalética a rediseñar o que carecen de ella en las instalaciones del colegio fe y esperanza de la ciudad de Cali.De acuerdo a la metodología el enfoque de esta investigación tiene un carácter mixto, ya que nos permite conocer a través de la observación directa la situación del problema como las señales existentes, símbolos y otros elementos con los que se contaba dentro de la institución educativa. Se aplicará a través del grupo focal una entrevista semiestructurada que permitirá poder conversar con personas que tengan algún vínculo con la institución educativa como funcionarios, docentes, proveedores y acudientes para poder comprender el contexto, opiniones y percepciones sobre el tema de investigación.

Tipo de Documento: Tesis (Masters)
Palabras Clave: Sistema de señalética, Lenguaje visual, Diseño gráfico, Identidad corporativa, Semiótica.
Clasificación temática: Materias > Comunicación
Divisiones: Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster
Depositado: 14 Mar 2024 23:30
Ultima Modificación: 14 Mar 2024 23:30
URI: https://repositorio.unini.edu.mx/id/eprint/2505

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