Análisis de la Productividad en las Obras de Construcción Inmobiliaria de la Constructora ORDUM de la Ciudad de Santiago de los Caballeros, Rep. Dom.

Thesis Subjects > Engineering Europe University of Atlantic > Teaching > Final Master Projects
Ibero-american International University > Teaching > Final Master Projects
Cerrado Español Esta tesis tiene como objetivo principal ayudar en la gestión de las empresas constructoras de la ciudad de Santiago caballero a través del aumento de la productividad y a si mejorar la reputación y solides del mercado inmobiliario. Para ello se ha tomado como muestras para el estudio y valoración, constructora ORDUM empresa la cual es reconocida por su constante flujo laboral en el sector construcción y su desarrollo local. Con diferentes métodos se evaluará la empresa para obtener resultados de su deficiencia en la productividad, estos métodos a utilizar serán encuetas de diferentes interrogantes para ayudar a entender la raíz de estés mal, también entrevistas al personal que labora en dichas empresas constructoras.La falta de procedimientos de un plan que desarrolle la productividad, también la falta de una buena gestión administrativa ha llevado a dichas empresas a la disminución de su productividad a la hora de desarrollar un proyecto inmobiliario y con ella ha bajado la tasa de confiabilidad de los clientes a invertir. Según los resultados mencionados anteriormente de la situación general de las empresas y la aplicación de indicadores en estas, se plantearon las perspectivas con las diferentes actividades y estas con una descripción general de cada proceso que manejan las empresas, de este modo proponer de una manera más adecuada el mejoramiento de la productividad.Las perspectivas a evaluar fueron: financiera, administración, Calidad, Salarios, supervisión y mano de obra; las cuales para una mejor interpretación se elaboró un cuestionario para su evaluación por el método de Likert con el cual nos arrojó como resultado que la parte financiera y administrativa son la mayor causa de la negatividad en la productividad de la constructora ORDUM. Finalmente, se procedió al diseño y formulación de un sistema y diagnóstico de la constructora ORDUM con el cual de implementa una renovación del personal, capacitación e implementación de un sistema de seguimiento y control de las obras. metadata Tejada Grullón, Lelvin Ramón mail ing.tejada22@hotmail.com (2022) Análisis de la Productividad en las Obras de Construcción Inmobiliaria de la Constructora ORDUM de la Ciudad de Santiago de los Caballeros, Rep. Dom. Masters thesis, UNSPECIFIED.

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Abstract

Esta tesis tiene como objetivo principal ayudar en la gestión de las empresas constructoras de la ciudad de Santiago caballero a través del aumento de la productividad y a si mejorar la reputación y solides del mercado inmobiliario. Para ello se ha tomado como muestras para el estudio y valoración, constructora ORDUM empresa la cual es reconocida por su constante flujo laboral en el sector construcción y su desarrollo local. Con diferentes métodos se evaluará la empresa para obtener resultados de su deficiencia en la productividad, estos métodos a utilizar serán encuetas de diferentes interrogantes para ayudar a entender la raíz de estés mal, también entrevistas al personal que labora en dichas empresas constructoras.La falta de procedimientos de un plan que desarrolle la productividad, también la falta de una buena gestión administrativa ha llevado a dichas empresas a la disminución de su productividad a la hora de desarrollar un proyecto inmobiliario y con ella ha bajado la tasa de confiabilidad de los clientes a invertir. Según los resultados mencionados anteriormente de la situación general de las empresas y la aplicación de indicadores en estas, se plantearon las perspectivas con las diferentes actividades y estas con una descripción general de cada proceso que manejan las empresas, de este modo proponer de una manera más adecuada el mejoramiento de la productividad.Las perspectivas a evaluar fueron: financiera, administración, Calidad, Salarios, supervisión y mano de obra; las cuales para una mejor interpretación se elaboró un cuestionario para su evaluación por el método de Likert con el cual nos arrojó como resultado que la parte financiera y administrativa son la mayor causa de la negatividad en la productividad de la constructora ORDUM. Finalmente, se procedió al diseño y formulación de un sistema y diagnóstico de la constructora ORDUM con el cual de implementa una renovación del personal, capacitación e implementación de un sistema de seguimiento y control de las obras.

Item Type: Thesis (Masters)
Uncontrolled Keywords: Productividad, indicadores, Operatividad
Subjects: Subjects > Engineering
Divisions: Europe University of Atlantic > Teaching > Final Master Projects
Ibero-american International University > Teaching > Final Master Projects
Date Deposited: 14 Mar 2024 23:30
Last Modified: 14 Mar 2024 23:30
URI: https://repositorio.unini.edu.mx/id/eprint/2459

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