Desarrollo de un Modelo para determinar la Madurez y las Estrategias de Transformación Digital en las Pymes Manufactureras de Nuevo León
Tesis Materias > Ingeniería Universidad Internacional Iberoamericana México > Investigación > Tesis Doctorales Cerrado Español El propósito de esta tesis es desarrollar un modelo para determinar la madurez digital de las Pymes manufactureras del Estado de Nuevo León considerando su heterogeneidad, necesidades organizacionales y tecnológicas, así como proponer estrategias de avance en su transformación digital. Primero se consultó la literatura actualizada en diferentes bases de datos, referente al tema de la Industria 4.0 y la transformación digital, su contexto a nivel internacional, nacional y en Nuevo León y los principales modelos, teorías y metodologías de maduración digital en las organizaciones. A partir de ello se construyó el marco teórico de la variable dependiente grado de madurez digital y se definieron las variables independientes capacidad de absorción del conocimiento, nivel de infraestructura tecnológica, cultura organizacional, capacidad de in-novación y entorno de la empresa con base en los factores que influyen en la madurez digital. Posteriormente se diseñó un modelo preliminar de madurez digital para las Pymes manufactureras de Nuevo León que incluyó dos instrumentos de medición cuantitativa y cualitativa, encuesta y entrevista semi-estructurada, los cuales fueron analizados por expertos y aplicados a una muestra piloto para comprobar su fiabilidad. Después se aplicó a la muestra total seleccionada para obtener los datos que se analizaron usando métodos estadísticos de regresión lineal múltiple para evaluar las variables. Adicionalmente se obtuvieron los retos y oportunidades a los que se enfrentan las Pymes en su avance en la transformación digital, la aplicación de las tecnologías digitales en sus productos, servicios y procesos, y los habilitadores e inhibidores que influyen en su madurez digital. Como resultado se generó el modelo de medición de madurez digital para las Pymes manufactureras del Estado de Nuevo León, así como un marco general de estrategias para la transformación digital que favorece la competitividad de estas organizaciones en las cadenas de valor regionales y globales. metadata Puente Aguilar, Elva Patricia mail elva.puente@doctorado.unini.edu.mx (2024) Desarrollo de un Modelo para determinar la Madurez y las Estrategias de Transformación Digital en las Pymes Manufactureras de Nuevo León. Doctoral thesis, SIN ESPECIFICAR.
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El propósito de esta tesis es desarrollar un modelo para determinar la madurez digital de las Pymes manufactureras del Estado de Nuevo León considerando su heterogeneidad, necesidades organizacionales y tecnológicas, así como proponer estrategias de avance en su transformación digital. Primero se consultó la literatura actualizada en diferentes bases de datos, referente al tema de la Industria 4.0 y la transformación digital, su contexto a nivel internacional, nacional y en Nuevo León y los principales modelos, teorías y metodologías de maduración digital en las organizaciones. A partir de ello se construyó el marco teórico de la variable dependiente grado de madurez digital y se definieron las variables independientes capacidad de absorción del conocimiento, nivel de infraestructura tecnológica, cultura organizacional, capacidad de in-novación y entorno de la empresa con base en los factores que influyen en la madurez digital. Posteriormente se diseñó un modelo preliminar de madurez digital para las Pymes manufactureras de Nuevo León que incluyó dos instrumentos de medición cuantitativa y cualitativa, encuesta y entrevista semi-estructurada, los cuales fueron analizados por expertos y aplicados a una muestra piloto para comprobar su fiabilidad. Después se aplicó a la muestra total seleccionada para obtener los datos que se analizaron usando métodos estadísticos de regresión lineal múltiple para evaluar las variables. Adicionalmente se obtuvieron los retos y oportunidades a los que se enfrentan las Pymes en su avance en la transformación digital, la aplicación de las tecnologías digitales en sus productos, servicios y procesos, y los habilitadores e inhibidores que influyen en su madurez digital. Como resultado se generó el modelo de medición de madurez digital para las Pymes manufactureras del Estado de Nuevo León, así como un marco general de estrategias para la transformación digital que favorece la competitividad de estas organizaciones en las cadenas de valor regionales y globales.
Tipo de Documento: | Tesis (Doctoral) |
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Palabras Clave: | Madurez, Transformación digital, Pymes, Manufactura, Modelo, factores, Industria 4.0. |
Clasificación temática: | Materias > Ingeniería |
Divisiones: | Universidad Internacional Iberoamericana México > Investigación > Tesis Doctorales |
Depositado: | 08 Jul 2024 23:30 |
Ultima Modificación: | 08 Jul 2024 23:30 |
URI: | https://repositorio.unini.edu.mx/id/eprint/10921 |
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