Smart Universitya vision of technology adoption

  1. Rico-Bautista, Dewar 1
  2. Guerrero, César D. 2
  3. Collazos, César A. 3
  4. Maestre-Góngora, Gina 4
  5. Hurtado-Alegría, Julio A. 3
  6. Medina-Cárdenas, Yurley 1
  7. Swaminathan, Jose 5
  1. 1 Universidad Francisco de Paula Santander
    info

    Universidad Francisco de Paula Santander

    Cúcuta, Colombia

    ROR https://ror.org/01vwm8t51

  2. 2 Universidad Autónoma de Bucaramanga
    info

    Universidad Autónoma de Bucaramanga

    Bucaramanga, Colombia

    ROR https://ror.org/00gkhpw57

  3. 3 Universidad del Cauca
    info

    Universidad del Cauca

    Popayán, Colombia

    ROR https://ror.org/04fybn584

  4. 4 Universidad Cooperativa de Colombia
    info

    Universidad Cooperativa de Colombia

    Bogotá, Colombia

    ROR https://ror.org/04td15k45

  5. 5 Vellore Institute of Technology University
    info

    Vellore Institute of Technology University

    Vellore, India

    ROR https://ror.org/00qzypv28

Revista:
Revista Colombiana de Computación

ISSN: 1657-2831 2539-2115

Año de publicación: 2021

Título del ejemplar: Revista Colombiana de Computación

Volumen: 22

Número: 1

Páginas: 44-55

Tipo: Artículo

DOI: 10.29375/25392115.4153 DIALNET GOOGLE SCHOLAR lock_openDialnet editor

Otras publicaciones en: Revista Colombiana de Computación

Resumen

Universidad inteligente es un concepto emergente, fuertemente anclado a las tecnologías inteligentes, y considerado por diferentes autores en la literatura. Las organizaciones, incluidas las universidades, necesitan incorporar las tecnologías inteligentes para aprovechar las capacidades que proporcionan para transformar sus procesos e impulsarlas hacia nuevos modelos organizativos. Una universidad inteligente se centra en la mejora de su infraestructura tecnológica para lograr sus objetivos educativos de calidad. Este trabajo presenta la integración de los factores clave para la adopción de cuatro tecnologías inteligentes: Computación en la nube, Big Data, Inteligencia Artificial, e Internet de las Cosas. Esta caracterización e integración nos permite concluir sobre la necesidad de alineación de las tecnologías digitales con los procesos de la organización, exigiendo una mayor interacción con la alta dirección de la empresa.

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