TY - JOUR
T1 - Data Automation with Deep Learning
T2 - 23rd LACCEI International Multi-Conference for Engineering, Education and Technology, LACCEI 2025
AU - Chacón-Pajuelo, Elvis
AU - Iglesias-Reyes, José
AU - Ornella Flores-Castañeda, Rosalynn
N1 - Publisher Copyright:
© 2025 Latin American and Caribbean Consortium of Engineering Institutions. All rights reserved.
PY - 2025
Y1 - 2025
N2 - The instructions give the basic guidelines for This research addresses the application of Deep Learning techniques in data automation, highlighting its benefits and areas of implementation. A comprehensive search of academic databases was conducted using the PRISMA methodology, selecting relevant studies according to specific inclusion and exclusion criteria. The analysis focused on two main categories: predictive models and convolutional neural networks (CNN). In the area of predictive models, applications such as text sentiment analysis and IoT systems for predicting school dropout were evaluated. For CNNs, methods for 3D localization and smart factory management were explored. The findings indicate that Deep Learning significantly improves accuracy and efficiency in data automation, with applications in sectors such as technology, healthcare, agriculture and energy. Despite the limitations of the study, such as time coverage and database selection, future challenges are identified, including improving model scalability and efficiency, data security and privacy, and adaptability to new contexts with limited data. These findings provide a solid foundation for future research and practical applications in the field of Deep Learning.
AB - The instructions give the basic guidelines for This research addresses the application of Deep Learning techniques in data automation, highlighting its benefits and areas of implementation. A comprehensive search of academic databases was conducted using the PRISMA methodology, selecting relevant studies according to specific inclusion and exclusion criteria. The analysis focused on two main categories: predictive models and convolutional neural networks (CNN). In the area of predictive models, applications such as text sentiment analysis and IoT systems for predicting school dropout were evaluated. For CNNs, methods for 3D localization and smart factory management were explored. The findings indicate that Deep Learning significantly improves accuracy and efficiency in data automation, with applications in sectors such as technology, healthcare, agriculture and energy. Despite the limitations of the study, such as time coverage and database selection, future challenges are identified, including improving model scalability and efficiency, data security and privacy, and adaptability to new contexts with limited data. These findings provide a solid foundation for future research and practical applications in the field of Deep Learning.
KW - Data automation
KW - Data Security
KW - Deep Learning
KW - Predictive Modelling, Neural Networks
UR - https://www.scopus.com/pages/publications/105019301167
U2 - 10.18687/LACCEI2025.1.1.1769
DO - 10.18687/LACCEI2025.1.1.1769
M3 - Artículo de la conferencia
AN - SCOPUS:105019301167
SN - 2414-6390
JO - Proceedings of the LACCEI international Multi-conference for Engineering, Education and Technology
JF - Proceedings of the LACCEI international Multi-conference for Engineering, Education and Technology
IS - 2025
Y2 - 16 July 2025 through 18 July 2025
ER -