Generating Dashboards with Python on the RPA process for optimizing the assignment of gardening tasks

Authors

  • Hilario Aradiel Castañeda Universidad Nacional de Ingenieria, Perú
  • Pedro Raúl Acosta de la Cruz Universidad Nacional de Ingenieria, Perú
  • GUILLERMO ANTONIO MAS AZAHUANCHE Universidad Nacional del Callao - (PE)
  • Alfonso Herminio Geronimo Vasquez Universidad Nacional de Ingenieria, Perú
  • José Alberto Flores Salinas Universidad Nacional de Ingenieria, Perú

DOI:

https://doi.org/10.18687/LEIRD2024.1.1.709

Keywords:

Python, RPA, UNI, Task Assignment, Landscaping, Dashboard, KPI..

Abstract

This paper presents key findings from a research addressing the development of dashboards for KPI visualization in the context of RPA-based landscaping task assignment automation. The research adopted a mixed approach, combining quantitative and qualitative methods to assess the effectiveness and impact of RPA and dashboard integration in landscaping task management. Relevant KPIs were identified, effective dashboards were designed and developed, and an RPA system was deployed in a test environment. Results indicate significant improvements in operational efficiency, task assignment accuracy, and real-time monitoring capability of automated process performance. Important conclusions are discussed and practical recommendations are offered for the application and continued optimization of this solution in real-world landscaping service management environments. This study contributes to the body of knowledge on the application of RPA and dashboards in operational process improvement and resource management optimization across various industries.

Downloads

Published

2024-12-12

Issue

Section

Articles

How to Cite

Aradiel Castañeda, H., Acosta de la Cruz, P. R., MAS AZAHUANCHE, G. A., Geronimo Vasquez, A. H., & Flores Salinas, J. A. (2024). Generating Dashboards with Python on the RPA process for optimizing the assignment of gardening tasks. LACCEI, 2(11). https://doi.org/10.18687/LEIRD2024.1.1.709

Most read articles by the same author(s)