Abstract
Task scheduling is one of the most fundamental difficulties confronting numerous sectors, including education, healthcare, and industrial management. Scheduling quality has a direct impact on performance efficiency, resource utilization, and end user satisfaction. With the growing volume and diversity of data, there is a greater demand for intelligent systems that can handle the spatial and temporal complexity of jobs and resource allocation. As a result, modern data analysis and decision-making processes have become critical for ensuring workflow optimization while reducing time and space waste. This study proposes an innovative approach to task scheduling that combines multidimensional data analysis using Data Cubes (a business intelligence method that enables multidimensional data analysis) and spatial optimization using the Euclidean distance function. The main idea is to represent scheduling elements such as tasks, resources, times, and locations in a structured data cube, allowing for rapid execution of multidimensional queries and aggregations. By evaluating the Euclidean distance between jobs and available resources, the system may find the best match based on the shortest distance, ensuring efficient resource allocation. The use of a data cube to study scheduling patterns, resource utilization, and time allocation improves decision-making. The results indicate the model's effectiveness and scalability. Furthermore, merging business intelligence tools with engineering optimization methods creates a potential foundation for addressing complicated scheduling issues in dynamic situations.
Keywords
Business intelligence, Data cube, Dynamic environments, Euclidean distance, Multidimensional data analysis, Performance optimization, Task scheduling
Subject Area
Computer Science
Article Type
Article
First Page
2233
Last Page
2243
Creative Commons License

This work is licensed under a Creative Commons Attribution 4.0 International License.
How to Cite this Article
Hammoodi, Mahmood Shakir; Jihad, Suhad Hatim; and Jebur, Mithal Hadi
(2026)
"Data Scheduling Using Distance Function with Single-Pass Processing,"
Baghdad Science Journal: Vol. 23:
Iss.
6, Article 22.
DOI: https://doi.org/10.21123/2411-7986.5336
