Saved in:
Bibliographic Details
Main Author: Abughazala, Moamin
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2401.12011
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866911792275390464
author Abughazala, Moamin
author_facet Abughazala, Moamin
contents Context - The exponential growth of data is becoming a significant concern. Managing this data has become incredibly challenging, especially when dealing with various sources in different formats and speeds. Moreover, Ensuring data quality has become increasingly crucial for effective decision-making and operational processes. Data Architecture is crucial in describing, collecting, storing, processing, and analyzing data to meet business needs. Providing an abstract view of data-intensive applications is essential to ensure that the data is transformed into valuable information. We must take these challenges seriously to ensure we can effectively manage and use the data to our advantage. Objective - To establish an architecture framework that enables a comprehensive description of the data architecture and effectively streamlines data quality monitoring. Method - The architecture framework utilizes Model Driven Engineering (MDE) techniques. Its backing of data-intensive architecture descriptions empowers with an automated generation for data quality checks. Result - The Framework offers a comprehensive solution for data-intensive applications to model their architecture efficiently and monitor the quality of their data. It automates the entire process and ensures precision and consistency in data. With DAT, architects and analysts gain access to a powerful tool that simplifies their workflow and empowers them to make informed decisions based on reliable data insights. Conclusion - We have evaluated the DAT on more than five cases within various industry domains, demonstrating its exceptional adaptability and effectiveness.
format Preprint
id arxiv_https___arxiv_org_abs_2401_12011
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Architecting Data-Intensive Applications : From Data Architecture Design to Its Quality Assurance
Abughazala, Moamin
Software Engineering
Context - The exponential growth of data is becoming a significant concern. Managing this data has become incredibly challenging, especially when dealing with various sources in different formats and speeds. Moreover, Ensuring data quality has become increasingly crucial for effective decision-making and operational processes. Data Architecture is crucial in describing, collecting, storing, processing, and analyzing data to meet business needs. Providing an abstract view of data-intensive applications is essential to ensure that the data is transformed into valuable information. We must take these challenges seriously to ensure we can effectively manage and use the data to our advantage. Objective - To establish an architecture framework that enables a comprehensive description of the data architecture and effectively streamlines data quality monitoring. Method - The architecture framework utilizes Model Driven Engineering (MDE) techniques. Its backing of data-intensive architecture descriptions empowers with an automated generation for data quality checks. Result - The Framework offers a comprehensive solution for data-intensive applications to model their architecture efficiently and monitor the quality of their data. It automates the entire process and ensures precision and consistency in data. With DAT, architects and analysts gain access to a powerful tool that simplifies their workflow and empowers them to make informed decisions based on reliable data insights. Conclusion - We have evaluated the DAT on more than five cases within various industry domains, demonstrating its exceptional adaptability and effectiveness.
title Architecting Data-Intensive Applications : From Data Architecture Design to Its Quality Assurance
topic Software Engineering
url https://arxiv.org/abs/2401.12011