Automated Data Mapping And Schema Matching For Improving Data Quality In Master Data Management
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Keywords

Automated Data Mapping
Schema Matching
Data Quality

How to Cite

[1]
Sarbaree Mishra and Sairamesh Konidala, “Automated Data Mapping And Schema Matching For Improving Data Quality In Master Data Management”, Journal of Bioinformatics and Artificial Intelligence, vol. 3, no. 2, pp. 354–373, Sep. 2023, Accessed: Dec. 22, 2024. [Online]. Available: https://biotechjournal.org/index.php/jbai/article/view/140

Abstract

Data quality is fundamental to ensuring an organization's information remains accurate, consistent, and reliable, especially in master data management (MDM). One of the key challenges organizations face is integrating data from various sources, each with its schema and format, leading to consistency and difficulties in creating a unified data view. Automated data mapping and schema matching are emerging solutions to address these challenges by enhancing the alignment and consistency of data structures across different systems. By utilizing intelligent algorithms and machine learning models, these techniques automate identifying relationships between data fields, significantly reducing the manual effort and errors typically involved. This automation allows organizations to quickly map and integrate data from multiple sources, streamlining the entire process and ensuring more accurate and consistent results. These technologies not only speed up data integration but also reduce the potential for human error, which is especially important when dealing with large, complex datasets. Additionally, automated data mapping and schema matching improve data quality by ensuring that data is consistently structured across systems, leading to improved decision-making and operational efficiency. These techniques also help eliminate redundancies and discrepancies within data, making it easier to maintain a single, reliable source of truth for critical business information. As these methods evolve, they offer an increasingly effective solution for organizations seeking to enhance their data integration processes. Automated mapping and schema matching not only improve data quality but also provide a scalable approach to managing data across diverse platforms, making them a valuable tool for organizations aiming to unlock the full potential of their data. These advancements are revolutionizing how businesses handle data integration, ensuring that data remains a trusted asset that can support better decision-making and drive business growth.

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