Please use this identifier to cite or link to this item: https://rda.sliit.lk/handle/123456789/4101
Title: Enhancing Fault-Tolerant ETL Pipelines Through AI-Driven Predictive Maintenance: A Corporate Framework for Improved Data Quality and Integration
Authors: Wickramaarachchi, W. A. P. C. K.
Keywords: Enhancing Fault-Tolerant
ETL Pipelines
AI-Driven Predictive Maintenance
Corporate Framework
Improved Data Quality
Integration
Issue Date: Dec-2024
Publisher: SLIIT
Abstract: Maintaining high data quality and consistency across various sources is essential for making informed and effective decisions in today’s data-centric environment. This research presents an AI-driven approach to enhance fault tolerance within ETL (Extract, Transform, Load) pipelines, aiming to improve data quality through predictive maintenance mechanisms. The proposed ETL framework automates data cleaning, standardization, and error handling, utilizing machine learning and natural language processing (NLP) techniques to identify and resolve data inconsistencies in real time. By integrating AI models into each phase of the ETL process, the pipeline demonstrates resilience against common data irregularities across varied formats, such as dates, numbers, and text. A unique feature of this approach is its predictive maintenance capability, where machine learning algorithms proactively address potential faults before they escalate, reducing downtime and increasing overall system reliability. Key components include LSTM-based models for date and text standardization, anomaly detection mechanisms for fault tolerance, and an automated error logging system to streamline data auditing processes. Results from experimental evaluations show that the AI-driven pipeline achieves significant improvements in data consistency and error detection, with up to a 98% reduction in inconsistencies for critical data fields. Despite some limitations, including resource intensity and sensitivity to rare data patterns, this research highlights the potential of AI-augmented ETL systems to meet the growing demand for robust data integration solutions in corporate environments. The findings suggest that AI-driven fault-tolerant ETL pipelines can play a pivotal role in advancing data quality management, enabling organizations to make data-driven decisions with greater confidence
URI: https://rda.sliit.lk/handle/123456789/4101
Appears in Collections:2024

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