Vol. 3 No. 2 (2023): Journal of AI-Assisted Scientific Discovery
Articles

Data Transformation and Enrichment: Utilizing ML to automatically transform and enrich data for better analytics

Muneer Ahmed Salamkar
Senior Associate at JP Morgan Chase, USA
Karthik Allam
Big Data Infrastructure Engineer, JP Morgan & Chase, USA
Jayaram Immaneni
Sre Lead, JP Morgan Chase, USA
Cover

Published 03-07-2023

Keywords

  • Data Transformation,
  • Data Enrichment

How to Cite

[1]
Muneer Ahmed Salamkar, Karthik Allam, and Jayaram Immaneni, “Data Transformation and Enrichment: Utilizing ML to automatically transform and enrich data for better analytics”, Journal of AI-Assisted Scientific Discovery, vol. 3, no. 2, pp. 613–638, Jul. 2023, Accessed: Dec. 23, 2024. [Online]. Available: https://scienceacadpress.com/index.php/jaasd/article/view/222

Abstract

Data transformation and enrichment are critical processes in preparing raw data for meaningful analytics, and machine learning (ML) integration has revolutionized these practices. Traditional data transformation often involves manual workflows that are time-consuming, error-prone, and unable to scale with modern data's growing complexity and volume. Machine learning offers an intelligent, automated approach, enabling organizations to streamline these processes while achieving higher accuracy and efficiency. ML algorithms can identify patterns, detect anomalies, and apply context-specific transformations to raw data, ensuring consistency and quality. Moreover, ML enhances data enrichment by integrating disparate datasets, filling gaps with predictive analytics, and adding valuable context, such as geospatial tagging or sentiment analysis. This automation accelerates data preparation and empowers businesses with deeper insights, fueling more informed decision-making and competitive advantage. Use cases span diverse industries—from enriching customer profiles in marketing with behavioural insights to transforming IoT sensor data for real-time analytics in manufacturing. By leveraging ML for transformation and enrichment, organizations can reduce operational costs, minimize human intervention, and unlock the full potential of their data assets. However, implementing ML-driven data pipelines requires addressing challenges like model training, scalability, and ethical data handling. Despite these hurdles, the convergence of ML and data transformation sets a new standard for analytics readiness, enabling businesses to adapt quickly to evolving data landscapes and derive actionable insights with unprecedented speed and precision.

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