Scalable Machine Learning Workflows in Data Warehousing: Automating Model Training and Deployment with AI

Authors

  • Sareen Kumar Rachakatla Lead Developer, Intercontinental Exchange Holdings, Inc., Atlanta, USA Author
  • Prabu Ravichandran Sr. Data Architect, Amazon Web services, Inc., Raleigh, USA Author
  • Jeshwanth Reddy Machireddy Sr. Software Developer, Kforce INC, Wisconsin, USA Author

Keywords:

scalable machine learning workflows, data warehousing, model training automation, AI, automated machine learning (AutoML), continuous integration/continuous deployment (CI/CD)

Abstract

In the contemporary landscape of data warehousing, the integration of scalable machine learning workflows represents a critical advancement for managing and analyzing vast datasets. This paper delves into the nuances of automating model training and deployment within large-scale data environments, emphasizing the pivotal role of artificial intelligence (AI) in enhancing scalability and efficiency. Data warehousing systems, designed to consolidate and manage large volumes of data from disparate sources, face significant challenges when integrating machine learning (ML) models. These challenges include managing the complexity of model training, ensuring the seamless deployment of models, and maintaining performance across diverse data environments.

The scalability of ML workflows in data warehousing is a multifaceted issue that encompasses several core aspects. Firstly, the paper explores the automation of model training processes, highlighting methodologies such as automated machine learning (AutoML) and continuous integration/continuous deployment (CI/CD) pipelines. These methodologies are crucial for managing the iterative nature of model development and ensuring that models can be trained and refined efficiently as data evolves. AutoML frameworks, which automate the selection of algorithms and hyperparameters, significantly reduce the manual effort involved in model training, thereby enhancing scalability and accelerating time-to-insight.

Secondly, the paper addresses the deployment of ML models in data warehousing systems, focusing on the orchestration of model deployment and the integration of these models into production environments. The deployment process involves several layers, including model versioning, real-time inference, and batch processing. Effective model deployment strategies are essential for ensuring that models remain operational and performant in production environments, particularly in the context of large-scale data warehousing systems where data volumes and velocities are substantial.

Furthermore, the study examines the role of AI in optimizing these workflows. AI-driven solutions, such as intelligent resource management and automated scaling mechanisms, are instrumental in adapting to the dynamic demands of data warehousing environments. These solutions leverage AI to predict resource needs, optimize computational efficiency, and manage data pipelines, thus facilitating the effective scaling of ML workflows. The use of AI in this context not only improves operational efficiency but also enhances the overall robustness of the data warehousing system.

The paper also investigates the challenges associated with implementing scalable ML workflows in data warehousing systems. These challenges include handling heterogeneous data sources, managing data quality, and ensuring compliance with regulatory requirements. Effective strategies for addressing these challenges are discussed, including the use of data governance frameworks and advanced data integration techniques. Additionally, the paper explores case studies that illustrate successful implementations of scalable ML workflows in real-world data warehousing scenarios, providing practical insights into the benefits and limitations of various approaches.

Automation of model training and deployment using AI represents a significant advancement in the scalability of machine learning workflows within data warehousing systems. This paper provides a comprehensive examination of the methodologies, technologies, and challenges associated with this integration, offering valuable insights for practitioners and researchers in the field. The findings underscore the importance of leveraging AI to enhance the scalability and efficiency of ML workflows, ultimately contributing to more effective data management and analysis in large-scale environments.

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Published

15-11-2022

How to Cite

[1]
S. Kumar Rachakatla, P. Ravichandran, and J. Reddy Machireddy, “Scalable Machine Learning Workflows in Data Warehousing: Automating Model Training and Deployment with AI”, Australian Journal of Machine Learning Research & Applications, vol. 2, no. 2, pp. 262–286, Nov. 2022, Accessed: Nov. 10, 2024. [Online]. Available: https://sydneyacademics.com/index.php/ajmlra/article/view/109

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