Cloud Adoption in Large Enterprises: A Case Study on Implementing Enterprise Architecture Frameworks for Seamless Integration

Cloud Adoption in Large Enterprises: A Case Study on Implementing Enterprise Architecture Frameworks for Seamless Integration

Authors

  • Priya Ranjan Parida Universal Music Group, USA
  • Mahadu Vinayak Kurkute Stanley Black & Decker Inc, USA
  • Jegatheeswari Perumalsamy Athene Annuity and Life company

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Keywords:

enterprise architecture, cloud adoption

Abstract

The integration of cloud technologies into existing IT ecosystems has become a critical objective for large enterprises seeking enhanced scalability, operational efficiency, and competitive advantage. However, the adoption of cloud solutions presents significant challenges, particularly in aligning new technologies with legacy systems and organizational objectives. This case study investigates how large enterprises strategically employ enterprise architecture (EA) frameworks to facilitate seamless cloud integration, emphasizing the role of structured frameworks in managing complexity, ensuring compatibility, and maintaining governance. Enterprise architecture frameworks provide organizations with standardized methodologies and principles, such as The Open Group Architecture Framework (TOGAF), Zachman Framework, and Federal Enterprise Architecture Framework (FEAF), which serve as guides to design, implement, and manage cloud environments in a way that aligns with organizational objectives and existing infrastructures. The use of these frameworks is increasingly critical in large enterprises where cloud adoption impacts various functional areas, ranging from data security to operational agility and cost management.

This study explores the technical and strategic aspects of enterprise architecture frameworks in the context of cloud adoption, highlighting the value of structured planning and governance. The case study examines a large enterprise’s journey through each stage of the cloud integration process, from initial assessment and planning to deployment, optimization, and ongoing governance. Key technical challenges, such as data migration, application interoperability, and compliance with industry standards, are analyzed to provide insights into how EA frameworks can address these issues. The alignment of cloud strategies with enterprise architecture also brings to light critical concerns related to risk management, particularly concerning data privacy, cybersecurity, and regulatory compliance. For example, the study demonstrates how TOGAF’s ADM (Architecture Development Method) enables structured phases of cloud integration, facilitating the identification of core IT assets that require restructuring and highlighting potential integration points for cloud-based services. This approach ensures that the cloud adoption process adheres to established architecture principles, such as modularity, scalability, and reusability, while supporting the organization's broader digital transformation goals.

Further, the case study delves into the practical aspects of employing EA frameworks to bridge the gap between on-premises systems and cloud environments. One of the primary technical considerations is the orchestration of services across hybrid or multi-cloud environments. Here, EA frameworks guide the creation of interoperability standards, allowing the seamless flow of data and functionality across diverse platforms. Additionally, the study addresses how EA frameworks support decision-making processes related to workload distribution, resource allocation, and cost management. For instance, enterprises often leverage EA frameworks to evaluate which applications are best suited for the cloud, ensuring that mission-critical applications maintain high availability and performance standards post-migration.

The case study also addresses the organizational aspects of cloud adoption, specifically how EA frameworks facilitate cross-departmental collaboration and stakeholder alignment. Integrating cloud technology into an existing IT ecosystem is not only a technical endeavor but also one that requires strategic alignment across business units. EA frameworks serve as a unifying language, enabling various departments to communicate and align their objectives, requirements, and resources. By providing a clear, structured approach to cloud adoption, these frameworks enhance the enterprise’s ability to adapt to the evolving technological landscape while minimizing disruptions to daily operations.

Moreover, this study highlights best practices in governance and compliance, underscoring the importance of EA frameworks in establishing robust governance mechanisms that ensure cloud environments operate within defined parameters. Compliance with industry regulations, such as the General Data Protection Regulation (GDPR) and industry-specific standards, remains a priority for enterprises, particularly those in heavily regulated sectors like finance and healthcare. EA frameworks provide the structure needed to define and enforce compliance requirements, leveraging tools and processes that monitor and audit cloud activities across departments. This facilitates real-time insights into compliance status, enabling enterprises to respond swiftly to potential risks.

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Published

05-03-2024

How to Cite

Priya Ranjan Parida, Mahadu Vinayak Kurkute, and Jegatheeswari Perumalsamy. “Cloud Adoption in Large Enterprises: A Case Study on Implementing Enterprise Architecture Frameworks for Seamless Integration”. Journal of Science & Technology, vol. 5, no. 2, Mar. 2024, pp. 150-93, https://thesciencebrigade.com/jst/article/view/498.
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