Data Mesh in Practice: How Organizations are Decentralizing Data Ownership

Authors

  • Naresh Dulam Vice President Sr Lead Software Engineer, JP Morgan Chase, USA Author
  • Abhilash Katari Engineering Lead, Persistent Systems Inc, USA Author
  • Karthik Allam Big Data Infrastructure Engineer, JP Morgan & Chase, USA Author

Keywords:

Data Mesh, Decentralized Data Ownership, Domain-Driven Design

Abstract

Data Mesh is an emerging approach to data architecture that aims to overcome the limitations of centralized systems by decentralizing data ownership and treating data as a product. Unlike traditional data platforms that often struggle with scalability, Data Mesh emphasizes a shift in how organizations manage and utilize data, empowering domain-oriented teams to take full responsibility for the data they produce. This model advocates for domain-driven design, where data is owned and managed by cross-functional teams that understand the specific needs of their business unit, creating a more agile and scalable data ecosystem. The core principles of Data Mesh—decentralized ownership, self-serve infrastructure, & a product-focused approach to data—allow organizations to scale data operations more effectively while maintaining high-quality data easily accessible to those who need it. Adopting Data Mesh requires technical changes & significant cultural shifts within organizations. A key challenge organizations face when adopting Data Mesh is overcoming resistance to change, as this new model requires teams to embrace new ways of thinking about and using data. This paper explores how various organizations have successfully implemented Data Mesh, focusing on real-world case studies demonstrating the benefits and the challenges associated with its adoption. By decentralizing data ownership, organizations can improve collaboration, reduce bottlenecks in data access, and foster a more substantial alignment between data & business goals. However, the transition to a Data Mesh model has challenges. Organizations must invest in the right technology and infrastructure, train teams to work in this new decentralized way and redefine how data is governed and secured. Ultimately, the shift to Data Mesh can lead to greater flexibility and innovation in how data is utilized, but it requires careful planning and an openness to cultural change. This paper provides practical guidance for organizations transitioning from traditional, centralized data systems to a decentralized Data Mesh architecture, offering insights into the strategies, tools, & practices that can facilitate a successful implementation.

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Published

30-07-2020

How to Cite

[1]
Naresh Dulam, Abhilash Katari, and Karthik Allam, “Data Mesh in Practice: How Organizations are Decentralizing Data Ownership ”, Distrib Learn Broad Appl Sci Res, vol. 6, Jul. 2020, Accessed: Dec. 22, 2024. [Online]. Available: https://dlabi.org/index.php/journal/article/view/248

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