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  • Apr 16

Unification Of Data Platforms For A Customer With 1M+ Merchants Worldwide

Unification Of Data Platforms For A Customer With 1M+ Merchants Worldwide

Unification Of Data Platforms For A Customer With 1M+ Merchants Worldwide

Background: 

Our client, a multinational corporation, operates in the Merchant Banking and Capital Market segments. The company embarked on a Revenue Assurance and Reporting initiative aimed at modernizing and unifying its data platform. This initiative sought to leverage harmonized data sets for each fundamental step of payment processing. 

Challenges: 

The client faced several challenges: 

Enterprise M&A: Multiple mergers and acquisitions led to a proliferation of platforms, infrastructures, and providers. 

Data Inconsistency: Varied definitions, standards, and formats induced data inconsistency and complexity issues. 

Resource-Intensive Analysis: Ensuring data accuracy and reliability for business analysis was resource-intensive and restricted timely insights. 

Solution: 

To address these challenges, Narwal proposed and implemented a Unified Data Platform that integrated and transformed data across various platforms, applications, and third-party systems. Key elements of the solution included: 

Data Integration: Integrating data from disparate sources to create a cohesive and consistent data environment. 

Enriched Data Sets: Providing enriched, harmonized, and consumption-ready data sets, offering a comprehensive 360° view across customer products, billing, pricing, and more. 

Outcomes: 

The implementation of the Unified Data Platform resulted in significant improvements for the client: 

Cost-Effective Centralized Data Management: A streamlined platform reduced costs associated with managing multiple systems. 

Single Source of Truth: Establishing a single source of truth drove actionable business insights, improving decision-making processes. 

AI/ML Readiness: The platform’s enhanced data capabilities enabled the client to leverage AI and machine learning for advanced analytics. 

Enhanced Security and Compliance: Improved data security and compliance measures were implemented, ensuring data integrity. 

Scalability: The solution provided scalability to accommodate future growth and data expansion. 

Improved Data Quality: Ensured high-quality, reliable data for more accurate business analysis. 

Partner with Narwal to modernize your data platforms and transform your business insights. Contact us today to explore how our solutions can drive efficiency and innovation in your organization. 

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