A mid-sized fintech needed to modernise its legacy applications to support growth, but without a clear information architecture, any replatforming risked replicating the same problems at scale.
The organisation had outgrown its legacy application landscape. Systems were rigid, difficult to extend, and increasingly unable to support the operational and analytical demands of a scaling fintech.
The ambition was clear modernise the platform, enable advanced analytics, and build the foundations for AI-powered capability. But without a coherent enterprise information architecture to guide the overhaul, the risk of building the wrong thing or rebuilding the same fragility at greater scale was high.
Data traceability was also a growing concern. Customers and regulators expected clarity on how data was used and where it flowed. The existing systems provided neither.
We began by conducting a thorough analysis of the existing information landscape mapping data flows, identifying architectural constraints, and understanding the operational and analytical requirements the new systems would need to support.
From this foundation, we designed a scalable enterprise information architecture capable of orchestrating a full systems overhaul. The architecture was built to support high-performance applications for analytics, AI, and operational replatforming, not just today’s requirements, but the organisation’s growth trajectory.
Data traceability mechanisms were designed and implemented throughout, ensuring that data flows were visible, auditable, and trustworthy for both customers and regulators.
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