The client faced multiple critical bottlenecks in managing and utilizing enterprise data effectively, which limited their ability to make agile business decisions. Their legacy on-premise data warehouse came with scalability limitations and high maintenance costs, while data remained fragmented across different departments, resulting in inconsistent reporting and the absence of a single source of truth.
In addition, slow and manual reporting processes delayed decision-making, reducing operational efficiency. The lack of real-time analytics, visualization capabilities, and forward-looking AI models further prevented the organization from gaining predictive insights and making proactive, data-driven decisions.