High-quality data is essential for effective supervision, poor data leads to poor decisions and crises. In emerging markets, it’s even more critical because internal controls, risk management, and audits at financial institutions are still developing.
High-quality data means, right frequency i.e. high for fast risks like liquidity/cyber, lower for slower ones like credit, sufficient granularity for proactive risk detection.
Reliable accuracy reflecting true risk profiles: Global trend: Shift to granular data since the GFC for better risk-based supervision, prioritized in emerging markets despite challenges. Granular data advantages, Proactive risk identification, prevents crises, enables effective supervision.
Challenges: Data availability/digitization costs, legacy tech, processing/analysis capacity. Sup Tech benefits for inclusive DFS in emerging economies, Boosts supervisor productivity amid sector growth, enables fast analysis of massive datasets, trend/bubble detection, proactive work across all supervision areas.
Main Sup Tech obstacles: Not one tool requires long-term planning for integrated solutions, useless without good data quality, Lack of internal IT/project expertise, High costs (infrastructure, training, maintenance), Needs strong governance and leadership support.