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Dr Arvind Mayaram is a former Finance Secretary to the Government of India, a senior policy advisor, and teaches public policy. He is also Chairman of the Institute of Development Studies, Jaipur.
May 5, 2026 at 3:18 AM IST
The global debate on artificial intelligence is converging on a central question: who controls AI, and on what terms? The United States, the European Union and China have each arrived—through different institutional pathways—at workable answers. In each case, the underlying foundation is similar: structured, interoperable, and high-quality data ecosystems that make AI systems usable at scale.
India’s Paradox: Data-Rich, Intelligence-Poor
This distinction is not semantic. AI systems are only as effective as the data they are trained on and deployed with. Without reliable, standardised inputs, they produce noise, bias, and error—scaling inefficiencies rather than correcting them. The constraint, therefore, lies not in the availability of data, but in its usability.
Emerging Architecture: Progress, But Not Transformation
Yet these initiatives operate largely as overlays on existing systems. They improve access to data, but do not fully resolve the more fundamental constraint: the quality, consistency, and interoperability of data at the point of generation. Data in India is still produced within departmental silos, with varying definitions, formats, and levels of reliability. Post hoc harmonisation can only partially correct these deficiencies. Without addressing the upstream problem of how data is generated, the translation of data into usable intelligence will remain limited.
Capability Without Core Input
India’s own experience demonstrates what is possible when data systems are designed well. Platforms such as Aadhaar and the Unified Payments Interface have shown how standardised, interoperable data architectures can operate at a population scale. These systems have enabled more efficient service delivery, reduced leakages, and created entirely new layers of economic activity. However, they remain largely sector-specific. The broader administrative data ecosystem has yet to achieve comparable levels of integration and reliability.
From Administrative By-Product to Strategic Asset
There is also a strategic economic dimension to this transition. Indian users generate vast volumes of data across digital platforms, financial systems, and public services. Much of this data contributes, directly or indirectly, to AI systems developed elsewhere. Without structured, governed systems for data use, India risks remaining a passive data source while value is captured externally. Conversely, if India can create high-quality, consent-based data ecosystems at scale, it can position itself not only as a user of AI but as a provider of structured data resources within global value chains.
AI as a Governance Multiplier
This transformation is not purely technical; it is institutional and federal. Data is generated at the level of states and local bodies, where capacity varies significantly. Panchayats and municipalities, which produce large volumes of administrative data, often operate with outdated systems and limited standardisation. Building an AI-ready data ecosystem will therefore require alignment across levels of government, supported by common standards and sustained capacity-building.
The Political Economy of Data Reform
The Missing Link
The more fundamental task is to move from data generation to data governance, and from data governance to usable intelligence. This requires disciplined attention to first principles: data quality at source, interoperability across systems, and clear frameworks for access and use. It is an administrative challenge as much as a technological one.
The global debate on AI is ultimately about control—over technology, over platforms, and over value creation. For India, however, the more immediate challenge is foundational: whether it can convert the data it already generates into intelligence that drives governance and economic growth. Until that gap is closed, AI will remain a promise rather than a practical instrument.