Major technology companies are vigorously vying for AI engineers, providing substantial compensation packages while concurrently reducing staff in other sectors. This situation generates internal conflicts and underscores the necessity for a more extensive AI talent pool. India’s emphasis on downstream AI applications must transition towards agentic AI, necessitating considerable upskilling of its workforce to take advantage of the AI revolution
Context: Artificial Intelligence (AI) is emerging as a General-Purpose Technology of the 21st century, holding the potential to reshape economies, societies, and governance. The theme “India, let’s get AI-ready, steady, go” aptly captures the three-phased, holistic approach India must adopt: building a robust foundation, proceeding with ethical caution, and finally, accelerating implementation for socio-economic transformation.
Phase 1: Getting “Ready” – Building the Foundational Ecosystem

- Digital Infrastructure: India’s journey requires robust, high-speed connectivity (5G/6G) and massive computational power. The IndiaAI Mission and the National Supercomputing Mission are critical steps towards building sovereign High-Performance Computing (HPC) capabilities, reducing reliance on foreign infrastructure.
- Data as a National Resource: AI algorithms are fueled by data. India has a demographic dividend that translates into a massive data dividend. The challenge lies in creating high-quality, anonymised, and diverse datasets. The India Datasets program aims to create large public datasets, while the Digital Personal Data Protection (DPDP) Act, 2023, provides a framework for lawful data processing.
- Skilling and Human Capital: To avoid a “digital divide,” a massive upskilling and reskilling initiative is paramount. The National Education Policy (NEP) 2020, with its focus on interdisciplinary learning and technology integration, along with industry-academia partnerships, is essential to create a future-ready workforce proficient in AI and data science.
- Fostering Research & Innovation: Creating a vibrant R&D ecosystem through increased public and private investment is crucial. Establishing Centres of Excellence in AI and promoting startups through regulatory sandboxes will drive indigenous innovation.
- Ethical Guardrails and Regulation: AI systems can perpetuate and amplify existing biases. India needs to develop a strong “Responsible AI” framework focusing on transparency, fairness, accountability, and privacy. A balanced regulatory approach is needed—one that fosters innovation without compromising citizen rights and safety, learning from global models like the EU’s AI Act.
- Addressing Job Displacement: The fear of automation-led job losses is significant. The “steady” phase involves a proactive strategy to manage this transition, focusing on creating new job roles, strengthening social safety nets, and promoting lifelong learning.
- Ensuring Inclusivity (“AI for All”): The benefits of AI must not be confined to urban elites. A steady approach ensures a focus on deploying AI in sectors like agriculture (precision farming), healthcare (remote diagnostics), and education (personalised learning) to empower rural and marginalised communities.
- Driving Economic Growth: AI can boost productivity in key sectors like manufacturing (Industry 4.0), services, and fintech. It can enhance supply chain efficiency, optimise energy consumption, and propel India’s goal of becoming a $5 trillion economy.
- Transforming Governance: AI can enable evidence-based policymaking, improve public service delivery, and enhance efficiency in areas like traffic management and disaster response. The Unified Logistics Interface Platform (ULIP) is an example of leveraging data for governance.
- National Security and Strategic Autonomy: Developing indigenous AI capabilities is vital for national security, from modernising defence equipment and improving surveillance to strengthening cybersecurity.
- A Synergistic Approach: Seamless collaboration between the central government, states, industry, academia, and civil society.
- Agile Governance: Creating adaptive regulatory frameworks that can evolve with the technology.
- Public Trust: Building public confidence through transparent communication about AI’s benefits and risks.
