Context:
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A recent UN report warns that the rapid adoption of Artificial Intelligence (AI) in the Asia-Pacific region may deepen existing socio-economic inequalities.
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While AI investment has surged globally, countries in Asia-Pacific differ sharply in preparedness, infrastructure, and institutional capacity, raising concerns about an unequal digital future.
Key Highlights:
Rising AI Adoption and Investment
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Global AI investment has increased nearly 15-fold in the last decade, with Asia-Pacific emerging as an active hub of AI expansion.
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However, this transition is unfolding from highly unequal starting points across countries and within societies.
Disparities in AI Preparedness
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The UN report highlights major gaps in readiness:
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Advanced economies show AI preparedness above 70%
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Fragile and low-income states remain below 20%
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This uneven capacity risks excluding weaker economies from AI-driven growth.
Assessment Framework: IMF AI Preparedness Index
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Preparedness is measured across multiple dimensions:
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Digital infrastructure
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Human capital
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Labour market policies
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Innovation capacity
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Economic integration
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Regulation and ethics
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Within-Country Inequalities
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Disparities are not only between countries but also within them.
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Income and wealth remain concentrated among the top 10%, limiting broad-based participation in AI benefits.
Infrastructure Gaps: Hard and Soft Foundations
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Inclusive AI adoption requires strengthening:
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Hard infrastructure: electricity, internet, computing systems
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Soft infrastructure: skilled workforce, strong institutions, legal frameworks
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Many countries still lack reliable electricity and robust data systems.
Gender Dimension of Automation Risk
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Women in Asia-Pacific face greater exposure to AI-driven automation compared to men, increasing risks of job displacement and gender inequality.
Significance / Concerns
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AI may accelerate growth in well-prepared economies like Singapore, South Korea, and China, while widening the development gap for others.
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Without inclusive governance, AI could reinforce existing inequalities in wealth, opportunity, and access.
Relevant Prelims Points:
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AI investment has grown 15 times globally in a decade.
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AI preparedness varies widely in Asia-Pacific: 70%+ in advanced economies vs <20% in fragile states.
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Preparedness depends on infrastructure, human capital, labour policies, innovation, and ethical regulation.
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Inequality persists within countries, with wealth concentrated among the top 10%.
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Women are more vulnerable to AI-driven automation impacts.
Benefits + Challenges + Impact
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Benefits: Productivity gains, innovation, economic transformation.
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Challenges: Skill shortages, digital divide, weak institutions, unequal access.
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Impact: AI could widen regional and social inequalities unless inclusively managed.
Relevant Mains Points:
Economy and Development Dimensions
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AI can become a driver of the next growth wave, but unequal readiness risks creating “AI haves” and “AI have-nots.”
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Developing nations may face job disruption without adequate reskilling systems.
Social Justice Concerns
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AI adoption could deepen inequalities in:
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Employment access
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Education opportunities
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Gender outcomes
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Concentration of AI benefits among elites threatens inclusive development.
Governance and Regulatory Needs
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Strong public institutions are needed to ensure:
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Ethical AI use
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Data protection
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Fair access to innovation
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Legal frameworks must prevent exclusion and discrimination in AI deployment.
Way Forward
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Asia-Pacific countries should adopt a balanced strategy:
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Expand affordable internet and electricity access
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Invest in education, skilling, and reskilling programmes
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Strengthen labour protections for automation transitions
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Build ethical and regulatory frameworks for inclusive AI
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Address wealth concentration through inclusive growth policies
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UPSC Relevance (GS-wise):
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GS 3 (Economy): AI-driven growth, digital divide, future of work
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GS 2 (Social Justice): Inequality, gender impacts, inclusive development
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GS 3 (Science & Technology): AI governance, preparedness, ethical frameworks
