No Compromise on Ethical Use of AI, PM Modi Tells Global CEOs

Prime Minister Narendra Modi has emphasized that there must be no compromise on the ethical use of artificial intelligence, urging global business leaders and technology executives to ensure that AI development remains responsible, inclusive, and aligned with human values.

Addressing CEOs and industry leaders, the Prime Minister highlighted that while AI has the potential to transform economies and societies, its long-term success depends on trust, transparency, and accountability.


Ethics Must Guide AI Innovation

PM Modi underscored that technological progress should not come at the cost of ethical standards. <a href="https://aiopscommunity1-g7ccdfagfmgqhma8.southeastasia-01.azurewebsites.net/infosys-wipro-and-other-it-stocks-slide-up-to-6-as-ai-fears-weigh-on-tech-sector/" title="Infosys, Wipro and Other IT Stocks Slide Up to 6% as AI Fears Weigh on Tech Sector”>As AI systems increasingly influence decision-making across healthcare, finance, governance, and everyday life, he stressed the need for clear ethical boundaries in how these technologies are designed and deployed.

He noted that AI should empower people, improve productivity, and support social good—rather than deepen inequality or create unintended harm.


Responsible AI as a Global Priority

The Prime Minister called on global technology companies to take shared responsibility for ensuring that AI is used safely and fairly across borders. He emphasized that AI challenges—such as bias, misuse, data privacy, and accountability—are global in nature and require collective international action.

India, he said, supports global collaboration on AI governance frameworks that encourage innovation while safeguarding public interest.


AI for Inclusion and Development

Highlighting India’s perspective, PM Modi reiterated that AI should be leveraged to drive inclusive growth, particularly in developing economies. He pointed to AI’s potential role in improving access to healthcare, education, agriculture support, and public services.

When used responsibly, AI can become a powerful tool for addressing large-scale social and economic challenges, especially in countries with diverse populations and complex needs.


Balancing Innovation With Trust

While encouraging innovation, the Prime Minister warned against prioritizing speed and scale over safety and ethics. He stressed that public trust is essential for AI adoption and that companies must proactively address concerns related to transparency, explainability, and data protection.

Ethical AI, he said, is not a constraint on innovation but a foundation for sustainable growth.


India’s Approach to AI Governance

PM Modi outlined India’s approach to AI as one that balances innovation, regulation, and public welfare. India aims to foster a strong AI ecosystem while ensuring that technology serves humanity and upholds democratic values.

He encouraged CEOs to align their AI strategies with broader societal goals, reinforcing the idea that responsible AI is both a moral and strategic imperative.


Looking Ahead

As AI becomes deeply embedded in global economic and social systems, PM Modi’s message reinforces a growing consensus: the future of AI must be ethical by design. Governments, businesses, and technologists must work together to ensure AI remains a force for good.

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