
The future of science must be shaped by partnerships and not patents: Minister Dharmendra Pradhan
NEW DELHI: Union Education Minister Dharmendra Pradhan on Tuesday said that science must be shared with all and partnerships, not patents, must shape the future.
A PIB release said that delivering a talk at the Global Young Scientists Conference at IIT, Hyderabad, Pradhan said, 'India believes in science that is empathetic, ethical, and equitable.'
For India, `Vasudhaiva Kutumbakam', One Earth, One Family, One Future, was not just a slogan but a way of life. 'India's global engagements were rooted in these values. Initiatives like the International Solar Alliance, the Coalition for Disaster Resilient Infrastructure, Mission LiFE, and the India Science and Research Fellowship are reflections of India's vision of Vishwa Bandhutva — global friendship through science,' the Minister said.
Scientists must collaborate and co-create with a sense of purpose and empathy to realise the vision of Viksit Bharat and advance human-centric development, he added.
Pradhan also called upon scientists, innovators, and policymakers to join hands to build ecosystems that empower the most vulnerable.
Pradhan planted saplings at the IIT Hyderabad Campus as part of the `Ek Ped Maa Ke Naam' 2.0 initiative. The conference featured dynamic discussions and thematic sessions on these topics - Environmental, Social, and Governance (ESG); Health and Nutrition for Global Wellness; Industry 5.0: Augmenting Human-Machine Interface as well as Innovation and Entrepreneurship: Global Landscape.
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Time of India
2 hours ago
- Time of India
Made in India, Made for India: The new AI model supports 22 regional languages and emphasizes inclusivity, ethics and cultural relevance.
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The Hindu
10 hours ago
- The Hindu
How safe AI is in healthcare depends on the humans of healthcare
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Access control These cases indicate that the best use of AI might be as a healthcare professional's assistant. In 2019, MediBuddy, a digital healthcare company that provides online doctor consultations and other services, experimented with an AI bot that could chat with a patient, extract clinically relevant details from the conversation, and compile and present them to a doctor along with suggested diagnoses. Nine of the 15 doctors who tested this app said it was helpful while the rest remained 'sceptical', said Krishna Chaitanya Chavati, MediBuddy's head of data science. He flagged data privacy as a key concern. In India, digital personal information, including an individual's health information, is governed by the Information Technology Act 2000 and the Digital Personal Data Protection Act 2023. Neither Act specifically mentions AI technologies, although lawyers suggest the latter could apply to AI tools. 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Even those with more than a decade of experience reported the correct BI-RADS scores in only 45.5% of such cases. The researchers reported being surprised that 'even highly experienced radiologists were adversely impacted by the AI system's judgments,' the study's lead author said in 2023. For Rai, this study is evidence of a pressing need to train 'doctors on the limits of AI' and to constantly test and reassess 'AI tools being developed for and used in healthcare'. India's rapid adoption of medical AI has illuminated a path to cheaper, faster, more equitable care. But algorithms inherit human fallibility while also further obfuscating it. If technology is to augment and not supplant ethical medicine, medical AI will need robust data governance, clinician training, and enforceable accountability. Sayantan Datta is a faculty member at Krea University and an independent science journalist.


Time of India
16 hours ago
- Time of India
IIT-Kharagpur team wins national ideathon under ‘save water' category
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