惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

B
Blog
C
Cybersecurity and Infrastructure Security Agency CISA
Microsoft Security Blog
Microsoft Security Blog
B
Blog RSS Feed
云风的 BLOG
云风的 BLOG
G
Google Developers Blog
Recent Announcements
Recent Announcements
A
About on SuperTechFans
cs.AI updates on arXiv.org
cs.AI updates on arXiv.org
Google Online Security Blog
Google Online Security Blog
Google DeepMind News
Google DeepMind News
S
Schneier on Security
S
Secure Thoughts
T
The Exploit Database - CXSecurity.com
Martin Fowler
Martin Fowler
P
Proofpoint News Feed
Security Latest
Security Latest
Jina AI
Jina AI
D
Darknet – Hacking Tools, Hacker News & Cyber Security
Recorded Future
Recorded Future
T
Tor Project blog
有赞技术团队
有赞技术团队
H
Hackread – Cybersecurity News, Data Breaches, AI and More
N
News | PayPal Newsroom
博客园 - 三生石上(FineUI控件)
MyScale Blog
MyScale Blog
cs.CV updates on arXiv.org
cs.CV updates on arXiv.org
Last Week in AI
Last Week in AI
F
Full Disclosure
Hacker News: Ask HN
Hacker News: Ask HN
Forbes - Security
Forbes - Security
D
DataBreaches.Net
人人都是产品经理
人人都是产品经理
NISL@THU
NISL@THU
C
Cisco Blogs
Recent Commits to openclaw:main
Recent Commits to openclaw:main
Google DeepMind News
Google DeepMind News
Project Zero
Project Zero
IT之家
IT之家
T
Threatpost
Cyberwarzone
Cyberwarzone
O
OpenAI News
cs.CL updates on arXiv.org
cs.CL updates on arXiv.org
J
Java Code Geeks
P
Proofpoint News Feed
The Last Watchdog
The Last Watchdog
月光博客
月光博客
Latest news
Latest news
MongoDB | Blog
MongoDB | Blog
Apple Machine Learning Research
Apple Machine Learning Research

Opinion, Editorial, Views, Columnists, Columns | The HinduBusinessLine

Rupee can’t be defended from just one side Railways’ performance Why not have a women-only party? Labour pangs Pak’s peculiar comeback on the global stage Letters to Editor India has jobs, but it needs better ones Cross-border insolvency laws and trade A major health challenge Editorial. Snooping around Letters to the Editor dated April 20, 2026 All you want to know about the women’s reservation and delimitation bills fiasco Editorial. Process deficit Letters to the Editor dated April 19, 2026 WPI effect on new GDP series The tragic reality of police brutality India’s AI value paradox Prepare the ground India-Korea economic ties poised to strengthen Nari Shakti Bill — a missed opportunity Natural farming should become mainstream policy Insights from new GDP data Strategies to enhance fertilizer security Pathway to maritime insurance sovereignty Why the GoP’s jittery Clear the smoke Aiding piped gas push Stocks are the least over-priced asset in India Is TCS harassment case tip of the iceberg? SIP with caution Global gold ETFs post worst-ever $12 billion monthly outflow: WGC How India is funding Silicon Valley’s rise Cyber insecurity Continuity via status quo Iran war, a boon for the BRICS Assessing the easing of provisioning norms by RBI Iran war, a test for India’s economic resilience Iran war’s impact on India’s farm output and food inflation Economic competence in judiciary Pressure point India moving up the pharma value chain NFRA’s statutory leap Finance capital in time of war How West-Asia war could reshape the AI race When signals diverge: Reading the Nifty-Gold ratio Mohali’s miracle boys Plastic concerns Nice countries come last Lawyers matter more than ever for corporates Odisha central to our aluminium ambitions Editorial. Fair deal Editorial. Wait and watch Letters to the Editor dated April 10, 2026 Unfortunate fallout of cyber crime investigations Letters to the Editor dated April 9, 2026 Will the uneasy truce hold? Charting an intellectually honest way of forecasting RBI plumps for caution amidst uncertainty Large corporates and the sustainability transition of MSMEs MPC positive, despite strong headwinds Cease and desist Together, let us empower our Nari Shakti An AI model that’s too risky NPS funds consistency check: what 10-year rolling returns reveal Editorial. Nuclear milestone Letters to the Editor dated April 7, 2026 Packaging woes China’s perennial industrial policy Sensex has fallen on account of global forces India’s strategic defiance at the WTO meet Freebies will hit Tamil Nadu’s fiscal health Close the backdoor in tobacco FDI policy Is EU’s CBAM discriminatory? Editorial. Freebies unplugged Letters to the Editor dated April 6, 2026 Projecting growth is not easy Improving safety in Indian aviation Amendments to FCRA India’s outreach to Angola will contain energy risk Oil shocks and the rupee: The tricky 100s Sensex at 40: Secrets behind long-term wealth in markets Editorial. Sweeping powers India’s next social protection is care, not cash In West Asia, it is advantage China Is awarding Trump a Nobel Prize the best bet for peace? Editorial. Knotty regulations Letters to the Editor dated April 3, 2026 Time to push for rupee internationalisation Up in the air Time for industry to lead economic resilience Allied healthcare needs attention What holds back investor participation? Still no endgame in sight Challenging year What happens when CAD rises Reorienting farm research Telecom infra must rest on strong fibre network A severe test for monetary policy India’s chance in supply chain reset Bengaluru’s housing market is growing but affordability is shrinking
India’s AI options are linked to energy costs
By Aparna SharmaGaurav Sharma · 2026-05-26 · via Opinion, Editorial, Views, Columnists, Columns | The HinduBusinessLine
Governments worldwide now treat AI data centres as strategic infrastructure

Governments worldwide now treat AI data centres as strategic infrastructure | Photo Credit: luchezar

Artificial intelligence is often imagined as something that lives in the cloud. In reality, it lives on the ground, drawing vast amounts of electricity, occupying land, and reshaping industrial geography. As India embraces AI, the challenge is no longer just technological ambition, but how the country fits into the physical and economic systems that make AI possible.

Much of the public debate in India has focused on semiconductors, specifically chips, supply-chain vulnerabilities, and subsidies for chip manufacturing. These efforts are important. But they represent only one part of a much larger system. At scale, AI is an industrial ecosystem operating across five interlinked layers: energy, capital, infrastructure, and geopolitics as much as by algorithms. Energy determines affordability; chips determine who can build systems; infrastructure enables scale; models concentrate control over intelligence; and applications capture economic value. Each layer has distinct economic and strategic implications, and no country dominates them all. India’s AI trajectory reflects activity across these layers, marked not by dramatic lag or leapfrogging, but by deliberate choices shaped by scale, affordability, and sovereignty.

For AI-intensive workloads, energy and infrastructure are inseparable. Power requirements rise steeply with scale. Small enterprise data centres consume 1-5 megawatts (MW); large cloud facilities operate at 10-30 MW; hyperscale centres draw 50-100 MW; and frontier AI training clusters increasingly require 100-500 MW or more of continuous power. With one megawatt capable of supplying electricity to roughly 1,000 Indian households, a single AI campus can draw power equivalent to that of an entire district. Electricity is also the dominant operating cost, accounting for 40-60 per cent of expenditure in large data centres. As a result, AI infrastructure gravitates towards locations where power is cheap, reliable, and contractually secured over decades. This is not an IT optimisation problem, but an energy economics problem.

Strategic infrastructure

Governments worldwide now treat AI data centres as strategic infrastructure. In the US, states offer tax incentives and discounted power; China has created state-backed “AI power zones”; and in the Middle East, campuses are co-located with gas and solar facilities to secure long-term low-cost energy. India’s position reflects both ambition and constraint. With 1.5-2 GW of data-centre capacity projected to reach 10-14 GW by the mid-2030s, growth is underway, but uneven 24×7 industrial power has led to clustering in select States. Nuclear energy has therefore re-entered policy discussions to ensure firm power for AI infrastructure.

Chips are the engine and the geopolitically sensitive layer. The US dominates chip design and software ecosystems; Taiwan leads advanced fabrication; South Korea controls memory; and Europe supplies critical manufacturing equipment.

India is a global hub for semiconductor design talent, yet it has almost no presence in advanced manufacturing for AI accelerators. This is not a policy oversight. Leading-edge fabrication plants cost $15-25 billion each, require continuous reinvestment, and take years to stabilise, risks that only a handful of economies can absorb.

India’s strategy prioritises foundational capabilities: mature-node fabrication, assembly and testing, advanced packaging, and reliability engineering, often through partnerships. Though unlikely to yield frontier AI chips soon, these efforts reduce vulnerability and strengthen depth in a strategic supply chain.

The model layer, foundation models, large language models, and multimodal systems are where AI intelligence is created and where concentration is sharpest. Training frontier models demand vast computing power, significant capital, and tolerance for repeated failure, limiting ownership to a small number of organisations, largely in the US, with China developing a parallel ecosystem.

India does not host or control frontier-scale models, but Indian researchers are deeply embedded in global development, contributing to architecture design, optimisation, safety, and deployment. The constraint is not talent, but access to concentrated compute and capital. Domestic efforts are focused on adaptation, Indic-language models, domain-specific systems, and fine-tuning global models for local data and regulatory contexts.

AI applications with factories, banks, hospitals, and governments do not require ownership of chips or frontier models; instead, it rewards domain expertise, integration capability, and scale. In India, AI is used to predict defects, optimise yields, manage fragmented supply chains, detect fraud at a population scale, assist diagnostics, and augment digital public infrastructure. However, reliance on external platforms raises concerns about long-term costs and autonomy. .AI is not a single race but a layered industrial system. India’s transition across these layers is shaped by energy economics, capital intensity, global integration, and domestic scale.

Aparna is Director and Co-Founder, and Gaurav is Director, Centre for Innovation and Trade Economy

Published on May 26, 2026