Google to Lift India Data Hub Plan Above $15 Billion

BloombergSaturday, November 15, 2025 at 3:10:36 PM
Google to Lift India Data Hub Plan Above $15 Billion
Alphabet Inc.'s Google is set to increase its investment in Andhra Pradesh, India, to over $15 billion after five years, as announced by the state's leader. This significant financial commitment reflects Google's ongoing expansion in the region.
— via World Pulse Now AI Editorial System

Was this article worth reading? Share it

Recommended Readings
Google-parent Alphabet’s shares rally after Berkshire reveals $4.9 billion stake
PositiveFinancial Markets
Alphabet Inc., the parent company of Google, saw its shares rise significantly following Berkshire Hathaway's announcement of a $4.9 billion stake in the company. This investment reflects Berkshire's confidence in Alphabet's long-term growth potential. The news has positively impacted Alphabet's market performance, indicating strong investor interest.
Modi Ally Naidu Sees $1 Trillion Tech & Energy Boom in Indian State
PositiveFinancial Markets
N. Chandrababu Naidu, the Chief Minister of Andhra Pradesh, aims for a 15% growth rate in the state, supported by $1 trillion in investments over the next decade. This ambitious plan includes attracting major companies like Google and focuses on becoming a leader in green energy, quantum computing, and biotechnology. Naidu's strategy reflects a broader push for technological advancement and sustainable development in the region.
How Google’s DeepMind tool is ‘more quickly’ forecasting hurricane behavior
PositiveFinancial Markets
Google's DeepMind tool is enhancing hurricane forecasting by providing faster and more accurate predictions, which could potentially save lives and property. During Tropical Storm Melissa, meteorologist Philippe Papin from the National Hurricane Center confidently predicted the storm would escalate to a category 4 hurricane within 24 hours, marking a significant forecasting achievement. This model is noted for being less expensive and time-consuming compared to traditional methods.