The great AI bubble – I'm a believer

Hacker News - AI
Aug 4, 2025 19:22
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Summary

The article argues that while there is significant hype and speculation around AI, the author believes in its transformative potential despite the risk of a bubble. It suggests that, even if valuations are inflated, AI’s long-term impact on society and various industries will be profound. This perspective highlights both the risks of overinvestment and the enduring promise of AI innovation.

Article URL: https://simplelivingsomerset.wordpress.com/2025/07/28/the-great-ai-bubble-im-a-believer/ Comments URL: https://news.ycombinator.com/item?id=44790301 Points: 2 # Comments: 0

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