Why I don't ride the AI Hype Train

Hacker News - AI
Jul 9, 2025 11:29
mertbio
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Summary

In "Why I don't ride the AI Hype Train," the author argues that much of the excitement around AI is driven by inflated expectations and marketing rather than genuine technological breakthroughs. They caution that this hype can lead to disillusionment and misallocation of resources, urging a more measured and realistic approach to AI development and adoption. This perspective highlights the need for critical evaluation of AI advancements within the field.

Article URL: https://mertbulan.com/2025/06/26/why-i-dont-ride-the-ai-hype-train/ Comments URL: https://news.ycombinator.com/item?id=44508699 Points: 15 # Comments: 2

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