this post was submitted on 05 Dec 2024
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[–] [email protected] 1 points 1 week ago

I understand your skepticism, but I think you're overstating the limitations of LLMs. While it's true that they can generate convincing-sounding text that may not always be accurate, this doesn't mean they're only good at producing noise. In fact, many studies have shown that LLMs can be highly effective at retrieving relevant information and generating text that is contextually relevant, even if not always 100% accurate.

The key point I was making earlier is that LLMs require a different set of skills and critical thinking to use effectively, just like a knife requires more care and attention than a spoon. This doesn't mean they're inherently 'dangerous' or only capable of producing noise. Rather, it means that users need to be aware of their strengths and limitations, and use them in conjunction with other tools and critical evaluation techniques to get the most out of them.

It's also worth noting that search engines are not immune to returning inaccurate or misleading information either. The difference is that we've learned to use search engines critically, evaluating sources and cross-checking information to verify accuracy. We need to develop similar critical thinking skills when using LLMs, rather than simply dismissing them as 'noise generators'.

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