Disclaimer: I've built a tool in this space (Cartesiano.ai), and this view mostly comes from seeing how noisy product mentions are in practice. Even for market-leading brands, a single prompt can produce different recommendations day to day, which makes me suspect LLMs are also introducing some amount of entropy into product recommendations (?)
From someone who's built a tool in this space, curious if you’ve seen any patterns that cut through the noise? Or if entropy is just something we have to design around.
Disclaimer: I've built a tool in this space as well (llmsignal.app)
SEO has made web search unusable and practitioners are the scum of the earth.
But more practically like Raymond Chen said, if every app could figure out how to keep their windows always on top, what good would it do? The same with SEO.
The Raymond Chen analogy brings up something interesting. If everyone forces themselves on top, the signal collapses. My hope is that AI systems end up rewarding genuinely useful, well explained things rather than creating another arms race...but I’m not naive about how incentives tend to play out.
A huge concern of mine has been the introduction of ads. Once ads enter LLM responses, it’s hard not to ask whether we’re just rebuilding the same incentive structure that broke search in the first place.