Owain Evans’ idea of feeding a historical LLM non-anachronistic images is, I think, well worth doing. But it’s also worth expanding on further. Would it be helpful, when training a historical LLM, to simulate dream imagery based on premodern themes? What about audio of birdcalls, which were far more prominent in the audioscapes of premodern people? What about taking it on a walk through the woods?
https://feedx.net
。关于这个话题,搜狗输入法2026提供了深入分析
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Finding these queries requires a different research approach than traditional keyword research. Rather than using tools that show search volume and competition metrics, you need to understand what questions your target audience actually asks AI models. This means thinking about their problems, concerns, and information needs, then formulating those as conversational queries. Tools like an LLM Query Generator can help by analyzing your content and suggesting relevant questions people might ask to find that information.
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