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by johnfn
183 days ago
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But how much of that time is truly spent on learning relevant knowledge, and how much of it is just (now) useless errata? Take vector search for an example. Pre-GPT, I would spend like an hour chasing down a typo, like specifying 1023 instead of 1024 or something. This sort of problem is now trivially solved in minutes by a LLM that fully understands the API surface area. So what exactly do I lose by not spending that hour chasing it down? It has nothing to do with learning vector search better, and an LLM can do it better and faster than I can. |
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