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by Firfi
371 days ago
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That's one of my biggest frustrations - I wasted a lot of time on reprompting. I was making myself stick to 100% LLM approach for a while, in order to learn. I can't say for everyone, but for me it's hit-and-miss: if LLM starts with "Oh, sorry, you're right" that's a STRONG signal I have to take over right now or rethink the approach, or I get into the doom spiral of reprompting and waste half a day on something I could've done myself by that point, with only difference that after half a day with a coding agent I discovered no important domain or technical knowledge. So, "how much" to me depends so very much on seemingly random factors, including the time of the day when Antropic decides to serve their quantised version instead of a normal one. On non-random too, like how difficult the domain area is, how well you described it in the prompt, and how well you crafted your system queries. And I hate it very much! At this point, I'm trigger-happy to take over the control and write the stuff that LLM can't in the "controlling package" and tell it to use it as an example / safety check. |
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This part is the most frustrating in discussions about LLMs. Since there are no criteria to measure the quality of your prompting there is really no way to learn the skill. Assessing prompting skills based on the actual results is wrong as it does not isolate the model capabilities.
Hence the whole thing looks a lot like an ancient shamanism.