|
> For instance, I had to rename a collection of files almost following a pattern. I know that there are apps that do this and normally I’d reach for the Perl-based rename script. But I do it so irregularly that I have to install it every time, figure out how I can do a dry run first, etc. Meanwhile, with the Raycast AI integration that also supports Finder, I did it in the 10-15 seconds that it took to type the prompt. > On the other hand LLMs constantly mess up some algorithms and data structures, so I simply do not let LLMs touch certain code. See, these two things seem at odds to me. I suppose it is, to a degree, knowledge that you can learn over time: that an LLM is suitable for renaming files but not for certain other tasks. But for me, I'd be really cautious about letting an AI rename a collection of files, to the point that the same restrictions apply as would apply to a script: I'd need to create the prompt, verify the output via a dry run or test run, modify as necessary, and ultimately let the AI loose and hope for the best. Meanwhile, I probably have a script kicking around somewhere that will rename a batch of files, and I can modify it pretty quickly to match a new pattern, test it out, and be confident that it will do exactly what I expect it to do. Is one of these paths faster than the other? I'm not sure; it's probably a wash. The AI would definitely be faster if I was confident I could trust it. But I'm not sure how I can cross that threshold in my mind and be confident that I can trust it. |
Why? I never understand this level of caution since don't we all use VC? Just feed it the prompt and if it messes up undo the changes.