You can, at that will cause the same output on the same input if there is no variation in floating point rounding errors. (True if the same code is running but easy when optimizing to hit a round up/down and if the tokens are very close the output will diverge)
The point the people (or llm arguing against llms) miss is the world is not deterministic, humans are not deterministic (at least in a practical way at the human scale). And if a system is you should indeed not use an llm… Its powere is how it provides answers with messy data… If you need repeatability make a scripts / code ect.
(Note I do think if the output is for human use it’s important a human validate its useful… The llms can help brainstorm, can with some tests manage a surprising amount of code, but if you don’t validate and test the code it will be slop and maybe work for one test but not for a generic user.
You can, at that will cause the same output on the same input if there is no variation in floating point rounding errors. (True if the same code is running but easy when optimizing to hit a round up/down and if the tokens are very close the output will diverge)
The point the people (or llm arguing against llms) miss is the world is not deterministic, humans are not deterministic (at least in a practical way at the human scale). And if a system is you should indeed not use an llm… Its powere is how it provides answers with messy data… If you need repeatability make a scripts / code ect.
(Note I do think if the output is for human use it’s important a human validate its useful… The llms can help brainstorm, can with some tests manage a surprising amount of code, but if you don’t validate and test the code it will be slop and maybe work for one test but not for a generic user.