To add onto this, it is a characteristic of their design to statistically pick things that would be bad choices, because humans do too. Itβs not more reliable than just taking a random person off the street of SF and giving them instructions on what to copy paste without any context. They might also change unrelated things or get sidetracked when they encounter friction. My point is that when you try to compensate by prompting repeatedly, you are just adding more chances for entropy to leak in β so I am agreeing with you.
> To add onto this, it is a characteristic of their design to statistically pick things that would be bad choices, because humans do too.
Spot on. If we look at, historically, "AI" (pre-LLM) the data sets were much more curated, cleaned and labeled. Look at CV, for example. Computer Vision is a prime example of how AI can easily go off the rails with respect to 1) garbage input data 2) biased input data. LLMs have these two as inputs in spades and in vast quantities. Has everyone forgotten about Google's classification of African American people in images [0]? Or, more hilariously - the fix [1]? Most people I talk to who are using LLMs think that the data being strung into these models has been fine tuned, hand picked, etc. In some cases for small models that were explicitly curated, sure. But in the context (no pun) of all the popular frontier models: no way in hell.
The one thing I'm really surprised nobody is talking about is the system prompt. Not in the manner of jailbreaking it or even extracting it. But I can't imagine that these system prompts aren't collecting mass tech debt at this point. I'm sure there's band aid after band aid of simple fixes to nudge the model in ever so different directions based on things that are, ultimately, out of the control of such a large culmination of random data. I can't wait to see how these long term issues crop and and duct taped for the quick fixes these tech behemoths are becoming known for.
Talking about the debt of a system prompt feels really weird. A system prompt tied to an LLM is the equivalent of crafting a new model in the pre-LLM era. You measure their success using various quality metrics. And you improve the system prompt progressively to raise these metrics. So it feels like bandaid but that's actually how it's supposed to work and totally equivalent to "fixing" a machine learning model by improving the dataset.