You’ve been given evidence that people cannot trust their own perceptions of what these agents do, and you replied by telling a bunch of stories about why you think you personally can trust your perceptions. My 12-year-old did the same thing when I tried to explain this to them.
You asked for data. I (probably) can’t give you the data, so I gave you what I could: a few things gleaned from both objective data (collected from a significant number of engineers) and my own anecdotal experience. You are free to disregard it, and I wouldn’t even blame you. There are lots of fools on the internet, and there’s a decent chance that I’m just another one 🙂.
Engineers being spread thinner to manage a wider number of tasks whilst reviewing shitty LLM noise that they didn’t write is inevitably going to make horrible code that’s impossible to maintain and will cost massive amounts of time and resources in the long run.
This was true a year ago. Even like seven months ago.
Hell, even three months ago, I would have agreed with you a LOT more than I do today – mostly because I was just forced learn these things more in-depth quite recently. “Shitty LLM noise” is a very early part of the learning curve. In a way, it’s similar to “Hello world.” Discard it and figure out how get more useful results.
In many companies that have adopted AI, engineers are still responsible for their code. Any slop in the codebase is the fault of the engineer that introduced it (and the engineer[s] that reviewed it), regardless of whether it’s hand-written or generated. So far, I have not seen anyone merge unmaintainable, “shitty LLM noise” into enterprise codebases – that would be very risky. (It probably happens in other places like Microsoft, I just haven’t seen it myself. It would be unacceptable.)
Anyway, you’ll see all this eventually, when some data gets published. I’d gain nothing by convincing anyone of this, so I won’t try 🙂.
This is just a statement of faith in your ability to judge these things accurately. Nowhere in here do I see any evidence that you’ve even considered that the reason you’ve changed your attitude towards the tech is that it’s just gotten so good at fooling people that it’s finally got you.
You don’t gain much from trying to convince me, but you could gain a lot from being more sceptical. People invented science to address the fact that our intuitive understanding doesn’t always reflect reality.
Science and the collection of objective data stops us from doing this:
There are a bunch of things that our brains just don’t understand intuitively, so we need to check our intuition against measurement. There’s no shame in that, but when it’s pointed out, then you have a chance to check yourself.
But you don’t seem to understand that. When you say:
Anyway, you’ll see all this eventually, when some data gets published.
you are demonstrating that you are the perfect mark for this stuff, because you are not reflecting on your own thought process to see where it might be failing you.
You asked for data. I (probably) can’t give you the data, so I gave you what I could: a few things gleaned from both objective data (collected from a significant number of engineers) and my own anecdotal experience. You are free to disregard it, and I wouldn’t even blame you. There are lots of fools on the internet, and there’s a decent chance that I’m just another one 🙂.
This was true a year ago. Even like seven months ago. Hell, even three months ago, I would have agreed with you a LOT more than I do today – mostly because I was just forced learn these things more in-depth quite recently. “Shitty LLM noise” is a very early part of the learning curve. In a way, it’s similar to “Hello world.” Discard it and figure out how get more useful results.
In many companies that have adopted AI, engineers are still responsible for their code. Any slop in the codebase is the fault of the engineer that introduced it (and the engineer[s] that reviewed it), regardless of whether it’s hand-written or generated. So far, I have not seen anyone merge unmaintainable, “shitty LLM noise” into enterprise codebases – that would be very risky. (It probably happens in other places like Microsoft, I just haven’t seen it myself. It would be unacceptable.)
Anyway, you’ll see all this eventually, when some data gets published. I’d gain nothing by convincing anyone of this, so I won’t try 🙂.
This is just a statement of faith in your ability to judge these things accurately. Nowhere in here do I see any evidence that you’ve even considered that the reason you’ve changed your attitude towards the tech is that it’s just gotten so good at fooling people that it’s finally got you.
You don’t gain much from trying to convince me, but you could gain a lot from being more sceptical. People invented science to address the fact that our intuitive understanding doesn’t always reflect reality.
Science and the collection of objective data stops us from doing this:
There are a bunch of things that our brains just don’t understand intuitively, so we need to check our intuition against measurement. There’s no shame in that, but when it’s pointed out, then you have a chance to check yourself.
But you don’t seem to understand that. When you say:
you are demonstrating that you are the perfect mark for this stuff, because you are not reflecting on your own thought process to see where it might be failing you.