Comment by khalic
20 hours ago
Seing a bell curve and singling out a factor that appears only for the 15% of the total time demonstrates some pretty extreme tunnel vision
20 hours ago
Seing a bell curve and singling out a factor that appears only for the 15% of the total time demonstrates some pretty extreme tunnel vision
Yeah, I don't understand the HN title. The "downfall" seems to have began in 2018-2020 sometime, what AI was launched and popularized at that point that would have killed SO? LLMs were basically useless until GPT3 which appeared in middle-2020 sometime, after the downfall seemingly already had begun.
I'd call it significant that the number of questions halved within one year following the release of ChatGPT, the biggest relative or absolute rate of decrease in the timeseries.
Right around the time Google rolled out new search results removed many information based sites.
"How AI precipitated SO's downfall" would be a correct title then
Add it to the list:
- the downfall of junior devs
- bad hiring market
- layoffs in practically every sector
theres a ton of things where AI took credit for a trend that had already started before it started being even halfway capable.
I think if you won't even admit that AI greatly accelerated these trends, you're in some kind of denial. There's no reason to believe that we would see a rapid coordinated decline in all of these things at the same time without AI, and strong reason to believe that we would see it with AI. So we have a model that makes testable predictions, and data strongly consistent with those testable predictions, in the form of an acceleration of existing downward trends. What more do you want?
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People love simplistic narratives, i usually don't mind but this is just ridiculous. AI hate is gently overtaking AI hype as the most stupid thing around
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It's not really a bell curve. There was obviously a downwards trend from 2016 onwards, but 2023 definitely precipitated the fall to zero. Without AI they might have lasted at least a couple more years, or the activity might have stabilized to a new floor greater than zero.
https://postimg.cc/n9nZGLmb
Goodness of Fit 0.911, Kurtosis -0.849, Skewness: 0.073
It's very much a bell curve
Just because it's approximated by a bell curve doesn't make it a bell curve. There are quite obvious separate phenomena shaping the curve at different times.
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Those graphs look nothing alike, except for "going up and then vaguely going down."
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You mean the fall to a thousand questions per month. Now that the volume is low enough someone has a chance of looking at every single one of them, maybe the StackOverflow community can finally collaborate in peace, safe from the onslaught of questions that could be answered by reading the documentation.
I am not sure. I think SO died way before AI and that graph seems incorrect too.
> Without AI they might have lasted at least a couple more years
Nah, their decline was already readily apparent before AI. You only need to go through old discussions and other people noticing it. AI may have accelerated the decay, but the decline happened already largely prior to AI.
Yes.
At the same time, this is graph is something that really should not look anything like a bell curve. So the format is probably just a coincidence.
Except if the "all the questions have been asked" hypothesis is correct. What I really doubt.
this. Thanks for pointing it out, I fell for "oh it was just AI" at first.
This isn't really a bell curve.
check my other response, it's very much a bell curve, statistically speaking
https://postimg.cc/n9nZGLmb
> statistically speaking
That's a very big word you're using there for what is basically making shapes out of clouds. A bell-curve is the amortised function of a random variable with a mean and standar deviation. What does that have to do with a timeseries dataset?
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You don't just fit a Gaussian distribution to a timeseries dataset. That's not what a Gaussian curve is designed for at all. https://www.explainxkcd.com/wiki/index.php/1725:_Linear_Regr...
You are confusing a Probability Density Function (PDF) with a phenomenological curve fit. No one is claiming that time is a random variable drawn from a normal distribution.
> No one is claiming that time is a random variable drawn from a normal distribution.
You are doing that implicitly by fitting a Gaussian curve.
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