AI still doesn't work very well, businesses are faking it, and a reckoning is coming

https://lemmy.ca/post/61948688

AI still doesn't work very well, businesses are faking it, and a reckoning is coming - Lemmy.ca

Excerpt: >“Even within the coding, it’s not working well,” said Smiley. “I’ll give you an example. Code can look right and pass the unit tests and still be wrong. The way you measure that is typically in benchmark tests. So a lot of these companies haven’t engaged in a proper feedback loop to see what the impact of AI coding is on the outcomes they care about. Lines of code, number of [pull requests], these are liabilities. These are not measures of engineering excellence.” > >Measures of engineering excellence, said Smiley, include metrics like deployment frequency, lead time to production, change failure rate, mean time to restore, and incident severity. And we need a new set of metrics, he insists, to measure how AI affects engineering performance. > >“We don’t know what those are yet,” he said. > >One metric that might be helpful, he said, is measuring tokens burned to get to an approved pull request – a formally accepted change in software. That’s the kind of thing that needs to be assessed to determine whether AI helps an organization’s engineering practice. > >To underscore the consequences of not having that kind of data, Smiley pointed to a recent attempt to rewrite SQLite in Rust using AI. > >“It passed all the unit tests, the shape of the code looks right,” he said. It’s 3.7x more lines of code that performs 2,000 times worse than the actual SQLite. Two thousand times worse for a database is a non-viable product. It’s a dumpster fire. Throw it away. All that money you spent on it is worthless." > >All the optimism about using AI for coding, Smiley argues, comes from measuring the wrong things. > >“Coding works if you measure lines of code and pull requests,” he said. “Coding does not work if you measure quality and team performance. There’s no evidence to suggest that that’s moving in a positive direction.”

So is this just early adaptation problems? Or are we starting to find the ceiling for Ai?
Early adaptation and rushed implementation. There may be a bubble bursting for the businesses who tried to “roll out something fast that is good enough to get subscribers for a few months so we can cash in.” However, this is just the very beginning of AI.

This isn’t the “very beginning”, that was either 70 or 120 years ago, depending on whether you’re counting from the formalization of “AI” as an academic discipline with the advent of the Markov Decision Process or the earlier foundational work on Markov Chains.

Chatbots are old-hat, I was playing around with Eliza back in the 90’s. Hell, even Large Language Models aren’t new, the transformer architecture they’re based on is almost 10 years old and itself merely a minor evolution of earlier statistical and recurrent neural network language processing models. By the time big tech started ramping up the “AI” bubble in 2024, I had already been bored with LLMs for two years.

There’s no “early adaptation” here, just a rushed and wildly excessive implementation of a very interesting but fundamentally untrustworthy tech with no practical value proposition for the people it is nevertheless being sold to.

It’s the beginning of AI in terms of where it will be.
What’s the pathway that you see from the current slop machine to something that will provide a Return on Investment. I haven’t heard anyone credible willing to go out on the limb of saying that there is one, but maybe you will convince me.
I think when you introduce a question like that you’ve already said that no matter what the person answers, you will find a way to argue against it. So, I’m choosing not to interact with you.
The beauty of the scientific method is that it can change when presented with new data or a novel interpretation of existing data. I much prefer science to hype and feelings. You provide me accurate convincing arguments for how we get from the current system to an actual Artificial Intelligence, or something that roughly approximates it I am all ears. My take is that AI is the new cold fusion, it’s always going to be a few years and a few hundred billion dollars away from reality. But what do I know, I’m just an idiot on the internet.

I’m not interested in trying to change the mind of someone who I feel has already made up their mind.

If you can prove to me, by linking to past conversations, that you have the ability to change your mind when new evidence is presented, then I will attempt to do so. But until then, I will choose not to engage in such activities with you.

Why did you waste time posting this when you could have just not?
I can take a stab at answering this one, there is no pathway from here to there and org knows it. So bland aspirational statements are the order of the day, but when called out on them it’s turtle mode. Different platform but I have had similar conversations with conservatives that want to decry things as woke. I somewhat enjoy throwing down the gauntlet and seeing if it gets picked up and I have started doing it more often. I am deadly serious when I say I can and would be swayed by a good argument supported by data, I just know it’s not going to be forthcoming from someone spouting broad spectrum inanities about the "Future of AI"™