There have been multiple things which have gone wrong with AI for me but these two pushed me over the brink. This is mainly about LLMs but other AI has also not been particularly helpful for me.
Case 1
I was trying to find the music video from where a screenshot was taken.
I provided o4 mini the image and asked it where it is from. It rejected it saying that it does not discuss private details. Fair enough. I told it that it is xyz artist. It then listed three of their popular music videos, neither of which was the correct answer to my question.
Then I started a new chat and described in detail what the screenshot was. It once again regurgitated similar things.
I gave up. I did a simple reverse image search and found the answer in 30 seconds.
Case 2
I wanted a way to create a spreadsheet for tracking investments which had xyz columns.
It did give me the correct columns and rows but the formulae for calculations were off. They were almost correct most of the time but almost correct is useless when working with money.
I gave up. I manually made the spreadsheet with all the required details.
Why are LLMs so wrong most of the time? Aren’t they processing high quality data from multiple sources? I just don’t understand the point of even making these softwares if all they can do is sound smart while being wrong.
Here's where the misunderstanding comes in, I think. And it's not the high quality data or the multiple sources. It's the "processing" part.
It's a natural human assumption to imagine that a thinking machine with access to a huge repository of data would have little trouble providing useful and correct answers. But the mistake here is in treating these things as thinking machines.
That's understandable. A multi-billion dollar propaganda machine has been set up to sell you that lie.
In reality, LLMs are word prediction machines. They try to predict the words that would likely follow other words. They're really quite good at it. The underlying technology is extremely impressive, allowing them to approximate human conversation in a way that is quite uncanny.
But what you have to grasp is that you're not interacting with something that thinks. There isn't even an attempt to approximate a mind. Rather, what you have is a confabulation engine; a machine for producing plausible fictions. It does this by creating unbelievably huge matrices of words - literally operating in billions of dimensions at once, graphs with many times more axes than we have letters - and probabilistically associating them with each other. It's all very clever, but what it produces is 100% fake, made up, totally invented.
Now, because of the training data they've been fed, those made up answers will, depending on the question, sometimes ends up being right. For certain types of question they can actually be right quite a lot of the time. For other types of question, almost never. But the point is, they're only ever right by accident. The "AI" is always, always constructing a fiction. That fiction just sometimes aligns with reality.
Confabulation is what it is, you are right.
Why on Earth are investors backing this? Usually money filters out useless endeavours.
See Quantum computing.
Once governments started to set aside funding for it, the scams began. Google, Microsoft, they're all in on it
DWave is history, an AI example Builder was revealed to be 700 underpaid Indians.
There's like two useful algorithms right now. That we also can't use because we cannot make matrices of qubits that are stable.
Once the money and hype train starts rolling, it becomes about money men exploiting that hype to multiply their money.. and the technology is completey secondary.
Eh, I'll agree that quantum computing hasn't delivered much yet, but it shouldn't be mentioned in the same sentence as LLMs. There's a difference between tech that hasn't become practical yet, and tech that is a gigantic grift pretending to be something it will categorically never achieve.
And why do you think quantum computing isn't the latter one?
Because I think it has a stronger theoretical basis. We have been able to do simple operations with qubits and have been increasing those capabilities over the decades. It's basically a matter of scale at this point.
No, it really isn't.
We have almost no useful algorithms and there's no algorithms in sight.
And many of the ones that have been assumed to be useful, aren't.
It's a gigantic shell game right now.
cracking cryptographic algorithms is a usecase that is useful to governments. the usefulness of a tool doesn't care if it's good for everyone, just that there are benefits to those that use it.