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brokencode

3,135 カルマ登録 11 年前

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brokencode
·8 時間前·議論
So what billionaire are people rooting for when a new GLM comes out?

How many people do you honestly think even know who owns or leads Z.ai?

I certainly don’t.
brokencode
·9 時間前·議論
There have been multiple posts on here with 800+ upvotes in just the last few weeks for GLM 5.2.

The idea that all this enthusiasm is for certain Silicon Valley billionaires and not from genuine interest in AI technology is a baffling take.
brokencode
·一昨日·議論
No you didn’t, and that’s not much of an insult.
brokencode
·一昨日·議論
Yup, the destitute and dying are famous for their highly publicized research.
brokencode
·一昨日·議論
Sure, let’s make jokes about the poor dying of malaria and AIDS. You sound like a Grok power user.
brokencode
·一昨日·議論
As opposed to what? Going down to Africa to count the bodies myself?

Of course I read about it in the media. And there are articles from Harvard, UCLA, and others that say the same thing
brokencode
·一昨日·議論
Did they kill hundreds of thousands of poor people by shutting down USAID too?
brokencode
·一昨日·議論
Grok has a serious credibility problem due to Elon’s decisions and personal insanity.

Will it ever recover? Maybe. But it’s got an uphill battle even compared to the Chinese models, and that’s saying something.
brokencode
·5 日前·議論
Yeah Elm has had a very strange arc, but I think calling it a research language is right.

There was a period where it was heavily evangelized. Many blog posts were written and talks given, and there was a lot of enthusiasm and adoption.

Then the author just kind of disappeared and the project stalled.

Which of course he had a right to do since it’s his project, but I think he should have set expectations better from the beginning.

The heavy evangelism helped spread the ideas, but also set up developers to feel blindsided and abandoned.
brokencode
·9 日前·議論
Yup, but apparently our cyborg cats can only be kittens and the cyborg mice are probably going to be like 4 feet tall. At least according to the US government.
brokencode
·10 日前·議論
The graphs do that already. I was expecting them to try to explain how good it was at simple tasks.
brokencode
·10 日前·議論
I feel like the title is a little overdramatic.

They’re not saying goodbye to the LHC, they’re upgrading it to have 10x the power.
brokencode
·10 日前·議論
Kind of crazy how bad this release actually is. I even dug around in the full system card, and every graph showed the same thing.

Low and maybe medium will save money on simpler tasks, but after that it just isn’t worth it compared to Opus.

I wish they would have explained in the blog post why they think anybody would ever want to use this above medium.

Maybe it works well on things that aren’t clear in the benchmarks.
brokencode
·11 日前·議論
That is a bad comparison. Compare Sonnet xhigh against Opus medium, which is both better and cheaper.
brokencode
·11 日前·議論
You’re expecting me to know your job? Give me a break.

I’m wondering the same thing. You keep talking of some grand poisoning problem but can’t point to any specific public information except an article saying that it’s possible. As if that was ever in doubt.

Guess we’ll just have to agree to disagree.
brokencode
·11 日前·議論
You’ve seen actual model poisoning? Or have you seen a model return the wrong answer due to what it saw in a search result? Or were they hallucinations perhaps? How do you know it’s due to poisoned training data?

And do you even realize how much data 0.001% of the training data for a frontier models is? They’re trained on 10s of trillions of tokens, meaning you’d need hundreds of millions of tokens of poisoned data.

Some of these problems you mention could become real barriers to models improvements, though there are plenty of countermeasures, such as by focusing on high quality data sources like I mentioned before.

We’ve already probably gotten as much as we’re ever going to get from simply scraping more and more unstructured text from the web as a way to improve model performance.

The type of training being done now is around tool use and solving specific types of problems better, which is the type of training data you simply don’t find lying around on the web.
brokencode
·12 日前·議論
You are totally misunderstanding my argument then. As I said, garbage in garbage out. Your article is just an example of that. It’s pretty obvious that if you train an LLM on bad data, you will get bad output.

What I’m saying is that the AI labs are handling this not by fixing the “garbage out” part, but by minimizing the “garbage in” part.

The fact that all you could come up with was research (not an actual example of poisoning a real training set) from 2025 kind of proves that this isn’t some kind of widespread, unsolvable problem like you seem to be claiming.
brokencode
·12 日前·議論
Not sure what point you’re trying to make.
brokencode
·12 日前·議論
Great, an article about Llama 2 from early 2025. That doesn’t at all invalidate what I said.
brokencode
·12 日前·議論
The question is not whether it has happened or will continue to happen. Of course it will always be a problem to some extent.

Your original claim is that this will be enough of a problem to prevent models from improving in expert level knowledge. I completely disagree with this premise.

If the models fail to improve, it will likely be due to limitations in the transformer architecture rather than poisoned training data.

And even then, I doubt that the transformer is the best architecture we will ever come up with.

Clearly it doesn’t learn or think like a human does, since humans don’t need many gigabytes of text samples to learn to talk, so there is some room for improvement.