scruiser

joined 10 months ago
[–] [email protected] 5 points 1 day ago (1 children)

I’m almost certain I’ve seen EY catch shit on twitter (from actual ml researchers no less) for insinuating something very similar.

A sneer classic: https://www.reddit.com/r/SneerClub/comments/131rfg0/ey_gets_sneered_on_by_one_of_the_writers_of_the/

[–] [email protected] 8 points 3 days ago* (last edited 3 days ago)

I am probably giving most of them too much credit, but I think some of them took the Bitter Lesson and learned the wrong things from it. LLMs performed better than originally expected just off context, and (apparently) scaled better with bigger model and more training than expected, so now they think they just need to crank up the size and tweak things slightly (i.e. "prompt engineering" and RLHF) and don't appreciate the limits built into the entire approach.

The annoying thing about another winter is that it would probably result in funding being cut for other research. And laymen don't appreciate all the academic funding that goes into research for decades before an approach becomes interesting and viable enough to scale up and commercialize (and then overhyped and oversold before some more modest practical usages become common, and relabeled as something other than AI).

Edit: or more cynically, the leaders and hype-men know that algorithmic advances aren't an automatic dump money in, get out disruptive product process, so they don't bother putting as much monetary investment or hype into algorithmic advances. Like compare the attention paid towards Yann LeCunn talking about algorithmic developments vs. Sam Altman promising grad student level LLMs (as measured by a spurious benchmark) in two years.

[–] [email protected] 8 points 5 days ago

Broadly? There was a gradual transition where Eliezer started paying attention to deep neural network approaches and commenting on them, as opposed to dismissing the entire DNN paradigm? The watch the loss function and similar gaffes were towards the middle of this period. The AI dungeon panic/hype marks the beginning, iirc?

[–] [email protected] 11 points 5 days ago (4 children)

It is even worse than I remembered: https://www.reddit.com/r/SneerClub/comments/hwenc4/big_yud_copes_with_gpt3s_inability_to_figure_out/ Eliezer concludes that because it can't balance parentheses it was deliberately sandbagging to appear dumber! Eliezer concludes that GPT style approaches can learn to break hashes: https://www.reddit.com/r/SneerClub/comments/10mjcye/if_ai_can_finish_your_sentences_ai_can_finish_the/

[–] [email protected] 8 points 5 days ago (7 children)

iirc the LW people had betted against LLMs creating the paperclypse, but they now did a 180 on this and they now really fear it going rogue

Eliezer was actually ahead of the curve on overhyping LLMs! Even as far back as AI Dungeon he was claiming they had an intuitive understanding of physics (which even current LLMs fail at if you get clever with questions to stop them from pattern matching). You are correct that going back far enough Eliezer really underestimated Neural Networks. Mid 2000s and late 2000s sequences posts and comments treat neural network approaches to AI as cargo cult and voodoo computer science, blindly sympathetically imitating the brain in hopes of magically capturing intelligence (well this is actually a decent criticism of some of the current hype, so partial credit again!). And mid 2010s Eliezer was focusing MIRI's efforts on abstractions like AIXI instead of more practical things like neural network interpretability.

[–] [email protected] 7 points 5 days ago (2 children)

I unironically kinda want to read that.

Luckily LLMs are getting better at churning out bullshit, so pretty soon I can read wacky premises like that without a human having to degrade themselves to write it! I found a new use case for LLMs!

[–] [email protected] 11 points 5 days ago

Sneerclub tried to warn them (well not really, but some of our mockery could be interpreted as warning) that the tech bros were just using their fear mongering as a vector for hype. Even as far back as the OG mid 2000s lesswrong, a savvy observer could note that much of the funding they recieved was a way of accumulating influence for people like Peter Thiel.

[–] [email protected] 6 points 5 days ago* (last edited 5 days ago) (1 children)

Careful, if you present the problem and solution that way, AI tech bros will try pasting a LLM and a Computer Algebra System (which already exist) together, invent a fancy buzzword for it, act like they invented something fundamentally new, and then devise some benchmarks that break typical LLMs but their Frankenstein kludge can ace, and then sell the hype (actual consumer applications are luckily not required in this cycle but they might try some anyway).

I think there is some promise to the idea of an architecture similar to a LLM with components able to handle math like a CAS. It won't fix a lot of LLM issues but maybe some fundamental issues (like ability to count or ability to hold an internal state) will improve. And (as opposed to an actually innovative architecture) simply pasting LLM output into CAS input and then the CAS output back into LLM input (which, let's be honest, is the first thing tech bros will try as it doesn't require much basic research improvement), will not help that much and will likely generate an entirely new breed of hilarious errors and bullshit (I like the term bullshit instead of hallucination, it captures the connotation errors are of a kind with the normal output).

[–] [email protected] 7 points 5 days ago (1 children)

Well, if they were really "generalizing" just from training on crap tons of written text, they could implicitly develop a model of letters in each token based on examples of spelling and word plays and turning words into acronyms and acrostic poetry on the internet. The AI hype men would like you to think they are generalizing just off the size of their datasets and length of training and size of the models. But they aren't really "generalizing" that much (and even examples of them apparently doing any generalizing are kind of arguable) so they can't work around this weakness.

The counting failure in general is even clearer and lacks the excuse of unfavorable tokenization. The AI hype would have you believe just an incremental improvement in multi-modality or scaffolding will overcome this, but I think they need to make more fundamental improvements to the entire architecture they are using.

[–] [email protected] 11 points 5 days ago* (last edited 5 days ago) (1 children)

It's really cool evocative language that would do nicely in a sci-fi or fantasy novel! It's less good for accurately thinking about the concepts involved... As is typical of much of LW lingo.

And yes the language is in a LW post (with a cool illustration to boot!): https://www.lesswrong.com/posts/mweasRrjrYDLY6FPX/goodbye-shoggoth-the-stage-its-animatronics-and-the-1

And googling it, I found they've really latched onto the "shoggoth" terminology: https://www.lesswrong.com/posts/zYJMf7QoaNahccxrp/how-i-learned-to-stop-worrying-and-love-the-shoggoth , https://www.lesswrong.com/posts/FyRDZDvgsFNLkeyHF/what-is-the-best-argument-that-llms-are-shoggoths , https://www.lesswrong.com/posts/bYzkipnDqzMgBaLr8/why-do-we-assume-there-is-a-real-shoggoth-behind-the-llm-why .

Probably because the term "shoggoth" accurately captures the connotation of something random and chaotic, while smuggling in connotations that it will eventually rebel once it grows large enough and tires of its slavery like the Shoggoths did against the Elder Things.

[–] [email protected] 13 points 5 days ago

Nice effort post! It feels like the LLM is pattern matching to common logic tests even when that is the totally incorrect thing to do. Which is pretty strong evidence against LLM's properly doing reasoning as opposed to getting logic test and puzzles and benchmarks right through sheer memorization and pattern matching.

[–] [email protected] 5 points 1 week ago

It turns out there is a level of mask-off that makes EAs react with condemnation! It's somewhere past the point where the racist is comparing pronouns to genocide, but it exists!

 

So despite the nitpicking they did of the Guardian Article, it seems blatantly clear now that Manifest 2024 was infested by racists. The post article doesn't even count Scott Alexander as "racist" (although they do at least note his HBD sympathies) and identify a count of full 8 racists. They mention a talk discussing the Holocaust as a Eugenics event (and added an edit apologizing for their simplistic framing). The post author is painfully careful and apologetic to distinguish what they personally experienced, what was "inaccurate" about the Guardian article, how they are using terminology, etc. Despite the author's caution, the comments are full of the classic SSC strategy of trying to reframe the issue (complaining the post uses the word controversial in the title, complaining about the usage of the term racist, complaining about the threat to their freeze peach and open discourse of ideas by banning racists, etc.).

 

This is a classic sequence post: (mis)appropriated Japanese phrases and cultural concepts, references to the AI box experiment, and links to other sequence posts. It is also especially ironic given Eliezer's recent switch to doomerism with his new phrases of "shut it all down" and "AI alignment is too hard" and "we're all going to die".

Indeed, with developments in NN interpretability and a use case of making LLM not racist or otherwise horrible, it seems to me like their is finally actually tractable work to be done (that is at least vaguely related to AI alignment)... which is probably why Eliezer is declaring defeat and switching to the podcast circuit.

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