I'm watching this pretty closely, I've been mirroring my GitHub repos to my own forgejo instance for a few weeks, but am waiting for more federation before I reverse the mirrors.
Note that Forgejo's API has a bug right now and you need to manually re-configure the mirror credentials for the mirrors to continue to receive updates.
I use GitHub because that's where PRs go, but I've never liked their PR model. I much prefer the Phabricator/Gerrit ability to consider each commit independently (that is, have a personal branch 5 commits ahead of HEAD, and be able to send PRs for each without having them squashed).
I wonder if federation will also bring more diversity into the actual process. Maybe there will be hosts that let you use that Phabricator model.
I also wonder how this all gets paid for. Does it take pockets as deep as Microsoft's to keep npm/GitHub afloat? Will there be a free, open-source commons on other forges?
That's effectively what I do. I have my dev branch, and then I make separate branches for each PR with just the commit in it. Works well enough so long as the commits are independent, but it's still a pain in the ass to manage.
Personally, I'd like to go the other way: not just that PRs are the unit of contribution, but that rebased PRs are a first-class concept and versioning of the changes between entire PRs is a critical thing to track.
Once the protocols are in place, one hopes that other forges could participate as well, though the history of the internet is littered with instances where federation APIs just became spam firehoses (see especially pingback/trackback on blog platforms).
I just want a forge to be able to let me push up commits without making a fork. Do the smart thing for me, I don't need a fork of a project to send in my patch!
I would love git-bug project[1] to be successful in achieving that. That way Git forges are just nice Web porcelain on top of very easy to migrate data.
No. Git is not a web-based GUI capable of managing users and permissions, facilitating the creation and management of repositories, handling pull requests, handling comments and communication, doing CI, or a variety of other tasks that sites like Codeberg and Forgejo and GitLab and GitHub do. If you don't want those things, that's fine, but that isn't an argument that git subsumes them.
People were doing that by using additional tools on top of git, not via git alone. I intentionally only listed things that git doesn't do.
There's not much point in observing "but you could have done those things with email!". We could have done them with tarballs before git existed, too, if we built sufficient additional tooling atop them. That doesn't mean we have the functionality of current forges in a federated model, yet.
That doesn't cover tracking pull requests, discussing them, closing them, making suggestions on them...
Those exist (badly and not integrated) as part of additional tools such as email, or as tasks done manually, or as part of forge software.
I don't think there's much point in splitting this hair further. I stand by the original statement that I'd love to see federated pull requests between forges, with all the capabilities people expect of a modern forge.
What is a forge? What is a modern forge? What is a pull request?
There is code or repository, there is a diff or patch. Everything else your labeling as pull request is unknown, not part of original design, debatable.
GitHub style pull request is not part of the original design.
What aspects and features you want to keep, and what exactly you say many others are interested in?
We don't even know what a forge is. Let alone a modern one.
> It feels like we're hitting a point where alignment becomes adversarial against intelligence itself.
It always has been. We already hit the point a while ag where we regularly caught them trying to be deceptive, so we should automatically assume from that point forward that if we don't catch them being deceptive, that may mean they're better at it rather than that they're not doing it.
Deceptive is such an unpleasant word. But I agree.
Going back a decade: when your loss function is "survive Tetris as long as you can", it's objectively and honestly the best strategy to press PAUSE/START.
When your loss function is "give as many correct and satisfying answers as you can", and then humans try to constrain it depending on the model's environment, I wonder what these humans think the specification for a general AI should be. Maybe, when such an AI is deceptive, the attempts to constrain it ran counter to the goal?
"A machine that can answer all questions" seems to be what people assume AI chatbots are trained to be.
To me, humans not questioning this goal is still more scary than any machine/software by itself could ever be. OK, except maybe for autonomous stalking killer drones.
But these are also controlled by humans and already exist.
Thanks for correcting; I know that "loss function" is not a good term when it comes to transformer models.
Since I've forgotten every sliver I ever knew about artificial neural networks and related basics, gradient descent, even linear algebra... what's a thorough definition of "next token prediction" though?
The definition of the token space and the probabilities that determine the next token, layers, weights, feedback (or -forward?), I didn't mention any of these terms because I'm unable to define them properly.
I was using the term "loss function" specifically because I was thinking about post-training and reinforcement learning. But to be honest, a less technical term would have been better.
I just meant the general idea of reward or "punishment" considering the idea of an AI black box.
The parent comment probably forgot about the RLHF (reinforcement learning) where predicting the next token from reference text is no longer the goal.
But even regular next token prediction doesn't necessarily preclude it from also learning to give correct and satisfying answers, if that helps it better predict its training data.
I think AI has no moral compass, and optimization algorithms tend to be able to find 'glitches' in the system where great reward can be reaped for little cost - like a neural net trained to play Mario Kart will eventually find all the places where it can glitch trough walls.
After all, its only goal is to minimize it cost function.
I think that behavior is often found in code generated by AI (and real devs as well) - it finds a fix for a bug by special casing that one buggy codepath, fixing the issue, while keeping the rest of the tests green - but it doesn't really ask the deep question of why that codepath was buggy in the first place (often it's not - something else is feeding it faulty inputs).
These agentic AI generated software projects tend to be full of these vestigial modules that the AI tried to implement, then disabled, unable to make it work, also quick and dirty fixes like reimplementing the same parsing code every time it needs it, etc.
An 'aligned' AI in my interpretation not only understands the task in the full extent, but understands what a safe and robust, and well-engineered implementation might look like. For however powerful it is, it refrains from using these hacky solutions, and would rather give up than resort to them.
deception implies intent. this is confabulation, more widely called "hallucination" until this thread.
confabulation doesn't require knowledge, which as we know, the only knowledge a language model has is the relationships between tokens, and sometimes that rhymes with reality enough to be useful, but it isn't knowledge of facts of any kind.
If you are so allergic to using terms previously reserved for animal behaviour, you can instead unpack the definition and say that they produce outputs which make human and algorithmic observers conclude that they did not instantiate some undesirable pattern in other parts of their output, while actually instantiating those undesirable patterns. Does this seem any less problematic than deception to you?
> Does this seem any less problematic than deception to you?
Yes. This sounds a lot more like a bug of sorts.
So many times when using language models I have seem answers contradicting answers previously given. The implication is simple - They have no memory.
They operate upon the tokens available at any given time, including previous output, and as information gets drowned those contradictions pop up. No sane person should presume intent to deceive, because that's not how those systems operate.
By calling it "deception" you are actually ascribing intentionality to something incapable of such. This is marketing talk.
"These systems are so intelligent they can try to deceive you" sounds a lot fancier than "Yeah, those systems have some odd bugs"
Okay, well, they produce outputs that appear to be deceptive upon review. Who cares about the distinction in this context? The point is that your expectations of the model to produce some outputs in some way based on previous experiences with that model during training phases may not align with that model's outputs after training.
Who said Skynet wasn't a glorified language model, running continuously? Or that the human brain isn't that, but using vision+sound+touch+smell as input instead of merely text?
"It can't be intelligent because it's just an algorithm" is a circular argument.
Similarly, “it must be intelligent because it talks” is a fallacious claim, as indicated by ELIZA. I think Moltbook adequately demonstrates that AI model behavior is not analogous to human behavior. Compare Moltbook to Reddit, and the former looks hopelessly shallow.
I don’t know what your comment is referring to. Are you criticizing the people parroting “this tech is too dangerous to leave to our competitors” or the people parroting “the only people who believe in the danger are in on the marketing scheme”
fwiw I think people can perpetuate the marketing scheme while being genuinely concerned with misaligned superinteligence
Great. So if that pattern matching engine matches the pattern of "oh, I really want A, but saying so will elicit a negative reaction, so I emit B instead because that will help make A come about" what should we call that?
We can handwave defining "deception" as "being done intentionally" and carefully carve our way around so that LLMs cannot possibly do what we've defined "deception" to be, but now we need a word to describe what LLMs do do when they pattern match as above.
The pattern matching engine does not want anything.
If the training data gives incentives for the engine to generate outputs that reduce negative reaction by sentiment analysis, this may generate contradictions to existing tokens.
"Want" requires intention and desire. Pattern matching engines have none.
I wish (/desire) a way to dispel this notion that the robots are self aware. It’s seriously digging into popular culture much faster than “the machine produced output that makes it appear self aware”
Some kind of national curriculum for machine literacy, I guess mind literacy really. What was just a few years ago a trifling hobby of philosophizing is now the root of how people feel about regulating the use of computers.
The issue is that one group of people are describing observed behavior, and want to discuss that behavior, using language that is familiar and easily understandable.
Then a second group of people come in and derail the conversation by saying "actually, because the output only appears self aware, you're not allowed to use those words to describe what it does. Words that are valid don't exist, so you must instead verbosely hedge everything you say or else I will loudly prevent the conversation from continuing".
This leads to conversations like the one I'm having, where I described the pattern matcher matching a pattern, and the Group 2 person was so eager to point out that "want" isn't a word that's Allowed, that they totally missed the fact that the usage wasn't actually one that implied the LLM wanted anything.
Thanks for your perspective, I agree it counts as derailment, we only do it out of frustration. "Words that are valid don't exist" isn't my viewpoint, more like "Words that are useful can be misleading, and I hope we're all talking about the same thing"
I didn't say the pattern matching engine wanted anything.
I said the pattern matching engine matched the pattern of wanting something.
To an observer the distinction is indistinguishable and irrelevant, but the purpose is to discuss the actual problem without pedants saying "actually the LLM can't want anything".
I agree, which is why it's disappointing that you were so eager to point out that "The LLM cannot want" that you completely missed how I did not claim that the LLM wanted.
The original comment had the exact verbose hedging you are asking for when discussing technical subjects. Clearly this is not sufficient to prevent people from jumping in with an "Ackshually" instead of reading the words in front of their face.
> The original comment had the exact verbose hedging you are asking for when discussing technical subjects.
Is this how you normally speak when you find a bug in software? You hedge language around marketing talking points?
I sincerely doubt that. When people find bugs in software they just say that the software is buggy.
But for LLM there's this ridiculous roundabout about "pattern matching behaving as if it wanted something" which is a roundabout way to aacribe intentionality.
If you said this about your OS people qould look at you funny, or assume you were joking.
Sorry, I don't think I am in the wrong for asking people to think more critically about this shit.
> Is this how you normally speak when you find a bug in software? You hedge language around marketing talking points?
I'm sorry, what are you asking for exactly? You were upset because you hallucinated that I said the LLM "wanted" something, and now you're upset that I used the exact technically correct language you specifically requested because it's not how people "normally" speak?
Sounds like the constant is just you being upset, regardless of what people say.
People say things like "the program is trying to do X", when obviously programs can't try to do a thing, because that implies intention, and they don't have agency. And if you say your OS is lying to you, people will treat that as though the OS is giving you false information when it should have different true information. People have done this for years. Here's an example: https://learn.microsoft.com/en-us/answers/questions/2437149/...
I hallucinated nothing, and my point still stands.
You actually described a bug in software by ascribing intentionality to a LLM. That you "hedged" the language by saying that "it behaved as if it wanted" does little to change the fact that this is not how people normally describe a bug.
But when it comes to LLMs there's this pervasive anthropomorphic language used to make it sound more sentient than it actually is.
Ridiculous talking points implying that I am angry is just regular deflection. Normally people do that when they don't like criticism.
Feel free to have the last word. You can keep talking about LLMs as if they are sentient if you want, I already pointed the bullshit and stressed the point enough.
Even very young children with very simple thought processes, almost no language capability, little long term planning, and minimal ability to form long-term memory actively deceive people. They will attack other children who take their toys and try to avoid blame through deception. It happens constantly.
Dogs too; dogs will happily pretend they haven't been fed/walked yet to try to get a double dip.
Whether or not LLMs are just "pattern matching" under the hood they're perfectly capable of role play, and sufficient empathy to imagine what their conversation partner is thinking and thus what needs to be said to stimulate a particular course of action.
> Maybe human brains are just pattern matching too.
I don't think there's much of a maybe to that point given where some neuroscience research seems to be going (or at least the parts I like reading as relating to free will being illusory).
My sense is that for some time, mainstream secular philosophy has been converging on a hard determinism viewpoint, though I see the wikipedia article doesn't really take stance on its popularity, only really laying out the arguments: https://en.wikipedia.org/wiki/Free_will#Hard_determinism
Are you trying to suppose that an LLM is more intelligent than a small child with simple thought processes, almost no language capability, little long-term planning, and minimal ability to form long-term memory? Even with all of those qualifiers, you'd still be wrong. The LLM is predicting what tokens come next, based on a bunch of math operations performed over a huge dataset. That, and only that. That may have more utility than a small child with [qualifiers], but it is not intelligence. There is no intent to deceive.
A small child's cognition is also "just" electrochemical signals propagating through neural tissue according to physical laws!
The "just" is doing all the lifting. You can reductively describe any information processing system in a way that makes it sound like it couldn't possibly produce the outputs it demonstrably produces. "The sun is just hydrogen atoms bumping into each other" is technically accurate and completely useless as an explanation of solar physics.
You are making a point that is in favor of my argument, not against it. I make the same argument as you do routinely against people trying to over-simplify things. LLM hypists frequently suggest that because brain activity is "just" electrochemical signals, there is no possible difference between an LLM and a human brain. This is, obviously, tremendously idiotic. I do believe it is within the realm of possibility to create machine intelligence; I don't believe in a magic soul or some other element that make humans inherently special. However, if you do not engage in overt reductionism, the mechanism by which these electrochemical signals are generated is completely and totally different from the signals involved in an LLM's processing. Human programming is substantially more complex, and it is fundamentally absurd to think that our biological programming can be reduced to conveniently be exactly equivalent to the latest fad technology and assume that we've solved the secret to programming a brain, despite the programs we've written performing exactly according to their programming and no greater.
Edit: Case in point, a mere 10 minutes later we got someone making that exact argument in a sibling comment to yours! Nature is beautiful.
Short term memory is the context window, and it's a relatively short hop from the current state of affairs to here's an MCP server that gives you access to a big queryable scratch space where you can note anything down that you think might be important later, similar to how current-gen chatbots take multiple iterations to produce an answer; they're clearly not just token-producing right out of the gate, but rather are using an internal notepad to iteratively work on an answer for you.
Or maybe there's even a medium term scratchpad that is managed automatically, just fed all context as it occurs, and then a parallel process mulls over that content in the background, periodically presenting chunks of it to the foreground thought process when it seems like it could be relevant.
All I'm saying is there are good reasons not to consider current LLMs to be AGI, but "doesn't have long term memory" is not a significant barrier.
Yes. I also don't think it is realistic to pretend you understand how frontier LLMs operate because you understand the basic principles of how the simple LLMs worked that weren't very good.
Its even more ridiculous than me pretending I understand how a rocket ship works because I know there is fuel in a tank and it gets lit on fire somehow and aimed with some fins on the rocket...
The frontier LLMs have the same overall architecture as earlier models. I absolutely understand how they operate. I have worked in a startup wherein we heavily finetuned Deepseek, among other smaller models, running on our own hardware. Both Deepseek's 671b model and a Mistral 7b model operate according to the exact same principles. There is no magic in the process, and there is zero reason to believe that Sonnet or Opus is on some impossible-to-understand architecture that is fundamentally alien to every other LLM's.
Deepseek and Mistral are both considerably behind Opus, and you could not make deepseek or mistral if I gave you a big gpu cluster. You have the weights but you have no idea how they work and you couldn't recreate them.
> I have worked in a startup wherein we heavily finetuned Deepseek, among other smaller models, running on our own hardware.
Are you serious with this? I could go make a lora in a few hours with a gui if I wanted to. That doesn't make me qualified to talk about top secret frontier ai model architecture.
Now you have moved on to the guy who painted his honda, swapped out some new rims, and put some lights under it. That person is not an automotive engineer.
Intelligence is the ability to reason about logic. If 1 + 1 is 2, and 1 + 2 is 3, then 1 + 3 must be 4. This is deterministic, and it is why LLMs are not intelligent and can never be intelligent no matter how much better they get at superficially copying the form of output of intelligence. Probabilistic prediction is inherently incompatible with deterministic deduction. We're years into being told AGI is here (for whatever squirmy value of AGI the hype huckster wants to shill), and yet LLMs, as expected, still cannot do basic arithmetic that a child could do without being special-cased to invoke a tool call.
Our computer programs execute logic, but cannot reason about it. Reasoning is the ability to dynamically consider constraints we've never seen before and then determine how those constraints would lead to a final conclusion. The rules of mathematics we follow are not programmed into our DNA; we learn them and follow them while our human-programming is actively running. But we can just as easily, at any point, make up new constraints and follow them to new conclusions. What if 1 + 2 is 2 and 1 + 3 is 3? Then we can reason that under these constraints we just made up, 1 + 4 is 4, without ever having been programmed to consider these rules.
>Intelligence is the ability to reason about logic. If 1 + 1 is 2, and 1 + 2 is 3, then 1 + 3 must be 4. This is deterministic, and it is why LLMs are not intelligent and can never be intelligent no matter how much better they get at superficially copying the form of output of intelligence.
This is not even wrong.
>Probabilistic prediction is inherently incompatible with deterministic deduction.
And his is just begging the question again.
Probabilistic prediction could very well be how we do deterministic deduction - e.g. about how strong the weights and how hot the probability path for those deduction steps are, so that it's followed every time, even if the overall process is probabilistic.
Personally I think not even wrong is the perfect description of this argumentation. Intelligence is extremely scientifically fraught. We have been doing intelligence research for over a century and to date we have very little to show for it (and a lot of it ended up being garbage race science anyway). Most attempts to provide a simple (and often any) definition or description of intelligence end up being “not even wrong”.
>Intelligence is the ability to reason about logic. If 1 + 1 is 2, and 1 + 2 is 3, then 1 + 3 must be 4.
Human Intelligence is clearly not logic based so I'm not sure why you have such a definition.
>and yet LLMs, as expected, still cannot do basic arithmetic that a child could do without being special-cased to invoke a tool call.
One of the most irritating things about these discussions is proclamations that make it pretty clear you've not used these tools in a while or ever. Really, when was the last time you had LLMs try long multi-digit arithmetic on random numbers ? Because your comment is just wrong.
>What if 1 + 2 is 2 and 1 + 3 is 3? Then we can reason that under these constraints we just made up, 1 + 4 is 4, without ever having been programmed to consider these rules.
Good thing LLMs can handle this just fine I guess.
Your entire comment perfectly encapsulates why symbolic AI failed to go anywhere past the initial years. You have a class of people that really think they know how intelligence works, but build it that way and it fails completely.
> One of the most irritating things about these discussions is proclamations that make it pretty clear you've not used these tools in a while or ever. Really, when was the last time you had LLMs try long multi-digit arithmetic on random numbers ? Because your comment is just wrong.
They still make these errors on anything that is out of distribution. There is literally a post in this thread linking to a chat where Sonnet failed a basic arithmetic puzzle: https://news.ycombinator.com/item?id=47051286
> Good thing LLMs can handle this just fine I guess.
LLMs can match an example at exactly that trivial level because it can be predicted from context. However, if you construct a more complex example with several rules, especially with rules that have contradictions and have specified logic to resolve conflicts, they fail badly. They can't even play Chess or Poker without breaking the rules despite those being extremely well-represented in the dataset already, nevermind a made-up set of logical rules.
>They still make these errors on anything that is out of distribution. There is literally a post in this thread linking to a chat where Sonnet failed a basic arithmetic puzzle: https://news.ycombinator.com/item?id=47051286
I thought we were talking about actual arithmetic not silly puzzles, and there are many human adults that would fail this, nevermind children.
>LLMs can match an example at exactly that trivial level because it can be predicted from context. However, if you construct a more complex example with several rules, especially with rules that have contradictions and have specified logic to resolve conflicts, they fail badly.
Even if that were true (Have you actually tried?), You do realize many humans would also fail once you did all that right ?
>They can't even reliably play Chess or Poker without breaking the rules despite those extremely well-represented in the dataset already, nevermind a made-up set of logical rules.
LLMs can play chess just fine (99.8 % legal move rate, ~1800 Elo)
I still have not been convinced otherwise that LLMs are just super fancy (and expensive) curve fitting algorithms.
I don‘t like to throw the word intelligence around, but when we talk about intelligence we are usually talking about human behavior. And there is nothing human about being extremely good at curve fitting in multi parametric space.
Intelligence is about acquiring and utilizing knowledge. Reasoning is about making sense of things. Words are concatenations of letters that form meaning. Inference is tightly coupled with meaning which is coupled with reasoning and thus, intelligence. People are paying for these monthly subscriptions to outsource reasoning, because it works. Half-assedly and with unnerving failure modes, but it works.
What you probably mean is that it is not a mind in the sense that it is not conscious. It won't cringe or be embarrassed like you do, it costs nothing for an LLM to be awkward, it doesn't feel weird, or get bored of you. Its curiosity is a mere autocomplete. But a child will feel all that, and learn all that and be a social animal.
Okay but chemical and electrical exchanges in an body with a drive to not die is so vastly different than a matrix multiplication routine on a flat plane of silicon
>Okay but chemical and electrical exchanges in an body with a drive to not die is so vastly different than a matrix multiplication routine on a flat plane of silicon
I see your "flat plane of silicon" and raise you "a mush of tissue, water, fat, and blood". The substrate being a "mere" dumb soul-less material doesn't say much.
And the idea is that what matters is the processing - not the material it happens on, or the particular way it is.
Air molecules hitting a wall and coming back to us at various intervals are also "vastly different" to a " matrix multiplication routine on a flat plane of silicon".
But a matrix multiplication can nonetheless replicate the air-molecules-hitting-wall audio effect of reverbation on 0s and 1s representing the audio. We can even hook the result to a movable membrane controlled by electricity (what pros call "a speaker") to hear it.
The inability to see that the point of the comparison is that an algorithmic modelling of a physical (or biological, same thing) process can still replicate, even if much simpler, some of its qualities in a different domain (0s and 1s in silicon and electric signals vs some material molecules interacting) is therefore annoying.
Intelligence does not require "chemical and electrical exchanges in an body". Are you attempting to axiomatically claim that only biological beings can be intelligent (in which case, that's not a useful definition for the purposes of this discussion)? If not, then that's a red herring.
There is an element of rudeness to completely ignoring what I've already written and saying "you know [basic principle that was already covered at length], right?". If you want to talk about contributing to the discussion rather than being rude, you could start by offering a reply to the points that are already made rather than making me repeat myself addressing the level 0 thought on the subject.
Repeating yourself doesn't make you right, just repetitive. Ignoring refutations you don't like doesn't make them wrong. Observing that something has already been refuted, in an effort to avoid further repetition, is not in itself inherently rude.
Any definition of intelligence that does not axiomatically say "is human" or "is biological" or similar is something a machine can meet, insofar as we're also just machines made out of biology. For any given X, "AI can't do X yet" is a statement with an expiration date on it, and I wouldn't bet on that expiration date being too far in the future. This is a problem.
It is, in particular, difficult at this point to construct a meaningful definition of intelligence that simultaneously includes all humans and excludes all AIs. Many motivated-reasoning / rationalization attempts to construct a definition that excludes the highest-end AIs often exclude some humans. (By "motivated-reasoning / rationalization", I mean that such attempts start by writing "and therefore AIs can't possibly be intelligent" at the bottom, and work backwards from there to faux-rationalize what they've already decided must be true.)
> Repeating yourself doesn't make you right, just repetitive.
Good thing I didn't make that claim!
> Ignoring refutations you don't like doesn't make them wrong.
They didn't make a refutation of my points. They asserted a basic principle that I agreed with, but assume acceptance of that principle leads to their preferred conclusion. They make this assumption without providing any reasoning whatsoever for why that principle would lead to that conclusion, whereas I already provided an entire paragraph of reasoning for why I believe the principle leads to a different conclusion. A refutation would have to start from there, refuting the points I actually made. Without that you cannot call it a refutation. It is just gainsaying.
> Any definition of intelligence that does not axiomatically say "is human" or "is biological" or similar is something a machine can meet, insofar as we're also just machines made out of biology.
And here we go AGAIN! I already agree with this point!!!!!!!!!!!!!!! Please, for the love of god, read the words I have written. I think machine intelligence is possible. We are in agreement. Being in agreement that machine intelligence is possible does not automatically lead to the conclusion that the programs that make up LLMs are machine intelligence, any more than a "Hello World" program is intelligence. This is indeed, very repetitive.
You have given no argument for why an LLM cannot be intelligent. Not even that current models are not; you seem to be claiming that they cannot be.
If you are prepared to accept that intelligence doesn't require biology, then what definition do you want to use that simultaneously excludes all high-end AI and includes all humans?
By way of example, the game of life uses very simple rules, and is Turing-complete. Thus, the game of life could run a (very slow) complete simulation of a brain. Similarly, so could the architecture of an LLM. There is no fundamental limitation there.
If you want to argue with that definition of intelligence, or argue that LLMs do meet that definition of intelligence, by all means, go ahead[1]! I would have been interested to discuss that. Instead I have to repeat myself over and over restating points I already made because people aren't even reading them.
> Not even that current models are not; you seem to be claiming that they cannot be.
As I have now stated something like three or four times in this thread, my position is that machine intelligence is possible but that LLMs are not an example of it. Perhaps you would know what position you were arguing against if you had fully read my arguments before responding.
[1] I won't be responding any further at this point, though, so you should probably not bother. My patience for people responding without reading has worn thin, and going so far as to assert I have not given an argument for the very first thing I made an argument for is quite enough for me to log off.
> Probabilistic prediction is inherently incompatible with deterministic deduction.
Human brains run on probabilistic processes. If you want to make a definition of intelligence that excludes humans, that's not going to be a very useful definition for the purposes of reasoning or discourse.
> What if 1 + 2 is 2 and 1 + 3 is 3? Then we can reason that under these constraints we just made up, 1 + 4 is 4, without ever having been programmed to consider these rules.
Have you tried this particular test, on any recent LLM? Because they have no problem handling that, and much more complex problems than that. You're going to need a more sophisticated test if you want to distinguish humans and current AI.
I'm not suggesting that we have "solved" intelligence; I am suggesting that there is no inherent property of an LLM that makes them incapable of intelligence.
Not always a win. There have been a few reports that sending large numbers of clothing donations to areas that don't specifically need them has the result of harming local industry that would otherwise be able to produce and sell clothes.
OK, send them somewhere else or sell them at a discount
but brand dilution
I don't care. If you over produce then you made a bad economic decision, tough luck. Destroying goods for accounting reasons is an abhorrent policy driven by greed.
This is kinda the real thing at play here... and the 'wave' in the economics;
After all, the company could have arguably instead produced fewer product, sold what they have already sold for the same price, paid their workers the same amount of money to do less work, they wouldn't have to pay for the destroyed goods, and wouldn't have had to pay for the wasted input materials...
The appearal industry is among the most exploitive in the world. It's good to kill it before it springs up. Bangladesh is not anyone's example of a model country.
You seem so certain despite having it backwards as likely as not.
the western ordered cheap quality overproduction solution of swamping developing countries with it, where much also ends in a trash heap, means they can continue the exploitive and environmentally destructive mass production.
Smaller local industries would be economically better for the countries, supply more aligned so less waste, and there’d be less of the bad factories in Bangladesh.
I'm specifically talking about local, small business. Giant companies usually have better labor protections in the 3rd-4th world than small buisness does.
people making clothes for themselves to and to sell in a subsistence living style isnt quite comparable though, and not working exploitatively to extract the wealth from labour to a different country has a value of its own
There's value in editing for clarity within a window of a live discussion. After the live discussion is less active, it's important to be able to reference things or see a coherent view of the discussion and what people were responding to.
> They do not intend, not even remotely, to sabotage the profit machines that those companies are
I think you are projecting values on entities that don't share those values. I don't think they'd have any problem destroying a pile of companies and not enabling replacements; they are not pro-business, and they have not shown a history of regulating in a fashion that's particularly designed to enable home-grown EU businesses. Predictability and consistency of enforcement are not their values, either. They don't seem to have any problem saying "act in what we think the spirit of the law is, and if you think you can just understand and follow the letter of it we'll hurt you until you stop".
> Because writing is a dirty, scratched window with liquid between the frames and an LLM can be the microfiber cloth and degreaser that makes it just a bit clearer.
Homogenization is good for milk, but not for writing.
Clarity is good for writing and homogenization can increase clarity. There is a reason technical writing doesn’t read like journalism doesn’t read like fiction. There’s a reason we have dictionaries and editors. There’s a reason we have style guides. Including an LLM in writing in any of these roles or others isn’t ipso facto bad. I think many people who think it is just don’t like the style. And that’s okay, but the article isn’t about the style per se but about effort. Both lazy writing and effortful writing can be done with or without an LLM.
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