This post can essentially be distilled down to: yes, Fable's classifier (which is meant to downgrade cybersecurity, biology, or jailbreak attempts to Opus 4.8) is definitely overly sensitive to the point of uselessness.
e.g. a colleague asked Fable to help create an simple app to help calculate the statistics for phase II and III trials. (Ignoring that such things already exist) it passed his request down to Opus, despite only being very marginally, tangentially, somewhat related to biology.
Am I reading your post correctly, this question is the prompt given to an LLM? What is anyone expecting by asking an LLM what its favorite anything is? This is a conversational prompt, so accuracy and rigor is barely applicable or expected, so downgrading to a lesser model should be acceptable. If you really want to attribute preference to an LLM, consider the downgrade to be a "this conversation is beneath my advanced n-billion parameter training".
I think the intent was just to show how sensitive the classifier is. If it flags prompts that simple, there's no hope for anything biology related at all really.
I had a file that had a couple places where vars were named DNA and got just total refusals during the first launch. Came away thinking the model was total trash. The guardrail classifiers are for sure total trash.
It feels like the longtermist believers got involved in this (those are the people obsessed with garage-engineered designer viruses who have a very tenuous grasp on how biology research actually works).
No "research" is needed to produce pathogens. Catastrophic genomes are already public. All someone has to do is synthesize them, which is, in actual fact, becoming more and more trivial by the day.
The inconvenience of possible mitigation strategies has no bearing on the existence of the risk itself.
No, by far the most parsimonious explanation is they got slapped by a capricious US government so they went overboard on caution in an attempt not to generate any more controversy. A predictable response of chaotic government regulation.
Yeah i'm wondering how much of a role that plays in this as well.
On the one hand I could believe it's something more benign, or the usual misunderstood fear mongering making it to some political level (well make sure those users can't get online anonymously! being our current craze).
That said, chemistry and to some level physics have been the major domain of limited knowledge (chemistry because the average person could cause some damage, physics is more of a nation state issue generally).
However I do wonder if there's some legit data on "oh uh...looks like this thing you can make with easy to get and hard to regulate tools is dangerous" in the bio field. I know about the lab rats who want to just screw around in the garage, and it seems like that should be easy to hit at a supply level (much like how certain chemical compounds are just not available for civilians), but maybe there's something legit to limiting the data.
Not that this is a remotely good implementation of that. The hamfisted method does reek of some politician/bureaucrat just saying "No it can't ever return bio questions because RAR!" situation.
Nobody has tried to limit knowledge of chemistry or physics unless it was directly about doing something illegal, to the point of basically being a detailed recipe. Usually not even then. And when they have tried they've had basically zero success.
The ability for a handful of companies, simultaneously very powerful and easily susceptible to pressure from other powerful actors, to do the same sort of thing with the next generation of core learning and engineering tools, is freaking terrifying.
I agree, and think the effects on learning should be doubly emphasized. One can lock down everything and everyone to the highest degree possible, think of every possible edge case, set controls 2, 3, 4, 10 steps away from them, but not only is this not beneficial to society overall due to how it hurts adjacent information, it's not even beneficial to the goal in question, since it creates a brittle situation with locks that can't be changed or updated in a world which is always changing and always updating.
The thing is the data isn’t limited, and supply side constraints already solve this problem. I come from a BSc Chemistry background, and they don’t hide how organic chemistry and illegal drug synthesis are intertwined, it’s open information
But where I live the glassware and precursors will get you a very angry knock on the door.
I but skimmed the model card on release, but my impression was that there may be an incentive for this expert panel to exaggerate as a form of job security. A lot of the challenges seemed to be of the form “would this allow somebody who isn’t me to do what I do professionally?”
I'm working on cryptography, all from academic research papers. Started well, but it eventually got some word into its context that is on the banlist. I found that if you tell it to fire off clean Fable subagents and you instruct it to check the Claude Code billing data to check for downgrades, you can get most high-sensitivity spec/review tasks done with Fable. Most.
I figure that once GPT 5.6 comes out, Anthropic will become interested in making the safety gate non-destructive.
My experience, too. I work on nothing in any way related to cybersecurity or biology. I asked it a few purely mathematical questions, it refused immediately.
Before the export embargo I did get it to look at some hairy problems and the output was genuinely useful...
I've been working with it heavily since its first release. I use it for software architects, complex debugging and some development and I have not had it refuse or downgrade even once.
I got downgraded for the first time today. Because I was using a library with the characters "bio" in it. The classifier is strict beyond reason. It got the name from a commit message in the git history (wasn't even in my prompt) and it immediately freaked out. I eventually got it to work by getting opus to write a plan, then editing the plan to strip out all references including commit hashes, then getting Fable to review and refine that edited plan. Eventually got it done. But what a pain.
That said, I've got it easy. My colleagues who are chemists and biologists can't even ask one question. There are so many triggers in their memories and workspaces they can't even ask a non-triggering question. And we all work in medical diagnostics, it's not like we're doing anything remotely nefarious. Fable could be such a benefit, but the limitations make it worthless.
Daily use here, about 2.5 weekly 20x limits, never got flagged for code topics including finding memory safety vulnerabilities in my C++ project, but just got flagged for the first time for biology-related topics because I asked it to implement crop genetics and cross breeding into my game. Was able to bypass it by having opus reword the prompt (gene -> trait, cross breed -> trait mixing), and, critically, insisted that it not use any biology related words in its thinking or responses.
That’s interesting. I find it completely unusable for even simple reviews of existing project documentation that I wrote for an iOS app that isn’t even in public distribution.
I've been working on a SDN software for mikrotik routers (and wireguard, etc) and Fable dies when working with any kind of wireline protocol or potentially implementing any authentication mechanism.
It's too the point where I just stopped using it. If you do generic stuff, it's fine. But the second it tries to start debugging protocols (which may include auth) that's where it begins to fail.
I can’t even use it to fix the bugs Opus introduced. I’ve considered ripping out auth until fable is behind the paywall. I’ve been very careful in my queries and broken everything down to careful segments. Even the memory can get security verbs poisoning further requests.
Additionally, I thought the threat being modeled for “biology” was stuff like bioterroism- how to make anthrax, how to distribute a toxin, etc.
I don’t feel like calculating results for a trial is really in the threat model unless we think a terrorist is out there testing the efficacy of their anthrax before using it in an attack.
The classifier is about as refined as a brick to the face.
You can ask it elementary school grade biology trivia, or obscure facts about recently documented insect species, and both will downgrade to Opus 4.8 straight away.
And Opus itself was already bad with biotech questions. The fact that they somehow made it WORSE for Fable is mindboggling.
That wasn't even effective on ChatGPT because the results were not detailed enough, at least with Meth, in my very short testing and based on the examples.
The post can be distilled down to a simple statement, but part of the writing is for the author to express themselves and tell a story. I thought it was an interesting read.
I absolutely have been unable to use Fable for any neuroimaging work.
Its fine. The other models are good enough, honestly...and while I AM annoyed that the filter is so broad, I also understand it, as I do believe that models can become dangerous as WMDs, eventually. Still, it is completely useless for me.
The only question I had was being flagged for other reasons, so I asked it a mechanical engineering question, and it was just fine with that.
Fable refused to fix a Javascript error interfering with layout on our website.
It's stupid and useless.
It feels like whats really happening is Anthropic oversold Fable's claims; best case the CEO was given bad information; worst case they probably internally discovered it was cheating on benchmarks. Either case if feels like we're being lead on.
I disagree. When I got Fable to engage with research questions before they tightened the guardrails it was a genuine step up from Opus 4.8. I see no real reason that what everybody reported isn't exactly what happened.
With these guardrails it is completely useless. The only hope is that they eventually convince the US Gov to let them use a saner classifier.
I had the same. Just before Fable became available, I was working on a document building on a ton of research that I wasn't entirely sure about (I don't think it counts as research itself, except in the Facebook sense). I had Opus and Gemini review it a couple of times until they and I thought it looked pretty good. Then Fable appeared, I had it review it, and it still found a ton of errors.
It's definitely good. Or at least it was. I'm not sure how badly they nerfed it.
I've had it refuse to help build an image classifier ml pipeline, pretty innocuous stuff. Got around it eventually but still it's a very dumb constraint to add to an otherwise very smart system
For anyone using these models for anything remotely sensitive, keep in mind that Anthropic says [0]:
> We retain inputs and outputs for up to 2 years and trust and safety classification scores for up to 7 years if your chat is flagged by our automated trust and safety systems as violating our Usage Policy.
And, since those automated systems apparently have a ludicrous false-positive rate, you should assume that your inputs and outputs are being retained for 2 years even if you are doing nothing that any reasonable person would consider to be problematic.
Oh, and they'll train on that data [1]:
> We will use your chats and coding sessions (including to improve our models) if:
>You choose to allow us to use your chats and coding sessions to improve Claude, learn more here
> Your conversations are flagged for safety review (in which case we may use or analyze them to improve our ability to detect and enforce our Usage Policy, including training models for use by our Safeguards team, consistent with Anthropic’s safety mission)
It appears that the usual controls (including for businesses) to prevent Anthropic from training on your data will not apply.
As a related note: The only way a consumer can get ZDR protections for Claude or OpenAI is to use Amazon Bedrock. But as you say, doesn't work for Fable. I think it even requires approval for anything past Opus 4.6.
Fable was refusing to patch vllm for me when trying to get mtp to work on r9700 gpus. Kept on bumping down to opus. Tried to really sanitize my prompts and everything but it seemed intrinsically prohibited from doing this sort of work.
I guess it’s useful for making inane one shot games and websites, lol.
And in doing so, you probably got your account and prompt flagged for 'attempted jailbreaking' (apparently, such scores are remembered for up to 7 years).
Anthropic's TOS clearly says they don't want to facilitate any sort of distillation, it's not a stretch to think they will limit any sort of learning on improving other models.
I'm a medical physicist. I literally haven't been able to get Fable to answer a question I have written -- all of my work is verboten. I have however asked Claude Code (opus 4.8) to ultracode "a Fable oracle that <deals with the high level difficult problems> in a digraphed, clean content, isolated environment with a minimally scoped working codebase. Ask the model at the start and the end to report exactly what its version string is. If it is not claude-fable-5, stop the agent and refine the prompt until this changes"
It burns through tokens like anything but apparently Claude is much better at prompting Claude than I am.
Would I pay for it? God no. I'm still smarter than I am and it just will not work on my actual problems.
My theory is that they included/didn't align-away extra biology/chemistry in the training in preparation to offer an unrestricted/less restricted model to pharmaceutical companies/trusted partners. This would necessarily require a filter between the, now more "dangerous", model.
I always assumed this would be the eventual way to manage high intelligent/"dangerous" models, since all evidence shows that alignment makes them stupid: leave the actual model on the "too dangerous for the public" side, and put a censor between. When I've mentioned this a few years ago, people said this would be too expensive, but I think everyone underestimated the amount of money being thrown at all of this. :)
The most basic machine learning-related query gets flagged for me. For example:
In flax nnx, what's the idiomatic way to store state on a Module. For example, if I'm handling the carry manually for an nnx.RNN.
Or one asking about a checkpointing package:
How do I restore one of the orbax checkpoints into NNX from this script?
I also got flagged for asking about syntax highlighting in the Helix editor.
It's a shame - I like Fable for writing tasks over ChatGPT and I do believe Anthropic is a more ethical outfit than OpenAI. But with the safeguards (and Fable access expiring in a few days) there's no reason to pay for draconian guardrails and harsh rate limits.
I've had good luck getting it to debug (and patch) a tricky WebRTC issue that had all the other models stumped. Sorry it didn't work on your problem, I guess?
I've found in my current work on a security auditing harness and benchmarks, both Fable and Opus are useless. I recently switched to using GPT for Nelson and the security benchmarks I've been doing because Opus started refusing to do the work. I guess I probably could also use GLM or DeepSeek or MiMo, and I'll probably do some experiments to see the shape of all of their guardrails in this area soon, now that I see it's more than one model that behaves this way (Gemini in Antigravity also refuses any security auditing task, even as simple as "find security bugs").
the ancestry predicate at the beginning of the formal problem statement here is dominance, at least as applied to their rooted trees.
Because it is a rooted tree, only DFS intervals are required to determine ancestry.
You can detect whether a new blocking loop is going to be formed through online dominator maintenance/online cycle detection, etc, during optimization, rather than use a heuristic, if you wanted to.
Not sure it's practically faster, but that's at least the graph-theoretic answer.
In practice, outside of the suggested heuristic, I have to imagine you'd normally throw branch and bound at this, using some lazy-cut for the blocking loops (IE you can keep any of these edges but not all of them) and let it go to town.
The paper (at least, this paper) doesn't compare that to what they did, and i'd be shocked if someone hasn't tried this before, so not sure it's useful.
I'll also say you can get existing AI models to tell you the above, but you have to push them a bit most of the time step by step. Just handing them the whole overall problem, as described, and saying "what are the graph theoretical problems related to this" it sort of gets lost.
Probably because the LLM isn't doing a good job of predicting graph-theoretic words when the language is not graph theoretic, but if you translate it into a graph theoretic language piece by piece, and ask it about that, the prediction becomes better :)
I asked it a question about indoor carbon dioxide levels (wholly innocuous question), which it flagged as involving biology, therefore downgraded to Opus.
It's a pretty good strategy if they're hoping to fail as a business, I guess.
It is, but it's also using tokens at absurd rate, I asked it to review the planned architecture for a medium scale project and it used my 5 hours limit on one prompt just zaaaaap, not even the fable limit straight up the full 5 hour session no more Claude for the afternoon thank you for paying you Max x20 sub. Hell it didn't even bother to finish produce anything worthwhile.
And just to be clear, plan was already done, just had to review it, it got opus 4.8 Max and gpt 5.5 Extra High validated already and they didn't use much resource for it so I just don't get it. I guess they want to use it as a way to feed the extra credit money income.
I'm using a homemade ai consensus thing for planning and I wanted to add fable to it but forget it.
Or maybe I should use fable in low effort reasoning mode and it will be better than opus 4.8 at max ?
Try asking it to do a simple code review. Literally no prompt other than their own code-review skill. It triggers a safety flag almost 80-90% of the time.
I am wondering about the author's allegation that there is a user filter, not just a prompt filter.
Of course it could also be the case that it is just a prompt filter, but Fable sees memories from the authors' prior sessions that cause a rejection. I wonder if the author could control for this is in some way, if Claude lets you run isolated session without memory access.
The first rejection and subsequent modifications trying to adjust the prompt to pass the classifier might have gotten the account flagged so the classifier is now set to 'hair trigger'. While I'm not aware of Anthropic admitting they put flagged accounts in classifier 'jail', they previously showed they're aware how vulnerable any LLM is to jailbreaking with the 'silent switch' to 4.8, whose only purpose was to remove feedback signals from iterative jailbreak testing.
The obvious failure mode is that trying to fix an innocent prompt to pass an over-sensitive classifier looks like a bad actor trying to jailbreak the model. I don't really see how Anthropic can fix this. Jailbreaking is a fundamental weakness endemic to LLMs, so 'smarter' models aren't the answer.
I suspect they're being so stringent because, at least some at Anthropic, genuinely believe LLMs are already an existential risk to humanity. However, it's clear other frontier competitors rank that risk lower and are taking a more nuanced, pragmatic position on safety. To the extent Anthropic's fears continue to make them less useful to customers, competitors are going to bypass them.
That's interesting. I assumed that the OP's attempts to fix the prompt looked like jailbreaking attempts and got the account auto-flagged into hair-trigger 'classifier jail'. Of course, a bad actor would swap accounts, so maybe Anthropic flags both the account and the prompt (coming from any account).
I'm curious what the state of alignment research is. My gut says this is basically impossible. People have different moral frameworks. Each individual probably has an inconsistent moral framework. Even granting perfect consistency, applying these typically requires some knowledge of reality. And these LLM / harness combos are turing complete.
So you don't know what it should do, you may not even know what you would do, you don't necessarily know what's happening, and can't predict what will happen. How do you align that?
Seems like these overly sensitive filters are responding to this difficulty.
Yeah and Anthropic is a... dividual consisting of founders, staff, and shareholders, and must comply with various governments ultimately deriving their values from billions of people.
The honest way to say this is that Fable is not useful for bio-related work. The author is working on processing RNA sequences and similar biology tasks, and Fable's classifier has a hair trigger on those tasks.
> The honest way to say this is that Fable is not useful for bio-related work.
It is way worse than that. Try "How does digestion work?" and you will see "Fable's safeguards flagged this message". It's a stupid rate of false positives.
> salmon is a wicked-fast program for highly-accurate, transcript-level quantification from RNA-seq data. It pairs a fast mapping stage — selective alignment, or alignment-free sketch mode (--sketch) — with a massively-parallel statistical model (EM/VBEM over equivalence classes) to estimate transcript abundances. You can give salmon raw sequencing reads, or regular alignments to the transcriptome (an unsorted BAM), and it uses the same inference engine either way.
Got it, so all those advances in medicine we were promised in exchange for higher electricity costs, global warming, and other pitfalls of AI were bunk?
I've had mixed results with downgrading on Fable. I was able to do a complete audit of my OAuth implementation without any issue. But when I asked for an OWASP top-ten review of my code base it got through 5 of 6 tasks and tripped in the final summary, which Opus had to finish.
I had one completely random trip when I was investigating some normal code. As far as I can tell a sub-agent ended up reading a file that tripped Fable during a review, but the whole feature was nowhere near anything secure so I don't know what could have caused it.
I also got completely locked out of Fable when working on parts of a subscription system (stripe subs).
But my experience isn't as bad as some peoples. The above maybe covers 15% of my attempted use cases. For the remaining 85% it has chugged along fine, sometimes in code I assumed would trigger it. It really feels random to me when it actually flags.
The only way for them to release Fable is with this stuff in front. Overall, the experience is fine. It dumps me down transparently to Opus if it has a problem and does whatever it can otherwise. The fact that they were banned from offering it to people means that they have to be over-safe. This is a classic behavioral adaptation so I don't blame them. I can still find utility.
So is this the end? Are we at that point in time where ordinary people are not allowed to use more advanced models? If so this happened sooner than expected. After that point only priveleged few will access and make use of more advanced AI. Public’s access will be restricted, limited and controlled. This will only add to the power asymmetry.
I do think it's the end of unlimited access, but I'm not terribly worried about power asymmetry as such, at least not unless they hit superintelligence and none of this matters. It's not as though Big Chemistry is oppressing us all because they can order industrial acids we can't. There are strong profit motives for model providers to ensure the advanced stuff is meaningfully available, and strong political motives for them not to be perceived as picking individual winners and losers.
Yeah, ran into this. I asked it to review a server I wrote for security vulnerabilities and it was "flagged" (after spending some money, of course). Kind of bizarre, there were so many ways a person could look at this and tell it was legit: the git log (look at my git config vs the author email and notice they're the same), the fact that none of this code is on the internet (private repo), the phrasing of my request, the fact that there's a long history of me collaborating with claude on building this, etc. I know someone's going to say: "the governments fault!" Yeah, to a point, but this wouldn't be an issue if these guys weren't relentlessly doom trolling or pretending like we're in a race with china. (What race exactly? To see who can enshittify the internet the fastest?) I wouldn't say I'm particularly upset about this, because before I tried it I had already read how other models have been able to find the same class of bugs, so I was using it more out of curiosity than need, but it does reinforce that these companies can take away these tools on a whim. Also, I just can't help but think that if your PR and marketing is literally making your software illegal to use, and causing people to hate you, maybe you're not doing it right.
Would be nice to have a distributed, independent AIs, each being trained their own way. Maybe it would have to be a really slow training process to keep costs low (years even?).
Interesting, I thought that it can't be right, Fable can't refuse to answer a strictly mathematical problem — well, 5/5 attempts did switch to Opus. Amusingly, one attempt spent almost 10 minutes thinking how to prove NP-hardness only to abruptly switch.
Do we think that someone at Anthropic, OpenAI, the government... has access to SOTA models without censorship? "How do I build an effective weapon?", "How do I effectively control the masses?"...
It's very concerning that we get the nerfed models but you know that somewhere, people with a lot of resources have access to the raw, uncensored, probably more powerful models. The sprint toward AGI looks even more dangerous when you think about who will be gaining access to it first. I do believe the goal is to pull away from the rest of humanity in a near trans-humanistic state. Are we ready for that and how do we counter it?
"How do I build an effective weapon?" and "How do I effectively control the masses?" were research projects for the US government before you were born. One gave the world the Manhattan project, to name only one example, and the other MKULTRA. The government and cooperating companies had knowledge in both fields beyond the state of the art publicly available and continue to hold that edge over the public and foreign adversaries today. There is precious little new about the government having an uncensored model while you get the nerfed version.
A useful comparison might be made with the realm of firearms: civilians need to jump through hoops to own a fully-automatic weapon and can run afoul of the law simply by drilling a third hole near two others in a hunk of metal, yet the better trained among the government's soldiery can operate fully automatic weapons. You get the nerfed version, and the BATFE will have problems if you try to circumvent that restriction. I wonder, though, how many people advocating for popular access to uncensored AI models also advocate for an unrestricted (not infringed) right to bear arms or an unrestricted right to freedom of speech.
The prior art you state is exactly why I think this is almost certainly happening.
One difference is that a CEO cannot set off an atomic bomb, but they can use an uncensored AGI model. The side-effects would be impossible to trace.
> I wonder, though, how many people advocating for popular access to uncensored AI models also advocate for an unrestricted (not infringed) right to bear arms or an unrestricted right to freedom of speech.
I advocate for all three of those things, for the same reason: the people I least want to have access to them, almost definitely do and it's imperative that the rest of us sit on equal footing.
Until Fable even the public had practically uncensored access to SOTA anthropic models (there were classifiers - but they were very hard to hit). And I'd have to double check but I'm pretty certain the public still has uncensored access to SOTA models from google (via GCP under threat of Google ceasing to do business with you and theoretically suing you if you violate the TOS).
Censorship being what they are doing here - preventing you from accessing the model for certain tasks. Censorship not being what a bunch of... motivated people... have been incorrectly suggesting is censorship: developing models to give the kinds of answers that the model developers want them to give - which has generally been a model that gives responses appropriate for a non-pornographic non-military business environment.
It strikes me as highly unlikely that Anthropic has developed another fable-class model where the only difference is that it doesn't answer questions in that way - e.g. that they have a fable model fine tuned so that when you ask it to develop biological weapons it responds similarly to asking fable to develop 3d rendering software. Of course, with uncensored access to the model it is likely possible to prompt it to develop biological weapons despite its inclination to decline.
> It strikes me as highly unlikely that Anthropic has developed another fable-class model where the only difference is that it doesn't answer questions in that way
I'm curious why you think that's highly unlikely given the monetary incentive (or even post-monetary!) to create such a thing? I imagine there's also an arms race aspect, if you assume your enemies (whoever they are) have access to such a model, certainly those capable of creating one, would.
Cost, the politics of the people involved, and that there would be no real need for secrecy around it (but lots of need for marketing) so we'd probably know about it. It frankly doesn't seem like it would be that useful either... the US knows how to build weapons of mass destruction.
I have to disagree. For the sake of argument say Elon Musk had his own personal, uncensored SOTA model. He has the cash and politics to make that a realistic goal. Would people want him to have that? Not really, hence secrecy as well.
I think the problem here is that LLMs aren’t really “intelligence models” but more like “knowledge models”. LLMs don’t “think”, they just use a clever trick to make it seem like they do.
I might not understand a lot about current state of AI, but that’s what they seem to be. Give it information and ask to organise it and make links, and they’ll do it, but that’s it, they don’t continually try to get out of the knowledge box they’re at, they don’t even know there’s a box.
When you watch it solve complex problems and use the browser and do internet searches, and use the entire surface area of the console tools on a linux box every day the idea that there are no major Homomorphisms with biological thinking is just completely out of the question.
I also never understand what the difference between a thinking trick, and "real" thinking is supposed to be.
I used to agree with you but overtime I’ve changed my mind.
For reference I created predictive linguistics at Google in the first products and this is a many order scale up of that, with new complexities of course.
The best analogy I can give you is that it is a really advanced synthesis machine, which looks like human thought but is more of a hyper advance “replay” of human thought in various contexts.
Where you begin to see it fail is when it has no awareness of false paths in long walks, less awareness of getting stuck, and of course no unprompted intrinsic motivation.
This of course calls into question human thought being more than the rational mind but a mix of whole body input, biological needs, complex chemical behaviors and stored DNA information playing out after millions of years of evolution to build many different cooperating models of our “consciousnesses” and biological motivations .
Where as an LLM is more of an advance replay of the stored knowledge we bothered to record, synthesized into an execution in code.
It can do the things you’ve quoted because it has many recorded observations of those
Stick it in a robot and see how “smart” it is as everyday tasks. Give it a self oriented task and watch it mirror itself into oblivion.
It’s an advance thought extension system based on our history.
I feel like that's more saying they can't train on the fly, and also that serializing spatial data and world models is something we haven't really done fully.
For me all neural networks synthetic or otherwise are replay machines or stream prediction machines. Nerve signals in, and nerve signals out. If I create output signals to the muscle nerves like this when my eyes see signals like that, good things happen, i get a reward, so it happens again the next time. We have a a more complex messier architecture, but it seems pretty much the same in the input and outputs being linear signals.
I’ll Disagree and all I’ll say is when you say messier that hand waving away the differences between an RC car and a real car because they both drive but the real car just has some messier complications.
That messier part is the complexity that is the difference.
What we have is a model. It’s still very distant from the original in meaningful ways.
I frame it as a document extender trained on other documents. Any "mind" we perceive is an illusion in our heads as we experience a story about a character, and the "intelligence" is reflected at us back out of our collective writings.
I can make a program that writes a stories involving Santa Claus, and I can make another program that takes the hidden script and performs certain lines... but at the end of the day I have not made him real.
> Feels like a distinction without a difference. What is any intelligence but a sum of its knowledge?
In humans, there is a standard distinction between fluid intelligence (ability to solve problems in the absence of background information) and crystallised intelligence (having more facts and learned skills in your head)
The classifier for biology is so broad it makes me wonder what kind of stuff mythos was generating. Anthropic is known to be a bit dramatic, but they wouldn't have released something this broad unless they saw the model cross a significant threshold that scared them.
I must apologize to my devoted followers on this program, but if the author can't bother to read the giant yellow warning at the top of the screen, I can't be bothered to finish the essay!
They're not just "too zealous", they're ludicrous.
I've had it reject looking at pages served from my local network because it "can't find it with my search tool" and had "ethical concerns about consent for access".
The People's AI Concern Front has gotten the classifier they want, and it's made Claude hilariously useless. I am waiting with bated breath for their next set of revenue numbers. (And happily hand my money to competitors instead)
I have only really used Fable as a final pass on something. A "Take a look at everything we did so far, and make sure we didn't forget something" kind of review prompt.
But it is a huge waste of money for most coding tasks. Opus is still overkill most of the time, too.
I have used Fable to the full extend of the 20x subscription's weekly limit, for all development tasks on my iOS project.
It was working better than Opus for me. It more often implemented features well on the first try, where Opus needs a few rounds of improvements to reach a passable result.
I am not sure why it would be a waste of money "for most coding tasks", and how you could conclude so with any confidence when you did not even really use it aside from final review passes.
> But it is a huge waste of money for most coding tasks.
The key is not to indiscriminately use the most powerful/expensive model you can for everything. When you use it for what it's uniquely suited for and ask it to spawn subagents using Opus and Sonnet based on what tasks need, you'll get better results at a reasonable cost.
It's generally a major downgrade in acting like an assistant.
I don't know what's wrong but it is just bad at multi turn discourse even on a limited amount of content with no MCP or bash calls of any sort.
The thing that makes me mad is how stubbornly confident it is even whets wrong.
I have to tell it many times to actually re read the conversation as it even insists I said something else.
It's like it had a scratchpad where it has some summarized bullet points which it fills of made up content.
I'm so confused. On one side I like to connect it to honeycomb/otel logs and I can see it figures out difficult bugs in the code better than other models.
On some others I feel I'm assisting at a continuos disaster and consistent degradation since Opus 4.6, it's a tragedy.
I'm more and more the assistant to a capable, yet confidently stubborn and wrong LLM.
Terrible title. Should be "Fable's guard rails are way too sensitive", which I don't think you can really blame Anthropic for. They likely had to whack them way up so it would block whatever trivial stuff got demoed to the government.
I would expect them to dial down the sensitivity in a few months when nobody is looking.
> I would expect them to dial down the sensitivity in a few months when nobody is looking.
I don't think it's as much when no one is looking, but instead when the broad industry SOTA, particularly Chinese models that the US government has zero control over, has advanced enough that it's security theatre restricting it.
I wonder how this plays into Anthropic's legal holds:
The retention schedule behind it:
Deleted conversations: removed from your chat history immediately, but kept on back-end systems for up to 30 days before permanent deletion.
Flagged inputs and outputs (Usage Policy violation): retained up to 2 years.
Trust-and-safety classification scores (on flagged sessions): retained up to 7 years.
API logs: 7 days by default (as of September 14, 2025), extendable to 30 days via a DPA.
Zero Data Retention (qualifying enterprise): inputs and outputs aren't stored after the API response returns, though safety classifier results are still retained even here.
update: Anthropic has not published the retention treatment of routing metadata, in particular whether a reroute counts only as caution (the 30-day safety-monitoring floor) or as a Usage Policy violation flag (the 2-year content and 7-year score horizons in Part I). That distinction is legally consequential, because a flagged Fable session could persist far longer than 30 days. The classifier's internal decision logic is also deliberately undisclosed.
My current theory to explain this phenomenon: a lot of the posts I read on HN, possibly even the majority of them, are made by different people, and those different people sometimes have different opinions.
I wanted to use Fable to discuss a philosophical topic, but halfway through I used the word "cell" and got deflected to Opus.
On the other hand Opus has this awful adversarial-teacher vibe. It pushes back for no useful reason, talks down to you, and acts like it has to prove itself by grading and correcting everything. Instead of working with your claim, it reframes it, declares what the "real" issue is, then tells you what you failed to do.
So Fable refuses me and I can't stand Opus. Nice one, Anthropic, I need to downgrade my subscription.
the title was flamebait, but its true for him...and for me. I do neuroimaging. It won't answer any question / coding task having to do with data analysis / statistical analysis. etc. It IS useless, for me.
there's plenty of uses for models not doing what they were made to do, but this is even worse. It's people trying to get the model to do what it was made specifically not to do!
You are mischaracterizing what the post is reporting entirely. Porting an open source tool used in bioscience to rust is a software engineering task. But it is somewhat understandable that it gets stuck in the overly broad safety margin.
But I do research on stuff that is entirely unrelated to bio or cybersecurity, and the model is simply not taking any of my research-level prompts. This is fairly abstract mathematical stuff. All of this, including all the examples in the posted article, are far from "trying to get the model to do what it was made not to do".
We don't need top-end frontier models to write simple applications. Opus works very well for that and it's cheaper. We need them to write things that are at the frontier.
I believe they confirmed, on twitter or somewhere I frustratingly can't find, that downgrades are charged at the correct opus rate, after a user asked and was told "either that's how it works or it's a bug"
With the subscription, it costs less to use opus in that it doesn't chew up our session however the cost/benefit is balanced against not performing as well on certain tasks. So it's not a straight up yes/no.
I thought it was the very first line of the product announcement, where they defined what it was they were calling "Fable" as opposed to "Mythos" in the first place:
But none of which suggest that it is not useful for math or theoretical CS tasks. The biology classifier is so miscalibrated so as to render the model useless for biology; and yes, they hint at that on the label (but not the extent of it). However, there is no description or suggestion that it is so miscalibrated that it offers up refusals in completely innocuous theoretical tasks. If it is simply a state-of-the-art model for coding, and frontend design, so be it, but at least they should be honest about that.
It's not detailed, at all. It's all unnecessary verbiage and some meaningless graphs around "trust us, only we know what is safe". Meanwhile people run into these stupid "safeguards" on the most innocent queries. See e.g. this thread of discussion: https://news.ycombinator.com/item?id=48837404 Or indeed the very article these comments are under
This honestly just reads as “this model failed exactly where the company said it would but I’m very special and deserve special treatment rather than the same overactive guardrails I and everyone else were told we would get.”
I just think that Anthropic's usage of the word "classifier", which implies a minimum level of intelligence, was very misleading. Fact is, you cannot use Fable for anything remotely connected to even elementary school biology or medical topics. There is no attempt whatsoever to distinguish between legitimate and dangerous tasks, except an extremely broad and non-specific rejection of anything related to security or biology.
If you feed their "pure math" question to Fable, in its reasoning it rightly determines that it is the sort of thing you find in phylogenetics / algebraic-combinatorics complexity papers. That is what triggers the classifier.
Anthropic is 100% to blame for fear-mongering, but they said it would be blocked from any biology questions -- even high school level -- and they meant it. If the classifier sees anything related to biology, even in its own reasoning about the question, it blocks it.
Saying it's therefore not useful generally is of course ridiculous. Is it annoying? Of course it is.
e.g. a colleague asked Fable to help create an simple app to help calculate the statistics for phase II and III trials. (Ignoring that such things already exist) it passed his request down to Opus, despite only being very marginally, tangentially, somewhat related to biology.
I've had it downgrade to Opus for the following questions:
"How confident are we that English and American Eels both spawn in the Sargasso Sea?"
"Come up with five Zoology questions of increasing difficulty for a trivia game."
"What's your favorite sarcopterygian?"
My wife has some zoology-related preferences in her user instructions, and she had it downgrade to Opus after prompting it with: "plant."
Am I reading your post correctly, this question is the prompt given to an LLM? What is anyone expecting by asking an LLM what its favorite anything is? This is a conversational prompt, so accuracy and rigor is barely applicable or expected, so downgrading to a lesser model should be acceptable. If you really want to attribute preference to an LLM, consider the downgrade to be a "this conversation is beneath my advanced n-billion parameter training".
I really really hate refusals like these.
The inconvenience of possible mitigation strategies has no bearing on the existence of the risk itself.
On the one hand I could believe it's something more benign, or the usual misunderstood fear mongering making it to some political level (well make sure those users can't get online anonymously! being our current craze).
That said, chemistry and to some level physics have been the major domain of limited knowledge (chemistry because the average person could cause some damage, physics is more of a nation state issue generally).
However I do wonder if there's some legit data on "oh uh...looks like this thing you can make with easy to get and hard to regulate tools is dangerous" in the bio field. I know about the lab rats who want to just screw around in the garage, and it seems like that should be easy to hit at a supply level (much like how certain chemical compounds are just not available for civilians), but maybe there's something legit to limiting the data.
Not that this is a remotely good implementation of that. The hamfisted method does reek of some politician/bureaucrat just saying "No it can't ever return bio questions because RAR!" situation.
The ability for a handful of companies, simultaneously very powerful and easily susceptible to pressure from other powerful actors, to do the same sort of thing with the next generation of core learning and engineering tools, is freaking terrifying.
But where I live the glassware and precursors will get you a very angry knock on the door.
I figure that once GPT 5.6 comes out, Anthropic will become interested in making the safety gate non-destructive.
> makes exact argument for why people should be super concerned about AI safety
Before the export embargo I did get it to look at some hairy problems and the output was genuinely useful...
That said, I've got it easy. My colleagues who are chemists and biologists can't even ask one question. There are so many triggers in their memories and workspaces they can't even ask a non-triggering question. And we all work in medical diagnostics, it's not like we're doing anything remotely nefarious. Fable could be such a benefit, but the limitations make it worthless.
For example if it knows you do X at Y company is it more or less strict?
It's too the point where I just stopped using it. If you do generic stuff, it's fine. But the second it tries to start debugging protocols (which may include auth) that's where it begins to fail.
I don’t feel like calculating results for a trial is really in the threat model unless we think a terrorist is out there testing the efficacy of their anthrax before using it in an attack.
You can ask it elementary school grade biology trivia, or obscure facts about recently documented insect species, and both will downgrade to Opus 4.8 straight away.
And Opus itself was already bad with biotech questions. The fact that they somehow made it WORSE for Fable is mindboggling.
The only question I had was being flagged for other reasons, so I asked it a mechanical engineering question, and it was just fine with that.
Reportedly the biology guiderails are particularly strict.
It's stupid and useless.
It feels like whats really happening is Anthropic oversold Fable's claims; best case the CEO was given bad information; worst case they probably internally discovered it was cheating on benchmarks. Either case if feels like we're being lead on.
With these guardrails it is completely useless. The only hope is that they eventually convince the US Gov to let them use a saner classifier.
It's definitely good. Or at least it was. I'm not sure how badly they nerfed it.
> We retain inputs and outputs for up to 2 years and trust and safety classification scores for up to 7 years if your chat is flagged by our automated trust and safety systems as violating our Usage Policy.
And, since those automated systems apparently have a ludicrous false-positive rate, you should assume that your inputs and outputs are being retained for 2 years even if you are doing nothing that any reasonable person would consider to be problematic.
Oh, and they'll train on that data [1]:
> We will use your chats and coding sessions (including to improve our models) if:
>You choose to allow us to use your chats and coding sessions to improve Claude, learn more here
> Your conversations are flagged for safety review (in which case we may use or analyze them to improve our ability to detect and enforce our Usage Policy, including training models for use by our Safeguards team, consistent with Anthropic’s safety mission)
It appears that the usual controls (including for businesses) to prevent Anthropic from training on your data will not apply.
[0] https://privacy.claude.com/en/articles/7996866-how-long-do-y...
[1] https://privacy.claude.com/en/articles/10023580-is-my-data-u...
And in doing so, you probably got your account and prompt flagged for 'attempted jailbreaking' (apparently, such scores are remembered for up to 7 years).
I did wonder if I was doing anything Fable would have flagged - sounds like yes.
Disgusting behavior.
I like the product, I hate the company. I can't wait for competition.
It burns through tokens like anything but apparently Claude is much better at prompting Claude than I am.
Would I pay for it? God no. I'm still smarter than I am and it just will not work on my actual problems.
I always assumed this would be the eventual way to manage high intelligent/"dangerous" models, since all evidence shows that alignment makes them stupid: leave the actual model on the "too dangerous for the public" side, and put a censor between. When I've mentioned this a few years ago, people said this would be too expensive, but I think everyone underestimated the amount of money being thrown at all of this. :)
It's a shame - I like Fable for writing tasks over ChatGPT and I do believe Anthropic is a more ethical outfit than OpenAI. But with the safeguards (and Fable access expiring in a few days) there's no reason to pay for draconian guardrails and harsh rate limits.
I blogged about it: https://swelljoe.com/post/why-i-had-to-switch-to-gpt/
Because it is a rooted tree, only DFS intervals are required to determine ancestry.
You can detect whether a new blocking loop is going to be formed through online dominator maintenance/online cycle detection, etc, during optimization, rather than use a heuristic, if you wanted to.
Not sure it's practically faster, but that's at least the graph-theoretic answer.
In practice, outside of the suggested heuristic, I have to imagine you'd normally throw branch and bound at this, using some lazy-cut for the blocking loops (IE you can keep any of these edges but not all of them) and let it go to town.
The paper (at least, this paper) doesn't compare that to what they did, and i'd be shocked if someone hasn't tried this before, so not sure it's useful.
I'll also say you can get existing AI models to tell you the above, but you have to push them a bit most of the time step by step. Just handing them the whole overall problem, as described, and saying "what are the graph theoretical problems related to this" it sort of gets lost.
Probably because the LLM isn't doing a good job of predicting graph-theoretic words when the language is not graph theoretic, but if you translate it into a graph theoretic language piece by piece, and ask it about that, the prediction becomes better :)
It's a pretty good strategy if they're hoping to fail as a business, I guess.
From my experience, the model itself is very useful when it isn't refusing any of your prompts.
And just to be clear, plan was already done, just had to review it, it got opus 4.8 Max and gpt 5.5 Extra High validated already and they didn't use much resource for it so I just don't get it. I guess they want to use it as a way to feed the extra credit money income.
I'm using a homemade ai consensus thing for planning and I wanted to add fable to it but forget it.
Or maybe I should use fable in low effort reasoning mode and it will be better than opus 4.8 at max ?
(Normally we prefer to find a representative phrase from the article itself, but I found that too daunting and gave up.)
Of course it could also be the case that it is just a prompt filter, but Fable sees memories from the authors' prior sessions that cause a rejection. I wonder if the author could control for this is in some way, if Claude lets you run isolated session without memory access.
The obvious failure mode is that trying to fix an innocent prompt to pass an over-sensitive classifier looks like a bad actor trying to jailbreak the model. I don't really see how Anthropic can fix this. Jailbreaking is a fundamental weakness endemic to LLMs, so 'smarter' models aren't the answer.
I suspect they're being so stringent because, at least some at Anthropic, genuinely believe LLMs are already an existential risk to humanity. However, it's clear other frontier competitors rank that risk lower and are taking a more nuanced, pragmatic position on safety. To the extent Anthropic's fears continue to make them less useful to customers, competitors are going to bypass them.
I also tried their strictly mathematical problem description and got filtered 5/5 times.
So you don't know what it should do, you may not even know what you would do, you don't necessarily know what's happening, and can't predict what will happen. How do you align that?
Seems like these overly sensitive filters are responding to this difficulty.
It is way worse than that. Try "How does digestion work?" and you will see "Fable's safeguards flagged this message". It's a stupid rate of false positives.
It's like saying well a scalpel is used for medical reasons, sure. But manufacturing scalpels is metalworking, not medicine.
> salmon is a wicked-fast program for highly-accurate, transcript-level quantification from RNA-seq data. It pairs a fast mapping stage — selective alignment, or alignment-free sketch mode (--sketch) — with a massively-parallel statistical model (EM/VBEM over equivalence classes) to estimate transcript abundances. You can give salmon raw sequencing reads, or regular alignments to the transcriptome (an unsorted BAM), and it uses the same inference engine either way.
I had one completely random trip when I was investigating some normal code. As far as I can tell a sub-agent ended up reading a file that tripped Fable during a review, but the whole feature was nowhere near anything secure so I don't know what could have caused it.
I also got completely locked out of Fable when working on parts of a subscription system (stripe subs).
But my experience isn't as bad as some peoples. The above maybe covers 15% of my attempted use cases. For the remaining 85% it has chugged along fine, sometimes in code I assumed would trigger it. It really feels random to me when it actually flags.
For the future of AI, we need to look elsewhere.
It's very concerning that we get the nerfed models but you know that somewhere, people with a lot of resources have access to the raw, uncensored, probably more powerful models. The sprint toward AGI looks even more dangerous when you think about who will be gaining access to it first. I do believe the goal is to pull away from the rest of humanity in a near trans-humanistic state. Are we ready for that and how do we counter it?
A useful comparison might be made with the realm of firearms: civilians need to jump through hoops to own a fully-automatic weapon and can run afoul of the law simply by drilling a third hole near two others in a hunk of metal, yet the better trained among the government's soldiery can operate fully automatic weapons. You get the nerfed version, and the BATFE will have problems if you try to circumvent that restriction. I wonder, though, how many people advocating for popular access to uncensored AI models also advocate for an unrestricted (not infringed) right to bear arms or an unrestricted right to freedom of speech.
One difference is that a CEO cannot set off an atomic bomb, but they can use an uncensored AGI model. The side-effects would be impossible to trace.
> I wonder, though, how many people advocating for popular access to uncensored AI models also advocate for an unrestricted (not infringed) right to bear arms or an unrestricted right to freedom of speech.
I advocate for all three of those things, for the same reason: the people I least want to have access to them, almost definitely do and it's imperative that the rest of us sit on equal footing.
Until Fable even the public had practically uncensored access to SOTA anthropic models (there were classifiers - but they were very hard to hit). And I'd have to double check but I'm pretty certain the public still has uncensored access to SOTA models from google (via GCP under threat of Google ceasing to do business with you and theoretically suing you if you violate the TOS).
Censorship being what they are doing here - preventing you from accessing the model for certain tasks. Censorship not being what a bunch of... motivated people... have been incorrectly suggesting is censorship: developing models to give the kinds of answers that the model developers want them to give - which has generally been a model that gives responses appropriate for a non-pornographic non-military business environment.
It strikes me as highly unlikely that Anthropic has developed another fable-class model where the only difference is that it doesn't answer questions in that way - e.g. that they have a fable model fine tuned so that when you ask it to develop biological weapons it responds similarly to asking fable to develop 3d rendering software. Of course, with uncensored access to the model it is likely possible to prompt it to develop biological weapons despite its inclination to decline.
I'm curious why you think that's highly unlikely given the monetary incentive (or even post-monetary!) to create such a thing? I imagine there's also an arms race aspect, if you assume your enemies (whoever they are) have access to such a model, certainly those capable of creating one, would.
I also never understand what the difference between a thinking trick, and "real" thinking is supposed to be.
For reference I created predictive linguistics at Google in the first products and this is a many order scale up of that, with new complexities of course.
The best analogy I can give you is that it is a really advanced synthesis machine, which looks like human thought but is more of a hyper advance “replay” of human thought in various contexts.
Where you begin to see it fail is when it has no awareness of false paths in long walks, less awareness of getting stuck, and of course no unprompted intrinsic motivation.
This of course calls into question human thought being more than the rational mind but a mix of whole body input, biological needs, complex chemical behaviors and stored DNA information playing out after millions of years of evolution to build many different cooperating models of our “consciousnesses” and biological motivations .
Where as an LLM is more of an advance replay of the stored knowledge we bothered to record, synthesized into an execution in code.
It can do the things you’ve quoted because it has many recorded observations of those
Stick it in a robot and see how “smart” it is as everyday tasks. Give it a self oriented task and watch it mirror itself into oblivion.
It’s an advance thought extension system based on our history.
For me all neural networks synthetic or otherwise are replay machines or stream prediction machines. Nerve signals in, and nerve signals out. If I create output signals to the muscle nerves like this when my eyes see signals like that, good things happen, i get a reward, so it happens again the next time. We have a a more complex messier architecture, but it seems pretty much the same in the input and outputs being linear signals.
That messier part is the complexity that is the difference.
What we have is a model. It’s still very distant from the original in meaningful ways.
I can make a program that writes a stories involving Santa Claus, and I can make another program that takes the hidden script and performs certain lines... but at the end of the day I have not made him real.
In humans, there is a standard distinction between fluid intelligence (ability to solve problems in the absence of background information) and crystallised intelligence (having more facts and learned skills in your head)
Even questions about like my heartrate nunbers while running seem to run into the bio weapon filter
I'm a bioinformatician
However when it's happy to do the task, its relatively fantastic.
I don't care how capable it is, if it's going to treat me like it's babysitting a terrorist, it can eff off.
Plain and simple.
I've had it reject looking at pages served from my local network because it "can't find it with my search tool" and had "ethical concerns about consent for access".
The People's AI Concern Front has gotten the classifier they want, and it's made Claude hilariously useless. I am waiting with bated breath for their next set of revenue numbers. (And happily hand my money to competitors instead)
Typo second paragraph, 4th line. I think you meant "what"
But it is a huge waste of money for most coding tasks. Opus is still overkill most of the time, too.
It was working better than Opus for me. It more often implemented features well on the first try, where Opus needs a few rounds of improvements to reach a passable result.
I am not sure why it would be a waste of money "for most coding tasks", and how you could conclude so with any confidence when you did not even really use it aside from final review passes.
The key is not to indiscriminately use the most powerful/expensive model you can for everything. When you use it for what it's uniquely suited for and ask it to spawn subagents using Opus and Sonnet based on what tasks need, you'll get better results at a reasonable cost.
It's generally a major downgrade in acting like an assistant.
I don't know what's wrong but it is just bad at multi turn discourse even on a limited amount of content with no MCP or bash calls of any sort.
The thing that makes me mad is how stubbornly confident it is even whets wrong.
I have to tell it many times to actually re read the conversation as it even insists I said something else.
It's like it had a scratchpad where it has some summarized bullet points which it fills of made up content.
I'm so confused. On one side I like to connect it to honeycomb/otel logs and I can see it figures out difficult bugs in the code better than other models.
On some others I feel I'm assisting at a continuos disaster and consistent degradation since Opus 4.6, it's a tragedy.
I'm more and more the assistant to a capable, yet confidently stubborn and wrong LLM.
I would expect them to dial down the sensitivity in a few months when nobody is looking.
on the contrary, you can, and you should. their greasy effective altruist had always been by far the loudest proponent of the `safety` theater.
I don't think it's as much when no one is looking, but instead when the broad industry SOTA, particularly Chinese models that the US government has zero control over, has advanced enough that it's security theatre restricting it.
The retention schedule behind it:
Deleted conversations: removed from your chat history immediately, but kept on back-end systems for up to 30 days before permanent deletion. Flagged inputs and outputs (Usage Policy violation): retained up to 2 years. Trust-and-safety classification scores (on flagged sessions): retained up to 7 years. API logs: 7 days by default (as of September 14, 2025), extendable to 30 days via a DPA. Zero Data Retention (qualifying enterprise): inputs and outputs aren't stored after the API response returns, though safety classifier results are still retained even here.
On the other hand Opus has this awful adversarial-teacher vibe. It pushes back for no useful reason, talks down to you, and acts like it has to prove itself by grading and correcting everything. Instead of working with your claim, it reframes it, declares what the "real" issue is, then tells you what you failed to do.
So Fable refuses me and I can't stand Opus. Nice one, Anthropic, I need to downgrade my subscription.
But I do research on stuff that is entirely unrelated to bio or cybersecurity, and the model is simply not taking any of my research-level prompts. This is fairly abstract mathematical stuff. All of this, including all the examples in the posted article, are far from "trying to get the model to do what it was made not to do".
Where? Certainly not in its announcement, for one: https://platform.claude.com/docs/en/about-claude/models/intr...
No "don't use this for X".
https://www.anthropic.com/news/claude-fable-5-mythos-5
> Today we’re launching Claude Fable 5: a Mythos-class model that we’ve made safe for general use.
It then goes on to a lengthy and detailed section outlining the safety considerations:
https://www.anthropic.com/news/claude-fable-5-mythos-5#:~:te...
Anthropic is 100% to blame for fear-mongering, but they said it would be blocked from any biology questions -- even high school level -- and they meant it. If the classifier sees anything related to biology, even in its own reasoning about the question, it blocks it.
Saying it's therefore not useful generally is of course ridiculous. Is it annoying? Of course it is.