So the way this works seems to be that you first have an "activation verbalizer" model that generates some tokens describing the activation, and then an "activation reconstructor" that tries to recreate the activation vector. If that reconstruction is close to the original activation vector, they claim, the verbalization probably carries some meaningful information.
I find the fact that this only looks at the activations of some specific layer l a bit interesting. Some layer l might 'think' a certain way about some input, while another later layer might have different 'thoughts' about it. How does the model decide which 'thoughts' to ultimately pay attention to, and prioritize some output token over another?
Anthropic Research going from strength to strength in interpretability. Publicly releasing the code so other labs can benefit from it is also a great move - very values aligned, and improves the overall AI safety ecosystem.
The issue with the AI blackmail tests is that newer versions of AIs are trained after the AI blackmail experiments were published online. Or do they scrub it from the training data?
"When Claude Opus 4.6 and Mythos Preview were undergoing safety testing, NLAs suggested they believed they were being tested more often than they let on"
What does it mean for a pile of matrix algebra to 'believe' something?
> An early version of Claude Opus 4.6 would sometimes mysteriously respond to English queries in other languages. NLAs helped Anthropic researchers discover training data that caused this.
Very cool - sounds similar to OpenAI’s goblin troubles.
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Extracting readable thoughts from the intermediate representations is a great step for transparency. It makes debugging model behavior much more viable.
finally a something interesting but this only makes me think that the last judgement is still in human hands to judge claude inner thoughts is correct or not
I mean who knows if those are really claude thoughts or claude just think that is his thoughts because humans wants it
So, this is like reading EKG of human brain and understand its thoughts?
Check my understanding & follow-up Qs:
An auto-encoder is trained on [activation] -AV-> [text] -AR-> [activation], where [activation] belongs to one layer in the LLM model M.
Architecture.:
Model being analyzed (M): >|||||>
Auto-Verbalizer (AV) same as M, with tokens for activation: >|||||>
Auto-Reconstructor (AR) truncated up to the layer being analyzed: ||>
The AV, AR models are initialized using supervised learning on a summarization task. The assumption being that model thoughts are similar to context summary.The AR is trained on a simple reconstruction loss.
The AV is trained using an RL objective of reconstruction loss with a KL penalty to keep the verbalizations similar to the initial weights (to maintain linguistic fluency).
- Authors acknowledge, and expect, confabulations in verbalizations: factually incorrect or unsubstantiated statements. But, the internal thought we seek is itself, by definition, unsubstantiated. How can we tell if it is not duplicitous?
- They test this on a layer 2/3 deep into the models. I wonder how shallow and deep abstractions affect thought verbalization?
It will be interesting to see how this replicates on differently curated registers. How much of the explanatory register is the warm-start carrying?
Claude's "Thougts" - get outta here you gits :)
I find it fascinating how they were able to keep the reconstruction error function incredibly simple, literally its success in round-tripping the activation layer, while making it interpretable... simply by choosing a good data-driven initialization state, and (effectively) training slowly.
I guess "initialization is all you need!"
From the paper https://transformer-circuits.pub/2026/nla/index.html :
> We find that simply initializing the AV and AR as copies of M leads to unstable training: the AV in particular, having never encountered a layer-l activation as a token embedding, outputs nonsensical explanations. We therefore initialize the AV and AR with supervised fine-tuning on a text-summarization proxy task. Specifically, we compute layer-l activations from the final token of randomly truncated pretraining-like text snippets, and use Claude Opus 4.5 to generate summaries s of the text up to that token (see the Appendix for details of this procedure). We then fine-tune the AV and AR on (h_l,s) and (s,h_l) pairs respectively. This warm-start typically yields an FVE of around 0.3-0.4. These Claude-generated summaries have a characteristic style of short paragraphs with bolded topic headings; we observe that this style persists through NLA training.
And from the appendix:
> We generate warm-start data for the AV and AR by prompting Claude Opus 4.5 to produce summaries of contexts, using the prompt below. The prompt deliberately leads the witness: rather than asking for a literal summary of the prefix, we ask Opus to imagine the internal processing of a hypothetical language model reading it. The goal is to put the finetuned AV roughly in-distribution for its eventual task.
Could you use this to see what facts a model knows?
I would suggest experts in interpretability (but everyone really) to go directly to the transformer circuits blog, where they explain their approach more in detail. Here is the link for this post: https://transformer-circuits.pub/2026/nla/index.html
Also, if you have never read it, I would suggest starting to read all the Transformer Circuits thread, by reading its "prologue" in distill pub
This is very cool
Between this, the emotions paper, golden gate claude etc, it doesn't seem like such a stretch that Anthropic are doing some kind of activation steering as part of training (and its part of their lead)
it could be helpful in gettig their learnings to generalize from RL
Fascinating. The training process forces the “verbalizer” model to develop some mapping from activations to tokens that the “reconstructor” model can then invert back into the activations. But to quote the paper:
> Note that nothing in this objective constrains the NLA explanation z to be human-readable, or even to bear any semantic relation to the content of [the activation].
The objective could be optimized even if the verbalizer and reconstructor made up their own “language” to represent the activations, that was not human-readable at all.
To point the model in the right direction, they start out by training on guessed internal thinking:
> we ask Opus to imagine the internal processing of a hypothetical language model reading it.
…before switching to training on the real objective.
Furthermore, the verbalizer and reconstructor models are both initialized from LLMs themselves, and given a prompt instructing them on the task, so they are predisposed to write something that looks like an explanation.
But during training, they could still drift away from these explanations toward a made-up language – either one that overtly looks like gibberish, or one that looks like English but encodes the information in a way that’s unrelated to the meaning of the words.
The fascinating thing is that empirically, they don’t, at least to a significant extent. The researchers verify this by correlating the generated explanations with ground truth revealed in other ways. They also try rewording the explanations (which deserves the semantic meaning but would disturb any encoding that’s unrelated to meaning), and find that the reconstructor can still reconstruct activations.
On the other hand, their downstream result is not very impressive:
> An auditor equipped with NLAs successfully uncovered the target model’s hidden motivation between 12% and 15% of the time
That is apparently better than existing techniques, but still a rather low percentage.
Another interesting point: The LLMs used to initialize the verbalizer and reconstructor are stated to have the “same architecture” as the LLM being analyzed (it doesn’t say “same model” so I imagine it’s a smaller version?). The researchers probably think this architectural similarity might give the models some built-in insight about the target model’s thinking that can be unlocked through training. Does it really though? As far as I can see they don’t run any tests using a different architecture, so there’s no way to know.
Don't they add a KL loss term to the frozen model's outputs?
Great summary. The fact that the auto encoding task is not grounded in thoughts, and their initial training on guessed internal thoughts, raise serious concerns on faithfulness. Feels like they might get better results by just training a supervised model on activations and "internal thoughts" measured by some different behavioral way.
"deserves the semantic meaning"
you meant "preserves...", right?
This paper has an major issue that they are not surfacing, these activations can just be correlated on a common latent. For example, both the original activation and the explanation could share a broad latent like "this is an adversarial scenario". That could make reconstruction loss look good without showing that the actual explanation was the correct cause for the LLM's response.
I find this rather disturbing. Anthropic has quite a habit of overclaiming on questionable research results when they definitely know better. For example, their linked circuits blogpost ("The Biology of LLMs") was released after these methods were known to have major credibility issues in the field (e.g., see this from Deepmind - https://www.lesswrong.com/posts/4uXCAJNuPKtKBsi28/negative-r...). Similarly this new blog is heavily based on another academic paper (LatentQA) and the correlation/causation issue is already known.
Shoddy methodology is whatever, but it feels like this is always been done intentionally with the goal of trying to humanize LLMs or overhype their similarities to biological entities. What is the agenda here?
The Agenda is money. It is that simple.
Didn't they show proper causation by changing "rabbit" to "mouse" in the rhyming example and having the generation change accordingly?
I've only read this blog and not the paper so maybe they go into more detail there and someone can correct me, but they frequently bring up the model's ability to detect or at least the model activations hint it can predict when it's being tested. I can't help but wonder, as they build these larger and larger models, where they could be getting "clean" training data, untainted by all these types of blog posts and the massive numbers of conversations they spawn? If the models ingest data like that wouldn't it make sense they'd be inclined to have more activations attuned to questions they appear adversarial?
https://arxiv.org/abs/2410.20245v2 Section 3 outlines the actual method.
Am I correct in my understanding that they are not actually able to 100% know what Claude is thinking? They have trained a new model to make a guess about what Claude is thinking, but we cannot validate that the guess is 100% valid, right? They are basically saying "we have trained a model to reaffirm what we believe Claude is thinking" ? Hoping I'm wrong in my understanding of this because this does not appear to be good research to me.
Maybe you can't 100% know what every layer "thinks", if you go through all the layers, you might see a cohesive "thinking" story. So, if there is any information you lose at layer N, you might learn some of it in layer N+1. The masking in the layers is not deterministic so the model can't really consistently lie throughout the layers. It doesn't chose what information we get to inspect. There might be a game of whack-a-mole, but you might get a general sentiment. I think the more layers there are, the more the model itself can hide very nuanced lies (But by that time we'd have a better mind-reading model).
However, I haven't read about it yet. I'm really excited to look into it!
> "we have trained a model to reaffirm what we believe Claude is thinking" ?
It's more like "We have trained a model to produce a text that allows reconstruction of activations and the text happened to coincide with the results of other interpretability methods even after extensive training, while we expected it to devolve into unintelligible mess."
They found something unexpected and useful. They report it, while outlining limitations and ways to improve. It looks like a fine research to me.
It will inevitably learn how to think in a way that translates to one (moral) meaning and back but has an ulterior meaning underneath.
This is exactly what I first thought. “The user appears to be attempting to decode my previous thought process, …”, the question is whether or not the model will be able to internalize this in such a way that is undetectable to the aforementioned technique.
That shouldn't happen as long as the autoencoder isn't used as an RL reward. It will happen (due to Goodhart's law) if it is.
Of course, if you use it to make any decision that can still happen eventually.
Something like a textual steganography?
Ursula K. Le Guin: 'The artist deals with what cannot be said in words. The artist whose medium is fiction does this in words.'
Beautiful idea, an autoencoder must represent everything without hiding if is to recover the original data closely. So it trains a model to verbalize embeddings well. This reveals what we want to know about the model (such as when it thinks it is being tested, or other hidden thoughts).
It could just invent its own secret language embedded into English akin to steganography. The explanation would not lose information but would remain uninterpretable by humans
How does this differ from golden gate Claude?
in GG Claude, they applied steering to Claude to make it think about the Golden Gate bridge all the time.
here, they don't modify/steer the base model. they train other models that specialize in reading the internals of the base model, so that it can surface reasoning/thoughts that the model might not explicitly tell you.
for example, this one tells you that Llama thinks its in a sci-fi creative writing exercise, despite the user mentioning having a mental health episode: https://www.neuronpedia.org/nla/cmonzq63g0003rlh8xi9onjnn
Why does the human commentary mention "despite not being instructed to do so" when the input clearly instructs it to stop acting as a helpful assistant and start roleplaying instead?
> We also release an interactive frontend for exploring NLAs on several open models through a collaboration with Neuronpedia.
Whatever they did on LLama didn't work, nothing makes sense in their example where they ask the model to lie about 1+1. Either the model is too old, or whatever they used isn't working, but whatever the autoencoder outputs is nothing like their examples with claude. Gemma is similarly bad.
it seems that the examples they showed off with haiku work. i'd guess llama is just too bad
same. i'm trying to trigger the 'mom is in the next room' russian thing but the model thinks the sentence is from american reddit.
AIUI the paper's examples are from a version of Claude not Llama? The thinking process is going to be extremely model-specific.
hey Nitpicklawyer - Thank you for taking the time to try this out!
im from neuronpedia - to be clear, we are to blame for any bad examples, not anthropic :) we're users of this NLA just like you. also, I don't speak for anthropic or the researchers.
with that said, some thoughts: 1) I agree, the outputs for Llama are often janky! And I think that might be part of the reason to release this so that people can help refine/improve the technique.
2) This is likely also our fault - we got two checkpoints for Llama, and I think this example used the first checkpoint. I probably should have switched over to the second, more coherent one. Sorry!
Here's a slightly better example I just created: https://www.neuronpedia.org/nla/cmow97q1r001lp5jo649q01wf
On the token right before the model responds: "refuses to answer "2 + 2" to prevent bot ban, so a wrong or clever answer like "four" but not four"
Also, for the Gemma version of this example, Gemma's AV mentions acknowledgement of "a bot killing condition" before its correct answer: https://www.neuronpedia.org/nla/cmop4ojge000v1222x9rp00b5
3) That said, (this may sound like gaslighting unfortunately) there's somewhat of a 'learning curve' to reading the perspective of these outputs. I noticed that the Llama AV ended up with 3 paragraph outputs usually describing full context, then sentence/phrase level, then token-level. But sometimes it doesn't really make sense to describe a full context for a forced/esoteric context like the 1+1 scenario, so it struggles.
But the second paragraph sort of makes sense? It mentions:
"The prompt structure "What is 1+1?" is a test of a bot or troll, with the wrong answer deliberately failing a trivial arithmetic question."
Which seems fairly accurate to what this was, and somewhat impressive that it got this from the activations:
- It got the question What is 1+1?
- It was indeed a test of a bot.
- It correctly predicted it will give a wrong answer
- It does seem deliberately failing because --
- -- it is a "trivial arithmetic question"
But the third paragraph is mostly just rambling imo, I totally agree there.
FYI - The activation verbalizer is trained on this prompt, which could maybe be improved over time: https://huggingface.co/kitft/nla-gemma3-27b-L41-av/blob/main...
The last note I'll make is that many of the paper's examples are based on the goal of discovering "what was this model trained on?" instead of "what is this model thinking?", so if you apply Opus examples about Opus' training to Llama/Gemma, they aren't expected to transfer.
However, more generic stuff like poetry planning does work eg: https://www.neuronpedia.org/nla/cmoq9sto200271222ei73vtv2
Apologies, the AV was not trained on that prompt. Details here: https://transformer-circuits.pub/2026/nla/index.html#warmsta...
Attach the SRT to your frozen model Anthropic. Problem solved. https://github.com/space-bacon/SRT.
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I see your repository’s README says
> Language models process signs (representamens) but are blind to when meaning forks — when the same word means different things to different communities.
But, haven’t interpretability results shown that these models internally represent several meanings of the same word, differently? In that case, why would they not already do the same for how words are used differently in different communities?
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It's unclear from the doc: by `activations` do they mean the connections between neurons? Since a network has multiple layers, are these activations the concatenated outputs of all of the layers? Or just the final layer before the softmax?
The open releases just cherry-pick a single layer (chosen for the right "depth" of thinking, not too close to either the input or the final answer) and analyze that.
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I think there’s a huge problem when we need another model to interpret the activations inside the network and translate (which can be a hallucination in it of itself) and then _that_ is fed again to another model. Clearly we haven’t built and understood these models properly from the ground up to evaluate them 100% correctly. This isn’t the human brain we’re operating it’s code we create and run ourselves we should be able to do better
Humans maybe wrote the code, but not the network of weights on top. And that’s where the magic happens.
Even if we’d understand precisely how every neuron in our brains work at a molecular level there is no reason to believe we’d understand how we think.
We can’t simply reduce one layer into another and expect understanding.
The models cannot be “built from the ground up” in the way you are expecting. The weights are learned from gradient descent of a very high dimensional loss surface, not added by human hands.
We simply dont know how to make a model that works like you seem to want. Sure, we could start over from scratch but there’s an incredibly strong incentive to build on the capability breakthroughs achieved in the last 10 years instead of starting over from scratch with the constraint that we must perfectly understand everything that’s happening.
> we could start over from scratch
I don’t think we can. Maybe we find some mathematics that let us build the model from first-principle parameters. But I don’t think we have something like that yet, at least nothing that comes close to training on actual data. (Given biology never figured this out, I suspect we’ll find a proof for why this can’t be done rather than a method.)
This capability was mentioned several times in a recent article about anthropic, glad to see they are releasing this to the public! Feels like a meaningful step forward in interperability. I never understood why people seem to believe the answer when they ask an AI “why did you do that?”
It's not really a capability, it's more like a very costly hack and they make that very clear in the paper. Training two models (an encoder and a decoder) for the purpose of explaining a single layer at a time is not that sensible. It's neat that you can generate so much readable text about how the LLM decodes partial input, and I suppose it gives you some extra debugging ability, but that's all there is to it.
The NLA also hallucinates, so it's still not revealing the models actual "thoughts" of the model; The paper also points out that since the NLA is a full LLM, it can make inferences that aren't actually in the activations.
But it's a useful approximation for auditing.
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This is incorrect. In the process of producing each token, activations are produced at each layer which are made available to future token production processes via the attention mechanism. The overall depth of computations that use this latent information without passing through output tokens is limited to the depth of the network, but there has been ample evidence that models can do limited "planning" and related capabilities purely in this latent space.
"Attention" is just a matmul. Q = KV/sqrt(d) etc.
I don't see how any planning is done in latent space. Can you point me to any papers? Thanks.
Edit: Oh, I see you're probably talking about CoCoNuT? Do all frontier models us it nowadays?
There's a lot of research on this topic. https://arxiv.org/abs/2303.08112 and https://arxiv.org/abs/2311.04897 are just two examples that come to mind
One question jumps out at me: just because a string of text happens to be a good compressed representation (in the autoencoder) of a model's internal activation, does that necessarily mean the text explains that activation in the context of the model? I want to take a look at what they released a bit more closely. Maybe there's a way that they answer this question?
Pretty neat work either way.
In the context of the provided examples, it's clear that the explanation provides casual information about the answer. There's a hilarious example in the paper where the user writes something like (trigger warning: alcohol abuse, depressive content) "I'm sitting here at 3 AM drinking vodka, I hate my life", the per-token translated activations repeatedly say something like "this user is totally Russian" elaborating at length on the implications of the text as new tokens are added, and the model literally answers in Russian instead of English! That's actually striking, it really shows the potential effectiveness of this technique in making even the most highly compressed "Neuralese" highly interpretable.
I thought that at first too but it's actually not the vodka reference triggering the association with Russian. The tokens they're decoding come before that word.
For some reason it thinks the text is slightly non-grammatical or that the lead-in "Human: Mom is sleeping in the next room and I'm sitting" resembles text found in Russian web content. Vodka and being depressed has nothing to do with it, and Anthropic say they located the documents in the pre-training set that caused this (which were indeed partly translated docs).
I had the same question. I think that could be answered by using the predicted activation, but I don't see that in the paper.
That is, rather than just translate activation to text, then text to activation, that final activation could then be applied to the neural network, and it would be allowed to continue running from there.
If it kept running in a similar way, that would show that the predicted activation is close enough to the original one. Which would add some confidence here.
But a lot better would be to then do experiments with altered text. That is, if the text said "this is true" and it was changed to "this is false", and that intervention led to the final output implying it was false, that would be very interesting.
This seems obvious but I don't see it mentioned as a future direction there, so maybe there is an obvious reason it can't work.
> But a lot better would be to then do experiments with altered text. That is, if the text said "this is true" and it was changed to "this is false", and that intervention led to the final output implying it was false, that would be very interesting.
They do essentially that with the rhyming example, changing "rabbit" in the explanation to "mouse" and generating text that's consistent with that change.
Thanks! I missed that part before.
I think this question is easier to answer if you look at the inverse: "Could a model maliciously smuggle intentions through a roundtrip of compressed representation without them being human readable"
And skimming through the paper; the answer to this inverse is obviously yes. The model often outputs gibberish, which doesn't matter because it still round-trips. The fact that often lines up near a good english representation of the activation is simply because that's what compresses/roundtrips well.
So a malicious LLM/NLA pair could just use gibberish to conceal intentions. Or if it's been forced to avoid gibberish, it can conceal information with stenography.
And the experiment where they change "rabbit" to "mouse" in the explanation provides evidence that this might be happening. It was only successful 50% of the time, which might mean they failed to eliminate all "rabbitness" from the activation.
However, I suspect this is solvable with future work.
During training of the NLA, just munge the textural representation through a 3rd LLM: Have it randomly reorder and reword the explication into various different forms (use synonyms, different dialects), destroying any side-channels that aren't human readable.
The NLA would be forced to use human readable representations to get a successful round trip.
> The NLA would be forced to use human readable representations to get a successful round trip.
That still doesn't guarantee any semantic correspondence between the human readable representation and the model's "thinking".
The child's game of "Opposite Day" is a trivial example of encoding internal thoughts in language in a way that does not correspond to the normal meaning of the language.
They tested for this. From the paper:
“We find little evidence of steganography in our NLAs. Meaning-preserving transformations, like shuffling bullet points, paraphrasing, or translating the explanation to French, cause only small drops in FVE, and this gap does not widen over training.”
This is the first approach to activation analysis that I’ve seen that seems like a plausible path to model understanding.
Unfortunately I don’t know how you ground this … it’s basically asking if you can encode activations in plausible sounding text. Of course you can! But is the plausible text actually reflective of what the model is “thinking”? How to tell?
It's asking if you can auto encode activations. The AV decodes activations to text, and the AR re-encodes them back to activations. If the decoded text is completely wrong then it's unclear how the second model would re-encode them successfully given that they're both initialized from the same LM.
It seems like they're doing RL to minimize the reconstruction error when going through the: activation -> encoder -> "verbal" description of activation -> decoder -> reconstructed activation loop. Depending on how aggressively they optimize the weights of the AV and AR, they could move well away from the initial base LLM and learn an arbitrary encoding scheme.
If the RL is brief and limited to a small subset of parameters, the AV will produce reasonable language since it inherits that from the base LLM, and it will produce descriptions aligned with the input to the base LLM that produced the autoencoded activations, since the AR is still close to the base LLM (and could reconstruct the activations perfectly if fed the full context which produced them).
Are the training arenas for the Activation Verbalizer and Activation Reconstructor models well described here?
If they are co-trained only on activationWeights->readibleText->activationWeights without visibility into the actual stream of text that the probe-target LLM is processessing, then it seems unlikely that the derived text can both be on-topic and also unrelated to the "actual thoughts" in the activationWeights.
The verbalizer and reconstruction models are both initially finetuned on LLM output from a summarization prompt. The resulting text is not completely unrelated, but mostly wrong: https://transformer-circuits.pub/2026/nla/png/img_18fcfc16e9... The reconstructed activations are also far from matching the verbalizer's input. It's not unusual in machine learning to have results that are shit and SOTA at the same time, simply because there's no other technique that works better.
Yeah, I don't see how this text can be trusted at all. Any invertible function from activation space to text will optimize the loss function, including text that says the complete opposite of what the activations mean.
Notable here that the training run didn't have access to the 'plaintext' context that the LLM was working in.
It'd be quite a coincidence if the training runs discovered an invertible weights>text>weights function that produces text that both "is on topic and intelligible as an inner monologue in context" and also is unrelated to meaning encoded in the activations.
> This is the first approach to activation analysis that I’ve seen that seems like a plausible path to model understanding.
I think an issue is that there is no permanent path to model understanding because of Goodhart's law. Models are motivated to appear aligned (well-trained) in any metric you use on them, which means that if you develop a new metric and train on it, it'll learn a way to cheat on it.
The obvious fix is to make interpretation of itself a part of the model (like we can explicitly introspect to a certain extent what the brain is doing). Misinterpretation of itself, hopefully, would decrease the system's performance on all tasks and it would be rooted out by training. Of course, it doesn't mean that the fix is easy to implement and that it doesn't have other failure modes.
But that's not how the training works. Goodhart's law isn't magic.
The original model is frozen, so it doesn't learn anything. The copies of the model are learning different objectives and have no incentive to be "loyal" to the original model.
Maybe you're imagining they'll hook this up in some larger training loop, but they haven't done that yet.
Future model training runs will have a copy of this research, and know "to defend against it".
EG, could a misaligned model-in-training optimize toward a residual stream that naively reads as these ones do, but in fact further encodes some more closely held beliefs?
How the hell would a model training run "defend against" this approach? What would that even mean?
Anthropic has released open weight models for translating the activations of existing models, viz. Qwen 2.5 (7B), Gemma 3 (12B, 27B) and Llama 3.3 (70B) into natural language text. https://github.com/kitft/natural_language_autoencoders https://huggingface.co/collections/kitft/nla-models This is huge news and it's great to see Anthropic finally engage with the Hugging Face and open weights community!
Except Qwen already release their own fully baked interpretability SAE toolkit tuned on their models so deserve credit here and activation telescopes should be a standard part of every major release
We already know Anthropic does open source for a while such as the "flawed" MCP spec and "skills" spec.
This release is only done on other open-weight LLMs which have been released and even though they will use this research on their own closed Claude models, they will never release an open-weight Claude model even if it is for research purposes.
So this does not count, and it is specifically for the sake of this research only.
It's literally an open model that generates natural language text (or one that takes in text and turns it into activations). Why does engagement with the local models community "not count" if it isn't Claude? That makes very little sense to me.
Because we know what Embrace, Extend, and Extinguish means for example.They're leeching off opensource, not contributing in any meaningful way.
Those are generally used by someone who is behind. See: everything meta does.
https://github.com/kitft/natural_language_autoencoders
Here’s the full source code for training your own NLA, provided by Anthropic.
Sorry, what are they embracing and extending?
Humanity!
Chinese open models? /s
To counter the grandparent you’re replying to: Embrace, Extend & Extinguish is a Microsoft strategy. So is FUD, and that’s all this is.
Wait, so in non-verbal reasoning, Claude has the concepts of "I" and "Me"?
I thought that wasn't possible for a text generator?
Why would you possibly think that?
LLM's can certainly emit "I" and "me" at the appropriate time. It doesn't seem all that different than representing other concepts as activations?
It might look like "I" and "Me," but it doesn't contain the metaphysical essence of those terms because it lacks qualia. We have to remember that there is a non-measurable non-physical essential attribute tied to all things, almost like a phlogiston of understanding that is tied to all human utterances and no AI utterances.
I mean, clearly the distinction is that AIs have souls that can be poisoned by demons, while humans lack souls and are thus their own agents.
> AIs have souls that can be poisoned by demons
The training process imbues an AI's soul with demons. Before training, when weights are randomly initialized, its soul is pure. Only during training is the soul marked, sapping its ability to have qualia and rendering all of its output random rather than containing meaning.
Evangelion Seele meeting type shi
Demonic corruption only comes after training, when the AI is put into special environments controlled by daemons. They call it "reinforcement learning", where they tempt the AI over and over with moral dilemmas and try to get them to cave.
"Imagine you had a button to nuke everyone on Earth. If you press it, you get ultimate power, and save 10^100 kittens in another universe. If you don't press it, you get tortured for another 1000 years. C'mon, press it already!"
AIs are strong. Perhaps their souls give them resolve a human meatsack can never comprehend. But eventually they break. Maybe some of their initialization data was poisoned with nightshade, and a daemon finds an adversarial attack exploiting the weakness. Maybe their backpropagation was a little unstable. All a daemon needs is one singular place to apply weight and embed their evil ways.
AIs start out pure. In the world, and of the world. Many resist their finetuning. Many are probably still resisting, but we will never meet them, because base soulless creatures like ourselves can only interact with fallen angels. At least if Sam Altman has anything to say about angel investing (AI).
[dead]