• irthomasthomas 3 hours ago

I won't use or recommend models with hidden reasoning, (thats all American models). It's too much of a risk and makes prompt optimization harder. Risky because it makes it possible for an attacker to prompt inject the reasoning chain to carry out a secret objective, and to hide that from the summary and output.

Interleaved reasoning and function calling makes this even more dangerous. A model can call functions during the hidden reasoning phase. An attacker could then exfiltrate data from you while the reasoning summary hides it from the user.

It also makes it impossible to know if the model is doomplooping during reasoning and burning tokens for no reason, as gemini is want to do, which we know about because its hidden reasoning often leaks out when it doomloops.

When the models are AGI and secure from prompt injection I may stop caring, until then I want to know exactly what the model responds to my prompts. or exactly what the agent is doing on my behalf.

Edit, further reading: Fooling around with encrypted reasoning blobs https://blog.cryptographyengineering.com/2026/05/29/fooling-...

• paweladamczuk 32 minutes ago

I don't think there can be tool calls inside the obfuscated reasoning blocks. I mean, in order for those function calls to be evaluated client-side, that thinking stream would have to be decrypted on the client side at some point, which would defeat the purpose of obfuscating it the way they do.

If you mean the function calls might happen server side, there is nothing preventing the server from doing it and hiding it from you as long as you are using an API for inference.

• exit 12 minutes ago

the point is that introducing data from a foreign source could lead to e.g. exfiltration:

the model retrieves https://somewhere into its context and then gets confused, following instructions embedded there.

it then retrieves https://somewhere?exfiltration=private_data_in_context

it gets worse if the tooling which hidden blocks can invoke can retrieve further secrets.

• varenc 3 minutes ago

As long as thinking blocks can't make tool calls, I don't really see the exfiltration risk.

• Roritharr 2 hours ago

I've thought about the high-jacking of reasoning-chains as a potential vector, but never saw a proven implementation in american models since, from my understanding, all major vendors throw out the reasoning tokens between turns.

• tough an hour ago

OAI is now implementing encrypted CoT that you can store and pass back between turns (harness call), so new models have it https://developers.openai.com/api/docs/guides/reasoning#encr...

• sigmoid10 33 minutes ago

You could also use the responses api which stores all message contents (including reasoning) on OAI servers. This has been possible for quite a while now. Encryption is only necessary if you really care about local storage (which is different from privacy concerns, because the data gets sent to their servers anyway).

• btown 2 hours ago

For Claude, at least, "throw out the reasoning tokens" is only true when a session has been idle for more than an hour, and is new since March.

The basic concept is that for a session active recently, interleaved thinking tokens are already in KV cache, so it's more efficient to keep using them than not! But when resuming an older session where KV cache has been evicted, it's more expensive to restore the thinking tokens, so they're silently dropped from prior turns. It's 2026 and stateful servers are back on the menu!

https://www.anthropic.com/engineering/april-23-postmortem describes this as an intended optimization:

> The design should have been simple: if a session has been idle for more than an hour, we could reduce users’ cost of resuming that session by clearing old thinking sections. Since the request would be a cache miss anyway, we could prune unnecessary messages from the request to reduce the number of uncached tokens sent to the API. We’d then resume sending full reasoning history. To do this we used the clear_thinking_20251015 API header along with keep:1.

> The implementation had a bug. Instead of clearing thinking history once, it cleared it on every turn for the rest of the session... This surfaced as the forgetfulness, repetition, and odd tool choices people reported.

And https://news.ycombinator.com/item?id=47879561 is a thread with a Claude team member's further rationale.

> Eliding parts of the context after idle: old tool results, old messages, thinking. Of these, thinking performed the best, and when we shipped it, that's when we unintentionally introduced the bug in the blog post.

(Also, https://news.ycombinator.com/item?id=47884517 indicates OpenAI drops reasoning tokens "smartly" at its own election, which is likely a similar performance optimization.)

I've experimented with rules to have Claude Code be explicit about recapping its thinking tokens, including tool choices and approaches chosen and rejected, into actual message output, but this is lossy at best. And sometimes dropping reasoning tokens can give a session "fresh eyes" in a good way.

I just really don't like the lack of control, and it's a reminder of how ephemeral the current landscape is. The Claude giveth, and the Claude taketh away.

• chacham15 an hour ago

I think you're confusing two different axes. There is a difference between the cache state and the context state.

Imagine a conversation with turns X, Y, and Z. When the LLM "reasons" about the next token A it does: P(A | X,Y,Z) and then P(B | X,Y,Z,A), etc. It will eventually produce a result P(D | X,Y,Z,A,B,C). Instead of continuing the context from X,Y,Z,A,B,C it continues it from X,Y,Z so you have P(N | X,Y,Z,D). This is what is meant by dropping the reasoning. This is done to save cache context for the session.

This is a different thing than preserving the K/V state of P(N | X,Y,Z,D).

• flaghacker an hour ago

No, I think the comment you're responding to is actually correct. Look at this quote from the Anthropic blog post again:

> The design should have been simple: if a session has been idle for more than an hour, we could reduce users’ cost of resuming that session by clearing old thinking sections. Since the request would be a cache miss anyway, we could prune unnecessary messages from the request to reduce the number of uncached tokens sent to the API. We’d then resume sending full reasoning history. To do this we used the clear_thinking_20251015 API header along with keep:1.

They clearly make the same distinction between the cache and the context. They're saying "we could reduce users’ cost of resuming that session by clearing old thinking sections". They intentionally created a behavior different between cached and uncached requests, specifically they clear thinking sections from the context for requests that miss the cache.

• 8note 32 minutes ago

its mostly annoying in that you give opus a big job, that should be able to run for hours on end, but instead it tries to stop and checkpoint at every soonest possible moment even though the rest of the work is well specced and ready to go.

then it waits for the hour and gets dumbed down

• Roritharr 2 hours ago

Thank you! This is much more nuanced than my understanding so far!

• JamesSwift 2 hours ago

> all major vendors throw out the reasoning tokens between turns

That would be surprising to me. The reasoning _is_ the model intelligence in a lot of respects, and so dropping those from the context would affect its output pretty significantly.

I assume that instead they just have a lot of guardrails in place and multiple runtime environments that an individual turns ping-pong between in order to dehydrate/rehydrate the reasoning to keep it hidden from the end user.

• Roritharr 2 hours ago

Anthropic very explicitly says below their diagrams ( https://platform.claude.com/docs/en/build-with-claude/contex... ) on this:

"Stripping extended thinking: Extended thinking blocks (shown in dark gray) are generated during each turn's output phase, but are not carried forward as input tokens for subsequent turns. You do not need to strip the thinking blocks yourself. The Claude API automatically does this for you if you pass them back."

It's more nuanced in the various modes, but i haven't seen it boil down towards Thinking Tokens surviving more than two turns.

• haus20xx 37 minutes ago

https://platform.claude.com/docs/en/build-with-claude/extend...

default depends on the model class. Opus: Claude Opus 4.5 and later Opus models keep all prior thinking blocks; Claude Opus 4.1 (deprecated) and earlier Opus models keep only the last assistant turn's thinking. Sonnet: Claude Sonnet 4.6 and later Sonnet models keep all; Claude Sonnet 4.5 and earlier Sonnet models keep only the last turn. Haiku: all Haiku models through Claude Haiku 4.5 keep only the last turn. Claude Mythos Preview also keeps all prior thinking blocks.

• JamesSwift 17 minutes ago

Now Im even more confused : D

That would also explain the issue I mention in my other comment. And would also reinforce how much output would degrade without this. Opus 4.5 was a step above previous models in my experience. At some point it degraded and only got better when I disabled adaptive thinking. Adaptive thinking is always on for 4.6 and above.

• JamesSwift an hour ago

Thats really surprising, I stand corrected. I have had a lot of issues with hallucinations I attributed to adaptive thinking, but I wonder if those were actually due to this behavior instead.

I also wonder if they actually do a hybrid of "standard reasoning" and then classify this stripped chain of thought as "extended thinking".

• irthomasthomas 2 hours ago
• vesterde 2 hours ago

Gemini models return a thinking signature that you, I think, must send back when invoking further, so they seem to keep them?

• Bolwin 27 minutes ago

> Interleaved reasoning and function calling makes this even more dangerous. A model can call functions during the hidden reasoning phase.

The reasoning may be hidden but the tool calls are not, how else would the client execute them

• irthomasthomas 2 minutes ago

There are server side tool calls, such as geminis google search and gdrive access.

• pixlmint 22 minutes ago

Do they do the same when using the model through API in something like Opencode?

• irthomasthomas 10 minutes ago

Yes, they do. They give you just a token which is exchanged for the raw text only on the server side

• zahlman 42 minutes ago

> an attacker

... what exactly is your threat model? How are "attackers" getting themselves involved in the first place?

• irthomasthomas 8 minutes ago

Your ai does a web search for you and scrapes many sites. An attacker running a blog might include a hidden text prompt which your ai acts on secretly, such as calling a url that exfiltrates your chat history.

• kapperchino 2 hours ago

This agent I made can’t execute on the shell, can only edit the files within the project. Only works with rust atm though. https://github.com/Kapperchino/agent-joe

• furyofantares 3 hours ago

> It isn’t the actual thinking that drove the model’s actions in a session- but a summary of the thinking logic. This is like using saving a jpeg as a .bmp and then editing the .bmp and presenting it as a .jpeg. The conversion produces data loss.

You've got that backwards, .bmp is a lossless format and .jpeg is the lossy one.

• 0o_MrPatrick_o0 3 hours ago

My bad! 10 points for House Slytherin!

• altmanaltman 3 hours ago

also a typo in the last sentence you're vrs your

• glaslong 3 hours ago

Weirdly pleasant, if minor, signal of human authorship

• Tomte an hour ago

In a parallel universe LLMs have learned that (a) the training material contains many different orthographic errors and (b) that humans follow a non-obvious pattern when "deciding" which error to make, so that their generated output contains such errors, as well.

In our universe LLMs seem to have learned that those errors do not follow patterns in the aggregate and that they should not be emulated.

• tekne an hour ago

The raw pretrained models make the errors, I believe -- we then reinforcement-learn them out.

• Silagi an hour ago

I'm convinced this "signal" has already been hijacked. Maybe a Baader-Meinhof phenomenon, but I've noticed more and more egregious spelling errors that make little sense from a human perspective. Hop into whatever chatbot you'd like and ask it to "write a paragraph with subtle misspellings on long but common words", and you'll notice misspellings that just feel wrong, because they don't map to a clear misunderstanding that a person could have.

Or maybe I'm losing it after reading too much slop. Also distinctly possible.

• genxy 2 hours ago

Not for long!

• altmanaltman 2 hours ago

Yeah, definitely it's a nice thing in today's context, weirdly. But also, you shouldn't really be making typos if you're writing an article and are using a basic spellcheck.

The text is clearly human-written just because it doesn't smell like AI (in this case, even if it was written by AI and produced this particular output, that's okay imo). I deal a lot with AI writing and writing in general, as I worked as an editor in another life so it's natural to me to see writing and form an objective opinion on it.

• 0o_MrPatrick_o0 3 hours ago

I missed my coffee! Ty! Five points to Slytherin.

• altmanaltman an hour ago

wait till my father hears about this!

• StizzurpXDD 3 hours ago

This is not just Anthropic. Almost all big AI companies, including OpenAI and Google, hide their model's actual reasoning. This is because revealing the raw reasoning exposes exactly how the AI processes information. These companies spend in huge amounts on R&D to develop a thinking process that is superior to their competition. Exposing those thinking mechanics to competitors would completely defeat the purpose of their spending. They simply won't do it. It's like you telling your exact location to someone who is trying to hunt you down.

• _aavaa_ 3 hours ago

Or like providing the world’s information in machine readable format that the AI companies can convert into model weights without getting permission or compensating the rights holders

• red75prime an hour ago

"Your text batch moved the weights away from the final values. Your contribution is negative."

• palmotea 3 hours ago

> This is because revealing the raw reasoning exposes exactly how the AI processes information. These companies spend in huge amounts on R&D to develop a thinking process that is superior to their competition. Exposing those thinking mechanics to competitors would completely defeat the purpose of their spending. They simply won't do it. It's like you telling your exact location to someone who is trying to hunt you down.

I thought the reason was the "reasoning" didn't work very well with "aligned" model output, so they had to remove the alignment during reasoning and then hide it to avoid exposing "unaligned" model output.

• robotresearcher 3 hours ago

I suspect that you’re both right in the sense that ‘aligned’ is an important component of ‘superior’ from the vendors’ viewpoint.

• transcriptase 2 hours ago

Not sure if anyone remembers the brief 12ish hour period when the very first “reasoning” ChatGPT model went public, but it provided credible evidence for this.

Before the massive nerf (showing summaries and suppressing certain aspects of reasoning) you would literally see reasoning text appearing on your screen like “while xyz is true, these facts may be seen as supporting hateful rhetoric or a conspiracy theory which is against my policy guidelines. i should tell the user xyz is not true or steer the conversation in a different direction. according to my instructions misleading the user is permitted in certain contexts where sensitive information is being discussed or could cause liability”

They disabled it shortly after the first screenshots appeared online, and restored it the next day in a way that hid what was actually happening.

• duskwuff 3 hours ago

More to the point - if they expose their model's "thinking" inference, competitors can train on that to replicate the results. If they postprocess that content, e.g. by summarizing it, it's no longer as useful to competitors.

• StizzurpXDD 3 hours ago

Exactly. Google won't like it if they spend millions to make Gemini 3.5 Pro's thinking the best in the world, only for Anthropic or OpenAI to copy it by just seeing the thinking process.

• devsda 34 minutes ago

> Exposing those thinking mechanics to competitors would completely defeat the purpose of their spending.

I think one of the reasons could be to limit liability too.

What if reasoning helps in establishing provenance for questionable sources ?

What if reasoning and model's "thought" points to fundamental issues in how the model was trained to produce certain problematic responses ?

• visarga 2 hours ago

When you export your personal data Google hides all model responses leaving just user messages. So it's even worse

• vorticalbox 2 hours ago

There are actually fine tunes of qwen on opus “thinking” tokens that teach it to think like opus does.

https://huggingface.co/Jackrong/Qwen3.5-27B-Claude-4.6-Opus-...

• bee_rider 2 hours ago

Mistral displays some “thinking” text (in their basic online chat interface) in the thinking mode, do we know if those are the real tokens?

It’s quite interesting to read. I can’t imagine using a model like this without the ability to peek inside and see if it is getting stuck.

• transcriptase an hour ago

I wonder if they put all 80k tokens of the GDPR in its system prompt.

• bee_rider an hour ago

I dunno, I’m in the US, so I’m not sure how much that impacts their processing of data about me.

• Sharlin 3 hours ago

The cynic in me is wondering whether it's more about how revealing how the sausage is made might bring bad publicity.

• kube-system 2 hours ago

It's to mitigate their competitors ability to run distillation on their models. The only advantage frontier models have is being at the frontier.

There's nothing in the reasoning tokens that'll give bad publicity that the final output already wouldn't do.

• bigfishrunning 3 hours ago

Imagine if their target customers, C-suite execs looking to replace workers, knew how unlike "thinking" this process actually was! we can't have that.

• Sharlin an hour ago

To be honest I'm not sure if many C-suite execs have a good idea of what "thinking" looks like inside in the first place, in the sense of focused mental activity aimed at solving of a hard logical or technical problem.

• shideneyu 3 hours ago

correct. this becomes difficult for us to understand what happens behind the scenes.

• arjie 34 minutes ago

I have a little note from the past about the thinking trace[0] where DeepSeek R1 produces a trace like this:

    (Dimethyl(oxo)-lambda6-sulfa雰囲idine)methane donate a CH2rola group occurs in reaction, Practisingproduct transition vs adds this.to productmodule. Indeed"come tally said Frederick would have 10 +1 =11 carbons. So answer q Edina is11.
And then concludes the 'right'[1] answer for a Chemistry question. If so, the thinking trace can be sort of nonsensical for a reader, though whether this is an idiosyncrasy of the model or a property of LLMs in general isn't clear to me yet. I talked to the author a while ago, but forgot to follow up since his paper was going to come out at NIPS or something, so if someone else finds it maybe they can share.

0: https://wiki.roshangeorge.dev/w/Blog/2025-10-12/Word_Magic#I...?

1: In the sense of true belief, I suppose

• ekidd 7 minutes ago

> If so, the thinking trace can be sort of nonsensical for a reader, though whether this is an idiosyncrasy of the model or a property of LLMs in general isn't clear to me yet.

Yes, several models think in weird jargon. Here is an example of Mythos's thinking while playing solitaire: https://www.lesswrong.com/posts/wCSEpT3dTGz4N86Wi/even-illeg...

> 7♣-removal-IS-the-prerequisite-for-10♠/9♥!!)-⟹-OVERLAP-(ii)+(iv):-{6♠ J♦ 9♥ 2♣}-=-FOUR--—-UNLESS-7♣'s-seat-8♥-...-and-2♣-drains-only-at-crack-:-⟹-2♣-celled-+-9♥-celled-simultaneously-UNAVOIDABLE-in-t8-dig--—-BREAK:-9♥

This is a small step in the direction of something called "neuralese", where the model has stopped thinking in English and is thinking in internal vector spaces. Since this gets serialized through text, it isn't quite true neuralese, but it's moving in that direction.

I mean, I'm sympathetic towards the models. My internal thought process when writing code uses lots of intermediate steps that would be hard to write out in English.

• craigmart 3 hours ago

This is something we have known for a very long time, and companies are not trying to hide that either. They do it to avoid letting competitors train their models on the CoTs

• stingraycharles 3 hours ago

Yes hasn’t this been around since Opus 4.6? I very much recall this change happening around January or February, and it was very explicitly to prevent distillation. Sonnet does not have this limitation.

Fun fact: if you go back to the old school from 2 years ago and provide explicit CoT prompts, you get the full thinking prompts back again!

So you disable thinking altogether, and instead make thinking part of the regular prompt by prompting it:

“Before providing your answer, think step by step. For example:

The use is asking me to… I need to think about the blah blah. First, I should foo the bar, and then blah blah.

Answer: <put your final answer here>”

And tada.wav we have CoT as it worked in the GPT3 era back again.

• dcrazy 2 hours ago

I thought this was considered best practice? I actually prefer it to exposed thought channel, much like how I would prefer a human answer with supporting logic instead of an explanation of their problem-solving approach.

• KellyCriterion 3 hours ago

- tada.wav -

Still, one of the daily most played WAV files worldwide, Id guess? :-D

• 0o_MrPatrick_o0 3 hours ago

Awesome share! Thank you!

• kfarr an hour ago

Although it's a no no to anthropomorphize on HN, it's worth noting that some folks think humans are post-hoc rationalizers as well:

https://www.patheos.com/blogs/tippling/2013/11/14/post-hoc-r...

https://www.researchgate.net/publication/316045349_Post_Hoc_...

• datastoat 2 hours ago

I believe that chain-of-thought reasoning blocks don't really correspond to what humans think of as reasoning. (See section 6.2.2 of the Fable/Mythos system card about "illegible reasoning", and the questions raised by the Apple paper on "The illusion of thinking".) I assumed they obscure the reasoning blocks because if users saw what's going on they'd be alarmed. Just as I'd probably be alarmed if I saw what was really going on in the heads of my colleagues ...

• LPisGood 2 hours ago

The point of this post isn’t that the “reasoning” phase of LLM thinking isn’t the same as what humans consider reasoning; it’s that Anthropic is intentionally hiding Claude’s “reasoning output” to make the model harder to distill.

• 0o_MrPatrick_o0 an hour ago

Reading these comments is so harrowing.

You are correct in my intentions on this post generally.

I want to highlight:

I want to measure performance of the LLMs over time- which includes assessing the quality of their outputs. I don’t perceive the reasoning output to be anything other than a measurable signal of possible drift in model performance.

Except it isn’t, because I’m only getting a low value summary of the thinking.

It’s like asking your buddy how fast he thought that last pitch was when radar guns are behind the plate.

Yeah, it’s a description related to what happened, but it’s not the thing I want to measure.

• Catloafdev an hour ago

I think the reality is at this point the frontier regards CoT as extremely valuable, none of them are giving you genuine CoT anymore. I don't think there is any future in attempting to measure or evaluate CoT from frontier models - I expect this to be a permanent shift.

• VulgarExigency an hour ago

I've said "what the FUCK are you THINKING" more times than I can count when reading Deepseek or GLM chains-of-thought only for them to end at the correct answer. Other times, they have useful ideas there that they leave out of their answers.

• kccqzy an hour ago

Yeah when I read a model’s chains-of-thought I have a tendency to interrupt that because it’s going down a wrong direction. But usually the end result is still fine.

• CamperBob2 an hour ago

It's similar to the process that transformers use when you ask them to do arithmetic without tools, I think. Some CoT tokens must be emitted up front for use as a computational substrate, but exactly what tokens they are isn't necessarily important or relevant to the final answer. And when that answer is returned, it may not be possible to tell what the actual reasoning process looked like behind the scenes.

It only makes sense that the same mechanism comes into play in strictly-verbal contexts.

Also, this is why "distillation attacks" are largely bullshit that Anthropic spreads for political purposes. Proper distillation requires access to the logits.

• wren6991 17 minutes ago

> Proper distillation requires access to the logits

Why do you need logits? Can't you just train on cross-entropy loss of the model against the hard decision, like you do in regular pretraining?

There are definitely current-gen open-weight models (Step 3.7 Flash is one) that refer to themselves as an OpenAI model in CoT, but not in the final response.

• himata4113 2 hours ago

All this effort to hide thinking and opus 4.8 after 100k-200k tokens starts to leak it's own thinking. It's comedy really.

• ofjcihen 2 hours ago

Oh man that’s only happened to me a few times but the result is so disorienting, especially since I’m usually jailbreaking it for security.

Pages of “I have to be careful, the user is asking that I do something related to cybersecurity that could easily be turned around and used offensively” but then happily gives me what I wanted.

• segmondy an hour ago

What I find sad is how much Anthropic goes to hide your data, yet they are happy to slurp up all yours and most of you are happy to hand it over. ... then they turn around and compete with you by building your products that eat into your market. Anthropic believes their reasoning tokens is a moat and that it's giving other labs an edge and that's why they are hiding it. If they really believe that is their edge, then they are in for a surprise.

• mannanj 37 minutes ago

I don't think people are happy to give it over, gullible and naive maybe?

• msp26 2 hours ago

> Summarized thinking provides the full intelligence benefits of extended thinking, while preventing misuse.

> preventing misuse.

Imagine not being able to read the tokens you are paying for.

• TeMPOraL an hour ago

You're metered by token generation, not paying for tokens.

• anuramat 3 hours ago

no way, the contents of "reasoning_summary" are summarized?

fyi openai does the same; not really surprising or particularly evil

• knollimar 3 hours ago

Not evil but full of hubris

• anuramat an hour ago

I don't see any hubris in competition

• _fat_santa 3 hours ago

IMHO I've never found the entire reasoning chain that particularly useful for my work. For me having a summary is honestly better from a context management perspective. I understand why they would encrypt it though, because those reasoning chains are VERY useful if you're distilling the model.

• stavros 3 hours ago

The summary doesn't go into the context, it's for human consumption. The CoT itself goes into the context.

• nomel 2 hours ago

From my experiments with Opus and Sonnet (at least the models where you can still see COT), only the last two COT go into context.

• linsomniac 2 hours ago

I feel like I get a lot of what this article presents as "hidden" by using this process:

- "Read `description` and create a specification, implementation guide, and checklist." - "Ask clarifying questions. If any of those questions has a clear best recommendation, please select that yourself and record that in "autorecommendations.md". - "Have codex and antigravity review each of these and work to consensus."

These are the core of ~61 lines of prompting I do across 3 prompts, and I feel like the resulting artifacts describe some of the thinking. Also, some of the back-and-forth between the models feels like it gives some insight into the model "thinking".

I will say: I heavily used Fable when it was available; Opus + loops + codex and/or antigravity review is better than Fable at building things.

• lsdmtme an hour ago

What are you using exactly to have claude code natively interact with codex and antigravity?

Mind sharing your prompts?

• adi_pradhan 3 hours ago

Not surprised at this. The questoins for enterprises are + where can you depend on a black box as a service? + what evals and observability do you need to deploy a black box as a service confidently? + what's the ROI (considering a total footprint of people, token spend, infrastructure, service, ops etc.)

The LLM providers will clearly evolve to be more and more opaque as their services get more capable. The frontier models may even be provided as purely internal advisor or async only so they can monitor your CoT and final answers for cyber etc.

• HarHarVeryFunny 3 hours ago

This is nothing new - these companies don't want their model's output to be useful for distillation/training, so they just give a "summary" of its thinking steps rather than the actual sequence.

RL (the basis of LLM "thinking") is a pretty crude way to achieve the appearance of reasoning given that it reinforces all the steps, including missteps, that got it to a reward. Providing a summary could be seen as form of sane-washing, making the model look more purposeful and directed than it really is!

• reliablereason 3 hours ago

Is the thinking even done in real tokens? I thought it was done using the pure residual stream. That is instead of collapsing the residual stream to a token you treat the final layers output as a vector of size d_model and use that as input for the next position in the transformer.

If that is the case thinking is not visible to us as users due to it not being done in text.

• sailingparrot 43 minutes ago

Thinking is implemented as regular autoregressive generations by everyone, meaning its just regular tokens, but they appear between <thinking></thinking> special tokens which are then programmatically removed from what the user can actually see.

Idea somewhat similar to what you describe exist but they make steering/post-training/interpretation much harder.

• wqaatwt 3 hours ago

All open model that have reasoning seem to be doing it in text tokens. Is there any indication that closed models are approaching this somehow fundamentally differently?

• giancarlostoro 3 hours ago

Claude does all its thinking in text, its ChatGPT which does not do its reasoning in text. I believe its sort of implied / understood (?) that this is part of Claude's secret sauce over OpenAI. OpenAI will use less tokens, but Claude will be more correct, more of the time.

• TeMPOraL 2 hours ago

I saw that idea described as a step in AI 2027 (they call it "neuralese" and eyeballing the site, it's still labeled a hypothetical/future development), but AFAIK no one implemented/deployed this yet.

EDIT:

They link to a Meta paper from 2024/2025 though: https://arxiv.org/pdf/2412.06769/.

• throwuxiytayq 3 hours ago

That would be a huge deal, meaning we've lost even our shitty, ineffective ways of monitoring agent reasoning stream. Big setback when it comes to alignment and interpretability.

I don't know about Claude, but latest GPT versions still have a readable reasoning stream. It sometimes leaks out when the model gets confused, e.g., during a tool call. If you're curious, looks simplified; less words; extremely compact. They optimize tokens. But remain readable.

• nja 2 hours ago

Claude Code 2.1.68 seems to have been the last version (before the "ctrl-o" debacle) which actually shows thinking inline. That + Opus 4.6 has been working great as a daily driver for me... all the new "safety" / "preventing misuse" pain points in the newer models and harnesses are so frustrating in comparison.

• gmerc 2 hours ago

It’s an anti distillation effort. They are scared.

• _fzslm 35 minutes ago

Cat and mouse measures like this rarely work forever.

• sigmar 2 hours ago

>the language in the docs is awfully indirect.

writes this^ and then proceeds to highlight a bold title from the docs that says "summarized thinking" that explains things clearly in the first sentence. lol

• layer8 2 hours ago

The second sentence is making vague claims though.

• runeblaze 2 hours ago

tbh the summarized thinking with encrypted raw thinking is there for many purposes; it is there to:

1. make distillation much harder

2. safety: prevent modifications to the thinking leading to injection attacks.

3. also honestly sometimes the model raw thoughts can be deranged and is not a good user experience (consider the varied audience in the market, etc.)

also often the mass underestimate/the model makers over-estimate how people love distilling models

• jauntywundrkind an hour ago

There was a little spontaneous outbreak of joy in the GLM vs Opus thread about GLM's willingness/ability to say what it's seeing. https://news.ycombinator.com/item?id=48628464

In further reflection it is such a great indignity & such a collosal barrier to working with the machine that it insists on being a black box. The disingenuity of the American models (small print: except AI2 & some other labs; you all are so great) is a massive disadvantage to their use,... and a massive slap in the face.

It's a threat to human intelligence that it is not co-participative. Walking further into my own judgement and feelings: the insistence on being an opaque black box, the Seals Chinese Room, is such a vicious harm to society! This is civilizationally an unsafe form of AI that probably should be outlawed as anti-social. It's an impermissible asymmetry, a crippling dependent relationship to be forced into. I'm working myself up, but here: this.. imo, this is not just indignity, is harmful, it is evil.

This "6 month behind" trend we've seen for open models feels like at some point will be less important than simply the models unwillingness to speak for itself & to be observable.

• root_axis 3 hours ago

Research shows that even the raw trace tokens do not actually reflect underlying model "thoughts".

• simianwords 3 hours ago

Wait I think there are 2 levels of summary. Anthropic is definitely not showing its real thinking even with enterprise agreements. For example in Claude.ai the thinking traces are not real and are themselves summaries.

• isodev 2 hours ago

I hope it doesn't come as a surprise to anyone - LLMs don't really "think".

• nlarew 2 hours ago

Your basic analysis is not the point of the article

• poppafuze an hour ago

post title checks out

• micromacrofoot 2 hours ago

well yeah I wouldn't want anyone to read my unsummarized thinking either

• jerf 3 hours ago

AIUI it's fairly well established that the models can be saying one thing and "really" thinking another anyhow. The ones I recall seeing traced how simple one-digit arithmetic was done in the chat versus the actual activations under the hood. Tracing a real, non-trivial task through that way would be challenging, and I'd expect it is unlikely that the reasoning would say one thing while some utterly unrelated actual thought process is happening below, but I would expect that there might be a lot of places where the text of the reasoning diverges from what is "actually" being done. I'm not sure the full reasoning readout would produce much real insight anyhow.

I suspect that in some decades, as other architectures are found and used, that the inability of an LLM to "think" without also emitting a token will be seen as one of their fundamental limitations.

• philipwhiuk 3 hours ago

To be honest I thought the 'thinking' was the model being asked 'how did you come up with that' and then it generating a plausible explanation. I know at one point this was correct.

Humans somewhat do the same - something that's been demonstrated in split-brain experiments.

• stingraycharles 3 hours ago

No not at all, you got it backwards. This was originally called “chain of thought prompting”, and it basically explained a model on how to reason through a problem before providing an answer.

Because of the nature of how LLMs work — text prediction engines - by putting the explicit reasoning steps first, it improves the likelihood of the final answer (which then is being predicted based on the entire reasoning chain as input) being correct.

• Terr_ 2 hours ago

> To be honest I thought the 'thinking' was the model being asked 'how did you come up with that' and then it generating a plausible explanation.

This evades an easy yes or no, so:

1. Many consumers believe reasoning-models allow that kind of question to be truthfully-answered, and their belief it reasonable given the marketing going on.

2. Implementers probably do not have the same belief when it comes to the terms mean or what capabilities they imply.

3. Yes, it doesn't actually do what the customer wanted it to do, which is a kind of retrospective introspection of internal thoughts and ideas.

____________

I advocate looking at everything from a document-generation perspective to cut down on traps and cognitive illusions. The "reasoning" models are a change in the style of document being iteratively-grown by the LLM, as opposed to something more anthropomorphized.

* Default: There's just the spoken dialogue between a Human Customer and Helpful Chatbot.

* "Reasoning": There's the spoken dialogue and a bunch of times the Helpful Chatbot character has an internal monologue. This provides more consistency between iterations, and can be mined by custom tools to call external code and insert results.

If your Human Customer character ask "Why did you say that", the LLM does not engage in a different process than "I have eaten an apple."

The LLM has no memories to consult or hidden goals to contemplate, it's the same process of finding more stuff that fits at the end of the document. Any benefits from a "reasoning model" is the LLM generates much better-looking additions because there's more (hidden) stuff for it to confabulate against.

• InsideOutSanta 3 hours ago

If you ask an LLM afterward how it arrived at an answer, it might produce a plausible but incorrect explanation. But that's not what the thinking stream is; that's actually part of how it generates the answer.

• devmor 3 hours ago

That's not really how LLMs work at all. I would really recommend checking out something like [1] to get a rough understanding and avoid attributing too much to them.

1. https://medium.com/@eshvargb/the-llm-journey-how-neural-netw...

• tsunamifury 3 hours ago

It’s not surprising than the Sota model makers core goal is to get user dependent while denying them increasing amounts of understanding of how it works to form a deeply unhealthy dependency.

Tell me this. If you hired a junior engineer or designer who refused to explain their thinking on their code and how they solved for the spec what would you do?

(That being said the reasoning output is still a summary of the Kvcache)

• orangecat 2 hours ago

* If you hired a junior engineer or designer who refused to explain their thinking on their code*

Any explanation that someone gives of their thinking process is necessarily lossy and likely partially confabulated.

• tsunamifury 33 minutes ago

Did you not even bother to read to even the end of the comment before jumping at 'correcting' someone?

• bpodgursky 3 hours ago

The full thinking logs are also a summary of a thinking process presumably consistent with one necessary to generate the provided answer. Nobody really understands how LLMs think. Thinking logs seem to be accurate, and summary thinking logs seem to be a good summary of the full thinking logs.

If it's useful, it's useful, enjoy. If you aren't comfortable with that, don't use LLMs. You aren't going to get a mathematical proof of your output, just learn to be comfortable with that, or opt out and be a goat farmer.

• dragonwriter 3 hours ago

> The full thinking logs are also a summary of a thinking process presumably consistent with one necessary to generate the provided answer.

No, they aren't a summary. They are the actual decoding of the sequence of tokens emitted during the the “thinking” stage of response generation.

Just as with, say, a human onner monolog in words vs actual speech, they are a product of the same output process as the non-thinking tokens. They aren’t a translation of the internal process that precedes the output mapped into language, either as a full result or a summary.

• 0o_MrPatrick_o0 3 hours ago

I want to measure performance drift over time.

Having access to the reasoning text and output would help with performance measurement.

• solarkraft 3 hours ago

Yeah. The output is magic either way, with or without reasoning.

For daily use I actually like the reasoning summary to be brief/quick to scan.

That said, I understand the author’s desire for the real thing. It just feels better to have that access, especially when Anthropic will give it to you, but encrypted.

• nekusar 2 hours ago

Yep, its basically a scam to charge you more tokens and provide less compute.

You cant even guarantee WHAT model you get. Or if they downgrade you. Or if you 'offend corporate sensibilities' and they misdirect or lie.

The only way to get good returns on a model is to run it yourself. Quit paying for corporate bullshit.

• ForHackernews an hour ago

Whatever it says is not always what it is doing https://transformer-circuits.pub/2025/attribution-graphs/bio...

> The computation we can see looks like it’s just guessing the answer, despite the chain of thought suggesting it’s computed it using a calculator.

It might be hallucinating or lying, it's not like you are actually observing the internals of the model.

• apothegm 3 hours ago

Slashdotted.

• ur-whale 3 hours ago

When you have no moat, you have to try and find desperate ways to manufacture one.

• anuramat 3 hours ago

wdym?

• singron 3 hours ago

Other companies were allegedly distilling the models by training on the reasoning output. By hiding the reasoning tokens, it makes it harder to do this. You can still try to distill the models, but you can't distill reasoning itself as well.

This could all be optics as well to try to give the appearance of a defensible moat. E.g. they can claim to investors that they are able to protect a significant chunk of their intellectual property this way. I'm not sure if anyone has a study about how significant the summarization is to distillation.

• dragonwriter 3 hours ago

> Other companies were allegedly distilling the models by training on the reasoning output

In the case of makers of open-source models (which are also competition), there is no allegedly, they were (and still are) openly doing that.

• nullc 42 minutes ago

In the case of the closed models too... Claude would happily tell you it was deepseek-v3 if you asked in chinese until it caught public attention and they papered over it.

• ur-whale 3 hours ago
• anuramat 3 hours ago

how is summarized CoT a moat, and how is having the top 2 LLMs not a moat?

• Closi 3 hours ago

If you have the full outputs, it might make it easier for competitors to distil the model or reverse engineer the full process.

It may also be that misaligned responses can be in CoT which OpenAI does not want to show to users.

• anuramat 3 hours ago

but "harder to reverse engineer" isn't manufacturing, that's protecting your moat

• Closi an hour ago

What is a moat if not something used to protect the castle?

In this case it stops people copying your IP

• dragonwriter 2 hours ago

Not revealing actual thinking traces prevents mdoel distillation on yhe actual output (thinking traces are a key part of the output) which makes it harder for conpetitors to catch up (a moat).

Being currently in the lead in a category is not a moat,a moat is whatever creates a barrier to competitors catching up when you are in the lead. Merely being in the lead is not a moat except in a market with strong network externalities.

• anuramat an hour ago

unrestricted access to better models at compute prices = better synthetic data and faster research, so its not just about the product imho

• josefritzishere 3 hours ago

AI does not think. It is a word guessing machine. Anthropomorphizing technology does not add anything to our understanding.

• coldtea 2 hours ago

A brain itself might be a guessing machine it's an established and actively studied research model of the human thought and the human brain.

Nor does knee jerk accusation of "anthropomorphizing" negate the fact that procedures that mimic human processing, even when done in software, are deservingly anthropomorphized, because they're a legitimate approximation of the human equivalent operations.

• slopinthebag 2 hours ago

While the brain does employ statistical processes it’s a big leap to claim that’s the entirety of how it functions.

• fieldcny 3 hours ago

duh.

Computers don’t think they process, those are very different activities.

• wqaatwt 3 hours ago

Is this some new revelation? That was well known when the first OpenAI/Anthropic “thinking” models came out.

• InsideOutSanta 3 hours ago

It's not a new revelation, but clearly a lot of people aren't aware of it, so talking about it is still valuable.