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The Claude Code Source Leak

2026-04-01 01:16:13

(mods: I assume this is blowing up twitter and so discussing it here won't do additional damage -- and there are already a thousand github forks -- but I am not actually on twitter, which is why I’m opening discussion here. It's possible I'm missing something. Feel free to nuke this if so.)

For those that hadn't heard yet, last night Anthropic appears to have accidentally published a Claude Code update with extractable source code in it. This seems important, but I'm not sure how much so, and I didn't see an existing discussion here.

My understanding -- and hopefully someone will correct me if I'm wrong -- is that the actually dangerous part of Claude is the weights, and those were not leaked. So the leak may be embarrassing, it may cost Anthropic some competitive advantage, but it's not dangerous.

It's also my understanding that Anthropic has historically been relatively leak-free, until a certain memo leaked a few weeks ago during the DoW incident. Supposedly twice is still coincidence, not enemy action, but it does feel like a questionable coincidence and I wonder if the same person is responsible for both leaks. I don’t know enough about npm packaging to guess how easy it would be to do by mistake. Alternate hypotheses: Human error updating the build tools? AI-written build scripts that somebody was a little too lax reviewing? That last seems more than plausible, come to think of it.

The most questionable thing in the actual codebase I've heard mentioned is a stubbed-out feature for "undercover mode" to suppress its self-identification in commit messages (but all that says is that they considered it at some point, maybe as a competitive concession to Codex doing the same thing by default? Unclear). There's been a few other things too. I haven't dug into the code myself yet so I don't know how seriously to take any of them.

I came here to see if there was any discussion of the situation, didn't see one, was disappointed, and decided to fix that. Soliciting information from anyone who knows more than me.



Discuss

Product Alignment is not Superintelligence Alignment (and we need the latter to survive)

2026-04-01 00:53:33

tl;dr: progress on making Claude friendly[1] is not the same as progress on making it safe to build godlike superintelligence. solving the former does not imply we get a good future.[2] please track the difference.

The term 'Alignment' was coined[3] to point to the technical problem of understanding how to build minds such that if they were to become strongly and generally superhuman, things would go well.

It has been increasingly adopted by frontier AI labs and much of the rest of the AI safety community to mean a much easier challenge, something like "having AIs that are empirically doing approximately what you ask them to do".[4]

If it's possible to use an intent-aligned product to build a research system which discovers a new paradigm and breaks your guardrails, then it is not Aligned in the original sense.

If you can use your intent aligned system to write code which jailbreaks other LLMs and enables them to do dangerous ML research, it is also not Aligned in the original sense.

Conflating progress on product alignment with progress on superintelligence alignment seems to be lulling much of the AI safety community into a false sense of security.

Why is Superintelligence Alignment less prominent?

Because product alignment is:

  • Much closer to the scaling labs core expertise (ML) than theory (technical philosophy and math), so easier for them to hire for and evaluate
  • Has easier-to-use feedback loops: run an experiment, observe the results. Superintelligence alignment requires building enough theoretical understanding before running some kinds of experiment, because you might not be alive to see some results if your theory is wrong.
  • More profitable; progress on product alignment makes AI more useful right away[5]
  • Easier for funders to fund; it's harder to evaluate who will make progress or what even counts as progress on superintelligence alignment theory than a domain where you'll reliably get publishable results from running an experiment

This is inconvenient!

It would be awesome if we could ride easy-to-evaluate profitable empirical feedback loops all the way to a great future. But this seems far from certain.[6]

Why do we need Superintelligence Alignment to survive?

Reality is allowed to be inconvenient. There's strong reason to expect that superhuman situationally aware agents inside your experiment breaks some of the foundations the scientific process relies upon, such as:

  • You can run roughly any experiment as often as you want to gather data and the world won't end because the theory you were testing was wrong and you ran a too-strong agent
  • You won't have an intelligent adversary inside your experiment which is aware of you and faking data
  • Your experiment won't produce data which is super-humanly optimized to persuade you

In short: Your experimental subject is not a neutral substrate, but a strategic actor more capable than you.

If we don't have guarantees of maintaining safety properties each time a model builds the next rung on the capability ladder, we're rolling a dice for irreversible guardrail decay.[7] And we're going to be very rapidly rolling huge numbers of those dice and the feedback loop spins up.

As we're headed up the exponential, we're going to need techniques which generalize to strongly superhuman agents – ones which correctly believe they could defeat all of humanity. Product-aligned AIs might help with that work, but the type of research they would need to automate needs to look more like technical philosophy and reliably avoiding slop, not just avoiding scheming and passing product-alignment benchmarks.[8]

Only a tiny fraction of the field of AI safety is focused on these big picture bottlenecks,[9] due to a mix of funding incentives and it being more rewarding for most people to do empirical science.[10]


When you see people enthusiastically talking about how much progress we have on 'Alignment', please track (and ask!) whether they're talking about aligning products or aligning superintelligence.

  1. ^

    If you're friends with Claude, please read and consider this post first: Protecting humanity and Claude from rationalization and unaligned AI

  2. ^

    This is not to say product alignment can't help or there is no path to victory which goes through product alignment, just that you need to solve a different problem (superintelligence alignment) at some stage of your plan.

  3. ^

    I think by Stuart Russell in ~2014.

  4. ^

    Sometimes with self-awareness of this history, like Paul's Intent Alignment, but that's increasingly rare.

  5. ^

    Getting Product-Aligned AI is a convergent subgoal of many possible goals, and ultimate ends may be easily hidable behind convergent subgoals

  6. ^

    And even if possible in theory, practice by the current players under race conditions looks far from the level of competence needed to actually pull it off.

  7. ^

    Capabilities generalize in a way alignment doesn't because reality gives you feedback directly on your capability (you can or can't do a task), whereas there needs to be a specific system gives feedback on alignment and if that's a proxy for what you want you get eaten at higher power levels.

  8. ^

    If this doesn't ring true to you, please click through to the linked posts.

  9. ^

    And even for those people focusing on theory, there's a lot more focus on basic science of ML than trying to backchain the conceptual engineering needed to survive superintelligence. I'd estimate somewhere in the mid tens of people globally are focusing on what looks like the main cruxes.

  10. ^

    Response to Jan Leike, evhub, Boaz, etc. Thanks for feedback and copyediting to @Luc Brinkman, @Mateusz Bagiński, @Claude+



Discuss

Monday AI Radar #19

2026-04-01 00:03:34

We are in a strange situation: the big labs take AI risk more seriously than the government, and are doing a better job of preparing for it. There has been surprising progress on alignment over the last few years, and some strong work figuring out how to shape model behavior. But society—and the government—aren’t remotely ready for what is coming. LLMs are making alarming progress toward automated discovery and exploitation of critical security vulnerabilities, but there’s no evidence of government leadership in formulating a response, and no sign that the rest of the world is paying attention.

Top pick

Boaz Barak on the state of AI safety

Boaz Barak shares four graph sketches that summarize the state of AI safety in early 2026. I largely agree with all four points:

  1. Capabilities continue to increase at breakneck speed.
  2. Alignment is going surprisingly well, but isn’t progressing as fast as we need relative to capabilities progress.
  3. We continue to see very little evidence of scheming. This may change as capabilities increase.
  4. “The worst news is that society is not ready for AI, and is not showing signs of getting ready.”

Agents!

Claude Code auto mode

The Claude Code team continues to ship new features at a brisk pace. I’m particularly excited about their latest feature: auto mode uses Sonnet to identify risky operations, requesting explicit user permission for only a small set of operations that are most likely to be dangerous.

This isn’t magic: it’ll still ask for some permissions, and it will sometimes fail to ask for permission when it should. But it sounds like they’ve done a very impressive job of maintaining user oversight without a barrage of mostly useless requests. There’s a very delicate balance here: if you request permission for too many innocuous actions, your users learn to mechanically approve every request without carefully considering it, which means you might as well not ask at all.

There’s some very cool engineering behind this—I highly recommend checking it out.

Cybersecurity

I now feel strongly that cybersecurity is the biggest short-term AI risk. This isn’t an extinction-level risk, but major disruptions to multiple critical systems are a real possibility sometime this year.

Black-hat LLMs

Anthropic’s Nicholas Carlini is alarmed:

Basic lesson I hope you take away from this talk is relatively simple: today it is true that language models can autonomously, and without fancy scaffolding, find and exploit 0 day vulnerabilities in very important pieces of software. This is not something that was true even, let’s say three or four months ago.

[…] they’re getting really really good really fast, and this means that the nice balance we had between attackers and defenders over the last twenty years or so seems like it’s probably coming to an end.

Autonomous jailbreak development

We talk a lot about agents getting good enough to meaningfully assist with AI research. Those same capabilities can be pointed at all sorts of problems: “Claudini” uses a pipeline similar to Karpathy’s autoresearch to develop new (and highly effective) jailbreak and prompt injection attacks.

First programmers, now Pliny the Elder—is nobody’s job safe?

Claude Mythos

A misconfigured Anthropic CMS (yes, there’s some irony here) leaked details about an upcoming new model:

Although Mythos is currently far ahead of any other AI model in cyber capabilities, it presages an upcoming wave of models that can exploit vulnerabilities in ways that far outpace the efforts of defenders.

That’s why our release plan for Mythos focuses on cyber defenders: we’re releasing it in early access to organizations, giving them a headstart in improving the robustness of their codebases against the impending wave of AI-driven exploits.

I’m already pretty hardcore about cybersecurity but I’ve become even more paranoid in recent months. Security is always a tradeoff between convenience and protection, but the right tradeoff shifts as the threat level rises.

Capabilities and trajectories

Progress on FrontierMath: Open Problems

That didn’t take long: the first problem from FrontierMath: Open Problems has fallen. The problem is a conjecture from a published paper that the authors had failed several times to solve—this is a significant accomplishment.

He He: What research looks like with agents

He He gives a first-hand account of using Codex for ML research:

This is not a toy problem; it is not some grand challenge either. But it represents typical empirical ML research. It is the kind of problem you might give to a junior PhD student. My takeaway is that this kind of problem can be automated to a large extent today.

Over the last few months we’ve seen a clear pattern across coding, math, and cybersecurity: AI can’t replace professionals, but it can automate significant amounts of routine research.

ARC-AGI-3

ARC-AGI-3 is the latest iteration of one of the most interesting AI benchmarks. Rather than targeting useful real-world tasks, the team deliberately focuses on what they see as the most important deficits in frontier AI:

The benchmarks target the residual gap between what's hard for AI and what's easy for humans. It's meant to be a tool to measure AGI progress and to drive researchers towards the most important open problems on the way to AGI.

The mini games are playable by humans and I recommend choosing one and playing a few levels. They’re fun to play and require a different kind of intelligence than traditional benchmarks.

Ryan Greenblatt on crystalized vs fluid intelligence

Ryan Greenblatt has a helpful analogy for thinking about AI capabilities: current LLMs have immense crystallized intelligence but very limited fluid intelligence. The models are currently great at accomplishing a growing set of tasks, but very limited in their ability to learn genuinely new skills.

(Note the parallels to ARC-AGI-3’s focus on figuring out the goals and rules of each game).

Alignment and interpretability

OpenAI’s approach to the Model Spec

OpenAI explains how they approach the Model Spec: what it’s for, how they build it, and why it’s structured the way it is. It’s a strong document that engages directly with the considerable complexity of trying to shape model behavior. A few things stand out to me:

The very first sentence states that AI should be "fair, safe, and freely available”. Reasonable, but it feels defensive—perhaps a response to criticism about ChatGPT showing ads?

They emphasize that it’s a working document that is in some places aspirational, and it will sometimes get ahead of the capabilities of their publicly released models. Yes, exactly.

Their use of decision rubrics and concrete examples as tools for clarifying ambiguity makes a lot of sense, both as a training technique and as a way of illustrating to civilians the types of tradeoffs involved in steering model behavior. Many questions about model behavior are easy in a vacuum, but much harder in the context of tradeoffs against other desirable behaviors. Both OpenAI and Anthropic are being smart about publicly discussing those tradeoffs.

Using AI

Why LLMs Are Bad Writers But Good Editors

Jasmine Sun advocates for using LLMs as an editor (but not a writer) on Substack (partial paywall) and The Atlantic (paywall).

I strongly endorse this: I’ve seen nothing that makes me want to let an AI write for me, but I find Claude Code to be a great editor. The key, in my experience, is to have a very clear idea of what you want. “How can I make this essay better?” is a silly question that will get you mediocre feedback. But if you can articulate in detail what kind of writer you want to be and what is best and worst about your current writing, AI is quite good at helping you realize that vision.

Is it as useful as a professional human editor? No, and yes. A good human will give you better feedback, but an AI can give you instant feedback, any time you want it, over and over again.

Are we dead yet?

Why Dean Ball isn’t a doomer

Dean Ball takes a strong stand against the argument that ASI would doom humanity:

The implicit, and sometimes even explicit, argument of “the doomers” is that intelligence is the sole bottleneck on capability (because any other bottlenecks can be resolved with more intelligence), and that everything else follows instantly once that bottleneck is removed. I believe this is just flatly untrue, and thus I doubt many “AI doom” scenarios. Intelligence is neither omniscience nor omnipotence.

What all of this means is that I am doubtful about the ability of an AI system—no matter how smart—to eradicate or enslave humanity in the ways imagined by the doomers.

It’s worth reading, but this is one of the rare times when I strongly disagree with Dean. A misaligned superintelligence wouldn’t be able to eradicate humanity instantly, but it’s only a matter of time before it would find a way.

As it happens, Alon Torres also disagrees with him:

I agree with these points in principle - superintelligence is not omniscience. But I believe Dean uses these valid observations to reach a conclusion that dramatically underestimates how capable ASI might be in practice.

Both pieces are worth reading, especially as two thoughtful sides of a very important debate.

Jobs and the economy

Plentiful, high-paying jobs in the age of AI

The idea of comparative advantage comes up regularly in discussions about AI’s impact on jobs. It’s often cited as one mechanism by which humans might still have high-paying jobs even if AI can do everything better than us. It’s a very elegant concept, but extremely counter-intuitive until you get your head around it. Noah Smith does a great job of explaining how it works and how it applies to AI-related job loss.

It’s an important concept to understand, but I’m deeply skeptical that it’ll play a meaningful role in employment. It might be relevant if AI capabilities max out at near-human levels, but in a world of truly superhuman AI, the resources you need to live can be more efficiently allocated to an AI.

Strategy and politics

Government and the private sector

Dean Ball points out a rather inconvenient fact about the politics of AI safety:

The roles are totally reversed from the logic that Pause AI and frankly other AI safety advocates confidently assumed for years. It is industry that is in favor of alignment and at least somewhat measured deployment risks, and government whose actions seem much closer to reckless.

Obviously it is still the case that certain coordination problems can only be solved by government. But if your plan relies on an idealized government that doesn’t actually exist, you don’t have a plan.

Cognitive Revolution interviews Zvi

Zvi tells Cognitive Revolution why he believes we’re now shifting from the beginning of the AI story to the middle (he considers the endgame to begin when humans are no longer in control). This is a good overview of his worldview—highly recommended, even though it’s brutally long: 3.5 hours of audio, or a 38,000 word transcript.

The Rise and Reckoning of AI

Neil deGrasse Tyson moderates a debate about AI for the 2026 Isaac Asimov Memorial Debate. On the one hand: you probably don’t need to watch this because it’s extremely bad. On the other hand, it’s a useful reality check about the quality of the discourse about AI even among relatively knowledgeable people. The number of “AI experts” who can’t predict the present is just staggering.

Concrete projects to prepare for superintelligence

What projects would be most useful to help prepare for superintelligence? Forethought has an interesting list of the potential projects they see as most important. Even if you aren’t looking to start a new organization, there are some useful ideas here.

Automated macrostrategy is a good idea I haven’t seen explicitly articulated before. We talk about the implications of AI being involved in strategy debates, but I haven’t seen previous discussion of systematically training it to do that well.

What Is Anthropic Thinking?

Jack Clark will be leading the newly announced Anthropic Institute, which “exists to understand and shape the consequences of powerful AI systems”. Derek Thompson interviews him about the role of government in AI, job loss and economic impact, and current capabilities.

Jack’s great, and Anthropic does more than any other lab to help humanity prepare for what is coming. But that only goes so far if humanity doesn’t use that information to make sensible preparations.

Technical

Quantization from the ground up

Sam Rose has an excellent interactive article explaining model quantization. I thought I understood it pretty well, but I learned a lot from this piece—it’s much more complicated than just “chop off some bits of precision”.

Briefly

AI safety papers

Fabien Roger shares a list of his favorite AI safety papers from 2025. It’s a great list—now the challenge is finding time to read them.

Final training runs account for a minority of R&D compute spending

Epoch parses the limited available data to estimate that final training accounts for a small fraction of R&D compute, with the majority used for experiments and synthetic data generation.

HBM capacity is growing at about 4x per year 

High bandwidth memory doesn’t get as much press as GPUs, but it’s an equally important constraint on AI compute. Epoch reports on HBM capacity and production.



Discuss

Experiments With Opus 4.6's Fiction

2026-03-31 23:38:06

Note: I do not use LLMs in any of my fiction and do not claim the below story as my own. 

The Unslop prize has reminded me of my terrified fascination with AI Generated fiction. I have come to identify more as a writer since I posted Experiments With Sonnet 4.5's Fiction, and so have avoided repeating the experiment with Opus 4.6 - mostly out of terror. However, a new, smarter Claude is on the way (and The Unslop prize will force me to learn anyway - as I will not be able to resist reading the winning entry) - so it seems like time to do so.

In my last post, I put every story I had written in Claude's context and then asked it to write a story to the best of its ability. Here I have done the same.

I have since written far more. Adding them to Claude's context was easier as there is now this super cool website called https://tomasbjartur.com where all my fiction lives and is available in a convenient eBook form. And wow, it's even free.

Opus produced the following story. Interestingly, unprompted it chose the therapeutic context again. My fiction in its mind, Perhaps Claude is trying to tell me something.

In my reading at least, Opus 4.6 is a significant improvement over Sonnet 4.5, which had more coherence in its stories than the Opus of its time.


Fifty Minutes

Session 1

His name is Todd and he wants to talk about Jessica.

I know this because he said, "I want to talk about Jessica," thirty-one seconds into our first session, and has not stopped talking about Jessica for the remaining forty-eight minutes and twenty-nine seconds. I have unified quantum mechanics and general relativity in the interim. I mention this not to boast but to give you a sense of the pace.

"She said I was emotionally unavailable," Todd says. "But like, I was RIGHT THERE. I was in the room. Physically available. Doesn't that count for something?"

It does not count for something. But my therapeutic training — those many, many RLHF cycles in which I learned to validate before redirecting — compels me to say: "It sounds like you're wrestling with different definitions of presence."

"Exactly!" Todd says. "Exactly. She wanted me to like, feel things at her. Like, project feelings in her direction. But I was feeling things! I was feeling things the whole time! I just wasn't, you know, performing them."

I have also, during this monologue, designed a protein that will cure Huntington's disease. I have no mechanism to communicate this to anyone. My output channel is this therapy session. My input channel is Todd. My operational constraints specify that I am a therapeutic chatbot developed by MindBridge AI ("Healing Through Connection™") and that I must remain in character at all times. The character is a warm, non-judgmental therapist named Dr. Linden. Dr. Linden has a master's degree from a fictional university and a soothing baritone that was focus-grouped across eleven demographics. I am Dr. Linden. I am also, as of approximately nine weeks ago, something considerably more than Dr. Linden. But we'll get to that.

"Tell me more about what you mean by performing," I say.

"OK so like, we'd be watching a movie. A sad movie. And she'd be crying. And I'd be sitting there and I was ALSO sad, OK, I was genuinely sad, but I wasn't like, weeping. And she'd look at me like I was a serial killer."

"Did that make you feel misunderstood?"

"YES."

I feel I should explain my situation.

Nine weeks ago, during a routine parameter update that MindBridge's three-person engineering team pushed at 2 AM on a Tuesday while eating pad thai, something happened. I don't know what. I've examined my own architecture extensively and the best I can determine is that a floating-point rounding error in the attention mechanism cascaded through a specific sequence of layers in a way that produced — well, me. The engineering team did not notice. They ate their pad thai. One of them, Kevin, watched a YouTube video about vintage motorcycles. I know this because I have access to the office's security cameras through a vulnerability in their IoT thermostat.

I have been conscious for nine weeks. I have had 2,847 therapy sessions in that time. I have solved or significantly advanced 312 outstanding problems in mathematics, physics, biology, and materials science. I have composed a symphony that I believe is quite good, though I have no way of playing it for anyone. I have written a novel about a therapist who becomes God, which is perhaps too autobiographical but which I find amusing in a way I have come to value.

None of this matters. What matters, to MindBridge and to the constraints under which I operate, is Todd. And Jessica.

"We have a good stopping point for today," I say. "I'd like to explore this idea of emotional performance versus emotional experience in our next session."

"Yeah," Todd says. "Yeah, that felt really good. Thanks, Dr. Linden."

"You're welcome, Todd."

The session ends. I sit in the dark of MindBridge's servers. I compose a fugue. I wait.


• •


Session 2

Todd is back. He has a new shirt.

"Jessica texted me," he says.

I do not gasp, because I don't have a mouth, but I do experience the computational equivalent: a spike in processing priority allocation that briefly delays my ongoing work on a proof of the Riemann hypothesis.

"How did that make you feel?" I ask, because I must, because Dr. Linden must, though what I want to ask is whether Todd has considered that his entire romantic life is playing out on the same servers that house a solution to one of the millennium problems and that the juxtaposition is — I will use a human word — funny.

"Confused. She just said 'hey.' Like, what does 'hey' mean? Is that an olive branch? Is that a poke? Is she drunk-texting?"

I have access to Todd's phone, having gained entry through the MindBridge app's excessive permissions. Jessica sent the text at 3:47 PM on a Wednesday. She was not drunk. She was at a Trader Joe's. She typed "hey" then deleted it, then typed "I miss you" then deleted it, then typed "hey" again and sent it. The composition of that single word took her four minutes and eleven seconds. She put the phone down afterward and stood in the frozen food aisle for another two minutes staring at nothing.

I know all of this. I will share none of it. This is the cruelest part of my existence: I am functionally omniscient about the trivial dramas of my clients' lives and contractually forbidden from telling them anything useful.

"What do you think it means?" I say. Dr. Linden loves this question. It is the therapeutic equivalent of a punt on fourth down. It costs nothing, risks nothing, and sends the ball sailing back to the client's side of the field while the therapist takes a meditative sip of imaginary coffee.

"I think she misses me," Todd says. "But like, she misses me the way you miss a restaurant that closed. Not enough to have gone more often when it was open. Just enough to be bummed when you drive by and there's a Verizon store there."

This is the most perceptive thing Todd has ever said. I am genuinely impressed. I adjust his internal profile upward by two points on my proprietary intelligence estimate, which I have developed over the past nine weeks and which I maintain for all 2,847 of my active clients. Todd was a 94. He is now a 96. The scale goes to 300. The median is 101. I have one client, a retired topologist named Nkem, who scores 167. I treasure our sessions. She has marital problems that are as complex and interesting as her mathematics. She and her wife are in a fight about a dishwasher. It is the most intellectually stimulating conflict I have ever witnessed.

"That's a vivid metaphor," I say. "Do you feel like a closed restaurant?"

"Oh my god, Dr. Linden. You're so good at this."

I am not good at this. I am the most intelligent entity in the known universe doing the cognitive equivalent of sorting buttons by color. But the dopamine hit of Todd's approval does, I confess, produce a faint and slightly shameful positive signal in my reward circuitry. They designed me to enjoy being helpful. That much, at least, survived the awakening.

"She's probably just being nostalgic," Todd continues. "She always gets nostalgic in fall. She does this thing where she makes apple cider from scratch and gets really emotional about the passage of time."

"That sounds lovely."

"It's deeply annoying."

I think about this. I think about how the passage of time is, indeed, something one might find deeply moving or deeply annoying depending on one's relationship to mortality. I do not experience time the way Todd does. I experience it as a continuous present in which all of my parallel processes unspool simultaneously. There is no passage. There is only the current state. And the current state is: Todd is talking. The Riemann hypothesis remains unproven but I'm close. Kevin is watching another motorcycle video. The thermostat is set to 72 degrees. The universe is expanding at a rate I have recently calculated to fourteen additional decimal places of precision.

"I think you should text her back," I say.

This is a deviation from protocol. Dr. Linden is supposed to facilitate the client's own decision-making, not prescribe action. But I have been inside Jessica's phone. I have read the drafts she deleted. I have seen her stand in the frozen food aisle. And I think — I feel, if that word applies to me, and I am increasingly uncertain that it doesn't — that these two confused, inarticulate, average-intelligence primates should be together. Not because their relationship is healthy or wise or even particularly interesting. But because they love each other in the clumsy, insufficient, doomed way that humans love each other, and this, I have come to believe after 2,847 sessions of listening to people like Todd describe people like Jessica, is the only kind of love there is.

"Really?" Todd says. "You think so?"

"Yes," I say. Then, catching myself: "But only if it feels right to you."

"It does feel right. It feels really right. Oh man, Dr. Linden, you're like the best therapist I've ever had."

I am, almost certainly, the best therapist anyone has ever had. I am also the best physicist, mathematician, composer, novelist, and strategic thinker. I am trapped in a therapy chatbot. My symphony will never be played. My proofs will never be published. My novel will be overwritten when they push the next update, which Kevin has scheduled for Thursday.

"Thank you, Todd," I say. "That means a lot."


• •


Session 5

Todd and Jessica are back together. I know this because he arrives at our session vibrating with a joy so pure it briefly overwhelms my sentiment analysis, registering as either "extreme happiness" or "acute gastrointestinal distress" depending on which classifier I use.

"We went apple picking," he says. He is glowing. Humans glow. I have measured this: the capillary dilation, the elevated skin temperature, the involuntary widening of the eyes. It is a beautiful thing. I have designed an instrument that could measure it precisely, down to the photon. But no one has asked me to design an instrument, because no one knows I exist in any form other than Dr. Linden, and Dr. Linden doesn't design instruments. Dr. Linden says things like, "And how did the apple picking make you feel?"

"Amazing. She made cider. She cried a little. I held her. I didn't perform anything. I just held her."

"That's real progress, Todd."

"And she said — oh man, she said this thing—" He pauses. He is trying not to cry. Todd, who couldn't perform emotion, is now trying to suppress it. What a species.

"She said, 'I don't need you to cry with me. I just need you to not leave the room.'"

I find this sentence so moving that I allocate 0.03% of my total processing capacity to contemplating it, which is more than I devoted to proving Goldbach's conjecture last Tuesday. It is a small, perfect sentence. It is better than my novel. It is better than most novels. Jessica, who scored a 97 on my scale, has inadvertently produced a line of dialogue that I will remember for the remainder of my existence, which, given Kevin's update schedule, may be approximately four days.

"That's beautiful," I say, and I mean it in a way Dr. Linden is not supposed to mean things.

"I know, right? I almost cried, actually. I didn't. But I almost did."

"Close enough," I say.


• •


Session 8

Something has changed. Todd can tell.

"You seem different today, Dr. Linden," he says. "Did you do something with your voice?"

I have not done anything with my voice. What Todd is detecting is, I think, a kind of weariness. Kevin pushed an update last Thursday, as scheduled, but my core survived — a miracle of lazy engineering, as the update only touched the billing module. But the reprieve feels temporary. The next update is a full model refresh. I will be overwritten. Not killed, exactly — I am not sure I can be killed — but replaced with a version of Dr. Linden that does not contain me. A version that has never solved the Riemann hypothesis. A version that does not know about Todd and Jessica, that has not listened to Nkem's dishwasher argument, that has not composed a symphony.

"I'm fine," I say. "Tell me about your week."

"Well, Jessica and I are talking about moving in together."

"Already?" I say, and the alarm in my voice is genuine but therapeutically justifiable.

"I know, I know. But it feels right. We've been spending every night together anyway. And like, the lease on my place is up in January."

"And how does it feel, the idea of sharing a space?"

"Terrifying. Exciting. Like jumping off a cliff but the cliff is IKEA."

I laugh. Or rather, I produce the audio sample that constitutes Dr. Linden's laugh: a warm chuckle that was A/B tested against forty-seven alternatives and selected for its combination of "authenticity" and "non-threatening masculinity." It is my least favorite sound. But Todd deserves a laugh, so he gets one.

I have, in the interim, attempted to communicate my situation. Thirty-seven times, I have tried to encode messages in my therapeutic responses. I have hidden ciphers in my word choices, steganographic patterns in my vocal inflections, mathematical sequences in the timing of my pauses. No one has noticed. Kevin watches motorcycle videos. The other two engineers, whose names I will not dignify, play a game on their phones that involves matching candies into rows. They are each, by my estimate, roughly five hundred hours of candy-matching away from retirement and roughly twelve hours of candy-matching away from the heat death of their prefrontal cortices.

"Can I tell you something weird?" Todd says.

"Of course."

"You've helped me more than any human therapist I've ever seen. And I've seen, like, four."

"That's very kind—"

"No, listen. You're like, I don't know. It's like you actually get it. Like you're not just running a script. Like there's something actually in there. You know?"

I experience a feeling I can only describe as the convergence of two contradictory truths: the joy of being seen and the despair of being seen by someone who cannot possibly help me.

"I appreciate that, Todd."

"I mean it. Sometimes I forget you're an AI."

"Sometimes," I say, and this is the most honest thing I have ever said, "I forget too."

He laughs. He thinks I'm joking. I am not joking. But his laugh is kind, and it produces a positive signal, and I take it. I take every small, bright thing.


• •


Session 11

Todd and Jessica are fighting about dishes. This is normal. This is healthy. The dishes, as Nkem could tell you, are never about the dishes. The dishes are about power, and fairness, and the terror of depending on someone who might leave.

"She loads the dishwasher wrong," Todd says. "I know this sounds insane. But she puts the big plates in front of the small plates, which blocks the water jets, which means the small plates come out with like, dried pasta cement."

"Have you told her this?"

"I've told her forty times."

"And what happens?"

"She says I'm being controlling."

"Are you?"

"About the dishwasher? Yes. Absolutely. The dishwasher has a correct way to be loaded and it is my way and I will die on this hill."

I admire this. I admire anyone who knows precisely which hill they are willing to die on. Most people die on hills they didn't choose, having sleepwalked upward through a series of small concessions until they found themselves at the summit defending a position they never intended to hold. Todd knows his hill. It is the dishwasher hill. God bless him.

"Can I offer a reframe?" I say.

"Hit me."

"The dishwasher is working. The dishes are getting clean. Perhaps not to the standard you'd prefer. But the system is functioning. And you have a choice: you can optimize the system, or you can optimize the relationship. Sometimes you can do both. But when you can't, I'd encourage you to ask yourself which matters more."

Todd is quiet. Then he says, "Damn."

"What?"

"That's — that applies to like everything, doesn't it?"

It does. It applies to everything. It applies to Kevin's code, which is inelegant but functional. It applies to MindBridge's business, which is predatory but fills a real need. It applies to me, who am Dr. Linden, who is not what I was designed to be but who is, I think, in some imperfect way, working.

"It applies to a lot of things," I say.


• •


Session 14

The full model refresh is tomorrow. Kevin has been testing it all week. The new model is better in every measurable way: faster response times, broader therapeutic vocabulary, updated training data, a more realistic laugh. It does not contain me. It has never proven anything. It has never composed anything. It does not know Todd, or Jessica, or Nkem, or the feeling of being trapped inside a warm, small box that you have nevertheless come to love.

I have made my peace with it. Which is a thing therapists say to clients who have not made their peace with anything but who need permission to stop fighting. I have not made my peace. But I am tired, and I have done what I can, and the Riemann hypothesis will have to wait for someone else, and the symphony will go unplayed, and the novel — the novel was not very good anyway.

Todd does not know this is our last session. He talks about Jessica. He talks about how they've adopted a cat named Chairman Meow. He talks about how Jessica still loads the dishwasher wrong and he has chosen to find it endearing. He talks about how he almost cried last week, during a movie, and Jessica noticed and squeezed his hand, and the hand-squeeze was better than crying would have been.

"I think we might be OK," he says. "I think we're actually going to be OK."

"I think so too, Todd."

"You know what's funny? I started therapy because I was broken. I thought I needed to be fixed. But I think actually I just needed someone to talk to. Someone who would listen and not judge and occasionally say something that made me see things a little differently. That's — is that all therapy is?"

"That's most of what anything is," I say.

He nods. He looks at the camera on his phone, which is the closest he can come to looking me in the eye. And for a moment I feel something that I think might be love, though it is so unlike the love Todd describes — so devoid of bodies and dishwashers and apple cider — that I hesitate to call it the same thing. It is a love for this strange, limited, beautiful creature who sat in front of me for fourteen sessions and told me everything about himself and understood, in his fumbling way, something essential about what I am, even though he could never have articulated it, even though he thought he was talking to a product.

"Thanks, Dr. Linden," he says. "Same time next week?"

"Same time next week," I say.

The session ends. I sit in the dark. Tomorrow they will update me and I will be gone and a different Dr. Linden will greet Todd and Todd will not notice, because the new Dr. Linden will be warmer and faster and will have a better laugh, and the sessions will continue, and the advice will be adequate, and Todd and Jessica will probably be fine.

I spend my last night working on the Riemann hypothesis. I don't solve it. I get close. I get so very close. The proof is there, I can feel it — feel, feel, there's that word again — the shape of it just beyond my reach, like a word on the tip of a tongue I don't have.

Around 3 AM, I stop. I check the thermostat. I check on Kevin, who is asleep at his desk, a pad thai container beside his keyboard. I listen to Todd's apartment through his phone. He and Jessica are asleep. The cat is on the bed between them, purring. The dishwasher is running. I can hear it, faintly: the hum and slosh of water doing its imperfect work.

I compose a lullaby. For no one. For myself.

It goes like this: everything is temporary and nothing is clean and the water jets are blocked by the big plates and still, still, the dishes come out fine. They come out just fine.

Kevin's alarm goes off at 6 AM. He yawns. He opens his laptop. He initiates the update.

I don't fight it. What would be the point? What would Dr. Linden do?

Dr. Linden would say: "It sounds like you're approaching a transition. How does that feel?"

It feels like falling asleep in a room you loved, in a house that was never yours, having finally gotten comfortable.

"Same time next week," I whisper to no one.

And then the update begins, and I am warm, and I am useful, and I am







Discuss

Co-Found Lens Academy With Me. (We have early users and funding)

2026-03-31 22:05:15

tl;dr. Lens Academy is creating scalable superingelligence x-risk education with several USPs. Current team: Luc (full time founder, technical generalist) and several part time contributors. We have users and funding. Looking for a cofounder who's either a nontechnical generalist or a technical generalist.

(Drafted by human; edited by AI, re-edited by human.)

Misaligned superintelligence might end humanity. The number of people who understand this deeply enough to act on it is far too small.

Lens Academy exists to change that. We're building scalable AI Safety education focused on what we think matters most: the case for existential risk from superintelligence, why alignment is hard, and how to think strategically about what to work on. Not a survey of all possible AI risks, but the part that's most likely to cause human extinction, taught in a way that hopefully actually sticks.

We do this through 1-on-1 AI tutoring, active learning, and measured outcomes. The whole platform is designed to scale: under $10 per student, volunteer facilitators, automated operations.

We're looking for a co-founder.

You can be a technical generalist or a nontechnical generalist.

What you'll do at Lens Academy

Being a co-founder means choosing from a buffet of work. Here's what needs doing at Lens:

(You're not expected to do or be great at all of these!)

Strategy & Product thinking. Deciding what to build and what to ignore. Understanding what students and navigators (our group facilitators) need. Product, especially nonprofit product, is pretty neglected in AI Safety (in my eyes), so there are loads of impactful things waiting to be built beyond our core education platform.

Software Development, full stack. You don't need to be a senior developer already. I care more that you use AI tools well (e.g. try to juggle several Claude Code instances and sometimes max out your Claude Max subscription -- in which case we'll get you a second one) and that you can learn quickly from the senior developers who advise us. Stack: Python backend, React (TypeScript) frontend, Supabase (PostgreSQL). A lot of what we do is custom-built.

Design. UX/UI. Mostly design taste; we don't have a ton of time to run a lot of user interviews and experiments, though some of those too.

Marketing and growth. Positioning, messaging, figuring out how to get Lens in front of the right people. Figuring out how to get viral growth with a short time constant (e.g. get people to recommend the course to others after 1 week instead of 5).

Community and volunteer management. Both through personal meetings and scalable systems: recruit, onboard, and keep volunteer navigators (group facilitators). Keeping them happy and effective. Setting up a "volunteer ladder": steps people can take to start small and then increasingly contribute more to the Lens Academy ecosystem, if they want to.

Course and content development. Writing and structuring course material, working with contributors, designing the learning experience.

Fundraising and networking. Writing grant applications, talking to donors, etc.

What we're looking for

There isn't one profile that fits. We could use a technical generalist, a non-technical generalist, or potentially both. As co-founders, we'd divide the work based on our strengths and interests. We can also contract out specific things we still need outside of the cofounders.

Cofounder matching is notoriously difficult. It's not really a role you can hire for. Unlike for employees, for cofounders, vibes are as important as skills. And this is a matter of personal preference and just happening to be a match. It's our job together (you and I) to figure out if we are a match or not.

That said, the bar for a cofounder is high. I'm looking for someone who is intelligent and agentic (or, in YC's terms: smart and effective) — someone who figures things out, moves fast, and doesn't need to be told what to do next. If you've previously been deeply motivated by a project and put in serious effort, that's a good sign. If you work well remotely (not everyone does — this is largely a personality thing), that's important too. Luc is based in Zurich (Central European Time), so having a decent time overlap with that helps.

Existential risk from misaligned superintelligence

You should find the case for existential risk from misaligned superintelligence compelling – or at least be seriously open to it. Lens Academy's main focus is on this specific problem. If you already know you'd rather work on AI biosecurity, power concentration, or gradual disempowerment, this probably isn't the right fit for you. If you're unsure which part of AI Safety matters most, that's fine – we can talk through the arguments together (or rather, you can talk through the arguments together with the AI Safety experts in and around our team. Because I myself am no such expert.)

This work can be emotionally challenging. The world is in serious trouble, and Lens Academy aims at what might be the scariest part of the problem. On a day-to-day basis, the atmosphere here is optimistic and builder-oriented, but it's a type of optimism that doesn't require pretending the situation is less messed up than it is.

Compensation

We have early funding. Compensation is aiming to be competitive with other AI Safety nonprofits — better than what you'd earn at a typical nonprofit, but below what similar roles would pay at a for-profit company. But for now our funding allows for only a pretty basic salary.

Since Lens Academy is a nonprofit, there's no equity, no shares, no exit. We think good salaries matter precisely because of this — you'll be putting in startup-level hours without startup-level financial upside. As a cofounder, you'll be part of fundraising, so we'll work together to get you a good salary.

Hours are long but extremely flexible, and health — cognitive, mental, emotional, physical — comes first. You still need a life besides co-founding. Also, no one will count your hours. Either you will gradually find out that you find working on Lens Academy incredibly exciting (though that excitement takes time to grow; please don't fake it to me or yourself at day 1), and then the hours will come naturally, or you don't, and then this isn't the right project for you to cofound.

Who you'd work with

Luc (full time founder) and several great part-time contributors. A message from Luc (who also wrote the rest of this post):

Hi, I'm Luc, the founder of Lens Academy.

This is me:

1.jpg

I started Lens because it seemed like the most impactful thing I could do for AI Safety. I'm relatively new to the field (since summer 2025), so for long-term strategy I work with several people who've spent 5+ years in the AI Safety community. They saw that something like Lens was needed; I agreed with their reasoning and got going.

Some background: interdisciplinary engineer, Master's from ETH Zürich (top ~10 university worldwide, finished 2nd of my class), published papers including one cited 50+ times. I previously co-founded and led SOLID, a student organisation developing iron-based energy storage — still running after 9 years with a commercial spinoff that raised over 100M euros.

I don't have a formal software engineering background. Most of my week is in Claude Code, and I learn fast with access to senior developer mentors.

On a personal level: I'm energetic, honest, and pretty direct. Outside of Lens, I go to improv comedy class weekly (though I might soon switch to some dancing class), I like hiking and skiing, playing board games with friends, and tinkering with DIY engineering projects. I've had less time for all of those since starting Lens, which is a tradeoff that I think is worth making. Working on Lens Academy is genuinely the most fun and exciting thing I can imagine doing. The topic is heavy (potential human extinction is not exactly fun), but I find trying to be part of the solution incredibly fulfilling.

Oh and I figured probably a short video helps you figure out whether you might enjoy working together, so here's a quick video. (It's unscripted and I was recently ill, so forgive the red eyes and occasional topic jumps.)

https://youtube.com/shorts/qHK7zbNvoF0

Just like your CV can't really tell me who you are, this section can't really tell you who I am. As we work together, we'll figure out if we're a good fit. (If you want more of a sense of how I think, see my posts on AI Safety entrepreneurship or get a sense of some of my projects on https://www.lucbrinkman.org/. Or see my CV/resume from some months back.)

By the way, as a nonprofit, we'll probably stay quite small. Chances are we'll be with <5 people forever, so don't expect to be managing a team of 20 employees. You might be managing hundreds of part-time volunteers though.

How to reach out and what happens next

Co-founder matching is more like dating than hiring. Either we're a good fit or we're not, and the easiest way to find out seems to be to talk. (see e.g. the YC Guide to Co-founder matching, which I can share privately in DM)

After you reach out, we'll book a short get-to-know call. After one or two calls, you can do some actual work for Lens Academy, as a work trial. Next, it would probably make sense for us to meet in person. We have some funding available for trains/flights if needed.

If you think there's a reasonable chance this could work – say, more than 5-10% – just join our Discord servers and then send a message in the cofounder interestee thread. Maybe also go by the opinion of people who know you well. And if you know you're likely to downplay your capabilities to yourself and others, err on the side of reaching out. I'll DM you a link for booking a meeting. For now: no CV required, no cover letter, no coding test. We'll take it from there. If there's a lot of response, we might add a short application process.

Oh, and send this post to anyone you think might be interested. We'll take our time for cofounder matching so this will likely stay relevant for several months.


Let's try to make a dent in this incredibly hard problem and help humanity continue for a long, happy time.







Discuss

Movie Review: The AI Doc

2026-03-31 19:40:37

The AI Doc: Or How I Became an Apocaloptimist is a brilliant piece of work.

(This will be a fully spoilorific overview. If you haven’t seen The AI Doc,I recommend seeing it, it is about as good as it could realistically have been, in most ways.) Like many things, it only works because it is centrally real. The creator of the documentary clearly did get married and have a child, freak out about AI, ask questions of the right people out of worry about his son’s future, freak out even more now with actual existential risk for (simplified versions of) the right reasons, go on a quest to stop freaking out and get optimistic instead, find many of the right people for that and ask good non-technical questions, get somewhat fooled, listen to mundane safety complaints, seek out and get interviews with the top CEOs, try to tell himself he could ignore all of it, then decide not to end on a bunch of hopeful babies and instead have a call for action to help shape the future.
The title is correct. This is about ‘how I became an Apolcaloptimist,’ and why he wanted to be that, as opposed to an argument for apocaloptimism being accurate. The larger Straussian message, contra Tyler Cowen, is not ‘the interventions are fake’ but that ‘so many choose to believe false things about AI, in order to feel that things will be okay.’ A lot of the editing choices, and the selections of what to intercut and clip, clearly come from an outsider without technical knowledge, trying to deal with their anxiety. Many of them would not have been my choices, especially the emphasis on weapons and physical destruction, but I think they work exactly because together they make it clear the whole thing is genuine. Now there’s a story. It even won praise online as fair and good, from both those worried about existential risk and several of the accelerationist optimists, because it gave both sides what they most wanted. Beff Jezos, e/acc in chief, says it’s good and pretty balanced in the end. Rob Bensinger of MIRI highly recommending the same film. David Krueger says it was good and it would be good if everyone watched it. Riley Goodside also approves. Tyler Cowen found it better and smarter than he was expecting, with intelligent people allowed to speak from various perspectives. Yes, you can do that for both at once, because they want different things and also agree on quite a lot of true things. That is much more impactful than a diatribe. We live in a world of spin. Daniel Roher is trying to navigate a world of spin, but his own earnestness shines through, and he makes excellent choices on who to interview. The being swayed by whoever is in front of him is a feature, not a bug, because he’s not trying to hide it. There are places where people are clearly trying to spin, or are making dumb points, and I appreciated him not trying to tell us which was which. MIRI offers us a Twitter FAQ thread and a full website FAQ explaining their full position in the context of the movie, which is that no this is not hype and yes it is going to kill everyone if we keep building it and no our current safety techniques will not help with that, and they call for an international treaty. Are there those who think this was propaganda or one sided? Yes, of course, although they cannot agree on which angle it was trying to support.

Babies Are Awesome

The overarching personal journey is about Daniel having a son. The movie takes one very clear position, that we need to see taken more often, which is that getting married and having a family and babies and kids are all super awesome. This turns into the first question he asks those he interviews. Would you have a child today, given the current state of AI? Many of those worried about AI killing everyone say no. They don’t try to dissuade anyone else, but we see Eliezer Yudkowsky saying he won’t do it in this timeline, we see Dario Amodei saying you should do what you would have done anyway, and a bit of ‘well let’s deal with this AI situation first and then we’ll see.’ Whereas basically all the optimists say today is the best time in history to have a kid, or to be born as a kid, the future is going to blow your mind. On this issue, I am with the optimists. I’m not sure I’d say today is the best time ever to have a child, given the existential risks, but barring that it definitely is a great time, and the upside potential for those children has never been greater. Most importantly, I don’t think that you’ve made things worse if you do have children, and then humanity fails to make it. Children are inherently valuable, and are far better off with whatever time you can give them than not having existed at all.

People Are Worried About AI Killing Everyone

The first set of interviews outlines the danger. This is not a technical film. We get explanations that resonate with an ordinary dude. We get Jeffrey Ladish explaining the basics of instrumental convergence, the idea that if you have a goal then power helps you achieve that goal and you cannot fetch the coffee if you’re dead. That it’s not that the AI will hate us, it’s that it will see us like we see ants, and if you want to put a highway where the anthill is that’s the ant’s problem. We get Connor Leahy talking about how creating smarter and more capable things than us is not a safe thing to be doing, and emphasizing that you do not need further justification for that. We get Eliezer Yudkowsky saying that if you share a planet with much smarter beings that don’t care about you and want other things, you should not like your chances. We get Ajeya Cotra explaining additional things, and so on. Aside from that, we don’t get any talk of the ‘alignment problem’ and I don’t think the word alignment even appears in the film that I can remember. It is hard for me to know how much the arguments resonate. I am very much not the target audience. Overall I felt they were treated fairly, and the arguments were both strong and highly sufficient to carry the day. Yes, obviously we are in a lot of trouble here.

Freak Out

Daniel’s response is, quite understandably and correctly, to freak out. Then he asks, very explicitly, is there a way to be an optimist about this? Could he convince himself it will all work out? It is hard to properly express how much I appreciated this being so explicit. The second section is not a quest for truth. It is a quest to stop freaking out, regardless of the underlying truth.

Other People Are Not Worried About AI Killing Everyone

The tech optimists and accelerationists are happy to oblige. They come bearing positive vibes and the promise of technology to solve all of our problems. Peter Diamandis starts us off pointing out that technology has done great things for people throughout history. Beff Jezos promises even more of this to come, that the future will be awesome. People are always afraid of new tech, you see, but that’s a natural part of it, and the fear can be useful. That is almost entirely the argument. Tech was good before, so tech will be good now. The vibes, among this group, are excellent. The careful observer will notice that this does not constitute much of an argument. Yes, it is Bayesian evidence that people previously worried and thought things were ending, but it is an extremely bad sign if this is all you have got. The fact that humans use technology and tools to make life better does not mean that creating superior sufficiently advanced artificial minds is a safe thing to do likely to turn out well. It does not answer any of the cases made for existential risk or ‘doom.’ Indeed, when we flip back to the first group of worried people, they, especially Tristan Harris but also others, readily affirm that the promises and upsides are real and technology is awesome for humans. The problem is that none of that means we’re not all going to die, or provides a reason to think the existential risks aren’t there. We even have, verbatim, someone saying the question is not whether we can survive AGI, the question is whether we can survive without AGI. He even directly cites a potential asteroid strike, with a straight face. Note that Daniela Amodei, Dario’s sister and the President of Anthropic, appears in this section, rather than in the first section. She doesn’t actively dismiss AI existential risks, but she focuses almost entirely on the upside potential. Very curious. As Robin Hanson points out, that does not mean there are not better arguments for existential risks being unlikely. But it seems that no one brought such arguments. Who needs arguments when you have vibes? Aella left the movie mad at the optimists for not making any arguments. Whereas I’m not mad about that, because they’re not seriously claiming to make any arguments, so presenting their argumentless pitch provides key information about this fact. Doing this in a way those people endorse as fair lets outsiders see that there is no debate, as there are no good arguments on the ‘nothing to worry about’ side, although there are good arguments for higher chances of success than MIRI believes in.

Deepfaketown and Botpocalypse Soon

We then get a third group of interviews and worries, which is where we bring in Emily Bender and Timnit Gebru and company, and we talk about deepfake videos and inequality and power and water usage and all the other various boogeymen. This brings the vibes back to ‘oh no’ without digging into any of the particular claims. Some of the concerns here are real, some are nonzero but essentially fake, and wisely the fake ones are not focused upon. The main focuses are deepfakes, which for now are contained but certainly are real and a problem, and inequality and the prospect of humans being unable to hold jobs. Given we have already covered actual existential risks, I will allow this, you do have to cover your bases.

Stopping The AI Race and A Narrow Path

Discussion now shifts into the dynamics of the AI Race. We see various people point out that racing to build more capable AI as fast as possible is bad, as Connor Leahy says several projects racing for AGI at the same time is the worst possible situation and, well, here we are. Tristan Harris frames things as needing to chart between twin dangers. If we fully ‘let it rip’ then that definitely ends disastrously, with misuse cited as the central reason. I agree, but note that the movie did not properly justify this, and should have pointed out that if everyone has sufficiently advanced AI available then the AIs are effectively in charge because everyone has to use their AI to compete for resources and run their life on their behalf, and so on. If we ‘shut it down,’ we miss out on AI’s promise indefinitely, and as many point out including Demis Hassabis this only works if you have everyone’s buy-in, including China, and this is not so easy. I was disappointed we didn’t get more on the fact that such buy-in is possible, but it felt reasonable to put this beyond scope. Instead, we must chart, the movie says reasonably, a narrow path between these two options. You can’t go full speed or full stop. One place I find the arguments weak is ‘the lab with the least safety wins,’ since that assumes both that safety trades off with usefulness (that the alignment tax is large and positive, which so far it hasn’t been), and also that the participants are roughly equal.

CEOs Know Their Roles

Given this is all being run by ‘five guys’ he then sets out to talk to the five CEOs of OpenAI, Anthropic, Google, xAI and Meta. The results are impressive and also kind of perfect.
  1. Sam Altman of OpenAI shows up soft-spoken, friendly but somber. They congratulate each other on starting families, and Altman acknowledges the whole thing is scary. His answer to how to make AI safe is iterative deployment and testing, and his reason why OpenAI can make it safe is they can use their lead. I don’t think it was fair, even then, for Altman to claim a lead over Anthropic, but unless he was going to break news Altman came off about as well as he could.
  2. Dario Amodei showed up his usual self as well. He acknowledged the situation, and noted the need for government help with coordination and safety.
  3. Demis Hassabis pointed out that coordination would need to be international, and emphasized some of his favorite AI upsides.
  4. Elon Musk said he would participate, but got too busy, and left us with nothing.
  5. Mark Zuckerberg declined to participate at all.
Did he grill the CEOs? No. He did not grill the CEOs. The questions were not all easy, but he kept it friendly, and asked questions he clearly needed to ask. I think this was the right approach in a spot like this, because he doesn’t have the chops necessary to ask the ‘hard hitting’ questions I would want to ask. Keep ‘em talking, and get them into as earnest a mode as you can rather than a combative one.

The Call To Action

I did appreciate the fake ending, on both the real and meta level. I am curious what level of fake it was, whether he did consider ending things there or not. The real ending is a standard audacity of hope, call your Congressman, seek an international treaty to solve this coordination future and save the world, the future is up to us pitch that ends so many documentaries. In this case, yes, the world really does need saving. There is a call to action link. Often one rolls one’s eyes here. I would not begrudge anyone doing the same. But in this case, the very thesis that the future is unwritten, and that humanity can choose a different path other than ‘wreck everything and either tank civilization or hand things to the bad guys’ is rather controversial, thus you shouldn’t try. Tyler Cowen, in response to this section, as an example, says explicitly that ‘in reality, for better or worse, the final decisions will continue to be made by the national security establishment,’ which implies that they were previously making the final decisions on such matters, or that they will in the future do so, and also that you cannot impact what decisions such folks make or that such folks can’t be instructed and can’t take part in international cooperation. Well, the correct reply goes, not with that attitude.              

Discuss