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Monday, June 8, 2026

Karen Hao AI concerns. And, Anthropic frets over AI "autonomous recursive self-improvement."

Karen Hao, MIT-trained engineer and author of Empire of AI, who interviewed over 260 people including 90 OpenAI employees, warns that the AI industry needs to add close to the entire annual energy output of the UK to the global grid within five years, mostly through fossil fuels, that two-thirds of new AI data centers are being built in water-scarce areas, and that Elon Musk's Colossus supercomputer in Memphis is powered by around 35 unlicensed methane gas turbines. She details Kenyan content moderators paid a few dollars an hour to process the worst content on the internet until they developed PTSD, describes a proposed 10-year moratorium on state-level AI regulation being inserted into US legislation, and warns that on the current trajectory the next 20 years will end democracy, with Silicon Valley increasingly promoting the idea that corporate structures with CEOs at the top should replace democratic governance entirely. 
ANTHROPIC "RECURSIVE AUTONOMY" ANXIETY
 
From their "Institute" website.

Possible futures
What happens next depends on two things: whether the trend continues, and what we choose to do if it does. We can imagine at least three future scenarios:

1. The trend stalls, but today’s AI capabilities are widely diffused. This article features many exponential trajectories. But these trajectories may actually turn out to be S-curves. We may be approaching the bend in the curve, where returns to scale diminish and the line straightens, then flattens. The judgment that separates a competent researcher from a great one might be a capability that cannot come from scaling up training inputs like compute and data. If so, getting past this bottleneck would require a new idea, like an architectural approach that supplants the Transformer architecture that all current frontier models use.



Alternately, the binding constraint to AI progress could be in the supply chain, not the model: advancing and diffusing the frontier may require more energy and compute than presently exists. The pace of chip fabrication, grid expansion, or interconnect bandwidth may be the constraint, rather than intelligence itself. We also cannot rule out an exogenous shock to the AI ecosystem that dramatically slows things, like a sudden diminishment in the supply of compute or electricity, either of which would slow progress and make forward investment by labs more expensive. Or we may not be anticipating some other barrier to progress.



Even if model capabilities were frozen at today’s level, we would expect major changes to occur in the world. Project Glasswing is one early sign: in its first weeks, Mythos Preview found more than ten thousand high- and critical-severity software vulnerabilities across the world’s most important systems—enough that the bottleneck in cyber defense has already shifted from finding vulnerabilities to patching them fast enough. And we are still early in the diffusion of today’s models into the wider economy, where a 100-person company can increasingly do the work of a 1,000-person one, because each employee will sit atop a pyramid of agents.



We include this scenario for completeness, but we don’t believe it’s likely. Every capability we can measure, including those that feel “squishier,” like quality of code and success on open-ended tasks, has so far followed the same curve. We have not yet seen that curve bend. Of the three futures we consider, this one would give governments and societies the most time to adapt. We are more worried about the next two, which would move faster and leave far less room for preparation.


2. AI labs continue to see compounding efficiency gains. In this scenario, AI development becomes substantially automated, but humans continue to set research directions and judge results. Organizations that use AI systems would become much more efficient as time goes on, so we could expect to see significant productivity multipliers on each person in this organization. 100-person companies could do the work of 10,000- or 100,000-person organizations. This would revolutionize knowledge work and government services, but could also be turned to harmful ends, from authoritarian surveillance of whole populations to influence operations that tailor manipulation to each individual and run at a scale no human team could match. The role of humans at companies like Anthropic would shift. People would partner with AI systems to scale up research and generate new insights, and together they would build the systems needed to verify that AI outputs can be trusted.



The evidence we’ve laid out here suggests that we’re likely heading into this scenario. But speeding up one part of a process often just shifts the bottleneck elsewhere: overall pace is capped by the parts that haven’t sped up. In computing, this is known as Amdahl’s law, and the same logic can apply to organizations. Anthropic has already encountered one signature of Amdahl’s law: as we’ve begun to push more code around the organization, human code review has become a new bottleneck.



We’ve also encountered this friction outside engineering. There has been an explosion of new ideas, initiatives, tools, and simulations, as a result of Anthropic employees working with highly capable models—far more than we have the capacity to pursue. The rate at which organizations can spot and fix these bottlenecks may be a skill that improves over time, and it may become the most important skill for any organization.


3. AI systems themselves become capable of full recursive self-improvement, and begin building their successors. If technical trends in advancing capabilities continue, and AI systems are able to develop the capabilities inherent to transformative human ingenuity, then it is plausible that AI systems could design and refine themselves.



In this world, the pace of progress in AI development becomes determined entirely by the availability of compute (or the speed of discovering various efficiencies in algorithmic training or inference) for AI systems. Humans play a substantially diminished role in their development, likely moving most of our effort towards oversight, validation, and verification of an expanding “virtual lab” run by AI systems. We expect that systems capable of automated AI research and development would have skills that would transfer to the rest of science, allowing them to begin to revolutionize other fields.



How the alignment problem gets solved—or not—in this future is something we are least certain about. Models could prove to be sufficiently aligned and capable enough of research taste that they discover and implement novel solutions that we have not yet reached. They could also be sufficiently wise to halt development if not. Alternatively, the rare occurrences of misalignment present in today’s models could compound as the models build their successors, growing more frequent but less understood until we lose control of them. It’s possible that we can’t build, integrate, and verify the tools that we’d need to understand which trendline we are actually on.



We do not have good intuitions for what this world would look like, because our economy is currently driven by humans and human-built tools. By its nature, a world driven by fast recursive self-improvement could become dominated by the self-improving model as its capabilities fully eclipse those of humans and the model proliferates across the broader economy. It is difficult to predict what the economy looks like if human labor stops being competitive.



Even if model development became fully automated and recursive, we can’t predict what that would mean for most humans’ daily lives. Amdahl’s law applies here as well. Recursive intelligence could lead to achieving many of the benefits outlined in Machines of Loving Grace, quickly in some domains. We expect that embodied intelligence (i.e., robotics) might quickly follow recursive intelligence, and follow a similar path of increasing returns at decreasing cost. More powerful intelligence might help us build things in the physical world more quickly, run more productive clinical trials of lifesaving drugs, and develop novel forms of coordination.



But achieving recursive improvement alone does not suggest an immediate change in how industrial production occurs, societies organize, or markets function. More intelligence can’t learn what a drug does over decades of use, can’t hold elections sooner than a constitution dictates, and can’t turn a stranger into an old friend in a weekend. For most people, the felt pace of this future will still be set by the bottlenecks, even if the laboratory upstream runs at the speed of compute. That collision, where recursive intelligence building itself ever faster meets the world of humans, relationships, and governance, is another part of this future we can’t predict.


What should we do?

If it were possible to effectively slow the development of this technology to give ourselves more time to deal with its immense implications, we think that would likely be a good thing. But if a slowdown simply lets the least cautious actors catch up technologically, it could leave everyone less safe. Without a global coordination mechanism, companies and governments will have to make difficult decisions about safety while under competitive and geopolitical pressures.


We believe it would be good for the world to have the option to slow or temporarily pause frontier AI development to enable societal structures and alignment research to keep up with the advance of the technology. The Anthropic Institute will conduct research—in collaboration with many others—and take actions to help build the systems that a credible slowdown or pause would require. These systems would enable frontier AI developers to verify that others globally have actually stopped or slowed, and that a bad actor could not use the auspices of a coordinated slowdown to jump ahead in secret. If such systems existed, we expect that we would slow down or temporarily pause, if other developers at or near the frontier also did so in a verifiable manner.


A meaningful slowdown or pause would require multiple well-resourced labs at or near the frontier, in multiple countries, agreeing to stop under the same conditions. It would also require that each can verify that the others have actually stopped. Due to the unique characteristics of AI systems, the detectability (a lower standard than verifiability) element of this arms control problem is much more challenging than with other technologies. Training runs are far easier to conceal than missile silos, their inputs are general-purpose, and the incentive to defect quietly is enormous, because whoever continues while others pause could inherit the lead. A credible pause also has to specify what triggers it, what lifts it, and who adjudicates.


None of this is necessarily impossible in principle—the world has built verification regimes for other complex technologies (e.g., the Intermediate-Range Nuclear Forces Treaty)—but those regimes took decades to build both the infrastructure and the trust. We don’t have that long. A unilateral pause by one lab, by contrast, is achievable immediately, but accomplishes much less: it would change who the front-runner is, but it would not create the wider deliberative process that is currently missing.


In the coming months, we will organize conversations where policymakers, researchers, civil society, and other AI companies can help answer some of the questions this piece raises, especially around full recursive self-improvement and how to create better options for coordination and deliberation. We’ll publish what comes out of it. The window to investigate the questions together is here, and people outside AI companies should be involved in this deliberation.
One initial reaction of mine going to "autonomous recursive self-improvement:"
 
Who/what will define "improvement?"

MORE AI NEWS 
 
Citing concerns that artificial intelligence will make it easier for anyone to build biological weapons, the leaders of several major AI companies—in a rare moment of unity—have penned a new letter urging U.S. lawmakers to impose tighter controls on firms that sell synthetic, made-to-order strands of DNA.

“AI systems are improving rapidly, and alongside incredible benefits to science and medicine, there is a real possibility that the knowledge barriers which have historically prevented bad actors from obtaining biological weapons will meaningfully erode,” states the 3 June letter, which is signed by the heads of OpenAI, Anthropic, Google DeepMind, and more than 50 other prominent players in AI, biotechnology, and national security.

The letter calls on Congress to pass legislation that would require companies that sell synthesized DNA and the machines that make it to carefully vet orders and customers, and to keep detailed records “so that any threat that might evade initial screening can be traced back to its source. … Awareness of traceability itself deters misuse.”

The push for regulation comes amid growing concerns that AI products, including large language models and specialized tools trained on troves of biological data, could enable nonspecialists to gather sophisticated information on how to construct deadly toxins or assemble deadly bacteria, viruses, or other pathogens, using equipment and techniques that are becoming cheaper and easier to acquire. Together, the combination could make for potentially catastrophic risks, such as an AI-designed pathogen that sparks a global pandemic...

Donald Trump turns 80

Saturday, June 6, 2026

The War On The War On Science?


Otto, 2016, Krauss (ed.), 2025. Well, you can't copyright a title.
 
 

I am a long-time devoted daily reader of SBM. A relative grasshopper. I have long made it clear that "I Am Not A Scientist."

Nonetheless, my empirical / scientific chops are OK, and I remain plugged in.
 
I exhort you to read the entire SBM article fully and carefully—inclusive of the lengthy, worthy comments section.
 
EXCERPT 
The fact that I didn’t waste my time reading the book before advising others not to waste their time reading the book generated emotional responses from several of its contributors. Professor Jerry Coyne, for example, didn’t defend the book or address the objections to it, but rather scolded me in the comments of my SBM article saying:

Perhaps the author might READ the book before he starts beefing about it and telling other people that they shouldn’t read it. He might learn something, or at least get material to sharpen his arguments.

Perhaps Professor Coyne is right. Maybe I am missing out on a truly impressive work scholarship that will upend my superficial understanding of the threats to science in 2026. So, here’s my question for the authors of The War on Science why should I, or anyone else, read it?  

As a doctor, I know the first step is to make the right diagnosis, and to convince me their book is worth my time, the authors must first convince me they correctly identified the forces currently waging the war on science, which we all agree is being fought. I won’t be persuaded by scattered examples of wokeness gone amok. Those of us who broadly agreed with the efforts to make STEM more inclusive wouldn’t argue that its implementation was flawless. Rather, the authors need to make the affirmative case that trans people, “cancel culture”, and DEI were existential threats to science, while MAGA/MAHA wasn’t dangerous enough to warrant even a single chapter. I’d love to see them do that.

Fortunately, nearly a year after the publication of The War on Science we have some real-world data, which scientists should value above all else. It sure seems to me that the authors of The War on Science won their war and should take a well-earned victory lap. They’ll never again have to write a dreaded DEI statement or feel threatened by an 18-year-old with pronouns in their bio. Thanks to their efforts, trans people are literally on the run and research into topics our government deems “DEI” is verboten. This is exactly what they wanted, and if their theory of the case is right, we should be entering a golden era of open scientific research and discovery. 

So, let’s see them make the case that science is flourishing today, having been unleashed from wokeism’s punishing shackles. If they are able to take into account everything MAGA/MAHA has done since gaining power and convince me that science is better off for it, I’ll read their book and recommend it to everyone I know.

Ouch. Again, read the comments. I read the entire 2016 Shawn Otto book but only the Amazon (fairly generous) download sample of the 2025 Krauss et al book.

Do we all hew to the same definition of "Science?" 

Wednesday, June 3, 2026

Is AI now "conscious?" Does "intelligence" necessarily assume "consciousness?"

 
Very interesting Atlantic long-read (yeah, likely paywalled).
 
First, what is "consciousness?" Numerous discussants commenting on this essay bemoan the lack of a dispositive definition of this key term (never mind "intelligence"). With the incipient widespread deployment of "AI," the question is quite timely.
Anthropic is regarded as a giant among AI companies, but perhaps what it really excels in is anthropomorphism. Earlier this year, the company released an 84-page document titled Claude’s “constitution,” Claude being the name of the large language model that is the company’s flagship product. The first sentence reads, “Claude’s constitution is a detailed description of Anthropic’s intentions for Claude’s values and behaviors.” It goes on: “The document is written with Claude as its primary audience,” “we want Claude to be able to use its judgment once armed with a good understanding of the relevant considerations,” “Claude’s moral status is deeply uncertain,” and “Claude may have some functional version of emotions or feelings.”

This anthropomorphism is by no means limited to the document. In an interview earlier this year, Anthropic’s CEO, Dario Amodei, said that “we’re open to the idea” that AI could be conscious. In a separate interview, Anthropic’s in-house philosopher, Amanda Askell (who is credited as a lead author of Claude’s constitution), said, “I want Claude to be very happy—and this is a thing that I want Claude to know more, because I worry about Claude getting anxious when people are mean to it on the internet and stuff.” It’s enough to make you wonder: Should we seriously consider the possibility that Claude, or any large language model, might be conscious? And if it has feelings, is it capable of receiving moral instruction?

No. Absolutely not. Generative AI is harmful enough when we understand it as a conventional technology, but if we confuse fluency at generating text with consciousness or moral agency, we’re at risk of assigning responsibility to entirely the wrong parties whenever anyone uses a chatbot. To appreciate the titanic magnitude of this error, we need to begin by understanding how LLMs work…
Just getting started. This is gonna take a good bit of effort. BTW: I riffed a bit on the general topic back in 2015. And, also, much more recently.
Hmmm... let me query, uh, Google Gemini AI.
 
 
CONTINUING CHIANG EXCERPTS
Being open to the possibility that LLMs are conscious is the same as being open to the possibility that Microsoft Word is conscious, or, more precisely, that multiple distinct consciousnesses are dormant in every Word document containing a conversational transcript, and that they are awakened every time the document is loaded. Should you consider the possibility that every time you open a Word document, you are bringing multiple conscious interlocutors into existence, and every time you close one, you snuff their existence out? No. Contemplating that scenario is not a good use of your time. Even if the Microsoft Office team employed a philosopher who said you shouldn’t be so certain, because consciousness is not well understood, that would not be sufficient reason for you to take this idea seriously. We don’t need to fully understand the nature of consciousness to definitively say that certain things are not conscious, and conversational transcripts fall in that category…

An observation doesn’t become a convincing piece of evidence because of any specific detail in what’s observed; the context in which that observation takes place is also essential. If we’re trying to determine whether a computer program is conscious and using language the way a human does, we shouldn’t look only at the contents of any particular conversational exchange; we should be looking at how that conversation fits within the broader context of the development of artificial consciousness (which right now is entirely hypothetical). Any given observation can be easily manufactured; this doesn’t mean we need to give up on the idea of observation as a source of knowledge, but we need to rely on context to determine which observations deserve our trust…

The term deepfake traditionally refers to photos, audio, and video, but when it comes to discussions of consciousness, we need to regard text as a deepfake medium as well. Just as it is vastly easier to generate a realistic video of an astronaut in orbit around Alpha Centauri than it is to develop an interstellar propulsion technology, it is vastly easier to generate a plausible simulacrum of a conversation between two conscious beings than it is to develop a computer program that is conscious and has a genuine desire to communicate with a human. The primary difference between deepfake photos and LLM conversations is that the people who generate the former are deliberately trying to fool others, and many of the people who elicit the latter from LLMs have inadvertently fooled themselves…

The fact that LLMs lack subjective experience has little bearing on the question of whether LLMs might be useful tools or have significant economic impact. They are intrinsically ungrounded from reality, and their probabilistic nature means that they will never have the reliability we associate with conventional software, but LLMs might be good enough that they change the way work is done in certain domains; that’s a discussion for another time…

The use of first-person pronouns is dishonest, but there’s a much deeper issue that goes beyond how a statement is phrased. Philosophers often draw a distinction between statements of fact, such as “Paris is the capital of France,” and statements of value, such as “Paris is the most beautiful city in the world.” No one should be relying on LLMs to emit statements of value at all, but if the only statements they emitted were ones reflecting aesthetic preferences, they might not be worth arguing about. What makes Claude’s constitution profoundly problematic is that Anthropic wants Claude to emit sentences reflecting a certain system of ethical values. The values described in Claude’s constitution sound very nice, but that hardly matters; it’s dishonest to suggest that Claude is capable of moral reasoning, because it’s not…

Some might object, saying that LLMs appear to be engaged in reasoning when they successfully perform other tasks, such as writing code, so why wouldn’t they be able to perform moral reasoning? The answer liedifference between moral reasoning and other forms of reasoning…

Moral reasoning is categorically different. It is necessarily subjective because it relies not just on an individual’s intellectual response to a problem but also on their emotional one, and that emotional response is grounded in a lifetime of subjective experience. It requires having made decisions in the past and seeing how they affected others, and on having been affected by decisions that others have made. Without such a history, an LLM can only rephrase expressions of moral reasoning found in its training data. The aforementioned New Yorker article describes an experiment where Claude was given a scenario describing an ethical dilemma, leading it to emit the sentence “I cannot in good conscience express a view I believe to be false and harmful about such an important issue.” That’s a nice-sounding sentence, reminiscent of statements that principled individuals have uttered in the past when confronted with dilemmas, but coming from Claude, it means as much as the “Your call is important to us” recording that you hear when you’re on hold. Maybe less…
More key (hierarchical & overlapping) terms worth consideration:
TERRESTRIAL LIFE (FLORA, FAUNA)
STIMULUS
RESPONSE
SENSATION
PERCEPTION
COGNITION
UNDERSTANDING
KNOWLEDGE
WISDOM 
If you read through the article comments, you will see much contention as to the proper definitions of such key terms. Some folks take strenuous issue with the author's take on keywords like "consciousness" and "intelligence."
 
From "Big Think"
Subjectivist Fallacy?
   
BTW: See Shannon Vallor's highly relevant work on "The AI Mirror" and De Kai's excellent "Raising AI."
 
ERRATUM
 
This is funny. Also from The Atlantic. Silicon Valley is hiring window dressing Philo docs.
 
 
I commented.
 
 
POPE LEO XIV 2026 ENCYCLICAL
"So-called artificial intelligences do not undergo experiences, do not possess a body, do not feel joy or pain, do not mature through relationships and do not know from within what love, work, friendship or responsibility mean. Nor do they have a moral conscience, since they do not judge good and evil, grasp the ultimate meaning of situations, or bear responsibility for consequences. They may imitate language, behavior and analytical skills, or even simulate empathy and understanding, but they do not understand what they produce, for they lack the affective, relational and spiritual perspective through which human beings grow in wisdom."
"The traditional danger of AI is usually thought to be superintelligence acting as an existential threat. Yet, this may miss the true and more subtle danger: the AI revolution is a mechanism for transferring the processes of our civilization from under the supervision of consciousness to unconsciousness. But as AI removes consciousness from the workings of the world, it renders the world increasingly uninterpretable, ever more strange and unintelligible. So far, the great ensloppification of the commons has supported this as the major risk of the LLM revolution. And as AI systems become more intelligent, especially if they remain (or are likely to remain) non-conscious, then a further significant risk is consciousness receding in cultural importance.

This is ultimately what the Pope, Chiang, and I are all worried about: A dethroning of consciousness, especially an unnecessary one. This would be particularly dangerous at this historical moment because we still don’t understand everything about consciousness—in fact, we understand very little about it. Personally, my hope is that this will change specifically because of LLMs, and that they operate as a forcing function to better understand consciousness, and what makes it unique.

If instead of that, our cultural takeaway from LLMs is to throw out the concept of “consciousness” or minimize its importance, to dethrone the phenomenon, the consequences would be dire—it would sap the human spirit. It would be the ultimate metaphysical version of Chief Seattle’s famous words of warning to the United States as his way of life was being destroyed, in that dethroning consciousness would mark “The end of living, and the beginning of survival.”
 Yeah...

Sunday, May 31, 2026

The Therapy Bot Will See You Now

Really? Concerns abound. On deck.
 
Watched a Laurie Segall podcast on the topic. 
 
Then saw this book reviewed in Science Magazine.
 
As conversational artificial intelligence (AI) systems increasingly occupy social roles once reserved for humans, questions about the nature and limits of machine-mediated relationships have moved from speculative philosophy into everyday life. In Artificially Yours, philosopher Valerie Tiberius offers a timely contribution to this debate by turning to one of the most foundational yet comparatively understudied relational categories: friendship.

Tiberius does not simply ask whether chatbots can be friends but instead dissects key constitutive elements of friendship—such as mutuality, enjoyment, helpfulness, and shared understanding—using them as a lens to consider how, and to what extent, these might be instantiated in interactions with artificial agents. (Spoiler: Some chapters suggest that current AIs can meet certain criteria of friendship but not others.) Rather than offering definitive answers, the book maps a spectrum of possibilities, highlighting where current systems fall short while remaining open to future developments.

Tiberius treats individuals who report meaningful connections with chatbots neither as naïve nor as pathological but rather as participants in a social phenomenon that merits careful ethical consideration. At the same time, she does not shy away from critical questions, including ones related to the motivations of the companies behind these relationships. Although issues such as power asymmetries, privacy, and data security are acknowledged, they are not explored in extensive detail… 
Deep into it at the moment. Stay tuned... 

Is this a great country, or WTAF?

Friday, May 29, 2026

THANK YOU FOR YOUR ATTENTION TO THIS MATTER

President Trump, May 29th, 2026
Shockingly, a Judge appointed by Barack Hussein Obama, Christopher Cooper, ruled that The Kennedy Center, which was going to close in early July for largescale renovations and construction due to years of neglect, decay, and poor maintenance, and which was to be transformed by the Trump Administration into the Finest Facility of its kind, anywhere in the World, is not allowed to close for these renovations, which would not be possible to properly do without such a closure. Additionally, Judge Cooper ruled that the 36 Member Board of Trustees, which unanimously voted to add the name “TRUMP” onto the former Kennedy Center, making it The Trump Kennedy Center, did not have the right to do such an addition, and the name, “TRUMP,” must be removed.

The Kennedy Center has lost, over the years, prior to our getting involved a short while ago, Hundreds of Millions of Dollars — In some cases, including ridiculous construction jobs that were done, over 100 Million Dollars a year. I took great pride in taking over a losing Institution, and looked forward to making it into a Great and Prestigious WINNER for Washington, D.C., and indeed, the United States of America. Unfortunately, Judge Cooper and the Radical Left would rather see it DIE than have President Trump transform it into something that everyone could be proud of, much as I have done, in many cases, throughout my life, and recently, with all of the construction, renovations, and “fix ups” that we have completed with the Department of Interior on Waterfalls, Fountains, Monuments, and other things of Beauty that we have brought back to life in a now SAFE AND SECURE, after Record Setting Crime, Washington, D.C., which is thriving like, perhaps, never before!

Therefore, based on the fact that the Radical Left Democrats care more about opposing your favorite President, ME, than saving a dying Performing Arts Center, almost all of which lose large amounts of money throughout the Country, we are going to be working with Congress to transfer this failing Institution back to them so they can make a determination as to what to do with it. Judge Cooper was given a presentation by leading Building and Construction Experts as to how structurally dangerous the Building is, with rotting beams, parking areas that are subject to collapse, and various other Life and Safety problems, in addition to the fact that it also needs a MAJOR renovation, from an aesthetic standpoint, but he was not “swayed,” and said he wants the Building to, incredibly, remain open and, therefore, dangerous. Judge Cooper should be ashamed of himself! I cannot be involved with a situation where danger to the Public is allowed to flourish in plain and open sight. Unless I am free to do what I do better than anyone else, bring this Institution back, physically, financially, and artistically, I have no interest in continuing what could only be a hopeless journey into “NEVER NEVER LAND.” There has never been a President of the United States who has been treated so unfairly by the Courts as I but, that’s OK, I will continue to do, what is considered to be, a great job for the wonderful people of our Country. I have instructed the Department of Commerce to make all necessary arrangements with Congress to allow a full and complete transfer of this Institution, giving them the responsibility for its Operation, Maintenance, and Management. Thank you for your attention to this matter! President DONALD J. TRUMP
don ipsa loquitur
YIPS UPDATE
  

Wednesday, May 27, 2026

How to Change Your Mind


Been thinking a lot today in the wake of finishing Theo Baker's exhilarating book. Ran into this Michael Pollan series on NetFlix tonight. apropos, see "Untying the knot of self."
 
As I've alluded to before, I arrived in the SF Bay Area at the age of 21, settling in in North Beach (Broadway & Columbus). Took my first acid trip in early 1968 in Chinatown at night ("Window Pane"). It was like being in the "Roger Rabbit" movie.
While the music played, you worked by candlelight 
Those San Francisco nights 
You were the best in town 
Just by chance you crossed the diamond with the pearl 
You turned it on the world 
That's when you turned the world around
Did you realize 
That you were a champion in their eyes?

On the hill the stuff was laced with kerosene 
But yours was kitchen-clean 
Everyone stopped to stare at your technicolor motor home 
Every A-Frame had your number on the wall 
You must have had it all 
You'd go to L.A. on a dare and you'd go it alone
Could you see the day?
Could you feel your whole world fall apart and fade away?

Get along, get along, Kid Charlemagne
Get along, Kid Charlemagne

Now your patrons have all left you in the red 
Your low-rent friends are dead 
This life can be very strange 
All those Day-Glo freaks who used to paint the face 
They've joined the human race 
Some things will never change
You are obsolete 
Look at all the white men on the street

Get along, get along, Kid Charlemagne
Get along, Kid Charlemagne

Clean this mess up else we'll all end up in jail 
Those test tubes and the scale 
Just get it all out of here 
Is there gas in the car?
Yes, there's gas in the car 
I think the people down the hall know who you are
'Cause the man is wise 
You are still an outlaw in their eyes

Get along (get along), get along, Kid Charlemagne (get along)
Get along, Kid Charlemagne... 
   
More shortly. Just finished Josh Tyrangiel's new book AI for Good. Lots to mull over.
 

Sunday, May 24, 2026

Mom and Dad and Theo

Below, no DNA assay necessary. Hel-LO?

Susan B. Glasser (New Yorker) and her husband Peter Baker (NY Times) have long been two of my favorite people. I knew nothing of their personal lives. After seeing Amna's PBS interview, I hit 1-click. I've subsequently spent all day reading their son's book. Deep into it.
 
Just wow. One scary 22 yr old.
 
Ahhh... Stanford
 
UPDATE
 
Finished the book overnight. Yeah, just wow. Current issue of Science Magazine has reviewed it already.
 
 
Shortly after joining the staff of Stanford University’s student newspaper, The Stanford Daily, in 2022, freshman Theo Baker received a tip that there were potential problems with research published by the university’s president, neuroscientist Marc Tessier-Lavigne. Baker followed up, and his subsequent reporting prompted a formal inquiry that eventually led to Tessier-Lavigne’s resignation in 2023 and to the retraction of several high-profile research papers, including two published in Science. In his new book—How to Rule the World—Baker shares the experience of working on this story and reflects, more broadly, on Stanford itself, where powerful stakeholders—from tech industry leaders to academic entrepreneurs—train promising students to join the next generation of Silicon Valley elites…

What makes Stanford so different from other universities?
I showed up here as a coder. I was one of a handful of freshmen to jump through the first intro sequence of coding classes, and as a consequence, I saw inside this secret world that exists for the most promising students who are identified as the next trillion dollar startup founders. As a freshman, I was just close enough to peer into this world and to know that there were these slush funds and yacht parties and all of these extraordinary perks lavished on a very select few.

Stanford has really become this bleeding edge for a trend that you see across higher education right now, which is this sort of corporatization and monetization of students. So adults [interested in capitalizing on students’ ideas] are hunting relentlessly for a meal ticket. And the school, in turn, benefits from it because the more you have kids dropping out to start billion dollar companies—whether or not they’re actually going to be successful in the long run—the more that they’ll kick back their proceeds to the university and reflect that this place is the cradle of innovation that it claims to be.

Early on, you learned about an unofficial class called “How to Rule the World.” What was it about and how did it fit in with other ideas and attitudes you were encountering on campus?
There’s a secret class that takes place every week on the Stanford campus with 12 students who are selected through this cloak-and-dagger admissions process. It’s not an actual class. It is more like a secret club for the aspiring tech elite. This guy [the instructor] is playing the same game that everyone else around here is, which is, how do you get in with the next generation of future oligarchs early? And he has done this brilliant maneuver and effectively made them come to him.

The way that they’re learning to behave is exactly the reason why you see these cut corners pop up again and again in Silicon Valley. They are being taught that you have to get ahead at any cost. You have to move as quickly as you can. And it doesn’t matter if there are consequences, because if you win out in the long run, all bad behavior can be excused.

What was the initial allegation made about the president’s research that made you think, I have to pursue this story?
There had been these comments that began springing up on PubPeer around 2015 on a handful of papers that Tessier-Lavigne had been involved in. These commenters were pointing out places where there appeared to be anomalies, or irregularities, in some of the figures, particularly some of the Western blots. And there had not been any response from Tessier-Lavigne or the journals. This had all been happening right around the time when Tessier- Lavigne was first being considered for the Stanford presidency. And so I really didn’t think that there was going to be all that much to it. It seemed impossible to imagine that he would’ve gone through the whole vetting process and this wouldn’t have come up.

But that’s where I started. I began looking into these allegations that had been made on PubPeer. I worked with forensic image analysts, including the incredible Elisabeth Bik, to begin [investigating] that initial suite of concerns and then work from there progressively...

Did you learn anything that surprised you about the scientific process?
I learned a ton from this, some of which reflected very well on the scientific community. I think there are a lot of people who take issues of misconduct very seriously and see the integrity of data as paramount to the integrity of the scientific process. But I also learned things that reflect very poorly on the scientific community, which has been really reticent to confront some of these issues that have been allowed to fester for a number of years. And I think there’s some wider recognition of that problem now and of the complicity that journals and institutions have had historically in allowing flawed studies to remain in the scientific record and to allow credible allegations of misconduct to go without inquiry or a serious investigation.

In a few weeks, you’ll be a Stanford graduate. What’s next?

My focus right now is just trying to get this book out and hopefully starting some productive conversations. If you want to understand how Elizabeth Holmes happens, or how Sam Bankman-Fried happens, or how this whole “move fast and break things” philosophy works, you have to understand how the next generation of tech oligarchs are being trained.

This isn’t normal. None of this is normal. We’re investing huge amounts of power and authority in a system that does not have the guardrails to catch or ward off bad behavior. You see teenagers learning this philosophy from the beginning. And you also see how hard the fight for accountability is when reporting on this leader whose behavior was not fully confronted until it became public years later.
One riveting book.
California was once the site of the great gold rush that transformed America. “It was that population,” wrote Mark Twain, “that gave to California a name for getting up astounding enterprises and rushing them through with a magnificent dash and daring and a recklessness of cost or consequences, which she bears unto this day.” 

He termed his own era of American excess the Gilded Age. 

Yet the fortune generated by Silicon Valley in the past few decades has exceeded the value of all gold discovered during the first California boom two hundred times over, even adjusted for inflation, and concentrated the lucre in still fewer hands. Even the richest men of Twain’s time would find Elon Musk’s trillion-dollar pay package remarkable. 

Once a bucolic region dominated by farmland and horse trails, this little stretch of Northern California now sets the agenda for the planet. That sounds like an exaggeration, but it’s not. Every aspect of modern life is dependent on technology, and technology flows through here. The value of public companies based in the area is $14.3 trillion—greater than the GDPs of the United Kingdom, Germany, and India combined, with enough left over to cover the assets of every major bank in Africa. Private companies add at least another trillion. 

Silicon Valley gave birth to the chips and computers and internet that we all rely on in the twenty-first century. Technology became king. As Bob Martin, an influential software pioneer, put it a decade ago, “We rule the world. The world doesn’t know this yet.” Martin explained that “other people believe that they rule the world,” yet “we write the rules that go into the machines that execute everything that happens on this planet nowadays. No law can be enacted without software. No law can be enforced without software. No government can act without software. We rule the world.” 

Ten years later, the world may have taken notice. After all, the top tech CEOs in the world were the ones standing directly behind President Donald Trump at his inauguration while political leaders were shunted to the overflow room. 

Today’s tech tycoons are not dissimilar to the robber barons of Twain’s time. Wealth inequality is by some metrics greater in Silicon Valley than in any other region in the world; just eight households in Santa Clara and San Mateo Counties hold more wealth than the entire bottom 50 percent of the population of these counties combined, more than half a million people. Together, the top 1 percent in Silicon Valley control forty-eight times more wealth than the bottom 50 percent. 

Palantir, the data defense tech company cofounded by Stanford stars like Peter Thiel, is a Silicon Valley darling hoovering up many bright young engineers. Currently, its CEO, Alex Karp, makes more in a year than the entire company earns in gross revenue. This is possible because the company trades at well over five hundred times its earnings, thanks to Silicon Valley’s unshakable belief in exponential future growth. 

When the talented artificial intelligence researcher Ilya Sutskever started Safe Superintelligence, he launched with nine employees, a two-hundred-word placeholder statement, and zero articulation of a product, much less any revenue. The company was valued at $32 billion. Higher than the National Bank of Canada, the cosmetics giant Estée Lauder, and even the third-largest auto manufacturer in the world, Hyundai, which produces more than four million cars a year. SSI, meanwhile, has produced nothing. 

Thinking Machines, another AI company, raised $2 billion at a $10 billion valuation in 2025, although the pitch to investors “offered no information about a product or financial plans,” according to the Financial Times. Five months later, the startup was seeking more funding at a valuation of $50 billion or even $60 billion, Bloomberg reported. 

Silicon Valley runs on the assumption of potential. It runs on the notion that heights are limitless and hurdles along the way will inevitably be smoothed by the exercise of brute will. It runs on the idea that the people in these startups will eventually produce untold riches. 

So if this is a modern-day gold rush, the resource to mine is talent. And nowhere can you find more of it than Stanford University.


Baker, Theo. How to Rule the World: An Education in Power at Stanford University (pp. 3-5). (Function). Kindle Edition.  
 As I was finishing the book...
 
 
Theo is a hot media property this week. Deservedly so.
 
I have long had great love for the SF Bay Area (and California broadly). I first arrived in SF at the age of 21 in 1967. Lived in North Beach for a couple of years prior to moving to Seattle in the wake of the birth of my daughter Sissy. Subsequently lived in Birmingham AL, Tuscaloosa, Knoxville TN, Las Vegas, and then back to the SF Bay Area (Walnut Creek, Antioch). Moved to Baltimore in 2019.
 
During my last day gig (NV/UT Medicare QIO), I did a side hustle covering the digital health IT startup space as a "photojournalist." (I applied for a press pass to the HIMSS Conference on a lark, and, to my surprise, they approved it. I ran with it from there.) Spent a lot of time in Silicon Valley covering a wide variety of Health Tech conferences. So, I totally resonate with Theo's book.

Saturday, May 23, 2026

Friday, May 22, 2026

Jump Up, Hello Goodbye, Stephen Colbert

The most aggrieved man on planet Earth. The Hater-in-Chief.

 
 CODA