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The AI Daily Brief: Artificial Intelligence News and Analysis

Nathaniel Whittemore

The Future of AI Education

From Why Only AI Training Can Save the EconomyJun 16, 2026

Excerpt from The AI Daily Brief: Artificial Intelligence News and Analysis

Why Only AI Training Can Save the EconomyJun 16, 2026 — starts at 0:00

Hey guys, a quick note before we dive in. The episode you're about to hear was originally recorded as last weekend's Long Read Sunday Now of course, everything that happened between anthropic and the U.S. government and Fable being shut down on Friday night pushed that out. And basically we're now still waiting to see what the resolution of that should be. At the time I'm recording this on Monday night It does not appear like we're going to do a quick resolution to this. Although Anthropic is on site in DC and it sounds like meetings were had today, although there hasn't been too much reporting about them yet. In the meantime I'm taking my seven year old daughter to a World Cup game today, for which I am super excited And so I am sharing with you the bigig Think style episode that we had originally scheduled for Sunday. If some big news breaks, I will be back very soon with an update But for now, enjoy the show Today on the AI Dbbrief, we are talking about why only AI training can save the economy the AI Daily Brief is aaily podcast and video about the most important news and discussions in AI Oh right, friends, quick announcements before we dive in First of all, thank you to today's sponsors, KPMG, Section, Assembly, and Out Systems. To get an ad free version of the show, go to patreon. comash AI daily brief. Or you can subscribe and an apppple podcast. If you want to learn more about sponsoring the show, seend us a note at sponsors at Aiailybrief. ai. and while you're there, check out the new site. If there is any specific part of a specific episode that you want to share with someone, whether it's a number or some stat or quote There's a good chance that it is now there cut up and shareable for you. so go check it out Ai dailybrief. Ai. Now today we're talking about A theme which has been pretty much ever present in my entire journey with AI, which I think is now more existentially important, not just for the AI industry, but for the economy as a whole than it has ever been I'm talking about AI training AI education, upskilling, whatever you want to call it process by which we help people close the capability gap between what AI could be doing for them and the value that they are actually getting out of it Now this is about as bumbastic a title as you're ever going to get on the AI Daily brief But I'm going to try to stand on business for this one The short of the argument is that we're in a world where the relationship between AI lab revenue growth AI infrastructure buildout is the defining relationship of the American economy, and where in that context, we will increasingly find ourselves caught between, on the one hand, the AI labs need for ever increasing growth in token usage, and on the other hand, increasing scrutiny and limitations from enterprises My belief is that the only way to solve the two to provide both the labs what they need and the enterprises what they need to keep the whole party going is training So let me lay out the argument for you guys Part one of the argument is that the American economy just is the AI trade AI investment is not a sector story, it is the growth story In Q one of this year, GDP grew at two percent annualized, with AI driven investment contributing about seventy five percent of the increase AI data centers, hardware and networking hit one point four percent of US GDP in Q one, twenty twenty six doubling from zero point seven percent and making AI infrastructure the leading driver of US. private investment growth. Data from the Stt Louis Fed suggests that AI investment accounted for thirty nine percent of marginal GDP growth over the trailing four quarters, which is bigger than the tech sector's twenty eight percent contribution at the peak of the dot com boom What's more, excluding these investments, growth in the first half of twenty twenty five would have been zero point one percent annualized and near standstill In twenty twenty six alone, bigig tech AI CapEx spend will pass eight hundred billion dollars which some like AIZar, David Sachs have argued could represent a two and point a fivealf percent GDP tailwin this year and a three percent GDP tailwin next Now this infrastructure spend isn't coming from nowhere It was justified initially by the belief in the importance of AI in the future. And as time goes on, it is increasingly justified by specifically revenue growth from the labs That's the contract As long as token consumption keeps rising and rising fast enough, the capital keeps flowing In fact If you think about the difference between Q four of last year and the first half of this year in terms of the popular market narrative Last year from about mid August all the way through December biggest discussion on Wall Street was about an AI bubble And there were all sorts of different proximate reasons for that, comments from Sam Altman, the MIT Air quotes report that said that ninety five percent of pilots were failing There was something much bigger underlying it, that wasn't about narratives, but was instead about math Specifically seat math In short twenty to two hundred dollars a month times the number of addressable seats among knowledge workers was not enough revenue to justify trillions of dollars of infrastructure spending The tAam of AI when AI is sold as seats just wasn't going to cut it The shift, of course is that seats have in the era of viable agents It ceasase to be the core unit that matters when it comes to AI economics. The shift that we have all lived through is from an assisted seat based paradigm to an aentic usage based consumption paradigm Per person economics move from twenty to two hundred bucks a month to potentially thousands of dollars And the revenue evidence is clear. Anthropic had this insane ADX surge that catapulted it to a thirty billion dollars annual revenue run rate, which then jumped all the way up to forty seven billion doars by late May. This was driven not by all sorts of new people paying for twenty or two hundred dollars a month cloud accounts, but an insane amount of usage of cloud code Andanthropic wasn't the AI company experiencing this shift Open AI's revenue also jumped significantly in the first quarter, aided and abetted by their clad code competitor, Codex, which is their vehicle for delivering agentic tokens In the beginning of the year phanthropic, the number of enterprises spending a million dollars a year jumped from five hundred to more than one thousand in under two months But of course, this came with consequences. Big theme for the last month or so on this show has been the shift from the token subsidy era to the token scarcity era Now we don't know how much exactly the labs have actually been subsidizing their accounts, but recent estimates from semi analysis estimate that on the Caw two hundred dollar a month plan, the max possible spend was approximately eight thousand dollars a month worth of tokens. And on the Max chat GBT plan, the max possible spend was up at fourteen thousandars a month Now even if these numbers aren't correct, even if they're significantly off You're still talking about just absolutely huge subsidy as the amount of AI being consumed increases While those infrastructure projects lag in their capacity to increase the availability of AI because of delays that they're facing but also because it just takes a long time to bring that capacity online, the tried and true rules of economics apply, and market pricing and incentives start to shift The end of April beginning of May is really when we started to see this happen. GitHub Copilot was one of the first to announce a move to usage based billing. spepecifically calling out the fact that Aentic sessions were just fundamentally different than the way that they had built the previous pricing model around At Google IO, they announced a whole bunch of new pricing, actually bringing down the price of some of the premium tiers, but also adding usage limits for the first time after which you get shifted over to the API, in effect hiding a usage base shift behind a decrease in the base plan price One of the biggest dust ups between developers and anthropic happened when they started to shift all usage that happened on third party harnesses, so basically anything outside of clawed code or cork, to usage based billing as well And very quickly the consequences started to hit home on the enterprise side of the equation as well We've been living through twenty twenty five assisted AI budgets meeting twenty twenty sixs agentic AI reality Obviously, Uber has been the big held up example, first making news for blowing through their entire AI budget in the first four months, and eventually moving to a fif five hundred dollars a month cap per employee Other advanced AI using companies like Walmart did something similar This is what led me to argue, as I did on Twitter at the beginning of the month, that every AI business is now and for the foreseeable future, in some way, shape or form, a token efficiency business And you see so many examples of this One is you're seeing a lot of the harness companies start to really emphasize model routing In other words, a more sophisticated approach to routing certain tasks to cheaper, lower cost models, leaving the most state of the art models and highest cost for only the most important tasks After a factory announced a new model routing feature at the beginning of June, CEO Maton Grinberg said that thirteen million had been saved so far in the first thirty days of private preview. Now, other companies are just shifting models entirely Deep Seat came in as Ramp's top trending SaS vendor as companies like AI Startup Lindy have shifted off expensive American models and towards those cheaper Chinese alternatives. In addition to those cheaper Chinese alternatives, you're also seeing a lot of companies experiment with tactics like post training to roll their own alternatives with a specific industry or functional focus Cursors's compomposer two point five is performing at Ous fourty seven and GPT five five type of levels at a tenth of the cost And even vertical companies like Harvey are experimenting with more complex structures that can use post trains versions of open models like Kimi K two point six in concert with more advanced models like Opus to perform both at a higher level and at lower cost Now all of this got us to the freakout that I focused on for Friday's episode, the Citadel Securities Note, which showed the Silicon Data LLM token expenditure index, starting to roll over and point downward Now, as I explained on Friday, this chart actually isn't showing what people thought it was Specifically, it has nothing to do with overall demand or overall token volume or overall token expenditure. Instead, the index tracks the average price that customers are paying for a million tokens But because their data comes entirely from third party router companies, i. e, not the labs themselves, it's biased towards companies that are actively seeking out lower cost alternatives Still, it does tell part of the same story where companies, especially leading companies are looking for cost advantages for the first time And so we get to this equation what the labs need versus what enterprises will pay One of the most important AI questions right now isn't who's using AI, It's who's using it well KPMG and the University of Texas at Austin just analyzed one point four million real workplace AI interactions and found something surprising. The highest impact users aren't better prompt engineers, they treat AI like a reasoning partner They frame problems, guide thinking, iterate, and push for better answers. And the good news, these behaviors are teachable at scale. If you're trying to move from AI access to real capability, KPMG's research on sophisticated AI collaboration is worth your time Learn more at kpmG. com slash US slash sophisticated That's kpmg dot com slash US slash sophisticated. Here's a harsh truth Your company is probably spending thousands or millions of dollars on AI tools that are being massively underutilized Half of companies have AI tools, but only twelve percent use them for business value. Most employees are still using AI to summarize meeting notes If you're the one responsible for AI adoption at your company, you need seection Section is a platform that helps you manage AI transformation across your entire organization It coaches employees on real use cases, tracks who's using AI for business impact, and shows you exactly where AI is and isn't creating value With the result, you go from rolling out tools to driving measurable AI value Your employees move from meeting summaries to solving actual business problems and you can prove the ROI guessing if your AI investment is working Check out section at sectionai. com SEC Ti O n AI. com You know Assembly AI for having the most accurate streaming speech to text out there But they just went a step further and launched a full voice agent API. The idea is simple, one connection and they handle everything, the listening, the thinking, the speaking You just stream audio in and get your agent voice response back. We're talking about things like outbound sales calls that actually qualify leads customer support that handles complex requests without a script, scheduling agents that sound like a human assistant, and you can build one in five minutes with one API And importantly, their streaming model is the best at catching all the stuff that breaks on other voice agents, things like phone numbers, emails, names, and medical terms. And for those of you who are still in experimentation mode, there are no contracts and unlimited concurrency so you can actually test it out without any friction headad to assemblyai. com slash brief and try the live voice agent demo right there on the site, no sign upp needed This episode of the AI Daily Brief is brought to you by Out Systems, a leading Aentic Systems platform built for the enterprise. Organizations all over the world are building, orchestrating, and governing Aentic systemstems on the Out Systems platform and with good reason Out Systems open and unified platform allows teams to architect, deliver, and scale governed agentic systems with agility. Teams of any size and technical depth can use O Systems to build, deploy, and manage AI apps and agents quickly and cost effectively without compromising reliability and security Without Systems, you can rapidly launch ideas from concept to completion. It's the leading agendic Systems platform that is unified, agile, and enterprise proven, allowing you to accelerate growth, reduce operational friction, and deliver real enterprise impact with AI Out systems, Build your agentic future Already? even in their private market context The relationship between the lab's continued growth in token consumption, expressed as revenue and the amount of capital that is available for the infrastructure buildout, is incredibly important However, when anthropic and open AI IPO, the intensity of the public market pressure to show every single quarter Massive, and I mean massive growth in token consumption is hard to overstate Already, we live in a world where it doesn't matter that NVvidia grows its revenue by a significant amount. It has to dramatically outperform market estimates, or else its stock price tends to go down after quarterly reporting That sort of phenomenon is going to be even more aggressive around the leading labs, meaning that they will have to do whatever it takes. consuming more tokens Now on the other side of the equation, it's not that enterprises don't want to spend money on tokens. It's not that they don't want to get value out of AI But increasingly, if the CFO set becomes the most important force in the decisions being made around AI, there are some pretty serious implications for the AI company's ability to achieve that never ending growth that is so important, not just to their bottom line but to our overall economy Already, you've seen the labs acknowledge that their initial ideas that agents were just going to show up and all of a sudden take over a huge portion of knowledge work have kind of slammed up against the reality of human institutional inertia Perhaps the best expression of this is that over the last six weeks, both open AI and Anthropic have launched major consulting efforts focused around forward deployed engineering I applaud those efforts. I think they're a great step But I think that they're only part of the transformation we're going to see in how the labs think In short, there are two big realizations that are going to be hurtling towards open AI and anthropic specifically. The first is that as they dig in with all of their FDEs, they will discover that a huge portion of the value of AI is not going to come from a set of centrally planned agents built by the FDEs in concert with the software engineers inside enterprises. Instead, The value will come from many diverse knowledge workers of all different stripes buildilding and using agents well. There is a bottoms up agent experimentation that is going to absolutely be required for companies to get the most value out of AI, and that's not going to come from FTE efforts alone Now the second realization, if we're allowing ourselves to be a bit more cynical for a moment Even if some folks inside labs don't believe realization one. and don't think that the right paradigm is every knowledge worker off experimenting with their own agents There's a fairly decent chance that the token growth pressure will force them to act as if that's true anyway In other words, they'll figure out that they won't be able to hit quarterly token growth with a strategy that only gives leverage to a select few. and that demand expansion will require everyone building and using agents My prediction then is that over the next six to twelve months, we will see dramatic increases in lab investment in enablement, training, and expanding the user base and depth of usage Put differently, if everyone copies Uber and sets spending limits of fif thousand five hundred dollars a month per employee, then the labs have to do whatever it takes every employee spending fif thousand five hundred dollars a month And then Having the impact of that fif thousand five hundred dollars be so high that it makes sense for the enterprises to increase those limits Now this is not going to happen on its own One of the things that I am most worried about when it comes to enterprises moving into this token efficiency period is that that type of thinking And those types of caps come with a hidden cost Taps don't just limit spend, they shape what gets attempted. Budget scrutiny, even if completely understandable push enterprises and individuals within enterprises towards basic productivity type of use cases and away from the big unseemly experiments that are required for the next generation of economic value to be created I call this the known ROI bias If people aren't given permission and structure and sandboxes and encouragement to go out and see what new things they could create with a fleet of agents They're just going to try to do today's work a little bit faster or a little bit cheaper This will not unlock the full value of AI In fact, it will limit severely the value that the world gets out of AI And perhaps more pertinently for my predictions for the next six to twelve months, it will limit the amount of tokens that the AI labs can sell. And so we come back to this equation and my argument that the single and only thing that can solve for the needs of both of the categories of parties on either side of this equation is AI training resources at mass scale and high quality to move people from assisted to agentic AI and to help them learn to use agentic AI to uncover the next generation of use cases that unlock value that make the input costs seem negligible Unfortunately, the state of AI education is abysmal. It is actually just an insane market failure How little high quality AI training and education has come about in the last few years An EI AI survey from this year found that only twenty eight percent of organizations have managed to empower AI employees to utilize AI to actually change any sort of business processes. Data camp did a survey of more than five hundred enterprise leaders and found that while video courses are the most common AI training format They produce, as Data Camp puts it, awareness without confidence and adoption without judgment The World Economic Forum notes that the half life of skills is at a critical point, meaning that when it comes to AI education Content decays before a course catalog can even ship And guess what Things were already tough when we were just talking about prompt engineering And how that we're in the world of agents and agent management and agent building It is massively more complicated It's also incredibly more important Even if you don't agree with me about the intrinsic economic importance of AI training, I think at this point, it is very hard to deny that we aren't in the midst of a secular shift in what knowledge work consists of. Simply put, we are moving from a paradigm in which we do things to one in which increasingly we oversee synthetic intelligences that do those things for us Compting asssisted AI was a new skill but it was not a new knowledge work primitive. Managing agents, on the other hand is a new knowledge work primitive. every single knowledge worker in the future will need to be skilled in This is a lot closer to management training than it is to software training. Now, obviously, if you've been watching my moves this year, it's been pretty clear that I'm thinking about AI education and training a lot I've now released three different free self directed programs, the AIDB New Year's program claw camp in the midst of the open clock crze and aggent OS, which is sort of an updated agentic operating system program that takes a lot of the pieces of cllawcamp and moves them into the claw code codex type of paradigm Part of the reason why I've wanted to experiment with these sort of free self directed programs. is that I think that the scale of the need for this training is mass scale There need to be more free programs, there need to be more paid programs, there need to be more programs of every stripe in between And to be clear, there are some good educational resources out there. AI entrepreneur and educator, Riley Brown is constantly pumping out really, really great how to videos I often recommend his video about learning ninety five percent of codexs in just half an hour as a great place for people to start with that tool And you do have some companies like AIDB sponsor Section, who are doing their damnest to try to close the capability gap But it's just not enough And we're going to need more So what to do with this? Well, for my part You'll be hearing a lot more about some new initiatives coming soon, partarticularly with Superintelligent, where we're going to be in some ways returning to our roots quite soon. And more broadly, this is just a drum that I'm going to beating a lot more I think everyone has a role to play in this, but I think the most critical role as you can probably tell is going to have to come from the labs themselves So anthropic, open AI leaders, if you are listening to this, whether it's now or three months from now or six months from now, I can almost guarantee these are conversations you're going to be having If you want some ideas for what you can do with this and how you can in the process, not only help your companies But yes, save the entire American economy Well, you know how to reach out. for everyone else. being the shining examples that you guys are for the communities that you're a part of People's sense of the possible is shaped by what's around them And AIDB listeners I have found over and over again are the portion of the population who are helping everyone else see how powerful and exciting and dynamic and good AI can B Keep it up And I'm here to help For now that's gonna to do it for today's A Ieaily brief. Areciate you listening or watching, as always Until next time Peace.

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