The AI Daily Brief: Artificial Intelligence News and Analysis - The Coming AI Rules Battle
Episode Date: March 23, 2026AI is rising faster than any other issue in American political polling, and the White House just dropped a legislative framework that's already drawing fire from both sides — populist right crit...ics calling AI "profoundly anti-human" and Democrats saying voluntary standards won't cut it. The real question is whether this four-page opening move can hold the center as midterms approach and public anxiety about jobs keeps climbing. In the headlines: OpenAI plans to double its workforce with a major enterprise push, FedEx is training all 400,000 employees on AI, and Meta's internal agents are now talking to each other.For all the links referenced in the show, sign up for the newsletter: https://aidailybrief.beehiiv.com/Brought to you by:KPMG – Agentic AI is powering a potential $3 trillion productivity shift, and KPMG’s new paper, Agentic AI Untangled, gives leaders a clear framework to decide whether to build, buy, or borrow—download it at www.kpmg.us/NavigateMercury - Modern banking for business and now personal accounts. Learn more at https://mercury.com/personal-bankingAIUC-1 - Get your agents certified to communicate trust to enterprise buyers - https://www.aiuc-1.com/Recall - The API for meeting recording. Get Get started today with $100 in free credits at https://www.recall.ai/aidbBlitzy - Want to accelerate enterprise software development velocity by 5x? https://blitzy.com/AssemblyAI - The best way to build Voice AI apps - https://www.assemblyai.com/briefRobots & Pencils - Cloud-native AI solutions that power results https://robotsandpencils.com/The Agent Readiness Audit from Superintelligent - Go to https://besuper.ai/ to request your company's agent readiness score.The AI Daily Brief helps you understand the most important news and discussions in AI. Subscribe to the podcast version of The AI Daily Brief wherever you listen: https://pod.link/1680633614Our Newsletter is BACK: https://aidailybrief.beehiiv.com/Interested in sponsoring the show? sponsors@aidailybrief.ai
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Today on the AI Daily Brief, the coming AI rules battle, before that in the headlines,
Open AI plans to double its workforce with a big emphasis on the enterprise.
The AI Daily Brief is a daily podcast and video about the most important news and discussions in AI.
All right, friends, quick announcements before we dive in.
First of all, thank you to today's sponsors, KPMG, Blitzy, AIUC, and Super Intelligent.
To get an ad-free version of the show, go to patreon.com slash AI Daily Brief,
or you can subscribe on Apple Podcasts.
If you are interested in sponsoring the show, send us a note at sponsors at AIDailybrief.ai.
Now, one other announcement?
We are officially live with the first round of voting at agentmadness.AI.
The projects that you guys shared were so cool.
At some point this week, we will do a run-through of some of the projects.
I'll show a little bit more about the bracket and how it was put together,
which, spoiler alert, I let Claude and chat GPT debate so that it was not my call.
For now, though, go check it out at Agent Madness.A.I.
Like I said, voting is now live.
We kick off today with OpenAI bucking the AI layoff trend with a massive hiring plan.
The Financial Times reports that OpenAI plans to double their headcount this year.
That would bring headcount to around 8,000, requiring the equivalent of a dozen hires per day.
The new employees will be added to product development, engineering, research, and sales teams,
and Open AI also plans to recruit specialists to focus on what they call technical ambassadorship,
assisting enterprises to make better use of their tools.
This is a fairly significant shift from where Sam Altman had positioned the company coming into the year.
In a live stream town hall event in January, he said,
We are planning to dramatically slow down how quickly we grow,
because we think we'll be able to do so much more with fewer people.
Since then, Anthropic Surging Growth has challenged OpenAI's leadership
and CEO of applications Fiji Simo has delivered a quote-unquote wake-up call to the company on enterprise sales.
A little over a week ago, she told staff, that, quote,
we are very much acting as if it's a code red.
The net result is an urgent need to scale up in order to capture
the enterprise market. An unnamed executive from OpenAI told the FT that the success of AI
coding tools had, quote, opened up entirely new lanes of things we can do. They added,
it does change how you think about everything from your products to how you serve the market.
All of a sudden, the company kind of rotated on its axis. Jason Haw writes, I run eight AI agents
every day and I still think adoption is the hardest problem in this space. Open AI apparently agrees.
They're doubling their workforce in one of the roles they're specifically hiring for is helping
businesses actually implement their tools. An $840 billion company that still needs dedicated people
to get customers to use the product says a lot about where we really are. Adam GBT from Up and AI responded,
it feels like we are top of the third inning. The models aren't the problem, they're smart enough now.
Now it's about applying them at scale. AI enabling a process or workflow like we've been doing
is one thing. But reimagining and repaving that processor workflow as AI native is where transformational
change will begin to occur at scale. It goes slow until it goes really fast. I think that'll be
the story of 2026. To which Mark Cuban responded, if by repaving you mean reinventing, yes.
One of the challenges is that most corporate knowledge is still in someone's head. Knowledge is
far different than information. LLMs and agents can capture all the information it can touch,
internally and externally to the company. But there are things that you, me and everyone,
security guard, salespeople, whoever, do to make the things we do fit the way that we want them to.
None of that is documented anywhere. Now, that got into a whole longer discussion about the
nature of adoption, which I think is probably worth its own show. But I think Prinds summed it up
when they wrote, Welcome to the era of AI Capabilities Overhang, in which Open AI feels obligated
to hire specialists focused on technical ambassadorship to teach enterprises how to extract value
from AI agents.
One company that is trying to move quickly into this future is apparently FedEx.
The logistics giant is delivering AI training to every member of their 400,000 strong workforce.
The initiative began in December and is intended to make employees more knowledgeable,
efficient, and promotion-ready.
Accenture is partnered to deliver the curriculum, which is designed to be updated to keep pace
with changes in the technology. The program is tailored to individual employees includes
role-based training on the AI systems FedEx is putting into place. In addition, employees are
encouraged to take part in what FedEx is calling communities of practice, which includes use case
sharing as well as hackathons. Said EVP and Chief Data and Information Officer Vichel Talwar,
the more we invest in our talent being on the leading aspect of that learning journey,
the better off they will be, the better off we will be, and the better off the broader industry
is going to be. Now, you might be thinking yourself, this is just some random PR push from FedEx.
to get credit for doing this program, so why are you featuring it on this show? But there is actually
a specific answer to that. While I don't know the details, it sounds to me like what FedEx is designing
here is something actually fully bespoke and continuous, whether Accenture is the right partner
for that, who knows, but I do think that we are in a moment where the changes in AI have completely
outstripped any sort of traditional upskilling or certification methodology. I think the more that
companies think in these broad, expansive, and bespoke type of training approaches, even though they are
obviously going to cost much more than previous types of workforce development, the absolutely
better off they're going to be. On the other end of the spectrum and showing just the diversity
and how different companies are responding to AI, HSBC is apparently weighing deep job cuts. Bloomberg
reports that as many as 20,000 employees could be laid off as the bank bets on AI to cut headcount
in middle and back office functions. This would be a 10% headcount reduction for the global bank,
which has a huge footprint across Asia, Europe, and the Americas. Sources said that if the plans go
ahead, the layoffs would take place over three to five years as part of a medium-term transition
plan. More broadly, HSBC is expected by some to be a harbinger of deep cuts across the financial
sector as AI automates more of the work. Last year, a report from Bloomberg Intelligence predicted
that 200,000 positions would be eliminated by global banks over the next three to five years,
and a survey of banking CTOs conducted by Business Insider found that they expect 3% workforce reductions
on average. Now, this idea of headcount in middle management functions is, I think, relevant
for our next story, which is that according to the Wall Street Journal, Mark Zuckerberg is building
an AI agent to help him do his job. The WSJ reports that the agent is currently focused on making
information sharing more efficient throughout the company. The idea is that it can surface insights
that would otherwise require going through layers of management to gather. Now, this personal agent,
of course, reflects a much deeper initiative at the company. Meta is currently going through
two transformations that both enable one another. Management layers are being stripped back, and smaller,
flatter teams are being installed, with the emphasis on individual contributors.
At the same time, Meta is rolling out agents to turbocharge the efforts.
Meta currently has two personal agents deployed across the organization.
The first is called MyClaw, which, based on the name, is likely a modified version of OpenClaw.
That agent has access to chat logs and work files and can talk to colleagues on an employee's
behalf.
And interestingly, Meta is already seeing MyClaas talk to each other to resolve issues rather
than needing to interrupt their human owners.
There's even an agent-specific message board within the company to facilitate this agent-to-agent
communication. The second agent is called second brain and functions as an agentic knowledge base.
The agent was built on top of Claude and can index and query documents for projects.
Internal communications announcing the agent pitched it as an AI chief of staff assigned
to every employee up and down the organization. Sources said the tools are gaining momentum at
meta, boosted by the use of AI tools now being graded as part of performance reviews.
Now in the background, there are the rumors of 20% layoffs, and some have said that the rapid change
an intense focus on AI use, has fueled layoff anxiety in the ranks. Still others, though,
have said the flattened org structure and agent proliferation are breathing new life into the culture
there. Meta is apparently hosting AI tutorial meetings multiple times per week, as well as holding
frequent hackathons and encouraging employees to build their own tools. Some describe the atmosphere
as fun and empowering, reminiscent of the early move fast and break things era at Meta.
And boy, honestly, this is one of those stories that could be an entire main all on its own.
First of all, we've got AI use showing up in performance reviews, which I think is going to become
completely standard over the course of the next couple of years.
Second, we've got this agent-to-agent communication, which actually sounds like it's bearing fruit.
Third, we have, as I discussed on yesterday's show about jobs, a renegotiated relationship
between managers and individual contributors.
I think this actually is going to be, in practice, one of the more disruptive aspects of
AI, and so this kind of becomes a live-action case study of exactly that.
Next week, I'm releasing a large presentation called the State of AI Q2, and this theme of
leading organizations starting to separate from Laggard organizations is a big part of it.
For now, though, that is going to do it for today's headlines.
Next up, the main episode.
All right, folks, quick pause.
Here's the uncomfortable truth.
If your enterprise AI strategy is we bought some tools, you don't actually have a strategy.
KPMG took the harder route and became their own client zero.
They embedded AI and agents across the enterprise, how work it's done, how teens collaborate, how decisions move,
not as a tech initiative, but as a total operating model shift.
And here's the real unlock.
That shift raised the ceiling on what people could do.
men stayed firmly at the center while AI reduced friction, surfaced insight, and accelerated momentum.
The outcome was a more capable, more empowered workforce. If you want to understand what that
actually looks like in the real world, go to www.kpmg.us slash AI. That's www.kpmg.comg.com
us slash AI. With the emergence of AI code generation in 2022,
Nvidia Master Inventor and Harvard engineer Sid Pereschi took a contrarian stance.
inference time compute and agent orchestration, not pre-training, would be the key to unlocking
high-quality AI-driven software development in the enterprise.
He believed the real breakthrough wasn't in how fast AI could generate code, but in how deeply
it could reason to build enterprise-grade applications.
While the rest of the world focused on co-pilots, he architected something fundamentally
different.
Blitzy, the first autonomous software development platform leveraging thousands of agents that
is purpose-built for enterprise-scale codebases.
Fortune 500 leaders are unlocking 5X engineering velocity and delivering months of engineering
work in a matter of days with Blitsey. Transform the way you develop software. Discover how at
blitzie.com. That's BLITZY.com. Quick update on something I've been following.
AIUC1 is the first real standard for AI agents, developed with Fortune 500 security leaders to
basically define what safe, enterprise-ready AI agents should look like. A little while back, I mentioned
that 11 labs became certified against AIUC1. This week, two more big players joined, Finn from
Intercom and UiPath. What that certification means in practice,
is real-time guardrails that block unsafe responses, protection against manipulation, and a full
safety stack designed for enterprise environments. And that's why this matters. You've now got leaders
across three major AI agent categories, enterprise automation, customer support, and voice,
all certifying against the same standard. That starts to look less like a one-off and more like
the beginning of a real industry trend. It is a truth universally acknowledged that if your
enterprise AI strategy is trying to buy the right AI tools, you don't have an enterprise AI strategy.
Turns out that AI adoption is complex.
It involves not only use cases, but systems integration, data foundations, outcome tracking, people and skills, and governance.
My company, Super Intelligent, provides voice agent-driven assessments that map your organizational maturity against industry benchmarks against all of these dimensions.
If you want to find out how that works, go to B-Super.a.i.
And when you fill out the Get Started form, mention maturity maps.
Again, that's B-Super.a.I.
Welcome back to the A.I Daily Brief.
One of the things that was absolutely inevitable about 2026 is that the conversation around AI regulations, AI policy, AI's rules of the road, in the U.S., at least, was going to get much louder.
Part of that has to do with the fact that AI is just playing an increasingly large role in people's lives, meaning that there's more attention focused on it, and that cuts across everything from the experience people are having at their jobs to local politics, especially as this infrastructure buildout happens.
but this was also inevitable simply due to the schedule of American politics with the midterm
elections coming up this year. The question, of course, has been, given all of the other
policy debates that we have in this country, where was AI going to rank? What's clear is that
even if there are many other issues that still rank far ahead of AI, it's growing in significance
very, very quickly. Blue Rose Research's head of data science, David Shore, recently jumped on the
On The On Lots podcast to talk about the politics of AI, and one of the things that he noted,
in a companion Twitter thread, was that AI as an issue is rising in importance faster than any
other issue they track. Right now, it's ranked 29th out of 39 issues. At the very top of the list,
as you might imagine, are things like the cost of living, the economy, political corruption,
inflation, health care, taxes and government spending, democratic institutions, political division,
foreign policy, budget deficits, poverty, immigration, crime, Medicare, Social Security, etc. The
things that impact everyone in their day-to-day lives. And yet, in terms of its rise in importance,
it is absolutely right at the top, ahead of war in the Middle East, voting rights, political
corruption, privacy, unemployment, mental health, Medicare, political division, and more.
Already, in their research, at least, AI is ranked above issues including the environment,
climate change, abortion, and guns. And of course, this issue is not rising in a vacuum.
The context in which AI has to operate is going to shape what people think of it.
Shore writes, AI is hitting at a time when 61% of Americans say life has gotten less affordable
in the last year, only 25% feel confident in their financial future, and only 34% said they
have a secure job.
Understanding things fairly dramatically, Schoer writes, not a great starting place for major
disruption to the labor market.
This shows up in people being more concerned than excited about AI.
More than 50% are concerned about losing their job in the next year, and an even higher
percentage is concerned about losing their job because of AI.
Over 50% of people are concerned that either they or someone in their family will lose their job in the next year,
with 56% being concerned for that specifically because of AI.
The numbers just go up from there.
72% are concerned that AI will change the job market in a way that drives down wages for people like them.
77% are concerned about entire industries being eliminated by AI,
and 79% are concerned for young people entering the workforce and finding fewer job opportunities because of AI.
When it comes to political messaging, Blue Rose Research finds that people are very,
very suspicious of anyone who say everything is okay. Basically, there is very high conviction,
whatever it is rooted in, that AI is more likely to cause job losses than economic productivity
that benefits people. And when asked what the government's most important priority in managing
the growth of AI should be, when funding the creation of new jobs and basic benefits like health care,
even if that means limiting the amount that American tech companies can profit from AI,
beats the ever-living snot out of keep innovating so that America out-compete the rest of the world
in developing AI. Now, the way that this question was phrased is extremely,
likely to get this sort of response, but it's important to note that this is not just a left-right thing.
Even among Trump voters, funding the creation of new jobs and basic benefits, beat Keep
Innovating 2-1. Voters also aren't particularly keen on policies like UBI as the answer.
When asked whether the government should prioritize creating good-paying jobs or providing direct
income support, again, every demographic, by a factor of about 3-1, had create good-paying
jobs over providing income support. So that's kind of the context that we're coming into.
AI is growing as an issue of concern.
People are bringing their broader economic anxiety to that conversation,
and they seem to care a lot about their continuing to be good-paying jobs.
Now, if you needed evidence that the conversation around AI policy was heating up,
we've been seeing things on both the state and the national level.
On the national level, Republican Marsha Blackburn rolled out a 291 behemoth
in advance of the recent White House proposals,
seemingly in a way to position herself at the head of that conversation.
While Blackburn claimed that it was in line with the White House's goals,
The response of many was summed up by RSI's Adam Tierer who wrote,
Senator Blackburn's massive new AI regulation bill,
291 pages of near-endous mandates,
would make European technocrats blush with envy if it ever passed.
The layers of red tape contained in this proposal
would create a compliance cost hell for small innovators,
and the liability provisions would spawn an endless litigation hell
that would be a trial lawyer's dream
once they started filing frivolous lawsuits
based on the completely open-ended theories of harm throughout the bill.
But of course, not only is it not just federal policy
that the White House is paying attention to,
a lot of their focus has been on preempting state-level regulation.
There has increasingly been more consideration and engagement
from the AI companies around state-level legislation,
particularly out of New York and California.
Recently, representatives from companies like OpenAI
basically said that if federal policy can't get its act together,
they should start engaging more deeply with these state-level bills.
Meanwhile, political races in these state-level environments
have become a flashpoint for the politics of AI.
The Wall Street Journal recently covered the congressional campaign of Alex Boris,
who, based on his sponsorship of bills focused on AI regulations,
has become a target for super PACs who are against strict AI rules.
So that's a bit about the environment
that the White House's new national AI legislative framework comes into.
Announcing the policy on Friday,
the White House actually acknowledged the mixed feelings,
to put it mildly, people have about this technology.
In the announcement article they write,
the administration recognizes that some Americans feel uncertain
about how this transformative technology will affect issues they care about,
like their children's well-being or their monthly electricity bill.
For the White House, this is a clear signal of the need for, as they put it, strong federal leadership
to, quote, ensure the public's trust in how AI is developed and used in their daily lives.
The six points of the legislative framework outlined by the White House include one, protecting children and empowering parents,
two, safeguarding and strengthening American communities, which is the section that deals with
data center politics and the cost of electricity.
Three, respecting intellectual property rights and supporting creators.
4. Preventing Censorship and Protecting Free Speech.
Five, enabling innovation and ensuring American AI dominance.
And six, educating Americans in developing an AI-ready workforce.
Now, let's look into the larger policy document and see what they actually include here.
The first thing you'll note is that this is not some comprehensive document.
This is basically the polar opposite of Marsha Blackburn's 291 page tome,
although interestingly, their goals are not dissimilar,
in that both are trying to plant a stake in the conversation.
In terms of what's notable within the different categories,
there's nothing particularly surprising about the protecting children and empowering parents section.
This is, as we'll discuss in a minute,
one of the major concerns, particularly of some of the groups on the right,
who are most antagonistic with the White House about AI policy.
Section number two, safeguarding and strengthening American communities,
these are themes that the White House has been building on recently,
specifically with their ratepayer protection pledge.
The protection pledge was the Trump administration,
approach to getting AI companies commit to footing the full bill for the AI infrastructure
buildout, ensuring, for example, that people and communities with new AI data centers do not
pay increased electricity costs. This, I think at this point, is one of the least controversial
parts of all of this as witnessed by the fact that pretty much every AI company stepped up to
agree. The rest of it is kind of a grab bag of other policies. Also on the subject of AI
infrastructure, this directs Congress to streamline federal permitting for AI infrastructure
construction and operation, specifically giving developers the ability to develop or procure
on-site and behind-the-meter power generation. On the community side, it suggests for more law-enforcement
efforts to combat AI-related scams for vulnerable populations, and also to provide resources for small
businesses, including things like grants, tax incentives, and technical assistance programs.
One of the most delicate balancing act comes in Section 3 respecting intellectual property rights
and supporting creators. The White House reaffirms its position that training AI models on copyrighted
material does not violate copyright laws, but also says that they acknowledge arguments to the
contrary and supports allowing the courts to resolve that issue. They write that Congress should
consider enabling licensing frameworks or collective rights systems for right holders to collectively
negotiate compensation from AI providers without incurring antitrust liability. Any such legislation,
however, they write, should not address when and whether such licensing is required. It sounds to
me like they're basically trying to create a framework outside of courts for these sort of negotiations
to happen that is also outside of the antitrust enforcement framework.
And then one area that I again think is relatively uncontroversial,
is there a notion that Congress should consider establishing a federal framework
protecting individuals from the unauthorized distribution or commercial use
of AI-generated replicas of their voice likeness or other identifiable attributes?
While, of course, respecting that there are clear exceptions for, quote,
parody, satire, news reporting, and other expressive works protected by the First Amendment.
Now, the First Amendment and free speech is also the subject of part four.
This is the shortest section with just two bullet points.
Congress should prevent the U.S. government from coercing technology providers to ban, compel,
or alter content based on particle or ideological agendas.
And Congress should provide an effective means for Americans to seek redress from the federal
government for agency efforts to censor expression on AI platforms or dictate the information
provided by an AI platform.
Now, this is an issue that is going to come up.
A law working its way through New York would basically limit the ability for chatbots
to provide legal or medical advice.
While the bill is intended, it seems to give consumers.
consumers redress for getting bad advice, i.e. the ability to sue. In practice, it would basically
mean that LLMs could only provide legal advice to existing lawyers and medical advice to existing
doctors, with consumers being blocked from getting access to those questions. Given how many of
the positive stories of AI are people understanding their medical bills and health diagnoses for
the first time, obviously an overly heavy-handed version of this bill could be extremely damaging.
Now, going back to the White House framework, section number five is enabling innovation and
ensuring American AI dominance. One of the more interesting proposals here, Congress should not
create any new federal rulemaking body to regulate AI and should instead support development and
deployment of sector-specific AI applications through existing regulatory bodies with subject matter
expertise and through industry-led standards. Effectively, if this technology is as ubiquitous as it
seems and it's going to touch everything, rather than trying to create some new mega-agency that can
reasonably interact with every other regulatory body, just let the existing bodies develop new
AI-specific policy capabilities.
Section 6 I mentioned in a show over the weekend,
educating Americans in developing an AI-ready workforce.
Basically what I said about this for those who missed that episode,
is that although I am very glad to see this included
as a key part of the legislative framework,
it is very clear that they have absolutely no idea
what this actually is going to mean in practice.
It's basically a few hand-wavy bullet points,
like using non-regulatory methods to ensure existing education programs,
including apprenticeships, incorporate AI training.
That goes far less far than what I would like to see, which is a mass-scale nationwide upskilling effort.
Finally, in this four-pager, the White House added a seventh point that was not in the main article,
at least not as one of the named points, which is the longest and most fully articulated of any of the seven points,
which is about preempting state laws.
So what have been the responses?
Senator Ted Cruz seems to be stepping up to align himself with the White House and contra Marsha Blackburn,
as the Republicans wrap their hands around this issue.
Senator Blackburn said she, quote, welcomed the White House to this important discussion
and, quote, looked forward to working with my colleagues to codify the president's agenda,
while still saying that her Trump AI Act is the solution America needs.
Former chief technologist at the FTC, Neil Chilson said,
so it's Blackburn's Trump AI Act against Trump's actual AI framework.
Many other responses were basically looking to see whether the issue they cared about most was included.
Former Trump official John Schwepp writes,
love the emphasis on age verification and protecting kids online. And former Trump advisor Dean Ball
wrote, I was especially heartened by this section, the one on free speech and First Amendment protections,
and quote, heartily concur with the White House that Congress should act to prevent government coercion
over the free speech rights of AI developers and users alike. Others noted when their issues weren't there.
Cybersecurity dive reporter Eric Geller writes, one week after Trump's national cyber director said
the administration wants to make cybersecurity a core consideration for AI developers,
Trump issues an AI policy framework that doesn't even mention cyber.
Unsurprisingly, the framework doesn't have a lot of support from Democrats.
Representative Josh Gottheimer wrote,
While the framework takes steps in the right direction,
unfortunately, the White House fails to address key issues,
including strong accountability for AI companies.
Preemption only makes sense if federal law effectively replaces what states have built
with a standard that is truly comprehensive and protects Americans.
Simply put, this framework still has a long way to go.
Voluntary standards won't do the trick.
In addition to common sense guardrails,
we need serious solutions that address workforce challenges, better incentives for STEM education,
enhanced protections against deepfakes, safe and secure AI models and agents, and guarantees that
all Americans reap the massive benefits AI offers.
Godheimer concludes,
We are in a Cold War-era-style race with China and we must win, both for our economy and our national security.
If done the right way, the potential for areas like health care, education, and government
efficiency are boundless.
But we have to win it the right way.
He concludes by saying that he is working with his colleagues to develop a framework,
which presumably is in his estimation that right way.
CNBC's Emily Wilkins writes,
if the White House wants AI bills to pass,
they'll need pro-business pro-AI Dems like Gotheimer on board.
Based on the statement, they have a ways to go.
To be honest, though,
the Godheimer language leaves a lot more space for collaboration
than it might seem at first.
Even framing it as the framework still has a long way to go,
is very different from a rejection out of hand.
Indeed, in some ways, the White House's biggest political challenges
are coming from their right flank,
Steve Bannon's War Room account on Twitter,
quoted Joe Allen who said,
Now you look at who this White House National Policy Framework is enabling,
people like Google, people like XAI, Anthropic, and Open AI.
What is the predominant goal of every single one of these companies?
It is a transhuman future, and for some of them a post-human future.
They want to build machines that replace your work.
They want to build machines that have access to and are influencing or even controlling
your children.
They want to build machines that are the equivalent here on Earth to God.
It is profoundly anti-human.
And even if one views that as the far end of the spectrum of part of the conversation,
it is still far from clear exactly where the right is going to land when it comes to alignment around AI issues.
Still, some remain cautiously optimistic. Dean Ball, who, while a former Trump advisor around AI,
has been extremely critical lately of their engagement with Anthropic, writes the White House's
proposal for a nationwide AI law is a thoughtful document that will serve as an excellent
foundation for the legislative work ahead. I would be happy to see these principles have translated
well into statute become law. When someone asked, I don't understand much about policy, but is a
four-page document with lists of quite broad and unspecific recommendations really worth celebrating,
Dean responded yes and clarified, the major and crucial distinction between this document and an
executive order or another report like the AI Action Plan is that this document is self-consciously
the opening move in a long, multidimensional public negotiation over the legislation.
You must read it that way. And so in that spirit, we will close here with the idea that this
is the beginning of a much bigger conversation, one that I would love for you all to be involved in.
For now, that is going to do it for today's AI Daily Brief.
Appreciate you listening or watching as always, and until next time, peace.
