The AI Daily Brief: Artificial Intelligence News and Analysis - Grok's xAI Acquires X.com
Episode Date: April 1, 2025Elon Musk merged xAI and X.com (formerly Twitter), reshaping the battle for AI dominance. Valued at $80B, Grok now has exclusive access to real-time data from 600M+ active users. But is this genius or... financial engineering? Before that in the headlines: recapping Coreweave's IPO. Interested in the Disruption Incubator?Email agent@besuper.ai Brought to you by:KPMG – Go to https://kpmg.com/ai to learn more about how KPMG can help you drive value with our AI solutions.Vanta - Simplify compliance - https://vanta.com/nlwThe 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/1680633614Subscribe to the newsletter: https://aidailybrief.beehiiv.com/Join our Discord: https://bit.ly/aibreakdown
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Today on the AI Daily Brief, XAI has merged with X, and here's what it means for the broader
frontier lab battle. Before that, in the headlines, AI sees its first big IPO this year, and we talk about
how it went. The AI Daily Brief is a daily podcast and video about the most important news and
discussions in AI. To join the conversation, follow the Discord link in our show notes.
Welcome back to the AI Daily Brief Headlines edition, all the daily AI news you need in around five
minutes. We kick off today with another big story from Friday. Our main story is about X-AIDS
AI combining with X. This one is about Corweave's IPO, which unfortunately turned into a bit of an
anti-climax. The company's stock dropped by 2.5% at launch on Friday after fundraising targets
were heavily downsized. Corweave raised $1.5 billion from the share sale, but had initially
priced the IPO to raise over $2.7 billion. At one point in the planning phase, the stock
was to be priced at $55 per share, but ended up going out at just $40. The stock ended the day flat,
closing at $40 and receiving no IPO pop.
Bloomberg sources said that half of the shares went to the three largest investors in the deal,
with 90% going to the top 15.
One of those large investors was Nvidia who took a $250 million allocation to add to their
pre-existing 6% stake in the company.
CEO Michael and Trader said that without Nvidia, the IPO, quote, wouldn't have closed.
He also added if 27 others didn't show up, it wouldn't have closed.
And while the headlines are calling this a dud of an IPO and pointing to Corweave specifically
and AI more generally, what in traders pointing out is that this is a terrible moment to go public.
The NASDAQ index also had a 2.5% overall drop on Friday, contributing to a 13% decline this
month. Risk assets have been struggling mightily in a market that is characterized by insecurity
and volatility, and hyped up tech IPOs fall squarely in the risk asset category.
Now, to the extent that people are looking at what wasn't working about the IPO in the context
of CoreWeave and AI rather than larger market volatility, people are reading this either as a
potential signal for an AI infrastructure bubble, or they're pointing to some idiosyncratic warning
signs in Corweev specifically. On the AI bubble conversation, Corweave co-founder Brandon McBee is dismissive,
saying, this conversation around an AI bubble seems to come up every three to six months or so,
and then it drops away. What we see on the ground and what I'm sure you're hearing in Silicon Valley
is just consistent growing demand. Obviously, if you're a regular listener to this show, you'll know
that that opinion is much closer to my view than the idea that there's a massive bubble just waiting
to deflate. The coreweave specific.
problems might be a little bit more difficult to brush off. Corrieve already has quite a bit of debt
and may need to raise more to make up for the shortfall in the IPO. That is, of course, if they actually
needed that capital. The company faces repayments of $7.5 billion by the end of next year, although
they could also be able to refinance. Like many companies in this AI infrastructure space, they also
have a highly concentrated customer base. Microsoft represented 62% of their revenue last year,
with a further 15% coming from an unknown single large customer. Microsoft has already walked
away from their option to extend leases with the company. However, Corweave did seal a big deal with
OpenAI in the lead-up to the IPO. Bloomberg's Dave Lee commented that unlike other big cloud
providers, Corweave really doesn't have anywhere to hide. He wrote, while Corweave has some unique
vulnerabilities, the bigger picture here is that its accounts will finally lay bare in quarterly
reports, the brutal economics of an industry that is burning through an unprecedented amount
of cash in pursuit of some kind of lucrative application nobody has quite figured out yet.
Correve can't obfuscate growth in AI services by bearing the numbers within its filings or
offering imprecise measures of growth during calls with analysts, nor can it hide the interconnectedness
of the industry, where a handful of huge companies are simultaneously customer suppliers and rivals to one
another. If a bubble is forming around AI and data center buildout, as Alibaba Chairman Joe Si warned
this week, it's on the balance sheet of Corweave where the clues might emerge, written for the
first time in plain black and white for all to see. I continue to be skeptical of this type of analysis,
but if for no other reason that as a meta understanding of where the market is, it's worth
noting this is a fairly common opinion. Speaking of IPOs, Perplexity CEO Arvon Shridavas is denying
that the company is under financial pressure and needs to rush to an IPO. A few days ago, a Reddit user
called Nothing Ever Happen, aired out a theory on Perplexity subreddit, writing, I've recently noticed
perplexity making lots of changes to cut costs. My theory is that they're doing horribly
financially. Those charges included, an insider telling them that all funding for marketing
and partnerships has been paused, some gremlins in the service that led them to believe cloud
services have been migrated away from AWS, rumors of an IPO, and layoffs which the Redditor
discovered, quote-unquote, by digging into LinkedIn profiles and finding a lot of former employees.
The key complaint were changes to how the services uses auto mode, which now removes model
selection from the user during follow-up questions. The Redditor claimed that their follow-up
questions were always answered by the default cheaper model, rather than a high-end reasoning
model like OpenAIs 01. Unless we think that this is just one complaining user, Perplexity's CEO
Arvon Shrinivas took to Reddit to post a response, which he also copied over onto X as well.
Now, he didn't reference the original post, but did give some plausible explanations for each
of the points and included several others addressing complaints about degradation of service.
Regarding auto mode, Shrinivasa claimed that it was a UX improvement to remove the model
selection and follow-up questions.
He wrote that the goal is to, quote, let the AI decide for the user if it's a quick,
fast-answer query, or a slightly slower multi-step pro-search query, or a slow reasoning
mode query, or a really slow deep research query. The long-term future is that. An AI that decides
the amount of compute to apply to a question, and maybe clarify with the user when not super sure.
Our goal isn't to save money and scam you in any way. It's genuinely to build a better product
with less clutter and simple selector for customization options for the technically adept and
well-informed users. This is the right long-term convergence point. And by the way, I will say at
this point, that one of the big UI-UX complaints around these services has been model-selecter
type of issues. This is something that Sam Altman and ChatGBTGPT have discussed extensively as well.
Users hate the fact that they have to look through and understand which of the models is good
for different things, so I don't think it's some conspiracy theory to think that perplexity,
which is an extremely UIUX-focused company, is just trying to improve that part of the experience.
Now, maybe more pointedly, was this paragraph from Shrenovass who wrote,
are we running out of funding and facing market pressure to IPO? No, we have all the funding we've
raised and our revenue is only growing. The objective behind auto mode is to make the product
better not to save costs. I've learned it's better to communicate more transparently to avoid any
incorrect conclusions. Re-IPO, we have no plans of IPOing before 2028. Ultimately, when it comes
to perplexity, I think that their bigger challenge is that every other frontier lab also wants to be
the gateway to search. They're all working to improve not only their underlying models, but also
their search experience. Not more than any potential cost savings from auto model selection is going
to be the challenge that perplexity has to overcome. As of recent notes, perplexity claims that they've
crossed $100 million in annualized revenue. I still remember the days when that would have been
impressive. But I guess we now live in a world where AI is just growing so fast that even that
can't stem rumors. For now that that is going to do it for today's AI Daily Brief Headlines
Edition. Next up, the main episode. Today's episode is brought to you by Vanta.
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All right, AI Daily Brief listeners, today I'm excited to tell you about the
disruption incubator.
One of the things that our team sees all the time is a lot of frustration from enterprises.
There's a fatigue around small incremental solutions, a concern around not thinking big enough,
tons of bureaucratic challenges, of course, inside big companies.
And frankly, we just hear all the time from CEOs, CTOs, other types of leaders that
they want to ship some groundbreaking AI agent or product or feature.
In many cases, they even have a pretty well-thought-out vision for what this could be,
that their teams are just not in an environment conducive to that type of ambition.
Well, it turns out our friends at Fractional have experienced the exact same thing.
Fractional are the top AI engineers specializing in transformative AI product development,
and to answer this particular challenge,
they have, with perhaps a little bit of help from superintelligent,
set up what they're calling the disruption incubator for exactly this type of situation.
The idea of the disruption incubator is to give a small group of your most talented people
an overly ambitious mandate,
something that might have taken one to two years within their current construct.
send them to San Francisco to work with the team at Fractional, and within two to three months
ship something that would have previously been impossible. The idea here is that you are not
just building some powerful new agent or AI feature, but you're actually investing in your
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agent at besupor.aI with the word disruption in the title, and we will get right back to you
with more information. Again, that's agent at besupor.a.I with disruption in the subject line.
Welcome back to the AI Daily Brief.
Today we are discussing the state of the battle among the frontier labs for AI supremacy.
And the specific context for the conversation is late on Friday, we got news.
Elon Musk's XAI, which is, of course, the parent company of GROC, and the home of all his generative
AI adventures, had acquired X, which is, of course, the former Twitter.
The announcement post, which came out at 5.20 p.m. Eastern Time on Friday read,
X-AI has acquired X in an all-stock transaction. The combination values X-AI at 80 billion and X at 33 billion,
which is 45 billion less 12 billion in debt. Since its founding two years ago, XAI has rapidly
become one of the leading AI labs in the world, building models and data centers at unprecedented
speed and scale. X is the digital town square where more than 600 million active users go to
find the real-time source of ground truth and in the last two years has been transformed into one of the
most efficient companies in the world, positioning it to deliver scalable future growth.
XAI and X's futures are intertwined. Today, we officially take the step to combine the data,
models, compute, distribution, and talent. This combination will unlock immense potential
by blending XAI's advanced AI capability and expertise with X's massive reach. The combined
company will deliver smarter, more meaningful experiences to billions of people, while staying true
to our core mission of seeking truth and advancing knowledge. This will allow us to build a
platform that doesn't just reflect the world, but actively accelerates human progress.
I would like to recognize the hardcore dedication of everyone at XAI and X-Sat that has brought us to this point.
This is just the beginning.
Now, on the one hand, the companies are both private, and Elon presumably has the support of investors,
so he can pretty much do here what he wants.
Still, the deal is far from normal.
The Wall Street Journal reports, the new valuations were determined during negotiations
between the two Musk arms, which both had the same advisors, people familiar with the matter said.
The last time XAI raised money was in December, and it was thought to be valued.
at around $40 billion, so this deal implies a doubling in three months. That's obviously quite an
acceleration, but not necessarily totally out of sync with the world of AI. The journal points out
that this isn't the first time Elon has done something like this. Back in 2016, Elon used Tesla stock
to buy his solar energy company, Solar City. Musk is apparently a great dealmaker when he's
negotiating with himself. Still, if you hold aside the mechanics and the valuations, it's very clear
why this deal makes sense for the two companies. Musk has already been open that the Grock model
was trained on X data, and the chatbot is now embedded in the platform as a native assistant.
The two platforms are already deeply entwined in their user experience, their resources, and even
some of their personnel. For X, the merger takes the pressure off of it to thrive exclusively
as an independent social media platform. Advertising revenue has not been without challenges
since Musk took over in 2022. And while there have been signs that the numbers had recovered in the past
few months, X now has the additional economic value of simply becoming a data repository and a portal
for XAI. Opinions on this deal, as with so much in Elon Musk world, basically come down to what
you think of Elon Musk. The pro-Musk side is represented by posts like this one from Fernando Cal, which
writes, when Musk bought Twitter, everyone was confused. Why would a man focused on electric vehicles,
space travel, and neural interfaces want a social media platform? But Musk had a vision that's only
becoming clear now. He wasn't buying a social media company. He was acquiring a data gold mine.
X had something incredibly valuable that most AI companies desperately need. Real-time, human-generated
diverse data from 600 million active users. This is the perfect fuel for AI models, and it's exactly
what XAI needs to compete with OpenAI and Anthropic. Investor Chimath Palahapatia writes,
the currently best-ranked consumer AI model has just acquired the most complete corpus of scaled
real-time information on the internet. The data will be a part of the pre-training to make the models
XAI makes even more differentiated. This is a smart move in a moment when other model makers are caught up
and slow down in copyright lawsuits, like OpenAI for training data or pre-training quality like
meta. On the flip side is the common take represented by this one from compound 248. They write,
it's hard to know what to make of XAI buying X. My gut is its max of desperation. On the surface,
the deal values X flat to Twitter's 22 takeout value, despite massive underperformance on financial
metrics. Sounds like a win for X shareholders. But it is a stock deal, and X owners will now own
29% of combined company shifting from a near pureplay social media bet to an AI bet that's very
much on the comp, plus a deluded share in Twitter. Yes, XAI is a powerful model, but not unusually so.
XAI has de minimis revenue, is hemorrhaging cash, and its prospective business opportunities
seems very difficult, given the relevant competition, A, has a head start, B, is a murderer's row,
and C has existing business and go-to-market strategies to build on. X's $12 billion of very high-cost
debt isn't going away. It will be in perpetual cash-raising mode until that changes, which leaves
it at risk to the whims of the fundraising environment and the temperature of macro animal spirits.
I wouldn't bet against Elon, but I'd be very nervous as a combined company owner.
Now, honestly, this is actually fairly middle of the road.
A more reflective antagonistic take comes from Adam Cochran, who wrote,
In other words, Musk used his pumped-up X-AI stock to pay multiple times over value for X,
but still take an 11 billion loss on the transaction while screwing over X-AI investors
and to sell your data to his own AI company.
Also, Grock at 80 billion is an insanely dumb valuation.
The one thing Grock does well is live time from access to Twitter data,
but otherwise it's not a breakthrough model and it's terribly monetized.
Again, the middle of the road take really focuses on data.
Raul Paul from Real Vision writes, it was always about the data for the AI.
I talked about this when he first bought X and said it was a bargain back then due to the
AI training data.
And the AI is all about the robots and the robots are all about Mars, as is everything else.
I think that while the focus on data makes sense, people might be underestimating the value
of the integrated experience with Twitter content.
To the extent that these companies are all competing to be the next generation
search portal where people begin their internet experience, GROC offers something fundamentally different
that none of the competitors, Google, OpenAI, Anthropic, Perplexity, et cetera, offer,
which is the ability to integrate the meta-conversation into deep research.
I think I have a particular point of view on this, given that I've now built two podcasts,
for both of which a major value proposition is the fact that we don't just talk about the news.
We talk about the discussion around the news.
The thing that takes longest in producing both the breakdown in the AI Daily Brief is going
through and understanding dozens, if not hundreds of different opinions around anything that's
happening, in order to be able to synthesize that into a coherent view not just of what actually
happened, but what's likely to happen next based on how people are receiving that news.
This is, again, not commenting on any of the questions of self-dealing or valuations or anything
like that. I just think that the GROC Twitter merger has value beyond just a pre-training data play.
So what's happening, though, beyond GROC if we're using this as a way to catch up on the state
of the AI Frontier Lab battle.
While elsewhere in the AI space,
the biggest players seem to be duking it out
for leadership in the major verticals.
We have, of course, discussed extensively OpenAI's
new image generator,
which has been just absolutely sucking
all of the oxygen out of the room.
But because it was so dominant last week,
a lot of people missed the fact
that Anthropics' dominance in coding
seems to be contested for the first time in months.
The same GPT-40 update
that made ChatGPT so much better at image generation
also has made the model much better at coding.
According to artificial analysis's intelligence index, GPT40 is now the top non-reasoning model
overtaking Anthropics Claude 3.7 Sonnet.
Now, their index combines a range of different coding and knowledge benchmarks to come up with a blended
intelligence score, but digging into the coding specific scores, GPT40 is now at the top of the leaderboard.
At the same time, though, there's also a ton of chatter that actually, in fact, Google's Gemini
2.5 isn't even better coding standard.
During last week's release, the reasoning model was clearly a high-performing coding assistant based
on the benchmarks, but having tested it now for a few days, Venture Beat broke down why this model
could be a big step up for programmers. They noted that, like OpenAI's models, Google provides
full access to chain of thought reasoning. For programmers, that means you can follow the model
along precisely and audit their results, picking up and correcting errors along the way. Venturebeat
wrote, in practical terms, this is a breakthrough for trust and steerability. Enterprise users
evaluating output for critical tasks like reviewing policy implications, coding logic, or
summarizing complex research, can now see how the model arrived at an answer.
That means they can validate, correct, or redirect it with more confidence.
It's a major evolution from the black box field that still plagues many LLM outputs.
Many coders have also discovered the Gemini 2.5 Pro is much better at succeeding at one-shot tasks.
The strong reasoning is a possible explanation.
The model lays out its design and code structure before writing a single line of code.
Now, this could also be just an artifact of the observability,
allowing programmers to see exactly what the model is doing throughout.
Another benefit that could help is Gemini's 1 million token context window.
Anthropic is only now preparing to release a 500,000 token context window for Claude,
an upgrade from the 200,000 tokens they offer currently.
Large context windows allow bigger codebases to be uploaded, and more importantly,
to be understood by the model while working on coding problems.
One feature that also feels like it's under-explored at the moment is the new workflows
that are opened up by the multimodal reasoning capabilities present in Gemini 2.5 Pro.
Like the new version of GPD40, Gemini 2.5 can apply native reasoning to image inputs.
This is valuable for more than allowing these models to easily edit image.
Developers are starting to realize there's a lot of low-hanging fruit with this feature.
Yancey Minn, an AI Figma plugin designer, walked through a tinkering session with GBT40.
First, he discovered that the model can take interface code and generate an image of the interface,
then he found the model can modify the code based on visual alterations to the interface.
In this case, Min brushed over a tab in the image, and the modal changed the code to move the tab to the top of the screen.
Gemini 2.5 Pro supports the same multimodal reasoning, and basically the TLDR is that we're barely scratching the surface on what all of this can do.
Google CEOs and DARPA Chai is also hinting at a major update to agentic support, tweeting,
to MCP or not to MCP, that's the question.
Let me know in the comments.
As you might imagine, the replies were strongly in favor of Google supporting the universal protocol for agentic tooling.
And I actually think maybe to take a step back and sum this all up,
this is a really reflective evolution of the frontier model battle.
Increasingly, the competition is going to be less about general performance and more about
specific use cases.
We're evolving in such a way that people are actually integrating these tools at the core of new and existing workflows,
and they're picking the best models and the best interfaces and the best experiences and the best products for whatever it is they're trying to do.
Coding is clearly one of the breakout use cases, which is why there's so much competition around it.
Deep research style searching is also clearly going to be a core experience, and that's why the XAI X merger is more than just about Elon's financial engineering.
Ultimately, I expect over the course of the next year, not only continuous upgrades to the underlying models,
but more and more focus on these specific domain areas and specific use cases,
where the rubber is actually hitting the road when it comes to the business applications of the underlying technology.
Anyways, interesting stuff to kick off our week, but that's going to do it for today's AI Daily Brief.
Appreciate you listening or watching, as always, and until next time, peace.
