The AI Daily Brief: Artificial Intelligence News and Analysis - Is OpenAI Going to Kill Your Startup?
Episode Date: June 6, 2025OpenAI’s latest product updates have people asking if startups can still compete when big platforms add features like meeting notes and document search. Companies like Glean and Granola face new pre...ssure as OpenAI builds these tools into ChatGPT.Get Ad Free AI Daily Brief: https://patreon.com/AIDailyBriefBrought 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.Blitzy.com - Go to https://blitzy.com/ to build enterprise software in days, not months AGNTCY - The AGNTCY is an open-source collective dedicated to building the Internet of Agents, enabling AI agents to communicate and collaborate seamlessly across frameworks. Join a community of engineers focused on high-quality multi-agent software and support the initiative at agntcy.org Vanta - Simplify compliance - https://vanta.com/nlwPlumb - The automation platform for AI experts and consultants https://useplumb.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/1680633614Subscribe to the newsletter: https://aidailybrief.beehiiv.com/Join our Discord: https://bit.ly/aibreakdownInterested in sponsoring the show? nlw@breakdown.network
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Today on the AI Daily Brief, is Open AI going to kill your company, even if by accident?
Before that in the headlines, is human customer service a VIP thing in the future.
The AI Daily Brief is a daily podcast and video about the most important news and discussions in AI.
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For now, though, let's get into the headlines.
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 the latest from Clarna.
Quick TLDR on their AI transformation, if you haven't been following along.
A couple of years ago, the company set out to rip out their SaaS services and use AI
coding to replace them, and then the company also laid off around 700 customer service workers to
replace them with AI chatbots and voice agents. Recently, however, it seemed like they had been
going back to a more hybrid structure, where there would be a combination of AI service
and human customer service, and CEO Sebastian Semicowski seems to be thinking along those lines.
At the London edition of the South by Southwest conference, he said, two things can be true at the
same time. We think offering human customer service is always going to be a VIP thing. We can use
AI to automatically take away boring jobs, things that are manual work, but we are also going to
promise our customers to have a human connection. Basically, the plan is to combine the best of both
world, which seems to me to be exactly the pattern that we're likely to see in other areas.
Now, Semicowski also noted that the company's engineering positions haven't shrunk as much as
other departments, even though they're all using AI to increase their productivity.
He did note that, quote, what I'm seeing internally is a new rise of business people who are
coding themselves. I think that category of people will become even more valuable going forward.
Going a little bit deeper, Semitkowski was not arguing that all of a sudden business people are going to replace the coders,
but that by being able to code even in a very basic manner, they're better able to understand and communicate the specs of what they need to be built.
This would mirror the pattern that we're seeing, certainly in super intelligent and lots of other startups,
where feature discussions are now entirely had with prototypes thanks to things like Lovable and Bolt.
So for those keeping score at home, we are still very in the midst of this transformation.
But Klarna continues to be an interesting case study for those who want to see.
how this all might shake out.
Moving over to Redmond Washington, Microsoft has reshuffled their executive lineup for a big push
in enterprise agents.
Interestingly, Ryan Rolanski, the CEO of the LinkedIn division, has been appointed to lead
the teams in charge of the Office productivity suite.
Rolanski has been at the head of LinkedIn since 2020, leading a big growth push, and within
office he will be tasked with speeding up the deployment of AI tools and driving enterprise
adoption.
His new role will report into Rajas Jha, one of the company's top engineering executives who
given responsibility for consolidating AI tools and platform groups in January.
Charles Lamana, who runs the Dynamics 365 line of sales and business planning software,
will also be transferred from the cloud division to JAA's team.
It sort of sounds like Microsoft is bringing everything enterprise agents under Jha,
while appointing a proven leader to shepherd the agentic iteration of the office suite.
One question that's not clear is where Mustafa Sullyman fits in all of this shuffle.
Sullyman was, of course, the big ticket acquisition in March of last year and appointed the CEO of Microsoft AI.
His work seems now primarily focused on consumer applications of AI
with Silliman envisioning a personality-filled AI companion.
It's worth noting that we are dealing with wildly divergent trends with AI right now.
On the one hand, it is obviously incredibly potent and powerful for the enterprise,
and that's where a lot of our attention certainly is.
But consumers are using these tools in totally different ways.
Life coaching, relationship support, lightweight therapy.
These use cases are growing as fast as anything in the enterprise,
which can be kind of headspinning for a company that's trying to deal with all of that at once.
Moving over into the hardware side of the business, AMD has Nvidia in its sites with a new acquisition.
The chipmaker has acquired an AI software optimization startup called Breham for an undisclosed amount.
The company was acquired while it was still in stealth mode, but according to their bare-bones website,
they're working on, quote, enabling ML applications on a diverse set of architectures
and unlocking the hardware capabilities through engineering choices made at every level of the stack.
from model inference systems through runtime systems and ML frameworks to compilers.
If your brain melted with all of that jargon,
they appear to be creating software that allows AI models to run on a variety of different hardware.
In a press release, AMD said that the acquisition will help fulfill its commitment to,
quote, building a high-performance open AI software ecosystem that empowers developers and drive innovation.
Open is certainly the key word for the second-ranked AI chip manufacturer.
One of the biggest roadblocks for AMD hasn't just been about matching the performance of
Nvidia's chips, but rather overcoming compatibility issues. Most of the world's LLMs are built on
Nvidia's Kuta platform and optimized to run on their hardware and software. In that regard, Breham feels
like a natural fit to solve AMD's problem. In that sole blog post from their website published
back in November, they specifically referenced the chipmaker writing. In recent years, the hardware
industry has made strides towards providing viable alternatives to Nvidia hardware for server-side
inference. Solutions such as AMD's instinct GPUs offer strong performance characteristics, but
remains a challenge to harness that performance in practice, as workloads are typically tuned
extensively with Nvidia GPUs in mind. The issue is so prominent for AMD that CEO Lisa Sue drill
the point home during a recent hearing in Congress. She said that for the U.S. to remain a leader
in AI, there needs to be a commitment to open ecosystems that allow, quote, hardware, software,
and models from different vendors to work together. This accelerates innovation, reduces barriers to entry,
strengthens security through transparency, and creates healthier, more competitive markets.
So will this acquisition make a difference?
Only time will tell, but for now, that is going to do it for today's AID Daily Brief
Headlines edition. Next up, the main episode.
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Welcome back to the AI Daily Brief.
One of the more persistent memes throughout the recent history of Gen.
I, basically the post-chatCHAPT period, has been this idea of OpenAI killing all startups.
This was even the subject of a Y-combinator podcast episode back in 2023 called Will OpenAI
kill all startups?
Now, initially, the context was that in the wake of ChatGPT being released, there were a ton
of companies that were either, A, very, very thin wrappers on top of chat GPT, or B, trying to fill
in very specific gaps in the chat GPT product. One really notable example of this was the
Talk With Your Docs type apps of which there were a bajillion before chat GPT could interact
with PDFs. Now, obviously that was going to be a feature that was somewhere on the roadmap,
and that even ultimately led to these statements from Sam Altman.
fundamentally there are two strategies to build on AI right now.
There's one strategy which is assume the model is not going to get better.
And then you kind of like build all these little things on top of it.
There's another strategy which is build assuming that open air is going to stay on the same rate of trajectory.
And the models are going to keep getting better at the same pace.
It would seem to me that 95% of the world should be betting on the latter category.
But a lot of the startups have been built in the former category.
And then when we just do our fundamental job, which is make the model and its tooling better,
with every crank, then you get the OpenAI
killed my startup meme.
Now, this meme came up big time again
in the context of yesterday's product announcements.
This is what I had featured in the headline section of the show,
but the announcement had only just happened
so I hadn't had much of a chance to digest.
And as people did dig a little bit deeper into this,
this meme of OpenAI killing startups came back.
Sudhij Lappigari from Battery Ventures writes,
great set of product announcements from OpenAI today,
Enterprise Search, Glean, Meeting Note Taker, Granola, IDE, WinServe.
What's next?
Calendar, spreadsheet, email?
This validates that LLM is a commodity, and the real money and moat lies in the application layer.
So let's talk briefly about a couple of the features that were announced yesterday and the
startups that people pointed to as potentially threatened because of this.
The new connectors feature allows ChatGBT to interact with other data sources.
This is only available inside business accounts first, and this is a new connector.
basically gives that sort of chat with your docs experience that people have been interested
going all the way back to those rapper companies. More recently, though, the idea of enterprise
search as a use case for AI has been a huge priority for a lot of enterprise AI-focused companies,
notably Gleen, who was mentioned in that tweet. ChatGPT building that sort of functionality
natively into their core enterprise experience does bring up the question of whether you're going to
want or need an additional search experience outside that. Professor Ethan Malick wrote,
So OpenAI deep research can connect directly to Dropbox, SharePoint, etc. In my experiments,
it feels like what every Talk to Our Documents rag system have been aiming for, but with O3
smarts and easy use. I haven't done robust testing yet, but impressive so far. When it quotes a
document, that link actually takes me to the document, I think it's going to be a shock to the market,
since Talk to Our Documents is one of the most popular implementations of AI in large organizations,
and this version seems to work quite well and costs very little.
Now, of course, Glean is not just a talk-to-your documents company.
It is an all-in-one work-a-I platform that ranges from an assistant to agents and more.
But it is certainly the case that the more the core products like ChatGPT
start to nibble at the edges of these offerings,
the more confusing it's going to be for some percentage of enterprise buyers who think to
themselves, well, let's just stick with a company that's offering it alongside the core models.
If anything, the note-taker announcement seemed to get a lot more chatter.
This is, I think, because people absolutely love Granola.
Granola advertises itself as the AI notepad for teams in back-to-back meetings.
And even in a world of a million native meeting recorders with things like otter and
fireflies and fathom, granola has started to carve itself out a nice little niche.
If you go search around Twitter slash X, you can find lots of people talking about what they
love about Granola.
One of the benefits is that it doesn't place a bot inside your calls.
it just captures audio directly.
And so yesterday, people definitely took note
when OpenAI announced ChatGPT record mode.
Remember the tweet was,
we're rolling out ChatGPT record mode
to team users on MacOS.
Capture any meeting, brainstorm, or voice note.
ChatGPT will transcribe it,
pull out the key points,
and turn it into follow-ups, plans, or even code.
Roblo writes,
In other news, OpenAI is trying to kill Grinola
and every other AI meeting notes app.
Zach Kukoff writes,
Granola getting Sherlocked by OpenAI.
At some point, model providers
are going to need to decide if they want to be stable platforms or compete for every vertical.
Platform risk has never been higher.
Now, Zach also mentioned another thing in this same domain, which has been going on lately.
He says, on the heels of Anthropic throttling windsurf's access to Claude 4.
A couple of days ago, Varun Mohan, the CEO of Windsurf, tweeted,
with less than five days of notice, Anthropic decided to cut off nearly all of our first-party
capacity to all Claude 3.x models.
given the short notice, we may see some short-term Claude 3.X model availability issues,
as we have very quickly ramped up capacity on other inference providers,
but we believe we have now secured sufficient near-term capacity.
We've been very clear to Anthropic that this is not our desire.
We wanted to pay them for the full capacity.
We were disappointed by this decision in short notice.
A day later, Winserv's head of product engineering, Kevin Howe, writes,
Yes, Anthropic completely cut our Claude 3.X and Claude 4 capacity.
By way of backstory, he writes,
we had less than five days' notice and no choice in the matter.
We strongly expressed our disappointment and our desire to continue supporting and
promoting Claude 3.X and 4 via their first-party API.
Our goal has and always will be to provide the best product, period.
As part of that, we've always prided ourselves on providing access to all models.
Kevin goes on to say that they're working with other third-party providers
to try to bring the Claude models to their paying users.
Kevin also writes, quote,
we have significantly improved our agentic harness around Gemini 2.5 Pro and GPT 4.1.
By the way, Google AI Studio lead Logan Kilpatrick had responded to the CEO's post with a Gemini
handshake emoji windsurf response. Kevin concludes, ultimately, as any user can attest,
the magic of windsurf has always been in the product. It's important to power our product
with great models, but the real magic is in the deep contextual understanding of existing knowledge,
thoughtful U.X, tool integrations like previews and deploys,
customizations like workflows and memories, enterprise readiness, jet brains, and the list goes on and on.
And this is exactly the question. In the new world that we operate in, what are the moats?
Going back to Zach Kukov's tweet again, remember he wrote,
at some point model providers are going to need to decide if they want to be stable platforms
or compete for every vertical. Battery Venture suit, he writes,
this validates that LLM is a commodity and the real money and moat lies in the application layer.
This certainly seems to be the pattern that the frontier labs, at least the startup versions, Anthropic and OpenAI, are embracing.
Yes, obviously they continue to compete for model dominance.
Anthropic, for example, has really leaned into the fact that it has the preferred coding model.
But these companies are also releasing actual applications.
They are not just playing the role of platforms.
OpenAI has slowly but surely been releasing a set of what are effectively consumer applications that live inside ChatchipT.
One might consider image generation a version of this, but certainly deep research, operator,
now codex.
These are OpenAI's first forays into owning the application layer, not just the model layer.
Similarly, Anthropic is not just interested in being the model provider.
With Claude code, they are directly competing with some combination of the Latter-day IDEEs
and the vibe coding platforms.
Again, it's pretty clear that they value owning some part of the application layer and the relationship
with customers. There are really big implications for what the Frontier Labs decide to do vis-à-vis
agents. The single most dominant theme in venture investing right now is vertical AI agents,
verticalized based on specific sector or specific function. The question is how many of those
are the Frontier Labs and Hyperscalers going to go after? And what, if anything, can actually
differentiate and allow those companies to become integrated in a way that they're not just eventually
punched out by those bigger players. There was an interesting discussion from about a year and a half
ago on Hacker News around what is a 2024 to 2030 moat for AI. One of the most popular answers
said the moats are network effects, switching costs, economies of scale, low-cost producer, and brand.
And what you'll notice is not here, and this has become kind of conventional wisdom at this point,
is unique or differentiated technology. Basically, there is a sense that technology itself is getting
commoditized. And so it will be other things that allow companies to compete. I also saw this post
from Enterprise V.C. Ashugarg, who writes, I had lunch with a founder last week who pitched me on their
AI for operations platform. I stopped them three slides in. General Purpose AI isn't cutting it anymore.
DeepSeek's January breakthrough told us something important. Efficiency and performance can coexist a lot
earlier than most people thought. Startups are now excelling not by scale but by focus. They're building
vertical AI that deeply understands the messy high-stakes workflows in sectors like healthcare,
finance, and defense. Specialization is the new competitive advantage. Three patterns I'm tracking
across successful vertical AI startups. First, they pick massive but high friction and high-value
workflows. AI for sales or AI for operations is too broad. What's effective is focusing on
urgent complex processes. Second, they build more than model wrappers. They create proprietary
feedback loops and data assets that compound over time. This instrumentation is what turns a one-off tool
into a durable, defensible product. Third, they expand from beachheads of earned trust. They wedge into
multibillion-dollar industries by solving problems in the hardest, least glamorous corners. From there,
they earn the right to expand and unlock bigger Tam over time. I don't know if that's the exact answer
or the only answer, but I do know that whatever the answer is to this, it's going to shape how the
industry evolves over the next several years. Browser company CEO Josh Miller writes,
Weird convergence in tech. Notion adds AI research, meeting notes, enterprise search. So to at last
C-N, Grammarly, Coda, Glean, and Granola. OpenAI buys WinSurf and Codex, GitHub, and Google
follow. Browsers are next. Is the future this obvious? Everyone's converging. He continued in
another tweet, it feels like everyone is bundling into a handful of AI super apps of sorts.
Coding, IDE, agent, etc. Work, docs, enterprise search meeting notes. Assistant, AI chat,
search browser, etc. The point is, things are going to get more or not less messy.
Companies are going to find themselves in competition in ways that they didn't anticipate.
And we are just now figuring out what the post-technology moat world looks like.
If there is any good news for startups, it's that these moments of chaos and transition
tend to benefit the nimble more than the big and lumbering.
And so who knows?
The changes in moats may be exactly to some of these new startups' tastes,
if they can just figure out what the new moats are going to be.
I think it's too early to say that OpenAI is going to kill all the startups,
even that they are now competing with by virtue of the announcements yesterday.
but things certainly just got even more interesting.
For now, that is going to do it for today's AI Daily Brief.
Thanks for listening or watching, as always.
And until next time, peace.
