# The New Enterprise Battle Over Who Owns the Model — Transcript (2026-07-16)

https://aidailybrief.ai/e/2026-07-16 · Listen: https://pod.link/1680633614

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[00:00:00] Today on the AI Today on the AI Daily Brief, Brief, the month of model continues and businesses might wanna pay attention to this new open weight model introduced yesterday. Before that in the headlines

Apple hunting for a chip acquisition, Microsoft competing with OpenAI and Anthropic, and Cursor also getting deeper into the model game. 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, Rackspace, Airtable.

To get an ad-free version of the show, go to patreon.com/aidailybrief, or you can subscribe on Apple Podcasts And to learn more about sponsoring the show, send us a note at sponsors@aidailybrief.ai. 

Welcome Today's one of those days where the headlines part of the episode actually has a pretty coherent theme with the main episode. Because friends, we are in our model era The Information recently reported on an all-hands meeting that Cursor held back in May, where CEO Michael Truel laid out the future direction for the company.

[00:01:00] The meeting The meeting took place a couple of weeks after the SpaceX deal was announced, which at the time was a compute and training partnership with an acquisition option, although even then it seemed pretty likely that the deal would be finalized after the SpaceX Truel Truel told staff that Cursor would aim to become a top-tier model developer in their own right not exclusively limited to AI coding

Indeed, in the short term, he aimed to produce a state-of-the-art model by the end of the year and by 2027, he wanted to accrue a significant compute advantage and actually push the frontier forward. Truel also apparently acknowledged some unease among staff about the SpaceX acquisition.



he described Cursor as being in the midst of rapid change and significant growth, and promised to provide more clarity around the deal as it developed. Truel also explained that SpaceX wanted to leverage Cursor's brand, existing enterprise relationships, and larger go-to-market team.

Now, subsequent Now, subsequent to this, we've seen the release of the first SpaceX AI model trained in partnership with Cursor in Grok 4.5. And holding aside recent controversy around data retention, the actual model itself has been well-received and seems competitive, especially as we get into more advanced model [00:02:00] architectures where companies are pairing state-of-the-art and frontier with slightly less performant but slightly more affordable models

Behind the scenes, Cursor is also rumored to be working on a competitor to Claude Cowork, which would be their first big expansion beyond coding

Now it's very clear that, Elon and SpaceX AI have big plans for this integration

And for those who have been paying attention, this is more evolution than revolution given that Cursor had already decided as early as the end of last year model development game was going to have to be a game they played still we have now confirmation that all of the signals we're seeing from outside are what they're talking about inside

And I think as consumers, you gotta think that this just means more quality options for us. So I'm excited to see what they do

Now, Now, speaking of SpaceX on the market side, the company's stock dipped below its IPO price for the first time. On Wednesday, SpaceX traded down to $133 breaking through the $135 IPO price for the first time. It It did recover very slightly to close the day at 135 and 27 cents, but the stock is now down 33% from its all-time high, and Elon Musk has lost his trillionaire status

Musk, of course, doesn't seem all that concerned, focusing [00:03:00] instead on the next Starship launch. Meanwhile, there are plenty of bears pointing out that insider lockups won't even start for another month The more significant implications of this than anything happening in the SpaceX world may be actually around what it means for other AI companies looking to IPO.

Last Last we had heard, OpenAI were increasingly inclined to wait until next year for their IPO plans. As of late June, advisors were reportedly telling Sam Altman that they thought that they were unlikely to achieve his target of a trillion dollar market cap. Anthropic, on the other hand, seemed to still be on track for an IPO in the fall.



Bloomberg reports that Anthropic has appointed investment banks to lead the offering and are setting meetings with investors over the coming weeks. Anthropic had been targeting an IPO as early as September or October

which could still be possible

The The company has also added a couple billion dollars in a revolving credit facility, sending all the signals that they are in fact gearing up for a run at the public markets. Still, it feels like the next few weeks are going to be an extremely important period as Anthropic will be meeting with public investors to 

test the waters and see whether an IPO is viable at this time



Moving back to models, NVIDIA has [00:04:00] released another new open source model, this time attempting to fill a missing niche. The model, called Cosmos 3 Edge, is a small physical AI model weighing in at just four billion parameters. it's designed to be run on edge devices that are physically installed in robots, such as NVIDIA's Jensen hardware, which also saw a product refresh this week.



the model takes a dual approach to robotics, able to function as both a world model as well as a vision language model similar to standard LLM architecture. Now, last Now, last month, NVIDIA's release of Nemotron 3 Ultra was pretty timely. That model was a larger and more capable version of their open model family, addressing the demand for powerful and cheap US-based models to deal with spiraling token budgets

This time, NVIDIA's new model for physical AI arrives as another wave of robot designs are unveiled. Last week, 1X previewed the new version of their Neo humanoid with superhuman hand movements

Nvidia themselves are striking up a ton of partnerships across the space, including an expanded partnership with Toyota. After working together on self-driving cars in recent years, the partnership will now include robots, smart cities, and automated factories.



now now as a slight detour, one thing that I do keep a bit of an eye on is everything going on with physical [00:05:00] AI right now, obviously the main focus of most of our discussions here is in the generative LLM world with a particular bias towards what matters at work.

But you have to think that over the next few years We're gonna have a lot more context to focus on AI One really interesting example of that of a company that just launched is called Chip.



Chip is honestly one of the first new takes we've seen on a family vehicle for some time Now golf cart style smaller vehicles have been getting increasingly popular over the last couple years



but Chip kind of takes things to the next level



The idea is that it combines AI and autonomy

to more officially turn your car into a robot that can do things on your behalf live, the company just went live and the initial launch video shows examples like a father at a soccer game sending Chip to run errands and pick up snacks

to go park itself after the couple decides that they're gonna take an Uber home from the bar

And clearly the idea is to rethink what a vehicle can actually do



You can check it out at the just launched chipmotors.com



But as a herald of the type of ways we're gonna see AI integrate itself into the physical world in the coming years

Now, speaking of chip, but a very different type of chip, Apple is apparently shopping [00:06:00] for acquisitions to build AI server chips. According to the information, Apple is quite far along in an effort to buy up a chipmaker. They've reportedly spoken with bankers about funding possible deals and have approached semiconductor startups to gauge interest.

Now, Apple has famously shied away from big acquisitions, preferring to develop capacity internally. in fact, their biggest acquisition ever is the Beats deal in twenty fourteen, which cost just three billion dollars There is a sense that the AI era might be changing their tune on that

And the information speculates that their most recent push grew out of a realization that Apple doesn't have the technology they need to support AI product



The M series chips have been a massive hit when it comes to local inference in the prosumer market, i.e. selling out Mac Minis. but Apple relies on the same M2 Ultra chips to run their AI servers, and they might not be up to the task as Apple rolls out AI Not only did Apple contract with Google to develop the models that power Siri, they're also outsourcing server capacity to Google Cloud running on Nvidia chips Apple did have a solution in development, a server-grade chip codenamed Baltra, which was expected to ship this year, 

But that project has reportedly been delayed. Now, this could end up being a verylarge deal if [00:07:00] Apple can find a suitable acquisition target. But even if the company is willing to pay up

The selection of proven chip makers is pretty slim. Nvidia just paid twenty billion to take Groq off the board, and Cerebras is currently valued at forty billion in public markets

Apple has been working with Broadcom on server chips since 2014, but that company's $1.8 trillion valuation, which would mean a merger rather than an acquisition, which not only would be not particularly Apple-y, but would also come with a huge amount of antitrust scrutiny. Earlier, there were rumors of Tenstorrent fielding acquisition offers from Broadcom, although that was later denied, and that could be a natural fit given that legendary chip designer and CEO Jim Keller worked at Apple in the late 2000s At this stage, there's no solid rumors.

All we know is that Apple is in the market to buy their way back into the AI race, which will be music to Apple fans' ears Now, our last story today is actually kind of a setup to the main episode. Microsoft is preparing their sales teams to compete directly with OpenAI and Anthropic, training them to emphasize the drawbacks of the major model labs.

According According to Bloomberg reporting, Microsoft leadership laid out the plan in a department-wide meeting on Tuesday. It was framed as the new strategy for the [00:08:00] fiscal year that began this month. Sales staff were instructed to push the efficiency and cost-effectiveness of Microsoft's in-house MAI models compared to their rivals, and Microsoft's vertically integrated AI stack was also highlighted as a key selling point.

Selling against Claude appears to be the initial focus, and Microsoft is increasingly sidestepping overall model quality

Instead, one executive reportedly told sales staff to say that when it comes to performance in Microsoft's Office Suite specifically, Claude is, quote, "slower and less accurate and lacked the proper security integrations." Microsoft can point to the fact that customers have already begun using the MAI models in Copilot and might not have noticed the difference.

Earlier this month, Bloomberg reported that Microsoft had begun switching some Copilot functions over to MAI as a cost-cutting measure OpenAI and Anthropic



this sales, now this new sales pitch aligns directly with Satya Nadella's recent commentary on the risk to corporate data in the AI era. The not-so-subtle subtext of this post andone that he published a couple of weeks ago, was that companies shouldn't trust OpenAI or Anthropic with their data because both of those companies have an incentive to build competing services

But it also feels to [00:09:00] me

Like this pivot is in part about giving Microsoft a foot in the door with their own models before pushing customer-specific fine-tuning as an upsell. Last month, Microsoft AI CEO Mustafa Suleyman laid out this long-term plan with theintroduction of Microsoft Frontier Tuning

Now, as we'll see from the main episode, this idea of enterprises tuning their own models is something that a number of labs are going to be pushing as a major theme for the second half of this year. what sort of enterprise uptake of that there is remains to be seen, but it is certainly going to be in the conversation And interestingly enough, it was not Microsoft that was the first company to announce this sort of fine-tuning, but Thinking Machines Lab back at the end of last year with their Tinker API

Well, Tinker just got a big new update today, and that is gonna be the subject of our main episode. So with that, we'll close the headlines and head on over to the main 

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Welcome back to the AI Daily Brief. Today, the month of models Welcome back to the AI Daily Brief. today, the month of models continues. And for the casual observer, this first one we're going to talk about [00:13:00] could, at first glance, be a little underwhelming. What we'll see, though, throughout this episode is that this is actually part of a much more significant set of trends, and I think particularly for enterprises, 

is really worth paying attention to

Thinking Thinking Machines Lab has released their first large language model. Called Inkling, the model is built on a mixture of experts architecture with nine hundred and seventy-five billion total parameters and forty-one billion active parameters. It supports a million token context window and reasons natively across text, images, and audio.



Now TML, which is of course the spinoff lab built by former OpenAI CTO Mira Murati after she left that company says that this is the first in a family of models they plan to release, including a twelve billion parameter model called Inkling Small, which was also released in preview on Wednesday

Now for context

At 975 billion parameters, Inkling is quite a bit smaller than the 1.6 billion parameters of DeepSeek V4 Pro, but a little larger than the 750 billion parameters of ZAI's GLM Importantly, TML pre-trained Inkling from [00:14:00] scratch, and aside from a small bootstrap distilled from Kimi K 2.5, the rest of the fine-tuning run was based on a set of human-created and synthetic data collected by TML

They wrote, " "We We trained Inkling to be a broad, balanced foundation model, strong across many domains, flexible enough to adapt. Inkling is not the strongest overall model available today, open or closed. Instead, a combination of qualities make it, a good open weights base for customization.

Multimodal capabilities, efficient thinking, and availability on Tinker for fine-tuning."

And indeed it is that availability which as we'll see is the most important part

Still, to get a sense of where this ranks when it comes to performance a fair way to put it would be to call it somewhat competitive, but certainly not state-of-the-art across a range of different benchmarks



On On humanity's last exam, which measures knowledge and web search, it scores twenty-nine point seven percent without tools and forty-six percent with. This is ahead of Nemotron 3 Ultra from NVIDIA, roughly in line with KimiK two point five, but around ten points behind KimiK two point six, GLM five point two, 

and GPT five six [00:15:00] Sol, and around twenty points behind Fable 5. On coding, Inkling scored fifty-four point three percent on SuiteBench Pro and sixty-three point eight percent on Terminal Bench two point one, again putting it ahead of Nemotron and K two point five, but a little behind K two point six and at a significant shortfall compared to GLM five two, five six Sol, and Fable 5

On GDPVal, which measures real-world tasks and is a strong test of tool call execution, it scored 1238 placing it ahead of all major open models other than GLM 5.2 and DeepSeek V4 Pro, but a long way behind 5.6 and Fable 

T- TML T- TML also chose to highlight Inkling scores on some

of the audio and vision benchmarks, which typically aren't published for frontier models. On audio, it seems well ahead of most open models, a match for Qwen 3.5 Omni+ and pretty close to Gemini 3.1 Pro, which is notable for its multimodal trading. And on vision, it's roughly a match for Kimi 2.5 and only slightly behind K 2.6 and Gemini 3.1 Pro

Artificial analysis gave Inkling a score of forty-one on their intelligence index, Ranking 19th behind Kimi 2.6, DeepSeek V4 Pro, [00:16:00] and Minimax V2.5 Pro, and ahead of DeepSeek V4 Flash and Nemotron 3 Ultra. It's 18 points behind FiveSix Soul and 19 behind Fable 5 AA did note very strong token efficiency compared to open weights leaders, averaging around two-thirds as many tokens per task as 522.6 and DeepSeek V4 Pro

And And yet, as regular listeners well know, benchmarks don't usually tell much of a story

Unfortunately, Unfortunately, although there aren't all that many first impressions, the ones that we have aren't great. Professor Ethan Mollick wrote, " "Happy Happy to see a new open weights model, but so far Inkling is pretty rough in my tests. Not close to frontier Chinese open weights models."

As one example, here it is failing to pass the LEM test done by every frontier model since DeepSeek-R1 and Sonnet 3.5

Ethan followed up, " Are people actually trying Inkling? I can't seem to get it to work solidly on any of my tests, even on extra high, and the chain of thought goes crazy at even simple requests. Am I missing something?"

Dreams ASI was even more harsh writing, " Thinking Machines should rename to Lobotomized [00:17:00] Machines. First impression of Inkling feels like a GPT 5.2 that's less accurate. Corporate guardrails galore, plenty of unnecessary refusals, and treating the user as by default an adversarial prompt injector

LaSonde Scaling 01 writes, " "Benchmarks Benchmarks don't look that great. It's basically another Kimi K 2.6 and loses to all closed models in GLM 5.2. This makes it more feel like they are rushing this release before Kimi K3 and DeepSeek But But this is not the only interpretation



Zhang writes, " This is going to be an important model when we look back in a few years. The world needs open LLMs from as many players as possible. given TML's talent, know-how, funding, and compute, they will soon reach Opus, if not Fable 5 level." So basically, Yunfang's argument is that this should be treated as the first, not last, model that TML is going to put out

and seen as a precursor for better things to come

Certainly a reasonable interpretation, but not even the most positive thing out there. Tuer Taxes writes, " "I I like that Inkling is mediocre on benchmarks. This suggests that they haven't been cutting corners too much with distillation, so their [00:18:00] independent data pipeline will shine through when it's not reducible to scores.

By the second, third update, they become a meaningful player."



so this is similar to that last comment in the sense that it's a precursor for better things to come. But also I'll point out that they're clearly not benchmark maxing in the same way that many Chinese models do

Some people viewed this in fundamentally different terms, though, where the benefits weren't just about the future, but about aspects of what we have right now Ben Burtenshaw wrote, " The sickest thing about Inkling is the manner of their release. They brought out a model with genuinely interesting architecture and applications, told us what it does and does not do, and gave us tools to serve and post-train it, which we can choose to use or not.

The open scene is beginning to get diverse voices with their own valid takes on how AI should be built

Jack Morris, though, goes farther arguing that people are underestimating what a big deal this is. Jack writes, " "This This is the only open weight model that's trained without distilling from OpenAI or Anthropic. Kimi distills. GLM distills. Qwen distills. Nemotron distills Kimi and DeepSeek, which counts.

Basically, [00:19:00] a fully different tech stack, the first pure open frontier coding model

Now Community Note did point out that TML itself did say in their notes that while Inkling had been pre-trained from scratch, it did use a small bootstrap on synthetic data from open models, including K 2.5, as well as pointing out that other models like Llama 3.1 were also trained from scratch without OpenAI and Anthropic distillation.



but the but the significant point that Jack is getting at is that in the world that we're heading to With the unspoken piece of this being that enterprises are starting to pay more attention to open-weights models, the fact that this is an American model that is not primarily distilled from one of the closed models could become more significant very, very soon



meanwhile, open source expert Nathan Lambert pointed out that clearly this is one part of the story

Alongside TML's Tinkr platform

Nathan wrote, " "Inkling Inkling was somewhat inevitable once Tinker took off. Integration of post-training services across TML's entire stack, and it's one of the best open model business stories to date."



Jeffrey Jeffrey Emanuel explored this dimension of it as well, writing, " "This This is a pretty smart [00:20:00] and differentiated business strategy, which makes sense because it's hard to compete head-to-head with the biggest labs at their own game. So you focus on their weakness, which is the emerging competitive paranoia among big companies about leaking alpha.

To do that, you need open weight models so that the companies can run it on their own infrastructure without leaking anything. But the problem with open weights is obviously how to monetize it because inference becomes a race to the bottom and commoditized and capital-heavy.

TML's solution seems to be to monetize the fine-tuning process of customizing their model for the particular problems a company wants to solve using that company's own internal data in a way that keeps the learning and benefits of that data exclusive to that one company." Smart

And you better believe that this the thrust of TML's marketing for this. The last section of their launch post is called Customizing Inkling, and it starts: " Many real-world problems aren't solved well by even the best generalist models, with the gap being closed by fine-tuning that utilizes an organization's specialized knowledge.



The experience of our Tinker customers points in the same direction. Our post-training and results of reinforcement learning at scale suggest that Inkling is capable [00:21:00] of rapidly learning from fine-tuning."



and once you view it as the model that was designed to be the base model for Tinker, it starts to make a lot more sense. In another part of that blog post, they wrote, " Inkling is designed to be broad. We train it across agentic, reasoning, coding, instruction following, factuality, vision, and audio tasks rather than narrowly optimizing for one domain.

That breadth matters for customization and real-world use. Different users need models that can adapt to very different workflows, not just excel on the benchmarks

Now, if you're watching Microsoft closely, this is clearly the direction they're pushing as well

Satya Nadella's recent blog posts on X have been all about how companies need to own their own learning infrastructure

and one of the big product pushes aligning with the new MAI models that Microsoft has released is their Microsoft Frontier tuning product

And yet, Microsoft Frontier tuning using MAI

still requires enterprises to trust Microsoft with their data. Now, Microsoft is in a good position to cash in on the trust that they built over the past decades, making it less of a leap and a jump to trust them as opposed to an OpenAI or an Anthropic for many [00:22:00] companies but that still does look very different to an open weights version of that, such as the one provided by Inkling.

Now, different companies are gonna have different senses of the trade-offs. There will be, I guarantee, companies who do experiment with that sort of post-training or fine-tuning approach, but who don't ultimately care that much about it being open versus closed.

In other words, they want the cost benefits more than the data security benefits, or are comfortable with Microsoft as the partner regardless of the data security issues



But others you have to think might jump at a model that has even more independence and sovereignty from a big player in the way that an open weights model like Inkling might represent And when you start to pile the lawyers and the risk group on top of things, the fact that it's an American model that is not distilled



becomes pretty unique relative to the other options out there



Daniel Kaplan thinks that this could be the beginning of an entire new subdivision of a services category. He writes, "Enter the forward-deployed fine-tuner.

Thinking Machines' two GA products equal the perfect go-to-market for a new foundation model in the US."

Want a custom on-prem model? Got an AI research team? Inkling plus Tinker. Full self-serve, and [00:23:00] you're welcome to pay us a moderate amount of money for additional expertise, early access to new models, et cetera. Want Want your own custom model but no AI research team? Tinker seem confusing? No problem. 

We'll send over a forward deployed fine tuner for a lot of money Scales to big companies and AI startups who want to protect their alpha, AI app layer companies in search of cheaper tokens, and new startups founded by runaways from the behemoth labs

I I think there is very clearly a logic here. And when both Microsoft and this buzzy lab are telling the same story, enterprises will pay attention. At the same time, the fundamental technology underneath this is not without controversy. In fact, in some ways it runs counter to what people's broad perceptions have been

about how generalist models compare to fine-tuned versions

Referring to the bitter lesson

Which is a theory that oversimplistically says that human ways of learning aren't necessarily going to be the best ways of machine learning, and that in general, the best strategies for machine learning are going to be giving it as much data and compute as possible and letting it do its thing rather than overly relying on unique human expertise

Simon Smith [00:24:00] writes, " So Thinking Machines is basically a bet against the bitter lesson? That's how it feels, and I'm personally not convinced." from my experience fine-tuning models, it's way more effort than people think. That effort is ongoing to address new data edge cases and model updates.

Models can lose capabilities or have unexpected issues introduced. And ultimately, a big general model with a bit of context, e.g., skills files, comes along and beats your hard work, And then the cost of models with that capability drops off a cliff. when people talk about tokens and fine-tuning and running their own models, they often only factor the cost per token of their fine-tune, not the fully loaded cost of continuously collecting and curating data, developing and maintaining data and training pipelines, deploying and administering server infrastructure, and so forth.

Anyway, time will tell. My money's still on the bitter lesson. I think I think it's a super important point, and one of the really important things to keep in mind right now is that the recognition that there is a problem and a challenge with both data sovereignty and the cost of tokens does not mean that the immediate answers that the market is jumping in to provide i.e.

Microsoft frontier tuning or [00:25:00] Tinker, is ultimately going to be the right answer. in just a few sentences, Simon Smith pointed out all of those different challenges that may end up showing that this sort of fine-tuning isn't necessarily the right way to solve those problems

The flip side though, is that if you are TML right now

You have to feel good that your solution, because it is Open Weights, is addressing both sides of that equation, both the token cost side as well as the data sovereignty side

In other words, it might be that a fine-tuning solution based on a closed model like Microsoft is two in between. and that even if it's a niche market that requires both the data sovereignty and the cost side for the people who actually care about it

it We We don't know, but it's very clear that this is going to be an emerging trend and one to keep an eye on

Former White House AI advisor and a16z investor Sriram Krishnan wrote, " It is clear open source models and harnesses are having a moment." There's a few factors at work. One, it is now obvious that you can catch up to near state-of-the-art performance and do so with a clear training lineage. See TML's Inkling launch today.

Two, Two, there are several well-funded, talented teams building open weight models now in the US and abroad. Along with the [00:26:00] explosion of other near state-of-the-art models like Groq and Cursor, MuSpark, it's clear that we are going to have a diverse ecosystem of models, at least on coding and agentic use. Three, organizations are increasingly looking for control over how their data is used and are willing to trade off some access to frontier level tokens for this control.

Organizations and countries are increasingly nervous about the frontier labs potentially competing with them down the road and don't want their data to enable a future competitor. Four, open source is a slider. You could bring your own open harness, your evals, your business context, and are free to pick and choose your model of choice.

Five, companies have now actively shifted from how do we get our people to use tokens to being uncomfortable with their token cost ballooning without a clear line to revenue. Six, geopolitically, countries will be weighing open weight models as a way to get frontier level tokens inside controlled environments that may not be otherwise possible.

All of this leads to more choice for all of us

And I think this is the key point A few months ago, one would be forgiven for thinking that the way things were headed, pretty much every enterprise was just asking the question of whether it should sign up with OpenAI or Anthropic [00:27:00] or both, and that was the extent of their decision.



Now we are talking about so much more choice, not only in terms of models, but in terms of the harnesses in which model lives and complex model architectures which could involve multiple models and entirely new approaches to models such as these fine-tuning approaches

It feels very much

Like a moment where we're going to see a lot of new shots on goal and new explorations emerge

Now, as is always the case, when a whole bunch of new flowers bloom, not all of them will work It may be that the juggernauts in the space

figure out where there's adoption and uptake over the next six to 12 months Take in the best parts and we're back to most enterprises simply choosing between a very small handful of pre-described solutions

But it's very hard to imagine that A, this experimental period we're moving into won't have a significant and deterministic impact on the shape of those solutions

And B, that there isn't a ton of room for alpha, especially among small teams and and more nimble enterprises that can take advantage of this flourishing and highly competitive period



That doesn't mean that you at enterprises all need to [00:28:00] rush out and sign up for Tinker or Microsoft Frontier Tuning or anything like that. In the same way that you don't need to immediately switch all your activity to OpenRouter Or go start hacking on GLM 5.2 But at But at this point, it's pretty clear that if you are in charge of any sort of enterprise buying decisions and you're not at least playing around with and experimenting with or closely paying attention to all these different solutions, you're missing quite a bit of opportunity I will continue to I will continue to keep track of these things as they develop.

But for now, that is gonna do it for today's AI Daily Brief. Appreciate Appreciate you listening or watching as always, and until next time, peace 

​
