Connect with us
DAPA Banner

Tech

The contradiction at the heart of OpenAI’s restructuring

Published

on

Big changes are happening at OpenAI. On Wednesday, the company announced that it would be shutting down their AI video creation app Sora only a couple months after its launch. In October, OpenAI completed a massive restructure of its organization that shakes the very foundations it was built on.

OpenAI, which powers ChatGPT, among other AI products, was originally founded purely as a nonprofit. Now it has a for-profit arm. According to OpenAI CEO Sam Altman, the nonprofit will still guide the work of the for-profit side to ensure that artificial intelligence works for the “benefit of all humanity.” On top of that, the OpenAI Foundation, would be in charge of (theoretically) $180 billion, making it one of the largest charitable organizations in the world.

Catherine Bracy, founder of the nonprofit Tech Equity, thinks this restructuring is a blatant attempt to free up the for-profit wing to act like any other AI company. She argues that OpenAI’s for-profit wing will only ever act for the benefit of its investors. Bracy believes the OpenAI Foundation is merely a glorified and toothless corporate social responsibility arm. We reached out to OpenAI for comment and did not receive a response.

Bracy spoke with Today, Explained host Sean Rameswaram about the legality of OpenAI’s new structure and her concerns about how this all might shake out. An excerpt of their conversation, edited for length and clarity, is below.

Advertisement

There’s much more in the full podcast, so listen to Today, Explained wherever you get your podcasts, including Apple Podcasts, Pandora, and Spotify.

(Disclosure: Vox Media is one of several publishers that have signed partnership agreements with OpenAI. Our reporting remains editorially independent.)

You used to chat with Sam Altman?

We worked together back in the day and then kind of went out of touch with each other for a few years. Then, when I was writing a book about venture capital, I was really interested in open AI’s nonprofit model. Sam had been very explicit that the reason they founded OpenAI as a nonprofit was to put the technology at arm’s length from investors because they knew investors would exploit it in a way that would make this technology — which they thought was very dangerous — actually live up to that potential danger.

Advertisement

So I wanted to talk to him about the decision-making process behind that. And he was very forthcoming about that being the explicit reason why OpenAI was founded as a nonprofit. They put a lot of thought and capacity and energy into creating this [nonprofit] governance structure that would protect the technology from the whims of investors, the [profit-generating] imperatives that investors put on technology companies.

And a few months later, I saw that all come crashing down.

And when you found out that Open AI was restructuring and going to try to have it both ways — mission-driven nonprofit, but also money-driven for-profit — what was your reaction?

Disappointment. I would say that was my initial reaction. And then the secondary response was, Well, what can we do about this? And many of us came together into this coalition that really started asking questions about the responsibility of the nonprofit and the responsibility of the attorney general of California to enforce nonprofit law. And things kind of went from there.

Advertisement

Tell me more about that. What’s nonprofit law look like as it pertains to, say, OpenAI?

I run a nonprofit. In the tax code, that means that my organization does not need to pay taxes, but in return for that tax exemption, we are required to operate in service of a public service mission. Our mission is to ensure that the tech industry is creating opportunity for everybody. OpenAI’s nonprofit mission is to ensure that AI develops for the benefit of all of humanity. And legally, Sam Altman is required to prioritize OpenAI’s mission above all else.

So when they decided they were going to split the nonprofit from the for-profit, they found that actually legally they could not do that without divesting the intellectual property that the nonprofit owned, including all of the intellectual property that was created that underlies the ChatGPT model, and the equity stake that the nonprofit owned in the for-profit company.

I think they looked at that price tag and they said, That’s not a price we’re willing to pay. And so instead of splitting the nonprofit from the for-profit, they decided to continue down this path of nonprofit ownership, which in my mind is completely untenable, unsustainable, and irreconcilable.

Advertisement

Basically, every day that OpenAI exists, they are violating the law.

And actually what they’re doing is just daring the attorney general to hold them accountable for it. I think they think they’re too big to be held accountable and they need the AG [of California] to assume that he will not win a case. And that’s what they’ve done. They’ve loaded up on lawyers and they are making a bet that the AG will not pursue this in any way that’s actually meaningful.

Okay. So if I’m following you, despite the fact that OpenAI has split itself into a for-profit arm and a not-for-profit arm, their not-for-profit mission still overrides everything they do. And because of that, they are violating California law — because there’s no way that the nonprofit interests are ever going to be primary in their business.

Right. I think, as the kids would say, they’re playing in our faces. They expect us to take their word that as they operate, as they make deals with the Defense Department to develop autonomous weapons and surveillance systems on American citizens, as they battle parents in court whose children have committed suicide due to conversations that these kids were having with their chatbots, they expect us to believe that the nonprofit mission is being prioritized over the profit motivation of the company.

Advertisement

We all know that OpenAI’s overriding priority is to “win” the AI race. It’s to beat out the competition in the marketplace, and it’s to establish the biggest AI company they can create. To the extent that the nonprofit mission ever comes into tension with that, the company will always prioritize profits over the mission.

A law is only as good as its enforcement. And I think if there’s one rule of Silicon Valley, it is to ask forgiveness and not permission. I think they said, You know, this is worth it. There’s enough money on the line for us to just break the law and do the PR work and the lobbying work and the other work that we need to do to ensure that these laws will never be enforced against us.

And when you talk about PR work, lobbying work, are you talking about, like, saying we’re going to give away this $180 billion eventually?

Well, here’s the thing. They announced this week a list of priorities that the foundation would be investing in. They listed as one of their priorities, Alzheimer’s research. My mother is currently dying of Alzheimer’s. I have one copy of the gene that puts me at extreme risk of developing Alzheimer’s when I’m older. So I pray every day that AI helps us find a solution to Alzheimer’s fast enough that I can benefit from it, that my family can benefit from it.

Advertisement

But let me ask you a question. What happens, do you think, if the research that’s funded by OpenAI’s Foundation finds that actually Anthropic’s models are better at drug discovery or scientific breakthroughs than ChatGPT or any of OpenAI’s other models? What does it mean for the independence of scientific research, if all of this research is funded by an entity that has an irreconcilable conflict of interest?

“We do not have to take these companies at their word that they know best how to govern this technology. We should have bigger imaginations about what’s possible.”

We would not accept the science around nicotine that tobacco companies were funding. We do not accept the science around alcohol addiction that the alcohol companies fund. We do not accept the science around sugared beverages from the soda industry. And we should not accept that this scientific research is funded by an entity that has a vested financial interest in the outcome.

And that is why it is so critically important that the OpenAI Foundation actually be independent, that it have an independent board, that it can deploy its resources independently, that the research that it is funding is independent.

Advertisement

Do you still think that we’re maybe better off that OpenAI says that they want to give billions away to better society — than say Anthropic, Google, maybe having some pledges to give money away, but not nearly as much?

Well, Google has a corporate foundation. It’s called Google.org. And I expect in this structure with the tension and the conflict of interest that the OpenAI Foundation has, that it will operate much more like Google.org, which is essentially an arm of the marketing department, a corporate social responsibility program that gives money to innocuous groups — but will never do anything that undercuts Google’s priorities.

I think if you read between the lines of open AI’s press release, the work they say they want to continue doing with community funding is all about convincing people about the importance and value and benefit in using AI. I mean, that’s a market building opportunity for them. That’s not actually anything that’s going to ensure that AI is developed for the benefit of humanity. And so, no, I don’t think that they’re going to operate any differently than any of the other companies’ corporate social responsibility arms. That’s essentially what they have built here.

This is the fight of our time. AI is not inevitable. The way it develops is not inevitable. And we do not have to take these companies at their word that they know best how to govern this technology. We should have bigger imaginations about what’s possible. And if anything, this should give us more energy and motivation to fix what’s broken about our democracy than to just sit back and let billionaires control our future.

Advertisement

Do you ever talk to Sam Altman anymore?

He doesn’t return my calls.

Well, thanks for talking to us.

Source link

Advertisement
Continue Reading
Click to comment

You must be logged in to post a comment Login

Leave a Reply

Tech

Seattle-area billboard takes a page from Bay Area playbook: ‘Startup energy should be more visible’

Published

on

A billboard for Bellevue, Wash., startup Summation, visible from SR 520 in Bellevue. (Photo courtesy of Summation)

A Bellevue, Wash.-based startup that came out of stealth last fall is really trying to get noticed now, taking a page out of a playbook that’s more prevalent in Silicon Valley.

Summation is an AI platform that helps enterprise leaders draw insights from large volumes of internal data. A bright orange billboard visible from SR 520 doesn’t say that, but it does put the company’s name in sight of drivers — many of whom potentially work in tech — heading east along the highway.

“We’re building Summation here in Bellevue, and wanted to do something a little bold and a little playful — for recruiting, for awareness, and because startup energy should be more visible around here,” CEO Ian Wong told GeekWire.

Wong is the former CTO of real estate giant Opendoor and Square’s first data scientist. He co-founded Summation in 2024 with Ramachandran “RC” Ramarathinam, who led Opendoor’s core transaction platform.

Summation raised $35 million in funding from Benchmark and Kleiner Perkins in October.

Advertisement

Tech company billboards are a big part of the landscape in the San Francisco Bay Area. Signs advertise a whole new era of AI-focused startup names and products. Last summer, The New York Times published a fun quiz challenging readers to decode what some of the billboards were even selling around Silicon Valley.

Wong said capturing a slice of that energy was part of the point with his company’s billboard in Bellevue, which went up about two weeks ago near the Burgermaster restaurant along Northup Way.

“In SF, startup ambition is just visible — on 101, on the sides of buildings, in every coffee shop,” he said. “The Seattle/Bellevue area has world-class technical talent, but the scene here has always been understated. We wanted to put up a small signal that ambitious things are being built on this side of the lake, too — and if you want to work on one of them, come find us.”

Bellevue-based startup Stasig used a reverse tactic back in 2024 when it launched an aggressive campaign to spread its name across the Bay Area with more than 200 billboards and posters at transit shelters and stations.

Advertisement

Summation employs about 35 people right now and is hiring across engineering, product, and go-to-market.

Summation’s platform sits on top of data systems and runs massive calculations automatically, testing different scenarios and using AI agents to explore different questions in parallel. The software also automates financial reconciliations, variance analysis, and management reporting.

The advertising lines up with what Wong called “a big product release” coming next week.

“Always be hiring,” he said. “And selling.”

Advertisement

Source link

Continue Reading

Tech

When it comes to leadership, do companies know what they are doing?

Published

on

Robert Walters research suggests that many Irish organisations are lacking a clear leadership succession plan.

Leadership often defines an organisation and Robert Walters has published data indicating that a number of companies are not as prepared for upcoming changes as they should be. 

The report found that, of those who contributed their data, just 16pc of organisations have a leadership succession plan in place. More than 40pc of Irish companies have no plan in place whatsoever and 7pc are unsure whether one currently exists or not. At the same time, 72pc of Irish leaders said they have a shortage of senior talent, with half describing the shortage as significant.

“There is a clear gap between how concerned organisations are about senior talent shortages and how prepared they are for leadership change,” said Suzanne Feeney, the country manager at Robert Walters Ireland.

Advertisement

She added: “In many organisations, succession planning has historically been handled informally. But they are now operating in a far more complex environment than they were even a few years ago. 

“Advances in artificial intelligence, geopolitical uncertainty and economic pressures are all contributing to more frequent leadership transitions. With only one in five businesses having an established succession plan, many are leaving themselves exposed to significant operational risk.”

Pipeline pressures

Securing and retaining skilled professionals is a key issue for employers in 2026. The recent Data Salaries & Job Sentiment Analysis 2026 report, published by Analytics Institute and SAS, highlighted the growing challenges being experienced by organisations looking to expand their data capabilities. 

The report found that 64pc of organisations have future plans to increase the size of their data teams, whereas 70pc of professionals explained that they are unlikely to change employers this year. 

Advertisement

Commenting on the Robert Walters report, Adam Gordon, the global head of talent development at Robert Walters, said: “Leadership continuity can be a challenge for organisations of every size, from SMEs to the world’s most recognised brands.

“Senior talent is one of the hardest resources to replace and finding the right long-term successor can take time. Interim leaders can play a valuable role here by maintaining stability and ensuring critical decisions continue to move forward while organisations assess their long-term options.”

Robert Walters’ research also points to challenges in the development of future leaders, with the report suggesting that nearly two-fifths (38pc) of participants are struggling to identify and develop strong successors within their business. 

Feeney said: “Many organisations have talented people internally, but identifying future leaders early and giving them the right development opportunities takes deliberate effort.

Advertisement

“At its core, succession planning is about future-proofing the organisation, building a strong leadership pipeline comprising internal progression and external hiring to ensure organisations have the resilience they need for the long term.”

Undoubtedly, the working landscape for modern-day employees is evolving quickly in 2026. An earlier report from Robert Walters, at the start of the year, found that changes in remote and in-person arrangements could compel skilled employees to increase their engagement in the workplace. 

More than half (59pc) of contributing Irish employees said that they want their place of employment to adopt a microshifting schedule, with Feeney noting that microshifting has the potential to increase engagement, accountability and even time spent in the office.

Don’t miss out on the knowledge you need to succeed. Sign up for the Daily Brief, Silicon Republic’s digest of need-to-know sci-tech news.

Advertisement

Source link

Continue Reading

Tech

North Korea hackers blamed for $290M crypto theft

Published

on

Over the weekend, hackers stole more than $290 million in cryptocurrency from Kelp DAO, a protocol that allows users to earn yields on idle crypto investments. 

By Monday, LayerZero, one of the projects affected by the hack, accused North Korea of carrying out the heist. The hack is now the largest crypto theft of the year so far, following an earlier hack at crypto exchange Drift in April netted hackers around $285 million.

Per its post on X, LayerZero said the hackers exploited Kelp DAO via its LayerZero bridge, which allows different blockchains to send instructions to each other. The hackers then took advantage of Kelp’s own security configuration, which did not require multiple verifications before approving transactions. That allowed the hackers to siphon off the funds with fraudulent transactions.

The company cited “preliminary indicators” that point to North Korea as the culprit, in particular its hacking group that targets crypto known as TraderTraitor

Advertisement

Kelp DAO responded to LayerZero blaming it for the theft instead. 

In the last few years, North Korean hackers working for Kim Jong Un’s regime have become highly successful at stealing crypto. Last year, North Korean hackers stole more than $2 billion in crypto. Overall, since 2017, the total amount of stolen crypto by North Korea is said to be around $6 billion.

Source link

Advertisement
Continue Reading

Tech

Allbirds’ Move To AI Has Echoes of the Dot-Com Frenzy

Published

on

An anonymous reader quotes a report from Bloomberg, written by writer Austin Carr: Allbirds is pivoting to artificial intelligence. The San Francisco brand, whose wool running shoes were once the sneaker du jour among the tech crowd, announced last week that it was expanding into AI computing infrastructure. The bizarre strategic shift was immediately greeted with a surprising frenzy on Wall Street, where shares of Allbirds soared 582% last Wednesday before dropping the next day. […] Of course, the absurdity of Allbirds’ situation echoed familiar Silicon Valley tropes — from the endless startup pivots of the 2010s to the more recent boom-and-bust cycles of arbitrarily valued crypto coins. But it immediately reminded me of the marketing ploys of the dot-com crash. After all, some of the more iconic fails ended up being retailers such as Pets.com, Webvan, etc., riding the web wave with little to show for it beyond terrible margins.

One particular comparison from that period stands out as relevant to Allbirds: Zap.com. The holding company behind it, Zapata Corp., had a long and convoluted history, but was essentially selling fish-oil products by the time it decided to reinvent itself as an internet portal. It amassed a variety of web properties — in media, e-commerce, gaming and so on — and even once tried to acquire the search engine Excite. Spoiler alert: Zap flopped. Jen Heck, then a young employee at one of Zap’s up-and-coming portfolio entities, remembers how quickly the hype of that web 1.0 turned to hell. As absurd as Zapata’s pivot sounds today, it seemed feasible during the excitement of the internet revolution. “We went from like, ‘Wow, this life thing is just so easy,’ to it all ending so suddenly,” Heck recalls. The ones who survived that tech bubble, she says, actually had differentiated products and the right creative thinkers building them — and weren’t just cynically jumping on the latest hot trend. “‘Internet’ was the magic word then, and ‘AI’ is the magic word now,” Heck says.

Source link

Continue Reading

Tech

SaaS is not dead. You are just being sold the funeral

Published

on

The “AI has killed software” narrative has a handful of very loud beneficiaries and a lot of quiet evidence against it. The companies that will survive the next five years are the ones that refuse to treat the hyperscalers as the new gods.

Whenever I make an affirmation, I like to do my research first, and not to sound like a LinkedIn post. I wish more people in this industry did the same, as there is a prevailing mood where we think that big numbers are the whole story.


When the Black Death came among us, people probably thought it was the end. When wars came to our societies, people thought it was the end. Yet, in a strange way, we have a natural power to overcome obstacles and turn change to our advantage.

When AI started to infiltrate our work, and later our personal lives, a large group of people declared that “AI will replace people,” that this technology, not even particularly new, would conquer our brains, hearts, and work, and lead us where it wanted.

Advertisement

Yet we are still working; people are still writing, thinking, creating, building.

The 💜 of EU tech

The latest rumblings from the EU tech scene, a story from our wise ol’ founder Boris, and some questionable AI art. It’s free, every week, in your inbox. Sign up now!

In the last two years, more and more people have been saying that “SaaS is dead.” Of course, this phrase came from someone’s mouth, someone with enough influence to shape general opinion, and everybody was already in black, ready for the funeral.

Advertisement

In August 2024, Klarna’s chief executive, Sebastian Siemiatkowski, sat on an earnings call and mentioned, almost in passing, that the Swedish fintech had “shut down Salesforce.” Workday was next.

Klarna would build its own AI-driven replacements, a lightweight stack unshackled from the bloat of traditional enterprise software. The quote moved markets. Articles followed with headlines about the death of SaaS. Salesforce’s Marc Benioff, on stage at Dreamforce, was asked to respond to a customer who had apparently decided the future was AI and the past was his product. He looked, by his own admission, embarrassed.

Six months later, Siemiatkowski quietly clarified what had actually happened. Klarna had not replaced Salesforce with AI. It had replaced Salesforce with other SaaS: Deel for HR, third-party tools for CRM, the Swedish graph database Neo4j for data consolidation.

Klarna still uses Slack, which is still a Salesforce product. Siemiatkowski himself admitted on X that he was “tremendously embarrassed” by how the story had spiralled.

Advertisement

“No,” he wrote, “we did not replace SaaS with an LLM.”

This is the single most instructive story in enterprise software of the past two years. The distance between what was said and what was done reveals the mechanics of the entire “SaaS is dead” narrative. The headline travelled. The correction did not.

An industry of analysts, venture capitalists, and foundation model CEOs built a year of marketing on the louder half.

Start by asking who gains from the story that software-as-a-service is being replaced by artificial intelligence, because the answer is surprisingly narrow. The hyperscalers do, because AI workloads justify the $660 to $690 billion in capital expenditure the five largest US cloud and technology companies have committed for 2026, according to Futurum Group analysis, nearly double the previous year.

Advertisement

The foundation model labs benefit, because every dollar of enterprise software spend redirected to their APIs validates valuations that are otherwise difficult to defend. OpenAI ended 2025 at around $20 billion in annual recurring revenue. Anthropic crossed $9 billion in January 2026. These are genuinely large numbers. They are also, respectively, about three per cent and a little over one per cent of the hyperscaler capex being spent to serve them.

The venture capitalists benefit because their portfolio repricing depends on the narrative that AI-native companies will outrun the incumbents they once funded. And Nvidia, supplier and financier of the boom, benefits until it no longer does.

In March 2026, CEO Jensen Huang confirmed that his recent investments in OpenAI and Anthropic would likely be the last. The circular financing, Nvidia invests in OpenAI, OpenAI buys Nvidia chips, had reached the point where even the chipmaker was ready to stop calling it a virtuous cycle.

MIT’s Michael Cusumano, quoted by Bloomberg, put the arithmetic bluntly: “Nvidia is investing $100 billion in OpenAI stock, and OpenAI is saying they are going to buy $100 billion or more of Nvidia chips.”

Advertisement

You could call that demand. You could also call it bookkeeping.

The 95% number that should have ended the hype

The harder question is whether any of this is producing business results. Here the data is less generous than the pitch decks.

In July 2025, MIT’s Project NANDA published “The GenAI Divide: State of AI in Business 2025”, based on 150 executive interviews, 350 survey responses, and analysis of 300 public AI deployments. Its headline finding: despite roughly $30 to $40 billion in enterprise generative AI spending, 95% of pilots delivered no measurable impact on profit and loss. Only 5% reached production.

The response from the industry was not to recalibrate. It was to argue that the wrong metric was being used. UC Berkeley published a rebuttal suggesting ROI was an “industrial-era” measurement unsuited to a “cognitive-era transformation.”

Advertisement

This is what every hype cycle says in its late phase, that profit is a distraction, that what is being built is too large for ordinary standards. The same argument was made about WeWork, the metaverse, and blockchain.

Each time, the underlying assumption was that the people with capital and megaphones understood the future better than the people actually trying to run a business.

The 5% of AI projects that did succeed, MIT found, shared specific traits. They were built by specialised vendors, not attempted internally. They focused on back-office automation rather than sales theatre. They integrated deeply with existing workflows. Over half of enterprise AI budgets, meanwhile, were going to sales and marketing tools where ROI was lowest.

This is not a revolution sweeping through the enterprise. It is a lot of companies buying demo-friendly products that do not produce returns, while a minority does the unglamorous integration work that quietly extracts value.

Advertisement

The collapse that did not collapse

Stil, I have to admit that there are genuine signs of stress in the SaaS market. In February 2026, roughly $285 billion in market value evaporated from software stocks in a single trading session, what Wall Street christened the “SaaSpocalypse.”

ServiceNow fell 7%. Intuit dropped 11%. LegalZoom lost nearly 20%. Salesforce is down approximately 30% year-to-date. The business rationale, that per-seat pricing starts to collapse when one employee with AI tools can do the work of five, is not wrong.

But Bain & Company, looking at the broader record, has offered a useful correction: technological transitions rarely produce extinction.

They produce heterogeneity. Desktop survived mobile. Cloud did not kill on-premise so much as push it into specialised niches. The history of software is a history of layers accumulating, not replacing.

Advertisement

SaaS vendors are becoming agent-orchestration platforms. Salesforce has Agentforce. HubSpot has AI tools. Snowflake partners with Anthropic. The incumbents are being forced to adapt, but adaptation is not death.

IDC’s European practice framed it precisely in February: “SaaS is not dead, but it is metamorphosing.”

Pricing shifts towards outcomes. Interfaces become more agent-driven. But the real business logic, the auditing, versioning, compliance, and data gravity, remains where it was. The transformation is real. The extinction event is marketing.

The new gods are not new

Every major technology wave produces a brief period in which the companies at its centre are treated as reinventors of reality. For the cloud, it was AWS. For mobile, Apple. Before that, Microsoft.

Advertisement

The rhetoric around big techs like Nvidia, OpenAI, Anthropic, Meta, and xAI has the same cadence: they are building the new infrastructure of civilisation, rewriting how humans work, inevitable. There is a grain of truth in it. AI, and agentic AI in particular, is a real technological step. 

The companies most likely to thrive are the ones already disciplined enough to recognise the pattern. Every enterprise that survived the dot-com crash, the mobile transition, and the cloud migration did so by adopting what was useful and ignoring what was hyped, by measuring outcomes against costs, by refusing to treat platform vendors as infallible.

The companies that went under bought the whole story: that their customers would wait while they rebuilt, that the new paradigm would reward early and total commitment.

We reported in February on a pattern now visible across dozens of SaaS companies between $20 million and $80 million in ARR: shipping AI features while net revenue retention quietly collapses.

Advertisement

Eighteen months after going “AI-first,” one company watched its NRR drop from 108% to 94% and lost $2.8 million in renewals, not because the product got worse, but because everyone was building the future and nobody was watching the present. The AI features were legitimately good. The existing customers churned anyway.

None of this is an argument against AI. Previous AI cycles ended with research freezes, shuttered startups, and survivors who had been quietly doing useful work while everyone else claimed the moon. This cycle will likely end similarly.

Some hype will turn out to be real. Most revenue projections will not. A handful of current “AI-native” startups will become durable businesses. Many will be absorbed or exposed as wrappers.

The companies that come through refuse both extremes. They do not miss the trend, because dismissing AI in 2026 is as serious a strategic error as dismissing mobile was in 2010. And they do not drown in it. They do not empty their engineering teams into AI-first rebrands while their existing revenue base walks out the door. They do not treat the big tech companies as gods, but as what they are: very large commercial entities with very specific interests in what you believe about the future.

Advertisement

Klarna, for the record, is still paying for SaaS. It is also still paying OpenAI. This is probably the honest shape of the future: not the death of anything, but a quieter rearrangement in which the winners are the operators who kept their feet on the ground while everyone else was watching the sky.

The funeral for SaaS has been extremely well-attended. The corpse, on closer inspection, is still breathing.

Source link

Advertisement
Continue Reading

Tech

NSA Using Anthropic’s Mythos Despite Blacklist

Published

on

Axios reports that the NSA is using Anthropic’s restricted Mythos Preview model despite the Pentagon insisting the company poses a “supply chain risk.” Axios reports: The government’s cybersecurity needs appear to be outweighing the Pentagon’s feud with Anthropic. The department moved in February to cut off Anthropic and force its vendors to follow suit. That case is ongoing. The military is now broadening its use of Anthropic’s tools while simultaneously arguing in court that using those tools threatens U.S. national security.

Two sources said the NSA was using Mythos, while one said the model was also being used more widely within the department. It’s unclear how the NSA is currently using Mythos, but other organizations with access to the model are using it predominantly to scan their own environments for exploitable security vulnerabilities.

Anthropic restricted access to Mythos to around 40 organizations, contending that its offensive cyber capabilities were too dangerous to allow for a wider release. Anthropic only announced 12 of those organizations. One source said the NSA was among the unnamed agencies with access. The NSA’s counterparts in the U.K. have said they have access to the model through the country’s AI Security Institute. Anthropic’s CEO met with top U.S. officials on Friday to discuss “opportunities for collaboration,” according to a White House spokesperson, “as well as shared approaches and protocols to address the challenges associated with scaling this technology.”

Source link

Advertisement
Continue Reading

Tech

Typing with your brain might soon be as simple as wearing a beanie

Published

on


Silicon Valley startup Sabi is the latest entrant to suggest using the brain as an interface device. The company is developing a noninvasive device that translates internal speech into text. Rather than relying on implanted hardware, Sabi is building a wearable device – initially in the form of a beanie,…
Read Entire Article
Source link

Continue Reading

Tech

Researchers are using ultrasound to trigger smell directly in the brain for VR

Published

on


Current systems emphasize sight and sound, with some progress in haptics. Smell remains largely absent, despite its unusually strong connection to memory and emotion.
Read Entire Article
Source link

Continue Reading

Tech

Flash Joule Heating Recovers The Good Stuff

Published

on

Rare earth materials are a hot button topic these days. They’re important for everything from electric vehicles to defence hardware, they’re valuable, and everyone wishes they had some to dig up in their backyard. Lithium, too, is a commodity nobody can get enough of, with the demand for high-performance batteries grows each year.

When a material is desirable, and strategically important, we often start thinking of ways to conserve or recycle it because we just can’t get enough. In that vein, researchers have been developing a new technique to recover rare earth metals and lithium from waste streams so that it can be put back to good use.

Get It Back

Enter the technique of flash joule heating. The method is relatively straightforward, in concept at least. It involves a high energy discharge from a capacitor bank, which is passed through a sample of material to be recycled or refined. The idea is that the rapid energy discharge will vaporize some components of the sample, while leaving others intact, allowing the desired material to be separated out and collected in a straightforward and economically-viable manner.  It does this in a manner rather contrary to traditional techniques, which often involve large amounts of water, acids, or alkalis, which can be expensive and messy to dispose of or reprocess to boot.

A flash joule heating apparatus used to recover rare earth materials. Credit: Jeff Fitlow, Rice University

Researchers from Rice have developed this technique to recycle rare earth metals from waste magnets. Imagine all the magnets that get thrown away when things like hard drives and EV motors get trashed, and you can imagine there’s a wealth of rare earth material there just waiting to be recovered.

In this case, the high-energy discharge is applied to waste magnet material in an effort to vaporize the non-rare earth components that are present. The discharge is performed in the presence of chlorine gas, which would chlorinate materials like iron and cobalt in the sample, removing the volatile elements and leaving the rare earth elements behind in solid form. Laboratory experiments were able to refine the material to 90% purity in a single step.

Advertisement
In the rare earth case, the undesired material is vaporized and removed by the chlorine gas while the rare earths remain behind in the solid phase. For capturing lithium from spodumene ore, it’s the opposite. Credit: research paper

As per the research paper, lifecycle analysis suggested the technique could reduce energy use by 87% compared to contemporary hydrometallurgy recycling techniques, while also reducing greenhouse gas emissions in turn and slashing operating costs by 54%.

The technique can also be applied to separate lithium from spodumene ore. It’s an abundant material, particularly in the United States, and improved ways to process it could increase its value as a source of lithium. When it comes to processing spodumene with flash joule heating, the discharge of electric current makes the lithium in spodumene available to react with chlorine gas. The rapid heating causes the vaporized lithium to form lithium chloride which can be bled off, while other components of spodumene like aluminium and silicon compounds remain behind. It’s basically the opposite of the rare earth recovery method.

As outlined in the research paper, this method achieved recovery of lithium chloride with 97% purity and a recovery rate of 94% in a single step. It’s also a lot simpler than traditional extraction methods that involve long periods of evaporating brine or using acid leeching techniques. Indeed, the laboratory rig was built using an arc welder to achieve the powerful discharge. Other researchers are examining the technique too and achieving similar results, hoping that it can be a cleaner and more efficient method of recovery compared to traditional hydrometallurgy and pyrometallurgy techniques.

The lithium recovery process using flash joule heating. Credit: research paper

These methods remain at the research stage for the time being. Pilot plants, let alone commercial operations, are still a future consideration. Regardless, the early work suggests there is economic gain to be had by developing recycling plants that operate in this manner. Assuming the technique works at scale, if it makes financial sense and recovers useful material, expect it to become a viable part of the recycling industry before long.

 

Advertisement

Source link

Continue Reading

Tech

Coral raises $12.5M to automate healthcare’s administrative back office

Published

on

The New York startup has built AI that reads handwritten fax forms, processes prior authorisations, and completes patient intakes in under five minutes, all without asking providers to change how they work. It has reached multiple millions in revenue in under a year and is targeting 4x growth by end of 2026.


Coral, the New York-based AI startup automating administrative workflows for specialty healthcare providers, has raised $12.5 million in a Series A led by Lightspeed and Z47.

The company was founded in 2024 by Ajay Shrihari, a robotics and AI researcher, and Aniket Mohanty, who has a background in medical image processing.

In under a year of commercial operation, Coral has reached multiple millions in annual revenue and is targeting 4x growth before the end of 2026.

Advertisement

The 💜 of EU tech

The latest rumblings from the EU tech scene, a story from our wise ol’ founder Boris, and some questionable AI art. It’s free, every week, in your inbox. Sign up now!

The problem Coral is solving is not technological complexity, it is administrative volume. In American healthcare, every appointment generates a trail of prior authorisation requests, referral packets, insurance eligibility checks, and discharge paperwork.

Much of this flows through fax machines, which remain deeply embedded in clinical workflows despite being a technology from a previous era.

Advertisement

Rather than attempting to replace fax infrastructure, an approach that would require providers to rebuild systems they cannot afford to rebuild, Coral connects to existing EHR systems, fax lines, and payer portals and automates around them.

Providers do not change how they work. Coral changes what happens inside that workflow.

The company began in the durable medical equipment sector, one of the most fax-intensive corners of outpatient care, where a single order can require multiple rounds of documentation before approval.

DASCO, a home medical equipment provider, has been an early customer, describing turnaround times dropping from hours or days to minutes.

Advertisement

Coral then extended the same model into infusion centres, where a delayed authorisation means a missed dose, not a delayed appointment, and into specialty pharmacy.

In each new vertical, the same administrative bottleneck appeared in the same shape.
The product’s core capability is document understanding at healthcare’s specific level of messiness: handwritten fax forms, scanned insurance cards, prior authorisation templates, and payer portal screens.

Coral’s models have reached 99.7% accuracy across these document types, a threshold the company describes as the minimum viable standard for healthcare, where errors have clinical and financial consequences.

Complete patient intakes, including complex cases, now run in under five minutes. When information is missing, which is frequent in this environment, the platform coordinates with payers, patients, and referral sources to resolve the gap without requiring staff intervention.

Advertisement

The strongest signal in the commercial story is not the revenue figure but the payment behaviour. A portion of Coral’s customers are paying the full contract value upfront, an unusual dynamic in enterprise software, and a striking one in a sector where vendor evaluation cycles are typically slow and risk-averse.

The explanation is mechanical: when a workflow that previously took hours completes in under five minutes at high accuracy, the return on investment is immediate and visible. Commit now, stop the queue now.

Coral recently shipped AI-powered voice and text workflows that automate follow-ups with payers, patients, and referral sources, replacing calls that previously required a staff member to pick up the phone.

The next phase of product development includes an AI workflow builder that will let providers design and deploy their own administrative processes without involving IT, and a co-pilot layer that surfaces operational intelligence from the data already flowing through the platform: which payers have the highest denial rates and why, where cases are stalling in the authorisation process, which referral sources convert reliably and which do not, and what changes would improve outcomes on insurance claim resubmissions.

Advertisement

Rohil Bagga, investor at Lightspeed, described the company as “delivering real outcomes at scale” in an environment where legacy automation has historically failed.

Ashwin KP, investor at Z47, framed the investment thesis around the specific characteristics of healthcare administration: over a trillion dollars in annual overhead, chronically underserved by technology, and requiring deep vertical expertise to crack.

The Series A funds team growth and product development, with Coral adding engineering talent alongside people who have spent careers inside healthcare operations.

Advertisement

Source link

Continue Reading

Trending

Copyright © 2025