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Windows Update Is Getting Automatic Rollbacks For Faulty Drivers

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Microsoft is adding a Windows Update feature called Cloud-Initiated Driver Recovery that can automatically roll back faulty drivers to a previously known-good version without waiting for hardware makers or users to fix the problem manually. PCWorld reports: The way faulty drivers work today is that the hardware partner is responsible for pushing an updated driver, or the end user is responsible for manually uninstalling the problematic driver. “This creates a gap where devices may remain on a low-quality driver for an extended period,” says the blog post. With Cloud-Initiated Driver Recovery, Microsoft will be able to remotely trigger a rollback of the faulty driver to a previously “known-good” version of the driver via the Windows Update pipeline. Microsoft says that testing and verification of Cloud-Initiated Driver Recovery will continue until August this year, aiming to deliver this feature to Windows PCs starting in September.

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Apple 14inch M5 MacBook Pro 1TB drops to $1,499 at Amazon

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The $200 discount applies to the M5 model with 1TB of storage, matching the lowest price on record. Plus, grab an even larger markdown on an upgraded spec.

The $1,499.99 special is available on the 14-inch MacBook Pro with a 10-core CPU and 10-core GPU. It also has 16GB of memory and 1TB of storage, with the $200 discount available in your choice of Space Black or Silver.

Buy M5/16GB/1TB MacBook Pro for $1,499.99

If you’d prefer additional RAM, B&H is running a $300 discount on the M5 model with 24GB of RAM. Note that this configuration comes with 512GB of storage, rather than 1TB, but it rings in at the same $1,499 price as the above deal when ordered in Silver.

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Buy M5/24GB/512GB MacBook Pro for $1,499

Both of these deals can be found in our M5 MacBook Pro Price Guide, with markdowns on higher-end M5 Pro and M5 Max models available in our M5 Pro 14-inch MacBook Pro Price Guide and M5 Pro 16-inch MacBook Pro Price Guide.

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AI Promised the Audemars Piguet x Swatch Wristwatch. China Will Deliver It

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Laden with iconic Royal Oak design cues, most notably the octagonal case, eight-screw bezel, and Petite Tapisserie-patterned dial, the strapless design heavily references 1979’s Royal Oak Pocket Watch reference 5691. Inside is an entirely new hand-wound version of Swatch’s Sistem51 caliber, a movement that is completely machine assembled. Swatch has 15 active patents on this new iteration and has also squeezed in an impressive 90-hour power reserve. There’s even an antimagnetic Nivachron balance spring that was, incidentally, codeveloped with Audemars Piguet.

Swatch’s 1986 POP line, whose watch heads could be physically ejected from their frames and clipped elsewhere, has been plundered here to create a design that allows the Royal Pops to ping out of their bioceramic holder clips, too.

Why There’s No Wristwatch

The simple logic of the pocket watch design authorized by Audemars Piguet, which, unlike Omega, is not part of the Swatch Group, is that it doesn’t upset its existing high-net-worth customer base. Royal Oak owners will no doubt be breathing sighs of relief now that it’s confirmed a version of their coveted pieces won’t be coming to market for a mere few hundred bucks.

However, this doesn’t mean that AP would have been financially hit had it delivered what the public so clearly wanted. Omega, which was also concerned for its sales when shown the original MoonSwatch internal prototypes, enjoyed a sizable 50 percent bump in sales following the release of its budget cousin.

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The Royal Pop pocket watch, cleverly, is a sidestep designed to generate as much hype as possible yet be as safe as can be for AP’s brand. The Royal Oak design language is unmistakable, but the wrist is off-limits. With Swatch, Audemars built something real for its aspirational fans; it just didn’t build them what they wanted.

What does Swatch get out of this? Valuable PR as well, but far more importantly, the potential of a much-needed sales hit. In 2025, the group posted a 6.75 percent drop in sales and a staggering 55.6 percent decline in operating profit, primarily attributed to a sharp drop in demand for its watches in China, Hong Kong, and Macau. Swatch Group shareholders are not happy.

How China Will Come to the Rescue

Here is where the story gets interesting for reasons neither Swatch nor AP planned. As Swatch resurrected its POP design, allowing the Royal Pop to be removed from its housing, within hours of the Royal Pop announcement, third-party strap brands seized on this prospect, looking to quickly fashion adaptations that convert the timepiece from pocket to wristwatch. As Royal Pops were designed to snap in and out of lanyards and desk stands, they should just as easily clip into bracelets and straps made specifically to receive them.

The market recognized in real time that the pocket watch from Swatch and AP tantalizingly contained all that was structurally needed to deliver the very wristwatch that the AI concepts had promised. All that was required now was something to connect the case to a wrist.

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Graphon AI raises $8.3M seed to build a pre-model intelligence layer for enterprise AI

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Graphon AI emerged from stealth with $8.3 million in seed funding to build a “pre-model intelligence layer” that discovers relationships across multimodal enterprise data before it reaches a foundation model. The round was led by Novera Ventures, with participation from Perplexity Fund, Samsung Next, GS Futures, Hitachi Ventures, and others. The company is named after a mathematical concept co-formalised by its technical advisors, UC Berkeley professors Jennifer Chayes and Christian Borgs. Founded by Arbaaz Khan (CEO), Deepak Mishra (COO), and Clark Zhang (CTO), with team members from Amazon, Meta, Google, Apple, NVIDIA, and NASA. Early customer GS Group (South Korean conglomerate) has deployed Graphon for convenience-store analytics and construction-site safety.

The name is the tell. Graphon AI, which emerged from stealth on Wednesday with $8.3 million in seed funding, is named after a mathematical object that most people in AI have never heard of and that its two most prominent advisors helped invent. A graphon is the limit of a sequence of dense graphs: a continuous function that captures the structure of relationships as networks grow infinitely large. It is the kind of concept that exists at the boundary between pure mathematics and theoretical computer science, and it is now the foundation of a startup that claims to have built the missing layer between enterprise data and the models that are supposed to make sense of it.

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The company’s thesis is straightforward, even if the mathematics behind it are not. Today’s large language models can process roughly one million tokens at a time. Enterprises hold trillions of tokens across documents, video, audio, images, logs, and databases. Retrieval-augmented generation, the current standard approach, can surface relevant content from that mass, but it cannot discover relationships between pieces of data that were never stored together. An LLM using RAG can answer a question about a specific document. It cannot reason about how that document connects to a surveillance video, a compliance log, and a customer database, at least not without someone having already mapped those connections.

Graphon’s product sits before the model, not inside it. Using graphon functions, a mathematical framework that extends the academic concept into a software layer, the system ingests multimodal data and automatically discovers relational structure across it, producing what the company calls persistent relational memory. The result, in theory, is a representation of an organisation’s data that any foundation model or agent framework can query without being constrained by its context window.

The people behind the mathematics

The founding team comprises Arbaaz Khan as chief executive, Deepak Mishra as chief operating officer, and Clark Zhang as chief technology officer. The company says its broader team includes former researchers and engineers from Amazon, Meta, Google, Apple, NVIDIA, Samsung AI Center, MIT, Rivian, and NASA.

More notable, perhaps, are the technical advisors. Jennifer Chayes, dean of the College of Computing, Data Science, and Society at UC Berkeley, and Christian Borgs, a UC Berkeley computer science professor, are both listed as advisors. Borgs was among the group of researchers, alongside Chayes, László Lovász, Vera Sós, and Katalin Vesztergombi — who formalised the graphon as a mathematical concept in 2008. The company is, in effect, commercialising a framework that its advisors co-invented.

Chayes and Borgs described the approach in a joint statement as one that treats relational structure as a first-class element of the AI stack rather than something to be inferred after the fact. The distinction matters because most current AI systems treat data as collections of individual items to be retrieved, not as networks of relationships to be preserved.

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An unusual investor table

The seed round was led by Arvind Gupta of Novera Ventures, who made Graphon his fund’s first investment from its flagship vehicle. Gupta is better known as the founder of IndieBio, the life-sciences accelerator, and his pivot toward an AI infrastructure company suggests he sees structural overlap between the problems Graphon addresses and the complex, multimodal data challenges that define scientific computing.

The rest of the cap table reads like a deliberate exercise in strategic diversity. Perplexity Fund, the $50 million venture arm of the AI search company, participated alongside Samsung Next, Hitachi Ventures, GS Futures (the venture arm of South Korean conglomerate GS Group), Gaia Ventures, B37 Ventures, and Aurum Partners, the investment fund affiliated with the ownership group of the San Francisco 49ers.

The mix is telling. A search-AI company, a consumer electronics giant, a Japanese industrial conglomerate, and a Korean chaebol all investing in the same pre-model data layer suggests that the context-window problem Graphon claims to solve is felt across industries that otherwise have little in common. GS Group, which ranks among South Korea’s largest conglomerates with interests spanning energy, retail, and construction, is also an early customer. Ally Kim, a vice president at GS, said the company’s multimodal AI solutions have been applied to analysing customer movement in convenience stores and enhancing safety through CCTV analysis at construction sites.

The technical bet

Graphon’s positioning reflects a broader shift in the AI infrastructure market. The past three years have been dominated by a race to build larger models with longer context windows. But even the most capable models still hit a ceiling: they can process more tokens, but they cannot maintain relational awareness across the volumes of data that large organisations generate. The question Graphon is betting on is whether the solution lies not in extending the context window further, but in structuring data before it enters the window at all.

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The company says it has already deployed its platform for enterprise content management, industrial intelligence, agentic workflows, and on-device applications across phones, cameras, wearables, and smart glasses. The breadth of claimed use cases is ambitious for a company at the seed stage, and the absence of independent benchmarks or detailed customer case studies beyond GS Group makes it difficult to assess how far the technology has progressed from concept to production.

What is clear is that the problem Graphon describes is real. The gap between what LLMs can theoretically do and what they can actually do with enterprise data remains one of the most significant constraints on AI deployment. Retrieval-augmented generation has been the industry’s primary answer, and its limitations, flat retrieval that misses cross-dataset relationships, context windows that force artificial boundaries on what the model can see, are well documented. Whether graphon functions offer a fundamentally better approach or merely a more theoretically elegant version of graph-based data structuring is the question the company will need to answer as it moves from stealth-mode mathematics to production-grade infrastructure.

The $8.3 million gives it runway to try. The advisors who co-invented the underlying mathematics give it credibility. But in an AI market that has seen no shortage of startups claiming to have found the missing layer, Graphon’s challenge will be proving that the mathematics it is named after translates into a measurable improvement in how foundation models handle the messy, multimodal reality of enterprise data, not just in theory, but at the scale where theory stops being sufficient.

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Best Early Memorial Day Mattress Deals: Helix, Saatva (2026)

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Memorial DaY brings discounts to the mattress models we test all year long, and the sales have already started. As a seasoned deal hunter, I know that mattresses go on sale pretty often, but whenever someone asks me the best time to buy, I tell them to wait until Memorial Day or Black Friday and Cyber Monday. If you’ve been in the market for a new mattress, now’s the time to act.

The WIRED Reviews team thoroughly tests the best mattresses long-term. We don’t conduct “nap tests” or base recommendations on first impressions. Our top picks are tried-and-true, and they’re on sale right now. We’ll also include some deals on bedding, pillows, mattress toppers, and other sleep accessories as we update this story through Memorial Day on May 26. Prices shown are for queen sizes.

Feel free to check out our many other sleep recommendations, including the best pillows for neck pain, the best body pillows, and the best sunrise alarm cocks. You might also want to read our guide on how to choose a mattress.

WIRED Featured Deals:

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Helix Sleep Midnight Luxe Hybrid for $1,824 ($675 off)—Use Code WIRED27

Helix Sleep

Midnight Luxe Hybrid Mattress (14-Inch)

Use our exclusive coupon code WIRED27 to get 27 percent off our very favorite mattress for most people. We’ve seen it sell for about $100 less before, and they’ve thrown in more freebies, but this is still a great deal. Just be aware that the price might drop a little later in the month. In any case, the Midnight Luxe Hybrid is springy and medium-firm and should be well-suited to any style of sleeping. The individually wrapped springs are zoned so that you have more support where you need it to prevent back pain. It also doesn’t get too warm, though it’s thick enough that you’ll want deep-pocketed sheets. It’s been our favorite mattress for over eight years.

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Can AI replicate an army of associates? These lawyers are betting their new firm on it

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Matt Souza, left, and Sam Shaddox, founders of Talairis Law Group. (Talairis Photo)

Sam Shaddox and Matt Souza have spent years on the inside of big-time legal work, as attorneys at a major Seattle firm and later as general counsels at tech companies. They’ve watched as law firms charge startup clients a fortune for work they believed AI could do faster and cheaper.

Talairis Law Group is their answer. The Seattle-based firm, launching this week, is built around the idea that AI can handle much of the work that associates at big law firms have traditionally done — and that startups shouldn’t have to pay big law prices for it.

“It’s a startup for this AI moment,” Shaddox said, “and it’s the startup that we all need and the Seattle startup scene needs. We’ve been on the other side of the aisle, and now it’s time for us to make a mark.”

The idea isn’t unique. Venture capital has poured into AI-native law firms over the past couple of years, with players like Crosby, Manifest OS, Eudia and Lawhive raising hundreds of millions of dollars combined. But Shaddox and Souza say those firms have each picked a single practice area — contract review, immigration, M&A diligence — leaving a gap nobody has filled.

“They’re all picking one lane,” Souza said, “and there’s not an AI-powered law firm that you can rely on to help you with your day-to-day as things come up, helping to pilot your ship.”

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The founders: Shaddox and Souza were both partner-track attorneys at Perkins Coie, the prominent Seattle-based law firm, before moving in-house at Seattle-area tech companies.

Shaddox went on to legal roles at Big Fish Games and OfferUp before serving as general counsel at SeekOut, the AI-powered talent intelligence company. Souza was senior counsel at Zillow before becoming general counsel at Wrapbook, the entertainment payroll and financial platform.

It was that in-house experience, they say, that made the problem impossible to ignore.

“We were getting billed out the ears for work that — as we were adopting AI in-house — we saw law firms were not doing, or not doing it very well,” Souza said. “The whole economic model of law firms is broken. And so that’s where we started.”

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How it works: Talairis is built around what the founders call a four-layer architecture:

  • At the base is a large language model — the AI engine.
  • On top of that sits what they call an agentic layer, with more than 100 purpose-built AI agents covering the range of legal tasks a startup might need.
  • Above that is what they call the “client genome” — a stored profile of each client’s business, risk tolerance, contracts and operating history, so advice is never generic.
  • And at the top are Shaddox and Souza themselves, reviewing and signing off on every deliverable.

“You’re not getting one-off advice that doesn’t know what your company is or does or how it thinks and operates,” Shaddox said. “You’re getting bespoke outcomes.”

In practice: As an example, Shaddox and Souza point to SAFEs: simple agreements for future equity, a common bridge financing tool for startups. First-time founders often try to handle them on their own, or bring in outside counsel at $1,500 an hour. Either way, manually working through the notes, side letters and cap table implications is painful and error-prone.

Talairis has built an agent specifically for it. Send them a SAFE, they say, and you get back more than a legal opinion.

“They don’t just get back, ‘Hey, here’s our thoughts on this convertible note’ — anybody can do that,” Shaddox said. “Instead, they get back a fully built-out cap table that incorporates the latest note, incorporates the side letter terms, and shows how that’s going to flow through their next financing.”

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The pitch to startups: The firm is launching with paying customers, though Shaddox and Souza aren’t naming them yet. Talairis is bootstrapped and it’s just the two lawyers for now.

  • Pricing: Shaddox says their hourly rate runs roughly half that of a typical big law attorney, and that the AI multiplies output enough that the effective cost to clients is a fraction of what they’d pay elsewhere.
  • Privacy: On the question of whether client data is being used to train AI models — a real concern for startups sharing sensitive legal documents — Shaddox is direct: “The answer is no. Your data is never used to train a model.” Talairis has built confidentiality and attorney-client privilege protections into its architecture from the ground up.

The launch comes the same week Anthropic released Claude for Legal, a suite of more than 20 new connectors and 12 practice-area plugins aimed at bringing AI tools to law firms and in-house legal teams. Shaddox sees the timing as validation.

“Claude for Legal and any other LLM is a base layer,” he said. “Our unique approach is what sits on top: a law firm with elite attorneys, significant proprietary enhancements, per-client scoping, privilege protections, and the agentic architecture a generic plugin lacks. That’s what turns an out-of-the-box LLM into the best possible legal counsel for startups.”

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Anthropic’s Mythos AI outsmarted Apple’s Mac security systems

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Security researchers have admitted that Anthropic’s Mythos AI model has been able to hack macOS, bypassing Apple’s security systems in a way never previously achieved.

Mythos is an early version of a new, more powerful Claude AI model software that is yet to be made public. Anthropic’s engineers have warned that it is too good at finding security exploits to allow it into the wild.

Now, proof of its abilities has come in the form of an escalation exploit. If used correctly, the exploit could potentially allow a hacker to gain control of a Mac despite Apple’s security measures.

Detailing the news, The Wall Street Journal says that the security researchers were “excited about their discovery.” In fact, they were so impressed with what Mythos had done that they drove to Apple’s Cupertino HQ to share their findings.

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Chained attacks

The researchers, from a Palo Alto-based research outfit, say that Mythos didn’t use a single attack vector in its hack. Instead, it linked two bugs macOS together in an attempt to corrupt the Mac’s memory.

Person typing on a gray Apple laptop at a dark table, with a takeaway coffee cup and a pink container in the background, indoors with wooden wall panels

The macOS operating system has been hacked in a new way

Once the macOS memory had been compromised, Mythos was then able to “gain access to parts of the device that should be inaccessible.” It’s also possible that, should the hacks then be used alongside others, the Mac as a whole could become compromised.

For its part, a company spokesperson told the WSJ that it is reviewing and validating the security team’s findings.

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“Security is our top priority, and we take reports of potential vulnerabilities very seriously,” Apple reportedly said. However, Apple hasn’t yet said whether it has patched the bugs Mythos used for its hack.

In fact, it isn’t clear what Mythos did and didn’t do right now. That shouldn’t be all that surprising, with details likely to remain fuzzy until Apple has addressed the security flaws that were leveraged.

However, the report also notes that the attack couldn’t be achieved by Mythos alone. Without the skills of the hackers working alongside the AI, it is believed the hack wouldn’t have been possible.

As for Mythos, Anthropic intends for it to be used for good. Project Glasswing was launched to allow Mythos to be used as a way to identify security flaws so they can be addressed.

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Recursive Superintelligence raises $650m at $4.65bn valuation to build self-improving AI

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TL;DR

Recursive Superintelligence, a startup founded by former leaders from Meta AI, Google DeepMind, OpenAI, and Salesforce AI, has emerged from stealth with $650 million in funding at a $4.65 billion valuation. Led by Richard Socher and co-founded by ex-Meta FAIR director Yuandong Tian, the company is pursuing recursive self-improvement: AI systems that autonomously improve themselves in an accelerating loop. GV, Greycroft, Nvidia, and AMD backed the round. The startup has fewer than 30 employees and no released product.

 

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The idea that an AI system could improve itself, then use those improvements to improve itself again, faster, in an accelerating loop that eventually outpaces every human researcher on earth, has been a fixture of computer science folklore since at least the 1960s. For most of that time, it remained comfortably theoretical. Now someone has raised $650 million to build it.

Recursive Superintelligence, a startup founded by former leaders from Meta AI, Google DeepMind, OpenAI, Salesforce AI, and Uber AI, emerged from stealth on 13 May with a $4.65 billion valuation and a thesis that would have sounded like science fiction two years ago but now sits squarely within the Overton window of Silicon Valley ambition. The company’s stated mission: build AI systems that can autonomously discover knowledge, continuously optimise themselves, and evolve in an open-ended loop, much like biological evolution, but without the inconvenience of waiting millions of years.

The team behind the loop

The round was led by GV, Alphabet’s venture capital arm, and Greycroft, with participation from Nvidia and AMD, the two chipmakers whose hardware underpins virtually all frontier AI training. The involvement of both companies is notable: strategic investment from the firms that sell the picks and shovels suggests they see recursive self-improvement not as a theoretical curiosity but as a near-term compute customer.

The founding team is built to signal credibility. Richard Socher, the former chief scientist at Salesforce and founder of the AI search engine You.com, leads the company alongside seven co-founders: Yuandong Tian, formerly a research scientist director at Meta’s Fundamental AI Research lab (FAIR), where he led work on reinforcement learning, LLM reasoning, and AI-guided optimisation; Tim Rocktaschel, a professor of AI at University College London and former principal scientist at Google DeepMind; Alexey Dosovitskiy, one of the authors of the Vision Transformer (ViT), the 2020 paper that reshaped computer vision research; Josh Tobin, formerly of OpenAI; Caiming Xiong; Tim Shi; and Jeff Clune. Peter Norvig, co-author of Artificial Intelligence: A Modern Approach, the standard university textbook in the field, serves as an adviser.

Tian Yuandong’s involvement is particularly striking. A graduate of Shanghai Jiao Tong University who went on to earn a PhD in robotics from Carnegie Mellon, Tian spent over a decade at Meta FAIR, where his work spanned some of the most consequential problems in modern AI research. He led the DarkForest Go project, a CNN-based Go AI developed before DeepMind’s AlphaGo captured global attention, and later became lead scientist on ELF OpenGo. His departure from Meta and immediate entry into a startup pursuing the most ambitious goal in the field is itself a signal: the talent that built the current generation of AI systems is now betting that the next generation can build itself.

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What recursive self-improvement actually means

The concept is deceptively simple. Instead of human researchers designing each new generation of AI, an AI system would automate parts of its own research and development process, generating improvements that in turn make it better at generating improvements. A company that achieves this first would, in theory, be able to extend its lead over competitors exponentially, because its development velocity would be compounding rather than linear.

Recursive Superintelligence has outlined a staged roadmap. The first step, according to company materials, is to train a system with the capabilities of “50,000 doctors” to automate AI scientific research itself. From there, the company plans to run what it calls a “Level 1” autonomous training system, with a public launch targeted for mid-2026. The funding will be used in part to secure the large-scale compute infrastructure required to run these experiments.

The company currently operates from offices in San Francisco and London, with a team that has expanded beyond 25 researchers and engineers. The round was described as heavily oversubscribed.

The race is already on

Recursive Superintelligence is not pursuing this thesis in isolation. The largest AI laboratories are already using their own models to accelerate research. Anthropic has said that the majority of its code is now written by Claude. OpenAI has reported that GPT-5.5 developed a parallelisation method that boosted token generation speeds by more than 20%. Google DeepMind has built AlphaEvolve, a coding agent designed for scientific and algorithmic discovery. Google co-founder Sergey Brin has reportedly described coding gains as a path to “AI takeoff” internally.

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What distinguishes Recursive Superintelligence from these efforts is that none of the major laboratories has organised an entire company around recursive self-improvement as its core commercial thesis. OpenAI, Anthropic, and Google DeepMind all use AI to assist their research workflows, but their businesses are built around selling models and API access. Recursive is betting that the self-improvement loop itself is the product.

Whether that bet pays off depends on a question that remains genuinely open: whether recursive self-improvement produces the kind of runaway acceleration its proponents describe, or whether it converges on diminishing returns as each cycle of improvement yields smaller gains. Anthropic co-founder Jack Clark has estimated a roughly 60% probability that a system capable of training a more powerful successor on its own, without human involvement, will exist by the end of 2028, and a 30% chance by 2027.

For now, what is certain is the price the market has placed on the possibility. Recursive Superintelligence is four months old, has fewer than 30 employees, and has not released a product. It is valued at $4.65 billion. In the current AI investment climate, the promise of a machine that can improve itself is apparently worth more than many companies that have already built one.

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70% of Americans don't want AI data centers near their home, that's more opposition than nuclear plants get

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Given the huge number of negative stories about AI data centers, it’s little wonder that people are against any being built near them.
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Garmin Launches Forerunner 70 and 170 Smartwatches for Runners

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Running watches have slowly evolved from being niche gadgets meant only for marathon runners into something much more mainstream. If you’re in the market for a running watch, the Garmin has something for you. The company has just launched the Garmin Forerunner 70 and Garmin Forerunner 170 series, two new running-focused smartwatches aimed at beginners and everyday fitness users. Both watches feature AMOLED displays, touchscreen support, and Garmin’s traditional five-button design that long-time users will instantly recognize.

Interestingly, Garmin isn’t positioning these as premium athlete-first devices. Instead, the focus here seems to be accessibility. The company says the new watches are designed to help users start their fitness journey while still bringing in several advanced training features from Garmin’s higher-end Forerunner lineup.

What’s the Forerunner 70 and the Forerunner 170 About?

Garmin Forerunner 170 design

The Garmin Forerunner 70 is built for people who want the essentials without getting overwhelmed. It comes with built-in GPS, wrist-based heart rate tracking, pace and distance monitoring, and quick workout suggestions based on fitness level and intensity preferences. Garmin is also bringing over features like Garmin Coach, daily suggested workouts, sleep tracking, Pulse Ox monitoring, HRV status, and training readiness tools. There are over 80 built-in sports modes as well, including swimming, cycling, and strength training.

Battery life also looks pretty solid. Garmin claims the watch can last up to 13 days in smartwatch mode, which is honestly refreshing in a world where most wearables still need charging every other day. The watch will be available in colors like citron, lavender, black, and whitestone.

On the other hand, the Garmin Forerunner 170 takes things a step further by adding additional recovery and performance-tracking tools. It includes features like training status, training readiness, and more structured Garmin Coach plans for runners training toward specific goals. Garmin is also launching a Music version of the watch, which will be available in brighter color variants like teal green and red pink. Battery life on the Forerunner 170 series is rated at up to 10 days in smartwatch mode.

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The new Forerunner 70 and 170 series will launch in India in June 2026 after import certifications are completed. Garmin hasn’t revealed pricing yet.

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HP Launches 20+ New AI PCs, OmniPad Tablet, And Workstations In India

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HP has announced a massive refresh of its India lineup with more than 20 new products spanning laptops, tablets, AI workstations, collaboration gear, and even printers. And yes, just like every other tech launch in 2026, the letters “AI” were everywhere. Still, there are a couple of genuinely interesting products here, especially HP’s first Android tablet for India and a bizarre new “keyboard PC” that honestly looks straight out of a sci-fi setup.

HP OmniPad 12

Windows tablets are nothing new and have been on the market for ages. So, when HP announced its new OmniPad, we all thought it would be a Windows tablet for creative users. Well, it’s not. The OmniPad 12 is powered by the Qualcomm Snapdragon SM6475Q processor and runs Android, optimized for the bigger screen. The front houses a 12-inch 2K (1,200×2,000 pixels) multi-touch display with a 90Hz refresh rate and a peak brightness of 400 nits.

For cameras, HP has included a 13MP rear sensor alongside a front-facing 8MP camera for video calls. The company claims the 31Wh battery can deliver up to 18 hours of usage. Pricing starts at ₹48,999, which places the OmniPad 12 directly against Apple’s iPad Air and premium Android tablets from Samsung. We should get our hands on a review unit soon to see how well it actually stacks up.

PC in a Keyboard?

HP Eliteboard

Among all the announcements, the HP EliteBoard G1a Next Gen AI PC is probably the strangest. HP describes it as the world’s first AI keyboard PC, which basically means the entire computer is built into a keyboard.

HP says the machine can deliver up to 50 TOPS of NPU performance using the AMD processor and is designed for hybrid work environments where portability and simplicity matter. While AI branding is becoming exhausting at this point, the compact form factor itself is actually pretty interesting.

EliteBook, ProBook, And OmniBook Get AI Upgrades

Beyond the bizarrness of the EliteBoard, HP has refreshed almost its entire laptop lineup in India with new processors. This includes the EliteBook X G2, EliteBook 8 G2, ProBook 4 G2, and several new OmniBook models.

The EliteBook and ProBook series are clearly aimed at enterprise users, with features like HP Wolf Security and HP Sure View privacy protection. HP claims some configurations can deliver up to 85 TOPS of AI performance, though realistically, most users will probably care more about battery life and everyday responsiveness than AI numbers alone.

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The OmniBook lineup, on the other hand, targets mainstream users and creators. Models like the OmniBook Ultra 14, OmniBook X, OmniBook 5, and OmniBook 3 focus heavily on portability and AI-assisted features like posture correction, gesture controls, and smart meeting enhancements. HP is also bundling compact GaN chargers with some models, which is genuinely useful for people constantly traveling with their laptops.

New Work Stations

HP ZGX Nano G1n Catalog Image Left Facing

For professionals working with demanding AI or rendering workloads, HP has launched new Z-series workstations in India, including the HP Z8 Fury G6i, HP ZGX Nano G1n AI Station, HP Z4 G6i, and HP ZBook X G2i 16. These machines can be configured with both AMD and Intel hardware and are aimed at creators, developers, engineers, and enterprise users handling heavy workflows.

HP also announced updates to its Workforce Experience Platform (WXP), which now includes AI-driven tools for device management and workflow automation. The goal here is to help IT teams monitor devices more efficiently and identify system issues before they become major problems.

Pricing and Availability

Model Starting Price Availability
HP EliteBook X G2 Rs 2,50,000 HP online store, HP Connect
HP EliteBook 8 G2 Rs 2,30,000 HP online store, HP Connect
HP ProBook 4 G2 Rs 1,35,000 HP online store, HP Connect
HP OmniBook Ultra 14 (Snapdragon) Rs 1,89,999 HP online store
HP OmniBook Ultra 14 (Intel Ultra) Rs 2,14,999 HP online store, HP World stores
HP OmniBook X (Intel Ultra) Rs 1,69,999 HP online store, HP World stores
HP OmniBook 5 (Intel Ultra) Rs 1,24,999 HP online store, HP World stores

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