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Microsoft made Copilot a co-author on every VS Code project, reverted after developers revolted

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A recent pull request effectively turned Copilot into a “co-author” for every programming project created in Visual Studio Code – even when the programmer behind the screen did not use Copilot at all. Users informed Microsoft that they did not like the change, criticizing the company for adding more “slop”…
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A 20-minute pitch wins Indian startup Pronto backing from Lachy Groom

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Lachy Groom, one of Silicon Valley’s most closely watched solo investors, decided to back Indian startup Pronto just 20 minutes into his first meeting with its 24-year-old founder.

The meeting, which took place in February through a mutual connection, led to Groom investing $20 million in Pronto as an extension of its Series B round, valuing the startup at $200 million after the investment — double its valuation just over two months earlier, as TechCrunch had previously reported. The deal came together within weeks, bringing the solo investor on board as the Bengaluru-based startup expands to meet growing demand for on-demand home services in India.

Groom said he was drawn to Pronto’s ambition to build what he called the world’s largest platform for organizing domestic labor, starting with India’s vast and largely unstructured workforce. “The work underneath that is genuinely hard, and most attempts in adjacent categories have struggled with the operational discipline,” he said, adding that Pronto founder Anjali Sardana (pictured above) and her team were operating “at a level I haven’t seen elsewhere in this space.”

Before founding Pronto in 2025, Sardana worked at Bain Capital and venture firm 8VC, where she gained early exposure to investing and high-growth startups. The startup connects households with workers for everyday tasks such as cleaning and basic home services.

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The introduction was arranged through Paul Hudson, founder of Glade Brook Capital, who connected Groom and Sardana during her trip to San Francisco earlier this year. Glade Brook has backed startups founded by both: Pronto, which Sardana leads, and Physical Intelligence, where Groom is a co-founder. Hudson and Groom have also backed Indian quick-commerce startup Zepto.

Sardana said Groom’s investment approach is heavily founder-driven. “He indexes two things. One is the founder, and that’s 95% of it. If he loves the founder, then he will invest,” she told TechCrunch, adding that the rest comes down to the scale and potential of the business.

Groom’s bet comes as a clutch of startups in India race to build instant home services platforms, a category that is seeing rapid adoption among urban households as more consumers turn to on-demand help for everyday tasks.

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The opportunity is significant. A recent Bank of America note, reviewed by TechCrunch, estimates the instant home services market in India could grow into a $15 billion to $18 billion industry by the end of the decade, as companies including Pronto, Snabbit, and Urban Company’s InstaHelp compete for share in the fast-growing category.

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Competition is intensifying, with heavy capital inflows and aggressive pricing, particularly to attract first-time users. Bank of America estimates that Snabbit and Urban Company’s InstaHelp each account for about 40% of the market, while Pronto has around a 20% share, even as it scales rapidly. The category is expected to remain “burn-heavy” over the next two to three years.

Despite trailing larger rivals, Pronto has been scaling rapidly, growing from around 18,000 bookings a day to 26,000 in just over a month. The startup is focused on driving repeat usage, betting that turning occasional demand into frequent, habit-driven usage will be key to winning the category, with its top 10% of users accounting for about 40% of bookings.

This growth has also brought challenges, particularly in building out supply. Pronto has expanded its network of service workers to 6,500, up from 1,440 in January. But Sardana said demand continues to outpace supply, making forecasting and capacity management key challenges as the startup grows.

When you purchase through links in our articles, we may earn a small commission. This doesn’t affect our editorial independence.

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Microsoft Edge Stores Passwords In Plaintext In RAM

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Longtime Slashdot reader UnknowingFool writes: Security researcher Tom Joran Sonstebyseter Ronning has found that Microsoft Edge stores passwords in plaintext in RAM. After creating a password and storing it using Edge’s password manager, Ronning found that he could dump the RAM and recover his password which was stored in plaintext. Part of the issue is Edge loads all passwords to all sites upon a single verification check, even if the user was not visiting a specific site. This is very different from Chrome, which only loads passwords for specific websites when challenged for the site’s password. Also, Chrome will delete the password from memory once the password has been filled. Edge does not delete the passwords from memory once they are used.

Microsoft downplayed the risk noting access would require control over a user’s PC like a malware infection: “Access to browser data as described in the reported scenario would require the device to already be compromised,” Microsoft said. Ronning countered that it was possible to dump passwords for multiple users using administrative privileges for one user to view the passwords for other logged-on users. “Design choices in this area involve balancing performance, usability, and security, and we continue to review it against evolving threats,” Microsoft said. “Browsers access password data in memory to help users sign in quickly and securely — this is an expected feature of the application. We recommend users install the latest security updates and antivirus software to help protect against security threats.”

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Hackers used Daemon Tools' own website to silently install backdoors on thousands of PCs for nearly a month

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Cybersecurity researchers at Kaspersky found that the attack compromised multiple versions of Daemon Tools, from 12.5.0.2421 through 12.5.0.2434. What made the campaign particularly difficult to detect was that the malicious installers were distributed directly from the official website and signed with legitimate digital certificates belonging to AVB Disc Soft, the…
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Trump’s Anti-Migration Purge Is Breaking Up Military Families, Screwing Afghan Allies

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from the MAGA-just-means-hating-American dept

The content of their character was never up for consideration. Under Donald Trump, the only thing that matters is the color of their skin. That’s why almost every single person granted asylum since Trump took office has been white. That’s why Trump has been asking (out loud!) why we keep getting migrants from “shithole” countries (like those located in South America, Africa, and Latin America) rather than blond haired, blue eyed expats from Scandinavian countries whose residents’ lives would become noticeably worse if they chose to move to the US.

The president wraps himself in the flag, delivers a lot of garbled Team USA jingoism, and routinely proclaims we have the best military in the world. But even the people most directly responsible for keeping the US on top of the military game aren’t allowed to remain here if they’re not white.

Jose Serrano, an active duty soldier who served three tours in Afghanistan, said immigration agents arrested his wife April 14 as they attended an appointment with immigration services to take steps toward her permanent residency.

“A person opened the door, escorted us through the hallway, and at the end of the hallway, my wife got arrested,” Serrano said. “Arrested without any order, any warrant … They took away my wife. They don’t tell me anything.”

On top of all this awfulness, this incident shows ICE isn’t actually shifting away from immigration court arrests despite (1) officials saying otherwise, and (2) more importantly, ICE itself supposedly letting officers know that court arrests like these are not allowed under current ICE policy.

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The regular awfulness is this: the Trump administration is willing to attack its own military if it means racking up a few more arrests and deportations:

[L]ast April, DHS eliminated a 2022 policy that considered military service of an immediate family member to be a “significant mitigating factor” in deciding whether or not to pursue immigration enforcement. The administration’s new policy states that “military service alone does not exempt aliens from the consequences of violating U.S. immigration laws.”

It’s not just this nation’s relationship with its own military that’s being permanently damaged by Trump’s bigoted war on non-white people. It’s also any future relationships we might have in countries where we’re engaged in combat. When the US began its full withdrawal from Afghanistan, it promised protections to Afghans who worked with the military to provide intelligence or otherwise aided in the US in the decades-long war.

That’s all being tossed aside by Trump because he and his administration simply just don’t like non-white people.

After halting a U.S. resettlement program for Afghans who helped the American war effort, President Trump is in talks to send as many as 1,100 of them to the Democratic Republic of Congo, an aid worker briefed on the plan said Tuesday.

The group includes interpreters for the U.S. military, former members of the Afghan Special Operations forces and family members of American service members. More than 400 children are among them.

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The Afghans have been living in limbo in Qatar for over a year. They were taken there after being evacuated by the United States for their own safety because they supported American forces during the war against the Taliban that began in 2001.

Thanks for your help. Now, go fuck yourselves. That’s the message the US is sending to people who aided the US during this war. It’s the kind of message that isn’t likely to score it any allies as it resumes hostilities in the Middle East.

This report says Trump is “in talks” with DRC to pursue this “resettlement” of Afghan allies — one the administration pursues despite the protests of the people who risked their own lives to assist the US during the Afghanistan war.

It’s hard to believe Trump is actually engaged in anything. DRC already has a refugee problem of its own.

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More than 600,000 refugees, mostly from the Central African Republic and Rwanda, are currently in Congo, according to the United Nations. Human rights activists say that the country is not equipped to take in more in the midst of fighting with neighboring Rwanda that has displaced even more people because of attacks on refugee camps.

On top of this, many Afghan allies already have family members living in the United States due to previous efforts made by the Biden administration to protect those who aided the US. This forced resettlement in, well, pretty much any African country that agrees to take them divides even more families. It also demonstrates the United States is not to be trusted when it offers favors in return for assistance. All it takes is an election cycle to roll back guarantees and turn trusted allies into just another set of people being moved from “shithole country” to “shithole country” by a bunch of bigots who would rather destroy America than allow any more non-white people to become residents of what used the be the world’s “melting pot.”

At least for now, Trump has seemingly found a willing dumping ground for people he doesn’t want in this country:

On April 17, the U.S. government deported 15 people to the capital of the Democratic Republic of Congo, a deeply impoverished African country that’s been scarred by years of conflict.

The group—comprising men and women from Colombia, Ecuador and Peru—is the first to arrive as part of a secretive migration deal brokered with the Trump administration.

“They took us, they put us on a plane, and they chained us by our hands and feet,” said one Colombian man, sitting on a plastic chair in a shabby hotel near Kinshasa’s airport. The deportees didn’t know their final destination until they were on the plane, he added.

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Like El Salvador, I’m sure the DRC is more than happy to take our money to take some people off our hands. And like El Salvador, I’m sure the DRC government doesn’t actually care what happens to any of these people being shoved out of DHS charter flights like so much human refuse. If the US can’t be bothered to care, why should some third party in a developing nation do anything more than allow planes to land so long as the checks keep clearing?

This is what America is now: a place where human rights, civil liberties, and basic human morality are no longer weaved into the fabric of the nation. America is no longer the world’s policeman. It is now the world’s corrupt, racist sheriff.

Filed Under: afghanistan, bigotry, cruelty, dhs, ice, mass deportation, pete hegseth, trump administration, us military

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Today’s NYT Connections: Sports Edition Hints, Answers for May 7 #591

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Looking for the most recent regular Connections answers? Click here for today’s Connections hints, as well as our daily answers and hints for The New York Times Mini Crossword, Wordle and Strands puzzles.


Today’s Connections: Sports Edition is a tough one, but fun for movie fans. If you’re struggling with the puzzle but still want to solve it, read on for hints and the answers.

Connections: Sports Edition is published by The Athletic, the subscription-based sports journalism site owned by The Times. It doesn’t appear in the NYT Games app, but it does in The Athletic’s own app. Or you can play it for free online.

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Read more: NYT Connections: Sports Edition Puzzle Comes Out of Beta

Hints for today’s Connections: Sports Edition groups

Here are four hints for the groupings in today’s Connections: Sports Edition puzzle, ranked from the easiest yellow group to the tough (and sometimes bizarre) purple group.

Yellow group hint: If the shoe fits.

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Green group hint: Fore!

Blue group hint: Take me out to the ball game.

Purple group hint: Cinema titles.

Answers for today’s Connections: Sports Edition groups

Yellow group: Sneaker brands.

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Green group: Golf courses to host the U.S. Open.

Blue group: Famous nicknames for MLB teams.

Purple group: Movies that contain an NFL team name.

Read more: Wordle Cheat Sheet: Here Are the Most Popular Letters Used in English Words

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What are today’s Connections: Sports Edition answers?

may7sports2026.png

The completed NYT Connections: Sports Edition puzzle for May 7, 2026.

NYT/Screenshot by CNET

The yellow words in today’s Connections

The theme is sneaker brands. The four answers are Converse, New Balance, Saucony and Under Armour.

The green words in today’s Connections

The theme is golf courses to host the U.S. Open. The four answers are Pebble Beach, Shinnecock Hills, Torrey Pines and Winged Foot.

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The blue words in today’s Connections

The theme is famous nicknames for MLB teams. The four answers are Amazin’ Mets, Big Red Machine, Gas House Gang and Murderers’ Row. 

The purple words in today’s Connections

The theme is movies that contain an NFL team name. The four answers are Little Giants, Raiders of the Lost Ark, Remember the Titans and The Bad News Bears.

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4 Tips From Consumer Reports For Saving Money On Your Energy Bill

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Owning a home isn’t cheap (and we’re not even talking about the cost to get the keys in the first place). Electricity prices have reached their highest levels in a decade, and many households are feeling the strain. Worse, even the most modest projections tell us energy expenses will only continue to rise going forward. Even as homes get more and more efficient with better appliances, smarter lighting, and more efficient insulation, energy bills just keep on climbing.

Today, the average U.S. household spends about $2,000 per year on energy. But that average can be much higher depending on things like climate or home size. Over a lifetime, that’s tens of thousands spent. Luckily, Consumer Reports has publiushed some good advice here over the years. When taken together, their tips show meaningful savings don’t have to come from major renovations or expensive upgrades. Instead, homeowners simply have to make smarter decisions and change small habits. With Consumer Reports’ suggestions, you just might cut your energy bills by hundreds of dollars annually.

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Invest in an energy audit

Spending money to save money might not sound like the most practical suggestion, but think about it: A single energy audit can go a long way to reduce your utility costs for a lifetime of homeownership. Consumer Reports says energy auditors can help you get a better understanding of where energy is being wasted. That way, you never have to waste time or money on fixes that only scratch the surface.

Professional auditors have the tools to find air leaks, insulation gaps, poorly sealed areas, even indoor air pollutants or carbon monoxide leaks. From there, you can get to work addressing all the areas for improvement in your place… and hopefully stop overpaying for your HVAC, natural gas, and electrical usage in the process. You might have to spend an average of around $400 for the audit, depending on the size of your home, but it’ll all be worth it when you see those energy bills start dropping.

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It’s not always how you use energy, it’s when

When looking for ways to lower your energy bills, plenty of households only focus on how much energy they consume. However, timing can be just as important. Some energy companies offer time-of-use pricing plans, which charge different rates depending on demand. Using electricity will cost you more during peak hours, but you’ll spend less during the off-peak periods to make up for it.

By enrolling in one of these plans and shifting your most energy-consuming tasks (like dishes or laundry) to off-peak hours, Consumer Reports says you can shave a pretty meaningful amount off the bill. That could be thousands annually. Of course, it’s important to note that signing up without adjusting your habits can actually lead to higher bills. It has to be a two-step approach. First enroll, then adjust. Otherwise, you’re adding insult to injury by eating up tons of energy during peak surge pricing.

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Drafts matter more than you think

If you live in an older home or apartment, you may have gotten used to draftiness. Alternatively, if you live in a newer place, you might assume draftiness isn’t an issue for you. Neither attitude is going to help your energy bill in the long run. Consumer Reports says even the most efficient heating and cooling systems will struggle if a home isn’t properly sealed. Air leaks around windows, doors, attics, and basements let all that cool air out, meaning your HVAC system has to work harder (and consume more energy) to chill your place. If you’re closing doors, you’re hurting the HVAC even more.

Sealing drafts and improving insulation can reduce energy costs by at least $27 per month, according to Consumer Reports estimates. Over the course of a year, that adds up to more than $300 in savings. Again, that’s the least you’re likely to save. Savings can only go up from there. Don’t forget about your HVAC filters, either. Clogged filters force systems to work harder, which drives your energy bill up higher. Keeping those filters clean can save you another $11 per month on average.

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Small changes that yield big savings

The little things add up when it comes to energy consumption. It might not feel like you’re doing anything when you raise your thermostat by a degree or two or turn on a fan before blasting the A/C, but you’d be surprised. Consumer Reports says these little tweaks can save you a lot more than you realize. For example, lowering the temperature setting on your water heater from 140 degrees Fahrenheit to 120 degrees can cut annual energy costs by up to 22 percent. That’s hundreds of dollars for a difference of just 20 degrees. They say adding an insulating jacket to the tank can cut energy use by another 7 to 16 percent, as well.

Nobody’s saying you have to completely overhaul your home. Instead, it’s all about understanding the common places where energy is being wasted and making the kinds of small improvements that deliver the most meaningful results. With these steps in mind, just wait and see how much you can save.

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Miami startup Subquadratic claims 1,000x AI efficiency gain with SubQ model; researchers demand independent proof.

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A little-known Miami-based startup called Subquadratic emerged from stealth on Tuesday with a sweeping claim: that it has built the first large language model to fully escape the mathematical constraint that has defined — and limited — every major AI system since 2017.

The company claims its first model, SubQ 1M-Preview, is the first LLM built on a fully subquadratic architecture — one where compute grows linearly with context length. If that claim holds, it would be a genuine inflection point in how AI systems scale. At 12 million tokens, the company says, its architecture reduces attention compute by almost 1,000 times compared to other frontier models — a figure that, if validated independently, would dwarf the efficiency gains of any existing approach.

The company is also launching three products into private beta: an API exposing the full context window, a command-line coding agent called SubQ Code, and a search tool called SubQ Search. It has raised $29 million in seed funding from investors including Tinder co-founder Justin Mateen, former SoftBank Vision Fund partner Javier Villamizar, and early investors in Anthropic, OpenAI, Stripe, and Brex. The New Stack reported that the raise values the company at $500 million.

The numbers Subquadratic is publishing are extraordinary. The reaction from the AI research community has been, to put it mildly, mixed — ranging from genuine curiosity to open accusations of vaporware. Understanding why requires understanding what the company claims to have solved, and why so many prior attempts to solve the same problem have fallen short.

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Scaling Curves

How attention compute scales with context length. In standard transformers, cost rises quadratically — doubling input length quadruples compute. Subquadratic claims its architecture scales linearly instead. (Image Credit: Subquadratic)

The quadratic scaling problem has shaped the economics of the entire AI industry

Every transformer-based AI model — which includes virtually every frontier system from OpenAI, Anthropic, Google, and others — relies on an operation called “attention.” Every token is compared against every other token, so as inputs grow, the number of interactions — and the compute required to process them — scales quadratically. In plain terms: double the input size, and the cost doesn’t double. It quadruples.

This relationship has shaped what gets built and what doesn’t. The industry standard is 128,000 tokens for many AI models and up to 1 million tokens for frontier cloud models such as Claude Sonnet 4.7 and Gemini 3.1 Pro

Even at those sizes, the cost of processing long inputs becomes punishing. The industry built an elaborate stack of workarounds to cope. RAG systems use a search engine to pull a small number of relevant results before sending them to the model, because sending the full corpus isn’t feasible. Developers layer retrieval pipelines, chunking strategies, prompt engineering techniques, and multi-agent orchestration systems on top of models — all to route around the fundamental constraint that the model itself can’t efficiently process everything at once.

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Subquadratic’s argument is that these workarounds are expensive, brittle, and ultimately limiting. As CTO Alexander Whedon told SiliconANGLE in an interview, “I used to manually curate prompts and retrieval systems and evals and conditional logic to chain together the workflows. And I think that that is kind of a waste of human intelligence and also limiting to the product quality.”

Workaround Stack

The layers of infrastructure that AI teams build to compensate for limited context windows: orchestration, retrieval pipelines, chunking logic and vector databases — all sitting on top of a model that can process only a fraction of the information it needs. (Image Credit: Subquadratic)

Subquadratic’s fix is deceptively simple: stop doing the math that doesn’t matter

The company’s approach, called Subquadratic Sparse Attention or SSA, is built on a straightforward premise: most of the token-to-token comparisons in standard attention are wasted compute. Instead of comparing every token to every other token, SSA learns to identify which comparisons actually matter and computes attention only over those positions. Crucially, the selection is content-dependent — the model decides where to look based on meaning, not on fixed positional patterns. This allows it to retrieve specific information from arbitrary positions across a very long context without paying the quadratic tax.

The practical payoff scales with context length — exactly the inverse of the problem it’s trying to solve. According to the company’s technical blog, SSA achieves a 7.2x prefill speedup over dense attention at 128,000 tokens, rising to 52.2x at 1 million tokens. As Whedon put it: “If you double the input size with quadratic scaling laws, you need four times the compute; with linear scaling laws, you need just twice.” The company says it trained the model in three stages — pretraining, supervised fine-tuning, and a reinforcement learning stage specifically targeting long-context retrieval failures — teaching the model to aggressively use distant context rather than defaulting to nearby information, a subtle failure mode that quietly degrades performance in existing systems.

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Three benchmarks paint a strong picture, but what they leave out may matter more

On the surface, SubQ’s benchmark numbers are competitive with or superior to models built by organizations spending billions of dollars. On SWE-Bench Verified, it scored 81.8% compared to Opus 4.6’s 80.8% and DeepSeek 4.0 Pro’s 80.0%. On RULER at 128,000 tokens, a standard benchmark for reasoning over extended inputs, SubQ scored 95% — edging out Claude Opus 4.6 at 94.8%. On MRCR v2, a demanding test of multi-hop retrieval across long contexts, SubQ posted a third-party verified score of 65.9%, compared with Claude Opus 4.7 at 32.2%, GPT-5.5 at 74%, and Gemini 3.1 Pro at 26.3%.

But several details warrant scrutiny. The benchmark selection is narrow — exactly three tests, all emphasizing long-context retrieval and coding, the precise tasks SubQ is designed for. Broader evaluations across general reasoning, math, multilingual performance, and safety have not been published. The company says a comprehensive model card is “coming soon.”

According to The New Stack, each benchmark model was run only once due to high inference cost, and the SWE-Bench margin is, as the company’s own paper acknowledges, “harness as much as model.” In benchmark methodology, single runs without confidence intervals leave room for variance. There is also a significant gap between SubQ’s research results and its production model. On MRCR v2, the company reported a research score of 83 — but the third-party verified production model scored 65.9. That 17-point gap between the lab result and the shipping product is notable and largely unexplained.

Subquadratic also told SiliconANGLE that on the RULER 128K benchmark, SubQ scored 95% accuracy at a cost of $8, compared with 94% accuracy and about $2,600 for Claude Opus — a remarkable cost claim. But the company has not publicly disclosed specific API pricing, making it impossible to independently verify the cost-per-task comparisons.

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Benchmarks

Subquadratic’s published benchmark results. The company selected three tests emphasizing long-context retrieval and coding — areas where its architecture should have the largest advantage. Broader evaluations have not been released. (Credit: Subquadratic)

The AI research community’s verdict ranges from ‘genuine breakthrough’ to ‘AI Theranos’

Within hours of the announcement, the AI research community erupted into a debate that crystallized around a single question: Is this real?

AI commentator Dan McAteer captured the binary mood in a widely shared post: “SubQ is either the biggest breakthrough since the Transformer… or it’s AI Theranos.” The comparison to the infamous blood-testing fraud company may be unfair, but it reflects the scale of the claims being made. Skeptics zeroed in on several pressure points. Prominent AI engineer Will Depue initially noted that SubQ is “almost surely a sparse attention finetune of Kimi or DeepSeek,” referring to existing open-source models.

Whedon confirmed this on X, writing that the company is “using weights from open-source models as a starting point, as a function of our funding and maturity as a company.” Depue later escalated his criticism, writing that the company’s O(n) scaling claims and the speedup numbers “don’t seem to line up” and called the communication “either incredibly poorly communicated or just not real.”

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Others raised structural questions. One developer noted that if SubQ truly reduces compute by 1,000x and costs less than 5% of Opus, the company should have no trouble serving it at scale — so why gate access through an early-access program? Developer Stepan Goncharov called the benchmarks “very interesting cherry-picked benchmarks,” while another commenter described them as “suspiciously perfect.”

But not everyone was dismissive. AI researcher John Rysana pushed back on the Theranos framing, writing that the work is “just subquadratic attention done well which is very meaningful for long context workloads,” and that “odds of it being BS are extremely low.” Linus Ekenstam, a tech commentator, said he was “extremely intrigued to see the real-world implications” particularly for complex AI-powered software.

Magic.dev made strikingly similar claims two years ago — and then went quiet

Perhaps the most pointed critique of SubQ’s launch comes not from its specific claims but from recent history. Magic.dev announced a 100-million-token context-window model in August 2024, with a claimed 1,000x efficiency advantage, and raised roughly $500 million on the strength of those claims. As of early 2026, there is no public evidence of LTM-2-mini being used outside Magic.

The parallels are uncomfortable. Both companies claimed massive context windows. Both touted roughly 1,000x efficiency gains. Both targeted software engineering as their primary use case. And both launched with limited external access.

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The broader research landscape reinforces the caution. Kimi Linear, DeepSeek Sparse Attention, Mamba, and RWKV all promised subquadratic scaling, and all faced the same problem: architectures that achieve linear complexity in theory often underperform quadratic attention on downstream benchmarks at frontier scale, or they end up hybrid — mixing subquadratic layers with standard attention and losing the pure scaling benefits.

A widely cited LessWrong analysis argued that these approaches “are all better thought of as ‘incremental improvement number 93595 to the transformer architecture’” because practical implementations remain quadratic and “only improve attention by a constant factor.”

Subquadratic is directly aware of this history. Its own technical blog specifically addresses each prior approach — fixed-pattern sparse attention, state space models, hybrid architectures, and DeepSeek Sparse Attention — and argues that SSA avoids their tradeoffs. Whether it actually does remains an empirical question that only independent evaluation can settle.

A five-time founder, a former Meta engineer, and $29 million to prove the doubters wrong

The team behind the claims matters in evaluating them. CEO Justin Dangel is a five-time founder and CEO with a track record across health tech, insurancetech, and consumer goods, and his companies have scaled to hundreds of employees, attracted institutional backing, and reached liquidity. CTO Alexander Whedon previously worked as a software engineer at Meta and served as Head of Generative AI at TribeAI, where he led over 40 enterprise AI implementations.

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The team includes 11 PhD researchers with backgrounds from Meta, Google, Oxford, Cambridge, ByteDance, and Adobe. That is a credible collection of talent for an architecture-level research effort. But neither co-founder has published foundational AI research, and the company has not yet released a peer-reviewed paper. The technical report is listed as “coming soon.”

The funding profile is unusual for a company making frontier AI claims. Subquadratic raised $29 million at a reported $500 million valuation — a steep price for a seed-stage company with no publicly available model, no peer-reviewed research, and no disclosed revenue. The investor base, led by Tinder co-founder Mateen and former SoftBank partner Villamizar, skews toward consumer tech and growth investing rather than deep technical AI research. The company is not open-sourcing its weights but plans to offer training tools for enterprises to do their own post-training, and has set a 50-million-token context window target for Q4.

The real test for SubQ isn’t benchmarks — it’s whether the math survives independent scrutiny

Strip away the marketing language and the social media drama, and the underlying question Subquadratic is asking is genuinely important: Can AI systems break free of quadratic scaling without sacrificing the quality that makes them useful?

The stakes are enormous. If attention can be made truly linear without degrading retrieval and reasoning, the economics of AI shift fundamentally. Enterprise applications that today require elaborate retrieval pipelines — processing entire codebases, contracts, regulatory filings, medical records — become single-pass operations. The billions of dollars currently spent on RAG infrastructure, context management, and agentic orchestration become partially redundant. 

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Whedon’s willingness to engage publicly with technical criticism — posting a technical blog within hours of pushback — suggests a team that understands it needs to show its work, not just describe it. And to its credit, the company acknowledged openly that it builds on open-source foundations and that its model is smaller than those at the major labs.

Every frontier model in 2026 advertises a context window of at least a million tokens, but almost none of them are actually great at making use of all that information. The gap between a nominal context window and a functional one — between what a model accepts and what it reliably reasons over — remains one of the most important unsolved problems in AI. Subquadratic says it has closed that gap. If independent evaluation confirms that claim, the implications would ripple far beyond a single startup’s valuation. If it doesn’t, the company joins a growing list of long-context promises that sounded revolutionary on launch day and unremarkable six months later.

In computing, every fundamental constraint eventually falls. When it does, the breakthrough never comes from the direction the industry expected. The question hanging over Subquadratic is whether a team of 11 PhDs and a $29 million seed round actually found the answer that has eluded organizations spending thousands of times more — or whether they just found a better way to describe the problem.

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The app store for robots has arrived: Hugging Face launches open-source Reachy Mini App Store with 200+ apps

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There’s an app for nearly every imaginable user and use case these days, but one thing they all have in common is that they’re centered around one device: the smartphone.

That changes today as Hugging Face, the 10-year-old New York City startup best known for being the go-to place online to host and use cutting-edge, open-source AI models, agents and applications, launches a new App Store for Reachy Mini, its low-cost ($299) open-source physical robot that debuted back in July 2025 (itself the fruit of Hugging Face’s acquisition of another startup, Pollen Robotics).

The new Hugging Face Reachy Mini App Store already hosts a library of over 200 community-built applications, and Reachy Mini owners will be able to download any of these free of charge to start (unlike smartphone apps, there’s no monetization option for app creators on this store — yet).

The Reachy Mini App Store will also offer Reachy Mini owners — around 10,000 units have been sold so far since last year — an easy means of building their own custom apps for the tiny, stationary desktop robot with built-in camera eyes, speaker, and microphone, via Hugging Face’s existing, AI-powered agent called “ML Intern.”

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The significance lies not just in the hardware, but in the removal of the “roboticist” barrier; for the first time, individuals without a background in engineering or coding are shipping functional robotics software in under an hour.

“Anyone can build the apps,” said Clément Delangue, CEO and co-founder of Hugging Face, in a video interview with VentureBeat. “My intuition is that more and more [AI] model builders will release on Reachy Mini as a way to test the robotics ability of new models.”

Make robots as accessible to laypeople as PCs and smartphones

The technical bottleneck in robotics has historically been the scarcity of high-quality training data.

While Large Language Models (LLMs) have mastered general-purpose coding by training on massive repositories like Microsoft’s GitHub, the volume of code specific to robotics remains “tiny” by comparison (though Github does contain likely the largest existent, publicly accessible library of robotics code to date, with more than 17,000 different repositories or “repos” dedicated to the field).

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This lack of data has meant that, until now, AI agents were relatively poor at understanding the physical abstractions and firmware requirements of hardware.

Hugging Face’s solution is an agentic toolkit that acts as an intermediary. Rather than forcing a user to learn a specific robotics SDK or master the nuances of a robot’s firmware, the toolkit allows a user to describe a desired behavior in plain English—for instance, “wave when someone says good morning”.

An AI agent then handles the heavy lifting: it writes the code, tests it against the robot’s specific constraints, and ships the final package

“Historically, it’s been extremely hard,” Delangue told VentureBeat of building robotics applications. “But we’ve worked really hard on the topic with a mix of open sourcing everything we do, working on the right abstractions for robotics, and making it easier for agents to understand and use it.”

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The platform is model-agnostic, supporting a wide range of leading intelligence engines. Users can build apps using Hugging Face’s own ML Intern agent or leverage external models including GPT-5.5, Claude Opus 4.6, Kimmy 2.6, Mini Max GM5, and Deep Sig V4 Pro.

For real-time interaction, the official conversation apps utilize OpenAI Realtime and Gemini Live. By providing these high-level abstractions, Hugging Face has collapsed the traditional “integration weeks” of robotics work into a process that takes minutes.

Low-cost Reachy Mini is a hit

In order to take advantage of the new Hugging Face Reachy Mini App Store, users are encouraged to purchase Reachy Mini, a cute desktop robot Hugging Face launched back in July 2025 as an affordable, open-source alternative to the existing, commercially available robots from the likes of Boston Dynamics, whose infamous Spot robot dog retails for around $70,000. Even Chinese competitors start at $1,900+.

In contrast, the Reachy Mini is accessibly priced for hobbyists and developers. It comes in two variants:

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  • Reachy Mini Lite ($299 plus shipping): A tethered version that connects via USB and uses an external computer for processing.

  • Reachy Mini Wireless ($449 plus shipping): A standalone version featuring an on-board Raspberry Pi CM 4 and Wi-Fi connectivity.

Delangue said that of the 10,000 Reachy Mini units sold so far, 3,000 were sold in just the past two weeks. Hugging Face expects to ship another 1,000 units within the next 30 days.

Even those who don’t own a Reachy Mini can still develop apps for it, however, using the Reachy Mini App Store and the Reachy App, which contains a 3D simulation of the robot and its responses.

The App Store itself is hosted on the Hugging Face Hub. It functions much like a standard software repository but for hardware behaviors:

  • Search and Install: Users can find apps, click a button, and install them directly to their robot.

  • Forkability: Every app is “forkable,” meaning a user can duplicate an existing app and ask an AI agent to modify it (e.g., “make it answer in French”).

  • Simulation Mode: Crucially, the store includes a browser-based simulator. This allows users who do not own a physical Reachy Mini to build, test, and play with the catalog in a virtual environment.

Both are part of Hugging Face’s ongoing “Le Robot” effort — a project that began in 2024 with Hugging Face researchers specializing in robotics and AI developing and publishing on the web their own open-source code, tutorials, and hardware to make robotics development more accessible to a wider audience.

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And unlike Github, which is designed for a developer audience, the Hugging Face Reachy Mini App Store is designed for robot owners and users who may have no technical experience or training whatsoever.

Continuing with the open-source ethos and practice

Hugging Face’s strategy is rooted in the belief that closed-source hardware and software are “almost impossible” to build for at scale.

Delangue notes that closed systems prevent the training of agents and limit the ability of the community to innovate. Consequently, the entire Reachy Mini platform is open-source.

This open licensing model has two primary implications for the ecosystem:

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  1. Accelerated Development: Because the code is public and integrated with the Hugging Face ecosystem via “Spaces,” Hugging Face’s feature for hosting AI-powered web apps launched in 2021, agents can more easily learn how to interact with the hardware.

  2. Community Sovereignty: Apps are not locked behind a proprietary wall. Currently, all 200+ apps on the store are free, though the platform’s foundation on “Spaces” provides the flexibility for creators to potentially monetize their work in the future.

“For the moment, all the apps are free,” Delangue noted. “It’s flexible, it’s built on [Hugging Face] Spaces, so at some point maybe people are going to make them paid.”

Robotics enters its accessible hobbyist era

Hugging Face’s Reachy Mini App Store is launching with 200 apps already available.

So who built them, and how did they do it without this platform existing prior?

Delangue told VentureBeat that more than 150 different creators have contributed to the store, most of whom had never written a line of robotics code before.

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Yet, they have been able to do so thanks to Hugging Face’s ML Intern and Github. The new Hugging Face Reachy Mini App Store now puts the tools and existing apps into one place for easier accessibility.

Delangue was keen to highlight one of the early Reachy robotics app developers in particular to VentureBeat: Joel Cohen, a 78-year-old retired marketing executive.

Cohen, who is colorblind and has no technical background, spent two weeks assembling his Reachy Mini Lite (a task that usually takes three hours). Despite these physical challenges, he used an AI agent to build a “VP of Future Thinking” facilitator for his Zoom-based CEO peer groups. The app enables the robot to:

  • Greet 29 members by name.

  • Fact-check discussions in real-time.

  • Summarize key themes and push back on surface-level answers.

“I built this by describing what I needed in plain English,” Cohen stated in a press release provided to VentureBeat ahead of the launch. “No SDK. No robotics background. No developer experience”.

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Other community-driven applications include:

  • Emotional Damage Chess: A robot that plays chess and mocks the user’s blunders.

  • Reachy Phone Home: An anti-procrastination tool that detects when a user picks up their phone and tells them to get back to work.

  • Language Tutor: A physical companion that listens to speech and corrects accents.

  • F1 Race Commentator: A desk companion that calls Formula 1 races live as they happen.

Delangue himself related to VentureBeat that in only a few hours, he built an app for his own Reachy Mini robot at the Hugging Face Miami office to have the robot act as a receptionist.

“It basically does face recognition to detect when you arrive in the office, and then it looks at you and onboards you,” Delangue related. “It says, ‘Hey, welcome to the office. Who are you here to see?’ Then it sends me a message: ‘Carl just arrived at the office. He’s here to meet you, and for these reasons.’ It works a little bit as my welcoming booth at the office, and it took me less than two hours to build that.”

Even for an experienced founder and developer as Delangue, building apps for a robot was out of the question until the combination of Reachy Mini and ML Intern.

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“For me, it would have been impossible,” the Hugging Face CEO said. “If you weren’t a robotics developer, it probably would have been impossible, or it would have taken a few months.”

Democratizing robotics

The launch of the agentic App Store signals a fundamental shift in how we interact with machines. For sixty years, the field was gated by the requirement for deep technical expertise.

By combining low-cost open hardware with the reasoning capabilities of modern AI agents, Hugging Face is moving toward a future where the hardware is a commodity and the behavior is limited only by what a user can describe.

As Delangue noted during the launch, the goal was to provide a platform for people who “want to get into robotics but don’t have the hardware or the skills”.

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With nearly 10,000 robots now “in the wild” and a burgeoning store of agent-written apps, the Reachy Mini has become the most widely deployed open-source desktop robot in history.

The question is no longer how to build a robot, but what—now that the gate is open—we will ask them to do.

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A wider Galaxy Z Fold 8 may have leaked via Samsung’s own software

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Samsung might have just revealed its next big foldable shift by accident.

References buried in One UI 9 firmware appear to confirm a new “Wide” version of the Galaxy Z Fold 8. This hints at a major redesign that moves away from the tall, narrow shape of previous models.

The leak suggests Samsung is experimenting with a shorter, wider form factor, potentially making the Fold feel closer to a standard smartphone when closed.

According to the firmware details, the regular Galaxy Z Fold 8 sticks with a familiar design, measuring around 158.4mm tall and 72.8mm wide when folded. The new “Wide” variant, however, drops to 123.9mm in height while stretching out to 82.2mm wide, which should make it noticeably broader in the hand.

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Unfold it, and the difference becomes more obvious. The Wide model adopts a 4:3 aspect ratio, offering a more tablet-like canvas that better suits apps, reading, and multitasking, and it’s also slightly thicker at 9.8mm. This suggests Samsung may be prioritising usability over ultra-thin design this time around.

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Z Fold 8 'Wide' renderZ Fold 8 'Wide' render
Image Credit (Android Authority)

There are a few trade-offs, though. The leak points to a dual-camera setup on the Wide model, likely a 200MP main sensor paired with a 50MP ultrawide. This could mean dropping the telephoto lens found on the standard Fold 8. That would mark a shift in priorities, focusing more on core imaging performance than zoom versatility.

Performance shouldn’t be an issue either way; both versions are expected to run on the Snapdragon 8 Elite Gen 5 for Galaxy, alongside new crease-less OLED displays. These aim to smooth out one of the biggest complaints about foldables so far.

While nothing is official yet, the timing lines up with Samsung’s usual schedule. The Galaxy Z Fold 8 series is expected to launch at a Galaxy Unpacked event in July 2026 with rumours pointing to a possible London debut, a break from Samsung’s usual US or Korea venues.

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If accurate, the Wide model could be Samsung’s answer to growing competition in the foldables space. It may also be a sign that the company is finally rethinking how these devices should feel in everyday use.

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Canadian Officials Claim OpenAI Violated Federal And Provincial Privacy Laws

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Philippe Dufresne, the Privacy Commissioner of Canada, has found OpenAI was “not compliant with” Canadian federal and provincial privacy laws in the training of its AI models. Following an investigation, Dufresne and his counterparts in Alberta, Quebec and British Columbia say OpenAI’s approach to things like data collection and consent stepped on multiple laws, including Canada’s Personal Information Protection and Electronic Documents Act (PIPEDA), which governs how companies collect and use personal information during the normal course of business.

The commissioners participating in the investigation identified multiple privacy issues with OpenAI’s approach, including that the company “gathered vast amounts of personal information without adequate safeguards to prevent use of that information to train its models,” and that it failed to acquire consent to collect and use that personal information in the first place. Warnings in ChatGPT note that interactions with the AI could be used in training, but third-party data OpenAI has purchased or scraped also includes personal details people likely aren’t even aware of. The fact that ChatGPT users have no way to access, correct or delete that data was another issue that the commissioners identified, according to a summary of the investigation’s findings, along with OpenAI’s lackluster attempts to acknowledge the inaccuracy of some of ChatGPT’s responses.

Canada’s Privacy Commissioner contends that OpenAI was open and responsive to the investigation, and has already committed to making multiple changes to ChatGPT to follow Canadian privacy laws. OpenAI has retired earlier models that violated Canadian privacy regulation, and now uses “a filtering tool to detect and mask personal information (such as names or phone numbers) in publicly accessible internet data and licensed datasets used to train its models,” the Commissioner says. The company has also agreed within the next three months to add a new notice to the signed-out version of ChatGPT explaining that chats can be used for training and sensitive information shouldn’t be shared, and within the next six months:

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While Canada’s investigation into OpenAI’s privacy policies was opened in 2023, the company has received scrutiny from regulators more recently because of its connection to the mass shooting that occurred in Tumbler Ridge in February 2026. OpenAI had reportedly flagged the alleged shooter’s account in 2025 for containing warnings of real-world violence, but failed to escalate those concerns to Canadian law enforcement. Following the shooting, regulators demanded the company change its approach to safety, and OpenAI ultimately agreed to be more collaborative with Canadian law enforcement and health agencies in the future.



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