10 interesting stories served every morning and every evening.
Stuff that’s in the code but not shipped yet. Feature-flagged, env-gated, or just commented out.
A virtual pet that lives in your terminal. Species and rarity are derived from your account ID. Persistent mode with memory consolidation between sessions and autonomous background actions.Long planning sessions on Opus-class models, up to 30-minute execution windows.Control Claude Code from your phone or a browser. Full remote session with permission approvals.Run sessions in the background with –bgtmuxSessions talk to each other over Unix domain sockets.Between sessions, the AI reviews what happened and organizes what it learned.
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Read the original on ccunpacked.dev »
It was not a phone call. It was not a meeting. For thousands of Oracle employees across the globe, Tuesday morning began with a single email landing in their inboxes just after 6 a.m. EST — and by the time they finished reading it, their careers at one of the world’s largest technology companies were over.
Oracle has launched what analysts believe could be the most extensive layoff in the company’s history, with estimates suggesting the cuts will affect between 20,000 and 30,000 employees — roughly 18% of its global workforce of approximately 162,000 people. Workers in the United States, India, and other regions all reported receiving the same termination notice at nearly the same hour, sent under the name “Oracle Leadership.”
There was no heads-up from human resources, no conversation with a direct manager, and no advance notice of any kind. Just an email.
The email that circulated widely after screenshots were posted by affected workers on Reddit’s r/employeesOfOracle community and the professional forum Blind was brief and formulaic. It told employees that following a review of the company’s current business needs, a decision had been made to eliminate their roles as part of a broader organizational change, that the day of the email was their final working day, and that a severance package would be made available after signing termination paperwork through DocuSign.
Employees were also instructed to update their personal email addresses to receive subsequent communications, including separation details and answers to frequently asked questions. For many, access to internal production systems was revoked almost immediately after the message arrived.
Based on accounts shared across both Reddit and Blind, the cuts were widespread and, in some units, severe. Among the teams reported to be most affected:
RHS (Revenue and Health Sciences) — employees described a reduction in force of at least 30%, with 16 or more engineers from individual business units cut in a single action.
SVOS (SaaS and Virtual Operations Services) — similarly reported a 30% or greater reduction, with manager-level roles included in the sweep.
At least one manager was confirmed among those let go, and affected employees in India said the severance structure is expected to follow a standard formula based on years of service, paid out in months. Any unvested restricted stock units, however, were forfeited immediately.
Workers who had vested stock were told they would retain access to those shares through Fidelity. Some employees noted April 3 as their formal last working day, with a one-month garden leave period to follow. Separately, posts on Blind alleged that Oracle had recently installed monitoring software on company-issued Mac laptops capable of logging all device activity, with warnings circulating among affected employees not to copy any files or code before returning their machines.
The layoffs are directly tied to Oracle’s aggressive and debt-heavy expansion into artificial intelligence infrastructure. According to analysis from TD Cowen, the job cuts are expected to free up between $8 billion and $10 billion in cash flow — money the company urgently needs to fund a massive buildout of AI data centers.
The financial picture surrounding that expansion is striking. Oracle has taken on $58 billion in new debt within just two months. Its stock has lost more than half its value since reaching a peak in September 2025. Multiple U. S. banks have reportedly stepped back from financing some of its data center projects. All of this is happening even as the company posted a 95% jump in net income — reaching $6.13 billion — last quarter.
The contrast underscores the scale of the bet Oracle is making: record profits on one side, a mounting debt load and tens of thousands of eliminated jobs on the other. For the workers who woke up Tuesday morning to that 6 a.m. email, the company’s ambitions offered little comfort.
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Read the original on rollingout.com »
OpenAI on Tuesday announced that it closed a record-breaking funding round at a post-money valuation of $852 billion.
The round totaled $122 billion of committed capital, up from the $110 billion figure that the company announced in February. SoftBank co-led the round alongside other investors, including Andreessen Horowitz and D. E. Shaw Ventures, OpenAI said.
OpenAI kickstarted the artificial intelligence boom with the launch of its ChatGPT chatbot in 2022, and the company has since ballooned into one of the fastest-growing commercial entities on the planet. As of March, ChatGPT supports more than 900 million weekly active users, including more than 50 million subscribers.
“AI is driving productivity gains, accelerating scientific discovery, and expanding what people and organizations can build,” OpenAI said in a release. “This funding gives us the resources to continue to lead at the scale this moment demands.”
With the close of its latest funding round, OpenAI CEO Sam Altman will be under pressure to justify his company’s massive valuation, especially as it gears up for a potential IPO. The startup has been retreating from some hefty spending plans and shuttering certain features and products in recent months, including its short-form video app Sora, as it looks to rein in costs.
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Read the original on www.cnbc.com »
Walk into my lab and the first thing you’ll notice is the dots. The walls are lined with clear boxes, each one labeled, dated, and covered in dot stickers. Some boxes are buried in dots of every color. Others have a few. Others are bare. You don’t know what they mean yet, but you can see the pattern. That’s the system. It costs three dollars, has no software, and I’ve been using it for four years.
I’ve been collecting electronic components since university in 2011. Resistors, capacitors, microcontrollers, motors, drivers, DC-DC converters, displays, amplifiers, servos, LEDs, connectors. The usual trajectory of someone who keeps finding new projects. At first, my collection was small. A few toolboxes held everything. Then I graduated, kicked it into high gear, and by 2017 the collection had outgrown every container I owned.
I was stuck in an awkward middle ground. Too many parts for no system at all, but I was still one person. I didn’t have the problems that DigiKey or Mouser have, where they need barcodes on everything and a vast computerized inventory. I was looking for something simple that made sense for the scale I was working at.
The first thing I did was get rid of every opaque container I owned. Every toolbox, every parts organizer with little pockets, anything I couldn’t see through. I replaced everything with standardized 4L clear boxes from Superstore.
I learned this lesson early and it stuck: if I can’t see what’s in a box, I forget it exists. Clear boxes fixed that. I started sorting parts into categories that emerged naturally over time. A box for capacitors, a box for resistors, a box for motors, a box for LEDs.
The parts organizers with individual pockets were the first to go. They seem like a good idea when your collection is small, but as you keep adding parts, the fixed compartments become a problem. Components outgrow the pockets, and eventually you run out of pockets. The whole organizer becomes a constraint instead of solving the problem. Clear boxes don’t have this problem and the system can scale by simply buying more boxes.
As I worked on projects over months and years, I started to build an intuition about which boxes I was reaching for and which ones were collecting dust. My box of batteries was always on my desk. My box of fuses hadn’t been opened in my entire memory. But it was just a feeling. I couldn’t quantify it. I couldn’t tell you whether I opened my LED box twenty times last year or five. My memory is not good enough to track usage patterns across years of different projects.
And meanwhile, I had a constant influx of new parts. I’d work on an LED project, then move on to something that needed pneumatic components, so I’d order pumps and fittings. Then I’d get interested in piezoelectrics and order a bunch of piezos. Parts kept being added to my collection but my available space did not increase.
As Kirchhoff’s current law states, the current into a node must equal the current out. If I kept acquiring parts at this pace without getting rid of anything, I would eventually drown. I needed a way to figure out what was worth keeping and what should go, so the system can reach a steady state.
I considered RFID tags, barcode scanners, a spreadsheet. All of them felt like too much. Then I found the simplest possible solution on AliExpress for a few dollars.
I ordered sheets of colored dot stickers. Six millimeters in diameter. Hundreds of them for almost nothing.
Every box already had a label on the front with its category and the date I created the box. The new rule was simple: every time I open a box, I place one colored dot sticker near the label. That’s it. Use the box, add a dot.
I quickly realized that on days when I’m deep in a project, I might open the same box five or ten times. Tracking every single opening would be noise. So I refined the rule: one dot per box per day. If I open my LED box ten times on a Tuesday, it still gets one dot. What I actually care about is how many days per year I use a box.
Then, because I had all of these different colors, I decided to assign one color per year. I have over ten colors, so the system works for at least a decade. A piece of paper in my technical reference binder maps each color to its year so I never forget.
That’s the entire system. Sticker sheets cost a few dollars, and there is no database, no server, and no app. The system that works is the one simple enough to do every day for four years.
I wondered at first whether I’d actually keep up with it. Would I forget? Would it be annoying to find a sticker sheet every time I opened a box?
Both problems solved themselves. I keep sheets of stickers in multiple locations around the lab, so I’m always within arm’s reach of one. Applying a dot is muscle memory at this point. And forgetting turns out to be hard, because the dots are their own reminder. Even if the box I just opened has no dots, the neighboring boxes are covered in them. The visual prompt is everywhere.
Visitors always ask about the dots as they’re impossible to miss. When I explain the system and show how I add a dot whenever I use a box, there’s usually a pause, and then it clicks. A single dotted box doesn’t mean much on its own. It’s seeing a whole shelf of them, some covered and some bare, that makes it obvious this is a system.
After four years, the data is hard to argue with. Walk into my lab and you can read the shelves like a dashboard. Some boxes are covered in dots of every color, used year after year, project after project. Others have a cluster of one color from a single project and nothing since. Others are completely bare.
The biggest surprise was which parts turned out to be essential. It wasn’t sensors, even though I had many different kinds, it wasn’t specialized components or “cool” things. The most-dotted boxes are:
Glue. Tape. Stickers. General-purpose connectors. Batteries. Magnets. LEDs. DC-DC power converters. USB-C to barrel jack cables. Capacitors. Resistors. Mechanical tools like files, drill bits, and cutters. Calipers. SD cards and USB drives. Rubber feet. Fasteners.
In retrospect, it makes a lot of sense. All of these things are cross-cutting concerns. Power components like batteries, DC-DC converters, and USB-C cables appear in nearly every project. Connection components like glue, tape, magnets, fasteners, and general-purpose connectors bridge different systems together. Rubber feet show up whenever anything needs to sit on a desk. These aren’t the exciting parts. They’re the common components that nearly every project shares.
Even within a category, the dots reveal patterns. My metric fastener boxes tell a clear story: M3 is by far the most used, with two boxes dedicated to it. M6 is next because I use it for optical breadboards. M2.5 barely gets dotted because it’s specialized for things like Raspberry Pi mounting holes.
Meanwhile, sensors barely got dotted. Fuses, piezoelectric modules, specialized connectors: too application-specific to be core. Discrete LCD modules went unused after I started buying microcontrollers with integrated displays and buttons. I use capacitors and resistors constantly, but inductors got used maybe twice in four years.
And then there were the tools I thought were essential. My oscilloscope, function generator, and logic analyzer are commonly recommended as must-have tools for any electronics lab. Five dots on the oscilloscope in four years. I was genuinely surprised. I know for some people, in fields like RF, these tools are indispensable. But in my work, they’re not. I wouldn’t have had the confidence to say that without the data.
As I consolidated boxes and introduced larger sizes, finding specific parts inside a box became frustrating. I went through three generations of bags: ziplock bags from the grocery store, then clear logo-free bags from AliExpress (which wrinkled), then thick-walled clear bags that were more expensive but worth it. If you’re starting from scratch, skip the first two and go straight to thick clear bags.
I started seeing the whole system like a file system on a computer. Boxes are top-level directories. Bags are subdirectories. Parts are files. Bags can contain other bags. The Johnny Decimal system recommends no more than ten items per category. I don’t follow that rigidly, but I agree with the spirit: inside a box, aim for roughly ten bags. Inside a bag, aim for roughly ten sub-bags max. When things get too crowded, subdivide.
Every bag gets a handwritten label with its contents and the current date. I put dates on everything. Time turns out to be a great universal organizer, just like how a photo collection is wonderfully organized by date more than by any other single dimension.
Eventually my lab overflowed and I had to make real decisions about what stays and what goes. The dots helped me make those decisions.
I set up three tiers. My most-dotted boxes stay within fifteen feet of my desk. Less frequent boxes go in a closet in the lab. Boxes with no dots for a long time go to a separate storage shed outside of my lab, which I think of as “cold storage”.
Cold storage examples: a box of liquid pumps (ink pumps, peristaltic pumps, air pumps). A box of piezo actuators and piezo motors. I find piezos fascinating, but I’ve reluctantly come to admit over time that they’re just not that useful to me. A set of Parker linear motors I bought as lab surplus on eBay. Cool hardware, but the software for the ViX servo drives only works on Windows XP, and I didn’t have much need for linear motors. Zero dots for two years and moved it to the shed.
Sometimes things come back. When I started building a pick-and-place machine, my pneumatic components came right out of cold storage. That’s not a failure, I expect that some things will come back, just not very many things. Cold storage is like a staging area, not a graveyard. If a box sits there long enough untouched, the next step is donating or selling.
This closes a loop. When you constantly acquire new parts but have limited space, you need a system that tells you what should go out the door as new things come in. The dots provide that signal. A lot of people hoard things they don’t need. Seeing clear evidence that a box has zero dots is what helps me overcome the hesitation to finally let go of it.
Principles I’ve learned over four years of the dot system.
Clear boxes, same size and shape. Having a common form factor is like having a common software interface. Lids become interchangeable. If a box breaks you can replace it. You’ll probably need a few different sizes. Pick sizes where each jump is roughly double the last. I use four sizes total.
Labels on the front, not the lid. You will regret lid labels the moment you stack boxes.
Date everything. Every label, every bag. It feels unnecessary at first but it pays off over time. It’s also a kind of time capsule for yourself.
Thick clear bags. Take the time to label them. A permanent marker works fine. I use name tag sized white labels.
Keep sticker sheets near your boxes. If applying a dot takes more than two seconds, you’ll stop doing it. I put sticker sheets in half a dozen places around the lab near my boxes.
Everything needs a home. If only some things are in the system, the value is diminished. Everything you want to track needs to belong somewhere.
Don’t dot the obvious. I put dots on my soldering iron, calipers, and isopropyl alcohol bottle but it was pointless. I already knew these tools were cornerstones of my lab. The dots are most valuable for things where usage is genuinely ambiguous.
Curate categories. A box of random miscellaneous parts teaches you nothing. Boxes of parts that are used together yield high-quality signal.
And then give it time. A year in, you’ll start seeing patterns. Two years in, you’ll trust them enough to know how to refactor your collection.
The dot system doesn’t have to be figured out all at once. Mine evolved through three generations of bags and two major reorganizations. My interests changed, my domain of expertise grew, my collection expanded. The system evolved along with me. I like that it is a living, fluid system.
Walk into my lab and the dots will tell you everything you need to know. They told me too. It just took four years and a $3 pack of stickers. I’m still adding dots.
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Read the original on scottlawsonbc.com »
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Read the original on damrnelson.github.io »
OkCupid and Match settle with Trump FTC, don’t have to pay any financial penalty.
OkCupid and its owner Match Group reached a settlement with the Trump administration for not telling dating-app customers that nearly 3 million user photos were shared with a company making a facial recognition system. OkCupid also gave the facial recognition firm access to user location information and other details without customers’ consent, the Federal Trade Commission said.
OkCupid and Match do not have to pay a financial penalty in a deal made with the FTC over an incident from 2014. OkCupid and Match did not admit or deny the allegations but agreed to a permanent prohibition barring them from misrepresenting how they use and share personal data, the FTC said yesterday.
The FTC has been run entirely by Republicans since President Trump fired both Democratic commissioners. The proposed settlement requires approval from a judge and was submitted in US District Court for the Northern District of Texas.
The dating-site company said it’s pleased to settle the matter without paying any fine. “While we do not admit any wrongdoing, we have settled this matter with the FTC with no monetary penalty to resolve an issue from 2014 and move forward,” an OkCupid spokesperson said in a statement provided to Ars today. “The alleged conduct at issue does not reflect how OkCupid operates today. Over the years, we have further strengthened our privacy practices and data governance to ensure we meet the expectations of our users.”
Although a recent court ruling imposes limits on the FTC’s enforcement powers, that ruling applied only to the FTC’s in-house administrative process. The FTC can still pursue deceptive advertising claims in courts and seek financial penalties through court orders or settlements.
FTC: OkCupid imposed no restrictions on data use
The FTC criticized Match and OkCupid for sharing OkCupid data with Clarifai, an AI company that offers facial recognition technology. Clarifai’s website says it offers AI services to “military, civilian, intelligence, and government” customers and to private-sector companies in various industries.
The FTC said that “OkCupid provided the third party with access to nearly three million OkCupid user photos as well as location and other information without placing any formal or contractual restrictions on how the information could be used.” OkCupid “did not inform consumers or give them the chance to opt out of such sharing,” the FTC said.
The FTC said the data-sharing violated the OkCupid privacy policy, which told consumers that it doesn’t share “your personal information with others except as indicated in this Privacy Policy or when we inform you and give you an opportunity to opt out of having your personal information shared.”
The FTC alleged that “since September 2014, Match and OkCupid took extensive steps to conceal—including through trying to obstruct the FTC’s investigation—and deny that OkCupid shared users’ personal information with the data recipient. For example, when a news story revealed that the third party had obtained large OkCupid datasets, OkCupid claimed to the media and OkCupid users that it was not involved with the third party.”
The data-sharing arrangement was described in a 2019 article by The New York Times.
Clarifai founder and CEO Matt Zeiler “said his company had built a face database with images from OkCupid,” and “used the images from OkCupid to build a service that could identify the age, sex and race of detected faces,” according to the Times’ 2019 article.
“An OkCupid spokeswoman said Clarifai contacted the company in 2014 ‘about collaborating to determine if they could build unbiased AI and facial recognition technology’ and that the dating site ‘did not enter into any commercial agreement then and ha[s] no relationship with them now.’ She did not address whether Clarifai had gained access to OkCupid’s photos without its consent,” the Times wrote.
But even if they had no “commercial agreement,” Zeiler told the Times that his company gained access to user photos because some of OkCupid’s founders invested in Clarifai, the 2019 article said. “Clarifai used the images from OkCupid to build a service that could identify the age, sex and race of detected faces, Mr. Zeiler said,” according to the article, which added that “Mr. Zeiler said Clarifai would sell its facial recognition technology to foreign governments, military operations and police departments provided the circumstances were right.”
The FTC said in a complaint yesterday that OkCupid, which was purchased by Match.com in 2011, made “false and misleading claims” about how it used customer data. The complaint makes references to Humor Rainbow, the name of the company that created OkCupid.
“When OkCupid users inquired about OkCupid and the Data Recipient, Humor Rainbow reiterated its lack of involvement with the Data Recipient. Humor Rainbow stated that ‘any implication that OkCupid released users’ information to [the Data Recipient] is false,’” the FTC complaint said.
The FTC complaint described how the data-sharing arrangement was made:
In September 2014, the CEO of Clarifai, Inc. e-mailed one of OkCupid’s founders requesting that Humor Rainbow give Clarifai, Inc. (i.e., the Data Recipient) access to large datasets of OkCupid photos. Despite not having any business relationship with Humor Rainbow, the Data Recipient sought Humor Rainbow’s assistance because each of OkCupid’s founders, including Humor Rainbow’s President and Match Group, LLC’s CEO, were financially invested in the Data Recipient.
In response to this request, Humor Rainbow gave the Data Recipient access to nearly three million OkCupid user photos. Humor Rainbow’s President and Chief Technology Officer were directly involved in facilitating the data transfer. In addition to user photos, Humor Rainbow shared other personal data with the Data Recipient, including each user’s demographic and location information.
Humor Rainbow never executed a formal agreement or set forth restrictions governing the Data Recipient’s access to, or use of, the OkCupid user data. The Data Recipient did not pay for the data and never provided any services to Humor Rainbow or on behalf of OkCupid.
The FTC said that under the proposed settlement:
OkCupid and Match are permanently prohibited from misrepresenting or assisting others in misrepresenting: The extent to which the companies collect, maintain, use, disclose, delete or protect any personal information such as photos and demographic and geolocation data; The purpose for which they collect, maintain, use or disclose such personal data; and the function of privacy controls they provide consumers through user interfaces, any consumer choices afforded to consumers under applicable state privacy laws, or any other mechanisms the companies offer consumers to limit or manage the processing of personal data.
The FTC said its investigation involved the “successful enforcement in federal court” of a civil investigative demand that “required OkCupid to turn over information requested by the agency.” Although the FTC merely required OkCupid and Match to be honest with users about data practices and did not extract a financial penalty, the agency talked tough about the enforcement action in its press release.
“The FTC enforces the privacy promises that companies make,” said Christopher Mufarrige, director of the FTC’s Bureau of Consumer Protection. “We will investigate, and where appropriate, take action against companies that promise to safeguard your data but fail to follow through—even if that means we have to enforce our Civil Investigative Demands in court.”
Jon is a Senior IT Reporter for Ars Technica. He covers the telecom industry, Federal Communications Commission rulemakings, broadband consumer affairs, court cases, and government regulation of the tech industry.
Starlink satellite breaks apart into “tens of objects”; SpaceX confirms “anomaly”
You can finally change the goofy Gmail address you chose years ago
After 16 years and $8 billion, the military’s new GPS software still doesn’t work
RFK Jr. wants Americans to use peptides that were banned over safety risks
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Read the original on arstechnica.com »
Large models can’t fit on smartphones. Datacenters can’t sustain them. PrismML is building ultra dense intelligence to solve both. The first commercially viable model with 1-bit weights. Requiring only 1.15GB of memory, 1-bit Bonsai 8B was engineered for robotics, real-time agents, and edge computing. It has a 14× smaller footprint than a full-precision 8B model, runs 8× faster, and is 5× more energy efficient, while matching leading 8B models on benchmarks. This results in over 10× the intelligence density of full-precision 8B models¹. Requiring just 0.57GB of memory, 1-bit Bonsai 4B delivers exceptional speed, reaching 132 tokens per second on an M4 Pro. It pairs strong accuracy with outstanding energy efficiency, making it ideal for workloads that demand both performance and speed¹.With a footprint of only 0.24GB of memory, 1-bit Bonsai 1.7B pushes the limits of on-device speed, reaching 130 tokens per second on an iPhone 17 Pro Max. Combining industry-leading energy efficiency with solid accuracy, it’s a lightweight model built for heavyweight tasks¹.
Negative log of the model’s error rate divided by the model size
Tokens per second across hardware platforms (higher is better)
Milliwatt-hours per token across hardware (lower is better)
Successful artificial intelligence isn’t just about making models larger, but also smarter. Utilizing breakthrough research at Caltech, PrismML is pushing the frontier of intelligence density by reshaping how models are designed, prioritizing intelligence per bit over sheer parameter count.
We are looking for engineers looking to push the frontier of intelligence density.
Thanks, your application has been received!Oops! Something went wrong while submitting the form.
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Read the original on prismml.com »
… is what I’m reading far too often! Some of you are losing faith!
A growing sentiment amongst my peers — those who haven’t already resigned to an NPC career path† — is that blogging is over. Coding is cooked. What’s the point of sharing insights and expertise when the Cognitive Dark Forest will feed on our humanity?
Before I’m dismissed as an ill-informed hater please note: I’ve done my research.
† To be fair it’s a valid choice in this economy. Clock in, slop around, clock out. Why not?
Star Trek’s captain Kirk leaning into a computer cast in shadow looking contemplative.
It’s never been more important to blog. There has never been a better time to blog. I will tell you why. We’re being starved for human conversation and authentic voices. What’s more: everyone is trying to take your voice away. Do not opt-out of using it yourself.
First let’s accept the realities. The giant plagiarism machines have already stolen everything. Copyright is dead. Licenses are washed away in clean rooms. Mass surveillance and tracking are a feature, privacy is a bug. Everything is an “algorithm” optimised to exploit.
How can we possibly combat that?
From a purely selfish perspective it’s never been easier to stand out and assert yourself as an authority. When everyone is deferring to the big bullshitter in the cloud your original thoughts are invaluable. Your brain is your biggest asset. Share it with others for mutual benefit.
I find writing stuff down improves my memory and hardens my resolve. I bet that’s true for you too. It’s part rote learning part rubberducking†. Writing publicly in blog form forces me to question assumptions. Even when research fails me Cunningham’s Law saves me.
† Some will claim writing into a predictive chat box helps too, and sure, they’re absolutely right!
Blogging makes you a better professional. No matter how small your audience, someone will eventually stumble upon your blog and it will unblock their path.
Don’t accept a fate being forced upon you.
The AI industry is 99% hype; a billion dollar industrial complex to put a price tag on creation. At this point if you believe AI is ‘just a tool’ you’re wilfully ignoring the harm. (Regardless, why do I keep being told it’s an ‘extreme’ stance if I decide not to buy something?)
The 1% utility AI has is overshadowed by the overwhelming mediocracy it regurgitates.
We’re saying goodbye to Sora. To everyone who created with Sora, shared it, and built community around it: thank you. What you made with Sora mattered, and we know this news is disappointing.
Is there anything, in the entire recorded history of human creation, that could have possibly mattered less than the flatulence Sora produced? NFTs had more value.
I’m not protective over the word “art”. Generative AI is art. It’s irredeemably shit art; end of conversation. A child’s crayon doodle is also lacking refined artistry but we hang it on our fridge because a human made it and that matters. We care and caring has a positive effect on our lives. When you pass human creativity through the slop wringer, or just prompt an incantation, the result is continvoucly morged; a vapid mockery of the input. The garbage out no longer matters, nobody cares, nobody benefits.
I forgot where I was going with this… oh right: don’t resign yourself to the deskilling of our craft. You should keep blogging! Take pride in your ability and unique voice. But please don’t desecrate yourself with slop.
A disheveled Oliver Twist looks up pleadingly holding out an empty bowl.
The only winning move is not to play.
We’ve gotten too comfortable with the convenience of Big Tech. We do not have to continue playing their game. Don’t buy the narratives they’re selling.
The AI industry is built on the predatory business model of casinos. Except they’ve forget the house is supposed to win. One upside of this looming economic and intellectual depression is that the media is beginning to recognise gate keepers are no longer the hand that feeds them. Big Tech is not the web. You don’t have to use it nor support it. Blog for the old web, the open web, the indie web — the web you want to see.
And if you think I’m being dramatic and I’ve upset your new toys, you’re welcome to be left behind in the miasmatic dystopia these technofacists are racing to build.
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Read the original on dbushell.com »
The race is on to test new vehicles in the underground Large Hadron Collider tunnel, ahead of major works starting this summer
The race is on to test new vehicles in the underground Large Hadron Collider tunnel, ahead of major works starting this summer
Following on from the robotic mice, CERN engineers have now developed a super-charged kart to enable workers to race through the Large Hadron Collider (LHC) underground tunnel during the upcoming major works, starting this summer.
The karts promise a power boost to activities during this period, known as Long Shutdown 3 (LS3), which will see the LHC transformed into the High-Luminosity LHC. These vehicles will replace the bicycles that were used until now to travel through the 27-km underground tunnel, enabling engineers and technicians to speed to areas where improvements to the accelerator are required.
“Each kart is turbo-boosted by 64 superconducting engines,” explains project leader Mario Idraulico. “When the engines are cooled to below their critical temperatures, the Meissner effect levitates the karts, allowing them to zip through the tunnels at high speeds and, mamma mia, they’re super!”
Early tests have been promising, and the next steps involve testing different kart designs in an underground race. Safety coordinator Luigi Fratello has ensured that each driver will be issued with Safety and Health Equipment for Long and Limited Stays (SHELLS), although his response to drivers wanting bananas in the tunnel was “Oh no!”
These karts, although developed to support CERN’s fundamental research programme, show clear applications for society. CERN’s Knowledge Transfer Group has begun discussions with European startup company Quantum Mushroom to explore aerospace applications and powering for next-generation anti-gravity vehicles.
Surprisingly, the kart project began from a collaboration between CERN engineers and onsite nursery school children — one example of CERN’s commitment to inspiring future generations. “We’re thrilled that the children’s kart designs were the inspiration for the engineered karts,” exclaimed schoolteacher Yoshi Kyouryuu, mid-way through painting spots on eggs for an Easter egg hunt.
“As educators, we promote curiosity from a young age, which is why we paint question marks all over our yellow school walls,” explained school director, Rosalina Pfirsich, looking up from her storybook. “With all the contributions the children have made to the upcoming High-Luminosity LHC project, we’ve taken to calling them Luma!”
Find out more about the High-Luminosity LHC project.
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Read the original on home.cern »
Core AWS services plus real infrastructure — RDS runs actual databases, ElastiCache runs real Redis, ECS starts real Docker containers, Athena executes real SQL via DuckDB (when installed).
Same developer experience. Fraction of the cost and footprint.
Core AWS services plus real infrastructure — RDS runs actual databases, ElastiCache runs real Redis, ECS starts real Docker containers, Athena executes real SQL via DuckDB (when installed).
Same developer experience. Fraction of the cost and footprint.
Where it matters most — RDS, ElastiCache, and ECS run real Docker containers. No fake endpoints, no stubbed responses.
CreateDBInstance spins up an actual Postgres or MySQL Docker container. Connect with psycopg2 —
it’s a real database.
CreateCacheCluster starts an actual Redis container. Use redis-py, run SUBSCRIBE, use it as your
session store.
RunTask pulls and starts real Docker containers via the Docker socket. Test your ECS task
definitions locally.
Queries execute via DuckDB when installed. Query S3 data with actual SQL, get actual result sets
back. Falls back to mock results without it.
Works with boto3, AWS CLI, Terraform, CDK, Pulumi — any tool that speaks the AWS API.
No BSL, no feature gates, no “community” vs “pro”. Every service is free. Fork it, embed it. MIT
is MIT.
...
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