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ByteDance’s New AI Video Model Can Make 30-Second Clips From a Single Prompt

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The Chinese tech company ByteDance revealed Seedance 2.5, the latest version of its artificial intelligence video generator model, during a conference in Beijing on Tuesday, according to a report from The Information.

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AI video generation has come a long way since its debut, with each new version becoming increasingly better at producing realistic imagery. We’re far from the first time we saw Will Smith eating spaghetti, which was horrifyingly bad. 

Now, we need watermarking for these AI-generated videos to help identify deepfakes and other synthetic or false content

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The latest version of the video model allows users to provide up to 50 reference pieces, whether they’re images, videos or audio files — up from 12 in its predecessor, Seedance 2.0. Increasing the number of references will give you greater control over the video creation process. The model can generate 30-second, 4K videos with a single prompt. 

ByteDance has consistently released some of the most impressive AI video generation models, rivaling those of OpenAI’s now-dead Sora and Google’s Veo 3. ByteDance, which previously held a majority stake in TikTok, is said to release the new model in China next month, according to the report. A release time window for other countries was not mentioned. 

The introduction of the new model may turn some heads, and not in the best way. Seedance 2.0’s US rollout was delayed earlier this year under pressure from Hollywood to stop using copyrighted works that appeared to be used for training the model. If the latest model is significantly better than its predecessor, it could see a similar backlash if it can’t address legal and copyright issues. 

ByteDance did not immediately respond to a request for comment. 

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Emotion AI Gets Smarter With Layers of Human Context

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Imagine sitting down at your desk and logging in for a performance review, with an AI system analyzing the conversation. You’ve been working long hours, balancing deadlines, and your manager asks how you’re doing. You say you’re fine, and maybe even smile, but there’s a hint of hesitation and your voice wavers. As you shift your posture, your shoulders slump.

These are subtle cues that to the human eye might hint at underlying stress. But to an AI model that’s been trained only to categorize emotions as “happy” or “sad,” such nuances are likely lost. It logs the words and a smile and moves on—and unless your human manager intervenes, the fact that you’re tired, unfocused, and maybe a couple of days from burnout never enters the equation.

Emotion AI,” which estimates how people feel based on facial expressions, voice tone, and behavior, seems to be suddenly everywhere; it’s being used in employee well-being and recruitment interviews, education platforms, and driver-monitoring systems. Technology call-center platforms such as NiCE and Genesys use AI to detect when a customer sounds frustrated and prompt agents in real time to slow down or respond with more empathy. Giant companies like Meta and startups such as Hume AI are developing more-expressive voice AI systems that can detect emotional cues in the person they’re “talking” to and adjust how they communicate.

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What’s more, hundreds of companies already offer virtual AI companionship apps, a fast-growing market that may be worth an estimated US $555 billion by 2035—and robot buddies have also entered the picture. Intuition Robotics’s ElliQ, for example, is a small device vaguely resembling a white desk lamp that’s now being used to engage older adults in conversation in hopes of reducing loneliness.

But while the field of emotion AI is advancing at a rapid clip, most existing systems are focused on detecting a limited number of signals to label one specific emotion at a time—which is insufficient if you’re trying to understand the human condition. In the real world, human signals and emotions are contextual, overlapping, and constantly changing. A laugh can signal joy, nervousness, or both; a raised voice might signal enthusiasm just as easily as frustration. To make the job of emotion detection even more difficult, reactions differ greatly from one individual to the next, depending on demographics, cultural background, and countless other variables.

In other words, there’s a gap between what we’re expecting AI to pick up on and what AI can actually deliver. That’s the gap a new field of research—what we call human-context AI—is working to close. Instead of looking at just one input and labeling it, human-context AI increasingly has the capacity to take stock of an individual’s personality and character, and to track emotions in real time while combining multiple inputs, including facial dynamics, voice, tone, language, and behavior. Crucially, responses are also evaluated in the context of a specific environment, such as a performance review or professional coaching session. The result? Computers are learning to read the scene, rather than just the screen.

The Origins of Emotion AI

The story of emotion-sensing AI began almost three decades ago in the MIT Media Lab, where the American electrical engineer and computer scientist Rosalind Picard coined the term “affective computing.” Her work introduced the radical idea that computers could be taught to recognize and respond to human emotions.

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Picard’s early experiments focused on single modalities: facial expressions, tone of voice, and physiological signals, such as skin conductance or heart rate. The goal was to give machines a window into human feeling, helping them become more empathetic. It was an exciting vision, but back then the science and hardware weren’t ready. Computing power was limited, sensors were crude, and datasets were narrow and biased.

Pixel art of three party-hatted figures in a box, each losing a slice of cake. Josie Norton

Over the next decades, researchers and companies got better at measuring the many ways in which humans express themselves. In the 2010s, sentiment analysis—the processing of large volumes of text to suss out emotional undertones—began to reach the mainstream. At the same time, marketing firms, including my company, Neurologyca, began using video and webcams to measure and catalogue customer reactions. Biometric devices and activity trackers, such as Fitbits and Apple watches, also became ubiquitous, generating new streams of data about people’s sleep, step counts, stress levels, and more.

Unsurprisingly, scientists soon confirmed that larger volumes of personalized data led to greater accuracy in reading human emotions. In 2019, researchers at Cornell demonstrated that combining multiple types of signals improves emotion sensing. Their system joined physiological data, such as brain activity measured by electroencephalography (EEG) and heart rate, with visual cues like facial expression, outperforming systems that relied on just one input. Around the same time, Picard and her team at MIT found that humanoid robots trained on data unique to a specific person were substantially better at reading that person’s reactions and feelings than robots acting without personalized data.

More recent studies align with these findings. In 2024, scientists in South Korea showed that fusing physiological, environmental, and personal data to recognize emotion resulted in a 32 percent error reduction. Another paper, published in 2025, demonstrated that user-specific information significantly enhances emotion recognition performance.

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Today, our devices know who we are; our habits and tendencies, likes and dislikes. They’ve also gotten smaller and more efficient. Tiny, low-power cameras and microphones embedded in phones, laptops, and virtual-reality and augmented-reality devices can detect dozens of human signals simultaneously, from eye movements and micro-expressions to breathing rhythms, voice modulation, and posture. Advances in computing have also made it possible to integrate audio, video, biometric, and text data, often without even transmitting raw data to the cloud. And researchers at Stanford, Cambridge and MIT, and Kyoto University, in Japan, as well as the Software College of Northeastern University in Shenyang, China, are exploring how fusing such inputs can refine the sensitivity and accuracy of human-machine interactions.

And yet, despite so many breakthroughs, machines still can’t reliably interpret emotion or even physical stress. Just last year, a survey published in the Journal of Psychopathology and Clinical Science revealed that stress scores on smartwatches rarely, if ever, matched the level of stress that users were experiencing. In fact, a quarter of those surveyed reported feeling the direct opposite of what their smartwatches were reporting.

Why the disconnect? We’ve gotten very good at capturing signals, but not at interpreting them. A fitness tracker might infer from your heart rate that you’re stressed and recommend easing off training, but it doesn’t know if your increased heart rate is due to excitement, tiredness, or an extra cup of coffee. Gauging emotions in real-world settings is even more difficult. To solve this complex problem, machines need context.

From Neuromarketing to Emotion-Sensing AI

My company, Neurologyca, was founded in Spain in 2015, and started out in neuromarketing. Working with major European brands and conglomerates, our cofounder, Juan Graña, had realized that companies lacked solid data on consumers. At the time, most customer feedback came through surveys, which posed questions such as, “On a scale of 1 to 10, how joyful does this car advertisement make you feel?” or “Which emoji best describes your mood?” Naturally, these overly simplistic tools led to high levels of self-reporting bias, as people often misjudge or misstate their own reactions.

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To get around this problem, Neurologyca set up labs, using neuroscience and cognitive science to more accurately capture human responses to products, logos, advertisements, and experiences. In addition to using biometric tools such as heart monitors, eye trackers, and EEG, we recorded millions of video frames of human reactions, logging each specific context and the resulting facial and bodily movements. To do this, we mapped over 790 points of reference, including corners of the mouth, size of the eyes and pupils, blink rate, and angling of the head. All of this data was collected and stored anonymously under strict European privacy standards.

Next, we paired this information with findings from decades of neuroscience and behavioral science studies on how biometrics, speech patterns, and human movement are related to emotion—research we continue to gather from academic institutions across Europe. We also created a database of situational contexts—for example, “watching a dog food commercial” or “hearing a new song”—and the human feelings they engendered.

In our work with companies, not only did this approach allow us to recognize nuanced emotions, it also let us identify which reactions indicated positive or negative outcomes. Take, for example, the context of horror-film trailers: Our research helped us figure out that the most successful elicit a very specific mix of emotions, namely a little bit of fear, a little bit of anxiety, but also some joy. With this knowledge, we could quickly rate viewer reactions to help a film company figure out how to tweak its trailer for the desired impact.

Colorful 3D blocks explain Neurologyca\u2019s behavioral, situational, and personal context layers Neurologyca

Within a few years, we discovered that a model trained on our database could accurately evaluate emotion using just a webcam. We stopped needing to host focus groups in rooms full of equipment. Instead, we were able to do such things as sending out a new perfume sample to paid participants around the world along with a link. When people opened the link, it turned on their cameras, allowing us to record their faces as they sniffed the perfume for the first time. Suddenly, we had expanded our reach: Rather than using small focus groups in one or two countries, we could quickly assess 1,000 people across the planet, comparing how someone in Japan, India, or Germany might feel about a certain product.

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About four years ago, as AI was becoming pervasive, we realized that our models had applications well beyond neuromarketing. Importantly, these models are grounded in directly observed human behavior rather than inferred patterns or loosely labeled open datasets. Looking beyond brands and companies, we established that our model could be integrated into AI systems to help them understand human emotion at a much more granular level. In other words, we could provide a layer of context.

For Empathetic AI, Context Is Key

When we talk about “a layer of context,” we mean three different types of context. The first is situational or environmental context; for example, a performance review, a telemedicine session, or a horror-film viewing. The second is personal context, which includes an individual’s specific history, goals, and baseline state. The third is behavioral context, which covers the individual’s reaction over the course of the event or interaction by evaluating real-time changes in attention, confidence, engagement, and cognitive load.

Most systems today focus on only situational context, although some are starting to include personal context. Very few include behavioral context or combine all three in a meaningful way. What we’ve built at Neurologyca is a logic layer that fuses the three and translates them into structured, machine-readable information that allows AI systems and agents to respond more effectively. Our technology is being used to enhance systems in development, as well as some that have already been deployed, including driver-safety apps like Netradyne, home assistants like Amazon Alexa, and health-care AI platforms like Sully.ai.

It works as follows: Situational context is determined by the platform or application, be it a professional coaching session, a meditation app, or a driver’s safety monitor. Personal context already lives within each respective platform—or if not, it can be created through sharing of personal data or monitoring via camera. (Most wellness and professional-development apps, for example, contain each user’s profile, history, and prior sessions.) Last but not least, behavioral context is collected and analyzed in real time using our models. In the end, our logic layer fuses these three streams of information.

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Our system doesn’t assign fixed weights to the three contexts. Instead, it provides a continuous calibration, with the balance shifting depending on the specific situation. For example, a pause in speech might signal uncertainty in a performance review, but something entirely different in a relaxation setting. If signals are ambiguous or overlapping, our system reflects that uncertainty through lower confidence scores rather than forcing a definitive interpretation.

What’s more, our system can work without ever sending raw data to the cloud, thereby easing privacy concerns. In many cases, video, audio, and biometric signals never leave the device. Instead, our lightweight models extract information locally and share only what’s necessary. Cloud systems, meanwhile, are used for training, pattern analysis, and model improvement. The result is a hybrid architecture: edge-based processing for speed and privacy combined with cloud-based learning for continuous improvement.

The result? By incorporating context, AI systems are beginning to interpret aspects of the human state as interactions unfold, dynamically adapting to emotions rather than reacting after the fact. The range of potential applications is broad and still evolving. Picture a professional-development platform that uses a human avatar to perform a mock interview and then provide feedback and tips on how to appear more confident, likeable, and well-informed. Or a meditation app that knows exactly how well you slept and how anxious you’re feeling, and can recommend an appropriate breathing meditation. Or a humanoid robot teacher that can tell when a student is confused or bored and step in to get them back on track.

Avoiding Potential Dangers on the Road Ahead

There have long been debates about the ethics of emotion-sensing AI. Some critics question whether systems should attempt to infer human feelings from external signals at all. They argue that reducing people to measurable outputs risks oversimplifying human experience while opening the door to manipulation, surveillance, and unfair judgments in workplaces, schools, and public spaces.

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We take those risks extremely seriously. In fact, our technology aims to reduce the dangers of oversimplifying human emotion. Human-context AI is not based on the assumption that a machine can definitively know what someone is feeling. Rather, it is an attempt to move beyond simplistic labels by incorporating situational, personal, and behavioral context, while explicitly representing uncertainty when signals are ambiguous or incomplete.

That said, ethical concerns regarding implementation are real and have shaped the kinds of projects we pursue. We would never, for example, accept military engagements to help with interrogations. Not only for ethical reasons: Emotion AI cannot reliably detect deception, and claiming otherwise would be overstating what the technology can actually do. And while our technology can be used to gauge crowd behavior and predict things like when a football stadium is at risk of becoming destructively rowdy, we don’t want our technology deployed for surveillance. In short, we believe that using our logic layer on anyone who hasn’t opted in would be intrusive and ethically problematic.

In Europe, our systems are designed to comply with the EU AI Act’s restrictions on emotion recognition in workplaces and schools; as we expand into the United States, we apply jurisdiction-specific guidelines while maintaining the same core ethical commitments.

We also don’t advise companies to become overly reliant on our technology. Hiring and firing decisions should not be based on our outputs alone. Instead, our logic layer is designed to support human understanding and surface emotions that might otherwise go unnoticed.

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Let’s return to the scenario of the performance review. Never mind basic AI—all humans, and even great managers, miss things during conversations. There’s a lot happening at once, as people process what’s being said, how to respond, and the greater context of the situation. These days, many exchanges also occur virtually or via video, adding more distractions while shared context is stripped away.

While we would never claim that our models understand humans better than their fellow humans, we believe we can offer an added layer to help managers capture and interpret behavioral signals that might otherwise get lost, providing greater visibility into how a conversation is unfolding.

Our model can track patterns moment to moment, picking up, for example, a shift in engagement, an instance when something didn’t land, or a change in how someone is behaving. The model won’t tell the manager what these moments mean or what to do about them; it simply makes them easier to see and follow up.

Human-context AI is at an early stage. The use cases, the adoption patterns, and the actual impact are all still evolving. At the same time, emotion-sensing systems are quickly being incorporated into real products and platforms. And without context—without knowing why people feel the way they do—AI risks misunderstanding us in critical moments.

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A solid discount on the Echo Dot Max today makes this an easy upgrade

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Prime Day is a great time to make big savings on Amazon gear, and this is one of the standout deals we’ve found so far.

The Echo Dot Max can now be had for £59.99, down from £99.99. That makes it currently £40 off and 40% cheaper for Prime members.

Deal Amazon Echo Dot Max GraphiteDeal Amazon Echo Dot Max Graphite

A solid discount on the Echo Dot Max today makes boosting your music enjoyment an easy upgrade

With a strong price drop on the Echo Dot Max today, upgrading your everyday listening becomes an effortless win.

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The Echo Dot Max uses Automatic Room Adaptation to adjust its output to the acoustics of wherever it’s placed, which means it isn’t just playing louder than a standard Echo Dot but responding to the space around it, with lossless high-definition audio processing running across a 0.8-inch tweeter and a 2.5-inch woofer.

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That hardware handles audio bandwidth from 53 Hz to 16 kHz, which gives it enough range to reproduce both the low end of a bass-heavy track and the detail of quieter vocal passages without either getting lost in the other.

Streaming connects via Wi-Fi 6E or Bluetooth Low Energy 5.3 to Amazon Music, Apple Music, Spotify, and Audible, and the Omnisense technology built into the Echo Dot Max adds presence detection and temperature sensing so Alexa can trigger routines automatically when someone enters or leaves the room.

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The built-in smart home hub covers Zigbee, Matter, and Thread Border Router protocols, which means it can control compatible lights, locks, and thermostats directly without a separate hub, and the eero Built-in feature extends an existing compatible eero Wi-Fi network by up to 93 square metres at speeds up to 100 Mbps.

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You can even pair two Echo Dot Max units for stereo sound across a room, or connect one to a compatible Fire TV for a home cinema audio setup, and the AZ3 processor with AI Accelerator handles all of it without any perceptible lag between request and response.

For anyone who already has an Echo Dot and has been curious whether the upgrade is worth it, the £40 saving on the Echo Dot Max makes that question considerably easier to answer before the Prime Day window closes.

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Mythos discovers ‘Squidbleed,’ a memory leak that’s gone undetected since Clinton era

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Security

Plus more blasts from the past: NetWare, FTP, and HTTP

Sometimes it takes a while to detect a vuln. A 29-year-old, Heartbleed-style vulnerability in Squid, a popular open-source caching proxy server, silently leaked users’ plaintext HTTP requests and potentially revealed sensitive data, including credentials and session tokens, for decades – until AI (and a few humans) saved the day.

A security researcher and Mythos Preview found the flaw and reported it to project maintainers, who fixed the code earlier this month.

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Squid is widely used by large corporations, schools, and internet service providers to cache, filter, and monitor network traffic, and Calif.io researcher Lam Jun Rong said he came across the open source proxy while attempting to connect to the internet on a flight.

“As you might expect, the version of Squid deployed on that plane was released nearly 10 years ago and is affected by the vulnerability I’m about to share with you,” Rong wrote in a blog post about the bug, which he dubbed Squidbleed and investigated with help from Anthropic’s Claude Mythos Preview.

Rong reported the bug, tracked as CVE-2026-47729, to Squid’s maintainers back in April, and it’s fixed in Squid v7.6, released June 8.

The Reg readers may remember Calif from their earlier HTTP/2 Bomb research, uncovered by OpenAI’s Codex agent, and the AI bug-finding firm also collaborated with OpenAI on its Patch the Planet initiative, announced on Monday.

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According to Rong, Squidbleed leaks internal memory from every version of Squid in its default configuration with two conditions. First, Squid has to be able to read and inspect the network traffic, so it must be handling cleartext HTTP (not HTTPS) or be deployed in TLS-terminating setups.

Additionally, the proxy must be allowed to reach an attacker-controlled FTP (File Transfer Protocol) server via TCP port 21. FTP is an outdated protocol for moving files between machines, and Squid supports it – which is where the problem lies.

The bug exists in Squid’s FTP directory listing parser, and it was injected into the open source code as a commit (bb97dd37a) created in 1997 to support old NetWare servers.

NetWare is a discontinued network operating system that was popular in the 1980s and 1990s, providing file and print services across local area networks before Windows and Linux servers became dominant. NetWare FTP servers also added extra whitespace between the modification timestamp and the filename, compared to most other FTP servers that just used a single spFace.

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The 1997 commit fixed this NetWare issue by instructing the code to skip the extra whitespace using this loop: while (strchr(w_space, *copyFrom)) ++copyFrom;.

As Mythos Preview discovered, if an attacker’s FTP server doesn’t provide a filename after the modification timestamp, copyFrom points to the terminating NUL character at the end of the string.

“strchr treats that terminating NUL as part of the string it searches, so it returns a pointer instead of NULL, and the loop never stops,” Rong explains. “It walks off the end of the buffer, and xstrdup copies whatever follows back to the attacker as a filename.”

This results in a heap overread and can leak HTTP requests that often contain passwords or API keys, and Rong demonstrated this exploit in a proof of concept

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The patch is simple: check for the null terminator before calling strchr,” Rong wrote.

If you use Squid, make sure to download the June release to fix this flaw. Also, as Rong suggests, you should disable FTP unless there’s a “specific, unusual need for it.” Chromium-based browsers stopped supporting FTP years ago and for good reason. This means “most organizations running Squid are getting close to zero legitimate FTP traffic,” the security sleuth noted. “Turning it off removes this entire attack surface for free.”®

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SanDisk Extreme Pro SSD deal: Save over $30 on this top rugged portable drive

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Fast storage can completely change the way you work, and I’m a huge fan of the 1TB SanDisk Extreme Pro Portable SSD, which is now $179 (was $210) at Amazon this Prime Day.

That’s a 15% saving on one of the most popular high-performance external drives on the market, and even boasts an IP65 rating for durability. For UK readers, it’s got a slightly smaller discount, with the Extreme Pro now £202 (was £210).

Thanks to its NVMe-based architecture and USB 3.2 Gen 2×2 connectivity, the drive is rated for read and write speeds of up to 2,000MB/s. In practical terms, that means significantly faster file transfers than traditional portable hard drives and many entry-level SSDs.

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Today’s top SanDisk portable SSD deal

Whether you’re moving large photo libraries, backing up projects, editing video, or carrying a game library between devices, the Extreme Pro will minimize waiting around.

The drive features a forged aluminum chassis that doubles as a heatsink to help keep up performance during sustained transfers.

It’s rated for up to three meters of drop protection and carries an IP65 rating for water and dust resistance, making it a solid choice for photographers, content creators and professionals who regularly work away from a desk.

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Built-in 256-bit AES hardware encryption and password protection help keep sensitive files secure, while the SanDisk Memory Zone app can assist with file management and freeing up storage space on connected devices.

With more than 16,000 customer ratings and an average score of 4.5 stars on Amazon, the Extreme Pro has a rightly deserved strong reputation among users who need reliable, high-speed portable storage.

Sure, $178.49 isn’t exactly a budget purchase, but Prime Day’s discount makes it a more attractive choice for anyone seeking a rugged, fast external SSD that will remain useful for years to come.

For more picks, check out our guides to the best portable SSD and the best rugged drives.

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Also consider: More portable SSD deals

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Cracks in the crypto world? This top data center provider is spending $500 million to turn former cryptomining sites into AI cloud facilities

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  • AiOnX takes 77% share in US-based cryptocurrency miner
  • The deal sees it take control of 15 data centers in the US and Sweden
  • The $500 million acquisition sees it secure access to 1.3 Gigawatts of power, an increasingly scarce commodity for AI datacenters

AiOnX, a major data center infrastructure developer focused on hyperscalers across Europe, has taken a majority stake in the US-based cryptocurrency mining firm Genesis Digital Assets.

The transaction, valued at $500 million, sees its parent company, SWI Group, take a 77% stake in GDA, and gives it control over 15 cryptomining data centers across the US and Sweden – and perhaps more importantly, access to 1.3 Gigawatts of available power.

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A BIOS For Your ESP32-C6

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An old-style PC BIOS served the function of a bootloader in loading the operating system kernel, and of an API in providing a set of standard system calls through which software could interact with the hardware. Though it as been long-ago superseded by operating system level calls and UEFI bootloaders, it was a simple and easy-to-understand firmware for the PCs of the day.

Microcontrollers usually don’t have anything quite like a BIOS because their software is more often compiled as-is without the need for one. But here’s [Rompass] who has bucked that trend, with a BIOS for the ESP32-C6.

Of course this isn’t the PC BIOS we all know, and you’ll not be running DOS on it. Instead it’s a subsystem that serves the purposes outlined above and provides an environment for dynamically loaded executables from RAM rather than an operating system kernel. The executables are compiled in the normal way for the ESP32, and can be loaded over the network if necessary.

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We don’t know how popular a firmware like this one will become, but for us it’s symptomatic of how the line between a microcontroller and a microprocessor is becoming blurred. The next few years are going to continue this trend, as inexpensive microcontroller application processors such as the C6’s P4 bigger brother move into the mainstream.


Header image: Popolon, CC BY-SA 4.0.

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Here’s Why Cables For Thunderbolt 4 And 5 Ports Cost So Much

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Thunderbolt looks like USB-C, but there’s a lot more inside.

Thunderbolt cables are fast and versatile, but they also come at a premium. The newest standard, Thunderbolt 5, can cost several times as much as a basic USB-C cable. Given that they share the same port, you might be confused about why there’s such an extreme price discrepancy. Here’s a quick breakdown.

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The hidden tech inside

There’s a lot of advanced tech inside each cable. For example, Thunderbolt 5 supports up to 80 Gbps of bidirectional data transfer — and can transmit up to 120 Gbps (while receiving at 40 Gbps) in boost mode. That’s fast enough to move 1TB of data in just a few minutes. (With USB 2.0, that same process could take several hours.) Meanwhile, the older Thunderbolt 4 standard supports a (still zippy) 40 Gbps in either direction.

Certified Thunderbolt 5 cables can support 140W charging, with some supporting up to 240W via USB Power Delivery. And Thunderbolt 4 cables commonly support up to 100W of charging.

If you need one cable to handle all your data and power needs, Thunderbolt is the way to go. But at those speeds, even minor interference can mess with the signal. So, longer cables are often “active.” (That means they have IC chips to maintain the integrity of the signal over distances.) That includes retimer chips that clean up and refresh the signal as it travels, so it can arrive clearly at the other end.

The cable itself isn’t doing all of this. (Thunderbolt controllers in the connected computer and accessories handle the heavy lifting.) But the cable has to be engineered to carry those signals without errors.

Relatively speaking, the USB-C cables you have lying around the house are dinosaurs. Many of those only support USB 2.0 speeds. Even USB 3.2 Gen 2 tops out at 10Gbps. That’s plenty for, say, moving some documents, music files or photos, or running a lower-resolution display. But Thunderbolt is data transfer (and overall connectivity) on steroids.

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Thunderbolt 5 can output to multiple 8K displays or extremely high-refresh gaming monitors (up to 540Hz). It supports DisplayPort 2.1 and PCI Express Gen 4 — the latter ideal for external GPUs (eGPUs). They’re great for high-speed SSDs, too. And unlike basic cables, you can link multiple Thunderbolt devices in a daisy chain. Part of what you’re paying for is the advanced tech that enables all of that.

Somewhat confusing the matter is USB4, which is partially based on Thunderbolt 3 technology. USB4 can reach 40 Gbps, the same as Thunderbolt 4. And USB4 V2 hits 80 Gbps, matching Thunderbolt 5. The main difference? Well, that brings us to the next point.

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Certification costs

Thunderbolt is governed and controlled by Intel. The company developed the standard alongside Apple, with the first consumer cable arriving in 2011. Under Intel’s rules, a cable can’t carry the Thunderbolt name or logo (yes, it’s a lightning bolt) unless it passes a rigorous certification process. Those costs factor into retail prices.

The certification is essentially Intel verifying that the cables will hit their advertised speeds, charge safely at the proper wattage and work reliably with backward compatibility.

On that note, you can buy unofficial Thunderbolt-adjacent cables that might perform just as well as the certified ones. But without Intel’s testing, the unofficial ones aren’t guaranteed to live up to the billing. If you don’t need the full Thunderbolt feature set and are looking to save some money, a USB4 cable from a reputable brand will likely offer the fast charging and high-speed data transfers you’re looking for.

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The numbers game

Most people only need simple USB-C cables. Despite what the geekier corners of the internet suggest, your average person doesn’t need to drive multiple high-res displays or connect eGPUs to beef up their gaming laptops. So, naturally, the market is flooded with the slower, simpler kind designed for charging and basic data transfers. The larger market and manufacturing scale combine to drive down costs.

When you add that Economics 101 lesson to the Thunderbolt’s more advanced technology and certification costs, things become a little clearer. Now, at least you know what you’re getting into if you decide to pay several times more for the fast and versatile cable with a lightning logo on it.

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The 13 Best Amazon Prime Day Deals Under $100 in 2026

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JLab Audio

Go Pop ANC

Our favorite budget buds are on sale for a little cheaper.

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These stylish buds were WIRED’s previous top pick. Still great. Still cancel noise. Quite cheap right now. Battery life is mid, tho.

The Best Personal Blender for $100 ($30 off)

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Nutribullet

Ultra Personal Blender

When someone thinks they want a portable blender, they probably actually want this—the best personal blender on the market. This 1,200-watt Nutribullet Ultra is the best daily driver I know for smoothies, protein shakes, and pestos or salsas. It’s easily cleaned and utterly stashable so it doesn’t take up counter space. When you’re done blending, put the lid on the blending jug and it’s now a drink cup that’ll fit in most car cup holders. When it’s under $100 like it is now, it’s the best under $100 blender I know.

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A Terrific Air Fryer for $100 ($60 off)

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Photograph: Matthew Korfhage

Instant Pot

Vortex Plus Air Fryer Oven

Hi, this is my favorite basket air fryer. It’s nearly 40 percent off, and a penny shy of a hundred bucks. In a world where most basket air fryers careen wildly off-temp, this one keeps temperature better than some thermometers. It crisps wings and fries without blasting the soul out of them. It’s the one I recommend to most people who want a great air fryer but don’t want to spend a lot, and this is its best price of the year so far. (If you only want the best of the best of the best, the Typhur Dome 2 is more expensive but is also on a terrific Prime Day deal.)

A Handy Little Vacuum for $75 ($35 off)

  • Courtesy of Black & Decker

Black & Decker

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Dustbuster Flex

In most cases, a vacuum under $100 probably isn’t worth your time. But this little hand vacuum usually retails for $110, and it’s even cheaper right now. It’s a favorite of ours for vacuuming cars, thanks to the long hose and handle. Regardless of what you’re cleaning, it’s easy to move around and vacuum all kinds of crevices or deep trunks. There’s also a nice charging stand that holds the vacuum’s attachments and will keep it charged, which you’ll want since this vacuum only holds a 15 minute charge (unfortunately normal for small vacuums like this).

A Powerful Mini Speaker for $65 ($35 off)

Amazon’s Echo Dot Max takes the small body of the popular Echo Dot speakers and makes it so much better. It’s more powerful, it has better sound, a built-in smart home hub, and a design intended for its updated assistant, Alexa+. (We’ve got mixed feelings on how good that assistant is, but it’s free if you’re a Prime user.) But $100 is a bit pricey for such a small speaker, even if the sound is almost as room-filling as the larger Echo Studio. It’s nearly half off for Prime Day, though, so it’s a great time to shop.

A Powerful Streaming Box for $75 ($25 off)

Small white remote with a few buttons beside a flat, white, elongated disc-shaped device

Google has upgraded from the old Chromecast dongles you used to plug into a TV. Now we have the Google TV Streamer. This sleek little box disappears nicely next to any TV console table, and gives any TV a new streaming interface powered by Google. It’s much more powerful than the Chromecasts of past, and comes with Dolby Vision support, Thread router features that let it work as a smart home hub, and a great voice search.


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Even the Internet’s Favorite Pool Guy Doesn’t Know How to Fix the Reflecting Pool

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Steve Goodale isn’t used to attention like this. It’s not that he’s unfamiliar with being on camera: His YouTube Channel, Swimming Pool Steve, has amassed nearly 91,000 subscribers covering topics like how to bond concrete and clean a used hot tub.

But the saga of the Lincoln Memorial Reflecting Pool, which an algae bloom turned green following a renovation that President Donald Trump’s administration claimed would make the pool “American flag blue” in time for the US’s 250th birthday celebrations, has left people searching for answers about what the heck is going on.

The mystery has only deepened as chunks of the newly installed lining have appeared to break off and Trump has said the pool will be drained while, without evidence, blaming vandals for the problems. Add in US Park Police arresting people for touching the water like it’s some kind of biohazard, and that’s made Goodale, an award-winning pool expert, one of the most in-demand sources for anyone trying to figure out what’s happening to the iconic monument.

Pools are in Goodale’s blood: He learned the tricks of the trade from his Uncle Joe and refers to pools as “a family business.” I called him up to go over some of WIRED’s most burning pool questions. This interview has been lightly edited for brevity and clarity.

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WIRED: Are you sick of talking about all this yet?

Steve Goodale: This is like the Simpsons episode where the devil force-feeds donuts to Homer. “So, you like talking about pools, do you?”

“We heard you like talking about pools, so we’re going to give you pools 24/7. All the time.”

I’ve been talking about them forever. It’s just now everybody is listening.

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You’ve gotten a lot of reporters calling you and asking, what exactly is wrong with the Lincoln Memorial pool. But from watching your videos, it sounds like it’s hard to say there’s one definitive thing wrong with it.

There’s not enough information, in terms of pictures, videos, water chemistry values.

A natural pond, an open-air, clear water environment—that’s what this thing is—there are so many moving parts here. It’s the structure, it’s the water chemistry, it’s filtration. There’s so much stuff that has to work in conjunction with each other.

I’ve been saying for decades now, I think swimming pools are the origin of the term “doesn’t hold water.” If you don’t do every part of your job properly, it’s very easy to see that there’s something going wrong.

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Experts like you can see 101 ways in which a project like this could fail, even with a very talented, experienced team doing the renovation.

Pools are mercilessly complicated—and I’m talking about little ones. This is literally monumental in size. It would take a master class in technical execution to be able to work on this thing in a competent capacity.

But you don’t need Swimming Pool Steve to tell you that when you see what appears to be the interior surface peeling up and floating in chunks, that’s an “oh, crap” moment.

I’ve seen some speculation that the hydrogen peroxide might be the cause of the bottom of the pool peeling. But you made a video about the lining, saying that it might be more complex than just that.

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There is merit to this line of thought. These interior surfaces, they’re very chemically resistant, but they’re not infinitely chemically resistant. It would come down to what’s being used, and what concentrations of it are being used—all these unanswered questions.

But with a membrane system like this, there’s a lot of technical points you have to nail during installation. You have to account for ambient conditions like rain, sun, humidity, moisture control in your substrate, thickness, evenness, and chemical compatibility There are so many things that can go wrong with that process. If the material hasn’t bonded to the substrate for any number of reasons, then ultimately, the entire system will fail.

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Tech Moves: Microsoft names exec; Remitly CPO/CTO departs; AWS veteran to head Synthesia in Seattle

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Mike Jackson. (LinkedIn Photo)

Mike Jackson has been promoted to chief digital safety officer at Microsoft, a role within the company’s Trusted Technology Group that includes oversight of children’s safety, tech responsibility and international regulatory work. In a LinkedIn post, he called the work “critical, urgent, and inspiring.”

Jackson has been with Microsoft since 2020 and previously served as associate general counsel and head of legal and AI governance. Prior roles include legal counsel for Target, McDonald’s and other corporations.

“Mike has built his career at the intersection of law, technology, and responsible AI. He brings a rare combination of deep policy and legal expertise, genuine servant leadership, and a curiosity that makes everyone around him sharper,” said Jenny Lay-Flurrie, head of the Trusted Technology Group.

Ankur Sinha. (LinkedIn Photo)

Ankur Sinha has resigned as chief product and technology officer at Remitly, where he served for more than four years. The Seattle-based company facilitates international money transfers.

“Remitly has meant a lot to me — more than I think I fully realized until I started trying to put this note together. This has been a place where the work mattered, where the mission was real, and where I got to build alongside people who cared deeply,” Sinha said in a message shared with colleagues and posted on LinkedIn.

Before Remitly, Sinha was an engineering director at Google and spent more than a decade at Microsoft, working primarily on Xbox. He did not indicate his next role.

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Brett Taylor. (Synthesia Photo)

Brett Taylor has taken the role of director of engineering for Synthesia and will lead the company’s West Coast team from its new Seattle office.

Taylor comes to the London-based company from Amazon, where he spent 17 years in roles including director with Amazon Web Services and senior manager at Amazon. Last year, Peter Hill, a former AWS vice president, became Synthesia’s CTO.

Taylor shared his excitement for joining Synthesia, which he described as having “an incredible team building interactive video agents that let employees ask questions, role-play scenarios, and get real-time answers.” He added that his office is recruiting AI video engineers for product, infrastructure and systems roles.

Chigusa Sansen. (LinkedIn Photo)

Chigusa Sansen is, in her words, “graduating” from Microsoft after more than 25 years — a transition she has been planning for some time.

“Retirement implies stopping. Fading out. Calling it done. That is not what this is. This is a pivot. Into the life I have been building alongside my career, not instead of it,” she said on LinkedIn.

Sansen’s last day is July 1. She is departing as principal product manager, where she focused on making human-AI interactions more natural and intuitive. Sansen also owns Healing Communications, a business launched in 2017 that helps guide people and animals toward holistic well-being and calm.

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Aseem Datar, chief product officer and corporate vice president at Microsoft, has joined the board of Heidrick & Struggles, a Chicago firm specializing in executive search, corporate culture and leadership consulting. Datar has been with Microsoft for more than 20 years, with a brief departure to serve as a partner at Madrona Venture Group.

— Longtime University of Washington political science professor Aseem Prakash has left for a role at Georgetown University. During his 23 years at the UW, Prakash frequently published research and commentary on the environmental impacts of tech companies including Amazon and Microsoft.

Koki Sato is stepping down as program manager of Innovation & Entrepreneurship at the Washington Technology Industry Association (WTIA) after more than five years with the organization. He is moving to a new role as ecosystem development coordinator at Quantum Australia.

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