Security teams log 54% of successful attacks and alert on just 14%. The rest move through your environment unseen.
The Picus whitepaper shows how breach and attack simulation tests your SIEM and EDR rules so threats stop slipping by detection.
Toshio Fukuda has been blazing trails for most of his career. He is considered to be one of the most prolific scholars in robotics, writing more than 2,000 research papers and authoring several books on the field. He’s an influential figure thanks to his pioneering work developing biomedical robotic systems, industrial robots, micro-nano robotics, mechatronics, and AI-driven automation.
Fukuda launched one of the first robotics conferences, the IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS). It is still popular almost 40 years later.
Toshio Fukuda
Employer
Egypt-Japan University of Science and Technology, in Alexandria
Title
Professor and vice president of research
Member grade
Life Fellow
Alma maters
Waseda University, in Tokyo; University of Tokyo
An IEEE Life Fellow, he is a professor emeritus in the department of micro-nano systems engineering and a visiting professor at Nagoya University, in Japan, where he taught for nearly 25 years. Currently, he is a vice president of research at the Egypt-Japan University of Science and Technology, in Alexandria, Egypt.
Within IEEE, Fukuda has held top volunteer positions including the organization’s highest office: He served as IEEE president in 2020, becoming the first person of Asian descent to hold the role.
He’s a former program director of Japan’s Moonshot program, which by 2050 intends to develop advanced AI robots.
Born in Japan, Fukuda has been recognized by the country for his contributions to science with two of its highest awards: the Medal of Honor with a purple ribbon in 2015 and the Order of the Sacred Treasure in 2022.
IEEE honored him with this year’s Richard M. Emberson Award for “distinguished service advancing the technical objectives of IEEE, especially in the area of robotics.” The IEEE Board-level award is sponsored by the IEEE Technical Activities Board. Fukuda received the award on 24 April at a ceremony in New York City.
As a former IEEE president who has served as a master of ceremonies at several of the organization’s major award events, Fukuda noted that he is more accustomed to bestowing awards than receiving them.
“It’s very interesting to be on the receiving end,” he says.
As a teenager, Fukuda spent his summer breaks teaching himself how to build things including transistor radios and steam engines.
“It was very nice to have a hands-on hobby and make these kinds of things myself,” he says. His experimentation led him to study engineering.
He earned a bachelor’s degree in engineering in 1971 from Waseda University, in Tokyo. He says one of his professors there—Ichiro Kato, regarded as the father of Japanese robotics research—was a good mentor who made a positive impact.
Fukuda’s research interests were robotics and mechatronics, a field that combines robotics, electronics, computer science, and control systems.
He went on to earn a master’s degree and a doctorate in science from the University of Tokyo, in 1971 and 1977. During those years, he also attended Yale, where he conducted research on advanced control theory in 1973.
He reflects fondly on his time at Yale: “It was a very nice environment and a kind of free-thinking atmosphere. It motivated me to study more.”
“IEEE doesn’t care who you are, what you do, what country you are from, or whether you are male or female. IEEE accepts people who have energy and passion.”
While at Yale, Fukuda served as an assistant to his advisor—which led him to consider a career in academia, he says, because he enjoyed the freedom that research work afforded him.
But he realized that such freedom comes with a price. University researchers are expected to raise the money that funds their work. He compares researchers to small-business owners who have to bring in money to keep their enterprise afloat.
That realization led him to select robotics as his field because he intended to develop technologies useful to industry, he says.
After earning his doctorate, he returned to Japan in 1977 to work as a research scientist at the government’s Mechanical Engineering Laboratory, later renamed the National Institute of Advanced Industrial Science and Technology, in Tsukuba.
“There was a lot of research going on at the lab, including practical robotics and theory,” he says.
He left Japan in 1979 to become a visiting research fellow at the University of Stuttgart, in Germany. During his year there, he studied systems, software problems, and related topics.
He returned to Japan and was hired as an associate professor of mechanical engineering at the Tokyo University of Science. He conducted research into practical uses for robots by visiting industrial plants. He decided to develop robots that inspect industrial equipment such as those used in assembly plants, oil refineries, and power stations—places that “can be hostile environments for humans,” he says.
His work drew interest from chemical, oil, and utility companies.
“I got a lot of money from them for this very practical application, which funded my research,” he says, laughing.
Fukuda grew tired of making those robots, he says, so he switched to creating ones for scientific applications. He developed many techniques, but he probably is best known for his modular, cellular robotic systems (CEBOTs), which he introduced in 1985.
He has described how CEBOTs work in numerous papers published in the IEEE Xplore Digital Library.
The CEBOT system is composed of a number of autonomous robotic cells that stick together like interlocking Lego plastic bricks, he says.
Each cell is a fundamental modular unit that has a function. When a simple task is given, the system can analyze it and generate the structure of the cellular manipulator. The cells connect to and detach from each other through connection mechanisms and cooperate mutually, creating complex structures and configurations.
“You start developing from the component-wise to the cell-wise to a small functional unit—and then you come up with clusters that make bigger systems. We can make a society of robot beings like that,” he explained in his oral history published on the Engineering and Technology History Wiki. “It’s a distributed robotic system, a self-organized robotic system, and also an evolutionary robotic system.
“It’s also a fault-tolerant robot system because if something is wrong, you just remove those things and make a new one. You keep the system working. That’s a great thing.”
Today CEBOTs are used for a variety of tasks such as delivering medication in hospitals, assisting with planting crops, and transporting products in distribution centers. Check out IEEE Spectrum’s Robots Guide for news from the world of robotics.
In 1989 Fukuda joined Nagoya University as a professor of mechanical engineering and micro-nano systems engineering. During his 24-year career there, he was director of the university’s Center for Micro-Nano Mechatronics. He developed a long list of technologies at the university, including many for medical applications. He also conducted groundbreaking research into intelligent robotic systems and micro- and nano-robotics.
Another technology he is known for is brachiation robots, which he helped develop in 1988. He calls them monkey robots because they’re based on the pendulum-like movement of monkeys swinging from tree to tree. The gravity-based locomotion enables continuous movement.
Brachiation robots now are inspecting high-voltage transmission towers and bridges, searching damaged buildings for survivors, and performing maintenance on pipelines and cables.
Fukuda retired from the university in 2013 and was named professor emeritus.
He didn’t stay retired for long, though. He next held a teaching appointment at Meijo University, in Nagoya, until he left in 2022 to join the Egypt-Japan University.
He joined IEEE in 1980 at the encouragement of one of his research advisors, Professor Fumio Harashima, now an IEEE Life Fellow. After attending conferences and reading the organization’s publications, Fukuda says, he looked forward to becoming more involved.
“I wanted to know how to organize a conference and how to edit a paper for one of its Transactions,” he says. “I wanted to know what was going on from inside the organization, not just the outside.”
In 1988 he was the founding chair and organizer of IROS, in Tokyo. The conference had 330 attendees that year, and was supported by Harashima. Today it is one of the largest and most prestigious conferences on the topic, attracting more than 9,000 people annually. Out of 120,000 conferences, it was the only conference in the Nature Index database for this year, Fukuda says.
In 1996 he and other members launched IEEE Transactions on Mechatronics.
He was the founding president of the IEEE Nanotechnology Council, which was established in 2002. He is considered a pioneer in nanotechnology research, particularly regarding how it relates to robotics.
Over the years, he has held numerous volunteer positions on IEEE editorial boards and committees.
He was the 1998–1999 president of the IEEE Robotics and Automation Society, becoming the first non-U.S. member to hold the title.
He was director of IEEE Division X (2001–2002 and 2017–2018), which covers intelligent systems, biological engineering, robotics, control systems, and photonic technologies. He served as the 2013–2014 director of IEEE Region 10 (Asia-Pacific).
As the 2020 IEEE president, Fukuda saw the organization through the early part of the COVID-19 pandemic. Because of travel restrictions, he realized IEEE should change how it offered its in-person services, specifically educational programs. He encouraged IEEE Educational Activities to develop an online learning platform. The IEEE Learning Network started with just three courses and now offers nearly 2,000 courses, webinars, and learning materials.
The Emberson Award joins a slew of other recognitions Fukuda has received from IEEE. They include several from the IEEE Robotics and Automation Society: a 2004 Pioneer Award, a 2009 Saridis Leadership Award, and the 2011 Harashima Award for Innovative Technologies. He is also a recipient of the Board-level 2010 IEEE Robotics and Automation Technical Field Award.
He says he feels strongly that IEEE should be a diverse organization that is welcoming to all. As IEEE president, he led efforts to devise a diversity, equity, and inclusion program. Several policies, procedures, and bylaws were revised to give members a safe, inclusive place for discourse.
“It’s important for IEEE to make everyone feel comfortable,” he says. “DEI programs are important. All people should be equal. IEEE doesn’t care who you are, what you do, what country you are from, or whether you are male or female. IEEE accepts people who have energy and passion.
“It accepted me, from the Far East. That’s why I like it.”
You can learn more about Fukuda and his career from the oral history conducted by the IEEE History Center.
From Your Site Articles
Related Articles Around the Web
Working in isolation, especially for leaders, is rapidly becoming an outmoded idea. The modern era is defined by rapid technological advancements and increasingly complex, collaborative global challenges. In this environment, leadership can no longer be approached as an individual pursuit.
Instead, leadership must be a collaborative effort in which knowledge, responsibility, and innovation are continuously exchanged across teams, roles, and areas of expertise. Success depends on the ability to foster connection, leverage diverse perspectives, and work collectively toward shared outcomes.
The shift is especially important in science, technology, engineering, and mathematics fields.
IEEE is bringing together emerging professionals and established experts and leaders at the inaugural IEEE International Leadership Conference to address the need for cross-generational knowledge-sharing and to equip professionals with tools for collaborative leadership. Honoring Expertise, Accelerating Potential is the theme of the ILC, scheduled for 3 and 4 October in Budapest.
The conference is expected to focus on how leaders can share information across roles, adapt to rapid technological advancements, and build stronger, more connected professional communities. Through discussions, panels, and interactive sessions, attendees can examine how collaboration across experience levels and disciplines can strengthen decision-making and foment innovation.
“There are several factors driving this shift [in leadership], including accelerating technological development cycles, the need to build public trust, and the large percentage of the STEM workforce approaching retirement,” says Vickie Ozburn, conference cochair. “Progress in STEM now depends less on individual brilliance and more on the ability to transfer knowledge, adapt, and make decisions that integrate technical expertise with ethical and social considerations.”
Instead of traditional corporate models rooted in hierarchy and individual advancement, a more dynamic framework is taking shape, one that views leadership as a shared ecosystem built on mentorship, continuous learning, and intentional knowledge transfer.
It means recognizing that professional development is no longer a one-directional flow of experience from senior professionals to newcomers. Instead, it thrives as a multidirectional exchange. When emerging professionals, mid-career managers, and seasoned experts including retirees are brought together, the result is not only richer dialogue but also more resilient and well-informed decision-making. A cross-generational dialogue enables organizations to honor what has worked, critically assess what has failed, and thoughtfully shape what needs to evolve.
Howard Wolfman, cochair of the IEEE ILC, underscores the importance of historical perspective in leadership development, invoking George Santayana’s enduring insight: “Those who cannot remember the past are condemned to repeat it.”
“In STEM especially, this principle carries significant weight,” says Wolfman, an IEEE life senior member and the founder and principal of Lumispec Consulting, in Northbrook, Ill. “Technological innovation doesn’t happen all of a sudden; it builds on decades of research, lessons learned, and accumulated knowledge. When leaders actively connect insights from across experience levels, they gain a more complete understanding of both opportunity and risk.”
That perspective reinforces the need for greater collaboration across roles and experience levels, ensuring that knowledge is not lost and is continuously built upon and applied in new ways. In this way, leadership development becomes a continuous, interconnected process rather than a series of isolated stages.
STEM careers are no longer defined by linear progression but by evolving contributions, in which each phase adds value to the field’s broader advancement.
Adopting a new leadership paradigm requires a shift in mindset across all levels. For senior leaders, success is defined not only by what they have built but also by the people they mentor and the knowledge they pass forward. Their legacy lies in enabling future leaders to succeed.
For emerging young professionals, innovation becomes more informed and impactful when it is grounded in historical context and informed by those who have already navigated similar challenges.
“Technological innovation doesn’t happen all of a sudden; it builds on decades of research, lessons learned, and accumulated knowledge. When leaders actively connect insights from across experience levels, they gain a more complete understanding of both opportunity and risk.”—Howard Wolfman, cochair of the IEEE International Leadership Conference
For organizations, cross-generational collaboration should be recognized as a strategic advantage, not merely an aspiration. Creating environments where knowledge flows freely and diverse perspectives are actively integrated is essential for long-term success.
The evolution reframes the distinction between management and leadership.
“A leader does the right thing, and a manager does things right,” Wolfman says. As the environment continues to shift, doing the right thing increasingly depends on drawing insights from across generations and experiences.
To build leadership pipelines capable of sustaining innovation and trust, organizations must begin asking more intentional questions:
Ultimately, leadership cannot be tied solely to titles or tenure. It is about contributing to a continuum in which each generation strengthens the next.
The IEEE ILC attendees are likely to leave the event with new insights and with a transformed perspective: Leadership is not about waiting for advancement or recognition; it is about engaging in an exchange of knowledge, responsibility, and vision, where the strength of the whole depends on the contributions of every generation.
Registration for the conference opens soon.
From Your Site Articles
Related Articles Around the Web
Some material also goes to an unnamed US technology and industrial company, under a deal penned in the first quarter of 2026.
In the same quarter a year ago, the largest portion of MP’s sales by revenue—mined material, not NdPr—went to China’s Shenghe Resources. But MP has stopped selling to Shenghe as part of its deal with the US government.
MP ultimately plans to produce its own magnets at scale, which would require it to consume much of what it produces. Mined rare earths are turned into oxides, which are used to make metals and alloys that go into magnets.
The company has penned agreements with General Motors and Apple to supply them with its magnets. It said in May that it expected to begin shipping finished magnets to GM this year.
Meanwhile, Energy Fuels—which won $725 million in conditional government funding in June—plans to scale its production of rare earths and also has eyes on Asia.
“We will be sending oxides in the near-term to Korea,” said chief executive Ross Bhappu. Last year, a major South Korean manufacturer made a small amount of Energy Fuels’ NdPr into magnets.
Energy Fuels is in the process of acquiring Australian Strategic Materials, which owns a rare earths metal-making plant in South Korea. It also announced a $1.9 billion deal to buy German magnet maker Vacuumschmelze (VAC) in June, which Bhappu said would result in more of Energy Fuels’ products going to VAC’s US operations.
China is the largest global producer of the widely used neodymium iron boron magnets. Outside China, Japan produces 10,000-15,000 tonnes per year, while South Korea produces 2,000-3,000 tonnes annually, and the US produces 1,000 tonnes or less, according to John Ormerod, a rare earths consultant at JOC LLC. There is also some production in Europe.
Phoenix, which secured a conditional $500 million from Washington in June, said government funding would help it scale up metal and oxide production, which would “expand the pie for everyone.”
MP’s recent earnings have been boosted by the money it receives under its US government deal—which guarantees a minimum sale price for some products and tops up any shortfall from the price paid by third parties.
© 2025 The Financial Times Ltd. All rights reserved. Not to be redistributed, copied, or modified in any way.
OpenAI on Wednesday launched GPT-Live, a pair of new voice models that fundamentally redesign how people talk to ChatGPT — replacing the company’s existing Advanced Voice Mode with an architecture that can listen and speak simultaneously, much like an actual human conversation.
The two models, GPT-Live-1 and GPT-Live-1 mini, are rolling out globally starting today across iOS, Android, and ChatGPT.com. GPT-Live-1 becomes the default voice model for paid ChatGPT users on the Go, Plus, and Pro tiers, while GPT-Live-1 mini serves free-tier users. OpenAI also plans to bring the models to the API, and developers can sign up to be notified.
The release marks the third generation of ChatGPT’s voice technology in roughly two years — and OpenAI’s clearest bid yet to turn its chatbot into something that feels less like querying a search engine and more like talking to a colleague.
The defining technical advance in GPT-Live is what OpenAI calls a “full-duplex architecture.” In telecommunications, full-duplex means both parties on a phone call can talk and listen at the same time. Applied to AI, it means the model continuously processes your incoming audio even while it generates its own spoken response — no more waiting for a clean silence gap to figure out when you’ve finished a thought.
“Instead of processing a sequence of separate messages, GPT-Live continuously processes input while generating output,” OpenAI wrote in its research blog. “The model can therefore make interaction decisions many times per second: whether to speak, continue listening, pause, interrupt, or invoke a tool.”
In practice, that translates to a voice assistant that can insert conversational acknowledgments — “mhmm,” “yeah,” “got it” — while you’re still talking, pick up on a natural pause without jumping in prematurely, and handle rapid interruptions without derailing the entire exchange.
OpenAI’s previous Advanced Voice Mode, launched to paid users in September 2024, processed and generated audio within a single model but still operated on rigid turn-by-turn exchanges. As OpenAI acknowledged in the announcement, “because turn detection is based on silence, even a brief pause or background noise could be mistaken for the end of turn — causing the model to interrupt at unnatural times.”
That brittleness created a product that, while impressive in demos, could be deeply frustrating in extended real-world use. Background chatter in a coffee shop could trigger a response. A thinking pause might get swallowed. The experience felt, as one researcher put it on X shortly after the announcement, like “walkie-talkie turn taking.” GPT-Live is designed to end that era.
GPT-Live introduces a second structural change that may prove just as consequential for enterprise adoption: it decouples the voice interaction layer from the reasoning layer.
When a user asks a straightforward question, GPT-Live handles it directly. But when the query demands web search, deeper reasoning, or more complex agentic work, GPT-Live delegates the task to a frontier model running in the background — at launch, GPT-5.5, the large language model OpenAI released in April — and continues talking with the user while the computation happens asynchronously.
“While it works, GPT-Live can keep talking with you and maintain the flow of conversation,” OpenAI explains. “As we release new frontier models, we’ll continuously update the model used by GPT-Live.”
This delegation model is a meaningful architectural bet. Rather than building a single monolithic voice model that tries to be both conversationally fluid and deeply intelligent, OpenAI has split the problem in two: a voice-native model optimized for real-time interaction, and a separate reasoning engine that can be swapped out as the state of the art improves.
It is, in effect, a modular design — one that allows OpenAI to upgrade the intelligence of its voice assistant without retraining the voice model itself. The implications for enterprise and developer workflows are significant. A voice agent built on this architecture could maintain a natural conversation with a customer while simultaneously querying databases, searching the web, or performing multi-step reasoning — tasks that would have introduced several seconds of dead air under the old pipeline.
To understand how far voice AI has come, it helps to trace the three generations that led to GPT-Live.
The original ChatGPT Voice, launched in 2023, used a cascaded pipeline — a speech-to-text model (Whisper) transcribed what you said, a large language model (GPT-4) generated a text response, and a text-to-speech model converted that response back into audio. Each handoff introduced latency and lost information.
As OpenAI noted, “the complexity came at a cost: information could be lost across models, and responses were slow and stilted.” That cascaded approach was the industry standard, and its limitations were well-documented. As the blog OpenHelm noted in an October 2024 analysis of OpenAI’s Realtime API, the old pipeline stacked up to roughly 1,700 milliseconds of latency — nearly two full seconds of dead air before the first word of a response. Managing the state between the three separate APIs consumed an enormous amount of engineering effort.
OpenAI’s Advanced Voice Mode, which began its limited rollout to paid ChatGPT Plus users in July 2024 before expanding more broadly in September 2024, collapsed that three-model pipeline into a single model that processed audio natively. As TechCrunch reported at the time, the rollout came with five new voices — Arbor, Maple, Sol, Spruce, and Vale — alongside improved accent handling and smoother conversations.
The feature also launched on the web in November 2024, extending it beyond mobile. But Advanced Voice Mode still operated through discrete, alternating turns — and it launched into the shadow of a PR debacle that OpenAI is still working to leave behind.
Advanced Voice Mode arrived in the wake of one of OpenAI’s most damaging self-inflicted crises. During the GPT-4o launch in May 2024, the company showcased a voice called “Sky” that many listeners immediately noted sounded strikingly similar to Scarlett Johansson, who famously voiced an AI companion in the 2013 film Her.
Johansson said she had declined OpenAI CEO Sam Altman’s offer to voice the system, then was “shocked, angered and in disbelief” when the product launched with a voice her own friends couldn’t distinguish from hers, as NBC News reported. Altman had tweeted just the word “her” the day the product launched.
OpenAI pulled the voice and apologized, but the incident drew public scrutiny from SAG-AFTRA and members of Congress, and crystallized broader concerns about AI companies moving fast with creative IP.
The Hollywood labor union said the issue underscored “why we’re strongly championing federal legislation that would protect their voices and likenesses … from unauthorized digital replication,” as NBC News reported. Forbes contributor Paul Tassi wrote at the time that Altman, “by holding up Her on a pedestal of something to strive for, has missed the point of that film” — in which the protagonist’s relationship with his AI companion ultimately does him more harm than good.
GPT-Live appears designed, in part, to move past those controversies. OpenAI says it has “remastered the nine distinct voices in ChatGPT for GPT-Live” and notes the system “is designed for conversation, not voice impersonation,” with “safeguards to prevent it from imitating a real person’s voice.”
OpenAI disclosed that more than 150 million people talk to ChatGPT using voice and dictation features each week — a notable slice of the platform’s 900 million total weekly active users. The voice experience has grown into a substantial product in its own right, used for language practice, bedtime stories, commute-time chat, and hands-free everyday help.
The new product features reflect that usage. GPT-Live introduces rich visual cards that surface during voice conversations — weather forecasts, stock data, sports scores, and maps — giving users something to glance at without breaking the flow of speech.
Users can now choose between three reasoning levels for answers: Instant for quick responses, Medium for moderate thinking, and High for more complex work. And if you take a moment to think, “ChatGPT Voice now waits instead of jumping in and interrupting,” OpenAI wrote. “If you ask it to stay quiet and listen, it will. And when there’s background noise, like passing traffic or nearby conversations, ChatGPT is better at focusing on your voice instead of getting distracted.”
Early reactions from users with preview access were cautiously positive. “I had early access to sol. it is a phenomenal model,” wrote one user on X, adding it is “much better at frontend, long context knowledge work, and its vibes are much better.” Another observer cut to the heart of the matter: “The smarts are not new here, GPT-Live hands hard questions to GPT-5.5. What is new is the feel: full-duplex voice that listens while it talks.”
The GPT-Live system card, published alongside the announcement, reveals a safety strategy built around the particular risks of real-time voice interaction — a domain where the speed and intimacy of conversation create hazards that text-based chat does not.
OpenAI expanded its safety evaluations to include audio-native tests, using both real user voice samples (from those who opted in) and synthetically generated prompts targeting edge cases across categories like self-harm, sexual content, illicit behavior, emotional reliance, mental health, and hate speech.
On the synthetic evaluations — which OpenAI described as deliberately adversarial — GPT-Live-1 showed substantial improvements over Advanced Voice Mode. In illicit behavior, for instance, the safety score rose from 0.63 to 0.97. On self-harm, it climbed from 0.72 to 0.98. Hate speech achieved a perfect 1.00, up from 0.87.
On the production-prompt evaluations — which used real user audio and reflected more ambiguous, borderline scenarios — the picture was more mixed. GPT-Live-1 matched or improved on Advanced Voice Mode in most categories but showed a slight regression on emotional reliance (from 0.88 to 0.82), though OpenAI noted the change was not statistically significant.
The company built real-time safeguards that can intervene while the model is speaking — steering toward safer responses, surfacing crisis resources, or ending the voice conversation entirely in higher-risk situations. It also designed additional protections for teen users and adapted self-harm support flows for voice, including crisis helpline integration.
Perhaps most notably, OpenAI said it is “rolling out longer-term measurement and post-launch monitoring focused on emotional reliance” — an acknowledgment that the very naturalness GPT-Live strives for creates its own category of risk.
While OpenAI was refining its safety guardrails, its rivals were shipping full-duplex systems of their own. Google’s Gemini Live, which supports full-duplex conversation alongside camera and screen sharing — capabilities GPT-Live notably lacks at launch — is already available in the Gemini app. Google released Gemini 3.1 Flash Live in March as its highest-quality real-time audio model, targeting low-latency voice interactions for developers.
ByteDance launched Seeduplex in April, claiming to be the first production-scale full-duplex speech AI deployed at scale, inside its Doubao app. Seeduplex reported roughly a 50 percent reduction in false-response and false-interruption rates compared to ByteDance’s previous half-duplex system. And Nvidia’s PersonaPlex, released in January, brought customizable voice and role control to full-duplex models, breaking what had been a constraint where natural-sounding models were locked into a single fixed voice.
The competitive picture is clear: full-duplex voice interaction is quickly becoming table stakes for consumer AI products, not a differentiator. OpenAI’s advantage lies in the scale of its existing user base, its integration with GPT-5.5’s reasoning capabilities, and the breadth of the ChatGPT ecosystem.
But the window in which any one company has a monopoly on natural-sounding voice AI has already closed. OpenAI also acknowledged several gaps. GPT-Live does not support voice with video or screen sharing at launch. Language support is limited, with the company noting that “for certain languages, the model may have a non-native accent or gaps in fluency.” And API access is not available on day one, meaning enterprise developers cannot yet build on GPT-Live directly — a constraint that will slow the model’s penetration into commercial voice-agent workflows where competitors like Google, ElevenLabs, and Deepgram already have developer-facing products.
GPT-Live is essentially OpenAI’s most significant bet yet on voice as the primary interface for AI — not just a convenience feature bolted onto a text chatbot, but a purpose-built interaction layer that sits between the user and the company’s most powerful models.
“Over time, we believe this research will also unlock the ability to use voice for increasingly complex, longer-running, and more agentic work,” OpenAI wrote. That ambition — using natural voice as the front end for autonomous AI agents that can perform multi-step tasks — is the logical endpoint of the full-duplex plus delegation architecture.
Imagine telling your phone to book a flight, negotiate with your insurance company, or debug a production server, all through a conversation that feels as natural as talking to an assistant who also happens to have the intelligence of a frontier AI model.
Two years ago, talking to ChatGPT meant dictating into a microphone and waiting nearly two seconds for a stilted reply. One year ago, it meant a smoother exchange that still felt like a polite, slightly awkward phone call with someone who insisted on waiting for you to finish every sentence. Today, it means something closer to a real conversation — imperfect, still constrained in some languages and missing video, but unmistakably closer. OpenAI once got into trouble for wanting to recreate the movie Her. With GPT-Live, the company may finally be reckoning with the harder question the film actually posed: not whether AI can sound human enough to talk to, but what happens to us when it does.
StatCounter’s June 2026 data shows Windows made up 56.55% of global desktop OS usage, dropping Microsoft’s share below 60% for the first time in years. Linux, meanwhile, reached 4.39%, “one of its strongest recent showings in the company’s desktop OS statistics,” reports Linuxiac. From the report: Apple’s desktop platforms also remain a major part of the picture. StatCounter lists OS X at 11.89% and macOS at 4.48% for June 2026, meaning Apple’s combined desktop presence remains comfortably ahead of Linux in the global chart. Chrome OS follows with 1.21%.
Of course, StatCounter’s numbers should be read for what they are: web usage statistics, not a direct count of installed operating systems. The company calculates its Global Stats from page views across websites using its tracking code, analyzing details such as browser, operating system, and screen resolution. In other words, the figures reflect measured web activity rather than the number of machines actually installed worldwide.
SpaceXAI has released its latest model, Grok 4.5 — the first since the company went public several weeks ago.
In a blog post published Wednesday, SpaceXAI characterized its new release as a workhorse that can tackle all of the typical tasks that the AI industry has sought to automate: coding and app-building, office and clerical work, research, writing, and other forms of routine knowledge work.
Grok can supposedly do all this for less spend, too, as SpaceXAI says that its model has “twice greater token efficiency” than other leading models. If it carries through to real-world use cases, that efficiency would be a big advantage for SpaceXAI, since the cost of tokens has been a growing concern for AI consumers.
The company released benchmark metrics Wednesday that appeared to show Grok’s competitiveness with other top models from SpaceXAI competitors, although just short of best-in-class:

In a post on his social media platform X (which is a subsidiary of SpaceXAI), founder Elon Musk compared the model to Opus, Anthropic LLM designed for intensive and complex tasks.
“Based on strong positive feedback from customers in our beta test program, @SpaceXAI will make Grok 4.5 available to the public tomorrow. It is an Opus-class model, but faster, more token-efficient and lower cost,” wrote Musk in a post on X.
Musk later added: “Our internal assessment is that Grok 4.5 is roughly comparable to Opus 4.7, but much faster. The combination of capability, faster speed and lower cost is what makes it competitive.”
SpaceXAI says that its new model costs $2 per million input tokens and $6 per million output tokens. That’s quite competitive, if Grok’s capabilities match SpaceXAI’s rhetoric.
Opus 4.7, by comparison, costs $5 per million input tokens, and $25 per million output tokens. OpenAI has tiered costs for different model versions: Sol, its most expensive, costs $5 for input tokens and $30 for output, while its least expensive, Luna, costs $1 for input and $6 for output.
It’s a big week for AI model releases. OpenAI is planning to release GPT 5.6, its latest, most powerful model, on Thursday. The release of that model had previously been limited by the Trump administration, due to concerns about its security implications. OpenAI has called it its “strongest model yet.”
When you purchase through links in our articles, we may earn a small commission. This doesn’t affect our editorial independence.
A China-linked threat cluster has been exploiting vulnerable Roundcube servers at U.S. and Canadian universities to steal credentials and deploy backdoor malware.
The campaign has been observed since May and focuses on physics and engineering departments, administrators and professors, as well as organizations involved in astrophysics, particle physics, or national security-related research.
Researchers at cybersecurity company Proofpoint are tracking the activity under the name ‘UNK_MassTraction’ and believe to be associated with a new threat cluster.
The attack begins with a malicious email sent from compromised accounts or spoofed domains, using a generic lure.

Opening the email in a vulnerable Roundcube webmail client triggers exploitation of a cross-site scripting flaw tracked as CVE-2024-42009, which executes JavaScript code inside the victim’s browser, loading a payload called IceCube.
According to the researchers, IceCube “is a fully-featured Roundcube stealer” that can harvest usernames, passwords, cookies, two-factor authentication (2FA) data, and browser information.
Proofpoint says that the malware uses “helpers” to exploit a Roundcube deserialization flaw tracked as CVE-2025-49113 and attempts to install SquareShell, a PHP webshell that includes remote code execution capabilities.
If successful, the attacker gains remote code execution on the mail server; otherwise, the malware downloads a shell script that loads another payload, VShell, directly in memory.
VShell is a commodity Go-based backdoor that supports interactive shell access and port forwarding, which is commonly used by Chinese threat actors.
.jpg)
Based on several observations, Proofpoint assesses that UNK_MassTraction is likely a China-aligned espionage actor.
First, the infrastructure used in the attacks overlaps with a covert VPS network previously associated with multiple China-linked actors. Another clue is the presence of Chinese-language artifacts in earlier phishing emails.
Finally, the tactic of targeting internet-facing mail servers as a foothold for accessing internal networks is a hallmark of Chinese attacks.
Taking everything into account, Proofpoint emphasizes that attribution in this case is just an assessment and definitely not a high-confidence one.
An interesting finding regarding the specific targeting of this campaign is that UNK_MassTraction appears to have selected servers previously deemed vulnerable to CVE-2024-42009 and CVE-2025-49113, so some reconnaissance was performed prior to the attacks.
Administrators of Roundcube systems are advised to apply the latest security updates that address the two flaws and treat mail servers with the same diligence they show for VPNs and other remote access nodes.
Security teams log 54% of successful attacks and alert on just 14%. The rest move through your environment unseen.
The Picus whitepaper shows how breach and attack simulation tests your SIEM and EDR rules so threats stop slipping by detection.
X’s crowdsourced fact-checking system, Community Notes, will be updated to send users direct messages alerting them whenever a post they have interacted with has received a correction. The change, which is not yet live, was announced by X owner Elon Musk. He did not share a time frame for its launch.
The update attempts to address one of the bigger criticisms about Community Notes — that corrections arrive too late to matter. A misleading post can accumulate views and reposts while its accuracy is disputed, and by the time it’s corrected, the damage has been done. By proactively notifying users when a post receives a correction, X is trying to extend the reach of the note beyond the original post. This could also allow users who spread false information to issue their own mea culpa, if they had been duped.
X’s Community Notes system was first established when the company was still known as Twitter, before Musk’s acquisition.
The idea was to introduce a different way to address misinformation on the platform, rather than require Twitter (now X) to be the centralized authority for moderation decisions. Instead, Community Notes contributors could suggest corrections and add critical details or missing information to posts. Consensus is achieved when people who rate the note as helpful are those who typically have different perspectives, and the note goes live.
A similar system has since been adopted by Meta as part of its broader moderation overhaul last year, which saw the company eliminate its partnerships with fact-checkers.
Though Community Notes makes sense for a company that wants to distance itself from the business of fact-checking, it’s also proven difficult to scale. A 2025 study of the feature by Spanish fact-checking site Maldita found that 85% of the proposed notes on X remain invisible to users, and only 8.3% get published and become visible. A separate study conducted by the Digital Democracy Institute of the Americas (DDIA), which encompassed 1.76 million notes published on X between January 2021 and March 2025, put the figure for unpublished notes even higher at 90%.
This weakens Community Notes as a system that surfaces information when it’s most needed, critics have pointed out. Plus, they’ve argued, people aren’t aware when a post they saw or boosted receives a correction later on, as there’s been no way to bring that information to their attention.
Musk’s proposal to send users alerts via X Chat (DMs) would address the latter issue, at least, assuming it goes live. X was asked for comment, but a response was not immediately available.
When you purchase through links in our articles, we may earn a small commission. This doesn’t affect our editorial independence.
A Paris startup wants to loosen Nvidia’s grip on AI, not with a new chip, but with software. ZML has released a free tool that runs open-source models fast across Nvidia, AMD, Google, Apple and Intel silicon alike.
Nvidia still rules AI hardware, but its walls keep thinning. ZML, a Paris startup backed by AI pioneer Yann LeCun, has released free software that runs open-source language models across a mix of chips, TechCrunch reports. The list spans five targets: Nvidia, AMD, Google’s TPUs, Intel and Apple.
The tool, ZML/LLMD, is an inference server. Inference means running a trained model to answer prompts, the part of AI that now eats most of the compute. Founder Steeve Morin says the goal is to break the silos that lock users to one vendor, and to squeeze each chip to its top speed.
Cost is the driver. As AI bills climb, enterprises and clouds want the freedom to pick cheaper or less power-hungry silicon for a given job. “The idea is to give people back the power to create their own system,” Morin said. Do that well, and it reads less like a feature and more like a wedge under Nvidia’s moat.
It could also lift a wave of novel chipmakers, many of them European. Morin name-checked Axelera, Fractile, Kalray, SiPearl, VSORA and others. Software that treats their chips as first-class, not second-best, gives buyers a real reason to try them.
Morin does not write off Nvidia, and says ZML has a good relationship with the chip giant. But the field is crowded. The “inference gold rush” has minted rivals like Baseten, recently valued at $13bn, plus the teams behind the open-source projects vLLM and SGLang. All chase the same prize: making AI cheaper to run.
Morin thinks ZML reaches further. “We have reached the point where we are co-designing silicon,” he said. His lean team of 20 has shipped fast, with more releases to come.
LLMD ships free for now to gather usage, not yet a paid product. Its unusual root is the bigger signal. A tool built to loosen Nvidia’s grip and to back Europe’s own AI stack landed from Paris, not Silicon Valley. Morin, who raised $20m from investors including Xavier Niel’s Kima Ventures, put it plainly. “I couldn’t do ZML anywhere but in Paris,” he said.
Virtualization
CA and VMware both suing insurance giant
Broadcom has accused Allstate Insurance of dodging a software license audit that the insurer claims only happened after it decided to stop using VMware and CA software.
Those two Broadcom business units – CA and VMware – have brought copyright infringement lawsuits against Allstate.
The CA suit, filed in May 2025, alleges that the insurer breached contracts after the sale of its Employer Voluntary Benefits business to an outfit called StanCorp. The VMware suit, filed in December 2025, alleges that Allstate didn’t comply with contract terms that required it to participate in license audits.
Software license audits are not unusual. Vendors routinely include the right to conduct audits in their contracts, and those rights can extend beyond the term of a license so that software companies can be paid for all use of code under a time-limited contract. Some vendors, however, are known to audit more often and more vigorously than others, or to use audits to gain leverage during license renewal negotiations.
Allstate claims Broadcom’s decision to audit it was not entirely reasonable.
“This case is about VMware’s decision to initiate a haphazard ‘audit’ of Allstate, once it was aware that Allstate did not intend to renew its contracts with VMware or its sister company, CA,” the company stated in a June 12 filing.
That accusation came after months of conflict.
An Allstate filing in the CA matter claims that Broadcom launched four audits, covering “Tanzu,” “VMWare,” “Agile Operations” and “Mainframe.” Broadcom advised of its intent to audit around April 2025.
Broadcom alleges Allstate didn’t co-operate with the audits. “Throughout August and September 2025, VMware sent weekly follow‑ups. Allstate continued to stonewall and withheld the requested materials,” according to VMware’s claim.
Allstate says it simply didn’t have the resources to respond to four simultaneous probes.
One of the tools Broadcom uses during software audits is a set of scripts that detect software installations. Allstate acknowledges it received the scripts and other audit material.
Then on September 12, Broadcom alleges, Allstate dropped a bombshell: It had “removed VMware from all devices.” On October 1, the insurance giant apparently told the virtualization pioneer “all VMWare instances have been terminated and removed” – at least from an environment governed by an enterprise license agreement.
After terminating its VMware estate, Allstate said Broadcom’s audit scripts wouldn’t work. The insurer nevertheless completed an audit questionnaire, but Broadcom said the info in that document was “woefully incomplete.”
Both cases continue and, on June 12, Allstate filed a document that offered its view of the matter – and includes the allegation that Broadcom only ordered its audits once it realized Allstate was binning VMware and CA software.
Allstate also accuses Broadcom of making “vague, competing, and contradictory demands of Allstate, often in direct violation of its contractual agreements.”
Broadcom and Allstate tried alternative dispute resolution in both matters but have not found common ground. Courts have proposed the two matters adopt the same timeline, which will see Dispositive Motions – an attempt to resolve a case before a full trial – take place no later than May 17, 2027.
The Register has asked Allstate why it decided to stop using Broadcom software and if it has replaced it. We’ve not heard back at the time of writing.
However we understand that the relationship between Allstate and Broadcom has not been good for quite some time, and that the insurer decided to move away from both VMware and CA at around the time Broadcom’s acquisition of VMware closed.
VMware points to major clients such as the London Stock Exchange and Nationwide Bank as evidence big corporate entities trust it with their private clouds, and therefore the heart of the IT estate that powers their business and enables innovation. And this week, AWS also showed confidence in VMware by adding support for version 9.x of its Cloud Foundation suite.
However, The Reg has also learned of several big users quitting VMware – including T-Mobile, Tesco, and Western Union – sometimes under acrimonious circumstances. ®
Google Photos is getting a new “Video Remix” feature that can edit and transform videos in seconds, Google announced on Wednesday. The feature is powered by Gemini Omni, Google’s recently released model that promises to “create anything from any input.”
The launch is Google’s latest push to bring more generative AI tools into its consumer apps as it continues to compete with companies like Apple, OpenAI, and Adobe. By baking AI-powered video editing into Google Photos, the tech giant is making it easier for users to edit clips with a few taps instead of relying on dedicated software, giving users another reason to stay within Google’s ecosystem.
The Video Remix tool can be accessed in the “Create” tab in Google Photos, allowing you to do things like apply cinematic relighting to brighten up a dark clip, swap out a plain background for something else, or add artistic styles to videos, such as watercolor, raw sketchbook, and oil painting effects.
For example, you could edit a video to make it appear that you shot it in a greenhouse, relight a video with a morning glow, or paint a video in a watercolor effect.
“Creating beautiful video clips shouldn’t require professional skills or hours of editing,” Google wrote in a blog post. “Now, with Video Remix in Google Photos, you can transform ordinary videos into share-worthy moments in just a few taps.”
Video Remix starts rolling out today to eligible Google AI Plus, Pro, and Ultra subscribers in the U.S., Argentina, Bangladesh, Brazil, Colombia, Egypt, India, Indonesia, Japan, Mexico, Pakistan, Philippines, South Korea, and Turkey.
The feature is the latest in a series of AI-powered updates introduced to Google Photos. The app recently launched new touch-up tools to allow users to apply subtle edits and fixes, such as removing blemishes, refining skin texture, brightening eyes, and whitening teeth. Google also announced an AI-powered feature that turns photos of your clothes into a digital closet where you can create new outfit ideas and virtually try on outfits.
When you purchase through links in our articles, we may earn a small commission. This doesn’t affect our editorial independence.
Weekend Open Thread: High Hopes
Taylor Swift and Travis Kelce wedding staffer hilariously struggles to keep her cool while checking in megastars
Open Thread: What Great Books Have You Read Recently?
The House | “Reframing the debate from a binary discussion of winners and losers”: Yuan Yang reviews ‘We Are Not Machines’
Standard Chartered Secures MiCA License as ESMA Adds 37 New Crypto Firms
Whats Hidden Inside This Cash Register? #treasure #reselling #money
Anthropic’s new “J-lens” reveals a silent workspace inside Claude that mirrors a leading theory of consciousness
AXT Shares Jump Nearly 14% as Semiconductor Materials Maker Rebounds on AI-Linked Indium Phosphide Demand
Binance stock trading tops $1B in first month after launch
Alibaba-affiliate Ant Group enters the humanoid robot market with 12 deals
SK hynix (000660.KS) Stock Dips as $28B Nasdaq ADR Offering Drives AI Memory Expansion
South Africa proposes crypto tax guidance under existing rules
Best Time to Enter Small Caps Right Now? Another Bull Run? | Financially Free
Lenovo laptops are now shipping with YMTC SSDs, a sign of Chinese NAND entering the mainstream
Meta Platforms Stock Jumps 7% Today as Bloomberg Reports Company Plans to Enter the Cloud Business
New exhibition reflects five decades of movement between island of Ireland and GB
ESMA Expands Crypto Register by 37 Firms Following MiCA Transition Period
What a 10 Percent Drop Means for Buyers, Sellers and Renters
Binance Re-Enters Philippines As EU MiCA Rules Restrict Access
Avoid entering in FOMO #bitcoin #cryptocurrency #trading #scalping
You must be logged in to post a comment Login