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Asynchronous AI cuts computing energy by orders of magnitude while learning continuously

As artificial intelligence systems grow larger and more powerful, their energy demands are rising dramatically. But recent research from the University of Massachusetts Amherst published in Nature Communications suggests that advanced AI capabilities may be achievable with dramatically lower energy consumption.

A team led by Hava Siegelmann, Provost Professor in the Manning College of Information and Computer Sciences at UMass Amherst, has developed a novel AI that more closely mirrors key aspects of how the human brain operates. Siegelmann and her lab have focused on two complementary goals: enabling AI systems to learn continuously in real time rather than only during a fixed training phase, and dramatically reducing the energy required for intelligent computation.

“Current AI systems are extraordinarily powerful, but they are also extraordinarily energy-hungry,” said Siegelmann. “Our work shows that it is possible to design AI that remains highly capable while operating much more efficiently.”

Hidden geometry explains why kernel methods separate complex data so well

Are two sets of data genuinely different, or is it because of randomness? This question, known as the two-sample testing problem, becomes notoriously difficult in modern datasets, because they are often high-dimensional, complex, and differences between them can take countless subtle forms.

“Simply put, we don’t know what differences to look for, the possibilities are bewildering,” says Professor Victor Panaretos at EPFL’s Institute of Mathematics.

To solve the problem, mathematicians have developed the so-called “kernel methods,” which have emerged as powerful solutions, widely used in fields such as genomics, finance, and artificial intelligence.

Quantum circuits help AI overcome memory limitations with minimal new parameters

For millions of people, chatbots powered by large language models (LLMs) are now a key feature of everyday life. These AI systems are growing at a rapid pace, but scaling them up is becoming increasingly costly and resource-intensive.

Through a new preprint on the arXiv server, a team led by Borja Aizpurua at Multiverse Computing in San Sebastián, Spain, has found a way to improve the performance of LLMs using quantum computing. Their approach could offer a smarter alternative, rather than simply throwing more hardware at the problem.

NFCShare Android malware spreads via fake banking app updates on GitHub

New variants of the NFCShare Android malware are being distributed as fake updates for legitimate banking apps hosted on GitHub.

The malware has evolved and is now targeting customers of multiple banks and financial institutions across Europe in a phishing campaign aimed at stealing payment card data.

After tricking victims with a fake verification screen to place the cards near the mobile device’s near-field communication (NFC) chip, NFCShare reads the information using Android’s IsoDep interface and EMV commands.

Over 20,000 Instagram accounts stolen in Meta AI support hack

Meta has revealed that 20,225 Instagram users had their accounts hijacked in a recent incident where attackers used Meta’s AI-powered support system to reset passwords.

As BleepingComputer reported one week ago, the threat actors exploited a flaw in the company’s High Touch Support (HTS) tool, an AI-assisted support system that helps users regain access after being locked out of their Instagram accounts.

By exploiting the fact that HTS didn’t verify whether email addresses were associated with the targeted Instagram accounts, they obtained password reset links that allowed them to log in and hijack accounts without two-factor authentication (2FA) enabled.

Ultra-thin MoS₂ computer packs 1,400 transistors onto one chip

The rapid advancement and diffusion of artificial intelligence (AI) systems, such as the machine learning models underpinning the functioning of ChatGPT, Gemini and similar platforms, have posed new demands on the electronics engineering industry. In fact, these systems are computationally intensive and consume substantial power, particularly when running on existing devices.

Electronics engineers worldwide have thus been trying to develop new hardware systems that can run machine learning algorithms more energy efficiently, without adversely affecting their performance. One promising approach for reducing power consumption entails the use of two-dimensional (2D) semiconductors, ultrathin materials that have already proved promising for the development of smaller electronics.

Researchers at Nanjing University, Suzhou Laboratory and Huawei Technologies Co. Ltd. recently developed and fabricated a fully functional computer based on the 2D semiconductor molybdenum disulfide (MoS₂).

Neutron star merger simulations gain new precision with AI-driven r-process heating

Using a novel simulation model based on machine learning, an international research team at GSI/FAIR has succeeded in gaining a deeper understanding of element formation in stellar events such as neutron star mergers. For the first time, the scientists used deep learning with a neural network to model the energy release during r-process nucleosynthesis in hydrodynamic simulations. The results are published in the journal Physical Review D.

Many of the chemical elements we know are created in massive stellar events such as exploding stars or neutron star mergers. These events release incredible amounts of energy, allowing for the production of heavy nuclides. One key nuclear production process is the so-called rapid neutron-capture process, or r-process, in which free neutrons are captured by existing nuclei and converted into protons—thus creating larger, heavier atomic nuclei.

“Researchers around the world strive to make these complex reactions understandable through theoretical simulations. However, modeling all parameters requires incredible computing power, which is why the models often have to be simplified,” said Dr. Oliver Just, first author of the publication and a researcher in the Nuclear Astrophysics & Structure Department at GSI/FAIR. “Our new model, RHINE, which uses artificial intelligence, offers an efficient alternative.”

The Universe Is About to Wake Up

Ray Kurzweil’s Six Epochs of Intelligence maps the entire history of the universe as a story of accelerating information processing, from subatomic particles to a future merger of human and artificial intelligence.

Each epoch operates on a dramatically compressed timescale compared to the one before, driven by what Kurzweil calls the Law of Accelerating Returns.

We trace the journey from atoms forming after the Big Bang, through the emergence of DNA and the Cambrian Explosion, to the rise of brains, technology, and what Kurzweil predicts comes next.

By 2029, he believes AI will pass the strong Turing test, opening the door to brain-computer interfaces that link our neocortices directly to the cloud.
The final epoch envisions intelligence spreading throughout the cosmos, though critics like Michael Shermer argue this collides with the laws of physics.

Chapters.

00:00 — Intro.

HP Lovecraft’s Shoggoth Explained: Anatomy, Origin, and a Modern Metaphor for AI?

Lovecraft’s ultimate amorphous, shape-shifting horror. Far more than just a monster, this protoplasmic nightmare from At the Mountains of Madness is a creature of pure, terrifying potential—a slave race that violently found its own mind.

We’re dissecting the Shoggoth’s anatomy and dark origins, but more importantly, we are exploring why this hundred-year-old biological horror is the perfect modern metaphor for Large Language Models (LLMs) and A.I.

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Detailed Timestamps.

Longevity Scientist: Aging Is A Disease. We Just Don’t Know How to Treat (yet)

Joe Betts-LaCroix and Retro Biosciences recently raised funding at a $1.8 billion valuation. In his first podcast appearance since the announcement, Joe shares his vision for extending healthy human lifespan and the breakthroughs driving the longevity industry forward.

Joe Betts-LaCroix explains why aging is becoming a legitimate scientific target. He shares how new discoveries are turning longevity from speculation into measurable biology.

The conversation explores how AI is accelerating research, while highlighting why biology remains one of the hardest problems to solve. Even with smarter models, real-world testing and clinical trials still take time.

Joe also discusses Alzheimer’s, partial cellular reprogramming, and the future of longevity medicine. He shares why exercise remains the best longevity tool available today and what the next decade could look like for human health.

Joe is the CEO of Retro Biosciences and a longtime entrepreneur focused on science and technology. His mission is to extend healthy human lifespan and accelerate breakthroughs in aging research.

This episode is brought to you by NADclinic, the go-to destination for longevity and human performance. Check them out at https://nadclinic.com.

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