KAUST Researchers Create Chip Mimicking Human Brain

An undated image of the human brain taken through scanning technology. REUTERS/Sage Center for the Study of the Mind, University of California, Santa Barbara/Handout
An undated image of the human brain taken through scanning technology. REUTERS/Sage Center for the Study of the Mind, University of California, Santa Barbara/Handout
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KAUST Researchers Create Chip Mimicking Human Brain

An undated image of the human brain taken through scanning technology. REUTERS/Sage Center for the Study of the Mind, University of California, Santa Barbara/Handout
An undated image of the human brain taken through scanning technology. REUTERS/Sage Center for the Study of the Mind, University of California, Santa Barbara/Handout

Researchers at the King Abdullah University of Science and Technology (KAUST) are presenting new solutions to achieve the best AI (artificial intelligence) speeds and performances by building a neural network mimicking the biology of the human brain in a microchip.

KAUST researchers have laid the groundwork for more efficient hardware-based artificial intelligence computing systems by developing a biomimicking “spiking” neural network on a microchip.

Neural Networks

Since the invention of computers, scientists hoped to create a computing system that mimics the human brain in order to facilitate people’s life and address their problems with the help of machines and devices that accomplish tasks that require effort and time.

In the 1940s, scientists created the so-called Artificial Neural Networks (ANNs), a key pillar in the development and advancement of AI technologies; Artificial Intelligence (AI) is the process of teaching machines how to mimic the human cognitive abilities and patterns. Inspired by the biological neural networks, ANNs are mathematical models created to store data, scientific knowledge, and experimental information, and then used to train machines on creating solutions for precise problems.

Artificial intelligence technology is rapidly evolving, with a flood of new applications including advanced automation, data mining and interpretation, healthcare, and marketing. These systems are built around a mathematical artificial neural network (ANN), which is made up of layers of decision-making nodes.

Labeled data is first fed into the system to “train” the model to respond in a specific way, after which the decision-making rules are locked in, and the model is deployed on standard computing hardware.

While this method works, it is a clumsy approximation of our brains’ far more complex, powerful, and efficient neural networks.

Spiking Neural Network (SNN)

“An ANN is an abstract mathematical model that bears little resemblance to real nervous systems and necessitates a lot of computing power,” explains Wenzhe Guo, a Ph.D. student on the research team.

“In contrast, a spiking neural network is built and operates in the same way as the biological nervous system, and it can process information faster and more efficiently,” he adds.

The third generation of ‘spiking’ neural networks were designed to fill the gap between neuroscience and machine learning; they rely on a model that resembles the mechanism the biological neurons use to calculate. SNNs mimic the structure of the nervous system as a network of synapses that transmit information in the form of action potentials, or spikes, via ion channels as they occur.

This event-driven behavior, which is mathematically implemented as a “leaky integrate-and-fire model,” makes SNNs extremely energy efficient. In this case, it’s a mathematically-applied guided behavior, and a major toll of neural computing. Furthermore, the structure of interconnected nodes allows for a high degree of parallelization, which increases processing power and efficiency. It is also amenable to direct implementation in computing hardware as a neuromorphic chip.

“We used a standard low-cost FPGA (Field-programmable gate array) microchip and implemented a spike-timing-dependent plasticity model, which is a biological learning rule discovered in our brain,” Guo explains.

Importantly, no teaching signals or labels are required for this biological model, allowing the neuromorphic computing system to learn real-world data patterns without training.

“Because SNN models are very complex,” Guo explains, “our main challenge was to tailor the neural network settings for optimal performance. We then designed the optimal hardware architecture while keeping cost, speed, and energy consumption in mind.”

The brain-on-a-chip developed by the team was found to be more than 20 times faster and 200 times more energy efficient than other neural network platforms.

“Our ultimate goal is to create a brain-like hardware computing system that is compact, fast, and low-energy. The next step is to collaborate to improve the design and optimize product packaging, miniaturize the chip, and customize it for various industrial applications,” Guo explains.



AI No Better Than Other Methods for Patients Seeking Medical Advice, Study Shows

AI (Artificial Intelligence) letters and a robot hand are placed on a computer motherboard in this illustration created on June 23, 2023. (Reuters)
AI (Artificial Intelligence) letters and a robot hand are placed on a computer motherboard in this illustration created on June 23, 2023. (Reuters)
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AI No Better Than Other Methods for Patients Seeking Medical Advice, Study Shows

AI (Artificial Intelligence) letters and a robot hand are placed on a computer motherboard in this illustration created on June 23, 2023. (Reuters)
AI (Artificial Intelligence) letters and a robot hand are placed on a computer motherboard in this illustration created on June 23, 2023. (Reuters)

Asking AI about medical symptoms does not help patients make better decisions about their health than other methods, such as a standard internet search, according to a new study published in Nature Medicine.

The authors said the study was important as people were increasingly turning to AI and chatbots for advice on their health, but without evidence that this was necessarily the best and safest approach.

Researchers led by the University of Oxford’s Internet Institute worked alongside a group of doctors to draw up 10 different medical scenarios, ranging from a common cold to a life-threatening hemorrhage causing bleeding on the brain.

When tested without human participants, three large-language models – Open AI's Chat GPT-4o, ‌Meta's Llama ‌3 and Cohere's Command R+ – identified the conditions in ‌94.9% ⁠of cases, ‌and chose the correct course of action, like calling an ambulance or going to the doctor, in an average of 56.3% of cases. The companies did not respond to requests for comment.

'HUGE GAP' BETWEEN AI'S POTENTIAL AND ACTUAL PERFORMANCE

The researchers then recruited 1,298 participants in Britain to either use AI, or their usual resources like an internet search, or their experience, or the National Health Service website to ⁠investigate the symptoms and decide their next step.

When the participants did this, relevant conditions were identified in ‌less than 34.5% of cases, and the right ‍course of action was given in ‍less than 44.2%, no better than the control group using more traditional ‍tools.

Adam Mahdi, co-author of the paper and associate professor at Oxford, said the study showed the “huge gap” between the potential of AI and the pitfalls when it was used by people.

“The knowledge may be in those bots; however, this knowledge doesn’t always translate when interacting with humans,” he said, meaning that more work was needed to identify why this was happening.

HUMANS OFTEN GIVING INCOMPLETE INFORMATION

The ⁠team studied around 30 of the interactions in detail, and concluded that often humans were providing incomplete or wrong information, but the LLMs were also sometimes generating misleading or incorrect responses.

For example, one patient reporting the symptoms of a subarachnoid hemorrhage – a life-threatening condition causing bleeding on the brain – was correctly told by AI to go to hospital after describing a stiff neck, light sensitivity and the "worst headache ever". The other described the same symptoms but a "terrible" headache, and was told to lie down in a darkened room.

The team now plans a similar study in different countries and languages, and over time, to test if that impacts AI’s performance.

The ‌study was supported by the data company Prolific, the German non-profit Dieter Schwarz Stiftung, and the UK and US governments.


Meta Criticizes EU Antitrust Move Against WhatsApp Block on AI Rivals

(FILES) This illustration photograph taken on December 1, 2025, shows the logo of WhatsApp displayed on a smartphone's screen, in Frankfurt am Main, western Germany. (Photo by Kirill KUDRYAVTSEV / AFP)
(FILES) This illustration photograph taken on December 1, 2025, shows the logo of WhatsApp displayed on a smartphone's screen, in Frankfurt am Main, western Germany. (Photo by Kirill KUDRYAVTSEV / AFP)
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Meta Criticizes EU Antitrust Move Against WhatsApp Block on AI Rivals

(FILES) This illustration photograph taken on December 1, 2025, shows the logo of WhatsApp displayed on a smartphone's screen, in Frankfurt am Main, western Germany. (Photo by Kirill KUDRYAVTSEV / AFP)
(FILES) This illustration photograph taken on December 1, 2025, shows the logo of WhatsApp displayed on a smartphone's screen, in Frankfurt am Main, western Germany. (Photo by Kirill KUDRYAVTSEV / AFP)

Meta Platforms on Monday criticized EU regulators after they charged the US tech giant with breaching antitrust rules and threaten to halt its block on ⁠AI rivals on its messaging service WhatsApp.

"The facts are that there is no reason for ⁠the EU to intervene in the WhatsApp Business API. There are many AI options and people can use them from app stores, operating systems, devices, websites, and ⁠industry partnerships," a Meta spokesperson said in an email.

"The Commission's logic incorrectly assumes the WhatsApp Business API is a key distribution channel for these chatbots."


Chinese Robot Makers Ready for Lunar New Year Entertainment Spotlight

A folk performer breathes fire during a performance ahead of Lunar New Year celebrations in a village in Huai'an, in China's eastern Jiangsu Province on February 7, 2026. (AFP)
A folk performer breathes fire during a performance ahead of Lunar New Year celebrations in a village in Huai'an, in China's eastern Jiangsu Province on February 7, 2026. (AFP)
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Chinese Robot Makers Ready for Lunar New Year Entertainment Spotlight

A folk performer breathes fire during a performance ahead of Lunar New Year celebrations in a village in Huai'an, in China's eastern Jiangsu Province on February 7, 2026. (AFP)
A folk performer breathes fire during a performance ahead of Lunar New Year celebrations in a village in Huai'an, in China's eastern Jiangsu Province on February 7, 2026. (AFP)

In China, humanoid robots are serving as Lunar New Year entertainment, with their manufacturers pitching their song-and-dance skills to the general public as well as potential customers, investors and government officials.

On Sunday, Shanghai-based robotics start-up Agibot live-streamed an almost hour-long variety show featuring its robots dancing, performing acrobatics and magic, lip-syncing ballads and performing in comedy sketches. Other Agibot humanoid robots waved from an audience section.

An estimated 1.4 million people watched on the Chinese streaming platform Douyin. Agibot, which called the promotional stunt "the world's first robot-powered gala," did not have an immediate estimate for total viewership.

The ‌show ran a ‌week ahead of China's annual Spring Festival gala ‌to ⁠be aired ‌by state television, an event that has become an important - if unlikely - venue for Chinese robot makers to show off their success.

A squad of 16 full-size humanoids from Unitree joined human dancers in performing at China Central Television's 2025 gala, drawing stunned accolades from millions of viewers.

Less than three weeks later, Unitree's founder was invited to a high-profile symposium chaired by Chinese President Xi Jinping. The Hangzhou-based robotics ⁠firm has since been preparing for a potential initial public offering.

This year's CCTV gala will include ‌participation by four humanoid robot startups, Unitree, Galbot, Noetix ‍and MagicLab, the companies and broadcaster ‍have said.

Agibot's gala employed over 200 robots. It was streamed on social ‍media platforms RedNote, Sina Weibo, TikTok and its Chinese version Douyin. Chinese-language television networks HTTV and iCiTi TV also broadcast the performance.

"When robots begin to understand Lunar New Year and begin to have a sense of humor, the human-computer interaction may come faster than we think," Ma Hongyun, a photographer and writer with 4.8 million followers on Weibo, said in a post.

Agibot, which says ⁠its humanoid robots are designed for a range of applications, including in education, entertainment and factories, plans to launch an initial public offering in Hong Kong, Reuters has reported.

State-run Securities Times said Agibot had opted out of the CCTV gala in order to focus spending on research and development. The company did not respond to a request for comment.

The company demonstrated two of its robots to Xi during a visit in April last year.

US billionaire Elon Musk, who has pivoted automaker Tesla toward a focus on artificial intelligence and the Optimus humanoid robot, has said the only competitive threat he faces in robotics is from Chinese firms.