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.



Siemens Energy Trebles Profit as AI Boosts Power Demand

FILED - 05 August 2025, Berlin: The "Siemens Energy" logo can be seen in the entrance area of the company. Photo: Britta Pedersen/dpa
FILED - 05 August 2025, Berlin: The "Siemens Energy" logo can be seen in the entrance area of the company. Photo: Britta Pedersen/dpa
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Siemens Energy Trebles Profit as AI Boosts Power Demand

FILED - 05 August 2025, Berlin: The "Siemens Energy" logo can be seen in the entrance area of the company. Photo: Britta Pedersen/dpa
FILED - 05 August 2025, Berlin: The "Siemens Energy" logo can be seen in the entrance area of the company. Photo: Britta Pedersen/dpa

German turbine maker Siemens Energy said Wednesday that its quarterly profits had almost tripled as the firm gains from surging demand for electricity driven by the artificial intelligence boom.

The company's gas turbines are used to generate electricity for data centers that provide computing power for AI, and have been in hot demand as US tech giants like OpenAI and Meta rapidly build more of the sites.

Net profit in the group's fiscal first quarter, to end-December, climbed to 746 million euros ($889 million) from 252 million euros a year earlier.

Orders -- an indicator of future sales -- increased by a third to 17.6 billion euros.

The company's shares rose over five percent in Frankfurt trading, putting the stock up about a quarter since the start of the year and making it the best performer to date in Germany's blue-chip DAX index.

"Siemens Energy ticked all of the major boxes that investors were looking for with these results," Morgan Stanley analysts wrote in a note, adding that the company's gas turbine orders were "exceptionally strong".

US data center electricity consumption is projected to more than triple by 2035, according to the International Energy Agency, and already accounts for six to eight percent of US electricity use.

Asked about rising orders on an earnings call, Siemens Energy CEO Christian Bruch said he thought the first-quarter figures were not "particularly strong" and that further growth could be expected.

"Demand for gas turbines is extremely high," he said. "We're talking about 2029 and 2030 for delivery dates."

Siemens Energy, spun out of the broader Siemens group in 2020, said last week that it would spend $1 billion expanding its US operations, including a new equipment plant in Mississippi as part of wider plans that would create 1,500 jobs.

Its shares have increased over tenfold since 2023, when the German government had to provide the firm with credit guarantees after quality problems at its wind-turbine unit.


Instagram Boss to Testify at Social Media Addiction Trial 

The Instagram app icon is seen on a smartphone in this illustration taken October 27, 2025. (Reuters)
The Instagram app icon is seen on a smartphone in this illustration taken October 27, 2025. (Reuters)
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Instagram Boss to Testify at Social Media Addiction Trial 

The Instagram app icon is seen on a smartphone in this illustration taken October 27, 2025. (Reuters)
The Instagram app icon is seen on a smartphone in this illustration taken October 27, 2025. (Reuters)

Instagram chief Adam Mosseri is to be called to testify Wednesday in a Los Angeles courtroom by lawyers out to prove social media is dangerously addictive by design to young, vulnerable minds.

YouTube and Meta -- the parent company of Instagram and Facebook -- are defendants in a blockbuster trial that could set a legal precedent regarding whether social media giants deliberately designed their platforms to be addictive to children.

Rival lawyers made opening remarks to jurors this week, with an attorney for YouTube insisting that the Google-owned video platform was neither intentionally addictive nor technically social media.

"It's not social media addiction when it's not social media and it's not addiction," YouTube lawyer Luis Li told the 12 jurors during his opening remarks.

The civil trial in California state court centers on allegations that a 20-year-old woman, identified as Kaley G.M., suffered severe mental harm after becoming addicted to social media as a child.

She started using YouTube at six and joined Instagram at 11, before moving on to Snapchat and TikTok two or three years later.

The plaintiff "is not addicted to YouTube. You can listen to her own words -- she said so, her doctor said so, her father said so," Li said, citing evidence he said would be detailed at trial.

Li's opening arguments followed remarks on Monday from lawyers for the plaintiffs and co-defendant Meta.

On Monday, the plaintiffs' attorney Mark Lanier told the jury YouTube and Meta both engineer addiction in young people's brains to gain users and profits.

"This case is about two of the richest corporations in history who have engineered addiction in children's brains," Lanier said.

"They don't only build apps; they build traps."

But Li told the six men and six women on the jury that he did not recognize the description of YouTube put forth by the other side and tried to draw a clear line between YouTube's widely popular video app and social media platforms like Instagram or TikTok.

YouTube is selling "the ability to watch something essentially for free on your computer, on your phone, on your iPad," Li insisted, comparing the service to Netflix or traditional TV.

Li said it was the quality of content that kept users coming back, citing internal company emails that he said showed executives rejecting a pursuit of internet virality in favor of educational and more socially useful content.

- 'Gateway drug' -

Stanford University School of Medicine professor Anna Lembke, the first witness called by the plaintiffs, testified that she views social media, broadly speaking, as a drug.

The part of the brain that acts as a brake when it comes to having another hit is not typically developed before a person is 25 years old, Lembke, the author of the book "Dopamine Nation," told jurors.

"Which is why teenagers will often take risks that they shouldn't and not appreciate future consequences," Lembke testified.

"And typically, the gateway drug is the most easily accessible drug," she said, describing Kaley's first use of YouTube at the age of six.

The case is being treated as a bellwether proceeding whose outcome could set the tone for a wave of similar litigation across the United States.

Social media firms face hundreds of lawsuits accusing them of leading young users to become addicted to content and suffer from depression, eating disorders, psychiatric hospitalization, and even suicide.

Lawyers for the plaintiffs are borrowing strategies used in the 1990s and 2000s against the tobacco industry, which faced a similar onslaught of lawsuits arguing that companies knowingly sold a harmful product.


OpenAI Starts Testing Ads in ChatGPT

The OpenAI logo is seen in this illustration taken May 20, 2024. (Reuters)
The OpenAI logo is seen in this illustration taken May 20, 2024. (Reuters)
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OpenAI Starts Testing Ads in ChatGPT

The OpenAI logo is seen in this illustration taken May 20, 2024. (Reuters)
The OpenAI logo is seen in this illustration taken May 20, 2024. (Reuters)

OpenAI has begun placing ads in the basic versions of its ChatGPT chatbot, a bet that users will not mind the interruptions as the company seeks revenue as its costs soar.

"The test will be for logged-in adult users on the Free and Go subscription tiers" in the United States, OpenAI said Monday. The Go subscription costs $8 in the United States.

Only a small percentage of its nearly one billion users pay for its premium subscription services, which will remain ad-free.

"Ads do not influence the answers ChatGPT gives you, and we keep your conversations with ChatGPT private from advertisers," the company said.

Since ChatGPT's launch in 2022, OpenAI's valuation has soared to $500 billion in funding rounds -- higher than any other private company. Some analysts expect it could go public with a trillion-dollar valuation.

But the ChatGPT maker burns through cash at a furious rate, mostly on the powerful computing required to deliver its services.

Its chief executive Sam Altman had long expressed his dislike for advertising, citing concerns that it could create distrust about ChatGPT's content.

His about-face garnered a jab from its rival Anthropic over the weekend, which made its advertising debut at the Super Bowl championship with commercials saying its Claude chatbot would stay ad-free.