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Nasa to build nuclear reactor on the Moon by 2030

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Georgina Rannard

Science correspondent

NASA A concept image of NASA's Fission Surface Power ProjectNASA

A concept image of NASA’s Fission Surface Power Project

US space agency Nasa will fast-track plans to build a nuclear reactor on the Moon by 2030, according to US media.

It is part of US ambitions to build a permanent base for humans to live on the lunar surface.

According to Politico, the acting head of Nasa referred to similar plans by China and Russia and said those two countries “could potentially declare a keep-out zone” on the Moon.

But questions remain about how realistic the goal and timeframe are, given recent and steep Nasa budget cuts, and some scientists are concerned that the plans are driven by geopolitical goals.

Nations including US, China, Russia, India and Japan are rushing to explore the Moon’s surface, with some planning permanent human settlements.

“To properly advance this critical technology to be able to support a future lunar economy, high power energy generation on Mars, and to strengthen our national security in space, it is imperative the agency move quickly,” US transport secretary Sean Duffy, who was appointed temporary head of Nasa by President Donald Trump, wrote to Nasa, according to the New York Times.

Mr Duffy called for proposals from commercial companies to build a reactor that could generate at least 100 kilowatts of power.

This is relatively small. A typical on-shore wind turbine generates 2-3 megawatts.

The idea of building a nuclear reactor as a power source on the Moon is not new.

In 2022 Nasa issued three $5m contracts to companies to design a reactor.

And in May this year, China and Russia announced they plan to build an automated nuclear power station on the Moon by 2035.

Many scientists agree that it would be the best or perhaps only way to provide continuous power on the lunar surface.

One lunar day is equivalent to four weeks on Earth, made up of two weeks of continual sunshine and two weeks of darkness. That makes relying on solar power very challenging.

CNSA/CLEP In 2020 China's Chang'e-5 space probe took pictures of the Chinese flag planted on the MoonCNSA/CLEP

In 2020 China planted a flag on the Moon on its Chang’e-5 mission

“Building even a modest lunar habitat to accommodate a small crew would demand megawatt-scale power generation. Solar arrays and batteries alone cannot reliably meet those demands,” suggests Dr Sungwoo Lim, senior lecturer in space applications, exploration and instrumentation at the university of Surrey

“Nuclear energy is not just desirable, it is inevitable,” he adds.

Lionel Wilson, professor of earth and planetary sciences at Lancaster University, believes it is technically possible to place the reactors on the Moon by 2030 “given the commitment of enough money”, and he highlights that there are already designs for small reactors.

“It’s just a matter of having enough Artemis launches to build the infrastructure on the Moon by then,” he adds, referring to Nasa’s Artemis spaceflight programme that aims to send people and equipment to the Moon.

There are also some questions around safety.

“Launching radioactive material through the Earth’s atmosphere brings safety concerns. You have to have a special license to do that, but it is not insurmountable,” says Dr Simeon Barber, planetary science specialist at the Open University.

Mr Duffy’s directive came as a surprise following recent turmoil in Nasa after Mr Trump’s administration announced cuts of 24% to Nasa’s budgets in 2026.

That includes cuts to a significant number of science programmes such as the Mars Sample Return that aims to return samples from the planet’s surface to Earth.

Scientists are also concerned that this announcement is a politically-motivated move in the new international race to the Moon.

“It seems that we’re going back into the old first space race days of competition, which, from a scientific perspective, is a little bit disappointing and concerning,” says Dr Barber.

“Competition can create innovation, but if there’s a narrower focus on national interest and on establishing ownership, then you can lose sight of the bigger picture which is exploring the solar system and beyond,” he adds.

Mr Duffy’s comments about the potential for China and Russia to potentially “declare a keep-out zone” on the Moon appear to be referring to an agreement called the Artemis accords.

In 2020 seven nations signed the agreement to establish principles on how countries should co-operate on the Moon’s surface.

The accords include so-called safety zones to be established around operations and assets that counties build on the Moon.

“If you build a nuclear reactor or or any kind of base on the moon, you can then start claiming that you have a safety zone around it, because you have equipment there,” says Dr Barber.

“To some people, this is tantamount to, “we own this bit of the moon, we’re going to operate here and and you can’t come in”,” he explains.

Dr Barber points out that there are hurdles to overcome before placing a nuclear reactor on the Moon for humans to use.

Nasa’s Artemis 3 aims to send humans to the lunar surface in 2027, but it has faced a series of set-backs and uncertainty around funding.

“If you’ve got nuclear power for a base, but you’ve got no way of getting people and equipment there, then it’s not much use,” he added.

“The plans don’t appear very joined up at the moment,” he said.



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Measuring Machine Intelligence Using Turing Test 2.0

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In 1950, British mathematician Alan Turing (1912–1954) proposed a simple way to test artificial intelligence. His idea, known as the Turing Test, was to see if a computer could carry on a text-based conversation so well that a human judge could not reliably tell it apart from another human. If the computer could “fool” the judge, Turing argued, it should be considered intelligent.

For decades, Turing’s test shaped public understanding of AI. Yet as technology has advanced, many researchers have asked whether imitating human conversation really proves intelligence — or whether it only shows that machines can mimic certain human behaviors. Large language models like ChatGPT can already hold convincing conversations. But does that mean they understand what they are saying?

In a Mind Matters podcast interview, Dr. Georgios Mappouras tells host Robert J. Marks that the answer is no. In a recent paper, The General Intelligence Threshold, Mappouras introduces what he calls Turing Test 2.0. This updated approach sets a higher bar for intelligence than simply chatting like a human. It asks whether machines can go beyond imitation to produce new knowledge.

From information to knowledge

At the heart of Mappouras’s proposal is a distinction between two kinds of information, non-functional vs. functional:

  • Non-functional information is raw data or observations that don’t lead to new insights by themselves. One example would be noticing that an apple falls from a tree.
  • Functional information is knowledge that can be applied to achieve something new. When Isaac Newton connected the falling apple to the force of gravity, he transformed ordinary observation into scientific law.

True intelligence, Mappouras argues, is the ability to transform non-functional information into functional knowledge. This creative leap is what allows humans to build skyscrapers, develop medicine, and travel to the moon. A machine that merely rearranges words or retrieves facts cannot be said to have reached the same level.

The General Intelligence Threshold

Mappouras calls this standard the General Intelligence Threshold. His threshold sets a simple challenge: given existing knowledge and raw information, can the system generate new insights that were not directly programmed into it?

This threshold does not require constant displays of brilliance. Even one undeniable breakthrough — a “flash of genius” — would be enough to demonstrate that a machine possesses general intelligence. Just as a person may excel in math but not physics, a machine would only need to show creativity once to prove its potential.

Creativity and open problems

One way to apply the new test is through unsolved problems in mathematics. Throughout history, breakthroughs such as Andrew Wiles’s proof of Fermat’s Last Theorem or Grigori Perelman’s solution to the Poincaré Conjecture marked milestones of human creativity. If AI could solve open problems like the Riemann Hypothesis or the Collatz Conjecture — problems that no one has ever solved before — it would be strong evidence that the system had crossed the threshold into true intelligence.

Large language models already solve equations and perform advanced calculations, but solving a centuries-old unsolved problem would show something far deeper: the ability to create knowledge that has never existed before.

Beyond symbol manipulation

Mappouras also draws on philosopher John Searle’s famous “Chinese Room” thought experiment. In the scenario, a person who does not understand Chinese sits in a room with a rulebook for manipulating Chinese characters. By following instructions, the person produces outputs that convince outsiders he understands the language, even though he does not.

This scenario, Searle argued, shows that a computer might appear intelligent without real understanding. Mappouras agrees but goes further. For him, real intelligence is proven not just by producing outputs, but by acting on new knowledge. If the instructions in the Chinese Room included a way to escape, the person could only succeed if he truly understood what the words meant. In the same way, AI must demonstrate it can act meaningfully on information, not just shuffle symbols.

Image Credit: top images – Adobe Stock

Can AI pass the new test?

So far, Mappouras does not think modern AI has passed the General Intelligence Threshold. Systems like ChatGPT may look impressive, but their apparent creativity usually comes from patterns in the massive data sets on which they were trained. They have not shown the ability to produce new, independent knowledge disconnected from prior inputs.

That said, Mappouras emphasizes that success would not require constant novelty. One true act of creativity — an undeniable demonstration of new knowledge — would be enough. Until that happens, he remains cautious about claims that today’s AI is truly intelligent.

A shift in the debate

The debate over artificial intelligence is shifting. The original Turing Test asked whether machines could fool us into thinking they were human. Turing Test 2.0 asks a harder question: can they discover something new?

Mappouras believes this is the real measure of intelligence. Intelligence is not imitation — it is innovation. Whether machines will ever cross that line remains uncertain. But if they do, the world will not just be talking with computers. We will be learning from them.

Final thoughts: Today’s systems, tomorrow’s threshold

Models like ChatGPT and Grok are remarkable at conversation, summarization, and problem-solving within known domains, but their strengths still reflect pattern learning from vast training data. By Mappouras’s standard, they will cross the General Intelligence Threshold only when they produce a verifiable breakthrough — an insight not traceable to prior text or human scaffolding, such as an original solution to a major open problem. Until then, they remain powerful imitators and accelerators of human work — impressive, useful, and transformative, but not yet creators of genuinely new knowledge.

Additional Resources

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UTM Celebrates Malaysia’s Youngest AI Researcher Recognised at IEEE AI-SI 2025 – UTM NewsHub

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KUALA LUMPUR, 28 August 2025 – Universiti Teknologi Malaysia (UTM) proudly hosted the Institute of Electrical and Electronics Engineers (IEEE) International Conference on Artificial Intelligence for Sustainable Innovation (AI-SI) 2025, themed “Empowering Innovation for a Sustainable Future.” The conference gathered global experts, academics, and industry leaders to explore how Artificial Intelligence (AI) can address sustainability challenges. Among its highlights was the remarkable achievement of 17-year-old Malaysian researcher, Charanarravindaa Suriess, who was celebrated as the youngest presenter and awarded Best Presenter for his groundbreaking paper on adversarial robustness in neural networks. His recognition reflected not only individual brilliance but also Malaysia’s growing strength in the global AI research landscape.

Charanarravindaa’s presentation, titled “Two-Phase Evolutionary Framework for Adversarial Robustness in Neural Networks,” introduced an innovative framework designed to improve AI systems’ ability to defend against adversarial attacks. His contribution addressed one of the most pressing challenges in AI, ensuring resilience and trustworthiness of machine learning models in real-world applications. Born in Johor Bahru, his journey into science and computing began early; by primary school, he was already troubleshooting computers and experimenting with small websites. At just 15 years old, he graduated early, motivated by a passion for deeper challenges. Participation in international hackathons, including DeepLearning Week at Nanyang Technological University (NTU) Singapore, strengthened his resolve and provided the encouragement that led to his first academic paper, now internationally recognised at IEEE AI-SI 2025.

Charanarravindaa Suriess, 17, youngest and Best Presenter at IEEE AI-SI 2025

Beyond academia, Charanarravindaa has also demonstrated entrepreneurial spirit by founding Cortexa, a startup dedicated to advancing AI robustness, architectures, and applied AI for scientific discovery. His long-term vision is to integrate artificial intelligence with quantum computing and theoretical physics to expand the boundaries of knowledge. This ambition is a testament to the potential of Malaysia’s youth in contributing to frontier technologies. His recognition at IEEE AI-SI 2025 reflects IEEE’s mission of advancing technology for humanity, where innovation is seen as a universal endeavour not limited by age. By honouring a young researcher, IEEE underscored its commitment to empowering future generations of scientists and innovators to shape technology for global good.

Charanarravindaa Suriess, 17, recognised as the youngest participant and Best Presenter at IEEE AI-SI 2025
Charanarravindaa Suriess, 17, recognised as the youngest participant and Best Presenter at IEEE AI-SI 2025

During the conference, the Faculty of Artificial Intelligence (FAI), UTM, represented by Associate Professor Dr. Noor Azurati Ahmad, extended an invitation to Charanarravindaa to explore possible research collaborations. This initiative aligns with FAI’s vision to be a leader in AI education, research, and innovation, with a particular focus on trustworthy, robust, and sustainable AI. Early discussions centred on aligning his research interests with UTM’s expertise in advanced architectures and digital sustainability. Such collaboration exemplifies how institutions and young talent can come together to accelerate innovation, while also strengthening Malaysia’s position as an emerging hub for AI research and talent cultivation.

At the national level, this achievement resonates strongly with the Malaysia National Artificial Intelligence Roadmap (2021–2025), which identifies talent development as a central pillar in building an AI-ready nation. Prime Minister Datuk Seri Anwar Ibrahim has repeatedly highlighted the urgency of nurturing local talent to enhance competitiveness and leadership in the global digital economy. Charanarravindaa’s success demonstrates tangible progress in this direction, showcasing how Malaysia can produce young innovators capable of contributing to both national aspirations and international scientific advancement. Through platforms such as IEEE AI-SI 2025, UTM reaffirms its role as a catalyst for excellence in AI research and talent development, embodying its mission to prepare the next generation of scholars and innovators who will drive sustainable futures.



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Databricks at a crossroads: Can its AI strategy prevail without Naveen Rao?

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“Databricks is in a tricky spot with Naveen Rao stepping back. He was not just a figurehead, but deeply involved in shaping their AI vision, particularly after MosaicML,” said Robert Kramer, principal analyst at Moor Insights & Strategy.

“Rao’s absence may slow the pace of new innovation slightly, at least until leadership stabilizes. Internal teams can keep projects on track, but vision-driven leaps, like identifying the ‘next MosaicML’, may be harder without someone like Rao at the helm,” Kramer added.

Rao became a part of Databricks in 2023 after the data lakehouse provider acquired MosaicML, a company Rao co-founded, for $1.3 billion. During his tenure, Rao was instrumental in leading research for many Databricks products, including Dolly, DBRX, and Agent Bricks.



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