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New AI model advances fusion power research by predicting the success of experiments

Practical fusion power that can provide cheap, clean energy could be a step closer thanks to artificial intelligence. Scientists at Lawrence Livermore National Laboratory have developed a deep learning model that accurately predicted the results of a nuclear fusion experiment conducted in 2022. Accurate predictions can help speed up the design of new experiments and accelerate the quest for this virtually limitless energy source.

In a paper published in Science, researchers describe how their AI model predicted with a probability of 74% that ignition was the likely outcome of a small 2022 fusion experiment at the National Ignition Facility (NIF). This is a significant advance as the model was able to cover more parameters with greater precision than traditional supercomputers.

Currently, nuclear power comes from nuclear fission, which generates energy by splitting atoms. However, it can produce radioactive waste that remains dangerous for thousands of years. Fusion generates energy by fusing atoms, similar to what happens inside the sun. The process is safer and does not produce any long-term radioactive waste. While it is a promising energy source, it is still a long way from being a viable commercial technology.

Knitted textile metasurfaces allow soft robots to morph and camouflage on demand

Nature, particularly humans and other animals, has always been among the primary sources of inspiration for roboticists. In fact, most existing robots physically resemble specific animals and/or are engineered to tackle tasks by emulating the actions, movements and behaviors of specific species.

One innate ability of some animals that has so far been seldom replicated in robots is shape morphing and camouflaging. Some living organisms, including some insects, octopuses and chameleons, are known to reversibly change their appearance, form and shape in response to their surroundings, whether to hide from predators, move objects or simply while moving in specific environments.

Researchers at Jiangnan University, Technical University of Dresden, Laurentian University and the Shanghai International Fashion Education Center recently designed new flexible and programmable metasurfaces that could be used to develop robots exhibiting similar morphing and camouflaging capabilities. These materials, introduced in a paper published in Advanced Fiber Materials, essentially consist of knitted structures that can be carefully engineered by adapting the geometric arrangement of their underlying interlaced yarn loops.

Russians Create Robot Tank Platoons

The remotely-operated robot tank is an old idea…’

Unmanned Boats Attack At Sea ‘The autofreighter smashed into the boat…’

Iron Drone Raider Counter-UAV Operations ‘You’ve got an aggressive machine up in the air now.’ — Robert Sheckley, 1953.

Bunker Busters and Bore-Pellets ‘The first revelation of the new Soviet bore-pellets.’ — Philip K. Dick, 1955.

AI learns the language of code to outsmart cyber threats

A software vulnerability checker with the potential to become a repair shop could keep critical computer systems one step ahead.

High-profile cyberattacks, such as the one that compromised British retailer Marks & Spencer’s customer data in April 2025, highlight the need for better ways to detect software vulnerabilities in the computer systems that increasingly control everything, from oil pipelines to hospital records.

To help, an international research team including Khalifa University’s Merouane Debbah, has developed SecureQwen, a smart software checker that automatically detects and flags vulnerabilities for repair. Powered by an AI model trained in the language of computer code, SecureQwen could even identify weaknesses that it had not explicitly been taught or come upon before.

Foxconn: Hon Hai Precision Industry Co., Ltd

(鴻海精密工業股份有限公司), doing business as Hon Hai Technology Group (鴻海科技集團) in Taiwan, Foxconn Technology Group (富士康科技集团) in China, and (富士康) internationally, is a Taiwanese multinational electronics contract manufacturer established in 1974 with headquarters in Tucheng District, New Taipei City, Taiwan. In 2023, the company’s annual revenue reached 6.16 trillion New Taiwan dollars (US$ 192,377,640,000 (equivalent to $198,533,892,569 in 2024)) and was ranked 20th in the 2023 Fortune Global 500. It is the world’s largest contract manufacturer of electronics. [ 3 ] While headquartered in Taiwan, the company earns the majority of its revenue from assets in China and is one of the largest employers worldwide. [ 4 ] [ 5 ] Terry Gou is the company founder and former chairman.

Foxconn manufactures electronic products for major American, Canadian, Chinese, Finnish, and Japanese companies. Notable products manufactured by include the BlackBerry, [ 6 ] iPad, [ 7 ] iPhone, iPod, [ 8 ] Kindle, [ 9 ] all Nintendo gaming systems since the GameCube, Nintendo DS models, Sega models, Nokia devices, Cisco products, Sony devices (including most PlayStation gaming consoles), Google Pixel devices, Xiaomi devices, every successor to Microsoft’s Xbox console, [ 10 ] and several CPU sockets, including the TR4 CPU socket on some motherboards. As of 2012, factories manufactured an estimated 40% of all consumer electronics sold worldwide. [ 11 ]

Foxconn named Young Liu its new chairman after the retirement of founder Terry Gou, effective on 1 July 2019. Young Liu was the special assistant to former chairman Terry Gou and the head of business group S (semiconductor). Analysts said the handover signals the company’s future direction, underscoring the importance of semiconductors, together with technologies like artificial intelligence, robotics, and autonomous driving, after’s traditional major business of smartphone assembly has matured. [ 12 ].

A new model predicts how molecules will dissolve in different solvents

Using machine learning, MIT chemical engineers created a computational model that can predict how well a given molecule will dissolve in an organic solvent. This type of prediction could make it much easier to develop new ways to produce pharmaceuticals and other useful molecules.

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