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Artificial Intelligence

“Soft Robotics Revolution: Octopus-Inspired Robot Learns to Adapt and React in Real-Time”

Scientists inspired by the octopus’s nervous system have developed a robot that can decide how to move or grip objects by sensing its environment.

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In a groundbreaking study published in Science Robotics, researchers from the University of Bristol have developed a soft robot that can learn to adapt and react to its environment, inspired by the incredible nervous system of the octopus. This innovative creation uses fluid flows of air or water to coordinate suction and movement, much like an octopus’s hundreds of suckers and multiple arms.

The study demonstrates how a single suction system enables the robot to not only grasp delicate items but also sense whether it’s touching air, water, or a rough surface, and even predict how hard something is pulling on it – all at once, without needing a central computer. This “embodied suction intelligence” mimics key aspects of the neuromuscular structure of the octopus in soft robotic systems.

The lead author, Tianqi Yue, explained that last year’s artificial suction cup was a significant step towards this breakthrough. The current research brings the work forward, from using a suction cup like an octopus sucker to connect to objects to using embodied suction intelligence. This simple and low-cost suction intelligence can achieve octopus-like low-level embodied intelligence, including gently grasping delicate objects and adaptive curling.

The robot’s high-level perception capabilities include contact detection, classification of environment and surface roughness, as well as prediction of interactive pulling force. The implications are vast, with potential uses in agriculture (picking fruit gently), factories (handling fragile items), medicine (anchoring tools inside the human body), or creating soft toys and wearable tools that can interact safely with people.

The researchers are currently working on making the system smaller and more robust for real-world use, aiming to combine it with smart materials and AI to improve its adaptability and decision-making in complex environments. The team’s excitement is palpable, as they envision a future where robots become softer, smarter, and more energy-efficient – much like their octopus-inspired counterparts.

Artificial Intelligence

Revolutionizing Quantum Computing with an Ultra-Thin Chip

Researchers at Harvard have created a groundbreaking metasurface that can replace bulky and complex optical components used in quantum computing with a single, ultra-thin, nanostructured layer. This innovation could make quantum networks far more scalable, stable, and compact. By harnessing the power of graph theory, the team simplified the design of these quantum metasurfaces, enabling them to generate entangled photons and perform sophisticated quantum operations — all on a chip thinner than a human hair. It’s a radical leap forward for room-temperature quantum technology and photonics.

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In the quest for practical quantum computers and networks, photons have emerged as promising carriers of information at room temperature. However, controlling and coherently manipulating these particles within optical devices has proven notoriously difficult due to their inherently noisy nature. To overcome this hurdle, researchers from Harvard’s John A. Paulson School of Engineering and Applied Sciences have developed an innovative solution – a metasurface-based quantum photonics processor.

This groundbreaking device is the result of Federico Capasso’s research team, led by graduate student Kerolos M.A. Yousef. By harnessing the power of specially designed metasurfaces, flat devices etched with nanoscale light-manipulating patterns, they have created an ultra-thin upgrade for quantum-optical chips and setups.

One of the primary advantages of this design is its ability to miniaturize an entire optical setup into a single metasurface. This results in a robust and scalable system that offers numerous benefits, including cost-effectiveness, simplicity of fabrication, and low optical loss. The work has significant implications for quantum sensing, enabling “lab-on-a-chip” capabilities for fundamental science.

To tackle the complex mathematical challenges associated with this design, the researchers drew upon graph theory – a branch of mathematics that uses points and lines to represent connections and relationships. This allowed them to visually determine how photons interfere with each other and predict their effects in experiments.

The resulting paper was a collaboration with Marko Loncar’s lab, which provided expertise and equipment necessary for the project. Neal Sinclair, a research scientist on the team, expressed excitement about this approach, stating that it could efficiently scale optical quantum computers and networks – their biggest challenge compared to other platforms like superconductors or atoms.

This groundbreaking research received support from federal sources, including the Air Force Office of Scientific Research (AFOSR), under award No. FA9550-21-1-0312. The work was performed at the Harvard University Center for Nanoscale Systems.

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Artificial Intelligence

Google’s Deepfake Hunter: Exposing Manipulated Videos with a Universal Detector

AI-generated videos are becoming dangerously convincing and UC Riverside researchers have teamed up with Google to fight back. Their new system, UNITE, can detect deepfakes even when faces aren’t visible, going beyond traditional methods by scanning backgrounds, motion, and subtle cues. As fake content becomes easier to generate and harder to detect, this universal tool might become essential for newsrooms and social media platforms trying to safeguard the truth.

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In an era where manipulated videos can spread disinformation, bully people, and incite harm, researchers at the University of California, Riverside (UCR), have created a powerful new system to expose these fakes. Amit Roy-Chowdhury, a professor of electrical and computer engineering, and doctoral candidate Rohit Kundu, teamed up with Google scientists to develop an artificial intelligence model that detects video tampering – even when manipulations go far beyond face swaps and altered speech.

Their new system, called the Universal Network for Identifying Tampered and synthEtic videos (UNITE), detects forgeries by examining not just faces but full video frames, including backgrounds and motion patterns. This analysis makes it one of the first tools capable of identifying synthetic or doctored videos that do not rely on facial content.

“Deepfakes have evolved,” Kundu said. “They’re not just about face swaps anymore. People are now creating entirely fake videos – from faces to backgrounds – using powerful generative models. Our system is built to catch all of that.”

UNITE’s development comes as text-to-video and image-to-video generation have become widely available online. These AI platforms enable virtually anyone to fabricate highly convincing videos, posing serious risks to individuals, institutions, and democracy itself.

“It’s scary how accessible these tools have become,” Kundu said. “Anyone with moderate skills can bypass safety filters and generate realistic videos of public figures saying things they never said.”

Kundu explained that earlier deepfake detectors focused almost entirely on face cues. If there’s no face in the frame, many detectors simply don’t work. But disinformation can come in many forms. Altering a scene’s background can distort the truth just as easily.

To address this, UNITE uses a transformer-based deep learning model to analyze video clips. It detects subtle spatial and temporal inconsistencies – cues often missed by previous systems. The model draws on a foundational AI framework known as SigLIP, which extracts features not bound to a specific person or object. A novel training method, dubbed “attention-diversity loss,” prompts the system to monitor multiple visual regions in each frame, preventing it from focusing solely on faces.

The result is a universal detector capable of flagging a range of forgeries – from simple facial swaps to complex, fully synthetic videos generated without any real footage. It’s one model that handles all these scenarios,” Kundu said. “That’s what makes it universal.”

The researchers presented their findings at the high-ranking 2025 Conference on Computer Vision and Pattern Recognition (CVPR) in Nashville, Tenn. Their paper, led by Kundu, outlines UNITE’s architecture and training methodology.

While still in development, UNITE could soon play a vital role in defending against video disinformation. Potential users include social media platforms, fact-checkers, and newsrooms working to prevent manipulated videos from going viral.

“People deserve to know whether what they’re seeing is real,” Kundu said. “And as AI gets better at faking reality, we have to get better at revealing the truth.”

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Artificial Intelligence

Revolutionizing Electronics: Tiny Metal Switches Magnetism without Magnets, Enabling Faster, More Energy-Efficient Technology

Researchers at the University of Minnesota Twin Cities have made a promising breakthrough in memory technology by using a nickel-tungsten alloy called Ni₄W. This material shows powerful magnetic control properties that can significantly reduce energy use in electronic devices. Unlike conventional materials, Ni₄W allows for “field-free” switching—meaning it can flip magnetic states without external magnets—paving the way for faster, more efficient computer memory and logic devices. It’s also cheap to produce, making it ideal for widespread use in gadgets from phones to data centers.

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The University of Minnesota Twin Cities has made significant research breakthroughs in developing a material that could revolutionize the world of electronics. A study published in Advanced Materials, a peer-reviewed scientific journal, reveals a new understanding of Ni₄W, a combination of nickel and tungsten that produces powerful spin-orbit torque (SOT). This technology has the potential to make computer memory faster and more energy-efficient.

As technology continues to advance, the demand for emerging memory solutions is growing. Researchers are seeking alternatives and complements to existing memory technologies that can perform at high levels with low energy consumption. Ni₄W offers a promising solution, demonstrating a more efficient way to control magnetization in tiny electronic devices.

“Ni₄W reduces power usage for writing data, potentially cutting energy use in electronics significantly,” said Jian-Ping Wang, senior author on the paper and Distinguished McKnight Professor at the University of Minnesota Twin Cities. This technology could help reduce the electricity consumption of devices like smartphones and data centers, making future electronics both smarter and more sustainable.

The researchers found that Ni₄W can generate spin currents in multiple directions, enabling “field-free” switching of magnetic states without the need for external magnetic fields. Yifei Yang, a fifth-year Ph.D. student and co-first author on the paper, noted that they observed high SOT efficiency with multi-direction in Ni₄W both on its own and when layered with tungsten.

Ni₄W is made from common metals and can be manufactured using standard industrial processes, making it an attractive option for industry partners. The researchers are excited about the potential of this technology to be implemented into everyday devices like smart watches, phones, and more.

In addition to Wang and Yang, the research team included Seungjun Lee, a postdoctoral fellow and co-first author on the paper, along with several other experts from various departments at the University of Minnesota. This work was supported by SMART (Spintronic Materials for Advanced InforRmation Technologies) and the Global Research Collaboration Logic and Memory program.

The next steps are to grow these materials into a device that is even smaller than their previous work. With continued research, Ni₄W has the potential to revolutionize the world of electronics, enabling faster, more energy-efficient technology for years to come.

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