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Computer Modeling

“From Kindergarten to Complex Tasks: How ‘Basic Skills’ Enhance AI Learning”

We need to learn our letters before we can learn to read and our numbers before we can learn how to add and subtract. The same principles are true with AI, a team of scientists has shown through laboratory experiments and computational modeling. In their work, researchers found that when recurrent neural networks (RNNs) are first trained on simple cognitive tasks, they are better equipped to handle more difficult and complex ones later on.

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From Kindergarten to Complex Tasks: How ‘Basic Skills’ Enhance AI Learning

Imagine you’re trying to learn a new language or how to play a musical instrument. You wouldn’t start with the intricacies of grammar rules or complicated melodies, would you? Instead, you’d begin with the basics – learning your alphabet, simple sentences, and basic chords. The same principles are true for artificial intelligence (AI), as a team of researchers from New York University has demonstrated through laboratory experiments and computational modeling.

In their work, published in the journal Nature Machine Intelligence, the scientists found that when recurrent neural networks (RNNs) are first trained on simple cognitive tasks, they are better equipped to handle more difficult and complex ones later on. They labeled this form of training ‘kindergarten curriculum learning’ as it centers on first instilling an understanding of basic tasks and then combining knowledge of these tasks in carrying out more challenging ones.

“From very early on in life, we develop a set of basic skills like maintaining balance or playing with a ball,” explains Cristina Savin, an associate professor in NYU’s Center for Neural Science and Center for Data Science. “With experience, these basic skills can be combined to support complex behavior – for instance, juggling several balls while riding a bicycle.”

The researchers took these principles to enhance the capabilities of RNNs, which first learn a series of easy tasks, store this knowledge, and then apply a combination of these learned tasks to successfully complete more sophisticated ones. This approach proved to be effective in improving the performance of RNNs in complex cognitive tasks.

To test their theory, the scientists conducted a series of experiments with laboratory rats. The animals were trained to seek out a water source in a box with several compartmentalized ports. However, in order to know when and where the water would be available, the rats needed to learn that delivery of the water was associated with certain sounds and the illumination of the port’s lights – and that the water was not delivered immediately after these cues.

In order to reach the water, then, the animals needed to develop basic knowledge of multiple phenomena (e.g., sounds precede water delivery, waiting after the visual and audio cues before trying to access the water) and then learn to combine these simple tasks in order to complete a goal (water retrieval). These results pointed to principles of how the animals applied knowledge of simple tasks in undertaking more complex ones.

The scientists took these findings to train RNNs in a similar fashion – but, instead of water retrieval, the RNNs managed a wagering task that required these networks to build upon basic decision making in order to maximize the payoff over time. They then compared this kindergarten curriculum learning approach to existing RNN-training methods.

Overall, the team’s results showed that the RNNs trained on the kindergarten model learned faster than those trained on current methods. “AI agents first need to go through kindergarten to later be able to better learn complex tasks,” observes Savin. “Overall, these results point to ways to improve learning in AI systems and call for developing a more holistic understanding of how past experiences influence learning of new skills.”

This research was funded by grants from the National Institute of Mental Health (1R01MH125571-01, 1K01MH132043-01A1) and conducted using research computing resources of the Empire AI consortium, with support from the State of New York, the Simons Foundation, and the Secunda Family Foundation.

Artificial Intelligence

“Revolutionizing Computing with the ‘Microwave Brain’ Chip”

Cornell engineers have built the first fully integrated “microwave brain” — a silicon microchip that can process ultrafast data and wireless signals at the same time, while using less than 200 milliwatts of power. Instead of digital steps, it uses analog microwave physics for real-time computations like radar tracking, signal decoding, and anomaly detection. This unique neural network design bypasses traditional processing bottlenecks, achieving high accuracy without the extra circuitry or energy demands of digital systems.

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The world of computing has taken a significant leap forward with the development of the “microwave brain” chip, a low-power microchip that can compute on both ultrafast data signals and wireless communication signals. This revolutionary innovation, created by researchers at Cornell University, marks the first time a processor has harnessed the physics of microwaves to perform real-time frequency domain computation.

Detailed in the journal Nature Electronics, this groundbreaking processor is the first true microwave neural network and is fully integrated on a silicon microchip. It can handle tasks like radio signal decoding, radar target tracking, and digital data processing while consuming less than 200 milliwatts of power – an impressive feat considering its speed and efficiency.

The secret behind this technology lies in its design as a neural network, modeled after the human brain’s interconnected modes produced in tunable waveguides. This allows it to recognize patterns and learn from data, unlike traditional digital computers that rely on step-by-step instructions timed by a clock. The microwave brain processor uses analog, nonlinear behavior in the microwave regime to handle data streams at speeds of tens of gigahertz – far faster than most digital chips.

“We’ve created something that looks more like a controlled mush of frequency behaviors that can ultimately give you high-performance computation,” says Alyssa Apsel, professor of engineering and co-senior author. Bal Govind, lead author and doctoral student, explains that the chip’s programmable distortion across a wide band of frequencies allows it to be repurposed for several computing tasks.

The microwave brain processor has achieved remarkable accuracy on multiple classification tasks involving wireless signal types, comparable to digital neural networks but with a fraction of the power and size. It can perform both low-level logic functions and complex tasks like identifying bit sequences or counting binary values in high-speed data.

With its extreme sensitivity to inputs, this chip is well-suited for hardware security applications like sensing anomalies in wireless communications across multiple bands of microwave frequencies. The researchers are optimistic about the scalability of this technology and are experimenting with ways to improve its accuracy and integrate it into existing microwave and digital processing platforms.

As the world becomes increasingly dependent on data-driven technologies, innovations like the microwave brain chip have the potential to revolutionize computing and redefine what is possible in the realm of artificial intelligence and machine learning.

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Artificial Intelligence

“Tiny ‘talking’ robots form shape-shifting swarms that heal themselves”

Scientists have designed swarms of microscopic robots that communicate and coordinate using sound waves, much like bees or birds. These self-organizing micromachines can adapt to their surroundings, reform if damaged, and potentially undertake complex tasks such as cleaning polluted areas, delivering targeted medical treatments, or exploring hazardous environments.

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The article discusses how scientists have developed tiny robots that use sound waves to coordinate into large swarms, exhibiting intelligent-like behavior. This innovative technology has the potential to revolutionize various fields, including environmental remediation, healthcare, and search and rescue operations.

Led by Igor Aronson, a team of researchers created computer models to simulate the behavior of these micromachines. They found that acoustic communication allowed individual robotic agents to work together seamlessly, adapting their shape and behavior to their environment, much like a school of fish or a flock of birds.

The robots’ ability to self-organize and re-form themselves if deformed is a significant breakthrough in the field of active matter, which studies the collective behavior of self-propelled microscopic biological and synthetic agents. This new technology has the potential to tackle complex tasks such as pollution cleanup, medical treatment from inside the body, and even exploration of disaster zones.

The team’s discovery marks a significant leap toward creating smarter, more resilient, and ultimately more useful microrobots with minimal complexity. The insights from this research are crucial for designing the next generation of microrobots capable of performing complex tasks and responding to external cues in challenging environments.

While the robots in the paper were computational agents within a theoretical model, rather than physical devices that were manufactured, the simulations observed the emergence of collective intelligence that would likely appear in any experimental study with the same design. The team’s findings have opened up new possibilities for the use of sound waves as a means of controlling micro-sized robots, offering advantages over chemical signaling such as faster and farther propagation without loss of energy.

This research has far-reaching implications for various fields, including medicine, environmental science, and engineering. It highlights the potential for microrobots to be used in complex tasks such as exploration, cleanup, and medical treatment, and demonstrates their ability to self-heal and maintain collective intelligence even after breaking apart.

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Civil Engineering

AI Breakthrough in Fusion Reactor Design: Uncovering Hidden Safe Zones with HEAT-ML

Scientists have developed a lightning-fast AI tool called HEAT-ML that can spot hidden “safe zones” inside a fusion reactor where parts are protected from blistering plasma heat. Finding these areas, known as magnetic shadows, is key to keeping reactors running safely and moving fusion energy closer to reality.

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The development of artificial intelligence (AI) in fusion research has taken a significant leap forward. A public-private partnership between Commonwealth Fusion Systems (CFS), the U.S. Department of Energy’s Princeton Plasma Physics Laboratory (PPPL), and Oak Ridge National Laboratory has led to the creation of HEAT-ML, an AI approach that rapidly finds and simulates “magnetic shadows” in fusion vessels: safe havens protected from intense heat plasma.

HEAT-ML uses a deep neural network to learn how to calculate shadow masks, which are 3D maps of specific areas on internal components shielded from direct heat. This AI surrogate was trained using a database of approximately 1,000 SPARC simulations and can now simulate the same calculations in mere milliseconds, as opposed to the previous 30 minutes.

The goal is to create software that significantly speeds up fusion system design and enables good decision-making during operations by adjusting plasma settings to prevent potential problems. HEAT-ML was specifically designed for a small part of the SPARC tokamak under construction by CFS but has the potential to be expanded to generalize the calculation of shadow masks for exhaust systems of any shape and size, as well as other plasma-facing components.

Researchers believe that this AI breakthrough could pave the way for faster fusion system design, enabling good decision-making during operations, and potentially leading to limitless amounts of electricity on Earth.

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