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Computer Science

Unlocking Blue OLED Longevity: A Breakthrough for Energy-Efficient Displays

Blue phosphorescent OLEDs can now last as long as the green phosphorescent OLEDs already in devices, researchers have demonstrated, paving the way for further improving the energy efficiency of OLED screens.

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The University of Michigan researchers have made a significant breakthrough in the development of energy-efficient displays by achieving the same level of longevity for blue phosphorescent OLEDs (PHOLEDs) as their green counterparts. This advancement paves the way for further improving the efficiency of OLED screens, which are widely used in flagship smartphones and high-end televisions.

The team, led by Stephen Forrest, Peter A. Franken Distinguished University Professor of Electrical Engineering, discovered that blue light is the highest energy that an RGB device must produce, making it challenging to achieve the same level of efficiency as red and green OLEDs. However, they found a way to get trapped energy out faster by including a coating on the negative electrode that helps convert excess energy into blue light.

The researchers created a fast lane for excitons, which are negatively charged electrons that jump into higher energy levels and leave behind positively charged “holes.” This fast lane is called a plasmon exciton polariton, which is an optical design that facilitates the conversion of excitons to photons. By adding a thin layer of carbon-based semiconductor onto the shiny electrode, they encouraged the exciton to transfer its energy and resonate in the right way.

The team’s approach involves using two light-emitting layers (a tandem OLED) to cut the light-emitting burden in half, reducing the odds that two excitons merge. They also added a layer that helps the excitons resonate with surface plasmons near both electrodes, making both emitting layers accessible to the fast lane.

The resulting device is an optical cavity, where blue light resonates between the two mirror-like electrodes, pushing the color of the photons deeper into the blue range. This study was supported in part by the Department of Energy and Universal Display Corporation, and the team has patented the technology with the assistance of U-M Innovation Partnerships.

The breakthrough has significant implications for the development of more efficient and longer-lasting displays, which could lead to improved battery life, reduced energy consumption, and enhanced user experiences.

Communications

Breaking Down Language Barriers in Quantum Tech: A Universal Translator for a Quantum Network

Scientists at UBC have devised a chip-based device that acts as a “universal translator” for quantum computers, converting delicate microwave signals to optical ones and back with minimal loss and noise. This innovation preserves crucial quantum entanglement and works both ways, making it a potential backbone for a future quantum internet. By exploiting engineered flaws in silicon and using superconducting components, the device achieves near-perfect signal translation with extremely low power use and it all fits on a chip. If realized, this could transform secure communication, navigation, and even drug discovery.

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The University of British Columbia (UBC) researchers have proposed a groundbreaking solution to overcome the hurdles in quantum networking. They’ve designed a device that can efficiently convert microwave signals into optical signals and vice versa, which is crucial for transmitting information across cities or continents through fibre optic cables.

This “universal translator” for quantum computers is remarkable because it preserves the delicate entangled connections between distant particles, allowing them to remain connected despite distance. Losing this connection means losing the quantum advantage that enables tasks like creating unbreakable online security and predicting weather with improved accuracy.

The team’s breakthrough lies in tiny engineered flaws, magnetic defects intentionally embedded in silicon to control its properties. When microwave and optical signals are precisely tuned, electrons in these defects convert one signal to the other without absorbing energy, avoiding the instability that plagues other transformation methods.

This device is impressive because it can efficiently run at extremely low power – just millionths of a watt – using superconducting components alongside this specially engineered silicon. The authors have outlined a practical design for mass production, which could lead to widespread adoption in existing communication infrastructure.

While we’re not getting a quantum internet tomorrow, this discovery clears a major roadblock. UBC researchers hope that their approach will change the game by enabling reliable long-distance quantum information transmission between cities. This could pave the way for breakthroughs like unbreakable online security, GPS working indoors, and solving complex problems like designing new medicines or predicting weather with improved accuracy.

The implications of this research are vast, and it’s an exciting time to see how scientists will build upon this discovery to further advance our understanding of quantum technology.

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Artificial Intelligence

Breaking Through Light Speed: Harnessing Glass Fibers for Next-Generation Computing

Imagine supercomputers that think with light instead of electricity. That s the breakthrough two European research teams have made, demonstrating how intense laser pulses through ultra-thin glass fibers can perform AI-like computations thousands of times faster than traditional electronics. Their system doesn t just break speed records it achieves near state-of-the-art results in tasks like image recognition, all in under a trillionth of a second.

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Imagine a world where computers can process information at incredible velocities, far surpassing today’s electronic systems. A groundbreaking study has made significant strides in achieving this vision by utilizing glass fibers to perform tasks faster and more efficiently. This novel approach involves harnessing the power of light to mimic artificial intelligence (AI) processes, leveraging nonlinear interactions between intense laser pulses and thin glass fibers.

The research collaboration between postdoctoral researchers Dr. Mathilde Hary from Tampere University in Finland and Dr. Andrei Ermolaev from the Université Marie et Louis Pasteur in France has successfully demonstrated a particular class of computing architecture known as an Extreme Learning Machine (ELM), inspired by neural networks.

Unlike traditional electronics, which approach their limits in terms of bandwidth, data throughput, and power consumption, optical fibers can transform input signals at speeds thousands of times faster. By confining light within glass fibers to areas smaller than a fraction of human hair, the researchers have achieved remarkable results.

Their study has used femtosecond laser pulses (a billion times shorter than a camera flash) to encode information into the fiber. This approach not only classifies handwritten digits with an accuracy rate of over 91% but also does so in under one picosecond – a feat rivaling state-of-the-art digital methods.

What’s remarkable about this achievement is that the best results didn’t occur at maximum levels of nonlinear interaction or complexity, but rather from a delicate balance between fiber length, dispersion, and power levels. According to Dr. Hary, “Performance is not simply a matter of pushing more power through the fiber; it depends on how precisely the light is initially structured, in other words, how information is encoded, and how it interacts with the fiber properties.”

This groundbreaking research has opened doors to new ways of computing while exploring routes towards more efficient architectures. By harnessing the potential of light, scientists can pave the way for ultra-fast computers that not only process information at incredible velocities but also reduce energy consumption.

The collaboration between Tampere University and Université Marie et Louis Pasteur is a testament to the power of interdisciplinary research in advancing optical nonlinearity through AI and photonics. This work demonstrates how fundamental research in nonlinear fiber optics can drive new approaches to computation, merging physics and machine learning to open new paths toward ultrafast and energy-efficient AI hardware.

As researchers continue to explore this innovative technology, potential applications range from real-time signal processing to environmental monitoring and high-speed AI inference. With funding from the Research Council of Finland, the French National Research Agency, and the European Research Council, this project is poised to revolutionize the computing landscape and unlock new possibilities for humanity.

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Computer Modeling

The Hidden Environmental Cost of Thinking AI Models

Every query typed into a large language model (LLM), such as ChatGPT, requires energy and produces CO2 emissions. Emissions, however, depend on the model, the subject matter, and the user. Researchers have now compared 14 models and found that complex answers cause more emissions than simple answers, and that models that provide more accurate answers produce more emissions. Users can, however, to an extent, control the amount of CO2 emissions caused by AI by adjusting their personal use of the technology, the researchers said.

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The article “Thinking AI models emit 50x more CO2—and often for nothing” reveals a shocking truth about the environmental cost of using thinking AI models. These models, which are capable of generating elaborate responses to complex questions, have a significant carbon footprint due to the computing processes involved in producing these answers. Researchers in Germany have measured and compared the CO2 emissions of different LLMs (Large Language Models) using standardized questions, and their findings are eye-opening.

The study found that reasoning-enabled models produced up to 50 times more CO2 emissions than concise response models. This is because reasoning models generate additional tokens, which are words or parts of words converted into a string of numbers that can be processed by the LLM. These tokens require significant computational power and energy consumption, resulting in substantial carbon emissions.

The researchers evaluated 14 LLMs with varying parameters (7-72 billion) on 1,000 benchmark questions across diverse subjects. The results showed that reasoning models created an average of 543.5 “thinking” tokens per question, whereas concise models required just 37.7 tokens per question. This significant difference in token footprint resulted in higher CO2 emissions.

The study also highlighted the accuracy-sustainability trade-off inherent in LLM technologies. None of the models that kept emissions below 500 grams of CO2 equivalent achieved higher than 80% accuracy on answering the 1,000 questions correctly. The researchers concluded that users can significantly reduce emissions by prompting AI to generate concise answers or limiting the use of high-capacity models to tasks that genuinely require that power.

The findings of this study are crucial for individuals who use AI technologies daily. By understanding the environmental cost of their AI usage, they can make more informed decisions about when and how they use these technologies. The choice of model, subject matter, and even hardware used in the study can make a significant difference in CO2 emissions.

In conclusion, the hidden environmental cost of thinking AI models is a pressing concern that requires attention from both researchers and users. By being more thoughtful and selective in our AI usage, we can reduce the carbon footprint associated with these technologies and promote sustainability in the long run.

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