Analog computing from waste heat

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#머신러닝/연구 #m5 칩 #디자인 개편 #맥북 프로 #애플 #하드웨어

요약

애플은 올해 상반기 기존 디자인에 M5 프로 및 M5 맥스 칩을 탑재한 맥북 프로를 먼저 선보이고, 하반기에는 5년 만에 외관을 대폭 개편한 신형 모델을 출시할 계획입니다. 신형 맥북 프로는 삼성이 공급하는 OLED 디스플레이가 탑재되며, 기존 노치 대신 펀치홀 카메라가 적용되고 맥북 시리즈 최초로 터치스크린 기능이 지원될 가능성이 제기되고 있습니다. 다만 애플이 요구하는 일부 부품 준비 지연에 따라 하반기 출시 일정이 조정될 수도 있습니다.

왜 중요한가

관련 엔티티

애플 M5 프로 M5 맥스 맥북 프로 삼성 OLED 디스플레이 펀치홀 카메라 터치스크린

본문

Heat generated by electronic devices is usually a problem, but a team led by Giuseppe Romano, a research scientist at MIT’s Institute for Soldier Nanotechnologies, has found a way to use it for data processing that doesn’t rely on electricity. In this analog computing method, input data is encoded not as binary 1s and 0s but as a set of temperatures based on the waste heat already present in a device. The flow and distribution of that heat through tiny silicon structures, designed by a physics-based optimization algorithm they developed, forms the basis of the calculation. Then the output is represented by the power collected at the other end. The researchers used these structures to perform a simple form of matrix vector multiplication, the fundamental mathematical technique machine-learning models like large language models use to process information and make predictions. The results were more than 99% accurate in many cases. The researchers still have to overcome many hurdles to scale up this computing method for modern deep-learning models, such as the challenges involved in tiling millions of these structures together. As the matrices become more complicated, the results also become less accurate, especially when there is a large distance between the input and output terminals. But the technique could also have a more immediate use: detecting problematic heat sources and measuring temperature changes in electronics without consuming extra energy. This would also eliminate the need for multiple temperature sensors that can currently take up space on a chip. “Most of the time, when you are performing computations in an electronic device, heat is the waste product,” says Caio Silva, an undergraduate student in the Department of Physics and lead author of a paper on the work. “You often want to get rid of as much heat as you can. But here, we’ve taken the opposite approach by using heat as a form of information itself.”

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