Li Renjie, Gong Yuanhao, Huang Hai, Zhou Yuze, Mao Sixuan, Wei Zhijian, Zhang Zhaoyu
School of Science and Engineering, Guangdong Key Laboratory of Optoelectronic Materials and Chips, Shenzhen Key Lab of Semiconductor Lasers, The Chinese University of Hong Kong, Shenzhen, Shenzhen, Guangdong, 518172, China.
SONT Technologies Co. LTD, Shenzhen, Guangdong, 510245, China.
Adv Mater. 2025 Jan;37(2):e2312825. doi: 10.1002/adma.202312825. Epub 2024 Jul 16.
In the dynamic landscape of Artificial Intelligence (AI), two notable phenomena are becoming predominant: the exponential growth of large AI model sizes and the explosion of massive amount of data. Meanwhile, scientific research such as quantum computing and protein synthesis increasingly demand higher computing capacities. As the Moore's Law approaches its terminus, there is an urgent need for alternative computing paradigms that satisfy this growing computing demand and break through the barrier of the von Neumann model. Neuromorphic computing, inspired by the mechanism and functionality of human brains, uses physical artificial neurons to do computations and is drawing widespread attention. This review studies the expansion of optoelectronic devices on photonic integration platforms that has led to significant growth in photonic computing, where photonic integrated circuits (PICs) have enabled ultrafast artificial neural networks (ANN) with sub-nanosecond latencies, low heat dissipation, and high parallelism. In particular, various technologies and devices employed in neuromorphic photonic AI accelerators, spanning from traditional optics to PCSEL lasers are examined. Lastly, it is recognized that existing neuromorphic technologies encounter obstacles in meeting the peta-level computing speed and energy efficiency threshold, and potential approaches in new devices, fabrication, materials, and integration to drive innovation are also explored. As the current challenges and barriers in cost, scalability, footprint, and computing capacity are resolved one-by-one, photonic neuromorphic systems are bound to co-exist with, if not replace, conventional electronic computers and transform the landscape of AI and scientific computing in the foreseeable future.
在人工智能(AI)的动态发展格局中,两个显著现象正变得日益突出:大型人工智能模型规模呈指数级增长以及海量数据的爆炸式增长。与此同时,诸如量子计算和蛋白质合成等科学研究对计算能力的要求越来越高。随着摩尔定律接近极限,迫切需要替代计算范式来满足不断增长的计算需求,并突破冯·诺依曼模型的限制。受人类大脑机制和功能启发的神经形态计算,利用物理人工神经元进行计算,正受到广泛关注。本综述研究了光子集成平台上光电器件的扩展,这推动了光子计算的显著发展,其中光子集成电路(PIC)实现了具有亚纳秒延迟、低功耗和高并行性的超快人工神经网络(ANN)。特别是,研究了神经形态光子AI加速器中采用的各种技术和器件,涵盖从传统光学器件到垂直腔面发射激光器(VCSEL)等。最后,认识到现有神经形态技术在达到千万亿次计算速度和能源效率阈值方面面临障碍,并探索了在新器件、制造、材料和集成方面推动创新的潜在方法。随着当前在成本、可扩展性、占地面积和计算能力方面的挑战和障碍逐一得到解决,光子神经形态系统在可预见的未来必将与传统电子计算机共存,甚至可能取而代之,从而改变人工智能和科学计算的格局。