Overview of emerging electronics technologies for artificial intelligence: A review

Peng Gao , Muhammad Adnan
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Abstract

This paper shows the short- and long-term electronics technologies emerging as the enablers of next-generation AI systems and focuses on rapidly developing technologies with promise toward enabling the new AI revolution, such as neuromorphic, quantum computing and edge AI processors. These technologies are key to improving the computational power, energy efficiency, and scalability required in AI solutions across healthcare, autonomous systems, and better endeavours. Neuromorphic computing works similarly to the brain's neural configuration to build a more energy-efficient AI system by simulating biological functionality, while quantum computing is ubiquitous as the next stage of problem-solving systems in AI and exponentially increases computational speed and functionality. Finally, Edge AI processors play an important role in real-time AI decision-making, especially in environments with limited power and space, as they allow data to be processed at the original point of generation. Of course, although these technologies demonstrate great potential, there are still obstacles to overcome for subtle hardware-software integration, architecture scalability and high energy consumption. This study highlights sustainable hardware design as an essential solution to these challenges, discussing low-power chips, AI accelerators and energy-efficient designs that allow devices to run at scale without performance liabilities. The paper also highlights quantum and neuromorphic computing—which mimics the structure and function of biological brains—as an important focus for overcoming limitations regarding scalability, allowing for novel architectures equipped to deal with the extremely large amounts of data required for future, more advanced AI models. We also discuss how these progressions can facilitate the creation of effective and scalable AI systems that support AI in addressing global challenges like environmental deterioration and resource limitations. Lastly, the paper highlights the importance of ongoing research and innovation in such areas to promote the evolution of AI systems that are resilient, scalable and energy-efficient in a way that ensures the long-term sustainability of AI and its implementation in various domains.

Abstract Image

新兴的人工智能电子技术综述
本文展示了作为下一代人工智能系统的推动者而出现的短期和长期电子技术,并重点介绍了有望实现新人工智能革命的快速发展技术,如神经形态、量子计算和边缘人工智能处理器。这些技术是提高医疗保健、自主系统和更好的事业中人工智能解决方案所需的计算能力、能源效率和可扩展性的关键。神经形态计算的工作原理类似于大脑的神经配置,通过模拟生物功能来构建更节能的人工智能系统,而量子计算作为人工智能解决问题系统的下一阶段无处不在,并以指数方式提高计算速度和功能。最后,边缘人工智能处理器在实时人工智能决策中发挥着重要作用,特别是在功率和空间有限的环境中,因为它们允许在原始生成点处理数据。当然,尽管这些技术显示出巨大的潜力,但在微妙的硬件软件集成、架构可扩展性和高能耗方面仍有一些障碍需要克服。本研究强调,可持续硬件设计是应对这些挑战的基本解决方案,讨论了低功耗芯片、人工智能加速器和节能设计,这些设计允许设备在没有性能负担的情况下大规模运行。这篇论文还强调了量子和神经形态计算——模仿生物大脑的结构和功能——作为克服可扩展性限制的重要焦点,允许新的架构来处理未来更先进的人工智能模型所需的大量数据。我们还讨论了这些进步如何促进创建有效和可扩展的人工智能系统,以支持人工智能应对环境恶化和资源限制等全球挑战。最后,本文强调了在这些领域进行持续研究和创新的重要性,以促进具有弹性、可扩展和节能的人工智能系统的发展,从而确保人工智能的长期可持续性及其在各个领域的实施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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