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Brain-Inspired Hardware for Artificial Intelligence: Accelerated Learning in a Physical-Model Spiking Neural Network

机译:受大脑启发的人工智能硬件:物理模型尖刺神经网络中的加速学习

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Future developments in artificial intelligence will profit from the existence of novel, non-traditional substrates for brain-inspired computing. Neuromorphic computers aim to provide such a substrate that reproduces the brain's capabilities in terms of adaptive, low-power information processing. We present results from a prototype chip of the BrainScaleS-2 mixed-signal neuromorphic system that adopts a physical-model approach with a 1000-fold acceleration of spiking neural network dynamics relative to biological real time. Using the embedded plasticity processor, we both simulate the Pong arcade video game and implement a local plasticity rule that enables reinforcement learning, allowing the on-chip neural network to learn to play the game. The experiment demonstrates key aspects of the employed approach, such as accelerated and flexible learning, high energy efficiency and resilience to noise.
机译:人工智能的未来发展将得益于新颖的,非传统的,以脑为灵感的计算基础。神经形态计算机旨在提供一种可在自适应,低功耗信息处理方面重现大脑功能的基板。我们目前的结果来自BrainScaleS-2混合信号神经形态系统的原型芯片,该芯片采用一种物理模型方法,相对于生物实时而言,峰值神经网络动力学具有1000倍的加速度。使用嵌入式可塑性处理器,我们既可以模拟Pong街机视频游戏,又可以实施本地可塑性规则,从而可以进行强化学习,从而使片上神经网络可以学习玩游戏。实验证明了所采用方法的关键方面,例如加速和灵活的学习,高能效和抗噪声能力。

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