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Breaking the Memory Wall for AI Chip with a New Dimension

机译:用新的维度打破AI芯片的存储壁

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Recent advancements in deep learning have led to the widespread adoption of artificial intelligence (AI) in applications such as computer vision and natural language processing. As neural networks become deeper and larger, AI modeling demands outstrip the capabilities of conventional chip architectures. Memory bandwidth falls behind processing power. Energy consumption comes to dominate the total cost of ownership. Currently, memory capacity is insufficient to support the most advanced NLP models. In this work, we present a 3D AI chip, called Sunrise, with near-memory computing architecture to address these three challenges. This distributed, near-memory computing architecture allows us to tear down the performance-limiting memory wall with an abundance of data bandwidth. We achieve the same level of energy efficiency on 40nm technology as competing chips on 7nm technology. By moving to similar technologies as other AI chips, we project to achieve more than ten times the energy efficiency, seven times the performance of the current state-of-the-art chips, and twenty times of memory capacity as compared with the best chip in each benchmark.
机译:深度学习的最新进展已导致在计算机视觉和自然语言处理等应用程序中广泛采用人工智能(AI)。随着神经网络变得越来越深,越来越大,AI建模的需求已经超过了传统芯片架构的能力。内存带宽落后于处理能力。能耗占总拥有成本的主导地位。当前,内存容量不足以支持最先进的NLP模型。在这项工作中,我们展示了一种名为Sunrise的3D AI芯片,该芯片具有近内存计算架构,可以应对这三个挑战。这种分布式的,近内存的计算体系结构使我们能够通过大量的数据带宽来拆除性能受限的内存墙。我们在40nm技术上的能效水平与7nm技术上的竞争芯片相同。通过采用与其他AI芯片类似的技术,我们计划实现的能源效率是最佳芯片的十倍以上,性能是当前最先进的芯片的七倍,存储容量是最佳芯片的二十倍。在每个基准测试中。

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