Predictive first-principles simulations for co-designing next-generation energy-efficient AI systems

Abstract

In modern generative-AI workloads, matrix-vector/matrix-matrix multiplications (MatMul) dominate the compute and energy cost. Achieving dramatic reductions in energy per token therefore requires a novel, specialized hardware that is co-designed across materials, devices, interconnects, circuits, and architectures rather than optimized at any single layer in isolation. In this Perspectives article, we argue that predictive (first-principles, fitting-parameter-free) device and interconnect simulations can close the loop between nanoscale physics and workload-level metrics, enabling the identification of device/interconnect operating regimes that plausibly support orders-of-magnitude improvements in energy efficiency of AI accelerators.

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