Modern neuromorphic processors exhibit neuron densities that are orders of magnitude lower than those of the biological cortex, hindering the deployment of large-scale spiking neural networks (SNNs) on single chips. To bridge this gap, we propose HDNIP, a 40 nm high-density neuromorphic inference platform with a density-first architecture. By eliminating area-intensive on-chip SRAM and using 1280 compact cores with a time-division multiplexing factor of up to 8192, HDNIP integrates 10 million neurons and 80 billion synapses within a 44.39 mm2 synthesized area. This achieves an unprecedented neuron density of 225 k neurons/mm2, over 100 times greater than prior art. The resulting bandwidth challenges are mitigated by a ReRAM-based near-memory computation strategy combined with input reuse, reducing off-chip data transfer by approximately 95%. Furthermore, adaptive TDM and dynamic core fusion ensure high hardware utilization across diverse network topologies. Emulator-based validation using large SNNs, demonstrates a throughput of 13 GSOP/s at a low power consumption of 146 mW. HDNIP establishes a scalable pathway towards single-chip, low-SWaP neuromorphic systems for complex edge intelligence applications.
Zuo et al. (Wed,) studied this question.