Hardware Acceleration of Kolmogorov-Arnold Network (KAN) for Lightweight Edge Inference
Wei-Hsing Huang(National Tsing Hua University), Shimeng Yu(Georgia Institute of Technology), Meng‐Fan Chang(Taiwan Semiconductor Manufacturing Company (Taiwan)), Yuyao Kong(Georgia Institute of Technology), Tai-Hao Wen(National Tsing Hua University), Jianwei Jia, Faaiq Waqar
Cited by 0
Related Papers
An 8-Mb DC-Current-Free Binary-to-8b Precision ReRAM Nonvolatile Computing-in-Memory Macro using Time-Space-Readout with 1286.4-21.6TOPS/W for Edge-AI Devices
|2022 IEEE International Solid- State Circuits Conference (ISSCC)|2022|117
A 40-nm, 2M-Cell, 8b-Precision, Hybrid SLC-MLC PCM Computing-in-Memory Macro with 20.5 - 65.0TOPS/W for Tiny-Al Edge Devices
|2022 IEEE International Solid- State Circuits Conference (ISSCC)|2022|117
Fusion of memristor and digital compute-in-memory processing for energy-efficient edge computing
|Science|2024|99
A Nonvolatile Al-Edge Processor with 4MB SLC-MLC Hybrid-Mode ReRAM Compute-in-Memory Macro and 51.4-251TOPS/W
|Unknown|2023|72
8-b Precision 8-Mb ReRAM Compute-in-Memory Macro Using Direct-Current-Free Time-Domain Readout Scheme for AI Edge Devices
|IEEE Journal of Solid-State Circuits|2022|60