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Reconfigurable Time-Domain In-Memory Computing Marco using CAM FeFET with Multilevel Delay Calibration in 28 nm CMOS (2504.03925v1)

Published 4 Apr 2025 in cs.ET and cs.AR

Abstract: Time-domain nonvolatile in-memory computing (TD-nvIMC) architectures enhance energy efficiency by reducing data movement and data converter power. This work presents a reconfigurable TD-nvIMC accelerator integrating on-die a ferroelectric FET content-addressable memory array, delay element chain, and time-to-digital converter. Fabricated in 28 nm CMOS, it supports binary MAC operations using XOR/AND for multiplication and Boolean logic. FeFET-based nvIMC with 550 ps step size is empirically demonstrated, almost 2000$\times$ improvement from previous works. Write-disturb prevention and multilevel state (MLS) is demonstrated using isolated bulks. Delay element mismatch is compensated through an on-die MLS calibration for robust operation with a high temporal resolution of 100 ps. The proposed architecture can achieve a throughput of 232 GOPS and energy efficiency of 1887 TOPS/W with a 0.85-V supply, making it a promising candidate for efficient in-memory computing.

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