PIMCA: A Programmable In-Memory Computing Accelerator for Energy-Efficient DNN Inference

This article presents a programmable in-memory computing accelerator (PIMCA) for low-precision (1-2 b) deep neural network (DNN) inference. The custom 10T1C bitcell in the in-memory computing (IMC) macro has four additional transistors and one capacitor to perform capacitive-coupling-based multiply...

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Veröffentlicht in:IEEE journal of solid-state circuits 2023-05, Vol.58 (5), p.1-14
Hauptverfasser: Zhang, Bo, Yin, Shihui, Kim, Minkyu, Saikia, Jyotishman, Kwon, Soonwan, Myung, Sungmeen, Kim, Hyunsoo, Kim, Sang Joon, Seo, Jae-Sun, Seok, Mingoo
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Sprache:eng
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Zusammenfassung:This article presents a programmable in-memory computing accelerator (PIMCA) for low-precision (1-2 b) deep neural network (DNN) inference. The custom 10T1C bitcell in the in-memory computing (IMC) macro has four additional transistors and one capacitor to perform capacitive-coupling-based multiply and accumulation (MAC) in analog-mixed-signal (AMS) domain. A macro containing 256\ttimes 128 bitcells can simultaneously activate all the rows, and as a result, it can perform a matrix-vector multiplication (VMM) in one cycle. PIMCA integrates 108 of such IMC static random-access memory (SRAM) macros with the custom six-stage pipeline and the custom instruction set architecture (ISA) for instruction-level programmability. The results of IMC macros are fed to a single-instruction-multiple-data (SIMD) processor for other computations such as partial sum accumulation, max-pooling, activation functions, etc. To effectively use the IMC and SIMD datapath, we customize the ISA especially by adding hardware loop support, which reduces the program size by up to 73%. The accelerator is prototyped in a 28-nm technology, and integrates a total of 3.4-Mb IMC SRAM and 1.5-Mb off-the-shelf activation SRAM, demonstrating one of the largest IMC accelerators to date. It achieves the system-level energy efficiency of 437 TOPS/W and the peak throughput of 49 TOPS at the 42-MHz clock frequency and 1-V supply for the VGG9 and the ResNet-18 on the CIFAR-10 dataset.
ISSN:0018-9200
1558-173X
DOI:10.1109/JSSC.2022.3211290