標題: A 41.3pJ/26.7pJ Per Neuron Weight RBM Processor for on-Chip Learning/Inference Applications
作者: Tsai, Chang-Hung
YU, Wan-Jun
Wong, Wing Hung
Lee, Chen-Yi
電子工程學系及電子研究所
Department of Electronics Engineering and Institute of Electronics
關鍵字: restricted Boltzmann machine (RBM);machine learning;non-linear functions;low power design
公開日期: 1-Jan-2016
摘要: A restricted Boltzmann machine (RBM) processor (RBM-P) supporting on-chip learning and inference is proposed for machine learning applications in this paper. Featuring neural network (NN) model reduction for external memory bandwidth saving, low power neuron binarizer (LPNB) with dynamic clock gating and area-efficient NN-like activation function calculators, user-defined connection map (UDCM) for both computation time and bandwidth saving, and early stopping (ES) mechanism in learning process, the proposed system integrates 32 RBM cores with maximal 4k neurons per layer and 128 candidates per sample for machine learning applications. Implemented in 65nm CMOS technology', the proposed RBM-P chip costs 2.2M gates and 128kB SRAM with 8.8mm(2) area. Operated at 1.2V and 210MHz, this chip respectively achieves 114.3x and 3.9x faster processing time than CPU and GPGPU. And the proposed RBM-P chip consumes 41.3pJ and 26.7pJ per neuron weight (NW) for learning and inference, respectively.
URI: http://hdl.handle.net/11536/146556
期刊: 2016 IEEE ASIAN SOLID-STATE CIRCUITS CONFERENCE (A-SSCC)
起始頁: 265
結束頁: 268
Appears in Collections:Conferences Paper