Dot Product Engine Using Gated Schottky Diode with Quantized Weight

Hardware-based neural networks are expected to be a new computing breakthrough beyond conventional von Neumann architecture because of their low power operations. In this work, we investigate effect of quantized weight level on inference accuracy. Inference accuracy degrades when the number of conductance level decreases from 64 to 2. However, inference engine can be demonstrated easily as the number of quantized level decreases. Furthermore, in ternary weight, neural network becomes resilient to device variation with tuned weight threshold.

[1]  J Joshua Yang,et al.  Memristive devices for computing. , 2013, Nature nanotechnology.

[2]  Qing Wu,et al.  Hardware realization of BSB recall function using memristor crossbar arrays , 2012, DAC Design Automation Conference 2012.

[3]  Antonio Rubio,et al.  Reliability challenges in design of memristive memories , 2014, 2014 5th European Workshop on CMOS Variability (VARI).

[4]  Pat Hanrahan,et al.  Understanding the efficiency of GPU algorithms for matrix-matrix multiplication , 2004, Graphics Hardware.