Mohamed Baker Alawieh, Fa Wang, et al.
ISQED 2016
Efficient performance modeling of today's analog and mixed-signal (AMS) circuits is an important yet challenging task. In this paper, we propose a novel performance modeling algorithm that is referred to as Co-Learning Bayesian Model Fusion (CL-BMF). The key idea of CL-BMF is to take advantage of the additional information collected from simulation and/or measurement to reduce the performance modeling cost. Different from the traditional performance modeling approaches which focus on the prior information of model coefficients (i.e. the coefficient side information) only, CL-BMF takes advantage of another new form of prior knowledge: the performance side information. In particular, CL-BMF combines the coefficient side information, the performance side information and a small number of training samples through Bayesian inference based on a graphical model. Two circuit examples designed in a commercial 32nm SOI CMOS process demonstrate that CL-BMF achieves up to 5× speed-up over other state-of-the-art performance modeling techniques without surrendering any accuracy.
Mohamed Baker Alawieh, Fa Wang, et al.
ISQED 2016
Wangyang Zhang, Xin Li, et al.
IEEE TCADIS
Wangyang Zhang, Karthik Balakrishnan, et al.
ICICDT 2012
Xiaochen Liu, Shupeng Sun, et al.
IEEE TCADIS