Training Free Parameter Extraction for Compact Device Models using Sequential Bayesian Optimization with Adaptive Sampling

Citation Author(s):
Om
Maheshwari
Indian Institute of Technology Gandhinagar
Submitted by:
OM MAHESHWARI
Last updated:
Thu, 09/19/2024 - 10:37
DOI:
10.21227/pjc3-qg43
License:
0
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Abstract 

This work presents a computationally efficient approach for extracting compact model parameters with minimal training requirements. Bayesian optimization (BO) is employed in multiple stages to predict the optimum compact model parameters. Through sequential processing, adaptive sampling, successive domain reduction, and fine-tuned objective functions, the framework achieves precise and efficient fitting of both global and local model parameters across a range of devices, all in a reduced number of iterations, irrespective of the compact model used.

Instructions: 

Self Explanatory. Run the code given in the BO_Example.ipynb file