A Deep-Learning-Aided Pipeline for Efficient Post-Silicon Tuning

07/01/2022
by   Yiwen Liao, et al.
0

In post-silicon validation, tuning is to find the values for the tuning knobs, potentially as a function of process parameters and/or known operating conditions. In this sense, an more efficient tuning requires identifying the most critical tuning knobs and process parameters in terms of a given figure-of-merit for a Device Under Test (DUT). This is often manually conducted by experienced experts. However, with increasingly complex chips, manual inspection on a large amount of raw variables has become more challenging. In this work, we leverage neural networks to efficiently select the most relevant variables and present a corresponding deep-learning-aided pipeline for efficient tuning.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset