Close

Presentation

Interactive Visual Performance Space Exploration of Analog ICs with Neural Network Surrogate Models
DescriptionTo this day, the design of analog integrated circuits is a predominantly manual task, heavily reliant upon the knowledge and intuition of human experts. Many current automation approaches aim to be holistic solutions, attempting to take the human out of the loop. This work, in turn, does not intend to substitute human designers for algorithms, but support their qualities in the established flow. Here, the performance space of analog ICs is modeled by PVT-aware neural networks, and visualized with parallel coordinate plots. This responsive visualization gives insights into the relations of parameters through interactive exploration, where any parameter can be the cause while all others show the immediate effect. Thus, complex decision-making problems based on the experience of seasoned designers, such as topology selection or circuit sizing, are transformed into intuitive perceptual problems. Through the responsiveness and immediacy of the implementation, designers are encouraged to explore the entire performance space, instead of basing all decisions on previous designs, never leaving the beaten path. A data generation and training procedure for surrogate models is outlined. Models for three operational amplifiers in three different technologies illustrate the applicability and feasibility of the presented approach. Additionally, a web-based demo, including the source code, is available for review.
Event Type
Work-in-Progress Poster
TimeTuesday, June 256:00pm - 7:00pm PDT
LocationLevel 2 Lobby
Topics
AI
Autonomous Systems
Cloud
Design
EDA
Embedded Systems
IP
Security