ENEE419D

Topics in Microelectronics; Embedded Machine Learning

Prerequisites: Minimum grade of C- in ENEE303 or ENEE304. An introduction to the design and deployment of machine learning models optimized for edge devices and energy-efficient hardware accelerators. The course covers advanced model reduction techniques, such as quantization and pruning, to streamline complex models for deployment onresource-constrained platforms. Students will gain hands-on experience with Cadence Virtuoso to build circuits and systems that leverage in-memory computing architectures, facilitating efficient computation and reduced energy consumption.

Sister Courses: ENEE419A, ENEE419M, ENEE419R

Fall 2025

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During the Spring 2020 and Spring 2021 semesters, students could choose to take some of their courses pass-fail mid-semester which skews grade data aggregated across multiple semesters.

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