From Small to Tiny: Co-designing ML Models, Computational Precision, and Circuits - Energy-Accuracy Trade-offs
Offered By: tinyML via YouTube
Course Description
Overview
Explore the cutting-edge research on co-designing machine learning models, computational precision, and circuits in the energy-accuracy trade-off space presented by Prof. Marian Verhelst at the tinyML Summit 2019. Delve into circuit-level choices and implications, architecture-level decisions, and algorithm-level precision considerations. Discover parameterized hardware energy/latency/area models and energy-based cross-layer optimization techniques. Learn about the need for flexible systems with cross-layer frameworks and examine cascaded networks for efficient face recognition, keyword, and speaker recognition. Gain insights into the future of embedded Deep Neural Networks in this informative 23-minute conference talk from the MICAS laboratories at KU Leuven's Electrical Engineering Department.
Syllabus
Intro
Circuit level choices
Circuit level implications
Architecture level choices (2)
Algorithm level choices: precision
Algorithm level choices: implications
Parametrized HW energy/latency/area model
Energy-based cross-layer optimization
Needs for flexible systems with cross-layer framework
Cascaded networks for efficient face recognition
Cascaded ML models for efficient keyword & speaker recognit
Towards embedded Deep Neural Networks
Taught by
tinyML
Related Courses
Machine Learning Capstone: An Intelligent Application with Deep LearningUniversity of Washington via Coursera Elaborazione del linguaggio naturale
University of Naples Federico II via Federica Deep Learning for Natural Language Processing
University of Oxford via Independent Deep Learning Summer School
Independent Sequence Models
DeepLearning.AI via Coursera