Realtime Machine Learning on Edge AI Accelerators
Offered By: AI Institute at UofSC - #AIISC via YouTube
Course Description
Overview
Explore the cutting-edge developments in real-time machine learning for edge AI accelerators in this informative 55-minute talk by Dr. Ramtin Zand. Delve into the growing demand for specialized hardware in AI applications, focusing on edge AI accelerators like NVIDIA Jetson Nano, Intel NCS2, and Google TPU. Discover optimization techniques such as neural architecture search (NAS) and system-level innovations for deploying advanced models, including transformers, on these platforms. Learn about recent projects addressing computer vision and natural language processing tasks on edge accelerators through computational graph modifications, partitioning, and operation refactoring. Gain insights from Dr. Zand's extensive research experience in neuromorphic computing, edge computing, processing-in-memory, and AI/ML hardware acceleration, backed by collaborations with major tech companies and recognition from ACM/IEEE.
Syllabus
Realtime Machine Learning on Edge AI Accelerators-Dr. Ramtin Zand
Taught by
AI Institute at UofSC - #AIISC
Related Courses
Machine Learning Modeling Pipelines in ProductionDeepLearning.AI via Coursera MLOps for Scaling TinyML
Harvard University via edX Parameter Prediction for Unseen Deep Architectures - With First Author Boris Knyazev
Yannic Kilcher via YouTube SpineNet - Learning Scale-Permuted Backbone for Recognition and Localization
Yannic Kilcher via YouTube Synthetic Petri Dish - A Novel Surrogate Model for Rapid Architecture Search
Yannic Kilcher via YouTube