LIGER: Fusing Model Embeddings and Weak Supervision for Improved NLP and Vision Tasks
Offered By: Snorkel AI via YouTube
Course Description
Overview
Explore how merging foundation model embedding spaces with labeling functions based on expert knowledge can significantly enhance NLP and vision tasks. Dive into a discussion between Mayee Chen from Stanford University and Alex Ratner about the LIGER approach, which combines model embeddings and weak supervision techniques. Gain insights into this innovative method and its potential impact on machine learning applications.
Syllabus
Introduction
LIGER
Weak Supervision
Taught by
Snorkel AI
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