Product Quantization for Vector Similarity Search - Python
Offered By: James Briggs via YouTube
Course Description
Overview
Learn about product quantization (PQ) for efficient vector similarity search in this 30-minute video tutorial. Discover how PQ can dramatically compress high-dimensional vectors, reducing memory usage by 97% and improving search speeds by 5.5x. Explore the benefits of composite IVF+PQ indexes for even faster searches without compromising accuracy. Gain practical insights through Python code examples, visualizations, and quantization techniques. Master dimensionality reduction methods and their application in recommendation systems and semantic search engines.
Syllabus
Introduction
Dimensionality Reduction
Product Quantization
Python Code
Coding
Visualizing
Quantizing
Taught by
James Briggs
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