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YouTube

Information Retrieval and Relevance: Vector Embeddings for Semantic Search

MLOps.community via YouTube

Overview

Explore the transformative power of vector embeddings in information retrieval and semantic search in this 56-minute MLOps podcast episode featuring Daniel Svonava, CEO & Co-founder at Superlinked. Dive into fundamental concepts of vector embeddings, techniques for creating meaningful vector representations, algorithmic approaches for efficient similarity search, and practical strategies for applying these technologies in information retrieval systems. Learn from Svonava's extensive experience, including his work at YouTube Ads and his current role at Superlinked.com, a ML infrastructure startup focused on building information-retrieval heavy systems. Gain insights into the latest advancements in recommender engines and enterprise-focused LLM applications.

Syllabus

Daniel Svonava MLOps Podcast

Taught by

MLOps.community

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