Finding the Right Embedding Model for AI Applications Using Sentrev
Qdrant - Vector Database & Search Engine via YouTube
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Overview
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Learn to select optimal embedding models for LLM and RAG projects through a comprehensive video tutorial exploring Sentrev, a Python library designed for embedding model evaluation. Dive into the process of assessing both dense and sparse models across various data formats including PDFs, Word documents, and HTML files. Master the integration capabilities with Qdrant vector database, FastEmbed for sparse embeddings, and Hugging Face's extensive model repository. Explore essential evaluation metrics such as success rate, mean reciprocal rank (MRR), and precision, while gaining insights into tracking carbon emissions in AI development. Gain practical knowledge for making informed decisions about embedding models that balance performance, efficiency, and environmental impact, whether developing personal projects or enterprise-scale applications.
Syllabus
Finding the Right Embedding Model for Your AI Application with Sentrev
Taught by
Qdrant - Vector Database & Search Engine