Fresh Data and Smart Retrieval: Milvus and Jina CLIP Explained - MLOps Mini Summit 7
Offered By: MLOps.community via YouTube
Course Description
Overview
Explore vector database updates and advanced CLIP models in this 50-minute MLOps Community Mini Summit talk. Learn about maintaining data freshness in high-throughput, low-latency scenarios using Milvus, and discover Jina AI's novel multi-task contrastive training method for improved text retrieval with CLIP models. Gain insights from industry experts on practical solutions for RAG systems, multimodal embedding, and the importance of open-source in advancing AI technologies.
Syllabus
[] Introduction
[] Keeping Data Fresh: Mastering Updates in Vector Databases - Stephen Batifol
[] Stephen's Background
[] Milvus
[] RAG
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Taught by
MLOps.community
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