Vector Databases in Practice: Building a Realistic Hybrid Search RAG System with Qdrant
pub.towardsai.net
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🗄️Database Internals
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Vector databases are often introduced as tools for semantic similarity search. In practice, that understanding breaks down the moment you try to build a real RAG system. In this article, I explain what vector databases actually do inside modern retrieval pipelines, why pure semantic search is insufficient, and why hybrid search is not an optimization but a requirement for production systems. You will see why semantic search fails silently, keyword search fails noisily, and why hybrid retrieval is the only reliable compromise. We then build a hybrid-search RAG system step by step using Qdrant as the vector database, focusing on design decisions, trade-offs, and failure cases rather than surface-level APIs. The complete source code and technical references are given at the end of the article…

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