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Articles

Core Concepts
Mastering Search
Search Quality
Production Ops
Qdrant Internals
Embedding Research
RAG & Agents
Data Exploration
Demos & Tutorials

Articles

Core Concepts
Mastering Search
Search Quality
Production Ops
Qdrant Internals
Embedding Research
RAG & Agents
Data Exploration
Demos & Tutorials
  • Qdrant Articles
  • Search Quality

Search Quality

Learn how to evaluate and improve the quality of your vector search. Explore relevance feedback, evaluation methodologies, and benchmarking techniques.

Preview
Relevance Feedback in Qdrant

The story behind the vector search-native relevance feedback feature, available since 1.17.0, which increases the relevance of search results universally, cheaply, and at scale.

Evgeniya Sukhodolskaya

February 20, 2026

Preview
Relevance Feedback in Informational Retrieval

Relerance feedback: from ancient history to LLMs. Why relevance feedback techniques are good on paper but not popular in neural search, and what we can do about it.

Evgeniya Sukhodolskaya

March 27, 2025

Preview
Optimizing RAG Through an Evaluation-Based Methodology

Learn how Qdrant-powered RAG applications can be tested and iteratively improved using LLM evaluation tools like Quotient.

Atita Arora

June 12, 2024

Preview
Optimizing OpenAI Embeddings: Enhance Efficiency with Qdrant's Binary Quantization

Explore how Qdrant's Binary Quantization can significantly improve the efficiency and performance of OpenAI's Ada-003 embeddings. Learn best practices for real-time search applications.

Nirant Kasliwal

February 21, 2024

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