qdrant-search-quality-diagnosis
About
This skill diagnoses search quality issues in Qdrant vector databases, helping developers troubleshoot problems like low recall, irrelevant results, or performance degradation after quantization. It provides methodologies for establishing baselines using exact KNN, comparing approximate HNSW search, and measuring recall@k. Use it when search results degrade unexpectedly or when you need to build a ground truth dataset for quality assessment.
Quick Install
Claude Code
Recommendednpx skills add qdrant/skills -a claude-code/plugin add https://github.com/qdrant/skillsgit clone https://github.com/qdrant/skills.git ~/.claude/skills/qdrant-search-quality-diagnosisCopy and paste this command in Claude Code to install this skill
Documentation
How to Diagnose Bad Search Quality
Before tuning, establish baselines. Use exact KNN as ground truth, compare against approximate HNSW. Target >95% recall@K for production.
Don't Know What's Wrong Yet
Use when: results are irrelevant or missing expected matches and you need to isolate the cause.
- For a no-code quick check, use the Web UI's ANN Recall tab to compare approximate vs exact
recall@kWeb UI ANN Recall - For the same comparison in code (CI gating, regression tests), run each query twice — once approximate, once with
exact=true— and computerecall@kfrom the overlap ANN recall in CI - Exact search bad = model or search pipeline problem. Exact good, approximate bad = tune HNSW.
- Check if quantization degrades quality (compare with and without)
- Check if filters are too restrictive (then you might need to use ACORN)
- If duplicate results from chunked documents, use Grouping API to deduplicate Grouping
Payload filtering and sparse vector search are different things. Metadata (dates, categories, tags) goes in payload for filtering. Text content goes in sparse vectors for search.
Approximate Search Worse Than Exact
Use when: exact search returns good results but HNSW approximation misses them.
- Increase
hnsw_efat query time Search params - Increase
ef_construct(200+ for high quality) HNSW config - Increase
m(16 default, 32 for high recall) HNSW config - Enable oversampling + rescore with quantization Search with quantization
- ACORN for filtered queries (v1.16+) ACORN
Binary quantization requires rescore. Without it, quality loss is severe. Use oversampling (3-5x minimum for binary) to recover recall. Always test quantization impact on your data before production. Quantization
Wrong Embedding Model
Use when: exact search also returns bad results.
Check Qdrant team recommendations on how to choose an embedding model.
Test top 3 MTEB models on 100-1000 sample queries Hosted Qdrant inference. Score them against a labeled set to compare apples to apples Measuring Retrieval Relevance.
Unoptimized Search Pipeline
Use when: exact search also returns bad results and model choice is confirmed by user.
Optimize search according to advanced search-strategies skill.
Need a Labeled Baseline to Score Recall, MRR, or NDCG
Use when: user has no golden set, asks "how do I know if my search is good?", or needs to gate releases on a retrieval metric.
- Build a labeled query set — human, log-based, or LLM-synthetic — and score retrieval with
ranxMeasuring Retrieval Relevance - Pick the metric by usage:
Recall@kfor RAG,MRR/Hits@1for single-answer,NDCG@kfor re-ranking Choosing the metric - For full RAG pipelines, also score generation with Ragas and use the retrieval-vs-generation 2x2 to isolate regressions Pipeline Output Quality
- Gate CI on a per-metric threshold to catch regressions from embedding-model swaps, prompt changes, or index config changes
What NOT to Do
- Tune Qdrant before verifying the model is right for the task (most quality issues are model issues)
- Use binary quantization without rescore (severe quality loss)
- Set
hnsw_eflower than results requested (guaranteed bad recall) - Skip payload indexes on filtered fields then blame quality (HNSW can't traverse filtered-out nodes, and filterable HNSW is built only if payload indexes were set up prior)
- Deploy without baseline recall or other search relevance metrics (no way to measure regressions)
- Confuse payload filtering with sparse vector search (different things, different config)
GitHub Repository
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