qdrant-search-speed-optimization
关于
This Claude Skill diagnoses and fixes slow search performance in Qdrant vector databases. It helps developers troubleshoot common issues like high latency, low throughput, and performance degradation after config changes or data growth. The skill provides diagnostic steps for problems like memory pressure, complex queries, and competing background processes.
快速安装
Claude Code
推荐npx 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-speed-optimization在 Claude Code 中复制并粘贴此命令以安装该技能
技能文档
Diagnose a problem
There the multiple possible reasons for search performance degradation. The most common ones are:
- Memory pressure: if the working set exceeds available RAM
- Complex requests (e.g. high
hnsw_ef, complex filters without payload index) - Competing background processes (e.g. optimizer still running after bulk upload)
- Problem with the cluster (e.g. network issues, hardware degradation)
Single Query Too Slow (Latency)
Use when: individual queries take too long regardless of load.
Diagnostic steps:
- Check if second run of the same request is significantly faster (indicates memory pressure)
- Try the same query with
with_payload: falseandwith_vectors: falseto see if payload retrieval is the bottleneck - If request uses filters, try to remove them one by one to identify if a specific filter condition is the bottleneck
Common fixes:
- Tune HNSW parameters: Fine-tuning search
- Enable in-memory quantization: Scalar quantization
- Reduce Vector Dimensionality with Matryoshka Models: Matryoshka Models
- Use oversampling + rescore for high-dimensional vectors Search with quantization
- Enable io_uring for disk-heavy workloads on Linux io_uring
Can't Handle Enough QPS (Throughput)
Use when: system can't serve enough queries per second under load.
- Reduce segment count (
default_segment_numberto 2) Maximizing throughput - Use batch search API instead of single queries Batch search
- Enable quantization to reduce CPU cost Scalar quantization
- Add replicas to distribute read load Replication
Filtered Search Is Slow
Use when: filtered search is significantly slower than unfiltered. Most common SA complaint after memory.
- Create payload index on the filtered field Payload index
- Use
is_tenant=truefor primary filtering condition: Tenant index - Try ACORN algorithm for complex filters: ACORN
- Avoid using
nestedfiltering conditions as a primary filter. It might force qdrant to read raw payload values instead of using index. - If payload index was added after HNSW build, trigger re-index to create filterable subgraph links
Optimize search performance with parallel updates
Diagnostic steps
- Try to run the same query with
indexed_only=trueparameter, if the query is significantly faster, it means that the optimizer is still running and has not yet indexed all segments. - If CPU or IO usage is high even with no queries, it also indicates that the optimizer is still running.
Recommended configuration changes
- reduce
optimizer_cpu_budgetto reserve more CPU for queries - Use
prevent_unoptimized=trueto prevent creating segments with a large amount of unindexed data for searches. Instead, once a segment reaches the so called indexing_threshold, all additional points will be added in ‘deferred state’.
Learn more here
What NOT to Do
- Set
always_ram=falseon quantization (disk thrashing on every search) - Put HNSW on disk for latency-sensitive production (only for cold storage)
- Increase segment count for throughput (opposite: fewer = better)
- Create payload indexes on every field (wastes memory)
- Blame Qdrant before checking optimizer status
GitHub 仓库
相关推荐技能
railway-docs
文档Railway Docs Skill可实时获取最新的Railway官方文档,确保回答的准确性。当开发者询问Railway功能特性、工作原理或分享docs.railway.com链接时,应优先使用此技能。它通过专门的LLM优化文档源提供最新信息,避免依赖过时记忆来回答技术问题。
n8n-code-python
文档该Skill为在n8n平台的Python代码节点中编写代码提供专家指导,特别适用于需要使用_input/_json/_node语法、Python标准库或了解n8n中Python限制的场景。它强调JavaScript应作为首选方案,仅当需要特定Python功能或对Python语法更熟悉时才使用Python。Skill提供了快速入门模板和关键注意事项,帮助开发者在n8n中高效编写Python代码。
archon
文档Archon Skill为开发者提供了基于RAG的语义搜索和项目任务管理功能,可通过REST API访问知识库。它支持文档搜索、网站爬取、文件上传和版本控制,适用于技术文档查询和项目管理场景。首次使用时需要配置Archon主机地址,建议在处理外部文档时优先使用该Skill。
n8n-code-javascript
文档这个Skill为n8n工作流中的JavaScript代码节点提供专业指导,涵盖数据处理、HTTP请求和日期操作等核心场景。它详细解释了如何正确使用n8n特有的`$input`/`$json`语法、`$helpers`工具以及DateTime对象,并包含关键的错误排查和模式选择建议。开发者通过该Skill能快速掌握Code节点的正确返回格式、数据访问方法和常见陷阱解决方案。
