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qdrant-minimize-latency

qdrant
更新于 5 days ago
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在 GitHub 上查看
设计aidesign

关于

This skill helps developers optimize Qdrant vector database query latency when facing slow searches or high tail latency. It provides guidance on configuration tuning like increasing segment count and keeping quantized vectors in RAM. Use it when developers ask about reducing latency, improving P99 times, or making searches faster.

快速安装

Claude Code

推荐
主要方式
npx skills add qdrant/skills -a claude-code
插件命令备选方式
/plugin add https://github.com/qdrant/skills
Git 克隆备选方式
git clone https://github.com/qdrant/skills.git ~/.claude/skills/qdrant-minimize-latency

在 Claude Code 中复制并粘贴此命令以安装该技能

技能文档

Scaling for Query Latency

Latency of a single query is determined by the slowest component in the query execution path. It is sometimes correlated with throughput, but not always — throughput and latency are opposite tuning directions.

Low latency optimization is aimed at utilising maximum resource saturation for a single query, while throughput optimization is aimed at minimizing per-query resource usage to allow more parallel queries.

Performance Tuning for Lower Latency

  • Increase segment count to match CPU cores (default_segment_number: 16) Minimizing latency
  • Keep quantized vectors and HNSW in RAM (always_ram=true)
  • Reduce hnsw_ef at query time (trade recall for speed) Search params
  • Use local NVMe, avoid network-attached storage

Memory Pressure and Latency

RAM is the most critical resource for latency. If working set exceeds available RAM, OS cache eviction causes severe, sustained latency degradation.

  • Vertical scale RAM first. Critical if working set >80%.
  • Use quantization: scalar (4x reduction) or binary (16x reduction) Quantization
  • Move payload indexes to disk if filtering is infrequent On-disk payload index
  • Set optimizer_cpu_budget to limit background optimization CPUs
  • Schedule indexing: set high indexing_threshold during peak hours

Vertical Scaling for Latency

More RAM and faster CPU directly reduce latency. See Vertical Scaling for node sizing guidelines.

What NOT to Do

  • Do not expect to optimize latency and throughput simultaneously on the same node
  • Do not use few large segments for latency-sensitive workloads (each segment takes longer to search)
  • Do not run at >90% RAM (cache eviction causes severe latency degradation that can last days)
  • Do not ignore optimizer status during performance debugging
  • Do not scale down RAM without load testing (cache eviction causes days-long latency incidents)

GitHub 仓库

qdrant/skills
路径: skills/qdrant-scaling/minimize-latency
0
agent-skillsai-agentsclaude-codecodexcursorembeddings

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