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qdrant-scaling-qps

qdrant
更新于 6 days ago
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设计design

关于

This skill provides guidance for scaling Qdrant query throughput (QPS) when developers need to handle more concurrent queries. It covers performance tuning techniques like optimizing segment configuration, enabling quantization, and using batch search APIs. Use it when addressing questions about increasing throughput, handling low queries per second, or implementing read replicas.

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-scaling-qps

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 Throughput (QPS)

Throughput scaling means handling more parallel queries per second. This is different from latency - throughput and latency are opposite tuning directions and cannot be optimized simultaneously on the same node.

High throughput favors fewer, larger segments so each query touches less overhead.

Performance Tuning for Higher RPS

Minimize impact of Update Workloads

  • Configure update throughput control (v1.17+) to prevent unoptimized searches degrading reads Low latency search
  • Set optimizer_cpu_budget to limit indexing CPUs (e.g. 2 on an 8-CPU node reserves 6 for queries)
  • Configure delayed read fan-out (v1.17+) for tail latency Delayed fan-outs

Horizontal Scaling for Throughput

If a single node is saturated on CPU after applying the tuning above, scale horizontally with read replicas.

  • Shard replicas serve queries from replicated shards, distributing read load across nodes
  • Each replica adds independent query capacity without re-sharding
  • Use replication_factor: 2+ and route reads to replicas Distributed deployment

See also Horizontal Scaling for general horizontal scaling guidance.

Disk I/O Bottlenecks

If it is not possible to keep all vectors in RAM, disk I/O can become the bottleneck for throughput. In this case:

  • Upgrade to provisioned IOPS or local NVMe first. See impact of disk performance to vector search in Disk performance article
  • Use io_uring on Linux (kernel 5.11+) io_uring article
  • In case of quantized vectors, prefer global rescoring over per-segment rescoring to reduce disk reads. Example in the tutorial
  • Configure higher number of search threads to parallelize disk reads. Default is cpu_count - 1, which is optimal for RAM-based search but may be too low for disk-based search. See configuration reference
  • If still saturated, scale out horizontally (each node adds independent IOPS)

What NOT to Do

  • Do not expect to optimize throughput and latency simultaneously on the same node
  • Do not use many small segments for throughput workloads (increases per-query overhead)
  • Do not scale horizontally when IOPS-bound without also upgrading disk tier
  • Do not run at >90% RAM (OS cache eviction = severe performance degradation)

GitHub 仓库

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

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