qdrant-scaling-data-volume
关于
This skill helps developers scale Qdrant vector database storage when data exceeds single-node capacity. It provides guidance on tenant scaling with payload partitioning and sliding time window strategies for time-series data. Use it when facing "data doesn't fit on one node" scenarios or needing to choose between vertical/horizontal scaling approaches.
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-scaling-data-volume在 Claude Code 中复制并粘贴此命令以安装该技能
技能文档
Scaling Data Volume
This document covers data volume scaling scenarios, where the total size of the dataset exceeds the capacity of a single node.
Tenant Scaling
If the use case is multi-tenant, meaning that each user only has access to a subset of the data, and we never need to query across all the data, then we can use multi-tenancy patterns to scale.
The recommended way is to use multi-tenant workloads with payload partitioning, per-tenant indexes, and tiered multitenancy.
Learn more Tenant Scaling
Sliding Time Window
Some use-cases are based on a sliding time window, where only the most recent data is relevant. For example an index for social media posts, where only the last 6 months of data require fast search.
Learn more Sliding Time Window
Global Search
Most general use-cases require global search across all data. In these situations, we might need to fall back to vertical scaling, and then horizontal scaling when we reach the limits of vertical scaling.
Vertical Scaling
When data doesn't fit in a single node, the first approach is to scale the node itself — more RAM, better disk, quantization, mmap. Exhaust vertical options before going horizontal, as horizontal scaling adds permanent operational complexity.
Learn more Vertical Scaling
Horizontal Scaling
When a single node can't hold the data even with quantization and mmap, distribute data across multiple nodes via sharding.
Learn more Horizontal Scaling
GitHub 仓库
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