qdrant-scaling
$
npx mdskill add github/awesome-copilot/qdrant-scalingDetermine Qdrant scaling needs by analyzing data volume, throughput, and latency requirements.
- Addresses questions about node count, capacity limits, and cluster performance.
- Relies on internal knowledge base to guide architectural decisions.
- Analyzes stated goals (volume, QPS, latency) to recommend a strategy.
- Provides structured guidance on scaling approaches like sharding and node addition.
SKILL.md
.github/skills/qdrant-scalingView on GitHub ↗
--- name: qdrant-scaling description: "Guides Qdrant scaling decisions. Use when someone asks 'how many nodes do I need', 'data doesn't fit on one node', 'need more throughput', 'cluster is slow', 'too many tenants', 'vertical or horizontal', 'how to shard', or 'need to add capacity'." allowed-tools: - Read - Grep - Glob --- # Qdrant Scaling First determine what you're scaling for: - data volume - query throughput (QPS) - query latency - query volume After determining the scaling goal, we can choose scaling strategy based on tradeoffs and assumptions. Each pulls toward different strategies. Scaling for throughput and latency are opposite tuning directions. ## Scaling Data Volume This becomes relevant when volume of the dataset exceeds the capacity of a single node. Read more about scaling for data volume in [Scaling Data Volume](scaling-data-volume/SKILL.md) ## Scaling for Query Throughput If your system needs to handle more parallel queries than a single node can handle, then you need to scale for query throughput. Read more about scaling for query throughput in [Scaling for Query Throughput](scaling-qps/SKILL.md) ## Scaling for Query Latency Latency of a single query is determined by the slowest component in the query execution path. It is in sometimes correlated with throughput, but not always. It might require different strategies for scaling. Read more about scaling for query latency in [Scaling for Query Latency](minimize-latency/SKILL.md) ## Scaling for Query Volume By query volume we understand the amount of results that a single query returns. If the query volume is too high, it can cause performance issues and increase latency. Tuning for query volume is opposite might require special strategies. Read more about scaling for query volume in [Scaling for Query Volume](scaling-query-volume/SKILL.md)
More from github/awesome-copilot
- acquire-codebase-knowledgeUse this skill when the user explicitly asks to map, document, or onboard into an existing codebase. Trigger for prompts like "map this codebase", "document this architecture", "onboard me to this repo", or "create codebase docs". Do not trigger for routine feature implementation, bug fixes, or narrow code edits unless the user asks for repository-level discovery.
- acreadiness-assessRun the AgentRC readiness assessment on the current repository and produce a static HTML dashboard at reports/index.html. Wraps `npx github:microsoft/agentrc readiness` and hands off rendering to the @ai-readiness-reporter custom agent. Supports policies (--policy) for org-specific scoring. Use when asked to assess, audit, or score the AI readiness of a repo.
- acreadiness-generate-instructionsGenerate tailored AI agent instruction files via AgentRC instructions command. Produces .github/copilot-instructions.md (default, recommended for Copilot in VS Code) plus optional per-area .instructions.md files with applyTo globs for monorepos. Use after running /acreadiness-assess to close gaps in the AI Tooling pillar.
- acreadiness-policyHelp the user pick, write, or apply an AgentRC policy. Policies customise readiness scoring by disabling irrelevant checks, overriding impact/level, setting pass-rate thresholds, or chaining org baselines with team overrides. Use when the user asks about strict mode, AI-only scoring, custom weights, CI gating, or wants org-wide standardisation.
- add-educational-comments'Add educational comments to the file specified, or prompt asking for file to comment if one is not provided.'
- adobe-illustrator-scriptingWrite, debug, and optimize Adobe Illustrator automation scripts using ExtendScript (JavaScript/JSX). Use when creating or modifying scripts that manipulate documents, layers, paths, text frames, colors, symbols, artboards, or any Illustrator DOM objects. Covers the complete JavaScript object model, coordinate system, measurement units, export workflows, and scripting best practices.
- agent-governance|
- agent-owasp-compliance|
- agent-supply-chain|
- agentic-eval|