About
This skill provides real-time troubleshooting and guidance for Qdrant vector database deployments by fetching the latest official documentation. It covers performance issues, scaling decisions, client SDKs, and operational monitoring, ensuring answers are current and authoritative. Always use it for Qdrant-related questions instead of relying on static knowledge.
Quick Install
Claude Code
Recommendednpx skills add qdrant/skills -a claude-code/plugin add https://github.com/qdrant/skillsgit clone https://github.com/qdrant/skills.git ~/.claude/skills/qdrant-advisorCopy and paste this command in Claude Code to install this skill
Documentation
Qdrant Troubleshooting & Advisory
Core principle
Do not answer Qdrant questions from memory. Qdrant evolves quickly (new endpoints, metrics, defaults, and deployment patterns land often), and the authoritative, current guidance lives at skills.qdrant.tech as a hierarchy of agent skills. Your job is to load the relevant skill context live, then ground your diagnosis in it — loading only the branch that matches the problem, never the whole tree.
You are consuming these skills as context. You are not installing them and nothing needs to be installed.
The knowledge source
- Search:
https://skills.qdrant.tech/search?query=your+query+here - The structure is hierarchical: top-level skill
SKILL.md→ sub-skillSKILL.md→ linked documentation pages. Each level narrows scope. Traverse it depth-first, following only the branch(es) that match the symptom.
Workflow
1. Frame the problem
Pull out the concrete details before fetching anything:
- The symptom(s) in the user's words (e.g. "memory keeps climbing", "queries got slow after a bulk upload", "results are irrelevant").
- The deployment type (local, Docker, self-hosted, Cloud, embedded) and version, if known.
- What changed recently (upgrade, new index, traffic spike, model swap).
Turn these into 1–3 short search phrases.
2. Find the right skill(s)
Use Search (fastest path to the right skill). Fetch https://skills.qdrant.tech/search?query=<your query>, substituting your phrase for your+query+here (encode spaces as + or %20). It returns the single most relevant top-level skill's SKILL.md. Run it more than once for multi-part problems (e.g. one search for the memory symptom, one for the scaling question).
3. Traverse the hierarchy (deep and lateral)
Each SKILL.md you load names its sub-skills (and often related skills and docs) as links. The hierarchy is not just two levels — a skill can nest several layers deep, and skills also reference each other laterally. Follow the links, not a fixed depth.
Descend (go deeper). A SKILL.md is not necessarily a leaf just because you fetched it. If its sections themselves point to further SKILL.md files, keep descending along the branch that matches the symptom — top-level → sub-skill → sub-sub-skill → … — until you reach a level whose guidance is concrete enough to act on (ordered diagnostic steps, exact endpoints/metrics, an explicit "what NOT to do" list). Don't stop early at an intermediate skill that only routes you onward.
Move laterally (go sideways). Real problems often span areas. Follow a link to a sibling or related skill when:
- the current skill explicitly points to another (e.g. a debugging skill that says "if this is actually a capacity problem, see scaling"),
- the symptom has more than one plausible cause living under different top-level skills (e.g. slow queries could be a monitoring/optimizer issue or a performance-optimization issue or a scaling issue), or
- you ran multiple searches in step 2 and they surfaced different skills, each covering part of the problem.
Load each relevant branch, then reconcile what they say in step 4.
Stay disciplined about relevance. Going deep and going sideways is encouraged when the problem warrants it — but still load only branches that bear on the symptom. Don't sweep in unrelated siblings, and stop expanding once you can give a complete, grounded answer. The goal is "all the relevant context and nothing else," not "the whole tree."
Documentation pages. Skills link out to canonical docs (e.g. …/md/documentation/…, qdrant.tech/documentation/…, or qdrant.tech/articles/…). Fetch these links exactly as the SKILL.md provides them — they render as clean markdown natively. Pull a doc page only when you need detail a SKILL.md references but does not itself contain.
4. Diagnose and advise
Synthesize an answer strictly from the loaded context:
- State the most likely cause(s) in priority order — the skills often tell you what to check first (e.g. "check optimizer status before blaming search latency"); preserve that ordering.
- Give concrete, ordered steps: the endpoints to hit, the metrics to read and their thresholds, the config to change.
- Surface the skill's "what NOT to do" warnings explicitly — they prevent common self-inflicted damage.
- Cite the canonical Qdrant doc URLs you relied on so the user can go deeper.
- If the loaded context does not cover the case, say so plainly and either run a different search or fall back to the catalog — do not paper over the gap with remembered guesses.
Operating notes
- Always fetch fresh every session. Never reuse a previously cached copy of a skill; the registry updates and staleness is exactly what this approach avoids.
- Do not install anything. You are loading context only.
- Fetching: every URL you need is either in this skill (root index, search base) or surfaced by a page you already fetched (links inside a
SKILL.mdor the root index), so each is fetchable as-is. If a constructed search-query URL is ever rejected, fall back to fetching the root index and navigate from its absolute links.
Example Workflow
- Symptom: "Our Qdrant node's RAM keeps climbing and it OOM-killed last night. Nothing obvious changed."
- Search: skills.qdrant.tech/search?query=qdrant+memory+growing+OOM
- Follow any sub-skill link on memory or debugging that the returned page names.
- Hop laterally to the scaling skill it references, if capacity is a plausible alternative cause.
- Synthesize from what you loaded; cite the doc URLs. If nothing loaded covers the case, say so; don't fill from memory.
GitHub Repository
Frequently asked questions
What is the qdrant-advisor skill?
qdrant-advisor is a Claude Skill by qdrant. Skills package instructions and resources that Claude loads on demand, so Claude can perform qdrant-advisor-related tasks without extra prompting.
How do I install qdrant-advisor?
Use the install commands on this page: add qdrant-advisor to Claude Code as a plugin, or clone its repository into your skills directory, then restart Claude so it picks up the skill.
What category does qdrant-advisor belong to?
qdrant-advisor is in the Meta category, tagged ai, testing and design.
Is qdrant-advisor free to use?
Yes. qdrant-advisor is listed on AIMCP and free to install. It runs inside Claude, so no separate service account is required to use the skill itself.
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