Search, inspect, and run Hugging Face models and datasets from an agent.
Qdrant
Open-source vector search with payload filtering, self-hostable or managed.
Quick answer
What it does
Provides MCP tools for collection creation, point upserts, similarity queries with payload filters, batch operations, and snapshot management.
Best for
- Self-hosted vector search
- Payload-filtered retrieval
- Local development with cloud parity
- Open-source compliance requirements
Not for
- Hands-off ops
- Workloads relying on proprietary vendor features
Setup recipe
Pick your client, then follow the three steps.
- 1
Install
claude_desktop_config.jsonjson{ "mcpServers": { "qdrant": { "command": "uvx", "args": [ "mcp-server-qdrant" ], "env": { "QDRANT_URL": "${QDRANT_URL}", "QDRANT_API_KEY": "${QDRANT_API_KEY}" } } } }Paste under mcpServers. Fully quit and reopen Claude after editing.
CLI or .mcp.jsonshell# export QDRANT_URL=https://your-cluster.qdrant.io # export QDRANT_API_KEY=YOUR_API_KEY claude mcp add qdrant -- uvx mcp-server-qdrantRun from your repo. Commit .mcp.json to share with your team.
.cursor/mcp.jsonjson{ "mcpServers": { "qdrant": { "command": "uvx", "args": [ "mcp-server-qdrant" ], "env": { "QDRANT_URL": "${QDRANT_URL}", "QDRANT_API_KEY": "${QDRANT_API_KEY}" } } } }Global path: ~/.cursor/mcp.json. Reload window after editing.
.vscode/mcp.jsonjsonc{ "servers": { "qdrant": { "command": "uvx", "args": [ "mcp-server-qdrant" ], "env": { "QDRANT_URL": "${QDRANT_URL}", "QDRANT_API_KEY": "${QDRANT_API_KEY}" } } } }VS Code uses the "servers" key (not "mcpServers").
~/.codeium/windsurf/mcp_config.jsonjson{ "mcpServers": { "qdrant": { "command": "uvx", "args": [ "mcp-server-qdrant" ], "env": { "QDRANT_URL": "${QDRANT_URL}", "QDRANT_API_KEY": "${QDRANT_API_KEY}" } } } }Open via Cascade → hammer icon → Configure.
cline_mcp_settings.jsonjson{ "mcpServers": { "qdrant": { "command": "uvx", "args": [ "mcp-server-qdrant" ], "env": { "QDRANT_URL": "${QDRANT_URL}", "QDRANT_API_KEY": "${QDRANT_API_KEY}" } } } }Open via the Cline sidebar → MCP Servers → Edit.
~/.continue/config.jsonjson{ "experimental": { "modelContextProtocolServers": [ { "transport": { "type": "stdio", "command": "uvx", "args": [ "mcp-server-qdrant" ], "env": { "QDRANT_URL": "${QDRANT_URL}", "QDRANT_API_KEY": "${QDRANT_API_KEY}" } } } ] } }Continue uses modelContextProtocolServers with a transport block.
~/.codex/config.tomlshell# ~/.codex/config.toml [mcp_servers.qdrant] command = "uvx" args = [ "mcp-server-qdrant", ] env = { QDRANT_URL = "${QDRANT_URL}", QDRANT_API_KEY = "${QDRANT_API_KEY}" }Codex uses TOML. Each server is a [mcp_servers.<name>] subtable.
~/.config/zed/settings.jsonjsonc{ "context_servers": { "qdrant": { "command": { "path": "uvx", "args": [ "mcp-server-qdrant" ] }, "env": { "QDRANT_URL": "${QDRANT_URL}", "QDRANT_API_KEY": "${QDRANT_API_KEY}" } } } }Zed calls them "context_servers". Settings live-reload on save.
ChatGPT → Apps directorynoneQdrant doesn't ship a hosted HTTPS endpoint today. ChatGPT supports remote MCP servers only — to use this server in ChatGPT you'll need to deploy it to a public HTTPS URL first (e.g. via Cloudflare Workers or Vercel) or wait for an official remote build.
- 2
Set required secrets
Set
QDRANT_URL,QDRANT_API_KEYin your shell environment before launching your MCP client. - 3
Try a minimum working prompt
Minimum working prompt pending verification. Try any prompt from the MCP’s README once installed.
Tools & permissions
Tools list pending verification. The server exposes tools over MCP; we haven’t yet parsed its capability manifest into this page. Check the GitHub repo for the authoritative list.
Security & scope
- Access scope
- Read + write
- Sandbox
- Local mode has no auth by default — protect via network policy. Cloud mode uses API keys.
- Gotchas
- Local default port (6333) is bound to 0.0.0.0 in some Docker setups — bind to localhost explicitly.
- No multi-tenant primitives in OSS — separate by collection.
Agent prompt pack
— copy into Claude, Cursor, or ChatGPT.Recommend the best MCP servers for [task: e.g. ai & machine learning work] in [client: Claude]. Constraints: - Prefer tools that are [official | open-source | read-only] — pick what matters for my use case. - Exclude MCPs that require [e.g. a paid plan, OAuth-only flows, remote-only transport]. - Return at most 3 picks, ranked. For each pick include: 1. One-sentence rationale. 2. The ready-to-paste install snippet for my client. 3. Any required secrets I need to create before installing. Cross-check the top-mcps.com listing: https://top-mcps.com/top-mcps-for-ai-machine-learning
Compare Qdrant MCP vs [Pinecone MCP] for the following job: [describe the job, e.g. "let an agent create GitHub issues on bug triage"]. Judge them on: - Setup time and complexity (what a new user hits first). - Auth model (none / API key / OAuth 2.1) and credential risk. - Transport (stdio / Streamable HTTP / SSE) and where the server runs. - Required secrets and the blast radius if they leak. - Operational risk in an unattended agent loop. - Which one is "good enough" for a weekend prototype vs. production. End with one sentence: which should I pick for my scenario, which is: [my scenario]. References: - https://top-mcps.com/mcp/qdrant - top-mcps.com listing for Pinecone
Install the Qdrant MCP server for my [client: Claude] at the default config path for that client. Use the exact install snippet published at https://top-mcps.com/mcp/qdrant (fetch https://top-mcps.com/mcp/qdrant.json for the canonical server.json if you can read URLs). Before finishing: 1. Create the required secrets (QDRANT_URL, QDRANT_API_KEY) and put them in the appropriate env block — do not hard-code them. 2. Restart or reload the client so it picks up the new server. 3. Verify the server is connected (green / running state) and at least one tool is listed. 4. If anything fails, read the client's MCP logs and report the exact error — do not silently retry. Confirm when done and list the tools the server now exposes.
Frequently asked questions
What changed
— 2 updates tracked.Refreshed install snippets and fact sheet; verified for 2026.
Initial directory listing.
More AI & Machine Learning MCPs
Other tools in the same category worth evaluating.
Hugging Face — official ChatGPT Apps directory listing, verified for 2026.
Compared with Qdrant
Side-by-side breakdowns for the choices people most often weigh against this MCP.
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