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A high-performance MCP server for semantic search and codebase indexing using the Qdrant vector database. It features optimized embedding pipelines, AST-aware c
A high-performance MCP server for semantic search and codebase indexing using the Qdrant vector database. It features optimized embedding pipelines, AST-aware chunking, and git metadata enrichment for fast, privacy-focused local or remote search.
Trajectory Enrichment-Aware RAG for Coding Agents
Your coding agent copies the first code it finds — not the right one.
TeaRAGs is an MCP server for code search that enriches every retrieved chunk with git history: authorship, churn, bug-fix rate, ownership. Your agent stops learning from hotspots and starts learning from stable, owned, battle-tested code.
📖 Full documentation · 🏁 15-minute quickstart · 🧠 Core concepts
Every new developer pays in hours. Every fresh agent session pays in tokens. Naming conventions, domain logic, local idioms — all of it has to be rebuilt from scratch, every time.
Confusing names mean the agent reads more files. More files mean more tokens, slower responses, and a higher chance of picking the wrong example. Your codebase's technical debt is now your AI bill.
Standard code search ranks by embedding similarity alone. It doesn't know which function gets bug-fixed every sprint, which module hasn't been touched in two years, or whose name is on the commits. So the agent copies whatever looks similar — including the broken examples.
TeaRAGs gives your agent two things it can't get from vanilla code search.
Retrieved code comes with signals about who wrote it, how stable it is, how often it gets bug-fixed, and how impactful a change would be. Semantic similarity stops being the whole answer — it becomes the floor.
TeaRAGs ships agent skills — ready-made playbooks that tell your agent when and how to use the signals. No prompt engineering required:
explore — orient in an unfamiliar codebasedata-driven-generation — write code backed by stable, owned templatesrisk-assessment — know what you'd break before you break itrefactoring-scan · bug-hunt · pattern-search — and moreInstall the plugin, your agent learns the workflow. See all skills →
Bonus: dinopowers — a companion plugin with 10 wrappers over
superpowers:* skills (Jesse Vincent's
skills library for Claude Code) that inject tea-rags signals into brainstorming,
planning, debugging, TDD, review, and completion flows. Mean eval delta +71pp
across 136 cases.
Learn more →
Your agent writes new code backed by stable, canonical templates — modules
with a low bug-fix rate, long stability, and a clear owner. No more copying from
last sprint's hotspot. Skill: data-driven-generation ·
Why stable code is safer →
Find the 5% of code responsible for 80% of incidents. High churn + high
bug-fix rate + concentrated ownership = your next production issue — and your
next refactoring candidate. Skills: refactoring-scan, bug-hunt
Before modifying a function, the agent checks who depends on it, how often it
breaks, and what its ticket history says. Know the blast radius before you
blast. Skill: risk-assessment ·
Coupling & blast radius theory →
Ask questions instead of reading directory trees. "How does auth work?"
returns the stable, canonical implementation with its history attached — not
a random similar-looking snippet. Skill: explore
flowchart LR
User([👤 You])
subgraph mcp["TeaRAGs MCP Server"]
Agent[🤖 Agent<br/>runs skills]
TeaRAGs[🍵 TeaRAGs<br/>search · enrich · rerank]
Agent <--> TeaRAGs
end
Qdrant[(🗄️ Qdrant<br/>vector DB)]
Embeddings[✨ Embeddings<br/>Ollama/OpenAI]
Codebase[📁 Your Codebase<br/>+ Git History]
User <--> Agent
TeaRAGs <--> Qdrant
TeaRAGs <--> Embeddings
TeaRAGs <--> Codebase
You talk to your agent. The agent runs a TeaRAGs skill. TeaRAGs searches your code, enriches each result with git history, and ranks by what the skill needs — stability, ownership, risk, or pure relevance.
TRAJECTORY_GIT_SQUASH_AWARE_SESSIONS=true) that groups commits by
(author, time gap) so a 20-commit refactor session counts as one. Churn,
bug-fix rate, and ownership stay meaningful even with a single human + an
agent as the only contributors.Not for: repos without git history (no signal to enrich) or teams that only need autocomplete (use Copilot).
Inside Claude Code, install the TeaRAGs plugins and run the setup wizard:
/plugin marketplace add artk0de/TeaRAGs-MCP
/plugin install tea-rags-setup@tea-rags
/tea-rags-setup:install
Then install the skills plugin (Claude-only, final step):
/plugin install tea-rags@tea-rags
Optionally install dinopowers for wrappers over superpowers:* skills:
/plugin install dinopowers@tea-rags
Index your codebase:
/tea-rags:index
Ask your agent anything: "How does auth work in this project?", "Find stable examples of retry logic", "What should I know before touching the payment module?".
For other MCP clients, CI, or air-gapped setups, see the
manual install
(Node + npm install -g tea-rags + Ollama/ONNX/OpenAI/Cohere/Voyage).
| I want to… | Start here |
|---|---|
| Get it running | Quickstart (15 min) — install, index, first query |
| Understand the concept | Core Concepts — vectorization, trajectory enrichment, reranking |
| See what my agent can do | Skills — 6 ready-made agent playbooks for exploration, generation, risk |
| Look under the hood | Architecture — pipelines, data model, reranker internals |
| Learn the theory | Knowledge Base — RAG, code search, software evolution |
See CONTRIBUTING.md for workflow and conventions.
Built on a fork of mhalder/qdrant-mcp-server — clean architecture, solid tests, open-source spirit. And its ancestor qdrant/mcp-server-qdrant. Code vectorization inspired by claude-context (Zilliz).
Feel free to fork this fork. It's forks all the way down. 🐢
Добавь это в claude_desktop_config.json и перезапусти Claude Desktop.
{
"mcpServers": {
"tea-rags-mcp": {
"command": "npx",
"args": []
}
}
}