Skip to main content
Glama
JoonHyun814

tft-meta-coach

by JoonHyun814

TFT Meta Coach MCP Server

A stateless, Streamable-HTTP MCP server providing Teamfight Tactics (TFT, 전략적 팀 전투) meta statistics and personal match analysis, built for submission to PlayMCP.

See abstrack.txt for the project pitch, mcp_guide.md for the PlayMCP requirements this server follows, and skills.md for the full tool spec.

Architecture

app/
  api/         # (reserved for future non-MCP HTTP endpoints)
  tools/       # MCP tool implementations + FastMCP registry
  riot/        # Riot API wrapper (account/summoner/league/match/ddragon/patch notes)
  cache/       # Redis client + key schema
  analysis/    # Deck classifier, meta stat aggregation, history/weakness analysis
  models/      # Pydantic domain models
  scheduler/   # Batch jobs (Cloud Run Job entrypoint)
  utils/       # Config, logging, errors
main.py        # FastAPI app; mounts the MCP Streamable HTTP transport

Realtime MCP tool calls only ever read Redis or make lightweight, per-player Riot API calls (profile lookup, match history). Meta statistics (deck tier list, augment stats, item builds, Challenger baseline) are never computed on request — they're produced by the scheduled batch job below and served from Redis.

Related MCP server: MCP Riot Server

Batch pipeline

Cloud Scheduler -> Cloud Run Job (python -m app.scheduler.run_batch)
                 -> tft-league-v1 (Challenger players)
                 -> tft-match-v1 (recent matches, deduped across shared lobbies)
                 -> deck classification + pandas aggregation
                 -> Redis (meta:decks, meta:augments, meta:items, meta:baseline, meta:lastUpdated)

Each key is stored both as the "latest" value and patch-scoped (e.g. meta:decks:14.24), so tools can serve either the current snapshot or a specific past patch.

Deck classification

Riot's match API never returns a deck name — app/analysis/deck_rules.py is a small, declarative rule table (trait-threshold rules + carry-item rules) that deck_classifier.py matches against. To update for a new TFT set, edit deck_rules.py only; the classifier itself has no set-specific logic.

Running locally

cp .env.example .env   # fill in RIOT_API_KEY at minimum
pip install -r requirements.txt
redis-server &          # or point REDIS_URL at an existing instance

# one-off: populate the meta caches
python -m app.scheduler.run_batch

# start the MCP server
uvicorn main:app --reload --port 8080

The Streamable HTTP endpoint is served at http://localhost:8080/mcp (stateless mode — no session negotiation required). GET /healthz is a plain liveness check.

Tests

pytest

Unit tests cover deck classification, meta stat aggregation, history/weakness analysis, and hidden-OP deck recommendation. Integration tests mock the Riot API with respx and Redis with fakeredis, and drive the MCP tool functions end-to-end.

Docker / Cloud Run

docker build -t tft-mcp-server .
docker run -p 8080:8080 --env-file .env tft-mcp-server

The same image serves both roles on Cloud Run:

  • Service (the MCP server): default CMD from the Dockerfile.

  • Job (the batch scheduler): override the container command to python -m app.scheduler.run_batch, triggered on a schedule by Cloud Scheduler.

Known limitations

  • tft_summarize_patch scrapes Riot's public patch notes page with a heuristic buff/nerf classifier (keyword-based <li> parsing) — if Riot changes that page's markup, only this tool's parsing degrades (it returns an empty buff/nerf list with an explanatory meta_impact, rather than failing the whole server).

  • rankFilter currently only supports "challenger", matching what the batch job actually collects (tft-league-v1 Challenger league).

F
license - not found
-
quality - not tested
C
maintenance

Maintenance

Maintainers
Response time
Release cycle
Releases (12mo)
Commit activity

Resources

Unclaimed servers have limited discoverability.

Looking for Admin?

If you are the server author, to access and configure the admin panel.

Latest Blog Posts

MCP directory API

We provide all the information about MCP servers via our MCP API.

curl -X GET 'https://glama.ai/api/mcp/v1/servers/JoonHyun814/mcp-tft-meta-coach'

If you have feedback or need assistance with the MCP directory API, please join our Discord server