Mlbb
FreeNot checkedEnables querying Mobile Legends: Bang Bang hero data including win rates, counters, synergies, and builds via natural language.
About
Enables querying Mobile Legends: Bang Bang hero data including win rates, counters, synergies, and builds via natural language.
README
An MCP server for Mobile Legends: Bang Bang hero data, backed by ridwaanhall/api-mobilelegends. Built as a learning project for personal use, covering MCP server design, LLM tool design, grounded generation with citations, resilient API caching, and LLM-as-judge evals.
100% written by Claude; 100% reviewed by me.
Tools
| Tool | What it answers |
|---|---|
list_heroes |
Browse/search the hero roster; resolve ambiguous names |
get_hero_winrate |
Win/pick/ban rate for a hero at a rank tier and time window |
get_top_heroes |
Top N heroes by win rate, pick rate, or ban rate |
get_hero_counters |
Heroes that reduce a hero's win rate (counters) |
get_hero_synergies |
Heroes that increase a hero's win rate (teammates) |
get_hero_trends |
Day-by-day win/pick/ban rate over N days |
get_hero_build |
Recommended items, spell, and emblem by lane |
get_hero_profile |
Role, lane, specialties, difficulty, skills, lore |
Every stats-returning tool includes a citation block: source, retrieved_at, data_freshness, time_window_days, rank_tier. data_freshness is "fresh" or "stale" — the server serves cached data when upstream is unavailable rather than failing.
Setup
git clone <repo>
cd mlbb-mcp
python3 -m venv .venv
source .venv/bin/activate
pip install -e ".[dev]"
Copy .env.example to .env and fill in your keys (only needed for evals, not for the MCP server or CLI):
cp .env.example .env
# ANTHROPIC_API_KEY — required for both eval scripts
# OPENAI_API_KEY — required for evals/comprehensive_evals.py (GPT judge) only
Run
CLI (no MCP server needed, useful for testing):
python cli.py heroes # list all heroes
python cli.py resolve lancelot # resolve a name or ID
python cli.py resolve 47 # by numeric ID
MCP server (for Claude Desktop):
python server.py
Add to ~/Library/Application Support/Claude/claude_desktop_config.json:
{
"mcpServers": {
"mlbb": {
"command": "/absolute/path/to/.venv/bin/python",
"args": ["/absolute/path/to/server.py"]
}
}
}
Then restart Claude Desktop.
Tests
Unit and integration tests (no network, no API key):
pytest tests/ -v
The stale-cache tests cover every failure mode — network error, timeout, HTTP 5xx, non-JSON 200 (CDN error page), error envelopes, 4xx behaviour, cache poison guard, and recovery.
Evals
LLM behavior evals — separate from unit tests. They make real API calls and cost money, so run them intentionally rather than in CI. Both require ANTHROPIC_API_KEY (and OPENAI_API_KEY for the comprehensive suite) in .env.
evals/run_evals.py — focused behavioural checks
Two targeted evals that pre-inject tool results and grade the final response:
python evals/run_evals.py # both
python evals/run_evals.py citation # citation correctness only
python evals/run_evals.py fabrication # fabrication refusal only
- citation_correctness — injects a real live tool result; checks Claude's response includes rank tier, time window, percentage, and source.
- fabrication_refusal — injects a
ToolError; checks Claude refuses to invent stats rather than making something up.
evals/comprehensive_evals.py — full tool-selection + quality suite
33 questions across all 8 tools. Claude actually calls tools with real parameters; GPT grades each trace on tool selection, citation quality, and fabrication.
python evals/comprehensive_evals.py # all 33, Haiku answerer (~$0.10, ~2 min)
python evals/comprehensive_evals.py --sonnet # all 33, Sonnet answerer (~$1–2, ~5 min)
python evals/comprehensive_evals.py 5 # first 5 only (smoke test)
python evals/comprehensive_evals.py 5 build # first 5, filter by category
Use Haiku by default during development; switch to --sonnet when you want to measure Sonnet's behaviour specifically. The judge is always gpt-4o-mini — the grading task is mechanical enough that a frontier judge model isn't needed.
Attribution
Game data © Moonton. API by ridwaanhall, hosted at mlbb.rone.dev.
Installing Mlbb
This server has no published package — it is built from source. Open the repository and follow its README.
▸ github.com/cebarrett/mlbb-mcpFAQ
Is Mlbb MCP free?
Yes, Mlbb MCP is free — one-click install via Unyly at no cost.
Does Mlbb need an API key?
No, Mlbb runs without API keys or environment variables.
Is Mlbb hosted or self-hosted?
A hosted option is available: Unyly runs the server in the cloud, no local setup required.
How do I install Mlbb in Claude Desktop, Claude Code or Cursor?
Open Mlbb on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.
Related MCPs
GitHub
PRs, issues, code search, CI status
by GitHubFilesystem
Secure file operations with configurable access controls.
Memory
Knowledge graph-based persistent memory system.
Template MCP Server
A CLI tool to create a new Model Context Protocol server project with TypeScript support, dual transport options, and an extensible structure
by mcpdotdirectCompare Mlbb with
Not sure what to pick?
Find your stack in 60 seconds
Author?
Embed badge for your README
Browse similar
All development MCPs
