App Store MCP Server
An open-source MCP server for live Apple App Store competitor research, enabling AI agents to search apps, fetch metadata, compare competitors, and retrieve reviews and top charts as structured JSON.
README
appstore-mcp
<!-- mcp-name: io.github.laurmost/appstore-mcp -->
An open-source MCP server for live Apple App Store competitor research.
It lets AI agents search apps, fetch public App Store metadata, compare competitors side by side, and retrieve reviews and top charts as structured JSON — for market research, ASO research, and product analysis.
It works with public competitor data only. The default, recommended uvx
setup below needs no Apple developer account, no API keys, and no database
(a separate, optional hosted alternative does require an API key — see
Hosted deployment).
Compare Duolingo, Babbel, and Busuu on the US Apple App Store.
Setup
Requires uv. Add to your MCP client config:
{
"mcpServers": {
"appstore": {
"command": "uvx",
"args": ["appstore-mcp"]
}
}
}
- Claude Code:
claude mcp add appstore -- uvx appstore-mcp, or install as a plugin:/plugin marketplace add LaurMost/appstore-mcpthen/plugin install appstore-mcp - Claude Desktop: add the snippet above to
claude_desktop_config.json - Cursor: add the snippet above to
~/.cursor/mcp.json
If your MCP client can't find uvx, use the absolute path from which uvx as
the command.
Hosted deployment
The uvx setup above is still the primary, recommended way to use this
server — it needs no API key. A hosted HTTP instance is also available at
https://appstore-mcp.fastmcp.app/mcp for MCP clients that need a
network-accessible endpoint instead of a local stdio process. It requires an
API key, sent as an Authorization: Bearer <key> header. See
docs/adr/0012-additive-hosted-http-mode.md
for why this is additive rather than a replacement, and the trade-offs
involved.
Tools
| Tool | What it does |
|---|---|
search_app_store |
Search apps by keyword (slim results: id, name, developer, rating, price) |
get_app_store_app |
Full public profile for one app: description, release notes, ratings, versions, screenshots, subtitle, in-app-purchase flag, privacy labels |
compare_app_store_apps |
Batch-fetch several apps (IDs or URLs) side by side in one call |
get_app_store_reviews |
Recent public customer reviews (up to ~500 per storefront) |
digest_app_store_reviews |
Compress up to 500 reviews into a structured digest (themes, complaints, praise, sentiment) via MCP sampling — raw reviews never enter your context, and foreign-language storefronts are digested in English |
get_app_store_screenshots |
An app's screenshots as actual images, so a multimodal model can analyze visual positioning, onboarding, and paywall design |
get_app_store_charts |
Top-free / top-paid / top-grossing charts, overall or per category, per country |
All tools are read-only and take a country storefront parameter (ISO
3166-1 alpha-2, default us). One MCP prompt, compare_competitors, packages
the headline comparison workflow.
Responses are compact and normalized by default; get_app_store_app accepts
include_raw=true when you want Apple's unmodified lookup payload.
Review digestion and MCP sampling
digest_app_store_reviews uses MCP sampling:
the tool asks your client's LLM to compress the reviews, so no API key is
needed. Not all MCP clients support sampling. If yours doesn't, either use
get_app_store_reviews for raw reviews, or enable the server-side fallback:
uvx "appstore-mcp[anthropic]" # + set ANTHROPIC_API_KEY
uvx "appstore-mcp[openai]" # + set OPENAI_API_KEY
Set APPSTORE_MCP_SAMPLING_MODEL to override the fallback model. The digest
is LLM-generated data reduction, not ground truth — quotes may be translated
or paraphrased, and responses say so in meta.warnings.
Data sources and honest limitations
- Primary source: Apple's public iTunes Search/Lookup API.
subtitle,has_iap, andprivacycome from the public App Store web page; reviews and charts come from undocumented Apple feeds. These are best-effort: when they break or return nothing, tools degrade gracefully and say so inmeta.warningsrather than failing or faking data.- Not available from public Apple data, so not provided: download counts, revenue estimates, keyword rankings, full review history, historical charts.
- Apps are listed per-storefront: results, ratings, and reviews differ by
country, and an app can exist in one storefront but not another. - Results are cached in-memory for ~15 minutes;
meta.freshtells you whether a response came from cache.
Development
uv sync --dev
uv run pytest # offline fixture tests
uv run pytest -m live # live smoke tests against real Apple endpoints
uv run mypy
uv run ruff check . # lint
uv run ruff format . # format (Black-compatible style)
fastmcp.json declares how to run the server from source (see
Project Configuration).
Use it to poke at the server directly, without a full MCP client:
fastmcp dev # launch the MCP Inspector against local source (stdio)
fastmcp run # run the server standalone (stdio)
fastmcp dev http.fastmcp.json # same, but over HTTP on localhost:8000
Want a scriptable CLI instead of an MCP client? fastmcp generate-cli
connects to a running server and writes a standalone typed CLI (plus an
agent-ready SKILL.md) with one subcommand per tool - it queries over a
live connection, so a fastmcp.json/stdio target doesn't work here; start
the HTTP variant first, then point it at that:
fastmcp run http.fastmcp.json &
fastmcp generate-cli http://localhost:8000/mcp/ cli.py
The real hosted deployment
(https://appstore-mcp.fastmcp.app/mcp, with an API key — see
Hosted deployment) works as a generate-cli/fastmcp list/fastmcp call target too, if you'd rather point at that than spin up
your own local HTTP server.
This is a local-iteration convenience only — the published package (uvx appstore-mcp) always runs over stdio via its own main() entrypoint,
regardless of what's declared here.
Some tests assert full response shapes via inline-snapshot. After an intentional change to a tool's output shape, regenerate them:
uv run pytest --inline-snapshot=fix,create # then review the diff
Optionally, verify the whole stack through a real MCP client — Claude Code driving the local server over stdio against live Apple:
uv run python scripts/claude_code_integration_test.py
This is a manual, on-demand check, not part of the default dev loop: it
requires a logged-in claude CLI and spends real
Anthropic API tokens per run.
This project is not affiliated with or endorsed by Apple. "App Store" is a trademark of Apple Inc.
License
MIT
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