Random Server
БесплатноНе проверенAn MCP server that returns random JSON things — people, words, values, coordinates, and an always-empty list.
Описание
An MCP server that returns random JSON things — people, words, values, coordinates, and an always-empty list.
README
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An MCP server that returns random JSON things — people, words, values, coordinates, and an always-empty list. It is a Python / FastMCP adaptation of the Node/Express random-server REST API: each REST route family becomes an MCP tool.
Built with Python, uv, FastMCP, and make.
How the REST API maps to MCP
The REST server seeds a fixed pool of records when it starts and serves them at
/v1/<kind>, /v1/<kind>/count, and /v1/<kind>/:id. This server does the
same, exposing the pool through a small set of tools parameterized by kind
(people, words, values, coords, empty):
| REST route | MCP tool |
|---|---|
GET / |
server_info() |
GET /v1/<kind> |
list_records(kind, count?) |
GET /v1/<kind>/count |
count_records(kind) |
GET /v1/<kind>/:id |
get_record(kind, id) (1-based) |
| (restart to reseed) | regenerate(seed?) — opt-in |
Records are seeded at start-up, so a given id is stable until you call
regenerate. Pass a fixed seed (tool arg or RANDOM_SEED) for reproducible
data.
The regenerate tool is disabled by default — see
The regenerate tool is opt-in.
Differences from random-server
- No
x-api-keyauth. The REST server's optionalAPI_KEYguard on/v1routes is not ported — MCP transports handle authentication differently (add FastMCP auth if a networked deployment needs it). TheAPP_NAME, seeding, and per-kind count behavior are preserved. - No Swagger UI. The
/api-docsexplorer has no MCP equivalent; tool schemas are discoverable through the MCP protocol itself (e.g.make dev).
Example records
// get_record(kind="people", id=1)
{ "type": "people", "prefix": "Mr.", "first": "Augustus", "last": "Gomez",
"age": 42, "birthday": "7/8/1959", "gender": "male", "zip": "74948-0928",
"ssnFour": "0791", "phone": "(509) 504-8066", "email": "[email protected]" }
// get_record(kind="words", id=1) -> { "type": "words", "value": "cezuwdi" }
// get_record(kind="values", id=1) -> { "type": "values", "name": "dafe", "value": -415365907192.2176 }
// get_record(kind="coords", id=1) -> { "type": "coords", "latitude": 88.43647, "longitude": -93.31203 }
Determinism & idempotency of records
Each server process builds one pool of records per kind when it starts, then serves that pool for the life of the process. What stays stable and what changes follows from that:
- Within a running instance, records are idempotent. For as long as the
process is up,
get_record(kind, id)returns the same record, andlist_recordsreturns the same pool in the same order. Ask for person1today and it's identical on the next call — until the pool is rebuilt (below). - A reboot/restart reshuffles — unless you pin a seed. With no
RANDOM_SEEDset, the factory picks a random seed at start-up, so restarting the server (or launching a fresh container) yields a different pool. SetRANDOM_SEEDto a fixed value and every restart rebuilds the same pool, so records survive reboots. - A shared instance shows everyone the same records. The pool lives in the
process's memory, so all clients connected to the same long-running
instance (Option B / C) see the
same records — no seed required for them to agree, because they're reading one
shared pool. Two separate unseeded instances (or two people each running
their own) will not match unless both pin the same
RANDOM_SEED. - Client-launched stdio gets a fresh pool per session. When a client starts
the server itself (local dev
or Docker/stdio, Option A),
each session is its own process with its own start-up seed. Unseeded, those
sessions won't agree with each other; set
RANDOM_SEEDto make them line up. regeneraterebuilds the shared pool for everyone on that instance.regenerate(seed=N)is reproducible (same seed → same pool);regenerate()with no argument picks a new random seed. Either way it mutates the shared state, so on a multi-client instance it changes the records every other connected client sees too. Because of that it is disabled by default (see below).server_inforeports the activeseed. Capture that value and feed it back viaRANDOM_SEED(at start-up) orregenerate(seed=…)to reproduce a pool you liked later.
| Scenario | Same records? |
|---|---|
| Same instance, repeated calls, no restart | ✅ Yes |
| Same long-running instance, different clients | ✅ Yes |
After a restart / new container, no RANDOM_SEED |
❌ No (reshuffled) |
After a restart / new container, fixed RANDOM_SEED |
✅ Yes |
| Two separate unseeded instances | ❌ No |
Two instances, both pinned to the same RANDOM_SEED |
✅ Yes |
After regenerate() (no seed) |
❌ No (reshuffled) |
After regenerate(seed=N) with a seed you used before |
✅ Yes |
The two regenerate rows assume ALLOW_REGENERATE is set; otherwise the tool is
unavailable (opt-in) and only a restart rebuilds
the pool.
The regenerate tool is opt-in
Because regenerate reseeds the one shared pool the whole process serves,
on a multi-user instance a single caller can reshuffle the records out from
under everyone else — no isolation, last-writer-wins. To prevent that, the tool
is disabled by default: when ALLOW_REGENERATE is unset the tool is not
registered at all, so it doesn't appear in the tool list and can't be called
(server_info reports "allow_regenerate": false).
Enable it only where reseeding is safe:
ALLOW_REGENERATE=1 make run # single-user stdio
docker run --rm -p 8000:8000 -e ALLOW_REGENERATE=1 ghcr.io/mitchallen/random-mcp-server:latest
Guidance by deployment shape:
- Shared long-running instance (Option B / C) —
leave it off. Pin
RANDOM_SEEDif you need a specific reproducible pool, and treat the data as read-only. This is why the Docker image (which defaults to shared HTTP) ships withregenerateoff. - Per-session / single-user (client-launched stdio
or local dev) — each
client gets its own process, so reseeding only affects that caller. Safe to set
ALLOW_REGENERATE=1.
Quick start
Requires uv.
make install # create .venv and sync deps
make test # run the test suite
make run # run the server over stdio
make help lists every target.
Running the server
stdio (default — for MCP clients that launch the server)
uv run random-mcp-server
# or
make run
Streamable HTTP (for networked clients / containers)
make run-http # PORT defaults to 8000
PORT=9000 make run-http
Inspect the server
make inspect # print a summary: name, version, tool count
make dev # launch the interactive FastMCP Inspector (web UI)
Configuration
All configuration is via environment variables:
| Variable | Default | Purpose |
|---|---|---|
APP_NAME |
random-mcp-server |
Name reported by server_info |
RANDOM_COUNT |
25 |
Records generated per kind at start-up |
RANDOM_SEED |
(random) | Fixed seed for reproducible pools |
ALLOW_REGENERATE |
(off) | Expose the regenerate tool (see below) |
MCP_TRANSPORT |
stdio |
stdio, http, or sse |
HOST |
127.0.0.1 |
Bind address for http/sse |
PORT |
8000 |
Bind port for http/sse |
ALLOW_REGENERATE accepts 1/true/yes/on (case-insensitive) to enable.
Using with an MCP client — local development (from source)
This section is for developers working from a checkout of this repo. It runs the server straight from your local source via uv, so code changes take effect on the next launch. If you only have the Docker image or a remote deployment, skip to Using a published image or a remote server.
Point a stdio-based client (e.g. Claude Desktop, Claude Code) at the console
script. Example claude_desktop_config.json entry using uv:
{
"mcpServers": {
"random": {
"command": "uv",
"args": ["run", "--directory", "/absolute/path/to/random-mcp-server", "random-mcp-server"]
}
}
}
With Claude Code:
claude mcp add random -- uv run --directory "$PWD" random-mcp-server
Confirm it's connected with claude mcp list (or /mcp inside a session).
Example prompts (Claude Code)
Once the server is added, just ask in plain language — Claude picks the right tool. The tool it invokes is shown in parentheses.
- "Is the random server up? What version is it?" → (
server_info) - "Give me 3 random people." → (
list_recordswithkind="people",count=3) - "Show me the first random person." → (
get_recordwithkind="people",id=1) - "How many random coordinates are available?" → (
count_recordswithkind="coords") - "List all the random words." → (
list_recordswithkind="words") - "Grab 5 random coordinates and drop them on a map." → (
list_recordswithkind="coords",count=5) - "Reseed the random data with seed 42, then show me person 1." → (
regeneratewithseed=42, thenget_record) - "Reshuffle all the random records." → (
regenerate) - "Get random value number 4." → (
get_recordwithkind="values",id=4)
Handy because records are seeded and stable: ask for a person by id, use it to seed a test fixture, and it stays the same until you ask Claude to reseed. Pass a fixed seed (e.g. "reseed with 42") when you need reproducible data.
The two regenerate prompts only work when the server was started with
ALLOW_REGENERATE=1 (the opt-in flag);
otherwise the tool isn't exposed and Claude won't have it to call.
Using a published image or a remote server
This section is for consumers who are not building from source — you have the published Docker image, or someone has deployed the server for you. No Python, uv, or checkout required. Pick the option that matches how the server reaches you.
Option A — Docker image, client launches it (stdio)
The client starts a fresh container per session and talks to it over stdio. Use
-i (keep stdin open) and force the stdio transport, since the image defaults to
HTTP. The image is published to two registries, so pick one:
// GitHub Container Registry (GHCR)
{
"mcpServers": {
"random": {
"command": "docker",
"args": ["run", "-i", "--rm", "-e", "MCP_TRANSPORT=stdio",
"ghcr.io/mitchallen/random-mcp-server:latest"]
}
}
}
// Docker Hub
{
"mcpServers": {
"random": {
"command": "docker",
"args": ["run", "-i", "--rm", "-e", "MCP_TRANSPORT=stdio",
"mitchallen/random-mcp-server:latest"]
}
}
}
Claude Code equivalent — again, pick a registry:
# GitHub Container Registry (GHCR)
claude mcp add random -- docker run -i --rm -e MCP_TRANSPORT=stdio ghcr.io/mitchallen/random-mcp-server:latest
# Docker Hub
claude mcp add random -- docker run -i --rm -e MCP_TRANSPORT=stdio mitchallen/random-mcp-server:latest
(Pin a version like :0.1.3 in place of :latest for a reproducible setup.)
Scope — local (default) vs user. claude mcp add registers the server
in the current project only. Add --scope user (-s user) to register it once
for every project on your machine instead:
# GHCR, available across all your projects
claude mcp add --scope user random -- docker run -i --rm -e MCP_TRANSPORT=stdio ghcr.io/mitchallen/random-mcp-server:latest
# Docker Hub, available across all your projects
claude mcp add --scope user random -- docker run -i --rm -e MCP_TRANSPORT=stdio mitchallen/random-mcp-server:latest
(Scopes are local — this project, the default; project — shared via a
checked-in .mcp.json; and user — all your projects.)
Option B — Long-running container over HTTP (local)
Start the container once (it serves HTTP by default) from either registry, then point an HTTP-capable client at it:
# GitHub Container Registry (GHCR)
docker run -d --rm -p 8000:8000 --name random-mcp ghcr.io/mitchallen/random-mcp-server:latest
# Docker Hub
docker run -d --rm -p 8000:8000 --name random-mcp mitchallen/random-mcp-server:latest
Claude Code (native HTTP transport) — the client connects over HTTP, so the command is the same regardless of which registry you pulled from:
claude mcp add --transport http random http://localhost:8000/mcp
Add --scope user (-s user) to register it for every project on your
machine instead of just the current one:
claude mcp add --scope user --transport http random http://localhost:8000/mcp
For clients that only speak stdio, bridge to the HTTP endpoint with mcp-remote:
{
"mcpServers": {
"random": {
"command": "npx",
"args": ["-y", "mcp-remote", "http://localhost:8000/mcp"]
}
}
}
Option C — Remote deployment (HTTP)
If the server is hosted elsewhere, use its public URL — everything else matches Option B. There's no image to pull here (the host already runs it, from whichever registry they chose), so registry choice doesn't apply on your side:
claude mcp add --transport http random https://random-mcp.example.com/mcp
Add --scope user (-s user) to register it across all your projects:
claude mcp add --scope user --transport http random https://random-mcp.example.com/mcp
{
"mcpServers": {
"random": {
"command": "npx",
"args": ["-y", "mcp-remote", "https://random-mcp.example.com/mcp"]
}
}
}
Notes for remote use:
- Prefer HTTPS so traffic (and any auth headers) are encrypted in transit.
- This server ships no authentication (the REST server's
x-api-keyguard isn't ported). If you expose it beyond localhost, put it behind a reverse proxy, gateway, or network policy that enforces access — or add FastMCP auth. - No built-in rate limiting — by design (see below).
- The endpoint path is
/mcp(no trailing slash). Requesting/mcp/works too but returns a 307 redirect to/mcp, so point clients at/mcpto skip the extra round-trip.
Why there's no built-in rate limiting
FastMCP ships rate-limiting middleware and it would be a few lines to wire in, but this server deliberately doesn't:
- Nothing expensive to protect. Every tool is an in-memory lookup against a pool built once at start-up — no database, external API, or real compute cost. Rate limiting shields scarce resources; this workload has none.
- It only makes sense on the shared HTTP transport. Over stdio each client launches its own process, so throttling your own single-user server is moot.
- Without auth there's no per-client identity to key on. In-memory limiting would fall back to a global limit, which recreates the shared-instance fairness problem (one noisy client starves everyone) rather than solving it. It also wouldn't coordinate across replicas behind a load balancer.
- The edge is the right layer. For a public deployment, enforce rate limits
at the same reverse proxy / gateway that provides auth and TLS (nginx,
Cloudflare, an API gateway) — it coordinates across replicas and can key on
authenticated identity. App-level limiting becomes worthwhile mainly once you
add auth (so
get_client_idis meaningful).
The example prompts above work the same once the server is connected by any of these methods.
Verified client setups
The setups below were exercised against the published image (:0.1.3) with a
real client — connect, initialize, list tools, and call a tool — not just
assumed. Legend: ✅ connected end-to-end · ☑️ server/endpoint proven, that exact
client wiring not run here.
| Setup | Transport | How it was verified | Status |
|---|---|---|---|
| Docker image, client-launched (Option A) | stdio | Piped an MCP initialize into docker run -i -e MCP_TRANSPORT=stdio …; got a valid response reporting v0.1.3. |
✅ |
| Long-running HTTP container (Option B) | HTTP | FastMCP network client against http://localhost:8000/mcp (listed all 5 tools, called get_record/count_records). |
✅ |
| Long-running HTTP container, Claude Code | HTTP | claude mcp add --transport http … → claude mcp list reported ✔ Connected. |
✅ |
| Local dev, console script (from source) | stdio | Server proven through the in-memory FastMCP client and the test suite; the uv run stdio launch is the same entry point. |
☑️ |
| Remote deployment (Option C) | HTTP | Identical to Option B but with a public URL; the HTTP endpoint is proven, a hosted instance was not stood up. | ☑️ |
stdio-only client via mcp-remote bridge |
HTTP (bridged) | Documented from standard mcp-remote usage; not run here. |
☑️ |
Docker
Published multi-platform (linux/amd64, linux/arm64) images are available
from two registries:
- GitHub Container Registry:
ghcr.io/mitchallen/random-mcp-server - Docker Hub:
mitchallen/random-mcp-server
The image runs the server over streamable HTTP by default (MCP_TRANSPORT=http,
HOST=0.0.0.0, PORT=8000) so it's reachable on a published port.
It's built on a distroless Chainguard/Wolfi
Python base — no shell or package manager, runs as a non-root user, and scans
0 known vulnerabilities. Every build is gated by a Trivy scan (fails on
fixable CRITICAL/HIGH) and the published :latest is re-scanned daily; see
CI / Publish.
Pull the image
docker pull ghcr.io/mitchallen/random-mcp-server:latest
# or from Docker Hub
docker pull mitchallen/random-mcp-server:latest
Both registries also publish version tags (e.g. :0.2.4); prefer a pinned
version over :latest for reproducible deployments.
Run the container
docker run --rm -p 8000:8000 --name random-mcp ghcr.io/mitchallen/random-mcp-server:latest
Then connect an HTTP MCP client to http://localhost:8000/mcp.
Test a published release with make
Convenience targets pull and run the published image in your local Docker environment — handy for smoke-testing a release without a local build:
make docker-test # up + smoke + down in one shot (exits non-zero on failure)
make docker-up # pull + run ghcr.io/mitchallen latest, detached
make docker-smoke # MCP `initialize` handshake — passes if the server responds
make docker-logs # follow the container logs
make docker-down # stop it
make docker-up TAG=0.1.1 # pin a version
make docker-up REGISTRY=docker.io/mitchallen # pull from Docker Hub instead
make docker-up HTTP_PORT=9000 # publish on a different host port
Configure at runtime
Pass any of the configuration variables with -e:
docker run --rm -p 9000:9000 \
-e PORT=9000 \
-e APP_NAME=my-random \
-e RANDOM_COUNT=50 \
-e RANDOM_SEED=42 \
ghcr.io/mitchallen/random-mcp-server:latest
To run over stdio inside the container instead (e.g. when another process attaches to it), override the transport:
docker run --rm -i -e MCP_TRANSPORT=stdio ghcr.io/mitchallen/random-mcp-server:latest
Build locally
make docker-build # docker build -t random-mcp-server .
make docker-run # serves http on localhost:8000
CI / Publish
Two GitHub Actions workflows live in .github/workflows/:
test— runs on every push/PR tomain: the unit suite (uv sync --frozenthenpytest --ignore=tests/test_bdd.py).bdd— runs on every push/PR tomainin its own workflow: the pytest-bdd scenarios (pytest tests/test_bdd.py), so they pass or fail and report (and badge) independently of the unit suite.publish— triggered by pushing av*tag. Builds a multi-platform (linux/amd64,linux/arm64) image and pushes it to the GitHub Container Registry asghcr.io/mitchallen/random-mcp-serverwith both the version andlatesttags, then runsmake docker-testagainst the just-published image as a post-publish smoke check (the job fails if the released image doesn't answer an MCPinitialize). It uses the built-inGITHUB_TOKEN, so no extra secrets are needed.publish-dockerhub— also triggered by av*tag. Pushes the same multi-platform image to Docker Hub asmitchallen/random-mcp-server, runs the samemake docker-testpost-publish smoke check against it, and syncs this README to the Docker Hub repo description. Requires two repository secrets and a pre-created Docker Hub repository (see below).
Docker Hub setup
The publish-dockerhub workflow needs:
A Docker Hub repository named
mitchallen/random-mcp-server.Two repository secrets — set them with the GitHub CLI:
gh secret set DOCKERHUB_USERNAME --repo mitchallen/random-mcp-server gh secret set DOCKERHUB_TOKEN --repo mitchallen/random-mcp-server # a Docker Hub access token
Until both secrets exist, the publish-dockerhub job will fail on tag pushes
while the GHCR publish job continues to work on its own.
To cut a release, use the release target — it bumps version in
pyproject.toml (and uv.lock), commits, tags, and pushes, which triggers both
publish workflows:
make release # patch bump (default)
make release BUMP=minor # or minor / major
The target refuses to run unless the working tree is clean and you're on main.
It's equivalent to bumping the version, then git tag vX.Y.Z && git push origin main vX.Y.Z by hand.
Development
- Source:
src/random_mcp_server/generators.py— deterministic, seedable record builders (RandomFactory)server.py— FastMCP tools + entry point (main)
- Tests:
tests/, run withmake test(uv run pytest), driven through an in-memory FastMCP client. Two layers:test_generators.py/test_server.py— plain pytest unit tests.test_bdd.py+tests/features/*.feature— a pytest-bdd layer that mirrors random-server's Cucumber features (Gherkin scenarios for each record kind and the server info check), plus scenarios forget_record(by id, stability, out-of-range),count_records, andregenerate(seed reporting and reproducibility). The/v1/<kind>routes map to thelist_records/get_record/count_recordstools;auth.featureis not mirrored since thex-api-keyguard isn't ported.
make buildproduces a wheel/sdist viauv build.- Dependencies:
uv.lockis committed and the Docker build installs from it with--frozen. Whenever you change dependencies inpyproject.toml, runmake lock(oruv lock) to refresh the lockfile and commit it.
FastMCP integration notes
Two non-obvious adjustments were needed so the FastMCP tooling reports the project correctly:
- Explicit
version.FastMCP(...)is constructed withversion=APP_VERSION(read from the installed package metadata). Without it, FastMCP falls back to reporting its own framework version in the MCPinitializehandshake and inmake inspect/fastmcp inspect— so the server would advertise e.g.3.4.3instead of the package's0.1.2. - Absolute import in
server.py. The module imports its siblings asfrom random_mcp_server.generators import ...rather thanfrom .generators. The FastMCP CLI (make inspect,fastmcp list/call) loadsserver.pyby path rather than as part of the installed package, and a relative import fails that way withattempted relative import with no known parent package. The absolute form loads correctly both by path and as a package module.
License
MIT © Mitch Allen
Установка Random Server
У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.
▸ github.com/mitchallen/random-mcp-serverFAQ
Random Server MCP бесплатный?
Да, Random Server MCP бесплатный — установка в пару кликов через Unyly без оплаты.
Нужен ли API-ключ для Random Server?
Нет, Random Server работает без API-ключей и переменных окружения.
Random Server — hosted или self-hosted?
Self-hosted: сервер запускается локально на твоей машине командой из раздела установки.
Как установить Random Server в Claude Desktop, Claude Code или Cursor?
Открой Random Server на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.
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