DuploCloud MCP Server
Exposes DuploCloud infrastructure management as MCP tools by dynamically discovering duploctl commands, enabling AI agents to query state and perform auditable actions.
README
DuploCloud MCP Server
A Model Context Protocol (MCP) server for DuploCloud. Dynamically discovers duploctl commands and exposes them as MCP tools so AI agents and compatible clients can query infrastructure state and perform auditable actions.
Built on FastMCP and the duplocloud-client Python package. Installs as a duploctl plugin — no separate command needed.
Table of Contents
- Features
- Prerequisites
- Installation
- Quick Start
- Configuration
- Tool Modes
- Filtering
- MCP Client Configuration
- Custom Tools and Routes
- Endpoints
- Docker
- Development
- References
Features
- duploctl plugin -- registers as a
duploctlresource via entry points; run withduploctl mcp - Automatic tool discovery -- all
duploctl@Commandmethods are registered as MCP tools at startup - Resource and command filtering -- regex-based filters to control which tools are exposed
- Pydantic model integration -- commands with models get typed input schemas instead of raw dicts
- Config display -- built-in
configtool andGET /configroute showing live server state - Custom tool/route framework --
@custom_tooland@custom_routedecorators with context injection - Dual transport -- stdio (default) or HTTP for persistent servers
Prerequisites
- Python 3.10+
- DuploCloud credentials (
DUPLO_HOST,DUPLO_TOKEN) - A DuploCloud tenant (
DUPLO_TENANT)
Installation
pip install duplocloud-mcp
For pinned version installs and alternative methods (GitHub release artifact, git tag), see the release notes.
For development:
git clone https://github.com/duplocloud/mcp.git
cd mcp
pip install -e ".[test]"
Quick Start
Set your DuploCloud credentials and start the server:
export DUPLO_HOST="https://your-portal.duplocloud.net"
export DUPLO_TOKEN="your-token"
export DUPLO_TENANT="your-tenant"
duploctl mcp
By default the server starts in stdio transport with compact mode (5 tools). To use HTTP:
duploctl mcp --transport http
Verify it's running:
curl http://localhost:8000/health
# {"status":"healthy","service":"duplocloud-mcp"}
curl http://localhost:8000/config
# Full server configuration including registered tools
Configuration
Every setting can be provided as a CLI argument or an environment variable. CLI arguments take precedence.
| Flag | Env Variable | Default | Description |
|---|---|---|---|
-H |
DUPLO_HOST |
-- | DuploCloud portal URL (required) |
-t |
DUPLO_TOKEN |
-- | Authentication token (required) |
-T |
DUPLO_TENANT |
-- | Tenant name (optional but recommended) |
-tp, --transport |
DUPLO_MCP_TRANSPORT |
stdio |
Transport protocol (stdio or http) |
-mp, --port |
DUPLO_MCP_PORT |
8000 |
Port for HTTP transport |
--resource-filter |
DUPLO_MCP_RESOURCE_FILTER |
.* |
Regex filter for resource names |
--command-filter |
DUPLO_MCP_COMMAND_FILTER |
.* |
Regex filter for command names |
--tool-mode |
DUPLO_MCP_TOOL_MODE |
compact |
Tool registration mode (compact or expanded) |
All duploctl global arguments (-H, -t, -T, etc.) are also accepted and passed through to the DuploCloud client. The output flag (-o) is ignored as it does not apply in the MCP context. The query flag (-q) is available per tool call via the execute tool's query parameter.
Tool Modes
The --tool-mode flag controls how duploctl commands are exposed as MCP tools.
Expanded Mode
Registers one tool per resource+command combination, plus the config tool.
duploctl mcp --tool-mode expanded
Produces tools like tenant_create, tenant_find, service_list, etc. Each tool has its own input schema -- commands with Pydantic models (e.g. tenant_create) get full field-level schemas so the LLM sees every field name, type, and constraint.
- Pro: Precise schemas, easy for the LLM to call correctly
- Con: Many tools (potentially hundreds), may overwhelm tool selection
Use --resource-filter and --command-filter with expanded mode to keep the tool count manageable:
duploctl mcp --tool-mode expanded --resource-filter "tenant|service" --command-filter "list|find|create"
Compact Mode
Default. Registers five tools total, inspired by the duploctl bitbucket pipe.
duploctl mcp --tool-mode compact
| Tool | Purpose |
|---|---|
resources |
List available resources (filtered) |
explain_resource |
List commands available on a resource |
explain_command |
Show arguments and body model schema for a specific command |
execute |
Run any duploctl command |
config |
Display current MCP server configuration |
The intended LLM workflow:
resources-- get the list of available resourcesexplain_resource(resource)-- see what commands are availableexplain_command(resource, command)-- see argument details and body schemaexecute(resource, command, ...)-- run the command
The execute tool accepts name, args, body, query, and wait parameters. It dispatches through the same DuploClient path as the CLI, so model validation, filtering, and formatting all work the same way.
- Pro: Only 5 tools, works well with tool-count-limited clients
- Con: LLM needs multiple calls to discover schemas
Filtering
Filters use Python regex with fullmatch semantics -- the entire name must match the pattern.
Resource Filter
Expose only specific resource types:
# Only tenant tools
duploctl mcp --resource-filter "tenant"
# Tenant and service tools
duploctl mcp --resource-filter "tenant|service"
# Everything related to batch
duploctl mcp --resource-filter "batch_.*"
# All resources (default)
duploctl mcp --resource-filter ".*"
Via environment variable:
export DUPLO_MCP_RESOURCE_FILTER="tenant|service|s3"
duploctl mcp
Command Filter
Expose only specific operations across all resources:
# Read-only -- only list and find commands
duploctl mcp --command-filter "list|find"
# Only create and delete
duploctl mcp --command-filter "create|delete"
Combining Filters
Filters compose as an intersection. This exposes only list and find for tenant and service:
duploctl mcp \
--resource-filter "tenant|service" \
--command-filter "list|find"
Result: tenant_list, tenant_find, service_list, service_find.
MCP Client Configuration
stdio Transport (Default)
For most MCP clients (Claude Code, VS Code, etc.), use stdio transport. Add to your .mcp.json (project root) or .vscode/mcp.json:
{
"mcpServers": {
"duploctl": {
"command": "duploctl",
"args": ["mcp"],
"env": {
"DUPLO_HOST": "https://your-portal.duplocloud.net",
"DUPLO_TOKEN": "your-token",
"DUPLO_TENANT": "your-tenant"
}
}
}
}
HTTP Transport
For clients that connect over HTTP (persistent server):
duploctl mcp --transport http
{
"mcpServers": {
"duploctl": {
"url": "http://localhost:8000/mcp",
"type": "http"
}
}
}
With Filters
{
"mcpServers": {
"duploctl": {
"command": "duploctl",
"args": ["mcp", "--resource-filter", "tenant|service"],
"env": {
"DUPLO_HOST": "https://your-portal.duplocloud.net",
"DUPLO_TOKEN": "your-token",
"DUPLO_TENANT": "your-tenant"
}
}
}
}
Custom Tools and Routes
The @custom_tool and @custom_route decorators let you add ad-hoc tools and HTTP routes that receive a Ctx object with the DuploCloud client and server config injected.
from duplocloud.mcp.ctx import Ctx, custom_tool, custom_route
from starlette.requests import Request
from starlette.responses import JSONResponse
# A plain function that does the work
def get_status(ctx: Ctx) -> dict:
tenants = ctx.duplo.load("tenant").list()
return {
"tenant_count": len(tenants),
"tools": ctx.tools,
}
# Expose as an MCP tool
@custom_tool(name="status", description="Get environment status.")
def status_tool(ctx: Ctx) -> dict:
return get_status(ctx)
# Expose the same logic as an HTTP route
@custom_route("/status", methods=["GET"])
async def status_route(ctx: Ctx, request: Request):
return JSONResponse(get_status(ctx))
The ctx parameter is injected automatically and hidden from the tool's input schema -- MCP clients never see it.
Mode Selector
Decorators accept an optional mode parameter to conditionally register based on server mode:
@custom_tool(name="debug_info", mode="debug")
def debug_info(ctx: Ctx) -> dict:
"""Only registered when the server runs in debug mode."""
return {"config": ctx.config}
Endpoints
| Endpoint | Method | Description |
|---|---|---|
/mcp |
POST | MCP protocol endpoint (StreamableHTTP) |
/health |
GET | Health check for load balancers |
/config |
GET | Live server configuration and registered tools |
Docker
The Docker image uses duploctl mcp as its entrypoint with --transport http as the default CMD. Pass arguments at runtime to override:
# Default (http transport, compact mode)
docker run -e DUPLO_HOST=... -e DUPLO_TOKEN=... -e DUPLO_TENANT=... duplocloud-mcp
# stdio transport
docker run -e DUPLO_HOST=... -e DUPLO_TOKEN=... -e DUPLO_TENANT=... duplocloud-mcp --transport stdio
# Expanded mode with filters
docker run -e DUPLO_HOST=... -e DUPLO_TOKEN=... -e DUPLO_TENANT=... duplocloud-mcp \
--tool-mode expanded --resource-filter "tenant|service"
Development
Project Structure
duplocloud/mcp/
__main__.py # Legacy entrypoint (use duploctl mcp instead)
app.py # FastMCP instance and health route
compact_tools.py # Compact mode tools (execute, explain, resources)
config_display.py # Built-in config tool and route
ctx.py # Ctx dataclass, @custom_tool, @custom_route
server.py # DuploCloudMCP resource plugin and lifecycle coordinator
tools.py # ToolRegistrar (duploctl -> MCP tool conversion)
utils.py # Docstring template resolution
tests/
conftest.py # Shared fixtures
test_ctx.py # Ctx, decorators, drain functions
test_custom.py # Context injection, register_custom, build_config
test_filters.py # Regex filter matching behavior
test_modes.py # Expanded and compact mode tests
test_server.py # DuploCloudMCP init, filter application, self-exclusion
test_tools.py # ToolRegistrar param building and wrapper construction
Running Tests
pip install -e ".[test]"
pytest
References
- duploctl -- CLI and Python client for DuploCloud
- Model Context Protocol -- MCP specification
- FastMCP -- Framework powering this server
- Keep a Changelog
- Semantic Versioning
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