dograh/api/mcp_server/server.py
Leoy 5762095edf
feat(mcp): add search_docs tool over docs corpus (closes #295) (#316)
* feat(mcp): add search_docs tool over Mintlify docs corpus

Closes #295. The docs at https://docs.dograh.com promise "Search the
Dograh docs for how to configure a TURN server" as an MCP example
prompt, but no search_docs tool exists in the MCP server — agents can
list workspace resources but cannot search the documentation.

This adds a dependency-free, in-process keyword search over the
`docs/` tree shipped into the API image (`COPY ./docs ./docs`):

- New `api/mcp_server/tools/docs_search.py` — async `search_docs(query,
  limit=10)` with weighted scoring (path > title > body), a 25-result
  hard cap, snippet extraction around the first term hit, and graceful
  empty-list degradation when docs aren't on disk. `DOGRAH_DOCS_PATH`
  env var overrides location discovery for non-Docker layouts.

- Registered in `api/mcp_server/server.py` alongside the other tools,
  keeping the existing list-alphabetical convention.

- `api/tests/test_mcp_docs_search.py` — 18 unit tests covering the
  pure helpers (tokenizer, frontmatter stripping, title extraction,
  scoring weights, URL building) and end-to-end ranking, limit
  clamping, empty-corpus degradation, and input-validation errors.
  Mocks `authenticate_mcp_request` to avoid the DB dependency,
  mirroring `test_mcp_save_workflow.py`.

Implementation notes:
- The docs corpus is ~100 files / ~140k LoC, so a per-call scan runs
  well under 50 ms; avoiding a vector index / embedding backend keeps
  the tool zero-dependency and works for fully offline self-hosted
  deployments.
- Authentication is required for consistency with the other MCP tools
  (and to route through the existing rate-limit middleware), even
  though docs are not org-scoped data.
- Title/path matches deliberately outweigh body matches so a page
  whose subject IS the query term outranks one that merely mentions
  it incidentally.

* feat: improve docs search

---------

Co-authored-by: Abhishek Kumar <abhishek@a6k.me>
2026-05-20 18:20:35 +05:30

43 lines
1.2 KiB
Python

from fastmcp import FastMCP
from mcp.types import ToolAnnotations
from api.mcp_server.instructions import DOGRAH_MCP_INSTRUCTIONS
from api.mcp_server.tools.catalog import (
list_credentials,
list_documents,
list_recordings,
list_tools,
)
from api.mcp_server.tools.create_workflow import create_workflow
from api.mcp_server.tools.docs_search import list_docs, read_doc, search_docs
from api.mcp_server.tools.get_workflow_code import get_workflow_code
from api.mcp_server.tools.node_types import get_node_type, list_node_types
from api.mcp_server.tools.save_workflow import save_workflow
from api.mcp_server.tools.workflows import get_workflow, list_workflows
mcp = FastMCP("dograh", instructions=DOGRAH_MCP_INSTRUCTIONS)
for _tool in (
create_workflow,
get_node_type,
get_workflow,
get_workflow_code,
list_credentials,
list_documents,
list_node_types,
list_recordings,
list_tools,
list_workflows,
save_workflow,
):
mcp.tool(_tool)
_DOCS_TOOL_ANNOTATIONS = ToolAnnotations(
readOnlyHint=True,
idempotentHint=True,
destructiveHint=False,
openWorldHint=False,
)
for _tool in (list_docs, read_doc, search_docs):
mcp.tool(_tool, annotations=_DOCS_TOOL_ANNOTATIONS)