72232f937a
Replace asyncio.Queue with anyio.create_memory_object_stream() throughout
the vector sync system for better library consistency and improved shutdown
semantics.
## Changes Made
**scanner.py**:
- Changed parameter type from `asyncio.Queue` to `MemoryObjectSendStream[DocumentTask]`
- Replaced all `await document_queue.put()` calls with `await send_stream.send()`
- Wrapped scanner loop in `async with send_stream:` context manager for automatic cleanup
- Updated log messages: "Queued" → "Sent"
- Removed `import asyncio` (no longer needed)
**processor.py**:
- Changed parameter type from `asyncio.Queue` to `MemoryObjectReceiveStream[DocumentTask]`
- Replaced `asyncio.wait_for(document_queue.get(), timeout=1.0)` with `anyio.fail_after(1.0)` + `await receive_stream.receive()`
- Removed all `document_queue.task_done()` calls (not needed with streams)
- Added `anyio.EndOfStream` exception handling for graceful shutdown when scanner closes
- Removed `import asyncio` (no longer needed)
**app.py**:
- Removed `import asyncio` from top-level imports
- Added `from anyio.streams.memory import MemoryObjectReceiveStream, MemoryObjectSendStream`
- Updated AppContext dataclass:
- Replaced `document_queue: Optional[asyncio.Queue]` with:
- `document_send_stream: Optional[MemoryObjectSendStream]`
- `document_receive_stream: Optional[MemoryObjectReceiveStream]`
- Updated `app_lifespan_basic()`:
- Replaced `asyncio.Queue(maxsize=...)` with `anyio.create_memory_object_stream(max_buffer_size=...)`
- Pass `send_stream` to scanner_task
- Pass `receive_stream.clone()` to each processor_task (enables multiple consumers)
- Updated AppContext yield to include both streams
- Updated `starlette_lifespan()`:
- Same changes as app_lifespan_basic for streamable-http transport
- Removed `import asyncio as asyncio_module` (no longer needed)
- Updated app.state storage to use send_stream and receive_stream
**semantic.py**:
- Updated `nc_get_vector_sync_status()` tool:
- Access `document_receive_stream` instead of `document_queue` from lifespan context
- Use `stream_stats.current_buffer_used` instead of `queue.qsize()` for pending count
- More reliable metrics (qsize() was not guaranteed accurate)
## Benefits
1. **Library Consistency**: Pure anyio throughout codebase (was mixing asyncio.Queue with anyio.Event and anyio.create_task_group)
2. **Graceful Shutdown**: `async with send_stream:` automatically closes stream on exit, signaling EndOfStream to all processors
3. **Better Timeout Handling**: `anyio.fail_after()` is more idiomatic than `asyncio.wait_for()`
4. **Stream Cloning**: Easy to add multiple consumers via `receive_stream.clone()`
5. **Better Statistics**: `.statistics()` provides accurate buffer metrics (qsize() was unreliable)
6. **Type Safety**: Separate send/receive types prevent accidental misuse
7. **No task_done() tracking**: Streams handle completion automatically
## Testing
- ✅ All 69 unit tests passing
- ✅ All 5 smoke tests passing
- ✅ No regressions in functionality
- ✅ Graceful shutdown behavior improved
## References
- https://anyio.readthedocs.io/en/stable/why.html#queue-fix
- https://anyio.readthedocs.io/en/stable/streams.html#memory-object-streams
🤖 Generated with [Claude Code](https://claude.com/claude-code)
Co-Authored-By: Claude <noreply@anthropic.com>
442 lines
17 KiB
Python
442 lines
17 KiB
Python
"""Semantic search MCP tools using vector database."""
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import logging
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from httpx import HTTPStatusError, RequestError
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from mcp.server.fastmcp import Context, FastMCP
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from mcp.shared.exceptions import McpError
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from mcp.types import (
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ErrorData,
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ModelHint,
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ModelPreferences,
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SamplingMessage,
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TextContent,
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)
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from nextcloud_mcp_server.auth import require_scopes
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from nextcloud_mcp_server.context import get_client
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from nextcloud_mcp_server.models.semantic import (
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SamplingSearchResponse,
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SemanticSearchResponse,
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SemanticSearchResult,
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VectorSyncStatusResponse,
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)
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logger = logging.getLogger(__name__)
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def configure_semantic_tools(mcp: FastMCP):
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"""Configure semantic search tools for MCP server."""
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@mcp.tool()
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@require_scopes("semantic:read")
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async def nc_semantic_search(
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query: str, ctx: Context, limit: int = 10, score_threshold: float = 0.7
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) -> SemanticSearchResponse:
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"""
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Semantic search across all indexed Nextcloud apps using vector embeddings.
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Searches documents by meaning rather than exact keywords across notes, calendar
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events, deck cards, files, and contacts. Requires vector database synchronization
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to be enabled (VECTOR_SYNC_ENABLED=true).
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Args:
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query: Natural language search query
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limit: Maximum number of results to return (default: 10)
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score_threshold: Minimum similarity score (0-1, default: 0.7)
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Returns:
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SemanticSearchResponse with matching documents and similarity scores
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"""
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from qdrant_client.models import FieldCondition, Filter, MatchValue
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from nextcloud_mcp_server.config import get_settings
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from nextcloud_mcp_server.embedding import get_embedding_service
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from nextcloud_mcp_server.vector.qdrant_client import get_qdrant_client
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settings = get_settings()
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# Check if vector sync is enabled
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if not settings.vector_sync_enabled:
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raise McpError(
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ErrorData(
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code=-1,
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message="Semantic search is not enabled. Set VECTOR_SYNC_ENABLED=true and ensure vector database is configured.",
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)
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)
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client = await get_client(ctx)
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username = client.username
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try:
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# Generate embedding for query
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embedding_service = get_embedding_service()
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query_embedding = await embedding_service.embed(query)
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# Search Qdrant with user filtering
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# Note: Currently only searching notes (doc_type="note")
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# Future: Remove doc_type filter to search all apps
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qdrant_client = await get_qdrant_client()
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search_response = await qdrant_client.query_points(
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collection_name=settings.qdrant_collection,
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query=query_embedding,
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query_filter=Filter(
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must=[
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FieldCondition(
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key="user_id",
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match=MatchValue(value=username),
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),
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FieldCondition(
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key="doc_type",
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match=MatchValue(value="note"),
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),
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]
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),
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limit=limit * 2, # Get extra for filtering
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score_threshold=score_threshold,
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with_payload=True,
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with_vectors=False, # Don't return vectors to save bandwidth
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)
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# Deduplicate by document ID (multiple chunks per document)
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seen_doc_ids = set()
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results = []
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for result in search_response.points:
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doc_id = int(result.payload["doc_id"])
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doc_type = result.payload.get("doc_type", "note")
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# Skip if we've already seen this document
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if doc_id in seen_doc_ids:
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continue
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seen_doc_ids.add(doc_id)
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# Verify access via Nextcloud API (dual-phase authorization)
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# Currently only supports notes, will be extended to other apps
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if doc_type == "note":
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try:
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note = await client.notes.get_note(doc_id)
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results.append(
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SemanticSearchResult(
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id=doc_id,
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doc_type="note",
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title=result.payload["title"],
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category=note.get("category", ""),
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excerpt=result.payload["excerpt"],
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score=result.score,
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chunk_index=result.payload["chunk_index"],
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total_chunks=result.payload["total_chunks"],
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)
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)
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if len(results) >= limit:
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break
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except HTTPStatusError as e:
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if e.response.status_code == 403:
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# User lost access, skip this document
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continue
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elif e.response.status_code == 404:
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# Document was deleted but not yet removed from vector DB
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continue
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else:
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# Log other errors but continue processing
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logger.warning(
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f"Error verifying access to note {doc_id}: {e.response.status_code}"
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)
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continue
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return SemanticSearchResponse(
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results=results,
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query=query,
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total_found=len(results),
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search_method="semantic",
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)
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except ValueError as e:
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if "No embedding provider configured" in str(e):
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raise McpError(
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ErrorData(
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code=-1,
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message="Embedding service not configured. Set OLLAMA_BASE_URL environment variable.",
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)
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)
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raise McpError(ErrorData(code=-1, message=f"Configuration error: {str(e)}"))
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except RequestError as e:
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raise McpError(
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ErrorData(code=-1, message=f"Network error during search: {str(e)}")
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)
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except Exception as e:
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logger.error(f"Semantic search error: {e}", exc_info=True)
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raise McpError(
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ErrorData(code=-1, message=f"Semantic search failed: {str(e)}")
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)
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@mcp.tool()
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@require_scopes("semantic:read")
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async def nc_semantic_search_answer(
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query: str,
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ctx: Context,
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limit: int = 5,
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score_threshold: float = 0.7,
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max_answer_tokens: int = 500,
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) -> SamplingSearchResponse:
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"""
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Semantic search with LLM-generated answer using MCP sampling.
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Retrieves relevant documents from indexed Nextcloud apps (notes, calendar, deck,
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files, contacts) using vector similarity search, then uses MCP sampling to request
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the client's LLM to generate a natural language answer based on the retrieved context.
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This tool combines the power of semantic search (finding relevant content across
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all your Nextcloud apps) with LLM generation (synthesizing that content into
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coherent answers). The generated answer includes citations to specific documents
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with their types, allowing users to verify claims and explore sources.
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The LLM generation happens client-side via MCP sampling. The MCP client
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controls which model is used, who pays for it, and whether to prompt the
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user for approval. This keeps the server simple (no LLM API keys needed)
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while giving users full control over their LLM interactions.
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Args:
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query: Natural language question to answer (e.g., "What are my Q1 objectives?" or "When is my next dentist appointment?")
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ctx: MCP context for session access
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limit: Maximum number of documents to retrieve (default: 5)
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score_threshold: Minimum similarity score 0-1 (default: 0.7)
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max_answer_tokens: Maximum tokens for generated answer (default: 500)
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Returns:
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SamplingSearchResponse containing:
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- generated_answer: Natural language answer with citations
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- sources: List of documents with excerpts and relevance scores
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- model_used: Which model generated the answer
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- stop_reason: Why generation stopped
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Note: Requires MCP client to support sampling. If sampling is unavailable,
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the tool gracefully degrades to returning documents with an explanation.
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The client may prompt the user to approve the sampling request.
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Examples:
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>>> # Query about objectives across multiple apps
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>>> result = await nc_semantic_search_answer(
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... query="What are my Q1 2025 project goals?",
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... ctx=ctx
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... )
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>>> print(result.generated_answer)
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"Based on Document 1 (note: Project Kickoff), Document 2 (calendar event:
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Q1 Planning Meeting), and Document 3 (deck card: Implement semantic search),
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your main goals are: 1) Improve semantic search accuracy by 20%,
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2) Deploy new embedding model, 3) Reduce indexing latency..."
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>>> # Query about appointments
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>>> result = await nc_semantic_search_answer(
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... query="When is my next dentist appointment?",
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... ctx=ctx,
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... limit=10
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... )
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>>> len(result.sources) # Calendar events and related notes
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3
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"""
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# 1. Retrieve relevant documents via existing semantic search
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search_response = await nc_semantic_search(
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query=query,
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ctx=ctx,
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limit=limit,
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score_threshold=score_threshold,
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)
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# 2. Handle no results case - don't waste a sampling call
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if not search_response.results:
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logger.debug(f"No documents found for query: {query}")
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return SamplingSearchResponse(
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query=query,
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generated_answer="No relevant documents found in your Nextcloud content for this query.",
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sources=[],
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total_found=0,
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search_method="semantic_sampling",
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success=True,
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)
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# 3. Construct context from retrieved documents
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context_parts = []
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for idx, result in enumerate(search_response.results, 1):
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context_parts.append(
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f"[Document {idx}]\n"
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f"Type: {result.doc_type}\n"
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f"Title: {result.title}\n"
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f"Category: {result.category}\n"
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f"Excerpt: {result.excerpt}\n"
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f"Relevance Score: {result.score:.2f}\n"
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)
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context = "\n".join(context_parts)
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# 4. Construct prompt - reuse user's query, add context and instructions
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prompt = (
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f"{query}\n\n"
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f"Here are relevant documents from Nextcloud (notes, calendar events, deck cards, files, contacts):\n\n"
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f"{context}\n\n"
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f"Based on the documents above, please provide a comprehensive answer. "
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f"Cite the document numbers when referencing specific information."
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)
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logger.debug(
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f"Requesting sampling for query: {query} "
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f"({len(search_response.results)} documents retrieved)"
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)
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# 5. Request LLM completion via MCP sampling
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try:
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sampling_result = await ctx.session.create_message(
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messages=[
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SamplingMessage(
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role="user",
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content=TextContent(type="text", text=prompt),
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)
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],
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max_tokens=max_answer_tokens,
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temperature=0.7,
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model_preferences=ModelPreferences(
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hints=[ModelHint(name="claude-3-5-sonnet")],
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intelligencePriority=0.8,
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speedPriority=0.5,
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),
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include_context="thisServer",
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)
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# 6. Extract answer from sampling response
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if sampling_result.content.type == "text":
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generated_answer = sampling_result.content.text
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else:
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# Handle non-text responses (shouldn't happen for text prompts)
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generated_answer = f"Received non-text response of type: {sampling_result.content.type}"
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logger.warning(
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f"Unexpected content type from sampling: {sampling_result.content.type}"
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)
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logger.info(
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f"Sampling successful: model={sampling_result.model}, "
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f"stop_reason={sampling_result.stopReason}"
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)
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return SamplingSearchResponse(
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query=query,
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generated_answer=generated_answer,
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sources=search_response.results,
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total_found=search_response.total_found,
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search_method="semantic_sampling",
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model_used=sampling_result.model,
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stop_reason=sampling_result.stopReason,
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success=True,
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)
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except Exception as e:
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# Fallback: Return documents without generated answer
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logger.warning(
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f"Sampling failed ({type(e).__name__}: {e}), "
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f"returning search results only"
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)
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return SamplingSearchResponse(
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query=query,
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generated_answer=(
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f"[Sampling unavailable: {str(e)}]\n\n"
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f"Found {search_response.total_found} relevant documents. "
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f"Please review the sources below."
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),
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sources=search_response.results,
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total_found=search_response.total_found,
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search_method="semantic_sampling_fallback",
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success=True,
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)
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@mcp.tool()
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@require_scopes("semantic:read")
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async def nc_get_vector_sync_status(ctx: Context) -> VectorSyncStatusResponse:
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"""Get the current vector sync status.
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Returns information about the vector sync process, including:
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- Number of documents indexed in the vector database
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- Number of documents pending processing
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- Current sync status (idle, syncing, or disabled)
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This is useful for determining when vector indexing is complete
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after creating or updating content across all indexed apps.
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"""
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import os
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# Check if vector sync is enabled
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vector_sync_enabled = (
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os.getenv("VECTOR_SYNC_ENABLED", "false").lower() == "true"
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)
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if not vector_sync_enabled:
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return VectorSyncStatusResponse(
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indexed_count=0,
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pending_count=0,
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status="disabled",
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enabled=False,
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)
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try:
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# Get document receive stream from lifespan context
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lifespan_ctx = ctx.request_context.lifespan_context
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document_receive_stream = getattr(
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lifespan_ctx, "document_receive_stream", None
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)
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if document_receive_stream is None:
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logger.debug(
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"document_receive_stream not available in lifespan context"
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)
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return VectorSyncStatusResponse(
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indexed_count=0,
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pending_count=0,
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status="unknown",
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enabled=True,
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)
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# Get pending count from stream statistics
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stream_stats = document_receive_stream.statistics()
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pending_count = stream_stats.current_buffer_used
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# Get Qdrant client and query indexed count
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indexed_count = 0
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try:
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from nextcloud_mcp_server.config import get_settings
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from nextcloud_mcp_server.vector.qdrant_client import get_qdrant_client
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settings = get_settings()
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qdrant_client = await get_qdrant_client()
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# Count documents in collection
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count_result = await qdrant_client.count(
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collection_name=settings.qdrant_collection
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)
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indexed_count = count_result.count
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except Exception as e:
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logger.warning(f"Failed to query Qdrant for indexed count: {e}")
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# Continue with indexed_count = 0
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# Determine status
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status = "syncing" if pending_count > 0 else "idle"
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return VectorSyncStatusResponse(
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indexed_count=indexed_count,
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pending_count=pending_count,
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status=status,
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enabled=True,
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)
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except Exception as e:
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logger.error(f"Error getting vector sync status: {e}")
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raise McpError(
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ErrorData(
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code=-1,
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message=f"Failed to retrieve vector sync status: {str(e)}",
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)
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)
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