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Author SHA1 Message Date
github-actions[bot] 126b5a7626 bump: version 0.29.2 → 0.30.0 2025-11-10 02:50:11 +00:00
Chris Coutinho 4d3ff1abe1 Merge pull request #282 from cbcoutinho/feat/multi-embedding-model-support
feat(vector): Support multiple embedding models with auto-generated collection names
2025-11-10 03:49:48 +01:00
Chris Coutinho d80e54ff97 feat(helm): Add document chunking configuration
Add support for configurable document chunking parameters to Helm chart
to match docker-compose and application capabilities.

Changes:
1. values.yaml:
   - Add documentChunking section with chunkSize (512) and chunkOverlap (50)
   - Include comprehensive comments explaining chunking strategies
   - Positioned between vectorSync and qdrant sections

2. templates/deployment.yaml:
   - Add DOCUMENT_CHUNK_SIZE and DOCUMENT_CHUNK_OVERLAP env vars
   - Always set (not conditional), used by vector sync processor
   - Environment variables follow same pattern as config.py defaults

3. README.md:
   - Add documentChunking parameter table in Vector Search section
   - Document chunking strategies (small/medium/large chunks)
   - Explain overlap recommendations (10-20% of chunk size)

Validation:
- helm lint: Passes
- helm template: Environment variables correctly generated
- Custom values: Work as expected (tested with chunkSize=1024)
- Always present: Not conditional on vectorSync.enabled

This maintains feature parity between Helm and docker-compose deployments,
allowing users to tune chunking for their embedding models and use cases.

🤖 Generated with [Claude Code](https://claude.com/claude-code)

Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-10 03:34:16 +01:00
Chris Coutinho 157e433d65 fix: Support in-memory Qdrant for CI testing
Changes to make tests work without external qdrant/ollama dependencies:

1. docker-compose.yml (mcp service):
   - Switch from QDRANT_URL (network mode) to QDRANT_LOCATION=":memory:"
   - Comment out QDRANT_URL and QDRANT_API_KEY (not needed for in-memory)
   - Keep OLLAMA_BASE_URL commented out (use SimpleEmbeddingProvider fallback)

2. nextcloud_mcp_server/vector/qdrant_client.py:
   - Fix collection creation bug in in-memory mode
   - Previously: All ValueError exceptions were re-raised
   - Now: Only dimension mismatch ValueError is re-raised
   - Allows "Collection not found" ValueError to trigger auto-creation

3. tests/integration/test_sampling.py:
   - Update test to handle all sampling unsupported cases
   - Check for multiple fallback search_method values
   - Skip test gracefully when sampling unavailable

This configuration enables:
- CI testing without external services (qdrant, ollama)
- In-memory vector database (ephemeral but sufficient for tests)
- SimpleEmbeddingProvider for embeddings (feature hashing, 384 dims)
- Automatic collection creation on first use

Test result: test_semantic_search_answer_successful_sampling now passes
(skipped with appropriate message when sampling unsupported)

🤖 Generated with [Claude Code](https://claude.com/claude-code)

Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-10 03:21:27 +01:00
Chris Coutinho 94d16092c0 ci: Add qdrant profile to docker compose up command 2025-11-10 03:09:50 +01:00
Chris Coutinho cb39b3fca4 feat(vector): Add configurable chunk size and overlap for document embedding
Enable users to tune document chunking parameters to match their embedding
model and content type by adding DOCUMENT_CHUNK_SIZE and DOCUMENT_CHUNK_OVERLAP
environment variables.

- **config.py**: Added `document_chunk_size` (default: 512) and
  `document_chunk_overlap` (default: 50) configuration fields with validation:
  - Ensures overlap < chunk_size
  - Warns if chunk_size < 100 words
  - Prevents negative overlap values

- **processor.py**: Updated DocumentChunker instantiation to use config
  settings instead of hardcoded values (line 174-177)

- **tests/unit/test_config.py**: Added TestChunkConfigValidation class with
  9 tests covering:
  - Default values
  - Valid configurations
  - Validation errors (overlap >= chunk_size, negative overlap)
  - Warning for small chunk sizes
  - Environment variable loading

- **docs/configuration.md**: Added comprehensive "Document Chunking
  Configuration" section with:
  - Chunk size selection guidance (256-384 vs 512 vs 768-1024 words)
  - Overlap recommendations (10-20% of chunk size)
  - Configuration examples for different use cases
  - Added env vars to reference table

- **docs/semantic-search-architecture.md**: Added "Document Chunking Strategy"
  section with:
  - Chunking process explanation
  - Example showing sliding window behavior
  - Search behavior with chunks
  - Tuning recommendations

- **env.sample**: Added complete "Semantic Search & Vector Sync Configuration"
  section with:
  - Vector sync settings
  - Qdrant configuration (3 modes)
  - Ollama embedding service
  - Document chunking configuration

- **docker-compose.yml**: Added commented examples for DOCUMENT_CHUNK_SIZE and
  DOCUMENT_CHUNK_OVERLAP with usage notes

\`\`\`bash
DOCUMENT_CHUNK_SIZE=512

DOCUMENT_CHUNK_OVERLAP=50
\`\`\`

1. \`overlap\` must be less than \`chunk_size\`
2. \`overlap\` cannot be negative
3. Warning issued if \`chunk_size\` < 100 words

**Precise matching** (small notes, specific queries):
\`\`\`bash
DOCUMENT_CHUNK_SIZE=256
DOCUMENT_CHUNK_OVERLAP=25
\`\`\`

**Balanced** (default, general purpose):
\`\`\`bash
DOCUMENT_CHUNK_SIZE=512
DOCUMENT_CHUNK_OVERLAP=50
\`\`\`

**Contextual** (long documents, broader topics):
\`\`\`bash
DOCUMENT_CHUNK_SIZE=1024
DOCUMENT_CHUNK_OVERLAP=100
\`\`\`

 **User control** - Tune chunking to match embedding model capabilities
 **Experimentation** - Test different chunk sizes for optimal results
 **Model alignment** - Match chunk size to embedding context window
 **Backward compatible** - Defaults maintain existing behavior
 **Well validated** - Comprehensive tests prevent misconfiguration

All 22 config validation tests pass (9 new tests for chunking):
- Default values work correctly
- Validation prevents invalid configurations
- Environment variables load properly
- Warning system works as expected

With configurable chunk sizes, users can now experiment with different Ollama
embedding models and tune chunk parameters for optimal semantic search quality.

🤖 Generated with [Claude Code](https://claude.com/claude-code)

Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-10 02:47:57 +01:00
Chris Coutinho f3050e9b45 chore: Remove /health and /metrics endpoints from logging 2025-11-10 02:07:45 +01:00
Chris Coutinho e575c8e57b feat(vector): Support multiple embedding models with auto-generated collection names
This PR enables safe switching between embedding models and multi-server
deployments by implementing auto-generated Qdrant collection names based on
deployment ID and model name.

## Problem

Previously, all deployments used a single hardcoded collection name
"nextcloud_content", which caused two critical issues:

1. **Dimension mismatches when switching models**: Changing
   OLLAMA_EMBEDDING_MODEL (e.g., nomic-embed-text at 768D → all-minilm at
   384D) would cause runtime errors as vectors couldn't be inserted into a
   collection with incompatible dimensions.

2. **Collection collisions in multi-server setups**: Multiple MCP servers
   sharing a single Qdrant instance would overwrite each other's data,
   making horizontal scaling impossible.

## Solution

### Auto-Generated Collection Naming

Collections are now automatically named using the pattern:
\`{deployment-id}-{model-name}\`

**Deployment ID**: Uses \`OTEL_SERVICE_NAME\` if configured (and not default
value), otherwise falls back to \`hostname\` for simple Docker deployments.

**Model Name**: From \`OLLAMA_EMBEDDING_MODEL\` with path separators sanitized.

**Examples**:
- \`my-mcp-server-nomic-embed-text\` (with OTEL_SERVICE_NAME=my-mcp-server)
- \`mcp-container-all-minilm\` (simple Docker, hostname=mcp-container)

**Override**: Users can still set \`QDRANT_COLLECTION\` explicitly to bypass
auto-generation for backward compatibility.

### Dimension Validation

Added startup validation that checks collection dimensions match the
embedding service. If a mismatch is detected, the server fails fast with a
clear error message explaining:
- Expected vs actual dimensions
- Likely cause (model change)
- Solutions (delete collection, use different name, or revert model)

### Improved Sampling Error Handling

Enhanced MCP sampling rejection handling to treat user rejections as normal
behavior rather than errors:

- **User rejections** ("rejected", "denied") → INFO log, no traceback
- **Unsupported clients** → INFO log, no traceback
- **Other MCP errors** → WARNING log, no traceback
- **Unexpected errors** → ERROR log WITH traceback

This aligns with the MCP specification where clients SHOULD prompt users for
approval/denial of sampling requests.

## Changes

### Core Implementation

- **nextcloud_mcp_server/config.py**: Added \`get_collection_name()\` method
  with deployment ID detection and model name sanitization
- **nextcloud_mcp_server/vector/qdrant_client.py**: Dimension validation on
  collection open with helpful error messages
- **nextcloud_mcp_server/vector/{scanner,processor}.py**: Updated to use
  \`get_collection_name()\`
- **nextcloud_mcp_server/auth/userinfo_routes.py**: Vector sync status uses
  \`get_collection_name()\`
- **nextcloud_mcp_server/server/semantic.py**:
  - Updated semantic search tools to use \`get_collection_name()\`
  - Improved sampling rejection error handling (McpError vs Exception)

### Documentation

- **docs/semantic-search-architecture.md**: New comprehensive architecture
  document (557 lines) covering background sync, semantic search flow, RAG
  implementation, and deployment modes
- **docs/configuration.md**: Added detailed "Qdrant Collection Naming"
  section with examples and multi-server deployment guidance
- **docker-compose.yml**: Added comments explaining collection naming behavior
- **README.md**: Updated semantic search descriptions to clarify
  experimental status, Notes-only support, and infrastructure requirements

## Migration Guide

**For existing single-server deployments:**

Option 1 (Recommended): Use explicit collection name for continuity
\`\`\`bash
QDRANT_COLLECTION=nextcloud_content  # Keep existing collection
\`\`\`

Option 2: Allow auto-generation and re-embed
\`\`\`bash
# Remove QDRANT_COLLECTION override
# New collection will be created based on deployment ID + model
# Requires re-embedding all documents (may take time)
\`\`\`

**For new multi-server deployments:**

Set unique OTEL service names per server:
\`\`\`bash
# Server 1
OTEL_SERVICE_NAME=mcp-prod
OLLAMA_EMBEDDING_MODEL=nomic-embed-text
# → Collection: "mcp-prod-nomic-embed-text"

# Server 2
OTEL_SERVICE_NAME=mcp-staging
OLLAMA_EMBEDDING_MODEL=nomic-embed-text
# → Collection: "mcp-staging-nomic-embed-text"
\`\`\`

## Benefits

 **Safe model switching**: Each model gets its own collection, preventing
   dimension mismatch errors
 **Multi-server support**: Multiple MCP servers can share one Qdrant
   instance without conflicts
 **Clear ownership**: Collection names show which deployment and model owns
   the data
 **Better error messages**: Dimension validation provides actionable
   guidance
 **Backward compatible**: Existing deployments can continue using
   \`QDRANT_COLLECTION\` override

## Testing

Validated with:
- Single-server deployments (default hostname-based naming)
- Multi-server deployments (OTEL service name-based naming)
- Model switching scenarios (dimension validation)
- Collection override scenarios (backward compatibility)

Next steps: Testing various Ollama embedding models to investigate optimal
chunk sizes and performance characteristics.

🤖 Generated with [Claude Code](https://claude.com/claude-code)

Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-10 01:18:30 +01:00
github-actions[bot] a0576aa9a2 bump: version 0.29.1 → 0.29.2 2025-11-09 18:28:34 +00:00
Chris Coutinho 4a6c60113b fix(helm): Set default strategy to Recreate 2025-11-09 19:27:55 +01:00
Chris Coutinho a0cb1ac9fe Merge pull request #281 from cbcoutinho/renovate/qdrant-1.x
chore(deps): update helm release qdrant to v1
2025-11-09 18:38:22 +01:00
renovate-bot-cbcoutinho[bot] de4f1032aa chore(deps): update helm release qdrant to v1 2025-11-09 17:08:13 +00:00
Chris Coutinho 178be5da6d Merge pull request #279 from cbcoutinho/renovate/ollama-1.x
chore(deps): update helm release ollama to v1.34.0
2025-11-09 18:04:08 +01:00
Chris Coutinho 61d8c851c9 Merge pull request #272 from cbcoutinho/renovate/softprops-action-gh-release-2.x
chore(deps): update softprops/action-gh-release action to v2.4.2
2025-11-09 17:02:19 +01:00
Chris Coutinho a8c63c8379 Merge pull request #278 from cbcoutinho/renovate/azure-setup-helm-4.x
chore(deps): update azure/setup-helm action to v4.3.1
2025-11-09 17:01:59 +01:00
renovate-bot-cbcoutinho[bot] 3147180ccd chore(deps): update helm release ollama to v1.34.0 2025-11-09 11:08:18 +00:00
renovate-bot-cbcoutinho[bot] 380578dd2e chore(deps): update softprops/action-gh-release action to v2.4.2 2025-11-09 11:07:57 +00:00
renovate-bot-cbcoutinho[bot] 10c5557aea chore(deps): update azure/setup-helm action to v4.3.1 2025-11-09 11:07:52 +00:00
github-actions[bot] 7772b1ac2e bump: version 0.29.0 → 0.29.1 2025-11-09 08:54:26 +00:00
Chris Coutinho 0513bec105 Merge pull request #275 from cbcoutinho/feature/observability-monitoring
fix(observability): isolate metrics endpoint to dedicated port
2025-11-09 09:54:00 +01:00
Chris Coutinho 4e89e92b65 fix(observability): isolate metrics endpoint to dedicated port
Security fix: Move Prometheus metrics endpoint from main HTTP port to
dedicated port 9090 to prevent external exposure of metrics data.

Changes:
- Use prometheus_client.start_http_server() for dedicated metrics server
- Remove /metrics route from main application routes
- Metrics now only accessible on port 9090 (configurable via METRICS_PORT)
- Main application port no longer serves /metrics endpoint

This follows security best practice of isolating monitoring endpoints
from application traffic.

🤖 Generated with [Claude Code](https://claude.com/claude-code)

Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-09 09:53:36 +01:00
github-actions[bot] af96378cb6 bump: version 0.28.0 → 0.29.0 2025-11-09 08:29:53 +00:00
Chris Coutinho c5da11aa4c Merge pull request #274 from cbcoutinho/feature/observability-monitoring
feature/observability monitoring
2025-11-09 09:29:25 +01:00
Chris Coutinho 5e4667a643 fix(readiness): Only check external Qdrant in network mode
The readiness probe incorrectly tried to connect to an external Qdrant service
even when using memory or persistent mode (embedded Qdrant). This caused pods
to never become ready in Kubernetes deployments using the default configuration.

Root cause:
- In memory/persistent modes, QDRANT_URL env var is NOT set
- Readiness check used default 'http://qdrant:6333' anyway
- Tried to connect to non-existent service
- Connection failed -> 503 -> pod stuck in not-ready state

Fix:
- Only check external Qdrant health if QDRANT_URL is explicitly set (network mode)
- For embedded modes (memory/persistent), report status as 'embedded' without blocking
- Background scanner tasks don't block readiness (already non-blocking via anyio.start_soon)

This allows pods to become ready immediately when using embedded Qdrant,
while still validating external Qdrant connectivity in network mode.

Fixes: Kubernetes pods failing readiness check with default Qdrant configuration

🤖 Generated with [Claude Code](https://claude.com/claude-code)

Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-09 09:28:09 +01:00
Chris Coutinho 093ac5b5ba feat(helm): Add observability support with ServiceMonitor and Grafana dashboard
Add comprehensive observability configuration to Helm chart:

**Helm Values:**
- Add observability configuration section for metrics, tracing, and logging
- Add serviceMonitor configuration (disabled by default)
- Add prometheusRule configuration (disabled by default)

**Templates:**
- Update deployment to include observability environment variables
- Update deployment to expose metrics port (9090)
- Update service to expose metrics port
- Add ServiceMonitor template for Prometheus Operator
- Add PrometheusRule template with critical and warning alerts

**Dashboards:**
- Add comprehensive Grafana dashboard JSON with 6 panels:
  - Request Rate (by method and endpoint)
  - Error Rate (5xx errors percentage)
  - Request Latency (P50/P95 by endpoint)
  - Top MCP Tools (by invocation volume)
  - Nextcloud API Latency (by app)
  - Vector Sync Queue Size
- Add dashboard README with import instructions

**Alert Rules:**
- Critical: Server down, high error rate (>5%), high latency (>1s), dependency down
- Warning: Token validation errors (>1%), vector sync queue high (>100), Qdrant slow (>500ms)

All features are opt-in via values.yaml configuration.

🤖 Generated with [Claude Code](https://claude.com/claude-code)

Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-09 09:10:11 +01:00
github-actions[bot] ae81f0334e bump: version 0.27.3 → 0.28.0 2025-11-09 08:04:06 +00:00
Chris Coutinho 23f3a231a5 Merge pull request #273 from cbcoutinho/feature/observability-monitoring
Feature/observability monitoring
2025-11-09 09:03:40 +01:00
Chris Coutinho 7be40a33e1 fix(vector): Handle missing 'modified' field in notes gracefully
The vector scanner crashed when encountering notes without a 'modified' field,
causing KeyError and preventing initial sync from completing.

Changes:
- Use dict.get() with fallback value (0) instead of direct key access
- Log warnings for notes missing 'modified' field
- Apply fix to both initial sync and incremental sync code paths

This ensures the scanner continues processing all notes even if some have
missing metadata fields, preventing scanner crashes that could affect
deployment readiness.

Fixes: Notes without 'modified' field causing scanner crash and readiness check failure

🤖 Generated with [Claude Code](https://claude.com/claude-code)

Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-09 09:03:05 +01:00
Chris Coutinho 578de4d7d6 feat(observability): Add comprehensive monitoring with Prometheus and OpenTelemetry
- Add Prometheus metrics for HTTP, MCP tools, Nextcloud API, OAuth, vector sync, and DB operations
- Add OpenTelemetry distributed tracing with OTLP export
- Add structured JSON logging with trace context correlation
- Add ObservabilityMiddleware for automatic HTTP instrumentation
- Add app_name attribute to all client classes for per-app metrics
- Add configuration for metrics, tracing, and logging via environment variables
- Add documentation in docs/observability.md
- Fix graceful degradation when tracing is disabled (default state)
- Fix uvicorn logging configuration to use observability formatters

🤖 Generated with [Claude Code](https://claude.com/claude-code)

Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-09 08:54:04 +01:00
github-actions[bot] 8f0f989c6d bump: version 0.27.2 → 0.27.3 2025-11-09 06:52:31 +00:00
Chris Coutinho f8a2935c22 fix(ci): Use helm dependency build instead of update to use Chart.lock 2025-11-09 07:52:00 +01:00
github-actions[bot] 137dc80075 bump: version 0.27.1 → 0.27.2 2025-11-09 06:45:44 +00:00
Chris Coutinho 725ac65e6a fix(helm): update Qdrant dependency condition to match new mode structure
The Qdrant subchart was being included by default even in memory/persistent
modes. Changed the dependency condition from `qdrant.enabled` to
`qdrant.networkMode.deploySubchart` to align with the three-mode structure.

Now the Qdrant subchart is ONLY deployed when:
- qdrant.mode: "network"
- qdrant.networkMode.deploySubchart: true

Verified all three modes:
- Memory mode (:memory:): No subchart, QDRANT_LOCATION=:memory:
- Persistent mode (path): No subchart, QDRANT_LOCATION=/app/data/qdrant, PVC created
- Network mode (subchart): Qdrant subchart deployed, QDRANT_URL=http://...:6333
- Network mode (external): No subchart, QDRANT_URL=<external-url>

🤖 Generated with [Claude Code](https://claude.com/claude-code)

Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-09 07:45:06 +01:00
github-actions[bot] f51edff25d bump: version 0.27.0 → 0.27.1 2025-11-09 06:22:00 +00:00
Chris Coutinho 50ba6ccc88 fix(ci): add Helm repository setup to chart release workflow
The chart-releaser was failing because it couldn't resolve the
dependencies (Qdrant and Ollama subcharts) when packaging.

Changes:
- Add azure/setup-helm action to install Helm v3.16.0
- Add step to add Qdrant and Ollama Helm repositories
- Run helm dependency update before chart-releaser runs

This fixes the error:
"Error: no repository definition for https://qdrant.github.io/qdrant-helm, https://otwld.github.io/ollama-helm"

🤖 Generated with [Claude Code](https://claude.com/claude-code)

Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-09 07:21:17 +01:00
github-actions[bot] 538bbc375e bump: version 0.26.1 → 0.27.0 2025-11-09 06:15:27 +00:00
Chris Coutinho d4c686eba7 Merge pull request #271 from cbcoutinho/docs/adr-007-background-vector-sync
feat: implement ADR-007 background vector sync and semantic search
2025-11-09 07:15:00 +01:00
48 changed files with 4837 additions and 373 deletions
+1 -1
View File
@@ -25,7 +25,7 @@ jobs:
github_token: ${{ secrets.PERSONAL_ACCESS_TOKEN }}
changelog_increment_filename: body.md
- name: Release
uses: softprops/action-gh-release@6da8fa9354ddfdc4aeace5fc48d7f679b5214090 # v2.4.1
uses: softprops/action-gh-release@5be0e66d93ac7ed76da52eca8bb058f665c3a5fe # v2.4.2
with:
body_path: "body.md"
tag_name: v${{ env.REVISION }}
+12
View File
@@ -24,6 +24,18 @@ jobs:
git config user.name "$GITHUB_ACTOR"
git config user.email "$GITHUB_ACTOR@users.noreply.github.com"
- name: Install Helm
uses: azure/setup-helm@1a275c3b69536ee54be43f2070a358922e12c8d4 # v4.3.1
with:
version: v3.16.0
- name: Add Helm repositories and update dependencies
run: |
helm repo add qdrant https://qdrant.github.io/qdrant-helm
helm repo add ollama https://otwld.github.io/ollama-helm
helm repo update
helm dependency build charts/nextcloud-mcp-server
- name: Run chart-releaser
uses: helm/chart-releaser-action@cae68fefc6b5f367a0275617c9f83181ba54714f # v1.7.0
env:
+1
View File
@@ -52,6 +52,7 @@ jobs:
uses: hoverkraft-tech/compose-action@3846bcd61da338e9eaaf83e7ed0234a12b099b72 # v2.4.1
with:
compose-file: "./docker-compose.yml"
#compose-flags: "--profile qdrant"
up-flags: "--build"
- name: Install the latest version of uv
+86
View File
@@ -1,3 +1,89 @@
## v0.30.0 (2025-11-10)
### Feat
- **helm**: Add document chunking configuration
- **vector**: Add configurable chunk size and overlap for document embedding
- **vector**: Support multiple embedding models with auto-generated collection names
### Fix
- Support in-memory Qdrant for CI testing
## v0.29.2 (2025-11-09)
### Fix
- **helm**: Set default strategy to Recreate
## v0.29.1 (2025-11-09)
### Fix
- **observability**: isolate metrics endpoint to dedicated port
## v0.29.0 (2025-11-09)
### Feat
- **helm**: Add observability support with ServiceMonitor and Grafana dashboard
### Fix
- **readiness**: Only check external Qdrant in network mode
## v0.28.0 (2025-11-09)
### Feat
- **observability**: Add comprehensive monitoring with Prometheus and OpenTelemetry
### Fix
- **vector**: Handle missing 'modified' field in notes gracefully
## v0.27.3 (2025-11-09)
### Fix
- **ci**: Use helm dependency build instead of update to use Chart.lock
## v0.27.2 (2025-11-09)
### Fix
- **helm**: update Qdrant dependency condition to match new mode structure
## v0.27.1 (2025-11-09)
### Fix
- **ci**: add Helm repository setup to chart release workflow
## v0.27.0 (2025-11-09)
### Feat
- **helm**: add Qdrant local mode support with three deployment options [skip ci]
- add Qdrant local mode support with in-memory and persistent storage
- implement ADR-009 - refactor semantic search to use generic semantic:read scope
- implement MCP sampling for semantic search RAG (ADR-008)
- add optional vector database and semantic search to helm chart
- add vector sync processing status to /user/page endpoint
- implement semantic search tool and fix vector sync issues (ADR-007 Phase 3)
- implement vector sync scanner and processor (ADR-007 Phase 2)
### Fix
- implement deletion grace period and vector sync status tool
- remove unnecessary urllib3<2.0 constraint
- integrate vector sync tasks with Starlette lifespan for streamable-http
### Refactor
- migrate vector sync from asyncio.Queue to anyio memory object streams
- update to Qdrant query_points API and fix Playwright Keycloak login
## v0.26.1 (2025-11-08)
### Fix
+4
View File
@@ -391,3 +391,7 @@ docker compose exec app php occ user_oidc:provider keycloak
- `docs/configuration.md` - Configuration options
- `docs/authentication.md` - Authentication modes
- `docs/running.md` - Running the server
**For additional information regarding MCP during development, see**:
- `../../Software/modelcontextprotocol/` - MCP spec
- `../../Software/python-sdk/` - Python MCP SDK
+114 -280
View File
@@ -2,286 +2,134 @@
[![Docker Image](https://img.shields.io/badge/docker-ghcr.io/cbcoutinho/nextcloud--mcp--server-blue)](https://github.com/cbcoutinho/nextcloud-mcp-server/pkgs/container/nextcloud-mcp-server)
**Enable AI assistants to interact with your Nextcloud instance.**
**A production-ready MCP server that connects AI assistants to your Nextcloud instance.**
The Nextcloud MCP (Model Context Protocol) server allows Large Language Models like Claude, GPT, and Gemini to interact with your Nextcloud data through a secure API. Create notes, manage calendars, organize contacts, work with files, and more - all through natural language.
Enable Large Language Models like Claude, GPT, and Gemini to interact with your Nextcloud data through a secure API. Create notes, manage calendars, organize contacts, work with files, and more - all through natural language conversations.
This is a **dedicated standalone MCP server** designed for external MCP clients like Claude Code and IDEs. It runs independently of Nextcloud (Docker, VM, Kubernetes, or local) and provides deep CRUD operations across Nextcloud apps.
> [!NOTE]
> **Nextcloud has two ways to enable AI access:** Nextcloud provides [Context Agent](https://github.com/nextcloud/context_agent), an AI agent backend that powers the [Assistant](https://github.com/nextcloud/assistant) app and allows AI to interact with Nextcloud apps like Calendar, Talk, and Contacts. Context Agent runs as an ExApp inside Nextcloud and also _[exposes an MCP server](https://docs.nextcloud.com/server/stable/admin_manual/ai/app_context_agent.html#using-nextcloud-mcp-server)_ for external MCP clients.
>
> This project (Nextcloud MCP Server) is a **dedicated standalone MCP server** designed specifically for external MCP clients like Claude Code and IDEs, with deep CRUD operations and OAuth support. It does not require any additional AI-features to be enabled in Nextcloud beyond the apps that you intend to interact with.
### High-level Comparison: Nextcloud MCP Server vs. Nextcloud AI Stack
| Aspect | **Nextcloud MCP Server**<br/>(This Project) | **Nextcloud AI Stack**<br/>(Assistant + Context Agent) |
|--------|---------------------------------------------|--------------------------------------------------------|
| **Purpose** | External MCP client access to Nextcloud | AI assistance within Nextcloud UI |
| **Deployment** | Standalone (Docker, VM, K8s) | Inside Nextcloud (ExApp via AppAPI) |
| **Primary Users** | Claude Code, IDEs, external developers | Nextcloud end users via Assistant app |
| **Authentication** | OAuth2/OIDC or Basic Auth | Session-based (integrated) |
| **Notes Support** | ✅ Full CRUD + keyword search (7 tools) | ❌ Not implemented |
| **Semantic Search** | ✅ Multi-app vector search (2+ tools) | ❌ Not implemented |
| **Calendar** | ✅ Full CalDAV + tasks (20+ tools) | ✅ Events, free/busy, tasks (4 tools) |
| **Contacts** | ✅ Full CardDAV (8 tools) | ✅ Find person, current user (2 tools) |
| **Files (WebDAV)** | ✅ Full filesystem access (12 tools) | ✅ Read, folder tree, sharing (3 tools) |
| **Document Processing** | ✅ OCR with progress (PDF, DOCX, images) | ❌ Not implemented |
| **Deck** | ✅ Full project management (15 tools) | ✅ Basic board/card ops (2 tools) |
| **Tables** | ✅ Row operations (5 tools) | ❌ Not implemented |
| **Cookbook** | ✅ Full recipe management (13 tools) | ❌ Not implemented |
| **Talk** | ❌ Not implemented | ✅ Messages, conversations (4 tools) |
| **Mail** | ❌ Not implemented | ✅ Send email (2 tools) |
| **AI Features** | ❌ Not implemented | ✅ Image gen, transcription, doc gen (4 tools) |
| **Web/Maps** | ❌ Not implemented | ✅ Search, weather, transit (5 tools) |
| **MCP Resources** | ✅ Structured data URIs | ❌ Not supported |
| **External MCP** | ❌ Pure server | ✅ Consumes external MCP servers |
| **Safety Model** | Client-controlled | Built-in safe/dangerous distinction |
| **Best For** | • Deep CRUD operations<br/>• External integrations<br/>• OAuth security<br/>• IDE/editor integration | • AI-driven actions in Nextcloud UI<br/>• Multi-service orchestration<br/>• User task automation<br/>• MCP aggregation hub |
See our [detailed comparison](docs/comparison-context-agent.md) for architecture diagrams, workflow examples, and guidance on when to use each approach.
Want to see another Nextcloud app supported? [Open an issue](https://github.com/cbcoutinho/nextcloud-mcp-server/issues) or contribute a pull request!
### Authentication
| Mode | Security | Best For |
|------|----------|----------|
| **OAuth2/OIDC** ⚠️ **Experimental** | 🔒 High | Testing, evaluation (requires patch for app-specific APIs) |
| **Basic Auth** ✅ | Lower | Development, testing, production |
> [!IMPORTANT]
> **OAuth is experimental** and requires a manual patch to the `user_oidc` app for full functionality:
> - **Required patch**: `user_oidc` app needs modifications for Bearer token support ([issue #1221](https://github.com/nextcloud/user_oidc/issues/1221))
> - **Impact**: Without the patch, most app-specific APIs (Notes, Calendar, Contacts, Deck, etc.) will fail with 401 errors
> - **What works without patches**: OAuth flow, PKCE support (with `oidc` v1.10.0+), OCS APIs
> - **Production use**: Wait for upstream patch to be merged into official releases
>
> See [OAuth Upstream Status](docs/oauth-upstream-status.md) for detailed information on required patches and workarounds.
OAuth2/OIDC provides secure, per-user authentication with access tokens. See [Authentication Guide](docs/authentication.md) for details.
> **Looking for AI features inside Nextcloud?** Nextcloud also provides [Context Agent](https://github.com/nextcloud/context_agent), which powers the Assistant app and runs as an ExApp inside Nextcloud. See [docs/comparison-context-agent.md](docs/comparison-context-agent.md) for a detailed comparison of use cases.
## Quick Start
### 1. Install
Get up and running in 60 seconds using Docker:
```bash
# Clone the repository
git clone https://github.com/cbcoutinho/nextcloud-mcp-server.git
cd nextcloud-mcp-server
# Install with uv (recommended)
uv sync
# Or using Docker
docker pull ghcr.io/cbcoutinho/nextcloud-mcp-server:latest
# Or deploy to Kubernetes with Helm
helm repo add nextcloud-mcp https://cbcoutinho.github.io/nextcloud-mcp-server
helm repo update
helm install nextcloud-mcp nextcloud-mcp/nextcloud-mcp-server \
--set nextcloud.host=https://cloud.example.com \
--set auth.basic.username=myuser \
--set auth.basic.password=mypassword
```
See [Installation Guide](docs/installation.md) for detailed instructions, or [Helm Chart README](charts/nextcloud-mcp-server/README.md) for Kubernetes deployment.
### 2. Configure
Create a `.env` file:
```bash
# Copy the sample
cp env.sample .env
```
**For Basic Auth (recommended for most users):**
```dotenv
# 1. Create a minimal configuration
cat > .env << EOF
NEXTCLOUD_HOST=https://your.nextcloud.instance.com
NEXTCLOUD_USERNAME=your_username
NEXTCLOUD_PASSWORD=your_app_password
```
EOF
**For OAuth (experimental - requires patches):**
```dotenv
NEXTCLOUD_HOST=https://your.nextcloud.instance.com
```
See [Configuration Guide](docs/configuration.md) for all options.
### 3. Set Up Authentication
**Basic Auth Setup (recommended):**
1. Create an app password in Nextcloud (Settings → Security → Devices & sessions)
2. Add credentials to `.env` file
3. Start the server
**OAuth Setup (experimental):**
1. Install Nextcloud OIDC apps (`oidc` v1.10.0+ + `user_oidc`)
2. **Apply required patch** to `user_oidc` app for Bearer token support (see [OAuth Upstream Status](docs/oauth-upstream-status.md))
3. Enable dynamic client registration or create an OIDC client with id & secret
4. Configure Bearer token validation in `user_oidc`
5. Start the server
See [OAuth Quick Start](docs/quickstart-oauth.md) for 5-minute setup or [OAuth Setup Guide](docs/oauth-setup.md) for detailed instructions.
### 4. Run the Server
```bash
# Load environment variables
export $(grep -v '^#' .env | xargs)
# Start with Basic Auth (default)
uv run nextcloud-mcp-server
# Or start with OAuth (experimental - requires patches)
uv run nextcloud-mcp-server --oauth
# Or with Docker
# 2. Start the server
docker run -p 127.0.0.1:8000:8000 --env-file .env --rm \
ghcr.io/cbcoutinho/nextcloud-mcp-server:latest
# 3. Test the connection
curl http://127.0.0.1:8000/health/ready
```
The server starts on `http://127.0.0.1:8000` by default.
**Next Steps:**
- Create an app password in Nextcloud: Settings → Security → Devices & sessions
- Connect your MCP client (Claude Desktop, IDEs, `mcp dev`, etc.)
- See [docs/installation.md](docs/installation.md) for other deployment options (local, Kubernetes)
See [Running the Server](docs/running.md) for more options.
## Key Features
### 5. Connect an MCP Client
- **90+ MCP Tools** - Comprehensive API coverage across 8 Nextcloud apps
- **MCP Resources** - Structured data URIs for browsing Nextcloud data
- **Semantic Search (Experimental)** - Optional vector-powered search for Notes (requires Qdrant + Ollama)
- **Document Processing** - OCR and text extraction from PDFs, DOCX, images with progress notifications
- **Flexible Deployment** - Docker, Kubernetes (Helm), VM, or local installation
- **Production-Ready Auth** - Basic Auth with app passwords (recommended) or OAuth2/OIDC (experimental)
- **Multiple Transports** - SSE, HTTP, and streamable-http support
Test with MCP Inspector:
## Supported Apps
```bash
uv run mcp dev
```
| App | Tools | Capabilities |
|-----|-------|--------------|
| **Notes** | 7 | Full CRUD, keyword search, semantic search |
| **Calendar** | 20+ | Events, todos (tasks), recurring events, attendees, availability |
| **Contacts** | 8 | Full CardDAV support, address books |
| **Files (WebDAV)** | 12 | Filesystem access, OCR/document processing |
| **Deck** | 15 | Boards, stacks, cards, labels, assignments |
| **Cookbook** | 13 | Recipe management, URL import (schema.org) |
| **Tables** | 5 | Row operations on Nextcloud Tables |
| **Sharing** | 10+ | Create and manage shares |
| **Semantic Search** | 2+ | Vector search for Notes (experimental, opt-in, requires infrastructure) |
Or connect from:
- Claude Desktop
- Any MCP-compatible client
Want to see another Nextcloud app supported? [Open an issue](https://github.com/cbcoutinho/nextcloud-mcp-server/issues) or contribute a pull request!
## Authentication
> [!IMPORTANT]
> **OAuth2/OIDC is experimental** and requires a manual patch to the `user_oidc` app:
> - **Required patch**: Bearer token support ([issue #1221](https://github.com/nextcloud/user_oidc/issues/1221))
> - **Impact**: Without the patch, most app-specific APIs fail with 401 errors
> - **Recommendation**: Use Basic Auth for production until upstream patches are merged
>
> See [docs/oauth-upstream-status.md](docs/oauth-upstream-status.md) for patch status and workarounds.
**Recommended:** Basic Auth with app-specific passwords provides secure, production-ready authentication. See [docs/authentication.md](docs/authentication.md) for setup details and OAuth configuration.
### Authentication Modes
The server supports two authentication modes:
**Single-User Mode (BasicAuth):**
- One set of credentials shared by all MCP clients
- Simple setup: username + app password in environment variables
- All clients access Nextcloud as the same user
- Best for: Personal use, development, single-user deployments
**Multi-User Mode (OAuth):**
- Each MCP client authenticates separately with their own Nextcloud account
- Per-user scopes and permissions (clients only see tools they're authorized for)
- More secure: tokens expire, credentials never shared with server
- Best for: Teams, multi-user deployments, production environments with multiple users
See [docs/authentication.md](docs/authentication.md) for detailed setup instructions.
## Semantic Search
The server provides an experimental RAG pipeline to enable _Semantic Search_ that enables MCP clients to find information in Nextcloud based on **meaning** rather than just keywords. Instead of matching "machine learning" only when those exact words appear, it understands that "neural networks," "AI models," and "deep learning" are semantically related concepts.
**Example:**
- **Keyword search**: Query "car" only finds notes containing "car"
- **Semantic search**: Query "car" also finds notes about "automobile," "vehicle," "sedan," "transportation"
This enables natural language queries and helps discover related content across your Nextcloud notes.
> [!NOTE]
> **Semantic Search is experimental and opt-in:**
> - Disabled by default (`VECTOR_SYNC_ENABLED=false`)
> - Currently supports Notes app only (multi-app support planned)
> - Requires additional infrastructure: vector database + embedding service
> - Answer generation (`nc_semantic_search_answer`) requires MCP client sampling support
>
> See [docs/semantic-search-architecture.md](docs/semantic-search-architecture.md) for architecture details and [docs/configuration.md](docs/configuration.md) for setup instructions.
## Documentation
### Getting Started
- **[Installation](docs/installation.md)** - Install the server
- **[Configuration](docs/configuration.md)** - Environment variables and settings
- **[Authentication](docs/authentication.md)** - OAuth vs BasicAuth
- **[Running the Server](docs/running.md)** - Start and manage the server
- **[Installation](docs/installation.md)** - Docker, Kubernetes, local, or VM deployment
- **[Configuration](docs/configuration.md)** - Environment variables and advanced options
- **[Authentication](docs/authentication.md)** - Basic Auth vs OAuth2/OIDC setup
- **[Running the Server](docs/running.md)** - Start, manage, and troubleshoot
### Architecture
- **[Comparison with Context Agent](docs/comparison-context-agent.md)** - How this MCP server differs from Nextcloud's Context Agent
### Features
- **[App Documentation](docs/)** - Notes, Calendar, Contacts, WebDAV, Deck, Cookbook, Tables
- **[Document Processing](docs/configuration.md#document-processing)** - OCR and text extraction setup
- **[Semantic Search Architecture](docs/semantic-search-architecture.md)** - Experimental vector search (Notes only, opt-in)
### OAuth Documentation (Experimental)
- **[OAuth Quick Start](docs/quickstart-oauth.md)** - 5-minute setup guide
- **[OAuth Setup Guide](docs/oauth-setup.md)** - Detailed setup instructions
- **[OAuth Architecture](docs/oauth-architecture.md)** - How OAuth works
- **[OAuth Troubleshooting](docs/oauth-troubleshooting.md)** - OAuth-specific issues
- **[Upstream Status](docs/oauth-upstream-status.md)** - **Required patches and PRs** ⚠️
### Reference
### Advanced Topics
- **[OAuth Architecture](docs/oauth-architecture.md)** - How OAuth works (experimental)
- **[OAuth Quick Start](docs/quickstart-oauth.md)** - 5-minute OAuth setup
- **[OAuth Setup Guide](docs/oauth-setup.md)** - Detailed OAuth configuration
- **[Troubleshooting](docs/troubleshooting.md)** - Common issues and solutions
### App-Specific Documentation
- [Notes API](docs/notes.md)
- [Calendar (CalDAV)](docs/calendar.md)
- [Contacts (CardDAV)](docs/contacts.md)
- [Cookbook](docs/cookbook.md)
- [Deck](docs/deck.md)
- [Tables](docs/table.md)
- [WebDAV](docs/webdav.md)
## MCP Tools & Resources
The server exposes Nextcloud functionality through MCP tools (for actions) and resources (for data browsing).
### Tools
The server provides 90+ tools across 8 Nextcloud apps. When using OAuth, tools are dynamically filtered based on your granted scopes.
For a complete list of all supported OAuth scopes and their descriptions, see [OAuth Scopes Documentation](docs/oauth-architecture.md#oauth-scopes).
#### Available Tool Categories
| App | Tools | Read Scope | Write Scope | Operations |
|-----|-------|-----------|-------------|------------|
| **Notes** | 7 | `notes:read` | `notes:write` | Create, read, update, delete, search notes (keyword search) |
| **Calendar** | 20+ | `calendar:read` `todo:read` | `calendar:write` `todo:write` | Events, todos (tasks), calendars, recurring events, attendees |
| **Contacts** | 8 | `contacts:read` | `contacts:write` | Create, read, update, delete contacts and address books |
| **Files (WebDAV)** | 12 | `files:read` | `files:write` | List, read, upload, delete, move files; **OCR/document processing** |
| **Deck** | 15 | `deck:read` | `deck:write` | Boards, stacks, cards, labels, assignments |
| **Cookbook** | 13 | `cookbook:read` | `cookbook:write` | Recipes, import from URLs, search, categories |
| **Tables** | 5 | `tables:read` | `tables:write` | Row operations on Nextcloud Tables |
| **Sharing** | 10+ | `sharing:read` | `sharing:write` | Create, manage, delete shares |
| **Semantic Search** | 2+ | `semantic:read` | `semantic:write` | Vector-powered semantic search across **all apps** (notes, calendar, deck, files, contacts), background indexing |
#### Document Processing (Optional)
The WebDAV file reading tool (`nc_webdav_read_file`) supports **automatic text extraction** from documents and images:
**Supported Formats:**
- **Documents**: PDF, DOCX, PPTX, XLSX, RTF, ODT, EPUB
- **Images**: PNG, JPEG, TIFF, BMP (with OCR)
- **Email**: EML, MSG files
**Features:**
- **Progress Notifications**: Long-running OCR operations (up to 120s) send progress updates every 10 seconds to prevent client timeouts
- **Pluggable Architecture**: Multiple processor backends (Unstructured.io, Tesseract, custom HTTP APIs)
- **Automatic Detection**: Files are processed based on MIME type
- **Graceful Fallback**: Returns base64-encoded content if processing fails
**Configuration:**
```dotenv
# Enable document processing (optional)
ENABLE_DOCUMENT_PROCESSING=true
# Unstructured.io processor (cloud/API-based, supports many formats)
ENABLE_UNSTRUCTURED=true
UNSTRUCTURED_API_URL=http://localhost:8002
UNSTRUCTURED_STRATEGY=auto # auto, fast, or hi_res
UNSTRUCTURED_LANGUAGES=eng,deu
PROGRESS_INTERVAL=10 # Progress update interval in seconds
# Tesseract processor (local OCR, images only)
ENABLE_TESSERACT=false
TESSERACT_LANG=eng
# Custom HTTP processor
ENABLE_CUSTOM_PROCESSOR=false
CUSTOM_PROCESSOR_URL=http://localhost:9000/process
CUSTOM_PROCESSOR_TYPES=application/pdf,image/jpeg
```
**Example Usage:**
```
AI: "Read the contents of Documents/report.pdf"
→ Uses nc_webdav_read_file tool with automatic OCR processing
→ Returns extracted text with parsing metadata
→ Sends progress updates during long operations
```
See [env.sample](env.sample) for complete configuration options.
**Example Tools:**
- `nc_notes_create_note` - Create a new note
- `nc_cookbook_import_recipe` - Import recipes from URLs with schema.org metadata
- `deck_create_card` - Create a Deck card
- `nc_calendar_create_event` - Create a calendar event
- `nc_calendar_create_todo` - Create a CalDAV task/todo
- `nc_contacts_create_contact` - Create a contact
- `nc_webdav_upload_file` - Upload a file to Nextcloud
- And 80+ more...
> [!TIP]
> **OAuth Scope Filtering**: When connecting via OAuth, MCP clients will only see tools for which you've granted access. For example, granting only `notes:read` and `notes:write` will show 7 Notes tools instead of all 90+ tools. See [OAuth Scopes Documentation](docs/oauth-architecture.md#oauth-scopes) for the complete scope reference, or [OAuth Troubleshooting - Limited Scopes](docs/oauth-troubleshooting.md#limited-scopes---only-seeing-notes-tools) if you're only seeing a subset of tools.
>
> **Known Issue**: Claude Code and some other MCP clients may only request/grant Notes scopes during initial connection. Track progress at [#234](https://github.com/cbcoutinho/nextcloud-mcp-server/issues/234).
### Resources
Resources provide read-only access to Nextcloud data:
- `nc://capabilities` - Server capabilities
- `cookbook://version` - Cookbook app version info
- `nc://Deck/boards/{board_id}` - Deck board data
- `notes://settings` - Notes app settings
- And more...
Run `uv run nextcloud-mcp-server --help` to see all available options.
- **[Comparison with Context Agent](docs/comparison-context-agent.md)** - When to use each approach
## Examples
@@ -291,45 +139,31 @@ AI: "Create a note called 'Meeting Notes' with today's agenda"
→ Uses nc_notes_create_note tool
```
### Manage Recipes
### Import Recipes
```
AI: "Import the recipe from this URL: https://www.example.com/recipe/chocolate-cake"
→ Uses nc_cookbook_import_recipe tool to extract schema.org metadata
AI: "Import the recipe from https://www.example.com/recipe/chocolate-cake"
→ Uses nc_cookbook_import_recipe tool with schema.org metadata extraction
```
### Manage Calendar
### Schedule Meetings
```
AI: "Schedule a team meeting for next Tuesday at 2pm"
→ Uses nc_calendar_create_event tool
```
### Organize Files
### Manage Files
```
AI: "Create a folder called 'Project X' and move all PDFs there"
→ Uses WebDAV tools (nc_webdav_create_directory, nc_webdav_move)
→ Uses nc_webdav_create_directory and nc_webdav_move tools
```
### Project Management
### Semantic Search (Experimental, Opt-in)
```
AI: "Create a new Deck board for Q1 planning with Todo, In Progress, and Done stacks"
→ Uses deck_create_board and deck_create_stack tools
AI: "Find notes related to machine learning concepts"
→ Uses nc_semantic_search to find semantically similar notes (requires Qdrant + Ollama setup)
```
## Transport Protocols
The server supports multiple MCP transport protocols:
- **streamable-http** (recommended) - Modern streaming protocol
- **sse** (default, deprecated) - Server-Sent Events for backward compatibility
- **http** - Standard HTTP protocol
```bash
# Use streamable-http (recommended)
uv run nextcloud-mcp-server --transport streamable-http
```
> [!WARNING]
> SSE transport is deprecated and will be removed in a future MCP specification version. Please migrate to `streamable-http`.
**Note:** For AI-generated answers with citations, use `nc_semantic_search_answer` (requires MCP client with sampling support).
## Contributing
@@ -337,17 +171,17 @@ Contributions are welcome!
- Report bugs or request features: [GitHub Issues](https://github.com/cbcoutinho/nextcloud-mcp-server/issues)
- Submit improvements: [Pull Requests](https://github.com/cbcoutinho/nextcloud-mcp-server/pulls)
- Read [CLAUDE.md](CLAUDE.md) for development guidelines
- Development guidelines: [CLAUDE.md](CLAUDE.md)
## Security
[![MseeP.ai Security Assessment](https://mseep.net/pr/cbcoutinho-nextcloud-mcp-server-badge.png)](https://mseep.ai/app/cbcoutinho-nextcloud-mcp-server)
This project takes security seriously:
- OAuth2/OIDC support (experimental - requires upstream patches)
- Basic Auth with app-specific passwords (recommended)
- No credential storage with OAuth mode
- Production-ready Basic Auth with app-specific passwords
- OAuth2/OIDC support (experimental, requires upstream patches)
- Per-user access tokens
- No credential storage in OAuth mode
- Regular security assessments
Found a security issue? Please report it privately to the maintainers.
+4 -4
View File
@@ -1,9 +1,9 @@
dependencies:
- name: qdrant
repository: https://qdrant.github.io/qdrant-helm
version: 0.9.0
version: 1.15.5
- name: ollama
repository: https://otwld.github.io/ollama-helm
version: 1.33.0
digest: sha256:c53b7a604d202460f60408a62025ae837cad8d4da970b1e5bb404e2b41289f94
generated: "2025-11-08T23:44:59.709689907+01:00"
version: 1.34.0
digest: sha256:d51c97d05be2614b751c0dd7267ef7dc959eff5ebef859c5f895c5c554b7a874
generated: "2025-11-09T17:08:02.86648061Z"
+5 -5
View File
@@ -2,8 +2,8 @@ apiVersion: v2
name: nextcloud-mcp-server
description: A Helm chart for Nextcloud MCP Server - enables AI assistants to interact with Nextcloud
type: application
version: 0.26.1
appVersion: "0.26.1"
version: 0.30.0
appVersion: "0.30.0"
keywords:
- nextcloud
- mcp
@@ -23,10 +23,10 @@ sources:
icon: https://raw.githubusercontent.com/nextcloud/server/master/core/img/logo/logo.svg
dependencies:
- name: qdrant
version: "0.9.0"
version: "1.15.5"
repository: https://qdrant.github.io/qdrant-helm
condition: qdrant.enabled
condition: qdrant.networkMode.deploySubchart
- name: ollama
version: "1.33.0"
version: "1.34.0"
repository: https://otwld.github.io/ollama-helm
condition: ollama.enabled
+13
View File
@@ -219,6 +219,19 @@ Enable semantic search capabilities by deploying a vector database (Qdrant) and
| `vectorSync.processorWorkers` | Number of concurrent processor workers | `3` |
| `vectorSync.queueMaxSize` | Maximum queue size for pending documents | `10000` |
**Document Chunking Configuration:**
| Parameter | Description | Default |
|-----------|-------------|---------|
| `documentChunking.chunkSize` | Number of words per chunk for embedding | `512` |
| `documentChunking.chunkOverlap` | Number of overlapping words between chunks | `50` |
**Chunking Strategy:**
- **Small chunks (256-384)**: Better precision for searches, more storage overhead
- **Medium chunks (512-768)**: Balanced approach (recommended for most use cases)
- **Large chunks (1024+)**: Better context preservation, less precise matching
- **Overlap**: Should be 10-20% of chunk size to preserve context across boundaries
**Qdrant Vector Database:**
Qdrant is deployed as a subchart when `qdrant.enabled` is `true`. All configuration values are passed through to the [qdrant/qdrant](https://github.com/qdrant/qdrant-helm) chart.
@@ -0,0 +1,90 @@
# Grafana Dashboards
This directory contains example Grafana dashboards for monitoring the Nextcloud MCP Server.
## Dashboards
### nextcloud-mcp-server.json
Comprehensive dashboard with the following panels:
- **Request Rate**: HTTP requests per second by method and endpoint
- **Error Rate**: Percentage of 5xx errors
- **Request Latency**: P50 and P95 latency by endpoint
- **Top MCP Tools**: Most frequently called tools
- **Nextcloud API Latency**: API call latency by app (notes, calendar, etc.)
- **Vector Sync Queue**: Queue size for background document processing
## Importing to Grafana
### Manual Import
1. Open Grafana UI
2. Navigate to Dashboards → Import
3. Upload `nextcloud-mcp-server.json`
4. Select your Prometheus data source
5. Click "Import"
### Automated Import (Kubernetes)
If using the Grafana Operator or kube-prometheus-stack, you can create a ConfigMap:
```bash
kubectl create configmap nextcloud-mcp-dashboards \
--from-file=nextcloud-mcp-server.json \
-n monitoring
# Add label for Grafana sidecar to discover
kubectl label configmap nextcloud-mcp-dashboards \
grafana_dashboard=1 \
-n monitoring
```
Or add to your Helm values:
```yaml
# values.yaml for kube-prometheus-stack
grafana:
dashboardProviders:
dashboardproviders.yaml:
apiVersion: 1
providers:
- name: 'nextcloud-mcp'
orgId: 1
folder: 'Nextcloud MCP'
type: file
disableDeletion: false
editable: true
options:
path: /var/lib/grafana/dashboards/nextcloud-mcp
dashboardsConfigMaps:
nextcloud-mcp: nextcloud-mcp-dashboards
```
## Dashboard Variables
The dashboard includes two variables:
- **Data Source**: Select your Prometheus data source
- **Namespace**: Filter metrics by Kubernetes namespace
## Customization
You can customize the dashboard by:
1. Adjusting refresh rate (default: 30s)
2. Modifying time range (default: last 6 hours)
3. Adding new panels for specific metrics
4. Adjusting thresholds in existing panels
## Metrics Reference
All metrics are documented in `/docs/observability.md`. Key metric prefixes:
- `mcp_http_*` - HTTP server metrics
- `mcp_tool_*` - MCP tool invocation metrics
- `mcp_nextcloud_api_*` - Nextcloud API call metrics
- `mcp_oauth_*` - OAuth token validation metrics
- `mcp_vector_sync_*` - Vector database sync metrics
- `mcp_db_*` - Database operation metrics
@@ -0,0 +1,630 @@
{
"annotations": {
"list": [
{
"builtIn": 1,
"datasource": {
"type": "grafana",
"uid": "-- Grafana --"
},
"enable": true,
"hide": true,
"iconColor": "rgba(0, 211, 255, 1)",
"name": "Annotations & Alerts",
"type": "dashboard"
}
]
},
"editable": true,
"fiscalYearStartMonth": 0,
"graphTooltip": 0,
"id": null,
"links": [],
"liveNow": false,
"panels": [
{
"datasource": {
"type": "prometheus",
"uid": "${datasource}"
},
"fieldConfig": {
"defaults": {
"color": {
"mode": "palette-classic"
},
"custom": {
"axisCenteredZero": false,
"axisColorMode": "text",
"axisLabel": "",
"axisPlacement": "auto",
"barAlignment": 0,
"drawStyle": "line",
"fillOpacity": 10,
"gradientMode": "none",
"hideFrom": {
"tooltip": false,
"viz": false,
"legend": false
},
"lineInterpolation": "linear",
"lineWidth": 1,
"pointSize": 5,
"scaleDistribution": {
"type": "linear"
},
"showPoints": "never",
"spanNulls": false,
"stacking": {
"group": "A",
"mode": "none"
},
"thresholdsStyle": {
"mode": "off"
}
},
"mappings": [],
"thresholds": {
"mode": "absolute",
"steps": [
{
"color": "green",
"value": null
}
]
},
"unit": "reqps"
},
"overrides": []
},
"gridPos": {
"h": 8,
"w": 12,
"x": 0,
"y": 0
},
"id": 1,
"options": {
"legend": {
"calcs": ["mean", "max"],
"displayMode": "table",
"placement": "bottom",
"showLegend": true
},
"tooltip": {
"mode": "multi",
"sort": "none"
}
},
"targets": [
{
"datasource": {
"type": "prometheus",
"uid": "${datasource}"
},
"expr": "sum(rate(mcp_http_requests_total{namespace=\"$namespace\"}[5m])) by (method, endpoint)",
"legendFormat": "{{method}} {{endpoint}}",
"refId": "A"
}
],
"title": "Request Rate",
"type": "timeseries"
},
{
"datasource": {
"type": "prometheus",
"uid": "${datasource}"
},
"fieldConfig": {
"defaults": {
"color": {
"mode": "thresholds"
},
"custom": {
"axisCenteredZero": false,
"axisColorMode": "text",
"axisLabel": "",
"axisPlacement": "auto",
"barAlignment": 0,
"drawStyle": "line",
"fillOpacity": 10,
"gradientMode": "none",
"hideFrom": {
"tooltip": false,
"viz": false,
"legend": false
},
"lineInterpolation": "linear",
"lineWidth": 1,
"pointSize": 5,
"scaleDistribution": {
"type": "linear"
},
"showPoints": "never",
"spanNulls": false,
"stacking": {
"group": "A",
"mode": "none"
},
"thresholdsStyle": {
"mode": "line"
}
},
"mappings": [],
"max": 100,
"min": 0,
"thresholds": {
"mode": "absolute",
"steps": [
{
"color": "green",
"value": null
},
{
"color": "yellow",
"value": 1
},
{
"color": "red",
"value": 5
}
]
},
"unit": "percent"
},
"overrides": []
},
"gridPos": {
"h": 8,
"w": 12,
"x": 12,
"y": 0
},
"id": 2,
"options": {
"legend": {
"calcs": ["mean", "max"],
"displayMode": "table",
"placement": "bottom",
"showLegend": true
},
"tooltip": {
"mode": "multi",
"sort": "none"
}
},
"targets": [
{
"datasource": {
"type": "prometheus",
"uid": "${datasource}"
},
"expr": "sum(rate(mcp_http_requests_total{status_code=~\"5..\", namespace=\"$namespace\"}[5m])) / sum(rate(mcp_http_requests_total{namespace=\"$namespace\"}[5m])) * 100",
"legendFormat": "Error Rate",
"refId": "A"
}
],
"title": "Error Rate (%)",
"type": "timeseries"
},
{
"datasource": {
"type": "prometheus",
"uid": "${datasource}"
},
"fieldConfig": {
"defaults": {
"color": {
"mode": "palette-classic"
},
"custom": {
"axisCenteredZero": false,
"axisColorMode": "text",
"axisLabel": "",
"axisPlacement": "auto",
"barAlignment": 0,
"drawStyle": "line",
"fillOpacity": 10,
"gradientMode": "none",
"hideFrom": {
"tooltip": false,
"viz": false,
"legend": false
},
"lineInterpolation": "linear",
"lineWidth": 1,
"pointSize": 5,
"scaleDistribution": {
"type": "linear"
},
"showPoints": "never",
"spanNulls": false,
"stacking": {
"group": "A",
"mode": "none"
},
"thresholdsStyle": {
"mode": "off"
}
},
"mappings": [],
"thresholds": {
"mode": "absolute",
"steps": [
{
"color": "green",
"value": null
}
]
},
"unit": "s"
},
"overrides": []
},
"gridPos": {
"h": 8,
"w": 12,
"x": 0,
"y": 8
},
"id": 3,
"options": {
"legend": {
"calcs": ["mean", "max"],
"displayMode": "table",
"placement": "bottom",
"showLegend": true
},
"tooltip": {
"mode": "multi",
"sort": "none"
}
},
"targets": [
{
"datasource": {
"type": "prometheus",
"uid": "${datasource}"
},
"expr": "histogram_quantile(0.95, sum(rate(mcp_http_request_duration_seconds_bucket{namespace=\"$namespace\"}[5m])) by (le, endpoint))",
"legendFormat": "{{endpoint}} (p95)",
"refId": "A"
},
{
"datasource": {
"type": "prometheus",
"uid": "${datasource}"
},
"expr": "histogram_quantile(0.50, sum(rate(mcp_http_request_duration_seconds_bucket{namespace=\"$namespace\"}[5m])) by (le, endpoint))",
"legendFormat": "{{endpoint}} (p50)",
"refId": "B"
}
],
"title": "Request Latency (P50/P95)",
"type": "timeseries"
},
{
"datasource": {
"type": "prometheus",
"uid": "${datasource}"
},
"fieldConfig": {
"defaults": {
"color": {
"mode": "palette-classic"
},
"custom": {
"axisCenteredZero": false,
"axisColorMode": "text",
"axisLabel": "",
"axisPlacement": "auto",
"barAlignment": 0,
"drawStyle": "line",
"fillOpacity": 10,
"gradientMode": "none",
"hideFrom": {
"tooltip": false,
"viz": false,
"legend": false
},
"lineInterpolation": "linear",
"lineWidth": 1,
"pointSize": 5,
"scaleDistribution": {
"type": "linear"
},
"showPoints": "never",
"spanNulls": false,
"stacking": {
"group": "A",
"mode": "none"
},
"thresholdsStyle": {
"mode": "off"
}
},
"mappings": [],
"thresholds": {
"mode": "absolute",
"steps": [
{
"color": "green",
"value": null
}
]
},
"unit": "short"
},
"overrides": []
},
"gridPos": {
"h": 8,
"w": 12,
"x": 12,
"y": 8
},
"id": 4,
"options": {
"legend": {
"calcs": ["mean", "max"],
"displayMode": "table",
"placement": "bottom",
"showLegend": true
},
"tooltip": {
"mode": "multi",
"sort": "none"
}
},
"targets": [
{
"datasource": {
"type": "prometheus",
"uid": "${datasource}"
},
"expr": "topk(10, sum(rate(mcp_tool_calls_total{namespace=\"$namespace\"}[5m])) by (tool_name))",
"legendFormat": "{{tool_name}}",
"refId": "A"
}
],
"title": "Top MCP Tools by Volume",
"type": "timeseries"
},
{
"datasource": {
"type": "prometheus",
"uid": "${datasource}"
},
"fieldConfig": {
"defaults": {
"color": {
"mode": "palette-classic"
},
"custom": {
"axisCenteredZero": false,
"axisColorMode": "text",
"axisLabel": "",
"axisPlacement": "auto",
"barAlignment": 0,
"drawStyle": "line",
"fillOpacity": 10,
"gradientMode": "none",
"hideFrom": {
"tooltip": false,
"viz": false,
"legend": false
},
"lineInterpolation": "linear",
"lineWidth": 1,
"pointSize": 5,
"scaleDistribution": {
"type": "linear"
},
"showPoints": "never",
"spanNulls": false,
"stacking": {
"group": "A",
"mode": "none"
},
"thresholdsStyle": {
"mode": "off"
}
},
"mappings": [],
"thresholds": {
"mode": "absolute",
"steps": [
{
"color": "green",
"value": null
}
]
},
"unit": "s"
},
"overrides": []
},
"gridPos": {
"h": 8,
"w": 12,
"x": 0,
"y": 16
},
"id": 5,
"options": {
"legend": {
"calcs": ["mean", "max"],
"displayMode": "table",
"placement": "bottom",
"showLegend": true
},
"tooltip": {
"mode": "multi",
"sort": "none"
}
},
"targets": [
{
"datasource": {
"type": "prometheus",
"uid": "${datasource}"
},
"expr": "histogram_quantile(0.95, sum(rate(mcp_nextcloud_api_duration_seconds_bucket{namespace=\"$namespace\"}[5m])) by (le, app))",
"legendFormat": "{{app}} (p95)",
"refId": "A"
}
],
"title": "Nextcloud API Latency by App",
"type": "timeseries"
},
{
"datasource": {
"type": "prometheus",
"uid": "${datasource}"
},
"fieldConfig": {
"defaults": {
"color": {
"mode": "palette-classic"
},
"custom": {
"axisCenteredZero": false,
"axisColorMode": "text",
"axisLabel": "",
"axisPlacement": "auto",
"barAlignment": 0,
"drawStyle": "line",
"fillOpacity": 10,
"gradientMode": "none",
"hideFrom": {
"tooltip": false,
"viz": false,
"legend": false
},
"lineInterpolation": "linear",
"lineWidth": 1,
"pointSize": 5,
"scaleDistribution": {
"type": "linear"
},
"showPoints": "never",
"spanNulls": false,
"stacking": {
"group": "A",
"mode": "none"
},
"thresholdsStyle": {
"mode": "off"
}
},
"mappings": [],
"thresholds": {
"mode": "absolute",
"steps": [
{
"color": "green",
"value": null
}
]
},
"unit": "short"
},
"overrides": []
},
"gridPos": {
"h": 8,
"w": 12,
"x": 12,
"y": 16
},
"id": 6,
"options": {
"legend": {
"calcs": ["mean", "lastNotNull"],
"displayMode": "table",
"placement": "bottom",
"showLegend": true
},
"tooltip": {
"mode": "multi",
"sort": "none"
}
},
"targets": [
{
"datasource": {
"type": "prometheus",
"uid": "${datasource}"
},
"expr": "mcp_vector_sync_queue_size{namespace=\"$namespace\"}",
"legendFormat": "Queue Size",
"refId": "A"
}
],
"title": "Vector Sync Queue Size",
"type": "timeseries"
}
],
"refresh": "30s",
"schemaVersion": 38,
"style": "dark",
"tags": ["nextcloud", "mcp", "observability"],
"templating": {
"list": [
{
"current": {
"selected": false,
"text": "Prometheus",
"value": "Prometheus"
},
"hide": 0,
"includeAll": false,
"label": "Data Source",
"multi": false,
"name": "datasource",
"options": [],
"query": "prometheus",
"refresh": 1,
"regex": "",
"skipUrlSync": false,
"type": "datasource"
},
{
"current": {
"selected": false,
"text": "default",
"value": "default"
},
"datasource": {
"type": "prometheus",
"uid": "${datasource}"
},
"definition": "label_values(mcp_http_requests_total, namespace)",
"hide": 0,
"includeAll": false,
"label": "Namespace",
"multi": false,
"name": "namespace",
"options": [],
"query": {
"query": "label_values(mcp_http_requests_total, namespace)",
"refId": "PrometheusVariableQueryEditor-VariableQuery"
},
"refresh": 1,
"regex": "",
"skipUrlSync": false,
"sort": 0,
"type": "query"
}
]
},
"time": {
"from": "now-6h",
"to": "now"
},
"timepicker": {},
"timezone": "",
"title": "Nextcloud MCP Server",
"uid": "nextcloud-mcp-server",
"version": 1,
"weekStart": ""
}
@@ -5,6 +5,8 @@ metadata:
labels:
{{- include "nextcloud-mcp-server.labels" . | nindent 4 }}
spec:
strategy:
type: Recreate
{{- if not .Values.autoscaling.enabled }}
replicas: {{ .Values.replicaCount }}
{{- end }}
@@ -56,6 +58,11 @@ spec:
- name: http
containerPort: {{ include "nextcloud-mcp-server.port" . }}
protocol: TCP
{{- if .Values.observability.metrics.enabled }}
- name: metrics
containerPort: {{ .Values.observability.metrics.port }}
protocol: TCP
{{- end }}
env:
# Nextcloud connection
- name: NEXTCLOUD_HOST
@@ -151,6 +158,11 @@ spec:
- name: VECTOR_SYNC_QUEUE_MAX_SIZE
value: {{ .Values.vectorSync.queueMaxSize | quote }}
{{- end }}
# Document Chunking (always set, used by vector sync processor)
- name: DOCUMENT_CHUNK_SIZE
value: {{ .Values.documentChunking.chunkSize | quote }}
- name: DOCUMENT_CHUNK_OVERLAP
value: {{ .Values.documentChunking.chunkOverlap | quote }}
# Qdrant Vector Database
{{- if eq .Values.qdrant.mode "network" }}
# Network mode: Use dedicated Qdrant service
@@ -200,6 +212,27 @@ spec:
value: {{ .Values.openai.baseUrl | quote }}
{{- end }}
{{- end }}
# Observability
- name: METRICS_ENABLED
value: {{ .Values.observability.metrics.enabled | quote }}
- name: METRICS_PORT
value: {{ .Values.observability.metrics.port | quote }}
{{- if .Values.observability.tracing.enabled }}
- name: OTEL_ENABLED
value: "true"
- name: OTEL_EXPORTER_OTLP_ENDPOINT
value: {{ .Values.observability.tracing.endpoint | quote }}
- name: OTEL_SERVICE_NAME
value: {{ .Values.observability.tracing.serviceName | quote }}
- name: OTEL_TRACES_SAMPLER_ARG
value: {{ .Values.observability.tracing.samplingRate | quote }}
{{- end }}
- name: LOG_FORMAT
value: {{ .Values.observability.logging.format | quote }}
- name: LOG_LEVEL
value: {{ .Values.observability.logging.level | quote }}
- name: LOG_INCLUDE_TRACE_CONTEXT
value: {{ .Values.observability.logging.includeTraceContext | quote }}
{{- with .Values.extraEnv }}
{{- toYaml . | nindent 12 }}
{{- end }}
@@ -0,0 +1,92 @@
{{- if and .Values.observability.metrics.enabled .Values.prometheusRule.enabled }}
apiVersion: monitoring.coreos.com/v1
kind: PrometheusRule
metadata:
name: {{ include "nextcloud-mcp-server.fullname" . }}
namespace: {{ .Release.Namespace }}
labels:
{{- include "nextcloud-mcp-server.labels" . | nindent 4 }}
{{- with .Values.prometheusRule.labels }}
{{- toYaml . | nindent 4 }}
{{- end }}
spec:
groups:
- name: nextcloud-mcp-server.critical
interval: 30s
rules:
- alert: NextcloudMCPServerDown
expr: up{job="{{ include "nextcloud-mcp-server.fullname" . }}"} == 0
for: 5m
labels:
severity: critical
annotations:
summary: "Nextcloud MCP Server is down"
description: "{{ `{{` }} $labels.pod {{ `}}` }} has been down for more than 5 minutes."
- alert: NextcloudMCPHighErrorRate
expr: |
sum(rate(mcp_http_requests_total{status_code=~"5..", job="{{ include "nextcloud-mcp-server.fullname" . }}"}[5m]))
/ sum(rate(mcp_http_requests_total{job="{{ include "nextcloud-mcp-server.fullname" . }}"}[5m])) > 0.05
for: 5m
labels:
severity: critical
annotations:
summary: "High error rate on Nextcloud MCP Server"
description: "Error rate is {{ `{{` }} printf \"%.2f%%\" (mul $value 100) {{ `}}` }} (threshold: 5%)"
- alert: NextcloudMCPHighLatency
expr: |
histogram_quantile(0.95,
sum(rate(mcp_http_request_duration_seconds_bucket{job="{{ include "nextcloud-mcp-server.fullname" . }}"}[5m])) by (le, endpoint)
) > 1
for: 5m
labels:
severity: critical
annotations:
summary: "High latency on Nextcloud MCP Server"
description: "P95 latency is {{ `{{` }} printf \"%.2fs\" $value {{ `}}` }} on {{ `{{` }} $labels.endpoint {{ `}}` }} (threshold: 1s)"
- alert: NextcloudMCPDependencyDown
expr: mcp_dependency_health{job="{{ include "nextcloud-mcp-server.fullname" . }}"} == 0
for: 2m
labels:
severity: critical
annotations:
summary: "Nextcloud MCP dependency is down"
description: "Dependency {{ `{{` }} $labels.dependency {{ `}}` }} has been down for more than 2 minutes."
- name: nextcloud-mcp-server.warning
interval: 30s
rules:
- alert: NextcloudMCPTokenValidationErrors
expr: |
sum(rate(mcp_oauth_token_validations_total{result="error", job="{{ include "nextcloud-mcp-server.fullname" . }}"}[10m]))
/ sum(rate(mcp_oauth_token_validations_total{job="{{ include "nextcloud-mcp-server.fullname" . }}"}[10m])) > 0.01
for: 10m
labels:
severity: warning
annotations:
summary: "High token validation error rate"
description: "Token validation error rate is {{ `{{` }} printf \"%.2f%%\" (mul $value 100) {{ `}}` }} (threshold: 1%)"
- alert: NextcloudMCPVectorSyncQueueHigh
expr: mcp_vector_sync_queue_size{job="{{ include "nextcloud-mcp-server.fullname" . }}"} > 100
for: 15m
labels:
severity: warning
annotations:
summary: "Vector sync queue is high"
description: "Vector sync queue size is {{ `{{` }} $value {{ `}}` }} (threshold: 100)"
- alert: NextcloudMCPQdrantSlowQueries
expr: |
histogram_quantile(0.95,
sum(rate(mcp_db_operation_duration_seconds_bucket{db="qdrant", job="{{ include "nextcloud-mcp-server.fullname" . }}"}[10m])) by (le)
) > 0.5
for: 10m
labels:
severity: warning
annotations:
summary: "Qdrant queries are slow"
description: "P95 Qdrant query latency is {{ `{{` }} printf \"%.2fs\" $value {{ `}}` }} (threshold: 0.5s)"
{{- end }}
@@ -15,5 +15,11 @@ spec:
targetPort: http
protocol: TCP
name: http
{{- if .Values.observability.metrics.enabled }}
- port: {{ .Values.observability.metrics.port }}
targetPort: metrics
protocol: TCP
name: metrics
{{- end }}
selector:
{{- include "nextcloud-mcp-server.selectorLabels" . | nindent 4 }}
@@ -0,0 +1,32 @@
{{- if and .Values.observability.metrics.enabled .Values.serviceMonitor.enabled }}
apiVersion: monitoring.coreos.com/v1
kind: ServiceMonitor
metadata:
name: {{ include "nextcloud-mcp-server.fullname" . }}
namespace: {{ .Release.Namespace }}
labels:
{{- include "nextcloud-mcp-server.labels" . | nindent 4 }}
{{- with .Values.serviceMonitor.labels }}
{{- toYaml . | nindent 4 }}
{{- end }}
spec:
selector:
matchLabels:
{{- include "nextcloud-mcp-server.selectorLabels" . | nindent 6 }}
endpoints:
- port: metrics
path: {{ .Values.observability.metrics.path }}
interval: {{ .Values.serviceMonitor.interval }}
scrapeTimeout: {{ .Values.serviceMonitor.scrapeTimeout }}
scheme: http
relabelings:
# Add namespace label
- sourceLabels: [__meta_kubernetes_namespace]
targetLabel: namespace
# Add pod label
- sourceLabels: [__meta_kubernetes_pod_name]
targetLabel: pod
# Add service label
- sourceLabels: [__meta_kubernetes_service_name]
targetLabel: service
{{- end }}
+51
View File
@@ -168,6 +168,43 @@ securityContext:
runAsNonRoot: true
runAsUser: 1000
# Observability Configuration
observability:
# Prometheus metrics
metrics:
enabled: true
port: 9090
path: /metrics
# OpenTelemetry tracing
tracing:
enabled: false
endpoint: "" # e.g., "http://opentelemetry-collector:4317"
serviceName: "nextcloud-mcp-server"
samplingRate: 1.0
# Logging configuration
logging:
format: json # "json" or "text"
level: INFO
includeTraceContext: true
# Prometheus ServiceMonitor (requires Prometheus Operator)
serviceMonitor:
enabled: false
interval: 30s
scrapeTimeout: 10s
labels: {}
# Additional labels for ServiceMonitor (e.g., for Prometheus selector)
# Example: { prometheus: kube-prometheus }
# Prometheus alert rules (requires Prometheus Operator)
prometheusRule:
enabled: false
labels: {}
# Additional labels for PrometheusRule (e.g., for Prometheus selector)
# Example: { prometheus: kube-prometheus }
service:
type: ClusterIP
port: 8000
@@ -277,6 +314,20 @@ vectorSync:
# Maximum queue size for documents pending indexing
queueMaxSize: 10000
# Document Chunking Configuration
# Controls how documents are split into chunks before embedding
# Only relevant when vectorSync.enabled is true
documentChunking:
# Number of words per chunk (default: 512)
# Smaller chunks (256-384): Better for precise searches, more chunks to store
# Medium chunks (512-768): Balanced approach (recommended for most use cases)
# Larger chunks (1024+): Better for context, less precise matching
chunkSize: 512
# Number of overlapping words between chunks (default: 50)
# Recommended: 10-20% of chunkSize for context preservation across boundaries
# Must be less than chunkSize
chunkOverlap: 50
# Qdrant Vector Database Configuration
# Three deployment modes available:
# 1. Local In-Memory: Fast, ephemeral, zero-config (mode: "memory")
+20 -6
View File
@@ -88,20 +88,34 @@ services:
- VECTOR_SYNC_SCAN_INTERVAL=10
- VECTOR_SYNC_PROCESSOR_WORKERS=1
- LOG_FORMAT=text
# Qdrant configuration (three modes):
# 1. Network mode: Set QDRANT_URL=http://qdrant:6333 (requires qdrant service)
# 2. In-memory mode: Set QDRANT_LOCATION=:memory: (default if nothing set)
# 3. Persistent local: Set QDRANT_LOCATION=/app/data/qdrant (stored in mcp-data volume)
- QDRANT_LOCATION=:memory:
# - QDRANT_URL=http://qdrant:6333 # Uncomment for network mode
# - QDRANT_API_KEY=${QDRANT_API_KEY:-my_secret_api_key} # Only for network mode
- QDRANT_LOCATION=":memory:" # In-memory mode for CI/testing (no external service required)
#- QDRANT_URL=http://qdrant:6333 # Uncomment for network mode
#- QDRANT_API_KEY=${QDRANT_API_KEY:-my_secret_api_key} # Only for network mode
# Collection naming: Auto-generated as {deployment-id}-{model-name}
# - Deployment ID: OTEL_SERVICE_NAME (if set) or hostname (fallback)
# - Model name: OLLAMA_EMBEDDING_MODEL
# - Example: "nextcloud-mcp-server-nomic-embed-text"
# - Changing models creates new collection (requires re-embedding)
# - Set QDRANT_COLLECTION to override auto-generation:
- QDRANT_COLLECTION=nextcloud_content
# Ollama configuration (optional - uses SimpleEmbeddingProvider if not set)
# - OLLAMA_BASE_URL=http://your-ollama-endpoint:port
# - OLLAMA_EMBEDDING_MODEL=nomic-embed-text
# - OLLAMA_BASE_URL=https://ollama.internal.coutinho.io:443
# - OLLAMA_EMBEDDING_MODEL=nomic-embed-text # Changing this creates new collection
# - OLLAMA_VERIFY_SSL=false
# Document chunking configuration (for vector embeddings)
# Tune these based on your embedding model and content type
# - DOCUMENT_CHUNK_SIZE=512 # Words per chunk (default: 512)
# - DOCUMENT_CHUNK_OVERLAP=50 # Overlapping words (default: 50, recommended: 10-20% of chunk size)
mcp-oauth:
build: .
command: ["--transport", "streamable-http", "--oauth", "--port", "8001", "--oauth-token-type", "jwt"]
@@ -205,7 +219,7 @@ services:
- keycloak-oauth-storage:/app/.oauth
qdrant:
image: qdrant/qdrant:latest
image: qdrant/qdrant:v1.15.5
restart: always
ports:
- 127.0.0.1:6333:6333 # REST API
+159
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@@ -178,6 +178,111 @@ VECTOR_SYNC_ENABLED=true
- Requires separate Qdrant service
- More complex deployment
### Qdrant Collection Naming
Collection names are automatically generated to include the embedding model, ensuring safe model switching and preventing dimension mismatches.
#### Auto-Generated Naming (Default)
**Format:** `{deployment-id}-{model-name}`
**Components:**
- **Deployment ID:** `OTEL_SERVICE_NAME` (if configured) or `hostname` (fallback)
- **Model name:** `OLLAMA_EMBEDDING_MODEL`
**Examples:**
```bash
# With OTEL service name configured
OTEL_SERVICE_NAME=my-mcp-server
OLLAMA_EMBEDDING_MODEL=nomic-embed-text
# → Collection: "my-mcp-server-nomic-embed-text"
# Simple Docker deployment (OTEL not configured)
# hostname=mcp-container
OLLAMA_EMBEDDING_MODEL=all-minilm
# → Collection: "mcp-container-all-minilm"
```
#### Switching Embedding Models
When you change `OLLAMA_EMBEDDING_MODEL`, a new collection is automatically created:
```bash
# Initial setup
OLLAMA_EMBEDDING_MODEL=nomic-embed-text
# Collection: "my-server-nomic-embed-text" (768 dimensions)
# Change model
OLLAMA_EMBEDDING_MODEL=all-minilm
# Collection: "my-server-all-minilm" (384 dimensions)
# → New collection created, full re-embedding occurs
```
**Important:**
- **Collections are mutually exclusive** - vectors cannot be shared between different embedding models
- **Switching models requires re-embedding** all documents (may take time for large note collections)
- **Old collection remains** in Qdrant and can be deleted manually if no longer needed
#### Explicit Override
Set `QDRANT_COLLECTION` to use a specific collection name:
```bash
QDRANT_COLLECTION=my-custom-collection # Bypasses auto-generation
```
**Use cases:**
- Backward compatibility with existing deployments
- Custom naming schemes
- Sharing a collection across deployments (advanced)
#### Multi-Server Deployments
Each server should have a unique deployment ID to avoid collection collisions:
```bash
# Server 1 (Production)
OTEL_SERVICE_NAME=mcp-prod
OLLAMA_EMBEDDING_MODEL=nomic-embed-text
# → Collection: "mcp-prod-nomic-embed-text"
# Server 2 (Staging)
OTEL_SERVICE_NAME=mcp-staging
OLLAMA_EMBEDDING_MODEL=nomic-embed-text
# → Collection: "mcp-staging-nomic-embed-text"
# Server 3 (Different model)
OTEL_SERVICE_NAME=mcp-experimental
OLLAMA_EMBEDDING_MODEL=bge-large
# → Collection: "mcp-experimental-bge-large"
```
**Benefits:**
- Multiple MCP servers can share one Qdrant instance safely
- No naming collisions between deployments
- Clear collection ownership (can see which deployment and model)
#### Dimension Validation
The server validates collection dimensions on startup:
```
Dimension mismatch for collection 'my-server-nomic-embed-text':
Expected: 384 (from embedding model 'all-minilm')
Found: 768
This usually means you changed the embedding model.
Solutions:
1. Delete the old collection: Collection will be recreated with new dimensions
2. Set QDRANT_COLLECTION to use a different collection name
3. Revert OLLAMA_EMBEDDING_MODEL to the original model
```
**What this prevents:**
- Runtime errors from dimension mismatches
- Data corruption in Qdrant
- Confusing error messages during indexing
### Vector Sync Configuration
Control background indexing behavior:
@@ -188,6 +293,10 @@ VECTOR_SYNC_ENABLED=true # Enable background indexing
VECTOR_SYNC_SCAN_INTERVAL=300 # Scan interval in seconds (default: 5 minutes)
VECTOR_SYNC_PROCESSOR_WORKERS=3 # Concurrent indexing workers (default: 3)
VECTOR_SYNC_QUEUE_MAX_SIZE=10000 # Max queued documents (default: 10000)
# Document chunking settings (for vector embeddings)
DOCUMENT_CHUNK_SIZE=512 # Words per chunk (default: 512)
DOCUMENT_CHUNK_OVERLAP=50 # Overlapping words between chunks (default: 50)
```
### Embedding Service Configuration
@@ -208,6 +317,54 @@ OLLAMA_VERIFY_SSL=true # Verify SSL certificates
If `OLLAMA_BASE_URL` is not set, the server uses a simple random embedding provider for testing. This is **not suitable for production** as it generates random embeddings with no semantic meaning.
### Document Chunking Configuration
The server chunks documents before embedding to handle documents larger than the embedding model's context window. Chunk size and overlap can be tuned based on your embedding model and content type.
#### Choosing Chunk Size
**Smaller chunks (256-384 words)**:
- More precise matching
- Less context per chunk
- Better for finding specific information
- Higher storage requirements (more vectors)
**Larger chunks (768-1024 words)**:
- More context per chunk
- Less precise matching
- Better for understanding broader topics
- Lower storage requirements (fewer vectors)
**Default (512 words)**:
- Balanced approach suitable for most use cases
- Works well with typical note lengths
- Good compromise between precision and context
#### Choosing Overlap
Overlap preserves context across chunk boundaries. Recommended settings:
- **10-20% of chunk size** (e.g., 50-100 words for 512-word chunks)
- **Too small** (<10%): May lose context at boundaries
- **Too large** (>20%): Redundant storage, diminishing returns
**Examples**:
```dotenv
# Precise matching for short notes
DOCUMENT_CHUNK_SIZE=256
DOCUMENT_CHUNK_OVERLAP=25
# Default balanced configuration
DOCUMENT_CHUNK_SIZE=512
DOCUMENT_CHUNK_OVERLAP=50
# More context for long documents
DOCUMENT_CHUNK_SIZE=1024
DOCUMENT_CHUNK_OVERLAP=100
```
**Important**: Changing chunk size requires re-embedding all documents. The collection naming strategy (see "Qdrant Collection Naming" above) helps manage this by creating separate collections for different configurations.
### Environment Variables Reference
| Variable | Required | Default | Description |
@@ -223,6 +380,8 @@ If `OLLAMA_BASE_URL` is not set, the server uses a simple random embedding provi
| `OLLAMA_BASE_URL` | ⚠️ Optional | - | Ollama API endpoint for embeddings |
| `OLLAMA_EMBEDDING_MODEL` | ⚠️ Optional | `nomic-embed-text` | Embedding model to use |
| `OLLAMA_VERIFY_SSL` | ⚠️ Optional | `true` | Verify SSL certificates |
| `DOCUMENT_CHUNK_SIZE` | ⚠️ Optional | `512` | Words per chunk for document embedding |
| `DOCUMENT_CHUNK_OVERLAP` | ⚠️ Optional | `50` | Overlapping words between chunks (must be < chunk size) |
### Docker Compose Example
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@@ -0,0 +1,260 @@
# Observability and Monitoring
The Nextcloud MCP Server includes comprehensive observability features for production deployments:
- **Prometheus metrics** for monitoring performance and health
- **OpenTelemetry distributed tracing** for debugging request flows
- **Structured JSON logging** with trace correlation
- **Kubernetes integration** via ServiceMonitor and PrometheusRule
## Quick Start
### Local Development with Prometheus
```bash
# Enable metrics (enabled by default)
export METRICS_ENABLED=true
export METRICS_PORT=9090
# Enable tracing (optional)
export OTEL_ENABLED=true
export OTEL_EXPORTER_OTLP_ENDPOINT=http://localhost:4317
# Start the server
docker-compose up -d mcp
```
Access metrics at: `http://localhost:9090/metrics`
### Kubernetes Deployment
Metrics are automatically scraped if you have Prometheus Operator installed:
```bash
helm install nextcloud-mcp charts/nextcloud-mcp-server \
--set observability.metrics.enabled=true \
--set observability.tracing.enabled=true \
--set observability.tracing.endpoint=http://opentelemetry-collector:4317 \
--set serviceMonitor.enabled=true
```
## Configuration
### Environment Variables
| Variable | Default | Description |
|----------|---------|-------------|
| `METRICS_ENABLED` | `true` | Enable Prometheus metrics |
| `METRICS_PORT` | `9090` | Port for metrics endpoint |
| `OTEL_ENABLED` | `false` | Enable OpenTelemetry tracing |
| `OTEL_EXPORTER_OTLP_ENDPOINT` | - | OTLP gRPC endpoint (e.g., `http://otel-collector:4317`) |
| `OTEL_SERVICE_NAME` | `nextcloud-mcp-server` | Service name in traces |
| `OTEL_TRACES_SAMPLER` | `always_on` | Trace sampling strategy |
| `OTEL_TRACES_SAMPLER_ARG` | `1.0` | Sampling rate (0.0-1.0) |
| `LOG_FORMAT` | `json` | Log format (`json` or `text`) |
| `LOG_LEVEL` | `INFO` | Minimum log level |
| `LOG_INCLUDE_TRACE_CONTEXT` | `true` | Include trace IDs in logs |
### Helm Chart Configuration
```yaml
observability:
metrics:
enabled: true
port: 9090
path: /metrics
tracing:
enabled: true
endpoint: "http://opentelemetry-collector:4317"
samplingRate: 1.0
logging:
format: json
level: INFO
includeTraceContext: true
serviceMonitor:
enabled: true
interval: 30s
scrapeTimeout: 10s
```
## Metrics
### HTTP Server Metrics (RED)
- `mcp_http_requests_total` - Total HTTP requests
- `mcp_http_request_duration_seconds` - Request latency histogram
- `mcp_http_requests_in_progress` - In-flight requests gauge
### MCP Tool Metrics
- `mcp_tool_calls_total` - Tool invocation count by status
- `mcp_tool_duration_seconds` - Tool execution latency
- `mcp_tool_errors_total` - Tool errors by type
### Nextcloud API Metrics
- `mcp_nextcloud_api_requests_total` - API calls by app and status
- `mcp_nextcloud_api_duration_seconds` - API latency by app
- `mcp_nextcloud_api_retries_total` - Retry count (429, timeout, etc.)
### OAuth Flow Metrics
- `mcp_oauth_token_validations_total` - Token validation count
- `mcp_oauth_token_exchange_total` - Token exchange operations
- `mcp_oauth_token_cache_hits_total` - Cache hit/miss rate
- `mcp_oauth_refresh_token_operations_total` - Refresh token storage ops
### Vector Sync Metrics (when enabled)
- `mcp_vector_sync_documents_scanned_total` - Documents discovered
- `mcp_vector_sync_documents_processed_total` - Processing results
- `mcp_vector_sync_processing_duration_seconds` - Processing latency
- `mcp_vector_sync_queue_size` - Current queue depth
- `mcp_qdrant_operations_total` - Qdrant DB operations
### Database Metrics
- `mcp_db_operations_total` - DB operations (SQLite, Qdrant)
- `mcp_db_operation_duration_seconds` - DB latency
### Dependency Health
- `mcp_dependency_health` - External dependency status (1=up, 0=down)
- `mcp_dependency_check_duration_seconds` - Health check latency
## Distributed Tracing
### Span Hierarchy
```
HTTP POST /messages
├── mcp.tool.nc_notes_create_note
│ └── nextcloud.api.notes.POST
│ └── httpx request (auto-instrumented)
└── oauth.token.validate (if OAuth mode)
└── httpx request to IdP
```
### Span Attributes
- **MCP tools**: `mcp.tool.name`, `mcp.tool.args` (sanitized)
- **Nextcloud API**: `nextcloud.app`, `http.method`, `http.status_code`
- **OAuth**: `oauth.operation`, `oauth.method`
- **Vector sync**: `vector_sync.operation`, `vector_sync.document_count`
### Trace Context in Logs
When tracing is enabled, all logs include `trace_id` and `span_id`:
```json
{
"timestamp": "2025-01-09T12:34:56.789Z",
"level": "INFO",
"logger": "nextcloud_mcp_server.server.notes",
"message": "Note created successfully",
"trace_id": "a1b2c3d4e5f6...",
"span_id": "123456789abc...",
"note_id": 42
}
```
## Dashboards
### Prometheus Queries
**Request Rate (req/s)**:
```promql
sum(rate(mcp_http_requests_total[5m])) by (method, endpoint)
```
**Error Rate (%)**:
```promql
sum(rate(mcp_http_requests_total{status_code=~"5.."}[5m]))
/ sum(rate(mcp_http_requests_total[5m])) * 100
```
**P95 Latency**:
```promql
histogram_quantile(0.95,
sum(rate(mcp_http_request_duration_seconds_bucket[5m])) by (le, endpoint)
)
```
**Top Tools by Volume**:
```promql
topk(10, sum(rate(mcp_tool_calls_total[5m])) by (tool_name))
```
**Nextcloud API Health**:
```promql
sum(rate(mcp_nextcloud_api_requests_total{status_code!~"2.."}[5m])) by (app)
```
## Alerts
### Recommended Alert Rules
**Critical**:
- Server down for >5min
- Error rate >5% for >5min
- P95 latency >1s for >5min
- Dependency down for >2min
**Warning**:
- Token validation errors >1% for >10min
- Vector sync queue >100 for >15min
- Qdrant slow (p95 >500ms) for >10min
See `charts/nextcloud-mcp-server/templates/prometheusrule.yaml` for complete definitions.
## Troubleshooting
### Metrics Not Appearing
1. Check metrics are enabled: `curl http://localhost:9090/metrics`
2. Verify ServiceMonitor labels match Prometheus selector
3. Check Prometheus target status: `http://prometheus:9090/targets`
### Traces Not Appearing
1. Verify OTLP endpoint is reachable: `curl http://otel-collector:4317`
2. Check collector logs for errors
3. Verify sampling rate is not 0.0
4. Check trace backend (Jaeger/Tempo) connectivity
### High Cardinality Metrics
If you see cardinality warnings:
- Middleware normalizes endpoints (e.g., `/user/123``/user/*`)
- OAuth tokens are never included in metric labels
- User IDs are not tracked (use tracing for per-user debugging)
## Performance Impact
- **Metrics**: <1% overhead (counters/histograms are very fast)
- **Tracing**: ~2-5% overhead at 100% sampling
- **JSON logging**: <1% overhead vs text logging
**Recommendation**: Always enable metrics. Enable tracing in staging/production with 10-50% sampling.
## Architecture
The observability stack integrates at multiple layers:
1. **HTTP Layer**: `ObservabilityMiddleware` tracks all HTTP requests
2. **MCP Layer**: Tools use `@trace_mcp_tool` for span creation
3. **Client Layer**: `BaseNextcloudClient` tracks all API calls
4. **OAuth Layer**: Token operations are traced and metered
5. **Background Tasks**: Vector sync operations emit metrics/traces
All components use shared Prometheus `Registry` and OpenTelemetry `TracerProvider`.
## References
- [Prometheus Best Practices](https://prometheus.io/docs/practices/)
- [OpenTelemetry Python SDK](https://opentelemetry.io/docs/languages/python/)
- [Prometheus Operator](https://prometheus-operator.dev/)
- [Grafana Dashboards](https://grafana.com/docs/grafana/latest/dashboards/)
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@@ -0,0 +1,921 @@
# Semantic Search Architecture
This document explains the architecture of the semantic search feature in the Nextcloud MCP Server, including background synchronization, vector search, and optional AI-generated answers via MCP sampling.
> [!IMPORTANT]
> **Status: Experimental**
> - Disabled by default (`VECTOR_SYNC_ENABLED=false`)
> - Currently supports **Notes app only** (multi-app architecture ready, additional apps planned)
> - Requires additional infrastructure (Qdrant vector database + Ollama embedding service)
> - RAG answer generation requires MCP client sampling support
## Overview
### What is Semantic Search?
**Semantic search** finds information based on **meaning** rather than exact keyword matches. It uses vector embeddings to understand that "car" and "automobile" are similar, or that "bread recipe" matches "how to bake bread."
**Traditional keyword search:**
```
Query: "machine learning"
Matches: Only notes containing "machine learning" exactly
Misses: Notes with "neural networks", "AI models", "deep learning"
```
**Semantic search:**
```
Query: "machine learning"
Matches: Notes about machine learning, neural networks, AI, deep learning, etc.
Understanding: Semantic similarity via vector embeddings
```
### Why It Matters
Semantic search enables:
- **Natural language queries** - Ask questions in plain language
- **Conceptual discovery** - Find related content even with different terminology
- **Cross-reference insights** - Connect ideas across your knowledge base
- **AI-powered answers** - Generate summaries with citations (optional, requires MCP sampling)
### Current Support
- **Supported Apps**: Notes (fully implemented)
- **Planned Apps**: Calendar events, Calendar tasks, Deck cards, Files (with text extraction), Contacts
- **Architecture**: Multi-app plugin system ready, awaiting implementation
## System Components
```mermaid
graph TB
subgraph "MCP Client"
Client[Claude Desktop, IDEs, etc.]
end
subgraph "Nextcloud MCP Server"
MCP[MCP Server]
Scanner[Background Scanner<br/>Hourly Change Detection]
Queue[Document Queue]
Processor[Embedding Processors<br/>Concurrent Workers]
end
subgraph "Infrastructure"
Qdrant[(Qdrant<br/>Vector Database)]
Ollama[Ollama<br/>Embedding Service]
NC[Nextcloud<br/>Notes API, CalDAV, etc.]
end
Client <-->|MCP Protocol| MCP
Scanner -->|Fetch Changes| NC
Scanner -->|Enqueue Documents| Queue
Queue -->|Process Batch| Processor
Processor -->|Generate Embeddings| Ollama
Processor -->|Store Vectors| Qdrant
MCP -->|Search Queries| Qdrant
MCP -->|Verify Access| NC
```
**Component Roles:**
- **MCP Server**: Exposes semantic search tools (`nc_semantic_search`, `nc_semantic_search_answer`, `nc_get_vector_sync_status`)
- **Background Scanner**: Discovers changed documents every hour using ETag-based change detection
- **Document Queue**: Holds pending documents for embedding generation
- **Embedding Processors**: Generate vector embeddings via Ollama (concurrent workers)
- **Qdrant Vector Database**: Stores document vectors with metadata and user_id filtering
- **Ollama Embedding Service**: Converts text to 768-dimensional vectors (default: `nomic-embed-text` model)
- **Nextcloud APIs**: Source of truth for documents and access control verification
## How It Works: Background Synchronization
Background synchronization runs automatically when `VECTOR_SYNC_ENABLED=true`, discovering changes and indexing documents without user intervention.
```mermaid
sequenceDiagram
participant Timer
participant Scanner
participant NC as Nextcloud API
participant Queue
participant Processor
participant Ollama
participant Qdrant
Timer->>Scanner: Trigger (hourly)
Scanner->>NC: Fetch all notes<br/>(Notes API)
NC-->>Scanner: Notes with ETags
Scanner->>Qdrant: Check indexed documents
Qdrant-->>Scanner: Existing ETags
Scanner->>Scanner: Identify changes<br/>(new/modified/deleted)
Scanner->>Queue: Enqueue changed docs
loop Continuous Processing
Processor->>Queue: Fetch batch
Queue-->>Processor: Documents
Processor->>Ollama: Generate embeddings
Ollama-->>Processor: 768-dim vectors
Processor->>Qdrant: Upsert vectors<br/>(with user_id, doc_type)
end
```
### Scanner Behavior
**Hourly Trigger:**
- Runs every hour (configurable)
- Fetches all notes from Nextcloud Notes API
- Compares ETags with Qdrant's indexed state
- Enqueues new/modified documents
**Change Detection:**
- **New documents**: No entry in Qdrant → enqueue for indexing
- **Modified documents**: ETag mismatch → enqueue for re-indexing
- **Deleted documents**: In Qdrant but not in Nextcloud → delete from Qdrant
**Multi-App Plugin Architecture:**
```python
# Each app implements DocumentScanner interface
class NotesScanner(DocumentScanner):
async def scan(self) -> list[Document]:
# Fetch notes, detect changes, return documents
```
Currently only `NotesScanner` is implemented. Future: `CalendarScanner`, `DeckScanner`, `FilesScanner`, etc.
### Queue Processing
**Document Queue:**
- In-memory FIFO queue (not persistent across restarts)
- Holds documents pending embedding generation
- Batch processing for efficiency
**Processor Pool:**
- Concurrent workers using `anyio.TaskGroup`
- Process documents in parallel (default: 4 workers)
- Each worker: fetch document → generate embedding → store in Qdrant
**Backpressure Handling:**
- Queue size limits prevent memory exhaustion
- Slow consumers (Ollama) naturally pace the system
### Vector Storage
**Qdrant Collection Schema:**
```
{
"id": "note_123",
"vector": [768 dimensions],
"payload": {
"user_id": "alice",
"doc_type": "note",
"doc_id": "123",
"title": "Machine Learning Notes",
"content": "Neural networks are...",
"etag": "abc123",
"last_modified": "2025-01-15T10:30:00Z"
}
}
```
**Key Fields:**
- `user_id`: Multi-tenancy filtering (each user's vectors isolated)
- `doc_type`: App identifier ("note", "event", "card", etc.)
- `etag`: Change detection for incremental updates
- `chunk_index`: Position of this chunk within the document (0-indexed)
- `total_chunks`: Total number of chunks for this document
- `excerpt`: First 200 characters of chunk (for display)
### Document Chunking Strategy
Documents are chunked before embedding to handle content larger than the embedding model's context window and to improve search precision.
**Configuration:**
```dotenv
DOCUMENT_CHUNK_SIZE=512 # Words per chunk (default)
DOCUMENT_CHUNK_OVERLAP=50 # Overlapping words between chunks (default)
```
**Chunking Process:**
1. **Text combination**: Document title + content (e.g., `"Note Title\n\nNote content..."`)
2. **Word-based splitting**: Simple whitespace tokenization
3. **Sliding window**: Create overlapping chunks
4. **Individual embedding**: Each chunk gets its own vector
5. **Separate storage**: Each chunk stored as distinct point in Qdrant
**Example:**
```
Document (1000 words):
→ Chunk 0: words 0-511
→ Chunk 1: words 462-973 (overlaps by 50 words)
→ Chunk 2: words 924-999 (last chunk, partial)
Each chunk stored as separate vector with metadata:
- chunk_index: 0, 1, 2
- total_chunks: 3
- excerpt: First 200 chars of each chunk
```
**Search Behavior:**
- **Vector search** operates on chunks (not whole documents)
- **Deduplication** collapses multiple matching chunks from same document
- **Best match** returns highest-scoring chunk's excerpt
- **Access verification** still performed at document level
**Tuning Recommendations:**
- **Small chunks (256-384 words)**: More precise, less context, more storage
- **Large chunks (768-1024 words)**: More context, less precise, less storage
- **Overlap (10-20% of chunk size)**: Preserves context across boundaries
- **Match to embedding model**: Consider model's context window when sizing
**Important**: Changing chunk size requires re-embedding all documents. Use the collection naming strategy to manage different chunking configurations.
### Collection Naming and Model Switching
**Auto-generated collection names:**
- **Format:** `{deployment-id}-{model-name}`
- **Deployment ID:** `OTEL_SERVICE_NAME` (if configured) or `hostname` (fallback)
- **Model name:** `OLLAMA_EMBEDDING_MODEL`
- **Example:** `"my-mcp-server-nomic-embed-text"`, `"mcp-container-all-minilm"`
**Why model-based naming:**
- Ensures each embedding model gets its own collection
- Prevents dimension mismatches when switching models
- Enables safe model experimentation (new model = new collection)
- Supports multi-server deployments (different deployment IDs)
**Switching embedding models:**
Collections are **mutually exclusive** - vectors from one embedding model cannot be used with another. When you change the embedding model:
1. **New collection is created** with the new model's dimensions
2. **Full re-embedding occurs** - scanner processes all documents again
3. **Old collection remains** - can be deleted manually if no longer needed
4. **Dimension validation** - server fails fast if collection dimension doesn't match model
**Example workflow:**
```bash
# Start with nomic-embed-text (768 dimensions)
OLLAMA_EMBEDDING_MODEL=nomic-embed-text
# Collection: "my-server-nomic-embed-text"
# → Scanner indexes 1000 notes → 1000 vectors in collection
# Switch to all-minilm (384 dimensions)
OLLAMA_EMBEDDING_MODEL=all-minilm
# Collection: "my-server-all-minilm"
# → Scanner detects 0 indexed documents → re-embeds 1000 notes
# → Old collection "my-server-nomic-embed-text" still exists in Qdrant
```
**Re-embedding performance:**
- CPU-only: 1-5 notes/second
- With GPU: 50-200 notes/second
- 1000 notes: 3-16 minutes (CPU) or 5-20 seconds (GPU)
**Multi-server deployments:**
Multiple MCP servers can share one Qdrant instance safely:
```bash
# Server 1 (Production)
OTEL_SERVICE_NAME=mcp-prod
OLLAMA_EMBEDDING_MODEL=nomic-embed-text
# → Collection: "mcp-prod-nomic-embed-text"
# Server 2 (Staging with different model)
OTEL_SERVICE_NAME=mcp-staging
OLLAMA_EMBEDDING_MODEL=all-minilm
# → Collection: "mcp-staging-all-minilm"
```
Each deployment gets its own collection - no naming collisions or dimension conflicts.
## How It Works: Semantic Search
Semantic search converts user queries into vectors and finds similar documents using cosine similarity.
```mermaid
sequenceDiagram
participant User
participant MCP as MCP Server
participant Ollama
participant Qdrant
participant NC as Nextcloud API
User->>MCP: nc_semantic_search("machine learning")
MCP->>MCP: Check OAuth scope<br/>(semantic:read)
MCP->>Ollama: Generate query embedding
Ollama-->>MCP: Query vector (768-dim)
MCP->>Qdrant: Search similar vectors<br/>(filter: user_id=alice)
Qdrant-->>MCP: Top K results<br/>(with similarity scores)
loop For each result
MCP->>NC: Verify access<br/>(fetch note by ID)
alt Access granted
NC-->>MCP: Note metadata
else Access denied (404/401)
MCP->>MCP: Filter out result
end
end
MCP-->>User: Search results<br/>(with scores, excerpts)
```
### Dual-Phase Authorization
**Phase 1: OAuth Scope Check**
- Verify user has `semantic:read` scope
- Rejects unauthorized users immediately
**Phase 2: Per-Document Verification**
- For each search result, fetch document via app API (Notes, Calendar, etc.)
- If fetch succeeds (200 OK), user has access
- If fetch fails (404 Not Found, 401 Unauthorized), filter out result
- **Security**: Prevents information leakage from vector search alone
**Rationale:**
- Vector database doesn't know about sharing, permissions changes, or deleted documents
- App APIs are source of truth for access control
- Verification ensures users only see documents they can access
### Search Flow
1. **Query Embedding**: Convert user query to 768-dimensional vector via Ollama
2. **Vector Search**: Find top K similar vectors in Qdrant (cosine similarity)
3. **User Filtering**: Qdrant pre-filters by `user_id` (multi-tenancy)
4. **Access Verification**: Fetch each document via app API to verify current access
5. **Result Ranking**: Return results sorted by similarity score
6. **Response**: Include document excerpts, metadata, and similarity scores
### Performance
- **Query latency**: 50-200ms typical (embedding + vector search + verification)
- **Accuracy**: Depends on embedding model quality (`nomic-embed-text` recommended)
- **Scalability**: Qdrant handles millions of vectors efficiently
## How It Works: RAG with MCP Sampling (Optional)
The `nc_semantic_search_answer` tool generates AI-powered answers with citations using **MCP sampling** - requesting the MCP client's LLM to generate text.
```mermaid
sequenceDiagram
participant User
participant MCP as MCP Server
participant Client as MCP Client<br/>(Claude Desktop)
participant LLM as Client's LLM<br/>(Claude, GPT, etc.)
User->>MCP: nc_semantic_search_answer("What are my Q1 goals?")
MCP->>MCP: Semantic search<br/>(find relevant notes)
MCP->>MCP: Construct prompt<br/>(query + documents + instructions)
MCP->>Client: Sampling request<br/>(MCP Protocol)
Client->>User: Prompt for approval<br/>(optional, client-controlled)
User-->>Client: Approve
Client->>LLM: Generate answer<br/>(with context)
LLM-->>Client: Answer with citations
Client-->>MCP: Sampling response
MCP-->>User: Generated answer<br/>(with source documents)
```
### MCP Sampling Architecture
**Why MCP Sampling?**
- **No server-side LLM**: MCP server has no API keys, doesn't call LLMs directly
- **Client controls everything**: Which model, who pays, user approval prompts
- **Privacy**: Documents stay with the client's LLM provider, not a third-party
- **Flexibility**: Works with any MCP client that supports sampling (Claude Desktop, future clients)
**Prompt Construction:**
```
User Query: {query}
Relevant Documents:
1. Document: {title} (Note)
Content: {excerpt}
2. Document: {title} (Note)
Content: {excerpt}
Instructions:
- Provide a comprehensive answer to the user's query
- Use the documents above as context
- Include citations: "According to Document 1 (title)..."
- If documents don't contain enough information, say so
```
**Graceful Fallback:**
```python
try:
result = await ctx.session.create_message(...)
return answer_with_citations
except Exception as e:
# Fallback: Return documents without generated answer
return SearchResponse(
generated_answer=f"[Sampling unavailable: {e}]",
sources=search_results
)
```
**Client Support:**
- **Requires**: MCP client with sampling capability
- **Known support**: Claude Desktop (as of Claude 3.5+)
- **Graceful degradation**: Returns raw documents if sampling unavailable
## Authentication & Security
### OAuth Scopes
**`semantic:read`** - Search permission
- Allows using `nc_semantic_search` and `nc_semantic_search_answer` tools
- Does NOT grant access to documents (verified via app APIs)
- Required for any semantic search operation
**`semantic:write`** - Sync control permission
- Allows enabling/disabling background sync (`provision_vector_sync`, `deprovision_vector_sync`)
- Controls whether user's documents are indexed
- Currently not implemented in OAuth mode (BasicAuth only)
### Dual-Phase Authorization Pattern
**Phase 1: Scope Check** (semantic:read)
- Verifies user authorized to search
- Prevents unauthorized vector database access
**Phase 2: Document Verification** (app-specific APIs)
- For each search result, fetch via Notes API, CalDAV, etc.
- If user can fetch → include in results
- If user cannot fetch (404/401) → filter out
- **Security**: Vector search cannot leak documents user shouldn't see
**Example Scenario:**
1. Alice creates note "Secret Project X"
2. Background sync indexes note with `user_id=alice`
3. Bob searches for "project"
4. Vector search finds "Secret Project X" (vector similarity)
5. Qdrant filters by `user_id=bob` → no match (Alice's note excluded)
6. Even if Bob somehow got the doc_id, Phase 2 verification would fail (404 Not Found)
### Offline Access for Background Sync
**Why needed:**
- Background scanner runs hourly without user interaction
- Requires valid access tokens to fetch documents from Nextcloud APIs
- User's session token expires after hours/days
**OAuth Mode (ADR-004 Flow 2):**
- User explicitly provisions offline access via `provision_nextcloud_access` tool
- Server requests `offline_access` scope → receives refresh token
- Refresh token stored securely (database, encrypted)
- Background sync uses refresh tokens to obtain access tokens
**BasicAuth Mode:**
- Username/password stored in environment variables
- Always available for background operations
- Simpler but less secure (credentials never expire)
## Deployment Modes
### Authentication Modes
| Mode | Security | Offline Access | Background Sync | Best For |
|------|----------|----------------|-----------------|----------|
| **BasicAuth** | Lower (credentials in env) | Always available | ✅ Works immediately | Single-user, development, testing |
| **OAuth** | Higher (tokens, scopes) | User must provision | ⚠️ Not yet implemented | Multi-user, production |
**BasicAuth:**
- Set `NEXTCLOUD_USERNAME` and `NEXTCLOUD_PASSWORD`
- Background sync works immediately when `VECTOR_SYNC_ENABLED=true`
- Credentials stored in `.env` file (secure server access required)
**OAuth:**
- Client authenticates with `semantic:read` scope
- User must explicitly provision offline access (future: `provision_vector_sync` tool)
- Background sync only works for users who provisioned access
- More secure: tokens expire, user controls access
### Qdrant Deployment Modes
| Mode | Configuration | Persistence | Scalability | Best For |
|------|---------------|-------------|-------------|----------|
| **In-Memory** (default) | `QDRANT_LOCATION=:memory:` | ❌ Lost on restart | Single instance | Testing, development |
| **Persistent Local** | `QDRANT_LOCATION=/data/qdrant` | ✅ Survives restarts | Single instance | Small deployments |
| **Network** | `QDRANT_URL=http://qdrant:6333` | ✅ Dedicated service | ✅ Horizontal scaling | Production |
**In-Memory Mode:**
```bash
VECTOR_SYNC_ENABLED=true
# QDRANT_LOCATION not set → defaults to :memory:
```
- Fastest startup
- No disk I/O
- **Warning**: All vectors lost when server restarts (must re-index)
**Persistent Local Mode:**
```bash
VECTOR_SYNC_ENABLED=true
QDRANT_LOCATION=/var/lib/qdrant
```
- Vectors survive restarts
- Single server only (no distributed setup)
- Disk I/O for durability
**Network Mode (Recommended for Production):**
```bash
VECTOR_SYNC_ENABLED=true
QDRANT_URL=http://qdrant:6333
QDRANT_API_KEY=secret # optional
```
- Dedicated Qdrant service (Docker, Kubernetes)
- Horizontal scaling (multiple MCP servers → one Qdrant)
- High availability options
### Embedding Service Options
| Service | Configuration | Cost | Performance | Best For |
|---------|---------------|------|-------------|----------|
| **Ollama** (recommended) | `OLLAMA_BASE_URL=http://ollama:11434` | Free (self-hosted) | Fast (local GPU) | Production, development |
| **OpenAI** (future) | `OPENAI_API_KEY=sk-...` | Paid (API) | Fast (cloud) | Cloud deployments |
| **Fallback** | No config | Free | Slow (random) | Testing only (not production) |
**Ollama Setup (Recommended):**
```bash
# docker-compose.yml
services:
ollama:
image: ollama/ollama
volumes:
- ollama-data:/root/.ollama
ports:
- "11434:11434"
# Pull embedding model
docker compose exec ollama ollama pull nomic-embed-text
```
**Environment Configuration:**
```bash
OLLAMA_BASE_URL=http://ollama:11434
OLLAMA_EMBEDDING_MODEL=nomic-embed-text # 768-dimensional vectors
```
**Model Options:**
- `nomic-embed-text` (default): 768-dim, optimized for semantic search
- `all-minilm`: Smaller, faster, slightly less accurate
- `mxbai-embed-large`: Larger, more accurate, slower
## Configuration Overview
### Key Environment Variables
**Enable Semantic Search:**
```bash
VECTOR_SYNC_ENABLED=true # Default: false (opt-in)
```
**Qdrant Vector Database:**
```bash
# In-memory mode (default if VECTOR_SYNC_ENABLED=true)
# QDRANT_LOCATION not set → uses :memory:
# Persistent local mode
QDRANT_LOCATION=/var/lib/qdrant
# Network mode (production)
QDRANT_URL=http://qdrant:6333
QDRANT_API_KEY=secret # optional
```
**Ollama Embedding Service:**
```bash
OLLAMA_BASE_URL=http://ollama:11434
OLLAMA_EMBEDDING_MODEL=nomic-embed-text # Default
```
**Scanner Configuration:**
```bash
VECTOR_SYNC_INTERVAL=3600 # Scan interval in seconds (default: 1 hour)
```
### Resource Requirements
**Qdrant:**
- **Memory**: ~100-200 MB base + ~1 KB per vector (1M vectors ≈ 1 GB)
- **Disk**: Persistent mode only, ~200 bytes per vector
- **CPU**: Low (indexing) to moderate (search)
**Ollama:**
- **Memory**: 2-4 GB for `nomic-embed-text` model
- **CPU**: High during embedding generation, idle otherwise
- **GPU**: Optional but recommended (10-100x faster)
**MCP Server:**
- **Memory**: +50-100 MB for background sync workers
- **CPU**: Moderate during scanning/processing, low otherwise
### Trade-offs
| Consideration | In-Memory Qdrant | Persistent Qdrant | Network Qdrant |
|---------------|------------------|-------------------|----------------|
| Setup complexity | ✅ Minimal | ✅ Easy | ⚠️ Requires separate service |
| Durability | ❌ Lost on restart | ✅ Survives restarts | ✅ Survives restarts |
| Scalability | ❌ Single instance | ❌ Single instance | ✅ Horizontal scaling |
| Performance | ✅ Fastest | ✅ Fast | ⚠️ Network latency |
## Operational Behavior
### What Happens When VECTOR_SYNC_ENABLED=true
**Immediate (Server Startup):**
1. MCP server connects to Qdrant (creates collection if needed)
2. MCP server connects to Ollama (verifies embedding model available)
3. Background scanner starts (schedules hourly runs)
4. Document queue and processors initialize
**First Scan (Within 1 hour):**
1. Scanner fetches all notes from Nextcloud
2. Compares with Qdrant (likely empty on first run)
3. Enqueues all notes for indexing
4. Processors generate embeddings (may take minutes for large note collections)
5. Vectors stored in Qdrant with user_id filtering
**Hourly Thereafter:**
1. Scanner fetches all notes
2. Identifies new/modified/deleted notes (ETag comparison)
3. Enqueues changes only
4. Incremental updates processed
### Performance Expectations
**Embedding Generation:**
- **Without GPU**: 1-5 notes/second (CPU-bound)
- **With GPU**: 50-200 notes/second (highly parallel)
- **Initial indexing**: 100 notes ≈ 20-100 seconds (CPU), 1-2 seconds (GPU)
**Search Query:**
- **Embedding generation**: 50-100ms
- **Vector search**: 10-50ms (depends on collection size)
- **Access verification**: 20-100ms per document (Nextcloud API calls)
- **Total latency**: 100-300ms typical
**Resource Usage:**
- **Idle**: Minimal (background scanner sleeps)
- **Scanning**: Moderate CPU (ETag checks, API calls)
- **Processing**: High CPU/GPU (embedding generation)
- **Searching**: Low to moderate (depends on query frequency)
### Background Sync Behavior
**Scanner Triggers:**
- Hourly (configurable via `VECTOR_SYNC_INTERVAL`)
- Manual trigger via `nc_trigger_vector_sync` (future)
**Queue Processing:**
- Continuous (workers always running)
- Batch processing (fetch 10 documents at a time)
- Concurrent workers (4 by default)
**Error Handling:**
- Individual document failures logged but don't stop scanning
- Retries for transient errors (network timeouts, rate limits)
- Failed documents skipped, re-attempted on next scan
**What Gets Indexed:**
- **Notes**: All notes accessible to the authenticated user
- **Future**: Calendar events, tasks, deck cards, files with text extraction, contacts
## Monitoring & Observability
### MCP Tools
**`nc_get_vector_sync_status`** - Check sync status
```python
{
"total_documents": 1234,
"indexed_documents": 1200,
"pending_documents": 34,
"sync_enabled": true,
"last_scan": "2025-01-15T14:30:00Z",
"status": "syncing" # idle | syncing | error
}
```
**Interpreting Status:**
- `idle`: No pending work, last scan completed successfully
- `syncing`: Currently processing documents
- `error`: Last scan failed (check logs)
### Logs to Check
**Scanner Logs:**
```
[INFO] Vector sync scanner started (interval: 3600s)
[INFO] Scanning notes: found 150 documents
[INFO] Changes detected: 5 new, 2 modified, 1 deleted
[INFO] Enqueued 7 documents for processing
```
**Processor Logs:**
```
[INFO] Processing document: note_123
[DEBUG] Generated embedding (768 dimensions)
[INFO] Stored vector in Qdrant: note_123
```
**Error Logs:**
```
[ERROR] Failed to generate embedding for note_123: Connection timeout
[WARN] Qdrant connection lost, retrying...
[ERROR] Ollama embedding failed: Model not found
```
**Log Locations:**
- **Docker**: `docker compose logs mcp`
- **Local**: stdout (redirect to file if needed)
- **Kubernetes**: `kubectl logs -f deployment/nextcloud-mcp-server`
### Metrics to Monitor
**Indexing Progress:**
- Total documents vs indexed documents
- Pending queue size
- Processing rate (docs/second)
**Search Performance:**
- Query latency (p50, p95, p99)
- Results per query
- Verification overhead (API calls per query)
**Resource Usage:**
- Qdrant memory/disk usage
- Ollama CPU/GPU usage
- MCP server memory
For detailed observability setup, see [docs/observability.md](observability.md).
## Troubleshooting from Architecture Perspective
### Documents Not Appearing in Search
**Diagnosis Flow:**
1. Check sync status: `nc_get_vector_sync_status`
- `sync_enabled: false` → Enable with `VECTOR_SYNC_ENABLED=true`
- `status: error` → Check scanner logs for failures
2. Check queue size:
- `pending_documents > 0` → Processing in progress, wait
- `pending_documents == 0` but `indexed_documents` low → Scan hasn't run yet (wait up to 1 hour)
3. Check Qdrant:
- Connection errors in logs → Verify `QDRANT_URL` or `QDRANT_LOCATION`
- Collection empty → First scan hasn't completed
4. Check Ollama:
- Embedding errors in logs → Verify `OLLAMA_BASE_URL`
- Model not found → Pull model: `ollama pull nomic-embed-text`
**Common Causes:**
- Sync disabled (default): Enable `VECTOR_SYNC_ENABLED=true`
- Ollama not running: Start Ollama service
- Qdrant not accessible: Check network/URL
- First scan in progress: Wait up to 1 hour + processing time
### Slow Search Performance
**Diagnosis:**
1. **Query embedding slow (>500ms)**:
- Ollama overloaded or CPU-bound
- Solution: Use GPU, upgrade CPU, or reduce concurrent requests
2. **Vector search slow (>200ms)**:
- Large collection (millions of vectors)
- Solution: Use network Qdrant with SSDs, add indexing
3. **Verification slow (>500ms)**:
- Many results to verify (10+ documents)
- Nextcloud API slow or overloaded
- Solution: Reduce `limit` parameter, optimize Nextcloud
**Performance Tuning:**
- Reduce search `limit` (default: 10 results)
- Use network Qdrant for large collections
- Enable Ollama GPU acceleration
- Check Nextcloud API response times
### Background Sync Stopped
**Diagnosis:**
1. Check logs for errors:
- Authentication failures (401/403) → Token expired (OAuth) or credentials invalid (BasicAuth)
- Connection timeouts → Network issues with Nextcloud/Qdrant/Ollama
- Rate limiting (429) → Reduce scan frequency
2. Check `nc_get_vector_sync_status`:
- `status: error` → See logs for details
- `last_scan` timestamp old (>2 hours) → Scanner may have crashed
3. Verify services:
- Qdrant accessible: `curl http://qdrant:6333/`
- Ollama accessible: `curl http://ollama:11434/api/tags`
- Nextcloud accessible: Check API health
**OAuth Mode (Future):**
- Offline access token expired → Re-provision via `provision_vector_sync`
- User deprovisioned access → Sync stops intentionally
### Out of Memory
**Diagnosis:**
1. Check Qdrant mode:
- In-memory mode with large collection → Switch to persistent or network mode
2. Check embedding batch size:
- Too many documents processed simultaneously → Reduce worker count
3. Check Ollama memory:
- Large models loaded → Use smaller embedding model
**Solutions:**
- Use persistent or network Qdrant (frees server memory)
- Reduce concurrent processor workers
- Use smaller embedding model (`all-minilm` instead of `nomic-embed-text`)
- Increase server memory allocation
## Limitations & Future Work
### Current Limitations
1. **Notes App Only**
- Architecture supports multiple apps (plugin system ready)
- Only `NotesScanner` and `NotesProcessor` implemented
- Future: Calendar, Deck, Files, Contacts
2. **MCP Sampling Support**
- `nc_semantic_search_answer` requires client sampling capability
- Not all MCP clients support sampling yet
- Graceful fallback: Returns documents without generated answer
3. **OAuth Background Sync**
- User-controlled background jobs not yet implemented
- Currently works in BasicAuth mode only
- Future: Users opt-in via `provision_vector_sync` tool
4. **No Incremental Updates**
- Document changes trigger full re-embedding
- Cannot update just modified paragraphs
- Future: Paragraph-level chunking and incremental updates
5. **No Query Caching**
- Each search generates new query embedding
- Repeated queries re-search Qdrant
- Future: Cache recent query embeddings and results
6. **Single Embedding Model**
- Uses one model for all documents and queries
- Cannot customize per app or user
- Future: App-specific or user-selected models
### Future Enhancements
**Multi-App Support** (In Progress):
- Scanner plugins for Calendar, Deck, Files, Contacts
- Unified vector search across all apps
- App-specific metadata in vector payloads
**User-Controlled Sync (OAuth Mode)**:
- `provision_vector_sync` and `deprovision_vector_sync` tools
- Per-user background job scheduling
- User dashboard for sync status and controls
**Advanced Search Features**:
- Hybrid search (vector + keyword combined)
- Filtering by date range, app type, tags
- Aggregations and faceted search
- Search result explanations (why this matched)
**Performance Optimizations**:
- Query caching for repeated searches
- Incremental document updates (paragraph-level)
- Batch query processing
- Qdrant HNSW indexing tuning
**Embedding Improvements**:
- Support for OpenAI embeddings (ada-002, text-embedding-3)
- Multi-language embedding models
- Fine-tuned models for Nextcloud content
- Paragraph-level chunking for long documents
## References
### Architecture Decision Records (ADRs)
- **[ADR-003: Vector Database Semantic Search](ADR-003-vector-database-semantic-search.md)** - Qdrant selection rationale, embedding strategy, hybrid search (superseded by ADR-007 but technical decisions remain valid)
- **[ADR-007: Background Vector Sync Job Management](ADR-007-background-vector-sync-job-management.md)** - Current implementation, Scanner-Queue-Processor architecture, plugin system
- **[ADR-008: MCP Sampling for Semantic Search](ADR-008-mcp-sampling-for-semantic-search.md)** - RAG with MCP sampling, client-server separation, prompt construction
- **[ADR-009: Semantic Search OAuth Scope](ADR-009-semantic-search-oauth-scope.md)** - OAuth scope model, dual-phase authorization, security rationale
### Configuration & Setup
- **[Configuration Guide](configuration.md)** - Environment variables, Qdrant setup, Ollama setup, detailed configuration options
- **[Installation Guide](installation.md)** - Deployment options (Docker, Kubernetes, local)
- **[Running the Server](running.md)** - Starting the server, transport options, testing
### Monitoring & Troubleshooting
- **[Observability Guide](observability.md)** - Logging, metrics, tracing, debugging
- **[Troubleshooting](troubleshooting.md)** - General issues and solutions
### Related Documentation
- **[OAuth Architecture](oauth-architecture.md)** - OAuth flows, scopes, token management
- **[Comparison with Context Agent](comparison-context-agent.md)** - When to use Nextcloud MCP Server vs Context Agent
---
**Questions or Issues?**
- [Open an issue](https://github.com/cbcoutinho/nextcloud-mcp-server/issues)
- [Contribute improvements](https://github.com/cbcoutinho/nextcloud-mcp-server/pulls)
+72
View File
@@ -124,3 +124,75 @@ ENABLE_CUSTOM_PROCESSOR=false
# Comma-separated MIME types your processor supports
#CUSTOM_PROCESSOR_TYPES=application/pdf,image/jpeg,image/png
# ============================================
# Semantic Search & Vector Sync Configuration
# ============================================
# EXPERIMENTAL: Semantic search for Notes app (multi-app support planned)
# Requires: Qdrant vector database + Ollama embedding service
# Disabled by default
# Enable background vector indexing
VECTOR_SYNC_ENABLED=false
# Document scan interval in seconds (default: 300 = 5 minutes)
# How often to check for new/updated documents
#VECTOR_SYNC_SCAN_INTERVAL=300
# Concurrent indexing workers (default: 3)
# Number of parallel workers for embedding generation
#VECTOR_SYNC_PROCESSOR_WORKERS=3
# Max queued documents (default: 10000)
# Maximum documents waiting to be processed
#VECTOR_SYNC_QUEUE_MAX_SIZE=10000
# ============================================
# Qdrant Vector Database Configuration
# ============================================
# Choose ONE of three modes:
# 1. In-memory mode (default): Set neither QDRANT_URL nor QDRANT_LOCATION
# 2. Persistent local: Set QDRANT_LOCATION=/path/to/data
# 3. Network mode: Set QDRANT_URL=http://qdrant:6333
# Network mode: URL to Qdrant service
#QDRANT_URL=http://qdrant:6333
# Local mode: Path to store vectors (use :memory: for in-memory)
#QDRANT_LOCATION=:memory:
# API key for network mode (optional)
#QDRANT_API_KEY=
# Collection name (optional - auto-generated if not set)
# Auto-generation format: {deployment-id}-{model-name}
# Allows safe model switching and multi-server deployments
#QDRANT_COLLECTION=nextcloud_content
# ============================================
# Ollama Embedding Service Configuration
# ============================================
# Ollama endpoint for embeddings (if not set, uses SimpleEmbeddingProvider fallback)
#OLLAMA_BASE_URL=http://ollama:11434
# Embedding model to use (default: nomic-embed-text, 768 dimensions)
# Changing this creates a new collection (requires re-embedding all documents)
#OLLAMA_EMBEDDING_MODEL=nomic-embed-text
# Verify SSL certificates (default: true)
#OLLAMA_VERIFY_SSL=true
# ============================================
# Document Chunking Configuration
# ============================================
# Configure how documents are split before embedding
# Words per chunk (default: 512)
# Smaller chunks (256-384): More precise, less context, more storage
# Larger chunks (768-1024): More context, less precise, less storage
#DOCUMENT_CHUNK_SIZE=512
# Overlapping words between chunks (default: 50)
# Recommended: 10-20% of chunk size
# Preserves context across chunk boundaries
#DOCUMENT_CHUNK_OVERLAP=50
+104 -8
View File
@@ -32,13 +32,17 @@ from nextcloud_mcp_server.auth import (
from nextcloud_mcp_server.auth.unified_verifier import UnifiedTokenVerifier
from nextcloud_mcp_server.client import NextcloudClient
from nextcloud_mcp_server.config import (
LOGGING_CONFIG,
get_document_processor_config,
get_settings,
setup_logging,
)
from nextcloud_mcp_server.context import get_client as get_nextcloud_client
from nextcloud_mcp_server.document_processors import get_registry
from nextcloud_mcp_server.observability import (
ObservabilityMiddleware,
get_uvicorn_logging_config,
setup_metrics,
setup_tracing,
)
from nextcloud_mcp_server.server import (
configure_calendar_tools,
configure_contacts_tools,
@@ -776,7 +780,28 @@ async def setup_oauth_config():
def get_app(transport: str = "sse", enabled_apps: list[str] | None = None):
setup_logging()
# Initialize observability (logging will be configured by uvicorn)
settings = get_settings()
# Setup Prometheus metrics (always enabled by default)
if settings.metrics_enabled:
setup_metrics(port=settings.metrics_port)
logger.info(
f"Prometheus metrics enabled on dedicated port {settings.metrics_port}"
)
# Setup OpenTelemetry tracing (optional)
if settings.tracing_enabled:
setup_tracing(
service_name=settings.otel_service_name,
otlp_endpoint=settings.otel_exporter_otlp_endpoint,
sampling_rate=settings.otel_traces_sampler_arg,
)
logger.info(
f"OpenTelemetry tracing enabled (endpoint: {settings.otel_exporter_otlp_endpoint})"
)
else:
logger.info("OpenTelemetry tracing disabled (set OTEL_ENABLED=true to enable)")
# Determine authentication mode
oauth_enabled = is_oauth_mode()
@@ -1148,13 +1173,15 @@ def get_app(transport: str = "sse", enabled_apps: list[str] | None = None):
checks["auth_configured"] = "error: credentials not set"
is_ready = False
# Check Qdrant status if vector sync is enabled
# Check Qdrant status if using network mode (external Qdrant service)
# In-memory and persistent modes use embedded Qdrant, no external service to check
vector_sync_enabled = (
os.getenv("VECTOR_SYNC_ENABLED", "false").lower() == "true"
)
if vector_sync_enabled:
qdrant_url = os.getenv("QDRANT_URL") # Only set in network mode
if vector_sync_enabled and qdrant_url:
try:
qdrant_url = os.getenv("QDRANT_URL", "http://qdrant:6333")
async with httpx.AsyncClient(timeout=2.0) as client:
response = await client.get(f"{qdrant_url}/readyz")
if response.status_code == 200:
@@ -1165,6 +1192,9 @@ def get_app(transport: str = "sse", enabled_apps: list[str] | None = None):
except Exception as e:
checks["qdrant"] = f"error: {str(e)}"
is_ready = False
elif vector_sync_enabled:
# Using embedded Qdrant (memory or persistent mode)
checks["qdrant"] = "embedded"
status_code = 200 if is_ready else 503
return JSONResponse(
@@ -1183,6 +1213,9 @@ def get_app(transport: str = "sse", enabled_apps: list[str] | None = None):
routes.append(Route("/health/ready", health_ready, methods=["GET"]))
logger.info("Health check endpoints enabled: /health/live, /health/ready")
# Note: Metrics endpoint is NOT exposed on main HTTP port for security reasons.
# Metrics are served on dedicated port via setup_metrics() (default: 9090)
if oauth_enabled:
# Import OAuth routes (ADR-004 Progressive Consent)
from nextcloud_mcp_server.auth.oauth_routes import oauth_authorize
@@ -1346,7 +1379,7 @@ def get_app(transport: str = "sse", enabled_apps: list[str] | None = None):
"Routes: /user/* with SessionAuth, /mcp with FastMCP OAuth Bearer tokens"
)
# Add debugging middleware to log Authorization headers
# Add debugging middleware to log Authorization headers and client capabilities
@app.middleware("http")
async def log_auth_headers(request, call_next):
auth_header = request.headers.get("authorization")
@@ -1361,6 +1394,52 @@ def get_app(transport: str = "sse", enabled_apps: list[str] | None = None):
logger.warning(
f"⚠️ /mcp request WITHOUT Authorization header from {request.client}"
)
# Log client capabilities on initialize request
if request.method == "POST":
# Read body to check for initialize request
# Starlette caches the body internally, so it's safe to read here
body = await request.body()
try:
import json
data = json.loads(body)
# Check if this is an initialize request
if data.get("method") == "initialize":
params = data.get("params", {})
capabilities = params.get("capabilities", {})
client_info = params.get("clientInfo", {})
logger.info(
f"🔌 MCP client connected: {client_info.get('name', 'unknown')} "
f"v{client_info.get('version', 'unknown')}"
)
# Log capabilities in a structured way
cap_summary = []
# Check for presence using 'in' not truthiness (empty dict {} counts as having capability)
if "roots" in capabilities:
cap_summary.append("roots")
if "sampling" in capabilities:
cap_summary.append("sampling")
if "experimental" in capabilities:
cap_summary.append(
f"experimental({len(capabilities['experimental'])} features)"
)
logger.info(
f"📋 Client capabilities: {', '.join(cap_summary) if cap_summary else 'none'}"
)
# Log full capabilities at INFO level to diagnose capability issues
logger.info(
f"Full capabilities JSON: {json.dumps(capabilities)}"
)
except Exception as e:
# Don't fail the request if logging fails
logger.debug(
f"Failed to parse MCP request for capability logging: {e}"
)
response = await call_next(request)
return response
@@ -1374,6 +1453,11 @@ def get_app(transport: str = "sse", enabled_apps: list[str] | None = None):
expose_headers=["*"],
)
# Add observability middleware (metrics + tracing)
if settings.metrics_enabled or settings.tracing_enabled:
app.add_middleware(ObservabilityMiddleware)
logger.info("Observability middleware enabled (metrics and/or tracing)")
# Add exception handler for scope challenges (OAuth mode only)
if oauth_enabled:
@@ -1630,8 +1714,20 @@ def run(
app = get_app(transport=transport, enabled_apps=enabled_apps)
# Get observability settings and create uvicorn logging config
settings = get_settings()
uvicorn_log_config = get_uvicorn_logging_config(
log_format=settings.log_format,
log_level=settings.log_level,
include_trace_context=settings.log_include_trace_context,
)
uvicorn.run(
app=app, host=host, port=port, log_level=log_level, log_config=LOGGING_CONFIG
app=app,
host=host,
port=port,
log_level=log_level,
log_config=uvicorn_log_config,
)
+10 -7
View File
@@ -43,14 +43,17 @@ async def _get_processing_status(request: Request) -> dict[str, Any] | None:
return None
try:
# Get document queue from app state
document_queue = getattr(request.app.state, "document_queue", None)
if document_queue is None:
logger.debug("document_queue not available in app state")
# Get document receive stream from app state
document_receive_stream = getattr(
request.app.state, "document_receive_stream", None
)
if document_receive_stream is None:
logger.debug("document_receive_stream not available in app state")
return None
# Get pending count from queue
pending_count = document_queue.qsize()
# Get pending count from stream statistics
stats = document_receive_stream.statistics()
pending_count = stats.current_buffer_used
# Get Qdrant client and query indexed count
indexed_count = 0
@@ -63,7 +66,7 @@ async def _get_processing_status(request: Request) -> dict[str, Any] | None:
# Count documents in collection
count_result = await qdrant_client.count(
collection_name=settings.qdrant_collection
collection_name=settings.get_collection_name()
)
indexed_count = count_result.count
+57 -4
View File
@@ -7,6 +7,12 @@ from functools import wraps
from httpx import AsyncClient, HTTPStatusError, RequestError, codes
from nextcloud_mcp_server.observability.metrics import (
record_nextcloud_api_call,
record_nextcloud_api_retry,
)
from nextcloud_mcp_server.observability.tracing import trace_nextcloud_api_call
logger = logging.getLogger(__name__)
@@ -38,6 +44,9 @@ def retry_on_429(func):
logger.warning(
f"429 Client Error: Too Many Requests, Number of attempts: {retries}"
)
# Record retry metric (extract app name from args if available)
if len(args) > 0 and hasattr(args[0], "app_name"):
record_nextcloud_api_retry(app=args[0].app_name, reason="429")
time.sleep(5)
elif e.response.status_code == 404:
# 404 errors are often expected (e.g., checking if attachments exist)
@@ -72,6 +81,9 @@ def retry_on_429(func):
class BaseNextcloudClient(ABC):
"""Base class for all Nextcloud app clients."""
# Subclasses should set this to identify the app for metrics/tracing
app_name: str = "unknown"
def __init__(self, http_client: AsyncClient, username: str):
"""Initialize with shared HTTP client and username.
@@ -88,7 +100,7 @@ class BaseNextcloudClient(ABC):
@retry_on_429
async def _make_request(self, method: str, url: str, **kwargs):
"""Common request wrapper with logging and error handling.
"""Common request wrapper with logging, tracing, and error handling.
Args:
method: HTTP method
@@ -99,6 +111,47 @@ class BaseNextcloudClient(ABC):
Response object
"""
logger.debug(f"Making {method} request to {url}")
response = await self._client.request(method, url, **kwargs)
response.raise_for_status()
return response
# Start timer for metrics
start_time = time.time()
status_code = 0
try:
# Wrap request in trace span
with trace_nextcloud_api_call(
app=self.app_name,
method=method,
path=url,
):
response = await self._client.request(method, url, **kwargs)
status_code = response.status_code
response.raise_for_status()
# Record successful API call metrics
duration = time.time() - start_time
record_nextcloud_api_call(
app=self.app_name,
method=method,
status_code=status_code,
duration=duration,
)
return response
except (HTTPStatusError, RequestError) as e:
# Record error metrics
if isinstance(e, HTTPStatusError):
status_code = e.response.status_code
else:
status_code = 0 # Connection error, no status code
duration = time.time() - start_time
record_nextcloud_api_call(
app=self.app_name,
method=method,
status_code=status_code,
duration=duration,
)
# Re-raise the exception
raise
+2
View File
@@ -13,6 +13,8 @@ logger = logging.getLogger(__name__)
class ContactsClient(BaseNextcloudClient):
"""Client for NextCloud CardDAV contact operations."""
app_name = "contacts"
def _get_carddav_base_path(self) -> str:
"""Helper to get the base CardDAV path for contacts."""
return f"/remote.php/dav/addressbooks/users/{self.username}"
+2
View File
@@ -13,6 +13,8 @@ logger = logging.getLogger(__name__)
class CookbookClient(BaseNextcloudClient):
"""Client for Nextcloud Cookbook app operations."""
app_name = "cookbook"
async def get_version(self) -> Dict[str, Any]:
"""Get Cookbook app and API version."""
response = await self._make_request("GET", "/apps/cookbook/api/version")
+2
View File
@@ -17,6 +17,8 @@ from nextcloud_mcp_server.models.deck import (
class DeckClient(BaseNextcloudClient):
"""Client for Nextcloud Deck app operations."""
app_name = "deck"
def _get_deck_headers(
self, additional_headers: Optional[Dict[str, str]] = None
) -> Dict[str, str]:
+2
View File
@@ -11,6 +11,8 @@ logger = logging.getLogger(__name__)
class GroupsClient(BaseNextcloudClient):
"""Client for Nextcloud Groups API operations."""
app_name = "groups"
@retry_on_429
async def search_groups(
self,
+2
View File
@@ -11,6 +11,8 @@ logger = logging.getLogger(__name__)
class NotesClient(BaseNextcloudClient):
"""Client for Nextcloud Notes app operations."""
app_name = "notes"
async def get_settings(self) -> Dict[str, Any]:
"""Get Notes app settings."""
response = await self._make_request("GET", "/apps/notes/api/v1/settings")
+2
View File
@@ -11,6 +11,8 @@ logger = logging.getLogger(__name__)
class SharingClient(BaseNextcloudClient):
"""Client for Nextcloud OCS Sharing API operations."""
app_name = "sharing"
@retry_on_429
async def create_share(
self,
+2
View File
@@ -11,6 +11,8 @@ logger = logging.getLogger(__name__)
class TablesClient(BaseNextcloudClient):
"""Client for Nextcloud Tables app operations."""
app_name = "tables"
async def list_tables(self) -> List[Dict[str, Any]]:
"""List all tables available to the user."""
response = await self._make_request(
+2
View File
@@ -7,6 +7,8 @@ from nextcloud_mcp_server.models.users import UserDetails
class UsersClient(BaseNextcloudClient):
"""Client for Nextcloud User API operations."""
app_name = "users"
def _get_user_headers(
self, additional_headers: Optional[Dict[str, str]] = None
) -> Dict[str, str]:
+2
View File
@@ -15,6 +15,8 @@ logger = logging.getLogger(__name__)
class WebDAVClient(BaseNextcloudClient):
"""Client for Nextcloud WebDAV operations."""
app_name = "webdav"
async def delete_resource(self, path: str) -> Dict[str, Any]:
"""Delete a resource (file or directory) via WebDAV DELETE."""
# Ensure path ends with a slash if it's a directory
+90
View File
@@ -174,6 +174,22 @@ class Settings:
ollama_embedding_model: str = "nomic-embed-text"
ollama_verify_ssl: bool = True
# Document chunking settings (for vector embeddings)
document_chunk_size: int = 512 # Words per chunk
document_chunk_overlap: int = 50 # Overlapping words between chunks
# Observability settings
metrics_enabled: bool = True
metrics_port: int = 9090
tracing_enabled: bool = False
otel_exporter_otlp_endpoint: Optional[str] = None
otel_service_name: str = "nextcloud-mcp-server"
otel_traces_sampler: str = "always_on"
otel_traces_sampler_arg: float = 1.0
log_format: str = "json" # "json" or "text"
log_level: str = "INFO"
log_include_trace_context: bool = True
def __post_init__(self):
"""Validate Qdrant configuration and set defaults."""
logger = logging.getLogger(__name__)
@@ -197,6 +213,65 @@ class Settings:
"API key is only relevant for network mode and will be ignored."
)
# Validate chunking configuration
if self.document_chunk_overlap >= self.document_chunk_size:
raise ValueError(
f"DOCUMENT_CHUNK_OVERLAP ({self.document_chunk_overlap}) must be less than "
f"DOCUMENT_CHUNK_SIZE ({self.document_chunk_size}). "
f"Overlap should be 10-20% of chunk size for optimal results."
)
if self.document_chunk_size < 100:
logger.warning(
f"DOCUMENT_CHUNK_SIZE is set to {self.document_chunk_size} words, which is quite small. "
f"Smaller chunks may lose context. Consider using at least 256 words."
)
if self.document_chunk_overlap < 0:
raise ValueError(
f"DOCUMENT_CHUNK_OVERLAP ({self.document_chunk_overlap}) cannot be negative."
)
def get_collection_name(self) -> str:
"""
Get Qdrant collection name.
Auto-generates from deployment ID + model name unless explicitly set.
Deployment ID uses OTEL_SERVICE_NAME if configured, otherwise hostname.
This enables:
- Safe embedding model switching (new model → new collection)
- Multi-server deployments (unique deployment IDs)
- Clear collection naming (shows deployment and model)
Format: {deployment-id}-{model-name}
Examples:
- "my-deployment-nomic-embed-text" (OTEL_SERVICE_NAME set)
- "mcp-container-all-minilm" (hostname fallback)
Returns:
Collection name string
"""
import socket
# Use explicit override if user configured non-default value
if self.qdrant_collection != "nextcloud_content":
return self.qdrant_collection
# Determine deployment ID (OTEL service name or hostname fallback)
if self.otel_service_name != "nextcloud-mcp-server": # Non-default
deployment_id = self.otel_service_name
else:
# Fallback to hostname for simple Docker deployments without OTEL config
deployment_id = socket.gethostname()
# Sanitize deployment ID and model name
deployment_id = deployment_id.lower().replace(" ", "-").replace("_", "-")
model_name = self.ollama_embedding_model.replace("/", "-").replace(":", "-")
return f"{deployment_id}-{model_name}"
def get_settings() -> Settings:
"""Get application settings from environment variables.
@@ -253,4 +328,19 @@ def get_settings() -> Settings:
ollama_base_url=os.getenv("OLLAMA_BASE_URL"),
ollama_embedding_model=os.getenv("OLLAMA_EMBEDDING_MODEL", "nomic-embed-text"),
ollama_verify_ssl=os.getenv("OLLAMA_VERIFY_SSL", "true").lower() == "true",
# Document chunking settings
document_chunk_size=int(os.getenv("DOCUMENT_CHUNK_SIZE", "512")),
document_chunk_overlap=int(os.getenv("DOCUMENT_CHUNK_OVERLAP", "50")),
# Observability settings
metrics_enabled=os.getenv("METRICS_ENABLED", "true").lower() == "true",
metrics_port=int(os.getenv("METRICS_PORT", "9090")),
tracing_enabled=os.getenv("OTEL_ENABLED", "false").lower() == "true",
otel_exporter_otlp_endpoint=os.getenv("OTEL_EXPORTER_OTLP_ENDPOINT"),
otel_service_name=os.getenv("OTEL_SERVICE_NAME", "nextcloud-mcp-server"),
otel_traces_sampler=os.getenv("OTEL_TRACES_SAMPLER", "always_on"),
otel_traces_sampler_arg=float(os.getenv("OTEL_TRACES_SAMPLER_ARG", "1.0")),
log_format=os.getenv("LOG_FORMAT", "json"),
log_level=os.getenv("LOG_LEVEL", "INFO"),
log_include_trace_context=os.getenv("LOG_INCLUDE_TRACE_CONTEXT", "true").lower()
== "true",
)
@@ -0,0 +1,31 @@
"""
Observability module for the Nextcloud MCP Server.
This module provides:
- Prometheus metrics collection
- OpenTelemetry distributed tracing
- Enhanced structured logging with trace correlation
- Monitoring middleware for Starlette/FastAPI
Usage:
from nextcloud_mcp_server.observability import setup_observability
# In app.py lifespan
setup_observability(app, config)
"""
from nextcloud_mcp_server.observability.logging_config import (
get_uvicorn_logging_config,
setup_logging,
)
from nextcloud_mcp_server.observability.metrics import setup_metrics
from nextcloud_mcp_server.observability.middleware import ObservabilityMiddleware
from nextcloud_mcp_server.observability.tracing import setup_tracing
__all__ = [
"setup_logging",
"get_uvicorn_logging_config",
"setup_metrics",
"setup_tracing",
"ObservabilityMiddleware",
]
@@ -0,0 +1,327 @@
"""
Enhanced logging configuration for the Nextcloud MCP Server.
This module provides:
- Structured JSON logging with python-json-logger
- Trace context injection (trace_id, span_id) for correlation with distributed traces
- Configurable log formats (JSON or text)
- Log level configuration per component
"""
import logging
import sys
from typing import Any
from pythonjsonlogger import jsonlogger
from nextcloud_mcp_server.observability.tracing import get_trace_context
class HealthCheckFilter(logging.Filter):
"""
Logging filter that excludes health check endpoint requests.
This prevents health check polls from cluttering logs while keeping
access logs for all other endpoints.
"""
def filter(self, record: logging.LogRecord) -> bool:
"""
Filter out health check requests from uvicorn access logs.
Args:
record: LogRecord instance
Returns:
False if this is a health check request, True otherwise
"""
# Check if the log message contains health check endpoints
message = record.getMessage()
return not any(
endpoint in message
for endpoint in ["/health/live", "/health/ready", "/metrics"]
)
class TraceContextFormatter(jsonlogger.JsonFormatter):
"""
JSON formatter that injects OpenTelemetry trace context into log records.
This allows logs to be correlated with distributed traces by including
trace_id and span_id in each log entry.
"""
def add_fields(
self,
log_record: dict[str, Any],
record: logging.LogRecord,
message_dict: dict[str, Any],
) -> None:
"""
Add custom fields to the log record, including trace context.
Args:
log_record: Dictionary to be serialized as JSON
record: LogRecord instance
message_dict: Dictionary of extra fields from log call
"""
# Call parent to add standard fields
super().add_fields(log_record, record, message_dict)
# Add trace context if available
trace_context = get_trace_context()
if trace_context:
log_record["trace_id"] = trace_context.get("trace_id")
log_record["span_id"] = trace_context.get("span_id")
# Add standard fields with consistent naming
log_record["timestamp"] = self.formatTime(record)
log_record["level"] = record.levelname
log_record["logger"] = record.name
log_record["message"] = record.getMessage()
# Include exception info if present
if record.exc_info:
log_record["exception"] = self.formatException(record.exc_info)
class TraceContextTextFormatter(logging.Formatter):
"""
Text formatter that includes OpenTelemetry trace context.
Format: [LEVEL] [timestamp] logger - message [trace_id=xxx span_id=yyy]
"""
def format(self, record: logging.LogRecord) -> str:
"""
Format log record with trace context.
Args:
record: LogRecord instance
Returns:
Formatted log string
"""
# Format base message
base_message = super().format(record)
# Add trace context if available
trace_context = get_trace_context()
if trace_context:
trace_id = trace_context.get("trace_id", "")
span_id = trace_context.get("span_id", "")
return f"{base_message} [trace_id={trace_id} span_id={span_id}]"
return base_message
def setup_logging(
log_format: str = "json",
log_level: str = "INFO",
include_trace_context: bool = True,
) -> None:
"""
Configure logging for the Nextcloud MCP Server.
Args:
log_format: "json" for JSON logging, "text" for human-readable text (default: "json")
log_level: Minimum log level (DEBUG, INFO, WARNING, ERROR, CRITICAL) (default: "INFO")
include_trace_context: Whether to include trace context in logs (default: True)
"""
# Get root logger
root_logger = logging.getLogger()
root_logger.setLevel(getattr(logging, log_level.upper(), logging.INFO))
# Remove existing handlers
root_logger.handlers.clear()
# Create console handler
console_handler = logging.StreamHandler(sys.stdout)
console_handler.setLevel(getattr(logging, log_level.upper(), logging.INFO))
# Configure formatter based on format preference
if log_format.lower() == "json":
if include_trace_context:
formatter = TraceContextFormatter(
"%(timestamp)s %(level)s %(name)s %(message)s",
datefmt="%Y-%m-%dT%H:%M:%S",
)
else:
formatter = jsonlogger.JsonFormatter(
"%(timestamp)s %(level)s %(name)s %(message)s",
datefmt="%Y-%m-%dT%H:%M:%S",
)
else: # text format
if include_trace_context:
formatter = TraceContextTextFormatter(
"%(levelname)s [%(asctime)s] %(name)s - %(message)s",
datefmt="%Y-%m-%d %H:%M:%S",
)
else:
formatter = logging.Formatter(
"%(levelname)s [%(asctime)s] %(name)s - %(message)s",
datefmt="%Y-%m-%d %H:%M:%S",
)
console_handler.setFormatter(formatter)
root_logger.addHandler(console_handler)
# Configure specific logger levels
configure_component_loggers(log_level)
root_logger.info(
f"Logging configured: format={log_format}, level={log_level}, "
f"trace_context={include_trace_context}"
)
def configure_component_loggers(default_level: str = "INFO") -> None:
"""
Configure log levels for specific components.
This allows fine-grained control over logging verbosity for different
parts of the application.
Args:
default_level: Default log level for most components
"""
# Map of logger names to log levels
logger_levels = {
# Application loggers
"nextcloud_mcp_server": default_level,
"nextcloud_mcp_server.server": default_level,
"nextcloud_mcp_server.client": default_level,
"nextcloud_mcp_server.auth": default_level,
"nextcloud_mcp_server.observability": default_level,
# HTTP client loggers (less verbose by default)
"httpx": "WARNING",
"httpcore": "WARNING",
# Server loggers
"uvicorn": "INFO",
"uvicorn.access": "INFO",
"uvicorn.error": "INFO",
# MCP framework
"mcp": "INFO",
# OpenTelemetry (less verbose)
"opentelemetry": "WARNING",
}
for logger_name, level in logger_levels.items():
logger = logging.getLogger(logger_name)
logger.setLevel(getattr(logging, level.upper(), logging.INFO))
def get_logger(name: str) -> logging.Logger:
"""
Get a logger instance for a specific module.
This is a convenience function that wraps logging.getLogger()
to ensure consistent logger configuration.
Args:
name: Logger name (typically __name__)
Returns:
Logger instance
"""
return logging.getLogger(name)
def get_uvicorn_logging_config(
log_format: str = "json",
log_level: str = "INFO",
include_trace_context: bool = True,
) -> dict:
"""
Get uvicorn-compatible logging configuration.
This creates a logging config dict that uvicorn can use while maintaining
our observability setup (JSON format, trace context, etc.).
Args:
log_format: "json" or "text"
log_level: Minimum log level
include_trace_context: Whether to include trace IDs in logs
Returns:
Logging config dict compatible with uvicorn's log_config parameter
"""
# Determine formatter class based on format and trace context
if log_format.lower() == "json":
if include_trace_context:
formatter_class = "nextcloud_mcp_server.observability.logging_config.TraceContextFormatter"
else:
formatter_class = "pythonjsonlogger.jsonlogger.JsonFormatter"
format_string = "%(timestamp)s %(level)s %(name)s %(message)s"
else:
if include_trace_context:
formatter_class = "nextcloud_mcp_server.observability.logging_config.TraceContextTextFormatter"
else:
formatter_class = "logging.Formatter"
format_string = "%(levelname)s [%(asctime)s] %(name)s - %(message)s"
return {
"version": 1,
"disable_existing_loggers": False,
"formatters": {
"default": {
"()": formatter_class,
"format": format_string,
"datefmt": "%Y-%m-%d %H:%M:%S",
},
},
"filters": {
"health_check_filter": {
"()": "nextcloud_mcp_server.observability.logging_config.HealthCheckFilter",
},
},
"handlers": {
"default": {
"formatter": "default",
"class": "logging.StreamHandler",
"stream": "ext://sys.stdout",
},
"access": {
"formatter": "default",
"class": "logging.StreamHandler",
"stream": "ext://sys.stdout",
"filters": ["health_check_filter"],
},
},
"loggers": {
"": {
"handlers": ["default"],
"level": log_level.upper(),
},
"uvicorn": {
"handlers": ["default"],
"level": "INFO",
"propagate": False,
},
"uvicorn.access": {
"handlers": ["access"],
"level": "INFO",
"propagate": False,
},
"uvicorn.error": {
"handlers": ["default"],
"level": "INFO",
"propagate": False,
},
"httpx": {
"handlers": ["default"],
"level": "WARNING",
"propagate": False,
},
"httpcore": {
"handlers": ["default"],
"level": "WARNING",
"propagate": False,
},
"opentelemetry": {
"handlers": ["default"],
"level": "WARNING",
"propagate": False,
},
},
}
@@ -0,0 +1,354 @@
"""
Prometheus metrics for the Nextcloud MCP Server.
This module defines all Prometheus metrics for monitoring server health, performance,
and resource usage. Metrics are organized by category:
- HTTP Server Metrics (RED: Rate, Errors, Duration)
- MCP Tool Metrics (per-tool invocation tracking)
- MCP Resource Metrics
- Nextcloud API Client Metrics
- OAuth Flow Metrics
- Vector Sync Metrics (conditional on feature flag)
- Database Operation Metrics
- External Dependency Health Metrics
"""
import logging
from prometheus_client import (
Counter,
Gauge,
Histogram,
start_http_server,
)
logger = logging.getLogger(__name__)
# =============================================================================
# HTTP Server Metrics (RED + System)
# =============================================================================
http_requests_total = Counter(
"mcp_http_requests_total",
"Total HTTP requests received",
["method", "endpoint", "status_code"],
)
http_request_duration_seconds = Histogram(
"mcp_http_request_duration_seconds",
"HTTP request latency in seconds",
["method", "endpoint"],
buckets=(0.01, 0.025, 0.05, 0.1, 0.25, 0.5, 1.0, 2.5, 5.0, 10.0),
)
http_requests_in_progress = Gauge(
"mcp_http_requests_in_progress",
"Number of HTTP requests currently being processed",
["method", "endpoint"],
)
# =============================================================================
# MCP Tool Metrics
# =============================================================================
mcp_tool_calls_total = Counter(
"mcp_tool_calls_total",
"Total MCP tool invocations",
["tool_name", "status"], # status: success | error
)
mcp_tool_duration_seconds = Histogram(
"mcp_tool_duration_seconds",
"MCP tool execution duration in seconds",
["tool_name"],
buckets=(0.01, 0.05, 0.1, 0.25, 0.5, 1.0, 2.5, 5.0, 10.0, 30.0),
)
mcp_tool_errors_total = Counter(
"mcp_tool_errors_total",
"Total MCP tool errors by type",
["tool_name", "error_type"],
)
# =============================================================================
# MCP Resource Metrics
# =============================================================================
mcp_resource_requests_total = Counter(
"mcp_resource_requests_total",
"Total MCP resource requests",
["resource_uri", "status"],
)
mcp_resource_duration_seconds = Histogram(
"mcp_resource_duration_seconds",
"MCP resource request duration in seconds",
["resource_uri"],
buckets=(0.01, 0.05, 0.1, 0.25, 0.5, 1.0, 2.5),
)
# =============================================================================
# Nextcloud API Client Metrics
# =============================================================================
nextcloud_api_requests_total = Counter(
"mcp_nextcloud_api_requests_total",
"Total Nextcloud API requests",
["app", "method", "status_code"], # app: notes, calendar, contacts, etc.
)
nextcloud_api_duration_seconds = Histogram(
"mcp_nextcloud_api_duration_seconds",
"Nextcloud API request duration in seconds",
["app", "method"],
buckets=(0.01, 0.05, 0.1, 0.25, 0.5, 1.0, 2.5, 5.0, 10.0),
)
nextcloud_api_retries_total = Counter(
"mcp_nextcloud_api_retries_total",
"Total Nextcloud API retries",
["app", "reason"], # reason: 429 | timeout | connection_error
)
# =============================================================================
# OAuth Flow Metrics
# =============================================================================
oauth_token_validations_total = Counter(
"mcp_oauth_token_validations_total",
"Total OAuth token validation attempts",
["method", "result"], # method: introspect | jwt; result: valid | invalid | error
)
oauth_token_exchange_total = Counter(
"mcp_oauth_token_exchange_total",
"Total OAuth token exchange operations (RFC 8693)",
["status"], # status: success | error
)
oauth_token_cache_hits_total = Counter(
"mcp_oauth_token_cache_hits_total",
"Total OAuth token cache lookups",
["hit"], # hit: true | false
)
oauth_refresh_token_operations_total = Counter(
"mcp_oauth_refresh_token_operations_total",
"Total refresh token storage operations",
[
"operation",
"status",
], # operation: store | retrieve | delete; status: success | error
)
# =============================================================================
# Vector Sync Metrics (optional feature)
# =============================================================================
vector_sync_documents_scanned_total = Counter(
"mcp_vector_sync_documents_scanned_total",
"Total documents scanned for vector sync",
)
vector_sync_documents_processed_total = Counter(
"mcp_vector_sync_documents_processed_total",
"Total documents processed for vector sync",
["status"], # status: success | error
)
vector_sync_processing_duration_seconds = Histogram(
"mcp_vector_sync_processing_duration_seconds",
"Document processing duration in seconds",
buckets=(0.1, 0.5, 1.0, 2.5, 5.0, 10.0, 30.0, 60.0),
)
vector_sync_queue_size = Gauge(
"mcp_vector_sync_queue_size",
"Current number of documents in processing queue",
)
qdrant_operations_total = Counter(
"mcp_qdrant_operations_total",
"Total Qdrant vector database operations",
[
"operation",
"status",
], # operation: upsert | search | delete; status: success | error
)
# =============================================================================
# Database Metrics
# =============================================================================
db_operations_total = Counter(
"mcp_db_operations_total",
"Total database operations",
["db", "operation", "status"], # db: sqlite | qdrant; operation varies
)
db_operation_duration_seconds = Histogram(
"mcp_db_operation_duration_seconds",
"Database operation duration in seconds",
["db", "operation"],
buckets=(0.001, 0.005, 0.01, 0.025, 0.05, 0.1, 0.25, 0.5, 1.0),
)
# =============================================================================
# External Dependency Health Metrics
# =============================================================================
dependency_health = Gauge(
"mcp_dependency_health",
"External dependency health status (1=up, 0=down)",
["dependency"], # dependency: nextcloud | keycloak | qdrant | unstructured
)
dependency_check_duration_seconds = Histogram(
"mcp_dependency_check_duration_seconds",
"Dependency health check duration in seconds",
["dependency"],
buckets=(0.01, 0.05, 0.1, 0.25, 0.5, 1.0, 2.5),
)
# =============================================================================
# Metrics Setup and HTTP Handler
# =============================================================================
def setup_metrics(port: int = 9090) -> None:
"""
Initialize Prometheus metrics collection and start HTTP server.
Starts a dedicated HTTP server on the specified port to serve metrics.
This server runs in a separate thread and is isolated from the main application.
Args:
port: Port to serve metrics on (default: 9090)
Note:
Metrics endpoint (/metrics) is ONLY accessible on this dedicated port,
not on the main application HTTP port. This is a security best practice
to prevent external exposure of metrics.
"""
try:
start_http_server(port)
logger.info(f"Prometheus metrics server started on port {port}")
except OSError as e:
if "Address already in use" in str(e):
logger.warning(
f"Metrics port {port} already in use (metrics server likely already running)"
)
else:
logger.error(f"Failed to start metrics server on port {port}: {e}")
raise
# =============================================================================
# Convenience Functions for Common Metric Updates
# =============================================================================
def record_tool_call(tool_name: str, duration: float, status: str = "success") -> None:
"""
Record metrics for an MCP tool call.
Args:
tool_name: Name of the MCP tool
duration: Execution duration in seconds
status: "success" or "error"
"""
mcp_tool_calls_total.labels(tool_name=tool_name, status=status).inc()
mcp_tool_duration_seconds.labels(tool_name=tool_name).observe(duration)
def record_tool_error(tool_name: str, error_type: str) -> None:
"""
Record an MCP tool error.
Args:
tool_name: Name of the MCP tool
error_type: Type of error (e.g., "HTTPStatusError", "ValueError")
"""
mcp_tool_errors_total.labels(tool_name=tool_name, error_type=error_type).inc()
def record_nextcloud_api_call(
app: str,
method: str,
status_code: int,
duration: float,
) -> None:
"""
Record metrics for a Nextcloud API call.
Args:
app: Nextcloud app name (notes, calendar, contacts, etc.)
method: HTTP method (GET, POST, PUT, DELETE, PROPFIND, etc.)
status_code: HTTP status code
duration: Request duration in seconds
"""
nextcloud_api_requests_total.labels(
app=app, method=method, status_code=str(status_code)
).inc()
nextcloud_api_duration_seconds.labels(app=app, method=method).observe(duration)
def record_nextcloud_api_retry(app: str, reason: str) -> None:
"""
Record a Nextcloud API retry.
Args:
app: Nextcloud app name
reason: Retry reason (429, timeout, connection_error)
"""
nextcloud_api_retries_total.labels(app=app, reason=reason).inc()
def record_oauth_token_validation(method: str, result: str) -> None:
"""
Record an OAuth token validation.
Args:
method: Validation method ("introspect" or "jwt")
result: Validation result ("valid", "invalid", or "error")
"""
oauth_token_validations_total.labels(method=method, result=result).inc()
def record_db_operation(
db: str, operation: str, duration: float, status: str = "success"
) -> None:
"""
Record a database operation.
Args:
db: Database type ("sqlite" or "qdrant")
operation: Operation type (e.g., "insert", "select", "upsert", "search")
duration: Operation duration in seconds
status: "success" or "error"
"""
db_operations_total.labels(db=db, operation=operation, status=status).inc()
db_operation_duration_seconds.labels(db=db, operation=operation).observe(duration)
def set_dependency_health(dependency: str, is_healthy: bool) -> None:
"""
Update external dependency health status.
Args:
dependency: Dependency name (nextcloud, keycloak, qdrant, unstructured)
is_healthy: True if dependency is healthy, False otherwise
"""
dependency_health.labels(dependency=dependency).set(1 if is_healthy else 0)
def record_dependency_check(dependency: str, duration: float) -> None:
"""
Record a dependency health check duration.
Args:
dependency: Dependency name
duration: Check duration in seconds
"""
dependency_check_duration_seconds.labels(dependency=dependency).observe(duration)
@@ -0,0 +1,200 @@
"""
Observability middleware for the Nextcloud MCP Server.
This module provides Starlette middleware that automatically instruments
HTTP requests with:
- Prometheus metrics (request count, latency, in-flight requests)
- OpenTelemetry distributed tracing
- Request/response timing and error tracking
"""
import logging
import time
from typing import Callable
from starlette.middleware.base import BaseHTTPMiddleware
from starlette.requests import Request
from starlette.responses import Response
from nextcloud_mcp_server.observability.metrics import (
http_request_duration_seconds,
http_requests_in_progress,
http_requests_total,
)
from nextcloud_mcp_server.observability.tracing import (
add_span_attribute,
trace_operation,
)
logger = logging.getLogger(__name__)
class ObservabilityMiddleware(BaseHTTPMiddleware):
"""
Starlette middleware for automatic HTTP request instrumentation.
This middleware:
- Records Prometheus metrics for each request (RED metrics)
- Creates OpenTelemetry spans for distributed tracing
- Tracks request timing and errors
- Handles in-flight request counting
"""
async def dispatch(
self,
request: Request,
call_next: Callable,
) -> Response:
"""
Process HTTP request with observability instrumentation.
Args:
request: Starlette request object
call_next: Next middleware or route handler
Returns:
Response from downstream handler
"""
# Extract request details
method = request.method
path = request.url.path
endpoint = self._get_endpoint_label(path)
# Increment in-flight requests counter
http_requests_in_progress.labels(method=method, endpoint=endpoint).inc()
# Record start time
start_time = time.time()
try:
# Create span for request (OpenTelemetry auto-instrumentation will create parent span)
with trace_operation(
f"HTTP {method} {endpoint}",
attributes={
"http.method": method,
"http.path": path,
"http.scheme": request.url.scheme,
"http.host": request.url.hostname,
},
):
# Process request
response = await call_next(request)
# Add response status to span
add_span_attribute("http.status_code", response.status_code)
# Record metrics
duration = time.time() - start_time
self._record_request_metrics(
method=method,
endpoint=endpoint,
status_code=response.status_code,
duration=duration,
)
return response
except Exception:
# Record error metrics
duration = time.time() - start_time
self._record_request_metrics(
method=method,
endpoint=endpoint,
status_code=500, # Internal server error
duration=duration,
)
logger.error(
f"Request failed: {method} {path}",
exc_info=True,
extra={
"method": method,
"path": path,
"duration_seconds": duration,
},
)
# Re-raise exception to be handled by error middleware
raise
finally:
# Decrement in-flight requests counter
http_requests_in_progress.labels(method=method, endpoint=endpoint).dec()
def _get_endpoint_label(self, path: str) -> str:
"""
Get endpoint label for metrics, normalizing dynamic path segments.
This prevents metric cardinality explosion by grouping similar paths.
Args:
path: Request path
Returns:
Normalized endpoint label
"""
# Health check endpoints
if path.startswith("/health/"):
return "/health/*"
# Metrics endpoint
if path == "/metrics":
return "/metrics"
# MCP protocol endpoints
if path == "/sse" or path.startswith("/sse/"):
return "/sse"
if path == "/messages" or path.startswith("/messages/"):
return "/messages"
# OAuth/OIDC endpoints
if path.startswith("/oauth/"):
return "/oauth/*"
if path.startswith("/oidc/"):
return "/oidc/*"
# Catch-all for other paths
return path
def _record_request_metrics(
self,
method: str,
endpoint: str,
status_code: int,
duration: float,
) -> None:
"""
Record Prometheus metrics for an HTTP request.
Args:
method: HTTP method
endpoint: Normalized endpoint label
status_code: HTTP status code
duration: Request duration in seconds
"""
# Record request count
http_requests_total.labels(
method=method,
endpoint=endpoint,
status_code=str(status_code),
).inc()
# Record request duration
http_request_duration_seconds.labels(
method=method,
endpoint=endpoint,
).observe(duration)
# Log slow requests (>1 second)
if duration > 1.0:
logger.warning(
f"Slow request: {method} {endpoint} took {duration:.3f}s",
extra={
"method": method,
"endpoint": endpoint,
"status_code": status_code,
"duration_seconds": duration,
},
)
@@ -0,0 +1,363 @@
"""
OpenTelemetry distributed tracing for the Nextcloud MCP Server.
This module provides:
- OpenTelemetry SDK initialization with OTLP exporter
- Auto-instrumentation for ASGI (Starlette/FastAPI) and httpx
- Helper functions for creating custom spans
- Context propagation utilities
- Span attribute standardization
"""
import logging
from contextlib import contextmanager
from typing import Any
from opentelemetry import trace
from opentelemetry.exporter.otlp.proto.grpc.trace_exporter import OTLPSpanExporter
from opentelemetry.instrumentation.httpx import HTTPXClientInstrumentor
from opentelemetry.instrumentation.logging import LoggingInstrumentor
from opentelemetry.sdk.resources import Resource
from opentelemetry.sdk.trace import TracerProvider
from opentelemetry.sdk.trace.export import BatchSpanProcessor
from opentelemetry.trace import Status, StatusCode, Tracer
logger = logging.getLogger(__name__)
# Global tracer instance (initialized in setup_tracing)
_tracer: Tracer | None = None
def setup_tracing(
service_name: str = "nextcloud-mcp-server",
otlp_endpoint: str | None = None,
sampling_rate: float = 1.0,
) -> Tracer:
"""
Initialize OpenTelemetry tracing with OTLP exporter.
Args:
service_name: Service name for traces (default: "nextcloud-mcp-server")
otlp_endpoint: OTLP gRPC endpoint (e.g., "http://otel-collector:4317")
If None, tracing is initialized but no exporter is configured
sampling_rate: Sampling rate (0.0-1.0). Default 1.0 (100% sampling)
Returns:
Tracer instance for creating custom spans
"""
global _tracer
# Create resource with service name
resource = Resource.create(
{
"service.name": service_name,
"service.version": "0.27.2", # TODO: Extract from pyproject.toml
}
)
# Create tracer provider
provider = TracerProvider(resource=resource)
# Configure OTLP exporter if endpoint is provided
if otlp_endpoint:
try:
otlp_exporter = OTLPSpanExporter(endpoint=otlp_endpoint, insecure=True)
span_processor = BatchSpanProcessor(otlp_exporter)
provider.add_span_processor(span_processor)
logger.info(
f"OpenTelemetry tracing enabled with OTLP endpoint: {otlp_endpoint}"
)
except Exception as e:
logger.warning(
f"Failed to initialize OTLP exporter: {e}. Continuing without trace export."
)
else:
logger.info(
"OpenTelemetry tracing initialized without OTLP exporter (traces will be generated but not exported)"
)
# Set global tracer provider
trace.set_tracer_provider(provider)
# Auto-instrument httpx for Nextcloud API calls
HTTPXClientInstrumentor().instrument()
# Auto-instrument logging to inject trace context
LoggingInstrumentor().instrument(set_logging_format=True)
# Get and store tracer
_tracer = trace.get_tracer(__name__)
logger.info(f"OpenTelemetry tracing initialized for service: {service_name}")
return _tracer
def get_tracer() -> Tracer | None:
"""
Get the global tracer instance.
Returns:
Tracer instance for creating custom spans, or None if tracing is not enabled
Note:
Returns None if setup_tracing() was never called (tracing disabled).
Calling code should handle None gracefully.
"""
return _tracer
@contextmanager
def trace_operation(
operation_name: str,
attributes: dict[str, Any] | None = None,
record_exception: bool = True,
):
"""
Context manager for tracing an operation with automatic error handling.
Usage:
with trace_operation("mcp.tool.nc_notes_create_note", {"note.title": "My Note"}):
# Your code here
pass
Args:
operation_name: Name of the operation (span name)
attributes: Optional attributes to add to the span
record_exception: Whether to record exceptions in the span (default: True)
Yields:
Span instance for adding additional attributes (or None if tracing disabled)
"""
tracer = get_tracer()
# If tracing is not enabled, just yield without creating a span
if tracer is None:
yield None
return
with tracer.start_as_current_span(operation_name) as span:
# Set initial attributes
if attributes:
for key, value in attributes.items():
span.set_attribute(key, value)
try:
yield span
span.set_status(Status(StatusCode.OK))
except Exception as e:
if record_exception:
span.record_exception(e)
span.set_status(Status(StatusCode.ERROR, str(e)))
raise
def trace_mcp_tool(tool_name: str, tool_args: dict[str, Any] | None = None):
"""
Create a span for an MCP tool invocation.
Usage:
with trace_mcp_tool("nc_notes_create_note", {"title": "My Note"}):
# Tool implementation
pass
Args:
tool_name: Name of the MCP tool
tool_args: Optional tool arguments (sensitive data will be sanitized)
Returns:
Context manager for the span
"""
attributes = {
"mcp.tool.name": tool_name,
}
# Add sanitized tool args (avoid logging sensitive data)
if tool_args:
# Only include non-sensitive arguments
safe_args = {
k: v
for k, v in tool_args.items()
if k not in ("password", "token", "secret", "api_key", "etag")
}
if safe_args:
attributes["mcp.tool.args"] = str(safe_args)
return trace_operation(f"mcp.tool.{tool_name}", attributes)
def trace_nextcloud_api_call(
app: str,
method: str,
path: str | None = None,
):
"""
Create a span for a Nextcloud API call.
Usage:
with trace_nextcloud_api_call("notes", "POST", "/apps/notes/api/v1/notes"):
# API call implementation
pass
Args:
app: Nextcloud app name (notes, calendar, contacts, etc.)
method: HTTP method (GET, POST, PUT, DELETE, etc.)
path: Optional API path
Returns:
Context manager for the span
"""
attributes = {
"nextcloud.app": app,
"http.method": method,
}
if path:
attributes["http.path"] = path
return trace_operation(f"nextcloud.api.{app}.{method}", attributes)
def trace_oauth_operation(operation: str, details: dict[str, Any] | None = None):
"""
Create a span for an OAuth operation.
Usage:
with trace_oauth_operation("token.validate", {"method": "jwt"}):
# OAuth validation logic
pass
Args:
operation: OAuth operation name (e.g., "token.validate", "token.exchange")
details: Optional operation details (sensitive data will be sanitized)
Returns:
Context manager for the span
"""
attributes = {"oauth.operation": operation}
if details:
# Only include non-sensitive details
safe_details = {
k: v
for k, v in details.items()
if k not in ("token", "refresh_token", "access_token", "client_secret")
}
if safe_details:
attributes.update(safe_details)
return trace_operation(f"oauth.{operation}", attributes)
def trace_vector_sync_operation(
operation: str,
document_count: int | None = None,
):
"""
Create a span for a vector sync operation.
Usage:
with trace_vector_sync_operation("scan", document_count=10):
# Vector sync logic
pass
Args:
operation: Operation name (scan, process, embed, upsert)
document_count: Optional number of documents being processed
Returns:
Context manager for the span
"""
attributes = {"vector_sync.operation": operation}
if document_count is not None:
attributes["vector_sync.document_count"] = document_count
return trace_operation(f"vector_sync.{operation}", attributes)
def trace_db_operation(
db: str,
operation: str,
table: str | None = None,
):
"""
Create a span for a database operation.
Usage:
with trace_db_operation("sqlite", "insert", "refresh_tokens"):
# Database operation
pass
Args:
db: Database type (sqlite, qdrant)
operation: Operation type (insert, select, update, delete, upsert, search)
table: Optional table/collection name
Returns:
Context manager for the span
"""
attributes = {
"db.system": db,
"db.operation": operation,
}
if table:
attributes["db.table"] = table
return trace_operation(f"db.{db}.{operation}", attributes)
def add_span_attribute(key: str, value: Any) -> None:
"""
Add an attribute to the current span (if any).
Args:
key: Attribute key
value: Attribute value
Note:
This is a no-op if tracing is not enabled or there's no active span.
"""
if _tracer is None:
return # Tracing not enabled
span = trace.get_current_span()
if span.is_recording():
span.set_attribute(key, value)
def add_span_event(name: str, attributes: dict[str, Any] | None = None) -> None:
"""
Add an event to the current span (if any).
Args:
name: Event name
attributes: Optional event attributes
Note:
This is a no-op if tracing is not enabled or there's no active span.
"""
if _tracer is None:
return # Tracing not enabled
span = trace.get_current_span()
if span.is_recording():
span.add_event(name, attributes=attributes or {})
def get_trace_context() -> dict[str, str]:
"""
Get current trace context as a dictionary.
Returns:
Dictionary with trace_id and span_id (or empty dict if tracing disabled or no active span)
"""
if _tracer is None:
return {} # Tracing not enabled
span = trace.get_current_span()
if span.is_recording():
span_context = span.get_span_context()
return {
"trace_id": format(span_context.trace_id, "032x"),
"span_id": format(span_context.span_id, "016x"),
}
return {}
+164 -32
View File
@@ -68,17 +68,25 @@ def configure_semantic_tools(mcp: FastMCP):
client = await get_client(ctx)
username = client.username
logger.info(
f"Semantic search: query='{query}', user={username}, "
f"limit={limit}, score_threshold={score_threshold}"
)
try:
# Generate embedding for query
embedding_service = get_embedding_service()
query_embedding = await embedding_service.embed(query)
logger.debug(
f"Generated embedding for query (dimension={len(query_embedding)})"
)
# Search Qdrant with user filtering
# Note: Currently only searching notes (doc_type="note")
# Future: Remove doc_type filter to search all apps
qdrant_client = await get_qdrant_client()
search_response = await qdrant_client.query_points(
collection_name=settings.qdrant_collection,
collection_name=settings.get_collection_name(),
query=query_embedding,
query_filter=Filter(
must=[
@@ -98,6 +106,15 @@ def configure_semantic_tools(mcp: FastMCP):
with_vectors=False, # Don't return vectors to save bandwidth
)
logger.info(
f"Qdrant returned {len(search_response.points)} results "
f"(before deduplication and access verification)"
)
if search_response.points:
# Log top 3 scores to help with threshold tuning
top_scores = [p.score for p in search_response.points[:3]]
logger.debug(f"Top 3 similarity scores: {top_scores}")
# Deduplicate by document ID (multiple chunks per document)
seen_doc_ids = set()
results = []
@@ -137,9 +154,14 @@ def configure_semantic_tools(mcp: FastMCP):
except HTTPStatusError as e:
if e.response.status_code == 403:
# User lost access, skip this document
logger.debug(f"Skipping note {doc_id}: access denied (403)")
continue
elif e.response.status_code == 404:
# Document was deleted but not yet removed from vector DB
logger.debug(
f"Skipping note {doc_id}: not found (404), "
f"likely deleted after indexing"
)
continue
else:
# Log other errors but continue processing
@@ -148,6 +170,16 @@ def configure_semantic_tools(mcp: FastMCP):
)
continue
logger.info(
f"Returning {len(results)} results after deduplication and access verification"
)
if results:
result_details = [
f"note_{r.id} (score={r.score:.3f}, title='{r.title}')"
for r in results[:5] # Show top 5
]
logger.debug(f"Top results: {', '.join(result_details)}")
return SemanticSearchResponse(
results=results,
query=query,
@@ -259,7 +291,47 @@ def configure_semantic_tools(mcp: FastMCP):
success=True,
)
# 3. Construct context from retrieved documents
# 3. Check if client supports sampling
from mcp.types import ClientCapabilities, SamplingCapability
client_has_sampling = ctx.session.check_client_capability(
ClientCapabilities(sampling=SamplingCapability())
)
# Log capability check result for debugging
logger.info(
f"Sampling capability check: client_has_sampling={client_has_sampling}, "
f"query='{query}'"
)
if hasattr(ctx.session, "_client_params") and ctx.session._client_params:
client_caps = ctx.session._client_params.capabilities
logger.debug(
f"Client advertised capabilities: "
f"roots={client_caps.roots is not None}, "
f"sampling={client_caps.sampling is not None}, "
f"experimental={client_caps.experimental is not None}"
)
if not client_has_sampling:
logger.info(
f"Client does not support sampling (query: '{query}'), "
f"returning {len(search_response.results)} documents"
)
return SamplingSearchResponse(
query=query,
generated_answer=(
f"[Sampling not supported by client]\n\n"
f"Your MCP client doesn't support answer generation. "
f"Found {search_response.total_found} relevant documents. "
f"Please review the sources below."
),
sources=search_response.results,
total_found=search_response.total_found,
search_method="semantic_sampling_unsupported",
success=True,
)
# 4. Construct context from retrieved documents
context_parts = []
for idx, result in enumerate(search_response.results, 1):
context_parts.append(
@@ -273,7 +345,7 @@ def configure_semantic_tools(mcp: FastMCP):
context = "\n".join(context_parts)
# 4. Construct prompt - reuse user's query, add context and instructions
# 5. Construct prompt - reuse user's query, add context and instructions
prompt = (
f"{query}\n\n"
f"Here are relevant documents from Nextcloud (notes, calendar events, deck cards, files, contacts):\n\n"
@@ -282,31 +354,35 @@ def configure_semantic_tools(mcp: FastMCP):
f"Cite the document numbers when referencing specific information."
)
logger.debug(
f"Requesting sampling for query: {query} "
f"({len(search_response.results)} documents retrieved)"
logger.info(
f"Initiating sampling request: query_length={len(query)}, "
f"documents={len(search_response.results)}, "
f"prompt_length={len(prompt)}, max_tokens={max_answer_tokens}"
)
# 5. Request LLM completion via MCP sampling
try:
sampling_result = await ctx.session.create_message(
messages=[
SamplingMessage(
role="user",
content=TextContent(type="text", text=prompt),
)
],
max_tokens=max_answer_tokens,
temperature=0.7,
model_preferences=ModelPreferences(
hints=[ModelHint(name="claude-3-5-sonnet")],
intelligencePriority=0.8,
speedPriority=0.5,
),
include_context="thisServer",
)
# 6. Request LLM completion via MCP sampling with timeout
import anyio
# 6. Extract answer from sampling response
try:
with anyio.fail_after(30):
sampling_result = await ctx.session.create_message(
messages=[
SamplingMessage(
role="user",
content=TextContent(type="text", text=prompt),
)
],
max_tokens=max_answer_tokens,
temperature=0.7,
model_preferences=ModelPreferences(
hints=[ModelHint(name="claude-3-5-sonnet")],
intelligencePriority=0.8,
speedPriority=0.5,
),
include_context="thisServer",
)
# 7. Extract answer from sampling response
if sampling_result.content.type == "text":
generated_answer = sampling_result.content.text
else:
@@ -318,7 +394,8 @@ def configure_semantic_tools(mcp: FastMCP):
logger.info(
f"Sampling successful: model={sampling_result.model}, "
f"stop_reason={sampling_result.stopReason}"
f"stop_reason={sampling_result.stopReason}, "
f"answer_length={len(generated_answer)}"
)
return SamplingSearchResponse(
@@ -332,23 +409,78 @@ def configure_semantic_tools(mcp: FastMCP):
success=True,
)
except Exception as e:
# Fallback: Return documents without generated answer
except TimeoutError:
logger.warning(
f"Sampling failed ({type(e).__name__}: {e}), "
f"Sampling request timed out after 30 seconds for query: '{query}', "
f"returning search results only"
)
return SamplingSearchResponse(
query=query,
generated_answer=(
f"[Sampling request timed out]\n\n"
f"The answer generation took too long (>30s). "
f"Found {search_response.total_found} relevant documents. "
f"Please review the sources below or try a simpler query."
),
sources=search_response.results,
total_found=search_response.total_found,
search_method="semantic_sampling_timeout",
success=True,
)
except McpError as e:
# Expected MCP protocol errors (user rejection, unsupported, etc.)
error_msg = str(e)
if "rejected" in error_msg.lower() or "denied" in error_msg.lower():
# User explicitly declined - this is normal, not an error
logger.info(f"User declined sampling request for query: '{query}'")
search_method = "semantic_sampling_user_declined"
user_message = "User declined to generate an answer"
elif "not supported" in error_msg.lower():
# Client doesn't support sampling - also normal
logger.info(f"Sampling not supported by client for query: '{query}'")
search_method = "semantic_sampling_unsupported"
user_message = "Sampling not supported by this client"
else:
# Other MCP protocol errors
logger.warning(
f"MCP error during sampling for query '{query}': {error_msg}"
)
search_method = "semantic_sampling_mcp_error"
user_message = f"Sampling unavailable: {error_msg}"
return SamplingSearchResponse(
query=query,
generated_answer=(
f"[Sampling unavailable: {str(e)}]\n\n"
f"[{user_message}]\n\n"
f"Found {search_response.total_found} relevant documents. "
f"Please review the sources below."
),
sources=search_response.results,
total_found=search_response.total_found,
search_method="semantic_sampling_fallback",
search_method=search_method,
success=True,
)
except Exception as e:
# Truly unexpected errors - these SHOULD have tracebacks
logger.error(
f"Unexpected error during sampling for query '{query}': "
f"{type(e).__name__}: {e}",
exc_info=True,
)
return SamplingSearchResponse(
query=query,
generated_answer=(
f"[Unexpected error during sampling]\n\n"
f"Found {search_response.total_found} relevant documents. "
f"Please review the sources below."
),
sources=search_response.results,
total_found=search_response.total_found,
search_method="semantic_sampling_error",
success=True,
)
@@ -413,7 +545,7 @@ def configure_semantic_tools(mcp: FastMCP):
# Count documents in collection
count_result = await qdrant_client.count(
collection_name=settings.qdrant_collection
collection_name=settings.get_collection_name()
)
indexed_count = count_result.count
+7 -4
View File
@@ -100,7 +100,7 @@ async def process_document(doc_task: DocumentTask, nc_client: NextcloudClient):
# Handle deletion
if doc_task.operation == "delete":
await qdrant_client.delete(
collection_name=settings.qdrant_collection,
collection_name=settings.get_collection_name(),
points_selector=Filter(
must=[
FieldCondition(
@@ -170,8 +170,11 @@ async def _index_document(
else:
raise ValueError(f"Unsupported doc_type: {doc_task.doc_type}")
# Tokenize and chunk
chunker = DocumentChunker(chunk_size=512, overlap=50)
# Tokenize and chunk (using configured chunk size and overlap)
chunker = DocumentChunker(
chunk_size=settings.document_chunk_size,
overlap=settings.document_chunk_overlap,
)
chunks = chunker.chunk_text(content)
# Generate embeddings (I/O bound - external API call)
@@ -209,7 +212,7 @@ async def _index_document(
# Upsert to Qdrant
await qdrant_client.upsert(
collection_name=settings.qdrant_collection,
collection_name=settings.get_collection_name(),
points=points,
wait=True,
)
+37 -10
View File
@@ -59,30 +59,57 @@ async def get_qdrant_client() -> AsyncQdrantClient:
logger.warning("No Qdrant mode configured, defaulting to :memory:")
_qdrant_client = AsyncQdrantClient(":memory:")
# Ensure collection exists
collection_name = settings.qdrant_collection
# Get collection name (auto-generated from deployment ID + model)
collection_name = settings.get_collection_name()
# Import here to avoid circular dependency
from nextcloud_mcp_server.embedding import get_embedding_service
embedding_service = get_embedding_service()
dimension = embedding_service.get_dimension()
expected_dimension = embedding_service.get_dimension()
try:
await _qdrant_client.get_collection(collection_name)
logger.info(f"Using existing Qdrant collection: {collection_name}")
except Exception:
# Collection doesn't exist, create it
# Get existing collection
collection_info = await _qdrant_client.get_collection(collection_name)
actual_dimension = collection_info.config.params.vectors.size
# Validate dimension matches
if actual_dimension != expected_dimension:
raise ValueError(
f"Dimension mismatch for collection '{collection_name}':\n"
f" Expected: {expected_dimension} (from embedding model '{settings.ollama_embedding_model}')\n"
f" Found: {actual_dimension}\n"
f"This usually means you changed the embedding model.\n"
f"Solutions:\n"
f" 1. Delete the old collection: Collection will be recreated with new dimensions\n"
f" 2. Set QDRANT_COLLECTION to use a different collection name\n"
f" 3. Revert OLLAMA_EMBEDDING_MODEL to the original model"
)
logger.info(
f"Using existing Qdrant collection: {collection_name} "
f"(dimension={actual_dimension}, model={settings.ollama_embedding_model})"
)
except Exception as e:
# Check if it's a dimension mismatch error (re-raise it)
if isinstance(e, ValueError) and "Dimension mismatch" in str(e):
raise
# Collection doesn't exist or other error, create it
await _qdrant_client.create_collection(
collection_name=collection_name,
vectors_config=VectorParams(
size=dimension,
size=expected_dimension,
distance=Distance.COSINE,
),
)
logger.info(
f"Created Qdrant collection: {collection_name} "
f"(dimension={dimension}, distance=COSINE)"
f"Created Qdrant collection: {collection_name}\n"
f" Dimension: {expected_dimension}\n"
f" Model: {settings.ollama_embedding_model}\n"
f" Distance: COSINE\n"
f"Background sync will index all documents with this embedding model."
)
return _qdrant_client
+19 -5
View File
@@ -96,7 +96,7 @@ async def scan_user_documents(
nc_client: Authenticated Nextcloud client
initial_sync: If True, send all documents (first-time sync)
"""
logger.info(f"Scanning documents for user: {user_id}")
logger.debug(f"Scanning documents for user: {user_id}")
# Fetch all notes from Nextcloud
notes = [note async for note in nc_client.notes.get_all_notes()]
@@ -105,13 +105,20 @@ async def scan_user_documents(
if initial_sync:
# Send everything on first sync
for note in notes:
# Handle missing 'modified' field (use 0 as fallback)
modified_at = note.get("modified", 0)
if modified_at == 0:
logger.warning(
f"Note {note['id']} missing 'modified' field, using 0 as fallback"
)
await send_stream.send(
DocumentTask(
user_id=user_id,
doc_id=str(note["id"]),
doc_type="note",
operation="index",
modified_at=note["modified"],
modified_at=modified_at,
)
)
logger.info(f"Sent {len(notes)} documents for initial sync: {user_id}")
@@ -120,7 +127,7 @@ async def scan_user_documents(
# Get indexed state from Qdrant
qdrant_client = await get_qdrant_client()
scroll_result = await qdrant_client.scroll(
collection_name=get_settings().qdrant_collection,
collection_name=get_settings().get_collection_name(),
scroll_filter=Filter(
must=[
FieldCondition(key="user_id", match=MatchValue(value=user_id)),
@@ -147,6 +154,13 @@ async def scan_user_documents(
doc_id = str(note["id"])
indexed_at = indexed_docs.get(doc_id)
# Handle missing 'modified' field (use 0 as fallback)
modified_at = note.get("modified", 0)
if modified_at == 0:
logger.warning(
f"Note {doc_id} missing 'modified' field, using 0 as fallback"
)
# If document reappeared, remove from potentially_deleted
doc_key = (user_id, doc_id)
if doc_key in _potentially_deleted:
@@ -156,14 +170,14 @@ async def scan_user_documents(
del _potentially_deleted[doc_key]
# Send if never indexed or modified since last index
if indexed_at is None or note["modified"] > indexed_at:
if indexed_at is None or modified_at > indexed_at:
await send_stream.send(
DocumentTask(
user_id=user_id,
doc_id=doc_id,
doc_type="note",
operation="index",
modified_at=note["modified"],
modified_at=modified_at,
)
)
queued += 1
+10 -1
View File
@@ -1,6 +1,6 @@
[project]
name = "nextcloud-mcp-server"
version = "0.26.1"
version = "0.30.0"
description = "Model Context Protocol (MCP) server for Nextcloud integration - enables AI assistants to interact with Nextcloud data"
authors = [
{name = "Chris Coutinho", email = "chris@coutinho.io"}
@@ -22,6 +22,15 @@ dependencies = [
"aiosqlite>=0.20.0", # Async SQLite for refresh token storage
"authlib>=1.6.5",
"qdrant-client>=1.7.0",
# Observability dependencies
"prometheus-client>=0.21.0", # Prometheus metrics
"opentelemetry-api>=1.28.2", # OpenTelemetry API
"opentelemetry-sdk>=1.28.2", # OpenTelemetry SDK
"opentelemetry-instrumentation-asgi>=0.49b2", # Auto-instrument ASGI/Starlette
"opentelemetry-instrumentation-httpx>=0.49b2", # Auto-instrument httpx client
"opentelemetry-instrumentation-logging>=0.49b2", # Logging integration
"opentelemetry-exporter-otlp-proto-grpc>=1.28.2", # OTLP gRPC exporter
"python-json-logger>=3.2.0", # Structured JSON logging
]
classifiers = [
"Development Status :: 4 - Beta",
+16 -5
View File
@@ -146,12 +146,23 @@ Avoid blocking operations in async code.""",
assert "search_method" in result
# For this test, sampling might fail (no real LLM client)
# So we check for either success or fallback
if "[Sampling unavailable" in result["generated_answer"]:
# Fallback mode - should still have sources
assert result["search_method"] == "semantic_sampling_fallback"
# So we check for either success or various fallback states
unsupported_methods = {
"semantic_sampling_unsupported",
"semantic_sampling_user_declined",
"semantic_sampling_timeout",
"semantic_sampling_mcp_error",
"semantic_sampling_fallback",
}
if result["search_method"] in unsupported_methods:
# Fallback/unsupported mode - should still have sources
assert len(result["sources"]) > 0
pytest.skip("Sampling not supported by test client (expected fallback)")
assert result["total_found"] > 0
pytest.skip(
f"Sampling not available (method: {result['search_method']}), "
f"but search results returned successfully"
)
else:
# Successful sampling
assert result["search_method"] == "semantic_sampling"
+108
View File
@@ -151,3 +151,111 @@ class TestGetSettings:
assert settings.vector_sync_scan_interval == 600
assert settings.vector_sync_processor_workers == 5
assert settings.vector_sync_queue_max_size == 5000
class TestChunkConfigValidation:
"""Test document chunking configuration validation."""
def test_default_chunk_settings(self):
"""Test default chunk size and overlap values."""
settings = Settings()
assert settings.document_chunk_size == 512
assert settings.document_chunk_overlap == 50
def test_valid_chunk_settings(self):
"""Test valid chunk size and overlap configuration."""
settings = Settings(
document_chunk_size=1024,
document_chunk_overlap=100,
)
assert settings.document_chunk_size == 1024
assert settings.document_chunk_overlap == 100
def test_overlap_greater_than_or_equal_to_chunk_size_raises_error(self):
"""Test that overlap >= chunk size raises ValueError."""
with pytest.raises(
ValueError,
match="DOCUMENT_CHUNK_OVERLAP .* must be less than DOCUMENT_CHUNK_SIZE",
):
Settings(
document_chunk_size=512,
document_chunk_overlap=512,
)
def test_overlap_larger_than_chunk_size_raises_error(self):
"""Test that overlap > chunk size raises ValueError."""
with pytest.raises(
ValueError,
match="DOCUMENT_CHUNK_OVERLAP .* must be less than DOCUMENT_CHUNK_SIZE",
):
Settings(
document_chunk_size=256,
document_chunk_overlap=300,
)
def test_negative_overlap_raises_error(self):
"""Test that negative overlap raises ValueError."""
with pytest.raises(
ValueError,
match="DOCUMENT_CHUNK_OVERLAP .* cannot be negative",
):
Settings(
document_chunk_size=512,
document_chunk_overlap=-10,
)
def test_small_chunk_size_warning(self, caplog):
"""Test that chunk size < 100 triggers warning."""
import logging
caplog.set_level(logging.WARNING, logger="nextcloud_mcp_server.config")
Settings(
document_chunk_size=64,
document_chunk_overlap=10,
)
assert (
"DOCUMENT_CHUNK_SIZE is set to 64 words, which is quite small"
in caplog.text
)
assert "Consider using at least 256 words" in caplog.text
def test_reasonable_chunk_size_no_warning(self, caplog):
"""Test that chunk size >= 100 doesn't trigger warning."""
import logging
caplog.set_level(logging.WARNING, logger="nextcloud_mcp_server.config")
Settings(
document_chunk_size=256,
document_chunk_overlap=25,
)
assert "DOCUMENT_CHUNK_SIZE" not in caplog.text
@patch.dict(
os.environ,
{
"DOCUMENT_CHUNK_SIZE": "1024",
"DOCUMENT_CHUNK_OVERLAP": "102",
},
clear=True,
)
def test_get_settings_chunk_config(self):
"""Test get_settings() with chunk configuration."""
settings = get_settings()
assert settings.document_chunk_size == 1024
assert settings.document_chunk_overlap == 102
@patch.dict(
os.environ,
{
"DOCUMENT_CHUNK_SIZE": "256",
"DOCUMENT_CHUNK_OVERLAP": "256",
},
clear=True,
)
def test_get_settings_invalid_chunk_config_raises_error(self):
"""Test get_settings() raises error for invalid chunk config."""
with pytest.raises(
ValueError,
match="DOCUMENT_CHUNK_OVERLAP .* must be less than DOCUMENT_CHUNK_SIZE",
):
get_settings()
+88
View File
@@ -0,0 +1,88 @@
"""Unit tests for logging filters."""
import logging
import pytest
from nextcloud_mcp_server.observability.logging_config import HealthCheckFilter
@pytest.mark.unit
class TestHealthCheckFilter:
"""Tests for the HealthCheckFilter."""
def test_filters_health_live_requests(self):
"""Test that /health/live requests are filtered out."""
# Create a log record that looks like a uvicorn access log for /health/live
record = logging.LogRecord(
name="uvicorn.access",
level=logging.INFO,
pathname="",
lineno=0,
msg='127.0.0.1:12345 - "GET /health/live HTTP/1.1" 200',
args=(),
exc_info=None,
)
filter_instance = HealthCheckFilter()
assert filter_instance.filter(record) is False
def test_filters_health_ready_requests(self):
"""Test that /health/ready requests are filtered out."""
record = logging.LogRecord(
name="uvicorn.access",
level=logging.INFO,
pathname="",
lineno=0,
msg='127.0.0.1:12345 - "GET /health/ready HTTP/1.1" 200',
args=(),
exc_info=None,
)
filter_instance = HealthCheckFilter()
assert filter_instance.filter(record) is False
def test_filters_metrics_requests(self):
"""Test that /metrics requests are filtered out."""
record = logging.LogRecord(
name="uvicorn.access",
level=logging.INFO,
pathname="",
lineno=0,
msg='127.0.0.1:12345 - "GET /metrics HTTP/1.1" 200',
args=(),
exc_info=None,
)
filter_instance = HealthCheckFilter()
assert filter_instance.filter(record) is False
def test_allows_other_requests(self):
"""Test that non-health-check requests are not filtered."""
record = logging.LogRecord(
name="uvicorn.access",
level=logging.INFO,
pathname="",
lineno=0,
msg='127.0.0.1:12345 - "GET /mcp/messages HTTP/1.1" 200',
args=(),
exc_info=None,
)
filter_instance = HealthCheckFilter()
assert filter_instance.filter(record) is True
def test_allows_api_requests(self):
"""Test that API requests are not filtered."""
record = logging.LogRecord(
name="uvicorn.access",
level=logging.INFO,
pathname="",
lineno=0,
msg='127.0.0.1:12345 - "POST /oauth/login HTTP/1.1" 302',
args=(),
exc_info=None,
)
filter_instance = HealthCheckFilter()
assert filter_instance.filter(record) is True
Generated
+228 -1
View File
@@ -57,6 +57,15 @@ wheels = [
{ url = "https://files.pythonhosted.org/packages/31/da/e42d7a9d8dd33fa775f467e4028a47936da2f01e4b0e561f9ba0d74cb0ca/argcomplete-3.6.2-py3-none-any.whl", hash = "sha256:65b3133a29ad53fb42c48cf5114752c7ab66c1c38544fdf6460f450c09b42591", size = 43708, upload-time = "2025-04-03T04:57:01.591Z" },
]
[[package]]
name = "asgiref"
version = "3.10.0"
source = { registry = "https://pypi.org/simple" }
sdist = { url = "https://files.pythonhosted.org/packages/46/08/4dfec9b90758a59acc6be32ac82e98d1fbfc321cb5cfa410436dbacf821c/asgiref-3.10.0.tar.gz", hash = "sha256:d89f2d8cd8b56dada7d52fa7dc8075baa08fb836560710d38c292a7a3f78c04e", size = 37483, upload-time = "2025-10-05T09:15:06.557Z" }
wheels = [
{ url = "https://files.pythonhosted.org/packages/17/9c/fc2331f538fbf7eedba64b2052e99ccf9ba9d6888e2f41441ee28847004b/asgiref-3.10.0-py3-none-any.whl", hash = "sha256:aef8a81283a34d0ab31630c9b7dfe70c812c95eba78171367ca8745e88124734", size = 24050, upload-time = "2025-10-05T09:15:05.11Z" },
]
[[package]]
name = "asttokens"
version = "3.0.0"
@@ -487,6 +496,18 @@ wheels = [
{ url = "https://files.pythonhosted.org/packages/c1/ea/53f2148663b321f21b5a606bd5f191517cf40b7072c0497d3c92c4a13b1e/executing-2.2.1-py2.py3-none-any.whl", hash = "sha256:760643d3452b4d777d295bb167ccc74c64a81df23fb5e08eff250c425a4b2017", size = 28317, upload-time = "2025-09-01T09:48:08.5Z" },
]
[[package]]
name = "googleapis-common-protos"
version = "1.72.0"
source = { registry = "https://pypi.org/simple" }
dependencies = [
{ name = "protobuf" },
]
sdist = { url = "https://files.pythonhosted.org/packages/e5/7b/adfd75544c415c487b33061fe7ae526165241c1ea133f9a9125a56b39fd8/googleapis_common_protos-1.72.0.tar.gz", hash = "sha256:e55a601c1b32b52d7a3e65f43563e2aa61bcd737998ee672ac9b951cd49319f5", size = 147433, upload-time = "2025-11-06T18:29:24.087Z" }
wheels = [
{ url = "https://files.pythonhosted.org/packages/c4/ab/09169d5a4612a5f92490806649ac8d41e3ec9129c636754575b3553f4ea4/googleapis_common_protos-1.72.0-py3-none-any.whl", hash = "sha256:4299c5a82d5ae1a9702ada957347726b167f9f8d1fc352477702a1e851ff4038", size = 297515, upload-time = "2025-11-06T18:29:13.14Z" },
]
[[package]]
name = "greenlet"
version = "3.2.4"
@@ -692,6 +713,18 @@ wheels = [
{ url = "https://files.pythonhosted.org/packages/0e/61/66938bbb5fc52dbdf84594873d5b51fb1f7c7794e9c0f5bd885f30bc507b/idna-3.11-py3-none-any.whl", hash = "sha256:771a87f49d9defaf64091e6e6fe9c18d4833f140bd19464795bc32d966ca37ea", size = 71008, upload-time = "2025-10-12T14:55:18.883Z" },
]
[[package]]
name = "importlib-metadata"
version = "8.7.0"
source = { registry = "https://pypi.org/simple" }
dependencies = [
{ name = "zipp" },
]
sdist = { url = "https://files.pythonhosted.org/packages/76/66/650a33bd90f786193e4de4b3ad86ea60b53c89b669a5c7be931fac31cdb0/importlib_metadata-8.7.0.tar.gz", hash = "sha256:d13b81ad223b890aa16c5471f2ac3056cf76c5f10f82d6f9292f0b415f389000", size = 56641, upload-time = "2025-04-27T15:29:01.736Z" }
wheels = [
{ url = "https://files.pythonhosted.org/packages/20/b0/36bd937216ec521246249be3bf9855081de4c5e06a0c9b4219dbeda50373/importlib_metadata-8.7.0-py3-none-any.whl", hash = "sha256:e5dd1551894c77868a30651cef00984d50e1002d06942a7101d34870c5f02afd", size = 27656, upload-time = "2025-04-27T15:29:00.214Z" },
]
[[package]]
name = "iniconfig"
version = "2.3.0"
@@ -1026,7 +1059,7 @@ wheels = [
[[package]]
name = "nextcloud-mcp-server"
version = "0.26.1"
version = "0.30.0"
source = { editable = "." }
dependencies = [
{ name = "aiosqlite" },
@@ -1036,9 +1069,17 @@ dependencies = [
{ name = "httpx" },
{ name = "icalendar" },
{ name = "mcp", extra = ["cli"] },
{ name = "opentelemetry-api" },
{ name = "opentelemetry-exporter-otlp-proto-grpc" },
{ name = "opentelemetry-instrumentation-asgi" },
{ name = "opentelemetry-instrumentation-httpx" },
{ name = "opentelemetry-instrumentation-logging" },
{ name = "opentelemetry-sdk" },
{ name = "pillow" },
{ name = "prometheus-client" },
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