Enhance the edge validation process by introducing logic to validate edges with rule IDs starting with "candidate:". This includes extracting target IDs, validating against the entire note text, and updating rule IDs upon successful validation. Rejected edges are logged for traceability, improving the overall handling of edge data during ingestion. |
||
|---|---|---|
| .gitea/workflows | ||
| .vscode | ||
| app | ||
| config | ||
| docker | ||
| docs | ||
| scripts | ||
| tests | ||
| vault | ||
| vault_master | ||
| ANALYSE_TYPES_YAML_ZUGRIFFE.md | ||
| README.md | ||
| requirements.txt | ||
mindnet API (bundle)
This bundle provides a minimal FastAPI app for embeddings and Qdrant upserts/queries plus a Markdown importer.
Quick start
python3 -m venv .venv && source .venv/bin/activate
pip install -r requirements.txt
# Environment (adjust as needed)
export QDRANT_URL=http://127.0.0.1:6333
export MINDNET_PREFIX=mindnet
export MINDNET_MODEL=sentence-transformers/all-MiniLM-L6-v2
# Run API
uvicorn app.main:app --host 0.0.0.0 --port 8001 --workers 1
# (optional) Ensure collections exist (or use setup_mindnet_collections.py you already have)
# python3 scripts/setup_mindnet_collections.py --qdrant-url $QDRANT_URL --prefix $MINDNET_PREFIX --dim 384 --distance Cosine
# Import some notes
python3 scripts/import_markdown.py --vault /path/to/Obsidian
Endpoints
POST /embed→{ "texts": [...] }→ 384-d vectorsPOST /qdrant/upsert_notePOST /qdrant/upsert_chunkPOST /qdrant/upsert_edgePOST /qdrant/query→ semantic search over chunks with optional filters
See scripts/quick_test.sh for a runnable example.
Anmerkung: Diese Datei ist veraltet und muss auf Stand 2.6.0 gebracht werden