mindnet/app/core/ingestion.py

338 lines
15 KiB
Python

"""
FILE: app/core/ingestion.py
DESCRIPTION: Haupt-Ingestion-Logik. Transformiert Markdown in den Graphen (Notes, Chunks, Edges).
WP-20: Integration von Smart Edge Allocation via Hybrid LLM (Gemini/Gemma/OpenRouter).
WP-22: Integration von Content Lifecycle (Status Gate) und Edge Registry Validation.
WP-22: Kontextsensitive Kanten-Validierung mit Fundort-Reporting (Zeilennummern).
WP-22: Multi-Hash Refresh für konsistente Change Detection.
VERSION: 2.11.4
STATUS: Active
DEPENDENCIES: app.core.parser, app.core.note_payload, app.core.chunker, app.services.llm_service, app.services.edge_registry
EXTERNAL_CONFIG: config/types.yaml, config/prompts.yaml
"""
import os
import json
import logging
import asyncio
import time
from typing import Dict, List, Optional, Tuple, Any
# Core Module Imports
from app.core.parser import (
read_markdown,
normalize_frontmatter,
validate_required_frontmatter,
extract_edges_with_context,
)
from app.core.note_payload import make_note_payload
from app.core.chunker import assemble_chunks, get_chunk_config
from app.core.chunk_payload import make_chunk_payloads
# Fallback für Edges
try:
from app.core.derive_edges import build_edges_for_note
except ImportError:
def build_edges_for_note(*args, **kwargs): return []
from app.core.qdrant import QdrantConfig, get_client, ensure_collections, ensure_payload_indexes
from app.core.qdrant_points import (
points_for_chunks,
points_for_note,
points_for_edges,
upsert_batch,
)
from app.services.embeddings_client import EmbeddingsClient
from app.services.edge_registry import registry as edge_registry
from app.services.llm_service import LLMService
logger = logging.getLogger(__name__)
# --- Helper ---
def load_type_registry(custom_path: Optional[str] = None) -> dict:
"""Lädt die types.yaml zur Steuerung der typ-spezifischen Ingestion."""
import yaml
from app.config import get_settings
settings = get_settings()
path = custom_path or settings.MINDNET_TYPES_FILE
if not os.path.exists(path): return {}
try:
with open(path, "r", encoding="utf-8") as f: return yaml.safe_load(f) or {}
except Exception: return {}
def resolve_note_type(requested: Optional[str], reg: dict) -> str:
"""Bestimmt den finalen Notiz-Typ (Fallback auf 'concept')."""
types = reg.get("types", {})
if requested and requested in types: return requested
return "concept"
def effective_chunk_profile_name(fm: dict, note_type: str, reg: dict) -> str:
"""Ermittelt den Namen des zu nutzenden Chunk-Profils."""
override = fm.get("chunking_profile") or fm.get("chunk_profile")
if override and isinstance(override, str): return override
t_cfg = reg.get("types", {}).get(note_type, {})
if t_cfg:
cp = t_cfg.get("chunking_profile") or t_cfg.get("chunk_profile")
if cp: return cp
return reg.get("defaults", {}).get("chunking_profile", "sliding_standard")
def effective_retriever_weight(fm: dict, note_type: str, reg: dict) -> float:
"""Ermittelt das effektive retriever_weight für das Scoring."""
override = fm.get("retriever_weight")
if override is not None:
try: return float(override)
except: pass
t_cfg = reg.get("types", {}).get(note_type, {})
if t_cfg and "retriever_weight" in t_cfg: return float(t_cfg["retriever_weight"])
return float(reg.get("defaults", {}).get("retriever_weight", 1.0))
class IngestionService:
def __init__(self, collection_prefix: str = None):
from app.config import get_settings
self.settings = get_settings()
self.prefix = collection_prefix or self.settings.COLLECTION_PREFIX
self.cfg = QdrantConfig.from_env()
self.cfg.prefix = self.prefix
self.client = get_client(self.cfg)
self.dim = self.settings.VECTOR_SIZE # Synchronisiert mit Settings v0.6.2
self.registry = load_type_registry()
self.embedder = EmbeddingsClient()
self.llm = LLMService()
# WP-22: Change Detection Modus aus Settings
self.active_hash_mode = self.settings.CHANGE_DETECTION_MODE
try:
ensure_collections(self.client, self.prefix, self.dim)
ensure_payload_indexes(self.client, self.prefix)
except Exception as e:
logger.warning(f"DB init warning: {e}")
def _get_chunk_config_by_profile(self, profile_name: str, note_type: str) -> Dict[str, Any]:
"""Holt die Chunker-Parameter (max, target, overlap) für ein spezifisches Profil."""
profiles = self.registry.get("chunking_profiles", {})
if profile_name in profiles:
cfg = profiles[profile_name].copy()
if "overlap" in cfg and isinstance(cfg["overlap"], list):
cfg["overlap"] = tuple(cfg["overlap"])
return cfg
return get_chunk_config(note_type)
async def _perform_smart_edge_allocation(self, text: str, note_id: str) -> List[Dict]:
"""
WP-20: Nutzt den Hybrid LLM Service für die semantische Kanten-Extraktion.
QUOTEN-SCHUTZ: Bevorzugt OpenRouter (Gemma 2), um Gemini-Tageslimits zu schonen.
"""
# Bestimme Provider: Nutze OpenRouter falls Key vorhanden
provider = "openrouter" if self.settings.OPENROUTER_API_KEY else self.settings.MINDNET_LLM_PROVIDER
model = self.settings.GEMMA_MODEL # Hochdurchsatz-Modell aus config.py
logger.info(f"🚀 [Ingestion] Turbo-Mode: Extracting edges for '{note_id}' using {model} on {provider}")
# Hole das optimierte Prompt-Template (Kaskade: Provider -> gemini -> ollama)
template = self.llm.get_prompt("edge_extraction", provider)
prompt = template.format(text=text[:6000], note_id=note_id)
try:
# Hintergrund-Task mit Semaphore via LLMService (WP-06)
response_json = await self.llm.generate_raw_response(
prompt=prompt,
priority="background",
force_json=True,
provider=provider,
model_override=model
)
data = json.loads(response_json)
for item in data:
item["provenance"] = "semantic_ai"
item["line"] = f"ai-{provider}"
return data
except Exception as e:
logger.warning(f"⚠️ [Ingestion] Smart Edge Allocation failed for {note_id} on {provider}: {e}")
return []
async def process_file(
self,
file_path: str,
vault_root: str,
force_replace: bool = False,
apply: bool = False,
purge_before: bool = False,
note_scope_refs: bool = False,
hash_source: str = "parsed",
hash_normalize: str = "canonical"
) -> Dict[str, Any]:
"""Verarbeitet eine Markdown-Datei und schreibt sie in den Graphen."""
result = {"path": file_path, "status": "skipped", "changed": False, "error": None}
# 1. Parse & Frontmatter Validation
try:
parsed = read_markdown(file_path)
if not parsed: return {**result, "error": "Empty or unreadable file"}
fm = normalize_frontmatter(parsed.frontmatter)
validate_required_frontmatter(fm)
except Exception as e:
logger.error(f"Validation failed for {file_path}: {e}")
return {**result, "error": f"Validation failed: {str(e)}"}
# --- WP-22: Content Lifecycle Gate ---
status = fm.get("status", "draft").lower().strip()
if status in ["system", "template", "archive", "hidden"]:
return {**result, "status": "skipped", "reason": f"lifecycle_status_{status}"}
# 2. Type & Config Resolution
note_type = resolve_note_type(fm.get("type"), self.registry)
fm["type"] = note_type
effective_profile = effective_chunk_profile_name(fm, note_type, self.registry)
effective_weight = effective_retriever_weight(fm, note_type, self.registry)
fm["chunk_profile"] = effective_profile
fm["retriever_weight"] = effective_weight
# 3. Build Note Payload
try:
note_pl = make_note_payload(parsed, vault_root=vault_root, hash_normalize=hash_normalize, hash_source=hash_source, file_path=file_path)
if not note_pl.get("fulltext"): note_pl["fulltext"] = getattr(parsed, "body", "") or ""
note_pl["retriever_weight"] = effective_weight
note_pl["chunk_profile"] = effective_profile
note_pl["status"] = status
note_id = note_pl["note_id"]
except Exception as e:
return {**result, "error": f"Payload build failed: {str(e)}"}
# 4. Change Detection (WP-22 Multi-Hash)
old_payload = None
if not force_replace:
old_payload = self._fetch_note_payload(note_id)
has_old = old_payload is not None
check_key = f"{self.active_hash_mode}:{hash_source}:{hash_normalize}"
old_hashes = (old_payload or {}).get("hashes", {})
old_hash = old_hashes.get(check_key) if isinstance(old_hashes, dict) else None
new_hash = note_pl.get("hashes", {}).get(check_key)
hash_changed = (old_hash != new_hash)
chunks_missing, edges_missing = self._artifacts_missing(note_id)
should_write = force_replace or (not has_old) or hash_changed or chunks_missing or edges_missing
if not should_write:
return {**result, "status": "unchanged", "note_id": note_id}
if not apply:
return {**result, "status": "dry-run", "changed": True, "note_id": note_id}
# 5. Processing (Chunking, Embedding, Edge Generation)
try:
body_text = getattr(parsed, "body", "") or ""
# WP-22 STABILITY PATCH: Prüfen, ob ensure_latest existiert
if hasattr(edge_registry, "ensure_latest"):
edge_registry.ensure_latest()
chunk_config = self._get_chunk_config_by_profile(effective_profile, note_type)
chunks = await assemble_chunks(fm["id"], body_text, fm["type"], config=chunk_config)
chunk_pls = make_chunk_payloads(fm, note_pl["path"], chunks, note_text=body_text)
vecs = []
if chunk_pls:
texts = [c.get("window") or c.get("text") or "" for c in chunk_pls]
vecs = await self.embedder.embed_documents(texts)
# --- WP-22/WP-20: Kanten-Extraktion & Validierung ---
edges = []
context = {"file": file_path, "note_id": note_id}
# A. Explizite User-Kanten
explicit_edges = extract_edges_with_context(parsed)
for e in explicit_edges:
e["kind"] = edge_registry.resolve(edge_type=e["kind"], provenance="explicit", context={**context, "line": e.get("line")})
edges.append(e)
# B. WP-20: Smart AI Edges (Hybrid Turbo Acceleration)
ai_edges = await self._perform_smart_edge_allocation(body_text, note_id)
for e in ai_edges:
e["kind"] = edge_registry.resolve(edge_type=e.get("kind"), provenance="semantic_ai", context={**context, "line": e.get("line")})
edges.append(e)
# C. System-Kanten (Struktur)
try:
raw_system_edges = build_edges_for_note(note_id, chunk_pls, note_level_references=note_pl.get("references", []), include_note_scope_refs=note_scope_refs)
except TypeError:
raw_system_edges = build_edges_for_note(note_id, chunk_pls)
for e in raw_system_edges:
valid_kind = edge_registry.resolve(edge_type=e.get("kind", "belongs_to"), provenance="structure", context={**context, "line": "system"})
if valid_kind:
e["kind"] = valid_kind
edges.append(e)
except Exception as e:
logger.error(f"Processing failed for {file_path}: {e}", exc_info=True)
return {**result, "error": f"Processing failed: {str(e)}"}
# 6. Upsert
try:
if purge_before and has_old: self._purge_artifacts(note_id)
n_name, n_pts = points_for_note(self.prefix, note_pl, None, self.dim)
upsert_batch(self.client, n_name, n_pts)
if chunk_pls and vecs:
c_name, c_pts = points_for_chunks(self.prefix, chunk_pls, vecs)
upsert_batch(self.client, c_name, c_pts)
if edges:
e_name, e_pts = points_for_edges(self.prefix, edges)
upsert_batch(self.client, e_name, e_pts)
return {"path": file_path, "status": "success", "changed": True, "note_id": note_id, "chunks_count": len(chunk_pls), "edges_count": len(edges)}
except Exception as e:
logger.error(f"Upsert failed for {note_id}: {e}", exc_info=True)
return {**result, "error": f"DB Upsert failed: {e}"}
def _fetch_note_payload(self, note_id: str) -> Optional[dict]:
from qdrant_client.http import models as rest
col = f"{self.prefix}_notes"
try:
f = rest.Filter(must=[rest.FieldCondition(key="note_id", match=rest.MatchValue(value=note_id))])
pts, _ = self.client.scroll(collection_name=col, scroll_filter=f, limit=1, with_payload=True)
return pts[0].payload if pts else None
except: return None
def _artifacts_missing(self, note_id: str) -> Tuple[bool, bool]:
from qdrant_client.http import models as rest
try:
f = rest.Filter(must=[rest.FieldCondition(key="note_id", match=rest.MatchValue(value=note_id))])
c_pts, _ = self.client.scroll(collection_name=f"{self.prefix}_chunks", scroll_filter=f, limit=1)
e_pts, _ = self.client.scroll(collection_name=f"{self.prefix}_edges", scroll_filter=f, limit=1)
return (not bool(c_pts)), (not bool(e_pts))
except: return True, True
def _purge_artifacts(self, note_id: str):
from qdrant_client.http import models as rest
f = rest.Filter(must=[rest.FieldCondition(key="note_id", match=rest.MatchValue(value=note_id))])
selector = rest.FilterSelector(filter=f)
for suffix in ["chunks", "edges"]:
try: self.client.delete(collection_name=f"{self.prefix}_{suffix}", points_selector=selector)
except Exception: pass
async def create_from_text(self, markdown_content: str, filename: str, vault_root: str, folder: str = "00_Inbox") -> Dict[str, Any]:
"""Hilfsmethode zur Erstellung einer Note aus einem Textstream."""
target_dir = os.path.join(vault_root, folder)
os.makedirs(target_dir, exist_ok=True)
file_path = os.path.join(target_dir, filename)
try:
with open(file_path, "w", encoding="utf-8") as f:
f.write(markdown_content)
f.flush()
os.fsync(f.fileno())
await asyncio.sleep(0.1)
logger.info(f"Written file to {file_path}")
except Exception as e:
return {"status": "error", "error": f"Disk write failed: {str(e)}"}
return await self.process_file(file_path=file_path, vault_root=vault_root, apply=True, force_replace=True, purge_before=True)