Files
ten31-database/backend/ingest/fuzzy_resolve.py
T
Keysat f357c23c75 Phase 0 complete: fuzzy entity tier, incremental sync, Start9 packaging
- Fuzzy tier (backend/ingest/fuzzy_resolve.py + llm.py): local Qwen adjudicates
  the deterministic resolver's flagged name-variant candidates; merges are
  durable via entity_merges (deterministic re-runs respect them), losers
  soft-deleted, logged. Idempotent.
- Incremental sync (backend/ingest/sync.py): re-embeds only rows changed since a
  watermark (ingest_sync_state); first run / --recreate = full. Tested full→0→1.
- Start9 packaging (start9/0.4): Dockerfile bundles ingest+mcp + fastembed/mcp;
  "Build search index" action runs the init in a subcontainer; MCP shipped as a
  manual stdio server (not a daemon); version 0.1.0:44. INGEST_PACKAGING.md.
- backfill.py: factored embed_and_upsert() shared with sync.

Verified end-to-end on synthetic data + live Sparks/Qwen/Qdrant.

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
2026-06-05 08:55:12 -05:00

117 lines
5.7 KiB
Python

#!/usr/bin/env python3
"""Phase-0 Workstream B3 — fuzzy entity-resolution tier (local Qwen).
The deterministic tier (entity_resolution.py) merges only provable matches and
FLAGS the hard name-variant candidates (same firm + surname, different first
name/email) without guessing. This tier asks the local Qwen model (Spark Control
/v1/chat/completions — sovereign, on Ten31 infra) to adjudicate each candidate
and merges the confirmed ones.
A merge repoints the loser's entity_links to the survivor and soft-deletes the
loser canonical entity (deleted_at; never hard-deleted — guardrail #3). Every
merge is written to the interaction_log (guardrail #5). Idempotent: re-running
finds no new candidates once merged.
python3 backend/ingest/fuzzy_resolve.py --db data/crm_dev.db
python3 backend/ingest/fuzzy_resolve.py --db data/crm_dev.db --dry-run
"""
import argparse
import json
import sqlite3
import uuid
from datetime import datetime, timezone
import entity_resolution as er
import llm
_SYSTEM = ("You are an entity-resolution assistant for a CRM. Decide if the listed "
"people are the SAME individual recorded under name variants (e.g. nicknames "
"like Kate/Katherine, Bill/William), or DIFFERENT people who happen to share a "
"surname and firm. Be conservative: only say same when a nickname/abbreviation "
"relationship or matching contact info makes it clear.")
def _now():
return datetime.now(timezone.utc).isoformat()
def _ask(members, firm):
people = "; ".join(f"{n}" + (f" <{e}>" if e else "") for _, n, e in members)
prompt = (f"Firm: {firm or 'unknown'}\nPeople: {people}\n\n"
"Are these the SAME person under name variants? "
'Answer only JSON: {"same": true|false, "confidence": 0.0-1.0, "reason": "..."}')
return llm.chat_json(prompt, system=_SYSTEM, max_tokens=160) or {"same": False, "confidence": 0.0}
def _survivor(members):
# Prefer a member with an email, then the longest (most complete) name.
return sorted(members, key=lambda m: (bool(m[2]), len(m[1])), reverse=True)[0]
def run(db, threshold=0.7, dry_run=False):
counts, candidates = er.run(db) # ensure deterministic state + fresh candidates
conn = sqlite3.connect(db)
conn.row_factory = sqlite3.Row
conn.execute("PRAGMA foreign_keys=ON")
name_of = {r["id"]: r["display_name"] for r in conn.execute("SELECT id, display_name FROM canonical_entities")}
merges = []
for cand in candidates:
members = cand["members"]
verdict = _ask(members, name_of.get(cand["org"]))
same = bool(verdict.get("same")) and float(verdict.get("confidence", 0)) >= threshold
decision = {"surname": cand["surname"], "firm": name_of.get(cand["org"]),
"members": [{"id": m[0], "name": m[1]} for m in members],
"same": same, "confidence": verdict.get("confidence"),
"reason": verdict.get("reason")}
if same:
keep = _survivor(members)
losers = [m for m in members if m[0] != keep[0]]
decision["merged_into"] = {"id": keep[0], "name": keep[1]}
if not dry_run:
for loser in losers:
# Record the merge durably so deterministic re-runs respect it.
conn.execute("""INSERT INTO entity_merges (merged_id, survivor_id, confidence, reason, created_at)
VALUES (?,?,?,?,?)
ON CONFLICT(merged_id) DO UPDATE SET survivor_id=excluded.survivor_id,
confidence=excluded.confidence, reason=excluded.reason""",
(loser[0], keep[0], verdict.get("confidence", 0.7),
verdict.get("reason"), _now()))
conn.execute("UPDATE entity_links SET canonical_id=?, match_kind='fuzzy_merge', confidence=? "
"WHERE canonical_id=?", (keep[0], verdict.get("confidence", 0.7), loser[0]))
conn.execute("UPDATE canonical_entities SET deleted_at=?, updated_at=? WHERE id=?",
(_now(), _now(), loser[0]))
conn.execute("""INSERT INTO interaction_log
(id, ts, actor_type, actor_id, action, target_type, target_id, payload, source, created_at)
VALUES (?,?,?,?,?,?,?,?,?,?)""",
(str(uuid.uuid4()), _now(), "agent", "qwen_entity_resolver", "entity.merged",
"canonical_entity", keep[0], json.dumps(decision), "ingest", _now()))
merges.append(decision)
if not dry_run:
conn.commit()
live_people = conn.execute("SELECT COUNT(*) FROM canonical_entities WHERE entity_kind='person' AND deleted_at IS NULL").fetchone()[0]
conn.close()
return merges, live_people
def main():
ap = argparse.ArgumentParser()
ap.add_argument("--db", default="data/crm_dev.db")
ap.add_argument("--threshold", type=float, default=0.7)
ap.add_argument("--dry-run", action="store_true")
args = ap.parse_args()
merges, live = run(args.db, threshold=args.threshold, dry_run=args.dry_run)
print(f"Adjudicated {len(merges)} candidate group(s){' (dry run)' if args.dry_run else ''}:")
for m in merges:
names = " / ".join(p["name"] for p in m["members"])
verdict = f"MERGE -> {m['merged_into']['name']}" if m.get("merged_into") else "keep separate"
print(f" [{m['surname']}] {names}: same={m['same']} conf={m['confidence']} => {verdict}")
if m.get("reason"):
print(f" reason: {m['reason']}")
print(f"Live person entities now: {live}")
if __name__ == "__main__":
main()