c7ce44d963
Workstream A–C substrate for the Ten31 agentic system: - A1: docs/crm-overview.md; CLAUDE.md conventions + guardrail #9 - A2: additive/reversible core migration (canonical_entities, entity_links, interaction_log, relationship_edges, soft-delete) + ledgered runner - B1/B3: chunking + deterministic entity resolution (backend/ingest) - B2: dense (bge-m3) + BM25 sparse ingest to Qdrant crm_chunks - C: CRM MCP server (reads, retrieval modes, logged writes) — no outbound tools - docs: redaction/re-hydration, Gmail enablement runbook - synthetic test data; .env.example; housekeeping (.gitignore, untrack crm.db, drop legacy files + start9/0.3.5) Verified end-to-end on synthetic data + live Sparks (hybrid > dense on entity queries). Real backfill runs on Ten31 infra; index holds synthetic data only. Branch snapshot also captures pre-existing working-tree changes. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
65 lines
2.2 KiB
Python
65 lines
2.2 KiB
Python
#!/usr/bin/env python3
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"""Phase-0 Workstream B — backfill the CRM into Qdrant.
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Chunk -> dense (bge-m3 via Spark Control) + sparse (BM25 client-side) -> upsert
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to Qdrant `crm_chunks` with payload. Idempotent: deterministic point ids mean
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re-running upserts in place. Reads the CRM by file path; never sends data to Claude.
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python3 backend/ingest/backfill.py --db data/crm_dev.db --recreate
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"""
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import argparse
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import sqlite3
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import chunking
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import config
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import embed
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import qdrant_io
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import sparse
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def run(db, recreate=False, batch=32):
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conn = sqlite3.connect(db)
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conn.row_factory = sqlite3.Row
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chunks = chunking.build_chunks(conn)
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conn.close()
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print(f"Built {len(chunks)} chunks from {db}")
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state = qdrant_io.create_collection(recreate=recreate)
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qdrant_io.ensure_indexes()
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print(f"Collection '{config.COLLECTION}': {state}")
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total = 0
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for i in range(0, len(chunks), batch):
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group = chunks[i:i + batch]
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dense = embed.dense_embed([c["text"] for c in group])
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points = []
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for c, dv in zip(group, dense):
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sv = sparse.encode(c["text"])
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points.append({
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"id": c["point_id"],
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"vector": {"dense": dv, "sparse": {"indices": sv["indices"], "values": sv["values"]}},
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"payload": {
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"lp_id": c["lp_id"], "lp_name": c["lp_name"], "person_id": c["person_id"],
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"doc_type": c["doc_type"], "date_ts": c["date_ts"], "text": c["text"],
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"source_model": c["source_model"], "source_id": c["source_id"], "chunk_key": c["chunk_key"],
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},
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})
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qdrant_io.upsert(points)
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total += len(points)
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print(f" upserted {total}/{len(chunks)}")
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print(f"Done. Qdrant '{config.COLLECTION}' now holds {qdrant_io.count()} points.")
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def main():
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ap = argparse.ArgumentParser()
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ap.add_argument("--db", default=config.DEFAULT_DB)
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ap.add_argument("--recreate", action="store_true", help="drop & recreate the collection first")
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ap.add_argument("--batch", type=int, default=32)
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args = ap.parse_args()
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run(args.db, recreate=args.recreate, batch=args.batch)
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if __name__ == "__main__":
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main()
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