Files
chat/scripts/backfill_embeddings.py

98 lines
3.1 KiB
Python

"""Backfill embeddings for memories that lack them (T97, Phase 4).
Walks all memories where no row exists in the ``embeddings`` table. For
each, calls :func:`chat.services.embeddings.generate_embedding` and emits
an ``embedding_indexed`` event so the projector lands the vector.
Phase 4 ships the deterministic local pseudo-embedding so this script
runs synchronously without a network round-trip — the LLMClient argument
is not needed on the pseudo path. Phase 4.5+ will need a real client.
Run from the repo root:
.venv/bin/python scripts/backfill_embeddings.py [--limit N] [--dry-run]
"""
from __future__ import annotations
import argparse
import asyncio
from chat.config import load_settings
from chat.db.connection import open_db
from chat.db.migrate import apply_migrations
from chat.eventlog.log import append_and_apply
from chat.services.embeddings import (
FALLBACK_EMBEDDING_MODEL,
generate_embedding,
)
# Trigger projector handler registration so ``append_and_apply`` lands
# the embedding rows correctly.
import chat.state.embeddings # noqa: F401
import chat.state.entities # noqa: F401
import chat.state.memory # noqa: F401
import chat.state.world # noqa: F401
async def main() -> None:
parser = argparse.ArgumentParser(description=__doc__)
parser.add_argument(
"--limit",
type=int,
default=None,
help="Cap the number of memories backfilled in this run.",
)
parser.add_argument(
"--dry-run",
action="store_true",
help="Print the count of memories needing embeddings, then exit.",
)
args = parser.parse_args()
settings = load_settings()
settings.db_path.parent.mkdir(parents=True, exist_ok=True)
apply_migrations(settings.db_path)
with open_db(settings.db_path) as conn:
sql = (
"SELECT m.id, m.pov_summary FROM memories m "
"LEFT JOIN embeddings e ON e.memory_id = m.id "
"WHERE e.memory_id IS NULL "
"ORDER BY m.id"
)
if args.limit is not None:
sql += f" LIMIT {int(args.limit)}"
rows = conn.execute(sql).fetchall()
print(f"Found {len(rows)} memories needing embeddings.")
if args.dry_run:
return
indexed = 0
skipped = 0
for memory_id, text in rows:
result = await generate_embedding(
client=None, # pseudo path: no client needed
text=text or "",
)
if result.model == FALLBACK_EMBEDDING_MODEL:
print(f" Skipping memory_id={memory_id} (empty text)")
skipped += 1
continue
append_and_apply(
conn,
kind="embedding_indexed",
payload={
"memory_id": memory_id,
"model": result.model,
"dim": result.dim,
"vector": result.vector,
},
)
indexed += 1
print(f" Indexed memory_id={memory_id}")
print(f"Done. Indexed {indexed}, skipped {skipped}.")
if __name__ == "__main__":
asyncio.run(main())