bfb81428ab
Complete the consolidation pipeline: summaries -> profile + eras -> narrative.
- memory: eras table (per-month digests) + Era, summaries_by_month, store_era,
list_eras, recall_eras; narrative table + set/get_narrative
- lyra/era.py (lyra-era): groups session gists by the month the session occurred
(real timestamps) and map-reduces each month into a "what was happening" digest
- lyra/narrative.py (lyra-narrative): distills profile + recent eras into the
current arc/trends/callbacks ("remember when…", "you're trending toward…")
- chat.build_messages injects the narrative alongside the profile
Verified on the real corpus: 17 monthly eras (Dec 2024-Jun 2026) + a narrative
that surfaces specific callbacks (the $573 Hollywood session, 4 years sober).
Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
489 lines
16 KiB
Python
489 lines
16 KiB
Python
"""Persistent memory: SQLite storage + brute-force cosine recall over embeddings.
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Each exchange is stored with its OpenAI embedding as a float32 BLOB. Recall
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loads all embeddings (optionally scoped to a session) into a matrix and
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returns the top-k by cosine similarity. Brute force is fine up to tens of
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thousands of rows; swap in a vector index when that stops being true.
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"""
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from __future__ import annotations
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import sqlite3
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from dataclasses import dataclass
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from datetime import datetime, timezone
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from pathlib import Path
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import numpy as np
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from lyra import llm
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from lyra.config import load
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SCHEMA = """
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CREATE TABLE IF NOT EXISTS exchanges (
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id INTEGER PRIMARY KEY AUTOINCREMENT,
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session_id TEXT NOT NULL,
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role TEXT NOT NULL,
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content TEXT NOT NULL,
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embedding BLOB NOT NULL,
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created_at TEXT NOT NULL
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);
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CREATE INDEX IF NOT EXISTS idx_session_created ON exchanges(session_id, created_at);
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CREATE TABLE IF NOT EXISTS sessions (
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id TEXT PRIMARY KEY,
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name TEXT,
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created_at TEXT NOT NULL
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);
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-- One compacted "gist" per session. last_exchange_id marks how far the summary
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-- covers, so we know when enough new turns have accumulated to re-summarize.
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CREATE TABLE IF NOT EXISTS summaries (
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session_id TEXT PRIMARY KEY,
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content TEXT NOT NULL,
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embedding BLOB NOT NULL,
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last_exchange_id INTEGER NOT NULL,
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created_at TEXT NOT NULL
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);
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-- Derived semantic memory: standing facts about the user, distilled from the
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-- session gists by the consolidation pass. Single row (id='self').
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CREATE TABLE IF NOT EXISTS profile (
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id TEXT PRIMARY KEY,
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content TEXT NOT NULL,
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sessions_covered INTEGER NOT NULL,
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updated_at TEXT NOT NULL
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);
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-- Temporal memory: one "what was happening" digest per calendar month, rolled
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-- up from that month's session gists. month is "YYYY-MM".
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CREATE TABLE IF NOT EXISTS eras (
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month TEXT PRIMARY KEY,
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content TEXT NOT NULL,
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embedding BLOB NOT NULL,
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session_count INTEGER NOT NULL,
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created_at TEXT NOT NULL
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);
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-- The current narrative: time-aware arc/trends/callbacks (vs the timeless
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-- profile). Distilled from profile + recent eras. Single row (id='current').
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CREATE TABLE IF NOT EXISTS narrative (
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id TEXT PRIMARY KEY,
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content TEXT NOT NULL,
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updated_at TEXT NOT NULL
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);
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"""
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_conn: sqlite3.Connection | None = None
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_conn_path: Path | None = None
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def _connection() -> sqlite3.Connection:
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"""Lazily open the SQLite connection. Reopens if LYRA_DB_PATH changed (for tests)."""
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global _conn, _conn_path
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cfg = load()
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if _conn is None or _conn_path != cfg.db_path:
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if _conn is not None:
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_conn.close()
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cfg.db_path.parent.mkdir(parents=True, exist_ok=True)
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# check_same_thread=False: the web server runs blocking work in a thread
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# pool, so the singleton connection is touched from threads other than
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# the one that created it. Safe here under single-user, low-concurrency use.
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_conn = sqlite3.connect(cfg.db_path, check_same_thread=False)
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_conn.row_factory = sqlite3.Row
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_conn.executescript(SCHEMA)
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_conn_path = cfg.db_path
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return _conn
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@dataclass
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class Exchange:
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id: int
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session_id: str
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role: str
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content: str
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created_at: str
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score: float | None = None
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@dataclass
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class Summary:
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session_id: str
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content: str
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last_exchange_id: int
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created_at: str
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score: float | None = None
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@dataclass
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class Era:
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month: str # "YYYY-MM"
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content: str
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session_count: int
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created_at: str
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score: float | None = None
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def _to_blob(vec: list[float]) -> bytes:
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return np.asarray(vec, dtype=np.float32).tobytes()
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def _from_blob(blob: bytes) -> np.ndarray:
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return np.frombuffer(blob, dtype=np.float32)
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def remember(session_id: str, role: str, content: str) -> int:
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"""Embed and persist a single exchange. Returns the new row id."""
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[embedding] = llm.embed([content])
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now = datetime.now(timezone.utc).isoformat()
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conn = _connection()
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with conn:
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cur = conn.execute(
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"INSERT INTO exchanges (session_id, role, content, embedding, created_at) "
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"VALUES (?, ?, ?, ?, ?)",
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(session_id, role, content, _to_blob(embedding), now),
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)
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return int(cur.lastrowid)
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def add_exchanges_bulk(session_id: str, rows: list[tuple[str, str, list[float], str]]) -> int:
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"""Insert many pre-embedded exchanges at once.
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Each row is (role, content, embedding, created_at). Used by the importer to
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avoid one INSERT (and one embed round-trip) per message. Returns row count.
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"""
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conn = _connection()
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with conn:
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conn.executemany(
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"INSERT INTO exchanges (session_id, role, content, embedding, created_at) "
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"VALUES (?, ?, ?, ?, ?)",
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[(session_id, role, content, _to_blob(emb), ca) for role, content, emb, ca in rows],
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)
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return len(rows)
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def recent(session_id: str, n: int = 10) -> list[Exchange]:
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"""Last `n` exchanges from a session, oldest first."""
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conn = _connection()
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rows = conn.execute(
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"SELECT id, session_id, role, content, created_at FROM exchanges "
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"WHERE session_id = ? ORDER BY id DESC LIMIT ?",
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(session_id, n),
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).fetchall()
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return [
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Exchange(
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id=r["id"],
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session_id=r["session_id"],
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role=r["role"],
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content=r["content"],
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created_at=r["created_at"],
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)
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for r in reversed(rows)
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]
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def ensure_session(session_id: str, name: str | None = None) -> None:
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"""Create the session row if absent; set its name if one is given."""
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now = datetime.now(timezone.utc).isoformat()
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conn = _connection()
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with conn:
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conn.execute(
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"INSERT INTO sessions (id, name, created_at) VALUES (?, ?, ?) "
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"ON CONFLICT(id) DO NOTHING",
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(session_id, name, now),
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)
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if name is not None:
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conn.execute("UPDATE sessions SET name = ? WHERE id = ?", (name, session_id))
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def list_sessions() -> list[dict]:
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"""All known sessions (named rows + any session that has exchanges), newest first."""
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conn = _connection()
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rows = conn.execute(
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"""
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SELECT s.id AS id,
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s.name AS name,
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COALESCE(s.created_at, MIN(e.created_at)) AS created_at
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FROM sessions s
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LEFT JOIN exchanges e ON e.session_id = s.id
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GROUP BY s.id
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UNION
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SELECT e.session_id AS id, NULL AS name, MIN(e.created_at) AS created_at
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FROM exchanges e
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WHERE e.session_id NOT IN (SELECT id FROM sessions)
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GROUP BY e.session_id
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ORDER BY created_at DESC
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"""
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).fetchall()
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return [{"id": r["id"], "name": r["name"]} for r in rows]
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def history(session_id: str) -> list[Exchange]:
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"""Full conversation for a session, oldest first."""
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conn = _connection()
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rows = conn.execute(
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"SELECT id, session_id, role, content, created_at FROM exchanges "
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"WHERE session_id = ? ORDER BY id ASC",
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(session_id,),
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).fetchall()
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return [
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Exchange(
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id=r["id"],
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session_id=r["session_id"],
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role=r["role"],
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content=r["content"],
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created_at=r["created_at"],
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)
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for r in rows
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]
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def delete_session(session_id: str) -> None:
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"""Remove a session and all its exchanges."""
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conn = _connection()
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with conn:
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conn.execute("DELETE FROM exchanges WHERE session_id = ?", (session_id,))
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conn.execute("DELETE FROM sessions WHERE id = ?", (session_id,))
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conn.execute("DELETE FROM summaries WHERE session_id = ?", (session_id,))
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def recall(query: str, k: int = 5, session_id: str | None = None) -> list[Exchange]:
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"""Top-k exchanges semantically similar to `query`, optionally scoped to a session."""
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[q_vec] = llm.embed([query])
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q = np.asarray(q_vec, dtype=np.float32)
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conn = _connection()
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sql = "SELECT id, session_id, role, content, embedding, created_at FROM exchanges"
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params: tuple = ()
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if session_id is not None:
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sql += " WHERE session_id = ?"
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params = (session_id,)
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rows = conn.execute(sql, params).fetchall()
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if not rows:
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return []
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matrix = np.stack([_from_blob(r["embedding"]) for r in rows])
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norms = np.linalg.norm(matrix, axis=1)
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scores = (matrix @ q) / (norms * np.linalg.norm(q) + 1e-9)
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top_idx = np.argsort(scores)[::-1][:k]
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return [
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Exchange(
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id=rows[i]["id"],
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session_id=rows[i]["session_id"],
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role=rows[i]["role"],
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content=rows[i]["content"],
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created_at=rows[i]["created_at"],
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score=float(scores[i]),
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)
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for i in top_idx
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]
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# --- Summary tier (compacted per-session gists) ---
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def store_summary(session_id: str, content: str, last_exchange_id: int) -> None:
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"""Embed and persist the gist of a session, replacing any prior summary."""
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[embedding] = llm.embed([content])
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now = datetime.now(timezone.utc).isoformat()
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conn = _connection()
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with conn:
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conn.execute(
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"INSERT INTO summaries (session_id, content, embedding, last_exchange_id, created_at) "
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"VALUES (?, ?, ?, ?, ?) "
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"ON CONFLICT(session_id) DO UPDATE SET "
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"content=excluded.content, embedding=excluded.embedding, "
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"last_exchange_id=excluded.last_exchange_id, created_at=excluded.created_at",
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(session_id, content, _to_blob(embedding), last_exchange_id, now),
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)
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def get_summary(session_id: str) -> Summary | None:
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conn = _connection()
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r = conn.execute(
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"SELECT session_id, content, last_exchange_id, created_at FROM summaries "
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"WHERE session_id = ?",
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(session_id,),
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).fetchone()
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if r is None:
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return None
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return Summary(
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session_id=r["session_id"],
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content=r["content"],
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last_exchange_id=r["last_exchange_id"],
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created_at=r["created_at"],
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)
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def unsummarized_count(session_id: str) -> int:
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"""How many exchanges in this session are newer than its current summary."""
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conn = _connection()
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summary = get_summary(session_id)
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cutoff = summary.last_exchange_id if summary else 0
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r = conn.execute(
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"SELECT COUNT(*) AS n FROM exchanges WHERE session_id = ? AND id > ?",
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(session_id, cutoff),
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).fetchone()
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return int(r["n"])
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def list_summaries() -> list[Summary]:
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"""Every session gist (for the profile/era consolidation passes)."""
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conn = _connection()
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rows = conn.execute(
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"SELECT session_id, content, last_exchange_id, created_at FROM summaries "
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"ORDER BY created_at ASC"
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).fetchall()
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return [
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Summary(
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session_id=r["session_id"],
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content=r["content"],
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last_exchange_id=r["last_exchange_id"],
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created_at=r["created_at"],
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)
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for r in rows
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]
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def set_profile(content: str, sessions_covered: int, profile_id: str = "self") -> None:
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"""Store/replace the derived semantic profile."""
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now = datetime.now(timezone.utc).isoformat()
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conn = _connection()
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with conn:
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conn.execute(
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"INSERT INTO profile (id, content, sessions_covered, updated_at) "
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"VALUES (?, ?, ?, ?) "
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"ON CONFLICT(id) DO UPDATE SET content=excluded.content, "
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"sessions_covered=excluded.sessions_covered, updated_at=excluded.updated_at",
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(profile_id, content, sessions_covered, now),
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)
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def get_profile(profile_id: str = "self") -> str | None:
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conn = _connection()
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r = conn.execute("SELECT content FROM profile WHERE id = ?", (profile_id,)).fetchone()
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return r["content"] if r else None
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# --- Era tier (per-month temporal rollups) ---
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def summaries_by_month() -> dict[str, list[str]]:
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"""Map "YYYY-MM" -> list of session gists for sessions that occurred that month.
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A session's month comes from its earliest exchange timestamp (real ChatGPT
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dates for imported sessions), not when it was summarized.
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"""
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conn = _connection()
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rows = conn.execute(
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"""
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SELECT substr(MIN(e.created_at), 1, 7) AS month, s.content AS content
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FROM summaries s JOIN exchanges e ON e.session_id = s.session_id
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GROUP BY s.session_id
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"""
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).fetchall()
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out: dict[str, list[str]] = {}
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for r in rows:
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out.setdefault(r["month"], []).append(r["content"])
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return out
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def store_era(month: str, content: str, session_count: int) -> None:
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"""Embed and persist a month's digest, replacing any prior one."""
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[embedding] = llm.embed([content])
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now = datetime.now(timezone.utc).isoformat()
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conn = _connection()
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with conn:
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conn.execute(
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"INSERT INTO eras (month, content, embedding, session_count, created_at) "
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"VALUES (?, ?, ?, ?, ?) "
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"ON CONFLICT(month) DO UPDATE SET content=excluded.content, "
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"embedding=excluded.embedding, session_count=excluded.session_count, "
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"created_at=excluded.created_at",
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(month, content, _to_blob(embedding), session_count, now),
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)
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def list_eras() -> list[Era]:
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"""All month digests, chronological."""
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conn = _connection()
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rows = conn.execute(
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"SELECT month, content, session_count, created_at FROM eras ORDER BY month ASC"
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).fetchall()
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return [
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Era(month=r["month"], content=r["content"],
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session_count=r["session_count"], created_at=r["created_at"])
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for r in rows
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]
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def set_narrative(content: str, narrative_id: str = "current") -> None:
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"""Store/replace the current narrative."""
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now = datetime.now(timezone.utc).isoformat()
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conn = _connection()
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with conn:
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conn.execute(
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"INSERT INTO narrative (id, content, updated_at) VALUES (?, ?, ?) "
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"ON CONFLICT(id) DO UPDATE SET content=excluded.content, updated_at=excluded.updated_at",
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(narrative_id, content, now),
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)
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def get_narrative(narrative_id: str = "current") -> str | None:
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conn = _connection()
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r = conn.execute("SELECT content FROM narrative WHERE id = ?", (narrative_id,)).fetchone()
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return r["content"] if r else None
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def recall_eras(query: str, k: int = 2) -> list[Era]:
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"""Top-k month digests most similar to `query` (time-based context)."""
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[q_vec] = llm.embed([query])
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q = np.asarray(q_vec, dtype=np.float32)
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conn = _connection()
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rows = conn.execute(
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"SELECT month, content, embedding, session_count, created_at FROM eras"
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).fetchall()
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if not rows:
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return []
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matrix = np.stack([_from_blob(r["embedding"]) for r in rows])
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norms = np.linalg.norm(matrix, axis=1)
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scores = (matrix @ q) / (norms * np.linalg.norm(q) + 1e-9)
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top_idx = np.argsort(scores)[::-1][:k]
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return [
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Era(month=rows[i]["month"], content=rows[i]["content"],
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session_count=rows[i]["session_count"], created_at=rows[i]["created_at"],
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score=float(scores[i]))
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for i in top_idx
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]
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def recall_summaries(query: str, k: int = 3, exclude_session: str | None = None) -> list[Summary]:
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"""Top-k session summaries most similar to `query` (the long-term gist tier)."""
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[q_vec] = llm.embed([query])
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q = np.asarray(q_vec, dtype=np.float32)
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conn = _connection()
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sql = "SELECT session_id, content, embedding, last_exchange_id, created_at FROM summaries"
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params: tuple = ()
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if exclude_session is not None:
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sql += " WHERE session_id != ?"
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params = (exclude_session,)
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rows = conn.execute(sql, params).fetchall()
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if not rows:
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return []
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matrix = np.stack([_from_blob(r["embedding"]) for r in rows])
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norms = np.linalg.norm(matrix, axis=1)
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scores = (matrix @ q) / (norms * np.linalg.norm(q) + 1e-9)
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top_idx = np.argsort(scores)[::-1][:k]
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return [
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Summary(
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session_id=rows[i]["session_id"],
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content=rows[i]["content"],
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last_exchange_id=rows[i]["last_exchange_id"],
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created_at=rows[i]["created_at"],
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score=float(scores[i]),
|
|
)
|
|
for i in top_idx
|
|
]
|