Files
project-lyra/lyra/summary.py
T
serversdown d7e2fce694 perf: concurrent summarize-all (parallel LLM, serial DB)
Refactor summarize_all to run LLM summarization across a thread pool (default 8
workers) while keeping all SQLite reads/writes on the main thread (the single
connection is never shared across threads). Extract _summarize_transcript
(transcript -> gist, no DB) for the worker.

The MI50 proved far too slow for the large-transcript backfill (~29 summaries in
9h due to gfx906 prefill); on cloud gpt-4o-mini with concurrency this runs at
~30 summaries/minute (~17 min for the full backfill, ~$2). MI50 stays the chat
backend where small prompts make it snappy.

Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
2026-06-16 16:30:07 +00:00

153 lines
6.0 KiB
Python

"""Session summarization: compact a session's raw exchanges into a stored gist.
This is the first consolidation stage. Raw exchanges stay for detail recall; the
summary is what surfaces when an *older* session is recalled, and it's the input
to the profile (semantic memory) and era-rollup tiers.
Long sessions are summarized in chunks, then the partial gists are merged, so a
big imported conversation doesn't blow the local model's context window.
"""
from __future__ import annotations
import sys
import time
from concurrent.futures import ThreadPoolExecutor, as_completed
from lyra import config, llm, logbus, memory
from lyra.llm import Backend, Message
_RETRIES = 4
# Re-summarize a session once it has accumulated this many new raw exchanges.
SUMMARIZE_AFTER = 20
# Transcript budget per LLM call; longer sessions are chunked + merged.
MAX_TRANSCRIPT_CHARS = 24000
_PROMPT = """You are compacting a conversation into a long-term memory record \
(not replying to anyone). Write a concise gist of the session below: what was \
discussed, key decisions or outcomes, concrete specifics worth keeping (names, \
places, numbers, hands), and the user's apparent mood/state. Third person, \
referring to the user as "Brian". 4-8 sentences. No preamble."""
def _transcript(exchanges: list[memory.Exchange]) -> str:
return "\n".join(f"{ex.role}: {ex.content}" for ex in exchanges)
def _chunk(text: str, budget: int) -> list[str]:
"""Split on line boundaries into pieces under `budget` chars."""
chunks, buf, size = [], [], 0
for line in text.splitlines(keepends=True):
if size + len(line) > budget and buf:
chunks.append("".join(buf))
buf, size = [], 0
buf.append(line)
size += len(line)
if buf:
chunks.append("".join(buf))
return chunks
def _summarize_text(text: str, backend: Backend) -> str:
messages: list[Message] = [
{"role": "system", "content": _PROMPT},
{"role": "user", "content": text},
]
# Retry transient backend errors (e.g. the GPU server restarting) with backoff.
for attempt in range(_RETRIES):
try:
return llm.complete(messages, backend=backend)
except Exception as exc:
if attempt == _RETRIES - 1:
raise
logbus.log("debug", "summary retry", attempt=attempt + 1, error=str(exc)[:80])
time.sleep(5 * (attempt + 1))
raise RuntimeError("unreachable")
def _summarize_transcript(transcript: str, backend: Backend) -> str:
"""Transcript -> gist (LLM only, no DB). Chunks + merges if oversized."""
if len(transcript) <= MAX_TRANSCRIPT_CHARS:
return _summarize_text(transcript, backend)
partials = [_summarize_text(c, backend) for c in _chunk(transcript, MAX_TRANSCRIPT_CHARS)]
return _summarize_text("Partial summaries to merge:\n\n" + "\n\n".join(partials), backend)
def summarize_session(session_id: str, backend: Backend | None = None) -> str | None:
"""(Re)generate and store the gist for a session. Returns the summary text."""
exchanges = memory.history(session_id)
if not exchanges:
return None
backend = backend or config.load().summary_backend
gist = _summarize_transcript(_transcript(exchanges), backend)
memory.store_summary(session_id, gist, exchanges[-1].id)
logbus.log("info", "summarized session", session=session_id, exchanges=len(exchanges))
return gist
def maybe_summarize(session_id: str, backend: Backend | None = None) -> None:
"""Summarize the session if enough new turns have accumulated since last time."""
if memory.unsummarized_count(session_id) >= SUMMARIZE_AFTER:
summarize_session(session_id, backend=backend)
def summarize_all(
backend: Backend | None = None, limit: int | None = None, workers: int = 8
) -> dict:
"""Summarize every session that needs it. Idempotent and resumable.
LLM summarization runs concurrently across `workers` threads (great for a
cloud backend). DB reads (loading transcripts) and writes (store_summary,
which also embeds) happen on the main thread, so the single SQLite
connection is never touched from multiple threads.
"""
backend = backend or config.load().summary_backend
# Main thread: collect the work (transcripts) for sessions needing a summary.
todo: list[tuple[str, str, int]] = []
for s in memory.list_sessions():
sid = s["id"]
if memory.get_summary(sid) and memory.unsummarized_count(sid) == 0:
continue
exchanges = memory.history(sid)
if not exchanges:
continue
todo.append((sid, _transcript(exchanges), exchanges[-1].id))
if limit is not None and len(todo) >= limit:
break
done, failed = 0, 0
logbus.log("info", "summarize-all starting", todo=len(todo), backend=backend, workers=workers)
def work(item: tuple[str, str, int]) -> tuple[str, str, int]:
sid, transcript, last_id = item
return sid, _summarize_transcript(transcript, backend), last_id
with ThreadPoolExecutor(max_workers=workers) as pool:
futures = {pool.submit(work, item): item for item in todo}
for fut in as_completed(futures):
sid = futures[fut][0]
try:
_, gist, last_id = fut.result()
memory.store_summary(sid, gist, last_id) # main thread: embed + write
done += 1
except Exception as exc:
failed += 1
logbus.log("error", "summarize failed", session=sid, error=str(exc)[:120])
if (done + failed) % 25 == 0:
logbus.log("info", "summarize-all progress", done=done, failed=failed, total=len(todo))
report = {"summarized": done, "failed": failed, "total": len(todo)}
logbus.log("info", "summarize-all complete", **report)
return report
def main() -> int:
limit = int(sys.argv[1]) if len(sys.argv) > 1 else None
print(summarize_all(limit=limit))
return 0
if __name__ == "__main__":
raise SystemExit(main())