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project-lyra/lyra/chat.py
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serversdown bfb81428ab feat: era-rollup + narrative engine (consolidation steps 3-4)
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>
2026-06-16 19:28:01 +00:00

109 lines
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Python

"""The chat turn loop: persona + tiered memory + recent context -> reply.
Context is assembled in tiers (oldest/most-compacted first):
1. persona
2. long-term gist — relevant *summaries* of other sessions
3. sharp details — a few raw cross-session exchanges (so specifics survive)
4. recent raw turns of the current session (full fidelity)
5. the new user message
After replying, the session is compacted if enough new turns have accumulated.
"""
from __future__ import annotations
from lyra import config, llm, logbus, memory, persona, summary
from lyra.llm import Backend, Message
RECALL_K = 3 # raw cross-session "sharp detail" hits
RECENT_N = 10 # raw turns of the current session
SUMMARY_K = 3 # other-session gists
def _summary_note(summaries: list[memory.Summary]) -> Message:
lines = [f"- ({s.created_at[:10]}) {s.content}" for s in summaries]
body = "Gist of earlier sessions (compacted — ask if you need specifics):\n" + "\n".join(lines)
return {"role": "system", "content": body}
def _detail_note(exchanges: list[memory.Exchange]) -> Message:
lines = [f"- ({ex.created_at[:10]}, {ex.role}) {ex.content}" for ex in exchanges]
body = "Specific things you recall from past conversations:\n" + "\n".join(lines)
return {"role": "system", "content": body}
def _render(messages: list[Message]) -> str:
"""Human-readable dump of the exact prompt, for the live-log inspector."""
return "\n\n".join(f"[{m['role']}]\n{m['content']}" for m in messages)
def build_messages(session_id: str, user_msg: str) -> list[Message]:
"""Assemble the full, tiered message list for one turn."""
messages: list[Message] = [{"role": "system", "content": persona.system_prompt()}]
# Semantic memory: the distilled profile (who Brian is) — answers identity
# questions that raw recall can't. Always in context when it exists.
profile = memory.get_profile()
if profile:
messages.append(
{"role": "system", "content": "What you know about Brian:\n" + profile}
)
# Time-aware memory: the current narrative (recent arc, trends, callbacks).
narrative = memory.get_narrative()
if narrative:
messages.append(
{"role": "system", "content": "What's going on with Brian lately:\n" + narrative}
)
recent = memory.recent(session_id, n=RECENT_N)
recent_ids = {ex.id for ex in recent}
# Tier 1: compacted gists of *other* sessions (long-term, general idea).
summaries = memory.recall_summaries(user_msg, k=SUMMARY_K, exclude_session=session_id)
if summaries:
messages.append(_summary_note(summaries))
# Tier 2: a few sharp raw details from other sessions (so specifics survive
# compaction). Skip the current session (its raw turns are in `recent`).
recalled = [
ex for ex in memory.recall(user_msg, k=RECALL_K)
if ex.id not in recent_ids and ex.session_id != session_id
]
if recalled:
messages.append(_detail_note(recalled))
# Tier 3: current session, full fidelity.
for ex in recent:
messages.append({"role": ex.role, "content": ex.content})
messages.append({"role": "user", "content": user_msg})
logbus.log(
"debug", "context built",
recent=len(recent), summaries=len(summaries), details=len(recalled),
chars=sum(len(m["content"]) for m in messages), detail=_render(messages),
)
return messages
def respond(session_id: str, user_msg: str, backend: Backend = "cloud") -> str:
"""Produce Lyra's reply to a single user message and persist the exchange."""
cfg = config.load()
model = {"local": cfg.local_model, "cloud": cfg.cloud_model, "mi50": cfg.mi50_model}.get(
backend, backend
)
logbus.log(
"info", "chat request", session=session_id, backend=backend,
model=model, embed=cfg.embed_backend,
)
messages = build_messages(session_id, user_msg)
reply = llm.complete(messages, backend=backend)
logbus.log("info", "reply", session=session_id, chars=len(reply))
memory.remember(session_id, "user", user_msg)
memory.remember(session_id, "assistant", reply)
# Compact this session once enough new turns have piled up.
summary.maybe_summarize(session_id)
return reply