ac04ad1df6
The MI50 llama.cpp server 500s on the `tools` param unless launched with
--jinja, so sending tools to mi50 broke chat on that backend. Gate tools to
TOOL_BACKENDS={"cloud"} for now; mi50 chat works again (just without tools).
Add "mi50" once its server runs with --jinja.
Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
158 lines
6.6 KiB
Python
158 lines
6.6 KiB
Python
"""The chat turn loop: persona + tiered memory + recent context -> reply.
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Context is assembled in tiers (oldest/most-compacted first):
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1. persona
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2. long-term gist — relevant *summaries* of other sessions
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3. sharp details — a few raw cross-session exchanges (so specifics survive)
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4. recent raw turns of the current session (full fidelity)
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5. the new user message
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After replying, the session is compacted if enough new turns have accumulated.
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"""
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from __future__ import annotations
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from lyra import clock, config, llm, logbus, memory, persona, self_state, summary
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from lyra import tools as toolkit
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from lyra.llm import Backend, Message
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RECALL_K = 3 # raw cross-session "sharp detail" hits
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RECENT_N = 10 # raw turns of the current session
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SUMMARY_K = 3 # other-session gists
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MAX_TOOL_ROUNDS = 5 # cap tool-call iterations per turn
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# Backends that support function-calling. The MI50's llama.cpp server only does
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# tools when launched with --jinja; until it is, keep tools to cloud so MI50 chat
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# doesn't 500 on the tools param. Add "mi50" here once that flag is set.
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TOOL_BACKENDS = {"cloud"}
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def _summary_note(summaries: list[memory.Summary]) -> Message:
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lines = [f"- ({(s.session_started_at or s.created_at)[:10]}) {s.content}" for s in summaries]
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body = "Gist of earlier sessions (compacted — ask if you need specifics):\n" + "\n".join(lines)
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return {"role": "system", "content": body}
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def _detail_note(exchanges: list[memory.Exchange]) -> Message:
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lines = [f"- ({ex.created_at[:10]}, {ex.role}) {ex.content}" for ex in exchanges]
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body = "Specific things you recall from past conversations:\n" + "\n".join(lines)
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return {"role": "system", "content": body}
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def _now_note() -> Message:
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"""Current wall-clock time + how long since Brian last said anything.
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Stated as plain fact — she has no clock otherwise, so without this 'now' and
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the gap since the last turn are invisible to her.
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"""
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line = f"The current date and time is {clock.stamp()}."
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gap = clock.humanize_gap(memory.last_exchange_at())
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line += (
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f" It has been {gap} since Brian last spoke with you."
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if gap else " This is the first thing Brian has ever said to you."
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)
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return {"role": "system", "content": line}
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def _render(messages: list[Message]) -> str:
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"""Human-readable dump of the exact prompt, for the live-log inspector."""
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return "\n\n".join(f"[{m['role']}]\n{m['content']}" for m in messages)
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def build_messages(session_id: str, user_msg: str) -> list[Message]:
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"""Assemble the full, tiered message list for one turn."""
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messages: list[Message] = [{"role": "system", "content": persona.system_prompt()}]
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# Autonomy Core: Lyra's own evolving interiority (mood, self-narrative). Comes
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# right after the persona — her sense of self before her model of the world.
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messages.append({"role": "system", "content": self_state.render_for_context(self_state.load())})
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# When she is: current time + the gap since Brian last spoke (she has no clock).
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messages.append(_now_note())
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# Semantic memory: the distilled profile (who Brian is) — answers identity
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# questions that raw recall can't. Always in context when it exists.
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profile = memory.get_profile()
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if profile:
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messages.append(
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{"role": "system", "content": "What you know about Brian:\n" + profile}
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)
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# Time-aware memory: the current narrative (recent arc, trends, callbacks).
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narrative = memory.get_narrative()
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if narrative:
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messages.append(
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{"role": "system", "content": "What's going on with Brian lately:\n" + narrative}
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)
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recent = memory.recent(session_id, n=RECENT_N)
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recent_ids = {ex.id for ex in recent}
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# Tier 1: compacted gists of *other* sessions (long-term, general idea).
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summaries = memory.recall_summaries(user_msg, k=SUMMARY_K, exclude_session=session_id)
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if summaries:
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messages.append(_summary_note(summaries))
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# Tier 2: a few sharp raw details from other sessions (so specifics survive
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# compaction). Skip the current session (its raw turns are in `recent`).
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recalled = [
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ex for ex in memory.recall(user_msg, k=RECALL_K)
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if ex.id not in recent_ids and ex.session_id != session_id
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]
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if recalled:
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messages.append(_detail_note(recalled))
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# Tier 3: current session, full fidelity.
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for ex in recent:
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messages.append({"role": ex.role, "content": ex.content})
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messages.append({"role": "user", "content": user_msg})
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logbus.log(
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"debug", "context built",
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recent=len(recent), summaries=len(summaries), details=len(recalled),
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chars=sum(len(m["content"]) for m in messages), detail=_render(messages),
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)
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return messages
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def respond(session_id: str, user_msg: str, backend: Backend = "cloud") -> str:
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"""Produce Lyra's reply to a single user message and persist the exchange."""
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cfg = config.load()
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# Live chat uses the stronger chat_model on cloud (bulk consolidation keeps
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# cloud_model). local/mi50 use their own configured model.
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model = {"local": cfg.local_model, "cloud": cfg.chat_model, "mi50": cfg.mi50_model}.get(
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backend, backend
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)
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logbus.log(
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"info", "chat request", session=session_id, backend=backend,
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model=model, embed=cfg.embed_backend,
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)
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messages = build_messages(session_id, user_msg)
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# Tool loop: offer Lyra her tools; if she calls one, run it and feed the
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# result back so she can continue, until she returns a normal text reply.
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tool_specs = toolkit.specs() if backend in TOOL_BACKENDS else None
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ctx = {"session_id": session_id, "backend": backend}
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reply = ""
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for _ in range(MAX_TOOL_ROUNDS):
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assistant_msg, tool_calls = llm.chat_call(
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messages, backend=backend, model=model, tools=tool_specs
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)
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if not tool_calls:
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reply = assistant_msg.get("content") or ""
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break
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messages.append(assistant_msg) # her tool-call request
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for tc in tool_calls:
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result = toolkit.dispatch(tc["name"], tc["arguments"], ctx)
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logbus.log("info", "tool call", session=session_id, tool=tc["name"], result=result[:80])
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messages.append({"role": "tool", "tool_call_id": tc["id"], "content": result})
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if not reply:
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reply = "(I got tangled using my tools there — say that again?)"
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logbus.log("info", "reply", session=session_id, chars=len(reply))
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memory.remember(session_id, "user", user_msg)
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memory.remember(session_id, "assistant", reply)
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# Compact this session once enough new turns have piled up.
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summary.maybe_summarize(session_id)
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return reply
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