66 lines
2.9 KiB
Python
66 lines
2.9 KiB
Python
from __future__ import annotations
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from typing import Any, Optional
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from app.models.interview import (
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LikertResponse, QSortResponse, DelphiRatingResponse, ScenarioResponse, SubagentKind,
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)
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class InterviewZepWriter:
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"""Mirrors `ZepGraphMemoryUpdater.add_activity` usage but for interview episodes.
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The real `ZepGraphMemoryUpdater` may expose `add_activity` (preferred) or a lower-level
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text-episode method; this writer adapts to either via duck typing.
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"""
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def __init__(self, memory_updater, graph_id: str):
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self.updater = memory_updater
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self.graph_id = graph_id
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def _emit(self, text: str) -> None:
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if hasattr(self.updater, "add_text_episode"):
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self.updater.add_text_episode(self.graph_id, text)
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elif hasattr(self.updater, "add_activity"):
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self.updater.add_activity({"graph_id": self.graph_id, "text": text})
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else:
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raise RuntimeError("memory_updater has neither add_text_episode nor add_activity")
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def _summarize_likert(self, r: LikertResponse) -> str:
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mean_v = sum(r.responses.values()) / max(len(r.responses), 1)
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top = sorted(r.responses.items(), key=lambda kv: -kv[1])[:3]
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bot = sorted(r.responses.items(), key=lambda kv: kv[1])[:3]
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return (f"mean={mean_v:.2f}; agrees with {[k for k,_ in top]}; "
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f"disagrees with {[k for k,_ in bot]}")
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def _summarize_qsort(self, r: QSortResponse) -> str:
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plus = [k for k, v in r.placements.items() if v >= 2]
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minus = [k for k, v in r.placements.items() if v <= -2]
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return f"+strongly:{plus}; -strongly:{minus}"
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def _summarize_scenario(self, r: ScenarioResponse) -> str:
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parts = [f"{sid}: des={rt.desirability} plaus={rt.plausibility}"
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for sid, rt in r.ratings.items()]
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return "; ".join(parts)
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def write_per_agent(
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self, subagent: SubagentKind, response: Any, agent_name: str,
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phase: Optional[str] = None,
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) -> None:
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if isinstance(response, LikertResponse):
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phase = phase or response.phase.value
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summary = self._summarize_likert(response)
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elif isinstance(response, QSortResponse):
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phase = phase or "T1"
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summary = self._summarize_qsort(response)
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elif isinstance(response, ScenarioResponse):
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phase = phase or "T1"
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summary = self._summarize_scenario(response)
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elif isinstance(response, DelphiRatingResponse):
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phase = phase or f"T1/R{response.round}"
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summary = f"round={response.round}; {len(response.ratings)} themes rated"
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else:
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phase = phase or "T1"
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summary = str(response)[:200]
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text = f"Agent {agent_name} (interview/{subagent.value}/{phase}): {summary}"
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self._emit(text)
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def write_aggregate(self, subagent: SubagentKind, summary: str) -> None:
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self._emit(f"Interview aggregate ({subagent.value}): {summary}")
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