Switch from per-user message batching to per-channel conversation analysis. The LLM now sees the full interleaved conversation with relative timestamps, reply chains, and consecutive message collapsing instead of isolated flat text per user. Key changes: - Fix gpt-5-nano temperature incompatibility (conditional temp param) - Add mention-triggered scan: users @mention bot to analyze recent chat - Refactor debounce buffer from (channel_id, user_id) to channel_id - Replace per-message analyze_message() with analyze_conversation() returning per-user findings from a single LLM call - Add CONVERSATION_TOOL schema with coherence, topic, and game fields - Compact message format: relative timestamps, reply arrows (→), consecutive same-user message collapsing - Separate mention scan tasks from debounce tasks - Remove _store_context/_get_context (conversation block IS the context) - Escalation timeout config: [30, 60, 120, 240] minutes Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
360 lines
14 KiB
Python
360 lines
14 KiB
Python
import asyncio
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import logging
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import random
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import re
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from collections import deque
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from pathlib import Path
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import discord
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from discord.ext import commands
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logger = logging.getLogger("bcs.chat")
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_PROMPTS_DIR = Path(__file__).resolve().parent.parent / "prompts"
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IMAGE_ROAST = (_PROMPTS_DIR / "scoreboard_roast.txt").read_text(encoding="utf-8")
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_IMAGE_TYPES = {"png", "jpg", "jpeg", "gif", "webp"}
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# Cache loaded prompt files so we don't re-read on every message
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_prompt_cache: dict[str, str] = {}
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def _load_prompt(filename: str) -> str:
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if filename not in _prompt_cache:
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_prompt_cache[filename] = (_PROMPTS_DIR / filename).read_text(encoding="utf-8")
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return _prompt_cache[filename]
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class ChatCog(commands.Cog):
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def __init__(self, bot: commands.Bot):
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self.bot = bot
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# Per-channel conversation history for the bot: {channel_id: deque of {role, content}}
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self._chat_history: dict[int, deque] = {}
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# Counter of messages seen since last proactive reply (per channel)
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self._messages_since_reply: dict[int, int] = {}
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def _get_active_prompt(self) -> str:
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"""Load the chat prompt for the current mode."""
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mode_config = self.bot.get_mode_config()
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prompt_file = mode_config.get("prompt_file", "chat_personality.txt")
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return _load_prompt(prompt_file)
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@commands.Cog.listener()
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async def on_message(self, message: discord.Message):
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if message.author.bot:
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return
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if not message.guild:
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return
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should_reply = False
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is_proactive = False
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reply_context = "" # Text of the message being replied to
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# Check if bot is @mentioned
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if self.bot.user in message.mentions:
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should_reply = True
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# Check if replying to a message
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if message.reference and message.reference.message_id:
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try:
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ref_msg = message.reference.cached_message
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if ref_msg is None:
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ref_msg = await message.channel.fetch_message(
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message.reference.message_id
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)
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if ref_msg.author.id == self.bot.user.id:
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# Replying to the bot's own message — continue conversation
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should_reply = True
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if ref_msg.content:
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reply_context = f"[Replying to bot's message: {ref_msg.content[:300]}]\n"
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elif should_reply:
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# @mentioned the bot while replying to someone else — include that message
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ref_text = ref_msg.content[:500] if ref_msg.content else "(no text)"
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reply_context = f"[{ref_msg.author.display_name} said: {ref_text}]\n"
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except discord.HTTPException:
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pass
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# Proactive reply check (only if not already replying to a mention/reply)
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if not should_reply:
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mode_config = self.bot.get_mode_config()
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if mode_config.get("proactive_replies", False):
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ch_id = message.channel.id
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self._messages_since_reply[ch_id] = self._messages_since_reply.get(ch_id, 0) + 1
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cooldown = self.bot.config.get("modes", {}).get("proactive_cooldown_messages", 5)
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reply_chance = mode_config.get("reply_chance", 0.0)
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if (
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self._messages_since_reply[ch_id] >= cooldown
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and reply_chance > 0
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and random.random() < reply_chance
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and message.content and message.content.strip()
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):
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should_reply = True
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is_proactive = True
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if not should_reply:
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return
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# Build conversation context
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ch_id = message.channel.id
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if ch_id not in self._chat_history:
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self._chat_history[ch_id] = deque(maxlen=10)
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# Clean the mention out of the message content
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content = message.content.replace(f"<@{self.bot.user.id}>", "").strip()
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# Check for image attachments (on this message or the referenced message)
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image_attachment = None
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for att in message.attachments:
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ext = att.filename.rsplit(".", 1)[-1].lower() if "." in att.filename else ""
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if ext in _IMAGE_TYPES:
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image_attachment = att
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break
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if not image_attachment and message.reference:
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try:
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ref = message.reference.cached_message or await message.channel.fetch_message(
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message.reference.message_id
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)
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for att in ref.attachments:
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ext = att.filename.rsplit(".", 1)[-1].lower() if "." in att.filename else ""
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if ext in _IMAGE_TYPES:
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image_attachment = att
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break
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except discord.HTTPException:
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pass
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typing_ctx = None
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async def start_typing():
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nonlocal typing_ctx
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typing_ctx = message.channel.typing()
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await typing_ctx.__aenter__()
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if image_attachment:
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# --- Image path: roast the image ---
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image_bytes = await image_attachment.read()
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user_text = content if content else ""
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logger.info(
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"Image roast request in #%s from %s (%s, %s)",
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message.channel.name,
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message.author.display_name,
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image_attachment.filename,
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user_text[:80],
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)
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response = await self.bot.llm_heavy.analyze_image(
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image_bytes,
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IMAGE_ROAST,
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user_text=user_text,
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on_first_token=start_typing,
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)
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else:
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# --- Text-only path: normal chat ---
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if not content:
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content = "(just pinged me)" if not is_proactive else message.content
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# If a mention scan is running, await it so we can include findings
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scan_summary = ""
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if self.bot.user in message.mentions:
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sentiment_cog = self.bot.get_cog("SentimentCog")
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if sentiment_cog:
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task = sentiment_cog._mention_scan_tasks.get(message.channel.id)
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if task and not task.done():
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try:
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await asyncio.wait_for(asyncio.shield(task), timeout=45)
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except (asyncio.TimeoutError, asyncio.CancelledError):
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pass
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scan_summary = sentiment_cog._mention_scan_results.pop(message.id, "")
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# Add drama score context only when noteworthy
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drama_score = self.bot.drama_tracker.get_drama_score(message.author.id)
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user_data = self.bot.drama_tracker.get_user(message.author.id)
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context_parts = [f"#{message.channel.name}"]
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if drama_score >= 0.2:
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context_parts.append(f"drama score {drama_score:.2f}/1.0")
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if user_data.offense_count > 0:
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context_parts.append(f"{user_data.offense_count} offense(s)")
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score_context = f"[Server context: {message.author.display_name} — {', '.join(context_parts)}]"
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# Gather user notes and recent messages for richer context
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extra_context = ""
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user_notes = self.bot.drama_tracker.get_user_notes(message.author.id)
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if user_notes:
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extra_context += f"[Notes about {message.author.display_name}: {user_notes}]\n"
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# Include mention scan findings if available
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if scan_summary:
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extra_context += f"[You just scanned recent chat. Results: {scan_summary}]\n"
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recent_user_msgs = []
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try:
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async for msg in message.channel.history(limit=50, before=message):
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if msg.author.id == message.author.id and msg.content and msg.content.strip():
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recent_user_msgs.append(msg.content[:200])
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if len(recent_user_msgs) >= 10:
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break
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except discord.HTTPException:
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pass
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if recent_user_msgs:
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recent_lines = "\n".join(f"- {m}" for m in reversed(recent_user_msgs))
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extra_context += f"[{message.author.display_name}'s recent messages:\n{recent_lines}]\n"
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self._chat_history[ch_id].append(
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{"role": "user", "content": f"{score_context}\n{extra_context}{reply_context}{message.author.display_name}: {content}"}
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)
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active_prompt = self._get_active_prompt()
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# Collect recent bot replies so the LLM can avoid repeating itself
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recent_bot_replies = [
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m["content"][:150] for m in self._chat_history[ch_id]
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if m["role"] == "assistant"
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][-5:]
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response = await self.bot.llm_chat.chat(
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list(self._chat_history[ch_id]),
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active_prompt,
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on_first_token=start_typing,
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recent_bot_replies=recent_bot_replies,
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)
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if typing_ctx:
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await typing_ctx.__aexit__(None, None, None)
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# Strip leaked metadata the LLM may echo back.
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# The LLM often dumps paraphrased context and style labels in [brackets]
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# before/between its actual answer. Split on those bracket lines and
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# keep only the last non-empty segment — the real roast is always last.
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if response:
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segments = re.split(r"^\s*\[[^\]]*\]\s*$", response, flags=re.MULTILINE)
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segments = [s.strip() for s in segments if s.strip()]
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response = segments[-1] if segments else ""
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if not response:
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log_channel = discord.utils.get(message.guild.text_channels, name="bcs-log")
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if log_channel:
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try:
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await log_channel.send(
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f"**LLM OFFLINE** | Failed to generate reply to "
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f"{message.author.mention} in #{message.channel.name}"
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)
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except discord.HTTPException:
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pass
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logger.warning("LLM returned no response for %s in #%s", message.author, message.channel.name)
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return
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if not image_attachment:
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self._chat_history[ch_id].append(
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{"role": "assistant", "content": response}
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)
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# Reset proactive cooldown counter for this channel
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if is_proactive:
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self._messages_since_reply[ch_id] = 0
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# Wait for any pending sentiment analysis to finish first so
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# warnings/mutes appear before the chat reply
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sentiment_cog = self.bot.get_cog("SentimentCog")
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if sentiment_cog:
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task = sentiment_cog._debounce_tasks.get(message.channel.id)
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if task and not task.done():
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try:
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await asyncio.wait_for(asyncio.shield(task), timeout=15)
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except (asyncio.TimeoutError, asyncio.CancelledError):
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pass
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await message.reply(response, mention_author=False)
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reply_type = "proactive" if is_proactive else "chat"
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logger.info(
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"%s reply in #%s to %s: %s",
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reply_type.capitalize(),
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message.channel.name,
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message.author.display_name,
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response[:100],
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)
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@commands.Cog.listener()
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async def on_raw_reaction_add(self, payload: discord.RawReactionActionEvent):
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# Ignore bot's own reactions
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if payload.user_id == self.bot.user.id:
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return
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# 50% chance to reply
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if random.random() > 0.50:
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return
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# Only react to reactions on the bot's own messages
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channel = self.bot.get_channel(payload.channel_id)
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if channel is None:
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return
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try:
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message = await channel.fetch_message(payload.message_id)
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except discord.HTTPException:
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return
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if message.author.id != self.bot.user.id:
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return
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# Get the user who reacted
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guild = self.bot.get_guild(payload.guild_id) if payload.guild_id else None
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if guild is None:
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return
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member = guild.get_member(payload.user_id)
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if member is None:
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return
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emoji = str(payload.emoji)
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# Build a one-shot prompt for the LLM
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ch_id = channel.id
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if ch_id not in self._chat_history:
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self._chat_history[ch_id] = deque(maxlen=10)
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context = (
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f"[Server context: {member.display_name} — #{channel.name}]\n"
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f"[{member.display_name} reacted to your message with {emoji}]\n"
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f"[Your message was: {message.content[:300]}]\n"
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f"{member.display_name}: *reacted {emoji}*"
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)
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self._chat_history[ch_id].append({"role": "user", "content": context})
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active_prompt = self._get_active_prompt()
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recent_bot_replies = [
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m["content"][:150] for m in self._chat_history[ch_id]
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if m["role"] == "assistant"
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][-5:]
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response = await self.bot.llm_chat.chat(
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list(self._chat_history[ch_id]),
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active_prompt,
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recent_bot_replies=recent_bot_replies,
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)
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# Strip leaked metadata (same approach as main chat path)
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if response:
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segments = re.split(r"^\s*\[[^\]]*\]\s*$", response, flags=re.MULTILINE)
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segments = [s.strip() for s in segments if s.strip()]
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response = segments[-1] if segments else ""
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if not response:
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return
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self._chat_history[ch_id].append({"role": "assistant", "content": response})
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await channel.send(response)
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logger.info(
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"Reaction reply in #%s to %s (%s): %s",
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channel.name,
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member.display_name,
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emoji,
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response[:100],
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)
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async def setup(bot: commands.Bot):
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await bot.add_cog(ChatCog(bot))
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