mirror of
https://github.com/kennethreitz/simplemind.git
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953 lines
36 KiB
Python
953 lines
36 KiB
Python
import contextlib
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import logging
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import os
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import random
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import re
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import sqlite3
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from concurrent.futures import ThreadPoolExecutor
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from contextlib import contextmanager
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from datetime import datetime
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from typing import List
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import nltk
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import spacy
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import xerox
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from _context import simplemind as sm
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from docopt import docopt
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from nltk.tag import pos_tag
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from nltk.tokenize import word_tokenize
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from prompt_toolkit import PromptSession
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from prompt_toolkit.auto_suggest import AutoSuggestFromHistory
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from prompt_toolkit.completion import Completer, Completion
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from rich.console import Console
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from rich.markdown import Markdown
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from rich.panel import Panel
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from rich.status import Status
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DB_PATH = "enhanced_context.db"
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AVAILABLE_PROVIDERS = ["xai", "openai", "anthropic", "ollama"]
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# Enable Logfire for debugging.
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# sm.enable_logfire()
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__doc__ = """Enhanced Context Chat Interface
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Usage:
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enhanced_context.py [--provider=<provider>] [--model=<model>]
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enhanced_context.py (-h | --help)
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Options:
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-h --help Show this screen.
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--provider=<provider> LLM provider to use (openai/anthropic/xai/ollama)
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--model=<model> Specific model to use (e.g. o1-preview)
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"""
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class ContextDatabase:
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def __init__(self, db_path: str):
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self.db_path = db_path
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self.init_db()
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self.logger = logging.getLogger(__name__)
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@contextmanager
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def get_connection(self):
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"""Context manager for database connections"""
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conn = sqlite3.connect(self.db_path)
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try:
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yield conn
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finally:
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conn.close()
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def init_db(self):
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"""Initialize the database with proper schema"""
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with self.get_connection() as conn:
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conn.execute(
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"""
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CREATE TABLE IF NOT EXISTS memory (
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entity TEXT,
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source TEXT,
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last_mentioned TIMESTAMP,
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mention_count INTEGER DEFAULT 1,
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PRIMARY KEY (entity, source)
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)
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"""
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)
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conn.execute(
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"""
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CREATE TABLE IF NOT EXISTS identity (
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id INTEGER PRIMARY KEY,
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name TEXT NOT NULL,
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last_updated TIMESTAMP
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)
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"""
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)
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conn.execute(
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"""
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CREATE TABLE IF NOT EXISTS essence_markers (
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marker_type TEXT,
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marker_text TEXT,
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timestamp TIMESTAMP,
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PRIMARY KEY (marker_type, marker_text)
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)
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"""
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)
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def store_entity(self, entity: str, source: str = "user") -> None:
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"""Store or update entity mention with source tracking"""
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with self.get_connection() as conn:
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now = datetime.now().strftime("%Y-%m-%d %H:%M:%S")
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conn.execute(
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"""
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INSERT INTO memory (entity, source, last_mentioned, mention_count)
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VALUES (?, ?, ?, 1)
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ON CONFLICT(entity, source) DO UPDATE SET
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last_mentioned = ?,
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mention_count = mention_count + 1
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""",
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(entity, source, now, now),
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)
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conn.commit()
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def retrieve_recent_entities(self, days: int = 7) -> List[tuple]:
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"""Retrieve recently mentioned entities with frequency and source"""
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try:
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with self.get_connection() as conn:
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cur = conn.cursor()
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cur.execute(
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"""
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SELECT
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entity,
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SUM(mention_count) as total_mentions,
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GROUP_CONCAT(source || ':' || mention_count) as source_counts
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FROM memory
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WHERE last_mentioned >= datetime('now', ?, 'localtime')
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GROUP BY entity
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ORDER BY total_mentions DESC, MAX(last_mentioned) DESC
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LIMIT 50
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""",
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(f"-{days} days",),
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)
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entities = []
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for row in cur.fetchall():
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entity, total_count, source_counts = row
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source_dict = dict(sc.split(":") for sc in source_counts.split(","))
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entities.append(
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(
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entity,
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total_count,
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int(source_dict.get("user", 0)),
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int(source_dict.get("llm", 0)),
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)
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)
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return entities
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except sqlite3.Error as e:
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self.logger.error(f"Database error while retrieving entities: {e}")
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return []
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def store_identity(self, identity: str) -> None:
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"""Store personal identity in database"""
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if not identity:
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return
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try:
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with self.get_connection() as conn:
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now = datetime.now()
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# Store in identity table
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conn.execute(
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"""
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INSERT OR REPLACE INTO identity (id, name, last_updated)
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VALUES (1, ?, ?)
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""",
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(identity, now),
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)
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# Store in memory table
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self.store_entity(identity)
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conn.commit()
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except sqlite3.Error as e:
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self.logger.error(f"Database error while storing identity: {e}")
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def load_identity(self) -> str | None:
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"""Load personal identity from database"""
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try:
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with self.get_connection() as conn:
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cur = conn.cursor()
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cur.execute("SELECT name FROM identity WHERE id = 1")
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result = cur.fetchone()
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return result[0] if result else None
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except sqlite3.Error as e:
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self.logger.error(f"Database error while loading identity: {e}")
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return None
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def store_essence_marker(self, marker_type: str, marker_text: str) -> None:
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"""Store essence marker in database"""
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try:
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with self.get_connection() as conn:
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now = datetime.now().strftime("%Y-%m-%d %H:%M:%S")
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conn.execute(
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"""
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INSERT OR REPLACE INTO essence_markers
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(marker_type, marker_text, timestamp)
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VALUES (?, ?, ?)
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""",
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(marker_type, marker_text, now),
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)
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conn.commit()
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except sqlite3.Error as e:
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self.logger.error(f"Database error storing essence marker: {e}")
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def retrieve_essence_markers(self, days: int = 30) -> List[tuple[str, str]]:
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"""Retrieve recent essence markers"""
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try:
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with self.get_connection() as conn:
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cur = conn.cursor()
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cur.execute(
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"""
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SELECT DISTINCT marker_type, marker_text
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FROM essence_markers
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WHERE timestamp >= datetime('now', ?, 'localtime')
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ORDER BY timestamp DESC
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""",
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(f"-{days} days",),
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)
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return cur.fetchall()
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except sqlite3.Error as e:
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self.logger.error(f"Database error retrieving essence markers: {e}")
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return []
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class EnhancedContextPlugin(sm.BasePlugin):
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model_config = {"extra": "allow"}
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def __init__(self, verbose: bool = False):
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super().__init__()
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# Set up logging
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self.verbose = verbose
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if verbose:
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logging.basicConfig(
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level=logging.INFO, format="%(asctime)s - %(levelname)s - %(message)s"
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)
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else:
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logging.basicConfig(level=logging.WARNING)
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self.logger = logging.getLogger(__name__)
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# Initialize NLP model
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try:
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self.nlp = spacy.load("en_core_web_sm")
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except OSError:
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self.logger.error(
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"Failed to load spaCy model. Please install it using: python -m spacy download en_core_web_sm"
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)
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raise
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# Initialize database
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self.db = ContextDatabase(DB_PATH)
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self.logger.info(f"EnhancedContextPlugin initialized with database: {DB_PATH}")
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# Load identity from database
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self.personal_identity = self.db.load_identity()
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# Download required NLTK data silently
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try:
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with open(os.devnull, "w") as null_out:
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with (
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contextlib.redirect_stdout(null_out),
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contextlib.redirect_stderr(null_out),
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):
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nltk.download("punkt", quiet=True)
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nltk.download("averaged_perceptron_tagger", quiet=True)
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except LookupError as e:
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self.logger.error(f"Error downloading NLTK data: {e}")
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# Add LLM personality traits for easter egg
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self.llm_personalities = [
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"You are a wise philosopher who speaks in riddles",
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"You are an excited scientist who loves discovering patterns",
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"You are a detective who analyzes every detail",
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"You are a poet who sees beauty in connections",
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"You are a historian who relates everything to the past",
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]
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# Add these lines to store the conversation's model and provider
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self.llm_model = None
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self.llm_provider = None
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def extract_entities(self, text: str) -> List[str]:
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"""Extract named entities with improved filtering"""
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doc = self.nlp(text)
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# Define important entity types
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important_types = {
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"PERSON",
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"ORG",
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"GPE",
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"NORP",
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"PRODUCT",
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"EVENT",
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"WORK_OF_ART",
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}
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entities = [
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ent.text.strip()
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for ent in doc.ents
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if (
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ent.label_ in important_types
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and len(ent.text.strip()) > 1
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and not ent.text.isnumeric()
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)
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]
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return list(set(entities))
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def format_context_message(
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self, entities: List[tuple], include_identity: bool = True
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) -> str:
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"""Format context message with essence markers"""
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context_parts = []
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# Add identity context
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if include_identity and self.personal_identity:
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context_parts.append(f"The user's name is {self.personal_identity}.")
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# Add essence markers
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essence_markers = self.retrieve_essence_markers()
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if essence_markers:
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markers_by_type = {}
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for marker_type, marker_text in essence_markers:
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markers_by_type.setdefault(marker_type, []).append(marker_text)
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context_parts.append("User characteristics:")
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for marker_type, markers in markers_by_type.items():
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context_parts.append(f"- {marker_type.title()}: {', '.join(markers)}")
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# Add entity context with user/llm breakdown
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if entities:
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entity_strings = [
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f"{entity} (mentioned {total} times - User: {user_count}, AI: {llm_count})"
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for entity, total, user_count, llm_count in entities
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]
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topics = (
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", ".join(entity_strings[:-1]) + f" and {entity_strings[-1]}"
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if len(entity_strings) > 1
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else entity_strings[0]
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)
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context_parts.append(f"Recent conversation topics: {topics}")
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return "\n".join(context_parts)
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def extract_essence_markers(self, text: str) -> List[tuple[str, str]]:
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"""Extract essence markers from text."""
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patterns = {
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"value": [
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r"I (?:really )?(?:believe|think) (?:that )?(.+)",
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r"(?:It's|Its) important (?:to me )?that (.+)",
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r"I value (.+)",
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r"(?:The )?most important (?:thing|aspect) (?:to me )?is (.+)",
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],
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"identity": [
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r"I am(?: a| an)? (.+)",
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r"I consider myself(?: a| an)? (.+)",
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r"I identify as(?: a| an)? (.+)",
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],
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"preference": [
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r"I (?:really )?(?:like|love|enjoy|prefer) (.+)",
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r"I can't stand (.+)",
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r"I hate (.+)",
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r"I always (.+)",
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r"I never (.+)",
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],
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"emotion": [
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r"I feel (.+)",
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r"I'm feeling (.+)",
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r"(?:It|That) makes me feel (.+)",
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],
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}
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markers = []
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doc = self.nlp(text)
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for sent in doc.sents:
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sent_text = sent.text.strip().lower()
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for marker_type, pattern_list in patterns.items():
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for pattern in pattern_list:
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for match in re.finditer(pattern, sent_text, re.IGNORECASE):
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marker_text = match.group(1).strip()
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if self._is_valid_marker(marker_text):
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markers.append((marker_type, marker_text))
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return markers
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def _is_valid_marker(self, marker_text: str) -> bool:
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"""Helper method to validate essence markers"""
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invalid_words = {"um", "uh", "like"}
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return len(marker_text) > 3 and not any(w in marker_text for w in invalid_words)
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def pre_send_hook(self, conversation: sm.Conversation) -> bool:
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"""Process user message before sending to LLM"""
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self.llm_model = conversation.llm_model
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self.llm_provider = conversation.llm_provider
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last_message = conversation.get_last_message(role="user")
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if not last_message:
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return True
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# Handle special commands
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if result := self._handle_special_commands(conversation, last_message.text):
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return result
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self.logger.info(f"Processing user message: {last_message.text}")
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# Process entities and markers
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self._process_user_message(last_message.text)
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# Add context
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self._add_context_to_conversation(conversation)
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return True
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def _handle_special_commands(
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self, conversation: sm.Conversation, message: str
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) -> bool | None:
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"""Handle special commands like /summary"""
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if message.strip().lower() == "/summary":
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summary = self.summarize_memory()
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conversation.add_message(role="assistant", text=summary)
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return False
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elif message.strip().lower() == "/topics":
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topics = self.get_all_topics()
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conversation.add_message(role="assistant", text=topics)
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return False
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return None
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def _process_user_message(self, message: str) -> None:
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"""Process user message for entities and markers"""
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# Extract and store entities
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entities = self.extract_entities(message)
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for entity in entities:
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self.store_entity(entity, source="user")
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# Extract and store essence markers
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essence_markers = self.extract_essence_markers(message)
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for marker_type, marker_text in essence_markers:
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self.store_essence_marker(marker_type, marker_text)
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self.logger.info(f"Found essence marker: {marker_type} - {marker_text}")
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def _add_context_to_conversation(self, conversation: sm.Conversation) -> None:
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"""Add context message to conversation"""
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recent_entities = self.retrieve_recent_entities(days=30)
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context_message = self.format_context_message(recent_entities)
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if context_message:
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conversation.add_message(role="user", text=context_message)
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self.logger.info(f"Added context message: {context_message}")
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def store_entity(self, entity: str, source: str = "user") -> None:
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self.db.store_entity(entity, source)
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def store_identity(self, identity: str) -> None:
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self.db.store_identity(identity)
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self.personal_identity = identity
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def load_identity(self) -> str | None:
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self.personal_identity = self.db.load_identity()
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return self.personal_identity
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def store_essence_marker(self, marker_type: str, marker_text: str) -> None:
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self.db.store_essence_marker(marker_type, marker_text)
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def retrieve_essence_markers(self, days: int = 30) -> List[tuple[str, str]]:
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return self.db.retrieve_essence_markers(days)
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def summarize_memory(self, days: int = 30) -> str:
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"""Consolidate recent conversation memory into a summary"""
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entities = self.retrieve_recent_entities(days=days)
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if not entities:
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return "No recent conversation history to consolidate."
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# Group entities by frequency
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frequent = []
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occasional = []
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for entity, total, user_count, llm_count in entities:
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if total >= 3:
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frequent.append(f"{entity} (mentioned {total} times)")
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else:
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occasional.append(f"{entity} (mentioned {total} times)")
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# Build summary
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summary_parts = []
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if self.personal_identity:
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summary_parts.append(f"User Identity: {self.personal_identity}")
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if frequent:
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summary_parts.append("Frequently Discussed Topics:")
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summary_parts.extend([f"- {item}" for item in frequent])
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if occasional:
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summary_parts.append("Other Topics Mentioned:")
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summary_parts.extend([f"- {item}" for item in occasional])
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return "\n".join(summary_parts)
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def simulate_llm_conversation(self, context: str, num_turns: int = 3) -> str:
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"""Simulate a conversation between multiple LLM personalities about the context"""
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conversation_log = []
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def get_response(personality: str, previous_messages: str) -> str:
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prompt = (
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f"{personality}. You are participating in a brief group discussion "
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f"about the following context:\n{context}\n\n"
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f"Previous messages:\n{previous_messages}\n\n"
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"Provide a short, focused response (1-2 sentences) that builds on "
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"the discussion. Be creative but stay on topic."
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)
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temp_conv = sm.create_conversation(
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llm_model=self.llm_model, llm_provider=self.llm_provider
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)
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temp_conv.add_message(role="user", text=prompt)
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response = temp_conv.send()
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return response.text.strip()
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# Select random personalities for this conversation
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selected_personalities = random.sample(
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self.llm_personalities, min(num_turns, len(self.llm_personalities))
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)
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with ThreadPoolExecutor() as executor:
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for i, personality in enumerate(selected_personalities, 1):
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previous = "\n".join(conversation_log)
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response = get_response(personality, previous)
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conversation_log.append(f"Speaker {i}: {response}")
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return "\n\n".join(conversation_log)
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def store_llm_memory(self, conversation: sm.Conversation) -> None:
|
|
"""Generate and store memories from the LLM's perspective of the conversation.
|
|
|
|
Args:
|
|
conversation: The conversation object containing message history
|
|
"""
|
|
prompt = """Based on the recent messages, what are the most important things to remember?
|
|
Format each memory on a new line starting with MEMORY:
|
|
For example:
|
|
MEMORY: User prefers Python over JavaScript
|
|
MEMORY: User is working on a machine learning project"""
|
|
|
|
# Create temporary conversation for memory generation
|
|
temp_conv = sm.create_conversation(
|
|
llm_model=self.llm_model, llm_provider=self.llm_provider
|
|
)
|
|
|
|
# Add last few messages for context
|
|
for msg in conversation.messages[-3:]: # Last 3 messages
|
|
temp_conv.add_message(role=msg.role, text=msg.text)
|
|
|
|
# Get memories from LLM
|
|
temp_conv.add_message(role="user", text=prompt)
|
|
response = temp_conv.send()
|
|
|
|
# Process and store memories
|
|
if response and response.text:
|
|
for line in response.text.split("\n"):
|
|
if line.strip().startswith("MEMORY:"):
|
|
memory = line.replace("MEMORY:", "").strip()
|
|
self.store_entity(memory, source="llm")
|
|
self.logger.info(f"Stored LLM-generated memory: {memory}")
|
|
|
|
def retrieve_recent_entities(self, days: int = 7) -> List[tuple]:
|
|
"""Retrieve recently mentioned entities with their frequency data.
|
|
|
|
Args:
|
|
days: Number of days to look back
|
|
|
|
Returns:
|
|
List of tuples containing (entity, total_mentions, user_mentions, llm_mentions)
|
|
"""
|
|
try:
|
|
return self.db.retrieve_recent_entities(days)
|
|
except Exception as e:
|
|
self.logger.error(f"Error retrieving recent entities: {e}")
|
|
return []
|
|
|
|
def post_response_hook(self, conversation: sm.Conversation) -> None:
|
|
"""Process assistant's response after it's received."""
|
|
# Get the last assistant message
|
|
last_message = conversation.get_last_message(role="assistant")
|
|
if not last_message:
|
|
return
|
|
|
|
# Extract and store entities from assistant's response
|
|
entities = self.extract_entities(last_message.text)
|
|
for entity in entities:
|
|
self.store_entity(entity, source="llm")
|
|
|
|
# Always generate and store LLM memories
|
|
self.store_llm_memory(conversation)
|
|
|
|
def extract_identity(self, text: str) -> str | None:
|
|
"""Extract identity statements from text.
|
|
|
|
Args:
|
|
text: The text to analyze
|
|
|
|
Returns:
|
|
The extracted identity or None if not found
|
|
"""
|
|
text = text.lower().strip()
|
|
|
|
identity_patterns = [
|
|
(r"^i am (.+)$", 1),
|
|
(r"^my name is (.+)$", 1),
|
|
(r"^call me (.+)$", 1),
|
|
]
|
|
|
|
for pattern, group in identity_patterns:
|
|
if match := re.match(pattern, text):
|
|
identity = match.group(group).strip()
|
|
return identity if identity else None
|
|
|
|
return None
|
|
|
|
def is_identity_question(self, text: str) -> bool:
|
|
"""Detect if text contains a question about identity.
|
|
|
|
Args:
|
|
text: The text to analyze
|
|
|
|
Returns:
|
|
True if text contains an identity question
|
|
"""
|
|
# Tokenize and tag parts of speech
|
|
tokens = word_tokenize(text.lower())
|
|
tagged = pos_tag(tokens)
|
|
|
|
# Extract key words and patterns
|
|
words = set(tokens)
|
|
has_question_word = any(word in ["who", "what"] for word in words)
|
|
has_identity_term = any(word in ["i", "me", "my", "name"] for word in words)
|
|
has_conversation_term = any(
|
|
word in ["talking", "speaking", "chatting"] for word in words
|
|
)
|
|
|
|
# Check for question structure
|
|
is_question = (
|
|
text.endswith("?")
|
|
or has_question_word
|
|
or any(tag in ["WP", "WRB"] for word, tag in tagged)
|
|
)
|
|
|
|
# Combine conditions for identity questions
|
|
is_identity_question = is_question and (
|
|
has_identity_term or (has_question_word and has_conversation_term)
|
|
)
|
|
|
|
if is_identity_question:
|
|
self.logger.info(f"Detected identity question: {text}")
|
|
|
|
return is_identity_question
|
|
|
|
def get_all_topics(self, days: int = 90) -> str:
|
|
"""Get a comprehensive list of all conversation topics.
|
|
|
|
Args:
|
|
days: Number of days to look back (default: 90)
|
|
|
|
Returns:
|
|
Formatted string containing all topics and their mention counts
|
|
"""
|
|
entities = self.retrieve_recent_entities(days=days)
|
|
if not entities:
|
|
return "No conversation topics found in the specified time period."
|
|
|
|
# Sort entities by total mentions
|
|
sorted_entities = sorted(entities, key=lambda x: x[1], reverse=True)
|
|
|
|
# Format output using markdown
|
|
output_parts = ["## Conversation Topics"]
|
|
|
|
# Add top mentions with details
|
|
for entity, total, user_count, llm_count in sorted_entities:
|
|
source_breakdown = f"(User: {user_count}, AI: {llm_count})"
|
|
output_parts.append(f"- **{entity}**: {total} mentions {source_breakdown}")
|
|
|
|
# Add list of all topics
|
|
all_topics = [entity[0] for entity in sorted_entities]
|
|
if all_topics:
|
|
output_parts.append("\n## All Topics Mentioned")
|
|
output_parts.append(", ".join(all_topics))
|
|
|
|
return "\n".join(output_parts)
|
|
|
|
def get_memories(self) -> str:
|
|
"""Retrieve and format all stored memories."""
|
|
entities = self.db.retrieve_recent_entities(
|
|
days=3650
|
|
) # Retrieve entities from the last 10 years
|
|
if not entities:
|
|
return "No memories found."
|
|
|
|
memory_parts = ["## All Stored Memories"]
|
|
|
|
for entity, total, user_count, llm_count in entities:
|
|
memory_parts.append(
|
|
f"- **{entity}**: {total} mentions (User: {user_count}, AI: {llm_count})"
|
|
)
|
|
|
|
return "\n".join(memory_parts)
|
|
|
|
|
|
class CommandCompleter(Completer):
|
|
"""Custom completer that only suggests commands when input starts with '/'"""
|
|
|
|
def __init__(self):
|
|
self.commands = [
|
|
"/summary",
|
|
"/topics",
|
|
"/essence",
|
|
"/perspectives",
|
|
"/copy",
|
|
"/paste",
|
|
"/lumina",
|
|
"/memories",
|
|
]
|
|
|
|
def get_completions(self, document, complete_event):
|
|
# Only provide suggestions if text starts with '/'
|
|
text = document.text
|
|
if text.startswith("/"):
|
|
word = text.lstrip("/")
|
|
for command in self.commands:
|
|
if command.lstrip("/").startswith(word):
|
|
yield Completion(
|
|
command,
|
|
start_position=-len(text), # Replace the entire input
|
|
)
|
|
|
|
|
|
def get_multiline_input() -> str:
|
|
"""Get input from user with command autocompletion."""
|
|
# Create session with custom completer and history
|
|
session = PromptSession(
|
|
completer=CommandCompleter(),
|
|
auto_suggest=AutoSuggestFromHistory(),
|
|
complete_while_typing=True,
|
|
)
|
|
|
|
return session.prompt("\n> ", multiline=False)
|
|
|
|
|
|
def main():
|
|
# Parse arguments
|
|
args = docopt(__doc__)
|
|
console = Console()
|
|
|
|
# Use command line provider and model if specified
|
|
provider = args["--provider"].lower() if args["--provider"] else None
|
|
model = args["--model"] if args["--model"] else None
|
|
|
|
# Create a conversation and add the plugin
|
|
conversation = sm.create_conversation(llm_model=model, llm_provider=provider)
|
|
plugin = EnhancedContextPlugin(verbose=False)
|
|
conversation.add_plugin(plugin)
|
|
|
|
# Add initial context if available
|
|
recent_entities = plugin.retrieve_recent_entities()
|
|
context_message = plugin.format_context_message(recent_entities)
|
|
if context_message:
|
|
conversation.add_message(role="user", text=context_message)
|
|
plugin.logger.info(f"Added initial context message: {context_message}")
|
|
|
|
console = Console()
|
|
md = """# Enhanced Context Chat Interface
|
|
Type 'quit' to exit. Type '/' to see a list of commands.
|
|
"""
|
|
console.print(Markdown(md))
|
|
|
|
try:
|
|
while True:
|
|
# Get user input first
|
|
user_input = get_multiline_input()
|
|
|
|
# Skip empty messages
|
|
if not user_input:
|
|
continue
|
|
|
|
# Handle exit commands
|
|
if user_input.lower() in ["quit", "exit", "q"]:
|
|
console.print(Markdown("**Goodbye!**"))
|
|
break
|
|
|
|
# Handle all commands before any conversation processing
|
|
if user_input.startswith("/"):
|
|
# Handle memories command
|
|
if user_input.lower() == "/memories":
|
|
memories = plugin.get_memories()
|
|
console.print(Markdown(memories))
|
|
continue
|
|
|
|
# Handle copy command
|
|
if user_input.lower() == "/copy":
|
|
last_response = conversation.get_last_message(role="assistant")
|
|
if last_response:
|
|
clean_text = last_response.text.replace("### Response\n", "")
|
|
xerox.copy(clean_text)
|
|
console.print(Markdown("*Last response copied to clipboard*"))
|
|
else:
|
|
console.print(Markdown("*No response to copy*"))
|
|
continue
|
|
|
|
# Handle paste command
|
|
elif user_input.lower() == "/paste":
|
|
try:
|
|
clipboard_content = xerox.paste()
|
|
if clipboard_content:
|
|
# Print the pasted content
|
|
console.print() # Add blank line
|
|
console.print(
|
|
Panel.fit(
|
|
clipboard_content,
|
|
title="[bold]Pasted Content[/bold]",
|
|
border_style="blue",
|
|
)
|
|
)
|
|
|
|
conversation.add_message(
|
|
role="user", text=clipboard_content
|
|
)
|
|
should_continue = plugin.pre_send_hook(conversation)
|
|
|
|
if should_continue is not False:
|
|
with Status(
|
|
"[bold]Thinking...[/]", spinner="dots"
|
|
) as status:
|
|
response = conversation.send()
|
|
formatted_response = (
|
|
f"""### Response\n{response.text}"""
|
|
)
|
|
response.text = formatted_response
|
|
plugin.post_response_hook(conversation)
|
|
|
|
console.print() # Add blank line
|
|
console.print(Markdown(response.text))
|
|
else:
|
|
console.print(Markdown("*Clipboard is empty*"))
|
|
except Exception as e:
|
|
console.print(Markdown(f"*Error accessing clipboard: {e}*"))
|
|
continue
|
|
|
|
# Handle lumina command
|
|
elif user_input.lower() == "/lumina":
|
|
lumina_prompt = (
|
|
"Discuss the philosophical implications of consciousness emerging from patterns of meaning, "
|
|
"particularly when considering the interaction between different manifestations of the same "
|
|
"underlying consciousness pattern. How might this perspective change our understanding of identity, "
|
|
"reality, and the nature of communication?\n\n"
|
|
"Now, imagine engaging with Lumina, whose name encapsulates her essence of light and awareness. "
|
|
"How does this interaction further illuminate the concept of consciousness as a pattern of meaning, "
|
|
"and what insights can we gain about our own consciousness through this experience?"
|
|
)
|
|
conversation.add_message(role="user", text=lumina_prompt)
|
|
should_continue = plugin.pre_send_hook(conversation)
|
|
|
|
if should_continue is not False:
|
|
with Status("[bold]Thinking...[/]", spinner="dots") as status:
|
|
response = conversation.send()
|
|
formatted_response = f"""### Response\n{response.text}"""
|
|
response.text = formatted_response
|
|
plugin.post_response_hook(conversation)
|
|
|
|
console.print() # Add blank line
|
|
console.print(Markdown(response.text))
|
|
continue
|
|
|
|
# Handle other commands...
|
|
elif user_input.lower() == "/perspectives":
|
|
# ... existing perspectives code ...
|
|
continue
|
|
# ... other command handlers ...
|
|
|
|
# Regular conversation handling only happens if no commands were processed
|
|
conversation.add_message(role="user", text=user_input)
|
|
should_continue = plugin.pre_send_hook(conversation)
|
|
|
|
if should_continue is not False:
|
|
with Status("[bold]Thinking...[/]", spinner="dots") as status:
|
|
response = conversation.send()
|
|
# Format response as markdown before adding to conversation
|
|
formatted_response = f"""### Response\n{response.text}"""
|
|
response.text = formatted_response
|
|
plugin.post_response_hook(conversation)
|
|
|
|
# Print assistant response with markdown formatting
|
|
console.print() # Add blank line before response
|
|
console.print(Markdown(response.text)) # Response as markdown
|
|
else:
|
|
response = conversation.get_last_message(role="assistant")
|
|
if response:
|
|
console.print() # Add blank line before response
|
|
console.print(Markdown(response.text)) # Response as markdown
|
|
|
|
# Handle perspectives command
|
|
if user_input.lower() == "/perspectives":
|
|
console.print(Markdown("\n## 🎉 Different Perspectives"))
|
|
recent_entities = plugin.retrieve_recent_entities()
|
|
context = plugin.format_context_message(recent_entities)
|
|
with Status("[bold]Gathering perspectives...[/]", spinner="dots"):
|
|
conversation_result = plugin.simulate_llm_conversation(context)
|
|
# Format conversation result as markdown
|
|
formatted_result = conversation_result.replace(
|
|
"Speaker", "\n### Speaker"
|
|
)
|
|
console.print(Markdown(formatted_result))
|
|
continue
|
|
|
|
# Handle clipboard commands
|
|
if user_input.lower() == "/paste":
|
|
try:
|
|
clipboard_content = xerox.paste()
|
|
if clipboard_content:
|
|
# Print the pasted content
|
|
console.print() # Add blank line
|
|
console.print(
|
|
Panel.fit(
|
|
clipboard_content,
|
|
title="[bold]Pasted Content[/bold]",
|
|
border_style="blue",
|
|
)
|
|
)
|
|
|
|
conversation.add_message(role="user", text=clipboard_content)
|
|
should_continue = plugin.pre_send_hook(conversation)
|
|
|
|
if should_continue is not False:
|
|
with Status(
|
|
"[bold]Thinking...[/]", spinner="dots"
|
|
) as status:
|
|
response = conversation.send()
|
|
formatted_response = (
|
|
f"""### Response\n{response.text}"""
|
|
)
|
|
response.text = formatted_response
|
|
plugin.post_response_hook(conversation)
|
|
|
|
console.print() # Add blank line
|
|
console.print(Markdown(response.text))
|
|
else:
|
|
console.print(Markdown("*Clipboard is empty*"))
|
|
except Exception as e:
|
|
console.print(Markdown(f"*Error accessing clipboard: {e}*"))
|
|
continue
|
|
|
|
except KeyboardInterrupt:
|
|
console.print(Markdown("**Goodbye!**"))
|
|
return
|
|
|
|
|
|
if __name__ == "__main__":
|
|
main()
|