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| # src/chat_processor.py | |
| import logging | |
| import math | |
| import re | |
| import time | |
| from collections import Counter | |
| from typing import List, Dict, Any, Optional, Tuple | |
| from src.chat_helpers import extract_urls | |
| from src.youtube_handler import is_youtube_url | |
| from src.search import comprehensive_web_search, fetch_webpage_content | |
| from src.prompt_security import UNTRUSTED_CONTEXT_POLICY, untrusted_context_message | |
| logger = logging.getLogger(__name__) | |
| # ── Stopwords & tokenizer ── | |
| _STOPWORDS = frozenset( | |
| "a an the is am are was were be been being have has had do does did " | |
| "will would shall should can could may might must need ought dare " | |
| "i me my mine we us our ours you your yours he him his she her hers " | |
| "it its they them their theirs this that these those " | |
| "and but or nor not no so if then else than too also very " | |
| "in on at to for of by with from up out about into over after " | |
| "what when where which who whom how why all each every some any " | |
| "just very really actually like well also still already even " | |
| "oh ok okay yes yeah hey hi hello thanks thank please sorry " | |
| "much more most own other another such only same here there " | |
| "because while during before until since through between both " | |
| "few many several some none nothing something anything everything " | |
| "get got make made go going went been come came take took " | |
| "know think want let say tell give see look find way thing " | |
| "don doesn didn won wouldn couldn shouldn wasn weren isn aren haven hasn " | |
| "don't doesn't didn't won't wouldn't couldn't shouldn't " | |
| "it's i'm i've i'll i'd you're you've you'll he's she's we're we've they're they've " | |
| "that's there's here's what's who's how's let's can't".split() | |
| ) | |
| def _content_tokens(text: str) -> list: | |
| """Extract meaningful content words: no stopwords, min 3 chars, lowercase.""" | |
| words = re.findall(r'[a-z0-9]+(?:[-_][a-z0-9]+)*', text.lower()) | |
| return [w for w in words if len(w) >= 3 and w not in _STOPWORDS] | |
| class ChatProcessor: | |
| def __init__(self, memory_manager, personal_docs_manager, memory_vector=None, skills_manager=None): | |
| self.memory_manager = memory_manager | |
| self.personal_docs_manager = personal_docs_manager | |
| self.memory_vector = memory_vector | |
| self.skills_manager = skills_manager | |
| # Minimum similarity score for RAG results to be injected | |
| RAG_SIMILARITY_THRESHOLD = 0.35 | |
| def _hybrid_retrieve(self, message: str, mem_entries: list, k: int = 5) -> list: | |
| """Retrieve memories relevant to the message. | |
| Uses BM25-style keyword scoring + optional vector similarity. | |
| Recency is a tiebreaker only, never the primary signal. | |
| """ | |
| if not mem_entries or not message.strip(): | |
| return [] | |
| now = time.time() | |
| query_tokens = _content_tokens(message) | |
| # If the query has no meaningful tokens, skip keyword retrieval entirely | |
| if not query_tokens: | |
| # Fall back to vector-only if available | |
| if not (self.memory_vector and self.memory_vector.healthy): | |
| return [] | |
| # ── Build IDF from the memory corpus ── | |
| N = len(mem_entries) | |
| doc_freq = Counter() # token -> how many memories contain it | |
| mem_token_cache = {} # mem_id -> set of content tokens | |
| for mem in mem_entries: | |
| toks = set(_content_tokens(mem["text"])) | |
| mem_token_cache[mem["id"]] = toks | |
| for t in toks: | |
| doc_freq[t] += 1 | |
| def _bm25_score(query_toks, mem_id): | |
| """BM25-inspired score between query and a memory.""" | |
| mem_toks = mem_token_cache.get(mem_id, set()) | |
| if not mem_toks or not query_toks: | |
| return 0.0 | |
| score = 0.0 | |
| mem_len = len(mem_toks) | |
| avg_len = max(sum(len(v) for v in mem_token_cache.values()) / N, 1) | |
| k1, b = 1.5, 0.75 | |
| for qt in query_toks: | |
| if qt not in mem_toks: | |
| continue | |
| df = doc_freq.get(qt, 0) | |
| idf = math.log((N - df + 0.5) / (df + 0.5) + 1) | |
| tf = 1 # binary presence (memory entries are short) | |
| tf_norm = (tf * (k1 + 1)) / (tf + k1 * (1 - b + b * mem_len / avg_len)) | |
| score += idf * tf_norm | |
| return score | |
| # ── Score all candidates ── | |
| has_vector = self.memory_vector and self.memory_vector.healthy | |
| vector_scores = {} | |
| if has_vector: | |
| results = self.memory_vector.search(message, k=min(k * 3, 20)) | |
| mem_by_id = {m["id"]: m for m in mem_entries} | |
| for r in results: | |
| if r["memory_id"] in mem_by_id: | |
| vector_scores[r["memory_id"]] = max(r["score"], 0.0) | |
| scored = [] | |
| for mem in mem_entries: | |
| mid = mem["id"] | |
| vs = vector_scores.get(mid, 0.0) | |
| kw = _bm25_score(query_tokens, mid) | |
| # Normalize BM25 to roughly 0-1 range (cap at a reasonable max) | |
| kw_norm = min(kw / 6.0, 1.0) if kw > 0 else 0.0 | |
| # Category-aware boost for identity/contact queries | |
| category = mem.get("category", "fact") | |
| msg_lower = message.lower() | |
| mem_lower = mem["text"].lower() | |
| cat_boost = 1.0 | |
| if any(w in msg_lower for w in ["name", "who am i", "my name"]): | |
| if category == "identity" or any(w in mem_lower for w in ["name is", "i am", "called"]): | |
| cat_boost = 1.4 | |
| elif any(w in msg_lower for w in ["phone", "email", "address", "contact"]): | |
| if category == "contact" or "@" in mem_lower: | |
| cat_boost = 1.3 | |
| elif any(w in msg_lower for w in ["like", "prefer", "favorite"]): | |
| if category == "preference": | |
| cat_boost = 1.2 | |
| kw_norm = min(kw_norm * cat_boost, 1.0) | |
| # Recency — tiebreaker only (max 5% contribution) | |
| ts = mem.get("timestamp", 0) | |
| days_old = max((now - ts) / 86400, 0) | |
| recency = 1.0 / (1.0 + days_old * 0.05) | |
| # Gate: need real relevance, not just recency | |
| if has_vector: | |
| if vs < 0.20 and kw_norm < 0.08: | |
| continue | |
| final = (0.55 * vs) + (0.40 * kw_norm) + (0.05 * recency) | |
| else: | |
| if kw_norm < 0.08: | |
| continue | |
| final = (0.95 * kw_norm) + (0.05 * recency) | |
| if final > 0.12: | |
| scored.append((final, mem)) | |
| scored.sort(key=lambda x: x[0], reverse=True) | |
| return [mem for _, mem in scored[:k]] | |
| def build_context_preface( | |
| self, | |
| message: str, | |
| session: Any, | |
| use_web: bool = False, | |
| use_rag: bool = True, | |
| use_memory: bool = True, | |
| time_filter: Optional[str] = None, | |
| preset_system_prompt: Optional[str] = None, | |
| owner: Optional[str] = None, | |
| character_name: Optional[str] = None, | |
| agent_mode: bool = False, | |
| incognito: bool = False, | |
| use_skills: bool = True, | |
| ) -> Tuple[List[Dict[str, str]], List[Dict[str, Any]], List[Dict[str, str]]]: | |
| """Build the context preface for LLM calls. | |
| Returns: | |
| Tuple of (preface messages, rag_sources list) | |
| """ | |
| preface = [] | |
| rag_sources = [] | |
| # Add preset system prompt if specified | |
| if preset_system_prompt: | |
| preface.append({ | |
| "role": "system", | |
| "content": preset_system_prompt | |
| }) | |
| preface.append({ | |
| "role": "system", | |
| "content": UNTRUSTED_CONTEXT_POLICY, | |
| }) | |
| # Memory: pinned (always included) + extended (RAG-retrieved when relevant) | |
| self._last_used_memories = [] # track what was injected | |
| if use_memory: | |
| mem_entries = self.memory_manager.load(owner=owner) | |
| pinned = [m for m in mem_entries if m.get("pinned")] | |
| extended = [m for m in mem_entries if not m.get("pinned")] | |
| _used_ids: list = [] | |
| if pinned: | |
| pinned_text = "\n- ".join([m["text"] for m in pinned]) | |
| preface.append(untrusted_context_message( | |
| "saved memory: pinned user facts", | |
| f"Core facts about the user:\n- {pinned_text}", | |
| )) | |
| for m in pinned: | |
| self._last_used_memories.append({"text": m["text"], "category": m.get("category", "fact"), "type": "pinned"}) | |
| if m.get("id"): | |
| _used_ids.append(m["id"]) | |
| if extended: | |
| relevant = self._hybrid_retrieve(message, extended, k=3) | |
| if relevant: | |
| ext_text = "\n".join([f"- {m['text']}" for m in relevant]) | |
| preface.append(untrusted_context_message( | |
| "saved memory: retrieved context", | |
| ( | |
| "Memory context. Do not reference unless the user asks " | |
| f"about these topics.\n{ext_text}" | |
| ), | |
| )) | |
| for m in relevant: | |
| self._last_used_memories.append({"text": m["text"], "category": m.get("category", "fact"), "type": "recalled"}) | |
| if m.get("id"): | |
| _used_ids.append(m["id"]) | |
| # Bump usage counters for the memories that were actually injected. | |
| if _used_ids and hasattr(self.memory_manager, "increment_uses"): | |
| try: | |
| self.memory_manager.increment_uses(_used_ids) | |
| except Exception as _e: | |
| logger.warning("Failed to increment memory uses: %s", _e) | |
| # (skills index injection moved out — see below; only fires in | |
| # agent mode so chat mode and incognito stay clean.) | |
| # RAG: search if enabled and rag_manager available, inject only above threshold | |
| if use_rag: | |
| try: | |
| rag_manager = getattr(self.personal_docs_manager, 'rag_manager', None) | |
| if rag_manager: | |
| results = rag_manager.search(message, k=5, owner=owner) | |
| # Filter by similarity threshold | |
| relevant = [r for r in results if r.get("similarity", 0) >= self.RAG_SIMILARITY_THRESHOLD] | |
| if relevant: | |
| logger.info(f"RAG: {len(relevant)}/{len(results)} results above threshold {self.RAG_SIMILARITY_THRESHOLD}") | |
| rag_sources = [ | |
| { | |
| "filename": r["metadata"].get("filename", r["metadata"].get("source", "unknown")), | |
| "snippet": r["document"][:200], | |
| "similarity": round(r.get("similarity", 0), 3) | |
| } | |
| for r in relevant | |
| ] | |
| rag_content = "Relevant documents:\n\n" + "\n\n---\n\n".join( | |
| f"[{s['filename']}]\n{r['document']}" for s, r in zip(rag_sources, relevant) | |
| ) | |
| if len(rag_content) > 10000: | |
| rag_content = rag_content[:10000] + "\n[Truncated]" | |
| preface.append(untrusted_context_message("retrieved documents", rag_content)) | |
| except Exception as e: | |
| logger.warning(f"RAG retrieval failed: {e}") | |
| # Add web search if enabled | |
| web_sources = [] | |
| if use_web: | |
| try: | |
| web_context, web_sources = comprehensive_web_search( | |
| message, time_filter=time_filter, return_sources=True | |
| ) | |
| preface.append(untrusted_context_message("web search results", web_context)) | |
| except Exception as e: | |
| logger.error(f"Web search failed: {e}") | |
| preface.append({"role": "system", "content": "Web search encountered an error and could not retrieve results."}) | |
| # Process non-YouTube URLs in message (YouTube handled by preprocess_message) | |
| # Skip auto-fetch for long pastes (the user already pasted the content — | |
| # fetching every embedded link buries the actual question under | |
| # hundreds of KB of duplicate page HTML and confuses the model) or for | |
| # link-heavy pastes (>3 URLs typically means it's a boilerplate-laden | |
| # blog post, not a "summarize this URL" request). | |
| urls = extract_urls(message) | |
| non_yt_urls = [u for u in urls if not is_youtube_url(u)] | |
| skip_url_fetch = len(message) > 2000 or len(non_yt_urls) > 3 | |
| if not skip_url_fetch: | |
| for url in non_yt_urls: | |
| result = fetch_webpage_content(url) | |
| if result.get('success'): | |
| content = result.get('content', '')[:10000] | |
| preface.append(untrusted_context_message( | |
| f"web page: {url}", | |
| f"Content from {url}:\n\n{content}", | |
| )) | |
| # Skills index — progressive disclosure. Only injected when the | |
| # model has the `manage_skills` tool available (agent_mode), and | |
| # never in incognito mode (the user has explicitly opted out of | |
| # context retention this turn). In plain chat mode the model can't | |
| # call the tool anyway, so the index would be noise. | |
| if agent_mode and not incognito and use_skills and self.skills_manager: | |
| try: | |
| idx = self.skills_manager.index_for(owner=owner) | |
| except Exception as e: | |
| logger.debug(f"Skills index unavailable: {e}") | |
| idx = [] | |
| if idx: | |
| by_cat: Dict[str, list] = {} | |
| for s in idx: | |
| by_cat.setdefault(s.get("category") or "general", []).append(s) | |
| lines = ["[Available skills — call manage_skills(action='view', name='...') to load one when relevant]"] | |
| for cat in sorted(by_cat): | |
| lines.append(f" {cat}:") | |
| for s in sorted(by_cat[cat], key=lambda x: x["name"]): | |
| desc = s.get("description") or "" | |
| lines.append(f" - {s['name']}: {desc}" if desc else f" - {s['name']}") | |
| preface.append(untrusted_context_message("available skills index", "\n".join(lines))) | |
| return preface, rag_sources, web_sources | |