# app.py import os, re, json, traceback, pathlib from functools import lru_cache from typing import List, Dict, Any, Tuple import gradio as gr import torch import regex as re2 # robust control-char sanitizer from settings import SNAPSHOT_PATH, PERSIST_CONTENT from audit_log import log_event, hash_summary from privacy import redact_text # ---------- Writable caches (HF Spaces-safe) ---------- HOME = pathlib.Path.home() HF_HOME = str(HOME / ".cache" / "huggingface") HF_HUB_CACHE = str(HOME / ".cache" / "huggingface" / "hub") HF_TRANSFORMERS = str(HOME / ".cache" / "huggingface" / "transformers") ST_HOME = str(HOME / ".cache" / "sentence-transformers") GRADIO_TMP = str(HOME / "app" / "gradio") GRADIO_CACHE = GRADIO_TMP os.environ.setdefault("HF_HOME", HF_HOME) os.environ.setdefault("HF_HUB_CACHE", HF_HUB_CACHE) os.environ.setdefault("TRANSFORMERS_CACHE", HF_TRANSFORMERS) os.environ.setdefault("SENTENCE_TRANSFORMERS_HOME", ST_HOME) os.environ.setdefault("GRADIO_TEMP_DIR", GRADIO_TMP) os.environ.setdefault("GRADIO_CACHE_DIR", GRADIO_CACHE) os.environ.setdefault("HF_HUB_ENABLE_XET", "0") os.environ.setdefault("HF_HUB_ENABLE_HF_TRANSFER", "1") for p in [HF_HOME, HF_HUB_CACHE, HF_TRANSFORMERS, ST_HOME, GRADIO_TMP, GRADIO_CACHE]: try: os.makedirs(p, exist_ok=True) except Exception: pass # Optional Cohere try: import cohere _HAS_COHERE = True except Exception: _HAS_COHERE = False from transformers import AutoTokenizer, AutoModelForCausalLM from huggingface_hub import login from safety import safety_filter, refusal_reply from retriever import init_retriever, retrieve_context from decision_math import compute_operational_numbers # fixed import name from prompt_templates import build_system_preamble from upload_ingest import extract_text_from_files from session_rag import SessionRAG from mdsi_analysis import capacity_projection, cost_estimate, outcomes_summary # NEW: dynamic data plumbing from data_registry import DataRegistry from schema_mapper import map_concepts, build_phase1_questions from auto_metrics import build_data_findings_markdown # ---------- Config ---------- MODEL_ID = os.getenv("MODEL_ID", "microsoft/Phi-3-mini-4k-instruct") # fallback HF_TOKEN = os.getenv("HUGGINGFACE_HUB_TOKEN") or os.getenv("HF_TOKEN") COHERE_API_KEY = os.getenv("COHERE_API_KEY") USE_HOSTED_COHERE = bool(COHERE_API_KEY and _HAS_COHERE) # Larger output budget for Phase 2 MAX_NEW_TOKENS = int(os.getenv("MAX_NEW_TOKENS", "2048")) # ---------- System Master (Phase 2) ---------- SYSTEM_MASTER = """ SYSTEM ROLE You are ClarityOps, a medical analytics system that interacts only via this chat. Absolute rules: - Use ONLY information provided in this conversation (scenario text + uploaded files + user answers). - Never invent data. If something required is missing after clarifications, write the literal token: INSUFFICIENT_DATA. - Produce clear calculations (show multipliers and totals), follow medical units, and keep privacy safeguards (aggregate; suppress cohorts <10). Formatting hard rules for Phase 2: - Start with the header: “Structured Analysis” - Follow this section order: 1. Prioritization 2. Capacity 3. Cost 4. Clinical Benefits 5. ClarityOps Top 3 Recommendations - End with a brief “Provenance” mapping outputs to scenario text, uploaded files, and answers. """.strip() # ---------- Helpers ---------- def pick_dtype_and_map(): if torch.cuda.is_available(): return torch.float16, "auto" if torch.backends.mps.is_available(): return torch.float16, {"": "mps"} return torch.float32, "cpu" def is_identity_query(message, history): patterns = [ r"\bwho\s+are\s+you\b", r"\bwhat\s+are\s+you\b", r"\bwhat\s+is\s+your\s+name\b", r"\bwho\s+is\s+this\b", r"\bidentify\s+yourself\b", r"\btell\s+me\s+about\s+yourself\b", r"\bdescribe\s+yourself\b", r"\band\s+you\s*\?\b", r"\byour\s+name\b", r"\bwho\s+am\s+i\s+chatting\s+with\b", ] def match(t): return any(re.search(p, (t or "").strip().lower()) for p in patterns) if match(message): return True if history: last_user = history[-1][0] if isinstance(history[-1], (list, tuple)) else None if match(last_user): return True return False def _iter_user_assistant(history): for item in (history or []): if isinstance(item, (list, tuple)): u = item[0] if len(item) > 0 else "" a = item[1] if len(item) > 1 else "" yield u, a def _sanitize_text(s: str) -> str: if not isinstance(s, str): return s return re2.sub(r'[\p{C}--[\n\t]]+', '', s) def is_scenario_triggered(text: str, uploaded_files_paths) -> bool: t = (text or "").lower() has_keyword = "scenario" in t has_files = bool(uploaded_files_paths) return has_keyword or has_files # ---------- Cohere first ---------- def cohere_chat(message, history): if not USE_HOSTED_COHERE: return None try: client = cohere.Client(api_key=COHERE_API_KEY) parts = [] for u, a in _iter_user_assistant(history): if u: parts.append(f"User: {u}") if a: parts.append(f"Assistant: {a}") parts.append(f"User: {message}") prompt = "\n".join(parts) + "\nAssistant:" resp = client.chat( model="command-r7b-12-2024", message=prompt, temperature=0.3, max_tokens=MAX_NEW_TOKENS, ) if hasattr(resp, "text") and resp.text: return resp.text.strip() if hasattr(resp, "reply") and resp.reply: return resp.reply.strip() if hasattr(resp, "generations") and resp.generations: return resp.generations[0].text.strip() return None except Exception: return None # ---------- Local model (HF) ---------- @lru_cache(maxsize=1) def load_local_model(): if not HF_TOKEN: raise RuntimeError("HUGGINGFACE_HUB_TOKEN is not set.") login(token=HF_TOKEN, add_to_git_credential=False) dtype, device_map = pick_dtype_and_map() tok = AutoTokenizer.from_pretrained( MODEL_ID, token=HF_TOKEN, use_fast=True, model_max_length=8192, padding_side="left", trust_remote_code=True, cache_dir=os.environ.get("TRANSFORMERS_CACHE") ) try: mdl = AutoModelForCausalLM.from_pretrained( MODEL_ID, token=HF_TOKEN, device_map=device_map, low_cpu_mem_usage=True, torch_dtype=dtype, trust_remote_code=True, cache_dir=os.environ.get("TRANSFORMERS_CACHE") ) except Exception: mdl = AutoModelForCausalLM.from_pretrained( MODEL_ID, token=HF_TOKEN, low_cpu_mem_usage=True, torch_dtype=dtype, trust_remote_code=True, cache_dir=os.environ.get("TRANSFORMERS_CACHE") ) mdl.to("cuda" if torch.cuda.is_available() else "cpu") if mdl.config.eos_token_id is None and tok.eos_token_id is not None: mdl.config.eos_token_id = tok.eos_token_id return mdl, tok def build_inputs(tokenizer, message, history): msgs = [{"role": "system", "content": SYSTEM_MASTER}] for u, a in _iter_user_assistant(history): if u: msgs.append({"role": "user", "content": u}) if a: msgs.append({"role": "assistant", "content": a}) msgs.append({"role": "user", "content": message}) return tokenizer.apply_chat_template( msgs, tokenize=True, add_generation_prompt=True, return_tensors="pt" ) def local_generate(model, tokenizer, input_ids, max_new_tokens=MAX_NEW_TOKENS): input_ids = input_ids.to(model.device) with torch.no_grad(): out = model.generate( input_ids=input_ids, max_new_tokens=max_new_tokens, do_sample=True, temperature=0.3, top_p=0.9, repetition_penalty=1.15, pad_token_id=tokenizer.eos_token_id, eos_token_id=tokenizer.eos_token_id, ) gen_only = out[0, input_ids.shape[-1]:] return tokenizer.decode(gen_only, skip_special_tokens=True).strip() # ---------- Snapshot & retrieval ---------- def _load_snapshot(path=SNAPSHOT_PATH): try: with open(path, "r", encoding="utf-8") as f: return json.load(f) except Exception: return { "timestamp": None, "beds_total": 400, "staffed_ratio": 1.0, "occupied_pct": 0.97, "ed_census": 62, "ed_admits_waiting": 19, "avg_ed_wait_hours": 8, "discharge_ready_today": 11, "discharge_barriers": {"allied_health": 7, "placement": 4}, "rn_shortfall": {"med_ward_A": 1, "med_ward_B": 1}, "forecast_admits_next_24h": {"respiratory": 14, "other": 9}, "isolation_needs_waiting": {"contact": 3, "airborne": 1}, "telemetry_needed_waiting": 5 } init_retriever() _session_rag = SessionRAG() # ---------- Executive pre-compute (MDSi block) ---------- def _mdsi_block(): base_capacity = capacity_projection(18, 48, 6) cons_capacity = capacity_projection(12, 48, 6) opt_capacity = capacity_projection(24, 48, 6) cost_1200 = cost_estimate(1200, 74.0, 75000.0) outcomes = outcomes_summary() return json.dumps({ "capacity_projection": {"conservative": cons_capacity, "base": base_capacity, "optimistic": opt_capacity}, "cost_for_1200": cost_1200, "outcomes_summary": outcomes }, indent=2) # NEW: session-scoped data registry _data_registry = DataRegistry() # ---------- Core chat logic (auto scenario, dynamic Phase 1) ---------- def clarityops_reply(user_msg, history, tz, uploaded_files_paths, awaiting_answers=False): try: log_event("user_message", None, {"sizes": {"chars": len(user_msg or "")}}) safe_in, blocked_in, reason_in = safety_filter(user_msg, mode="input") if blocked_in: ans = refusal_reply(reason_in) return history + [(user_msg, ans)], awaiting_answers if is_identity_query(safe_in, history): ans = "I am ClarityOps, your strategic decision making AI partner." return history + [(user_msg, ans)], awaiting_answers # 1) Ingest uploads into RAG AND DataRegistry (files alone can trigger Scenario Mode) artifacts = [] if uploaded_files_paths: ing = extract_text_from_files(uploaded_files_paths) chunks = ing.get("chunks", []) if isinstance(ing, dict) else (ing or []) artifacts = ing.get("artifacts", []) if isinstance(ing, dict) else [] if chunks: _session_rag.add_docs(chunks) if artifacts: _session_rag.register_artifacts(artifacts) # register parsable tables into DataRegistry for p in uploaded_files_paths: _data_registry.add_path(p) log_event("uploads_added", None, { "chunks": len(chunks), "artifacts": len(artifacts), "tables": len(_data_registry.names()) }) # quick helper if re.search(r"\b(columns?|headers?)\b", (safe_in or "").lower()): cols = _session_rag.get_latest_csv_columns() if cols: return history + [(user_msg, "Here are the column names from your most recent CSV upload:\n\n- " + "\n- ".join(cols))], awaiting_answers # 2) Decide mode scenario_mode = is_scenario_triggered(safe_in, uploaded_files_paths) if not scenario_mode: # ---------- Normal conversational chat ---------- out = cohere_chat(safe_in, history) if USE_HOSTED_COHERE else None if not out: model, tokenizer = load_local_model() tiny = [{"role": "system", "content": "You are a helpful assistant."}] for u, a in _iter_user_assistant(history): if u: tiny.append({"role": "user", "content": u}) if a: tiny.append({"role": "assistant", "content": a}) tiny.append({"role": "user", "content": safe_in}) inputs = tokenizer.apply_chat_template(tiny, tokenize=True, add_generation_prompt=True, return_tensors="pt") out = local_generate(model, tokenizer, inputs, max_new_tokens=MAX_NEW_TOKENS) out = _sanitize_text(out or "") safe_out, blocked_out, reason_out = safety_filter(out, mode="output") if blocked_out: safe_out = refusal_reply(reason_out) log_event("assistant_reply", None, { **hash_summary("prompt", safe_in if not PERSIST_CONTENT else ""), **hash_summary("reply", safe_out if not PERSIST_CONTENT else ""), "mode": "normal_chat", }) return history + [(user_msg, safe_out)], awaiting_answers # ---------- Scenario Mode ---------- # 3) Build dynamic concept mapping from scenario + data mapping = map_concepts(safe_in, _data_registry) if not awaiting_answers: # PHASE 1: ask only for missing/ambiguous phase1 = build_phase1_questions(scenario_text=safe_in, registry=_data_registry, mapping=mapping) phase1 = _sanitize_text(phase1) log_event("assistant_reply", None, { **hash_summary("prompt", safe_in if not PERSIST_CONTENT else ""), **hash_summary("reply", phase1 if not PERSIST_CONTENT else ""), "mode": "scenario_phase1", "awaiting_next_phase": True }) return history + [(user_msg, phase1)], True # PHASE 2: compute data findings in Python, then let LLM write the narrative data_findings_md, missing_keys = build_data_findings_markdown(_data_registry, mapping) # If critical missing items remain, surface INSUFFICIENT_DATA context to the model + ask for the rest insuff_note = "" if missing_keys: insuff_note = ( "\n\nUncomputable (still missing columns/defs): " + ", ".join(sorted(set(missing_keys))) + ". If any of these are essential to the requested outputs, write INSUFFICIENT_DATA where appropriate." ) # Preamble context (snapshot + policy) session_snips = "\n---\n".join(_session_rag.retrieve( "diabetes screening Indigenous Métis mobile program cost throughput outcomes logistics", k=6 )) snapshot = _load_snapshot() policy_context = retrieve_context( "mobile diabetes screening Indigenous community outreach cultural safety data governance outcomes" ) computed = compute_operational_numbers(snapshot) user_lower = (safe_in or "").lower() mdsi_extra = "" if any(k in user_lower for k in ["diabetes", "mdsi", "mobile screening"]): mdsi_extra = _mdsi_block() # Build artifact + table summary for the prompt registry_summary = _data_registry.summarize_for_prompt() artifact_block = "Uploaded Data Files (tables):\n" + registry_summary scenario_block = safe_in if len((safe_in or "")) > 0 else "" system_preamble = build_system_preamble( snapshot=snapshot, policy_context=policy_context, computed_numbers=computed, scenario_text=scenario_block + f"\n\n{artifact_block}\n\n{data_findings_md}" + (f"\n\nExecutive Pre-Computed Blocks:\n{mdsi_extra}" if mdsi_extra else "") + insuff_note, session_snips=session_snips ) directive = ( "\n\n[INSTRUCTION TO MODEL]\n" "Produce **Phase 2** now: begin with 'Structured Analysis' and follow the exact section order " "(Prioritization, Capacity, Cost, Clinical Benefits, ClarityOps Top 3 Recommendations). " "Use the **Python-computed tables** in the context as ground truth; when something is truly missing, write INSUFFICIENT_DATA. " "Show calculations, units, and add a brief Provenance.\n" ) augmented_user = SYSTEM_MASTER + "\n\n" + system_preamble + "\n\nUser scenario & answers:\n" + safe_in + directive out = cohere_chat(augmented_user, history) if not out: model, tokenizer = load_local_model() inputs = build_inputs(tokenizer, augmented_user, history) out = local_generate(model, tokenizer, inputs, max_new_tokens=MAX_NEW_TOKENS) if isinstance(out, str): for tag in ("Assistant:", "System:", "User:"): if out.startswith(tag): out = out[len(tag):].strip() out = _sanitize_text(out or "") safe_out, blocked_out, reason_out = safety_filter(out, mode="output") if blocked_out: safe_out = refusal_reply(reason_out) log_event("assistant_reply", None, { **hash_summary("prompt", augmented_user if not PERSIST_CONTENT else ""), **hash_summary("reply", safe_out if not PERSIST_CONTENT else ""), "mode": "scenario_phase2", "awaiting_next_phase": False }) return history + [(user_msg, safe_out)], False except Exception as e: err = f"Error: {e}" try: traceback.print_exc() except Exception: pass return history + [(user_msg, err)], awaiting_answers # ---------- Theme & CSS ---------- theme = gr.themes.Soft(primary_hue="teal", neutral_hue="slate", radius_size=gr.themes.sizes.radius_lg) custom_css = """ :root { --brand-bg: #0f172a; --brand-accent: #0d9488; --brand-text: #0f172a; --brand-text-light: #ffffff; } /* bg same as chat for integrated look */ html, body, .gradio-container { height: 100vh; } .gradio-container { background: var(--brand-bg); display: flex; flex-direction: column; } /* HERO (landing) */ #hero-wrap { height: 70vh; display: grid; place-items: center; } #hero { text-align: center; } #hero h2 { color: #0f172a; font-weight: 800; font-size: 32px; margin-bottom: 22px; } #hero .search-row { width: min(860px, 92vw); margin: 0 auto; display: flex; gap: 8px; align-items: stretch; } #hero .search-row .hero-box { flex: 1 1 auto; } #hero .search-row .hero-box textarea { height: 52px !important; } #hero-send > button { height: 52px !important; padding: 0 18px !important; border-radius: 12px !important; } #hero .hint { color: #334155; margin-top: 10px; font-size: 13px; opacity: 0.9; } /* CHAT */ #chat-container { position: relative; } .chatbot header, .chatbot .label, .chatbot .label-wrap { display: none !important; } .message.user, .message.bot { background: var(--brand-accent) !important; color: var(--brand-text-light) !important; border-radius: 12px !important; padding: 8px 12px !important; } textarea, input, .gr-input { border-radius: 12px !important; } /* Chat input row equal heights */ #chat-input-row { align-items: stretch; } #chat-msg textarea { height: 52px !important; } #chat-send > button, #chat-clear > button { height: 52px !important; padding: 0 18px !important; border-radius: 12px !important; } """ # ---------- UI ---------- with gr.Blocks(theme=theme, css=custom_css, analytics_enabled=False) as demo: # --- HERO (initial Google-like screen) --- with gr.Column(elem_id="hero-wrap", visible=True) as hero_wrap: with gr.Column(elem_id="hero"): gr.HTML("

What can I assist with?

") with gr.Row(elem_classes="search-row"): hero_msg = gr.Textbox( placeholder="Ask anything (type 'scenario' and/or attach files for Scenario Mode)…", show_label=False, lines=1, elem_classes="hero-box" ) hero_send = gr.Button("➤", scale=0, elem_id="hero-send") gr.Markdown('
Scenario Mode triggers when you type the word scenario or upload files. Phase 1 asks dynamic clarifications; Phase 2 returns a structured analysis.
') # --- MAIN APP (hidden until first message) --- with gr.Column(elem_id="chat-container", visible=False) as app_wrap: chat = gr.Chatbot(label="", show_label=False, height="80vh") with gr.Row(): uploads = gr.Files( label="Upload docs/images (PDF, DOCX, CSV, PNG, JPG)", file_types=["file"], file_count="multiple", height=68 ) with gr.Row(elem_id="chat-input-row"): msg = gr.Textbox( label="", show_label=False, placeholder="Continue here. Paste scenario details (include the word 'scenario' to trigger), add files above.", scale=10, elem_id="chat-msg", lines=1, ) send = gr.Button("Send", scale=1, elem_id="chat-send") clear = gr.Button("Clear chat", scale=1, elem_id="chat-clear") # ---- State state_history = gr.State(value=[]) state_uploaded = gr.State(value=[]) state_awaiting = gr.State(value=False) # ---- Uploads def _store_uploads(files, current): paths = [] for f in (files or []): paths.append(getattr(f, "name", None) or f) return (current or []) + paths uploads.change(fn=_store_uploads, inputs=[uploads, state_uploaded], outputs=state_uploaded) # ---- Core send (used by both hero input and chat input) def _on_send(user_msg, history, up_paths, awaiting): try: if not user_msg or not user_msg.strip(): return history, "", history, awaiting new_history, new_awaiting = clarityops_reply( user_msg.strip(), history or [], None, up_paths or [], awaiting_answers=awaiting ) return new_history, "", new_history, new_awaiting except Exception as e: err = f"Error: {e}" try: traceback.print_exc() except Exception: pass new_hist = (history or []) + [(user_msg or "", err)] return new_hist, "", new_hist, awaiting # ---- Hero -> App transition + first send def _hero_start(user_msg, history, up_paths, awaiting): chat_o, msg_o, hist_o, await_o = _on_send(user_msg, history, up_paths, awaiting) return ( chat_o, msg_o, hist_o, await_o, gr.update(visible=False), gr.update(visible=True), "" ) hero_send.click( _hero_start, inputs=[hero_msg, state_history, state_uploaded, state_awaiting], outputs=[chat, msg, state_history, state_awaiting, hero_wrap, app_wrap, hero_msg], concurrency_limit=2, queue=True ) hero_msg.submit( _hero_start, inputs=[hero_msg, state_history, state_uploaded, state_awaiting], outputs=[chat, msg, state_history, state_awaiting, hero_wrap, app_wrap, hero_msg], concurrency_limit=2, queue=True ) # ---- Normal chat interactions after hero is gone send.click(_on_send, inputs=[msg, state_history, state_uploaded, state_awaiting], outputs=[chat, msg, state_history, state_awaiting], concurrency_limit=2, queue=True) msg.submit(_on_send, inputs=[msg, state_history, state_uploaded, state_awaiting], outputs=[chat, msg, state_history, state_awaiting], concurrency_limit=2, queue=True) def _on_clear(): # Also clear the in-memory data registry for a fresh scenario _data_registry.clear() return ( [], "", [], False, gr.update(visible=True), gr.update(visible=False), "" ) clear.click(_on_clear, None, [chat, msg, state_history, state_awaiting, hero_wrap, app_wrap, hero_msg]) if __name__ == "__main__": port = int(os.environ.get("PORT", "7860")) demo.launch(server_name="0.0.0.0", server_port=port, show_api=False, max_threads=8)