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# app.py
# app.py
import os, traceback, regex as re2
import gradio as gr
import pandas as pd
from typing import List, Tuple, Dict, Any
from settings import HEALTHCARE_SETTINGS, GENERAL_CONVERSATION_PROMPT, USE_SCENARIO_ENGINE
from audit_log import log_event
from privacy import safety_filter, refusal_reply
from data_registry import DataRegistry
from upload_ingest import extract_text_from_files
from healthcare_analysis import HealthcareAnalyzer
from scenario_planner import parse_to_plan
from scenario_engine import ScenarioEngine
from rag import RAGIndex
from llm_router import generate_narrative, cohere_chat, open_fallback_chat
def _sanitize_text(s: str) -> str:
if not isinstance(s, str): return s
# strip control chars (keep newlines/tabs)
return re2.sub(r'[\p{C}--[\n\t]]+', '', s)
def _dataset_catalog(results: Dict[str, Any]) -> Dict[str, List[str]]:
"""Expose available columns per dataset to the planner."""
cat: Dict[str, List[str]] = {}
for k, v in results.items():
if isinstance(v, pd.DataFrame):
cat[k] = v.columns.tolist()
return cat
def is_healthcare_scenario(text: str, has_files: bool) -> bool:
"""Heuristic: scenario mode when user provided files + scenario-ish text."""
t = (text or "").lower()
kws = HEALTHCARE_SETTINGS["healthcare_keywords"]
structured = any(s in t for s in ["background", "situation", "tasks", "deliverables"])
return has_files and (structured or any(k in t for k in kws))
def _append_msg(history_messages: List[Dict[str, str]], role: str, content: str) -> List[Dict[str, str]]:
"""Return a new history list with one message appended."""
return (history_messages or []) + [{"role": role, "content": content}]
def handle(user_msg: str, history_messages: List[Dict[str, str]], files: list) -> Tuple[List[Dict[str, str]], str]:
try:
safe_in, blocked_in, reason_in = safety_filter(user_msg, mode="input")
if blocked_in:
reply = refusal_reply(reason_in)
new_hist = _append_msg(history_messages, "user", user_msg)
new_hist = _append_msg(new_hist, "assistant", reply)
return new_hist, ""
# Normalize files -> paths (safe when files is None)
file_paths = [getattr(f, "name", None) or f for f in (files or [])]
# Register CSVs into the registry
registry = DataRegistry()
for p in file_paths:
try:
registry.add_path(p)
except Exception as e:
log_event("ingest_error", None, {"file": p, "err": str(e)})
# RAG ingest (best-effort, text only; safe on empty)
rag = RAGIndex()
ing = extract_text_from_files(file_paths)
rag.add(ing.get("chunks", []))
# Scenario mode: plan -> deterministic execution -> narrative
if is_healthcare_scenario(safe_in, bool(file_paths)) and USE_SCENARIO_ENGINE:
analyzer = HealthcareAnalyzer(registry)
datasets = analyzer.comprehensive_analysis(safe_in) # expose dataframes by filename
catalog = _dataset_catalog(datasets)
# 1) LLM parses scenario into a plan (scenario-agnostic, no hardcoding)
plan = parse_to_plan(safe_in, catalog)
# 2) Deterministic execution of the plan (pandas-based)
structured_md = ScenarioEngine.execute_plan(plan, datasets)
# 3) Canadian grounding + narrative (Cohere primary, open-model fallback)
rag_hits = [txt for txt, _ in rag.retrieve(safe_in, k=6)]
narrative = generate_narrative(safe_in, structured_md, rag_hits)
final = f"{structured_md}\n\n# Narrative & Recommendations\n\n{narrative}"
reply = _sanitize_text(final)
else:
# General conversation mode (no scenario/files required)
prompt = f"{GENERAL_CONVERSATION_PROMPT}\n\nUser: {safe_in}\nAssistant:"
reply = cohere_chat(prompt) or open_fallback_chat(prompt) or "How can I help further?"
reply = _sanitize_text(reply)
# Append user then assistant messages to history
new_hist = _append_msg(history_messages, "user", user_msg)
new_hist = _append_msg(new_hist, "assistant", reply)
return new_hist, ""
except Exception as e:
tb = traceback.format_exc()
log_event("app_error", None, {"err": str(e), "tb": tb})
new_hist = _append_msg(history_messages, "user", user_msg)
new_hist = _append_msg(new_hist, "assistant", f"Error: {e}\n\n{tb}")
return new_hist, ""
# -------- UI --------
with gr.Blocks(analytics_enabled=False) as demo:
gr.Markdown("## Canadian Healthcare AI • Scenario-Agnostic (Cohere primary • Deterministic analytics)")
# Use the new 'messages' format to avoid deprecation
chat = gr.Chatbot(type="messages", height=520)
files = gr.Files(
file_count="multiple",
type="filepath",
file_types=HEALTHCARE_SETTINGS["supported_file_types"]
)
msg = gr.Textbox(placeholder="Paste any scenario (Background / Situation / Tasks / Deliverables) or just chat.")
send = gr.Button("Send")
clear = gr.Button("Clear")
def _on_send(m, h, f):
# h is already a list of {'role','content'} dicts with type="messages"
h2, _ = handle(m, h or [], f or [])
return h2, ""
send.click(_on_send, inputs=[msg, chat, files], outputs=[chat, msg])
msg.submit(_on_send, inputs=[msg, chat, files], outputs=[chat, msg])
clear.click(lambda: ([], ""), outputs=[chat, msg])
if __name__ == "__main__":
demo.launch(server_name="0.0.0.0", server_port=int(os.getenv("PORT", "7860")))
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