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import os
import shutil

# --- Cache + Env setup --- 
os.environ["HF_HOME"] = "/tmp/hf_home"
os.environ["HF_HUB_CACHE"] = "/tmp/hf_cache"
os.environ["TRANSFORMERS_CACHE"] = "/tmp/hf_cache"
os.environ["HF_DATASETS_CACHE"] = "/tmp/hf_datasets"
os.environ["XDG_CACHE_HOME"] = "/tmp/.cache"
os.environ["HOME"] = "/tmp"
os.makedirs("/tmp/hf_home", exist_ok=True)
os.makedirs("/tmp/hf_cache", exist_ok=True)
os.makedirs("/tmp/hf_datasets", exist_ok=True)
os.makedirs("/tmp/.cache", exist_ok=True)
shutil.rmtree("/.cache", ignore_errors=True)

# --- Import các thư viện còn lại ---
import time, hashlib, gzip, pickle, json, traceback, re
from flask import Flask, request, jsonify
from flask_cors import CORS
import numpy as np
import faiss
from sentence_transformers import SentenceTransformer
from rank_bm25 import BM25Okapi
import google.generativeai as genai
from cachetools import TTLCache
from huggingface_hub import login, hf_hub_download

# ---------- HF login ----------
HF_TOKEN = os.environ.get("HF_TOKEN") or os.environ.get("HUGGINGFACE_TOKEN") or os.environ.get("HUGGINGFACE_HUB_TOKEN")
if HF_TOKEN:
    try:
        login(HF_TOKEN)
        print("HF login successful")
    except Exception as e:
        print("Warning: HF login failed:", e)
else:
    print("Warning: HF_TOKEN not found - only public repos accessible")

# ---------- Config ----------
HF_REPO_ID = os.environ.get("HF_REPO_ID", "DrPie/eGoV_Data")
REPO_TYPE = os.environ.get("REPO_TYPE", "dataset")
EMB_MODEL = os.environ.get("EMB_MODEL", "AITeamVN/Vietnamese_Embedding")
GENAI_MODEL = os.environ.get("GENAI_MODEL", "gemini-2.5-flash")
TOP_K = int(os.environ.get("TOP_K", "3"))
FAISS_CANDIDATES = int(os.environ.get("FAISS_CANDIDATES", str(max(10, TOP_K*5))))
BM25_PREFILTER = int(os.environ.get("BM25_PREFILTER", "200"))
CACHE_TTL = int(os.environ.get("CACHE_TTL", "3600"))
CACHE_MAX = int(os.environ.get("CACHE_MAX", "2000"))

print("--- KHỞI ĐỘNG MÁY CHỦ CHATBOT (optimized & fixed) ---")

# ---------- Download dataset ----------
FAISS_PATH = None
try:
    RAW_PATH = hf_hub_download(repo_id=HF_REPO_ID, filename="toan_bo_du_lieu_final.json", repo_type=REPO_TYPE)
    FAISS_PATH = hf_hub_download(repo_id=HF_REPO_ID, filename="index.faiss", repo_type=REPO_TYPE)
    METAS_PATH = hf_hub_download(repo_id=HF_REPO_ID, filename="metas.pkl.gz", repo_type=REPO_TYPE)
    BM25_PATH = hf_hub_download(repo_id=HF_REPO_ID, filename="bm25.pkl.gz", repo_type=REPO_TYPE)
    # tải thêm file id_to_record.pkl
    ID_TO_RECORD_PATH = hf_hub_download(repo_id=HF_REPO_ID, filename="id_to_record.pkl", repo_type=REPO_TYPE)
    print("✅ Files downloaded or already available.")
except Exception as e:
    print("❌ LỖI KHI TẢI TÀI NGUỒN:", e)

if FAISS_PATH:
    print("Loading FAISS index from:", FAISS_PATH)
    faiss_index = faiss.read_index(FAISS_PATH)
else:
    raise RuntimeError("Không có file FAISS index.")

# ---------- External APIs ----------
API_KEY = os.environ.get("GOOGLE_API_KEY")
if not API_KEY:
    print("Warning: GOOGLE_API_KEY missing.")
else:
    genai.configure(api_key=API_KEY)

# ---------- Load models ----------
t0 = time.perf_counter()
device = os.environ.get("DEVICE", "cpu")
print("Loading embedding model:", EMB_MODEL)
embedding_model = SentenceTransformer(EMB_MODEL, device=device)
print("Embedding model loaded.")
print("FAISS index ntotal =", getattr(faiss_index, "ntotal", "unknown"))

with gzip.open(METAS_PATH, "rb") as f:
    metas = pickle.load(f)
corpus = metas["corpus"] if isinstance(metas, dict) and "corpus" in metas else metas
with gzip.open(BM25_PATH, "rb") as f:
    bm25 = pickle.load(f)
metadatas = corpus
# load id_to_record map
with open(ID_TO_RECORD_PATH, "rb") as f:
    id_to_record = pickle.load(f)

print("Loaded metas, BM25, id_to_record. corpus size:", len(corpus))
print("Resources load time: %.2fs" % (time.perf_counter() - t0))

answer_cache = TTLCache(maxsize=CACHE_MAX, ttl=CACHE_TTL)

# ---------- Utility functions ----------
def _norm_key(s: str) -> str:
    return " ".join(s.lower().strip().split())

def cache_key_for_query(q: str) -> str:
    raw = f"{_norm_key(q)}|emb={EMB_MODEL}|k={TOP_K}|p={BM25_PREFILTER}"
    return hashlib.sha256(raw.encode("utf-8")).hexdigest()

def minmax_scale(arr):
    arr = np.array(arr, dtype="float32")
    if len(arr) == 0 or np.max(arr) == np.min(arr):
        return np.zeros_like(arr)
    return (arr - np.min(arr)) / (np.max(arr) - np.min(arr))

def classify_followup(text: str):
    text = text.lower().strip()
    score = 0
    strong_followup_keywords = [
        r"\b(nó|cái (này|đó|ấy)|thủ tục (này|đó|ấy))\b",
        r"\b(vừa (nói|hỏi)|trước đó|ở trên|phía trên)\b",
        r"\b(tiếp theo|tiếp|còn nữa|ngoài ra)\b",
        r"\b(thế (thì|à)|vậy (thì|à)|như vậy)\b"
    ]
    detail_questions = [
        r"\b(mất bao lâu|thời gian|bao nhiêu tiền|chi phí|phí)\b",
        r"\b(ở đâu|tại đâu|chỗ nào|địa chỉ)\b",
        r"\b(cần (gì|những gì)|yêu cầu|điều kiện)\b"
    ]
    specific_services = [
        r"\b(làm|cấp|gia hạn|đổi|đăng ký)\s+(căn cước|cmnd|cccd)\b",
        r"\b(làm|cấp|gia hạn|đổi)\s+hộ chiếu\b",
        r"\b(đăng ký)\s+(kết hôn|sinh|tử|hộ khẩu)\b"
    ]
    if any(re.search(p, text) for p in strong_followup_keywords): score -= 3
    if any(re.search(p, text) for p in detail_questions): score -= 2
    if any(re.search(p, text) for p in specific_services): score += 3
    if len(text.split()) <= 4: score -= 1
    return 0 if score < 0 else 1

def retrieve(query: str, top_k=TOP_K):
    qv = embedding_model.encode([query], convert_to_numpy=True, normalize_embeddings=True).astype("float32")
    try:
        tokenized = query.split()
        bm25_scores_all = bm25.get_scores(tokenized)
        bm25_top_idx = np.argsort(-bm25_scores_all)[:BM25_PREFILTER].tolist()
    except Exception:
        bm25_top_idx = []
    k_cand = max(FAISS_CANDIDATES, top_k*5)
    D, I = faiss_index.search(qv, k_cand)
    vec_idx = I[0].tolist()
    vec_scores = (1 - D[0]).tolist()
    union_idx = list(dict.fromkeys(vec_idx + bm25_top_idx))
    vec_map = {i: s for i, s in zip(vec_idx, vec_scores)}
    vec_list = [vec_map.get(i, 0.0) for i in union_idx]
    bm25_scores_all = bm25.get_scores(query.split())
    bm25_list = [bm25_scores_all[i] if i < len(bm25_scores_all) else 0.0 for i in union_idx]
    fused = 0.7 * minmax_scale(vec_list) + 0.3 * minmax_scale(bm25_list)
    order = np.argsort(-fused)
    return [union_idx[i] for i in order[:top_k]]

def get_full_procedure_text_by_parent(parent_id):
    # Tra cứu nhanh bằng id_to_record thay vì duyệt metadatas
    procedure = id_to_record.get(parent_id)
    if not procedure:
        return "Không tìm thấy thủ tục."
    field_map = {
        "ten_thu_tuc": "Tên thủ tục",
        "cach_thuc_thuc_hien": "Cách thức thực hiện",
        "thanh_phan_ho_so": "Thành phần hồ sơ",
        "trinh_tu_thuc_hien": "Trình tự thực hiện",
        "co_quan_thuc_hien": "Cơ quan thực hiện",
        "yeu_cau_dieu_kien": "Yêu cầu, điều kiện",
        "thu_tuc_lien_quan": "Thủ tục liên quan",
        "nguon": "Nguồn"
    }
    parts = [f"{field_map[k]}:\n{str(v).strip()}" for k,v in procedure.items() if v and k in field_map]
    return "\n\n".join(parts)

try:
    with open(RAW_PATH, "r", encoding="utf-8") as f:
        raw_data = json.load(f)
except Exception:
    raw_data = []

if API_KEY:
    try:
        generation_model = genai.GenerativeModel(GENAI_MODEL)
    except Exception as e:
        print("Warning: cannot init generation_model:", e)
        generation_model = None
else:
    generation_model = None

# ---------- Flask ----------
app = Flask(__name__)
CORS(app)
chat_histories = {}

@app.route("/chat_debug", methods=["POST"])
def chat_debug():
    try:
        raw = request.get_data(as_text=True)
        headers = dict(request.headers)
        return jsonify({"ok": True, "raw_body": raw, "headers": headers})
    except Exception as e:
        return jsonify({"ok": False, "error": str(e), "trace": traceback.format_exc()}), 200

@app.route("/health", methods=["GET"])
def health():
    return {"status": "ok"}

@app.route("/chat", methods=["POST"])
def chat():
    try:
        data = request.get_json(force=True)
    except Exception as e:
        return jsonify({"error": "cannot parse JSON", "detail": str(e)}), 400
    user_query = data.get('question')
    session_id = data.get('session_id', 'default')
    if not user_query:
        return jsonify({"error": "No question provided"}), 400
    if session_id not in chat_histories:
        chat_histories[session_id] = []
    current_history = chat_histories[session_id]
    if classify_followup(user_query) == 0 and current_history:
        context = current_history[-1].get('context', '')
    else:
        idxs = retrieve(user_query, top_k=TOP_K)
        if idxs:
            parent_id = metadatas[idxs[0]].get("parent_id") or metadatas[idxs[0]].get("nguon")
            context = get_full_procedure_text_by_parent(parent_id)
        else:
            context = ""
    history_str = "\n".join([f"{h['role']}: {h['content']}" for h in current_history])
    prompt = f"""Bạn là trợ lý eGov-Bot dịch vụ công Việt Nam. Trả lời tiếng Việt dựa vào DỮ LIỆU cung cấp. 
Nếu thiếu dữ liệu, hãy nói "Mình chưa có thông tin" và đưa link nguồn.
Lịch sử: {history_str}
DỮ LIỆU:
---
{context}
---
CÂU HỎI: {user_query}"""
    try:
        if generation_model is None:
            raise RuntimeError("generation_model not available.")
        response = generation_model.generate_content(prompt)
        final_answer = getattr(response, "text", str(response))
    except Exception as e:
        return jsonify({"error": "LLM call failed", "detail": str(e), "trace": traceback.format_exc()}), 200
    current_history.append({'role':'user','content':user_query})
    current_history.append({'role':'model','content':final_answer,'context':context})
    return jsonify({"answer": final_answer})

if __name__ == "__main__":
    app.run(host="0.0.0.0", port=int(os.environ.get("PORT",7860)))