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"""
LIFT UP Taksonomi SΔ±nΔ±flandΔ±rΔ±cΔ± β€” Backend API
Hugging Face Spaces (Docker) üzerinde çalışır.

Endpoint:
    POST /classify
    {
        "baslik": "Proje başlığı",
        "ozet": "Proje ΓΆzeti",
        "keywords": ["opsiyonel", "liste"]  # opsiyonel
    }
    β†’
    {
        "prediction": "Kompozit YapΔ±lar",
        "confidence": 0.82,
        "top_3": [...],
        "extracted_keywords": [...],
        "processing_time_ms": 1240
    }
"""

import os
import re
import time
import unicodedata
import logging
from contextlib import asynccontextmanager
from collections import Counter
from dataclasses import dataclass, field
from typing import Dict, List, Optional, Set

import numpy as np
import torch
import torch.nn as nn
from fastapi import FastAPI, HTTPException
from fastapi.middleware.cors import CORSMiddleware
from pydantic import BaseModel
from transformers import AutoTokenizer, AutoModel, AutoModelForSeq2SeqLM
from sentence_transformers import SentenceTransformer
from keybert import KeyBERT
from huggingface_hub import hf_hub_download, snapshot_download

logging.basicConfig(level=logging.INFO)
log = logging.getLogger("liftup")

HF_USERNAME = os.getenv("HF_USERNAME", "Engin34")
HF_TOKEN    = os.getenv("HF_TOKEN", "")   # Space secret olarak eklenecek

# ─── Global model değişkenleri ───────────────────────────────────────
bert_model   = None
bert_tok     = None
kw_model     = None
generator    = None
clf          = None
TOP_KEYWORDS = None
device       = torch.device("cpu")


# ═══════════════════════════════════════════════════════════════════
# TAKSONOMΔ° PARSER
# ═══════════════════════════════════════════════════════════════════
def _temizle(k):
    k = k.replace('\u200b','').replace('\ufeff','')
    k = unicodedata.normalize('NFKC', k)
    return re.sub(r'\s+',' ', k).strip().lower()

def _parantez_ayir(k):
    m = re.match(r'^(.+?)\s*\((.+?)\)\s*$', k)
    if not m: return [k]
    ana, ic = m.group(1).strip(), m.group(2).strip()
    if any(a in ic.lower() for a in ['bağlam','kısmı','tarafı','proses','analiz','anahtarları','servisleme']):
        return [ana]
    return [ana] + [p.strip() for p in ic.split('/') if p.strip()]

def _virgul_ayir(metin):
    sonuc, buf, d = [], [], 0
    for c in metin:
        if c == '(': d += 1; buf.append(c)
        elif c == ')': d -= 1; buf.append(c)
        elif c == ',' and d == 0: sonuc.append(''.join(buf)); buf = []
        else: buf.append(c)
    if buf: sonuc.append(''.join(buf))
    return sonuc

def parse_taksonomi(icerik: str) -> Dict:
    icerik = icerik.replace('\u200b','')
    matches = list(re.finditer(r'^\s*(\d+)\)\s+(.+?)\s*$', icerik, re.MULTILINE))
    tax = {}
    for i, m in enumerate(matches):
        kat = m.group(2).strip()
        govde = icerik[m.end():(matches[i+1].start() if i+1 < len(matches) else len(icerik))].strip()
        pm = re.search(r'\((.+)\)', govde, re.DOTALL)
        if not pm: continue
        kw_set = set()
        for parca in _virgul_ayir(pm.group(1)):
            for alt in _parantez_ayir(parca.strip()):
                for k in re.split(r'[/]', alt):
                    temiz = _temizle(k)
                    if len(temiz) >= 2: kw_set.add(temiz)
        tax[kat] = {'keywords': kw_set}
    return tax


# ═══════════════════════════════════════════════════════════════════
# HΔ°BRΔ°T SINIFLANDIRICI
# ═══════════════════════════════════════════════════════════════════
@dataclass
class EslesmeBilgisi:
    keyword: str; eslesme_tipi: str; eslesen_taksonomi_kw: str; puan: float

@dataclass
class KategoriSkoru:
    kategori: str; final_skor: float; keyword_skor: float; semantic_skor: float
    eslesmeler: list = field(default_factory=list)

class HibritSiniflandirici:
    def __init__(self, taxonomy, embedder, keyword_weight=0.4, semantic_weight=0.6):
        self.taxonomy = {c: {'keywords':{str(k).lower().strip() for k in d.get('keywords',set()) if str(k).strip()}}
                         for c,d in taxonomy.items()}
        self.kw_w, self.sem_w = keyword_weight, semantic_weight
        self.embedder = embedder
        log.info("Centroid'ler hesaplanΔ±yor...")
        self.centroids = self._centroids()
        self.idf = self._idf()
        log.info(f"HazΔ±r: {len(self.taxonomy)} kategori")

    def _centroids(self):
        c = {}
        for cat, d in self.taxonomy.items():
            kws = list(d['keywords'])
            if not kws: c[cat]=None; continue
            embs = self.embedder.encode(kws, show_progress_bar=False, convert_to_numpy=True)
            v = np.mean(embs, axis=0); n = np.linalg.norm(v)
            c[cat] = v/n if n>0 else v
        return c

    def _idf(self):
        cnt = Counter()
        for d in self.taxonomy.values():
            for k in d['keywords']: cnt[k]+=1
        N = len(self.taxonomy)
        return {k: np.log(N/v)+1.0 for k,v in cnt.items()}

    def _kw_score(self, extracted):
        ext = [k.lower().strip() for k in extracted if k and str(k).strip()]
        max_idf = max(self.idf.values(), default=1.0)
        results = {}
        for cat, d in self.taxonomy.items():
            cat_kws = d['keywords']; score, eslm = 0.0, []
            for kw in ext:
                idf_w = self.idf.get(kw, 1.0)
                if kw in cat_kws:
                    p=2.0*idf_w; score+=p; eslm.append(EslesmeBilgisi(kw,'exact',kw,p)); continue
                if len(kw)<4: continue
                for ck in cat_kws:
                    if len(ck)>=4 and (kw in ck or ck in kw):
                        p=1.0*idf_w; score+=p; eslm.append(EslesmeBilgisi(kw,'partial',ck,p)); break
            max_p = max(len(ext)*2.0*max_idf, 1e-6)
            results[cat] = (min(score/max_p,1.0), eslm)
        return results

    def _sem_score(self, extracted, text=None):
        parts = []
        if text and str(text).strip(): parts.append(str(text).strip())
        if extracted: parts.append(" ".join(extracted))
        if not parts: return {c:0.0 for c in self.taxonomy}
        emb = self.embedder.encode([" | ".join(parts)], show_progress_bar=False, convert_to_numpy=True)[0]
        n = np.linalg.norm(emb)
        if n>0: emb=emb/n
        return {c: max(0.0, min(1.0,(float(np.dot(emb,cn))+1.0)/2.0)) if cn is not None else 0.0
                for c,cn in self.centroids.items()}

    def classify(self, keywords, text=None, top_k=3):
        kw_r = self._kw_score(keywords)
        sem_s = self._sem_score(keywords, text)
        ks = {}
        for c in self.taxonomy:
            kwn, esl = kw_r[c]
            f = self.kw_w*kwn + self.sem_w*sem_s[c]
            ks[c] = KategoriSkoru(c, f, kwn, sem_s[c], esl)
        srt = sorted(ks.values(), key=lambda x: x.final_skor, reverse=True)
        return {'prediction': srt[0].kategori, 'confidence': srt[0].final_skor, 'top_k': srt[:top_k]}


# ═══════════════════════════════════════════════════════════════════
# BERT MODEL
# ═══════════════════════════════════════════════════════════════════
class LiftUpBertModel(nn.Module):
    def __init__(self, num_labels=128):
        super().__init__()
        self.bert = AutoModel.from_pretrained("dbmdz/bert-base-turkish-cased")
        self.dropout = nn.Dropout(0.3)
        self.classifier = nn.Linear(768, num_labels)
    def forward(self, input_ids, attention_mask):
        out = self.bert(input_ids=input_ids, attention_mask=attention_mask)
        return self.classifier(self.dropout(out.last_hidden_state[:,0]))


# ═══════════════════════════════════════════════════════════════════
# POST-PROCESSOR
# ═══════════════════════════════════════════════════════════════════
class SoftPostProcessor:
    def __init__(self):
        self.blacklist = {'kombinatΓΌr','hesonomik','modΓΌlasyonlarΔ±','difΓΌzΓΆrlΓΌ','optimizasyonlarΔ±nΔ±'}
        self.acronyms = {'CFD','FEA','CAD','ROS','CNN','AI','ML','DL','IoT','GPU','SSD'}
    def is_acronym(self,w): return w.isupper() and 2<=len(w)<=5
    def fix_case(self,kw):
        out=[]
        for w in kw.split():
            if w.upper() in self.acronyms or self.is_acronym(w): out.append(w.upper())
            elif not out: out.append(w.capitalize())
            else: out.append(w.lower())
        return ' '.join(out)
    def should_filter(self,kw):
        if kw.lower() in self.blacklist: return True
        if not(3<=len(kw)<=80): return True
        if re.search(r'[^a-zA-ZΓ§Γ‡ΔŸΔžΔ±Δ°ΓΆΓ–ΕŸΕžΓΌΓœ\s\-]',kw): return True
        return False
    def process(self,keywords,min_kw=3):
        processed=[]
        for kw in keywords:
            if self.should_filter(kw): continue
            fixed=self.fix_case(kw)
            if not any(p.lower()==fixed.lower() for p in processed): processed.append(fixed)
        return processed[:8] if processed else keywords[:3]


# ═══════════════════════════════════════════════════════════════════
# MODEL YÜKLEME (startup)
# ═══════════════════════════════════════════════════════════════════
def load_models():
    global bert_model, bert_tok, kw_model, generator, clf, TOP_KEYWORDS

    auth = {"token": HF_TOKEN} if HF_TOKEN else {}
    log.info("Modeller yΓΌkleniyor...")

    # 1) taksonomi
    log.info("Taksonomi indiriliyor...")
    tax_path = hf_hub_download(
        repo_id=f"{HF_USERNAME}/liftup-bert",
        filename="taksonomi.txt", **auth
    )
    with open(tax_path, encoding='utf-8') as f:
        taxonomy = parse_taksonomi(f.read())

    # 2) BERT checkpoint (TOP_KEYWORDS iΓ§in)
    log.info("BERT checkpoint indiriliyor...")
    ckpt_path = hf_hub_download(
        repo_id=f"{HF_USERNAME}/liftup-bert",
        filename="checkpoint.pth", **auth
    )
    ckpt = torch.load(ckpt_path, map_location="cpu")
    TOP_KEYWORDS = ckpt["TOP_KEYWORDS"]

    # 3) BERT model ağırlıkları
    log.info("BERT model ağırlıkları indiriliyor (422 MB)...")
    bert_path = hf_hub_download(
        repo_id=f"{HF_USERNAME}/liftup-bert",
        filename="best_bert_model.pth", **auth
    )
    bert_tok = AutoTokenizer.from_pretrained("dbmdz/bert-base-turkish-cased")
    model = LiftUpBertModel(len(TOP_KEYWORDS))
    model.load_state_dict(torch.load(bert_path, map_location="cpu"))
    model.eval()
    bert_model = model

    # 4) KeyBERT (aynΔ± zamanda hibrit sΔ±nΔ±flandΔ±rΔ±cΔ±nΔ±n embedder'Δ±)
    log.info("KeyBERT yΓΌkleniyor...")
    kw_model = KeyBERT(model='sentence-transformers/paraphrase-multilingual-MiniLM-L12-v2')
    embedder = kw_model.model.embedding_model

    # 5) ByT5
    log.info("ByT5 indiriliyor (1.1 GB)...")
    byt5_dir = snapshot_download(
        repo_id=f"{HF_USERNAME}/liftup-byt5", **auth
    )
    byt5_tok = AutoTokenizer.from_pretrained("google/byt5-small")
    byt5_mdl = AutoModelForSeq2SeqLM.from_pretrained(byt5_dir)
    byt5_mdl.eval()
    post = SoftPostProcessor()

    class Generator:
        def __init__(self, tok, mdl, pp):
            self.tok, self.mdl, self.pp = tok, mdl, pp
        def generate(self, title="", abstract=""):
            text = f"keywords: {title} {abstract}".strip()
            inp = self.tok(text, max_length=512, truncation=True, return_tensors="pt")
            with torch.no_grad():
                out = self.mdl.generate(**inp, max_new_tokens=128, do_sample=False,
                                         no_repeat_ngram_size=4, repetition_penalty=1.5)
            pred = self.tok.decode(out[0], skip_special_tokens=True)
            if pred.lower().startswith("keywords:"): pred=pred[9:].strip()
            kws = [k.strip() for k in pred.split(';') if k.strip()]
            return self.pp.process(kws)

    generator = Generator(byt5_tok, byt5_mdl, post)

    # 6) Hibrit sΔ±nΔ±flandΔ±rΔ±cΔ±
    log.info("Hibrit sınıflandırıcı başlatılıyor...")
    clf = HibritSiniflandirici(taxonomy, embedder)
    log.info("βœ… TΓΌm modeller hazΔ±r!")


# ═══════════════════════════════════════════════════════════════════
# FASTAPI
# ═══════════════════════════════════════════════════════════════════
@asynccontextmanager
async def lifespan(app: FastAPI):
    load_models()
    yield

app = FastAPI(title="LIFT UP SΔ±nΔ±flandΔ±rΔ±cΔ±", lifespan=lifespan)

app.add_middleware(
    CORSMiddleware,
    allow_origins=["*"],
    allow_methods=["POST","GET"],
    allow_headers=["*"],
)

class ClassifyRequest(BaseModel):
    baslik: str
    ozet: str
    keywords: Optional[List[str]] = None


class KategoriResponse(BaseModel):
    kategori: str
    guven: float
    keyword_skor: float
    semantic_skor: float
    eslesmeler: List[str]


class ClassifyResponse(BaseModel):
    prediction: str
    confidence: float
    top_3: List[KategoriResponse]
    extracted_keywords: List[str]
    processing_time_ms: int


def bert_extract(text):
    enc = bert_tok(str(text).lower(), truncation=True, padding='max_length',
                   max_length=256, return_tensors='pt')
    with torch.no_grad():
        logits = bert_model(enc['input_ids'], enc['attention_mask'])
        probs = torch.sigmoid(logits)[0].numpy()
    idxs = np.argsort(probs)[-10:][::-1]
    return [TOP_KEYWORDS[i] for i in idxs if probs[i]>0.01][:5]

def keybert_extract(text):
    clean = re.sub(r'[^\w\sΔŸΓΌΕŸΔ±ΓΆΓ§ΔžΓœΕžΔ°Γ–Γ‡]',' ', text.lower()).strip()
    try:
        kws = kw_model.extract_keywords(clean, keyphrase_ngram_range=(1,3),
                                         top_n=5, use_mmr=True, diversity=0.2)
        return [k[0] for k in kws][:3]
    except:
        return []


@app.get("/health")
def health(): return {"status": "ok"}


@app.get("/")
def root(): return {"message": "LIFT UP API çalışıyor", "endpoint": "POST /classify"}


@app.post("/classify", response_model=ClassifyResponse)
def classify(req: ClassifyRequest):
    if not req.baslik.strip() or not req.ozet.strip():
        raise HTTPException(400, "Başlık ve âzet zorunludur")

    t0 = time.time()
    text = f"{req.baslik} {req.ozet}"

    # Keyword extraction
    bert_kws   = bert_extract(text)
    kb_kws     = keybert_extract(text)
    byt5_kws   = generator.generate(req.baslik, req.ozet)

    # KullanΔ±cΔ± keyword'leri varsa ekle
    extra = req.keywords or []
    tum_kws = list(dict.fromkeys(bert_kws + kb_kws + byt5_kws + extra))

    # SΔ±nΔ±flandΔ±rma
    sonuc = clf.classify(tum_kws, text, top_k=3)

    ms = int((time.time()-t0)*1000)

    return ClassifyResponse(
        prediction=sonuc['prediction'],
        confidence=round(sonuc['confidence'], 4),
        top_3=[
            KategoriResponse(
                kategori=ks.kategori,
                guven=round(ks.final_skor, 4),
                keyword_skor=round(ks.keyword_skor, 4),
                semantic_skor=round(ks.semantic_skor, 4),
                eslesmeler=[e.keyword for e in ks.eslesmeler],
            )
            for ks in sonuc['top_k']
        ],
        extracted_keywords=tum_kws,
        processing_time_ms=ms,
    )