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import logging
import os

import torch
import uvicorn
from fastapi import FastAPI, File, Form, HTTPException, UploadFile
from fastapi.middleware.cors import CORSMiddleware
from pydantic import BaseModel

from app.models.document_processor import DocumentProcessor
from app.models.html_processor import HTMLProcessor
from app.models.text_chunker import TextChunker
from app.models.translation_model_ct2 import TranslationModelCT2

logging.basicConfig(
    level=logging.INFO,
    format='%(asctime)s - %(name)s - %(levelname)s - %(message)s'
)
logger = logging.getLogger(__name__)

app = FastAPI(
    title="Universal Translator API",
    description="API for text, HTML, and document translation services",
    version="1.0.0"
)

app.add_middleware(
    CORSMiddleware,
    allow_origins=["*"], 
    allow_credentials=True,
    allow_methods=["*"],
    allow_headers=["*"],
)

try:
    model = TranslationModelCT2(model_cache_dir=os.getenv("CT2_MODEL_CACHE", ".cache/ct2_models"))
    html_processor = HTMLProcessor()
    text_chunker = TextChunker(max_tokens=250, overlap_tokens=30)
    document_processor = DocumentProcessor()
    
    initialization_error = None
except Exception as e:
    logger.error(f"Error initializing components: {str(e)}")
    initialization_error = str(e)

class TranslationRequest(BaseModel):
    text: str
    source_lang_code: str
    target_lang_code: str

class TranslationResponse(BaseModel):
    translated_text: str

class HTMLTranslationRequest(BaseModel):
    html: str
    source_lang_code: str
    target_lang_code: str

class HTMLTranslationResponse(BaseModel):
    translated_html: str

@app.get("/")
async def root():
    """Health check endpoint"""
    if initialization_error:
        return {
            "status": "error", 
            "message": "Service initialization failed", 
            "error": initialization_error
        }
    return {"status": "ok", "model": "OPUS-MT/NLLB-CPU-Optimized", "version": "1.0"}

@app.get("/health")
async def health_check():
    """Extended health check with environment information"""
    return {
        "status": "ok" if not initialization_error else "error",
        "error": initialization_error,
        "environment": {
            "python_version": os.environ.get('PYTHON_VERSION'),
            "cuda_available": torch.cuda.is_available(),
            "device": str(model.device) if hasattr(model, 'device') else "Unknown",
            "model_info": model.get_model_info() if hasattr(model, 'get_model_info') else {}
        }
    }

@app.post("/translate", response_model=TranslationResponse)
async def translate_text(request: TranslationRequest):
    """Translate text from source to target language"""
    if initialization_error:
        raise HTTPException(status_code=500, detail=f"Service not properly initialized: {initialization_error}")
        
    try:
        logger.info(f"Translating from {request.source_lang_code} to {request.target_lang_code}")

        modified_text = request.text
        modified_target_code = request.target_lang_code

        if request.target_lang_code == "tam":
            modified_text = f">>tam<<{request.text}"
            modified_target_code = "dra"
        elif request.target_lang_code == "tel":
            modified_text = f">>tel<<{request.text}"
            modified_target_code = "dra"
        elif request.target_lang_code == "kan":
            modified_text = f">>kan<<{request.text}"
            modified_target_code = "dra"
        elif request.target_lang_code == "mal":
            modified_text = f">>mal<<{request.text}"
            modified_target_code = "dra"

        if len(modified_text) > 1000:
            chunks = text_chunker.create_chunks(modified_text)
            chunk_texts = [chunk.text for chunk in chunks]

            translated_chunks = model.translate_batch(
                chunk_texts,
                request.source_lang_code,
                modified_target_code
            )
            
            final_translation = text_chunker.combine_translations(
                modified_text, chunks, translated_chunks
            )
        else:

            final_translation = model.translate(
                modified_text,
                request.source_lang_code,
                modified_target_code
            )
        
        return {"translated_text": final_translation}
    except Exception as e:
        logger.error(f"Translation error: {str(e)}")
        raise HTTPException(status_code=500, detail=str(e))

@app.post("/translate-html", response_model=HTMLTranslationResponse)
async def translate_html(request: HTMLTranslationRequest):
    """Translate HTML content while preserving structure"""
    if initialization_error:
        raise HTTPException(status_code=500, detail=f"Service not properly initialized: {initialization_error}")
        
    try:
        text_fragments, dom_data = html_processor.extract_text(request.html)
        
        if not text_fragments:
            return {"translated_html": request.html}  # No text to translate

        modified_target_code = request.target_lang_code
        special_token = ""

        if request.target_lang_code == "tam":
            special_token = ">>tam<<"
            modified_target_code = "dra"
        elif request.target_lang_code == "tel":
            special_token = ">>tel<<"
            modified_target_code = "dra"
        elif request.target_lang_code == "kan":
            special_token = ">>kan<<"
            modified_target_code = "dra"
        elif request.target_lang_code == "mal":
            special_token = ">>mal<<"
            modified_target_code = "dra"

        if special_token:
            logger.info(f"Using special language token for HTML: {special_token}")
            modified_fragments = []
            for fragment in text_fragments:
                if fragment.strip():
                    modified_fragments.append(f"{special_token}{fragment}")
                else:
                    modified_fragments.append(fragment)
        else:
            modified_fragments = text_fragments

        non_empty_fragments = []
        empty_indices = []
        for i, fragment in enumerate(modified_fragments):
            if fragment.strip():
                non_empty_fragments.append(fragment)
            else:
                empty_indices.append(i)

        translated_fragments = model.translate_batch(
            non_empty_fragments,
            request.source_lang_code,
            modified_target_code
        )

        full_translated_fragments = []
        non_empty_idx = 0
        
        for i in range(len(modified_fragments)):
            if i in empty_indices:
                full_translated_fragments.append("")
            else:
                full_translated_fragments.append(translated_fragments[non_empty_idx])
                non_empty_idx += 1
        
        translated_html = html_processor.replace_text(dom_data, full_translated_fragments)
        
        return {"translated_html": translated_html}
    except Exception as e:
        logger.error(f"HTML translation error: {str(e)}")
        raise HTTPException(status_code=500, detail=str(e))

@app.post("/process-document")
async def process_document(
    file: UploadFile = File(...),
    source_lang_code: str = Form(...),
    target_lang_code: str = Form(...),
    use_ocr: bool = Form(False)
):
    """Process and translate document (PDF or image)"""
    if initialization_error:
        raise HTTPException(status_code=500, detail=f"Service not properly initialized: {initialization_error}")
        
    try:
        file_content = await file.read()
        
        extracted_text = document_processor.process_document(
            file_data=file_content,
            filename=file.filename,
            use_ocr=use_ocr
        )
        
        if not extracted_text:
            raise HTTPException(
                status_code=400, 
                detail="No text could be extracted from the document"
            )
        
        modified_target_code = target_lang_code
        modified_text = extracted_text

        if target_lang_code == "tam":
            modified_text = f">>tam<<{extracted_text}"
            modified_target_code = "dra"
        elif target_lang_code == "tel":
            modified_text = f">>tel<<{extracted_text}"
            modified_target_code = "dra"
        elif target_lang_code == "kan":
            modified_text = f">>kan<<{extracted_text}"
            modified_target_code = "dra"
        elif target_lang_code == "mal":
            modified_text = f">>mal<<{extracted_text}"
            modified_target_code = "dra"

        if len(modified_text) > 1000:
            chunks = text_chunker.create_chunks(modified_text)
            chunk_texts = [chunk.text for chunk in chunks]

            translated_chunks = model.translate_batch(
                chunk_texts,
                source_lang_code,
                modified_target_code
            )
            
            translated_text = text_chunker.combine_translations(
                modified_text, chunks, translated_chunks
            )
        else:
            translated_text = model.translate(
                modified_text,
                source_lang_code,
                modified_target_code
            )
        
        return {
            "extracted_text": extracted_text,
            "translated_text": translated_text
        }
    except Exception as e:
        logger.error(f"Document processing error: {str(e)}")
        raise HTTPException(status_code=500, detail=str(e))

if __name__ == "__main__":
    uvicorn.run("api_server:app", host="0.0.0.0", port=7860, reload=True)