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from fastapi import FastAPI
from pydantic import BaseModel
from transformers import pipeline, AutoTokenizer
from typing import List
import logging
import torch
import nltk
import os


from nltk.tokenize import sent_tokenize

nltk_data_path = os.getenv("NLTK_DATA", "/home/user/nltk_data")
nltk.data.path.append(nltk_data_path)

app = FastAPI()

# Configure logging
logging.basicConfig(level=logging.INFO)
logger = logging.getLogger("summarizer")

# Load model and tokenizer
model_name = "sshleifer/distilbart-cnn-12-6"
device = 0 if torch.cuda.is_available() else -1
logger.info(f"Running summarizer on {'GPU' if device == 0 else 'CPU'}")
summarizer = pipeline("summarization", model=model_name, device=device)
tokenizer = AutoTokenizer.from_pretrained(model_name)

# Token constraints
MAX_MODEL_TOKENS = 1024
SAFE_CHUNK_SIZE = 650  # Lowered for extra safety

# Pydantic schemas
class SummarizationItem(BaseModel):
    content_id: str
    text: str

class BatchSummarizationRequest(BaseModel):
    inputs: List[SummarizationItem]

class SummarizationResponseItem(BaseModel):
    content_id: str
    summary: str

class BatchSummarizationResponse(BaseModel):
    summaries: List[SummarizationResponseItem]

# Sentence-based chunking using nltk
def split_sentences(text: str) -> list[str]:
    return sent_tokenize(text.strip())

def chunk_text(text: str, max_tokens: int = SAFE_CHUNK_SIZE) -> List[str]:
    sentences = split_sentences(text)
    chunks = []
    current_chunk_sentences = []

    for sentence in sentences:
        tentative_chunk = " ".join(current_chunk_sentences + [sentence])
        token_count = len(tokenizer.encode(tentative_chunk, add_special_tokens=False))

        if token_count <= max_tokens:
            current_chunk_sentences.append(sentence)
        else:
            if current_chunk_sentences:
                chunks.append(" ".join(current_chunk_sentences))
            current_chunk_sentences = [sentence]

    if current_chunk_sentences:
        chunks.append(" ".join(current_chunk_sentences))

    # Final filter: ensure nothing slipped through
    final_chunks = []
    for chunk in chunks:
        encoded = tokenizer(chunk, return_tensors="pt", truncation=False, add_special_tokens=False)
        token_len = encoded["input_ids"].shape[1]

        if token_len <= MAX_MODEL_TOKENS:
            final_chunks.append(chunk)
        else:
            logger.warning(f"[CHUNKING] Dropped oversized chunk ({token_len} tokens): {chunk[:100]}...")

    return final_chunks

@app.post("/summarize", response_model=BatchSummarizationResponse)
async def summarize_batch(request: BatchSummarizationRequest):
    all_chunks = []
    chunk_map = []

    for item in request.inputs:
        chunks = chunk_text(item.text)
        logger.info(f"[CHUNKING] content_id={item.content_id} num_chunks={len(chunks)}")

        for chunk in chunks:
            all_chunks.append(chunk)
            chunk_map.append(item.content_id)

    if not all_chunks:
        logger.error("No valid chunks after filtering. Returning empty response.")
        return {"summaries": []}

    # Batch inference (safe, since we're now filtering properly)
    summaries = summarizer(
        all_chunks,
        max_length=150,
        min_length=30,
        truncation=True,
        do_sample=False,
        batch_size=4
    )

    # Combine summaries by content_id
    summary_map = {}
    for content_id, result in zip(chunk_map, summaries):
        summary_map.setdefault(content_id, []).append(result["summary_text"])

    response_items = [
        SummarizationResponseItem(
            content_id=cid,
            summary=" ".join(parts)
        )
        for cid, parts in summary_map.items()
    ]

    return {"summaries": response_items}

@app.get("/")
def greet_json():
    return {"message": "DistilBART Batch Summarizer API is running"}