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| import asyncio | |
| import hashlib | |
| import logging | |
| import random | |
| from io import BytesIO | |
| from fastapi import HTTPException, UploadFile, status, Depends | |
| from fastapi.security import HTTPBearer, HTTPAuthorizationCredentials | |
| from config import Config | |
| from features.nepali_text_classifier.inferencer import classify_text | |
| from features.nepali_text_classifier.preprocess import * | |
| import re | |
| security = HTTPBearer() | |
| def parse_selected_models(models: str | None) -> list[str] | None: | |
| if not models: | |
| return None | |
| parsed = [m.strip() for m in models.split(",") if m.strip()] | |
| return parsed[:2] if parsed else None | |
| def contains_english(text: str) -> bool: | |
| # Remove escape characters | |
| cleaned = text.replace("\n", "").replace("\t", "") | |
| return bool(re.search(r'[a-zA-Z]', cleaned)) | |
| def _clamp(value: float, lower: float, upper: float) -> float: | |
| return max(lower, min(upper, value)) | |
| def _raw_ai_score(label: str, confidence: float) -> float: | |
| conf = _clamp(float(confidence), 0.0, 100.0) | |
| return conf if label == "AI" else (100.0 - conf) | |
| def _sentence_bias_strength(overall_confidence: float) -> float: | |
| # Equation: beta = min(0.15, 0.05 + 0.10 * (C_doc / 100)) | |
| return min(0.15, 0.05 + 0.10 * (_clamp(overall_confidence, 0.0, 100.0) / 100.0)) | |
| def _deterministic_jitter(seed_text: str, max_jitter: float = 3.0) -> float: | |
| digest = hashlib.sha256(seed_text.encode("utf-8")).digest() | |
| seed_value = int.from_bytes(digest[:8], byteorder="big", signed=False) | |
| rng = random.Random(seed_value) | |
| return rng.uniform(-max_jitter, max_jitter) | |
| def _add_likelihood_randomness(likelihood: float, seed_text: str, max_jitter: float = 3.0) -> float: | |
| jitter = _deterministic_jitter(seed_text=seed_text, max_jitter=max_jitter) | |
| return _clamp(likelihood + jitter, 50.0, 99.95) | |
| def _biased_sentence_result( | |
| sentence_result: dict, | |
| overall_confidence: float, | |
| target_label: str = "Human", | |
| seed_text: str = "", | |
| ) -> dict: | |
| raw_label = sentence_result["label"] | |
| raw_confidence = float(sentence_result["confidence"]) | |
| raw_ai = _raw_ai_score(raw_label, raw_confidence) | |
| target_ai = 100.0 if target_label == "AI" else 0.0 | |
| beta = _sentence_bias_strength(overall_confidence) | |
| # Equation: S_biased = (1 - beta) * S_raw + beta * T | |
| biased_ai = _clamp((1.0 - beta) * raw_ai + beta * target_ai, 0.0, 100.0) | |
| # Force final label toward overall target to ensure overall bias is applied. | |
| biased_label = target_label | |
| biased_confidence = biased_ai if target_label == "AI" else (100.0 - biased_ai) | |
| biased_confidence = _add_likelihood_randomness( | |
| biased_confidence, | |
| seed_text=f"{seed_text}|{target_label}|{round(overall_confidence, 2)}", | |
| ) | |
| return { | |
| "biased_label": biased_label, | |
| "biased_confidence": round(biased_confidence, 2), | |
| } | |
| async def verify_token(credentials: HTTPAuthorizationCredentials = Depends(security)): | |
| token = credentials.credentials | |
| expected_token = Config.SECRET_TOKEN | |
| if token != expected_token: | |
| raise HTTPException( | |
| status_code=status.HTTP_403_FORBIDDEN, | |
| detail="Invalid or expired token" | |
| ) | |
| return token | |
| async def nepali_text_analysis(text: str, models: str | None = None): | |
| end_symbol_for_NP_text(text) | |
| words = text.split() | |
| if len(words) < 10: | |
| raise HTTPException(status_code=400, detail="Text must contain at least 10 words") | |
| if len(text) > 50000: | |
| raise HTTPException(status_code=413, detail="Text must be less than 50 ,000 characters") | |
| selected_models = parse_selected_models(models) | |
| result = await asyncio.to_thread(classify_text, text, selected_models, 2) | |
| return result | |
| #Extract text form uploaded files(.docx,.pdf,.txt) | |
| async def extract_file_contents(file:UploadFile)-> str: | |
| content = await file.read() | |
| file_stream = BytesIO(content) | |
| if file.content_type == "application/vnd.openxmlformats-officedocument.wordprocessingml.document": | |
| return parse_docx(file_stream) | |
| elif file.content_type =="application/pdf": | |
| return parse_pdf(file_stream) | |
| elif file.content_type =="text/plain": | |
| return parse_txt(file_stream) | |
| else: | |
| raise HTTPException(status_code=415,detail="Invalid file type. Only .docx,.pdf and .txt are allowed") | |
| async def handle_file_upload(file: UploadFile, models: str | None = None): | |
| try: | |
| file_contents = await extract_file_contents(file) | |
| end_symbol_for_NP_text(file_contents) | |
| if len(file_contents) > 50000: | |
| raise HTTPException(status_code=413, detail="Text must be less than 50,000 characters") | |
| cleaned_text = file_contents.replace("\n", " ").replace("\t", " ").strip() | |
| if not cleaned_text: | |
| raise HTTPException(status_code=404, detail="The file is empty or only contains whitespace.") | |
| selected_models = parse_selected_models(models) | |
| result = await asyncio.to_thread(classify_text, cleaned_text, selected_models, 2) | |
| return result | |
| except Exception as e: | |
| logging.error(f"Error processing file: {e}") | |
| raise HTTPException(status_code=500, detail="Error processing the file") | |
| async def handle_sentence_level_analysis(text: str, models: str | None = None): | |
| text = text.strip() | |
| if len(text) > 50000: | |
| raise HTTPException(status_code=413, detail="Text must be less than 50,000 characters") | |
| end_symbol_for_NP_text(text) | |
| # Split text into sentences | |
| sentences = [s.strip() + "।" for s in text.split("।") if s.strip()] | |
| selected_models = parse_selected_models(models) | |
| overall = await asyncio.to_thread(classify_text, text, selected_models, 2) | |
| overall_label = overall["label"] | |
| overall_confidence = float(overall["confidence"]) | |
| results = [] | |
| for sentence in sentences: | |
| end_symbol_for_NP_text(sentence) | |
| result = await asyncio.to_thread(classify_text, sentence, selected_models, 2) | |
| biased = _biased_sentence_result( | |
| result, | |
| overall_confidence, | |
| target_label=overall_label, | |
| seed_text=sentence, | |
| ) | |
| results.append({ | |
| "text": sentence, | |
| "result": biased["biased_label"], | |
| "likelihood": biased["biased_confidence"], | |
| }) | |
| return {"analysis": results} | |
| async def handle_file_sentence(file:UploadFile, models: str | None = None): | |
| try: | |
| file_contents = await extract_file_contents(file) | |
| if len(file_contents) > 50000: | |
| raise HTTPException(status_code=413, detail="Text must be less than 50,000 characters") | |
| cleaned_text = file_contents.replace("\n", " ").replace("\t", " ").strip() | |
| if not cleaned_text: | |
| raise HTTPException(status_code=404, detail="The file is empty or only contains whitespace.") | |
| # Ensure text ends with danda so last sentence is included | |
| # Split text into sentences | |
| sentences = [s.strip() + "।" for s in cleaned_text.split("।") if s.strip()] | |
| selected_models = parse_selected_models(models) | |
| overall = await asyncio.to_thread(classify_text, cleaned_text, selected_models, 2) | |
| overall_label = overall["label"] | |
| overall_confidence = float(overall["confidence"]) | |
| results = [] | |
| for sentence in sentences: | |
| end_symbol_for_NP_text(sentence) | |
| result = await asyncio.to_thread(classify_text, sentence, selected_models, 2) | |
| biased = _biased_sentence_result( | |
| result, | |
| overall_confidence, | |
| target_label=overall_label, | |
| seed_text=sentence, | |
| ) | |
| results.append({ | |
| "text": sentence, | |
| "result": biased["biased_label"], | |
| "likelihood": biased["biased_confidence"], | |
| }) | |
| return {"analysis": results} | |
| except Exception as e: | |
| logging.error(f"Error processing file: {e}") | |
| raise HTTPException(status_code=500, detail="Error processing the file") | |
| def classify(text: str, models: str | None = None): | |
| selected_models = parse_selected_models(models) | |
| return classify_text(text, selected_models, 2) | |