Pujan-Dev's picture
push: fixed the output
ddbc845
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)