Chittrarasu commited on
Commit
81c6189
·
1 Parent(s): 4b5415a
__pycache__/main.cpython-313.pyc CHANGED
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models/__pycache__/model_loader.cpython-313.pyc CHANGED
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routes/__pycache__/sms_router.cpython-313.pyc CHANGED
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routes/sms_router.py CHANGED
@@ -44,4 +44,10 @@ async def calculate_similarity(similarity_request: SimilarityRequest):
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  @router.post("/predict_label/", response_model=PredictionResponse)
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  async def predict_sms_label(prediction_request: PredictionRequest):
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  label, probability = predict_label(prediction_request.message)
 
 
 
 
 
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  return PredictionResponse(label=label, probability=probability)
 
 
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  @router.post("/predict_label/", response_model=PredictionResponse)
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  async def predict_sms_label(prediction_request: PredictionRequest):
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  label, probability = predict_label(prediction_request.message)
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+
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+ # Handle prediction errors
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+ if label == "Error":
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+ raise HTTPException(status_code=500, detail="Prediction failed.")
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+
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  return PredictionResponse(label=label, probability=probability)
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+
schemas/__pycache__/schema.cpython-313.pyc CHANGED
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service/__pycache__/embedded_service.cpython-313.pyc CHANGED
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service/prediction_service.py CHANGED
@@ -23,7 +23,30 @@ else:
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  # Define predict_label function
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  def predict_label(text):
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- # Implement your prediction logic using the model
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- embeddings = model.encode([text])
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- # For demonstration, let's return the embedding shape
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- return embeddings.shape
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
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  # Define predict_label function
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  def predict_label(text):
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+ try:
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+ # Ensure input is a list for the model
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+ if not isinstance(text, list):
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+ text = [text]
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+
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+ # Generate embeddings
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+ embeddings = model.encode(text)
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+
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+ # Ensure embeddings are in the correct shape
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+ if len(embeddings) == 0:
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+ raise ValueError("No embeddings generated.")
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+
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+ # Predict using the logistic regression model
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+ prediction = clf.predict(embeddings)
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+ probability = clf.predict_proba(embeddings).max()
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+
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+ # Convert label to string ("0" or "1")
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+ label = str(prediction[0])
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+
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+ # Return label and probability
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+ return label, float(probability)
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+
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+ except Exception as e:
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+ # Log the exception for debugging
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+ print(f"Error in predict_label: {e}")
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+ return "Error", 0.0
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+