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Runtime error
Runtime error
| import datafit.datafit as df | |
| def getResponse(data, model, LabelT, LabelS): | |
| print(data.columns) | |
| # Transform using the pre-trained LabelEncoder | |
| data["Sequence"] = LabelS.transform(data["Sequence"]) | |
| # Apply normalization if needed | |
| data, _ = df.normalization(data) | |
| # Make predictions | |
| response = model.predict(data) | |
| # Assuming 'response' is a binary prediction (0 or 1) | |
| # If it's a probability, you might need to adjust the logic accordingly | |
| print("Raw Predictions:") | |
| print(response) | |
| # If you want to interpret the predictions directly (0 or 1) | |
| predicted_labels = response.astype(int) | |
| print("Predicted Labels:") | |
| print(predicted_labels) | |
| # If you want to use inverse_transform for better interpretation | |
| # Uncomment the following lines | |
| inverse_labels = LabelT.inverse_transform(predicted_labels) | |
| print("Inverse Transformed Labels:") | |
| print(inverse_labels) | |
| return inverse_labels | |