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| import os |
| import pickle as pkl |
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| import numpy as np |
| import sagemaker_xgboost_container.encoder as xgb_encoders |
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|
| def model_fn(model_dir): |
| """ |
| Deserialize and return fitted model. |
| """ |
| model_file = "xgboost-model" |
| booster = pkl.load(open(os.path.join(model_dir, model_file), "rb")) |
| return booster |
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|
| def input_fn(request_body, request_content_type): |
| """ |
| The SageMaker XGBoost model server receives the request data body and the content type, |
| and invokes the `input_fn`. |
| Return a DMatrix (an object that can be passed to predict_fn). |
| """ |
| if request_content_type == "text/libsvm": |
| return xgb_encoders.libsvm_to_dmatrix(request_body) |
| else: |
| raise ValueError("Content type {} is not supported.".format(request_content_type)) |
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|
| def predict_fn(input_data, model): |
| """ |
| SageMaker XGBoost model server invokes `predict_fn` on the return value of `input_fn`. |
| Return a two-dimensional NumPy array where the first columns are predictions |
| and the remaining columns are the feature contributions (SHAP values) for that prediction. |
| """ |
| prediction = model.predict(input_data) |
| feature_contribs = model.predict(input_data, pred_contribs=True, validate_features=False) |
| output = np.hstack((prediction[:, np.newaxis], feature_contribs)) |
| return output |
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|
| def output_fn(predictions, content_type): |
| """ |
| After invoking predict_fn, the model server invokes `output_fn`. |
| """ |
| if content_type == "text/csv" or content_type == "application/json": |
| return ",".join(str(x) for x in predictions[0]) |
| else: |
| raise ValueError("Content type {} is not supported.".format(content_type)) |
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