constants Package
Contains classes defining constants used in interpretability in Azure Machine Learning.
For more information about interpretability, see Interpretability: model explanations in automated machine learning.
Classes
Attributes |
Provide constants for attributes. |
BackCompat |
Provide constants necessary for supporting old versions of our product. |
DNNFramework |
Provide DNN framework constants. |
Defaults |
Provide constants for default values to explain methods. |
Dynamic |
Provide constants for dynamically generated classes. |
ExplainParams |
Provide constants for interpret community (init, explain_local and explain_global) parameters. |
ExplainType |
Provide constants for model and explainer type information, useful for visualization. |
ExplanationParams |
Provide constants for explanation parameters. |
History |
Provide constants related to uploading assets to run history. |
IO |
Provide file input and output related constants. |
LightGBMParams |
Provide constants for LightGBM. |
LightGBMSerializationConstants |
Provide internal class that defines fields used for MimicExplainer serialization. |
LoggingNamespace |
Provide logging namespace related constants. |
MimicSerializationConstants |
Provide internal class that defines fields used for MimicExplainer serialization. |
RunPropertiesAndTags |
Provide constants for tracking tags and properties set on the Run object. |
SKLearn |
Provide scikit-learn related constants. |
Scoring |
Provide constants for scoring time explainers. |
Spacy |
Provide spaCy related constants. |
Tensorflow |
Provide TensorFlow and TensorBoard related constants. |
Enums
ExplainableModelType |
Provide constants for the explainable model type. |
ModelTask |
Provide model task constants. Can be 'classification', 'regression', or 'unknown'. By default the model domain is inferred if 'unknown', but this can be overridden if you specify 'classification' or 'regression'. |
ShapValuesOutput |
Provide constants for the SHAP values output from the explainer. Can be 'default', 'probability' or 'teacher_probability'. If 'teacher_probability' is specified, we use the probabilities from the teacher model. |