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.