Changelog 
22.4.2 
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Add support for explaining selected features in local and global permutation importance, as well as automatically detecting which features were selected by an AutoML model.
 
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Fixed a bug in local perturbation-based feature attribution explainers for the
n_iter='auto'option that caused the iterations to be set too high. - 
            
Enhanced performance of local feature importance explainers to improve running times by batching inference calls together.
 
22.4.1 
Features and Improvements 
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Pipeline now accepts a
min_class_instancesinput argument to manually specify the number of examples every class must have when doing classification. The value formin_class_instancesmust be at least 2. 
Bug fixes 
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Fixed a bug where IPython and ipywidgets are not properly guarded as an optional dependencies which makie them required.
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Fixed a bug introduced by last dependency update which caused fbprophet to not produce forecasts with correct index type, when fbprophet was installed manually.
 
22.4.0 
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New feature dependence explainers
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Added an Accumulated Local Effects (ALE) explainer
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ALE explanations can be computed for up to two features if at least one is not categorical.
 
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New explainer (What-IF)
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Added a What-IF explainer for classification and regression tasks
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What-IF explanations include exploration of the behavior of an ML model on a single sample as well as on the entire dataset.
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Sample exploration (edit a sample value and see how the model predictions changes) and relationships’ visualization (how a feature is related to predictions or other features) are supported.
 
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New feature importance aggregators
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Added ALFI (Aggregate Local Feature Importance) that gives a visual summary of multiple local explanations.
 
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New local feature importance explainer
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Added support for surrogate-based (LIME+) local feature importance explainers
 
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Bug fixes 
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Import failure due to CUDA: The package no longer crashes when imported on a machine with CUDA installed.
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Fixed a bug where
TorchMLPClassifierwould fail when trying to predict a single instance. - 
             
Fixed a bug where
OracleAutoMLx_Forecasting.ipynbwould fail if visualization packages were not already installed. - 
             
Fixed a bug that caused the pipeline.transform to raise an exception if a single row was passed.
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Explanation documentation
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Our documentation website (http://automl.oraclecorp.com/) now includes documentation for the explanation objects returned by our explainers.
 
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Enhanced performance of local feature importance explainers to address long running times.
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Improve visualization of facet for the columns with cardinality equal to 1 by selecting the bars’ width and pads properly.
 
22.3.0 
Features and Improvements 
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New Explainer
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Added support for KernelSHAP (a new feature importance tabulator), which provides fast approximations for the Shapley feature importance method.
 
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Support ARM architecture (
aarch64)- 
               
Release platform-specific wheel file for ARM machines.
 
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Miscellaneous 
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Clarified documentation on the accepted data formats for input datasets and added a more meaningful corresponding error message.
 
22.2.0 
Features and Improvements 
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New profiler
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Profiler tracks CPU and memory utilization
 
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Timeseries forecasting pipeline
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Added the support for multivariate datasets
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Added the support for exogenous variables
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Enhanced heteroskedasticity detection technique
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Applied Box-Cox transform-inverse_transform with params determined via MLE to handle heteroskedasticity
 
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Explainers / MLX integration
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New global text explainer
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Added support
 
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New feature importance attribution explainers
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Added several local and global feature importance explainers, including permutation importance, exactly Shapley, and SHAP-PI.
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Includes support for classification, regression and anomaly detection
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Explainers can be configured to explain the importance of features to any model (explanation_type=’observational’) as well as for a particular model (explanation_type=’interventional’).
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Observational explanations are supported for all tasks; interventional explanations are only supported for classification and regression.
 
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New feature dependence explainers
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Added a partial dependence plot (PDP) and individual conditional expectations (ICE) explainer
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PDP explanations include vizualization support for up to 4 dimensions. PDPs in higher dimension can be returned as dataframes.
 
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Unsupervised Anomaly Detection
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Added N-1 Experts: a new experimental metric for UAD Model Selection
 
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Documentation
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Added the description of
initfunction of the automl to documentation - 
               
Cleaned up documentation for more consistency among different sections and added cross-references
 
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Bug fixes 
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Timeseries forecasting pipeline
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Statsmodel exception for some frequencies, users are now able to pass in timeperiod as a parameter
 
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Preprocessing
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Datetime preprocessor
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Fixed the bug regarding column expansion and None/Null/Nan values
 
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Standard preprocessor refitting
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The standard preprocessor used to first be fit on a subsample of the training set, and then re-fit at the very end of the pipeline using the full training set. This occasionaly resulted in a different number of engineered features being produced. As a result, the features identified during the model selection module could no longer exist. The standard preprocessor is now fit only once.
 
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ONNX predictions inconsistency
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Changed the ONNX conversion function to reduce the difference between the ONNX dumped model and the original pipeline object predictions
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Improved ONNX conversion runtime
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ONNX conversion only require now a sample from the training or test set as input. This sample is used to infer the final types and shapes
 
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Possibly breaking changes 
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Removed matplotlib as a dependency of the AutoMLx package
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Forecasting predictions can now instead be visualized only using plotly using the same interface as before, automl.utils.plot_forecast. The alternate visualizations that were provided with plotly using automl.utils.plot_forecast_interactive has been removed.
 
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Updated the AutoMLx package dependencies
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All dependency versions have been reviewed and updated to address all known CVEs
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A few unneeded dependencies have also been removed.
 
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