Skip to content

Compatibility Table

AI Framework and Model Types

In this table, we list the supported AI framework and algorithms.

Framework Version Algorithm Model Type
scikit-learn 1.2.2 Binary Classification Logistic Regression
Decision Tree
Random Forest
Gradient Boosting Classifier
Perceptron
Bagging Classifier
Linear Support Vector Classifier
Multiclass Classification Logistic Regression
Decision Tree
Random Forest
Gradient Boosting Classifier
Perceptron
Bagging Classifier
Linear Support Vector Classifier
Regression Linear Regression
Extra Tree Regressor
Gradient Boosting Regressor
Random Forest Regression
Tensorflow 2.12.0 Binary Classification Keras Sequential
Multiclass Classification Keras Sequential
Regression Keras Sequential
XGBoost 1.7.5 Binary Classification XGB Classifier
XGB Booster
Multiclass Classifcation XGB Classifier
Regression XGB Regressor
LightGBM 3.3.5 Binary Classification LGBM Classifier

Data Serialisers

Library Version
pickle Version is based on the pickle installed in your environment
joblib 1.20

Info

If your datasets and models are serialised using other version, please modify your environment accordingly.