Trainer Engine History of Changes (Release notes)
Trainer Engine v. 3.1
New features and improvements:
- On the automatic model building screen a new slider is added to control the degree of hyperparameter optimisation. With this you can control execution time and the number of models built.
- Underlying Boruta algorithm implementation was replaced with a more stable one.
- During descriptor generation, structures can be dropped from the final descriptor set due to various errors. The failure cause is now added to the report.
- Several performance issues were addressed in this release. Both model building and prediction were improved.
Trainer Engine v. 3.0
New features and improvements:
- Open-source DeepChem machine learning library is available to create training models. Random Forest, Gradient Tree Boost and Graph
Convolutional Network algorithms can be used.
- Predictions can be run by a simple file upload. Descriptors are calculated in the background automatically.
- Machine Learning problem type can be detected automatically.
- Automatic DB migration tool from v. 2.0 is available.
- Old plugin configuration got a proper UI element ('Data processing and confidentiality').
- Automatic Model Building is extended by DeepChem models.
- Hyper-parameter names are changes to conventional DeepChem terminology.
Trainer Engine v. 2.0
New features and improvements:
- Open-source descriptors from DeepChem (RDKit and Mordred) are available in Trainer Engine.
- Descriptor JSON editor improvement: descriptors can be selected from a user-friendly dialogue.
- Automatic feature selection can be turned off during Automated Model Building.
- Health and version information box about connected services are added.
- Descriptors are filtered out based on variance and correlation during automated feature selection.
- Chemaxon descriptor generation is faster.
Trainer Engine v. 1.3
New features and improvements:
- Filters are introduced on the Runs page.
- Single runs on the Analyze page can be managed with single-click operations, e.g. add, remove, archive.
Trainer Engine v. 1.2
New features and improvements:
- Comprehensive in-app helps are introduced in the GUI.
- Advanced options for the automatic descriptor selection ('Use advanced configuration') are introduced.
- Boruta insights are available on the Details page of a descriptor set.
Trainer Engine v. 1.1
New features and improvements:
- Automated feature selection is introduced.
- Automated model building is introduced.
- Training data points and descriptor filtering is introduced in the Analyze page.
- Observed data distribution for a training model is introduced on the Details page of the model.
- Runs table paging is introduced.
- New default descriptor configuration is set.
Trainer Engine v. 1.0
New features and improvements:
- Trainer Engine GUI is available as an option in the CLI.
- Configuration files in hJSON format are supported by Trainer Engine.
- k Nearest Neighbour (kNN) descriptor is available for both regression- and classification-type models.
- Standardization of the training set before descriptor generation is available using Standardizer.
- The mtryRatio parameter is available in the Random Forest Classification and Regression models.
- Gradient Tree Boost Classification and Regression models are available.