D.3: Auto-Weka
• Short Description:
Tool that performs combined algorithm selection and hyperparameter optimization over the classification and regression algorithms implements in WEKA. Auto-WEKA explores hyperparameter settings for a number of algorithms and recommends to a user which method will likely have good generalization performance, using model-based optimization techniques.
• Reference, URL: https://www.cs.ubc.ca/labs/algorithms/Projects/autoweka/
• Applicable Business Category: All/Smart Industry
• Application in relevant Projects/Initiatives:
• Asset Type': Executable, Platform
• AI Breadth: ML
• Learning Ability: Supervised & Unsupervised learning
• Related technologies: Automated Machine Learning (AutoML), WEKA, Bayesian Optimisation
• Applicable Research Area: Verifiable AI
• Applicable Technical Category: Machine Learning
• License Information: GNU General Public License version 3
• Related to circularity and sustainability: Not directly
• Audience: Developers
Go back to the AI portfolio of reference implementations