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Overdue by 4 year(s)
Due by December 31, 2021
Last updated May 5, 2022
  • Development and research of methods and algorithms for training composite models with multilevel nesting; and development of effective tools for their application in the framework.
  • Development and study of methods and algorithms for pre-learning and transfer learning of composite models with partial structure replacement, hyperparameter tuning and basic updating of weights of atomic models.
  • Study the effectiveness of algorithms for learning the structure of composite models and develop alternative hybrid algorithms based on reinforcement learning methods, Bayesian optimization, etc.
  • Developing a semi-automated process for updating framework results on popular ML benchmarks, and testing the framework on Kaggle competition data.
  • Developing a set of FEDOT use cases for different subject areas: oil, geo-data, finance, etc.
  • Support for enterprise formats of input data
  • Integration of the FEDOT framework with ML lifecycle management platforms (e.g. MLflow).
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