xgboost-ruby
Gradient Boosting Library
High-performance machine learning library with a Ruby interface to XGBoost gradient boosting algorithm
High performance gradient boosting for Ruby
106 stars
5 watching
6 forks
Language: Ruby
last commit: 2 months ago
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machine-learningrubymlxgboost
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