Xgboost short form for extreme gradient boosting is an advanced machine learning algorithm designed for efficiency, speed and high performance. This section is about blogposts, presentation and videos discussing how to use xgboost to solve your interesting problem Supports multiple languages including c++, python, r, java, scala, julia
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Wins many data science and machine learning challenges
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Supports distributed training on multiple machines, including aws, gce, azure, and yarn clusters Can be integrated with flink, spark and other cloud dataflow systems. Xgboost is an optimized distributed gradient boosting library designed to be highly efficient, flexible and portable It implements machine learning algorithms under the gradient boosting framework.
It provides parallel tree boosting and is the leading machine learning library for regression, classification, and ranking problems. Explore the fundamentals and advanced features of xgboost, a powerful boosting algorithm Includes practical code, tuning strategies, and visualizations. Helping data scientists (like you) make better predictions with xgboost (learn more)
Explore hundreds of examples that you can add to your project to get immediate results.
It is known for its speed, efficiency and ability to scale well with large datasets.