XGBoost uses the method of additive training in which it models the residual of the previous model.

This is sequential though, how does it to parallel computing then?

  • Thanks for asking--I had the same question.
    – nkhuyu
    Apr 28, 2016 at 20:37
  • 1
    A nice blog in here to cover parallel and XGboost.
    – Patric
    Jan 28, 2017 at 14:38
  • It is parallel during tree construction and inference. It uses a mixture of BLAS threads and worker threads internal during training and inference: xgboosting.com/…
    – jasonb
    May 17 at 20:03

1 Answer 1


Xgboost doesn't run multiple trees in parallel like you noted, you need predictions after each tree to update gradients.

Rather it does the parallelization WITHIN a single tree my using openMP to create branches independently.

To observe this,build a giant dataset and run with n_rounds=1. You will see all your cores firing on one tree. This is why it's so fast- well engineered.

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    @T. Scharf But how does this work for multiple nodes i.e. multiple computers rather than 1 computer with multiple cores ? The amount of communication to sync the tree within a tree would be immense Nov 19, 2016 at 13:32
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    Yea no getting around this fact.. @AbdealiJK but if your data is so big you need to distribute it this is the price you pay
    – T. Scharf
    Nov 20, 2016 at 15:27
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    @AbdealiJK ^^ yes I agree with your comment.
    – T. Scharf
    Nov 21, 2016 at 14:34

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