""" Example of training with Dask on GPU ==================================== """ import dask_cudf from dask import array as da from dask import dataframe as dd from dask.distributed import Client from dask_cuda import LocalCUDACluster import xgboost as xgb from xgboost import dask as dxgb from xgboost.dask import DaskDMatrix def using_dask_matrix(client: Client, X, y): # DaskDMatrix acts like normal DMatrix, works as a proxy for local # DMatrix scatter around workers. dtrain = DaskDMatrix(client, X, y) # Use train method from xgboost.dask instead of xgboost. This # distributed version of train returns a dictionary containing the # resulting booster and evaluation history obtained from # evaluation metrics. output = xgb.dask.train(client, {'verbosity': 2, # Golden line for GPU training 'tree_method': 'gpu_hist'}, dtrain, num_boost_round=4, evals=[(dtrain, 'train')]) bst = output['booster'] history = output['history'] # you can pass output directly into `predict` too. prediction = xgb.dask.predict(client, bst, dtrain) print('Evaluation history:', history) return prediction def using_quantile_device_dmatrix(client: Client, X, y): """`DaskQuantileDMatrix` is a data type specialized for `gpu_hist` and `hist` tree methods for reducing memory usage. .. versionadded:: 1.2.0 """ X = dask_cudf.from_dask_dataframe(dd.from_dask_array(X)) y = dask_cudf.from_dask_dataframe(dd.from_dask_array(y)) # `DaskQuantileDMatrix` is used instead of `DaskDMatrix`, be careful that it can not # be used for anything else other than training unless a reference is specified. See # the `ref` argument of `DaskQuantileDMatrix`. dtrain = dxgb.DaskQuantileDMatrix(client, X, y) output = xgb.dask.train( client, {"verbosity": 2, "tree_method": "gpu_hist"}, dtrain, num_boost_round=4 ) prediction = xgb.dask.predict(client, output, X) return prediction if __name__ == '__main__': # `LocalCUDACluster` is used for assigning GPU to XGBoost processes. Here # `n_workers` represents the number of GPUs since we use one GPU per worker # process. with LocalCUDACluster(n_workers=2, threads_per_worker=4) as cluster: with Client(cluster) as client: # generate some random data for demonstration m = 100000 n = 100 X = da.random.random(size=(m, n), chunks=10000) y = da.random.random(size=(m, ), chunks=10000) print('Using DaskQuantileDMatrix') from_ddqdm = using_quantile_device_dmatrix(client, X, y) print('Using DMatrix') from_dmatrix = using_dask_matrix(client, X, y)