I tried to install XGBoost package in python. I am using windows os, 64bits . I have gone through following.

The package directory states that xgboost is unstable for windows and is disabled: pip installation on windows is currently disabled for further invesigation, please install from github. https://pypi.python.org/pypi/xgboost/

I am not well versed in Visual Studio, facing problem building XGBoost. I am missing opportunities to utilize xgboost package in data science.

Please guide, so that I can import the XGBoost package in python.


If you are using anaconda (or miniconda) you can use the following:

  • conda install py-xgboost

Check install by:

  • Activating the environment (see below)
  • Running conda list

To activate an environment:

On Windows, in your Anaconda Prompt, run (assumes your environment is named myenv):

  • activate myenv

On macOS and Linux, in your Terminal Window, run (assumes your environment is named myenv):

  • source activate myenv

Conda prepends the path name myenv onto your system command.

  • 3
    Just a quick hint: Issue the command in the Anaconda Promt, running at Administrator. Otherwise it didn't work for me. – CGFoX Mar 8 at 12:46
  • While the installation with anaconda succeeds, xgboost still doesn't show up in pip list and I get an error when trying to import it. – CGFoX Mar 8 at 12:50
  • @CGFoX 1. Make sure you have the correct conda environment activated. 2. conda list should show the install, you didn't use pip to install the dependency if you used the command I provided – Adrian Torrie Apr 26 at 4:10

Build it from here:

  • download xgboost whl file from here (make sure to match your python version and system architecture, e.g. "xgboost-0.6-cp35-cp35m-win_amd64.whl" for python 3.5 on 64-bit machine)
  • open command prompt
  • cd to your Downloads folder (or wherever you saved the whl file) pip install xgboost-0.6-cp35-cp35m-win_amd64.whl (or whatever your whl file is named)

You first need to build the library through "make", then you can install using anaconda prompt (if you want it on anaconda) or git bash (if you use it in Python only).

First follow the official guide with the following procedure (in Git Bash on Windows):

git clone --recursive https://github.com/dmlc/xgboost
git submodule init
git submodule update

then install TDM-GCC here and do the following in Git Bash:

alias make='mingw32-make'
cp make/mingw64.mk config.mk; make -j4

Last, do the following using anaconda prompt or Git Bash:

cd xgboost\python-package  
python setup.py install 

Also refer to these great resources:

Official Guide

Installing Xgboost on Windows

Installing XGBoost For Anaconda on Windows

  • Thanks a lot. I have followed your pointed resources and installed xgboost in windows. However, I am facing a problem, when I ran the following lines to get cv parameters: – shan May 29 '16 at 7:12
  • I get WindowsError: [Error 193] %1 is not a valid Win32 application when I try to import xgboost – John Constantine Nov 27 '16 at 0:05

I have installed xgboost in windows os following the above resources, which is not available till now in pip. However, I tried with the following function code, to get cv parameters tuned:

#Import libraries:
import pandas as pd
import numpy as np
import xgboost as xgb
from xgboost.sklearn import XGBClassifier
from sklearn import cross_validation, metrics   #Additional sklearn functions
from sklearn.grid_search import GridSearchCV   #Perforing grid search

import matplotlib.pylab as plt
%matplotlib inline
from matplotlib.pylab import rcParams
rcParams['figure.figsize'] = 12, 4

train = pd.read_csv('train_data.csv')
target = 'target_value'
IDcol = 'ID'

A function is created to get the optimum parameters and display the output in visual form.

def modelfit(alg, dtrain, predictors,useTrainCV=True, cv_folds=5, early_stopping_rounds=50):

if useTrainCV:
    xgb_param = alg.get_xgb_params()
    xgtrain = xgb.DMatrix(dtrain[predictors].values, label=dtrain[target].values)
    cvresult = xgb.cv(xgb_param, xgtrain, num_boost_round=alg.get_params()['n_estimators'], nfold=cv_folds,
        metrics='auc', early_stopping_rounds=early_stopping_rounds, show_progress=False)

#Fit the algorithm on the data
alg.fit(dtrain[predictors], dtrain[target_label],eval_metric='auc')

#Predict training set:
dtrain_predictions = alg.predict(dtrain[predictors])
dtrain_predprob = alg.predict_proba(dtrain[predictors])[:,1]

#Print model report:
print "\nModel Report"
print "Accuracy : %.4g" % metrics.accuracy_score(dtrain[target_label].values, dtrain_predictions)
print "AUC Score (Train): %f" % metrics.roc_auc_score(dtrain[target_label], dtrain_predprob)

feat_imp = pd.Series(alg.booster().get_fscore()).sort_values(ascending=False)
feat_imp.plot(kind='bar', title='Feature Importances')
plt.ylabel('Feature Importance Score')

Now, when the function is called to get the optimum parameters:

  #Choose all predictors except target & IDcols
  predictors = [x for x in train.columns if x not in [target]]
  xgb = XGBClassifier(
  learning_rate =0.1,
  objective= 'binary:logistic',
 modelfit(xgb, train, predictors)

Although the feature importance chart is displayed, but the parameters info in red box at the top of chart is missing: enter image description here Consulted people who use linux/mac OS and got xgboost installed. They are getting the above info. I was wondering whether it is due to specific implementation , I build and installed in windows. And how I can get the parameters info displayed above the chart. As of now, I am getting the chart and not the red box and info within it. Thanks.

You can pip install catboost. It is a recently open-sourced gradient boosting library, which is in most cases more accurate and faster than XGBoost, and it has categorical features support. Here is the site of the library: https://catboost.yandex

Besides what's already on developers' github, which is building from source(creating a c++ environment, etc.), I have found an easier way to do it, which I explained here with details. Basically, you have to go a website by UC Irvine and download a .whl file, then cd to the folder and install xgboost with pip.

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