Windows users: pip installation may not work on some Windows environments, and it may cause unexpected errors.
Installation from pip on Windows is therefore currently disabled for further investigation; please install from Github instead.
If you want to run XGBoost process in parallel using the fork backend for joblib/multiprocessing, you must build XGBoost without support for OpenMP by
make no_omp=1
. Otherwise, use the forkserver (in Python 3.4) or spawn backend. See the sklearn_parallel.py demo.
Since this package contains C++ source code, pip
needs a C++ compiler from the system to compile the source code on-the-fly.
On macOS, gcc@5
is required as later versions remove support for OpenMP. See here for more info.
Please install gcc@5
from Homebrew:
brew install gcc@5
After installing gcc@5
, set it as your compiler:
export CC=gcc-5 export CXX=g++-5
Please install gcc
:
sudo apt-get install build-essential # Ubuntu/Debian sudo yum groupinstall 'Development Tools' # CentOS/RHEL
From PyPI
For a stable version, install using pip
:
pip install xgboost
For an up-to-date version, install from Github:
Run
./build.sh
in the root of the repo.Make sure you have setuptools installed:
pip install setuptools
Install with
cd python-package; python setup.py install
from the root of the repoFor Windows users, please use the Visual Studio project file under the Windows folder. See also the installation tutorial from Kaggle Otto Forum.
Add MinGW to the system PATH in Windows if you are using the latest version of xgboost which requires compilation:
python import os os.environ['PATH'] = os.environ['PATH'] + ';C:\\Program Files\\mingw-w64\\x86_64-5.3.0-posix-seh-rt_v4-rev0\\mingw64\\bin'
- Refer also to the walk through example in demo folder.
- See also the example scripts for Kaggle Higgs Challenge, including speedtest script on this dataset.