#!/bin/bash # Based on a script from scikit-learn # This script is meant to be called by the "install" step defined in # .travis.yml. See http://docs.travis-ci.com/ for more details. # The behavior of the script is controlled by environment variabled defined # in the .travis.yml in the top level folder of the project. set -e # Fix the compilers to workaround avoid having the Python 3.4 build # lookup for g++44 unexpectedly. export CC=gcc export CXX=g++ if [[ "$DISTRIB" == "conda_min" ]]; then # Deactivate the travis-provided virtual environment and setup a # conda-based environment instead deactivate # Use the miniconda installer for faster download / install of conda # itself wget http://repo.continuum.io/miniconda/Miniconda-latest-Linux-x86_64.sh \ -O miniconda.sh chmod +x miniconda.sh && ./miniconda.sh -b -p $HOME/miniconda export PATH=/home/travis/miniconda/bin:$PATH conda config --set always_yes yes conda update --yes conda # Configure the conda environment and put it in the path using the # provided versions conda create -n testenv --yes python=$PYTHON_VERSION pip nose coverage \ six=$SIX_VERSION numpy=$NUMPY_VERSION scipy=$SCIPY_VERSION source activate testenv conda install libgfortran=1 if [[ "$INSTALL_MKL" == "true" ]]; then # Make sure that MKL is used conda install --yes --no-update-dependencies mkl else # Make sure that MKL is not used conda remove --yes --features mkl || echo "MKL not installed" fi elif [[ "$DISTRIB" == "conda" ]]; then # Deactivate the travis-provided virtual environment and setup a # conda-based environment instead deactivate # Use the miniconda installer for faster download / install of conda # itself wget http://repo.continuum.io/miniconda/Miniconda-latest-Linux-x86_64.sh \ -O miniconda.sh chmod +x miniconda.sh && ./miniconda.sh -b -p $HOME/miniconda export PATH=/home/travis/miniconda/bin:$PATH conda config --set always_yes yes conda update --yes conda # Configure the conda environment and put it in the path using the # provided versions conda create -n testenv --yes python=$PYTHON_VERSION pip nose coverage six=$SIX_VERSION \ numpy=$NUMPY_VERSION scipy=$SCIPY_VERSION pandas=$PANDAS_VERSION scikit-learn source activate testenv if [[ "$INSTALL_MKL" == "true" ]]; then # Make sure that MKL is used conda install --yes --no-update-dependencies mkl else # Make sure that MKL is not used conda remove --yes --features mkl || echo "MKL not installed" fi if [[ "$COVERAGE" == "true" ]]; then pip install coveralls fi python -c "import pandas; import os; assert os.getenv('PANDAS_VERSION') == pandas.__version__" elif [[ "$DISTRIB" == "ubuntu" ]]; then deactivate # Create a new virtualenv using system site packages for numpy and scipy virtualenv --system-site-packages testenv source testenv/bin/activate pip install nose pip install coverage pip install numpy==$NUMPY_VERSION pip install scipy==$SCIPY_VERSION pip install six==$SIX_VERSION pip install quantities fi if [[ "$COVERAGE" == "true" ]]; then pip install coveralls fi # pip install neo==0.3.3 wget https://github.com/NeuralEnsemble/python-neo/archive/master.tar.gz tar -xzvf master.tar.gz pushd python-neo-master python setup.py install popd pip install . python -c "import numpy; import os; assert os.getenv('NUMPY_VERSION') == numpy.__version__" python -c "import scipy; import os; assert os.getenv('SCIPY_VERSION') == scipy.__version__"