The following instructions are for users wishing to build cuGraph from source code. These instructions are tested on supported distributions of Linux, CUDA, and Python - See RAPIDS Getting Started for list of supported environments. Other operating systems might be compatible, but are not currently tested.
The cuGraph package include both a C/C++ CUDA portion and a python portion. Both libraries need to be installed in order for cuGraph to operate correctly.
Compiler:
gcc
version 5.4+nvcc
version 10.0+cmake
version 3.12+
CUDA:
- CUDA 10.1+
- NVIDIA driver 396.44+
- Pascal architecture or better
Other
git
You can obtain CUDA from https://developer.nvidia.com/cuda-downloads.
To install cuGraph from source, ensure the dependencies are met.
GIT clone a version of the repository
# Set the localtion to cuGraph in an environment variable CUGRAPH_HOME
export CUGRAPH_HOME=$(pwd)/cugraph
# Download the cuGraph repo - if you have a folked version, use that path here instead
git clone https://github.com/rapidsai/cugraph.git $CUGRAPH_HOME
cd $CUGRAPH_HOME
Create the conda development environment
# create the conda environment (assuming in base `cugraph` directory)
# for CUDA 10.1
conda env create --name cugraph_dev --file conda/environments/cugraph_dev_cuda10.1.yml
# for CUDA 10.2
conda env create --name cugraph_dev --file conda/environments/cugraph_dev_cuda10.2.yml
# for CUDA 11
conda env create --name cugraph_dev --file conda/environments/cugraph_dev_cuda11.0.yml
# activate the environment
conda activate cugraph_dev
# to deactivate an environment
conda deactivate
- The environment can be updated as development includes/changes the dependencies. To do so, run:
# for CUDA 10.1
conda env update --name cugraph_dev --file conda/environments/cugraph_dev_cuda10.1.yml
# for CUDA 10.2
conda env update --name cugraph_dev --file conda/environments/cugraph_dev_cuda10.2.yml
# for CUDA 11
conda env update --name cugraph_dev --file conda/environments/cugraph_dev_cuda11.0.yml
conda activate cugraph_dev
Using the build.sh
script make compiling and installig cuGraph a breeze. To build and install, simply do:
$ cd $CUGRAPH_HOME
$ ./build.sh clean
$ ./build.sh libcugraph
$ ./build.sh cugraph
There are several other options available on the build script for advanced users.
build.sh
options:
build.sh [<target> ...] [<flag> ...]
clean - remove all existing build artifacts and configuration (start over)
libcugraph - build the cugraph C++ code
cugraph - build the cugraph Python package
and <flag> is:
-v - verbose build mode
-g - build for debug
-n - no install step
--show_depr_warn - show cmake deprecation warnings
-h - print this text
examples:
$ ./build.sh clean # remove prior build artifacts (start over)
$ ./build.sh libcugraph -v # compile and install libcugraph with verbose output
$ ./build.sh libcugraph -g # compile and install libcugraph for debug
$ ./build.sh libcugraph -n # compile libcugraph but do not install
# make parallelism options can also be defined: Example build jobs using 4 threads (make -j4)
$ PARALLEL_LEVEL=4 ./build.sh libcugraph
Note that the libraries will be installed to the location set in `$PREFIX` if set (i.e. `export PREFIX=/install/path`), otherwise to `$CONDA_PREFIX`.
CMake depends on the nvcc
executable being on your path or defined in $CUDACXX
.
This project uses cmake for building the C/C++ library. To configure cmake, run:
# Set the localtion to cuGraph in an environment variable CUGRAPH_HOME
export CUGRAPH_HOME=$(pwd)/cugraph
cd $CUGRAPH_HOME
cd cpp # enter cpp directory
mkdir build # create build directory
cd build # enter the build directory
cmake .. -DCMAKE_INSTALL_PREFIX=$CONDA_PREFIX
# now build the code
make -j # "-j" starts multiple threads
make install # install the libraries
The default installation locations are $CMAKE_INSTALL_PREFIX/lib
and $CMAKE_INSTALL_PREFIX/include/cugraph
respectively.
- Install the Python package to your Python path:
cd $CUGRAPH_HOME
cd python
python setup.py build_ext --inplace
python setup.py install # install cugraph python bindings
Run either the C++ or the Python tests with datasets
-
Python tests with datasets
cd $CUGRAPH_HOME cd python pytest
-
C++ stand alone tests
From the build directory :
# Run the cugraph tests cd $CUGRAPH_HOME cd cpp/build gtests/GDFGRAPH_TEST # this is an executable file
-
C++ tests with larger datasets
If you already have the datasets:
export RAPIDS_DATASET_ROOT_DIR=<path_to_ccp_test_and_reference_data>
If you do not have the datasets:
cd $CUGRAPH_HOME/datasets source get_test_data.sh #This takes about 10 minutes and download 1GB data (>5 GB uncompressed)
Run the C++ tests on large input:
cd $CUGRAPH_HOME/cpp/build #test one particular analytics (eg. pagerank) gtests/PAGERANK_TEST #test everything make test
Note: This conda installation only applies to Linux and Python versions 3.7/3.8.
You can do a local build and test on your machine that mimics our gpuCI environment using the ci/local/build.sh
script.
For detailed information on usage of this script, see here.
It is possible to configure the conda environment to set environmental variables on activation. Providing instructions to set PATH to include the CUDA toolkit bin directory and LD_LIBRARY_PATH to include the CUDA lib64 directory will be helpful.
cd ~/anaconda3/envs/cugraph_dev
mkdir -p ./etc/conda/activate.d
mkdir -p ./etc/conda/deactivate.d
touch ./etc/conda/activate.d/env_vars.sh
touch ./etc/conda/deactivate.d/env_vars.sh
Next the env_vars.sh file needs to be edited
vi ./etc/conda/activate.d/env_vars.sh
#!/bin/bash
export PATH=/usr/local/cuda-10.1/bin:$PATH # or cuda-10.2 if using CUDA 10.2
export LD_LIBRARY_PATH=/usr/local/cuda-10.1/lib64:$LD_LIBRARY_PATH # or cuda-10.2 if using CUDA 10.2
vi ./etc/conda/deactivate.d/env_vars.sh
#!/bin/bash
unset PATH
unset LD_LIBRARY_PATH
Python API documentation can be generated from docs directory.
Portions adopted from https://github.com/pytorch/pytorch/blob/master/CONTRIBUTING.md