Hetu is a high-performance distributed deep learning system targeting trillions of parameters DL model training, developed by DAIR Lab at Peking University. It takes account of both high availability in industry and innovation in academia, which has a number of advanced characteristics:
Applicability. DL model definition with standard dataflow graph; many basic CPU and GPU operators; efficient implementation of more than plenty of DL models and at least popular 10 ML algorithms.
Efficiency. Achieve at least 30% speedup compared to TensorFlow on DNN, CNN, RNN benchmarks.
Flexibility. Supporting various parallel training protocols and distributed communication architectures, such as Data/Model/Pipeline parallel; Parameter server & AllReduce.
Scalability. Deployment on more than 100 computation nodes; Training giant models with trillions of model parameters, e.g., Criteo Kaggle, Open Graph Benchmark
Agility. Automatically ML pipeline: feature engineering, model selection, hyperparameter search.
We welcome everyone interested in machine learning or graph computing to contribute codes, create issues or pull requests. Please refer to Contribution Guide for more details.
Installation
Clone the repository.
Prepare the environment. We use Anaconda to manage packages. The following command create the conda environment to be used:
conda env create -f environment.yml .
Please prepare Cuda toolkit and CuDNN in advance.
We use CMake to compile Hetu. Please copy the example configuration for compilation by cp cmake/config.example.cmake cmake/config.cmake. Users can modify the configuration file to enable/disable the compilation of each module. For advanced users (who not using the provided conda environment), the prerequisites for different modules in Hetu is listed in appendix.
# modify paths and configurations in cmake/config.cmake
# generate Makefile
mkdir build && cd build && cmake ..
# compile
# make all
make -j 8
# make hetu, version is specified in cmake/config.cmake
make hetu -j 8
# make allreduce module
make allreduce -j 8
# make ps module
make ps -j 8
# make geometric module
make geometric -j 8
# make hetu-cache module
make hetu_cache -j 8
Prepare environment for running. Edit the hetu.exp file and set the environment path for python and the path for executable mpirun if necessary (for advanced users not using the provided conda environment). Then execute the command source hetu.exp .
The prerequisites for different modules in Hetu is listed as follows:
"*" means you should prepare by yourself, while others support auto-download
Hetu: OpenMP(*), CMake(*)
Hetu (version mkl): MKL 1.6.1
Hetu (version gpu): CUDA 10.1(*), CUDNN 7.5(*)
Hetu (version all): both
Hetu-AllReduce: MPI 3.1, NCCL 2.8(*), this module needs GPU version
Hetu-PS: Protobuf(*), ZeroMQ 4.3.2
Hetu-Geometric: Pybind11(*), Metis(*)
Hetu-Cache: Pybind11(*), this module needs PS module
##################################################################
Tips for preparing the prerequisites
Preparing CUDA, CUDNN, NCCL(NCCl is already in conda environment):
1. download from https://developer.nvidia.com
2. install
3. modify paths in cmake/config.cmake if necessary
Preparing OpenMP:
Your just need to ensure your compiler support openmp.
Preparing CMake, Protobuf, Pybind11, Metis:
Install by anaconda:
conda install cmake=3.18 libprotobuf pybind11=2.6.0 metis
Preparing OpenMPI (not necessary):
install by anaconda: `conda install -c conda-forge openmpi=4.0.3`
or
1. download from https://download.open-mpi.org/release/open-mpi/v4.0/openmpi-4.0.3.tar.gz
2. build openmpi by `./configure /path/to/build && make -j8 && make install`
3. modify MPI_HOME to /path/to/build in cmake/config.cmake
Preparing MKL (not necessary):
install by anaconda: `conda install -c conda-forge onednn`
or
1. download from https://github.com/intel/mkl-dnn/archive/v1.6.1.tar.gz
2. build mkl by `mkdir /path/to/build && cd /path/to/build && cmake /path/to/root && make -j8`
3. modify MKL_ROOT to /path/to/root and MKL_BUILD to /path/to/build in cmake/config.cmake
Preparing ZeroMQ (not necessary):
install by anaconda: `conda install -c anaconda zeromq=4.3.2`
or
1. download from https://github.com/zeromq/libzmq/releases/download/v4.3.2/zeromq-4.3.2.zip
2. build zeromq by 'mkdir /path/to/build && cd /path/to/build && cmake /path/to/root && make -j8`
3. modify ZMQ_ROOT to /path/to/build in cmake/config.cmake
HETU
Documentation | Examples
Hetu is a high-performance distributed deep learning system targeting trillions of parameters DL model training, developed by DAIR Lab at Peking University. It takes account of both high availability in industry and innovation in academia, which has a number of advanced characteristics:
Applicability. DL model definition with standard dataflow graph; many basic CPU and GPU operators; efficient implementation of more than plenty of DL models and at least popular 10 ML algorithms.
Efficiency. Achieve at least 30% speedup compared to TensorFlow on DNN, CNN, RNN benchmarks.
Flexibility. Supporting various parallel training protocols and distributed communication architectures, such as Data/Model/Pipeline parallel; Parameter server & AllReduce.
Scalability. Deployment on more than 100 computation nodes; Training giant models with trillions of model parameters, e.g., Criteo Kaggle, Open Graph Benchmark
Agility. Automatically ML pipeline: feature engineering, model selection, hyperparameter search.
We welcome everyone interested in machine learning or graph computing to contribute codes, create issues or pull requests. Please refer to Contribution Guide for more details.
Installation
Clone the repository.
Prepare the environment. We use Anaconda to manage packages. The following command create the conda environment to be used:
conda env create -f environment.yml
. Please prepare Cuda toolkit and CuDNN in advance.We use CMake to compile Hetu. Please copy the example configuration for compilation by
cp cmake/config.example.cmake cmake/config.cmake
. Users can modify the configuration file to enable/disable the compilation of each module. For advanced users (who not using the provided conda environment), the prerequisites for different modules in Hetu is listed in appendix.source hetu.exp
.Usage
Train logistic regression on gpu:
Train a 3-layer mlp on gpu:
Train a 3-layer cnn with gpu:
Train a 3-layer mlp with allreduce on 8 gpus (use mpirun):
Train a 3-layer mlp with PS on 1 server and 2 workers:
More Examples
Please refer to examples directory, which contains CNN, NLP, CTR, GNN training scripts. For distributed training, please refer to CTR and GNN tasks.
Community
Enterprise Users
If you are enterprise users and find Hetu is useful in your work, please let us know, and we are glad to add your company logo here.
License
The entire codebase is under license
Papers
Acknowledgements
We learned and borrowed insights from a few open source projects including TinyFlow, autodist, tf.distribute and Angel.
Appendix
The prerequisites for different modules in Hetu is listed as follows: