OneFlow is a performance-centered and open-source deep learning framework.
- Install OneFlow
- Getting Started
- Documentation
- Model Zoo and Benchmark
- Communication
- Contributing
- The Team
- License
Install OneFlow
System Requirements
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Python >= 3.5
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CUDA Toolkit Linux x86_64 Driver
OneFlow CUDA Driver Version oneflow_cu110 >= 450.36.06 oneflow_cu102 >= 440.33 oneflow_cu101 >= 418.39 oneflow_cu100 >= 410.48 oneflow_cu92 >= 396.26 oneflow_cu91 >= 390.46 oneflow_cu90 >= 384.81 oneflow_cpu N/A -
CUDA runtime is statically linked into OneFlow. OneFlow will work on a minimum supported driver, and any driver beyond. For more information, please refer to CUDA compatibility documentation.
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Support for latest stable version of CUDA will be prioritized. Please upgrade your Nvidia driver to version 440.33 or above and install
oneflow_cu102
if possible. -
We are sorry that due to limits on bandwidth and other resources, we could only guarantee the efficiency and stability of
oneflow_cu102
. We will improve it ASAP.
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Install with Pip Package
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To install latest release of OneFlow with CUDA support:
python3 -m pip install --find-links https://oneflow-inc.github.io/nightly oneflow_cu102 --user
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To install latest release of CPU-only OneFlow:
python3 -m pip install --find-links https://oneflow-inc.github.io/nightly oneflow_cpu --user
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To install OneFlow with legacy CUDA support, run one of:
python3 -m pip install --find-links https://oneflow-inc.github.io/nightly oneflow_cu101 --user python3 -m pip install --find-links https://oneflow-inc.github.io/nightly oneflow_cu100 --user python3 -m pip install --find-links https://oneflow-inc.github.io/nightly oneflow_cu92 --user python3 -m pip install --find-links https://oneflow-inc.github.io/nightly oneflow_cu91 --user python3 -m pip install --find-links https://oneflow-inc.github.io/nightly oneflow_cu90 --user
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If you are in China, you could run this to have pip download packages from domestic mirror of pypi:
python3 -m pip config set global.index-url https://pypi.tuna.tsinghua.edu.cn/simple
For more information on this, please refer to pypi 镜像使用帮助
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Releases are built with G++/GCC 4.8.5, cuDNN 7 and MKL 2020.0-088.
Build from Source
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Please use a newer version of CMake to build OneFlow. You could download cmake release from here.
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Please make sure you have G++ and GCC >= 4.8.5 installed. Clang is not supported for now.
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To install dependencies, run:
yum-config-manager --add-repo https://yum.repos.intel.com/setup/intelproducts.repo && \ rpm --import https://yum.repos.intel.com/intel-gpg-keys/GPG-PUB-KEY-INTEL-SW-PRODUCTS-2019.PUB && \ yum update -y && yum install -y epel-release && \ yum install -y intel-mkl-64bit-2020.0-088 nasm swig rdma-core-devel
On CentOS, if you have MKL installed, please update the environment variable:
export LD_LIBRARY_PATH=/opt/intel/lib/intel64_lin:/opt/intel/mkl/lib/intel64:$LD_LIBRARY_PATH
If you don't want to build OneFlow with MKL, you could install OpenBLAS:
sudo yum -y install openblas-devel
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git clone https://github.com/Oneflow-Inc/oneflow
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If you are in China, please download OneFlow source code from: https://oneflow-public.oss-cn-beijing.aliyuncs.com/oneflow-src.zip
curl https://oneflow-public.oss-cn-beijing.aliyuncs.com/oneflow-src.zip -o oneflow-src.zip unzip oneflow-src.zip
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In the root directory of OneFlow source code, run:
mkdir build cd build cmake .. make -j$(nproc) make pip_install
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If you are in China, please add this CMake flag
-DTHIRD_PARTY_MIRROR=aliyun
to speed up the downloading procedure for some dependency tar files. -
For pure CPU build, please add this CMake flag
-DBUILD_CUDA=OFF
.
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Troubleshooting
Please refer to troubleshooting for common issues you might encounter when compiling and running OneFlow.
Advanced features
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You can check this doc to obtain more details about how to use XLA and TensorRT with OneFlow.
Getting Started
3 minutes to run MNIST.
- Clone the demo code from OneFlow documentation
git clone https://github.com/Oneflow-Inc/oneflow-documentation.git
cd oneflow-documentation/cn/docs/code/quick_start/
- Run it in Python
python mlp_mnist.py
- Oneflow is running and you got the training loss
2.7290366
0.81281316
0.50629824
0.35949975
0.35245502
...
More info on this demo, please refer to doc on quick start.
Documentation
Usage & Design Docs
API Reference
OneFlow System Design
For those who would like to understand the OneFlow internals, please read the document below:
Model Zoo and Benchmark
CNNs(ResNet-50, VGG-16, Inception-V3, AlexNet)
Wide&Deep
BERT
Communication
- Github issues : any install, bug, feature issues.
- www.oneflow.org : brand related information.
Contributing
The Team
OneFlow was originally developed by OneFlow Inc and Zhejiang Lab.