TASO optimizes the computation graphs of DNN models using automatically generated and verified graph transformations. For a given DNN model, the transformations build a large search space of potential computation graphs. TASO employs a cost-based search algorithm to explore the space, and automatically discovers an optimized computation graph.
- Recent C++ compiler supporting C++11
- CMAKE 3.2 or higher
- ProtocolBuffer 3.6.1 or higher
- Cython 0.28 or higher
- ONNX 1.5 or higher
- CUDA 9.0 or higher and CUDNN 7.0 or higher
- To get started, clone the TASO source code from github.
git clone https://www.github.com/jiazhihao/taso
cd taso
- Build the TASO runtime library. The configuration of the TASO runtime can be modified by
config.cmake
. The default configuration builds the CUDA backend and automatically finds the CUDA libraries (e.g., cuDNN, cuBLAS). You can manually choose a CUDA path by changingset(USE_CUDA ON)
toset(USE_CUDA /path/to/cuda/library
). MKL support is coming soon.
mkdir build; cd build; cmake ..
sudo make install -j 4
- Install the TASO python package.
cd python
python setup.py install
TASO can be used to optimize pre-trained DNN models in the ONNX format, and this can be done in just a few lines of Python code. The following code snippet shows how to load a pre-trained DNN model from ONNX, optimize the model, and save the optimized model into a ONNX file.
import taso
import onnx
old_model = taso.load_onnx("/path/to/load/onnx/model")
taso_graph = taso.optimize(old_model)
new_model = taso.export_onnx(taso_graph)
onnx.save(new_model, "/path/to/save/new/onnx/model")
The optimized model has the same accuracy as the original and can be directly used by existing deep learning frameworks.
The following figure shows the end-to-end inference performance comparison on a NVIDIA V100 GPU.
The original and TASO-optimized ONNX files are available in the onnx
folder.
TASO can also optimize arbitrary DNN models using the Python interface.
The following code snippet builds the left-most DNN graph depicted in the figure. TASO automatically performs a series of non-trivial transformations, and eventually discovers the right-most DNN graph, which is 1.3x faster on a V100 GPU. More DNN examples are available in the examples
folder.
import taso
import onnx
#Build DNN model
graph = taso.new_graph()
input = graph.new_input(dims=(1,128,56,56))
w1 = graph.new_weight(dims=(128,128,3,3))
w2 = graph.new_weight(dims=(128,128,1,1))
w3 = graph.new_weight(dims=(128,128,3,3))
left = graph.conv2d(input=input, weight=w1, strides=(1,1), padding="SAME", activation="RELU")
left = graph.conv2d(input=input, weight=w3, strides=(1,1), padding="SAME")
right = graph.conv2d(input=input, weight=w2, strides=(1,1), padding="SAME", activation="RELU")
output = graph.add(left, right)
output = graph.relu(output)
#Optimize DNN model
new_graph = taso.optimize(graph)
onnx_model = taso.export_onnx(new_graph)
onnx.save(onnx_model, "/path/to/save/new/onnx/model")
-
Zhihao Jia, Oded Padon, James Thomas, Todd Warszawski, Matei Zaharia, and Alex Aiken. TASO: Optimizing Deep Learning Computation with Automated Generation of Graph Substitutions. In Proceedings of the Symposium on Operating Systems Principles (SOSP), Ontario, Canada, October 2019.
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Zhihao Jia, James Thomas, Todd Warszawski, Mingyu Gao, Matei Zaharia, and Alex Aiken. Optimizing DNN Computation with Relaxed Graph Substitutions. In Proceedings of the Conference on Systems and Machine Learning (SysML), Palo Alto, CA, April 2019.