NVIDIA-AI-IOT / torch2trt

An easy to use PyTorch to TensorRT converter
MIT License
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classification inference jetson-nano jetson-tx2 jetson-xavier pytorch tensorrt

torch2trt

What models are you using, or hoping to use, with TensorRT? Feel free to join the discussion here.

torch2trt is a PyTorch to TensorRT converter which utilizes the TensorRT Python API. The converter is

If you find an issue, please let us know!

Please note, this converter has limited coverage of TensorRT / PyTorch. We created it primarily to easily optimize the models used in the JetBot project. If you find the converter helpful with other models, please let us know.

Usage

Below are some usage examples, for more check out the notebooks.

Convert

import torch
from torch2trt import torch2trt
from torchvision.models.alexnet import alexnet

# create some regular pytorch model...
model = alexnet(pretrained=True).eval().cuda()

# create example data
x = torch.ones((1, 3, 224, 224)).cuda()

# convert to TensorRT feeding sample data as input
model_trt = torch2trt(model, [x])

Execute

We can execute the returned TRTModule just like the original PyTorch model

y = model(x)
y_trt = model_trt(x)

# check the output against PyTorch
print(torch.max(torch.abs(y - y_trt)))

Save and load

We can save the model as a state_dict.

torch.save(model_trt.state_dict(), 'alexnet_trt.pth')

We can load the saved model into a TRTModule

from torch2trt import TRTModule

model_trt = TRTModule()

model_trt.load_state_dict(torch.load('alexnet_trt.pth'))

Models

We tested the converter against these models using the test.sh script. You can generate the results by calling

./test.sh TEST_OUTPUT.md

The results below show the throughput in FPS. You can find the raw output, which includes latency, in the benchmarks folder.

Model Nano (PyTorch) Nano (TensorRT) Xavier (PyTorch) Xavier (TensorRT)
alexnet 46.4 69.9 250 580
squeezenet1_0 44 137 130 890
squeezenet1_1 76.6 248 132 1390
resnet18 29.4 90.2 140 712
resnet34 15.5 50.7 79.2 393
resnet50 12.4 34.2 55.5 312
resnet101 7.18 19.9 28.5 170
resnet152 4.96 14.1 18.9 121
densenet121 11.5 41.9 23.0 168
densenet169 8.25 33.2 16.3 118
densenet201 6.84 25.4 13.3 90.9
densenet161 4.71 15.6 17.2 82.4
vgg11 8.9 18.3 85.2 201
vgg13 6.53 14.7 71.9 166
vgg16 5.09 11.9 61.7 139
vgg19 54.1 121
vgg11_bn 8.74 18.4 81.8 201
vgg13_bn 6.31 14.8 68.0 166
vgg16_bn 4.96 12.0 58.5 140
vgg19_bn 51.4 121

Setup

Note: torch2trt depends on the TensorRT Python API. On Jetson, this is included with the latest JetPack. For desktop, please follow the TensorRT Installation Guide. You may also try installing torch2trt inside one of the NGC PyTorch docker containers for Desktop or Jetson.

Step 1 - Install the torch2trt Python library

To install the torch2trt Python library, call the following

git clone https://github.com/NVIDIA-AI-IOT/torch2trt
cd torch2trt
python setup.py install

Step 2 (optional) - Install the torch2trt plugins library

To install the torch2trt plugins library, call the following

cmake -B build . && cmake --build build --target install && ldconfig

This includes support for some layers which may not be supported natively by TensorRT. Once this library is found in the system, the associated layer converters in torch2trt are implicitly enabled.

Note: torch2trt now maintains plugins as an independent library compiled with CMake. This makes compiled TensorRT engines more portable. If needed, the deprecated plugins (which depend on PyTorch) may still be installed by calling python setup.py install --plugins.

Step 3 (optional) - Install experimental community contributed features

To install torch2trt with experimental community contributed features under torch2trt.contrib, like Quantization Aware Training (QAT)(requires TensorRT>=7.0), call the following,

git clone https://github.com/NVIDIA-AI-IOT/torch2trt
cd torch2trt/scripts    
bash build_contrib.sh   

This enables you to run the QAT example located here.

How does it work?

This converter works by attaching conversion functions (like convert_ReLU) to the original PyTorch functional calls (like torch.nn.ReLU.forward). The sample input data is passed through the network, just as before, except now whenever a registered function (torch.nn.ReLU.forward) is encountered, the corresponding converter (convert_ReLU) is also called afterwards. The converter is passed the arguments and return statement of the original PyTorch function, as well as the TensorRT network that is being constructed. The input tensors to the original PyTorch function are modified to have an attribute _trt, which is the TensorRT counterpart to the PyTorch tensor. The conversion function uses this _trt to add layers to the TensorRT network, and then sets the _trt attribute for relevant output tensors. Once the model is fully executed, the final tensors returns are marked as outputs of the TensorRT network, and the optimized TensorRT engine is built.

How to add (or override) a converter

Here we show how to add a converter for the ReLU module using the TensorRT python API.

import tensorrt as trt
from torch2trt import tensorrt_converter

@tensorrt_converter('torch.nn.ReLU.forward')
def convert_ReLU(ctx):
    input = ctx.method_args[1]
    output = ctx.method_return
    layer = ctx.network.add_activation(input=input._trt, type=trt.ActivationType.RELU)  
    output._trt = layer.get_output(0)

The converter takes one argument, a ConversionContext, which will contain the following

Please see this folder for more examples.

See also