| """ | |
| (optional) Exporting a Model from PyTorch to ONNX and Running it using ONNX Runtime | |
| ======================================================================== | |
| In this tutorial, we describe how to convert a model defined | |
| in PyTorch into the ONNX format and then run it with ONNX Runtime. | |
| ONNX Runtime is a performance-focused engine for ONNX models, | |
| which inferences efficiently across multiple platforms and hardware | |
| (Windows, Linux, and Mac and on both CPUs and GPUs). | |
| ONNX Runtime has proved to considerably increase performance over | |
| multiple models as explained `here | |
| <https://cloudblogs.microsoft.com/opensource/2019/05/22/onnx-runtime-machine-learning-inferencing-0-4-release>`__ | |
| For this tutorial, you will need to install `ONNX <https://github.com/onnx/onnx>`__ | |
| and `ONNX Runtime <https://github.com/microsoft/onnxruntime>`__. | |
| You can get binary builds of ONNX and ONNX Runtime with | |
| ``pip install onnx onnxruntime``. | |
| Note that ONNX Runtime is compatible with Python versions 3.5 to 3.7. | |
| ``NOTE``: This tutorial needs PyTorch master branch which can be installed by following | |
| the instructions `here <https://github.com/pytorch/pytorch#from-source>`__ | |
| """ | |
| # Some standard imports | |
| import io | |
| import numpy as np | |
| from torch import nn | |
| import torch.utils.model_zoo as model_zoo | |
| import torch.onnx | |
| ###################################################################### | |
| # Super-resolution is a way of increasing the resolution of images, videos | |
| # and is widely used in image processing or video editing. For this | |
| # tutorial, we will use a small super-resolution model. | |
| # | |
| # First, let's create a SuperResolution model in PyTorch. | |
| # This model uses the efficient sub-pixel convolution layer described in | |
| # `"Real-Time Single Image and Video Super-Resolution Using an Efficient | |
| # Sub-Pixel Convolutional Neural Network" - Shi et al <https://arxiv.org/abs/1609.05158>`__ | |
| # for increasing the resolution of an image by an upscale factor. | |
| # The model expects the Y component of the YCbCr of an image as an input, and | |
| # outputs the upscaled Y component in super resolution. | |
| # | |
| # `The | |
| # model <https://github.com/pytorch/examples/blob/master/super_resolution/model.py>`__ | |
| # comes directly from PyTorch's examples without modification: | |
| # | |
| # Super Resolution model definition in PyTorch | |
| import torch.nn as nn | |
| import torch.nn.init as init | |
| class SuperResolutionNet(nn.Module): | |
| def __init__(self, upscale_factor, inplace=False): | |
| super(SuperResolutionNet, self).__init__() | |
| self.relu = nn.ReLU(inplace=inplace) | |
| self.conv1 = nn.Conv2d(1, 64, (5, 5), (1, 1), (2, 2)) | |
| self.conv2 = nn.Conv2d(64, 64, (3, 3), (1, 1), (1, 1)) | |
| self.conv3 = nn.Conv2d(64, 32, (3, 3), (1, 1), (1, 1)) | |
| self.conv4 = nn.Conv2d(32, upscale_factor ** 2, (3, 3), (1, 1), (1, 1)) | |
| self.pixel_shuffle = nn.PixelShuffle(upscale_factor) | |
| self._initialize_weights() | |
| def forward(self, x): | |
| x = self.relu(self.conv1(x)) | |
| x = self.relu(self.conv2(x)) | |
| x = self.relu(self.conv3(x)) | |
| x = self.pixel_shuffle(self.conv4(x)) | |
| return x | |
| def _initialize_weights(self): | |
| init.orthogonal_(self.conv1.weight, init.calculate_gain('relu')) | |
| init.orthogonal_(self.conv2.weight, init.calculate_gain('relu')) | |
| init.orthogonal_(self.conv3.weight, init.calculate_gain('relu')) | |
| init.orthogonal_(self.conv4.weight) | |
| # Create the super-resolution model by using the above model definition. | |
| torch_model = SuperResolutionNet(upscale_factor=3) | |
| ###################################################################### | |
| # Ordinarily, you would now train this model; however, for this tutorial, | |
| # we will instead download some pre-trained weights. Note that this model | |
| # was not trained fully for good accuracy and is used here for | |
| # demonstration purposes only. | |
| # | |
| # It is important to call ``torch_model.eval()`` or ``torch_model.train(False)`` | |
| # before exporting the model, to turn the model to inference mode. | |
| # This is required since operators like dropout or batchnorm behave | |
| # differently in inference and training mode. | |
| # | |
| # Load pretrained model weights | |
| model_url = 'https://s3.amazonaws.com/pytorch/test_data/export/superres_epoch100-44c6958e.pth' | |
| batch_size = 1 # just a random number | |
| # Initialize model with the pretrained weights | |
| map_location = lambda storage, loc: storage | |
| if torch.cuda.is_available(): | |
| map_location = None | |
| torch_model.load_state_dict(model_zoo.load_url(model_url, map_location=map_location)) | |
| # set the model to inference mode | |
| torch_model.eval() | |
| ###################################################################### | |
| # Exporting a model in PyTorch works via tracing or scripting. This | |
| # tutorial will use as an example a model exported by tracing. | |
| # To export a model, we call the ``torch.onnx.export()`` function. | |
| # This will execute the model, recording a trace of what operators | |
| # are used to compute the outputs. | |
| # Because ``export`` runs the model, we need to provide an input | |
| # tensor ``x``. The values in this can be random as long as it is the | |
| # right type and size. | |
| # Note that the input size will be fixed in the exported ONNX graph for | |
| # all the input's dimensions, unless specified as a dynamic axes. | |
| # In this example we export the model with an input of batch_size 1, | |
| # but then specify the first dimension as dynamic in the ``dynamic_axes`` | |
| # parameter in ``torch.onnx.export()``. | |
| # The exported model will thus accept inputs of size [batch_size, 1, 224, 224] | |
| # where batch_size can be variable. | |
| # | |
| # To learn more details about PyTorch's export interface, check out the | |
| # `torch.onnx documentation <https://pytorch.org/docs/master/onnx.html>`__. | |
| # | |
| # Input to the model | |
| x = torch.randn(batch_size, 1, 224, 224, requires_grad=True) | |
| torch_out = torch_model(x) | |
| # Export the model | |
| torch.onnx.export(torch_model, # model being run | |
| x, # model input (or a tuple for multiple inputs) | |
| "super_resolution.onnx", # where to save the model (can be a file or file-like object) | |
| export_params=True, # store the trained parameter weights inside the model file | |
| opset_version=10, # the ONNX version to export the model to | |
| do_constant_folding=True, # whether to execute constant folding for optimization | |
| input_names = ['input'], # the model's input names | |
| output_names = ['output'], # the model's output names | |
| dynamic_axes={'input' : {0 : 'batch_size'}, # variable lenght axes | |
| 'output' : {0 : 'batch_size'}}) | |
| ###################################################################### | |
| # We also computed ``torch_out``, the output after of the model, | |
| # which we will use to verify that the model we exported computes | |
| # the same values when run in ONNX Runtime. | |
| # | |
| # But before verifying the model's output with ONNX Runtime, we will check | |
| # the ONNX model with ONNX's API. | |
| # First, ``onnx.load("super_resolution.onnx")`` will load the saved model and | |
| # will output a onnx.ModelProto structure (a top-level file/container format for bundling a ML model. | |
| # For more information `onnx.proto documentation <https://github.com/onnx/onnx/blob/master/onnx/onnx.proto>`__.). | |
| # Then, ``onnx.checker.check_model(onnx_model)`` will verify the model's structure | |
| # and confirm that the model has a valid schema. | |
| # The validity of the ONNX graph is verified by checking the model's | |
| # version, the graph's structure, as well as the nodes and their inputs | |
| # and outputs. | |
| # | |
| import onnx | |
| onnx_model = onnx.load("super_resolution.onnx") | |
| onnx.checker.check_model(onnx_model) | |
| ###################################################################### | |
| # Now let's compute the output using ONNX Runtime's Python APIs. | |
| # This part can normally be done in a separate process or on another | |
| # machine, but we will continue in the same process so that we can | |
| # verify that ONNX Runtime and PyTorch are computing the same value | |
| # for the network. | |
| # | |
| # In order to run the model with ONNX Runtime, we need to create an | |
| # inference session for the model with the chosen configuration | |
| # parameters (here we use the default config). | |
| # Once the session is created, we evaluate the model using the run() api. | |
| # The output of this call is a list containing the outputs of the model | |
| # computed by ONNX Runtime. | |
| # | |
| import onnxruntime | |
| ort_session = onnxruntime.InferenceSession("super_resolution.onnx") | |
| def to_numpy(tensor): | |
| return tensor.detach().cpu().numpy() if tensor.requires_grad else tensor.cpu().numpy() | |
| # compute ONNX Runtime output prediction | |
| ort_inputs = {ort_session.get_inputs()[0].name: to_numpy(x)} | |
| ort_outs = ort_session.run(None, ort_inputs) | |
| # compare ONNX Runtime and PyTorch results | |
| np.testing.assert_allclose(to_numpy(torch_out), ort_outs[0], rtol=1e-03, atol=1e-05) | |
| print("Exported model has been tested with ONNXRuntime, and the result looks good!") | |
| ###################################################################### | |
| # We should see that the output of PyTorch and ONNX Runtime runs match | |
| # numerically with the given precision (rtol=1e-03 and atol=1e-05). | |
| # As a side-note, if they do not match then there is an issue in the | |
| # ONNX exporter, so please contact us in that case. | |
| # | |
| ###################################################################### | |
| # Running the model on an image using ONNX Runtime | |
| # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ | |
| # | |
| ###################################################################### | |
| # So far we have exported a model from PyTorch and shown how to load it | |
| # and run it in ONNX Runtime with a dummy tensor as an input. | |
| ###################################################################### | |
| # For this tutorial, we will use a famous cat image used widely which | |
| # looks like below | |
| # | |
| # .. figure:: /_static/img/cat_224x224.jpg | |
| # :alt: cat | |
| # | |
| ###################################################################### | |
| # First, let's load the image, pre-process it using standard PIL | |
| # python library. Note that this preprocessing is the standard practice of | |
| # processing data for training/testing neural networks. | |
| # | |
| # We first resize the image to fit the size of the model's input (224x224). | |
| # Then we split the image into its Y, Cb, and Cr components. | |
| # These components represent a greyscale image (Y), and | |
| # the blue-difference (Cb) and red-difference (Cr) chroma components. | |
| # The Y component being more sensitive to the human eye, we are | |
| # interested in this component which we will be transforming. | |
| # After extracting the Y component, we convert it to a tensor which | |
| # will be the input of our model. | |
| # | |
| from PIL import Image | |
| import torchvision.transforms as transforms | |
| img = Image.open("./_static/img/cat.jpg") | |
| resize = transforms.Resize([224, 224]) | |
| img = resize(img) | |
| img_ycbcr = img.convert('YCbCr') | |
| img_y, img_cb, img_cr = img_ycbcr.split() | |
| to_tensor = transforms.ToTensor() | |
| img_y = to_tensor(img_y) | |
| img_y.unsqueeze_(0) | |
| ###################################################################### | |
| # Now, as a next step, let's take the tensor representing the | |
| # greyscale resized cat image and run the super-resolution model in | |
| # ONNX Runtime as explained previously. | |
| # | |
| ort_inputs = {ort_session.get_inputs()[0].name: to_numpy(img_y)} | |
| ort_outs = ort_session.run(None, ort_inputs) | |
| img_out_y = ort_outs[0] | |
| ###################################################################### | |
| # At this point, the output of the model is a tensor. | |
| # Now, we'll process the output of the model to construct back the | |
| # final output image from the output tensor, and save the image. | |
| # The post-processing steps have been adopted from PyTorch | |
| # implementation of super-resolution model | |
| # `here <https://github.com/pytorch/examples/blob/master/super_resolution/super_resolve.py>`__. | |
| # | |
| img_out_y = Image.fromarray(np.uint8((img_out_y[0] * 255.0).clip(0, 255)[0]), mode='L') | |
| # get the output image follow post-processing step from PyTorch implementation | |
| final_img = Image.merge( | |
| "YCbCr", [ | |
| img_out_y, | |
| img_cb.resize(img_out_y.size, Image.BICUBIC), | |
| img_cr.resize(img_out_y.size, Image.BICUBIC), | |
| ]).convert("RGB") | |
| # Save the image, we will compare this with the output image from mobile device | |
| final_img.save("./_static/img/cat_superres_with_ort.jpg") | |
| ###################################################################### | |
| # .. figure:: /_static/img/cat_superres_with_ort.jpg | |
| # :alt: output\_cat | |
| # | |
| # | |
| # ONNX Runtime being a cross platform engine, you can run it across | |
| # multiple platforms and on both CPUs and GPUs. | |
| # | |
| # ONNX Runtime can also be deployed to the cloud for model inferencing | |
| # using Azure Machine Learning Services. More information `here <https://docs.microsoft.com/en-us/azure/machine-learning/service/concept-onnx>`__. | |
| # | |
| # More information about ONNX Runtime's performance `here <https://github.com/microsoft/onnxruntime#high-performance>`__. | |
| # | |
| # | |
| # For more information about ONNX Runtime `here <https://github.com/microsoft/onnxruntime>`__. | |
| # | |