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DISCONTINUATION OF PROJECT

This project will no longer be maintained by Intel. This project has been identified as having known security escapes. Intel has ceased development and contributions including, but not limited to, maintenance, bug fixes, new releases, or updates, to this project. Intel no longer accepts patches to this project.

ngraph-onnx Build Status

nGraph Backend for ONNX.

This repository contains tools to run ONNX models using the Intel nGraph library as a backend.

Installation

Follow our build instructions to install nGraph-ONNX from sources.

Usage example

Importing an ONNX model

You can download models from the ONNX model zoo. For example ResNet-50:

$ wget https://s3.amazonaws.com/download.onnx/models/opset_8/resnet50.tar.gz
$ tar -xzvf resnet50.tar.gz

Use the following Python commands to convert the downloaded model to an nGraph model:

# Import ONNX and load an ONNX file from disk
>>> import onnx
>>> onnx_protobuf = onnx.load('resnet50/model.onnx')

# Convert ONNX model to an ngraph model
>>> from ngraph_onnx.onnx_importer.importer import import_onnx_model
>>> ng_function = import_onnx_model(onnx_protobuf)

# The importer returns a list of ngraph models for every ONNX graph output:
>>> print(ng_function)
<Function: 'resnet50' ([1, 1000])>

This creates an nGraph Function object, which can be used to execute a computation on a chosen backend.

Running a computation

After importing an ONNX model, you will have an nGraph Function object. Now you can create an nGraph Runtime backend and use it to compile your Function to a backend-specific Computation object. Finally, you can execute your model by calling the created Computation object with input data.

# Using an ngraph runtime (CPU backend) create a callable computation object
>>> import ngraph as ng
>>> runtime = ng.runtime(backend_name='CPU')
>>> resnet_on_cpu = runtime.computation(ng_function)

# Load an image (or create a mock as in this example)
>>> import numpy as np
>>> picture = np.ones([1, 3, 224, 224], dtype=np.float32)

# Run computation on the picture:
>>> resnet_on_cpu(picture)
[array([[2.16105007e-04, 5.58412226e-04, 9.70510227e-05, 5.76671446e-05,
         7.45318757e-05, 4.80892748e-04, 5.67404088e-04, 9.48728994e-05,
         ...