* Updated copyright headers
* Revert "Fixed linker warnings in docs snippets on Windows (#15119)"
This reverts commit 372699ec49.
197 lines
7.0 KiB
Python
197 lines
7.0 KiB
Python
# Copyright (C) 2018-2023 Intel Corporation
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# SPDX-License-Identifier: Apache-2.0
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import numpy as np
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import pytest
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from common.layer_test_class import check_ir_version
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from common.onnx_layer_test_class import OnnxRuntimeLayerTest
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from unit_tests.utils.graph import build_graph
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class TestLog(OnnxRuntimeLayerTest):
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def _prepare_input(self, inputs_dict):
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for input in inputs_dict.keys():
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inputs_dict[input] = np.random.rand(*(inputs_dict[input])).astype(
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np.float32) * 255 + 0.5
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return inputs_dict
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def create_net(self, shape, ir_version):
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"""
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ONNX net IR net
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Input->Log->Output => Input->Log
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"""
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#
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# Create ONNX model
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#
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import onnx
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from onnx import helper
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from onnx import TensorProto
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input = helper.make_tensor_value_info('input', TensorProto.FLOAT, shape)
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output = helper.make_tensor_value_info('output', TensorProto.FLOAT, shape)
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node_def = onnx.helper.make_node(
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'Log',
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inputs=['input'],
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outputs=['output']
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)
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# Create the graph (GraphProto)
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graph_def = helper.make_graph(
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[node_def],
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'test_model',
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[input],
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[output],
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)
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# Create the model (ModelProto)
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onnx_net = helper.make_model(graph_def, producer_name='test_model')
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#
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# Create reference IR net
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#
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ref_net = None
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if check_ir_version(10, None, ir_version):
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nodes_attributes = {
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'input': {'kind': 'op', 'type': 'Parameter'},
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'input_data': {'shape': shape, 'kind': 'data'},
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'node': {'kind': 'op', 'type': 'Log'},
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'node_data': {'shape': shape, 'kind': 'data'},
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'result': {'kind': 'op', 'type': 'Result'}
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}
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ref_net = build_graph(nodes_attributes, [('input', 'input_data'),
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('input_data', 'node'),
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('node', 'node_data'),
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('node_data', 'result')])
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return onnx_net, ref_net
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def create_net_const(self, shape, precision, ir_version):
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"""
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ONNX net IR net
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Input->Concat(+log const)->Output => Input->Concat(+const)
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"""
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#
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# Create ONNX model
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#
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import onnx
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from onnx import helper
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from onnx import TensorProto
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concat_axis = 0
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output_shape = shape.copy()
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output_shape[concat_axis] *= 2
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input = helper.make_tensor_value_info('input', TensorProto.FLOAT, shape)
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output = helper.make_tensor_value_info('output', TensorProto.FLOAT, output_shape)
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constant = np.random.rand(*shape).astype(float) * 255 + 0.5
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node_const_def = onnx.helper.make_node(
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'Constant',
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inputs=[],
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outputs=['const'],
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value=helper.make_tensor(
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name='const_tensor',
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data_type=TensorProto.FLOAT,
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dims=constant.shape,
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vals=constant.flatten(),
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),
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)
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node_def = onnx.helper.make_node(
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'Log',
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inputs=['const'],
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outputs=['log']
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)
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node_concat_def = onnx.helper.make_node(
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'Concat',
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inputs=['input', 'log'],
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outputs=['output'],
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axis=concat_axis
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)
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# Create the graph (GraphProto)
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graph_def = helper.make_graph(
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[node_const_def, node_def, node_concat_def],
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'test_model',
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[input],
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[output],
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)
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# Create the model (ModelProto)
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onnx_net = helper.make_model(graph_def, producer_name='test_model')
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#
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# Create reference IR net
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#
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constant = np.log(constant)
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if precision == 'FP16':
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constant = constant.astype(np.float16)
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ref_net = None
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if check_ir_version(10, None, ir_version):
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nodes_attributes = {
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'input': {'kind': 'op', 'type': 'Parameter'},
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'input_data': {'shape': shape, 'kind': 'data'},
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'input_const_data': {'kind': 'data', 'value': constant.flatten()},
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'const': {'kind': 'op', 'type': 'Const'},
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'const_data': {'shape': shape, 'kind': 'data'},
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'concat': {'kind': 'op', 'type': 'Concat', 'axis': concat_axis},
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'concat_data': {'shape': output_shape, 'kind': 'data'},
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'result': {'kind': 'op', 'type': 'Result'}
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}
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ref_net = build_graph(nodes_attributes, [('input', 'input_data'),
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('input_const_data', 'const'),
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('const', 'const_data'),
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('input_data', 'concat'),
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('const_data', 'concat'),
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('concat', 'concat_data'),
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('concat_data', 'result')])
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return onnx_net, ref_net
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test_data_precommit = [dict(shape=[1, 2]),
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dict(shape=[2, 3, 4, 5, 6])]
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test_data = [dict(shape=[10, 12]),
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dict(shape=[8, 10, 12]),
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dict(shape=[6, 8, 10, 12]),
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dict(shape=[4, 6, 8, 10, 12])]
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@pytest.mark.parametrize("params", test_data_precommit)
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@pytest.mark.precommit
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def test_log_precommit(self, params, ie_device, precision, ir_version, temp_dir, use_old_api):
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self._test(*self.create_net(**params, ir_version=ir_version), ie_device, precision,
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ir_version,
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temp_dir=temp_dir, use_old_api=use_old_api)
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@pytest.mark.parametrize("params", test_data)
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@pytest.mark.nightly
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def test_log(self, params, ie_device, precision, ir_version, temp_dir, use_old_api):
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self._test(*self.create_net(**params, ir_version=ir_version), ie_device, precision,
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ir_version,
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temp_dir=temp_dir, use_old_api=use_old_api)
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@pytest.mark.parametrize("params", test_data_precommit)
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@pytest.mark.nightly
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def test_log_const_precommit(self, params, ie_device, precision, ir_version, temp_dir, use_old_api):
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self._test(*self.create_net_const(**params, precision=precision, ir_version=ir_version),
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ie_device, precision, ir_version, temp_dir=temp_dir, use_old_api=use_old_api)
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@pytest.mark.parametrize("params", test_data)
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@pytest.mark.nightly
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def test_log_const(self, params, ie_device, precision, ir_version, temp_dir, use_old_api):
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self._test(*self.create_net_const(**params, precision=precision, ir_version=ir_version),
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ie_device, precision, ir_version, temp_dir=temp_dir, use_old_api=use_old_api)
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