# Copyright © 2020 Arm Ltd. All rights reserved. # SPDX-License-Identifier: MIT import os import pytest import pyarmnn as ann import numpy as np def test_TfLiteParserOptions_default_values(): parserOptions = ann.TfLiteParserOptions() assert parserOptions.m_InferAndValidate == False assert parserOptions.m_StandInLayerForUnsupported == False @pytest.fixture() def parser(shared_data_folder): """ Parse and setup the test network to be used for the tests below """ parser = ann.ITfLiteParser() parser.CreateNetworkFromBinaryFile(os.path.join(shared_data_folder, 'mock_model.tflite')) yield parser def test_tflite_parser_swig_destroy(): assert ann.ITfLiteParser.__swig_destroy__, "There is a swig python destructor defined" assert ann.ITfLiteParser.__swig_destroy__.__name__ == "delete_ITfLiteParser" def test_check_tflite_parser_swig_ownership(parser): # Check to see that SWIG has ownership for parser. This instructs SWIG to take # ownership of the return value. This allows the value to be automatically # garbage-collected when it is no longer in use assert parser.thisown def test_tflite_parser_with_optional_options(): parserOptions = ann.TfLiteParserOptions() parserOptions.m_InferAndValidate = True parser = ann.ITfLiteParser(parserOptions) assert parser.thisown def create_with_opt() : parserOptions = ann.TfLiteParserOptions() parserOptions.m_InferAndValidate = True return ann.ITfLiteParser(parserOptions) def test_tflite_parser_with_optional_options_out_of_scope(shared_data_folder): parser = create_with_opt() network = parser.CreateNetworkFromBinaryFile(os.path.join(shared_data_folder, "mock_model.tflite")) graphs_count = parser.GetSubgraphCount() graph_id = graphs_count - 1 input_names = parser.GetSubgraphInputTensorNames(graph_id) input_binding_info = parser.GetNetworkInputBindingInfo(graph_id, input_names[0]) output_names = parser.GetSubgraphOutputTensorNames(graph_id) preferred_backends = [ann.BackendId('CpuAcc'), ann.BackendId('CpuRef')] options = ann.CreationOptions() runtime = ann.IRuntime(options) opt_network, messages = ann.Optimize(network, preferred_backends, runtime.GetDeviceSpec(), ann.OptimizerOptions()) assert 0 == len(messages) net_id, messages = runtime.LoadNetwork(opt_network) assert "" == messages def test_tflite_get_sub_graph_count(parser): graphs_count = parser.GetSubgraphCount() assert graphs_count == 1 def test_tflite_get_network_input_binding_info(parser): graphs_count = parser.GetSubgraphCount() graph_id = graphs_count - 1 input_names = parser.GetSubgraphInputTensorNames(graph_id) input_binding_info = parser.GetNetworkInputBindingInfo(graph_id, input_names[0]) tensor = input_binding_info[1] assert tensor.GetDataType() == 2 assert tensor.GetNumDimensions() == 4 assert tensor.GetNumElements() == 784 assert tensor.GetQuantizationOffset() == 128 assert tensor.GetQuantizationScale() == 0.007843137718737125 def test_tflite_get_network_output_binding_info(parser): graphs_count = parser.GetSubgraphCount() graph_id = graphs_count - 1 output_names = parser.GetSubgraphOutputTensorNames(graph_id) output_binding_info1 = parser.GetNetworkOutputBindingInfo(graph_id, output_names[0]) # Check the tensor info retrieved from GetNetworkOutputBindingInfo tensor1 = output_binding_info1[1] assert tensor1.GetDataType() == 2 assert tensor1.GetNumDimensions() == 2 assert tensor1.GetNumElements() == 10 assert tensor1.GetQuantizationOffset() == 0 assert tensor1.GetQuantizationScale() == 0.00390625 def test_tflite_get_subgraph_input_tensor_names(parser): graphs_count = parser.GetSubgraphCount() graph_id = graphs_count - 1 input_names = parser.GetSubgraphInputTensorNames(graph_id) assert input_names == ('input_1',) def test_tflite_get_subgraph_output_tensor_names(parser): graphs_count = parser.GetSubgraphCount() graph_id = graphs_count - 1 output_names = parser.GetSubgraphOutputTensorNames(graph_id) assert output_names[0] == 'dense/Softmax' def test_tflite_filenotfound_exception(shared_data_folder): parser = ann.ITfLiteParser() with pytest.raises(RuntimeError) as err: parser.CreateNetworkFromBinaryFile(os.path.join(shared_data_folder, 'some_unknown_network.tflite')) # Only check for part of the exception since the exception returns # absolute path which will change on different machines. assert 'Cannot find the file' in str(err.value) def test_tflite_parser_end_to_end(shared_data_folder): parser = ann.ITfLiteParser() network = parser.CreateNetworkFromBinaryFile(os.path.join(shared_data_folder, "mock_model.tflite")) graphs_count = parser.GetSubgraphCount() graph_id = graphs_count - 1 input_names = parser.GetSubgraphInputTensorNames(graph_id) input_binding_info = parser.GetNetworkInputBindingInfo(graph_id, input_names[0]) output_names = parser.GetSubgraphOutputTensorNames(graph_id) preferred_backends = [ann.BackendId('CpuAcc'), ann.BackendId('CpuRef')] options = ann.CreationOptions() runtime = ann.IRuntime(options) opt_network, messages = ann.Optimize(network, preferred_backends, runtime.GetDeviceSpec(), ann.OptimizerOptions()) assert 0 == len(messages) net_id, messages = runtime.LoadNetwork(opt_network) assert "" == messages # Load test image data stored in input_lite.npy input_tensor_data = np.load(os.path.join(shared_data_folder, 'tflite_parser/input_lite.npy')) input_tensors = ann.make_input_tensors([input_binding_info], [input_tensor_data]) output_tensors = [] for index, output_name in enumerate(output_names): out_bind_info = parser.GetNetworkOutputBindingInfo(graph_id, output_name) out_tensor_info = out_bind_info[1] out_tensor_id = out_bind_info[0] output_tensors.append((out_tensor_id, ann.Tensor(out_tensor_info))) runtime.EnqueueWorkload(net_id, input_tensors, output_tensors) output_vectors = [] for index, out_tensor in enumerate(output_tensors): output_vectors.append(out_tensor[1].get_memory_area()) # Load golden output file for result comparison. expected_outputs = np.load(os.path.join(shared_data_folder, 'tflite_parser/golden_output_lite.npy')) # Check that output matches golden output assert (expected_outputs == output_vectors[0]).all()