blob: 796dd71e7b06832ae340be2830eb2ca843f57858 [file] [log] [blame]
Richard Burtondc0c6ed2020-04-08 16:39:05 +01001# Copyright © 2020 Arm Ltd. All rights reserved.
2# SPDX-License-Identifier: MIT
3import os
4
5import pytest
6import pyarmnn as ann
7import numpy as np
8
9
10@pytest.fixture()
11def parser(shared_data_folder):
12 """
13 Parse and setup the test network to be used for the tests below
14 """
15
16 # create tf parser
17 parser = ann.ITfParser()
18
19 # path to model
20 path_to_model = os.path.join(shared_data_folder, 'mock_model.pb')
21
22 # tensor shape [1, 28, 28, 1]
23 tensorshape = {'input': ann.TensorShape((1, 28, 28, 1))}
24
25 # requested_outputs
26 requested_outputs = ["output"]
27
28 # parse tf binary & create network
29 parser.CreateNetworkFromBinaryFile(path_to_model, tensorshape, requested_outputs)
30
31 yield parser
32
33
34def test_tf_parser_swig_destroy():
35 assert ann.ITfParser.__swig_destroy__, "There is a swig python destructor defined"
36 assert ann.ITfParser.__swig_destroy__.__name__ == "delete_ITfParser"
37
38
39def test_check_tf_parser_swig_ownership(parser):
40 # Check to see that SWIG has ownership for parser. This instructs SWIG to take
41 # ownership of the return value. This allows the value to be automatically
42 # garbage-collected when it is no longer in use
43 assert parser.thisown
44
45
46def test_tf_parser_get_network_input_binding_info(parser):
47 input_binding_info = parser.GetNetworkInputBindingInfo("input")
48
49 tensor = input_binding_info[1]
50 assert tensor.GetDataType() == 1
51 assert tensor.GetNumDimensions() == 4
52 assert tensor.GetNumElements() == 28*28*1
53 assert tensor.GetQuantizationOffset() == 0
54 assert tensor.GetQuantizationScale() == 0
55
56
57def test_tf_parser_get_network_output_binding_info(parser):
58 output_binding_info = parser.GetNetworkOutputBindingInfo("output")
59
60 tensor = output_binding_info[1]
61 assert tensor.GetDataType() == 1
62 assert tensor.GetNumDimensions() == 2
63 assert tensor.GetNumElements() == 10
64 assert tensor.GetQuantizationOffset() == 0
65 assert tensor.GetQuantizationScale() == 0
66
67
68def test_tf_filenotfound_exception(shared_data_folder):
69 parser = ann.ITfParser()
70
71 # path to model
72 path_to_model = os.path.join(shared_data_folder, 'some_unknown_model.pb')
73
74 # tensor shape [1, 1, 1, 1]
75 tensorshape = {'input': ann.TensorShape((1, 1, 1, 1))}
76
77 # requested_outputs
78 requested_outputs = [""]
79
80 # parse tf binary & create network
81
82 with pytest.raises(RuntimeError) as err:
83 parser.CreateNetworkFromBinaryFile(path_to_model, tensorshape, requested_outputs)
84
85 # Only check for part of the exception since the exception returns
86 # absolute path which will change on different machines.
87 assert 'failed to open' in str(err.value)
88
89
90def test_tf_parser_end_to_end(shared_data_folder):
91 parser = ann.ITfParser = ann.ITfParser()
92
93 tensorshape = {'input': ann.TensorShape((1, 28, 28, 1))}
94 requested_outputs = ["output"]
95
96 network = parser.CreateNetworkFromBinaryFile(os.path.join(shared_data_folder, 'mock_model.pb'),
97 tensorshape, requested_outputs)
98
99 input_binding_info = parser.GetNetworkInputBindingInfo("input")
100
101 # load test image data stored in input_tf.npy
102 input_tensor_data = np.load(os.path.join(shared_data_folder, 'tf_parser/input_tf.npy')).astype(np.float32)
103
104 preferred_backends = [ann.BackendId('CpuAcc'), ann.BackendId('CpuRef')]
105
106 options = ann.CreationOptions()
107 runtime = ann.IRuntime(options)
108
109 opt_network, messages = ann.Optimize(network, preferred_backends, runtime.GetDeviceSpec(), ann.OptimizerOptions())
110
111 assert 0 == len(messages)
112
113 net_id, messages = runtime.LoadNetwork(opt_network)
114
115 assert "" == messages
116
117 input_tensors = ann.make_input_tensors([input_binding_info], [input_tensor_data])
118
119 outputs_binding_info = []
120
121 for output_name in requested_outputs:
122 outputs_binding_info.append(parser.GetNetworkOutputBindingInfo(output_name))
123
124 output_tensors = ann.make_output_tensors(outputs_binding_info)
125
126 runtime.EnqueueWorkload(net_id, input_tensors, output_tensors)
127 output_vectors = ann.workload_tensors_to_ndarray(output_tensors)
128
129 # Load golden output file for result comparison.
130 golden_output = np.load(os.path.join(shared_data_folder, 'tf_parser/golden_output_tf.npy'))
131
132 # Check that output matches golden output to 4 decimal places (there are slight rounding differences after this)
133 np.testing.assert_almost_equal(output_vectors[0], golden_output, decimal=4)