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executable file
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# Copyright (c) 2021 PaddlePaddle Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License"
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from auto_scan_test import OPConvertAutoScanTest, BaseNet
import hypothesis.strategies as st
import numpy as np
import unittest
import paddle
from onnxbase import _test_with_pir
class Net(BaseNet):
"""
simple Net
"""
def forward(self, inputs, weight):
"""
forward
"""
if self.config["tensor_attr"]:
output_size = self.config["output_size"]
else:
output_size = self.config["output_size"]
x = paddle.nn.functional.conv2d_transpose(
inputs,
weight,
stride=self.config["stride"],
padding=self.config["padding"],
dilation=self.config["dilation"],
groups=self.config["groups"],
output_size=output_size,
data_format=self.config["data_format"],
)
return x
class TestConv2dTransposeConvert(OPConvertAutoScanTest):
"""
api: paddle.nn.conv2d_transpose
OPset version: 9
1.OPset version需要根据op_mapper中定义的version来设置。
2.测试中所有OP对应升级到Opset version 15。
"""
def sample_convert_config(self, draw):
input_shape = draw(
st.lists(st.integers(min_value=20, max_value=30), min_size=4, max_size=4)
)
kernel_size = draw(
st.lists(st.integers(min_value=1, max_value=7), min_size=4, max_size=4)
)
data_format = "NCHW"
groups = draw(st.integers(min_value=1, max_value=4))
muti1 = draw(st.integers(min_value=1, max_value=4))
kernel_size[1] = groups * muti1
kernel_size[0] = kernel_size[1]
input_shape[1] = kernel_size[0]
if draw(st.booleans()):
kernel_size[1] = 1
groups = draw(st.integers(min_value=2, max_value=4))
input_shape[1] = groups
kernel_size[0] = groups
strides = draw(
st.lists(st.integers(min_value=1, max_value=5), min_size=1, max_size=2)
)
if len(strides) == 1:
strides = strides[0]
if strides > kernel_size[2]:
strides = kernel_size[2]
if strides > kernel_size[3]:
strides = kernel_size[3]
stride_1 = strides
stride_2 = strides
else:
if strides[0] > kernel_size[2]:
strides[0] = kernel_size[2]
if strides[1] > kernel_size[3]:
strides[1] = kernel_size[3]
stride_1 = strides[0]
stride_2 = strides[1]
# ORT have bug in SAME and Valid
# padding_type = draw(st.sampled_from(["str", "list", "int", "tuple"]))
padding_type = draw(st.sampled_from(["list", "int", "tuple"]))
padding = None
if padding_type == "str":
padding = draw(st.sampled_from(["SAME", "VALID"]))
elif padding_type == "int":
padding = draw(st.integers(min_value=1, max_value=5))
padding_1_1 = padding
padding_1_2 = padding
padding_2_1 = padding
padding_2_2 = padding
elif padding_type == "tuple":
padding1 = np.expand_dims(
np.array(
draw(
st.lists(
st.integers(min_value=1, max_value=5),
min_size=2,
max_size=2,
)
)
),
axis=0,
).tolist()
padding2 = np.expand_dims(
np.array(
draw(
st.lists(
st.integers(min_value=1, max_value=5),
min_size=2,
max_size=2,
)
)
),
axis=0,
).tolist()
if data_format == "NCHW":
padding = [[0, 0]] + [[0, 0]] + padding1 + padding2
else:
padding = [[0, 0]] + padding1 + padding2 + [[0, 0]]
padding_1_1 = padding[2][0]
padding_1_2 = padding[2][1]
padding_2_1 = padding[3][0]
padding_2_2 = padding[3][1]
elif padding_type == "list":
if draw(st.booleans()):
padding = draw(
st.lists(
st.integers(min_value=1, max_value=5), min_size=2, max_size=2
)
)
padding_1_1 = padding[0]
padding_1_2 = padding[0]
padding_2_1 = padding[1]
padding_2_2 = padding[1]
else:
padding = draw(
st.lists(
st.integers(min_value=1, max_value=5), min_size=4, max_size=4
)
)
padding_1_1 = padding[0]
padding_1_2 = padding[1]
padding_2_1 = padding[2]
padding_2_2 = padding[3]
dilations = draw(
st.lists(st.integers(min_value=1, max_value=3), min_size=1, max_size=2)
)
if len(dilations) == 1:
dilations = dilations[0]
dilations_1 = dilations
dilations_2 = dilations
else:
dilations_1 = dilations[0]
dilations_2 = dilations[1]
if padding == "SAME":
dilations = 1
output_size = None
if draw(st.booleans()):
output_size_1 = (
(input_shape[2] - 1) * stride_1
- padding_1_1
- padding_1_2
+ dilations_1 * (kernel_size[2] - 1)
+ 1
)
output_size_2 = (
(input_shape[3] - 1) * stride_2
- padding_2_1
- padding_2_2
+ dilations_2 * (kernel_size[3] - 1)
+ 1
)
if output_size_1 == output_size_2:
output_size = output_size_1
else:
output_size = [output_size_1, output_size_2]
tensor_attr = draw(st.booleans())
config = {
"op_names": ["conv2d_transpose"],
"test_data_shapes": [input_shape, kernel_size],
"test_data_types": [["float32"], ["float32"]],
"opset_version": [7, 9, 15],
"input_spec_shape": [[-1, input_shape[1], -1, -1], kernel_size],
"data_format": data_format,
"stride": strides,
"dilation": dilations,
"padding": padding,
"groups": groups,
"input_shape": input_shape,
"kernel_size": kernel_size,
"delta": 1e-4,
"rtol": 1e-4,
"output_size": output_size,
"tensor_attr": tensor_attr,
}
models = Net(config)
return (config, models)
@_test_with_pir
def test(self):
self.run_and_statis(max_examples=30)
if __name__ == "__main__":
unittest.main()