201 lines
7.2 KiB
Python
201 lines
7.2 KiB
Python
# Copyright (c) 2022 PaddlePaddle Authors. All Rights Reserved.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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from __future__ import annotations
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import unittest
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from functools import partial
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import numpy as np
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from program_config import ProgramConfig, TensorConfig
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from trt_layer_auto_scan_test import TrtLayerAutoScanTest
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import paddle.inference as paddle_infer
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class TrtConvertEqualOneInputCornerCase(TrtLayerAutoScanTest):
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def is_program_valid(self, program_config: ProgramConfig) -> bool:
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attrs = [
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program_config.ops[i].attrs for i in range(len(program_config.ops))
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]
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if attrs[0]['axis'] == 0:
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return False
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ver = paddle_infer.get_trt_compile_version()
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if ver[0] * 1000 + ver[1] * 100 + ver[2] * 10 < 8415:
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return False
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return True
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def sample_program_configs(self):
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def generate_input(shape):
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return np.random.random(shape).astype(np.float32)
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for op_type in ["equal", "not_equal"]:
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for shape in [[], [1, 1], [1, 1, 32], [1, 1, 16, 32]]:
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for axis in [-1 if len(shape) == 1 or len(shape) == 0 else 1]:
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self.dims = len(shape)
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dics = [{"axis": axis}, {"in_dtype": 0, "out_dtype": 5}]
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ops_config = [
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{
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"op_type": op_type,
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"op_inputs": {
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"X": ["input_data1"],
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"Y": ["input_data2"],
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},
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"op_outputs": {"Out": ["compare_output_data"]},
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"op_attrs": dics[0],
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"outputs_dtype": {"compare_output_data": np.bool_},
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},
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{
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"op_type": "cast",
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"op_inputs": {"X": ["compare_output_data"]},
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"op_outputs": {"Out": ["output_data"]},
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"op_attrs": dics[1],
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"outputs_dtype": {"output_data": np.float32},
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},
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]
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ops = self.generate_op_config(ops_config)
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program_config = ProgramConfig(
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ops=ops,
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weights={},
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inputs={
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"input_data1": TensorConfig(
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data_gen=partial(generate_input, shape)
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),
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"input_data2": TensorConfig(
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data_gen=partial(generate_input, shape)
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),
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},
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outputs=["output_data"],
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)
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yield program_config
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def generate_dynamic_shape(self, attrs):
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# The input.dims[1] must be equal to the weight's length.
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if self.dims == 0:
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self.dynamic_shape.min_input_shape = {
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"input_data1": [],
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"input_data2": [],
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}
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self.dynamic_shape.max_input_shape = {
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"input_data1": [],
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"input_data2": [],
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}
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self.dynamic_shape.opt_input_shape = {
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"input_data1": [],
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"input_data2": [],
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}
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if self.dims == 2:
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self.dynamic_shape.min_input_shape = {
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"input_data1": [1, 1],
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"input_data2": [1, 1],
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}
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self.dynamic_shape.max_input_shape = {
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"input_data1": [4, 1],
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"input_data2": [4, 1],
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}
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self.dynamic_shape.opt_input_shape = {
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"input_data1": [2, 1],
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"input_data2": [2, 1],
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}
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elif self.dims == 3:
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self.dynamic_shape.min_input_shape = {
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"input_data1": [1, 1, 4],
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"input_data2": [1, 1, 4],
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}
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self.dynamic_shape.max_input_shape = {
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"input_data1": [4, 1, 32],
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"input_data2": [4, 1, 32],
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}
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self.dynamic_shape.opt_input_shape = {
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"input_data1": [2, 1, 16],
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"input_data2": [2, 1, 16],
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}
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elif self.dims == 4:
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self.dynamic_shape.min_input_shape = {
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"input_data1": [1, 1, 4, 4],
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"input_data2": [1, 1, 4, 4],
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}
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self.dynamic_shape.max_input_shape = {
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"input_data1": [4, 1, 64, 32],
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"input_data2": [4, 1, 64, 32],
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}
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self.dynamic_shape.opt_input_shape = {
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"input_data1": [2, 1, 32, 16],
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"input_data2": [2, 1, 32, 16],
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}
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return self.dynamic_shape
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def sample_predictor_configs(
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self, program_config, run_pir=False
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) -> tuple[paddle_infer.Config, list[int], float]:
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def clear_dynamic_shape():
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self.dynamic_shape.max_input_shape = {}
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self.dynamic_shape.min_input_shape = {}
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self.dynamic_shape.opt_input_shape = {}
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def generate_trt_nodes_num(attrs, dynamic_shape):
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if not dynamic_shape:
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return 0, 5
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if self.dims == 1:
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return 0, 3
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return 1, 3
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attrs = [
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program_config.ops[i].attrs for i in range(len(program_config.ops))
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]
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# for static_shape
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clear_dynamic_shape()
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if not run_pir:
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self.trt_param.precision = paddle_infer.PrecisionType.Float32
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program_config.set_input_type(np.float32)
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yield (
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self.create_inference_config(),
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generate_trt_nodes_num(attrs, False),
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1e-5,
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)
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self.trt_param.precision = paddle_infer.PrecisionType.Half
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program_config.set_input_type(np.float16)
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yield (
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self.create_inference_config(),
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generate_trt_nodes_num(attrs, False),
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1e-3,
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)
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# for dynamic_shape
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self.generate_dynamic_shape(attrs)
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self.trt_param.precision = paddle_infer.PrecisionType.Float32
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program_config.set_input_type(np.float32)
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yield (
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self.create_inference_config(),
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generate_trt_nodes_num(attrs, True),
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1e-5,
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)
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self.trt_param.precision = paddle_infer.PrecisionType.Half
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program_config.set_input_type(np.float16)
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yield (
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self.create_inference_config(),
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generate_trt_nodes_num(attrs, True),
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1e-3,
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)
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def test(self):
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self.trt_param.workspace_size = 1 << 20
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self.run_test(run_pir=True)
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if __name__ == "__main__":
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unittest.main()
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