187 lines
6.6 KiB
Python
187 lines
6.6 KiB
Python
# Copyright (c) 2021 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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import os
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import unittest
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import numpy as np
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from utils import check_output, extra_cc_args, extra_nvcc_args, paddle_includes
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import paddle
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import paddle.nn.functional as F
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from paddle import static
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from paddle.utils.cpp_extension import get_build_directory, load
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from paddle.utils.cpp_extension.extension_utils import run_cmd
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# Because Windows don't use docker, the shared lib already exists in the
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# cache dir, it will not be compiled again unless the shared lib is removed.
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file = f'{get_build_directory()}\\custom_linear\\custom_linear.pyd'
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if os.name == 'nt' and os.path.isfile(file):
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cmd = f'del {file}'
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run_cmd(cmd, True)
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custom_ops = load(
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name='custom_linear_jit',
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sources=['custom_linear_op.cc'],
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extra_include_paths=paddle_includes, # add for Coverage CI
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extra_cxx_cflags=extra_cc_args, # test for cc flags
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extra_cuda_cflags=extra_nvcc_args, # test for nvcc flags
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verbose=True,
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)
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def linear_dynamic(func, device, dtype, np_x, np_weight, np_bias):
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paddle.set_device(device)
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x = paddle.to_tensor(np_x, dtype=dtype, stop_gradient=False)
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weight = paddle.to_tensor(np_weight, dtype=dtype, stop_gradient=False)
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bias = paddle.to_tensor(np_bias, dtype=dtype, stop_gradient=False)
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out = func(x, weight, bias)
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out.backward()
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return out.numpy(), x.grad.numpy(), weight.grad.numpy(), bias.grad.numpy()
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def linear_static(func, device, dtype, np_x, np_weight, np_bias):
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paddle.enable_static()
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paddle.set_device(device)
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with (
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static.scope_guard(static.Scope()),
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static.program_guard(static.Program()),
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):
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x = static.data(name="x", shape=[None, np_x.shape[1]], dtype=dtype)
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weight = static.data(name="weight", shape=np_weight.shape, dtype=dtype)
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bias = static.data(name="bias", shape=np_bias.shape, dtype=dtype)
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x.stop_gradient = False
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weight.stop_gradient = False
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bias.stop_gradient = False
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out = func(x, weight, bias)
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mean_out = paddle.mean(out)
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static.append_backward(mean_out)
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exe = static.Executor()
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exe.run(static.default_startup_program())
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if paddle.framework.in_pir_mode():
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ops = static.default_main_program().global_block().ops
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if func.__name__ == "custom_linear":
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fetch_list = [
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out,
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ops[-1].result(0), # x_grad
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ops[-1].result(1), # weight_grad
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ops[-1].result(2),
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] # bias_grad
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else:
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fetch_list = [
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out,
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ops[-1].result(0), # x_grad
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ops[-1].result(1), # weight_grad
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ops[-2].result(1),
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] # bias_grad
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else:
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fetch_list = [
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out.name,
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x.name + "@GRAD",
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weight.name + "@GRAD",
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bias.name + "@GRAD",
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]
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out_v, x_grad_v, weight_grad_v, bias_grad_v = exe.run(
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static.default_main_program(),
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feed={
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"x": np_x.astype(dtype),
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"weight": np_weight.astype(dtype),
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"bias": np_bias.astype(dtype),
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},
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fetch_list=fetch_list,
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)
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paddle.disable_static()
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return out_v, x_grad_v, weight_grad_v, bias_grad_v
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class TestCustomLinearJit(unittest.TestCase):
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def setUp(self):
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self.dtypes = ['float32', 'float64']
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self.devices = ['cpu']
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if paddle.is_compiled_with_cuda():
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self.devices.append('gpu')
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self.np_x = np.random.random((3, 2)).astype("float32")
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self.np_weight = np.full([2, 4], fill_value=0.5, dtype="float32")
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self.np_bias = np.ones([4], dtype="float32")
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def test_static(self):
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for device in self.devices:
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for dtype in self.dtypes:
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(
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custom_out,
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custom_x_grad,
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custom_weight_grad,
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custom_bias_grad,
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) = linear_static(
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custom_ops.custom_linear,
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device,
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dtype,
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self.np_x,
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self.np_weight,
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self.np_bias,
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)
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pd_out, pd_x_grad, pd_weight_grad, pd_bias_grad = linear_static(
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F.linear,
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device,
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dtype,
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self.np_x,
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self.np_weight,
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self.np_bias,
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)
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check_output(custom_out, pd_out, "out")
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check_output(custom_x_grad, pd_x_grad, "x_grad")
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check_output(custom_weight_grad, pd_weight_grad, "weight_grad")
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check_output(custom_bias_grad, pd_bias_grad, "bias_grad")
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def test_dynamic(self):
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for device in self.devices:
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for dtype in self.dtypes:
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(
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custom_out,
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custom_x_grad,
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custom_weight_grad,
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custom_bias_grad,
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) = linear_dynamic(
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custom_ops.custom_linear,
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device,
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dtype,
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self.np_x,
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self.np_weight,
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self.np_bias,
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)
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(
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pd_out,
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pd_x_grad,
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pd_weight_grad,
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pd_bias_grad,
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) = linear_dynamic(
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F.linear,
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device,
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dtype,
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self.np_x,
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self.np_weight,
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self.np_bias,
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)
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check_output(custom_out, pd_out, "custom_out")
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check_output(custom_x_grad, pd_x_grad, "x_grad")
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check_output(custom_weight_grad, pd_weight_grad, "weight_grad")
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check_output(custom_bias_grad, pd_bias_grad, "bias_grad")
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if __name__ == "__main__":
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unittest.main()
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