Files
paddlepaddle--paddle/test/auto_parallel/semi_auto_parallel_for_bitwise.py
2026-07-13 12:40:42 +08:00

163 lines
5.0 KiB
Python

# Copyright (c) 2023 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.
import os
import numpy as np
import paddle
import paddle.distributed as dist
class TestBitwiseApiForSemiAutoParallel:
def __init__(self):
self._dtype = os.getenv("dtype")
self._backend = os.getenv("backend")
self._seed = eval(os.getenv("seed"))
self._mesh = dist.ProcessMesh([0, 1], dim_names=["x"])
self._check_grad = False
self._rtol = 1e-6
self._atol = 0.0
paddle.seed(self._seed)
np.random.seed(self._seed)
def check_tensor_eq(self, a, b):
np1 = a.numpy()
np2 = b.numpy()
np.testing.assert_allclose(
np1, np2, rtol=self._rtol, atol=self._atol, verbose=True
)
def test_unary_body(self, x_shape, out_shape, x_placements, unary_func):
x = paddle.randint(0, 100, x_shape, self._dtype)
x.stop_gradient = False
dist_x = dist.shard_tensor(x, self._mesh, x_placements)
dist_x.stop_gradient = False
dist_out = unary_func(dist_x)
out = unary_func(x)
self.check_tensor_eq(out, dist_out)
if self._check_grad:
dist_out.backward()
out.backward()
self.check_tensor_eq(x.grad, dist_x.grad)
def test_binary_body(
self,
x_shape,
y_shape,
out_shape,
x_placements,
y_placements,
binary_func,
):
x = paddle.randint(0, 100, x_shape, self._dtype)
y = paddle.randint(0, 100, y_shape, self._dtype)
x.stop_gradient = False
y.stop_gradient = False
dist_x = dist.shard_tensor(x, self._mesh, x_placements)
dist_y = dist.shard_tensor(y, self._mesh, y_placements)
dist_x.stop_gradient = False
dist_y.stop_gradient = False
dist_out = binary_func(dist_x, dist_y)
out = binary_func(x, y)
self.check_tensor_eq(out, dist_out)
if self._check_grad:
dist_out.backward()
out.backward()
self.check_tensor_eq(x.grad, dist_x.grad)
self.check_tensor_eq(y.grad, dist_y.grad)
def test_bitwise_and_x_shard(self):
self.test_binary_body(
x_shape=[16, 32],
y_shape=[16, 32],
out_shape=[16, 32],
x_placements=[dist.Shard(0)],
y_placements=[dist.Replicate()],
binary_func=paddle.bitwise_and,
)
def test_bitwise_and_x_shard_broadcast(self):
self.test_binary_body(
x_shape=[16, 32],
y_shape=[2, 16, 32],
out_shape=[2, 16, 32],
x_placements=[dist.Shard(0)],
y_placements=[dist.Replicate()],
binary_func=paddle.bitwise_and,
)
def test_bitwise_and_x_y_shard(self):
if self._backend == "cpu":
return
self.test_binary_body(
x_shape=[16, 32],
y_shape=[16, 32],
out_shape=[16, 32],
x_placements=[dist.Shard(0)],
y_placements=[dist.Shard(1)],
binary_func=paddle.bitwise_and,
)
def test_bitwise_and_x_y_shard_broadcast(self):
self.test_binary_body(
x_shape=[4, 16, 32],
y_shape=[16, 32],
out_shape=[4, 16, 32],
x_placements=[dist.Shard(0)],
y_placements=[dist.Replicate()],
binary_func=paddle.bitwise_and,
)
def test_bitwise_not_x_shard(self):
self.test_unary_body(
x_shape=[16, 32],
out_shape=[16, 32],
x_placements=[dist.Shard(0)],
unary_func=paddle.bitwise_not,
)
def test_bitwise_not_x_shard_broadcast(self):
self.test_binary_body(
x_shape=[16, 32],
y_shape=[2, 16, 32],
out_shape=[2, 16, 32],
x_placements=[dist.Shard(0)],
y_placements=[dist.Replicate()],
binary_func=paddle.bitwise_not,
)
def run_test_case(self):
if self._backend == "cpu":
paddle.set_device("cpu")
elif self._backend == "gpu":
paddle.set_device("gpu:" + str(dist.get_rank()))
else:
raise ValueError("Only support cpu or gpu backend.")
self.test_bitwise_and_x_shard()
self.test_bitwise_and_x_shard_broadcast()
self.test_bitwise_and_x_y_shard()
self.test_bitwise_and_x_y_shard_broadcast()
self.test_bitwise_not_x_shard()
if __name__ == '__main__':
TestBitwiseApiForSemiAutoParallel().run_test_case()