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

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# Copyright (c) 2024 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 unittest
import paddle
import paddle.distributed as dist
from paddle.base.libpaddle.pir import apply_dist2dense_pass
from paddle.distributed.auto_parallel.static.mix_to_dist_pass import (
apply_mix2dist_pass,
)
BATCH_SIZE = 2
SEQ_LEN = 4
HIDDEN_SIZE = 8
MP_SIZE = 2
class TestBuildFakeProgram(unittest.TestCase):
def test_build_with_shard_tensor(self):
paddle.enable_static()
with paddle.pir_utils.IrGuard():
main_program = paddle.base.Program()
with paddle.base.program_guard(main_program):
mesh = dist.ProcessMesh([0, 1], dim_names=['mp'])
input = paddle.static.data(
name='input',
shape=[BATCH_SIZE, SEQ_LEN, HIDDEN_SIZE],
)
w0 = paddle.create_parameter(
dtype="float32",
shape=[HIDDEN_SIZE, HIDDEN_SIZE],
name="w0",
default_initializer=paddle.nn.initializer.Uniform(),
)
w1 = paddle.create_parameter(
dtype="float32",
shape=[HIDDEN_SIZE, HIDDEN_SIZE],
name="w1",
default_initializer=paddle.nn.initializer.Uniform(),
)
self.assertTrue(input.is_dense_tensor_type())
self.assertTrue(w0.is_dense_tensor_type())
dist_input = dist.shard_tensor(input, mesh, [dist.Replicate()])
dist_w0 = dist.shard_tensor(w0, mesh, [dist.Shard(0)])
dist_w1 = dist.shard_tensor(w1, mesh, [dist.Shard(1)])
self.assertTrue(main_program.num_ops() == 6)
self.assertFalse(input.use_empty())
self.assertFalse(w0.use_empty())
self.assertFalse(w1.use_empty())
self.assertTrue(dist_input.use_empty())
self.assertTrue(dist_w0.use_empty())
self.assertTrue(dist_w1.use_empty())
self.assertTrue(w0.is_dense_tensor_type())
self.assertTrue(w1.is_dense_tensor_type())
self.assertTrue(input.is_dense_tensor_type())
# check dist type
self.assertTrue(dist_input.is_dist_dense_tensor_type())
self.assertTrue(dist_w0.is_dist_dense_tensor_type())
self.assertTrue(dist_w1.is_dist_dense_tensor_type())
# check global shape
self.assertEqual(dist_input.shape, [BATCH_SIZE, SEQ_LEN, HIDDEN_SIZE])
self.assertEqual(dist_w0.shape, [HIDDEN_SIZE, HIDDEN_SIZE])
self.assertEqual(dist_w1.shape, [HIDDEN_SIZE, HIDDEN_SIZE])
# check local shape
self.assertTrue(
dist_input._local_shape == dist_input.shape
) # replicated, local = global
self.assertTrue(
dist_w0._local_shape == [HIDDEN_SIZE // MP_SIZE, HIDDEN_SIZE]
) # sharded, local != global, sharded by mesh size
self.assertTrue(
dist_w1._local_shape == [HIDDEN_SIZE, HIDDEN_SIZE // MP_SIZE]
) # sharded, local != global, sharded by mesh size
# check op dist_attr
self.assertFalse(input.get_defining_op().has_attr("op_dist_attr"))
self.assertFalse(w0.get_defining_op().has_attr("op_dist_attr"))
self.assertFalse(w1.get_defining_op().has_attr("op_dist_attr"))
dist_input_op_dist_attr = dist_input.get_defining_op().dist_attr
# #check attrs
self.assertEqual(dist_input_op_dist_attr.process_mesh, mesh)
self.assertEqual(dist_input_op_dist_attr.num_operands(), 0)
self.assertEqual(dist_input_op_dist_attr.num_results(), 1)
dist_w0_op_dist_attr = dist_w0.get_defining_op().dist_attr
self.assertEqual(dist_w0_op_dist_attr.process_mesh, mesh)
self.assertEqual(dist_w0_op_dist_attr.num_operands(), 0)
self.assertEqual(dist_w0_op_dist_attr.num_results(), 1)
dist_w1_op_dist_attr = dist_w1.get_defining_op().dist_attr
self.assertEqual(dist_w1_op_dist_attr.process_mesh, mesh)
self.assertEqual(dist_w1_op_dist_attr.num_operands(), 0)
self.assertEqual(dist_w1_op_dist_attr.num_results(), 1)
attrs_op_dist_attr = (
dist_input.get_defining_op().attrs().get("op_dist_attr")
)
self.assertEqual(attrs_op_dist_attr.process_mesh, mesh)
# check op result dist_attr
tensor_dist_attr = dist_input_op_dist_attr.result(
0
).as_tensor_dist_attr()
self.assertEqual(tensor_dist_attr.process_mesh, mesh)
self.assertEqual(
tensor_dist_attr.dims_mapping,
[-1, -1, -1],
)
tensor_dist_attr = dist_w0_op_dist_attr.result(0).as_tensor_dist_attr()
self.assertEqual(tensor_dist_attr.process_mesh, mesh)
self.assertEqual(tensor_dist_attr.dims_mapping, [0, -1])
tensor_dist_attr = dist_w1_op_dist_attr.result(0).as_tensor_dist_attr()
self.assertEqual(tensor_dist_attr.process_mesh, mesh)
self.assertEqual(tensor_dist_attr.dims_mapping, [-1, 0])
# check value dist_attr
self.assertEqual(dist_input.dist_attr().process_mesh, mesh)
self.assertEqual(dist_input.dist_attr().dims_mapping, [-1, -1, -1])
self.assertEqual(dist_w0.dist_attr().process_mesh, mesh)
self.assertEqual(dist_w0.dist_attr().dims_mapping, [0, -1])
self.assertEqual(dist_w1.dist_attr().process_mesh, mesh)
self.assertEqual(dist_w1.dist_attr().dims_mapping, [-1, 0])
def test_build_with_apply_mix2dist_pass(self):
paddle.enable_static()
with paddle.pir_utils.IrGuard():
main_program = paddle.base.Program()
with paddle.base.program_guard(main_program):
mesh = dist.ProcessMesh([0, 1], dim_names=['dp'])
input1 = paddle.randint(low=0, high=1000, shape=[8, 4])
output1 = dist.shard_tensor(input1, mesh, [dist.Shard(0)])
input2 = paddle.randn([4, 8])
output2 = dist.shard_tensor(input2, mesh, [dist.Shard(1)])
self.assertTrue(input1.is_dense_tensor_type())
self.assertTrue(input2.is_dense_tensor_type())
self.assertTrue(main_program.num_ops() == 6)
self.assertFalse(input1.use_empty())
self.assertFalse(input2.use_empty())
self.assertTrue(output1.use_empty())
self.assertTrue(output2.use_empty())
self.assertFalse(input1.get_defining_op().has_attr("op_dist_attr"))
self.assertFalse(input2.get_defining_op().has_attr("op_dist_attr"))
# check dist type
self.assertTrue(output1.is_dist_dense_tensor_type())
self.assertTrue(output2.is_dist_dense_tensor_type())
# run apply_mix2dist_pass
apply_mix2dist_pass(main_program)
# after apply_mix2dist_pass, the program changed
self.assertTrue(main_program.num_ops() == 4)
self.assertTrue(input1.is_dist_dense_tensor_type())
self.assertTrue(input2.is_dist_dense_tensor_type())
self.assertTrue(input1.get_defining_op().has_attr("op_dist_attr"))
self.assertTrue(input2.get_defining_op().has_attr("op_dist_attr"))
# check op result dist_attr
input1_op_dist_attr = input1.get_defining_op().dist_attr
tensor_dist_attr = input1_op_dist_attr.result(0).as_tensor_dist_attr()
self.assertEqual(tensor_dist_attr.process_mesh, mesh)
self.assertEqual(tensor_dist_attr.dims_mapping, [0, -1])
input2_op_dist_attr = input2.get_defining_op().dist_attr
tensor_dist_attr = input2_op_dist_attr.result(0).as_tensor_dist_attr()
self.assertEqual(tensor_dist_attr.process_mesh, mesh)
self.assertEqual(tensor_dist_attr.dims_mapping, [-1, 0])
# check value dist_attr
self.assertEqual(input1.dist_attr().process_mesh, mesh)
self.assertEqual(input1.dist_attr().dims_mapping, [0, -1])
self.assertEqual(input2.dist_attr().process_mesh, mesh)
self.assertEqual(input2.dist_attr().dims_mapping, [-1, 0])
# check full_int_array op result dist_attr
input1_shape = input1.get_defining_op().operand_source(0)
input1_shape_op_dist_attr = input1_shape.get_defining_op().dist_attr
tensor_dist_attr = input1_shape_op_dist_attr.result(
0
).as_tensor_dist_attr()
self.assertEqual(tensor_dist_attr.process_mesh, mesh)
self.assertEqual(tensor_dist_attr.dims_mapping, [-1])
input2_shape = input2.get_defining_op().operand_source(0)
input2_shape_op_dist_attr = input2_shape.get_defining_op().dist_attr
tensor_dist_attr = input2_shape_op_dist_attr.result(
0
).as_tensor_dist_attr()
self.assertEqual(tensor_dist_attr.process_mesh, mesh)
self.assertEqual(tensor_dist_attr.dims_mapping, [-1])
# check shape value dist_attr
self.assertEqual(input1_shape.dist_attr().process_mesh, mesh)
self.assertEqual(input1_shape.dist_attr().dims_mapping, [-1])
self.assertEqual(input2_shape.dist_attr().process_mesh, mesh)
self.assertEqual(input2_shape.dist_attr().dims_mapping, [-1])
def test_build_with_apply_dist2dense_pass(self):
paddle.enable_static()
with paddle.pir_utils.IrGuard():
main_program = paddle.base.Program()
with paddle.base.program_guard(main_program):
mesh = dist.ProcessMesh([0, 1], dim_names=['dp'])
input1 = paddle.randint(low=0, high=1000, shape=[8, 4])
output1 = dist.shard_tensor(input1, mesh, [dist.Shard(0)])
input2 = paddle.randn([4, 8])
output2 = dist.shard_tensor(input2, mesh, [dist.Shard(1)])
self.assertTrue(input1.is_dense_tensor_type())
self.assertTrue(input2.is_dense_tensor_type())
self.assertTrue(main_program.num_ops() == 6)
self.assertFalse(input1.use_empty())
self.assertFalse(input2.use_empty())
self.assertTrue(output1.use_empty())
self.assertTrue(output2.use_empty())
self.assertFalse(input1.get_defining_op().has_attr("op_dist_attr"))
self.assertFalse(input2.get_defining_op().has_attr("op_dist_attr"))
# check dist type
self.assertTrue(output1.is_dist_dense_tensor_type())
self.assertTrue(output2.is_dist_dense_tensor_type())
# run apply_mix2dist_pass and apply_dist2dense_pass
apply_mix2dist_pass(main_program)
apply_dist2dense_pass(main_program)
# after apply_mix2dist_pass, the program changed
# and after apply_dist2dense_pass, the operator in program do not have dist_attr
self.assertTrue(main_program.num_ops() == 4)
self.assertTrue(input1.is_dense_tensor_type())
self.assertTrue(input2.is_dense_tensor_type())
self.assertFalse(input1.get_defining_op().has_attr("op_dist_attr"))
self.assertFalse(input2.get_defining_op().has_attr("op_dist_attr"))
# check shape attribute of full_int_array op
input1_shape = input1.get_defining_op().operand_source(0)
input1_shape_op = input1_shape.get_defining_op()
self.assertFalse(input1_shape_op.has_attr("op_dist_attr"))
input1_shape_op_attr = input1_shape_op.attrs()
self.assertEqual(input1_shape_op_attr['value'], [4, 4])
input2_shape = input2.get_defining_op().operand_source(0)
input2_shape_op = input2_shape.get_defining_op()
self.assertFalse(input2_shape_op.has_attr("op_dist_attr"))
input2_shape_op_attr = input2_shape_op.attrs()
self.assertEqual(input2_shape_op_attr['value'], [4, 4])
# check shape of input1 and input2
self.assertEqual(input1.shape, [4, 4])
self.assertEqual(input2.shape, [4, 4])
if __name__ == "__main__":
unittest.main()