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paddlepaddle--paddle/test/legacy_test/dist_fleet_ctr.py
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2026-07-13 12:40:42 +08:00

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# Copyright (c) 2018 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.
"""
Distribute CTR model for test fleet api
"""
import os
import shutil
import tempfile
import time
import ctr_dataset_reader
import numpy as np
from test_dist_fleet_base import FleetDistRunnerBase, runtime_main
import paddle
from paddle import base
paddle.enable_static()
# Fix seed for test
paddle.seed(1)
def fake_ctr_reader():
def reader():
for _ in range(1000):
deep = np.random.random_integers(0, 1e5 - 1, size=16).tolist()
wide = np.random.random_integers(0, 1e5 - 1, size=8).tolist()
label = np.random.random_integers(0, 1, size=1).tolist()
yield [deep, wide, label]
return reader
class TestDistCTR2x2(FleetDistRunnerBase):
"""
For test CTR model, using Fleet api
"""
def net(self, args, is_train=True, batch_size=4, lr=0.01):
"""
network definition
Args:
batch_size(int): the size of mini-batch for training
lr(float): learning rate of training
Returns:
avg_cost: DenseTensor of cost.
"""
dnn_input_dim, lr_input_dim = int(1e5), int(1e5)
dnn_data = paddle.static.data(
name="dnn_data",
shape=[-1, 1],
dtype="int64",
)
lr_data = paddle.static.data(
name="lr_data",
shape=[-1, 1],
dtype="int64",
)
label = paddle.static.data(
name="click",
shape=[-1, 1],
dtype="int64",
)
data = [dnn_data, lr_data, label]
if args.reader == "pyreader":
if is_train:
self.reader = base.io.PyReader(
feed_list=data,
capacity=64,
iterable=False,
use_double_buffer=False,
)
else:
self.test_reader = base.io.PyReader(
feed_list=data,
capacity=64,
iterable=False,
use_double_buffer=False,
)
# build dnn model
dnn_layer_dims = [128, 128, 64, 32, 1]
dnn_embedding = paddle.static.nn.embedding(
is_distributed=False,
input=dnn_data,
size=[dnn_input_dim, dnn_layer_dims[0]],
param_attr=base.ParamAttr(
name="deep_embedding",
initializer=paddle.nn.initializer.Constant(value=0.01),
),
is_sparse=True,
padding_idx=0,
)
dnn_pool = paddle.static.nn.sequence_lod.sequence_pool(
input=dnn_embedding.squeeze(-2), pool_type="sum"
)
dnn_out = dnn_pool
for i, dim in enumerate(dnn_layer_dims[1:]):
fc = paddle.static.nn.fc(
x=dnn_out,
size=dim,
activation="relu",
weight_attr=base.ParamAttr(
initializer=paddle.nn.initializer.Constant(value=0.01)
),
name=f'dnn-fc-{i}',
)
dnn_out = fc
# build lr model
lr_embedding = paddle.static.nn.embedding(
is_distributed=False,
input=lr_data,
size=[lr_input_dim, 1],
param_attr=base.ParamAttr(
name="wide_embedding",
initializer=paddle.nn.initializer.Constant(value=0.01),
),
is_sparse=True,
padding_idx=0,
)
lr_pool = paddle.static.nn.sequence_lod.sequence_pool(
input=lr_embedding.squeeze(-2), pool_type="sum"
)
merge_layer = paddle.concat([dnn_out, lr_pool], axis=1)
predict = paddle.static.nn.fc(
x=merge_layer, size=2, activation='softmax'
)
acc = paddle.static.accuracy(input=predict, label=label)
auc_var, batch_auc_var, auc_states = paddle.static.auc(
input=predict, label=label
)
cost = paddle.nn.functional.cross_entropy(
input=predict, label=label, reduction='none', use_softmax=False
)
avg_cost = paddle.mean(x=cost)
self.feeds = data
self.train_file_path = ["fake1", "fake2"]
self.avg_cost = avg_cost
self.predict = predict
return avg_cost
def check_model_right(self, dirname):
dirname = dirname + '/dnn_plugin/'
model_filename = os.path.join(dirname, "__model__")
with open(model_filename, "rb") as f:
program_desc_str = f.read()
program = base.Program.parse_from_string(program_desc_str)
with open(os.path.join(dirname, "__model__.proto"), "w") as wn:
wn.write(str(program))
def do_distributed_testing(self, fleet):
"""
do distributed
"""
exe = self.get_executor()
batch_size = 4
test_reader = paddle.batch(fake_ctr_reader(), batch_size=batch_size)
self.test_reader.decorate_sample_list_generator(test_reader)
pass_start = time.time()
batch_idx = 0
self.test_reader.start()
try:
while True:
batch_idx += 1
loss_val = exe.run(
program=paddle.static.default_main_program(),
fetch_list=[self.avg_cost.name],
)
loss_val = np.mean(loss_val)
message = f"TEST ---> batch_idx: {batch_idx} loss: {loss_val}\n"
fleet.util.print_on_rank(message, 0)
except base.core.EOFException:
self.test_reader.reset()
pass_time = time.time() - pass_start
message = f"Distributed Test Succeed, Using Time {pass_time}\n"
fleet.util.print_on_rank(message, 0)
def do_pyreader_training(self, fleet):
"""
do training using dataset, using fetch handler to catch variable
Args:
fleet(Fleet api): the fleet object of Parameter Server, define distribute training role
"""
exe = self.get_executor()
exe.run(base.default_startup_program())
fleet.init_worker()
batch_size = 4
train_reader = paddle.batch(fake_ctr_reader(), batch_size=batch_size)
self.reader.decorate_sample_list_generator(train_reader)
for epoch_id in range(1):
self.reader.start()
try:
pass_start = time.time()
while True:
loss_val = exe.run(
program=base.default_main_program(),
fetch_list=[self.avg_cost.name],
)
loss_val = np.mean(loss_val)
# TODO(randomly fail)
# reduce_output = fleet.util.all_reduce(
# np.array(loss_val), mode="sum")
# loss_all_trainer = fleet.util.all_gather(float(loss_val))
# loss_val = float(reduce_output) / len(loss_all_trainer)
message = f"TRAIN ---> pass: {epoch_id} loss: {loss_val}\n"
fleet.util.print_on_rank(message, 0)
pass_time = time.time() - pass_start
except base.core.EOFException:
self.reader.reset()
dirname = os.getenv("SAVE_DIRNAME", None)
if dirname:
fleet.save_persistables(exe, dirname=dirname)
model_dir = tempfile.mkdtemp()
fleet.save_inference_model(
exe, model_dir, [feed.name for feed in self.feeds], self.avg_cost
)
if fleet.is_first_worker():
self.check_model_right(model_dir)
shutil.rmtree(model_dir)
def do_dataset_training_queuedataset(self, fleet):
train_file_list = ctr_dataset_reader.prepare_fake_data()
exe = self.get_executor()
exe.run(base.default_startup_program())
fleet.init_worker()
thread_num = 2
batch_size = 128
filelist = train_file_list
# config dataset
dataset = paddle.distributed.QueueDataset()
pipe_command = 'python ctr_dataset_reader.py'
dataset.init(
batch_size=batch_size,
use_var=self.feeds,
pipe_command=pipe_command,
thread_num=thread_num,
)
dataset.set_filelist(filelist)
for epoch_id in range(1):
pass_start = time.time()
dataset.set_filelist(filelist)
exe.train_from_dataset(
program=base.default_main_program(),
dataset=dataset,
fetch_list=[self.avg_cost],
fetch_info=["cost"],
print_period=2,
debug=int(os.getenv("Debug", "0")),
)
pass_time = time.time() - pass_start
if os.getenv("SAVE_MODEL") == "1":
model_dir = tempfile.mkdtemp()
fleet.save_inference_model(
exe,
model_dir,
[feed.name for feed in self.feeds],
self.avg_cost,
)
if fleet.is_first_worker():
self.check_model_right(model_dir)
shutil.rmtree(model_dir)
dirname = os.getenv("SAVE_DIRNAME", None)
if dirname:
fleet.save_persistables(exe, dirname=dirname)
def do_dataset_training(self, fleet):
train_file_list = ctr_dataset_reader.prepare_fake_data()
exe = self.get_executor()
exe.run(base.default_startup_program())
fleet.init_worker()
thread_num = 2
batch_size = 128
filelist = train_file_list
# config dataset
dataset = base.DatasetFactory().create_dataset("InMemoryDataset")
dataset.set_use_var(self.feeds)
dataset.set_batch_size(128)
dataset.set_thread(2)
dataset.set_filelist(filelist)
dataset.set_pipe_command('python ctr_dataset_reader.py')
dataset.load_into_memory()
dataset.global_shuffle(fleet, 12) # TODO: thread configure
shuffle_data_size = dataset.get_shuffle_data_size(fleet)
local_data_size = dataset.get_shuffle_data_size()
data_size_list = fleet.util.all_gather(local_data_size)
print('after global_shuffle data_size_list: ', data_size_list)
print('after global_shuffle data_size: ', shuffle_data_size)
for epoch_id in range(1):
pass_start = time.time()
exe.train_from_dataset(
program=base.default_main_program(),
dataset=dataset,
fetch_list=[self.avg_cost],
fetch_info=["cost"],
print_period=2,
debug=int(os.getenv("Debug", "0")),
)
pass_time = time.time() - pass_start
dataset.release_memory()
if os.getenv("SAVE_MODEL") == "1":
model_dir = tempfile.mkdtemp()
fleet.save_inference_model(
exe,
model_dir,
[feed.name for feed in self.feeds],
self.avg_cost,
)
fleet.load_inference_model(model_dir, mode=0)
if fleet.is_first_worker():
self.check_model_right(model_dir)
shutil.rmtree(model_dir)
dirname = os.getenv("SAVE_DIRNAME", None)
if dirname:
fleet.save_persistables(exe, dirname=dirname)
fleet.load_model(dirname, mode=0)
cache_dirname = os.getenv("SAVE_CACHE_DIRNAME", None)
if cache_dirname:
fleet.save_cache_model(cache_dirname)
dense_param_dirname = os.getenv("SAVE_DENSE_PARAM_DIRNAME", None)
if dense_param_dirname:
fleet.save_dense_params(
exe,
dense_param_dirname,
base.global_scope(),
base.default_main_program(),
)
save_one_table_dirname = os.getenv("SAVE_ONE_TABLE_DIRNAME", None)
if save_one_table_dirname:
fleet.save_one_table(0, save_one_table_dirname, 0)
fleet.load_one_table(0, save_one_table_dirname, 0)
patch_dirname = os.getenv("SAVE_PATCH_DIRNAME", None)
if patch_dirname:
fleet.save_persistables(exe, patch_dirname, None, 5)
fleet.check_save_pre_patch_done()
# add for gpu graph
fleet.save_cache_table(0, 0)
fleet.shrink()
if __name__ == "__main__":
runtime_main(TestDistCTR2x2)