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distributed_multi_learner_test.py
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distributed_multi_learner_test.py
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"""
This test extends the bmuf_metrics_aggregation_test and tests multiple learners in the distributed training.
"""
import pytest
import cntk
import numpy as np
import sys, os
import argparse
import re
import platform
sys.path.append(os.path.dirname(__file__))
cntk.cntk_py.set_fixed_random_seed(1)
from distributed_learner_test import mpiexec_execute
from bmuf_metrics_aggregation_test import get_minibatch
feat_dim = 5
label_dim = 3
cell_dim = 5
seq_len = 20
num_batches = 101
progress_freq =10
class SingleDataParallelTrainer():
def __init__(self, frame_mode=False):
self.create_model(frame_mode)
self.create_trainer()
def create_model(self, frame_mode=False):
if frame_mode:
self.feat = cntk.input_variable(shape=(feat_dim,))
self.label = cntk.input_variable((label_dim,))
net = cntk.layers.Sequential([cntk.layers.Dense(cell_dim), cntk.layers.Dense(label_dim)])
self.output = net(self.feat)
else:
#sequence mode
self.feat = cntk.sequence.input_variable(shape=(feat_dim,))
self.label = cntk.sequence.input_variable((label_dim,))
net = cntk.layers.Sequential([cntk.layers.Recurrence(cntk.layers.LSTM(shape=label_dim, cell_shape=(cell_dim,)))])
self.output = net(self.feat)
self.ce = cntk.cross_entropy_with_softmax(self.output, self.label)
self.err = cntk.classification_error(self.output, self.label)
def create_trainer(self):
try:
lr_per_sample = cntk.learning_parameter_schedule_per_sample(0.007)
learner = cntk.data_parallel_distributed_learner(cntk.sgd(self.output.parameters, lr_per_sample))
comm_rank = cntk.distributed.Communicator.rank()
self.trainer = cntk.Trainer(self.output, (self.ce, self.err), [learner], [cntk.logging.ProgressPrinter(freq=progress_freq, tag="Training", rank=comm_rank)])
except RuntimeError:
self.trainer = None
return
class TwoDataParallelTrainer(SingleDataParallelTrainer):
def __init__(self, frame_mode=False):
SingleDataParallelTrainer.__init__(self, frame_mode)
def create_trainer(self):
try:
lr_per_sample = cntk.learning_parameter_schedule_per_sample(0.007)
p = self.output.parameters
# Three of four parameters are learned by first data_parallel_distributed_learner.
learner1 = cntk.data_parallel_distributed_learner(cntk.sgd([p[0],p[1],p[2]], lr_per_sample))
# New API to mark which learner is to use for metric aggregaion.
learner1.set_as_metric_aggregator()
# The last parameter is learned by another data_parallel_distributed_learner.
learner2 = cntk.data_parallel_distributed_learner(cntk.sgd([p[3]], lr_per_sample))
comm_rank = cntk.distributed.Communicator.rank()
self.trainer = cntk.Trainer(self.output, (self.ce, self.err), [learner1, learner2], [cntk.logging.ProgressPrinter(freq=progress_freq, tag="Training", rank=comm_rank)])
except RuntimeError:
self.trainer = None
return
class MultiLearnerTrainer(SingleDataParallelTrainer):
def __init__(self, frame_mode=False):
SingleDataParallelTrainer.__init__(self, frame_mode)
def create_trainer(self):
try:
p = self.output.parameters
# Three of four parameters are learned by block_momentum_distributed_learner.
bmd_learner = cntk.block_momentum_distributed_learner(cntk.momentum_sgd([p[0],p[1],p[2]], cntk.learning_parameter_schedule(0.0001), cntk.momentum_as_time_constant_schedule(1000)),
block_size=1000, block_learning_rate=0.01, block_momentum_as_time_constant=1000)
# New API to mark which learner is to use for metric aggregaion.
bmd_learner.set_as_metric_aggregator()
# The last parameter is learned by the data_parallel_distributed_learner.
momentum_schedule = cntk.momentum_schedule_per_sample(0.9990913221888589)
lr_per_sample = cntk.learning_parameter_schedule_per_sample(0.007)
dpd_learner = cntk.data_parallel_distributed_learner(cntk.momentum_sgd([p[3]], lr_per_sample, momentum_schedule, True))
comm_rank = cntk.distributed.Communicator.rank()
self.trainer = cntk.Trainer(self.output, (self.ce, self.err), [bmd_learner, dpd_learner], [cntk.logging.ProgressPrinter(freq=progress_freq, tag="Training", rank=comm_rank)])
except RuntimeError:
self.trainer = None
return
def mpi_worker_multi_learner(trainer, working_dir, checkpoint_dir, mb_source):
comm_rank = cntk.distributed.Communicator.rank()
np.random.seed(comm_rank)
num_paritions = cntk.Communicator.num_workers();
partition_index = cntk.Communicator.rank();
checkpoint_performed = False
for i, data in enumerate(get_minibatch(trainer, working_dir, mb_source, num_paritions, partition_index)):
trainer.trainer.train_minibatch(data)
if i % 50 == 0:
trainer.trainer.summarize_training_progress()
if not checkpoint_performed and not checkpoint_dir == "":
trainer.trainer.save_checkpoint(checkpoint_dir)
trainer.trainer.restore_from_checkpoint(checkpoint_dir)
checkpoint_performed = True
def get_loss_perepoch_perworker(log_line, num_workers):
# [0]Finished Epoch[1]: [Training] loss = 1.663636 * 10, metric = 52.40% * 10 0.890s ( 11.2 samples/s);
regex_pattern = r"\[(?P<worker_rank>\d)\].*? Epoch\[(?P<epoch>\d+)\].*? loss = (?P<loss>\d+\.\d+) \* (?P<samples>\d+).*? metric = (?P<metric>\d+\.\d+)"
loss_perepoch_perworker = {i:{} for i in range(num_workers)}
for match in re.finditer(regex_pattern, log_line):
rank = int(match.groupdict()["worker_rank"])
epoch = int(match.groupdict()["epoch"])
loss = match.groupdict()["loss"]
metric = match.groupdict()["metric"]
samples = int(match.groupdict()["samples"])
loss_perepoch_perworker[rank].update({epoch:(loss, metric, samples)})
return loss_perepoch_perworker
MB_SOURCES = ["ctf_frame"]
@pytest.mark.parametrize("mb_source", MB_SOURCES)
def test_single_data_parallel_learner_vs_two_data_parallel_learners(tmpdir, device_id, mb_source):
if platform.system() == 'Linux':
pytest.skip('test only runs on Windows due to mpiexec -l option')
launch_args = []
launch_args += ["--outputdir", str(tmpdir)]
launch_args += ["--mb_source", mb_source]
launch_args += ["--trainer_type", "single"]
num_workers = 1 # use a single worker.
ret_str = mpiexec_execute(__file__, ['-n', str(num_workers), '-l'], launch_args)
print(ret_str)
loss_perepoch_perworker = get_loss_perepoch_perworker(ret_str, num_workers)
loss_per_worker = loss_perepoch_perworker.values()
single_learner_loss_per_worker_epochsort = []
for epoch_losses in loss_per_worker:
single_learner_loss_per_worker_epochsort.append([epoch_losses[i] for i in sorted(epoch_losses)])
launch_args = []
launch_args += ["--outputdir", str(tmpdir)]
launch_args += ["--mb_source", mb_source]
launch_args += ["--trainer_type", "two"]
num_workers = 2 # now run in distributed workers.
ret_str = mpiexec_execute(__file__, ['-n', str(num_workers), '-l'], launch_args)
print(ret_str)
loss_perepoch_perworker = get_loss_perepoch_perworker(ret_str, num_workers)
loss_per_worker = loss_perepoch_perworker.values()
multi_learner_loss_per_worker_epochsort = []
for epoch_losses in loss_per_worker:
multi_learner_loss_per_worker_epochsort.append([epoch_losses[i] for i in sorted(epoch_losses)])
assert all([single_learner_loss_per_worker_epochsort[0] == i for i in multi_learner_loss_per_worker_epochsort])
MB_SOURCES = ["ctf_frame"]
@pytest.mark.parametrize("mb_source", MB_SOURCES)
def test_multi_learner_bmuf_correct_metrics_averaging(tmpdir, device_id, mb_source):
if platform.system() == 'Linux':
pytest.skip('test only runs on Windows due to mpiexec -l option')
num_workers = 2
# check whether trainer can be initialized or not
bmuf = MultiLearnerTrainer()
if not bmuf.trainer:
pytest.skip('BMUF not available on this build')
launch_args = []
launch_args += ["--outputdir", str(tmpdir)]
launch_args += ["--mb_source", mb_source]
launch_args += ["--trainer_type", "multi"]
ret_str = mpiexec_execute(__file__, ['-n', str(num_workers), '-l'], launch_args)
print(ret_str)
loss_perepoch_perworker = get_loss_perepoch_perworker(ret_str, num_workers)
num_epochs_per_worker = list(map(len,loss_perepoch_perworker.values()))
#assert that data exists
assert len(num_epochs_per_worker) != 0
#assert that number of epochs isn't zero for 1st worker.
assert num_epochs_per_worker[0] != 0
# assert all workers have same number of epochs
assert min(num_epochs_per_worker) == max(num_epochs_per_worker)
# assert all workers have same loss and metric values
loss_per_worker = loss_perepoch_perworker.values()
loss_per_worker_epochsort = []
for epoch_losses in loss_per_worker:
loss_per_worker_epochsort.append([epoch_losses[i] for i in sorted(epoch_losses)])
assert all([loss_per_worker_epochsort[0] == i for i in loss_per_worker_epochsort])
# Do the same test with checkpoint and compare the results.
launch_args += ["--checkpointdir", str(tmpdir.join('checkpoint'))]
ret_str = mpiexec_execute(__file__, ['-n', str(num_workers), '-l'], launch_args)
print(ret_str)
loss_perepoch_perworker = get_loss_perepoch_perworker(ret_str, num_workers)
num_epochs_per_worker = list(map(len,loss_perepoch_perworker.values()))
#assert that data exists
assert len(num_epochs_per_worker) != 0
#assert that number of epochs isn't zero for 1st worker.
assert num_epochs_per_worker[0] != 0
# assert all workers have same number of epochs
assert min(num_epochs_per_worker) == max(num_epochs_per_worker)
# assert all workers have same loss and metric values
loss_per_worker = loss_perepoch_perworker.values()
multi_learner_loss_per_worker_epochsort = []
for epoch_losses in loss_per_worker:
multi_learner_loss_per_worker_epochsort.append([epoch_losses[i] for i in sorted(epoch_losses)])
# Compare no checkpoint loss, matric, and num samples, to checkpoint loss values.
for i in multi_learner_loss_per_worker_epochsort:
for n in range(3):
for m in range(3):
assert np.allclose(float(loss_per_worker_epochsort[0][n][m]), float(i[n][m]))
if __name__ == "__main__":
parser = argparse.ArgumentParser()
parser.add_argument('-outputdir', '--outputdir')
parser.add_argument('-checkpointdir', '--checkpointdir')
parser.add_argument('-mb_source', '--mb_source')
parser.add_argument("-trainer_type","--trainer_type")
args = vars(parser.parse_args())
frame_mode = (args["mb_source"] == "ctf_frame")
if args["trainer_type"] == "multi":
trainer = MultiLearnerTrainer(frame_mode)
if args["checkpointdir"]:
mpi_worker_multi_learner(trainer, args["outputdir"], args["checkpointdir"], args["mb_source"])
else:
mpi_worker_multi_learner(trainer, args["outputdir"], "", args["mb_source"])
elif args["trainer_type"] == "two":
trainer = TwoDataParallelTrainer(frame_mode)
mpi_worker_multi_learner(trainer, args["outputdir"], "", args["mb_source"])
elif args["trainer_type"] == "single":
print("Coming to a single learner")
trainer = SingleDataParallelTrainer(frame_mode)
mpi_worker_multi_learner(trainer, args["outputdir"], "", args["mb_source"])
cntk.distributed.Communicator.finalize()