lightning/tests/test_cpu_models.py

400 lines
11 KiB
Python

import warnings
import pytest
import torch
from pytorch_lightning import Trainer, data_loader
from pytorch_lightning.callbacks import (
EarlyStopping,
)
from pytorch_lightning.testing import (
LightningTestModel,
LightningTestModelBase,
LightningTestMixin,
)
from . import testing_utils
def test_early_stopping_cpu_model():
"""
Test each of the trainer options
:return:
"""
testing_utils.reset_seed()
stopping = EarlyStopping(monitor='val_loss')
trainer_options = dict(
early_stop_callback=stopping,
gradient_clip_val=1.0,
overfit_pct=0.20,
track_grad_norm=2,
print_nan_grads=True,
show_progress_bar=True,
logger=testing_utils.get_test_tube_logger(),
train_percent_check=0.1,
val_percent_check=0.1
)
model, hparams = testing_utils.get_model()
testing_utils.run_gpu_model_test(trainer_options, model, hparams, on_gpu=False)
# test freeze on cpu
model.freeze()
model.unfreeze()
def test_lbfgs_cpu_model():
"""
Test each of the trainer options
:return:
"""
testing_utils.reset_seed()
trainer_options = dict(
max_nb_epochs=1,
print_nan_grads=True,
show_progress_bar=False,
weights_summary='top',
train_percent_check=1.0,
val_percent_check=0.2
)
model, hparams = testing_utils.get_model(use_test_model=True, lbfgs=True)
testing_utils.run_model_test_no_loggers(trainer_options,
model, hparams, on_gpu=False, min_acc=0.30)
testing_utils.clear_save_dir()
def test_default_logger_callbacks_cpu_model():
"""
Test each of the trainer options
:return:
"""
testing_utils.reset_seed()
trainer_options = dict(
max_nb_epochs=1,
gradient_clip_val=1.0,
overfit_pct=0.20,
print_nan_grads=True,
show_progress_bar=False,
train_percent_check=0.01,
val_percent_check=0.01
)
model, hparams = testing_utils.get_model()
testing_utils.run_model_test_no_loggers(trainer_options, model, hparams, on_gpu=False)
# test freeze on cpu
model.freeze()
model.unfreeze()
testing_utils.clear_save_dir()
def test_running_test_after_fitting():
"""Verify test() on fitted model"""
testing_utils.reset_seed()
hparams = testing_utils.get_hparams()
model = LightningTestModel(hparams)
save_dir = testing_utils.init_save_dir()
# logger file to get meta
logger = testing_utils.get_test_tube_logger(False)
# logger file to get weights
checkpoint = testing_utils.init_checkpoint_callback(logger)
trainer_options = dict(
show_progress_bar=False,
max_nb_epochs=1,
train_percent_check=0.4,
val_percent_check=0.2,
test_percent_check=0.2,
checkpoint_callback=checkpoint,
logger=logger
)
# fit model
trainer = Trainer(**trainer_options)
result = trainer.fit(model)
assert result == 1, 'training failed to complete'
trainer.test()
# test we have good test accuracy
testing_utils.assert_ok_test_acc(trainer)
testing_utils.clear_save_dir()
def test_running_test_without_val():
testing_utils.reset_seed()
"""Verify test() works on a model with no val_loader"""
class CurrentTestModel(LightningTestMixin, LightningTestModelBase):
pass
hparams = testing_utils.get_hparams()
model = CurrentTestModel(hparams)
save_dir = testing_utils.init_save_dir()
# logger file to get meta
logger = testing_utils.get_test_tube_logger(False)
# logger file to get weights
checkpoint = testing_utils.init_checkpoint_callback(logger)
trainer_options = dict(
show_progress_bar=False,
max_nb_epochs=1,
train_percent_check=0.4,
val_percent_check=0.2,
test_percent_check=0.2,
checkpoint_callback=checkpoint,
logger=logger
)
# fit model
trainer = Trainer(**trainer_options)
result = trainer.fit(model)
assert result == 1, 'training failed to complete'
trainer.test()
# test we have good test accuracy
testing_utils.assert_ok_test_acc(trainer)
testing_utils.clear_save_dir()
def test_single_gpu_batch_parse():
testing_utils.reset_seed()
if not testing_utils.can_run_gpu_test():
return
trainer = Trainer()
# batch is just a tensor
batch = torch.rand(2, 3)
batch = trainer.transfer_batch_to_gpu(batch, 0)
assert batch.device.index == 0 and batch.type() == 'torch.cuda.FloatTensor'
# tensor list
batch = [torch.rand(2, 3), torch.rand(2, 3)]
batch = trainer.transfer_batch_to_gpu(batch, 0)
assert batch[0].device.index == 0 and batch[0].type() == 'torch.cuda.FloatTensor'
assert batch[1].device.index == 0 and batch[1].type() == 'torch.cuda.FloatTensor'
# tensor list of lists
batch = [[torch.rand(2, 3), torch.rand(2, 3)]]
batch = trainer.transfer_batch_to_gpu(batch, 0)
assert batch[0][0].device.index == 0 and batch[0][0].type() == 'torch.cuda.FloatTensor'
assert batch[0][1].device.index == 0 and batch[0][1].type() == 'torch.cuda.FloatTensor'
# tensor dict
batch = [{'a': torch.rand(2, 3), 'b': torch.rand(2, 3)}]
batch = trainer.transfer_batch_to_gpu(batch, 0)
assert batch[0]['a'].device.index == 0 and batch[0]['a'].type() == 'torch.cuda.FloatTensor'
assert batch[0]['b'].device.index == 0 and batch[0]['b'].type() == 'torch.cuda.FloatTensor'
# tuple of tensor list and list of tensor dict
batch = ([torch.rand(2, 3) for _ in range(2)],
[{'a': torch.rand(2, 3), 'b': torch.rand(2, 3)} for _ in range(2)])
batch = trainer.transfer_batch_to_gpu(batch, 0)
assert batch[0][0].device.index == 0 and batch[0][0].type() == 'torch.cuda.FloatTensor'
assert batch[1][0]['a'].device.index == 0
assert batch[1][0]['a'].type() == 'torch.cuda.FloatTensor'
assert batch[1][0]['b'].device.index == 0
assert batch[1][0]['b'].type() == 'torch.cuda.FloatTensor'
def test_simple_cpu():
"""
Verify continue training session on CPU
:return:
"""
testing_utils.reset_seed()
hparams = testing_utils.get_hparams()
model = LightningTestModel(hparams)
save_dir = testing_utils.init_save_dir()
# logger file to get meta
trainer_options = dict(
max_nb_epochs=1,
val_percent_check=0.1,
train_percent_check=0.1,
)
# fit model
trainer = Trainer(**trainer_options)
result = trainer.fit(model)
# traning complete
assert result == 1, 'amp + ddp model failed to complete'
testing_utils.clear_save_dir()
def test_cpu_model():
"""
Make sure model trains on CPU
:return:
"""
testing_utils.reset_seed()
trainer_options = dict(
show_progress_bar=False,
logger=testing_utils.get_test_tube_logger(),
max_nb_epochs=1,
train_percent_check=0.4,
val_percent_check=0.4
)
model, hparams = testing_utils.get_model()
testing_utils.run_gpu_model_test(trainer_options, model, hparams, on_gpu=False)
def test_all_features_cpu_model():
"""
Test each of the trainer options
:return:
"""
testing_utils.reset_seed()
trainer_options = dict(
gradient_clip_val=1.0,
overfit_pct=0.20,
track_grad_norm=2,
print_nan_grads=True,
show_progress_bar=False,
logger=testing_utils.get_test_tube_logger(),
accumulate_grad_batches=2,
max_nb_epochs=1,
train_percent_check=0.4,
val_percent_check=0.4
)
model, hparams = testing_utils.get_model()
testing_utils.run_gpu_model_test(trainer_options, model, hparams, on_gpu=False)
def test_tbptt_cpu_model():
"""
Test truncated back propagation through time works.
:return:
"""
testing_utils.reset_seed()
save_dir = testing_utils.init_save_dir()
truncated_bptt_steps = 2
sequence_size = 30
batch_size = 30
x_seq = torch.rand(batch_size, sequence_size, 1)
y_seq_list = torch.rand(batch_size, sequence_size, 1).tolist()
class MockSeq2SeqDataset(torch.utils.data.Dataset):
def __getitem__(self, i):
return x_seq, y_seq_list
def __len__(self):
return 1
class BpttTestModel(LightningTestModelBase):
def __init__(self, hparams):
super().__init__(hparams)
self.test_hidden = None
def training_step(self, batch, batch_idx, hiddens):
assert hiddens == self.test_hidden, "Hidden state not persistent between tbptt steps"
self.test_hidden = torch.rand(1)
x_tensor, y_list = batch
assert x_tensor.shape[1] == truncated_bptt_steps, "tbptt split Tensor failed"
y_tensor = torch.tensor(y_list, dtype=x_tensor.dtype)
assert y_tensor.shape[1] == truncated_bptt_steps, "tbptt split list failed"
pred = self.forward(x_tensor.view(batch_size, truncated_bptt_steps))
loss_val = torch.nn.functional.mse_loss(
pred, y_tensor.view(batch_size, truncated_bptt_steps))
return {
'loss': loss_val,
'hiddens': self.test_hidden,
}
@data_loader
def train_dataloader(self):
return torch.utils.data.DataLoader(
dataset=MockSeq2SeqDataset(),
batch_size=batch_size,
shuffle=False,
sampler=None,
)
trainer_options = dict(
max_nb_epochs=1,
truncated_bptt_steps=truncated_bptt_steps,
val_percent_check=0,
weights_summary=None,
)
hparams = testing_utils.get_hparams()
hparams.batch_size = batch_size
hparams.in_features = truncated_bptt_steps
hparams.hidden_dim = truncated_bptt_steps
hparams.out_features = truncated_bptt_steps
model = BpttTestModel(hparams)
# fit model
trainer = Trainer(**trainer_options)
result = trainer.fit(model)
assert result == 1, 'training failed to complete'
testing_utils.clear_save_dir()
def test_single_gpu_model():
"""
Make sure single GPU works (DP mode)
:return:
"""
testing_utils.reset_seed()
if not torch.cuda.is_available():
warnings.warn('test_single_gpu_model cannot run.'
' Rerun on a GPU node to run this test')
return
model, hparams = testing_utils.get_model()
trainer_options = dict(
show_progress_bar=False,
max_nb_epochs=1,
train_percent_check=0.1,
val_percent_check=0.1,
gpus=1
)
testing_utils.run_gpu_model_test(trainer_options, model, hparams)
if __name__ == '__main__':
pytest.main([__file__])