lightning/pytorch_lightning/trainer/training_loop.py

813 lines
30 KiB
Python
Raw Normal View History

"""
The lightning training loop handles everything except the actual computations of your model.
To decide what will happen in your training loop, define the `training_step` function.
Below are all the things lightning automates for you in the training loop.
Accumulated gradients
---------------------
Accumulated gradients runs K small batches of size N before doing a backwards pass.
The effect is a large effective batch size of size KxN.
.. code-block:: python
# DEFAULT (ie: no accumulated grads)
trainer = Trainer(accumulate_grad_batches=1)
Force training for min or max epochs
------------------------------------
It can be useful to force training for a minimum number of epochs or limit to a max number
.. code-block:: python
# DEFAULT
trainer = Trainer(min_epochs=1, max_epochs=1000)
Force disable early stop
------------------------
To disable early stopping pass None to the early_stop_callback
.. code-block:: python
# DEFAULT
trainer = Trainer(early_stop_callback=None)
Gradient Clipping
-----------------
Gradient clipping may be enabled to avoid exploding gradients.
Specifically, this will `clip the gradient norm computed over all model parameters
`together <https://pytorch.org/docs/stable/nn.html#torch.nn.utils.clip_grad_norm_>`_.
.. code-block:: python
# DEFAULT (ie: don't clip)
trainer = Trainer(gradient_clip_val=0)
# clip gradients with norm above 0.5
trainer = Trainer(gradient_clip_val=0.5)
Inspect gradient norms
----------------------
Looking at grad norms can help you figure out where training might be going wrong.
.. code-block:: python
# DEFAULT (-1 doesn't track norms)
trainer = Trainer(track_grad_norm=-1)
# track the LP norm (P=2 here)
trainer = Trainer(track_grad_norm=2)
Set how much of the training set to check
-----------------------------------------
If you don't want to check 100% of the training set (for debugging or if it's huge), set this flag.
train_percent_check will be overwritten by overfit_pct if `overfit_pct > 0`
.. code-block:: python
# DEFAULT
trainer = Trainer(train_percent_check=1.0)
# check 10% only
trainer = Trainer(train_percent_check=0.1)
Packed sequences as inputs
--------------------------
When using PackedSequence, do 2 things:
1. return either a padded tensor in dataset or a list of variable length tensors
resolving documentation warnings (#833) * add more underline * fix LightningMudule import error * remove unneeded blank line * escape asterisk to fix inline emphasis warning * add PULL_REQUEST_TEMPLATE.md * add __init__.py and import imagenet_example * fix duplicate label * add noindex option to fix duplicate object warnings * remove unexpected indent * refer explicit LightningModule * fix minor bug * refer EarlyStopping explicitly * restore exclude patterns * change the way how to refer class * remove unused import * update badges & drop Travis/Appveyor (#826) * drop Travis * drop Appveyor * update badges * fix missing PyPI images & CI badges (#853) * docs - anchor links (#848) * docs - add links * add desc. * add Greeting action (#843) * add Greeting action * Update greetings.yml Co-authored-by: William Falcon <waf2107@columbia.edu> * add pep8speaks (#842) * advanced profiler describe + cleaned up tests (#837) * add py36 compatibility * add test case to capture previous bug * clean up tests * clean up tests * Update lightning_module_template.py * Update lightning.py * respond lint issues * break long line * break more lines * checkout conflicting files from master * shorten url * checkout from upstream/master * remove trailing whitespaces * remove unused import LightningModule * fix sphinx bot warnings * Apply suggestions from code review just to trigger CI * Update .github/workflows/greetings.yml Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> Co-authored-by: William Falcon <waf2107@columbia.edu> Co-authored-by: Jeremy Jordan <13970565+jeremyjordan@users.noreply.github.com>
2020-02-27 21:07:51 +00:00
in the dataloader collate_fn (example above shows the list implementation).
2. Pack the sequence in forward or training and validation steps depending on use case.
.. code-block:: python
# For use in dataloader
def collate_fn(batch):
x = [item[0] for item in batch]
y = [item[1] for item in batch]
return x, y
# In module
def training_step(self, batch, batch_idx):
x = rnn.pack_sequence(batch[0], enforce_sorted=False)
y = rnn.pack_sequence(batch[1], enforce_sorted=False)
Truncated Backpropagation Through Time
--------------------------------------
There are times when multiple backwards passes are needed for each batch.
For example, it may save memory to use Truncated Backpropagation Through Time when training RNNs.
When this flag is enabled each batch is split into sequences of size truncated_bptt_steps
and passed to training_step(...) separately. A default splitting function is provided,
however, you can override it for more flexibility. See `tbptt_split_batch`.
.. code-block:: python
# DEFAULT (single backwards pass per batch)
trainer = Trainer(truncated_bptt_steps=None)
# (split batch into sequences of size 2)
trainer = Trainer(truncated_bptt_steps=2)
NaN detection and intervention
------------------------------
When the `terminate_on_nan` flag is enabled, after every forward pass during training, Lightning will
check that
1. the loss you return in `training_step` is finite (not NaN and not +/-inf)
2. the model parameters have finite values.
Lightning will terminate the training loop with an error message if NaN or infinite
values are detected. If this happens, you should investigate numerically unstable operations
in your model.
.. code-block:: python
# DEFAULT (won't perform the NaN check)
trainer = Trainer(terminate_on_nan=False)
# (NaN check each batch and terminate on NaN or infinite values)
trainer = Trainer(terminate_on_nan=True)
"""
import copy
from abc import ABC, abstractmethod
2020-03-12 16:41:37 +00:00
from typing import Callable
from typing import Union, List
import numpy as np
from torch.utils.data import DataLoader
import torch
from pytorch_lightning import _logger as log
2020-03-12 16:41:37 +00:00
from pytorch_lightning.callbacks.base import Callback
2020-02-28 23:48:07 +00:00
from pytorch_lightning.core.lightning import LightningModule
from pytorch_lightning.loggers import LightningLoggerBase
from pytorch_lightning.overrides.data_parallel import LightningDistributedDataParallel, LightningDataParallel
from pytorch_lightning.utilities.exceptions import MisconfigurationException
Added accumulation of loggers' metrics for the same steps (#1278) * `add_argparse_args` method fixed (argument types added) * autopep8 fixes * --gpus=0 removed from test (for ci tests) * Update pytorch_lightning/trainer/trainer.py Co-Authored-By: Joe Davison <joe@huggingface.co> * test_with_accumulate_grad_batches added * agg_and_log_metrics logic added to the base logger class * small format fix * agg metrics strategies removed (not to complicate stuff) * agg metrics: handle zero step * autopep8 * changelog upd * flake fix * metrics aggregators factored out, metrics_agg.py added + tests * metrics agg default value added * Update pytorch_lightning/loggers/metrics_agg.py Co-Authored-By: Jirka Borovec <Borda@users.noreply.github.com> * metrics aggregators factored out, metrics_agg.py added + tests * metrics agg default value added * Update pytorch_lightning/loggers/metrics_agg.py Co-Authored-By: Jirka Borovec <Borda@users.noreply.github.com> * remove .item which causes sync issues (#1254) * remove .item which causes sync issues * fixed gradient acc sched * fixed gradient acc sched * test_metrics_agg.py removed (all tested in doctrings), agg metrics refactored * test_metrics_agg.py removed (all tested in doctrings), agg metrics refactored * autopep8 * loggers base.py types fixed * test * test * metrics aggregation for loggers: each key now has a specific function (or default one) * metrics aggregation for loggers: each key now has a specific function (or default one) * docstrings upd * manual typehints removed from docstrings * batch_size decreased for test `test_with_accumulate_grad_batches` * extend running accum * refactor * fix tests * fix tests * allowed_types generator scoped * trainer.py distutils was imported twice, fixed * TensorRunningAccum refactored * TensorRunningAccum added to change log (Changed) * change log pull link added Co-authored-by: Joe Davison <joe@huggingface.co> Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> Co-authored-by: William Falcon <waf2107@columbia.edu> Co-authored-by: J. Borovec <jirka.borovec@seznam.cz>
2020-04-08 12:35:47 +00:00
from pytorch_lightning.trainer.supporters import TensorRunningAccum
from pytorch_lightning.utilities import rank_zero_warn
from pytorch_lightning.utilities import memory_utils
try:
from apex import amp
except ImportError:
APEX_AVAILABLE = False
else:
APEX_AVAILABLE = True
Enable TPU support (#868) * added tpu docs * added tpu flags * add tpu docs + init training call * amp * amp * amp * amp * optimizer step * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * fix test pkg create (#873) * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * Update pytorch_lightning/trainer/trainer.py Co-Authored-By: Luis Capelo <luiscape@gmail.com> * Fix segmentation example (#876) * removed torchvision model and added custom model * minor fix * Fixed relative imports issue * Fix/typo (#880) * Update greetings.yml * Update greetings.yml * Changelog (#869) * Create CHANGELOG.md * Update CHANGELOG.md * Update CHANGELOG.md * Update PULL_REQUEST_TEMPLATE.md * Update PULL_REQUEST_TEMPLATE.md * Add PR links to Version 0.6.0 in CHANGELOG.md * Add PR links for Unreleased in CHANGELOG.md * Update PULL_REQUEST_TEMPLATE.md * Fixing Function Signatures (#871) * added tpu docs * added tpu flags * add tpu docs + init training call * amp * amp * amp * amp * optimizer step * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> Co-authored-by: Luis Capelo <luiscape@gmail.com> Co-authored-by: Akshay Kulkarni <akshayk.vnit@gmail.com> Co-authored-by: Ethan Harris <ewah1g13@soton.ac.uk> Co-authored-by: Shikhar Chauhan <xssChauhan@users.noreply.github.com>
2020-02-17 21:01:20 +00:00
try:
import torch_xla.distributed.parallel_loader as xla_pl
Clean up dataloader logic (#926) * added get dataloaders directly using a getter * deleted decorator * added prepare_data hook * refactored dataloader init * refactored dataloader init * added dataloader reset flag and main loop * added dataloader reset flag and main loop * added dataloader reset flag and main loop * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixes #909 * fixes #909 * bug fix * Fixes #902
2020-02-25 03:23:25 +00:00
import torch_xla.core.xla_model as xm
Enable TPU support (#868) * added tpu docs * added tpu flags * add tpu docs + init training call * amp * amp * amp * amp * optimizer step * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * fix test pkg create (#873) * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * Update pytorch_lightning/trainer/trainer.py Co-Authored-By: Luis Capelo <luiscape@gmail.com> * Fix segmentation example (#876) * removed torchvision model and added custom model * minor fix * Fixed relative imports issue * Fix/typo (#880) * Update greetings.yml * Update greetings.yml * Changelog (#869) * Create CHANGELOG.md * Update CHANGELOG.md * Update CHANGELOG.md * Update PULL_REQUEST_TEMPLATE.md * Update PULL_REQUEST_TEMPLATE.md * Add PR links to Version 0.6.0 in CHANGELOG.md * Add PR links for Unreleased in CHANGELOG.md * Update PULL_REQUEST_TEMPLATE.md * Fixing Function Signatures (#871) * added tpu docs * added tpu flags * add tpu docs + init training call * amp * amp * amp * amp * optimizer step * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> Co-authored-by: Luis Capelo <luiscape@gmail.com> Co-authored-by: Akshay Kulkarni <akshayk.vnit@gmail.com> Co-authored-by: Ethan Harris <ewah1g13@soton.ac.uk> Co-authored-by: Shikhar Chauhan <xssChauhan@users.noreply.github.com>
2020-02-17 21:01:20 +00:00
except ImportError:
XLA_AVAILABLE = False
else:
XLA_AVAILABLE = True
Enable TPU support (#868) * added tpu docs * added tpu flags * add tpu docs + init training call * amp * amp * amp * amp * optimizer step * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * fix test pkg create (#873) * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * Update pytorch_lightning/trainer/trainer.py Co-Authored-By: Luis Capelo <luiscape@gmail.com> * Fix segmentation example (#876) * removed torchvision model and added custom model * minor fix * Fixed relative imports issue * Fix/typo (#880) * Update greetings.yml * Update greetings.yml * Changelog (#869) * Create CHANGELOG.md * Update CHANGELOG.md * Update CHANGELOG.md * Update PULL_REQUEST_TEMPLATE.md * Update PULL_REQUEST_TEMPLATE.md * Add PR links to Version 0.6.0 in CHANGELOG.md * Add PR links for Unreleased in CHANGELOG.md * Update PULL_REQUEST_TEMPLATE.md * Fixing Function Signatures (#871) * added tpu docs * added tpu flags * add tpu docs + init training call * amp * amp * amp * amp * optimizer step * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> Co-authored-by: Luis Capelo <luiscape@gmail.com> Co-authored-by: Akshay Kulkarni <akshayk.vnit@gmail.com> Co-authored-by: Ethan Harris <ewah1g13@soton.ac.uk> Co-authored-by: Shikhar Chauhan <xssChauhan@users.noreply.github.com>
2020-02-17 21:01:20 +00:00
try:
import horovod.torch as hvd
except ImportError:
HOROVOD_AVAILABLE = False
else:
HOROVOD_AVAILABLE = True
class TrainerTrainLoopMixin(ABC):
# this is just a summary on variables used in this abstract class,
# the proper values/initialisation should be done in child class
max_epochs: int
min_epochs: int
on_gpu: bool
use_ddp: bool
use_dp: bool
use_ddp2: bool
use_horovod: bool
single_gpu: bool
use_tpu: bool
data_parallel_device_ids: ...
check_val_every_n_epoch: ...
num_training_batches: int
val_check_batch: ...
num_val_batches: int
disable_validation: bool
fast_dev_run: ...
accumulation_scheduler: ...
lr_schedulers: ...
enable_early_stop: ...
early_stop_callback: ...
callback_metrics: ...
logger: Union[LightningLoggerBase, bool]
global_step: int
testing: bool
log_save_interval: float
proc_rank: int
row_log_interval: float
truncated_bptt_steps: ...
optimizers: ...
optimizer_frequencies: ...
accumulate_grad_batches: int
track_grad_norm: ...
model: LightningModule
interrupted: bool
running_loss: ...
Progress bar callback (#1450) * squash and rebase sanity check hooks sanity check callback hook finish moved core progress bar functionality into callback wip remove duplicate merge clean up imports docs sanity check progress bar main sanity move callback calls init progrss bar callback configuration and docs changelog rate decorator pass process_position disable on rank > 0 position index is_enabled remove decorator refactor init tqdm bars callback method ordering cannot reset when disabled sequence -> list default values fix has no attr _time() move on_val_end to proper place fix the pickle issue update warning properties check for None remove old comment switch order pull out non-tqdm functionality into base class documentation for the base class docs fix refresh rate issue in validation restrict type hint of trainer arg more docs update trainer docs rst docs fix lines too long fix test add missing type hints fix typo move docstring to __init__ solves doctest failures remove doctest :(( can't fix the pickle error fix example simplify by saving trainer reference fix docs errors move docstring initial value multiple val checks per epoch simpler handling of inf dataset sizes update inf docs renamed training_tqdm_dict rename get_tqdm_dict rename occurences of tqdm update changelog fix doctest fix formatting errors added callback tests progress bar on off test more tests for progress bar weird test fix? add ignored property disable default progress bar in LR finder change enable/disable behavior trying doctest in CI again undo doctest pickle error undo doctest pickle error :(( remove progress_bar_callback Trainer arg and fix tests restore progress bar after auto lr find update docs fix rebase fix wrong negation * fix fast dev run total * more thorough testing * remove old args * fix merge * fix merge * separate tests * type hint total batches * reduce if Co-Authored-By: Jirka Borovec <Borda@users.noreply.github.com> * is_disabled Co-Authored-By: Jirka Borovec <Borda@users.noreply.github.com> * is_enabled Co-Authored-By: Jirka Borovec <Borda@users.noreply.github.com> * rename enabled/disabled * move deprecated api * remove duplicated test from merge * fix rename is_disabled * newline * test also testprogress for fast dev run Co-authored-by: J. Borovec <jirka.borovec@seznam.cz> Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com>
2020-04-24 00:46:18 +00:00
progress_bar_dict: ...
reduce_lr_on_plateau_scheduler: ...
profiler: ...
batch_idx: int
precision: ...
train_dataloader: DataLoader
reload_dataloaders_every_epoch: bool
max_steps: int
min_steps: int
total_batch_idx: int
proper checkpoint implementation (#1043) * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * name formatting * version * testing * add test * fix test * Update model_checkpoint.py * doctests * pylint * tests * debug * debug * enabled early stopping/checkpooiunt even without val step * fix MNIST download (#1044) * fix MNIST download * simple * name formatting * version * testing * add test * fix test * doctests * tests * debug * debug * rebased 1041 * rebased 1041 * tests * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com>
2020-03-05 04:02:19 +00:00
checkpoint_callback: ...
terminate_on_nan: bool
# Callback system
callbacks: List[Callback]
on_train_start: Callable
on_train_end: Callable
on_batch_start: Callable
on_batch_end: Callable
on_epoch_start: Callable
on_epoch_end: Callable
proper checkpoint implementation (#1043) * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * name formatting * version * testing * add test * fix test * Update model_checkpoint.py * doctests * pylint * tests * debug * debug * enabled early stopping/checkpooiunt even without val step * fix MNIST download (#1044) * fix MNIST download * simple * name formatting * version * testing * add test * fix test * doctests * tests * debug * debug * rebased 1041 * rebased 1041 * tests * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com>
2020-03-05 04:02:19 +00:00
on_validation_end: Callable
@abstractmethod
def get_model(self):
"""Warning: this is just empty shell for code implemented in other class."""
@abstractmethod
def is_function_implemented(self, *args):
"""Warning: this is just empty shell for code implemented in other class."""
@abstractmethod
def run_evaluation(self, *args):
"""Warning: this is just empty shell for code implemented in other class."""
@abstractmethod
def transfer_batch_to_gpu(self, *args):
"""Warning: this is just empty shell for code implemented in other class."""
Enable TPU support (#868) * added tpu docs * added tpu flags * add tpu docs + init training call * amp * amp * amp * amp * optimizer step * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * fix test pkg create (#873) * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * Update pytorch_lightning/trainer/trainer.py Co-Authored-By: Luis Capelo <luiscape@gmail.com> * Fix segmentation example (#876) * removed torchvision model and added custom model * minor fix * Fixed relative imports issue * Fix/typo (#880) * Update greetings.yml * Update greetings.yml * Changelog (#869) * Create CHANGELOG.md * Update CHANGELOG.md * Update CHANGELOG.md * Update PULL_REQUEST_TEMPLATE.md * Update PULL_REQUEST_TEMPLATE.md * Add PR links to Version 0.6.0 in CHANGELOG.md * Add PR links for Unreleased in CHANGELOG.md * Update PULL_REQUEST_TEMPLATE.md * Fixing Function Signatures (#871) * added tpu docs * added tpu flags * add tpu docs + init training call * amp * amp * amp * amp * optimizer step * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> Co-authored-by: Luis Capelo <luiscape@gmail.com> Co-authored-by: Akshay Kulkarni <akshayk.vnit@gmail.com> Co-authored-by: Ethan Harris <ewah1g13@soton.ac.uk> Co-authored-by: Shikhar Chauhan <xssChauhan@users.noreply.github.com>
2020-02-17 21:01:20 +00:00
@abstractmethod
def transfer_batch_to_tpu(self, *args):
"""Warning: this is just empty shell for code implemented in other class."""
Enable TPU support (#868) * added tpu docs * added tpu flags * add tpu docs + init training call * amp * amp * amp * amp * optimizer step * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * fix test pkg create (#873) * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * Update pytorch_lightning/trainer/trainer.py Co-Authored-By: Luis Capelo <luiscape@gmail.com> * Fix segmentation example (#876) * removed torchvision model and added custom model * minor fix * Fixed relative imports issue * Fix/typo (#880) * Update greetings.yml * Update greetings.yml * Changelog (#869) * Create CHANGELOG.md * Update CHANGELOG.md * Update CHANGELOG.md * Update PULL_REQUEST_TEMPLATE.md * Update PULL_REQUEST_TEMPLATE.md * Add PR links to Version 0.6.0 in CHANGELOG.md * Add PR links for Unreleased in CHANGELOG.md * Update PULL_REQUEST_TEMPLATE.md * Fixing Function Signatures (#871) * added tpu docs * added tpu flags * add tpu docs + init training call * amp * amp * amp * amp * optimizer step * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> Co-authored-by: Luis Capelo <luiscape@gmail.com> Co-authored-by: Akshay Kulkarni <akshayk.vnit@gmail.com> Co-authored-by: Ethan Harris <ewah1g13@soton.ac.uk> Co-authored-by: Shikhar Chauhan <xssChauhan@users.noreply.github.com>
2020-02-17 21:01:20 +00:00
@abstractmethod
def clip_gradients(self):
"""Warning: this is just empty shell for code implemented in other class."""
@abstractmethod
def detect_nan_tensors(self, *args):
"""Warning: this is just empty shell for code implemented in other class."""
@abstractmethod
def is_overriden(self, *args):
"""Warning: this is just empty shell for code implemented in other class."""
@abstractmethod
Progress bar callback (#1450) * squash and rebase sanity check hooks sanity check callback hook finish moved core progress bar functionality into callback wip remove duplicate merge clean up imports docs sanity check progress bar main sanity move callback calls init progrss bar callback configuration and docs changelog rate decorator pass process_position disable on rank > 0 position index is_enabled remove decorator refactor init tqdm bars callback method ordering cannot reset when disabled sequence -> list default values fix has no attr _time() move on_val_end to proper place fix the pickle issue update warning properties check for None remove old comment switch order pull out non-tqdm functionality into base class documentation for the base class docs fix refresh rate issue in validation restrict type hint of trainer arg more docs update trainer docs rst docs fix lines too long fix test add missing type hints fix typo move docstring to __init__ solves doctest failures remove doctest :(( can't fix the pickle error fix example simplify by saving trainer reference fix docs errors move docstring initial value multiple val checks per epoch simpler handling of inf dataset sizes update inf docs renamed training_tqdm_dict rename get_tqdm_dict rename occurences of tqdm update changelog fix doctest fix formatting errors added callback tests progress bar on off test more tests for progress bar weird test fix? add ignored property disable default progress bar in LR finder change enable/disable behavior trying doctest in CI again undo doctest pickle error undo doctest pickle error :(( remove progress_bar_callback Trainer arg and fix tests restore progress bar after auto lr find update docs fix rebase fix wrong negation * fix fast dev run total * more thorough testing * remove old args * fix merge * fix merge * separate tests * type hint total batches * reduce if Co-Authored-By: Jirka Borovec <Borda@users.noreply.github.com> * is_disabled Co-Authored-By: Jirka Borovec <Borda@users.noreply.github.com> * is_enabled Co-Authored-By: Jirka Borovec <Borda@users.noreply.github.com> * rename enabled/disabled * move deprecated api * remove duplicated test from merge * fix rename is_disabled * newline * test also testprogress for fast dev run Co-authored-by: J. Borovec <jirka.borovec@seznam.cz> Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com>
2020-04-24 00:46:18 +00:00
def add_progress_bar_metrics(self, *args):
"""Warning: this is just empty shell for code implemented in other class."""
@abstractmethod
def log_metrics(self, *args):
"""Warning: this is just empty shell for code implemented in other class."""
@abstractmethod
def process_output(self, *args):
"""Warning: this is just empty shell for code implemented in other class."""
Clean up dataloader logic (#926) * added get dataloaders directly using a getter * deleted decorator * added prepare_data hook * refactored dataloader init * refactored dataloader init * added dataloader reset flag and main loop * added dataloader reset flag and main loop * added dataloader reset flag and main loop * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixes #909 * fixes #909 * bug fix * Fixes #902
2020-02-25 03:23:25 +00:00
@abstractmethod
def reset_train_dataloader(self, *args):
"""Warning: this is just empty shell for code implemented in other class."""
Clean up dataloader logic (#926) * added get dataloaders directly using a getter * deleted decorator * added prepare_data hook * refactored dataloader init * refactored dataloader init * added dataloader reset flag and main loop * added dataloader reset flag and main loop * added dataloader reset flag and main loop * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixes #909 * fixes #909 * bug fix * Fixes #902
2020-02-25 03:23:25 +00:00
@abstractmethod
def reset_val_dataloader(self, model):
"""Warning: this is just empty shell for code implemented in other class."""
@abstractmethod
def has_arg(self, *args):
"""Warning: this is just empty shell for code implemented in other class."""
def train(self):
rank_zero_warn('Displayed epoch numbers in the progress bar start from "1" until v0.6.x,'
' but will start from "0" in v0.8.0.', RuntimeWarning)
# get model
model = self.get_model()
# load data
# if reload_dataloaders_every_epoch, this is moved to the epoch loop
if not self.reload_dataloaders_every_epoch:
self.reset_train_dataloader(model)
self.reset_val_dataloader(model)
# Train start events
with self.profiler.profile('on_train_start'):
# callbacks
self.on_train_start()
# initialize early stop callback
if self.early_stop_callback is not None:
self.early_stop_callback.on_train_start(self, self.get_model())
# model hooks
model.on_train_start()
try:
# run all epochs
for epoch in range(self.current_epoch, self.max_epochs):
# reset train dataloader
if self.reload_dataloaders_every_epoch:
self.reset_train_dataloader(model)
# set seed for distributed sampler (enables shuffling for each epoch)
if self.use_ddp or self.use_horovod \
Clean up dataloader logic (#926) * added get dataloaders directly using a getter * deleted decorator * added prepare_data hook * refactored dataloader init * refactored dataloader init * added dataloader reset flag and main loop * added dataloader reset flag and main loop * added dataloader reset flag and main loop * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixes #909 * fixes #909 * bug fix * Fixes #902
2020-02-25 03:23:25 +00:00
and hasattr(self.train_dataloader.sampler, 'set_epoch'):
self.train_dataloader.sampler.set_epoch(epoch)
# update training progress in trainer and model
model.current_epoch = epoch
self.current_epoch = epoch
# changing gradient according accumulation_scheduler
self.accumulation_scheduler.on_epoch_start(self, self.get_model())
# stores accumulated grad fractions per batch
Added accumulation of loggers' metrics for the same steps (#1278) * `add_argparse_args` method fixed (argument types added) * autopep8 fixes * --gpus=0 removed from test (for ci tests) * Update pytorch_lightning/trainer/trainer.py Co-Authored-By: Joe Davison <joe@huggingface.co> * test_with_accumulate_grad_batches added * agg_and_log_metrics logic added to the base logger class * small format fix * agg metrics strategies removed (not to complicate stuff) * agg metrics: handle zero step * autopep8 * changelog upd * flake fix * metrics aggregators factored out, metrics_agg.py added + tests * metrics agg default value added * Update pytorch_lightning/loggers/metrics_agg.py Co-Authored-By: Jirka Borovec <Borda@users.noreply.github.com> * metrics aggregators factored out, metrics_agg.py added + tests * metrics agg default value added * Update pytorch_lightning/loggers/metrics_agg.py Co-Authored-By: Jirka Borovec <Borda@users.noreply.github.com> * remove .item which causes sync issues (#1254) * remove .item which causes sync issues * fixed gradient acc sched * fixed gradient acc sched * test_metrics_agg.py removed (all tested in doctrings), agg metrics refactored * test_metrics_agg.py removed (all tested in doctrings), agg metrics refactored * autopep8 * loggers base.py types fixed * test * test * metrics aggregation for loggers: each key now has a specific function (or default one) * metrics aggregation for loggers: each key now has a specific function (or default one) * docstrings upd * manual typehints removed from docstrings * batch_size decreased for test `test_with_accumulate_grad_batches` * extend running accum * refactor * fix tests * fix tests * allowed_types generator scoped * trainer.py distutils was imported twice, fixed * TensorRunningAccum refactored * TensorRunningAccum added to change log (Changed) * change log pull link added Co-authored-by: Joe Davison <joe@huggingface.co> Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> Co-authored-by: William Falcon <waf2107@columbia.edu> Co-authored-by: J. Borovec <jirka.borovec@seznam.cz>
2020-04-08 12:35:47 +00:00
self.batch_loss_value = TensorRunningAccum(
window_length=self.accumulate_grad_batches
)
# -----------------
# RUN TNG EPOCH
# -----------------
self.run_training_epoch()
# update LR schedulers
self.update_learning_rates(interval='epoch')
if self.max_steps and self.max_steps == self.global_step:
self.run_training_teardown()
return
# early stopping
met_min_epochs = epoch >= self.min_epochs - 1
met_min_steps = self.global_step >= self.min_steps if self.min_steps else True
# TODO wrap this logic into the callback
if self.enable_early_stop:
if (met_min_epochs and met_min_steps) or self.fast_dev_run:
should_stop = self.early_stop_callback.on_epoch_end(self, self.get_model())
# stop training
stop = should_stop and met_min_epochs
if stop:
self.run_training_teardown()
return
self.run_training_teardown()
Clean up dataloader logic (#926) * added get dataloaders directly using a getter * deleted decorator * added prepare_data hook * refactored dataloader init * refactored dataloader init * added dataloader reset flag and main loop * added dataloader reset flag and main loop * added dataloader reset flag and main loop * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixes #909 * fixes #909 * bug fix * Fixes #902
2020-02-25 03:23:25 +00:00
except KeyboardInterrupt:
2020-04-09 18:46:51 +00:00
if self.proc_rank == 0:
log.info('Detected KeyboardInterrupt, attempting graceful shutdown...')
self.interrupted = True
self.run_training_teardown()
def run_training_epoch(self):
# get model
model = self.get_model()
# Epoch start events
with self.profiler.profile('on_epoch_start'):
# callbacks
self.on_epoch_start()
# model hooks
if self.is_function_implemented('on_epoch_start'):
model.on_epoch_start()
# track local dataloader so TPU can wrap each epoch
train_dataloader = self.train_dataloader
Enable TPU support (#868) * added tpu docs * added tpu flags * add tpu docs + init training call * amp * amp * amp * amp * optimizer step * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * fix test pkg create (#873) * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * Update pytorch_lightning/trainer/trainer.py Co-Authored-By: Luis Capelo <luiscape@gmail.com> * Fix segmentation example (#876) * removed torchvision model and added custom model * minor fix * Fixed relative imports issue * Fix/typo (#880) * Update greetings.yml * Update greetings.yml * Changelog (#869) * Create CHANGELOG.md * Update CHANGELOG.md * Update CHANGELOG.md * Update PULL_REQUEST_TEMPLATE.md * Update PULL_REQUEST_TEMPLATE.md * Add PR links to Version 0.6.0 in CHANGELOG.md * Add PR links for Unreleased in CHANGELOG.md * Update PULL_REQUEST_TEMPLATE.md * Fixing Function Signatures (#871) * added tpu docs * added tpu flags * add tpu docs + init training call * amp * amp * amp * amp * optimizer step * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> Co-authored-by: Luis Capelo <luiscape@gmail.com> Co-authored-by: Akshay Kulkarni <akshayk.vnit@gmail.com> Co-authored-by: Ethan Harris <ewah1g13@soton.ac.uk> Co-authored-by: Shikhar Chauhan <xssChauhan@users.noreply.github.com>
2020-02-17 21:01:20 +00:00
# on TPU we have to wrap it under the ParallelLoader
if self.use_tpu:
device = xm.xla_device()
train_dataloader = xla_pl.ParallelLoader(train_dataloader, [device])
train_dataloader = train_dataloader.per_device_loader(device)
Enable TPU support (#868) * added tpu docs * added tpu flags * add tpu docs + init training call * amp * amp * amp * amp * optimizer step * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * fix test pkg create (#873) * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * Update pytorch_lightning/trainer/trainer.py Co-Authored-By: Luis Capelo <luiscape@gmail.com> * Fix segmentation example (#876) * removed torchvision model and added custom model * minor fix * Fixed relative imports issue * Fix/typo (#880) * Update greetings.yml * Update greetings.yml * Changelog (#869) * Create CHANGELOG.md * Update CHANGELOG.md * Update CHANGELOG.md * Update PULL_REQUEST_TEMPLATE.md * Update PULL_REQUEST_TEMPLATE.md * Add PR links to Version 0.6.0 in CHANGELOG.md * Add PR links for Unreleased in CHANGELOG.md * Update PULL_REQUEST_TEMPLATE.md * Fixing Function Signatures (#871) * added tpu docs * added tpu flags * add tpu docs + init training call * amp * amp * amp * amp * optimizer step * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> Co-authored-by: Luis Capelo <luiscape@gmail.com> Co-authored-by: Akshay Kulkarni <akshayk.vnit@gmail.com> Co-authored-by: Ethan Harris <ewah1g13@soton.ac.uk> Co-authored-by: Shikhar Chauhan <xssChauhan@users.noreply.github.com>
2020-02-17 21:01:20 +00:00
# bookkeeping
outputs = []
# run epoch
for batch_idx, (batch, is_last_batch) in self.profiler.profile_iterable(
enumerate(_with_is_last(train_dataloader)), "get_train_batch"
):
# stop epoch if we limited the number of training batches
if batch_idx >= self.num_training_batches:
break
self.batch_idx = batch_idx
model.global_step = self.global_step
# ---------------
# RUN TRAIN STEP
# ---------------
_outputs = self.run_training_batch(batch, batch_idx)
batch_result, grad_norm_dic, batch_step_metrics, batch_output = _outputs
# only track outputs when user implementes training_epoch_end
# otherwise we will build up unecessary memory
if self.is_overriden('training_epoch_end', model=self.get_model()):
outputs.append(batch_output)
# when returning -1 from train_step, we end epoch early
early_stop_epoch = batch_result == -1
# TODO: consolidate all actions that need to take place only after
# self.accumulate_grad_batches steps (optimizer step, lr update, global step increment)
if (self.batch_idx + 1) % self.accumulate_grad_batches == 0:
# update lr
self.update_learning_rates(interval='step')
# ---------------
# RUN VAL STEP
# ---------------
is_val_check_batch = (batch_idx + 1) % self.val_check_batch == 0
can_check_epoch = (self.current_epoch + 1) % self.check_val_every_n_epoch == 0
can_check_val = not self.disable_validation and can_check_epoch
should_check_val = is_val_check_batch or early_stop_epoch
should_check_val = should_check_val or (is_last_batch and self.val_check_batch == float('inf'))
should_check_val = can_check_val and should_check_val
# ---------------
# CHECKPOINTING, EARLY STOPPING
# ---------------
# fast_dev_run always forces val checking after train batch
if self.fast_dev_run or should_check_val:
self.run_evaluation(test_mode=self.testing)
self.call_checkpoint_callback()
self.call_early_stop_callback()
# when logs should be saved
should_save_log = (batch_idx + 1) % self.log_save_interval == 0 or early_stop_epoch
if should_save_log or self.fast_dev_run:
if self.proc_rank == 0 and self.logger is not None:
self.logger.save()
# when metrics should be logged
should_log_metrics = batch_idx % self.row_log_interval == 0 or early_stop_epoch
if should_log_metrics or self.fast_dev_run:
# logs user requested information to logger
self.log_metrics(batch_step_metrics, grad_norm_dic)
# progress global step according to grads progress
if (self.batch_idx + 1) % self.accumulate_grad_batches == 0:
self.global_step += 1
self.total_batch_idx += 1
# max steps reached, end training
if self.max_steps is not None and self.max_steps == self.global_step:
break
# end epoch early
# stop when the flag is changed or we've gone past the amount
# requested in the batches
if early_stop_epoch or self.fast_dev_run:
break
if self.use_horovod:
hvd.join(hvd.local_rank() if self.on_gpu else -1)
# process epoch outputs
model = self.get_model()
if self.is_overriden('training_epoch_end', model=model):
epoch_output = model.training_epoch_end(outputs)
_processed_outputs = self.process_output(epoch_output)
log_epoch_metrics = _processed_outputs[2]
callback_epoch_metrics = _processed_outputs[3]
self.log_metrics(log_epoch_metrics, {})
self.callback_metrics.update(callback_epoch_metrics)
# when no val loop is present or fast-dev-run still need to call checkpoints
if not self.is_overriden('validation_step') and not (self.fast_dev_run or should_check_val):
self.call_checkpoint_callback()
self.call_early_stop_callback()
# Epoch end events
with self.profiler.profile('on_epoch_end'):
# callbacks
self.on_epoch_end()
# model hooks
if self.is_function_implemented('on_epoch_end'):
model.on_epoch_end()
def run_training_batch(self, batch, batch_idx):
# track grad norms
grad_norm_dic = {}
# track all metrics for callbacks
all_callback_metrics = []
# track metrics to log
all_log_metrics = []
if batch is None:
return 0, grad_norm_dic, {}, {}
# Batch start events
with self.profiler.profile('on_batch_start'):
# callbacks
self.on_batch_start()
# hooks
if self.is_function_implemented('on_batch_start'):
response = self.get_model().on_batch_start(batch)
if response == -1:
return -1, grad_norm_dic, {}, {}
splits = [batch]
if self.truncated_bptt_steps is not None:
model_ref = self.get_model()
with self.profiler.profile('tbptt_split_batch'):
splits = model_ref.tbptt_split_batch(batch, self.truncated_bptt_steps)
self.hiddens = None
for split_idx, split_batch in enumerate(splits):
self.split_idx = split_idx
for opt_idx, optimizer in self._get_optimizers_iterable():
# make sure only the gradients of the current optimizer's paramaters are calculated
# in the training step to prevent dangling gradients in multiple-optimizer setup.
if len(self.optimizers) > 1:
for param in self.get_model().parameters():
param.requires_grad = False
for group in optimizer.param_groups:
for param in group['params']:
param.requires_grad = True
# wrap the forward step in a closure so second order methods work
def optimizer_closure():
# forward pass
with self.profiler.profile('model_forward'):
if self.use_amp and self.use_native_amp:
with torch.cuda.amp.autocast():
output_dict = self.training_forward(split_batch, batch_idx,
opt_idx, self.hiddens)
else:
output_dict = self.training_forward(split_batch, batch_idx, opt_idx, self.hiddens)
# format and reduce outputs accordingly
processed_output = self.process_output(output_dict, train=True)
closure_loss, progress_bar_metrics, log_metrics, callback_metrics, self.hiddens = processed_output
# accumulate loss
# (if accumulate_grad_batches = 1 no effect)
closure_loss = closure_loss / self.accumulate_grad_batches
# backward pass
model_ref = self.get_model()
with self.profiler.profile('model_backward'):
Enable TPU support (#868) * added tpu docs * added tpu flags * add tpu docs + init training call * amp * amp * amp * amp * optimizer step * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * fix test pkg create (#873) * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * Update pytorch_lightning/trainer/trainer.py Co-Authored-By: Luis Capelo <luiscape@gmail.com> * Fix segmentation example (#876) * removed torchvision model and added custom model * minor fix * Fixed relative imports issue * Fix/typo (#880) * Update greetings.yml * Update greetings.yml * Changelog (#869) * Create CHANGELOG.md * Update CHANGELOG.md * Update CHANGELOG.md * Update PULL_REQUEST_TEMPLATE.md * Update PULL_REQUEST_TEMPLATE.md * Add PR links to Version 0.6.0 in CHANGELOG.md * Add PR links for Unreleased in CHANGELOG.md * Update PULL_REQUEST_TEMPLATE.md * Fixing Function Signatures (#871) * added tpu docs * added tpu flags * add tpu docs + init training call * amp * amp * amp * amp * optimizer step * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> Co-authored-by: Luis Capelo <luiscape@gmail.com> Co-authored-by: Akshay Kulkarni <akshayk.vnit@gmail.com> Co-authored-by: Ethan Harris <ewah1g13@soton.ac.uk> Co-authored-by: Shikhar Chauhan <xssChauhan@users.noreply.github.com>
2020-02-17 21:01:20 +00:00
model_ref.backward(self, closure_loss, optimizer, opt_idx)
# track metrics for callbacks
all_callback_metrics.append(callback_metrics)
# track progress bar metrics
Progress bar callback (#1450) * squash and rebase sanity check hooks sanity check callback hook finish moved core progress bar functionality into callback wip remove duplicate merge clean up imports docs sanity check progress bar main sanity move callback calls init progrss bar callback configuration and docs changelog rate decorator pass process_position disable on rank > 0 position index is_enabled remove decorator refactor init tqdm bars callback method ordering cannot reset when disabled sequence -> list default values fix has no attr _time() move on_val_end to proper place fix the pickle issue update warning properties check for None remove old comment switch order pull out non-tqdm functionality into base class documentation for the base class docs fix refresh rate issue in validation restrict type hint of trainer arg more docs update trainer docs rst docs fix lines too long fix test add missing type hints fix typo move docstring to __init__ solves doctest failures remove doctest :(( can't fix the pickle error fix example simplify by saving trainer reference fix docs errors move docstring initial value multiple val checks per epoch simpler handling of inf dataset sizes update inf docs renamed training_tqdm_dict rename get_tqdm_dict rename occurences of tqdm update changelog fix doctest fix formatting errors added callback tests progress bar on off test more tests for progress bar weird test fix? add ignored property disable default progress bar in LR finder change enable/disable behavior trying doctest in CI again undo doctest pickle error undo doctest pickle error :(( remove progress_bar_callback Trainer arg and fix tests restore progress bar after auto lr find update docs fix rebase fix wrong negation * fix fast dev run total * more thorough testing * remove old args * fix merge * fix merge * separate tests * type hint total batches * reduce if Co-Authored-By: Jirka Borovec <Borda@users.noreply.github.com> * is_disabled Co-Authored-By: Jirka Borovec <Borda@users.noreply.github.com> * is_enabled Co-Authored-By: Jirka Borovec <Borda@users.noreply.github.com> * rename enabled/disabled * move deprecated api * remove duplicated test from merge * fix rename is_disabled * newline * test also testprogress for fast dev run Co-authored-by: J. Borovec <jirka.borovec@seznam.cz> Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com>
2020-04-24 00:46:18 +00:00
self.add_progress_bar_metrics(progress_bar_metrics)
all_log_metrics.append(log_metrics)
if self.use_horovod:
# Synchronize Horovod to ensure gradient manipulations (e.g., loss scaling) are valid
optimizer.synchronize()
# insert after step hook
if self.is_function_implemented('on_after_backward'):
model_ref = self.get_model()
with self.profiler.profile('on_after_backward'):
model_ref.on_after_backward()
return closure_loss, callback_metrics
# calculate loss
loss, batch_output = optimizer_closure()
# check if loss or model weights are nan
if self.terminate_on_nan:
self.detect_nan_tensors(loss)
# track total loss for logging (avoid mem leaks)
self.batch_loss_value.append(loss)
# gradient update with accumulated gradients
if (self.batch_idx + 1) % self.accumulate_grad_batches == 0:
# track gradient norms when requested
if batch_idx % self.row_log_interval == 0:
if self.track_grad_norm > 0:
model = self.get_model()
grad_norm_dic = model.grad_norm(
self.track_grad_norm)
# clip gradients
if self.use_amp and self.use_native_amp:
self.scaler.unscale_(optimizer)
self.clip_gradients()
# calls .step(), .zero_grad()
# override function to modify this behavior
model = self.get_model()
with self.profiler.profile('optimizer_step'):
Clean up dataloader logic (#926) * added get dataloaders directly using a getter * deleted decorator * added prepare_data hook * refactored dataloader init * refactored dataloader init * added dataloader reset flag and main loop * added dataloader reset flag and main loop * added dataloader reset flag and main loop * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * made changes * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed bad loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixed error in .fit with loaders * fixes #909 * fixes #909 * bug fix * Fixes #902
2020-02-25 03:23:25 +00:00
model.optimizer_step(self.current_epoch, batch_idx,
optimizer, opt_idx,
lambda: optimizer_closure()[0])
# calculate running loss for display
self.running_loss.append(self.batch_loss_value.mean())
# reset for next set of accumulated grads
self.batch_loss_value.reset()
# Batch end events
with self.profiler.profile('on_batch_end'):
# callbacks
self.on_batch_end()
# model hooks
if self.is_function_implemented('on_batch_end'):
self.get_model().on_batch_end()
# collapse all metrics into one dict
all_log_metrics = {k: v for d in all_log_metrics for k, v in d.items()}
# track all metrics for callbacks
self.callback_metrics.update({k: v for d in all_callback_metrics for k, v in d.items()})
return 0, grad_norm_dic, all_log_metrics, batch_output
def _get_optimizers_iterable(self):
if not self.optimizer_frequencies:
# call training_step once per optimizer
return list(enumerate(self.optimizers))
optimizer_freq_cumsum = np.cumsum(self.optimizer_frequencies)
optimizers_loop_length = optimizer_freq_cumsum[-1]
current_place_in_loop = self.total_batch_idx % optimizers_loop_length
# find optimzier index by looking for the first {item > current_place} in the cumsum list
opt_idx = np.argmax(optimizer_freq_cumsum > current_place_in_loop)
return [(opt_idx, self.optimizers[opt_idx])]
def run_training_teardown(self):
# Train end events
with self.profiler.profile('on_train_end'):
# callbacks
self.on_train_end()
# model hooks
if self.is_function_implemented('on_train_end'):
self.get_model().on_train_end()
if self.logger is not None:
self.logger.finalize("success")
# summarize profile results
self.profiler.describe()
def training_forward(self, batch, batch_idx, opt_idx, hiddens):
"""
Handle forward for each training case (distributed, single gpu, etc...)
:param batch:
:param batch_idx:
:return:
"""
# ---------------
# FORWARD
# ---------------
# enable not needing to add opt_idx to training_step
args = [batch, batch_idx]
if len(self.optimizers) > 1:
if self.has_arg('training_step', 'optimizer_idx'):
args.append(opt_idx)
else:
2020-03-06 12:05:33 +00:00
num_opts = len(self.optimizers)
raise ValueError(
2020-03-06 12:05:33 +00:00
f'Your LightningModule defines {num_opts} optimizers but '
f'training_step is missing the "optimizer_idx" argument.'
)
# pass hiddens if using tbptt
if self.truncated_bptt_steps is not None:
args.append(hiddens)
# distributed forward
if self.use_ddp or self.use_ddp2 or self.use_dp:
output = self.model(*args)
# Horovod
elif self.use_horovod and self.on_gpu:
2020-04-23 19:03:39 +00:00
batch = self.transfer_batch_to_gpu(batch, hvd.local_rank())
args[0] = batch
output = self.model.training_step(*args)
# single GPU forward
elif self.single_gpu:
gpu_id = 0
if isinstance(self.data_parallel_device_ids, list):
gpu_id = self.data_parallel_device_ids[0]
# Don't copy the batch since there is a single gpu that the batch could
# be referenced from and if there are multiple optimizers the batch will
# wind up copying it to the same device repeatedly.
batch = self.transfer_batch_to_gpu(batch, gpu_id)
args[0] = batch
output = self.model.training_step(*args)
Enable TPU support (#868) * added tpu docs * added tpu flags * add tpu docs + init training call * amp * amp * amp * amp * optimizer step * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * fix test pkg create (#873) * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * Update pytorch_lightning/trainer/trainer.py Co-Authored-By: Luis Capelo <luiscape@gmail.com> * Fix segmentation example (#876) * removed torchvision model and added custom model * minor fix * Fixed relative imports issue * Fix/typo (#880) * Update greetings.yml * Update greetings.yml * Changelog (#869) * Create CHANGELOG.md * Update CHANGELOG.md * Update CHANGELOG.md * Update PULL_REQUEST_TEMPLATE.md * Update PULL_REQUEST_TEMPLATE.md * Add PR links to Version 0.6.0 in CHANGELOG.md * Add PR links for Unreleased in CHANGELOG.md * Update PULL_REQUEST_TEMPLATE.md * Fixing Function Signatures (#871) * added tpu docs * added tpu flags * add tpu docs + init training call * amp * amp * amp * amp * optimizer step * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> Co-authored-by: Luis Capelo <luiscape@gmail.com> Co-authored-by: Akshay Kulkarni <akshayk.vnit@gmail.com> Co-authored-by: Ethan Harris <ewah1g13@soton.ac.uk> Co-authored-by: Shikhar Chauhan <xssChauhan@users.noreply.github.com>
2020-02-17 21:01:20 +00:00
# TPU support
elif self.use_tpu:
2020-04-23 19:03:39 +00:00
batch = self.transfer_batch_to_tpu(batch)
Enable TPU support (#868) * added tpu docs * added tpu flags * add tpu docs + init training call * amp * amp * amp * amp * optimizer step * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * fix test pkg create (#873) * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * Update pytorch_lightning/trainer/trainer.py Co-Authored-By: Luis Capelo <luiscape@gmail.com> * Fix segmentation example (#876) * removed torchvision model and added custom model * minor fix * Fixed relative imports issue * Fix/typo (#880) * Update greetings.yml * Update greetings.yml * Changelog (#869) * Create CHANGELOG.md * Update CHANGELOG.md * Update CHANGELOG.md * Update PULL_REQUEST_TEMPLATE.md * Update PULL_REQUEST_TEMPLATE.md * Add PR links to Version 0.6.0 in CHANGELOG.md * Add PR links for Unreleased in CHANGELOG.md * Update PULL_REQUEST_TEMPLATE.md * Fixing Function Signatures (#871) * added tpu docs * added tpu flags * add tpu docs + init training call * amp * amp * amp * amp * optimizer step * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added auto data transfer to TPU * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print * added test return and print Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> Co-authored-by: Luis Capelo <luiscape@gmail.com> Co-authored-by: Akshay Kulkarni <akshayk.vnit@gmail.com> Co-authored-by: Ethan Harris <ewah1g13@soton.ac.uk> Co-authored-by: Shikhar Chauhan <xssChauhan@users.noreply.github.com>
2020-02-17 21:01:20 +00:00
args[0] = batch
output = self.model.training_step(*args)
# CPU forward
else:
output = self.model.training_step(*args)
# allow any mode to define training_step_end
# do something will all the dp outputs (like softmax)
if self.is_overriden('training_step_end'):
model_ref = self.get_model()
with self.profiler.profile('training_step_end'):
output = model_ref.training_step_end(output)
# allow any mode to define training_end
# TODO: remove in 1.0.0
if self.is_overriden('training_end'):
model_ref = self.get_model()
with self.profiler.profile('training_end'):
output = model_ref.training_end(output)
rank_zero_warn('`training_end` was deprecated in 0.7.0 and will be removed 1.0.0.'
' Use training_epoch_end instead', DeprecationWarning)
return output
proper checkpoint implementation (#1043) * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * name formatting * version * testing * add test * fix test * Update model_checkpoint.py * doctests * pylint * tests * debug * debug * enabled early stopping/checkpooiunt even without val step * fix MNIST download (#1044) * fix MNIST download * simple * name formatting * version * testing * add test * fix test * doctests * tests * debug * debug * rebased 1041 * rebased 1041 * tests * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com>
2020-03-05 04:02:19 +00:00
def update_learning_rates(self, interval: str):
"""Update learning rates.
Args:
interval: either 'epoch' or 'step'.
"""
if not self.lr_schedulers:
return
for lr_scheduler in self.lr_schedulers:
current_idx = self.batch_idx if interval == 'step' else self.current_epoch
current_idx += 1 # account for both batch and epoch starts from 0
# Take step if call to update_learning_rates matches the interval key and
# the current step modulo the schedulers frequency is zero
if lr_scheduler['interval'] == interval and current_idx % lr_scheduler['frequency'] == 0:
# If instance of ReduceLROnPlateau, we need to pass validation loss
if lr_scheduler['reduce_on_plateau']:
monitor_key = lr_scheduler['monitor']
monitor_val = self.callback_metrics.get(monitor_key)
if monitor_val is None:
avail_metrics = ','.join(list(self.callback_metrics.keys()))
raise MisconfigurationException(
f'ReduceLROnPlateau conditioned on metric {monitor_key}'
f' which is not available. Available metrics are: {avail_metrics}.'
' Condition can be set using `monitor` key in lr scheduler dict'
)
lr_scheduler['scheduler'].step(monitor_val)
else:
lr_scheduler['scheduler'].step()
proper checkpoint implementation (#1043) * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * enabled early stopping/checkpooiunt even without val step * name formatting * version * testing * add test * fix test * Update model_checkpoint.py * doctests * pylint * tests * debug * debug * enabled early stopping/checkpooiunt even without val step * fix MNIST download (#1044) * fix MNIST download * simple * name formatting * version * testing * add test * fix test * doctests * tests * debug * debug * rebased 1041 * rebased 1041 * tests * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 * rebased 1041 Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com>
2020-03-05 04:02:19 +00:00
def call_checkpoint_callback(self):
if self.checkpoint_callback is not None:
self.checkpoint_callback.on_validation_end(self, self.get_model())
def call_early_stop_callback(self):
if self.early_stop_callback:
self.early_stop_callback.on_epoch_end(self, self.get_model())
def _with_is_last(iterable):
"""Pass through values from the given iterable with an added boolean indicating if this is the last item.
See `https://stackoverflow.com/a/1630350 <https://stackoverflow.com/a/1630350>`_"""
it = iter(iterable)
last = next(it)
for val in it:
# yield last and has next
yield last, False
last = val
# yield last, no longer has next
yield last, True