lightning/tests/loggers/test_base.py

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import pickle
from typing import Optional
from unittest.mock import MagicMock
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
import numpy as np
from pytorch_lightning import Trainer
from pytorch_lightning.loggers import LightningLoggerBase, LoggerCollection
from pytorch_lightning.utilities import rank_zero_only
from tests.base import EvalModelTemplate
def test_logger_collection():
mock1 = MagicMock()
mock2 = MagicMock()
logger = LoggerCollection([mock1, mock2])
assert logger[0] == mock1
assert logger[1] == mock2
assert logger.experiment[0] == mock1.experiment
assert logger.experiment[1] == mock2.experiment
assert logger.save_dir is None
logger.update_agg_funcs({'test': np.mean}, np.sum)
mock1.update_agg_funcs.assert_called_once_with({'test': np.mean}, np.sum)
mock2.update_agg_funcs.assert_called_once_with({'test': np.mean}, np.sum)
logger.agg_and_log_metrics({'test': 2.0}, 4)
mock1.agg_and_log_metrics.assert_called_once_with({'test': 2.0}, 4)
mock2.agg_and_log_metrics.assert_called_once_with({'test': 2.0}, 4)
logger.close()
mock1.close.assert_called_once()
mock2.close.assert_called_once()
class CustomLogger(LightningLoggerBase):
def __init__(self):
super().__init__()
self.hparams_logged = None
self.metrics_logged = None
self.finalized = False
@property
def experiment(self):
return 'test'
@rank_zero_only
def log_hyperparams(self, params):
self.hparams_logged = params
@rank_zero_only
def log_metrics(self, metrics, step):
self.metrics_logged = metrics
@rank_zero_only
def finalize(self, status):
self.finalized_status = status
@property
def save_dir(self) -> Optional[str]:
"""
Return the root directory where experiment logs get saved, or `None` if the logger does not
save data locally.
"""
return None
@property
def name(self):
return "name"
@property
def version(self):
return "1"
def test_custom_logger(tmpdir):
hparams = EvalModelTemplate.get_default_hparams()
replace Hparams by init args (#1896) * remove the need for hparams * remove the need for hparams * remove the need for hparams * remove the need for hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * fixed * fixed * fixed * fixed * fixed * fixed * fixed * fixed * fixed * fixed * fixed * fixed * fixed * fixed * finished moco * basic * testing * todo * recurse * hparams * persist * hparams * chlog * tests * tests * tests * tests * tests * tests * review * saving * tests * tests * tests * docs * finished moco * hparams * review * Apply suggestions from code review Co-authored-by: Adrian Wälchli <aedu.waelchli@gmail.com> * hparams * overwrite * transform * transform * transform * transform * cleaning * cleaning * tests * examples * examples * examples * Apply suggestions from code review Co-authored-by: Adrian Wälchli <aedu.waelchli@gmail.com> * chp key * tests * Apply suggestions from code review * class * updated docs * updated docs * updated docs * updated docs * save * wip * fix * flake8 Co-authored-by: Jirka <jirka@pytorchlightning.ai> Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> Co-authored-by: Adrian Wälchli <aedu.waelchli@gmail.com>
2020-05-24 22:59:08 +00:00
model = EvalModelTemplate(**hparams)
logger = CustomLogger()
trainer = Trainer(
max_epochs=1,
limit_train_batches=0.05,
logger=logger,
default_root_dir=tmpdir,
)
result = trainer.fit(model)
assert result == 1, "Training failed"
assert logger.hparams_logged == hparams
assert logger.metrics_logged != {}
assert logger.finalized_status == "success"
def test_multiple_loggers(tmpdir):
hparams = EvalModelTemplate.get_default_hparams()
replace Hparams by init args (#1896) * remove the need for hparams * remove the need for hparams * remove the need for hparams * remove the need for hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * replace self.hparams * fixed * fixed * fixed * fixed * fixed * fixed * fixed * fixed * fixed * fixed * fixed * fixed * fixed * fixed * finished moco * basic * testing * todo * recurse * hparams * persist * hparams * chlog * tests * tests * tests * tests * tests * tests * review * saving * tests * tests * tests * docs * finished moco * hparams * review * Apply suggestions from code review Co-authored-by: Adrian Wälchli <aedu.waelchli@gmail.com> * hparams * overwrite * transform * transform * transform * transform * cleaning * cleaning * tests * examples * examples * examples * Apply suggestions from code review Co-authored-by: Adrian Wälchli <aedu.waelchli@gmail.com> * chp key * tests * Apply suggestions from code review * class * updated docs * updated docs * updated docs * updated docs * save * wip * fix * flake8 Co-authored-by: Jirka <jirka@pytorchlightning.ai> Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> Co-authored-by: Adrian Wälchli <aedu.waelchli@gmail.com>
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model = EvalModelTemplate(**hparams)
logger1 = CustomLogger()
logger2 = CustomLogger()
trainer = Trainer(
max_epochs=1,
limit_train_batches=0.05,
logger=[logger1, logger2],
default_root_dir=tmpdir,
)
result = trainer.fit(model)
assert result == 1, "Training failed"
assert logger1.hparams_logged == hparams
assert logger1.metrics_logged != {}
assert logger1.finalized_status == "success"
assert logger2.hparams_logged == hparams
assert logger2.metrics_logged != {}
assert logger2.finalized_status == "success"
def test_multiple_loggers_pickle(tmpdir):
"""Verify that pickling trainer with multiple loggers works."""
logger1 = CustomLogger()
logger2 = CustomLogger()
Continue Jeremy's early stopping PR #1504 (#2391) * add state_dict for early stopping * move best attr after monitor_op defined * improve early stopping and model checkpoint callbacks * fix formatting * fix attr init order * clean up setting of default_root_dir attr * logger needs default root dir set first * reorg trainer init * remove direct references to checkpoint callback * more fixes * more bugfixes * run callbacks at epoch end * update tests to use on epoch end * PR cleanup * address failing tests * refactor for homogeneity * fix merge conflict * separate tests * tests for early stopping bug regressions * small fixes * revert model checkpoint change * typo fix * fix tests * update train loop * cannot pass an int as default_save_path * refactor log message * fix test case * appease the linter * fix some doctests * move config to callback * fixes from rebase * fixes from rebase * chlog * docs * reformat * formatting * fix * fix * fixes from rebase * add new test for patience * Update pytorch_lightning/callbacks/model_checkpoint.py Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> * Update pytorch_lightning/callbacks/model_checkpoint.py Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> * Update tests/callbacks/test_early_stopping.py Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> * fix formatting * remove enable_early_stop attribute * add state_dict for early stopping * move best attr after monitor_op defined * improve early stopping and model checkpoint callbacks * fix formatting * fix attr init order * clean up setting of default_root_dir attr * logger needs default root dir set first * reorg trainer init * remove direct references to checkpoint callback * more fixes * more bugfixes * run callbacks at epoch end * update tests to use on epoch end * PR cleanup * address failing tests * refactor for homogeneity * fix merge conflict * separate tests * tests for early stopping bug regressions * small fixes * revert model checkpoint change * typo fix * fix tests * update train loop * fix test case * appease the linter * fix some doctests * move config to callback * fixes from rebase * fixes from rebase * chlog * docs * reformat * formatting * fix * fix * fixes from rebase * add new test for patience * Update pytorch_lightning/callbacks/model_checkpoint.py Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> * Update pytorch_lightning/callbacks/model_checkpoint.py Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> * Update tests/callbacks/test_early_stopping.py Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> * fix formatting * remove enable_early_stop attribute * fix test with new epoch indexing * fix progress bar totals * fix off by one error (see #2289) epoch starts at 0 now * added missing imports * fix hpc_save folderpath * fix formatting * fix tests * small fixes from a rebase * fix * tmpdir * tmpdir * tmpdir * wandb * fix merge conflict * add back evaluation after training * test_resume_early_stopping_from_checkpoint TODO * undo the horovod check * update changelog * remove a duplicate test from merge error * try fix dp_resume test * add the logger fix from master * try remove default_root_dir * try mocking numpy * try import numpy in docs test * fix wandb test * pep 8 fix * skip if no amp * dont mock when doctesting * install extra * fix the resume ES test * undo conf.py changes * revert remove comet pickle from test * Update CHANGELOG.md Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> * Update weights_loading.rst * Update weights_loading.rst * Update weights_loading.rst * renamed flag * renamed flag * revert the None check in logger experiment name/version * add the old comments * _experiment * test chckpointing on DDP * skip the ddp test on windows * cloudpickle * renamed flag * renamed flag * parentheses for clarity * apply suggestion max epochs Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> Co-authored-by: Jeremy Jordan <jtjordan@ncsu.edu> Co-authored-by: Jirka <jirka@pytorchlightning.ai> Co-authored-by: Jeremy Jordan <13970565+jeremyjordan@users.noreply.github.com> Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com> Co-authored-by: William Falcon <waf2107@columbia.edu>
2020-06-29 01:36:46 +00:00
trainer = Trainer(
default_root_dir=tmpdir,
max_epochs=1,
logger=[logger1, logger2],
)
pkl_bytes = pickle.dumps(trainer)
trainer2 = pickle.loads(pkl_bytes)
trainer2.logger.log_metrics({"acc": 1.0}, 0)
assert logger1.metrics_logged != {}
assert logger2.metrics_logged != {}
def test_adding_step_key(tmpdir):
logged_step = 0
def _validation_epoch_end(outputs):
nonlocal logged_step
logged_step += 1
return {"log": {"step": logged_step, "val_acc": logged_step / 10}}
def _training_epoch_end(outputs):
nonlocal logged_step
logged_step += 1
return {"log": {"step": logged_step, "train_acc": logged_step / 10}}
def _log_metrics_decorator(log_metrics_fn):
def decorated(metrics, step):
if "val_acc" in metrics:
assert step == logged_step
return log_metrics_fn(metrics, step)
return decorated
model = EvalModelTemplate()
model.validation_epoch_end = _validation_epoch_end
model.training_epoch_end = _training_epoch_end
trainer = Trainer(
Replaces ddp .spawn with subprocess (#2029) * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * replace ddp spawn with subprocess * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix * hot fix
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max_epochs=3,
default_root_dir=tmpdir,
limit_train_batches=0.1,
[WIP] Rename overfit_pct to overfit_batches (and fix) and val_percent_check and test_percent_check (and fix) (#2213) * fixed percent check for val/test * fixed percent check for val/test * fixed percent check for val/test * fixed percent check for val/test * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * overfit_pct now uses train loaders for val and test and does not shuffle * add on fit_start on fit_end hooks * add on fit_start on fit_end hooks * add on fit_start on fit_end hooks Co-authored-by: Adrian Wälchli <aedu.waelchli@gmail.com> Co-authored-by: Rohit Gupta <rohitgr1998@gmail.com> Co-authored-by: Jirka Borovec <Borda@users.noreply.github.com>
2020-06-17 12:03:28 +00:00
limit_val_batches=0.1,
num_sanity_val_steps=0,
)
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
trainer.logger.log_metrics = _log_metrics_decorator(
trainer.logger.log_metrics)
trainer.fit(model)
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
def test_with_accumulate_grad_batches():
"""Checks if the logging is performed once for `accumulate_grad_batches` steps."""
class StoreHistoryLogger(CustomLogger):
def __init__(self):
super().__init__()
self.history = {}
@rank_zero_only
def log_metrics(self, metrics, step):
if step not in self.history:
self.history[step] = {}
self.history[step].update(metrics)
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>
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logger = StoreHistoryLogger()
np.random.seed(42)
for i, loss in enumerate(np.random.random(10)):
logger.agg_and_log_metrics({'loss': loss}, step=int(i / 5))
assert logger.history == {0: {'loss': 0.5623850983416314}}
logger.close()
assert logger.history == {0: {'loss': 0.5623850983416314}, 1: {'loss': 0.4778883735637184}}