Esempio n. 1
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def test_trains_pickle(tmpdir):
    """Verify that pickling trainer with TRAINS logger works."""
    tutils.reset_seed()

    # hparams = tutils.get_default_hparams()
    # model = LightningTestModel(hparams)
    TrainsLogger.set_bypass_mode(True)
    TrainsLogger.set_credentials(
        api_host='http://integration.trains.allegro.ai:8008',
        files_host='http://integration.trains.allegro.ai:8081',
        web_host='http://integration.trains.allegro.ai:8080',
    )
    logger = TrainsLogger(project_name="lightning_log",
                          task_name="pytorch lightning test")

    trainer_options = dict(default_root_dir=tmpdir,
                           max_epochs=1,
                           logger=logger)

    trainer = Trainer(**trainer_options)
    pkl_bytes = pickle.dumps(trainer)
    trainer2 = pickle.loads(pkl_bytes)
    trainer2.logger.log_metrics({"acc": 1.0})
    trainer2.logger.finalize()
    logger.finalize()
Esempio n. 2
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def test_trains_logger(tmpdir):
    """Verify that basic functionality of TRAINS logger works."""
    tutils.reset_seed()

    hparams = tutils.get_default_hparams()
    model = LightningTestModel(hparams)
    TrainsLogger.set_bypass_mode(True)
    TrainsLogger.set_credentials(
        api_host='http://integration.trains.allegro.ai:8008',
        files_host='http://integration.trains.allegro.ai:8081',
        web_host='http://integration.trains.allegro.ai:8080',
    )
    logger = TrainsLogger(project_name="lightning_log",
                          task_name="pytorch lightning test")

    trainer_options = dict(default_root_dir=tmpdir,
                           max_epochs=1,
                           train_percent_check=0.05,
                           logger=logger)
    trainer = Trainer(**trainer_options)
    result = trainer.fit(model)

    print('result finished')
    logger.finalize()
    assert result == 1, "Training failed"
Esempio n. 3
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def test_trains_logger(tmpdir):
    """Verify that basic functionality of TRAINS logger works."""
    tutils.reset_seed()

    hparams = tutils.get_hparams()
    model = LightningTestModel(hparams)
    logger = TrainsLogger(project_name="examples",
                          task_name="pytorch lightning test")

    trainer_options = dict(default_save_path=tmpdir,
                           max_epochs=1,
                           train_percent_check=0.05,
                           logger=logger)
    trainer = Trainer(**trainer_options)
    result = trainer.fit(model)

    print('result finished')
    assert result == 1, "Training failed"
Esempio n. 4
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def test_trains_pickle(tmpdir):
    """Verify that pickling trainer with TRAINS logger works."""
    tutils.reset_seed()

    # hparams = tutils.get_hparams()
    # model = LightningTestModel(hparams)

    logger = TrainsLogger(project_name="examples",
                          task_name="pytorch lightning test")

    trainer_options = dict(default_save_path=tmpdir,
                           max_epochs=1,
                           logger=logger)

    trainer = Trainer(**trainer_options)
    pkl_bytes = pickle.dumps(trainer)
    trainer2 = pickle.loads(pkl_bytes)
    trainer2.logger.log_metrics({"acc": 1.0})
Esempio n. 5
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def test_trains_logger(tmpdir):
    """Verify that basic functionality of TRAINS logger works."""
    model = EvalModelTemplate()
    TrainsLogger.set_bypass_mode(True)
    TrainsLogger.set_credentials(api_host='http://integration.trains.allegro.ai:8008',
                                 files_host='http://integration.trains.allegro.ai:8081',
                                 web_host='http://integration.trains.allegro.ai:8080', )
    logger = TrainsLogger(project_name="lightning_log", task_name="pytorch lightning test")

    trainer = Trainer(
        default_root_dir=tmpdir,
        max_epochs=1,
        train_percent_check=0.05,
        logger=logger
    )
    result = trainer.fit(model)

    print('result finished')
    logger.finalize()
    assert result == 1, "Training failed"