def benchmark_train(args):
    cfg = setup(args)
    model = build_model(cfg)
    logger.info("Model:\n{}".format(model))
    if comm.get_world_size() > 1:
        model = DistributedDataParallel(
            model, device_ids=[comm.get_local_rank()], broadcast_buffers=False
        )
    optimizer = build_optimizer(cfg, model)
    checkpointer = DetectionCheckpointer(model, optimizer=optimizer)
    checkpointer.load(cfg.MODEL.WEIGHTS)

    cfg.defrost()
    cfg.DATALOADER.NUM_WORKERS = 0
    data_loader = build_detection_train_loader(cfg)
    dummy_data = list(itertools.islice(data_loader, 100))

    def f():
        while True:
            yield from DatasetFromList(dummy_data, copy=False)

    max_iter = 400
    trainer = SimpleTrainer(model, f(), optimizer)
    trainer.register_hooks(
        [hooks.IterationTimer(), hooks.PeriodicWriter([CommonMetricPrinter(max_iter)])]
    )
    trainer.train(1, max_iter)
    def build_hooks(self):
        r"""Build hooks

        We use: timing, lr scheduling, checkpointing, lr scheduling, ValidationLoss, writing events
        """
        cfg = self.cfg.clone()
        cfg.defrost()
        cfg.DATALOADER.NUM_WORKERS = 0  # save some memory and time for PreciseBN

        ret = [
            hooks.IterationTimer(),
            hooks.LRScheduler(self.optimizer, self.scheduler),
        ]

        # Do PreciseBN before checkpointer, because it updates the model and need to
        # be saved by checkpointer.
        # This is not always the best: if checkpointing has a different frequency,
        # some checkpoints may have more precise statistics than others.
        if comm.is_main_process():
            ret.append(
                hooks.PeriodicCheckpointer(self.checkpointer,
                                           cfg.SOLVER.CHECKPOINT_PERIOD))

        ret.append(ValidationLoss(cfg, VAL_TRANSF, cfg.VAL_LOG_PERIOD))

        if comm.is_main_process():
            # run writers in the end, so that evaluation metrics are written
            ret.append(
                hooks.PeriodicWriter(self.build_writers(),
                                     period=cfg.VAL_LOG_PERIOD))
        return ret
Пример #3
0
def do_train(cfg):
    model = instantiate(cfg.model)
    logger = logging.getLogger("detectron2")
    logger.info("Model:\n{}".format(model))
    model.to(cfg.train.device)

    cfg.optimizer.params.model = model
    optim = instantiate(cfg.optimizer)

    train_loader = instantiate(cfg.dataloader.train)

    model = create_ddp_model(model, **cfg.train.ddp)
    trainer = (AMPTrainer if cfg.train.amp.enabled else SimpleTrainer)(
        model, train_loader, optim)
    checkpointer = DetectionCheckpointer(
        model,
        cfg.train.output_dir,
        optimizer=optim,
        trainer=trainer,
    )
    trainer.register_hooks([
        hooks.IterationTimer(),
        hooks.LRScheduler(scheduler=instantiate(cfg.lr_multiplier)),
        hooks.PeriodicCheckpointer(checkpointer, **cfg.train.checkpointer)
        if comm.is_main_process() else None,
        hooks.EvalHook(cfg.train.eval_period, lambda: do_test(cfg, model)),
        hooks.PeriodicWriter(
            default_writers(cfg.train.output_dir, cfg.train.max_iter),
            period=cfg.train.log_period,
        ) if comm.is_main_process() else None,
    ])

    checkpointer.resume_or_load(cfg.train.init_checkpoint, resume=True)
    start_iter = 0
    trainer.train(start_iter, cfg.train.max_iter)
Пример #4
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def benchmark_train(args):
    cfg = setup(args)
    model = build_model(cfg)
    logger.info("Model:\n{}".format(model))
    if comm.get_world_size() > 1:
        model = DistributedDataParallel(model,
                                        device_ids=[comm.get_local_rank()],
                                        broadcast_buffers=False)
    optimizer = build_optimizer(cfg, model)
    checkpointer = DetectionCheckpointer(model, optimizer=optimizer)
    checkpointer.load(cfg.MODEL.WEIGHTS)

    cfg.defrost()
    cfg.DATALOADER.NUM_WORKERS = 2
    data_loader = build_detection_train_loader(cfg)
    dummy_data = list(itertools.islice(data_loader, 100))

    def f():
        data = DatasetFromList(dummy_data, copy=False, serialize=False)
        while True:
            yield from data

    max_iter = 400
    trainer = (AMPTrainer if cfg.SOLVER.AMP.ENABLED else SimpleTrainer)(
        model, f(), optimizer)
    trainer.register_hooks([
        hooks.IterationTimer(),
        hooks.PeriodicWriter([CommonMetricPrinter(max_iter)]),
        hooks.TorchProfiler(lambda trainer: trainer.iter == max_iter - 1,
                            cfg.OUTPUT_DIR,
                            save_tensorboard=True),
    ])
    trainer.train(1, max_iter)
Пример #5
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    def test_writer_hooks(self):
        model = _SimpleModel(sleep_sec=0.1)
        trainer = SimpleTrainer(model, self._data_loader("cpu"),
                                torch.optim.SGD(model.parameters(), 0.1))

        max_iter = 50

        with tempfile.TemporaryDirectory(prefix="detectron2_test") as d:
            json_file = os.path.join(d, "metrics.json")
            writers = [CommonMetricPrinter(max_iter), JSONWriter(json_file)]

            trainer.register_hooks([
                hooks.EvalHook(0, lambda: {"metric": 100}),
                hooks.PeriodicWriter(writers)
            ])
            with self.assertLogs(writers[0].logger) as logs:
                trainer.train(0, max_iter)

            with open(json_file, "r") as f:
                data = [json.loads(line.strip()) for line in f]
                self.assertEqual([x["iteration"] for x in data],
                                 [19, 39, 49, 50])
                # the eval metric is in the last line with iter 50
                self.assertIn("metric", data[-1],
                              "Eval metric must be in last line of JSON!")

            # test logged messages from CommonMetricPrinter
            self.assertEqual(len(logs.output), 3)
            for log, iter in zip(logs.output, [19, 39, 49]):
                self.assertIn(f"iter: {iter}", log)

            self.assertIn("eta: 0:00:00", logs.output[-1],
                          "Last ETA must be 0!")
Пример #6
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    def build_hooks(self):
        """
        Build a list of default hooks, including timing, evaluation,
        checkpointing, lr scheduling, precise BN, writing events.
        Returns:
            list[HookBase]:
        """
        logger = logging.getLogger(__name__)
        cfg = self.cfg.clone()
        cfg.defrost()
        cfg.DATALOADER.NUM_WORKERS = 0  # save some memory and time for PreciseBN

        ret = [
            hooks.IterationTimer(),
            hooks.LRScheduler(self.optimizer, self.scheduler),
        ]

        if cfg.SOLVER.SWA.ENABLED:
            ret.append(
                additional_hooks.SWA(
                    cfg.SOLVER.MAX_ITER,
                    cfg.SOLVER.SWA.PERIOD,
                    cfg.SOLVER.SWA.LR_START,
                    cfg.SOLVER.SWA.ETA_MIN_LR,
                    cfg.SOLVER.SWA.LR_SCHED,
                )
            )

        if cfg.TEST.PRECISE_BN.ENABLED and hooks.get_bn_modules(self.model):
            logger.info("Prepare precise BN dataset")
            ret.append(hooks.PreciseBN(
                # Run at the same freq as (but before) evaluation.
                cfg.TEST.EVAL_PERIOD,
                self.model,
                # Build a new data loader to not affect training
                self.build_train_loader(cfg),
                cfg.TEST.PRECISE_BN.NUM_ITER,
            ))
        # Do PreciseBN before checkpointer, because it updates the model and need to
        # be saved by checkpointer.
        # This is not always the best: if checkpointing has a different frequency,
        # some checkpoints may have more precise statistics than others.
        if comm.is_main_process():
            ret.append(hooks.PeriodicCheckpointer(self.checkpointer, cfg.SOLVER.CHECKPOINT_PERIOD))

        def test_and_save_results():
            self._last_eval_results = self.test(self.cfg, self.model)
            return self._last_eval_results

        # Do evaluation after checkpointer, because then if it fails,
        # we can use the saved checkpoint to debug.
        ret.append(hooks.EvalHook(cfg.TEST.EVAL_PERIOD, test_and_save_results))

        if comm.is_main_process():
            # run writers in the end, so that evaluation metrics are written
            ret.append(hooks.PeriodicWriter(self.build_writers(), 20))

        return ret
Пример #7
0
def do_train(args, cfg):
    """
    Args:
        cfg: an object with the following attributes:
            model: instantiate to a module
            dataloader.{train,test}: instantiate to dataloaders
            dataloader.evaluator: instantiate to evaluator for test set
            optimizer: instantaite to an optimizer
            lr_multiplier: instantiate to a fvcore scheduler
            train: other misc config defined in `configs/common/train.py`, including:
                output_dir (str)
                init_checkpoint (str)
                amp.enabled (bool)
                max_iter (int)
                eval_period, log_period (int)
                device (str)
                checkpointer (dict)
                ddp (dict)
    """
    model = instantiate(cfg.model)
    logger = logging.getLogger("detectron2")
    logger.info("Model:\n{}".format(model))
    model.to(cfg.train.device)

    cfg.optimizer.params.model = model
    optim = instantiate(cfg.optimizer)

    train_loader = instantiate(cfg.dataloader.train)

    model = create_ddp_model(model, **cfg.train.ddp)
    trainer = (AMPTrainer if cfg.train.amp.enabled else SimpleTrainer)(
        model, train_loader, optim)
    checkpointer = DetectionCheckpointer(
        model,
        cfg.train.output_dir,
        optimizer=optim,
        trainer=trainer,
    )
    trainer.register_hooks([
        hooks.IterationTimer(),
        hooks.LRScheduler(scheduler=instantiate(cfg.lr_multiplier)),
        hooks.PeriodicCheckpointer(checkpointer, **cfg.train.checkpointer)
        if comm.is_main_process() else None,
        hooks.EvalHook(cfg.train.eval_period, lambda: do_test(cfg, model)),
        hooks.PeriodicWriter(
            default_writers(cfg.train.output_dir, cfg.train.max_iter),
            period=cfg.train.log_period,
        ) if comm.is_main_process() else None,
    ])

    checkpointer.resume_or_load(cfg.train.init_checkpoint, resume=args.resume)
    if args.resume and checkpointer.has_checkpoint():
        # The checkpoint stores the training iteration that just finished, thus we start
        # at the next iteration
        start_iter = trainer.iter + 1
    else:
        start_iter = 0
    trainer.train(start_iter, cfg.train.max_iter)
Пример #8
0
    def build_hooks(self):
        """
        Build a list of default hooks, including timing, evaluation,
        checkpointing, lr scheduling, precise BN, writing events.
        Returns:
            list[HookBase]:
        """
        cfg = self.cfg.clone()
        cfg.defrost()
        cfg.DATALOADER.NUM_WORKERS = 0  # save some memory and time for PreciseBN

        ret = [
            hooks.IterationTimer(),
            hooks.LRScheduler(self.optimizer, self.scheduler),
            hooks.PreciseBN(
                # Run at the same freq as (but before) evaluation.
                cfg.TEST.EVAL_PERIOD,
                self.model,
                # Build a new data loader to not affect training
                self.build_train_loader(cfg),
                cfg.TEST.PRECISE_BN.NUM_ITER,
            ) if cfg.TEST.PRECISE_BN.ENABLED and get_bn_modules(self.model)
            else None,
        ]

        # Do PreciseBN before checkpointer, because it updates the model and need to
        # be saved by checkpointer.
        # This is not always the best: if checkpointing has a different frequency,
        # some checkpoints may have more precise statistics than others.
        if comm.is_main_process():
            if cfg.SOLVER.CHECKPOINT_BY_EPOCH:
                ckpt_period = cfg.SOLVER.CHECKPOINT_PERIOD * self.iters_per_epoch
            else:
                ckpt_period = cfg.SOLVER.CHECKPOINT_PERIOD
            ret.append(
                MyPeriodicCheckpointer(self.checkpointer,
                                       ckpt_period,
                                       max_to_keep=cfg.SOLVER.get(
                                           "NUM_CKPT_KEEP", 5),
                                       iters_per_epoch=self.iters_per_epoch))

        def test_and_save_results():
            self._last_eval_results = self.test(self.cfg, self.model)
            return self._last_eval_results

        # Do evaluation after checkpointer, because then if it fails,
        # we can use the saved checkpoint to debug.
        ret.append(hooks.EvalHook(cfg.TEST.EVAL_PERIOD, test_and_save_results))

        if comm.is_main_process():
            # run writers in the end, so that evaluation metrics are written
            ret.append(
                hooks.PeriodicWriter(self.build_writers(),
                                     period=cfg.TRAIN.get("PRINT_FREQ", 100)))
        return ret
Пример #9
0
    def build_hooks(self):
        cfg = self.cfg.clone()
        cfg.defrost()
        cfg.DATALOADER.NUM_WORKERS = 0  # save some memory and time for PreciseBN

        ret = [
            hooks.IterationTimer(),
            hooks.LRScheduler(self.optimizer, self.scheduler),
            hooks.PreciseBN(
                # Run at the same freq as (but before) evaluation.
                cfg.TEST.EVAL_PERIOD,
                self.model,
                # Build a new data loader to not affect training
                self.build_train_loader(cfg),
                cfg.TEST.PRECISE_BN.NUM_ITER,
            )
            if cfg.TEST.PRECISE_BN.ENABLED and get_bn_modules(self.model)
            else None,
        ]

        # Do PreciseBN before checkpointer, because it updates the model and need to
        # be saved by checkpointer.
        # This is not always the best: if checkpointing has a different frequency,
        # some checkpoints may have more precise statistics than others.
        if comm.is_main_process():
            ret.append(
                hooks.PeriodicCheckpointer(
                    self.checkpointer, cfg.SOLVER.CHECKPOINT_PERIOD
                )
            )

        def test_and_save_results_student():
            self._last_eval_results_student = self.test(self.cfg, self.model)
            _last_eval_results_student = {
                k + "_student": self._last_eval_results_student[k]
                for k in self._last_eval_results_student.keys()
            }
            return _last_eval_results_student

        def test_and_save_results_teacher():
            self._last_eval_results_teacher = self.test(
                self.cfg, self.model_teacher)
            return self._last_eval_results_teacher

        ret.append(hooks.EvalHook(cfg.TEST.EVAL_PERIOD,
                   test_and_save_results_student))
        ret.append(hooks.EvalHook(cfg.TEST.EVAL_PERIOD,
                   test_and_save_results_teacher))

        if comm.is_main_process():
            # run writers in the end, so that evaluation metrics are written
            ret.append(hooks.PeriodicWriter(self.build_writers(), period=20))
        return ret
Пример #10
0
    def build_hooks(self):
        """
        Only delete the LRScheduler hook
        """
        cfg = self.cfg.clone()
        cfg.defrost()
        cfg.DATALOADER.NUM_WORKERS = 0  # save some memory and time for PreciseBN

        ret = [
            hooks.IterationTimer(),
            hooks.PreciseBN(
                # Run at the same freq as (but before) evaluation.
                cfg.TEST.EVAL_PERIOD,
                self.model,
                # Build a new data loader to not affect training
                self.build_train_loader(cfg),
                cfg.TEST.PRECISE_BN.NUM_ITER,
            ) if cfg.TEST.PRECISE_BN.ENABLED and get_bn_modules(self.model)
            else None,
        ]

        # Do PreciseBN before checkpointer, because it updates the model and need to
        # be saved by checkpointer.
        # This is not always the best: if checkpointing has a different frequency,
        # some checkpoints may have more precise statistics than others.
        if comm.is_main_process():
            ret.append(
                hooks.PeriodicCheckpointer(self.checkpointer,
                                           cfg.SOLVER.CHECKPOINT_PERIOD))

        def test_and_save_results():
            self._last_eval_results = self.test(self.cfg, self.model)
            return self._last_eval_results

        # Do evaluation after checkpointer, because then if it fails,
        # we can use the saved checkpoint to debug.
        ret.append(hooks.EvalHook(cfg.TEST.EVAL_PERIOD, test_and_save_results))

        if comm.is_main_process():
            # run writers in the end, so that evaluation metrics are written
            ret.append(hooks.PeriodicWriter(self.build_writers()))
        return ret
Пример #11
0
    def build_hooks(self):
        """
        Build a list of default hooks, including timing, evaluation,
        checkpointing, lr scheduling, precise BN, writing events.

        Returns:
            list[HookBase]:
        """
        cfg = self.cfg.clone()
        cfg.defrost()
        cfg.DATALOADER.NUM_WORKERS = 0

        ret = [
            hooks.IterationTimer(),
            hooks.LRScheduler(self.optimizer, self.scheduler),
            hooks.PreciseBN(
                cfg.TEST.EVAL_PERIOD,
                self.model,
                self.build_train_loader(cfg),
                cfg.TEST.PRECISE_BN.NUM_ITER,
            )
            if cfg.TEST.PRECISE_BN.ENABLED and get_bn_modules(self.model)
            else None,
        ]

        if comm.is_main_process():
            ret.append(
                hooks.PeriodicCheckpointer(
                    self.checkpointer, cfg.SOLVER.CHECKPOINT_PERIOD
                )
            )

        def test_and_save_results():
            self._last_eval_results = self.test(self.cfg, self.model)
            return self._last_eval_results

        ret.append(hooks.EvalHook(cfg.TEST.EVAL_PERIOD, test_and_save_results))

        if comm.is_main_process():
            ret.append(hooks.PeriodicWriter(self.build_writers(), period=20))
        return ret
Пример #12
0
    def build_hooks(self):
        cfg = self.cfg.clone()
        cfg.defrost()
        cfg.DATALOADER.NUM_WORKERS = 0  # save some memory and time for PreciseBN

        ret = [
            hooks.IterationTimer(),
            hooks.LRScheduler(self.optimizer, self.scheduler),
            hooks.PreciseBN(
                # Run at the same freq as (but before) evaluation.
                cfg.TEST.EVAL_PERIOD,
                self.model,
                # Build a new data loader to not affect training
                self.build_train_loader(cfg),
                cfg.TEST.PRECISE_BN.NUM_ITER,
            ) if cfg.TEST.PRECISE_BN.ENABLED and get_bn_modules(self.model)
            else None,
        ]

        if comm.is_main_process():
            ret.append(
                hooks.PeriodicCheckpointer(self.checkpointer,
                                           cfg.SOLVER.CHECKPOINT_PERIOD))

        # def test_and_save_results():
        #     self._last_eval_results = self.test(self.cfg, self.model)
        #     return self._last_eval_results

        # Do evaluation after checkpointer, because then if it fails,
        # we can use the saved checkpoint to debug.
        # ret.append(hooks.EvalHook(cfg.TEST.EVAL_PERIOD, test_and_save_results))

        if comm.is_main_process():
            # run writers in the end, so that evaluation metrics are written
            ret.append(hooks.PeriodicWriter(self.build_writers(), period=20))
        return ret
Пример #13
0
    def build_hooks(self):
        cfg = self.cfg.clone()
        cfg.defrost()
        cfg.DATALOADER.NUM_WORKERS = 0  # save some memory and time for PreciseBN

        ret = [
            hooks.IterationTimer(),
            hooks.LRScheduler(self.optimizer, self.scheduler),
            hooks.PreciseBN(
                # Run at the same freq as (but before) evaluation.
                cfg.TEST.EVAL_PERIOD,
                self.model,
                # Build a new data loader to not affect training
                self.build_train_loader(cfg),
                cfg.TEST.PRECISE_BN.NUM_ITER,
            )
            if cfg.TEST.PRECISE_BN.ENABLED and get_bn_modules(self.model)
            else None,
        ]

        if comm.is_main_process():
            ret.append(hooks.PeriodicCheckpointer(self.checkpointer, cfg.SOLVER.CHECKPOINT_PERIOD))

        def test_and_save_results():
            res = self._last_eval_results = self.test(self.cfg, self.model)
            eval_dir = os.path.join(self.cfg.OUTPUT_DIR, 'evals')
            os.makedirs(eval_dir, exist_ok=True)
            pd.DataFrame(res).to_csv(os.path.join(eval_dir, f'{self.round}.csv'))
            return self._last_eval_results
        
        ret.append(hooks.EvalHook(cfg.TEST.EVAL_PERIOD, test_and_save_results))

        if comm.is_main_process():
            # run writers in the end, so that evaluation metrics are written
            ret.append(hooks.PeriodicWriter(self.build_writers(), period=20))
        return ret
Пример #14
0
    def do_train(self, cfg, model, resume):
        add_print_flops_callback(cfg, model, disable_after_callback=True)

        optimizer = self.build_optimizer(cfg, model)
        scheduler = self.build_lr_scheduler(cfg, optimizer)

        checkpointer = self.build_checkpointer(
            cfg,
            model,
            save_dir=cfg.OUTPUT_DIR,
            optimizer=optimizer,
            scheduler=scheduler,
        )
        checkpoint = checkpointer.resume_or_load(cfg.MODEL.WEIGHTS,
                                                 resume=resume)
        start_iter = (checkpoint.get("iteration", -1)
                      if resume and checkpointer.has_checkpoint() else -1)
        # The checkpoint stores the training iteration that just finished, thus we start
        # at the next iteration (or iter zero if there's no checkpoint).
        start_iter += 1
        max_iter = cfg.SOLVER.MAX_ITER
        periodic_checkpointer = PeriodicCheckpointer(
            checkpointer, cfg.SOLVER.CHECKPOINT_PERIOD, max_iter=max_iter)

        data_loader = self.build_detection_train_loader(cfg)

        def _get_model_with_abnormal_checker(model):
            if not cfg.ABNORMAL_CHECKER.ENABLED:
                return model

            tbx_writer = _get_tbx_writer(
                get_tensorboard_log_dir(cfg.OUTPUT_DIR))
            writers = abnormal_checker.get_writers(cfg, tbx_writer)
            checker = abnormal_checker.AbnormalLossChecker(start_iter, writers)
            ret = abnormal_checker.AbnormalLossCheckerWrapper(model, checker)
            return ret

        trainer = (AMPTrainer if cfg.SOLVER.AMP.ENABLED else SimpleTrainer)(
            _get_model_with_abnormal_checker(model), data_loader, optimizer)
        trainer_hooks = [
            hooks.IterationTimer(),
            model_ema.EMAHook(cfg, model) if cfg.MODEL_EMA.ENABLED else None,
            self._create_after_step_hook(cfg, model, optimizer, scheduler,
                                         periodic_checkpointer),
            hooks.EvalHook(
                cfg.TEST.EVAL_PERIOD,
                lambda: self.do_test(cfg, model, train_iter=trainer.iter),
            ),
            kmeans_anchors.compute_kmeans_anchors_hook(self, cfg),
            self._create_qat_hook(cfg)
            if cfg.QUANTIZATION.QAT.ENABLED else None,
        ]

        if comm.is_main_process():
            tbx_writer = _get_tbx_writer(
                get_tensorboard_log_dir(cfg.OUTPUT_DIR))
            writers = [
                CommonMetricPrinter(max_iter),
                JSONWriter(os.path.join(cfg.OUTPUT_DIR, "metrics.json")),
                tbx_writer,
            ]
            trainer_hooks.append(hooks.PeriodicWriter(writers))
        trainer.register_hooks(trainer_hooks)
        trainer.train(start_iter, max_iter)

        if hasattr(self, 'original_cfg'):
            table = get_cfg_diff_table(cfg, self.original_cfg)
            logger.info(
                "GeneralizeRCNN Runner ignoring training config change: \n" +
                table)
            trained_cfg = self.original_cfg.clone()
        else:
            trained_cfg = cfg.clone()
        with temp_defrost(trained_cfg):
            trained_cfg.MODEL.WEIGHTS = checkpointer.get_checkpoint_file()
        return {"model_final": trained_cfg}
Пример #15
0
    def do_train(self, cfg, model, resume):
        # Note that flops at the beginning of training is often inaccurate,
        # if a model has input-dependent logic
        attach_profilers(cfg, model)

        optimizer = self.build_optimizer(cfg, model)
        scheduler = self.build_lr_scheduler(cfg, optimizer)

        checkpointer = self.build_checkpointer(
            cfg,
            model,
            save_dir=cfg.OUTPUT_DIR,
            optimizer=optimizer,
            scheduler=scheduler,
        )
        checkpoint = checkpointer.resume_or_load(cfg.MODEL.WEIGHTS,
                                                 resume=resume)
        start_iter = (checkpoint.get("iteration", -1)
                      if resume and checkpointer.has_checkpoint() else -1)
        # The checkpoint stores the training iteration that just finished, thus we start
        # at the next iteration (or iter zero if there's no checkpoint).
        start_iter += 1
        max_iter = cfg.SOLVER.MAX_ITER
        periodic_checkpointer = PeriodicCheckpointer(
            checkpointer, cfg.SOLVER.CHECKPOINT_PERIOD, max_iter=max_iter)

        data_loader = self.build_detection_train_loader(cfg)

        def _get_model_with_abnormal_checker(model):
            if not cfg.ABNORMAL_CHECKER.ENABLED:
                return model

            tbx_writer = self.get_tbx_writer(cfg)
            writers = abnormal_checker.get_writers(cfg, tbx_writer)
            checker = abnormal_checker.AbnormalLossChecker(start_iter, writers)
            ret = abnormal_checker.AbnormalLossCheckerWrapper(model, checker)
            return ret

        trainer = (AMPTrainer if cfg.SOLVER.AMP.ENABLED else SimpleTrainer)(
            _get_model_with_abnormal_checker(model), data_loader, optimizer)
        trainer_hooks = self._get_trainer_hooks(cfg, model, optimizer,
                                                scheduler,
                                                periodic_checkpointer, trainer)

        if comm.is_main_process():
            tbx_writer = self.get_tbx_writer(cfg)
            writers = [
                CommonMetricPrinter(max_iter),
                JSONWriter(os.path.join(cfg.OUTPUT_DIR, "metrics.json")),
                tbx_writer,
            ]
            trainer_hooks.append(hooks.PeriodicWriter(writers))
        update_hooks_from_registry(trainer_hooks)
        trainer.register_hooks(trainer_hooks)
        trainer.train(start_iter, max_iter)

        if hasattr(self, "original_cfg"):
            table = get_cfg_diff_table(cfg, self.original_cfg)
            logger.info(
                "GeneralizeRCNN Runner ignoring training config change: \n" +
                table)
            trained_cfg = self.original_cfg.clone()
        else:
            trained_cfg = cfg.clone()
        with temp_defrost(trained_cfg):
            trained_cfg.MODEL.WEIGHTS = checkpointer.get_checkpoint_file()
        return {"model_final": trained_cfg}
Пример #16
0
    def build_hooks(self):
        """
    Build a list of default hooks, including timing, evaluation,
    checkpointing, lr scheduling, precise BN, writing events.

    Returns:
        list[HookBase]:
    """
        cfg = self.cfg.clone()
        cfg.defrost()
        cfg.DATALOADER.NUM_WORKERS = 0  # save some memory and time for PreciseBN

        ret = \
        [
          hooks.IterationTimer(),
          hooks.LRScheduler(self.optimizer, self.scheduler),
          hooks.PreciseBN(
              # Run at the same freq as (but before) evaluation.
              cfg.TEST.EVAL_PERIOD,
              self.model,
              # Build a new data loader to not affect training
              self.build_train_loader(cfg,self.mapper_object,self.isShuffleData),
              cfg.TEST.PRECISE_BN.NUM_ITER,
          )
          if cfg.TEST.PRECISE_BN.ENABLED and get_bn_modules(self.model)
          else None,
        ]

        # Do PreciseBN before checkpointer, because it updates the model and need to
        # be saved by checkpointer.
        # This is not always the best: if checkpointing has a different frequency,
        # some checkpoints may have more precise statistics than others.
        if comm.is_main_process():
            ret.append(
                hooks.PeriodicCheckpointer(self.checkpointer,
                                           cfg.SOLVER.CHECKPOINT_PERIOD))

        def test_and_save_results():
            # self._last_eval_results = self.test(self.cfg, self.model, self.isTrackAccuracy, self.getter, self.dataset_used)
            self._last_eval_results = self.test(self.cfg,
                                                self.model,
                                                self.getter,
                                                self.dataset_used,
                                                self.mapper_object,
                                                evaluators=None)
            return self._last_eval_results

        # Do evaluation after checkpointer, because then if it fails,
        # we can use the saved checkpoint to debug.
        ret.append(hooks.EvalHook(cfg.TEST.EVAL_PERIOD, test_and_save_results))

        if comm.is_main_process():
            numberOfSamples = 25
            step = -1
            if (self.max_iter <= numberOfSamples):
                # Eg, maxiter = 20, so step = 20/2 = 10, take a sample every 10
                step = int(round(float(self.max_iter) / float(2), 2))
            else:
                # Eg 10000/20 = 500, so will take a sample every 500 iterations
                step = float(self.max_iter) / float(numberOfSamples)
                step = int(round(step, 0))
                if (step < 1): step = 1

            # print("!!!!!!!!!!!!!!STEPS: ", step)
            # ret.append(hooks.PeriodicWriter(self.build_writers()))
            # run writers in the end, so that evaluation metrics are written
            ret.append(hooks.PeriodicWriter(self.build_writers(), period=step))
            # ret.append(hooks.PeriodicWriter(self.build_writers(),period=(self.max_iter-1)))
        return ret