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# coding=utf-8
# Copyright (c) 2020, NVIDIA CORPORATION.  All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.

"""Pretrain utilities."""

from datetime import datetime
import math
import sys
import time
# The earliest we can measure the start time.
_TRAIN_START_TIME = time.time()
import torch
from torch.nn.parallel.distributed import DistributedDataParallel as torchDDP
from torch.utils.tensorboard import SummaryWriter

from megatron import get_args
from megatron import get_signal_handler
from megatron import get_timers
from megatron import get_tensorboard_writer
from megatron import get_current_global_batch_size
from megatron import get_num_microbatches
from megatron import is_last_rank
from megatron import update_num_microbatches
from megatron import mpu
from megatron import print_rank_0
from megatron import print_rank_last
from megatron.checkpointing import load_checkpoint
from megatron.checkpointing import save_checkpoint
from megatron.model import Float16Module
from megatron.model import ModelType
from megatron.optimizer import get_megatron_optimizer
from megatron.initialize import initialize_megatron
from megatron.initialize import write_args_to_tensorboard
from megatron.initialize import set_jit_fusion_options
from megatron.optimizer_param_scheduler import OptimizerParamScheduler
from megatron.model import DistributedDataParallel as LocalDDP
from megatron.utils import check_adlr_autoresume_termination
from megatron.utils import unwrap_model
from megatron.data.data_samplers import build_pretraining_data_loader
from megatron.utils import calc_params_l2_norm
from megatron.schedules import get_forward_backward_func
from megatron.utils import report_memory
from megatron.model.vision.knn_monitor import compute_feature_bank


def print_datetime(string):
    """Note that this call will sync across all ranks."""
    torch.distributed.barrier()
    time_str = datetime.now().strftime('%Y-%m-%d %H:%M:%S')
    print_rank_0('[' + string + '] datetime: {} '.format(time_str))


def pretrain(train_valid_test_dataset_provider,
             model_provider,
             model_type,
             forward_step_func,
             process_non_loss_data_func=None,
             extra_args_provider=None,
             args_defaults={}):
    """Main training program.

    This function will run the followings in the order provided:
        1) initialize Megatron.
        2) setup model, optimizer and lr schedule using the model_provider.
        3) call train_val_test_data_provider to get train/val/test datasets.
        4) train the modle using the forward_step_func.

    Arguments:
        train_valid_test_dataset_provider: a function that takes the size of
            train/valid/test dataset and returns `train, valid, test` datasets.
        model_provider: a function that returns a vanilla version of the
            model. By vanilla we mean a simple model on cpu with no fp16 or ddp.
        model_type: an enum that specifies the type of model being trained.
        forward_step_func: a function that takes a `data iterator` and `model`,
            and returns a `loss` scalar with a dictionary with key:values being
            the info we would like to monitor during training, for example
            `lm-loss: value`. We also require that this function add
            `batch generator` to the timers class.
        process_non_loss_data_func: a function to post process outputs of the
            network. It can be used for dumping output tensors (e.g images) to
            tensorboard. It takes `collected data`(list of tensors),
            `current iteration index` and `tensorboard writer` as arguments.
        extra_args_provider: a function that takes a parser and adds arguments
            to it. It is used for programs to add their own arguments.
        args_defaults: a dictionary from argument-name to argument-value. It
            to set already parse arguments.
    """

    # Initalize and get arguments, timers, and Tensorboard writer.
    initialize_megatron(extra_args_provider=extra_args_provider,
                        args_defaults=args_defaults)
    # Set pytorch JIT layer fusion options and warmup JIT functions.
    set_jit_fusion_options()

    # Adjust the startup time so it reflects the largest value.
    # This will be closer to what scheduler will see (outside of
    # image ... launches.
    global _TRAIN_START_TIME
    start_time_tensor = torch.cuda.DoubleTensor([_TRAIN_START_TIME])
    torch.distributed.all_reduce(start_time_tensor,
                                 op=torch.distributed.ReduceOp.MIN)
    _TRAIN_START_TIME = start_time_tensor.item()
    print_rank_0('time to initialize megatron (seconds): {:.3f}'.format(
        time.time() - _TRAIN_START_TIME))
    print_datetime('after megatron is initialized')

    args = get_args()
    timers = get_timers()

    # Model, optimizer, and learning rate.
    timers('model-and-optimizer-setup').start()
    model, optimizer, opt_param_scheduler = setup_model_and_optimizer(model_provider,
                                                               model_type)
    timers('model-and-optimizer-setup').stop()
    print_datetime('after model, optimizer, and learning rate '
                   'scheduler are built')

    # Data stuff.
    timers('train/valid/test-data-iterators-setup').start()
    if args.virtual_pipeline_model_parallel_size is not None:
        all_data_iterators = [
            build_train_valid_test_data_iterators(train_valid_test_dataset_provider)
            for _ in range(len(model))
        ]
        train_data_iterator = [data_iterators[0] for data_iterators in all_data_iterators]
        valid_data_iterator = [data_iterators[1] for data_iterators in all_data_iterators]
        test_data_iterator = [data_iterators[2] for data_iterators in all_data_iterators]
    else:
        train_data_iterator, valid_data_iterator, test_data_iterator \
            = build_train_valid_test_data_iterators(
                train_valid_test_dataset_provider)
    timers('train/valid/test-data-iterators-setup').stop()
    print_datetime('after dataloaders are built')

    # Print setup timing.
    print_rank_0('done with setup ...')
    timers.log(['model-and-optimizer-setup', 'train/valid/test-data-iterators-setup'])
    print_rank_0('training ...')

    iteration = 0
    if args.do_train and args.train_iters > 0:
        iteration = train(forward_step_func,
                          model, optimizer, opt_param_scheduler,
                          train_data_iterator, valid_data_iterator,
                          process_non_loss_data_func)
    print_datetime('after training is done')

    if args.do_valid:
        prefix = 'the end of training for val data'
        evaluate_and_print_results(prefix, forward_step_func,
                                   valid_data_iterator, model,
                                   iteration, process_non_loss_data_func,
                                   False)

    if args.save and iteration != 0:
        save_checkpoint(iteration, model, optimizer, opt_param_scheduler)

    if args.do_test:
        # Run on test data.
        prefix = 'the end of training for test data'
        evaluate_and_print_results(prefix, forward_step_func,
                                   test_data_iterator, model,
                                   0, process_non_loss_data_func,
                                   True)

def update_train_iters(args):

    # For iteration-based training, we don't need to do anything
    if args.train_iters:
        return

    # Constant batch size with sample-based training.
    if args.rampup_batch_size is None:
        args.train_iters = args.train_samples // args.global_batch_size

    else:
        # Sample based training with rampup batch size.
        iterations = 0
        consumed_samples = 0
        # Rampup phase.
        while consumed_samples <= int(args.rampup_batch_size[2]):
            update_num_microbatches(consumed_samples, consistency_check=False)
            consumed_samples += get_current_global_batch_size()
            iterations += 1
        # Reset
        update_num_microbatches(0, consistency_check=False)
        # Constant phase
        # Note that we throw away any partial last batch.
        iterations += (args.train_samples - consumed_samples) // \
                      args.global_batch_size
        args.train_iters = iterations

    print_rank_0('setting training iterations to {}'.format(args.train_iters))


def get_model(model_provider_func, model_type=ModelType.encoder_or_decoder, wrap_with_ddp=True):
    """Build the model."""
    args = get_args()
    args.model_type = model_type

    # Build model.
    if mpu.get_pipeline_model_parallel_world_size() > 1 and \
       args.virtual_pipeline_model_parallel_size is not None:
        assert model_type != ModelType.encoder_and_decoder, \
            "Interleaved schedule not supported for model with both encoder and decoder"
        model = []
        for i in range(args.virtual_pipeline_model_parallel_size):
            mpu.set_virtual_pipeline_model_parallel_rank(i)
            # Set pre_process and post_process only after virtual rank is set.
            pre_process = mpu.is_pipeline_first_stage()
            post_process = mpu.is_pipeline_last_stage()
            this_model = model_provider_func(
                pre_process=pre_process,
                post_process=post_process
            )
            this_model.model_type = model_type
            model.append(this_model)
    else:
        pre_process = mpu.is_pipeline_first_stage()
        post_process = mpu.is_pipeline_last_stage()
        add_encoder = True
        add_decoder = True
        if model_type == ModelType.encoder_and_decoder:
            if mpu.get_pipeline_model_parallel_world_size() > 1:
                assert args.pipeline_model_parallel_split_rank is not None, \
                    "Split rank needs to be specified for model with both encoder and decoder"
                rank = mpu.get_pipeline_model_parallel_rank()
                split_rank = args.pipeline_model_parallel_split_rank
                world_size = mpu.get_pipeline_model_parallel_world_size()
                pre_process = rank == 0 or rank == split_rank
                post_process = (rank == (split_rank - 1)) or (
                        rank == (world_size - 1))
                add_encoder = mpu.is_pipeline_stage_before_split()
                add_decoder = mpu.is_pipeline_stage_after_split()
            model = model_provider_func(
                pre_process=pre_process,
                post_process=post_process,
                add_encoder=add_encoder,
                add_decoder=add_decoder)
        else:
            model = model_provider_func(
                pre_process=pre_process,
                post_process=post_process
            )
        model.model_type = model_type

    if not isinstance(model, list):
        model = [model]

    # Set tensor model parallel attributes if not set.
    # Only parameters that are already tensor model parallel have these
    # attributes set for them. We should make sure the default attributes
    # are set for all params so the optimizer can use them.
    for model_module in model:
        for param in model_module.parameters():
            mpu.set_defaults_if_not_set_tensor_model_parallel_attributes(param)

    # Print number of parameters.
    if mpu.get_data_parallel_rank() == 0:
        print(' > number of parameters on (tensor, pipeline) '
              'model parallel rank ({}, {}): {}'.format(
            mpu.get_tensor_model_parallel_rank(),
            mpu.get_pipeline_model_parallel_rank(),
            sum([sum([p.nelement() for p in model_module.parameters()])
                 for model_module in model])), flush=True)

    # GPU allocation.
    for model_module in model:
        model_module.cuda(torch.cuda.current_device())

    # Fp16 conversion.
    if args.fp16 or args.bf16:
        model = [Float16Module(model_module, args) for model_module in model]

    if wrap_with_ddp:
        if args.DDP_impl == 'torch':
            i = torch.cuda.current_device()
            model = [torchDDP(model_module, device_ids=[i], output_device=i,
                              process_group=mpu.get_data_parallel_group())
                     for model_module in model]

        elif args.DDP_impl == 'local':
            model = [LocalDDP(model_module,
                              args.accumulate_allreduce_grads_in_fp32,
                              args.use_contiguous_buffers_in_local_ddp)
                     for model_module in model]
            # broad cast params from data parallel src rank to other data parallel ranks
            if args.data_parallel_random_init:
                for model_module in model:
                    model_module.broadcast_params()
        else:
            raise NotImplementedError('Unknown DDP implementation specified: '
                                      '{}. Exiting.'.format(args.DDP_impl))

    return model


def get_optimizer_param_scheduler(optimizer):
    """Build the learning rate scheduler."""
    args = get_args()

    # Iteration-based training.
    if args.train_iters:
        if args.lr_decay_iters is None:
            args.lr_decay_iters = args.train_iters
        lr_decay_steps = args.lr_decay_iters * args.global_batch_size
        wd_incr_steps = args.train_iters * args.global_batch_size
        if args.lr_warmup_fraction is not None:
            lr_warmup_steps = args.lr_warmup_fraction * lr_decay_steps
        else:
            lr_warmup_steps = args.lr_warmup_iters * args.global_batch_size
    # Sample-based training.
    elif args.train_samples:
        # We need to set training iters for later use. Technically
        # we need to adjust the training samples too (due to last
        # batch being incomplete) but we leave it as is for now.
        update_train_iters(args)
        if args.lr_decay_samples is None:
            args.lr_decay_samples = args.train_samples
        lr_decay_steps = args.lr_decay_samples
        wd_incr_steps = args.train_samples
        if args.lr_warmup_fraction is not None:
            lr_warmup_steps = args.lr_warmup_fraction * lr_decay_steps
        else:
            lr_warmup_steps = args.lr_warmup_samples
    else:
        raise Exception(
            'either train-iters or train-samples should be provided.')

    opt_param_scheduler = OptimizerParamScheduler(
        optimizer,
        max_lr=args.lr,
        min_lr=args.min_lr,
        lr_warmup_steps=lr_warmup_steps,
        lr_decay_steps=lr_decay_steps,
        lr_decay_style=args.lr_decay_style,
        start_wd=args.start_weight_decay,
        end_wd=args.end_weight_decay,
        wd_incr_steps=wd_incr_steps,
        wd_incr_style=args.weight_decay_incr_style,
        use_checkpoint_opt_param_scheduler=args.use_checkpoint_opt_param_scheduler,
        override_opt_param_scheduler=args.override_opt_param_scheduler)

    return opt_param_scheduler


def setup_model_and_optimizer(model_provider_func,
                              model_type,
                              no_wd_decay_cond=None,
                              scale_lr_cond=None,
                              lr_mult=1.0):
    """Setup model and optimizer."""
    args = get_args()

    model = get_model(model_provider_func, model_type)
    unwrapped_model = unwrap_model(model,
                                   (torchDDP, LocalDDP, Float16Module))

    optimizer = get_megatron_optimizer(model, no_wd_decay_cond,
                                       scale_lr_cond, lr_mult)
    opt_param_scheduler = get_optimizer_param_scheduler(optimizer)

    if args.load is not None:
        timers = get_timers()
        # Extra barrier is added to make sure all ranks report the
        # max time.
        torch.distributed.barrier()
        timers('load-checkpoint').start()
        args.iteration = load_checkpoint(model, optimizer, opt_param_scheduler)
        torch.distributed.barrier()
        timers('load-checkpoint').stop()
        timers.log(['load-checkpoint'])
    else:
        args.iteration = 0

    # We only support local DDP with multiple micro-batches.
    if len(model) > 1 or mpu.get_pipeline_model_parallel_world_size() > 1:
        assert args.DDP_impl == 'local'

    # get model without FP16 and/or TorchDDP wrappers
    if args.iteration == 0 and len(unwrapped_model) == 1 \
        and hasattr(unwrapped_model[0], 'init_state_dict_from_bert'):
        print_rank_0("Initializing ICT from pretrained BERT model")
        unwrapped_model[0].init_state_dict_from_bert()
        if args.fp16:
            optimizer.reload_model_params()

    return model, optimizer, opt_param_scheduler


def train_step(forward_step_func, data_iterator,
               model, optimizer, opt_param_scheduler):
    """Single training step."""
    args = get_args()
    timers = get_timers()

    # Set grad to zero.
    if args.DDP_impl == 'local' and args.use_contiguous_buffers_in_local_ddp:
        for partition in model:
            partition.zero_grad_buffer()
    optimizer.zero_grad()

    # Forward pass.
    forward_backward_func = get_forward_backward_func()
    losses_reduced = forward_backward_func(
        forward_step_func, data_iterator, model,
        optimizer, timers, forward_only=False)

    # Empty unused memory.
    if args.empty_unused_memory_level >= 1:
        torch.cuda.empty_cache()

    # Reduce gradients.
    timers('backward-reduce-model-grads').start()
    optimizer.reduce_model_grads(args, timers)
    timers('backward-reduce-model-grads').stop()

    # Vision gradients.
    if args.vision_pretraining and args.vision_pretraining_type == "dino":
        unwrapped_model = unwrap_model(model[0],
                                       (torchDDP, LocalDDP, Float16Module))
        unwrapped_model.cancel_gradients_last_layer(args.curr_iteration)

    # Update parameters.
    timers('optimizer').start()
    update_successful, grad_norm, num_zeros_in_grad = optimizer.step(args, timers)
    timers('optimizer').stop()

    # Gather params.
    if update_successful:
        timers('backward-gather-model-params').start()
        optimizer.gather_model_params(args, timers)
        timers('backward-gather-model-params').stop()

    # Vision momentum.
    if args.vision_pretraining and args.vision_pretraining_type == "dino":
        unwrapped_model = unwrap_model(model[0],
                                       (torchDDP, LocalDDP, Float16Module))
        unwrapped_model.update_momentum(args.curr_iteration)

    # Update learning rate.
    if update_successful:
        increment = get_num_microbatches() * \
                    args.micro_batch_size * \
                    args.data_parallel_size
        opt_param_scheduler.step(increment=increment)
        skipped_iter = 0
    else:
        skipped_iter = 1

    # Empty unused memory.
    if args.empty_unused_memory_level >= 2:
        torch.cuda.empty_cache()

    if mpu.is_pipeline_last_stage(ignore_virtual=True):
        # Average loss across microbatches.
        loss_reduced = {}
        for key in losses_reduced[0]:
            if key == "describe":
                continue
            losses_reduced_for_key = [x[key] for x in losses_reduced]
            loss_reduced[key] = sum(losses_reduced_for_key) / len(losses_reduced_for_key)
        return loss_reduced, skipped_iter, grad_norm, num_zeros_in_grad
    return {}, skipped_iter, grad_norm, num_zeros_in_grad


def training_log(loss_dict, total_loss_dict, learning_rate, iteration,
                 loss_scale, report_memory_flag, skipped_iter,
                 grad_norm, params_norm, num_zeros_in_grad, my_writer):
    """Log training information such as losses, timing, ...."""
    args = get_args()
    timers = get_timers()
    writer = get_tensorboard_writer()

    # Advanced, skipped, and Nan iterations.
    advanced_iters_key = 'advanced iterations'
    skipped_iters_key = 'skipped iterations'
    nan_iters_key = 'nan iterations'
    # Advanced iterations.
    if not skipped_iter:
        total_loss_dict[advanced_iters_key] = total_loss_dict.get(
            advanced_iters_key, 0) + 1
    else:
        if advanced_iters_key not in total_loss_dict:
            total_loss_dict[advanced_iters_key] = 0
    # Skipped iterations.
    total_loss_dict[skipped_iters_key] = total_loss_dict.get(
        skipped_iters_key, 0) + skipped_iter
    # Update losses and set nan iterations
    got_nan = False
    for key in loss_dict:
        if not skipped_iter:
            total_loss_dict[key] = total_loss_dict.get(
                key, torch.cuda.FloatTensor([0.0])) + loss_dict[key]
        else:
            value = loss_dict[key].float().sum().item()
            is_nan = value == float('inf') or \
                     value == -float('inf') or \
                     value != value
            got_nan = got_nan or is_nan
    total_loss_dict[nan_iters_key] = total_loss_dict.get(
        nan_iters_key, 0) + int(got_nan)

    # Logging.
    timers_to_log = []

    def add_to_logging(name):
        if name in timers.timers:
            timers_to_log.append(name)
    # add_to_logging('forward-compute')
    # add_to_logging('forward-recv')
    # add_to_logging('forward-send')
    # add_to_logging('forward-backward-send-forward-backward-recv')
    # add_to_logging('backward-compute')
    # add_to_logging('backward-recv')
    # add_to_logging('backward-send')
    # add_to_logging('backward-send-forward-recv')
    # add_to_logging('backward-send-backward-recv')
    # add_to_logging('backward-params-all-reduce')
    # add_to_logging('backward-layernorm-all-reduce')
    # add_to_logging('backward-embedding-all-reduce')
    # add_to_logging('backward-reduce-model-grads')
    # add_to_logging('backward-gather-model-params')
    # add_to_logging('optimizer-copy-to-main-grad')
    # add_to_logging('optimizer-unscale-and-check-inf')
    # add_to_logging('optimizer-clip-main-grad')
    # add_to_logging('optimizer-count-zeros')
    # add_to_logging('optimizer-inner-step')
    # add_to_logging('optimizer-copy-main-to-model-params')
    # add_to_logging('optimizer')
    # add_to_logging('batch-generator')

    # Calculate batch size.
    batch_size = args.micro_batch_size * args.data_parallel_size * \
        get_num_microbatches()

    total_iterations = total_loss_dict[advanced_iters_key] + \
                       total_loss_dict[skipped_iters_key]

    # Tensorboard values.
    # if writer and (iteration % args.tensorboard_log_interval == 0 ) and \
    #    is_last_rank():
    #     if args.log_learning_rate_to_tensorboard:
    #         writer.add_scalar('learning-rate', learning_rate, iteration)
    #         writer.add_scalar('learning-rate vs samples', learning_rate,
    #                           args.consumed_train_samples)
    #     if args.log_batch_size_to_tensorboard:
    #         writer.add_scalar('batch-size', batch_size, iteration)
    #         writer.add_scalar('batch-size vs samples', batch_size,
    #                           args.consumed_train_samples)
    #     for key in loss_dict:
    #         writer.add_scalar(key , loss_dict[key], iteration)
    #         writer.add_scalar(key + ' vs samples', loss_dict[key],
    #                           args.consumed_train_samples)
    #     if args.log_loss_scale_to_tensorboard:
    #         writer.add_scalar('loss-scale', loss_scale, iteration)
    #         writer.add_scalar('loss-scale vs samples', loss_scale,
    #                           args.consumed_train_samples)
    #     if args.log_world_size_to_tensorboard:
    #         writer.add_scalar('world-size', args.world_size, iteration)
    #         writer.add_scalar('world-size vs samples', args.world_size,
    #                           args.consumed_train_samples)
    #     if grad_norm is not None:
    #         writer.add_scalar('grad-norm', grad_norm, iteration)
    #         writer.add_scalar('grad-norm vs samples', grad_norm,
    #                           args.consumed_train_samples)
    #     if num_zeros_in_grad is not None:
    #         writer.add_scalar('num-zeros', num_zeros_in_grad, iteration)
    #         writer.add_scalar('num-zeros vs samples', num_zeros_in_grad,
    #                           args.consumed_train_samples)
    #     if params_norm is not None:
    #         writer.add_scalar('params-norm', params_norm, iteration)
    #         writer.add_scalar('params-norm vs samples', params_norm,
    #                           args.consumed_train_samples)
    #     if args.log_timers_to_tensorboard:
    #         timers.write(timers_to_log, writer, iteration,
    #                      normalizer=total_iterations)
    #     if args.log_memory_to_tensorboard:
    #         mem_stats = torch.cuda.memory_stats()
    #         writer.add_scalar(
    #             "mem-reserved-bytes",
    #             mem_stats["reserved_bytes.all.current"],
    #             iteration,
    #         )
    #         writer.add_scalar(
    #             "mem-allocated-bytes",
    #             mem_stats["allocated_bytes.all.current"],
    #             iteration,
    #         )
    #         writer.add_scalar(
    #             "mem-allocated-count",
    #             mem_stats["allocation.all.current"],
    #             iteration,
    #         )

    if my_writer and iteration % args.log_interval == 0 and is_last_rank():
        # record learning rate
        my_writer.add_scalar('train/learning-rate', learning_rate, iteration)
        
        # record loss and ppl
        total_train_loss = 0
        for key in loss_dict:
            my_writer.add_scalar("train/" + key , loss_dict[key], iteration)
            ppl = math.exp(min(20, loss_dict[key]))
            my_writer.add_scalar("train/" + key + "_ppl" , ppl, iteration)
            total_train_loss += loss_dict[key]
        my_writer.add_scalar("train/total-loss", total_train_loss, iteration)
        # record loss scaling
        my_writer.add_scalar('train/loss-scale', loss_scale, iteration)

    if iteration % args.log_interval == 0:
        elapsed_time = timers('interval-time').elapsed()
        elapsed_time_per_iteration = elapsed_time / total_iterations
        if writer:
            if args.log_timers_to_tensorboard:
                writer.add_scalar('iteration-time',
                                  elapsed_time_per_iteration, iteration)
        log_string = ' iteration {:8d}/{:8d} |'.format(
            iteration, args.train_iters)
        log_string += ' consumed samples: {:12d} |'.format(
            args.consumed_train_samples)
        log_string += ' Task: {} |'.format(
            args.task)
        log_string += ' elapsed time per iteration (ms): {:.1f} |'.format(
            elapsed_time_per_iteration * 1000.0)
        log_string += ' learning rate: {:.3E} |'.format(learning_rate)
        log_string += ' global batch size: {:5d} |'.format(batch_size)
        for key in total_loss_dict:
            if key not in [advanced_iters_key, skipped_iters_key,
                           nan_iters_key]:
                avg = total_loss_dict[key].item() / \
                      float(max(1, total_loss_dict[advanced_iters_key]))
                if avg > 0.0:
                    log_string += ' {}: {:.6E} |'.format(key, avg)
                total_loss_dict[key] = torch.cuda.FloatTensor([0.0])
        log_string += ' loss scale: {:.1f} |'.format(loss_scale)
        if grad_norm is not None:
            log_string += ' grad norm: {:.3f} |'.format(grad_norm)
        if num_zeros_in_grad is not None:
            log_string += ' num zeros: {:.1f} |'.format(num_zeros_in_grad)
        if params_norm is not None:
            log_string += ' params norm: {:.3f} |'.format(params_norm)
        log_string += ' number of skipped iterations: {:3d} |'.format(
            total_loss_dict[skipped_iters_key])
        log_string += ' number of nan iterations: {:3d} |'.format(
            total_loss_dict[nan_iters_key])
        total_loss_dict[advanced_iters_key] = 0
        total_loss_dict[skipped_iters_key] = 0
        total_loss_dict[nan_iters_key] = 0
        print_rank_last(log_string)
        if report_memory_flag and learning_rate > 0.:
            # Report memory after optimizer state has been initialized.
            report_memory('(after {} iterations)'.format(iteration))
            report_memory_flag = False
        timers.log(timers_to_log, normalizer=args.log_interval)

    return report_memory_flag


def save_checkpoint_and_time(iteration, model, optimizer, opt_param_scheduler):
    timers = get_timers()
    # Extra barrier is added to make sure
    # all ranks report the max time.
    torch.distributed.barrier()
    timers('save-checkpoint').start()
    save_checkpoint(iteration, model, optimizer, opt_param_scheduler)
    torch.distributed.barrier()
    timers('save-checkpoint').stop()
    timers.log(['save-checkpoint'])


def train(forward_step_func, model, optimizer, opt_param_scheduler,
          train_data_iterator, valid_data_iterator,
          process_non_loss_data_func):
    """Train the model function."""
    args = get_args()
    timers = get_timers()

    # Write args to tensorboard
    write_args_to_tensorboard()

    # Turn on training mode which enables dropout.
    for model_module in model:
        model_module.train()

    # Tracking loss.
    total_loss_dict = {}

    # Iterations.
    iteration = args.iteration

    timers('interval-time').start()
    print_datetime('before the start of training step')
    if is_last_rank():
        my_writer = SummaryWriter(args.save + "/tb_res")
    else:
        my_writer = None
    report_memory_flag = True
    while iteration < args.train_iters:
        update_num_microbatches(args.consumed_train_samples)
        args.curr_iteration = iteration
        loss_dict, skipped_iter, grad_norm, num_zeros_in_grad = \
            train_step(forward_step_func,
                       train_data_iterator,
                       model,
                       optimizer,
                       opt_param_scheduler)
        iteration += 1
        args.consumed_train_samples += mpu.get_data_parallel_world_size() * \
                                       args.micro_batch_size * \
                                       get_num_microbatches()

        # Logging.
        loss_scale = optimizer.get_loss_scale().item()
        params_norm = None
        if args.log_params_norm:
            params_norm = calc_params_l2_norm(model)
        report_memory_flag = training_log(loss_dict, total_loss_dict,
                                          optimizer.param_groups[0]['lr'],
                                          iteration, loss_scale,
                                          report_memory_flag, skipped_iter,
                                          grad_norm, params_norm, num_zeros_in_grad, my_writer)

        # Autoresume
        if args.adlr_autoresume and \
           (iteration % args.adlr_autoresume_interval == 0):
            check_adlr_autoresume_termination(iteration, model, optimizer,
                                              opt_param_scheduler)

        # Evaluation
        if args.eval_interval and iteration % args.eval_interval == 0 and \
           args.do_valid:
            prefix = 'iteration {}'.format(iteration)
            evaluate_and_print_results(prefix, forward_step_func,
                                       valid_data_iterator, model,
                                       iteration, process_non_loss_data_func, my_writer,
                                       False)

        # Checkpointing
        saved_checkpoint = False
        if args.exit_signal_handler:
            signal_handler = get_signal_handler()
            if any(signal_handler.signals_received()):
                save_checkpoint_and_time(iteration, model, optimizer,
                                         opt_param_scheduler)
                print_datetime('exiting program after receiving SIGTERM.')
                sys.exit()

        if args.save and args.save_interval and \
           iteration % args.save_interval == 0:
            save_checkpoint_and_time(iteration, model, optimizer,
                                     opt_param_scheduler)
            saved_checkpoint = True

        # Exiting based on duration
        if args.exit_duration_in_mins:
            train_time = (time.time() - _TRAIN_START_TIME) / 60.0
            done_cuda = torch.cuda.IntTensor(
                [train_time > args.exit_duration_in_mins])
            torch.distributed.all_reduce(
                done_cuda, op=torch.distributed.ReduceOp.MAX)
            done = done_cuda.item()
            if done:
                if not saved_checkpoint:
                    save_checkpoint_and_time(iteration, model, optimizer,
                                             opt_param_scheduler)
                print_datetime('exiting program after {} minutes'.format(train_time))
                sys.exit()

        # Exiting based on iterations
        if args.exit_interval and iteration % args.exit_interval == 0:
            if not saved_checkpoint:
                save_checkpoint_and_time(iteration, model, optimizer,
                                         opt_param_scheduler)
            torch.distributed.barrier()
            print_datetime('exiting program at iteration {}'.format(iteration))
            sys.exit()


    return iteration


def evaluate(forward_step_func,
             data_iterator,
             model,
             process_non_loss_data_func,
             verbose=False):
    """Evaluation."""
    args = get_args()

    if args.vision_pretraining and args.vision_pretraining_type == "dino":
        compute_feature_bank(model)

    # Turn on evaluation mode which disables dropout.
    for model_module in model:
        model_module.eval()

    total_loss_dict = {}

    with torch.no_grad():
        iteration = 0
        while iteration < args.eval_iters:
            iteration += 1
            if verbose and iteration % args.log_interval == 0:
                print_rank_0('Evaluating iter {}/{}'.format(iteration,
                                                            args.eval_iters))

            forward_backward_func = get_forward_backward_func()
            loss_dicts = forward_backward_func(
                forward_step_func, data_iterator, model, optimizer=None,
                timers=None, forward_only=True)

            # Empty unused memory
            if args.empty_unused_memory_level >= 1:
                torch.cuda.empty_cache()

            if mpu.is_pipeline_last_stage(ignore_virtual=True):
                # Reduce across processes.
                for loss_dict in loss_dicts:
                    for key in loss_dict:
                        if key == "describe":
                            continue
                        total_loss_dict[key] = total_loss_dict.get(
                            key, torch.cuda.FloatTensor([0.0])) + loss_dict[key]

            args.consumed_valid_samples += mpu.get_data_parallel_world_size() \
                                           * args.micro_batch_size \
                                           * get_num_microbatches()
        collected_non_loss_data = None
        if process_non_loss_data_func is not None and is_last_rank():
            collected_non_loss_data = forward_backward_func(
                forward_step_func, data_iterator, model, optimizer=None,
                timers=None, forward_only=True, collect_non_loss_data=True)

    # Move model back to the train mode.
    for model_module in model:
        model_module.train()

    for key in total_loss_dict:
        total_loss_dict[key] /= args.eval_iters * get_num_microbatches()
    if "describe" in loss_dict:
        total_loss_dict["describe"] = loss_dict["describe"]

    return total_loss_dict, collected_non_loss_data

def evaluate_and_print_results(prefix, forward_step_func,
                               data_iterator, model,
                               iteration, process_non_loss_data_func, my_writer,
                               verbose=False):
    """Helper function to evaluate and dump results on screen."""
    args = get_args()
    writer = get_tensorboard_writer()

    total_loss_dict, collected_non_loss_data = evaluate(
        forward_step_func, data_iterator, model,
        process_non_loss_data_func, verbose)
    string = ' validation loss at {} | '.format(prefix)
    total_val_loss = 0
    for key in total_loss_dict:
        if key == "describe":
            if isinstance(total_loss_dict["describe"], str):
                string += total_loss_dict["describe"]
                continue
            elif isinstance(total_loss_dict["describe"], dict):
                continue
            else:
                raise "Not Imp"
        string += '{} value: {:.6E} | '.format(key, total_loss_dict[key].item())
        # ppl = math.exp(min(20, total_loss_dict[key].item()))
        # string += '{} PPL: {:.6E} | '.format(key, ppl)
        
        if my_writer and is_last_rank():
            my_writer.add_scalar('val/' + key, total_loss_dict[key].item(), iteration)
            my_writer.add_scalar('val/' + key + '_ppl', ppl, iteration)
            total_val_loss += total_loss_dict[key].item()
        # if writer:
        #     writer.add_scalar('{} validation'.format(key),
        #                       total_loss_dict[key].item(),
        #                       iteration)
        #     writer.add_scalar('{} validation vs samples'.format(key),
        #                       total_loss_dict[key].item(),
        #                       args.consumed_train_samples)
        #     if args.log_validation_ppl_to_tensorboard:
        #         writer.add_scalar('{} validation ppl'.format(key), ppl,
        #                           iteration)
        #         writer.add_scalar('{} validation ppl vs samples'.format(key),
        #                           ppl, args.consumed_train_samples)

    if process_non_loss_data_func is not None and writer and is_last_rank():
        process_non_loss_data_func(collected_non_loss_data, iteration, writer)

    if my_writer and is_last_rank():
        my_writer.add_scalar("val/total-loss", total_val_loss, iteration)

    length = len(string) + 1
    print_rank_last('-' * length)
    print_rank_last(string)
    if "describe" in  total_loss_dict and isinstance(total_loss_dict["describe"], dict):
        for k, v in total_loss_dict["describe"].items():
            out_str = " : ".join([k, v])
            print_rank_last(out_str)
    print_rank_last('-' * length)


def cyclic_iter(iter):
    while True:
        for x in iter:
            yield x

def build_train_valid_test_data_iterators(
        build_train_valid_test_datasets_provider):
    """XXX"""
    args = get_args()

    (train_dataloader, valid_dataloader, test_dataloader) = (None, None, None)

    print_rank_0('> building train, validation, and test datasets ...')

    # Backward compatibility, assume fixed batch size.
    if args.iteration > 0 and args.consumed_train_samples == 0:
        assert args.train_samples is None, \
            'only backward compatiblity support for iteration-based training'
        args.consumed_train_samples = args.iteration * args.global_batch_size
    if args.iteration > 0 and args.consumed_valid_samples == 0:
        if args.train_samples is None:
            args.consumed_valid_samples = (args.iteration // args.eval_interval) * \
                args.eval_iters * args.global_batch_size

    # Data loader only on rank 0 of each model parallel group.
    if mpu.get_tensor_model_parallel_rank() == 0:

        # Number of train/valid/test samples.
        if args.train_samples:
            train_samples = args.train_samples
        else:
            train_samples = args.train_iters * args.global_batch_size
        eval_iters = (args.train_iters // args.eval_interval + 1) * \
                     args.eval_iters
        test_iters = args.eval_iters
        train_val_test_num_samples = [train_samples,
                                      eval_iters * args.global_batch_size,
                                      test_iters * args.global_batch_size]
        print_rank_0(' > datasets target sizes (minimum size):')
        print_rank_0('    train:      {}'.format(train_val_test_num_samples[0]))
        print_rank_0('    validation: {}'.format(train_val_test_num_samples[1]))
        print_rank_0('    test:       {}'.format(train_val_test_num_samples[2]))

        # Build the datasets.
        train_ds, valid_ds, test_ds = build_train_valid_test_datasets_provider(
            train_val_test_num_samples)

        # Build dataloders.
        train_dataloader = build_pretraining_data_loader(
            train_ds, args.consumed_train_samples)
        valid_dataloader = build_pretraining_data_loader(
            valid_ds, args.consumed_valid_samples)
        test_dataloader = build_pretraining_data_loader(test_ds, 0)

        # Flags to know if we need to do training/validation/testing.
        do_train = train_dataloader is not None and args.train_iters > 0
        do_valid = valid_dataloader is not None and args.eval_iters > 0
        do_test = test_dataloader is not None and args.eval_iters > 0
        # Need to broadcast num_tokens and num_type_tokens.
        flags = torch.cuda.LongTensor(
            [int(do_train), int(do_valid), int(do_test)])
    else:
        flags = torch.cuda.LongTensor([0, 0, 0])

    # Broadcast num tokens.
    torch.distributed.broadcast(flags,
                                mpu.get_tensor_model_parallel_src_rank(),
                                group=mpu.get_tensor_model_parallel_group())
    args.do_train = flags[0].item()
    args.do_valid = flags[1].item()
    args.do_test = flags[2].item()

    # Build iterators.
    dl_type = args.dataloader_type
    assert dl_type in ['single', 'cyclic']

    if train_dataloader is not None:
        train_data_iterator = iter(train_dataloader) if dl_type == 'single' \
                              else iter(cyclic_iter(train_dataloader))
    else:
        train_data_iterator = None

    if valid_dataloader is not None:
        valid_data_iterator = iter(valid_dataloader) if dl_type == 'single' \
                              else iter(cyclic_iter(valid_dataloader))
    else:
        valid_data_iterator = None

    if test_dataloader is not None:
        test_data_iterator = iter(test_dataloader) if dl_type == 'single' \
                             else iter(cyclic_iter(test_dataloader))
    else:
        test_data_iterator = None

    return train_data_iterator, valid_data_iterator, test_data_iterator