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pretrain_mamba.py
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pretrain_mamba.py
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# Copyright (c) 2024, NVIDIA CORPORATION. All rights reserved.
"""Pretrain Mamba."""
import os
import torch
from functools import partial
from typing import List, Optional, Tuple, Union
from megatron.training import get_args
from megatron.training import print_rank_0
from megatron.training import get_timers
from megatron.training import get_tokenizer
from megatron.core import mpu
from megatron.core.enums import ModelType
from megatron.core.datasets.blended_megatron_dataset_builder import BlendedMegatronDatasetBuilder
from megatron.core.datasets.gpt_dataset import GPTDatasetConfig
from megatron.core.datasets.gpt_dataset import MockGPTDataset, GPTDataset
from megatron.core.rerun_state_machine import get_rerun_state_machine
from megatron.core.models.mamba import MambaModel
from megatron.training import pretrain
from megatron.core.utils import StragglerDetector
from megatron.core.transformer.spec_utils import import_module
from megatron.training.utils import (
get_batch_on_this_cp_rank,
get_batch_on_this_tp_rank,
get_blend_and_blend_per_split,
)
from megatron.training.arguments import core_transformer_config_from_args
from megatron.core.models.gpt.gpt_layer_specs import get_gpt_layer_with_transformer_engine_spec
stimer = StragglerDetector()
def count_parameters_in_layer(model, layer_name):
num_params = 0
for name, param in model.named_parameters():
if layer_name in name:
num_params += param.numel()
print_rank_0(f" - {name}: {param.numel()}")
return num_params
def model_provider(pre_process=True, post_process=True) -> MambaModel:
"""Builds the model.
Args:
pre_process (bool, optional): Set to true if you need to compute embedings. Defaults to True.
post_process (bool, optional): Set to true if you need to want to compute output logits/loss. Defaults to True.
Returns:
MambaModel: The returned model
"""
args = get_args()
print_rank_0('building Mamba model ...')
config = core_transformer_config_from_args(get_args())
assert args.use_legacy_models == False, "Mamba only supported in Mcore!"
if args.spec is not None:
mamba_stack_spec = import_module(args.spec)
else:
raise("You must provide a valid Mamba layer spec!")
model = MambaModel(
config=config,
mamba_stack_spec=mamba_stack_spec,
vocab_size=args.padded_vocab_size,
max_sequence_length=args.max_position_embeddings,
pre_process=pre_process,
hybrid_attention_ratio=args.hybrid_attention_ratio,
hybrid_mlp_ratio=args.hybrid_mlp_ratio,
hybrid_override_pattern=args.hybrid_override_pattern,
post_process=post_process,
fp16_lm_cross_entropy=args.fp16_lm_cross_entropy,
parallel_output=True,
share_embeddings_and_output_weights=not args.untie_embeddings_and_output_weights,
position_embedding_type=args.position_embedding_type,
rotary_percent=args.rotary_percent,
rotary_base=args.rotary_base
)
for l in range(model.decoder.num_layers_per_pipeline_rank):
layer_params = count_parameters_in_layer(model, f'decoder.layers.{l}.')
print_rank_0(f" == params layer {l}: {layer_params}")
return model
def get_batch(data_iterator):
"""Generate a batch."""
# TODO: this is pretty hacky, find a better way
if (not mpu.is_pipeline_first_stage()) and (not mpu.is_pipeline_last_stage()):
return None, None, None, None, None
# get batches based on the TP rank you are on
batch = get_batch_on_this_tp_rank(data_iterator)
# slice batch along sequence dimension for context parallelism
batch = get_batch_on_this_cp_rank(batch)
return batch.values()
# define spiky loss as a variation of 20% or more
SPIKY_LOSS_PERC = 0.2
def loss_func(loss_mask: torch.Tensor, output_tensor: torch.Tensor):
"""Loss function.
Args:
loss_mask (torch.Tensor): Used to mask out some portions of the loss
output_tensor (torch.Tensor): The tensor with the losses
Returns:
the loss scalar for this micro-batch
the number of non-padded tokens in this microbatch
a dict containing reporting metrics on the loss and number of tokens across
the data parallel ranks
"""
args = get_args()
losses = output_tensor.float()
loss_mask = loss_mask.view(-1).float()
total_tokens = loss_mask.sum()
loss = torch.cat([torch.sum(losses.view(-1) * loss_mask).view(1), total_tokens.view(1)])
if args.context_parallel_size > 1:
torch.distributed.all_reduce(loss, group=mpu.get_context_parallel_group())
# Check individual rank losses are not NaN prior to DP all-reduce.
rerun_state_machine = get_rerun_state_machine()
if args.check_for_nan_in_loss_and_grad:
rerun_state_machine.validate_result(
result=loss[0],
rejection_func=torch.isnan,
message="found NaN in local forward loss calculation",
tolerance=0.0, # forward pass calculations are determinisic
fatal=True,
)
# Check for spiky loss
if args.check_for_spiky_loss:
rerun_state_machine.validate_result(
result=loss[0],
rejection_func=partial(rerun_state_machine.is_spiky_loss, threshold=SPIKY_LOSS_PERC),
message="Spiky loss",
tolerance=0.0, # forward pass calculations are determinisic
fatal=False,
)
# Reduce loss for logging.
reporting_loss = loss.clone().detach()
torch.distributed.all_reduce(reporting_loss, group=mpu.get_data_parallel_group())
local_num_tokens = loss[1].clone().detach().to(torch.int)
return (
loss[0] * args.context_parallel_size,
local_num_tokens,
{'lm loss': (reporting_loss[0], reporting_loss[1])},
)
def forward_step(data_iterator, model: MambaModel):
"""Forward training step.
Args:
data_iterator : Input data iterator
model (MambaModel): The GPT Model
"""
args = get_args()
timers = get_timers()
# Get the batch.
timers('batch-generator', log_level=2).start()
global stimer
with stimer(bdata=True):
tokens, labels, loss_mask, attention_mask, position_ids = get_batch(
data_iterator)
timers('batch-generator').stop()
with stimer:
output_tensor = model(tokens, position_ids, attention_mask,
labels=labels)
return output_tensor, partial(loss_func, loss_mask)
def is_dataset_built_on_rank():
return (
mpu.is_pipeline_first_stage() or mpu.is_pipeline_last_stage()
) and mpu.get_tensor_model_parallel_rank() == 0
def core_gpt_dataset_config_from_args(args):
tokenizer = get_tokenizer()
# Sometimes --data-path is too long, instead we parse it from a file.
blend: Optional[Tuple[List[str], Optional[List[float]]]]
blend_per_split: Optional[List[Optional[Tuple[List[str], Optional[List[float]]]]]]
blend, blend_per_split = get_blend_and_blend_per_split(args)
return GPTDatasetConfig(
random_seed=args.seed,
sequence_length=args.seq_length,
blend=blend,
blend_per_split=blend_per_split,
renormalize_blend_weights=args.renormalize_blend_weights,
split=args.split,
num_dataset_builder_threads=args.num_dataset_builder_threads,
path_to_cache=args.data_cache_path,
mmap_bin_files=args.mmap_bin_files,
tokenizer=tokenizer,
reset_position_ids=args.reset_position_ids,
reset_attention_mask=args.reset_attention_mask,
eod_mask_loss=args.eod_mask_loss,
create_attention_mask=args.create_attention_mask_in_dataloader,
s3_cache_path=args.s3_cache_path,
)
def train_valid_test_datasets_provider(train_val_test_num_samples):
"""Build the train test and validation datasets.
Args:
train_val_test_num_samples : A list containing the number of samples in train test and validation.
"""
args = get_args()
config = core_gpt_dataset_config_from_args(args)
if args.mock_data:
dataset_type = MockGPTDataset
else:
dataset_type = GPTDataset
print_rank_0("> building train, validation, and test datasets for GPT ...")
train_ds, valid_ds, test_ds = BlendedMegatronDatasetBuilder(
dataset_type,
train_val_test_num_samples,
is_dataset_built_on_rank,
config
).build()
print_rank_0("> finished creating GPT datasets ...")
return train_ds, valid_ds, test_ds
if __name__ == "__main__":
# Temporary for transition to core datasets
train_valid_test_datasets_provider.is_distributed = True
pretrain(train_valid_test_datasets_provider,
model_provider,
ModelType.encoder_or_decoder,
forward_step,
args_defaults={'tokenizer_type': 'GPT2BPETokenizer'})