# Copyright (c) 2025, NVIDIA CORPORATION. All rights reserved. import os import torch from torch.optim import Adam from torch.utils.data import DataLoader from functools import partial from pathlib import Path from typing import Any, Callable, Dict, Tuple, Iterator from megatron.core import parallel_state from megatron.core import dist_checkpointing from megatron.core.pipeline_parallel.schedules import get_forward_backward_func from megatron.core.tensor_parallel.random import model_parallel_cuda_manual_seed from megatron.core.transformer.transformer_config import TransformerConfig from megatron.core.models.gpt.gpt_model import GPTModel from megatron.core.models.gpt.gpt_layer_specs import get_gpt_layer_local_spec from megatron.core.datasets.utils import compile_helpers from megatron.core.datasets.blended_megatron_dataset_builder import ( BlendedMegatronDatasetBuilder, ) from megatron.core.datasets.gpt_dataset import GPTDatasetConfig, MockGPTDataset from megatron.training.tokenizer.tokenizer import _NullTokenizer from megatron.core.distributed import DistributedDataParallel from megatron.core.distributed import DistributedDataParallelConfig from megatron.core.distributed.finalize_model_grads import finalize_model_grads _SEQUENCE_LENGTH: int = 64 def initialize_distributed( tensor_model_parallel_size: int = 1, pipeline_model_parallel_size: int = 1 ) -> None: """ Initialize torch.distributed and Megatron-Core model parallel groups. Args: tensor_model_parallel_size: Number of GPUs for tensor model parallelism. pipeline_model_parallel_size: Number of GPUs for pipeline model parallelism. """ parallel_state.destroy_model_parallel() # Torch setup for distributed training rank: int = int(os.environ["RANK"]) world_size: int = int(os.environ["WORLD_SIZE"]) local_rank: int = int(os.environ["LOCAL_RANK"]) torch.cuda.set_device(local_rank) torch.distributed.init_process_group( backend="nccl", rank=rank, world_size=world_size ) # Megatron core distributed training initialization parallel_state.initialize_model_parallel( tensor_model_parallel_size, pipeline_model_parallel_size ) def model_provider() -> GPTModel: """ Build and return a simple GPT model for demonstration. Returns: GPTModel: A small GPT model with 2 layers for testing. """ transformer_config: TransformerConfig = TransformerConfig( num_layers=2, hidden_size=12, num_attention_heads=4, use_cpu_initialization=True, pipeline_dtype=torch.float32, ) gpt_model: GPTModel = GPTModel( config=transformer_config, transformer_layer_spec=get_gpt_layer_local_spec(), vocab_size=100, max_sequence_length=_SEQUENCE_LENGTH, ) return gpt_model def get_train_data_iterator() -> Iterator: """ Create a mock dataset and return a data iterator. Returns: Iterator: Data iterator for training batches. """ if torch.distributed.is_available() and torch.distributed.is_initialized(): if torch.distributed.get_rank() == 0: compile_helpers() torch.distributed.barrier() else: compile_helpers() config: GPTDatasetConfig = GPTDatasetConfig( random_seed=0, sequence_length=_SEQUENCE_LENGTH, reset_position_ids=False, reset_attention_mask=False, eod_mask_loss=False, tokenizer=_NullTokenizer(vocab_size=_SEQUENCE_LENGTH), mid_level_dataset_surplus=0.005, ) datasets = BlendedMegatronDatasetBuilder( MockGPTDataset, [1000, None, None], lambda: True, config ).build() train_dataloader: DataLoader = DataLoader(datasets[0], batch_size=8, shuffle=True) train_iterator: Iterator = iter(train_dataloader) return train_iterator def forward_step_func( data_iterator: Iterator, model: torch.nn.Module ) -> Tuple[torch.Tensor, Callable]: """ Forward step function that computes model output and returns loss function. Args: data_iterator: Iterator providing training batches. model: The GPT model to train. Returns: Tuple of (output_tensor, loss_function) where loss_function is a partial function that will compute the final loss when called. """ def loss_func( loss_mask: torch.Tensor, output_tensor: torch.Tensor ) -> Tuple[torch.Tensor, Dict[str, torch.Tensor]]: losses: torch.Tensor = output_tensor.float() loss_mask = loss_mask.view(-1).float() loss: torch.Tensor = torch.sum(losses.view(-1) * loss_mask) / loss_mask.sum() # If you have data parallel reduce loss across data parallel groups. # If pipeline parallel, loss computation is done only in last stage. return loss, {"lm loss": loss} data: Dict[str, torch.Tensor] = next(data_iterator) tokens: torch.Tensor = data["tokens"].to(device) attention_mask: torch.Tensor = data["attention_mask"].to(device) position_ids: torch.Tensor = data["position_ids"].to(device) labels: torch.Tensor = data["labels"].to(device) loss_mask: torch.Tensor = data["loss_mask"].to(device) output_tensor: torch.Tensor = model( tokens, position_ids, attention_mask, labels=labels ) return output_tensor, partial(loss_func, loss_mask) def save_distributed_checkpoint( checkpoint_path: str, gpt_model: torch.nn.Module ) -> None: """ Save model checkpoint using Megatron-Core distributed checkpointing. Args: checkpoint_path: Directory path to save checkpoint. gpt_model: The model to checkpoint (may be wrapped with DDP). """ # Access underlying model if wrapped with DDP model: torch.nn.Module = ( gpt_model.module if hasattr(gpt_model, "module") else gpt_model ) sharded_state_dict: Dict = model.sharded_state_dict(prefix="") dist_checkpointing.save( sharded_state_dict=sharded_state_dict, checkpoint_dir=checkpoint_path ) def load_distributed_checkpoint( checkpoint_path: str, gpt_model: torch.nn.Module ) -> torch.nn.Module: """ Load model checkpoint using Megatron-Core distributed checkpointing. Args: checkpoint_path: Directory path to load checkpoint from. gpt_model: The model to load into (may be wrapped with DDP). Returns: The model with loaded checkpoint weights. """ # Access underlying model if wrapped with DDP model: torch.nn.Module = ( gpt_model.module if hasattr(gpt_model, "module") else gpt_model ) sharded_state_dict: Dict = model.sharded_state_dict(prefix="") checkpoint: Dict = dist_checkpointing.load( sharded_state_dict=sharded_state_dict, checkpoint_dir=checkpoint_path ) model.load_state_dict(checkpoint) return gpt_model if __name__ == "__main__": initialize_distributed(tensor_model_parallel_size=2, pipeline_model_parallel_size=1) model_parallel_cuda_manual_seed(123) gpt_model: GPTModel = model_provider() device: torch.device = torch.device("cuda") gpt_model.to(device) # Wrap model with DistributedDataParallel for proper gradient synchronization. # This provides the finish_grad_sync() method required by finalize_model_grads(). config: TransformerConfig = gpt_model.config ddp_config: DistributedDataParallelConfig = DistributedDataParallelConfig( grad_reduce_in_fp32=False, overlap_grad_reduce=False, use_distributed_optimizer=False, ) gpt_model = DistributedDataParallel( config=config, ddp_config=ddp_config, module=gpt_model, ) optim: Adam = Adam(gpt_model.parameters()) train_iterator: Iterator = get_train_data_iterator() forward_backward_func: Callable[..., Dict[str, Any]] = get_forward_backward_func() # Running the model for 5 iterations for iteration in range(5): optim.zero_grad() losses_reduced: Dict[str, Any] = forward_backward_func( forward_step_func=forward_step_func, data_iterator=train_iterator, model=gpt_model, num_microbatches=1, seq_length=_SEQUENCE_LENGTH, micro_batch_size=8, decoder_seq_length=_SEQUENCE_LENGTH, forward_only=False, ) # Finalize model gradients: all-reduce across DP and TP groups. # This synchronizes gradients for non-tensor-parallel parameters (e.g., LayerNorm) # across tensor parallel ranks and all gradients across data parallel ranks. finalize_model_grads([gpt_model]) optim.step() print(f"Iteration {iteration}: Losses reduced: {losses_reduced}") # Saving the model ckpt_path: str = os.getcwd() + "/ckpt" Path(ckpt_path).mkdir(exist_ok=True) save_distributed_checkpoint(gpt_model=gpt_model, checkpoint_path=ckpt_path) # Loading the model gpt_model = load_distributed_checkpoint( gpt_model=gpt_model, checkpoint_path=ckpt_path ) gpt_model.to(device) print("Successfully loaded the model")