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import logging
from typing import Tuple, TypedDict
import torch
import torch.distributed as dist
from omegaconf import DictConfig, OmegaConf
from abbie.device_mesh_manager import DMM
from abbie.gargantua.causal_lm import GenericTransformerForCausalLM, make_model_optimizer
from abbie.models import load_pretrained_hf_model
from abbie.utils.metrics import GlobalMetrics
from abbie.utils.optimizer import MappedOptimizer, PseudoMappedOptimizer
class TrainingStats(TypedDict):
step_nb: int
total_tokens: int
def set_qwen_vl_utils_log_level(level=logging.ERROR):
try:
# Qwen2.5-VL has info logging
from qwen_vl_utils.vision_process import logger
logger.setLevel(level)
except ImportError:
pass
def init_wandb(config: DictConfig):
experiment_config = OmegaConf.to_object(config)
experiment_config.update({"trainer.world_size": dist.get_world_size()})
GlobalMetrics.initialize(
project_name=config.trainer.project_name,
experiment_name=config.trainer.experiment_name,
config=experiment_config,
)
def load_model_and_optimizer(
config: DictConfig,
num_training_steps: int,
) -> Tuple[
GenericTransformerForCausalLM,
MappedOptimizer,
]:
max_batch_size = config.data.micro_batch_size * config.data.chunks_per_step
if config.data.is_continuous_batch:
max_batch_size = config.data.chunks_per_step
DMM.log_rank0(f"Loading model from {config.model.pretrained_path}")
model = load_pretrained_hf_model(
config.model.pretrained_path,
max_batch_size=max_batch_size,
max_seq_len=config.model.max_seq_len,
aux_loss_coef=config.model.aux_loss_coef,
z_loss_coef=config.model.z_loss_coef,
recompute_norm=config.model.recompute_norm,
recompute_attn_up_proj=config.model.recompute_attn_up_proj,
recompute_attn=config.model.recompute_attn,
recompute_attn_down_proj=config.model.recompute_attn_down_proj,
recompute_mlp=config.model.recompute_mlp,
recompute_mlp_act=config.model.recompute_mlp_act,
recompute_dispatch=config.model.recompute_dispatch,
recompute_visual=config.model.recompute_visual,
activation_offloading=config.model.activation_offloading,
visual_activation_offloading=config.model.visual_activation_offloading,
token_dispatch_method=config.model.token_dispatch_method,
pp_distributed_dataloading=config.model.pp_distributed_dataloading,
decoder_first_pipeline_num_layers=config.model.decoder_first_pipeline_num_layers,
decoder_last_pipeline_num_layers=config.model.decoder_last_pipeline_num_layers,
)
# Before making optimizer, freeze necessary params first
if config.model.freeze_decoder_vocab:
model.freeze_vocab()
if config.model.freeze_decoder_but_last_n_layers is not None:
model.freeze_all_layers_but_last_n(config.model.freeze_decoder_but_last_n_layers)
if model.config.vision_config is not None:
if config.model.freeze_visual_encoder:
model.visual.freeze_encoder()
if config.model.freeze_visual_aligner:
model.visual.freeze_aligner()
# Initializing model could have created some buffers (like for loading pretrained weights)
torch.cuda.empty_cache()
DMM.log_rank0(f"Model loaded mem_alloc={torch.cuda.max_memory_allocated() / (1 << 30):.1f}GB")
total_params = 0
total_trainable_params = 0
for param in model.parameters():
total_params += param.numel()
if param.requires_grad:
total_trainable_params += param.numel()
DMM.log_all_ranks(f"trainable_params={total_trainable_params / 1e9:.3f}B total_params={total_params / 1e9:.3f}B")
num_warmup_steps = int(num_training_steps * config.optim.lr_warmup_steps_ratio)
if config.optim.disable_optimizer:
optimizer = PseudoMappedOptimizer()
else:
optimizer = make_model_optimizer(
model=model,
num_training_steps=num_training_steps,
num_warmup_steps=num_warmup_steps,
lr=config.optim.lr,
visual_lr=config.optim.visual_lr,
betas=(config.optim.adam_beta1, config.optim.adam_beta2),
weight_decay=config.optim.weight_decay,
lr_schedule=config.optim.lr_schedule,
)
# Initializing optimizer could have created some buffers
torch.cuda.empty_cache()
DMM.log_rank0(f"Optimizers created mem_alloc={torch.cuda.max_memory_allocated() / (1 << 30):.1f}GB")
return model, optimizer