train_utils.py 14 KB

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  1. # Copyright (c) Meta Platforms, Inc. and affiliates.
  2. # This software may be used and distributed according to the terms of the Llama 2 Community License Agreement.
  3. import os
  4. import sys
  5. from typing import List
  6. import fire
  7. import torch
  8. import transformers
  9. from datasets import load_dataset
  10. from tqdm import tqdm
  11. """
  12. Unused imports:
  13. import torch.nn as nn
  14. import bitsandbytes as bnb
  15. """
  16. from torch.nn import functional as F
  17. from peft import (
  18. LoraConfig,
  19. get_peft_model,
  20. get_peft_model_state_dict,
  21. prepare_model_for_int8_training,
  22. set_peft_model_state_dict,
  23. )
  24. from transformers import LlamaForCausalLM, LlamaTokenizer
  25. from torch.distributed.fsdp import StateDictType
  26. import torch.distributed as dist
  27. from pkg_resources import packaging
  28. from .memory_utils import MemoryTrace
  29. import model_checkpointing
  30. import torch.cuda.nccl as nccl
  31. from torch.distributed.fsdp.sharded_grad_scaler import ShardedGradScaler
  32. from pathlib import Path
  33. sys.path.append(str(Path(__file__).resolve().parent.parent))
  34. from policies import bfSixteen, fpSixteen,bfSixteen_mixed, get_llama_wrapper
  35. def set_tokenizer_params(tokenizer: LlamaTokenizer):
  36. tokenizer.pad_token_id = 0
  37. tokenizer.padding_side = "left"
  38. # Converting Bytes to Megabytes
  39. def byte2mb(x):
  40. return int(x / 2**20)
  41. def train(model, train_dataloader,eval_dataloader, tokenizer, optimizer, lr_scheduler, gradient_accumulation_steps, train_config, fsdp_config=None, local_rank=None, rank=None):
  42. """
  43. Trains the model on the given dataloader
  44. Args:
  45. model: The model to be trained
  46. train_dataloader: The dataloader containing the training data
  47. optimizer: The optimizer used for training
  48. lr_scheduler: The learning rate scheduler
  49. gradient_accumulation_steps: The number of steps to accumulate gradients before performing a backward/update operation
  50. num_epochs: The number of epochs to train for
  51. local_rank: The rank of the current node in a distributed setting
  52. train_config: The training configuration
  53. eval_dataloader: The dataloader containing the eval data
  54. tokenizer: tokenizer used in the eval for decoding the predicitons
  55. Returns: results dictionary containing average training and validation perplexity and loss
  56. """
  57. # Create a gradient scaler for fp16
  58. if train_config.use_fp16 and train_config.enable_fsdp:
  59. scaler = ShardedGradScaler()
  60. elif train_config.use_fp16 and not train_config.enable_fsdp:
  61. scaler = torch.cuda.amp.GradScaler()
  62. if train_config.enable_fsdp:
  63. world_size = int(os.environ["WORLD_SIZE"])
  64. train_prep = []
  65. train_loss = []
  66. val_prep = []
  67. val_loss =[]
  68. results = {}
  69. best_val_loss = float("inf")
  70. for epoch in range(train_config.num_epochs):
  71. with MemoryTrace() as memtrace: # track the memory usage
  72. model.train()
  73. total_loss = 0.0
  74. data_set_len = 0
  75. for step, batch in enumerate(tqdm(train_dataloader,colour="blue", desc=f"Training Epoch{epoch}")):
  76. for key in batch.keys():
  77. if train_config.enable_fsdp:
  78. batch[key] = batch[key].to(local_rank)
  79. else:
  80. batch[key] = batch[key].to('cuda:0')
  81. loss = model(**batch).loss
  82. loss = loss / gradient_accumulation_steps
  83. total_loss += loss.detach().float()
  84. first_key = next(iter(batch))
  85. data_set_len += len(batch[first_key])
  86. if train_config.use_fp16:
  87. # if fp16 is enabled, use gradient scaler to handle gradient update
  88. scaler.scale(loss).backward()
  89. if (step + 1) % gradient_accumulation_steps == 0 or step == len(train_dataloader) - 1:
  90. scaler.step(optimizer)
  91. scaler.update()
  92. optimizer.zero_grad()
  93. else:
  94. # regular backpropagation when fp16 is not used
  95. loss.backward()
  96. if (step + 1) % gradient_accumulation_steps == 0 or step == len(train_dataloader) - 1:
  97. optimizer.step()
  98. optimizer.zero_grad()
  99. if train_config.enable_fsdp:
  100. if rank==0:
  101. print(f"\n step {step} is completed and loss is {loss.detach().float()}")
  102. else:
  103. print(f"\n step {step} is completed and loss is {loss.detach().float()}")
  104. # Reducing total_loss across all devices if there's more than one CUDA device
  105. if torch.cuda.device_count() > 1 and train_config.enable_fsdp:
  106. dist.all_reduce(total_loss, op=dist.ReduceOp.SUM)
  107. train_epoch_loss = total_loss / len(train_dataloader)
  108. if train_config.enable_fsdp:
  109. train_epoch_loss = train_epoch_loss/world_size
  110. train_perplexity = torch.exp(train_epoch_loss)
  111. train_prep.append(train_perplexity)
  112. train_loss.append(train_epoch_loss)
  113. print(f"Max CUDA memory allocated was {memtrace.peak} GB")
  114. print(f"Max CUDA memory reserved was {memtrace.max_reserved} GB")
  115. print(f"Peak active CUDA memory was {memtrace.peak_active_gb} GB")
  116. print(f"Cuda Malloc retires : {memtrace.cuda_malloc_retires}")
  117. print(f"CPU Total Peak Memory consumed during the train (max): {memtrace.cpu_peaked + memtrace.cpu_begin} GB")
  118. # Update the learning rate as needed
  119. lr_scheduler.step()
  120. if train_config.run_validation:
  121. eval_ppl, eval_epoch_loss = evaluation(model, train_config, eval_dataloader, rank, tokenizer)
  122. if train_config.save_model and eval_epoch_loss < best_val_loss:
  123. dist.barrier()
  124. if train_config.use_peft:
  125. print(f"we are in the saving the PEFT modules")
  126. model.save_pretrained(train_config.output_dir)
  127. print(f"PEFT modules are saved in {train_config.output_dir} directory")
  128. else:
  129. if not train_config.use_peft and fsdp_config.checkpoint_type == StateDictType.FULL_STATE_DICT:
  130. model_checkpointing.save_model_checkpoint(
  131. model, optimizer, rank, train_config, epoch=epoch
  132. )
  133. elif not train_config.use_peft and fsdp_config.checkpoint_type == StateDictType.SHARDED_STATE_DICT:
  134. print(" Saving the FSDP model checkpoints using SHARDED_STATE_DICT")
  135. print("=====================================================")
  136. model_checkpointing.save_model_and_optimizer_sharded(model, rank, train_config)
  137. if train_config.save_optimizer:
  138. model_checkpointing.save_model_and_optimizer_sharded(model, rank, train_config, optim=optimizer)
  139. print(" Saving the FSDP model checkpoints qnd optimizer using SHARDED_STATE_DICT")
  140. print("=====================================================")
  141. if not train_config.use_peft and train_config.save_optimizer:
  142. model_checkpointing.save_optimizer_checkpoint(
  143. model, optimizer, rank, train_config, epoch=epoch
  144. )
  145. print(" Saving the FSDP model checkpoints qnd optimizer using FULL_STATE_DICT")
  146. print("=====================================================")
  147. dist.barrier()
  148. if eval_epoch_loss < best_val_loss:
  149. best_val_loss = eval_epoch_loss
  150. if train_config.enable_fsdp:
  151. if rank==0:
  152. print(f"best eval loss on epoch {epoch} is {best_val_loss}")
  153. else:
  154. print(f"best eval loss on epoch {epoch} is {best_val_loss}")
  155. val_loss.append(best_val_loss)
  156. val_prep.append(eval_ppl)
  157. print(f"Epoch {epoch+1}: train_perplexity={train_perplexity:.4f}, train_epoch_loss={train_epoch_loss:.4f}")
  158. lr_scheduler.step()
  159. avg_train_prep = sum(train_prep)/len(train_prep)
  160. avg_train_loss = sum(train_loss)/len(train_loss)
  161. if train_config.run_validation:
  162. avg_eval_prep = sum(val_prep)/len(val_prep)
  163. avg_eval_loss = sum(val_loss)/len(val_loss)
  164. results['avg_train_prep'] = avg_train_prep
  165. results['avg_train_loss'] = avg_train_loss
  166. if train_config.run_validation:
  167. results['avg_eval_prep'] = avg_eval_prep
  168. results['avg_eval_loss'] = avg_eval_loss
  169. dist.barrier()
  170. return results
  171. def evaluation(model,train_config, eval_dataloader, local_rank, tokenizer):
  172. """
  173. Evaluates the model on the given dataloader
  174. Args:
  175. model: The model to evaluate
  176. eval_dataloader: The dataloader containing the evaluation data
  177. local_rank: The rank of the current node in a distributed setting
  178. tokenizer: The tokenizer used to decode predictions
  179. Returns: eval_ppl, eval_epoch_loss
  180. """
  181. if train_config.enable_fsdp:
  182. world_size = int(os.environ["WORLD_SIZE"])
  183. model.eval()
  184. eval_preds = []
  185. eval_loss = 0.0 # Initialize evaluation loss
  186. eval_dataset_len = 0
  187. with MemoryTrace() as memtrace:
  188. for step, batch in enumerate(tqdm(eval_dataloader,colour="green", desc="evaluating Epoch")):
  189. for key in batch.keys():
  190. if train_config.enable_fsdp:
  191. batch[key] = batch[key].to(local_rank)
  192. else:
  193. batch[key] = batch[key].to('cuda:0')
  194. # Ensure no gradients are computed for this scope to save memory
  195. with torch.no_grad():
  196. # Forward pass and compute loss
  197. outputs = model(**batch)
  198. loss = outputs.loss
  199. eval_loss += loss.detach().float()
  200. first_key = next(iter(batch))
  201. eval_dataset_len+= len(batch[first_key])
  202. # Decode predictions and add to evaluation predictions list
  203. preds = torch.argmax(outputs.logits, -1)
  204. eval_preds.extend(
  205. tokenizer.batch_decode(preds.detach().cpu().numpy(), skip_special_tokens=True)
  206. )
  207. # If there's more than one CUDA device, reduce evaluation loss across all devices
  208. if torch.cuda.device_count() > 1 and train_config.enable_fsdp:
  209. dist.all_reduce(eval_loss, op=dist.ReduceOp.SUM)
  210. # Compute average loss and perplexity
  211. eval_epoch_loss = eval_loss / len(eval_dataloader)
  212. if train_config.enable_fsdp:
  213. eval_epoch_loss = eval_epoch_loss/world_size
  214. eval_ppl = torch.exp(eval_epoch_loss)
  215. # Print evaluation metrics
  216. print(f" {eval_ppl=} {eval_epoch_loss=}")
  217. return eval_ppl, eval_epoch_loss
  218. def freeze_transformer_layers(model, num_layer):
  219. for i, layer in enumerate(model.model.layers):
  220. if i < num_layer:
  221. for param in layer.parameters():
  222. param.requires_grad = False
  223. def check_frozen_layers_peft_model(model):
  224. for i, layer in enumerate(model.base_model.model.model.layers):
  225. for name, param in layer.named_parameters():
  226. print(f"Layer {i}, parameter {name}: requires_grad = {param.requires_grad}")
  227. def setup():
  228. """Initialize the process group for distributed training"""
  229. dist.init_process_group("nccl")
  230. def setup_environ_flags(rank):
  231. """Set environment flags for debugging purposes"""
  232. os.environ["TORCH_SHOW_CPP_STACKTRACES"] = str(1)
  233. os.environ["NCCL_ASYNC_ERROR_HANDLING"] = str(1)
  234. os.environ["TORCH_DISTRIBUTED_DEBUG"] = "DETAIL"
  235. os.environ['PYTORCH_CUDA_ALLOC_CONF']='expandable_segments:True'
  236. if rank == 0:
  237. print(f"--> Running with torch dist debug set to detail")
  238. def cleanup():
  239. """Clean up the process group after training"""
  240. dist.destroy_process_group()
  241. def clear_gpu_cache(rank=None):
  242. """Clear the GPU cache for all ranks"""
  243. if rank == 0:
  244. print(f"Clearing GPU cache for all ranks")
  245. torch.cuda.empty_cache()
  246. def get_parameter_dtypes(model):
  247. """Get the data types of model parameters"""
  248. parameter_dtypes = {}
  249. for name, parameter in model.named_parameters():
  250. parameter_dtypes[name] = parameter.dtype
  251. return parameter_dtypes
  252. def print_model_size(model, config, rank: int = 0) -> None:
  253. """
  254. Print model name, the number of trainable parameters and initialization time.
  255. Args:
  256. model: The PyTorch model.
  257. model_name (str): Name of the model.
  258. init_time_start (float): Initialization start time.
  259. init_time_end (float): Initialization end time.
  260. rank (int, optional): Current process's rank. Defaults to 0.
  261. """
  262. if rank == 0:
  263. print(f"--> Model {config.model_name}")
  264. total_params = sum(p.numel() for p in model.parameters() if p.requires_grad)
  265. print(f"\n--> {config.model_name} has {total_params / 1e6} Million params\n")
  266. def get_policies(cfg, rank):
  267. """Get the policies for mixed precision and fsdp wrapping"""
  268. verify_bfloat_support = (
  269. torch.version.cuda
  270. and torch.cuda.is_bf16_supported()
  271. and packaging.version.parse(torch.version.cuda).release >= (11, 0)
  272. and dist.is_nccl_available()
  273. and nccl.version() >= (2, 10)
  274. )
  275. mixed_precision_policy = None
  276. wrapping_policy = None
  277. # Mixed precision
  278. if cfg.mixed_precision:
  279. bf16_ready = verify_bfloat_support
  280. if bf16_ready and not cfg.use_fp16:
  281. mixed_precision_policy = bfSixteen_mixed
  282. if rank == 0:
  283. print(f"bFloat16 enabled for mixed precision - using bfSixteen policy")
  284. elif cfg.use_fp16:
  285. mixed_precision_policy = fpSixteen
  286. if rank == 0:
  287. print(f"FP16 enabled")
  288. else:
  289. print(f"bFloat16 support not present. Using FP32, and not mixed precision")
  290. wrapping_policy = get_llama_wrapper()
  291. return mixed_precision_policy, wrapping_policy