FunASR/funasr/train_utils/trainer.py
zhifu gao abb33d6b20
Dev gzf deepspeed (#1844)
* total_time/accum_grad

* fp16

* update with main (#1817)

* add cmakelist

* add paraformer-torch

* add debug for funasr-onnx-offline

* fix redefinition of jieba StdExtension.hpp

* add loading torch models

* update funasr-onnx-offline

* add SwitchArg for wss-server

* add SwitchArg for funasr-onnx-offline

* update cmakelist

* update funasr-onnx-offline-rtf

* add define condition

* add gpu define for offlne-stream

* update com define

* update offline-stream

* update cmakelist

* update func CompileHotwordEmbedding

* add timestamp for paraformer-torch

* add C10_USE_GLOG for paraformer-torch

* update paraformer-torch

* fix func FunASRWfstDecoderInit

* update model.h

* fix func FunASRWfstDecoderInit

* fix tpass_stream

* update paraformer-torch

* add bladedisc for funasr-onnx-offline

* update comdefine

* update funasr-wss-server

* add log for torch

* fix GetValue BLADEDISC

* fix log

* update cmakelist

* update warmup to 10

* update funasrruntime

* add batch_size for wss-server

* add batch for bins

* add batch for offline-stream

* add batch for paraformer

* add batch for offline-stream

* fix func SetBatchSize

* add SetBatchSize for model

* add SetBatchSize for model

* fix func Forward

* fix padding

* update funasrruntime

* add dec reset for batch

* set batch default value

* add argv for CutSplit

* sort frame_queue

* sorted msgs

* fix FunOfflineInfer

* add dynamic batch for fetch

* fix FetchDynamic

* update run_server.sh

* update run_server.sh

* cpp http post server support (#1739)

* add cpp http server

* add some comment

* remove some comments

* del debug infos

* restore run_server.sh

* adapt to new model struct

* 修复了onnxruntime在macos下编译失败的错误 (#1748)

* Add files via upload

增加macos的编译支持

* Add files via upload

增加macos支持

* Add files via upload

target_link_directories(funasr PUBLIC ${ONNXRUNTIME_DIR}/lib)
target_link_directories(funasr PUBLIC ${FFMPEG_DIR}/lib)
添加 if(APPLE) 限制

---------

Co-authored-by: Yabin Li <wucong.lyb@alibaba-inc.com>

* Delete docs/images/wechat.png

* Add files via upload

* fixed the issues about seaco-onnx timestamp

* fix bug (#1764)

当语音识别结果包含 `http` 时,标点符号预测会把它会被当成 url

* fix empty asr result (#1765)

解码结果为空的语音片段,text 用空字符串

* update export

* update export

* docs

* docs

* update export name

* docs

* update

* docs

* docs

* keep empty speech result (#1772)

* docs

* docs

* update wechat QRcode

* Add python funasr api support for websocket srv (#1777)

* add python funasr_api supoort

* change little to README.md

* add core tools stream

* modified a little

* fix bug for timeout

* support for buffer decode

* add ffmpeg decode for buffer

* libtorch demo

* update libtorch infer

* update utils

* update demo

* update demo

* update libtorch inference

* update model class

* update seaco paraformer

* bug fix

* bug fix

* auto frontend

* auto frontend

* auto frontend

* auto frontend

* auto frontend

* auto frontend

* auto frontend

* auto frontend

* Dev gzf exp (#1785)

* resume from step

* batch

* batch

* batch

* batch

* batch

* batch

* batch

* batch

* batch

* batch

* batch

* batch

* batch

* batch

* batch

* train_loss_avg train_acc_avg

* train_loss_avg train_acc_avg

* train_loss_avg train_acc_avg

* log step

* wav is not exist

* wav is not exist

* decoding

* decoding

* decoding

* wechat

* decoding key

* decoding key

* decoding key

* decoding key

* decoding key

* decoding key

* dynamic batch

* start_data_split_i=0

* total_time/accum_grad

* total_time/accum_grad

* total_time/accum_grad

* update avg slice

* update avg slice

* sensevoice sanm

* sensevoice sanm

* sensevoice sanm

---------

Co-authored-by: 北念 <lzr265946@alibaba-inc.com>

* auto frontend

* update paraformer timestamp

* [Optimization] support bladedisc fp16 optimization (#1790)

* add cif_v1 and cif_export

* Update SDK_advanced_guide_offline_zh.md

* add cif_wo_hidden_v1

* [fix] fix empty asr result (#1794)

* english timestamp for valilla paraformer

* wechat

* [fix] better solution for handling empty result (#1796)

* update scripts

* modify the qformer adaptor (#1804)

Co-authored-by: nichongjia-2007 <nichongjia@gmail.com>

* add ctc inference code (#1806)

Co-authored-by: haoneng.lhn <haoneng.lhn@alibaba-inc.com>

* Update auto_model.py

修复空字串进入speaker model时报raw_text变量不存在的bug

* Update auto_model.py

修复识别出空串后spk_model内变量未定义问题

* update model name

* fix paramter 'quantize' unused issue (#1813)

Co-authored-by: ZihanLiao <liaozihan1@xdf.cn>

* wechat

* Update cif_predictor.py (#1811)

* Update cif_predictor.py

* modify cif_v1_export

under extreme cases, max_label_len calculated by batch_len misaligns with token_num

* Update cif_predictor.py

torch.cumsum precision degradation, using float64 instead

* update code

---------

Co-authored-by: 雾聪 <wucong.lyb@alibaba-inc.com>
Co-authored-by: zhaomingwork <61895407+zhaomingwork@users.noreply.github.com>
Co-authored-by: szsteven008 <97944818+szsteven008@users.noreply.github.com>
Co-authored-by: Ephemeroptera <605686962@qq.com>
Co-authored-by: 彭震东 <zhendong.peng@qq.com>
Co-authored-by: Shi Xian <40013335+R1ckShi@users.noreply.github.com>
Co-authored-by: 维石 <shixian.shi@alibaba-inc.com>
Co-authored-by: 北念 <lzr265946@alibaba-inc.com>
Co-authored-by: xiaowan0322 <wanchen.swc@alibaba-inc.com>
Co-authored-by: zhuangzhong <zhuangzhong@corp.netease.com>
Co-authored-by: Xingchen Song(宋星辰) <xingchensong1996@163.com>
Co-authored-by: nichongjia-2007 <nichongjia@gmail.com>
Co-authored-by: haoneng.lhn <haoneng.lhn@alibaba-inc.com>
Co-authored-by: liugz18 <57401541+liugz18@users.noreply.github.com>
Co-authored-by: Marlowe <54339989+ZihanLiao@users.noreply.github.com>
Co-authored-by: ZihanLiao <liaozihan1@xdf.cn>
Co-authored-by: zhong zhuang <zhuangz@lamda.nju.edu.cn>

* sensevoice

* sensevoice

* sensevoice

* sensevoice

* sensevoice

* sensevoice

* sensevoice

* sensevoice

* sensevoice

* sensevoice

* sensevoice

* sensevoice

* sensevoice

* v1.0.28 (#1836)

* sensevoice

* sensevoice

* sensevoice

* sensevoice

* sensevoice

* update (#1841)

* v1.0.28

* version checker

* version checker

* rollback cif_v1 for training bug

* fixbug

* fixbug for cif

* fixbug

---------

Co-authored-by: 维石 <shixian.shi@alibaba-inc.com>

* update (#1842)

* v1.0.28

* version checker

* version checker

* rollback cif_v1 for training bug

* fixbug

* fixbug for cif

* fixbug

---------

Co-authored-by: 维石 <shixian.shi@alibaba-inc.com>

* inference

---------

Co-authored-by: 雾聪 <wucong.lyb@alibaba-inc.com>
Co-authored-by: zhaomingwork <61895407+zhaomingwork@users.noreply.github.com>
Co-authored-by: szsteven008 <97944818+szsteven008@users.noreply.github.com>
Co-authored-by: Ephemeroptera <605686962@qq.com>
Co-authored-by: 彭震东 <zhendong.peng@qq.com>
Co-authored-by: Shi Xian <40013335+R1ckShi@users.noreply.github.com>
Co-authored-by: 维石 <shixian.shi@alibaba-inc.com>
Co-authored-by: 北念 <lzr265946@alibaba-inc.com>
Co-authored-by: xiaowan0322 <wanchen.swc@alibaba-inc.com>
Co-authored-by: zhuangzhong <zhuangzhong@corp.netease.com>
Co-authored-by: Xingchen Song(宋星辰) <xingchensong1996@163.com>
Co-authored-by: nichongjia-2007 <nichongjia@gmail.com>
Co-authored-by: haoneng.lhn <haoneng.lhn@alibaba-inc.com>
Co-authored-by: liugz18 <57401541+liugz18@users.noreply.github.com>
Co-authored-by: Marlowe <54339989+ZihanLiao@users.noreply.github.com>
Co-authored-by: ZihanLiao <liaozihan1@xdf.cn>
Co-authored-by: zhong zhuang <zhuangz@lamda.nju.edu.cn>
2024-06-24 17:06:21 +08:00

720 lines
30 KiB
Python

import math
import os
import time
import torch
import logging
from tqdm import tqdm
from datetime import datetime
import torch.distributed as dist
from torch.cuda.amp import autocast, GradScaler
from contextlib import nullcontext, contextmanager
from pathlib import Path
from funasr.train_utils.device_funcs import to_device
from funasr.train_utils.recursive_op import recursive_average
from funasr.train_utils.average_nbest_models import average_checkpoints
from torch.distributed.fsdp.sharded_grad_scaler import ShardedGradScaler
try:
import wandb
except:
wandb = None
@contextmanager
def maybe_autocast(enabled):
if enabled:
with autocast():
yield
else:
yield
class Trainer:
"""
A simple trainer class for training a PyTorch model, saving checkpoints at the end of each epoch,
and optionally resuming from a saved checkpoint.
Attributes:
max_epoch (int): Maximum number of epochs for training.
model (torch.nn.Module): The model to be trained.
optim (torch.optim.Optimizer): The optimizer to use for training.
scheduler (torch.optim.lr_scheduler._LRScheduler): The learning rate scheduler.
dataloader_train (torch.utils.data.DataLoader): DataLoader for the training dataset.
dataloader_val (torch.utils.data.DataLoader): DataLoader for the validation dataset.
output_dir (str): Directory where model checkpoints will be saved.
resume (str, optional): Path to a checkpoint to resume training from.
"""
def __init__(
self,
local_rank,
use_ddp: bool = False,
use_fsdp: bool = False,
use_fp16: bool = False,
output_dir: str = "./",
**kwargs,
):
"""
Initializes the Trainer class with the model, optimizer, scheduler, dataloaders, and other settings.
Args:
model (torch.nn.Module): The model to be trained.
optim (torch.optim.Optimizer): The optimizer to use for training.
scheduler (torch.optim.lr_scheduler._LRScheduler): The learning rate scheduler.
dataloader_train (torch.utils.data.DataLoader): The DataLoader for the training dataset.
dataloader_val (torch.utils.data.DataLoader): The DataLoader for the validation dataset.
**kwargs: Additional keyword arguments:
max_epoch (int): The maximum number of epochs for training.
output_dir (str): The directory where model checkpoints will be saved. Default is './'.
resume (str, optional): The file path to a checkpoint to resume training from.
"""
self.output_dir = output_dir
if not os.path.exists(self.output_dir):
os.makedirs(self.output_dir, exist_ok=True)
self.resume = kwargs.get("resume", True)
self.start_epoch = 0
self.max_epoch = kwargs.get("max_epoch", 100)
self.local_rank = local_rank
self.use_ddp = use_ddp
self.use_fsdp = use_fsdp
self.device = kwargs.get("device", "cuda")
# self.kwargs = kwargs
self.log_interval = kwargs.get("log_interval", 50)
self.batch_total = 0
self.use_fp16 = use_fp16
self.save_checkpoint_interval = kwargs.get("save_checkpoint_interval", 5000)
self.validate_interval = kwargs.get("validate_interval", -1)
if self.validate_interval < 0:
self.validate_interval = self.save_checkpoint_interval
assert (
self.save_checkpoint_interval == self.validate_interval
), f"save_checkpoint_interval must equal to validate_interval"
self.keep_nbest_models = kwargs.get("keep_nbest_models", 500)
self.avg_keep_nbest_models_type = kwargs.get("avg_keep_nbest_models_type", "acc")
self.avg_nbest_model = kwargs.get("avg_nbest_model", 10)
self.accum_grad = kwargs.get("accum_grad", 1)
self.grad_clip = kwargs.get("grad_clip", 10.0)
self.grad_clip_type = kwargs.get("grad_clip_type", 2.0)
try:
rank = dist.get_rank()
world_size = dist.get_world_size()
except:
rank = 0
world_size = 1
logging.warning("distributed is not initialized, only single shard")
self.rank = rank
self.world_size = world_size
self.train_acc_avg = 0.0
self.train_loss_avg = 0.0
self.val_acc_avg = 0.0
self.val_loss_avg = 0.0
self.best_acc_idx = 0
self.saved_ckpts = {}
self.step_or_epoch = -1
self.best_step_or_epoch = ""
self.val_acc_step_or_eoch = {}
self.val_loss_step_or_eoch = {}
self.reset_gpu_cache = kwargs.get("reset_gpu_cache", False)
self.start_data_split_i = 0
self.start_step = 0
self.step_in_epoch = 0
self.use_wandb = kwargs.get("use_wandb", False)
if self.use_wandb:
wandb.login(key=kwargs.get("wandb_token"))
wandb.init(
config=kwargs,
project=kwargs.get("wandb_project", "my_project"),
entity=kwargs.get("wandb_team", "my_team"),
name=kwargs.get("wandb_exp_name", "my_exp"),
dir=output_dir,
job_type="training",
reinit=True,
)
def save_checkpoint(
self,
epoch,
step=None,
model=None,
optim=None,
scheduler=None,
scaler=None,
step_in_epoch=None,
**kwargs,
):
"""
Saves a checkpoint containing the model's state, the optimizer's state,
and the scheduler's state at the end of the given epoch. This method is
intended to be called at the end of each epoch to save the training progress.
Args:
epoch (int): The epoch number at which the checkpoint is being saved.
"""
step_in_epoch = None if step is None else step_in_epoch
if self.rank == 0:
logging.info(f"Save checkpoint: {epoch}, rank: {self.local_rank}\n")
# self.step_or_epoch += 1
state = {
"epoch": epoch,
"state_dict": model.state_dict(),
"optimizer": optim.state_dict(),
"scheduler": scheduler.state_dict(),
"saved_ckpts": self.saved_ckpts,
"val_acc_step_or_eoch": self.val_acc_step_or_eoch,
"val_loss_step_or_eoch": self.val_loss_step_or_eoch,
"best_step_or_epoch": self.best_step_or_epoch,
"avg_keep_nbest_models_type": self.avg_keep_nbest_models_type,
"step": step,
"step_in_epoch": step_in_epoch,
"data_split_i": kwargs.get("data_split_i", 0),
"data_split_num": kwargs.get("data_split_num", 1),
"batch_total": self.batch_total,
"train_loss_avg": kwargs.get("train_loss_avg", 0),
"train_acc_avg": kwargs.get("train_acc_avg", 0),
}
step = step_in_epoch
if hasattr(model, "module"):
state["state_dict"] = model.module.state_dict()
if scaler:
state["scaler_state"] = scaler.state_dict()
# Create output directory if it does not exist
os.makedirs(self.output_dir, exist_ok=True)
if step is None:
ckpt_name = f"model.pt.ep{epoch}"
else:
ckpt_name = f"model.pt.ep{epoch}.{step}"
filename = os.path.join(self.output_dir, ckpt_name)
torch.save(state, filename)
logging.info(f"\nCheckpoint saved to {filename}\n")
latest = Path(os.path.join(self.output_dir, f"model.pt"))
torch.save(state, latest)
if self.best_step_or_epoch == "":
self.best_step_or_epoch = ckpt_name
if self.avg_keep_nbest_models_type == "acc":
if (
self.val_acc_step_or_eoch[ckpt_name]
>= self.val_acc_step_or_eoch[self.best_step_or_epoch]
):
self.best_step_or_epoch = ckpt_name
best_ckpt = Path(os.path.join(self.output_dir, f"model.pt.best"))
torch.save(state, best_ckpt)
logging.info(
f"Update best acc: {self.val_acc_step_or_eoch[self.best_step_or_epoch]:.4f}, {best_ckpt}"
)
else:
logging.info(
f"No improvement in acc: {self.val_acc_step_or_eoch[ckpt_name]:.4f} < {self.val_acc_step_or_eoch[self.best_step_or_epoch]:.4f}, {os.path.join(self.output_dir, self.best_step_or_epoch)}"
)
elif self.avg_keep_nbest_models_type == "loss":
if (
self.val_loss_step_or_eoch[ckpt_name]
<= self.val_loss_step_or_eoch[self.best_step_or_epoch]
):
self.best_step_or_epoch = ckpt_name
best_ckpt = Path(os.path.join(self.output_dir, f"model.pt.best"))
torch.save(state, best_ckpt)
logging.info(
f"Update best loss: {self.val_loss_step_or_eoch[self.best_step_or_epoch]:.4f}, {best_ckpt}"
)
else:
logging.info(
f"No improvement in loss: {self.val_loss_step_or_eoch[ckpt_name]:.4f} > {self.val_loss_step_or_eoch[self.best_step_or_epoch]:.4f}, {os.path.join(self.output_dir, self.best_step_or_epoch)}"
)
else:
print("Undo")
self.saved_ckpts[ckpt_name] = getattr(
self, f"val_{self.avg_keep_nbest_models_type}_step_or_eoch"
)[ckpt_name]
if self.keep_nbest_models > 0:
if len(self.saved_ckpts) > self.keep_nbest_models:
if self.avg_keep_nbest_models_type == "acc":
key = min(self.saved_ckpts, key=self.saved_ckpts.get)
else:
key = max(self.saved_ckpts, key=self.saved_ckpts.get)
if key in self.saved_ckpts:
del self.saved_ckpts[key]
filename = os.path.join(self.output_dir, key)
logging.info(f"Delete: {filename}")
if os.path.exists(filename):
os.remove(filename)
if self.use_ddp or self.use_fsdp:
dist.barrier()
def resume_checkpoint(
self,
model=None,
optim=None,
scheduler=None,
scaler=None,
):
"""
Resumes training from a checkpoint at the given file path.
Loads the model's state, the optimizer's state, and the scheduler's state.
Args:
resume_path (str): The file path to the checkpoint to resume from.
"""
if self.resume:
ckpt = os.path.join(self.output_dir, "model.pt")
if os.path.isfile(ckpt):
checkpoint = torch.load(ckpt, map_location="cpu")
self.start_epoch = checkpoint["epoch"]
# self.model.load_state_dict(checkpoint['state_dict'])
src_state = checkpoint["state_dict"]
dst_state = model.state_dict()
for k in dst_state.keys():
if not k.startswith("module.") and "module." + k in src_state.keys():
k_ddp = "module." + k
elif k.startswith("module.") and "module." + k not in src_state.keys():
k_ddp = k.replace("module.", "", 1)
else:
k_ddp = k
if k_ddp in src_state.keys():
dst_state[k] = src_state[k_ddp]
else:
print(f"Miss key in ckpt: model: {k}, ckpt: {k_ddp}")
model.load_state_dict(dst_state)
optim.load_state_dict(checkpoint["optimizer"])
scheduler.load_state_dict(checkpoint["scheduler"])
if scaler is not None and "scaler_state" in checkpoint:
scaler.load_state_dict(checkpoint["scaler_state"])
self.saved_ckpts = checkpoint["saved_ckpts"]
self.val_acc_step_or_eoch = (
checkpoint["val_acc_step_or_eoch"]
if "val_acc_step_or_eoch" in checkpoint
else {}
)
self.val_loss_step_or_eoch = (
checkpoint["val_loss_step_or_eoch"]
if "val_loss_step_or_eoch" in checkpoint
else {}
)
self.best_step_or_epoch = (
checkpoint["best_step_or_epoch"] if "best_step_or_epoch" in checkpoint else ""
)
self.start_data_split_i = (
checkpoint["data_split_i"] if "data_split_i" in checkpoint else 0
)
self.batch_total = checkpoint["batch_total"] if "batch_total" in checkpoint else 0
self.start_step = checkpoint["step"] if "step" in checkpoint else 0
self.start_step = 0 if self.start_step is None else self.start_step
self.step_in_epoch = (
checkpoint["step_in_epoch"] if "step_in_epoch" in checkpoint else 0
)
self.step_in_epoch = 0 if self.step_in_epoch is None else self.step_in_epoch
print(checkpoint["train_acc_avg"])
self.train_acc_avg = (
checkpoint["train_acc_avg"] if "train_acc_avg" in checkpoint else 0
)
self.train_loss_avg = (
checkpoint["train_loss_avg"] if "train_loss_avg" in checkpoint else 0
)
model.to(self.device)
print(f"Checkpoint loaded successfully from '{ckpt}'")
else:
print(f"No checkpoint found at '{ckpt}', does not resume status!")
if self.use_ddp or self.use_fsdp:
dist.barrier()
def train_epoch(
self,
model=None,
optim=None,
scheduler=None,
scaler=None,
dataloader_train=None,
dataloader_val=None,
epoch=None,
writer=None,
**kwargs,
):
"""
Defines the training process for a single epoch with gradient accumulation.
Args:
epoch (int): The current epoch number.
"""
if self.use_ddp or self.use_fsdp:
dist.barrier()
logging.info(f"Train epoch: {epoch}, rank: {self.rank}\n")
model.train()
# Set the number of steps for gradient accumulation
accum_grad = self.accum_grad
# Initialize the gradient accumulation
optim.zero_grad()
speed_stats = {}
iterator_stop = torch.tensor(0).to(self.device)
dataloader_train.batch_sampler.set_epoch(epoch)
time_beg = time.perf_counter()
time5 = time_beg
for batch_idx, batch in enumerate(dataloader_train):
# if self.use_ddp or self.use_fsdp:
# dist.all_reduce(iterator_stop, dist.ReduceOp.SUM)
# if iterator_stop > 0:
# break
self.batch_total += 1
self.step_in_epoch += 1
time1 = time.perf_counter()
speed_stats["data_load"] = f"{time1-time_beg:0.3f}"
batch = to_device(batch, self.device)
my_context = nullcontext
if self.use_ddp or self.use_fsdp:
my_context = model.no_sync if batch_idx % accum_grad != 0 else my_context
with my_context():
time2 = time.perf_counter()
with maybe_autocast(self.use_fp16):
retval = model(**batch)
# if (
# self.reset_gpu_cache
# and (torch.cuda.max_memory_reserved() / 1024 / 1024 / 1024) > 70
# ):
# torch.cuda.empty_cache()
loss, stats, weight = retval
stats = {k: v for k, v in stats.items() if v is not None}
if self.use_ddp or self.use_fsdp:
# Apply weighted averaging for loss and stats
loss = (loss * weight.type(loss.dtype)).sum()
# if distributed, this method can also apply all_reduce()
# stats, weight = recursive_average(stats, weight, distributed=True)
if self.use_ddp or self.use_fsdp:
dist.all_reduce(weight, op=dist.ReduceOp.SUM)
# Now weight is summation over all workers
loss /= weight.sum() # shape:[1] -> shape:[]
# Multiply world_size because DistributedDataParallel
# automatically normalizes the gradient by world_size.
loss *= self.world_size
# loss *= self.world_size
# Scale the loss since we're not updating for every mini-batch
loss = loss / accum_grad
time3 = time.perf_counter()
speed_stats["forward_time"] = f"{time3 - time2:0.3f}"
if self.use_fp16:
scaler.scale(loss).backward()
else:
loss.backward()
time4 = time.perf_counter()
speed_stats["backward_and_AllReaduce_time"] = f"{time4 - time3:0.3f}"
self.train_loss_avg = (
self.train_loss_avg * (batch_idx + kwargs.get("start_step", 0))
+ loss.detach().cpu().item()
) / (batch_idx + kwargs.get("start_step", 0) + 1)
if "acc" in stats:
self.train_acc_avg = (
self.train_acc_avg * (batch_idx + kwargs.get("start_step", 0))
+ stats["acc"].detach().cpu().item()
) / (batch_idx + kwargs.get("start_step", 0) + 1)
# Perform an optimizer step only after accumulating enough gradients
if (batch_idx + 1) % accum_grad == 0:
# Perform gradient clipping if it is set
if self.grad_clip > 0:
grad_norm = torch.nn.utils.clip_grad_norm_(
model.parameters(),
max_norm=self.grad_clip,
norm_type=self.grad_clip_type,
)
if not torch.isfinite(grad_norm):
logging.warning(
f"The grad norm is {grad_norm}. Skipping updating the model."
)
optim.zero_grad() # Reset gradients
continue
# Execute an optimization step (update model parameters)
if self.use_ddp or self.use_fsdp:
dist.barrier()
if self.use_fp16:
scaler.step(optim)
scaler.update()
else:
optim.step()
scheduler.step()
# Clear gradients for the next accumulation stage
optim.zero_grad(set_to_none=True)
if self.use_ddp or self.use_fsdp:
train_loss_avg = torch.tensor(self.train_loss_avg, dtype=torch.float32).to(
self.device
)
train_acc_avg = torch.tensor(self.train_acc_avg, dtype=torch.float32).to(
self.device
)
dist.all_reduce(train_loss_avg, op=dist.ReduceOp.SUM)
dist.all_reduce(train_acc_avg, op=dist.ReduceOp.SUM)
self.train_loss_avg = train_loss_avg.detach().cpu().item() / self.world_size
self.train_acc_avg = train_acc_avg.detach().cpu().item() / self.world_size
total_time = f"{(time.perf_counter() - time5)/accum_grad:0.3f}"
time5 = time.perf_counter()
speed_stats["optim_time"] = f"{time5 - time4:0.3f}"
speed_stats["total_time"] = total_time
lr = scheduler.get_last_lr()[0]
batch_num_epoch = 1
if hasattr(dataloader_train, "__len__"):
batch_num_epoch = len(dataloader_train)
self.log(
epoch,
batch_idx,
log_step=batch_idx + kwargs.get("start_step", 0),
step_in_epoch=self.step_in_epoch,
batch_num_epoch=batch_num_epoch,
lr=lr,
loss=accum_grad * loss.detach().cpu().item(),
speed_stats=speed_stats,
stats=stats,
writer=writer,
tag="train",
data_split_i=kwargs.get("data_split_i", 0),
data_split_num=kwargs.get("data_split_num", 1),
)
if self.step_in_epoch % self.validate_interval == 0:
self.validate_epoch(
model=model,
dataloader_val=dataloader_val,
epoch=epoch,
writer=writer,
step=batch_idx + 1,
step_in_epoch=self.step_in_epoch,
)
if self.step_in_epoch % self.save_checkpoint_interval == 0:
self.save_checkpoint(
epoch,
model=model,
optim=optim,
scheduler=scheduler,
scaler=scaler,
step=batch_idx + 1,
step_in_epoch=self.step_in_epoch,
data_split_i=kwargs.get("data_split_i", 0),
data_split_num=kwargs.get("data_split_num", 1),
train_loss_avg=self.train_loss_avg,
train_acc_avg=self.train_acc_avg,
)
time_beg = time.perf_counter()
# else:
# if self.use_ddp or self.use_fsdp:
# iterator_stop.fill_(1)
# dist.all_reduce(iterator_stop, dist.ReduceOp.SUM)
if self.use_ddp or self.use_fsdp:
dist.barrier()
# iterator_stop = torch.tensor(0).to(self.device)
def validate_epoch(
self,
model=None,
dataloader_val=None,
epoch=None,
writer=None,
**kwargs,
):
"""
Defines the validation process for a single epoch.
Should be implemented with the actual model validation steps.
Args:
epoch (int): The current epoch number.
"""
if self.use_ddp or self.use_fsdp:
dist.barrier()
logging.info(f"Validate epoch: {epoch}, rank: {self.rank}\n")
model.eval()
with torch.no_grad():
speed_stats = {}
time5 = time.perf_counter()
iterator_stop = torch.tensor(0).to(self.device)
dataloader_val.batch_sampler.set_epoch(epoch)
for batch_idx, batch in enumerate(dataloader_val):
if self.use_ddp or self.use_fsdp:
dist.all_reduce(iterator_stop, dist.ReduceOp.SUM)
if iterator_stop > 0:
break
time1 = time.perf_counter()
speed_stats["data_load"] = f"{time1 - time5:0.3f}"
batch = to_device(batch, self.device)
time2 = time.perf_counter()
retval = model(**batch)
time3 = time.perf_counter()
speed_stats["forward_time"] = f"{time3 - time2:0.3f}"
loss, stats, weight = retval
stats = {k: v for k, v in stats.items() if v is not None}
if self.use_ddp or self.use_fsdp:
# Apply weighted averaging for loss and stats
loss = (loss * weight.type(loss.dtype)).sum()
# if distributed, this method can also apply all_reduce()
# stats, weight = recursive_average(stats, weight, distributed=True)
if self.use_ddp or self.use_fsdp:
dist.all_reduce(weight, op=dist.ReduceOp.SUM)
# Now weight is summation over all workers
loss /= weight.sum() # shape:[1] -> shape:[]
# Multiply world_size because DistributedDataParallel
# automatically normalizes the gradient by world_size.
loss *= self.world_size
# Scale the loss since we're not updating for every mini-batch
loss = loss
time4 = time.perf_counter()
self.val_loss_avg = (self.val_loss_avg * batch_idx + loss.detach().cpu().item()) / (
batch_idx + 1
)
if "acc" in stats:
self.val_acc_avg = (
self.val_acc_avg * batch_idx + stats["acc"].detach().cpu().item()
) / (batch_idx + 1)
if self.use_ddp or self.use_fsdp:
val_loss_avg = torch.tensor(self.val_loss_avg, dtype=torch.float32).to(
self.device
)
val_acc_avg = torch.tensor(self.val_acc_avg, dtype=torch.float32).to(
self.device
)
dist.all_reduce(val_loss_avg, op=dist.ReduceOp.SUM)
dist.all_reduce(val_acc_avg, op=dist.ReduceOp.SUM)
self.val_loss_avg = val_loss_avg.detach().cpu().item() / self.world_size
self.val_acc_avg = val_acc_avg.detach().cpu().item() / self.world_size
time5 = time.perf_counter()
batch_num_epoch = 1
if hasattr(dataloader_val, "__len__"):
batch_num_epoch = len(dataloader_val)
self.log(
epoch,
batch_idx,
batch_num_epoch=batch_num_epoch,
lr=0.0,
loss=loss.detach().cpu().item(),
speed_stats=speed_stats,
stats=stats,
writer=writer,
tag="val",
)
else:
if self.use_ddp or self.use_fsdp:
iterator_stop.fill_(1)
dist.all_reduce(iterator_stop, dist.ReduceOp.SUM)
if kwargs.get("step_in_epoch", None) is None:
ckpt_name = f"model.pt.ep{epoch}"
else:
ckpt_name = f'model.pt.ep{epoch}.{kwargs.get("step_in_epoch")}'
self.val_acc_step_or_eoch[ckpt_name] = self.val_acc_avg
self.val_loss_step_or_eoch[ckpt_name] = self.val_loss_avg
model.train()
if self.use_ddp or self.use_fsdp:
dist.barrier()
iterator_stop = torch.tensor(0).to(self.device)
def log(
self,
epoch=0,
batch_idx=0,
step_in_epoch=0,
batch_num_epoch=-1,
lr=0.0,
loss=0.0,
speed_stats=None,
stats=None,
writer=None,
tag="train",
data_split_i=0,
data_split_num=1,
log_step=None,
**kwargs,
):
if (batch_idx + 1) % self.log_interval == 0:
batch_idx = log_step if log_step is not None else batch_idx
gpu_info = (
"GPU, memory: usage: {:.3f} GB, "
"peak: {:.3f} GB, "
"cache: {:.3f} GB, "
"cache_peak: {:.3f} GB".format(
torch.cuda.memory_allocated() / 1024 / 1024 / 1024,
torch.cuda.max_memory_allocated() / 1024 / 1024 / 1024,
torch.cuda.memory_reserved() / 1024 / 1024 / 1024,
torch.cuda.max_memory_reserved() / 1024 / 1024 / 1024,
)
)
loss_avg_epoch = getattr(self, f"{tag}_loss_avg")
acc_avg_epoch = getattr(self, f"{tag}_acc_avg")
description = (
f"{tag}, "
f"rank: {self.rank}, "
f"epoch: {epoch}/{self.max_epoch}, "
f"data_slice: {data_split_i}/{data_split_num}, "
f"step_in_slice: {batch_idx + 1}/{batch_num_epoch}, step_in_epoch: {step_in_epoch}, total step: {self.batch_total}, "
f"(loss_avg_rank: {loss:.3f}), "
f"(loss_avg_slice: {loss_avg_epoch:.3f}), "
f"(ppl_avg_slice: {math.exp(loss_avg_epoch):.3e}), "
f"(acc_avg_slice: {acc_avg_epoch:.3f}), "
f"(lr: {lr:.3e}), "
f"{[(k, round(v.detach().cpu().item(), 3)) for k, v in stats.items()]}, "
f"{speed_stats}, "
f"{gpu_info}"
)
logging.info(description)
description_dict = {
f"rank{self.rank}_loss/{tag}": loss,
f"rank{self.rank}_lr/{tag}": lr,
}
if writer is not None:
writer.add_scalar(f"rank{self.rank}_loss/{tag}", loss, self.batch_total)
writer.add_scalar(f"rank{self.rank}_lr/{tag}", lr, self.batch_total)
for key, var in stats.items():
writer.add_scalar(
f"stats_rank{self.rank}_{key}/{tag}", var.item(), self.batch_total
)
description_dict[f"stats_rank{self.rank}_{key}/{tag}"] = var.item()
for key, var in speed_stats.items():
writer.add_scalar(
f"stats_rank{self.rank}_{key}/{tag}", eval(var), self.batch_total
)
description_dict[f"stats_rank{self.rank}_{key}/{tag}"] = eval(var)
if self.use_wandb and wandb is not None:
wandb.log(
description_dict,
setp=self.batch_total,
)
def close(self, writer=None):
if self.use_ddp or self.use_fsdp:
dist.barrier()
if writer is not None:
writer.close()
if self.use_ddp or self.use_fsdp:
torch.distributed.destroy_process_group()