From 9be30f99dd09cfe0de929266ec43c1b95abb6d96 Mon Sep 17 00:00:00 2001
From: 游雁 <zhifu.gzf@alibaba-inc.com>
Date: 星期五, 10 五月 2024 10:16:28 +0800
Subject: [PATCH] update avg slice
---
funasr/train_utils/trainer.py | 55 +++++++++++++++++++++++++++----------------------------
funasr/bin/train.py | 2 ++
2 files changed, 29 insertions(+), 28 deletions(-)
diff --git a/funasr/bin/train.py b/funasr/bin/train.py
index 643df71..c3556d1 100644
--- a/funasr/bin/train.py
+++ b/funasr/bin/train.py
@@ -241,6 +241,8 @@
f"estimated to finish {trainer.max_epoch} "
f"epoch: {(trainer.max_epoch - epoch) * time_escaped:.3f} hours\n"
)
+ trainer.train_acc_avg = 0.0
+ trainer.train_loss_avg = 0.0
if trainer.rank == 0:
average_checkpoints(trainer.output_dir, trainer.avg_nbest_model)
diff --git a/funasr/train_utils/trainer.py b/funasr/train_utils/trainer.py
index 28fbb29..33dd351 100644
--- a/funasr/train_utils/trainer.py
+++ b/funasr/train_utils/trainer.py
@@ -384,19 +384,19 @@
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
+ 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
@@ -417,6 +417,17 @@
self.train_acc_avg * (self.step_in_epoch - 1)
+ stats["acc"].detach().cpu().item()
) / self.step_in_epoch
+ 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
# Perform an optimizer step only after accumulating enough gradients
if (batch_idx + 1) % accum_grad == 0:
@@ -447,18 +458,6 @@
optim.zero_grad(set_to_none=True)
total_time = f"{(time.perf_counter() - time5)/accum_grad:0.3f}"
time5 = time.perf_counter()
-
- 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
speed_stats["optim_time"] = f"{time5 - time4:0.3f}"
@@ -666,9 +665,9 @@
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_epoch: {loss_avg_epoch:.3f}), "
- f"(ppl_avg_epoch: {math.exp(loss_avg_epoch):.3e}), "
- f"(acc_avg_epoch: {acc_avg_epoch:.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}, "
--
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