未验证 提交 45b8b569 编写于 作者: G gaotingquan

fix: fix bug about calc loss in dist

上级 255d7c3e
...@@ -66,66 +66,70 @@ def classification_eval(engine, epoch_id=0): ...@@ -66,66 +66,70 @@ def classification_eval(engine, epoch_id=0):
}, },
level=amp_level): level=amp_level):
out = engine.model(batch[0]) out = engine.model(batch[0])
# calc loss
if engine.eval_loss_func is not None:
loss_dict = engine.eval_loss_func(out, batch[1])
for key in loss_dict:
if key not in output_info:
output_info[key] = AverageMeter(key, '7.5f')
output_info[key].update(loss_dict[key].numpy()[0],
batch_size)
else: else:
out = engine.model(batch[0]) out = engine.model(batch[0])
# calc loss
if engine.eval_loss_func is not None:
loss_dict = engine.eval_loss_func(out, batch[1])
for key in loss_dict:
if key not in output_info:
output_info[key] = AverageMeter(key, '7.5f')
output_info[key].update(loss_dict[key].numpy()[0],
batch_size)
# just for DistributedBatchSampler issue: repeat sampling # just for DistributedBatchSampler issue: repeat sampling
current_samples = batch_size * paddle.distributed.get_world_size() current_samples = batch_size * paddle.distributed.get_world_size()
accum_samples += current_samples accum_samples += current_samples
# calc metric # gather Tensor when distributed
if engine.eval_metric_func is not None: if paddle.distributed.get_world_size() > 1:
if paddle.distributed.get_world_size() > 1: label_list = []
label_list = [] paddle.distributed.all_gather(label_list, batch[1])
paddle.distributed.all_gather(label_list, batch[1]) labels = paddle.concat(label_list, 0)
labels = paddle.concat(label_list, 0)
if isinstance(out, dict):
if isinstance(out, dict): if "Student" in out:
if "Student" in out: out = out["Student"]
out = out["Student"] if isinstance(out, dict):
elif "logits" in out:
out = out["logits"] out = out["logits"]
else: elif "logits" in out:
msg = "Error: Wrong key in out!" out = out["logits"]
raise Exception(msg)
if isinstance(out, list):
pred = []
for x in out:
pred_list = []
paddle.distributed.all_gather(pred_list, x)
pred_x = paddle.concat(pred_list, 0)
pred.append(pred_x)
else: else:
msg = "Error: Wrong key in out!"
raise Exception(msg)
if isinstance(out, list):
preds = []
for x in out:
pred_list = [] pred_list = []
paddle.distributed.all_gather(pred_list, out) paddle.distributed.all_gather(pred_list, x)
pred = paddle.concat(pred_list, 0) pred_x = paddle.concat(pred_list, 0)
preds.append(pred_x)
else:
pred_list = []
paddle.distributed.all_gather(pred_list, out)
preds = paddle.concat(pred_list, 0)
if accum_samples > total_samples and not engine.use_dali: if accum_samples > total_samples and not engine.use_dali:
pred = pred[:total_samples + current_samples - preds = preds[:total_samples + current_samples - accum_samples]
labels = labels[:total_samples + current_samples -
accum_samples] accum_samples]
labels = labels[:total_samples + current_samples - current_samples = total_samples + current_samples - accum_samples
accum_samples] else:
current_samples = total_samples + current_samples - accum_samples labels = batch[1]
metric_dict = engine.eval_metric_func(pred, labels) preds = out
# calc loss
if engine.eval_loss_func is not None:
if engine.amp and engine.config["AMP"].get("use_fp16_test", False):
amp_level = engine.config['AMP'].get("level", "O1").upper()
with paddle.amp.auto_cast(
custom_black_list={
"flatten_contiguous_range", "greater_than"
},
level=amp_level):
loss_dict = engine.eval_loss_func(preds, labels)
else: else:
metric_dict = engine.eval_metric_func(out, batch[1]) loss_dict = engine.eval_loss_func(preds, labels)
for key in loss_dict:
if key not in output_info:
output_info[key] = AverageMeter(key, '7.5f')
output_info[key].update(loss_dict[key].numpy()[0], batch_size)
# calc metric
if engine.eval_metric_func is not None:
metric_dict = engine.eval_metric_func(preds, labels)
for key in metric_dict: for key in metric_dict:
if metric_key is None: if metric_key is None:
metric_key = key metric_key = key
......
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