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社区首页 >问答首页 >RuntimeError:索引put要求源和目标dtype匹配,目标为浮动,源为双。火把-预测

RuntimeError:索引put要求源和目标dtype匹配,目标为浮动,源为双。火把-预测
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Stack Overflow用户
提问于 2022-08-23 05:13:27
回答 1查看 515关注 0票数 1
  • PyTorch-Forecasting版本: 0.10.2
  • PyTorch

System: windows

预期行为

无差错

实际行为

错误是

c:\Users\josepeeterson.er\Miniconda3\envs\pytorch\lib\site-packages\pytorch_forecasting\models\deepar_init_.py:292,in

DeepAR.decode..decode_one(idx,lagged_targets,hidden_state) 286 def decode_one( 287 idx,288 lagged_targets,289 hidden_state,290 ):291 x= input_vector[:,idx] -> 292 x:,0,target_pos =延迟目标-1293表示滞后,lag_positions中的lagged_target_positions.items():294如果idx >滞后:

RuntimeError:索引put要求源和目标dtype匹配,目标为浮动,源为双。

如何将它们设置为相同的数据类型?这里的索引是什么?这是在内部发生的。我无法控制这件事。我不使用任何GPU。

带有输入数据的.csv文件的链接是https://github.com/JosePeeterson/Demand_forecasting,每4小时从负的二进制分布(9,0.5)中采样数据。中间的时间都是零。我只想看看DeepAR是否能学到这种模式。

再现问题的代码

代码语言:javascript
复制
from pytorch_forecasting.data.examples import generate_ar_data
import matplotlib.pyplot as plt
import pandas as pd
from pytorch_forecasting.data import TimeSeriesDataSet
from pytorch_forecasting.data import NaNLabelEncoder
from pytorch_lightning.callbacks import EarlyStopping, LearningRateMonitor
import pytorch_lightning as pl
from pytorch_forecasting import NegativeBinomialDistributionLoss, DeepAR
import torch
from pytorch_forecasting.data.encoders import TorchNormalizer

data = [pd.read_csv('1_f_nbinom_train.csv')]

data["date"] = pd.Timestamp("2021-08-24") + pd.to_timedelta(data.time_idx, "H")
data['_hour_of_day'] = str(data["date"].dt.hour)
data['_day_of_week'] = str(data["date"].dt.dayofweek)
data['_day_of_month'] = str(data["date"].dt.day)
data['_day_of_year'] = str(data["date"].dt.dayofyear)
data['_week_of_year'] = str(data["date"].dt.weekofyear)
data['_month_of_year'] = str(data["date"].dt.month)
data['_year'] = str(data["date"].dt.year)

max_encoder_length = 60
max_prediction_length = 20
training_cutoff = data["time_idx"].max() - max_prediction_length

training = TimeSeriesDataSet(
    data.iloc[0:-620],
    time_idx="time_idx",
    target="value",
    categorical_encoders={"series": NaNLabelEncoder(add_nan=True).fit(data.series), "_hour_of_day": NaNLabelEncoder(add_nan=True).fit(data._hour_of_day), \
       "_day_of_week": NaNLabelEncoder(add_nan=True).fit(data._day_of_week), "_day_of_month" : NaNLabelEncoder(add_nan=True).fit(data._day_of_month), "_day_of_year" : NaNLabelEncoder(add_nan=True).fit(data._day_of_year), \
        "_week_of_year": NaNLabelEncoder(add_nan=True).fit(data._week_of_year), "_year": NaNLabelEncoder(add_nan=True).fit(data._year)},
    group_ids=["series"],
    min_encoder_length=max_encoder_length,
    max_encoder_length=max_encoder_length,
    min_prediction_length=max_prediction_length,
    max_prediction_length=max_prediction_length,
    time_varying_unknown_reals=["value"],
    time_varying_known_categoricals=["_hour_of_day","_day_of_week","_day_of_month","_day_of_year","_week_of_year","_year" ],
    time_varying_known_reals=["time_idx"],
    add_relative_time_idx=False,
    randomize_length=None,
    scalers=[],
    target_normalizer=TorchNormalizer(method="identity",center=False,transformation=None )

)

validation = TimeSeriesDataSet.from_dataset(
    training,
    data.iloc[-620:-420],
    # predict=True,
    stop_randomization=True,
)       


batch_size = 64
train_dataloader = training.to_dataloader(train=True, batch_size=batch_size, num_workers=8)
val_dataloader = validation.to_dataloader(train=False, batch_size=batch_size, num_workers=8)


# save datasets
training.save("training.pkl")
validation.save("validation.pkl")


early_stop_callback = EarlyStopping(monitor="val_loss", min_delta=1e-4, patience=5, verbose=False, mode="min")
lr_logger = LearningRateMonitor()


trainer = pl.Trainer(
    max_epochs=10,
    gpus=0,
    gradient_clip_val=0.1,
    limit_train_batches=30,
    limit_val_batches=3,
    # fast_dev_run=True,
    # logger=logger,
    # profiler=True,
    callbacks=[lr_logger, early_stop_callback],
)


deepar = DeepAR.from_dataset(
    training,
    learning_rate=0.1,
    hidden_size=32,
    dropout=0.1,
    loss=NegativeBinomialDistributionLoss(),
    log_interval=10,
    log_val_interval=3,
    # reduce_on_plateau_patience=3,
)
print(f"Number of parameters in network: {deepar.size()/1e3:.1f}k")



torch.set_num_threads(10)
trainer.fit(
    deepar,
    train_dataloaders=train_dataloader,
    val_dataloaders=val_dataloader,
)
EN

回答 1

Stack Overflow用户

发布于 2022-11-04 21:41:37

在创建EncoderNormalizer时,尝试对target_normalizer参数使用target_normalizer而不是TorchNormalizer。帮我解决了问题。也见这里的https://github.com/jdb78/pytorch-forecasting/issues/1111#issuecomment-1223889422

票数 0
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页面原文内容由Stack Overflow提供。腾讯云小微IT领域专用引擎提供翻译支持
原文链接:

https://stackoverflow.com/questions/73453444

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