I want to train a simple neural network on PyTorch using a personal database. This database is imported from an Excel file and stored in df.

One of the columns is named "Target", and it is the target variable of the network. How can i use this data frame as an input for the PyTorch neural network?

I tried this, but it doesn't work:

target = pd.DataFrame(data = df['Target'])
train = data_utils.TensorDataset(df, target)
train_loader = data_utils.DataLoader(train, batch_size = 10, shuffle = True)

I'm referring to the question in the title as you haven't really specified anything else in the text, so just converting the DataFrame into a PyTorch tensor.

Without information about your data, I'm just taking float values as example targets here.

Convert Pandas dataframe to PyTorch tensor?

import pandas as pd
import torch
import random

# creating dummy targets (float values)
targets_data = [random.random() for i in range(10)]

# creating DataFrame from targets_data
targets_df = pd.DataFrame(data=targets_data)
targets_df.columns = ['targets']

# creating tensor from targets_df 
torch_tensor = torch.tensor(targets_df['targets'].values)

# printing out result


tensor([ 0.5827,  0.5881,  0.1543,  0.6815,  0.9400,  0.8683,  0.4289,
         0.5940,  0.6438,  0.7514], dtype=torch.float64)

Tested with Pytorch 0.4.0.

I hope this helps, if you have any further questions - just ask. :)

  • 1
    Using your code i wrote this: train_target = torch.tensor(train['Target'].values) train = torch.tensor(train.drop('Target', axis = 1).values) train_tensor = data_utils.TensorDataset(train, train_target) train_loader = data_utils.DataLoader(dataset = train_tensor, batch_size = batch_size, shuffle = True) Running the neural net model i get this error: RuntimeError: Expected object of type torch.FloaTtensor but found type torch.DoubleTensor for argument #4 'mat1' – M. Fabio May 13 '18 at 12:24
  • What PyTorch version version are you using? Version 0.3.1. is very different from version 0.4.0. . – MBT May 13 '18 at 12:31
  • I'm using pytorch 0.4.0, tested with print(torch.__version__) – M. Fabio May 13 '18 at 12:37
  • 1
    How does your DataFrame look like? Best would be to update your question, otherwise it gonna be difficult to reproduce your problem. – MBT May 14 '18 at 12:17
  • Just for the records, on terminology: you are not converting a pandas DataFrame, rather a Pandas series (which you first coerce to array applying .values). – gented Jan 31 at 15:47

Maybe try this to see if it can fix your problem(based on your sample code)?

train_target = torch.tensor(train['Target'].values.astype(np.float32))
train = torch.tensor(train.drop('Target', axis = 1).values.astype(np.float32)) 
train_tensor = data_utils.TensorDataset(train, train_target) 
train_loader = data_utils.DataLoader(dataset = train_tensor, batch_size = batch_size, shuffle = True)

Simply convert the pandas dataframe -> numpy array -> pytorch tensor. An example of this is described below:

import pandas as pd
import numpy as np
import torch

df = pd.read_csv('train.csv')
target = pd.DataFrame(df['target'])
del df['target']
train = data_utils.TensorDataset(torch.Tensor(np.array(df)), torch.Tensor(np.array(target)))
train_loader = data_utils.DataLoader(train, batch_size = 10, shuffle = True)

Hopefully, this will help you to create your own datasets using pytorch (Compatible with the latest version of pytorch).


You can use below functions to convert any dataframe or pandas series to a pytorch tensor

import pandas as pd
import torch

# determine the supported device
def get_device():
    if torch.cuda.is_available():
        device = torch.device('cuda:0')
        device = torch.device('cpu') # don't have GPU 
    return device

# convert a df to tensor to be used in pytorch
def df_to_tensor(df):
    device = get_device()
    return torch.from_numpy(df.values).float().to(device)

df_tensor = df_to_tensor(df)
series_tensor = df_to_tensor(series)

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