I am trying to shuffle and split a data file into a training set and test set using pandas and numpy, so I did the following:

import pandas as pd
import numpy as np 

data_path = "/path_to_data_file/"

train = pd.read_csv(data_path+"product.txt", header=0, delimiter="|")
ts =  train.shape 
#print "data dimension", ts
#print "product attributes \n", train.columns.values 

#shuffle data set, and split to train and test set. 
df = pd.DataFrame(train)
new_train = df.reindex(np.random.permutation(df.index))

indice_90_percent = int((ts[0]/100.0)* 90)

print "90% indice", indice_90_percent

#write train products to csv 

with open('train_products.txt', 'w') as f:
    for i in new_train[:indice_90_percent]:

with open('test_products.txt', 'w') as f:
    for i in new_train[indice_90_percent:]:

But instead of getting the training and test files with data rows, I get two files containing the names of the columns. What did I miss?

  • you are iterating over the column names, the rows are in new_train[indice_90_percent:].values – Padraic Cunningham Jun 29 '15 at 10:01
  • it's because the iterable returned from a df are the columns and not the rows – EdChum Jun 29 '15 at 10:01
  • @EdChum I would like to iterate over the rows, how to proceed? – MedAli Jun 29 '15 at 10:04
  • Sorry you want to write to file each row or the entire df indexed by indice_90_percent? – EdChum Jun 29 '15 at 10:06
  • @MedAli,you can use pandas to write new_train[indice_90_percent:].to_csv('test_products.txt',header=False) – Padraic Cunningham Jun 29 '15 at 10:06

You can use to_csv to write the rows, if you don't want the the column names use header=False.


Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.