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I am a beginner of Python. I have about 1000 CSV files (1.csv, 2.csv....1000.csv). Each CSV file has about 3,000,000,000 rows and 14 variables. I would like to clean data in each CSV file first using the same process for each CSV file:

  1. sum variable A and variable B,
  2. count C by sorting date, if the number of records in C for one day is greater than 50, then drop it.

Next, save the cleaned data into a new CSV file. At last, append all 1000 new CSV files into one CSV file.

I have some code as follows, but it imports all CSV files first, then process to clean data, which is very inefficient. I would like to clean the data in each CSV file first, then append new CSV files. Can anyone help me on this? Any help will be appreciated.

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  • Youll need to show us what you've tried, and perhaps sample input/out aligned with MVCE – pstatix Dec 23 '18 at 4:47
  • 1,000 files, each with 3 billion rows? This sounds like a job for a database, not Python. You could use Python to read the CSV files and import them into a DB, then do the processing via the DB. Also, what do you mean by "variables"? CSV files don't contain variables. Do you mean columns? – kmoser Dec 23 '18 at 5:25
  • This looks like a pandas question, rather than a mere python question. I say this only because you are using pandas.read_csv() with two rows of header data. Otherwise, you could do your cleanup and create new set of CSVs using python's built-in csv module. Of course, you could still do this, but you would need to explicitly set fieldnames in csv.DictReader(), and then ignore the first two header rows. If that's an approach you're willing to take, post the first few rows of one of your files and I or someone else could help. – Joseph8th Dec 23 '18 at 5:37
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This what I understand from your question. I read all the files and I add a new column for the summation. Then I order the date and drop any value of C greater than 50. After that, I save the update. Before you do this you have to copy your original files or you can save them with a different files name.

import glob
import os
import pandas as pd

path = "./data/"
all_files = glob.glob(os.path.join(path, "*.csv")) #make list of paths

for file in all_files:
    # Getting the file name without extension
    file_name = os.path.splitext(os.path.basename(file))[0]
    df = pd.read_csv(file_name)
    df['new_column'] =  df['A']+ df['B']
    df.sort_values(by='C')
    df.drop(df.loc[df['C']>50].index, inplace=True)
    df.to_csv(file_name)
  • it works! Many thanks!!!!!!!!!!! – Elaine Dec 23 '18 at 16:32

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