I have hundreds of large CSV files that I would like to merge into one. However, not all CSV files contain all columns. Therefore, I need to merge files based on column name, not column position.

Just to be clear: in the merged CSV, values should be empty for a cell coming from a line which did not have the column of that cell.

I cannot use the pandas module, because it makes me run out of memory.

Is there a module that can do that, or some easy code?


The csv.DictReader and csv.DictWriter classes should work well (see Python docs). Something like this:

import csv
inputs = ["in1.csv", "in2.csv"]  # etc

# First determine the field names from the top line of each input file
# Comment 1 below
fieldnames = []
for filename in inputs:
  with open(filename, "r", newline="") as f_in:
    reader = csv.reader(f_in)
    headers = next(reader)
    for h in headers:
      if h not in fieldnames:

# Then copy the data
with open("out.csv", "w", newline="") as f_out:   # Comment 2 below
  writer = csv.DictWriter(f_out, fieldnames=fieldnames)
  for filename in inputs:
    with open(filename, "r", newline="") as f_in:
      reader = csv.DictReader(f_in)  # Uses the field names in this file
      for line in reader:
        # Comment 3 below

Comments from above:

  1. You need to specify all the possible field names in advance to DictWriter, so you need to loop through all your CSV files twice: once to find all the headers, and once to read the data. There is no better solution, because all the headers need to be known before DictWriter can write the first line. This part would be more efficient using sets instead of lists (the in operator on a list is comparatively slow), but it won't make much difference for a few hundred headers. Sets would also lose the deterministic ordering of a list - your columns would come out in a different order each time you ran the code.
  2. The above code is for Python 3, where weird things happen in the CSV module without newline="". Remove this for Python 2.
  3. At this point, line is a dict with the field names as keys, and the column data as values. You can specify what to do with blank or unknown values in the DictReader and DictWriter constructors.

This method should not run out of memory, because it never has the whole file loaded at once.

  • Thanks! This works but the input CSVs all have headers, and they are repeated in the merged file with the code above. How do I drop this line for each file except the first one? – Alexis Eggermont Oct 28 '14 at 2:37
  • Actually my columns are not aligned in the merged document. Trying to figure out why. – Alexis Eggermont Oct 28 '14 at 3:13
  • 223 columns in my out.csv, but my fieldnames length is 368...? – Alexis Eggermont Oct 28 '14 at 3:22
  • The "line" dictionary has some values shifted, so it doesn't correspond to the input files. – Alexis Eggermont Oct 28 '14 at 3:33
  • 1
    Thanks a lot, this works! Two minor tweaks I made: 1) changed with open("out.csv", "w") to with open("out.csv", "wb"), otherwise I get every other line blank for some reason 2) Added f_out.write(str(fieldnames)+"\n" to get the headers in the merged csv. – Alexis Eggermont Oct 28 '14 at 8:17

For those of us using 2.7, this adds an extra linefeed between records in "out.csv". To resolve this, just change the file mode from "w" to "wb".

  • 2
    What adds an extra line feed? The accepted answer? If so, this should really be a comment on the accepted answer and not a separate answer on its own. – akousmata Jan 25 '17 at 22:29

You can use the pandas module to do this pretty easily. This snippet assumes all your csv files are in the current folder.

import pandas as pd
import os

all_csv = [file_name for file_name in os.listdir(os.getcwd()) if '.csv' in file_name]

li = []

for filename in all_csv:
    df = pd.read_csv(filename, index_col=None, header=0, parse_dates=True, infer_datetime_format=True)

frame = pd.concat(li, axis=0, ignore_index=True)
frame.to_csv('melted_csv.csv', index=False)

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