40

I have a file example.csv with the contents

1,"A towel,",1.0
42," it says, ",2.0
1337,is about the most ,-1
0,massively useful thing ,123
-2,an interstellar hitchhiker can have.,3

How do I read this example.csv with Python?

Similarly, if I have

data = [(1, "A towel,", 1.0),
        (42, " it says, ", 2.0),
        (1337, "is about the most ", -1),
        (0, "massively useful thing ", 123),
        (-2, "an interstellar hitchhiker can have.", 3)]

How do I write data to a CSV file with Python?

47

Here are some minimal complete examples how to read CSV files and how to write CSV files with Python.

Python 3: Reading a CSV file

Pure Python

import csv

# Define data
data = [
    (1, "A towel,", 1.0),
    (42, " it says, ", 2.0),
    (1337, "is about the most ", -1),
    (0, "massively useful thing ", 123),
    (-2, "an interstellar hitchhiker can have.", 3),
]

# Write CSV file
with open("test.csv", "wt") as fp:
    writer = csv.writer(fp, delimiter=",")
    # writer.writerow(["your", "header", "foo"])  # write header
    writer.writerows(data)

# Read CSV file
with open("test.csv") as fp:
    reader = csv.reader(fp, delimiter=",", quotechar='"')
    # next(reader, None)  # skip the headers
    data_read = [row for row in reader]

print(data_read)

After that, the contents of data_read are

[['1', 'A towel,', '1.0'],
 ['42', ' it says, ', '2.0'],
 ['1337', 'is about the most ', '-1'],
 ['0', 'massively useful thing ', '123'],
 ['-2', 'an interstellar hitchhiker can have.', '3']]

Please note that CSV reads only strings. You need to convert to the column types manually.

A Python 2+3 version was here before (link), but Python 2 support is dropped. Removing the Python 2 stuff massively simplified this answer.

Related

mpu

Have a look at my utility package mpu for a super simple and easy to remember one:

import mpu.io
data = mpu.io.read('example.csv', delimiter=',', quotechar='"', skiprows=None)
mpu.io.write('example.csv', data)

Pandas

import pandas as pd

# Read the CSV into a pandas data frame (df)
#   With a df you can do many things
#   most important: visualize data with Seaborn
df = pd.read_csv('myfile.csv', sep=',')
print(df)

# Or export it in many ways, e.g. a list of tuples
tuples = [tuple(x) for x in df.values]

# or export it as a list of dicts
dicts = df.to_dict().values()

See read_csv docs for more information. Please note that pandas automatically infers if there is a header line, but you can set it manually, too.

If you haven't heard of Seaborn, I recommend having a look at it.

Other

Reading CSV files is supported by a bunch of other libraries, for example:

Created CSV file

1,"A towel,",1.0
42," it says, ",2.0
1337,is about the most ,-1
0,massively useful thing ,123
-2,an interstellar hitchhiker can have.,3

Common file endings

.csv

Working with the data

After reading the CSV file to a list of tuples / dicts or a Pandas dataframe, it is simply working with this kind of data. Nothing CSV specific.

Alternatives

For your application, the following might be important:

  • Support by other programming languages
  • Reading / writing performance
  • Compactness (file size)

See also: Comparison of data serialization formats

In case you are rather looking for a way to make configuration files, you might want to read my short article Configuration files in Python

| improve this answer | |
  • 1
    @icedwater This is a possibility. However, I prefer Pandas: (1) It automatically deals with headers (2) it loads the file directly from the path and does not expect a file pointer (3) it has better "export" options (like the dict export - yes, you can do that with CSV, too. But Pandas is simpler). But feel free to post a solution with does not need Pandas :-) – Martin Thoma Jan 11 '17 at 8:02
  • Thanks, I was wondering because you used csv for writing. I would prefer csv or pandas for both, and csv over pandas because it is more likely to already be there. – icedwater Jan 11 '17 at 8:22
  • 1
    @icedwater Ok, I've added a pure csv solution (which is now also consistent in structure with my other answers to the other file formats like YAML and JSON) – Martin Thoma Feb 10 '17 at 16:17
  • @Aran-Fey Thank you! I wasn't aware of that. I fixed it! – Martin Thoma May 28 '18 at 8:51
  • @Aran-Fey Thank you again :-) I changed the code and will adjust mpu after work... reading CSVs properly is more complicated than it should be^^ – Martin Thoma May 28 '18 at 10:53
1

Writing a CSV file

First you need to import csv

For eg:

import csv

with open('eggs.csv', 'wb') as csvfile:
    spamwriter = csv.writer(csvfile, delimiter=' ',
                        quotechar='|', quoting=csv.QUOTE_MINIMAL)
    spamwriter.writerow(['Spam'] * 5 + ['Baked Beans'])
    spamwriter.writerow(['Spam', 'Lovely Spam', 'Wonderful Spam'])
| improve this answer | |
0
import csv
with open(fileLocation+'example.csv',newline='') as File: #the csv file is stored in a File object

    reader=csv.reader(File)       #csv.reader is used to read a file
    for row in reader:
        print(row)
| improve this answer | |
  • 2
    While this snippet may be a valid answer, some explanation would be helpful. – user3483203 Feb 17 '18 at 18:05
  • 1
    Not sure what this adds over the existing answer – OneCricketeer Mar 11 '18 at 4:24
0

To read a csv file using Pandas

use pd.read_csv("D:\\sample.csv")

using only python :

fopen=open("D:\\sample.csv","r") 

print(fopen.read())

To create and write into a csv file

The below example demonstrate creating and writing a csv file. to make a dynamic file writer we need to import a package import csv, then need to create an instance of the file with file reference Ex:

with open("D:\sample.csv","w",newline="") as file_writer

Here if the file does not exist with the mentioned file directory then python will create a same file in the specified directory, and w represents write, if you want to read a file then replace w with r or to append to existing file then a.

newline="" specifies that it removes an extra empty row for every time you create row so to eliminate empty row we use newline="", create some field names(column names) using list like:

fields=["Names","Age","Class"]

Then apply to writer instance like:

writer=csv.DictWriter(file_writer,fieldnames=fields)

Here using Dictionary writer and assigning column names, to write column names to csv we use writer.writeheader() and to write values we use writer.writerow({"Names":"John","Age":20,"Class":"12A"}) ,while writing file values must be passed using dictionary method , here the key is column name and value is your respective key value.

Import csv:

with open("D:\sample.csv","w",newline="") as file_writer:

fields=["Names","Age","Class"]

writer=csv.DictWriter(file_writer,fieldnames=fields)

writer.writeheader()

writer.writerow({"Names":"John","Age":21,"Class":"12A"})
| improve this answer | |

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