I have a loop that produces a list of values for every iteration. I would like that list of values to be saved as a single string in a csv "cell". Specifically, what I have is the following:


#a csv file that looks something like this:
users = pd.read_csv(csv_file, usecols= ['username', 'user_id'])

for row in users.itertuples(index=True, name='Pandas'):
     get_data(username, user_id)

get_data returns a list of strings. Instead of writing these strings in a comma-separated way to a csv file, I would like to write them in a nested way to the csv. Something like the following:



One of the reasons why I would like to store my results in this form is that I am planning on saving more data for each user. This data may be of different length than the output of my get_data call.

  • 3
    IMHO, this would be a very bad way to store a csv since it breaks your csv structure. Commented Oct 5, 2020 at 17:37
  • I must admit that I also don't particularly like it. But without resorting to a different file type or to a database, how would you store it instead?
    – Tea Tree
    Commented Oct 5, 2020 at 17:41
  • multiple rows for each user, each for a string in the get_data response. Commented Oct 5, 2020 at 17:42
  • Or just use a different delimiter for the values, ie ;
    – DeepSpace
    Commented Oct 5, 2020 at 17:43
  • Using multiple rows for each user would make adding data of a different length difficult or messy. What would the code with a ; delimiter look like?
    – Tea Tree
    Commented Oct 5, 2020 at 17:51

1 Answer 1


Two key concepts to the problems:

  1. Pandas .to_csv() is quite smart in terms of auto-quoting. One should have no problem reading/writing a csv file without changing the default delimiter even if the data contains literal quotes or commas.

  2. Problem with reading such a format: The data cells, which were originally lists, were stored as strings in the csv file, so they are loaded as strings. ast.literal_eval() can convert a string representation of list back to a list. Caution: This measure may be vulnerable to dirty data. Be sure to perform data cleaning before saving the csv file.

Experiment Code

import pandas as pd
import ast  # for literal string parsing

# data
df = pd.DataFrame(
        "index": range(1,5),
        "username": [f"name{i}" for i in range(4)],
        "user_id": range(1,5),
        # initialize each data cell with an empty list
        "data": [list() for _ in range(4)]

# use `.at[]` to append some values
df.at[0, "data"] += [1, 2, 3]
df.at[2, "data"] += [4]
# mixed types, quotes and commas
df.at[3, "data"] += [1, '"', -3.3, "'", ",,,", ";"]


# save
file_path = "/mnt/ramdisk/out.csv"

# load
df_read = pd.read_csv(file_path, index_col=0)
# parse, because contents in data cells were loaded as strings
for i in range(len(df_read)):
    s = df_read.iat[i, 3]
    print(f"row {i} before: {type(s)}")
    df_read.iat[i, 3] = ast.literal_eval(s)
    print(f"       after: {type(s)}, len={len(s)}")

print(df_read)  # identical to df

# check elements within list
ls = df_read.iat[3,3]
for i in range(len(ls)):
    print(f"row {i}: {type(ls[i])}, contents={ls[i]}")


(0) Original dataframe (no quoting was printed, but doesn't affect the data itself)

index username  user_id                     data
0      1    name0        1                [1, 2, 3]
1      2    name1        2                       []
2      3    name2        3                      [4]
3      4    name3        4  [1, ", -3.3, ', ,,,, ;]

(1) Raw csv file

bill@bill-laptop-deb: /mnt/ramdisk
$ cat out.csv                                                                                                                                                    
0,1,name0,1,"[1, 2, 3]"
3,4,name3,4,"[1, '""', -3.3, ""'"", ',,,', ';']"

(2) Re-load the file in python

df_read  # identical to input
index username  user_id                     data
0      1    name0        1                [1, 2, 3]
1      2    name1        2                       []
2      3    name2        3                      [4]
3      4    name3        4  [1, ", -3.3, ', ,,,, ;]

(3) LibreOffice 6 imports the csv file correctly as well.

(4) Type check on the loaded data

ls = df_read.iat[3,3]  # a mixed-up list
for i in range(len(ls)):
    print(f"row {i}: {type(ls[i])}, contents={ls[i]}")

row 0: <class 'int'>, contents=1
row 1: <class 'str'>, contents="
row 2: <class 'float'>, contents=-3.3
row 3: <class 'str'>, contents='
row 4: <class 'str'>, contents=,,,
row 5: <class 'str'>, contents=;

One can see that although quoting/escaping makes the file fairly hard-to-read to human eye, it should not be a problem to pandas and LibreOffice.

Side note: Using a database is strongly recommend for the sake of traceability and data integrity. Such a continuous data augmentation scenario is what database systems were designed for. If your project runs independently, SQLite should be a lightweight choice that is relatively easy in terms of deployment.

  • Caution again: DON'T DO THIS FOR PRODUCTION PURPOSES. This is not extensively tested against all kinds of dirty data. Just store them in a database.
    – Bill Huang
    Commented Oct 5, 2020 at 20:35

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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