i would like to convert a dataframe with calculating percentage points for a graph later on in python.

The current frame looks like this

Post ID Title Url Author Score Submission_Date Total_Num_of_Comments Permalink Flair Selftext TitleAndText Word Count
k4nllk Update: Whassup bro? https://www.reddit.com/r/GME/comments/k4nllk/update_whassup_bro/ matt_xndever 1 2021-01-01 16:58:48 13 /r/GME/comments/k4nllk/update_whassup_bro/ Hedge Fund Tears asdasdasd asdasdasdasd 59.0

Where flairs are the categories i want to look for (over 40). On one submission day (i want to look onto days only), there can be multiple posts with different flairs. These flairs should add up to 100%.

So i want to create a dataframe like that:

Submission_Date Discussion Due Diligence Hedge Fund Tears News
01.01.2021 NaN NaN 1.0 NaN
03.01.2021 NaN 0.333333 0.666667 NaN

My graph should look like this: Plot stacked (100%) bar chart for multiple categories on multiple dates in Python

Can someone help me with the preparation for that?

Thanks and best regards

2 Answers 2


You can approach the problem as follows:

  • iterate over unique dates and slice the dataframe for each date
  • compute counts for each flair category with pandas value_counts()
  • get shares by dividing over the size of each slice
  • transpose the pandas series containing the shares for appending
  • append the shares for each date

Here is a sample input:

df = {
    'Submission_Date': ['2021-01-01', '2021-03-01', '2021-03-01', '2021-03-01', '2021-04-01', '2021-04-01'],
    'Flair': ['Hedge Fund Tears', 'Hedge Fund Tears', 'Hedge Fund Tears', 'Due Diligence', 'Discussion', 'News']
df = pd.DataFrame(df)
df['Submission_Date'] = pd.to_datetime(df['Submission_Date'])

enter image description here

And here is a sample implementation:

unique_flairs = list(df['Flair'].unique())
flair_df = pd.DataFrame()

# iterate over unique dates
for date in df['Submission_Date'].unique():
    date_subset = df.loc[df['Submission_Date'] == date]
    # for flairs in each date, get counts of values
    counts = date_subset['Flair'].value_counts()
    # get shares
    shares = counts / len(date_subset)
    # transpose series for appending
    shares_df = pd.DataFrame(shares).transpose()
    shares_df['Submission_Date'] = date
    for flair in [x for x in unique_flairs if x not in shares_df.columns]:
        shares_df[flair] = np.nan
    # append shares per date
    flair_df = pd.concat([flair_df, shares_df])
    flair_df = flair_df.reset_index(drop=True)

# rearrange columns
flair_df = flair_df[['Submission_Date'] + unique_flairs]


enter image description here


You can use pivot table to achieve this result. I made up the input data frame with some random values.

data = pandas.DataFrame.from_dict({
    "Submission_Date": [
        datetime.date(2021, 1, 1),
        datetime.date(2021, 1, 1),
        datetime.date(2021, 1, 2),
        datetime.date(2021, 1, 2),
        datetime.date(2021, 1, 3),
        datetime.date(2021, 1, 3),
        datetime.date(2021, 1, 3),
        datetime.date(2021, 1, 4),
    "Flair": ["Discussion", "Due Diligence", "Due Diligence", "Discussion", "Discussion",  "Hedge Fund Tears", "News", "News"],
data["Flair1"] = data.Flair.values # copy to another column to assist pivot
res = pandas.pivot_table(

res = pandas.DataFrame(res.to_records())
res.columns = [col.replace("('Flair', ", '').replace(")", '') for col in res.columns]
res['Total'] = res.astype({col:float for col in res.columns if col != "Submission_Date"}).sum(numeric_only=True, axis=1) # find Total
res[[col for col in res.columns if col != "Submission_Date"]] = res[[col for col in res.columns if col != "Submission_Date"]].div(res.Total, axis=0) # divide by Total
res = res.drop(columns=['Total']) # drop Total

enter image description here

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