I am being asked to generate some Excel reports. I am currently using pandas quite heavily for my data, so naturally I would like to use the pandas.ExcelWriter method to generate these reports. However the fixed column widths are a problem.

The code I have so far is simple enough. Say I have a dataframe called 'df':

writer = pd.ExcelWriter(excel_file_path, engine='openpyxl')
df.to_excel(writer, sheet_name="Summary")

I was looking over the pandas code, and I don't really see any options to set column widths. Is there a trick out there in the universe to make it such that the columns auto-adjust to the data? Or is there something I can do after the fact to the xlsx file to adjust the column widths?

(I am using the OpenPyXL library, and generating .xlsx files - if that makes any difference.)

Thank you.

  • 1
    doesn't look possible at the moment, please open an issue for this enhancement on github (and maybe a PR?). doesn't look that hard to do. – Jeff Jun 26 '13 at 18:08
  • thanks Jeff, i have submitted the issue. i'm not sure if i will have time to actually dive into the pandas codebase to solve it, but you never know :) – badideas Jun 26 '13 at 19:19
  • yep....saw your issue.....comment on the issue if you need some help! (essentially need to pass an optional argument to to_excel, maybe col_style=dict which contains col header style elements (rather than the default header_style which seems to be hard coded now – Jeff Jun 26 '13 at 19:27
  • 6
    Link to pandas issue – dmvianna Feb 11 '14 at 0:00

10 Answers 10


Inspired by user6178746's answer, I have the following:

# Given a dict of dataframes, for example:
# dfs = {'gadgets': df_gadgets, 'widgets': df_widgets}

writer = pd.ExcelWriter(filename, engine='xlsxwriter')
for sheetname, df in dfs.items():  # loop through `dict` of dataframes
    df.to_excel(writer, sheet_name=sheetname)  # send df to writer
    worksheet = writer.sheets[sheetname]  # pull worksheet object
    for idx, col in enumerate(df):  # loop through all columns
        series = df[col]
        max_len = max((
            series.astype(str).map(len).max(),  # len of largest item
            len(str(series.name))  # len of column name/header
            )) + 1  # adding a little extra space
        worksheet.set_column(idx, idx, max_len)  # set column width
  • 5
    FYI: In my case I needed to use "index=False" in the "df.to_excel(...)" call, or else the columns were off by 1 – denvar Jan 12 '17 at 4:20
  • yep, I also had to add df.to_excel(writer, sheet_name=sheetname, index=False) – Heikki Pulkkinen Jun 20 '18 at 6:21
  • 1
    If you can't use index=False (because you have a multiindex on rows), then you can get the index level depth with df.index.nlevels and then use this to add on to your set column call: worksheet.set_column(idx+nlevels, idx+nlevels, max_len). Otherwise the length is calculated for the first column of the frame, and then applied to the first column in the excel, which is probably the index. – ac24 Jul 6 '18 at 8:20
  • For anyone still looking for this answer, enumerate(df) should be enumerate(df.columns) since you're iterating over each column in df. – Dascienz Sep 13 '18 at 20:05
  • 2
    @Dascienz the same way iterating over a dict actually iterates over the keys in the dict (you don't have to manually say dict.keys()), iterating over a pd.DataFrame iterates over the columns. You don't have to manually iterate over df.columns. – alichaudry Sep 13 '18 at 21:20

I'm posting this because I just ran into the same issue and found that the official documentation for Xlsxwriter and pandas still have this functionality listed as unsupported. I hacked together a solution that solved the issue i was having. I basically just iterate through each column and use worksheet.set_column to set the column width == the max length of the contents of that column.

One important note, however. This solution does not fit the column headers, simply the column values. That should be an easy change though if you need to fit the headers instead. Hope this helps someone :)

import pandas as pd
import sqlalchemy as sa
import urllib

read_server = 'serverName'
read_database = 'databaseName'

read_params = urllib.quote_plus("DRIVER={SQL Server};SERVER="+read_server+";DATABASE="+read_database+";TRUSTED_CONNECTION=Yes")
read_engine = sa.create_engine("mssql+pyodbc:///?odbc_connect=%s" % read_params)

#Output some SQL Server data into a dataframe
my_sql_query = """ SELECT * FROM dbo.my_table """
my_dataframe = pd.read_sql_query(my_sql_query,con=read_engine)

#Set destination directory to save excel.
xlsFilepath = r'H:\my_project' + "\\" + 'my_file_name.xlsx'
writer = pd.ExcelWriter(xlsFilepath, engine='xlsxwriter')

#Write excel to file using pandas to_excel
my_dataframe.to_excel(writer, startrow = 1, sheet_name='Sheet1', index=False)

#Indicate workbook and worksheet for formatting
workbook = writer.book
worksheet = writer.sheets['Sheet1']

#Iterate through each column and set the width == the max length in that column. A padding length of 2 is also added.
for i, col in enumerate(my_dataframe.columns):
    # find length of column i
    column_len = my_dataframe[col].astype(str).str.len().max()
    # Setting the length if the column header is larger
    # than the max column value length
    column_len = max(column_len, len(col)) + 2
    # set the column length
    worksheet.set_column(i, i, column_len)
  • 1
    Good solution. I like how you used pandas instead of another package. – user6194984 Apr 13 '16 at 2:32
  • I think you need () inside max function: ` max(column_len(), len(col)) + 2` – Serdia Oct 24 '19 at 22:36

There is probably no automatic way to do it right now, but as you use openpyxl, the following line (adapted from another answer by user Bufke on how to do in manually) allows you to specify a sane value (in character widths):

writer.sheets['Summary'].column_dimensions['A'].width = 15
  • I'm getting, key error: '<sheetname>' – Sunil Dec 17 '19 at 13:31
  • The default ExcelWriter engine pandas is using has changed since 2013 to Xlsxwriter, which does not contain a column_dimensions attribute. If you want to keep using openpyxl, simply specify it when creating the writer using pd.ExcelWriter(excel_filename, engine='openpyxl') – ojdo Dec 18 '19 at 11:20
  • @Sunil: check the other answers using Xlsxwriter as the engine to see how to specify the column width with today's default engine. – ojdo Dec 18 '19 at 11:22

There is a nice package that I started to use recently called StyleFrame.

it gets DataFrame and lets you to style it very easily...

by default the columns width is auto-adjusting.

for example:

from StyleFrame import StyleFrame
import pandas as pd

df = pd.DataFrame({'aaaaaaaaaaa': [1, 2, 3], 
                   'bbbbbbbbb': [1, 1, 1],
                   'ccccccccccc': [2, 3, 4]})
excel_writer = StyleFrame.ExcelWriter('example.xlsx')
sf = StyleFrame(df)
sf.to_excel(excel_writer=excel_writer, row_to_add_filters=0,

you can also change the columns width:

sf.set_column_width(columns=['aaaaaaaaaaa', 'bbbbbbbbb'],


In version 1.4 best_fit argument was added to StyleFrame.to_excel. See the documentation.

  • The StyleFrame package may be easy to use, but I don't see how "by default the columns width is auto-adjusting". When I run the code sample you gave, all the columns are the same width, and all three headers are wrapped. Your sample data is also poorly chosen, because they are all almost the same width naturally. To really illustrate automatic adjustment, you should choose some really wide data and some narrow data. When I do this for myself, the column widths are still exactly the same as before. There was no adjustment whatsoever. – John Y Oct 3 '18 at 21:49
  • Maybe at one point in StyleFrame's history, the column widths were automatically adjusted by default, but at least today, you have to specify the column or columns you want adjusted in the best_fit parameter. Also, when I tried this, I got very poor results. – John Y Oct 3 '18 at 22:53
  • the width seems to be off 1 column. I tried enabling and disabling the index parameter but no dice. – user10417531 Jan 22 '19 at 12:03

By using pandas and xlsxwriter you can do your task, below code will perfectly work in Python 3.x. For more details on working with XlsxWriter with pandas this link might be useful https://xlsxwriter.readthedocs.io/working_with_pandas.html

import pandas as pd
writer = pd.ExcelWriter(excel_file_path, engine='xlsxwriter')
df.to_excel(writer, sheet_name="Summary")
workbook = writer.book
worksheet = writer.sheets["Summary"]
#set the column width as per your requirement
worksheet.set_column('A:A', 25)

At work, I am always writing the dataframes to excel files. So instead of writing the same code over and over, I have created a modulus. Now I just import it and use it to write and formate the excel files. There is one downside though, it takes a long time if the dataframe is extra large. So here is the code:

def result_to_excel(output_name, dataframes_list, sheet_names_list, output_dir):
    out_path = os.path.join(output_dir, output_name)
    writerReport = pd.ExcelWriter(out_path, engine='xlsxwriter',
                    datetime_format='yyyymmdd', date_format='yyyymmdd')
    workbook = writerReport.book
    # loop through the list of dataframes to save every dataframe into a new sheet in the excel file
    for index, dataframe in enumerate(dataframes_list):
        sheet_name = sheet_names_list[index]  # choose the sheet name from sheet_names_list
        dataframe.to_excel(writerReport, sheet_name=sheet_name, index=False, startrow=0)
        # Add a header format.
        format = workbook.add_format({
            'bold': True,
            'border': 1,
            'fg_color': '#0000FF',
            'font_color': 'white'})
        # Write the column headers with the defined format.
        worksheet = writerReport.sheets[sheet_name]
        for col_num, col_name in enumerate(dataframe.columns.values):
            worksheet.write(0, col_num, col_name, format)
        worksheet.autofilter(0, 0, 0, len(dataframe.columns) - 1)
        worksheet.freeze_panes(1, 0)
        # loop through the columns in the dataframe to get the width of the column
        for index, col in enumerate(dataframe.columns):
            max_width = max([len(str(s)) for s in dataframe[col].values] + [len(col) + 2])
            # define a max width to not get to wide column
            if max_width > 50:
                max_width = 50
            worksheet.set_column(index, index, max_width)
    return output_dir + output_name

import re
import openpyxl
for col in _ws.columns:
    max_lenght = 0
    col_name = re.findall('\w\d', str(col[0]))
    col_name = col_name[0]
    col_name = re.findall('\w', str(col_name))[0]
    for cell in col:
            if len(str(cell.value)) > max_lenght:
                max_lenght = len(cell.value)
    adjusted_width = (max_lenght+2)
    _ws.column_dimensions[col_name].width = adjusted_width

I found that it was more useful to adjust the column with based on the column header rather than column content.

Using df.columns.values.tolist() I generate a list of the column headers and use the lengths of these headers to determine the width of the columns.

See full code below:

import pandas as pd
import xlsxwriter

writer = pd.ExcelWriter(filename, engine='xlsxwriter')
df.to_excel(writer, index=False, sheet_name=sheetname)

workbook = writer.book # Access the workbook
worksheet= writer.sheets[sheetname] # Access the Worksheet

header_list = df.columns.values.tolist() # Generate list of headers
for i in range(0, len(header_list)):
    worksheet.set_column(i, i, len(header_list[i])) # Set column widths based on len(header)

writer.save() # Save the excel file

Easiest solution is to specify width of column in set_column method.

    for worksheet in writer.sheets.values():
        worksheet.set_column(0,last_column_value, required_width_constant)

Combining the other answers and comments and also supporting multi-indices:

def autosize_excel_columns(worksheet, df):
  autosize_excel_columns_df(worksheet, df.index.to_frame())
  autosize_excel_columns_df(worksheet, df, offset=df.index.nlevels)

def autosize_excel_columns_df(worksheet, df, offset=0):
  for idx, col in enumerate(df):
    series = df[col]
    max_len = max((
    )) + 1
    worksheet.set_column(idx+offset, idx+offset, max_len)

df.to_excel(writer, sheet_name=sheetname, freeze_panes=(df.columns.nlevels, df.index.nlevels))
worksheet = writer.sheets[sheetname]
autosize_excel_columns(worksheet, df)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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