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How can I export a list of DataFrames into one Excel spreadsheet?
The docs for to_excel state:

Notes
If passing an existing ExcelWriter object, then the sheet will be added to the existing workbook. This can be used to save different DataFrames to one workbook

writer = ExcelWriter('output.xlsx')
df1.to_excel(writer, 'sheet1')
df2.to_excel(writer, 'sheet2')
writer.save()

Following this, I thought I could write a function which saves a list of DataFrames to one spreadsheet as follows:

from openpyxl.writer.excel import ExcelWriter
def save_xls(list_dfs, xls_path):
    writer = ExcelWriter(xls_path)
    for n, df in enumerate(list_dfs):
        df.to_excel(writer,'sheet%s' % n)
    writer.save()

However (with a list of two small DataFrames, each of which can save to_excel individually), an exception is raised (Edit: traceback removed):

AttributeError: 'str' object has no attribute 'worksheets'

Presumably I am not calling ExcelWriter correctly, how should I be in order to do this?

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1 Answer

up vote 12 down vote accepted

You should be using pandas own ExcelWriter class:

from pandas import ExcelWriter
# from pandas.io.parsers import ExcelWriter

Then the save_xls function works as expected:

def save_xls(list_dfs, xls_path):
    writer = ExcelWriter(xls_path)
    for n, df in enumerate(list_dfs):
        df.to_excel(writer,'sheet%s' % n)
    writer.save()
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... what a tool! –  Andy Hayden Jan 8 '13 at 23:28
    
why not just df.to_excel('file_path')? –  root Jan 8 '13 at 23:30
    
@root I don't think that works for a list of dataframes? –  Andy Hayden Jan 8 '13 at 23:30
    
you are right :) –  root Jan 8 '13 at 23:36
    
How are you finding the speed of this? I tried to do the same thing yesterday and found that writing a dataframe with 2000 columns to an .xlsx file was taking about 16s per 100 rows on a decent workstation with solid state drive. Some quick profiling with %prun in ipython showed this to be due to the XML processing. In the end I got the data inte Excel by going via CSV because the ExcelWriter speed was prohibitively slow. –  snth Jan 9 '13 at 8:15
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