I read an Excel Sheet into a pandas DataFrame this way:

import pandas as pd

xl = pd.ExcelFile("Path + filename")
df = xl.parse("Sheet1")

the first cell's value of each column is selected as the column name for the dataFrame, I want to specify my own column names, How do I do this?


I think setting them afterwards is the only way in this case, so if you have for example four columns in your DataFrame:

df.columns = ['W','X','Y','Z']

If you know in advance what the headers in the Excelfile are its probably better to rename them, this would rename W into A, etc:

df.rename(columns={'W':'A', 'X':'B', etc})
  • 4
    my problem is that the first row of the Excel file contains valid data and not the column names. so using "df.columns = ['W','X','Y','Z']" I would lose data ... so I need to append the col names on top of existing data then change the col names .... Jun 27 '13 at 6:16

call .parse with header=None keyword argument.

df = xl.parse("Sheet1", header=None)

This thread is 5 years old and outdated now, but still shows up on the top of the list from a generic search. So I am adding this note. Pandas now (v0.22) has a keyword to specify column names at parsing Excel files. Use:

import pandas as pd
xl = pd.ExcelFile("Path + filename")
df = xl.parse("Sheet 1", header=None, names=['A', 'B', 'C'])

If header=None is not set, pd seems to consider the first row as header and delete it during parsing. If there is indeed a header, but you dont want to use it, you have two choices, either (1) use "names" kwarg only; or (2) use "names" with header=None and skiprows=1. I personally prefer the second option, since it clearly makes note that the input file is not in the format I want, and that I am doing something to go around it.


As Ram said, this post comes on the top and may be useful to some.... In pandas 0.24.2 (may be earlier as well), read_excel itself has the capability of ignoring the source headers and giving your own col names and few other good controls:

DID = pd.read_excel(file1, sheet_name=0, header=None, usecols=[0, 1, 6], names=['A', 'ID', 'B'], dtype={2:str}, skiprows=10)

# for example....
# usecols => read only specific col indexes
# dtype => specifying the data types
# skiprows => skip number of rows from the top. 

in case the excel sheet only contains the data without headers
df=pd.read_excel("the excel file",header=None,names=["A","B","C"])

in case the excel sheet already contains header names, then use "skiprows" to skip the line
df=pd.read_excel("the excel file",header=None,names=["A","B","C"],skiprows=1)

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