Warning raised when reading different dtypes in a column from a file.
Raised for a dtype incompatibility. This can happen whenever read_csv or read_table encounter non-uniform dtypes in a column(s) of a given CSV file.
See also
read_csvRead CSV (comma-separated) file into a DataFrame.
read_tableRead general delimited file into a DataFrame.
Notes
This warning is issued when dealing with larger files because the dtype checking happens per chunk read.
Despite the warning, the CSV file is read with mixed types in a single column which will be an object type. See the examples below to better understand this issue.
Examples
This example creates and reads a large CSV file with a column that contains int and str.
>>> df = pd.DataFrame({'a': (['1'] * 100000 + ['X'] * 100000 +
... ['1'] * 100000),
... 'b': ['b'] * 300000})
>>> df.to_csv('test.csv', index=False)
>>> df2 = pd.read_csv('test.csv')
... # DtypeWarning: Columns (0) have mixed types
Important to notice that df2 will contain both str and int for the same input, ‘1’.
>>> df2.iloc[262140, 0]
'1'
>>> type(df2.iloc[262140, 0])
<class 'str'>
>>> df2.iloc[262150, 0]
1
>>> type(df2.iloc[262150, 0])
<class 'int'>
One way to solve this issue is using the dtype parameter in the read_csv and read_table functions to explicit the conversion:
>>> df2 = pd.read_csv('test.csv', sep=',', dtype={'a': str})
No warning was issued.
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https://pandas.pydata.org/pandas-docs/version/2.3.0/reference/api/pandas.errors.DtypeWarning.html