I have a pandas dataframe I loaded via read_csv that I am trying to push to a database via to_sql when I attempt

df.to_sql("assessmentinfo_pivot", util.ENGINE)

I get back a unicodeDecodeError:

UnicodeEncodeError: 'ascii' codec can't encode characters in position 83-84: ordinal not in range(128)

There is no encoding option for to_sql to specify utf-8 for the to_sql and the Engine was created with encoding set to utf-8

ENGINE = create_engine("mssql+pymssql://" +
                       config.get_local('CEDS_USERNAME') + ':' +
                       config.get_local('CEDS_PASSWORD') + '@' +
                       config.get_local('CEDS_SERVER') + '/' +

Any pandas insight into getting this working properly? most of my searched lead me to people having a similar error for to_csv which is just resolved by adding encoding="utf-8" but that is unfortunately not an option here.

I tried paring the file down but it still gives errors even when stripped down to just the headers: http://pastebin.com/F362xGyP

  • Can you provide a reproducible example? (some example data and the code that reproduces the error)
    – joris
    Aug 26, 2015 at 20:06
  • The error occurs with just the headers which I've put in a pastebin above. the columns have some lengthy names due to some pivots that are done to the source table
    – lathomas64
    Aug 26, 2015 at 20:44
  • There are some special characters ó from some spanish data source names that end up here when attempting to create a pivot table. I would like to be able to handle this in the to_sql call as opposed to having to strip the characters from the headers.
    – lathomas64
    Aug 26, 2015 at 21:11
  • The headers are used as column names for the database. Even when a database software allows special characters in column names I'd be careful to just use a subset of ASCII which would be safe for unquoted identifiers. Looking at the headers this shouldn't go into one database table anyway, at least if you follow the usual normalisation guidelines. The headers are containing data.
    – BlackJack
    Aug 27, 2015 at 10:59

3 Answers 3


I experienced the exact same issue with the combination pymysql and pandas.to_sql

Update, here is what worked for me:

Instead of passing the charset as an argument, try attaching it directly to the connection string:

connect_string = 'mysql+pymysql://{}:{}@{}:{}/{}?charset=utf8'.format(DB_USER, DB_PASS, DB_HOST, DB_PORT, DATABASE)

The problem seems to happen in pymysql and the cause for the error seemingly is that the encoding you define is not properly forwarded and set when the pymsql connection is set.

For the sake of debugging, I harcoded

encoding = 'utf-8

in the pymysql _do_execute_manyfunction and that explained it to me.


I experienced a similar problem on python 3.7.: UnicodeEncodeError: 'charmap' codec can't encode character '\ufffd' in position 0: character maps to

It was the way I defined my engine. I had charset defined to utf-8 in my engine, yet it did not pick it up:

# Connecting to the database(reference for checkout_listener not added)
def MysqlConnection(DbName):
    DB_TYPE = 'mysql'
    DB_DRIVER = 'mysqldb'
    DB_NAME = DbName
    POOL_SIZE = 100
    CHARSET = 'utf-8'

    SQLALCHEMY_DATABASE_URI = '%s+%s://%s:%s@%s:%s/%s?%s' % (DB_TYPE, DB_DRIVER, DB_USER,
                                                             DB_PASS, DB_HOST, DB_PORT, DB_NAME, CHARSET)
    ENGINE1 = create_engine(
        SQLALCHEMY_DATABASE_URI, pool_size=POOL_SIZE, pool_recycle=3600, echo=False)
    event.listen(ENGINE1, 'checkout', checkout_listener)
    return (ENGINE1);

This worked fine on python 2 but on python 3, the charmap error would occur. The only solution I found was to write engine in a different manner, and add charset to the definition string:

connection_string = f"{mysql_user}:{mysql_password}@localhost:3306/{db_name}?charset=utf8"
engine = create_engine(f'mysql://{connection_string}')

I have solved the issue changing the character set in MySQL database (UTF-8) and adding this to the pymysql connection: charset='utf8'.

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