


Python uses Pandas to read CSV files and write them to MySQL
Summarize the various problems I encountered recently when using Python to read and write CSV to save the database.
Recommended related mysql video tutorials: "mysql tutorial"
Code:
reload(sys) sys.setdefaultencoding('utf-8') host = '127.0.0.1' port = 3306 db = 'world' user = 'root' password = '123456' con = MySQLdb.connect(host=host,charset="utf8",port=port,db=db,user=user,passwd=password) try: df = pd.read_sql(sql=r'select * from city', con=con) df.to_sql('test',con=con,flavor='mysql') except Exception as e: print(e.message)
If nothing else happens, it will print Say something: database flavor MySQL is not supported
I found the answer on stackoverflow: The flavor 'mysql' is deprecated in pandas version 0.19.
Let's try another way:
reload(sys) sys.setdefaultencoding('utf-8') host = '127.0.0.1' port = 3306 db = 'world' user = 'root' password = '123456' engine = create_engine(str(r"mysql+mysqldb://%s:" + '%s' + "@%s/%s") % (user, password, host, db)) try: df = pd.read_sql(sql=r'select * from city', con=engine) df.to_sql('test',con=engine,if_exists='append',index=False) except Exception as e: print(e.message)
After running, ok, you can save the index parameter to indicate whether to store the index of the DataFrame as a column. Generally speaking, it is not needed, so the value is False
Now it seems that the problem has been solved, but there is still There is a small problem.
If I have a csv file containing Chinese (my Window):
name age class
Xiao Ming 15 first grade
Xiao Zhang 18 third grade
engine = create_engine(str(r"mysql+mysqldb://%s:" + '%s' + "@%s/%s") % (user, password, host, db)) try: df = pd.read_csv(r'C:\Users\xx\Desktop\data.csv') print(df) df.to_sql('test', con=engine, if_exists='append', index=False) except Exception as e: print(e.message)
After printing, the characters are garbled . It is best to specify the encoding when we read csv. My local GBK:
df = pd.read_csv(r'C:\Users\xx\Desktop\data.csv',encoding='gbk')
We can print information normally, but an error is reported again. The error is as follows:
UnicodeEncodeError: 'latin-1' codec can't encode characters in position 0-1: ordinal not in range(256)
It's still an encoding problem. The reason is that we didn't specify the encoding when we saved it to the database. I was also fooled when I was trying to solve this problem. Everything on the Internet is available. I won’t talk about the process, but look at the code:
engine = create_engine(str(r"mysql+mysqldb://%s:" + '%s' + "@%s/%s?charset=utf8") % (user, password, host, db))
Solved
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