60

Not sure what I'm missing here but this code runs without any error message, but there's nothing in the table. I'm loading a CSV values in three columns into mysql table

import csv
import MySQLdb

mydb = MySQLdb.connect(host='localhost',
    user='root',
    passwd='',
    db='mydb')
cursor = mydb.cursor()

csv_data = csv.reader(file('students.csv'))
for row in csv_data:

    cursor.execute('INSERT INTO testcsv(names, \
          classes, mark )' \
          'VALUES("%s", "%s", "%s")', 
          row)
#close the connection to the database.
cursor.close()
print "Done"

Would appreciate if someone else could have a look.

7 Answers 7

86

I think you have to do mydb.commit() all the insert into.

Something like this

import csv
import MySQLdb

mydb = MySQLdb.connect(host='localhost',
    user='root',
    passwd='',
    db='mydb')
cursor = mydb.cursor()

csv_data = csv.reader(file('students.csv'))
for row in csv_data:

    cursor.execute('INSERT INTO testcsv(names, \
          classes, mark )' \
          'VALUES("%s", "%s", "%s")', 
          row)
#close the connection to the database.
mydb.commit()
cursor.close()
print "Done"
5
  • Thanks that works :) But do you know why the values are all in single quotes in the database? Apr 14, 2012 at 15:48
  • 7
    Try "insert into testcsv(names, classes, mark) values(%s, %s, %s)", row Apr 14, 2012 at 15:51
  • Danke, if you have any other problems just post a new question :D Apr 14, 2012 at 15:57
  • 1
    @JakobBowyer how ignore first line from csv. Nov 23, 2016 at 13:14
  • For this to work you will need to figure out and create the table with the right schema before loading any CSV. Also this approach will give you many problems if your data includes numeric columns and/or you have missing (NULL) values in your data. Those problem are automagically handled with the pandas/sqlalchemy approach bellow. Jan 11, 2022 at 21:27
22

If you do not have the pandas and sqlalchemy libraries, install them using pip

pip install pandas
pip install sqlalchemy

We can use pandas and sqlalchemy to directly insert into the database

import csv
import pandas as pd
from sqlalchemy import create_engine, types

engine = create_engine('mysql://root:*Enter password here*@localhost/*Enter Databse name here*') # enter your password and database names here

df = pd.read_csv("Excel_file_name.csv",sep=',',quotechar='\'',encoding='utf8') # Replace Excel_file_name with your excel sheet name
df.to_sql('Table_name',con=engine,index=False,if_exists='append') # Replace Table_name with your sql table name
2
11

The above answer seems good. But another way of doing this is adding the auto commit option along with the db connect. This automatically commits every other operations performed in the db, avoiding the use of mentioning sql.commit() every time.

 mydb = MySQLdb.connect(host='localhost',
        user='root',
        passwd='',
        db='mydb',autocommit=true)
5
  from __future__ import print_function
import csv
import MySQLdb

print("Enter  File  To Be Export")
conn = MySQLdb.connect(host="localhost", port=3306, user="root", passwd="", db="database")
cursor = conn.cursor()
#sql = 'CREATE DATABASE test1'
sql ='''DROP TABLE IF EXISTS `test1`; CREATE TABLE test1 (policyID int, statecode varchar(255), county varchar(255))'''
cursor.execute(sql)

with open('C:/Users/Desktop/Code/python/sample.csv') as csvfile:
    reader = csv.DictReader(csvfile, delimiter = ',')
    for row in reader:
        print(row['policyID'], row['statecode'], row['county'])
        # insert
        conn = MySQLdb.connect(host="localhost", port=3306, user="root", passwd="", db="database")
        sql_statement = "INSERT INTO test1(policyID ,statecode,county) VALUES (%s,%s,%s)"
        cur = conn.cursor()
        cur.executemany(sql_statement,[(row['policyID'], row['statecode'], row['county'])])
        conn.escape_string(sql_statement)
        conn.commit()
5

using pymsql if it helps

import pymysql
import csv
db = pymysql.connect("localhost","root","12345678","data" )

cursor = db.cursor()
csv_data = csv.reader(open('test.csv'))
next(csv_data)
for row in csv_data:
    cursor.execute('INSERT INTO PM(col1,col2) VALUES(%s, %s)',row)

db.commit()
cursor.close()
5
  • Thanks for the tip though, but this was asked over 8 years ago :) May 16, 2020 at 20:26
  • @HelenNeely agreed then its time to select my answer as correct answer, as open(file) wont work :P
    – user6882757
    May 18, 2020 at 15:22
  • pretty primitive considering easier options available using pandas. Jul 7, 2020 at 6:34
  • @MurtazaHaji No, pretty straightforward, if we don't want to use pandas or/and sqalchemy or sqlite.
    – Geeocode
    Aug 30, 2020 at 19:41
  • 3
    @HelenNeely regardless of when a question was asked, SO serves as a continual reference for people who have the same question as you did 8 years ago. Therefore it makes sense to continually provide new answers as the existing answers become irrelevant.
    – brycejl
    Sep 4, 2020 at 15:58
1

If it is a pandas data frame you could do:

Sending the data

csv_data.to_sql=(con=mydb, name='<the name of your table>',
  if_exists='replace', flavor='mysql')

to avoid the use of the for.

2
  • 2
    It seems you quoted from a manual? Add a reference in such cases please, so people can read on in case they're interested (and to give proper reference to the original authors). Oct 8, 2016 at 16:43
  • This will not work if index name of your dataframe is not same as column name in database table. May 25, 2018 at 12:34
0

Fastest way is to use MySQL bulk loader by "load data infile" statement. It is the fastest way by far than any way you can come up with in Python. If you have to use Python, you can call statement "load data infile" from Python itself.

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