The documentation for Pandas has numerous examples of best practices for working with data stored in various formats.

However, I am unable to find any good examples for working with databases like MySQL for example.

Can anyone point me to links or give some code snippets of how to convert query results using mysql-python to data frames in Pandas efficiently ?


13 Answers 13


As Wes says, io/sql's read_sql will do it, once you've gotten a database connection using a DBI compatible library. We can look at two short examples using the MySQLdb and cx_Oracle libraries to connect to Oracle and MySQL and query their data dictionaries. Here is the example for cx_Oracle:

import pandas as pd
import cx_Oracle

ora_conn = cx_Oracle.connect('your_connection_string')
df_ora = pd.read_sql('select * from user_objects', con=ora_conn)    
print 'loaded dataframe from Oracle. # Records: ', len(df_ora)

And here is the equivalent example for MySQLdb:

import MySQLdb
mysql_cn= MySQLdb.connect(host='myhost', 
                port=3306,user='myusername', passwd='mypassword', 
df_mysql = pd.read_sql('select * from VIEWS;', con=mysql_cn)    
print 'loaded dataframe from MySQL. records:', len(df_mysql)

For recent readers of this question: pandas have the following warning in their docs for version 14.0:

Warning: Some of the existing functions or function aliases have been deprecated and will be removed in future versions. This includes: tquery, uquery, read_frame, frame_query, write_frame.


Warning: The support for the ‘mysql’ flavor when using DBAPI connection objects has been deprecated. MySQL will be further supported with SQLAlchemy engines (GH6900).

This makes many of the answers here outdated. You should use sqlalchemy:

from sqlalchemy import create_engine
import pandas as pd
engine = create_engine('dialect://user:pass@host:port/schema', echo=False)
f = pd.read_sql_query('SELECT * FROM mytable', engine, index_col = 'ID')
  • loading a table with 133 rows and 7 columns takes around 30 secs.. can you give some insights regarding why is that?
    – idoda
    Sep 16, 2014 at 13:43
  • @idoda [in general this is not the question's topic and it's better to ask a new question so you'd get more opinions]. Are you sure this is not a matter of request delay? Is simply sending the query and retrieving the results significantly faster?
    – Korem
    Sep 16, 2014 at 13:58
  • @Korem I did thought about opening a new one, but I wanted to make sure it is not a trivial one first. When I use an mySql client (Sequel pro) and query the database, reuslts come up much faster. When you say "simply sending and then retrieving", is that what you mean? (using a client)
    – idoda
    Sep 17, 2014 at 8:33
  • @idoda I mean comparing the time it takes to execute engine.execute("select * FROM mytable") with the time it takes to execute pd.read_sql_query('SELECT * FROM mytable', engine)
    – Korem
    Sep 17, 2014 at 10:45
  • Can one pass a sqlalchemy query (session.query as in my answer below) directly to a pandas method? That would be a ripper!
    – dmvianna
    Feb 5, 2015 at 2:06

For the record, here is an example using a sqlite database:

import pandas as pd
import sqlite3

with sqlite3.connect("whatever.sqlite") as con:
    sql = "SELECT * FROM table_name"
    df = pd.read_sql_query(sql, con)
    print df.shape
  • 1
    You can specify the column to use as an index by specifying index_col='timestamp' in frame_query. Jun 1, 2013 at 13:25

I prefer to create queries with SQLAlchemy, and then make a DataFrame from it. SQLAlchemy makes it easier to combine SQL conditions Pythonically if you intend to mix and match things over and over.

from sqlalchemy.ext.declarative import declarative_base
from sqlalchemy import Table
from sqlalchemy import create_engine
from sqlalchemy.orm import sessionmaker
from pandas import DataFrame
import datetime

# We are connecting to an existing service
engine = create_engine('dialect://user:pwd@host:port/db', echo=False)
Session = sessionmaker(bind=engine)
session = Session()
Base = declarative_base()

# And we want to query an existing table
tablename = Table('tablename', 

# These are the "Where" parameters, but I could as easily 
# create joins and limit results
us = tablename.c.country_code.in_(['US','MX'])
dc = tablename.c.locn_name.like('%DC%')
dt = tablename.c.arr_date >= datetime.date.today() # Give me convenience or...

q = session.query(tablename).\
            filter(us & dc & dt) # That's where the magic happens!!!

def querydb(query):
    Function to execute query and return DataFrame.
    df = DataFrame(query.all());
    df.columns = [x['name'] for x in query.column_descriptions]
    return df


MySQL example:

import MySQLdb as db
from pandas import DataFrame
from pandas.io.sql import frame_query

database = db.connect('localhost','username','password','database')
data     = frame_query("SELECT * FROM data", database)
  • 7
    frame_query is now deprecated. Now use pd.read_sql(query, db) instead. Apr 24, 2015 at 22:43

The same syntax works for Ms SQL server using podbc also.

import pyodbc
import pandas.io.sql as psql

cnxn = pyodbc.connect('DRIVER={SQL Server};SERVER=servername;DATABASE=mydb;UID=username;PWD=password') 
cursor = cnxn.cursor()
sql = ("""select * from mytable""")

df = psql.frame_query(sql, cnxn)

And this is how you connect to PostgreSQL using psycopg2 driver (install with "apt-get install python-psycopg2" if you're on Debian Linux derivative OS).

import pandas.io.sql as psql
import psycopg2

conn = psycopg2.connect("dbname='datawarehouse' user='user1' host='localhost' password='uberdba'")

q = """select month_idx, sum(payment) from bi_some_table"""

df3 = psql.frame_query(q, conn)

For Sybase the following works (with http://python-sybase.sourceforge.net)

import pandas.io.sql as psql
import Sybase

df = psql.frame_query("<Query>", con=Sybase.connect("<dsn>", "<user>", "<pwd>"))

pandas.io.sql.frame_query is deprecated. Use pandas.read_sql instead.


import the module

import pandas as pd
import oursql


sql="Select customerName, city,country from customers order by customerName,country,city"
df_mysql = pd.read_sql(sql,conn)
print df_mysql

That works just fine and using pandas.io.sql frame_works (with the deprecation warning). Database used is the sample database from mysql tutorial.


This should work just fine.

import MySQLdb as mdb
import pandas as pd
con = mdb.connect(‘’, ‘root’, ‘password’, ‘database_name’);
with con:
 cur = con.cursor()
 cur.execute(“select random_number_one, random_number_two, random_number_three from randomness.a_random_table”)
 rows = cur.fetchall()
 df = pd.DataFrame( [[ij for ij in i] for i in rows] )
 df.rename(columns={0: ‘Random Number One’, 1: ‘Random Number Two’, 2: ‘Random Number Three’}, inplace=True);

This helped for me for connecting to AWS MYSQL(RDS) from python 3.x based lambda function and loading into a pandas DataFrame

import json
import boto3
import pymysql
import pandas as pd
user = 'username'
password = 'XXXXXXX'
client = boto3.client('rds')
def lambda_handler(event, context):
    conn = pymysql.connect(host='xxx.xxxxus-west-2.rds.amazonaws.com', port=3306, user=user, passwd=password, db='database name', connect_timeout=5)
    df= pd.read_sql('select * from TableName limit 10',con=conn)
    # TODO implement
    #return {
    #    'statusCode': 200,
    #    'df': df

For Postgres users

import psycopg2
import pandas as pd

conn = psycopg2.connect("database='datawarehouse' user='user1' host='localhost' password='uberdba'")

customers = 'select * from customers'

customers_df = pd.read_sql(customers,conn)

  • 1
    Could you point out the difference to the answer of @Will and why your solution should be chosen?
    – Sebastian
    Mar 6, 2020 at 9:31

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.