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Any help on this problem will be greatly appreciated. So basically I want to run a query to my SQL database and store the returned data as Pandas data structure. I have attached code for query. I am reading the documentation on Pandas, but I have problem to identify the return type of my query. I tried to print the query result, but it doesn't give any useful information. Thanks!!!!

from sqlalchemy import create_engine


engine2 = create_engine('mysql://THE DATABASE I AM ACCESSING')
connection2 = engine2.connect()
dataid = 1022
resoverall = connection2.execute("SELECT sum(BLABLA) AS BLA, sum(BLABLABLA2) AS BLABLABLA2, sum(SOME_INT) AS SOME_INT, sum(SOME_INT2) AS SOME_INT2, 100*sum(SOME_INT2)/sum(SOME_INT) AS ctr, sum(SOME_INT2)/sum(SOME_INT) AS cpc FROM daily_report_cooked WHERE campaign_id = '%s'"%dataid)

So I sort of want to understand what's the format/datatype of my variable "resoverall" and how to put it with PANDAS data structure.

share|improve this question
    
Basically, what is the structure/type of "resoverall" variable and how to convert it into the Pandas data structure. –  user1613017 Aug 21 '12 at 1:03
    
Pandas sounds quite interesting, I hadn't heard about it before, but this question barely makes any sense. Can you try and clarify what you mean by "doesn't give any useful information"? –  tadman Aug 21 '12 at 6:46
    
Because the query I have executed give a return, just wondering how should I manipulate this return and make it into a pandas data structure. I am very new to python and therefore doesn't have much knowledge, like what we do in PHP is just to do a sql_fetch_array and we have "usable" data. =) –  user1613017 Aug 21 '12 at 23:01

7 Answers 7

up vote 7 down vote accepted

Here's the shortest code that will do the job:

from pandas import DataFrame
df = DataFrame(resoverall.fetchall())
df.columns = resoverall.keys()

You can go fancier and parse the types as in Paul's answer.

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Thank you so much! =) –  user1613017 Aug 21 '12 at 23:03

Via mikebmassey from a similar question

import pyodbc
import pandas.io.sql as psql

cnxn = pyodbc.connect(connection_info) 
cursor = cnxn.cursor()
sql = "SELECT * FROM TABLE"

df = psql.frame_query(sql, cnxn)
cnxn.close()
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This seems to be the best way to do it, as you don't need to manually use .keys() to get the column index. Probably Daniel's answer was written before this method existed. You can also use pandas.io.sql.read_frame() –  RobinL Oct 13 '13 at 13:54

If you are using SQLAlchemy's ORM rather than the expression language, you might find yourself wanting to convert an object of type sqlalchemy.orm.query.Query to a Pandas data frame.

Here is one way to do it, starting with a Query object called 'query':

data_records = [rec.__dict__ for rec in query.all()]
df = pandas.DataFrame.from_records(data_records)

I'm curious to know if there's a better approach, but this did the trick for me in two lines.

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Edit 2014-09-30:

pandas now has a read_sql function. You definitely want to use that instead.

Original answer:

I can't help you with SQLAlchemy -- I always use pyodbc, MySQLdb, or psychopg2 as needed. But when doing so, a function as simple as the one below tends to suit my needs:

import pydobc
import numpy as np
import pandas

cnn, cur = myConnectToDBfunction()
cmd = "SELECT * FROM myTable"
cur.execute(cmd)
dataframe = __processCursor(cur, dataframe=True)

def __processCursor(cur, dataframe=False, index=None):
    '''
    Processes a database cursor with data on it into either
    a structured numpy array or a pandas dataframe.

    input:
    cur - a pyodbc cursor that has just received data
    dataframe - bool. if false, a numpy record array is returned
                if true, return a pandas dataframe
    index - list of column(s) to use as index in a pandas dataframe
    '''
    datatypes = []
    colinfo = cur.description
    for col in colinfo:
        if col[1] == unicode:
            datatypes.append((col[0], 'U%d' % col[3]))
        elif col[1] == str:
            datatypes.append((col[0], 'S%d' % col[3]))
        elif col[1] in [float, decimal.Decimal]:
            datatypes.append((col[0], 'f4'))
        elif col[1] == datetime.datetime:
            datatypes.append((col[0], 'O4'))
        elif col[1] == int:
            datatypes.append((col[0], 'i4'))

    data = []
    for row in cur:
        data.append(tuple(row))

    array = np.array(data, dtype=datatypes)
    if dataframe:
        output = pandas.DataFrame.from_records(array)

        if index is not None:
            output = output.set_index(index)

    else:
        output = array

    return output
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Hey Paul, thanks, the code is really helpful! –  user1613017 Aug 22 '12 at 0:46

resoverall is a sqlalchemy ResultProxy object. You can read more about it in the sqlalchemy docs, the latter explains basic usage of working with Engines and Connections. Important here is that resoverall is dict like.

Pandas likes dict like objects to create its data structures, see the online docs

Good luck with sqlalchemy and pandas.

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Thanks!!! I will read more on the documents... –  user1613017 Aug 21 '12 at 23:02

This question is old, but I wanted to add my two-cents. I read the question as " I want to run a query to my [my]SQL database and store the returned data as Pandas data structure [DataFrame]."

From the code it looks like you mean mysql database and assume you mean pandas DataFrame.

import MySQLdb as mdb
import pandas.io.sql as sql
from pandas import *

conn = mdb.connect('<server>','<user>','<pass>','<db>');
df = sql.read_frame('<query>', conn)

For example,

conn = mdb.connect('localhost','myname','mypass','testdb');
df = sql.read_frame('select * from testTable', conn)

This will import all rows of testTable into a DataFrame.

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Like Nathan, I often want to dump the results of a sqlalchemy or sqlsoup Query into a Pandas data frame. My own solution for this is:

query = session.query(tbl.Field1, tbl.Field2)
DataFrame(query.all(), columns=[column['name'] for column in query.column_descriptions])
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