I have downloaded some datas as a sqlite database (data.db) and I want to open this database in python and then convert it into pandas dataframe.

This is so far I have done

import sqlite3
import pandas    
dat = sqlite3.connect('data.db') #connected to database with out error
pandas.DataFrame.from_records(dat, index=None, exclude=None, columns=None, coerce_float=False, nrows=None)

But its throwing this error

Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
  File "/usr/local/lib/python2.7/dist-packages/pandas/core/frame.py", line 980, in from_records
  File "/usr/local/lib/python2.7/dist-packages/pandas/core/frame.py", line 5353, in _to_arrays
    if not len(data):
TypeError: object of type 'sqlite3.Connection' has no len()

How to convert sqlite database to pandas dataframe

7 Answers 7


Despite sqlite being part of the Python Standard Library and is a nice and easy interface to SQLite databases, the Pandas tutorial states:

Note In order to use read_sql_table(), you must have the SQLAlchemy optional dependency installed.

But Pandas still supports sqlite3 access if you want to avoid installing SQLAlchemy:

import sqlite3
import pandas as pd
# Create your connection.
cnx = sqlite3.connect('file.db')

df = pd.read_sql_query("SELECT * FROM table_name", cnx)

As stated here, but you need to know the name of the used table in advance.

  • 11
    You should close the sqlite3 connection afterwards with: cnx.commit() and then: cnx.close()
    – PV8
    Jan 10, 2020 at 14:44
  • The important disctinction here is to use read_sql_query in favor of read_sql_table.
    – niid
    Feb 11 at 12:51

The line

data = sqlite3.connect('data.db')

opens a connection to the database. There are no records queried up to this. So you have to execute a query afterward and provide this to the pandas DataFrame constructor.

It should look similar to this

import sqlite3
import pandas as pd

dat = sqlite3.connect('data.db')
query = dat.execute("SELECT * From <TABLENAME>")
cols = [column[0] for column in query.description]
results= pd.DataFrame.from_records(data = query.fetchall(), columns = cols)

I am not really firm with SQL commands, so you should check the correctness of the query. should be the name of the table in your database.


Parsing a sqlite .db into a dictionary of dataframes without knowing the table names:

def read_sqlite(dbfile):
    import sqlite3
    from pandas import read_sql_query, read_sql_table

    with sqlite3.connect(dbfile) as dbcon:
        tables = list(read_sql_query("SELECT name FROM sqlite_master WHERE type='table';", dbcon)['name'])
        out = {tbl : read_sql_query(f"SELECT * from {tbl}", dbcon) for tbl in tables}

   return out

Search sqlalchemy, engine and database name in google (sqlite in this case):

import pandas as pd
import sqlalchemy

db_name = "data.db"
table_name = "LITTLE_BOBBY_TABLES"

engine = sqlalchemy.create_engine("sqlite:///%s" % db_name, execution_options={"sqlite_raw_colnames": True})
df = pd.read_sql_table(table_name, engine)
  • 1
    I run into a DBAPI error when I try that. My DB was originally created by sqlite3. OperationalError: (sqlite3.OperationalError) unable to open database file (Background on this error at: sqlalche.me/e/e3q8)
    – sparrow
    Jun 11, 2018 at 18:51
  • 1
    Little Bobby Tables is at it once again.
    – EA304GT
    Apr 29 at 18:18

I wrote a piece of code up that saves tables in a database file such as .sqlite or .db and creates an excel file out of it with each table as a sheet or makes individual tables into csvs.

Note: You don't need to know the table names in advance!

import os, fnmatch
import sqlite3
import pandas as pd

#creates a directory without throwing an error
def create_dir(dir):
  if not os.path.exists(dir):
    print("Created Directory : ", dir)
    print("Directory already existed : ", dir)
  return dir

#finds files in a directory corresponding to a regex query
def find(pattern, path):
    result = []
    for root, dirs, files in os.walk(path):
        for name in files:
            if fnmatch.fnmatch(name, pattern):
                result.append(os.path.join(root, name))
    return result

#convert sqlite databases(.db,.sqlite) to pandas dataframe(excel with each table as a different sheet or individual csv sheets)
def save_db(dbpath=None,excel_path=None,csv_path=None,extension="*.sqlite",csvs=True,excels=True):
    if (excels==False and csvs==False):
      print("Atleast one of the parameters need to be true: csvs or excels")
      return -1

    #little code to find files by extension
    if dbpath==None:
      if len(files)>1:
        print("Multiple files found! Selecting the first one found!")
        print("To locate your file, set dbpath=<yourpath>")
      dbpath = find(extension,os.getcwd())[0] if dbpath==None else dbpath
      print("Reading database file from location :",dbpath)

    #path handling

    file_name=os.path.splitext(base_name)[0] #firstname without .
    exten=os.path.splitext(base_name)[-1]   #.file_extension


    excel_path=os.path.join(main_path,"Excel_Multiple_Sheets.xlsx") if excel_path==None else excel_path
    csv_path=main_path if csv_path==None else csv_path

    db = sqlite3.connect(dbpath)
    cursor = db.cursor()
    cursor.execute("SELECT name FROM sqlite_master WHERE type='table';")
    tables = cursor.fetchall()
    print(len(tables),"Tables found :")

    if excels==True:
      #for writing to excel(xlsx) we will be needing this!
        import XlsxWriter
      except ModuleNotFoundError:
        !pip install XlsxWriter

    if (excels==True and csvs==True):
      writer = pd.ExcelWriter(excel_path, engine='xlsxwriter')
      for table_name in tables:
          table_name = table_name[0]
          table = pd.read_sql_query("SELECT * from %s" % table_name, db)
          print("Parsing Excel Sheet ",i," : ",table_name)
          table.to_excel(writer, sheet_name=table_name, index=False)
          print("Parsing CSV File ",i," : ",table_name)
          table.to_csv(os.path.join(csv_path,table_name + '.csv'), index_label='index')


    elif excels==True:
      writer = pd.ExcelWriter(excel_path, engine='xlsxwriter')
      for table_name in tables:
          table_name = table_name[0]
          table = pd.read_sql_query("SELECT * from %s" % table_name, db)
          print("Parsing Excel Sheet ",i," : ",table_name)
          table.to_excel(writer, sheet_name=table_name, index=False)


    elif csvs==True:
      for table_name in tables:
          table_name = table_name[0]
          table = pd.read_sql_query("SELECT * from %s" % table_name, db)
          print("Parsing CSV File ",i," : ",table_name)
          table.to_csv(os.path.join(csv_path,table_name + '.csv'), index_label='index')
    return 0

If data.db is your SQLite database and table_name is one of its tables, then you can do:

import pandas as pd
df = pd.read_sql_table('table_name', 'sqlite:///data.db')

No other imports needed.

  • 2
    Note for absolute paths, there are four slashes: 'sqlite:////tmp/data.db' Aug 16 at 3:29

i have stored my data in database.sqlite table name is Reviews

import sqlite3

data=pd.read_sql_query("SELECT * FROM Reviews",con)
  • 5
    How is this answer different from the one above (marked answer)? The only difference I see is that you're printing the result and that you haven't imported pandas which you should have Feb 15, 2019 at 15:43

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