Skip to main content

a db package that doesn't suck

Project description

Blog Post

What is it?

db.py is an easier way to interact with your databases. It makes it easier to explore tables, columns, views, etc. It puts the emphasis on user interaction, information display, and providing easy to use helper functions.

db.py uses `pandas <http://pandas.pydata.org/>`__ to manage data, so if you’re already using pandas, db.py should feel pretty natural. It’s also fully compatible with the IPython Notebook, so not only is db.py extremely functional, it’s also pretty.

Execute queries

>>> db.query_from_file("myscript.sql")
       _id                    datetime           user_id  n
0  1290000  10/Jun/2014:18:21:27 +0000  0000015b37cd0964  1
1  9120009  23/Jun/2014:02:11:21 +0000  00006e01a6419822  1
2  1683874  23/Jun/2014:02:11:48 +0000  00006e01a6419822  2
3  2562153  23/Jun/2014:02:12:57 +0000  00006e01a6419822  3
4   393019  14/Jun/2014:16:05:18 +0000  000099d569e3a216  1
5  3542568  14/Jun/2014:16:06:02 +0000  000099d569e3a216  2

Fully compatible with predictive type

>>> db.tables.
db.tables.Album          db.tables.Customer       db.tables.Genre          db.tables.InvoiceLine    db.tables.Playlist       db.tables.Track
db.tables.Artist         db.tables.Employee       db.tables.Invoice        db.tables.MediaType      db.tables.PlaylistTrack  db.tables.tables

Friendly displays

>>> db.tables.Track
+-------------------------------------------------------------+
|                            Album                            |
+----------+---------------+-----------------+----------------+
| Column   | Type          | Foreign Keys    | Reference Keys |
+----------+---------------+-----------------+----------------+
| AlbumId  | INTEGER       |                 | Track.AlbumId  |
| Title    | NVARCHAR(160) |                 |                |
| ArtistId | INTEGER       | Artist.ArtistId |                |
+----------+---------------+-----------------+----------------+

Directly integrated with pandas

>>> db.tables.Track.head()
   TrackId                                     Name  AlbumId  MediaTypeId  \
0        1  For Those About To Rock (We Salute You)        1            1
1        2                        Balls to the Wall        2            2
2        3                          Fast As a Shark        3            2
3        4                        Restless and Wild        3            2
4        5                     Princess of the Dawn        3            2
5        6                    Put The Finger On You        1            1

   GenreId                                           Composer  Milliseconds  \
0        1          Angus Young, Malcolm Young, Brian Johnson        343719
1        1                                               None        342562
2        1  F. Baltes, S. Kaufman, U. Dirkscneider & W. Ho...        230619
3        1  F. Baltes, R.A. Smith-Diesel, S. Kaufman, U. D...        252051
4        1                         Deaffy & R.A. Smith-Diesel        375418
5        1          Angus Young, Malcolm Young, Brian Johnson        205662

      Bytes  UnitPrice
0  11170334       0.99
1   5510424       0.99
2   3990994       0.99
3   4331779       0.99
4   6290521       0.99
5   6713451       0.99

Search your schema

>>> db.find_column("*Id*")
+---------------+---------------+---------+
| Table         |  Column Name  | Type    |
+---------------+---------------+---------+
| Album         |    AlbumId    | INTEGER |
| Album         |    ArtistId   | INTEGER |
| Artist        |    ArtistId   | INTEGER |
| Customer      |  SupportRepId | INTEGER |
| Customer      |   CustomerId  | INTEGER |
| Employee      |   EmployeeId  | INTEGER |
| Genre         |    GenreId    | INTEGER |
| Invoice       |   InvoiceId   | INTEGER |
| Invoice       |   CustomerId  | INTEGER |
| InvoiceLine   |   InvoiceId   | INTEGER |
| InvoiceLine   |    TrackId    | INTEGER |
| InvoiceLine   | InvoiceLineId | INTEGER |
| MediaType     |  MediaTypeId  | INTEGER |
| Playlist      |   PlaylistId  | INTEGER |
| PlaylistTrack |    TrackId    | INTEGER |
| PlaylistTrack |   PlaylistId  | INTEGER |
| Track         |  MediaTypeId  | INTEGER |
| Track         |    TrackId    | INTEGER |
| Track         |    AlbumId    | INTEGER |
| Track         |    GenreId    | INTEGER |
+---------------+---------------+---------+

IPython Notebook friendly image0

Quickstart

Installation

db.py is on PyPi.

$ pip install db.py

The database libraries being used under the hood are optional dependencies (if you use mysql, you probably don’t care about installing psycopg2). Based on the databases you’re using, you’ll need one (or many) of the following:

  • PostgreSQL: psycopg2. Windows

  • Redshift: psycopg2. Redshift is a flavor of PostgreSQL.

  • MySQL: MySQLdb

  • SQLite: sqlite3. Should be installed already.

  • MS SQL: TBD. Suggestions welcome! https://github.com/yhat/db.py/issues

Demo

>>> from db import DemoDB # or connect to your own using DB. see below
>>> db = DemoDB() # comes from: http://chinookdatabase.codeplex.com/
>>> db.tables
+---------------+----------------------------------------------------------------------------------+
| Table         | Columns                                                                          |
+---------------+----------------------------------------------------------------------------------+
| Album         | AlbumId, Title, ArtistId                                                         |
| Artist        | ArtistId, Name                                                                   |
| Customer      | CustomerId, FirstName, LastName, Company, Address, City, State, Country, PostalC |
|               | ode, Phone, Fax, Email, SupportRepId                                             |
| Employee      | EmployeeId, LastName, FirstName, Title, ReportsTo, BirthDate, HireDate, Address, |
|               |  City, State, Country, PostalCode, Phone, Fax, Email                             |
| Genre         | GenreId, Name                                                                    |
| Invoice       | InvoiceId, CustomerId, InvoiceDate, BillingAddress, BillingCity, BillingState, B |
|               | illingCountry, BillingPostalCode, Total                                          |
| InvoiceLine   | InvoiceLineId, InvoiceId, TrackId, UnitPrice, Quantity                           |
| MediaType     | MediaTypeId, Name                                                                |
| Playlist      | PlaylistId, Name                                                                 |
| PlaylistTrack | PlaylistId, TrackId                                                              |
| Track         | TrackId, Name, AlbumId, MediaTypeId, GenreId, Composer, Milliseconds, Bytes, Uni |
|               | tPrice                                                                           |
+---------------+----------------------------------------------------------------------------------+
>>> db.tables.Customer
+------------------------------------------------------------------------+
|                                Customer                                |
+--------------+--------------+---------------------+--------------------+
| Column       | Type         | Foreign Keys        | Reference Keys     |
+--------------+--------------+---------------------+--------------------+
| CustomerId   | INTEGER      |                     | Invoice.CustomerId |
| FirstName    | NVARCHAR(40) |                     |                    |
| LastName     | NVARCHAR(20) |                     |                    |
| Company      | NVARCHAR(80) |                     |                    |
| Address      | NVARCHAR(70) |                     |                    |
| City         | NVARCHAR(40) |                     |                    |
| State        | NVARCHAR(40) |                     |                    |
| Country      | NVARCHAR(40) |                     |                    |
| PostalCode   | NVARCHAR(10) |                     |                    |
| Phone        | NVARCHAR(24) |                     |                    |
| Fax          | NVARCHAR(24) |                     |                    |
| Email        | NVARCHAR(60) |                     |                    |
| SupportRepId | INTEGER      | Employee.EmployeeId |                    |
+--------------+--------------+---------------------+--------------------+
>>> db.tables.Customer.sample()
   CustomerId  FirstName    LastName  \
0           4      Bjørn      Hansen
1          26    Richard  Cunningham
2           1       Luís   Gonçalves
3          21      Kathy       Chase
4           6     Helena        Holý
5          14       Mark     Philips
6          49  Stanisław      Wójcik
7          19        Tim       Goyer
8          45   Ladislav      Kovács
9           8       Daan     Peeters

                                            Company  \
0                                              None
1                                              None
2  Embraer - Empresa Brasileira de Aeronáutica S.A.
3                                              None
4                                              None
5                                             Telus
6                                              None
7                                        Apple Inc.
8                                              None
9                                              None

                           Address                 City State         Country  \
0                 Ullevålsveien 14                 Oslo  None          Norway
1              2211 W Berry Street           Fort Worth    TX             USA
2  Av. Brigadeiro Faria Lima, 2170  São José dos Campos    SP          Brazil
3                 801 W 4th Street                 Reno    NV             USA
4                    Rilská 3174/6               Prague  None  Czech Republic
5                   8210 111 ST NW             Edmonton    AB          Canada
6                     Ordynacka 10               Warsaw  None          Poland
7                  1 Infinite Loop            Cupertino    CA             USA
8                Erzsébet krt. 58.             Budapest  None         Hungary
9                  Grétrystraat 63             Brussels  None         Belgium

  PostalCode               Phone                 Fax  \
0       0171     +47 22 44 22 22                None
1      76110   +1 (817) 924-7272                None
2  12227-000  +55 (12) 3923-5555  +55 (12) 3923-5566
3      89503   +1 (775) 223-7665                None
4      14300    +420 2 4177 0449                None
5    T6G 2C7   +1 (780) 434-4554   +1 (780) 434-5565
6     00-358    +48 22 828 37 39                None
7      95014   +1 (408) 996-1010   +1 (408) 996-1011
8     H-1073                None                None
9       1000    +32 02 219 03 03                None

                      Email  SupportRepId
0     bjorn.hansen@yahoo.no             4
1  ricunningham@hotmail.com             4
2      luisg@embraer.com.br             3
3       kachase@hotmail.com             5
4           hholy@gmail.com             5
5        mphilips12@shaw.ca             5
6    stanisław.wójcik@wp.pl             4
7          tgoyer@apple.com             3
8  ladislav_kovacs@apple.hu             3
9     daan_peeters@apple.be             4
>>> db.find_column("*Name*")
+-----------+-------------+---------------+
| Table     | Column Name | Type          |
+-----------+-------------+---------------+
| Artist    |     Name    | NVARCHAR(120) |
| Customer  |  FirstName  | NVARCHAR(40)  |
| Customer  |   LastName  | NVARCHAR(20)  |
| Employee  |  FirstName  | NVARCHAR(20)  |
| Employee  |   LastName  | NVARCHAR(20)  |
| Genre     |     Name    | NVARCHAR(120) |
| MediaType |     Name    | NVARCHAR(120) |
| Playlist  |     Name    | NVARCHAR(120) |
| Track     |     Name    | NVARCHAR(200) |
+-----------+-------------+---------------+
>>> db.find_table("A*")
+--------+--------------------------+
| Table  | Columns                  |
+--------+--------------------------+
| Album  | AlbumId, Title, ArtistId |
| Artist | ArtistId, Name           |
+--------+--------------------------+
>>> db.query("select * from Artist limit 10;")
   ArtistId                  Name
0         1                 AC/DC
1         2                Accept
2         3             Aerosmith
3         4     Alanis Morissette
4         5       Alice In Chains
5         6  Antônio Carlos Jobim
6         7          Apocalyptica
7         8            Audioslave
8         9              BackBeat
9        10          Billy Cobham

How To

Connecting to a Database

The DB() object

Arguments

  • username: your username

  • password: your password

  • hostname: hostname of the database (i.e. localhost, dw.mardukas.com, ec2-54-191-289-254.us-west-2.compute.amazonaws.com)

  • port: port the database is running on (i.e. 5432)

  • dbname: name of the database (i.e. hanksdb)

  • filename: path to sqlite database (i.e. baseball-archive-2012.sqlite, employees.db)

  • dbtype: type of database you’re connecting to (postgres, mysql, sqlite, redshfit)

  • profile: name of the profile you want to use to connect. using this negates the need to specify any other arguments

  • exclude_system_tables: whether or not to load schema information for internal tables. for example, postgres has a bunch of tables prefixed with pg_ that you probably don’t actually care about. on the other had if you’re administrating a database, you might want to query these tables

  • limit: default number of records to return in a query. This is used by the DB.query method. You can override it by adding limit={X} to the query method, or by passing an argument to DB(). None indicates that there will be no limit (That’s right, you’ll be limitless. Bradley Cooper style.)

>>> from db import DB
>>> db = DB(username="greg", password="secret", hostname="localhost",
            dbtype="postgres")

Saving a profile

>>> from db import DB
>>> db = DB(username="greg", password="secret", hostname="localhost",
            dbtype="postgres")
>>> db.save_credentials() # this will save to "default"
>>> db.save_credentials(profile="local_pg")

Connecting from a profile

>>> from db import DB
>>> db = DB() # this loads "default" profile
>>> db = DB(profile="local_pg")

List your profiles

>>> from db import list_profiles
>>> list_profiles()
{'demo': {u'dbname': None,
  u'dbtype': u'sqlite',
  u'filename': u'/Users/glamp/repos/yhat/opensource/db.py/db/data/chinook.sqlite',
  u'hostname': u'localhost',
  u'password': None,
  u'port': 5432,
  u'username': None},
 'muppets': {u'dbname': u'muppetdb',
  u'dbtype': u'postgres',
  u'filename': None,
  u'hostname': u'muppets.yhathq.com',
  u'password': None,
  u'port': 5432,
  u'username': u'kermit'}}

Remove a profile

>>> remove_profile('demo')

Executing Queries

From a string

>>> df1 = db.query("select * from Artist;")
>>> df2 = db.query("select * from Album;")

From a file

>>> db.query_from_file("myscript.sql")
>>> df = db.query_from_file("myscript.sql")

Searching for Tables and Columns

Tables

>>> db.find_table("A*")
+--------+--------------------------+
| Table  | Columns                  |
+--------+--------------------------+
| Album  | AlbumId, Title, ArtistId |
| Artist | ArtistId, Name           |
+--------+--------------------------+
>>> results = db.find_table("tmp*") # returns all tables prefixed w/ tmp
>>> results = db.find_table("prod_*") # returns all tables prefixed w/ prod_
>>> results = db.find_table("*Invoice*") # returns all tables containing trans
>>> results = db.find_table("*") # returns everything

Columns

>>> db.find_column("Name") # returns all columns named "Name"
+-----------+-------------+---------------+
| Table     | Column Name | Type          |
+-----------+-------------+---------------+
| Artist    |     Name    | NVARCHAR(120) |
| Genre     |     Name    | NVARCHAR(120) |
| MediaType |     Name    | NVARCHAR(120) |
| Playlist  |     Name    | NVARCHAR(120) |
| Track     |     Name    | NVARCHAR(200) |
+-----------+-------------+---------------+
>>> db.find_column("*Id") # returns all columns ending w/ Id
+---------------+---------------+---------+
| Table         |  Column Name  | Type    |
+---------------+---------------+---------+
| Album         |    AlbumId    | INTEGER |
| Album         |    ArtistId   | INTEGER |
| Artist        |    ArtistId   | INTEGER |
| Customer      |  SupportRepId | INTEGER |
| Customer      |   CustomerId  | INTEGER |
| Employee      |   EmployeeId  | INTEGER |
| Genre         |    GenreId    | INTEGER |
| Invoice       |   InvoiceId   | INTEGER |
| Invoice       |   CustomerId  | INTEGER |
| InvoiceLine   |   InvoiceId   | INTEGER |
| InvoiceLine   |    TrackId    | INTEGER |
| InvoiceLine   | InvoiceLineId | INTEGER |
| MediaType     |  MediaTypeId  | INTEGER |
| Playlist      |   PlaylistId  | INTEGER |
| PlaylistTrack |    TrackId    | INTEGER |
| PlaylistTrack |   PlaylistId  | INTEGER |
| Track         |  MediaTypeId  | INTEGER |
| Track         |    TrackId    | INTEGER |
| Track         |    AlbumId    | INTEGER |
| Track         |    GenreId    | INTEGER |
+---------------+---------------+---------+
>>> db.find_column("*Address*") # returns all columns containing Address
+----------+----------------+--------------+
| Table    |  Column Name   | Type         |
+----------+----------------+--------------+
| Customer |    Address     | NVARCHAR(70) |
| Employee |    Address     | NVARCHAR(70) |
| Invoice  | BillingAddress | NVARCHAR(70) |
+----------+----------------+--------------+
# returns all columns containing Address that are varchars
>>> db.find_column("*Address*", data_type="NVARCHAR(70)")
# returns all columns have an "e" and are NVARCHAR/INTEGERS
>>> db.find_column("*e*", data_type=["NVARCHAR(70)", "INTEGER"])

TODO

  • [x] Switch to newer version of pandas sql api

  • [ ] Add database support

    • [x] postgres

    • [x] sqlite

    • [x] redshift

    • [x] mysql

    • [ ] mssql (going to be a little trickier since i don’t have one)

  • [x] publish examples to nbviewer

  • [x] improve documentation and readme

  • [x] add sample database to distrobution

  • [x] push to Redshift

  • [ ] “joins to” for columns

    • [x] postgres

    • [x] sqlite

    • [x] redshift

    • [x] mysql

    • [ ] mssql

  • [ ] intelligent display of number/size returned in query

  • [ ] patsy formulas

  • [x] profile w/ limit

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

db.py-0.2.2.tar.gz (399.2 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

db.py-0.2.2-py2.7.egg (430.2 kB view details)

Uploaded Egg

File details

Details for the file db.py-0.2.2.tar.gz.

File metadata

  • Download URL: db.py-0.2.2.tar.gz
  • Upload date:
  • Size: 399.2 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No

File hashes

Hashes for db.py-0.2.2.tar.gz
Algorithm Hash digest
SHA256 262bba0a5f5b8ff82aa38e398b9b9fc5131ce487ebaf1bf4fcfd839a5b8936d6
MD5 d3c61b66bdf1b1a8af4167cb8bb3747e
BLAKE2b-256 2e25d3e63f8fe4b3f4d27bb88240d933c208f321798e5e2791339868c7ee3eab

See more details on using hashes here.

File details

Details for the file db.py-0.2.2-py2.7.egg.

File metadata

  • Download URL: db.py-0.2.2-py2.7.egg
  • Upload date:
  • Size: 430.2 kB
  • Tags: Egg
  • Uploaded using Trusted Publishing? No

File hashes

Hashes for db.py-0.2.2-py2.7.egg
Algorithm Hash digest
SHA256 bc6c3294b82ec29a68012eb08aee2d451689cd905b783443bd9961dfbbca1fea
MD5 ee4fd2be50a5c73064bf04eaf8443fec
BLAKE2b-256 845d0136ca9a7cc846aa4c9f856b4f30f6247212756ae1c60d7f942db1c5ce9b

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page