A Python DB-API and SQLAlchemy dialect to Google Spreasheets

Overview

Build Status codecov

Note: shillelagh is a drop-in replacement for gsheets-db-api, with many additional features. You should use it instead. If you're using SQLAlchemy all you need to do:

$ pip uninstall gsheetsdb
$ pip install shillelagh

If you're using the DB API:

# from gsheetsdb import connect
from shillelagh.backends.apsw.db import connect

A Python DB API 2.0 for Google Spreadsheets

This module allows you to query Google Spreadsheets using SQL.

Using this spreadsheet as an example:

A B
1 country cnt
2 BR 1
3 BR 3
4 IN 5

Here's a simple query using the Python API:

from gsheetsdb import connect

conn = connect()
result = conn.execute("""
    SELECT
        country
      , SUM(cnt)
    FROM
        "https://docs.google.com/spreadsheets/d/1_rN3lm0R_bU3NemO0s9pbFkY5LQPcuy1pscv8ZXPtg8/"
    GROUP BY
        country
""", headers=1)
for row in result:
    print(row)

This will print:

Row(country='BR', sum_cnt=4.0)
Row(country='IN', sum_cnt=5.0)

How it works

Transpiling

Google spreadsheets can actually be queried with a very limited SQL API. This module will transpile the SQL query into a simpler query that the API understands. Eg, the query above would be translated to:

SELECT A, SUM(B) GROUP BY A

Processors

In addition to transpiling, this module also provides pre- and post-processors. The pre-processors add more columns to the query, and the post-processors build the actual result from those extra columns. Eg, COUNT(*) is not supported, so the following query:

SELECT COUNT(*) FROM "https://docs.google.com/spreadsheets/d/1_rN3lm0R_bU3NemO0s9pbFkY5LQPcuy1pscv8ZXPtg8/"

Gets translated to:

SELECT COUNT(A), COUNT(B)

And then the maximum count is returned. This assumes that at least one column has no NULLs.

SQLite

When a query can't be expressed, the module will issue a SELECT *, load the data into an in-memory SQLite table, and execute the query in SQLite. This is obviously inneficient, since all data has to be downloaded, but ensures that all queries succeed.

Installation

$ pip install gsheetsdb
$ pip install gsheetsdb[cli]         # if you want to use the CLI
$ pip install gsheetsdb[sqlalchemy]  # if you want to use it with SQLAlchemy

CLI

The module will install an executable called gsheetsdb:

$ gsheetsdb --headers=1
> SELECT * FROM "https://docs.google.com/spreadsheets/d/1_rN3lm0R_bU3NemO0s9pbFkY5LQPcuy1pscv8ZXPtg8/"
country      cnt
---------  -----
BR             1
BR             3
IN             5
> SELECT country, SUM(cnt) FROM "https://docs.google.com/spreadsheets/d/1_rN3lm0R_bU3NemO0s9pbFkY5LQPcuy1
pscv8ZXPtg8/" GROUP BY country
country      sum cnt
---------  ---------
BR                 4
IN                 5
>

SQLAlchemy support

This module provides a SQLAlchemy dialect. You don't need to specify a URL, since the spreadsheet is extracted from the FROM clause:

from sqlalchemy import *
from sqlalchemy.engine import create_engine
from sqlalchemy.schema import *

engine = create_engine('gsheets://')
inspector = inspect(engine)

table = Table(
    'https://docs.google.com/spreadsheets/d/1_rN3lm0R_bU3NemO0s9pbFkY5LQPcuy1pscv8ZXPtg8/edit#gid=0',
    MetaData(bind=engine),
    autoload=True)
query = select([func.count(table.columns.country)], from_obj=table)
print(query.scalar())  # prints 3.0

Alternatively, you can initialize the engine with a "catalog". The catalog is a Google spreadsheet where each row points to another Google spreadsheet, with URL, number of headers and schema as the columns. You can see an example here:

A B C
1 https://docs.google.com/spreadsheets/d/1_rN3lm0R_bU3NemO0s9pbFkY5LQPcuy1pscv8ZXPtg8/edit#gid=0 1 default
2 https://docs.google.com/spreadsheets/d/1_rN3lm0R_bU3NemO0s9pbFkY5LQPcuy1pscv8ZXPtg8/edit#gid=1077884006 2 default

This will make the two spreadsheets above available as "tables" in the default schema.

Authentication

You can access spreadsheets that are shared only within an organization. In order to do this, first create a service account. Make sure you select "Enable G Suite Domain-wide Delegation". Download the key as a JSON file.

Next, you need to manage API client access at https://admin.google.com/${DOMAIN}/AdminHome?chromeless=1#OGX:ManageOauthClients. Add the "Unique ID" from the previous step as the "Client Name", and add https://spreadsheets.google.com/feeds as the scope.

Now, when creating the connection from the DB API or from SQLAlchemy you can point to the JSON file and the user you want to impersonate:

>>> auth = {'service_account_file': '/path/to/certificate.json', 'subject': '[email protected]'}
>>> conn = connect(auth)
Owner
Beto Dealmeida
Writing open source software since 2003.
Beto Dealmeida
Micro ODM for MongoDB

Beanie - is an asynchronous ODM for MongoDB, based on Motor and Pydantic. It uses an abstraction over Pydantic models and Motor collections to work wi

Roman 993 Jan 03, 2023
Make Your Company Data Driven. Connect to any data source, easily visualize, dashboard and share your data.

Redash is designed to enable anyone, regardless of the level of technical sophistication, to harness the power of data big and small. SQL users levera

Redash 22.4k Dec 30, 2022
Create a database, insert data and easily select it with Sqlite

sqliteBasics create a database, insert data and easily select it with Sqlite Watch on YouTube a step by step tutorial explaining this code: https://yo

Mariya 27 Dec 27, 2022
A simple python package that perform SQL Server Source Control and Auto Deployment.

deploydb Deploy your database objects automatically when the git branch is updated. Production-ready! ⚙️ Easy-to-use 🔨 Customizable 🔧 Installation I

Mert Güvençli 10 Dec 07, 2022
A fast MySQL driver written in pure C/C++ for Python. Compatible with gevent through monkey patching.

:: Description :: A fast MySQL driver written in pure C/C++ for Python. Compatible with gevent through monkey patching :: Requirements :: Requires P

ESN Social Software 549 Nov 18, 2022
Generate database table diagram from SQL data definition.

sql2diagram Generate database table diagram from SQL data definition. e.g. "CREATE TABLE ..." See Example below How does it works? Analyze the SQL to

django-cas-ng 1 Feb 08, 2022
MySQL Operator for Kubernetes

MySQL Operator for Kubernetes The MYSQL Operator for Kubernetes is an Operator for Kubernetes managing MySQL InnoDB Cluster setups inside a Kubernetes

MySQL 462 Dec 24, 2022
PostgreSQL database access simplified

Queries: PostgreSQL Simplified Queries is a BSD licensed opinionated wrapper of the psycopg2 library for interacting with PostgreSQL. The popular psyc

Gavin M. Roy 251 Oct 25, 2022
Makes it easier to write raw SQL in Python.

CoolSQL Makes it easier to write raw SQL in Python. Usage Quick Start from coolsql import Field name = Field("name") age = Field("age") condition =

Aber 7 Aug 21, 2022
A pandas-like deferred expression system, with first-class SQL support

Ibis: Python data analysis framework for Hadoop and SQL engines Service Status Documentation Conda packages PyPI Azure Coverage Ibis is a toolbox to b

Ibis Project 2.3k Jan 06, 2023
A Redis client library for Twisted Python

txRedis Asynchronous Redis client for Twisted Python. Install Install via pip. Usage examples can be found in the examples/ directory of this reposito

Dorian Raymer 127 Oct 23, 2022
Asynchronous, fast, pythonic DynamoDB Client

AsyncIO DynamoDB Asynchronous pythonic DynamoDB client; 2x faster than aiobotocore/boto3/botocore. Quick start With httpx Install this library pip ins

HENNGE 48 Dec 18, 2022
Python version of the TerminusDB client - for TerminusDB API and WOQLpy

TerminusDB Client Python Development status ⚙️ Python Package status 📦 Python version of the TerminusDB client - for TerminusDB API and WOQLpy Requir

TerminusDB 66 Dec 02, 2022
Pure Python MySQL Client

PyMySQL Table of Contents Requirements Installation Documentation Example Resources License This package contains a pure-Python MySQL client library,

PyMySQL 7.2k Jan 09, 2023
asyncio (PEP 3156) Redis support

aioredis asyncio (PEP 3156) Redis client library. Features hiredis parser Yes Pure-python parser Yes Low-level & High-level APIs Yes Connections Pool

aio-libs 2.2k Jan 04, 2023
Confluent's Kafka Python Client

Confluent's Python Client for Apache KafkaTM confluent-kafka-python provides a high-level Producer, Consumer and AdminClient compatible with all Apach

Confluent Inc. 3.1k Jan 05, 2023
Python Wrapper For sqlite3 and aiosqlite

Python Wrapper For sqlite3 and aiosqlite

6 May 30, 2022
Motor - the async Python driver for MongoDB and Tornado or asyncio

Motor Info: Motor is a full-featured, non-blocking MongoDB driver for Python Tornado and asyncio applications. Documentation: Available at motor.readt

mongodb 2.1k Dec 26, 2022
A database migrations tool for SQLAlchemy.

Alembic is a database migrations tool written by the author of SQLAlchemy. A migrations tool offers the following functionality: Can emit ALTER statem

SQLAlchemy 1.7k Jan 01, 2023
A Telegram Bot to manage Redis Database.

A Telegram Bot to manage Redis database. Direct deploy on heroku Manual Deployment python3, git is required Clone repo git clone https://github.com/bu

Amit Sharma 4 Oct 21, 2022