mayurnewase / shillelagh

Making it easy to query APIs via SQL

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

Shillelagh

https://coveralls.io/repos/github/betodealmeida/shillelagh/badge.svg?branch=master Documentation Status

PyPI - Python Version

Shillelagh (ʃɪˈleɪlɪ) is an implementation of the Python DB API 2.0 based on SQLite (using the APSW library):

from shillelagh.backends.apsw.db import connect

connection = connect(":memory:")
cursor = connection.cursor()

query = "SELECT * FROM a_table"
for row in cursor.execute(query):
    print(row)

There is also a SQLAlchemy dialect:

from sqlalchemy.engine import create_engine

engine = create_engine("shillelagh://")
connection = engine.connect()

query = "SELECT * FROM a_table"
for row in connection.execute(query):
    print(row)

And a command-line utility:

$ shillelagh
sql> SELECT * FROM a_table

Installation

Install Shillelagh with pip:

$ pip install 'shillelagh'

This will install an unofficial APSW package from the Python package index. It's highly recommend to install a newer version:

$ pip install https://github.com/rogerbinns/apsw/releases/download/3.38.1-r1/apsw-3.38.1-r1.zip \
--global-option=fetch --global-option=--version --global-option=3.38.1 --global-option=--all \
--global-option=build --global-option=--enable-all-extensions

How is it different?

Shillelagh allows you to easily query non-SQL resources. For example, if you have a Google Spreadsheet you can query it directly as if it were a table in a database:

SELECT country, SUM(cnt)
FROM "https://docs.google.com/spreadsheets/d/1_rN3lm0R_bU3NemO0s9pbFkY5LQPcuy1pscv8ZXPtg8/edit#gid=0"
WHERE cnt > 0
GROUP BY country

You can even run INSERT/DELETE/UPDATE queries against the spreadsheet:

UPDATE "https://docs.google.com/spreadsheets/d/1_rN3lm0R_bU3NemO0s9pbFkY5LQPcuy1pscv8ZXPtg8/edit#gid=0"
SET cnt = cnt + 1
WHERE country != 'BR'

Queries like this are supported by adapters. Currently Shillelagh has the following adapters:

  • Google Spreadsheets
  • WeatherAPI
  • Socrata Open Data API
  • CSV files
  • Pandas dataframes
  • Datasette tables
  • GitHub (currently only pull requests, but other endpoints can be easily added)
  • System information (currently only CPU usage, but other resources can be easily added)

A query can combine data from multiple adapters:

INSERT INTO "/tmp/file.csv"
SELECT time, chance_of_rain
FROM "https://api.weatherapi.com/v1/history.json?q=London"
WHERE time IN (
  SELECT datetime
  FROM "https://docs.google.com/spreadsheets/d/1_rN3lm0R_bU3NemO0s9pbFkY5LQPcuy1pscv8ZXPtg8/edit#gid=1648320094"
)

The query above reads timestamps from a Google sheet, uses them to filter weather data from WeatherAPI, and writes the chance of rain into a (pre-existing) CSV file.

New adapters are relatively easy to implement. There's a step-by-step tutorial that explains how to create a new adapter to an API or filetype.

About

Making it easy to query APIs via SQL

License:MIT License


Languages

Language:Python 99.8%Language:Makefile 0.1%Language:Shell 0.0%