Metadata-Version: 2.1
Name: datasette
Version: 0.20
Summary: An instant JSON API for your SQLite databases
Home-page: https://github.com/simonw/datasette
Author: Simon Willison
License: Apache License, Version 2.0
Platform: UNKNOWN
Classifier: Development Status :: 4 - Beta
Classifier: Intended Audience :: Developers
Classifier: Intended Audience :: Science/Research
Classifier: Intended Audience :: End Users/Desktop
Classifier: Topic :: Database
Classifier: License :: OSI Approved :: Apache Software License
Classifier: Programming Language :: Python :: 3.6
Classifier: Programming Language :: Python :: 3.5
Description-Content-Type: text/markdown
Requires-Dist: click (==6.7)
Requires-Dist: click-default-group (==1.2)
Requires-Dist: Sanic (==0.7.0)
Requires-Dist: Jinja2 (==2.10)
Requires-Dist: hupper (==1.0)
Requires-Dist: pint (==0.8.1)
Requires-Dist: pluggy (<1.0,>=0.1.0)

# Datasette

[![PyPI](https://img.shields.io/pypi/v/datasette.svg)](https://pypi.org/project/datasette/)
[![Travis CI](https://travis-ci.org/simonw/datasette.svg?branch=master)](https://travis-ci.org/simonw/datasette)
[![Documentation Status](https://readthedocs.org/projects/datasette/badge/?version=latest)](http://datasette.readthedocs.io/en/latest/?badge=latest)
[![License](https://img.shields.io/badge/license-Apache%202.0-blue.svg)](https://github.com/simonw/datasette/blob/master/LICENSE)

*An instant JSON API for your SQLite databases*

Datasette provides an instant, read-only JSON API for any SQLite database. It also provides tools  for packaging the database up as a Docker container and deploying that container to hosting providers such as [Zeit Now](https://zeit.co/now).

Got CSV data? Use [csvs-to-sqlite](https://github.com/simonw/csvs-to-sqlite) to convert them to SOLite, then publish them with Datasette. Or try [Datasette Publish](https://publish.datasettes.com), a web app that lets you upload CSV data and deploy it using Datasette without needing to install any software.

Some examples: https://github.com/simonw/datasette/wiki/Datasettes

## News

* 20th April 2018: [Datasette 0.20: static assets and templates for plugins](https://github.com/simonw/datasette/releases/tag/0.20)
* 16th April 2018: [Datasette 0.19: plugins preview](https://github.com/simonw/datasette/releases/tag/0.19)
* 14th April 2018: [Datasette 0.18: units](https://github.com/simonw/datasette/releases/tag/0.18)
* 9th April 2018: [Datasette 0.15: sort by column](https://github.com/simonw/datasette/releases/tag/0.15)
* 28th March 2018: [Baltimore Sun Public Salary Records](https://simonwillison.net/2018/Mar/28/datasette-in-the-wild/) - a data journalism project from the Baltimore Sun powered by Datasette - source code [is available here](https://github.com/baltimore-sun-data/salaries-datasette)
* 27th March 2018: [Cloud-first: Rapid webapp deployment using containers](https://wwwf.imperial.ac.uk/blog/research-software-engineering/2018/03/27/cloud-first-rapid-webapp-deployment-using-containers/) - a tutorial covering deploying Datasette using Microsoft Azure by the Research Software Engineering team at Imperial College London
* 28th January 2018: [Analyzing my Twitter followers with Datasette](https://simonwillison.net/2018/Jan/28/analyzing-my-twitter-followers/) - a tutorial on using Datasette to analyze follower data pulled from the Twitter API
* 17th January 2018: [Datasette Publish: a web app for publishing CSV files as an online database](https://simonwillison.net/2018/Jan/17/datasette-publish/)
* 12th December 2017: [Building a location to time zone API with SpatiaLite, OpenStreetMap and Datasette](https://simonwillison.net/2017/Dec/12/building-a-location-time-zone-api/)
* 9th December 2017: [Datasette 0.14: customization edition](https://github.com/simonw/datasette/releases/tag/0.14)
* 25th November 2017: [New in Datasette: filters, foreign keys and search](https://simonwillison.net/2017/Nov/25/new-in-datasette/)
* 13th November 2017: [Datasette: instantly create and publish an API for your SQLite databases](https://simonwillison.net/2017/Nov/13/datasette/)

## Installation

    pip3 install datasette

Datasette requires Python 3.5 or higher.

## Basic usage

    datasette serve path/to/database.db

This will start a web server on port 8001 - visit http://localhost:8001/ to access the web interface.

`serve` is the default subcommand, you can omit it if you like.

Use Chrome on OS X? You can run datasette against your browser history like so:

     datasette ~/Library/Application\ Support/Google/Chrome/Default/History

Now visiting http://localhost:8001/History/downloads will show you a web interface to browse your downloads data:

![Downloads table rendered by datasette](https://static.simonwillison.net/static/2017/datasette-downloads.png)

http://localhost:8001/History/downloads.json will return that data as JSON:

    {
        "database": "History",
        "columns": [
            "id",
            "current_path",
            "target_path",
            "start_time",
            "received_bytes",
            "total_bytes",
            ...
        ],
        "table_rows_count": 576,
        "rows": [
            [
                1,
                "/Users/simonw/Downloads/DropboxInstaller.dmg",
                "/Users/simonw/Downloads/DropboxInstaller.dmg",
                13097290269022132,
                626688,
                0,
                ...
            ]
        ]
    }


http://localhost:8001/History/downloads.json?_shape=objects will return that data as JSON in a more convenient but less efficient format:

    {
        ...
        "rows": [
            {
                "start_time": 13097290269022132,
                "interrupt_reason": 0,
                "hash": "",
                "id": 1,
                "site_url": "",
                "referrer": "https://www.dropbox.com/downloading?src=index",
                ...
            }
        ]
    }

## datasette serve options

    $ datasette serve --help
    Usage: datasette serve [OPTIONS] [FILES]...

      Serve up specified SQLite database files with a web UI

    Options:
      -h, --host TEXT              host for server, defaults to 127.0.0.1
      -p, --port INTEGER           port for server, defaults to 8001
      --debug                      Enable debug mode - useful for development
      --reload                     Automatically reload if code change detected -
                                   useful for development
      --cors                       Enable CORS by serving Access-Control-Allow-
                                   Origin: *
      --page_size INTEGER          Page size - default is 100
      --max_returned_rows INTEGER  Max allowed rows to return at once - default is
                                   1000. Set to 0 to disable check entirely.
      --sql_time_limit_ms INTEGER  Max time allowed for SQL queries in ms
      --load-extension PATH        Path to a SQLite extension to load
      --inspect-file TEXT          Path to JSON file created using "datasette
                                   inspect"
      -m, --metadata FILENAME      Path to JSON file containing license/source
                                   metadata
      --template-dir DIRECTORY     Path to directory containing custom templates
      --plugins-dir DIRECTORY      Path to directory containing custom plugins
      --static STATIC MOUNT        mountpoint:path-to-directory for serving static
                                   files
      --help                       Show this message and exit.

## metadata.json

If you want to include licensing and source information in the generated datasette website you can do so using a JSON file that looks something like this:

    {
        "title": "Five Thirty Eight",
        "license": "CC Attribution 4.0 License",
        "license_url": "http://creativecommons.org/licenses/by/4.0/",
        "source": "fivethirtyeight/data on GitHub",
        "source_url": "https://github.com/fivethirtyeight/data"
    }

The license and source information will be displayed on the index page and in the footer. They will also be included in the JSON produced by the API.

## datasette publish

If you have [Zeit Now](https://zeit.co/now) or [Heroku](https://heroku.com/) configured, datasette can deploy one or more SQLite databases to the internet with a single command:

    datasette publish now database.db

Or:

    datasette publish heroku database.db

This will create a docker image containing both the datasette application and the specified SQLite database files. It will then deploy that image to Zeit Now or Heroku and give you a URL to access the API.

    $ datasette publish --help
    Usage: datasette publish [OPTIONS] PUBLISHER [FILES]...

      Publish specified SQLite database files to the internet along with a
      datasette API.

      Options for PUBLISHER:     * 'now' - You must have Zeit Now installed:
      https://zeit.co/now     * 'heroku' - You must have Heroku installed:
      https://cli.heroku.com/

      Example usage: datasette publish now my-database.db

    Options:
      -n, --name TEXT           Application name to use when deploying to Now
                                (ignored for Heroku)
      -m, --metadata FILENAME   Path to JSON file containing metadata to publish
      --extra-options TEXT      Extra options to pass to datasette serve
      --force                   Pass --force option to now
      --branch TEXT             Install datasette from a GitHub branch e.g. master
      --template-dir DIRECTORY  Path to directory containing custom templates
      --plugins-dir DIRECTORY   Path to directory containing custom plugins
      --static STATIC MOUNT     mountpoint:path-to-directory for serving static
                                files
      --install TEXT            Additional packages (e.g. plugins) to install
      --title TEXT              Title for metadata
      --license TEXT            License label for metadata
      --license_url TEXT        License URL for metadata
      --source TEXT             Source label for metadata
      --source_url TEXT         Source URL for metadata
      --help                    Show this message and exit.

## datasette package

If you have docker installed you can use `datasette package` to create a new Docker image in your local repository containing the datasette app and selected SQLite databases:

    $ datasette package --help
    Usage: datasette package [OPTIONS] FILES...

      Package specified SQLite files into a new datasette Docker container

    Options:
      -t, --tag TEXT            Name for the resulting Docker container, can
                                optionally use name:tag format
      -m, --metadata FILENAME   Path to JSON file containing metadata to publish
      --extra-options TEXT      Extra options to pass to datasette serve
      --branch TEXT             Install datasette from a GitHub branch e.g. master
      --template-dir DIRECTORY  Path to directory containing custom templates
      --plugins-dir DIRECTORY   Path to directory containing custom plugins
      --static STATIC MOUNT     mountpoint:path-to-directory for serving static
                                files
      --install TEXT            Additional packages (e.g. plugins) to install
      --title TEXT              Title for metadata
      --license TEXT            License label for metadata
      --license_url TEXT        License URL for metadata
      --source TEXT             Source label for metadata
      --source_url TEXT         Source URL for metadata
      --help                    Show this message and exit.

Both publish and package accept an `extra_options` argument option, which will affect how the resulting application is executed. For example, say you want to increase the SQL time limit for a particular container:

    datasette package parlgov.db --extra-options="--sql_time_limit_ms=2500 --page_size=10"

The resulting container will run the application with those options.

Here's example output for the package command:

    $ datasette package parlgov.db --extra-options="--sql_time_limit_ms=2500 --page_size=10"
    Sending build context to Docker daemon  4.459MB
    Step 1/7 : FROM python:3
     ---> 79e1dc9af1c1
    Step 2/7 : COPY . /app
     ---> Using cache
     ---> cd4ec67de656
    Step 3/7 : WORKDIR /app
     ---> Using cache
     ---> 139699e91621
    Step 4/7 : RUN pip install datasette
     ---> Using cache
     ---> 340efa82bfd7
    Step 5/7 : RUN datasette inspect parlgov.db --inspect-file inspect-data.json
     ---> Using cache
     ---> 5fddbe990314
    Step 6/7 : EXPOSE 8001
     ---> Using cache
     ---> 8e83844b0fed
    Step 7/7 : CMD datasette serve parlgov.db --port 8001 --inspect-file inspect-data.json --sql_time_limit_ms=2500 --page_size=10
     ---> Using cache
     ---> 1bd380ea8af3
    Successfully built 1bd380ea8af3

You can now run the resulting container like so:

    docker run -p 8081:8001 1bd380ea8af3

This exposes port 8001 inside the container as port 8081 on your host machine, so you can access the application at http://localhost:8081/


