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Copyright 2015 NPR. All rights reserved. No part of these materials may be reproduced, modified, stored in a retrieval system, or retransmitted, in any form or by any means, electronic, mechanical or otherwise, without prior written permission from NPR.

(Want to use this code? Send an email to nprapps@npr.org!)

graeae

What is this?

Current scraper started around 12:50pm EST on April 30, 2015

Graeae is a tool for aggregating data about NPR's content from: the NPR story API (Seamus), the NPR homepage, the NPR Facebook page, a spreadsheet of projects we've handled photos for, and a qualitative review by our team of photo quality.

Assumptions

The following things are assumed to be true in this documentation.

  • You are running OSX.
  • You are using Python 2.7. (Probably the version that came OSX.)
  • You have virtualenv and virtualenvwrapper installed and working.
  • You have NPR's AWS credentials stored as environment variables locally.

For more details on the technology stack used with the app-template, see our development environment blog post.

What's in here?

The project contains the following folders and important files:

  • confs -- Server configuration files for nginx and uwsgi. Edit the templates then fab <ENV> servers.render_confs, don't edit anything in confs/rendered directly.
  • data -- Data files, such as those used to generate HTML.
  • fabfile -- Fabric commands for automating setup, deployment, data processing, etc.
  • etc -- Miscellaneous scripts and metadata for project bootstrapping.
  • jst -- Javascript (Underscore.js) templates.
  • less -- LESS files, will be compiled to CSS and concatenated for deployment.
  • templates -- HTML (Jinja2) templates, to be compiled locally.
  • tests -- Python unit tests.
  • www -- Static and compiled assets to be deployed. (a.k.a. "the output")
  • www/assets -- A symlink to an S3 bucket containing binary assets (images, audio).
  • www/live-data -- "Live" data deployed to S3 via cron jobs or other mechanisms. (Not deployed with the rest of the project.)
  • www/test -- Javascript tests and supporting files.
  • app.py -- A Flask app for rendering the project locally.
  • app_config.py -- Global project configuration for scripts, deployment, etc.
  • copytext.py -- Code supporting the Editing workflow
  • crontab -- Cron jobs to be installed as part of the project.
  • public_app.py -- A Flask app for running server-side code.
  • render_utils.py -- Code supporting template rendering.
  • requirements.txt -- Python requirements.
  • static.py -- Static Flask views used in both app.py and public_app.py.

Bootstrap the project

Node.js is required for the static asset pipeline. If you don't already have it, get it like this:

brew install node
curl https://npmjs.org/install.sh | sh

Then bootstrap the project:

cd graeae
mkvirtualenv graeae
pip install -r requirements.txt
npm install
fab data.local_bootstrap
fab update

Problems installing requirements? You may need to run the pip command as ARCHFLAGS=-Wno-error=unused-command-line-argument-hard-error-in-future pip install -r requirements.txt to work around an issue with OSX.

Scrapers

This project currently contains three scrapers:

FacebookScraper

This scraper collects an event stream by scanning our Facebook feed every 15 minutes.

  • run_time (of the scrape)
  • headline
  • post_type
  • art_url
  • link_url
  • created_time
  • updated_time
  • message: the text above the link/photo
  • description: the text below the link/photo

This additional data is knitted in from Facebook insights:

  • shares
  • likes
  • comments
  • link_clicks
  • photo_view_clicks
  • people_reached

HomepageScraper

This scraper collects an event stream by scanning our homepage every 15 minutes.

  • run_time (of the scrape)
  • story_id: Internal unique ID
  • slot: Position on the home page (e.g. the top story is slot 0)
  • headline
  • url
  • is_bullet: True if the item is a bullet link related to another story
  • layout: One of 'bullet', 'video', 'big-image', 'small-image', 'slideshow'
  • has_audio: Has audio player on the home page
  • homepage_art_url: URL to image or video on homepage

This additional data is knitted in from the Seamus API:

  • homepage_art_provider: Who provided the homepage art (e.g. AFP/Getty)
  • has_story_art: True if any image is present in the story
  • has_lead_art: True if there is an image at the top of the story
  • lead_art_provider: Who provided the lead art (e.g. Reuters)
  • lead_art_url

SeamusScraper

This scraper collects a canonical dataset of every NPR story in the API. (It is not an event stream.)

  • run_time (of the scrape)
  • id
  • title: also known as the headline
  • publication_date
  • story_date
  • last_modified_date
  • canonical_url
  • has_lead_art
  • lead_art_provider
  • lead_art_url

Hide project secrets

Project secrets should never be stored in app_config.py or anywhere else in the repository. They will be leaked to the client if you do. Instead, always store passwords, keys, etc. in environment variables and document that they are needed here in the README.

Any environment variable that starts with $PROJECT_SLUG_ will be automatically loaded when app_config.get_secrets() is called.

Save media assets

Large media assets (images, videos, audio) are synced with an Amazon S3 bucket specified in app_config.ASSETS_S3_BUCKET in a folder with the name of the project. (This bucket should not be the same as any of your app_config.PRODUCTION_S3_BUCKETS or app_config.STAGING_S3_BUCKETS.) This allows everyone who works on the project to access these assets without storing them in the repo, giving us faster clone times and the ability to open source our work.

Syncing these assets requires running a couple different commands at the right times. When you create new assets or make changes to current assets that need to get uploaded to the server, run fab assets.sync. This will do a few things:

  • If there is an asset on S3 that does not exist on your local filesystem it will be downloaded.
  • If there is an asset on that exists on your local filesystem but not on S3, you will be prompted to either upload (type "u") OR delete (type "d") your local copy.
  • You can also upload all local files (type "la") or delete all local files (type "da"). Type "c" to cancel if you aren't sure what to do.
  • If both you and the server have an asset and they are the same, it will be skipped.
  • If both you and the server have an asset and they are different, you will be prompted to take either the remote version (type "r") or the local version (type "l").
  • You can also take all remote versions (type "ra") or all local versions (type "la"). Type "c" to cancel if you aren't sure what to do.

Unfortunantely, there is no automatic way to know when a file has been intentionally deleted from the server or your local directory. When you want to simultaneously remove a file from the server and your local environment (i.e. it is not needed in the project any longer), run fab assets.rm:"www/assets/file_name_here.jpg"

Adding a page to the site

A site can have any number of rendered pages, each with a corresponding template and view. To create a new one:

  • Add a template to the templates directory. Ensure it extends _base.html.
  • Add a corresponding view function to app.py. Decorate it with a route to the page name, i.e. @app.route('/filename.html')
  • By convention only views that end with .html and do not start with _ will automatically be rendered when you call fab render.

Run the project

A flask app is used to run the project locally. It will automatically recompile templates and assets on demand.

workon $PROJECT_SLUG
fab app

Visit localhost:8000 in your browser.

COPY configuration

This app uses a Google Spreadsheet for a simple key/value store that provides an editing workflow.

To access the Google doc, you'll need to create a Google API project via the Google developer console.

Enable the Drive API for your project and create a "web application" client ID.

For the redirect URIs use:

  • http://localhost:8000/authenticate/
  • http://127.0.0.1:8000/authenticate
  • http://localhost:8888/authenticate/
  • http://127.0.0.1:8888/authenticate

For the Javascript origins use:

  • http://localhost:8000
  • http://127.0.0.1:8000
  • http://localhost:8888
  • http://127.0.0.1:8888

You'll also need to set some environment variables:

export GOOGLE_OAUTH_CLIENT_ID="something-something.apps.googleusercontent.com"
export GOOGLE_OAUTH_CONSUMER_SECRET="bIgLonGStringOfCharacT3rs"
export AUTHOMATIC_SALT="jAmOnYourKeyBoaRd"

Note that AUTHOMATIC_SALT can be set to any random string. It's just cryptographic salt for the authentication library we use.

Once set up, run fab app and visit http://localhost:8000 in your browser. If authentication is not configured, you'll be asked to allow the application for read-only access to Google drive, the account profile, and offline access on behalf of one of your Google accounts. This should be a one-time operation across all app-template projects.

It is possible to grant access to other accounts on a per-project basis by changing GOOGLE_OAUTH_CREDENTIALS_PATH in app_config.py.

COPY editing

View the sample copy spreadsheet.

This document is specified in app_config with the variable COPY_GOOGLE_DOC_KEY. To use your own spreadsheet, change this value to reflect your document's key. (The long string of random looking characters in your Google Docs URL. For example: 1DiE0j6vcCm55Dyj_sV5OJYoNXRRhn_Pjsndba7dVljo)

A few things to note:

  • If there is a column called key, there is expected to be a column called value and rows will be accessed in templates as key/value pairs
  • Rows may also be accessed in templates by row index using iterators (see below)
  • You may have any number of worksheets
  • This document must be "published to the web" using Google Docs' interface

The app template is outfitted with a few fab utility functions that make pulling changes and updating your local data easy.

To update the latest document, simply run:

fab text.update

Note: text.update runs automatically whenever fab render is called.

At the template level, Jinja maintains a COPY object that you can use to access your values in the templates. Using our example sheet, to use the byline key in templates/index.html:

{{ COPY.attribution.byline }}

More generally, you can access anything defined in your Google Doc like so:

{{ COPY.sheet_name.key_name }}

You may also access rows using iterators. In this case, the column headers of the spreadsheet become keys and the row cells values. For example:

{% for row in COPY.sheet_name %}
{{ row.column_one_header }}
{{ row.column_two_header }}
{% endfor %}

When naming keys in the COPY document, please attempt to group them by common prefixes and order them by appearance on the page. For instance:

title
byline
about_header
about_body
about_url
download_label
download_url

Arbitrary Google Docs

Sometimes, our projects need to read data from a Google Doc that's not involved with the COPY rig. In this case, we've got a helper function for you to download an arbitrary Google spreadsheet.

This solution will download the uncached version of the document, unlike those methods which use the "publish to the Web" functionality baked into Google Docs. Published versions can take up to 15 minutes up update!

Make sure you're authenticated, then call oauth.get_document(key, file_path).

Here's an example of what you might do:

from copytext import Copy
from oauth import get_document

def read_my_google_doc():
    file_path = 'data/extra_data.xlsx'
    get_document('0Ak3IIavLYTovdGdpcXlFS1lBaVE5aEJqcG1nMUFTVWc', file_path)
    data = Copy(file_path)

    for row in data['example_list']:
        print '%s: %s' % (row['term'], row['definition'])

read_my_google_doc()

Run Python tests

Python unit tests are stored in the tests directory. Run them with fab tests.

Run Javascript tests

With the project running, visit localhost:8000/test/SpecRunner.html.

Compile static assets

Compile LESS to CSS, compile javascript templates to Javascript and minify all assets:

workon graeae
fab render

(This is done automatically whenever you deploy to S3.)

Test the rendered app

If you want to test the app once you've rendered it out, just use the Python webserver:

cd www
python -m SimpleHTTPServer

Deploy to S3

fab staging master deploy

Deploy to EC2

You can deploy to EC2 for a variety of reasons. We cover two cases: Running a dynamic web application (public_app.py) and executing cron jobs (crontab).

Servers capable of running the app can be setup using our servers project.

For running a Web application:

  • In app_config.py set DEPLOY_TO_SERVERS to True.
  • Also in app_config.py set DEPLOY_WEB_SERVICES to True.
  • Run fab staging master servers.setup to configure the server.
  • Run fab staging master deploy to deploy the app.

For running cron jobs:

  • In app_config.py set DEPLOY_TO_SERVERS to True.
  • Also in app_config.py, set INSTALL_CRONTAB to True
  • Run fab staging master servers.setup to configure the server.
  • Run fab staging master deploy to deploy the app.

You can configure your EC2 instance to both run Web services and execute cron jobs; just set both environment variables in the fabfile.

Install cron jobs

Cron jobs are defined in the file crontab. Each task should use the cron.sh shim to ensure the project's virtualenv is properly activated prior to execution. For example:

* * * * * ubuntu bash /home/ubuntu/apps/graeae/repository/cron.sh fab $DEPLOYMENT_TARGET cron_jobs.test

To install your crontab set INSTALL_CRONTAB to True in app_config.py. Cron jobs will be automatically installed each time you deploy to EC2.

The cron jobs themselves should be defined in fabfile/cron_jobs.py whenever possible.

Install web services

Web services are configured in the confs/ folder.

Running fab servers.setup will deploy your confs if you have set DEPLOY_TO_SERVERS and DEPLOY_WEB_SERVICES both to True at the top of app_config.py.

To check that these files are being properly rendered, you can render them locally and see the results in the confs/rendered/ directory.

fab servers.render_confs

You can also deploy only configuration files by running (normally this is invoked by deploy):

fab servers.deploy_confs

Run a remote fab command

Sometimes it makes sense to run a fabric command on the server, for instance, when you need to render using a production database. You can do this with the fabcast fabric command. For example:

fab staging master servers.fabcast:deploy

If any of the commands you run themselves require executing on the server, the server will SSH into itself to run them.

Analytics

The Google Analytics events tracked in this application are:

Category Action Label Value
graeae tweet location
graeae facebook location
graeae email location
graeae new-comment
graeae open-share-discuss
graeae close-share-discuss
graeae summary-copied
graeae featured-tweet-action action
graeae featured-facebook-action action

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  • JavaScript 46.5%
  • HTML 29.0%
  • Python 12.8%
  • CSS 11.7%