NOT MAINTAINED ANYMORE! New project is located on https://github.com/mozilla-frontend-infra/js-perf-dashboard -- AreWeFastYet is a set of tools used for benchmarking the major browser's JavaScript virtual machines against each other, as well as reporting the results on a website as insightful graphs showing the evolution of performance over time.
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README.md

Components

  1. Database: MySQL database that stores statistics.
  2. Collector: Hidden PHP script on the webserver, where stats get sent.
  3. Driver: Python driver that runs on each benchmark computer, and submits stats.
  4. Processor: Python aggregator that builds JSON data from the DB.
  5. Website: Static HTML as the frontpage, that queries JSON via XHR.

Components (2), (3), and (5) must be on the same webserver, otherwise timestamps might not be computed correctly.

Keep in mind, most of this documentation is for posterity. AWFY was never intended to be a drag-and-drop all-in-one released product, so the procedures and scripts may be pretty rough.

Installation

Database

Create a database and import/run database/schema.sql.

Data Collector

Drop website/UPDATE.PHP and website/internals.php somewhere, and rename UPDATE.PHP to something secret. Make sure you don't have directory listings enabled.

Benchmark Computers

Clone the AWFY repo and check out each vendor's source code. Typically this looks something like:

   git clone http://github.com/dvander/arewefastyet awfy
   cd awfy
   mkdir repos
   cd repos

   # Get V8
   svn checkout http://v8.googlecode.com/svn/branches/bleeding_edge/ v8

   # Get Mozilla
   hg clone http://hg.mozilla.org/integration/mozilla-inbound

   # Get WebKit - Mac/Linux only
   svn checkout https://svn.webkit.org/repository/webkit/trunk WebKit

   cd ../driver
   cp awfy.config.sample awfy.config

Then,

  1. Add a database entry for the machine configuration.
  2. Edit awfy.config to match the build architecture you want, and to have the correct machine database number.
  3. Set up a cronjob, service, or screen to run dostuff.py periodically. Mozilla uses run.sh which will run continuously, since a cronjob could run overlapping jobs. run.sh also lets you configure lock files in /tmp.

Note, interrupting dostuff.py can cause problems with subversion, for example, the WebKit repository may become stuck and need an svn cleanup or an rm -rf and clean checkout. For sanity, the helper script run.sh will pause its next run if it sees a /tmp/awfy lock in place, and this can be used to wait.

Note, it is not safe to share multiple AWFY instances from the same repository, since C++ object files are generally re-used and may not correctly link depending on build flags. Also, only one instance of AWFY should ever be running at a given time. For best benchmark results, no other programs should be running.

Data Processor

Put awfy-server.config in /etc, and edit it to point at your database and website/data folder. Then put update.py in a cronjob. It will dump files where appropriate. AWFY.com does this every 15min. It is not safe to run two instance at once. A sample wrapper script is provided as run-update.sh.

update.py generates various JSON files:

  1. "raw" and "metadata" files cache database queries from run to run, so we don't have to make expensive database queries.
  2. "aggregate" files are used for the front page.
  3. "condensed" files are used for one level of zooming, so users don't have to download the raw data set right away.

The metadata and raw JSON files are updated as needed. The aggregate and condensed files are always re-generated from the raw data.

There is also a monitor.py script provided in the server folder. You can run this regularly to send e-mails for benchmarking machines that haven't sent results in a certain amount of time (this time is specified in awfy-server.config). It will send e-mail through the local SMTP server, using the "contact" field for each machine in the database. This field should be a comma-delimited list of e-mail addresses (i.e. "egg@yam.com,bob@egg.com").

Website

Nothing special needed, just place the static files somewhere. Don't forget to replace the default machine number in website/awfy.js, which is the one that will show up in the first place. Note that AWFY's flot is slightly modified, so it might not work to just replace it with upstream flot. There must be a 'data' folder that contains the json/js files dumped by update.py. It can be a symlink.