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Introduction

rq-dashboard is a general purpose, lightweight, Flask-based web front-end to monitor your RQ queues, jobs, and workers in realtime.

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Maturity notes

The RQ dashboard is currently being developed and is in beta stage. How migrate to version 1.0 you can find here

You can find help in the discussion page in github or join our discord server

Installing with Docker

You can also run the dashboard inside of docker:

You can also find the official image on cjlapao/rq-dashboard:latest

Installing from PyPI

$ pip install rq-dashboard

Running the dashboard

Run the dashboard standalone, like this:

$ rq-dashboard
* Running on http://127.0.0.1:9181/
...
$ rq-dashboard --help
Usage: rq-dashboard [OPTIONS]

  Run the RQ Dashboard Flask server.

  All configuration can be set on the command line or through environment
  variables of the form RQ_DASHBOARD_*. For example RQ_DASHBOARD_USERNAME.

  A subset of the configuration (the configuration parameters used by the
  underlying flask blueprint) can also be provided in a Python module
  referenced using --config, or with a .cfg file referenced by the
  RQ_DASHBOARD_SETTINGS environment variable.

Options:
  -b, --bind TEXT                 IP or hostname on which to bind HTTP server
  -p, --port INTEGER              Port on which to bind HTTP server
  --url-prefix TEXT               URL prefix e.g. for use behind a reverse
                                  proxy
  --username TEXT                 HTTP Basic Auth username (not used if not
                                  set)
  --password TEXT                 HTTP Basic Auth password
  -c, --config TEXT               Configuration file (Python module on search
                                  path)
  -u, --redis-url TEXT            Redis URL. Can be specified multiple times.
                                  Default: redis://127.0.0.1:6379
  --poll-interval, --interval INTEGER
                                  Refresh interval in ms
  --extra-path TEXT               Append specified directories to sys.path
  --disable-delete                Disable delete jobs, clean up registries
  --debug / --normal              Enter DEBUG mode
  -v, --verbose                   Enable verbose logging
  -j, --json                      Enable JSONSerializer
  --help                          Show this message and exit.

Integrating the dashboard in your Flask app

The dashboard can be integrated in to your own Flask app by accessing the blueprint directly in the normal way, e.g.:

from flask import Flask
import rq_dashboard

app = Flask(__name__)
app.config.from_object(rq_dashboard.default_settings)
rq_dashboard.web.setup_rq_connection(app)
app.register_blueprint(rq_dashboard.blueprint, url_prefix="/rq")

@app.route("/")
def hello():
    return "Hello World!"

if __name__ == "__main__":
    app.run()

If you start the Flask app on the default port, you can access the dashboard at http://localhost:5000/rq. The cli.py:main entry point provides a simple working example.

Running on Heroku

Consider using third-party project rq-dashboard-on-heroku, which installs rq-dashboard from PyPI and wraps in in Gunicorn for deployment to Heroku. rq-dashboard-on-heroku is maintained indepdently.

Running behind a Reverse Proxy

You can run the dashboard as a systemd service in Linux or via a suprevisor script and then use Apache or NGINX to direct traffic to the dashboard.

This is for non-production functionality!

Apache Reverse Proxy example:

ProxyPass /rq http://127.0.0.1:5001/rq
ProxyPassReverse /rq http://127.0.0.1:5001/rq

Systemd service example:

[Unit]
Description=Redis Queue Dashboard
[Install]

WantedBy=multi-user.target
[Service]
ExecStart=/bin/rq-dashboard -b 127.0.0.1 -p 5001 --url-prefix /rq -c rq_settings_dashboard --debug -v
StandardOutput=file:/var/log/redis/rq-dasbhoard.log
StandardError=file:/var/log/redis/rq-dashboard.log
User=redis-dash
Group=redis-dash
RemainAfterExit=yes
Type=simple
PermissionsStartOnly=false
PrivateTmp=no

Developing

Develop in a virtualenv and make sure you have all the necessary build time (and run time) dependencies with

$ pip install -r requirements.txt

Develop in the normal way with

$ python setup.py develop

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