Installation & Configuration

Getting Started

Superset is tested using Python 2.7 and Python 3.4+. Python 3 is the recommended version, Python 2.6 won’t be supported.

OS dependencies

Superset stores database connection information in its metadata database. For that purpose, we use the cryptography Python library to encrypt connection passwords. Unfortunately this library has OS level dependencies.

You may want to attempt the next step (“Superset installation and initialization”) and come back to this step if you encounter an error.

Here’s how to install them:

For Debian and Ubuntu, the following command will ensure that the required dependencies are installed:

sudo apt-get install build-essential libssl-dev libffi-dev python-dev python-pip libsasl2-dev libldap2-dev

For Fedora and RHEL-derivatives, the following command will ensure that the required dependencies are installed:

sudo yum upgrade python-setuptools
sudo yum install gcc libffi-devel python-devel python-pip python-wheel openssl-devel libsasl2-devel openldap-devel

OSX, system python is not recommended. brew’s python also ships with pip

brew install pkg-config libffi openssl python
env LDFLAGS="-L$(brew --prefix openssl)/lib" CFLAGS="-I$(brew --prefix openssl)/include" pip install cryptography

Windows isn’t officially supported at this point, but if you want to attempt it, download, and run python which may need admin access. Then run the following:

C:\> pip install cryptography

# You may also have to create C:\Temp
C:\> md C:\Temp

Python virtualenv

It is recommended to install Superset inside a virtualenv. Python 3 already ships virtualenv, for Python 2 you need to install it. If it’s packaged for your operating systems install it from there otherwise you can install from pip:

pip install virtualenv

You can create and activate a virtualenv by:

# virtualenv is shipped in Python 3 as pyvenv
virtualenv venv
. ./venv/bin/activate

On windows the syntax for activating it is a bit different:


Once you activated your virtualenv everything you are doing is confined inside the virtualenv. To exit a virtualenv just type deactivate.

Python’s setup tools and pip

Put all the chances on your side by getting the very latest pip and setuptools libraries.:

pip install --upgrade setuptools pip

Superset installation and initialization

Follow these few simple steps to install Superset.:

# Install superset
pip install superset

# Create an admin user
fabmanager create-admin --app superset

# Initialize the database
superset db upgrade

# Load some data to play with
superset load_examples

# Create default roles and permissions
superset init

# Start the web server on port 8088
superset runserver -p 8088

# To start a development web server, use the -d switch
# superset runserver -d

After installation, you should be able to point your browser to the right hostname:port http://localhost:8088, login using the credential you entered while creating the admin account, and navigate to Menu -> Admin -> Refresh Metadata. This action should bring in all of your datasources for Superset to be aware of, and they should show up in Menu -> Datasources, from where you can start playing with your data!

Please note that gunicorn, Superset default application server, does not work on Windows so you need to use the development web server. The development web server though is not intended to be used on production systems so better use a supported platform that can run gunicorn.

Configuration behind a load balancer

If you are running superset behind a load balancer or reverse proxy (e.g. NGINX or ELB on AWS), you may need to utilise a healthcheck endpoint so that your load balancer knows if your superset instance is running. This is provided at /health which will return a 200 response containing “OK” if the webserver is running.

If the load balancer is inserting X-Forwarded-For/X-Forwarded-Proto headers, you should set ENABLE_PROXY_FIX = True in the superset config file to extract and use the headers.


To configure your application, you need to create a file (module) and make sure it is in your PYTHONPATH. Here are some of the parameters you can copy / paste in that configuration module:

# Superset specific config
ROW_LIMIT = 5000


# Flask App Builder configuration
# Your App secret key
SECRET_KEY = '\2\1thisismyscretkey\1\2\e\y\y\h'

# The SQLAlchemy connection string to your database backend
# This connection defines the path to the database that stores your
# superset metadata (slices, connections, tables, dashboards, ...).
# Note that the connection information to connect to the datasources
# you want to explore are managed directly in the web UI
SQLALCHEMY_DATABASE_URI = 'sqlite:////path/to/superset.db'

# Flask-WTF flag for CSRF

# Set this API key to enable Mapbox visualizations

This file also allows you to define configuration parameters used by Flask App Builder, the web framework used by Superset. Please consult the Flask App Builder Documentation for more information on how to configure Superset.

Please make sure to change:

  • SQLALCHEMY_DATABASE_URI, by default it is stored at ~/.superset/superset.db
  • SECRET_KEY, to a long random string

Database dependencies

Superset does not ship bundled with connectivity to databases, except for Sqlite, which is part of the Python standard library. You’ll need to install the required packages for the database you want to use as your metadata database as well as the packages needed to connect to the databases you want to access through Superset.

Here’s a list of some of the recommended packages.

database pypi package SQLAlchemy URI prefix
MySQL pip install mysqlclient mysql://
Postgres pip install psycopg2 postgresql+psycopg2://
Presto pip install pyhive presto://
Oracle pip install cx_Oracle oracle://
sqlite   sqlite://
Redshift pip install sqlalchemy-redshift redshift+psycopg2://
MSSQL pip install pymssql mssql://
Impala pip install impyla impala://
SparkSQL pip install pyhive jdbc+hive://

Note that many other database are supported, the main criteria being the existence of a functional SqlAlchemy dialect and Python driver. Googling the keyword sqlalchemy in addition of a keyword that describes the database you want to connect to should get you to the right place.


Superset uses Flask-Cache for caching purpose. Configuring your caching backend is as easy as providing a CACHE_CONFIG, constant in your that complies with the Flask-Cache specifications.

Flask-Cache supports multiple caching backends (Redis, Memcached, SimpleCache (in-memory), or the local filesystem). If you are going to use Memcached please use the pylibmc client library as python-memcached does not handle storing binary data correctly. If you use Redis, please install [python-redis](

For setting your timeouts, this is done in the Superset metadata and goes up the “timeout searchpath”, from your slice configuration, to your data source’s configuration, to your database’s and ultimately falls back into your global default defined in CACHE_CONFIG.

Deeper SQLAlchemy integration

It is possible to tweak the database connection information using the parameters exposed by SQLAlchemy. In the Database edit view, you will find an extra field as a JSON blob.


This JSON string contains extra configuration elements. The engine_params object gets unpacked into the sqlalchemy.create_engine call, while the metadata_params get unpacked into the sqlalchemy.MetaData call. Refer to the SQLAlchemy docs for more information.

Schemas (Postgres & Redshift)

Postgres and Redshift, as well as other database, use the concept of schema as a logical entity on top of the database. For Superset to connect to a specific schema, there’s a schema parameter you can set in the table form.

SSL Access to databases

This example worked with a MySQL database that requires SSL. The configuration may differ with other backends. This is what was put in the extra parameter

    "metadata_params": {},
    "engine_params": {
              "sslrootcert": "/path/to/my/pem"


  • From the UI, enter the information about your clusters in the Admin->Clusters menu by hitting the + sign.
  • Once the Druid cluster connection information is entered, hit the Admin->Refresh Metadata menu item to populate
  • Navigate to your datasources

Note that you can run the superset refresh_druid command to refresh the metadata from your Druid cluster(s)


The extra CORS Dependency must be installed:


The following keys in can be specified to configure CORS:

  • ENABLE_CORS: Must be set to True in order to enable CORS
  • CORS_OPTIONS: options passed to Flask-CORS (documentation <>)


Upgrading should be as straightforward as running:

pip install superset --upgrade
superset db upgrade
superset init


SQL Lab is a powerful SQL IDE that works with all SQLAlchemy compatible databases out there. By default, queries are run in a web request, and may eventually timeout as queries exceed the maximum duration of a web request in your environment, whether it’d be a reverse proxy or the Superset server itself.

In the modern analytics world, it’s not uncommon to run large queries that run for minutes or hours. To enable support for long running queries that execute beyond the typical web request’s timeout (30-60 seconds), it is necessary to deploy an asynchronous backend, which consist of one or many Superset worker, which is implemented as a Celery worker, and a Celery broker for which we recommend using Redis or RabbitMQ.

It’s also preferable to setup an async result backend as a key value store that can hold the long-running query results for a period of time. More details to come as to how to set this up here soon.

SQL Lab supports templating in queries, and it’s possible to override the default Jinja context in your environment by defining the JINJA_CONTEXT_ADDONS in your superset configuration. Objects referenced in this dictionary are made available for users to use in their SQL.

Making your own build

For more advanced users, you may want to build Superset from sources. That would be the case if you fork the project to add features specific to your environment.:

# assuming $SUPERSET_HOME as the root of the repo
cd $SUPERSET_HOME/superset/assets
npm install
npm run prod
python install