Skip to content

A free, open-source, web-based self-service BI tailor-made for clickhouse, google bigquery, mysql, postgresql, vertica

License

Notifications You must be signed in to change notification settings

datainsider-co/rocket-bi

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Rocket BI

GitHub GitHub issues GitHub contributors GitHub release (with filter)

RocketBI is a self-service, web-based business intelligent product tailor-made for analytical databases. RocketBI is the core product of DataInsider stack. You can use RocketBI to analyze, visualize, and easily collaborate with your friends.

To learn more about DataInsider's stack and RocketBI's features, see our documentation.

You could try the demo version at https://demo.rocket.bi

Get started

Run RocketBI locally:

To try out RocketBI on your machine, the best way is using our pre-built Docker images.

Prerequisites:

  • docker engine 19.0+
  • docker-compose 2.0+
1. Prepare

1.1. Download docker-compose file:

mkdir rocket-bi && cd rocket-bi

wget https://raw.githubusercontent.com/datainsider-co/rocket-bi/main/docker/docker-compose.yml

1.2. (Optional) Install sample clickhouse:

If you don't have clickhouse access at the moment, you can still try RocketBI by installing our sample clickhouse instance by running the following commands:

wget https://raw.githubusercontent.com/datainsider-co/rocket-bi/main/docker/sample_clickhouse_cluster.zip

unzip sample_clickhouse_cluster.zip

cd sample_clickhouse_cluster/

docker-compose up -d

./import_sample_data.sh

cd -

NOTE: If you're installing RocketBI on the same host with your clickhouse-server, please use 172.17.0.1 as your CLICKHOUSE_HOST instead of localhost for docker to resolve hosts correctly.

2. Start RocketBI
docker-compose up -d
3. Explore your data
  • Open browser and go to localhost:5050 to enter the web UI.
  • Login to RocketBI with this default account:
username: [email protected]
password: 123456
  • Setup your data connection. RocketBI support multiple connectors such as Clickhouse, BigQuery, Vertica, MySql...
  • Begin by creating a dashboard and using drag-n-drop tool to explore your data.

img

Build from source:

Server services:

Prerequisites:

  • java 8
  • maven 3
  • mysql 5.7
  • ssdb 1.9.9
git clone https://github.com/datainsider-co/rocket-bi.git

cd rocket-bi-server

# install needed libraries:
./libs/install.sh

# build source:
mvn package

# config mysql and ssdb host/port (default port for mysql is localhost:3306 and for ssdb is localhost:8888):
vi conf/local.conf

# start service locally:
./runservice start local

Services will be start at specific port specify in conf/local.conf file. For example, the default http port for bi-service is 8080, to test if bi-service is up and running, run:

curl localhost:8080/ping

To stop a service, run:

./runservice stop
Rocket-bi web UI:

Prerequisites:

  • node v12.22.9
  • yarn 1.22.19

Start building web client by running:

cd rocket-bi-web
yarn serve

Web will be served at port 8080.

Documentation

For the complete documentation visit datainsider.co.

Contribute

For contribution guidelines, see contributing.

Questions? Problems? Suggestions?

  • To report a bug or request a feature, create an Issue. Please make it easy for people to reproduce your issue.

Example

Animation

Adhoc-Query: Using SQL to do complex analysis & visualise the result with just drag-n-drop for a clear perspective. There are also supported functions & autocompletion for SQL query.

adhoc query

Drag-n-Drop Chart Builder: Users can efficiently perform drag-and-drop actions to create charts and fully customisable informative reports with a wide range of easy-to-use and flexible settings options.

chart builder

Interactive Dashboard: Help users visualise data, simply click to dig deeper into the underlying data and filter operational information so that data can be viewed from different perspectives or in more detail.

dashboard

Apply filter to Dashboard: Using a dashboard filter, users can quickly apply different data viewpoints to a single dashboard rather than creating additional dashboards.

dash filter

Add Control to Chart: Help users dynamically change the metrics to view multiple fields applied to that property with a simple click instead of creating multiple charts.

chart control

Drilldown your data: By clicking on a metric in a chart, users can quickly take a deep dive into a dataset to explore detailed information from various perspectives.

drill down

No Code ETL data: With our branded no-code data modeling, business users can load, transform & extract data without writing a single line of code.

no code etl

Row-Level Security: Limit a user's access to certain data, define filters for each Attribute Value, and restrict data access to query and view at the row level.

rls

Share & Collaboration: Share with the rest of your organisation by granting access or providing links to them.

Share & Collaborate with Others

Calculated & Measurement Fields: Create a dynamic data view by using existing database fields and applying additional logic.

calculate-measurement-field

Create Relationship: Click and connect relationships from multiple tables, and do cross sources analysis.

Relationship Builder

Schema Management with Data Encryption: Collect, store, and utilise data in a cost-effective, efficient, and secure manner

Schema Management