The following JSON document describes a single board along with its layout, gadgets and their properites.
{
"board": [
{
"title": "Board Sample 1",
"structure": "3-6-3",
"id": 9,
"boardInstanceId": 1,
"rows": [
{
"columns": [
{
"styleClass": "three wide",
"gadgets": [
{
"componentType": "NewsGadgetComponent",
"name": "News",
"description": "What's new",
"icon": "images/news.png",
"instanceId": 1500253814523,
"tags": [
{
"facet": "Informational",
"name": "news"
},
{
"facet": "List",
"name": "news"
}
],
"config": {
"propertyPages": [
{
"displayName": "Run",
"groupId": "run",
"position": 10,
"properties": [
{
"value": "news",
"key": "endpoint",
"label": "News URL",
"required": false,
"order": 3,
"controlType": "dynamicdropdown"
},
{
"value": "News",
"key": "title",
"label": "Title",
"required": false,
"order": 1,
"controlType": "textbox"
},
{
"value": 2,
"key": "instanceId",
"required": false,
"order": -1,
"controlType": "hidden"
}
]
}
]
}
}
]
},
{
"styleClass": "six wide",
"gadgets": [
{
"componentType": "CPUGadgetComponent",
"name": "CPU Chart",
"description": "Monitors CPU utilization for application.",
"icon": "images/cpu.png",
"instanceId": 1499912922910,
"tags": [
{
"facet": "Performance",
"name": "real-time"
},
{
"facet": "Chart",
"name": "bar"
}
],
"config": {
"propertyPages": [
{
"displayName": "Run",
"groupId": "run",
"position": 10,
"properties": [
{
"value": "CPU Utilization",
"key": "title",
"label": "Title",
"required": false,
"order": 1,
"controlType": "textbox"
},
{
"value": "Carlosappliance - Process Monitor",
"key": "endpoint",
"label": "API Endpoints",
"required": false,
"order": 3,
"controlType": "dynamicdropdown"
},
{
"value": 999,
"key": "instanceId",
"required": false,
"order": -1,
"controlType": "hidden"
}
]
},
{
"displayName": "Chart",
"groupId": "chart",
"position": 11,
"properties": [
{
"value": true,
"key": "chart_properties",
"label": "Show chart details",
"required": false,
"order": 3,
"controlType": "checkbox"
}
]
}
]
}
},
{
"componentType": "TrendGadgetComponent",
"name": "Trend",
"description": "General trends.",
"icon": "images/trend.png",
"instanceId": 1499912901569,
"tags": [
{
"facet": "Performance",
"name": "trend"
},
{
"facet": "Chart",
"name": "area"
}
],
"config": {
"propertyPages": [
{
"displayName": "Run",
"groupId": "run",
"position": 10,
"properties": [
{
"value": "Devappliance",
"key": "endpoint",
"label": "API Endpoints",
"required": false,
"order": 2,
"controlType": "dynamicdropdown"
},
{
"value": "Trend",
"key": "title",
"label": "Title",
"required": false,
"order": 1,
"controlType": "textbox"
},
{
"value": 2,
"key": "instanceId",
"required": false,
"order": -1,
"controlType": "hidden"
}
]
},
{
"displayName": "Chart",
"groupId": "chart",
"position": 11,
"properties": [
{
"value": true,
"key": "chart_properties",
"label": "Show chart details",
"required": false,
"order": 3,
"controlType": "checkbox"
}
]
}
]
}
}
]
},
{
"styleClass": "three wide",
"gadgets": []
}
]
}
]
}
]
}
Note: This project is under heavy construction and is not intended for general production use yet. As such, we are not accepting bugs at the moment and documentation is quite lacking.
This is an angular (ngx) based dashboard framework that is inspired by JIRA's dashboard implementation and https://github.com/angular-dashboard-framework/angular-dashboard-framework
The primary projects leveraged:
- Angular - https://angularjs.org/
- ngx-charts (angular based d3 charts) - https://github.com/swimlane/ngx-charts
- Semantic-UI - https://semantic-ui.com/
- ng2-dnd drag and drop - https://github.com/akserg/ng2-dnd
- AI Natural Language Processing - The board includes two options for AI, Wit.Ai and IBM Watson.
- Wit.ai - Natural Language Processing site has been integrated via JSONP
- IBM Watson - IBM Watson does not support JSONP so the code relies on a backend implementation of the IBM Watson SDK. I offer sample backend code based on Spring Boot within the comments of the Runtime Service
Features:
- Leverages Angular's dynamic data driven forms approach for gadget property pages and properties - https://angular.io/guide/dynamic-form
- Dynamic component strategy for creating gadget instances during runtime - https://angular.io/guide/dynamic-component-loader
- Faceted gadget search approach leveraging tags
- Support multiple board creation
- Drag and Drop support
- Multiple Data Source/Endpoint management
- Web Socket support
- Completely customizable and configurable
The code includes a very simple Todo gadget that can be used as an example for getting started developing your own gadget. The following steps uses that Todo Gadget as a reference. You focus on defining the gadget and the rest of the framework will deal with making it available to the Add Gadget Modal, drag and drop, instance creation, tracking, persistence and cleanup, etc.
- Todo Component todo-gadget.component.ts
- Todo View view.html
- Todo Service service.ts
- Sample mock service data todo-model.json
The model is used to dynamically create and render the gadget and its property page forms. This model is an entry into a model array used for all gadgets. You will simply add an entry to the model's array. See the Todo entry. Add an entry for the gadget in the library model array gadget-library-model.json
Add an entry for your gadget in the factory gadget class gadget-factory.ts
Define an image/icon for your gadget todo.png
- Import the gadget's component into the board module board.module.ts
- Import the gadget's service into the grid module grid.module.ts
- Import the gadget's component and service into the gadget module gadget.module.ts
This project was generated with Angular CLI version 7.x.
Clone this repository then run npm install
Run ng serve
for a dev server. Navigate to http://localhost:4200/
. The app will automatically reload if you change any of the source files.
Run ng build
to build the project. The build artifacts will be stored in the dist/
directory. Use the --aot --prod
flag for ahead of time compilation and production mode.
The title of that issue suggests an issue with AOT but in my testing --prod
seems to be the problem.
Run ng test
to execute the unit tests via Karma.
Run ng e2e
to execute the end-to-end tests via Protractor.
Before running the tests make sure you are serving the app via ng serve
.
This project uses the compodoc project : https://github.com/compodoc/compodoc
Run npm install -g @compodoc/compodoc
to install compodoc globally
Run compodoc -p tsconfig.json -n 'NGX Dynamic Dashboard Framework'
to generate the documentation. It will be placed in the documentation folder
Run compodoc -s
to serve up the documentation site at http://localhost:8080
There is an accompanying java based backend project that serves up some of the endpoints used by the board.
https://github.com/catalogicsoftware/ngx-dynamic-dashboard-framework-microservice
It is a maven based project so you will need to do the following:
- Install and configure Maven.
- Copy the dist directory produced from this project's build into the
static
folder of the microservice project. - Build the microservice project using
<directory path to maven bin folder>/mvn install
from within the project's root directory. - Launch the microservice over the default port:
http://localhost:8080
usingjava -jar <path to the microservice root folder>/target/ngxdd-x.y.z.jar
To get more help on the Angular CLI use ng help
or go check out the Angular CLI README.